BTEP routinely runs Classes (single event) and Courses (series of related offerings) covering a wide variety of Bioinformatics topics.
Upcoming Offerings are listed below
Link to calendar (past) filtered by the Organizer – BTEP
class_id | details | description | start_date | Venues | learning_levels | Topic | Tags | delivery_method | presenters | Organizer | seminar_series | class_title |
---|---|---|---|---|---|---|---|---|---|---|---|---|
214 |
DescriptionDetailsOrganizerHPC BiowulfWhenThu, Jan 01, 1970 - 1:00 am - 1:00 amWhereIn-Person |
https://hpc.nih.gov/training/handouts/200220_python_in_hpc.pdf https://xkcd.com/353/ | 1970-01-01 01:00:00 | Programming | In-Person | HPC Biowulf | 0 | Python in HPC | ||||
169 |
Description
We present the AMARETTO-Hub as a Knowledge Graph-based software platform that leverages Neo4j and Shiny to embed and interactively interrogate results generated by the *AMARETTO software toolbox that offers modular and complementary solutions to multimodal and multiscale network-based fusion of multi-omics, clinical, imaging, and perturbation data across studies of patients, etiologies and model systems of cancer and COVID-19, towards better diagnostic, prognostic and therapeutic decision-making in complex disease.
For several Use Cases of cancer ...Read More
We present the AMARETTO-Hub as a Knowledge Graph-based software platform that leverages Neo4j and Shiny to embed and interactively interrogate results generated by the *AMARETTO software toolbox that offers modular and complementary solutions to multimodal and multiscale network-based fusion of multi-omics, clinical, imaging, and perturbation data across studies of patients, etiologies and model systems of cancer and COVID-19, towards better diagnostic, prognostic and therapeutic decision-making in complex disease.
For several Use Cases of cancer and COVID-19, we provide the biomedical research community with R Jupyter Notebook workflows that run the Bioconductor and GitHub repositories on Google Colaboratory, and GenePattern Notebooks that run the GenePattern modules in the Amazon Cloud, and that generate HTML reports comprising queryable tables with heatmap and graph visualizations in an automated manner, and additionally provide users with Neo4j-embedded Shiny interactive representation and querying tools that redirect users to *AMARETTO-generated HTML reports.
Specifically, our software toolbox comprises of the following algorithms:
(1) The AMARETTO algorithm learns networks of regulatory circuits - circuits of drivers and their target genes - from functional genomics or multi-omics data and associates these circuits to clinical, molecular and imaging-derived phenotypes within each biological system (e.g., model systems or patients).
(2) The Community-AMARETTO algorithm learns subnetworks of regulatory circuits that are shared or distinct across networks derived from multiple biological systems (e.g., model systems and patients, cohorts and individuals, diseases and etiologies, in vitro and in vivo systems).
(3) The Imaging-AMARETTO algorithm maps radiography and histopathology imaging data onto the patient-derived multi-omics networks for imaging diagnostics and prognostics to identify clinically relevant imaging biomarkers and decipher their underlying molecular mechanisms.
(4) The Perturbation-AMARETTO algorithm maps genetic and chemical perturbations in model systems onto patient-derived networks for driver and drug discovery, respectively, and prioritizes lead drivers, targets and drugs for follow-up with experimental validation, towards better therapeutics.
(5) The AMARETTO-Hub platform for Knowledge Graph-based embedding of knowledge learned via multimodal and multiscale network-based data fusion in previous steps. In these complex graphs, nodes and edges represent the diverse range of biomedical entities and the relationships between them, respectively. Graph-based embedding enables querying these complex graph-structured representations in a more sophisticated, efficient and user-friendly manner than can otherwise be accomplished by table representations alone.
Resources are available from : github.com/broadinstitute/BioC2020Workshop_AMARETTO-Huband portals.broadinstitute.org/pochetlab/amaretto.html(to be updated).
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancergov/
DetailsOrganizerCBIITWhenFri, Jun 16, 2000 - 1:30 pm - 2:30 pmWhereOnline |
We present the AMARETTO-Hub as a Knowledge Graph-based software platform that leverages Neo4j and Shiny to embed and interactively interrogate results generated by the *AMARETTO software toolbox that offers modular and complementary solutions to multimodal and multiscale network-based fusion of multi-omics, clinical, imaging, and perturbation data across studies of patients, etiologies and model systems of cancer and COVID-19, towards better diagnostic, prognostic and therapeutic decision-making in complex disease. For several Use Cases of cancer and COVID-19, we provide the biomedical research community with R Jupyter Notebook workflows that run the Bioconductor and GitHub repositories on Google Colaboratory, and GenePattern Notebooks that run the GenePattern modules in the Amazon Cloud, and that generate HTML reports comprising queryable tables with heatmap and graph visualizations in an automated manner, and additionally provide users with Neo4j-embedded Shiny interactive representation and querying tools that redirect users to *AMARETTO-generated HTML reports. Specifically, our software toolbox comprises of the following algorithms: (1) The AMARETTO algorithm learns networks of regulatory circuits - circuits of drivers and their target genes - from functional genomics or multi-omics data and associates these circuits to clinical, molecular and imaging-derived phenotypes within each biological system (e.g., model systems or patients). (2) The Community-AMARETTO algorithm learns subnetworks of regulatory circuits that are shared or distinct across networks derived from multiple biological systems (e.g., model systems and patients, cohorts and individuals, diseases and etiologies, in vitro and in vivo systems). (3) The Imaging-AMARETTO algorithm maps radiography and histopathology imaging data onto the patient-derived multi-omics networks for imaging diagnostics and prognostics to identify clinically relevant imaging biomarkers and decipher their underlying molecular mechanisms. (4) The Perturbation-AMARETTO algorithm maps genetic and chemical perturbations in model systems onto patient-derived networks for driver and drug discovery, respectively, and prioritizes lead drivers, targets and drugs for follow-up with experimental validation, towards better therapeutics. (5) The AMARETTO-Hub platform for Knowledge Graph-based embedding of knowledge learned via multimodal and multiscale network-based data fusion in previous steps. In these complex graphs, nodes and edges represent the diverse range of biomedical entities and the relationships between them, respectively. Graph-based embedding enables querying these complex graph-structured representations in a more sophisticated, efficient and user-friendly manner than can otherwise be accomplished by table representations alone. Resources are available from : github.com/broadinstitute/BioC2020Workshop_AMARETTO-Huband portals.broadinstitute.org/pochetlab/amaretto.html(to be updated). The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancergov/ | 2000-06-16 13:30:00 | Online | CBIIT | 0 | AMARETTO-Hub: a Knowledge Graph-based software platform that leverages the *AMARETTO software toolbox for multimodal and multisc | |||||
824 |
DescriptionAs the scientific world has moved from the pre-genomic to the post-genomic era the need for tools that enable the visualization, integration and interrogation of genomic-scale data has never been greater. This talk will provide an overview of the world of Genome Browsers and demonstrate how you can use these powerful tools to visualize you own and other published data and to thus gain greater insight into the underlying biological processes. HIghlighted ...Read More As the scientific world has moved from the pre-genomic to the post-genomic era the need for tools that enable the visualization, integration and interrogation of genomic-scale data has never been greater. This talk will provide an overview of the world of Genome Browsers and demonstrate how you can use these powerful tools to visualize you own and other published data and to thus gain greater insight into the underlying biological processes. HIghlighted topics will include:
A list of the Web Sites referenced in this talk can be found HERE RegisterOrganizerBTEPWhenTue, Sep 25, 2012 - 2:00 pm - 3:30 pmWhereBuilding 37, Room 4041/4107 |
As the scientific world has moved from the pre-genomic to the post-genomic era the need for tools that enable the visualization, integration and interrogation of genomic-scale data has never been greater. This talk will provide an overview of the world of Genome Browsers and demonstrate how you can use these powerful tools to visualize you own and other published data and to thus gain greater insight into the underlying biological processes. HIghlighted topics will include: How to navigate the UCSC Genome Browser How to integrate your own data into the Browser How to get more detailed views of your data with tools like IGB and IGV And more.... A list of the Web Sites referenced in this talk can be found HERE | 2012-09-25 14:00:00 | Building 37, Room 4041/4107 | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | Genome Browsers | |||
828 |
Description
Course Materials: Lecture Slides in PDF Format RegisterOrganizerBTEPWhenTue, Oct 02, 2012 - 2:00 pm - 3:30 pmWhereBuilding 37 Room 4041/4107 |
Microarray Technology and Preprocessing Quality Control Normalization Using MAS5 and RMA Filtering Batch Effect Correction Basic Statistical Tests for Differentially Expressed Genes T-test ANOVA SAM Calculating False Discovery Rate Principal Components Analysis and Clustering Functional and Network Analysis Pathway Analysis Ingenuity Pathway Analysis (IPA) Gene Set Enrichment Analysis (GSEA) Fishers Exact Test Motif Enrichment Analysis IPA motif enrichment analysis for transcription factor and miRNA motifs PSCAN for transcription factor motifs Fishers Exact Test for transcription factor and miRNA motifs Network Reconstruction ARACNE Multivariate Regression Course Materials: Lecture Slides in PDF Format | 2012-10-02 14:00:00 | Building 37 Room 4041/4107 | In-Person | BTEP | 0 | Introduction to Gene Expression Microarray Data Analysis | ||||
827 |
DescriptionLearn the basics of microarray gene expression analysis using Partek Genomics Suite and Partek Pathway. As we walk though hands-on analysis of a cancer dataset, you will learn the principles of experimental design, batch correction, statistics, and how to extract biological meaning from the results using tools geneset analyses and pathways.
Learn the basics of microarray gene expression analysis using Partek Genomics Suite and Partek Pathway. As we walk though hands-on analysis of a cancer dataset, you will learn the principles of experimental design, batch correction, statistics, and how to extract biological meaning from the results using tools geneset analyses and pathways.
Course Materials:
RegisterOrganizerBTEPWhenTue, Oct 09, 2012 - 2:00 pm - 5:00 pmWhereIn-Person |
Learn the basics of microarray gene expression analysis using Partek Genomics Suite and Partek Pathway. As we walk though hands-on analysis of a cancer dataset, you will learn the principles of experimental design, batch correction, statistics, and how to extract biological meaning from the results using tools geneset analyses and pathways. Gene Expression Analysis with Affymetrix (cancer dataset) Good experimental design practices Import CEL files/normalization options Describing sample groups Batch correction Detecting differentially expressed genes/creating a gene list Hierarchical Clustering and other visualizations GO Analysis Pathway Enrichment GeneSet analysis (including Pathway ANOVA) Integration with microRNA Course Materials: Partek Shoe Example Analysis of GSE20437 GSE20437 Publication | 2012-10-09 14:00:00 | In-Person | BTEP | 0 | Hands-on - Gene Expression using Microarrays with Partek Genomics Suite and Partek Pathway | |||||
826 |
DescriptionFundamentals of DNA copy number analysis using Nexus Fundamentals of DNA copy number analysis using Nexus
RegisterOrganizerBTEPWhenTue, Oct 16, 2012 - 2:15 pm - 3:30 pmWhereIn-Person |
Fundamentals of DNA copy number analysis using Nexus Learn the basics of copy number analysis and its application to genomic research. Fundamental concepts such as copy number measurement methods, quality assessment, and different approaches/algorithms used for detecting copy number changes and allelic events as well as unique complications encountered in cancer data will be presented. You will also learn how to apply this knowledge to common research objectives such as identification of significant aberrations, comparisons between sub-populations, and identification of biomarkers. Introduction and course overview Fundamentals of DNA copy number analysis Review of copy number measurement methods BAC arrays Oligo two color arrays SNP Arrays (with and without CNV probes) MIP Array data Next-Gen data Review of unique complications in cancer data Aneuploidy Sample heterogeneity due to surrounding tissue contamination as well as colonal diversity DNA fragmentation in FFPE samples Data preprocessing and quality assessment Approaches for detecting copy number and allelic event changes Differences between copy number and allelic event data HMM methods, CBS, ADM, ASCAT Research objectives attained with the data Identification of recurrent events in a population Identification of statistically significant aberrations (STAC/GISTIC) Comparisons between groups Grouping samples based on copy number profiles Identification of biomarkers that are predictive of events such as survival | 2012-10-16 14:15:00 | In-Person | Soheil Shams PhD (CEO and CSO BioDiscovery) | BTEP | 0 | Introduction to Copy Number Analysis and its Application to Genomic Research | ||||
825 |
DescriptionLearn the fundamentals in genomic data analysis of CGH and SNP arrays using BioDiscovery Nexus Copy Number software. In this hands-on training session, you will learn how to load, process, visualize, and analyze array data. You will learn how to effectively use the features within the software to efficiently and quickly explore the data to gain biological insights from copy number and allelic event changes in the genome.
Learn the fundamentals in genomic data analysis of CGH and SNP arrays using BioDiscovery Nexus Copy Number software. In this hands-on training session, you will learn how to load, process, visualize, and analyze array data. You will learn how to effectively use the features within the software to efficiently and quickly explore the data to gain biological insights from copy number and allelic event changes in the genome.
RegisterOrganizerBTEPWhenTue, Oct 23, 2012 - 2:00 pm - 5:00 pmWhereIn-Person |
Learn the fundamentals in genomic data analysis of CGH and SNP arrays using BioDiscovery Nexus Copy Number software. In this hands-on training session, you will learn how to load, process, visualize, and analyze array data. You will learn how to effectively use the features within the software to efficiently and quickly explore the data to gain biological insights from copy number and allelic event changes in the genome. Data Loading and processing Visualization of results and exporting Population and Sub-population analysis Gene Enrichment Analysis Clustering samples Comparing differences between populations Predictive power analysis Survival predictive power and K-M plot/statistics Nexus DB | 2012-10-23 14:00:00 | In-Person | Zhiwei Che PhD (Director of Application Science BioDiscovery) | BTEP | 0 | Hands-on: Copy Number Analysis and its Application to Genomic Research Using Nexus Copy Number | ||||
829 |
DescriptionDue to the weather related shutdown of the FEDERAL GOVERNMENT (NIH) this seminar has been POSTPONED ... we will attempt to reschedule at a later date. (10-30-2012)
Topics to be covered
I. Genomic and transcript related information
Due to the weather related shutdown of the FEDERAL GOVERNMENT (NIH) this seminar has been POSTPONED ... we will attempt to reschedule at a later date. (10-30-2012)
Topics to be covered
I. Genomic and transcript related information
II. Publications
III. Protein related information
IV. Regulation of expression
RegisterOrganizerBTEPWhenTue, Oct 30, 2012 - 2:15 pm - 4:00 pmWhereBuilding 37 Room 4041/4107 |
Due to the weather related shutdown of the FEDERAL GOVERNMENT (NIH) this seminar has been POSTPONED ... we will attempt to reschedule at a later date. (10-30-2012) Topics to be covered I. Genomic and transcript related information chromosome location genomic, mRNA and protein sequence alternative splice products and gene structure (exon-intron locations) primers specific for the gene and spliced product SNPs in the gene and which ones are known to be associated with a phenotype II. Publications publications documenting experiments that add to our understanding of the HRAS gene III. Protein related information protein function pathways and downloading all genes in that pathway IV. Regulation of expression known transcription factor binding sites | 2012-10-30 14:15:00 | Building 37 Room 4041/4107 | In-Person | BTEP | 0 | Gene Resources: From Transcription Factor Binding Sites to Function | ||||
823 |
DescriptionIntroduction of Next-Generation Sequencing Introduction of Next-Generation Sequencing RegisterOrganizerBTEPWhenTue, Nov 06, 2012 - 2:15 pm - 3:30 pmWhereBuilding 37 Room 4041/4107 |
Introduction of Next-Generation Sequencing This seminar will provide an overview of Next Generation DNA Sequencing. Highlighting Illumina sequencing technology, and its application in the areas of DNAse-seq, ChIP-seq, and RNA-seq, as well as Genomic sequencing. The "slides" for this talk can be found at the following Prezi Web page: http://prezi.com/iwsuh0in03hn/very-simple-ngs-overview/ | 2012-11-06 14:15:00 | Building 37 Room 4041/4107 | In-Person | BTEP | 0 | Introduction to Next-Generation Sequencing | ||||
821 |
DescriptionThe ChIP-Seq data analysis session will specifically focus on visualization of mapped reads, peak detection, motif discovery (find both novel motif and known motif), annotate enriched regions with overlapping genes or database. The topics to be covered include:
The ChIP-Seq data analysis session will specifically focus on visualization of mapped reads, peak detection, motif discovery (find both novel motif and known motif), annotate enriched regions with overlapping genes or database. The topics to be covered include:
RegisterOrganizerBTEPWhenTue, Nov 13, 2012 - 2:00 pm - 5:00 pmWhereIn-Person |
The ChIP-Seq data analysis session will specifically focus on visualization of mapped reads, peak detection, motif discovery (find both novel motif and known motif), annotate enriched regions with overlapping genes or database. The topics to be covered include: BAM file import in Partek Genomics Suite Peak detection Motif discovery in ChIP-seq Find overlapping genes with enriched regions | 2012-11-13 14:00:00 | In-Person | BTEP | 0 | Hands-on - Analysis of ChIP-Seq Data with Partek Genomics Suite | |||||
819 |
Description
This is a repeat class for those who couldn't make it into the class on October 9th
This is a repeat class for those who couldn't make it into the class on October 9th
Course Materials:
RegisterOrganizerBTEPWhenWed, Nov 14, 2012 - 9:00 am - 12:00 pmWhereIn-Person |
This is a repeat class for those who couldn't make it into the class on October 9th Learn the basics of microarray gene expression analysis using Partek Genomics Suite and Partek Pathway. As we walk though hands-on analysis of a cancer dataset, you will learn the principles of experimental design, batch correction, statistics, and how to extract biological meaning from the results using tools geneset analyses and pathways. Gene Expression Analysis with Affymetrix (cancer dataset) Good experimental design practices Import CEL files/normalization options Describing sample groups Batch correction Detecting differentially expressed genes/creating a gene list Hierarchical Clustering and other visualizations GO Analysis Pathway Enrichment GeneSet analysis (including Pathway ANOVA) Integration with microRNA Course Materials: Partek Shoe Example Analysis of GSE20437 GSE20437 Publication | 2012-11-14 09:00:00 | In-Person | BTEP | 0 | Hands-on - Gene Expression using Microarrays with Partek Genomics Suite and Partek Pathway - Repeat Class | |||||
820 |
DescriptionThere will be no talk this week. There will be no talk this week. RegisterOrganizerBTEPWhenTue, Nov 20, 2012 - 2:15 pm - 3:30 pmWhereBuilding 37 Room 4041/4107 |
There will be no talk this week. | 2012-11-20 14:15:00 | Building 37 Room 4041/4107 | In-Person | BTEP | 0 | No Talk This Week | ||||
822 |
Description
RegisterOrganizerBTEPWhenThu, Nov 29, 2012 - 11:00 am - 12:00 pmWhereBuilding 37 Room 4041/4107 |
The Integrative Genomics Viewer (IGV) is a high-performance viewer that efficiently handles large heterogeneous data sets, while providing a smooth and intuitive user experience at all levels of genome resolution. A key characteristic of IGV is its focus on the integrative nature of genomic studies, with support for both array-based and next-generation sequencing data, and the integration of clinical and phenotypic data. Although IGV is often used to view genomic data from public sources, its primary emphasis is to support researchers who wish to visualize and explore their own data sets or those from colleagues. To that end, IGV supports flexible loading of local and remote data sets, and is optimized to provide high-performance data visualization and exploration on standard desktop systems. IGV is freely available for download from http://www.broadinstitute.org/igv, under a GNU LGPL open-source license. In this workshop participants will learn to view Next Generation Sequencing (NGS) datasets in the Integrative Genomics Viewer (IGV). Topics to be covered include: IGV Basics SNPS and Variants Structural Events RNA-Seq and Exome Sequencing Bisulfite Sequencing Sessions and Sharing Data | 2012-11-29 11:00:00 | Building 37 Room 4041/4107 | In-Person | Jim Robinson PhD (Cancer Informatics Broad Institute) | BTEP | 0 | NGS Visualization with the Integrative Genomics Viewer (IGV) | |||
817 |
DescriptionAll researchers at the NCI have unlimited access to Pathway Studio software, MedScan text mining module, and the Mammalian database. Pathway Studio Application Areas Include: • Disease Biology All researchers at the NCI have unlimited access to Pathway Studio software, MedScan text mining module, and the Mammalian database. Pathway Studio Application Areas Include: • Disease Biology The Pathway Studio training will be presented by the Elsevier. You will learn how to process thousands of PubMed abstracts and build pathways related to disease, biological process or any other topic of interest. We will explain how to interpret biological networks build as the result of Medscan text-mining. We will also show you how to navigate the database of relations and build pathways to interpret your experimental data. You will learn: how in the matter of few clicks find the major regulators responsible for the expression pattern observed in your experiment; how to find differentially expressed pathway and Gene Ontology groups using Gene Set Enrichment analysis; how to obtain high quality pathway pictures of the result pathways for your publication. The training will empower you to become an advanced user of Pathway Studio and significantly increase your research productivity. NOTE: This training is also being offered on December 14th, at the Building 549, Scientific Library , Frederick, MD RegisterOrganizerBTEPWhenTue, Dec 11, 2012 - 10:00 am - 3:00 pmWhereIn-Person |
All researchers at the NCI have unlimited access to Pathway Studio software, MedScan text mining module, and the Mammalian database. Pathway Studio Application Areas Include: • Disease Biology • Disease Biomarkers • Drug Target Identification • Protein Functionality • Cellular Interactions • Biomarkers of Target Regulation • Drug Repositioning • Drug Target Modulation & Characterization • Safety Biomarkers • Cellular & Molecular Systems Biology • Experimental Data Analysis (Gene Expression, Mass. Spec, Assay Data, etc.) The Pathway Studio training will be presented by the Elsevier. You will learn how to process thousands of PubMed abstracts and build pathways related to disease, biological process or any other topic of interest. We will explain how to interpret biological networks build as the result of Medscan text-mining. We will also show you how to navigate the database of relations and build pathways to interpret your experimental data. You will learn: how in the matter of few clicks find the major regulators responsible for the expression pattern observed in your experiment; how to find differentially expressed pathway and Gene Ontology groups using Gene Set Enrichment analysis; how to obtain high quality pathway pictures of the result pathways for your publication. The training will empower you to become an advanced user of Pathway Studio and significantly increase your research productivity. NOTE: This training is also being offered on December 14th, at the Building 549, Scientific Library , Frederick, MD | 2012-12-11 10:00:00 | In-Person | BTEP | 0 | Hands-On: Pathway Analysis Training using Pathway Studio at Bethesda | |||||
818 |
DescriptionAll researchers at the NCI have unlimited access to Pathway Studio software, MedScan text mining module, and the Mammalian database. Pathway Studio Application Areas Include: • Disease Biology All researchers at the NCI have unlimited access to Pathway Studio software, MedScan text mining module, and the Mammalian database. Pathway Studio Application Areas Include: • Disease Biology The Pathway Studio training will be presented by the Elsevier. You will learn how to process thousands of PubMed abstracts and build pathways related to disease, biological process or any other topic of interest. We will explain how to interpret biological networks build as the result of Medscan text-mining. We will also show you how to navigate the database of relations and build pathways to interpret your experimental data. You will learn: how in the matter of few clicks find the major regulators responsible for the expression pattern observed in your experiment; how to find differentially expressed pathway and Gene Ontology groups using Gene Set Enrichment analysis; how to obtain high quality pathway pictures of the result pathways for your publication. The training will empower you to become an advanced user of Pathway Studio and significantly increase your research productivity. NOTE: This training is also being offered on December 11th, at the NCI training facility 6116 Executive Blvd. RegisterOrganizerBTEPWhenFri, Dec 14, 2012 - 10:00 am - 3:00 pmWhereBuilding 549, Scientific Library, Frederick, MD |
All researchers at the NCI have unlimited access to Pathway Studio software, MedScan text mining module, and the Mammalian database. Pathway Studio Application Areas Include: • Disease Biology • Disease Biomarkers • Drug Target Identification • Protein Functionality • Cellular Interactions • Biomarkers of Target Regulation • Drug Repositioning • Drug Target Modulation & Characterization • Safety Biomarkers • Cellular & Molecular Systems Biology • Experimental Data Analysis (Gene Expression, Mass. Spec, Assay Data, etc.) The Pathway Studio training will be presented by the Elsevier. You will learn how to process thousands of PubMed abstracts and build pathways related to disease, biological process or any other topic of interest. We will explain how to interpret biological networks build as the result of Medscan text-mining. We will also show you how to navigate the database of relations and build pathways to interpret your experimental data. You will learn: how in the matter of few clicks find the major regulators responsible for the expression pattern observed in your experiment; how to find differentially expressed pathway and Gene Ontology groups using Gene Set Enrichment analysis; how to obtain high quality pathway pictures of the result pathways for your publication. The training will empower you to become an advanced user of Pathway Studio and significantly increase your research productivity. NOTE: This training is also being offered on December 11th, at the NCI training facility 6116 Executive Blvd. | 2012-12-14 10:00:00 | Building 549, Scientific Library, Frederick, MD | In-Person | Cindy Sood PhD (Solutions Specialist Elsevier) | BTEP | 0 | Hands-On: Pathway Analysis Training using Pathway Studio at Frederick | |||
816 |
DescriptionThis training session will focus on Gene Expression analysis and the rich set of results possible from RNA-Seq based studies. In addition to differential gene expression, researchers also have the opportunity to discover SNPs, and important alternative splicing patterns that result in allele-specific expression. The following topics will be discussed:
This training session will focus on Gene Expression analysis and the rich set of results possible from RNA-Seq based studies. In addition to differential gene expression, researchers also have the opportunity to discover SNPs, and important alternative splicing patterns that result in allele-specific expression. The following topics will be discussed:
Partek Genomics Suite is available to all researchers affiliated with CCR
Course Materials:
RegisterOrganizerBTEPWhenTue, Feb 05, 2013 - 2:00 pm - 5:00 pmWhere6116 Executive Blvd., Room 4075 |
This training session will focus on Gene Expression analysis and the rich set of results possible from RNA-Seq based studies. In addition to differential gene expression, researchers also have the opportunity to discover SNPs, and important alternative splicing patterns that result in allele-specific expression. The following topics will be discussed: Alignment Pre/Post Alignment QA/QC Trimming, filtering reads Quantification Differential Expression Detection using Gene Specific Analysis Variants/Indel Detection and Annotation Visualization (PCA, Dot Plot, Chromosome View, etc.) Allele Specific Expression Analysis Alt-splicing Detection Biological interpretation: Gene Set Analysis and Pathway Analysis Partek Genomics Suite is available to all researchers affiliated with CCR Course Materials: Introduction to NGS (PDF) | 2013-02-05 14:00:00 | 6116 Executive Blvd., Room 4075 | In-Person | BTEP | 0 | Hands-on: RNA-Seq Data Analysis with Partek Genomics Suite | ||||
815 |
Description Overview of Illumina Sequencing TechnologiesRead More Overview of Illumina Sequencing Technologies
Data and Sample QC and Analysis Steps
Illumina Data File Structure and Format
Overview of Illumina BaseSpace
RegisterOrganizerBTEPWhenTue, Feb 12, 2013 - 2:15 pm - 3:30 pmWhereBuilding 37 Room 4041/4107 |
This lecture will provide an overview of Illumina sequencing technology as implemented at the CCR Sequencing Facility (SF). It will outline the data and sample QC and analysis workflow performed by the facility and will provide guidance for understanding the files/data provided by the SF. Subsequent bioinformatics options and the initial project submission process will be reviewed. The topics covered will include: Overview of Illumina Sequencing Technologies Library preparation Multiplex and barcodes Cluster amplification and sequencing Data and Sample QC and Analysis Steps QC and analysis workflows QC metrics Illumina Data File Structure and Format Basecall and alignment files SAM/BAM manipulation Variants call data files Overview of Illumina BaseSpace BaseSpace highlights BaseSpace applications | 2013-02-12 14:15:00 | Building 37 Room 4041/4107 | In-Person | Yongmei Zhao (CCR-SF IFX Group) | BTEP | 0 | Introduction to Illumina Sequencing Data QC and Analysis | |||
814 |
DescriptionIngenuity Pathways Analysis (IPA) is software that helps researchers model, analyze, and understand the complex biological and chemical systems at the core of life science research.
Ingenuity Pathways Analysis (IPA) is software that helps researchers model, analyze, and understand the complex biological and chemical systems at the core of life science research.
Comparing Large Data sets and results
Ingenuity Pathways Analysis is available to all researchers affiliated with the NCI RegisterOrganizerBTEPWhenTue, Feb 19, 2013 - 9:00 am - 5:00 pmWhere6116 Executive Blvd. Room 4075 |
Ingenuity Pathways Analysis (IPA) is software that helps researchers model, analyze, and understand the complex biological and chemical systems at the core of life science research. This training session will cover: Large Scale (gene expression, proteomics, Metabolomics) Data Analysis Using an example gene expression dataset the basic to intermediate IPA functionalities will be covered. Upload single and multiple observation datasets Microarray, RNAseq, proteomic, miRNA, metabolite data Find and interpret the most relevant processes and disease associated with your data Find and interpret the most relevant canonical pathway Identify predicted upstream regulators (transcription factors, miRNA, receptors, drugs, etc.) Understand the basics of the Network generation algorithm and how to interpret/modify the network result Comparing Large Data sets and results Using an example microarray datasets, methods for comparing core analysis results and gene lists will be discussed. In addition, we will discuss integrating multiple experimental platforms such as microarray, SNPs, proteomics, etc. Comparing IPA core analysis results Comparing datasets, gene lists, and members of a core analysis Using the expression bar-chart overlay option Integrate multiple experimental platforms together Ingenuity Pathways Analysis is available to all researchers affiliated with the NCI | 2013-02-19 09:00:00 | 6116 Executive Blvd. Room 4075 | In-Person | Darryl Gietzen PhD (Field Application Scientist Ingenuity) | BTEP | 0 | Hands-on - Ingenuity Pathways Analysis (IPA) Beginners Class | |||
813 |
DescriptionIngenuity Pathways Analysis (IPA) is software that helps researchers model, analyze, and understand the complex biological and chemical systems at the core of life science research. Gene Information, Pathway building, target characterization This session will cover how to use IPA’s Knowledge Base for deep investigation of any gene, protein, or metabolite and how to further refine gene ...Read More Ingenuity Pathways Analysis (IPA) is software that helps researchers model, analyze, and understand the complex biological and chemical systems at the core of life science research. Gene Information, Pathway building, target characterization This session will cover how to use IPA’s Knowledge Base for deep investigation of any gene, protein, or metabolite and how to further refine gene sets isolated from large scale data analyses.
Understanding IPA Statistics
Micro RNA and biomarkers in IPA
RegisterOrganizerBTEPWhenWed, Feb 20, 2013 - 9:00 am - 5:00 pmWhere6116 Executive Blvd. Room 4075 |
Ingenuity Pathways Analysis (IPA) is software that helps researchers model, analyze, and understand the complex biological and chemical systems at the core of life science research. This training session will cover Advanced uses of this software: Gene Information, Pathway building, target characterization This session will cover how to use IPA’s Knowledge Base for deep investigation of any gene, protein, or metabolite and how to further refine gene sets isolated from large scale data analyses. Search for a Gene/Chemical/function and drug Performing an Advanced Search: Limiting results to a molecule type, family or subcellular location. Add molecules from search results a pathway Understanding the legend General pathway navigating Using the pathway Build Tools Using the Overlay interpretation tools Understanding IPA Statistics How is the Fisher’s Exact Test calculated How are z-scores calculated and what does it mean Micro RNA and biomarkers in IPA This training session will focus on two advanced workflows: the biomarkers interpretation and the microRNA-mRNA interpretation. After this training session a user should be able to: Run a microRNA filter Analysis Filter the microRNA- targets relationship using a mRNA dataset. Explore the functional involvement of the microRNA’s targets within a Core analysis. Identify potential microRNA targets by using the pathway functionalities. Run and View a Biomarkers Filter Analysis Explore further the biomarkers result in pathway and list. Generate a Biomarker Filter comparison analysis. Ingenuity Pathways Analysis is available to all researchers affiliated with the NCI | 2013-02-20 09:00:00 | 6116 Executive Blvd. Room 4075 | In-Person | Darryl Gietzen PhD (Field Application Scientist Ingenuity) | BTEP | 0 | Hands-on - Ingenuity Pathways Analysis (IPA) Advanced Class | |||
812 |
Description
Detailed Illustration of the Practical Usage of Each SNP Detection Tool
RegisterOrganizerBTEPWhenTue, Feb 26, 2013 - 2:15 pm - 5:00 pmWhereBuilding 37 Room 4041/4107 |
Comparison Study of NGS SNP Detection Tools Brief background and introduction for the current status of SNP detection field and each of the selected tools to be compared Description of our benchmark exome-seq data with pedigree info and SNP array data from matched-samples and why they are useful for comparison of these tools for SNP call quality Comparison and validation results of these tools using the benchmark data Conclusion and take-home message Q & A session Detailed Illustration of the Practical Usage of Each SNP Detection Tool Brief introduction of practical aspects of the tools (e.g., download, installation, interface, running environment, basic system requirement etc) Practical command lines for command-driven tool(s), parameter options, wrapper script examples for the command-driven tools, interface for commercial tools Brief discussion of result files and some diagnosis plots, etc. Q & A session | 2013-02-26 14:15:00 | Building 37 Room 4041/4107 | In-Person | BTEP | 0 | Introduction to SNP discovery tools used for Next Generation Sequencing data | ||||
811 |
DescriptionThe cBio Cancer Genomics Portal Helps Researchers Explore Multidimensional Cancer Genomics Data The cBio Cancer Genomics Portal Helps Researchers Explore Multidimensional Cancer Genomics Data RegisterOrganizerBTEPWhenMon, Mar 04, 2013 - 2:15 pm - 4:00 pmWhereBuilding 37 Room 4041/4107 |
The cBio Cancer Genomics Portal Helps Researchers Explore Multidimensional Cancer Genomics Data This publicly accessible web-based resource provides visualization, analysis and download of large-scale cancer genomics data sets. As of early 2012 the Portal contains data for 7848 tumor samples from 26 cancer studies. | 2013-03-04 14:15:00 | Building 37 Room 4041/4107 | In-Person | Nikolaus Schultz PhD (Computational Biology Center Memorial Sloan-Kettering Cancer Center) | BTEP | 0 | Introduction to the cBio Genomics Portal | |||
810 |
Description THIS SEMINAR IS POSPONED AND WILL BE RESCHEDULED
THIS SEMINAR IS POSPONED AND WILL BE RESCHEDULED
RegisterOrganizerBTEPWhenWed, Mar 06, 2013 - 3:00 pm - 5:00 pmWhereBuilding 37 Room 4041/4107 |
Geneious is an integrated and extensible software platform for the organization, visualization and analysis of DNA and protein sequence information. Researchers can analyze any NGS data alongside traditional Sanger data and combine technologies in hybrid approaches for their analyses. THIS SEMINAR IS POSPONED AND WILL BE RESCHEDULED Re-sequencing workflows to identify novel mutational variants De novo sequencing and assembly to identify novel haplotypes Variant calling to identify SNPs, INDELs and STRs Variant validation of novel NGS variants with PCR-based Sanger re-sequencing Multi-genome comparisons to identify large genomic events RNA-Seq mapping to identify low/high expressed genes CCR currently has a number of floating licenses for Geneious | 2013-03-06 15:00:00 | Building 37 Room 4041/4107 | In-Person | Peter Meintjes PhD (Biomatters Ltd Auckland New Zealand ) | BTEP | 0 | NGS Applications with Geneious (POSTPONED) | |||
809 |
DescriptionUsing pathway analysis in MetaCore/GeneGO to evaluate glioma subtypes from public gene expression data
Using pathway analysis in MetaCore/GeneGO to evaluate glioma subtypes from public gene expression data
Using a dataset for gene expression profiling in human glial brain tumors, this hands-on class will show how one can analyze Pathway Maps and build custom networks.
MetaCore/GeneGo is available to all researchers affiliated with the NCI RegisterOrganizerBTEPWhenTue, Mar 12, 2013 - 2:00 pm - 5:00 pmWhere6116 Executive Blvd. Room 4075 |
Using pathway analysis in MetaCore/GeneGO to evaluate glioma subtypes from public gene expression data MetaCore from GeneGo is an integrated software suite for functional analysis of microarray, metabolic, SAGE, proteomics, siRNA, microRNA, and screening data. MetaCore is based on a high-quality, manually-curated database of: Transcription factors, receptors, ligands, kinases, drugs, and endogenous metabolites Species-specific directional interactions between protein-protein, protein-DNA and protein-RNA, drug targeting, and bioactive molecules and their effects Signaling and metabolic pathways represented on maps and networks Rich ontologies for diseases and processes with hierarchical or graphic output Using a dataset for gene expression profiling in human glial brain tumors, this hands-on class will show how one can analyze Pathway Maps and build custom networks. MetaCore/GeneGo is available to all researchers affiliated with the NCI | 2013-03-12 14:00:00 | 6116 Executive Blvd. Room 4075 | In-Person | BTEP | 0 | MetaCore/GeneGO hands-on training | ||||
808 |
Description
RegisterOrganizerBTEPWhenTue, Apr 02, 2013 - 2:15 pm - 5:00 pmWhereBuilding 37 Room 4041/4107 |
Geneious is an integrated and extensible software platform for the organization, visualization and analysis of DNA and protein sequence information. Researchers can analyze any NGS data alongside traditional Sanger data and combine technologies in hybrid approaches for their analyses. Re-sequencing workflows to identify novel mutational variants De novo sequencing and assembly to identify novel haplotypes Variant calling to identify SNPs, INDELs and STRs Variant validation of novel NGS variants with PCR-based Sanger re-sequencing Multi-genome comparisons to identify large genomic events RNA-Seq mapping to identify low/high expressed genes CCR currently has a number of floating licenses for Geneious | 2013-04-02 14:15:00 | Building 37 Room 4041/4107 | In-Person | Peter Meintjes PhD (Biomatters Ltd Auckland New Zealand ) | BTEP | 0 | NGS Applications with Geneious | |||
807 |
DescriptionGene Set Enrichment Analysis (GSEA) is a computational method that determines whether an a priori defined set of genes shows statistically significant, concordant differences between two biological states (e.g. phenotypes).
Gene Set Enrichment Analysis (GSEA) is a computational method that determines whether an a priori defined set of genes shows statistically significant, concordant differences between two biological states (e.g. phenotypes).
Tuesday April 23rd, 2013 there will be a companion hands-on training session for GSEA RegisterOrganizerBTEPWhenTue, Apr 16, 2013 - 2:15 pm - 3:30 pmWhereBuilding 37 Room 4041/4107 |
Gene Set Enrichment Analysis (GSEA) is a computational method that determines whether an a priori defined set of genes shows statistically significant, concordant differences between two biological states (e.g. phenotypes). Using gene sets, e.g., pathways, GO categories, to interpret microarray (and other) biology data Using a measure of differential expression for all the genes, rather than a list of distinguished genes The general approach of the Broad Institute’s GSEA software // comparison with DAVID (NIAID) The statistics behind GSEA // The data files required to use GSEA Understanding the output files produced by GSEA (April 23: hands on running the GSEA software) Tuesday April 23rd, 2013 there will be a companion hands-on training session for GSEA | 2013-04-16 14:15:00 | Building 37 Room 4041/4107 | In-Person | BTEP | 0 | Introduction to the Broad Institute’s Gene Set Enrichment Analysis (GSEA) software | ||||
806 |
DescriptionGene Set Enrichment Analysis (GSEA) is a computational method that determines whether an a priori defined set of genes shows statistically significant, concordant differences between two biological states (e.g. phenotypes). Gene Set Enrichment Analysis (GSEA) is a computational method that determines whether an a priori defined set of genes shows statistically significant, concordant differences between two biological states (e.g. phenotypes).
RegisterOrganizerBTEPWhenTue, Apr 23, 2013 - 2:00 pm - 5:00 pmWhere6116 Executive Blvd. Room 4075 |
Gene Set Enrichment Analysis (GSEA) is a computational method that determines whether an a priori defined set of genes shows statistically significant, concordant differences between two biological states (e.g. phenotypes). The GSEA software is a Java based tool freely available from the Broad Institute of MIT and Harvard. This training class will walk you through getting the most out of this software. Topics to include: Installing GSEA Required input data files and formats Parameter selection Broad Institute Utilities Understanding the output Tuesday April 16th, 2013 there will be a companion lecture session on GSEA Class Notes Class Data | 2013-04-23 14:00:00 | 6116 Executive Blvd. Room 4075 | In-Person | BTEP | 0 | Hands-on with the Broad Institute’s Gene Set Enrichment Analysis (GSEA) software | ||||
805 |
DescriptionIntended Audience: This day-long training course is intended for users who wish to get an introduction to the central concepts, strategies, and analysis software offered by Genomatix for transcription factor binding site and promoter analysis, and to learn how to apply them most efficiently.
Intended Audience: This day-long training course is intended for users who wish to get an introduction to the central concepts, strategies, and analysis software offered by Genomatix for transcription factor binding site and promoter analysis, and to learn how to apply them most efficiently.
Genomatix is available to all researchers affiliated with the NCI RegisterOrganizerBTEPWhenTue, Apr 30, 2013 - 9:00 am - 5:00 pmWhere6116 Executive Blvd. Room 4075 |
Intended Audience: This day-long training course is intended for users who wish to get an introduction to the central concepts, strategies, and analysis software offered by Genomatix for transcription factor binding site and promoter analysis, and to learn how to apply them most efficiently. Introduction to Genomatix Why genome annotation is important for promoter analysis ElDorado, Gene2Promoter, Comparative Genomics Transcription factor binding sites (TFBS) basics MatBase, MatInspector How to define your own TF binding sites de novo MatDefine, CoreSearch Functional promoter analysis FastM, FrameWorker, Modelinspector Putting TFBS and their regulatory targets into biological context GeneRanker, Genomatix Pathway System Analyzing SNP effects on TF binding sites SNPInspector, Variant Analysis Assorted TFBS tools DiAlign/DiAlignTF, SequenceShaper Genomatix is available to all researchers affiliated with the NCI | 2013-04-30 09:00:00 | 6116 Executive Blvd. Room 4075 | In-Person | BTEP | 0 | Hands-on: Transcription Factor Binding Site and Promoter Analysis with Genomatix | ||||
804 |
DescriptionIntended Audience: This day-long training course is intended for Users who want to apply Next Generation Sequencing methodologies for DNA-Seq, Methyl-Seq, small RNA-Seq, RNA-Seq and ChIP-Seq studies. All analyses are done on the Genomatix Mining Station (GMS) and Genomatix Genome Analyzer (GGA)
Intended Audience: This day-long training course is intended for Users who want to apply Next Generation Sequencing methodologies for DNA-Seq, Methyl-Seq, small RNA-Seq, RNA-Seq and ChIP-Seq studies. All analyses are done on the Genomatix Mining Station (GMS) and Genomatix Genome Analyzer (GGA)
RegisterOrganizerBTEPWhenWed, May 01, 2013 - 9:00 am - 5:00 pmWhere6116 Executive Blvd. Room 4075 |
Intended Audience: This day-long training course is intended for Users who want to apply Next Generation Sequencing methodologies for DNA-Seq, Methyl-Seq, small RNA-Seq, RNA-Seq and ChIP-Seq studies. All analyses are done on the Genomatix Mining Station (GMS) and Genomatix Genome Analyzer (GGA) Methodological background and Genomatix Mining Station (GMS): Sequence statistics, mapping and mapping statistics Read classification Small variant detection Methodological background and hands-on examples using Genomatix Genome Analyzer (GGA): SNP analysis Copy Number Variation (CNV) analysis Methyl-Seq: Data Visualization Small RNA-Seq and RNA-Seq: Expression Analysis ChIP-Seq: Peak detection and analysis: TF binding site analysis in ChIP peaks De novo motif detection Next-neighbor analysis and regulatory target prediction for ChIP regions Meta analysis of different data sets | 2013-05-01 09:00:00 | 6116 Executive Blvd. Room 4075 | In-Person | BTEP | 0 | Hands-on: Analysis of Next Generation Sequencing Data with Genomatix | ||||
803 |
Description
RegisterOrganizerBTEPWhenTue, May 07, 2013 - 2:15 pm - 4:15 pmWhereBuilding 37 Room 4041/4107 |
This 2 hour seminar will be an interactive discussion and demonstration of the types of applications and work-flows that can be performed on deep sequencing data generated by the latest instruments from Illumina, Life Technologies (SOLiD and Ion Torrent), Roche/454 and others. Applications include the following: Data import - Un-aligned reads (FASTQ, .sff etc.) and aligned reads (SAM/BAM) Read mapping to reference sequence(s) De novo assembly Transcriptome assembly Digital gene expression analysis by RNA Sequencing Exome sequencing by target enrichment Variant detection ChIP Seq Analysis Small RNA analysis Curating reference sequences with annotations of interest Working with Annotation Tracks BLAST - Find and compare genes, protein products and place contigs Workflows- Visually Creating and Editing Analysis Pipelines CLC bio software (Genomics Server and Genomics Workbench) is available to all researchers affiliated with CCR | 2013-05-07 14:15:00 | Building 37 Room 4041/4107 | In-Person | Robert Mervis PhD (CLC bio.) | BTEP | 0 | An Introduction to Analysis of Next Generation Sequencing Data using the CLC Genomics Workbench and Genomics Server | |||
802 |
DescriptionNexus Copy Number is a user-friendly desktop application for analysis and visualization of structural variation (copy number, allelic events, and small sequence variations) from CGH and SNP array- and NGS-generated data. The simple and interactive user interface allows for quick review of CNV/LOH/seq. variant results, annotation of samples, and customized report generation. All major statistical methods and algorithms that have become accepted as standards of practice in the field are incorporated into ...Read More Nexus Copy Number is a user-friendly desktop application for analysis and visualization of structural variation (copy number, allelic events, and small sequence variations) from CGH and SNP array- and NGS-generated data. The simple and interactive user interface allows for quick review of CNV/LOH/seq. variant results, annotation of samples, and customized report generation. All major statistical methods and algorithms that have become accepted as standards of practice in the field are incorporated into an intuitive, easy-to-use workflow for robust and straightforward analysis.
CCR currently has a number of floating licenses for Nexus software RegisterOrganizerBTEPWhenTue, May 28, 2013 - 2:30 pm - 4:00 pmWhereBuilding 37 Room 4041/4107 |
Nexus Copy Number is a user-friendly desktop application for analysis and visualization of structural variation (copy number, allelic events, and small sequence variations) from CGH and SNP array- and NGS-generated data. The simple and interactive user interface allows for quick review of CNV/LOH/seq. variant results, annotation of samples, and customized report generation. All major statistical methods and algorithms that have become accepted as standards of practice in the field are incorporated into an intuitive, easy-to-use workflow for robust and straightforward analysis. This seminar will highlight the following: Platform Independent Copy Number Analysis and Visualization Affymetrix Agilent Illumina Exome/Genome Sequencing Other Co-visualization of Sequence Variation Exome Genome Targeted Powerful Statistical Analysis Methods Group Comparison Concordance Survival Gene Enrichment Clustering Predictive Power Query for Aberrations in Nexus DB TCGA GEO ISCA/ICCG CCR currently has a number of floating licenses for Nexus software | 2013-05-28 14:30:00 | Building 37 Room 4041/4107 | In-Person | BTEP | 0 | Somatic and Germline Copy Number and Sequence Variant Analysis Using Nexus Software | ||||
801 |
Description
RegisterOrganizerBTEPWhenTue, Jun 11, 2013 - 2:15 pm - 3:30 pmWhereBuilding 37 Room 4041/4107 |
Common sample prep and library preparation pitfalls Understand what determines the quality of your NGS data Current publishing and data reporting standards for NGS studies Types of experimental designs used NGS studies Ensure efficient use of experimental budget Sample budgets for standard RNA-Seq, CHiP-Seq, Exome-Seq projects Increase precision and accuracy of results Microarrays vs RNA-Seq: pluses and minuses Increase the likelihood for publication in a top-tier journal | 2013-06-11 14:15:00 | Building 37 Room 4041/4107 | In-Person | BTEP | 0 | Five ways to get the most from your NGS project and stay on budget | ||||
800 |
DescriptionThis is repeat of the lecture given June 11th on the Bethesda Campus.
This is repeat of the lecture given June 11th on the Bethesda Campus.
RegisterOrganizerBTEPWhenThu, Jun 20, 2013 - 2:00 pm - 3:00 pmWhereNCI-F Building 430, Conference Room 230 |
This is repeat of the lecture given June 11th on the Bethesda Campus. Common sample prep and library preparation pitfalls Understand what determines the quality of your NGS data Current publishing and data reporting standards for NGS studies Types of experimental designs used NGS studies Ensure efficient use of experimental budget Sample budgets for standard RNA-Seq, CHiP-Seq, Exome-Seq projects Increase precision and accuracy of results Microarrays vs RNA-Seq: pluses and minuses Increase the likelihood for publication in a top-tier journal | 2013-06-20 14:00:00 | NCI-F Building 430, Conference Room 230 | In-Person | BTEP | 0 | Five ways to get the most from your NGS project and stay on budget | ||||
799 |
DescriptionIngenuity Pathways Analysis (IPA) is software that helps researchers model, analyze, and understand the complex biological and chemical systems at the core of life science research.
Agenda for Day 1 (Tuesday September 17th) Large Scale (gene expression, proteomics, Metabolomics) Data Analysis Using an example gene expression dataset the basic to intermediate IPA functionalities will be covered.
Ingenuity Pathways Analysis (IPA) is software that helps researchers model, analyze, and understand the complex biological and chemical systems at the core of life science research.
Agenda for Day 1 (Tuesday September 17th) Large Scale (gene expression, proteomics, Metabolomics) Data Analysis Using an example gene expression dataset the basic to intermediate IPA functionalities will be covered.
Comparing Large Data sets and results
Agenda for Day 2 (Wednesday September 18th) Gene Information, Pathway building, target characterizationThis session will cover how to use IPA’s Knowledge Base for deep investigation of any gene, protein, or metabolite and how to further refine gene sets isolated from large scale data analyses.
Understanding IPA Statistics
Micro RNA and biomarkers in IPA
Ingenuity Pathways Analysis is available to all researchers affiliated with the NCI
If you plan to drive to the Fernwood building, you will need to park in the 6720C Parking Garage - Parking fees will be collected by cash or credit/debit card. We apologize for any inconvenience this may cause. CIT Training recommends that NIH staff utilize the NIH Rockledge Shuttle from the Medical Center Metro to the Fernwood building, if at all possible, to avoid having to pay for parking. Exit the shuttle at the 6700B/Fernwood stop. RegisterOrganizerBTEPWhenTue, Sep 17 - Wed, Sep 18, 2013 -9:00 am - 4:30 pmWhereFernwood Building, 10401 Fernwood Road, Rm 1NW02, Bethesda, Maryland |
Ingenuity Pathways Analysis (IPA) is software that helps researchers model, analyze, and understand the complex biological and chemical systems at the core of life science research. Agenda for Day 1 (Tuesday September 17th) Large Scale (gene expression, proteomics, Metabolomics) Data Analysis Using an example gene expression dataset the basic to intermediate IPA functionalities will be covered. Upload single and multiple observation datasets Microarray, RNAseq, proteomic, miRNA, metabolite data Find and interpret the most relevant processes and disease associated with your data Find and interpret the most relevant canonical pathway Identify predicted upstream regulators (transcription factors, miRNA, receptors, drugs, etc.) Understand the basics of the Network generation algorithm and how to interpret/modify the network result Comparing Large Data sets and results Using an example microarray datasets, methods for comparing core analysis results and gene lists will be discussed. In addition, we will discuss integrating multiple experimental platforms such as microarray, SNPs, proteomics, etc. Comparing IPA core analysis results Comparing datasets, gene lists, and members of a core analysis Using the expression bar-chart overlay option Integrate multiple experimental platforms together Agenda for Day 2 (Wednesday September 18th) Gene Information, Pathway building, target characterization This session will cover how to use IPA’s Knowledge Base for deep investigation of any gene, protein, or metabolite and how to further refine gene sets isolated from large scale data analyses. Search for a Gene/Chemical/function and drug Performing an Advanced Search: Limiting results to a molecule type, family or subcellular location. Add molecules from search results a pathway Understanding the legend General pathway navigating Using the pathway Build Tools Using the Overlay interpretation tools Understanding IPA Statistics How is the Fisher’s Exact Test calculated How are z-scores calculated and what does it mean Micro RNA and biomarkers in IPA This training session will focus on two advanced workflows: the biomarkers interpretation and the microRNA-mRNA interpretation. After this training session a user should be able to: Run a microRNA filter Analysis Filter the microRNA- targets relationship using a mRNA dataset. Explore the functional involvement of the microRNA’s targets within a Core analysis. Identify potential microRNA targets by using the pathway functionalities. Run and View a Biomarkers Filter Analysis Explore further the biomarkers result in pathway and list. Generate a Biomarker Filter comparison analysis. Ingenuity Pathways Analysis is available to all researchers affiliated with the NCI If you plan to drive to the Fernwood building, you will need to park in the 6720C Parking Garage - Parking fees will be collected by cash or credit/debit card. We apologize for any inconvenience this may cause. CIT Training recommends that NIH staff utilize the NIH Rockledge Shuttle from the Medical Center Metro to the Fernwood building, if at all possible, to avoid having to pay for parking. Exit the shuttle at the 6700B/Fernwood stop. Directions to the Fernwood facility can be found here | 2013-09-17 09:00:00 | Fernwood Building, 10401 Fernwood Road, Rm 1NW02, Bethesda, Maryland | In-Person | Sohela Shah (Ingenuity) | BTEP | 0 | Hands-on: Ingenuity Pathways Analysis (IPA) | |||
798 |
DescriptionDue to the recent Government Furlough this talk had been POSTPONED and wil be rescheduled at a later date. This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of microarray gene expression analysis. Learn everything from experimental design to statistical analysis and several downstream pathway and pattern discovery methods using both commercial (Partek) and open source software. Those who successfully complete this course ...Read More Due to the recent Government Furlough this talk had been POSTPONED and wil be rescheduled at a later date. This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of microarray gene expression analysis. Learn everything from experimental design to statistical analysis and several downstream pathway and pattern discovery methods using both commercial (Partek) and open source software. Those who successfully complete this course will receive a certificate, that will not only look good on their wall, but will also entitle their lab to an additional subsidy from OSTR towards the cost of microarrays processed by the LMT Core. Day 1 - AM (9:30-12) Introductory Lecture (Maggie Cam, PhD - CCR, NCI)
Introduction Historical Perspective Microarray Technologies, Sample Processing Methods Microarray comparisons to RNA-Seq Data Analysis Experimental Design QC methods Preprocessing: Normalization and low level analysis algorithms Statistical Analysis Common statistical models used for analysis of microarray data Examples of blocking Batch effects and removal methods Validation and Downstream Analysis Validation methods Gene Ontology Enrichment and Pathway analysis tools Major Software applications Public Repositories of Microarray Data Bioinformatics Core Presentation (Manjula Kasoji - CCRIFX) Lessons learned and how to work with the core Day 1 - PM (1-5 pm): Hands-on Microarray analysis using Partek Genomics Suite (Xiaowen Wang, PhD - Partek) Partek Genomics Suite Analysis Workflow Process Cel files (RMA) Looking at data distributions, histograms, bar plots, MA plots, etc. Statistical Analysis (Anova) Create contrasts False Discovery Analysis Making lists of significant genes Venn Diagrams Work independently on dataset Day 2 AM (9:30-12): Hands-on Partek Genomics Suite Analysis and Partek Pathway (Xiaowen Wang, PhD - Partek) Unsupervised Clustering Custom Filtering Pathway ANOVA Work independently on another dataset Day 2 PM (1-5): GeneSet Enrichment Analysis (GSEA) (Alan Berger, PhD - School of Medicine Johns Hopkins University)
GSEA is a computational method that determines which (if any) a priori defined sets of genes are significantly differentially expressed, as an ensemble, between two biological states. It is an open-source program developed by the Broad Institute: http://www.broadinstitute.org/gsea/index.jsp
Lecture The general approach of gene set enrichment methods and comparison with DAVID How GSEA measures differential expression for each set of genes Controlling effects of multiple comparisons in GSEA (false discovery rate) The Broad Institute library of groups of gene sets (MSigDB) What files and formats are needed for GSEA User options and running GSEA Hands-on Loading the GSEA required input files for an example dataset Using and choosing values in the GSEA GUI interface Rank-based analysis Full dataset analysis Understanding the GSEA outputs and judging significance in the results Work independently on another dataset
RegisterOrganizerBTEPWhenThu, Oct 03 - Fri, Oct 04, 2013 -9:30 am - 5:00 pmWhereIn-Person |
Due to the recent Government Furlough this talk had been POSTPONED and wil be rescheduled at a later date. This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of microarray gene expression analysis. Learn everything from experimental design to statistical analysis and several downstream pathway and pattern discovery methods using both commercial (Partek) and open source software. Those who successfully complete this course will receive a certificate, that will not only look good on their wall, but will also entitle their lab to an additional subsidy from OSTR towards the cost of microarrays processed by the LMT Core. Day 1 - AM (9:30-12) Introductory Lecture (Maggie Cam, PhD - CCR, NCI) Introduction Historical Perspective Microarray Technologies, Sample Processing Methods Microarray comparisons to RNA-Seq Data Analysis Experimental Design QC methods Preprocessing: Normalization and low level analysis algorithms Statistical Analysis Common statistical models used for analysis of microarray data Examples of blocking Batch effects and removal methods Validation and Downstream Analysis Validation methods Gene Ontology Enrichment and Pathway analysis tools Major Software applications Public Repositories of Microarray Data Bioinformatics Core Presentation (Manjula Kasoji - CCRIFX) Lessons learned and how to work with the core Day 1 - PM (1-5 pm): Hands-on Microarray analysis using Partek Genomics Suite (Xiaowen Wang, PhD - Partek) Partek Genomics Suite Analysis Workflow Process Cel files (RMA) Looking at data distributions, histograms, bar plots, MA plots, etc. Statistical Analysis (Anova) Create contrasts False Discovery Analysis Making lists of significant genes Venn Diagrams Work independently on dataset Day 2 AM (9:30-12): Hands-on Partek Genomics Suite Analysis and Partek Pathway (Xiaowen Wang, PhD - Partek) Unsupervised Clustering Custom Filtering Pathway ANOVA Work independently on another dataset Day 2 PM (1-5): GeneSet Enrichment Analysis (GSEA) (Alan Berger, PhD - School of Medicine Johns Hopkins University) GSEA is a computational method that determines which (if any) a priori defined sets of genes are significantly differentially expressed, as an ensemble, between two biological states. It is an open-source program developed by the Broad Institute: http://www.broadinstitute.org/gsea/index.jsp Lecture The general approach of gene set enrichment methods and comparison with DAVID How GSEA measures differential expression for each set of genes Controlling effects of multiple comparisons in GSEA (false discovery rate) The Broad Institute library of groups of gene sets (MSigDB) What files and formats are needed for GSEA User options and running GSEA Hands-on Loading the GSEA required input files for an example dataset Using and choosing values in the GSEA GUI interface Rank-based analysis Full dataset analysis Understanding the GSEA outputs and judging significance in the results Work independently on another dataset | 2013-10-03 09:30:00 | In-Person | Maggie Cam (NCI CCBR),Xiaowen Wang (Partek) | BTEP | 0 | TO BE RESCHEDULED - Microarray Workshop (2 day) | ||||
797 |
DescriptionDue to the recent Government Furlough this talk had been POSTPONED This talk will now take place on November 5th, at the same time and location. This talk will provide an overview of the extensive computing resources (both hardware and software) available throught the NIH Helix Systems. Background:The Helix Systems group is responsible for the planning and management of high-performance ...Read More Due to the recent Government Furlough this talk had been POSTPONED This talk will now take place on November 5th, at the same time and location. This talk will provide an overview of the extensive computing resources (both hardware and software) available throught the NIH Helix Systems. Background:The Helix Systems group is responsible for the planning and management of high-performance computing systems specifically for the intramural NIH community. These systems include Helix, a multiprocessor shared-memory system for interactive use; Biowulf, an 18,000+ processor Linux cluster; and Helixweb, which provides a number of scientific tools via the web. These systems provide access to an extensive library of computational applications for molecular and structural biology, genomics, mathematical and graphical analysis, and other scientific fields. RegisterOrganizerBTEPWhenTue, Oct 22, 2013 - 3:00 pm - 4:30 pmWhereBuilding 37 Room 4041/4107 |
Due to the recent Government Furlough this talk had been POSTPONED This talk will now take place on November 5th, at the same time and location. This talk will provide an overview of the extensive computing resources (both hardware and software) available throught the NIH Helix Systems. Background: The Helix Systems group is responsible for the planning and management of high-performance computing systems specifically for the intramural NIH community. These systems include Helix, a multiprocessor shared-memory system for interactive use; Biowulf, an 18,000+ processor Linux cluster; and Helixweb, which provides a number of scientific tools via the web. These systems provide access to an extensive library of computational applications for molecular and structural biology, genomics, mathematical and graphical analysis, and other scientific fields. | 2013-10-22 15:00:00 | Building 37 Room 4041/4107 | In-Person | Susan Chacko (HPC Biowulf),Steven Fellini PhD (NIH) | BTEP | 0 | POSTPONED - Overview of Helix/Biowulf | |||
796 |
DescriptionThis talk will provide an overview of the extensive computing resources (both hardware and software) available through the NIH Helix Systems. Background:The Helix Systems group is responsible for the planning and management of high-performance computing systems specifically for the intramural NIH community. These systems include Helix, a multiprocessor shared-memory system ...Read More This talk will provide an overview of the extensive computing resources (both hardware and software) available through the NIH Helix Systems. Background:The Helix Systems group is responsible for the planning and management of high-performance computing systems specifically for the intramural NIH community. These systems include Helix, a multiprocessor shared-memory system for interactive use; Biowulf, an 18,000+ processor Linux cluster; and Helixweb, which provides a number of scientific tools via the web. These systems provide access to an extensive library of computational applications for molecular and structural biology, genomics, mathematical and graphical analysis, and other scientific fields. This talk is a rescheduled event for the talk postponed from October 22nd, 2013,
RegisterOrganizerBTEPWhenTue, Nov 05, 2013 - 3:00 pm - 4:30 pmWhereBuilding 37 Room 4041/4107 |
This talk will provide an overview of the extensive computing resources (both hardware and software) available through the NIH Helix Systems. Background: The Helix Systems group is responsible for the planning and management of high-performance computing systems specifically for the intramural NIH community. These systems include Helix, a multiprocessor shared-memory system for interactive use; Biowulf, an 18,000+ processor Linux cluster; and Helixweb, which provides a number of scientific tools via the web. These systems provide access to an extensive library of computational applications for molecular and structural biology, genomics, mathematical and graphical analysis, and other scientific fields. This talk is a rescheduled event for the talk postponed from October 22nd, 2013, | 2013-11-05 15:00:00 | Building 37 Room 4041/4107 | In-Person | Susan Chacko (HPC Biowulf),Steven Fellini PhD (NIH) | BTEP | 0 | Overview of Helix/Biowulf | |||
795 |
DescriptionThis 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of ChIP-Seq data analysis. Learn everything from experimental design to statistical analysis and several downstream motif and pattern discovery methods using both commercial (Genomatix) and open source software. Those who successfully complete this course will receive a certificate, that will not only look good on their wall, but will also entitle their lab to an additional ...Read More This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of ChIP-Seq data analysis. Learn everything from experimental design to statistical analysis and several downstream motif and pattern discovery methods using both commercial (Genomatix) and open source software. Those who successfully complete this course will receive a certificate, that will not only look good on their wall, but will also entitle their lab to an additional subsidy from OSTR towards the cost of a ChIP-Seq sequencing run. Day 1 - AM (9:30-12) Introductory Lecture
Bioinformatics Core Presentation
Day 1 - AM (2:00-5:00) Hands-On with Genomatix
Day 2 - AM (9:30-12:00) Hands-On with Genomatix
Day 2 - AM (2:00-5:00) Data Visualization (Peter FitzGerald, PhD - CCR, NCI)
RegisterOrganizerBTEPWhenThu, Nov 21 - Fri, Nov 22, 2013 -9:30 am - 5:00 pmWhereIn-Person |
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of ChIP-Seq data analysis. Learn everything from experimental design to statistical analysis and several downstream motif and pattern discovery methods using both commercial (Genomatix) and open source software. Those who successfully complete this course will receive a certificate, that will not only look good on their wall, but will also entitle their lab to an additional subsidy from OSTR towards the cost of a ChIP-Seq sequencing run. Day 1 - AM (9:30-12) Introductory Lecture (Peter FitzGerald, PhD - CCR, NCI) Introduction Historical Perspective and Technical Variations Experimental methodology Comparison to ChIP-Chip Data Analysis Experimental Design Quality Control Peak Calling (Different methodologies) Major Sources of Error Causes of Fail Experiments Validation Methods Sequence Specific Binding Identification of Motifs Overexpressed sequences Pathways Resources Public Repositories Literature References Software directories Bioinformatics Core Presentation (Anand Merchant, PhD - CCRIFX) Lessons learned How to work with the Core Encode "Best Practices" Guides to success Day 1 - AM (2:00-5:00) Hands-On with Genomatix(Susan Dombrowski, PhD - Genomatix) Interacting with the system Importing Data Peak Calling Day 2 - AM (9:30-12:00) Hands-On with Genomatix(Susan Dombrowski, PhD - Genomatix) Biological insights Motif Finding Pathways Day 2 - AM (2:00-5:00) Data Visualization (Peter FitzGerald, PhD - CCR, NCI) Review Visualization Tools Examples of good and bad data | 2013-11-21 09:30:00 | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | ChIP-Seq Data Analysis Workshop (2 day) | ||||
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DescriptionRegisterOrganizerBTEPWhenThu, Dec 05, 2013 - 9:00 am - 1:00 pmWhereIn-Person |
2013-12-05 09:00:00 | In-Person | Susan Chacko (HPC Biowulf) | BTEP | 0 | Hands-on Introduction of Helix/Biowulf | |||||
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DescriptionThis 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek, Genomatix) and open source software. Tuesday 18th, 9:30-12:00 This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek, Genomatix) and open source software. Tuesday 18th, 9:30-12:00
Tuesday 18th, 2:00-5:00
Wednesday 19th, 2:00-5:00
RegisterOrganizerBTEPWhenTue, Feb 18 - Wed, Feb 19, 2014 -9:30 am - 5:00 pmWhereBldg 12A, Room B51, Bethesda, MD |
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek, Genomatix) and open source software. Tuesday 18th, 9:30-12:00Introductory Lecture Sean Davis, MD, PhD - CCR, NCILink to Talk Slides on SlideShareTuedsay 18th, 12:00-12:30A Perspective from the CCR BioInformatics Core (CCRIFX)Parthav Jailwala - CCRIFX, NCI Lessons learned How to work with the Core "Best Practices" Guides to success Tuesday 18th, 2:00-5:00Hands-on: Open Source Tools Sean Davis, MD, PhD - CCR, NCI Link to Hands on TutorialWednesday 19th, 9:30-12:30Hands-on: RNA-Seq Analysis using Partek FlowXiaowen Wang, PhD - Partek Data import Add sample attribute Pre-alignment QA/QC Alignment Post-alignment QA/QC Quantification Differential expression detection Build analysis pipeline Wednesday 19th, 2:00-5:00Hands-on: RNA-Seq Analysis using GeomatixSusan Dombrowski, PhD - Genomatix Software, Inc. Introduction to the Genomatix Genome Analyzer (GGA) Import of data to the GGA Expression Analysis of RNA-Seq Visualization of RNA-seq isoforms Pathway Analysis Defining gene regulatory models of differentially-expressed genes | 2014-02-18 09:30:00 | Bldg 12A, Room B51, Bethesda, MD | In-Person | Parthav Jailwala (CCBR),Sean Davis (CU Anschutz),Xiaowen Wang (Partek) | BTEP | 0 | RNA-Seq Data Analysis | |||
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DescriptionThe Cancer Genome Atlas (TCGA) is a large-scale study that has catalogued genomic data accumulated from more than 20 different types of cancer including mutations, copy number variation, mRNA and miRNA gene expression, and DNA methylation. Being publicly distributed, it has become a major resource for cancer researchers in target discovery and in the biological interpretation and assessment of the clinical impact of genes of interest. This 2 day workshop will familiarize ...Read More The Cancer Genome Atlas (TCGA) is a large-scale study that has catalogued genomic data accumulated from more than 20 different types of cancer including mutations, copy number variation, mRNA and miRNA gene expression, and DNA methylation. Being publicly distributed, it has become a major resource for cancer researchers in target discovery and in the biological interpretation and assessment of the clinical impact of genes of interest. This 2 day workshop will familiarize the audience with the types of data available and analytical tools, including a number of software packages, that enable end-users to easily and effectively mine TCGA data. Day 1 - Tuesday March 18th 9:30-11:30 am
Learning Objectives:
Day 2 -Wednesday March 19th 9:30-12:30 pm
Oncomine™ Research Edition is a free powerful web application that integrates and unifies high-throughput cancer profiling data so that target expression across a large number of cancer types and experiments can be accessed online, in seconds. Oncomine™ Research Edition includes annual data updates and basic analysis types such as cancer vs. normal, multi-cancer, and co-expression. It features gene and concept summaries, outlier analysis, meta-analysis, and meta-cancer outlier profile analysis (COPA). Oncomine™ Research Premium Edition is a subscription-based software tool for academic researchers that provides additional advanced features and analyses over Oncomine™ Research Edition (www.oncomine.org).
This presentation will include the following topics:
Oncomine Research Premium Edition
Oncomine Gene Browser
RegisterOrganizerBTEPWhenTue, Mar 18 - Wed, Mar 19, 2014 -9:30 am - 5:00 pmWhereBldg 12A Room B51 Bethesda MD |
The Cancer Genome Atlas (TCGA) is a large-scale study that has catalogued genomic data accumulated from more than 20 different types of cancer including mutations, copy number variation, mRNA and miRNA gene expression, and DNA methylation. Being publicly distributed, it has become a major resource for cancer researchers in target discovery and in the biological interpretation and assessment of the clinical impact of genes of interest. This 2 day workshop will familiarize the audience with the types of data available and analytical tools, including a number of software packages, that enable end-users to easily and effectively mine TCGA data. Day 1 - Tuesday March 18th 9:30-11:30 amIntroductory Lecture to TCGA Data Analysis(Maxwell Lee, PhD - CCR NCI) Introduction A brief history Overview of TCGA data Discussion of three TCGA papers Identification of a CpG island methylator phenotype that defines a distinct subgroup of glioma. Cancer Cell. 2010 May 18;17(5):510-22. Comprehensive molecular portraits of human breast tumours. Nature. 2012 Oct 4;490(7418):61-70. Discovery and saturation analysis of cancer genes across 21 tumour types.Nature. 2014 Jan 23;505(7484):495-501. Using TCGA data Where to download the data? Some case studies of data analyses Day 1 - Tuesday March 18th 11:30-12:30 pmcBioPortal Demo(Anand Merchant, PhD, CCRIFX) This publicly accessible web-based resource provides visualization, analysis and download of large-scale cancer genomics data sets. As of early 2014 the Portal contains data for 15506 tumor samples from 56 cancer studies. This presentation will include: Introduction to the web application – mission and evolving goals – What is the purpose? Website walk-through – Where is the information and how to query it? Review of the Cancer and Data Types available in the underlying cBio database Advantages and Limitations OncoQueryLanguage (OQL) - Key words and Codes Features and Analytics Viewing and Interpretation of results Example Case with TCGA dataset (Breast Cancer – 2012 Nature publication) References/Tutorials/FAQ/Pre-set queries Q&A Day 1 - Tuesday March 18th 2:00-5:00 pmTCGA Data mining using Qlucore (emphasis on expression/methylation)(Carl-Johan Ivarsson, MSc - Qlucore) Qlucore Omics Explorer is a user-friendly and interactive software program for data visualization and analysis of any large numerical data set, especially developed for biologists. Through a straightforward user interface built on sliders and check-boxes the users get the possibility to explore and analyze very large data sets.With Qlucore Omics Explorer it is easy to investigate data and evaluate key biological information directly on screen, results are achieved immediately with only a few mouse-clicks. It is possible to work with multiple data sets and the users can introduce as many annotations and clinical parameters as they want – no limits. In this workshop you will learn how to use Qlucore Omics Explorer to mine TCGA data. Focus will be on working with two data sets and how to find relationships between gene expression and DNA methylation data. Learning Objectives: Import data and clinical annotations from TCGA Create new hypotheses and new findings using interactive visualization including PCA and heatmaps Learn how to focus the data mining by using interactive selections and statistical filters Work with both gene expression and DNA methylation data in an integrated manner Generate plots and lists for easy publication Day 2 -Wednesday March 19th 9:30-12:30 pmBioDiscovery Nexus: TCGA data analysis using Nexus DB (emphasis on Copy Number/mutation) (Andrea O Hara, PhD, Field Appliction Sceintist, BioDiscovery) Nexus Copy Number is a platform independent copy number analysis and visualization tool that includes co-visualization of sequence variants. NCI’s site license now includes unlimited access to TCGA Premier, a database of re-processed, curated and reviewed TCGA samples. The Nexus Copy Number training session will include: Approaches to optimizing CNV calling from array data. Downstream analysis of data sets, including: Visualization and statistical approaches for CNV discovery. Stratification by clinical annotation factors or biomarkers. Finding CNVs predictive of survival or other outcome data. TCGA Premier Data Access: How to access of CNV TCGA data directly from Nexus Query and Integration of TCGA CNV tumor profiles Day 2 - Wednesday March 19th 2:00-5:00 pmOncomine: TCGA data analysis (expression, CN, mutation analysis)(Matthew Anstett, Sr. Market Development Manager) Oncomine™ Research Edition is a free powerful web application that integrates and unifies high-throughput cancer profiling data so that target expression across a large number of cancer types and experiments can be accessed online, in seconds. Oncomine™ Research Edition includes annual data updates and basic analysis types such as cancer vs. normal, multi-cancer, and co-expression. It features gene and concept summaries, outlier analysis, meta-analysis, and meta-cancer outlier profile analysis (COPA). Oncomine™ Research Premium Edition is a subscription-based software tool for academic researchers that provides additional advanced features and analyses over Oncomine™ Research Edition (www.oncomine.org). This presentation will include the following topics: Oncomine Research Premium Edition Advanced differential expression analysis Cancer Outlier Profile Analysis (COPA) Signature mapping Import/export of findings Oncomine Gene Browser Mutation frequencies and gain/loss of function prediction DNA Copy frequencies in cancer Gene expression cancer panel Identifying cell line models | 2014-03-18 09:30:00 | Bldg 12A Room B51 Bethesda MD | In-Person | Maxwell Lee (CCR NCI) | BTEP | 0 | Workshop on TCGA Data Mining | |||
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DescriptionNCI CCR http://bioinformatics.nci.nih.gov/training/ and the NIH Library Bioinformatics This 3-hour, mainly hands-on, workshop will show you how to find and analyze NCI CCR http://bioinformatics.nci.nih.gov/training/ and the NIH Library Bioinformatics This 3-hour, mainly hands-on, workshop will show you how to find and analyze RegisterOrganizerBTEPWhenFri, Jun 20, 2014 - 1:00 pm - 4:00 pmWhereNIH Library Training Room, Building 10, Clinical Center, South Entrance |
NCI CCR http://bioinformatics.nci.nih.gov/training/ and the NIH Library Bioinformatics Support Program http://nihlibrary.nih.gov/Bioinformatics are partnering to sponsor training on the use of NCBI GEO Datasets to analyze gene expression data. This 3-hour, mainly hands-on, workshop will show you how to find and analyze relevant microarray and RNA-Seq datasets in NCBI's Gene Expression Omnibus resources. After learning about data concepts in GEO, you will use both precomputed analyses in GEO Profiles and the on-demand GEO2R tool with non-curated experiments to investigate expression of genes of interest. | 2014-06-20 13:00:00 | NIH Library Training Room, Building 10, Clinical Center, South Entrance | In-Person | Peter Cooper (NCBI) | BTEP | 0 | Using NCBI GEO Datasets to Analyze Gene Expression | |||
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DescriptionPLEASE NOTE: This 2 day workshop is a BYOC (Bring your own LapTop Computer) class. In order to provide more flexibility with room scheduling we are experimenting with a new format that involves students brining their own laptop computers to the class. This has the advantage that you can continue exactly where you left-off following the class. Government issued or personal computers are permitted. We will be able to ...Read More PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own LapTop Computer) class. In order to provide more flexibility with room scheduling we are experimenting with a new format that involves students brining their own laptop computers to the class. This has the advantage that you can continue exactly where you left-off following the class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Direction of FAES Classrooms (B1C204, B1C205) can be found here http://www.faes.org/announcements/directions_faes_classrooms_nih_campus Day 1 - AM (9:30-12) Introductory Lecture(Maggie Cam, PhD - CCR, NCI) Introduction
Data Analysis
Statistical Analysis
Visualization and Clustering
Validation and Downstream Analysis
Bioinformatics Core Presentation (Manjula Kasoji - CCRIFX)
(Xiaowen Wang, PhD - Partek) Partek Genomics Suite Analysis Workflow
Work independently on dataset Day 2 AM (9:30-12): Hands-on Partek Genomics Suite Analysis and Partek Pathway(Xiaowen Wang, PhD - Partek)
(Alan Berger, PhD - School of Medicine Johns Hopkins University) GSEA is a computational method that determines which (if any) a priori defined sets of genes are significantly differentially expressed, as an ensemble, between two biological states. It is an open-source program developed by the Broad Institute: http://www.broadinstitute.org/gsea/index.jsp Lecture
Hands-on
Work independently on another dataset
RegisterOrganizerBTEPWhenMon, Sep 29 - Tue, Sep 30, 2014 -9:30 am - 4:30 pmWhereIn-Person |
PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own LapTop Computer) class. In order to provide more flexibility with room scheduling we are experimenting with a new format that involves students brining their own laptop computers to the class. This has the advantage that you can continue exactly where you left-off following the class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Direction of FAES Classrooms (B1C204, B1C205) can be found here http://www.faes.org/announcements/directions_faes_classrooms_nih_campus Day 1 - AM (9:30-12) Introductory Lecture (Maggie Cam, PhD - CCR, NCI) Introduction Historical Perspective Microarray Technologies, Sample Processing Methods Microarray comparisons to RNA-Seq Data Analysis Experimental Design QC methods Preprocessing: Normalization and low level analysis algorithms Statistical Analysis Common statistical models used for analysis of microarray data Examples of blocking Batch effects and removal methods Visualization and Clustering Volcano Plot Principal Components Analysis Hierarchical Clustering K-means Clustering Validation and Downstream Analysis Validation methods Gene Ontology Enrichment and Pathway analysis tools Major Software applications Public Repositories of Microarray Data Bioinformatics Core Presentation (Manjula Kasoji - CCRIFX) Lessons learned and how to work with the core Day 1 - PM (1-4:30 pm): Hands-on Microarray analysis using Partek Genomics Suite (Xiaowen Wang, PhD - Partek) Partek Genomics Suite Analysis Workflow Process Cel files (RMA) Looking at data distributions, histograms, bar plots, MA plots, etc. Statistical Analysis (Anova) Create contrasts False Discovery Analysis Making lists of significant genes Venn Diagrams Work independently on dataset Day 2 AM (9:30-12): Hands-on Partek Genomics Suite Analysis and Partek Pathway (Xiaowen Wang, PhD - Partek) Unsupervised Clustering Custom Filtering Pathway ANOVA Work independently on another dataset Day 2 PM (1-4:30): GeneSet Enrichment Analysis (GSEA) (Alan Berger, PhD - School of Medicine Johns Hopkins University) GSEA is a computational method that determines which (if any) a priori defined sets of genes are significantly differentially expressed, as an ensemble, between two biological states. It is an open-source program developed by the Broad Institute: http://www.broadinstitute.org/gsea/index.jsp Lecture The general approach of gene set enrichment methods and comparison with DAVID How GSEA measures differential expression for each set of genes Controlling effects of multiple comparisons in GSEA (false discovery rate) The Broad Institute library of groups of gene sets (MSigDB) What files and formats are needed for GSEA User options and running GSEA Hands-on Loading the GSEA required input files for an example dataset Using and choosing values in the GSEA GUI interface Rank-based analysis Full dataset analysis Understanding the GSEA outputs and judging significance in the results Work independently on another dataset | 2014-09-29 09:30:00 | In-Person | Maggie Cam (NCI CCBR),Xiaowen Wang (Partek) | BTEP | 0 | Microarray Workshop (2 day) | ||||
789 |
DescriptionPLEASE NOTE: This 2 day workshop is a BYOC (Bring your own Laptop Computer) class. In order to provide more flexibility with room scheduling we are experimenting with a new format that involves students brining their own laptop computers to the class. This has the advantage that you can continue exactly where you left-off following the class. Government issued or personal computers are permitted. We will be able to supply a very ...Read More PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own Laptop Computer) class. In order to provide more flexibility with room scheduling we are experimenting with a new format that involves students brining their own laptop computers to the class. This has the advantage that you can continue exactly where you left-off following the class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Direction of FAES Classrooms (B1C204, B1C205) can be found here http://www.faes.org/announcements/directions_faes_classrooms_nih_campus This class is now full - you may still register, but will be place on a waiting list for potential openings Click Here to Register Day 1 AM (Oct 27) - 9:30-12:30 Introductory Lecture(Maxwell Lee, PhD - CCR, NCI)
(Mary Goldman, PhD - U.C. Santa Cruz) This workshop will teach users how to use the UCSC Cancer Browser, https://genome-cancer.ucsc.edu/, a web-based tool that integrates relevant data, analysis and visualization, allowing users to easily discover and share their research observations. Users will learn how to explore the relationship between genomic alterations and phenotypes by visualizing various -omic data alongside clinical and phenotypic features, such as age, subtype classifications and genomic biomarkers. Users will download and upload clinical data, generate Kaplan-Meier plots dynamically as well as generate URL bookmarks of specific views of the data to share with others. The Cancer Genomics Browser currently hosts 575 datasets from genome-wide analyses of over 227,000 samples, including datasets from TCGA, CCLE, Connectivity Map and TARGET. Day 2 AM (Oct 28) - 9:30-12:30 BioDiscovery Nexus(Andrea O'Hara, PhD - Field Appliction Sceintist, BioDiscovery) Nexus Copy Number is a platform independent copy number analysis and visualization tool that includes co-visualization of sequence variants. With an easy to use visual interface, Nexus Copy Number allows for quick review and detailed analysis of population-wide copy number alterations across the entire genome. NCI¹s site license includes unlimited access to TCGA Premier, a database of re-processed, curated and reviewed TCGA samples. In this workshop, you will learn how to use Nexus Copy Number software to mine TCGA copy number data. The training session will focus on access of the TCGA data within the software and a detailed evaluation of one TCGA data set to identify statistically significant changes within the sample population. Learning Objectives:
Day 2 PM (Oct 28) - 1:30-4:30 CBioPortal This publicly accessible web-based resource provides visualization, analysis and download of large-scale cancer genomics data sets.
RegisterOrganizerBTEPWhenMon, Oct 27 - Tue, Oct 28, 2014 -9:30 am - 4:30 pmWhereBldg 10 - FAES Classroom 1 (B1C204) |
PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own Laptop Computer) class. In order to provide more flexibility with room scheduling we are experimenting with a new format that involves students brining their own laptop computers to the class. This has the advantage that you can continue exactly where you left-off following the class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Direction of FAES Classrooms (B1C204, B1C205) can be found here http://www.faes.org/announcements/directions_faes_classrooms_nih_campus This class is now full - you may still register, but will be place on a waiting list for potential openings Click Here to Register Day 1 AM (Oct 27) - 9:30-12:30 Introductory Lecture (Maxwell Lee, PhD - CCR, NCI) Introduction A brief history Overview of TCGA data TCGA data access policy and download Discussion of TCGA papers Identification of a CpG island methylator phenotype that defines a distinct subgroup of glioma. Cancer Cell. 2010 May 18;17(5):510-22. Comprehensive molecular portraits of human breast tumours. Nature. 2012 Oct 4;490(7418):61-70. Discovery and saturation analysis of cancer genes across 21 tumour types. Nature. 2014 Jan 23;505(7484):495-501. Multiplatform analysis of 12 cancer types reveals molecular classification within and across tissues of origin. Cell. 2014 Aug 14;158(4):929-44. Day 1 PM (Oct 27) - 1:30-4:30 UCSC Cancer Browser (Mary Goldman, PhD - U.C. Santa Cruz) This workshop will teach users how to use the UCSC Cancer Browser, https://genome-cancer.ucsc.edu/, a web-based tool that integrates relevant data, analysis and visualization, allowing users to easily discover and share their research observations. Users will learn how to explore the relationship between genomic alterations and phenotypes by visualizing various -omic data alongside clinical and phenotypic features, such as age, subtype classifications and genomic biomarkers. Users will download and upload clinical data, generate Kaplan-Meier plots dynamically as well as generate URL bookmarks of specific views of the data to share with others. The Cancer Genomics Browser currently hosts 575 datasets from genome-wide analyses of over 227,000 samples, including datasets from TCGA, CCLE, Connectivity Map and TARGET. Day 2 AM (Oct 28) - 9:30-12:30 BioDiscovery Nexus (Andrea O'Hara, PhD - Field Appliction Sceintist, BioDiscovery) Nexus Copy Number is a platform independent copy number analysis and visualization tool that includes co-visualization of sequence variants. With an easy to use visual interface, Nexus Copy Number allows for quick review and detailed analysis of population-wide copy number alterations across the entire genome. NCI¹s site license includes unlimited access to TCGA Premier, a database of re-processed, curated and reviewed TCGA samples. In this workshop, you will learn how to use Nexus Copy Number software to mine TCGA copy number data. The training session will focus on access of the TCGA data within the software and a detailed evaluation of one TCGA data set to identify statistically significant changes within the sample population. Learning Objectives: How to access of CNV TCGA data directly from Nexus. Visualization and statistical approaches for CNV discovery. Sample stratification by clinical annotation factors or biomarkers. Finding CNVs predictive of survival or other outcome data. Generate publication-ready figures and charts during analysis. Query and integration of TCGA CNV tumor profiles with existing copy number data. Day 2 PM (Oct 28) - 1:30-4:30 CBioPortal (Nikolaus Schultz, PhD - Memorial Sloan-Kettering Cancer Center and Anand Merchant, MD, PhD. - CCR, NCI) This publicly accessible web-based resource provides visualization, analysis and download of large-scale cancer genomics data sets. As of early 2014 the Portal contains data for 15506 tumor samples from 56 cancer studies. This presentation will include: Introduction to the web application – mission and evolving goals – What is the purpose? Website walk-through – Where is the information and how to query it? Review of the Cancer and Data Types available in the underlying cBio database Advantages and Limitations OncoQueryLanguage (OQL) - Key words and Codes Features and Analytics Viewing and Interpretation of results Example Case with TCGA dataset (Breast Cancer – 2012 Nature publication) References/Tutorials/FAQ/Pre-set queries Q&A | 2014-10-27 09:30:00 | Bldg 10 - FAES Classroom 1 (B1C204) | In-Person | Maxwell Lee (CCR NCI) | BTEP | 0 | TCGA Data Analysis Workshop (2 day) | |||
787 |
DescriptionDay 1 - AM (9:30-12:30) Introductory Lecture
Day 1 - AM (9:30-12:30) Introductory Lecture
Day 1 - PM (1:30-4:30) Introduction to Genomatix
Day 2 - AM (9:30-12:30) Genomatix Continued
(Chongzhi/George Zang, PhD - Dana-Farber Cancer Institute, Harvard School of Public Health) Cistrome (cistrome.org) is a web-based platform for ChIP-chip and ChIP-seq data analysis and integration. “Cistrome” refers to the in vivo genome-wide location of a transcription factor or a histone modification, which can be characterized using ChIP-chip or ChIP-seq. In this training session, I will introduce the basic functions of Cistrome analysis pipeline and the recently launched Cistrome dataset browser, which has collected over 12,000 public ChIP-seq datasets. Then I will give a practical example to analyze a ChIP-seq dataset using a series of tools on Cistrome. The practice will include:
UCSC Demo lnks RegisterOrganizerBTEPWhenTue, Nov 18 - Wed, Nov 19, 2014 -9:30 am - 4:30 pmWhereFAES Classroom 4 |
Day 1 - AM (9:30-12:30) Introductory Lecture(Peter FitzGerald, PhD - CCR, NCI) Introduction Historical Perspective and Technical Variations Experimental methodology Comparison to ChIP-Chip Data Analysis Experimental Design Quality Control Peak Calling (Different methodologies) Major Sources of Error Causes of Fail Experiments Validation Methods Sequence Specific Binding Identification of Motifs Overexpressed sequences Pathways Resources Public Repositories Literature References Software listings Day 1 - PM (1:30-4:30) Introduction to Genomatix The Genomatix Mining Stations (GMS) and the Genomatix Genome Analyzer (GGA) at the NCI(Susan Dombrowski, PhD - Genomatix) The basics of these tools Importing data and mapping of NGS data on the GMS Day 2 - AM (9:30-12:30) Genomatix Continued(Susan Dombrowski, PhD - Genomatix) Import of data to the GGA Automated, Complete Workflow for ChIP-Seq Analysis Peak Finding Read and Peak Classification Sequence Extraction TFBS overrepresenation Definition of new TFBS Downstream Application Areas Position Correlation with ENCODE ChIP-Seq data Annotation of binding regions: target prediction Pathway analysis of potential TF targets Day 2 - PM (1:30-4:30) ChIP-Seq data analysis and integration using Cistrome (Chongzhi/George Zang, PhD - Dana-Farber Cancer Institute, Harvard School of Public Health) Cistrome (cistrome.org) is a web-based platform for ChIP-chip and ChIP-seq data analysis and integration. “Cistrome” refers to the in vivo genome-wide location of a transcription factor or a histone modification, which can be characterized using ChIP-chip or ChIP-seq. In this training session, I will introduce the basic functions of Cistrome analysis pipeline and the recently launched Cistrome dataset browser, which has collected over 12,000 public ChIP-seq datasets. Then I will give a practical example to analyze a ChIP-seq dataset using a series of tools on Cistrome. The practice will include: ChIP-seq peak calling using MACS ChIP-seq integrative analyses ChIP-seq and gene expression data integration using BETA Investigate public ChIP-seq data using Cistrome Dataset Browser UCSC Demo lnks USCS-with data hub Helix-with data hub | 2014-11-18 09:30:00 | FAES Classroom 4 | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | ChIP-Seq Data Analysis Workshop (2-day) | |||
788 |
DescriptionDay 1 - AM (9:30 AM – 12:30 PM) Ingenuity IPA - Basic Training
Day 1 - AM (9:30 AM – 12:30 PM) Ingenuity IPA - Basic Training
Day 1 - PM - (1:30 PM – 4:30 PM) Ingenuity IPA - Data Analysis
Day 2 - AM (9:30 AM – 12:30 PM) MetaCore - Introductory Topics
Day 2 - AM (1:30 AM – 4:30 PM) MetaCore - Advanced Topics
RegisterOrganizerBTEPWhenWed, Dec 17, 2014 - 9:30 pm - 4:30 pmWhereIn-Person |
Day 1 - AM (9:30 AM – 12:30 PM) Ingenuity IPA - Basic Training (Kate Wendelsdorf, Ph.D. - Ingenuity Pathway Analysis) Ingenuity IPA® is the industry leading software solution to model, analyze, and understand complex biological and chemical systems foundational to human health and disease. Quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in >10,000 peer-reviewed articles. Getting Started Fundamentals of IPA Overview of key features Search & Pathway Building Advanced Search Building & editing pathways Using Build & Overlay tools Day 1 - PM - (1:30 PM – 4:30 PM) Ingenuity IPA - Data Analysis (Kate Wendelsdorf, Ph.D. - Ingenuity Pathway Analysis) Dataset Analysis Data Upload & Analysis Interpretation of Gene, Transcript, Protein & Metabolite Data Pathway Analysis & Canonical Pathways Downstream Effects &vInterpreting the Heat Map Upstream Regulators & Regulator Effects Analysis Interpreting networks Comparison & multiple observations analysis Day 2 - AM (9:30 AM – 12:30 PM) MetaCore - Introductory Topics (Matthew Wampole, Ph.D. - Thomson Reuters Metacore) MetaCore™ is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. The scope of data types includes microarray and sequence-based gene expression, SNPs and CGH arrays, RNAi screens, gene variants, proteomics, metabolomics, Co-IP pull-out and other custom interactions which can all by analyzed in tandem. MetaCore™ is based on a proprietary manually-curated database of human protein-protein, protein-DNA and protein-compound interactions, metabolic and signaling pathways for human, mouse and rat, supported by proprietary ontologies and controlled vocabulary. The analytical package includes easy-to-use, intuitive tools for searching and data visualization, enabling the identification of the most relevant biological pathways, networks, and processes in our “virtual lab.” General Overview: Thomson Reuters Systems Biology Solutions Knowledge Mining: Explore the database and exporting Uploading, filtering and setting a background· Running Functional Enrichments and exploring Pathway Maps Running Workflows Day 2 - AM (1:30 AM – 4:30 PM) MetaCore - Advanced Topics (Matthew Wampole, Ph.D. - Thomson Reuters Metacore) Interactome Analysis: Finding key hubs in your data Microarray Repository: Using and comparing public datasets Network Building: When to use each algorithm | 2014-12-17 21:30:00 | In-Person | BTEP | 0 | Pathway Analysis Workshop (2-day) | |||||
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...Read More
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A Short Course in R for Biologists
"A Short Course in R for Biologists" is a two-day course given in four three-hour sessions entitled: Introduction to R, Introduction to Bioconductor, Introduction to Microarray Analysis, and Introduction to NGS Data Analysis. Day Morning Session, 9:30 AM-12:30 PM Afternoon Session, 1:30 PM-4:30 PM Jan 29 Introduction to R Introduction to Bioconductor Jan 30 Introduction to Microarray Analysis Introduction to NGS Data Analysis Web-based resources for this class: (See Below for PDF versions)
The course will include frequent, short hands-on periods so students should bring their own laptops with a working installation of R, version 3.1 or later. In addition, several R packages will be used which must be installed prior to the course. R is a console application. Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. If you are comfortable running programs, viewing output, and editing files at the terminal, you will not need RStudio in order to take the course. However, RStudio offers quite an array of functions that you may still find useful and it is well worth a look. R InstallationThe R program and instructions for its installation under Linux, Mac OSX, and Windows can be found here: Bioconductor and Bioconductor Package InstallationComplete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGene affy simpleaffy arrayQualityMetrics limma survival ggplot2 hthgu133acdf hthgu133a.db gplotsBriefly, the following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above: # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene","affy","simpleaffy","arrayQualityMetrics","limma","survival","ggplot2","hthgu133acdf","hthgu133a.db","gplots")) RStudio InstallationInstall the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Class Outline Day 1 (Jan 29), Morning Session: Introduction to R
The objective of this session is to initiate students in the analysis of microarrays using R and Bioconductor. To better help students take advantage of the microarray services offered by the Laboratory of Molecular Technology at NCI-Frederick, the focus of the course will be on the analysis of data from Affymetrix chips. It is assumed that the student has some knowledge of microarray workflows.
RegisterOrganizerBTEPWhenThu, Jan 29 - Fri, Jan 30, 2015 -9:30 am - 4:30 pmWhereFAES Classroom 4 |
/* element spacing */ p, pre { margin: 0em 0em 1em; } /* center images and tables */ img, table { margin: 0em auto 1em; } p { text-align: justify; } tt, code, pre { font-family: 'DejaVu Sans Mono', 'Droid Sans Mono', 'Lucida Console', Consolas, Monaco, monospace; } h1, h2, h3, h4, h5, h6 { font-family: Helvetica, Arial, sans-serif; margin: 1.2em 0em 0.6em 0em; font-weight: bold; } h1 { font-size: 250%; font-weight: normal; color: #87b13f; line-height: 1.1em; } h2 { font-size: 160%; font-weight: normal; line-height: 1.4em; border-bottom: 1px #1a81c2 solid; } h3 { font-size: 130%; } h2, h3 { color: #1a81c2; } h4, h5, h6 { font-size:115%; } /* not expecting to dive deeper than four levels on a single page */ /* links are simply blue, hovering slightly less blue */ a { color: #1a81c2; } a:active { outline: none; } a:visited { color: #1a81c2; } a:hover { color: #4c94c2; } pre, img { max-width: 100%; display: block; } pre { border: 0px none; background-color: #F8F8F8; white-space: pre; overflow-x: auto; } pre code { border: 1px #aaa dashed; background-color: white; display: block; padding: 1em; color: #111; overflow-x: inherit; } /* markdown v1 */ pre code[class] { background-color: inherit; } /* markdown v2 */ pre[class] code { background-color: inherit; } /* formatting of inline code */ code { color: #87b13f; font-size: 92%; } /* formatting of tables */ table, td, th { border: none; padding: 0 0.5em; } /* alternating row colors */ tbody tr:nth-child(odd) td { background-color: #F8F8F8; } blockquote { # color:#666666; color:#ff0000; margin:0; padding-left: 1em; border-left: 0.5em #EEE solid; font-size:13pt; } hr { height: 0px; border-bottom: none; border-top-width: thin; border-top-style: dotted; border-top-color: #999999; } @media print { * { background: transparent !important; color: black !important; filter:none !important; -ms-filter: none !important; } body { font-size:12pt; max-width:100%; } a, a:visited { text-decoration: underline; } hr { visibility: hidden; page-break-before: always; } pre, blockquote { padding-right: 1em; page-break-inside: avoid; } tr, img { page-break-inside: avoid; } img { max-width: 100% !important; } @page :left { margin: 15mm 20mm 15mm 10mm; } @page :right { margin: 15mm 10mm 15mm 20mm; } p, h2, h3 { orphans: 3; widows: 3; } h2, h3 { page-break-after: avoid; } } code{white-space: pre;} pre:not([class]) { background-color: white; } .main-container { max-width: 940px; margin-left: auto; margin-right: auto; } code { color: inherit; background-color: rgba(0, 0, 0, 0.04); } img { max-width:100%; height: auto; } A Short Course in R for Biologists "A Short Course in R for Biologists" is a two-day course given in four three-hour sessions entitled: Introduction to R, Introduction to Bioconductor, Introduction to Microarray Analysis, and Introduction to NGS Data Analysis. Day Morning Session, 9:30 AM-12:30 PM Afternoon Session, 1:30 PM-4:30 PM Jan 29 Introduction to R Introduction to Bioconductor Jan 30 Introduction to Microarray Analysis Introduction to NGS Data Analysis Registration Required Web-based resources for this class: (See Below for PDF versions) Introduction to R for Biologists (David Wheeler) Introduction to Bioconductor (David Wheeler) Introduction to R (Sean Davis) Vignettes (Sean Davis) Data Files (Fathi Elloumi) R script (Fathi Elloumi) The course will include frequent, short hands-on periods so students should bring their own laptops with a working installation of R, version 3.1 or later. In addition, several R packages will be used which must be installed prior to the course. R is a console application. Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. If you are comfortable running programs, viewing output, and editing files at the terminal, you will not need RStudio in order to take the course. However, RStudio offers quite an array of functions that you may still find useful and it is well worth a look. R Installation The R program and instructions for its installation under Linux, Mac OSX, and Windows can be found here: http://cran.r-project.org/ Bioconductor and Bioconductor Package Installation Complete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGene affy simpleaffy arrayQualityMetrics limma survival ggplot2 hthgu133acdf hthgu133a.db gplots Briefly, the following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above: # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene","affy","simpleaffy","arrayQualityMetrics","limma","survival","ggplot2","hthgu133acdf","hthgu133a.db","gplots")) RStudio Installation Install the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Class Outline Day 1 (Jan 29), Morning Session: Introduction to R The R environment Starting an R Session, Setting Options Listing Variables, Editing Commands, Using the R History Getting Help on an R Function Logging a Session to a File Running External R Code Installing and Loading Packages Ending a Session, Saving Your Work The Elements of R Numeric Character Logical Missing Values R Data Structures Vectors Matrices Lists Data.Frames Factors Functions Other Complex Structures Procedures Reading and Writing Data Exploring and Summarizing Data Dealing with Missing Data Restructuring Data Relabeling Data Subsetting Data Operating on Rows or Columns of Data Saving R Objects for Later Use Graphing Data Simple Statistical Tests Example: A Simple Analysis of Probe Intensity Data Project: Creating a Graphical Function in 4 Easy Steps Step 1: Create an X-Y Plot to Compare Two Arrays Step 2: Package the X-Y Plot as a Function Step 3: Create a Median Array as a Better Standard for Comparison Step 4: Rotate and Scale the Plot-Voila, You Have Created a MAPlot! Day 1 (Jan 29), Afternoon Session: Introduction to Bioconductor Installing Bioconductor An Overview of Bioconductor Packages Fundamental Packages Biobase: the Foundation Biostrings: A Representation of Biological Sequences BSgenome: A Representation of Complete Genomic Sequences GenomicRanges: Manipulation of Genomic Intervals GenomicFeatures: Manipulation of Genomic Features GenomicAlgnments: Manipulation of Short Genomic Alignments Two Fundamental Structures to Contain Experiment Data The ExpressionSet for Array Data Constructing an ExpressionSet Analyzing an ExpressionSet The SummarizedExperiment for NGS Sequence Data Constructing a SummarizedExperiment Analyzing a SummarizedExperiment Day 2 (Jan 30), Morning Session: Introduction to Microarray Analysis The objective of this session is to initiate students in the analysis of microarrays using R and Bioconductor. To better help students take advantage of the microarray services offered by the Laboratory of Molecular Technology at NCI-Frederick, the focus of the course will be on the analysis of data from Affymetrix chips. It is assumed that the student has some knowledge of microarray workflows. Downloading Data from The Cancer Genome Atlas Databases Preliminary Steps: Array Pre-Processing Checking the Quality of Arrays Performing Array Normalization Identifying Differentially Expressed Genes Data Visualization Performing Principal Component Analysis (PCA) Computing and Interpreting Heatmaps Computing and Interpreting Kaplan Meir Curves Day 2 (Jan 30), Afternoon Session: Introduction to NGS Data Analysis Details to be announced | 2015-01-29 09:30:00 | FAES Classroom 4 | In-Person | David Wheeler PhD. (Laboratory of Biochemistry and Molecular Biology CCR NCI),Sean Davis (CU Anschutz) | BTEP | 0 | R/Bioconductor Basics Workshop (2-day) | |||
785 |
DescriptionThis 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek, Genomatix) and open source software. Day 1 - 9:30-12:30 This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek, Genomatix) and open source software. Day 1 - 9:30-12:30 Day 1 - 1:30-4:30 Xiaowen Wang, PhD - Partek Hands-on RNA-seq training on Partek Flow. It starts from importing raw sequence data in fastq format, perform QA/QC, alignment, quantification, differential expression detection and biological interpretation in Partek Flow. Day 2 - 9:30-12:30 This class is showing downstream RNA-seq data analysis using Partek Genomic Suite. It will start with normalized read count data generated from Partek Flow to do expression data analysis in PGS. Different format of data importer will be illustrated, followed by standard gene expression analysis workflow including QA/QC, differential expression detection and biological interpretation using Partek Pathway will be demonstrated. Objectives: Students will learn how to use basic features of Partek Flow and Partek Genomics Suite to: · Flow o Import data · PGS o Import Partek Flow project and text file format Day 2 - 1:30-4:30
RegisterOrganizerBTEPWhenThu, Feb 19, 2015 - 9:30 am - 4:30 amWhereFAES Classroom 4 |
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek, Genomatix) and open source software. Day 1 - 9:30-12:30Introductory Lecture Sean Davis, MD, PhD - CCR, NCI Day 1 - 1:30-4:30RNA-Seq Analysis using Partek Flow Xiaowen Wang, PhD - Partek Hands-on RNA-seq training on Partek Flow. It starts from importing raw sequence data in fastq format, perform QA/QC, alignment, quantification, differential expression detection and biological interpretation in Partek Flow. Day 2 - 9:30-12:30Read count data analysis using Partek Genomic SuiteXiaowen Wang, PhD - Partek This class is showing downstream RNA-seq data analysis using Partek Genomic Suite. It will start with normalized read count data generated from Partek Flow to do expression data analysis in PGS. Different format of data importer will be illustrated, followed by standard gene expression analysis workflow including QA/QC, differential expression detection and biological interpretation using Partek Pathway will be demonstrated. Objectives: Students will learn how to use basic features of Partek Flow and Partek Genomics Suite to: · Flow o Import data o Perform QA/AC o Alignment o Gene/transcript abundance estimate o Differential expression detection o Go Enrichment o Visualization (PCA, dotplot, vocano plot, chromosome view, hierarchical clustering etc.) · PGS o Import Partek Flow project and text file format o Perform QA/QC of imported data o Detect differential expression o Pathway analysis o Visualization (PCA, dot plot, heatmap etc.) Day 2 - 1:30-4:30RNA-Seq Analysis using GeomatixSusan Dombrowski, PhD - Genomatix Software, Inc. Introduction to the Genomatix Genome Analyzer (GGA) Import of data to the GGA Automated workflow: Expression Analysis of RNA-Seq Data Pathway and Literature-based Analyses of differentially-expressed genes Visualization of RNA-seq data in the Genomatix Genome Browser and Transcriptome Viewer | 2015-02-19 09:30:00 | FAES Classroom 4 | In-Person | Sean Davis (CU Anschutz),Xiaowen Wang (Partek) | BTEP | 0 | RNA-Seq Data Analysis Workshop (2-day) | |||
784 |
DescriptionThis workshop will cover basics of exome-seq analysis including downstream interpretation of variants using a variety of open-source and commercial webtools (Golden Helix, IGV, Ingenuity Variant Analysis, GeneGrid (Genomatix), MuPit/Cravat). Day 1 - AM (9:30-12:30) Introductory Lectures
This workshop will cover basics of exome-seq analysis including downstream interpretation of variants using a variety of open-source and commercial webtools (Golden Helix, IGV, Ingenuity Variant Analysis, GeneGrid (Genomatix), MuPit/Cravat). Day 1 - AM (9:30-12:30) Introductory Lectures
(Chih-Hao Hsu, PhD - CBIIT)
(Li Jia, MSc - CCBR)
Day 1 - PM (1:30-4:30) Golden Helix Day 2 - AM (9:30-12:30) Day 2 - PM (1:30-4:30) CRAVAT/MuPIT - Analysis of Genomic Variants CRAVAT (www.cravat.us) is a free tool for high-throughput analysis of sequencing variants. CRAVAT is funded by NCI’s Informatics Technology for Cancer Research program. CRAVAT accepts very large variant data files and returns a wide variety of annotations and scores that help with identification of important variants. CRAVAT is a cancer focused analysis package tailored to the needs of cancer studies. The workshop will provide some background on CRAVAT and lots of hands-on exercises to learn how to use the tool and interpret the results. MuPIT (mupit.icm.jhu) is a sister tool to CRAVAT that shows mutations on 3D protein structures. Clusters of mutations in 3D space are not always apparent from the position of mutations on a protein sequence. For proteins with solved structures, MuPIT can show the position of mutations from your study along with a variety of structural annotations (e.g. the position of a DNA binding site). MuPIT also includes a pre-built database of TCGA mutations so an investigator’s mutations can be viewed in the context of mutations and mutation clusters from other cancer studies. The focus of the workshop will be a series of exercises to learn how to visualize your mutations in MuPIT, how CRAVAT and MuPIT are integrated, and how to manipulate, investigate, and understand the results. RegisterOrganizerBTEPWhenWed, Mar 18, 2015 - 9:30 pm - 4:30 pmWhereIn-Person |
This workshop will cover basics of exome-seq analysis including downstream interpretation of variants using a variety of open-source and commercial webtools (Golden Helix, IGV, Ingenuity Variant Analysis, GeneGrid (Genomatix), MuPit/Cravat). Day 1 - AM (9:30-12:30) Introductory Lectures(Chunhua Yan, PhD - CBIIT) Next generation sequencing technology Exome sequencing (Cost, Speed, Gene coverage, Biological implication) Experimental design (Sample size, Coverage, Sample submission) Mutation Calling (Dream challenge, Genome in Bottle) (Chih-Hao Hsu, PhD - CBIIT) VCF Visualization Mutation call software overview and algorithms Databases (1000 genomes, ClinVar, cBio, …) (Li Jia, MSc - CCBR) Lessons learned from experimental design Best practices in CCBR workflow (includes the discussion on the benchmark, GATK and others used in the tech dev) Annovar annotation and filtering How to collaborate with CCBR – guide to success Day 1 - PM (1:30-4:30) Golden Helix(Bryce Christensen PhD - Golden Helix) Cancer gene panel analysis Whole exome Tumor/normal analysis Whole exome trio analysis Whole exome extended family analysis with PhoRank Population based NGS workflows including collapsing methods Integrative Genomics Viewer (IGV) (Online Tutorial: self-guided) Click here to view the Tutorial (needs VPN, for NIH only) The Integrative Genomics Viewer (IGV) is a high-performance visualization tool for interactive exploration of large, integrated genomic datasets. It supports a wide variety of data types, including array-based and next-generation sequence data, and genomic annotations. Visualizing variant (VCF) and alignment (BAM) files using IGV Day 2 - AM (9:30-12:30)GeneGrid (Susan Dombrowski, PhD - Genomatix) Genomic variants like SNPs or small InDels are of major interest to biologists and clinicians alike. Identification of the relevant variants within a genome is crucial for the understanding of molecular mechanisms and diagnostics of rare or common diseases. GeneGrid enables you to reduce the millions of variants generated by today's NGS experiments to the few or even the single relevant one(s) with a few clicks and generate a detailed report of the findings. Variants of interest and their associated alignment files can be visualized in the context of Genomatix' curated genomic data content, and literature and pathway analysis of variants of interest can also be performed within the same application. In this session, a publicly-available cancer exome-seq dataset (normal/tumor) will be used as a case-study to showcase the features and functionality of GeneGrid for use in clinical studies. Ingenuity Variant Analysis (Sohela Shah, PhD - Ingenuity) Ingenuity Variant Analysis combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based both upon published biological evidence and your own knowledge of disease biology. With Variant Analysis, you can interrogate your variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. QIAGEN Ingenuity Variant Analysis training will include uploading, annotating, and searching samples, and setting up, reviewing, and exportinganalyses. We will review the different filter settings, particularly focusing on the genetic analysis and statistical association. Day 2 - PM (1:30-4:30) CRAVAT/MuPIT - Analysis of Genomic Variants(Michael Ryan - Johns Hopkins University) CRAVAT (www.cravat.us) is a free tool for high-throughput analysis of sequencing variants. CRAVAT is funded by NCI’s Informatics Technology for Cancer Research program. CRAVAT accepts very large variant data files and returns a wide variety of annotations and scores that help with identification of important variants. CRAVAT is a cancer focused analysis package tailored to the needs of cancer studies. The workshop will provide some background on CRAVAT and lots of hands-on exercises to learn how to use the tool and interpret the results. MuPIT (mupit.icm.jhu) is a sister tool to CRAVAT that shows mutations on 3D protein structures. Clusters of mutations in 3D space are not always apparent from the position of mutations on a protein sequence. For proteins with solved structures, MuPIT can show the position of mutations from your study along with a variety of structural annotations (e.g. the position of a DNA binding site). MuPIT also includes a pre-built database of TCGA mutations so an investigator’s mutations can be viewed in the context of mutations and mutation clusters from other cancer studies. The focus of the workshop will be a series of exercises to learn how to visualize your mutations in MuPIT, how CRAVAT and MuPIT are integrated, and how to manipulate, investigate, and understand the results. | 2015-03-18 21:30:00 | In-Person | Sohela Shah (Ingenuity) | BTEP | 0 | Exome-Seq Data Analysis Workshop (2-day) | ||||
783 |
DescriptionThis workshop will cover some basic concepts involved in the integration of different types of NGS data in order to obtain a better overall picture of the underlying biology. Specifically, the course will examine the integration of micro RNA and mRNA expression data as well as methylation, mutation and copy number alteration as they relate to mRNA expression. Topics covered in the lecture components will be complemented by hands-on sessions with software from Partek, ...Read More This workshop will cover some basic concepts involved in the integration of different types of NGS data in order to obtain a better overall picture of the underlying biology. Specifically, the course will examine the integration of micro RNA and mRNA expression data as well as methylation, mutation and copy number alteration as they relate to mRNA expression. Topics covered in the lecture components will be complemented by hands-on sessions with software from Partek, cBioPortal and Qlucore. PLEASE NOTE: This 1 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. AM 9:30-11:00 - Introductory Lecture
AM 11:00-12:00 - NGS Data Integration (cBioPortal) (Parthav Jailwala, MSc- CCBR) The cBioPortal for Cancer Genomics (http://cbioportal.org) provides a Web resource for exploring, visualizing and analyzing multidimensional cancer genomics data that is curated from large scale cancer genomic data sets. Users can visualize patterns of gene alterations across samples in a cancer study, compare gene alteration frequencies across multiple cancer studies, or summarize all relevant genomic alterations in an individual tumor sample. Genomic data types integrated by cBioPortal include somatic mutations, DNA copy-number alterations (CNAs), mRNA and microRNA (miRNA) expression and DNA methylation. In this session, followed by an introductory overview of data integration in cBioPortal, we will carry out a brief hands-on exercise of querying and visualizing different data-types in TCGA related to a few key genes in human GBM.
(Carl Johan Ivarsson)
Direction of FAES Classrooms (B1C207) can be found here http://www.faes.org/announcements/directions_faes_classrooms_nih_campus RegisterOrganizerBTEPWhenTue, Jun 02, 2015 - 9:30 am - 4:30 pmWhereBldg 10: FAES Classroom 3 (B1C207) |
This workshop will cover some basic concepts involved in the integration of different types of NGS data in order to obtain a better overall picture of the underlying biology. Specifically, the course will examine the integration of micro RNA and mRNA expression data as well as methylation, mutation and copy number alteration as they relate to mRNA expression. Topics covered in the lecture components will be complemented by hands-on sessions with software from Partek, cBioPortal and Qlucore. PLEASE NOTE: This 1 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. AM 9:30-11:00 - Introductory Lecture(Anand Merchant MD, PhD - CCBR) Concepts Data types Modalities Challenges Example Workflows Hands-on exercise (Partek/IPA) Genomics Data Integration (mRNA/miRNA) AM 11:00-12:00 - NGS Data Integration (cBioPortal) (Parthav Jailwala, MSc- CCBR) The cBioPortal for Cancer Genomics (http://cbioportal.org) provides a Web resource for exploring, visualizing and analyzing multidimensional cancer genomics data that is curated from large scale cancer genomic data sets. Users can visualize patterns of gene alterations across samples in a cancer study, compare gene alteration frequencies across multiple cancer studies, or summarize all relevant genomic alterations in an individual tumor sample. Genomic data types integrated by cBioPortal include somatic mutations, DNA copy-number alterations (CNAs), mRNA and microRNA (miRNA) expression and DNA methylation. In this session, followed by an introductory overview of data integration in cBioPortal, we will carry out a brief hands-on exercise of querying and visualizing different data-types in TCGA related to a few key genes in human GBM. Introductory Lecture Hands on with FireBrowse and cBioPortal PM 1:30-4:30 Qlucore Omics Explorer - Basic Training & Data Integration (Carl Johan Ivarsson) Introduction and Live demonstration ~ 30 min Introduction and terminology Visualize data using PCA Identify discriminating variables using basic statistical tests Export variable lists and images Presentation of data in different plot types Integrate data sets Basic Hands-on Training including Data Integration methylation/mRNA ~ 2 hours Visualize (PCA, color according to annotation) Identify discriminating variables (t-test) Create Variable Lists Present the results in different plots (heat map and box plot) Data Integration – mRNA/methylation Direction of FAES Classrooms (B1C207) can be found here http://www.faes.org/announcements/directions_faes_classrooms_nih_campus | 2015-06-02 09:30:00 | Bldg 10: FAES Classroom 3 (B1C207) | In-Person | Parthav Jailwala (CCBR) | BTEP | 0 | Data Integration Workshop | |||
782 |
DescriptionLearn the basics of microarray gene expression analysis using Partek Genomics Suite and Open Source Tools. As we walk though hands-on analysis of a cancer dataset, you will learn the principles of experimental design, batch correction, statistics, and how to extract biological meaning from the results using tools geneset analyses and pathways. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own LapTop Computer) class. ...Read More Learn the basics of microarray gene expression analysis using Partek Genomics Suite and Open Source Tools. As we walk though hands-on analysis of a cancer dataset, you will learn the principles of experimental design, batch correction, statistics, and how to extract biological meaning from the results using tools geneset analyses and pathways. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own LapTop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Direction of FAES Classroom 7 (B1C206) can be found here: http://www.faes.org/announcements/directions_faes_classrooms_nih_campus Day 1 - AM (9:30-11:30) Introductory Lecture(Maggie Cam, PhD - CCR, NCI) Introduction
Data Analysis
Statistical Analysis
Visualization and Clustering
Validation and Downstream Analysis
Day 1 - PM (2:00-4:30 pm): Hands-on Gene Expression Data Analysis in Partek Genomics Suite (Xiaowen Wang, PhD - Partek) Attendees will learn how to use basic features of Partek Genomics Suite for the analysis on Gene Expression Data. An Affymetrix Gene Expression Data will be used to conduct Gene Expression workflow:
(Xiaowen Wang, PhD - Partek)
(Parthav Jailwala, MSc- CCBR, NCI) GEO2R is an interactive web tool that allows users to compare two or more groups of samples in a GEO Series in order to identify genes that are differentially expressed across experimental conditions. GEO2R performs comparisons on original submitter-supplied processed data tables using the GEOquery and limma R packages from the Bioconductor project. Bioconductor is an open source software project based on the R programming language that provides tools for the analysis of high-throughput genomic data. The GEOquery R package parses GEO data into R data structures that can be used by other R packages. The limma (Linear Models for Microarray Analysis) R package has emerged as one of the most widely used statistical tests for identifying differentially expressed genes. It handles a wide range of experimental designs and data types and applies multiple-testing corrections on P-values to help correct for the occurrence of false positives. Thus, GEO2R provides a simple interface that allows users to perform R statistical analysis without command line expertise. Lecture
(David/Dawei Huang, M.D. - LMB, CCR, NCI) The Database for Annotation, Visualization and Integrated Discovery (DAVID ) provides a comprehensive set of functional annotation tools for investigators to understand biological meaning behind large list of genes. Lecture
GSEA is a computational method that determines which (if any) a priori defined sets of genes are significantly differentially expressed, as an ensemble, between two biological states. It is an open-source program developed by the Broad Institute: http://www.broadinstitute.org/gsea/index.jsp Lecture
Hands-on
RegisterOrganizerBTEPWhenTue, Sep 22 - Wed, Sep 23, 2015 -9:30 am - 4:30 pmWhereBldg10: FAES Classroom 7 ( B1C206) |
Learn the basics of microarray gene expression analysis using Partek Genomics Suite and Open Source Tools. As we walk though hands-on analysis of a cancer dataset, you will learn the principles of experimental design, batch correction, statistics, and how to extract biological meaning from the results using tools geneset analyses and pathways. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own LapTop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Direction of FAES Classroom 7 (B1C206) can be found here: http://www.faes.org/announcements/directions_faes_classrooms_nih_campus Day 1 - AM (9:30-11:30) Introductory Lecture (Maggie Cam, PhD - CCR, NCI) Introduction Historical Perspective Microarray Technologies, Sample Processing Methods Microarray comparisons to RNA-Seq Data Analysis Experimental Design QC methods Preprocessing: Normalization and low level analysis algorithms Statistical Analysis Common statistical models used for analysis of microarray data Examples of blocking Batch effects and removal methods Visualization and Clustering Volcano Plot Principal Components Analysis Hierarchical Clustering K-means Clustering Validation and Downstream Analysis Validation methods Gene Ontology Enrichment and Pathway analysis tools Major Software applications Public Repositories of Microarray Data Day 1 - PM (2:00-4:30 pm): Hands-on Gene Expression Data Analysis in Partek Genomics Suite (Xiaowen Wang, PhD - Partek) Attendees will learn how to use basic features of Partek Genomics Suite for the analysis on Gene Expression Data. An Affymetrix Gene Expression Data will be used to conduct Gene Expression workflow: Import data Perform QA/QC of imported data Exploratory data analysis Detect differential expression (ANOVA) Gene list creation Day 2 - AM (9:30-11:30): Hands-on Gene Expression Data Analysis in Partek Genomics Suite - Continued (Xiaowen Wang, PhD - Partek) Biological interpretation Visualization (PCA, histogram, box plot, dot plot, volcano plot, interaction plot heatmap etc.) Day 2 - PM (1:30-2:30): GEO2R (Parthav Jailwala, MSc- CCBR, NCI) GEO2R is an interactive web tool that allows users to compare two or more groups of samples in a GEO Series in order to identify genes that are differentially expressed across experimental conditions. GEO2R performs comparisons on original submitter-supplied processed data tables using the GEOquery and limma R packages from the Bioconductor project. Bioconductor is an open source software project based on the R programming language that provides tools for the analysis of high-throughput genomic data. The GEOquery R package parses GEO data into R data structures that can be used by other R packages. The limma (Linear Models for Microarray Analysis) R package has emerged as one of the most widely used statistical tests for identifying differentially expressed genes. It handles a wide range of experimental designs and data types and applies multiple-testing corrections on P-values to help correct for the occurrence of false positives. Thus, GEO2R provides a simple interface that allows users to perform R statistical analysis without command line expertise. Lecture Background on GEO datasets What is GEO2R and how can it help you How to use GEO2R Options and features Limitations and caveats Hands-on exercise Day 2 - PM (2:30-3:30): DAVID (David/Dawei Huang, M.D. - LMB, CCR, NCI) The Database for Annotation, Visualization and Integrated Discovery (DAVID ) provides a comprehensive set of functional annotation tools for investigators to understand biological meaning behind large list of genes. Lecture Brief principle of DAVID gene enrichment analysis Term-centric analysis of a large gene list Gene-centric analysis of a large gene list Pathway map view of a large gene list Nature Protocols 4:44 (http://www.nature.com/nprot/journal/v4/n1/abs/nprot.2008.211.html) Day 2 - PM (3:30-4:30): GeneSet Enrichment Analysis (GSEA) (Maggie Cam, PhD - CCR, NCI) GSEA is a computational method that determines which (if any) a priori defined sets of genes are significantly differentially expressed, as an ensemble, between two biological states. It is an open-source program developed by the Broad Institute: http://www.broadinstitute.org/gsea/index.jsp Lecture The general approach of gene set enrichment methods and comparison with DAVID How GSEA measures differential expression for each set of genes Controlling effects of multiple comparisons in GSEA (false discovery rate) The Broad Institute library of groups of gene sets (MSigDB) What files and formats are needed for GSEA User options and running GSEA Hands-on Loading the GSEA required input files for an example dataset Using and choosing values in the GSEA GUI interface Rank-based analysis Full dataset analysis Understanding the GSEA outputs and judging significance in the results | 2015-09-22 09:30:00 | Bldg10: FAES Classroom 7 ( B1C206) | In-Person | Maggie Cam (NCI CCBR),Parthav Jailwala (CCBR),Xiaowen Wang (Partek) | BTEP | 0 | Microarray Workshop (2 day) | |||
781 |
DescriptionIngenuity IPA® is the industry leading software solution to model, analyze, and understand complex biological and chemical systems foundational to human health and disease. Quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in >10,000 peer-reviewed articles. PLEASE NOTE: This 1 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. ...Read More Ingenuity IPA® is the industry leading software solution to model, analyze, and understand complex biological and chemical systems foundational to human health and disease. Quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in >10,000 peer-reviewed articles. PLEASE NOTE: This 1 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Morning Session (9:30 AM – 12:30 PM) Ingenuity IPA - Basic Training (Dev Mistry, Ph.D. - Ingenuity Pathway Analysis) Getting Started
Afternoon Session - (1:30 PM – 4:30 PM) Ingenuity IPA - Data Analysis (Dev Mistry, Ph.D. - Ingenuity Pathway Analysis) Dataset Analysis
RegisterOrganizerBTEPWhenTue, Oct 13, 2015 - 9:30 am - 4:30 pmWhereFAES Room 2 – B1C209 |
Ingenuity IPA® is the industry leading software solution to model, analyze, and understand complex biological and chemical systems foundational to human health and disease. Quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in >10,000 peer-reviewed articles. PLEASE NOTE: This 1 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Morning Session (9:30 AM – 12:30 PM) Ingenuity IPA - Basic Training (Dev Mistry, Ph.D. - Ingenuity Pathway Analysis) Getting Started Fundamentals of IPA Overview of key features Search & Pathway Building Advanced Search Building & editing pathways Using Build & Overlay tools Afternoon Session - (1:30 PM – 4:30 PM) Ingenuity IPA - Data Analysis (Dev Mistry, Ph.D. - Ingenuity Pathway Analysis) Dataset Analysis Data Upload & Analysis Interpretation of Gene, Transcript, Protein & Metabolite Data Pathway Analysis & Canonical Pathways Downstream Effects &vInterpreting the Heat Map Upstream Regulators & Regulator Effects Analysis Interpreting networks Comparison & multiple observations analysis | 2015-10-13 09:30:00 | FAES Room 2 – B1C209 | In-Person | Devendra Mistry (QIAGEN) | BTEP | 0 | Pathway Analysis using Ingenuity IPA | |||
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Description
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...Read More
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A Short Course in R for Biologists
"A Short Course in R for Biologists" is a two-day course given in four three-hour sessions entitled: Introduction to R, Introduction to Bioconductor, Introduction to Microarray Analysis, and Introduction to NGS Data Analysis. Day Morning Session, 9:30 AM-12:30 PM Afternoon Session, 1:30 PM-4:30 PM Oct 22 Introduction to R Introduction to Bioconductor Oct 23 Introduction to Microarray Analysis Introduction to NGS Data AnalysisPLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Web-based resources for this class: (See Below for PDF versions)
The course will include frequent, short hands-on periods so students should bring their own laptops with a working installation of R, version 3.1 or later. In addition, several R packages will be used which must be installed prior to the course. R is a console application. Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. If you are comfortable running programs, viewing output, and editing files at the terminal, you will not need RStudio in order to take the course. However, RStudio offers quite an array of functions that you may still find useful and it is well worth a look. R InstallationThe R program and instructions for its installation under Linux, Mac OSX, and Windows can be found here: Bioconductor and Bioconductor Package InstallationComplete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGene affy simpleaffy arrayQualityMetrics limma survival ggplot2 hthgu133acdf hthgu133a.db gplotsBriefly, the following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above: # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene","affy","simpleaffy","arrayQualityMetrics","limma","survival","ggplot2","hthgu133acdf","hthgu133a.db","gplots")) RStudio InstallationInstall the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Class Outline Day 1 (Oct 22), Morning Session: Introduction to R
The objective of this session is to initiate students in the analysis of microarrays using R and Bioconductor. To better help students take advantage of the microarray services offered by the Laboratory of Molecular Technology at NCI-Frederick, the focus of the course will be on the analysis of data from Affymetrix chips. It is assumed that the student has some knowledge of microarray workflows.
RegisterOrganizerBTEPWhenThu, Oct 22 - Fri, Oct 23, 2015 -9:30 am - 4:30 pmWhereFAES Room 3 – B1C207 |
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Day Morning Session, 9:30 AM-12:30 PM Afternoon Session, 1:30 PM-4:30 PM Oct 22 Introduction to R Introduction to Bioconductor Oct 23 Introduction to Microarray Analysis Introduction to NGS Data Analysis Registration Required PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Web-based resources for this class: (See Below for PDF versions) Introduction to R for Biologists (David Wheeler) Introduction to Bioconductor (David Wheeler) Introduction to R (Sean Davis) Vignettes (Sean Davis) Data Files (Fathi Elloumi) R script (Fathi Elloumi) The course will include frequent, short hands-on periods so students should bring their own laptops with a working installation of R, version 3.1 or later. In addition, several R packages will be used which must be installed prior to the course. R is a console application. Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. If you are comfortable running programs, viewing output, and editing files at the terminal, you will not need RStudio in order to take the course. However, RStudio offers quite an array of functions that you may still find useful and it is well worth a look. R Installation The R program and instructions for its installation under Linux, Mac OSX, and Windows can be found here: http://cran.r-project.org/ Bioconductor and Bioconductor Package Installation Complete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGene affy simpleaffy arrayQualityMetrics limma survival ggplot2 hthgu133acdf hthgu133a.db gplots Briefly, the following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above: # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene","affy","simpleaffy","arrayQualityMetrics","limma","survival","ggplot2","hthgu133acdf","hthgu133a.db","gplots")) RStudio Installation Install the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Class Outline Day 1 (Oct 22), Morning Session: Introduction to R The R environment Starting an R Session, Setting Options Listing Variables, Editing Commands, Using the R History Getting Help on an R Function Logging a Session to a File Running External R Code Installing and Loading Packages Ending a Session, Saving Your Work The Elements of R Numeric Character Logical Missing Values R Data Structures Vectors Matrices Lists Data.Frames Factors Functions Other Complex Structures Procedures Reading and Writing Data Exploring and Summarizing Data Dealing with Missing Data Restructuring Data Relabeling Data Subsetting Data Operating on Rows or Columns of Data Saving R Objects for Later Use Graphing Data Simple Statistical Tests Example: A Simple Analysis of Probe Intensity Data Project: Creating a Graphical Function in 4 Easy Steps Step 1: Create an X-Y Plot to Compare Two Arrays Step 2: Package the X-Y Plot as a Function Step 3: Create a Median Array as a Better Standard for Comparison Step 4: Rotate and Scale the Plot-Voila, You Have Created a MAPlot! Day 1 (Oct 22), Afternoon Session: Introduction to Bioconductor Installing Bioconductor An Overview of Bioconductor Packages Fundamental Packages Biobase: the Foundation Biostrings: A Representation of Biological Sequences BSgenome: A Representation of Complete Genomic Sequences GenomicRanges: Manipulation of Genomic Intervals GenomicFeatures: Manipulation of Genomic Features GenomicAlgnments: Manipulation of Short Genomic Alignments Two Fundamental Structures to Contain Experiment Data The ExpressionSet for Array Data Constructing an ExpressionSet Analyzing an ExpressionSet The SummarizedExperiment for NGS Sequence Data Constructing a SummarizedExperiment Analyzing a SummarizedExperiment Day 2 (Oct 23), Morning Session: Introduction to Microarray Analysis The objective of this session is to initiate students in the analysis of microarrays using R and Bioconductor. To better help students take advantage of the microarray services offered by the Laboratory of Molecular Technology at NCI-Frederick, the focus of the course will be on the analysis of data from Affymetrix chips. It is assumed that the student has some knowledge of microarray workflows. Downloading Data from The Cancer Genome Atlas Databases Preliminary Steps: Array Pre-Processing Checking the Quality of Arrays Performing Array Normalization Identifying Differentially Expressed Genes Data Visualization Performing Principal Component Analysis (PCA) Computing and Interpreting Heatmaps Computing and Interpreting Kaplan Meir Curves Day 2 (Oct 23), Afternoon Session: Introduction to NGS Data Analysis Details to be announced | 2015-10-22 09:30:00 | FAES Room 3 – B1C207 | In-Person | David Wheeler PhD. (Laboratory of Biochemistry and Molecular Biology CCR NCI),Sean Davis (CU Anschutz) | BTEP | 0 | R/Bioconductor Basics Workshop (2-day) | |||
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Description
A Short Course in R for Biologists
"A Short Course in R for Biologists" is a two-day course given in four three-hour sessions entitled: Introduction to R, Introduction to Bioconductor, Introduction to Microarray Analysis, and Introduction to NGS Data Analysis. Day Morning Session, 9:30 AM-12:30 PM Afternoon Session, 1:30 PM-4:30 PM Nov 9 Introduction to R Introduction to Bioconductor Nov 10 Introduction to Microarray Analysis Introduction to NGS Data Analysis
A Short Course in R for Biologists
"A Short Course in R for Biologists" is a two-day course given in four three-hour sessions entitled: Introduction to R, Introduction to Bioconductor, Introduction to Microarray Analysis, and Introduction to NGS Data Analysis. Day Morning Session, 9:30 AM-12:30 PM Afternoon Session, 1:30 PM-4:30 PM Nov 9 Introduction to R Introduction to Bioconductor Nov 10 Introduction to Microarray Analysis Introduction to NGS Data AnalysisPLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Web-based resources for this class: (See Below for PDF versions)
The course will include frequent, short hands-on periods so students should bring their own laptops with a working installation of R, version 3.1 or later. In addition, several R packages will be used which must be installed prior to the course. R is a console application. Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. If you are comfortable running programs, viewing output, and editing files at the terminal, you will not need RStudio in order to take the course. However, RStudio offers quite an array of functions that you may still find useful and it is well worth a look. R InstallationThe R program and instructions for its installation under Linux, Mac OSX, and Windows can be found here: Bioconductor and Bioconductor Package InstallationComplete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGene affy simpleaffy arrayQualityMetrics limma survival ggplot2 hthgu133acdf hthgu133a.db gplotsBriefly, the following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above: # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene","affy","simpleaffy","arrayQualityMetrics","limma","survival","ggplot2","hthgu133acdf","hthgu133a.db","gplots")) RStudio InstallationInstall the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Class Outline Day 1 (Nov 9), Morning Session: Introduction to R
The objective of this session is to initiate students in the analysis of microarrays using R and Bioconductor. To better help students take advantage of the microarray services offered by the Laboratory of Molecular Technology at NCI-Frederick, the focus of the course will be on the analysis of data from Affymetrix chips. It is assumed that the student has some knowledge of microarray workflows.
Details to be announced RegisterOrganizerBTEPWhenMon, Nov 09 - Tue, Nov 10, 2015 -9:30 am - 4:30 pmWhereFAES - Classroom 7/6 |
A Short Course in R for Biologists "A Short Course in R for Biologists" is a two-day course given in four three-hour sessions entitled: Introduction to R, Introduction to Bioconductor, Introduction to Microarray Analysis, and Introduction to NGS Data Analysis. Day Morning Session, 9:30 AM-12:30 PM Afternoon Session, 1:30 PM-4:30 PM Nov 9 Introduction to R Introduction to Bioconductor Nov 10 Introduction to Microarray Analysis Introduction to NGS Data Analysis Registration Required PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Web-based resources for this class: (See Below for PDF versions) Introduction to R for Biologists (David Wheeler) Introduction to Bioconductor (David Wheeler) Introduction to R (Sean Davis) Vignettes (Sean Davis) Data Files (Fathi Elloumi) R script (Fathi Elloumi) The course will include frequent, short hands-on periods so students should bring their own laptops with a working installation of R, version 3.1 or later. In addition, several R packages will be used which must be installed prior to the course. R is a console application. Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. If you are comfortable running programs, viewing output, and editing files at the terminal, you will not need RStudio in order to take the course. However, RStudio offers quite an array of functions that you may still find useful and it is well worth a look. R Installation The R program and instructions for its installation under Linux, Mac OSX, and Windows can be found here: http://cran.r-project.org/ Bioconductor and Bioconductor Package Installation Complete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGene affy simpleaffy arrayQualityMetrics limma survival ggplot2 hthgu133acdf hthgu133a.db gplots Briefly, the following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above: # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene","affy","simpleaffy","arrayQualityMetrics","limma","survival","ggplot2","hthgu133acdf","hthgu133a.db","gplots")) RStudio Installation Install the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Class Outline Day 1 (Nov 9), Morning Session: Introduction to R The R environment Starting an R Session, Setting Options Listing Variables, Editing Commands, Using the R History Getting Help on an R Function Logging a Session to a File Running External R Code Installing and Loading Packages Ending a Session, Saving Your Work The Elements of R Numeric Character Logical Missing Values R Data Structures Vectors Matrices Lists Data.Frames Factors Functions Other Complex Structures Procedures Reading and Writing Data Exploring and Summarizing Data Dealing with Missing Data Restructuring Data Relabeling Data Subsetting Data Operating on Rows or Columns of Data Saving R Objects for Later Use Graphing Data Simple Statistical Tests Example: A Simple Analysis of Probe Intensity Data Project: Creating a Graphical Function in 4 Easy Steps Step 1: Create an X-Y Plot to Compare Two Arrays Step 2: Package the X-Y Plot as a Function Step 3: Create a Median Array as a Better Standard for Comparison Step 4: Rotate and Scale the Plot-Voila, You Have Created a MAPlot! Day 1 (Nov 9), Afternoon Session: Introduction to Bioconductor Installing Bioconductor An Overview of Bioconductor Packages Fundamental Packages Biobase: the Foundation Biostrings: A Representation of Biological Sequences BSgenome: A Representation of Complete Genomic Sequences GenomicRanges: Manipulation of Genomic Intervals GenomicFeatures: Manipulation of Genomic Features GenomicAlgnments: Manipulation of Short Genomic Alignments Two Fundamental Structures to Contain Experiment Data The ExpressionSet for Array Data Constructing an ExpressionSet Analyzing an ExpressionSet The SummarizedExperiment for NGS Sequence Data Constructing a SummarizedExperiment Analyzing a SummarizedExperiment Day 2 (Nov 10), Morning Session: Introduction to Microarray Analysis The objective of this session is to initiate students in the analysis of microarrays using R and Bioconductor. To better help students take advantage of the microarray services offered by the Laboratory of Molecular Technology at NCI-Frederick, the focus of the course will be on the analysis of data from Affymetrix chips. It is assumed that the student has some knowledge of microarray workflows. Downloading Data from The Cancer Genome Atlas Databases Preliminary Steps: Array Pre-Processing Checking the Quality of Arrays Performing Array Normalization Identifying Differentially Expressed Genes Data Visualization Performing Principal Component Analysis (PCA) Computing and Interpreting Heatmaps Computing and Interpreting Kaplan Meir Curves Day 2 (Nov 10), Afternoon Session: Introduction to NGS Data Analysis Details to be announced | 2015-11-09 09:30:00 | FAES - Classroom 7/6 | In-Person | David Wheeler PhD. (Laboratory of Biochemistry and Molecular Biology CCR NCI),Sean Davis (CU Anschutz) | BTEP | 0 | R/Bioconductor Basics Workshop (2-day) | |||
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Description
REGISTRATION FULL - Please signup for Session 2 December 7/8
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek) and open source software. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. ...Read More
REGISTRATION FULL - Please signup for Session 2 December 7/8
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek) and open source software. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Day 1 - 9:30-12:30 Link to Talk Slides on SlideShare Day 1 - 1:30-4:30 http://watson.nci.nih.gov/~sdavis/tutorials/RNASeqBeginnerTutorial/RNASeqTutorial.html
Day 2 - 9:30-12:30 An overview of getting started on the NIH Helix server and then hands-on RNA-seq training on Partek Flow. The training starts from importing raw sequence data in fastq format, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation.
Day 2 - 1:30-4:30 Read count data analysis using Partek Genomic Suite This class will provide a demo of microarray and RNA-seq integration within Partek Flow followed by hands-on training for downstream RNA-seq data analysis using Partek Genomic Suite. Starting with normalized read count data generated from Partek Flow, data import into PGS will be illustrated. This will be followed by a standard gene expression analysis workflow including QA/QC, differential expression detection and biological interpretation using Partek Pathway. Objectives: Students will learn how to use basic features of Partek Flow and Partek Genomics Suite, including: · Flow
· PGS
RegisterOrganizerBTEPWhenTue, Dec 01 - Wed, Dec 02, 2015 -9:30 am - 4:30 pmWhereIn-Person |
REGISTRATION FULL - Please signup for Session 2 December 7/8 This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek) and open source software. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Day 1 - 9:30-12:30Introductory Lecture Sean Davis, MD, PhD - CCR, NCI Link to Talk Slides on SlideShare Day 1 - 1:30-4:30Use of Open Source tools for RNA-SeqSean Davis, MD, PhD - CCR, NCI http://watson.nci.nih.gov/~sdavis/tutorials/RNASeqBeginnerTutorial/RNASeqTutorial.html Day 2 - 9:30-12:30RNA-Seq Analysis using Partek FlowEric Seiser, PhD - Partek Field Application Specialist An overview of getting started on the NIH Helix server and then hands-on RNA-seq training on Partek Flow. The training starts from importing raw sequence data in fastq format, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation. Day 2 - 1:30-4:30 Read count data analysis using Partek Genomic SuiteEric Seiser, PhD - Partek Field Application Specialist This class will provide a demo of microarray and RNA-seq integration within Partek Flow followed by hands-on training for downstream RNA-seq data analysis using Partek Genomic Suite. Starting with normalized read count data generated from Partek Flow, data import into PGS will be illustrated. This will be followed by a standard gene expression analysis workflow including QA/QC, differential expression detection and biological interpretation using Partek Pathway. Objectives: Students will learn how to use basic features of Partek Flow and Partek Genomics Suite, including: · Flow Getting set up on NIH Helix server Importing data Performing QA/AC Alignment Gene/transcript abundance estimation Differential expression detection Go Enrichment analysis Visualization (PCA, dotplot, volcano plot, chromosome view, hierarchical clustering etc.) Microarray analysis and integration with RNA-seq data. · PGS Importing Partek Flow project and text file format Performing QA/QC of imported data Differential expression detection Pathway analysis Visualization (PCA, dot plot, heatmap etc.) | 2015-12-01 09:30:00 | In-Person | Sean Davis (CU Anschutz) | BTEP | 0 | RNA-Seq Data Analysis Workshop (2-day) - Session 1 [Dec 1/2] | ||||
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DescriptionThis 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek) and open source software. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be ...Read More This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek) and open source software. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Day 1 - 9:30-12:30 Link to Talk Slides on SlideShare Day 1 - 1:30-4:30 http://watson.nci.nih.gov/~sdavis/tutorials/RNASeqBeginnerTutorial/RNASeqTutorial.html Day 2 - 9:30-12:30 An overview of getting started on the NIH Helix server and then hands-on RNA-seq training on Partek Flow. The training starts from importing raw sequence data in fastq format, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation.
Day 2 - 1:30-4:30 Read count data analysis using Partek Genomic Suite This class will provide a demo of microarray and RNA-seq integration within Partek Flow followed by hands-on training for downstream RNA-seq data analysis using Partek Genomic Suite. Starting with normalized read count data generated from Partek Flow, data import into PGS will be illustrated. This will be followed by a standard gene expression analysis workflow including QA/QC, differential expression detection and biological interpretation using Partek Pathway. Objectives: Students will learn how to use basic features of Partek Flow and Partek Genomics Suite, including: · Flow
· PGS
RegisterOrganizerBTEPWhenMon, Dec 07 - Tue, Dec 08, 2015 -9:30 am - 4:30 pmWhereFAES - Classroom 3 (Bldg 10: Room: B1C205) |
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek) and open source software. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Day 1 - 9:30-12:30Introductory Lecture Sean Davis, MD, PhD - CCR, NCI Link to Talk Slides on SlideShare Day 1 - 1:30-4:30Use of Open Source tools for RNA-SeqSean Davis, MD, PhD - CCR, NCI http://watson.nci.nih.gov/~sdavis/tutorials/RNASeqBeginnerTutorial/RNASeqTutorial.html Day 2 - 9:30-12:30RNA-Seq Analysis using Partek FlowEric Seiser, PhD - Partek Field Application Specialist An overview of getting started on the NIH Helix server and then hands-on RNA-seq training on Partek Flow. The training starts from importing raw sequence data in fastq format, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation. Day 2 - 1:30-4:30 Read count data analysis using Partek Genomic SuiteEric Seiser, PhD - Partek Field Application Specialist This class will provide a demo of microarray and RNA-seq integration within Partek Flow followed by hands-on training for downstream RNA-seq data analysis using Partek Genomic Suite. Starting with normalized read count data generated from Partek Flow, data import into PGS will be illustrated. This will be followed by a standard gene expression analysis workflow including QA/QC, differential expression detection and biological interpretation using Partek Pathway. Objectives: Students will learn how to use basic features of Partek Flow and Partek Genomics Suite, including: · Flow Getting set up on NIH Helix server Importing data Performing QA/AC Alignment Gene/transcript abundance estimation Differential expression detection Go Enrichment analysis Visualization (PCA, dotplot, volcano plot, chromosome view, hierarchical clustering etc.) Microarray analysis and integration with RNA-seq data. · PGS Importing Partek Flow project and text file format Performing QA/QC of imported data Differential expression detection Pathway analysis Visualization (PCA, dot plot, heatmap etc.) | 2015-12-07 09:30:00 | FAES - Classroom 3 (Bldg 10: Room: B1C205) | In-Person | Sean Davis (CU Anschutz) | BTEP | 0 | RNA-Seq Data Analysis Workshop (2-day) - Session 2 [Dec 7/8] | |||
776 |
Description
REGISTRATION IS FULL FOR THIS WORKSHOP (25 ATTENDEES; 6 WAITLIST)
The Cancer Genome Atlas (TCGA) is a large-scale study that has cataloged genomic data accumulated for many different types of cancers, and includes mutations, copy number variation, mRNA and miRNA gene expression, and DNA methylation. Being publicly distributed, it has become a major resource for cancer researchers in target discovery and in the biological interpretation and assessment of the clinical ...Read More
REGISTRATION IS FULL FOR THIS WORKSHOP (25 ATTENDEES; 6 WAITLIST)
The Cancer Genome Atlas (TCGA) is a large-scale study that has cataloged genomic data accumulated for many different types of cancers, and includes mutations, copy number variation, mRNA and miRNA gene expression, and DNA methylation. Being publicly distributed, it has become a major resource for cancer researchers in target discovery and in the biological interpretation and assessment of the clinical impact of genes of interest. This 2-day workshop will familiarize the audience with the types of data available and analytical tools, including a number of software packages, that enable end-users to easily and effectively mine TCGA data. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Direction to FAES Academic Center Classrooms - please go to this webpage: https://faes.org/content/campus-life Day 1 AM (Thu, Jan 7) - 9:30 am-12:30 pm Introductory Lecture(Maxwell Lee, PhD - CCR, NCI) This session will include:
(Parthav Jailwala, MS - CCBR, NCI)
Day 2 AM (Fri, Jan 8) - 9:30 am -12:30 pm BioDiscovery Nexus (Andrea O'Hara, PhD - Field Application Scientist, BioDiscovery) Nexus Copy Number is a platform independent copy number analysis software that includes co-visualization of sequence variants and gene expression data at both the individual and population wide levels. With an easy to use visual interface, the software allows for quick review and detailed analysis of population-wide copy number alterations across the entire genome. NCI’s site license includes unlimited access to TCGA Premier, a database of re-processed, curated and reviewed TCGA samples.
(Nikolaus Schultz, PhD - Memorial Sloan-Kettering Cancer Center and Anand S. Merchant, MD, PhD. - CCBR, NCI) This publicly accessible web-based resource provides visualization, analysis and download of large-scale cancer genomics data sets. As of early 2016 the portal contains multidimensional data from 105 cancer genomics studies. This session will include:
RegisterOrganizerBTEPWhenThu, Jan 07 - Fri, Jan 08, 2016 -9:30 am - 4:30 pmWhereNIH Bldg 10 FAES Room 3 - B1C207 FAES |
REGISTRATION IS FULL FOR THIS WORKSHOP (25 ATTENDEES; 6 WAITLIST) The Cancer Genome Atlas (TCGA) is a large-scale study that has cataloged genomic data accumulated for many different types of cancers, and includes mutations, copy number variation, mRNA and miRNA gene expression, and DNA methylation. Being publicly distributed, it has become a major resource for cancer researchers in target discovery and in the biological interpretation and assessment of the clinical impact of genes of interest. This 2-day workshop will familiarize the audience with the types of data available and analytical tools, including a number of software packages, that enable end-users to easily and effectively mine TCGA data. PLEASE NOTE: This 2 day workshop is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Direction to FAES Academic Center Classrooms - please go to this webpage: https://faes.org/content/campus-life Day 1 AM (Thu, Jan 7) - 9:30 am-12:30 pm Introductory Lecture (Maxwell Lee, PhD - CCR, NCI) This session will include: A brief history of TCGA Overview of TCGA data portal TCGA data access policy and download Discussion of relevant TCGA publications Day 1 PM (Thu, Jan 7) - 1:30 - 4:30 pm Web-based exploration of TCGA data (Parthav Jailwala, MS - CCBR, NCI) In this session, after an introductory overview of graphical tools and features in FireBrowse, we will carryout a brief hands-on exercise of running different queries using the online FireBrowse portal. FireBrowse is a simple and elegant way to explore cancer data, backed by a powerful computational infrastructure, application programming interface (API), graphical tools and online reports. Graphical tools like viewGene to explore expression levels, and iCoMut to explore the comprehensive analysis profile of each TCGA disease study within a single, interactive figure are novel features of this portal. In this session, after an introductory overview of NG-CHM user interface and features, we will carryout a brief hands-on exercise of generating different types of NG-CHMs on TCGA datasets. Next-Generation (Clustered) Heat Maps (NG-CHMs) is another web-based tool for displaying clustered heat maps with links for statistical information, databases and other related analyses. These interactive heat maps enable the user to see an overview of the entire heatmap, and via interactive navigation controls, to zoom and pan across the heatmap to see details of the heatmap at many levels of resolution. Day 2 AM (Fri, Jan 8) - 9:30 am -12:30 pm BioDiscovery Nexus (Andrea O'Hara, PhD - Field Application Scientist, BioDiscovery) Nexus Copy Number is a platform independent copy number analysis software that includes co-visualization of sequence variants and gene expression data at both the individual and population wide levels. With an easy to use visual interface, the software allows for quick review and detailed analysis of population-wide copy number alterations across the entire genome. NCI’s site license includes unlimited access to TCGA Premier, a database of re-processed, curated and reviewed TCGA samples. In this workshop, you will learn how to use Nexus Copy Number software to mine TCGA copy number data. The Cancer Genome Atlas (TCGA) contains various types of genomic data from a wide variety of cancers, including several rare tumor types. The training session will focus on access of the TCGA data within the software and a detailed evaluation of one TCGA data set to identify statistically significant changes within the sample population. Learning Objectives: Access and integration of CNV, sequence variant and RNA-Seq expression TCGA data directly from Nexus. Visualization and statistical approaches for discovery. Sample stratification by clinical annotation factors or biomarkers. Finding CNVs predictive of survival or other outcome data. Generate publication-ready figures and charts during analysis. Day 2 PM (Fri, Jan 8) - 1:30 - 4:30 pm cBioPortal (Nikolaus Schultz, PhD - Memorial Sloan-Kettering Cancer Center and Anand S. Merchant, MD, PhD. - CCBR, NCI) This publicly accessible web-based resource provides visualization, analysis and download of large-scale cancer genomics data sets. As of early 2016 the portal contains multidimensional data from 105 cancer genomics studies. This session will include: Introduction to cBioPortal - Niki Schultz OncoQueryLanguage (OQL) - Key words and Codes Features, Analytics, and Interpreting Results Tutorials/Hands-on Exercises - Anand S. Merchant | 2016-01-07 09:30:00 | NIH Bldg 10 FAES Room 3 - B1C207 FAES | In-Person | Parthav Jailwala (CCBR),Maxwell Lee (CCR NCI) | BTEP | 0 | TCGA Data Analysis Workshop (2-day) | |||
775 |
Description
BTEP Workshop on Data Visualization, Exploration and Analysis
NOTE:This is a Bring Your Own Computer (BYOC) class, and will be simultaneously shared via GoToMeeting with attendees at the Advanced Technology Research Facility (ATRF) in Frederick, MD. Kindly select the location you plan to attend at the top of the registration page.
Date: February 8, 2016 (Monday)
Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm Two Venues: ...Read More
BTEP Workshop on Data Visualization, Exploration and Analysis
NOTE:This is a Bring Your Own Computer (BYOC) class, and will be simultaneously shared via GoToMeeting with attendees at the Advanced Technology Research Facility (ATRF) in Frederick, MD. Kindly select the location you plan to attend at the top of the registration page.
Date: February 8, 2016 (Monday)
Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm Two Venues: Live Workshop - NIH Bethesda - Bldg 10, FAES Room 3 (B1C207) For more information on the Frederick simulcast, please contact: Presenter: Mary Goldman https://genome-cancer.ucsc.edu/ The Xena Platform from the UC Santa Cruz Genomics Institute integrates and visualizes functional genomics data from easy-to-use data hubs, allowing you to view data from large public datasets, such as The Cancer Genome Atlas (TCGA) and the International Cancer Genome Consortium (ICGC), as well as your own private secure data, together or separately. In this hands-on workshop we will view various -omic data types, including, but not limited to, positional mutation data, copy number variation, gene and exon expression, and phenotype/clinical data such as age and subtype. We will view example 'private' data in conjunction with public data from TCGA. We will dynamically generate KM plots as well as view data as a spreadsheet heatmap, bar graphs, and scatter plots. Xena is also integrated with Galaxy, giving access to a myriad of bioinformatics tools for analysis. 1:30 pm – 4:30 pm – Data Exploration with QlucorePresenter: Sara Strandberg Qlucore Omics Explorer is an exploration tools to analyze your experiment data yourself. It empowers biologists and bench scientists to easily visualize and analyze large numerical data sets such as Gene expression (array and RNA seq), DNA methylation, Proteomics, Metabolomics and Flow Cytometry data. Hand-outs and documentation will be provided to attendees on the day of workshop. During the training you will learn how to: 1. Import and visualize data with various plot types - Heatmaps, PCA, Bar plots, Box plots, etc. 2. Identify discriminating variables using statistical tests - t-test, ANOVA, regression analysis 3. Use visualization to enhance the analysis and interpret results 4. Achieve biological insight and work with hypothesis generation 5. Export your result, such as variable lists and images IMPORTANT! Prior to the training please take the following steps. 1. Download and install the Qlucore software:
2. Activate Training License:
3. Download all of the files shared through the zipped file below - Course Material2: QlucoreTrainingMaterialsFeb82016
RegisterOrganizerBTEPWhenMon, Feb 08, 2016 - 9:30 am - 4:30 pmWhereIn-Person |
BTEP Workshop on Data Visualization, Exploration and Analysis NOTE:This is a Bring Your Own Computer (BYOC) class, and will be simultaneously shared via GoToMeeting with attendees at the Advanced Technology Research Facility (ATRF) in Frederick, MD. Kindly select the location you plan to attend at the top of the registration page. Date: February 8, 2016 (Monday)Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm Two Venues: Live Workshop - NIH Bethesda - Bldg 10, FAES Room 3 (B1C207)Remote Simulcast – ATRF, Room E1106 - 8560 Progress Dr, Frederick, MD For more information on the Frederick simulcast, please contact:Tracie Frederick, Technology Informationist, Scientific LibraryPhone: 301-846-1094Email: frederickt@mail.nih.gov AGENDA 9:30 am – 12:30 pm – Data Visualization with UCSC Cancer Browser Presenter: Mary Goldman https://genome-cancer.ucsc.edu/ The Xena Platform from the UC Santa Cruz Genomics Institute integrates and visualizes functional genomics data from easy-to-use data hubs, allowing you to view data from large public datasets, such as The Cancer Genome Atlas (TCGA) and the International Cancer Genome Consortium (ICGC), as well as your own private secure data, together or separately. In this hands-on workshop we will view various -omic data types, including, but not limited to, positional mutation data, copy number variation, gene and exon expression, and phenotype/clinical data such as age and subtype. We will view example 'private' data in conjunction with public data from TCGA. We will dynamically generate KM plots as well as view data as a spreadsheet heatmap, bar graphs, and scatter plots. Xena is also integrated with Galaxy, giving access to a myriad of bioinformatics tools for analysis. 1:30 pm – 4:30 pm – Data Exploration with Qlucore Presenter: Sara Strandberg Qlucore Omics Explorer is an exploration tools to analyze your experiment data yourself. It empowers biologists and bench scientists to easily visualize and analyze large numerical data sets such as Gene expression (array and RNA seq), DNA methylation, Proteomics, Metabolomics and Flow Cytometry data. Hand-outs and documentation will be provided to attendees on the day of workshop. During the training you will learn how to: 1. Import and visualize data with various plot types - Heatmaps, PCA, Bar plots, Box plots, etc. 2. Identify discriminating variables using statistical tests - t-test, ANOVA, regression analysis 3. Use visualization to enhance the analysis and interpret results 4. Achieve biological insight and work with hypothesis generation 5. Export your result, such as variable lists and images IMPORTANT! Prior to the training please take the following steps. 1. Download and install the Qlucore software: Go to www.qlucore.com/evaluation Complete the quick registration process (if you do not have a login username/password) Download and install the preferred version of the software (MAC or PC) 2. Activate Training License: Save the license file provided below as Course Material 1 - QluCoreLicenseFile (qlucore_license_file.lic) on your Desktop Open Qlucore Omics Explorer Go to License/Import License File and select the license file that you just saved on Desktop 3. Download all of the files shared through the zipped file below - Course Material2: QlucoreTrainingMaterialsFeb82016 | 2016-02-08 09:30:00 | In-Person | BTEP | 0 | Data Visualization, Exploration and Analysis | |||||
774 |
Description
BTEP Workshop on Pathway Analysis with MetaCore
NOTE:This is a Bring Your Own Computer (BYOC) class, and will be simultaneously shared via GoToMeeting with attendees at the Advanced Technology Research Facility (ATRF) in Frederick, MD. Kindly select the location you plan to attend at the top of the registration page.
Date: February 9, 2016 (Tuesday)
Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm Two Venues: Live ...Read More
BTEP Workshop on Pathway Analysis with MetaCore
NOTE:This is a Bring Your Own Computer (BYOC) class, and will be simultaneously shared via GoToMeeting with attendees at the Advanced Technology Research Facility (ATRF) in Frederick, MD. Kindly select the location you plan to attend at the top of the registration page.
Date: February 9, 2016 (Tuesday)
Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm Two Venues: Live Workshop - NIH Bethesda - Bldg 10, FAES Room 7 (B1C206) For more information on the Frederick simulcast, please contact: MetaCore is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. The scope of data types includes microarray and sequence-based gene expression, SNPs and CGH arrays, RNAi screens, gene variants, proteomics, metabolomics, Co-IP pull-out and other custom interactions which can all by analyzed in tandem. MetaCore is based on a proprietary manually curated database of human protein-protein, protein-DNA and protein-compound interactions, metabolic and signaling pathways for human, mouse and rat, supported by proprietary ontologies and controlled vocabulary. The analytical package includes easy-to-use, intuitive tools for searching and data visualization, enabling the identification of the most relevant biological pathways, networks, and processes in our "virtual lab." The core functionalities in MetaCore that will be covered include:
RegisterOrganizerBTEPWhenTue, Feb 09, 2016 - 9:30 am - 4:30 pmWhereIn-Person |
BTEP Workshop on Pathway Analysis with MetaCore NOTE:This is a Bring Your Own Computer (BYOC) class, and will be simultaneously shared via GoToMeeting with attendees at the Advanced Technology Research Facility (ATRF) in Frederick, MD. Kindly select the location you plan to attend at the top of the registration page. Date: February 9, 2016 (Tuesday)Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm Two Venues: Live Workshop - NIH Bethesda - Bldg 10, FAES Room 7 (B1C206)Remote Simulcast – ATRF, Room E1106 - 8560 Progress Dr, Frederick, MD For more information on the Frederick simulcast, please contact:Tracie Frederick, Technology Informationist, Scientific LibraryPhone: 301-846-1094Email: frederickt@mail.nih.gov AGENDA Tuesday, February 9, 2016 – Pathway Analysis with MetaCore MetaCore is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. The scope of data types includes microarray and sequence-based gene expression, SNPs and CGH arrays, RNAi screens, gene variants, proteomics, metabolomics, Co-IP pull-out and other custom interactions which can all by analyzed in tandem. MetaCore is based on a proprietary manually curated database of human protein-protein, protein-DNA and protein-compound interactions, metabolic and signaling pathways for human, mouse and rat, supported by proprietary ontologies and controlled vocabulary. The analytical package includes easy-to-use, intuitive tools for searching and data visualization, enabling the identification of the most relevant biological pathways, networks, and processes in our "virtual lab." The core functionalities in MetaCore that will be covered include: Key Pathway Advisor to find drivers of expression change from transcriptomic data Expression data upload, filtering, and setting experimental backgrounds Knowledge mining for information about a gene or disease Basic enrichment and Comparison analysis | 2016-02-09 09:30:00 | In-Person | BTEP | 0 | Pathway Analysis with MetaCore | |||||
773 |
Description
BTEP Workshop on Exome-Seq Data Analysis and Variant Annotation (2-day)
This workshop will cover the basics and best practices of exome-seq analysis including downstream interpretation of variants using a variety of in-house, open-source and commercial web tools (CCBR Exome-Seq Pipeliner, AVIA, Ingenuity Variant Analysis, and CRAVAT/MuPit).
Please note that this workshop will be remotely telecast to the Library Training Room in Bldg 549 at NCI-Frederick for attendees who select to register at that ...Read More
BTEP Workshop on Exome-Seq Data Analysis and Variant Annotation (2-day)
This workshop will cover the basics and best practices of exome-seq analysis including downstream interpretation of variants using a variety of in-house, open-source and commercial web tools (CCBR Exome-Seq Pipeliner, AVIA, Ingenuity Variant Analysis, and CRAVAT/MuPit).
Please note that this workshop will be remotely telecast to the Library Training Room in Bldg 549 at NCI-Frederick for attendees who select to register at that location.
Dates: March 8-9, 2016 (Tuesday and Wednesday)
Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm (both days)
Venues:
Live Workshop - NIH Bethesda - Bldg 10, FAES Room 6
Remote Simulcast – Scientific Library Training Room, Bldg 549, NCI-Frederick
For more information on the Frederick simulcast, please contact: Tracie Frederick, Day 1 - Tuesday, March 8, 2016 9:30 am to 12:30 pm - Introductory Lectures Chunhua Yan, PhD - Primer on Next Generation and Exome Sequencing This will be an introduction to NGS in general and Exome-Seq in particular, covering: • Next generation sequencing technology Justin Lack, PhD - Exome-Seq Data Analysis Pipeline: From Reads to Results This talk will provide an overview of the exome-seq pipeline work-flow with recommended best practices. Some of the topics covered will be: 12:30 - 1:30 pm LUNCH BREAK 1:30-4:30 pm - Open-Source Software Tools for Analysis of Exome-Seq Data
This presentation will introduce the concept of pipelines in general and touch on the robustness and reproducibility of pipelines, as well as parallel execution, tracking of inputs/outputs and reports from pipelines. There will be a brief discussion on the modular features of Snakemake as a segue into the Pipeliner program and a pipeline definition. This will be followed by a demonstration of the pipeline and its availability for use of exome-seq data analysis.
The Annotation, Visualization, and Impact Analysis application, AVIA (https://avia-abcc.ncifcrf.gov), is an interactive web-based annotation server used to explore and interpret large sets of single nucleotide polymorphisms (SNPs) and small insertion/deletions (indels). Along with assigning gene impact of genomic variants, AVIA helps users to perform custom annotations of the variant from various disparate data sources, such as SIFT, Polyphen2, TargetScan, nonB, etc. Using AVIA, users will be able to annotate files, filter variants, and view gene level annotations for their variants. Users may upload VCF4, BED, CLC bio variant files in text or compressed formats ( zip, gz, tar). Users can also explore gene level effects from PharmGKB, Drug Bank, GO Ontology, DAVID, etc. In this hands-on workshop, users will learn how to submit a set of variants to AVIA and how to navigate the results page to find variants of possible significance.
The Integrative Genomics Viewer (IGV) is a high-performance visualization tool for interactive exploration of large, integrated genomic datasets. It supports a wide variety of data types, including array-based and next-generation sequence data, and genomic annotations. The hands-on tutorial will walk attendees on how to visualizing variant (VCF) and alignment (BAM) files using IGV. Day 2 - Wednesday, March 9, 2016 9:30 am - 12:30 pm - Commercial Software for Exome-Seq Data: QIAGEN's Ingenuity Variant Analysis Devendra (Dev) Mistry, Field Application Specialist Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based both upon published biological evidence and your own knowledge of disease biology. This workshop will focus on how the users can upload their datasets, efficiently use different filters within variant analysis to identify causal variants, export data and will also go over the recent IVA updates. With IVA, you can interrogate your variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. 12:30 - 1:30 pm LUNCH BREAK 1:30-4:30 pm - CRAVAT/MuPIT: Academic Open-Source Tool for Analysis of Genomic Variants Michael Ryan, PhD CRAVAT (www.cravat.us) is a free tool for high-throughput analysis of human sequencing variants developed by the Karchin lab at Johns Hopkins and In Silico Solutions. CRAVAT accepts very large variant data files containing single nucleotide substitutions as well as indels and returns a wide variety of annotations and scores that help with identification of important variants. The workshop will provide some background on CRAVAT and lots of hands-on exercises to learn how to use the tool and interpret the results. MuPIT (mupit.icm.jhu) is a sister tool to CRAVAT that shows human mutations on 3D protein structures. The focus of the workshop will be a series of exercises to learn how to visualize your mutations in MuPIT, how CRAVAT and MuPIT are integrated, and how to manipulate, investigate, and understand the results. RegisterOrganizerBTEPWhenTue, Mar 08 - Wed, Mar 09, 2016 -9:30 am - 4:30 pmWhereNIH Bldg 10 FAES and NCI-Frederick Bldg 549 Library |
BTEP Workshop on Exome-Seq Data Analysis and Variant Annotation (2-day) This workshop will cover the basics and best practices of exome-seq analysis including downstream interpretation of variants using a variety of in-house, open-source and commercial web tools (CCBR Exome-Seq Pipeliner, AVIA, Ingenuity Variant Analysis, and CRAVAT/MuPit). Please note that this workshop will be remotely telecast to the Library Training Room in Bldg 549 at NCI-Frederick for attendees who select to register at that location. Dates: March 8-9, 2016 (Tuesday and Wednesday) Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm (both days) Venues: Live Workshop - NIH Bethesda - Bldg 10, FAES Room 6 Remote Simulcast – Scientific Library Training Room, Bldg 549, NCI-Frederick For more information on the Frederick simulcast, please contact: Tracie Frederick, Technology Informationist, Scientific Library, NCI at Frederick Phone: 301-846-1094 Email: frederickt@mail.nih.gov WORKSHOP AGENDA Day 1 - Tuesday, March 8, 2016 9:30 am to 12:30 pm - Introductory Lectures Chunhua Yan, PhD - Primer on Next Generation and Exome Sequencing This will be an introduction to NGS in general and Exome-Seq in particular, covering: • Next generation sequencing technology • Exome sequencing (Cost, Speed, Gene coverage, Biological implication) • Experimental design (Sample size, Coverage, Sample submission) • Mutation Calling (Dream challenge, Genome in Bottle) Justin Lack, PhD - Exome-Seq Data Analysis Pipeline: From Reads to Results This talk will provide an overview of the exome-seq pipeline work-flow with recommended best practices. Some of the topics covered will be: • Read quality trimming and adapter clipping, • Initial QC and read mapping challenges, • Impact and removal of PCR duplicates, • Local realignment around indels, quality recalibration, • Germline variant calling in the Haplotype Caller, • Somatic variant detection using MuTect, • All-in-one annotator (AVIA), and • Example of a down-stream analysis of a tumor/germline comparison data set. 12:30 - 1:30 pm LUNCH BREAK 1:30-4:30 pm - Open-Source Software Tools for Analysis of Exome-Seq Data David Wheeler, PhD: Brief Introduction to the graphical user interface (GUI) of the CCBR Exome-Seq Pipeliner This presentation will introduce the concept of pipelines in general and touch on the robustness and reproducibility of pipelines, as well as parallel execution, tracking of inputs/outputs and reports from pipelines. There will be a brief discussion on the modular features of Snakemake as a segue into the Pipeliner program and a pipeline definition. This will be followed by a demonstration of the pipeline and its availability for use of exome-seq data analysis. Hue Vuong, PhD: Introduction and Tutorial on AVIA The Annotation, Visualization, and Impact Analysis application, AVIA (https://avia-abcc.ncifcrf.gov), is an interactive web-based annotation server used to explore and interpret large sets of single nucleotide polymorphisms (SNPs) and small insertion/deletions (indels). Along with assigning gene impact of genomic variants, AVIA helps users to perform custom annotations of the variant from various disparate data sources, such as SIFT, Polyphen2, TargetScan, nonB, etc. Using AVIA, users will be able to annotate files, filter variants, and view gene level annotations for their variants. Users may upload VCF4, BED, CLC bio variant files in text or compressed formats ( zip, gz, tar). Users can also explore gene level effects from PharmGKB, Drug Bank, GO Ontology, DAVID, etc. In this hands-on workshop, users will learn how to submit a set of variants to AVIA and how to navigate the results page to find variants of possible significance. Maggie Cam, PhD: Integrative Genomics Viewer (IGV) Tutorial The Integrative Genomics Viewer (IGV) is a high-performance visualization tool for interactive exploration of large, integrated genomic datasets. It supports a wide variety of data types, including array-based and next-generation sequence data, and genomic annotations. The hands-on tutorial will walk attendees on how to visualizing variant (VCF) and alignment (BAM) files using IGV. Day 2 - Wednesday, March 9, 2016 9:30 am - 12:30 pm - Commercial Software for Exome-Seq Data: QIAGEN's Ingenuity Variant Analysis Devendra (Dev) Mistry, Field Application Specialist Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based both upon published biological evidence and your own knowledge of disease biology. This workshop will focus on how the users can upload their datasets, efficiently use different filters within variant analysis to identify causal variants, export data and will also go over the recent IVA updates. With IVA, you can interrogate your variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. 12:30 - 1:30 pm LUNCH BREAK 1:30-4:30 pm - CRAVAT/MuPIT: Academic Open-Source Tool for Analysis of Genomic Variants Michael Ryan, PhD CRAVAT (www.cravat.us) is a free tool for high-throughput analysis of human sequencing variants developed by the Karchin lab at Johns Hopkins and In Silico Solutions. CRAVAT accepts very large variant data files containing single nucleotide substitutions as well as indels and returns a wide variety of annotations and scores that help with identification of important variants. The workshop will provide some background on CRAVAT and lots of hands-on exercises to learn how to use the tool and interpret the results. MuPIT (mupit.icm.jhu) is a sister tool to CRAVAT that shows human mutations on 3D protein structures. The focus of the workshop will be a series of exercises to learn how to visualize your mutations in MuPIT, how CRAVAT and MuPIT are integrated, and how to manipulate, investigate, and understand the results. | 2016-03-08 09:30:00 | NIH Bldg 10 FAES and NCI-Frederick Bldg 549 Library | In-Person | Justin Lack (NIAID CBR),Maggie Cam (NCI CCBR),David Wheeler PhD. (Laboratory of Biochemistry and Molecular Biology CCR NCI),Devendra Mistry (QIAGEN) | BTEP | 0 | Exome-Seq Data Analysis and Variant Annotation | |||
772 |
Description
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek) and open source software.
NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very ...Read More
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek) and open source software.
NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. This workshop will be remotely telecast to the Library Training Room in Bldg 549 at NCI-Frederick for attendees who select to register at that location. Please register only if you intend to attend the workshop. Dates: April 4-5, 2016 (Monday and Tuesday) Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm (both days) Venues: Live Workshop - NIH Bethesda - Bldg 10, FAES Room 6 Remote Simulcast – Scientific Library Training Room, Bldg 549, NCI-Frederick For more information on the Frederick simulcast, please contact: Tracie Frederick, Monday, April 4, 2016 Day 1 - 9:30 am - 12:30 pm
Introductory Lecture Link to Talk Slides on SlideShare Day 1 - 1:30-4:30 pm
Use of Open Source tools for RNA-Seq http://watson.nci.nih.gov/~sdavis/tutorials/RNASeqBeginnerTutorial/RNASeqTutorial.html
Tuesday, April 5, 2016 Day 2 - 9:30 am - 12:30 pm
RNA-Seq Analysis using Partek Flow An overview of getting started on the NIH Helix server and then hands-on RNA-seq training on Partek Flow. The training starts from importing raw sequence data in fastq format, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation.
Day 2 - 1:30-4:30 pm Read count data analysis using Partek Genomic Suite This class will provide a demo of microarray and RNA-seq integration within Partek Flow followed by hands-on training for downstream RNA-seq data analysis using Partek Genomic Suite. Starting with normalized read count data generated from Partek Flow, data import into PGS will be illustrated. This will be followed by a standard gene expression analysis workflow including QA/QC, differential expression detection and biological interpretation using Partek Pathway. Objectives: Students will learn how to use basic features of Partek Flow and Partek Genomics Suite, including: · Flow
· PGS
Files required for Partek are available under Course Materials below. Partek Genomics Suite with Pathway Training License Installation instructions For Mac Laptop: 1. Download Partek Genomics Suite from http://www.partek.com/html/updates.html For Windows Laptop: 1. Download Partek Genomics Suite from http://www.partek.com/html/updates.html Pathway is bundled with the Genomics Suite and this license supports both. This means that the Pathway-specific menu items within GS will work. RegisterOrganizerBTEPWhenMon, Apr 04 - Tue, Apr 05, 2016 -9:30 am - 4:30 pmWhereNIH Bldg 10 FAES Room 6 (Live); NCI-Frederick Bldg 549 Training Room (Simulcast) |
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of RNA-Seq Data Analysis. Learn everything from experimental design to statistical analysis. This workshop will include presentations on using both commercial (Partek) and open source software. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. This workshop will be remotely telecast to the Library Training Room in Bldg 549 at NCI-Frederick for attendees who select to register at that location. Please register only if you intend to attend the workshop. Dates: April 4-5, 2016 (Monday and Tuesday) Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm (both days) Venues: Live Workshop - NIH Bethesda - Bldg 10, FAES Room 6 Remote Simulcast – Scientific Library Training Room, Bldg 549, NCI-Frederick For more information on the Frederick simulcast, please contact: Tracie Frederick, Technology Informationist, Scientific Library, NCI at Frederick Phone: 301-846-1094 Email: frederickt@mail.nih.gov WORKSHOP AGENDA Monday, April 4, 2016 Day 1 - 9:30 am - 12:30 pm Introductory Lecture Sean Davis, MD, PhD - CCR, NCI Link to Talk Slides on SlideShare Day 1 - 1:30-4:30 pm Use of Open Source tools for RNA-SeqSean Davis, MD, PhD - CCR, NCI http://watson.nci.nih.gov/~sdavis/tutorials/RNASeqBeginnerTutorial/RNASeqTutorial.html Tuesday, April 5, 2016 Day 2 - 9:30 am - 12:30 pm RNA-Seq Analysis using Partek FlowEric Seiser, PhD - Partek Field Application Specialist An overview of getting started on the NIH Helix server and then hands-on RNA-seq training on Partek Flow. The training starts from importing raw sequence data in fastq format, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation. Day 2 - 1:30-4:30 pm Read count data analysis using Partek Genomic SuiteEric Seiser, PhD - Partek Field Application Specialist This class will provide a demo of microarray and RNA-seq integration within Partek Flow followed by hands-on training for downstream RNA-seq data analysis using Partek Genomic Suite. Starting with normalized read count data generated from Partek Flow, data import into PGS will be illustrated. This will be followed by a standard gene expression analysis workflow including QA/QC, differential expression detection and biological interpretation using Partek Pathway. Objectives: Students will learn how to use basic features of Partek Flow and Partek Genomics Suite, including: · Flow Getting set up on NIH Helix server Importing data Performing QA/AC Alignment Gene/transcript abundance estimation Differential expression detection Go Enrichment analysis Visualization (PCA, dotplot, volcano plot, chromosome view, hierarchical clustering etc.) Microarray analysis and integration with RNA-seq data. · PGS Importing Partek Flow project and text file format Performing QA/QC of imported data Differential expression detection Pathway analysis Visualization (PCA, dot plot, heatmap etc.) Files required for Partek are available under Course Materials below. Partek Genomics Suite with Pathway Training License Installation instructions For Mac Laptop: 1. Download Partek Genomics Suite from http://www.partek.com/html/updates.html 2. Then install it from an account that has administrative privileges. After installation, place the license file in the "/Users/Shared" folder. For Windows Laptop: 1. Download Partek Genomics Suite from http://www.partek.com/html/updates.html 2. Then install it from an account that has administrative privileges. After installation, place the license file in the "C:Program FilesPartek Genomics Suite 6.6license" folder. Pathway is bundled with the Genomics Suite and this license supports both. This means that the Pathway-specific menu items within GS will work. Now you are ready to analyze your own data with full access to all the powerful statistics, visualization, and analysis features that Partek Genomics Suite offers. Technical Support:support@partek.com North America: +1.314-884.6172 | 2016-04-04 09:30:00 | NIH Bldg 10 FAES Room 6 (Live); NCI-Frederick Bldg 549 Training Room (Simulcast) | In-Person | Sean Davis (CU Anschutz) | BTEP | 0 | RNA-Seq Data Analysis Workshop | |||
771 |
Description
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of ChIP-Seq Data Analysis. There will also be a talk on ENCODE and a comprehensive discussion of topics ranging from experimental design to data visualization. This workshop will include presentations on using open source applications (MACS, HOMER, MEME, SICER) as well as commercial software (Genomatix). To access the NCI Genomatix server, to request for a password through ...Read More
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of ChIP-Seq Data Analysis. There will also be a talk on ENCODE and a comprehensive discussion of topics ranging from experimental design to data visualization. This workshop will include presentations on using open source applications (MACS, HOMER, MEME, SICER) as well as commercial software (Genomatix). To access the NCI Genomatix server, to request for a password through IT helpdesk to genomeanalyzer.nci.nih.gov.
NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. This workshop will be remotely telecast to the Library Training Room in Bldg 549 at NCI-Frederick for attendees who select to register at that location. Please register only if you intend to attend the workshop.
Date: May 16-17, 2016 (Monday and Tuesday)
Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm
Locations:
Live Workshop - NIH Bethesda - Bldg 10, FAES Room 4
Remote Simulcast - NCI-Frederick - Scientific Library Training Room, Bldg 549
For more information on the Frederick simulcast, please contact:
Tracie Frederick, Technology Informationist, Scientific Library
NCI at Frederick
Phone: 301-846-1094
Email: frederickt@mail.nih.gov
Workshop Agenda Monday, May 16, 2016 Day 1 - Session 1: 9:30 am – 12:30 pm 9:30 am – 11 am Presenter: Peter Fitzgerald, Ph.D, CCBR, OSTR, NCI Title: Introduction to ChIP-Seq
11 am – 12:30 pm Presenter: Bong-Hyun Kim, Ph.D., CCBR, Leidos Biomed Title: Understanding ENCODE (ENCyclopedia Of DNA Elements)
Day 1 – Session 2 1:30 pm – 4:30 pm Presenter: Bong-Hyun Kim, Ph.D., CCBR, Leidos Biomed Title: ChIP-Seq Analysis Workflow
Tuesday, May 17, 2016 Day 2 – Session 1 9:30 am –12:30 pm Presenters: Chongzhi Zang, Ph.D., Dana-Farber Cancer Institute Weiqun Peng, Ph.D., George Washington University Title: Analyzing ChIP-seq data with SICER (Spatial Clustering for Identification of ChIP-Enriched Regions)
Day 2 – Session 2 1:30 pm – 4:30 pm Presenter: Susan Dombrowski, Ph.D, Genomatix Title: Peeking into the Biology of your ChIP-Seq Peaks with Genomatix
Software requirements for the computer system to run Genomatix: 1. Flash 10.1 or higher 2. Latest version of Java 3. Microsoft Excel 4. Web Browser: All web browsers are supported, but US versions are preferred and recommended.
RegisterOrganizerBTEPWhenMon, May 16 - Tue, May 17, 2016 -9:30 am - 4:30 pmWhereIn-Person |
This 2-day course, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of ChIP-Seq Data Analysis. There will also be a talk on ENCODE and a comprehensive discussion of topics ranging from experimental design to data visualization. This workshop will include presentations on using open source applications (MACS, HOMER, MEME, SICER) as well as commercial software (Genomatix). To access the NCI Genomatix server, to request for a password through IT helpdesk to genomeanalyzer.nci.nih.gov. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. This workshop will be remotely telecast to the Library Training Room in Bldg 549 at NCI-Frederick for attendees who select to register at that location. Please register only if you intend to attend the workshop. Date: May 16-17, 2016 (Monday and Tuesday) Time: 9:30 am – 12:30 pm and 1:30 – 4:30 pm Locations: Live Workshop - NIH Bethesda - Bldg 10, FAES Room 4 Remote Simulcast - NCI-Frederick - Scientific Library Training Room, Bldg 549 For more information on the Frederick simulcast, please contact: Tracie Frederick, Technology Informationist, Scientific Library NCI at Frederick Phone: 301-846-1094 Email: frederickt@mail.nih.gov Workshop Agenda Monday, May 16, 2016 Day 1 - Session 1: 9:30 am – 12:30 pm 9:30 am – 11 am Presenter: Peter Fitzgerald, Ph.D, CCBR, OSTR, NCI Title: Introduction to ChIP-Seq Introduction Historical Perspective and Technical Variations Experimental methodology Comparison to ChIP-Chip Data Analysis Experimental Design Quality Control Peak Calling (Different methodologies) Major Sources of Error Reasons why Experiments Fail Sequence Specific Binding Identification of Motifs Overexpressed sequences Pathways Resources Public Repositories Literature References Software listings 11 am – 12:30 pm Presenter: Bong-Hyun Kim, Ph.D., CCBR, Leidos Biomed Title: Understanding ENCODE (ENCyclopedia Of DNA Elements) ENCODE Guidelines and best practices Access policies and data retrieval mechanisms Other public databases – Epigenome, Mouse Encode Day 1 – Session 2 1:30 pm – 4:30 pm Presenter: Bong-Hyun Kim, Ph.D., CCBR, Leidos Biomed Title: ChIP-Seq Analysis Workflow Data QC metrics, plots and online tools Narrow Peak calling algorithms (e.g. MACS) Annotation (e.g. HOMER) Motif analysis (e.g. MEME) Tuesday, May 17, 2016 Day 2 – Session 1 9:30 am –12:30 pm Presenters: Chongzhi Zang, Ph.D., Dana-Farber Cancer Institute Weiqun Peng, Ph.D., George Washington University Title: Analyzing ChIP-seq data with SICER (Spatial Clustering for Identification of ChIP-Enriched Regions) ChIP-seq overview Characteristics of histone mark ChIP-seq data SICER algorithm: basic idea and model Interactive SICER tutorial (on Galaxy): Data format and description Run SICER with control Run SICER without control Run SICER for differential peak calling Other useful tools Day 2 – Session 2 1:30 pm – 4:30 pm Presenter: Susan Dombrowski, Ph.D, Genomatix Title: Peeking into the Biology of your ChIP-Seq Peaks with Genomatix Automated ChIP-Seq workflow: Peak Calling: MACS, SICER, NGS Analyzer Read and Peak Classification Sequence Extraction Transcription Factor Binding Site Overrepresentation Motif Detection: CoreSearch Meta Analysis and Integration of RNA-Seq data with ChIP-Seq peaks Overview of RNA-Seq: Class Demo Positional Correlation of ChIP-Seq peaks with differentially-expressed transcripts Downstream Target Prediction Defining gene regulatory "frameworks" in co-expressed genes Software requirements for the computer system to run Genomatix: 1. Flash 10.1 or higher 2. Latest version of Java 3. Microsoft Excel 4. Web Browser: All web browsers are supported, but US versions are preferred and recommended. | 2016-05-16 09:30:00 | In-Person | Peter FitzGerald (GAU),Wiequn Peng (GWU) | BTEP | 0 | Workshop on Analysis of ChIP-Seq Data | ||||
770 |
Description
The 'NCBI Resources for CCR Scientists' workshop, on June 6 and June 8, 2016, will focus on teaching a wide range of resources developed within NCBI that are relevant for CCR scientists. It will include both hands-on and lecture components. Attending the workshop will enable one to understand the tools and databases available at NCBI and how to best use them for your research. A team of experts from NCBI will be presenting these sessions over ...Read More
The 'NCBI Resources for CCR Scientists' workshop, on June 6 and June 8, 2016, will focus on teaching a wide range of resources developed within NCBI that are relevant for CCR scientists. It will include both hands-on and lecture components. Attending the workshop will enable one to understand the tools and databases available at NCBI and how to best use them for your research. A team of experts from NCBI will be presenting these sessions over two separate days.
NOTE: No sessions on June 7. This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Please register only if you intend to attend the workshop.
Locations:
Live Workshop - NIH Bethesda - Bldg 10
WORKSHOP AGENDA Day 1 - Monday, June 6, 2016 9:30 am - 12:30 pm: Using NCBI's Gene Expression Omnibus (GEO) to Explore Gene Expression Instructor: Majda Valjavec-Gratian, Ph.D. This 3-hour mainly hands-on workshop will show you how find and analyze relevant microarray and RNA-Seq datasets in NCBI's Gene Expression Omnibus resources. After learning about data concepts in GEO, you will use both precomputed analyses in GEO Profiles and the GEO 2 R tool with non-curated experiments to investigate expression of genes of interest. 12:30 - 1:30 pm Lunch Break 1:30 - 4:30 pm: A Practical Guide to NCBI BLAST Instructor: Peter Cooper, Ph.D. This session highlights important features and demonstrates the practical aspects of using the NCBI BLAST service, the most popular sequence similarity service in the world. You will learn about useful but under-used features of the service. These include access from the Entrez sequence databases; the new genome BLAST service quick finder; the integration and expansion of Align-2-Sequences; organism limits and other filters; re-organized databases; formatting options and downloading options; and TreeView displays. You will also learn how to use other important sequence analysis services associated with BLAST including Primer BLAST, an oligonucleotide primer designer and specificity checker; the multiple protein sequence alignment tool, COBALT; and SmartBLAST, a new tool for rapid protein identification. These aspects of BLAST provide easier access and results that are more comprehensive and easier to interpret. Day 2 - Wednesday, June 8, 2016 9:30 am - 12:30 pm: Accessing NCBI Human Variation and Medical Genetics Resources Instructor: Peter Cooper, Ph.D In this session, you will learn to use and access resources associated with human sequence variations and phenotypes associated with specific human genes and phenotypes. The webinar will emphasize the Gene, MedGen and ClinVar resources to search by gene, phenotype and variant. You will learn how to map variation from dbSNP and dbVAR onto genes, transcripts, proteins, and genomic regions and how to find genetic tests in GTR. You will also gain experience using additional tools and viewers including PheGenI, a browser for genotype associations, the Variation Viewer and the 1000 Genomes Browser. These provide useful ways to search for, map and browse variants as well as upload and download data in genomic context. 12:30 - 1:30 pm Lunch Break 1:30 - 2:30 pm: Introduction to NCBI command line tools on Cloud Services: EDirect and Standalone BLAST Instructors: Wayne Matten, Ph.D. and Peter Cooper, Ph.D. This session provides a quick introduction to NCBI command line tools in a cloud service. You will access an NCBI Amazon Machine Image and use the EDirect commandline interface to the Entrez system and standalone BLAST (including VDB BLAST) to perform basic text and sequence similarity searches. This workshop is essential preparation for the advanced workshop on the next-generation sequence analysis, which BTEP hopes to offer later this year.
2:30 - 4:30 pm: Sequence Read Archive (SRA), including hands-on with SRA-Blast in the AWS-Cloud Instructor: Ben Busby, Ph.D. This final session will describe how NCBI has enhanced several of its genomics resources in the last several months and how some of its public databases can be queried for computational biology and clinical questions, particularly those involving cancer biology. The improved access to the underlying genomic data in several ways will be showcased, including making it possible to BLAST into our large genomic databases, and how to use popular genomics tools such as GATK and HISAT2 directly with SRA. There will be a demo and hands-on exercise on how to use SRA-search and SRA-BLAST.
RegisterOrganizerBTEPWhenMon, Jun 06 - Wed, Jun 08, 2016 -9:30 am - 4:30 pmWhereIn-Person |
The 'NCBI Resources for CCR Scientists' workshop, on June 6 and June 8, 2016, will focus on teaching a wide range of resources developed within NCBI that are relevant for CCR scientists. It will include both hands-on and lecture components. Attending the workshop will enable one to understand the tools and databases available at NCBI and how to best use them for your research. A team of experts from NCBI will be presenting these sessions over two separate days. NOTE: No sessions on June 7. This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Please register only if you intend to attend the workshop. Locations: Live Workshop - NIH Bethesda - Bldg 10 FAES Room 4 (June 6th) and FAES Room 3 (June 8th) Remote Simulcast - NCI-Frederick - Scientific Library Training Room, Bldg 549 For more information on the Frederick simulcast, please contact: Tracie Frederick, Technology Informationist, Scientific Library NCI at Frederick Phone: 301-846-1094 Email: frederickt@mail.nih.gov WORKSHOP AGENDA Day 1 - Monday, June 6, 2016 9:30 am - 12:30 pm: Using NCBI's Gene Expression Omnibus (GEO) to Explore Gene Expression Instructor: Majda Valjavec-Gratian, Ph.D. This 3-hour mainly hands-on workshop will show you how find and analyze relevant microarray and RNA-Seq datasets in NCBI's Gene Expression Omnibus resources. After learning about data concepts in GEO, you will use both precomputed analyses in GEO Profiles and the GEO 2 R tool with non-curated experiments to investigate expression of genes of interest. 12:30 - 1:30 pm Lunch Break 1:30 - 4:30 pm: A Practical Guide to NCBI BLAST Instructor: Peter Cooper, Ph.D. This session highlights important features and demonstrates the practical aspects of using the NCBI BLAST service, the most popular sequence similarity service in the world. You will learn about useful but under-used features of the service. These include access from the Entrez sequence databases; the new genome BLAST service quick finder; the integration and expansion of Align-2-Sequences; organism limits and other filters; re-organized databases; formatting options and downloading options; and TreeView displays. You will also learn how to use other important sequence analysis services associated with BLAST including Primer BLAST, an oligonucleotide primer designer and specificity checker; the multiple protein sequence alignment tool, COBALT; and SmartBLAST, a new tool for rapid protein identification. These aspects of BLAST provide easier access and results that are more comprehensive and easier to interpret. Day 2 - Wednesday, June 8, 2016 9:30 am - 12:30 pm: Accessing NCBI Human Variation and Medical Genetics Resources Instructor: Peter Cooper, Ph.D In this session, you will learn to use and access resources associated with human sequence variations and phenotypes associated with specific human genes and phenotypes. The webinar will emphasize the Gene, MedGen and ClinVar resources to search by gene, phenotype and variant. You will learn how to map variation from dbSNP and dbVAR onto genes, transcripts, proteins, and genomic regions and how to find genetic tests in GTR. You will also gain experience using additional tools and viewers including PheGenI, a browser for genotype associations, the Variation Viewer and the 1000 Genomes Browser. These provide useful ways to search for, map and browse variants as well as upload and download data in genomic context. 12:30 - 1:30 pm Lunch Break 1:30 - 2:30 pm: Introduction to NCBI command line tools on Cloud Services: EDirect and Standalone BLAST Instructors: Wayne Matten, Ph.D. and Peter Cooper, Ph.D. This session provides a quick introduction to NCBI command line tools in a cloud service. You will access an NCBI Amazon Machine Image and use the EDirect commandline interface to the Entrez system and standalone BLAST (including VDB BLAST) to perform basic text and sequence similarity searches. This workshop is essential preparation for the advanced workshop on the next-generation sequence analysis, which BTEP hopes to offer later this year. 2:30 - 4:30 pm: Sequence Read Archive (SRA), including hands-on with SRA-Blast in the AWS-Cloud Instructor: Ben Busby, Ph.D. This final session will describe how NCBI has enhanced several of its genomics resources in the last several months and how some of its public databases can be queried for computational biology and clinical questions, particularly those involving cancer biology. The improved access to the underlying genomic data in several ways will be showcased, including making it possible to BLAST into our large genomic databases, and how to use popular genomics tools such as GATK and HISAT2 directly with SRA. There will be a demo and hands-on exercise on how to use SRA-search and SRA-BLAST. | 2016-06-06 09:30:00 | In-Person | Peter Cooper (NCBI),Wayne Matten (Division of NLM) | BTEP | 0 | BTEP Workshop on NCBI Resources for CCR Scientists | ||||
769 |
Description
This 2-day workshop, including a BYOD (Bring Your Own Data) exercise, will provide an introduction and hands-on training for Cytoscape, which is an open source software platform for visualizing networks and integrating these networks with annotations, gene expression profiles and other state data.
With over 800 publications citing Cytoscape, it has become the primary tool for visualization of networks, including biological pathways, protein-protein interaction data, protein similarity data, cell-cell, and even residue-residue interactions. ...Read More
This 2-day workshop, including a BYOD (Bring Your Own Data) exercise, will provide an introduction and hands-on training for Cytoscape, which is an open source software platform for visualizing networks and integrating these networks with annotations, gene expression profiles and other state data.
With over 800 publications citing Cytoscape, it has become the primary tool for visualization of networks, including biological pathways, protein-protein interaction data, protein similarity data, cell-cell, and even residue-residue interactions. In this workshop, you'll learn the basics of network analysis and visualization, utilizing Cytoscape to import network data from public resources such as STRING, Reactome, or Wikipathways, creating input files with network data in Excel format. You will also be able to augment network data with your own experimental results or data downloaded from sites such as cBioPortal. Once imported, you'll learn how to analyze the results using a variety of Cytoscape "apps" and visualize the data in a form useful for exploring the data or for producing meaningful images for presentations or publications. This workshop includes significant opportunity for hands-on exploration of Cytoscape and for working with your own data, so bring in Excel spreadsheets or CSV files with your experimental (for example, spreadsheet with data from microarray) or downloaded data that you would like to see visualized in a network. The Cytoscape core download provides a basic set of features for data integration, analysis, and visualization. Additional features are available as Apps (formerly called Plugins). The App Store has a collections of apps, which are groupings of apps useful for particular analyses. Apps are available for network and molecular profiling analyses, new layouts, additional file format support, scripting, and connection with databases. The main website is here: http://www.cytoscape.org/. An example of a recent publication is here: http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4906568/ [Yin, Ji-Gang et al. “Gene Expression Profiling Analysis of Ovarian Cancer.” Oncology Letters 12.1: 405–412. 16 Aug. 2016] You can review the complete list of publications here: http://cytoscape-publications.tumblr.com/ Scooter Morris, a member of the Cytoscape Team from USCF, will be here to provide training for this workshop, which promises to be very exciting and useful for the CCR scientific community. Important: Attendees are required to pre-load the necessary software (listed below) on the laptop (PC, Mac) they will bring to the workshop. If you plan to attend, please try to do this ahead of the workshop. Depending on your level of computer privileges, you may need to submit a request to the NCI Service Desk (https://service.cancer.gov) to complete installation of JAVA, Cytoscape and the Omics App. Listed below are the links to download the requirements, in this particular order: [1] Latest JAVA (Version 8) for your platform: http://www.oracle.com/technetwork/java/javase/downloads/jre8-downloads-2...
[2] Latest version of Cytoscape 3.4.0: http://www.cytoscape.org/download-platforms.html
[3] Link to download the Omics ‘App’ for workshop: http://apps.cytoscape.org/apps/omicsanalysiscollection
Date: September 1-2, 2016 (Thursday and Friday) Time and Location: September 1 - 9:30 am - 4:00 pm; Bldg 10, FAES Classrooms 1 & 2 September 2 - 9:30 am - 12:30 pm; Bldg 10, FAES Classrooms 6 & 7 Workshop Agenda Day 1: 9:30 am – 12:30 pm
Break
Lunch Break Day 1: 1:30 pm – 4:30 pm
Break
Day 2: 9:30 am -12:30 pm
RegisterOrganizerBTEPWhenThu, Sep 01 - Fri, Sep 02, 2016 -9:30 am - 12:30 pmWhereNIH Bldg 10, FAES Room 1/2 (9/1/16) & Room 6/7 (9/2/16) |
This 2-day workshop, including a BYOD (Bring Your Own Data) exercise, will provide an introduction and hands-on training for Cytoscape, which is an open source software platform for visualizing networks and integrating these networks with annotations, gene expression profiles and other state data. With over 800 publications citing Cytoscape, it has become the primary tool for visualization of networks, including biological pathways, protein-protein interaction data, protein similarity data, cell-cell, and even residue-residue interactions. In this workshop, you'll learn the basics of network analysis and visualization, utilizing Cytoscape to import network data from public resources such as STRING, Reactome, or Wikipathways, creating input files with network data in Excel format. You will also be able to augment network data with your own experimental results or data downloaded from sites such as cBioPortal. Once imported, you'll learn how to analyze the results using a variety of Cytoscape "apps" and visualize the data in a form useful for exploring the data or for producing meaningful images for presentations or publications. This workshop includes significant opportunity for hands-on exploration of Cytoscape and for working with your own data, so bring in Excel spreadsheets or CSV files with your experimental (for example, spreadsheet with data from microarray) or downloaded data that you would like to see visualized in a network. The Cytoscape core download provides a basic set of features for data integration, analysis, and visualization. Additional features are available as Apps (formerly called Plugins). The App Store has a collections of apps, which are groupings of apps useful for particular analyses. Apps are available for network and molecular profiling analyses, new layouts, additional file format support, scripting, and connection with databases. The main website is here: http://www.cytoscape.org/. An example of a recent publication is here: http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4906568/ [Yin, Ji-Gang et al. “Gene Expression Profiling Analysis of Ovarian Cancer.” Oncology Letters 12.1: 405–412. 16 Aug. 2016] You can review the complete list of publications here: http://cytoscape-publications.tumblr.com/ Scooter Morris, a member of the Cytoscape Team from USCF, will be here to provide training for this workshop, which promises to be very exciting and useful for the CCR scientific community. Important: Attendees are required to pre-load the necessary software (listed below) on the laptop (PC, Mac) they will bring to the workshop. If you plan to attend, please try to do this ahead of the workshop. Depending on your level of computer privileges, you may need to submit a request to the NCI Service Desk (https://service.cancer.gov) to complete installation of JAVA, Cytoscape and the Omics App. Listed below are the links to download the requirements, in this particular order: [1] Latest JAVA (Version 8) for your platform: http://www.oracle.com/technetwork/java/javase/downloads/jre8-downloads-2... Note for 64 bit Windows users – please download the *64* bit Java version, as Oracle still downloads the 32-bit version by default. The *64* bit version is at: http://javadl.oracle.com/webapps/download/AutoDL?BundleId=211999 [2] Latest version of Cytoscape 3.4.0: http://www.cytoscape.org/download-platforms.html Please choose the correct platform (Windows, MacOS, Linux). [3] Link to download the Omics ‘App’ for workshop: http://apps.cytoscape.org/apps/omicsanalysiscollection This can also be done after opening Cytoscape: Click on Apps --> Apps Manager --> OmicsAnalysisCollection --> Install Date: September 1-2, 2016 (Thursday and Friday) Time and Location: September 1 - 9:30 am - 4:00 pm; Bldg 10, FAES Classrooms 1 & 2 September 2 - 9:30 am - 12:30 pm; Bldg 10, FAES Classrooms 6 & 7 Workshop Agenda Day 1: 9:30 am – 12:30 pm Introductions and setup (15 minutes) Biological Networks (60 minutes): Understanding the terminology and basis of network theory as well as approaches for network construction Network Taxonomy Analytical Approaches Visualization Break Introduction to Cytoscape [Hands-on] (60 minutes): Fundamental aspects of the tool and walk through the analysis steps Data model Basic user interface Visual Styles Apps and the App Store App Demos and Use Cases (30 minutes) Clustering Over-representation analysis Lunch Break Day 1: 1:30 pm – 4:30 pm Introduction to Cytoscape II (45 minutes): Perform different demos that are built into the tool and have attendees do hands-on tutorials Tips & Tricks (15 minutes) Working with Data (30 minutes) Importing networks (STRING) Importing networks (Excel) Adding data to networks Break Analysis with Microarray Data (30 minutes) In-depth Examples with Your Data Questions and Answers Day 2: 9:30 am -12:30 pm Refresher for topics covered on Day 1 From Public Data to Cytoscape “Bring Your Own Data" (BYOD): In-depth analysis of user data Specific cases based on user-driven requests Two excel files are available below as examples TCGA Breast Cancer Data from 2015 - both mRNA and protein expression data | 2016-09-01 09:30:00 | NIH Bldg 10, FAES Room 1/2 (9/1/16) & Room 6/7 (9/2/16) | In-Person | Scooter Morris PhD. (Cytoscape Team) | BTEP | 0 | Visualizing Complex Networks using Cytoscape | |||
768 |
Description
The maximum number of registrations (25) allowed has been reached for this workshop. You will be put on the waitlist and informed if any cancellations do occur. You are welcome to come on the morning of the workshop and be seated on a first-come, first-serve basis, if there are any last-minute dropouts.
Learn the fundamentals about microarray technology and designing experiments for your research using this technology. After attending this 2-day workshop, you ...Read More
The maximum number of registrations (25) allowed has been reached for this workshop. You will be put on the waitlist and informed if any cancellations do occur. You are welcome to come on the morning of the workshop and be seated on a first-come, first-serve basis, if there are any last-minute dropouts.
Learn the fundamentals about microarray technology and designing experiments for your research using this technology. After attending this 2-day workshop, you will understand the best practices to perform analysis of gene expression data from microarrays, and know how do that using GEO2R (open source tool) and Partek Genomics Suite (NCI-licensed commercial tool). As we walk though hands-on analysis of a cancer dataset, you will learn the principles of experimental design, batch correction, statistics, and how to extract biological meaning from the results using multiple sets of tools and applications. A significant portion of the final session on the second day is dedicated to allow attendees to independently work on a publicly available dataset and implement the analysis workflow using the knowledge gained over the course of the workshop. PLEASE NOTE: This workshop is a BYOC (Bring Your Own LapTop Computer) class, and requires installation of Partek Genomics Suite on your laptop ahead of Day 2 of the workshop. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer, please indicate such in the Comment section on the registration form. Workshop Agenda Day 1 – October 3, 2016 (Monday) 9:30 am – 10 am Welcome and Workshop Overview (Anand S. Merchant, Ph.D. – CCBR) 10:00 am - 12:30 pm Introductory Lecture: Microarray Technology and Data Analysis (Maggie Cam, PhD – CCR) Introduction
Data Analysis
Statistical Analysis
11:15 – 11:30 am BREAK Visualization and Clustering
Validation and Downstream Analysis
12:30 – 1:30 pm LUNCH BREAK 1:30 - 2:45 pm GEO2R: Open-source web tool for querying publicly available datasets (Parthav Jailwala, MSc- CCBR) GEO2R is an interactive web tool that allows users to compare two or more groups of samples in a GEO Series in order to identify genes that are differentially expressed across experimental conditions. GEO2R performs comparisons on original submitter-supplied processed data tables using the GEOquery and limma R packages from the Bioconductor project. Bioconductor is an open source software project based on the R programming language that provides tools for the analysis of high-throughput genomic data. The GEOquery R package parses GEO data into R data structures that can be used by other R packages. The limma (Linear Models for Microarray Analysis) R package has emerged as one of the most widely used statistical tests for identifying differentially expressed genes. It handles a wide range of experimental designs and data types and applies multiple-testing corrections on P-values to help correct for the occurrence of false positives. Thus, GEO2R provides a simple interface that allows users to perform R statistical analysis without command line expertise. Lecture and Hands-on session for GEO2R
2:45 - 3:00 pm – BREAK 3:00 – 4:00 pm CCBR Microarray Data Analysis Pipeline Demonstration (Fathi Elloumi, Ph.D., CCBR) Attendees will learn about the complete workflow implemented by CCBR for microarray data analysis. The speaker will demonstrate the practical steps based on the theoretical concepts discussed in the morning, and will discuss topics that include:
Day 2 – October 4, 2016 (Tuesday) 9:30 am - 12:30 pm Gene Expression Workflow with Partek Genomics Suite (Eric Seiser, PhD – FAS, Partek) The training will include a guided analysis of an Affymetrix gene expression data set to showcase and familiarize users with the Gene Expression analysis workflow covering the topics listed below. Following this analysis, attendees will be presented with the task of obtaining a data set from the NCBI Gene Expression Omnibus (GEO) and running an independent analysis of the data to attempt to replicate the findings of the publication. Attendees will be given a list of analysis goals and will have the opportunity to ask for help from the instructor as they work through this analysis. The goal of this hands on time will be to provide attendees with experience analyzing real world data independently.
12:30 – 1:30 pm LUNCH BREAK 1:30 - 4:00 pm Hands-on Gene Expression Data Analysis with PGS - Continued
RegisterOrganizerBTEPWhenMon, Oct 03 - Tue, Oct 04, 2016 -9:30 am - 4:00 pmWhereNIH Bldg 10, FAES Room 4 (B1C205) |
The maximum number of registrations (25) allowed has been reached for this workshop. You will be put on the waitlist and informed if any cancellations do occur. You are welcome to come on the morning of the workshop and be seated on a first-come, first-serve basis, if there are any last-minute dropouts. Learn the fundamentals about microarray technology and designing experiments for your research using this technology. After attending this 2-day workshop, you will understand the best practices to perform analysis of gene expression data from microarrays, and know how do that using GEO2R (open source tool) and Partek Genomics Suite (NCI-licensed commercial tool). As we walk though hands-on analysis of a cancer dataset, you will learn the principles of experimental design, batch correction, statistics, and how to extract biological meaning from the results using multiple sets of tools and applications. A significant portion of the final session on the second day is dedicated to allow attendees to independently work on a publicly available dataset and implement the analysis workflow using the knowledge gained over the course of the workshop. PLEASE NOTE: This workshop is a BYOC (Bring Your Own LapTop Computer) class, and requires installation of Partek Genomics Suite on your laptop ahead of Day 2 of the workshop. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer, please indicate such in the Comment section on the registration form. Workshop Agenda Day 1 – October 3, 2016 (Monday) 9:30 am – 10 am Welcome and Workshop Overview (Anand S. Merchant, Ph.D. – CCBR) 10:00 am - 12:30 pm Introductory Lecture: Microarray Technology and Data Analysis (Maggie Cam, PhD – CCR) Introduction Historical Perspective Microarray Technologies, Sample Processing Methods Microarray comparisons to RNA-Seq Data Analysis Experimental Design QC methods Preprocessing: Normalization and low level analysis algorithms Statistical Analysis Common statistical models used for analysis of microarray data Examples of blocking Batch effects and removal methods 11:15 – 11:30 am BREAK Visualization and Clustering Volcano Plot Principal Components Analysis Hierarchical Clustering K-means Clustering Validation and Downstream Analysis Validation methods Major Software applications Public Repositories of Microarray Data Gene Ontology Enrichment and Pathway analysis tools 12:30 – 1:30 pm LUNCH BREAK 1:30 - 2:45 pm GEO2R: Open-source web tool for querying publicly available datasets (Parthav Jailwala, MSc- CCBR) GEO2R is an interactive web tool that allows users to compare two or more groups of samples in a GEO Series in order to identify genes that are differentially expressed across experimental conditions. GEO2R performs comparisons on original submitter-supplied processed data tables using the GEOquery and limma R packages from the Bioconductor project. Bioconductor is an open source software project based on the R programming language that provides tools for the analysis of high-throughput genomic data. The GEOquery R package parses GEO data into R data structures that can be used by other R packages. The limma (Linear Models for Microarray Analysis) R package has emerged as one of the most widely used statistical tests for identifying differentially expressed genes. It handles a wide range of experimental designs and data types and applies multiple-testing corrections on P-values to help correct for the occurrence of false positives. Thus, GEO2R provides a simple interface that allows users to perform R statistical analysis without command line expertise. Lecture and Hands-on session for GEO2R Background on GEO datasets What is GEO2R and how can it help you How to use GEO2R Options and features Limitations and caveat Hands-on exercise 2:45 - 3:00 pm – BREAK 3:00 – 4:00 pm CCBR Microarray Data Analysis Pipeline Demonstration (Fathi Elloumi, Ph.D., CCBR) Attendees will learn about the complete workflow implemented by CCBR for microarray data analysis. The speaker will demonstrate the practical steps based on the theoretical concepts discussed in the morning, and will discuss topics that include: Objectives of and requirements for pipeline Input data types, files and format Initial quality checks of the data Visuals of ‘good’ and ‘bad’ data Differential expression analysis Statistical parameters Downstream enrichment analysis Planned future enhancements Day 2 – October 4, 2016 (Tuesday) 9:30 am - 12:30 pm Gene Expression Workflow with Partek Genomics Suite (Eric Seiser, PhD – FAS, Partek) The training will include a guided analysis of an Affymetrix gene expression data set to showcase and familiarize users with the Gene Expression analysis workflow covering the topics listed below. Following this analysis, attendees will be presented with the task of obtaining a data set from the NCBI Gene Expression Omnibus (GEO) and running an independent analysis of the data to attempt to replicate the findings of the publication. Attendees will be given a list of analysis goals and will have the opportunity to ask for help from the instructor as they work through this analysis. The goal of this hands on time will be to provide attendees with experience analyzing real world data independently. Import data – Affymetrix CEL files Perform QA/QC of imported data Exploratory data analysis – Principal Component Analysis (PCA) Detect differential expression (ANOVA) – two factor analysis Gene list creation (Venn diagram creation and list overlap) Visualization (PCA, histogram, box plot, dot plot, volcano plot, heatmap etc.) 12:30 – 1:30 pm LUNCH BREAK 1:30 - 4:00 pm Hands-on Gene Expression Data Analysis with PGS - Continued Additional features (1:30 – 2:30 pm) Biological interpretation – through use of Gene Ontology and KEGG pathways Integration with other data – combining gene and miRNA expression data Other topics - Batch Effect Removal, Survival analysis Independent hands-on exercise (with GEO dataset) for attendees (2:30 – 4:00 pm) Download and Import data Use PCA to identify factors for statistical modeling Identify deferentially expressed genes Generate a heatmap Find important pathways | 2016-10-03 09:30:00 | NIH Bldg 10, FAES Room 4 (B1C205) | In-Person | Maggie Cam (NCI CCBR),Parthav Jailwala (CCBR) | BTEP | 0 | Microarrays: Basics, Best Practices, and Analysis Tools (2-day) | |||
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DescriptionABOUT THE COURSE R is a freely available language and environment for statistical computing and graphics which provides a wide variety of statistical and graphical techniques: linear and nonlinear modelling, statistical tests, time series analysis, classification, clustering, etc. It is a console application that compiles and runs on a wide variety of UNIX platforms, Windows and MacOS. It is available for download through CRAN, which is a network ...Read More ABOUT THE COURSE R is a freely available language and environment for statistical computing and graphics which provides a wide variety of statistical and graphical techniques: linear and nonlinear modelling, statistical tests, time series analysis, classification, clustering, etc. It is a console application that compiles and runs on a wide variety of UNIX platforms, Windows and MacOS. It is available for download through CRAN, which is a network of ftp and web servers around the world that store identical, up-to-date, versions of code and documentation for R. Bioconductor uses the R statistical programming language, and is open source and open development as well. It provides tools for the analysis and comprehension of high-throughput genomic data. The course will include multiple, short hands-on exercises spread out throughout the two lecture sessions. PLEASE NOTE: This 1-day workshop is a BYOC (Bring your own Laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. REQUIRED INSTALLATION: Students who bring their own laptops should ensure that R v3.3.1 and Bioconductor v3.4, is installed on their computers. In addition, several R packages (listed below) will be used which must be installed prior to the course. Please follow the instructions mentioned further below complete installation of these packages required for the workshop. R InstallationThe R program and instructions for its installation can be found by clicking the link provided below. Please choose the correct environment - Linux, Mac OSX, or Windows - that is applicable to your system. Bioconductor and Bioconductor Package InstallationComplete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGeneCommand-line instructions for Bioconductor and packages: The following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above. # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene")) RStudio Installation (not required for workshop, but some users may find it useful)Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. It offers quite an array of functions that you may still find useful and it is well worth a look. Install the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Workshop AgendaMorning Session - 9:30 am -12:30 pm Introduction to R
Afternoon Session - 1:00 - 4:00 pm Introduction to Bioconductor
RegisterOrganizerBTEPWhenTue, Nov 22, 2016 - 9:30 am - 4:00 pmWhereNIH Bldg 10 FAES Room 4 (B1C205) |
ABOUT THE COURSE R is a freely available language and environment for statistical computing and graphics which provides a wide variety of statistical and graphical techniques: linear and nonlinear modelling, statistical tests, time series analysis, classification, clustering, etc. It is a console application that compiles and runs on a wide variety of UNIX platforms, Windows and MacOS. It is available for download through CRAN, which is a network of ftp and web servers around the world that store identical, up-to-date, versions of code and documentation for R. Bioconductor uses the R statistical programming language, and is open source and open development as well. It provides tools for the analysis and comprehension of high-throughput genomic data. The course will include multiple, short hands-on exercises spread out throughout the two lecture sessions. PLEASE NOTE: This 1-day workshop is a BYOC (Bring your own Laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. REQUIRED INSTALLATION: Students who bring their own laptops should ensure that R v3.3.1 and Bioconductor v3.4, is installed on their computers. In addition, several R packages (listed below) will be used which must be installed prior to the course. Please follow the instructions mentioned further below complete installation of these packages required for the workshop. R Installation The R program and instructions for its installation can be found by clicking the link provided below. Please choose the correct environment - Linux, Mac OSX, or Windows - that is applicable to your system. https://cran.r-project.org/ Bioconductor and Bioconductor Package Installation Complete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGene Command-line instructions for Bioconductor and packages: The following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above. # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene")) RStudio Installation (not required for workshop, but some users may find it useful) Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. It offers quite an array of functions that you may still find useful and it is well worth a look. Install the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Workshop Agenda Morning Session - 9:30 am -12:30 pm Introduction to R The R environment Starting an R Session, Setting Options Listing Variables, Editing Commands, Using the R History Getting Help on an R Function Logging a Session to a File Running External R Code Installing and Loading Packages Ending a Session, Saving Your Work The Elements of R Numeric Character Logical Missing Values R Data Structures Vectors Matrices Lists Data.Frames Factors Functions Other Complex Structures Procedures Reading and Writing Data Exploring and Summarizing Data Dealing with Missing Data Restructuring Data Relabeling Data Subsetting Data Operating on Rows or Columns of Data Saving R Objects for Later Use Graphing Data Simple Statistical Tests Example: A Simple Analysis of Probe Intensity Data Project: Creating a Graphical Function in 4 Easy Steps Step 1: Create a Heatmap of Gene Expression Data Step 2: Package Heatmap as a Function Step 3: Add some Custom Formatting Step 4: Save for Future Use and – Voila, You Have Created your own Heatmap Library! 12:30 - 1:00 pm LUNCH BREAK Afternoon Session - 1:00 - 4:00 pm Introduction to Bioconductor Installing Bioconductor An Overview of Bioconductor Packages Fundamental Packages Biobase: the Foundation Biostrings: A Representation of Biological Sequences BSgenome: A Representation of Complete Genomic Sequences GenomicRanges: Manipulation of Genomic Intervals GenomicFeatures: Manipulation of Genomic Features GenomicAlgnments: Manipulation of Short Genomic Alignments Two Fundamental Structures to Contain Experiment Data The ExpressionSet for Array Data Constructing an ExpressionSet Analyzing an ExpressionSet The SummarizedExperiment for NGS Sequence Data Constructing a SummarizedExperiment Analyzing a SummarizedExperiment | 2016-11-22 09:30:00 | NIH Bldg 10 FAES Room 4 (B1C205) | In-Person | David Wheeler PhD. (Laboratory of Biochemistry and Molecular Biology CCR NCI) | BTEP | 0 | R/Bioconductor Basics Workshop | |||
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DescriptionDriven by the decreasing costs and increasing performance of next-generation sequencing (NGS) technologies, the amount of publicly available genomic data has grown exponentially in recent years. While most of the analyses of these data is done computationally, there are many instances where visual inspection of the original and/or processed data is invaluable. Such direct visualization can provide: “sanity checks” on computational results; novel biological insights; aid in communicating results; and a better understanding ...Read More Driven by the decreasing costs and increasing performance of next-generation sequencing (NGS) technologies, the amount of publicly available genomic data has grown exponentially in recent years. While most of the analyses of these data is done computationally, there are many instances where visual inspection of the original and/or processed data is invaluable. Such direct visualization can provide: “sanity checks” on computational results; novel biological insights; aid in communicating results; and a better understanding of the interplay between spatially related biological elements. These visualization tools are relevant whether one is interested in expression analysis (RNA-Seq), variant detection (Exome-Seq), protein binding (ChIP-Seq), or any other genome scale data. This seminar will provide an overview of the available tools, and highlight useful features of some of the more popular genome browsers. Highlighted topics will include:
RegisterOrganizerBTEPWhenTue, Dec 13, 2016 - 2:30 pm - 4:00 pmWhereIn-Person |
Driven by the decreasing costs and increasing performance of next-generation sequencing (NGS) technologies, the amount of publicly available genomic data has grown exponentially in recent years. While most of the analyses of these data is done computationally, there are many instances where visual inspection of the original and/or processed data is invaluable. Such direct visualization can provide: “sanity checks” on computational results; novel biological insights; aid in communicating results; and a better understanding of the interplay between spatially related biological elements. These visualization tools are relevant whether one is interested in expression analysis (RNA-Seq), variant detection (Exome-Seq), protein binding (ChIP-Seq), or any other genome scale data. This seminar will provide an overview of the available tools, and highlight useful features of some of the more popular genome browsers. Highlighted topics will include: An overview of the tools available - their strength and weaknesses and where to find them An overview of the different classes of browsers An discussion of the relevant file types accepted by most browsers Details on how to navigate the UCSC Genome Browser How to integrate your own or publically available data into browsers How to capture and share specific views of data How to get more detailed views of your data with tools like IGB and IGV and how to integrate them into other tools and more.... | 2016-12-13 14:30:00 | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | Genome Browsers - Tools for Visualizing Genomic Scale Data | ||||
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Description
iPathwayGuide is a gene and protein expression analysis tool that uses a systems biology approach to identify significantly impacted pathways, gene ontology terms, diseases, and predicted microRNAs based on the given gene or protein differential expression signature. It uses an advanced pathway analysis approach that considers the role, positioning, and relationships of a given gene within a pathway, resulting in a significantly fewer false positives associated with pathway analysis.
More information can be found ...Read More
iPathwayGuide is a gene and protein expression analysis tool that uses a systems biology approach to identify significantly impacted pathways, gene ontology terms, diseases, and predicted microRNAs based on the given gene or protein differential expression signature. It uses an advanced pathway analysis approach that considers the role, positioning, and relationships of a given gene within a pathway, resulting in a significantly fewer false positives associated with pathway analysis.
More information can be found at this link: http://www.advaitabio.com/ipathwayguide.html
PLEASE NOTE: This 1-day workshop is a BYOC (Bring your own Laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form.
The software is designed to work with all the latest major browser platforms: Google Chrome, Mozilla Firefox, Apple Safari (Mac only, iOS not supported yet), as well as Microsoft Internet Explorer 11 (though some image download capabilities may not function).
WORKSHOP AGENDA - Monday, Dec 19, 2016 Morning Session 9:30 am -10:55 am Introduction to iPathwayGuide
Uploading data: lecture & follow along w/ demo
11:05 am -12:30 pm Follow along w/ demo Dataset 1: NanoString Pan-Cancer panel, Breast Cancer samples (human primary tissue)
12:30 - 1:00 pm LUNCH BREAK Afternoon session 1:00 pm - 2:25 pm Hands-on practice Dataset 2: Genome-wide analysis of gene expression regulated by VRK1 kinase in cancer cell lines (GSE86942)
2:35 pm - 4:00 pm Data Analysis Exercise Dataset 3: Anaplastic Large Cell Lymphoma of Childhood (GSE78513, human primary tissue)
RegisterOrganizerBTEPWhenMon, Dec 19, 2016 - 9:30 am - 4:00 pmWhereNIH Bldg 10 FAES Room 4 (B1C205) |
iPathwayGuide is a gene and protein expression analysis tool that uses a systems biology approach to identify significantly impacted pathways, gene ontology terms, diseases, and predicted microRNAs based on the given gene or protein differential expression signature. It uses an advanced pathway analysis approach that considers the role, positioning, and relationships of a given gene within a pathway, resulting in a significantly fewer false positives associated with pathway analysis. More information can be found at this link: http://www.advaitabio.com/ipathwayguide.html PLEASE NOTE: This 1-day workshop is a BYOC (Bring your own Laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. The software is designed to work with all the latest major browser platforms: Google Chrome, Mozilla Firefox, Apple Safari (Mac only, iOS not supported yet), as well as Microsoft Internet Explorer 11 (though some image download capabilities may not function). WORKSHOP AGENDA - Monday, Dec 19, 2016 Morning Session 9:30 am -10:55 am Introduction to iPathwayGuide Overview: modules, User Interface (UI), cloud access, sharing Scoring Method: Impact Analysis, types of evidence, multiple correction Advanced features: printable report & meta-analysis Uploading data: lecture & follow along w/ demo Data Analysis Pipeline Supported organisms and file types Uploading CEL files Custom format: gene symbol, log-fold change, p-values Thresholds for DE TRY: Upload GEO2R file TRY: Fill in Title & Description, Contrast Names TRY: Choose thresholds for Differential Expression 11:05 am -12:30 pm Follow along w/ demo Dataset 1: NanoString Pan-Cancer panel, Breast Cancer samples (human primary tissue) Impact Analysis Dataset background TRY: Accept share Summary Page DE Genes Pathways Printable report Q&A 12:30 - 1:00 pm LUNCH BREAK Afternoon session 1:00 pm - 2:25 pm Hands-on practice Dataset 2: Genome-wide analysis of gene expression regulated by VRK1 kinase in cancer cell lines (GSE86942) miRNA Inference Gene Ontologies Diseases TRY: Share Report TRY: Generate Meta-analysis, Identify biomarkers, Export Results Q&A 2:35 pm - 4:00 pm Data Analysis Exercise Dataset 3: Anaplastic Large Cell Lymphoma of Childhood (GSE78513, human primary tissue) TRY: Accept share Send a request for help/ feedback Generate meta-analysis Select comparable contrasts Identify putative mechanisms on a high impact pathway Identify probable miRNAs Identify relevant GO Terms Identify relevant diseases Generate printable report Design a meta-analysis study Which combination of regions is appropriate? Which modules are informative? Results: view rank diagram, find biomarkers Export pertinent figures & tables Share via email Report findings to class Q&A | 2016-12-19 09:30:00 | NIH Bldg 10 FAES Room 4 (B1C205) | In-Person | Cordelia Ziraldo (Advaita Bioinformatics) | BTEP | 0 | iPathwayGuide Workshop | |||
764 |
DescriptionABOUT THE COURSE R is a freely available language and environment for statistical computing and graphics which provides a wide variety of statistical and graphical techniques: linear and nonlinear modelling, statistical tests, time series analysis, classification, clustering, etc. It is a console application that compiles and runs on a wide variety of UNIX platforms, Windows and MacOS. It is available for download through CRAN, which is a network ...Read More ABOUT THE COURSE R is a freely available language and environment for statistical computing and graphics which provides a wide variety of statistical and graphical techniques: linear and nonlinear modelling, statistical tests, time series analysis, classification, clustering, etc. It is a console application that compiles and runs on a wide variety of UNIX platforms, Windows and MacOS. It is available for download through CRAN, which is a network of ftp and web servers around the world that store identical, up-to-date, versions of code and documentation for R. Bioconductor uses the R statistical programming language, and is open source and open development as well. It provides tools for the analysis and comprehension of high-throughput genomic data. The course will include multiple, short hands-on exercises spread out throughout the two lecture sessions. PLEASE NOTE: This 1-day workshop is a BYOC (Bring your own Laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. REQUIRED INSTALLATION: Students who bring their own laptops should ensure that R v3.3.1 and Bioconductor v3.4, is installed on their computers. In addition, several R packages (listed below) will be used which must be installed prior to the course. Please follow the instructions mentioned further below complete installation of these packages required for the workshop. R InstallationThe R program and instructions for its installation can be found by clicking the link provided below. Please choose the correct environment - Linux, Mac OSX, or Windows - that is applicable to your system. Bioconductor and Bioconductor Package InstallationComplete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGeneCommand-line instructions for Bioconductor and packages: The following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above. # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene")) RStudio Installation (not required for workshop, but some users may find it useful)Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. It offers quite an array of functions that you may still find useful and it is well worth a look. Install the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Workshop AgendaMorning Session - 9:30 am -12:30 pm Introduction to R
Afternoon Session - 1:00 - 4:00 pm Introduction to Bioconductor
RegisterOrganizerBTEPWhenTue, Dec 20, 2016 - 9:30 am - 4:00 pmWhereNIH Bldg 10 FAES Room 4 (B1C205) |
ABOUT THE COURSE R is a freely available language and environment for statistical computing and graphics which provides a wide variety of statistical and graphical techniques: linear and nonlinear modelling, statistical tests, time series analysis, classification, clustering, etc. It is a console application that compiles and runs on a wide variety of UNIX platforms, Windows and MacOS. It is available for download through CRAN, which is a network of ftp and web servers around the world that store identical, up-to-date, versions of code and documentation for R. Bioconductor uses the R statistical programming language, and is open source and open development as well. It provides tools for the analysis and comprehension of high-throughput genomic data. The course will include multiple, short hands-on exercises spread out throughout the two lecture sessions. PLEASE NOTE: This 1-day workshop is a BYOC (Bring your own Laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. REQUIRED INSTALLATION: Students who bring their own laptops should ensure that R v3.3.1 and Bioconductor v3.4, is installed on their computers. In addition, several R packages (listed below) will be used which must be installed prior to the course. Please follow the instructions mentioned further below complete installation of these packages required for the workshop. R Installation The R program and instructions for its installation can be found by clicking the link provided below. Please choose the correct environment - Linux, Mac OSX, or Windows - that is applicable to your system. https://cran.r-project.org/ Bioconductor and Bioconductor Package Installation Complete instructions for the installation of the basic and additional Bioconductor packages are found here: http://www.bioconductor.org/install/ In addition to the basic Bioconductor package, please install these additional Bioconductor packages prior to the start of the class: Biostrings BSgenome BSgenome.Celegans.UCSC.ce6 TxDb.Celegans.UCSC.ce6.ensGene GenomicFeatures GenomicRanges GenomicAlignments TxDb.Hsapiens.UCSC.hg19.knownGene Command-line instructions for Bioconductor and packages: The following code, executed from within an R session, should serve to install the basic Bioconductor package as well as the additional packages listed above. # First, download the Bioconductor installer, biocLite() source("http://bioconductor.org/biocLite.R") # Now, use the installer to install several packages at once # The base package, Biobase, will be installed automatically biocLite(pkgs=c("Biostrings", "BSgenome", "BSgenome.Celegans.UCSC.ce6", "TxDb.Celegans.UCSC.ce6.ensGene", "GenomicFeatures", "GenomicRanges", "GenomicAlignments", "TxDb.Hsapiens.UCSC.hg19.knownGene")) RStudio Installation (not required for workshop, but some users may find it useful) Students who prefer a more graphically-oriented working environment will find that using RStudio as an environment in which to run R makes life much easier. It offers quite an array of functions that you may still find useful and it is well worth a look. Install the "Desktop, Open Source Edition": http://www.rstudio.com/products/RStudio/#Desk Workshop Agenda Morning Session - 9:30 am -12:30 pm Introduction to R The R environment Starting an R Session, Setting Options Listing Variables, Editing Commands, Using the R History Getting Help on an R Function Logging a Session to a File Running External R Code Installing and Loading Packages Ending a Session, Saving Your Work The Elements of R Numeric Character Logical Missing Values R Data Structures Vectors Matrices Lists Data.Frames Factors Functions Other Complex Structures Procedures Reading and Writing Data Exploring and Summarizing Data Dealing with Missing Data Restructuring Data Relabeling Data Subsetting Data Operating on Rows or Columns of Data Saving R Objects for Later Use Graphing Data Simple Statistical Tests Example: A Simple Analysis of Probe Intensity Data Project: Creating a Graphical Function in 4 Easy Steps Step 1: Create a Heatmap of Gene Expression Data Step 2: Package Heatmap as a Function Step 3: Add some Custom Formatting Step 4: Save for Future Use and – Voila, You Have Created your own Heatmap Library! 12:30 - 1:00 pm LUNCH BREAK Afternoon Session - 1:00 - 4:00 pm Introduction to Bioconductor Installing Bioconductor An Overview of Bioconductor Packages Fundamental Packages Biobase: the Foundation Biostrings: A Representation of Biological Sequences BSgenome: A Representation of Complete Genomic Sequences GenomicRanges: Manipulation of Genomic Intervals GenomicFeatures: Manipulation of Genomic Features GenomicAlgnments: Manipulation of Short Genomic Alignments Two Fundamental Structures to Contain Experiment Data The ExpressionSet for Array Data Constructing an ExpressionSet Analyzing an ExpressionSet The SummarizedExperiment for NGS Sequence Data Constructing a SummarizedExperiment Analyzing a SummarizedExperiment | 2016-12-20 09:30:00 | NIH Bldg 10 FAES Room 4 (B1C205) | In-Person | David Wheeler PhD. (Laboratory of Biochemistry and Molecular Biology CCR NCI) | BTEP | 0 | R/Bioconductor Basics Workshop | |||
763 |
DescriptionThe Bioinformatics Training and Education Program (BTEP), Office of Science and Technology Resources (OSTR) is excited to announce a series of workshops focused on the analysis of next-generation sequencing (NGS) data. The in-depth, comprehensive series includes lecture and hands-on components on the most popular and relevant topics for the CCR scientific community. This opening presentation will provide an in-depth overview of Next Generation Sequencing Technologies (did you know there are more than 50 <...Read More The Bioinformatics Training and Education Program (BTEP), Office of Science and Technology Resources (OSTR) is excited to announce a series of workshops focused on the analysis of next-generation sequencing (NGS) data. The in-depth, comprehensive series includes lecture and hands-on components on the most popular and relevant topics for the CCR scientific community. This opening presentation will provide an in-depth overview of Next Generation Sequencing Technologies (did you know there are more than 50 named NGS sequencing methodologies), CCR sequencing resources, and CCR bioinformatic resources for data analysis. The is a unique opportunity to hear about the latest next-gen sequencing techniques, CCR’s core facilities, as well as how to make the best use of them in your research. Come ask questions of a panel of experts (from the CCR Sequencing Facility and the CCR Collaborative Bioinformatics Resource). Learn about “best practice” guidelines and standards for performing optimized, cost-effective experiments and how to make best use of your cores. These presentations are being made available via GoToWebinar Please sign-up for this WebCast at:https://attendee.gotowebinar.com/register/8115044904966606850 Part 1: NGS Technologies, Techniques and Facilities
Part 2: Best Practices in NGS Data Analysis
RegisterOrganizerBTEPWhenMon, Jan 23, 2017 - 9:30 am - 4:00 pmWhereIn-Person |
The Bioinformatics Training and Education Program (BTEP), Office of Science and Technology Resources (OSTR) is excited to announce a series of workshops focused on the analysis of next-generation sequencing (NGS) data. The in-depth, comprehensive series includes lecture and hands-on components on the most popular and relevant topics for the CCR scientific community. This opening presentation will provide an in-depth overview of Next Generation Sequencing Technologies (did you know there are more than 50 named NGS sequencing methodologies), CCR sequencing resources, and CCR bioinformatic resources for data analysis. The is a unique opportunity to hear about the latest next-gen sequencing techniques, CCR’s core facilities, as well as how to make the best use of them in your research. Come ask questions of a panel of experts (from the CCR Sequencing Facility and the CCR Collaborative Bioinformatics Resource). Learn about “best practice” guidelines and standards for performing optimized, cost-effective experiments and how to make best use of your cores. These presentations are being made available via GoToWebinar Please sign-up for this WebCast at:https://attendee.gotowebinar.com/register/8115044904966606850 Part 1: NGS Technologies, Techniques and Facilities Time: 9:30 am – 12:30 pm Location: Bldg 37m Rm 6041 Part 2: Best Practices in NGS Data Analysis Time: 1:30 pm – 4:00 pm Location: NIH Bldg 10, FAES Classroom 4 (B1C205) | 2017-01-23 09:30:00 | In-Person | BTEP | 0 | Best Practices: Experimental Design, Sample Preparation, NGS Technologies | |||||
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Description
nSolver™ Analysis Software is a free analysis platform for storage, custom QC, and custom normalization of nCounter data. Generate highly-customized exports, basic statistical outputs, and publication-quality figures quickly and easily with the included tools. nSolver is a biologist-friendly quality control, normalization, visualization and analysis software dedicated to best practices with nCounter data.
The nCounter Technology is a multiplexed amplification-free, library-free digital gene expression data quantifying DNA, mRNAs, proteins, phosphorylation and miRNAs.
NOTE: ...Read More
nSolver™ Analysis Software is a free analysis platform for storage, custom QC, and custom normalization of nCounter data. Generate highly-customized exports, basic statistical outputs, and publication-quality figures quickly and easily with the included tools. nSolver is a biologist-friendly quality control, normalization, visualization and analysis software dedicated to best practices with nCounter data.
The nCounter Technology is a multiplexed amplification-free, library-free digital gene expression data quantifying DNA, mRNAs, proteins, phosphorylation and miRNAs.
NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Please register only if you intend to attend the workshop. Preparations ahead of the workshop for those interested in attending: 1. Download Sample/Demo Data under Course Material1 below. 2. Software Requirements: To download the nSolver v3.0.22 software, please register and then login on: www.nanostring.com. Based on your computer system, please choose the correct installation file (Mac or Windows-64-bit or Windows-32-bit). 3. Download nCounter Advanced Analysis Module v1.1.4 - Course Material2 4. Instructions for the Advanced Analysis module is available as PDF - Course Material3WORKSHOP AGENDA 11:30 am -12:30 pm nCounter Data and nSolver Software Overview 12:30-1:00 Lunch Break 1:00-3:00 pm Tutorial (bring your own data or use demo data)
RegisterOrganizerBTEPWhenWed, Feb 15, 2017 - 11:30 am - 3:00 pmWhereIn-Person |
nSolver™ Analysis Software is a free analysis platform for storage, custom QC, and custom normalization of nCounter data. Generate highly-customized exports, basic statistical outputs, and publication-quality figures quickly and easily with the included tools. nSolver is a biologist-friendly quality control, normalization, visualization and analysis software dedicated to best practices with nCounter data. The nCounter Technology is a multiplexed amplification-free, library-free digital gene expression data quantifying DNA, mRNAs, proteins, phosphorylation and miRNAs. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Please register only if you intend to attend the workshop. Preparations ahead of the workshop for those interested in attending: 1. Download Sample/Demo Data under Course Material1 below. 2. Software Requirements: To download the nSolver v3.0.22 software, please register and then login on: www.nanostring.com. Based on your computer system, please choose the correct installation file (Mac or Windows-64-bit or Windows-32-bit). 3. Download nCounter Advanced Analysis Module v1.1.4 - Course Material2 4. Instructions for the Advanced Analysis module is available as PDF - Course Material3 WORKSHOP AGENDA 11:30 am -12:30 pm nCounter Data and nSolver Software Overview 12:30-1:00 Lunch Break 1:00-3:00 pm Tutorial (bring your own data or use demo data) | 2017-02-15 11:30:00 | In-Person | Greg Gonye Ph.D. (Nanostring Technologies) | BTEP | 0 | Workshop on Analysis of NanoString Data | ||||
762 |
Description
This BTEP Workshop will cover the fundamentals and best practices of Exome-Seq analysis, including downstream interpretation of variants using a variety of in-house and NCI-licensed software solutions. There will be hands-on training on CCBR Exome-Seq Pipeline, CLC Biomedical Workbench, Genomatix GeneGrid, Ingenuity Variant Analysis and BioDiscovery Nexus Copy Number.
NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to ...Read More
This BTEP Workshop will cover the fundamentals and best practices of Exome-Seq analysis, including downstream interpretation of variants using a variety of in-house and NCI-licensed software solutions. There will be hands-on training on CCBR Exome-Seq Pipeline, CLC Biomedical Workbench, Genomatix GeneGrid, Ingenuity Variant Analysis and BioDiscovery Nexus Copy Number.
NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Please register only if you intend to attend the workshop. Dates: February 21-22, 2017 (Tuesday and Wednesday) Time: 9:30 am – 4:00 pm Location: NIH Bldg 10, FAES Classroom 4 SOFTWARE REQUIREMENTS: [1] Download the Trial License for CLC Biomedical Genomics Workbench here: https://www.qiagenbioinformatics.com/products/biomedical-genomics-workbe... [2] Download the Trial License for Ingenuity Variant Analysis here: https://www.qiagenbioinformatics.com/products/ingenuity-variant-analysis/ [3] For access to BioDiscovery Nexus Copy Number, please login to https://service.cancer.gov/, and navigate to Scientific Software under 'Request Something'. [4] Information on access to Genomatix GeneGrid will be provided to attendees present at the workshop, prior to the start of the session. WORKSHOP AGENDA Day 1: Tuesday, February 21, 2017 9:30 – 10:30 am Title: Introduction to Exome-Seq: What, Why, How? Presenter: Chunhua Yan, PhD This will be an introduction to Exome-Seq, covering: • Brief overview of next-generation sequencing technology 10:30 am – 12:30 pm Title: Exome-Seq Data Analysis Pipeline: From Reads to Results Presenter: Justin Lack, PhD This talk will provide an overview of the CCBR Exome-Seq pipeline work-flow with recommended best practices. Some of the topics covered will be:
LUNCH BREAK 12:30 – 1:00 pm 1:00-4:00 pm Title: CLC Biomedical Workbench for Analysis of Exome-Seq Data Presenter: Jennifer Poitras, Field Application Specialist Biomedical Genomics Workbench is a comprehensive and accurate data analysis platform that enables you to find the signal in the noise in your cancer and hereditary disease NGS data. With its broad selection of end-to-end analysis workflows, tools, and visualization modules, it enables easy and accurate discovery, verification, and validation of novel disease biomarkers. In this training, we will use prebuilt workflows, or analysis pipelines, to identify somatic variants in tumor samples and tumor/normal pairs. Within the workflow, we will map reads to the reference, identify variants, and annotate those variants not only with nucleic and amino acid changes, but also with information from third party sources, such as 1,000 genomes, dbSNP, and ClinVar. By the end of the training, you will appreciate that Biomedical Genomics Workbench is your one stop shop for analysis and visualization of NGS data. Day 2: Wednesday, February 22, 2017 9:30 am - 11:00am Title: Using the Genomatix GeneGrid Analyzer for Your Exome-Seq Data This talk will cover the ease-of-use and application(s) of GeneGrid:
11:00 am – 12:30 pm Title: Ingenuity Variant Analysis (IVA) Software for Identifying Clinically Impactful Variants Presenter: Jennifer Poitras, Field Application Specialist Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based both upon published biological evidence and your own knowledge of disease biology. This workshop will focus on how the users can upload their datasets, efficiently use different filters within variant analysis to identify causal variants, export data and will also go over the recent IVA updates. With IVA, you can interrogate your variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. LUNCH BREAK 12:30 – 1:00 pm 1:00 – 2:00 pm OPEN Q & A with Presenters 2:00 - 4:00 pm Title: Using BioDiscovery Nexus for Copy Number Analysis Presenter: Andrea O'Hara, Field Application Specialist Nexus Copy Number version 8.0, offers copy number estimation from whole-genome sequencing (WGS), whole-exome sequencing (WES), and targeted sequencing panels. The sophisticated algorithm in Nexus Copy Number requires only BAM files as input and in addition to copy number, also derives B-allele frequencies (BAF) from BAM files. The interactive visualization and powerful statistical tools allow detection of structural variations (e.g. copy number, homozygous regions), association with sequence variations (point mutations, InDels, inversions, etc.), and identification of statistically significant co-occurring up/down regulated genes (from mRNA, miRNA, and RNA-Seq data). In this workshop, we will evaluate matched and unmatched tumor-normal cohorts for copy number and sequence variant analysis; we will use the sophisticated built-in statistical analyses and integrated graphical display to rapidly explore and mine vast amounts of data in minutes. Comprehensive downstream analysis will include statistical comparisons, concordance, clustering, survival and enrichment analysis.
RegisterOrganizerBTEPWhenTue, Feb 21 - Wed, Feb 22, 2017 -9:30 am - 4:00 pmWhereBldg 10 FAES room 4 (B1C205) |
This BTEP Workshop will cover the fundamentals and best practices of Exome-Seq analysis, including downstream interpretation of variants using a variety of in-house and NCI-licensed software solutions. There will be hands-on training on CCBR Exome-Seq Pipeline, CLC Biomedical Workbench, Genomatix GeneGrid, Ingenuity Variant Analysis and BioDiscovery Nexus Copy Number. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Please register only if you intend to attend the workshop. Dates: February 21-22, 2017 (Tuesday and Wednesday) Time: 9:30 am – 4:00 pm Location: NIH Bldg 10, FAES Classroom 4 SOFTWARE REQUIREMENTS: [1] Download the Trial License for CLC Biomedical Genomics Workbench here: https://www.qiagenbioinformatics.com/products/biomedical-genomics-workbe... [2] Download the Trial License for Ingenuity Variant Analysis here: https://www.qiagenbioinformatics.com/products/ingenuity-variant-analysis/ [3] For access to BioDiscovery Nexus Copy Number, please login to https://service.cancer.gov/, and navigate to Scientific Software under 'Request Something'. [4] Information on access to Genomatix GeneGrid will be provided to attendees present at the workshop, prior to the start of the session. WORKSHOP AGENDA Day 1: Tuesday, February 21, 2017 9:30 – 10:30 am Title: Introduction to Exome-Seq: What, Why, How? Presenter: Chunhua Yan, PhD This will be an introduction to Exome-Seq, covering: • Brief overview of next-generation sequencing technology • Exome sequencing (Cost, Speed, Gene coverage, Biological implication) • Experimental design (Sample size, Coverage, Whole/Targeted exome-seq, Sample submission) • Mutation calling resources (Dream Challenge, Genome in A Bottle, exome databases) 10:30 am – 12:30 pm Title: Exome-Seq Data Analysis Pipeline: From Reads to Results Presenter: Justin Lack, PhD This talk will provide an overview of the CCBR Exome-Seq pipeline work-flow with recommended best practices. Some of the topics covered will be: Raw data processing and QC Short read mapping and alignment QC, Approaches to improving processing alignments Germline SNP and small INDEL calling, Somatic SNP and small INDEL calling, Germline and somatic structural variant calling, Multi-tool variant annotation (AVIA, SnpEff, Oncotator, etc.) Example processing and analysis of a tumor/germline comparison data set LUNCH BREAK 12:30 – 1:00 pm 1:00-4:00 pm Title: CLC Biomedical Workbench for Analysis of Exome-Seq Data Presenter: Jennifer Poitras, Field Application Specialist Biomedical Genomics Workbench is a comprehensive and accurate data analysis platform that enables you to find the signal in the noise in your cancer and hereditary disease NGS data. With its broad selection of end-to-end analysis workflows, tools, and visualization modules, it enables easy and accurate discovery, verification, and validation of novel disease biomarkers. In this training, we will use prebuilt workflows, or analysis pipelines, to identify somatic variants in tumor samples and tumor/normal pairs. Within the workflow, we will map reads to the reference, identify variants, and annotate those variants not only with nucleic and amino acid changes, but also with information from third party sources, such as 1,000 genomes, dbSNP, and ClinVar. By the end of the training, you will appreciate that Biomedical Genomics Workbench is your one stop shop for analysis and visualization of NGS data. Day 2: Wednesday, February 22, 2017 9:30 am - 11:00am Title: Using the Genomatix GeneGrid Analyzer for Your Exome-Seq Data Presenter: Justin Lack, Ph.D. This talk will cover the ease-of-use and application(s) of GeneGrid: Import and annotate variants Compare samples for multiple experimental designs Filter and prioritize variants Generate extensive reports Analyze affected pathway Browse variants on the genome 11:00 am – 12:30 pm Title: Ingenuity Variant Analysis (IVA) Software for Identifying Clinically Impactful Variants Presenter: Jennifer Poitras, Field Application Specialist Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based both upon published biological evidence and your own knowledge of disease biology. This workshop will focus on how the users can upload their datasets, efficiently use different filters within variant analysis to identify causal variants, export data and will also go over the recent IVA updates. With IVA, you can interrogate your variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. LUNCH BREAK 12:30 – 1:00 pm 1:00 – 2:00 pm OPEN Q & A with Presenters 2:00 - 4:00 pm Title: Using BioDiscovery Nexus for Copy Number Analysis Presenter: Andrea O'Hara, Field Application Specialist Nexus Copy Number version 8.0, offers copy number estimation from whole-genome sequencing (WGS), whole-exome sequencing (WES), and targeted sequencing panels. The sophisticated algorithm in Nexus Copy Number requires only BAM files as input and in addition to copy number, also derives B-allele frequencies (BAF) from BAM files. The interactive visualization and powerful statistical tools allow detection of structural variations (e.g. copy number, homozygous regions), association with sequence variations (point mutations, InDels, inversions, etc.), and identification of statistically significant co-occurring up/down regulated genes (from mRNA, miRNA, and RNA-Seq data). In this workshop, we will evaluate matched and unmatched tumor-normal cohorts for copy number and sequence variant analysis; we will use the sophisticated built-in statistical analyses and integrated graphical display to rapidly explore and mine vast amounts of data in minutes. Comprehensive downstream analysis will include statistical comparisons, concordance, clustering, survival and enrichment analysis. | 2017-02-21 09:30:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | Justin Lack (NIAID CBR) | BTEP | 0 | From the Beginning: Exome-Seq Data Analysis (2 day) | |||
761 |
Description
BTEP Workshop on RNA-Seq Data Analysis (2-day)
This 2-day workshop, which includes both lecture and hands-on components, will cover the fundamentals of and best practices for RNA-Seq Data Analysis. Learn everything from experimental design and sample prep requirements, to alignment, quantification, generation of differentially expressed genes, and understanding the results after completion of analysis. There will be presentations and training on using both open source (CCBR RNA-Seq Pipeline) and commercial (Partek Flow) software. <...Read More
BTEP Workshop on RNA-Seq Data Analysis (2-day)
This 2-day workshop, which includes both lecture and hands-on components, will cover the fundamentals of and best practices for RNA-Seq Data Analysis. Learn everything from experimental design and sample prep requirements, to alignment, quantification, generation of differentially expressed genes, and understanding the results after completion of analysis. There will be presentations and training on using both open source (CCBR RNA-Seq Pipeline) and commercial (Partek Flow) software. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Date: March 20-21, 2017 Time: 9:30 am – 4:00 pm Location: NIH Bldg 10 FAES Classroom 4For CCR staff located outside of the Bethesda campus, the talks will be webcast for your convenience. Please register for the webinar here: https://attendee.gotowebinar.com/register/469987726031396353 WORKSHOP AGENDA Monday, March 20 - Morning Session 9:35 - 10:35 am Introduction to RNA-Seq Speaker: Maggie Cam, Ph.D. The first part of the session will provide an introduction to the technology, its various applications, comparison to microarray, advantages as well as limitations, and costs associated with doing this NGS experiment. The second part of the talk will focus on best practices to be adopted when considering RNA-Seq for your research, including sample quality, sequencing depth, replicates, analytical methods, and results generated with this approach. 10:40 - 11:40 am Introduction to Single Cell RNA-Seq Speaker: Michael Kelly, PhD This presentation will discuss how scRNASeq is different from conventional RNA-Seq, special challenges, specific applications, experimental and analytical requirements.11:45 am -12:30 pm Understanding the NGS vocabulary and file formats Speaker: Peter C. Fitzgerald, PhD This talk will discuss file formats and terms commonly used for NGS data analysis. LUNCH BREAK 12:30 - 1:00 pm Monday, March 20 - Afternoon Session 1:00 - 4:00 pm CCBR RNA-Seq Pipeline Speaker: Fathi Elloumi, PhD This session will be a comprehensive review of the pipeline built and used by CCBR for analysis of RNA-Seq data, and will cover: 1. Introduction 2. Analytical Steps
6. Final, brief hands-on session for ONLY those who fulfill the following requirements:
This is applicable for only this last session on Day 1. Not necessary for other sessions on Day 1 or Day 2. Day 2 - Tuesday, March 21 9:30 am - 10:00 am Set up time for Partek Flow and Partek Genomics Suite 10:00 - 12:30 pm RNA-Seq Analysis using Partek Flow Presenter: Eric Seiser, PhD - Partek Field Application Specialist An overview of getting started on the NIH Helix server and then a live demo of RNA-seq analysis in Partek Flow. The training will highlight key concepts in RNA-seq analysis and their implementation Flow. This will be followed by a demo utilizing Partek Flow to importing raw sequence data in fastq format from a published study, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation.LUNCH BREAK 12:30 - 1:00 pm 1:00 - 4:00 pm Read count data analysis using Partek Flow and Genomics Suite Presenter: Eric Seiser, PhD - Partek Field Application Specialist This second part of the training session will allow users to take raw RNA-seq data from a recently published study and independently build a complete analysis pipeline within Partek Flow, allowing students to ask questions as they analyze the data. This will be followed by an overview of RNA-seq functionality in Partek Genomics Suite, focusing on plotting options, data integration, and enrichment analysis. The final part of the training will allow users hand-on training to import the results from their Flow analysis pipeline and explore the downstream features in Genomics Suite. This time will also be used as a general question and answer session. Students will learn how to use basic features of Partek Flow and Partek Genomics Suite, including:· Partek Flow • Getting set up on NIH Helix server • Importing data • Performing QA/AC • Alignment • Gene/transcript abundance estimation • Differential expression detection • Go Enrichment analysis • Visualization (PCA, dotplot, volcano plot, chromosome view, hierarchical clustering etc.) • Microarray analysis and integration with RNA-seq data. · Partek Genomics Suite • Importing Partek Flow project and text file format • Visualization (PCA, dot plot, heatmap etc.) • Pathway analysis • Integration of genomic data. * Instructions for setting up access to Partek Flow will be provided to attendees at the workshop. **Information for installing Partek Genomics Suite will be sent to registrants ahead of the workshop. RegisterOrganizerBTEPWhenMon, Mar 20 - Tue, Mar 21, 2017 -9:30 am - 4:00 pmWhereBldg 10 FAES room 4 (B1C205) |
BTEP Workshop on RNA-Seq Data Analysis (2-day) This 2-day workshop, which includes both lecture and hands-on components, will cover the fundamentals of and best practices for RNA-Seq Data Analysis. Learn everything from experimental design and sample prep requirements, to alignment, quantification, generation of differentially expressed genes, and understanding the results after completion of analysis. There will be presentations and training on using both open source (CCBR RNA-Seq Pipeline) and commercial (Partek Flow) software. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Date: March 20-21, 2017 Time: 9:30 am – 4:00 pm Location: NIH Bldg 10 FAES Classroom 4 For CCR staff located outside of the Bethesda campus, the talks will be webcast for your convenience. Please register for the webinar here: https://attendee.gotowebinar.com/register/469987726031396353 WORKSHOP AGENDA Monday, March 20 - Morning Session 9:35 - 10:35 am Introduction to RNA-Seq Speaker: Maggie Cam, Ph.D. The first part of the session will provide an introduction to the technology, its various applications, comparison to microarray, advantages as well as limitations, and costs associated with doing this NGS experiment. The second part of the talk will focus on best practices to be adopted when considering RNA-Seq for your research, including sample quality, sequencing depth, replicates, analytical methods, and results generated with this approach. 10:40 - 11:40 am Introduction to Single Cell RNA-Seq Speaker: Michael Kelly, PhD This presentation will discuss how scRNASeq is different from conventional RNA-Seq, special challenges, specific applications, experimental and analytical requirements. 11:45 am -12:30 pm Understanding the NGS vocabulary and file formats Speaker: Peter C. Fitzgerald, PhD This talk will discuss file formats and terms commonly used for NGS data analysis. LUNCH BREAK 12:30 - 1:00 pm Monday, March 20 - Afternoon Session 1:00 - 4:00 pm CCBR RNA-Seq Pipeline Speaker: Fathi Elloumi, PhD This session will be a comprehensive review of the pipeline built and used by CCBR for analysis of RNA-Seq data, and will cover: 1. Introduction 2. Analytical Steps Initial QC Alignment - aligners, transcriptome vs genome, non-aligners Post-Alignment QC Expression quantitation, FPKM, counts, Junctions reads Normalization (different methods) Differential Expression gene/transcriptome lists Isoform calling 3. Demo on the RNA-Seq pipeline 4. Detailed review of pre-analyzed results Multi-QC results Differentially Expressed Genes Isoform Expression (high-level review) 5. Next Steps Viewers - Manual validation (IGV) Principal Component Analysis (PCA) Clustering - Different methods Pathway Enrichment (GSEA) 6. Final, brief hands-on session for ONLY those who fulfill the following requirements: Already have an existing Biowulf/Helix Account Basic working knowledge of command line on Terminal Functional XQuartz application (https://www.xquartz.org/releases/XQuartz-2.7.11.html) This is applicable for only this last session on Day 1. Not necessary for other sessions on Day 1 or Day 2. Day 2 - Tuesday, March 21 9:30 am - 10:00 am Set up time for Partek Flow and Partek Genomics Suite 10:00 - 12:30 pm RNA-Seq Analysis using Partek Flow Presenter: Eric Seiser, PhD - Partek Field Application Specialist An overview of getting started on the NIH Helix server and then a live demo of RNA-seq analysis in Partek Flow. The training will highlight key concepts in RNA-seq analysis and their implementation Flow. This will be followed by a demo utilizing Partek Flow to importing raw sequence data in fastq format from a published study, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation. LUNCH BREAK 12:30 - 1:00 pm 1:00 - 4:00 pm Read count data analysis using Partek Flow and Genomics Suite Presenter: Eric Seiser, PhD - Partek Field Application Specialist This second part of the training session will allow users to take raw RNA-seq data from a recently published study and independently build a complete analysis pipeline within Partek Flow, allowing students to ask questions as they analyze the data. This will be followed by an overview of RNA-seq functionality in Partek Genomics Suite, focusing on plotting options, data integration, and enrichment analysis. The final part of the training will allow users hand-on training to import the results from their Flow analysis pipeline and explore the downstream features in Genomics Suite. This time will also be used as a general question and answer session. Students will learn how to use basic features of Partek Flow and Partek Genomics Suite, including:· Partek Flow • Getting set up on NIH Helix server • Importing data • Performing QA/AC • Alignment • Gene/transcript abundance estimation • Differential expression detection • Go Enrichment analysis • Visualization (PCA, dotplot, volcano plot, chromosome view, hierarchical clustering etc.) • Microarray analysis and integration with RNA-seq data.· Partek Genomics Suite • Importing Partek Flow project and text file format • Visualization (PCA, dot plot, heatmap etc.) • Pathway analysis • Integration of genomic data. * Instructions for setting up access to Partek Flow will be provided to attendees at the workshop. **Information for installing Partek Genomics Suite will be sent to registrants ahead of the workshop. | 2017-03-20 09:30:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | Maggie Cam (NCI CCBR) | BTEP | 0 | Comprehending the Message: RNA-Seq Data Analysis | |||
755 |
Description
The CCR Bioinformatics Training and Education Program (BTEP) is excited to arrange its inaugural informational presentation for the CCR scientific community at NCI-Frederick.
Date: Wednesday, March 29, 2017
Time: 11:00 am - 12:00 pm
Location: ATRF Room E-1106
The talk will cover, among other topics:
The CCR Bioinformatics Training and Education Program (BTEP) is excited to arrange its inaugural informational presentation for the CCR scientific community at NCI-Frederick.
Date: Wednesday, March 29, 2017
Time: 11:00 am - 12:00 pm
Location: ATRF Room E-1106
The talk will cover, among other topics:
Webex details to join in online Topic: Informational Session on BTEP at ATRF ------------------------------------------------------- IMPORTANT NOTICE: This WebEx service includes a feature that allows audio and any documents and other materials exchanged or viewed during the session to be recorded. You should inform all meeting attendees prior to recording if you intend to record the meeting. Please note that any such recordings may be subject to discovery in the event of litigation.
RegisterOrganizerBTEPWhenWed, Mar 29, 2017 - 11:00 am - 12:00 pmWhereATRF Rm E1106 |
The CCR Bioinformatics Training and Education Program (BTEP) is excited to arrange its inaugural informational presentation for the CCR scientific community at NCI-Frederick. Date: Wednesday, March 29, 2017 Time: 11:00 am - 12:00 pm Location: ATRF Room E-1106 The talk will cover, among other topics: the history and mission of the program, the team and support infrastructure, information on the BTEP website schedule of future workshops and events, collaborations with other groups and institutions across NIH No registration required. Presentation will be webcast through Webex (see below). Webex details to join in online Topic: Informational Session on BTEP at ATRF Date and Time:Wednesday, March 29, 2017 11:00 am, Eastern Daylight Time (New York, GMT-04:00) Event number: 731 630 993 Event password: pRcEwp2$ Event address for attendees: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=e538eeeba889db9f2137b17... ------------------------------------------------------- Audio conference information ------------------------------------------------------- Call-in toll-free number (US/Canada): 1-855-244-8681 Call-in toll number (US/Canada): 1-650-479-3207 Global call-in numbers: https://cbiit.webex.com/cbiit/globalcallin.php?serviceType=EC&ED=5439598... Toll-free dialing restrictions: https://www.webex.com/pdf/tollfree_restrictions.pdf Access code: 731 630 993 https://www.webex.com IMPORTANT NOTICE: This WebEx service includes a feature that allows audio and any documents and other materials exchanged or viewed during the session to be recorded. You should inform all meeting attendees prior to recording if you intend to record the meeting. Please note that any such recordings may be subject to discovery in the event of litigation. | 2017-03-29 11:00:00 | ATRF Rm E1106 | In-Person | BTEP | 0 | Informational Session on BTEP | ||||
756 |
Description
The CCR Bioinformatics Training and Education Program (BTEP) is pleased to organize a workshop on Partek Flow for scientists at NCI-Frederick.
Partek Flow software is designed specifically for the analysis needs of next generation sequencing (NGS) applications including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface, one can perform alignment, quantification, quality control, statistics and visualization for their NGS data.
Date: Wednesday, March 29, 2017
Time: 2:00 - 4:30 pm
<...Read More
The CCR Bioinformatics Training and Education Program (BTEP) is pleased to organize a workshop on Partek Flow for scientists at NCI-Frederick.
Partek Flow software is designed specifically for the analysis needs of next generation sequencing (NGS) applications including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface, one can perform alignment, quantification, quality control, statistics and visualization for their NGS data.
Date: Wednesday, March 29, 2017
Time: 2:00 - 4:30 pm
Location: NCI-F Building 549, Scientific Library Training Room
Registration is required. Note: The workshop is limited to 12 seats (10 seats with desktops available for use, and 2 seats for those who can bring their own laptops) For more information about the venue, please contact: Alan Doss Informationist, Scientific Library Email: dossal@mail.nih.gov Phone: 301-846-1093 WORKSHOP AGENDA 2:00 - 4:30 pm RNA-Seq Analysis using Partek Flow Presenter: Eric Seiser, PhD - Partek Field Application Specialist An overview of getting started on the NIH Helix server and then a live demo of RNA-seq analysis in Partek Flow. The training will highlight key concepts in RNA-seq analysis and their implementation Flow. This will be followed by a hands-on session utilizing Partek Flow to importing raw sequence data in fastq format from a published study, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation.Students will learn how to use basic features of Partek Flow, including: • Getting set up on NIH Helix server• Importing data • Performing QA/AC • Alignment • Gene/transcript abundance estimation • Differential expression detection • Go Enrichment analysis • Visualization (PCA, dotplot, volcano plot, chromosome view, hierarchical clustering etc.) • Microarray analysis and integration with RNA-seq data
RegisterOrganizerBTEPWhenWed, Mar 29, 2017 - 2:00 pm - 4:30 pmWhereNCI-F Bldg549, Scientific Library Training Room |
The CCR Bioinformatics Training and Education Program (BTEP) is pleased to organize a workshop on Partek Flow for scientists at NCI-Frederick. Partek Flow software is designed specifically for the analysis needs of next generation sequencing (NGS) applications including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface, one can perform alignment, quantification, quality control, statistics and visualization for their NGS data. Date: Wednesday, March 29, 2017 Time: 2:00 - 4:30 pm Location: NCI-F Building 549, Scientific Library Training Room Registration is required. Note: The workshop is limited to 12 seats (10 seats with desktops available for use, and 2 seats for those who can bring their own laptops) For more information about the venue, please contact: Alan Doss Informationist, Scientific Library Email: dossal@mail.nih.gov Phone: 301-846-1093 WORKSHOP AGENDA 2:00 - 4:30 pm RNA-Seq Analysis using Partek Flow Presenter: Eric Seiser, PhD - Partek Field Application Specialist An overview of getting started on the NIH Helix server and then a live demo of RNA-seq analysis in Partek Flow. The training will highlight key concepts in RNA-seq analysis and their implementation Flow. This will be followed by a hands-on session utilizing Partek Flow to importing raw sequence data in fastq format from a published study, followed by performing QA/QC, alignment, quantification, differential expression detection and finally biological interpretation. Students will learn how to use basic features of Partek Flow, including: • Getting set up on NIH Helix server • Importing data • Performing QA/AC • Alignment • Gene/transcript abundance estimation • Differential expression detection • Go Enrichment analysis • Visualization (PCA, dotplot, volcano plot, chromosome view, hierarchical clustering etc.) • Microarray analysis and integration with RNA-seq data | 2017-03-29 14:00:00 | NCI-F Bldg549, Scientific Library Training Room | In-Person | BTEP | 0 | Partek Flow Workshop for CCR Scientists at NCI-Frederick | ||||
760 |
Description
Probing DNA-Protein Interactions
This 2-day workshop, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of ChIP-Seq data analysis. Topics to be covered include: experimental design; read alignment; peak calling; and biological interpretation. A hands-on component will include tutorials on Genomatix, and a demo of the CCBR ChIP-Seq pipeline (featuring MACS and SICER). There will also be a session on mining public data from ENCODE and other databases.
NOTE: ...Read More
Probing DNA-Protein Interactions
This 2-day workshop, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of ChIP-Seq data analysis. Topics to be covered include: experimental design; read alignment; peak calling; and biological interpretation. A hands-on component will include tutorials on Genomatix, and a demo of the CCBR ChIP-Seq pipeline (featuring MACS and SICER). There will also be a session on mining public data from ENCODE and other databases.
NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form.
Date: April 17-18, 2017 (Monday and Tuesday)
Time: 9:30 am to 4:00 pm
Location: NIH Bldg 10 FAES Classroom 4 (B1C205)
Registration required. Please click on 'Register Here' link at the bottom of this webpage.
WORKSHOP AGENDA
Day 1 Morning 9:30 - 11:30 am Introductory Lecture The opening talk on ChIP-Seq will introduce the fundamentals and best practices for the technology, and provide the foundation for:
Presenter: Alexei Lobanov, PhD, CCBR This talk will highlight innovative variations of the classical ChIP-Seq technique that provide different insights and information to analyze the epigenome. There will be discussion on the experimental differences, considerations to choose a subtype based on the research question, and considerations to analyze the data generated from these techniques. Some of the specific subtypes that will be presented include:
Day 1 Afternoon 1:00 - 4: 00 pm Analysis of ChIP-Seq data: Raw Data to Results Presenter: Bong-Hyun Kim, PhD, CCBR This session will cover, in comprehensive detail, the analytical pipeline that is implemented by CCBR. After reinforcing critical aspects and best practices to conduct an effective ChIP-Seq experiment, attendees will have the opportunity to follow a demo of the CCBR ChIP-Seq workflow using an example dataset. There will be detailed review of data QA/QC, visualization of results and the types of outputs from the pipeline.Day 2 Morning 9:30 am -12:30 pm Hands-on Tutorial for Analysis of ChIP-Seq data with the Genomatix Genome Analyzer (GGA) Presenter: Thomas Werner, PhDThe presenter will guide participants through hands-on-training with a ChIP-Seq experiment on the GGA software tool. The training will cover aspects from analysis of BAM files through annotation & statistics, use visualization tools from the Genomatix GePS pathway system and Genome Browser, and finish with a higher level downstream promoter analysis. At the end of the workshop, participants will be able to:1. Set up and generate a graphical overview of a ChIP-seq workflow that will include loading a sample data set into the workflow, discussion of parameters, executing the analysis, and examining the results. 2. Analyze results using:
4. Use ModelInspector to determine whether a MORE-cassette is relevant for the biology in question.
12:30 - 1:30 pm LUNCH BREAK Day 2 Afternoon 1:30 - 3: 30 pm Mining ChIP-Seq data from Public Databases Presenter: Bong-Hyun Kim, PhD, CCBR In this session, attendees will be able to learn how to explore information from publicly available ChIP-seq databases, and extract meaningful data that could be used for your research. Some of the databases to be discussed are:
RegisterOrganizerBTEPWhenMon, Apr 17 - Tue, Apr 18, 2017 -9:30 am - 4:00 pmWhereBldg 10 FAES room 4 (B1C205) |
Probing DNA-Protein Interactions This 2-day workshop, which includes both lecture and hands-on components, will teach the basic concepts and practical aspects of ChIP-Seq data analysis. Topics to be covered include: experimental design; read alignment; peak calling; and biological interpretation. A hands-on component will include tutorials on Genomatix, and a demo of the CCBR ChIP-Seq pipeline (featuring MACS and SICER). There will also be a session on mining public data from ENCODE and other databases. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Date: April 17-18, 2017 (Monday and Tuesday) Time: 9:30 am to 4:00 pm Location: NIH Bldg 10 FAES Classroom 4 (B1C205) Registration required. Please click on 'Register Here' link at the bottom of this webpage. WORKSHOP AGENDA Day 1 Morning 9:30 - 11:30 am Introductory Lecture Presenter: Peter FitzGerald, PhD - CCR, NCI The opening talk on ChIP-Seq will introduce the fundamentals and best practices for the technology, and provide the foundation for: Understanding the methodolgy Comparisons to related techniques Data Analysis Experimental Design Quality Control Peak Calling (Different methodologies) Major Sources of Error Causes of Fail Experiments Validation Methods Sequence Specific Binding Identification of Motifs Overexpressed sequences Pathways Resources Public Repositories Literature References Software listings 11:30 am - 12:30 pm An Overview on Experimental Subtypes and Variations of ChIP-Seq Presenter: Alexei Lobanov, PhD, CCBR This talk will highlight innovative variations of the classical ChIP-Seq technique that provide different insights and information to analyze the epigenome. There will be discussion on the experimental differences, considerations to choose a subtype based on the research question, and considerations to analyze the data generated from these techniques. Some of the specific subtypes that will be presented include: DNase-seq Assay for Transposase-Accessible Chromatin-seq (ATAC-seq) Formaldehyde-assisted Isolation of Regulatory Elelments–seq (FAIRE-seq) reveal regions of open chromatin, not associated with any protein MNase-seq identifies specifically positioned nucleosomes 12:30 - 1:00 pm LUNCH BREAK Day 1 Afternoon 1:00 - 4: 00 pm Analysis of ChIP-Seq data: Raw Data to Results Presenter: Bong-Hyun Kim, PhD, CCBR This session will cover, in comprehensive detail, the analytical pipeline that is implemented by CCBR. After reinforcing critical aspects and best practices to conduct an effective ChIP-Seq experiment, attendees will have the opportunity to follow a demo of the CCBR ChIP-Seq workflow using an example dataset. There will be detailed review of data QA/QC, visualization of results and the types of outputs from the pipeline. Day 2 Morning 9:30 am -12:30 pm Hands-on Tutorial for Analysis of ChIP-Seq data with the Genomatix Genome Analyzer (GGA) Presenter: Thomas Werner, PhD The presenter will guide participants through hands-on-training with a ChIP-Seq experiment on the GGA software tool. The training will cover aspects from analysis of BAM files through annotation & statistics, use visualization tools from the Genomatix GePS pathway system and Genome Browser, and finish with a higher level downstream promoter analysis. At the end of the workshop, participants will be able to: 1. Set up and generate a graphical overview of a ChIP-seq workflow that will include loading a sample data set into the workflow, discussion of parameters, executing the analysis, and examining the results. 2. Analyze results using: Annotation & Statistics application to gain a deeper understanding of their content Correlation of ChIP-Seq peaks with actual transcriptional changes to define real Transcription Factor (TF)-targets Analysis of these target genes using GePS (Genomatix pathway system) Data visualization in feature-rich Genome Browser 3. Do further downstream analysis by selecting peaks (bed files), converting them to sequence files, and use FrameWorker to find putative MORE (Multiple Organized Regulatory Elements) cassettes. 4. Use ModelInspector to determine whether a MORE-cassette is relevant for the biology in question. 12:30 - 1:30 pm LUNCH BREAK Day 2 Afternoon 1:30 - 3: 30 pm Mining ChIP-Seq data from Public Databases Presenter: Bong-Hyun Kim, PhD, CCBR In this session, attendees will be able to learn how to explore information from publicly available ChIP-seq databases, and extract meaningful data that could be used for your research. Some of the databases to be discussed are: RegulomeDB ENCODE (ENCyclopedia Of DNA Elements) Epigenome Roadmap Mouse Encode & modENCODE Cistrome JASPAR database | 2017-04-17 09:30:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | Peter FitzGerald (GAU),Alexei Lobanov (CCBR),Thomas Werner (Genomatix) | BTEP | 0 | Stepping into the Regulome: ChIP-Seq/ENCODE Data Analysis | |||
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Description
This talk will be an introduction to Methyl-seq, where you will learn about leveraging the power of next-generation sequencing (NGS), both genome-wide and targeted approaches, that can provide insight into methylation patterns at a single nucleotide level.
Members from the CCR-SF Informatics Group will be sharing their expertise and experience with this technology and emerging applications.
Some of the topics covered will be:
This talk will be an introduction to Methyl-seq, where you will learn about leveraging the power of next-generation sequencing (NGS), both genome-wide and targeted approaches, that can provide insight into methylation patterns at a single nucleotide level.
Members from the CCR-SF Informatics Group will be sharing their expertise and experience with this technology and emerging applications.
Some of the topics covered will be:
Note: Please select NIH Main Campus as the location on the registration page. This event is being organized only on the Bethesda campus, not Frederick. For those outside of campus interested in attending, please join via WebEx - UR: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=ec897170ff6119f8baea6d8... RegisterOrganizerBTEPWhenTue, Apr 25, 2017 - 2:00 pm - 4:00 pmWhereNIH Bethesda B37, Rm 4041/4107 |
This talk will be an introduction to Methyl-seq, where you will learn about leveraging the power of next-generation sequencing (NGS), both genome-wide and targeted approaches, that can provide insight into methylation patterns at a single nucleotide level. Members from the CCR-SF Informatics Group will be sharing their expertise and experience with this technology and emerging applications. Some of the topics covered will be: Experimental design consideration Sample submission, sequencing and data processing workflows at SF Brief overview of Methyl-Seq technologies Methyl-Seq protocols available at SF and evaluation of newer applications Methyl-Seq raw data processing, mapping and QC Methylation count analysis for single sample Multi-sample differential methylation analysis Note: Please select NIH Main Campus as the location on the registration page. This event is being organized only on the Bethesda campus, not Frederick. For those outside of campus interested in attending, please join via WebEx - UR: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=ec897170ff6119f8baea6d8... Event number: 732 957 108 Event password: eSb3A4h$ | 2017-04-25 14:00:00 | NIH Bethesda B37, Rm 4041/4107 | In-Person | Yongmei Zhao (CCR-SF IFX Group) | BTEP | 0 | Introduction to Methyl-Seq: Experimental Design, Technology and Data Analysis | |||
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Description
The CCR Bioinformatics Training and Education Program (BTEP) is pleased to organize a workshop on Partek Genomics Suite for scientists at NCI-Frederick.
Partek® Genomics Suite® is a versatile scientific software with an easy-to-use graphical interface for expression and genomic data analysis, as well as statistics and visualization needs. There are comprehensive workflows for many data types, including microarray, qPCR platforms, and NGS as well. This workshop will focus on the gene expression workflows ...Read More
The CCR Bioinformatics Training and Education Program (BTEP) is pleased to organize a workshop on Partek Genomics Suite for scientists at NCI-Frederick.
Partek® Genomics Suite® is a versatile scientific software with an easy-to-use graphical interface for expression and genomic data analysis, as well as statistics and visualization needs. There are comprehensive workflows for many data types, including microarray, qPCR platforms, and NGS as well. This workshop will focus on the gene expression workflows from microarray, discuss other relevant analytical modules available in the PGS system, and provide attendees an opportunity to perform hands-on training on this software.
Date: Wednesday, April 26, 2017
Time: 11:00 am - 4:00 pm
Location: NCI-F Building 549, Scientific Library Training Room
Presenter: Eric Seiser, PhD - Partek Field Application Specialist
Registration is required. Note: The workshop is limited to 12 seats (10 seats with desktops available for use, and 2 seats for those who can bring their own laptops). For more information about the venue, please contact: Alan Doss Informationist, Scientific Library Email: dossal@mail.nih.gov Phone: 301-846-1093 WORKSHOP AGENDA11:00 am - 12:00 pm Introduction to Partek Genomics Suite This will be an overview of the software, including statistics, workflows and other analytical modules relevant for gene expression analysis. 12:00 - 1:00 pm LUNCH BREAK 1:00 - 4:00 pm Comprehensive hands-on training on PGS This session will be covering end-to-end analysis of gene expression data (example set will be provided). The complete gene expression analysis workflow will be followed that includes QA/QC of the data, differential expression detection, and biological interpretation using Partek Pathway. The presenter will also show participants how to perform batch effect removal, integration with other relevant data, and generating applicable visuals for the data.
RegisterOrganizerBTEPWhenWed, Apr 26, 2017 - 11:00 am - 4:00 pmWhereNCI-F Bldg549 Scientific Library Training Room |
The CCR Bioinformatics Training and Education Program (BTEP) is pleased to organize a workshop on Partek Genomics Suite for scientists at NCI-Frederick. Partek® Genomics Suite® is a versatile scientific software with an easy-to-use graphical interface for expression and genomic data analysis, as well as statistics and visualization needs. There are comprehensive workflows for many data types, including microarray, qPCR platforms, and NGS as well. This workshop will focus on the gene expression workflows from microarray, discuss other relevant analytical modules available in the PGS system, and provide attendees an opportunity to perform hands-on training on this software. Date: Wednesday, April 26, 2017 Time: 11:00 am - 4:00 pm Location: NCI-F Building 549, Scientific Library Training Room Presenter: Eric Seiser, PhD - Partek Field Application Specialist Registration is required. Note: The workshop is limited to 12 seats (10 seats with desktops available for use, and 2 seats for those who can bring their own laptops). For more information about the venue, please contact: Alan Doss Informationist, Scientific Library Email: dossal@mail.nih.gov Phone: 301-846-1093 WORKSHOP AGENDA 11:00 am - 12:00 pm Introduction to Partek Genomics Suite This will be an overview of the software, including statistics, workflows and other analytical modules relevant for gene expression analysis. 12:00 - 1:00 pm LUNCH BREAK 1:00 - 4:00 pm Comprehensive hands-on training on PGS This session will be covering end-to-end analysis of gene expression data (example set will be provided). The complete gene expression analysis workflow will be followed that includes QA/QC of the data, differential expression detection, and biological interpretation using Partek Pathway. The presenter will also show participants how to perform batch effect removal, integration with other relevant data, and generating applicable visuals for the data. | 2017-04-26 11:00:00 | NCI-F Bldg549 Scientific Library Training Room | In-Person | BTEP | 0 | Partek Genomics Suite Workshop at NCI-Frederick | ||||
752 |
Description
Statistics for Biologists
A high-level overview of basic statistical tools and statistical reasoning skills used in the study of biological data will be presented in this installment. This is an introductory course, requiring very little prerequisite statistical expertise. Specific topics include: Exploratory data analysis, Statistical inference, and Sample size considerations in study design.
The first of these series will cover the following topics:
Statistics for Biologists
A high-level overview of basic statistical tools and statistical reasoning skills used in the study of biological data will be presented in this installment. This is an introductory course, requiring very little prerequisite statistical expertise. Specific topics include: Exploratory data analysis, Statistical inference, and Sample size considerations in study design.
The first of these series will cover the following topics:
RegisterOrganizerBTEPWhenTue, May 16, 2017 - 2:30 pm - 4:30 pmWhereIn-Person |
Statistics for Biologists A high-level overview of basic statistical tools and statistical reasoning skills used in the study of biological data will be presented in this installment. This is an introductory course, requiring very little prerequisite statistical expertise. Specific topics include: Exploratory data analysis, Statistical inference, and Sample size considerations in study design. The first of these series will cover the following topics: Exploratory Data Analysis (EDA) Data/ Plot Types Conditional Probability/ Contingency Tables Central Limit Theorem Population Samples Sampling Inference Hypothesis Testing; Types of errors P-values and beyond (p-hacking) Confidence Intervals Power and Sample Size Calculations | 2017-05-16 14:30:00 | In-Person | S. Ravichandran (Advanced Biomedical Computing Center Leidos Biomed FNLCR) | BTEP | 0 | Statistics for Biologists Series | ||||
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Description
Driven by the decreasing costs and increasing performance of next-generation sequencing (NGS) technologies, the amount of available genomic data has grown exponentially in recent years. While most of the analyses of these data is done computationally, there are many instances where visual inspection of the original and/or processed data is invaluable. Such direct visualization can provide: “sanity checks” on computational results; novel biological insights; aid in communicating results; and a better understanding of the ...Read More
Driven by the decreasing costs and increasing performance of next-generation sequencing (NGS) technologies, the amount of available genomic data has grown exponentially in recent years. While most of the analyses of these data is done computationally, there are many instances where visual inspection of the original and/or processed data is invaluable. Such direct visualization can provide: “sanity checks” on computational results; novel biological insights; aid in communicating results; and a better understanding of the interplay between spatially related biological elements. These visualization, pathways and enrichment analysis tools are relevant whether one is interested in expression analysis (RNA-Seq), variant detection (Exome-Seq), protein binding (ChIP-Seq), or any other genome scale data.
NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Please also review the software requirements and instructions provided below.
Day 1 - Monday, May 22, 2017 9:30 - 10:00 am Introduction to Workshop Concepts and Sessions Presenter: Anand S. Merchant, MD, PhD 10:00 am - 12:30 pm MetaCore Presenter: Matthew Wampole, PhD MetaCore™ is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. The scope of data types includes microarray and sequence-based gene expression, SNPs and CGH arrays, RNAi screens, gene variants, proteomics, metabolomics, Co-IP pull-out and other custom interactions which can all by analyzed in tandem. In this session, we’ll be analyzing data published recently in PNAS about NOTCH1 signaling in chronic lymphocytic leukemia (http://www.pnas.org/content/114/14/E2911.abstract). From this publication, we’ll explore what pathways are enriched by up regulated genes by ICN1-HA from RNA-seq and bound to NOTCH1 in CHiP-seq experiments. Use overconnectivity analysis to associate transcription factors with the regulation of these upregulated genes. Compare RNA-seq expression data chronic lymphocytic leukemia cells derived from patients with and without NOTCH1 mutations and expression. Finally, we’ll use the ICN1-HA induced up-regulated gene signature to compare against publically available GEO microarray data to find similar signatures in other diseases. 12:30 - 1:00 pm LUNCH BREAK 1:00 - 4:00 pm QluCore Omics Explorer Presenter: Carl-Johan Ivarsson, PhD This session will include introduction to and exercises on basic features and functionality in Qlucore Omics Explorer. It is intended for new users and does not require that you have previous experience with Qlucore Omics Explorer. After the training you should be able to do the following using Qlucore Omics Explorer:
Day 2 - Tuesday, May 23, 2017 9:30 am – 12:30 pm Open-Source Tools for Analysis and Visualization of NGS Data (CRAVAT, MuPIT, and NG-CHM) RegisterOrganizerBTEPWhenMon, May 22 - Tue, May 23, 2017 -9:30 am - 4:00 pmWhereBldg 10 FAES room 4 (B1C205) |
Driven by the decreasing costs and increasing performance of next-generation sequencing (NGS) technologies, the amount of available genomic data has grown exponentially in recent years. While most of the analyses of these data is done computationally, there are many instances where visual inspection of the original and/or processed data is invaluable. Such direct visualization can provide: “sanity checks” on computational results; novel biological insights; aid in communicating results; and a better understanding of the interplay between spatially related biological elements. These visualization, pathways and enrichment analysis tools are relevant whether one is interested in expression analysis (RNA-Seq), variant detection (Exome-Seq), protein binding (ChIP-Seq), or any other genome scale data. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. Please also review the software requirements and instructions provided below. Registration is required. Important: Registration will close on Thursday, May 18th at 5:00 pm. Note: On the registration page, you have the option to (a) attend all four sessions, or (b) select the session/s that you would like to attend. Please choose carefully and only if you are committed to attending the session/s. Software requirements and instructions for hands-on training on the respective applications: Preferred browsers are Chrome, Firefox, or Safari for all sessions. Internet Explorer (IE) will not be compatible with most of these analysis tools. Please bring your PIV cards (and card readers) in order to set up VPN or access to NIH Wireless in the Building 10 FAES classroom. For the Ingenuity Pathway Analysis (IPA) session, please make sure you have an active account and the application opens up succesfully on your computer prior to the workshop. Kindy submit a request to NCI IT (https://service.cancer.gov) for accessing this software through the NIH institutional license. Review the instructions provided in the PDF file under Course Material1 below. Additionally, please make sure your computer meets our specifications for running IPA, as described here: http://ingenuity.force.com/ipa/IPATutorials?id=kA2500000008ak0CAA For the MetaCore session, please make sure that you have an active account and that the web-based application opens up correcetly on your computer browser. Kindy submit a request to NCI IT (https://service.cancer.gov) for setting up an account to access this software through the NIH institutional license. If any issues arise, please send an email to Maria Ryan - maria.ryan@Clarivate.com. Additionally, please download the training files under Course Materials2 below. Training accounts for the open-source tools (CRAVAT, MuPIT, and NG-CHM) will be provided at the workshop For QluCore Omics Explorer (QOE) - please click this link: http://www.qlucore.com/evaluation. After registering on their website, please download the appropriate (Windows or Mac) QOE Trial Software onto your computer. You will need administrative privileges on the computer, so please submit a request to IT to complete the installation if necessary. Once installed, access can be activated by using the trial license file (.lic) that is contained within the file provided under Course Materials3 below. That unzipped folder also contains training files required for the workshop. WORKSHOP AGENDA Day 1 - Monday, May 22, 2017 9:30 - 10:00 am Introduction to Workshop Concepts and Sessions Presenter: Anand S. Merchant, MD, PhD 10:00 am - 12:30 pm MetaCore Presenter: Matthew Wampole, PhD MetaCore™ is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. The scope of data types includes microarray and sequence-based gene expression, SNPs and CGH arrays, RNAi screens, gene variants, proteomics, metabolomics, Co-IP pull-out and other custom interactions which can all by analyzed in tandem. In this session, we’ll be analyzing data published recently in PNAS about NOTCH1 signaling in chronic lymphocytic leukemia (http://www.pnas.org/content/114/14/E2911.abstract). From this publication, we’ll explore what pathways are enriched by up regulated genes by ICN1-HA from RNA-seq and bound to NOTCH1 in CHiP-seq experiments. Use overconnectivity analysis to associate transcription factors with the regulation of these upregulated genes. Compare RNA-seq expression data chronic lymphocytic leukemia cells derived from patients with and without NOTCH1 mutations and expression. Finally, we’ll use the ICN1-HA induced up-regulated gene signature to compare against publically available GEO microarray data to find similar signatures in other diseases. 12:30 - 1:00 pm LUNCH BREAK 1:00 - 4:00 pm QluCore Omics Explorer Presenter: Carl-Johan Ivarsson, PhD This session will include introduction to and exercises on basic features and functionality in Qlucore Omics Explorer. It is intended for new users and does not require that you have previous experience with Qlucore Omics Explorer. After the training you should be able to do the following using Qlucore Omics Explorer: Import data and annotations Present data with different plot types (PCA, heatmap, bar, box...) Identify discriminating variables using basic statistical test Use visualization to enhance analysis and interpret results Explore large data sets - find structure, patterns and subclusters in data Export variable lists and images Day 2 - Tuesday, May 23, 2017 9:30 am – 12:30 pm Open-Source Tools for Analysis and Visualization of NGS Data (CRAVAT, MuPIT, and NG-CHM) Presenter: Michael Ryan, PhD, Johns Hopkins/MD Anderson/ In Silico Solutions Cancer-Related Analysis of VAriants Toolkit, or CRAVAT (www.cravat.us), is a free tool for high-throughput analysis of human sequencing variants developed by the Karchin lab at Johns Hopkins and In Silico Solutions. CRAVAT accepts very large variant data files containing single nucleotide substitutions as well as indels and returns a wide variety of annotations and scores that help with identification and exploration of important variants. The workshop will provide some background on CRAVAT and lots of hands-on exercises to learn how to use the tool and interpret the results. Mutation Position Imaging Toolbox, or MuPIT (www.mupit.icm.jhu/MuPIT_Interactive/), is a sister tool to CRAVAT that shows human mutations on 3D protein structures. MuPIT analysis enables identification of mutational clusters and proximity to functional domains in 3D space that are not obvious from the linear protein sequence. The focus of the workshop will be a series of exercises to learn how to visualize your mutations in MuPIT, how CRAVAT and MuPIT are integrated, and how to manipulate, investigate, and understand the results. Next Generation Clustered Heat Maps, or NG-CHM(http://bioinformatics.mdanderson.org/chm), is a tool developed by MD Anderson and In Silico Solutions to build clustered heat maps for genomic data. It provides interactive heat maps that enable the user to zoom and pan across the heat map, alter its color scheme, generate production quality PDFs, and link out from rows, columns, and individual heat map entries to related statistics, databases and other information. 12:30 - 1:00 pm LUNCH BREAK 1:00 - 4:00 pm Ingenuity Pathway Analysis (IPA) Presenter: Jennifer Poitras, PhD In this session, you will get an opportunity to use IPA for maximizing the biological interpretation of gene, transcript & protein expression data using different modules of the tool. There will hands-on exercises from file uploading to interpreting results, visualizing and integrating multi-omics data, understanding and mining the Ingenuity Knowledge Base (IKB), core analysis, causal networks, and many more new functionalities. | 2017-05-22 09:30:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | BTEP | 0 | Making Sense of the Data: Visualization, Pathways, and Enrichment Analysis (2-day) | ||||
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Description
Harvesting the Wealth of TCGA Data
The Cancer Genome Atlas (TCGA) is a large-scale study that has catalogued genomic data accumulated from more than 20 different types of cancer including mutations, copy number variation, mRNA and miRNA gene expression, and DNA methylation. Being publicly distributed, it has become a major resource for cancer researchers for target discovery, biological interpretation and assessment of the clinical impact of genes of interest. This workshop will familiarize the audience ...Read More
Harvesting the Wealth of TCGA Data
The Cancer Genome Atlas (TCGA) is a large-scale study that has catalogued genomic data accumulated from more than 20 different types of cancer including mutations, copy number variation, mRNA and miRNA gene expression, and DNA methylation. Being publicly distributed, it has become a major resource for cancer researchers for target discovery, biological interpretation and assessment of the clinical impact of genes of interest. This workshop will familiarize the audience with the types of data available and analytical tools that enable end-users to easily and effectively mine TCGA data. It will provide training on two applications: (a) cBioPortal for Cancer Genomics, an open-source tool, and (b) TCGA Premier through BioDiscovery Nexus, an NCI-licensed commercial tool. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer, please indicate such in the Comment section on the registration form. Date: Monday, June 19, 2017 Time: 9:30 am - 4:00 pm Location: Building 10, FAES Classroom B1C205 (#4) WORKSHOP AGENDA 9:30 am - 12: 30 pm TCGA Data on cBioPortal: Interactions and Interrogations Presenter: Anand S. Merchant, MD, PhD The cBio Cancer Genomics Portal (http://www.cbioportal.org) is an open-access resource for interactive exploration of multidimensional cancer genomics data sets, currently providing access to data from more than 5,000 tumor samples from 20 cancer studies. It significantly lowers the barriers between complex genomic data and cancer researchers who want rapid, intuitive, and high-quality access to molecular profiles and clinical attributes from large-scale cancer genomics projects. Additionally, it empowers researchers to translate these rich data sets into biologic insights and clinical applications. Required reading ahead of workshop: Two publications (see Course Material1 and 2 below). Computer requirements for cBioPortal:
Presenter: Andrea O Hara, PhD NCI’s site license includes unlimited access to TCGA Premier, a database of re-processed, curated and reviewed TCGA samples. Nexus Copy Number is a platform independent copy number analysis software that includes co-visualization of sequence variants and gene expression data at both the individual and population wide levels. With an easy to use visual interface, Nexus Copy Number allows for quick review and detailed analysis of population-wide copy number alterations across the entire genome. In this workshop, you will learn how to use Nexus Copy Number software to mine TCGA copy number data. The Cancer Genome Atlas (TCGA) contains various types of genomic data from a wide variety of cancers, including several rare tumor types. The training session will focus on access of the TCGA data within the software and a detailed evaluation of one TCGA data set to identify statistically significant changes within the sample population. Learning Objectives: * Access and integration of CNV, sequence variant and RNA-Seq expression TCGA data directly from Nexus. * Visualization and statistical approaches for discovery. * Sample stratification by clinical annotation factors or biomarkers. * Finding CNVs predictive of survival or other outcome data. * Generate publication-ready figures and charts during analysis. RegisterOrganizerBTEPWhenMon, Jun 19, 2017 - 9:30 am - 4:00 pmWhereBldg 10 FAES room 4 (B1C205) |
Harvesting the Wealth of TCGA Data The Cancer Genome Atlas (TCGA) is a large-scale study that has catalogued genomic data accumulated from more than 20 different types of cancer including mutations, copy number variation, mRNA and miRNA gene expression, and DNA methylation. Being publicly distributed, it has become a major resource for cancer researchers for target discovery, biological interpretation and assessment of the clinical impact of genes of interest. This workshop will familiarize the audience with the types of data available and analytical tools that enable end-users to easily and effectively mine TCGA data. It will provide training on two applications: (a) cBioPortal for Cancer Genomics, an open-source tool, and (b) TCGA Premier through BioDiscovery Nexus, an NCI-licensed commercial tool. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer, please indicate such in the Comment section on the registration form. Date: Monday, June 19, 2017 Time: 9:30 am - 4:00 pm Location: Building 10, FAES Classroom B1C205 (#4) WORKSHOP AGENDA 9:30 am - 12: 30 pm TCGA Data on cBioPortal: Interactions and Interrogations Presenter: Anand S. Merchant, MD, PhD The cBio Cancer Genomics Portal (http://www.cbioportal.org) is an open-access resource for interactive exploration of multidimensional cancer genomics data sets, currently providing access to data from more than 5,000 tumor samples from 20 cancer studies. It significantly lowers the barriers between complex genomic data and cancer researchers who want rapid, intuitive, and high-quality access to molecular profiles and clinical attributes from large-scale cancer genomics projects. Additionally, it empowers researchers to translate these rich data sets into biologic insights and clinical applications. Required reading ahead of workshop: Two publications (see Course Material1 and 2 below). Computer requirements for cBioPortal: A personal computer or computing device with an Internet browser (Tested browsers: Internet Explorer 11.0 and above, Firefox 3.0 and above, Safari and Google Chrome) with Javascript enabled. A Java Runtime Environment is needed for launching the Integrative Genomics Viewer (IGV). A Vector graphic editor is necessary for visualizing and editing the SVG file of OncoPrints downloaded from the cBioPortal. Examples of software supporting SVG are Adobe Illustrator (http://www.adobe.com/products/illustrator.html) and Inkscape (http://inkscape.org/). 12:30 - 1:00 pm LUNCH BREAK 1:00 - 4:00 pm BioDiscovery’s TCGA Premier and Nexus Copy Number: Integrated analysis of TCGA data using Nexus DB Presenter: Andrea O Hara, PhD NCI’s site license includes unlimited access to TCGA Premier, a database of re-processed, curated and reviewed TCGA samples. Nexus Copy Number is a platform independent copy number analysis software that includes co-visualization of sequence variants and gene expression data at both the individual and population wide levels. With an easy to use visual interface, Nexus Copy Number allows for quick review and detailed analysis of population-wide copy number alterations across the entire genome. In this workshop, you will learn how to use Nexus Copy Number software to mine TCGA copy number data. The Cancer Genome Atlas (TCGA) contains various types of genomic data from a wide variety of cancers, including several rare tumor types. The training session will focus on access of the TCGA data within the software and a detailed evaluation of one TCGA data set to identify statistically significant changes within the sample population. Learning Objectives: * Access and integration of CNV, sequence variant and RNA-Seq expression TCGA data directly from Nexus. * Visualization and statistical approaches for discovery. * Sample stratification by clinical annotation factors or biomarkers. * Finding CNVs predictive of survival or other outcome data. * Generate publication-ready figures and charts during analysis. | 2017-06-19 09:30:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | BTEP | 0 | The Art and Science of Data Mining (1-day) | ||||
751 |
Description
NGS Series Open Forum: Meet the Bioinformatics Experts
You are invited to a Q & A session with a panel of bioinformatics analysts, most of whom were presenters at the BTEP NGS Workshop Series. The goal of this forum is to assist individuals who have encountered problems/issues attempting to analyze NGS data after having participated in one of the workshops earlier in the year. We will also attempt to answer questions about ...Read More
NGS Series Open Forum: Meet the Bioinformatics Experts
You are invited to a Q & A session with a panel of bioinformatics analysts, most of whom were presenters at the BTEP NGS Workshop Series. The goal of this forum is to assist individuals who have encountered problems/issues attempting to analyze NGS data after having participated in one of the workshops earlier in the year. We will also attempt to answer questions about bioinformatics software packages or tools licensed by CCR/NCI. Each attendee is requested to send in questions ahead of the event (this will increase the chances of having a suitable answer for your specific problem). Questions related to the same topic and/or pertaining to a similar theme will be summarized and/or generalized so as to benefit all attendees. If a question is not answered during the session, it will be forwarded to the most appropriate person/group/vendor to provide relevant followup. CCR Researchers who had registered for any of the sessions between January through June 2017 will be given preference for attending this event.
Representative examples of the types of questions that one could ask are mentioned below:
RegisterOrganizerBTEPWhenTue, Jun 27, 2017 - 2:30 pm - 4:30 pmWhereIn-Person |
NGS Series Open Forum: Meet the Bioinformatics Experts You are invited to a Q & A session with a panel of bioinformatics analysts, most of whom were presenters at the BTEP NGS Workshop Series. The goal of this forum is to assist individuals who have encountered problems/issues attempting to analyze NGS data after having participated in one of the workshops earlier in the year. We will also attempt to answer questions about bioinformatics software packages or tools licensed by CCR/NCI. Each attendee is requested to send in questions ahead of the event (this will increase the chances of having a suitable answer for your specific problem). Questions related to the same topic and/or pertaining to a similar theme will be summarized and/or generalized so as to benefit all attendees. If a question is not answered during the session, it will be forwarded to the most appropriate person/group/vendor to provide relevant followup. CCR Researchers who had registered for any of the sessions between January through June 2017 will be given preference for attending this event. Representative examples of the types of questions that one could ask are mentioned below: What are the most important metrics to rank/filter variants? Which file formats work best for viewing NGS data in different genome browsers? How would one assess the quality of RNA-Seq (or other NGS data) from starting material to final results? Note: The panel will make every effort to answer all questions, and may even have slides/ visuals to aid in explaining the solution. Given the time frame and intent of this event, there will be no scope for a one-on-one consultation, demo of pipelines/ software applications, or review of data. | 2017-06-27 14:30:00 | In-Person | Panel of Bioinformatics Analysts (CCR CBIIT FNLCR) | BTEP | 0 | NGS Series Open Forum | ||||
830 |
Description
UCSC Xena (http://xena.ucsc.edu) is a web-based, visual exploration tool for all modes of multi-omic data and associated annotations. Xena has several seminal cancer datasets pre-loaded and ready for visualization including TCGA, ICGC, GTEx and more. Our public datasets include somatic SNPs, INDELs, large structural variants, CNV, gene-, transcript-, exon- protein-, miRNA-expression, DNA methylation, phenotypes, and clinical data. Xena dynamically generates KM plots as ...Read More
UCSC Xena (http://xena.ucsc.edu) is a web-based, visual exploration tool for all modes of multi-omic data and associated annotations. Xena has several seminal cancer datasets pre-loaded and ready for visualization including TCGA, ICGC, GTEx and more. Our public datasets include somatic SNPs, INDELs, large structural variants, CNV, gene-, transcript-, exon- protein-, miRNA-expression, DNA methylation, phenotypes, and clinical data. Xena dynamically generates KM plots as well as visualizes data in a spreadsheet-like view, box plot, bar graph or scatter plot. Using our data hubs and browser, you can easily view both your annotations on top of our datasets, like TCGA, as well as your own genomics data. We fully support human cells, samples, cell lines, organoids, xenografts, etc, and also have basic support for mouse and other species.
Session 1: 10 am - 12 pm
RegisterOrganizerBTEPWhenWed, Sep 27, 2017 - 10:00 am - 3:00 pmWhereBldg 10 FAES room 4 (B1C205) |
UCSC Xena (http://xena.ucsc.edu) is a web-based, visual exploration tool for all modes of multi-omic data and associated annotations. Xena has several seminal cancer datasets pre-loaded and ready for visualization including TCGA, ICGC, GTEx and more. Our public datasets include somatic SNPs, INDELs, large structural variants, CNV, gene-, transcript-, exon- protein-, miRNA-expression, DNA methylation, phenotypes, and clinical data. Xena dynamically generates KM plots as well as visualizes data in a spreadsheet-like view, box plot, bar graph or scatter plot. Using our data hubs and browser, you can easily view both your annotations on top of our datasets, like TCGA, as well as your own genomics data. We fully support human cells, samples, cell lines, organoids, xenografts, etc, and also have basic support for mouse and other species. Session 1: 10 am - 12 pm Data overview: TCGA, ICGC, GTEx and more Navigating our visualizations Running a KM analysis 12 - 1 pm LUNCH BREAK Session 2: 1 - 3 pm In-depth coverage of Xena's features Comprehensive filtering of samples Viewing your own data | 2017-09-27 10:00:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | BTEP | 0 | UCSC Xena: A Tool to Interactively View Cancer Data | ||||
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BTEP encourages researchers with high-throughput data from NGS or mutiple sources to attend this hands-on workshop on Qlucore Omics Explorer (QOE), which handles various types of data with the platform-independent data import Wizard module. Examples of data include Gene expression (array and NGS), proteomics, metabolomics, methylation data, flow cytometry, qPCR etc. For those who may be users of Qlucore, we are also giving an opportunity to set up a 1-on-1 consultation (see agenda below for more details) with the presenter to discuss your own data and/or other questions. With the new version that is going to be introduced at the workshop, Qlucore also includes a NGS module that has these additional features: Built-in variant caller Synchronized analysis of data in expression and genomic spaces User friendly project configuration of all included files (BAM, VCF, GTF, BED…) Integrated Genome browser with dynamic filtering of the content showed in the browser More information and materials pertinent to the workshop will be shared with those who register closer to the date of the workshop. WORKSHOP AGENDA for Wednesday, October 25, 2017 Morning Session 9:30 am– 12:30 pm: Presentation of Qlucore with Hands-on training This session will include introduction to and exercises on basic features and functionality in Qlucore Omics Explorer. It is intended for new users and does not require that you have previous experience with Qlucore Omics Explorer. After the training, you should be able to do the following using QOE: Import data and annotations Present data with different plot types (PCA, heatmap, bar, box...) Identify discriminating variables using basic statistical test (t- test, anova, regression analysis) Use visualization to enhance analysis and interpret results Analyze public data (GEO data sets) Explore large data sets - find structure, patterns and subclusters in data (using PCA, variance filtering, heatmaps,…) Export variable lists and images Afternoon Session, 1:00 - 4:00 pm Four 30-min 1-on-1 sessions; if interested, please indicate inside Comments Box during Registration Participants who sign up for these 30-min sessions are expected to bring their own data and/or questions If slots are available on the day of the workshop, walk-ins will be allowed on a first-come, first-serve basis. Available slots: 1-1:30 pm 1:45-2:15 pm 2:30-3:15 pm 3:30-4:00 pm NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. | 2017-10-25 09:30:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | BTEP | 0 | Navigating Qlucore Omics Explorer | ||||
833 |
Description
MetaCore™ is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. The scope of data types includes microarray and sequence-based gene expression, SNPs and CGH arrays, RNAi screens, gene variants, proteomics, metabolomics, Co-IP pull-out and other custom interactions which can all by analyzed in tandem.
In this workshop, the attendees will be analyzing data about NOTCH1 signaling in chronic lymphocytic leukemia: Read More
MetaCore™ is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. The scope of data types includes microarray and sequence-based gene expression, SNPs and CGH arrays, RNAi screens, gene variants, proteomics, metabolomics, Co-IP pull-out and other custom interactions which can all by analyzed in tandem.
In this workshop, the attendees will be analyzing data about NOTCH1 signaling in chronic lymphocytic leukemia: http://www.pnas.org/content/114/14/E2911.abstract (PNAS publication).
You’ll explore pathways enriched by ICN1-HA up-regulated genes from RNA-seq data, and bound to NOTCH1 in ChIP-seq experiments. The morning session will cover different basic modules available in MetaCore to extract meaningful information. The afternoon session will focus on advanced modules, and also introduce Key Pathway Advisor (KPA), which is a recent web application developed for easy biological pathway analysis of OMICs data.
NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form.
AGENDA
9:30am – 12:30pm
RegisterOrganizerBTEPWhenMon, Nov 13, 2017 - 9:30 am - 4:00 pmWhereNIH Bldg 10 FAES Room 4 (B1C205) |
MetaCore™ is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. The scope of data types includes microarray and sequence-based gene expression, SNPs and CGH arrays, RNAi screens, gene variants, proteomics, metabolomics, Co-IP pull-out and other custom interactions which can all by analyzed in tandem. In this workshop, the attendees will be analyzing data about NOTCH1 signaling in chronic lymphocytic leukemia: http://www.pnas.org/content/114/14/E2911.abstract (PNAS publication). You’ll explore pathways enriched by ICN1-HA up-regulated genes from RNA-seq data, and bound to NOTCH1 in ChIP-seq experiments. The morning session will cover different basic modules available in MetaCore to extract meaningful information. The afternoon session will focus on advanced modules, and also introduce Key Pathway Advisor (KPA), which is a recent web application developed for easy biological pathway analysis of OMICs data. NOTE: This is a BYOC (Bring your own laptop Computer) class. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer please indicate such in the Comment section on the registration form. AGENDA 9:30am – 12:30pm MetaCore Basics Training MetaCore Overview EZ searching for interactions and pathways involved with NOTCH1 Uploading data into MetaCore. Pathway analysis of ICN1 RNA-seq data bound to NOTCH1 in ChIP-seq experiments. Compare pathways enriched by leading edge genes from peripheral blood of chronic lymphocytic leukemia patients. 1:30pm – 4:00pm MetaCore Advanced Training Use overconnectivity analysis to associate transcription factors regulating the ICN1 RNA-seq dataset. Find other publicly available GEO microarray datasets to find similar signatures in other diseases. Identifying causal networks and synergistic pathways from ICN1 RNA-seq data bound to NOTCH1 in ChIP-seq experiments using Key Pathway Advisor. | 2017-11-13 09:30:00 | NIH Bldg 10 FAES Room 4 (B1C205) | In-Person | BTEP | 0 | Pathway Analysis with MetaCore | ||||
832 |
Description
The CCR Office of Science and Technology Resources (OSTR), along with the Bioinformatics Training and Education Program (BTEP), are pleased to organize this event for the CCR scientific community.
The primary goal of single cell sequencing is to investigate individual cells using optimized next generation sequencing (NGS) technologies, with the goal of resolving cellular differences to better understand the function of an individual cell in the context of its microenvironment. The event will provide an ...Read More
The CCR Office of Science and Technology Resources (OSTR), along with the Bioinformatics Training and Education Program (BTEP), are pleased to organize this event for the CCR scientific community.
The primary goal of single cell sequencing is to investigate individual cells using optimized next generation sequencing (NGS) technologies, with the goal of resolving cellular differences to better understand the function of an individual cell in the context of its microenvironment. The event will provide an overview of this emerging field, and speakers will talk about technology platforms, the best practices for sample preparation, and bioinformatics approaches for analysis of sc-RNAseq data.
Date: Tuesday, November 14, 2017
Time: Session I B37, Rm 4041/4107 (9:30-11:00 am)
Session II B37, Rm 6041/6107 (2:00-5:00pm) Scroll further down for WebEx information AGENDA Session I (B37, Rm 4041/4107) 9:30 am – 11:00 am Introduction to Single Cell GenomicsSpeaker: Michael Kelly, Ph.D., NIDCD
Speaker: Xaolin Wu, Ph.D., CCR Genomics Technology Lab
Speaker: Monika Mehta, Ph.D., CCR-SF (ATRF)
Speaker: Vishal Koparde, Ph.D., CCBR
RegisterOrganizerBTEPWhenTue, Nov 14, 2017 - 9:30 am - 5:00 pmWhereNIH B37, Rm 6041 and 4041 |
The CCR Office of Science and Technology Resources (OSTR), along with the Bioinformatics Training and Education Program (BTEP), are pleased to organize this event for the CCR scientific community. The primary goal of single cell sequencing is to investigate individual cells using optimized next generation sequencing (NGS) technologies, with the goal of resolving cellular differences to better understand the function of an individual cell in the context of its microenvironment. The event will provide an overview of this emerging field, and speakers will talk about technology platforms, the best practices for sample preparation, and bioinformatics approaches for analysis of sc-RNAseq data. Date: Tuesday, November 14, 2017 Time: Session I B37, Rm 4041/4107 (9:30-11:00 am) Session II B37, Rm 6041/6107 (2:00-5:00pm) Scroll further down for WebEx information AGENDA Session I (B37, Rm 4041/4107) 9:30 am – 11:00 am Introduction to Single Cell Genomics Speaker: Michael Kelly, Ph.D., NIDCD Key Concepts in Single Cell Genomics Current Challenges & Limitations Experimental Design Considerations Platform Selection Considerations “Established” and Emerging Applications Session II (B37, Rm 6041/6107) 2:15 pm – 2:45 pm Overview of Single Cell Technologies at CCR Cores Speaker: Xaolin Wu, Ph.D., CCR Genomics Technology Lab BD Rhapsody Single Cell Analysis for RNA and Proteins Chromium Single Cell 3' Solutiom=n DEP Array Technology Rare Cell Isolation Fluidigm C1 for Single Cell Genomics 2:45 pm – 3:45 pm Single Cell RNA-Seq at CCR-SF: Best practices using 10X Genomics Speaker: Monika Mehta, Ph.D., CCR-SF (ATRF) Current production systems New methods being tested Optimal experimental design Sample requirements, prep and QC Highlights from range of projects at SF 3:45 pm – 4:45 pm Overview of single cell RNA-Seq analysis Speaker: Vishal Koparde, Ph.D., CCBR How is single cell data different from bulk RNASeq? Options for filtering, normalization and visualization Current popular analysis tools In-person attendance is encouraged. For convenience, the talks will be on WebEx (link below): https://cbiit.webex.com/cbiit/j.php?MTID=m5a62ff8ecc39e2226aadf027a32d4938 Meeting number/Access Code: 858 626 079 Audio connection: 1-650-479-3207 Call-in toll number (US/Canada) | 2017-11-14 09:30:00 | NIH B37, Rm 6041 and 4041 | In-Person | Vishal Koparde (CCBR) | BTEP | 0 | A Primer on Single Cell Genomics at CCR | |||
834 |
Description
PLEASE NOTE: This workshop is a BYOC (Bring Your Own LapTop Computer) class, and requires installation of Partek Genomics Suite on your laptop ahead of the workshop. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer, please indicate such in the Comment section ...Read More
PLEASE NOTE: This workshop is a BYOC (Bring Your Own LapTop Computer) class, and requires installation of Partek Genomics Suite on your laptop ahead of the workshop. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer, please indicate such in the Comment section on the registration form.
WORKSHOP AGENDA
9:30 am – 12:30 pm Gene Expression Analysis with Partek Genomics Suite
This training session will include a guided analysis of an Affymetrix gene expression data set to showcase and familiarize users with the Gene Expression analysis workflow covering the topics listed below.
RegisterOrganizerBTEPWhenWed, Dec 13, 2017 - 9:30 am - 4:00 pmWhereNIH Bldg 10 FAES Room 4 (B1C205) |
PLEASE NOTE: This workshop is a BYOC (Bring Your Own LapTop Computer) class, and requires installation of Partek Genomics Suite on your laptop ahead of the workshop. Government issued or personal computers are permitted. We will be able to supply a very limited set of computers, so if you want to take the class but cannot bring your own computer, please indicate such in the Comment section on the registration form. WORKSHOP AGENDA 9:30 am – 12:30 pm Gene Expression Analysis with Partek Genomics Suite This training session will include a guided analysis of an Affymetrix gene expression data set to showcase and familiarize users with the Gene Expression analysis workflow covering the topics listed below. Importing data – Affymetrix CEL files Exploratory data analysis – Principal Component Analysis (PCA) Detecting differential expression (ANOVA) – two factor analysis Gene list creation (Venn diagram creation and list overlap) Visualization (PCA, histogram, box plot, dot plot, volcano plot, heatmap etc.) Biological interpretation – through use of Gene Ontology and KEGG Additional advanced topics will include: Integration with other data – combining gene and miRNA expression data Batch effect removal Survival analysis 12:30 – 1:30 pm LUNCH BREAK 1:30 – 3:00 pm Advanced Modules This session will provide a hands on training for analyzing Illumina methylation microarrays, familiarizing users to the topics listed below. Importing data – Illumina .idat files Data normalization – converting data to M-values Exploratory data analysis – Principal Component Analysis (PCA) Detecting differential methylation (ANOVA) Annotating markers by gene section Visualization (PCA, histogram, box plot, dot plot, volcano plot, heatmap etc.) This session will also provide the opportunity to learn how to import and process data matrices in text file format (from RNA-seq or protein data, as an example) for the purpose of generating visualizations. 3:00 – 4:00 pm Bring Your Own Data/Independent Analysis of GEO Data Bring your own data for analysis help. -OR- Attendees will be presented with the task of obtaining a data set from the NCBI Gene Expression Omnibus (GEO) and running an independent analysis of the data to attempt to replicate the findings of the publication. They will be given a list of analysis goals and will have the opportunity to ask for help from the instructor as they work through this analysis. The two PDF files below (Course Material 1 and 2) document the workflows that will be followed, and also contains links to the example datasets that attendees will use during the workshop. Kindly download the data if you plan to attend. | 2017-12-13 09:30:00 | NIH Bldg 10 FAES Room 4 (B1C205) | In-Person | BTEP | 0 | Analysis with Partek Genomics Suite: mRNA, miRNA, Methylation and More | ||||
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Description
Join us for a seminar/webinar session where Partek Specialist will show you how to analyze your Single Cell RNA-Seq data in an intuitive, interactive and powerful way using Partek Flow. The solution simplifies Single Cell RNA-Seq analysis, even for novices! During this session, the Partek scientist will demonstrate how to analyze a Single Cell RNA-Seq data set with multiple biological replicates and detect genes that are differentially expressed between cell populations across sample groups.
<...Read More
Join us for a seminar/webinar session where Partek Specialist will show you how to analyze your Single Cell RNA-Seq data in an intuitive, interactive and powerful way using Partek Flow. The solution simplifies Single Cell RNA-Seq analysis, even for novices! During this session, the Partek scientist will demonstrate how to analyze a Single Cell RNA-Seq data set with multiple biological replicates and detect genes that are differentially expressed between cell populations across sample groups.
Date: April 25, 1:00–2:30 p.m.
Location: Frederick ATRF Building, Conference Room D3001 & WEBEX (see below)
Agenda:
DetailsOrganizerBTEPWhenWed, Apr 25, 2018 - 1:00 pm - 2:30 pmWhereConference Room D3001 |
Join us for a seminar/webinar session where Partek Specialist will show you how to analyze your Single Cell RNA-Seq data in an intuitive, interactive and powerful way using Partek Flow. The solution simplifies Single Cell RNA-Seq analysis, even for novices! During this session, the Partek scientist will demonstrate how to analyze a Single Cell RNA-Seq data set with multiple biological replicates and detect genes that are differentially expressed between cell populations across sample groups. Date: April 25, 1:00–2:30 p.m. Location: Frederick ATRF Building, Conference Room D3001 & WEBEX (see below) Agenda: Partek Single Cell RNA-Seq Data Analysis Solution Overview Live Demo Cell filtering using interactive QC charts Identifying cell populations by t-SNE plot Pooling cells of the same type across multiple samples Detecting differential expressed genes Visualizing transcription profiles by heat map Biological interpretation Q&A This Seminar will be video cast via WebEx with the following details: Meeting number (access code): 730 734 594 Meeting password: aPiqcM@4 When it's time, join the meeting Join by phone 1-650-479-3207 Call-in toll number (US/Canada) | 2018-04-25 13:00:00 | Conference Room D3001 | In-Person | BTEP | 0 | Single Cell RNA-Seq (WebEx Seminar) | ||||
836 |
Description
Driven by the decreasing costs and increasing performance of next-generation sequencing (NGS) technologies, the amount of publicly available genomic data has grown exponentially in recent years. While most of the analyses of these data is done computationally, there are many instances where visual inspection of the original and/or processed data is invaluable. Such direct visualization can provide: “sanity checks” on computational results; novel biological insights; aid in communicating results; and a better understanding of ...Read More
Driven by the decreasing costs and increasing performance of next-generation sequencing (NGS) technologies, the amount of publicly available genomic data has grown exponentially in recent years. While most of the analyses of these data is done computationally, there are many instances where visual inspection of the original and/or processed data is invaluable. Such direct visualization can provide: “sanity checks” on computational results; novel biological insights; aid in communicating results; and a better understanding of the interplay between spatially related biological elements. These visualization tools are relevant whether one is interested in expression analysis (RNA-Seq), variant detection (Exome-Seq), protein binding (ChIP-Seq), or any other genome scale data.
This seminar will provide an overview of the available tools, and highlight useful features of some of the more popular genome browsers. Highlighted topics will include:
RegisterOrganizerBTEPWhenWed, May 09, 2018 - 10:00 am - 12:00 pmWhereBldg 10 FAES room 4 (B1C205) |
Driven by the decreasing costs and increasing performance of next-generation sequencing (NGS) technologies, the amount of publicly available genomic data has grown exponentially in recent years. While most of the analyses of these data is done computationally, there are many instances where visual inspection of the original and/or processed data is invaluable. Such direct visualization can provide: “sanity checks” on computational results; novel biological insights; aid in communicating results; and a better understanding of the interplay between spatially related biological elements. These visualization tools are relevant whether one is interested in expression analysis (RNA-Seq), variant detection (Exome-Seq), protein binding (ChIP-Seq), or any other genome scale data. This seminar will provide an overview of the available tools, and highlight useful features of some of the more popular genome browsers. Highlighted topics will include: An overview of the tools available - their strength and weaknesses and where to find them An overview of the different classes of browsers An discussion of the relevant file types accepted by most browsers Details on how to navigate the UCSC Genome Browser How to integrate your own or publically available data into browsers How to capture and share specific views of data How to get more detailed views of your data with tools like IGB and IGV and how to integrate them into other tools and more.... | 2018-05-09 10:00:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | Genome Browsers - Tools for Visualizing Genomic Scale Data | |||
837 |
Description
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data.
A point-and-click web environment provides ready access to powerful tools for the analysis, integration and sharing of complex data. Additionally, experienced researchers and bioinformaticians can interact with the platform through a command-line interface, which allows for quick integration with current system, and the automated processing of large data sets. Beyond its extensive library of integrated ...Read More
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data.
A point-and-click web environment provides ready access to powerful tools for the analysis, integration and sharing of complex data. Additionally, experienced researchers and bioinformaticians can interact with the platform through a command-line interface, which allows for quick integration with current system, and the automated processing of large data sets. Beyond its extensive library of integrated tools and pipelines, the DNAnexus platform also allows the quick and efficient development of new analysis tools and the porting of existing pipelines. DNAnexus is built upon the foundational security and features of AWS and AZURE.
Key Features of DNAnexus:
RegisterOrganizerBTEPWhenTue, Jun 26, 2018 - 2:30 pm - 5:00 pmWhereNIH Bethesda B37 Rm 4041/4107 |
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. A point-and-click web environment provides ready access to powerful tools for the analysis, integration and sharing of complex data. Additionally, experienced researchers and bioinformaticians can interact with the platform through a command-line interface, which allows for quick integration with current system, and the automated processing of large data sets. Beyond its extensive library of integrated tools and pipelines, the DNAnexus platform also allows the quick and efficient development of new analysis tools and the porting of existing pipelines. DNAnexus is built upon the foundational security and features of AWS and AZURE. Key Features of DNAnexus: Centralized online environment for genomic data analysis, storage and collaboration Web-based interface for ease of use Command line interface for power-users Large library of standard bioinformatic tools and pipelines Access to proprietary hardware (DRAGEN, Sentieon) Scalable infrastructure that can instantly meet any computational and data storage demand Data compliance in accordance with: HIPAA, CLIA, GCP, 21 CFR parts 11, 58, and 493, European Data Privacy laws and regulations Workshop Agenda: DNAnexus - Company Overview Platform demo (non-interactive) Varient Calling (interactive) RNA-Seq Analysis (interactive) NCI experiences developing/porting an analytical pipeline to the DNAnexus platform Workshop will be conducted live on the DNAnexus Platform: https://platform.dnanexus.com Registered users will be provided a temporary account for the interactive parts of the presentation. While attending in person is highly recommended this Workshop will be available via Webex for those not on the NIH campus.. DNAnexus Meeting number (access code): 730 139 731 Meeting password: cD9dm4d@ Join the meeting Join by phone 1-650-479-3207 Call-in toll number (US/Canada) | 2018-06-26 14:30:00 | NIH Bethesda B37 Rm 4041/4107 | In-Person | Peter FitzGerald (GAU),Darren Ames (DNAnexus),John Didion (DNA nexus) | BTEP | 0 | Analysis of Next-Generation Sequencing Data using the DNAnexus Cloud Platform | |||
839 |
Description
TOPIC: Single Cell RNA-Seq Data Analysis in Partek Flow
Partek (partek.com) Flow software provides a point-and-click interface for analysis of next -gen sequencing data. Users can customize analysis pathways for sequence alignment, differential expression, QA/QC, variant calling and annotation, clustering, peak calling, statistical analysis and quantification. These pathways can be re-used and shared, resulting in publication-ready data visualizations.
During this session, attendees will learn how to identify cell populations and detect ...Read More
TOPIC: Single Cell RNA-Seq Data Analysis in Partek Flow
Partek (partek.com) Flow software provides a point-and-click interface for analysis of next -gen sequencing data. Users can customize analysis pathways for sequence alignment, differential expression, QA/QC, variant calling and annotation, clustering, peak calling, statistical analysis and quantification. These pathways can be re-used and shared, resulting in publication-ready data visualizations.
During this session, attendees will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. Attendees will work with a set of test data for this tutorial. Please bring a laptop running Google chrome.
- Import count matrix text file
- Filter cells using interactive QA/QC charts
- Filter low expressed genes
- Normalize raw count
- Visualize cell populations using the interactive 3D t-SNE plot
- Overlay gene expression and pathway signatures on the 3D t-SNE plot
- Select and classify cells on the 3D t-SNE plot
- Detect differentially expressed genes between sub populations
- Filter a gene list
- Identify enriched KEGG pathway and/or GO terms
- Visualize cell-level results using heat maps, volcano plots, and violin plots
- Demonstrate how to import fastq files and upstream analysis pipeline on 10X prep kit
To attend this meeting via Webex, please click here:
https://cbiit.webex.com/cbiit/onstage/g.php?MTID=e8fc591c272dbb8074dc7e3f24b1f861f
RegisterOrganizerBTEPWhenWed, Sep 19, 2018 - 8:45 am - 11:00 amWhereBuilding 37 Room 4041/4107, NIH |
TOPIC: Single Cell RNA-Seq Data Analysis in Partek Flow Partek (partek.com) Flow software provides a point-and-click interface for analysis of next -gen sequencing data. Users can customize analysis pathways for sequence alignment, differential expression, QA/QC, variant calling and annotation, clustering, peak calling, statistical analysis and quantification. These pathways can be re-used and shared, resulting in publication-ready data visualizations. During this session, attendees will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. Attendees will work with a set of test data for this tutorial. Please bring a laptop running Google chrome. - Import count matrix text file - Filter cells using interactive QA/QC charts - Filter low expressed genes - Normalize raw count - Visualize cell populations using the interactive 3D t-SNE plot - Overlay gene expression and pathway signatures on the 3D t-SNE plot - Select and classify cells on the 3D t-SNE plot - Detect differentially expressed genes between sub populations - Filter a gene list - Identify enriched KEGG pathway and/or GO terms - Visualize cell-level results using heat maps, volcano plots, and violin plots - Demonstrate how to import fastq files and upstream analysis pipeline on 10X prep kit To attend this meeting via Webex, please click here: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=e8fc591c272dbb8074dc7e3f24b1f861f | 2018-09-19 08:45:00 | Building 37 Room 4041/4107,NIH | In-Person | Xiaowen Wang (Partek) | BTEP | 0 | BTEP: Single Cell RNA-Seq Analysis with Partek Flow | |||
840 |
Description
Participants should bring a laptop running Google Chrome. Additionally, each participant should have an account on the Partek server, and have uploaded their data onto the Partek server prior to the start of this class.
For Partek server accounts, please contact Jenny Zhang (jzhang@partek.com)
For assistance moving your data onto the Partek server, contact Partek IT or (BTEP) at ncibtep@nih.gov
Be sure to upload the count ...Read More
Participants should bring a laptop running Google Chrome. Additionally, each participant should have an account on the Partek server, and have uploaded their data onto the Partek server prior to the start of this class.
For Partek server accounts, please contact Jenny Zhang (jzhang@partek.com)
For assistance moving your data onto the Partek server, contact Partek IT or (BTEP) at ncibtep@nih.gov
Be sure to upload the count matrix file in .txt format
If the data was generated from 10X Genomics, please upload the filtered .h5 format files
RegisterOrganizerBTEPWhenWed, Sep 19, 2018 - 1:30 pm - 5:00 pmWhereNIH, Bldg 37, Rm 6041 |
Participants should bring a laptop running Google Chrome. Additionally, each participant should have an account on the Partek server, and have uploaded their data onto the Partek server prior to the start of this class. For Partek server accounts, please contact Jenny Zhang (jzhang@partek.com) For assistance moving your data onto the Partek server, contact Partek IT or (BTEP) at ncibtep@nih.gov Be sure to upload the count matrix file in .txt format If the data was generated from 10X Genomics, please upload the filtered .h5 format files | 2018-09-19 13:30:00 | NIH,Bldg 37,Rm 6041 | In-Person | Xiaowen Wang (Partek),Amy Stonelake (BTEP) | BTEP | 0 | BTEP: Work with your own data - Single Cell RNA-Seq Analysis with Partek Flow | |||
838 |
Description
Sept. 27, 2018: BTEP: Practical Bioinformatics Skills at the Command Line
Please bring your own laptop to the class or indicate in the comments if you need to borrow one of our loaner laptops.
Confused about the command line? Working with data on your laptop that needs to be on the NIH Biowulf cluster for further analysis? Want to transform your BCL files into FASTQ, or turn your BLAST results into an Excel ...Read More
Sept. 27, 2018: BTEP: Practical Bioinformatics Skills at the Command Line
Please bring your own laptop to the class or indicate in the comments if you need to borrow one of our loaner laptops.
Confused about the command line? Working with data on your laptop that needs to be on the NIH Biowulf cluster for further analysis? Want to transform your BCL files into FASTQ, or turn your BLAST results into an Excel Spreadsheet? Help is available.
1. This will be a hands-on workshop with step-by-step instructions provided.
2. Learn basic unix commands for creating files, moving around the directory tree, running programs on the NIH Biowulf cluster.
3. Use tools like Globus Connect, scp (WinSCP) to move files from your laptop to Biowulf and back.
4. Understand more about various file formats, how they are related, and learn how to transform from one file type to another.
5. Read from and write to files on Biowulf.
6. Compare the web version and command-line versions of NCBI BLAST tools.
RegisterOrganizerBTEPWhenThu, Sep 27, 2018 - 10:00 am - 4:00 pmWhereNIH Bldg 10 FAES Room 4 (B1C205) |
Sept. 27, 2018: BTEP: Practical Bioinformatics Skills at the Command Line Please bring your own laptop to the class or indicate in the comments if you need to borrow one of our loaner laptops. Confused about the command line? Working with data on your laptop that needs to be on the NIH Biowulf cluster for further analysis? Want to transform your BCL files into FASTQ, or turn your BLAST results into an Excel Spreadsheet? Help is available. 1. This will be a hands-on workshop with step-by-step instructions provided. 2. Learn basic unix commands for creating files, moving around the directory tree, running programs on the NIH Biowulf cluster. 3. Use tools like Globus Connect, scp (WinSCP) to move files from your laptop to Biowulf and back. 4. Understand more about various file formats, how they are related, and learn how to transform from one file type to another. 5. Read from and write to files on Biowulf. 6. Compare the web version and command-line versions of NCBI BLAST tools. | 2018-09-27 10:00:00 | NIH Bldg 10 FAES Room 4 (B1C205) | In-Person | Peter FitzGerald (GAU),Amy Stonelake (BTEP) | BTEP | 0 | BTEP: Practical Bioinformatics Skills at the Command Line | |||
841 |
Description
This event will be held in the Scientific Library, Bldg. 549, Ft. Detrick, Frederick. Please bring your own laptop. There will also be a limited number of classroom computers (PC) available.
The Bioinformatics Training and Education Program (BTEP) is excited to present a workshop entitled,“Practical Bioinformatics Skills at the Command Line”.
Confused about the command line? Working with data on your laptop that needs to be on the NIH ...Read More
This event will be held in the Scientific Library, Bldg. 549, Ft. Detrick, Frederick. Please bring your own laptop. There will also be a limited number of classroom computers (PC) available.
The Bioinformatics Training and Education Program (BTEP) is excited to present a workshop entitled,“Practical Bioinformatics Skills at the Command Line”.
Confused about the command line? Working with data on your laptop that needs to be on the NIH Biowulf cluster for further analysis? Want to transform your BCL files into FASTQ, or turn your BLAST results into an Excel Spreadsheet? Help is available.
RegisterOrganizerBTEPWhenFri, Sep 28, 2018 - 10:00 am - 4:00 pmWhereNCI-F Bldg549 Scientific Library Training Room |
This event will be held in the Scientific Library, Bldg. 549, Ft. Detrick, Frederick. Please bring your own laptop. There will also be a limited number of classroom computers (PC) available. The Bioinformatics Training and Education Program (BTEP) is excited to present a workshop entitled,“Practical Bioinformatics Skills at the Command Line”. Confused about the command line? Working with data on your laptop that needs to be on the NIH Biowulf cluster for further analysis? Want to transform your BCL files into FASTQ, or turn your BLAST results into an Excel Spreadsheet? Help is available. This will be a hands-on workshop with step-by-step instructions provided. 2. Learn basic unix commands for creating files, moving around the directory tree, running programs on the NIH Biowulf cluster. 3. Use tools like Globus Connect, scp (WinSCP) to move files from your laptop to Biowulf and back. 4. Understand more about various file formats, how they are related, and learn how to transform from one file type to another. 5. Read from and write to files on Biowulf. 6. Compare the web version and command-line versions of NCBI BLAST tools. | 2018-09-28 10:00:00 | NCI-F Bldg549 Scientific Library Training Room | In-Person | Peter FitzGerald (GAU),Amy Stonelake (BTEP) | BTEP | 0 | BTEP, Frederick: Practical Bioinformatics Skills at the Command Line | |||
842 |
Description
RegisterOrganizerBTEPWhenFri, Oct 12, 2018 - 9:00 am - 11:00 amWhereBldg 37, Rm 2041/2107 |
Experimental Design Considerations in Variant Analysis Germline vs Somatic WGS vs WES Sample sizes and statistical power WGS/WES Pipelines at NIH Pipeline performance Using Pipeliner for internal and external data Variant QC, Annotation and Downstream Analysis Variant QC and data correction Variant annotation and analysis tools Structural variation and multi-omic integration Presenter: Justin Lack, Ph.D, Bioinformatics Manager/ Lead, NIAID Collaborative Bioinformatics Core (NCBR) | 2018-10-12 09:00:00 | Bldg 37,Rm 2041/2107 | In-Person | BTEP | 0 | BTEP: Variant Analysis in WGS and WES Introduction | ||||
843 |
Description
QIAGEN’s Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based on published biological evidence and your knowledge of disease biology. IVA allows you to interrogate variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. This seminar will focus on:
-Uploading Data
-Running Analyses
-Utilizing Variant ...Read More
QIAGEN’s Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based on published biological evidence and your knowledge of disease biology. IVA allows you to interrogate variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. This seminar will focus on:
-Uploading Data
-Running Analyses
-Utilizing Variant Filtering
-Exploring Results and Exporting Data
RegisterOrganizerBTEPWhenFri, Oct 12, 2018 - 1:00 pm - 3:00 pmWhereBuilding 37 Room 4041/4107, Bldg 37 |
QIAGEN’s Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based on published biological evidence and your knowledge of disease biology. IVA allows you to interrogate variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. This seminar will focus on: -Uploading Data -Running Analyses -Utilizing Variant Filtering -Exploring Results and Exporting Data | 2018-10-12 13:00:00 | Building 37 Room 4041/4107,Bldg 37 | In-Person | BTEP | 0 | BTEP: Variant Analysis in WGS and WES with Qiagen IVA (Ingenuity Variant Analysis) | ||||
845 |
Description
10x Genomics: Whole Exome and Whole Genome Analysis
10x Genomics: Whole Exome and Whole Genome Analysis
RegisterOrganizerBTEPWhenFri, Oct 26, 2018 - 9:00 am - 11:00 amWhereRm 6041, NIH Bldg 37, Rm 6107 |
10x Genomics: Whole Exome and Whole Genome Analysis How 10x Genomics linked reads works SNVs, copy number variations, structural variants and phasing of the variants from linked read data Walk through of 10x Genomics WGS results Integration of linked reads data with other platforms/technologies All Structural Variants: CCR Sequencing Facility analysis pipelines of structural variants from Illumina, linked reads, long reads and optical mapping Walk through of SV/CNV pipelines, how they work and results from the SV pipelines | 2018-10-26 09:00:00 | Rm 6041,NIH Bldg 37,Rm 6107 | In-Person | BTEP | 0 | BTEP: Variant Analysis: SNVs, CNVs and Structural Variants in WGS and WES | ||||
844 |
Description
Variant Analysis using Genomatix GeneGrid
** please bring laptop with Flash installed for the hands-on portion of this demo
Susan M. Dombrowski, PhD and Peter Grant, Genomatix, Inc.
Genomatix GeneGrid is a variant annotation and analysis tool that integrates both public and proprietary data sources for examining the biological effects of single nucleotide polymorphisms (SNPs) and/or insertions-deletions (indels) in heritable or non-heritable (epigenetic) human disease. Using GeneGrid, one can quickly perform trio analysis, ...Read More
Variant Analysis using Genomatix GeneGrid
** please bring laptop with Flash installed for the hands-on portion of this demo
Susan M. Dombrowski, PhD and Peter Grant, Genomatix, Inc.
Genomatix GeneGrid is a variant annotation and analysis tool that integrates both public and proprietary data sources for examining the biological effects of single nucleotide polymorphisms (SNPs) and/or insertions-deletions (indels) in heritable or non-heritable (epigenetic) human disease. Using GeneGrid, one can quickly perform trio analysis, case-control studies, identify somatic SNPs and visualize and dynamically interact with these results in the context of other integrated Genomatix data content including: genomic annotation, biological pathways, and the supporting biomedical literature. GeneGrid also includes the ability to generate variant report summaries and provides link-outs to genetic testing providers. For an overview of the GeneGrid technology we invite you to visit: http://www.genomatix.de/solutions/genegrid.html
The training course will consist of a GeneGrid overview lecture and instructor-led demonstration of how to import VCF and BAM files into the GeneGrid platform, followed by a hands-on training demonstrating the use of GeneGrid for variant annotation and analysis. At the end of the course, students will have learned how to:
*import VCF and BAM files into the GeneGrid platform;
*view VCF sample statistics and the associated metadata;
*run a sample comparison;
*annotate and filter variants;
*view annotated variant data in the Genomatix Genome Browser;
*use the results management features;
*apply the mastery of GeneGrid to their own data
RegisterOrganizerBTEPWhenFri, Oct 26, 2018 - 1:00 pm - 4:00 pmWhereBldg 37, Room 6041 |
Variant Analysis using Genomatix GeneGrid ** please bring laptop with Flash installed for the hands-on portion of this demo Susan M. Dombrowski, PhD and Peter Grant, Genomatix, Inc. Genomatix GeneGrid is a variant annotation and analysis tool that integrates both public and proprietary data sources for examining the biological effects of single nucleotide polymorphisms (SNPs) and/or insertions-deletions (indels) in heritable or non-heritable (epigenetic) human disease. Using GeneGrid, one can quickly perform trio analysis, case-control studies, identify somatic SNPs and visualize and dynamically interact with these results in the context of other integrated Genomatix data content including: genomic annotation, biological pathways, and the supporting biomedical literature. GeneGrid also includes the ability to generate variant report summaries and provides link-outs to genetic testing providers. For an overview of the GeneGrid technology we invite you to visit: http://www.genomatix.de/solutions/genegrid.html The training course will consist of a GeneGrid overview lecture and instructor-led demonstration of how to import VCF and BAM files into the GeneGrid platform, followed by a hands-on training demonstrating the use of GeneGrid for variant annotation and analysis. At the end of the course, students will have learned how to: *import VCF and BAM files into the GeneGrid platform; *view VCF sample statistics and the associated metadata; *run a sample comparison; *annotate and filter variants; *view annotated variant data in the Genomatix Genome Browser; *use the results management features; *apply the mastery of GeneGrid to their own data | 2018-10-26 13:00:00 | Bldg 37,Room 6041 | In-Person | BTEP | 0 | BTEP: Variant Analysis using Genomatix GeneGrid | ||||
849 |
Description
This introductory lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
The specific topics covered include:
This introductory lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
The specific topics covered include:
RegisterOrganizerBTEPWhenMon, Nov 05, 2018 - 9:30 am - 11:30 amWhereBldg 10: FAES Classroom 3 (B1C207) |
This introductory lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data. The specific topics covered include: What is RNASeq ? What can it be used for ? Sequencing platforms Quality Control steps Experimental Design Data Analysis Workflows Identifying differentially expressed genes Discussion of relevant file formats and data conversion tools Approaches to detect splice variants and fusion genes NCI specific tools and software | 2018-11-05 09:30:00 | Bldg 10: FAES Classroom 3 (B1C207) | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | BTEP: Introduction to RNA-Seq technology, Overview and Analyses | |||
850 |
Description
RNA-seq, expression microarrays, and other omics profiling platforms are powerful tools for discovery, and analytical pipelines often return large numbers of significant genes or other markers. This presents a challenge when trying to understand how all these results are relevant to the system under investigation. QIAGEN’s Ingenuity Pathway Analysis (IPA) utilizes an unparalleled curated Knowledge Base derived from literature and public databases to help you understand how genes, miRNAs, proteins, or metabolites function, both ...Read More
RNA-seq, expression microarrays, and other omics profiling platforms are powerful tools for discovery, and analytical pipelines often return large numbers of significant genes or other markers. This presents a challenge when trying to understand how all these results are relevant to the system under investigation. QIAGEN’s Ingenuity Pathway Analysis (IPA) utilizes an unparalleled curated Knowledge Base derived from literature and public databases to help you understand how genes, miRNAs, proteins, or metabolites function, both independently and with other molecules in your results, to influence the underlying biology of your study. IPA provides a powerful platform to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets, and is cited in >16,000 peer-reviewed articles. These training sessions will demonstrate how to utilize IPA's knowledge & discovery tools to relate the most recent literature findings to biological understanding of your data.
Agenda
1:00pm - 4:00pm: Introduction to IPA and Getting Started with the Core Analysis
This hands-on training (geared towards new users) will define the Qiagen Knowledge Base and how the tools within Ingenuity Pathway Analysis (IPA) draw on this information to provide powerful biological insights. The session will also introduce Analysis Match, a new feature that allows users to compare their own data to a large spectrum of pre-compiled data from public repositories to determine similarity/dissimilarity at the biological level.
This session will provide users training on how to perform the following tasks:
RegisterOrganizerBTEPWhenMon, Nov 05, 2018 - 1:00 pm - 4:00 pmWhereBldg 10: FAES Classroom 3 (B1C207) |
RNA-seq, expression microarrays, and other omics profiling platforms are powerful tools for discovery, and analytical pipelines often return large numbers of significant genes or other markers. This presents a challenge when trying to understand how all these results are relevant to the system under investigation. QIAGEN’s Ingenuity Pathway Analysis (IPA) utilizes an unparalleled curated Knowledge Base derived from literature and public databases to help you understand how genes, miRNAs, proteins, or metabolites function, both independently and with other molecules in your results, to influence the underlying biology of your study. IPA provides a powerful platform to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets, and is cited in >16,000 peer-reviewed articles. These training sessions will demonstrate how to utilize IPA's knowledge & discovery tools to relate the most recent literature findings to biological understanding of your data. Agenda 1:00pm - 4:00pm: Introduction to IPA and Getting Started with the Core Analysis This hands-on training (geared towards new users) will define the Qiagen Knowledge Base and how the tools within Ingenuity Pathway Analysis (IPA) draw on this information to provide powerful biological insights. The session will also introduce Analysis Match, a new feature that allows users to compare their own data to a large spectrum of pre-compiled data from public repositories to determine similarity/dissimilarity at the biological level. This session will provide users training on how to perform the following tasks: Querying the Qiagen Knowledge Base Data Upload & Analysis of gene, transcript, protein & metabolite data Pathway Analysis Regulators and their directional effect on genes, functions and diseases Downstream Effects Analysis Match | 2018-11-05 13:00:00 | Bldg 10: FAES Classroom 3 (B1C207) | In-Person | BTEP | 0 | BTEP: Introduction to IPA (Ingenuity Pathway Analysis) and the Core Analysis | ||||
848 |
Description
RNA-Seq Data Analysis in Partek Flow
Please bring a laptop to this class - or let us know if you need to borrow one. Please printout and bring the handout from the class website.
During this hands on training session, students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for RNA-Seq analysis:
- Import data from .fastq files
- Perform QA/QC (...Read More
RNA-Seq Data Analysis in Partek Flow
Please bring a laptop to this class - or let us know if you need to borrow one. Please printout and bring the handout from the class website.
During this hands on training session, students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for RNA-Seq analysis:
- Import data from .fastq files
- Perform QA/QC (Pre-alignment QA/QC, Post-alignment QA/QC)
- Trim bases
- Align reads to reference genome
- Quantify gene/transcript abundance
- Normalize gene counts
- Detect differentially expressed genes
- Filter a gene list
- Identify enriched KEGG pathway and/or GO terms
- Visualization:
RegisterOrganizerBTEPWhenTue, Nov 06, 2018 - 9:30 am - 12:00 pmWhereRm 6041, NIH Bldg 37, Rm 6107 |
RNA-Seq Data Analysis in Partek Flow Please bring a laptop to this class - or let us know if you need to borrow one. Please printout and bring the handout from the class website. During this hands on training session, students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for RNA-Seq analysis: - Import data from .fastq files - Perform QA/QC (Pre-alignment QA/QC, Post-alignment QA/QC) - Trim bases - Align reads to reference genome - Quantify gene/transcript abundance - Normalize gene counts - Detect differentially expressed genes - Filter a gene list - Identify enriched KEGG pathway and/or GO terms - Visualization: Heat maps Volcano plots PCA scatterplot Dot plots Hierarchical clustering Chromosome view | 2018-11-06 09:30:00 | Rm 6041,NIH Bldg 37,Rm 6107 | In-Person | Xiaowen Wang (Partek) | BTEP | 0 | BTEP: RNA-Seq Data Analysis in Partek Flow | |||
846 |
Description
RegisterOrganizerBTEPWhenWed, Nov 14, 2018 - 9:00 am - 11:00 amWhereFt. Detrick, Bldg. 549, Auditorium |
Experimental Design Considerations in Variant Analysis Germline vs Somatic WGS vs WES Sample sizes and statistical power WGS/WES Pipelines at NIH Pipeline performance Using Pipeliner for internal and external data Variant QC, Annotation and Downstream Analysis Variant QC and data correction Variant annotation and analysis tools Structural variation and multi-omic integration | 2018-11-14 09:00:00 | Ft. Detrick,Bldg. 549,Auditorium | In-Person | BTEP | 0 | BTEP, Frederick: Introduction to Variant Analysis in WGS and WES by Dr. Justin Lack | ||||
847 |
Description
THIS EVENT HAS BEEN CANCELLED
10x Genomics: Whole Exome and Whole Genome Analysis
THIS EVENT HAS BEEN CANCELLED
10x Genomics: Whole Exome and Whole Genome Analysis
RegisterOrganizerBTEPWhenWed, Dec 05, 2018 - 9:00 am - 11:00 amWhereFt. Detrick, Bldg. 549, Auditorium |
THIS EVENT HAS BEEN CANCELLED10x Genomics: Whole Exome and Whole Genome Analysis How 10x Genomics linked reads works SNVs, copy number variations, structural variants and phasing of the variants from linked read data Walk through of 10x Genomics WGS results Integration of linked reads data with other platforms/technologies All Structural Variants: CCR Sequencing Facility analysis pipelines of structural variants from Illumina, linked reads, long reads and optical mapping Walk through of SV/CNV pipelines, how they work and results from the SV pipelines | 2018-12-05 09:00:00 | Ft. Detrick,Bldg. 549,Auditorium | In-Person | BTEP | 0 | BTEP, Frederick: Variant Analysis: SNVs, CNVs and Structural Variants in WGS and WES - CANCELLED | ||||
222 |
DescriptionDetailsOrganizerCBIITWhenTue, Feb 26, 2019 - 2:30 pm - 3:30 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/a8032b731dee4058875d9a45b33ef376/playback | 2019-02-26 14:30:00 | In-Person | CBIIT | 0 | Using BioDiscovery Nexus For Copy Number Analysis | |||||
223 |
DescriptionDetailsOrganizerCBIITWhenTue, Mar 05, 2019 - 4:00 pm - 5:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/6c09064170554e54911e2a275cedcd11/playback | 2019-03-05 16:00:00 | In-Person | CBIIT | 0 | BioDiscovery Nexus Copy Number | |||||
226 |
DescriptionDetailsWhenTue, Mar 12, 2019 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/3d246d9ba88a48f188e07a5f60fef3b3/playback | 2019-03-12 14:00:00 | In-Person | 0 | BioDiscovery Nexus Expression | ||||||
227 |
DescriptionDetailsWhenTue, Mar 26, 2019 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/f012b1e97835486fa8f62efa535aaf66/playback | 2019-03-26 14:00:00 | In-Person | 0 | Ingenuity Pathway Analysis Basics | ||||||
229 |
DescriptionDetailsWhenTue, Apr 09, 2019 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/f3ab408e4f8a4cc888d13aeed1a633bc/playback | 2019-04-09 14:00:00 | In-Person | 0 | Sequencher Webinar | ||||||
853 |
Description
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. CCR has recently established a Pilot program to enable CCR researchers to use this powerful tool to process their own NGS data. The platform includes workflows for; RNA-Seq, DNA-Seq, ChIP-Seq etc.
This talk is the first in a three-part series, designed to introduce CCR scientists and bioinformaticists to this powerful resource.
<...Read More
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. CCR has recently established a Pilot program to enable CCR researchers to use this powerful tool to process their own NGS data. The platform includes workflows for; RNA-Seq, DNA-Seq, ChIP-Seq etc.
This talk is the first in a three-part series, designed to introduce CCR scientists and bioinformaticists to this powerful resource.
Class Agenda:
The main goal of this presentation will be to provide an overview of the DNAnexus platform and to set the stage for the follow-on workshops to be held later in the week. This talk will:
RegisterOrganizerBTEPWhenTue, Apr 09, 2019 - 3:00 pm - 5:00 pmWhereNIH Bethesda B37 Rm 4041/4107 |
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. CCR has recently established a Pilot program to enable CCR researchers to use this powerful tool to process their own NGS data. The platform includes workflows for; RNA-Seq, DNA-Seq, ChIP-Seq etc. This talk is the first in a three-part series, designed to introduce CCR scientists and bioinformaticists to this powerful resource. Class Agenda: The main goal of this presentation will be to provide an overview of the DNAnexus platform and to set the stage for the follow-on workshops to be held later in the week. This talk will: Describe the current Pilot program Explain how to get access to and make use of the platform Highlight key resources available within DNAnexus Highlight CCR support resources for getting the most out of this platform Demo select feature of the platform, to illustrate its utility to CCR resarchers. The first of the follow-up sessions will be aimed at Biologists who wish to make use of DNAnexus for analyzing their own data. The second will be targeted towards bioinformaticists and developers who wish to use this platform to process and share data and/or results, as well as to develop and disseminate new tools. Details and registration for the follow-up talks can be found here: II DNAnexus - NGS data analysis from a biologist perspective III DNAnexus - A versatile platform for bioinformaticists and developers More about DNAnexus A point-and-click web environment provides ready access to powerful tools for the analysis, integration and sharing of complex data. Additionally, experienced researchers and bioinformaticians can interact with the platform through a command-line interface, which allows for quick integration with current system, and the automated processing of large data sets. Beyond its extensive library of integrated tools and pipelines, the DNAnexus platform also allows the quick and efficient development of new analysis tools and the porting of existing pipelines. DNAnexus is built upon the foundational security and features of AWS and AZURE. Key Features of DNAnexus: Centralized online environment for genomic data analysis, storage and collaboration Web-based interface for ease of use Command line interface for power-users Large library of standard bioinformatic tools and pipelines Scalable infrastructure that can instantly meet any computational and data storage demand Data compliance in accordance with: HIPAA, CLIA, GCP, 21 CFR parts 11, 58, and 493, European Data Privacy laws and regulations While attending in person is highly recommended this Workshop will be available via Webex for those not on the NIH campus.. DNAnexus Meeting number (access code): 739 435 126 Meeting password: dWmxnp@9 Join the meeting. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) | 2019-04-09 15:00:00 | NIH Bethesda B37 Rm 4041/4107 | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | Simplified Next-Generation-Sequence (NGS) Data Analysis using DNAnexus | |||
851 |
Description
BTEP
Wednesday, April 10, 2019
9:00 am | Eastern Daylight Time (New York, GMT-04:00) | 2 hrs
Meeting number (access code): 738 427 711
Meeting password: zPJpWP$6
10x Genomics: Whole Exome and Whole Genome Analysis
BTEP
Wednesday, April 10, 2019
9:00 am | Eastern Daylight Time (New York, GMT-04:00) | 2 hrs
Meeting number (access code): 738 427 711
Meeting password: zPJpWP$6
10x Genomics: Whole Exome and Whole Genome Analysis
RegisterOrganizerBTEPWhenWed, Apr 10, 2019 - 9:00 am - 11:00 amWhereFt. Detrick, Bldg. 549, Auditorium |
BTEP Wednesday, April 10, 2019 9:00 am | Eastern Daylight Time (New York, GMT-04:00) | 2 hrs Meeting number (access code): 738 427 711 Meeting password: zPJpWP$6 10x Genomics: Whole Exome and Whole Genome Analysis How 10x Genomics linked reads works SNVs, copy number variations, structural variants and phasing of the variants from linked read data Walk through of 10x Genomics WGS results Integration of linked reads data with other platforms/technologies All Structural Variants: CCR Sequencing Facility analysis pipelines of structural variants from Illumina, linked reads, long reads and optical mapping Walk through of SV/CNV pipelines, how they work and results from the SV pipelines | 2019-04-10 09:00:00 | Ft. Detrick,Bldg. 549,Auditorium | In-Person | BTEP | 0 | BTEP, Frederick: Variant Analysis: SNVs, CNVs and Structural Variants in WGS and WES | ||||
852 |
Description
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. CCR has recently established a Pilot program to enable CCR researchers to use this powerful tool to process their own NGS data. The platform includes workflows for; RNA-Seq, DNA-Seq, ChIP-Seq etc.
This talk is the second in a three-part series, designed to introduce CCR scientists and bioinformaticists to this powerful resource.
<...Read More
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. CCR has recently established a Pilot program to enable CCR researchers to use this powerful tool to process their own NGS data. The platform includes workflows for; RNA-Seq, DNA-Seq, ChIP-Seq etc.
This talk is the second in a three-part series, designed to introduce CCR scientists and bioinformaticists to this powerful resource.
Class Agenda:
This workshop is aimed at those who are looking for a simple to use resource for the analysis of NGS data (i.e research scientists). In the form of a hands-on workshop this session will include:
RegisterOrganizerBTEPWhenThu, Apr 11, 2019 - 10:00 am - 11:30 amWhereBuilding 37 Room 4041/4107 |
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. CCR has recently established a Pilot program to enable CCR researchers to use this powerful tool to process their own NGS data. The platform includes workflows for; RNA-Seq, DNA-Seq, ChIP-Seq etc. This talk is the second in a three-part series, designed to introduce CCR scientists and bioinformaticists to this powerful resource. Class Agenda: This workshop is aimed at those who are looking for a simple to use resource for the analysis of NGS data (i.e research scientists). In the form of a hands-on workshop this session will include: A walk through the steps involved in setting up and managing an account Details of uploading and downloading data Running example workflows (RNA-Seq, ChIP-Seq, IGV integration, Variant analysis) Interacting with the St. Jude cloud Paths to getting additional assistance Details and registration for the other talks in the series: I Simplified Next-Generation-Sequence (NGS) Data Analysis using DNAnexus III DNAnexus – A versatile platform for bioinformaticists and developers Webex: DNAnexus – NGS data analysis from a biologist's perspective Thursday, April 11, 2019 10:00 am | Eastern Daylight Time (New York, GMT-04:00) | 1 hr 30 mins Meeting number (access code): 733 188 237 Meeting password: Wx7NVxi? When it's time, join the meeting. More about DNAnexus A point-and-click web environment provides ready access to powerful tools for the analysis, integration and sharing of complex data. Additionally, experienced researchers and bioinformaticists can interact with the platform through a command-line interface, which allows for quick integration with current system, and the automated processing of large data sets. Beyond its extensive library of integrated tools and pipelines, the DNAnexus platform also allows the quick and efficient development of new analysis tools and the porting of existing pipelines. DNAnexus is built upon the foundational security and features of AWS and AZURE. Key Features of DNAnexus: Centralized online environment for genomic data analysis, storage and collaboration Web-based interface for ease of use Command line interface for power-users Large library of standard bioinformatic tools and pipelines Scalable infrastructure that can instantly meet any computational and data storage demand Data compliance in accordance with: HIPAA, CLIA, GCP, 21 CFR parts 11, 58, and 493, European Data Privacy laws and regulations | 2019-04-11 10:00:00 | Building 37 Room 4041/4107 | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | DNAnexus - NGS data analysis from a biologist's perspective | |||
230 |
DescriptionDetailsWhenThu, Apr 11, 2019 - 11:00 am - 12:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/8a6265d50fb241b292cdcaeb6f20aa1b/playback | 2019-04-11 11:00:00 | In-Person | 0 | Qlucore Webinar | ||||||
854 |
Description
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. CCR has recently established a Pilot program to enable CCR researchers to use this powerful tool to process their own NGS data. The platform includes workflows for; RNA-Seq, DNA-Seq, ChIP-Seq etc.
This talk is the third in a three-part series, designed to introduce CCR scientists and bioinformaticists to this powerful resource.
<...Read More
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. CCR has recently established a Pilot program to enable CCR researchers to use this powerful tool to process their own NGS data. The platform includes workflows for; RNA-Seq, DNA-Seq, ChIP-Seq etc.
This talk is the third in a three-part series, designed to introduce CCR scientists and bioinformaticists to this powerful resource.
Class Agenda:
This workshop is aimed at developers, bioinformaticists and computational professionals, who are familiar with the command-line, scripting and batch data processing. In the form of a hands-on workshop this session will include:
RegisterOrganizerBTEPWhenFri, Apr 12, 2019 - 10:00 am - 11:30 amWhereRm 2041/2107, NIH Bldg 37 |
DNAnexus provides a secure cloud based platform for the analysis, storage and sharing of many different types of genomic data. CCR has recently established a Pilot program to enable CCR researchers to use this powerful tool to process their own NGS data. The platform includes workflows for; RNA-Seq, DNA-Seq, ChIP-Seq etc. This talk is the third in a three-part series, designed to introduce CCR scientists and bioinformaticists to this powerful resource. Class Agenda: This workshop is aimed at developers, bioinformaticists and computational professionals, who are familiar with the command-line, scripting and batch data processing. In the form of a hands-on workshop this session will include: A walk through the steps involved in setting up and managing an account Details of uploading and downloading data Details about DNAnexus's dx-toolkit Examples of how to run remote batch processes from the command-line on a local computer The basics of developing and deploying your own App/applet. Details and registration for the other talks in the series: I Simplified Next-Generation-Sequence (NGS) Data Analysis using DNAnexus II DNAnexus - NGS data analysis from a biologist perspective More about DNAnexus A point-and-click web environment provides ready access to powerful tools for the analysis, integration and sharing of complex data. Additionally, experienced researchers and bioinformaticists can interact with the platform through a command-line interface, which allows for quick integration with current system, and the automated processing of large data sets. Beyond its extensive library of integrated tools and pipelines, the DNAnexus platform also allows the quick and efficient development of new analysis tools and the porting of existing pipelines. DNAnexus is built upon the foundational security and features of AWS and AZURE. Key Features of DNAnexus: Centralized online environment for genomic data analysis, storage and collaboration Web-based interface for ease of use Command line interface for power-users Large library of standard bioinformatic tools and pipelines Scalable infrastructure that can instantly meet any computational and data storage demand Data compliance in accordance with: HIPAA, CLIA, GCP, 21 CFR parts 11, 58, and 493, European Data Privacy laws and regulations DNAnexus - Developers Friday, April 12, 2019 10:30 am | Eastern Daylight Time (New York, GMT-04:00) | 1 hr Meeting number (access code): 733 723 913 Meeting password: FribB6E? Join the meeting. | 2019-04-12 10:00:00 | Rm 2041/2107,NIH Bldg 37 | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | DNAnexus – A versatile platform for bioinformaticists and developers | |||
855 |
Description
You do not need to currently have an account on Biowulf to attend this class. Please bring your own computer or let us know if you need to borrow one (ncibtep@nih.gov)
Attendees will learn to:
You do not need to currently have an account on Biowulf to attend this class. Please bring your own computer or let us know if you need to borrow one (ncibtep@nih.gov)
Attendees will learn to:
RegisterOrganizerBTEPWhenTue, Apr 16, 2019 - 10:00 am - 3:00 pmWhereBldg 10 FAES room 4 (B1C205) |
You do not need to currently have an account on Biowulf to attend this class. Please bring your own computer or let us know if you need to borrow one (ncibtep@nih.gov) Attendees will learn to: Work at the unix command line – explore file structure, create files Move large data files using Globus and other tools Understand environment modules Run scientific software programs in interactive and batch modes Learn about different NGS file formats Use NGS analysis tools While attending in person is highly recommended, WebEx will be provided for those not able to attend. Practical Bioinformatics: working at the unix command line on Biowulf Hosted by Amy Stonelake Tuesday, Apr 16, 2019 10:00 am | 6 hours | (UTC-05:00) Eastern Time (US & Canada) Meeting number: 734 847 518 Password: pMNZqn?2 https://cbiit.webex.com/cbiit/j.php?MTID=mdcd7510baaed6ea0f22baebc3280fe30 Join by video system Dial 734847518@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 734 847 518 | 2019-04-16 10:00:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | Practical Bioinformatics: Working at the unix command line on Biowulf | |||
231 |
DescriptionDetailsWhenTue, Apr 16, 2019 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/68a77da9faa247b691939fdf7dba6899/playback | 2019-04-16 14:00:00 | In-Person | 0 | Ingenuity Pathway Analysis Advanced | ||||||
856 |
Description
Drop-in session: Bring your own computer or let us know if you need to borrow one (ncibtep@nih.gov). Get help logging into Biowulf, and working with your own data.
Drop-in session: Bring your own computer or let us know if you need to borrow one (ncibtep@nih.gov). Get help logging into Biowulf, and working with your own data.
RegisterOrganizerBTEPWhenFri, Apr 19, 2019 - 10:00 am - 3:00 pmWhereRm 2041/2107, NIH Bldg 37 |
Drop-in session: Bring your own computer or let us know if you need to borrow one (ncibtep@nih.gov). Get help logging into Biowulf, and working with your own data. Logging into your Biowulf account Requesting additional disk space Unzipping large data files Setting up your globus endpoint Navigating the directory tree Loading environment modules Creating batch scripts and swarm files | 2019-04-19 10:00:00 | Rm 2041/2107,NIH Bldg 37 | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | Practical Bioinformatics: Drop-in session: Working at the unix command line on Biowulf | |||
232 |
DescriptionDetailsWhenTue, May 07, 2019 - 11:30 am - 12:30 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/7e5c4e0f1dda453d98b5cee6309d35d5/playback | 2019-05-07 11:30:00 | In-Person | 0 | Omics Data Analysis in Partek | ||||||
858 |
Description
This workshop will teach the basic concepts and practical aspects of data analysis. Topics covered will include: experimental approach, quality control, peak calling, and basic biological interpretation. No computer is required for this class, there is no hands-on work.
9:30-10:15 “ChIP-seq considerations”
This section will focus on the importance of experimental design in ChIP-seq. Topics include: variations on ChIP-seq, inputs, replicates, the limitations of ChIP-seq, and the value of follow-up analyses.
10:15-10:30 Break
10:30-12:00 “Analysis ...Read More
This workshop will teach the basic concepts and practical aspects of data analysis. Topics covered will include: experimental approach, quality control, peak calling, and basic biological interpretation. No computer is required for this class, there is no hands-on work.
9:30-10:15 “ChIP-seq considerations”
This section will focus on the importance of experimental design in ChIP-seq. Topics include: variations on ChIP-seq, inputs, replicates, the limitations of ChIP-seq, and the value of follow-up analyses.
10:15-10:30 Break
10:30-12:00 “Analysis of ChIP-seq data
This section will focus on the analytical pipeline that is implemented by CCBR and NCBR. Time will be spent discussing the tools used, why they were chosen, and how to make sense of their outputs. Example results will be shown. Topics include: quality control and read alignment, deduplication, normalization, gene coverage plotting, peak calling, motif analysis, and more.
12:00-12:30 Questions
**************************
If you are unable to attend in person, WebEx will be provided. A recording of the meeting will be made available on the BTEP web site.
ChIP-Seq Data Analysis: Probing DNA-Protein Interactions
Hosted by Amy Stonelake
Friday, May 10, 2019 9:30 am | 3 hours | (UTC-05:00) Eastern Time (US & Canada)
Meeting number: 737 294 613
Password: JwrMe6p@
https://cbiit.webex.com/cbiit/j.php?MTID=m4b85110c7a550bd3815d04ae184f6e1b
Join by video system
Dial 737294613@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in toll number (US/Canada)
Access code: 737 294 613
RegisterOrganizerBTEPWhenFri, May 10, 2019 - 9:30 am - 12:30 pmWhereRm 2041/2107, NIH Bldg 37 |
This workshop will teach the basic concepts and practical aspects of data analysis. Topics covered will include: experimental approach, quality control, peak calling, and basic biological interpretation. No computer is required for this class, there is no hands-on work. 9:30-10:15 “ChIP-seq considerations” This section will focus on the importance of experimental design in ChIP-seq. Topics include: variations on ChIP-seq, inputs, replicates, the limitations of ChIP-seq, and the value of follow-up analyses. 10:15-10:30 Break 10:30-12:00 “Analysis of ChIP-seq data This section will focus on the analytical pipeline that is implemented by CCBR and NCBR. Time will be spent discussing the tools used, why they were chosen, and how to make sense of their outputs. Example results will be shown. Topics include: quality control and read alignment, deduplication, normalization, gene coverage plotting, peak calling, motif analysis, and more. 12:00-12:30 Questions ************************** If you are unable to attend in person, WebEx will be provided. A recording of the meeting will be made available on the BTEP web site. ChIP-Seq Data Analysis: Probing DNA-Protein Interactions Hosted by Amy Stonelake Friday, May 10, 2019 9:30 am | 3 hours | (UTC-05:00) Eastern Time (US & Canada) Meeting number: 737 294 613 Password: JwrMe6p@ https://cbiit.webex.com/cbiit/j.php?MTID=m4b85110c7a550bd3815d04ae184f6e1b Join by video system Dial 737294613@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 737 294 613 | 2019-05-10 09:30:00 | Rm 2041/2107,NIH Bldg 37 | In-Person | Alexei Lobanov (CCBR),Tovah Markowitz (NCBR),Paul Schaughency (NCBR) | BTEP | 0 | ChIP-Seq Data Analysis: Probing DNA-Protein Interactions | |||
860 |
Description
THIS EVENT HAS BEEN CANCELLED
We will review the three guiding principles of data visualization, basic formats for displaying data (including scatter plots, box plots, etc…), cover some guidelines about when to transform data before plotting, some strategies for displaying high dimensional data (including PCA and t-SNE plots), and review the use of color in data visualization. The presentation will close with a review of all the code used to create the figures shown ...Read More
THIS EVENT HAS BEEN CANCELLED
We will review the three guiding principles of data visualization, basic formats for displaying data (including scatter plots, box plots, etc…), cover some guidelines about when to transform data before plotting, some strategies for displaying high dimensional data (including PCA and t-SNE plots), and review the use of color in data visualization. The presentation will close with a review of all the code used to create the figures shown in the presentation. ***If you are unable to attend in person, this seminar is available by WebEx*** BTEP: RNA-Seq Workshop: Graphical Excellence and Integrity: How to make your data sing! Hosted by Amy Stonelake Tuesday, May 21, 2019 9:30 am | 2 hours | (UTC-05:00) Eastern Time (US & Canada) Meeting number: 737 719 985 Password: sGm9dPM* https://cbiit.webex.com/cbiit/j.php?MTID=m51b4e724ee3c088f0ceb73600aa9ba33 Join by video system Dial 737719985@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 737 719 985 RegisterOrganizerBTEPWhenTue, May 21, 2019 - 9:30 am - 11:00 amWhereBldg 10: FAES Classroom 3 (B1C207) |
THIS EVENT HAS BEEN CANCELLEDWe will review the three guiding principles of data visualization, basic formats for displaying data (including scatter plots, box plots, etc…), cover some guidelines about when to transform data before plotting, some strategies for displaying high dimensional data (including PCA and t-SNE plots), and review the use of color in data visualization. The presentation will close with a review of all the code used to create the figures shown in the presentation. ***If you are unable to attend in person, this seminar is available by WebEx*** BTEP: RNA-Seq Workshop: Graphical Excellence and Integrity: How to make your data sing! Hosted by Amy Stonelake Tuesday, May 21, 2019 9:30 am | 2 hours | (UTC-05:00) Eastern Time (US & Canada) Meeting number: 737 719 985 Password: sGm9dPM* https://cbiit.webex.com/cbiit/j.php?MTID=m51b4e724ee3c088f0ceb73600aa9ba33 Join by video system Dial 737719985@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 737 719 985 | 2019-05-21 09:30:00 | Bldg 10: FAES Classroom 3 (B1C207) | In-Person | BTEP | 0 | BTEP, RNA-Seq Workshop: Graphical Excellence and Integrity: How to make your data sing! - CANCELLED | ||||
863 |
Description
This introductory lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
The specific topics covered include:
This introductory lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
The specific topics covered include:
RegisterOrganizerBTEPWhenTue, May 21, 2019 - 1:00 pm - 2:00 pmWhereFAES Room 3 – B1C207 |
This introductory lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data. The specific topics covered include: What is RNASeq ? What can it be used for ? Sequencing platforms Quality Control steps Experimental Design Data Analysis Workflows Identifying differentially expressed genes Discussion of relevant file formats and data conversion tools Approaches to detect splice variants and fusion genes NCI specific tools and software (This is a repeat of the seminar that was held Nov 5, 2018) If you are unable to attend in person, WebEx and a recording will be provided. BTEP, RNA-Seq Workshop: Intro to RNA-Seq Technology, Overview and Analyses, Part Two Hosted by Amy Stonelake Tuesday, May 21, 2019 1:00 pm | 1 hour | (UTC-05:00) Eastern Time (US & Canada) Meeting number: 734 079 311 Password: 3mEWpkt* https://cbiit.webex.com/cbiit/j.php?MTID=m1731d9a9f087d1f3759471a64f77cd99 Join by video system Dial 734079311@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 734 079 311 | 2019-05-21 13:00:00 | FAES Room 3 – B1C207 | In-Person | Peter FitzGerald (GAU) | BTEP | 0 | BTEP, RNA-Seq Workshop: Introduction to RNA-Seq Technology: Overview and Analyses, Part Two | |||
861 |
Description
This introductory lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
The specific topics covered include:
This introductory lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
The specific topics covered include:
RegisterOrganizerBTEPWhenTue, May 21, 2019 - 2:00 pm - 5:00 pmWhereBuilding 37 Room 4041/4107 |
This introductory lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data. The specific topics covered include: What is RNASeq ? What can it be used for ? Sequencing platforms Quality Control steps Experimental Design Data Analysis Workflows Identifying differentially expressed genes Discussion of relevant file formats and data conversion tools Approaches to detect splice variants and fusion genes NCI specific tools and software Followed by: A Practical Guide to Interpreting RNA-Seq Data Next-generation sequencing (NGS) RNA-seq experiments generate millions of reads per run and problems can arise. Before analyzing the data to draw biological conclusions, it is important to perform quality control checks to minimize the effects of sequencing error, biases in the data, or contamination. In this talk, we discuss the theory and practice of assessing the quality of RNA-Seq data, as well as analysis strategies for mitigating technical noise using practical examples. If you are unable to attend in person, the workshop will be available via WebEx and recorded. BTEP, RNA-Seq Workshop: Intro to RNA-Seq Technology, Overview and Analyses Hosted by Amy Stonelake Tuesday, May 21, 2019 2:00 pm | 3 hours | (UTC-05:00) Eastern Time (US & Canada) Meeting number: 731 553 624 Password: KbQPp4E@ https://cbiit.webex.com/cbiit/j.php?MTID=m1d788955c1d9aa1ec6482aa68335b255 Join by video system Dial 731553624@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 731 553 624 Link to WebEx recording: Streaming recording link: https://cbiit.webex.com/cbiit/ldr.php?RCID=7d4d2caf8bf8bf0992a12c060113ae9e Download recording link: https://cbiit.webex.com/cbiit/lsr.php?RCID=18ec1c00faa1cf372f186442ca83bc4c | 2019-05-21 14:00:00 | Building 37 Room 4041/4107 | In-Person | Peter FitzGerald (GAU), | BTEP | 0 | BTEP, RNA-Seq Workshop: Introduction to RNA-Seq Technology: Overview and Analyses | |||
862 |
Description
Next-generation sequencing (NGS) RNA-seq experiments generate millions of reads per run and problems can arise. Before analyzing the data to draw biological conclusions, it is important to perform quality control checks to minimize the effects of sequencing error, biases in the data, or contamination. In this talk, we discuss the theory and practice of assessing the quality of RNA-Seq data, as well as analysis strategies for mitigating technical noise using practical examples.
If you are ...Read More
Next-generation sequencing (NGS) RNA-seq experiments generate millions of reads per run and problems can arise. Before analyzing the data to draw biological conclusions, it is important to perform quality control checks to minimize the effects of sequencing error, biases in the data, or contamination. In this talk, we discuss the theory and practice of assessing the quality of RNA-Seq data, as well as analysis strategies for mitigating technical noise using practical examples.
If you are unable to attend in person, WebEx and a recording will be provided.
BTEP, RNA-Seq Workshop: A Practical Guide to Interpreting RNA-Seq Data
Hosted by Amy Stonelake
Tuesday, May 21, 2019 2:00 pm | 1 hour | (UTC-05:00) Eastern Time (US & Canada)
Meeting number: 738 718 524
Password: yGPsYJ2?
https://cbiit.webex.com/cbiit/j.php?MTID=mc3f0b1c9cb574924ac24bfe3fd343d8f
Join by video system
Dial 738718524@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in toll number (US/Canada)
Access code: 738 718 524
RegisterOrganizerBTEPWhenTue, May 21, 2019 - 2:00 pm - 4:00 pmWhereFAES Room 3 – B1C207 |
Next-generation sequencing (NGS) RNA-seq experiments generate millions of reads per run and problems can arise. Before analyzing the data to draw biological conclusions, it is important to perform quality control checks to minimize the effects of sequencing error, biases in the data, or contamination. In this talk, we discuss the theory and practice of assessing the quality of RNA-Seq data, as well as analysis strategies for mitigating technical noise using practical examples. If you are unable to attend in person, WebEx and a recording will be provided. BTEP, RNA-Seq Workshop: A Practical Guide to Interpreting RNA-Seq Data Hosted by Amy Stonelake Tuesday, May 21, 2019 2:00 pm | 1 hour | (UTC-05:00) Eastern Time (US & Canada) Meeting number: 738 718 524 Password: yGPsYJ2? https://cbiit.webex.com/cbiit/j.php?MTID=mc3f0b1c9cb574924ac24bfe3fd343d8f Join by video system Dial 738718524@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 738 718 524 | 2019-05-21 14:00:00 | FAES Room 3 – B1C207 | In-Person | BTEP | 0 | BTEP, RNA-Seq Workshop: A Practical Guide to Interpreting RNA-Seq Data | ||||
859 |
Description
RegisterOrganizerBTEPWhenFri, May 24, 2019 - 10:00 am - 3:00 pmWhereRm 2041/2107, NIH Bldg 37 |
BTEP personnel will be available to help answer any questions you might have from our RNA-Seq lectures earlier this week. Check out RNA-Seq pipelines available to CCR researchers Also - Get help working at the unix command line stop by anytime between 10 AM and 3 PM and stay as long as you like | 2019-05-24 10:00:00 | Rm 2041/2107,NIH Bldg 37 | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP, RNA-Seq Week: Hands-on drop-in session on RNA-Seq | |||
233 |
DescriptionDetailsWhenTue, May 28, 2019 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/3960c8368ef84e0a8a89d72ac5ff1fa4/playback | 2019-05-28 12:00:00 | In-Person | 0 | Lasergene Webinar | ||||||
234 |
DescriptionDetailsWhenTue, Jun 04, 2019 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/c7d0446cf223475db3d1e9d2a72b9175/playback | 2019-06-04 12:00:00 | In-Person | 0 | Metacore Webinar | ||||||
857 |
Description
You do not need to currently have an account on Biowulf to attend this class. Computers are provided in the classroom, you may also bring your own laptop. If you bring your own laptop, please make sure the following software is installed [PC - Putty SSH and telnet client (putty.org), WinSCP (https://sourceforge.net/projects/winscp/)], (Mac - no additional software needed).
Attendees will learn to:
You do not need to currently have an account on Biowulf to attend this class. Computers are provided in the classroom, you may also bring your own laptop. If you bring your own laptop, please make sure the following software is installed [PC - Putty SSH and telnet client (putty.org), WinSCP (https://sourceforge.net/projects/winscp/)], (Mac - no additional software needed).
Attendees will learn to:
RegisterOrganizerBTEPWhenWed, Jun 05, 2019 - 10:00 am - 3:00 pmWhereBuilding 549 Scientific Library Frederick MD |
You do not need to currently have an account on Biowulf to attend this class. Computers are provided in the classroom, you may also bring your own laptop. If you bring your own laptop, please make sure the following software is installed [PC - Putty SSH and telnet client (putty.org), WinSCP (https://sourceforge.net/projects/winscp/)], (Mac - no additional software needed). Attendees will learn to: Work at the unix command line – explore file structure, create files Move large data files using Globus and other tools Understand environment modules Run scientific software programs in interactive and batch modes Learn about different NGS file formats Use NGS analysis tools This is a repeat of the class that was held on the NIH campus April 16, 2019. | 2019-06-05 10:00:00 | Building 549 Scientific Library Frederick MD | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP FREDERICK: Practical Bioinformatics: working at the unix command line on Biowulf | |||
235 |
DescriptionDetailsWhenTue, Jun 11, 2019 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/6e3c60516aa64b7c8371a7cf2e5328b0/playback | 2019-06-11 12:00:00 | In-Person | 0 | DNASTAR Lasergene -Genomics Suite | ||||||
864 |
Description
Upcoming hands-on, drop-in BTEP sessions held in Frederick, Ft. Detrick, Bldg 549, Rm 549B
Drop-in anytime during the session. Bring your own computer.
BTEP personnel will be available to answer questions about:
Upcoming hands-on, drop-in BTEP sessions held in Frederick, Ft. Detrick, Bldg 549, Rm 549B
Drop-in anytime during the session. Bring your own computer.
BTEP personnel will be available to answer questions about:
RegisterOrganizerBTEPWhenWed, Jun 12, 2019 - 10:00 am - 12:30 pmWhereRm E-1202 |
Upcoming hands-on, drop-in BTEP sessions held in Frederick, Ft. Detrick, Bldg 549, Rm 549B Drop-in anytime during the session. Bring your own computer. BTEP personnel will be available to answer questions about: Working at the Unix command line on Biowulf Finding, understanding and moving your data Tools available to CCR personnel for RNA-seq data analysis Upcoming dates: July 31, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Aug 28, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Sep 25, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Oct 23, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Nov 20, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Dec 18, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM | 2019-06-12 10:00:00 | Rm E-1202 | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP, Frederick: Hands-on, drop-in session for working at the Unix command line on Biowulf | |||
865 |
Description
Drop-in anytime during the session. Bring your own computer.
BTEP personnel will be available to answer questions about:
Drop-in anytime during the session. Bring your own computer.
BTEP personnel will be available to answer questions about:
RegisterOrganizerBTEPWhenFri, Jun 21, 2019 - 10:00 am - 3:00 pmWhereRm 2041/2107, NIH Bldg 37 |
Drop-in anytime during the session. Bring your own computer. BTEP personnel will be available to answer questions about: Working at the Unix command line on Biowulf Finding, understanding and moving your data Tools available to CCR personnel for RNA-seq data analysis Upcoming dates: Jul 24, Weds, Bldg 37, Rm 6107, 1 PM – 4 PM Aug 22, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Sep 19, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Oct 17, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Nov 12, Tues, Bldg 37, Rm6107, 1 PM – 4 PM Dec 10, Tues, Bldg 37, Rm 6107, 1 PM – 4 PM | 2019-06-21 10:00:00 | Rm 2041/2107,NIH Bldg 37 | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP: NIH, Hands-on, drop-in session on Unix/Biowulf and RNA-Seq | |||
877 |
Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in >16,000 peer-reviewed articles, and the class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The training session will mainly focus on biological interpretation of expression data and comparison with public data ...Read More
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in >16,000 peer-reviewed articles, and the class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The training session will mainly focus on biological interpretation of expression data and comparison with public data sets using Analysis Match, but will also cover multiple ways to query IPA’s Knowledgebase in the absence of data.
Attendees should bring their own laptop computers.
******
If unable to attend in person, WebEx will be provided.
BTEP: Interpreting Gene Expression Data with Qiagen Ingenuity Pathway Analysis (IPA)
Hosted by Amy Stonelake
Wednesday, Jul 17, 2019 1:00 pm | 3 hours | (UTC-05:00) Eastern Time (US & Canada)
Meeting number: 739 415 196
Password: Jfumyq@9
https://cbiit.webex.com/cbiit/j.php?MTID=m00d87cab804802958dff9d546b39014c
Join by video system
Dial 739415196@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in toll number (US/Canada)
Access code: 739 415 196
RegisterOrganizerBTEPWhenWed, Jul 17, 2019 - 1:00 pm - 4:00 pmWhereBldg 37, Room 6041 |
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in >16,000 peer-reviewed articles, and the class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The training session will mainly focus on biological interpretation of expression data and comparison with public data sets using Analysis Match, but will also cover multiple ways to query IPA’s Knowledgebase in the absence of data. Attendees should bring their own laptop computers. ****** If unable to attend in person, WebEx will be provided. BTEP: Interpreting Gene Expression Data with Qiagen Ingenuity Pathway Analysis (IPA) Hosted by Amy Stonelake Wednesday, Jul 17, 2019 1:00 pm | 3 hours | (UTC-05:00) Eastern Time (US & Canada) Meeting number: 739 415 196 Password: Jfumyq@9 https://cbiit.webex.com/cbiit/j.php?MTID=m00d87cab804802958dff9d546b39014c Join by video system Dial 739415196@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 739 415 196 | 2019-07-17 13:00:00 | Bldg 37,Room 6041 | In-Person | BTEP | 0 | BTEP: Interpreting Gene Expression Data with Qiagen Ingenuity Pathway Analysis (IPA) | ||||
236 |
DescriptionDetailsWhenTue, Jul 23, 2019 - 4:00 pm - 5:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/96b9adfc1c8645219a9772a601951732/playback | 2019-07-23 16:00:00 | In-Person | 0 | Introduction to Public RNASeq Data Analysis using WebMeV | ||||||
866 |
Description
THIS EVENT HAS BEEN CANCELLED
Drop-in anytime during the session. Bring your own computer. We will be covering the following topics: - Unix bootcamp – learn to navigate a Unix file system and move, copy, and edit files - Looking at the quality of your sequence data with FastQC and MultiQC - Trimming sequences with CutAdapt Upcoming dates: Aug 22, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Sep 19, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Oct 17, Thurs, Bldg 37, Rm 4041/4107, 10 ...Read More
THIS EVENT HAS BEEN CANCELLED
Drop-in anytime during the session. Bring your own computer. We will be covering the following topics: - Unix bootcamp – learn to navigate a Unix file system and move, copy, and edit files - Looking at the quality of your sequence data with FastQC and MultiQC - Trimming sequences with CutAdapt Upcoming dates: Aug 22, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Sep 19, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Oct 17, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Nov 12, Tues, Bldg 37, Rm6107, 1 PM – 4 PM Dec 10, Tues, Bldg 37, Rm 6107, 1 PM – 4 PM RegisterOrganizerBTEPWhenWed, Jul 24, 2019 - 12:00 pm - 3:00 pmWhereNIH Bldg 37, Rm 6107 |
THIS EVENT HAS BEEN CANCELLEDDrop-in anytime during the session. Bring your own computer. We will be covering the following topics: - Unix bootcamp – learn to navigate a Unix file system and move, copy, and edit files - Looking at the quality of your sequence data with FastQC and MultiQC - Trimming sequences with CutAdapt Upcoming dates: Aug 22, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Sep 19, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Oct 17, Thurs, Bldg 37, Rm 4041/4107, 10 AM – 3 PM Nov 12, Tues, Bldg 37, Rm6107, 1 PM – 4 PM Dec 10, Tues, Bldg 37, Rm 6107, 1 PM – 4 PM | 2019-07-24 12:00:00 | NIH Bldg 37,Rm 6107 | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP: NIH, Hands-on, drop-in session on Unix/Biowulf and RNA-Seq - CANCELLED | |||
871 |
Description
Drop-in anytime during the session. Bring your own computer.
We will be covering the following topics:
- Unix bootcamp – learn to navigate a Unix file system and move, copy, and edit files
- Looking at the quality of your sequence data with FastQC and MultiQC
- Trimming sequences with CutAdapt
Upcoming dates, Frederick:
Aug 28, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM
Sep 25, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM
Oct 23, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM
Nov 20, ...Read More
Drop-in anytime during the session. Bring your own computer.
We will be covering the following topics:
- Unix bootcamp – learn to navigate a Unix file system and move, copy, and edit files
- Looking at the quality of your sequence data with FastQC and MultiQC
- Trimming sequences with CutAdapt
Upcoming dates, Frederick:
Aug 28, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM
Sep 25, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM
Oct 23, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM
Nov 20, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM
Dec 18, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM
RegisterOrganizerBTEPWhenWed, Jul 31, 2019 - 9:00 am - 12:00 pmWhereFt. Detrick, Bldg. 549, 549B |
Drop-in anytime during the session. Bring your own computer. We will be covering the following topics: - Unix bootcamp – learn to navigate a Unix file system and move, copy, and edit files - Looking at the quality of your sequence data with FastQC and MultiQC - Trimming sequences with CutAdapt Upcoming dates, Frederick: Aug 28, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Sep 25, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Oct 23, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Nov 20, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Dec 18, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM | 2019-07-31 09:00:00 | Ft. Detrick,Bldg. 549,549B | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP, Frederick: Hands-on, drop-in session on Unix/Biowulf and RNA-Seq | |||
237 |
DescriptionDetailsWhenTue, Aug 13, 2019 - 1:00 pm - 2:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/604601950b1a42d3a2a6ea1ca6f00c08/playback | 2019-08-13 13:00:00 | In-Person | 0 | Detection of somatic, subclonal and mosaic CNVs from sequencing using CNVator -omics tool | ||||||
238 |
DescriptionDetailsWhenTue, Aug 20, 2019 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/846e911c453c4aec8350f4c29cc1455d/playback | 2019-08-20 14:00:00 | In-Person | 0 | AMARETTO for Network Biology and Medicine | ||||||
882 |
Description
Drop-in anytime during the session. Bring your own computer.
BTEP personnel will be available to answer questions about:
• Working at the Unix command line on Biowulf
• Quality control analysis and trimming of RNA Seq data
• Alignment and visualization of RNA Seq data
Drop-in anytime during the session. Bring your own computer.
BTEP personnel will be available to answer questions about:
• Working at the Unix command line on Biowulf
• Quality control analysis and trimming of RNA Seq data
• Alignment and visualization of RNA Seq data
RegisterOrganizerBTEPWhenThu, Aug 22, 2019 - 1:00 pm - 4:00 pmWhereSuite 3041 Conference Room |
Drop-in anytime during the session. Bring your own computer. BTEP personnel will be available to answer questions about: • Working at the Unix command line on Biowulf • Quality control analysis and trimming of RNA Seq data • Alignment and visualization of RNA Seq data | 2019-08-22 13:00:00 | Suite 3041 Conference Room | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP: NIH, Hands-on, drop-in session on Unix/Biowulf and RNA-Seq | |||
239 |
DescriptionDetailsWhenThu, Aug 22, 2019 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/c1bf64260cba42daa17b673022ac1f45/playback | 2019-08-22 14:00:00 | In-Person | 0 | OpenCRAVAT: A customizable annotation and prioritization pipeline for genes and variants | ||||||
240 |
DescriptionDetailsWhenTue, Aug 27, 2019 - 5:00 pm - 6:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/fa9e7d01848143a993c3ea92f9d911dc/playback | 2019-08-27 17:00:00 | In-Person | 0 | A Galaxy-Based Multi-Omic Informatics Hub for Cancer Researchers | ||||||
872 |
Description
THIS EVENT HAS BEEN CANCELLED
Drop-in anytime during the session. Bring your own computer. BTEP personnel will be available to answer questions about:
THIS EVENT HAS BEEN CANCELLED
Drop-in anytime during the session. Bring your own computer. BTEP personnel will be available to answer questions about:
RegisterOrganizerBTEPWhenWed, Aug 28, 2019 - 9:00 am - 12:00 pmWhereFt. Detrick, Bldg. 549, 549B |
THIS EVENT HAS BEEN CANCELLEDDrop-in anytime during the session. Bring your own computer. BTEP personnel will be available to answer questions about: Working at the Unix command line on Biowulf Quality control and trimming of RNA seq data Alignment and visualization of RNA seq data Upcoming dates, Frederick: Sep 25, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Oct 23, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Nov 20, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM Dec 18, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM | 2019-08-28 09:00:00 | Ft. Detrick,Bldg. 549,549B | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP, Frederick: Hands-on, drop-in session on Unix/Biowulf and RNA-Seq - CANCELLED | |||
884 |
Description
Please bring your computer with Partek Genomics Suite to this hands-on workshop. You'll need to submit a request through “NCI at Your Service” to obtain the access to this software.
Partek will demonstrate both Microarray and Methylation Data Analysis in Partek Genomics Suite with Pathway
***Microarray Data Analysis in Partek Genomics Suite with Pathway***
Abstract: The class will start with an overview of Partek Genomics Suite with Pathway and ...Read More
Please bring your computer with Partek Genomics Suite to this hands-on workshop. You'll need to submit a request through “NCI at Your Service” to obtain the access to this software.
Partek will demonstrate both Microarray and Methylation Data Analysis in Partek Genomics Suite with Pathway
***Microarray Data Analysis in Partek Genomics Suite with Pathway***
Abstract: The class will start with an overview of Partek Genomics Suite with Pathway and followed by a hands-on tutorial session using a sample Gene Expression dataset. The hands-on session will help attendees gain expertise on the following topics: data import, QA/QC, exploratory data analysis, differential expression analysis, visualizations, and biological interpretation as well as other basic analysis in Partek Genomics Suite with Pathway.
RegisterOrganizerBTEPWhenWed, Aug 28, 2019 - 9:00 am - 11:00 amWhereBuilding 37 Room 4041/4107 |
Please bring your computer with Partek Genomics Suite to this hands-on workshop. You'll need to submit a request through “NCI at Your Service” to obtain the access to this software. Partek will demonstrate both Microarray and Methylation Data Analysis in Partek Genomics Suite with Pathway ***Microarray Data Analysis in Partek Genomics Suite with Pathway*** Abstract: The class will start with an overview of Partek Genomics Suite with Pathway and followed by a hands-on tutorial session using a sample Gene Expression dataset. The hands-on session will help attendees gain expertise on the following topics: data import, QA/QC, exploratory data analysis, differential expression analysis, visualizations, and biological interpretation as well as other basic analysis in Partek Genomics Suite with Pathway. Data Import QA/QC Exploratory Data Analysis Differential Expression Analysis Visualization (PCA, hierarchical clustering, dot plot, chromosome view, volcano plot, etc.) Biological Interpretation ***Microarray Methylation Data Analysis in Partek Genomics Suite*** The class will use the Illumina 450K Methylation array data. The workflow can also be used on HumanMethylation27 (27K) and HumanMethylationEPIC (850K) BeadChips. Attendees will learn how to perform QA/QC, detect differential methylation, find genes overlapping CpG loci and biological interpretation in Partek Genomics Suite with Pathway. - Import data from Illumina methylation array in .idat files - Methylation array-specific normalization - Perform QA/AC - Detection of differentially methylated CpG loci - Creating list of loci of interest Identifying methylation signatures Find overlapping genes Biological interpretation Visualization PCA Dot plot Hierarchical clustering Pathway If you can not attend in person, WebEx will be provided. Meeting number (access code): 733 186 710 Meeting password: JdyNKF@3 Wednesday, August 28, 2019 8:30 am | (UTC-05:00) Eastern Time (US & Canada) | 2 hrs 30 mins Join Join by phone Tap to call in from a mobile device (attendees only) 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 733186710@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join using Microsoft Lync or Microsoft Skype for Business Dial 733186710.cbiit@lync.webex.com Need help? Go to http://help.webex.com | 2019-08-28 09:00:00 | Building 37 Room 4041/4107 | In-Person | Xiaowen Wang (Partek) | BTEP | 0 | BTEP: Microarray and Methylation Data Analysis in Partek Genomics Suite with Pathway | |||
885 |
Description
Here is the handout used for todays Single Cell RNA Seq analysis class:
PartekFlowSingleCellRNA-SeqTrainingHandout_August2019
Attention: This class is limited to 28 people due to the size of the room. There is another Single Cell Rna-Seq class on Oct 23 if you can't make this one.
Hands On Training on Single Cell RNA-Seq Data Analysis in Partek ...Read More
Here is the handout used for todays Single Cell RNA Seq analysis class:
PartekFlowSingleCellRNA-SeqTrainingHandout_August2019
Attention: This class is limited to 28 people due to the size of the room. There is another Single Cell Rna-Seq class on Oct 23 if you can't make this one.
Hands On Training on Single Cell RNA-Seq Data Analysis in Partek Flow
Please bring your computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov
Abstract: Students will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow:
- Import data
- Filter cells using interactive QA/QC charts
- Filter and normalize Single Cell RNA-Seq data
- Visualize cell populations using the interactive 3D t-SNE plot
- Overlay gene expression and pathway signatures on the 3D t-SNE plot
- Select and classify cells on the 3D t-SNE plot
- Detect differentially expressed genes
- Filter a gene list
- Identify enriched KEGG pathway and/or GO terms
- Visualize cell-level results using heat maps, volcano plots, and violin plots
If you can't attend in person, WebEx will be provided.
Meeting number (access code): 731 584 771
Meeting password: fR3RPGP?
Wednesday, August 28, 2019
1:00 pm | (UTC-05:00) Eastern Time (US & Canada) | 3 hrs
Start Meeting
Join by phone
Tap to call in from a mobile device (attendees only)
1-650-479-3207 Call-in toll number (US/Canada)
Join from a video system or application
Dial 731584771@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join using Microsoft Lync or Microsoft Skype for Business
Dial 731584771.cbiit@lync.webex.com
Need help? Go to http://help.webex.com
RegisterOrganizerBTEPWhenWed, Aug 28, 2019 - 1:00 pm - 5:00 pmWhereBldg 10 FAES room 4 (B1C205) |
Here is the handout used for todays Single Cell RNA Seq analysis class: PartekFlowSingleCellRNA-SeqTrainingHandout_August2019 Attention: This class is limited to 28 people due to the size of the room. There is another Single Cell Rna-Seq class on Oct 23 if you can't make this one. Hands On Training on Single Cell RNA-Seq Data Analysis in Partek Flow Please bring your computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov Abstract: Students will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow: - Import data - Filter cells using interactive QA/QC charts - Filter and normalize Single Cell RNA-Seq data - Visualize cell populations using the interactive 3D t-SNE plot - Overlay gene expression and pathway signatures on the 3D t-SNE plot - Select and classify cells on the 3D t-SNE plot - Detect differentially expressed genes - Filter a gene list - Identify enriched KEGG pathway and/or GO terms - Visualize cell-level results using heat maps, volcano plots, and violin plots If you can't attend in person, WebEx will be provided. Meeting number (access code): 731 584 771 Meeting password: fR3RPGP? Wednesday, August 28, 2019 1:00 pm | (UTC-05:00) Eastern Time (US & Canada) | 3 hrs Start Meeting Join by phone Tap to call in from a mobile device (attendees only) 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 731584771@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join using Microsoft Lync or Microsoft Skype for Business Dial 731584771.cbiit@lync.webex.com Need help? Go to http://help.webex.com | 2019-08-28 13:00:00 | Bldg 10 FAES room 4 (B1C205) | In-Person | Xiaowen Wang (Partek) | BTEP | 0 | BTEP: Single Cell RNA Seq Analysis with Partek Flow | |||
241 |
DescriptionDetailsWhenThu, Aug 29, 2019 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/361655cd97c049da80df811be91adc04/playback | 2019-08-29 14:00:00 | In-Person | 0 | OncoMX: an integrated cancer mutation and expression resource for exploring cancer biomarkers | ||||||
242 |
DescriptionDetailsWhenTue, Sep 10, 2019 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/aa908acc7fd64f3fac4579bc3b69725d/playback | 2019-09-10 12:00:00 | In-Person | 0 | Single Cell Genome Viewer: Computational tools for sparsely sequenced single-cell genomes | ||||||
243 |
DescriptionDetailsWhenTue, Sep 17, 2019 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/320b6689787943998991eb65d61086ad/playback | 2019-09-17 12:00:00 | In-Person | 0 | Introduction to Gene-gene Association Inference based on biomedical Literature | ||||||
867 |
Description
Drop-in anytime during the session. Bring your own computer.
If you have a PC, please download and install PuTTY (putty.org) and WinSCP (winscp.net).
If you have a Mac please download and install Fugu.
BTEP personnel will be available to answer questions about:
• Working at the Unix command line on Biowulf
• Quality control analysis and trimming of RNA Seq data
• Alignment and visualization of RNA Seq data
Drop-in anytime during the session. Bring your own computer.
If you have a PC, please download and install PuTTY (putty.org) and WinSCP (winscp.net).
If you have a Mac please download and install Fugu.
BTEP personnel will be available to answer questions about:
• Working at the Unix command line on Biowulf
• Quality control analysis and trimming of RNA Seq data
• Alignment and visualization of RNA Seq data
RegisterOrganizerBTEPWhenThu, Sep 19, 2019 - 12:00 pm - 3:00 pmWhereNIH Bethesda B37 Rm 4041/4107 |
Drop-in anytime during the session. Bring your own computer. If you have a PC, please download and install PuTTY (putty.org) and WinSCP (winscp.net). If you have a Mac please download and install Fugu. BTEP personnel will be available to answer questions about: • Working at the Unix command line on Biowulf • Quality control analysis and trimming of RNA Seq data • Alignment and visualization of RNA Seq data | 2019-09-19 12:00:00 | NIH Bethesda B37 Rm 4041/4107 | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP: NIH, Hands-on, drop-in session on Unix/Biowulf and RNA-Seq | |||
244 |
DescriptionDetailsWhenTue, Sep 24, 2019 - 2:30 pm - 3:30 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/1985cbcbb8ad4c07ac58ea7e3a4d7927/playback | 2019-09-24 14:30:00 | In-Person | 0 | Revitalize your slides with ScienceSlides | ||||||
873 |
Description
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
RegisterOrganizerBTEPWhenWed, Sep 25, 2019 - 9:00 am - 12:00 pmWhereFt. Detrick, Bldg. 549, 549B |
Drop-in anytime during the session. Bring your own computer. Before coming to class, download a tool for transferring files. For Windows PC, suggested tool is WinScp. 2. For Mac, suggested tool is Filezilla. 3. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html At the session, BTEP personnel will be available to answer questions about: • Working at the Unix command line on Biowulf • Quality control analysis and trimming of RNA Seq data • Alignment and visualization of RNA Seq data | 2019-09-25 09:00:00 | Ft. Detrick,Bldg. 549,549B | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP, Frederick: Hands-on, drop-in session on Unix/Biowulf and RNA-Seq | |||
879 |
Description
Qlucore Omics Explorer is an interactive analysis and visualization tool that helps the user to find groups, structures, variable networks and discriminating variables. You can use your own data and analyze public data. Omics Explorer supports 3D PCA plots, t-SNE plots, heat maps with hierarchical clustering, scatter plots, volcano plots, box plots etc. A number of statistical methods are included, like t-test, F-test (ANOVA) and different regressions tests. Plots are dynamically updated as ...Read More
Qlucore Omics Explorer is an interactive analysis and visualization tool that helps the user to find groups, structures, variable networks and discriminating variables. You can use your own data and analyze public data. Omics Explorer supports 3D PCA plots, t-SNE plots, heat maps with hierarchical clustering, scatter plots, volcano plots, box plots etc. A number of statistical methods are included, like t-test, F-test (ANOVA) and different regressions tests. Plots are dynamically updated as filters change and analysis is done, which allows a very interactive exploration to test out new hypothesizes. Omics Explorer has an interface which makes it possible to use statistical functions created in "R" from inside Omics Explorer, so that you can use external statistical methods implemented in “R”. With machine learning algorithms (kNN, SVM and Random Trees) classification of samples in new data sets is simplified. The product has an inbuilt Gene Set Enrichment Analysis (GSEA) workbench for pathway analysis, a direct interface to GEO and an inbuilt Gene Ontology browser. The product has an import wizard to simplify data import. Aligned BAM files (RNA-seq) and microarray files (.cel files) can be directly imported, normalized and log transformed through import pipelines, and GEO soft files can be directly imported. Through Qlucore Templates, based on “Python”, you can create analysis workflows and also customize integrations, like the TCGA mRNA dataset download Template that comes preinstalled.
Qlucore NGS module is an optional add-on module to Qlucore Omics Explorer. The main components of the NGS module are an interactive and fast Genome Browser for many samples and many tracks per sample, a genome filter control component, a Project Manager for project set-up and an inbuilt Variant Caller for short indels and variants. Utilizing the existing functionality in Qlucore Omics Explorer for expression data and combining it with the functionality in Qlucore NGS Browser enables significantly increased analysis options.
If you are unable to attend in person, WebEx will be available.
Amy Stonelake invites you to join this Webex meeting.
Meeting number (access code): 739 669 544
Meeting password: Hkfgh3C@
Thursday, September 26, 2019
12:00 pm | (UTC-05:00) Eastern Time (US & Canada) | 3 hrs
Join
Join by phone
Tap to call in from a mobile device (attendees only)
1-650-479-3207 Call-in toll number (US/Canada)
Join from a video system or application
Dial 739669544@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join using Microsoft Lync or Microsoft Skype for Business
Dial 739669544.cbiit@lync.webex.com
RegisterOrganizerBTEPWhenThu, Sep 26, 2019 - 12:00 pm - 3:00 pmWhereNIH, Bldg 37, Rm 2041/2107 |
Qlucore Omics Explorer is an interactive analysis and visualization tool that helps the user to find groups, structures, variable networks and discriminating variables. You can use your own data and analyze public data. Omics Explorer supports 3D PCA plots, t-SNE plots, heat maps with hierarchical clustering, scatter plots, volcano plots, box plots etc. A number of statistical methods are included, like t-test, F-test (ANOVA) and different regressions tests. Plots are dynamically updated as filters change and analysis is done, which allows a very interactive exploration to test out new hypothesizes. Omics Explorer has an interface which makes it possible to use statistical functions created in "R" from inside Omics Explorer, so that you can use external statistical methods implemented in “R”. With machine learning algorithms (kNN, SVM and Random Trees) classification of samples in new data sets is simplified. The product has an inbuilt Gene Set Enrichment Analysis (GSEA) workbench for pathway analysis, a direct interface to GEO and an inbuilt Gene Ontology browser. The product has an import wizard to simplify data import. Aligned BAM files (RNA-seq) and microarray files (.cel files) can be directly imported, normalized and log transformed through import pipelines, and GEO soft files can be directly imported. Through Qlucore Templates, based on “Python”, you can create analysis workflows and also customize integrations, like the TCGA mRNA dataset download Template that comes preinstalled. Qlucore NGS module is an optional add-on module to Qlucore Omics Explorer. The main components of the NGS module are an interactive and fast Genome Browser for many samples and many tracks per sample, a genome filter control component, a Project Manager for project set-up and an inbuilt Variant Caller for short indels and variants. Utilizing the existing functionality in Qlucore Omics Explorer for expression data and combining it with the functionality in Qlucore NGS Browser enables significantly increased analysis options. If you are unable to attend in person, WebEx will be available. Amy Stonelake invites you to join this Webex meeting. Meeting number (access code): 739 669 544 Meeting password: Hkfgh3C@ Thursday, September 26, 2019 12:00 pm | (UTC-05:00) Eastern Time (US & Canada) | 3 hrs Join Join by phone Tap to call in from a mobile device (attendees only) 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 739669544@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join using Microsoft Lync or Microsoft Skype for Business Dial 739669544.cbiit@lync.webex.com | 2019-09-26 12:00:00 | NIH,Bldg 37,Rm 2041/2107 | In-Person | Yana Stackpole (Qlucore) | BTEP | 0 | BTEP: Qlucore Omics Explorer, Fast and Easy Exploration of NGS Data | |||
888 |
Description
Overview of single cell technologies, analysis workflows, scRNA-seq preprocessing and QC
10:00 – 10:30 AM Introduction to single cell technologies and applications (Mike Kelly)
10:30 – 11:00 AM Overview of single cell transcriptomic analysis workflow and pipelines (Yongmei Zhao)
11:05 – 12:00 PM scRNA-seq preprocessing and quality control (Vicky Chen, Nathan Wong)
1:00 – 2:00 PM Clustering analysis, dimensionality reduction, marker gene identification, and visualization (Cihan Oguz)
2:00 - 3:00 PM Single cell RNA-seq cell type classification and annotation (Keyur Talsania)
If unable to join in person, WebEx will ...Read More
Overview of single cell technologies, analysis workflows, scRNA-seq preprocessing and QC
10:00 – 10:30 AM Introduction to single cell technologies and applications (Mike Kelly)
10:30 – 11:00 AM Overview of single cell transcriptomic analysis workflow and pipelines (Yongmei Zhao)
11:05 – 12:00 PM scRNA-seq preprocessing and quality control (Vicky Chen, Nathan Wong)
1:00 – 2:00 PM Clustering analysis, dimensionality reduction, marker gene identification, and visualization (Cihan Oguz)
2:00 - 3:00 PM Single cell RNA-seq cell type classification and annotation (Keyur Talsania)
If unable to join in person, WebEx will be provided.
Meeting number (access code): 737 705 057
Meeting password: rPMv3Gf@
Thursday, October 3, 2019
10:00 am | (UTC-05:00) Eastern Time (US & Canada) | 5 hrs
Join
Join by phone
Tap to call in from a mobile device (attendees only)
1-650-479-3207 Call-in toll number (US/Canada)
Join from a video system or application
Dial 737705057@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join using Microsoft Lync or Microsoft Skype for Business
Dial 737705057.cbiit@lync.webex.com
The link to the WebEx recording of this lecture is here:
https://cbiit.webex.com/webappng/sites/cbiit/recording/play/c307ef564e4246bba1a7316fed14fea3
RegisterOrganizerBTEPWhenThu, Oct 03, 2019 - 10:00 am - 3:00 pmWhereBuilding 37 Room 4041/4107 |
Overview of single cell technologies, analysis workflows, scRNA-seq preprocessing and QC 10:00 – 10:30 AM Introduction to single cell technologies and applications (Mike Kelly) 10:30 – 11:00 AM Overview of single cell transcriptomic analysis workflow and pipelines (Yongmei Zhao) 11:05 – 12:00 PM scRNA-seq preprocessing and quality control (Vicky Chen, Nathan Wong) 1:00 – 2:00 PM Clustering analysis, dimensionality reduction, marker gene identification, and visualization (Cihan Oguz) 2:00 - 3:00 PM Single cell RNA-seq cell type classification and annotation (Keyur Talsania) If unable to join in person, WebEx will be provided. Meeting number (access code): 737 705 057 Meeting password: rPMv3Gf@ Thursday, October 3, 2019 10:00 am | (UTC-05:00) Eastern Time (US & Canada) | 5 hrs Join Join by phone Tap to call in from a mobile device (attendees only) 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 737705057@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join using Microsoft Lync or Microsoft Skype for Business Dial 737705057.cbiit@lync.webex.com The link to the WebEx recording of this lecture is here: https://cbiit.webex.com/webappng/sites/cbiit/recording/play/c307ef564e4246bba1a7316fed14fea3 | 2019-10-03 10:00:00 | Building 37 Room 4041/4107 | Single Cell RNA-seq | In-Person | Yongmei Zhao (CCR-SF IFX Group),Michael Kelly (SCAF),Cihan Oguz (NCBR),Vicky Chen (NCBR),Nathan Wong (CCBR) | BTEP | 0 | BTEP: Single Cell RNA Seq Analysis Workshop, Part 1 | ||
245 |
DescriptionDetailsWhenTue, Oct 08, 2019 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/8886c763adae49208aafbca48357d02a/playback | 2019-10-08 12:00:00 | In-Person | 0 | Introduction to Gene Set Enrichment Analysis (GSEA) and Molecular Signatures Database | ||||||
889 |
Description
Multiple sample analysis, data integration across multiple experiments, and technologies
10:00 – 11:00 AM scRNA-seq batch effect correction, differential analysis, gene set enrichment and network analysis (Abdalla Abdelmaksoud, Vicky Chen)
11:05 – 12:00 PM Trajectory analysis (Abdalla Abdelmaksoud)
1:00 – 2:30 PM Single cell integrative analysis from multiple technologies (CITE-seq, cell hashing, VDJ analysis, scATAC-seq) (Nathan Wong, Cihan Oguz, and Keyur Talsania)
2:30 - 3:00 PM Panel Discussion (Q & A)
If unable to join in person, WebEx will be provided.
Meeting number (access ...Read More
Multiple sample analysis, data integration across multiple experiments, and technologies
10:00 – 11:00 AM scRNA-seq batch effect correction, differential analysis, gene set enrichment and network analysis (Abdalla Abdelmaksoud, Vicky Chen)
11:05 – 12:00 PM Trajectory analysis (Abdalla Abdelmaksoud)
1:00 – 2:30 PM Single cell integrative analysis from multiple technologies (CITE-seq, cell hashing, VDJ analysis, scATAC-seq) (Nathan Wong, Cihan Oguz, and Keyur Talsania)
2:30 - 3:00 PM Panel Discussion (Q & A)
If unable to join in person, WebEx will be provided.
Meeting number (access code): 732 159 036
Meeting password: 44iZDNP*
Thursday, October 10, 2019
10:00 am | (UTC-05:00) Eastern Time (US & Canada) | 5 hrs
Join
Join by phone
Tap to call in from a mobile device (attendees only)
1-650-479-3207 Call-in toll number (US/Canada)
Join from a video system or application
Dial 732159036@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join using Microsoft Lync or Microsoft Skype for Business
Dial 732159036.cbiit@lync.webex.com
The link to the WebEx recording of this event is here:
https://cbiit.webex.com/webappng/sites/cbiit/recording/play/7321cf28c97346b8a0b6dc258a0d40a8
RegisterOrganizerBTEPWhenThu, Oct 10, 2019 - 10:00 am - 3:00 pmWhereBuilding 37 Room 4041/4107 |
Multiple sample analysis, data integration across multiple experiments, and technologies 10:00 – 11:00 AM scRNA-seq batch effect correction, differential analysis, gene set enrichment and network analysis (Abdalla Abdelmaksoud, Vicky Chen) 11:05 – 12:00 PM Trajectory analysis (Abdalla Abdelmaksoud) 1:00 – 2:30 PM Single cell integrative analysis from multiple technologies (CITE-seq, cell hashing, VDJ analysis, scATAC-seq) (Nathan Wong, Cihan Oguz, and Keyur Talsania) 2:30 - 3:00 PM Panel Discussion (Q & A) If unable to join in person, WebEx will be provided. Meeting number (access code): 732 159 036 Meeting password: 44iZDNP* Thursday, October 10, 2019 10:00 am | (UTC-05:00) Eastern Time (US & Canada) | 5 hrs Join Join by phone Tap to call in from a mobile device (attendees only) 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 732159036@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join using Microsoft Lync or Microsoft Skype for Business Dial 732159036.cbiit@lync.webex.com The link to the WebEx recording of this event is here: https://cbiit.webex.com/webappng/sites/cbiit/recording/play/7321cf28c97346b8a0b6dc258a0d40a8 | 2019-10-10 10:00:00 | Building 37 Room 4041/4107 | Single Cell RNA-seq | In-Person | Cihan Oguz (NCBR),Vicky Chen (NCBR),Nathan Wong (CCBR), | BTEP | 0 | BTEP: Single Cell RNA Seq Analysis Workshop, Part II | ||
880 |
Description
This lecture will briefly review the steps involved in data analysis and how study design, hypothesis, and type of data and their distributions contribute to the choice of statistical tests. Statistical tests are used to determine the presence and strength of a relationship between independent and outcome variables. The basic concepts around the use and interpretation of the following statistical tests will be covered: chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, ...Read More
This lecture will briefly review the steps involved in data analysis and how study design, hypothesis, and type of data and their distributions contribute to the choice of statistical tests. Statistical tests are used to determine the presence and strength of a relationship between independent and outcome variables. The basic concepts around the use and interpretation of the following statistical tests will be covered: chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and non-parametric tests.
This class will be taught by Ninet Sinaii, PhD, MPH, NIH Clinical Center's Biostatistics and Clinical Epidemiology Service.
This meeting will also be available via WebEx.
Meeting number (access code): 736 785 528
Meeting password: 5MppT5b@
Friday, October 11, 2019
9:00 am | (UTC-05:00) Eastern Time (US & Canada) | 3 hrs
Join
Join by phone
Tap to call in from a mobile device (attendees only)
1-650-479-3207 Call-in toll number (US/Canada)
Join from a video system or application
Dial 736785528@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join using Microsoft Lync or Microsoft Skype for Business
Dial 736785528.cbiit@lync.webex.com
The link to the WebEx recording of this lecture is:
https://cbiit.webex.com/webappng/sites/cbiit/recording/play/a4e97d58e3b043298767a36a88a753c2
RegisterOrganizerBTEPWhenFri, Oct 11, 2019 - 9:00 am - 12:00 pmWhereBldg 37, Rm 2041/2107 |
This lecture will briefly review the steps involved in data analysis and how study design, hypothesis, and type of data and their distributions contribute to the choice of statistical tests. Statistical tests are used to determine the presence and strength of a relationship between independent and outcome variables. The basic concepts around the use and interpretation of the following statistical tests will be covered: chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and non-parametric tests. This class will be taught by Ninet Sinaii, PhD, MPH, NIH Clinical Center's Biostatistics and Clinical Epidemiology Service. This meeting will also be available via WebEx. Meeting number (access code): 736 785 528 Meeting password: 5MppT5b@ Friday, October 11, 2019 9:00 am | (UTC-05:00) Eastern Time (US & Canada) | 3 hrs Join Join by phone Tap to call in from a mobile device (attendees only) 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 736785528@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join using Microsoft Lync or Microsoft Skype for Business Dial 736785528.cbiit@lync.webex.com The link to the WebEx recording of this lecture is: https://cbiit.webex.com/webappng/sites/cbiit/recording/play/a4e97d58e3b043298767a36a88a753c2 | 2019-10-11 09:00:00 | Bldg 37,Rm 2041/2107 | In-Person | Ninet Sinaii Ph.D. MPH (Biostatistics and Clinical Epidemiology Branch NIH Clinical Center) | BTEP | 0 | BTEP: Overview of Common Statistical Tests | |||
246 |
DescriptionDetailsWhenTue, Oct 15, 2019 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/a6e14c8eafae40d9936f9d13b3e4cf97/playback | 2019-10-15 12:00:00 | In-Person | 0 | Introduction to Integrative Genomics Robust iDentification of cancer subgroups (InGRiD) | ||||||
868 |
Description
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
RegisterOrganizerBTEPWhenThu, Oct 17, 2019 - 12:00 pm - 3:00 pmWhereNIH Bethesda B37 Rm 4041/4107 |
Drop-in anytime during the session. Bring your own computer. Before coming to class, download a tool for transferring files. For Windows PC, suggested tool is WinScp. 2. For Mac, suggested tool is Filezilla. 3. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html BTEP personnel will be available to answer questions about: Working at the Unix command line on Biowulf Finding, understanding and moving your data Tools available to CCR personnel for RNA-seq data analysis | 2019-10-17 12:00:00 | NIH Bethesda B37 Rm 4041/4107 | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP: NIH, Hands-on, drop-in session on Unix/Biowulf and RNA-Seq | |||
886 |
Description
Please note class will start at 10 AM and end at 12 noon. Thank you!
Attention: This class is limited to 28 people due to the size of the room. Please add your name to the waiting list if you would like another training scheduled.
Hands On Training on Bulk RNA-Seq Data Analysis in Partek Flow
Please bring your own computer for this hands-on training. If you need to ...Read More
Please note class will start at 10 AM and end at 12 noon. Thank you!
Attention: This class is limited to 28 people due to the size of the room. Please add your name to the waiting list if you would like another training scheduled.
Hands On Training on Bulk RNA-Seq Data Analysis in Partek Flow
Please bring your own computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov
Abstract: Students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for RNA-Seq analysis:
- Import data from .fastq files
- Perform QA/QC (Pre-alignment QA/QC, Post-alignment QA/QC)
- Trim bases
- Align reads to reference genome
- Quantify gene/transcript abundance
- Normalize gene counts
- Detect differentially expressed genes
- Filter a gene list
- Identify enriched KEGG pathway and/or GO terms
- Visualization:
RegisterOrganizerBTEPWhenWed, Oct 23, 2019 - 10:00 am - 12:00 pmWhereBldg 10 FAES room 4 (B1C205) |
Please note class will start at 10 AM and end at 12 noon. Thank you! Attention: This class is limited to 28 people due to the size of the room. Please add your name to the waiting list if you would like another training scheduled. Hands On Training on Bulk RNA-Seq Data Analysis in Partek Flow Please bring your own computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov Abstract: Students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for RNA-Seq analysis: - Import data from .fastq files - Perform QA/QC (Pre-alignment QA/QC, Post-alignment QA/QC) - Trim bases - Align reads to reference genome - Quantify gene/transcript abundance - Normalize gene counts - Detect differentially expressed genes - Filter a gene list - Identify enriched KEGG pathway and/or GO terms - Visualization: Heat maps Volcano plots PCA scatterplot Dot plots Hierarchical clustering Chromosome view And more If you are unable to attend in person, WebEx will be provided. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m4ddd63165233af6473f4ce950642aecc Meeting number: 738 100 303 Password: AcCxyy$5 Host key: 544130 More ways to join Join by video system Dial 738100303@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 738 100 303 | 2019-10-23 10:00:00 | Bldg 10 FAES room 4 (B1C205) | Bulk RNA-seq | In-Person | Xiaowen Wang (Partek) | BTEP | 0 | BTEP: Bulk RNA Seq Analysis with Partek Flow | ||
887 |
Description
Please note class will start at 1:30 PM and end at 3:30 PM.
Hands On Training on Single Cell RNA-Seq Data Analysis in Partek Flow
Please bring your own computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov
Abstract: Students will learn how to identify cell populations and detect differentially expressed genes in a simple Single ...Read More
Please note class will start at 1:30 PM and end at 3:30 PM.
Hands On Training on Single Cell RNA-Seq Data Analysis in Partek Flow
Please bring your own computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov
Abstract: Students will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow:
- Import data
- Filter cells using interactive QA/QC charts
- Filter and normalize Single Cell RNA-Seq data
- Visualize cell populations using the interactive 3D t-SNE plot
- Overlay gene expression and pathway signatures on the 3D t-SNE plot
- Select and classify cells on the 3D t-SNE plot
- Detect differentially expressed genes
- Filter a gene list
- Identify enriched KEGG pathway and/or GO terms
- Visualize cell-level results using heat maps, volcano plots, and violin plots
If you are unable to attend in person WebEx will be available:
Meeting link:
https://cbiit.webex.com/cbiit/j.php?MTID=m93cd8514270a1242d230b21a8379fb2f
Meeting number: 737 711 601
Password: Cxjjjq@3
Host key: 696480
More ways to join
Join by video system
Dial 737711601@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in number (US/Canada)
Access code: 737 711 601
RegisterOrganizerBTEPWhenWed, Oct 23, 2019 - 1:30 pm - 3:30 pmWhereBldg 10 FAES room 4 (B1C205) |
Please note class will start at 1:30 PM and end at 3:30 PM. Hands On Training on Single Cell RNA-Seq Data Analysis in Partek Flow Please bring your own computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov Abstract: Students will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow: - Import data - Filter cells using interactive QA/QC charts - Filter and normalize Single Cell RNA-Seq data - Visualize cell populations using the interactive 3D t-SNE plot - Overlay gene expression and pathway signatures on the 3D t-SNE plot - Select and classify cells on the 3D t-SNE plot - Detect differentially expressed genes - Filter a gene list - Identify enriched KEGG pathway and/or GO terms - Visualize cell-level results using heat maps, volcano plots, and violin plots If you are unable to attend in person WebEx will be available: Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m93cd8514270a1242d230b21a8379fb2f Meeting number: 737 711 601 Password: Cxjjjq@3 Host key: 696480 More ways to join Join by video system Dial 737711601@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 737 711 601 | 2019-10-23 13:30:00 | Bldg 10 FAES room 4 (B1C205) | Single Cell RNA-seq | In-Person | Xiaowen Wang (Partek) | BTEP | 0 | BTEP: Single Cell RNA Seq Analysis with Partek Flow | ||
878 |
Description
** Registration is not necessary for members of the public**NIH employees please register**Thank you**
Re-assessing the Human Gene Catalog and the Human Genome: How much are we missing?
Steven L. Salzberg, Ph.D.
Bloomberg Distinguished Professor of Biomedical Engineering, Computer Science, and Biostatistics
Director, Center for Computational Biology, Johns Hopkins University
http://salzberg-lab.org
How many genes do we have? The Human Genome Project was launched ...Read More
** Registration is not necessary for members of the public**NIH employees please register**Thank you**
Re-assessing the Human Gene Catalog and the Human Genome: How much are we missing?
Steven L. Salzberg, Ph.D.
Bloomberg Distinguished Professor of Biomedical Engineering, Computer Science, and Biostatistics
Director, Center for Computational Biology, Johns Hopkins University
http://salzberg-lab.org
How many genes do we have? The Human Genome Project was launched with the promise of revealing all of our genes, the “code” that would help explain our biology. The publication of the human genome in 2001 provided only a very rough answer to this question. For more than a decade following, the number of protein-coding genes steadily shrank, but the introduction of RNA sequencing revealed a vast new world of splice variants and RNA genes. In this talk, I will review where we’ve been and where we are today, and I will describe our use of an unprecedentedly large RNA sequencing resource to create a comprehensive new human gene catalog, containing thousands of novel genes and gene variants. I'll then turn to the genome itself, and discuss how we've found, through the assembly of 910 individuals of African descent, that the human reference genome is missing nearly 300 million bases that are present in some members of the population.
This talk describes joint work with Mihaela Pertea, Rachel Sherman, Alaina Shumate, Ales Varabyou, and Geo Pertea.
This talk will be video cast live and archived at https://videocast.nih.gov/summary.asp?live=34578
RegisterOrganizerBTEPWhenThu, Oct 24, 2019 - 1:00 pm - 3:00 pmWhereLipsett Auditorium |
** Registration is not necessary for members of the public**NIH employees please register**Thank you** Re-assessing the Human Gene Catalog and the Human Genome: How much are we missing? Steven L. Salzberg, Ph.D. Bloomberg Distinguished Professor of Biomedical Engineering, Computer Science, and Biostatistics Director, Center for Computational Biology, Johns Hopkins University http://salzberg-lab.org How many genes do we have? The Human Genome Project was launched with the promise of revealing all of our genes, the “code” that would help explain our biology. The publication of the human genome in 2001 provided only a very rough answer to this question. For more than a decade following, the number of protein-coding genes steadily shrank, but the introduction of RNA sequencing revealed a vast new world of splice variants and RNA genes. In this talk, I will review where we’ve been and where we are today, and I will describe our use of an unprecedentedly large RNA sequencing resource to create a comprehensive new human gene catalog, containing thousands of novel genes and gene variants. I'll then turn to the genome itself, and discuss how we've found, through the assembly of 910 individuals of African descent, that the human reference genome is missing nearly 300 million bases that are present in some members of the population. This talk describes joint work with Mihaela Pertea, Rachel Sherman, Alaina Shumate, Ales Varabyou, and Geo Pertea. This talk will be video cast live and archived at https://videocast.nih.gov/summary.asp?live=34578 | 2019-10-24 13:00:00 | Lipsett Auditorium | In-Person | Steven Salzberg (JHU) | BTEP | 0 | BTEP: Steven Salzberg (JHU), Distinguished Speakers Seminar Series | |||
182 |
Description
https://videocast.nih.gov/summary.asp?live=34578
NIH Users please connect via VPN to view this video
Presenter:
Steven Salzberg, Ph.D.
Bloomberg Distinguished Professor of Biomedical Engineering, Computer Science and Biostatistics and Director of the Center for Computational Biology, Johns Hopkins University
https://videocast.nih.gov/summary.asp?live=34578
NIH Users please connect via VPN to view this video
Presenter:
Steven Salzberg, Ph.D.
Bloomberg Distinguished Professor of Biomedical Engineering, Computer Science and Biostatistics and Director of the Center for Computational Biology, Johns Hopkins University
DetailsWhenThu, Oct 24, 2019 - 1:00 pm - 2:00 pmWhereOnline |
https://videocast.nih.gov/summary.asp?live=34578 NIH Users please connect via VPN to view this video Presenter: Steven Salzberg, Ph.D. Bloomberg Distinguished Professor of Biomedical Engineering, Computer Science and Biostatistics and Director of the Center for Computational Biology, Johns Hopkins University | 2019-10-24 13:00:00 | Online | 0 | Re-assessing the Human Gene Catalog and Human Genome: How Much Are we Missing? | ||||||
247 |
DescriptionDetailsWhenTue, Oct 29, 2019 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/755c6514ffb7499f9ca8db00a108a3a2/playback | 2019-10-29 12:00:00 | In-Person | 0 | Introduction to the Cancer Proteome Atlas | ||||||
874 |
Description
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
RegisterOrganizerBTEPWhenWed, Oct 30, 2019 - 9:00 am - 12:00 pmWhereFt. Detrick, Bldg. 549, 549B |
Drop-in anytime during the session. Bring your own computer. Before coming to class, download a tool for transferring files. For Windows PC, suggested tool is WinScp. 2. For Mac, suggested tool is Filezilla. 3. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html BTEP personnel will be available to answer questions about: Working at the Unix command line on Biowulf Finding, understanding and moving your data Tools available to CCR personnel for RNA-seq data analysis | 2019-10-30 09:00:00 | Ft. Detrick,Bldg. 549,549B | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP, Frederick: Hands-on, drop-in session on Unix/Biowulf and RNA-seq | |||
891 |
Description
This is a hands-on demo, please bring your laptop or let us know if you need to borrow one.
The field of genomics has matured to a stage where organizations are sequencing DNA at population scale. However, taking raw DNAseq data and transforming it into a format suitable for analysis has become the new bottleneck to genomic discovery. Typically, teams are gluing together a series of bioinformatics tools with custom scripts and processing data on ...Read More
This is a hands-on demo, please bring your laptop or let us know if you need to borrow one.
The field of genomics has matured to a stage where organizations are sequencing DNA at population scale. However, taking raw DNAseq data and transforming it into a format suitable for analysis has become the new bottleneck to genomic discovery. Typically, teams are gluing together a series of bioinformatics tools with custom scripts and processing data on single node machines, one sample at a time. Bioinformatics scientists are spending more time building and maintaining pipelines than modeling data. To ease the burden of analyzing population scale genomic data, a number of open-source bioinformatics tools have moved to use Apache Spark™, such as the GATK4, Hail, and ADAM, but mastering these tools is no easy task.
In this workshop, we’ll walkthrough how the Databricks Unified Analytics Platform for Genomics simplifies the end-to-end process of turning raw sequencing data into actionable insights at scale. Introduced by the original creators of Apache Spark, this platform makes it simple to deploy Spark-based bioinformatics tools on cloud computing, and rapidly accelerates common genomic analyses.
Join this half day technical workshop to learn how to
RegisterOrganizerBTEPWhenMon, Nov 04, 2019 - 11:00 am - 3:30 pmWhereBldg 60, Rathskeller |
This is a hands-on demo, please bring your laptop or let us know if you need to borrow one. The field of genomics has matured to a stage where organizations are sequencing DNA at population scale. However, taking raw DNAseq data and transforming it into a format suitable for analysis has become the new bottleneck to genomic discovery. Typically, teams are gluing together a series of bioinformatics tools with custom scripts and processing data on single node machines, one sample at a time. Bioinformatics scientists are spending more time building and maintaining pipelines than modeling data. To ease the burden of analyzing population scale genomic data, a number of open-source bioinformatics tools have moved to use Apache Spark™, such as the GATK4, Hail, and ADAM, but mastering these tools is no easy task. In this workshop, we’ll walkthrough how the Databricks Unified Analytics Platform for Genomics simplifies the end-to-end process of turning raw sequencing data into actionable insights at scale. Introduced by the original creators of Apache Spark, this platform makes it simple to deploy Spark-based bioinformatics tools on cloud computing, and rapidly accelerates common genomic analyses. Join this half day technical workshop to learn how to Call variants, both in a single sample and across multiple samples, using our accelerated GATK4 pipelines Use Spark SQL to characterize the association of variants in a population with phenotypes Use machine learning to model genome-wide disease risk across multiple variants associated with a phenotype of interest Key technologies employed: GATK4/Variant calling, Genotype-phenotype association tests, population scale risk-modeling via ML, ML model training/deployment AGENDA AT A GLANCE 11:00-11:45 Introduction and Opening Remarks 12:30-1:30 Workshop #1: Accelerating Variant Calls with Apache Spark 1:30-2:30 Workshop #2: Characterizing Genetic Variants with Spark SQL 2:30-3:30 Workshop #3: Disease Risk Scoring with Machine Learning If you are unable to attend in person, WebEx will be provided: Event address for attendees: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=eeb4e34e8558861862b5a716bb88c6c73 WebEx recording available at: https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/92d05e03bf1a4882b92ec73eab7a85a5 | 2019-11-04 11:00:00 | Bldg 60,Rathskeller | In-Person | James Stratton (DataBricks),Frank Nothaft (DataBricks) | BTEP | 0 | BTEP: Data Science Using Apache Spark for Biomedical Applications | |||
869 |
Description
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
RegisterOrganizerBTEPWhenTue, Nov 05, 2019 - 11:00 am - 2:00 pmWhereRm 2041/2107, NIH Bldg 37 |
Drop-in anytime during the session. Bring your own computer. Before coming to class, download a tool for transferring files. For Windows PC, suggested tool is WinScp. 2. For Mac, suggested tool is Filezilla. 3. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html BTEP personnel will be available to answer questions about: Working at the Unix command line on Biowulf Finding, understanding and moving your data Tools available to CCR personnel for RNA-seq data analysis | 2019-11-05 11:00:00 | Rm 2041/2107,NIH Bldg 37 | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP: NIH, Hands-on, drop-in session on Unix/Biowulf and RNA-Seq | |||
248 |
DescriptionDetailsWhenTue, Nov 05, 2019 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/d5a83a983b924f3dabe053dce439f754/playback | 2019-11-05 12:00:00 | In-Person | 0 | Introduction to UCSC Xena | ||||||
883 |
Description
Methods for Characterizing the Activity of Mutational Processes in Cancer
The cancer sequencing efforts of the past decade have revealed signatures of the mutational processes shaping cancer genomes. These mutational signatures provide a window into a tumor’s functional state and history, and thus provide new opportunities for identifying the mutations driving an individual’s cancer and for personalized medicine. While researchers have now collected >30 validated mutational signatures, challenges remain for understanding ...Read More
Methods for Characterizing the Activity of Mutational Processes in Cancer
The cancer sequencing efforts of the past decade have revealed signatures of the mutational processes shaping cancer genomes. These mutational signatures provide a window into a tumor’s functional state and history, and thus provide new opportunities for identifying the mutations driving an individual’s cancer and for personalized medicine. While researchers have now collected >30 validated mutational signatures, challenges remain for understanding the patterns of mutational signature activity. One such challenge is in characterizing signature etiology: many signatures have unknown etiology, while some similar signatures have different etiologies.
In this talk, we will present two probabilistic methods that begin to address these challenges. Inspired by research from natural language processing, the first method, TCSM, models mutational signature activity per tumor conditioned on observed metadata about the patient. We will show that TCSM outperforms standard methods at inferring mutational signature activity and for inferring clinically relevant DNA damage repair deficiencies in breast cancer. Next, we will present SigMa, the first model of mutational signature activity to account for sequence dependencies among clustered mutations. We use these inferred dependencies and associations with other genomic factors to reveal new insights into signature etiology. Finally, we will conclude by presenting ongoing work on ExploSig, a family of tools to enable biologists and data scientists to explore mutational signatures datasets in the browser and in interactive notebooks.
If the video fails to work you can download the video as a zip file from the Class Materials 2 link given below
[video width="1920" height="1080" mp4="https://btep.ccr.cancer.gov/wp-content/uploads/Max-Leiserson-BTEP.mp4"][/video]
RegisterOrganizerBTEPWhenTue, Nov 19, 2019 - 11:00 am - 12:00 pmWhereRm 2041/2107, NIH Bldg 37 |
Methods for Characterizing the Activity of Mutational Processes in Cancer The cancer sequencing efforts of the past decade have revealed signatures of the mutational processes shaping cancer genomes. These mutational signatures provide a window into a tumor’s functional state and history, and thus provide new opportunities for identifying the mutations driving an individual’s cancer and for personalized medicine. While researchers have now collected >30 validated mutational signatures, challenges remain for understanding the patterns of mutational signature activity. One such challenge is in characterizing signature etiology: many signatures have unknown etiology, while some similar signatures have different etiologies. In this talk, we will present two probabilistic methods that begin to address these challenges. Inspired by research from natural language processing, the first method, TCSM, models mutational signature activity per tumor conditioned on observed metadata about the patient. We will show that TCSM outperforms standard methods at inferring mutational signature activity and for inferring clinically relevant DNA damage repair deficiencies in breast cancer. Next, we will present SigMa, the first model of mutational signature activity to account for sequence dependencies among clustered mutations. We use these inferred dependencies and associations with other genomic factors to reveal new insights into signature etiology. Finally, we will conclude by presenting ongoing work on ExploSig, a family of tools to enable biologists and data scientists to explore mutational signatures datasets in the browser and in interactive notebooks. If the video fails to work you can download the video as a zip file from the Class Materials 2 link given below [video width="1920" height="1080" mp4="https://btep.ccr.cancer.gov/wp-content/uploads/Max-Leiserson-BTEP.mp4"][/video] | 2019-11-19 11:00:00 | Rm 2041/2107,NIH Bldg 37 | In-Person | BTEP | 0 | BTEP: Max Leiserson (UMD), Methods for Characterizing the Activity of Mutational Processes in Cancer | ||||
183 |
Description
https://btep.ccr.cancer.gov/wp-content/uploads/Max-Leiserson-BTEP.mp4?_=1
https://btep.ccr.cancer.gov/classes/max/
Presenter:
Max Leiserson, Ph.D.
Leiserson Research Group: https://lrgr.io
Assistant Professor, Dept. of Computer Science, University of Maryland College Park
https://btep.ccr.cancer.gov/wp-content/uploads/Max-Leiserson-BTEP.mp4?_=1
https://btep.ccr.cancer.gov/classes/max/
Presenter:
Max Leiserson, Ph.D.
Leiserson Research Group: https://lrgr.io
Assistant Professor, Dept. of Computer Science, University of Maryland College Park
DetailsWhenTue, Nov 19, 2019 - 11:00 am - 12:00 pmWhereOnline |
https://btep.ccr.cancer.gov/wp-content/uploads/Max-Leiserson-BTEP.mp4?_=1 https://btep.ccr.cancer.gov/classes/max/ Presenter: Max Leiserson, Ph.D. Leiserson Research Group: https://lrgr.io Assistant Professor, Dept. of Computer Science, University of Maryland College Park | 2019-11-19 11:00:00 | Online | Online | 0 | Methods for Characterizing the Activity of Mutational Processes in Cancer | |||||
875 |
Description
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
Drop-in anytime during the session. Bring your own computer. Before coming to class,
download a tool for transferring files.
RegisterOrganizerBTEPWhenWed, Nov 20, 2019 - 9:00 am - 12:00 pmWhereFt. Detrick, Bldg. 549, 549B |
Drop-in anytime during the session. Bring your own computer. Before coming to class, download a tool for transferring files. For Windows PC, suggested tool is WinScp. 2. For Mac, suggested tool is Filezilla. 3. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html BTEP personnel will be available to answer questions about: Working at the Unix command line on Biowulf Finding, understanding and moving your data Tools available to CCR personnel for RNA-seq data analysis Upcoming date: Dec 18, Weds, Ft. Detrick, 549 B, 9 AM – 12 PM | 2019-11-20 09:00:00 | Ft. Detrick,Bldg. 549,549B | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP, Frederick: Hands-on, drop-in session on Unix/Biowulf and RNA-Seq | |||
249 |
DescriptionDetailsWhenWed, Nov 20, 2019 - 3:00 pm - 4:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/faa203bfaa1648f19e82b0d3d01aa881/playback | 2019-11-20 15:00:00 | In-Person | 0 | An overview of the pivotal Genomatix software functionalities for promoter and gene network analysis | ||||||
870 |
Description
Drop-in anytime during the session. Please bring your government-issued computer. Before coming to class, download a tool for transferring files.
Drop-in anytime during the session. Please bring your government-issued computer. Before coming to class, download a tool for transferring files.
RegisterOrganizerBTEPWhenTue, Dec 03, 2019 - 1:00 pm - 4:00 pmWhereNIH Bldg 37, Rm 6107 |
Drop-in anytime during the session. Please bring your government-issued computer. Before coming to class, download a tool for transferring files. For Windows PC, suggested tool is WinScp. 2. For Mac, suggested tool is Filezilla. 3. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html Go to the section "Alternative Binary Files" and download 64 bit putty.exe BTEP personnel will be available to answer questions about: Working at the Unix command line on Biowulf Finding, understanding and moving your data Tools available to CCR personnel for RNA-seq data analysis | 2019-12-03 13:00:00 | NIH Bldg 37,Rm 6107 | Bulk RNA-seq | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP: NIH, Hands-on, drop-in session on Unix/Biowulf and RNA-Seq | ||
250 |
DescriptionDetailsWhenTue, Dec 03, 2019 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/90dd9528cd6a46e2b528a293779427f1/playback | 2019-12-03 14:00:00 | In-Person | 0 | Introduction to cBioPortal for Cancer Genomics | ||||||
892 |
Description
Please bring a laptop. If you need to borrow a laptop please contact ncibtep@nih.gov
No software installation is needed as this program will run on a web browser.
iCn3D provides a powerful, web-based platform to visualize and analyze proteins complexes in 1D (sequence) and 3D(structure), from single domains through large viruses. This hands-on training is geared towards non-expert users with no to little knowledge in protein structure, or experienced users that ...Read More
Please bring a laptop. If you need to borrow a laptop please contact ncibtep@nih.gov
No software installation is needed as this program will run on a web browser.
iCn3D provides a powerful, web-based platform to visualize and analyze proteins complexes in 1D (sequence) and 3D(structure), from single domains through large viruses. This hands-on training is geared towards non-expert users with no to little knowledge in protein structure, or experienced users that do not know iCn3D. We will learn how to use it for 3D visualization, interactive protein structure analysis, visualization of SNPs on 3D structure, and sharing annotations with collaborators.
Agenda:
2:30-3:45, Hitting the road running on protein structure analysis
RegisterOrganizerBTEPWhenTue, Dec 10, 2019 - 2:30 pm - 4:30 pmWhereBuilding 37 Room 4041/4107 |
Please bring a laptop. If you need to borrow a laptop please contact ncibtep@nih.gov No software installation is needed as this program will run on a web browser. iCn3D provides a powerful, web-based platform to visualize and analyze proteins complexes in 1D (sequence) and 3D(structure), from single domains through large viruses. This hands-on training is geared towards non-expert users with no to little knowledge in protein structure, or experienced users that do not know iCn3D. We will learn how to use it for 3D visualization, interactive protein structure analysis, visualization of SNPs on 3D structure, and sharing annotations with collaborators. Agenda: 2:30-3:45, Hitting the road running on protein structure analysis Analysis of the T-cell receptor complex structure that was recently solved (TCRɑβ/CD3εσ/CD3εδ/CD3ζ, PDB ID 6JXR, https://www.ncbi.nlm.nih.gov/Structure/pdb/6JXR) Look at P53 and P53-DNA interactions (PDB ID 1TUP, https://www.ncbi.nlm.nih.gov/Structure/pdb/1TUP), map SNPs from dbSNP and ClinVar and look at potential SNPs disruptions of key interactions. 4:00-4:30, Play with the protein of your choice Reference/Documentation on iCn3D paper: http://dx.doi.org/10.1093/bioinformatics/btz502 documentation: https://www.ncbi.nlm.nih.gov/Structure/icn3d/docs/icn3d_help.html If you are unable to attend in person, WebEx will be provided: https://cbiit.webex.com/cbiit/j.php?MTID=m375cb4351aefde1b93ae4dc3b9dbbfda | 2019-12-10 14:30:00 | Building 37 Room 4041/4107 | In-Person | Philippe Youkharibache (NCI),Tom Madej (NCBI) | BTEP | 0 | BTEP: Interactive 3D Protein Structure Analysis with iCn3D | |||
893 |
Description
Hands On Training on Single Cell RNA-Seq Data Analysis in Partek Flow
Please bring your own computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov
Hands on training on the new data visualization tool in Partek Flow – Data Viewer, using a Single Cell RNA-Seq data set as an example. The newly implemented and released Data Viewer ...Read More
Hands On Training on Single Cell RNA-Seq Data Analysis in Partek Flow
Please bring your own computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov
Hands on training on the new data visualization tool in Partek Flow – Data Viewer, using a Single Cell RNA-Seq data set as an example. The newly implemented and released Data Viewer in Partek Flow provides more flexible and easy ways to integrate information collected from the data, which helps biologists discover biological meanings.
Agenda:
RegisterOrganizerBTEPWhenWed, Dec 11, 2019 - 1:00 pm - 4:00 pmWhereFAES Room 2 – B1C209 |
Hands On Training on Single Cell RNA-Seq Data Analysis in Partek Flow Please bring your own computer for this hands-on training. If you need to borrow a computer please email ncibtep@nih.gov Hands on training on the new data visualization tool in Partek Flow – Data Viewer, using a Single Cell RNA-Seq data set as an example. The newly implemented and released Data Viewer in Partek Flow provides more flexible and easy ways to integrate information collected from the data, which helps biologists discover biological meanings. Agenda: Overview on the new Partek Flow Data Viewer Hand On Session on Single Cell RNA-Seq Analysis using the new Data Viewer Import count matrix Single cell QC Filter and Normalization Dimension reduction (PCA, tSNE, UMAP) Identify subpopulation with newly released Data Viewer Differential expression detection Visualizations (scatterplot, violin plot, volcano plot, box plot, histogram etc.) Biological interpretation Q/A If you are unable to attend in person WebEx will be available: Meeting number (access code): 734 351 875 Meeting password: 6JiNF8B@ Wednesday, December 11, 2019 1:00 pm | (UTC-05:00) Eastern Time (US & Canada) | 3 hrs Join meeting Join by phone Tap to call in from a mobile device (attendees only) 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 734351875@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join using Microsoft Lync or Microsoft Skype for Business Dial 734351875.cbiit@lync.webex.com | 2019-12-11 13:00:00 | FAES Room 2 – B1C209 | Single Cell RNA-seq | In-Person | Xiaowen Wang (Partek) | BTEP | 0 | BTEP: Single Cell RNA-Seq Analysis with Partek Flow | ||
251 |
DescriptionDetailsWhenFri, Dec 13, 2019 - 3:00 pm - 4:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/3b0378fb09f24894bed50f0311400043/playback | 2019-12-13 15:00:00 | In-Person | 0 | Introduction to Geneious Prime | ||||||
876 |
Description
THIS EVENT HAS BEEN CANCELLED
Drop-in anytime during the session. Bring your own computer. Before coming to class, download a tool for transferring files.
THIS EVENT HAS BEEN CANCELLED
Drop-in anytime during the session. Bring your own computer. Before coming to class, download a tool for transferring files.
RegisterOrganizerBTEPWhenWed, Dec 18, 2019 - 9:00 am - 12:00 pmWhereFt. Detrick, Bldg. 549, 549B |
THIS EVENT HAS BEEN CANCELLEDDrop-in anytime during the session. Bring your own computer. Before coming to class, download a tool for transferring files. For Windows PC, suggested tool is WinScp. 2. For Mac, suggested tool is Filezilla. 3. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html We will be covering the following topics: Unix bootcamp – learn to navigate a Unix file system and move, copy, and edit files Looking at the quality of your sequence data with FastQC and MultiQC Trimming sequences with CutAdapt | 2019-12-18 09:00:00 | Ft. Detrick,Bldg. 549,549B | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP, Frederick: Hands-on, drop-in session on Unix/Biowulf and RNA-seq - CANCELLED | |||
894 |
Description
Drop-in anytime during the session. Bring your government-issued computer. Before coming to class, download a tool for transferring files.
Drop-in anytime during the session. Bring your government-issued computer. Before coming to class, download a tool for transferring files.
RegisterOrganizerBTEPWhenThu, Dec 19, 2019 - 9:00 am - 12:00 pmWhere549A |
Drop-in anytime during the session. Bring your government-issued computer. Before coming to class, download a tool for transferring files. For Windows PC, suggested tool is WinScp. 2. For Mac, suggested tool is Filezilla. 3. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html Go to the section "Alternative Binary Files" and download 64 bit putty.exe BTEP personnel will be available to answer questions about: Working at the Unix command line on Biowulf Finding, understanding and moving your data Tools available to CCR personnel for RNA-seq data analysis | 2019-12-19 09:00:00 | 549A | Bulk RNA-seq | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | BTEP, Frederick: Hands-on drop-in session for Unix/Biowulf and RNA-Seq | ||
42 |
Description
This course covers the fundamentals of building IT infrastructure on the AWS platform. Students learn how to optimize the AWS Cloud by understanding how AWS services fit into cloud-based solutions. In addition, students explore AWS Cloud best practices and design patterns for architecting optimal IT solutions on AWS, and build a variety of infrastructures in guided, hands-on activities. The course also covers how to create fledgling architectures and build them into robust and adaptive solutions.
...Read More
This course covers the fundamentals of building IT infrastructure on the AWS platform. Students learn how to optimize the AWS Cloud by understanding how AWS services fit into cloud-based solutions. In addition, students explore AWS Cloud best practices and design patterns for architecting optimal IT solutions on AWS, and build a variety of infrastructures in guided, hands-on activities. The course also covers how to create fledgling architectures and build them into robust and adaptive solutions.
Course Objectives
In this course, you will learn to:
Make architectural decisions based on AWS architectural principles and best practices
Leverage AWS services to make your infrastructure scalable, reliable, and highly available
Leverage AWS Managed Services to enable greater flexibility and resiliency in an infrastructure
Make an AWS-based infrastructure more efficient to increase performance and reduce costs
Use the Well-Architected Framework to improve architectures with AWS solutions
Intended Audience
This course is intended for:
Solutions architects
Solution design engineers
DetailsOrganizerNIH Training LibraryWhenMon, Jan 06 - Wed, Jan 08, 2020 -9:00 am - 5:00 pmWhereIn-Person |
This course covers the fundamentals of building IT infrastructure on the AWS platform. Students learn how to optimize the AWS Cloud by understanding how AWS services fit into cloud-based solutions. In addition, students explore AWS Cloud best practices and design patterns for architecting optimal IT solutions on AWS, and build a variety of infrastructures in guided, hands-on activities. The course also covers how to create fledgling architectures and build them into robust and adaptive solutions. Course Objectives In this course, you will learn to: Make architectural decisions based on AWS architectural principles and best practices Leverage AWS services to make your infrastructure scalable, reliable, and highly available Leverage AWS Managed Services to enable greater flexibility and resiliency in an infrastructure Make an AWS-based infrastructure more efficient to increase performance and reduce costs Use the Well-Architected Framework to improve architectures with AWS solutions Intended Audience This course is intended for: Solutions architects Solution design engineers | 2020-01-06 09:00:00 | In-Person | NIH Training Library | 0 | Architecting with Amazon Web Services (AWS) | |||||
45 |
Description
The CIViC knowledgebase (www.civicdb.org) is an open access, open source, community-driven resource for Clinical Interpretation of Variants in Cancer. The goal of CIViC is to enable precision medicine by providing an educational forum for dissemination of knowledge and active discussion of the clinical significance of cancer genome alterations. The knowledgebase leverages public curation and expert moderation to create a free resource that compiles, annotates, and distributes published cancer variant knowledge to the community. ...Read More
The CIViC knowledgebase (www.civicdb.org) is an open access, open source, community-driven resource for Clinical Interpretation of Variants in Cancer. The goal of CIViC is to enable precision medicine by providing an educational forum for dissemination of knowledge and active discussion of the clinical significance of cancer genome alterations. The knowledgebase leverages public curation and expert moderation to create a free resource that compiles, annotates, and distributes published cancer variant knowledge to the community. Identifying and cataloging curated clinical variant knowledge in the peer-reviewed published literature for rapid searching, evaluation, dissemination, and integration into other resources enables clinical cancer variant analysis. The database can be accessed without restrictions through a user-friendly interface, via a flexible public API, or the CIViCpy Software Development Kit. All data is available without login, but curation and other functions such as commenting, flagging, and suggesting changes requires users to create a free CIViC account. The history of all curation and revision in CIViC is viewable on the web interface. Selected, expert editors review and revise submitted content, which is labeled as accepted after complete moderation. All content in CIViC adheres to a structured data model, which incorporates ontologies, standards and guidelines from across the field to promote interoperability and compatibility with other efforts. CIViC currently has a community of over 190 curators and 16,000 clinical and research users around the world.
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancer.gov
DetailsOrganizerCBIITWhenTue, Jan 07, 2020 - 12:30 pm - 1:30 pmWhereIn-Person |
The CIViC knowledgebase (www.civicdb.org) is an open access, open source, community-driven resource for Clinical Interpretation of Variants in Cancer. The goal of CIViC is to enable precision medicine by providing an educational forum for dissemination of knowledge and active discussion of the clinical significance of cancer genome alterations. The knowledgebase leverages public curation and expert moderation to create a free resource that compiles, annotates, and distributes published cancer variant knowledge to the community. Identifying and cataloging curated clinical variant knowledge in the peer-reviewed published literature for rapid searching, evaluation, dissemination, and integration into other resources enables clinical cancer variant analysis. The database can be accessed without restrictions through a user-friendly interface, via a flexible public API, or the CIViCpy Software Development Kit. All data is available without login, but curation and other functions such as commenting, flagging, and suggesting changes requires users to create a free CIViC account. The history of all curation and revision in CIViC is viewable on the web interface. Selected, expert editors review and revise submitted content, which is labeled as accepted after complete moderation. All content in CIViC adheres to a structured data model, which incorporates ontologies, standards and guidelines from across the field to promote interoperability and compatibility with other efforts. CIViC currently has a community of over 190 curators and 16,000 clinical and research users around the world. The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancer.gov | 2020-01-07 12:30:00 | In-Person | CBIIT | 0 | Clinical Interpretation of Variants in Cancer (CIViC) Knowledgebase | |||||
46 |
Description
Description
In this course, learn how to solve a real-world use case with machine learning and produce actionable results using Amazon SageMaker. This course teaches you how to use Amazon SageMaker to cover the different stages of the typical data science process, from analyzing and visualizing a data set, to preparing the data and feature engineering, down to the practical aspects of model building, training, tuning and deployment.
Intended Audience
This course is intended for:
• ...Read More
Description
In this course, learn how to solve a real-world use case with machine learning and produce actionable results using Amazon SageMaker. This course teaches you how to use Amazon SageMaker to cover the different stages of the typical data science process, from analyzing and visualizing a data set, to preparing the data and feature engineering, down to the practical aspects of model building, training, tuning and deployment.
Intended Audience
This course is intended for:
• Data science practitioners
• Machine learning practitioners
• Developers and engineers
• Systems architects
Course Objectives
In this course, you will learn how to:
• Apply Amazon SageMaker to a specific use case and dataset
• Practice all the steps of the typical data science process
• Visualize and understand the dataset
• Explore how the attributes of the dataset relate to each other
• Prepare the dataset for training
• Use built-in algorithms
• Train models with Amazon SageMaker using built-in algorithms
• Explore results and performance of the model, and demonstrate how it can be tuned and
executed outside of SageMaker
• Run predictions on a batch of data with Amazon SageMaker
• Deploy a model to an endpoint in Amazon SageMaker for real-time predictions
• Learn how to configure an endpoint for serving predictions at scale
• Understand Hyperparameter Optimization (HPO) with Amazon SageMaker to find optimal
model parameters
• Understand how to perform A/B model testing using Amazon SageMaker
• Perform the domain-specific cost of errors analysis to further tune the model threshold in
order to maximize model utility expressed in financial terms
Prerequisites
We recommend that attendees of this course have the following prerequisites:
• Experience with Python programming language
• Familiarity with NumPy and Pandas Python libraries is a plus
• Familiarity with fundamental machine learning algorithms
• Familiarity with productionizing machine learning models
Delivery Method
This course is delivered through [a mix of]:
• Hands-on labs
DetailsWhenThu, Jan 09, 2020 - 9:00 am - 5:00 pmWhereIn-Person |
Description In this course, learn how to solve a real-world use case with machine learning and produce actionable results using Amazon SageMaker. This course teaches you how to use Amazon SageMaker to cover the different stages of the typical data science process, from analyzing and visualizing a data set, to preparing the data and feature engineering, down to the practical aspects of model building, training, tuning and deployment. Intended Audience This course is intended for: • Data science practitioners • Machine learning practitioners • Developers and engineers • Systems architects Course Objectives In this course, you will learn how to: • Apply Amazon SageMaker to a specific use case and dataset • Practice all the steps of the typical data science process • Visualize and understand the dataset • Explore how the attributes of the dataset relate to each other • Prepare the dataset for training • Use built-in algorithms • Train models with Amazon SageMaker using built-in algorithms • Explore results and performance of the model, and demonstrate how it can be tuned and executed outside of SageMaker • Run predictions on a batch of data with Amazon SageMaker • Deploy a model to an endpoint in Amazon SageMaker for real-time predictions • Learn how to configure an endpoint for serving predictions at scale • Understand Hyperparameter Optimization (HPO) with Amazon SageMaker to find optimal model parameters • Understand how to perform A/B model testing using Amazon SageMaker • Perform the domain-specific cost of errors analysis to further tune the model threshold in order to maximize model utility expressed in financial terms Prerequisites We recommend that attendees of this course have the following prerequisites: • Experience with Python programming language • Familiarity with NumPy and Pandas Python libraries is a plus • Familiarity with fundamental machine learning algorithms • Familiarity with productionizing machine learning models Delivery Method This course is delivered through [a mix of]: • Hands-on labs | 2020-01-09 09:00:00 | In-Person | 0 | Practical Data Science with Amazon SageMaker | ||||||
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Description
In this introductory course, you will learn about AWS products, services, and common solutions. You will learn the fundamentals of identifying AWS services so that you can make informed decisions about IT solutions based on your business requirements.
Course Objectives
In this course, you will learn to:
Terminology and concepts related to the AWS platform
How to navigate the AWS Management Console
Key concepts of AWS security measures and AWS Identity and Access Management (IAM)
...Read More
In this introductory course, you will learn about AWS products, services, and common solutions. You will learn the fundamentals of identifying AWS services so that you can make informed decisions about IT solutions based on your business requirements.
Course Objectives
In this course, you will learn to:
Terminology and concepts related to the AWS platform
How to navigate the AWS Management Console
Key concepts of AWS security measures and AWS Identity and Access Management (IAM)
Key AWS Services Included
Foundational services: Amazon Elastic Compute Cloud (EC2), Amazon Virtual Private Cloud (VPC), Amazon Simple Storage Service (S3), and Amazon Elastic Block Store (EBS)
Database services: Amazon DynamoDB and Amazon Relational Database Service (RDS)
Management services: AWS Auto Scaling, Amazon CloudWatch, Elastic Load Balancing (ELB), and AWS Trusted Advisor
Intended Audience
This course is intended for:
Individuals responsible for articulating the technical benefits of AWS services to customers
Individuals interested in learning how to get started with AWS
DetailsWhenFri, Jan 10, 2020 - 9:00 am - 5:00 pmWhereIn-Person |
In this introductory course, you will learn about AWS products, services, and common solutions. You will learn the fundamentals of identifying AWS services so that you can make informed decisions about IT solutions based on your business requirements. Course Objectives In this course, you will learn to: Terminology and concepts related to the AWS platform How to navigate the AWS Management Console Key concepts of AWS security measures and AWS Identity and Access Management (IAM) Key AWS Services Included Foundational services: Amazon Elastic Compute Cloud (EC2), Amazon Virtual Private Cloud (VPC), Amazon Simple Storage Service (S3), and Amazon Elastic Block Store (EBS) Database services: Amazon DynamoDB and Amazon Relational Database Service (RDS) Management services: AWS Auto Scaling, Amazon CloudWatch, Elastic Load Balancing (ELB), and AWS Trusted Advisor Intended Audience This course is intended for: Individuals responsible for articulating the technical benefits of AWS services to customers Individuals interested in learning how to get started with AWS | 2020-01-10 09:00:00 | In-Person | 0 | Amazon Web Services Technical Essentials | ||||||
48 |
Description
Data Carpentry develops and teaches workshops on the fundamental data skills needed to conduct research. Its target audience is researchers who have little to no prior computational experience, and its lessons are domain specific, building on learners' existing knowledge to enable them to quickly apply skills learned to their own research. Participants will be encouraged to help one another and to apply what they have learned to their own research problems.
Data Carpentry develops and teaches workshops on the fundamental data skills needed to conduct research. Its target audience is researchers who have little to no prior computational experience, and its lessons are domain specific, building on learners' existing knowledge to enable them to quickly apply skills learned to their own research. Participants will be encouraged to help one another and to apply what they have learned to their own research problems.
DetailsOrganizerNIH Training LibraryWhenMon, Jan 13, 2020 - 9:30 am - 5:00 pmWhereIn-Person |
Data Carpentry develops and teaches workshops on the fundamental data skills needed to conduct research. Its target audience is researchers who have little to no prior computational experience, and its lessons are domain specific, building on learners' existing knowledge to enable them to quickly apply skills learned to their own research. Participants will be encouraged to help one another and to apply what they have learned to their own research problems. | 2020-01-13 09:30:00 | In-Person | NIH Training Library | 0 | Data Carpentries Genomics Workshop | |||||
49 |
Description
Sushant Kumar, Ph.D.
Yale University
Moving beyond the canonical dichotomy of drivers and passengers in cancer
hosted by the Cancer Data Science Laboratory (CDSL) on Monday, January 13th at 1:00 p.m.
Dr. Kumar's research focuses on developing integrative computational approaches to investigate the influence of genomic variations on gene regulation and their role in various types of cancer.
To view the schedule for all upcoming Earl Stadtman Investigator Program seminars, please visit: Read More
Sushant Kumar, Ph.D.
Yale University
Moving beyond the canonical dichotomy of drivers and passengers in cancer
hosted by the Cancer Data Science Laboratory (CDSL) on Monday, January 13th at 1:00 p.m.
Dr. Kumar's research focuses on developing integrative computational approaches to investigate the influence of genomic variations on gene regulation and their role in various types of cancer.
To view the schedule for all upcoming Earl Stadtman Investigator Program seminars, please visit: ccrod.cancer.gov/confluence/display/NIHStadt
The Earl Stadtman Investigator search is a trans-NIH effort to attract a diverse group of talented early-career scientists pursuing interests across the biomedical research spectrum. Additional information on the program can be found at: irp.nih.gov/careers/trans-nih-scientific-recruitments/stadtman-tenure-track-investigators
DetailsWhenMon, Jan 13, 2020 - 1:00 pm - 2:00 pmWhereIn-Person |
Sushant Kumar, Ph.D. Yale University Moving beyond the canonical dichotomy of drivers and passengers in cancer hosted by the Cancer Data Science Laboratory (CDSL) on Monday, January 13th at 1:00 p.m. Dr. Kumar's research focuses on developing integrative computational approaches to investigate the influence of genomic variations on gene regulation and their role in various types of cancer. To view the schedule for all upcoming Earl Stadtman Investigator Program seminars, please visit: ccrod.cancer.gov/confluence/display/NIHStadt The Earl Stadtman Investigator search is a trans-NIH effort to attract a diverse group of talented early-career scientists pursuing interests across the biomedical research spectrum. Additional information on the program can be found at: irp.nih.gov/careers/trans-nih-scientific-recruitments/stadtman-tenure-track-investigators | 2020-01-13 13:00:00 | In-Person | 0 | Moving beyond the canonical dichotomy of drivers and passengers in cancer | ||||||
51 |
Description
Debra S. Marks, PhD
Principal Investigator
Associate Professor, Harvard Medical School
Debra S. Marks, PhD
Principal Investigator
Associate Professor, Harvard Medical School
DetailsWhenMon, Jan 13, 2020 - 3:00 pm - 4:00 pmWhereIn-Person |
Debra S. Marks, PhD Principal Investigator Associate Professor, Harvard Medical School | 2020-01-13 15:00:00 | In-Person | 0 | Biological Discovery and Design using Machine Learning | ||||||
52 |
Description
Tim Griffin, Ph.D. and Pratik Jagtap, Ph.D., M.Sc
In this talk, Dr. Griffin and Dr. Jagtap will present short demonstrations of multi-omic tools and validated workflows and discuss application and access to these resources.
Tim Griffin, Ph.D. and Pratik Jagtap, Ph.D., M.Sc
In this talk, Dr. Griffin and Dr. Jagtap will present short demonstrations of multi-omic tools and validated workflows and discuss application and access to these resources.
DetailsOrganizerCBIITWhenWed, Jan 15, 2020 - 11:00 am - 12:00 pmWhereIn-Person |
Tim Griffin, Ph.D. and Pratik Jagtap, Ph.D., M.Sc In this talk, Dr. Griffin and Dr. Jagtap will present short demonstrations of multi-omic tools and validated workflows and discuss application and access to these resources. | 2020-01-15 11:00:00 | In-Person | CBIIT | 0 | Galaxy-based Multi-omic Informatics Hub for Cancer Researchers | |||||
881 |
Description
Marshaling Public Data for Lean and Powerful Splicing Studies
The Sequence Read Archive (SRA) now contains over a million accessions. Such archives are potential gold mines for researchers but they are not organized for everyday use by scientists. The situation resembles the early days of the World Wide Web, before search engines made the web easy to use. I will describe our work on making making large public RNA sequencing datasets easy to ...Read More
Marshaling Public Data for Lean and Powerful Splicing Studies
The Sequence Read Archive (SRA) now contains over a million accessions. Such archives are potential gold mines for researchers but they are not organized for everyday use by scientists. The situation resembles the early days of the World Wide Web, before search engines made the web easy to use. I will describe our work on making making large public RNA sequencing datasets easy to use. I will describe our multi-layered design, with one layer for scalable and uniform analysis (Rail-RNA), another for forming easy-to-use summarized (recount2), and a third for indexing the summaries and making them queryable (Snaptron). Altogether, the system allows scientists to pose scientific questions over vast gene expression and splicing summaries. I will describe collaborations where these tools were applied to (a) evaluate hypotheses about prevalence or specificity of splicing patterns, (b) characterize completeness of the gene annotations we use to understand splicing patterns, and (c) reveal patterns in public data that ultimately changed the study design and allowed more targeted hypotheses to be tested with less new data generation.
This is joint work with Chris Wilks, Abhinav Nellore, Jonathan Ling, Seth Blackshaw, Luigi Marchionni, Jeff Leek, Kasper Hansen, Andrew Jaffe and others.
WebEx recording: https://cbiit.webex.com/cbiit/ldr.php?RCID=da15d3aface8f25f7f478b9a813f6499
RegisterOrganizerBTEPWhenThu, Jan 16, 2020 - 11:00 am - 12:00 pmWhereBuilding 37 Room 4041/4107 |
Marshaling Public Data for Lean and Powerful Splicing Studies The Sequence Read Archive (SRA) now contains over a million accessions. Such archives are potential gold mines for researchers but they are not organized for everyday use by scientists. The situation resembles the early days of the World Wide Web, before search engines made the web easy to use. I will describe our work on making making large public RNA sequencing datasets easy to use. I will describe our multi-layered design, with one layer for scalable and uniform analysis (Rail-RNA), another for forming easy-to-use summarized (recount2), and a third for indexing the summaries and making them queryable (Snaptron). Altogether, the system allows scientists to pose scientific questions over vast gene expression and splicing summaries. I will describe collaborations where these tools were applied to (a) evaluate hypotheses about prevalence or specificity of splicing patterns, (b) characterize completeness of the gene annotations we use to understand splicing patterns, and (c) reveal patterns in public data that ultimately changed the study design and allowed more targeted hypotheses to be tested with less new data generation. This is joint work with Chris Wilks, Abhinav Nellore, Jonathan Ling, Seth Blackshaw, Luigi Marchionni, Jeff Leek, Kasper Hansen, Andrew Jaffe and others. WebEx recording: https://cbiit.webex.com/cbiit/ldr.php?RCID=da15d3aface8f25f7f478b9a813f6499 | 2020-01-16 11:00:00 | Building 37 Room 4041/4107 | In-Person | Ben Langmead (JHU) | BTEP | 0 | BTEP: Ben Langmead (JHU), Distinguished Speakers Seminar Series | |||
53 |
Description
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training ...Read More
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
DetailsOrganizerNIH Training LibraryWhenTue, Jan 21, 2020 - 3:00 pm - 4:30 pmWhereIn-Person |
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. | 2020-01-21 15:00:00 | In-Person | NIH Training Library | 0 | Intro to R Data Types | |||||
895 |
Description
RegisterOrganizerBTEPWhenThu, Jan 23, 2020 - 11:00 am - 12:00 pmWhereBuilding 37 Room 4041/4107 |
Experimental Design Considerations in Variant Analysis Germline vs Somatic WGS vs WES Sample sizes and statistical power WGS/WES Pipelines at NIH Pipeline performance Using Pipeliner for internal and external data Variant QC, Annotation and Downstream Analysis Variant QC and data correction Variant annotation and analysis tools Structural variation and multi-omic integration If you unable to attend in person, WebEx will be provided. Thursday, January 23, 2020 11:00 am | Eastern Standard Time (New York, GMT-05:00) | 1 hr 30 mins Join meeting Join by phone Tap to call in from a mobile device (attendees only) 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 730733238@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join using Microsoft Lync or Microsoft Skype for Business Dial 730733238.cbiit@lync.webex.com | 2020-01-23 11:00:00 | Building 37 Room 4041/4107 | In-Person | Justin Lack (NIAID CBR) | BTEP | 0 | BTEP: Variant Analysis in Next Generation Sequencing Data, Whole Genome and Whole Exome | |||
54 |
Description
This lecture will briefly review the steps involved in data analysis and how study design, hypothesis, and type of data and their distributions contribute to the choice of statistical tests. Statistical tests are used to determine the presence and strength of a relationship between independent and outcome variables. The basic concepts around the use and interpretation of the following statistical tests will be covered: chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, ...Read More
This lecture will briefly review the steps involved in data analysis and how study design, hypothesis, and type of data and their distributions contribute to the choice of statistical tests. Statistical tests are used to determine the presence and strength of a relationship between independent and outcome variables. The basic concepts around the use and interpretation of the following statistical tests will be covered: chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and non-parametric tests.
DetailsOrganizerNIH Training LibraryWhenThu, Jan 23, 2020 - 1:00 pm - 4:00 pmWhereOnline |
This lecture will briefly review the steps involved in data analysis and how study design, hypothesis, and type of data and their distributions contribute to the choice of statistical tests. Statistical tests are used to determine the presence and strength of a relationship between independent and outcome variables. The basic concepts around the use and interpretation of the following statistical tests will be covered: chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and non-parametric tests. | 2020-01-23 13:00:00 | Online | NIH Training Library | 0 | Overview of Common Statistical Tests | |||||
55 |
Description
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services ...Read More
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
DetailsOrganizerNIH Training LibraryWhenMon, Jan 27, 2020 - 1:00 pm - 2:30 pmWhereOnline |
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. | 2020-01-27 13:00:00 | Online | NIH Training Library | 0 | Data Wrangling in R | |||||
56 |
Description
Learn about the GDC's submission process and tools. Get a demonstration of how to upload and review data.
Learn about the GDC's submission process and tools. Get a demonstration of how to upload and review data.
DetailsWhenMon, Jan 27, 2020 - 2:00 pm - 3:00 pmWhereOnline |
Learn about the GDC's submission process and tools. Get a demonstration of how to upload and review data. | 2020-01-27 14:00:00 | Online | 0 | Genomic Data Commons Webinar: Data Submission | ||||||
57 |
Description
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/246d5cb98c8d4cd0b2e8f6fb0368978b
GenePattern enables researchers at all levels of computational expertise to use hundreds of tools for the analysis of gene expression, sequence variation, proteomics, and more, through an intuitive interface that requires no coding.
GenePattern ...Read More
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/246d5cb98c8d4cd0b2e8f6fb0368978b
GenePattern enables researchers at all levels of computational expertise to use hundreds of tools for the analysis of gene expression, sequence variation, proteomics, and more, through an intuitive interface that requires no coding.
GenePattern makes reproducible research easy: analyses can be rerun at any time with the same inputs; every version of each tool is tracked, so that a result can be reproduced even if the code that produced it changes in the future; and researchers can chain analyses together to encapsulate and share their research as reproducible workflows.
A new GenePattern Notebook environment,https://notebook.genepattern.org/#gsc.tab=0 based on the popular Jupyter Notebook system, further allows users to interleave text, graphics, and analyses in unified "research narratives" that can be shared and published.
In this webinar, participants will learn how to:
• Identify available GenePattern analyses relevant to their scientific objectives
• Analyze and visualize gene expression (including RNA-seq) and other genomic data
• Ensure that their analyses are reproducible
• Create and publish research narratives that serve as a live, executable, shareable representation of a study
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/246d5cb98c8d4cd0b2e8f6fb0368978b
For any questions please contact Daoud Meerzaman or Juli Klemm
DetailsOrganizerCBIITWhenTue, Jan 28, 2020 - 11:00 am - 12:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/246d5cb98c8d4cd0b2e8f6fb0368978b GenePattern enables researchers at all levels of computational expertise to use hundreds of tools for the analysis of gene expression, sequence variation, proteomics, and more, through an intuitive interface that requires no coding. GenePattern makes reproducible research easy: analyses can be rerun at any time with the same inputs; every version of each tool is tracked, so that a result can be reproduced even if the code that produced it changes in the future; and researchers can chain analyses together to encapsulate and share their research as reproducible workflows. A new GenePattern Notebook environment,https://notebook.genepattern.org/#gsc.tab=0 based on the popular Jupyter Notebook system, further allows users to interleave text, graphics, and analyses in unified "research narratives" that can be shared and published. In this webinar, participants will learn how to: • Identify available GenePattern analyses relevant to their scientific objectives • Analyze and visualize gene expression (including RNA-seq) and other genomic data • Ensure that their analyses are reproducible • Create and publish research narratives that serve as a live, executable, shareable representation of a study The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/246d5cb98c8d4cd0b2e8f6fb0368978b For any questions please contact Daoud Meerzaman or Juli Klemm | 2020-01-28 11:00:00 | In-Person | CBIIT | 0 | Integrative Genomics Analysis with the GenePattern Notebook Environment | |||||
58 |
Description
NCI Shady Grove, 9609 Medical Center Drive, Room 2W032/034, and via Webinar
Rachel Karchin, Ph.D., and Kym Pagel, Ph.D.
Dr. Karchin and Dr. Pagel will present OpenCRAVAT, a new open source, scalable decision support system for studying gene variants and gene prioritization.
NCI Shady Grove, 9609 Medical Center Drive, Room 2W032/034, and via Webinar
Rachel Karchin, Ph.D., and Kym Pagel, Ph.D.
Dr. Karchin and Dr. Pagel will present OpenCRAVAT, a new open source, scalable decision support system for studying gene variants and gene prioritization.
DetailsOrganizerCBIITWhenWed, Jan 29, 2020 - 11:00 am - 12:00 pmWhereIn-Person |
NCI Shady Grove, 9609 Medical Center Drive, Room 2W032/034, and via Webinar Rachel Karchin, Ph.D., and Kym Pagel, Ph.D. Dr. Karchin and Dr. Pagel will present OpenCRAVAT, a new open source, scalable decision support system for studying gene variants and gene prioritization. | 2020-01-29 11:00:00 | In-Person | CBIIT | 0 | OpenCRAVAT: An Open Source Collaborative Platform for the Annotation of Human Genetic Variation | |||||
897 |
Description
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are ...Read More
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials.
RegisterOrganizerBTEPWhenWed, Jan 29, 2020 - 3:00 pm - 5:00 pmWhereFrederick, Fort Detrick, Building 549, Conference Room A |
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. | 2020-01-29 15:00:00 | Frederick, Fort Detrick, Building 549, Conference Room A | Single Cell RNA-seq | In-Person | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq: Analysis on the Palantir Platform (Jan. 29th, Frederick) | ||
59 |
DescriptionDetailsOrganizerCBIITWhenThu, Jan 30, 2020 - 1:00 am - 5:00 pmWhereIn-Person |
2020-01-30 01:00:00 | In-Person | CBIIT | 0 | Fluorescence Image Restoration and Denoising, A Biologist's View | ||||||
60 |
DescriptionDetailsOrganizerCBIITWhenFri, Jan 31, 2020 - 9:30 am - 4:30 pmWhereIn-Person |
2020-01-31 09:30:00 | In-Person | CBIIT | 0 | Machine Learning Image Analysis: A Practical Hands-on Tutorial Using Aivia | ||||||
61 |
Description
Description: Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community
Description: Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community
DetailsWhenMon, Feb 03, 2020 - 11:00 am - 12:00 pmWhereOnline |
Description: Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community | 2020-02-03 11:00:00 | Online | 0 | Data Science Webinar Series: Intro to Big Data & Data Lifecycle | ||||||
62 |
Description
Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community
Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community
DetailsWhenTue, Feb 04, 2020 - 11:00 am - 12:00 pmWhereOnline |
Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community | 2020-02-04 11:00:00 | Online | 0 | Data Science Webinar Series: Intro to Big Data & Data Lifecycle | ||||||
63 |
Description
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/b8219ffc2b1e4b1daaac7a99c49b4274
Cistrome is an online resource for transcriptional and epigenetic gene regulation.The Cistrome analysis pipeline helps users analyze their ChIP-seq and chromatin accessibility data online, and the Cistrome database allows users to search and browse public ...Read More
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/b8219ffc2b1e4b1daaac7a99c49b4274
Cistrome is an online resource for transcriptional and epigenetic gene regulation.The Cistrome analysis pipeline helps users analyze their ChIP-seq and chromatin accessibility data online, and the Cistrome database allows users to search and browse public data collected and processed. This is an introductory level workshop, although users are expected to have basic knowledge of ChIP-seq, gene regulation, and immunology. Visit the Cistrome website to learn more visit http://cistrome.org/
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website https://itcr.cancer.gov/
For any questions please contact Daoud Meerzaman or Juli Klemm.
DetailsOrganizerCBIITWhenTue, Feb 04, 2020 - 12:30 pm - 1:30 pmWhereOnline |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/b8219ffc2b1e4b1daaac7a99c49b4274 Cistrome is an online resource for transcriptional and epigenetic gene regulation.The Cistrome analysis pipeline helps users analyze their ChIP-seq and chromatin accessibility data online, and the Cistrome database allows users to search and browse public data collected and processed. This is an introductory level workshop, although users are expected to have basic knowledge of ChIP-seq, gene regulation, and immunology. Visit the Cistrome website to learn more visit http://cistrome.org/ The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website https://itcr.cancer.gov/ For any questions please contact Daoud Meerzaman or Juli Klemm. | 2020-02-04 12:30:00 | Online | In-Person | CBIIT | 0 | Introduction to Cistrome | ||||
64 |
Description
Introduction to Data Visualization in R: ggplot in R is the fourth class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of producing scatter plots, boxplots, and time series plots using ggplot. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered ...Read More
Introduction to Data Visualization in R: ggplot in R is the fourth class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of producing scatter plots, boxplots, and time series plots using ggplot. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
Note for webinar version of this class: Students are encouraged to install R and RStudio before the webinar so that they can follow along with the instructor. Attendees will need to download the class data before the webinar.
DetailsOrganizerNIH Training LibraryWhenTue, Feb 04, 2020 - 1:00 pm - 2:30 pmWhereOnline |
Introduction to Data Visualization in R: ggplot in R is the fourth class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of producing scatter plots, boxplots, and time series plots using ggplot. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. Note for webinar version of this class: Students are encouraged to install R and RStudio before the webinar so that they can follow along with the instructor. Attendees will need to download the class data before the webinar. | 2020-02-04 13:00:00 | Online | NIH Training Library | 0 | Intro to Data Visualization in R: ggplot | |||||
898 |
Description
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This training session will include a brief lecture on the theory behind RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression, volcano plots, differential expression of genes analysis, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials.
RegisterOrganizerBTEPWhenTue, Feb 04, 2020 - 1:30 pm - 3:30 pmWhereBethesda, Building 10, FAES Classroom #6 (B1C208) |
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the theory behind RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression, volcano plots, differential expression of genes analysis, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. | 2020-02-04 13:30:00 | Bethesda, Building 10, FAES Classroom #6 (B1C208) | Bulk RNA-seq | In-Person | Joshua Meyer (CCBR) | BTEP | 0 | RNA-Seq: Analysis on the Palantir Platform (Feb. 4th, Bethesda) | ||
252 |
DescriptionDetailsWhenTue, Feb 04, 2020 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/b8219ffc2b1e4b1daaac7a99c49b4274/playback | 2020-02-04 14:00:00 | In-Person | 0 | Introduction to Cistrome | ||||||
890 |
Description
To Function or Not to Function
The functions of only a minority of genes in any species is known. And even in those cases the functional annotation is highly incomplete and largely devoid of context. At an even more fundamental level, how can we know whether a gene serves any relevant biological function in a given context? In this informal presentation we will discuss a few vignettes related to the broad questions of context-specific functions ...Read More
To Function or Not to Function
The functions of only a minority of genes in any species is known. And even in those cases the functional annotation is highly incomplete and largely devoid of context. At an even more fundamental level, how can we know whether a gene serves any relevant biological function in a given context? In this informal presentation we will discuss a few vignettes related to the broad questions of context-specific functions of genes, in a variety of contexts from bacterial response to drugs, normal tissues, and cancer.
Recording of the talk is here: https://cbiit.webex.com/cbiit/ldr.php?RCID=ec72d1923ffe18a82b63ed348b75be0c
RegisterOrganizerBTEPWhenThu, Feb 06, 2020 - 11:00 am - 12:00 pmWhereBuilding 37 Room 4041/4107 |
To Function or Not to Function The functions of only a minority of genes in any species is known. And even in those cases the functional annotation is highly incomplete and largely devoid of context. At an even more fundamental level, how can we know whether a gene serves any relevant biological function in a given context? In this informal presentation we will discuss a few vignettes related to the broad questions of context-specific functions of genes, in a variety of contexts from bacterial response to drugs, normal tissues, and cancer. Recording of the talk is here: https://cbiit.webex.com/cbiit/ldr.php?RCID=ec72d1923ffe18a82b63ed348b75be0c | 2020-02-06 11:00:00 | Building 37 Room 4041/4107 | In-Person | Sridhar Hannenhalli (CDSL) | BTEP | 0 | BTEP: Sridhar Hannenhalli (CDSL), Distinguished Speakers Seminar Series | |||
66 |
Description
Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community.
Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community.
DetailsWhenThu, Feb 06, 2020 - 11:00 pm - 10:00 amWhereOnline |
Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community. | 2020-02-06 23:00:00 | Online | 0 | Data Science Webinar Series: Intro to Big Data & Data Lifecycle | ||||||
78 |
Description
Description: Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community.
Description: Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community.
DetailsWhenFri, Feb 07, 2020 - 11:00 am - 12:00 pmWhereOnline |
Description: Dr. Mark Musen from Stanford University highlights major themes in the management and use of scientific data, gives an overview of the data life cycle, and describes ways in which investigators can ensure that their data will have maximum benefit to the scientific community. | 2020-02-07 11:00:00 | Online | 0 | Data Science Webinar Series: Intro to Big Data & Data Lifecycle | ||||||
79 |
Description
Description: John Ioannidis from Stanford University discusses what reproducibility means, separating reproducibility of methods, of results, and of inferences. He also provides an overview for empirical data on reproducibility across different scientific disciplines and discusses different methods and practices that have been proposed to improve reproducibility.
Description: John Ioannidis from Stanford University discusses what reproducibility means, separating reproducibility of methods, of results, and of inferences. He also provides an overview for empirical data on reproducibility across different scientific disciplines and discusses different methods and practices that have been proposed to improve reproducibility.
DetailsWhenMon, Feb 10, 2020 - 11:00 am - 12:00 pmWhereOnline |
Description: John Ioannidis from Stanford University discusses what reproducibility means, separating reproducibility of methods, of results, and of inferences. He also provides an overview for empirical data on reproducibility across different scientific disciplines and discusses different methods and practices that have been proposed to improve reproducibility. | 2020-02-10 11:00:00 | Online | 0 | Data Science Webinar Series: Reproducibility | ||||||
81 |
Description
The Role of Generalist and Institutional Repositories to Enhance Data Discoverability and Reuse
The primary goals of the workshop are to:
Learn how generalist repositories see themselves in the larger biomedical data repository landscape.
Understand how institutional data repositories are creating suites of solutions for their researchers and how they see generalist repositories fitting into this landscape.
Consider desired characteristics of data repositories and how they relate to institutional expectations of data storage and preservation ...Read More
The Role of Generalist and Institutional Repositories to Enhance Data Discoverability and Reuse
The primary goals of the workshop are to:
Learn how generalist repositories see themselves in the larger biomedical data repository landscape.
Understand how institutional data repositories are creating suites of solutions for their researchers and how they see generalist repositories fitting into this landscape.
Consider desired characteristics of data repositories and how they relate to institutional expectations of data storage and preservation solutions.
Explore adoption of common infrastructure, standards, and federated search solutions to enable greater discoverability of NIH research data across federated data repositories.
Address the role of data curators in ensuring that data and metadata are sufficiently well curated to enhance discovery and enable reuse.
DetailsWhenTue, Feb 11, 2020 - 9:00 am - 5:00 pmWhereIn-Person |
The Role of Generalist and Institutional Repositories to Enhance Data Discoverability and Reuse The primary goals of the workshop are to: Learn how generalist repositories see themselves in the larger biomedical data repository landscape. Understand how institutional data repositories are creating suites of solutions for their researchers and how they see generalist repositories fitting into this landscape. Consider desired characteristics of data repositories and how they relate to institutional expectations of data storage and preservation solutions. Explore adoption of common infrastructure, standards, and federated search solutions to enable greater discoverability of NIH research data across federated data repositories. Address the role of data curators in ensuring that data and metadata are sufficiently well curated to enhance discovery and enable reuse. | 2020-02-11 09:00:00 | In-Person | 0 | Establishing a FAIR Biomedical Data Ecosystem | ||||||
82 |
Description
John Ioannidis from Stanford University discusses what reproducibility means, separating reproducibility of methods, of results, and of inferences. He also provides an overview for empirical data on reproducibility across different scientific disciplines and discusses different methods and practices that have been proposed to improve reproducibility.
This is a two day event. February 10th and 11th from 11:00AM to 12:00PM.
John Ioannidis from Stanford University discusses what reproducibility means, separating reproducibility of methods, of results, and of inferences. He also provides an overview for empirical data on reproducibility across different scientific disciplines and discusses different methods and practices that have been proposed to improve reproducibility.
This is a two day event. February 10th and 11th from 11:00AM to 12:00PM.
DetailsWhenTue, Feb 11, 2020 - 11:00 am - 12:00 pmWhereOnline |
John Ioannidis from Stanford University discusses what reproducibility means, separating reproducibility of methods, of results, and of inferences. He also provides an overview for empirical data on reproducibility across different scientific disciplines and discusses different methods and practices that have been proposed to improve reproducibility. This is a two day event. February 10th and 11th from 11:00AM to 12:00PM. | 2020-02-11 11:00:00 | Online | 0 | Data Science Webinar Series: Reproducibility | ||||||
83 |
Description
This two-day instructor-led course gives participants a broad study of networking options on Google Cloud Platform. Through presentations, demonstrations, and hands-on labs, learners explore and deploy GCP networking technologies, such as Google Virtual Private Cloud (VPC) networks, subnets, firewalls, interconnection among networks, load balancing, Cloud DNS, and Cloud CDN. The course also covers common network design patterns and automated deployment using Cloud Deployment Manager.
Objectives
This course teaches participants the following skills:
Configure Google VPC ...Read More
This two-day instructor-led course gives participants a broad study of networking options on Google Cloud Platform. Through presentations, demonstrations, and hands-on labs, learners explore and deploy GCP networking technologies, such as Google Virtual Private Cloud (VPC) networks, subnets, firewalls, interconnection among networks, load balancing, Cloud DNS, and Cloud CDN. The course also covers common network design patterns and automated deployment using Cloud Deployment Manager.
Objectives
This course teaches participants the following skills:
Configure Google VPC networks, subnets, and routers
Control administrative access to VPC objects
Control network access to endpoints in VPCs
Interconnect networks among GCP projects
Interconnect networks among GCP VPC networks and on-premises or other-cloud networks
Choose among GCP load balancer and proxy options and configure them
Use Cloud CDN to reduce latency and save money
Optimize network spend using Network Tiers
Deploy networks declaratively using Cloud Deployment Manager
Design networks to meet common customer requirements
Configure monitoring and logging to troubleshoot networks problems
Audience
This course is intended for the following participants:
Network Engineers and Network Admins who are either using Google Cloud Platform or planning to do so.
Individuals who want to be exposed to software-defined networking solutions in the cloud.
Prerequisites
To get the most out of this course, participants should have:
Completed Google Cloud Platform Fundamentals: Core Infrastructure or have equivalent experience.
Clear understanding of the 7-layer OSI model.
Clear understanding of IPv4 addressing.
Prior experience with managing IPv4 routes.
Course Outline
Module 1: Google Cloud VPC Networking Fundamentals
Topics Covered:
Recall that networks belong to projects
Explain the differences among default, auto, and custom networks
Create networks and subnets
Explain how IPv4 addresses are assigned to Compute Engine instances
Publish domain names using Cloud DNS
Create Compute Engine instances with IP aliases
Create Compute Engine instances with multiple virtual network interfaces
Module 2: Controlling Access to VPC Networks
Topics Covered:
Outline how IAM policies affect VPC networks
Control access to network resources using service accounts
Control access to Compute Engine instances with tag-based firewall rules
Module 3: Sharing Networks Across Projects
Topics Covered:
Outline the overall workflow for configuring shared VPC
Differentiate between the IAM roles that allow network resources to be managed
Configure peering between unrelated VPC networks
Recall when to use shared VPC and when to use VPC peering
Module 4: Load Balancing
Topics Covered:
Recall the various load balancing services
Configure Layer 7 HTTP(S) load balancing
Whitelist and blacklist IP traffic with Cloud Armor
Cache content with Cloud CDN
Configure internal load balancing
Determine which GCP load balancer to use when
Module 5: Hybrid Connectivity
Topics Covered:
Recall the GCP interconnect and peering services available to connect your infrastructure to GCP
Explain Dedicated Interconnect and Partner Interconnect
Describe the workflow for configuring a Dedicated Interconnect
Build a connection over a VPN with Cloud Router
Determine which GCP interconnect service to use when
Explain Direct Peering and Partner Peering
Determine which GCP peering service to use when
Module 6: Networking Pricing and Billing
Topics Covered:
Recognize how networking features are charged for
Use Network Service Tiers to optimize spend
Determine which Network Service Tier to use when
Recall that labels can be used to understand networking spend
Module 7: Network Design and Deployment
Topics Covered:
Explain common network design patterns
Automate the deployment of networks using Deployment Manager
Launch networking solutions using Cloud Marketplace
Module 8: Network Monitoring and Troubleshooting
Topics Covered:
Configure uptime checks, alerting policies, and charts for your network services
Use VPC Flow Logs to log and analyze network traffic behavior
DetailsWhenWed, Feb 12, 2020 - 9:00 am - 5:00 pmWhereIn-Person |
This two-day instructor-led course gives participants a broad study of networking options on Google Cloud Platform. Through presentations, demonstrations, and hands-on labs, learners explore and deploy GCP networking technologies, such as Google Virtual Private Cloud (VPC) networks, subnets, firewalls, interconnection among networks, load balancing, Cloud DNS, and Cloud CDN. The course also covers common network design patterns and automated deployment using Cloud Deployment Manager. Objectives This course teaches participants the following skills: Configure Google VPC networks, subnets, and routers Control administrative access to VPC objects Control network access to endpoints in VPCs Interconnect networks among GCP projects Interconnect networks among GCP VPC networks and on-premises or other-cloud networks Choose among GCP load balancer and proxy options and configure them Use Cloud CDN to reduce latency and save money Optimize network spend using Network Tiers Deploy networks declaratively using Cloud Deployment Manager Design networks to meet common customer requirements Configure monitoring and logging to troubleshoot networks problems Audience This course is intended for the following participants: Network Engineers and Network Admins who are either using Google Cloud Platform or planning to do so. Individuals who want to be exposed to software-defined networking solutions in the cloud. Prerequisites To get the most out of this course, participants should have: Completed Google Cloud Platform Fundamentals: Core Infrastructure or have equivalent experience. Clear understanding of the 7-layer OSI model. Clear understanding of IPv4 addressing. Prior experience with managing IPv4 routes. Course Outline Module 1: Google Cloud VPC Networking Fundamentals Topics Covered: Recall that networks belong to projects Explain the differences among default, auto, and custom networks Create networks and subnets Explain how IPv4 addresses are assigned to Compute Engine instances Publish domain names using Cloud DNS Create Compute Engine instances with IP aliases Create Compute Engine instances with multiple virtual network interfaces Module 2: Controlling Access to VPC Networks Topics Covered: Outline how IAM policies affect VPC networks Control access to network resources using service accounts Control access to Compute Engine instances with tag-based firewall rules Module 3: Sharing Networks Across Projects Topics Covered: Outline the overall workflow for configuring shared VPC Differentiate between the IAM roles that allow network resources to be managed Configure peering between unrelated VPC networks Recall when to use shared VPC and when to use VPC peering Module 4: Load Balancing Topics Covered: Recall the various load balancing services Configure Layer 7 HTTP(S) load balancing Whitelist and blacklist IP traffic with Cloud Armor Cache content with Cloud CDN Configure internal load balancing Determine which GCP load balancer to use when Module 5: Hybrid Connectivity Topics Covered: Recall the GCP interconnect and peering services available to connect your infrastructure to GCP Explain Dedicated Interconnect and Partner Interconnect Describe the workflow for configuring a Dedicated Interconnect Build a connection over a VPN with Cloud Router Determine which GCP interconnect service to use when Explain Direct Peering and Partner Peering Determine which GCP peering service to use when Module 6: Networking Pricing and Billing Topics Covered: Recognize how networking features are charged for Use Network Service Tiers to optimize spend Determine which Network Service Tier to use when Recall that labels can be used to understand networking spend Module 7: Network Design and Deployment Topics Covered: Explain common network design patterns Automate the deployment of networks using Deployment Manager Launch networking solutions using Cloud Marketplace Module 8: Network Monitoring and Troubleshooting Topics Covered: Configure uptime checks, alerting policies, and charts for your network services Use VPC Flow Logs to log and analyze network traffic behavior | 2020-02-12 09:00:00 | In-Person | 0 | Networking in Google Cloud Platform | ||||||
84 |
Description
The Role of Generalist and Institutional Repositories to Enhance Data Discoverability and Reuse
The primary goals of the workshop are to:
Learn how generalist repositories see themselves in the larger biomedical data repository landscape.
Understand how institutional data repositories are creating suites of solutions for their researchers and how they see generalist repositories fitting into this landscape.
Consider desired characteristics of data repositories and how they relate to institutional expectations of data storage and preservation ...Read More
The Role of Generalist and Institutional Repositories to Enhance Data Discoverability and Reuse
The primary goals of the workshop are to:
Learn how generalist repositories see themselves in the larger biomedical data repository landscape.
Understand how institutional data repositories are creating suites of solutions for their researchers and how they see generalist repositories fitting into this landscape.
Consider desired characteristics of data repositories and how they relate to institutional expectations of data storage and preservation solutions.
Explore adoption of common infrastructure, standards, and federated search solutions to enable greater discoverability of NIH research data across federated data repositories.
Address the role of data curators in ensuring that data and metadata are sufficiently well curated to enhance discovery and enable reuse.
DetailsWhenWed, Feb 12, 2020 - 9:00 am - 5:00 pmWhereIn-Person |
The Role of Generalist and Institutional Repositories to Enhance Data Discoverability and Reuse The primary goals of the workshop are to: Learn how generalist repositories see themselves in the larger biomedical data repository landscape. Understand how institutional data repositories are creating suites of solutions for their researchers and how they see generalist repositories fitting into this landscape. Consider desired characteristics of data repositories and how they relate to institutional expectations of data storage and preservation solutions. Explore adoption of common infrastructure, standards, and federated search solutions to enable greater discoverability of NIH research data across federated data repositories. Address the role of data curators in ensuring that data and metadata are sufficiently well curated to enhance discovery and enable reuse. | 2020-02-12 09:00:00 | In-Person | 0 | Establishing a FAIR Biomedical Data Ecosystem | ||||||
899 |
Description
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This training session will include a brief lecture on the theory behind RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression, volcano plots, differential expression of genes analysis, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials.
RegisterOrganizerBTEPWhenWed, Feb 12, 2020 - 3:00 pm - 5:00 pmWhereFrederick Fort Detrick Building 549 Conference Room A |
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the theory behind RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression, volcano plots, differential expression of genes analysis, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. | 2020-02-12 15:00:00 | Frederick Fort Detrick Building 549 Conference Room A | Bulk RNA-seq | In-Person | Joshua Meyer (CCBR) | BTEP | 0 | RNA-Seq: Analysis on the Palantir Platform (Feb. 12th, Frederick) | ||
94 |
Description
John Ioannidis from Stanford University discusses what reproducibility means, separating reproducibility of methods, of results, and of inferences. He also provides an overview for empirical data on reproducibility across different scientific disciplines and discusses different methods and practices that have been proposed to improve reproducibility.
John Ioannidis from Stanford University discusses what reproducibility means, separating reproducibility of methods, of results, and of inferences. He also provides an overview for empirical data on reproducibility across different scientific disciplines and discusses different methods and practices that have been proposed to improve reproducibility.
DetailsWhenThu, Feb 13, 2020 - 11:00 am - 12:00 pmWhereOnline |
John Ioannidis from Stanford University discusses what reproducibility means, separating reproducibility of methods, of results, and of inferences. He also provides an overview for empirical data on reproducibility across different scientific disciplines and discusses different methods and practices that have been proposed to improve reproducibility. | 2020-02-13 11:00:00 | Online | 0 | Data Science Webinar Series: Reproducibility | ||||||
95 |
Description
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research.
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research.
DetailsWhenTue, Feb 18, 2020 - 11:00 am - 12:00 pmWhereOnline |
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research. | 2020-02-18 11:00:00 | Online | 0 | Data Science Webinar Series: Open Science | ||||||
900 |
Description
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are ...Read More
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials.
RegisterOrganizerBTEPWhenTue, Feb 18, 2020 - 1:00 pm - 3:00 pmWhereBethesda Building 10 FAES Classroom #6 (B1C208) |
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. | 2020-02-18 13:00:00 | Bethesda Building 10 FAES Classroom #6 (B1C208) | Single Cell RNA-seq | In-Person | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq: Analysis on the Palantir Platform (Feb 18th, Bethesda) | ||
96 |
Description
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research.
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research.
DetailsWhenWed, Feb 19, 2020 - 11:00 am - 12:00 pmWhereOnline |
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research. | 2020-02-19 11:00:00 | Online | 0 | Data Science Webinar Series: Open Science | ||||||
915 |
Description
Learn how to easily analyze your gene expression data yourself - using Qlucore Omics Explorer
NCI/CCR:To get access to Qlucore, put a request into NCI at Your Service under Get Help https://service.cancer.gov/Get Help
Qlucore empowers bench scientists to easily visualize and analyze large numerical data sets such as gene expression (array and RNA-seq), DNA methylation, ...Read More
Learn how to easily analyze your gene expression data yourself - using Qlucore Omics Explorer
NCI/CCR:To get access to Qlucore, put a request into NCI at Your Service under Get Help https://service.cancer.gov/Get Help
Qlucore empowers bench scientists to easily visualize and analyze large numerical data sets such as gene expression (array and RNA-seq), DNA methylation, miRNA, Proteomics, Metabolomics and Flow Cytometry data. No scripting, tables or complex settings, you will have instant visual feedback on complex calculations, interactive plots, and integration with GSEA.
Morning session (10AM - noon) – Introduction and live basic hands-on training for new users , bring your government-issued laptops so you can get on the network and follow along, we will provide the license access)
Qlucore Omics Explorer is an interactive analysis and visualization tool that helps the user to find groups, structures, variable networks and discriminating variables. You can use your own data and also analyze public data. Omics Explorer supports 3D PCA plots, t-SNE plots, Heat maps with hierarchical clustering, Scatter plots, Volcano plots, Box plots etc. A number of statistical methods are included, like t-test, F-test (ANOVA) and different regressions tests. Plots are dynamically updated as filters change and analysis is done, which allows a very interactive exploration to test out new hypothesizes. Omics Explorer has an interface which makes it possible to use statistical functions created in "R" from inside Omics Explorer, so that you can use external statistical methods implemented in “R” like Limma/voom, Welch, Mann-Whitney, Kruskal-Wallis and also add you own "R" scripts. With machine learning algorithms (kNN, SVM and Random Trees) classification of samples in new data sets is simplified. The product has an inbuilt Gene Set Enrichment Analysis (GSEA) workbench for pathway analysis, a direct interface to GEO and an inbuilt Gene Ontology browser. The product has an import wizard to simplify data import. Aligned BAM files (RNA-seq) and microarray files (.cel files) can be directly imported, normalized and log transformed through import pipelines, and GEO soft files can be directly imported. Trough Qlucore Templates, based on “Python”, you can create scripts of commands that are executed by Qlucore Omics Explorer. You can create standardized analysis templates for standard analysis, and the integration with Python also opens up possibilities for customization. As an example, there is a TCGA mRNA dataset download Template that comes preinstalled.
Qlucore NGS module is an optional add-on module to Qlucore Omics Explorer. The main components of the NGS module are an interactive and fast Genome Browser for many samples and many tracks per sample, a genome filter control component, a Project Manager for project set-up and a built in Variant Caller for short indels and variants. The options available for RNA-seq analysis really stand out. Utilizing the existing functionality in Qlucore Omics Explorer for expression data and combining it with the new functionality in Qlucore NGS Browser enables significantly increased analysis options. The Genome Browser content is dynamically updated when filters and filter cut-off are changed using sliders and check-boxes.
If you are unable to attend in person, WebEx will be provided: https://cbiit.webex.com/cbiit/j.php?MTID=mfdae6115f8953fb2aeb00ff9c64e7b6f
RegisterOrganizerBTEPWhenThu, Feb 20, 2020 - 10:00 am - 12:00 pmWhereBuilding 37 Room 4041/4107 |
Learn how to easily analyze your gene expression data yourself - using Qlucore Omics Explorer NCI/CCR:To get access to Qlucore, put a request into NCI at Your Service under Get Help https://service.cancer.gov/Get Help Qlucore empowers bench scientists to easily visualize and analyze large numerical data sets such as gene expression (array and RNA-seq), DNA methylation, miRNA, Proteomics, Metabolomics and Flow Cytometry data. No scripting, tables or complex settings, you will have instant visual feedback on complex calculations, interactive plots, and integration with GSEA. Morning session (10AM - noon) – Introduction and live basic hands-on training for new users , bring your government-issued laptops so you can get on the network and follow along, we will provide the license access) Qlucore Omics Explorer is an interactive analysis and visualization tool that helps the user to find groups, structures, variable networks and discriminating variables. You can use your own data and also analyze public data. Omics Explorer supports 3D PCA plots, t-SNE plots, Heat maps with hierarchical clustering, Scatter plots, Volcano plots, Box plots etc. A number of statistical methods are included, like t-test, F-test (ANOVA) and different regressions tests. Plots are dynamically updated as filters change and analysis is done, which allows a very interactive exploration to test out new hypothesizes. Omics Explorer has an interface which makes it possible to use statistical functions created in "R" from inside Omics Explorer, so that you can use external statistical methods implemented in “R” like Limma/voom, Welch, Mann-Whitney, Kruskal-Wallis and also add you own "R" scripts. With machine learning algorithms (kNN, SVM and Random Trees) classification of samples in new data sets is simplified. The product has an inbuilt Gene Set Enrichment Analysis (GSEA) workbench for pathway analysis, a direct interface to GEO and an inbuilt Gene Ontology browser. The product has an import wizard to simplify data import. Aligned BAM files (RNA-seq) and microarray files (.cel files) can be directly imported, normalized and log transformed through import pipelines, and GEO soft files can be directly imported. Trough Qlucore Templates, based on “Python”, you can create scripts of commands that are executed by Qlucore Omics Explorer. You can create standardized analysis templates for standard analysis, and the integration with Python also opens up possibilities for customization. As an example, there is a TCGA mRNA dataset download Template that comes preinstalled. Qlucore NGS module is an optional add-on module to Qlucore Omics Explorer. The main components of the NGS module are an interactive and fast Genome Browser for many samples and many tracks per sample, a genome filter control component, a Project Manager for project set-up and a built in Variant Caller for short indels and variants. The options available for RNA-seq analysis really stand out. Utilizing the existing functionality in Qlucore Omics Explorer for expression data and combining it with the new functionality in Qlucore NGS Browser enables significantly increased analysis options. The Genome Browser content is dynamically updated when filters and filter cut-off are changed using sliders and check-boxes. If you are unable to attend in person, WebEx will be provided: https://cbiit.webex.com/cbiit/j.php?MTID=mfdae6115f8953fb2aeb00ff9c64e7b6f | 2020-02-20 10:00:00 | Building 37 Room 4041/4107 | In-Person | Yana Stackpole (Qlucore) | BTEP | 0 | Qlucore Omics Explorer: Learn how to easily analyze your gene expression data yourself | |||
97 |
Description
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research.
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research.
DetailsWhenThu, Feb 20, 2020 - 11:00 am - 12:00 pmWhereOnline |
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research. | 2020-02-20 11:00:00 | Online | 0 | Data Science Webinar Series: Open Science | ||||||
98 |
Description
Wolfgang Resch/ Biowulf
Wolfgang Resch/ Biowulf
DetailsWhenThu, Feb 20, 2020 - 12:00 pm - 1:00 pmWhereIn-Person |
Wolfgang Resch/ Biowulf | 2020-02-20 12:00:00 | In-Person | 0 | BYOB: Optimizing Python Code | ||||||
916 |
Description
Attendance at this hands-on workshop will be limited to 20 people.
NCI/CCR: To get access to Qlucore, put a request into NCI at Your Service under Get Help https://service.cancer.gov/Get Help
Afternoon session (1-3PM) – hands-on training session using gene expression data, more advanced, and for anyone interested to learn how Qlucore can help them with gene expression data, and to get hands-on ...Read More
Attendance at this hands-on workshop will be limited to 20 people.
NCI/CCR: To get access to Qlucore, put a request into NCI at Your Service under Get Help https://service.cancer.gov/Get Help
Afternoon session (1-3PM) – hands-on training session using gene expression data, more advanced, and for anyone interested to learn how Qlucore can help them with gene expression data, and to get hands-on experience with plots commonly visualization and analysis tools (bring your laptops so you can follow along, we will provide the license access)
The training includes the following hands-on exercises (bring your laptops - must be a govt-issued laptop to get on the network):
RegisterOrganizerBTEPWhenThu, Feb 20, 2020 - 1:00 pm - 3:00 pmWhereBuilding 37 Room 4041/4107 |
Attendance at this hands-on workshop will be limited to 20 people. NCI/CCR: To get access to Qlucore, put a request into NCI at Your Service under Get Help https://service.cancer.gov/Get Help Afternoon session (1-3PM) – hands-on training session using gene expression data, more advanced, and for anyone interested to learn how Qlucore can help them with gene expression data, and to get hands-on experience with plots commonly visualization and analysis tools (bring your laptops so you can follow along, we will provide the license access) The training includes the following hands-on exercises (bring your laptops - must be a govt-issued laptop to get on the network): Import data Getting around user interface Building and configuring Heatmaps, PCA, Box plot, Volcano plot, Venn diagram Statistical tests in GUI (two group, multi group, regressions) Saving results Exploratory data analysis Functional analysis using GSEA and integration with other knowledge bases Clustering Machine learning Due to the hands-on aspect of this class, WebEx will not be provided. | 2020-02-20 13:00:00 | Building 37 Room 4041/4107 | In-Person | Yana Stackpole (Qlucore) | BTEP | 0 | Qlucore Omics Explorer Hands-on Workshop | |||
99 |
Description
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research.
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research.
DetailsWhenFri, Feb 21, 2020 - 11:00 am - 12:00 pmWhereOnline |
Brian Nosek, Executive Director and Co-Founder of Center for Open Science (COS) and Professor of University of Virginia, discusses barriers to open science and methods for improving openness and reproducibility in scientific research. | 2020-02-21 11:00:00 | Online | 0 | Data Science Webinar Series: Open Science | ||||||
100 |
Description
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics.
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics.
DetailsWhenMon, Feb 24, 2020 - 11:00 am - 12:00 pmWhereOnline |
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics. | 2020-02-24 11:00:00 | Online | 0 | Data Science Webinar Series: Why Data Sharing & Reuse are Hard to Do | ||||||
101 |
Description
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics.
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics.
DetailsWhenTue, Feb 25, 2020 - 11:00 am - 12:00 pmWhereOnline |
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics. | 2020-02-25 11:00:00 | Online | 0 | Data Science Webinar Series: Why Data Sharing & Reuse are Hard to Do | ||||||
102 |
Description
The life sciences are in the midst of a data revolution. Inexpensive and accurate genome sequencing is a reality, advanced imaging is routine, and clinical data is increasingly stored in electronic form. In principle, these advances have brought us to the threshold of a new era in medicine, one where the data sciences hold the potential to propel our understanding and treatment of disease. In practice, we are stymied by the operational challenges associated with ...Read More
The life sciences are in the midst of a data revolution. Inexpensive and accurate genome sequencing is a reality, advanced imaging is routine, and clinical data is increasingly stored in electronic form. In principle, these advances have brought us to the threshold of a new era in medicine, one where the data sciences hold the potential to propel our understanding and treatment of disease. In practice, we are stymied by the operational challenges associated with storing, sharing, and analyzing genomic and clinical data at scale. In this talk, I will overview Broad's efforts at building a data platform to address these unmet needs by 1) building patient-facing software, 2) performing data engineering, 3) creating machine learning tools, and 4) building a cloud-based researcher environment (Terra). I will also overview flagship applications in precision medicine, infectious disease surveillance, and clinical trial design.
Dr. Anthony Philippakis, M.D., Ph.D., Chief Data Officer of the Broad Institute, is presenting on efforts to facilitate storing, sharing, and analyzing genomic and clinical data in a scalable manner. He is the lead PI on the NHGRI-funded AnVIL project, through which our team has been able to participate in a pilot for the NIH-WRNMMC symposium, and have seen firsthand its potential for its use facilitating collaborative research. Dr. Philippakis is a highly engaging speaker given his unique expertise in clinical research as well as in informatics.
The presentation will also be available to stream over NIH videocast.
For more information, contact Sarah Weber (sarah.weber@nih.gov)
DetailsWhenTue, Feb 25, 2020 - 12:00 pm - 1:00 pmWhereIn-Person |
The life sciences are in the midst of a data revolution. Inexpensive and accurate genome sequencing is a reality, advanced imaging is routine, and clinical data is increasingly stored in electronic form. In principle, these advances have brought us to the threshold of a new era in medicine, one where the data sciences hold the potential to propel our understanding and treatment of disease. In practice, we are stymied by the operational challenges associated with storing, sharing, and analyzing genomic and clinical data at scale. In this talk, I will overview Broad's efforts at building a data platform to address these unmet needs by 1) building patient-facing software, 2) performing data engineering, 3) creating machine learning tools, and 4) building a cloud-based researcher environment (Terra). I will also overview flagship applications in precision medicine, infectious disease surveillance, and clinical trial design. Dr. Anthony Philippakis, M.D., Ph.D., Chief Data Officer of the Broad Institute, is presenting on efforts to facilitate storing, sharing, and analyzing genomic and clinical data in a scalable manner. He is the lead PI on the NHGRI-funded AnVIL project, through which our team has been able to participate in a pilot for the NIH-WRNMMC symposium, and have seen firsthand its potential for its use facilitating collaborative research. Dr. Philippakis is a highly engaging speaker given his unique expertise in clinical research as well as in informatics. The presentation will also be available to stream over NIH videocast. For more information, contact Sarah Weber (sarah.weber@nih.gov) | 2020-02-25 12:00:00 | In-Person | 0 | A Data Platform for Public Health | ||||||
914 |
Description
THIS EVENT HAS BEEN CANCELLED
This class is intended for researchers who would like to learn the steps of bulk RNA-Seq data analysis on the NIH Unix cluster Biowulf. You do not need to have a current Biowulf account to attend this class. Beginners and intermediate users will benefit from this class. Please bring your government-issued computer to log onto the NIH network. Before class...please download a tool to move files: For Windows ...Read More
THIS EVENT HAS BEEN CANCELLED
This class is intended for researchers who would like to learn the steps of bulk RNA-Seq data analysis on the NIH Unix cluster Biowulf. You do not need to have a current Biowulf account to attend this class. Beginners and intermediate users will benefit from this class. Please bring your government-issued computer to log onto the NIH network. Before class...please download a tool to move files: For Windows PC, suggested tool is WinScp. For Mac, suggested tool is Filezilla. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html (Go to the section "Alternative Binary Files" and download 64 bit putty.exe) RegisterOrganizerBTEPWhenTue, Feb 25, 2020 - 1:00 pm - 3:00 pmWhereNIH Bldg 37, 5th floor vestibule |
THIS EVENT HAS BEEN CANCELLEDThis class is intended for researchers who would like to learn the steps of bulk RNA-Seq data analysis on the NIH Unix cluster Biowulf. You do not need to have a current Biowulf account to attend this class. Beginners and intermediate users will benefit from this class. Please bring your government-issued computer to log onto the NIH network. Before class...please download a tool to move files: For Windows PC, suggested tool is WinScp. For Mac, suggested tool is Filezilla. For Windows PC, you will also need to download and install PuTTY from https://www.chiark.greenend.org.uk/~sgtatham/putty/latest.html (Go to the section "Alternative Binary Files" and download 64 bit putty.exe) | 2020-02-25 13:00:00 | NIH Bldg 37,5th floor vestibule | Bulk RNA-seq | In-Person | Amy Stonelake (BTEP) | BTEP | 0 | Hands-on Drop-in Session: Unix/Biowulf and bulk RNA-Seq - CANCELLED | ||
901 |
Description
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are ...Read More
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials.
RegisterOrganizerBTEPWhenWed, Feb 26, 2020 - 3:00 pm - 5:00 pmWhereFrederick Fort Detrick Building 549 Conference Room A |
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. | 2020-02-26 15:00:00 | Frederick Fort Detrick Building 549 Conference Room A | Single Cell RNA-seq | In-Person | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq: Analysis on the Palantir Platform (Feb. 26th, Frederick) | ||
103 |
Description
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics.
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics.
DetailsWhenThu, Feb 27, 2020 - 11:00 am - 12:00 pmWhereOnline |
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics. | 2020-02-27 11:00:00 | Online | 0 | Data Science Webinar Series: Why Data Sharing & Reuse are Hard to Do | ||||||
104 |
Description
In this symposium, distinguished scientists will share recent successes in their research to visualize RNA targets at the single molecule level with single cell resolution and morphological context. Here are some of the exciting topics that will be covered in the presentations:
Visualize the cellular heterogeneity of complex organs with the multiplexing and spatial capabilities of the RNAscope™ technology
Spatially map scRNA-seq gene profiles at the single cell level in the tissue context
Localize genes ...Read More
In this symposium, distinguished scientists will share recent successes in their research to visualize RNA targets at the single molecule level with single cell resolution and morphological context. Here are some of the exciting topics that will be covered in the presentations:
Visualize the cellular heterogeneity of complex organs with the multiplexing and spatial capabilities of the RNAscope™ technology
Spatially map scRNA-seq gene profiles at the single cell level in the tissue context
Localize genes of interest and cell subtype markers
Conserve precious samples by interrogating up to 12 targets on a single slide.
Connie Zhang, PhD.
Account Executive
Advanced Cell Diagnostics
Presentation Title:
Spatial Mapping of Gene Expression at Single Cell Resolution: Applications of the RNAscope
Larry Sternberg, Ph.D.
Senior Principal Scientist
Pathology/Histotechnology Laboratory (PHL), NIH, NCI
Presentation Title: Tissue-based Gene Expression Assay Support: Practical Considerations
Bring a colleague and join us to learn why the RNAscope technology is being incorporated into scientists’ workflows as a trusted RNA detection method to accelerate their research.
DetailsWhenThu, Feb 27, 2020 - 12:30 pm - 1:30 pmWhereIn-Person |
In this symposium, distinguished scientists will share recent successes in their research to visualize RNA targets at the single molecule level with single cell resolution and morphological context. Here are some of the exciting topics that will be covered in the presentations: Visualize the cellular heterogeneity of complex organs with the multiplexing and spatial capabilities of the RNAscope™ technology Spatially map scRNA-seq gene profiles at the single cell level in the tissue context Localize genes of interest and cell subtype markers Conserve precious samples by interrogating up to 12 targets on a single slide. Connie Zhang, PhD. Account Executive Advanced Cell Diagnostics Presentation Title: Spatial Mapping of Gene Expression at Single Cell Resolution: Applications of the RNAscope Larry Sternberg, Ph.D. Senior Principal Scientist Pathology/Histotechnology Laboratory (PHL), NIH, NCI Presentation Title: Tissue-based Gene Expression Assay Support: Practical Considerations Bring a colleague and join us to learn why the RNAscope technology is being incorporated into scientists’ workflows as a trusted RNA detection method to accelerate their research. | 2020-02-27 12:30:00 | In-Person | 0 | ACD Spatial Genomics Seminar | ||||||
896 |
Description
The Annotation, Visualization and Impact Analysis (AVIA) is an application developed to guide, prioritize and summarize genomic variants. AVIA maintains and aggregates dozens of publicly available variant annotation databases and predictions from impact analysis algorithms, allowing users to investigate functional significance of their genetic alterations across samples, genes, and pathways.
This demonstration will cover:
The Annotation, Visualization and Impact Analysis (AVIA) is an application developed to guide, prioritize and summarize genomic variants. AVIA maintains and aggregates dozens of publicly available variant annotation databases and predictions from impact analysis algorithms, allowing users to investigate functional significance of their genetic alterations across samples, genes, and pathways.
This demonstration will cover:
RegisterOrganizerBTEPWhenThu, Feb 27, 2020 - 1:00 pm - 3:00 pmWhereBuilding 37 Room 4041/4107 |
The Annotation, Visualization and Impact Analysis (AVIA) is an application developed to guide, prioritize and summarize genomic variants. AVIA maintains and aggregates dozens of publicly available variant annotation databases and predictions from impact analysis algorithms, allowing users to investigate functional significance of their genetic alterations across samples, genes, and pathways. This demonstration will cover: Variant annotation and impact analysis Variant representation formats and standards Analyze variants using AVIA Submit variant lists Understand annotation categories Include or exclude variants based on genes of interest genic features - intronic, exotic, splice public databases - 1000 genomes, TCGA, ClinVar region features - repeat regions, mappability custom annotations Impact analysis levels of impact - pathogenic to benign prediction algorithms on pathogenicity clinical annotations from sources such as ClinVar Variant, gene, protein and pathway analysis View related literature Overview profiles variant landscape using vcf.iobio gene variant profile using gene.iobio frequency of variant occurrence by genes and samples Comparative Analysis overlap with public data sources such as TCGA assess type of damage and compare with cancer mutational profiles using SAMM between sample comparisons Share data with collaborators Reannotate - new genome versions or new samples Link to WebEx recording: https://cbiit.webex.com/cbiit/ldr.php?RCID=838671822befaaf2bf504f85a5fb897b | 2020-02-27 13:00:00 | Building 37 Room 4041/4107 | In-Person | Uma Mudunuri (NCI/OD-F/Advanced Biomedical Computational Science),Hue Reardon (NCI/OD-F/Advanced Biomedical Computational Science), | BTEP | 0 | Variant Annotation, Visualization and Impact Analysis using AVIA | |||
105 |
Description
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics.
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics.
DetailsWhenFri, Feb 28, 2020 - 11:00 am - 12:00 pmWhereOnline |
Distinguished Professor Dr. Christine Borgman and Ph. D Candidate Irene Pasquetto of UCLA Informatics Studies compare data sharing and reuse challenges faced by researchers in life sciences, oceanography, astronomy, molecular biology, and genomics. | 2020-02-28 11:00:00 | Online | 0 | Data Science Webinar Series: Why Data Sharing & Reuse are Hard to Do | ||||||
106 |
Description
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/e688e94d71934c4183480167b05f0f67
The CIViC knowledgebase (www.civicdb.org) is an open access, open source, community-driven resource for Clinical Interpretation of Variants in Cancer. The goal of CIViC is to enable precision medicine by providing an educational forum for dissemination of knowledge and ...Read More
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/e688e94d71934c4183480167b05f0f67
The CIViC knowledgebase (www.civicdb.org) is an open access, open source, community-driven resource for Clinical Interpretation of Variants in Cancer. The goal of CIViC is to enable precision medicine by providing an educational forum for dissemination of knowledge and active discussion of the clinical significance of cancer genome alterations. The knowledgebase leverages public curation and expert moderation to create a free resource that compiles, annotates, and distributes published cancer variant knowledge to the community. Identifying and cataloging curated clinical variant knowledge in the peer-reviewed published literature for rapid searching, evaluation, dissemination, and integration into other resources enables clinical cancer variant analysis. The database can be accessed without restrictions through a user-friendly interface, via a flexible public API, or the CIViCpy Software Development Kit. All data is available without login, but curation and other functions such as commenting, flagging, and suggesting changes requires users to create a free CIViC account. The history of all curation and revision in CIViC is viewable on the web interface. Selected, expert editors review and revise submitted content, which is labeled as accepted after complete moderation. All content in CIViC adheres to a structured data model, which incorporates ontologies, standards and guidelines from across the field to promote interoperability and compatibility with other efforts. CIViC currently has a community of over 190 curators and 16,000 clinical and research users around the world.
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website https://itcr.cancergov/
For any questions please contact Daoud Meerzaman or Juli Klemm
DetailsOrganizerCBIITWhenFri, Feb 28, 2020 - 12:30 pm - 1:30 pmWhereOnline |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/e688e94d71934c4183480167b05f0f67 The CIViC knowledgebase (www.civicdb.org) is an open access, open source, community-driven resource for Clinical Interpretation of Variants in Cancer. The goal of CIViC is to enable precision medicine by providing an educational forum for dissemination of knowledge and active discussion of the clinical significance of cancer genome alterations. The knowledgebase leverages public curation and expert moderation to create a free resource that compiles, annotates, and distributes published cancer variant knowledge to the community. Identifying and cataloging curated clinical variant knowledge in the peer-reviewed published literature for rapid searching, evaluation, dissemination, and integration into other resources enables clinical cancer variant analysis. The database can be accessed without restrictions through a user-friendly interface, via a flexible public API, or the CIViCpy Software Development Kit. All data is available without login, but curation and other functions such as commenting, flagging, and suggesting changes requires users to create a free CIViC account. The history of all curation and revision in CIViC is viewable on the web interface. Selected, expert editors review and revise submitted content, which is labeled as accepted after complete moderation. All content in CIViC adheres to a structured data model, which incorporates ontologies, standards and guidelines from across the field to promote interoperability and compatibility with other efforts. CIViC currently has a community of over 190 curators and 16,000 clinical and research users around the world. The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website https://itcr.cancergov/ For any questions please contact Daoud Meerzaman or Juli Klemm | 2020-02-28 12:30:00 | Online | Online | CBIIT | 0 | Clinical Interpretation of Variants in Cancer (CIViC) Knowledgebase | ||||
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DescriptionDetailsWhenFri, Feb 28, 2020 - 2:00 pm - 3:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/e688e94d71934c4183480167b05f0f67/playback | 2020-02-28 14:00:00 | In-Person | 0 | Clinical Interpretation of Variants in Cancer (CIViC) Knowledgebase | ||||||
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Description
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index
DetailsWhenMon, Mar 02, 2020 - 11:00 am - 12:00 pmWhereOnline |
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index | 2020-03-02 11:00:00 | Online | 0 | Data Science Webinar Series: Finding & Accessing Datasets, Indexing & Identifiers | ||||||
108 |
Description
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index
DetailsWhenTue, Mar 03, 2020 - 11:00 am - 12:00 pmWhereOnline |
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index | 2020-03-03 11:00:00 | Online | 0 | Data Science Webinar Series: Finding & Accessing Datasets, Indexing & Identifiers | ||||||
902 |
Description
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This training session will include a brief lecture on the theory behind RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression, volcano plots, differential expression of genes analysis, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials.
RegisterOrganizerBTEPWhenTue, Mar 03, 2020 - 1:00 pm - 3:00 pmWhereBethesda, Building 10, FAES Classroom #4 (B1C205) |
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the theory behind RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression, volcano plots, differential expression of genes analysis, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. | 2020-03-03 13:00:00 | Bethesda, Building 10, FAES Classroom #4 (B1C205) | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | RNA-Seq: Analysis on the Palantir Platform (Mar. 3rd, Bethesda) | ||
109 |
Description
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index
DetailsWhenThu, Mar 05, 2020 - 11:00 am - 12:00 pmWhereOnline |
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index | 2020-03-05 11:00:00 | Online | 0 | Data Science Webinar Series: Finding & Accessing Datasets, Indexing & Identifiers | ||||||
110 |
Description
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index
DetailsWhenFri, Mar 06, 2020 - 11:00 am - 12:00 pmWhereOnline |
Dr. Lucila Ohno-Machado from the University of California San Diego discusses the development of the biomedical data discovery index | 2020-03-06 11:00:00 | Online | 0 | Data Science Webinar Series: Finding & Accessing Datasets, Indexing & Identifiers | ||||||
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The NIH Office of Data Science Strategy (ODSS) is presenting NIH Figshare for NIH Intramural Researchers: A Generalist Repository for Data Sharing on March 6 at 12:00 p.m. This one-hour webinar will explore how NIH intramural researchers can use the NIH Figshare instance to quickly and easily share research products, including: datasets, code, and multimedia files to make their work more discoverable, reproducible, reusable, and impactful. Register at: bit.ly/NIH-Figshare-webinar Learn more about the NIH Figshare instance, a pilot project with the generalist repository Figshare available for all NIH-funded researchers to share research data. For questions related to the NIH Figshare instance, please email ODSS at datascience@nih.gov. | 2020-03-06 12:00:00 | Online | 0 | NIH Figshare for Intramural Investigators | ||||||
112 |
Description
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas.
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas.
DetailsWhenMon, Mar 09, 2020 - 11:00 am - 12:00 pmWhereOnline |
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas. | 2020-03-09 11:00:00 | Online | 0 | Data Science Webinar Series: Data Workflows & Pipelines | ||||||
113 |
Description
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas.
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas.
DetailsWhenTue, Mar 10, 2020 - 11:00 am - 12:00 pmWhereOnline |
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas. | 2020-03-10 11:00:00 | Online | 0 | Data Science Webinar Series: Data Workflows & Pipelines | ||||||
114 |
Description
MetaCore™ is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. This workshop will review two cases: the first will investigate how infiltrating myeloid derived suppressor cells could be helping tumor cells evade the immune system and the second will review the analysis of RNA-seq, metabolomic, and proteomics data to discover potential disease mechanisms and biomarkers in patients with sepsis.
For questions please contact Daoud Meerzaman
MetaCore™ is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. This workshop will review two cases: the first will investigate how infiltrating myeloid derived suppressor cells could be helping tumor cells evade the immune system and the second will review the analysis of RNA-seq, metabolomic, and proteomics data to discover potential disease mechanisms and biomarkers in patients with sepsis.
For questions please contact Daoud Meerzaman
DetailsOrganizerCBIITWhenTue, Mar 10, 2020 - 11:00 am - 12:00 pmWhereOnline |
MetaCore™ is an integrated curated knowledge database and software suite for pathway analysis of experimental data and gene lists. This workshop will review two cases: the first will investigate how infiltrating myeloid derived suppressor cells could be helping tumor cells evade the immune system and the second will review the analysis of RNA-seq, metabolomic, and proteomics data to discover potential disease mechanisms and biomarkers in patients with sepsis. For questions please contact Daoud Meerzaman | 2020-03-10 11:00:00 | Online | CBIIT | 0 | Introduction to MetaCore | |||||
1 |
Description
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use ...Read More
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them.
This is a hands-on course with 24 laptops available in the library’s classroom. If you prefer to work from your own laptop, feel free to install the IGV browser in advance from here - software.broadinstitute.org/software/igv/download(the UCSV browser is web browser based).
DetailsOrganizerNIH Training LibraryWhenTue, Mar 10, 2020 - 1:00 pm - 3:30 pmWhereBethesda, Bldg 10 |
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them. This is a hands-on course with 24 laptops available in the library’s classroom. If you prefer to work from your own laptop, feel free to install the IGV browser in advance from here - software.broadinstitute.org/software/igv/download(the UCSV browser is web browser based). | 2020-03-10 13:00:00 | Bethesda, Bldg 10 | In-Person | NIH Training Library | 0 | NIH Library: Genome Browsers | ||||
115 |
Description
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use ...Read More
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them.
This is a hands-on course with 24 laptops available in the library’s classroom. If you prefer to work from your own laptop, feel free to install the IGV browser in advance from here - software.broadinstitute.org/software/igv/download(the UCSV browser is web browser based).
DetailsOrganizerNIH Training LibraryWhenTue, Mar 10, 2020 - 1:00 pm - 3:30 pmWhereIn-Person |
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them. This is a hands-on course with 24 laptops available in the library’s classroom. If you prefer to work from your own laptop, feel free to install the IGV browser in advance from here - software.broadinstitute.org/software/igv/download(the UCSV browser is web browser based). | 2020-03-10 13:00:00 | In-Person | NIH Training Library | 0 | NIH Library: Genome Browsers | |||||
116 |
Description
https://hpc.nih.gov/training/handouts/DL_by_Example4_20200312.pdf
https://hpc.nih.gov/apps/biogans.html
https://hpc.nih.gov/training/handouts/DL_Assignments4_20200312.pdf
This introductory course will teach the basics of deep learning
and of different types of ...Read More
https://hpc.nih.gov/training/handouts/DL_by_Example4_20200312.pdf
https://hpc.nih.gov/apps/biogans.html
https://hpc.nih.gov/training/handouts/DL_Assignments4_20200312.pdf
This introductory course will teach the basics of deep learning
and of different types of deep learning networks
through a set of hands-on biological examples implemented in Keras,
one example per class. Each class is stand-alone. Class #4 will focus
on the Generative Adversarial Networks (GANs) and their application
to biological data synthesis.
Expected knowledge: Basic Python, Basic Linux/Unix
This class is part of a series, but each class is stand-alone.
DetailsOrganizerHPC BiowulfWhenThu, Mar 12, 2020 - 9:30 am - 12:00 pmWhereOnline |
https://hpc.nih.gov/training/handouts/DL_by_Example4_20200312.pdf https://hpc.nih.gov/apps/biogans.html https://hpc.nih.gov/training/handouts/DL_Assignments4_20200312.pdf This introductory course will teach the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Each class is stand-alone. Class #4 will focus on the Generative Adversarial Networks (GANs) and their application to biological data synthesis. Expected knowledge: Basic Python, Basic Linux/Unix This class is part of a series, but each class is stand-alone. | 2020-03-12 09:30:00 | Online | Artificial Intelligence / Machine Learning | In-Person | HPC Biowulf | 0 | Deep Learning by Example on Biowulf | |||
117 |
Description
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas.
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas.
DetailsWhenThu, Mar 12, 2020 - 11:00 am - 12:00 pmWhereOnline |
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas. | 2020-03-12 11:00:00 | Online | 0 | Data Science Webinar Series: Data Workflows & Pipelines | ||||||
118 |
Description
On Friday, March 13, NIH’s Office of Data Science Strategy will host “Friday Before Pi Day,” a Friday-the-13th-inspired Pi Day celebration highlighting data science at NIH. The day’s events will include two opportunities to participate in friendly, Pi-themed presentation sessions:
Scary stories about data and the lessons we can learn from them
As part of the festivities, we’ll have a session dedicated to data horror stories: times we’ve gotten file names ...Read More
On Friday, March 13, NIH’s Office of Data Science Strategy will host “Friday Before Pi Day,” a Friday-the-13th-inspired Pi Day celebration highlighting data science at NIH. The day’s events will include two opportunities to participate in friendly, Pi-themed presentation sessions:
Scary stories about data and the lessons we can learn from them
As part of the festivities, we’ll have a session dedicated to data horror stories: times we’ve gotten file names confused, wrestled with pesky bugs in our code, toiled over data formats, or lost a precious dataset. So, we want to hear from you! Send us your data horror story ideas and the lessons you’ve learned from them. Please limit all pitches to one paragraph. We’ll select 10 and work with you to develop your stories into engaging and entertaining 10-minute talks.
Pi-tionary: 3:14-minute illustrated lightning talks
This session will give teams or individuals the opportunity to share an illustrated elevator pitch for their lab’s or office’s work. Competitors will describe what they do in lay terms while sketching it out on the whiteboard. Your drawing doesn’t have to be a data visualization; the figure can be a simple pictorial representation of your project or office mission. If you or your team would like to showcase your work at NIH, please submit your title, ICO, and participant names. Contestants will compete against other teams in front of judges from the Pi Day audience, and the winning team will take home a pie!
If you are interested in participating in either activity, please send your submissions by COB Thursday, February 13, to maryam.zaringhalam@nih.gov, indicating which session(s) you’d like to take part in.
In addition to these presentations, the day’s activities will feature a keynote lecture from data scientist Rebecca Nugent, Ph.D., an award-winning professor of statistics and data science at Carnegie Mellon University (CMU), where she holds the Stephen E. and Joyce Fienberg Professorship in Statistics & Data Science. Dr. Nugent’s keynote will focus on how data science is the “science of the people” and how data can be harnessed by everyone.
There will also be Pi-related trivia, and, of course, pie! If you have any questions, please contact datascience@nih.gov
DetailsWhenFri, Mar 13, 2020 - 9:00 am - 5:00 pmWhereIn-Person |
On Friday, March 13, NIH’s Office of Data Science Strategy will host “Friday Before Pi Day,” a Friday-the-13th-inspired Pi Day celebration highlighting data science at NIH. The day’s events will include two opportunities to participate in friendly, Pi-themed presentation sessions: Scary stories about data and the lessons we can learn from them As part of the festivities, we’ll have a session dedicated to data horror stories: times we’ve gotten file names confused, wrestled with pesky bugs in our code, toiled over data formats, or lost a precious dataset. So, we want to hear from you! Send us your data horror story ideas and the lessons you’ve learned from them. Please limit all pitches to one paragraph. We’ll select 10 and work with you to develop your stories into engaging and entertaining 10-minute talks. Pi-tionary: 3:14-minute illustrated lightning talks This session will give teams or individuals the opportunity to share an illustrated elevator pitch for their lab’s or office’s work. Competitors will describe what they do in lay terms while sketching it out on the whiteboard. Your drawing doesn’t have to be a data visualization; the figure can be a simple pictorial representation of your project or office mission. If you or your team would like to showcase your work at NIH, please submit your title, ICO, and participant names. Contestants will compete against other teams in front of judges from the Pi Day audience, and the winning team will take home a pie! If you are interested in participating in either activity, please send your submissions by COB Thursday, February 13, to maryam.zaringhalam@nih.gov, indicating which session(s) you’d like to take part in. In addition to these presentations, the day’s activities will feature a keynote lecture from data scientist Rebecca Nugent, Ph.D., an award-winning professor of statistics and data science at Carnegie Mellon University (CMU), where she holds the Stephen E. and Joyce Fienberg Professorship in Statistics & Data Science. Dr. Nugent’s keynote will focus on how data science is the “science of the people” and how data can be harnessed by everyone. There will also be Pi-related trivia, and, of course, pie! If you have any questions, please contact datascience@nih.gov | 2020-03-13 09:00:00 | In-Person | 0 | NIH Office of Data Science Strategy: Friday Before Pi Day | ||||||
119 |
Description
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas.
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas.
DetailsWhenFri, Mar 13, 2020 - 11:00 am - 12:00 pmWhereOnline |
Dr. Rommie Amaro from University of California, San Diego covers what scientific workflows and pipeline are, how they can be useful or even critical to science and big data management and presents relevant examples across biomedical research areas. | 2020-03-13 11:00:00 | Online | 0 | Data Science Webinar Series: Data Workflows & Pipelines | ||||||
903 |
Description
THIS EVENT HAS BEEN CANCELLED
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a ...Read More
THIS EVENT HAS BEEN CANCELLED
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. RegisterOrganizerBTEPWhenTue, Mar 17, 2020 - 1:30 pm - 3:30 pmWhereBethesda Building 10 FAES Classroom #6 (B1C208) |
THIS EVENT HAS BEEN CANCELLEDSingle-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. | 2020-03-17 13:30:00 | Bethesda Building 10 FAES Classroom #6 (B1C208) | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq: Analysis on the Palantir Platform (Mar. 17th, Bethesda) - CANCELLED | ||
917 |
Description
THIS EVENT HAS BEEN CANCELLED
Within the last decade, Dr. Albert has served as the lead developer of various well-known bioinformatics related, web-based platforms such as Galaxy and Biostars. During the same time, he has participated in strengthening the applied bioinformatics competencies of life sciences students at Penn State. Dr. Albert plans to talk about some of the lessons learned from running Biostars, a website serving millions of users each year, and to discuss ...Read More
THIS EVENT HAS BEEN CANCELLED
Within the last decade, Dr. Albert has served as the lead developer of various well-known bioinformatics related, web-based platforms such as Galaxy and Biostars. During the same time, he has participated in strengthening the applied bioinformatics competencies of life sciences students at Penn State. Dr. Albert plans to talk about some of the lessons learned from running Biostars, a website serving millions of users each year, and to discuss the challenges of running a Bioinformatics Consulting Center at Penn State. He will explain how these cumulative experiences, have led to the design and implementation of a new platform called Bioinformatics Recipes, an online application that aims to work as both an educational aid, and a practical data analysis platform that can serve the needs of various organizations. If you are unable to attend in person, WebEx will be provided: https://cbiit.webex.com/cbiit/j.php?MTID=m79340586cdcf3d8ee5793903e30429d3 RegisterOrganizerBTEPWhenThu, Mar 19, 2020 - 11:00 am - 12:00 pmWhereBldg 49, Conf Room 1A50 A/B |
THIS EVENT HAS BEEN CANCELLEDWithin the last decade, Dr. Albert has served as the lead developer of various well-known bioinformatics related, web-based platforms such as Galaxy and Biostars. During the same time, he has participated in strengthening the applied bioinformatics competencies of life sciences students at Penn State. Dr. Albert plans to talk about some of the lessons learned from running Biostars, a website serving millions of users each year, and to discuss the challenges of running a Bioinformatics Consulting Center at Penn State. He will explain how these cumulative experiences, have led to the design and implementation of a new platform called Bioinformatics Recipes, an online application that aims to work as both an educational aid, and a practical data analysis platform that can serve the needs of various organizations. If you are unable to attend in person, WebEx will be provided: https://cbiit.webex.com/cbiit/j.php?MTID=m79340586cdcf3d8ee5793903e30429d3 | 2020-03-19 11:00:00 | Bldg 49,Conf Room 1A50 A/B | Online | Istvan Albert (Penn State) | BTEP | 0 | Istvan Albert: Bioinformatics Recipes: Creating and Sharing Reproducible Data Analysis Workflows - CANCELLED | |||
120 |
Description
Members of the Advanced Biomedical Computational Science (ABCS) group will discuss their experiences with use of data science in biomedical research.
Members of the Advanced Biomedical Computational Science (ABCS) group will discuss their experiences with use of data science in biomedical research.
DetailsWhenTue, Mar 24, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Members of the Advanced Biomedical Computational Science (ABCS) group will discuss their experiences with use of data science in biomedical research. | 2020-03-24 12:00:00 | Online | 0 | Data Science Webinar Series: Capstone Panel Discussion | ||||||
254 |
DescriptionDetailsWhenTue, Mar 24, 2020 - 1:00 pm - 2:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/361206f278924d5099645b5e10b5ca8e/playback | 2020-03-24 13:00:00 | In-Person | 0 | Metacore | ||||||
904 |
Description
THIS EVENT HAS BEEN CANCELLED
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a ...Read More
THIS EVENT HAS BEEN CANCELLED
Single-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. RegisterOrganizerBTEPWhenWed, Mar 25, 2020 - 3:00 pm - 5:00 pmWhereFrederick, Fort Detrick, Building 549, Cafe Room |
THIS EVENT HAS BEEN CANCELLEDSingle-cell RNA sequencing (scRNA-Seq) is a rapidly evolving method in the field of single-cell genomics which has enhanced our ability to study biological processes at the cellular level. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a Seurat-based Single-cell RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the history and theory behind Single-cell RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real single-cell dataset. Topics you will learn about include filtering and QC, PCA and merging of Seurat objects, clustering, cell annotation, coloring of UMAP and TSNE plots by various metadata, and differential expression. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. | 2020-03-25 15:00:00 | Frederick, Fort Detrick, Building 549, Cafe Room | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq: Analysis on the Palantir Platform (Mar. 25th, Frederick) - CANCELLED | ||
918 |
Description
THIS EVENT HAS BEEN CANCELLED and will be rescheduled.
Small Group Hands-on Workshop on using the AVIA Tool for Variant Annotation, Visualization and Impact Analysis
https://avia-abcc.ncifcrf.gov
Two of the AVIA developers will be on-hand to work one-on-one and small group with CCR researchers.
We will work through a set of test data and help researchers load and work with their own data.
Please ...Read More
THIS EVENT HAS BEEN CANCELLED and will be rescheduled.
Small Group Hands-on Workshop on using the AVIA Tool for Variant Annotation, Visualization and Impact Analysis
https://avia-abcc.ncifcrf.gov
Two of the AVIA developers will be on-hand to work one-on-one and small group with CCR researchers.
We will work through a set of test data and help researchers load and work with their own data.
Please bring your government-issued laptop to access the NIH network.
If you do not have a laptop please send email to ncibtep@nih.gov to request a loaner laptop.
RegisterOrganizerBTEPWhenThu, Mar 26, 2020 - 1:00 pm - 3:00 pmWhereBuilding 37 Room 4041/4107 |
THIS EVENT HAS BEEN CANCELLED and will be rescheduled. Small Group Hands-on Workshop on using the AVIA Tool for Variant Annotation, Visualization and Impact Analysis https://avia-abcc.ncifcrf.gov Two of the AVIA developers will be on-hand to work one-on-one and small group with CCR researchers. We will work through a set of test data and help researchers load and work with their own data. Please bring your government-issued laptop to access the NIH network. If you do not have a laptop please send email to ncibtep@nih.gov to request a loaner laptop. | 2020-03-26 13:00:00 | Building 37 Room 4041/4107 | Online | Hue Reardon (NCI/OD-F/Advanced Biomedical Computational Science), | BTEP | 0 | Small Group Hands-on Workshop: Variant Annotation, Visualization and Impact Analysis: AVIA tool - CANCELLED | |||
905 |
Description
THIS EVENT HAS BEEN CANCELLED
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are ...Read More
THIS EVENT HAS BEEN CANCELLED
RNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the theory behind RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression, volcano plots, differential expression of genes analysis, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. RegisterOrganizerBTEPWhenTue, Mar 31, 2020 - 1:00 pm - 3:00 pmWhereBethesda, Building 10, FAES Classroom #1 (B1C211) |
THIS EVENT HAS BEEN CANCELLEDRNA sequencing (RNA-Seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the Palantir collaboration platform, which is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This training session will include a brief lecture on the theory behind RNA-seq. Most of the class time will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression, volcano plots, differential expression of genes analysis, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. Trainees will need an NIH laptop capable of connecting to the secure NIH wireless network, as well as their own NIH credentials. | 2020-03-31 13:00:00 | Bethesda, Building 10, FAES Classroom #1 (B1C211) | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | RNA-Seq: Analysis on the Palantir Platform (Mar. 31st, Bethesda) - CANCELLED | ||
121 |
Description
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research. We encourage attendance in person, but the class is also available online through WebEx.
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research. We encourage attendance in person, but the class is also available online through WebEx.
DetailsWhenThu, Apr 02, 2020 - 10:00 am - 11:30 amWhereOnline |
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research. We encourage attendance in person, but the class is also available online through WebEx. | 2020-04-02 10:00:00 | Online | 0 | Variant Selection in Genomic DNA sequences | ||||||
122 |
Description
The emergence of SARS-CoV-2 in China has driven an enormous global effort to contribute and share genomic data in order to inform local authorities and the international community about key aspects of the outbreak. Analyses of these data have played an important role in tracking the epidemiology and evolution of the virus in real-time. Nextstrain (nextstrain.org) is an open science initiative to harness the scientific and public health potential of pathogen genome data, and ...Read More
The emergence of SARS-CoV-2 in China has driven an enormous global effort to contribute and share genomic data in order to inform local authorities and the international community about key aspects of the outbreak. Analyses of these data have played an important role in tracking the epidemiology and evolution of the virus in real-time. Nextstrain (nextstrain.org) is an open science initiative to harness the scientific and public health potential of pathogen genome data, and has previously provided key insight into outbreaks of Ebola and Zika, and longer-term pathogen spread of Influenza and Enterovirus. This initiative provides a continually-updated view of publicly available data alongside powerful analytic and visualization tools for use by the community.
Drs. Hodcroft and Hadfield, along with other members of the Nextstrain team, have been maintaining an up-to-date analysis of SARS-CoV-2 at nextstrain.org/ncov since January 20th 2020. This talk will provide an overview of Nextstrain and how it embodies ‘FAIR’ principles (Findable, Accessible, Interoperable, Reusable), as well as outlining what insights Nextstrain has provided about the COVID-19 outbreak via genomic data sharing from around the world.
https://nextstrain.org/
DetailsWhenFri, Apr 03, 2020 - 12:00 pm - 1:00 pmWhereOnline |
The emergence of SARS-CoV-2 in China has driven an enormous global effort to contribute and share genomic data in order to inform local authorities and the international community about key aspects of the outbreak. Analyses of these data have played an important role in tracking the epidemiology and evolution of the virus in real-time. Nextstrain (nextstrain.org) is an open science initiative to harness the scientific and public health potential of pathogen genome data, and has previously provided key insight into outbreaks of Ebola and Zika, and longer-term pathogen spread of Influenza and Enterovirus. This initiative provides a continually-updated view of publicly available data alongside powerful analytic and visualization tools for use by the community. Drs. Hodcroft and Hadfield, along with other members of the Nextstrain team, have been maintaining an up-to-date analysis of SARS-CoV-2 at nextstrain.org/ncov since January 20th 2020. This talk will provide an overview of Nextstrain and how it embodies ‘FAIR’ principles (Findable, Accessible, Interoperable, Reusable), as well as outlining what insights Nextstrain has provided about the COVID-19 outbreak via genomic data sharing from around the world. https://nextstrain.org/ | 2020-04-03 12:00:00 | Online | 0 | Tracking epidemics with Nextstrain | ||||||
123 |
Description
Accelerating discovery requires fast access to genomic data as well as on-demand computational resources. NCBI, with support from NIH's STRIDES initiative, has moved all of the Sequence Read Archive (SRA) to the Google (GCP) and Amazon (AWS) clouds, providing unparalleled data access to its 14+ petabytes of data.
In this webinar, we will go over how to best leverage the cloud to speed up research and discovery. We'll introduce new and existing tools and data including ...Read More
Accelerating discovery requires fast access to genomic data as well as on-demand computational resources. NCBI, with support from NIH's STRIDES initiative, has moved all of the Sequence Read Archive (SRA) to the Google (GCP) and Amazon (AWS) clouds, providing unparalleled data access to its 14+ petabytes of data.
In this webinar, we will go over how to best leverage the cloud to speed up research and discovery. We'll introduce new and existing tools and data including BigQuery, SRA Toolkit, and more. You'll hear about real workflows in the cloud, including an example of the work NCBI was able to accomplish in the cloud using SRA data and a case study from an SRA cloud customer. By the end of this webinar, you will know where to look for new cloud products from NCBI, access help information to get you started, and will have expanded your knowledge on how to run your analyses efficiently in the cloud.
Please send your questions, comments and feedback to: webinars@ncbi.nlm.nih.gov
DetailsWhenWed, Apr 08, 2020 - 12:00 pm - 12:45 pmWhereOnline |
Accelerating discovery requires fast access to genomic data as well as on-demand computational resources. NCBI, with support from NIH's STRIDES initiative, has moved all of the Sequence Read Archive (SRA) to the Google (GCP) and Amazon (AWS) clouds, providing unparalleled data access to its 14+ petabytes of data. In this webinar, we will go over how to best leverage the cloud to speed up research and discovery. We'll introduce new and existing tools and data including BigQuery, SRA Toolkit, and more. You'll hear about real workflows in the cloud, including an example of the work NCBI was able to accomplish in the cloud using SRA data and a case study from an SRA cloud customer. By the end of this webinar, you will know where to look for new cloud products from NCBI, access help information to get you started, and will have expanded your knowledge on how to run your analyses efficiently in the cloud. Please send your questions, comments and feedback to: webinars@ncbi.nlm.nih.gov | 2020-04-08 12:00:00 | Online | 0 | Accelerate genomics discovery with SRA in the cloud | ||||||
124 |
Description
SS/SC Seminar: Dimension Reduction Methods: from PCA to TSNE and UMAP
In this seminar series, I will review some basic concepts of statistical analyses that are commonly used in everyday research. I will talk about supervised versus unsupervised learning. My talk will be focused on unsupervised methods, in particular, on dimension reduction methods, which are fundamental to most of state-of-the-art technologies used in the single cell data analysis. Principal Component Analysis (PCA) provides a ...Read More
SS/SC Seminar: Dimension Reduction Methods: from PCA to TSNE and UMAP
In this seminar series, I will review some basic concepts of statistical analyses that are commonly used in everyday research. I will talk about supervised versus unsupervised learning. My talk will be focused on unsupervised methods, in particular, on dimension reduction methods, which are fundamental to most of state-of-the-art technologies used in the single cell data analysis. Principal Component Analysis (PCA) provides a foundation to understanding various dimension reduction methods. Principal components are the linear combinations of the original variables with the 1st principal component captures the largest variance, followed by a descending order for the rest of the principal components and subject to the principal components being orthonormal. Multidimensional Scaling (MDS) provides an alternative strategy for dimension reduction. I will explain why MDS is equivalent to PCA. PCA and MDS are linear dimension reduction methods. In 2000, two Science papers described nonlinear dimension reduction methods: ISOMAP and locally-linear embedding (LLE). ISOMAP is similar to MDS except that it uses geodesic distance instead of Euclidean distance. ISOMAP and LLE provided a conceptual framework that led to the development of the current state of the art dimension reduction methods, such as TSNE and UMAP, which have much improved performance and better visual representation. I will discuss the connection between dimension reduction methods and clustering analysis. I will talk about integrated data analysis using Canonical Correlation Analysis and trajectory analysis using reversed graph embedding.
Thursday Aril 16, 2020, 12noon – 1pm
Maxwell Lee
‘Dimension Reduction Methods: from PCA to TSNE and UMAP – Part I’
DetailsWhenThu, Apr 16, 2020 - 12:00 pm - 1:00 pmWhereOnline |
SS/SC Seminar: Dimension Reduction Methods: from PCA to TSNE and UMAP In this seminar series, I will review some basic concepts of statistical analyses that are commonly used in everyday research. I will talk about supervised versus unsupervised learning. My talk will be focused on unsupervised methods, in particular, on dimension reduction methods, which are fundamental to most of state-of-the-art technologies used in the single cell data analysis. Principal Component Analysis (PCA) provides a foundation to understanding various dimension reduction methods. Principal components are the linear combinations of the original variables with the 1st principal component captures the largest variance, followed by a descending order for the rest of the principal components and subject to the principal components being orthonormal. Multidimensional Scaling (MDS) provides an alternative strategy for dimension reduction. I will explain why MDS is equivalent to PCA. PCA and MDS are linear dimension reduction methods. In 2000, two Science papers described nonlinear dimension reduction methods: ISOMAP and locally-linear embedding (LLE). ISOMAP is similar to MDS except that it uses geodesic distance instead of Euclidean distance. ISOMAP and LLE provided a conceptual framework that led to the development of the current state of the art dimension reduction methods, such as TSNE and UMAP, which have much improved performance and better visual representation. I will discuss the connection between dimension reduction methods and clustering analysis. I will talk about integrated data analysis using Canonical Correlation Analysis and trajectory analysis using reversed graph embedding. Thursday Aril 16, 2020, 12noon – 1pm Maxwell Lee ‘Dimension Reduction Methods: from PCA to TSNE and UMAP – Part I’ | 2020-04-16 12:00:00 | Online | 0 | Dimension Reduction Methods: from PCA to TSNE and UMAP | ||||||
125 |
Description
NIAID
Building Workflows with Python
NIAID
Building Workflows with Python
DetailsWhenWed, Apr 22, 2020 - 2:00 pm - 4:00 pmWhereOnline |
NIAID Building Workflows with Python | 2020-04-22 14:00:00 | Online | 0 | Python Programming for Scientists | ||||||
906 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
This is Part 1 of a 2-part course. Please make sure you take Part 2 after taking Part 1.
Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN.
RegisterOrganizerBTEPWhenWed, Apr 22, 2020 - 3:00 pm - 4:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. This is Part 1 of a 2-part course. Please make sure you take Part 2 after taking Part 1. Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. | 2020-04-22 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP - Part 1: Background & Theory (Apr. 22nd) | ||
126 |
Description
The Center for Biomedical Informatics and Information Technology (CBIIT) training program invites you to attend a webinar on the software application, DNASTAR Lasergene.
DNASTAR offers data analysis tools for molecular biology, protein analysis, and genomics. Attendees will see an overview of the applications included in Lasergene Molecular Biology and Protein package. The webinar will demonstrate the latest version, Lasergene 17, and will include cloning and primer design; auto-annotation; multiple sequence (phylogenetic) alignment; Sanger sequence assembly/alignment; ...Read More
The Center for Biomedical Informatics and Information Technology (CBIIT) training program invites you to attend a webinar on the software application, DNASTAR Lasergene.
DNASTAR offers data analysis tools for molecular biology, protein analysis, and genomics. Attendees will see an overview of the applications included in Lasergene Molecular Biology and Protein package. The webinar will demonstrate the latest version, Lasergene 17, and will include cloning and primer design; auto-annotation; multiple sequence (phylogenetic) alignment; Sanger sequence assembly/alignment; and protein analysis, including 3D structure visualization.
DetailsOrganizerCBIITWhenThu, Apr 23, 2020 - 11:00 am - 12:00 pmWhereOnline |
The Center for Biomedical Informatics and Information Technology (CBIIT) training program invites you to attend a webinar on the software application, DNASTAR Lasergene. DNASTAR offers data analysis tools for molecular biology, protein analysis, and genomics. Attendees will see an overview of the applications included in Lasergene Molecular Biology and Protein package. The webinar will demonstrate the latest version, Lasergene 17, and will include cloning and primer design; auto-annotation; multiple sequence (phylogenetic) alignment; Sanger sequence assembly/alignment; and protein analysis, including 3D structure visualization. | 2020-04-23 11:00:00 | Online | CBIIT | 0 | Introduction to DNASTAR Lasergene | |||||
919 |
Description
Within the last decade, Dr. Albert has served as the lead developer of various well-known bioinformatics related, web-based platforms such as Galaxy and Biostars. During the same time, he has participated in strengthening the applied bioinformatics competencies of life sciences students at Penn State. Dr. Albert plans to talk about some of the lessons learned from running Biostars, a website serving millions of users each year, and to discuss the challenges of running a Bioinformatics ...Read More
Within the last decade, Dr. Albert has served as the lead developer of various well-known bioinformatics related, web-based platforms such as Galaxy and Biostars. During the same time, he has participated in strengthening the applied bioinformatics competencies of life sciences students at Penn State. Dr. Albert plans to talk about some of the lessons learned from running Biostars, a website serving millions of users each year, and to discuss the challenges of running a Bioinformatics Consulting Center at Penn State. He will explain how these cumulative experiences, have led to the design and implementation of a new platform called Bioinformatics Recipes, an online application that aims to work as both an educational aid, and a practical data analysis platform that can serve the needs of various organizations.
Presentation: https://docs.google.com/presentation/d/1xtZ9bNvVggY7mnKJfh7B1mYb0yOp3K9LD6SmoOQnsVU/edit?usp=sharing
WebEx recording: https://cbiit.webex.com/cbiit/ldr.php?RCID=d212f383485e4b0341264e14995dbc7b
RegisterOrganizerBTEPWhenThu, Apr 23, 2020 - 11:00 am - 12:00 pmWhereOnline Webinar |
Within the last decade, Dr. Albert has served as the lead developer of various well-known bioinformatics related, web-based platforms such as Galaxy and Biostars. During the same time, he has participated in strengthening the applied bioinformatics competencies of life sciences students at Penn State. Dr. Albert plans to talk about some of the lessons learned from running Biostars, a website serving millions of users each year, and to discuss the challenges of running a Bioinformatics Consulting Center at Penn State. He will explain how these cumulative experiences, have led to the design and implementation of a new platform called Bioinformatics Recipes, an online application that aims to work as both an educational aid, and a practical data analysis platform that can serve the needs of various organizations. Presentation: https://docs.google.com/presentation/d/1xtZ9bNvVggY7mnKJfh7B1mYb0yOp3K9LD6SmoOQnsVU/edit?usp=sharing WebEx recording: https://cbiit.webex.com/cbiit/ldr.php?RCID=d212f383485e4b0341264e14995dbc7b | 2020-04-23 11:00:00 | Online Webinar | Online | Istvan Albert (Penn State) | BTEP | 0 | Webinar, Istvan Albert (PSU): Bioinformatics Recipes: Creating and Sharing Reproducible Data Analysis Workflows | |||
127 |
Description
SSSC Seminar:Dimension Reduction Methods: from PCA to TSNE and UMAP
In this seminar series, I will review some basic concepts of statistical analyses that are commonly used in everyday research. I will talk about supervised versus unsupervised learning. My talk will be focused on unsupervised methods, in particular, on dimension reduction methods, which are fundamental to most of state-of-the-art technologies used in the single cell data analysis. Principal Component Analysis (PCA) provides a foundation ...Read More
SSSC Seminar:Dimension Reduction Methods: from PCA to TSNE and UMAP
In this seminar series, I will review some basic concepts of statistical analyses that are commonly used in everyday research. I will talk about supervised versus unsupervised learning. My talk will be focused on unsupervised methods, in particular, on dimension reduction methods, which are fundamental to most of state-of-the-art technologies used in the single cell data analysis. Principal Component Analysis (PCA) provides a foundation to understanding various dimension reduction methods. Principal components are the linear combinations of the original variables with the 1st principal component captures the largest variance, followed by a descending order for the rest of the principal components and subject to the principal components being orthonormal. Multidimensional Scaling (MDS) provides an alternative strategy for dimension reduction. I will explain why MDS is equivalent to PCA. PCA and MDS are linear dimension reduction methods. In 2000, two Science papers described nonlinear dimension reduction methods: ISOMAP and locally-linear embedding (LLE). ISOMAP is similar to MDS except that it uses geodesic distance instead of Euclidean distance. ISOMAP and LLE provided a conceptual framework that led to the development of the current state of the art dimension reduction methods, such as TSNE and UMAP, which have much improved performance and better visual representation. I will discuss the connection between dimension reduction methods and clustering analysis. I will talk about integrated data analysis using Canonical Correlation Analysis and trajectory analysis using reversed graph embedding.
Thursday, April 23, 2020, 12noon – 1pm
Maxwell Lee
‘Dimension Reduction Methods: from PCA to TSNE and UMAP – Part II’
DetailsWhenThu, Apr 23, 2020 - 12:00 pm - 1:00 pmWhereOnline |
SSSC Seminar:Dimension Reduction Methods: from PCA to TSNE and UMAP In this seminar series, I will review some basic concepts of statistical analyses that are commonly used in everyday research. I will talk about supervised versus unsupervised learning. My talk will be focused on unsupervised methods, in particular, on dimension reduction methods, which are fundamental to most of state-of-the-art technologies used in the single cell data analysis. Principal Component Analysis (PCA) provides a foundation to understanding various dimension reduction methods. Principal components are the linear combinations of the original variables with the 1st principal component captures the largest variance, followed by a descending order for the rest of the principal components and subject to the principal components being orthonormal. Multidimensional Scaling (MDS) provides an alternative strategy for dimension reduction. I will explain why MDS is equivalent to PCA. PCA and MDS are linear dimension reduction methods. In 2000, two Science papers described nonlinear dimension reduction methods: ISOMAP and locally-linear embedding (LLE). ISOMAP is similar to MDS except that it uses geodesic distance instead of Euclidean distance. ISOMAP and LLE provided a conceptual framework that led to the development of the current state of the art dimension reduction methods, such as TSNE and UMAP, which have much improved performance and better visual representation. I will discuss the connection between dimension reduction methods and clustering analysis. I will talk about integrated data analysis using Canonical Correlation Analysis and trajectory analysis using reversed graph embedding. Thursday, April 23, 2020, 12noon – 1pm Maxwell Lee ‘Dimension Reduction Methods: from PCA to TSNE and UMAP – Part II’ | 2020-04-23 12:00:00 | Online | 0 | Dimension Reduction Methods: from PCA to TSNE to UMAP Part 2 | ||||||
907 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
This is Part 2 of a 2-part course. Please make sure you have taken Part 1 before taking Part 2.
Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN.
RegisterOrganizerBTEPWhenThu, Apr 23, 2020 - 3:00 pm - 4:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. This is Part 2 of a 2-part course. Please make sure you have taken Part 1 before taking Part 2. Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. | 2020-04-23 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP - Part 2: Hands-on Workshop (Apr. 23rd) | ||
128 |
Description
Introduction to Machine Learning with Python and scikit-learn
Introduction to Machine Learning with Python and scikit-learn
DetailsWhenMon, Apr 27, 2020 - 2:00 pm - 3:00 pmWhereOnline |
Introduction to Machine Learning with Python and scikit-learn | 2020-04-27 14:00:00 | Online | 0 | NIAID Python Programming for Scientists | ||||||
908 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
This is Part 1 of a 2-part course. Please make sure you take Part 2 after taking Part 1.
Please note: Trainees will need their own NIH user name and password, and an NIH computer capable of connecting to the secure NIH network using VPN.
RegisterOrganizerBTEPWhenTue, Apr 28, 2020 - 3:00 pm - 4:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. This is Part 1 of a 2-part course. Please make sure you take Part 2 after taking Part 1. Please note: Trainees will need their own NIH user name and password, and an NIH computer capable of connecting to the secure NIH network using VPN. | 2020-04-28 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP - Part 1: Background & Theory (Apr. 28th) | ||
129 |
Description
Enabling Reproducible Science with Python and Jupiter
Enabling Reproducible Science with Python and Jupiter
DetailsWhenWed, Apr 29, 2020 - 2:00 pm - 4:00 pmWhereOnline |
Enabling Reproducible Science with Python and Jupiter | 2020-04-29 14:00:00 | Online | 0 | NIAID Python Programming for Scientists | ||||||
130 |
Description
Presenter: Dr. Christian Aguilera-Sandoval, BD
Description: This webinar will provide an overview of FlowJo, an integrated environment for viewing and analyzing flow cytometry data. Attendees will see how FlowJo can be used to uniformly analyze whole experiments encompassing many related samples. Participants also will learn how to use FlowJo’s tools to generate graphs and statistical reports to further drive discovery of biological mechanisms.
Presenter: Dr. Christian Aguilera-Sandoval, BD
Description: This webinar will provide an overview of FlowJo, an integrated environment for viewing and analyzing flow cytometry data. Attendees will see how FlowJo can be used to uniformly analyze whole experiments encompassing many related samples. Participants also will learn how to use FlowJo’s tools to generate graphs and statistical reports to further drive discovery of biological mechanisms.
DetailsOrganizerCBIITWhenThu, Apr 30, 2020 - 12:00 pm - 2:00 pmWhereOnline |
Presenter: Dr. Christian Aguilera-Sandoval, BD Description: This webinar will provide an overview of FlowJo, an integrated environment for viewing and analyzing flow cytometry data. Attendees will see how FlowJo can be used to uniformly analyze whole experiments encompassing many related samples. Participants also will learn how to use FlowJo’s tools to generate graphs and statistical reports to further drive discovery of biological mechanisms. | 2020-04-30 12:00:00 | Online | CBIIT | 0 | FlowJo: An Integrated environment for viewing and analyzing flow cytometry data | |||||
131 |
Description
SSSC Seminar: Dimension Reduction Methods: from PCA to TSNE and UMAP
In this seminar series, I will review some basic concepts of statistical analyses that are commonly used in everyday research. I will talk about supervised versus unsupervised learning. My talk will be focused on unsupervised methods, in particular, on dimension reduction methods, which are fundamental to most of state-of-the-art technologies used in the single cell data analysis. Principal Component Analysis (PCA) provides a foundation ...Read More
SSSC Seminar: Dimension Reduction Methods: from PCA to TSNE and UMAP
In this seminar series, I will review some basic concepts of statistical analyses that are commonly used in everyday research. I will talk about supervised versus unsupervised learning. My talk will be focused on unsupervised methods, in particular, on dimension reduction methods, which are fundamental to most of state-of-the-art technologies used in the single cell data analysis. Principal Component Analysis (PCA) provides a foundation to understanding various dimension reduction methods. Principal components are the linear combinations of the original variables with the 1st principal component captures the largest variance, followed by a descending order for the rest of the principal components and subject to the principal components being orthonormal. Multidimensional Scaling (MDS) provides an alternative strategy for dimension reduction. I will explain why MDS is equivalent to PCA. PCA and MDS are linear dimension reduction methods. In 2000, two Science papers described nonlinear dimension reduction methods: ISOMAP and locally-linear embedding (LLE). ISOMAP is similar to MDS except that it uses geodesic distance instead of Euclidean distance. ISOMAP and LLE provided a conceptual framework that led to the development of the current state of the art dimension reduction methods, such as TSNE and UMAP, which have much improved performance and better visual representation. I will discuss the connection between dimension reduction methods and clustering analysis. I will talk about integrated data analysis using Canonical Correlation Analysis and trajectory analysis using reversed graph embedding.
Thursday, April 30, 2020, 12noon – 1pm
Maxwell Lee
‘Dimension Reduction Methods: from PCA to TSNE and UMAP – Part III’
DetailsWhenThu, Apr 30, 2020 - 12:00 pm - 1:00 pmWhereOnline |
SSSC Seminar: Dimension Reduction Methods: from PCA to TSNE and UMAP In this seminar series, I will review some basic concepts of statistical analyses that are commonly used in everyday research. I will talk about supervised versus unsupervised learning. My talk will be focused on unsupervised methods, in particular, on dimension reduction methods, which are fundamental to most of state-of-the-art technologies used in the single cell data analysis. Principal Component Analysis (PCA) provides a foundation to understanding various dimension reduction methods. Principal components are the linear combinations of the original variables with the 1st principal component captures the largest variance, followed by a descending order for the rest of the principal components and subject to the principal components being orthonormal. Multidimensional Scaling (MDS) provides an alternative strategy for dimension reduction. I will explain why MDS is equivalent to PCA. PCA and MDS are linear dimension reduction methods. In 2000, two Science papers described nonlinear dimension reduction methods: ISOMAP and locally-linear embedding (LLE). ISOMAP is similar to MDS except that it uses geodesic distance instead of Euclidean distance. ISOMAP and LLE provided a conceptual framework that led to the development of the current state of the art dimension reduction methods, such as TSNE and UMAP, which have much improved performance and better visual representation. I will discuss the connection between dimension reduction methods and clustering analysis. I will talk about integrated data analysis using Canonical Correlation Analysis and trajectory analysis using reversed graph embedding. Thursday, April 30, 2020, 12noon – 1pm Maxwell Lee ‘Dimension Reduction Methods: from PCA to TSNE and UMAP – Part III’ | 2020-04-30 12:00:00 | Online | 0 | Webinar: Dimension Reduction Methods: from PCA to TSNE to UMAP Part 3 | ||||||
255 |
DescriptionDetailsWhenThu, Apr 30, 2020 - 12:00 pm - 1:00 pmWhereIn-Person |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/513032e4d351405ba008422226966d29/playback | 2020-04-30 12:00:00 | In-Person | 0 | FlowJo v10 Training | ||||||
909 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
This is Part 2 of a 2-part course. Please make sure you have taken Part 1 before taking Part 2.
Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN.
RegisterOrganizerBTEPWhenThu, Apr 30, 2020 - 3:00 pm - 5:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. This is Part 2 of a 2-part course. Please make sure you have taken Part 1 before taking Part 2. Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. | 2020-04-30 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP - Part 2: Hands-on Workshop (Apr. 30th) | ||
132 |
Description
BioCyc.org [1] is an extensive web portal containing 17,000 microbial genomes and associated metabolic pathways. BioCyc databases are created through a process that combines computational inferences with imported and curated data from multiple sources. The first step in the creation of BioCyc databases is to run prediction algorithms for metabolic pathways, operons, PFam domains, and orthologs. We next run programs that import data from related databases (such as UniProt) including regulatory network data, protein features, subcellular ...Read More
BioCyc.org [1] is an extensive web portal containing 17,000 microbial genomes and associated metabolic pathways. BioCyc databases are created through a process that combines computational inferences with imported and curated data from multiple sources. The first step in the creation of BioCyc databases is to run prediction algorithms for metabolic pathways, operons, PFam domains, and orthologs. We next run programs that import data from related databases (such as UniProt) including regulatory network data, protein features, subcellular locations, and Gene Ontology assignments.
Curated databases next receive intensive review and updating by a Ph.D. biologist that includes reviewing the computationally predicted metabolic pathways, entering new gene functions and metabolic pathways from the experimental literature, and defining protein complexes. The resulting databases are high-quality reference sources for the latest gene and pathway information. Overall the BioCyc databases have been curated from 95,000 publications.
The BioCyc website provides extensive bioinformatics tools for searching and analyzing these databases, and leveraging them for analysis of omics datasets. Genome-related tools include a genome browser, sequence searching and alignment, and extraction of sequence regions. Pathway-related tools include pathway diagrams, a tool for navigating zoomable organism-specific metabolic map diagrams, and a tool for searching for metabolic routes that transform a starting metabolite into a product metabolite. Regulation tools depict operons and regulatory sites, as well as showing full organism regulatory networks. Comparative analysis tools enable comparisons of genome organization, of orthologs, and of pathway complements. Omics data analysis tools support enrichment analysis and painting of transcriptomics and metabolomics data onto individual pathway diagrams and onto zoomable metabolic map diagrams. A new Omics Dashboard tool enables interactive exploration of omics datasets through a hierarchy of cellular systems. SmartTables enable users to construct tables of genes, metabolites, or pathways, and to perform analysis such as transforming a set of pathways to all genes within the pathway set.
DetailsWhenFri, May 01, 2020 - 12:00 pm - 1:00 pmWhereOnline |
BioCyc.org [1] is an extensive web portal containing 17,000 microbial genomes and associated metabolic pathways. BioCyc databases are created through a process that combines computational inferences with imported and curated data from multiple sources. The first step in the creation of BioCyc databases is to run prediction algorithms for metabolic pathways, operons, PFam domains, and orthologs. We next run programs that import data from related databases (such as UniProt) including regulatory network data, protein features, subcellular locations, and Gene Ontology assignments. Curated databases next receive intensive review and updating by a Ph.D. biologist that includes reviewing the computationally predicted metabolic pathways, entering new gene functions and metabolic pathways from the experimental literature, and defining protein complexes. The resulting databases are high-quality reference sources for the latest gene and pathway information. Overall the BioCyc databases have been curated from 95,000 publications. The BioCyc website provides extensive bioinformatics tools for searching and analyzing these databases, and leveraging them for analysis of omics datasets. Genome-related tools include a genome browser, sequence searching and alignment, and extraction of sequence regions. Pathway-related tools include pathway diagrams, a tool for navigating zoomable organism-specific metabolic map diagrams, and a tool for searching for metabolic routes that transform a starting metabolite into a product metabolite. Regulation tools depict operons and regulatory sites, as well as showing full organism regulatory networks. Comparative analysis tools enable comparisons of genome organization, of orthologs, and of pathway complements. Omics data analysis tools support enrichment analysis and painting of transcriptomics and metabolomics data onto individual pathway diagrams and onto zoomable metabolic map diagrams. A new Omics Dashboard tool enables interactive exploration of omics datasets through a hierarchy of cellular systems. SmartTables enable users to construct tables of genes, metabolites, or pathways, and to perform analysis such as transforming a set of pathways to all genes within the pathway set. | 2020-05-01 12:00:00 | Online | 0 | The BioCyc Web Portal for Microbial Genomes and Metabolic Pathways | ||||||
910 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
This is Part 1 of a 2-part course. Please make sure you take Part 2 after taking Part 1.
Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN.
RegisterOrganizerBTEPWhenTue, May 05, 2020 - 3:00 pm - 4:30 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. This is Part 1 of a 2-part course. Please make sure you take Part 2 after taking Part 1. Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. | 2020-05-05 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP - Part 1: Background & Theory (May 5th) | ||
133 |
Description
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research.
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research.
DetailsOrganizerNIH Training LibraryWhenThu, May 07, 2020 - 10:00 am - 11:30 amWhereOnline |
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research. | 2020-05-07 10:00:00 | Online | NIH Training Library | 0 | Variant Selection in Genomic DNA sequences | |||||
911 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
This is Part 2 of a 2-part course. Please make sure you have taken Part 1 before taking Part 2.
Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN.
RegisterOrganizerBTEPWhenThu, May 07, 2020 - 3:00 pm - 5:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. This is Part 2 of a 2-part course. Please make sure you have taken Part 1 before taking Part 2. Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. | 2020-05-07 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP - Part 2: Hands-on Workshop (May 7th) | ||
134 |
Description
DNASTAR offers software solutions for molecular biology, structural biology, and genomics. In this class, attendees will be presented with an overview of the applications within the Lasergene Suite. The instructor will use the latest software version and demonstration data to provide tutorials for various workflows, including: cloning and primer design, Sanger sequence alignment, protein structure analysis, and next generation sequence assembly and analysis. Individual meetings after the training session can be scheduled to provide help ...Read More
DNASTAR offers software solutions for molecular biology, structural biology, and genomics. In this class, attendees will be presented with an overview of the applications within the Lasergene Suite. The instructor will use the latest software version and demonstration data to provide tutorials for various workflows, including: cloning and primer design, Sanger sequence alignment, protein structure analysis, and next generation sequence assembly and analysis. Individual meetings after the training session can be scheduled to provide help with specific projects. To schedule an individual meeting, please email the instructor.
DetailsOrganizerNIH Training LibraryWhenFri, May 08, 2020 - 9:30 am - 3:30 pmWhereOnline |
DNASTAR offers software solutions for molecular biology, structural biology, and genomics. In this class, attendees will be presented with an overview of the applications within the Lasergene Suite. The instructor will use the latest software version and demonstration data to provide tutorials for various workflows, including: cloning and primer design, Sanger sequence alignment, protein structure analysis, and next generation sequence assembly and analysis. Individual meetings after the training session can be scheduled to provide help with specific projects. To schedule an individual meeting, please email the instructor. | 2020-05-08 09:30:00 | Online | NIH Training Library | 0 | DNASTAR Lasergene Demonstration and Training Workshop | |||||
140 |
Description
This webinar will provide an introduction to RNA-Seq data analysis followed by tutorials of popular RNA-Seq analysis applications. Participants will be prepared to independently run basic RNA-Seq analysis for expression profiling using a “point and click” approach on a public Galaxy platform.
Presenter: Dr. Daoud Meerzaman and Dr. Qingrong Chen
This webinar will provide an introduction to RNA-Seq data analysis followed by tutorials of popular RNA-Seq analysis applications. Participants will be prepared to independently run basic RNA-Seq analysis for expression profiling using a “point and click” approach on a public Galaxy platform.
Presenter: Dr. Daoud Meerzaman and Dr. Qingrong Chen
DetailsOrganizerCBIITWhenTue, May 12, 2020 - 10:00 am - 4:00 pmWhereOnline |
This webinar will provide an introduction to RNA-Seq data analysis followed by tutorials of popular RNA-Seq analysis applications. Participants will be prepared to independently run basic RNA-Seq analysis for expression profiling using a “point and click” approach on a public Galaxy platform. Presenter: Dr. Daoud Meerzaman and Dr. Qingrong Chen | 2020-05-12 10:00:00 | Online | CBIIT | 0 | RNA-Seq Data Analysis on the Galaxy Platform | |||||
912 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
This is Part 1 of a 2-part course. Please make sure you take Part 2 after taking Part 1.
Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN.
RegisterOrganizerBTEPWhenTue, May 12, 2020 - 3:00 pm - 4:30 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. This is Part 1 of a 2-part course. Please make sure you take Part 2 after taking Part 1. Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. | 2020-05-12 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP - Part 1: Background & Theory (May 12th) | ||
141 |
Description
During this virtual panel discussion, members of the Advanced Biomedical Computational Science (ABCS) group will discuss their experiences with use of data science in biomedical research. The panel discussion will cover:
Types of research data that ABCS works with.
Challenges faced when working with research data and solutions to overcome these challenges.
Benefits and obstacles to data sharing.
Advice on best practices when working with biomedical research data.
Participants include:
Uma S. Mudunuri, ABCS Deputy ...Read More
During this virtual panel discussion, members of the Advanced Biomedical Computational Science (ABCS) group will discuss their experiences with use of data science in biomedical research. The panel discussion will cover:
Types of research data that ABCS works with.
Challenges faced when working with research data and solutions to overcome these challenges.
Benefits and obstacles to data sharing.
Advice on best practices when working with biomedical research data.
Participants include:
Uma S. Mudunuri, ABCS Deputy Director
Justin B. Lack, Ph.D., NIAID Bioinformatics Team Lead
Yanling Liu, Ph.D., Imaging and Visualization Team Lead
Raul Cachau, Ph.D., Senior Principal Scientist
Parthav Jailwala, CCR Bioinformatics Team Lead
Brian T. Luke, Ph.D., Principal Scientist
Email Joelle Mornini at Joelle.Mornini@nih.gov if you have any questions about the Data Science Discussion Panel.
DetailsWhenWed, May 13, 2020 - 11:00 am - 12:00 pmWhereOnline |
During this virtual panel discussion, members of the Advanced Biomedical Computational Science (ABCS) group will discuss their experiences with use of data science in biomedical research. The panel discussion will cover: Types of research data that ABCS works with. Challenges faced when working with research data and solutions to overcome these challenges. Benefits and obstacles to data sharing. Advice on best practices when working with biomedical research data. Participants include: Uma S. Mudunuri, ABCS Deputy Director Justin B. Lack, Ph.D., NIAID Bioinformatics Team Lead Yanling Liu, Ph.D., Imaging and Visualization Team Lead Raul Cachau, Ph.D., Senior Principal Scientist Parthav Jailwala, CCR Bioinformatics Team Lead Brian T. Luke, Ph.D., Principal Scientist Email Joelle Mornini at Joelle.Mornini@nih.gov if you have any questions about the Data Science Discussion Panel. | 2020-05-13 11:00:00 | Online | 0 | ABCS: Data Science Discussion Panel | ||||||
142 |
Description
Speaker: Maxwell LeeToday Max will discuss the principals of TSNE and UMAP, the single cell sequencing data analysis work flow and how parameters of software affect the results.
Speaker: Maxwell LeeToday Max will discuss the principals of TSNE and UMAP, the single cell sequencing data analysis work flow and how parameters of software affect the results.
DetailsWhenThu, May 14, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Speaker: Maxwell LeeToday Max will discuss the principals of TSNE and UMAP, the single cell sequencing data analysis work flow and how parameters of software affect the results. | 2020-05-14 12:00:00 | Online | 0 | Principles of TSNE and UMAP | ||||||
913 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses.
This is Part 2 of a 2-part course. Please make sure you have taken Part 1 before taking Part 2.
Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN.
RegisterOrganizerBTEPWhenThu, May 14, 2020 - 3:00 pm - 5:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of two parts, taught in two separate sessions. The first session will consist of a lecture on the theory behind RNA-seq and many of the methodologies we use in the analysis. The second session will be devoted to a workshop in which trainees will be guided through a basic analysis of a real RNA-seq dataset. Topics you will learn about include filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After training, trainees will be ready to upload their own data to the platform and begin their own analyses. This is Part 2 of a 2-part course. Please make sure you have taken Part 1 before taking Part 2. Please note: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. | 2020-05-14 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP - Part 2: Hands-on Workshop (May 14th) | ||
143 |
Description
This training will provide an introduction to RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The exercise will run on the Galaxy platform using Illumina paired-end RNA-seq data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; measure ...Read More
This training will provide an introduction to RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The exercise will run on the Galaxy platform using Illumina paired-end RNA-seq data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; measure abundance of transcripts; perform differential expression analysis; and visualize the output of RNA-seq analyses.
DetailsOrganizerNIH Training LibraryWhenMon, May 18, 2020 - 11:00 am - 2:00 pmWhereOnline |
This training will provide an introduction to RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The exercise will run on the Galaxy platform using Illumina paired-end RNA-seq data. Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; measure abundance of transcripts; perform differential expression analysis; and visualize the output of RNA-seq analyses. | 2020-05-18 11:00:00 | Online | NIH Training Library | 0 | RNA-Seq Analysis Training on the Galaxy Platform | |||||
144 |
Description
Students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for DNA-Seq and ATAC/ ChIP-Seq data analysis.The class will start with NGS data import, followed by filtering duplicates, SNV detection and annotation in DNA-seq analysis; Peak detection and annotation in ATAC-seq analysis; Visualize data using Chromosome view, Sankey plot, TSS plot and other viewers.Benefits: Acquire working knowledge of tools available to NIH researchers ...Read More
Students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for DNA-Seq and ATAC/ ChIP-Seq data analysis.The class will start with NGS data import, followed by filtering duplicates, SNV detection and annotation in DNA-seq analysis; Peak detection and annotation in ATAC-seq analysis; Visualize data using Chromosome view, Sankey plot, TSS plot and other viewers.Benefits: Acquire working knowledge of tools available to NIH researchers for the start to finish DNA-Seq and ATAC/ChIP-seq data analysis. Who should attend: NIH staff interested in learning DNA-Seq data analysis and ATAC/ChIP-seq data analysis.
DetailsOrganizerNIH Training LibraryWhenTue, May 19, 2020 - 9:30 am - 12:00 pmWhereOnline |
Students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for DNA-Seq and ATAC/ ChIP-Seq data analysis.The class will start with NGS data import, followed by filtering duplicates, SNV detection and annotation in DNA-seq analysis; Peak detection and annotation in ATAC-seq analysis; Visualize data using Chromosome view, Sankey plot, TSS plot and other viewers.Benefits: Acquire working knowledge of tools available to NIH researchers for the start to finish DNA-Seq and ATAC/ChIP-seq data analysis. Who should attend: NIH staff interested in learning DNA-Seq data analysis and ATAC/ChIP-seq data analysis. | 2020-05-19 09:30:00 | Online | NIH Training Library | 0 | Hands-On DNA-Seq and ATAC-Seq Data Analysis in Partek Flow | |||||
145 |
Description
UCSC Xena ( xena.ucscedu/) is a web-based visual integration and exploration tool for multi-omic data and associated clinical and phenotypic annotations. Xena showcases seminal cancer genomics datasets from TCGA and the Pan-Cancer Atlas, as well as the GDC, PCAWG, and ICGC; a total of more than 1500 datasets across 50 cancer types. We support virtually any type of functional genomics data modality, including SNPs, INDELs, large structural variants, CNV, gene and other types of expression, DNA methylation, ...Read More
UCSC Xena ( xena.ucscedu/) is a web-based visual integration and exploration tool for multi-omic data and associated clinical and phenotypic annotations. Xena showcases seminal cancer genomics datasets from TCGA and the Pan-Cancer Atlas, as well as the GDC, PCAWG, and ICGC; a total of more than 1500 datasets across 50 cancer types. We support virtually any type of functional genomics data modality, including SNPs, INDELs, large structural variants, CNV, gene and other types of expression, DNA methylation, clinical and phenotypic annotations. Browser features include the high performance Visual Spreadsheet, dynamic Kaplan-Meier survival analysis, powerful filtering and subgrouping, charts, statistical analyses, genomic signatures, and live bookmarks. Researchers can securely view their own analysis results side-by-side with the data already in Xena, enabling insight and discovery between public and private data. Integration occurs only within the Xena Browser, ensuring pre-publication data remains private.
Xena can help you answer questions like:
* Is over-expression of geneA associated with lower survival?
* Is geneB differentially expressed in tumor vs normal?
* Do my subgroups have differential survival?
* What is the relationship between expression, mutation, copy number, etc for these genes?
This webinar will include a live demonstration of Xena. Please bring a laptop with either Chrome or Firefox installed to follow along.
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancergov/
DetailsOrganizerCBIITWhenTue, May 19, 2020 - 12:30 pm - 1:30 pmWhereOnline |
UCSC Xena ( xena.ucscedu/) is a web-based visual integration and exploration tool for multi-omic data and associated clinical and phenotypic annotations. Xena showcases seminal cancer genomics datasets from TCGA and the Pan-Cancer Atlas, as well as the GDC, PCAWG, and ICGC; a total of more than 1500 datasets across 50 cancer types. We support virtually any type of functional genomics data modality, including SNPs, INDELs, large structural variants, CNV, gene and other types of expression, DNA methylation, clinical and phenotypic annotations. Browser features include the high performance Visual Spreadsheet, dynamic Kaplan-Meier survival analysis, powerful filtering and subgrouping, charts, statistical analyses, genomic signatures, and live bookmarks. Researchers can securely view their own analysis results side-by-side with the data already in Xena, enabling insight and discovery between public and private data. Integration occurs only within the Xena Browser, ensuring pre-publication data remains private. Xena can help you answer questions like: * Is over-expression of geneA associated with lower survival? * Is geneB differentially expressed in tumor vs normal? * Do my subgroups have differential survival? * What is the relationship between expression, mutation, copy number, etc for these genes? This webinar will include a live demonstration of Xena. Please bring a laptop with either Chrome or Firefox installed to follow along. The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancergov/ | 2020-05-19 12:30:00 | Online | CBIIT | 0 | Introduction to UCSC Xena | |||||
146 |
Description
The class will start with an overview of Partek Genomics Suite with Pathway and followed with the hands-on training on Illumina 450K Methylation array data. The workflow can also be used on HumanMethylation27 (27K) and Human MethylationEPIC (850K) BeadChips. Students will learn how to perform QA/QC, detect differential methylation, find genes overlapping CpG loci and biological interpretation as well as other basic analysis in Partek Genomics Suite with Pathway.
For example: import data from ...Read More
The class will start with an overview of Partek Genomics Suite with Pathway and followed with the hands-on training on Illumina 450K Methylation array data. The workflow can also be used on HumanMethylation27 (27K) and Human MethylationEPIC (850K) BeadChips. Students will learn how to perform QA/QC, detect differential methylation, find genes overlapping CpG loci and biological interpretation as well as other basic analysis in Partek Genomics Suite with Pathway.
For example: import data from Illumina methylation array in .idat files; methylation array-specific normalization; perform QA/AC; detection of differentially methylated CpG loci; creating list of loci of interest; identifying methylation signatures; find overlapping genes; biological interpretation; visualization (PCA; Dot plot; Hierarchical clustering; Pathway). Benefits: Acquire working knowledge of tools available to NIH researchers for Microarray Methylation data analysis.
DetailsOrganizerNIH Training LibraryWhenTue, May 19, 2020 - 1:00 pm - 4:00 pmWhereOnline |
The class will start with an overview of Partek Genomics Suite with Pathway and followed with the hands-on training on Illumina 450K Methylation array data. The workflow can also be used on HumanMethylation27 (27K) and Human MethylationEPIC (850K) BeadChips. Students will learn how to perform QA/QC, detect differential methylation, find genes overlapping CpG loci and biological interpretation as well as other basic analysis in Partek Genomics Suite with Pathway. For example: import data from Illumina methylation array in .idat files; methylation array-specific normalization; perform QA/AC; detection of differentially methylated CpG loci; creating list of loci of interest; identifying methylation signatures; find overlapping genes; biological interpretation; visualization (PCA; Dot plot; Hierarchical clustering; Pathway). Benefits: Acquire working knowledge of tools available to NIH researchers for Microarray Methylation data analysis. | 2020-05-19 13:00:00 | Online | NIH Training Library | 0 | Hands-On Microarray Methylation Data Analysis in Partek Genomic Suite | |||||
147 |
Description
Advances in technology have reduced the cost of single cell sequencing, opening the doors to many new areas of study including transcriptome, DNA genomics, epigenomics and microbial systems. This workshop, provided by experts from across NIH, will give an overview of single-cell sequencing, especially in single cell RNA-seq, highlight tips and potential related to single-cell RNA sequencing, and introduce the major methods and tools available for single-cell RNA sequencing and analysis (both commercial and open ...Read More
Advances in technology have reduced the cost of single cell sequencing, opening the doors to many new areas of study including transcriptome, DNA genomics, epigenomics and microbial systems. This workshop, provided by experts from across NIH, will give an overview of single-cell sequencing, especially in single cell RNA-seq, highlight tips and potential related to single-cell RNA sequencing, and introduce the major methods and tools available for single-cell RNA sequencing and analysis (both commercial and open source).
Strategies and Methods in scRNA-seq Data Analysis
Li Jia, Bioinformatician, NIH Library
Single cell sequencing has reopened the definition of a cell’s identity and the ways in which that identity is regulated by the cell’s molecular circuitry. Learn the types of studies that are well suited for single cell sequencing analysis as well as how to design a single cell experiment. The speaker will also walk through the steps of a Single Cell RNA-Sequence (scRNA-seq) processing, common analysis strategies, and state-of-the-art analysis methods using R.
Avoiding Common Pitfalls in Single Cell RNA-Seq Experiments
Michael Kelly, Senior Scientist, Single Cell Analysis Facility, Frederick National Laboratory
As the use of single cell sequencing becomes increasingly common, researchers may have a false sense that the technique is immune to issues that undermine the experiment, only to find limitations at the data analysis stage. The speaker will discuss various examples of potential data issues that can arise such as variability in number of targets datapoints, low gene detection, and technical batch effects. As part of this discussion the speaker will address some strategies for how to avoid them, and what they might look like in the final dataset. The speaker will also discuss some of the approaches used during a typical single cell RNA-Seq analysis workflow to help mitigate effects on your data.
The Applications of Current Single Cell Sequencing
Brian J. Henson, Senior Specialist, Illumina, Inc.
The speaker will provide an overview and demonstration of the current single-cell applications available, including RNA, ATAC, CNV, TCR, Epitope, and spatial gene expression. Several examples from the literature will be highlighted as use cases for the tools. The speaker will conclude with a practical discussion on the utility and capacity of using the single-cell applications on the NovaSeq and the NextSeq 2000 benchtop sequencers.
Single Cell Analysis in Partek Flow
Xiaowen Wang, Senior Technical Support, Partek, Inc.
Demonstration from a Partek scientist who will utilize Single Cell RNA-Seq data within Partek Flow to streamline Multi-omics data analysis. This GUI-based tool helps to overcome common analysis challenges on scRNA-Seq data and has built in data visualization options.
Identifying and Interpreting the Human Liver Cellular Landscape using OmicSoft and IPA
Eric Seiser, Senior Application Scientist, QIAGEN Bioinformatics
The speaker will provide a practical example of how they utilized publicly available scRNA-Seq data in a research study. Specifically, the speaker processed scRNA-Seq human liver data using the OmicSoft single-cell analysis pipeline to identify numerous discrete cell populations. Gene signatures from these resident cells were then analyzed in Ingenuity Pathway Analysis to determine both shared and distinct cell biology in the context of pathways, regulation, and functional characteristics. These results provide insight into hepatic cells as well as the immune microenvironment within the liver.
DetailsOrganizerNIH Training LibraryWhenWed, May 20, 2020 - 9:30 am - 4:00 pmWhereOnline |
Advances in technology have reduced the cost of single cell sequencing, opening the doors to many new areas of study including transcriptome, DNA genomics, epigenomics and microbial systems. This workshop, provided by experts from across NIH, will give an overview of single-cell sequencing, especially in single cell RNA-seq, highlight tips and potential related to single-cell RNA sequencing, and introduce the major methods and tools available for single-cell RNA sequencing and analysis (both commercial and open source). Strategies and Methods in scRNA-seq Data Analysis Li Jia, Bioinformatician, NIH Library Single cell sequencing has reopened the definition of a cell’s identity and the ways in which that identity is regulated by the cell’s molecular circuitry. Learn the types of studies that are well suited for single cell sequencing analysis as well as how to design a single cell experiment. The speaker will also walk through the steps of a Single Cell RNA-Sequence (scRNA-seq) processing, common analysis strategies, and state-of-the-art analysis methods using R. Avoiding Common Pitfalls in Single Cell RNA-Seq Experiments Michael Kelly, Senior Scientist, Single Cell Analysis Facility, Frederick National Laboratory As the use of single cell sequencing becomes increasingly common, researchers may have a false sense that the technique is immune to issues that undermine the experiment, only to find limitations at the data analysis stage. The speaker will discuss various examples of potential data issues that can arise such as variability in number of targets datapoints, low gene detection, and technical batch effects. As part of this discussion the speaker will address some strategies for how to avoid them, and what they might look like in the final dataset. The speaker will also discuss some of the approaches used during a typical single cell RNA-Seq analysis workflow to help mitigate effects on your data. The Applications of Current Single Cell Sequencing Brian J. Henson, Senior Specialist, Illumina, Inc. The speaker will provide an overview and demonstration of the current single-cell applications available, including RNA, ATAC, CNV, TCR, Epitope, and spatial gene expression. Several examples from the literature will be highlighted as use cases for the tools. The speaker will conclude with a practical discussion on the utility and capacity of using the single-cell applications on the NovaSeq and the NextSeq 2000 benchtop sequencers. Single Cell Analysis in Partek Flow Xiaowen Wang, Senior Technical Support, Partek, Inc. Demonstration from a Partek scientist who will utilize Single Cell RNA-Seq data within Partek Flow to streamline Multi-omics data analysis. This GUI-based tool helps to overcome common analysis challenges on scRNA-Seq data and has built in data visualization options. Identifying and Interpreting the Human Liver Cellular Landscape using OmicSoft and IPA Eric Seiser, Senior Application Scientist, QIAGEN Bioinformatics The speaker will provide a practical example of how they utilized publicly available scRNA-Seq data in a research study. Specifically, the speaker processed scRNA-Seq human liver data using the OmicSoft single-cell analysis pipeline to identify numerous discrete cell populations. Gene signatures from these resident cells were then analyzed in Ingenuity Pathway Analysis to determine both shared and distinct cell biology in the context of pathways, regulation, and functional characteristics. These results provide insight into hepatic cells as well as the immune microenvironment within the liver. | 2020-05-20 09:30:00 | Online | NIH Training Library | 0 | Bioinformatics Workshop: Single Cell RNA-Seq Analysis | |||||
148 |
Description
Students will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. For example: import data; filter cells using interactive QA/QC charts; filter and normalize Single Cell RNA-Seq data; visualize cell populations using the interactive 3D t-SNE plot; overlay gene expression and pathway signatures on the 3D t-SNE plot; select and classify cells on the 3D t-SNE plot; detect ...Read More
Students will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. For example: import data; filter cells using interactive QA/QC charts; filter and normalize Single Cell RNA-Seq data; visualize cell populations using the interactive 3D t-SNE plot; overlay gene expression and pathway signatures on the 3D t-SNE plot; select and classify cells on the 3D t-SNE plot; detect differentially expressed genes; filter a gene list; identify enriched KEGG pathway and/or GO terms; visualize cell-level results using heat maps, volcano plots, and violin plots. Benefits: Acquire working knowledge of tools available to NIH researchers for Single Cell RNA-Seq data analysis.
DetailsOrganizerNIH Training LibraryWhenThu, May 21, 2020 - 9:30 am - 12:00 pmWhereOnline |
Students will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. For example: import data; filter cells using interactive QA/QC charts; filter and normalize Single Cell RNA-Seq data; visualize cell populations using the interactive 3D t-SNE plot; overlay gene expression and pathway signatures on the 3D t-SNE plot; select and classify cells on the 3D t-SNE plot; detect differentially expressed genes; filter a gene list; identify enriched KEGG pathway and/or GO terms; visualize cell-level results using heat maps, volcano plots, and violin plots. Benefits: Acquire working knowledge of tools available to NIH researchers for Single Cell RNA-Seq data analysis. | 2020-05-21 09:30:00 | Online | NIH Training Library | 0 | Hands-On Single Cell RNA-Seq Data Analysis in Partek Flow | |||||
149 |
Description
NIH BYOB is an informal, community-led talk series that meets once a month for presentations and discussions relating to topics of interest among the NIH bioinformatics community. Rather than focusing on research itself, the meetings are focused more on the practical side of doing bioinformatics work.
All are welcome, regardless of experience!
NIH BYOB is an informal, community-led talk series that meets once a month for presentations and discussions relating to topics of interest among the NIH bioinformatics community. Rather than focusing on research itself, the meetings are focused more on the practical side of doing bioinformatics work.
All are welcome, regardless of experience!
DetailsWhenThu, May 21, 2020 - 12:30 pm - 1:30 pmWhereOnline |
NIH BYOB is an informal, community-led talk series that meets once a month for presentations and discussions relating to topics of interest among the NIH bioinformatics community. Rather than focusing on research itself, the meetings are focused more on the practical side of doing bioinformatics work. All are welcome, regardless of experience! | 2020-05-21 12:30:00 | Online | 0 | Bring your own Bioinformatics: Making better usef of Biowulf storage | ||||||
150 |
Description
Students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for RNA-Seq analysis. For example: import data from .fastq files; perform QA/QC (Pre-alignment QA/QC, Post-alignment QA/QC); trim bases; align reads to reference genome; quantify gene/transcript abundance; normalize gene counts; detect differentially expressed genes; filter a gene list; identify enriched KEGG pathway and/or GO terms; visualization (heat maps; volcano plots; PCA ...Read More
Students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for RNA-Seq analysis. For example: import data from .fastq files; perform QA/QC (Pre-alignment QA/QC, Post-alignment QA/QC); trim bases; align reads to reference genome; quantify gene/transcript abundance; normalize gene counts; detect differentially expressed genes; filter a gene list; identify enriched KEGG pathway and/or GO terms; visualization (heat maps; volcano plots; PCA scatterplot; dot plots; hierarchical clustering; chromosome view; and more). Benefits: Acquire working knowledge of tools available to NIH researchers for the start to finish RNA-Seq data analysis.
DetailsOrganizerNIH Training LibraryWhenThu, May 21, 2020 - 1:00 pm - 4:00 pmWhereOnline |
Students will learn how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for RNA-Seq analysis. For example: import data from .fastq files; perform QA/QC (Pre-alignment QA/QC, Post-alignment QA/QC); trim bases; align reads to reference genome; quantify gene/transcript abundance; normalize gene counts; detect differentially expressed genes; filter a gene list; identify enriched KEGG pathway and/or GO terms; visualization (heat maps; volcano plots; PCA scatterplot; dot plots; hierarchical clustering; chromosome view; and more). Benefits: Acquire working knowledge of tools available to NIH researchers for the start to finish RNA-Seq data analysis. | 2020-05-21 13:00:00 | Online | NIH Training Library | 0 | Hands-On RNA-Seq Data Analysis in Partek Flow | |||||
920 |
Description
This workshop will teach the basic concepts and practical aspects of ChIP-Seq data analysis. Topics covered will include: experimental approach, quality control, peak calling, and basic biological interpretation. No computer is required for this class, there is no hands-on work.
9:30-10:30 “ChIP-seq considerations”
This section will focus on the importance of experimental design in ChIP-seq. Topics include: variations on ChIP-seq, inputs, replicates, the limitations of ChIP-seq, and the value of follow-up analyses.
10:30-12:00 “Analysis of ...Read More
This workshop will teach the basic concepts and practical aspects of ChIP-Seq data analysis. Topics covered will include: experimental approach, quality control, peak calling, and basic biological interpretation. No computer is required for this class, there is no hands-on work.
9:30-10:30 “ChIP-seq considerations”
This section will focus on the importance of experimental design in ChIP-seq. Topics include: variations on ChIP-seq, inputs, replicates, the limitations of ChIP-seq, and the value of follow-up analyses.
10:30-12:00 “Analysis of ChIP-seq data"
This section will focus on the analytical pipeline that is implemented by CCBR and NCBR. Time will be spent discussing the tools used, why they were chosen, and how to make sense of their outputs. Example results will be shown. Topics include: quality control and read alignment, deduplication, normalization, gene coverage plotting, peak calling, motif analysis, and more.
12:00-12:30 Questions
A WebEx recording of the webinar is available here
And here are the slides used: BTEP_ChIP_May2020_Introduction and BTEP_ChIP_May2020_Analysis
RegisterOrganizerBTEPWhenThu, May 28, 2020 - 9:30 am - 12:30 pmWhereOnline Webinar |
This workshop will teach the basic concepts and practical aspects of ChIP-Seq data analysis. Topics covered will include: experimental approach, quality control, peak calling, and basic biological interpretation. No computer is required for this class, there is no hands-on work. 9:30-10:30 “ChIP-seq considerations” This section will focus on the importance of experimental design in ChIP-seq. Topics include: variations on ChIP-seq, inputs, replicates, the limitations of ChIP-seq, and the value of follow-up analyses. 10:30-12:00 “Analysis of ChIP-seq data" This section will focus on the analytical pipeline that is implemented by CCBR and NCBR. Time will be spent discussing the tools used, why they were chosen, and how to make sense of their outputs. Example results will be shown. Topics include: quality control and read alignment, deduplication, normalization, gene coverage plotting, peak calling, motif analysis, and more. 12:00-12:30 Questions A WebEx recording of the webinar is available here And here are the slides used: BTEP_ChIP_May2020_Introduction and BTEP_ChIP_May2020_Analysis | 2020-05-28 09:30:00 | Online Webinar | Online | Vishal Koparde (CCBR),Tovah Markowitz (NCBR),Paul Schaughency (NCBR) | BTEP | 0 | ChIP-Seq Data Analysis: Probing DNA-Protein Interactions | |||
151 |
Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The hands-on training session will mainly focus on biological interpretation of expression data but will also ...Read More
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The hands-on training session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics.
Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects.
DetailsOrganizerNIH Training LibraryWhenThu, May 28, 2020 - 10:00 am - 3:00 pmWhereOnline |
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The hands-on training session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics. Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects. | 2020-05-28 10:00:00 | Online | NIH Training Library | 0 | Ingenuity Pathway Analysis (Qiagen, IPA) | |||||
153 |
Description
After nearly two decades of improvements, the current human reference genome is the most accurate and complete vertebrate genome ever produced. However, no one chromosome has been finished end to end, and hundreds of unresolved gaps persist. The remaining gaps include ribosomal rDNA arrays, large near-identical segmental duplications, and satellite DNA arrays. These regions harbor largely unexplored variation of unknown consequence, and their absence from the current reference genome can lead to experimental artifacts and ...Read More
After nearly two decades of improvements, the current human reference genome is the most accurate and complete vertebrate genome ever produced. However, no one chromosome has been finished end to end, and hundreds of unresolved gaps persist. The remaining gaps include ribosomal rDNA arrays, large near-identical segmental duplications, and satellite DNA arrays. These regions harbor largely unexplored variation of unknown consequence, and their absence from the current reference genome can lead to experimental artifacts and hide true variants when re-sequencing additional human genomes. Using emerging, long-read sequencing technologies, the Telomere-to-Telomere consortium recently announced the completion of the first human chromosome, chromosome X. I will describe what it took to finish the first human chromosome "T2T" and report on the consortium's progress towards completing the rest of the human genome.
Bio:
Dr. Adam Phillippy is currently a Senior Investigator and head of the Genome Informatics Section at the National Human Genome Research Institute (NHGRI). His lab develops efficient computational methods for analyzing DNA sequencing data, including tools for genome assembly (Canu), genome alignment (MUMmer), genome clustering (Mash), microbial forensics (Parsnp), and metagenomics (Krona). He is a co-founder of the Telomere-to-Telomere Consortium and the Vertebrate Genomes Project, which seek to enable the complete and gapless assembly of human and all other vertebrate genomes. In 2019, he was awarded the US Presidential Early Career Award for Scientists and Engineers and was granted tenure at NHGRI. His lab's homepage can be found at genomeinformatics.githubio/
DetailsWhenMon, Jun 01, 2020 - 3:00 pm - 4:00 pmWhereOnline |
After nearly two decades of improvements, the current human reference genome is the most accurate and complete vertebrate genome ever produced. However, no one chromosome has been finished end to end, and hundreds of unresolved gaps persist. The remaining gaps include ribosomal rDNA arrays, large near-identical segmental duplications, and satellite DNA arrays. These regions harbor largely unexplored variation of unknown consequence, and their absence from the current reference genome can lead to experimental artifacts and hide true variants when re-sequencing additional human genomes. Using emerging, long-read sequencing technologies, the Telomere-to-Telomere consortium recently announced the completion of the first human chromosome, chromosome X. I will describe what it took to finish the first human chromosome "T2T" and report on the consortium's progress towards completing the rest of the human genome. Bio: Dr. Adam Phillippy is currently a Senior Investigator and head of the Genome Informatics Section at the National Human Genome Research Institute (NHGRI). His lab develops efficient computational methods for analyzing DNA sequencing data, including tools for genome assembly (Canu), genome alignment (MUMmer), genome clustering (Mash), microbial forensics (Parsnp), and metagenomics (Krona). He is a co-founder of the Telomere-to-Telomere Consortium and the Vertebrate Genomes Project, which seek to enable the complete and gapless assembly of human and all other vertebrate genomes. In 2019, he was awarded the US Presidential Early Career Award for Scientists and Engineers and was granted tenure at NHGRI. His lab's homepage can be found at genomeinformatics.githubio/ | 2020-06-01 15:00:00 | Online | 0 | Finishing the human genome | ||||||
154 |
Description
QIAGEN’s CLC Biomedical Genomics Workbench enables researchers to analyze NGS data without the use of command line. In this workshop, we will cover RNA-Seq and variant calling as applicable to human and other organisms. We will explore workflows within the Microbial Genomics Module, including tools for pathogen typing and metagenomics (16S and whole genome).
Registrants will receive an email with information and instructions to install CLC Genomics Workbench before the class. Contact your systems ...Read More
QIAGEN’s CLC Biomedical Genomics Workbench enables researchers to analyze NGS data without the use of command line. In this workshop, we will cover RNA-Seq and variant calling as applicable to human and other organisms. We will explore workflows within the Microbial Genomics Module, including tools for pathogen typing and metagenomics (16S and whole genome).
Registrants will receive an email with information and instructions to install CLC Genomics Workbench before the class. Contact your systems office or TS Bioinformatics for assistance with downloading the software. If you register the day before the class, you may not have time to download and properly install CLC. If you do not have the software installed, this training will be demo only.
DetailsOrganizerNIH Training LibraryWhenWed, Jun 03, 2020 - 10:00 am - 3:00 pmWhereOnline |
QIAGEN’s CLC Biomedical Genomics Workbench enables researchers to analyze NGS data without the use of command line. In this workshop, we will cover RNA-Seq and variant calling as applicable to human and other organisms. We will explore workflows within the Microbial Genomics Module, including tools for pathogen typing and metagenomics (16S and whole genome). Registrants will receive an email with information and instructions to install CLC Genomics Workbench before the class. Contact your systems office or TS Bioinformatics for assistance with downloading the software. If you register the day before the class, you may not have time to download and properly install CLC. If you do not have the software installed, this training will be demo only. | 2020-06-03 10:00:00 | Online | NIH Training Library | 0 | CLC Biomedical Workbench and Microbial Tools | |||||
155 |
Description
The COVID-19 pandemic, caused by the novel coronavirus SARS-CoV-2, creates an urgent need for identifying molecular mechanisms that mediate viral entry, propagation, and tissue pathology. Single-cell analysis of healthy- and SARS-CoV-2-infected tissues offers a unique lens to identify these mechanisms. In an international integrated analysis of the Human Cell Atlas Lung Biological Network--which spans more than 100 single-cell and single-nucleus RNA-Seq datasets previously collected from healthy tissues and includes many previously unpublished studies--we identified the ...Read More
The COVID-19 pandemic, caused by the novel coronavirus SARS-CoV-2, creates an urgent need for identifying molecular mechanisms that mediate viral entry, propagation, and tissue pathology. Single-cell analysis of healthy- and SARS-CoV-2-infected tissues offers a unique lens to identify these mechanisms. In an international integrated analysis of the Human Cell Atlas Lung Biological Network--which spans more than 100 single-cell and single-nucleus RNA-Seq datasets previously collected from healthy tissues and includes many previously unpublished studies--we identified the cell types throughout the body most likely to be susceptible to viral entry. In line with epidemiological observations, we also identified increased expression of key mediators of SARS-CoV-2 cellular entry associated with increasing age, male gender, and smoking. In addition, we identified a gene program shared by these cells that includes genes that may mediate viral entry and play key immune roles, such as IL6 and its receptor and co-receptor, IL1R; TNF-response pathways; and complement genes. Following these studies, as the pandemic reached our local Boston community, we have adapted existing sample-processing pipelines with our collaborators in Boston hospitals and are using single-cell and spatial genomics techniques to procure, process, and analyze blood and post-mortem tissue from COVID-19 patients. We are using these pipelines to examine the tissue and immune cellular response to COVID-19, particularly to understand the factors underlying its severity in some individuals, and will share our preliminary results.
DetailsWhenWed, Jun 03, 2020 - 3:00 pm - 4:00 pmWhereOnline |
The COVID-19 pandemic, caused by the novel coronavirus SARS-CoV-2, creates an urgent need for identifying molecular mechanisms that mediate viral entry, propagation, and tissue pathology. Single-cell analysis of healthy- and SARS-CoV-2-infected tissues offers a unique lens to identify these mechanisms. In an international integrated analysis of the Human Cell Atlas Lung Biological Network--which spans more than 100 single-cell and single-nucleus RNA-Seq datasets previously collected from healthy tissues and includes many previously unpublished studies--we identified the cell types throughout the body most likely to be susceptible to viral entry. In line with epidemiological observations, we also identified increased expression of key mediators of SARS-CoV-2 cellular entry associated with increasing age, male gender, and smoking. In addition, we identified a gene program shared by these cells that includes genes that may mediate viral entry and play key immune roles, such as IL6 and its receptor and co-receptor, IL1R; TNF-response pathways; and complement genes. Following these studies, as the pandemic reached our local Boston community, we have adapted existing sample-processing pipelines with our collaborators in Boston hospitals and are using single-cell and spatial genomics techniques to procure, process, and analyze blood and post-mortem tissue from COVID-19 patients. We are using these pipelines to examine the tissue and immune cellular response to COVID-19, particularly to understand the factors underlying its severity in some individuals, and will share our preliminary results. | 2020-06-03 15:00:00 | Online | 0 | Toward Understanding COVID-19 Infection, Transmission, and Pathogenesis at Single-Cell Resolution with the Human Cell Atlas | ||||||
157 |
Description
OpenCRAVAT is a an open source, scalable decision support system to support cancer variant and gene prioritization. It offers both command line functionality and a dynamic biologist-friendly GUI, allowing users to install with a single command, easily download tools from an extensive resource catalog, create customized pipelines and explore results in a richly detailed viewing environment. OpenCRAVAT is distinguished from similar tools by the amount and diversity of data resources and computational prediction methods available, ...Read More
OpenCRAVAT is a an open source, scalable decision support system to support cancer variant and gene prioritization. It offers both command line functionality and a dynamic biologist-friendly GUI, allowing users to install with a single command, easily download tools from an extensive resource catalog, create customized pipelines and explore results in a richly detailed viewing environment. OpenCRAVAT is distinguished from similar tools by the amount and diversity of data resources and computational prediction methods available, which span germline, somatic, common, rare, coding and non-coding variants. We have designed the OpenCRAVAT resource catalog to be open and modular to maximize community and developer involvement, and as a result the catalog is being actively developed and growing larger every month. OpenCRAVAT is available for local and server installation, on Biowulf, cloud instances, and our webserver at run.opencravat.org
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancergov/
DetailsOrganizerCBIITWhenFri, Jun 05, 2020 - 11:00 am - 12:00 pmWhereOnline |
OpenCRAVAT is a an open source, scalable decision support system to support cancer variant and gene prioritization. It offers both command line functionality and a dynamic biologist-friendly GUI, allowing users to install with a single command, easily download tools from an extensive resource catalog, create customized pipelines and explore results in a richly detailed viewing environment. OpenCRAVAT is distinguished from similar tools by the amount and diversity of data resources and computational prediction methods available, which span germline, somatic, common, rare, coding and non-coding variants. We have designed the OpenCRAVAT resource catalog to be open and modular to maximize community and developer involvement, and as a result the catalog is being actively developed and growing larger every month. OpenCRAVAT is available for local and server installation, on Biowulf, cloud instances, and our webserver at run.opencravat.org The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancergov/ | 2020-06-05 11:00:00 | Online | CBIIT | 0 | Introduction to OpenCRAVAT | |||||
158 |
Description
Dr. Anuradha Budhu began her scientific career as a student researcher in the Undergraduate Biology Research Program (UBRP) at the University of Arizona, studying gene expression patterns in the larval brain of Drosophila Melanogaster. These studies were continued at The University of Adelaide in Australia through the UBRP Biomedical Research Abroad Vistas Open (Bravo!) Program funded by a Howard Hughes fellowship. After completion of her bachelor's honors degree in Biochemistry/Molecular and Cellular Biology from ...Read More
Dr. Anuradha Budhu began her scientific career as a student researcher in the Undergraduate Biology Research Program (UBRP) at the University of Arizona, studying gene expression patterns in the larval brain of Drosophila Melanogaster. These studies were continued at The University of Adelaide in Australia through the UBRP Biomedical Research Abroad Vistas Open (Bravo!) Program funded by a Howard Hughes fellowship. After completion of her bachelor's honors degree in Biochemistry/Molecular and Cellular Biology from the University of Arizona, Dr. Budhu joined the graduate program in Biochemistry at Cornell University, where she earned her Ph.D. studying the roles of retinoids in mammary carcinoma. In 2002, she joined the Laboratory of Human Carcinogenesis at NCI as a Cancer Research Training Award (CRTA) postdoctoral fellow in the Liver Carcinogenesis Section. She was promoted to Staff Scientist in 2007 and Associate Scientist in 2018. Dr. Budhu has authored over 50 peer-reviewed articles and 6 book chapters. Dr. Budhu is an active member of the Staff Scientist and Staff Clinician (SSSC) community at CCR, having served as Co-Chair of the SSSC Communications Committee and Editor-in-Chief and Founder of the SSSC newsletter (The Dossier). She is the recipient of several awards, including the CCR's Outstanding Postdoctoral Award, the NCI Director's Innovation Award and the NCI Director's Award. Dr. Budhu is currently a Senior Associate Scientist and the Program Manager for the NCI CCR Liver Cancer Program.
DetailsWhenFri, Jun 05, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Dr. Anuradha Budhu began her scientific career as a student researcher in the Undergraduate Biology Research Program (UBRP) at the University of Arizona, studying gene expression patterns in the larval brain of Drosophila Melanogaster. These studies were continued at The University of Adelaide in Australia through the UBRP Biomedical Research Abroad Vistas Open (Bravo!) Program funded by a Howard Hughes fellowship. After completion of her bachelor's honors degree in Biochemistry/Molecular and Cellular Biology from the University of Arizona, Dr. Budhu joined the graduate program in Biochemistry at Cornell University, where she earned her Ph.D. studying the roles of retinoids in mammary carcinoma. In 2002, she joined the Laboratory of Human Carcinogenesis at NCI as a Cancer Research Training Award (CRTA) postdoctoral fellow in the Liver Carcinogenesis Section. She was promoted to Staff Scientist in 2007 and Associate Scientist in 2018. Dr. Budhu has authored over 50 peer-reviewed articles and 6 book chapters. Dr. Budhu is an active member of the Staff Scientist and Staff Clinician (SSSC) community at CCR, having served as Co-Chair of the SSSC Communications Committee and Editor-in-Chief and Founder of the SSSC newsletter (The Dossier). She is the recipient of several awards, including the CCR's Outstanding Postdoctoral Award, the NCI Director's Innovation Award and the NCI Director's Award. Dr. Budhu is currently a Senior Associate Scientist and the Program Manager for the NCI CCR Liver Cancer Program. | 2020-06-05 12:00:00 | Online | 0 | Multi-Omics Applications in Human Liver Cancer | ||||||
156 |
Description
Extensive investigations have revealed intra-genomic variation in somatic mutation rates influenced by the sequence composition, structure, and local chromatin features of the genome. I will review the literature on mechanisms underlying the intra-genome mutational heterogeneity and relate it to cancer driver gene identification. I will then discuss a compelling hypothesis relating the variation in mutation rates with the exonic inclusion levels. This investigation has unexpectedly revealed some potentially important differences between the Whole Exome Sequence (...Read More
Extensive investigations have revealed intra-genomic variation in somatic mutation rates influenced by the sequence composition, structure, and local chromatin features of the genome. I will review the literature on mechanisms underlying the intra-genome mutational heterogeneity and relate it to cancer driver gene identification. I will then discuss a compelling hypothesis relating the variation in mutation rates with the exonic inclusion levels. This investigation has unexpectedly revealed some potentially important differences between the Whole Exome Sequence (WES) and Whole Genome Sequence (WGS) data in terms of detecting exonic mutations
DetailsWhenMon, Jun 08, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Extensive investigations have revealed intra-genomic variation in somatic mutation rates influenced by the sequence composition, structure, and local chromatin features of the genome. I will review the literature on mechanisms underlying the intra-genome mutational heterogeneity and relate it to cancer driver gene identification. I will then discuss a compelling hypothesis relating the variation in mutation rates with the exonic inclusion levels. This investigation has unexpectedly revealed some potentially important differences between the Whole Exome Sequence (WES) and Whole Genome Sequence (WGS) data in terms of detecting exonic mutations | 2020-06-08 15:00:00 | Online | 0 | Mutation rate heterogeneity and its determinants in genome by Dr. Arashdeep Singh | ||||||
159 |
Description
"This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing the use of ChIPseq analysis workflow and preparing participants to independently run basic ChIPseq analysis for peak calling using a “point and click” approach on Galaxy platform.
The hands-on exercise will run on a Galaxy platform using ChIP sequencing data. Participants will have a chance to: run quality control check on ChIPseq data, map raw reads to a reference ...Read More
"This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing the use of ChIPseq analysis workflow and preparing participants to independently run basic ChIPseq analysis for peak calling using a “point and click” approach on Galaxy platform.
The hands-on exercise will run on a Galaxy platform using ChIP sequencing data. Participants will have a chance to: run quality control check on ChIPseq data, map raw reads to a reference genome, generate alignment statistics and check mapping quality, call peaks using MACS, annotate peaks, and, visualize the enriched regions."
DetailsOrganizerCBIITWhenTue, Jun 09, 2020 - 1:00 pm - 4:00 pmWhereOnline |
"This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing the use of ChIPseq analysis workflow and preparing participants to independently run basic ChIPseq analysis for peak calling using a “point and click” approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP sequencing data. Participants will have a chance to: run quality control check on ChIPseq data, map raw reads to a reference genome, generate alignment statistics and check mapping quality, call peaks using MACS, annotate peaks, and, visualize the enriched regions." | 2020-06-09 13:00:00 | Online | CBIIT | 0 | ChIP-Seq Sequencing Data Analysis Workshop | |||||
160 |
Description
The presentation will cover cfDNA sequencing capabilities and what has been learned in quality control and ways to measure successful assays through the group's efforts to develop and validate processes for comprehensive (exome) analysis, as well as deep sequencing analysis for customized panels.
The presentation will cover cfDNA sequencing capabilities and what has been learned in quality control and ways to measure successful assays through the group's efforts to develop and validate processes for comprehensive (exome) analysis, as well as deep sequencing analysis for customized panels.
DetailsWhenTue, Jun 09, 2020 - 2:00 pm - 3:00 pmWhereOnline |
The presentation will cover cfDNA sequencing capabilities and what has been learned in quality control and ways to measure successful assays through the group's efforts to develop and validate processes for comprehensive (exome) analysis, as well as deep sequencing analysis for customized panels. | 2020-06-09 14:00:00 | Online | 0 | Comprehensive and Flexible Large Scale Liquid Biopsy Analysis Approaches in The Broad Genomics Platform | ||||||
161 |
Description
This is an introductory level class for participants to familiarize themselves with Deep Learning concepts and techniques using MATLAB. These techniques can be used to solve complex problems related to images, signals, text and controls. The training session will be held on two days, June 9th and 10th, 2:00 - 4:00 pm.
This is an introductory level class for participants to familiarize themselves with Deep Learning concepts and techniques using MATLAB. These techniques can be used to solve complex problems related to images, signals, text and controls. The training session will be held on two days, June 9th and 10th, 2:00 - 4:00 pm.
DetailsOrganizerNIH Training LibraryWhenTue, Jun 09, 2020 - 2:00 pm - 4:00 pmWhereOnline |
This is an introductory level class for participants to familiarize themselves with Deep Learning concepts and techniques using MATLAB. These techniques can be used to solve complex problems related to images, signals, text and controls. The training session will be held on two days, June 9th and 10th, 2:00 - 4:00 pm. | 2020-06-09 14:00:00 | Online | NIH Training Library | 0 | Two-Day Hands-On Virtual Lab: Deep Learning | |||||
162 |
Description
This is an introductory level class for participants to familiarize themselves with Deep Learning concepts and techniques using MATLAB. These techniques can be used to solve complex problems related to images, signals, text and controls. The training session will be held on two days, June 9th and 10th, 2:00 - 4:00 pm.
This is an introductory level class for participants to familiarize themselves with Deep Learning concepts and techniques using MATLAB. These techniques can be used to solve complex problems related to images, signals, text and controls. The training session will be held on two days, June 9th and 10th, 2:00 - 4:00 pm.
DetailsOrganizerNIH Training LibraryWhenWed, Jun 10, 2020 - 2:00 pm - 4:00 pmWhereOnline |
This is an introductory level class for participants to familiarize themselves with Deep Learning concepts and techniques using MATLAB. These techniques can be used to solve complex problems related to images, signals, text and controls. The training session will be held on two days, June 9th and 10th, 2:00 - 4:00 pm. | 2020-06-10 14:00:00 | Online | NIH Training Library | 0 | Two-Day Hands-On Virtual Lab: Deep Learning | |||||
163 |
Description
This webinar provides an overview of taxonomies, including the origins of taxonomies, where they are used in everyday life, and why they are important. The overview will present existing taxonomies in multiple areas and subjects (science, art, biology, medicine, industry, and news). The participants will learn about the importance of organizing their files and data and basic best practices for taxonomy building.
The course is designed as an introduction for those interested in learning more ...Read More
This webinar provides an overview of taxonomies, including the origins of taxonomies, where they are used in everyday life, and why they are important. The overview will present existing taxonomies in multiple areas and subjects (science, art, biology, medicine, industry, and news). The participants will learn about the importance of organizing their files and data and basic best practices for taxonomy building.
The course is designed as an introduction for those interested in learning more about taxonomies and information organization or for those interested in a refresher on this topic. All are welcome to attend; the class was designed for researchers, fellows, post-docs, communications specialists, policy specialists, human resources specialists, and librarians.
DetailsOrganizerNIH Training LibraryWhenThu, Jun 11, 2020 - 11:00 am - 12:00 pmWhereOnline |
This webinar provides an overview of taxonomies, including the origins of taxonomies, where they are used in everyday life, and why they are important. The overview will present existing taxonomies in multiple areas and subjects (science, art, biology, medicine, industry, and news). The participants will learn about the importance of organizing their files and data and basic best practices for taxonomy building. The course is designed as an introduction for those interested in learning more about taxonomies and information organization or for those interested in a refresher on this topic. All are welcome to attend; the class was designed for researchers, fellows, post-docs, communications specialists, policy specialists, human resources specialists, and librarians. | 2020-06-11 11:00:00 | Online | NIH Training Library | 0 | Introduction to Taxonomies | |||||
164 |
Description
This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow and preparing participants to independently run basic ChIP-seq analysis for peak calling using a "point and click" approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP-seq data. Participants will have a chance to: run quality control on ChIP-seq data; map raw reads to a reference genome; generate alignment statistics and ...Read More
This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow and preparing participants to independently run basic ChIP-seq analysis for peak calling using a "point and click" approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP-seq data. Participants will have a chance to: run quality control on ChIP-seq data; map raw reads to a reference genome; generate alignment statistics and check mapping quality; call peaks using MACS; annotate peaks; visualize the enriched regions.
DetailsOrganizerNIH Training LibraryWhenFri, Jun 12, 2020 - 11:00 am - 2:00 pmWhereOnline |
This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow and preparing participants to independently run basic ChIP-seq analysis for peak calling using a "point and click" approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP-seq data. Participants will have a chance to: run quality control on ChIP-seq data; map raw reads to a reference genome; generate alignment statistics and check mapping quality; call peaks using MACS; annotate peaks; visualize the enriched regions. | 2020-06-12 11:00:00 | Online | NIH Training Library | 0 | Title: ChIP Sequencing Data Analysis | |||||
165 |
Description
Metabolomics as a high-throughput molecular phenotyping technique is growing across all domains in the life-sciences. The data processing and analysis is often performed with many programs using conventional computing solutions but little standardisation for interoperable and reproducible research. With increasing data size this becomes intractable for desktop computers. Cloud computing allows to instantiate on-demand resources (virtual servers, networks, storage), users only pay for the time the resources are used. Microservices can run in clouds that ...Read More
Metabolomics as a high-throughput molecular phenotyping technique is growing across all domains in the life-sciences. The data processing and analysis is often performed with many programs using conventional computing solutions but little standardisation for interoperable and reproducible research. With increasing data size this becomes intractable for desktop computers. Cloud computing allows to instantiate on-demand resources (virtual servers, networks, storage), users only pay for the time the resources are used. Microservices can run in clouds that can dynamically grow or shrink, enabling applications to be scaled. We developed a robust and performant data analysis infrastructure that integrates all necessary components. The software tools are encapsulated as Docker containers. To automate the instantiation of this cloud-portable microservice-based system, the PhenoMeNal project developed a Virtual Research Environment (https://portal.phenomenal-h2020.eu/) to deploy on some of the largest public cloud providers, including Amazon Web Services, Microsoft Azure, Google Cloud Platform and OpenStack-based scientific and private clouds. Kubernetes (https://kubernetes.io/) is used for container orchestration in the cloud. Galaxy (https://galaxyproject.org/) is used as interface for individual tools, users can share workflows and analysis histories. Together, we achieved a complete integration of several major metabolomics software suites resulting in a turn-key workflow for mass-spectrometry-based metabolomics. We will also discuss how the Galaxy-Kubernetes integration has evolved past the lifetime of PhenoMeNal through different projects and collaborations with the Galaxy community.
DetailsWhenFri, Jun 12, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Metabolomics as a high-throughput molecular phenotyping technique is growing across all domains in the life-sciences. The data processing and analysis is often performed with many programs using conventional computing solutions but little standardisation for interoperable and reproducible research. With increasing data size this becomes intractable for desktop computers. Cloud computing allows to instantiate on-demand resources (virtual servers, networks, storage), users only pay for the time the resources are used. Microservices can run in clouds that can dynamically grow or shrink, enabling applications to be scaled. We developed a robust and performant data analysis infrastructure that integrates all necessary components. The software tools are encapsulated as Docker containers. To automate the instantiation of this cloud-portable microservice-based system, the PhenoMeNal project developed a Virtual Research Environment (https://portal.phenomenal-h2020.eu/) to deploy on some of the largest public cloud providers, including Amazon Web Services, Microsoft Azure, Google Cloud Platform and OpenStack-based scientific and private clouds. Kubernetes (https://kubernetes.io/) is used for container orchestration in the cloud. Galaxy (https://galaxyproject.org/) is used as interface for individual tools, users can share workflows and analysis histories. Together, we achieved a complete integration of several major metabolomics software suites resulting in a turn-key workflow for mass-spectrometry-based metabolomics. We will also discuss how the Galaxy-Kubernetes integration has evolved past the lifetime of PhenoMeNal through different projects and collaborations with the Galaxy community. | 2020-06-12 15:00:00 | Online | 0 | The PhenoMeNal cloud-aware e-Infrastructure | ||||||
166 |
Description
Participants will learn about data loading, quality control, statistical analysis as well as biological contextualization of miRNA microarray data.
Participants will learn about data loading, quality control, statistical analysis as well as biological contextualization of miRNA microarray data.
DetailsOrganizerNIH Training LibraryWhenMon, Jun 15, 2020 - 9:00 am - 10:00 amWhereOnline |
Participants will learn about data loading, quality control, statistical analysis as well as biological contextualization of miRNA microarray data. | 2020-06-15 09:00:00 | Online | NIH Training Library | 0 | Single and Multi-Omics Analysis (GeneSpring Overview) | |||||
167 |
Description
This session will focus on NGS data, multi-omics analysis of array, and sequence data. Participants will work with text files in GeneSpring for NGS gene expression workflow and .vcf files for variant analysis.
This session will focus on NGS data, multi-omics analysis of array, and sequence data. Participants will work with text files in GeneSpring for NGS gene expression workflow and .vcf files for variant analysis.
DetailsOrganizerNIH Training LibraryWhenMon, Jun 15, 2020 - 10:30 am - 11:30 amWhereOnline |
This session will focus on NGS data, multi-omics analysis of array, and sequence data. Participants will work with text files in GeneSpring for NGS gene expression workflow and .vcf files for variant analysis. | 2020-06-15 10:30:00 | Online | NIH Training Library | 0 | Support for NGS Gene Expression Data, Variant Analysis, and Method Manager | |||||
168 |
Description
The capability to unambiguously and comprehensively identify thousands of metabolites and other chemicals in clinical samples, including the microbiome, will revolutionize the search for environmental, dietary, and metabolic determinants of health and disease. By comparison to near-comprehensive genetic information, comparatively little is understood of the totality of the human metabolome, largely due to insufficiencies in molecular identification methods. Through innovations in computational chemistry and advanced ion mobility separations coupled with mass spectrometry, we are overcoming ...Read More
The capability to unambiguously and comprehensively identify thousands of metabolites and other chemicals in clinical samples, including the microbiome, will revolutionize the search for environmental, dietary, and metabolic determinants of health and disease. By comparison to near-comprehensive genetic information, comparatively little is understood of the totality of the human metabolome, largely due to insufficiencies in molecular identification methods. Through innovations in computational chemistry and advanced ion mobility separations coupled with mass spectrometry, we are overcoming a significant, long standing obstacle in the field of metabolomics: the absence of methods for accurate and comprehensive identification of metabolites without relying on data derived from analysis of authentic reference compounds. We use gas-phase molecular properties that can be both predicted computationally with high accuracy and experimentally measured with high precision, and which can thus be used for comprehensive identification of the metabolome without the need for reference libraries constructed through experimental analysis of authentic chemical standards. The benefits and remaining limitations of the standards-free metabolomics approach will be demonstrated in a variety of examples, including in analysis of blinded chemical mixtures as a part of the EPA’s Non-Targeted Analysis Collaborative Trial (ENTACT) and in analysis of plasma samples from individuals subjected to simulated shift work.
DetailsWhenTue, Jun 16, 2020 - 11:00 am - 12:00 pmWhereOnline |
The capability to unambiguously and comprehensively identify thousands of metabolites and other chemicals in clinical samples, including the microbiome, will revolutionize the search for environmental, dietary, and metabolic determinants of health and disease. By comparison to near-comprehensive genetic information, comparatively little is understood of the totality of the human metabolome, largely due to insufficiencies in molecular identification methods. Through innovations in computational chemistry and advanced ion mobility separations coupled with mass spectrometry, we are overcoming a significant, long standing obstacle in the field of metabolomics: the absence of methods for accurate and comprehensive identification of metabolites without relying on data derived from analysis of authentic reference compounds. We use gas-phase molecular properties that can be both predicted computationally with high accuracy and experimentally measured with high precision, and which can thus be used for comprehensive identification of the metabolome without the need for reference libraries constructed through experimental analysis of authentic chemical standards. The benefits and remaining limitations of the standards-free metabolomics approach will be demonstrated in a variety of examples, including in analysis of blinded chemical mixtures as a part of the EPA’s Non-Targeted Analysis Collaborative Trial (ENTACT) and in analysis of plasma samples from individuals subjected to simulated shift work. | 2020-06-16 11:00:00 | Online | 0 | Shifting the Metabolomics Paradigm: Exploiting Computationally Predicted Metabolite Reference Data for Comprehensive Metabolomics | ||||||
170 |
Description
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use ...Read More
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them.
This is a hands-on course with 24 laptops available in the library’s classroom. If you prefer to work from your own laptop, feel free to install the IGV browser in advance from here - software.broadinstitute.org/software/igv/download(the UCSV browser is web browser based).
DetailsOrganizerNIH Training LibraryWhenWed, Jun 17, 2020 - 1:00 pm - 2:30 pmWhereOnline |
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them. This is a hands-on course with 24 laptops available in the library’s classroom. If you prefer to work from your own laptop, feel free to install the IGV browser in advance from here - software.broadinstitute.org/software/igv/download(the UCSV browser is web browser based). | 2020-06-17 13:00:00 | Online | NIH Training Library | 0 | Genome Browser | |||||
921 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Soon after registering for this course, you will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class.
IT IS YOUR RESPONSIBILITY to complete the self-guided video tutorial training BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jun 18, 2020 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Soon after registering for this course, you will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class. IT IS YOUR RESPONSIBILITY to complete the self-guided video tutorial training BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-06-18 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion (June 18th) | ||
171 |
Description
While the current state of knowledge surrounding cancer origin and tumorigenesis revolve around somatic mutation theory and cancer stem cells, there is still a gap in our understanding of the actual mechanism of cancer progression. In my presentation I will first give a detailed history of the embryological theory of cancer, from early ideas of the Trophoblastic Theory of Cancer to our current understanding of the developmental pathways involved in malignant progression. I will then ...Read More
While the current state of knowledge surrounding cancer origin and tumorigenesis revolve around somatic mutation theory and cancer stem cells, there is still a gap in our understanding of the actual mechanism of cancer progression. In my presentation I will first give a detailed history of the embryological theory of cancer, from early ideas of the Trophoblastic Theory of Cancer to our current understanding of the developmental pathways involved in malignant progression. I will then introduce my project of elucidating developmental pathways that are dormant in adult tissues but are re-activated in cancer. I will show results from our analysis of enhancers and genes, across multiple cancer types and tissues, that are down-regulated during development but up-regulated in cancer (and vice versa). We hypothesize that it is these pathways, which have a foundation in development, that are likely to drive cancer progression.
Speaker: Arati Rajeevan (Post-bacc, Dr. Hannenhalli Lab).
DetailsWhenMon, Jun 22, 2020 - 3:00 pm - 4:00 pmWhereOnline |
While the current state of knowledge surrounding cancer origin and tumorigenesis revolve around somatic mutation theory and cancer stem cells, there is still a gap in our understanding of the actual mechanism of cancer progression. In my presentation I will first give a detailed history of the embryological theory of cancer, from early ideas of the Trophoblastic Theory of Cancer to our current understanding of the developmental pathways involved in malignant progression. I will then introduce my project of elucidating developmental pathways that are dormant in adult tissues but are re-activated in cancer. I will show results from our analysis of enhancers and genes, across multiple cancer types and tissues, that are down-regulated during development but up-regulated in cancer (and vice versa). We hypothesize that it is these pathways, which have a foundation in development, that are likely to drive cancer progression. Speaker: Arati Rajeevan (Post-bacc, Dr. Hannenhalli Lab). | 2020-06-22 15:00:00 | Online | 0 | Exploring the Developmental Origins of Cancer | ||||||
172 |
Description
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a “point and click” approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. Participants will have a chance to: 1. Run quality control check on sequencing data; 2. Align the sequencing ...Read More
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a “point and click” approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. Participants will have a chance to: 1. Run quality control check on sequencing data; 2. Align the sequencing reads to a reference genome; 3. Generate alignment statistics and check mapping quality; 4. Identify variants; 5. Visualize the exome sequencing data and variants.
For questions please contact Daoud Meerzaman
DetailsOrganizerCBIITWhenTue, Jun 23, 2020 - 1:00 pm - 4:00 pmWhereOnline |
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a “point and click” approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. Participants will have a chance to: 1. Run quality control check on sequencing data; 2. Align the sequencing reads to a reference genome; 3. Generate alignment statistics and check mapping quality; 4. Identify variants; 5. Visualize the exome sequencing data and variants. For questions please contact Daoud Meerzaman | 2020-06-23 13:00:00 | Online | CBIIT | 0 | Whole Exome Sequencing Data Analysis Workshop | |||||
39 |
Description
In response to the urgent need for portable real-time epidemiological data analysis, DCEG scientists designed a real-time Mortality Tracker for COVID-19 and other diseases in the United States. This new data distribution method intersects epidemiology, Cloud and web computing to monitor the broader impact of COVID-19 on death rates across the United States.
Co-Presenters: All from the NCI Division of Cancer Epidemiology and Genetics (DCEG)
Jonas S. Almeida, Ph.D., Chief Data Scientist
Amy Berrington, ...Read More
In response to the urgent need for portable real-time epidemiological data analysis, DCEG scientists designed a real-time Mortality Tracker for COVID-19 and other diseases in the United States. This new data distribution method intersects epidemiology, Cloud and web computing to monitor the broader impact of COVID-19 on death rates across the United States.
Co-Presenters: All from the NCI Division of Cancer Epidemiology and Genetics (DCEG)
Jonas S. Almeida, Ph.D., Chief Data Scientist
Amy Berrington, Ph.D., Radiation Epidemiology Branch Chief
Neal Freedman, Ph.D., Senior Investigator
Meredith Shiels, Ph.D., Investigator
Praphulla Bhawsar, MS, Data Engineer
Bhaumik Patel, MS, Software Engineer
DetailsOrganizerCBIITWhenWed, Jun 24, 2020 - 9:30 am - 10:30 amWhereIn-Person |
In response to the urgent need for portable real-time epidemiological data analysis, DCEG scientists designed a real-time Mortality Tracker for COVID-19 and other diseases in the United States. This new data distribution method intersects epidemiology, Cloud and web computing to monitor the broader impact of COVID-19 on death rates across the United States. Co-Presenters: All from the NCI Division of Cancer Epidemiology and Genetics (DCEG) Jonas S. Almeida, Ph.D., Chief Data Scientist Amy Berrington, Ph.D., Radiation Epidemiology Branch Chief Neal Freedman, Ph.D., Senior Investigator Meredith Shiels, Ph.D., Investigator Praphulla Bhawsar, MS, Data Engineer Bhaumik Patel, MS, Software Engineer | 2020-06-24 09:30:00 | In-Person | CBIIT | 0 | Real-time FAIR Mortality Tracking: A New Data Commons Approach in the Age of COVID | |||||
173 |
Description
In response to the urgent need for portable real-time epidemiological data analysis, DCEG scientists designed a real-time Mortality Tracker for COVID-19 and other diseases in the United States. This new data distribution method intersects epidemiology, Cloud and web computing to monitor the broader impact of COVID-19 on death rates across the United States.
Co-Presenters: All from the NCI Division of Cancer Epidemiology and Genetics (DCEG)
Jonas S. Almeida, Ph.D., Chief Data Scientist
Amy Berrington, ...Read More
In response to the urgent need for portable real-time epidemiological data analysis, DCEG scientists designed a real-time Mortality Tracker for COVID-19 and other diseases in the United States. This new data distribution method intersects epidemiology, Cloud and web computing to monitor the broader impact of COVID-19 on death rates across the United States.
Co-Presenters: All from the NCI Division of Cancer Epidemiology and Genetics (DCEG)
Jonas S. Almeida, Ph.D., Chief Data Scientist
Amy Berrington, Ph.D., Radiation Epidemiology Branch Chief
Neal Freedman, Ph.D., Senior Investigator
Meredith Shiels, Ph.D., Investigator
Praphulla Bhawsar, MS, Data Engineer
Bhaumik Patel, MS, Software Engineer
DetailsWhenWed, Jun 24, 2020 - 9:30 am - 10:30 amWhereOnline |
In response to the urgent need for portable real-time epidemiological data analysis, DCEG scientists designed a real-time Mortality Tracker for COVID-19 and other diseases in the United States. This new data distribution method intersects epidemiology, Cloud and web computing to monitor the broader impact of COVID-19 on death rates across the United States. Co-Presenters: All from the NCI Division of Cancer Epidemiology and Genetics (DCEG) Jonas S. Almeida, Ph.D., Chief Data Scientist Amy Berrington, Ph.D., Radiation Epidemiology Branch Chief Neal Freedman, Ph.D., Senior Investigator Meredith Shiels, Ph.D., Investigator Praphulla Bhawsar, MS, Data Engineer Bhaumik Patel, MS, Software Engineer | 2020-06-24 09:30:00 | Online | 0 | Real-time FAIR Mortality Tracking: A New Data Commons Approach in the Age of COVID | ||||||
4 |
Description
Join us for a webinar: How to Analyze Single Cell RNA-Seq Data: Point, Click, Done
Register: https://www.partek.com/webinar/how-to-analyze-single-cell-rna-seq-data-point-click-done/
Single cell mRNA sequencing allows for the identification of different cell subtypes in a progenitor population. During pancreatic development, Neurog3 positive cells are destined to become endocrine cells generating alpha cells, beta cells, and delta cells. However, single cell data analyses can ...Read More
Join us for a webinar: How to Analyze Single Cell RNA-Seq Data: Point, Click, Done
Register: https://www.partek.com/webinar/how-to-analyze-single-cell-rna-seq-data-point-click-done/
Single cell mRNA sequencing allows for the identification of different cell subtypes in a progenitor population. During pancreatic development, Neurog3 positive cells are destined to become endocrine cells generating alpha cells, beta cells, and delta cells. However, single cell data analyses can be challenging for those without programming or command line experience. Partek® Flow® bioinformatic software resolves this challenge with a simple and intuitive graphical interface that doesn’t sacrifice flexibility or statistical power.
In this webinar scientists from 1CellBio and Partek will discuss how you can use the inDrop™ platform and Partek Flow to simplify single cell RNA-Seq analysis. There will be a live demonstration of Partek Flow using an inDrop single cell mRNA sequencing dataset.
You will learn how to:
DetailsWhenWed, Jun 24, 2020 - 11:00 am - 9:00 pmWhereOnline |
Join us for a webinar: How to Analyze Single Cell RNA-Seq Data: Point, Click, Done Register: https://www.partek.com/webinar/how-to-analyze-single-cell-rna-seq-data-point-click-done/ Single cell mRNA sequencing allows for the identification of different cell subtypes in a progenitor population. During pancreatic development, Neurog3 positive cells are destined to become endocrine cells generating alpha cells, beta cells, and delta cells. However, single cell data analyses can be challenging for those without programming or command line experience. Partek® Flow® bioinformatic software resolves this challenge with a simple and intuitive graphical interface that doesn’t sacrifice flexibility or statistical power. In this webinar scientists from 1CellBio and Partek will discuss how you can use the inDrop™ platform and Partek Flow to simplify single cell RNA-Seq analysis. There will be a live demonstration of Partek Flow using an inDrop single cell mRNA sequencing dataset. You will learn how to: identify cellular subtypes of Neurog3 positive cells use information-rich and interactive visualizations to identify graph-based clustering and cluster classification perform trajectory analysis of Neurog 3 positive cells | 2020-06-24 11:00:00 | Online | In-Person | 0 | Single Cell RNA-Seq Trajectory Analysis in Partek Flow | |||||
174 |
Description
Traditional methods of epidemic modeling continue to be used fruitfully for characterizing outbreaks and predicting the spread of disease in populations. However, these methods, typically rely on what are known as “compartment models”, requiring assumptions that are not necessarily sensitive to the ever-changing environmental, behavioral, temporospatial, and social phenomena that influence disease spread. Compartment models can be enriched by the judicious use of robust methods drawn from the field of artificial intelligence that allow us ...Read More
Traditional methods of epidemic modeling continue to be used fruitfully for characterizing outbreaks and predicting the spread of disease in populations. However, these methods, typically rely on what are known as “compartment models”, requiring assumptions that are not necessarily sensitive to the ever-changing environmental, behavioral, temporospatial, and social phenomena that influence disease spread. Compartment models can be enriched by the judicious use of robust methods drawn from the field of artificial intelligence that allow us to model more accurately and more quickly the population and disease dynamics that are central to developing policies for prevention, detection, and treatment. We will explore these approaches, including some that are currently in use as well as a proposal for novel, next-generation machine learning tools for epidemiologic investigation.
John H. Holmes, PhD, is Professor of Medical Informatics in Epidemiology at the University of Pennsylvania Perelman School of Medicine. He is the Associate Director of the Penn Institute for Biomedical Informatics and is Past-Chair of the Graduate Group in Epidemiology and Biostatistics. Dr. Holmes has been recognized nationally and internationally for his work on developing and applying new artificial intelligence approaches to mining epidemiologic surveillance data. Dr. Holmes’ research interests are focused on the intersection of medical informatics and clinical research, specifically evolutionary computation and machine learning approaches to knowledge discovery in clinical databases, deep electronic phenotyping, interoperable information systems infrastructures for epidemiologic surveillance, and their application to a broad array of clinical domains, including cardiology and pulmonary medicine. He has served as the co-lead of the Governance Core for the SPAN project, a scalable distributed research network, and participates in the FDA Sentinel Initiative.
DetailsWhenWed, Jun 24, 2020 - 1:00 pm - 2:00 pmWhereOnline |
Traditional methods of epidemic modeling continue to be used fruitfully for characterizing outbreaks and predicting the spread of disease in populations. However, these methods, typically rely on what are known as “compartment models”, requiring assumptions that are not necessarily sensitive to the ever-changing environmental, behavioral, temporospatial, and social phenomena that influence disease spread. Compartment models can be enriched by the judicious use of robust methods drawn from the field of artificial intelligence that allow us to model more accurately and more quickly the population and disease dynamics that are central to developing policies for prevention, detection, and treatment. We will explore these approaches, including some that are currently in use as well as a proposal for novel, next-generation machine learning tools for epidemiologic investigation. John H. Holmes, PhD, is Professor of Medical Informatics in Epidemiology at the University of Pennsylvania Perelman School of Medicine. He is the Associate Director of the Penn Institute for Biomedical Informatics and is Past-Chair of the Graduate Group in Epidemiology and Biostatistics. Dr. Holmes has been recognized nationally and internationally for his work on developing and applying new artificial intelligence approaches to mining epidemiologic surveillance data. Dr. Holmes’ research interests are focused on the intersection of medical informatics and clinical research, specifically evolutionary computation and machine learning approaches to knowledge discovery in clinical databases, deep electronic phenotyping, interoperable information systems infrastructures for epidemiologic surveillance, and their application to a broad array of clinical domains, including cardiology and pulmonary medicine. He has served as the co-lead of the Governance Core for the SPAN project, a scalable distributed research network, and participates in the FDA Sentinel Initiative. | 2020-06-24 13:00:00 | Online | 0 | NLM Ada Lovelace Computational Health Lecture Series "AI in the Age of COVID-19: Computational Tools for a Pandemic" | ||||||
922 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Soon after registering for this course, you will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class.
IT IS YOUR RESPONSIBILITY to complete the self-guided video tutorial training BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jun 25, 2020 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Soon after registering for this course, you will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class. IT IS YOUR RESPONSIBILITY to complete the self-guided video tutorial training BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-06-25 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion (June 25th) | ||
175 |
Description
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a "point and click" approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing ...Read More
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a "point and click" approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; identify variants; visualize the exome sequencing data and variants.
DetailsOrganizerNIH Training LibraryWhenFri, Jun 26, 2020 - 11:00 am - 2:00 pmWhereOnline |
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a "point and click" approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; identify variants; visualize the exome sequencing data and variants. | 2020-06-26 11:00:00 | Online | NIH Training Library | 0 | Exome Sequencing Data Analysis | |||||
152 |
Description
The overarching goal of our work is to implement data analysis and informatics tools for integration of biological mass spectrometry data (proteomics and metabolomics) with genomic / transcriptomic information to advance cancer research. We are utilizing the Galaxy platform and extending our earlier work developing Galaxy for proteomics (Galaxy-P project), to create a unified environment for implementing and disseminating multi-omic tools and validated workflows. The software resources and activities central to our work include: 1) Proteogenomics tools, ...Read More
The overarching goal of our work is to implement data analysis and informatics tools for integration of biological mass spectrometry data (proteomics and metabolomics) with genomic / transcriptomic information to advance cancer research. We are utilizing the Galaxy platform and extending our earlier work developing Galaxy for proteomics (Galaxy-P project), to create a unified environment for implementing and disseminating multi-omic tools and validated workflows. The software resources and activities central to our work include: 1) Proteogenomics tools, which integrate genomic, transcriptomic and mass spectrometry-based proteomics data to characterize protein sequence variants contributing to cancer. This work includes development of tools for interpreting the impact of these variants, including a multi-omics visualization platform which acts as a Galaxy-plugin for visualizing proteogenomics results; 2) Metaproteomics tools, for characterizing proteins expressed by microbial communities found in host environments which may contribute to cancer development and/or progression, including advanced tools for visualizing and exploring taxonomy-function interactions which may drive host response; 3) Tool development for quantitative mass spectrometry-based metabolomics, which includes customized tools for advanced statistical analysis and also deploying new tools for metabolite identification from high-resolution mass spectrometry data; 4) A focus on dissemination activities, to promote our informatics resources to the cancer research community. This includes conducting training workshops, establishing online tutorials and documentation, and making software available and accessible through a variety of avenues, including publicly available gateways and via containers for local install. In this webinar, we will provide short demonstrations of these tools and workflows and their applications, and provide information how to access these resources.
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancergov/
DetailsOrganizerCBIITWhenSun, Jun 28, 2020 - 10:00 am - 11:00 amWhereOnline |
The overarching goal of our work is to implement data analysis and informatics tools for integration of biological mass spectrometry data (proteomics and metabolomics) with genomic / transcriptomic information to advance cancer research. We are utilizing the Galaxy platform and extending our earlier work developing Galaxy for proteomics (Galaxy-P project), to create a unified environment for implementing and disseminating multi-omic tools and validated workflows. The software resources and activities central to our work include: 1) Proteogenomics tools, which integrate genomic, transcriptomic and mass spectrometry-based proteomics data to characterize protein sequence variants contributing to cancer. This work includes development of tools for interpreting the impact of these variants, including a multi-omics visualization platform which acts as a Galaxy-plugin for visualizing proteogenomics results; 2) Metaproteomics tools, for characterizing proteins expressed by microbial communities found in host environments which may contribute to cancer development and/or progression, including advanced tools for visualizing and exploring taxonomy-function interactions which may drive host response; 3) Tool development for quantitative mass spectrometry-based metabolomics, which includes customized tools for advanced statistical analysis and also deploying new tools for metabolite identification from high-resolution mass spectrometry data; 4) A focus on dissemination activities, to promote our informatics resources to the cancer research community. This includes conducting training workshops, establishing online tutorials and documentation, and making software available and accessible through a variety of avenues, including publicly available gateways and via containers for local install. In this webinar, we will provide short demonstrations of these tools and workflows and their applications, and provide information how to access these resources. The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website itcr.cancergov/ | 2020-06-28 10:00:00 | Online | CBIIT | 0 | Introduction to Galaxy-P multi-omics | |||||
3 |
Description
Registration: https://www.nihlibrary.nih.gov/training/overview-common-statistical-tests-6
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This session will help participants to better understand and prepare data, interpret results and findings, design and prepare studies, and better understand the results in published literature.
Registration: https://www.nihlibrary.nih.gov/training/overview-common-statistical-tests-6
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This session will help participants to better understand and prepare data, interpret results and findings, design and prepare studies, and better understand the results in published literature.
DetailsOrganizerNIH Training LibraryWhenWed, Jul 01, 2020 - 1:00 pm - 10:00 pmWhereOnline |
Registration: https://www.nihlibrary.nih.gov/training/overview-common-statistical-tests-6 In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This session will help participants to better understand and prepare data, interpret results and findings, design and prepare studies, and better understand the results in published literature. | 2020-07-01 13:00:00 | Online | Statistics | Online | NIH Training Library | 0 | Overview of Common Statistical Tests | |||
926 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Soon after registering for this course, you will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jul 02, 2020 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Soon after registering for this course, you will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-07-02 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion (July 2nd) | ||
5 |
Description
In systems biology, inference of functional associations among genes is compelling because the construction of functional association networks facilitates biomarker discovery. Specifically, such gene associations in human can help identify putative biomarkers that can be used as diagnostic tools in treating patients. Although biomedical literature is considered a valuable data source for this task, currently only a limited number of webservers are available for mining gene-gene associations from the vast amount of biomedical literature using ...Read More
In systems biology, inference of functional associations among genes is compelling because the construction of functional association networks facilitates biomarker discovery. Specifically, such gene associations in human can help identify putative biomarkers that can be used as diagnostic tools in treating patients. Although biomedical literature is considered a valuable data source for this task, currently only a limited number of webservers are available for mining gene-gene associations from the vast amount of biomedical literature using text mining techniques. Moreover, these webservers often have limited coverage of biomedical literature and also lack efficient and user-friendly tools to interpret and visualize mined relationships among genes. To address these limitations, we developed GAIL (Gene-gene Association Inference based on biomedical Literature), an interactive webserver that infers human gene-gene associations from Gene Ontology (GO) guided biomedical literature mining. GAIL also provides dynamic visualization of the resulting association networks and various gene set enrichment analysis tools. This webinar will provide the overview of GAIL and illustrate its use for investigation and visualization of gene-gene networks using various examples including gene signatures associated with breast cancer.
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website.
Register: cbiit.webex.com/cbiit/onstage/g.php?MTID=e911f33fab865b525caa93682076ce66f
DetailsOrganizerCBIITWhenTue, Jul 07, 2020 - 11:00 am - 12:00 pmWhereOnline |
In systems biology, inference of functional associations among genes is compelling because the construction of functional association networks facilitates biomarker discovery. Specifically, such gene associations in human can help identify putative biomarkers that can be used as diagnostic tools in treating patients. Although biomedical literature is considered a valuable data source for this task, currently only a limited number of webservers are available for mining gene-gene associations from the vast amount of biomedical literature using text mining techniques. Moreover, these webservers often have limited coverage of biomedical literature and also lack efficient and user-friendly tools to interpret and visualize mined relationships among genes. To address these limitations, we developed GAIL (Gene-gene Association Inference based on biomedical Literature), an interactive webserver that infers human gene-gene associations from Gene Ontology (GO) guided biomedical literature mining. GAIL also provides dynamic visualization of the resulting association networks and various gene set enrichment analysis tools. This webinar will provide the overview of GAIL and illustrate its use for investigation and visualization of gene-gene networks using various examples including gene signatures associated with breast cancer. The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website. Register: cbiit.webex.com/cbiit/onstage/g.php?MTID=e911f33fab865b525caa93682076ce66f | 2020-07-07 11:00:00 | Online | Online | CBIIT | 0 | Introduction to Gene-Gene Association Inference Based Literature (GAIL) | ||||
38 |
Description
In systems biology, inference of functional associations among genes is compelling because the construction of functional association networks facilitates biomarker discovery. Specifically, such gene associations in human can help identify putative biomarkers that can be used as diagnostic tools in treating patients. Although biomedical literature is considered a valuable data source for this task, currently only a limited number of webservers are available for mining gene-gene associations from the vast amount of biomedical literature using ...Read More
In systems biology, inference of functional associations among genes is compelling because the construction of functional association networks facilitates biomarker discovery. Specifically, such gene associations in human can help identify putative biomarkers that can be used as diagnostic tools in treating patients. Although biomedical literature is considered a valuable data source for this task, currently only a limited number of webservers are available for mining gene-gene associations from the vast amount of biomedical literature using text mining techniques. Moreover, these webservers often have limited coverage of biomedical literature and also lack efficient and user-friendly tools to interpret and visualize mined relationships among genes. To address these limitations, we developed GAIL (Gene-gene Association Inference based on biomedical Literature), an interactive webserver that infers human gene-gene associations from Gene Ontology (GO) guided biomedical literature mining. GAIL also provides dynamic visualization of the resulting association networks and various gene set enrichment analysis tools. This webinar will provide the overview of GAIL and illustrate its use for investigation and visualization of gene-gene networks using various examples including gene signatures associated with breast cancer.
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website.
DetailsOrganizerCBIITWhenTue, Jul 07, 2020 - 11:00 am - 12:00 pmWhereOnline |
In systems biology, inference of functional associations among genes is compelling because the construction of functional association networks facilitates biomarker discovery. Specifically, such gene associations in human can help identify putative biomarkers that can be used as diagnostic tools in treating patients. Although biomedical literature is considered a valuable data source for this task, currently only a limited number of webservers are available for mining gene-gene associations from the vast amount of biomedical literature using text mining techniques. Moreover, these webservers often have limited coverage of biomedical literature and also lack efficient and user-friendly tools to interpret and visualize mined relationships among genes. To address these limitations, we developed GAIL (Gene-gene Association Inference based on biomedical Literature), an interactive webserver that infers human gene-gene associations from Gene Ontology (GO) guided biomedical literature mining. GAIL also provides dynamic visualization of the resulting association networks and various gene set enrichment analysis tools. This webinar will provide the overview of GAIL and illustrate its use for investigation and visualization of gene-gene networks using various examples including gene signatures associated with breast cancer. The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website. | 2020-07-07 11:00:00 | Online | CBIIT | 0 | Introduction to Gene-Gene Association Inferenced Based Literature (GAIL) | |||||
923 |
Description
The recent breakthroughs in high-throughput technologies have resulted in a vast amount of big-data resources. However, it remains a significant challenge to transfer the knowledge from the public data to a new research project due to study design gaps and differences in data organization. Focusing on cancer immunology research, we integrated large-scale omics data and developed web platforms with interactive analysis modules. In the first project, we processed the omics data for over 33K samples ...Read More
The recent breakthroughs in high-throughput technologies have resulted in a vast amount of big-data resources. However, it remains a significant challenge to transfer the knowledge from the public data to a new research project due to study design gaps and differences in data organization. Focusing on cancer immunology research, we integrated large-scale omics data and developed web platforms with interactive analysis modules. In the first project, we processed the omics data for over 33K samples in 188 tumor cohorts from public databases, 998 tumors from 12 ICB clinical studies, and eight CRISPR screens that identified gene modulators of the anticancer immune response. Integrating these datasets with three interactive analysis modules, our web platform TIDE has enabled public data reuse in hypothesis generation, biomarker optimization, and patient stratification in immune-oncology research. In the second project, we have manually labeled 20,608 cytokine and growth factor treatment profiles from the NCBI GEO and ArrayExpress databases. With these curated datasets, our web platform CellSig can reveal the differential expression change of query genes upon diverse cell signals and predict the cytokine and growth factor response in a user's transcriptomic data input.
WEBCAST LINK: https://nci.rev.vbrick.com/#/webcasts/bioinformaticsdistinguishedspeaker
Attendee’s Instructions:
We recommend that you join at least 10 minutes before the meeting begins.
PLEASE NOTE: You must disconnect from NIH VPN and close other running applications on your computer to watch the webcast.
RegisterOrganizerBTEPWhenThu, Jul 09, 2020 - 3:00 pm - 4:00 pmWhereOnline Webinar |
The recent breakthroughs in high-throughput technologies have resulted in a vast amount of big-data resources. However, it remains a significant challenge to transfer the knowledge from the public data to a new research project due to study design gaps and differences in data organization. Focusing on cancer immunology research, we integrated large-scale omics data and developed web platforms with interactive analysis modules. In the first project, we processed the omics data for over 33K samples in 188 tumor cohorts from public databases, 998 tumors from 12 ICB clinical studies, and eight CRISPR screens that identified gene modulators of the anticancer immune response. Integrating these datasets with three interactive analysis modules, our web platform TIDE has enabled public data reuse in hypothesis generation, biomarker optimization, and patient stratification in immune-oncology research. In the second project, we have manually labeled 20,608 cytokine and growth factor treatment profiles from the NCBI GEO and ArrayExpress databases. With these curated datasets, our web platform CellSig can reveal the differential expression change of query genes upon diverse cell signals and predict the cytokine and growth factor response in a user's transcriptomic data input. WEBCAST LINK: https://nci.rev.vbrick.com/#/webcasts/bioinformaticsdistinguishedspeaker Attendee’s Instructions: We recommend that you join at least 10 minutes before the meeting begins. PLEASE NOTE: You must disconnect from NIH VPN and close other running applications on your computer to watch the webcast. Instructions on how to view the Webcast: Disconnect from NIH VPN and close other running applications on your computer. You may also watch this webcast using your smartphone. Click on Webcast link provided. Enter your first and last name in “Display Name” field. Enter your NIH email in “Email” field. Check the consent/authorization box. Sign in as guest. When the event is visible, click “unmute” in the upper right corner of the event window to hear the streamed audio from your computer speakers. Use your computer to adjust the volume. Click on the video icon (third icon from the bottom right) to move the presenter’s video. A recording will be made available on the BTEP website within 1-2 days. To view the event on an iPhone/iPad or Android device, click on the webcast link and follow the sign in as guest steps. | 2020-07-09 15:00:00 | Online Webinar | Online | Peng Jiang (CCR/CDSL) | BTEP | 0 | Data-driven Approaches to Identify the Regulators of the Anticancer Immune Response | |||
2 |
Description
This webinar provides an overview of taxonomies, including the origins of taxonomies, where they are used in everyday life, and why they are important. The overview will present existing taxonomies in multiple areas and subjects (science, art, biology, medicine, industry, and news). The participants will learn about the importance of organizing their files and data and basic best practices for taxonomy building.
The course is designed as an introduction for those interested in learning more ...Read More
This webinar provides an overview of taxonomies, including the origins of taxonomies, where they are used in everyday life, and why they are important. The overview will present existing taxonomies in multiple areas and subjects (science, art, biology, medicine, industry, and news). The participants will learn about the importance of organizing their files and data and basic best practices for taxonomy building.
The course is designed as an introduction for those interested in learning more about taxonomies and information organization or for those interested in a refresher on this topic. All are welcome to attend; the class was designed for researchers, fellows, post-docs, communications specialists, policy specialists, human resources specialists, and librarians.
DetailsOrganizerNIH Training LibraryWhenFri, Jul 10, 2020 - 11:00 pm - 11:50 pmWhereOnline |
This webinar provides an overview of taxonomies, including the origins of taxonomies, where they are used in everyday life, and why they are important. The overview will present existing taxonomies in multiple areas and subjects (science, art, biology, medicine, industry, and news). The participants will learn about the importance of organizing their files and data and basic best practices for taxonomy building. The course is designed as an introduction for those interested in learning more about taxonomies and information organization or for those interested in a refresher on this topic. All are welcome to attend; the class was designed for researchers, fellows, post-docs, communications specialists, policy specialists, human resources specialists, and librarians. | 2020-07-10 23:00:00 | Online | Bioinformatics | Online | NIH Training Library | 0 | Introduction to Taxonomies | |||
6 |
Description
Join us for this Webinar session, where Partek scientist will provide an overview and updates for the latest version of Partek Flow followed with a live demo for Single Cell RNA-Seq data analysis. During the live demo, the Partek scientist will go through the steps on analyzing and visualizing a Single Cell RNA-Seq data using the newly implemented and released data visualization tool in Partek Flow – Data Viewer. The new Data Viewer provides more flexible ...Read More
Join us for this Webinar session, where Partek scientist will provide an overview and updates for the latest version of Partek Flow followed with a live demo for Single Cell RNA-Seq data analysis. During the live demo, the Partek scientist will go through the steps on analyzing and visualizing a Single Cell RNA-Seq data using the newly implemented and released data visualization tool in Partek Flow – Data Viewer. The new Data Viewer provides more flexible and easier ways to integrate information collected from the data and helps biologists discover more biological meanings with the point-and-click user interface.
Agenda:
Presentation: Partek Flow Overview and Updates in the Latest Version
Live Demo: Single Cell RNA-Seq Data Analysis and Visualization in Partek Flow
• Data Import
• QA/QC
• Data Filter and Normalization
• Clustering Analysis
• Dimension Reduction and Visualize in 2/3 D
• Differential Expression
DetailsOrganizerCBIITWhenTue, Jul 14, 2020 - 11:00 am - 12:00 pmWhereOnline |
Join us for this Webinar session, where Partek scientist will provide an overview and updates for the latest version of Partek Flow followed with a live demo for Single Cell RNA-Seq data analysis. During the live demo, the Partek scientist will go through the steps on analyzing and visualizing a Single Cell RNA-Seq data using the newly implemented and released data visualization tool in Partek Flow – Data Viewer. The new Data Viewer provides more flexible and easier ways to integrate information collected from the data and helps biologists discover more biological meanings with the point-and-click user interface. Agenda: Presentation: Partek Flow Overview and Updates in the Latest Version Live Demo: Single Cell RNA-Seq Data Analysis and Visualization in Partek Flow • Data Import • QA/QC • Data Filter and Normalization • Clustering Analysis • Dimension Reduction and Visualize in 2/3 D • Differential Expression | 2020-07-14 11:00:00 | Online | Bulk RNA-Seq | Online | CBIIT | 0 | RNA-Seq Data Analysis using Partek Flow | |||
927 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Soon after registering for this course, you will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jul 16, 2020 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Soon after registering for this course, you will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-07-16 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion (July 16th) | ||
924 |
Description
A panel of scientists with expertise in Single-Cell RNA-Seq will answer your questions about Single-Cell RNA-Seq experimental design.
Please submit your question by July 15, to https://btep.ccr.cancer.gov/question/single_cell_rna_seq/
If you do not already have an account on the BTEP website, you will need to create one to ask a question. Any problems contact ncibtep@nih....Read More
A panel of scientists with expertise in Single-Cell RNA-Seq will answer your questions about Single-Cell RNA-Seq experimental design.
Please submit your question by July 15, to https://btep.ccr.cancer.gov/question/single_cell_rna_seq/
If you do not already have an account on the BTEP website, you will need to create one to ask a question. Any problems contact ncibtep@nih.gov
On the day of the meeting, please join us at:
https://nci.rev.vbrick.com/#/webcasts/singlecellpart1
Attendee’s Instructions:
We recommend that you join at least 10 minutes before the meeting begins.
PLEASE NOTE: You must disconnect from NIH VPN and close other running applications on your computer to watch the webcast.
Instructions on how to view the Webcast
RegisterOrganizerBTEPWhenThu, Jul 23, 2020 - 10:00 am - 12:00 pmWhereOnline Webinar |
A panel of scientists with expertise in Single-Cell RNA-Seq will answer your questions about Single-Cell RNA-Seq experimental design. Please submit your question by July 15, to https://btep.ccr.cancer.gov/question/single_cell_rna_seq/ If you do not already have an account on the BTEP website, you will need to create one to ask a question. Any problems contact ncibtep@nih.gov On the day of the meeting, please join us at: https://nci.rev.vbrick.com/#/webcasts/singlecellpart1 Attendee’s Instructions: We recommend that you join at least 10 minutes before the meeting begins. PLEASE NOTE: You must disconnect from NIH VPN and close other running applications on your computer to watch the webcast. Instructions on how to view the Webcast Disconnect from NIH VPN and close other running applications on your computer. You may also watch this webcast using your smartphone. Click on Webcast link provided. Enter your first and last name in “Display Name” field. Enter your NIH email in “Email” field. Check the consent/authorization box. Sign in as guest. When the event is visible, click “unmute” in the upper right corner of the event window to hear the streamed audio from your computer speakers. Use your computer to adjust the volume. Click on the video icon (third icon from the bottom right) to move the presenter’s video. A recording will be made available on the BTEP website within 1-2 days. To view the event on an iPhone/iPad or Android device, click on the webcast link and follow the sign in as guest steps. | 2020-07-23 10:00:00 | Online Webinar | Single Cell RNA-seq | Online | Michael Kelly (SCAF),Stefan Cordes (NHLBI) | BTEP | 0 | Virtual Single Cell Town Hall: Experimental Design for Optimal Results in Single-Cell RNA-Seq | ||
928 |
Description
THIS EVENT HAS BEEN CANCELLED
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their ...Read More
THIS EVENT HAS BEEN CANCELLED
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. One week before the scheduled date of the live Discussion webinar for this course, registration will close and all registrants (including you) will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. RegisterOrganizerBTEPWhenThu, Jul 23, 2020 - 2:00 pm - 3:00 pmWhereOnline Webinar |
THIS EVENT HAS BEEN CANCELLEDSingle-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. One week before the scheduled date of the live Discussion webinar for this course, registration will close and all registrants (including you) will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-07-23 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP – Tutorial & Discussion (July 23rd) - CANCELLED | ||
7 |
Description
The GDC RNA-Seq Analysis pipeline quantifies protein-coding gene expression. RNA-Seq data is aligned to the reference genome to detect splice junctions and then re-aligned to increase quality. Gene expression quantification and fusion detection are performed on the aligned reads. This webinar will provide an in depth look at how RNA-Seq data is processed at the GDC and made available to the research community.
JOIN FROM A VIDEO SYSTEM OR APPLICATION
Dial sip: 1604488349@cbiit.webex.com
...Read More
The GDC RNA-Seq Analysis pipeline quantifies protein-coding gene expression. RNA-Seq data is aligned to the reference genome to detect splice junctions and then re-aligned to increase quality. Gene expression quantification and fusion detection are performed on the aligned reads. This webinar will provide an in depth look at how RNA-Seq data is processed at the GDC and made available to the research community.
JOIN FROM A VIDEO SYSTEM OR APPLICATION
Dial sip: 1604488349@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
JOIN BY PHONE
1-650-479-3207 Call-in toll number (US/Canada)
Global call-in numbers(link is external) | Can't join the meeting?(link is external)
Tap here to call (mobile phones only, hosts not supported): tel:%2B1-650-479-3207,,*01*857220328%23%23*01
DetailsWhenMon, Jul 27, 2020 - 2:00 pm - 3:00 pmWhereOnline |
The GDC RNA-Seq Analysis pipeline quantifies protein-coding gene expression. RNA-Seq data is aligned to the reference genome to detect splice junctions and then re-aligned to increase quality. Gene expression quantification and fusion detection are performed on the aligned reads. This webinar will provide an in depth look at how RNA-Seq data is processed at the GDC and made available to the research community. JOIN FROM A VIDEO SYSTEM OR APPLICATION Dial sip: 1604488349@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. JOIN BY PHONE 1-650-479-3207 Call-in toll number (US/Canada) Global call-in numbers(link is external) | Can't join the meeting?(link is external) Tap here to call (mobile phones only, hosts not supported): tel:%2B1-650-479-3207,,*01*857220328%23%23*01 | 2020-07-27 14:00:00 | Online | In-Person | 0 | Genome Data Commons RNA-Seq Data Processing | |||||
8 |
Description
A tool for detection of somatic, subclonal, mosaic, and germline CNVs from sequencing
Tool Acronym: CNVnator
Tool URL: github.com/abyzovlab/CNVnator
Code Repository
github.com/abyzovlab/CNVnator
Grant Info
projectreporter.nih.gov/project_info_description.cfm?aid=9502057&icde=39748518&ddparam=&ddvalue=&ddsub=&cr=1&csb=default&cs=ASC&pball=
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the ...Read More
A tool for detection of somatic, subclonal, mosaic, and germline CNVs from sequencing
Tool Acronym: CNVnator
Tool URL: github.com/abyzovlab/CNVnator
Code Repository
github.com/abyzovlab/CNVnator
Grant Info
projectreporter.nih.gov/project_info_description.cfm?aid=9502057&icde=39748518&ddparam=&ddvalue=&ddsub=&cr=1&csb=default&cs=ASC&pball=
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website.
Register: cbiit.webex.com/cbiit/onstage/g.php?MTID=e5f2ce410b37da489bfee497919a6aabd
DetailsOrganizerCBIITWhenTue, Jul 28, 2020 - 12:00 pm - 1:00 pmWhereOnline |
A tool for detection of somatic, subclonal, mosaic, and germline CNVs from sequencing Tool Acronym: CNVnator Tool URL: github.com/abyzovlab/CNVnator Code Repository github.com/abyzovlab/CNVnator Grant Info projectreporter.nih.gov/project_info_description.cfm?aid=9502057&icde=39748518&ddparam=&ddvalue=&ddsub=&cr=1&csb=default&cs=ASC&pball= The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website. Register: cbiit.webex.com/cbiit/onstage/g.php?MTID=e5f2ce410b37da489bfee497919a6aabd | 2020-07-28 12:00:00 | Online | Variant Analysis | Online | CBIIT | 0 | Introduction to CNVnator ITCR tool | |||
925 |
Description
A panel of scientists with expertise in Single-Cell RNA-Seq will answer your questions on analysis of Single-Cell RNA-Seq data.
Questions must be submitted in advance of the meeting by Weds, July 15.
Please submit your question to : https://btep.ccr.cancer.gov/question/single_cell_rna_seq/
If you do not already have an account on the BTEP website, you will need to ...Read More
A panel of scientists with expertise in Single-Cell RNA-Seq will answer your questions on analysis of Single-Cell RNA-Seq data.
Questions must be submitted in advance of the meeting by Weds, July 15.
Please submit your question to : https://btep.ccr.cancer.gov/question/single_cell_rna_seq/
If you do not already have an account on the BTEP website, you will need to create one to submit a question. Any problems contact ncibtep@nih.gov
On the day of the meeting, please join us at WEBCAST LINK: https://nci.rev.vbrick.com/#/webcasts/singlecellpart2
Attendee’s Instructions:
We recommend that you join at least 10 minutes before the meeting begins
PLEASE NOTE: You must disconnect from NIH VPN and close other running applications on your computer to watch the webcast.
Instructions on how to view the Webcast:
RegisterOrganizerBTEPWhenThu, Jul 30, 2020 - 10:00 am - 12:00 pmWhereOnline Webinar |
A panel of scientists with expertise in Single-Cell RNA-Seq will answer your questions on analysis of Single-Cell RNA-Seq data. Questions must be submitted in advance of the meeting by Weds, July 15. Please submit your question to : https://btep.ccr.cancer.gov/question/single_cell_rna_seq/ If you do not already have an account on the BTEP website, you will need to create one to submit a question. Any problems contact ncibtep@nih.gov On the day of the meeting, please join us at WEBCAST LINK: https://nci.rev.vbrick.com/#/webcasts/singlecellpart2 Attendee’s Instructions: We recommend that you join at least 10 minutes before the meeting begins PLEASE NOTE: You must disconnect from NIH VPN and close other running applications on your computer to watch the webcast. Instructions on how to view the Webcast: Disconnect from NIH VPN and close other running applications on your computer. You may also watch this webcast using your smartphone. Click on Webcast link provided. Enter your first and last name in “Display Name” field. Enter your NIH email in “Email” field. Check the consent/authorization box. Sign in as guest. When the event is visible, click “unmute” in the upper right corner of the event window to hear the streamed audio from your computer speakers. Use your computer to adjust the volume. Click on the video icon (third icon from the bottom right) to move the presenter’s video. A recording will be made available on the BTEP website within 1-2 days. To view the event on an iPhone/iPad or Android device, click on the webcast link and follow the sign in as guest steps | 2020-07-30 10:00:00 | Online Webinar | Single Cell RNA-seq | Online | Michael Kelly (SCAF),Cihan Oguz (NCBR),Vicky Chen (NCBR),Nathan Wong (CCBR),Stefan Cordes (NHLBI),Kimia Dadkhah (SCAF) | BTEP | 0 | Virtual Single Cell Town Hall: Single-Cell RNA-Seq Data Analysis | ||
929 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. One week before the scheduled date of the live Discussion webinar for this course, registration will close and all registrants (including you) will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jul 30, 2020 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. One week before the scheduled date of the live Discussion webinar for this course, registration will close and all registrants (including you) will receive access to the tutorials and documentation, as well as a calendar invitation to your Discussion class. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-07-30 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion (July 30th) | ||
20 |
Description
Exploratory data analysis (EDA) is an important step in statistics that enables the validation, summarization, and hypothesis generation in relation to a dataset. This workshop will present multiple tools used to perform EDA tasks and show you how to apply them on three public clinical datasets. The workshop will also demonstrate tools that can assist you in exploration and characterization of your data sets.
WebEx: https://bit.ly/3gzqGUnRead More
Exploratory data analysis (EDA) is an important step in statistics that enables the validation, summarization, and hypothesis generation in relation to a dataset. This workshop will present multiple tools used to perform EDA tasks and show you how to apply them on three public clinical datasets. The workshop will also demonstrate tools that can assist you in exploration and characterization of your data sets.
WebEx: https://bit.ly/3gzqGUn
DetailsOrganizerNCI Data Science Learning ExchangeWhenThu, Aug 06, 2020 - 1:00 pm - 2:30 pmWhereOnline |
Exploratory data analysis (EDA) is an important step in statistics that enables the validation, summarization, and hypothesis generation in relation to a dataset. This workshop will present multiple tools used to perform EDA tasks and show you how to apply them on three public clinical datasets. The workshop will also demonstrate tools that can assist you in exploration and characterization of your data sets. WebEx: https://bit.ly/3gzqGUn | 2020-08-06 13:00:00 | Online | Online | NCI Data Science Learning Exchange | 0 | Exploratory Data Analysis (EDA) for Clinical Datasets | ||||
12 |
Description
Copy Number Variation (CNV) is a type of structural variation in which sections of the genome are duplicated or deleted. Associated with being causal mutations for disease phenotypes, it is important in clinical and research settings to identify CNV events in samples or datasets. Golden Helix’s VarSeq-CNV (VS-CNV) is a calling algorithm that uses one testing paradigm to provide a true simplification of a clinical workflow. VarSeq incorporates the ability to accurately call and ...Read More
Copy Number Variation (CNV) is a type of structural variation in which sections of the genome are duplicated or deleted. Associated with being causal mutations for disease phenotypes, it is important in clinical and research settings to identify CNV events in samples or datasets. Golden Helix’s VarSeq-CNV (VS-CNV) is a calling algorithm that uses one testing paradigm to provide a true simplification of a clinical workflow. VarSeq incorporates the ability to accurately call and annotate CNVs and evaluate germline and somatic mutations according to the Association for Molecular Pathology (AMP) guidelines. Golden Helix CancerKB is an AMP workflow feature that streamlines the analysis time and report generation.
Attendees will learn the following: setting up the VS-CNV caller using BAM files from whole exome data; filtering down to high quality; understanding high confidence CNV events; annotating CNVs using publicly curated catalogs and databases; adding clinically relevant CNVs to the VSClinical AMP workflow; and utilizing Golden Helix CancerKB to obtain expert-curated interpretations. This class will demonstrate updated software features, provide insights into best practice workflows, and show participants how to implement the software into a pipeline solution.
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/varseq-copy-number-variation-vs-cnv-caller-and-golden-helix-cancerkb-amp-workflow-0
DetailsOrganizerNIH Training LibraryWhenMon, Aug 10, 2020 - 9:00 am - 10:00 amWhereOnline |
Copy Number Variation (CNV) is a type of structural variation in which sections of the genome are duplicated or deleted. Associated with being causal mutations for disease phenotypes, it is important in clinical and research settings to identify CNV events in samples or datasets. Golden Helix’s VarSeq-CNV (VS-CNV) is a calling algorithm that uses one testing paradigm to provide a true simplification of a clinical workflow. VarSeq incorporates the ability to accurately call and annotate CNVs and evaluate germline and somatic mutations according to the Association for Molecular Pathology (AMP) guidelines. Golden Helix CancerKB is an AMP workflow feature that streamlines the analysis time and report generation. Attendees will learn the following: setting up the VS-CNV caller using BAM files from whole exome data; filtering down to high quality; understanding high confidence CNV events; annotating CNVs using publicly curated catalogs and databases; adding clinically relevant CNVs to the VSClinical AMP workflow; and utilizing Golden Helix CancerKB to obtain expert-curated interpretations. This class will demonstrate updated software features, provide insights into best practice workflows, and show participants how to implement the software into a pipeline solution. https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/varseq-copy-number-variation-vs-cnv-caller-and-golden-helix-cancerkb-amp-workflow-0 | 2020-08-10 09:00:00 | Online | Variant Analysis | Online | NIH Training Library | 0 | VarSeq Copy Number Variation Caller and Golden Helix CancerKB for AMP Workflow | |||
9 |
Description
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training ...Read More
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; describe how to save data in R.
Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
View Details and Register: introduction-r-data-types
DetailsOrganizerNIH Training LibraryWhenTue, Aug 11, 2020 - 1:00 pm - 2:00 pmWhereOnline |
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; describe how to save data in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. View Details and Register: introduction-r-data-types | 2020-08-11 13:00:00 | Online | Programming | Online | NIH Training Library | 0 | Introduction to R Data Types | |||
11 |
Description
Speakers: Nikhita Amod Gogate and Daniel Lyman, George Washington University
Data on biomarkers are being collected for a wide range of cancers and stored in data sets around the world. Staying abreast of these discoveries can be difficult. OncoMX was designed to give researchers a single source for managing discoveries in cancer mutation and expression biomarkers. A collaborative project between The George Washington University, NASA’s Jet Propulsion Laboratory, the Swiss Institute of Bioinformatics, and ...Read More
Speakers: Nikhita Amod Gogate and Daniel Lyman, George Washington University
Data on biomarkers are being collected for a wide range of cancers and stored in data sets around the world. Staying abreast of these discoveries can be difficult. OncoMX was designed to give researchers a single source for managing discoveries in cancer mutation and expression biomarkers. A collaborative project between The George Washington University, NASA’s Jet Propulsion Laboratory, the Swiss Institute of Bioinformatics, and the University of Delaware, OncoMX offers researchers a centralized, unified, and integrated web resource for tracking and comparing the latest findings on biomarkers to improve cancer detection, prevention, and treatment. This training will demonstrate how to use OncoMX to explore cancer biomarker data, and how to mine existing literature using specifically designed tools and pathways.
For questions, contact Daoud Meerzaman.
DetailsOrganizerCBIITWhenTue, Aug 11, 2020 - 1:30 pm - 2:30 pmWhereOnline |
Speakers: Nikhita Amod Gogate and Daniel Lyman, George Washington University Data on biomarkers are being collected for a wide range of cancers and stored in data sets around the world. Staying abreast of these discoveries can be difficult. OncoMX was designed to give researchers a single source for managing discoveries in cancer mutation and expression biomarkers. A collaborative project between The George Washington University, NASA’s Jet Propulsion Laboratory, the Swiss Institute of Bioinformatics, and the University of Delaware, OncoMX offers researchers a centralized, unified, and integrated web resource for tracking and comparing the latest findings on biomarkers to improve cancer detection, prevention, and treatment. This training will demonstrate how to use OncoMX to explore cancer biomarker data, and how to mine existing literature using specifically designed tools and pathways. For questions, contact Daoud Meerzaman. | 2020-08-11 13:30:00 | Online | Cancer | Online | CBIIT | 0 | OncoMX: Cancer mutation and expression biomarkers | |||
22 |
Description
Presented by Mark Benson and Keith Hughitt
Webex
Meeting Number: 160 826 5254
Meeting Password: AGtSsrY?335
URL: https://cbiit.webex.com/cbiit/j.php?MTID=m7bec33bde208c131727bf43c9246cbdd
Presented by Mark Benson and Keith Hughitt
Webex
Meeting Number: 160 826 5254
Meeting Password: AGtSsrY?335
URL: https://cbiit.webex.com/cbiit/j.php?MTID=m7bec33bde208c131727bf43c9246cbdd
DetailsOrganizerBYOBWhenThu, Aug 13, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Presented by Mark Benson and Keith Hughitt Webex Meeting Number: 160 826 5254 Meeting Password: AGtSsrY?335 URL: https://cbiit.webex.com/cbiit/j.php?MTID=m7bec33bde208c131727bf43c9246cbdd | 2020-08-13 12:00:00 | Online | Online | BYOB | 0 | An introduction to NLP for biomedical text analysis | ||||
23 |
Description
Speaker: Dr. Mary Carrington
The exceptional influence of HLA and related genes located in the MHC on human disease relative to that of variation in the rest of the genome has now been clearly demonstrated by GWAS. While allelic effects of these genes that confer specificity for peptide presentation have been well-appreciated for decades, more recently it has become evident that other allele-specific features, such as expression levels of HLA molecules or their interaction with ...Read More
Speaker: Dr. Mary Carrington
The exceptional influence of HLA and related genes located in the MHC on human disease relative to that of variation in the rest of the genome has now been clearly demonstrated by GWAS. While allelic effects of these genes that confer specificity for peptide presentation have been well-appreciated for decades, more recently it has become evident that other allele-specific features, such as expression levels of HLA molecules or their interaction with binding partners during assembly in the endoplasmic reticulum (ER), also impact HLA function differentially. The level of dependence on the assembly factor tapasin is highly variable across the common HLA class I allotypes. Tapasin dependence influences peptide repertoire both in terms of its size and affinity of presented peptides, where tapasin dependent HLA allotypes present a smaller repertoire of peptides, but likely with higher average affinity compared to tapasin independent allotypes. We have ascribed tapasin dependence coefficients to each common HLA allele and an overall dependence score given the entire HLA genotype present in each subject. I will discuss the impact of these allele-specific properties on HLA function and their effects on disease outcomes.
Download ICS
Join Zoom Meeting
Meeting ID: 916 3499 0819
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Meeting ID: 916 3499 0819
Find your local number: https://umd.zoom.us/u/ac38Ygg0S7
DetailsOrganizerCDSLWhenMon, Aug 17, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Speaker: Dr. Mary Carrington The exceptional influence of HLA and related genes located in the MHC on human disease relative to that of variation in the rest of the genome has now been clearly demonstrated by GWAS. While allelic effects of these genes that confer specificity for peptide presentation have been well-appreciated for decades, more recently it has become evident that other allele-specific features, such as expression levels of HLA molecules or their interaction with binding partners during assembly in the endoplasmic reticulum (ER), also impact HLA function differentially. The level of dependence on the assembly factor tapasin is highly variable across the common HLA class I allotypes. Tapasin dependence influences peptide repertoire both in terms of its size and affinity of presented peptides, where tapasin dependent HLA allotypes present a smaller repertoire of peptides, but likely with higher average affinity compared to tapasin independent allotypes. We have ascribed tapasin dependence coefficients to each common HLA allele and an overall dependence score given the entire HLA genotype present in each subject. I will discuss the impact of these allele-specific properties on HLA function and their effects on disease outcomes. Download ICS Join Zoom Meeting Meeting ID: 916 3499 0819 One tap mobile +13017158592,,91634990819# US (Germantown) +19294362866,,91634990819# US (New York) Dial by your location +1 301 715 8592 US (Germantown) +1 929 436 2866 US (New York) +1 312 626 6799 US (Chicago) +1 346 248 7799 US (Houston) +1 669 900 6833 US (San Jose) +1 253 215 8782 US (Tacoma) Meeting ID: 916 3499 0819 Find your local number: https://umd.zoom.us/u/ac38Ygg0S7 | 2020-08-17 15:00:00 | Online | Online | CDSL | 0 | The impact of immunogenetic variation on human health and disease | ||||
13 |
Description
Single nucleotide polymorphism (SNP) & Variation Suite (SVS) is an analytic tool created to empower researchers to perform complex analyses and visualizations on genomic and phenotypic data. Genome-Wide Association Studies (GWAS) continues to be an effective method for identifying disease susceptible genes in humans and other organisms. Attendees will learn how SVS can be used to perform GWAS and genomic prediction, how to analyze high-quality SNPs by performing the association test, how to use quality control ...Read More
Single nucleotide polymorphism (SNP) & Variation Suite (SVS) is an analytic tool created to empower researchers to perform complex analyses and visualizations on genomic and phenotypic data. Genome-Wide Association Studies (GWAS) continues to be an effective method for identifying disease susceptible genes in humans and other organisms. Attendees will learn how SVS can be used to perform GWAS and genomic prediction, how to analyze high-quality SNPs by performing the association test, how to use quality control metrics, and how to use genomic prediction with K-Fold to estimate which genotypes best predict a desired phenotype.
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/snp-and-variation-suite-svs-genome-wide-association-studies-gwas-0
DetailsOrganizerNIH Training LibraryWhenThu, Aug 20, 2020 - 10:00 am - 11:00 amWhereOnline |
Single nucleotide polymorphism (SNP) & Variation Suite (SVS) is an analytic tool created to empower researchers to perform complex analyses and visualizations on genomic and phenotypic data. Genome-Wide Association Studies (GWAS) continues to be an effective method for identifying disease susceptible genes in humans and other organisms. Attendees will learn how SVS can be used to perform GWAS and genomic prediction, how to analyze high-quality SNPs by performing the association test, how to use quality control metrics, and how to use genomic prediction with K-Fold to estimate which genotypes best predict a desired phenotype. https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/snp-and-variation-suite-svs-genome-wide-association-studies-gwas-0 | 2020-08-20 10:00:00 | Online | Variant Analysis | Online | NIH Training Library | 0 | SNP and Variation Suite for Genome-Wide Association Studies | |||
21 |
Description
Abstract: Machine learning (ML) has emerged as an essential tool for building models which can be used to predict clinical outcomes for age-related diseases. A significant challenge of ML is knowing which algorithms and parameter settings are appropriate for a given data set and the hidden patterns to be discovered. Automated ML or AutoML has emerged to take the guesswork out of selecting an ML method by letting the computer optimize the method and parameter ...Read More
Abstract: Machine learning (ML) has emerged as an essential tool for building models which can be used to predict clinical outcomes for age-related diseases. A significant challenge of ML is knowing which algorithms and parameter settings are appropriate for a given data set and the hidden patterns to be discovered. Automated ML or AutoML has emerged to take the guesswork out of selecting an ML method by letting the computer optimize the method and parameter selection. This makes ML more accessible to non-experts. We introduce here the tree-based pipeline optimization tool (TPOT) for automated discovery of ML pipelines. We applied TPOT to predicting coronary artery disease (CAD) phenotypes using 73 nuclear magnetic resonance-derived lipoprotein and metabolite profiles and 27 demographic and clinical features in the Angiography and Genes Study (ANGES) with a sample size of 925 subjects. We show that TPOT outperforms a standard grid search approach for predicting CAD outcomes and identifies pipelines unlikely to be selected by human experts. The TPOT software is programmed in Python and freely available as open-source from Github (https://github.com/EpistasisLab/tpot).
Speaker: Jason Moore, Ph.D., Director of the Penn Institute for Biomedical Informatics, Philadelphia, PA
Register here with NIH Webex Events: https://nih.webex.com/nih/onstage/g.php?MTID=e7b2a0e8c2dd5ddf486316a551fe555d4
DetailsOrganizerNIAWhenFri, Aug 21, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Abstract: Machine learning (ML) has emerged as an essential tool for building models which can be used to predict clinical outcomes for age-related diseases. A significant challenge of ML is knowing which algorithms and parameter settings are appropriate for a given data set and the hidden patterns to be discovered. Automated ML or AutoML has emerged to take the guesswork out of selecting an ML method by letting the computer optimize the method and parameter selection. This makes ML more accessible to non-experts. We introduce here the tree-based pipeline optimization tool (TPOT) for automated discovery of ML pipelines. We applied TPOT to predicting coronary artery disease (CAD) phenotypes using 73 nuclear magnetic resonance-derived lipoprotein and metabolite profiles and 27 demographic and clinical features in the Angiography and Genes Study (ANGES) with a sample size of 925 subjects. We show that TPOT outperforms a standard grid search approach for predicting CAD outcomes and identifies pipelines unlikely to be selected by human experts. The TPOT software is programmed in Python and freely available as open-source from Github (https://github.com/EpistasisLab/tpot). Speaker: Jason Moore, Ph.D., Director of the Penn Institute for Biomedical Informatics, Philadelphia, PA Register here with NIH Webex Events: https://nih.webex.com/nih/onstage/g.php?MTID=e7b2a0e8c2dd5ddf486316a551fe555d4 | 2020-08-21 12:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIA | 0 | Automated Machine Learning Analysis of Metabolomic Data | |||
24 |
Description
Speaker: Dr. Helen Shearman, Ph.D., Geneious Prime
Registration link
Description
Geneious Prime offers fundamental molecular biology and sequence analysis tools designed to make bioinformatics work easier and more collaborative. In this 1-hour introductory webinar, participants will learn the range of tools available in this software suite, including a look at molecular cloning and primer design, chromatogram and next generation sequencing analysis, DNA and protein sequence alignment, the National Center for Biotechnology Information (NCBI) Basic ...Read More
Speaker: Dr. Helen Shearman, Ph.D., Geneious Prime
Registration link
Description
Geneious Prime offers fundamental molecular biology and sequence analysis tools designed to make bioinformatics work easier and more collaborative. In this 1-hour introductory webinar, participants will learn the range of tools available in this software suite, including a look at molecular cloning and primer design, chromatogram and next generation sequencing analysis, DNA and protein sequence alignment, the National Center for Biotechnology Information (NCBI) Basic Local Alignment Search Tool (BLAST), and more. Attendees also will see how to search, share, and automate their work as part of the Geneious Prime workflows.
Register
DetailsOrganizerCBIITWhenWed, Aug 26, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Speaker: Dr. Helen Shearman, Ph.D., Geneious Prime Registration link Description Geneious Prime offers fundamental molecular biology and sequence analysis tools designed to make bioinformatics work easier and more collaborative. In this 1-hour introductory webinar, participants will learn the range of tools available in this software suite, including a look at molecular cloning and primer design, chromatogram and next generation sequencing analysis, DNA and protein sequence alignment, the National Center for Biotechnology Information (NCBI) Basic Local Alignment Search Tool (BLAST), and more. Attendees also will see how to search, share, and automate their work as part of the Geneious Prime workflows. Register | 2020-08-26 15:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to Geneious Prime | |||
25 |
Description
Speaker: Dr. Christian Zinser, Precigen Bioinformatics
Registration
The Genomatix Genome Analyzer (GGA) aids in ...Read More
Speaker: Dr. Christian Zinser, Precigen Bioinformatics
Registration
The Genomatix Genome Analyzer (GGA) aids in analyzing next generation sequencing (NGS) data from ChIP, RNA, DNA, methylation, or small RNA sequencing. This introductory webinar gives an overview of the GGA’s functionalities and biological background data, and explores tasks such as expression analysis, verifying and generating networks and pathways, and examining the literature and binding site motifs, among others. The demonstration includes a look at the GGA’s intuitive web-based graphical user interface.
For questions, contact Daoud Meerzaman.
DetailsOrganizerCBIITWhenFri, Aug 28, 2020 - 10:00 am - 11:00 amWhereOnline |
Speaker: Dr. Christian Zinser, Precigen Bioinformatics Registration The Genomatix Genome Analyzer (GGA) aids in analyzing next generation sequencing (NGS) data from ChIP, RNA, DNA, methylation, or small RNA sequencing. This introductory webinar gives an overview of the GGA’s functionalities and biological background data, and explores tasks such as expression analysis, verifying and generating networks and pathways, and examining the literature and binding site motifs, among others. The demonstration includes a look at the GGA’s intuitive web-based graphical user interface. For questions, contact Daoud Meerzaman. | 2020-08-28 10:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to Genomatix Genome Analyzer | |||
10 |
Description
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and ...Read More
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database).
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/pathway-analysis-3
DetailsOrganizerNIH Training LibraryWhenFri, Aug 28, 2020 - 11:30 am - 12:30 pmWhereOnline |
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database). https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/pathway-analysis-3 | 2020-08-28 11:30:00 | Online | Pathway Analysis | Online | NIH Training Library | 0 | Pathway Analysis | |||
41 |
Description
Speaker: Dr. Luke Gilbert is an Assistant Professor in the Department of Urology, the Helen Diller Family Comprehensive Cancer Center and the Innovative Genomics Institute at the University of California, San Francisco.
Dr. Gilbert was an early pioneer in repurposed CRISPR systems that are used to turn genes on (CRISPRa) and off (CRISPRi) by editing the epigenome. The Gilbert lab continues to develop new epigenetic editing approaches as well as new CRISPR functional genomics platforms. ...Read More
Speaker: Dr. Luke Gilbert is an Assistant Professor in the Department of Urology, the Helen Diller Family Comprehensive Cancer Center and the Innovative Genomics Institute at the University of California, San Francisco.
Dr. Gilbert was an early pioneer in repurposed CRISPR systems that are used to turn genes on (CRISPRa) and off (CRISPRi) by editing the epigenome. The Gilbert lab continues to develop new epigenetic editing approaches as well as new CRISPR functional genomics platforms. Recently, the Gilbert lab developed two next-generation CRISPR functional genomics platforms to systematically and quantitatively map genetic interactions.
The Gilbert lab is focusing on utilizing our expertise to tackle big problems in cancer such as metastasis and drug resistance in cancer. They use genome-scale screens, genetic interaction mapping and genome engineering to identify genetic and epigenetic causes underlying why some patients are cured and others are not by cancer therapy.
Registration
DetailsWhenFri, Aug 28, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Speaker: Dr. Luke Gilbert is an Assistant Professor in the Department of Urology, the Helen Diller Family Comprehensive Cancer Center and the Innovative Genomics Institute at the University of California, San Francisco. Dr. Gilbert was an early pioneer in repurposed CRISPR systems that are used to turn genes on (CRISPRa) and off (CRISPRi) by editing the epigenome. The Gilbert lab continues to develop new epigenetic editing approaches as well as new CRISPR functional genomics platforms. Recently, the Gilbert lab developed two next-generation CRISPR functional genomics platforms to systematically and quantitatively map genetic interactions. The Gilbert lab is focusing on utilizing our expertise to tackle big problems in cancer such as metastasis and drug resistance in cancer. They use genome-scale screens, genetic interaction mapping and genome engineering to identify genetic and epigenetic causes underlying why some patients are cured and others are not by cancer therapy. Registration | 2020-08-28 12:00:00 | Online | Single Cell Technologies,Cancer | Online | 0 | Mapping Cancer Genetics at Single Cell Resolution | ||||
33 |
Description
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer Moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Tracy Fullerton, Director of USC Game Innovation Lab, pursuing experimental design of games in cultural realms including art, science, politics, and learning.
Corrie Painter, Patient advocate and research scientist at the Broad Institute; ...Read More
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer Moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Tracy Fullerton, Director of USC Game Innovation Lab, pursuing experimental design of games in cultural realms including art, science, politics, and learning.
Corrie Painter, Patient advocate and research scientist at the Broad Institute; directs Count Me In, partnering researchers with patients to speed cancer discoveries.
Program Details
DetailsWhenMon, Aug 31, 2020 - 1:00 pm - 2:30 pmWhereOnline |
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer Moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization. Speakers: Tracy Fullerton, Director of USC Game Innovation Lab, pursuing experimental design of games in cultural realms including art, science, politics, and learning. Corrie Painter, Patient advocate and research scientist at the Broad Institute; directs Count Me In, partnering researchers with patients to speed cancer discoveries. Program Details | 2020-08-31 13:00:00 | Online | Cancer,Data Science | Online | 0 | Dataviz + Cancer Microlab 1 | ||||
43 |
Description
Alternative splicing (AS) and alternative back-splicing (ABS) are essential to understanding the development of cancer and may play a role as a target of personalized cancer therapeutics. However, the existing reference transcriptome annotation databases are far from being complete. Thus, detecting novel splicing events is an important yet a challenging task. This is partially due to the fact that traditional short-read sequencing (SRS) technologies, despite their low error rate, are limited by their short read ...Read More
Alternative splicing (AS) and alternative back-splicing (ABS) are essential to understanding the development of cancer and may play a role as a target of personalized cancer therapeutics. However, the existing reference transcriptome annotation databases are far from being complete. Thus, detecting novel splicing events is an important yet a challenging task. This is partially due to the fact that traditional short-read sequencing (SRS) technologies, despite their low error rate, are limited by their short read lengths. On the other hand, the more recent long-read sequencing (LRS) technologies, while having the potential for capturing full-length transcripts, are marred with high error rates and significant structural artifacts.
In this talk, two computational methods will be presented: CircMiner and Freddie. CircMiner accurately and efficiently detects back-splice sites and their abundances from SRS data using a novel splice-aware pseudo-alignment algorithm. Freddie is an annotation-free isoform discovery and detection tool that uses genome alignments of transcriptomic LRS as input with no reliance on transcriptome annotation databases by solving a combinatorial problem called MErCi (Minimum Error Clustering into Isoforms).
Bio:
Dr. Faraz Hach is an assistant professor in the Department of Urologic Sciences at the University of British Columbia and a senior research scientist at Vancouver Prostate Centre. He completed his PhD in computing science in Simon Fraser University and was a recipient of the Governor General's Gold Medal. His goal is to build bridges between computational algorithm design and biological problems pertaining to precision medicine with a special focus on cancer genomes. His research involves designing novel and high performance algorithms for analyzing large, high dimensional omics data produced by sequencing technologies. Recently, he is working on developing computational algorithms for the detection of aberrations using sequencing data obtained from tissue and liquid biopsies in order to understand clonal evolution in cancer genomes.
Join Zoom meeting
DetailsOrganizerCDSLWhenMon, Aug 31, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Alternative splicing (AS) and alternative back-splicing (ABS) are essential to understanding the development of cancer and may play a role as a target of personalized cancer therapeutics. However, the existing reference transcriptome annotation databases are far from being complete. Thus, detecting novel splicing events is an important yet a challenging task. This is partially due to the fact that traditional short-read sequencing (SRS) technologies, despite their low error rate, are limited by their short read lengths. On the other hand, the more recent long-read sequencing (LRS) technologies, while having the potential for capturing full-length transcripts, are marred with high error rates and significant structural artifacts. In this talk, two computational methods will be presented: CircMiner and Freddie. CircMiner accurately and efficiently detects back-splice sites and their abundances from SRS data using a novel splice-aware pseudo-alignment algorithm. Freddie is an annotation-free isoform discovery and detection tool that uses genome alignments of transcriptomic LRS as input with no reliance on transcriptome annotation databases by solving a combinatorial problem called MErCi (Minimum Error Clustering into Isoforms). Bio: Dr. Faraz Hach is an assistant professor in the Department of Urologic Sciences at the University of British Columbia and a senior research scientist at Vancouver Prostate Centre. He completed his PhD in computing science in Simon Fraser University and was a recipient of the Governor General's Gold Medal. His goal is to build bridges between computational algorithm design and biological problems pertaining to precision medicine with a special focus on cancer genomes. His research involves designing novel and high performance algorithms for analyzing large, high dimensional omics data produced by sequencing technologies. Recently, he is working on developing computational algorithms for the detection of aberrations using sequencing data obtained from tissue and liquid biopsies in order to understand clonal evolution in cancer genomes. Join Zoom meeting | 2020-08-31 15:00:00 | Online | Sequencing Technologies | Online | CDSL | 0 | Uncovering alternative (back) splicing events using short and long read sequencing technologies | |||
34 |
Description
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer Moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Joe Gray, OHSU Spatial Systems Biomedicine, creating a multi-scale tumor atlas and using systems analysis of extrinsic and intrinsic factors affecting cancer.
Sabrina Culyba, an independent designer with experience spanning animatronics to theme ...Read More
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer Moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Joe Gray, OHSU Spatial Systems Biomedicine, creating a multi-scale tumor atlas and using systems analysis of extrinsic and intrinsic factors affecting cancer.
Sabrina Culyba, an independent designer with experience spanning animatronics to theme part rides, virtual/augmented reality, and transformational games.
Program Details
DetailsWhenTue, Sep 01, 2020 - 2:30 pm - 4:00 pmWhereOnline |
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer Moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization. Speakers: Joe Gray, OHSU Spatial Systems Biomedicine, creating a multi-scale tumor atlas and using systems analysis of extrinsic and intrinsic factors affecting cancer. Sabrina Culyba, an independent designer with experience spanning animatronics to theme part rides, virtual/augmented reality, and transformational games. Program Details | 2020-09-01 14:30:00 | Online | Cancer,Data Science | Online | 0 | Dataviz + Cancer Microlab 2 | ||||
14 |
Description
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research.
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/variant-selection-genomics-dna-sequences-2
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research.
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/variant-selection-genomics-dna-sequences-2
DetailsOrganizerNIH Training LibraryWhenWed, Sep 02, 2020 - 10:00 am - 11:00 amWhereOnline |
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research. https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/variant-selection-genomics-dna-sequences-2 | 2020-09-02 10:00:00 | Online | Variant Analysis | Online | NIH Training Library | 0 | Variant Selection in Genomic DNA Sequences | |||
35 |
Description
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Nils Gehlenborg, Harvard professor integrating visual and computational approaches to support sense-making of biology and reproducible collaborative research across epigenomics and genomics.
Kunle Odunsi, Physician scientist and co-leader of Roswell Park Cancer Center's ...Read More
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Nils Gehlenborg, Harvard professor integrating visual and computational approaches to support sense-making of biology and reproducible collaborative research across epigenomics and genomics.
Kunle Odunsi, Physician scientist and co-leader of Roswell Park Cancer Center's Tumor Immunology and Immunotherapy Program, advancing diagnostics and treatments for gynecological cancer patients.
Program Details
DetailsWhenWed, Sep 02, 2020 - 1:00 pm - 2:30 pmWhereOnline |
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization. Speakers: Nils Gehlenborg, Harvard professor integrating visual and computational approaches to support sense-making of biology and reproducible collaborative research across epigenomics and genomics. Kunle Odunsi, Physician scientist and co-leader of Roswell Park Cancer Center's Tumor Immunology and Immunotherapy Program, advancing diagnostics and treatments for gynecological cancer patients. Program Details | 2020-09-02 13:00:00 | Online | Cancer,Data Science | Online | 0 | Dataviz + Cancer Microlab 3 | ||||
36 |
Description
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Lindsay Grace, Knight Chair of interactive media at the University of Miami School of Communications, exploring social impact through design.
Karen Emmons, National Academy member and Director of Harvard's Community Engagement Program employing ...Read More
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Lindsay Grace, Knight Chair of interactive media at the University of Miami School of Communications, exploring social impact through design.
Karen Emmons, National Academy member and Director of Harvard's Community Engagement Program employing interdisciplinary approaches to reducing cancer risk and health disparities.
Program Details
DetailsWhenFri, Sep 04, 2020 - 11:30 am - 1:00 pmWhereOnline |
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization. Speakers: Lindsay Grace, Knight Chair of interactive media at the University of Miami School of Communications, exploring social impact through design. Karen Emmons, National Academy member and Director of Harvard's Community Engagement Program employing interdisciplinary approaches to reducing cancer risk and health disparities. Program Details | 2020-09-04 11:30:00 | Online | Cancer,Data Science | Online | 0 | Dataviz + Cancer Microlab 4 | ||||
26 |
Description
Speakers: Dave Clements, Galaxy Community Manager, Johns Hopkins University, Steven Weaver, Senior Programmer Analyst, Temple University
Galaxy is an open web-based platform for data integration and analysis in the life sciences. Galaxy makes sophisticated bioinformatics analysis accessible to bench researchers without requiring them to learn Linux system administration or command line interfaces. Every tool and tool setting is automatically recorded by Galaxy, making analyses reproducible by default. Analyses can also be shared with colleagues and ...Read More
Speakers: Dave Clements, Galaxy Community Manager, Johns Hopkins University, Steven Weaver, Senior Programmer Analyst, Temple University
Galaxy is an open web-based platform for data integration and analysis in the life sciences. Galaxy makes sophisticated bioinformatics analysis accessible to bench researchers without requiring them to learn Linux system administration or command line interfaces. Every tool and tool setting is automatically recorded by Galaxy, making analyses reproducible by default. Analyses can also be shared with colleagues and with the public, enabling others to re-use and reproduce analyses pipelines.
In the first part of this webinar, we will introduce Galaxy and its supporting ecosystem and community. This will include the many ways Galaxy is available to researchers, and a brief overview of the Galaxy user interface.
In the second part, we will walk through an application of Galaxy to SARS CoV-2 research. We developed and published public reproducible Galaxy workflows for processing raw deep sequencing read data and calling intra-host genomic variants, as well as processing GISAID full-genome data in a comparative evolutionary framework (covid19.datamonkey.org). The goal of our analysis is to make use of all readily available sources of information to create a frequently updated list of sites in the SARS-CoV-2 genome that may be subject to positive or negative selection. High ranking sites on the list, especially those that are consistently detected over time or accumulate additional evidence in their favor with more data, could be taken as a set of candidates for functional impact or other downstream analyses. We search for evidence of selection at three different evolutionary levels: intra-host (next generation sequencing (NGS) data), between SARS-CoV-2 isolates (assembled genome data), and among beta-coronavirus isolates that are closely related to SARS-CoV-2 (assembled genome data). In this webinar, we will review the comparative analysis dashboard that can be used to which sites may have a functional impact or could be used for further downstream analysis, as well as how Galaxy can be used to implement the pipeline on researchers' datasets.
Participants will learn how Galaxy is available, the basics of using Galaxy for data analysis, and how it can be applied in immunology in an example domain.
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Meeting ID: 161 756 1452
Passcode: 586729
DetailsWhenFri, Sep 04, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Speakers: Dave Clements, Galaxy Community Manager, Johns Hopkins University, Steven Weaver, Senior Programmer Analyst, Temple University Galaxy is an open web-based platform for data integration and analysis in the life sciences. Galaxy makes sophisticated bioinformatics analysis accessible to bench researchers without requiring them to learn Linux system administration or command line interfaces. Every tool and tool setting is automatically recorded by Galaxy, making analyses reproducible by default. Analyses can also be shared with colleagues and with the public, enabling others to re-use and reproduce analyses pipelines. In the first part of this webinar, we will introduce Galaxy and its supporting ecosystem and community. This will include the many ways Galaxy is available to researchers, and a brief overview of the Galaxy user interface. In the second part, we will walk through an application of Galaxy to SARS CoV-2 research. We developed and published public reproducible Galaxy workflows for processing raw deep sequencing read data and calling intra-host genomic variants, as well as processing GISAID full-genome data in a comparative evolutionary framework (covid19.datamonkey.org). The goal of our analysis is to make use of all readily available sources of information to create a frequently updated list of sites in the SARS-CoV-2 genome that may be subject to positive or negative selection. High ranking sites on the list, especially those that are consistently detected over time or accumulate additional evidence in their favor with more data, could be taken as a set of candidates for functional impact or other downstream analyses. We search for evidence of selection at three different evolutionary levels: intra-host (next generation sequencing (NGS) data), between SARS-CoV-2 isolates (assembled genome data), and among beta-coronavirus isolates that are closely related to SARS-CoV-2 (assembled genome data). In this webinar, we will review the comparative analysis dashboard that can be used to which sites may have a functional impact or could be used for further downstream analysis, as well as how Galaxy can be used to implement the pipeline on researchers' datasets. Participants will learn how Galaxy is available, the basics of using Galaxy for data analysis, and how it can be applied in immunology in an example domain. Join ZoomGov Meeting Meeting ID: 161 756 1452 Passcode: 586729 One tap mobile +16692545252,,1617561452#,,,,,,0#,,586729# US (San Jose) +16468287666,,1617561452#,,,,,,0#,,586729# US (New York) Dial by your location +1 669 254 5252 US (San Jose) +1 646 828 7666 US (New York) Meeting ID: 161 756 1452 Passcode: 586729 Find your local number: https://nih.zoomgov.com/u/ayFfvRtd4 Join by SIP 1617561452@sip.zoomgov.com Join by H.323 161.199.138.10 (US West) 161.199.136.10 (US East) Meeting ID: 161 756 1452 Passcode: 586729 | 2020-09-04 12:00:00 | Online | Bioinformatics Software | Online | 0 | Galaxy for Immunological and Infectious Disease Research | ||||
15 |
Description
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use ...Read More
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them.
Feel free to install the IGV browser in advance from here - https://software.broadinstitute.org/software/igv/download (the UCSV browser is web browser based)
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/genome-browser-2
DetailsOrganizerNIH Training LibraryWhenTue, Sep 08, 2020 - 1:00 pm - 2:30 pmWhereOnline |
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them. Feel free to install the IGV browser in advance from here - https://software.broadinstitute.org/software/igv/download (the UCSV browser is web browser based) https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/genome-browser-2 | 2020-09-08 13:00:00 | Online | NCI Genomic Data Commons | Online | NIH Training Library | 0 | Genome Browsers | |||
37 |
Description
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Jeremy Kriegel, User Experience (UX) Director at Audible, Inc. and former UX lead at the Broad Institute, brining interaction design to open source platforms for big data analysis.
Crystal Mackall, Physician scientist leading ...Read More
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Jeremy Kriegel, User Experience (UX) Director at Audible, Inc. and former UX lead at the Broad Institute, brining interaction design to open source platforms for big data analysis.
Crystal Mackall, Physician scientist leading Stanford University's internationally-recognized translational immuno-oncology research program, focused especially on pediatric cancers.
Program Details
DetailsWhenWed, Sep 09, 2020 - 12:00 pm - 1:30 pmWhereOnline |
Each 90-minute microlab starts with an inspiring conversation between thought leaders from the Cancer moonshot and creative visualization experts, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization. Speakers: Jeremy Kriegel, User Experience (UX) Director at Audible, Inc. and former UX lead at the Broad Institute, brining interaction design to open source platforms for big data analysis. Crystal Mackall, Physician scientist leading Stanford University's internationally-recognized translational immuno-oncology research program, focused especially on pediatric cancers. Program Details | 2020-09-09 12:00:00 | Online | Cancer,Data Science | Online | 0 | Dataviz + Cancer Microlab 5 | ||||
40 |
Description
Speaker: Shai Shen-Orr, Ph.D., Associate Professor, Israel Institute of Technology
Registration
Recent technological advances allow us to probe the immune system at high resolution and explore its variation between individuals. Yet the question remains how we move from a ‘data dump’ to a mechanistic model that we can allow to intelligently reason on system-level ...Read More
Speaker: Shai Shen-Orr, Ph.D., Associate Professor, Israel Institute of Technology
Registration
Recent technological advances allow us to probe the immune system at high resolution and explore its variation between individuals. Yet the question remains how we move from a ‘data dump’ to a mechanistic model that we can allow to intelligently reason on system-level effects of perturbations.
Here, I will describe the ‘data-insight gap’ namely, that is, why we repeatedly do not get the bang for the buck from the data we generate. I will describe our ongoing efforts to build a system level cell-centered view of ‘omic’ data over time, and its integration with knowledge in the primary immunology literature. Data and knowledge put together in this cell-centered framework establish a means to 'connect the dots' across immunology as well as systematic de novo hypotheses generation.
Biography:
- Associate Professor, Faculty of Medicine at the Technion, Israel Institute of Technology.
- Since 2012, heads the Systems Immunology & Precision Medicine Lab, which develops novel analytics for studying the immune system. Tools are applied to study the drivers of immune variation and to further immune-based Precision Medicine.
- BSc, Technion in Information Systems (1999); MSc, Bioinformatics at the Weizmann Institute of Science (2002); PhD, Harvard University in Biochemistry (2007); postdoctoral studies at Stanford University.
- Research has been cited numerous times and featured in systems biology textbooks for students.
- Research has laid the foundation of CytoReason, a company building a cell-centered ML model of the immune-system, which it applies to further drug development in collaboration with leading pharma companies.
Individuals with disabilities who need Sign Language Interpreters and/or reasonable accommodation to participate in this event should contact Prisca N. Fall, fallpn@mail.nih.gov, 301-402-4582, and/or the Federal Relay (1-800-877-8339).
DetailsOrganizerNIAWhenThu, Sep 10, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Speaker: Shai Shen-Orr, Ph.D., Associate Professor, Israel Institute of Technology Registration Recent technological advances allow us to probe the immune system at high resolution and explore its variation between individuals. Yet the question remains how we move from a ‘data dump’ to a mechanistic model that we can allow to intelligently reason on system-level effects of perturbations. Here, I will describe the ‘data-insight gap’ namely, that is, why we repeatedly do not get the bang for the buck from the data we generate. I will describe our ongoing efforts to build a system level cell-centered view of ‘omic’ data over time, and its integration with knowledge in the primary immunology literature. Data and knowledge put together in this cell-centered framework establish a means to 'connect the dots' across immunology as well as systematic de novo hypotheses generation. Biography: - Associate Professor, Faculty of Medicine at the Technion, Israel Institute of Technology. - Since 2012, heads the Systems Immunology & Precision Medicine Lab, which develops novel analytics for studying the immune system. Tools are applied to study the drivers of immune variation and to further immune-based Precision Medicine. - BSc, Technion in Information Systems (1999); MSc, Bioinformatics at the Weizmann Institute of Science (2002); PhD, Harvard University in Biochemistry (2007); postdoctoral studies at Stanford University. - Research has been cited numerous times and featured in systems biology textbooks for students. - Research has laid the foundation of CytoReason, a company building a cell-centered ML model of the immune-system, which it applies to further drug development in collaboration with leading pharma companies. Individuals with disabilities who need Sign Language Interpreters and/or reasonable accommodation to participate in this event should contact Prisca N. Fall, fallpn@mail.nih.gov, 301-402-4582, and/or the Federal Relay (1-800-877-8339). | 2020-09-10 12:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIA | 0 | Human Immune Monitoring Comes of Age | |||
67 |
Description
Speaker: James Zou, Ph.D., Assistant Professor, Biomedical Data Science, Computer Science, and Electrical Engineering, Stanford University
Register
Dr. Zou will present new computer vision algorithms to capture complex morphologies and phenotypes that are important for human diseases and aging. He will illustrate this with examples from different physical scales: 1) video AI to assess cardiac function (Ouyang et ...Read More
Speaker: James Zou, Ph.D., Assistant Professor, Biomedical Data Science, Computer Science, and Electrical Engineering, Stanford University
Register
Dr. Zou will present new computer vision algorithms to capture complex morphologies and phenotypes that are important for human diseases and aging. He will illustrate this with examples from different physical scales: 1) video AI to assess cardiac function (Ouyang et al Nature 2020), 2) generating spatial transcriptomics and protein profiles from histology images (He et al Nature BME 2020), and 3) learning morphodynamics of immune cells. This talk will also give an overview of general design principles and tools developed to enable these technologies.
Biography:
- Chan-Zuckerberg Investigator and the Faculty Director of Stanford AI for Health.
- Dr. Zou develops novel machine learning algorithms that have strong statistical guarantees and that are motivated by human health challenges.
- Methods used are widely used by tech, biotech, and pharma companies.
- Works on questions important for the broader impacts of AI, e.g., interpretations, robustness, fairness, and data governance.
- Received several best paper awards at top CS venues, an NSF CAREER Award, a Google Faculty Award, and a Tencent AI award.
Individuals with disabilities who need Sign Language Interpreters and/or reasonable accommodation to participate in this event should contact Prisca N. Fall, fallpn@mail.nih.gov, 301-402-4582, and/or the Federal Relay (1-800-877-8339).
DetailsOrganizerNIAWhenFri, Sep 11, 2020 - 1:00 pm - 2:00 pmWhereOnline |
Speaker: James Zou, Ph.D., Assistant Professor, Biomedical Data Science, Computer Science, and Electrical Engineering, Stanford University Register Dr. Zou will present new computer vision algorithms to capture complex morphologies and phenotypes that are important for human diseases and aging. He will illustrate this with examples from different physical scales: 1) video AI to assess cardiac function (Ouyang et al Nature 2020), 2) generating spatial transcriptomics and protein profiles from histology images (He et al Nature BME 2020), and 3) learning morphodynamics of immune cells. This talk will also give an overview of general design principles and tools developed to enable these technologies. Biography: - Chan-Zuckerberg Investigator and the Faculty Director of Stanford AI for Health. - Dr. Zou develops novel machine learning algorithms that have strong statistical guarantees and that are motivated by human health challenges. - Methods used are widely used by tech, biotech, and pharma companies. - Works on questions important for the broader impacts of AI, e.g., interpretations, robustness, fairness, and data governance. - Received several best paper awards at top CS venues, an NSF CAREER Award, a Google Faculty Award, and a Tencent AI award. Individuals with disabilities who need Sign Language Interpreters and/or reasonable accommodation to participate in this event should contact Prisca N. Fall, fallpn@mail.nih.gov, 301-402-4582, and/or the Federal Relay (1-800-877-8339). | 2020-09-11 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIA | 0 | Computer vision to deeply phenotype human diseases and aging across physiological, tissue and molecular scales | |||
50 |
Description
By
Avi Ma'ayan, Director of the Mount Sinai Center for Bioinformatics
Daniel Clarke, Senior Data Scientist
and
Nicole Moiseyev, Summer Scholar
Department of Pharmacological Sciences, Mount Sinai Center for Bioinformatics,
Icahn School of Medicine at Mount Sinai, New York, NY
In this presentation we will discuss how we are transitioning from hosting the web-based bioinformatics applications we develop from a Mesos-Marathon cluster environment to a Rancher/Kubernetes environment. We are also moving away from hosting ...Read More
By
Avi Ma'ayan, Director of the Mount Sinai Center for Bioinformatics
Daniel Clarke, Senior Data Scientist
and
Nicole Moiseyev, Summer Scholar
Department of Pharmacological Sciences, Mount Sinai Center for Bioinformatics,
Icahn School of Medicine at Mount Sinai, New York, NY
In this presentation we will discuss how we are transitioning from hosting the web-based bioinformatics applications we develop from a Mesos-Marathon cluster environment to a Rancher/Kubernetes environment. We are also moving away from hosting full stack web-based bioinformatics applications such as Enrichr, Harmonizome, BioJupies and ARCHS4 towards developing appyters. Appyters turn Jupyter notebooks into fully functional standalone web applications. They extend the concepts developed for BioJupies to many other applications. Appyters present to users a data entry form that enables them to upload their data and set various parameters for a multitude of bioinformatics analysis pipelines. Once the form is filled, the Appyter executes the corresponding notebook online, saving the output without having to interact directly with the code. Appyters can be applied to a variety of workflows including building customized machine learning pipelines, analyzing RNA-seq data, and producing publishable figures. Appyters enable the rapid development of web-based applications as demonstrated by the breadth of over 50 examples.
Join Webex meeting
DetailsWhenFri, Sep 11, 2020 - 3:00 pm - 4:00 pmWhereOnline |
By Avi Ma'ayan, Director of the Mount Sinai Center for Bioinformatics Daniel Clarke, Senior Data Scientist and Nicole Moiseyev, Summer Scholar Department of Pharmacological Sciences, Mount Sinai Center for Bioinformatics, Icahn School of Medicine at Mount Sinai, New York, NY In this presentation we will discuss how we are transitioning from hosting the web-based bioinformatics applications we develop from a Mesos-Marathon cluster environment to a Rancher/Kubernetes environment. We are also moving away from hosting full stack web-based bioinformatics applications such as Enrichr, Harmonizome, BioJupies and ARCHS4 towards developing appyters. Appyters turn Jupyter notebooks into fully functional standalone web applications. They extend the concepts developed for BioJupies to many other applications. Appyters present to users a data entry form that enables them to upload their data and set various parameters for a multitude of bioinformatics analysis pipelines. Once the form is filled, the Appyter executes the corresponding notebook online, saving the output without having to interact directly with the code. Appyters can be applied to a variety of workflows including building customized machine learning pipelines, analyzing RNA-seq data, and producing publishable figures. Appyters enable the rapid development of web-based applications as demonstrated by the breadth of over 50 examples. Join Webex meeting | 2020-09-11 15:00:00 | Online | Bioinformatics Software | Online | 0 | Fast Development and Robust Deployment of Data Driven Bioinformatics Web Apps and Workflows | ||||
74 |
Description
Back by popular demand! The HPC staff is restarting the monthly Walk-In Consults, virtually, of course.
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to ...Read More
Back by popular demand! The HPC staff is restarting the monthly Walk-In Consults, virtually, of course.
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
Zoom URL: please email staff@hpc.nih.gov to get the ZOOM URL
No appointments are necessary, and all problems are welcome.
Please observe the following etiquette/protocol when joining:
There will be a main room treated as a lobby and triage area. There, you can talk to one or a few staff members who will try to understand basic information about your issue. Then you may be invited to join to a staff member's personal breakout room for more detailed 1:1 consultation. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Attendees are highly encouraged to
- mute when not speaking
- refrain from screen sharing unless asked to do so
- screen share as you would in a public space with the understanding that other NIH HPC users and staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users
DetailsOrganizerHPC BiowulfWhenWed, Sep 16, 2020 - 1:00 pm - 3:00 pmWhereOnline |
Back by popular demand! The HPC staff is restarting the monthly Walk-In Consults, virtually, of course. All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. Zoom URL: please email staff@hpc.nih.gov to get the ZOOM URL No appointments are necessary, and all problems are welcome. Please observe the following etiquette/protocol when joining: There will be a main room treated as a lobby and triage area. There, you can talk to one or a few staff members who will try to understand basic information about your issue. Then you may be invited to join to a staff member's personal breakout room for more detailed 1:1 consultation. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Attendees are highly encouraged to - mute when not speaking - refrain from screen sharing unless asked to do so - screen share as you would in a public space with the understanding that other NIH HPC users and staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2020-09-16 13:00:00 | Online | NIH High Performance Unix Cluster Biowulf | Online | HPC Biowulf | 0 | Zoom-in Consult for Biowulf Users | |||
16 |
Description
THIS EVENT HAS BEEN CANCELED
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to ...Read More
THIS EVENT HAS BEEN CANCELED
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. During Part 2, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. This single registration signs you up for both classes, Part 1 and Part 2.
DetailsOrganizerNIH Training LibraryWhenThu, Sep 17, 2020 - 11:00 am - 12:00 pmWhereOnline |
THIS EVENT HAS BEEN CANCELED This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. During Part 2, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. This single registration signs you up for both classes, Part 1 and Part 2. | 2020-09-17 11:00:00 | Online | Online | NIH Training Library | 0 | CANCELED Data Management and Sharing (Two-Part Course) | ||||
930 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin after registration for this course ends on September 10th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on September 17th.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Sep 17, 2020 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin after registration for this course ends on September 10th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on September 17th. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-09-17 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
931 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin after registration for this course ends on September 3rd. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on September 10th.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Sep 17, 2020 - 3:30 pm - 4:30 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin after registration for this course ends on September 3rd. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on September 10th. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-09-17 15:30:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
185 |
Description
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/3f71e6a0573f40b0929aaeb16f22e417
Presenter: Maxwell Lee
Laboratory of Cancer Biology and Genetics, NCI/CCR
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/3f71e6a0573f40b0929aaeb16f22e417
Presenter: Maxwell Lee
Laboratory of Cancer Biology and Genetics, NCI/CCR
DetailsOrganizerNCI SS/SCWhenMon, Sep 21, 2020 - 10:00 am - 11:00 amWhereOnline |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/3f71e6a0573f40b0929aaeb16f22e417 Presenter: Maxwell Lee Laboratory of Cancer Biology and Genetics, NCI/CCR | 2020-09-21 10:00:00 | Single Cell Technologies | Online | NCI SS/SC | 0 | Introduction and k-means clustering | ||||
77 |
Description
Join Meeting
The Surgery Branch (SB) of the National Cancer Institute (NCI) is a combined laboratory and clinical research unit devoted to the development of innovative cancer immunotherapies. Efforts run the gamut from basic studies of cancer immunology to the conduct of clinical immunotherapy trials for patients with metastatic cancer. Dr. Paul Robbins ...Read More
Join Meeting
The Surgery Branch (SB) of the National Cancer Institute (NCI) is a combined laboratory and clinical research unit devoted to the development of innovative cancer immunotherapies. Efforts run the gamut from basic studies of cancer immunology to the conduct of clinical immunotherapy trials for patients with metastatic cancer. Dr. Paul Robbins will discuss SB’s recent advances in the development of cancer immunotherapies, with special emphasis on the use of whole exome sequencing and RNA-seq analysis to identify T cells and T cell receptors that recognize antigens arising from somatic mutations in patient tumors (neoantigens). SB has leveraged extensive capabilities available within the NIH Integrated Data Analysis Portal (NIDAP) to accelerate their work. Dr. Robbins will describe the integration of genomic sequencing data with patient clinical data from multiple sources and the development of customized, bench-to-bedside analytic workflows within the platform.
NCI Investigators wishing to initiate data management, NIDAP-enabled analyses, or explore development of new workflows should contact Janelle Cortner by email or on Teams; Investigators from ICs beyond NCI who are interested in NIDAP should contact Sam Michael. Investigators may also contact or John Holgate.
Thank you,
Center for Biomedical Informatics and Information Technology (CBIIT)
National Cancer Institute
Individuals needing reasonable accommodations should contact nciittraining@mail.nih.gov. For those employees who are deaf, hard-of-hearing, or speech impaired, the Federal Relay Service provides free telecommunications relay services (TRS). Individuals requiring interpreting or CART services should submit a request online in the Interpreting Services System at least five business days before the start of the session.
DetailsOrganizerCBIITWhenMon, Sep 21, 2020 - 1:00 pm - 2:00 pmWhereOnline |
Join Meeting The Surgery Branch (SB) of the National Cancer Institute (NCI) is a combined laboratory and clinical research unit devoted to the development of innovative cancer immunotherapies. Efforts run the gamut from basic studies of cancer immunology to the conduct of clinical immunotherapy trials for patients with metastatic cancer. Dr. Paul Robbins will discuss SB’s recent advances in the development of cancer immunotherapies, with special emphasis on the use of whole exome sequencing and RNA-seq analysis to identify T cells and T cell receptors that recognize antigens arising from somatic mutations in patient tumors (neoantigens). SB has leveraged extensive capabilities available within the NIH Integrated Data Analysis Portal (NIDAP) to accelerate their work. Dr. Robbins will describe the integration of genomic sequencing data with patient clinical data from multiple sources and the development of customized, bench-to-bedside analytic workflows within the platform. NCI Investigators wishing to initiate data management, NIDAP-enabled analyses, or explore development of new workflows should contact Janelle Cortner by email or on Teams; Investigators from ICs beyond NCI who are interested in NIDAP should contact Sam Michael. Investigators may also contact or John Holgate. Thank you, Center for Biomedical Informatics and Information Technology (CBIIT) National Cancer Institute Individuals needing reasonable accommodations should contact nciittraining@mail.nih.gov. For those employees who are deaf, hard-of-hearing, or speech impaired, the Federal Relay Service provides free telecommunications relay services (TRS). Individuals requiring interpreting or CART services should submit a request online in the Interpreting Services System at least five business days before the start of the session. | 2020-09-21 13:00:00 | Online | Cancer,NIDAP | Online | CBIIT | 0 | High Throughput Sequencing Analysis in Cancer Immunotherapy | |||
80 |
Description
Join Zoom Meeting
BIO:
Jean Claude Zenklusen was born 1964 in Visp, Switzerland. He earned a Master in
Sciences (Biochemistry) from the University of Buenos Aires in 1990. He received his
PhD in Cancer Biology & Genetics from The University of Texas, Graduate School of
Biomedical Sciences, in 1995. In 1996, he took a post-doctoral position at the National
Genome Research Institute where, while participating in the Human Genome Project, he
...Read More
Join Zoom Meeting
BIO:
Jean Claude Zenklusen was born 1964 in Visp, Switzerland. He earned a Master in
Sciences (Biochemistry) from the University of Buenos Aires in 1990. He received his
PhD in Cancer Biology & Genetics from The University of Texas, Graduate School of
Biomedical Sciences, in 1995. In 1996, he took a post-doctoral position at the National
Genome Research Institute where, while participating in the Human Genome Project, he
cloned two novel Tumor Suppressor Genes. From 2003 until 2009, he was the Senior
Staff Scientist at the Neuro-Oncology Branch of the National Cancer Institute directing
the Glioma Molecular Diagnostic Initiative and its companion data portal, Rembrandt.
From 2009 until 2013, he served as the Scientific Program Director of the Office of
Cancer Genomics, where he oversaw a variety of large-scale projects. In August 2013 he
was named as Director of The Cancer Genome Atlas, the largest-scale cancer genomics
project to date
DetailsOrganizerCDSLWhenMon, Sep 21, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Join Zoom Meeting BIO: Jean Claude Zenklusen was born 1964 in Visp, Switzerland. He earned a Master in Sciences (Biochemistry) from the University of Buenos Aires in 1990. He received his PhD in Cancer Biology & Genetics from The University of Texas, Graduate School of Biomedical Sciences, in 1995. In 1996, he took a post-doctoral position at the National Genome Research Institute where, while participating in the Human Genome Project, he cloned two novel Tumor Suppressor Genes. From 2003 until 2009, he was the Senior Staff Scientist at the Neuro-Oncology Branch of the National Cancer Institute directing the Glioma Molecular Diagnostic Initiative and its companion data portal, Rembrandt. From 2009 until 2013, he served as the Scientific Program Director of the Office of Cancer Genomics, where he oversaw a variety of large-scale projects. In August 2013 he was named as Director of The Cancer Genome Atlas, the largest-scale cancer genomics project to date | 2020-09-21 15:00:00 | Online | Cancer,Data Science | Online | CDSL | 0 | Beyond TCGA: Genomics programs at the Center for Cancer Genomics | |||
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Description
Registration
CPTAC researchers from all over the country are excited to share their newest discoveries in cancer research, using the power of proteogenomics. Join us for a full day of scientific talks on tumor biology, with a session dedicated to live demonstrations of CPTAC-developed data analysis tools.
The CPTAC program is coordinated through the Office of Cancer Clinical Proteomics Research (OCCPR). OCCPR and its programs ...Read More
Registration
CPTAC researchers from all over the country are excited to share their newest discoveries in cancer research, using the power of proteogenomics. Join us for a full day of scientific talks on tumor biology, with a session dedicated to live demonstrations of CPTAC-developed data analysis tools.
The CPTAC program is coordinated through the Office of Cancer Clinical Proteomics Research (OCCPR). OCCPR and its programs aim to improve prevention, early detection, diagnosis, and treatment of cancer by bringing more understanding to the biology of cancer through proteogenome science and technology development. The programs generate a slew of freely available data, reagents and software for the scientific community.
DetailsWhenTue, Sep 22, 2020 - 10:00 am - 6:10 pmWhereOnline |
Registration CPTAC researchers from all over the country are excited to share their newest discoveries in cancer research, using the power of proteogenomics. Join us for a full day of scientific talks on tumor biology, with a session dedicated to live demonstrations of CPTAC-developed data analysis tools. The CPTAC program is coordinated through the Office of Cancer Clinical Proteomics Research (OCCPR). OCCPR and its programs aim to improve prevention, early detection, diagnosis, and treatment of cancer by bringing more understanding to the biology of cancer through proteogenome science and technology development. The programs generate a slew of freely available data, reagents and software for the scientific community. | 2020-09-22 10:00:00 | Cancer,Data Science | Online | 0 | CPTAC Virtual Scientific Symposium | |||||
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Description
[one_half]
This two-part workshop will demonstrate how deep learning can be used to classify different types of cancer. Part I will focus on data preparation, starting with genomic data. Part II will demonstrate how to create a deep learning model, with hands-on instruction on how to use the processed data to build a convolutional neural network (CNN) model that can classify different cancer types.
You can see preliminary workshop materials—Jupyter notebooks and documentation—...Read More
[one_half]
This two-part workshop will demonstrate how deep learning can be used to classify different types of cancer. Part I will focus on data preparation, starting with genomic data. Part II will demonstrate how to create a deep learning model, with hands-on instruction on how to use the processed data to build a convolutional neural network (CNN) model that can classify different cancer types.
You can see preliminary workshop materials—Jupyter notebooks and documentation—on Github, at https://github.com/ravichas/ML-TC1
Presenter: Sarangan Ravichandran, PhD, PMP, Data Scientist, Frederick National Laboratory for Cancer Research (FNL) and Adjunct Professor in Bioinformatics, Hood College
Webex
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, Sep 22, 2020 - 1:00 pm - 3:00 pmWhereOnline |
[one_half] This two-part workshop will demonstrate how deep learning can be used to classify different types of cancer. Part I will focus on data preparation, starting with genomic data. Part II will demonstrate how to create a deep learning model, with hands-on instruction on how to use the processed data to build a convolutional neural network (CNN) model that can classify different cancer types. You can see preliminary workshop materials—Jupyter notebooks and documentation—on Github, at https://github.com/ravichas/ML-TC1 Presenter: Sarangan Ravichandran, PhD, PMP, Data Scientist, Frederick National Laboratory for Cancer Research (FNL) and Adjunct Professor in Bioinformatics, Hood College Webex | 2020-09-22 13:00:00 | Online | Online | NCI Data Science Learning Exchange | 0 | Cancer Type/Site Classification Using Deep Learning | ||||
17 |
Description
For the Introductory Training we will cover basic topics such as: MetaCore overview; how to use MetaCore as a knowledge mining tool; how to upload data; running functional enrichments and exploring pathway maps; and running workflows.
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/metacore-introductory-training-0
For the Introductory Training we will cover basic topics such as: MetaCore overview; how to use MetaCore as a knowledge mining tool; how to upload data; running functional enrichments and exploring pathway maps; and running workflows.
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/metacore-introductory-training-0
DetailsOrganizerNIH Training LibraryWhenWed, Sep 23, 2020 - 1:30 pm - 4:00 pmWhereOnline |
For the Introductory Training we will cover basic topics such as: MetaCore overview; how to use MetaCore as a knowledge mining tool; how to upload data; running functional enrichments and exploring pathway maps; and running workflows. https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/metacore-introductory-training-0 | 2020-09-23 13:30:00 | Online | Online | NIH Training Library | 0 | MetaCore Introductory Training | ||||
18 |
Description
For the Advanced Training, topics covered depend upon survey results: find key hubs using over-connectivity analysis; using Microarray repository for gene comparisons against public data; building networks with MetaCore; constructing your own pathway maps; performing toxicogenomic analysis in MetaCore; analyzing and building networks with miRNA and mRNA data; analyzing multi-omics data (RNA-seq, proteomics, metabolomics, etc).
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/metacore-advanced-session-1
For the Advanced Training, topics covered depend upon survey results: find key hubs using over-connectivity analysis; using Microarray repository for gene comparisons against public data; building networks with MetaCore; constructing your own pathway maps; performing toxicogenomic analysis in MetaCore; analyzing and building networks with miRNA and mRNA data; analyzing multi-omics data (RNA-seq, proteomics, metabolomics, etc).
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/metacore-advanced-session-1
DetailsOrganizerNIH Training LibraryWhenThu, Sep 24, 2020 - 9:30 am - 12:00 pmWhereOnline |
For the Advanced Training, topics covered depend upon survey results: find key hubs using over-connectivity analysis; using Microarray repository for gene comparisons against public data; building networks with MetaCore; constructing your own pathway maps; performing toxicogenomic analysis in MetaCore; analyzing and building networks with miRNA and mRNA data; analyzing multi-omics data (RNA-seq, proteomics, metabolomics, etc). https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/metacore-advanced-session-1 | 2020-09-24 09:30:00 | Online | Online | NIH Training Library | 0 | MetaCore Advanced Session | ||||
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Description
Over the last 15 years, since its release in September 2005, the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB) have served as key resources for interpreting the biological significance of expression changes in large transcriptomic datasets.
In the past year we've released several major updates to the GSEA-MSigDB suite, bringing with them many new features, including new gene sets for investigating the cutting edge of biology, and ...Read More
Over the last 15 years, since its release in September 2005, the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB) have served as key resources for interpreting the biological significance of expression changes in large transcriptomic datasets.
In the past year we've released several major updates to the GSEA-MSigDB suite, bringing with them many new features, including new gene sets for investigating the cutting edge of biology, and an increased focus on support for model organisms in GSEA. This webinar will cover the basics of the GSEA method, the resources available in the Molecular Signatures Database, and a preview of some features we plan to release in the coming year.
Presenter:
Anthony S. Castanza, PhD
Curator, Molecular Signatures Database
Mesirov Lab, Department of Medicine
University of California, San Diego
Registration
DetailsOrganizerCBIITWhenThu, Sep 24, 2020 - 1:00 pm - 2:00 pmWhereOnline |
Over the last 15 years, since its release in September 2005, the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB) have served as key resources for interpreting the biological significance of expression changes in large transcriptomic datasets. In the past year we've released several major updates to the GSEA-MSigDB suite, bringing with them many new features, including new gene sets for investigating the cutting edge of biology, and an increased focus on support for model organisms in GSEA. This webinar will cover the basics of the GSEA method, the resources available in the Molecular Signatures Database, and a preview of some features we plan to release in the coming year. Presenter: Anthony S. Castanza, PhD Curator, Molecular Signatures Database Mesirov Lab, Department of Medicine University of California, San Diego Registration | 2020-09-24 13:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to Gene Set Enrichment Analysis - Molecular Signatures Database (GSEA-MSigDB) suite | |||
932 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin after registration for this course ends on September 17th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on September 24th.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Sep 24, 2020 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin after registration for this course ends on September 17th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on September 24th. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-09-24 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
19 |
Description
NCI Cancer Research Data Commons (CRDC) provides access to large-scale datasets such as The Cancer Genome Atlas (TCGA) that span multiple data types, including genomics, proteomics, imaging, and clinical data. The CRDC offers bioinformatics tools directly in the cloud, thus eliminating the need to download and store large-scale datasets. The cloud also offers greater computational capacity to manage big data analysis, further accelerating research and promoting new discoveries. The training session will provide an overview ...Read More
NCI Cancer Research Data Commons (CRDC) provides access to large-scale datasets such as The Cancer Genome Atlas (TCGA) that span multiple data types, including genomics, proteomics, imaging, and clinical data. The CRDC offers bioinformatics tools directly in the cloud, thus eliminating the need to download and store large-scale datasets. The cloud also offers greater computational capacity to manage big data analysis, further accelerating research and promoting new discoveries. The training session will provide an overview of NCI CRDC and highlight several research studies to show the utility of the CRDC and its resources. In addition, there will be hands-on training on one of the following platforms: the NCI Cloud Resource platform Seven Bridges’ Cancer Genomics Cloud (SB-CGC), Broad Institute’s FireCloud, or the Institute for Systems Biology’s Cancer Genomics Cloud (ISB-CGC) for prospective users.
https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/nci-cancer-research-data-commons-cloud-computing-0
DetailsOrganizerNIH Training LibraryWhenFri, Sep 25, 2020 - 11:00 am - 2:00 pmWhereOnline |
NCI Cancer Research Data Commons (CRDC) provides access to large-scale datasets such as The Cancer Genome Atlas (TCGA) that span multiple data types, including genomics, proteomics, imaging, and clinical data. The CRDC offers bioinformatics tools directly in the cloud, thus eliminating the need to download and store large-scale datasets. The cloud also offers greater computational capacity to manage big data analysis, further accelerating research and promoting new discoveries. The training session will provide an overview of NCI CRDC and highlight several research studies to show the utility of the CRDC and its resources. In addition, there will be hands-on training on one of the following platforms: the NCI Cloud Resource platform Seven Bridges’ Cancer Genomics Cloud (SB-CGC), Broad Institute’s FireCloud, or the Institute for Systems Biology’s Cancer Genomics Cloud (ISB-CGC) for prospective users. https://www-nihlibrary-nih-gov.ezproxy.nihlibrary.nih.gov/training/nci-cancer-research-data-commons-cloud-computing-0 | 2020-09-25 11:00:00 | Online | Cancer | Online | NIH Training Library | 0 | NCI Cancer Research Data Commons: Cloud Computing | |||
933 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on September 25th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 1st.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Sep 25 - Thu, Oct 01, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on September 25th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 1st. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-09-25 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
75 |
Description
Register/Join
This webinar is intended for cancer researchers and bioinformaticians who are ...Read More
Register/Join
This webinar is intended for cancer researchers and bioinformaticians who are interested in learning more about the NCI Genomic Data Commons’ (GDC’s) bioinformatics pipelines for data harmonization.
The GDC DNA-Seq analysis pipeline identifies somatic variants within whole exome sequencing (WXS) and whole genome sequencing (WGS) data. Somatic variants are identified by comparing allele frequencies in normal and tumor sample alignments, annotating each mutation, and aggregating mutations from multiple cases.
In this webinar, The University of Chicago’s Drs. Bill Wysocki and Zhenyu Zhang will:
Provide an overview of the GDC DNA-Seq alignment workflows
Review the GDC WXS somatic variant calling workflow
Review the GDC WGS somatic variant calling, copy number variation, and structural variation workflows
Demonstrate how to download DNA-Seq data generated from GDC workflows
DetailsOrganizerCBIITWhenMon, Sep 28, 2020 - 2:00 pm - 3:00 pmWhereOnline |
Register/Join This webinar is intended for cancer researchers and bioinformaticians who are interested in learning more about the NCI Genomic Data Commons’ (GDC’s) bioinformatics pipelines for data harmonization. The GDC DNA-Seq analysis pipeline identifies somatic variants within whole exome sequencing (WXS) and whole genome sequencing (WGS) data. Somatic variants are identified by comparing allele frequencies in normal and tumor sample alignments, annotating each mutation, and aggregating mutations from multiple cases. In this webinar, The University of Chicago’s Drs. Bill Wysocki and Zhenyu Zhang will: Provide an overview of the GDC DNA-Seq alignment workflows Review the GDC WXS somatic variant calling workflow Review the GDC WGS somatic variant calling, copy number variation, and structural variation workflows Demonstrate how to download DNA-Seq data generated from GDC workflows | 2020-09-28 14:00:00 | Online | Cancer,Data Science | Online | CBIIT | 0 | NCI Genomic Data Commons DNA-Seq Data Processing | |||
85 |
Description
Register
The purpose of this class is to introduce some of the fundamentals of meta-analysis. The focus will be on randomized clinical trials; however, the presenter will also briefly discuss the application of meta-analyses in laboratory and observational (epidemiological) studies. Most of the content for this talk was gleaned from the new Cochrane Handbook for Systematic Reviews of Interventions (2/e), an authoritative reference on the ...Read More
Register
The purpose of this class is to introduce some of the fundamentals of meta-analysis. The focus will be on randomized clinical trials; however, the presenter will also briefly discuss the application of meta-analyses in laboratory and observational (epidemiological) studies. Most of the content for this talk was gleaned from the new Cochrane Handbook for Systematic Reviews of Interventions (2/e), an authoritative reference on the broader topic of systematic reviews.
The audience should have an acquaintance with basic statistical concepts (including, but not limited to: dichotomous and continuous outcomes, odds ratios, standard deviation and error, weighted average, fixed and random effects and associated models, etc.). However, it will only be necessary to understand the principles and interpretation of these ideas, not the underlying mathematics and calculations to learn the principles presented. This class will not contain a “hands-on” portion or a set of exercises to be completed in a statistical software package during the training or afterwards.
Instructor(s) -- NIH Staff:
Paul Juneau
DetailsOrganizerNIH Training LibraryWhenTue, Sep 29, 2020 - 9:30 am - 10:30 amWhereOnline |
Register The purpose of this class is to introduce some of the fundamentals of meta-analysis. The focus will be on randomized clinical trials; however, the presenter will also briefly discuss the application of meta-analyses in laboratory and observational (epidemiological) studies. Most of the content for this talk was gleaned from the new Cochrane Handbook for Systematic Reviews of Interventions (2/e), an authoritative reference on the broader topic of systematic reviews. The audience should have an acquaintance with basic statistical concepts (including, but not limited to: dichotomous and continuous outcomes, odds ratios, standard deviation and error, weighted average, fixed and random effects and associated models, etc.). However, it will only be necessary to understand the principles and interpretation of these ideas, not the underlying mathematics and calculations to learn the principles presented. This class will not contain a “hands-on” portion or a set of exercises to be completed in a statistical software package during the training or afterwards. Instructor(s) -- NIH Staff: Paul Juneau | 2020-09-29 09:30:00 | Online | Statistics | Online | NIH Training Library | 0 | Meta-Analysis: Quantifying a Systematic Review | |||
93 |
Description
Register
Through large collaborative research projects, the field of neuroscience is gaining access to unprecedented amounts of information about the structure and function of the brain. These datasets are already having a profound impact on neuroscience, and they promise to help us understand the biological underpinnings of human brain health. At the same time, the deluge of data is generating new challenges, as researchers struggle ...Read More
Register
Through large collaborative research projects, the field of neuroscience is gaining access to unprecedented amounts of information about the structure and function of the brain. These datasets are already having a profound impact on neuroscience, and they promise to help us understand the biological underpinnings of human brain health. At the same time, the deluge of data is generating new challenges, as researchers struggle to store, manage, analyze, and interpret the data. You can use scalable cloud computing methods to lower some of these barriers. But the adoption of these methods is in its infancy.
Join this presentation to learn about tools to smoothly transition neuroscience into cloud computing. In particular, Cloudknot is a software library that we developed that packages existing Python code for deployment at scale in AWS Batch. In this session, see the use of this software in our research that uses large-scale magnetic resonance imaging (MRI) datasets to understand the role of brain connections in cognition and behavior.
Speaker:
Ariel Rokem, PhD, Research Assistant Professor, University of Washington
DetailsWhenWed, Sep 30, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Register Through large collaborative research projects, the field of neuroscience is gaining access to unprecedented amounts of information about the structure and function of the brain. These datasets are already having a profound impact on neuroscience, and they promise to help us understand the biological underpinnings of human brain health. At the same time, the deluge of data is generating new challenges, as researchers struggle to store, manage, analyze, and interpret the data. You can use scalable cloud computing methods to lower some of these barriers. But the adoption of these methods is in its infancy. Join this presentation to learn about tools to smoothly transition neuroscience into cloud computing. In particular, Cloudknot is a software library that we developed that packages existing Python code for deployment at scale in AWS Batch. In this session, see the use of this software in our research that uses large-scale magnetic resonance imaging (MRI) datasets to understand the role of brain connections in cognition and behavior. Speaker: Ariel Rokem, PhD, Research Assistant Professor, University of Washington | 2020-09-30 12:00:00 | Online | Online | 0 | Cloud Computing for the Era of Brain Observatories | |||||
28 |
Description
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of RStudio, including how to import data, create scripts, and run code. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers ...Read More
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of RStudio, including how to import data, create scripts, and run code. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; create a script in R and run code from a script and from the console; define the following terms as they relate to R: object, assign, call, function, and arguments; assign values to objects in R; learn about R objects; describe the major R data types; understand how to create and work with R vectors; describe the steps for importing data into R.
Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the data before the class. Please bring your laptop with R and RStudio installed.
Registration
DetailsOrganizerNIH Training LibraryWhenThu, Oct 01, 2020 - 1:00 pm - 2:30 pmWhereOnline |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of RStudio, including how to import data, create scripts, and run code. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; create a script in R and run code from a script and from the console; define the following terms as they relate to R: object, assign, call, function, and arguments; assign values to objects in R; learn about R objects; describe the major R data types; understand how to create and work with R vectors; describe the steps for importing data into R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the data before the class. Please bring your laptop with R and RStudio installed. Registration | 2020-10-01 13:00:00 | Online | Programming | Online | NIH Training Library | 0 | Introduction to R and RStudio | |||
934 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on October 2nd. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 8th.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Oct 02 - Thu, Oct 08, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on October 2nd. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 8th. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-10-02 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
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DescriptionDetailsOrganizerNCI SS/SCWhenMon, Oct 05, 2020 - 10:00 am - 11:00 amWhereOnline |
https://cbiit.webex.com/recordingservice/sites/cbiit/recording/play/52ad020326ee4c858f0a09b35247478a | 2020-10-05 10:00:00 | Single Cell Technologies | Online | NCI SS/SC | 0 | Gaussian mixture model (GMM) and Latent Dirichlet Allocation (LDA) | ||||
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Description
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training ...Read More
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, participants should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; and describe how to save data in R.
Participants are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
Registration
DetailsOrganizerNIH Training LibraryWhenTue, Oct 06, 2020 - 1:00 pm - 2:30 pmWhereOnline |
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, participants should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; and describe how to save data in R. Participants are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. Registration | 2020-10-06 13:00:00 | Online | Programming | Online | NIH Training Library | 0 | Introduction to R Data Types | |||
30 |
Description
Participants will learn how to develop artificial intelligence (AI) applications focused on biomedical imaging datasets. The course will cover the entire AI pipeline from image exploration and labeling to development and deployment of predictive models on images using both machine learning and deep learning approaches. This includes annotating and exploring image datasets, exploring techniques for developing machine and deep learning models, optimizing the parameters of the deep networks, and automatically generating code for edge deployment ...Read More
Participants will learn how to develop artificial intelligence (AI) applications focused on biomedical imaging datasets. The course will cover the entire AI pipeline from image exploration and labeling to development and deployment of predictive models on images using both machine learning and deep learning approaches. This includes annotating and exploring image datasets, exploring techniques for developing machine and deep learning models, optimizing the parameters of the deep networks, and automatically generating code for edge deployment of AI models.
This is an introductory level class. No installation of MATLAB is necessary.
Registration
DetailsOrganizerNIH Training LibraryWhenTue, Oct 06, 2020 - 1:00 pm - 4:15 pmWhereOnline |
Participants will learn how to develop artificial intelligence (AI) applications focused on biomedical imaging datasets. The course will cover the entire AI pipeline from image exploration and labeling to development and deployment of predictive models on images using both machine learning and deep learning approaches. This includes annotating and exploring image datasets, exploring techniques for developing machine and deep learning models, optimizing the parameters of the deep networks, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. Registration | 2020-10-06 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Training Library | 0 | Data Science and Artificial Intelligence: Medical Imaging Datasets Using MATLAB | |||
31 |
Description
QIAGEN’s Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based on published biological evidence and your knowledge of disease biology. IVA allows you to interrogate variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. This workshop will focus on how to use IVA to upload ...Read More
QIAGEN’s Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based on published biological evidence and your knowledge of disease biology. IVA allows you to interrogate variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. This workshop will focus on how to use IVA to upload datasets, efficiently use different filters within variant analysis to identify causal variants, and export data. The class will also review recent IVA updates.
The Human Gene Mutation Database (HGMD) database provides quick access to known published gene lesions responsible for human inherited disease. This session will explore how to query genes and mutations in HGMD and how to view the curated content.
Registration
DetailsOrganizerNIH Training LibraryWhenWed, Oct 07, 2020 - 10:00 am - 3:00 pmWhereOnline |
QIAGEN’s Ingenuity Variant Analysis (IVA) combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based on published biological evidence and your knowledge of disease biology. IVA allows you to interrogate variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. This workshop will focus on how to use IVA to upload datasets, efficiently use different filters within variant analysis to identify causal variants, and export data. The class will also review recent IVA updates. The Human Gene Mutation Database (HGMD) database provides quick access to known published gene lesions responsible for human inherited disease. This session will explore how to query genes and mutations in HGMD and how to view the curated content. Registration | 2020-10-07 10:00:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | Variant Filtering and Interpretation Using Ingenuity Variant Analysis (IVA) and Human Gene Mutation Database (HGMD) | |||
90 |
Description
Register
MacVector is a powerful but easy to use Macintosh application that lets you document, analyze and manipulate DNA and Protein sequences. A simple graphical interface lets you generate beautiful plasmid maps, design primers, assemble ABI and NGS sequences, perform local and internet database searches based on sequence similarity or keyword, align sequences using a ...Read More
Register
MacVector is a powerful but easy to use Macintosh application that lets you document, analyze and manipulate DNA and Protein sequences. A simple graphical interface lets you generate beautiful plasmid maps, design primers, assemble ABI and NGS sequences, perform local and internet database searches based on sequence similarity or keyword, align sequences using a wide variety of options, replicate cloning experiments with restriction enzymes, Gateway or Gibson assembly approaches and much, much more. This presentation will introduce new users to the capabilities of MacVector while allowing existing users the opportunity to learn about the new functionality in MacVector 17.5 and our upcoming 18.0 release. In addition, we will walk though a number of common workflows where you are sure to learn a variety of tips and tricks to speed up and simplify working with sequence data.
Presenter: Kevin Kendall Field Application Scientist at MacVector
DetailsOrganizerCBIITWhenThu, Oct 08, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Register MacVector is a powerful but easy to use Macintosh application that lets you document, analyze and manipulate DNA and Protein sequences. A simple graphical interface lets you generate beautiful plasmid maps, design primers, assemble ABI and NGS sequences, perform local and internet database searches based on sequence similarity or keyword, align sequences using a wide variety of options, replicate cloning experiments with restriction enzymes, Gateway or Gibson assembly approaches and much, much more. This presentation will introduce new users to the capabilities of MacVector while allowing existing users the opportunity to learn about the new functionality in MacVector 17.5 and our upcoming 18.0 release. In addition, we will walk though a number of common workflows where you are sure to learn a variety of tips and tricks to speed up and simplify working with sequence data. Presenter: Kevin Kendall Field Application Scientist at MacVector | 2020-10-08 12:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to Sequence Analysis using MacVector | |||
936 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on October 9th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 15th.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Oct 09 - Thu, Oct 15, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on October 9th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 15th. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-10-09 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
176 |
Description
Send email to staff@hpc.nih.gov to get the Zoom URL
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss ...Read More
Send email to staff@hpc.nih.gov to get the Zoom URL
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
DetailsWhenWed, Oct 14, 2020 - 1:00 pm - 3:00 pmWhereOnline |
Send email to staff@hpc.nih.gov to get the Zoom URL All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. | 2020-10-14 13:00:00 | NIH High Performance Unix Cluster Biowulf | Online | 0 | Zoom-In Consult with Biowulf Staff | |||||
89 |
Description
Register
Helen Shearman, PhD, Senior Field Application Scientist, will be presenting a one-hour overview demonstration on SnapGene. SnapGene offers a fast and easy way to plan, visualize, and document your everyday cloning procedures. SnapGene makes cloning easier, improves communication, and provides a record of DNA constructs. More information can be found on ...Read More
Register
Helen Shearman, PhD, Senior Field Application Scientist, will be presenting a one-hour overview demonstration on SnapGene. SnapGene offers a fast and easy way to plan, visualize, and document your everyday cloning procedures. SnapGene makes cloning easier, improves communication, and provides a record of DNA constructs. More information can be found on our website at snapgene.com
Presenter: Dr. Helen Shearman Field Application Scientist at SnapGene
DetailsOrganizerCBIITWhenThu, Oct 15, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Register Helen Shearman, PhD, Senior Field Application Scientist, will be presenting a one-hour overview demonstration on SnapGene. SnapGene offers a fast and easy way to plan, visualize, and document your everyday cloning procedures. SnapGene makes cloning easier, improves communication, and provides a record of DNA constructs. More information can be found on our website at snapgene.com Presenter: Dr. Helen Shearman Field Application Scientist at SnapGene | 2020-10-15 15:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to SnapGene | |||
935 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on October 16th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 22nd.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Oct 16 - Thu, Oct 22, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on October 16th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 22nd. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-10-16 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
136 |
DescriptionDetailsOrganizerCDSLWhenMon, Oct 19, 2020 - 10:00 am - 11:00 amWhereOnline |
Register | 2020-10-19 10:00:00 | Single Cell Technologies | Online | CDSL | 0 | Non-negative matrix factorization (NMF) and its connection to k-means clustering | ||||
179 |
Description
Register
This webinar is intended for cancer researchers who are interested in learning more about the data that is available in the NCI Genomic Data Commons (GDC).The GDC is a unified repository that enables data sharing across cancer genomic studies in support of precision medicine.
The GDC provides access to clinical and genomic data from 65+ projects through supported cancer research programs and organizations that ...Read More
Register
This webinar is intended for cancer researchers who are interested in learning more about the data that is available in the NCI Genomic Data Commons (GDC).The GDC is a unified repository that enables data sharing across cancer genomic studies in support of precision medicine.
The GDC provides access to clinical and genomic data from 65+ projects through supported cancer research programs and organizations that contribute data to the GDC. This webinar will provide an overview of the programs and projects that provide data to the GDC and review the data types from these projects that are made available through GDC data access tools.
Speakers:
Ms. Sharon Gaheen, GDC Technical Project Manager, Leidos Biomedical Research Inc.
Dr. Biju Issac, Scientific Lead, Leidos Biomedical Research Inc.
DetailsWhenMon, Oct 19, 2020 - 2:00 pm - 3:00 pmWhereOnline |
Register This webinar is intended for cancer researchers who are interested in learning more about the data that is available in the NCI Genomic Data Commons (GDC).The GDC is a unified repository that enables data sharing across cancer genomic studies in support of precision medicine. The GDC provides access to clinical and genomic data from 65+ projects through supported cancer research programs and organizations that contribute data to the GDC. This webinar will provide an overview of the programs and projects that provide data to the GDC and review the data types from these projects that are made available through GDC data access tools. Speakers: Ms. Sharon Gaheen, GDC Technical Project Manager, Leidos Biomedical Research Inc. Dr. Biju Issac, Scientific Lead, Leidos Biomedical Research Inc. | 2020-10-19 14:00:00 | NCI Genomic Data Commons | Online | 0 | GDC About the Data | |||||
181 |
Description
Register
R markdown offers tools to generate and update reports automatically—including figures, tables, ...Read More
Register
R markdown offers tools to generate and update reports automatically—including figures, tables, mathematical equations and code. Instead of copying tables and figures into another document, you can update reports quickly and easily at the click of a button whenever you have new data to share. Join this workshop to see a demonstration and learn how to use it!
Presenter:
Randall Johnson, PhD, Bioinformatics Analyst/Technical Project Manager at Frederick National Laboratory for Cancer Research (FNL) and organizer of the Bioinformatics Users Forum
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, Oct 20, 2020 - 11:00 am - 12:00 pmWhereOnline |
Register R markdown offers tools to generate and update reports automatically—including figures, tables, mathematical equations and code. Instead of copying tables and figures into another document, you can update reports quickly and easily at the click of a button whenever you have new data to share. Join this workshop to see a demonstration and learn how to use it! Presenter: Randall Johnson, PhD, Bioinformatics Analyst/Technical Project Manager at Frederick National Laboratory for Cancer Research (FNL) and organizer of the Bioinformatics Users Forum | 2020-10-20 11:00:00 | Programming | Online | NCI Data Science Learning Exchange | 0 | Introduction to R markdown for Automated Reports | ||||
32 |
Description
Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and ...Read More
Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and Long Short-Term Memories (LSTMs) for biomedical signal data, creating machine learning models for biomedical signal data, applying advanced signal pre-processing techniques for automated feature extraction, and automatically generating code for edge deployment of AI models.
This is an introductory level class. No installation of MATLAB is necessary.
Registration
DetailsOrganizerNIH Training LibraryWhenTue, Oct 20, 2020 - 1:00 pm - 4:15 pmWhereOnline |
Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and Long Short-Term Memories (LSTMs) for biomedical signal data, creating machine learning models for biomedical signal data, applying advanced signal pre-processing techniques for automated feature extraction, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. Registration | 2020-10-20 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Training Library | 0 | Data Science and Artificial Intelligence: Signals and Time Series Datasets Using MATLAB | |||
180 |
Description
Register
Data preprocessing and compound identification are two important steps for making sense of mass spectrometry-based untargeted metabolomics data. In this webinar, Dr. Xiuxia Du will demonstrate the software tool “ADAP” and the online resource “ADAP-KDB,” which were developed by her research group.
ADAP extracts compound information from untargeted LC-MS and GC-MS data through data preprocessing. It carries out a sequence of computational steps, including ...Read More
Register
Data preprocessing and compound identification are two important steps for making sense of mass spectrometry-based untargeted metabolomics data. In this webinar, Dr. Xiuxia Du will demonstrate the software tool “ADAP” and the online resource “ADAP-KDB,” which were developed by her research group.
ADAP extracts compound information from untargeted LC-MS and GC-MS data through data preprocessing. It carries out a sequence of computational steps, including peak picking, peak grouping, alignment, and spectral deconvolution. Dr. Du will describe the principles of the computational algorithms that underlie these steps.
ADAP-KDB is a spectral knowledge base that uses information from publicly available data repositories (such as the NIH’s Metabolomics Data Repository) for prioritizing unknown compounds. It consists of a computational workflow for extracting prioritization information and an online portal that allows researchers to manage and search the knowledge base.
Registration for this webinar is required in advance.
Speaker:
Xiuxia Du, Ph.D.
Dr. Du is a professor at the Department of Bioinformatics and Genomics, within the College of Computing and Informatics at the University of North Carolina at Charlotte.
DetailsWhenWed, Oct 21, 2020 - 11:00 am - 12:00 pmWhereOnline |
Register Data preprocessing and compound identification are two important steps for making sense of mass spectrometry-based untargeted metabolomics data. In this webinar, Dr. Xiuxia Du will demonstrate the software tool “ADAP” and the online resource “ADAP-KDB,” which were developed by her research group. ADAP extracts compound information from untargeted LC-MS and GC-MS data through data preprocessing. It carries out a sequence of computational steps, including peak picking, peak grouping, alignment, and spectral deconvolution. Dr. Du will describe the principles of the computational algorithms that underlie these steps. ADAP-KDB is a spectral knowledge base that uses information from publicly available data repositories (such as the NIH’s Metabolomics Data Repository) for prioritizing unknown compounds. It consists of a computational workflow for extracting prioritization information and an online portal that allows researchers to manage and search the knowledge base. Registration for this webinar is required in advance. Speaker: Xiuxia Du, Ph.D. Dr. Du is a professor at the Department of Bioinformatics and Genomics, within the College of Computing and Informatics at the University of North Carolina at Charlotte. | 2020-10-21 11:00:00 | Online | 0 | NIH Metabolomics Scientific Interest Group Webinar Series: ADAP and ADAP-KDB | ||||||
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Description
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Presenter: Dr. Sam Dougaparsad
Field Application Scientist It has been established that over half of all cancer types are driven by DNA Copy Number Variants (CNVs). In this presentation, we will demonstrate the use of Nexus Copy Number software for detection of CNVs from various microarray and NGS platforms and performance of ...Read More
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Presenter: Dr. Sam Dougaparsad
Field Application Scientist It has been established that over half of all cancer types are driven by DNA Copy Number Variants (CNVs). In this presentation, we will demonstrate the use of Nexus Copy Number software for detection of CNVs from various microarray and NGS platforms and performance of cohort analysis. In particular, we will use data from The Cancer Genome Atlas (TCGA) that has been manually curated and available to NCI personnel through the NexusDB database to showcase some of the advanced statistical and visualization capabilities of Nexus Copy Number. This will include identification of recurrent aberrations in different cancer types and sub-populations, statistical comparison analysis between different sets of samples, identification of regions with high predictive power for survival analysis and many other features. Subsequent sessions will expand on integrating expression and sequence variant data into the analysis.
DetailsWhenThu, Oct 22, 2020 - 1:00 pm - 2:00 pmWhereOnline |
Register Presenter: Dr. Sam Dougaparsad Field Application Scientist It has been established that over half of all cancer types are driven by DNA Copy Number Variants (CNVs). In this presentation, we will demonstrate the use of Nexus Copy Number software for detection of CNVs from various microarray and NGS platforms and performance of cohort analysis. In particular, we will use data from The Cancer Genome Atlas (TCGA) that has been manually curated and available to NCI personnel through the NexusDB database to showcase some of the advanced statistical and visualization capabilities of Nexus Copy Number. This will include identification of recurrent aberrations in different cancer types and sub-populations, statistical comparison analysis between different sets of samples, identification of regions with high predictive power for survival analysis and many other features. Subsequent sessions will expand on integrating expression and sequence variant data into the analysis. | 2020-10-22 13:00:00 | Online | 0 | Overview of CNV Analysis Using Nexus Copy Number Software | ||||||
937 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on October 23rd. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 29th.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Oct 23 - Thu, Oct 29, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on October 23rd. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on October 29th. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-10-23 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
188 |
Description
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The Sequencing Facility (https://ostr.cancer.gov/...Read More
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The Sequencing Facility (https://ostr.cancer.gov/resources/fnl-cores/sequencing-facility) is a second and third generation high-throughput sequencing core established by the Center for Cancer Research (CCR). Sequencing Facility’s (SF’s) primary mission is to utilize high-throughput sequencing technologies to enrich cancer research and ensure that the NCI community can remain at the leading edge of next-generation sequencing technology. The SF offers sequencing services on Illumina, Pacific Biosciences, and Oxford Nanopore platforms, as well as Single Cell and Genomics Mapping technology. These platforms have complementary strengths and can be used separately or in a combined approach to answer many genomics questions.
Seminar Schedule:
9:00 AM – 9:10 AM: Introduction to CCR-Sequencing Facility
Bao Tran, SF Director
9:10 AM – 9:40 AM: Overview of Illumina Sequencing Production Laboratory
Jyoti Shetty, SF Illumina Laboratory Manager
9:40 AM – 10:00 AM: PacBio: Technology and Applications
Caroline Fromont, SF Pacbio Laboratory
10:00 AM – 11:15 AM: New and Upcoming Sequencing Technologies at SF - New Solutions for Old Problems
Monika Mehta, SF R&D Manager
11:15 AM – 12:00 PM: Overview of Data Analysis Workflows and Deliverables for Key NGS Applications at SF
Yongmei Zhao, SF Bioinformatics Manager
12:00 PM – 12: 30 PM: Q & A Section
All Presenters
Questions/Comments and/or suggestions may be directed to Bao Tran at 301-360-3460 or tranb2@mail.nih.gov.
DetailsWhenWed, Oct 28, 2020 - 9:00 am - 12:30 pmWhereOnline |
Register The Sequencing Facility (https://ostr.cancer.gov/resources/fnl-cores/sequencing-facility) is a second and third generation high-throughput sequencing core established by the Center for Cancer Research (CCR). Sequencing Facility’s (SF’s) primary mission is to utilize high-throughput sequencing technologies to enrich cancer research and ensure that the NCI community can remain at the leading edge of next-generation sequencing technology. The SF offers sequencing services on Illumina, Pacific Biosciences, and Oxford Nanopore platforms, as well as Single Cell and Genomics Mapping technology. These platforms have complementary strengths and can be used separately or in a combined approach to answer many genomics questions. Seminar Schedule: 9:00 AM – 9:10 AM: Introduction to CCR-Sequencing Facility Bao Tran, SF Director 9:10 AM – 9:40 AM: Overview of Illumina Sequencing Production Laboratory Jyoti Shetty, SF Illumina Laboratory Manager 9:40 AM – 10:00 AM: PacBio: Technology and Applications Caroline Fromont, SF Pacbio Laboratory 10:00 AM – 11:15 AM: New and Upcoming Sequencing Technologies at SF - New Solutions for Old Problems Monika Mehta, SF R&D Manager 11:15 AM – 12:00 PM: Overview of Data Analysis Workflows and Deliverables for Key NGS Applications at SF Yongmei Zhao, SF Bioinformatics Manager 12:00 PM – 12: 30 PM: Q & A Section All Presenters Questions/Comments and/or suggestions may be directed to Bao Tran at 301-360-3460 or tranb2@mail.nih.gov. | 2020-10-28 09:00:00 | Sequencing Technologies | Online | 0 | CCR Sequencing Facility Seminar | |||||
86 |
Description
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In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class to assist researchers in writing a manuscript. Participants will become familiar with statistical issues that can arise as well as recommendations to prevent them. At the end of the class, participants should have a good sense of what to do and not to do ...Read More
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In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class to assist researchers in writing a manuscript. Participants will become familiar with statistical issues that can arise as well as recommendations to prevent them. At the end of the class, participants should have a good sense of what to do and not to do when writing the statistical sections of a manuscript. Most of the examples will be related to clinical research; however, anyone can benefit from the tips shared. Plenty of time will be devoted for questions, and references will be provided for more in-depth self-study.
This class complements, How to Write a Research Paper Parts 1 & 2, as it specifically covers key points in writing the statistical portion of a manuscript – particularly for clinical research. Attendance to How to Write a Research Paper is not required to benefit from this class.
Instructor(s) -- External Vendor:
Paul Wakim
DetailsOrganizerNIH Training LibraryWhenWed, Oct 28, 2020 - 10:00 am - 11:30 amWhereOnline |
Register In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class to assist researchers in writing a manuscript. Participants will become familiar with statistical issues that can arise as well as recommendations to prevent them. At the end of the class, participants should have a good sense of what to do and not to do when writing the statistical sections of a manuscript. Most of the examples will be related to clinical research; however, anyone can benefit from the tips shared. Plenty of time will be devoted for questions, and references will be provided for more in-depth self-study. This class complements, How to Write a Research Paper Parts 1 & 2, as it specifically covers key points in writing the statistical portion of a manuscript – particularly for clinical research. Attendance to How to Write a Research Paper is not required to benefit from this class. Instructor(s) -- External Vendor: Paul Wakim | 2020-10-28 10:00:00 | Online | Statistics | Online | NIH Training Library | 0 | Statistical Considerations in Preparing Your Paper | |||
184 |
Description
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The NCI’s Clinical Proteomic Tumor Analysis Consortium (CPTAC) is a ...Read More
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The NCI’s Clinical Proteomic Tumor Analysis Consortium (CPTAC) is a national effort to accelerate the understanding of the molecular basis of cancer through the application of large-scale proteogenomics. The next TEAG forum will focus on NCI resources generated through the CPTAC pipeline that are available for conducting proteomic research.
CPTAC Tumor Characterization Program and Data Resources
Ana I. Robles, Ph.D.
Office of Cancer Clinical Proteomics Research (OCCPR)
National Cancer Institute
CPTAC Pipeline Components and the Assay Portal
Mehdi Mesri, M.Med.Sci., Ph.D.
OCCPR
National Cancer Institute
Proteomic Pipeline Support and NCI Collaborations
Tara Hiltke, Ph.D.
OCCPR
National Cancer Institute
DetailsWhenWed, Oct 28, 2020 - 10:00 am - 11:30 amWhereOnline |
Register The NCI’s Clinical Proteomic Tumor Analysis Consortium (CPTAC) is a national effort to accelerate the understanding of the molecular basis of cancer through the application of large-scale proteogenomics. The next TEAG forum will focus on NCI resources generated through the CPTAC pipeline that are available for conducting proteomic research. CPTAC Tumor Characterization Program and Data Resources Ana I. Robles, Ph.D. Office of Cancer Clinical Proteomics Research (OCCPR) National Cancer Institute CPTAC Pipeline Components and the Assay Portal Mehdi Mesri, M.Med.Sci., Ph.D. OCCPR National Cancer Institute Proteomic Pipeline Support and NCI Collaborations Tara Hiltke, Ph.D. OCCPR National Cancer Institute | 2020-10-28 10:00:00 | Online | 0 | Trans-NCI Extramural Awareness Group (TEAG) Forum | ||||||
938 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on October 30th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on November 5th.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Oct 30 - Thu, Nov 05, 2020 -2:00 pm - 2:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on October 30th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on November 5th. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-10-30 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
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DescriptionDetailsOrganizerCDSLWhenMon, Nov 02, 2020 - 10:00 am - 11:00 amWhereOnline |
Register | 2020-11-02 10:00:00 | Single Cell Technologies | Online | CDSL | 0 | Hierarchical clustering | ||||
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Description
Attendees will learn how to use Partek Flow to identify cell subtypes using both gene and protein expression in a peripheral blood mononuclear cell (PBMC) sample using Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-Seq) technology. CITE-Seq is a multimodal single cell phenotyping method. CITE-Seq data analysis starts with importing a count matrix file, followed by QC and filtering data. Clustering analysis and dimension reduction techniques are then used to visualize and identify subtypes ...Read More
Attendees will learn how to use Partek Flow to identify cell subtypes using both gene and protein expression in a peripheral blood mononuclear cell (PBMC) sample using Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-Seq) technology. CITE-Seq is a multimodal single cell phenotyping method. CITE-Seq data analysis starts with importing a count matrix file, followed by QC and filtering data. Clustering analysis and dimension reduction techniques are then used to visualize and identify subtypes of cells. Differential expression detection among different subtypes will be demonstrated, followed by Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis. Basic knowledge of Partek Flow is required.
Register
DetailsOrganizerNIH Training LibraryWhenMon, Nov 02, 2020 - 10:30 am - 12:00 pmWhereOnline |
Attendees will learn how to use Partek Flow to identify cell subtypes using both gene and protein expression in a peripheral blood mononuclear cell (PBMC) sample using Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-Seq) technology. CITE-Seq is a multimodal single cell phenotyping method. CITE-Seq data analysis starts with importing a count matrix file, followed by QC and filtering data. Clustering analysis and dimension reduction techniques are then used to visualize and identify subtypes of cells. Differential expression detection among different subtypes will be demonstrated, followed by Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis. Basic knowledge of Partek Flow is required. Register | 2020-11-02 10:30:00 | Online | Single Cell Technologies | Online | NIH Training Library | 0 | CITE-Seq Data Analysis in Partek Flow | |||
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Description
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Learn about data science education resources available through NIH and ...Read More
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Learn about data science education resources available through NIH and NCI, as well as online resources to learn about the data lifecycle, data management, data analysis and visualization, and other data science topics.
For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov
Check the Research Data Sources page on the Scientific Library website to learn more about research data online resources.
DetailsOrganizerScientific Library at FrederickWhenMon, Nov 02, 2020 - 1:00 pm - 1:20 pmWhereOnline |
Register Learn about data science education resources available through NIH and NCI, as well as online resources to learn about the data lifecycle, data management, data analysis and visualization, and other data science topics. For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov Check the Research Data Sources page on the Scientific Library website to learn more about research data online resources. | 2020-11-02 13:00:00 | Online | Data Resources | Online | Scientific Library at Frederick | 0 | Data Science Education Resources | |||
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Description
https://nci.rev.vbrick.com/#/videos/9db0a539-5bf2-4bc2-9e07-523161137e6e
The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of ...Read More
https://nci.rev.vbrick.com/#/videos/9db0a539-5bf2-4bc2-9e07-523161137e6e
The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
This is very important! Please follow this link and install https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you.
This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training.
For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule
DetailsWhenTue, Nov 03, 2020 - 11:00 am - 1:00 pmWhereOnline |
https://nci.rev.vbrick.com/#/videos/9db0a539-5bf2-4bc2-9e07-523161137e6e The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. This is very important! Please follow this link and install https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you. This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training. For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule | 2020-11-03 11:00:00 | Online | Programming | Online | 0 | Software Carpentry: R for Reproducible Scientific Analysis | ||||
198 |
Description
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Dr. Christina Curtis is an Assistant Professor in the ...Read More
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Dr. Christina Curtis is an Assistant Professor in the Departments of Medicine (Oncology) and Genetics in the School of Medicine at Stanford University where she leads the Cancer Computational and Systems Biology Group and is Co-Director of the Molecular Tumor Board at the Stanford Cancer Institute. The Curtis laboratory is focused on the development and application of innovative experimental, computational, and analytical approaches to improve the diagnosis, treatment, and early detection of cancer. Dr. Curtis will be presenting on next generation sequencing and tumor initiation and progression.
DetailsWhenTue, Nov 03, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Register Dr. Christina Curtis is an Assistant Professor in the Departments of Medicine (Oncology) and Genetics in the School of Medicine at Stanford University where she leads the Cancer Computational and Systems Biology Group and is Co-Director of the Molecular Tumor Board at the Stanford Cancer Institute. The Curtis laboratory is focused on the development and application of innovative experimental, computational, and analytical approaches to improve the diagnosis, treatment, and early detection of cancer. Dr. Curtis will be presenting on next generation sequencing and tumor initiation and progression. | 2020-11-03 15:00:00 | Online | Cancer | Online | 0 | Next Generation Sequencing and Tumor Initiation and Progression | ||||
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Description
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use ...Read More
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them.
Feel free to install the IGV browser in advance from here - IGV download (the UCSV browser is web browser based).
Register
DetailsOrganizerNIH Training LibraryWhenWed, Nov 04, 2020 - 1:00 pm - 2:00 pmWhereOnline |
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them. Feel free to install the IGV browser in advance from here - IGV download (the UCSV browser is web browser based). Register | 2020-11-04 13:00:00 | Online | NCI Genomic Data Commons | Online | NIH Training Library | 0 | Genome Browsers | |||
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Description
[one_third]Send email to staff@hpc.nih.gov to get the Zoom URL
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff ...Read More
[one_third]Send email to staff@hpc.nih.gov to get the Zoom URL
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
DetailsOrganizerHPC BiowulfWhenWed, Nov 04, 2020 - 1:00 pm - 3:00 pmWhereOnline |
[one_third]Send email to staff@hpc.nih.gov to get the Zoom URL All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. | 2020-11-04 13:00:00 | NIH High Performance Unix Cluster Biowulf | Online | HPC Biowulf | 0 | Zoom-In Consult with Biowulf Staff | ||||
195 |
Description
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Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly ...Read More
Register
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics.
Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects.
DetailsOrganizerNIH Training LibraryWhenThu, Nov 05, 2020 - 10:00 am - 3:00 pmWhereOnline |
Register Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics. Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects. | 2020-11-05 10:00:00 | Online | Pathway Analysis | Online | NIH Training Library | 0 | Ingenuity Pathway Analysis (IPA) | |||
187 |
Description
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Presenter: Dr. Han Liang
Reverse-phase protein arrays (RPPAs) offer a powerful functional proteomic approach to evaluate biomarkers and mechanisms underlying sensitivity and resistance to cancer therapy. The MD Anderson Cancer Center platform currently contains ~500 protein markers, covering all major signaling pathways. The Cancer Proteome Atlas (TCPA) we developed (http://tcpaportal.org) is the sole dedicated ...Read More
Register
Presenter: Dr. Han Liang
Reverse-phase protein arrays (RPPAs) offer a powerful functional proteomic approach to evaluate biomarkers and mechanisms underlying sensitivity and resistance to cancer therapy. The MD Anderson Cancer Center platform currently contains ~500 protein markers, covering all major signaling pathways. The Cancer Proteome Atlas (TCPA) we developed (http://tcpaportal.org) is the sole dedicated bioinformatics resource for RPPA data. Currently, it contains two analytic platforms: one contains >8000 patient samples; and the other contains >1500 cell line samples. We are developing the third component focusing on adaptive RPPA response given drug treatments. We have built an integrated data portal that contains user-friendly analytic and visualization tools for a broad biomedical community to utilize these data.To learn more please visit: https://tcpaportal.org/tcpa/
The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website https://itcr.cancer.gov/
DetailsWhenThu, Nov 05, 2020 - 11:00 am - 12:00 pmWhereOnline |
Register Presenter: Dr. Han Liang Reverse-phase protein arrays (RPPAs) offer a powerful functional proteomic approach to evaluate biomarkers and mechanisms underlying sensitivity and resistance to cancer therapy. The MD Anderson Cancer Center platform currently contains ~500 protein markers, covering all major signaling pathways. The Cancer Proteome Atlas (TCPA) we developed (http://tcpaportal.org) is the sole dedicated bioinformatics resource for RPPA data. Currently, it contains two analytic platforms: one contains >8000 patient samples; and the other contains >1500 cell line samples. We are developing the third component focusing on adaptive RPPA response given drug treatments. We have built an integrated data portal that contains user-friendly analytic and visualization tools for a broad biomedical community to utilize these data.To learn more please visit: https://tcpaportal.org/tcpa/ The ITCR Program is a trans-NCI program supporting investigator-initiated, research-driven informatics technology development spanning all aspects of cancer research. The ITCR Program funds tools that support the analysis of -omics, imaging, and clinical data, as well as network biology and data standards. All of the tools are free for use by academic and non-profit researchers. Access to tools, code repositories, and introductory videos are available on the website https://itcr.cancer.gov/ | 2020-11-05 11:00:00 | Online | Online | 0 | Introduction to Cancer Proteome Atlas | |||||
943 |
Description
This two-part lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
Part I
This section will introduce the general principles underlying RNA-SEQ and the basic steps in experimental design, RNA sample preparation, sequencing technologies (their strengths and weaknesses), quality control, sequence mapping and alignment.
RNASeq_Final_2020.1
...Read More
This two-part lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
Part I
This section will introduce the general principles underlying RNA-SEQ and the basic steps in experimental design, RNA sample preparation, sequencing technologies (their strengths and weaknesses), quality control, sequence mapping and alignment.
RNASeq_Final_2020.1
Meeting Information for Thursday, Nov 5 at 1 PM
Meeting Link
Meeting number: 172 256 6113
Password: wF4gdaPq2@4
Join by phone
1-650-479-3207 Call-in toll number (US/Canada)
RegisterOrganizerBTEPWhenThu, Nov 05, 2020 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This two-part lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data. Part I This section will introduce the general principles underlying RNA-SEQ and the basic steps in experimental design, RNA sample preparation, sequencing technologies (their strengths and weaknesses), quality control, sequence mapping and alignment. RNASeq_Final_2020.1 Meeting Information for Thursday, Nov 5 at 1 PM Meeting Link Meeting number: 172 256 6113 Password: wF4gdaPq2@4 Join by phone 1-650-479-3207 Call-in toll number (US/Canada) | 2020-11-05 13:00:00 | Online Webinar | Bulk RNA-seq | Online | Peter FitzGerald (GAU) | BTEP | 0 | An Introduction to RNA-Seq Data Analysis, Part One | ||
194 |
Description
Register
Overview:
Characterizing the transcriptomic profiles of individual cells by single-cell
RNA sequencing (scRNA-seq) has become a universal tool to identify
both known and novel cell populations, ushering science in a new era of
single cell biology. However, scRNA-seq utilizes dissociated cells with
results in the loss of spatial organization of the cell population being
analyzed.
It is therefore essential to complement scRNA-seq analysis with
...Read More
Register
Overview:
Characterizing the transcriptomic profiles of individual cells by single-cell
RNA sequencing (scRNA-seq) has become a universal tool to identify
both known and novel cell populations, ushering science in a new era of
single cell biology. However, scRNA-seq utilizes dissociated cells with
results in the loss of spatial organization of the cell population being
analyzed.
It is therefore essential to complement scRNA-seq analysis with
RNAscope in situ hybridization (ISH) in order to obtain visual
confirmation of both single cell and spatial gene expression.
In this webinar, Dr. Ariel Levine from NIH NINDS will share her latest
publication using RNAscope HiPlex assay, to reveal spinal cord cell type
organization, validate a combinatorial set of markers for in-tissue spatial
gene expression analysis, and optimize the computational classification
Presented by:
Ariel Levine, Ph.D.
Earl Stadtman Investigator
National Institute of Neurological Disorders and Stroke
DetailsWhenThu, Nov 05, 2020 - 1:00 pm - 2:00 pmWhereOnline |
Register Overview: Characterizing the transcriptomic profiles of individual cells by single-cell RNA sequencing (scRNA-seq) has become a universal tool to identify both known and novel cell populations, ushering science in a new era of single cell biology. However, scRNA-seq utilizes dissociated cells with results in the loss of spatial organization of the cell population being analyzed. It is therefore essential to complement scRNA-seq analysis with RNAscope in situ hybridization (ISH) in order to obtain visual confirmation of both single cell and spatial gene expression. In this webinar, Dr. Ariel Levine from NIH NINDS will share her latest publication using RNAscope HiPlex assay, to reveal spinal cord cell type organization, validate a combinatorial set of markers for in-tissue spatial gene expression analysis, and optimize the computational classification Presented by: Ariel Levine, Ph.D. Earl Stadtman Investigator National Institute of Neurological Disorders and Stroke | 2020-11-05 13:00:00 | Online | Single Cell Technologies | Online | 0 | Spatial Transcriptomic Analysis and Cell Type Characterization Using the RNAscope HiPlex Assay | ||||
203 |
Description
Register
Abstract:
The need to integrate knowledge types into big data analytics, generally referred to as explanatory-artificial-intelligence (x-AI), is growing. This talk will describe progress with three approaches to such knowledge enrichment: 1) the use of Independent Component Analysis (ICA) to define independently modulated sets of genes in bacterial transcriptomes, 2) the use of pangenome analysis for the thousands of bacterial genome sequences being generated, ...Read More
Register
Abstract:
The need to integrate knowledge types into big data analytics, generally referred to as explanatory-artificial-intelligence (x-AI), is growing. This talk will describe progress with three approaches to such knowledge enrichment: 1) the use of Independent Component Analysis (ICA) to define independently modulated sets of genes in bacterial transcriptomes, 2) the use of pangenome analysis for the thousands of bacterial genome sequences being generated, and 3) the use of machine learning methods for the analysis of antimicrobial resistance. The first case illustrates the principle of ‘getting answers to questions not asked,’ the second case illuminates ‘what is learned with scale,’ and the third case shows how mechanisms are built into genome-wide association studies (GWAS) using flux balance analysis (FBA).
Presenter:
Bernhard Palsson, PhD
Distinguished Galletti Professor of Bioengineering, Department of Bioengineering, UC San Diego
Professor of Pediatrics, UC San Diego School of Medicine
Meeting ID: 161 756 1452
Passcode: 586729
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Meeting ID: 161 756 1452
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Meeting ID: 161 756 1452
Passcode: 586729
For questions, please contact Steve Tsang at steve.tsang@nih.gov
DetailsOrganizerNIAIDWhenFri, Nov 06, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Register Abstract: The need to integrate knowledge types into big data analytics, generally referred to as explanatory-artificial-intelligence (x-AI), is growing. This talk will describe progress with three approaches to such knowledge enrichment: 1) the use of Independent Component Analysis (ICA) to define independently modulated sets of genes in bacterial transcriptomes, 2) the use of pangenome analysis for the thousands of bacterial genome sequences being generated, and 3) the use of machine learning methods for the analysis of antimicrobial resistance. The first case illustrates the principle of ‘getting answers to questions not asked,’ the second case illuminates ‘what is learned with scale,’ and the third case shows how mechanisms are built into genome-wide association studies (GWAS) using flux balance analysis (FBA). Presenter: Bernhard Palsson, PhD Distinguished Galletti Professor of Bioengineering, Department of Bioengineering, UC San Diego Professor of Pediatrics, UC San Diego School of Medicine Meeting ID: 161 756 1452 Passcode: 586729 One tap mobile +16692545252,,1617561452#,,,,,,0#,,586729# US (San Jose) +16468287666,,1617561452#,,,,,,0#,,586729# US (New York) Dial by your location +1 669 254 5252 US (San Jose) +1 646 828 7666 US (New York) Meeting ID: 161 756 1452 Passcode: 586729 Find your local number https://nih.zoomgov.com/u/ayFfvRtd4 Join by SIP 1617561452@sip.zoomgov.com Join by H.323 161.199.138.10 (US West) 161.199.136.10 (US East) Meeting ID: 161 756 1452 Passcode: 586729 For questions, please contact Steve Tsang at steve.tsang@nih.gov | 2020-11-06 12:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIAID | 0 | Progress with knowledge enriched data analytics | |||
939 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on November 6th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on November 12th.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Nov 06 - Thu, Nov 12, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on November 6th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on November 12th. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-11-06 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
190 |
Description
Register
Learn how to locate data ...Read More
Register
Learn how to locate data sharing policies for NIH, other public and private research funders, and journal publishers, and find templates for creating data management plans through DMP Tool.
For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov
Check the Research Data Resources page on the Scientific Library website to learn more about research data online resources.
DetailsOrganizerScientific Library at FrederickWhenMon, Nov 09, 2020 - 1:00 pm - 1:20 pmWhereOnline |
Register Learn how to locate data sharing policies for NIH, other public and private research funders, and journal publishers, and find templates for creating data management plans through DMP Tool. For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov Check the Research Data Resources page on the Scientific Library website to learn more about research data online resources. | 2020-11-09 13:00:00 | Online | Data Resources | Online | Scientific Library at Frederick | 0 | Data Sharing Policies and Data Management Plans | |||
942 |
Description
Link for ALL class sessions including help sessions.
Register
Meeting number: 172 866 2623
Password: NYy4m3V3i3*
Dial in: 650-479-3207
The goal of this workshop is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and ...Read More
Link for ALL class sessions including help sessions.
Register
Meeting number: 172 866 2623
Password: NYy4m3V3i3*
Dial in: 650-479-3207
The goal of this workshop is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
This is very important! Please follow this link and install R and Rstudio onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you.
This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training.
Nov 3, 11 AM - 1 PM, Week 1, Introduction to R and RStudio, Project Management with RStudio and Seeking Help (link to recording)
Nov 10, 11 AM - 1 PM, Week 2, Data Structures, Exploring Data Frames and Subsetting Data
Nov 17, 11 AM - 1 PM, Week 3, Creating Publication-Quality Graphics with ggplot2
Nov 24 NO CLASS Thanksgiving Holiday
Dec 1, 11 AM - 1 PM, Week 4, Control Flow, Vectorization and Functions Explained
Dec 8, 11 AM - 1 PM, Week 5, Writing Data, Dataframe Manipulation with dplyr and Dataframe Manipulation with tidyr
Dec 15,11 AM - 1 PM, Week 6, Producing Reports with knitr and Writing Good Software
For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule
Help Sessions
Nov 5, 12 - 1 PM, Week 1, Setting up access to the Course Materials with Git, Questions from Week 1
Nov 12, 12 - 1 PM, Week 2
Nov 19, 12 - 1 PM, Week 3
Dec 3, 12 - 1 PM, Week 4
Dec 10, 12 - 1 PM, Week 5
Dec 17, 12 - 1 PM, Week 6
RegisterOrganizerBTEPWhenTue, Nov 10, 2020 - 11:00 am - 1:00 pmWhereOnline Webinar |
Link for ALL class sessions including help sessions. Register Meeting number: 172 866 2623 Password: NYy4m3V3i3* Dial in: 650-479-3207 The goal of this workshop is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. This is very important! Please follow this link and install R and Rstudio onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you. This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training. Nov 3, 11 AM - 1 PM, Week 1, Introduction to R and RStudio, Project Management with RStudio and Seeking Help (link to recording) Nov 10, 11 AM - 1 PM, Week 2, Data Structures, Exploring Data Frames and Subsetting Data Nov 17, 11 AM - 1 PM, Week 3, Creating Publication-Quality Graphics with ggplot2 Nov 24 NO CLASS Thanksgiving Holiday Dec 1, 11 AM - 1 PM, Week 4, Control Flow, Vectorization and Functions Explained Dec 8, 11 AM - 1 PM, Week 5, Writing Data, Dataframe Manipulation with dplyr and Dataframe Manipulation with tidyr Dec 15,11 AM - 1 PM, Week 6, Producing Reports with knitr and Writing Good Software For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule Help Sessions Nov 5, 12 - 1 PM, Week 1, Setting up access to the Course Materials with Git, Questions from Week 1 Nov 12, 12 - 1 PM, Week 2 Nov 19, 12 - 1 PM, Week 3 Dec 3, 12 - 1 PM, Week 4 Dec 10, 12 - 1 PM, Week 5 Dec 17, 12 - 1 PM, Week 6 | 2020-11-10 11:00:00 | Online Webinar | Online | Amy Stonelake (BTEP),George Zaki (FNLCR) | BTEP | 0 | Software Carpentry: R for Reproducible Scientific Analysis | |||
206 |
Description
Register
The goal of these workshops ...Read More
Register
The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
This is very important! Please follow this link and install https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you.
This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training.
For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule
DetailsWhenTue, Nov 10, 2020 - 11:00 am - 1:00 pmWhereOnline |
Register The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. This is very important! Please follow this link and install https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you. This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training. For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule | 2020-11-10 11:00:00 | Online | Programming | Online | 0 | Software Carpentry: R for Reproducible Scientific Analysis | ||||
204 |
Description
Register
In this seminar, Dr. Nikhil Wagle, M.D., and Dr. Corrie Painter, Ph.D., will speak on behalf of “Count Me In,” a non-profit organization that allows researchers to work directly with patients and advocacy groups, along with software engineers and computational scientists, to collect, analyze, and share de-identified data.
Presenters:
Nikhil Wagle, M.D., ...Read More
Register
In this seminar, Dr. Nikhil Wagle, M.D., and Dr. Corrie Painter, Ph.D., will speak on behalf of “Count Me In,” a non-profit organization that allows researchers to work directly with patients and advocacy groups, along with software engineers and computational scientists, to collect, analyze, and share de-identified data.
Presenters:
Nikhil Wagle, M.D., is the director of “Count Me In” and a medical oncologist and cancer researcher at Dana-Farber Cancer Institute and the Board Institute of MIT and Harvard.
Corrie Painter, Ph.D., is the associate director of “Count Me In” and a research scientist at the Broad Institute of MIT and Harvard.
DetailsOrganizerCBIITWhenTue, Nov 10, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Register In this seminar, Dr. Nikhil Wagle, M.D., and Dr. Corrie Painter, Ph.D., will speak on behalf of “Count Me In,” a non-profit organization that allows researchers to work directly with patients and advocacy groups, along with software engineers and computational scientists, to collect, analyze, and share de-identified data. Presenters: Nikhil Wagle, M.D., is the director of “Count Me In” and a medical oncologist and cancer researcher at Dana-Farber Cancer Institute and the Board Institute of MIT and Harvard. Corrie Painter, Ph.D., is the associate director of “Count Me In” and a research scientist at the Broad Institute of MIT and Harvard. | 2020-11-10 12:00:00 | Online | Cancer,Data Science | Online | CBIIT | 0 | Partnering with the Public for Biomedical Research Seminar Series: “Count Me In; Partnering with Patients to Accelerate Cancer Discoveries” | |||
944 |
Description
This two-part lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
Part II
This second part of the talk will cover quantification of gene expression, differential gene expression and the use of visualization techniques to further analyze and to effectively communicate the salient points of the data and analysis.
Additionally, this section will provide guidance on finding resource about ...Read More
This two-part lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data.
Part II
This second part of the talk will cover quantification of gene expression, differential gene expression and the use of visualization techniques to further analyze and to effectively communicate the salient points of the data and analysis.
Additionally, this section will provide guidance on finding resource about different file formats used to represent Next Generation Sequence (NGS) data, and a brief preview of the other BTEP talks coming up during RNA-Seq Week(s).
NGS_File_Formats
RNASEQ_part2
Meeting Information
Meeting Link
Meeting number:172 058 3898
Password:NFhZ7k2Tn$9
Join by video system
Dial 1722566113@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in number (US/Canada)
Access code: 172 256 6113
RegisterOrganizerBTEPWhenTue, Nov 10, 2020 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This two-part lecture will provide an overview of RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data. Part II This second part of the talk will cover quantification of gene expression, differential gene expression and the use of visualization techniques to further analyze and to effectively communicate the salient points of the data and analysis. Additionally, this section will provide guidance on finding resource about different file formats used to represent Next Generation Sequence (NGS) data, and a brief preview of the other BTEP talks coming up during RNA-Seq Week(s). NGS_File_Formats RNASEQ_part2 Meeting Information Meeting Link Meeting number:172 058 3898 Password:NFhZ7k2Tn$9 Join by video system Dial 1722566113@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 172 256 6113 | 2020-11-10 13:00:00 | Online Webinar | Bulk RNA-seq | Online | Peter FitzGerald (GAU) | BTEP | 0 | An Introduction to RNA-Seq Analysis, Part Two | ||
70 |
Description
During the first part of the session attendees will learn how to use Partek Flow to perform special transcriptions by overlaying cell location information and histological images on single cell RNA-Seq data using 10X genomics data. During the second part of the session, attendees will learn how to run trajectory analysis and calculate pseudo-time.
Register
During the first part of the session attendees will learn how to use Partek Flow to perform special transcriptions by overlaying cell location information and histological images on single cell RNA-Seq data using 10X genomics data. During the second part of the session, attendees will learn how to run trajectory analysis and calculate pseudo-time.
Register
DetailsOrganizerNIH Training LibraryWhenThu, Nov 12, 2020 - 10:30 am - 12:00 pmWhereOnline |
During the first part of the session attendees will learn how to use Partek Flow to perform special transcriptions by overlaying cell location information and histological images on single cell RNA-Seq data using 10X genomics data. During the second part of the session, attendees will learn how to run trajectory analysis and calculate pseudo-time. Register | 2020-11-12 10:30:00 | Online | Single Cell Technologies | Online | NIH Training Library | 0 | Spatial Transcriptomics and Trajectory Analysis with Partek Flow | |||
945 |
Description
THIS EVENT HAS BEEN CANCELLED
Bulk RNA-Seq Analysis on Partek Flow Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mb7dc1d31feef38ae505d7e458152cc58 You do not need to have your HPC or Partek Flow access set-up to attend class, but here is how to do it. The Office of ...Read More
THIS EVENT HAS BEEN CANCELLED
Bulk RNA-Seq Analysis on Partek Flow Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mb7dc1d31feef38ae505d7e458152cc58 You do not need to have your HPC or Partek Flow access set-up to attend class, but here is how to do it. The Office of Science and Technology Resources (OSTR) has purchased licenses to Partek Flow for CCR scientists. To access these licenses, please follow the directions on the NIH HPC website at https://partekflow.cit.nih.gov/. You will need to have an HPC account (Biowulf) to access Partek Flow, instructions for getting one set-up are here (https://hpc.nih.gov/docs/accounts.html). If you are not a CCR scientist, please contact the NIH Library, as they also have Partek Flow licenses available to NIH scientists (https://www.nihlibrary.nih.gov/services/bioinformatics-support/analysis-tools). RegisterOrganizerBTEPWhenThu, Nov 12, 2020 - 1:00 pm - 2:00 pmWhereOnline Webinar |
THIS EVENT HAS BEEN CANCELLEDBulk RNA-Seq Analysis on Partek Flow Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mb7dc1d31feef38ae505d7e458152cc58 You do not need to have your HPC or Partek Flow access set-up to attend class, but here is how to do it. The Office of Science and Technology Resources (OSTR) has purchased licenses to Partek Flow for CCR scientists. To access these licenses, please follow the directions on the NIH HPC website at https://partekflow.cit.nih.gov/. You will need to have an HPC account (Biowulf) to access Partek Flow, instructions for getting one set-up are here (https://hpc.nih.gov/docs/accounts.html). If you are not a CCR scientist, please contact the NIH Library, as they also have Partek Flow licenses available to NIH scientists (https://www.nihlibrary.nih.gov/services/bioinformatics-support/analysis-tools). | 2020-11-12 13:00:00 | Online Webinar | Bulk RNA-seq | Online | Xiaowen Wang (Partek) | BTEP | 0 | BTEP bulk RNA-Seq Weeks: Partek Flow - CANCELLED | ||
44 |
Description
New computational opportunities and challenges have emerged within the cancer research and clinical application fields, as the size, source and complexity of cancer datasets have grown. Simultaneously, advances in computational capabilities, with exceptional growth in AI and deep learning, are reaching unprecedented scales.
This Sixth Computational Approaches for Cancer Workshop 2020 (CAFCW20) will bring together a wide-range of individuals including clinicians, cancer biologists, mathematicians, data scientists, computational scientists, engineers, developers, thought leaders and others with an ...Read More
New computational opportunities and challenges have emerged within the cancer research and clinical application fields, as the size, source and complexity of cancer datasets have grown. Simultaneously, advances in computational capabilities, with exceptional growth in AI and deep learning, are reaching unprecedented scales.
This Sixth Computational Approaches for Cancer Workshop 2020 (CAFCW20) will bring together a wide-range of individuals including clinicians, cancer biologists, mathematicians, data scientists, computational scientists, engineers, developers, thought leaders and others with an interest in advancing the use of computation to better understand, diagnose, treat and prevent cancer. As an interdisciplinary workshop, the sharing of insight and challenges fosters collaborations and future innovations accelerating progress in computationally and data-driven cancer research and clinical applications.
High-performance computing (HPC) has been and will continue to be a key component of cancer research. Industry, academic and government interest is demonstrably high with ongoing commitments, new announcements, advances and new opportunities involving cancer and computing. One need only review recommendations provided by the National Cancer Moonshot Blue Ribbon Panel to confirm the increasingly visible and critical role computing and HPC in particular will play in accelerating cancer research objectives. As HPC-related efforts from projects funded through the 21st Century Cures Act begin to mature, the workshop will provide an ongoing avenue for new computational approaches involving HPC at all scales to be shared with the growing community.
The Computational Approaches for Cancer workshop series originated in early 2015, following observations that the topic of cancer was already pervasive at the SC conference, yet no venue at SC existed to bring the key community together. The response has been favorable for the first five workshops with over 80 participants in each of the first two years, expanding to an estimated 150 attendees at SC17 and at room capacity in SC18 and SC19. Enthusiasm for the workshop continues to grow with many ideas and challenges shared, collaborations envisioned and needs identified. The successful call for papers in SC17 resulted in proceedings published for Open Access in BMC Bioinformatics, a growing number of submissions in SC18 and a record number of submissions in SC19. At SC19, the best paper award was given to a team who has progressively presented their work at the series of SC Computational Approaches for Cancer workshops.
Questions? Contact cafcw@nih.gov
DetailsWhenFri, Nov 13, 2020 - 10:00 am - 6:30 pmWhereOnline |
New computational opportunities and challenges have emerged within the cancer research and clinical application fields, as the size, source and complexity of cancer datasets have grown. Simultaneously, advances in computational capabilities, with exceptional growth in AI and deep learning, are reaching unprecedented scales. This Sixth Computational Approaches for Cancer Workshop 2020 (CAFCW20) will bring together a wide-range of individuals including clinicians, cancer biologists, mathematicians, data scientists, computational scientists, engineers, developers, thought leaders and others with an interest in advancing the use of computation to better understand, diagnose, treat and prevent cancer. As an interdisciplinary workshop, the sharing of insight and challenges fosters collaborations and future innovations accelerating progress in computationally and data-driven cancer research and clinical applications. High-performance computing (HPC) has been and will continue to be a key component of cancer research. Industry, academic and government interest is demonstrably high with ongoing commitments, new announcements, advances and new opportunities involving cancer and computing. One need only review recommendations provided by the National Cancer Moonshot Blue Ribbon Panel to confirm the increasingly visible and critical role computing and HPC in particular will play in accelerating cancer research objectives. As HPC-related efforts from projects funded through the 21st Century Cures Act begin to mature, the workshop will provide an ongoing avenue for new computational approaches involving HPC at all scales to be shared with the growing community. The Computational Approaches for Cancer workshop series originated in early 2015, following observations that the topic of cancer was already pervasive at the SC conference, yet no venue at SC existed to bring the key community together. The response has been favorable for the first five workshops with over 80 participants in each of the first two years, expanding to an estimated 150 attendees at SC17 and at room capacity in SC18 and SC19. Enthusiasm for the workshop continues to grow with many ideas and challenges shared, collaborations envisioned and needs identified. The successful call for papers in SC17 resulted in proceedings published for Open Access in BMC Bioinformatics, a growing number of submissions in SC18 and a record number of submissions in SC19. At SC19, the best paper award was given to a team who has progressively presented their work at the series of SC Computational Approaches for Cancer workshops. Questions? Contact cafcw@nih.gov | 2020-11-13 10:00:00 | Online | Cancer,Data Science | Online | 0 | Sixth Computational Approaches for Cancer Workshop (CAFCW20) | ||||
940 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on November 13th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on November 19th.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Nov 13 - Thu, Nov 19, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on November 13th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on November 19th. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-11-13 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
199 |
Description
Register
Description: This webinar offers an introduction to FlowJo, an application designed to help with data ...Read More
Register
Description: This webinar offers an introduction to FlowJo, an application designed to help with data archiving, analysis, and reporting. The training begins by showing how to load samples and then outlines the steps to take to generate meaningful results. Participants will learn how best to classify and show results (e.g., dot plots, zebra plots, histograms) and how to prepare figures for publication. Other features will address how to customize your app and ideas for making the app run faster and more efficiently.
For questions, contact Dr. Daoud Meerzaman at meerzamd@mail.nih.gov
Speaker: Dr. Christian Aguilera-Sandoval, FlowJo, LLC
DetailsOrganizerCBIITWhenFri, Nov 13, 2020 - 2:00 pm - 4:00 pmWhereOnline |
Register Description: This webinar offers an introduction to FlowJo, an application designed to help with data archiving, analysis, and reporting. The training begins by showing how to load samples and then outlines the steps to take to generate meaningful results. Participants will learn how best to classify and show results (e.g., dot plots, zebra plots, histograms) and how to prepare figures for publication. Other features will address how to customize your app and ideas for making the app run faster and more efficiently. For questions, contact Dr. Daoud Meerzaman at meerzamd@mail.nih.gov Speaker: Dr. Christian Aguilera-Sandoval, FlowJo, LLC | 2020-11-13 14:00:00 | Online | Flow Cytometry | Online | CBIIT | 0 | Introduction to FlowJo Cytometry | |||
219 |
Description
https://ncihub.org/resources/2404
Abstract:
In many applications in genomics, large data sets are created and lightly used before being shared with other researchers (ideally) or simply tossed away on hard drives. The Cancer Cloud project has enabled some of this very large data to be shared among qualified researchers in order to facilitate a greater understanding of oncogenesis. One issue that continuously comes up, however, is that ...Read More
https://ncihub.org/resources/2404
Abstract:
In many applications in genomics, large data sets are created and lightly used before being shared with other researchers (ideally) or simply tossed away on hard drives. The Cancer Cloud project has enabled some of this very large data to be shared among qualified researchers in order to facilitate a greater understanding of oncogenesis. One issue that continuously comes up, however, is that simply using the data requires specialized skills outside of the biological realm. A blend of computer science and biology is required in order to properly be able to access and appropriately run computations on data as it gets too big to scale. This presentation goes over an application on the ISB Cancer Cloud where whole genome sequencing was used to generate variant calls for downstream research. Due to the size of the whole genome sequences, this was cost prohibitive to do it on lab computers and had to be done in the cloud. Also due to the size of the data, custom processes needed to be put into place to manage and queue the computations as well as to parallelize and reconstruct them properly. This workflow has been made available open source for adaptation to other pipelines and the WGS variant data is being made available to qualified researchers in the cancer cloud.
Presenter:
Dr. John Torcivia, Director of AI Deployment, Clarifai, Inc.
Department of Biochemistry, George Washington University
Abstracts, Slides and Recordings from past meetings can be found here: https://ncihub.org/groups/cwig (New Link!)
For questions and subscription, please contact , Durga Addepalli at kanakadurga.addepalli@nih.gov
DetailsWhenFri, Nov 13, 2020 - 3:00 pm - 4:00 pmWhereOnline |
https://ncihub.org/resources/2404 Abstract: In many applications in genomics, large data sets are created and lightly used before being shared with other researchers (ideally) or simply tossed away on hard drives. The Cancer Cloud project has enabled some of this very large data to be shared among qualified researchers in order to facilitate a greater understanding of oncogenesis. One issue that continuously comes up, however, is that simply using the data requires specialized skills outside of the biological realm. A blend of computer science and biology is required in order to properly be able to access and appropriately run computations on data as it gets too big to scale. This presentation goes over an application on the ISB Cancer Cloud where whole genome sequencing was used to generate variant calls for downstream research. Due to the size of the whole genome sequences, this was cost prohibitive to do it on lab computers and had to be done in the cloud. Also due to the size of the data, custom processes needed to be put into place to manage and queue the computations as well as to parallelize and reconstruct them properly. This workflow has been made available open source for adaptation to other pipelines and the WGS variant data is being made available to qualified researchers in the cancer cloud. Presenter: Dr. John Torcivia, Director of AI Deployment, Clarifai, Inc. Department of Biochemistry, George Washington University Abstracts, Slides and Recordings from past meetings can be found here: https://ncihub.org/groups/cwig (New Link!) For questions and subscription, please contact , Durga Addepalli at kanakadurga.addepalli@nih.gov | 2020-11-13 15:00:00 | Online | Cancer | Online | 0 | Application of Genomics Big Data on the Cancer Cloud: Making use of difficult data | ||||
197 |
Description
Register
RStudio will be planning quarterly webinars to support the HHS Data Science and Statistical Programming communities. The first installment will be focused on Creating Reproducible Data Science. Please join Alex Gold as he shares best practices and demonstrates project-based workflow, version control with git, creating templates and packages, and reproducing data science environments.
Alex is a Solutions Engineer at RStudio, where he helps organizations succeed using ...Read More
Register
RStudio will be planning quarterly webinars to support the HHS Data Science and Statistical Programming communities. The first installment will be focused on Creating Reproducible Data Science. Please join Alex Gold as he shares best practices and demonstrates project-based workflow, version control with git, creating templates and packages, and reproducing data science environments.
Alex is a Solutions Engineer at RStudio, where he helps organizations succeed using R and RStudio products. Before coming to RStudio, Alex was a data scientist and worked on economic policy research, political campaigns, and federal consulting.
For more information about RStudio in Life Sciences: https://rstudio.com/solutions/pharma/
Learn more about RStudio’s recommended professional data science solution for every team: https://rstudio.com/products/team/
Contact our team with any questions: life-sciences-healthcare@rstudio.com
Presenter:
Alex Gold
DetailsWhenFri, Nov 13, 2020 - 4:44 pm - 4:44 pmWhereOnline |
Register RStudio will be planning quarterly webinars to support the HHS Data Science and Statistical Programming communities. The first installment will be focused on Creating Reproducible Data Science. Please join Alex Gold as he shares best practices and demonstrates project-based workflow, version control with git, creating templates and packages, and reproducing data science environments. Alex is a Solutions Engineer at RStudio, where he helps organizations succeed using R and RStudio products. Before coming to RStudio, Alex was a data scientist and worked on economic policy research, political campaigns, and federal consulting. For more information about RStudio in Life Sciences: https://rstudio.com/solutions/pharma/ Learn more about RStudio’s recommended professional data science solution for every team: https://rstudio.com/products/team/ Contact our team with any questions: life-sciences-healthcare@rstudio.com Presenter: Alex Gold | 2020-11-13 16:44:18 | Online | Programming,Data Science | Online | 0 | Creating Reproducible Data Science | ||||
91 |
Description
Register
The goal of this meeting is to critically address the wealth of new data generated by bulk and single-cell molecular, imaging and computational approaches that are increasingly revealing how the genome folds to faithfully accommodate gene expression programs and cell fate decisions. The goal is also to advance an understanding of how transcriptional enhancers function, how to separate cause and effect, and to identify ...Read More
Register
The goal of this meeting is to critically address the wealth of new data generated by bulk and single-cell molecular, imaging and computational approaches that are increasingly revealing how the genome folds to faithfully accommodate gene expression programs and cell fate decisions. The goal is also to advance an understanding of how transcriptional enhancers function, how to separate cause and effect, and to identify critical questions that will guide future research directions.
We are inviting current thought leaders in the field from the U.S. and Europe in order to promote intellectual discourse among colleagues on this subject. We anticipate a highly stimulating and interactive meeting and a published report to follow.
Sessions Include:
• Enhancer genetics.
• Enhancers in development.
• Enhancer biophysics.
• Enhancer in disease.
• Enhancers and ncRNA.
Registration is required in order to receive the WebEx link.
REASONABLE ACCOMMODATION
Individuals with disabilities who need Sign Language Interpreters and/or reasonable accommodation to participate in this event should contact Romi Sawhney, at 240-760-6400, and/or the Federal Relay Service (1-800-877-8339). Requests should be made at least two business days in advance of the event.
DetailsWhenMon, Nov 16, 2020 - 8:50 am - 6:00 pmWhereOnline |
Register The goal of this meeting is to critically address the wealth of new data generated by bulk and single-cell molecular, imaging and computational approaches that are increasingly revealing how the genome folds to faithfully accommodate gene expression programs and cell fate decisions. The goal is also to advance an understanding of how transcriptional enhancers function, how to separate cause and effect, and to identify critical questions that will guide future research directions. We are inviting current thought leaders in the field from the U.S. and Europe in order to promote intellectual discourse among colleagues on this subject. We anticipate a highly stimulating and interactive meeting and a published report to follow. Sessions Include: • Enhancer genetics. • Enhancers in development. • Enhancer biophysics. • Enhancer in disease. • Enhancers and ncRNA. Registration is required in order to receive the WebEx link. REASONABLE ACCOMMODATION Individuals with disabilities who need Sign Language Interpreters and/or reasonable accommodation to participate in this event should contact Romi Sawhney, at 240-760-6400, and/or the Federal Relay Service (1-800-877-8339). Requests should be made at least two business days in advance of the event. | 2020-11-16 08:50:00 | Online | Online | 0 | Enhancers, Gene Regulation and Genome Organization meeting. | |||||
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DescriptionDetailsOrganizerCDSLWhenMon, Nov 16, 2020 - 10:00 am - 11:00 amWhereOnline |
Register | 2020-11-16 10:00:00 | Single Cell Technologies | Online | CDSL | 0 | Spectral clustering and its connection to Laplacian Eigenmaps | ||||
215 |
Description
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Cancer heterogeneity is one of the major challenges that hampers the ability to cure the
disease. Tumors differ in their genetic profiles and the cellular interactions in the
microenvironment, and each tumor may have multiple different clones with distinct molecular
characteristics. Therefore understanding cancer heterogeneity has major translational
implications. In my lab we use mass spectrometry-based proteomics to understand cancer
heterogeneity in breast cancer and melanoma. ...Read More
Register
Cancer heterogeneity is one of the major challenges that hampers the ability to cure the
disease. Tumors differ in their genetic profiles and the cellular interactions in the
microenvironment, and each tumor may have multiple different clones with distinct molecular
characteristics. Therefore understanding cancer heterogeneity has major translational
implications. In my lab we use mass spectrometry-based proteomics to understand cancer
heterogeneity in breast cancer and melanoma. We combine analysis of clinical samples with
histopathological analysis and functional validations, to unravel novel regulators of cancer
progression. Analysis of hundreds of breast cancer tumor regions associated between clinical
parameters and the protein networks, and showed their heterogeneity within single tumors.
Our research showed the importance of each clinical feature and the significance of the immune
system in affecting tumor heterogeneity. We also showed the microenvironment effects on
melanoma, in the context of immunotherapy response. These unsupervised proteomic networks set the basis for future improved therapy and precision oncology.
Presenter:
Dr. Tami Geiger, from the Sackler Faculty of Medicine, Tel Aviv University, Israel.
Meeting ID: 916 3499 0819
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Meeting ID: 916 3499 0819
DetailsWhenMon, Nov 16, 2020 - 11:00 am - 12:00 pmWhereOnline |
Register Cancer heterogeneity is one of the major challenges that hampers the ability to cure the disease. Tumors differ in their genetic profiles and the cellular interactions in the microenvironment, and each tumor may have multiple different clones with distinct molecular characteristics. Therefore understanding cancer heterogeneity has major translational implications. In my lab we use mass spectrometry-based proteomics to understand cancer heterogeneity in breast cancer and melanoma. We combine analysis of clinical samples with histopathological analysis and functional validations, to unravel novel regulators of cancer progression. Analysis of hundreds of breast cancer tumor regions associated between clinical parameters and the protein networks, and showed their heterogeneity within single tumors. Our research showed the importance of each clinical feature and the significance of the immune system in affecting tumor heterogeneity. We also showed the microenvironment effects on melanoma, in the context of immunotherapy response. These unsupervised proteomic networks set the basis for future improved therapy and precision oncology. Presenter: Dr. Tami Geiger, from the Sackler Faculty of Medicine, Tel Aviv University, Israel. Meeting ID: 916 3499 0819 One tap mobile +13017158592,,91634990819# US (Washington D.C) +19294362866,,91634990819# US (New York) Dial by your location +1 301 715 8592 US (Washington D.C) +1 929 436 2866 US (New York) +1 312 626 6799 US (Chicago) +1 346 248 7799 US (Houston) +1 669 900 6833 US (San Jose) +1 253 215 8782 US (Tacoma) Meeting ID: 916 3499 0819 Find your local number: https://umd.zoom.us/zoomconference?m=O4DLGIb-r68F6tV586-lZPIBn4AGVlpe&_x_zm_rtaid=XmaBsPGmTeufOfL1u9ZYCg.1605297715617.1ba59dbec70972ce94cb94737a2e8ad5&_x_zm_rhtaid=242 Join by H.323 162.255.37.11 (US West) 162.255.36.11 (US East) 115.114.131.7 (India Mumbai) 115.114.115.7 (India Hyderabad) 213.19.144.110 (Amsterdam Netherlands) 213.244.140.110 (Germany) 103.122.166.55 (Australia) 149.137.40.110 (Singapore) 64.211.144.160 (Brazil) 69.174.57.160 (Canada) 207.226.132.110 (Japan) Meeting ID: 916 3499 0819 | 2020-11-16 11:00:00 | Online | Cancer | Online | 0 | Proteomic analysis of cancer internal heterogeneity | ||||
191 |
Description
Register
Learn how to find data standards through DCC Disciplinary Metadata, ...Read More
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Learn how to find data standards through DCC Disciplinary Metadata, FAIRsharing.org, and NIH Common Data Elements (CDEs). For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov
Check Research Data Resources page on the Scientific Library website to learn more about research data online resources.
DetailsOrganizerScientific Library at FrederickWhenMon, Nov 16, 2020 - 1:00 pm - 1:20 pmWhereOnline |
Register Learn how to find data standards through DCC Disciplinary Metadata, FAIRsharing.org, and NIH Common Data Elements (CDEs). For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov Check Research Data Resources page on the Scientific Library website to learn more about research data online resources. | 2020-11-16 13:00:00 | Online | Data Resources | Online | Scientific Library at Frederick | 0 | Finding Data Standards | |||
92 |
Description
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The goal of this meeting is to critically address the wealth of new data generated by bulk and single-cell molecular, imaging and computational approaches that are increasingly revealing how the genome folds to faithfully accommodate gene expression programs and cell fate decisions. The goal is also to advance an understanding of how transcriptional enhancers function, how to separate cause and effect, and to identify ...Read More
Register
The goal of this meeting is to critically address the wealth of new data generated by bulk and single-cell molecular, imaging and computational approaches that are increasingly revealing how the genome folds to faithfully accommodate gene expression programs and cell fate decisions. The goal is also to advance an understanding of how transcriptional enhancers function, how to separate cause and effect, and to identify critical questions that will guide future research directions.
We are inviting current thought leaders in the field from the U.S. and Europe in order to promote intellectual discourse among colleagues on this subject. We anticipate a highly stimulating and interactive meeting and a published report to follow.
Sessions Include:
• Enhancer genetics.
• Enhancers in development.
• Enhancer biophysics.
• Enhancer in disease.
• Enhancers and ncRNA.
Registration is required in order to receive the WebEx link.
REASONABLE ACCOMMODATION
Individuals with disabilities who need Sign Language Interpreters and/or reasonable accommodation to participate in this event should contact Romi Sawhney, at 240-760-6400, and/or the Federal Relay Service (1-800-877-8339). Requests should be made at least two business days in advance of the event.
DetailsWhenTue, Nov 17, 2020 - 9:00 am - 3:15 pmWhereOnline |
Register The goal of this meeting is to critically address the wealth of new data generated by bulk and single-cell molecular, imaging and computational approaches that are increasingly revealing how the genome folds to faithfully accommodate gene expression programs and cell fate decisions. The goal is also to advance an understanding of how transcriptional enhancers function, how to separate cause and effect, and to identify critical questions that will guide future research directions. We are inviting current thought leaders in the field from the U.S. and Europe in order to promote intellectual discourse among colleagues on this subject. We anticipate a highly stimulating and interactive meeting and a published report to follow. Sessions Include: • Enhancer genetics. • Enhancers in development. • Enhancer biophysics. • Enhancer in disease. • Enhancers and ncRNA. Registration is required in order to receive the WebEx link. REASONABLE ACCOMMODATION Individuals with disabilities who need Sign Language Interpreters and/or reasonable accommodation to participate in this event should contact Romi Sawhney, at 240-760-6400, and/or the Federal Relay Service (1-800-877-8339). Requests should be made at least two business days in advance of the event. | 2020-11-17 09:00:00 | Online | Online | 0 | Enhancers, Gene Regulation and Genome Organization | |||||
208 |
Description
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The goal of ...Read More
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The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
This is very important! Please follow this link and install https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you.
This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training.
For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule
DetailsWhenTue, Nov 17, 2020 - 11:00 am - 1:00 pmWhereOnline |
Register The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. This is very important! Please follow this link and install https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you. This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training. For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule | 2020-11-17 11:00:00 | Online | Programming | Online | 0 | Software Carpentry: R for Reproducible Scientific Analysis | ||||
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Description
Please join us for a brief overview of NCI’s HALO cloud deployment and the first in a series of talks describing HALO-enabled research. Dr. Noemi Kedei, MD, CCR, will cover examples of using HALO to analyze highly multiplex CODEX images, and images acquired for DSP GeoMx and RNAScope.
NCI's HALO is an enterprise-wide 2D image management and analysis platform, hosted in NCI’s AWS Cloud One environment. The HALO software supports cell-based, object-based, and ...Read More
Please join us for a brief overview of NCI’s HALO cloud deployment and the first in a series of talks describing HALO-enabled research. Dr. Noemi Kedei, MD, CCR, will cover examples of using HALO to analyze highly multiplex CODEX images, and images acquired for DSP GeoMx and RNAScope.
NCI's HALO is an enterprise-wide 2D image management and analysis platform, hosted in NCI’s AWS Cloud One environment. The HALO software supports cell-based, object-based, and area-based analysis of brightfield and fluorescence images for research and clinical digital pathology, as well as numerous multiplex and hi-plex applications. The platform is an outgrowth of CBIIT’s Intramural NCI STRIDES-based Transition and Exploration Program (IN STEP), aimed at developing broadly useful research infrastructure in the cloud to support NCI’s Intramural Research Program (IRP). NCI's HALO eliminates the need for numerous groups to maintain separate but similar infrastructure for digital pathology (including contracts and computational workstations), and enables interoperability, collaboration, access to elastic computation, and efficient use of shared resources. NCI HALO supports collaborations with Investigators from other ICs, and there is capacity available for other ICs to demo the platform.
DetailsWhenTue, Nov 17, 2020 - 1:00 pm - 2:00 pmWhereOnline |
Please join us for a brief overview of NCI’s HALO cloud deployment and the first in a series of talks describing HALO-enabled research. Dr. Noemi Kedei, MD, CCR, will cover examples of using HALO to analyze highly multiplex CODEX images, and images acquired for DSP GeoMx and RNAScope. NCI's HALO is an enterprise-wide 2D image management and analysis platform, hosted in NCI’s AWS Cloud One environment. The HALO software supports cell-based, object-based, and area-based analysis of brightfield and fluorescence images for research and clinical digital pathology, as well as numerous multiplex and hi-plex applications. The platform is an outgrowth of CBIIT’s Intramural NCI STRIDES-based Transition and Exploration Program (IN STEP), aimed at developing broadly useful research infrastructure in the cloud to support NCI’s Intramural Research Program (IRP). NCI's HALO eliminates the need for numerous groups to maintain separate but similar infrastructure for digital pathology (including contracts and computational workstations), and enables interoperability, collaboration, access to elastic computation, and efficient use of shared resources. NCI HALO supports collaborations with Investigators from other ICs, and there is capacity available for other ICs to demo the platform. | 2020-11-17 13:00:00 | Online | Cancer | Online | 0 | Analysis of CODEX and other Hi-Plex Images in HALO | ||||
201 |
Description
https://www.youtube.com/watch?v=uoEhqeB4HTo&feature=youtu.be
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #5 will focus on the Deep Reinforcement Learning Networks and their application to small drug molecules design.
Expected knowledge: ...Read More
https://www.youtube.com/watch?v=uoEhqeB4HTo&feature=youtu.be
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #5 will focus on the Deep Reinforcement Learning Networks and their application to small drug molecules design.
Expected knowledge: Basic Python, Basic Linux/Unix
This class is part of a series, but each class is stand-alone.
Instructor: Gennady Denisov (NIH HPC staff)
The class is free.
DetailsOrganizerHPC BiowulfWhenWed, Nov 18, 2020 - 9:30 am - 12:00 pmWhereOnline |
https://www.youtube.com/watch?v=uoEhqeB4HTo&feature=youtu.be This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #5 will focus on the Deep Reinforcement Learning Networks and their application to small drug molecules design. Expected knowledge: Basic Python, Basic Linux/Unix This class is part of a series, but each class is stand-alone. Instructor: Gennady Denisov (NIH HPC staff) The class is free. | 2020-11-18 09:30:00 | Online | Artificial Intelligence / Machine Learning | Online | HPC Biowulf | 0 | Deep Learning by Example on Biowulf | |||
71 |
Description
Register
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as ...Read More
Register
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach, and will cover the concepts of hypothesis testing, confidence intervals, Type I and Type II errors, statistical power, and p-values. Technical details will be kept to an absolute minimum.
Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 2 of this class series.
Instructor: Paul Wakim (External Vendor)
DetailsOrganizerNIH Training LibraryWhenWed, Nov 18, 2020 - 10:00 am - 11:30 amWhereOnline |
Register What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach, and will cover the concepts of hypothesis testing, confidence intervals, Type I and Type II errors, statistical power, and p-values. Technical details will be kept to an absolute minimum. Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 2 of this class series. Instructor: Paul Wakim (External Vendor) | 2020-11-18 10:00:00 | Online | Statistics | Online | NIH Training Library | 0 | Statistical Inference for Non-Statisticians: Part 1 | |||
72 |
Description
Artificial Intelligence (AI) and Machine Learning (ML) are hot topics today, but are already part of our everyday lives. This class will introduce the basic principles of AI and ML and the current state of this field. The instructor will share examples of AI used in common applications and health research. AI limitations and ethical considerations will also be discussed. This course is designed for individuals new to the topic or for those who need ...Read More
Artificial Intelligence (AI) and Machine Learning (ML) are hot topics today, but are already part of our everyday lives. This class will introduce the basic principles of AI and ML and the current state of this field. The instructor will share examples of AI used in common applications and health research. AI limitations and ethical considerations will also be discussed. This course is designed for individuals new to the topic or for those who need a refresher.
Register
Speaker: Alicia Lillich (NIH STAFF)
DetailsOrganizerNIH Training LibraryWhenWed, Nov 18, 2020 - 11:00 am - 12:00 pmWhereOnline |
Artificial Intelligence (AI) and Machine Learning (ML) are hot topics today, but are already part of our everyday lives. This class will introduce the basic principles of AI and ML and the current state of this field. The instructor will share examples of AI used in common applications and health research. AI limitations and ethical considerations will also be discussed. This course is designed for individuals new to the topic or for those who need a refresher. Register Speaker: Alicia Lillich (NIH STAFF) | 2020-11-18 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Training Library | 0 | Introduction to Artificial Intelligence and Machine Learning | |||
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DescriptionDetailsOrganizerCBIITWhenWed, Nov 18, 2020 - 11:00 am - 12:00 pmWhereOnline |
Register Presenter: Dr. James Zou | 2020-11-18 11:00:00 | Online | Data Science | Online | CBIIT | 0 | Computer Vision to Deeply Phenotype Human Diseases Across Physiological, Tissue, and Molecular Scales | |||
212 |
Description
Register
RStudio will be planning quarterly webinars to support the HHS Data Science and Statistical Programming communities. The first installment will be focused on Creating Reproducible Data Science. Please join Alex Gold as he shares best practices and demonstrates project-based workflow, version control with git, creating templates and packages, and reproducing data science environments.
Alex is a Solutions Engineer at RStudio, where he helps organizations succeed using ...Read More
Register
RStudio will be planning quarterly webinars to support the HHS Data Science and Statistical Programming communities. The first installment will be focused on Creating Reproducible Data Science. Please join Alex Gold as he shares best practices and demonstrates project-based workflow, version control with git, creating templates and packages, and reproducing data science environments.
Alex is a Solutions Engineer at RStudio, where he helps organizations succeed using R and RStudio products. Before coming to RStudio, Alex was a data scientist and worked on economic policy research, political campaigns, and federal consulting.
For more information about RStudio in Life Sciences: https://rstudio.com/solutions/pharma/
Learn more about RStudio’s recommended professional data science solution for every team: https://rstudio.com/products/team/
Contact our team with any questions: life-sciences-healthcare@rstudio.com
DetailsWhenWed, Nov 18, 2020 - 2:00 pm - 3:00 pmWhereOnline |
Register RStudio will be planning quarterly webinars to support the HHS Data Science and Statistical Programming communities. The first installment will be focused on Creating Reproducible Data Science. Please join Alex Gold as he shares best practices and demonstrates project-based workflow, version control with git, creating templates and packages, and reproducing data science environments. Alex is a Solutions Engineer at RStudio, where he helps organizations succeed using R and RStudio products. Before coming to RStudio, Alex was a data scientist and worked on economic policy research, political campaigns, and federal consulting. For more information about RStudio in Life Sciences: https://rstudio.com/solutions/pharma/ Learn more about RStudio’s recommended professional data science solution for every team: https://rstudio.com/products/team/ Contact our team with any questions: life-sciences-healthcare@rstudio.com | 2020-11-18 14:00:00 | Online | Programming,Data Science | Online | 0 | Creating Reproducible Data Science | ||||
73 |
Description
Register
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as ...Read More
Register
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach, and will cover the concepts of Bayes’ Theorem, prior and posterior distributions, and Bayes factor. Technical details will be kept to an absolute minimum.
Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 1 of this class series.
Speaker: Paul Wakim (External Vendor)
DetailsOrganizerNIH Training LibraryWhenThu, Nov 19, 2020 - 10:00 am - 11:30 amWhereOnline |
Register What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach, and will cover the concepts of Bayes’ Theorem, prior and posterior distributions, and Bayes factor. Technical details will be kept to an absolute minimum. Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 1 of this class series. Speaker: Paul Wakim (External Vendor) | 2020-11-19 10:00:00 | Online | Statistics | Online | NIH Training Library | 0 | Statistical Inference for Non-Statisticians: Part 2 | |||
946 |
Description
Recording Link
QIAGEN’s Ingenuity Pathway Analysis (IPA) allows for quick and easy biological interpretation using the results of your RNA-Seq differential expression analyses. IPA’s functionality is tied to an extensive, rich set of curated relationships in the Qiagen Knowledge Base and has been cited in >20,000 peer-reviewed articles. This session will focus on utilizing RNA-Seq ...Read More
Recording Link
QIAGEN’s Ingenuity Pathway Analysis (IPA) allows for quick and easy biological interpretation using the results of your RNA-Seq differential expression analyses. IPA’s functionality is tied to an extensive, rich set of curated relationships in the Qiagen Knowledge Base and has been cited in >20,000 peer-reviewed articles. This session will focus on utilizing RNA-Seq data from a recent metastatic melanoma study and review how the simple graphical user interface can be used to import the results of a differential expression analysis to determine key biological endpoints, including pathways, predicted regulatory molecules, and functional impact, and compare these biological findings to public studies. These results can then be easily exported as tables and publication-ready figures.
Requests for IPA access may be made directly through the NCI Service Desk: https://service.cancer.gov/selfservice
Once they have an account, to access IPA web version, please click on https://analysis.ingenuity.com/pa
To install the new IPA desktop client, please do so at: https://analysis.ingenuity.com/pa/installer/select
RegisterOrganizerBTEPWhenThu, Nov 19, 2020 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Recording Link QIAGEN’s Ingenuity Pathway Analysis (IPA) allows for quick and easy biological interpretation using the results of your RNA-Seq differential expression analyses. IPA’s functionality is tied to an extensive, rich set of curated relationships in the Qiagen Knowledge Base and has been cited in >20,000 peer-reviewed articles. This session will focus on utilizing RNA-Seq data from a recent metastatic melanoma study and review how the simple graphical user interface can be used to import the results of a differential expression analysis to determine key biological endpoints, including pathways, predicted regulatory molecules, and functional impact, and compare these biological findings to public studies. These results can then be easily exported as tables and publication-ready figures. Requests for IPA access may be made directly through the NCI Service Desk: https://service.cancer.gov/selfservice Once they have an account, to access IPA web version, please click on https://analysis.ingenuity.com/pa To install the new IPA desktop client, please do so at: https://analysis.ingenuity.com/pa/installer/select | 2020-11-19 13:00:00 | Online Webinar | Bulk RNA-seq | Online | BTEP | 0 | BTEP bulk RNA-Seq Weeks: Qiagen Ingenuity Pathway Analysis (IPA) | |||
941 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on November 20th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on December 3rd. Please note that due to the Thanksgiving holiday, you will receive access to the course materials 2 weeks before the live discussion on December 3rd.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Nov 20 - Thu, Dec 03, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on November 20th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on December 3rd. Please note that due to the Thanksgiving holiday, you will receive access to the course materials 2 weeks before the live discussion on December 3rd. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-11-20 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
200 |
Description
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Description: In this advanced FlowJo cytometry webinar participants will learn how to move ...Read More
Register
Description: In this advanced FlowJo cytometry webinar participants will learn how to move beyond the basics of the application to conduct in-depth analyses. FlowJo can accommodate high dimension, high throughput flow, or mass cytometry data. This course will address the use of plug-ins to extend the functionality of FlowJo, including Sunburst, MiST, TriMap, UMAP, Phenograph, FlowSOM, etc. Other topics will look at down sampling, concatenating, and exporting to isolate subset populations, as well as tools and tips on clustering to show meaningful results.
For questions, contact Dr. Daoud Meerzaman at meerzamd@mail.nih.gov
Speaker: Dr. Christian Aguilera-Sandoval, FlowJo, LLC
DetailsOrganizerCBIITWhenFri, Nov 20, 2020 - 3:30 pm - 5:30 pmWhereOnline |
Register Description: In this advanced FlowJo cytometry webinar participants will learn how to move beyond the basics of the application to conduct in-depth analyses. FlowJo can accommodate high dimension, high throughput flow, or mass cytometry data. This course will address the use of plug-ins to extend the functionality of FlowJo, including Sunburst, MiST, TriMap, UMAP, Phenograph, FlowSOM, etc. Other topics will look at down sampling, concatenating, and exporting to isolate subset populations, as well as tools and tips on clustering to show meaningful results. For questions, contact Dr. Daoud Meerzaman at meerzamd@mail.nih.gov Speaker: Dr. Christian Aguilera-Sandoval, FlowJo, LLC | 2020-11-20 15:30:00 | Online | Flow Cytometry | Online | CBIIT | 0 | FlowJo Cytometry Advanced | |||
220 |
Description
Abstract:
Mutational processes shape the genomes of cancer patients and their understanding has important applications in diagnosis and treatment. In this talk I will describe recent works in my lab to model mutational processes under different settings and describe their biomedical applications.
Bio: Roded Sharan is a Professor of Computer Science at Tel Aviv University. His group focuses on analysis and modeling of protein-protein interaction networks and probabilistic modeling of mutational processes.
Abstract:
Mutational processes shape the genomes of cancer patients and their understanding has important applications in diagnosis and treatment. In this talk I will describe recent works in my lab to model mutational processes under different settings and describe their biomedical applications.
Bio: Roded Sharan is a Professor of Computer Science at Tel Aviv University. His group focuses on analysis and modeling of protein-protein interaction networks and probabilistic modeling of mutational processes.
DetailsOrganizerCDSLWhenMon, Nov 23, 2020 - 11:00 am - 12:00 pmWhereOnline |
Abstract: Mutational processes shape the genomes of cancer patients and their understanding has important applications in diagnosis and treatment. In this talk I will describe recent works in my lab to model mutational processes under different settings and describe their biomedical applications. Bio: Roded Sharan is a Professor of Computer Science at Tel Aviv University. His group focuses on analysis and modeling of protein-protein interaction networks and probabilistic modeling of mutational processes. | 2020-11-23 11:00:00 | Online | Data Science | Online | CDSL | 0 | Mutational signatures: from basic science to clinical applications | |||
192 |
Description
Register
Learn how ...Read More
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Learn how to find NIH data repositories and other repositories through Re3Data. Learn about resources for locating datasets by searching across data repositories, searching individual repositories, and searching data publications. For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov
Check the Reseach Data Resources page on the Scientific Library website to learn more about research data online resources.
DetailsOrganizerScientific Library at FrederickWhenMon, Nov 23, 2020 - 1:00 pm - 1:20 pmWhereOnline |
Register Learn how to find NIH data repositories and other repositories through Re3Data. Learn about resources for locating datasets by searching across data repositories, searching individual repositories, and searching data publications. For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov Check the Reseach Data Resources page on the Scientific Library website to learn more about research data online resources. | 2020-11-23 13:00:00 | Online | Data Resources | Online | Scientific Library at Frederick | 0 | Finding Data Repositories and Data Sets | |||
193 |
Description
Register
Learn about the NCI cancer research data ecosystem, as well as repositories and data portals for cancer research data. For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov
Check the Research Data Resources page on the Scientific Library website to learn more about research data online resources.
DetailsOrganizerScientific Library at FrederickWhenMon, Nov 30, 2020 - 1:00 pm - 1:20 pmWhereOnline |
Register Learn about the NCI cancer research data ecosystem, as well as repositories and data portals for cancer research data. For more information about the webinars or to pre-register, contact Joelle Mornini at joelle.mornini@nih.gov Check the Research Data Resources page on the Scientific Library website to learn more about research data online resources. | 2020-11-30 13:00:00 | Online | Data Resources | Online | Scientific Library at Frederick | 0 | NCI Data Resources | |||
205 |
Description
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As the genomic data-specific repository within NCI's Cancer Research Data Commons (CRDC), the GDC provides cloud-based access to some of the largest and most comprehensive cancer genomic data sets as well as tools and workflows for data analysis. This monthly NCI Genomic Data Commons (GDC) webinar will give an overview of the GDC data quality ...Read More
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As the genomic data-specific repository within NCI's Cancer Research Data Commons (CRDC), the GDC provides cloud-based access to some of the largest and most comprehensive cancer genomic data sets as well as tools and workflows for data analysis. This monthly NCI Genomic Data Commons (GDC) webinar will give an overview of the GDC data quality strategy, the tools facilitating data quality in GDC data submission and harmonization, and the data quality metrics generated by the GDC.
During this webinar, the University of Chicago’s Dr. Bill Wysocki will:
Provide an overview of the GDC data life cycle
Review the GDC data quality strategy
Discuss GDC data quality submission and harmonization tools
Review GDC data quality metrics
Learn more about the GDC and its efforts to assure data quality by visiting https://datacommons.cancer.gov/
Presenter:
Bill Wysocki, Ph.D.
Dr. Bill Wysocki is the team lead of User Services and Outreach for the GDC at the University of Chicago.
DetailsOrganizerCBIITWhenMon, Nov 30, 2020 - 2:00 pm - 3:00 pmWhereOnline |
Register As the genomic data-specific repository within NCI's Cancer Research Data Commons (CRDC), the GDC provides cloud-based access to some of the largest and most comprehensive cancer genomic data sets as well as tools and workflows for data analysis. This monthly NCI Genomic Data Commons (GDC) webinar will give an overview of the GDC data quality strategy, the tools facilitating data quality in GDC data submission and harmonization, and the data quality metrics generated by the GDC. During this webinar, the University of Chicago’s Dr. Bill Wysocki will: Provide an overview of the GDC data life cycle Review the GDC data quality strategy Discuss GDC data quality submission and harmonization tools Review GDC data quality metrics Learn more about the GDC and its efforts to assure data quality by visiting https://datacommons.cancer.gov/ Presenter: Bill Wysocki, Ph.D. Dr. Bill Wysocki is the team lead of User Services and Outreach for the GDC at the University of Chicago. | 2020-11-30 14:00:00 | Online | Cancer,Data Resources | Online | CBIIT | 0 | NCI Genomic Data Commons Data Quality | |||
221 |
Description
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Meeting ID: 918 4307 1125
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Meeting ID: 918 4307 1125
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Meeting ID: 918 4307 1125
One tap mobile
+13017158592,,91843071125# US (Washington D.C)
+19294362866,,91843071125# US (New York)
Dial by your location
+1 301 715 8592 US (Washington D.C)
+1 929 436 2866 US (New York)
+1 312 626 6799 US (Chicago)
+1 346 248 7799 US (Houston)
+1 669 900 6833 US (San Jose)
+1 253 215 8782 US (Tacoma)
Meeting ID: 918 4307 1125
Find your local number: https://umd.zoom.us/zoomconference?m=Y08AKWEIVGj29FpUtKvDh6XrXwrgs53r&_x_zm_rtaid=vadt_ovMQsW3Gp_fB0ZwiA.1606755878229.ad1de988d4f60448e4883324bc60f7cb&_x_zm_rhtaid=741
Abstract: The spatial transcriptomics (ST) technology has enabled geographical profiling of tumor gene expression. However, each ST spot may detect mixture signals from diverse immune or malignant cells of unknown lineages, and local tissue densities may vary significantly across regions. Therefore, the decomposition of ST cell lineages remains a challenge that cannot be resolved by previous decomposition methods for fixed cell types in bulk tumors. We developed the Spatial Cell Estimator (SpaCE) to infer the cell identities and intercellular interactions for tumor ST data. Based on reliable cell lineage inference, SpaCE can further reveal how intercellular interactions affect the pathway and gene activities in distinct regions to modulate the cancer progression.
Bio: Beibei Ru is a postdoctoral research fellow in Dr. Peng Jiang’s Lab at NCI/CDSL. He is developing tools to mining spatial transcriptomics data. Prior to joining Peng’s Lab, Beibei did his PhD at the University of Hong Kong where he investigated the aberrant epigenetic regulation in cancer development.
DetailsWhenMon, Nov 30, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Register Meeting ID: 918 4307 1125 One tap mobile +13017158592,,91843071125# US (Washington D.C) +19294362866,,91843071125# US (New York) Dial by your location +1 301 715 8592 US (Washington D.C) +1 929 436 2866 US (New York) +1 312 626 6799 US (Chicago) +1 346 248 7799 US (Houston) +1 669 900 6833 US (San Jose) +1 253 215 8782 US (Tacoma) Meeting ID: 918 4307 1125 Find your local number: https://umd.zoom.us/zoomconference?m=Y08AKWEIVGj29FpUtKvDh6XrXwrgs53r&_x_zm_rtaid=vadt_ovMQsW3Gp_fB0ZwiA.1606755878229.ad1de988d4f60448e4883324bc60f7cb&_x_zm_rhtaid=741 Abstract: The spatial transcriptomics (ST) technology has enabled geographical profiling of tumor gene expression. However, each ST spot may detect mixture signals from diverse immune or malignant cells of unknown lineages, and local tissue densities may vary significantly across regions. Therefore, the decomposition of ST cell lineages remains a challenge that cannot be resolved by previous decomposition methods for fixed cell types in bulk tumors. We developed the Spatial Cell Estimator (SpaCE) to infer the cell identities and intercellular interactions for tumor ST data. Based on reliable cell lineage inference, SpaCE can further reveal how intercellular interactions affect the pathway and gene activities in distinct regions to modulate the cancer progression. Bio: Beibei Ru is a postdoctoral research fellow in Dr. Peng Jiang’s Lab at NCI/CDSL. He is developing tools to mining spatial transcriptomics data. Prior to joining Peng’s Lab, Beibei did his PhD at the University of Hong Kong where he investigated the aberrant epigenetic regulation in cancer development. | 2020-11-30 15:00:00 | Online | Single Cell Technologies,Cancer | Online | 0 | Examination of cell-lineage and inter-cell interactions from spatial transcriptomics data | ||||
209 |
Description
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The goal of ...Read More
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The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
This is very important! Please follow this link and https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you.
This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training.
For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule
DetailsWhenTue, Dec 01, 2020 - 11:00 am - 1:00 pmWhereOnline |
Register The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. This is very important! Please follow this link and https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you. This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training. For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule | 2020-12-01 11:00:00 | Online | Programming | Online | 0 | Software Carpentry: R for Reproducible Scientific Analysis | ||||
216 |
Description
Please Register to join us for a virtual workshop focused on defining the major challenges and promising new approaches for creating, curating, integrating, and querying across ultra-large chemistry databases.
This event is a Three half-days.
Overview
With the explosion of chemistry data resources capable of housing information on a billion or more molecules each, we are presented with tantalizing new opportunities and ...Read More
Please Register to join us for a virtual workshop focused on defining the major challenges and promising new approaches for creating, curating, integrating, and querying across ultra-large chemistry databases.
This event is a Three half-days.
Overview
With the explosion of chemistry data resources capable of housing information on a billion or more molecules each, we are presented with tantalizing new opportunities and challenges for integrating and mining information across multiple ultra-large databases spanning widely divergent sets of properties.
Preliminary list of speakers:
Marc Nicklaus, Ph.D.
Head, Computer-Aided Drug Design Group
Center for Cancer Research
National Cancer Institute
Gergely Zahoranszky-Kohalmi, Ph.D.
National Center for Advancing Translational Sciences
National Institutes of Health
Eric Stahlberg, Ph.D.
Director, Biomedical Informatics and Data Science
Frederick National Laboratory
G. Sitta Sittampalam, Ph.D.
National Center for Advancing Translational Sciences
National Institutes of Health Janelle Cortner, Ph.D.
Director, Data Management Program
National Cancer Institute
Contact: Janelle Cortner (cortnerj@nih.gov) with any questions.
DetailsOrganizerNIHWhenTue, Dec 01 - Thu, Dec 03, 2020 -11:00 am - 3:00 pmWhereOnline |
Please Register to join us for a virtual workshop focused on defining the major challenges and promising new approaches for creating, curating, integrating, and querying across ultra-large chemistry databases. This event is a Three half-days. Overview With the explosion of chemistry data resources capable of housing information on a billion or more molecules each, we are presented with tantalizing new opportunities and challenges for integrating and mining information across multiple ultra-large databases spanning widely divergent sets of properties. Preliminary list of speakers: Marc Nicklaus, Ph.D. Head, Computer-Aided Drug Design Group Center for Cancer Research National Cancer Institute Gergely Zahoranszky-Kohalmi, Ph.D. National Center for Advancing Translational Sciences National Institutes of Health Eric Stahlberg, Ph.D. Director, Biomedical Informatics and Data Science Frederick National Laboratory G. Sitta Sittampalam, Ph.D. National Center for Advancing Translational Sciences National Institutes of Health Janelle Cortner, Ph.D. Director, Data Management Program National Cancer Institute Contact: Janelle Cortner (cortnerj@nih.gov) with any questions. | 2020-12-01 11:00:00 | Online | Data Resources | Online | NIH | 0 | NIH Virtual Workshop on Ultra-Large Chemistry Databases | |||
87 |
Description
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In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants to better understand and prepare data, interpret results and findings, design and prepare studies, and better understand the results in published literature.
Part 1 will address considerations ...Read More
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In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants to better understand and prepare data, interpret results and findings, design and prepare studies, and better understand the results in published literature.
Part 1 will address considerations for the choice of statistical tests including the importance of study design and hypothesis, type of data and their distributions, and provide a brief review of important statistical features. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study.
Although you may attend only one part of this series, attending both parts will give you a better understanding of the most used statistical tests in the biomedical literature. You must register separately for Part 2 of this class series.
Instructor(s) -- External Vendor:
Ninet Sinaii
DetailsOrganizerNIH Training LibraryWhenTue, Dec 01, 2020 - 1:00 pm - 4:00 pmWhereOnline |
Register In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants to better understand and prepare data, interpret results and findings, design and prepare studies, and better understand the results in published literature. Part 1 will address considerations for the choice of statistical tests including the importance of study design and hypothesis, type of data and their distributions, and provide a brief review of important statistical features. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend only one part of this series, attending both parts will give you a better understanding of the most used statistical tests in the biomedical literature. You must register separately for Part 2 of this class series. Instructor(s) -- External Vendor: Ninet Sinaii | 2020-12-01 13:00:00 | Online | Statistics | Online | NIH Training Library | 0 | Overview of Common Statistical Tests: Part 1 | |||
217 |
Description
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Visualizing biological data can be challenging. Heat maps are useful for showing the basic distribution of gene expression but interactivity is needed for additional, in-depth analysis. Clustergrammer2 is a visualization tool that allows users to perform more refined clustering on cell lines and genes.
In this webinar, Dr. Nicolas Fernandez, who worked on the original ...Read More
Register
Visualizing biological data can be challenging. Heat maps are useful for showing the basic distribution of gene expression but interactivity is needed for additional, in-depth analysis. Clustergrammer2 is a visualization tool that allows users to perform more refined clustering on cell lines and genes.
In this webinar, Dr. Nicolas Fernandez, who worked on the original Clustergrammer and developed Clustergrammer2, will demonstrate how to use the latest version of this tool. Clustergrammer2, which is now available on Jupyter Notebook, can be used to explore and analyze various types of high-dimensional biological data (e.g., single-cell gene expression data) and share those results with colleagues.
Presenter:
Nicolas Fernandez, Ph.D.
Dr. Nicolas Fernandez is a senior computational biologist at https://vizgen.com/. He developed https://clustergrammer.readthedocs.io/clustergrammer2.html while at the Human Immune Monitoring Center at Mount Sinai as a computational scientist. The original https://clustergrammer.readthedocs.io/ was developed while Dr. Fernandez was a post-doctoral fellow at the Ma'ayan Laboratory at Mount Sinai.
DetailsOrganizerCBIITWhenWed, Dec 02, 2020 - 11:00 am - 12:00 pmWhereOnline |
Register Visualizing biological data can be challenging. Heat maps are useful for showing the basic distribution of gene expression but interactivity is needed for additional, in-depth analysis. Clustergrammer2 is a visualization tool that allows users to perform more refined clustering on cell lines and genes. In this webinar, Dr. Nicolas Fernandez, who worked on the original Clustergrammer and developed Clustergrammer2, will demonstrate how to use the latest version of this tool. Clustergrammer2, which is now available on Jupyter Notebook, can be used to explore and analyze various types of high-dimensional biological data (e.g., single-cell gene expression data) and share those results with colleagues. Presenter: Nicolas Fernandez, Ph.D. Dr. Nicolas Fernandez is a senior computational biologist at https://vizgen.com/. He developed https://clustergrammer.readthedocs.io/clustergrammer2.html while at the Human Immune Monitoring Center at Mount Sinai as a computational scientist. The original https://clustergrammer.readthedocs.io/ was developed while Dr. Fernandez was a post-doctoral fellow at the Ma'ayan Laboratory at Mount Sinai. | 2020-12-02 11:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Exploring High-Dimensional Biological Data with Clustergrammer2 | |||
88 |
Description
Register
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants to better understand and prepare data, interpret results and findings, design and prepare studies, and better understand the results in published literature.
Part 2 will describe the ...Read More
Register
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants to better understand and prepare data, interpret results and findings, design and prepare studies, and better understand the results in published literature.
Part 2 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and some nonparametric tests. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study.
Although you may attend only one part of this series, attending both parts will give you a better understanding of the most used statistical tests in the biomedical literature. You must register separately for Part 1 of this class series.
Instructor(s) -- External Vendor:
Ninet Sinaii
DetailsOrganizerNIH Training LibraryWhenWed, Dec 02, 2020 - 1:00 pm - 4:00 pmWhereOnline |
Register In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants to better understand and prepare data, interpret results and findings, design and prepare studies, and better understand the results in published literature. Part 2 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and some nonparametric tests. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend only one part of this series, attending both parts will give you a better understanding of the most used statistical tests in the biomedical literature. You must register separately for Part 1 of this class series. Instructor(s) -- External Vendor: Ninet Sinaii | 2020-12-02 13:00:00 | Online | Statistics | Online | NIH Training Library | 0 | Overview of Common Statistical Tests: Part 2 | |||
947 |
Description
Meeting Link
DNAnexus is a secure cloud-based platform designed for the analysis of genomic data. CCR has licensed this resource to allow CCR investigators easy access to intuitive bioinformatics workflows running on the Amazon Cloud.
This talk will demonstrate a series of applications specifically designed for the rapid analysis of RNA-Seq data, and ...Read More
Meeting Link
DNAnexus is a secure cloud-based platform designed for the analysis of genomic data. CCR has licensed this resource to allow CCR investigators easy access to intuitive bioinformatics workflows running on the Amazon Cloud.
This talk will demonstrate a series of applications specifically designed for the rapid analysis of RNA-Seq data, and highlight a number of utilities that allow highly interactive exploration of the mapped data.
Details will include:
1. A brief introduction to DNAnexus and the CCR accounts
2. Mapping of RNA-SEQ reads to a human or mouse transcriptome using the super fast salmon pseudo-aligner.
3. Gathering of read count data from multiple individual samples into a count matrix for subsequent differential expression analysis
4. Interactive data exploration and tertiary analysis via a number of different options, all using R-based shiny apps that can be easily navigated via graphical interfaces.
RegisterOrganizerBTEPWhenThu, Dec 03, 2020 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link DNAnexus is a secure cloud-based platform designed for the analysis of genomic data. CCR has licensed this resource to allow CCR investigators easy access to intuitive bioinformatics workflows running on the Amazon Cloud. This talk will demonstrate a series of applications specifically designed for the rapid analysis of RNA-Seq data, and highlight a number of utilities that allow highly interactive exploration of the mapped data. Details will include: 1. A brief introduction to DNAnexus and the CCR accounts 2. Mapping of RNA-SEQ reads to a human or mouse transcriptome using the super fast salmon pseudo-aligner. 3. Gathering of read count data from multiple individual samples into a count matrix for subsequent differential expression analysis 4. Interactive data exploration and tertiary analysis via a number of different options, all using R-based shiny apps that can be easily navigated via graphical interfaces. | 2020-12-03 13:00:00 | Online Webinar | Bulk RNA-seq | Online | Peter FitzGerald (GAU) | BTEP | 0 | RNA-Seq Weeks Event: Bulk RNA-Seq Analysis on the DNAnexus platform | ||
213 |
Description
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Registration is required to join this event. If you have not ...Read More
Register
Registration is required to join this event. If you have not registered, please do so now.
It has been established that over half of all cancer types are driven by DNA Copy Number Variants (CNVs). In this presentation, we will demonstrate the use of Nexus Copy Number software for detection of CNVs from various microarray and NGS platforms and performance of cohort analysis. In particular, we will use data from The Cancer Genome Atlas (TCGA) that has been manually curated and available to NCI personnel through the NexusDB database to showcase some of the advanced statistical and visualization capabilities of Nexus Copy Number. This will include identification of recurrent aberrations in different cancer types and sub-populations, statistical comparison analysis between different sets of samples, identification of regions with high predictive power for survival analysis and many other features. Subsequent sessions will expand on integrating expression and sequence variant data into the analysis.
DetailsOrganizerNCIWhenThu, Dec 03, 2020 - 1:00 pm - 2:00 pmWhereOnline |
Register Registration is required to join this event. If you have not registered, please do so now. It has been established that over half of all cancer types are driven by DNA Copy Number Variants (CNVs). In this presentation, we will demonstrate the use of Nexus Copy Number software for detection of CNVs from various microarray and NGS platforms and performance of cohort analysis. In particular, we will use data from The Cancer Genome Atlas (TCGA) that has been manually curated and available to NCI personnel through the NexusDB database to showcase some of the advanced statistical and visualization capabilities of Nexus Copy Number. This will include identification of recurrent aberrations in different cancer types and sub-populations, statistical comparison analysis between different sets of samples, identification of regions with high predictive power for survival analysis and many other features. Subsequent sessions will expand on integrating expression and sequence variant data into the analysis. | 2020-12-03 13:00:00 | Online | Online | NCI | 0 | Overview of CNV Analysis Using Nexus Copy Number Software | ||||
948 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on December 7th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on December 10th.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Dec 03 - Thu, Dec 10, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin on December 7th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on December 10th. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-12-03 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
225 |
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Meeting ID: 161 756 1452
Passcode: 586729
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Meeting ID: 161 756 1452
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Find your local number: https://nih.zoomgov.com/zoomconference?m=9FmUE6fZIDp6Tv-Dngyg2Kooz1qSAlvs
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...Read More
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Meeting ID: 161 756 1452
Passcode: 586729
One tap mobile
+16692545252,,1617561452#,,,,,,0#,,586729# US (San Jose)
+16468287666,,1617561452#,,,,,,0#,,586729# US (New York)
Dial by your location
+1 669 254 5252 US (San Jose)
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Meeting ID: 161 756 1452
Passcode: 586729
Find your local number: https://nih.zoomgov.com/zoomconference?m=9FmUE6fZIDp6Tv-Dngyg2Kooz1qSAlvs
Join by H.323
161.199.138.10 (US West)
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Meeting ID: 161 756 1452
Passcode: 586729
Speakers:
Sanchita Bhattacharya, Bioinformatics Project Leader
Barker Computational Health Sciences Institute(BCHSI), University of California, San Francisco (UCSF)
Zicheng Hu, Ph.D., Research Scientist
Barker Computational Health Sciences Institute(BCHSI), University of California, San Francisco (UCSF)
Abstract:
In the field of clinical research, we are just beginning to explore repurposing the open-access datasets to build a knowledge base, gain insight into novel discoveries, and generate data-driven hypotheses that were not originally formulated in the published studies. This presentation will showcase the significant efforts in the meta-analysis of open-access immunological studies and secondary analysis of clinical trial data from NIAID-DAIT funded ImmPort database. We are also going to present a case study on analyzing cytometry data using deep learning models, recently published in PNAS. https://www.pnas.org/content/117/35/21373
DetailsOrganizerNIAIDWhenFri, Dec 04, 2020 - 12:00 pm - 1:00 pmWhereOnline |
Register Meeting ID: 161 756 1452 Passcode: 586729 One tap mobile +16692545252,,1617561452#,,,,,,0#,,586729# US (San Jose) +16468287666,,1617561452#,,,,,,0#,,586729# US (New York) Dial by your location +1 669 254 5252 US (San Jose) +1 646 828 7666 US (New York) Meeting ID: 161 756 1452 Passcode: 586729 Find your local number: https://nih.zoomgov.com/zoomconference?m=9FmUE6fZIDp6Tv-Dngyg2Kooz1qSAlvs Join by H.323 161.199.138.10 (US West) 161.199.136.10 (US East) Meeting ID: 161 756 1452 Passcode: 586729 Speakers: Sanchita Bhattacharya, Bioinformatics Project Leader Barker Computational Health Sciences Institute(BCHSI), University of California, San Francisco (UCSF) Zicheng Hu, Ph.D., Research Scientist Barker Computational Health Sciences Institute(BCHSI), University of California, San Francisco (UCSF) Abstract: In the field of clinical research, we are just beginning to explore repurposing the open-access datasets to build a knowledge base, gain insight into novel discoveries, and generate data-driven hypotheses that were not originally formulated in the published studies. This presentation will showcase the significant efforts in the meta-analysis of open-access immunological studies and secondary analysis of clinical trial data from NIAID-DAIT funded ImmPort database. We are also going to present a case study on analyzing cytometry data using deep learning models, recently published in PNAS. https://www.pnas.org/content/117/35/21373 | 2020-12-04 12:00:00 | Online | Data Science | Online | NIAID | 0 | Big Data In Immunology - sharing, dissemination, and repurposing | |||
139 |
DescriptionDetailsOrganizerCDSLWhenMon, Dec 07, 2020 - 10:00 am - 11:00 amWhereOnline |
Register | 2020-12-07 10:00:00 | Single Cell Technologies | Online | CDSL | 0 | Louvain clustering and its application to single cell RNAseq data analysis | ||||
224 |
Description
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Meeting ID: 918 4307 1125
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Meeting ID: 918 4307 1125
Find your local number: Read More
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Meeting ID: 918 4307 1125
One tap mobile
+13017158592,,91843071125# US (Washington D.C)
+19294362866,,91843071125# US (New York)
Dial by your location
+1 301 715 8592 US (Washington D.C)
+1 929 436 2866 US (New York)
+1 312 626 6799 US (Chicago)
+1 346 248 7799 US (Houston)
+1 669 900 6833 US (San Jose)
+1 253 215 8782 US (Tacoma)
Meeting ID: 918 4307 1125
Find your local number: https://umd.zoom.us/zoomconference?m=Y08AKWEIVGj29FpUtKvDh6XrXwrgs53r&_x_zm_rtaid=zSLTbW9bTi-h6a8E8WmlaQ.1607007521497.e7de5bcb28f707e396be7385171ba408&_x_zm_rhtaid=715
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Meeting ID: 918 4307 1125
Abstract:
Today's large biological datasets open novel opportunities in basic science and medicine. While inquiry of each dataset separately often provides insights, integrative analysis may reveal more holistic, systems-level findings. We demonstrate the power of integrated analysis in cancer on two levels: (1) in joint analysis of multiple omics for the same cancer; (2) in identifying and ranking driver genes in an individual's tumor based on expression and mutation profiles. In both cases, we develop novel methods and observe a clear advantage of the integration.
Bio:
Ron Shamir received his PhD from UC Berkeley. He is a Sackler professor of Bioinformatics in the Blavatnik School of Computer Science at Tel Aviv University (TAU). His group develops algorithms in bioinformatics for understanding the genome and human disease. Software tools developed by Shamir’s group are in use around the world. Shamir is the founder and head of the Edmond J. Safra Center for Bioinformatics at TAU. He has published more than 300 scientific works, including 17 books and edited volumes, and has supervised more than 50 research students. Fifteen of his past students hold academic positions. He was on the founding steering committee of RECOMB, co-founded the Israeli Society of Bioinformatics and Computational Biology, and was society president. He is a recipient of the Landau Prize in Bioinformatics, the Kadar family prize for excellence in research, and a Fellow of the ISCB and the ACM.
DetailsOrganizerCDSLWhenMon, Dec 07, 2020 - 11:00 am - 12:00 pmWhereOnline |
Register Meeting ID: 918 4307 1125 One tap mobile +13017158592,,91843071125# US (Washington D.C) +19294362866,,91843071125# US (New York) Dial by your location +1 301 715 8592 US (Washington D.C) +1 929 436 2866 US (New York) +1 312 626 6799 US (Chicago) +1 346 248 7799 US (Houston) +1 669 900 6833 US (San Jose) +1 253 215 8782 US (Tacoma) Meeting ID: 918 4307 1125 Find your local number: https://umd.zoom.us/zoomconference?m=Y08AKWEIVGj29FpUtKvDh6XrXwrgs53r&_x_zm_rtaid=zSLTbW9bTi-h6a8E8WmlaQ.1607007521497.e7de5bcb28f707e396be7385171ba408&_x_zm_rhtaid=715 Join by H.323 162.255.37.11 (US West) 162.255.36.11 (US East) 115.114.131.7 (India Mumbai) 115.114.115.7 (India Hyderabad) 213.19.144.110 (Amsterdam Netherlands) 213.244.140.110 (Germany) 103.122.166.55 (Australia) 149.137.40.110 (Singapore) 64.211.144.160 (Brazil) 69.174.57.160 (Canada) 207.226.132.110 (Japan) Meeting ID: 918 4307 1125 Abstract: Today's large biological datasets open novel opportunities in basic science and medicine. While inquiry of each dataset separately often provides insights, integrative analysis may reveal more holistic, systems-level findings. We demonstrate the power of integrated analysis in cancer on two levels: (1) in joint analysis of multiple omics for the same cancer; (2) in identifying and ranking driver genes in an individual's tumor based on expression and mutation profiles. In both cases, we develop novel methods and observe a clear advantage of the integration. Bio: Ron Shamir received his PhD from UC Berkeley. He is a Sackler professor of Bioinformatics in the Blavatnik School of Computer Science at Tel Aviv University (TAU). His group develops algorithms in bioinformatics for understanding the genome and human disease. Software tools developed by Shamir’s group are in use around the world. Shamir is the founder and head of the Edmond J. Safra Center for Bioinformatics at TAU. He has published more than 300 scientific works, including 17 books and edited volumes, and has supervised more than 50 research students. Fifteen of his past students hold academic positions. He was on the founding steering committee of RECOMB, co-founded the Israeli Society of Bioinformatics and Computational Biology, and was society president. He is a recipient of the Landau Prize in Bioinformatics, the Kadar family prize for excellence in research, and a Fellow of the ISCB and the ACM. | 2020-12-07 11:00:00 | Online | Cancer,Data Science | Online | CDSL | 0 | Computational integration in cancer analysis: from multi-omic to personalized drivers | |||
210 |
Description
Register
The goal of these workshops ...Read More
Register
The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
This is very important! Please follow this link and https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you.
This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training.
For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule
DetailsWhenTue, Dec 08, 2020 - 11:00 am - 1:00 pmWhereOnline |
Register The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. This is very important! Please follow this link and https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you. This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training. For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule | 2020-12-08 11:00:00 | Online | Programming | Online | 0 | Software Carpentry: R for Reproducible Scientific Analysis | ||||
178 |
Description
Send email to staff@hpc.nih.gov to get the Zoom URL
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss ...Read More
Send email to staff@hpc.nih.gov to get the Zoom URL
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
DetailsOrganizerHPC BiowulfWhenWed, Dec 09, 2020 - 1:00 pm - 3:00 pmWhereOnline |
Send email to staff@hpc.nih.gov to get the Zoom URL All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. | 2020-12-09 13:00:00 | NIH High Performance Unix Cluster Biowulf | Online | HPC Biowulf | 0 | Zoom-In Consult with Biowulf Staff | ||||
196 |
Description
Register
Single cell sequencing has reopened the definition of a cell’s identity and the ways in which that identity is regulated by the cell’s molecular circuitry. Learn the types of studies that are well suited for single cell sequencing analysis as well as how to design a single cell experiment. This session will also walk through the steps of a Single Cell RNA-Sequence (...Read More
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Single cell sequencing has reopened the definition of a cell’s identity and the ways in which that identity is regulated by the cell’s molecular circuitry. Learn the types of studies that are well suited for single cell sequencing analysis as well as how to design a single cell experiment. This session will also walk through the steps of a Single Cell RNA-Sequence (scRNA-seq) processing, common analysis strategies, and state-of-the-art analysis methods using R.
DetailsOrganizerNIH Training LibraryWhenThu, Dec 10, 2020 - 1:00 pm - 2:00 pmWhereOnline |
Register Single cell sequencing has reopened the definition of a cell’s identity and the ways in which that identity is regulated by the cell’s molecular circuitry. Learn the types of studies that are well suited for single cell sequencing analysis as well as how to design a single cell experiment. This session will also walk through the steps of a Single Cell RNA-Sequence (scRNA-seq) processing, common analysis strategies, and state-of-the-art analysis methods using R. | 2020-12-10 13:00:00 | Online | Single Cell Technologies | Online | NIH Training Library | 0 | Strategies and Methods in scRNA-seq Data Analysis | |||
228 |
Description
Register
Dr. Kenny is a statistical and population geneticist whose research is focused on accelerating the integration of genomics into clinical care, especially in diverse and underserved populations. She leads a multidisciplinary team of geneticists, computer scientists, clinicians, and other medical professionals, working on problems at the interface of artificial intelligence, very large-scale genomics, and medicine. Dr. Kenny is the ...Read More
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Dr. Kenny is a statistical and population geneticist whose research is focused on accelerating the integration of genomics into clinical care, especially in diverse and underserved populations. She leads a multidisciplinary team of geneticists, computer scientists, clinicians, and other medical professionals, working on problems at the interface of artificial intelligence, very large-scale genomics, and medicine. Dr. Kenny is the Founding Director of the Institute for Genomic Health and an Associate Professor of Medicine and Genetics at the Ichan School of Medicine at Mount Sinai. She is Principal Investigator of six large international programs focused on genomic research, medicine, and health, and is a scientific advisor to many genomic and genomic medicine initiatives in government, non-profit, and industry arenas.
The lecture is part of the Genomics and Health Disparities Lecture Series, a collaborative effort focused on exploring the role of genomics in achieving health equity. It is co-sponsored by the National Heart, Lung, and Blood Institute; the National Human Genome Research Institute; the National Institute of Diabetes and Digestive and Kidney Diseases; the National Institute on Minority Health and Health Disparities; and the Office of Minority Health and Health Equity at the Food and Drug Administration.
The talk will also be recorded and made available for later viewing on the lecture series website at https://www.genome.gov/event-calendar/Genomics-Health-Disparities-Lecture-Series
Sign Language Interpreters can be provided. Individuals with disabilities who need reasonable accommodation to participate in this event should contact Dr. Jamil Scott, NHGRI, at Jamil.Scott@nih.gov, and/or the Federal Relay (1-800-877-8339).
DetailsOrganizerNHGRIWhenThu, Dec 10, 2020 - 3:00 pm - 4:00 pmWhereOnline |
Register Dr. Kenny is a statistical and population geneticist whose research is focused on accelerating the integration of genomics into clinical care, especially in diverse and underserved populations. She leads a multidisciplinary team of geneticists, computer scientists, clinicians, and other medical professionals, working on problems at the interface of artificial intelligence, very large-scale genomics, and medicine. Dr. Kenny is the Founding Director of the Institute for Genomic Health and an Associate Professor of Medicine and Genetics at the Ichan School of Medicine at Mount Sinai. She is Principal Investigator of six large international programs focused on genomic research, medicine, and health, and is a scientific advisor to many genomic and genomic medicine initiatives in government, non-profit, and industry arenas. The lecture is part of the Genomics and Health Disparities Lecture Series, a collaborative effort focused on exploring the role of genomics in achieving health equity. It is co-sponsored by the National Heart, Lung, and Blood Institute; the National Human Genome Research Institute; the National Institute of Diabetes and Digestive and Kidney Diseases; the National Institute on Minority Health and Health Disparities; and the Office of Minority Health and Health Equity at the Food and Drug Administration. The talk will also be recorded and made available for later viewing on the lecture series website at https://www.genome.gov/event-calendar/Genomics-Health-Disparities-Lecture-Series Sign Language Interpreters can be provided. Individuals with disabilities who need reasonable accommodation to participate in this event should contact Dr. Jamil Scott, NHGRI, at Jamil.Scott@nih.gov, and/or the Federal Relay (1-800-877-8339). | 2020-12-10 15:00:00 | Online | Omics | Online | NHGRI | 0 | Population Genetics in an Era of Genomic Health | |||
949 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on December 11th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on December 17th.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenFri, Dec 11 - Thu, Dec 17, 2020 -2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin this course ends on December 11th. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at 2pm on December 17th. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE to your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH user name and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2020-12-11 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP – Tutorial & Discussion | ||
211 |
Description
Register
The goal of these workshops ...Read More
Register
The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
This is very important! Please follow this link and https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you.
This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training.
For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule
DetailsWhenTue, Dec 15, 2020 - 11:00 am - 1:00 pmWhereOnline |
Register The goal of these workshops is to teach novice programmers to write modular code and best practices for using R for data analysis. R is commonly used in many scientific disciplines for statistical analysis and its array of third-party packages. We find that many scientists who come to Software Carpentry workshops use R and want to learn more. The emphasis of these materials is to give attendees a strong foundation in the fundamentals of R, and to teach best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. This is very important! Please follow this link and https://rstudio-education.github.io/hopr/starting.html onto your computer before class. If you have trouble doing this please send email to ncibtep@nih.gov and we will help you. This class is held weekly for 6 weeks. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to this training. For more information and class updates, please see the GitHub page for the class at https://abcsfrederick.github.io/Intro-to-R-Fall2020/Schedule | 2020-12-15 11:00:00 | Online | Programming | Online | 0 | Software Carpentry: R for Reproducible Scientific Analysis | ||||
950 |
Description
Recording
Slides are here.
Hands-on portion is here.
Bioconductor is a large, NIH-funded project that provides tools and data resources for the analysis and comprehension of high-throughput biological data. Bioconductor uses the R statistical programming language and is open source, open development, ...Read More
Recording
Slides are here.
Hands-on portion is here.
Bioconductor is a large, NIH-funded project that provides tools and data resources for the analysis and comprehension of high-throughput biological data. Bioconductor uses the R statistical programming language and is open source, open development, and free to use. With over 500,000 downloads per year, 1000 active developers, the project continues to grow. Our community hosts three large conferences per year (North America, Asia, Europe), has extensive documentation, and is taught worldwide. The project espouses reproducible research processes, transparency and open access, and software development best practices. In this talk, Sean will introduce the Bioconductor project, point to a few resources for further learning and training and attempt to leave time for questions and discussion.
bioconductor.org
seandavi.github.io
RegisterOrganizerBTEPWhenWed, Dec 16, 2020 - 10:00 am - 11:00 amWhereOnline Webinar |
Recording Slides are here. Hands-on portion is here. Bioconductor is a large, NIH-funded project that provides tools and data resources for the analysis and comprehension of high-throughput biological data. Bioconductor uses the R statistical programming language and is open source, open development, and free to use. With over 500,000 downloads per year, 1000 active developers, the project continues to grow. Our community hosts three large conferences per year (North America, Asia, Europe), has extensive documentation, and is taught worldwide. The project espouses reproducible research processes, transparency and open access, and software development best practices. In this talk, Sean will introduce the Bioconductor project, point to a few resources for further learning and training and attempt to leave time for questions and discussion. bioconductor.org seandavi.github.io | 2020-12-16 10:00:00 | Online Webinar | Online | BTEP | 0 | Bioconductor: Tools and Data Resources for Analysis of High-Throughput Biological Data | ||||
951 |
Description
Recording
In this final seminar of "BTEP RNA-Seq Weeks", the major steps of bulk RNA-seq analysis will be presented, utilizing tools (NIDAP) available to CCR researchers.The discussion will focus on a high-level description of how scientists can use these tools to derive conclusions from next-generation sequencing data. The major steps in this analysis will be ...Read More
Recording
In this final seminar of "BTEP RNA-Seq Weeks", the major steps of bulk RNA-seq analysis will be presented, utilizing tools (NIDAP) available to CCR researchers.The discussion will focus on a high-level description of how scientists can use these tools to derive conclusions from next-generation sequencing data. The major steps in this analysis will be described and various results and visualizations that can be produced from analyzed datasets will be presented and explained.
This talk will be useful to those hoping to better understand the bioinformatic workflows behind bulk RNA-seq analysis, as well as show the kinds of research results and visualizations that can be generated using some of the tools available to NIH researchers.
RegisterOrganizerBTEPWhenThu, Dec 17, 2020 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Recording In this final seminar of "BTEP RNA-Seq Weeks", the major steps of bulk RNA-seq analysis will be presented, utilizing tools (NIDAP) available to CCR researchers.The discussion will focus on a high-level description of how scientists can use these tools to derive conclusions from next-generation sequencing data. The major steps in this analysis will be described and various results and visualizations that can be produced from analyzed datasets will be presented and explained. This talk will be useful to those hoping to better understand the bioinformatic workflows behind bulk RNA-seq analysis, as well as show the kinds of research results and visualizations that can be generated using some of the tools available to NIH researchers. Slides Part One Slides Part Two | 2020-12-17 13:00:00 | Online Webinar | Bulk RNA-seq | Online | ,Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis: From Data to Results to Visualization | ||
256 |
Description
Register
Do you need the latest information about oncogenes, tumor suppressors, and cancer drivers? CancerMine scans the literature monthly for new gene cancer mentions and adds them to its large and growing database of gene roles in cancer.
To ...Read More
Register
Do you need the latest information about oncogenes, tumor suppressors, and cancer drivers? CancerMine scans the literature monthly for new gene cancer mentions and adds them to its large and growing database of gene roles in cancer.
To learn how you can quickly search and access the information in CancerMine, attend a Free, 30-minute webinar This Afternoon at 3:00 p.m.
DetailsOrganizerScientific Library at FrederickWhenThu, Dec 17, 2020 - 3:00 pm - 3:30 pmWhereOnline |
Register Do you need the latest information about oncogenes, tumor suppressors, and cancer drivers? CancerMine scans the literature monthly for new gene cancer mentions and adds them to its large and growing database of gene roles in cancer. To learn how you can quickly search and access the information in CancerMine, attend a Free, 30-minute webinar This Afternoon at 3:00 p.m. | 2020-12-17 15:00:00 | Online | Cancer | Online | Scientific Library at Frederick | 0 | CancerMine Webinar | |||
257 |
Description
Register
Meeting number: 172 414 1612 Meeting Password: AmWdZgu*775
Please see information below about the upcoming SS/SC Brown Bag Seminar on next Monday December 21, 2020. Slides are already available on our website https://ccrod....Read More
Register
Meeting number: 172 414 1612 Meeting Password: AmWdZgu*775
Please see information below about the upcoming SS/SC Brown Bag Seminar on next Monday December 21, 2020. Slides are already available on our website https://ccrod.cancer.gov/confluence/display/CCRSSSCArchive/Brown+Bag+Seminars
Speaker: Maxwell Lee
DetailsOrganizerCDSLWhenMon, Dec 21, 2020 - 10:00 am - 11:00 amWhereOnline |
Register Meeting number: 172 414 1612 Meeting Password: AmWdZgu*775 Please see information below about the upcoming SS/SC Brown Bag Seminar on next Monday December 21, 2020. Slides are already available on our website https://ccrod.cancer.gov/confluence/display/CCRSSSCArchive/Brown+Bag+Seminars Speaker: Maxwell Lee | 2020-12-21 10:00:00 | Online | Single Cell Technologies | Online | CDSL | 0 | Louvain clustering and its application to single cell RNAseq data analysis | |||
271 |
Description
Abstract:
Phenotypic heterogeneity in cancer is often caused by different patterns of genetic alterations. Understanding such phenotype-genotype relationships is fundamental for the advance of personalized medicine. In this talk, I will present a computational method, named NETPHIX (NETwork-to-PHenotype association with eXclusivity) to identify subnetworks of genes whose genetic alterations are associated with drug response or other continuous cancer phenotypes. Leveraging interaction information among genes and properties of cancer mutations such as mutual exclusivity, we model ...Read More
Abstract:
Phenotypic heterogeneity in cancer is often caused by different patterns of genetic alterations. Understanding such phenotype-genotype relationships is fundamental for the advance of personalized medicine. In this talk, I will present a computational method, named NETPHIX (NETwork-to-PHenotype association with eXclusivity) to identify subnetworks of genes whose genetic alterations are associated with drug response or other continuous cancer phenotypes. Leveraging interaction information among genes and properties of cancer mutations such as mutual exclusivity, we model the problem as a variant of connected set cover and obtain a subnetwork of associated genes using integer linear program (ILP) optimization. Applied to a large-scale drug screening dataset, NETPHIX uncovered gene modules significantly associated with responses for many drugs. We show that the identified modules provide important insights into drug action and can also be leveraged to suggest drug combinations.
Bio:
Dr. Yoo-Ah Kim is a staff scientist in the National Center for Biotechnology Information at National Institutes of Health (NCBI/NLM/NIH). Her current research focuses on algorithmic approaches in cancer network biology. Before joining NIH in 2008, she received her PhD degree in Computer Science from the University of Maryland, College Park in 2005 and was with the CSE department at the University of Connecticut, working on combinatorial optimization and graph algorithms.
DetailsOrganizerCDSLWhenMon, Jan 04, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Abstract: Phenotypic heterogeneity in cancer is often caused by different patterns of genetic alterations. Understanding such phenotype-genotype relationships is fundamental for the advance of personalized medicine. In this talk, I will present a computational method, named NETPHIX (NETwork-to-PHenotype association with eXclusivity) to identify subnetworks of genes whose genetic alterations are associated with drug response or other continuous cancer phenotypes. Leveraging interaction information among genes and properties of cancer mutations such as mutual exclusivity, we model the problem as a variant of connected set cover and obtain a subnetwork of associated genes using integer linear program (ILP) optimization. Applied to a large-scale drug screening dataset, NETPHIX uncovered gene modules significantly associated with responses for many drugs. We show that the identified modules provide important insights into drug action and can also be leveraged to suggest drug combinations. Bio: Dr. Yoo-Ah Kim is a staff scientist in the National Center for Biotechnology Information at National Institutes of Health (NCBI/NLM/NIH). Her current research focuses on algorithmic approaches in cancer network biology. Before joining NIH in 2008, she received her PhD degree in Computer Science from the University of Maryland, College Park in 2005 and was with the CSE department at the University of Connecticut, working on combinatorial optimization and graph algorithms. | 2021-01-04 15:00:00 | Online | Cancer,Bioinformatics Software | Online | CDSL | 0 | Identifying Drug Sensitivity Subnetworks with NETPHIX | |||
258 |
Description
Register
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and ...Read More
Register
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, participants should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; and describe how to save data in R.
Participants are encouraged to install and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
DetailsOrganizerNIH Training LibraryWhenWed, Jan 06, 2021 - 1:00 pm - 2:15 pmWhereOnline |
Register This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, participants should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; and describe how to save data in R. Participants are encouraged to install and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. | 2021-01-06 13:00:00 | Online | Programming | Online | NIH Training Library | 0 | Introduction to R Data Types | |||
263 |
Description
Presenter:
Gary Patti, Ph.D.
Departments of Chemistry, Genetics, and Medicine
Washington University in St. Louis
It is well established that the metabolism of cancer cells is reprogrammed to support the demands of rapid proliferation. However, a comprehensive map of metabolic adaptations that occur as a result of malignant transformation has yet to be achieved. This talk will focus on the application of mass spectrometry-based metabolomics to broaden our understanding of metabolic alterations in cancer, ...Read More
Presenter:
Gary Patti, Ph.D.
Departments of Chemistry, Genetics, and Medicine
Washington University in St. Louis
It is well established that the metabolism of cancer cells is reprogrammed to support the demands of rapid proliferation. However, a comprehensive map of metabolic adaptations that occur as a result of malignant transformation has yet to be achieved. This talk will focus on the application of mass spectrometry-based metabolomics to broaden our understanding of metabolic alterations in cancer, with the ultimate goal of identifying biochemical liabilities that can be exploited therapeutically. To increase insight, data from multiple experimental paradigms of metabolomics will be described in detail, including (i) global, untargeted profiling, (ii) isotope-tracer analysis, and (iii) dose-response metabolomics. Dr. Patti will dedicate particular attention to computational resources available for data processing, such as those supported by the NIH Metabolomics Common Fund. Dr. Patti will also review the workflow covering metabolic profiling to drug selection and target validation in an imals and discuss opportunities for polypharmacology.
Event contacts: Krista Zanetti, zanettik@mail.nih.gov and Catherine Yu, catherine.yu@nih.gov
DetailsOrganizerNIH Metabolomics Scientific Interest GroupWhenThu, Jan 07, 2021 - 11:00 am - 12:00 pmWhereOnline |
Presenter: Gary Patti, Ph.D. Departments of Chemistry, Genetics, and Medicine Washington University in St. Louis It is well established that the metabolism of cancer cells is reprogrammed to support the demands of rapid proliferation. However, a comprehensive map of metabolic adaptations that occur as a result of malignant transformation has yet to be achieved. This talk will focus on the application of mass spectrometry-based metabolomics to broaden our understanding of metabolic alterations in cancer, with the ultimate goal of identifying biochemical liabilities that can be exploited therapeutically. To increase insight, data from multiple experimental paradigms of metabolomics will be described in detail, including (i) global, untargeted profiling, (ii) isotope-tracer analysis, and (iii) dose-response metabolomics. Dr. Patti will dedicate particular attention to computational resources available for data processing, such as those supported by the NIH Metabolomics Common Fund. Dr. Patti will also review the workflow covering metabolic profiling to drug selection and target validation in an imals and discuss opportunities for polypharmacology. Event contacts: Krista Zanetti, zanettik@mail.nih.gov and Catherine Yu, catherine.yu@nih.gov | 2021-01-07 11:00:00 | Online | Online | NIH Metabolomics Scientific Interest Group | 0 | Probing Cancer Metabolism for Therapeutic Opportunities | ||||
272 |
Description
Abstract:
Data sharing is essential for the acceleration of science, but privacy concerns need to be addressed before clinical data can be properly shared for research. I will briefly introduce the main issues in clinical data sharing, as perceived by researchers and patients, and describe how a combination of privacy technology (i.e., methods that make it difficult to identify a specific patient whose data are going to be shared) and policy can ...Read More
Abstract:
Data sharing is essential for the acceleration of science, but privacy concerns need to be addressed before clinical data can be properly shared for research. I will briefly introduce the main issues in clinical data sharing, as perceived by researchers and patients, and describe how a combination of privacy technology (i.e., methods that make it difficult to identify a specific patient whose data are going to be shared) and policy can help strike a balance between data utility for researchers and privacy protection for the patient and healthcare institutions.
Speaker:
Lucila Ohno-Machado, MD, PhD, MBA
Professor of Medicine
Chair, Department of Biomedical Informatics
Associate Dean for Informatics and Technology
University of California San Diego
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DetailsOrganizerNIAIDWhenFri, Jan 08, 2021 - 12:00 pm - 1:00 pmWhereOnline |
Abstract: Data sharing is essential for the acceleration of science, but privacy concerns need to be addressed before clinical data can be properly shared for research. I will briefly introduce the main issues in clinical data sharing, as perceived by researchers and patients, and describe how a combination of privacy technology (i.e., methods that make it difficult to identify a specific patient whose data are going to be shared) and policy can help strike a balance between data utility for researchers and privacy protection for the patient and healthcare institutions. Speaker: Lucila Ohno-Machado, MD, PhD, MBA Professor of Medicine Chair, Department of Biomedical Informatics Associate Dean for Informatics and Technology University of California San Diego Join ZoomGov Meeting https://nih.zoomgov.com/j/1617561452?pwd=bE5YOVgrL2tHbFZidUJQOWZzdGlpZz09 Meeting ID: 161 756 1452 Passcode: 586729 One tap mobile +16692545252,,1617561452#,,,,,,0#,,586729# US (San Jose) +16468287666,,1617561452#,,,,,,0#,,586729# US (New York) Dial by your location +1 669 254 5252 US (San Jose) +1 646 828 7666 US (New York) Meeting ID: 161 756 1452 Passcode: 586729 Find your local number: https://nih.zoomgov.com/u/ayFfvRtd4 Join by H.323 161.199.138.10 (US West) 161.199.136.10 (US East) Meeting ID: 161 756 1452 Passcode: 586729 ***** To follow the NIAID Data Science Interest Group, subscribe to the listserv by sending an email to LISTSERV@LIST.NIH.GOV with the following text in the message body (Replace “FirstName/LastName” with your name): subscribe NIAID-DATASCIENCE-INTEREST-GROUP FirstName LastName ****** For questions, please contact Steve Tsang <steve.tsang@nih.gov> | 2021-01-08 12:00:00 | Online | Online | NIAID | 0 | Privacy concerns on sharing clinical data for research: Key considerations and how to address them | ||||
265 |
Description
Abstract:
The NIH Science and Technology Research Infrastructure for Discovery, Experimentation, and Sustainability (STRIDES) Initiative allows NIH to explore the use of cloud environments to streamline NIH data use by partnering with commercial providers. NIH’s STRIDES Initiative provides cost-effective access to industry-leading partners to help advance biomedical research. These partnerships enable access to rich datasets and advanced computational infrastructure, tools, and services. The first of two STRIDES webinars, this meeting will focus on the ...Read More
Abstract:
The NIH Science and Technology Research Infrastructure for Discovery, Experimentation, and Sustainability (STRIDES) Initiative allows NIH to explore the use of cloud environments to streamline NIH data use by partnering with commercial providers. NIH’s STRIDES Initiative provides cost-effective access to industry-leading partners to help advance biomedical research. These partnerships enable access to rich datasets and advanced computational infrastructure, tools, and services. The first of two STRIDES webinars, this meeting will focus on the NIH STRIDES Initiative as a whole. In the meeting we will provide an overview of the benefits of STRIDES, as well as how individuals and organizations can engage with STRIDES. We’ll also detail a few of STRIDES’ early successes. https://datascience.nih.gov/strides
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DetailsOrganizerNCI Containers and Workflows Interest GroupWhenFri, Jan 08, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Abstract: The NIH Science and Technology Research Infrastructure for Discovery, Experimentation, and Sustainability (STRIDES) Initiative allows NIH to explore the use of cloud environments to streamline NIH data use by partnering with commercial providers. NIH’s STRIDES Initiative provides cost-effective access to industry-leading partners to help advance biomedical research. These partnerships enable access to rich datasets and advanced computational infrastructure, tools, and services. The first of two STRIDES webinars, this meeting will focus on the NIH STRIDES Initiative as a whole. In the meeting we will provide an overview of the benefits of STRIDES, as well as how individuals and organizations can engage with STRIDES. We’ll also detail a few of STRIDES’ early successes. https://datascience.nih.gov/strides JOIN WEBEX MEETING https://cbiit.webex.com/cbiit/j.php?MTID=mc85fd4f00b48b1767e287901319a42cd Meeting number (access code): 180 425 7227 Meeting password: 6pSMQPBS$43 JOIN BY PHONE 1-650-479-3207 Call-in toll number (US/Canada) JOIN FROM A VIDEO SYSTEM OR APPLICATION Dial sip:1804257227@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join using Microsoft Lync or Microsoft Skype for Business Dial sip:1804257227.cbiit@lync.webex.com If you are a host, click here to view host information: https://cbiit.webex.com/cbiit/j.php?MTID=m9af889068bcd9e7f01daadfa71756dc6 Can't join the meeting? Contact support here: https://cbiit.webex.com/cbiit/mc | 2021-01-08 15:00:00 | Online | Cloud | Online | NCI Containers and Workflows Interest Group | 0 | Introduction to the NIH STRIDES Initiative | |||
264 |
Description
CBIIT provides two managed cloud environments for NCI. Cloud One is a managed Amazon Web Services platform and in full production with FISMA Moderate ATO. Cloud Two is a managed Google Cloud Platform with FISMA Moderate ATO in progress. It is expected to be ready in Spring 2021.
Attend the January Read More
CBIIT provides two managed cloud environments for NCI. Cloud One is a managed Amazon Web Services platform and in full production with FISMA Moderate ATO. Cloud Two is a managed Google Cloud Platform with FISMA Moderate ATO in progress. It is expected to be ready in Spring 2021.
Attend the January NCI IT Engagement Seminar Series to learn more about these NCI-managed cloud environments.
During this presentation, CBIIT's IT Engineering Program Lead Sue Pan will cover the following discussion points :
•Cloud computing compared with on-premises computing models: Differences and advantages
•Intended usage of Cloud One and Cloud Two
•NIH STRIDES Initiative
•NCI IT cloud security models
•NCI IT cloud computing support services
Thank you,
Center for Biomedical Informatics and Information Technology (CBIIT)
National Cancer Institute
DetailsOrganizerCBIITWhenMon, Jan 11, 2021 - 1:00 pm - 2:00 pmWhereOnline |
CBIIT provides two managed cloud environments for NCI. Cloud One is a managed Amazon Web Services platform and in full production with FISMA Moderate ATO. Cloud Two is a managed Google Cloud Platform with FISMA Moderate ATO in progress. It is expected to be ready in Spring 2021. Attend the January NCI IT Engagement Seminar Series to learn more about these NCI-managed cloud environments. During this presentation, CBIIT's IT Engineering Program Lead Sue Pan will cover the following discussion points : •Cloud computing compared with on-premises computing models: Differences and advantages •Intended usage of Cloud One and Cloud Two •NIH STRIDES Initiative •NCI IT cloud security models •NCI IT cloud computing support services Thank you, Center for Biomedical Informatics and Information Technology (CBIIT) National Cancer Institute | 2021-01-11 13:00:00 | Online | Cloud | Online | CBIIT | 0 | Overview of the NCI Managed Cloud Environments | |||
266 |
Description
Please plan to attend the Earl Stadtman Investigator Program search seminar by:
Mikhail Kolmogorov, Ph.D.
University of California, San Diego
Dr. Kolmogorov's research focus is bioinformatics. Particularly, he is interested in algorithms for genome assembly using long reads, which enable high-quality reconstruction of the human genome sequence. He also works on tools for comparative genomics and computational proteomics.
This seminar will be available via ZoomGov. See below for information on the ZoomGov session. For ...Read More
Please plan to attend the Earl Stadtman Investigator Program search seminar by:
Mikhail Kolmogorov, Ph.D.
University of California, San Diego
Dr. Kolmogorov's research focus is bioinformatics. Particularly, he is interested in algorithms for genome assembly using long reads, which enable high-quality reconstruction of the human genome sequence. He also works on tools for comparative genomics and computational proteomics.
This seminar will be available via ZoomGov. See below for information on the ZoomGov session. For additional information on this seminar, please contact Nadia Nimley on 240.858.3612.
To view the schedule for all upcoming Earl Stadtman Investigator Program seminars, please visit: https://ccrod.cancer.gov/confluence/display/NIHStadt/
The Earl Stadtman Investigator search is a trans-NIH effort to attract a diverse group of talented early-career scientists pursuing interests across the biomedical research spectrum. Additional information on the program can be found at: https://irp.nih.gov/careers/trans-nih-scientific-recruitments/stadtman-tenure-track-investigators?cid=eb_govdel
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Meeting ID: 160 474 7539
Passcode: 344455
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DetailsWhenTue, Jan 12, 2021 - 11:00 am - 12:00 pmWhereOnline |
Please plan to attend the Earl Stadtman Investigator Program search seminar by: Mikhail Kolmogorov, Ph.D. University of California, San Diego Dr. Kolmogorov's research focus is bioinformatics. Particularly, he is interested in algorithms for genome assembly using long reads, which enable high-quality reconstruction of the human genome sequence. He also works on tools for comparative genomics and computational proteomics. This seminar will be available via ZoomGov. See below for information on the ZoomGov session. For additional information on this seminar, please contact Nadia Nimley on 240.858.3612. To view the schedule for all upcoming Earl Stadtman Investigator Program seminars, please visit: https://ccrod.cancer.gov/confluence/display/NIHStadt/ The Earl Stadtman Investigator search is a trans-NIH effort to attract a diverse group of talented early-career scientists pursuing interests across the biomedical research spectrum. Additional information on the program can be found at: https://irp.nih.gov/careers/trans-nih-scientific-recruitments/stadtman-tenure-track-investigators?cid=eb_govdel JOIN MEETING Meeting ID: 160 474 7539 Passcode: 344455 One tap mobile +16692545252,,1604747539#,,,,,,0#,,344455# US (San Jose) +16468287666,,1604747539#,,,,,,0#,,344455# US (New York) Dial by your location +1 669 254 5252 US (San Jose) +1 646 828 7666 US (New York) Meeting ID: 160 474 7539 Passcode: 344455 Find your local number: https://nih.zoomgov.com/u/ad5OVLKjtf Join by H.323 161.199.138.10 (US West) 161.199.136.10 (US East) Meeting ID: 160 474 7539 Passcode: 344455 | 2021-01-12 11:00:00 | Online | Genomics | Online | 0 | Completing the human genome and microbiome using long-read sequencing technologies | ||||
274 |
Description
Register now and join us via Webex.
Speaker:
Noémie Elhadad, Ph.D.
Columbia University
In this talk, Dr. Elhadad will discuss how artificial intelligence and informatics improve patient-centered healthcare. She will show how patient-record summation tools can help clinicians make sense of seemingly overwhelming amounts of patient data at the point ...Read More
Register now and join us via Webex.
Speaker:
Noémie Elhadad, Ph.D.
Columbia University
In this talk, Dr. Elhadad will discuss how artificial intelligence and informatics improve patient-centered healthcare. She will show how patient-record summation tools can help clinicians make sense of seemingly overwhelming amounts of patient data at the point of care, and how "mHealth" tools can be used to help patients understand and manage healthcare decisions.
About the Data Science Seminar Series
The National Cancer Institute’s (NCI) Center for Biomedical Informatics and Information Technology (CBIIT) Data Science Seminar Series presents talks from innovators in the data science and cancer research communities.
To view upcoming speakers or view recordings for past presentations, visit Data Science Seminar Series. Follow the conversation @NCIDataSci and #DataSciSeminar. For more information about NCI’s Center for Biomedical Informatics and Information Technology (CBIIT) visit: datascience.cancer.gov
DetailsOrganizerCBIITWhenWed, Jan 13, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register now and join us via Webex. Speaker: Noémie Elhadad, Ph.D. Columbia University In this talk, Dr. Elhadad will discuss how artificial intelligence and informatics improve patient-centered healthcare. She will show how patient-record summation tools can help clinicians make sense of seemingly overwhelming amounts of patient data at the point of care, and how "mHealth" tools can be used to help patients understand and manage healthcare decisions. About the Data Science Seminar Series The National Cancer Institute’s (NCI) Center for Biomedical Informatics and Information Technology (CBIIT) Data Science Seminar Series presents talks from innovators in the data science and cancer research communities. To view upcoming speakers or view recordings for past presentations, visit Data Science Seminar Series. Follow the conversation @NCIDataSci and #DataSciSeminar. For more information about NCI’s Center for Biomedical Informatics and Information Technology (CBIIT) visit: datascience.cancer.gov | 2021-01-13 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Artificial Intelligence and Informatics Interventions for Patient-Centered Care | |||
273 |
Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
No appointments are necessary, and all problems are welcome.
Zoom URL: https://nih.zoomgov.com/j/1610653404?pwd=SmcvL3Q4djY1RzJ5ejNBRVBYQlBxdz09
Meeting ID: 161 065 3404
Passcode: 198109
Please observe the following etiquette/protocol when joining:
There will be a main room treated as a lobby and triage area. There, you can talk to one or a few staff members who will try to understand basic information about your issue. Then you may be invited to join to a staff member's personal breakout room for more detailed 1:1 consultation. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Attendees are highly encouraged to
- mute when not speaking
- refrain from screen sharing unless asked to do so
- screen share as you would in a public space with the understanding that other NIH HPC users and staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users
See you there!
DetailsOrganizerHPC BiowulfWhenWed, Jan 13, 2021 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. No appointments are necessary, and all problems are welcome. Zoom URL: https://nih.zoomgov.com/j/1610653404?pwd=SmcvL3Q4djY1RzJ5ejNBRVBYQlBxdz09 Meeting ID: 161 065 3404 Passcode: 198109 Please observe the following etiquette/protocol when joining: There will be a main room treated as a lobby and triage area. There, you can talk to one or a few staff members who will try to understand basic information about your issue. Then you may be invited to join to a staff member's personal breakout room for more detailed 1:1 consultation. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Attendees are highly encouraged to - mute when not speaking - refrain from screen sharing unless asked to do so - screen share as you would in a public space with the understanding that other NIH HPC users and staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users See you there! | 2021-01-13 13:00:00 | Online | NIH High Performance Unix Cluster Biowulf | Online | HPC Biowulf | 0 | NIH HPC monthly Zoom-In Consults | |||
262 |
Description
Please plan to attend the Earl Stadtman Investigator Program search seminar by:
Noam Auslander, Ph.D.
National Center for Biotechnology Information (NCBI), NIH
Dr. Auslander's research focus is on designing techniques that make use of biological knowledge and developing computational methods to solve complex emerging problems in biology and cancer research.
This seminar will be available via ZoomGov. See below for information on the ZoomGov session. For additional information on this seminar, please contact Nadia ...Read More
Please plan to attend the Earl Stadtman Investigator Program search seminar by:
Noam Auslander, Ph.D.
National Center for Biotechnology Information (NCBI), NIH
Dr. Auslander's research focus is on designing techniques that make use of biological knowledge and developing computational methods to solve complex emerging problems in biology and cancer research.
This seminar will be available via ZoomGov. See below for information on the ZoomGov session. For additional information on this seminar, please contact Nadia Nimley on 240.858.3612.
To view the schedule for all upcoming Earl Stadtman Investigator Program seminars,
please click here.
The Earl Stadtman Investigator search is a trans-NIH effort to attract a diverse group of talented early-career scientists pursuing interests across the biomedical research spectrum. Additional information on the program can be found at: https://irp.nih.gov/careers/trans-nih-scientific-recruitments/stadtman-tenure-track-investigators?cid=eb_govde
JOIN MEETING
Meeting ID: 160 840 2518
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Dial by your location
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Meeting ID: 160 840 2518
Find your local number: https://nih.zoomgov.com/u/acqDUDapDz
DetailsOrganizerEarl Stadtman Investigator ProgramWhenThu, Jan 14, 2021 - 11:00 am - 12:00 pmWhereOnline |
Please plan to attend the Earl Stadtman Investigator Program search seminar by: Noam Auslander, Ph.D. National Center for Biotechnology Information (NCBI), NIH Dr. Auslander's research focus is on designing techniques that make use of biological knowledge and developing computational methods to solve complex emerging problems in biology and cancer research. This seminar will be available via ZoomGov. See below for information on the ZoomGov session. For additional information on this seminar, please contact Nadia Nimley on 240.858.3612. To view the schedule for all upcoming Earl Stadtman Investigator Program seminars, please click here. The Earl Stadtman Investigator search is a trans-NIH effort to attract a diverse group of talented early-career scientists pursuing interests across the biomedical research spectrum. Additional information on the program can be found at: https://irp.nih.gov/careers/trans-nih-scientific-recruitments/stadtman-tenure-track-investigators?cid=eb_govde JOIN MEETING Meeting ID: 160 840 2518 One tap mobile +16692545252,,1608402518# US (San Jose) +16468287666,,1608402518# US (New York) Dial by your location +1 669 254 5252 US (San Jose) +1 646 828 7666 US (New York) Meeting ID: 160 840 2518 Find your local number: https://nih.zoomgov.com/u/acqDUDapDz | 2021-01-14 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | Earl Stadtman Investigator Program | 0 | Modeling cancer evolution with machine learning techniques | |||
268 |
Description
Registration:
https://cbiit.webex.com/cbiit/onstage/g.php?MTID=e968a58127acdb59b961e2ef13865c7ad
Description:
This workshop will focus on the analysis of Next Generation Sequencing (NGS) data using ...Read More
Registration:
https://cbiit.webex.com/cbiit/onstage/g.php?MTID=e968a58127acdb59b961e2ef13865c7ad
Description:
This workshop will focus on the analysis of Next Generation Sequencing (NGS) data using the program MacVector. It will cover alignment/assembly of NGS data to one or more reference sequences for RNA expression analysis, and Single Nucleotide Polymorphism (SNP) detection and/or sequence confirmation. It will also cover de novo assembly of short read (Illumina or IonTorrent) and/or long read (Sanger, PacBio or Oxford Nanopore) data for both modest sequences and for entire genomes. Learn how to use MacVector to identify and extract subsets of paired-end reads from large data sets, enabling focus on just those related to your project.
Speaker: Dr. Kevin Kendal, Field Application Scientist
For questions, contact Dr. Daoud Meerzaman.
DetailsOrganizerEarl Stadtman Investigator ProgramWhenThu, Jan 14, 2021 - 11:00 am - 12:00 pmWhereOnline |
Registration: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=e968a58127acdb59b961e2ef13865c7ad Description: This workshop will focus on the analysis of Next Generation Sequencing (NGS) data using the program MacVector. It will cover alignment/assembly of NGS data to one or more reference sequences for RNA expression analysis, and Single Nucleotide Polymorphism (SNP) detection and/or sequence confirmation. It will also cover de novo assembly of short read (Illumina or IonTorrent) and/or long read (Sanger, PacBio or Oxford Nanopore) data for both modest sequences and for entire genomes. Learn how to use MacVector to identify and extract subsets of paired-end reads from large data sets, enabling focus on just those related to your project. Speaker: Dr. Kevin Kendal, Field Application Scientist For questions, contact Dr. Daoud Meerzaman. | 2021-01-14 11:00:00 | Online | Bioinformatics Software | Online | Earl Stadtman Investigator Program | 0 | Next Generation Sequence Analysis using MacVector | |||
267 |
Description
Overview
Are you interested in improving your machine or deep learning models? You often cannot be sure you've developed the best model without performing hyperparameter optimization. In this talk, we will explain what this crucial procedure is and how to perform it with only minimal effort using the CANDLE open-source software platform on NIH's Biowulf supercomputer.
We will also provide an overview of what machine ...Read More
Overview
Are you interested in improving your machine or deep learning models? You often cannot be sure you've developed the best model without performing hyperparameter optimization. In this talk, we will explain what this crucial procedure is and how to perform it with only minimal effort using the CANDLE open-source software platform on NIH's Biowulf supercomputer.
We will also provide an overview of what machine learning is, how it relates to deep learning, and how to get started!
Location: Webex (https://bit.ly/3rSTk98)
Registration: Not required
Presenter: Andrew Weisman, PhD, High Performance Computing Analyst, Frederick National Laboratory for Cancer Research (FNLCR).
Questions? Contact the NCI Data Science Learning Exchange
(NCIDataScienceLearningExchange@mail.nih.gov
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, Jan 19, 2021 - 11:00 am - 12:00 pmWhereOnline |
Overview Are you interested in improving your machine or deep learning models? You often cannot be sure you've developed the best model without performing hyperparameter optimization. In this talk, we will explain what this crucial procedure is and how to perform it with only minimal effort using the CANDLE open-source software platform on NIH's Biowulf supercomputer. We will also provide an overview of what machine learning is, how it relates to deep learning, and how to get started! Location: Webex (https://bit.ly/3rSTk98) Registration: Not required Presenter: Andrew Weisman, PhD, High Performance Computing Analyst, Frederick National Laboratory for Cancer Research (FNLCR). Questions? Contact the NCI Data Science Learning Exchange (NCIDataScienceLearningExchange@mail.nih.gov | 2021-01-19 11:00:00 | Online | Data Science | Online | NCI Data Science Learning Exchange | 0 | Hyperparameter Optimization Using CANDLE on Biowulf | |||
275 |
Description
Please register here to attend.
Webinar Presenter: Dr Tao Liu, ...Read More
Please register here to attend.
Webinar Presenter: Dr Tao Liu, Pacific Northwest National Laboratory
Join the Office of Cancer Clinical Proteomics Research (OCCPR) for our 2021 OCCPR webinar series! Hear from our Clinical Proteomic Tumor Analysis Consortium (CPTAC) scientists about their research and current projects.
Mass spectrometry (MS)-based proteomics enables the characterization of the human proteome at a genome scale. Recent advances in sample handling platforms and proteomic analysis strategies also allow for analysis of protein expression and phosphorylation in very small populations of cells, even single cells. These advances in single-cell proteomics hold great potential for improved understanding of biological heterogeneity underlying cancer for translational applications.
The CPTAC program is run by the OCCPR which aims to improve prevention, early detection, diagnosis, and treatment of cancer by bringing more understanding to the molecular underpinning of cancer through proteo-genome science and technology development and providing community resources (data and reagents).
To sign up for CPTAC updates click here.
For more information, please contact La’Toya Kelly.
DetailsOrganizerOffice of Cancer Clinical Proteomics ResearchWhenTue, Jan 19, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Please register here to attend. Webinar Presenter: Dr Tao Liu, Pacific Northwest National Laboratory Join the Office of Cancer Clinical Proteomics Research (OCCPR) for our 2021 OCCPR webinar series! Hear from our Clinical Proteomic Tumor Analysis Consortium (CPTAC) scientists about their research and current projects. Mass spectrometry (MS)-based proteomics enables the characterization of the human proteome at a genome scale. Recent advances in sample handling platforms and proteomic analysis strategies also allow for analysis of protein expression and phosphorylation in very small populations of cells, even single cells. These advances in single-cell proteomics hold great potential for improved understanding of biological heterogeneity underlying cancer for translational applications. The CPTAC program is run by the OCCPR which aims to improve prevention, early detection, diagnosis, and treatment of cancer by bringing more understanding to the molecular underpinning of cancer through proteo-genome science and technology development and providing community resources (data and reagents). To sign up for CPTAC updates click here. For more information, please contact La’Toya Kelly. | 2021-01-19 13:00:00 | Online | Proteomics | Online | Office of Cancer Clinical Proteomics Research | 0 | Advances in MS-based Single-cell Proteomics | |||
269 |
Description
Registration:
https://cbiit.webex.com/cbiit/onstage/g.php?MTID=ec7d9bf4c9b10ea1a5dd4ba4383bfede7
Although much MacVector functionality is targeted at DNA analysis, a large number of features also exist for ...Read More
Registration:
https://cbiit.webex.com/cbiit/onstage/g.php?MTID=ec7d9bf4c9b10ea1a5dd4ba4383bfede7
Although much MacVector functionality is targeted at DNA analysis, a large number of features also exist for creating, annotating and analyzing protein sequences. This workshop will cover this functionality in depth. Topics include translating DNA into protein sequences, reverse-translating proteins into DNA and optimizing codon usage, analyzing protein sequences for active sites, and other steps in the analysis process. Dr. Kendal also will demonstrate search functions, including BLAST and local searches, and offer tips for extracting subsets of NGS reads that encode a specific protein.
Speaker: Dr. Kevin Kendal, Field Application Scientist
For questions, contact Dr. Daoud Meerzaman.
DetailsOrganizerCBIITWhenThu, Jan 21, 2021 - 11:00 am - 12:00 pmWhereOnline |
Registration: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=ec7d9bf4c9b10ea1a5dd4ba4383bfede7 Although much MacVector functionality is targeted at DNA analysis, a large number of features also exist for creating, annotating and analyzing protein sequences. This workshop will cover this functionality in depth. Topics include translating DNA into protein sequences, reverse-translating proteins into DNA and optimizing codon usage, analyzing protein sequences for active sites, and other steps in the analysis process. Dr. Kendal also will demonstrate search functions, including BLAST and local searches, and offer tips for extracting subsets of NGS reads that encode a specific protein. Speaker: Dr. Kevin Kendal, Field Application Scientist For questions, contact Dr. Daoud Meerzaman. | 2021-01-21 11:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Protein Analysis Using MacVector | |||
953 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jan 21, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-01-21 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq Analysis on NIDAP | ||
276 |
Description
Presenter: Dr. Arjun Raj from the Perelman School of Medicine, UPenn.
Abstract:Anti-cancer therapies can often kill the vast majority of tumor cells but a few rare cells remain and grow despite treatment. Non-genetic variability has emerged as a potential contributor to this behavior. However, it remains unclear what drives this variability, and what the ultimate phenotypic consequences are. We have developed a set of new single cell barcoding technologies (Rewind and FateMap) that have ...Read More
Presenter: Dr. Arjun Raj from the Perelman School of Medicine, UPenn.
Abstract:Anti-cancer therapies can often kill the vast majority of tumor cells but a few rare cells remain and grow despite treatment. Non-genetic variability has emerged as a potential contributor to this behavior. However, it remains unclear what drives this variability, and what the ultimate phenotypic consequences are. We have developed a set of new single cell barcoding technologies (Rewind and FateMap) that have enabled us to show how different types of variability can translate into different drug-resistant outcomes upon treatment with drugs. In particular, we found that even a genetically and epigenetically clonal population harbors enough latent variability to produce an entire ecosystem of different resistant cell types, and show preliminary evidence suggesting that these cell types can contribute to tumor development in distinct ways.
Meeting details:
Join Zoom Meeting
https://umd.zoom.us/j/91843071125
Meeting ID: 918 4307 1125
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Meeting ID: 918 4307 1125
Find your local number: https://umd.zoom.us/u/abASyXtwsH
Thanks,
Sushant
DetailsOrganizerCDSLWhenMon, Jan 25, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Presenter: Dr. Arjun Raj from the Perelman School of Medicine, UPenn. Abstract:Anti-cancer therapies can often kill the vast majority of tumor cells but a few rare cells remain and grow despite treatment. Non-genetic variability has emerged as a potential contributor to this behavior. However, it remains unclear what drives this variability, and what the ultimate phenotypic consequences are. We have developed a set of new single cell barcoding technologies (Rewind and FateMap) that have enabled us to show how different types of variability can translate into different drug-resistant outcomes upon treatment with drugs. In particular, we found that even a genetically and epigenetically clonal population harbors enough latent variability to produce an entire ecosystem of different resistant cell types, and show preliminary evidence suggesting that these cell types can contribute to tumor development in distinct ways. Meeting details: Join Zoom Meeting https://umd.zoom.us/j/91843071125 Meeting ID: 918 4307 1125 One tap mobile +13017158592,,91843071125# US (Washington D.C) +19294362866,,91843071125# US (New York) Dial by your location +1 301 715 8592 US (Washington D.C) +1 929 436 2866 US (New York) +1 312 626 6799 US (Chicago) +1 346 248 7799 US (Houston) +1 669 900 6833 US (San Jose) +1 253 215 8782 US (Tacoma) Meeting ID: 918 4307 1125 Find your local number: https://umd.zoom.us/u/abASyXtwsH Thanks, Sushant | 2021-01-25 15:00:00 | Online | Single Cell Technologies,Cancer | Online | CDSL | 0 | Emergent cellular ecosystems in melanoma revealed by single cell analysis | |||
277 |
Description
Please plan to attend the Earl Stadtman Investigator Program search seminar by:
Qian Zhu, Ph.D.
Dana Farber Cancer Institute/Boston Children's Hospital
Dr. Zhu's research interests include: single-cell genomics; spatial transcriptomics; bioimage analysis; large-scale transcriptome integration; interactive visualizations; co-expression analysis; Bayes integration; gene regulatory mechanisms; and,
epigenomic technologies.
This seminar will be available via ZoomGov. See below for information on the ZoomGov session. For additional information on this seminar, please contact Nadia Nimley on 240.858.3612.
...Read More
Please plan to attend the Earl Stadtman Investigator Program search seminar by:
Qian Zhu, Ph.D.
Dana Farber Cancer Institute/Boston Children's Hospital
Dr. Zhu's research interests include: single-cell genomics; spatial transcriptomics; bioimage analysis; large-scale transcriptome integration; interactive visualizations; co-expression analysis; Bayes integration; gene regulatory mechanisms; and,
epigenomic technologies.
This seminar will be available via ZoomGov. See below for information on the ZoomGov session. For additional information on this seminar, please contact Nadia Nimley on 240.858.3612.
To view the schedule for all upcoming Earl Stadtman Investigator Program seminars, please visit: https://ccrod.cancer.gov/confluence/display/NIHStadt/
The Earl Stadtman Investigator search is a trans-NIH effort to attract a diverse group of talented early-career scientists pursuing interests across the biomedical research spectrum. Additional information on the program can be found at: https://irp.nih.gov/careers/trans-nih-scientific-recruitments/stadtman-tenure-track-investigators?cid=eb_govdel
Thank you.
Lori Holliday
Faculty Recruitment Coordinator
Follow us on Twitter @NCIResearchCtr
JOIN MEETING
Meeting ID: 160 658 8523One tap mobile
+16692545252,,1606588523# US (San Jose)
+16468287666,,1606588523# US (New York)
Dial by your location
+1 669 254 5252 US (San Jose)
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Meeting ID: 160 658 8523
Find your local number: https://nih.zoomgov.com/u/aSpM9QSEH
DetailsOrganizerCDSLWhenWed, Jan 27, 2021 - 11:00 am - 12:00 pmWhereOnline |
Please plan to attend the Earl Stadtman Investigator Program search seminar by: Qian Zhu, Ph.D. Dana Farber Cancer Institute/Boston Children's Hospital Dr. Zhu's research interests include: single-cell genomics; spatial transcriptomics; bioimage analysis; large-scale transcriptome integration; interactive visualizations; co-expression analysis; Bayes integration; gene regulatory mechanisms; and, epigenomic technologies. This seminar will be available via ZoomGov. See below for information on the ZoomGov session. For additional information on this seminar, please contact Nadia Nimley on 240.858.3612. To view the schedule for all upcoming Earl Stadtman Investigator Program seminars, please visit: https://ccrod.cancer.gov/confluence/display/NIHStadt/ The Earl Stadtman Investigator search is a trans-NIH effort to attract a diverse group of talented early-career scientists pursuing interests across the biomedical research spectrum. Additional information on the program can be found at: https://irp.nih.gov/careers/trans-nih-scientific-recruitments/stadtman-tenure-track-investigators?cid=eb_govdel Thank you. Lori Holliday Faculty Recruitment Coordinator Follow us on Twitter @NCIResearchCtr JOIN MEETING Meeting ID: 160 658 8523One tap mobile +16692545252,,1606588523# US (San Jose) +16468287666,,1606588523# US (New York) Dial by your location +1 669 254 5252 US (San Jose) +1 646 828 7666 US (New York) Meeting ID: 160 658 8523 Find your local number: https://nih.zoomgov.com/u/aSpM9QSEH | 2021-01-27 11:00:00 | Online | Single Cell Technologies | Online | CDSL | 0 | Unraveling cell-intrinsic and -extrinsic mechanisms of gene expression regulation: tools and strategies | |||
278 |
Description
Register now and join us via Webex.
Speakers:
Esmeralda Casas-Silva, Ph.D.; Veena Gopalakrishnan, Ph.D.; Helen Moore, Ph.D.; Claire Blaustein
National Cancer Institute
NCI's Cancer Moonshot℠ Biobank will engage diverse participants with advanced cancers to create a longitudinal collection of biospecimens and clinical data supporting research on treatment resistance and sensitivity. The Biobank has created a patient-and-provider engagement website with public-facing content as ...Read More
Register now and join us via Webex.
Speakers:
Esmeralda Casas-Silva, Ph.D.; Veena Gopalakrishnan, Ph.D.; Helen Moore, Ph.D.; Claire Blaustein
National Cancer Institute
NCI's Cancer Moonshot℠ Biobank will engage diverse participants with advanced cancers to create a longitudinal collection of biospecimens and clinical data supporting research on treatment resistance and sensitivity. The Biobank has created a patient-and-provider engagement website with public-facing content as well as secure sign-in for participants and providers to access their biomarker reports, signed consent forms, and other resources. The website has integration points with the Oncology Patient Enrollment Network (OPEN) and clinical laboratories.
This webinar will introduce the website and highlight approaches, functionalities, IT challenges, and lessons learned. The Moonshot Biobank participant-and-provider website may serve as an archetype within NCI for new participant engagement efforts. Visit the website at https://moonshotbiobank.cancer.gov.
About the Data Science Seminar Series
The National Cancer Institute’s (NCI) Center for Biomedical Informatics and Information Technology (CBIIT) Data Science Seminar Series presents talks from innovators in the data science and cancer research communities.
To view upcoming speakers or view recordings for past presentations, visit Data Science Seminar Series. Follow the conversation @NCIDataSci and #DataSciSeminar. For more information about NCI’s Center for Biomedical Informatics and Information Technology (CBIIT) visit: datascience.cancer.gov
Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Eve Shalley (240-276-5194, eve.shalley@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339) at least 5 days in advance of the event.
DetailsOrganizerCBIITWhenWed, Jan 27, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register now and join us via Webex. Speakers: Esmeralda Casas-Silva, Ph.D.; Veena Gopalakrishnan, Ph.D.; Helen Moore, Ph.D.; Claire Blaustein National Cancer Institute NCI's Cancer Moonshot℠ Biobank will engage diverse participants with advanced cancers to create a longitudinal collection of biospecimens and clinical data supporting research on treatment resistance and sensitivity. The Biobank has created a patient-and-provider engagement website with public-facing content as well as secure sign-in for participants and providers to access their biomarker reports, signed consent forms, and other resources. The website has integration points with the Oncology Patient Enrollment Network (OPEN) and clinical laboratories. This webinar will introduce the website and highlight approaches, functionalities, IT challenges, and lessons learned. The Moonshot Biobank participant-and-provider website may serve as an archetype within NCI for new participant engagement efforts. Visit the website at https://moonshotbiobank.cancer.gov. About the Data Science Seminar Series The National Cancer Institute’s (NCI) Center for Biomedical Informatics and Information Technology (CBIIT) Data Science Seminar Series presents talks from innovators in the data science and cancer research communities. To view upcoming speakers or view recordings for past presentations, visit Data Science Seminar Series. Follow the conversation @NCIDataSci and #DataSciSeminar. For more information about NCI’s Center for Biomedical Informatics and Information Technology (CBIIT) visit: datascience.cancer.gov Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Eve Shalley (240-276-5194, eve.shalley@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339) at least 5 days in advance of the event. | 2021-01-27 11:00:00 | Online | Data Resources | Online | CBIIT | 0 | NCI’s New Cancer Moonshot℠ Biobank Website | |||
270 |
Description
Registration:
https://cbiit.webex.com/cbiit/onstage/g.php?MTID=eb967c2ec79b87a5972c6b2ee2fc13281
Partek Flow software aids in the analysis of next generation sequencing data: RNA, small RNA, and DNA. ...Read More
Registration:
https://cbiit.webex.com/cbiit/onstage/g.php?MTID=eb967c2ec79b87a5972c6b2ee2fc13281
Partek Flow software aids in the analysis of next generation sequencing data: RNA, small RNA, and DNA. Uchenna Emechebe, a field application scientist at Partek, will show how to use the application to conduct Single Cell RNA-Seq data analysis, including how to import data, conduct quality checks, filter and normalize data, conduct cluster analyses, and visualize the results.
Agenda:
Presentation: Partek Flow Single Cell Solution Overview
Live Demo: Single Cell RNA-Seq Data Analysis and Visualization in Partek Flow
Search Portal and Public Data Repository for Single Cell analysis
Data Import
QA/QC
Data Filter and Normalization
Clustering Analysis
Dimension Reduction and Visualize in 2/3 D
Differential Expression
Speaker: Uchenna Emechebe, Field Application Scientist at Partek
For questions, contact Dr. Daoud Meerzaman
DetailsOrganizerCBIITWhenThu, Jan 28, 2021 - 10:00 am - 11:00 amWhereOnline |
Registration: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=eb967c2ec79b87a5972c6b2ee2fc13281 Partek Flow software aids in the analysis of next generation sequencing data: RNA, small RNA, and DNA. Uchenna Emechebe, a field application scientist at Partek, will show how to use the application to conduct Single Cell RNA-Seq data analysis, including how to import data, conduct quality checks, filter and normalize data, conduct cluster analyses, and visualize the results. Agenda: Presentation: Partek Flow Single Cell Solution Overview Live Demo: Single Cell RNA-Seq Data Analysis and Visualization in Partek Flow Search Portal and Public Data Repository for Single Cell analysis Data Import QA/QC Data Filter and Normalization Clustering Analysis Dimension Reduction and Visualize in 2/3 D Differential Expression Speaker: Uchenna Emechebe, Field Application Scientist at Partek For questions, contact Dr. Daoud Meerzaman | 2021-01-28 10:00:00 | Online | Single Cell Technologies | Online | CBIIT | 0 | Single Cell Analysis in Partek Flow | |||
952 |
Description
Meeting Link
The session recording and slides will be available after the webinar.
Single-cell RNA-Seq (scRNA-seq) is the most widely used high-throughput technology to measure genome-wide gene expression at the single-cell level. However, single-cell data present unique challenges that have required the development of specialized methods and software infrastructure to successfully derive biological insights. Compared ...Read More
Meeting Link
The session recording and slides will be available after the webinar.
Single-cell RNA-Seq (scRNA-seq) is the most widely used high-throughput technology to measure genome-wide gene expression at the single-cell level. However, single-cell data present unique challenges that have required the development of specialized methods and software infrastructure to successfully derive biological insights. Compared to bulk RNA-seq, there is an increased scale of the number of observations (or cells) that are measured and there is increased sparsity of the data, or fraction of observed zeros. Furthermore, as single-cell technologies mature, the increasing complexity and volume of data require fundamental changes in data access, management, and infrastructure alongside specialized methods to facilitate scalable analyses. I will discuss some challenges in the analysis of scRNA-seq data and present some solutions that we have made towards addressing these challenges.
RegisterOrganizerBTEPWhenThu, Jan 28, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link The session recording and slides will be available after the webinar. Single-cell RNA-Seq (scRNA-seq) is the most widely used high-throughput technology to measure genome-wide gene expression at the single-cell level. However, single-cell data present unique challenges that have required the development of specialized methods and software infrastructure to successfully derive biological insights. Compared to bulk RNA-seq, there is an increased scale of the number of observations (or cells) that are measured and there is increased sparsity of the data, or fraction of observed zeros. Furthermore, as single-cell technologies mature, the increasing complexity and volume of data require fundamental changes in data access, management, and infrastructure alongside specialized methods to facilitate scalable analyses. I will discuss some challenges in the analysis of scRNA-seq data and present some solutions that we have made towards addressing these challenges. | 2021-01-28 13:00:00 | Online Webinar | Single Cell RNA-seq | Online | Stephanie Hicks (JHU) | BTEP | 0 | Scalable Statistical Methods and Software for Single-Cell Data Science | ||
954 |
Description
THIS EVENT HAS BEEN CANCELLED
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are ...Read More
THIS EVENT HAS BEEN CANCELLED
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. RegisterOrganizerBTEPWhenThu, Jan 28, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
THIS EVENT HAS BEEN CANCELLEDRNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-01-28 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP - CANCELLED | ||
259 |
Description
Register
In this training, the attendees will learn how advanced pathway and network biology algorithms from the Computational Biology Methods for Drug Discovery (CBDD) toolkit can be applied to a broad range of OMICs datasets without the need for scripting skills. The instructor will provide use cases including disease mechanism reconstruction, drug mechanism of action elucidation, target discovery, biomarker identification, and integration of omics datasets. ...Read More
Register
In this training, the attendees will learn how advanced pathway and network biology algorithms from the Computational Biology Methods for Drug Discovery (CBDD) toolkit can be applied to a broad range of OMICs datasets without the need for scripting skills. The instructor will provide use cases including disease mechanism reconstruction, drug mechanism of action elucidation, target discovery, biomarker identification, and integration of omics datasets. This class would be useful to clinicians and researchers/scientists in digging deep on the association of diseases, biomarkers, and drugs.
DetailsOrganizerNIH Training LibraryWhenTue, Feb 02, 2021 - 2:00 pm - 3:15 pmWhereOnline |
Register In this training, the attendees will learn how advanced pathway and network biology algorithms from the Computational Biology Methods for Drug Discovery (CBDD) toolkit can be applied to a broad range of OMICs datasets without the need for scripting skills. The instructor will provide use cases including disease mechanism reconstruction, drug mechanism of action elucidation, target discovery, biomarker identification, and integration of omics datasets. This class would be useful to clinicians and researchers/scientists in digging deep on the association of diseases, biomarkers, and drugs. | 2021-02-02 14:00:00 | Online | Omics | Online | NIH Training Library | 0 | Network Biology Analysis of Omics Data Using Computational Biology Methods for Drug Discovery GUI | |||
955 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Feb 04, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-02-04 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq Analysis on NIDAP | ||
290 |
Description
Presenter: Dr. Marjan Gucek, director for the NHLBI Proteomic Core
Summary:
“Proteomics Core provides access to mass spectrometry and gel based proteomics for identification and quantitation of proteins and their post-translational modifications (PTM). Our workflows for protein quantitation are based on label-free, SILAC and TMT approaches. We can identify and quantify protein post-translational modifications, including phosphorylation, nitrosylation, acetylation, ubiquitination, succinylation, etc. We provide training in proper sample preparation and lead the researchers through mass spectrometric ...Read More
Presenter: Dr. Marjan Gucek, director for the NHLBI Proteomic Core
Summary:
“Proteomics Core provides access to mass spectrometry and gel based proteomics for identification and quantitation of proteins and their post-translational modifications (PTM). Our workflows for protein quantitation are based on label-free, SILAC and TMT approaches. We can identify and quantify protein post-translational modifications, including phosphorylation, nitrosylation, acetylation, ubiquitination, succinylation, etc. We provide training in proper sample preparation and lead the researchers through mass spectrometric analysis to data searching and interpretation.
I’m going to overview the technology behind our instruments and present unique challenges in protein identification and quantitation (such as dynamic range and sample complexity, especially in biological fluids).”
https://nih.webex.com/nih/j.php?MTID=m237a8e77868c23cc4e8b31120408c54c
Delong Liu
Mondays data science and bioinformatics seminar series:
Nov 16, 2020, Dr. Steve Coon, long-read sequencing, NICHD sequencing Core
Nov 23, 2020, Dr. Siyuan Liu, Integrative structural, functional, and transcriptomic analyses of sex-biased brain organization in humans, NIMH
Nov 30, 2020 (Thanksgiving)
Dec 7, 2020, Dr. Jack Bibby, Using Single Cell Pathway Analysis (SCPA) to map transcriptional dynamics during early T cell activation, Dr. Kemper lab, NHLBI
Dec 14, 2020, Dr. Weiniu Gan, overview of the TOPMED program, NHLBI
Jan 18, 2020, Birthday of Martin Luther King, Jr.
Jan 25, 2020, Dr. Gerry Bouffard/Dr. Jim Mullikin, NIH sequencing center, NIH.
Feb 1, 2020, Dr. Majid Kazemian, Purdue University
Feb 8, 2020, Dr. Marjan Gucek, NHLBI Proteomics core
Feb 15, federal holiday
Feb 22, Dr. Dawei Huang, NCI
Mar 1, Dr. Oleg Shchelochkov, NHGRI
Mar 8, Dr. Wolfgang Resch, CIT biowulf
Mar 15, Dr. Sean Davis, NCI
Mar 22, Dr. Jonathan Kaltman, the biodata catalyst program, NHLBI
Mar 29, Dr. Jun Li, single-cell data analysis, University of Notre Dame
Apr 5, Dr. Peng Li, Dr. Leonard Lab, NHLBI
Apr 12,
April 19, Dr. Adam Phillippy, the pan-genome project, NHGRI
DetailsOrganizerNHLBI Proteomics CoreWhenMon, Feb 08, 2021 - 11:00 am - 12:00 pmWhereOnline |
Presenter: Dr. Marjan Gucek, director for the NHLBI Proteomic Core Summary: “Proteomics Core provides access to mass spectrometry and gel based proteomics for identification and quantitation of proteins and their post-translational modifications (PTM). Our workflows for protein quantitation are based on label-free, SILAC and TMT approaches. We can identify and quantify protein post-translational modifications, including phosphorylation, nitrosylation, acetylation, ubiquitination, succinylation, etc. We provide training in proper sample preparation and lead the researchers through mass spectrometric analysis to data searching and interpretation. I’m going to overview the technology behind our instruments and present unique challenges in protein identification and quantitation (such as dynamic range and sample complexity, especially in biological fluids).” https://nih.webex.com/nih/j.php?MTID=m237a8e77868c23cc4e8b31120408c54c Delong Liu Mondays data science and bioinformatics seminar series: Nov 16, 2020, Dr. Steve Coon, long-read sequencing, NICHD sequencing Core Nov 23, 2020, Dr. Siyuan Liu, Integrative structural, functional, and transcriptomic analyses of sex-biased brain organization in humans, NIMH Nov 30, 2020 (Thanksgiving) Dec 7, 2020, Dr. Jack Bibby, Using Single Cell Pathway Analysis (SCPA) to map transcriptional dynamics during early T cell activation, Dr. Kemper lab, NHLBI Dec 14, 2020, Dr. Weiniu Gan, overview of the TOPMED program, NHLBI Jan 18, 2020, Birthday of Martin Luther King, Jr. Jan 25, 2020, Dr. Gerry Bouffard/Dr. Jim Mullikin, NIH sequencing center, NIH. Feb 1, 2020, Dr. Majid Kazemian, Purdue University Feb 8, 2020, Dr. Marjan Gucek, NHLBI Proteomics core Feb 15, federal holiday Feb 22, Dr. Dawei Huang, NCI Mar 1, Dr. Oleg Shchelochkov, NHGRI Mar 8, Dr. Wolfgang Resch, CIT biowulf Mar 15, Dr. Sean Davis, NCI Mar 22, Dr. Jonathan Kaltman, the biodata catalyst program, NHLBI Mar 29, Dr. Jun Li, single-cell data analysis, University of Notre Dame Apr 5, Dr. Peng Li, Dr. Leonard Lab, NHLBI Apr 12, April 19, Dr. Adam Phillippy, the pan-genome project, NHGRI | 2021-02-08 11:00:00 | Online | Proteomics | Online | NHLBI Proteomics Core | 0 | NHLBI Proteomics Core – From proteins and post-translational modifications to systems biology | |||
289 |
Description
Dear colleagues,
Coming Monday, Feb 8th, we'll be having a guest lecture by Prof. Vineet Bafna from UCSD.
Abstract:
Increase in the number of copies of tumor promoting (onco-) genes is a hallmark of many cancers, and cancers with copy number amplifications are often associated with poor outcomes. Despite their importance, the mechanisms causing these amplifications are incompletely understood. In this talk, we describe our recent results suggesting that a large faction of amplification is ...Read More
Dear colleagues,
Coming Monday, Feb 8th, we'll be having a guest lecture by Prof. Vineet Bafna from UCSD.
Abstract:
Increase in the number of copies of tumor promoting (onco-) genes is a hallmark of many cancers, and cancers with copy number amplifications are often associated with poor outcomes. Despite their importance, the mechanisms causing these amplifications are incompletely understood. In this talk, we describe our recent results suggesting that a large faction of amplification is due to formation of extrachromosomal DNA (ecDNA). EcDNA play a critical role in tumor heterogeneity, accelerated cancer evolution, and drug resistance through their unique mechanism of non-chromosomal inheritance. While predominant, ecDNA are not the only mechanism to cause amplification. In this talk, we describe the genesis of our work on ecDNA, and the algorithmic methods required to help identify ecDNA from other mechanisms including Breakage Fusion Bridge formation, Chromothripsis, but also simpler events such as tandem duplications and translocations. The talk is a mix of published and unpublished work, largely in collaboration with Paul Mischel's lab at UCSD. EcDNA was recently recognized as one of the grand challenges of cancer research by Cancer Research UK and the National Cancer Institute.
Biography:
Vineet Bafna, Ph.D., joined the Computer Science faculty at the University of California, San Diego in 2003, after seven years in the biosciences industry. He received his Ph.D. in computer science from The Pennsylvania State University in 1994 and was an NSF postdoctoral researcher at the Center for Discrete Mathematics and Theoretical Computer Science for two years. From 1996-99, Bafna was a senior investigator at SmithKline Beecham, conducting research on DNA signaling, target discovery and EST assembly. From 1999 to 2002, he worked at Celera Genomics, ultimately as director of Informatics Research, participating in the human genome project. He arrived at the Jacobs School from the Center for Advancement in Genomics, set up by Celera founder Craig Venter. Vineet Bafna’s research incorporates algorithmic methods into the analysis of molecular biology data including complex structural variation in genomes, genetic signals of adaptation, and proteogenomics. He has co-authored 150 research articles in the leading journals in the field. He served as co-Director of the Bioinformatics and Systems Biology Ph.D. program from 2013-19, and was founding faculty of the Halicioglou Data Science Institute at UCSD. In 2019, he was selected as a fellow of the International Society of Computational Biology.
Join Zoom Meeting
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Meeting ID: 918 4307 1125
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Thanks and have a good weekend,
Sushant
DetailsOrganizerCDSLWhenMon, Feb 08, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Dear colleagues, Coming Monday, Feb 8th, we'll be having a guest lecture by Prof. Vineet Bafna from UCSD. Abstract: Increase in the number of copies of tumor promoting (onco-) genes is a hallmark of many cancers, and cancers with copy number amplifications are often associated with poor outcomes. Despite their importance, the mechanisms causing these amplifications are incompletely understood. In this talk, we describe our recent results suggesting that a large faction of amplification is due to formation of extrachromosomal DNA (ecDNA). EcDNA play a critical role in tumor heterogeneity, accelerated cancer evolution, and drug resistance through their unique mechanism of non-chromosomal inheritance. While predominant, ecDNA are not the only mechanism to cause amplification. In this talk, we describe the genesis of our work on ecDNA, and the algorithmic methods required to help identify ecDNA from other mechanisms including Breakage Fusion Bridge formation, Chromothripsis, but also simpler events such as tandem duplications and translocations. The talk is a mix of published and unpublished work, largely in collaboration with Paul Mischel's lab at UCSD. EcDNA was recently recognized as one of the grand challenges of cancer research by Cancer Research UK and the National Cancer Institute. Biography: Vineet Bafna, Ph.D., joined the Computer Science faculty at the University of California, San Diego in 2003, after seven years in the biosciences industry. He received his Ph.D. in computer science from The Pennsylvania State University in 1994 and was an NSF postdoctoral researcher at the Center for Discrete Mathematics and Theoretical Computer Science for two years. From 1996-99, Bafna was a senior investigator at SmithKline Beecham, conducting research on DNA signaling, target discovery and EST assembly. From 1999 to 2002, he worked at Celera Genomics, ultimately as director of Informatics Research, participating in the human genome project. He arrived at the Jacobs School from the Center for Advancement in Genomics, set up by Celera founder Craig Venter. Vineet Bafna’s research incorporates algorithmic methods into the analysis of molecular biology data including complex structural variation in genomes, genetic signals of adaptation, and proteogenomics. He has co-authored 150 research articles in the leading journals in the field. He served as co-Director of the Bioinformatics and Systems Biology Ph.D. program from 2013-19, and was founding faculty of the Halicioglou Data Science Institute at UCSD. In 2019, he was selected as a fellow of the International Society of Computational Biology. Join Zoom Meeting https://umd.zoom.us/j/91843071125 Meeting ID: 918 4307 1125 One tap mobile +13017158592,,91843071125# US (Washington DC) +19294362866,,91843071125# US (New York) Dial by your location +1 301 715 8592 US (Washington DC) +1 929 436 2866 US (New York) +1 312 626 6799 US (Chicago) +1 346 248 7799 US (Houston) +1 669 900 6833 US (San Jose) +1 253 215 8782 US (Tacoma) Meeting ID: 918 4307 1125 Find your local number: https://umd.zoom.us/u/abASyXtwsH Thanks and have a good weekend, Sushant | 2021-02-08 15:00:00 | Online | Cancer | Online | CDSL | 0 | Extrachromosomal and other mechanisms of oncogene amplification in cancer | |||
291 |
Description
Sarah Teichmann
Head of the Cellular Genetics Programme - Wellcome Sanger Institute - Cambridge UK
Lab homepage: https://www.sanger.ac.uk/group/teichmann-group/
Venue: zoom conference
https://nih.zoomgov.com/j/1619988709?pwd=dEIwM0ExOXFtSjNqd0xmcGJCVEk5QT09
Meeting ID: 161 998 8709
Passcode: 20892
Summary
The cellular landscape of the human gastrointestinal tract is dynamic throughout ...Read More
Sarah Teichmann
Head of the Cellular Genetics Programme - Wellcome Sanger Institute - Cambridge UK
Lab homepage: https://www.sanger.ac.uk/group/teichmann-group/
Venue: zoom conference
https://nih.zoomgov.com/j/1619988709?pwd=dEIwM0ExOXFtSjNqd0xmcGJCVEk5QT09
Meeting ID: 161 998 8709
Passcode: 20892
Summary
The cellular landscape of the human gastrointestinal tract is dynamic throughout life, changing in response to changing functional requirements and environmental exposures. While the human intestines has been explored in depth, we present a comprehensive single-cell analysis across gut regions, and throughout development, adulthood for the first time. Using single-cell RNAseq and VDJ analysis, we survey all cell lineages in the healthy developing, paediatric and adult human gut, including 347,980 cells from up to 10 distinct anatomical sites. We identify BEST4+ enterocytes throughout the gut and implicate Tuft cells in IgG sensing. We define novel cell populations in the developing enteric nervous system and show patterned expression of irritable bowel syndrome and Hirschsprung’s disease. In addition, we identify key cell players and communication networks initiating lymphoid structure formation in early human development. We show that lymphoid organogenesis programs are adopted in inflammatory bowel disease to recruit and retain immune cells at the site of inflammation.
Brief Bio
Sarah Teichmann is interested in global principles of regulation of gene expression and protein complexes, with a focus on immunity. Sarah did her PhD at the MRC Laboratory of Molecular Biology, Cambridge, UK and was a Beit Memorial Fellow at University College London. She started her group at the MRC Laboratory of Molecular Biology in 2001, discovering stereotypical pathways of assembly and evolution of protein complexes during this time. In 2013, she moved to the Wellcome Genome Campus in Hinxton/Cambridge, jointly with the EMBL-European Bioinformatics Institute and the Wellcome Sanger Institute (WSI). In February 2016 she became Head of the Cellular Genetics Programme at the WSI and co-founded the Human Cell Atlas international initiative which she continues to lead. Sarah was elected a member of EMBO in 2012, a fellow of the Academy of Medical Sciences in 2015 and a fellow of the Royal Society in 2020.
For more information, contact:
Gregoire.altan-bonnet@nih.gov
DetailsOrganizerSystems Biology Interest GroupWhenTue, Feb 09, 2021 - 10:30 am - 11:30 amWhereOnline |
Sarah Teichmann Head of the Cellular Genetics Programme - Wellcome Sanger Institute - Cambridge UK Lab homepage: https://www.sanger.ac.uk/group/teichmann-group/ Venue: zoom conference https://nih.zoomgov.com/j/1619988709?pwd=dEIwM0ExOXFtSjNqd0xmcGJCVEk5QT09 Meeting ID: 161 998 8709 Passcode: 20892 Summary The cellular landscape of the human gastrointestinal tract is dynamic throughout life, changing in response to changing functional requirements and environmental exposures. While the human intestines has been explored in depth, we present a comprehensive single-cell analysis across gut regions, and throughout development, adulthood for the first time. Using single-cell RNAseq and VDJ analysis, we survey all cell lineages in the healthy developing, paediatric and adult human gut, including 347,980 cells from up to 10 distinct anatomical sites. We identify BEST4+ enterocytes throughout the gut and implicate Tuft cells in IgG sensing. We define novel cell populations in the developing enteric nervous system and show patterned expression of irritable bowel syndrome and Hirschsprung’s disease. In addition, we identify key cell players and communication networks initiating lymphoid structure formation in early human development. We show that lymphoid organogenesis programs are adopted in inflammatory bowel disease to recruit and retain immune cells at the site of inflammation. Brief Bio Sarah Teichmann is interested in global principles of regulation of gene expression and protein complexes, with a focus on immunity. Sarah did her PhD at the MRC Laboratory of Molecular Biology, Cambridge, UK and was a Beit Memorial Fellow at University College London. She started her group at the MRC Laboratory of Molecular Biology in 2001, discovering stereotypical pathways of assembly and evolution of protein complexes during this time. In 2013, she moved to the Wellcome Genome Campus in Hinxton/Cambridge, jointly with the EMBL-European Bioinformatics Institute and the Wellcome Sanger Institute (WSI). In February 2016 she became Head of the Cellular Genetics Programme at the WSI and co-founded the Human Cell Atlas international initiative which she continues to lead. Sarah was elected a member of EMBO in 2012, a fellow of the Academy of Medical Sciences in 2015 and a fellow of the Royal Society in 2020. For more information, contact: Gregoire.altan-bonnet@nih.gov | 2021-02-09 10:30:00 | Online | Online | Systems Biology Interest Group | 0 | Mapping the human gastrointestinal tract through space and time | ||||
260 |
Description
Register
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive ...Read More
Register
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: describe the purpose of Tidyverse packages; select certain columns or rows in a data frame; describe the function of the pipe operator; add new columns to a dataframe that are functions of existing columns; use the split-apply-combine concept for data analysis; use summarize, group by, and count to split a data frame into groups of observations, apply summary statistics for each group, and then combine the results; describe the concept of a wide and a long table format and for which purpose those formats are useful; describe the function of key-value pairs; reshape a data frame using the gather commands from the tidyr package; export a data frame to a .csv file.
Students are encouraged to install R and RStudio and dowload the class date before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
DetailsOrganizerNIH Training LibraryWhenWed, Feb 10, 2021 - 1:00 pm - 2:15 pmWhereOnline |
Register Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: describe the purpose of Tidyverse packages; select certain columns or rows in a data frame; describe the function of the pipe operator; add new columns to a dataframe that are functions of existing columns; use the split-apply-combine concept for data analysis; use summarize, group by, and count to split a data frame into groups of observations, apply summary statistics for each group, and then combine the results; describe the concept of a wide and a long table format and for which purpose those formats are useful; describe the function of key-value pairs; reshape a data frame using the gather commands from the tidyr package; export a data frame to a .csv file. Students are encouraged to install R and RStudio and dowload the class date before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. | 2021-02-10 13:00:00 | Online | Programming | Online | NIH Training Library | 0 | Data Wrangling in R | |||
287 |
Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
No appointments are necessary, and all problems are welcome.
Zoom URL: https://nih.zoomgov.com/j/1611555063?pwd=bitYd0RtOHhPQjd2NDhxMFJrRHVVdz09
Meeting ID: 161 155 5063
Passcode: 707656
Please observe the following etiquette/protocol when joining:
There will be a main room treated as a lobby and triage area. There, you can talk to one or a few staff members who will try to understand basic information about your issue. Then you may be invited to join to a staff member's personal breakout room for more detailed 1:1 consultation. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Attendees are highly encouraged to
- mute when not speaking
- refrain from screen sharing unless asked to do so
- screen share as you would in a public space with the understanding that other NIH HPC users and staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users
See you there!
DetailsOrganizerHPC BiowulfWhenWed, Feb 10, 2021 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. No appointments are necessary, and all problems are welcome. Zoom URL: https://nih.zoomgov.com/j/1611555063?pwd=bitYd0RtOHhPQjd2NDhxMFJrRHVVdz09 Meeting ID: 161 155 5063 Passcode: 707656 Please observe the following etiquette/protocol when joining: There will be a main room treated as a lobby and triage area. There, you can talk to one or a few staff members who will try to understand basic information about your issue. Then you may be invited to join to a staff member's personal breakout room for more detailed 1:1 consultation. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Attendees are highly encouraged to - mute when not speaking - refrain from screen sharing unless asked to do so - screen share as you would in a public space with the understanding that other NIH HPC users and staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users See you there! | 2021-02-10 13:00:00 | Online | NIH High Performance Unix Cluster Biowulf | Online | HPC Biowulf | 0 | Next edition of the NIH HPC monthly Zoom-In Consults! | |||
261 |
Description
Register
QIAGEN’s Ingenuity Variant Analysis (IVA) has been replaced by QIAGEN Clinical Insight Interpret – Translational (QCII-T), which combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based on published biological evidence and your knowledge of disease biology. QCII-T allows you to interrogate variants from multiple biological perspectives, explore ...Read More
Register
QIAGEN’s Ingenuity Variant Analysis (IVA) has been replaced by QIAGEN Clinical Insight Interpret – Translational (QCII-T), which combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based on published biological evidence and your knowledge of disease biology. QCII-T allows you to interrogate variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. This class will focus on how to use QCII-T to upload datasets, efficiently use different filtering mechanisms to identify causal variants, and export data. Participants will also review feature changes migrating from Ingenuity Variant Analysis to QCII-T.
DetailsOrganizerNIH Training LibraryWhenThu, Feb 11, 2021 - 10:00 am - 11:30 amWhereOnline |
Register QIAGEN’s Ingenuity Variant Analysis (IVA) has been replaced by QIAGEN Clinical Insight Interpret – Translational (QCII-T), which combines analytical tools and integrated content to help you rapidly identify and prioritize variants by drilling down to a small, targeted subset of compelling variants based on published biological evidence and your knowledge of disease biology. QCII-T allows you to interrogate variants from multiple biological perspectives, explore different biological hypotheses, and identify the most promising variants for follow-up. This class will focus on how to use QCII-T to upload datasets, efficiently use different filtering mechanisms to identify causal variants, and export data. Participants will also review feature changes migrating from Ingenuity Variant Analysis to QCII-T. | 2021-02-11 10:00:00 | Online | Variant Analysis | Online | NIH Training Library | 0 | Identifying, Interpreting, and Prioritizing Causal Variants Using QCII-T | |||
957 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Feb 11, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-02-11 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
288 |
Description
registration is required
ODSS is launching a new ...Read More
registration is required
ODSS is launching a new seminar series to highlight exemplars of data sharing and reuse on Feb. 12 at noon EST. The monthly series will highlight researchers who have taken existing data and found clever ways to reuse the data or generate new findings.
The February seminar will be presented by Russ Poldrack, Ph.D., who will speak on “An Open Ecosystem for Data Sharing in Human Neuroscience." Poldrack will discuss data sharing efforts related to the OpenNeuro project and the various infrastructure parts—such as Brain Imaging Data Structure, or BIDS—that play a role. He will also share lessons learned in the neuroimaging community as data sharing becomes more common.
Poldrack is the Albert Ray Lang Professor of Psychology at Stanford University and the director of both the Stanford Center for Reproducible Neuroscience and Stanford Data Science Institute’s Center for Open and Reproducible Science.
The seminar is open to the public and a recording will be available after the event. We hope you will join us and spread the word!
Individuals who need interpreting services and/or other reasonable accommodations to participate in this event should contact Erin Walker, erin.walker@nih.gov or 301-827-9655, or the Federal Relay Service at 800-877-8339. Requests should be made at least three days in advance of the event.
Thanks,
Erin
DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenFri, Feb 12, 2021 - 12:00 pm - 1:00 pmWhereOnline |
registration is required ODSS is launching a new seminar series to highlight exemplars of data sharing and reuse on Feb. 12 at noon EST. The monthly series will highlight researchers who have taken existing data and found clever ways to reuse the data or generate new findings. The February seminar will be presented by Russ Poldrack, Ph.D., who will speak on “An Open Ecosystem for Data Sharing in Human Neuroscience." Poldrack will discuss data sharing efforts related to the OpenNeuro project and the various infrastructure parts—such as Brain Imaging Data Structure, or BIDS—that play a role. He will also share lessons learned in the neuroimaging community as data sharing becomes more common. Poldrack is the Albert Ray Lang Professor of Psychology at Stanford University and the director of both the Stanford Center for Reproducible Neuroscience and Stanford Data Science Institute’s Center for Open and Reproducible Science. The seminar is open to the public and a recording will be available after the event. We hope you will join us and spread the word! Individuals who need interpreting services and/or other reasonable accommodations to participate in this event should contact Erin Walker, erin.walker@nih.gov or 301-827-9655, or the Federal Relay Service at 800-877-8339. Requests should be made at least three days in advance of the event. Thanks, Erin | 2021-02-12 12:00:00 | Online | Data Resources | Online | NIH Office of Data Science Strategy (ODSS) | 0 | Data Sharing and Reuse Seminar Series | |||
293 |
Description
Speaker is Dr. Michal Linial from the Hebrew University of Jerusalem, Israel.
Abstract:
Incredible progress has also been made in the field of cancer genetics with the sequencing and molecular profiling of tens of thousands of tumors into comprehensive resources such as The Cancer Genome Atlas (TCGA). Based on this rich data, hundreds of cancer driver genes have been established and curated. In this talk, I will discuss some of the challenges in cancer genetics ...Read More
Speaker is Dr. Michal Linial from the Hebrew University of Jerusalem, Israel.
Abstract:
Incredible progress has also been made in the field of cancer genetics with the sequencing and molecular profiling of tens of thousands of tumors into comprehensive resources such as The Cancer Genome Atlas (TCGA). Based on this rich data, hundreds of cancer driver genes have been established and curated. In this talk, I will discuss some of the challenges in cancer genetics by rephrasing the famous dictum - nothing in cancer makes sense except in the light of evolution. I will follow the presence of ultra-rare genetic variants in the population cohort as a lead to overlooked predisposed cancer signal. Then, I will present a comprehensive catalog of genes sorted by their selection, called FABRIC. It covers the entire human coding genome across 33 cancer types and pan-cancer. The methodology is based on rigorous and robust statistics reflecting the underlying protein-positive selection signal and presenting genes as candidates for driving tumorigenesis success. Finally, I will introduce PWAS, a proteome centric association gene-based method, and its relevance to cancer predisposition signal in the human population.
For more: (1) Rasnic R, Linial N, Linial M. (2020) Sci Rep; (2) Brandes N, Linial N, Linial M. (2020)
Genome Biol; (3) Kelman G, Brandes N, Linial M. (2020) Cancer Res.
Join Zoom Meeting
https://umd.zoom.us/j/91843071125
Meeting ID: 918 4307 1125
One tap mobile
+13017158592,,91843071125# US (Washington DC)
+19294362866,,91843071125# US (New York)
Thanks,
Sushant
DetailsOrganizerCDSLWhenWed, Feb 17, 2021 - 11:00 am - 12:00 pmWhereOnline |
Speaker is Dr. Michal Linial from the Hebrew University of Jerusalem, Israel. Abstract: Incredible progress has also been made in the field of cancer genetics with the sequencing and molecular profiling of tens of thousands of tumors into comprehensive resources such as The Cancer Genome Atlas (TCGA). Based on this rich data, hundreds of cancer driver genes have been established and curated. In this talk, I will discuss some of the challenges in cancer genetics by rephrasing the famous dictum - nothing in cancer makes sense except in the light of evolution. I will follow the presence of ultra-rare genetic variants in the population cohort as a lead to overlooked predisposed cancer signal. Then, I will present a comprehensive catalog of genes sorted by their selection, called FABRIC. It covers the entire human coding genome across 33 cancer types and pan-cancer. The methodology is based on rigorous and robust statistics reflecting the underlying protein-positive selection signal and presenting genes as candidates for driving tumorigenesis success. Finally, I will introduce PWAS, a proteome centric association gene-based method, and its relevance to cancer predisposition signal in the human population. For more: (1) Rasnic R, Linial N, Linial M. (2020) Sci Rep; (2) Brandes N, Linial N, Linial M. (2020) Genome Biol; (3) Kelman G, Brandes N, Linial M. (2020) Cancer Res. Join Zoom Meeting https://umd.zoom.us/j/91843071125 Meeting ID: 918 4307 1125 One tap mobile +13017158592,,91843071125# US (Washington DC) +19294362866,,91843071125# US (New York) Thanks, Sushant | 2021-02-17 11:00:00 | Online | Cancer,Proteomics | Online | CDSL | 0 | The footprints of evolution in cancer proteome | |||
286 |
Description
Event is free, but registration is required. Register here to ...Read More
Event is free, but registration is required. Register here to attend.
Join the Office of Cancer Clinical Proteomics Research (OCCPR) for our 2021 webinar series! Hear from our Clinical Proteomic Tumor Analysis Consortium (CPTAC) scientists about their research and current projects.
Webinar Presenter: Dr. Sam Payne, Brigham Young University
Description: Although cancer is caused by DNA mutations, cancer treatment focuses on the dysfunctional cellular state including aberrant protein abundance and phosphorylation signaling. Thus improvement for cancer care requires a multi-omics perspective. This talk will discuss proteogenomic data generated by CPTAC and methods for multi-omics data analysis.
The CPTAC program is run by the OCCPR who aims to improve prevention, early detection, diagnosis, and treatment of cancer by bringing more understanding to the molecular underpinning of cancer through proteogenome science and technology development and providing community resources (data and reagents).
To sign up for CPTAC updates click here.
For more information, please contact La’Toya Kelly.
DetailsOrganizerOffice of Cancer Clinical Proteomics ResearchWhenThu, Feb 18, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Event is free, but registration is required. Register here to attend. Join the Office of Cancer Clinical Proteomics Research (OCCPR) for our 2021 webinar series! Hear from our Clinical Proteomic Tumor Analysis Consortium (CPTAC) scientists about their research and current projects. Webinar Presenter: Dr. Sam Payne, Brigham Young University Description: Although cancer is caused by DNA mutations, cancer treatment focuses on the dysfunctional cellular state including aberrant protein abundance and phosphorylation signaling. Thus improvement for cancer care requires a multi-omics perspective. This talk will discuss proteogenomic data generated by CPTAC and methods for multi-omics data analysis. The CPTAC program is run by the OCCPR who aims to improve prevention, early detection, diagnosis, and treatment of cancer by bringing more understanding to the molecular underpinning of cancer through proteogenome science and technology development and providing community resources (data and reagents). To sign up for CPTAC updates click here. For more information, please contact La’Toya Kelly. | 2021-02-18 13:00:00 | Online | Omics | Online | Office of Cancer Clinical Proteomics Research | 0 | Using Multi-omics Data to Understand the Cancer Phenotype | |||
956 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Feb 18, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projecctions, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-02-18 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq Analysis on NIDAP | ||
297 |
Description
coming Monday we'll be having a guest lecture by Dr. Jian Peng from UIUC.
Abstract:
Recent advances in functional genomics have enabled large-scale measurements of molecular interactions, functional activities, and the impact of genetic perturbations. Integrating evolutionary couplings, structural patterns, and functional annotations from high-throughput measurements will enhance our capability to predict molecular function, discover their roles in biological processes underlying diseases, and develop novel therapeutics. In this talk, I will first present a few ...Read More
coming Monday we'll be having a guest lecture by Dr. Jian Peng from UIUC.
Abstract:
Recent advances in functional genomics have enabled large-scale measurements of molecular interactions, functional activities, and the impact of genetic perturbations. Integrating evolutionary couplings, structural patterns, and functional annotations from high-throughput measurements will enhance our capability to predict molecular function, discover their roles in biological processes underlying diseases, and develop novel therapeutics. In this talk, I will first present a few deep learning algorithms for protein structure prediction and sequence-to-function mapping for protein engineering and antibody design. I will also describe our most recent work on small-molecule structure prediction and property prediction with applications to drug discovery.
Bio:
Jian Peng is an Associate Professor of Computer Science at the University of Illinois at Urbana-Champaign. Before joining Illinois, Jian was a postdoc at CSAIL at MIT and a visiting scientist at the Whitehead Institute for Biomedical Research. He obtained his Ph.D. in Computer Science from Toyota Technological Institute at Chicago in 2013. His research interests include bioinformatics, cheminformatics, and machine learning. Algorithms developed by Jian and his co-workers were successful in several scientific challenges, including the Critical Assessment of Protein Structure Prediction (CASP) competitions and a few DREAM challenges on translational medicine and pharmacogenomics. Recently, Jian has received an Overton Prize, an NSF CAREER Award, a PhRMA Foundation Award, and an Alfred P. Sloan Research Fellowship.
Join Zoom Meeting
https://umd.zoom.us/j/91843071125
Meeting ID: 918 4307 1125
One tap mobile
+13017158592,,91843071125# US (Washington DC)
+19294362866,,91843071125# US (New York)
DetailsOrganizerCDSLWhenMon, Feb 22, 2021 - 3:00 pm - 4:00 pmWhereOnline |
coming Monday we'll be having a guest lecture by Dr. Jian Peng from UIUC. Abstract: Recent advances in functional genomics have enabled large-scale measurements of molecular interactions, functional activities, and the impact of genetic perturbations. Integrating evolutionary couplings, structural patterns, and functional annotations from high-throughput measurements will enhance our capability to predict molecular function, discover their roles in biological processes underlying diseases, and develop novel therapeutics. In this talk, I will first present a few deep learning algorithms for protein structure prediction and sequence-to-function mapping for protein engineering and antibody design. I will also describe our most recent work on small-molecule structure prediction and property prediction with applications to drug discovery. Bio: Jian Peng is an Associate Professor of Computer Science at the University of Illinois at Urbana-Champaign. Before joining Illinois, Jian was a postdoc at CSAIL at MIT and a visiting scientist at the Whitehead Institute for Biomedical Research. He obtained his Ph.D. in Computer Science from Toyota Technological Institute at Chicago in 2013. His research interests include bioinformatics, cheminformatics, and machine learning. Algorithms developed by Jian and his co-workers were successful in several scientific challenges, including the Critical Assessment of Protein Structure Prediction (CASP) competitions and a few DREAM challenges on translational medicine and pharmacogenomics. Recently, Jian has received an Overton Prize, an NSF CAREER Award, a PhRMA Foundation Award, and an Alfred P. Sloan Research Fellowship. Join Zoom Meeting https://umd.zoom.us/j/91843071125 Meeting ID: 918 4307 1125 One tap mobile +13017158592,,91843071125# US (Washington DC) +19294362866,,91843071125# US (New York) | 2021-02-22 15:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CDSL | 0 | Machine Learning Algorithms for Structural and Functional Genomics | |||
294 |
Description
Register
Description
DNASTAR offers software solutions for molecular biology, protein analysis, and genomics. In this one hour webinar attendees will be presented with an overview of the applications included in Lasergene Molecular Biology and Protein. The webinar will use the latest software version, Lasergene 17.2.1, to provide demonstrations of various workflows, including: cloning and primer design, auto-annotation, multiple sequence (phylogenetic) alignment, Sanger sequence assembly/alignment, and protein analysis including 3D structure visualization.
Speaker: Dr. Carl-Erik Tornqvist, Sales Manager, DNASTAR
For questions, contact Dr. Daoud Meerzaman.
DetailsOrganizerCBIITWhenTue, Feb 23, 2021 - 9:30 am - 10:30 amWhereOnline |
Register Description DNASTAR offers software solutions for molecular biology, protein analysis, and genomics. In this one hour webinar attendees will be presented with an overview of the applications included in Lasergene Molecular Biology and Protein. The webinar will use the latest software version, Lasergene 17.2.1, to provide demonstrations of various workflows, including: cloning and primer design, auto-annotation, multiple sequence (phylogenetic) alignment, Sanger sequence assembly/alignment, and protein analysis including 3D structure visualization. Speaker: Dr. Carl-Erik Tornqvist, Sales Manager, DNASTAR For questions, contact Dr. Daoud Meerzaman. | 2021-02-23 09:30:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to DNASTAR Lasergene | |||
295 |
Description
Register
Description
Join us to learn more about <...Read More
Register
Description
Join us to learn more about MetaCore, an integrated and curated knowledge database and software suite for pathway analysis of experimental data and gene lists.
This workshop will review two case studies. The first case will show how infiltrating myeloid derived suppressor cells could be helping tumor cells evade the immune system. The second case will demonstrate how to use the analysis of RNA-seq, metabolomic, and proteomics data to discover potential disease mechanisms and biomarkers in patients with sepsis.
For questions, contact Dr. Daoud Meerzaman.
DetailsOrganizerCBIITWhenWed, Feb 24, 2021 - 10:00 am - 11:00 amWhereOnline |
Register Description Join us to learn more about MetaCore, an integrated and curated knowledge database and software suite for pathway analysis of experimental data and gene lists. This workshop will review two case studies. The first case will show how infiltrating myeloid derived suppressor cells could be helping tumor cells evade the immune system. The second case will demonstrate how to use the analysis of RNA-seq, metabolomic, and proteomics data to discover potential disease mechanisms and biomarkers in patients with sepsis. For questions, contact Dr. Daoud Meerzaman. | 2021-02-24 10:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to MetaCore | |||
292 |
Description
Register/Join
Dennis A. Dean II. Ph.D. serves as a Principle Investigator at Seven Bridges.
In this upcoming Cancer Genome Cloud (CGC) monthly webinar, Dr. Dennis Dean will share his experience working with members of the Patient-Derived Xenografts Development and Trial Centers Research Network (PDXNet) teams to make the data available through the CGC.During the ...Read More
Register/Join
Dennis A. Dean II. Ph.D. serves as a Principle Investigator at Seven Bridges.
In this upcoming Cancer Genome Cloud (CGC) monthly webinar, Dr. Dennis Dean will share his experience working with members of the Patient-Derived Xenografts Development and Trial Centers Research Network (PDXNet) teams to make the data available through the CGC.During the webinar, Dr. Dean will discuss:
DetailsOrganizerCBIITWhenWed, Feb 24, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Register/Join Dennis A. Dean II. Ph.D. serves as a Principle Investigator at Seven Bridges. In this upcoming Cancer Genome Cloud (CGC) monthly webinar, Dr. Dennis Dean will share his experience working with members of the Patient-Derived Xenografts Development and Trial Centers Research Network (PDXNet) teams to make the data available through the CGC.During the webinar, Dr. Dean will discuss: the standardized operating procedures for collecting, processing, and validating data in the CGC. novel tools to accelerate data collection and publishing of PDXNet resources. As one of NCI’s Cloud Resources, the CGC provides researchers access to a wide variety of data sets from NCI’s Cancer Research Data Commons along with a catalog of tools to analyze and visualize the data directly from the browser. The webinar series is free and available to the public. | 2021-02-24 14:00:00 | Online | Cancer,Cloud | Online | CBIIT | 0 | Cancer Genome Cloud: A Model for Advancing Pre-Clinical Trials on the Cancer Genomics Cloud—The PDXNet Story | |||
958 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Feb 25, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-02-25 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
279 |
Description
Register
Participants will learn how to use the point-and-click interface in Partek Flow for RNA-Seq analysis to go from raw data to experimental results. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish RNA-Seq data analysis.
Register
Participants will learn how to use the point-and-click interface in Partek Flow for RNA-Seq analysis to go from raw data to experimental results. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish RNA-Seq data analysis.
DetailsOrganizerNIH Training LibraryWhenTue, Mar 02, 2021 - 10:30 am - 1:00 pmWhereOnline |
Register Participants will learn how to use the point-and-click interface in Partek Flow for RNA-Seq analysis to go from raw data to experimental results. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish RNA-Seq data analysis. | 2021-03-02 10:30:00 | Online | Bulk RNA-Seq | Online | NIH Training Library | 0 | Bulk RNA-Seq Data Analysis in Partek Flow | |||
296 |
Description
The class is free but registration is required.
You can register at https://hpc.nih.gov/nih/classes/
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #1 will provide an introduction to the Deep Learning with Keras, and then focus on Convolutional Neural ...Read More
The class is free but registration is required.
You can register at https://hpc.nih.gov/nih/classes/
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #1 will provide an introduction to the Deep Learning with Keras, and then focus on Convolutional Neural Networks as applied to semantic segmentation of bioimages.
Expected knowledge: Basic Python, Basic Linux/Unix
This class is part of a series, but each class is stand-alone. The class will be webcast.
Instructor: Gennady Denisov (NIH HPC staff)
DetailsWhenWed, Mar 03, 2021 - 9:30 am - 10:30 amWhereOnline |
The class is free but registration is required. You can register at https://hpc.nih.gov/nih/classes/ This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #1 will provide an introduction to the Deep Learning with Keras, and then focus on Convolutional Neural Networks as applied to semantic segmentation of bioimages. Expected knowledge: Basic Python, Basic Linux/Unix This class is part of a series, but each class is stand-alone. The class will be webcast. Instructor: Gennady Denisov (NIH HPC staff) | 2021-03-03 09:30:00 | Online | Artificial Intelligence / Machine Learning | Online | 0 | Deep Learning by Example on Biowulf - Class #1 | ||||
280 |
Description
Register
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research.
Register
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research.
DetailsOrganizerNIH Training LibraryWhenWed, Mar 03, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Register This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research. | 2021-03-03 13:00:00 | Online | Variant Analysis | Online | NIH Training Library | 0 | Variant Selection in Genomics DNA Sequences | |||
281 |
Description
Register
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis.
Register
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis.
DetailsOrganizerNIH Training LibraryWhenThu, Mar 04, 2021 - 10:30 am - 1:00 pmWhereOnline |
Register Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis. | 2021-03-04 10:30:00 | Online | Online | NIH Training Library | 0 | Single Cell RNA-Seq Data Analysis in Partek Flow | ||||
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Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Mar 04, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-03-04 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq Analysis on NIDAP | ||
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Description
Overview:
The Human Cell Atlas (HCA) is an ambitious global initiative that aims to create a comprehensive reference map of all human cells—the fundamental units of life—as a basis for both understanding human health and diagnosing, monitoring, and treating disease. Co-founded by Dr. Sarah Teichmann from the Wellcome Sanger Institute in the UK, and Dr Aviv Regev from the Broad Institute of MIT and Harvard in the US, the HCA was launched in ...Read More
Overview:
The Human Cell Atlas (HCA) is an ambitious global initiative that aims to create a comprehensive reference map of all human cells—the fundamental units of life—as a basis for both understanding human health and diagnosing, monitoring, and treating disease. Co-founded by Dr. Sarah Teichmann from the Wellcome Sanger Institute in the UK, and Dr Aviv Regev from the Broad Institute of MIT and Harvard in the US, the HCA was launched in London in 2016. The HCA’s ground-breaking approach is providing unprecedented understanding of human cells and tissue architecture in health and diseases including Covid-19, cancer, and respiratory and auto-immune diseases.
Presenter’s Bio:
Dr. Sarah Teichmann is interested in global principles of regulation of gene expression and protein complexes, with a focus on immunity. She did her PhD at the MRC Laboratory of Molecular Biology, Cambridge, UK and was a Beit Memorial Fellow at University College London. She started her group at the MRC Laboratory of Molecular Biology in 2001, discovering stereotypical pathways of assembly and evolution of protein complexes during this time. In 2013, she moved to the Wellcome Genome Campus in Hinxton/Cambridge, jointly with the EMBL-European Bioinformatics Institute and the Wellcome Sanger Institute (WSI). In February 2016, Dr. Teichmann became head of the Cellular Genetics Programme at the WSI and co-founded the Human Cell Atlas international initiative, which she continues to lead. She was elected a member of EMBO in 2012, a fellow of the Academy of Medical Sciences in 2015, and a fellow of the Royal Society in 2020.
About the NIDCR Clinical Research Fellowship Grand Rounds:
NIDCR Clinical Research Fellowship Grand Rounds began in early 2014 and occur four times a year. Leading scientists and clinicians address advances in clinical, translational, and basic research in areas related to the dental, oral, and craniofacial complex and bone metabolism.
To watch the lecture online, please visit https://nih.zoomgov.com/j/1605047868?pwd=Vk9HbXVZVG8vcjBpeVRzd09kUGJhQT09
Meeting ID: 160 504 7868
Passcode: 324257
One tap mobile
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For questions, please contact Ms. Kendra Pope at kendra.pope@nih.gov
DetailsOrganizerNIDCRWhenFri, Mar 05, 2021 - 10:00 am - 11:00 amWhereOnline |
Overview: The Human Cell Atlas (HCA) is an ambitious global initiative that aims to create a comprehensive reference map of all human cells—the fundamental units of life—as a basis for both understanding human health and diagnosing, monitoring, and treating disease. Co-founded by Dr. Sarah Teichmann from the Wellcome Sanger Institute in the UK, and Dr Aviv Regev from the Broad Institute of MIT and Harvard in the US, the HCA was launched in London in 2016. The HCA’s ground-breaking approach is providing unprecedented understanding of human cells and tissue architecture in health and diseases including Covid-19, cancer, and respiratory and auto-immune diseases. Presenter’s Bio: Dr. Sarah Teichmann is interested in global principles of regulation of gene expression and protein complexes, with a focus on immunity. She did her PhD at the MRC Laboratory of Molecular Biology, Cambridge, UK and was a Beit Memorial Fellow at University College London. She started her group at the MRC Laboratory of Molecular Biology in 2001, discovering stereotypical pathways of assembly and evolution of protein complexes during this time. In 2013, she moved to the Wellcome Genome Campus in Hinxton/Cambridge, jointly with the EMBL-European Bioinformatics Institute and the Wellcome Sanger Institute (WSI). In February 2016, Dr. Teichmann became head of the Cellular Genetics Programme at the WSI and co-founded the Human Cell Atlas international initiative, which she continues to lead. She was elected a member of EMBO in 2012, a fellow of the Academy of Medical Sciences in 2015, and a fellow of the Royal Society in 2020. About the NIDCR Clinical Research Fellowship Grand Rounds: NIDCR Clinical Research Fellowship Grand Rounds began in early 2014 and occur four times a year. Leading scientists and clinicians address advances in clinical, translational, and basic research in areas related to the dental, oral, and craniofacial complex and bone metabolism. To watch the lecture online, please visit https://nih.zoomgov.com/j/1605047868?pwd=Vk9HbXVZVG8vcjBpeVRzd09kUGJhQT09 Meeting ID: 160 504 7868 Passcode: 324257 One tap mobile +16692545252,,1605047868#,,,,*324257# US (San Jose) +16468287666,,1605047868#,,,,*324257# US (New York) For questions, please contact Ms. Kendra Pope at kendra.pope@nih.gov | 2021-03-05 10:00:00 | Online | Data Resources | Online | NIDCR | 0 | Human Cell Atlas: Mapping the Human Body One Cell at a Time | |||
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Description
Register
Participants will learn how to perform analysis for ATAC-Seq/ChIP-Seq data in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish ATAC-Seq/ChIP-Seq data analysis.
Register
Participants will learn how to perform analysis for ATAC-Seq/ChIP-Seq data in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish ATAC-Seq/ChIP-Seq data analysis.
DetailsOrganizerNIH Training LibraryWhenFri, Mar 05, 2021 - 10:30 am - 1:00 pmWhereOnline |
Register Participants will learn how to perform analysis for ATAC-Seq/ChIP-Seq data in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish ATAC-Seq/ChIP-Seq data analysis. | 2021-03-05 10:30:00 | Online | Online | NIH Training Library | 0 | ATAC-Seq/ChIP-Seq Data Analysis in Partek Flow | ||||
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Description
Speaker:
Patrick D. Schloss, PhD
Frederick G. Novy Collegiate Professor of Microbiome Research
Department of Microbiology & Immunology
University of Michigan Medical School
Abstract:
The “reproducibility crisis” in science affects microbiology as much as any other area of inquiry, and microbiologists have long struggled to make their research reproducible. Schloss recently delineated a framework for identifying and overcoming threats to reproducibility, replicability, robustness, and generalizability of microbiome research that is broadly applicable to other areas ...Read More
Speaker:
Patrick D. Schloss, PhD
Frederick G. Novy Collegiate Professor of Microbiome Research
Department of Microbiology & Immunology
University of Michigan Medical School
Abstract:
The “reproducibility crisis” in science affects microbiology as much as any other area of inquiry, and microbiologists have long struggled to make their research reproducible. Schloss recently delineated a framework for identifying and overcoming threats to reproducibility, replicability, robustness, and generalizability of microbiome research that is broadly applicable to other areas of microbiology. There are many reasons why a researcher is unable to reproduce a previous result, and even if a result is reproducible, it may not be correct. Furthermore, failures to reproduce previous results have much to teach us about the scientific process and microbial life itself. To help safeguard against threats to reproducibility, Schloss developed the Riffomonas Reproducible Research tutorial series. This is a collection of tutorials that focuses on the improvement of reproducible data analysis for those doing microbial ecology research. Although the materials focus on issues in microbial ecology, the principles are broadly applicable. Each tutorial presents broad concepts and how they are related to reproducibility as well as applied practice using specific tools that are designed to foster reproducibility. Instead of seeing signs of a crisis in others’ work, we need to appreciate the technical and social difficulties that limit reproducibility in the work of others as well as our own.
Join ZoomGov Meeting
https://nih.zoomgov.com/j/1617561452?pwd=bE5YOVgrL2tHbFZidUJQOWZzdGlpZz09
Meeting ID: 161 756 1452
Passcode: 586729
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DetailsOrganizerNIAIDWhenFri, Mar 05, 2021 - 12:00 pm - 1:00 pmWhereOnline |
Speaker: Patrick D. Schloss, PhD Frederick G. Novy Collegiate Professor of Microbiome Research Department of Microbiology & Immunology University of Michigan Medical School Abstract: The “reproducibility crisis” in science affects microbiology as much as any other area of inquiry, and microbiologists have long struggled to make their research reproducible. Schloss recently delineated a framework for identifying and overcoming threats to reproducibility, replicability, robustness, and generalizability of microbiome research that is broadly applicable to other areas of microbiology. There are many reasons why a researcher is unable to reproduce a previous result, and even if a result is reproducible, it may not be correct. Furthermore, failures to reproduce previous results have much to teach us about the scientific process and microbial life itself. To help safeguard against threats to reproducibility, Schloss developed the Riffomonas Reproducible Research tutorial series. This is a collection of tutorials that focuses on the improvement of reproducible data analysis for those doing microbial ecology research. Although the materials focus on issues in microbial ecology, the principles are broadly applicable. Each tutorial presents broad concepts and how they are related to reproducibility as well as applied practice using specific tools that are designed to foster reproducibility. Instead of seeing signs of a crisis in others’ work, we need to appreciate the technical and social difficulties that limit reproducibility in the work of others as well as our own. Join ZoomGov Meeting https://nih.zoomgov.com/j/1617561452?pwd=bE5YOVgrL2tHbFZidUJQOWZzdGlpZz09 Meeting ID: 161 756 1452 Passcode: 586729 One tap mobile +16692545252,,1617561452#,,,,*586729# US (San Jose) +16468287666,,1617561452#,,,,*586729# US (New York) | 2021-03-05 12:00:00 | Online | Online | NIAID | 0 | Identifying and overcoming threats to reproducibility, replicability, robustness, and generalizability in microbiology research | ||||
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Description
Zoom Registration
Description
NHGRI will host a new seminar series this year on the “Bold Predictions for Human Genomics by 2030” that are described in NHGRI’s “Strategic Vision for Improving Human Health at the Forefront of Genomics.” The March 8, 2021 seminar will focus on Bold Prediction #2: The biological function(s) of every ...Read More
Zoom Registration
Description
NHGRI will host a new seminar series this year on the “Bold Predictions for Human Genomics by 2030” that are described in NHGRI’s “Strategic Vision for Improving Human Health at the Forefront of Genomics.” The March 8, 2021 seminar will focus on Bold Prediction #2: The biological function(s) of every human gene will be known; for non-coding elements in the human genome, such knowledge will be the rule rather than the exception. Dr. Nancy Cox of Vanderbilt University and Dr. Neville Sanjana of the NY Genome Center will use this prediction as an aspirational theme for their talks, highlighting their own research in the context of that theme and speculating about the next decade in their research area. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV.
Our Speakers
Name:
Nancy Cox, Ph.D.
Organization:
Vanderbilt University
Biosketch:
Dr. Nancy Cox is Director of the Vanderbilt Genetics Institute, Director of the Division of Genetic Medicine, and the Mary Phillips Edmonds Gray Professor of Genetics at Vanderbilt University. She is a quantitative human geneticist with a long-standing research program in identifying and characterizing the genetic component to common human diseases.
Name:
Neville Sanjana, Ph.D.
Organization:
NY Genome Center
Biosketch:
Dr. Neville Sanjana is a Core Faculty Member at the New York Genome Center. He holds a joint appointment as Assistant Professor in the Department of Biology at New York University and is an Assistant Professor of Neuroscience and Physiology at the NYU School of Medicine. As a bioengineer, Dr. Sanjana is focused on creating new tools to understand the impact of genetic changes on the nervous system and cancer evolution.
DetailsOrganizerNHGRIWhenMon, Mar 08, 2021 - 3:00 pm - 4:30 pmWhereOnline |
Zoom Registration Description NHGRI will host a new seminar series this year on the “Bold Predictions for Human Genomics by 2030” that are described in NHGRI’s “Strategic Vision for Improving Human Health at the Forefront of Genomics.” The March 8, 2021 seminar will focus on Bold Prediction #2: The biological function(s) of every human gene will be known; for non-coding elements in the human genome, such knowledge will be the rule rather than the exception. Dr. Nancy Cox of Vanderbilt University and Dr. Neville Sanjana of the NY Genome Center will use this prediction as an aspirational theme for their talks, highlighting their own research in the context of that theme and speculating about the next decade in their research area. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV. Our Speakers Name: Nancy Cox, Ph.D. Organization: Vanderbilt University Biosketch: Dr. Nancy Cox is Director of the Vanderbilt Genetics Institute, Director of the Division of Genetic Medicine, and the Mary Phillips Edmonds Gray Professor of Genetics at Vanderbilt University. She is a quantitative human geneticist with a long-standing research program in identifying and characterizing the genetic component to common human diseases. Name: Neville Sanjana, Ph.D. Organization: NY Genome Center Biosketch: Dr. Neville Sanjana is a Core Faculty Member at the New York Genome Center. He holds a joint appointment as Assistant Professor in the Department of Biology at New York University and is an Assistant Professor of Neuroscience and Physiology at the NYU School of Medicine. As a bioengineer, Dr. Sanjana is focused on creating new tools to understand the impact of genetic changes on the nervous system and cancer evolution. | 2021-03-08 15:00:00 | Online | Genomics | Online | NHGRI | 0 | Bold Predictions for Human Genomics by 2030: An NHGRI Seminar Series | |||
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Description
ZoomGov link for all the individual meetings and the seminar:
https://nih.zoomgov.com/j/1619988709?pwd=dEIwM0ExOXFtSjNqd0xmcGJCVEk5QT09
Meeting ID: 161 998 8709
Passcode: 20892
Presenter:
Cole Trapnell, Ph.D.
Associate Professor
Department of Genome Sciences
University of Washington
Please mark your calendars for our next seminar by Cole Trapnell. He is a familiar name to most genomics researchers, and he actually spent his ...Read More
ZoomGov link for all the individual meetings and the seminar:
https://nih.zoomgov.com/j/1619988709?pwd=dEIwM0ExOXFtSjNqd0xmcGJCVEk5QT09
Meeting ID: 161 998 8709
Passcode: 20892
Presenter:
Cole Trapnell, Ph.D.
Associate Professor
Department of Genome Sciences
University of Washington
Please mark your calendars for our next seminar by Cole Trapnell. He is a familiar name to most genomics researchers, and he actually spent his early years in Maryland. Please note that we are returning to our afternoon time (seminar info below). There are a few openings for a one-on-one meeting with him after his talk. Let me know if you’d like one. Postdocs and students are welcome to join the fellows tea with the speaker right after his talk in the same zoom link as the talk (send me RSVP for my count).
Cole Trapnell developed many widely used bioinformatics tools including TopHat, Cufflinks, Bowtie, and Monocle. His group has also co-developed, along with Jay Shendure’s lab, a scalable workflow for single-cell genomics called “combinatorial cellular indexing”. They recently used this approach to construct a transcriptional atlas for the C. elegans nematode and profile organogenesis in the mouse at whole-embryo scale.
Myong-Hee Sung, Ph.D.
Earl Stadtman Investigator
Chief, Transcription Systems Dynamics and Biology Unit
Laboratory of Molecular Biology and Immunology
National Institute on Aging
NIH
251 Bayview Boulevard, Room 06C226
Baltimore, MD 21224
Office: 410-558-8475
email: sungm@mail.nih.gov
DetailsOrganizerEarl Stadtman Investigator ProgramWhenTue, Mar 09, 2021 - 2:00 pm - 3:00 pmWhereOnline |
ZoomGov link for all the individual meetings and the seminar: https://nih.zoomgov.com/j/1619988709?pwd=dEIwM0ExOXFtSjNqd0xmcGJCVEk5QT09 Meeting ID: 161 998 8709 Passcode: 20892 Presenter: Cole Trapnell, Ph.D. Associate Professor Department of Genome Sciences University of Washington Please mark your calendars for our next seminar by Cole Trapnell. He is a familiar name to most genomics researchers, and he actually spent his early years in Maryland. Please note that we are returning to our afternoon time (seminar info below). There are a few openings for a one-on-one meeting with him after his talk. Let me know if you’d like one. Postdocs and students are welcome to join the fellows tea with the speaker right after his talk in the same zoom link as the talk (send me RSVP for my count). Cole Trapnell developed many widely used bioinformatics tools including TopHat, Cufflinks, Bowtie, and Monocle. His group has also co-developed, along with Jay Shendure’s lab, a scalable workflow for single-cell genomics called “combinatorial cellular indexing”. They recently used this approach to construct a transcriptional atlas for the C. elegans nematode and profile organogenesis in the mouse at whole-embryo scale. Myong-Hee Sung, Ph.D. Earl Stadtman Investigator Chief, Transcription Systems Dynamics and Biology Unit Laboratory of Molecular Biology and Immunology National Institute on Aging NIH 251 Bayview Boulevard, Room 06C226 Baltimore, MD 21224 Office: 410-558-8475 email: sungm@mail.nih.gov | 2021-03-09 14:00:00 | Online | Online | Earl Stadtman Investigator Program | 0 | Single cell spatial and chemical transcriptomics with nuclear oligo hashing | ||||
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Description
Register now to watch the presentation
The term “data commons” is used across NIH to describe data-hosting repositories. But data commons can differ widely in what they offer, from simple storage and infrastructure to full data harmonization, aggregation, and interoperability. At the very minimum data commons usually have a common architecture (i.e., cloud-hosted, ...Read More
Register now to watch the presentation
The term “data commons” is used across NIH to describe data-hosting repositories. But data commons can differ widely in what they offer, from simple storage and infrastructure to full data harmonization, aggregation, and interoperability. At the very minimum data commons usually have a common architecture (i.e., cloud-hosted, multi-tenant) and allow access to data, tools, and computational workspaces. Other non-technical aspects also may be provided, such as data governance; that is, the policies that guide data collection, access, storage, and use in a consistent and structured manner.
In this webinar, Matthew Trunnell will describe how a capability maturity model (CMM) can be applied to the concept of a data commons as a framework for characterizing current projects and prioritizing future efforts. A CMM is a methodology used to guide process development, particularly in areas of software and applied technology. This approach has been applied successfully to enterprise analytics, master data management, and other organizational capabilities. A CMM for a data commons can address both the technological aspects of a commons and the processes supporting its development and operations. As noted by Mr. Trunnell, on the whole, most data commons are relatively early in the maturation process, and this may be sufficient for the majority of efforts. A CMM becomes useful, however, when considering a more inclusive vision of a “data ecosystem."
Presenter:
Matthew Trunnell is acting executive director of the Pandemic Response Commons, a not-for-profit consortium advancing regional data platforms in support of COVID-19 research, including the Chicagoland COVID-19 Commons. As a self-described data commoner, he helps organizations enhance the impact of their research-data assets through engineering, stewardship, and data-centered collaboration.
DetailsOrganizerCBIITWhenWed, Mar 10, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register now to watch the presentation The term “data commons” is used across NIH to describe data-hosting repositories. But data commons can differ widely in what they offer, from simple storage and infrastructure to full data harmonization, aggregation, and interoperability. At the very minimum data commons usually have a common architecture (i.e., cloud-hosted, multi-tenant) and allow access to data, tools, and computational workspaces. Other non-technical aspects also may be provided, such as data governance; that is, the policies that guide data collection, access, storage, and use in a consistent and structured manner. In this webinar, Matthew Trunnell will describe how a capability maturity model (CMM) can be applied to the concept of a data commons as a framework for characterizing current projects and prioritizing future efforts. A CMM is a methodology used to guide process development, particularly in areas of software and applied technology. This approach has been applied successfully to enterprise analytics, master data management, and other organizational capabilities. A CMM for a data commons can address both the technological aspects of a commons and the processes supporting its development and operations. As noted by Mr. Trunnell, on the whole, most data commons are relatively early in the maturation process, and this may be sufficient for the majority of efforts. A CMM becomes useful, however, when considering a more inclusive vision of a “data ecosystem." Presenter: Matthew Trunnell is acting executive director of the Pandemic Response Commons, a not-for-profit consortium advancing regional data platforms in support of COVID-19 research, including the Chicagoland COVID-19 Commons. As a self-described data commoner, he helps organizations enhance the impact of their research-data assets through engineering, stewardship, and data-centered collaboration. | 2021-03-10 11:00:00 | Online | Data Science | Online | CBIIT | 0 | Those Awkward Teenage Years: The Maturing of Data Commons | |||
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Description
Abstract: Targeted quantitative proteomics using multiple/parallel reaction monitoring (MRM, PRM) is already being applied by many researchers in biology, biochemistry, and clinical research laboratories. These methods allow rapid and precise quantitation of proteins in complex biological samples. Multiplexed MRM/PRM experiments are manageable manually for tens of target proteins in tens of samples, but scaling-up to hundreds of targets in thousands of samples is challenging. As a result, the planning, data analysis, and interpretation ...Read More
Abstract: Targeted quantitative proteomics using multiple/parallel reaction monitoring (MRM, PRM) is already being applied by many researchers in biology, biochemistry, and clinical research laboratories. These methods allow rapid and precise quantitation of proteins in complex biological samples. Multiplexed MRM/PRM experiments are manageable manually for tens of target proteins in tens of samples, but scaling-up to hundreds of targets in thousands of samples is challenging. As a result, the planning, data analysis, and interpretation of the results from these experiments are all lengthy processes, usually requiring expertise in bioinformatics and proteomics. The talk will deal with few challenges in designing and running targeted experiments, and will focus on few own recent bioinformatic developments that helped accelerating the design and reducing human error by integrating information. A live demo of two of our tools will be part of the talk, this includes MRMAssayDB – an integrated resource for validated targeted proteomics assays, and the Mouse Quantitative Proteomics Knowledgebase – MouseQuaPro with reference protein concentration ranges in 20 mouse tissues using 5000 quantitative proteomics assays (PMID: 29762640, 33483739, and just accepted manuscript doi:10.1021/acs.jproteome.0c00961).
Bio: Yassene is an assistant professor in bioinformatics at the Center for Proteomics and Metabolomics, Leiden University Medical Center, The Netherlands, and he is leading the bioinformatics core at the University of Victoria Proteomics Centre, Victoria, Canada. He received his PhD in Medical Informatics from the University of Göttingen, Germany. His research interests are targeted and quantitative proteomics, proteomics analysis of animal models, and data and information integration.
Join ZoomGov Meeting
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Meeting ID: 161 295 1422
Passcode: 498713
One tap mobile
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-----------------------------------------------
Aleksandra Nita-Lazar, Ph. D.
Senior Investigator
Chief, Functional Cellular Networks Section
Laboratory of Immune System Biology
National Institute of Allergy and Infectious Diseases
National Institutes of Health
Bldg. 4 Rm. 101
4 Memorial Dr
Bethesda MD 20892-1892
Tel. 301-451-4394
website: www.niaid.nih.gov/lab-sections/3173
email: nitalazarau@niaid.nih.gov
ORCID ID: 0000-0002-8523-605X
DetailsOrganizerNIAIDWhenThu, Mar 11, 2021 - 10:00 am - 11:00 amWhereOnline |
Abstract: Targeted quantitative proteomics using multiple/parallel reaction monitoring (MRM, PRM) is already being applied by many researchers in biology, biochemistry, and clinical research laboratories. These methods allow rapid and precise quantitation of proteins in complex biological samples. Multiplexed MRM/PRM experiments are manageable manually for tens of target proteins in tens of samples, but scaling-up to hundreds of targets in thousands of samples is challenging. As a result, the planning, data analysis, and interpretation of the results from these experiments are all lengthy processes, usually requiring expertise in bioinformatics and proteomics. The talk will deal with few challenges in designing and running targeted experiments, and will focus on few own recent bioinformatic developments that helped accelerating the design and reducing human error by integrating information. A live demo of two of our tools will be part of the talk, this includes MRMAssayDB – an integrated resource for validated targeted proteomics assays, and the Mouse Quantitative Proteomics Knowledgebase – MouseQuaPro with reference protein concentration ranges in 20 mouse tissues using 5000 quantitative proteomics assays (PMID: 29762640, 33483739, and just accepted manuscript doi:10.1021/acs.jproteome.0c00961). Bio: Yassene is an assistant professor in bioinformatics at the Center for Proteomics and Metabolomics, Leiden University Medical Center, The Netherlands, and he is leading the bioinformatics core at the University of Victoria Proteomics Centre, Victoria, Canada. He received his PhD in Medical Informatics from the University of Göttingen, Germany. His research interests are targeted and quantitative proteomics, proteomics analysis of animal models, and data and information integration. Join ZoomGov Meeting https://nih.zoomgov.com/j/1612951422?pwd=bHRlYUVsaTFDWUF6Y2lpNzFDVTVBZz09 Meeting ID: 161 295 1422 Passcode: 498713 One tap mobile +16692545252,,1612951422#,,,,*498713# US (San Jose) +16468287666,,1612951422#,,,,*498713# US (New York) ----------------------------------------------- Aleksandra Nita-Lazar, Ph. D. Senior Investigator Chief, Functional Cellular Networks Section Laboratory of Immune System Biology National Institute of Allergy and Infectious Diseases National Institutes of Health Bldg. 4 Rm. 101 4 Memorial Dr Bethesda MD 20892-1892 Tel. 301-451-4394 website: www.niaid.nih.gov/lab-sections/3173 email: nitalazarau@niaid.nih.gov ORCID ID: 0000-0002-8523-605X | 2021-03-11 10:00:00 | Online | Proteomics | Online | NIAID | 0 | Bioinformatic solutions for designing quantitative targeted proteomics experiments | |||
963 |
Description
Meeting Link
Partek® Flow® bioinformatics software (available to NCI researchers) has undergone recent updates and improvements. Join us for an online training session specifically for NCI researchers where a Partek® scientist will demonstrate new features that bring more speed, ease of use and functionality to your single cell and bulk gene expression studies. Features to ...Read More
Meeting Link
Partek® Flow® bioinformatics software (available to NCI researchers) has undergone recent updates and improvements. Join us for an online training session specifically for NCI researchers where a Partek® scientist will demonstrate new features that bring more speed, ease of use and functionality to your single cell and bulk gene expression studies. Features to be discussed include improved ribosomal QA/QC for single cell data, improved heatmaps and volcano plots, and new pie charts, normalization methods, data integration methods, more descriptive statistics options and much more.
Partek Flow provides a singular environment that reduces the complexity of analyzing and visualizing high dimensional multi-omics sequencing data making bioinformatics accessible to all researchers. It features a graphical interface tailored to biologists, gold standard algorithms, and a constant implementation of new features to accommodate the ever-changing landscape of genomic sequencing technologies.
NCI Scientists: After the class you can access Partek Flow by submitting a request through "NCI at Your Service"
RegisterOrganizerBTEPWhenThu, Mar 11, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link Partek® Flow® bioinformatics software (available to NCI researchers) has undergone recent updates and improvements. Join us for an online training session specifically for NCI researchers where a Partek® scientist will demonstrate new features that bring more speed, ease of use and functionality to your single cell and bulk gene expression studies. Features to be discussed include improved ribosomal QA/QC for single cell data, improved heatmaps and volcano plots, and new pie charts, normalization methods, data integration methods, more descriptive statistics options and much more. Partek Flow provides a singular environment that reduces the complexity of analyzing and visualizing high dimensional multi-omics sequencing data making bioinformatics accessible to all researchers. It features a graphical interface tailored to biologists, gold standard algorithms, and a constant implementation of new features to accommodate the ever-changing landscape of genomic sequencing technologies. NCI Scientists: After the class you can access Partek Flow by submitting a request through "NCI at Your Service" | 2021-03-11 13:00:00 | Online Webinar | Bulk RNA-seq,Single Cell RNA-seq | Online | Uchenna Emechebe PhD (Partek) | BTEP | 0 | Partek Flow Bioinformatics Software, Bulk and Single Cell RNA-Seq New and Improved Features | ||
960 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Mar 11, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-03-11 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
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Description
Register now at https://nih.webex.com/nih/onstage/g.php?MTID=e8b0c0c0e7a6b9c4d221051fb038e4e59. This seminar is open to the public, so please feel free to share broadly.
More Info:
Alisa Manning, Ph.D., will present the March Data Sharing and ...Read More
Register now at https://nih.webex.com/nih/onstage/g.php?MTID=e8b0c0c0e7a6b9c4d221051fb038e4e59. This seminar is open to the public, so please feel free to share broadly.
More Info:
Alisa Manning, Ph.D., will present the March Data Sharing and Reuse Seminar on "Opportunities for NIH Cloud Interoperability Approaches to Improve Outcomes of Pediatric Diseases."
The Pediatric Cardiac Genetics Consortium Study is an observational study of participants with congenital heart defects. The Framingham Heart Study is a longitudinal population cohort of participants and their offspring who had not yet developed overt symptoms of cardiovascular disease or suffered a heart attack or stroke and who have been followed over many years. Whole genome sequence data has been generated in these cohorts by multiple NIH programs, including the Gabriella Miller Kids First Pediatric Research Program and the NHLBI’s Trans-Omics for Precision Medicine Program.
Dr. Manning will present a pilot analysis demonstrating how researchers can gain access to data sets on multiple NIH Cloud Platforms and perform an analysis with data from different NIH programs. She will describe interoperability features that are being championed by the NIH Cloud Platform Interoperability Effort and highlight important data governance lessons encountered along the way.
Dr. Manning is Assistant Investigator, Massachusetts General Hospital; Associated Scientist, Broad Institute; and Instructor, Harvard Medical School.
Individuals who need interpreting services and/or other reasonable accommodations to participate in this event should contact Erin Walker at 301-827-9655 or the Federal Relay Service at 800-877-8339.
Thanks,
Erin Walker, MBA
Communications Specialist
Office of Data Science Strategy
Division of Program Coordination, Planning, and Strategic Initiatives (DPCPSI)
Office of the Director, National Institutes of Health
Bldg. 31, B1C12
301.827.9655
erin.walker@nih.gov
https://datascience.nih.gov
Follow us on Twitter @NIHDataScience and join the conversation at #NIHData
DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenFri, Mar 12, 2021 - 12:00 pm - 1:00 pmWhereOnline |
Register now at https://nih.webex.com/nih/onstage/g.php?MTID=e8b0c0c0e7a6b9c4d221051fb038e4e59. This seminar is open to the public, so please feel free to share broadly. More Info: Alisa Manning, Ph.D., will present the March Data Sharing and Reuse Seminar on "Opportunities for NIH Cloud Interoperability Approaches to Improve Outcomes of Pediatric Diseases." The Pediatric Cardiac Genetics Consortium Study is an observational study of participants with congenital heart defects. The Framingham Heart Study is a longitudinal population cohort of participants and their offspring who had not yet developed overt symptoms of cardiovascular disease or suffered a heart attack or stroke and who have been followed over many years. Whole genome sequence data has been generated in these cohorts by multiple NIH programs, including the Gabriella Miller Kids First Pediatric Research Program and the NHLBI’s Trans-Omics for Precision Medicine Program. Dr. Manning will present a pilot analysis demonstrating how researchers can gain access to data sets on multiple NIH Cloud Platforms and perform an analysis with data from different NIH programs. She will describe interoperability features that are being championed by the NIH Cloud Platform Interoperability Effort and highlight important data governance lessons encountered along the way. Dr. Manning is Assistant Investigator, Massachusetts General Hospital; Associated Scientist, Broad Institute; and Instructor, Harvard Medical School. Individuals who need interpreting services and/or other reasonable accommodations to participate in this event should contact Erin Walker at 301-827-9655 or the Federal Relay Service at 800-877-8339. Thanks, Erin Walker, MBA Communications Specialist Office of Data Science Strategy Division of Program Coordination, Planning, and Strategic Initiatives (DPCPSI) Office of the Director, National Institutes of Health Bldg. 31, B1C12 301.827.9655 erin.walker@nih.gov https://datascience.nih.gov Follow us on Twitter @NIHDataScience and join the conversation at #NIHData | 2021-03-12 12:00:00 | Online | Cloud | Online | NIH Office of Data Science Strategy (ODSS) | 0 | Opportunities for NIH Cloud Interoperability Approaches to Improve Outcomes of Pediatric Diseases | |||
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Description
Abstract:
Cancer represents an evolutionary process through which growing malignant populations genetically diversify, leading to tumour progression, relapse and resistance to therapy. In addition to genetic diversity, the cell-to-cell variation that fuels evolutionary selection also manifests in cellular states, epigenetic profiles, spatial distributions and interactions with the microenvironment. Therefore, the study of cancer requires the integration of multiple heritable dimensions at the resolution of the single cell — the atomic unit of somatic evolution. In this ...Read More
Abstract:
Cancer represents an evolutionary process through which growing malignant populations genetically diversify, leading to tumour progression, relapse and resistance to therapy. In addition to genetic diversity, the cell-to-cell variation that fuels evolutionary selection also manifests in cellular states, epigenetic profiles, spatial distributions and interactions with the microenvironment. Therefore, the study of cancer requires the integration of multiple heritable dimensions at the resolution of the single cell — the atomic unit of somatic evolution. In this Review, we discuss emerging analytic and experimental technologies for single-cell multi-omics that enable the capture and integration of multiple data modalities to inform the study of cancer evolution. These data show that cancer results from a complex interplay between genetic and non-genetic determinants of somatic evolution.
Presenter:
Dr. Vishaka Gopalan
Join Zoom Meeting
https://umd.zoom.us/j/97941931766
Meeting ID: 979 4193 1766
One tap mobile
+13017158592,,97941931766# US (Washington DC)
+13126266799,,97941931766# US (Chicago)
DetailsOrganizerCDSLWhenMon, Mar 15, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Abstract: Cancer represents an evolutionary process through which growing malignant populations genetically diversify, leading to tumour progression, relapse and resistance to therapy. In addition to genetic diversity, the cell-to-cell variation that fuels evolutionary selection also manifests in cellular states, epigenetic profiles, spatial distributions and interactions with the microenvironment. Therefore, the study of cancer requires the integration of multiple heritable dimensions at the resolution of the single cell — the atomic unit of somatic evolution. In this Review, we discuss emerging analytic and experimental technologies for single-cell multi-omics that enable the capture and integration of multiple data modalities to inform the study of cancer evolution. These data show that cancer results from a complex interplay between genetic and non-genetic determinants of somatic evolution. Presenter: Dr. Vishaka Gopalan Join Zoom Meeting https://umd.zoom.us/j/97941931766 Meeting ID: 979 4193 1766 One tap mobile +13017158592,,97941931766# US (Washington DC) +13126266799,,97941931766# US (Chicago) | 2021-03-15 15:00:00 | Online | Single Cell Technologies | Online | CDSL | 0 | Integrating genetic and non-genetic determinants of cancer evolution by single-cell multi-omics | |||
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Description
Register/Join
Susan Gregurick, Ph.D., associate director for data science and director of the Office of Data Science Strategy, will deliver the March lecture at the “Women Leaders in Academic Research” series hosted by the NIH Center for Interventional Oncology. In this lecture, Dr. Gregurick will share her personal journey from “closet geek” to data science leader. She’...Read More
Register/Join
Susan Gregurick, Ph.D., associate director for data science and director of the Office of Data Science Strategy, will deliver the March lecture at the “Women Leaders in Academic Research” series hosted by the NIH Center for Interventional Oncology. In this lecture, Dr. Gregurick will share her personal journey from “closet geek” to data science leader. She’ll take a look back at memorable data science milestones that have led to where we are in data science today. Additionally, Dr. Gregurick will highlight other women leaders in data science at NIH to celebrate Women’s History Month and showcase the team of people working toward a modern data ecosystem at the largest biomedical research agency in the world.
Susan Gregurick, Ph.D.
Susan K. Gregurick, Ph.D., is the associate director for data science and director of the Office of Data Science Strategy (ODSS) at NIH. Under Dr. Gregurick’s leadership, the ODSS leads the implementation of the NIH Strategic Plan for Data Science through scientific, technical, and operational collaboration with the institutes, centers, and offices that comprise NIH.
DetailsOrganizerCBIITWhenTue, Mar 16, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Register/Join Susan Gregurick, Ph.D., associate director for data science and director of the Office of Data Science Strategy, will deliver the March lecture at the “Women Leaders in Academic Research” series hosted by the NIH Center for Interventional Oncology. In this lecture, Dr. Gregurick will share her personal journey from “closet geek” to data science leader. She’ll take a look back at memorable data science milestones that have led to where we are in data science today. Additionally, Dr. Gregurick will highlight other women leaders in data science at NIH to celebrate Women’s History Month and showcase the team of people working toward a modern data ecosystem at the largest biomedical research agency in the world. Susan Gregurick, Ph.D. Susan K. Gregurick, Ph.D., is the associate director for data science and director of the Office of Data Science Strategy (ODSS) at NIH. Under Dr. Gregurick’s leadership, the ODSS leads the implementation of the NIH Strategic Plan for Data Science through scientific, technical, and operational collaboration with the institutes, centers, and offices that comprise NIH. | 2021-03-16 14:00:00 | Online | Data Science | Online | CBIIT | 0 | Women Leaders in Academic Research: Leading the Way to a Modern Data Ecosystem: Stories of Women (and Men) Making an Impact in Data Science at NIH | |||
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Description
Presenter:
Himel Mallick, PhD
Senior Scientist, Biostatistics
Merck Research Laboratories
Abstract
Identifying clinically actionable features that display differential abundance and expression patterns across experimental conditions is an important first step toward characterizing the multi-omics landscape of complex human diseases. The field of multi-omics, however, has not yet reached the maturity attained in other established molecular epidemiology fields such as cancer biomarker discovery and genome-wide association studies with best practices and centralized resources remaining scarce. This ...Read More
Presenter:
Himel Mallick, PhD
Senior Scientist, Biostatistics
Merck Research Laboratories
Abstract
Identifying clinically actionable features that display differential abundance and expression patterns across experimental conditions is an important first step toward characterizing the multi-omics landscape of complex human diseases. The field of multi-omics, however, has not yet reached the maturity attained in other established molecular epidemiology fields such as cancer biomarker discovery and genome-wide association studies with best practices and centralized resources remaining scarce. This is challenging because many standard single-omics analysis methods cannot be directly applied to multi-omics data without falling prey to false positive or false negative results and realistically complex yet flexible modeling techniques must be developed to adequately reflect the biology.
In this talk, I will focus on statistical modeling for multi-omics classification and regression including methods for differential analysis, batch effect correction, and machine learning models to enable better disease outcome prediction and patient stratification.
I will discuss recently developed statistical methods ranging from Bayesian ensemble methods to sparse graphical models as well as self-adaptive models that adapt to the underlying technological variability in multi-omics data while improving upon state-of-the-art single-omics analysis methods.
Lastly, I will conclude with comments on the promises and implications of scalable Bayes for large-scale multi-omics data integration and inference for translational epidemiology studies and provide some empirical evidence of using multi-omics both as a multi-purpose biomarker and potential therapeutic target in precision medicine. All these approaches will be illustrated on data arising through various multi-omics and single-omics public datasets including the integrative Human Microbiome Project.
Join Zoom Meeting
Phone one-tap: US: +16692545252,,1601415473#,,,,*357830# or +16468287666,,1601415473#,,,,*357830#
Meeting URL: https://nih.zoomgov.com/j/1601415473?pwd=ZHpLOHE3UXo4Y2N0enllK0ZTRTNPQT09
Meeting ID: 160 141 5473
Passcode: 357830
DetailsOrganizerCDSLWhenWed, Mar 17, 2021 - 10:00 am - 11:00 amWhereOnline |
Presenter: Himel Mallick, PhD Senior Scientist, Biostatistics Merck Research Laboratories Abstract Identifying clinically actionable features that display differential abundance and expression patterns across experimental conditions is an important first step toward characterizing the multi-omics landscape of complex human diseases. The field of multi-omics, however, has not yet reached the maturity attained in other established molecular epidemiology fields such as cancer biomarker discovery and genome-wide association studies with best practices and centralized resources remaining scarce. This is challenging because many standard single-omics analysis methods cannot be directly applied to multi-omics data without falling prey to false positive or false negative results and realistically complex yet flexible modeling techniques must be developed to adequately reflect the biology. In this talk, I will focus on statistical modeling for multi-omics classification and regression including methods for differential analysis, batch effect correction, and machine learning models to enable better disease outcome prediction and patient stratification. I will discuss recently developed statistical methods ranging from Bayesian ensemble methods to sparse graphical models as well as self-adaptive models that adapt to the underlying technological variability in multi-omics data while improving upon state-of-the-art single-omics analysis methods. Lastly, I will conclude with comments on the promises and implications of scalable Bayes for large-scale multi-omics data integration and inference for translational epidemiology studies and provide some empirical evidence of using multi-omics both as a multi-purpose biomarker and potential therapeutic target in precision medicine. All these approaches will be illustrated on data arising through various multi-omics and single-omics public datasets including the integrative Human Microbiome Project. Join Zoom Meeting Phone one-tap: US: +16692545252,,1601415473#,,,,*357830# or +16468287666,,1601415473#,,,,*357830# Meeting URL: https://nih.zoomgov.com/j/1601415473?pwd=ZHpLOHE3UXo4Y2N0enllK0ZTRTNPQT09 Meeting ID: 160 141 5473 Passcode: 357830 | 2021-03-17 10:00:00 | Online | Data Science,Omics | Online | CDSL | 0 | Statistical Methods and Software for Multi-omics Data Science with A View Towards Public Health and Precision Medicine | |||
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Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
No appointments are necessary, and all problems are welcome.
Zoom URL: https://nih.zoomgov.com/j/1617001283?pwd=aXBIVktoV0NmcUd2T1RhYTBEdU1iQT09
Meeting ID: 161 700 1283
Passcode: 290924
At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member.
Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please
- mute when not speaking
- refrain from screen sharing until asked to do so in the breakout room
- screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users
See you there!
Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems
DetailsWhenWed, Mar 17, 2021 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. No appointments are necessary, and all problems are welcome. Zoom URL: https://nih.zoomgov.com/j/1617001283?pwd=aXBIVktoV0NmcUd2T1RhYTBEdU1iQT09 Meeting ID: 161 700 1283 Passcode: 290924 At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users See you there! Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems | 2021-03-17 13:00:00 | Online | NIH High Performance Unix Cluster Biowulf | Online | 0 | Zoom-In Consult for Biowulf Users | ||||
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Description
Register/Join
The focus of this webinar will be on two aspects of integrative analysis and translational ...Read More
Register/Join
The focus of this webinar will be on two aspects of integrative analysis and translational research in the field of estrogen receptor-positive (ER+) breast cancer research. Namely, Dr. Meenakshi Anurag will discuss the identification of protein drivers of endocrine therapy resistance in ER+ breast cancer through pathway-centric analysis. She will also dive into hypothesis validation of her research through Clinical Proteomic Tumor Analysis Consortium (CPTAC)-generated patient profiling data and establishment of the roles of driver and biomarker proteins associated with treatment response.
This webinar is hosted by NCI’s Office of Cancer Clinical Proteomics Research (OCCPR). Registration is required. For questions, please contact La’Toya Kelly.
Presenter:
Dr. Meenakshi Anurag is an assistant professor at Baylor College of Medicine. Her primary research goal is to improve breast cancer diagnosis, treatment, and survival by precision data science.
DetailsOrganizerCBIITWhenWed, Mar 17, 2021 - 1:00 pm - 1:30 pmWhereOnline |
Register/Join The focus of this webinar will be on two aspects of integrative analysis and translational research in the field of estrogen receptor-positive (ER+) breast cancer research. Namely, Dr. Meenakshi Anurag will discuss the identification of protein drivers of endocrine therapy resistance in ER+ breast cancer through pathway-centric analysis. She will also dive into hypothesis validation of her research through Clinical Proteomic Tumor Analysis Consortium (CPTAC)-generated patient profiling data and establishment of the roles of driver and biomarker proteins associated with treatment response. This webinar is hosted by NCI’s Office of Cancer Clinical Proteomics Research (OCCPR). Registration is required. For questions, please contact La’Toya Kelly. Presenter: Dr. Meenakshi Anurag is an assistant professor at Baylor College of Medicine. Her primary research goal is to improve breast cancer diagnosis, treatment, and survival by precision data science. | 2021-03-17 13:00:00 | Online | Cancer,Omics | Online | CBIIT | 0 | Translational Discovery and Validation Using Multi-omics Data from ER+ Breast Tumors | |||
318 |
Description
Register
Speaker: Sorin Draghici, Ph.D., CEO & Founder of ...Read More
Register
Speaker: Sorin Draghici, Ph.D., CEO & Founder of Advaita Bioinformatics
Description
Now more than ever, bioinformatics analysis is crucial for the success of almost any life science research program.
How do you choose the right bioinformatics analysis approach for your questions and your data?
Do you:
1. Check out the latest & greatest approach in the most recently published paper?
2. Phone a friend?
3. See which approach has the most citations?
4. Try everything you can find until you get an answer you like from your data?
This webinar will show you a better way.
Over decades working directly with life scientists, we have seen a lot of analyses and know what works and where the pitfalls are. Additionally, we recently surveyed hundreds of researchers for their best practices. From this, we have distilled our findings into a set of 10 criteria you can use to assess any approach to bioinformatics. These criteria will give you a concrete and solid framework to assess your own bioinformatics solutions. This webinar is for life scientists and bioinformatics analysts alike. The webinar will discuss specific challenges often found in bioinformatics analysis and alternative approaches to addressing them. Whether you are new to the field or very experienced, you will gain insights you can apply to your research and analysis to save time, frustration, and do better science.
For questions, contact Dr. Daoud Meerzaman.
DetailsOrganizerCBIITWhenThu, Mar 18, 2021 - 10:00 am - 11:00 pmWhereOnline |
Register Speaker: Sorin Draghici, Ph.D., CEO & Founder of Advaita Bioinformatics Description Now more than ever, bioinformatics analysis is crucial for the success of almost any life science research program. How do you choose the right bioinformatics analysis approach for your questions and your data? Do you: 1. Check out the latest & greatest approach in the most recently published paper? 2. Phone a friend? 3. See which approach has the most citations? 4. Try everything you can find until you get an answer you like from your data? This webinar will show you a better way. Over decades working directly with life scientists, we have seen a lot of analyses and know what works and where the pitfalls are. Additionally, we recently surveyed hundreds of researchers for their best practices. From this, we have distilled our findings into a set of 10 criteria you can use to assess any approach to bioinformatics. These criteria will give you a concrete and solid framework to assess your own bioinformatics solutions. This webinar is for life scientists and bioinformatics analysts alike. The webinar will discuss specific challenges often found in bioinformatics analysis and alternative approaches to addressing them. Whether you are new to the field or very experienced, you will gain insights you can apply to your research and analysis to save time, frustration, and do better science. For questions, contact Dr. Daoud Meerzaman. | 2021-03-18 10:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | 10 Criteria for Extraordinary Bioinformatics | |||
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Description
Register
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory ...Read More
Register
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH Training LibraryWhenThu, Mar 18, 2021 - 1:00 pm - 12:00 amWhereOnline |
Register This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2021-03-18 13:00:00 | Online | Data Management | Online | NIH Training Library | 0 | Data Management and Sharing: Part 1 | |||
964 |
Description
Recording Link
CD8 T cell dysfunction is observed in diverse settings of chronic antigen exposure, including in cancer and chronic viral infection. We carried out a unified analysis of over 300 ATAC-seq and RNA-seq experiments across studies of CD8 T cell dysfunction in cancer and infection to define a shared differentiation trajectory towards terminal dysfunction and underlying transcriptional ...Read More
Recording Link
CD8 T cell dysfunction is observed in diverse settings of chronic antigen exposure, including in cancer and chronic viral infection. We carried out a unified analysis of over 300 ATAC-seq and RNA-seq experiments across studies of CD8 T cell dysfunction in cancer and infection to define a shared differentiation trajectory towards terminal dysfunction and underlying transcriptional drivers and reveal a universal early bifurcation of functional and dysfunctional T cell activation states. We further dissected acute and chronic viral infection using scATAC-seq and allele-specific scRNA-seq to identify state-specific transcription factors and capture the emergence of highly similar TCF1+ progenitor-like populations at an early branch point, at which epigenetic features of functional and dysfunctional T cells diverge. We will also present recent work in the group to develop predictive models of gene regulation by incorporating 3D connectivity data from chromatin conformation capture data sets. Our framework uses graph neural networks to predict gene expression from 3D connectivity data from 1D epigenomic inputs or from genomic DNA sequence. We will show how to use feature attribution on the trained models to identify functional enhancers for genes, as validated by CRISPRi screens.
RegisterOrganizerBTEPWhenThu, Mar 18, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Recording Link CD8 T cell dysfunction is observed in diverse settings of chronic antigen exposure, including in cancer and chronic viral infection. We carried out a unified analysis of over 300 ATAC-seq and RNA-seq experiments across studies of CD8 T cell dysfunction in cancer and infection to define a shared differentiation trajectory towards terminal dysfunction and underlying transcriptional drivers and reveal a universal early bifurcation of functional and dysfunctional T cell activation states. We further dissected acute and chronic viral infection using scATAC-seq and allele-specific scRNA-seq to identify state-specific transcription factors and capture the emergence of highly similar TCF1+ progenitor-like populations at an early branch point, at which epigenetic features of functional and dysfunctional T cells diverge. We will also present recent work in the group to develop predictive models of gene regulation by incorporating 3D connectivity data from chromatin conformation capture data sets. Our framework uses graph neural networks to predict gene expression from 3D connectivity data from 1D epigenomic inputs or from genomic DNA sequence. We will show how to use feature attribution on the trained models to identify functional enhancers for genes, as validated by CRISPRi screens. | 2021-03-18 13:00:00 | Online Webinar | Online | Christina Leslie (MSKCC) | BTEP | 0 | Decoding Chromatin States in T Cell Dysfunction and Modeling Gene Regulation | |||
961 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Mar 18, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-03-18 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq Analysis on NIDAP | ||
284 |
Description
Register
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory ...Read More
Register
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
DetailsOrganizerNIH Training LibraryWhenFri, Mar 19, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Register This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2021-03-19 13:00:00 | Online | Data Management | Online | NIH Training Library | 0 | Data Management and Sharing: Part 2 | |||
321 |
Description
Join
Dear NCI Staff,
The NCI Cloud Resources are chief components of the NCI Cancer Research Data Commons (CRDC), helping to bring together data and computational power to advance cancer research and discovery.
These cloud-based platforms:
• eliminate the need ...Read More
Join
Dear NCI Staff,
The NCI Cloud Resources are chief components of the NCI Cancer Research Data Commons (CRDC), helping to bring together data and computational power to advance cancer research and discovery.
These cloud-based platforms:
• eliminate the need for downloading and storing extremely large data sets on local machines.
• offer access to on-demand computational capacity for robustly analyzing large-scale data sets.
During this session, the cloud resources team (Seven Bridges, Institute for Systems Biology, and Broad Institute) will show researchers how to use these tools to discover and analyze data from popular NCI cancer data programs, such as The Cancer Genome Atlas (TCGA) and Clinical Proteomic Tumor Analysis Consortium (CPTAC).
Thank you,
Center for Biomedical Informatics and Information Technology (CBIIT)
National Cancer Institute
Deaf or hard-of-hearing attendees requiring live-captioning service for this event should email the NCI AV Team or call 240-276-5880 at least five business days prior to the event. Individuals who need other reasonable accommodations should contact NCI IT Training.
DetailsOrganizerCBIITWhenMon, Mar 22, 2021 - 12:00 pm - 1:00 pmWhereOnline |
Join Dear NCI Staff, The NCI Cloud Resources are chief components of the NCI Cancer Research Data Commons (CRDC), helping to bring together data and computational power to advance cancer research and discovery. These cloud-based platforms: • eliminate the need for downloading and storing extremely large data sets on local machines. • offer access to on-demand computational capacity for robustly analyzing large-scale data sets. During this session, the cloud resources team (Seven Bridges, Institute for Systems Biology, and Broad Institute) will show researchers how to use these tools to discover and analyze data from popular NCI cancer data programs, such as The Cancer Genome Atlas (TCGA) and Clinical Proteomic Tumor Analysis Consortium (CPTAC). Thank you, Center for Biomedical Informatics and Information Technology (CBIIT) National Cancer Institute Deaf or hard-of-hearing attendees requiring live-captioning service for this event should email the NCI AV Team or call 240-276-5880 at least five business days prior to the event. Individuals who need other reasonable accommodations should contact NCI IT Training. | 2021-03-22 12:00:00 | Online | Cancer,Cloud | Online | CBIIT | 0 | Overview of NCI Cloud Resources and Platforms | |||
323 |
Description
Dear All,
The Cores of Building 41 invite you to the second of three seminars for the 2021 Virtual Building 41 Core Open House Spring Lectures.
Date: Monday, March 22, 2021
Schedule: 1:00 PM - 3:00 PM
1:00-1:10 Kathy McKinnon – Introduction and Welcome
1:15-3:00 Dan MacDonald and Mike Gregory – Enabling High Dimensional Biology via Single-Cell Multiomics with the BD Rhapsody Platform and Illumina
3:00 - Additional questions
Webex link : Read More
Dear All,
The Cores of Building 41 invite you to the second of three seminars for the 2021 Virtual Building 41 Core Open House Spring Lectures.
Date: Monday, March 22, 2021
Schedule: 1:00 PM - 3:00 PM
1:00-1:10 Kathy McKinnon – Introduction and Welcome
1:15-3:00 Dan MacDonald and Mike Gregory – Enabling High Dimensional Biology via Single-Cell Multiomics with the BD Rhapsody Platform and Illumina
3:00 - Additional questions
Webex link : https://cbiit.webex.com/cbiit/j.php?MTID=mc6b34a12cae3e1828f4e37c7b7ddce29
Meeting number (access code): 157 203 7927
Meeting password: QQpMmZ2V$83
Contact:
Katherine McKinnon
41 Medlars Drive
Bethesda MD 20892
Ph: 240.760.6659
mckinnonkm@mail.nih.gov
DetailsOrganizerCBIITWhenMon, Mar 22, 2021 - 1:00 pm - 3:00 pmWhereOnline |
Dear All, The Cores of Building 41 invite you to the second of three seminars for the 2021 Virtual Building 41 Core Open House Spring Lectures. Date: Monday, March 22, 2021 Schedule: 1:00 PM - 3:00 PM 1:00-1:10 Kathy McKinnon – Introduction and Welcome 1:15-3:00 Dan MacDonald and Mike Gregory – Enabling High Dimensional Biology via Single-Cell Multiomics with the BD Rhapsody Platform and Illumina 3:00 - Additional questions Webex link : https://cbiit.webex.com/cbiit/j.php?MTID=mc6b34a12cae3e1828f4e37c7b7ddce29 Meeting number (access code): 157 203 7927 Meeting password: QQpMmZ2V$83 Contact: Katherine McKinnon 41 Medlars Drive Bethesda MD 20892 Ph: 240.760.6659 mckinnonkm@mail.nih.gov | 2021-03-22 13:00:00 | Online | Single Cell Technologies | Online | CBIIT | 0 | Technology Seminar on Enabling High Dimensional Biology via Single-Cell Multiomics | |||
285 |
Description
Register
Artificial Intelligence (AI) and Machine Learning (ML) are hot topics today, but are already part of our everyday lives. This class will introduce the basic principles of AI and ML and the current state of this field. The instructor will share examples of AI used in common applications and health research. AI limitations and ethical considerations will also be discussed. This course is designed ...Read More
Register
Artificial Intelligence (AI) and Machine Learning (ML) are hot topics today, but are already part of our everyday lives. This class will introduce the basic principles of AI and ML and the current state of this field. The instructor will share examples of AI used in common applications and health research. AI limitations and ethical considerations will also be discussed. This course is designed for individuals new to the topic or for those who need a refresher.
DetailsOrganizerNIH Training LibraryWhenWed, Mar 24, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register Artificial Intelligence (AI) and Machine Learning (ML) are hot topics today, but are already part of our everyday lives. This class will introduce the basic principles of AI and ML and the current state of this field. The instructor will share examples of AI used in common applications and health research. AI limitations and ethical considerations will also be discussed. This course is designed for individuals new to the topic or for those who need a refresher. | 2021-03-24 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Training Library | 0 | Canceled - Introduction to Artificial Intelligence and Machine Learning | |||
322 |
Description
WebEx: Register
Accurate detection of somatic mutations is challenging but critical ...Read More
WebEx: Register
Accurate detection of somatic mutations is challenging but critical to understanding how cancer forms and progresses. Such detection is also critical for targeting more effective treatments. In this seminar, Dr. Mohammad Sahraeian, senior principal bioinformatics scientist at Roche Sequencing Solutions, gives an overview of NeuSomatic — the first deep convolutional neural network approach for detecting somatic mutations.
Dr. Sahraeian will demonstrate how NeuSomatic can outperform conventional detection approaches, both in typical and challenging situations, that involve low coverage, low mutation frequency, damaged DNA, and/or ambiguous genomic regions. He will explain how this network can be applied across multiple technologies and pipelines, including whole-genome sequencing, whole-exome sequencing, AmpliSeq target-sequencing, varying tumor/normal purities. Dr. Sahraeian will also discuss the benefits of different coverages, ranging from 10x to 2000x.
Dr. Sahraeian is a senior principal bioinformatics scientist specializing in genomic data analysis at Roche Sequencing Solutions. He is the coauthor of “Deep convolutional neural networks for accurate somatic mutation detection,” which was published in Nature Communications. Using this approach, his Roche team received best performer recognition in two categories in U.S. Food and Drug Administration’s Truth Challenge V2.
DetailsOrganizerCBIITWhenWed, Mar 24, 2021 - 11:00 am - 12:00 pmWhereOnline |
WebEx: Register Accurate detection of somatic mutations is challenging but critical to understanding how cancer forms and progresses. Such detection is also critical for targeting more effective treatments. In this seminar, Dr. Mohammad Sahraeian, senior principal bioinformatics scientist at Roche Sequencing Solutions, gives an overview of NeuSomatic — the first deep convolutional neural network approach for detecting somatic mutations. Dr. Sahraeian will demonstrate how NeuSomatic can outperform conventional detection approaches, both in typical and challenging situations, that involve low coverage, low mutation frequency, damaged DNA, and/or ambiguous genomic regions. He will explain how this network can be applied across multiple technologies and pipelines, including whole-genome sequencing, whole-exome sequencing, AmpliSeq target-sequencing, varying tumor/normal purities. Dr. Sahraeian will also discuss the benefits of different coverages, ranging from 10x to 2000x. Dr. Sahraeian is a senior principal bioinformatics scientist specializing in genomic data analysis at Roche Sequencing Solutions. He is the coauthor of “Deep convolutional neural networks for accurate somatic mutation detection,” which was published in Nature Communications. Using this approach, his Roche team received best performer recognition in two categories in U.S. Food and Drug Administration’s Truth Challenge V2. | 2021-03-24 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Robust Cancer Mutation Detection with Deep Learning Models Using Tumor-Normal Sequencing Data | |||
316 |
Description
Register/Join
At the next Cancer Genome Cloud’s (CGC's) monthly webinar series, NCI Research Fellow, Dr. Xavier Bofill-De Ros, will share his experiences leveraging the NCI Cancer Research Data Commons (CRDC) Cloud Resources to study microRNA and its mechanisms. He will present on:
Register/Join
At the next Cancer Genome Cloud’s (CGC's) monthly webinar series, NCI Research Fellow, Dr. Xavier Bofill-De Ros, will share his experiences leveraging the NCI Cancer Research Data Commons (CRDC) Cloud Resources to study microRNA and its mechanisms. He will present on:
DetailsOrganizerCBIITWhenWed, Mar 24, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Register/Join At the next Cancer Genome Cloud’s (CGC's) monthly webinar series, NCI Research Fellow, Dr. Xavier Bofill-De Ros, will share his experiences leveraging the NCI Cancer Research Data Commons (CRDC) Cloud Resources to study microRNA and its mechanisms. He will present on: analyzing microRNA isoforms in the cloud. understanding the role of RNA structures on microRNA function. applying “The Cancer Genome Atlas (TCGA)” and multi-omics approach to mechanistic studies. As one of NCI’s Cloud Resources, the CGC provides researchers access to a wide variety of data sets from NCI’s CRDC along with a catalog of tools to analyze and visualize the data directly from an internet browser. The webinar series is free and available to the public. Xavier, Bofill-De Ros, Ph.D. Dr. Bofill-De Ros is a research fellow in NCI’s RNA Biology Laboratory. His research includes studies of how microRNA biogenesis affects tumor progression and mechanisms affecting microRNA stability. Dr. Bofill-De Ros also aided in NCI’s development of QuagmiR, the first cloud-based tool for microRNA isoform analysis. | 2021-03-24 14:00:00 | Online | Cancer,Cloud | Online | CBIIT | 0 | Uncovering Novel Roles Of MicroRNAs in Tumors Using The Cancer Genomics Cloud | |||
962 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Mar 25, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-03-25 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
319 |
Description
Register
Speaker: Evan Star, Ph.D., Senior ...Read More
Register
Speaker: Evan Star, Ph.D., Senior Field Application Scientist
Description:
Evan Star, PhD, Senior Field Application Scientist, will be presenting a one-hour overview demonstration on Geneious Prime.
Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. It is built to be highly visual, easy to use, and collaborative. Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast and more. Searching, sharing, and automation features are built into all major workflows. More information can be found on our website at geneious.com
For questions please contact Daoud Meerzaman
DetailsOrganizerCBIITWhenThu, Mar 25, 2021 - 4:00 pm - 5:00 pmWhereOnline |
Register Speaker: Evan Star, Ph.D., Senior Field Application Scientist Description: Evan Star, PhD, Senior Field Application Scientist, will be presenting a one-hour overview demonstration on Geneious Prime. Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. It is built to be highly visual, easy to use, and collaborative. Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast and more. Searching, sharing, and automation features are built into all major workflows. More information can be found on our website at geneious.com For questions please contact Daoud Meerzaman | 2021-03-25 16:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to Geneious Prime | |||
324 |
Description
Register for this session at https://bit.ly/2Nw1uVt
NIDA will be hosting a 4-part Data Science careers seminar series this spring titled Bringing Data Science to Addiction Research. The goal of this seminar series is to highlight the career paths of prominent data scientists and inspire a new generation of data science researchers who focus on addiction. This series will take place on the following ...Read More
Register for this session at https://bit.ly/2Nw1uVt
NIDA will be hosting a 4-part Data Science careers seminar series this spring titled Bringing Data Science to Addiction Research. The goal of this seminar series is to highlight the career paths of prominent data scientists and inspire a new generation of data science researchers who focus on addiction. This series will take place on the following dates from 9:00-10:30am EDT (Please note that this is during Daylights Savings Time): March 15th, March 22nd, March 29th, and April 5th. A separate registration will be required for each session.
The third seminar will have two speakers, Dr. Kristian Lum and Dr. Brenda Curtis, on March 29th from 9:00-10:30am EDT.
Contact Dr. Susan Wright at susan.wright@nih.gov with any questions.
Kristian Lum, Ph.D., MSc, is an Assistant Research Professor in the Department of Computer and Information Science at the University of Pennsylvania. She studies and develops statistical and machine learning models to tackle problems with social impact. This includes statistical population estimation models to estimate the number of undocumented victims of human rights violations, “fair” algorithms for use in high-stakes decision making, and epidemiological models to study disease spread among and between marginalized populations and the broader community. Dr. Lum is particularly interested in applications to criminal justice. She enjoys using the tools of statistics and machine learning to shine a light on alternative interpretations of data. She is often just as (if not more) interested in what is missing from a dataset than what is in it.
Dr. Lum's Twitter is @KLdivergence
Brenda Curtis, PhD, MsPH, is the Chief of the Technology and Translational Research Unit of the NIDA Intramural Research Program. She earned both a bachelor’s degree in biology and a master’s degree in public health from the University of Illinois and subsequently obtained her doctorate in communication from the University of Pennsylvania, where she most recently held the appointment of Assistant Professor of Psychology in Psychiatry, Addictions at the Perelman School of Medicine. Dr. Curtis also completed a fellowship at the Fordham University HIV and Drug Abuse Prevention Research Ethics Training Institute. Before joining NIDA IRP, she was the PI of a NIDA-funded R01 award (DA039457) entitled “Predicting AOD Relapse and Treatment Completion from Social Media Use” in which she used social media data to predict alcohol and other drug relapse and treatment completion among patients who have recently entered community outpatient treatment programs. She has also served as a co-investigator on several R01 NIAAA, NCI, and NIDA funded projects including a placebo-controlled trial of bupropion for smoking cessation in pregnant women in which we are using SMS text messaging to promote medication adherence; a multi-modal intervention on the use of a “smart” pillbox to promote medication adherence among non-adherent patients; a study examining the accuracy of smartphone breathalyzers; and a study examining the impact of a smart-phone based continuing care “app” for alcohol dependence. Her training in public health and health communication allows her to employ a public health approach while using effective communication techniques to ensure recruitment and retention rates are achieved. Her research focus is translational, leveraging social media and big data methodology to form the development, evaluation, and implementation of technology-based tools that address substance use and related conditions such as HIV/AIDS. Dr. Curtis employs multiple methodologies to facilitate the flow of scientific discovery to practical application allowing her to not only reach under-served populations, but to design health monitoring and behavioral change interventions that are user-centered, inclusive, and evidence-based.
DetailsOrganizerNIDAWhenMon, Mar 29, 2021 - 9:00 am - 10:30 amWhereOnline |
Register for this session at https://bit.ly/2Nw1uVt NIDA will be hosting a 4-part Data Science careers seminar series this spring titled Bringing Data Science to Addiction Research. The goal of this seminar series is to highlight the career paths of prominent data scientists and inspire a new generation of data science researchers who focus on addiction. This series will take place on the following dates from 9:00-10:30am EDT (Please note that this is during Daylights Savings Time): March 15th, March 22nd, March 29th, and April 5th. A separate registration will be required for each session. The third seminar will have two speakers, Dr. Kristian Lum and Dr. Brenda Curtis, on March 29th from 9:00-10:30am EDT. Contact Dr. Susan Wright at susan.wright@nih.gov with any questions. Kristian Lum, Ph.D., MSc, is an Assistant Research Professor in the Department of Computer and Information Science at the University of Pennsylvania. She studies and develops statistical and machine learning models to tackle problems with social impact. This includes statistical population estimation models to estimate the number of undocumented victims of human rights violations, “fair” algorithms for use in high-stakes decision making, and epidemiological models to study disease spread among and between marginalized populations and the broader community. Dr. Lum is particularly interested in applications to criminal justice. She enjoys using the tools of statistics and machine learning to shine a light on alternative interpretations of data. She is often just as (if not more) interested in what is missing from a dataset than what is in it. Dr. Lum's Twitter is @KLdivergence Brenda Curtis, PhD, MsPH, is the Chief of the Technology and Translational Research Unit of the NIDA Intramural Research Program. She earned both a bachelor’s degree in biology and a master’s degree in public health from the University of Illinois and subsequently obtained her doctorate in communication from the University of Pennsylvania, where she most recently held the appointment of Assistant Professor of Psychology in Psychiatry, Addictions at the Perelman School of Medicine. Dr. Curtis also completed a fellowship at the Fordham University HIV and Drug Abuse Prevention Research Ethics Training Institute. Before joining NIDA IRP, she was the PI of a NIDA-funded R01 award (DA039457) entitled “Predicting AOD Relapse and Treatment Completion from Social Media Use” in which she used social media data to predict alcohol and other drug relapse and treatment completion among patients who have recently entered community outpatient treatment programs. She has also served as a co-investigator on several R01 NIAAA, NCI, and NIDA funded projects including a placebo-controlled trial of bupropion for smoking cessation in pregnant women in which we are using SMS text messaging to promote medication adherence; a multi-modal intervention on the use of a “smart” pillbox to promote medication adherence among non-adherent patients; a study examining the accuracy of smartphone breathalyzers; and a study examining the impact of a smart-phone based continuing care “app” for alcohol dependence. Her training in public health and health communication allows her to employ a public health approach while using effective communication techniques to ensure recruitment and retention rates are achieved. Her research focus is translational, leveraging social media and big data methodology to form the development, evaluation, and implementation of technology-based tools that address substance use and related conditions such as HIV/AIDS. Dr. Curtis employs multiple methodologies to facilitate the flow of scientific discovery to practical application allowing her to not only reach under-served populations, but to design health monitoring and behavioral change interventions that are user-centered, inclusive, and evidence-based. | 2021-03-29 09:00:00 | Online | Data Science | Online | NIDA | 0 | Bringing Data Science to Addiction Research - Session 3 | |||
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Description
Register/Join
The NCI Genomic Data Commons' (GDC's) ...Read More
Register/Join
The NCI Genomic Data Commons' (GDC's) upcoming webinar will introduce new users to its portal and library of computational resources. GDC experts will also answer questions about the GDC and genomic analyses and also share upcoming features of the system. As a component within NCI’s Cancer Research Data Commons (CRDC), the GDC is a knowledge system for cancer that facilitates precision oncology and helps researchers share and access genomic, clinical, and biospecimen data.
During the webinar, GDC expert Dr. Bill Wysocki will review GDC’s:
DetailsOrganizerCBIITWhenMon, Mar 29, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Register/Join The NCI Genomic Data Commons' (GDC's) upcoming webinar will introduce new users to its portal and library of computational resources. GDC experts will also answer questions about the GDC and genomic analyses and also share upcoming features of the system. As a component within NCI’s Cancer Research Data Commons (CRDC), the GDC is a knowledge system for cancer that facilitates precision oncology and helps researchers share and access genomic, clinical, and biospecimen data. During the webinar, GDC expert Dr. Bill Wysocki will review GDC’s: data access tools, Data Analysis, Visualization, and Exploration (DAVE) tools, data submission process and tools, bioinformatics pipelines, and upcoming features and changes. Bill Wysocki, Ph.D. Dr. Wysocki is the director of User Services and Outreach for the GDC at the University of Chicago. For additional information on how the GDC works with other components in the NCI CRDC, visit datacommons.cancer.gov. | 2021-03-29 14:00:00 | Online | NCI Genomic Data Commons | Online | CBIIT | 0 | Genomic Data Commons Overview | |||
327 |
Description
For coming Monday's CDSl webinar, we'll be hosting Dr. Yun Liu from Google Health.
Abstract:
This talk will briefly cover two categories of our work: deep learning to identify dermatology conditions from clinical images, and cancer prognostication from histopathology images. For the first talk, key background is that skin conditions are highly prevalent, however most cases are seen by general practitioners with lower diagnostic accuracy than dermatologists. We present a deep learning system (DLS) that ...Read More
For coming Monday's CDSl webinar, we'll be hosting Dr. Yun Liu from Google Health.
Abstract:
This talk will briefly cover two categories of our work: deep learning to identify dermatology conditions from clinical images, and cancer prognostication from histopathology images. For the first talk, key background is that skin conditions are highly prevalent, however most cases are seen by general practitioners with lower diagnostic accuracy than dermatologists. We present a deep learning system (DLS) that distinguishes between 26 common skin conditions, while also providing a secondary prediction covering 419 skin conditions. On 963 validation cases, where a rotating panel of three board-certified dermatologists defined the reference standard, the DLS was non-inferior to six other dermatologists and superior to six primary care physicians (PCPs) and six nurse practitioners (NPs), highlighting the potential of the DLS to assist general practitioners in diagnosing skin conditions.
For the second work, we worked on predicting cancer prognosis from digitized images of histopathology samples. Our approach resolves around weakly-supervised approaches where the model is only provided information about survival outcomes without additional tissue-level annotations. We first prototyped our approach on TCGA across 10 cancer types, finding that the DLS was a significant predictor of survival in 5 of 10 cancer types, after adjusting for cancer type, stage, age, and sex. In followup work, we replicated our main findings with a larger cohort of intermediate-risk (stage II/III) colorectal cancer patients, and with full clinical cases instead of representative slides per case. We additionally showcased a generalizable method that identified a human-interpretable feature. This feature, "tumor-adipose feature", was independently associated with survival, and reproducibly identified by both pathologists and non-pathologists, indicating promise in discovering novel, human-recognizable histoprognostic features for future research.
Bio:
Yun is a staff research scientist in Google Health. In this role he focuses on developing and validating machine learning for medical imaging across multiple fields: pathology, ophthalmology, radiology, and dermatology. Yun completed his PhD at Harvard-MIT Health Sciences and Technology, where he worked on predictive risk modeling using biomedical signals, medical text, and billing codes. He has previously also worked on predictive modeling for nucleic acid sequences and protein structures. Yun completed a B.S. in Molecular and Cellular Biology and Computer Science at Johns Hopkins University.
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Meeting ID: 979 4193 1766
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Thanks and have a good weekend,
Sushant
DetailsOrganizerCDSLWhenMon, Mar 29, 2021 - 3:00 pm - 4:00 pmWhereOnline |
For coming Monday's CDSl webinar, we'll be hosting Dr. Yun Liu from Google Health. Abstract: This talk will briefly cover two categories of our work: deep learning to identify dermatology conditions from clinical images, and cancer prognostication from histopathology images. For the first talk, key background is that skin conditions are highly prevalent, however most cases are seen by general practitioners with lower diagnostic accuracy than dermatologists. We present a deep learning system (DLS) that distinguishes between 26 common skin conditions, while also providing a secondary prediction covering 419 skin conditions. On 963 validation cases, where a rotating panel of three board-certified dermatologists defined the reference standard, the DLS was non-inferior to six other dermatologists and superior to six primary care physicians (PCPs) and six nurse practitioners (NPs), highlighting the potential of the DLS to assist general practitioners in diagnosing skin conditions. For the second work, we worked on predicting cancer prognosis from digitized images of histopathology samples. Our approach resolves around weakly-supervised approaches where the model is only provided information about survival outcomes without additional tissue-level annotations. We first prototyped our approach on TCGA across 10 cancer types, finding that the DLS was a significant predictor of survival in 5 of 10 cancer types, after adjusting for cancer type, stage, age, and sex. In followup work, we replicated our main findings with a larger cohort of intermediate-risk (stage II/III) colorectal cancer patients, and with full clinical cases instead of representative slides per case. We additionally showcased a generalizable method that identified a human-interpretable feature. This feature, "tumor-adipose feature", was independently associated with survival, and reproducibly identified by both pathologists and non-pathologists, indicating promise in discovering novel, human-recognizable histoprognostic features for future research. Bio: Yun is a staff research scientist in Google Health. In this role he focuses on developing and validating machine learning for medical imaging across multiple fields: pathology, ophthalmology, radiology, and dermatology. Yun completed his PhD at Harvard-MIT Health Sciences and Technology, where he worked on predictive risk modeling using biomedical signals, medical text, and billing codes. He has previously also worked on predictive modeling for nucleic acid sequences and protein structures. Yun completed a B.S. in Molecular and Cellular Biology and Computer Science at Johns Hopkins University. Join Zoom Meeting https://umd.zoom.us/j/97941931766 Meeting ID: 979 4193 1766 One tap mobile +13017158592,,97941931766# US (Washington DC) +13126266799,,97941931766# US (Chicago) Thanks and have a good weekend, Sushant | 2021-03-29 15:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CDSL | 0 | CDSL Dr. Yun Liu from Google Health | |||
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Description
Register
Presenter: Yana Stackpole, PhD (Qlucore Training and ...Read More
Register
Presenter: Yana Stackpole, PhD (Qlucore Training and Support)
Description: In this session we will go over a visual, dynamic and interactive way to work with OMICs data using public leukemia GEO gene expression datasets. We will approach the data with confirmatory and exploratory analyses angles using DGE, GSEA, GO, and dataset comparison. Everything is done in a user-friendly, highly visual and super-fast interface.
Agenda:
Benefits and Challenges of big data
Finding differentiating variables. Validating your findings
Functional data analysis using GSEA and GO
Confirmatory and Discovery analyses
Working with public data – GEO, TCGA.
Q&A
Custom demo
For questions please contact Daoud Meerzaman
DetailsOrganizerCBIITWhenTue, Mar 30, 2021 - 10:00 am - 11:00 amWhereOnline |
Register Presenter: Yana Stackpole, PhD (Qlucore Training and Support) Description: In this session we will go over a visual, dynamic and interactive way to work with OMICs data using public leukemia GEO gene expression datasets. We will approach the data with confirmatory and exploratory analyses angles using DGE, GSEA, GO, and dataset comparison. Everything is done in a user-friendly, highly visual and super-fast interface. Agenda: Benefits and Challenges of big data Finding differentiating variables. Validating your findings Functional data analysis using GSEA and GO Confirmatory and Discovery analyses Working with public data – GEO, TCGA. Q&A Custom demo For questions please contact Daoud Meerzaman | 2021-03-30 10:00:00 | Online | Bioinformatics Software,Omics | Online | CBIIT | 0 | Visualization-guided Analysis and Interpretation of Omics Data in Qlucore | |||
969 |
Description
Bioinformatics for Beginners, Post-Bac Edition
This is the first course in a series of three, designed to answer the question:
"I've just got my sequence data back from the sequencing center, how do I understand/analyze/work with it?"
Course One: Why learn Bioinformatics? And Beginner Unix.
Who should take this course:
Bioinformatics for Beginners, Post-Bac Edition
This is the first course in a series of three, designed to answer the question:
"I've just got my sequence data back from the sequencing center, how do I understand/analyze/work with it?"
Course One: Why learn Bioinformatics? And Beginner Unix.
Who should take this course:
RegisterOrganizerBTEPWhenTue, Mar 30, 2021 - 3:00 pm - 4:00 pmWhereOnline Webinar |
Bioinformatics for Beginners, Post-Bac Edition This is the first course in a series of three, designed to answer the question: "I've just got my sequence data back from the sequencing center, how do I understand/analyze/work with it?" Course One: Why learn Bioinformatics? And Beginner Unix. Who should take this course: Learners who want to work with Next Gen Sequence data Pre-requisites: None, this class is for beginner level bioinformatics learners Learning Objectives In the class learners will be able to: Understand why every bench scientist should learn some bioinformatics Log into and utilize the GOLD learning environment for class content and lessons Work with Unix files and directories to manage Next Gen Sequencing data and associated files Understand data formats (FASTA, FASTQ) and learn how to work with them at the Unix command line All classes will be held on WebEx in Amy Stonelake’s Personal Room: https://cbiit.webex.com/meet/stonelakeak This class will be held at 3 -4 PM on these days. Tuesday, 3/30, Recording Thursday, 4/1, Recording Tuesday, 4/6, Recording Thursday, 4/8, Recording Courses Two and Three will be offered in May and June. You will be invited by email to sign up for these. You do not need to download any software for this course. All you need is a computer, a reliable internet connection and a web browser. | 2021-03-30 15:00:00 | Online Webinar | Online | Amy Stonelake (BTEP) | BTEP | 0 | Bioinformatics for Beginners: Post-Bac Edition, Course One, Why Learn Bioinformatics? And Beginner Unix. | |||
970 |
Description
Link to recording: https://web.microsoftstream.com/video/78e8e458-f5c7-4aa4-b5ea-9cd94b20452a
Helen Shearman, PhD, Senior Field Application Scientist, will be presenting a one-hour overview demonstration on SnapGene. SnapGene offers a fast and easy way to plan, visualize, and document your everyday cloning ...Read More
Link to recording: https://web.microsoftstream.com/video/78e8e458-f5c7-4aa4-b5ea-9cd94b20452a
Helen Shearman, PhD, Senior Field Application Scientist, will be presenting a one-hour overview demonstration on SnapGene. SnapGene offers a fast and easy way to plan, visualize, and document your everyday cloning procedures. It makes cloning easier, improves communication, and provides a record of DNA constructs. Helen will be demonstrating how to create plasmid maps, perform cloning, design primers and simulate PCR, and produce alignments.
SnapGene Features:
RegisterOrganizerBTEPWhenWed, Mar 31, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Link to recording: https://web.microsoftstream.com/video/78e8e458-f5c7-4aa4-b5ea-9cd94b20452a Helen Shearman, PhD, Senior Field Application Scientist, will be presenting a one-hour overview demonstration on SnapGene. SnapGene offers a fast and easy way to plan, visualize, and document your everyday cloning procedures. It makes cloning easier, improves communication, and provides a record of DNA constructs. Helen will be demonstrating how to create plasmid maps, perform cloning, design primers and simulate PCR, and produce alignments. SnapGene Features: Molecular Cloning - restriction cloning and more Primer Design PCR and Mutagenesis - simulate PCR... Enzyme Sets - by company or cutter, detailed enzyme information Convert File Formats - GenBank, Lasergene, Geneious Agarose Gel Simulation - restriction digests and PCR amplification Features/ Annotations - common features, alternate codons Translations - ORFs, proteins and more Alignment - DNA sequences with a reference sequence Visualizing - Multiple views of a DNA sequence | 2021-03-31 13:00:00 | Online Webinar | Online | Helen Shearman (SnapGene) | BTEP | 0 | SnapGene: Plan, Visualize and Document your Everyday Molecular Cloning Procedures | |||
338 |
Description
Speaker:
Tonia Korves, Ph.D.
Lead Data Scientist
Data and Human-Centered Solutions Innovation Center
MITRE Corporation
Abstract
As COVID-19 research rapidly escalated last year, we quickly built a platform to help biomedical experts track published research about potential therapeutics and vaccines. The platform includes a natural language processing pipeline that identifies scientific documents about SARS-CoV-2 and other viruses, particular drugs, and vaccine types, sorted by stages of research, and a dashboard called the COVID-19 Therapeutic ...Read More
Speaker:
Tonia Korves, Ph.D.
Lead Data Scientist
Data and Human-Centered Solutions Innovation Center
MITRE Corporation
Abstract
As COVID-19 research rapidly escalated last year, we quickly built a platform to help biomedical experts track published research about potential therapeutics and vaccines. The platform includes a natural language processing pipeline that identifies scientific documents about SARS-CoV-2 and other viruses, particular drugs, and vaccine types, sorted by stages of research, and a dashboard called the COVID-19 Therapeutic Information Browser, available at covidtib.c19hcc.org. The comprehensive data from this platform enables us to characterize COVID-19 drug research over time and at scale, and potentially draw lessons that can inform future decisions. In this talk, we will present our natural language processing methods, the dashboard, and an analysis of trends in published COVID-19 drug research and clinical trials over the past year. We will also discuss other uses for this data, outstanding challenges, and other potential applications of this approach.
Join ZoomGov Meeting
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Meeting ID: 161 756 1452
Passcode: 586729
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DetailsOrganizerNIAIDWhenFri, Apr 02, 2021 - 12:00 pm - 1:00 pmWhereOnline |
Speaker: Tonia Korves, Ph.D. Lead Data Scientist Data and Human-Centered Solutions Innovation Center MITRE Corporation Abstract As COVID-19 research rapidly escalated last year, we quickly built a platform to help biomedical experts track published research about potential therapeutics and vaccines. The platform includes a natural language processing pipeline that identifies scientific documents about SARS-CoV-2 and other viruses, particular drugs, and vaccine types, sorted by stages of research, and a dashboard called the COVID-19 Therapeutic Information Browser, available at covidtib.c19hcc.org. The comprehensive data from this platform enables us to characterize COVID-19 drug research over time and at scale, and potentially draw lessons that can inform future decisions. In this talk, we will present our natural language processing methods, the dashboard, and an analysis of trends in published COVID-19 drug research and clinical trials over the past year. We will also discuss other uses for this data, outstanding challenges, and other potential applications of this approach. Join ZoomGov Meeting https://nih.zoomgov.com/j/1617561452?pwd=bE5YOVgrL2tHbFZidUJQOWZzdGlpZz09 Meeting ID: 161 756 1452 Passcode: 586729 One tap mobile +16692545252,,1617561452#,,,,*586729# US (San Jose) +16468287666,,1617561452#,,,,*586729# US (New York) | 2021-04-02 12:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIAID | 0 | Characterizing the evolving landscape of COVID-19 therapeutics research with natural language processing | |||
341 |
Description
Dear colleagues,
We'll be hosting a special guest lecture by Prof. John Moult from UMD.
Abstract:
Computing the three-dimensional structure of a protein molecule from its amino acid
sequence is a long-standing grand challenge problem. Results from the recent Critical
Assessment of Structure Prediction (CASP14) experiment show that new deep-learning
methods have now provided a dramatic solution, with many computed structures
comparable, likely sometimes better, representations of in vivo protein structures to
those obtained with ...Read More
Dear colleagues,
We'll be hosting a special guest lecture by Prof. John Moult from UMD.
Abstract:
Computing the three-dimensional structure of a protein molecule from its amino acid
sequence is a long-standing grand challenge problem. Results from the recent Critical
Assessment of Structure Prediction (CASP14) experiment show that new deep-learning
methods have now provided a dramatic solution, with many computed structures
comparable, likely sometimes better, representations of in vivo protein structures to
those obtained with state-of-the-art experimental techniques of crystallography and
cryo-electron microscopy. These models have already demonstrated an ability to solve
problematic crystal structures, and the results suggest the methods will be successfully
applied to other areas of structural biology and more generally. This is the first solution
of a serious scientific problem by AI, and it will not be the last.
In this talk I’ll describe how the protein modeling field arrived at this point, what sort of
methods were used, characteristics of the computed structures, and some potential
further applications.
Bio:
John Moult is a Fellow at the Institute for Bioscience and Biotechnology Research and
Professor in the Department of Cell Biology and Molecular Genetics at the University of
Maryland. He is co-founder and Chair of CASP (Critical Assessment of Protein structure
Prediction), an organization that conducts large-scale experiments in protein structure
modeling, and joint founder of CAGI, a sister organization for advancing genome
interpretation. He is an ex-crystallographer turned computational biologist. His research
interests include the relationship between genetic variation and human disease, disease
mechanisms, protein structure, and different ways of doing science. (BSc Physics, University of London 1965, D.Phil Molecular Biophysics, University of Oxford 1970)
Join Zoom Meeting
https://umd.zoom.us/j/97941931766
Meeting ID: 979 4193 1766
One tap mobile
+13017158592,,97941931766# US (Washington DC)
+13126266799,,97941931766# US (Chicago)
DetailsOrganizerCDSLWhenMon, Apr 05, 2021 - 11:00 am - 12:00 pmWhereOnline |
Dear colleagues, We'll be hosting a special guest lecture by Prof. John Moult from UMD. Abstract: Computing the three-dimensional structure of a protein molecule from its amino acid sequence is a long-standing grand challenge problem. Results from the recent Critical Assessment of Structure Prediction (CASP14) experiment show that new deep-learning methods have now provided a dramatic solution, with many computed structures comparable, likely sometimes better, representations of in vivo protein structures to those obtained with state-of-the-art experimental techniques of crystallography and cryo-electron microscopy. These models have already demonstrated an ability to solve problematic crystal structures, and the results suggest the methods will be successfully applied to other areas of structural biology and more generally. This is the first solution of a serious scientific problem by AI, and it will not be the last. In this talk I’ll describe how the protein modeling field arrived at this point, what sort of methods were used, characteristics of the computed structures, and some potential further applications. Bio: John Moult is a Fellow at the Institute for Bioscience and Biotechnology Research and Professor in the Department of Cell Biology and Molecular Genetics at the University of Maryland. He is co-founder and Chair of CASP (Critical Assessment of Protein structure Prediction), an organization that conducts large-scale experiments in protein structure modeling, and joint founder of CAGI, a sister organization for advancing genome interpretation. He is an ex-crystallographer turned computational biologist. His research interests include the relationship between genetic variation and human disease, disease mechanisms, protein structure, and different ways of doing science. (BSc Physics, University of London 1965, D.Phil Molecular Biophysics, University of Oxford 1970) Join Zoom Meeting https://umd.zoom.us/j/97941931766 Meeting ID: 979 4193 1766 One tap mobile +13017158592,,97941931766# US (Washington DC) +13126266799,,97941931766# US (Chicago) | 2021-04-05 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CDSL | 0 | An AI solution to the protein folding problem: what is it, how did it happen, and some implications | |||
339 |
Description
Description: This course is an introduction to scientific computing in Julia for those who have some experience programming in other languages. Basic concepts of Julia and its scientific stack will be introduced. We will compare syntax and data structures in Julia with those of other scientific computing languages, and demo how to install Julia packages and how to run simple Julia scripts on Biowulf.
Expected knowledge: Some programming experience in a scientific computing language (Matlab, ...Read More
Description: This course is an introduction to scientific computing in Julia for those who have some experience programming in other languages. Basic concepts of Julia and its scientific stack will be introduced. We will compare syntax and data structures in Julia with those of other scientific computing languages, and demo how to install Julia packages and how to run simple Julia scripts on Biowulf.
Expected knowledge: Some programming experience in a scientific computing language (Matlab, Python, R). Familiarity with the Linux/Unix command line.
Instructor: Antonio Ulloa (NIH HPC Staff)
The class is free but registration is required.
You can register at https://hpc.nih.gov/nih/classes/
Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems
DetailsWhenWed, Apr 07, 2021 - 10:00 am - 11:00 amWhereOnline |
Description: This course is an introduction to scientific computing in Julia for those who have some experience programming in other languages. Basic concepts of Julia and its scientific stack will be introduced. We will compare syntax and data structures in Julia with those of other scientific computing languages, and demo how to install Julia packages and how to run simple Julia scripts on Biowulf. Expected knowledge: Some programming experience in a scientific computing language (Matlab, Python, R). Familiarity with the Linux/Unix command line. Instructor: Antonio Ulloa (NIH HPC Staff) The class is free but registration is required. You can register at https://hpc.nih.gov/nih/classes/ Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems | 2021-04-07 10:00:00 | Online | Programming | Online | 0 | Julia for Scientific Computing | ||||
340 |
Description
Register/Join
Researchers continue to face major challenges when comparing diverse single-cell RNA sequencing (scRNA-seq) data sets, because these data often are generated by different technologies from a variety of laboratories.
In this webinar, Dr. Charles Wang will address the need for guidelines to help choose algorithms for more accurate biological interpretations of varied ...Read More
Register/Join
Researchers continue to face major challenges when comparing diverse single-cell RNA sequencing (scRNA-seq) data sets, because these data often are generated by different technologies from a variety of laboratories.
In this webinar, Dr. Charles Wang will address the need for guidelines to help choose algorithms for more accurate biological interpretations of varied data types acquired by different platforms.
Using two well-characterized cellular reference samples (breast cancer cells and B cells), captured either separately or in mixtures, Dr. Wang compared different scRNA-seq platforms and several methods (preprocessing, normalization, and batch-effect correction) at multiple centers. Although preprocessing and normalization contributed to variability in gene detection and cell classification, batch-effect correction was by far the most important factor in correctly classifying the cells. Moreover, scRNA-seq data set characteristics (e.g., sample and cellular heterogeneity, the platform used, etc.) were critical in determining the optimal bioinformatics method. However, reproducibility across centers and platforms was high when appropriate bioinformatics methods were applied.
These findings offer practical guidance for optimizing platform and software selection when designing an scRNA-seq study.
Presenter:
Charles Wang, M.D., Ph.D., M.P.H.
Dr. Charles Wang is a professor at the Loma Linda University School of Medicine and director of the Center for Genomics. Dr. Wang was the director of Clinical Transcriptional Genomics Core at Cedars-Sinai Medical Center; associate professor of medicine at the David Geffen School of Medicine at the University of California-Los Angeles; and director of the Functional Genomics Core at City of Hope. He is the recipient of several awards, including the American Association for Cancer Research–Bristol-Myers Squibb Young Investigator Award.
About the Data Science Seminar Series:
The CBIIT Data Science Seminar Series presents talks from innovators in the research and informatics community. Follow the conversation on Twitter with @NCIDataSci and #DataSciSeminar.
To see upcoming speakers or view recordings from past presentations, visit the CBIIT Data Science Seminar Series website.
Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Eve Shalley (240-276-5194, eve.shalley@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339) at least 5 days in advance of the event.
DetailsOrganizerCBIITWhenWed, Apr 07, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register/Join Researchers continue to face major challenges when comparing diverse single-cell RNA sequencing (scRNA-seq) data sets, because these data often are generated by different technologies from a variety of laboratories. In this webinar, Dr. Charles Wang will address the need for guidelines to help choose algorithms for more accurate biological interpretations of varied data types acquired by different platforms. Using two well-characterized cellular reference samples (breast cancer cells and B cells), captured either separately or in mixtures, Dr. Wang compared different scRNA-seq platforms and several methods (preprocessing, normalization, and batch-effect correction) at multiple centers. Although preprocessing and normalization contributed to variability in gene detection and cell classification, batch-effect correction was by far the most important factor in correctly classifying the cells. Moreover, scRNA-seq data set characteristics (e.g., sample and cellular heterogeneity, the platform used, etc.) were critical in determining the optimal bioinformatics method. However, reproducibility across centers and platforms was high when appropriate bioinformatics methods were applied. These findings offer practical guidance for optimizing platform and software selection when designing an scRNA-seq study. Presenter: Charles Wang, M.D., Ph.D., M.P.H. Dr. Charles Wang is a professor at the Loma Linda University School of Medicine and director of the Center for Genomics. Dr. Wang was the director of Clinical Transcriptional Genomics Core at Cedars-Sinai Medical Center; associate professor of medicine at the David Geffen School of Medicine at the University of California-Los Angeles; and director of the Functional Genomics Core at City of Hope. He is the recipient of several awards, including the American Association for Cancer Research–Bristol-Myers Squibb Young Investigator Award. About the Data Science Seminar Series: The CBIIT Data Science Seminar Series presents talks from innovators in the research and informatics community. Follow the conversation on Twitter with @NCIDataSci and #DataSciSeminar. To see upcoming speakers or view recordings from past presentations, visit the CBIIT Data Science Seminar Series website. Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Eve Shalley (240-276-5194, eve.shalley@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339) at least 5 days in advance of the event. | 2021-04-07 11:00:00 | Online | Cancer,Data Science | Online | CBIIT | 0 | Functional Precision Oncology for Cancer Treatment Selection | |||
344 |
Description
Dr. Wang will present virtually. Register now and join us via Webex.
Researchers continue to face major challenges when comparing diverse single-cell RNA sequencing (scRNA-seq) data sets, because these data often are generated by different technologies from a variety of laboratories.
In this webinar, Dr. Charles Wang will address the need for guidelines to help choose algorithms for more accurate biological interpretations of varied data ...Read More
Dr. Wang will present virtually. Register now and join us via Webex.
Researchers continue to face major challenges when comparing diverse single-cell RNA sequencing (scRNA-seq) data sets, because these data often are generated by different technologies from a variety of laboratories.
In this webinar, Dr. Charles Wang will address the need for guidelines to help choose algorithms for more accurate biological interpretations of varied data types acquired by different platforms.
Using two well-characterized cellular reference samples (breast cancer cells and B cells), captured either separately or in mixtures, Dr. Wang compared different scRNA-seq platforms and several methods (preprocessing, normalization, and batch-effect correction) at multiple centers. Although preprocessing and normalization contributed to variability in gene detection and cell classification, batch-effect correction was by far the most important factor in correctly classifying the cells. Moreover, scRNA-seq data set characteristics (e.g., sample and cellular heterogeneity, the platform used, etc.) were critical in determining the optimal bioinformatics method. However, reproducibility across centers and platforms was high when appropriate bioinformatics methods were applied.
These findings offer practical guidance for optimizing platform and software selection when designing an scRNA-seq study.
Speaker:
Charles Wang, M.D., Ph.D., M.P.H.
Dr. Charles Wang is a professor at the Loma Linda University School of Medicine and director of the Center for Genomics. Dr. Wang was the director of Clinical Transcriptional Genomics Core at Cedars-Sinai Medical Center; associate professor of medicine at the David Geffen School of Medicine at the University of California-Los Angeles; and director of the Functional Genomics Core at City of Hope. He is the recipient of several awards, including the American Association for Cancer Research–Bristol-Myers Squibb Young Investigator Award.
About the Data Science Seminar Series
The National Cancer Institute’s (NCI) Center for Biomedical Informatics and Information Technology (CBIIT) Data Science Seminar Series presents talks from innovators in the data science and cancer research communities.
To view upcoming speakers or view recordings for past presentations, visit Data Science Seminar Series. Follow the conversation @NCIDataSci and #DataSciSeminar. For more information about NCI’s Center for Biomedical Informatics and Information Technology (CBIIT) visit: datascience.cancer.gov
Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Eve Shalley (240-276-5194, eve.shalley@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339) at least 5 days in advance of the event.
DetailsOrganizerCBIITWhenWed, Apr 07, 2021 - 11:00 am - 12:00 pmWhereOnline |
Dr. Wang will present virtually. Register now and join us via Webex. Researchers continue to face major challenges when comparing diverse single-cell RNA sequencing (scRNA-seq) data sets, because these data often are generated by different technologies from a variety of laboratories. In this webinar, Dr. Charles Wang will address the need for guidelines to help choose algorithms for more accurate biological interpretations of varied data types acquired by different platforms. Using two well-characterized cellular reference samples (breast cancer cells and B cells), captured either separately or in mixtures, Dr. Wang compared different scRNA-seq platforms and several methods (preprocessing, normalization, and batch-effect correction) at multiple centers. Although preprocessing and normalization contributed to variability in gene detection and cell classification, batch-effect correction was by far the most important factor in correctly classifying the cells. Moreover, scRNA-seq data set characteristics (e.g., sample and cellular heterogeneity, the platform used, etc.) were critical in determining the optimal bioinformatics method. However, reproducibility across centers and platforms was high when appropriate bioinformatics methods were applied. These findings offer practical guidance for optimizing platform and software selection when designing an scRNA-seq study. Speaker: Charles Wang, M.D., Ph.D., M.P.H. Dr. Charles Wang is a professor at the Loma Linda University School of Medicine and director of the Center for Genomics. Dr. Wang was the director of Clinical Transcriptional Genomics Core at Cedars-Sinai Medical Center; associate professor of medicine at the David Geffen School of Medicine at the University of California-Los Angeles; and director of the Functional Genomics Core at City of Hope. He is the recipient of several awards, including the American Association for Cancer Research–Bristol-Myers Squibb Young Investigator Award. About the Data Science Seminar Series The National Cancer Institute’s (NCI) Center for Biomedical Informatics and Information Technology (CBIIT) Data Science Seminar Series presents talks from innovators in the data science and cancer research communities. To view upcoming speakers or view recordings for past presentations, visit Data Science Seminar Series. Follow the conversation @NCIDataSci and #DataSciSeminar. For more information about NCI’s Center for Biomedical Informatics and Information Technology (CBIIT) visit: datascience.cancer.gov Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Eve Shalley (240-276-5194, eve.shalley@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339) at least 5 days in advance of the event. | 2021-04-07 11:00:00 | Online | Online | CBIIT | 0 | A Multi-center Study Benchmarking Single-cell RNA Sequencing Technologies Using Reference Samples | ||||
350 |
Description
https://nih-irp-singlecell.github.io/SC-UsersGroup/
Presenter: George Emanuel PhD, Co-founder Vizgen, Director of Technology and Partnerships.
Abstract: Biological systems are comprised of numerous cell types, intricately organized to form functional tissues and organs. Cell atlas initiatives with single-cell RNA sequencing have begun to characterize cell types based on their RNA expression profiles. However, the tissue organization is lost when cells are dissociated for single-cell sequencing, making it ...Read More
https://nih-irp-singlecell.github.io/SC-UsersGroup/
Presenter: George Emanuel PhD, Co-founder Vizgen, Director of Technology and Partnerships.
Abstract: Biological systems are comprised of numerous cell types, intricately organized to form functional tissues and organs. Cell atlas initiatives with single-cell RNA sequencing have begun to characterize cell types based on their RNA expression profiles. However, the tissue organization is lost when cells are dissociated for single-cell sequencing, making it difficult to study how the cellular heterogeneity is contributing to the function of the tissue.
This talk introduces a technology which enables in situ profiling of the spatial organization of intact tissue with genomic-scale throughput. It permits spatial profiling of hundreds of thousands of cells with high accuracy and reproducibility through combinatorial labeling, sequential imaging, and error-robust barcoding. The talk will highlight various, including mapping GPCR expression across the mouse brain, identifying rare blood cells by measuring millions of PBMCs, and characterizing the immune landscape and microenvironment of a human colon cancer tumor.
Biography: Dr. Emanuel is trained as a biophysicist at Harvard University in the lab of Dr. Xiaowei Zhuang. For the past decade he has worked on the development of highly multiplexed RNA fluorescence in situ hybridization-based technologies. George is a scientific cofounder at Vizgen, where he is currently Director of Technology and Partnerships.
DetailsOrganizerSingle Cell Users GroupWhenThu, Apr 08, 2021 - 11:00 am - 12:00 pmWhereOnline |
https://nih-irp-singlecell.github.io/SC-UsersGroup/ Presenter: George Emanuel PhD, Co-founder Vizgen, Director of Technology and Partnerships. Abstract: Biological systems are comprised of numerous cell types, intricately organized to form functional tissues and organs. Cell atlas initiatives with single-cell RNA sequencing have begun to characterize cell types based on their RNA expression profiles. However, the tissue organization is lost when cells are dissociated for single-cell sequencing, making it difficult to study how the cellular heterogeneity is contributing to the function of the tissue. This talk introduces a technology which enables in situ profiling of the spatial organization of intact tissue with genomic-scale throughput. It permits spatial profiling of hundreds of thousands of cells with high accuracy and reproducibility through combinatorial labeling, sequential imaging, and error-robust barcoding. The talk will highlight various, including mapping GPCR expression across the mouse brain, identifying rare blood cells by measuring millions of PBMCs, and characterizing the immune landscape and microenvironment of a human colon cancer tumor. Biography: Dr. Emanuel is trained as a biophysicist at Harvard University in the lab of Dr. Xiaowei Zhuang. For the past decade he has worked on the development of highly multiplexed RNA fluorescence in situ hybridization-based technologies. George is a scientific cofounder at Vizgen, where he is currently Director of Technology and Partnerships. | 2021-04-08 11:00:00 | Online | Single Cell Technologies | Online | Single Cell Users Group | 0 | Molecular atlassing with MERSCOPE reveals the spatial organization of mouse and human tissues | |||
328 |
Description
Register
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of RStudio, including how to import data, create scripts, and run code. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library ...Read More
Register
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of RStudio, including how to import data, create scripts, and run code. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; create a script in R and run code from a script and from the console; define the following terms as they relate to R: object, assign, call, function, and arguments; assign values to objects in R; learn about R objects; describe the major R data types; understand how to create and work with R vectors; describe the steps for importing data into R.
Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the data before the class. Please bring your laptop with R and RStudio installed.
DetailsOrganizerNIH Training LibraryWhenThu, Apr 08, 2021 - 2:00 pm - 3:15 pmWhereOnline |
Register This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of RStudio, including how to import data, create scripts, and run code. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; create a script in R and run code from a script and from the console; define the following terms as they relate to R: object, assign, call, function, and arguments; assign values to objects in R; learn about R objects; describe the major R data types; understand how to create and work with R vectors; describe the steps for importing data into R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the data before the class. Please bring your laptop with R and RStudio installed. | 2021-04-08 14:00:00 | Online | Programming | Online | NIH Training Library | 0 | INTRODUCTION TO R AND RSTUDIO | |||
965 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Apr 08, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-04-08 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-Cell RNA-Seq Analysis on NIDAP | ||
342 |
Description
Tumor heterogeneity and plasticity provide a driving force for tumor progression and metastasis as well as treatment response. Tumor heterogeneity can be explained by the same mechanisms that govern the developmental programs of an organism and share many of the properties observed in cellular differentiation and physiological processes including stem cell biology and epithelial-mesenchymal transition (EMT). In this seminar series, I will talk about biological basis of tumor heterogeneity from the perspectives of three spatial ...Read More
Tumor heterogeneity and plasticity provide a driving force for tumor progression and metastasis as well as treatment response. Tumor heterogeneity can be explained by the same mechanisms that govern the developmental programs of an organism and share many of the properties observed in cellular differentiation and physiological processes including stem cell biology and epithelial-mesenchymal transition (EMT). In this seminar series, I will talk about biological basis of tumor heterogeneity from the perspectives of three spatial levels: tissue, cell, and molecule. Tumor heterogeneity is often viewed at tissue level, which is determined by cellular heterogeneity and ultimately determined by gene regulatory networks consisting of genome sequences, transcription factors, signaling molecules, and epigenetic information. The sources of tumor heterogeneity include intrinsic developmental programs, tumor microenvironment, and stochastic processes. I will describe gene regulatory network and mathematical modeling and discuss how mathematical modeling can help understand the sources of heterogeneity as well as the initiation and dynamics of cellular states and epigenetic memory. I will describe differential equations and quasi-potential as a mathematic tool to quantify Waddington’s epigenetic landscape and predict trajectory of cancer cell evolution and treatment response.
Speaker: Maxwell Lee
Log-in via WebEx
https://cbiit.webex.com/cbiit/j.php?MTID=mc31fec457279698a34e0aa990172743e
Meeting number (access code): 157 260 1880
Meeting password: UEuBV2P2Z$3
Please feel free to forward to others who might be interested!
DetailsOrganizerNCI SS/SCWhenMon, Apr 12, 2021 - 10:00 am - 11:00 amWhereOnline |
Tumor heterogeneity and plasticity provide a driving force for tumor progression and metastasis as well as treatment response. Tumor heterogeneity can be explained by the same mechanisms that govern the developmental programs of an organism and share many of the properties observed in cellular differentiation and physiological processes including stem cell biology and epithelial-mesenchymal transition (EMT). In this seminar series, I will talk about biological basis of tumor heterogeneity from the perspectives of three spatial levels: tissue, cell, and molecule. Tumor heterogeneity is often viewed at tissue level, which is determined by cellular heterogeneity and ultimately determined by gene regulatory networks consisting of genome sequences, transcription factors, signaling molecules, and epigenetic information. The sources of tumor heterogeneity include intrinsic developmental programs, tumor microenvironment, and stochastic processes. I will describe gene regulatory network and mathematical modeling and discuss how mathematical modeling can help understand the sources of heterogeneity as well as the initiation and dynamics of cellular states and epigenetic memory. I will describe differential equations and quasi-potential as a mathematic tool to quantify Waddington’s epigenetic landscape and predict trajectory of cancer cell evolution and treatment response. Speaker: Maxwell Lee Log-in via WebEx https://cbiit.webex.com/cbiit/j.php?MTID=mc31fec457279698a34e0aa990172743e Meeting number (access code): 157 260 1880 Meeting password: UEuBV2P2Z$3 Please feel free to forward to others who might be interested! | 2021-04-12 10:00:00 | Online | Cancer | Online | NCI SS/SC | 0 | Cancer stem cell model and evolutionary dynamics | |||
343 |
Description
Dear Colleagues,
As a continuation of the NHGRI seminar series focused on the “Bold Predictions for Human Genomics by 2030,” please join us for the third seminar in the series on Monday, April 12 from 3:00 – 4:30 pm ET. This seminar will focus on Bold Prediction #3: The general features of the epigenetic landscape and transcriptional output will be routinely incorporated into predictive models of the impact of genotype on phenotype. Dr. Tom Gingeras of Cold Spring Harbor Laboratory and ...Read More
Dear Colleagues,
As a continuation of the NHGRI seminar series focused on the “Bold Predictions for Human Genomics by 2030,” please join us for the third seminar in the series on Monday, April 12 from 3:00 – 4:30 pm ET. This seminar will focus on Bold Prediction #3: The general features of the epigenetic landscape and transcriptional output will be routinely incorporated into predictive models of the impact of genotype on phenotype. Dr. Tom Gingeras of Cold Spring Harbor Laboratory and Dr. Tuuli Lappalainen of Columbia University and the NY Genome Center will use this prediction as an aspirational theme for their talks, highlighting their own research in the context of that theme and speculating about the next decade in their research areas. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV.
To access the Zoom Webinar, please register at: https://nih.zoomgov.com/webinar/register/WN_vq4qZJD7Sl6roqHA1DNMHg
Closed captioning will be provided. Individuals with disabilities who need reasonable accommodation to participate in this event should contact Susan Vasquez (Susan.Vasquez@nih.gov; 301-503-9790) and/or the Federal Relay (1-800-877-8339) in advance of the seminar.
All the best,
Eric
Eric Green, M.D., Ph.D.
Director, National Human Genome Research Institute National Institutes of Health
DetailsOrganizerNHGRIWhenMon, Apr 12, 2021 - 3:00 pm - 4:30 pmWhereOnline |
Dear Colleagues, As a continuation of the NHGRI seminar series focused on the “Bold Predictions for Human Genomics by 2030,” please join us for the third seminar in the series on Monday, April 12 from 3:00 – 4:30 pm ET. This seminar will focus on Bold Prediction #3: The general features of the epigenetic landscape and transcriptional output will be routinely incorporated into predictive models of the impact of genotype on phenotype. Dr. Tom Gingeras of Cold Spring Harbor Laboratory and Dr. Tuuli Lappalainen of Columbia University and the NY Genome Center will use this prediction as an aspirational theme for their talks, highlighting their own research in the context of that theme and speculating about the next decade in their research areas. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV. To access the Zoom Webinar, please register at: https://nih.zoomgov.com/webinar/register/WN_vq4qZJD7Sl6roqHA1DNMHg Closed captioning will be provided. Individuals with disabilities who need reasonable accommodation to participate in this event should contact Susan Vasquez (Susan.Vasquez@nih.gov; 301-503-9790) and/or the Federal Relay (1-800-877-8339) in advance of the seminar. All the best, Eric Eric Green, M.D., Ph.D. Director, National Human Genome Research Institute National Institutes of Health | 2021-04-12 15:00:00 | Online | Genomics | Online | NHGRI | 0 | Bold Predictions for Human Genomics by 2030 | |||
306 |
Description
Workshop Registration
Dear NIH colleagues,
You are invited to participate in the Machine Learning in Genomics: Tools, Resources, Clinical Applications, and Ethics Workshop, held virtually on Tuesday, April 13 – Wednesday, April 14, 2021.
Information about the agenda, speakers and registration can be found on the workshop webpage.
...Read More
Workshop Registration
Dear NIH colleagues,
You are invited to participate in the Machine Learning in Genomics: Tools, Resources, Clinical Applications, and Ethics Workshop, held virtually on Tuesday, April 13 – Wednesday, April 14, 2021.
Information about the agenda, speakers and registration can be found on the workshop webpage.
The meeting is organized and hosted by the NHGRI Data Science Working Group, and will kick off with a welcome message from NHGRI Director, Dr. Eric Green.
This meeting is free and open to anyone who registers.
Please direct any questions to natalie.kucher@nih.gov and sean.garin@nih.gov.
Sincerely,
Shurjo Sen (on behalf of the Organizing Committee)
DetailsOrganizerNHGRIWhenTue, Apr 13 - Wed, Apr 14, 2021 -11:00 am - 4:00 pmWhereOnline |
Workshop Registration Dear NIH colleagues, You are invited to participate in the Machine Learning in Genomics: Tools, Resources, Clinical Applications, and Ethics Workshop, held virtually on Tuesday, April 13 – Wednesday, April 14, 2021. Information about the agenda, speakers and registration can be found on the workshop webpage. The meeting is organized and hosted by the NHGRI Data Science Working Group, and will kick off with a welcome message from NHGRI Director, Dr. Eric Green. This meeting is free and open to anyone who registers. Please direct any questions to natalie.kucher@nih.gov and sean.garin@nih.gov. Sincerely, Shurjo Sen (on behalf of the Organizing Committee) | 2021-04-13 11:00:00 | Online | Artificial Intelligence / Machine Learning,Genomics | Online | NHGRI | 0 | Machine Learning in Genomics: Tools, Resources, Clinical Applications, and Ethics Workshop | |||
298 |
Description
Register
Session Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo ...Read More
Register
Session Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics.
Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects.
DetailsOrganizerNIH Training LibraryWhenWed, Apr 14, 2021 - 10:00 am - 3:00 pmWhereOnline |
Register Session Description Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics. Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects. | 2021-04-14 10:00:00 | Online | Pathway Analysis | Online | NIH Training Library | 0 | Ingenuity Pathway Analysis (IPA) | |||
325 |
Description
Registration: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=ec198bc69667ba131397fb48e0c9b9708
Presenter: Christian Zinser PhD Head of Bioinformativs at Precigen Bioinformatics Germany
Description: This presentation will give you an overview of the Genomatix Genome Analyzer (GGA) functionalities and data background.
The GGA is Genomatix's integrated solution for the analysis of ...Read More
Registration: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=ec198bc69667ba131397fb48e0c9b9708
Presenter: Christian Zinser PhD Head of Bioinformativs at Precigen Bioinformatics Germany
Description: This presentation will give you an overview of the Genomatix Genome Analyzer (GGA) functionalities and data background.
The GGA is Genomatix's integrated solution for the analysis of Next Generation Sequencing (NGS) data, gene regulation, and pathway analysis. It includes a comprehensive genome annotation and data visualization, accessible in an intuitive web-based GUI.
The biological background data consisting of annotation and gene network data provided by ElDorado plus the transcription factor knowledge contained in MatBase lets researchers analyze and interpret their experimental results in a unique biological context for 26 different species. Differential expression analysis, gene network and pathway generation, regulatory frameworks, literature analysis and binding site motif definition are only a few of the tasks that can be performed.
POC: Daoud Meerzaman
DetailsOrganizerCBIITWhenWed, Apr 14, 2021 - 10:00 am - 11:00 amWhereOnline |
Registration: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=ec198bc69667ba131397fb48e0c9b9708 Presenter: Christian Zinser PhD Head of Bioinformativs at Precigen Bioinformatics Germany Description: This presentation will give you an overview of the Genomatix Genome Analyzer (GGA) functionalities and data background. The GGA is Genomatix's integrated solution for the analysis of Next Generation Sequencing (NGS) data, gene regulation, and pathway analysis. It includes a comprehensive genome annotation and data visualization, accessible in an intuitive web-based GUI. The biological background data consisting of annotation and gene network data provided by ElDorado plus the transcription factor knowledge contained in MatBase lets researchers analyze and interpret their experimental results in a unique biological context for 26 different species. Differential expression analysis, gene network and pathway generation, regulatory frameworks, literature analysis and binding site motif definition are only a few of the tasks that can be performed. POC: Daoud Meerzaman | 2021-04-14 10:00:00 | Online | Pathway Analysis,Sequencing Technologies | Online | CBIIT | 0 | Next Generation Sequencing using Genomatix Genome Analyzer | |||
368 |
Description
Presenter:
Ichiro Hiratani, Ph.D.
Team Leader
Laboratory for Developmental Epigenetics
RIKEN Center for Biosystems Dynamics Research (RIKEN BDR), Japan
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Presenter:
Ichiro Hiratani, Ph.D.
Team Leader
Laboratory for Developmental Epigenetics
RIKEN Center for Biosystems Dynamics Research (RIKEN BDR), Japan
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Meeting number (access code): 157 023 7798
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HOSTED BY:
Dr. Chongyi Chen, Investigator
LBMB, CCR, NCI
T: 240-760-7493
DetailsOrganizerNCIWhenThu, Apr 15, 2021 - 12:00 pm - 1:00 pmWhereOnline |
Presenter: Ichiro Hiratani, Ph.D. Team Leader Laboratory for Developmental Epigenetics RIKEN Center for Biosystems Dynamics Research (RIKEN BDR), Japan JOIN WEBEX MEETING https://cbiit.webex.com/cbiit/j.php?MTID=m13d114a534f9ca5b5200a7544a2c100f Meeting number (access code): 157 023 7798 Meeting password: efXHfV3a3*3 JOIN BY PHONE 1-650-479-3207Call-in toll number (US/Canada) HOSTED BY: Dr. Chongyi Chen, Investigator LBMB, CCR, NCI T: 240-760-7493 | 2021-04-15 12:00:00 | Online | Single Cell Technologies | Online | NCI | 0 | Unraveling the Dynamic 3D Genome Architecture Through Single-Cell DNA Replication Profiling | |||
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Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Apr 15, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-04-15 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
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Description
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Session Description
Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model ...Read More
Registration
Session Description
Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy.
DetailsOrganizerNIH Training LibraryWhenMon, Apr 19, 2021 - 10:00 am - 11:00 amWhereOnline |
Registration Session Description Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy. | 2021-04-19 10:00:00 | Online | Data Resources | Online | NIH Training Library | 0 | ANIMAL MODEL AND MODEL ORGANISM INFORMATION RESOURCES | |||
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Description
Registration is required. Register at this link.
Before the workshop: We will use Google Colab for this workshop. Colab allows us to write and execute Python code through the browser. A Google Account is required for using Colab. If you do not have one, please Read More
Registration is required. Register at this link.
Before the workshop: We will use Google Colab for this workshop. Colab allows us to write and execute Python code through the browser. A Google Account is required for using Colab. If you do not have one, please create a Google Account before the workshop. For technical assistance, contact NCI technical support at https://service.cancer.gov/ncisp.
NOTE: A one-hour help session will be offered on April 23, 11 AM – 12 PM: Getting Started with Google Colab
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR)
Questions? Contact the NCI Data Science Learning Exchange
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, Apr 20, 2021 - 11:00 am - 1:00 pmWhereOnline |
Registration is required. Register at this link. Before the workshop: We will use Google Colab for this workshop. Colab allows us to write and execute Python code through the browser. A Google Account is required for using Colab. If you do not have one, please create a Google Account before the workshop. For technical assistance, contact NCI technical support at https://service.cancer.gov/ncisp. NOTE: A one-hour help session will be offered on April 23, 11 AM – 12 PM: Getting Started with Google Colab Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more. If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2021-04-20 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Introduction to Python and Colab, Running and Quitting, Variables and Assignment | |||
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Description
Presenter:
Michael Kelly, Ph.D.
Scientist III, Team Lead
Single Cell Analysis Facility (CCR)
Cancer Research Technology Program
Virtual: Join WebEx Meeting
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Meeting number (access code): 160 374 7017
Meeting password: jeGepe9E7$2
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Join by phone
1-650-479...Read More
Presenter:
Michael Kelly, Ph.D.
Scientist III, Team Lead
Single Cell Analysis Facility (CCR)
Cancer Research Technology Program
Virtual: Join WebEx Meeting
Additional Connection information:
Meeting number (access code): 160 374 7017
Meeting password: jeGepe9E7$2
Tap to join from a mobile device (attendees only)
+1-650-479-3207,,1603747017## Call-in toll number (US/Canada)
Join by phone
1-650-479-3207 Call-in toll number (US/Canada)
Join from a video system or application
Dial 1603747017@cbiit.webex.com
Join using Microsoft Lync or Microsoft Skype for Business
Dial 1600604277.cbiit@lync.webex.com
DetailsWhenTue, Apr 20, 2021 - 11:00 am - 12:00 pmWhereOnline |
Presenter: Michael Kelly, Ph.D. Scientist III, Team Lead Single Cell Analysis Facility (CCR) Cancer Research Technology Program Virtual: Join WebEx Meeting Additional Connection information: Meeting number (access code): 160 374 7017 Meeting password: jeGepe9E7$2 Tap to join from a mobile device (attendees only) +1-650-479-3207,,1603747017## Call-in toll number (US/Canada) Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 1603747017@cbiit.webex.com Join using Microsoft Lync or Microsoft Skype for Business Dial 1600604277.cbiit@lync.webex.com | 2021-04-20 11:00:00 | Online | Single Cell Technologies | Online | 0 | “Single cell sequencing: an expanding toolkit for cancer research” | ||||
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Description
Abstract:
Single-cell genome-wide profiling offers an approach to map transitional cell states during cell differentiation, disease onset, and drug response. Lineage-tracing, in which cells are labeled with hereditary markers, offers an approach to establishing dynamic relationships between cell states. By combining these two approaches, we can overlay cell dynamics and fate decision boundaries onto classically-defined differentiation hierarchies. I will survey progress in this area, and present a computational method to learn stochastic dynamics from lineage ...Read More
Abstract:
Single-cell genome-wide profiling offers an approach to map transitional cell states during cell differentiation, disease onset, and drug response. Lineage-tracing, in which cells are labeled with hereditary markers, offers an approach to establishing dynamic relationships between cell states. By combining these two approaches, we can overlay cell dynamics and fate decision boundaries onto classically-defined differentiation hierarchies. I will survey progress in this area, and present a computational method to learn stochastic dynamics from lineage tracing genomic assays. We extend the statistical problem of compressed sensing to enforce coherent, sparse clonal relationships in time series data. In datasets representing hematopoiesis, reprogramming, and in vitro differentiation, the resulting approach identifies fate biases not previously detected, consistent with heterogeneity in the expression of transcription factors.
Short bio:
Dr. Klein is an Associate Professor of Systems Biology at Harvard Medical School. He obtained his PhD in physics from Cambridge University, and a postdoc in experimental systems biology from Harvard Medical School. Dr. Klein studies how cells make fate choices in developing and adult tissues. He pioneered droplet microfluidics for single-cell RNA-Seq, computational methods for analyzing single-cell genomics data, and methods for quantitative clonal analysis. His work includes the discovery of novel cell types, discovering regulators of tissue regeneration, mapping immune cells in cancer, and establishing maps of how cells develop from stem cells to mature cell types. In 2018, Dr. Klein’s work was recognized as part of the the AAAS “Breakthrough of the Year”. In 2020 he received the Dr. Susan Lim Award for Outstanding Young Investigator from the International Society for Stem Cell Research (ISSCR). In 2021, he was awarded the inaugural James Prize for Science and Technology Integration by the USA National Academy of Sciences.
ZoomGov link for all the individual meetings and the seminar:
https://nih.zoomgov.com/j/1619988709?pwd=dEIwM0ExOXFtSjNqd0xmcGJCVEk5QT09
Meeting ID: 161 998 8709
Passcode: 20892
DetailsOrganizerSystems Biology Interest GroupWhenTue, Apr 20, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Abstract: Single-cell genome-wide profiling offers an approach to map transitional cell states during cell differentiation, disease onset, and drug response. Lineage-tracing, in which cells are labeled with hereditary markers, offers an approach to establishing dynamic relationships between cell states. By combining these two approaches, we can overlay cell dynamics and fate decision boundaries onto classically-defined differentiation hierarchies. I will survey progress in this area, and present a computational method to learn stochastic dynamics from lineage tracing genomic assays. We extend the statistical problem of compressed sensing to enforce coherent, sparse clonal relationships in time series data. In datasets representing hematopoiesis, reprogramming, and in vitro differentiation, the resulting approach identifies fate biases not previously detected, consistent with heterogeneity in the expression of transcription factors. Short bio: Dr. Klein is an Associate Professor of Systems Biology at Harvard Medical School. He obtained his PhD in physics from Cambridge University, and a postdoc in experimental systems biology from Harvard Medical School. Dr. Klein studies how cells make fate choices in developing and adult tissues. He pioneered droplet microfluidics for single-cell RNA-Seq, computational methods for analyzing single-cell genomics data, and methods for quantitative clonal analysis. His work includes the discovery of novel cell types, discovering regulators of tissue regeneration, mapping immune cells in cancer, and establishing maps of how cells develop from stem cells to mature cell types. In 2018, Dr. Klein’s work was recognized as part of the the AAAS “Breakthrough of the Year”. In 2020 he received the Dr. Susan Lim Award for Outstanding Young Investigator from the International Society for Stem Cell Research (ISSCR). In 2021, he was awarded the inaugural James Prize for Science and Technology Integration by the USA National Academy of Sciences. ZoomGov link for all the individual meetings and the seminar: https://nih.zoomgov.com/j/1619988709?pwd=dEIwM0ExOXFtSjNqd0xmcGJCVEk5QT09 Meeting ID: 161 998 8709 Passcode: 20892 | 2021-04-20 14:00:00 | Online | Single Cell Technologies | Online | Systems Biology Interest Group | 0 | Learning dynamics from single cell genomics and lineage tracing | |||
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Description
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Description:
Dr. Nicholas Navin is an ...Read More
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Description:
Dr. Nicholas Navin is an Associate Professor at MD Anderson Cancer Center, with a joint appointment in the Department of Bioinformatics. He is a faculty member at The University of Texas MD Anderson Cancer Center UTHealth Graduate School of Biomedical Sciences. He is also the Director of the CPRIT Single Cell Genomic Center (Single Core) and the Co-Director of the Advanced Technology Genomics Core (ATGC) at MD Anderson. He is the Principal Investigator of the Navin Laboratory, which has pioneered the development of single cell sequencing technologies. Dr. Navin’s group continues to pioneer the developing novel technologies for performing single cell DNA and RNA sequencing, in addition to innovative computational and statistical methods for analyzing the resulting large-scale datasets. These methods are being applied to study cancer evolution in the context of invasion, metastasis and therapy resistance. In this webinar, Dr. Navin will be presenting on breast cancer evolution through the lens of single cell genomics.
Speaker:
Nicholas Navin, Ph.D.
Associate Professor
Director, CPRIT Single Cell Genomics Center Co-Director, Advanced Technology Genomics Core Department of Genetics, Division of Basic Science Research, The University of Texas MD Anderson Cancer Center
DetailsOrganizerNCIWhenTue, Apr 20, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Register Here Description: Dr. Nicholas Navin is an Associate Professor at MD Anderson Cancer Center, with a joint appointment in the Department of Bioinformatics. He is a faculty member at The University of Texas MD Anderson Cancer Center UTHealth Graduate School of Biomedical Sciences. He is also the Director of the CPRIT Single Cell Genomic Center (Single Core) and the Co-Director of the Advanced Technology Genomics Core (ATGC) at MD Anderson. He is the Principal Investigator of the Navin Laboratory, which has pioneered the development of single cell sequencing technologies. Dr. Navin’s group continues to pioneer the developing novel technologies for performing single cell DNA and RNA sequencing, in addition to innovative computational and statistical methods for analyzing the resulting large-scale datasets. These methods are being applied to study cancer evolution in the context of invasion, metastasis and therapy resistance. In this webinar, Dr. Navin will be presenting on breast cancer evolution through the lens of single cell genomics. Speaker: Nicholas Navin, Ph.D. Associate Professor Director, CPRIT Single Cell Genomics Center Co-Director, Advanced Technology Genomics Core Department of Genetics, Division of Basic Science Research, The University of Texas MD Anderson Cancer Center | 2021-04-20 15:00:00 | Online | Single Cell Technologies | Online | NCI | 0 | Breast Cancer Evolution Through the Lens of Single Cell Genomics | |||
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Description
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Session Description
QIAGEN’s CLC Genomics Workbench enables researchers to analyze NGS data without the use of command line and is a powerful tool for determining differential expression and for variant calling. In this workshop students will explore the usage of CLC Genomics Workbench for taking raw NGS data and performing QC, processing, statistical analyses, and visualizations. The first part of the training will ...Read More
Registration
Session Description
QIAGEN’s CLC Genomics Workbench enables researchers to analyze NGS data without the use of command line and is a powerful tool for determining differential expression and for variant calling. In this workshop students will explore the usage of CLC Genomics Workbench for taking raw NGS data and performing QC, processing, statistical analyses, and visualizations. The first part of the training will focus on the identifying differentially expressed genes from RNA-seq and how those results can be passed to Ingenuity Pathway Analysis (IPA) for biological interpretation. The second half of the training will provide insight into analysis of DNA-seq data for variant detection and will introduce how Ingenuity Variant Analysis (IVA) can be used to prioritize those variant findings.
DetailsOrganizerNIH Training LibraryWhenWed, Apr 21, 2021 - 10:00 am - 12:00 pmWhereOnline |
Registration Session Description QIAGEN’s CLC Genomics Workbench enables researchers to analyze NGS data without the use of command line and is a powerful tool for determining differential expression and for variant calling. In this workshop students will explore the usage of CLC Genomics Workbench for taking raw NGS data and performing QC, processing, statistical analyses, and visualizations. The first part of the training will focus on the identifying differentially expressed genes from RNA-seq and how those results can be passed to Ingenuity Pathway Analysis (IPA) for biological interpretation. The second half of the training will provide insight into analysis of DNA-seq data for variant detection and will introduce how Ingenuity Variant Analysis (IVA) can be used to prioritize those variant findings. | 2021-04-21 10:00:00 | Online | Variant Analysis,Bioinformatics Software | Online | NIH Training Library | 0 | EXPRESSION AND VARIANT DATA ANALYSIS WITH CLC GENOMICS WORKBENCH | |||
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Description
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Inherited and environmental influences can put people at greater risk of cancer and impact their response/resistance to treatment. In this presentation, Dr. Eliezer Van Allen will describe how a patient’s cancer genome can be used to guide individualized treatment choices for precision medicine. He will examine how to identify treatment ...Read More
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Inherited and environmental influences can put people at greater risk of cancer and impact their response/resistance to treatment. In this presentation, Dr. Eliezer Van Allen will describe how a patient’s cancer genome can be used to guide individualized treatment choices for precision medicine. He will examine how to identify treatment resistance mechanisms and show how certain phenotypic patterns can be paired with new modes of computation to further inform treatment decisions.
Presenter:
Dr. Eliezer Van Allen is an associate professor of medicine at Harvard Medical School, a clinician at Dana-Farber/Partners Cancer Care, and an associate member at the Broad Institute of MIT and Harvard. His research focuses on computational cancer genomics, the application of new technologies (such as massively parallel sequencing to precision cancer medicine), and resistance to targeted therapeutics. As both a computational biologist and medical oncologist, Dr. Van Allen blends expertise in clinical computational oncology with analytic and programming skills to interpret genomic data for clinically focused questions.
About the Data Science Seminar Series
The CBIIT Data Science Seminar Series presents talks from innovators in the research and informatics community. Follow the conversation on Twitter with @NCIDataSci and #DataSciSeminar.
To see upcoming speakers or view recordings from past presentations, visit the CBIIT Data Science Seminar Series website.
Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Eve Shalley (240-276-5194, eve.shalley@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339) at least 5 days in advance of the event.
DetailsOrganizerCBIITWhenWed, Apr 21, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register Here Inherited and environmental influences can put people at greater risk of cancer and impact their response/resistance to treatment. In this presentation, Dr. Eliezer Van Allen will describe how a patient’s cancer genome can be used to guide individualized treatment choices for precision medicine. He will examine how to identify treatment resistance mechanisms and show how certain phenotypic patterns can be paired with new modes of computation to further inform treatment decisions. Presenter: Dr. Eliezer Van Allen is an associate professor of medicine at Harvard Medical School, a clinician at Dana-Farber/Partners Cancer Care, and an associate member at the Broad Institute of MIT and Harvard. His research focuses on computational cancer genomics, the application of new technologies (such as massively parallel sequencing to precision cancer medicine), and resistance to targeted therapeutics. As both a computational biologist and medical oncologist, Dr. Van Allen blends expertise in clinical computational oncology with analytic and programming skills to interpret genomic data for clinically focused questions. About the Data Science Seminar Series The CBIIT Data Science Seminar Series presents talks from innovators in the research and informatics community. Follow the conversation on Twitter with @NCIDataSci and #DataSciSeminar. To see upcoming speakers or view recordings from past presentations, visit the CBIIT Data Science Seminar Series website. Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Eve Shalley (240-276-5194, eve.shalley@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339) at least 5 days in advance of the event. | 2021-04-21 11:00:00 | Online | Cancer | Online | CBIIT | 0 | Emerging Computational Oncology Opportunities to Guide Precision Cancer Medicine | |||
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Description
Next edition of the NIH HPC monthly Zoom-In Consults!
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. ...Read More
Next edition of the NIH HPC monthly Zoom-In Consults!
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
No appointments are necessary, and all problems are welcome.
Please contact staff@hpc.nih.gov to get the Zoom URL.
At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member.
Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please
- mute when not speaking
- refrain from screen sharing until asked to do so in the breakout room
- screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users
DetailsOrganizerHPC BiowulfWhenWed, Apr 21, 2021 - 1:00 pm - 3:00 pmWhereOnline |
Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. No appointments are necessary, and all problems are welcome. Please contact staff@hpc.nih.gov to get the Zoom URL. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2021-04-21 13:00:00 | Online | NIH High Performance Unix Cluster Biowulf | Online | HPC Biowulf | 0 | Zoom-In Consult for Biowulf Users | |||
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Description
Registration: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=e51f19be5660107b4b92118dc48be1781
Presenter: Kevin Kendal PhD CEO of MacVector
Description: This workshop will focus on the analysis of Next Generation Sequencing data. It will cover alignment/assembly of NGS data to one or more reference sequences for (e.g.) RNA expression ...Read More
Registration: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=e51f19be5660107b4b92118dc48be1781
Presenter: Kevin Kendal PhD CEO of MacVector
Description: This workshop will focus on the analysis of Next Generation Sequencing data. It will cover alignment/assembly of NGS data to one or more reference sequences for (e.g.) RNA expression analysis, SNP detection and/or sequence confirmation as well as de novo assembly of short read (Illumina or IonTorrent) and/or long read (Sanger, PacBio or Oxford Nanopore) data for both modest sequences, like plasmids, and for entire genomes. We will also look at how you can use MacVector to identify and extract subsets of paired-end reads from large datasets so that you can focus on just those of interest to your project.
POC: Daoud Meerzaman
DetailsOrganizerCBIITWhenWed, Apr 21, 2021 - 4:00 pm - 5:00 pmWhereOnline |
Registration: https://cbiit.webex.com/cbiit/onstage/g.php?MTID=e51f19be5660107b4b92118dc48be1781 Presenter: Kevin Kendal PhD CEO of MacVector Description: This workshop will focus on the analysis of Next Generation Sequencing data. It will cover alignment/assembly of NGS data to one or more reference sequences for (e.g.) RNA expression analysis, SNP detection and/or sequence confirmation as well as de novo assembly of short read (Illumina or IonTorrent) and/or long read (Sanger, PacBio or Oxford Nanopore) data for both modest sequences, like plasmids, and for entire genomes. We will also look at how you can use MacVector to identify and extract subsets of paired-end reads from large datasets so that you can focus on just those of interest to your project. POC: Daoud Meerzaman | 2021-04-21 16:00:00 | Online | Sequencing Technologies | Online | CBIIT | 0 | Next Generation Sequence Analysis using MacVector | |||
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Description
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Description:
MacVector is a sequence analysis ...Read More
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Description:
MacVector is a sequence analysis application for macOS computers that provides users with a variety of tools and functions to simplify the analysis, manipulation, assembly, and documentation of DNA and protein sequences. This workshop will focus on the analysis of Next Generation Sequencing (NGS) data, including alignment/assembly of NGS data to one or more reference sequences for RNA expression analysis, single nucleotide polymorphism detection, and sequence confirmation. The presentation will also cover de novo assembly of short read (Illumina or IonTorrent) or long read (Sanger, PacBio, or Oxford Nanopore) data for both small plasmids and large genomes, and how to identify and extract subsets of paired-end reads from large data sets.
Speaker: Kevin Kendal, Ph.D., CEO of MacVector
For questions, contact Dr. Daoud Meerzaman.
DetailsOrganizerCBIITWhenWed, Apr 21, 2021 - 4:00 pm - 5:00 pmWhereOnline |
Register Description: MacVector is a sequence analysis application for macOS computers that provides users with a variety of tools and functions to simplify the analysis, manipulation, assembly, and documentation of DNA and protein sequences. This workshop will focus on the analysis of Next Generation Sequencing (NGS) data, including alignment/assembly of NGS data to one or more reference sequences for RNA expression analysis, single nucleotide polymorphism detection, and sequence confirmation. The presentation will also cover de novo assembly of short read (Illumina or IonTorrent) or long read (Sanger, PacBio, or Oxford Nanopore) data for both small plasmids and large genomes, and how to identify and extract subsets of paired-end reads from large data sets. Speaker: Kevin Kendal, Ph.D., CEO of MacVector For questions, contact Dr. Daoud Meerzaman. | 2021-04-21 16:00:00 | Online | Flow Cytometry | Online | CBIIT | 0 | Next Generation Sequencing using MacVector | |||
376 |
Description
Meeting link:
https://cbiit.webex.com/cbiit/j.php?MTID=m2e54a1e4fca4e029e3691210f2422599
Meeting number:
160 936 5213
Password:
Please obtain your meeting password from your host.
Cohost: Leonard Freedman
Presenter:
Justin Zook, Ph.D.
Team Leader, Human Genomics
National Institute of Standards and Technology
Additional Connection information:
Meeting number (access code): 160 963 5213 password: ...Read More
Meeting link:
https://cbiit.webex.com/cbiit/j.php?MTID=m2e54a1e4fca4e029e3691210f2422599
Meeting number:
160 936 5213
Password:
Please obtain your meeting password from your host.
Cohost: Leonard Freedman
Presenter:
Justin Zook, Ph.D.
Team Leader, Human Genomics
National Institute of Standards and Technology
Additional Connection information:
Meeting number (access code): 160 963 5213 password: S3tnjcUe@36
Tap to join from a mobile device (attendees only)
+1-650-479-3207,,1609365213## Call-in toll number (US/Canada)
Join by phone
1-650-479-3207 Call-in toll number (US/Canada)
Join from a video system or application
Dial 1609365213@cbiit.webex.com
Join using Microsoft Lync or Microsoft Skype for Business
Dial 1609365213.cbiit@lync.webex.com
DetailsWhenThu, Apr 22, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m2e54a1e4fca4e029e3691210f2422599 Meeting number: 160 936 5213 Password: Please obtain your meeting password from your host. Cohost: Leonard Freedman Presenter: Justin Zook, Ph.D. Team Leader, Human Genomics National Institute of Standards and Technology Additional Connection information: Meeting number (access code): 160 963 5213 password: S3tnjcUe@36 Tap to join from a mobile device (attendees only) +1-650-479-3207,,1609365213## Call-in toll number (US/Canada) Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 1609365213@cbiit.webex.com Join using Microsoft Lync or Microsoft Skype for Business Dial 1609365213.cbiit@lync.webex.com | 2021-04-22 13:00:00 | Online | Genomics | Online | 0 | Genome in a Bottle: Reference Materials to Benchmark Human Genome Sequencing | ||||
329 |
Description
Register
Session Description
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical ...Read More
Register
Session Description
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, participants should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; and describe how to save data in R.
Participants are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
DetailsOrganizerNIH Training LibraryWhenThu, Apr 22, 2021 - 2:00 pm - 3:15 pmWhereOnline |
Register Session Description This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, participants should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; and describe how to save data in R. Participants are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. | 2021-04-22 14:00:00 | Online | Programming | Online | NIH Training Library | 0 | INTRODUCTION TO R DATA TYPES | |||
371 |
Description
Presenter:
Dr. Bernadette Redd is Lead Radiologist, Body MRI, Radiology and Imaging Sciences, at the NIH Clinical Center. Dr. Redd earned her Doctorate in Medicine from the Columbia University College of Physicians and Surgeons in New York City. After completing an Internship in Internal Medicine at Columbia-Presbyterian Medical Center in New York City, she completed her Residency in Diagnostic Radiology at Montefiore Hospital of the Albert Einstein College of Medicine in New York City, where ...Read More
Presenter:
Dr. Bernadette Redd is Lead Radiologist, Body MRI, Radiology and Imaging Sciences, at the NIH Clinical Center. Dr. Redd earned her Doctorate in Medicine from the Columbia University College of Physicians and Surgeons in New York City. After completing an Internship in Internal Medicine at Columbia-Presbyterian Medical Center in New York City, she completed her Residency in Diagnostic Radiology at Montefiore Hospital of the Albert Einstein College of Medicine in New York City, where she served as Chief Resident. Dr. Redd subsequently trained as an MRI (Magnetic Resonance Imaging) Fellow at the Weill Medical College of Cornell University, New York Presbyterian Hospital, in New York City.
Prior to joining NIH Dr. Redd worked as a staff radiologist and Acting Chair of Radiology for the US Indian Health Service in Shiprock, New Mexico and then in private practice in Santa Fe. Dr. Redd joined Radiology and Imaging Sciences at NIH in October 2018, where she serves as the Lead Radiologist for body MRI.
Join by Zoom
Meeting ID: 161 089 9371
Passcode: 807847
Join by phone
Upcoming LCP seminars can be found on the LCP website.
For more information please contact Anuradha Budhu, Ph.D.
If you are an individual with a disability who needs reasonable accommodations to participate in this event, please contact Anuradha Budhu, Ph.D. so that we can discuss your needs. Such requests should be made 5 business days in advance of the event date..
DetailsOrganizerNCIWhenThu, Apr 22, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Presenter: Dr. Bernadette Redd is Lead Radiologist, Body MRI, Radiology and Imaging Sciences, at the NIH Clinical Center. Dr. Redd earned her Doctorate in Medicine from the Columbia University College of Physicians and Surgeons in New York City. After completing an Internship in Internal Medicine at Columbia-Presbyterian Medical Center in New York City, she completed her Residency in Diagnostic Radiology at Montefiore Hospital of the Albert Einstein College of Medicine in New York City, where she served as Chief Resident. Dr. Redd subsequently trained as an MRI (Magnetic Resonance Imaging) Fellow at the Weill Medical College of Cornell University, New York Presbyterian Hospital, in New York City. Prior to joining NIH Dr. Redd worked as a staff radiologist and Acting Chair of Radiology for the US Indian Health Service in Shiprock, New Mexico and then in private practice in Santa Fe. Dr. Redd joined Radiology and Imaging Sciences at NIH in October 2018, where she serves as the Lead Radiologist for body MRI. Join by Zoom Meeting ID: 161 089 9371 Passcode: 807847 Join by phone Upcoming LCP seminars can be found on the LCP website. For more information please contact Anuradha Budhu, Ph.D. If you are an individual with a disability who needs reasonable accommodations to participate in this event, please contact Anuradha Budhu, Ph.D. so that we can discuss your needs. Such requests should be made 5 business days in advance of the event date.. | 2021-04-22 14:00:00 | Online | Cancer,Image Analysis | Online | NCI | 0 | LIRADS (Liver Imaging-Reporting and Data System): Implications for Patient Care | |||
967 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Apr 22, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-04-22 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
372 |
Description
Abstract: Single-cell RNA-sequencing has emerged as a popular technique for dissecting temporal processes such as tumor development and cell differentiation from snapshots of asynchronous ensembles of cells. Ongoing efforts in this area are now exploring the benefit of measuring a variety of molecular features from every cell, in addition to RNA expression. In this talk, I will present Total Variational Inference (Total-VI) a method for analyzing joint measurements of surface proteins (for dozens of proteins) ...Read More
Abstract: Single-cell RNA-sequencing has emerged as a popular technique for dissecting temporal processes such as tumor development and cell differentiation from snapshots of asynchronous ensembles of cells. Ongoing efforts in this area are now exploring the benefit of measuring a variety of molecular features from every cell, in addition to RNA expression. In this talk, I will present Total Variational Inference (Total-VI) a method for analyzing joint measurements of surface proteins (for dozens of proteins) and gene expression (transcriptome wide) from the same cells (using CITE-seq). Total-VI learns a probabilistic representation of a cell’s state that reflects both its RNA and protein expression, while capturing uncertainties and propagating them to a variety of tasks (e.g., sub- population identification, differential expression). I will describe an application of Total-VI for studying T cell development in the thymus, which enabled us to finely map the changes that occur in transcript and surface protein abundance during the different phases of this process, and helped identify early regulators of divergence between the two primary (CD4+ and CD8+) lineages. While in the latter analysis the relatedness between cells (thus their time ordering) was inferred based on similarities in protein and RNA expression, new developments in Cas9- based lineage tracing now open the way to map their clonal relationships (i.e., single cell phylogenies). I will end this talk with a brief overview of our efforts in this budding area along with an outlook for future opportunities in studying how cellular populations evolve over time.
Speaker: Nir Yossef
Bio: Nir Yosef received his Ph.D. in computer science from Tel Aviv University and then proceeded to postdoctoral training at the Broad Institute, where he developed and applied methods in computational genomics for studying a variety of topics such as the regulation of telomere length and the differentiation of T helper cells. Nir joined the faculty at UC Berkeley in 2014, where he is currently an associate professor of computer science and a core member at the center of computational biology. He is also an associate member of the Ragon Institute of MGH, MIT and Harvard and a Chan Zuckerberg Biohub investigator. The Yosef lab is developing data- driven methods for studying how changes in transcription are associated with various phenotypes in the immune system. In that capacity, the lab is developing and building on techniques from algorithms and statistical machine learning to leverage single cell genomics data, with the goal of better understanding the factors that contribute to variability between cells, (e.g, metabolism, chromatin structure) and their effects on human health (e.g., in autoimmunity). A second area of research is method development for studying regulatory regions in the genome, based on chromatin profiles and massively parallel reporter assays.
Join Zoom Meeting
https://umd.zoom.us/j/97941931766
Meeting ID: 979 4193 1766
One tap mobile
+13017158592,,97941931766# US (Washington DC)
+13126266799,,97941931766# US (Chicago)
DetailsOrganizerCDSLWhenThu, Apr 22, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Abstract: Single-cell RNA-sequencing has emerged as a popular technique for dissecting temporal processes such as tumor development and cell differentiation from snapshots of asynchronous ensembles of cells. Ongoing efforts in this area are now exploring the benefit of measuring a variety of molecular features from every cell, in addition to RNA expression. In this talk, I will present Total Variational Inference (Total-VI) a method for analyzing joint measurements of surface proteins (for dozens of proteins) and gene expression (transcriptome wide) from the same cells (using CITE-seq). Total-VI learns a probabilistic representation of a cell’s state that reflects both its RNA and protein expression, while capturing uncertainties and propagating them to a variety of tasks (e.g., sub- population identification, differential expression). I will describe an application of Total-VI for studying T cell development in the thymus, which enabled us to finely map the changes that occur in transcript and surface protein abundance during the different phases of this process, and helped identify early regulators of divergence between the two primary (CD4+ and CD8+) lineages. While in the latter analysis the relatedness between cells (thus their time ordering) was inferred based on similarities in protein and RNA expression, new developments in Cas9- based lineage tracing now open the way to map their clonal relationships (i.e., single cell phylogenies). I will end this talk with a brief overview of our efforts in this budding area along with an outlook for future opportunities in studying how cellular populations evolve over time. Speaker: Nir Yossef Bio: Nir Yosef received his Ph.D. in computer science from Tel Aviv University and then proceeded to postdoctoral training at the Broad Institute, where he developed and applied methods in computational genomics for studying a variety of topics such as the regulation of telomere length and the differentiation of T helper cells. Nir joined the faculty at UC Berkeley in 2014, where he is currently an associate professor of computer science and a core member at the center of computational biology. He is also an associate member of the Ragon Institute of MGH, MIT and Harvard and a Chan Zuckerberg Biohub investigator. The Yosef lab is developing data- driven methods for studying how changes in transcription are associated with various phenotypes in the immune system. In that capacity, the lab is developing and building on techniques from algorithms and statistical machine learning to leverage single cell genomics data, with the goal of better understanding the factors that contribute to variability between cells, (e.g, metabolism, chromatin structure) and their effects on human health (e.g., in autoimmunity). A second area of research is method development for studying regulatory regions in the genome, based on chromatin profiles and massively parallel reporter assays. Join Zoom Meeting https://umd.zoom.us/j/97941931766 Meeting ID: 979 4193 1766 One tap mobile +13017158592,,97941931766# US (Washington DC) +13126266799,,97941931766# US (Chicago) | 2021-04-22 15:00:00 | Online | Single Cell Technologies | Online | CDSL | 0 | Multimodal analysis of single cell trajectories | |||
345 |
Description
Speaker: Maxwell Lee
Speaker: Maxwell Lee
DetailsOrganizerNCI SS/SCWhenMon, Apr 26, 2021 - 10:00 am - 11:00 amWhereOnline |
Speaker: Maxwell Lee | 2021-04-26 10:00:00 | Online | Cancer | Online | NCI SS/SC | 0 | Gene regulatory network (GRN) and differential equation model | |||
363 |
Description
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you ...Read More
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR)
Questions? Contact the NCI Data Science Learning Exchange
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, Apr 27, 2021 - 11:00 am - 1:00 pmWhereOnline |
Registration is required. Register at this link. Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more. If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2021-04-27 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Data Types and Type Conversion, Built-in Functions and Help, Libraries | |||
302 |
Description
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Session Description
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course ...Read More
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Session Description
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them.
Feel free to install the IGV browser in advance from here - https://software.broadinstitute.org/software/igv/download(link is external) (the UCSV browser is web browser based).
DetailsOrganizerNIH Training LibraryWhenTue, Apr 27, 2021 - 1:00 pm - 2:30 pmWhereOnline |
Register Session Description This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them. Feel free to install the IGV browser in advance from here - https://software.broadinstitute.org/software/igv/download(link is external) (the UCSV browser is web browser based). | 2021-04-27 13:00:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | GENOME BROWSER | |||
303 |
Description
Register
Session Description
QIAGEN’s CLC Genomics Workbench enables researchers to analyze Next Generation Sequencing (NGS) data without the use of command line and is a powerful tool for processing microbial data. In this workshop students will explore how the Microbial Genomics Module can be utilized for taxonomic profiling of sample microbiomes using both amplicon and whole metagenome sequencing data, including generating statistical results and ...Read More
Register
Session Description
QIAGEN’s CLC Genomics Workbench enables researchers to analyze Next Generation Sequencing (NGS) data without the use of command line and is a powerful tool for processing microbial data. In this workshop students will explore how the Microbial Genomics Module can be utilized for taxonomic profiling of sample microbiomes using both amplicon and whole metagenome sequencing data, including generating statistical results and visualizations. The workflows for de-novo genome assembly and annotation will also be presented.
DetailsOrganizerNIH Training LibraryWhenWed, Apr 28, 2021 - 10:00 am - 12:00 pmWhereOnline |
Register Session Description QIAGEN’s CLC Genomics Workbench enables researchers to analyze Next Generation Sequencing (NGS) data without the use of command line and is a powerful tool for processing microbial data. In this workshop students will explore how the Microbial Genomics Module can be utilized for taxonomic profiling of sample microbiomes using both amplicon and whole metagenome sequencing data, including generating statistical results and visualizations. The workflows for de-novo genome assembly and annotation will also be presented. | 2021-04-28 10:00:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | METAGENOMIC AND DE-NOVO SEQUENCING ANALYSIS USING CLC GENOMICS WORKBENCH | |||
381 |
Description
Register/Join
In this public workshop, participants will have the opportunity to discuss the challenges and opportunities involved in establishing effective data management and sharing practices.
The organizers encourage anyone working with data to participate, including researchers, data repository managers, funding institutions, publishers, and research participants, to capture a broad range of needs and perspectives.
Workshop presentations and discussions will examine strategies, resources, and promising practices ...Read More
Register/Join
In this public workshop, participants will have the opportunity to discuss the challenges and opportunities involved in establishing effective data management and sharing practices.
The organizers encourage anyone working with data to participate, including researchers, data repository managers, funding institutions, publishers, and research participants, to capture a broad range of needs and perspectives.
Workshop presentations and discussions will examine strategies, resources, and promising practices for developing and evaluating data management, and offer ideas for sharing scientific data throughout the data life cycle.
Specific topics likely will include:
DetailsOrganizerNCI Data Science Learning ExchangeWhenWed, Apr 28 - Thu, Apr 29, 2021 -11:00 am - 4:00 pmWhereOnline |
Register/Join In this public workshop, participants will have the opportunity to discuss the challenges and opportunities involved in establishing effective data management and sharing practices. The organizers encourage anyone working with data to participate, including researchers, data repository managers, funding institutions, publishers, and research participants, to capture a broad range of needs and perspectives. Workshop presentations and discussions will examine strategies, resources, and promising practices for developing and evaluating data management, and offer ideas for sharing scientific data throughout the data life cycle. Specific topics likely will include: overarching strategies for managing and sharing data. assessing the value of shared data. monitoring and evaluating data management and sharing practices. educational and resource needs for responsible data sharing. This event is being held in response to a request from the NIH Office of Science Policy and hosted by a planning committee of the National Academies of Sciences, Engineering, and Medicine. | 2021-04-28 11:00:00 | Online | Data Management | Online | NCI Data Science Learning Exchange | 0 | Changing the Culture of Data Management and Sharing: A Workshop | |||
380 |
Description
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This month’s Cancer Genomics Cloud (CGC) webinar welcomes two bioinformaticians, Dr. Vesna Pajic and Nevena Vukojicic, to show attendees how CGC features can be used to perform multi-omics analysis. Dr. Pajic is a bioinformatics analyst and team lead at Seven Bridges, and Ms. Vukojicic is a bioinformatics analyst at Seven Bridges.
During the webinar, the presenters will provide an overview of ...Read More
Register/Join
This month’s Cancer Genomics Cloud (CGC) webinar welcomes two bioinformaticians, Dr. Vesna Pajic and Nevena Vukojicic, to show attendees how CGC features can be used to perform multi-omics analysis. Dr. Pajic is a bioinformatics analyst and team lead at Seven Bridges, and Ms. Vukojicic is a bioinformatics analyst at Seven Bridges.
During the webinar, the presenters will provide an overview of what multi-omics analysis is and how CGC can enable integrative analyses between different kinds of genomic and proteomic data. Specifically, the webinar will illustrate how the CGC can integrate the publicly accessible mRNA and miRNA profiles from The Cancer Genome Atlas’ BRCA data set and proteomic data from the Clinical Proteomic Tumor Analysis Consortium.
As one of NCI’s Cloud Resources, the CGC provides researchers access to a wide variety of data sets from NCI Cancer Research Data Commons repositories along with a catalog of tools to analyze and visualize the data directly from the browser.
DetailsOrganizerNCI Data Science Learning ExchangeWhenWed, Apr 28, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Register/Join This month’s Cancer Genomics Cloud (CGC) webinar welcomes two bioinformaticians, Dr. Vesna Pajic and Nevena Vukojicic, to show attendees how CGC features can be used to perform multi-omics analysis. Dr. Pajic is a bioinformatics analyst and team lead at Seven Bridges, and Ms. Vukojicic is a bioinformatics analyst at Seven Bridges. During the webinar, the presenters will provide an overview of what multi-omics analysis is and how CGC can enable integrative analyses between different kinds of genomic and proteomic data. Specifically, the webinar will illustrate how the CGC can integrate the publicly accessible mRNA and miRNA profiles from The Cancer Genome Atlas’ BRCA data set and proteomic data from the Clinical Proteomic Tumor Analysis Consortium. As one of NCI’s Cloud Resources, the CGC provides researchers access to a wide variety of data sets from NCI Cancer Research Data Commons repositories along with a catalog of tools to analyze and visualize the data directly from the browser. | 2021-04-28 14:00:00 | Online | Cancer,Omics | Online | NCI Data Science Learning Exchange | 0 | Exploring The Landscape Of Breast Cancer Multi-omics Analysis On The Cancer Genomics Cloud | |||
378 |
Description
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Description:
This webinar offers an introduction to FlowJo, an application designed to help with ...Read More
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Description:
This webinar offers an introduction to FlowJo, an application designed to help with data archiving, analysis, and reporting. The training begins by showing how to load samples and then outlines the steps to take to generate meaningful results. Participants will learn how best to classify and show results (e.g., dot plots, zebra plots, histograms) and how to prepare figures for publication. Other features will address how to customize your app and ideas for making the app run faster and more efficiently.
Speaker: Dr. Christian Aguilera-Sandoval, FlowJo, LLC
For questions, contact Dr. Daoud Meerzaman.
DetailsOrganizerCBIITWhenWed, Apr 28, 2021 - 4:00 pm - 5:30 pmWhereOnline |
Register Description: This webinar offers an introduction to FlowJo, an application designed to help with data archiving, analysis, and reporting. The training begins by showing how to load samples and then outlines the steps to take to generate meaningful results. Participants will learn how best to classify and show results (e.g., dot plots, zebra plots, histograms) and how to prepare figures for publication. Other features will address how to customize your app and ideas for making the app run faster and more efficiently. Speaker: Dr. Christian Aguilera-Sandoval, FlowJo, LLC For questions, contact Dr. Daoud Meerzaman. | 2021-04-28 16:00:00 | Online | Flow Cytometry | Online | CBIIT | 0 | Introduction to FlowJo Cytometry | |||
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Description
BTEP_April29_2021 Slides
Recording
BTEP_April29_2021 Slides
Recording
RegisterOrganizerBTEPWhenThu, Apr 29, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
BTEP_April29_2021 Slides Recording Experimental Design Considerations in Variant Analysis Germline vs Somatic WGS vs WES Sample sizes and statistical power WGS/WES Pipelines at NIH Pipeline performance Using Pipeliner for internal and external data Variant QC, Annotation and Downstream Analysis Variant QC and data correction Variant annotation and analysis tools Structural variation and multi-omic integration | 2021-04-29 13:00:00 | Online Webinar | Online | Justin Lack (NIAID CBR) | BTEP | 0 | Variant Analysis: Experimental Design, Pipelines and Downstream Analysis | |||
968 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Apr 29, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-04-29 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
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Register/Join Data have the potential to change the way we prevent, treat, and manage a broad range of public health issues. Because of this, it’s vital that the data we use to inform decisions about public health truly reflect the populations we seek to serve. This webinar, “Data Science to Power Implementation with Social Determinants of Health (SDOH),” examines the importance of data in examining diverse and underserved populations. Data scientists, clinical researchers, public health professionals, and others are encouraged to attend. A broad range of topics will be discussed, using real-world examples, including the importance of multidisciplinary research and collaboration in data science, translation of findings into clinical practice, and digital health. By the close of the event, participants will be able to: describe data sources for generating real-time evidence. quantify the impact of SDOH on the pandemic and vaccination rollout. identify and address disparities in data. understand the role and regulations in using digital health. promote data science in education programs. This conference is supported by grant 1 R13 TR003552-01 from NIH’s National Center for Advancing Translational Sciences (NCATS). For more information about this event, visit the conference website. | 2021-04-30 08:15:00 | Online | Data Science | Online | NCI Data Science Learning Exchange | 0 | Data Science to Power Implementation with Social Determinants of Health | |||
386 |
Description
Join via WebEx
Summary: Storing and querying massive datasets can be time-consuming and expensive without the right tools. Google BigQuery is one of several enterprise data warehouse technologies that solves this problem by enabling SQL queries using the processing power distributed cloud infrastructure. Arbitrarily large structured and semi-structured datasets (think tables and JSON files) can ...Read More
Join via WebEx
Summary: Storing and querying massive datasets can be time-consuming and expensive without the right tools. Google BigQuery is one of several enterprise data warehouse technologies that solves this problem by enabling SQL queries using the processing power distributed cloud infrastructure. Arbitrarily large structured and semi-structured datasets (think tables and JSON files) can be loaded into BigQuery and then queried and analyzed in real-time regardless of size. Data in BigQuery can also be shared, reused, and even joined to open public datasets. In this operational talk, I will give an overview of BigQuery technology and the niche it fills, show some examples of using BigQuery, and give a concise catalog of biologically interesting datasets that are publicly available in BigQuery. Attendees should leave with an understanding of what BigQuery is, how it might be useful to their work, and how to gain access to the technology and data resources described.
Presenter:
Dr. Sean Davis
DetailsOrganizerNHLBIWhenMon, May 03, 2021 - 11:00 am - 12:00 pmWhereOnline |
Join via WebEx Summary: Storing and querying massive datasets can be time-consuming and expensive without the right tools. Google BigQuery is one of several enterprise data warehouse technologies that solves this problem by enabling SQL queries using the processing power distributed cloud infrastructure. Arbitrarily large structured and semi-structured datasets (think tables and JSON files) can be loaded into BigQuery and then queried and analyzed in real-time regardless of size. Data in BigQuery can also be shared, reused, and even joined to open public datasets. In this operational talk, I will give an overview of BigQuery technology and the niche it fills, show some examples of using BigQuery, and give a concise catalog of biologically interesting datasets that are publicly available in BigQuery. Attendees should leave with an understanding of what BigQuery is, how it might be useful to their work, and how to gain access to the technology and data resources described. Presenter: Dr. Sean Davis | 2021-05-03 11:00:00 | Online | Data Resources,Cloud | Online | NHLBI | 0 | Cloud scale biomedical data warehousing with Google Bigquery | |||
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Description
Register/Join
In the May NCI Imaging and Informatics Community Webinar, Dr. Chad Quarles will highlight how the improved understanding of the biophysics of contrast mechanism underlying dynamic susceptibility contrast (DSC) MRI is informing how to detect, identify, and analyze brain cancer.
DSC MRI is one of the most widely used physiologic imaging ...Read More
Register/Join
In the May NCI Imaging and Informatics Community Webinar, Dr. Chad Quarles will highlight how the improved understanding of the biophysics of contrast mechanism underlying dynamic susceptibility contrast (DSC) MRI is informing how to detect, identify, and analyze brain cancer.
DSC MRI is one of the most widely used physiologic imaging techniques in neuro-oncology. Leveraging this technique allows clinicians to differentiate between glioma grades, identify tumor components in non-enhancing glioma, and reliably detect recurrence of cancer and early therapy responses. During the presentation, Dr. Quarles will discuss how understanding DSC MRI’s biophysics has:
DetailsOrganizerNCI Data Science Learning ExchangeWhenMon, May 03, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Register/Join In the May NCI Imaging and Informatics Community Webinar, Dr. Chad Quarles will highlight how the improved understanding of the biophysics of contrast mechanism underlying dynamic susceptibility contrast (DSC) MRI is informing how to detect, identify, and analyze brain cancer. DSC MRI is one of the most widely used physiologic imaging techniques in neuro-oncology. Leveraging this technique allows clinicians to differentiate between glioma grades, identify tumor components in non-enhancing glioma, and reliably detect recurrence of cancer and early therapy responses. During the presentation, Dr. Quarles will discuss how understanding DSC MRI’s biophysics has: standardized of acquisition protocols for multi-site clinical trials. led the first benchmark for software validation. informed development of advanced pulse sequences and analysis strategies. This event is free and open to the public. Presenter: Chad Quarles, Ph.D. Dr. Quarles is a professor within and the Chair of the Division of Neuroimaging Research and the Director of the Barrow Neuroimaging Innovation Center. Dr. Quarles’s research focuses on the development and application of multimodality imaging methods for improved cancer characterization. | 2021-05-03 13:00:00 | Online | Image Analysis | Online | NCI Data Science Learning Exchange | 0 | Establishing Next Generation Dynamic Susceptibility Contrast MRI-Based Biomarkers for Neuro-oncologic Applications | |||
387 |
Description
Abstract:
We will discuss technical advantages of a personalized and tumor-informed multiplex PCR next generation sequencing assay, called Signatera™, that enables a sensitive, specific, and dynamic detection of molecular disease burden in cell-free DNA (cfDNA) samples. The tumor-informed approach offers detection of circulating tumor DNA (ctDNA) by tracking tumor-specific clonal variants in plasma based on up front tumor tissue and matched normal sequencing data. Signatera test performance has been clinically validated in multiple ...Read More
Abstract:
We will discuss technical advantages of a personalized and tumor-informed multiplex PCR next generation sequencing assay, called Signatera™, that enables a sensitive, specific, and dynamic detection of molecular disease burden in cell-free DNA (cfDNA) samples. The tumor-informed approach offers detection of circulating tumor DNA (ctDNA) by tracking tumor-specific clonal variants in plasma based on up front tumor tissue and matched normal sequencing data. Signatera test performance has been clinically validated in multiple cancer types including colorectal, non-small cell lung, breast, and bladder cancers. Unlike a standard liquid biopsy, Signatera is not intended to match patients with any particular therapy; rather it is intended to detect and quantify residual disease, detect recurrence earlier, assess therapy effectiveness, and help optimize treatment decisions.
Bio:
Raheleh Salari is the Senior Director of Bioinformatics at Natera, where she leads a team of Bioinformatics Scientists working on cfDNA-based diagnostic tests. Natera is a global leader in cell-free DNA testing with a mission to transform the diagnosis and management of genetic diseases. Natera’s Signatera is at the forefront of innovation, representing a breakthrough technology that provides clinicians with an invaluable tool for sensitive, specific, and dynamic detection of molecular disease burden. Raheleh holds a PhD in Computer Science from Simon Fraser University, Canada, with a background on data structure and algorithm design. After her PhD, she continued her research at the National Center for Biotechnology and Information (NCBI) for slightly over a year.
Lecture by Dr. Raheleh Salari from Natera Inc.
Meeting details:
Topic: CDSL webinar
Time: May 3, 2021 03:00 PM Eastern Time (US and Canada)
Join Zoom Meeting
https://umd.zoom.us/j/97941931766
Meeting ID: 979 4193 1766
One tap mobile
+13017158592,,97941931766# US (Washington DC)
+13126266799,,97941931766# US (Chicago)
DetailsOrganizerCDSLWhenMon, May 03, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Abstract: We will discuss technical advantages of a personalized and tumor-informed multiplex PCR next generation sequencing assay, called Signatera™, that enables a sensitive, specific, and dynamic detection of molecular disease burden in cell-free DNA (cfDNA) samples. The tumor-informed approach offers detection of circulating tumor DNA (ctDNA) by tracking tumor-specific clonal variants in plasma based on up front tumor tissue and matched normal sequencing data. Signatera test performance has been clinically validated in multiple cancer types including colorectal, non-small cell lung, breast, and bladder cancers. Unlike a standard liquid biopsy, Signatera is not intended to match patients with any particular therapy; rather it is intended to detect and quantify residual disease, detect recurrence earlier, assess therapy effectiveness, and help optimize treatment decisions. Bio: Raheleh Salari is the Senior Director of Bioinformatics at Natera, where she leads a team of Bioinformatics Scientists working on cfDNA-based diagnostic tests. Natera is a global leader in cell-free DNA testing with a mission to transform the diagnosis and management of genetic diseases. Natera’s Signatera is at the forefront of innovation, representing a breakthrough technology that provides clinicians with an invaluable tool for sensitive, specific, and dynamic detection of molecular disease burden. Raheleh holds a PhD in Computer Science from Simon Fraser University, Canada, with a background on data structure and algorithm design. After her PhD, she continued her research at the National Center for Biotechnology and Information (NCBI) for slightly over a year. Lecture by Dr. Raheleh Salari from Natera Inc. Meeting details: Topic: CDSL webinar Time: May 3, 2021 03:00 PM Eastern Time (US and Canada) Join Zoom Meeting https://umd.zoom.us/j/97941931766 Meeting ID: 979 4193 1766 One tap mobile +13017158592,,97941931766# US (Washington DC) +13126266799,,97941931766# US (Chicago) | 2021-05-03 15:00:00 | Online | Cancer | Online | CDSL | 0 | Signatera – A Personalized Tumor-informed Approach to Detect Molecular Residual Disease | |||
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Description
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you ...Read More
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR)
Questions? Contact the NCI Data Science Learning Exchange
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, May 04, 2021 - 11:00 am - 1:00 pmWhereOnline |
Registration is required. Register at this link. Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more. If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2021-05-04 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Reading Tabular Data into DataFrames, Pandas DataFrames, Plotting 1 | |||
385 |
Description
Please register here to receive your meeting link.
Attendees will learn how to analyze, visualize, and explore microbiome datasets starting with raw amplicon sequence data. Our instructors will demonstrate a complete workflow using the NIAID's open bioinformatics platform Nephele which seamlessly connects to the data-mining platform MicrobiomeDBRead More
Please register here to receive your meeting link.
Attendees will learn how to analyze, visualize, and explore microbiome datasets starting with raw amplicon sequence data. Our instructors will demonstrate a complete workflow using the NIAID's open bioinformatics platform Nephele which seamlessly connects to the data-mining platform MicrobiomeDB for further exploration.
If you are a researcher starting out in microbiome analysis or have more experience and want to investigate new, more streamlined tools and features, join us for this webinar.
DetailsOrganizerNIAIDWhenTue, May 04, 2021 - 11:00 am - 12:00 pmWhereOnline |
Please register here to receive your meeting link. Attendees will learn how to analyze, visualize, and explore microbiome datasets starting with raw amplicon sequence data. Our instructors will demonstrate a complete workflow using the NIAID's open bioinformatics platform Nephele which seamlessly connects to the data-mining platform MicrobiomeDB for further exploration. If you are a researcher starting out in microbiome analysis or have more experience and want to investigate new, more streamlined tools and features, join us for this webinar. | 2021-05-04 11:00:00 | Online | Microbiome | Online | NIAID | 0 | Learn to Analyze and Visualize Microbiome Data with Nephele & MicrobiomeDB | |||
330 |
Description
Register
Session Description
This virtual hands-on workshop explores the fundamentals of machine learning using MATLAB. The participants will be introduced to machine learning techniques to quickly explore data, use classification and regression apps to interactively train, compare and tune a model, and optimize the model using hyperparameter tuning. The participants will also learn how to get started with deep learning in MATLAB for data preparation, ...Read More
Register
Session Description
This virtual hands-on workshop explores the fundamentals of machine learning using MATLAB. The participants will be introduced to machine learning techniques to quickly explore data, use classification and regression apps to interactively train, compare and tune a model, and optimize the model using hyperparameter tuning. The participants will also learn how to get started with deep learning in MATLAB for data preparation, design, simulation, and deployment of deep neural networks. This is an introductory level class.
DetailsOrganizerNIH Training LibraryWhenTue, May 04, 2021 - 1:00 pm - 4:00 pmWhereOnline |
Register Session Description This virtual hands-on workshop explores the fundamentals of machine learning using MATLAB. The participants will be introduced to machine learning techniques to quickly explore data, use classification and regression apps to interactively train, compare and tune a model, and optimize the model using hyperparameter tuning. The participants will also learn how to get started with deep learning in MATLAB for data preparation, design, simulation, and deployment of deep neural networks. This is an introductory level class. | 2021-05-04 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Training Library | 0 | HANDS-ON VIRTUAL LAB: MACHINE LEARNING | |||
331 |
Description
Register
Session Description
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is ...Read More
Register
Session Description
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: describe the purpose of Tidyverse packages; select certain columns or rows in a data frame; describe the function of the pipe operator; add new columns to a dataframe that are functions of existing columns; use the split-apply-combine concept for data analysis; use summarize, group by, and count to split a data frame into groups of observations, apply summary statistics for each group, and then combine the results; describe the concept of a wide and a long table format and for which purpose those formats are useful; describe the function of key-value pairs; reshape a data frame using the gather commands from the tidyr package; export a data frame to a .csv file.
Students are encouraged to install R and RStudio and download the class data before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
DetailsOrganizerNIH Training LibraryWhenTue, May 04, 2021 - 2:00 pm - 3:15 pmWhereOnline |
Register Session Description Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: describe the purpose of Tidyverse packages; select certain columns or rows in a data frame; describe the function of the pipe operator; add new columns to a dataframe that are functions of existing columns; use the split-apply-combine concept for data analysis; use summarize, group by, and count to split a data frame into groups of observations, apply summary statistics for each group, and then combine the results; describe the concept of a wide and a long table format and for which purpose those formats are useful; describe the function of key-value pairs; reshape a data frame using the gather commands from the tidyr package; export a data frame to a .csv file. Students are encouraged to install R and RStudio and download the class data before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. | 2021-05-04 14:00:00 | Online | Programming | Online | NIH Training Library | 0 | DATA WRANGLING IN R | |||
375 |
Description
The class is free but registration is required.
You can register at https://hpc.nih.gov/nih/classes/
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #2 will focus on Recurrent and 1D-Convolutional neural networks as applied to prediction of the function of ...Read More
The class is free but registration is required.
You can register at https://hpc.nih.gov/nih/classes/
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #2 will focus on Recurrent and 1D-Convolutional neural networks as applied to prediction of the function of non-coding DNA.
Expected knowledge: Basic Python, Basic Linux/Unix.
This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class.
Instructor: Gennady Denisov (NIH HPC staff)
DetailsOrganizerHPC BiowulfWhenWed, May 05, 2021 - 9:30 am - 12:00 pmWhereOnline |
The class is free but registration is required. You can register at https://hpc.nih.gov/nih/classes/ This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #2 will focus on Recurrent and 1D-Convolutional neural networks as applied to prediction of the function of non-coding DNA. Expected knowledge: Basic Python, Basic Linux/Unix. This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class. Instructor: Gennady Denisov (NIH HPC staff) | 2021-05-05 09:30:00 | Online | Artificial Intelligence / Machine Learning | Online | HPC Biowulf | 0 | Deep Learning by Example on Biowulf - Class #2 | |||
332 |
Description
Register
Session Description
The Human Gene Mutation Database (HGMD) database provides quick access to known published gene lesions responsible for human inherited disease. This session will explore how to query genes and mutations in HGMD and how to view the curated content.
Register
Session Description
The Human Gene Mutation Database (HGMD) database provides quick access to known published gene lesions responsible for human inherited disease. This session will explore how to query genes and mutations in HGMD and how to view the curated content.
DetailsOrganizerNIH Training LibraryWhenWed, May 05, 2021 - 10:00 am - 11:00 amWhereOnline |
Register Session Description The Human Gene Mutation Database (HGMD) database provides quick access to known published gene lesions responsible for human inherited disease. This session will explore how to query genes and mutations in HGMD and how to view the curated content. | 2021-05-05 10:00:00 | Online | Variant Analysis | Online | NIH Training Library | 0 | HUMAN VARIANT QUERIES AND EXPLORATION USING HUMAN GENE MUTATION DATABASE (HGMD) | |||
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Description
Presenter: Adam J Gayoso, Streets and Yosef Groups at UC Berkeley
Abstract:
Probabilistic models have demonstrated state-of-the-art performance for many single-cell omics data analysis tasks, including dimensionality reduction, clustering, differential expression, annotation, removal of unwanted variation, and integration across modalities. As many of these models are amenable to scalable stochastic inference techniques, they will also be able to process single-cell datasets of growing sizes. However, the community-wide adoption of probabilistic models ...Read More
Presenter: Adam J Gayoso, Streets and Yosef Groups at UC Berkeley
Abstract:
Probabilistic models have demonstrated state-of-the-art performance for many single-cell omics data analysis tasks, including dimensionality reduction, clustering, differential expression, annotation, removal of unwanted variation, and integration across modalities. As many of these models are amenable to scalable stochastic inference techniques, they will also be able to process single-cell datasets of growing sizes. However, the community-wide adoption of probabilistic models is hindered by a fractured software ecosystem resulting in an array of packages with distinct, and often complex interfaces. To address this issue, we developed scvi-tools (https://scvi-tools.org), a Python package that implements a variety of leading probabilistic methods. These methods, which cover many fundamental analysis tasks, are accessible through a standardized, easy-to-use interface with direct links to Scanpy, Seurat, and Bioconductor workflows. By standardizing the implementations, we were able to develop and reuse novel functionalities across different models, such as support for complex study designs through nonlinear removal of unwanted variation due to multiple covariates and reference-query integration via scArches. The extensible software building blocks that underlie scvi-tools also enable a developer environment in which new probabilistic models for single cell omics can be efficiently developed, benchmarked, and deployed. We demonstrate this through a code-efficient reimplementation of Stereoscope for deconvolution of spatial transcriptomics profiles. By catering to both the end user and developer audiences, we expect scvi-tools to become an essential software dependency and help set a community standard for probabilistic modeling of single cell omics.
Biography:
Adam Gayoso is a Ph.D. candidate in the Center for Computational Biology graduate group at UC Berkeley, advised by Prof. Aaron Streets and Prof. Nir Yosef. His research interest lies at the intersection of machine learning and computational biology, with an emphasis on developing probabilistic models to aid in the interpretation of single-cell omics data. Prior to his Ph.D., Adam studied operations research and computer science at Columbia University, where he worked with Prof. Dana Pe'er on methodology for the analysis of single-cell transcriptomics data.
DetailsOrganizerSingle Cell Users GroupWhenThu, May 06, 2021 - 11:00 am - 11:30 amWhereOnline |
Presenter: Adam J Gayoso, Streets and Yosef Groups at UC Berkeley Abstract: Probabilistic models have demonstrated state-of-the-art performance for many single-cell omics data analysis tasks, including dimensionality reduction, clustering, differential expression, annotation, removal of unwanted variation, and integration across modalities. As many of these models are amenable to scalable stochastic inference techniques, they will also be able to process single-cell datasets of growing sizes. However, the community-wide adoption of probabilistic models is hindered by a fractured software ecosystem resulting in an array of packages with distinct, and often complex interfaces. To address this issue, we developed scvi-tools (https://scvi-tools.org), a Python package that implements a variety of leading probabilistic methods. These methods, which cover many fundamental analysis tasks, are accessible through a standardized, easy-to-use interface with direct links to Scanpy, Seurat, and Bioconductor workflows. By standardizing the implementations, we were able to develop and reuse novel functionalities across different models, such as support for complex study designs through nonlinear removal of unwanted variation due to multiple covariates and reference-query integration via scArches. The extensible software building blocks that underlie scvi-tools also enable a developer environment in which new probabilistic models for single cell omics can be efficiently developed, benchmarked, and deployed. We demonstrate this through a code-efficient reimplementation of Stereoscope for deconvolution of spatial transcriptomics profiles. By catering to both the end user and developer audiences, we expect scvi-tools to become an essential software dependency and help set a community standard for probabilistic modeling of single cell omics. Biography: Adam Gayoso is a Ph.D. candidate in the Center for Computational Biology graduate group at UC Berkeley, advised by Prof. Aaron Streets and Prof. Nir Yosef. His research interest lies at the intersection of machine learning and computational biology, with an emphasis on developing probabilistic models to aid in the interpretation of single-cell omics data. Prior to his Ph.D., Adam studied operations research and computer science at Columbia University, where he worked with Prof. Dana Pe'er on methodology for the analysis of single-cell transcriptomics data. | 2021-05-06 11:00:00 | Online | Single Cell Technologies,Artificial Intelligence / Machine Learning | Online | Single Cell Users Group | 0 | scvi-tools: a library for deep probabilistic analysis of single-cell omics data | |||
974 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, May 06, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-05-06 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
346 |
Description
Speaker: Maxwell Lee
Speaker: Maxwell Lee
DetailsOrganizerNCI SS/SCWhenMon, May 10, 2021 - 10:00 am - 11:00 amWhereOnline |
Speaker: Maxwell Lee | 2021-05-10 10:00:00 | Online | Cancer | Online | NCI SS/SC | 0 | Waddington’s epigenetic landscape quantified with quasi-potential | |||
395 |
Description
Abstract:
Deep learning is revolutionizing the prediction of protein tertiary structure and is close to solve
this grand challenge hanging over the scientific world for many years. In this talk, I will describe
how this technology emerged in the field, how it overcame various technical hurdles to reach a
high accuracy of predicting protein contacts/distances and tertiary structures, and where it is
going now. I will use the development of our MULTICOM ...Read More
Abstract:
Deep learning is revolutionizing the prediction of protein tertiary structure and is close to solve
this grand challenge hanging over the scientific world for many years. In this talk, I will describe
how this technology emerged in the field, how it overcame various technical hurdles to reach a
high accuracy of predicting protein contacts/distances and tertiary structures, and where it is
going now. I will use the development of our MULTICOM protein structure prediction system
ranked among top methods in the last two rounds of CASP protein folding competition as well
as several other state-of-the-art methods as examples to illustrate the process. Moreover, I will
present our latest development of deep learning methods to tackle another grand scientific
challenge – prediction of protein-protein interactions and quaternary structures of protein
complexes, for which revolutionary deep learning technologies will likely emerge in the next few
years as what had happened in the field of protein tertiary structure prediction.
Bio:
Dr. Jianlin Cheng is the Thompson Professor in the Department of Electrical Engineering and
Computer Science at the University of Missouri - Columbia, USA. He earned his PhD in computer science from the University of California, Irvine in 2006. His research is focused on
bioinformatics and machine learning. Dr. Cheng has authored or co-authored 157 journal articles (https://scholar.google.com/citations?user=t9MY6lwAAAAJ&hl=en&oi=ao), which have been cited 13,000 times and have an h-index of 51. His protein structure prediction method – MULTICOM – was consistently ranked among the top methods in the last seven rounds of Critical Assessments of Structure Prediction (CASP8-14) from 2008 to 2020. His research has been supported by the National Institutes of Health (NIH), National Science Foundation (NSF) and Department of Energy (DoE). Dr. Cheng was a recipient of a 2012 NSF CAREER award.
Join Zoom Meeting
https://umd.zoom.us/j/97941931766
Meeting ID: 979 4193 1766
One tap mobile
+13017158592,,97941931766# US (Washington DC)
+13126266799,,97941931766# US (Chicago)
DetailsOrganizerCDSLWhenMon, May 10, 2021 - 11:00 am - 12:00 pmWhereOnline |
Abstract: Deep learning is revolutionizing the prediction of protein tertiary structure and is close to solve this grand challenge hanging over the scientific world for many years. In this talk, I will describe how this technology emerged in the field, how it overcame various technical hurdles to reach a high accuracy of predicting protein contacts/distances and tertiary structures, and where it is going now. I will use the development of our MULTICOM protein structure prediction system ranked among top methods in the last two rounds of CASP protein folding competition as well as several other state-of-the-art methods as examples to illustrate the process. Moreover, I will present our latest development of deep learning methods to tackle another grand scientific challenge – prediction of protein-protein interactions and quaternary structures of protein complexes, for which revolutionary deep learning technologies will likely emerge in the next few years as what had happened in the field of protein tertiary structure prediction. Bio: Dr. Jianlin Cheng is the Thompson Professor in the Department of Electrical Engineering and Computer Science at the University of Missouri - Columbia, USA. He earned his PhD in computer science from the University of California, Irvine in 2006. His research is focused on bioinformatics and machine learning. Dr. Cheng has authored or co-authored 157 journal articles (https://scholar.google.com/citations?user=t9MY6lwAAAAJ&hl=en&oi=ao), which have been cited 13,000 times and have an h-index of 51. His protein structure prediction method – MULTICOM – was consistently ranked among the top methods in the last seven rounds of Critical Assessments of Structure Prediction (CASP8-14) from 2008 to 2020. His research has been supported by the National Institutes of Health (NIH), National Science Foundation (NSF) and Department of Energy (DoE). Dr. Cheng was a recipient of a 2012 NSF CAREER award. Join Zoom Meeting https://umd.zoom.us/j/97941931766 Meeting ID: 979 4193 1766 One tap mobile +13017158592,,97941931766# US (Washington DC) +13126266799,,97941931766# US (Chicago) | 2021-05-10 11:00:00 | Online | Artificial Intelligence / Machine Learning,Proteomics | Online | CDSL | 0 | Deep Learning Prediction of Protein Structure and Interaction | |||
365 |
Description
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you ...Read More
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR)
Questions? Contact the NCI Data Science Learning Exchange
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, May 11, 2021 - 11:00 am - 1:00 pmWhereOnline |
Registration is required. Register at this link. Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more. If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2021-05-11 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Plotting 2, Lists, For Loops | |||
978 |
Description
Bioinformatics for Beginners, Post-Bac Edition
This is the second course in a series of three, designed to answer the question:
"I've just got my sequence data back from the sequencing center, how do I understand/analyze/work with it?"
Course Two: Bulk RNA-Seq Data Analysis
Who should take this course:
Learners who want to work with Next Gen Sequence Data
Pre-requisites:
Learners should have beginner level skills working in a Unix ...Read More
Bioinformatics for Beginners, Post-Bac Edition
This is the second course in a series of three, designed to answer the question:
"I've just got my sequence data back from the sequencing center, how do I understand/analyze/work with it?"
Course Two: Bulk RNA-Seq Data Analysis
Who should take this course:
Learners who want to work with Next Gen Sequence Data
Pre-requisites:
Learners should have beginner level skills working in a Unix environment
Learning Objectives:
In this class, learners will:
RegisterOrganizerBTEPWhenTue, May 11, 2021 - 3:00 pm - 4:00 pmWhereOnline Webinar |
Bioinformatics for Beginners, Post-Bac Edition This is the second course in a series of three, designed to answer the question: "I've just got my sequence data back from the sequencing center, how do I understand/analyze/work with it?" Course Two: Bulk RNA-Seq Data Analysis Who should take this course: Learners who want to work with Next Gen Sequence Data Pre-requisites: Learners should have beginner level skills working in a Unix environment Learning Objectives: In this class, learners will: Understand RNA-Seq experimental design and theory Analyze bulk RNA-Seq data from public database resources Perform quality control of bulk RNA-Seq data and understand the output Align and view RNA-Seq reads against the human genome All classes will be held on WebEx in Amy Stonelake's Personal Room: https://cbiit.webex.com/meet/stonelakeak This class will be held at 3-4 PM on these days. Tuesday, May 11 (Recording) Thursday, May 13 (Recording) Tuesday, May 18 (Recording) Thursday, May 20 (Recording) Course Three will be offered in June. You will receive an email invite to sign up. For this class, you will need to download and install software: Download the IGV desktop application and igvtools from: https://software.broadinstitute.org/software/igv/ | 2021-05-11 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Peter FitzGerald (GAU),Amy Stonelake (BTEP) | BTEP | 0 | Bioinformatics for Beginners Post-Bac Edition: Bulk RNA-Seq Data Analysis | ||
352 |
Description
Register Now
Faculty: Eliezer M. Van Allen, MD – Harvard University/Dana-Farber Cancer Institute/BROAD; NCI Cancer Moonshot IOTN
Moderator: Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their ...Read More
Register Now
Faculty: Eliezer M. Van Allen, MD – Harvard University/Dana-Farber Cancer Institute/BROAD; NCI Cancer Moonshot IOTN
Moderator: Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series.
Learning Objectives
A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research.
Series Organizers
Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Big Data and Data Sharing Committee, Chair
Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Co-Chair
Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Immediate Past Chair
Carsten Krieg, PhD – Medical University of South Carolina
Big Data and Data Sharing Committee, Member
DetailsOrganizerNCI and the Society for Immunotherapy of Cancer (SITC)WhenTue, May 11, 2021 - 3:30 pm - 4:30 pmWhereOnline |
Register Now Faculty: Eliezer M. Van Allen, MD – Harvard University/Dana-Farber Cancer Institute/BROAD; NCI Cancer Moonshot IOTN Moderator: Kellie N. Smith, PhD – Johns Hopkins School of Medicine Target Audience This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series. Learning Objectives A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research. Series Organizers Kellie N. Smith, PhD – Johns Hopkins School of Medicine Big Data and Data Sharing Committee, Chair Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Co-Chair Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Immediate Past Chair Carsten Krieg, PhD – Medical University of South Carolina Big Data and Data Sharing Committee, Member | 2021-05-11 15:30:00 | Online | Cancer,Data Science | Online | NCI and the Society for Immunotherapy of Cancer (SITC) | 0 | IMMUNOGENOMICS | |||
379 |
Description
Register
Description:
In this advanced FlowJo cytometry webinar participants ...Read More
Register
Description:
In this advanced FlowJo cytometry webinar participants will learn how to move beyond the basics of the application to conduct in-depth analyses. FlowJo can accommodate high dimension, high throughput flow, or mass cytometry data. This course will address the use of plug-ins to extend the functionality of FlowJo, including Sunburst, MiST, TriMap, UMAP, Phenograph, FlowSOM, etc. Other topics will look at down sampling, concatenating, and exporting to isolate subset populations, as well as tools and tips on clustering to show meaningful results.
Speaker: Dr. Christian Aguilera-Sandoval, FlowJo, LLC
For questions, contact Dr. Daoud Meerzaman.
DetailsOrganizerCBIITWhenWed, May 12, 2021 - 4:00 pm - 5:30 pmWhereOnline |
Register Description: In this advanced FlowJo cytometry webinar participants will learn how to move beyond the basics of the application to conduct in-depth analyses. FlowJo can accommodate high dimension, high throughput flow, or mass cytometry data. This course will address the use of plug-ins to extend the functionality of FlowJo, including Sunburst, MiST, TriMap, UMAP, Phenograph, FlowSOM, etc. Other topics will look at down sampling, concatenating, and exporting to isolate subset populations, as well as tools and tips on clustering to show meaningful results. Speaker: Dr. Christian Aguilera-Sandoval, FlowJo, LLC For questions, contact Dr. Daoud Meerzaman. | 2021-05-12 16:00:00 | Online | Flow Cytometry | Online | CBIIT | 0 | FlowJo Cytometry Advanced | |||
333 |
Description
Register
Session Description
DNASTAR offers software solutions for molecular biology, structural biology, and genomics. In this class, attendees will be presented with an overview of the applications within the Lasergene Suite. The instructor will use the latest software version and demonstration data to provide tutorials for various workflows, including: cloning and primer design, Sanger sequence alignment, protein structure analysis, and next generation sequence assembly and ...Read More
Register
Session Description
DNASTAR offers software solutions for molecular biology, structural biology, and genomics. In this class, attendees will be presented with an overview of the applications within the Lasergene Suite. The instructor will use the latest software version and demonstration data to provide tutorials for various workflows, including: cloning and primer design, Sanger sequence alignment, protein structure analysis, and next generation sequence assembly and analysis. Individual meetings after the training session can be scheduled to provide help with specific projects. To schedule an individual meeting, please email the instructor.
DetailsOrganizerNIH Training LibraryWhenThu, May 13, 2021 - 9:30 am - 11:30 amWhereOnline |
Register Session Description DNASTAR offers software solutions for molecular biology, structural biology, and genomics. In this class, attendees will be presented with an overview of the applications within the Lasergene Suite. The instructor will use the latest software version and demonstration data to provide tutorials for various workflows, including: cloning and primer design, Sanger sequence alignment, protein structure analysis, and next generation sequence assembly and analysis. Individual meetings after the training session can be scheduled to provide help with specific projects. To schedule an individual meeting, please email the instructor. | 2021-05-13 09:30:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | DNASTAR LASERGENE DEMONSTRATION AND TRAINING WORKSHOP | |||
334 |
Description
Register
Session Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is ...Read More
Register
Session Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH Training LibraryWhenThu, May 13, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Register Session Description This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2021-05-13 13:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 1 | |||
973 |
|
Meeting Link The slides and recording of the webinar will be available within a day of the event. Heterogeneity poses a major challenge in translational research. For example, inter-tumor heterogeneity limits the biomarker discovery and intra-tumor heterogeneity enables therapeutic resistance. Moreover, in some cancers driver mutations are insufficient to account for the widespread transcriptional variation responsible for these outcomes. Thus, new computational tools to model transcriptional variation are essential. To address this we develop an innovative computational framework, Expression Variation Analysis (EVA), to model transcriptional dysregulation in cancer. Briefly, EVA quantifies transcriptional heterogeneity for one set of samples or cells from one phenotype using the expected dissimilarity between pairs of expression profiles. U-statistics theory can then quantify the statistical significance of the difference in transcriptional heterogeneity between phenotypes. We apply EVA to perform a comprehensive characterization of transcriptional variation in head and neck squamous cell carcinoma (HNSCC). At a pathway level, transcriptional variation in HNSCC tumors is higher than normal controls. Applying EVA to integrate ChIP-seq data with RNA-seq reveals that these pervasive transcriptional differences occur in enhancers. Adapting EVA to single cell data demonstrates greater transcriptional heterogeneity in HNSCC primary tumors than lymph node metastasis consistent with a clonal outgrowth. Similar adaptation of the framework to intra-tumor heterogeneity from spatial transcriptomics data demonstrates transition in hormone receptor pathways between primary breast tumors and premalignant lesions. Thus, we demonstrate that the statistical framework from EVA enables differential heterogeneity analysis in cancer ranging from pathway dysregulation, epigenetic regulation, single cell analysis, and spatial molecular data. This algorithm provides a critical framework to model the hidden multi-molecular mechanisms underlying the complex patient outcomes that are pervasive in cancer. | 2021-05-13 13:00:00 | Online Webinar | Online | Elana Fertig (JHU) | BTEP | 0 | Uncovering Hidden Sources of Transcriptional Dysregulation from Inter and Intra-tumor Heterogeneity | |||
975 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, May 13, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-05-13 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
335 |
Description
Register
Session Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is ...Read More
Register
Session Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
DetailsOrganizerNIH Training LibraryWhenFri, May 14, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Register Session Description This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2021-05-14 13:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 2 | |||
399 |
Description
The National Institute of Allergy and Infectious Diseases (NIAID) is excited to advance discovery and innovation in infectious diseases and immune-mediated disorders research by leveraging data and data science approaches. Towards this end, NIAID will conduct a series of ideas and innovation webinars that bring together experts and stakeholders in data science, infectious diseases, immunology, and immune-mediated disorders.
Through the webinar series, participants will have the opportunity to provide insights into the current landscape of ...Read More
The National Institute of Allergy and Infectious Diseases (NIAID) is excited to advance discovery and innovation in infectious diseases and immune-mediated disorders research by leveraging data and data science approaches. Towards this end, NIAID will conduct a series of ideas and innovation webinars that bring together experts and stakeholders in data science, infectious diseases, immunology, and immune-mediated disorders.
Through the webinar series, participants will have the opportunity to provide insights into the current landscape of data science research and development, as well as offer ideas that promise to shape the future of data-driven immune-mediated and infectious disease research. The webinar series will serve as a platform for collaboration, idea generation, and networking among participants and generate foundational materials that is expected to inform the prospective role of data science in advancing NIAID’s mission.
Our expert panel will engage in a moderated discussion following short talks where they will define the traditional silos that may impede broad data sharing and highlight examples of where breaking those silos facilitated advancement that otherwise could not have been achieved.
Invited Speakers include Dr. Raphael Gottardo (Fred Hutchinson Cancer Research Center), Dr. Alexa McCray (Harvard Medical School), Dr. Ewan Harrison (University of Cambridge). Moderated by Dr. Stephany Duda (Vanderbilt University) and Dr. Purvesh Khatri (Stanford University).
please register to receive meeting link
REGISTRATION : https://zoom.us/webinar/register/WN_jjHo246UQieRTKWtDdSHug
AGENDA : https://apply.hub.ki/datascience4niaid/
CONTACTS: Event Organizing Committee (NIAIDODSET@niaid.nih.gov)
DetailsOrganizerNIAIDWhenFri, May 14, 2021 - 2:00 pm - 3:30 pmWhereOnline |
The National Institute of Allergy and Infectious Diseases (NIAID) is excited to advance discovery and innovation in infectious diseases and immune-mediated disorders research by leveraging data and data science approaches. Towards this end, NIAID will conduct a series of ideas and innovation webinars that bring together experts and stakeholders in data science, infectious diseases, immunology, and immune-mediated disorders. Through the webinar series, participants will have the opportunity to provide insights into the current landscape of data science research and development, as well as offer ideas that promise to shape the future of data-driven immune-mediated and infectious disease research. The webinar series will serve as a platform for collaboration, idea generation, and networking among participants and generate foundational materials that is expected to inform the prospective role of data science in advancing NIAID’s mission. Our expert panel will engage in a moderated discussion following short talks where they will define the traditional silos that may impede broad data sharing and highlight examples of where breaking those silos facilitated advancement that otherwise could not have been achieved. Invited Speakers include Dr. Raphael Gottardo (Fred Hutchinson Cancer Research Center), Dr. Alexa McCray (Harvard Medical School), Dr. Ewan Harrison (University of Cambridge). Moderated by Dr. Stephany Duda (Vanderbilt University) and Dr. Purvesh Khatri (Stanford University). please register to receive meeting link REGISTRATION : https://zoom.us/webinar/register/WN_jjHo246UQieRTKWtDdSHug AGENDA : https://apply.hub.ki/datascience4niaid/ CONTACTS: Event Organizing Committee (NIAIDODSET@niaid.nih.gov) | 2021-05-14 14:00:00 | Online | Data Resources | Online | NIAID | 0 | Harnessing the Power of Data to Advance Immune-mediated and Infectious Disease Research | |||
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Presenter: Sai Lakshmi Subramanian Program Manager, Cancer Genomics Cloud Seven Bridges Abstract The Cancer Genomics Cloud powered by Seven Bridges (CGC) is a NCI-funded cloud resource that provides a unified platform for cancer data analysis by co-localizing three components within the cloud: 1) large cancer datasets including TCGA, CPTAC and several others from CRDC data nodes; 2) >500 bioinformatics tools and best-practice workflows for analyzing multi-omics data; and 3) the computational capabilities to do large-scale analyses. The user-friendly portal of CGC allows the researchers to browse, query and filter datasets of interest and also bring their own data for collaborative analysis in the context of other publicly available data. In addition to the simplicity of data access and management, the CGC provides the flexibility to bring private tools, and the ability to complete reproducible and interactive analyses, all with the speed of cloud computing resources without needing any cloud provider accounts or managed billing. Using the power of Connected Cloud Storage, datasets residing in Amazon or Google Cloud can be easily attached as volumes. Interactive analysis of data can be performed using RStudio, along with Jupyter notebooks and is tailored to maximize user experience (including billing controls, flexibility, etc). With a keen focus on interoperability, the CGC has implemented services to support the technical standards recommended by the Global Alliance for Genomics and Health (GA4GH). Altogether, these added features enable a network of findable, accessible, interoperable and reusable (FAIR) datasets, workflows, and services towards making cancer data analysis faster, and more easily available for all. In this webinar, we will demonstrate the features available in the CGC for optimizing analysis costs on the cloud and also showcase new workflows for proteomics analysis. JOIN WEBEX MEETING https://cbiit.webex.com/cbiit/j.php?MTID=mc85fd4f00b48b1767e287901319a42cd Meeting number (access code): 180 425 7227 Meeting password: 6pSMQPBS$43 TAP TO JOIN FROM A MOBILE DEVICE (ATTENDEES ONLY) +1-650-479-3207,,1804257227## tel:%2B1-650-479-3207,,*01*1804257227%23%23*01* Call-in toll number (US/Canada) | 2021-05-14 15:00:00 | Online | Cancer,Cloud | Online | NCI Containers and Workflows Interest Group | 0 | The Cancer Genomics Cloud powered by Seven Bridges: a secure and scalable cloud-based platform to access, share and analyze multi-omics datasets | |||
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Description
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Session Description
Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model ...Read More
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Session Description
Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy.
DetailsOrganizerNIH Training LibraryWhenMon, May 17, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register Session Description Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy. | 2021-05-17 11:00:00 | Online | Data Resources | Online | NIH Training Library | 0 | ANIMAL MODEL AND MODEL ORGANISM INFORMATION RESOURCES | |||
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Description
For our next meeting we will be having a guest lecture by Dr. Josh Waterfall from Institut Curie.
Abstract:
Non small cell lung cancers (NSCLC) are known to be recurrently infiltrated by multiple immune populations. Furthermore, the level of infiltration by T cell populations is a positive prognostic factor and immune checkpoint blockade provides significant clinical benefit in a subset of patients. However, many questions remain concerning the heterogeneity and function ...Read More
For our next meeting we will be having a guest lecture by Dr. Josh Waterfall from Institut Curie.
Abstract:
Non small cell lung cancers (NSCLC) are known to be recurrently infiltrated by multiple immune populations. Furthermore, the level of infiltration by T cell populations is a positive prognostic factor and immune checkpoint blockade provides significant clinical benefit in a subset of patients. However, many questions remain concerning the heterogeneity and function of tumor infiltrating T cell populations. To address these issues, we performed single cell RNA and T Cell Receptor (TCR) seq profiling of T cell subsets in a cohort of early stage NSCLC patients including tumor, juxta-tumor tissue, and blood. This allowed development of a working model for the ontogeny, recruitment, and differentiation of these populations as well as the role of TCR signaling and proliferation within the tumor microenvironment.
Join ZoomGov Meeting
https://nih.zoomgov.com/j/1610990767?pwd=NzVWQzlNOTBtazJYcFBycEEyRDJVQT09
Meeting ID: 161 099 0767
Passcode: 945612
One tap mobile
+16692545252,,1610990767#,,,,*945612# US (San Jose)
+16468287666,,1610990767#,,,,*945612# US (New York)
DetailsOrganizerCDSLWhenMon, May 17, 2021 - 11:00 am - 12:00 pmWhereOnline |
For our next meeting we will be having a guest lecture by Dr. Josh Waterfall from Institut Curie. Abstract: Non small cell lung cancers (NSCLC) are known to be recurrently infiltrated by multiple immune populations. Furthermore, the level of infiltration by T cell populations is a positive prognostic factor and immune checkpoint blockade provides significant clinical benefit in a subset of patients. However, many questions remain concerning the heterogeneity and function of tumor infiltrating T cell populations. To address these issues, we performed single cell RNA and T Cell Receptor (TCR) seq profiling of T cell subsets in a cohort of early stage NSCLC patients including tumor, juxta-tumor tissue, and blood. This allowed development of a working model for the ontogeny, recruitment, and differentiation of these populations as well as the role of TCR signaling and proliferation within the tumor microenvironment. Join ZoomGov Meeting https://nih.zoomgov.com/j/1610990767?pwd=NzVWQzlNOTBtazJYcFBycEEyRDJVQT09 Meeting ID: 161 099 0767 Passcode: 945612 One tap mobile +16692545252,,1610990767#,,,,*945612# US (San Jose) +16468287666,,1610990767#,,,,*945612# US (New York) | 2021-05-17 11:00:00 | Online | Cancer,Genomics | Online | CDSL | 0 | Single cell profiling of T cell responses in non small cell lung cancer | |||
337 |
Description
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Session Description
This training will provide an introduction to RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The exercise will run on the Galaxy platform using Illumina paired-end RNA-seq data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing ...Read More
Register
Session Description
This training will provide an introduction to RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The exercise will run on the Galaxy platform using Illumina paired-end RNA-seq data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; measure abundance of transcripts; perform differential expression analysis; and visualize the output of RNA-seq analyses.
DetailsOrganizerNIH Training LibraryWhenTue, May 18, 2021 - 11:00 am - 2:00 pmWhereOnline |
Register Session Description This training will provide an introduction to RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The exercise will run on the Galaxy platform using Illumina paired-end RNA-seq data. Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; measure abundance of transcripts; perform differential expression analysis; and visualize the output of RNA-seq analyses. | 2021-05-18 11:00:00 | Online | Bulk RNA-Seq | Online | NIH Training Library | 0 | RNA-SEQ ANALYSIS TRAINING | |||
366 |
Description
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you ...Read More
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR)
Questions? Contact the NCI Data Science Learning Exchange
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, May 18, 2021 - 11:00 am - 1:00 pmWhereOnline |
Registration is required. Register at this link. Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more. If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2021-05-18 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Conditionals, Looping Over Data Sets, Writing Functions | |||
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Description
Register
Description:
IPA’s Analysis Match Explorer was launched in March 2020 and this upgrade is being evaluated for purchase by NCI. NCI scientists will have no-charge access to Analysis Match Explorer for a limited time. This seminar will highlight the additional capabilities provided by Land Explorer for IPA and how it can be used to ...Read More
Register
Description:
IPA’s Analysis Match Explorer was launched in March 2020 and this upgrade is being evaluated for purchase by NCI. NCI scientists will have no-charge access to Analysis Match Explorer for a limited time. This seminar will highlight the additional capabilities provided by Land Explorer for IPA and how it can be used to enhance your projects. Your feedback to BTEP and CBIIT on the benefit you feel these additional features might provide for you is greatly appreciated
Land Explorer for IPA provides access to curated ‘omic data from hundreds of thousands of samples and functions as a complement to the curated literature in the QIAGEN Knowledge Base. Through simple queries and by utilizing sample level metadata, you can:
§ Seamlessly jump from IPA into more granular sample- and gene-level details in Land Explorer, the web-based portal to OmicSoft’s massive Lands databases: OncoLand and DiseaseLand.
§ Explore ‘omics datasets from GTEx, the CCLE, TCGA, and thousands of individual cancer studies from GEO and other repositories.
§ Navigate from a gene of interest in IPA to quickly discover its tissue or cell expression, the diseases and treatments that cause it to be up-or-down-regulated, the cancers in which it is frequently mutated, the effect of mutations on patient survival and much more.
§ Easily determine the expression of a gene, where a gene is observed to be differentially expressed, and additional ‘omic characteristics such as somatic DNA alterations.
§ Query the Lands Datasets even without your own study data
Speaker: Dr. Eric Seiser (Sr. Field Application Scientist – QIAGEN)
POC: Daoud Meerzaman
DetailsOrganizerCBIITWhenWed, May 19, 2021 - 10:00 am - 11:00 amWhereOnline |
Register Description: IPA’s Analysis Match Explorer was launched in March 2020 and this upgrade is being evaluated for purchase by NCI. NCI scientists will have no-charge access to Analysis Match Explorer for a limited time. This seminar will highlight the additional capabilities provided by Land Explorer for IPA and how it can be used to enhance your projects. Your feedback to BTEP and CBIIT on the benefit you feel these additional features might provide for you is greatly appreciated Land Explorer for IPA provides access to curated ‘omic data from hundreds of thousands of samples and functions as a complement to the curated literature in the QIAGEN Knowledge Base. Through simple queries and by utilizing sample level metadata, you can: § Seamlessly jump from IPA into more granular sample- and gene-level details in Land Explorer, the web-based portal to OmicSoft’s massive Lands databases: OncoLand and DiseaseLand. § Explore ‘omics datasets from GTEx, the CCLE, TCGA, and thousands of individual cancer studies from GEO and other repositories. § Navigate from a gene of interest in IPA to quickly discover its tissue or cell expression, the diseases and treatments that cause it to be up-or-down-regulated, the cancers in which it is frequently mutated, the effect of mutations on patient survival and much more. § Easily determine the expression of a gene, where a gene is observed to be differentially expressed, and additional ‘omic characteristics such as somatic DNA alterations. § Query the Lands Datasets even without your own study data Speaker: Dr. Eric Seiser (Sr. Field Application Scientist – QIAGEN) POC: Daoud Meerzaman | 2021-05-19 10:00:00 | Online | Omics | Online | CBIIT | 0 | Explore ‘Omics Datasets Using Land Explorer for IPA | |||
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Description
Register/Join
Kinase inhibitors have been intensively studied ...Read More
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Kinase inhibitors have been intensively studied and used effectively for cancer treatment for decades. Yet, despite our progress in understanding kinases in oncology, more needs to be known to better predict how and which inhibitor will work best in any given patient at any given time. Phosphoproteomic data could hold the key for such precision medicine, allowing clinicians to select the best medication for each patient.
Dr. Kristin Naegle of the University of Virginia will describe a statistical and graph-theoretic approach to predicting kinase activity. She will show how her team developed an algorithm using phosphoproteomic data from breast cancer tumor biopsies and PDX models. They found that HER2-negative patients were more likely to respond to therapy due to HER2 activity; whereas HER2-positive patients, which lacked net HER2-activity, did not respond to therapy. Dr. Naegle will describe these findings and other work in the field of phosphoproteomics.
Dr. Kristen Naegle is an associate professor of biomedical engineering, computer science and engineering, and resident member of the Center for Public Health Genomics at the University of Virginia. She received her doctorate from the Massachusetts Institute of Technology in biological engineering and was subsequently trained as a postdoctoral associate at the Koch Institute for Integrative Cancer Research.
DetailsOrganizerNCI Data Science Learning ExchangeWhenWed, May 19, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register/Join Kinase inhibitors have been intensively studied and used effectively for cancer treatment for decades. Yet, despite our progress in understanding kinases in oncology, more needs to be known to better predict how and which inhibitor will work best in any given patient at any given time. Phosphoproteomic data could hold the key for such precision medicine, allowing clinicians to select the best medication for each patient. Dr. Kristin Naegle of the University of Virginia will describe a statistical and graph-theoretic approach to predicting kinase activity. She will show how her team developed an algorithm using phosphoproteomic data from breast cancer tumor biopsies and PDX models. They found that HER2-negative patients were more likely to respond to therapy due to HER2 activity; whereas HER2-positive patients, which lacked net HER2-activity, did not respond to therapy. Dr. Naegle will describe these findings and other work in the field of phosphoproteomics. Dr. Kristen Naegle is an associate professor of biomedical engineering, computer science and engineering, and resident member of the Center for Public Health Genomics at the University of Virginia. She received her doctorate from the Massachusetts Institute of Technology in biological engineering and was subsequently trained as a postdoctoral associate at the Koch Institute for Integrative Cancer Research. | 2021-05-19 11:00:00 | Online | Proteomics | Online | NCI Data Science Learning Exchange | 0 | KSTAR: An Algorithm for Inferring Kinase Activity from Patient Phosphoproteomic Data | |||
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Description
Join WebEx Meeting
Additional Connection information:
Meeting number (access code): 160 933 9277 Meeting password: yGhknKS7*97
Presenter: Justin Lack, Ph.D.
Team Lead
NIAID Bioinformatics Collaborative Resource (NCBR)
Biomedical Informatics and Data Science Directorate
Join WebEx Meeting
Additional Connection information:
Meeting number (access code): 160 933 9277 Meeting password: yGhknKS7*97
Presenter: Justin Lack, Ph.D.
Team Lead
NIAID Bioinformatics Collaborative Resource (NCBR)
Biomedical Informatics and Data Science Directorate
DetailsOrganizerFNL Science and Technology GroupWhenWed, May 19, 2021 - 11:00 am - 12:00 pmWhereOnline |
Join WebEx Meeting Additional Connection information: Meeting number (access code): 160 933 9277 Meeting password: yGhknKS7*97 Presenter: Justin Lack, Ph.D. Team Lead NIAID Bioinformatics Collaborative Resource (NCBR) Biomedical Informatics and Data Science Directorate | 2021-05-19 11:00:00 | Online | Online | FNL Science and Technology Group | 0 | Bioinformatic support and genomic analysis of an international COVID-19 cohort | ||||
402 |
Description
Register
Kinase inhibitors have been intensively studied and ...Read More
Register
Kinase inhibitors have been intensively studied and used effectively for cancer treatment for decades. Yet, despite our progress in understanding kinases in oncology, more needs to be known to better predict how and which inhibitor will work best in any given patient at any given time. Phosphoproteomic data could hold the key for such precision medicine, allowing clinicians to select the best medication for each patient.
Presenter: Kristen Naegle, Ph.D.
Dr. Kristin Naegle of the University of Virginia will describe a statistical and graph-theoretic approach to predicting kinase activity. She will show how her team developed an algorithm using phosphoproteomic data from breast cancer tumor biopsies and PDX models. They found that HER2-negative patients were more likely to respond to therapy due to HER2 activity; whereas HER2-positive patients, which lacked net HER2-activity, did not respond to therapy. Dr. Naegle will describe these findings and other work in the field of phosphoproteomics.
DetailsOrganizerCBIITWhenWed, May 19, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register Kinase inhibitors have been intensively studied and used effectively for cancer treatment for decades. Yet, despite our progress in understanding kinases in oncology, more needs to be known to better predict how and which inhibitor will work best in any given patient at any given time. Phosphoproteomic data could hold the key for such precision medicine, allowing clinicians to select the best medication for each patient. Presenter: Kristen Naegle, Ph.D. Dr. Kristin Naegle of the University of Virginia will describe a statistical and graph-theoretic approach to predicting kinase activity. She will show how her team developed an algorithm using phosphoproteomic data from breast cancer tumor biopsies and PDX models. They found that HER2-negative patients were more likely to respond to therapy due to HER2 activity; whereas HER2-positive patients, which lacked net HER2-activity, did not respond to therapy. Dr. Naegle will describe these findings and other work in the field of phosphoproteomics. | 2021-05-19 11:00:00 | Online | Proteomics | Online | CBIIT | 0 | KSTAR: An Algorithm for Inferring Kinase Activity from Patient Phosphoproteomic Data | |||
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Description
Biography:
Christoph Bock is a Principal Investigator at the CeMM Research Center for Molecular Medicine of the Austrian Academy of Sciences and Professor of [Bio]Medical Informatics at the Medical University of Vienna. His research combines experimental biology (high-throughput sequencing, epigenetics, CRISPR screening, synthetic biology) with computational methods (bioinformatics, machine learning, artificial intelligence) – for cancer, immunology, and precision medicine (https://www.bocklab.org & Read More
Biography:
Christoph Bock is a Principal Investigator at the CeMM Research Center for Molecular Medicine of the Austrian Academy of Sciences and Professor of [Bio]Medical Informatics at the Medical University of Vienna. His research combines experimental biology (high-throughput sequencing, epigenetics, CRISPR screening, synthetic biology) with computational methods (bioinformatics, machine learning, artificial intelligence) – for cancer, immunology, and precision medicine (https://www.bocklab.org & https://twitter.com/BockLab). Before coming to Vienna, he was a postdoc at the Broad Institute of MIT and Harvard and a PhD student at the Max Planck Institute for Informatics. Christoph Bock is also scientific coordinator of the Biomedical Sequencing Facility of CeMM and MedUni Vienna, and he coordinates an EU Horizon 2020 project that contributes single-cell sequencing of organoids to the Human Cell Atlas. His research awards include the Otto Hahn Medal of the Max Planck Society, ERC Starting and Consolidator grants, and the Overton Prize of the International Society for Computational Biology.
WebEx Link*: https://cbiit.webex.com/cbiit/j.php?MTID=m6f268bdc900b5c9316e8d4e1bc165db0
Meeting Number: 172 715 2338
Meeting Password: wzBJQap7@45
Audio-Only Call-In Number: 1-650-479-3207 (Access code: 172 715 2338
DetailsOrganizerSingle Cell Users GroupWhenThu, May 20, 2021 - 11:00 am - 12:00 pmWhereOnline |
Biography: Christoph Bock is a Principal Investigator at the CeMM Research Center for Molecular Medicine of the Austrian Academy of Sciences and Professor of [Bio]Medical Informatics at the Medical University of Vienna. His research combines experimental biology (high-throughput sequencing, epigenetics, CRISPR screening, synthetic biology) with computational methods (bioinformatics, machine learning, artificial intelligence) – for cancer, immunology, and precision medicine (https://www.bocklab.org & https://twitter.com/BockLab). Before coming to Vienna, he was a postdoc at the Broad Institute of MIT and Harvard and a PhD student at the Max Planck Institute for Informatics. Christoph Bock is also scientific coordinator of the Biomedical Sequencing Facility of CeMM and MedUni Vienna, and he coordinates an EU Horizon 2020 project that contributes single-cell sequencing of organoids to the Human Cell Atlas. His research awards include the Otto Hahn Medal of the Max Planck Society, ERC Starting and Consolidator grants, and the Overton Prize of the International Society for Computational Biology. WebEx Link*: https://cbiit.webex.com/cbiit/j.php?MTID=m6f268bdc900b5c9316e8d4e1bc165db0 Meeting Number: 172 715 2338 Meeting Password: wzBJQap7@45 Audio-Only Call-In Number: 1-650-479-3207 (Access code: 172 715 2338 | 2021-05-20 11:00:00 | Online | Single Cell Technologies | Online | Single Cell Users Group | 0 | Looking into the past and future of cells | |||
976 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, May 20, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-05-20 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
347 |
Description
Speaker: Maxwell Lee
Speaker: Maxwell Lee
DetailsOrganizerNCI SS/SCWhenMon, May 24, 2021 - 10:00 am - 11:00 amWhereOnline |
Speaker: Maxwell Lee | 2021-05-24 10:00:00 | Online | Cancer | Online | NCI SS/SC | 0 | Network motifs and dynamics of cellular states | |||
405 |
Description
Dr. Adam Phillippy, a Senior Investigator at NHGRI will give an extremely interesting talk on Monday, 5/24 at 11 am via WebEx at https://nih.webex.com/nih/j.php?MTID=m237a8e77868c23cc4e8b31120408c54c. Dr. Phillippy’s work is going to have tremendous impacts on studies of human diseases in next 10...Read More
Dr. Adam Phillippy, a Senior Investigator at NHGRI will give an extremely interesting talk on Monday, 5/24 at 11 am via WebEx at https://nih.webex.com/nih/j.php?MTID=m237a8e77868c23cc4e8b31120408c54c. Dr. Phillippy’s work is going to have tremendous impacts on studies of human diseases in next 10-20 years. Please feel free to forward the WebEx link to your NIH colleagues.
Abstract: In 2001, Celera Genomics and the International Human Genome Sequencing Consortium published their initial drafts of the human genome, which revolutionized the field of genomics. While these drafts and the updates that followed effectively covered the euchromatic portion of the genome, the heterochromatin and many other complex regions were left unfinished or erroneous. Addressing this remaining 8% of the genome, the Telomere-to-Telomere (T2T) consortium has finished the first truly complete 3.055-billion base pair (bp) sequence of a human genome, representing the largest addition of bases to the human reference genome since its initial release. The new T2T-CHM13 reference includes gapless assemblies for all 22 autosomes plus chromosome X, corrects numerous errors, and introduces nearly 200-million bp of novel sequence containing 2,226 paralogous gene copies, 115 of which are predicted to be protein coding. The newly completed regions include all centromeric satellite arrays and the short arms of all five acrocentric chromosomes, unlocking these complex regions of the genome to variational and functional studies for the first time.
Bio: Dr. Adam Phillippy is a Senior Investigator and head of the Genome Informatics Section at the National Human Genome Research Institute. His lab develops foundational methods for genomics, focusing specifically on the problems of genome sequencing, assembly, and comparative genomics. As a co-founder of the Telomere-to-Telomere consortium, he is currently developing new methods for the complete and gapless assembly of human genomes using long-read sequencing technologies. His lab homepage can be found at https://genomeinformatics.github.io/
WebEx link: https://nih.webex.com/nih/j.php?MTID=m237a8e77868c23cc4e8b31120408c54c
Meeting number (access code): 126 491 0151
Meeting password: 3rPb6mtdcQ8
DetailsOrganizerNHGRIWhenMon, May 24, 2021 - 11:00 am - 10:00 pmWhereOnline |
Dr. Adam Phillippy, a Senior Investigator at NHGRI will give an extremely interesting talk on Monday, 5/24 at 11 am via WebEx at https://nih.webex.com/nih/j.php?MTID=m237a8e77868c23cc4e8b31120408c54c. Dr. Phillippy’s work is going to have tremendous impacts on studies of human diseases in next 10-20 years. Please feel free to forward the WebEx link to your NIH colleagues. Abstract: In 2001, Celera Genomics and the International Human Genome Sequencing Consortium published their initial drafts of the human genome, which revolutionized the field of genomics. While these drafts and the updates that followed effectively covered the euchromatic portion of the genome, the heterochromatin and many other complex regions were left unfinished or erroneous. Addressing this remaining 8% of the genome, the Telomere-to-Telomere (T2T) consortium has finished the first truly complete 3.055-billion base pair (bp) sequence of a human genome, representing the largest addition of bases to the human reference genome since its initial release. The new T2T-CHM13 reference includes gapless assemblies for all 22 autosomes plus chromosome X, corrects numerous errors, and introduces nearly 200-million bp of novel sequence containing 2,226 paralogous gene copies, 115 of which are predicted to be protein coding. The newly completed regions include all centromeric satellite arrays and the short arms of all five acrocentric chromosomes, unlocking these complex regions of the genome to variational and functional studies for the first time. Bio: Dr. Adam Phillippy is a Senior Investigator and head of the Genome Informatics Section at the National Human Genome Research Institute. His lab develops foundational methods for genomics, focusing specifically on the problems of genome sequencing, assembly, and comparative genomics. As a co-founder of the Telomere-to-Telomere consortium, he is currently developing new methods for the complete and gapless assembly of human genomes using long-read sequencing technologies. His lab homepage can be found at https://genomeinformatics.github.io/ WebEx link: https://nih.webex.com/nih/j.php?MTID=m237a8e77868c23cc4e8b31120408c54c Meeting number (access code): 126 491 0151 Meeting password: 3rPb6mtdcQ8 | 2021-05-24 11:00:00 | Online | Genomics | Online | NHGRI | 0 | The complete sequence of a human genome | |||
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Description
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you ...Read More
Registration is required. Register at this link.
Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more.
If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR)
Questions? Contact the NCI Data Science Learning Exchange
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, May 25, 2021 - 11:00 am - 1:00 pmWhereOnline |
Registration is required. Register at this link. Python is a good programming language for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more. If you are a novice and want to learn how to program in Python to help you in your work, please join our NEW six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Presenters: Pinyi Lu, PhD, Bioinformatics Analyst; Robin Kramer, MS, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2021-05-25 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Variable Scope, Programming Style, Wrap-Up | |||
391 |
Description
Registration: https://btep.ccr.cancer.gov/classes/ai_one/
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m61e3ea39fde3a9a94a96efeaa519a656
Description: This talk will introduce basic concepts in building small ...Read More
Registration: https://btep.ccr.cancer.gov/classes/ai_one/
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m61e3ea39fde3a9a94a96efeaa519a656
Description: This talk will introduce basic concepts in building small molecule property prediction using machine learning models trained on data collected from experimental assays. Practical challenges will be considered, starting with limitations in data collection and curation through to model selection for property prediction applications. The ATOM (Accelerating Therapeutics for Opportunities in Medicine) Modeling Pipeline (AMPL) will be used to provide concrete examples for building models and data visualization.
Presenter: Jonathan Allen PhD, Computational Scientist, Lawrence Livermore National Laboratory
DetailsOrganizerCBIITWhenTue, May 25, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Registration: https://btep.ccr.cancer.gov/classes/ai_one/ Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m61e3ea39fde3a9a94a96efeaa519a656 Description: This talk will introduce basic concepts in building small molecule property prediction using machine learning models trained on data collected from experimental assays. Practical challenges will be considered, starting with limitations in data collection and curation through to model selection for property prediction applications. The ATOM (Accelerating Therapeutics for Opportunities in Medicine) Modeling Pipeline (AMPL) will be used to provide concrete examples for building models and data visualization. Presenter: Jonathan Allen PhD, Computational Scientist, Lawrence Livermore National Laboratory | 2021-05-25 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Building data-driven small molecule property prediction models with AMPL | |||
979 |
Description
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m61e3ea39fde3a9a94a96efeaa519a656
TOPIC: AI in Drug Development, presented by the ATOM consortium
In this class, we will introduce basic concepts in building small molecule property prediction using machine learning models trained on data collected from experimental assays. Practical ...Read More
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m61e3ea39fde3a9a94a96efeaa519a656
TOPIC: AI in Drug Development, presented by the ATOM consortium
In this class, we will introduce basic concepts in building small molecule property prediction using machine learning models trained on data collected from experimental assays. Practical challenges will be considered, starting with limitations in data collection and curation through to model selection for property prediction applications. The ATOM (Accelerating Therapeutics for Opportunities in Medicine) Modeling Pipeline (AMPL) will be used to provide concrete examples for building models and data visualization.
RegisterOrganizerBTEPWhenTue, May 25, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m61e3ea39fde3a9a94a96efeaa519a656 TOPIC: AI in Drug Development, presented by the ATOM consortium In this class, we will introduce basic concepts in building small molecule property prediction using machine learning models trained on data collected from experimental assays. Practical challenges will be considered, starting with limitations in data collection and curation through to model selection for property prediction applications. The ATOM (Accelerating Therapeutics for Opportunities in Medicine) Modeling Pipeline (AMPL) will be used to provide concrete examples for building models and data visualization. | 2021-05-25 13:00:00 | Online Webinar | Online | Jonathan Allen (LLNL) | BTEP | 0 | Building data-driven small molecule property prediction models with AMPL | |||
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DescriptionAre you clear on how deep learning fits into machine learning? Confused about the difference between training, testing, and validation datasets? Join us for an overview of common machine learning terminology. While this is not ...Read More Are you clear on how deep learning fits into machine learning? Confused about the difference between training, testing, and validation datasets? Join us for an overview of common machine learning terminology. While this is not a formal introduction to machine learning, we will introduce concepts in a logical order so beginners can become familiar with machine learning jargon and get started! Presenter: Andrew Weisman, PhD, High Performance Computing Analyst, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange DetailsOrganizerCDSLWhenWed, May 26, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Webex Are you clear on how deep learning fits into machine learning? Confused about the difference between training, testing, and validation datasets? Join us for an overview of common machine learning terminology. While this is not a formal introduction to machine learning, we will introduce concepts in a logical order so beginners can become familiar with machine learning jargon and get started! Presenter: Andrew Weisman, PhD, High Performance Computing Analyst, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange (NCIDataScienceLearningExchange@mail.nih.gov | 2021-05-26 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CDSL | 0 | Machine Learning Jargon: An Introduction to Key Concepts and Terms | |||
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Description
Register
This month’s Cancer Genomics Cloud (CGC) webinar welcomes Dr. Wenming Xiao, a lead bioinformatics scientist at the U.S. Food and Drug Administration. Dr. Xiao specializes in researching how computational, technical, and biological factors affect the reproducibility and accuracy of samples in whole-genome and whole-exome sequencing.
Clinical applications of precision oncology require accurate tests that can distinguish true cancer-specific ...Read More
Register
This month’s Cancer Genomics Cloud (CGC) webinar welcomes Dr. Wenming Xiao, a lead bioinformatics scientist at the U.S. Food and Drug Administration. Dr. Xiao specializes in researching how computational, technical, and biological factors affect the reproducibility and accuracy of samples in whole-genome and whole-exome sequencing.
Clinical applications of precision oncology require accurate tests that can distinguish true cancer-specific mutations from errors. However, no bulk sequencing study has yet addressed the effects of cross-site reproducibility or the factors that influence variant identification.
During the webinar, Dr. Xiao will share how he evaluated the reproducibility of different sample types with varying input amount and tumor purity, multiple library construction protocols, followed by processing with nine bioinformatics pipelines through whole-genome and whole-exome sequencing. From his findings, he can recommend actionable practices to improve the reproducibility and accuracy of next generation sequencing experiments for cancer mutation detection.
As one of NCI’s Cloud Resources, the Seven Bridges’ CGC provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale analysis on the cloud.
Presenter: Dr. Wenming Xiao is the lead bioinformatics scientist at the Office of New Drugs and the Office of Oncological Disease at the Center for Drug Evaluation and Research, U.S. Food and Drug Administration.
DetailsOrganizerCBIITWhenWed, May 26, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Register This month’s Cancer Genomics Cloud (CGC) webinar welcomes Dr. Wenming Xiao, a lead bioinformatics scientist at the U.S. Food and Drug Administration. Dr. Xiao specializes in researching how computational, technical, and biological factors affect the reproducibility and accuracy of samples in whole-genome and whole-exome sequencing. Clinical applications of precision oncology require accurate tests that can distinguish true cancer-specific mutations from errors. However, no bulk sequencing study has yet addressed the effects of cross-site reproducibility or the factors that influence variant identification. During the webinar, Dr. Xiao will share how he evaluated the reproducibility of different sample types with varying input amount and tumor purity, multiple library construction protocols, followed by processing with nine bioinformatics pipelines through whole-genome and whole-exome sequencing. From his findings, he can recommend actionable practices to improve the reproducibility and accuracy of next generation sequencing experiments for cancer mutation detection. As one of NCI’s Cloud Resources, the Seven Bridges’ CGC provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale analysis on the cloud. Presenter: Dr. Wenming Xiao is the lead bioinformatics scientist at the Office of New Drugs and the Office of Oncological Disease at the Center for Drug Evaluation and Research, U.S. Food and Drug Administration. | 2021-05-26 14:00:00 | Online | Cancer,Cloud | Online | CBIIT | 0 | Towards Best Practices in Cancer Mutation Detection with Whole-genome and Whole-exome Sequencing | |||
389 |
Description
Register
Description:
This webinar will highlight UCSC Xena's newest features including genome-wide differential gene expression analysis, violin plots, and a simpler way to filter and subgroup.
UCSC Xena (http://xena.ucsc.edu/) is a web-based visual integration and exploration tool for multi-omic data and associated clinical and phenotypic annotations. ...Read More
Register
Description:
This webinar will highlight UCSC Xena's newest features including genome-wide differential gene expression analysis, violin plots, and a simpler way to filter and subgroup.
UCSC Xena (http://xena.ucsc.edu/) is a web-based visual integration and exploration tool for multi-omic data and associated clinical and phenotypic annotations. Xena showcases seminal cancer genomics datasets from TCGA and the Pan-Cancer Atlas, as well as the GDC, PCAWG, and ICGC; a total of more than 1500 datasets across 50 cancer types. We support virtually any type of functional genomics data modality, including SNPs, INDELs, large structural variants, CNV, gene and other types of expression, DNA methylation, clinical and phenotypic annotations. Browser features include the high performance Visual Spreadsheet, dynamic Kaplan-Meier survival analysis, genome-wide differential gene expression analysis, powerful filtering and subgrouping, charts, statistical analyses, genomic signatures, and live bookmarks. Researchers can use the same visualizations to view their own data privately and securely in Xena.
Xena can help you answer questions like:
* Is over-expression of geneA associated with lower survival in these two cancer types?
* Is geneB differentially expressed in TCGA tumor vs GTEx normal?
* What are the most differentially expressed genes for the subgroups I just made?
* What is the relationship between expression, mutation, copy number, etc for these genes?
This webinar will include a live demonstration of Xena. Feel free to follow along in either Chrome or Firefox.
For questions please contact Daoud Meerzaman
Presenter: Mary Goldman, Design and Outreach Engineer for UCSC Xena, of the UC Santa Cruz Genomics Institute
DetailsOrganizerCBIITWhenWed, May 26, 2021 - 4:00 pm - 5:00 pmWhereOnline |
Register Description: This webinar will highlight UCSC Xena's newest features including genome-wide differential gene expression analysis, violin plots, and a simpler way to filter and subgroup. UCSC Xena (http://xena.ucsc.edu/) is a web-based visual integration and exploration tool for multi-omic data and associated clinical and phenotypic annotations. Xena showcases seminal cancer genomics datasets from TCGA and the Pan-Cancer Atlas, as well as the GDC, PCAWG, and ICGC; a total of more than 1500 datasets across 50 cancer types. We support virtually any type of functional genomics data modality, including SNPs, INDELs, large structural variants, CNV, gene and other types of expression, DNA methylation, clinical and phenotypic annotations. Browser features include the high performance Visual Spreadsheet, dynamic Kaplan-Meier survival analysis, genome-wide differential gene expression analysis, powerful filtering and subgrouping, charts, statistical analyses, genomic signatures, and live bookmarks. Researchers can use the same visualizations to view their own data privately and securely in Xena. Xena can help you answer questions like: * Is over-expression of geneA associated with lower survival in these two cancer types? * Is geneB differentially expressed in TCGA tumor vs GTEx normal? * What are the most differentially expressed genes for the subgroups I just made? * What is the relationship between expression, mutation, copy number, etc for these genes? This webinar will include a live demonstration of Xena. Feel free to follow along in either Chrome or Firefox. For questions please contact Daoud Meerzaman Presenter: Mary Goldman, Design and Outreach Engineer for UCSC Xena, of the UC Santa Cruz Genomics Institute | 2021-05-26 16:00:00 | Online | Genomics | Online | CBIIT | 0 | Introduction to UCSC Xena | |||
406 |
Description
Register here
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to ...Read More
Register here
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives.
Next week's session will wrap up the initial part of this series, but stay tuned as NCI continues to share the latest updates in Cancer Moonshot through additional seminars, web updates, and more.
Speaker: Amy Herr, Ph.D.Exit Disclaimer, University of California, Berkeley
Recommendation: Develop New Enabling Technologies to Accelerate Cancer Research
DetailsWhenThu, May 27, 2021 - 12:00 pm - 1:00 pmWhereOnline |
Register here This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives. Next week's session will wrap up the initial part of this series, but stay tuned as NCI continues to share the latest updates in Cancer Moonshot through additional seminars, web updates, and more. Speaker: Amy Herr, Ph.D.Exit Disclaimer, University of California, Berkeley Recommendation: Develop New Enabling Technologies to Accelerate Cancer Research | 2021-05-27 12:00:00 | Online | Single Cell Technologies,Cancer | Online | 0 | Cancer Moonshot Seminar Series | ||||
977 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, May 27, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-05-27 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
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Description
Register Now
Faculty: Shannon McWeeney, PhD – Oregon Health & Science University; NCI Cancer Moonshot DRSN
Moderator: Santosh Putta, PhD
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior ...Read More
Register Now
Faculty: Shannon McWeeney, PhD – Oregon Health & Science University; NCI Cancer Moonshot DRSN
Moderator: Santosh Putta, PhD
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series.
Learning Objectives
A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research.
Series Organizers
Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Big Data and Data Sharing Committee, Chair
Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Co-Chair
Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Immediate Past Chair
Carsten Krieg, PhD – Medical University of South Carolina
Big Data and Data Sharing Committee, Member
DetailsOrganizerNCI and the Society for Immunotherapy of Cancer (SITC)WhenThu, May 27, 2021 - 3:30 pm - 4:30 pmWhereOnline |
Register Now Faculty: Shannon McWeeney, PhD – Oregon Health & Science University; NCI Cancer Moonshot DRSN Moderator: Santosh Putta, PhD Target Audience This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series. Learning Objectives A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research. Series Organizers Kellie N. Smith, PhD – Johns Hopkins School of Medicine Big Data and Data Sharing Committee, Chair Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Co-Chair Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Immediate Past Chair Carsten Krieg, PhD – Medical University of South Carolina Big Data and Data Sharing Committee, Member | 2021-05-27 15:30:00 | Online | Statistics,Cancer,Artificial Intelligence / Machine Learning,Data Science | Online | NCI and the Society for Immunotherapy of Cancer (SITC) | 0 | STATISTICS AND MACHINE LEARNING | |||
390 |
Description
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Description: Over the last 15 years the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB) have served as key resources for interpreting the biological significance of expression changes in large transcriptomic datasets. The GSEA-MSigDB project offers free and open-source tools like GSEA - and ...Read More
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Description: Over the last 15 years the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB) have served as key resources for interpreting the biological significance of expression changes in large transcriptomic datasets. The GSEA-MSigDB project offers free and open-source tools like GSEA - and its single-sample equivalent ssGSEA - and a large database of gene signatures curated to aid in both disease research and understanding basic biology. Our team continues to expand the utility of these resources through the additions of new analysis tools, gene sets, and integrations with other resources. This webinar will provide an introduction to some of the basics of the GSEA method, including various options for how to run GSEA, introduce some of the numerous resources available for analysis in the Molecular Signatures Database, and explore how to analyze and interpret enrichment results.
Presenter: Dr. Anthony Castanza Curator, Molecular Signatures Database Mesirov Lab, Department of Medicine University of California, San Diego
POC: Daoud Meerzaman
DetailsOrganizerCBIITWhenWed, Jun 02, 2021 - 4:00 pm - 5:00 pmWhereOnline |
Register Description: Over the last 15 years the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB) have served as key resources for interpreting the biological significance of expression changes in large transcriptomic datasets. The GSEA-MSigDB project offers free and open-source tools like GSEA - and its single-sample equivalent ssGSEA - and a large database of gene signatures curated to aid in both disease research and understanding basic biology. Our team continues to expand the utility of these resources through the additions of new analysis tools, gene sets, and integrations with other resources. This webinar will provide an introduction to some of the basics of the GSEA method, including various options for how to run GSEA, introduce some of the numerous resources available for analysis in the Molecular Signatures Database, and explore how to analyze and interpret enrichment results. Presenter: Dr. Anthony Castanza Curator, Molecular Signatures Database Mesirov Lab, Department of Medicine University of California, San Diego POC: Daoud Meerzaman | 2021-06-02 16:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | An Introduction to Gene Set Enrichment Analysis and the Molecular Signatures Database | |||
983 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jun 03, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-06-03 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
409 |
Description
Speaker:
Rangan Sreenivas Sukumar
Distinguished Technologist
Hewlett Packard Enterprise (HPE)
Abstract:
In March of 2020, the “Force for Good” pledge of intellectual property to fight COVID-19 brought into action HPE products, resources and expertise to the problem of drug/vaccine discovery. Several scientists engaged in collaborations with HPE volunteers to accelerate efforts towards a drug/vaccine. This talk documents the spirit and outcome of such a collaboration of domain and data science and as an example ...Read More
Speaker:
Rangan Sreenivas Sukumar
Distinguished Technologist
Hewlett Packard Enterprise (HPE)
Abstract:
In March of 2020, the “Force for Good” pledge of intellectual property to fight COVID-19 brought into action HPE products, resources and expertise to the problem of drug/vaccine discovery. Several scientists engaged in collaborations with HPE volunteers to accelerate efforts towards a drug/vaccine. This talk documents the spirit and outcome of such a collaboration of domain and data science and as an example of how artificial intelligence (AI), when applied with explainable context is augmented intelligence – one that empowers human experts to excel at their best by doing what computers do best. More specifically, we will demonstrate AI augmenting experts on hypothesis generation tasks by connecting and reasoning with a curated knowledge universe of medical facts and data. We explain the construction of a knowledge graph from 13 open datasets such as PubChem, UniProt, CHEMBL, RCSB, ClinicalTrials.gov etc. (30 TBs in size with 150 billion medical facts/properties) and present the power of a massively parallel-processing database for interactive and exploratory discovery from multi-modal data (protein sequences, knowledge facts, and tables). On this knowledge graph we will show the ability to search for the “what-is”, “what-if”, “what-else” and the “what-could-be” using reasoning algorithms. We will show results from queries capable of comparing protein-sequences (~4 million comparisons per query in under a minute), and explain how one scientist during one of our hackathons was able to look for common proteins in COVID-19 (and newer variants) in other sequenced viruses, bacteria and fungi, search for previously-studied protein activity in other organisms and further extrapolate that knowledge to known protein-ligand activity from clinical trials data. This curiosity established a workflow for drug repurposing using our knowledge graph that serendipitously discovered the connection between Tetanus and COVID-19 posing the question - “Is Tetanus vaccination contributing to reduced severity of the COVID-19 infection?”. We will conclude this talk with a live demo, encouraging domain and data scientists to pose questions beyond COVID-19 on this massive knowledge graph and engaging with our team for further collaboration.
Join ZoomGov Meeting
https://nih.zoomgov.com/j/1617561452?pwd=bE5YOVgrL2tHbFZidUJQOWZzdGlpZz09
Meeting ID: 161 756 1452
Passcode: 586729
One tap mobile
+16692545252,,1617561452#,,,,*586729# US (San Jose)
+16468287666,,1617561452#,,,,*586729# US (New York)
DetailsOrganizerNIAIDWhenFri, Jun 04, 2021 - 12:00 pm - 1:00 pmWhereOnline |
Speaker: Rangan Sreenivas Sukumar Distinguished Technologist Hewlett Packard Enterprise (HPE) Abstract: In March of 2020, the “Force for Good” pledge of intellectual property to fight COVID-19 brought into action HPE products, resources and expertise to the problem of drug/vaccine discovery. Several scientists engaged in collaborations with HPE volunteers to accelerate efforts towards a drug/vaccine. This talk documents the spirit and outcome of such a collaboration of domain and data science and as an example of how artificial intelligence (AI), when applied with explainable context is augmented intelligence – one that empowers human experts to excel at their best by doing what computers do best. More specifically, we will demonstrate AI augmenting experts on hypothesis generation tasks by connecting and reasoning with a curated knowledge universe of medical facts and data. We explain the construction of a knowledge graph from 13 open datasets such as PubChem, UniProt, CHEMBL, RCSB, ClinicalTrials.gov etc. (30 TBs in size with 150 billion medical facts/properties) and present the power of a massively parallel-processing database for interactive and exploratory discovery from multi-modal data (protein sequences, knowledge facts, and tables). On this knowledge graph we will show the ability to search for the “what-is”, “what-if”, “what-else” and the “what-could-be” using reasoning algorithms. We will show results from queries capable of comparing protein-sequences (~4 million comparisons per query in under a minute), and explain how one scientist during one of our hackathons was able to look for common proteins in COVID-19 (and newer variants) in other sequenced viruses, bacteria and fungi, search for previously-studied protein activity in other organisms and further extrapolate that knowledge to known protein-ligand activity from clinical trials data. This curiosity established a workflow for drug repurposing using our knowledge graph that serendipitously discovered the connection between Tetanus and COVID-19 posing the question - “Is Tetanus vaccination contributing to reduced severity of the COVID-19 infection?”. We will conclude this talk with a live demo, encouraging domain and data scientists to pose questions beyond COVID-19 on this massive knowledge graph and engaging with our team for further collaboration. Join ZoomGov Meeting https://nih.zoomgov.com/j/1617561452?pwd=bE5YOVgrL2tHbFZidUJQOWZzdGlpZz09 Meeting ID: 161 756 1452 Passcode: 586729 One tap mobile +16692545252,,1617561452#,,,,*586729# US (San Jose) +16468287666,,1617561452#,,,,*586729# US (New York) | 2021-06-04 12:00:00 | Online | Data Science | Online | NIAID | 0 | Hypothesis Generation with Open Data and Explainable Algorithms | |||
407 |
Description
A multidisciplinary network of researchers and clinicians dedicated to improving early detection, diagnosis, prognosis and treatment of liver cancer.
Presenter:
Shalev Itzkovitz, PhD
Associate Professor
Department of Molecular Cell Biology
Weizmann Institute of Science
Rehovot, Israel
Dr. Shalev Itzkovitz uses tools from systems biology to study design principles of tissue organization, focusing on the key metabolic tissues – the liver, intestine and pancreas. He obtained his BSc in Physics and Mathematics at the Hebrew ...Read More
A multidisciplinary network of researchers and clinicians dedicated to improving early detection, diagnosis, prognosis and treatment of liver cancer.
Presenter:
Shalev Itzkovitz, PhD
Associate Professor
Department of Molecular Cell Biology
Weizmann Institute of Science
Rehovot, Israel
Dr. Shalev Itzkovitz uses tools from systems biology to study design principles of tissue organization, focusing on the key metabolic tissues – the liver, intestine and pancreas. He obtained his BSc in Physics and Mathematics at the Hebrew University in Jerusalem, MSc in Electrical Engineering at the Technion and PhD in Systems Biology at the Weizmann Institute. Following a postdoctoral fellowship at MIT with Alexander van Oudenaarden, Dr. Itzkovitz joined the Department of Molecular Cell Biology at the Weizmann Institute in 2012 and obtained tenure in 2017. He was selected as an HHMI International Research Scholar and a Vallee Young Investigator in 2017 and was awarded both starter and consolidator ERC grants for his research on the mammalian liver.
Join by Zoom
Event number: 160 952 8039
Event passcode: 281705
Join by phone: https://nih.zoomgov.com/u/anJzdvCWM
DetailsWhenMon, Jun 07, 2021 - 9:00 am - 10:00 amWhereOnline |
A multidisciplinary network of researchers and clinicians dedicated to improving early detection, diagnosis, prognosis and treatment of liver cancer. Presenter: Shalev Itzkovitz, PhD Associate Professor Department of Molecular Cell Biology Weizmann Institute of Science Rehovot, Israel Dr. Shalev Itzkovitz uses tools from systems biology to study design principles of tissue organization, focusing on the key metabolic tissues – the liver, intestine and pancreas. He obtained his BSc in Physics and Mathematics at the Hebrew University in Jerusalem, MSc in Electrical Engineering at the Technion and PhD in Systems Biology at the Weizmann Institute. Following a postdoctoral fellowship at MIT with Alexander van Oudenaarden, Dr. Itzkovitz joined the Department of Molecular Cell Biology at the Weizmann Institute in 2012 and obtained tenure in 2017. He was selected as an HHMI International Research Scholar and a Vallee Young Investigator in 2017 and was awarded both starter and consolidator ERC grants for his research on the mammalian liver. Join by Zoom Event number: 160 952 8039 Event passcode: 281705 Join by phone: https://nih.zoomgov.com/u/anJzdvCWM | 2021-06-07 09:00:00 | Online | Omics | Online | 0 | Spatial Omics of the Mammalian Liver | ||||
348 |
Description
Speaker: Maxwell Lee
Speaker: Maxwell Lee
DetailsOrganizerNCI SS/SCWhenMon, Jun 07, 2021 - 10:00 am - 11:00 amWhereOnline |
Speaker: Maxwell Lee | 2021-06-07 10:00:00 | Online | Cancer | Online | NCI SS/SC | 0 | Sources of tumor heterogeneity: deterministic vs stochastic effects | |||
408 |
Description
Do you want to know how to use Machine Learning (ML) for accelerating drug discovery? Join us on June 8, 1:00 pm – 2:00 pm ET, for the first in a series of workshops on how to use the Atom Modeling PipeLine (AMPL), an open-source conda-based software that automates key drug discovery steps. AMPL is designed to take molecular ...Read More
Do you want to know how to use Machine Learning (ML) for accelerating drug discovery? Join us on June 8, 1:00 pm – 2:00 pm ET, for the first in a series of workshops on how to use the Atom Modeling PipeLine (AMPL), an open-source conda-based software that automates key drug discovery steps. AMPL is designed to take molecular binding data (ex., IC50, ki, etc.) and carry out key ML steps with minimal user intervention. The first workshop will introduce AMPL and highlight AMPL’s capabilities for creating ML-ready datasets. Follow-on workshops will be offered during the summer and will cover modeling methods and inference.
Location: Webex
Registration: Not required
Presenter: Sarangan Ravichandran, PhD, PMP Senior Data Scientist, ATOM Consortium/Frederick National Laboratory for Cancer Research (FNLCR) and Adjunct Professor in Bioinformatics, Hood College
Supporting materials: Tutorial and AMPL: A Data-Driven Modeling Pipeline for Drug Discovery
The workshop on June 8 will include two parts, a short presentation followed by a hands-on tutorial.
Part 1: A 20-minute presentation that will cover the following topics:
DetailsWhenTue, Jun 08, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Do you want to know how to use Machine Learning (ML) for accelerating drug discovery? Join us on June 8, 1:00 pm – 2:00 pm ET, for the first in a series of workshops on how to use the Atom Modeling PipeLine (AMPL), an open-source conda-based software that automates key drug discovery steps. AMPL is designed to take molecular binding data (ex., IC50, ki, etc.) and carry out key ML steps with minimal user intervention. The first workshop will introduce AMPL and highlight AMPL’s capabilities for creating ML-ready datasets. Follow-on workshops will be offered during the summer and will cover modeling methods and inference. Location: Webex Registration: Not required Presenter: Sarangan Ravichandran, PhD, PMP Senior Data Scientist, ATOM Consortium/Frederick National Laboratory for Cancer Research (FNLCR) and Adjunct Professor in Bioinformatics, Hood College Supporting materials: Tutorial and AMPL: A Data-Driven Modeling Pipeline for Drug Discovery The workshop on June 8 will include two parts, a short presentation followed by a hands-on tutorial. Part 1: A 20-minute presentation that will cover the following topics: Introduction to small-molecule binding and the database sources Issues associated with data ingestion and curation Exploratory data analysis of the ingested and curated datasets Use of different featurization methods like molecular fingerprints or properties (Molecular Weight, number of hydrogen-bond acceptors, etc.) Creation of ML-ready datasets Part 2: A 35-minute AMPL code demonstration followed by a 5-minute Q&A. We will share a Python Jupyter notebook that will cover the following ML steps: data ingestion/curation, featurization, and visualization to create ML-ready datasets. Here are the key sections of the notebook: Highlights of AMPL functions that are designed to address the common issues encountered during the data ingestion and curation of drug discovery or small-molecule-focused projects Introduction of the extensible AMPL featurizer module and a demonstration on how simple keyword choices can lead to the computation of a range of different feature sets Exploratory Data Analysis and visualization code templates that can be adopted for other drug discovery projects with very little modification To learn more about the software, visit the AMPL GitHub repository at this link Questions? Contact the NCI Data Science Learning Exchange | 2021-06-08 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | 0 | ATOM Modeling Pipeline (AMPL) for Drug Discovery | ||||
411 |
Description
The CCR Office of Science and Technology Resources (OSTR) is pleased to host a virtual technology seminar given by Advanced Cell Diagnostics (ACD) and NCI Cores at FNLCR.
Presenters:
Jyoti Phatak, MS | Advanced Cell Diagnostics
Ruby Hsu, Ph.D. | Advanced Cell Diagnostics
Kristen Pike, MS, PMP and Gordon Whiteley, Ph.D. | CLIA Molecular Diagnostics Laboratory, FNLCR, NCI
Larry Sternberg, Ph.D. and Andrew Warner, MS | Molecular Histopathology Laboratory, FNLCR, NCI
Please use ...Read More
The CCR Office of Science and Technology Resources (OSTR) is pleased to host a virtual technology seminar given by Advanced Cell Diagnostics (ACD) and NCI Cores at FNLCR.
Presenters:
Jyoti Phatak, MS | Advanced Cell Diagnostics
Ruby Hsu, Ph.D. | Advanced Cell Diagnostics
Kristen Pike, MS, PMP and Gordon Whiteley, Ph.D. | CLIA Molecular Diagnostics Laboratory, FNLCR, NCI
Larry Sternberg, Ph.D. and Andrew Warner, MS | Molecular Histopathology Laboratory, FNLCR, NCI
Please use the seminar registration link to receive the meeting details.
This webinar will include an introduction to the RNAscope technology and highlight some key applications in cancer research. The webinar will also include an overview of RNAscope services offered by two NCI Cores, the Molecular Histopathology Laboratory and the CLIA Molecular Diagnostics Laboratory in Frederick, as well as assay services offered by ACD.
Key applications include:
DetailsWhenWed, Jun 09, 2021 - 1:00 pm - 2:00 pmWhereOnline |
The CCR Office of Science and Technology Resources (OSTR) is pleased to host a virtual technology seminar given by Advanced Cell Diagnostics (ACD) and NCI Cores at FNLCR. Presenters: Jyoti Phatak, MS | Advanced Cell Diagnostics Ruby Hsu, Ph.D. | Advanced Cell Diagnostics Kristen Pike, MS, PMP and Gordon Whiteley, Ph.D. | CLIA Molecular Diagnostics Laboratory, FNLCR, NCI Larry Sternberg, Ph.D. and Andrew Warner, MS | Molecular Histopathology Laboratory, FNLCR, NCI Please use the seminar registration link to receive the meeting details. This webinar will include an introduction to the RNAscope technology and highlight some key applications in cancer research. The webinar will also include an overview of RNAscope services offered by two NCI Cores, the Molecular Histopathology Laboratory and the CLIA Molecular Diagnostics Laboratory in Frederick, as well as assay services offered by ACD. Key applications include: Visualize the cellular heterogeneity of tumor microenvironment, and characterize the immune cell types and cytokine secretion Spatially map and validate scRNA-seq gene profiles at the single cell level in the tissue context Specific detection of engineered CAR-T and TCR-T cell therapies in clinical trial patient biopsies Detect splice variants and point mutations Study gene amplification, gene deletion, gene fusion as well break-aparts For questions about this seminar please contact: Mariam Malik, Ph.D. OSTR, CCR/NCI Building 37, Rm 1041B Office: 240-760-7183 | 2021-06-09 13:00:00 | Online | Spatial Transcriptomics | Online | 0 | Visualizing the Cancer Transcriptome – How RNA In Situ Hybridization Technology Offers an Essential Data Dimension in Cancer Research | ||||
972 |
Description
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mc11b56eb7f7e732aa44c78427402dd2e
Abstract: Long read, single molecule sequencing from Pacific Biosciences (PacBio) and Oxford Nanopore are revolutionizing genomics with increased power to resolve and study genomes. Most notably, these technologies have recently enabled the sequencing of the first ...Read More
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mc11b56eb7f7e732aa44c78427402dd2e
Abstract: Long read, single molecule sequencing from Pacific Biosciences (PacBio) and Oxford Nanopore are revolutionizing genomics with increased power to resolve and study genomes. Most notably, these technologies have recently enabled the sequencing of the first completely gap-free human genome and have enabled the discovery of tens of thousands of structural variants that were previously invisible to short read sequencing, including within clinically relevant genes. While these technologies were previously too slow, costly, and erroneous for widespread use, their recent improvements have made them competitive or superior to short read sequencing in nearly all ways. This is opening up new avenues for widespread applications for population and clinical studies, including of cancer. In this presentation, I'll discuss how we are using these technologies for human genomics, with a focus on studying genomic and epigenomic instability in cancer.
Brief Bio: Michael Schatz is the Bloomberg Distinguished Associate Professor of Computer Science and Biology at Johns Hopkins University. His research is at the intersection of computer science, biology, and biotechnology, and focuses on development of novel algorithms and systems for comparative genomics, human genetics, and personalized medicine. In 2015, Schatz received the Alfred P. Sloan Foundation Fellowship to develop computational methods to probe the genetic components of autism and cancer, and in 2014 Schatz received the NSF CAREER award to develop computational methods to study plant and animal genomes using new long-read single molecule DNA sequencing technologies. Schatz joined JHU in 2016, after spending 6 years at Cold Spring Harbor Laboratory where he remains an Adjunct Associate Professor of Quantitative Biology. Schatz received his Ph.D. and M.S. in Computer Science from the University of Maryland in 2010 and 2008, his B.S. in Computer Science from Carnegie Mellon University in 2000, and spent 5 years at the Institute for Genomic Research (TIGR) in between. More information is available on his lab website: http://schatz-lab.org
RegisterOrganizerBTEPWhenThu, Jun 10, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mc11b56eb7f7e732aa44c78427402dd2e Abstract: Long read, single molecule sequencing from Pacific Biosciences (PacBio) and Oxford Nanopore are revolutionizing genomics with increased power to resolve and study genomes. Most notably, these technologies have recently enabled the sequencing of the first completely gap-free human genome and have enabled the discovery of tens of thousands of structural variants that were previously invisible to short read sequencing, including within clinically relevant genes. While these technologies were previously too slow, costly, and erroneous for widespread use, their recent improvements have made them competitive or superior to short read sequencing in nearly all ways. This is opening up new avenues for widespread applications for population and clinical studies, including of cancer. In this presentation, I'll discuss how we are using these technologies for human genomics, with a focus on studying genomic and epigenomic instability in cancer. Brief Bio: Michael Schatz is the Bloomberg Distinguished Associate Professor of Computer Science and Biology at Johns Hopkins University. His research is at the intersection of computer science, biology, and biotechnology, and focuses on development of novel algorithms and systems for comparative genomics, human genetics, and personalized medicine. In 2015, Schatz received the Alfred P. Sloan Foundation Fellowship to develop computational methods to probe the genetic components of autism and cancer, and in 2014 Schatz received the NSF CAREER award to develop computational methods to study plant and animal genomes using new long-read single molecule DNA sequencing technologies. Schatz joined JHU in 2016, after spending 6 years at Cold Spring Harbor Laboratory where he remains an Adjunct Associate Professor of Quantitative Biology. Schatz received his Ph.D. and M.S. in Computer Science from the University of Maryland in 2010 and 2008, his B.S. in Computer Science from Carnegie Mellon University in 2000, and spent 5 years at the Institute for Genomic Research (TIGR) in between. More information is available on his lab website: http://schatz-lab.org | 2021-06-10 13:00:00 | Online Webinar | Online | Michael Schatz (JHU) | BTEP | 0 | Long Read Sequencing for Cancer Genomics and Beyond | |||
984 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jun 10, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-06-10 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
393 |
Description
Registration: https://btep.ccr.cancer.gov/classes/ai_two/
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m8f1460fe5079163dd2a2a4e2641c227f
Description: Deep learning is a subclass of machine learning which ...Read More
Registration: https://btep.ccr.cancer.gov/classes/ai_two/
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m8f1460fe5079163dd2a2a4e2641c227f
Description: Deep learning is a subclass of machine learning which has shown excellent performance in learning tasks on unstructured data, such as digital images. This talk consists of two parts. In the part , we will discuss some recent development of machine learning, with emphasis on the cellular object segmentation and tracking, image classification, and image restoration. The second part focuses on applications in digital pathology where we will talk about data acquisition, curation, and cleaning, as well as approaches to deep-learning. By the end of this part, you should be aware of potential pitfalls than confound results and have a better understanding of what it takes to carry out a deep-learning project in digital pathology.
Presenters: Gianluca Pegoraro PhD (Staff scientist) , G Tom Brown MD/PhD (Staff clinician), Center for Cancer Research, NCI
DetailsOrganizerCBIITWhenTue, Jun 15, 2021 - 11:00 am - 12:00 pmWhereOnline |
Registration: https://btep.ccr.cancer.gov/classes/ai_two/ Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m8f1460fe5079163dd2a2a4e2641c227f Description: Deep learning is a subclass of machine learning which has shown excellent performance in learning tasks on unstructured data, such as digital images. This talk consists of two parts. In the part , we will discuss some recent development of machine learning, with emphasis on the cellular object segmentation and tracking, image classification, and image restoration. The second part focuses on applications in digital pathology where we will talk about data acquisition, curation, and cleaning, as well as approaches to deep-learning. By the end of this part, you should be aware of potential pitfalls than confound results and have a better understanding of what it takes to carry out a deep-learning project in digital pathology. Presenters: Gianluca Pegoraro PhD (Staff scientist) , G Tom Brown MD/PhD (Staff clinician), Center for Cancer Research, NCI | 2021-06-15 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Overview of Deep Learning applications in Bioimaging and Digital Pathology | |||
980 |
Description
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m8f1460fe5079163dd2a2a4e2641c227f
TOPIC: AI in Image Analysis, presented by CCR: AIR and High Throughput Imaging Facility
Deep learning is a subclass of machine learning which has shown excellent performance in learning tasks on unstructured data, such as digital ...Read More
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m8f1460fe5079163dd2a2a4e2641c227f
TOPIC: AI in Image Analysis, presented by CCR: AIR and High Throughput Imaging Facility
Deep learning is a subclass of machine learning which has shown excellent performance in learning tasks on unstructured data, such as digital images. In the first part of this talk, we will discuss some recent development of machine learning, with emphasis on the cellular object segmentation and tracking, image classification, and image restoration. The second part focuses on applications in digital pathology where we will talk about data acquisition, curation, and cleaning, as well as approaches to deep-learning. By the end of this part, you should be aware of potential pitfalls than confound results and have a better understanding of what it takes to carry out a deep-learning project in digital pathology.
RegisterOrganizerBTEPWhenTue, Jun 15, 2021 - 11:00 am - 12:00 pmWhereOnline Webinar |
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m8f1460fe5079163dd2a2a4e2641c227f TOPIC: AI in Image Analysis, presented by CCR: AIR and High Throughput Imaging Facility Deep learning is a subclass of machine learning which has shown excellent performance in learning tasks on unstructured data, such as digital images. In the first part of this talk, we will discuss some recent development of machine learning, with emphasis on the cellular object segmentation and tracking, image classification, and image restoration. The second part focuses on applications in digital pathology where we will talk about data acquisition, curation, and cleaning, as well as approaches to deep-learning. By the end of this part, you should be aware of potential pitfalls than confound results and have a better understanding of what it takes to carry out a deep-learning project in digital pathology. | 2021-06-15 11:00:00 | Online Webinar | Online | Gianluca Pegoraro PhD (NCI/CCR),G Tom Brown MD/PhD (NCI/CCR) | BTEP | 0 | Overview of Deep Learning Applications in Bioimaging and Digital Pathology | |||
412 |
Description
In this hands-on virtual lab, the participants will familiarize themselves with Deep Learning concepts and techniques, using MATLAB Online to train deep neural networks on GPUs in the cloud, create deep learning models from scratch for images and signal data, explore pretrained models and use transfer learning, import and export models from Python frameworks such as Keras and PyTorch, as well as automatically generate code for embedded targets. Deep Learning can achieve state-of-the-art accuracy when ...Read More
In this hands-on virtual lab, the participants will familiarize themselves with Deep Learning concepts and techniques, using MATLAB Online to train deep neural networks on GPUs in the cloud, create deep learning models from scratch for images and signal data, explore pretrained models and use transfer learning, import and export models from Python frameworks such as Keras and PyTorch, as well as automatically generate code for embedded targets. Deep Learning can achieve state-of-the-art accuracy when it comes to complex problems such as image classification or developing predictive models for signal processing applications. Deep Learning outperforms humans in some tasks like classifying objects in images. Cancer researchers are using deep learning to automatically detect cancer cells, for example. This is an introductory class with a 3.5 hour duration, including a 20 minute break.
Register
DetailsOrganizerNIH Training LibraryWhenTue, Jun 15, 2021 - 1:00 pm - 4:30 pmWhereOnline |
In this hands-on virtual lab, the participants will familiarize themselves with Deep Learning concepts and techniques, using MATLAB Online to train deep neural networks on GPUs in the cloud, create deep learning models from scratch for images and signal data, explore pretrained models and use transfer learning, import and export models from Python frameworks such as Keras and PyTorch, as well as automatically generate code for embedded targets. Deep Learning can achieve state-of-the-art accuracy when it comes to complex problems such as image classification or developing predictive models for signal processing applications. Deep Learning outperforms humans in some tasks like classifying objects in images. Cancer researchers are using deep learning to automatically detect cancer cells, for example. This is an introductory class with a 3.5 hour duration, including a 20 minute break. Register | 2021-06-15 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Training Library | 0 | HANDS-ON VIRTUAL LAB: DEEP LEARNING | |||
987 |
Description
This is the last course in a series of three, designed to answer the question:
“I’ve just got my sequence data back from the sequencing center, how do I understand/analyze/work with it?”
Course Three: Working with RNA-Seq data
Who should take this course:
Learners who want to work with Next Gen Sequence Data
Pre-requisites:
Learners should have beginner level skills working in a Unix environment
Learning Objectives:
In this class, learners will:
...Read More
This is the last course in a series of three, designed to answer the question:
“I’ve just got my sequence data back from the sequencing center, how do I understand/analyze/work with it?”
Course Three: Working with RNA-Seq data
Who should take this course:
Learners who want to work with Next Gen Sequence Data
Pre-requisites:
Learners should have beginner level skills working in a Unix environment
Learning Objectives:
In this class, learners will:
Align RNA-Seq reads to a genome with several different alignment programs
Visualize aligned RNA-Seq reads with the Integrative Genome Viewer (IGV)
Work with SAM and BAM file formats
Perform differential expression and functional analysis of RNA-Seq data
All classes will be held on WebEx in Amy Stonelake’s Personal Room:
https://cbiit.webex.com/meet/stonelakeak
This class will be held at 3-4 PM on these days.
June 15
June 17
June 22
June 24
RegisterOrganizerBTEPWhenTue, Jun 15, 2021 - 3:00 pm - 4:00 pmWhereOnline Webinar |
This is the last course in a series of three, designed to answer the question: “I’ve just got my sequence data back from the sequencing center, how do I understand/analyze/work with it?” Course Three: Working with RNA-Seq data Who should take this course: Learners who want to work with Next Gen Sequence Data Pre-requisites: Learners should have beginner level skills working in a Unix environment Learning Objectives: In this class, learners will: Align RNA-Seq reads to a genome with several different alignment programs Visualize aligned RNA-Seq reads with the Integrative Genome Viewer (IGV) Work with SAM and BAM file formats Perform differential expression and functional analysis of RNA-Seq data All classes will be held on WebEx in Amy Stonelake’s Personal Room: https://cbiit.webex.com/meet/stonelakeak This class will be held at 3-4 PM on these days. June 15 June 17 June 22 June 24 | 2021-06-15 15:00:00 | Online Webinar | Bulk RNA-seq | Online | Amy Stonelake (BTEP) | BTEP | 0 | Bioinformatics for Beginners, Post-Bac Edition: Working with RNA-Seq data | ||
410 |
Description
Register/Join
The genetic variation found among individuals results in patterns of polymorphisms passed ...Read More
Register/Join
The genetic variation found among individuals results in patterns of polymorphisms passed down through generations. This evolutionary variation typically holds true for individuals, samples from the same population or subpopulation, and cells taken from a single tumor.
In this webinar, Dr. Paul Marjoram will explore how statistical analysis of polymorphism data can be used to examine a number of issues relating to cancer, including:
DetailsOrganizerCBIITWhenWed, Jun 16, 2021 - 11:00 am - 12:00 pmWhereOnline |
Register/Join The genetic variation found among individuals results in patterns of polymorphisms passed down through generations. This evolutionary variation typically holds true for individuals, samples from the same population or subpopulation, and cells taken from a single tumor. In this webinar, Dr. Paul Marjoram will explore how statistical analysis of polymorphism data can be used to examine a number of issues relating to cancer, including: how patterns of polymorphism induced by somatic mutation in tumors can be best understood and then used to differentiate tumor types or sub-types. how epigenetic polymorphism, or lack thereof, can be exploited to reveal a single gene of “importance.” how genetic polymorphism within a single tumor can be used to address questions about the makeup of that tumor (i.e., “How many stem cells does this tumor have?”). Using a statistical perspective, Dr. Marjoram shows how Big Data can be used to investigate the genetic and epigenetic variations underlying cancer. Presenter: Dr. Paul Marjoram is a research professor in the Biostatistics Division of the Department of Preventive Medicine at the Keck School of Medicine at the University of Southern California, Los Angeles. He has developed various mathematical and statistical machinery to address biological problems in areas such as population genetics, tumor evolution, association studies, and animal behavior. | 2021-06-16 11:00:00 | Online | Variant Analysis,Cancer | Online | CBIIT | 0 | Characterization of Genetic and Epigenetic Variation Data in Tumors | |||
413 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
Register
DetailsOrganizerNIH Training LibraryWhenWed, Jun 16, 2021 - 3:00 pm - 4:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. Register | 2021-06-16 15:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 1 | |||
421 |
Description
Please mark your calendar for the next Neuro-Oncology Branch Visiting Scholar Lecture Series: CNS Malignancies: From Basic Biology to Clinical Applications.
We are pleased to have Prof. Mario L. Suva, join us via WebEx and share his latest findings.
WebEx link:
https://cbiit.webex.com/cbiit/j.php?MTID=m65b1307bcb043a2c657216...Read More
Please mark your calendar for the next Neuro-Oncology Branch Visiting Scholar Lecture Series: CNS Malignancies: From Basic Biology to Clinical Applications.
We are pleased to have Prof. Mario L. Suva, join us via WebEx and share his latest findings.
WebEx link:
https://cbiit.webex.com/cbiit/j.php?MTID=m65b1307bcb043a2c657216a0281441b2
Mario L. Suva, M.D, Ph.D is an Associate Professor of Pathology at Harvard Medical School, Massachusetts General Hospital and Broad Institute, and his group is investigating cellular heterogeneity, epigenetic programs and differentiation hierarchies in cancer. His lab has taken a leading role in dissecting clinical brain tumors with single-cell genomics to tackle the challenges posed by tumor heterogeneity. To this end, Dr. Suva’s Group pioneered and co-directed the first study leveraging single-cell RNA-sequencing to decipher human glioblastoma (Patel 2014), a landmark work with profound implications for our understanding of this disease and for its management. They have subsequently brought these technologies to the next-level in specific subsets of adult and pediatric gliomas, with increased resolution, higher throughput and reduced costs, redefining in a comprehensive way cancer cells lineages, cancer stem cell programs and the tumor micro-environment in brain tumors (Tirosh 2016, Venteicher 2017, Filbin 2018, Neftel 2019, Hovestadt 2019). Overall, his lab works have described with great details the circuitries of cancer and immune cells in gliomas both in adults and children, offering novel insights into their biology and suggesting candidate attendant therapeutic strategies.
Dr. Suva has authored over 70 publications in journals like Nature Medicine, Nature, Science, Cell, Cancer Cell, Nature Communications, Cancer Research, with his publications being featured as covers or being highly cited as seen in over 12800 citations as of 2021.
For more information about Dr. Suva’s research please find the link below:
https://suvalab.mgh.harvard.edu
DetailsWhenWed, Jun 16, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Please mark your calendar for the next Neuro-Oncology Branch Visiting Scholar Lecture Series: CNS Malignancies: From Basic Biology to Clinical Applications. We are pleased to have Prof. Mario L. Suva, join us via WebEx and share his latest findings. WebEx link: https://cbiit.webex.com/cbiit/j.php?MTID=m65b1307bcb043a2c657216a0281441b2 Mario L. Suva, M.D, Ph.D is an Associate Professor of Pathology at Harvard Medical School, Massachusetts General Hospital and Broad Institute, and his group is investigating cellular heterogeneity, epigenetic programs and differentiation hierarchies in cancer. His lab has taken a leading role in dissecting clinical brain tumors with single-cell genomics to tackle the challenges posed by tumor heterogeneity. To this end, Dr. Suva’s Group pioneered and co-directed the first study leveraging single-cell RNA-sequencing to decipher human glioblastoma (Patel 2014), a landmark work with profound implications for our understanding of this disease and for its management. They have subsequently brought these technologies to the next-level in specific subsets of adult and pediatric gliomas, with increased resolution, higher throughput and reduced costs, redefining in a comprehensive way cancer cells lineages, cancer stem cell programs and the tumor micro-environment in brain tumors (Tirosh 2016, Venteicher 2017, Filbin 2018, Neftel 2019, Hovestadt 2019). Overall, his lab works have described with great details the circuitries of cancer and immune cells in gliomas both in adults and children, offering novel insights into their biology and suggesting candidate attendant therapeutic strategies. Dr. Suva has authored over 70 publications in journals like Nature Medicine, Nature, Science, Cell, Cancer Cell, Nature Communications, Cancer Research, with his publications being featured as covers or being highly cited as seen in over 12800 citations as of 2021. For more information about Dr. Suva’s research please find the link below: https://suvalab.mgh.harvard.edu | 2021-06-16 15:00:00 | Online | Single Cell Technologies,Cancer | Online | 0 | Dissecting glioma biology by single-cell genomics | ||||
422 |
Description
The intrinsic stochasticity of transcription leads to gene expression variation across cells in a clonal cell population. The expression variation can translate into phenotypic variation that can persist through several rounds of cell division. In the context of tumor initiation, such inter-cell variation within a normal tissue can cause a fraction of cells to assume “edge” transcriptional states that are primed for a transition toward malignancy. In such a framework, oncogenic mutations can interact with ...Read More
The intrinsic stochasticity of transcription leads to gene expression variation across cells in a clonal cell population. The expression variation can translate into phenotypic variation that can persist through several rounds of cell division. In the context of tumor initiation, such inter-cell variation within a normal tissue can cause a fraction of cells to assume “edge” transcriptional states that are primed for a transition toward malignancy. In such a framework, oncogenic mutations can interact with transcriptional priming to lead to malignant transformation.
We developed a two-stage test to find such transcriptional states in single-cell RNA-seq data from healthy pancreatic tissues and pancreatic ductal adenocarcinoma (PDAC) tumors. We found a subset of non-malignant pancreatic acinar cells, which we refer to as acinar edge (AE) cells, whose transcriptomes are highly diverged from a typical normal acinar cell and are much closer to a malignant state. Gene expression changes in AE cells recapitulate known gene expression changes during PDAC initiation and pancreatitis, which provides a common transcriptomic basis between pancreatitis and PDAC. Most strikingly, the fraction of AE-like cells increased with age, with no underlying mutational basis. Coupled with our observation that gene expression changes in AE cells in mice mirrored those during Kras-G12D induction, our findings point to a strong contribution of AE cells, and non-genetic expression heterogeneity in general, to PDAC initiation.
WebEx Link:
https://cbiit.webex.com/cbiit/j.php?MTID=med94a210a2c7c80e76396498a7f7bf7b
Meeting number: 172 241 0782
Meeting PW: jjM4nAT3e@4
Audio-only Call-in #: 1-650-479-3207 (Access code: 172 241 0782)
DetailsOrganizerSingle Cell Users GroupWhenThu, Jun 17, 2021 - 11:00 am - 12:00 pmWhereOnline |
The intrinsic stochasticity of transcription leads to gene expression variation across cells in a clonal cell population. The expression variation can translate into phenotypic variation that can persist through several rounds of cell division. In the context of tumor initiation, such inter-cell variation within a normal tissue can cause a fraction of cells to assume “edge” transcriptional states that are primed for a transition toward malignancy. In such a framework, oncogenic mutations can interact with transcriptional priming to lead to malignant transformation. We developed a two-stage test to find such transcriptional states in single-cell RNA-seq data from healthy pancreatic tissues and pancreatic ductal adenocarcinoma (PDAC) tumors. We found a subset of non-malignant pancreatic acinar cells, which we refer to as acinar edge (AE) cells, whose transcriptomes are highly diverged from a typical normal acinar cell and are much closer to a malignant state. Gene expression changes in AE cells recapitulate known gene expression changes during PDAC initiation and pancreatitis, which provides a common transcriptomic basis between pancreatitis and PDAC. Most strikingly, the fraction of AE-like cells increased with age, with no underlying mutational basis. Coupled with our observation that gene expression changes in AE cells in mice mirrored those during Kras-G12D induction, our findings point to a strong contribution of AE cells, and non-genetic expression heterogeneity in general, to PDAC initiation. WebEx Link: https://cbiit.webex.com/cbiit/j.php?MTID=med94a210a2c7c80e76396498a7f7bf7b Meeting number: 172 241 0782 Meeting PW: jjM4nAT3e@4 Audio-only Call-in #: 1-650-479-3207 (Access code: 172 241 0782) | 2021-06-17 11:00:00 | Online | Single Cell Technologies,Cancer | Online | Single Cell Users Group | 0 | A transcriptionally distinct subpopulation of healthy acinar cells exhibit features of pancreatic progenitors and pancreatic ductal adenocarcinoma | |||
985 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jun 17, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-06-17 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
414 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
Register
DetailsOrganizerNIH Training LibraryWhenThu, Jun 17, 2021 - 3:00 pm - 4:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. Register | 2021-06-17 15:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 2 | |||
354 |
Description
Register Now
Faculty: Dana Pe’er, PhD – Memorial Sloan Kettering Cancer Center; NCI Cancer Moonshot HTAN
Moderator: Daniel Wells, PhD – Immunai
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as ...Read More
Register Now
Faculty: Dana Pe’er, PhD – Memorial Sloan Kettering Cancer Center; NCI Cancer Moonshot HTAN
Moderator: Daniel Wells, PhD – Immunai
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series.
Learning Objectives
A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research.
Series Organizers
Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Big Data and Data Sharing Committee, Chair
Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Co-Chair
Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Immediate Past Chair
Carsten Krieg, PhD – Medical University of South Carolina
Big Data and Data Sharing Committee, Member
DetailsOrganizerNCI and the Society for Immunotherapy of Cancer (SITC)WhenThu, Jun 17, 2021 - 3:30 pm - 4:30 pmWhereOnline |
Register Now Faculty: Dana Pe’er, PhD – Memorial Sloan Kettering Cancer Center; NCI Cancer Moonshot HTAN Moderator: Daniel Wells, PhD – Immunai Target Audience This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series. Learning Objectives A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research. Series Organizers Kellie N. Smith, PhD – Johns Hopkins School of Medicine Big Data and Data Sharing Committee, Chair Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Co-Chair Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Immediate Past Chair Carsten Krieg, PhD – Medical University of South Carolina Big Data and Data Sharing Committee, Member | 2021-06-17 15:30:00 | Online | Cancer,Data Science, | Online | NCI and the Society for Immunotherapy of Cancer (SITC) | 0 | SINGLE-CELL RNA SEQUENCING | |||
415 |
Description
Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research organisms, ...Read More
Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy.
Register
DetailsOrganizerNIH Training LibraryWhenFri, Jun 18, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy. Register | 2021-06-18 13:00:00 | Online | Data Resources | Online | NIH Training Library | 0 | ANIMAL MODEL AND MODEL ORGANISM INFORMATION RESOURCES | |||
349 |
Description
Speaker: Maxwell Lee
Speaker: Maxwell Lee
DetailsOrganizerNCI SS/SCWhenMon, Jun 21, 2021 - 10:00 am - 11:00 amWhereOnline |
Speaker: Maxwell Lee | 2021-06-21 10:00:00 | Online | Cancer | Online | NCI SS/SC | 0 | Drug-tolerant persister (DTP) and cancer dynamics | |||
423 |
Description
Registration is required to join this event. If you have not registered, please do so now.
Read More
Registration is required to join this event. If you have not registered, please do so now.
Register
Speaker: Uchenna Emechebe, Ph.D., Field Application Scientist, Partek Incorporated
Partek® Flow® bioinformatics software which is available to NCI researchers provides a singular environment that enables the analysis and visualization of NGS data with no programming or command line expertise. Join us for these two online sessions where a Partek® scientist will demonstrate how to pre-process, analyze, and visualize Bulk RNA-Seq and/or Single Cell RNA-Seq data using Partek Flow’s point and click features.
Bulk RNA-Seq Data Analysis in Partek Flow
During this session, attendees will learn how to pre-process fastq files to generate raw gene count data, perform normalization of gene count data, identify differentially expressed genes, perform biological interpretation, and visualize the results of analysis using volcano plots, scatter plots, pie charts and heatmaps.
In addition, attendees will also learn how to:
• Check quality and align fastq files using a variety of peer reviewed aligners.
• Use correlation matrix to compare genes or samples.
For questions contact Daoud Meerzaman.
DetailsOrganizerCBIITWhenWed, Jun 23, 2021 - 10:00 am - 11:00 amWhereOnline |
Registration is required to join this event. If you have not registered, please do so now. Register Speaker: Uchenna Emechebe, Ph.D., Field Application Scientist, Partek Incorporated Partek® Flow® bioinformatics software which is available to NCI researchers provides a singular environment that enables the analysis and visualization of NGS data with no programming or command line expertise. Join us for these two online sessions where a Partek® scientist will demonstrate how to pre-process, analyze, and visualize Bulk RNA-Seq and/or Single Cell RNA-Seq data using Partek Flow’s point and click features. Bulk RNA-Seq Data Analysis in Partek Flow During this session, attendees will learn how to pre-process fastq files to generate raw gene count data, perform normalization of gene count data, identify differentially expressed genes, perform biological interpretation, and visualize the results of analysis using volcano plots, scatter plots, pie charts and heatmaps. In addition, attendees will also learn how to: • Check quality and align fastq files using a variety of peer reviewed aligners. • Use correlation matrix to compare genes or samples. For questions contact Daoud Meerzaman. | 2021-06-23 10:00:00 | Online | Bulk RNA-Seq | Online | CBIIT | 0 | Bulk RNA-Seq Data Analysis in Partek Flow | |||
986 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jun 24, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-06-24 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
416 |
Description
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a "point and click" approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing ...Read More
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a "point and click" approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; identify variants; visualize the exome sequencing data and variants.
Register
DetailsOrganizerNIH Training LibraryWhenMon, Jun 28, 2021 - 11:00 am - 2:00 pmWhereOnline |
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a "point and click" approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; identify variants; visualize the exome sequencing data and variants. Register | 2021-06-28 11:00:00 | Online | Genomics | Online | NIH Training Library | 0 | EXOME SEQUENCING DATA ANALYSIS | |||
425 |
Description
Dear colleagues,
For our next meeting we will be having the second PI Presentation from our branch chief, Dr. Eytan Ruppin, and four of his lab members. They will go over some projects in their labs so everyone can get a broader view of their current research activities, including:
Dear colleagues,
For our next meeting we will be having the second PI Presentation from our branch chief, Dr. Eytan Ruppin, and four of his lab members. They will go over some projects in their labs so everyone can get a broader view of their current research activities, including:
DetailsOrganizerCDSLWhenMon, Jun 28, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Dear colleagues, For our next meeting we will be having the second PI Presentation from our branch chief, Dr. Eytan Ruppin, and four of his lab members. They will go over some projects in their labs so everyone can get a broader view of their current research activities, including: Single cell precision oncology (Sanju Sinha) Understanding a chromosomal co-aneuploidy event in brain tumors (Nishanth Nair) Identifying COVID-19 targets (Lipika Ray) Sex bias in cancer risk and auto immune disorders (David Crawford) Overview and discussion (Eytan) Join ZoomGov Meeting https://nih.zoomgov.com/j/1614867690 | 2021-06-28 15:00:00 | Online | Single Cell Technologies,Cancer | Online | CDSL | 0 | CDSL PI Presentations with Eytan Ruppin | |||
424 |
Description
Registration is required to join this event. If you have not registered, please do so now.
Read More
Registration is required to join this event. If you have not registered, please do so now.
Register
Speaker: Uchenna Emechebe, Ph.D., Field Application Scientist, Partek Incorporated.
Partek® Flow® bioinformatics software which is available to NCI researchers provides a singular environment that enables the analysis and visualization of NGS data with no programming or command line expertise. Join us for these two online sessions where a Partek® scientist will demonstrate how to pre-process, analyze, and visualize Bulk RNA-Seq and/or Single Cell RNA-Seq data using Partek Flow’s point and click features.
During this session, attendees will learn how to perform QA/QC, custom filtration of single cell datasets, normalization, clustering and classification, biological interpretation and visualization of results using UMAP, t-SNE, volcano plots.
In addition, attendees of the webinar will:
• Become familiar with various single cell normalization and batch correction methods.
• Learn how to summarize gene expression values across different subsets of cells for any given set of genes and visualize the results using a bubble plot or a heat map.
DetailsOrganizerCBIITWhenWed, Jun 30, 2021 - 10:00 am - 11:00 amWhereOnline |
Registration is required to join this event. If you have not registered, please do so now. Register Speaker: Uchenna Emechebe, Ph.D., Field Application Scientist, Partek Incorporated. Partek® Flow® bioinformatics software which is available to NCI researchers provides a singular environment that enables the analysis and visualization of NGS data with no programming or command line expertise. Join us for these two online sessions where a Partek® scientist will demonstrate how to pre-process, analyze, and visualize Bulk RNA-Seq and/or Single Cell RNA-Seq data using Partek Flow’s point and click features. During this session, attendees will learn how to perform QA/QC, custom filtration of single cell datasets, normalization, clustering and classification, biological interpretation and visualization of results using UMAP, t-SNE, volcano plots. In addition, attendees of the webinar will: • Become familiar with various single cell normalization and batch correction methods. • Learn how to summarize gene expression values across different subsets of cells for any given set of genes and visualize the results using a bubble plot or a heat map. | 2021-06-30 10:00:00 | Online | Online | CBIIT | 0 | Single Cell RNA-Seq Data Analysis in Partek Flow | ||||
417 |
Description
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis.
Register
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis.
Register
DetailsOrganizerNIH Training LibraryWhenWed, Jul 07, 2021 - 10:30 am - 12:00 pmWhereOnline |
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis. Register | 2021-07-07 10:30:00 | Online | Bioinformatics Software, | Online | NIH Training Library | 0 | SINGLE CELL RNA-SEQ DATA ANALYSIS IN PARTEK FLOW | |||
989 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jul 08, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-07-08 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
430 |
Description
Registration is required for this event
Register Here
NHGRI will host a new seminar series this year on the “Bold Predictions for Human Genomics by 2030” that are described in NHGRI’s “Strategic Vision for Improving Human Health at the Forefront of Genomics.” The July 12, 2021 seminar will focus on Bold Prediction #6: The regular use of genomic information will have transitioned ...Read More
Registration is required for this event
Register Here
NHGRI will host a new seminar series this year on the “Bold Predictions for Human Genomics by 2030” that are described in NHGRI’s “Strategic Vision for Improving Human Health at the Forefront of Genomics.” The July 12, 2021 seminar will focus on Bold Prediction #6: The regular use of genomic information will have transitioned from boutique to mainstream in all clinical settings, making genomic testing as routine as complete blood counts (CBCs). Dr. Jennifer Posey of Baylor College of Medicine and Dr. Katrina Armstrong of Massachusetts General Hospital & Harvard Medical School will use this prediction as an aspirational theme for their talks, highlighting their own work in the context of that theme and speculating about the next decade in their areas. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV.
Speakers:
- Jennifer Posey, M.D., Ph.D.
Baylor College of Medicine
Dr. Jennifer Posey is Assistant Professor in the Department of Molecular & Human Genetics at Baylor College of Medicine. She is a physician-scientist with a research focus on postural orthostatic hypotension (POTS) and pulmonary artery hypertension (PAH). In her clinical practice she sees adult patients with diagnosed or suspected genetic disease. This includes both chromosomal abnormalities, as well as single gene disorders.
- Katrina Armstrong, M.D.
Massachusetts General Hospital & Harvard Medical School
Dr. Katrina Armstrong is the Jackson Professor of Clinical Medicine at Harvard Medical School, Chair of the Department of Medicine and Physician-in-Chief of Massachusetts General Hospital. She is an internationally recognized investigator in medical decision making, quality of care, and cancer prevention and outcomes, an award winning teacher, and a practicing primary care physician.
DetailsOrganizerNHGRIWhenMon, Jul 12, 2021 - 3:00 pm - 4:30 pmWhereOnline |
Registration is required for this event Register Here NHGRI will host a new seminar series this year on the “Bold Predictions for Human Genomics by 2030” that are described in NHGRI’s “Strategic Vision for Improving Human Health at the Forefront of Genomics.” The July 12, 2021 seminar will focus on Bold Prediction #6: The regular use of genomic information will have transitioned from boutique to mainstream in all clinical settings, making genomic testing as routine as complete blood counts (CBCs). Dr. Jennifer Posey of Baylor College of Medicine and Dr. Katrina Armstrong of Massachusetts General Hospital & Harvard Medical School will use this prediction as an aspirational theme for their talks, highlighting their own work in the context of that theme and speculating about the next decade in their areas. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV. Speakers: - Jennifer Posey, M.D., Ph.D. Baylor College of Medicine Dr. Jennifer Posey is Assistant Professor in the Department of Molecular & Human Genetics at Baylor College of Medicine. She is a physician-scientist with a research focus on postural orthostatic hypotension (POTS) and pulmonary artery hypertension (PAH). In her clinical practice she sees adult patients with diagnosed or suspected genetic disease. This includes both chromosomal abnormalities, as well as single gene disorders. - Katrina Armstrong, M.D. Massachusetts General Hospital & Harvard Medical School Dr. Katrina Armstrong is the Jackson Professor of Clinical Medicine at Harvard Medical School, Chair of the Department of Medicine and Physician-in-Chief of Massachusetts General Hospital. She is an internationally recognized investigator in medical decision making, quality of care, and cancer prevention and outcomes, an award winning teacher, and a practicing primary care physician. | 2021-07-12 15:00:00 | Online | Genomics | Online | NHGRI | 0 | Bold Predictions for Human Genomics by 2030: An NHGRI Seminar Series | |||
418 |
Description
Attendees will learn how to use Partek Flow to identify cell subtypes using both gene and protein expression in a peripheral blood mononuclear cell (PBMC) sample using Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-Seq) technology. CITE-Seq is a multimodal single cell phenotyping method. CITE-Seq data analysis starts with importing a count matrix file, followed by QC and filtering data. Clustering analysis and dimension reduction techniques are then used to visualize and identify subtypes ...Read More
Attendees will learn how to use Partek Flow to identify cell subtypes using both gene and protein expression in a peripheral blood mononuclear cell (PBMC) sample using Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-Seq) technology. CITE-Seq is a multimodal single cell phenotyping method. CITE-Seq data analysis starts with importing a count matrix file, followed by QC and filtering data. Clustering analysis and dimension reduction techniques are then used to visualize and identify subtypes of cells. Differential expression detection among different subtypes will be demonstrated, followed by Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis. Basic knowledge of Partek Flow is required.
Register
DetailsOrganizerNIH Training LibraryWhenWed, Jul 14, 2021 - 10:30 am - 12:00 pmWhereOnline |
Attendees will learn how to use Partek Flow to identify cell subtypes using both gene and protein expression in a peripheral blood mononuclear cell (PBMC) sample using Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-Seq) technology. CITE-Seq is a multimodal single cell phenotyping method. CITE-Seq data analysis starts with importing a count matrix file, followed by QC and filtering data. Clustering analysis and dimension reduction techniques are then used to visualize and identify subtypes of cells. Differential expression detection among different subtypes will be demonstrated, followed by Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis. Basic knowledge of Partek Flow is required. Register | 2021-07-14 10:30:00 | Online | Bioinformatics Software,Genomics | Online | NIH Training Library | 0 | CITE-SEQ DATA ANALYSIS IN PARTEK FLOW | |||
431 |
Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member.
Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please
- mute when not speaking
- refrain from screen sharing until asked to do so in the breakout room
- screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users
For more information and to register send email to staff@hpc.nih.gov
*** No appointments are necessary, and all problems are welcome.****
DetailsOrganizerHPC BiowulfWhenWed, Jul 14, 2021 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users For more information and to register send email to staff@hpc.nih.gov *** No appointments are necessary, and all problems are welcome.**** | 2021-07-14 13:00:00 | Online | Online | HPC Biowulf | 0 | Zoom-In Consult for Biowulf Users | ||||
392 |
Description
Registration: https://btep.ccr.cancer.gov/classes/ai_three/
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m933690e1ccdbfd15ae3f75d1cbec3b95
Description: This talk will describe machine learning and deep learning methods to ...Read More
Registration: https://btep.ccr.cancer.gov/classes/ai_three/
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m933690e1ccdbfd15ae3f75d1cbec3b95
Description: This talk will describe machine learning and deep learning methods to analyze bulk and single-cell RNA sequencing data, as well as deep learning models that integrate epigenetic data to decipher the regulatory networks underlying gene expression.
Presenter: Avantika Lal PhD, Senior Scientist | Deep Learning and Genomics | NVIDIA
DetailsOrganizerCBIITWhenThu, Jul 15, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Registration: https://btep.ccr.cancer.gov/classes/ai_three/ Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m933690e1ccdbfd15ae3f75d1cbec3b95 Description: This talk will describe machine learning and deep learning methods to analyze bulk and single-cell RNA sequencing data, as well as deep learning models that integrate epigenetic data to decipher the regulatory networks underlying gene expression. Presenter: Avantika Lal PhD, Senior Scientist | Deep Learning and Genomics | NVIDIA | 2021-07-15 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Machine Learning Tools to Analyze Gene Expression and Regulation | |||
981 |
Description
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m933690e1ccdbfd15ae3f75d1cbec3b95
TOPIC: AI in Molecular Data, presented by NVIDIA
This talk will describe machine learning and deep learning methods to analyze bulk and single-cell RNA sequencing data, as well as deep learning models that integrate epigenetic data to decipher ...Read More
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m933690e1ccdbfd15ae3f75d1cbec3b95
TOPIC: AI in Molecular Data, presented by NVIDIA
This talk will describe machine learning and deep learning methods to analyze bulk and single-cell RNA sequencing data, as well as deep learning models that integrate epigenetic data to decipher the regulatory networks underlying gene expression.
RegisterOrganizerBTEPWhenThu, Jul 15, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m933690e1ccdbfd15ae3f75d1cbec3b95 TOPIC: AI in Molecular Data, presented by NVIDIA This talk will describe machine learning and deep learning methods to analyze bulk and single-cell RNA sequencing data, as well as deep learning models that integrate epigenetic data to decipher the regulatory networks underlying gene expression. | 2021-07-15 13:00:00 | Online Webinar | Online | BTEP | 0 | Machine Learning Tools to Analyze Gene Expression and Regulation | ||||
990 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jul 15, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-07-15 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
355 |
Description
Register Now
Faculty: Michael Angelo, MD, PhD – Stanford University, Moonshot Cancer Atlas
Moderator: Carsten Krieg, PhD – Medical University of South Carolina
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as ...Read More
Register Now
Faculty: Michael Angelo, MD, PhD – Stanford University, Moonshot Cancer Atlas
Moderator: Carsten Krieg, PhD – Medical University of South Carolina
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series.
Learning Objectives
A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research.
Series Organizers
Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Big Data and Data Sharing Committee, Chair
Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Co-Chair
Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Immediate Past Chair
Carsten Krieg, PhD – Medical University of South Carolina
Big Data and Data Sharing Committee, Member
DetailsOrganizerNCI and the Society for Immunotherapy of Cancer (SITC)WhenThu, Jul 15, 2021 - 4:30 pm - 5:30 pmWhereOnline |
Register Now Faculty: Michael Angelo, MD, PhD – Stanford University, Moonshot Cancer Atlas Moderator: Carsten Krieg, PhD – Medical University of South Carolina Target Audience This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series. Learning Objectives A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research. Series Organizers Kellie N. Smith, PhD – Johns Hopkins School of Medicine Big Data and Data Sharing Committee, Chair Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Co-Chair Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Immediate Past Chair Carsten Krieg, PhD – Medical University of South Carolina Big Data and Data Sharing Committee, Member | 2021-07-15 16:30:00 | Online | Cancer,Data Science,Image Analysis | Online | NCI and the Society for Immunotherapy of Cancer (SITC) | 0 | QUANTITATIVE IMAGING | |||
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Description
Register
During the first part of the session attendees will learn how to use Partek Flow to perform special transcriptions by overlaying cell location information and histological images on single cell RNA-Seq data using 10X genomics data. During the second part of the session, attendees will learn how to run trajectory analysis and calculate pseudo-time.
Register
During the first part of the session attendees will learn how to use Partek Flow to perform special transcriptions by overlaying cell location information and histological images on single cell RNA-Seq data using 10X genomics data. During the second part of the session, attendees will learn how to run trajectory analysis and calculate pseudo-time.
DetailsOrganizerNIH Training LibraryWhenTue, Jul 20, 2021 - 10:30 am - 12:00 pmWhereOnline |
Register During the first part of the session attendees will learn how to use Partek Flow to perform special transcriptions by overlaying cell location information and histological images on single cell RNA-Seq data using 10X genomics data. During the second part of the session, attendees will learn how to run trajectory analysis and calculate pseudo-time. | 2021-07-20 10:30:00 | Online | Spatial Transcriptomics | Online | NIH Training Library | 0 | SPATIAL TRANSCRIPTOMICS AND TRAJECTORY ANALYSIS IN PARTEK FLOW | |||
991 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jul 22, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-07-22 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
432 |
Description
Register/Join
This webinar will focus on making controlled-access data (stored in NIH operated and supported repositories) more readily findable and accessible. It will consider the benefits of standardized vocabularies to address and describe a data set’s contents and a common language for informed consent that allows for consistent interpretation of allowable data uses. Discussion points will also address ...Read More
Register/Join
This webinar will focus on making controlled-access data (stored in NIH operated and supported repositories) more readily findable and accessible. It will consider the benefits of standardized vocabularies to address and describe a data set’s contents and a common language for informed consent that allows for consistent interpretation of allowable data uses. Discussion points will also address current issues with access to summary data and how best to make summary data and metadata available and accessible.
This webinar is a breakout session from the July 9 webinar, Streamlining Access to Controlled Data at NIH: Tackling Challenges and Identifying Opportunities. To learn more about this topic, including additional breakout sessions planned for July 2021, visit the Office of Data Science Strategy webpage
DetailsOrganizerCBIITWhenThu, Jul 22, 2021 - 3:00 pm - 5:30 pmWhereOnline |
Register/Join This webinar will focus on making controlled-access data (stored in NIH operated and supported repositories) more readily findable and accessible. It will consider the benefits of standardized vocabularies to address and describe a data set’s contents and a common language for informed consent that allows for consistent interpretation of allowable data uses. Discussion points will also address current issues with access to summary data and how best to make summary data and metadata available and accessible. This webinar is a breakout session from the July 9 webinar, Streamlining Access to Controlled Data at NIH: Tackling Challenges and Identifying Opportunities. To learn more about this topic, including additional breakout sessions planned for July 2021, visit the Office of Data Science Strategy webpage | 2021-07-22 15:00:00 | Online | Data Management | Online | CBIIT | 0 | Making Controlled-Access Data Readily Findable and Accessible | |||
435 |
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The T cell receptor (TCR) repertoire of the adaptive immune system needs broad diversity to recognize any possible pathogen yet must have strategic gaps so as not to attack self. The potential diversity is so high that a naive model would predict two individuals should have essentially no TCRs in common. Yet shared (“public”) TCRs exist! I will present analysis of repertoire sequencing data showing that these shared sequences are due, in part, to somatic selection. I will also discuss how somatic selection may play a role in the aging of the naive TCR repertoire, in a process analogous to the development of cancer. Bio: Philip Johnson began his academic career at Harvard College, where he earned an A.B. in Biology and Computer Science with his senior thesis advised by George Church. After working at NCBI for several years, he studied theoretical population genetics at UC Berkeley with Monty Slatkin where he earned his PhD in 2009. From Berkeley, he went to Emory University for a postdoc modeling immune system dynamics with Rustom Antia in collaboration with Rafi Ahmed. In 2015, he started his own group in the Biology Department at the University of Maryland where he merged his interests to study the evolutionary genetics of adaptive immune systems. | 2021-07-26 15:00:00 | Online | Cancer | Online | CDSL | 0 | Shared T Cell Receptors and Somatic Selection | |||
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Description
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach, and will cover the ...Read More
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach, and will cover the concepts of hypothesis testing, confidence intervals, Type I and Type II errors, statistical power, and p-values. Technical details will be kept to an absolute minimum.
Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 2 of this class series.
Register
DetailsOrganizerNIH Training LibraryWhenTue, Jul 27, 2021 - 10:00 am - 11:30 amWhereOnline |
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach, and will cover the concepts of hypothesis testing, confidence intervals, Type I and Type II errors, statistical power, and p-values. Technical details will be kept to an absolute minimum. Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 2 of this class series. Register | 2021-07-27 10:00:00 | Online | Statistics | Online | NIH Training Library | 0 | STATISTICAL INFERENCE FOR NON-STATISTICIANS: PART 1 | |||
420 |
Description
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach, and will cover the ...Read More
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach, and will cover the concepts of Bayes’ Theorem, prior and posterior distributions, and Bayes factor. Technical details will be kept to an absolute minimum.
Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 1 of this class series.
Register
DetailsOrganizerNIH Training LibraryWhenWed, Jul 28, 2021 - 10:00 am - 11:30 amWhereOnline |
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach, and will cover the concepts of Bayes’ Theorem, prior and posterior distributions, and Bayes factor. Technical details will be kept to an absolute minimum. Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 1 of this class series. Register | 2021-07-28 10:00:00 | Online | Statistics | Online | NIH Training Library | 0 | STATISTICAL INFERENCE FOR NON-STATISTICIANS: PART 2 | |||
433 |
Description
Register/Join
During this month's NCI Cancer Research Data Commons (CRDC) Cancer Genomics Cloud (CGC) webinar series, two Georgetown University staff members about leveraging the CGC in their data science courses and curriculum.
Building from their experience as trainers in the fields of bioinformatics and computational biology, Dr. Yuriy Gusev and Ms. Krithika Bhuvaneshwar will cover:
Register/Join
During this month's NCI Cancer Research Data Commons (CRDC) Cancer Genomics Cloud (CGC) webinar series, two Georgetown University staff members about leveraging the CGC in their data science courses and curriculum.
Building from their experience as trainers in the fields of bioinformatics and computational biology, Dr. Yuriy Gusev and Ms. Krithika Bhuvaneshwar will cover:
DetailsOrganizerCBIITWhenWed, Jul 28, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Register/Join During this month's NCI Cancer Research Data Commons (CRDC) Cancer Genomics Cloud (CGC) webinar series, two Georgetown University staff members about leveraging the CGC in their data science courses and curriculum. Building from their experience as trainers in the fields of bioinformatics and computational biology, Dr. Yuriy Gusev and Ms. Krithika Bhuvaneshwar will cover: approach and methodology for establishing their online data science course “Demystifying Big Biomedical Data: A User’s guide.” examples of graduate-level courses that leverage the CGC as a teaching platform in the Masters in Health Informatics and Data Science program at Georgetown University. As one of the three Cloud Resources within the NCI CRDC, the CGC provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large-scale analysis on the cloud. Presenters: Yuriy Gusev, Ph.D. Dr. Yuriy Gusev is an associate professor of bioinformatics and a bioinformatics Lead at the Georgetown University Innovation Center for Biomedical Informatics. Dr. Gusev is the director of the graduate program for a Masters in Health Informatics and Data Science and co-director of the informatics shared resource for the Lombardi Comprehensive Cancer Center at Georgetown University. He has over 20 years of experience in teaching and training in bioinformatics and computational biology at several academic centers in the U.S. He has developed several new curricula for graduate and undergraduate programs at Georgetown. He has also developed a successful massive open online course on EdX titled, “Demystifying Big Biomedical Data: A User’s Guide,” which attracted over 8,000 students from around the world. Krithika Bhuvaneshwar Ms. Krithika Bhuvaneshwar is a research instructor faculty and curriculum coordinator for the Masters in Health Informatics and Data Science program and is also a Senior Bioinformatician at the Innovation Center for Biomedical Informatics, Georgetown University. She has helped organize training workshops in Elsevier Pathway Studio, Globus Genomics, systems biology, immuno-oncology, and — most recently — imaging informatics for faculty and staff at Georgetown University Medical Center. | 2021-07-28 14:00:00 | Online | Cloud | Online | CBIIT | 0 | Utilizing the Seven Bridges Platform for Training of a New Generation of Health Data Scientists | |||
992 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Jul 29, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-07-29 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
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Description
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research.
Register
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research.
Register
DetailsOrganizerNIH Training LibraryWhenWed, Aug 04, 2021 - 1:00 pm - 2:00 pmWhereOnline |
This class introduces mutation types and how to identify the mutations from DNA sequences. Additionally, it describes resources to access information about the impact of variants on proteins associated with drug response guidelines. This class will help participants determine how to find solutions in the selection of variants, especially in clinical research. Register | 2021-08-04 13:00:00 | Online | Variant Analysis | Online | NIH Training Library | 0 | VARIANT SELECTION IN GENOMIC DNA SEQUENCES | |||
439 |
Description
Registration is required to join this event. If you have not registered, please do so now.
The QIIME platform, including QIIME 1 and QIIME 2, has been extensively applied in microbiome research, repeatedly making analyses that were challenging or impossible into routine tasks. While QIIME began as a marker gene (e.g., 16S, ITS, ...) analysis platform, microbiome research is transitioning toward multi-omics. With funding from NCI’s Informatics Technology for Cancer Research program, QIIME 2 is ...Read More
Registration is required to join this event. If you have not registered, please do so now.
The QIIME platform, including QIIME 1 and QIIME 2, has been extensively applied in microbiome research, repeatedly making analyses that were challenging or impossible into routine tasks. While QIIME began as a marker gene (e.g., 16S, ITS, ...) analysis platform, microbiome research is transitioning toward multi-omics. With funding from NCI’s Informatics Technology for Cancer Research program, QIIME 2 is transitioning to become a microbiome multi-omics analysis platform. In this talk I will introduce QIIME 2, including our current work on expanding beyond marker gene analysis. I will also discuss QIIME 2’s retrospective data provenance tracking system, and how it can help you to get help with your bioinformatics analyses and ensure that your work is reproducible. I will describe the ways that QIIME 2 can be used, including through the Galaxy graphical user interface, a command line interface, or a Python 3 API. Full support for using QIIME 2 through these different interface types ensures that using QIIME 2 will be accessible and convenient for you, regardless of your computational background. Finally, I’ll present on QIIME 2’s extensive educational and technical support resources so you can start learning QIIME 2 as quickly as possible.
Speaker: Greg Caporaso, Ph.D., Associate
Professor, Northern Arizona University
DetailsOrganizerCBIITWhenWed, Aug 04, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Registration is required to join this event. If you have not registered, please do so now. The QIIME platform, including QIIME 1 and QIIME 2, has been extensively applied in microbiome research, repeatedly making analyses that were challenging or impossible into routine tasks. While QIIME began as a marker gene (e.g., 16S, ITS, ...) analysis platform, microbiome research is transitioning toward multi-omics. With funding from NCI’s Informatics Technology for Cancer Research program, QIIME 2 is transitioning to become a microbiome multi-omics analysis platform. In this talk I will introduce QIIME 2, including our current work on expanding beyond marker gene analysis. I will also discuss QIIME 2’s retrospective data provenance tracking system, and how it can help you to get help with your bioinformatics analyses and ensure that your work is reproducible. I will describe the ways that QIIME 2 can be used, including through the Galaxy graphical user interface, a command line interface, or a Python 3 API. Full support for using QIIME 2 through these different interface types ensures that using QIIME 2 will be accessible and convenient for you, regardless of your computational background. Finally, I’ll present on QIIME 2’s extensive educational and technical support resources so you can start learning QIIME 2 as quickly as possible. Speaker: Greg Caporaso, Ph.D., Associate Professor, Northern Arizona University | 2021-08-04 15:00:00 | Online | Microbiome | Online | CBIIT | 0 | Cancer Microbiome Multi-Omics Bioinformatics with QIIME 2 | |||
428 |
Description
Understanding the biology in transcription factor binding site data requires a comprehensive and integrated approach and must be supplemented with highly-curated data content from multiple sources. Genomatix is a computational biology company with a 22-year history of developing tools and data content for understanding the molecular mechanisms of eukaryotic gene expression. This two-day class will provide an easy-to-use bioinformatics software platform for the detailed analysis of promoters and transcription factor binding sites.
This two-day lecture ...Read More
Understanding the biology in transcription factor binding site data requires a comprehensive and integrated approach and must be supplemented with highly-curated data content from multiple sources. Genomatix is a computational biology company with a 22-year history of developing tools and data content for understanding the molecular mechanisms of eukaryotic gene expression. This two-day class will provide an easy-to-use bioinformatics software platform for the detailed analysis of promoters and transcription factor binding sites.
This two-day lecture and training workshop will introduce students to the rich applications for transcription factor binding site (TFBS) analysis using the Genomatix platform. This course is broken down into a morning and an afternoon session. NOTE: Registration and attendance for the day one session is required to attend the day two session.
The day one session will focus on promoter annotation, basic transcription factor binding site analysis, and comparative genomics. Covered topics: promoter annotation and alternative promoters; using tissue activity data to select promoters (programs: ElDorado, Gene2Promoter); TFBS analysis with additional lines of evidence (MatInspector, MatBase); promoter orthologs and analysis of conserved TFBSs (Common TFs, DiAlignTF).
The day two session will focus on regulatory cassettes and genome-wide analysis of ChIP-Seq data. Covered topics: analysis of conserved gene regulatory cassettes (FrameWorker, ModelInspector); TFBS and TFBS pattern overrepresentation in ChIP-Seq peaks (Overrepresented TFs); gene neighbor and promoter overlap annotation of ChIP-Seq peaks (Annotation & Statistics).
Register
DetailsOrganizerNIH Training LibraryWhenThu, Aug 05, 2021 - 9:30 am - 12:30 pmWhereOnline |
Understanding the biology in transcription factor binding site data requires a comprehensive and integrated approach and must be supplemented with highly-curated data content from multiple sources. Genomatix is a computational biology company with a 22-year history of developing tools and data content for understanding the molecular mechanisms of eukaryotic gene expression. This two-day class will provide an easy-to-use bioinformatics software platform for the detailed analysis of promoters and transcription factor binding sites. This two-day lecture and training workshop will introduce students to the rich applications for transcription factor binding site (TFBS) analysis using the Genomatix platform. This course is broken down into a morning and an afternoon session. NOTE: Registration and attendance for the day one session is required to attend the day two session. The day one session will focus on promoter annotation, basic transcription factor binding site analysis, and comparative genomics. Covered topics: promoter annotation and alternative promoters; using tissue activity data to select promoters (programs: ElDorado, Gene2Promoter); TFBS analysis with additional lines of evidence (MatInspector, MatBase); promoter orthologs and analysis of conserved TFBSs (Common TFs, DiAlignTF). The day two session will focus on regulatory cassettes and genome-wide analysis of ChIP-Seq data. Covered topics: analysis of conserved gene regulatory cassettes (FrameWorker, ModelInspector); TFBS and TFBS pattern overrepresentation in ChIP-Seq peaks (Overrepresented TFs); gene neighbor and promoter overlap annotation of ChIP-Seq peaks (Annotation & Statistics). Register | 2021-08-05 09:30:00 | Online | Genomics | Online | NIH Training Library | 0 | TWO-DAY PROMOTER ANALYSIS WITH GENOMATIX SOFTWARE | |||
993 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Aug 05, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-08-05 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
356 |
Description
Register Now
Faculty: Evan Newell, PhD – Fred Hutchinson Cancer Institute
Moderator: Carsten Krieg, PhD – Medical University of South Carolina
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior ...Read More
Register Now
Faculty: Evan Newell, PhD – Fred Hutchinson Cancer Institute
Moderator: Carsten Krieg, PhD – Medical University of South Carolina
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series.
Learning Objectives
A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research.
Series Organizers
Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Big Data and Data Sharing Committee, Chair
Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Co-Chair
Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Immediate Past Chair
Carsten Krieg, PhD – Medical University of South Carolina
Big Data and Data Sharing Committee, Member
DetailsOrganizerNCI and the Society for Immunotherapy of Cancer (SITC)WhenTue, Aug 10, 2021 - 3:30 pm - 4:30 pmWhereOnline |
Register Now Faculty: Evan Newell, PhD – Fred Hutchinson Cancer Institute Moderator: Carsten Krieg, PhD – Medical University of South Carolina Target Audience This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series. Learning Objectives A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research. Series Organizers Kellie N. Smith, PhD – Johns Hopkins School of Medicine Big Data and Data Sharing Committee, Chair Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Co-Chair Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Immediate Past Chair Carsten Krieg, PhD – Medical University of South Carolina Big Data and Data Sharing Committee, Member | 2021-08-10 15:30:00 | Online | Cancer,Data Science,Flow Cytometry | Online | NCI and the Society for Immunotherapy of Cancer (SITC) | 0 | HIGH-DIMENSIONAL MASS/FLOW CYTOMETRY | |||
440 |
Description
Registration is required to join this event. If you have not registered, please do so now.
Efforts are underway to characterize cancer cell lines and identify their genetic and pharmacological vulnerabilities, but integration is essential for their interpretation. To empower researchers, irrespective of their computational background, to utilize the growing knowledge from these hundreds of cancer model systems, we harmonized and integrated datasets into the DepMap portal (depmap.org) to make it easy ...Read More
Registration is required to join this event. If you have not registered, please do so now.
Efforts are underway to characterize cancer cell lines and identify their genetic and pharmacological vulnerabilities, but integration is essential for their interpretation. To empower researchers, irrespective of their computational background, to utilize the growing knowledge from these hundreds of cancer model systems, we harmonized and integrated datasets into the DepMap portal (depmap.org) to make it easy and possible to explore and analyze the data across modalities. This talk will introduce the Cancer Dependency Map project, and how these data can be explored in the DepMap portal to better understand cancer biology and support the development of targeted therapies.
DepMap is a cancer dependency map created by the Broad Institute of MIT and Harvard. It is designed to assist researchers in identifying genetic and pharmacologic vulnerabilities in cancer cell lines. This presentation will introduce attendees to the DepMap project, and show how to use the DepMap Portal to explore and analyze a collection of open-access data sets.
Speaker: Philip Montgomery, Senior Principal
Software Engineer, Broad Institute
DetailsOrganizerCBIITWhenWed, Aug 11, 2021 - 10:00 am - 11:00 amWhereOnline |
Registration is required to join this event. If you have not registered, please do so now. Efforts are underway to characterize cancer cell lines and identify their genetic and pharmacological vulnerabilities, but integration is essential for their interpretation. To empower researchers, irrespective of their computational background, to utilize the growing knowledge from these hundreds of cancer model systems, we harmonized and integrated datasets into the DepMap portal (depmap.org) to make it easy and possible to explore and analyze the data across modalities. This talk will introduce the Cancer Dependency Map project, and how these data can be explored in the DepMap portal to better understand cancer biology and support the development of targeted therapies. DepMap is a cancer dependency map created by the Broad Institute of MIT and Harvard. It is designed to assist researchers in identifying genetic and pharmacologic vulnerabilities in cancer cell lines. This presentation will introduce attendees to the DepMap project, and show how to use the DepMap Portal to explore and analyze a collection of open-access data sets. Speaker: Philip Montgomery, Senior Principal Software Engineer, Broad Institute | 2021-08-11 10:00:00 | Online | Data Resources | Online | CBIIT | 0 | An introduction to the DepMap portal | |||
442 |
Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
No appointments are necessary, and all problems are welcome. The first hour is usually the busiest, so feel free to join later for a likely shorter wait.
DetailsOrganizerHPC BiowulfWhenWed, Aug 11, 2021 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. No appointments are necessary, and all problems are welcome. The first hour is usually the busiest, so feel free to join later for a likely shorter wait. | 2021-08-11 13:00:00 | Online | Online | HPC Biowulf | 0 | Next edition of the NIH HPC monthly Zoom-In Consults | ||||
994 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Aug 12, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-08-12 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
427 |
Description
This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow and preparing participants to independently run basic ChIP-seq analysis for peak calling using a "point and click" approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP-seq data. Participants will have a chance to: run quality control on ChIP-seq data; map raw reads to a reference genome; generate alignment statistics and ...Read More
This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow and preparing participants to independently run basic ChIP-seq analysis for peak calling using a "point and click" approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP-seq data. Participants will have a chance to: run quality control on ChIP-seq data; map raw reads to a reference genome; generate alignment statistics and check mapping quality; call peaks using MACS; annotate peaks; visualize the enriched regions.
Register
DetailsOrganizerNIH Training LibraryWhenMon, Aug 16, 2021 - 11:00 am - 2:00 pmWhereOnline |
This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow and preparing participants to independently run basic ChIP-seq analysis for peak calling using a "point and click" approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP-seq data. Participants will have a chance to: run quality control on ChIP-seq data; map raw reads to a reference genome; generate alignment statistics and check mapping quality; call peaks using MACS; annotate peaks; visualize the enriched regions. Register | 2021-08-16 11:00:00 | Online | Genomics | Online | NIH Training Library | 0 | CHIP SEQUENCING DATA ANALYSIS | |||
429 |
Description
Participants will learn how to develop artificial intelligence (AI) applications focused on biomedical imaging datasets. The course will cover the entire AI pipeline from image exploration and labeling to development and deployment of predictive models on images using both machine learning and deep learning approaches. This includes annotating and exploring image datasets, exploring techniques for developing machine and deep learning models, optimizing the parameters of the deep networks, and automatically generating code for edge deployment ...Read More
Participants will learn how to develop artificial intelligence (AI) applications focused on biomedical imaging datasets. The course will cover the entire AI pipeline from image exploration and labeling to development and deployment of predictive models on images using both machine learning and deep learning approaches. This includes annotating and exploring image datasets, exploring techniques for developing machine and deep learning models, optimizing the parameters of the deep networks, and automatically generating code for edge deployment of AI models.
This is an introductory level class. No installation of MATLAB is necessary.
Register
DetailsOrganizerNIH Training LibraryWhenTue, Aug 17, 2021 - 1:00 pm - 4:15 pmWhereOnline |
Participants will learn how to develop artificial intelligence (AI) applications focused on biomedical imaging datasets. The course will cover the entire AI pipeline from image exploration and labeling to development and deployment of predictive models on images using both machine learning and deep learning approaches. This includes annotating and exploring image datasets, exploring techniques for developing machine and deep learning models, optimizing the parameters of the deep networks, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. Register | 2021-08-17 13:00:00 | Online | Artificial Intelligence / Machine Learning,Data Science | Online | NIH Training Library | 0 | DATA SCIENCE AND ARTIFICIAL INTELLIGENCE: MEDICAL IMAGING DATASETS USING MATLAB | |||
995 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Aug 19, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-08-19 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
441 |
Description
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #3 will focus on Autoencoder networks, hyperparameter optimization and their application to reduction of dimensionality of cancer transcriptome.
Expected knowledge: Basic Python, Basic Linux/Unix.
This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. ...Read More
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #3 will focus on Autoencoder networks, hyperparameter optimization and their application to reduction of dimensionality of cancer transcriptome.
Expected knowledge: Basic Python, Basic Linux/Unix.
This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class.
Instructor: Gennady Denisov (NIH HPC staff)
The class is free but registration is required.
DetailsOrganizerHPC BiowulfWhenWed, Aug 25, 2021 - 9:30 am - 12:00 pmWhereOnline |
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #3 will focus on Autoencoder networks, hyperparameter optimization and their application to reduction of dimensionality of cancer transcriptome. Expected knowledge: Basic Python, Basic Linux/Unix. This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class. Instructor: Gennady Denisov (NIH HPC staff) The class is free but registration is required. | 2021-08-25 09:30:00 | Online | Artificial Intelligence / Machine Learning | Online | HPC Biowulf | 0 | Deep Learning by Example on Biowulf - Class #3 | |||
996 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Aug 26, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-08-26 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
436 |
Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also ...Read More
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics.
Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects.
DetailsOrganizerNIH Training LibraryWhenWed, Sep 01, 2021 - 10:00 am - 3:00 pmWhereOnline |
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics. Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects. | 2021-09-01 10:00:00 | Online | Pathway Analysis | Online | NIH Training Library | 0 | INGENUITY PATHWAY ANALYSIS (IPA) | |||
998 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Sep 02, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-09-02 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
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Description
Register Now
Faculty: Bing Zhang, PhD – BCM, NCI CPTAC
Moderator: Carsten Krieg, PhD – Medical University of South Carolina
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career ...Read More
Register Now
Faculty: Bing Zhang, PhD – BCM, NCI CPTAC
Moderator: Carsten Krieg, PhD – Medical University of South Carolina
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series.
Learning Objectives
A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research.
Series Organizers
Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Big Data and Data Sharing Committee, Chair
Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Co-Chair
Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Immediate Past Chair
Carsten Krieg, PhD – Medical University of South Carolina
Big Data and Data Sharing Committee, Member
DetailsOrganizerNCI and the Society for Immunotherapy of Cancer (SITC)WhenWed, Sep 08, 2021 - 5:00 pm - 6:00 pmWhereOnline |
Register Now Faculty: Bing Zhang, PhD – BCM, NCI CPTAC Moderator: Carsten Krieg, PhD – Medical University of South Carolina Target Audience This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series. Learning Objectives A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research. Series Organizers Kellie N. Smith, PhD – Johns Hopkins School of Medicine Big Data and Data Sharing Committee, Chair Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Co-Chair Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Immediate Past Chair Carsten Krieg, PhD – Medical University of South Carolina Big Data and Data Sharing Committee, Member | 2021-09-08 17:00:00 | Online | Cancer,Data Science | Online | NCI and the Society for Immunotherapy of Cancer (SITC) | 0 | IMMUNOPEPTIDOMICS | |||
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Description
Save the date, and plan to join us on September 9, 9:30 a.m.–3:00 p.m. for a free virtual Bioinformatics and Computational Biology Symposium presented by the NIH Library Bioinformatics Support Program. This one-day symposium will feature keynote lectures, presentations on bioinformatics techniques, and research talks from authors of bioinformatics proceedings.
The morning sessions will focus on epigenomics, protein structures, and proteomics. The afternoon topics ...Read More
Save the date, and plan to join us on September 9, 9:30 a.m.–3:00 p.m. for a free virtual Bioinformatics and Computational Biology Symposium presented by the NIH Library Bioinformatics Support Program. This one-day symposium will feature keynote lectures, presentations on bioinformatics techniques, and research talks from authors of bioinformatics proceedings.
The morning sessions will focus on epigenomics, protein structures, and proteomics. The afternoon topics will feature genomics and single cell sequencing. We hope this event will be inspiring for your research and computational studies.
More information about the event and registration will be forthcoming.
For questions, contact Li Jia, li.jia2@nih.gov.
DetailsOrganizerNIH Training LibraryWhenThu, Sep 09, 2021 - 9:30 am - 3:00 pmWhereOnline |
Save the date, and plan to join us on September 9, 9:30 a.m.–3:00 p.m. for a free virtual Bioinformatics and Computational Biology Symposium presented by the NIH Library Bioinformatics Support Program. This one-day symposium will feature keynote lectures, presentations on bioinformatics techniques, and research talks from authors of bioinformatics proceedings. The morning sessions will focus on epigenomics, protein structures, and proteomics. The afternoon topics will feature genomics and single cell sequencing. We hope this event will be inspiring for your research and computational studies. More information about the event and registration will be forthcoming. For questions, contact Li Jia, li.jia2@nih.gov. | 2021-09-09 09:30:00 | Online | Omics | Online | NIH Training Library | 0 | Bioinformatics and Computational Biology Symposium 2021 | |||
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Description
The National Institutes of Health (NIH) Office of Data Science Strategy hosts a seminar series to highlight exemplars of data sharing and reuse on the second Friday of each month at noon ET. The monthly series highlights researchers who have taken existing data and found clever ways to reuse the data or generate new findings. A different NIH institute or center (IC) will also share its data science activities each month.
Presenter:
Purvesh ...Read More
The National Institutes of Health (NIH) Office of Data Science Strategy hosts a seminar series to highlight exemplars of data sharing and reuse on the second Friday of each month at noon ET. The monthly series highlights researchers who have taken existing data and found clever ways to reuse the data or generate new findings. A different NIH institute or center (IC) will also share its data science activities each month.
Presenter:
Purvesh Khatri, Ph.D., will present “Adventures of a Data Parasite: Accelerating Clinical Translation Using Heterogeneity in Public Data” at the monthly Data Sharing and Reuse Seminar on Sept. 10 at 12 EDT. Khatri is an associate professor at the Institute for Immunity, Transplantation and Infection and in the Division of Biomedical Informatics Research, Department of Medicine, Stanford University.
This talk will focus on how biological, clinical, and technical heterogeneity across publicly available independent datasets can lead to identification of disease signatures that are diagnostic, prognostic, therapeutic, and mechanistic across a broad spectrum of diseases including infections, autoimmune diseases, cancer, organ transplant, and vaccination. Khatri will also discuss how biological and technical heterogeneity in publicly available data can be leveraged to make translational medicine better, faster, cheaper, and more generalizable.
The seminar is open to the public and registration is required each month. Individuals who need interpreting services and/or other reasonable accommodations to participate in this event should contact Erin Walker(link sends e-mail) at 301-827-9655 or the Federal Relay Service at 800-877-8339. Requests should be made at least three days in advance of the event. A recording will be available on this page after each event.
DetailsWhenFri, Sep 10, 2021 - 12:00 pm - 1:00 pmWhereOnline |
The National Institutes of Health (NIH) Office of Data Science Strategy hosts a seminar series to highlight exemplars of data sharing and reuse on the second Friday of each month at noon ET. The monthly series highlights researchers who have taken existing data and found clever ways to reuse the data or generate new findings. A different NIH institute or center (IC) will also share its data science activities each month. Presenter: Purvesh Khatri, Ph.D., will present “Adventures of a Data Parasite: Accelerating Clinical Translation Using Heterogeneity in Public Data” at the monthly Data Sharing and Reuse Seminar on Sept. 10 at 12 EDT. Khatri is an associate professor at the Institute for Immunity, Transplantation and Infection and in the Division of Biomedical Informatics Research, Department of Medicine, Stanford University. This talk will focus on how biological, clinical, and technical heterogeneity across publicly available independent datasets can lead to identification of disease signatures that are diagnostic, prognostic, therapeutic, and mechanistic across a broad spectrum of diseases including infections, autoimmune diseases, cancer, organ transplant, and vaccination. Khatri will also discuss how biological and technical heterogeneity in publicly available data can be leveraged to make translational medicine better, faster, cheaper, and more generalizable. The seminar is open to the public and registration is required each month. Individuals who need interpreting services and/or other reasonable accommodations to participate in this event should contact Erin Walker(link sends e-mail) at 301-827-9655 or the Federal Relay Service at 800-877-8339. Requests should be made at least three days in advance of the event. A recording will be available on this page after each event. | 2021-09-10 12:00:00 | Online | Data Science | Online | 0 | Adventures of a Data Parasite: Accelerating Clinical Translation Using Heterogeneity in Public Data | ||||
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Description
Presenter: Dr. Junjun Zhang
JOIN WEBEX MEETING
Meeting number (access code): 180 425 7227
Meeting password: 6pSMQPBS$43
Presenter: Dr. Junjun Zhang
JOIN WEBEX MEETING
Meeting number (access code): 180 425 7227
Meeting password: 6pSMQPBS$43
DetailsOrganizerNCI Containers and Workflows Interest GroupWhenFri, Sep 10, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Presenter: Dr. Junjun Zhang JOIN WEBEX MEETING Meeting number (access code): 180 425 7227 Meeting password: 6pSMQPBS$43 | 2021-09-10 15:00:00 | Online | Bioinformatics Software | Online | NCI Containers and Workflows Interest Group | 0 | WFPM: a novel WorkFlow Package Manager to enable collaborative bioinformatics workflow development | |||
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Description
OpenCRAVAT is an open source variant annotation and decision support software to support cancer variant and gene prioritization. It offers both command line functionality and a dynamic biologist-friendly GUI, allowing users to install with a single command, easily download tools from an extensive app store, create custom pipelines and explore results in a richly detailed viewing environment. OpenCRAVAT is distinguished from similar tools by the amount and diversity of data resources and computational prediction methods ...Read More
OpenCRAVAT is an open source variant annotation and decision support software to support cancer variant and gene prioritization. It offers both command line functionality and a dynamic biologist-friendly GUI, allowing users to install with a single command, easily download tools from an extensive app store, create custom pipelines and explore results in a richly detailed viewing environment. OpenCRAVAT is distinguished from similar tools by the amount and diversity of data resources and computational prediction methods available, which span germline, somatic, common, rare, coding and non-coding variants. The open and modular OpenCRAVAT software and app store are designed to increase contributions from developers and researchers, and we are growing monthly to meet diverse research needs.
Presenter: Kymberleigh Pagel, Ph.D. Assistant Research Scientist Institute for Computational Medicine Johns Hopkins University
DetailsOrganizerCBIITWhenTue, Sep 14, 2021 - 10:00 am - 11:00 amWhereOnline |
OpenCRAVAT is an open source variant annotation and decision support software to support cancer variant and gene prioritization. It offers both command line functionality and a dynamic biologist-friendly GUI, allowing users to install with a single command, easily download tools from an extensive app store, create custom pipelines and explore results in a richly detailed viewing environment. OpenCRAVAT is distinguished from similar tools by the amount and diversity of data resources and computational prediction methods available, which span germline, somatic, common, rare, coding and non-coding variants. The open and modular OpenCRAVAT software and app store are designed to increase contributions from developers and researchers, and we are growing monthly to meet diverse research needs. Presenter: Kymberleigh Pagel, Ph.D. Assistant Research Scientist Institute for Computational Medicine Johns Hopkins University | 2021-09-14 10:00:00 | Online | Variant Analysis,Bioinformatics Software | Online | CBIIT | 0 | OpenCRAVAT: A tool with robust data resources and computational prediction methods | |||
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Description
The workshop focuses on using the Atom Modeling PipeLine (AMPL), an open-source conda-based software that automates key drug discovery steps. AMPL is designed to take molecular binding data (IC50, ki) and carry out the ML steps with minimal user intervention. The workshop will demonstrate data ingestion, cleaning and curation on AMPL.
This 90-minute workshop will use Google COLAB notebooks.
1. Notebook 1: Ingestion, Cleaning and Exploratory Data Analysis of Binding Assay Data
2. Notebook 2: Standardization of SMILES, Featurization ...Read More
The workshop focuses on using the Atom Modeling PipeLine (AMPL), an open-source conda-based software that automates key drug discovery steps. AMPL is designed to take molecular binding data (IC50, ki) and carry out the ML steps with minimal user intervention. The workshop will demonstrate data ingestion, cleaning and curation on AMPL.
This 90-minute workshop will use Google COLAB notebooks.
1. Notebook 1: Ingestion, Cleaning and Exploratory Data Analysis of Binding Assay Data
2. Notebook 2: Standardization of SMILES, Featurization and Compound Overlap Diversity
3. Notebook 3: Curate and Merge Datasets to Create the Final ML-ready Dataset
Instructor: Sarangan Ravichandran, Ph.D., PMP, Senior Data Scientist, Frederick National Lab for Cancer Research
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, Sep 14, 2021 - 2:00 pm - 3:30 pmWhereIn-Person |
The workshop focuses on using the Atom Modeling PipeLine (AMPL), an open-source conda-based software that automates key drug discovery steps. AMPL is designed to take molecular binding data (IC50, ki) and carry out the ML steps with minimal user intervention. The workshop will demonstrate data ingestion, cleaning and curation on AMPL. This 90-minute workshop will use Google COLAB notebooks. 1. Notebook 1: Ingestion, Cleaning and Exploratory Data Analysis of Binding Assay Data 2. Notebook 2: Standardization of SMILES, Featurization and Compound Overlap Diversity 3. Notebook 3: Curate and Merge Datasets to Create the Final ML-ready Dataset Instructor: Sarangan Ravichandran, Ph.D., PMP, Senior Data Scientist, Frederick National Lab for Cancer Research | 2021-09-14 14:00:00 | Artificial Intelligence / Machine Learning | In-Person | NCI Data Science Learning Exchange | 0 | ATOM Modeling Pipeline (AMPL) for Drug Discovery, a Hands-on Machine Learning Tutorial | ||||
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Description
In 2001, Celera Genomics and the International Human Genome Sequencing Consortium published their initial drafts of the human genome, which revolutionized the field of genomics. While these drafts and the updates that followed effectively covered the euchromatic fraction of the genome, the heterochromatin and many other complex regions were left unfinished or erroneous. Addressing this remaining 8% of the genome, the Telomere-to-Telomere (T2T) Consortium has finished the first truly complete 3.055 billion base pair (bp) sequence of ...Read More
In 2001, Celera Genomics and the International Human Genome Sequencing Consortium published their initial drafts of the human genome, which revolutionized the field of genomics. While these drafts and the updates that followed effectively covered the euchromatic fraction of the genome, the heterochromatin and many other complex regions were left unfinished or erroneous. Addressing this remaining 8% of the genome, the Telomere-to-Telomere (T2T) Consortium has finished the first truly complete 3.055 billion base pair (bp) sequence of a human genome, representing the largest improvement to the human reference genome since its initial release. I will discuss how we were able to achieve this important genomics milestone and what has been revealed by the first complete assembly of a human genome.
Meeting Link
RegisterOrganizerBTEPWhenThu, Sep 16, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In 2001, Celera Genomics and the International Human Genome Sequencing Consortium published their initial drafts of the human genome, which revolutionized the field of genomics. While these drafts and the updates that followed effectively covered the euchromatic fraction of the genome, the heterochromatin and many other complex regions were left unfinished or erroneous. Addressing this remaining 8% of the genome, the Telomere-to-Telomere (T2T) Consortium has finished the first truly complete 3.055 billion base pair (bp) sequence of a human genome, representing the largest improvement to the human reference genome since its initial release. I will discuss how we were able to achieve this important genomics milestone and what has been revealed by the first complete assembly of a human genome. Meeting Link | 2021-09-16 13:00:00 | Online Webinar | Online | Adam Phillippy (NHGRI) | BTEP | 0 | Discoveries from the First Truly Complete Sequence of a Human Genome | |||
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Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Sep 16, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-09-16 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
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Description
As a continuation of the NHGRI seminar series focused on the “Bold Predictions for Human Genomics by 2030,” please join us for the seventh seminar in the series on Thursday, September 16 from 3:00 – 4:30 pm ET. This seminar will focus on Bold Prediction #7: The clinical relevance of all encountered genomic variants will be readily predictable, rendering the diagnostic designation “variant of uncertain significance (VUS)” obsolete. Dr. Heidi Rehm of the Broad Institute, Harvard Medical School & ...Read More
As a continuation of the NHGRI seminar series focused on the “Bold Predictions for Human Genomics by 2030,” please join us for the seventh seminar in the series on Thursday, September 16 from 3:00 – 4:30 pm ET. This seminar will focus on Bold Prediction #7: The clinical relevance of all encountered genomic variants will be readily predictable, rendering the diagnostic designation “variant of uncertain significance (VUS)” obsolete. Dr. Heidi Rehm of the Broad Institute, Harvard Medical School & Massachusetts General Hospital and Dr. Doug Fowler of University of Washington will use this prediction as an aspirational theme for their talks, highlighting their own work in the context of that theme and speculating about the next decade in their areas. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV.
DetailsOrganizerNHGRIWhenThu, Sep 16, 2021 - 3:00 pm - 4:30 pmWhereOnline |
As a continuation of the NHGRI seminar series focused on the “Bold Predictions for Human Genomics by 2030,” please join us for the seventh seminar in the series on Thursday, September 16 from 3:00 – 4:30 pm ET. This seminar will focus on Bold Prediction #7: The clinical relevance of all encountered genomic variants will be readily predictable, rendering the diagnostic designation “variant of uncertain significance (VUS)” obsolete. Dr. Heidi Rehm of the Broad Institute, Harvard Medical School & Massachusetts General Hospital and Dr. Doug Fowler of University of Washington will use this prediction as an aspirational theme for their talks, highlighting their own work in the context of that theme and speculating about the next decade in their areas. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV. | 2021-09-16 15:00:00 | Online | Genomics | Online | NHGRI | 0 | Bold Predictions for Human Genomics by 2030 | |||
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Description
At the Conference on Machine Intelligence in Medical Imaging, NCI Imaging Data Commons (IDC) lead, Dr. Keyvan Farahani, will present NCl's cancer data science resources that support the imaging informatics community. As the luminary presentation of the Infrastructure & Standards session, Dr. Farahani will cover a variety of NCl's data harmonization, aggregation, and compute resources including, the:
At the Conference on Machine Intelligence in Medical Imaging, NCI Imaging Data Commons (IDC) lead, Dr. Keyvan Farahani, will present NCl's cancer data science resources that support the imaging informatics community. As the luminary presentation of the Infrastructure & Standards session, Dr. Farahani will cover a variety of NCl's data harmonization, aggregation, and compute resources including, the:
DetailsOrganizerCBIITWhenSun, Sep 19, 2021 - 2:15 pm - 3:45 pmWhereOnline |
At the Conference on Machine Intelligence in Medical Imaging, NCI Imaging Data Commons (IDC) lead, Dr. Keyvan Farahani, will present NCl's cancer data science resources that support the imaging informatics community. As the luminary presentation of the Infrastructure & Standards session, Dr. Farahani will cover a variety of NCl's data harmonization, aggregation, and compute resources including, the: NCI Cancer Research Data Commons, of which IDC is the imaging-specific data repository and resource, Data Catalog Enterprise Vocabulary Services. Cancer Data Standards Registry and Repository. Those attending this session will also hear specific case studies from investigators using the NCl's medical imaging data repositories like the IDC and The Cancer Imaging Archive (TCIA) to build research pipelines, deep learning, and artificial intelligence models. Presenter: Keyvan Farahani, Ph.D. Dr. Kevyan Farahani, the lead of the NCI Imaging Data Commons, will present NCl's cancer data science resources that support the imaging informatics community at the Conference on Machine Intelligence in Medical Imaging. | 2021-09-19 14:15:00 | Online | Cancer,Data Science | Online | CBIIT | 0 | Cancer Research Data Commons and Other NCI Infrastructures in Support of Data Science | |||
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Description
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of RStudio, including how to import data, create scripts, and run code. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data ...Read More
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of RStudio, including how to import data, create scripts, and run code. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; create a script in R and run code from a script and from the console; define the following terms as they relate to R: object, assign, call, function, and arguments; assign values to objects in R; learn about R objects; describe the major R data types; understand how to create and work with R vectors; describe the steps for importing data into R.
Students are encouraged to install R(link is external) and RStudio(link is external) before the class so that they can follow along with the instructor. Attendees will need to download the data before the class. Please bring your laptop with R and RStudio installed.
DetailsOrganizerNIH Training LibraryWhenWed, Sep 22, 2021 - 10:00 am - 11:15 amWhereOnline |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of RStudio, including how to import data, create scripts, and run code. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; create a script in R and run code from a script and from the console; define the following terms as they relate to R: object, assign, call, function, and arguments; assign values to objects in R; learn about R objects; describe the major R data types; understand how to create and work with R vectors; describe the steps for importing data into R. Students are encouraged to install R(link is external) and RStudio(link is external) before the class so that they can follow along with the instructor. Attendees will need to download the data before the class. Please bring your laptop with R and RStudio installed. | 2021-09-22 10:00:00 | Online | Programming | Online | NIH Training Library | 0 | INTRODUCTION TO R AND RSTUDIO | |||
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Description
Registration is required.
During this upcoming webinar, Dr. Yanjun Qi will demonstrate AttentiveChrome, an attention-based deep learning approach that uses a unified architecture to model and interpret interactions and dependencies among the chromatin factors underlying gene regulation.
The past decade has seen a deluge of genomic technologies resulting in a flood of new genome-wide profiling tools. To understand gene expression and regulation, most of today’s studies have relied on information from DNA ...Read More
Registration is required.
During this upcoming webinar, Dr. Yanjun Qi will demonstrate AttentiveChrome, an attention-based deep learning approach that uses a unified architecture to model and interpret interactions and dependencies among the chromatin factors underlying gene regulation.
The past decade has seen a deluge of genomic technologies resulting in a flood of new genome-wide profiling tools. To understand gene expression and regulation, most of today’s studies have relied on information from DNA sequencing and other chromatin (such as the proteins or histones that help organize and compress the DNA structure).
Charting the locations and intensities of modifications, known as “marks,” over the chromatin using machine learning could aid in modeling and interpreting the DNA sequencing data. However, two fundamental challenges exist: (1) genome-wide chromatin signals are spatially structured, high-dimensional, and very modular, and (2) the core aim is to understand all the relevant factors and how they work together.
Models from earlier studies have either failed to capture the complex dependencies among input signals or have relied on singular analysis to explain the decisions rather than considering the wide variety of marks that exist and influence gene regulation.
AttentiveChrome relies on a hierarchy of multiple long short-term memory (LSTM) modules to encode the input signals. It allows users to model how various chromatin marks interact and cooperate. AttentiveChrome trains two levels of attention simultaneously, allowing it to model all the relevant marks and identify important positions per individual mark. It can be used to model all 56 different cell types (tasks) in humans. Studies show this proposed architecture not only is more accurate, but its attention scores have resulted in interpretations that are proving to be more accurate than other state-of-the-art visualization methods, such as saliency maps.
Presenter:
Yanjun Qi, Ph.D.
Dr. Yanjun Qi is an associate professor at University of Virginia in the Department of Computer Science and currently serves as a Data and Technology Advancement (DATA) National Service Scholar at NIH. Dr. Qi was recognized by the National Science Foundation (NSF) and NeurIPS for her contribution to the field, receiving the CAREER Award from NSF and a Best Paper Award at a NeurIPS workshop for “Transparent and Interpretable Machine Learning.”
DetailsOrganizerCBIITWhenWed, Sep 22, 2021 - 11:00 am - 12:00 pmWhereOnline |
Registration is required. During this upcoming webinar, Dr. Yanjun Qi will demonstrate AttentiveChrome, an attention-based deep learning approach that uses a unified architecture to model and interpret interactions and dependencies among the chromatin factors underlying gene regulation. The past decade has seen a deluge of genomic technologies resulting in a flood of new genome-wide profiling tools. To understand gene expression and regulation, most of today’s studies have relied on information from DNA sequencing and other chromatin (such as the proteins or histones that help organize and compress the DNA structure). Charting the locations and intensities of modifications, known as “marks,” over the chromatin using machine learning could aid in modeling and interpreting the DNA sequencing data. However, two fundamental challenges exist: (1) genome-wide chromatin signals are spatially structured, high-dimensional, and very modular, and (2) the core aim is to understand all the relevant factors and how they work together. Models from earlier studies have either failed to capture the complex dependencies among input signals or have relied on singular analysis to explain the decisions rather than considering the wide variety of marks that exist and influence gene regulation. AttentiveChrome relies on a hierarchy of multiple long short-term memory (LSTM) modules to encode the input signals. It allows users to model how various chromatin marks interact and cooperate. AttentiveChrome trains two levels of attention simultaneously, allowing it to model all the relevant marks and identify important positions per individual mark. It can be used to model all 56 different cell types (tasks) in humans. Studies show this proposed architecture not only is more accurate, but its attention scores have resulted in interpretations that are proving to be more accurate than other state-of-the-art visualization methods, such as saliency maps. Presenter: Yanjun Qi, Ph.D. Dr. Yanjun Qi is an associate professor at University of Virginia in the Department of Computer Science and currently serves as a Data and Technology Advancement (DATA) National Service Scholar at NIH. Dr. Qi was recognized by the National Science Foundation (NSF) and NeurIPS for her contribution to the field, receiving the CAREER Award from NSF and a Best Paper Award at a NeurIPS workshop for “Transparent and Interpretable Machine Learning.” | 2021-09-22 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | AttentiveChrome: Deep-learning for Predicting Gene Expression from Histone Modifications | |||
394 |
Description
Registration: https://btep.ccr.cancer.gov/classes/ai_four/
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m5fa0e43ae167ed5ea3a77fb25d339a82
Description: In this talk, we will highlight two examples for building predictive models from ...Read More
Registration: https://btep.ccr.cancer.gov/classes/ai_four/
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m5fa0e43ae167ed5ea3a77fb25d339a82
Description: In this talk, we will highlight two examples for building predictive models from multi modal data. The first example predicts dose response in cell lines based on drug and molecular features. The second example will show to combine pathology whole slide images and molecular features for cancer diagnosis and prognosis.
Presenters: George Zaki, Bioinformatics Manager, Strategic and Data Science Initiatives (SDSI), Frederick National Laboratory for Cancer Research (FNL), Pinyi Lu, Bioinformatics analyst, SDSI, FNL
DetailsOrganizerCBIITWhenThu, Sep 23, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Registration: https://btep.ccr.cancer.gov/classes/ai_four/ Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m5fa0e43ae167ed5ea3a77fb25d339a82 Description: In this talk, we will highlight two examples for building predictive models from multi modal data. The first example predicts dose response in cell lines based on drug and molecular features. The second example will show to combine pathology whole slide images and molecular features for cancer diagnosis and prognosis. Presenters: George Zaki, Bioinformatics Manager, Strategic and Data Science Initiatives (SDSI), Frederick National Laboratory for Cancer Research (FNL), Pinyi Lu, Bioinformatics analyst, SDSI, FNL | 2021-09-23 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Building predictive models from multimodal data using machine learning | |||
982 |
Description
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m5fa0e43ae167ed5ea3a77fb25d339a82
TOPIC: AI for Multimodal Data, presented by members of the Strategic Data Science Initiative, Frederick National Laboratory for Cancer Research
In this talk, we will highlight two examples for building predictive models from multi ...Read More
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m5fa0e43ae167ed5ea3a77fb25d339a82
TOPIC: AI for Multimodal Data, presented by members of the Strategic Data Science Initiative, Frederick National Laboratory for Cancer Research
In this talk, we will highlight two examples for building predictive models from multi modal data. The first example predicts dose response in cell lines based on drug and molecular features. The second example will show how to combine pathology from whole slide images and molecular features for cancer diagnosis and prognosis.
RegisterOrganizerBTEPWhenThu, Sep 23, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m5fa0e43ae167ed5ea3a77fb25d339a82 TOPIC: AI for Multimodal Data, presented by members of the Strategic Data Science Initiative, Frederick National Laboratory for Cancer Research In this talk, we will highlight two examples for building predictive models from multi modal data. The first example predicts dose response in cell lines based on drug and molecular features. The second example will show how to combine pathology from whole slide images and molecular features for cancer diagnosis and prognosis. | 2021-09-23 13:00:00 | Online Webinar | Online | George Zaki (FNLCR),Pinyi Lu (FNLCR) | BTEP | 0 | Building Predictive Models From Multimodal Data Using Machine Learning | |||
1000 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Sep 23, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-09-23 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
443 |
Description
Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and ...Read More
Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and Long Short-Term Memories (LSTMs) for biomedical signal data, creating machine learning models for biomedical signal data, applying advanced signal pre-processing techniques for automated feature extraction, and automatically generating code for edge deployment of AI models.
This is an introductory level class. No installation of MATLAB is necessary.
DetailsOrganizerNIH Training LibraryWhenFri, Sep 24, 2021 - 1:00 pm - 5:00 pmWhereOnline |
Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and Long Short-Term Memories (LSTMs) for biomedical signal data, creating machine learning models for biomedical signal data, applying advanced signal pre-processing techniques for automated feature extraction, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. | 2021-09-24 13:00:00 | Online | Artificial Intelligence / Machine Learning,Data Science | Online | NIH Training Library | 0 | DATA SCIENCE AND ARTIFICIAL INTELLIGENCE: SIGNALS AND TIME SERIES DATASETS USING MATLAB | |||
438 |
Description
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and ...Read More
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database).
DetailsOrganizerNIH Training LibraryWhenMon, Sep 27, 2021 - 11:00 am - 2:00 pmWhereOnline |
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database). | 2021-09-27 11:00:00 | Online | Pathway Analysis | Online | NIH Training Library | 0 | PATHWAY ANALYSIS | |||
457 |
Description
The NCI Genomic Data Commons’ (GDC) September webinar will introduce cancer researchers and bioinformaticians to the GDC's single-cell RNA-Seq (scRNA-Seq) data workflow. Single cell sequencing is a powerful platform for studying tumor heterogeneity and the microenvironment.
During the webinar, GDC’s Drs. Bill Wysocki and Zhenyu Zhang will:
The NCI Genomic Data Commons’ (GDC) September webinar will introduce cancer researchers and bioinformaticians to the GDC's single-cell RNA-Seq (scRNA-Seq) data workflow. Single cell sequencing is a powerful platform for studying tumor heterogeneity and the microenvironment.
During the webinar, GDC’s Drs. Bill Wysocki and Zhenyu Zhang will:
DetailsOrganizerNCIWhenMon, Sep 27, 2021 - 2:00 pm - 3:00 pmWhereOnline |
The NCI Genomic Data Commons’ (GDC) September webinar will introduce cancer researchers and bioinformaticians to the GDC's single-cell RNA-Seq (scRNA-Seq) data workflow. Single cell sequencing is a powerful platform for studying tumor heterogeneity and the microenvironment. During the webinar, GDC’s Drs. Bill Wysocki and Zhenyu Zhang will: provide an overview of the GDC scRNA-Seq workflow and quality control. demonstrate download of scRNA-Seq data generated from GDC workflows. demonstrate (using Jupyter notebooks) how scRNA-Seq data can be analyzed using dimensionality reduction plots such as Uniform Manifold Approximation and Projection (UMAP) to: visualize relationships between cells. discover cell marker profiles and/or gene expression patterns of tumor-related genes. As a data sharing platform within the NCI Cancer Research Data Commons (CRDC), the GDC supports user-submitted data, including scRNA-Seq data, that can be harmonized and made available to the research community. For additional information on how the GDC works with other components in the CRDC, visit datacommons.cancer.gov. Speakers: Bill Wysocki, Ph.D. Dr. Wysocki is the director of User Services and Outreach for the GDC at the University of Chicago. Zhenyu Zhang, Ph.D. Dr. Zhang is the co-principal investigator of the GDC at the University of Chicago. | 2021-09-27 14:00:00 | Online | NCI Genomic Data Commons | Online | NCI | 0 | Genomic Data Commons Single Cell RNA-Seq Support | |||
463 |
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Attend this webinar to hear from Dr. Arul Chinnaiyan, molecular pathologist and physician scientist who leads a multi-disciplinary team of investigators at the Michigan Center for Translational Pathology. He and his team work to discover new disease biomarkers and therapeutic targets for cancer diagnosis and treatment using genomics, proteomics, and bioinformatics approaches. The team has also developed a clinical sequencing approach for advanced cancer patients called MIONCOSEQ, which serves as a paradigm for bringing cancer precision medicine to routine clinical care. This event is part of the Cancer Diagnosis Program Science Session Series. For more information, or if you are an individual with a disability who needs reasonable accommodations to participate in this event, please contact Aniruddha Ganguly, Ph.D., at least 5 business days before the event. | 2021-09-28 09:30:00 | Online | Cancer | Online | 0 | Exploring Precision Oncology: From Gene Fusions to Related Genetic Drivers | ||||
456 |
Description
In this webinar, participants will learn how to tell a story with their data using notebook-style live scripts and how to integrate MATLAB with Python code. Attendees will also learn how to share code and take advantage of MATLAB community tools such as File Exchange and GitHub. Finally, the participants will find out how they can host MATLAB offerings at their High-Performance Computing Centers or a Science Gateway. This session is for beginners; no software ...Read More
In this webinar, participants will learn how to tell a story with their data using notebook-style live scripts and how to integrate MATLAB with Python code. Attendees will also learn how to share code and take advantage of MATLAB community tools such as File Exchange and GitHub. Finally, the participants will find out how they can host MATLAB offerings at their High-Performance Computing Centers or a Science Gateway. This session is for beginners; no software installation required.
DetailsOrganizerNIH Training LibraryWhenTue, Sep 28, 2021 - 1:00 pm - 2:00 pmWhereOnline |
In this webinar, participants will learn how to tell a story with their data using notebook-style live scripts and how to integrate MATLAB with Python code. Attendees will also learn how to share code and take advantage of MATLAB community tools such as File Exchange and GitHub. Finally, the participants will find out how they can host MATLAB offerings at their High-Performance Computing Centers or a Science Gateway. This session is for beginners; no software installation required. | 2021-09-28 13:00:00 | Online | Data Science | Online | NIH Training Library | 0 | MATLAB FOR OPEN SCIENCE | |||
458 |
Description
This NIH-FDA sponsored workshop will bring together members of the scientific community to discuss the obstacles and opportunities associated with NGS and radiomics tool development, validation, and regulatory science. NCI presenters include NCI Director, Dr. Ned Sharpless, and CBIIT Director, Dr. Tony Kerlavage, who will be giving the keynote presentation on NCI’s Cancer Research Data Commons.
The NIH-FDA Joint Leadership Council on Next-Generation Sequencing (NGS) and Radiomics Working Group is hosting a virtual workshop ...Read More
This NIH-FDA sponsored workshop will bring together members of the scientific community to discuss the obstacles and opportunities associated with NGS and radiomics tool development, validation, and regulatory science. NCI presenters include NCI Director, Dr. Ned Sharpless, and CBIIT Director, Dr. Tony Kerlavage, who will be giving the keynote presentation on NCI’s Cancer Research Data Commons.
The NIH-FDA Joint Leadership Council on Next-Generation Sequencing (NGS) and Radiomics Working Group is hosting a virtual workshop to engage the scientific community on ways to accelerate the clinical applications of NGS and radiomics.
Namely, the group intends to address the following topics:
DetailsOrganizerNCIWhenWed, Sep 29, 2021 - 12:30 pm - 4:00 pmWhereOnline |
This NIH-FDA sponsored workshop will bring together members of the scientific community to discuss the obstacles and opportunities associated with NGS and radiomics tool development, validation, and regulatory science. NCI presenters include NCI Director, Dr. Ned Sharpless, and CBIIT Director, Dr. Tony Kerlavage, who will be giving the keynote presentation on NCI’s Cancer Research Data Commons. The NIH-FDA Joint Leadership Council on Next-Generation Sequencing (NGS) and Radiomics Working Group is hosting a virtual workshop to engage the scientific community on ways to accelerate the clinical applications of NGS and radiomics. Namely, the group intends to address the following topics: Critical resource gaps, particularly as they relate to reference standards, which must be corrected to enable high-quality research, development, validation, and regulatory science in NGS and radiomics Opportunities that support NGS and radiomic tool development and validation (especially tools utilizing artificial intelligence and machine learning) Existing resources that might be leveraged to accelerate growth in NGS and radiomics NCI presenters include NCI Director, Dr. Ned Sharpless; Associate Director, Cancer Diagnosis Program, Dr. Lyndsay Harris; and Clinical Trials Branch Chief, Cancer Imaging Program, Dr. Lalitha Shankar. CBIIT Director, Dr. Anthony Kerlavage, will provide the keynote presentation on the NCI Cancer Research Data Commons. Two Requests for Information (RFIs) related to the topics of this workshop have been published. (Responses received prior to the workshop date may be discussed at the event.) Visit the workshop webpage for additional details on the RFIs as well as the workshop agenda and presenter bios. Agenda All times are listed in Eastern Daylight Time. Wednesday, September 29th – Genomics 12:30 pm Welcome and Opening Remarks Norman Sharpless, MD, National Cancer Institute, and Jeffrey Shuren, MD, JD, U.S. Food and Drug Administration 12:45 pm Goals of the Workshop Lyndsay Harris, MD, National Cancer Institute 12:55 pm Keynote Presentation NCI Research Data Commons Anthony Kerlavage, Ph.D., National Cancer Institute 1:25 pm 10-minute Break 1:35 pm 1:55 pm Genomics Plenary Session Reference Samples to Compare Next Generation Sequencing Test Performance: The Sustainable Predictive Oncology Therapeutics and Diagnostics (SPOT/Dx) Diagnostic Quality Assurance Pilot John Pfeifer, MD, PhD, Washington UniversityAccelerating Genomics into the Clinic Euan Ashley, MD, PhD, Stanford University 2:15 pm Medical Device Innovation Consortium (MDIC) Somatic Reference Sample Project Carolyn Hiller, MBA, Medical Device Innovation Consortium, and Justin Zook, PhD, National Institute of Standards and Technology 2:35 pm Summary of Genomics RFI Comments and Charge to Break-Out Group Kristofor Langlais, Ph.D., U.S. Food and Drug Administration 2:50 pm Genomics Break-Out Group Session Facilitated by Birgit Funke, PhD, PACMG, Sema4 3:50 pm 10-minute Break 4:00 pm Genomics Break-Out Group Report Out Birgit Funke, PhD, PACMG, Sema4 | 2021-09-29 12:30:00 | Online | Artificial Intelligence / Machine Learning | In-Person | NCI | 0 | Virtual Workshop on Next-Generation Sequencing (NGS) and Radiomics: Resource Requirements for Acceleration of Clinical Applications Including AI | |||
459 |
Description
This NIH-FDA sponsored workshop will bring together members of the scientific community to discuss the obstacles and opportunities associated with NGS and radiomics tool development, validation, and regulatory science. NCI presenters include NCI Director, Dr. Ned Sharpless, and CBIIT Director, Dr. Tony Kerlavage, who will be giving the keynote presentation on NCI’s Cancer Research Data Commons.
The NIH-FDA Joint Leadership Council on Next-Generation Sequencing (NGS) and Radiomics Working Group is hosting a virtual workshop ...Read More
This NIH-FDA sponsored workshop will bring together members of the scientific community to discuss the obstacles and opportunities associated with NGS and radiomics tool development, validation, and regulatory science. NCI presenters include NCI Director, Dr. Ned Sharpless, and CBIIT Director, Dr. Tony Kerlavage, who will be giving the keynote presentation on NCI’s Cancer Research Data Commons.
The NIH-FDA Joint Leadership Council on Next-Generation Sequencing (NGS) and Radiomics Working Group is hosting a virtual workshop to engage the scientific community on ways to accelerate the clinical applications of NGS and radiomics.
Namely, the group intends to address the following topics:
DetailsOrganizerNCIWhenThu, Sep 30, 2021 - 9:45 am - 12:05 pmWhereOnline |
This NIH-FDA sponsored workshop will bring together members of the scientific community to discuss the obstacles and opportunities associated with NGS and radiomics tool development, validation, and regulatory science. NCI presenters include NCI Director, Dr. Ned Sharpless, and CBIIT Director, Dr. Tony Kerlavage, who will be giving the keynote presentation on NCI’s Cancer Research Data Commons. The NIH-FDA Joint Leadership Council on Next-Generation Sequencing (NGS) and Radiomics Working Group is hosting a virtual workshop to engage the scientific community on ways to accelerate the clinical applications of NGS and radiomics. Namely, the group intends to address the following topics: Critical resource gaps, particularly as they relate to reference standards, which must be corrected to enable high-quality research, development, validation, and regulatory science in NGS and radiomics Opportunities that support NGS and radiomic tool development and validation (especially tools utilizing artificial intelligence and machine learning) Existing resources that might be leveraged to accelerate growth in NGS and radiomics NCI presenters include NCI Director, Dr. Ned Sharpless; Associate Director, Cancer Diagnosis Program, Dr. Lyndsay Harris; and Clinical Trials Branch Chief, Cancer Imaging Program, Dr. Lalitha Shankar. CBIIT Director, Dr. Anthony Kerlavage, will provide the keynote presentation on the NCI Cancer Research Data Commons. Two Requests for Information (RFIs) related to the topics of this workshop have been published. (Responses received prior to the workshop date may be discussed at the event.) Visit the workshop webpage for additional details on the RFIs as well as the workshop agenda and presenter bios. Agenda All times are listed in Eastern Daylight Time. Thursday, September 30th – Radiomics 9:45 am Day 2 Opening Remarks Lalitha Shankar, MD, PhD, National Cancer Institute 10:00 am 10:20 am Radiomics Plenary Session Clinical Utility of AI Tools in Brain Tumors Brad Erickson, MD, PhD, Mayo ClinicResources needed to advance AI/ML in cancer imaging, COVID-19, and other diseases: data collection, annotations, harmonization, metrology, and sequestered datasets Maryellen Giger, PhD, University of Chicago 10:40 am Summary of Radiomics RFI Comments and Charge to Break-Out Group Kristofor Langlais, Ph.D., U.S. Food and Drug Administration 10:55 am Radiomics Break-Out Group Session Facilitated by Curtis Langlotz, MD, PhD, FACMI, Stanford University 11:55 am 10-minute Break 12:05 pm Radiomics Break-Out Group Report Out Curtis Langlotz, MD, PhD, FACMI, Stanford University | 2021-09-30 09:45:00 | Online | Artificial Intelligence / Machine Learning | In-Person | NCI | 0 | Virtual Workshop on Next-Generation Sequencing (NGS) and Radiomics: Resource Requirements for Acceleration of Clinical Applications Including AI | |||
997 |
Description
Welcome to the newly established "Coursera Study Groups for NCI CCR Scientists". These meetings are intended to help our CCR Scientists navigate the Coursera Learning Platform and support them as they progress through the courses.
Our first meeting will feature an Introduction to the Coursera Platform.
Meeting Link
If you are a new learner or have been ...Read More
Welcome to the newly established "Coursera Study Groups for NCI CCR Scientists". These meetings are intended to help our CCR Scientists navigate the Coursera Learning Platform and support them as they progress through the courses.
Our first meeting will feature an Introduction to the Coursera Platform.
Meeting Link
If you are a new learner or have been using the platform already there will be useful information on the following topics:
RegisterOrganizerBTEPWhenThu, Sep 30, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Welcome to the newly established "Coursera Study Groups for NCI CCR Scientists". These meetings are intended to help our CCR Scientists navigate the Coursera Learning Platform and support them as they progress through the courses. Our first meeting will feature an Introduction to the Coursera Platform. Meeting Link If you are a new learner or have been using the platform already there will be useful information on the following topics: Bioinformatics Data Science Genomics Programming Statistics You can ask questions during the session OR submit them before the session on the BTEP website Coursera Study Groups Question and Answer Forum. Upcoming Sessions: Oct 28 @ 1 PM, R or Python, Where Should I Start? Nov 18 @ 1 PM, Genomics and Bioinformatics Dec 9 @ 1 PM, Data Science for Biologists | 2021-09-30 13:00:00 | Online Webinar | Online | Amy Stonelake (BTEP),Jeff Kaplan (Coursera) | BTEP | 0 | Coursera Study Groups for NCI CCR Scientists | |||
1001 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Sep 30, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-09-30 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
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DescriptionThe NIAID-funded International epidemiology Databases to Evaluate AIDS (IeDEA) consortium is a global HIV observational research network with seven geographic regions and over 350 participating HIV care and treatment clinics. The data scientists and data managers of IeDEA established the Harmonist Project to develop informatics-driven methodologies, data standards, and tools to catalyze IeDEA data sharing and scientific collaboration. In this presentation, we will share the process and outcomes, demos of generalizable tools built ...Read More The NIAID-funded International epidemiology Databases to Evaluate AIDS (IeDEA) consortium is a global HIV observational research network with seven geographic regions and over 350 participating HIV care and treatment clinics. The data scientists and data managers of IeDEA established the Harmonist Project to develop informatics-driven methodologies, data standards, and tools to catalyze IeDEA data sharing and scientific collaboration. In this presentation, we will share the process and outcomes, demos of generalizable tools built on REDCap and R Shiny, and potential uses for other large observational research networks. Speakers:
Associate Professor of Biomedical Informatics Vanderbilt University Medical Center
Lead Developer, Harmonist Data Toolkit Adjunct Assistant Professor of Biomedical Engineering Vanderbilt University Medical Center DetailsOrganizerNIAIDWhenFri, Oct 01, 2021 - 12:00 pm - 1:00 pmWhereOnline |
The NIAID-funded International epidemiology Databases to Evaluate AIDS (IeDEA) consortium is a global HIV observational research network with seven geographic regions and over 350 participating HIV care and treatment clinics. The data scientists and data managers of IeDEA established the Harmonist Project to develop informatics-driven methodologies, data standards, and tools to catalyze IeDEA data sharing and scientific collaboration. In this presentation, we will share the process and outcomes, demos of generalizable tools built on REDCap and R Shiny, and potential uses for other large observational research networks. Speakers: Stephany Duda, Ph.D. Associate Professor of Biomedical Informatics Vanderbilt University Medical Center Judy Lewis, Ph.D. Lead Developer, Harmonist Data Toolkit Adjunct Assistant Professor of Biomedical Engineering Vanderbilt University Medical Center | 2021-10-01 12:00:00 | Online | Data Science | Online | NIAID | 0 | Streamlining Data Sharing in a Global HIV Research Consortium | |||
472 |
Description
While genomics initiatives have generated large amounts of data, gaining clinically relevant insights from this data is challenging. This symposium will showcase multi-omics approaches to functional characterization of candidate cancer drug targets. Researchers will discuss how deep data analyses and high-throughput approaches are reshaping our understanding of cancer biology and impacting clinical oncology.
The Symposium is organized by Cell Press (Cell and Cancer Cell) and the Cancer Target Discovery and Development (CTD²) Network—an NCI ...Read More
While genomics initiatives have generated large amounts of data, gaining clinically relevant insights from this data is challenging. This symposium will showcase multi-omics approaches to functional characterization of candidate cancer drug targets. Researchers will discuss how deep data analyses and high-throughput approaches are reshaping our understanding of cancer biology and impacting clinical oncology.
The Symposium is organized by Cell Press (Cell and Cancer Cell) and the Cancer Target Discovery and Development (CTD²) Network—an NCI initiative for bridging the knowledge gap between large-scale genomic datasets and the underlying etiology of cancer development, progression, and metastasis. There is a government registration rate for NIH/NCI staff and content will be available online both live and via on-demand archive.
Dr. Daniela S. Gerhard, who sadly and suddenly passed away this summer, was the premier architect of this symposium and on a grander scale, the CTD² Network. In recognition and appreciation of Dr. Gerhard’s immense efforts and dedication to many of NCI’s genomics initiatives, the Symposium will feature a memorial session delivered by Drs. Louis Staudt and Stuart Schreiber.
DetailsOrganizerNCIWhenMon, Oct 04 - Wed, Oct 06, 2021 -9:00 am - 4:00 pmWhereOnline |
While genomics initiatives have generated large amounts of data, gaining clinically relevant insights from this data is challenging. This symposium will showcase multi-omics approaches to functional characterization of candidate cancer drug targets. Researchers will discuss how deep data analyses and high-throughput approaches are reshaping our understanding of cancer biology and impacting clinical oncology. The Symposium is organized by Cell Press (Cell and Cancer Cell) and the Cancer Target Discovery and Development (CTD²) Network—an NCI initiative for bridging the knowledge gap between large-scale genomic datasets and the underlying etiology of cancer development, progression, and metastasis. There is a government registration rate for NIH/NCI staff and content will be available online both live and via on-demand archive. Dr. Daniela S. Gerhard, who sadly and suddenly passed away this summer, was the premier architect of this symposium and on a grander scale, the CTD² Network. In recognition and appreciation of Dr. Gerhard’s immense efforts and dedication to many of NCI’s genomics initiatives, the Symposium will feature a memorial session delivered by Drs. Louis Staudt and Stuart Schreiber. | 2021-10-04 09:00:00 | Online | Cancer,Genomics | Online | NCI | 0 | Beyond Cancer Genomics Toward Precision Oncology: A Cell-NCI Functional Genomics Symposium | |||
470 |
Description
As a continuation of the NHGRI seminar series focused on the “Bold Predictions for Human Genomics by 2030,” please join us for the eighth seminar in the series on Monday, October 4 from 3:00 – 4:30 pm ET. This seminar will focus on Bold Prediction #8: A person’s complete genome sequence along with informative annotations can be securely and readily accessible on their smartphone. Dr. Gillian Hooker of Concert Genetics and Dr. Michael Schatz of Johns Hopkins University will use ...Read More
As a continuation of the NHGRI seminar series focused on the “Bold Predictions for Human Genomics by 2030,” please join us for the eighth seminar in the series on Monday, October 4 from 3:00 – 4:30 pm ET. This seminar will focus on Bold Prediction #8: A person’s complete genome sequence along with informative annotations can be securely and readily accessible on their smartphone. Dr. Gillian Hooker of Concert Genetics and Dr. Michael Schatz of Johns Hopkins University will use this prediction as an aspirational theme for their talks, highlighting their own work in the context of that theme and speculating about the next decade in their areas. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV.
DetailsOrganizerNHGRIWhenMon, Oct 04, 2021 - 3:00 pm - 4:30 pmWhereOnline |
As a continuation of the NHGRI seminar series focused on the “Bold Predictions for Human Genomics by 2030,” please join us for the eighth seminar in the series on Monday, October 4 from 3:00 – 4:30 pm ET. This seminar will focus on Bold Prediction #8: A person’s complete genome sequence along with informative annotations can be securely and readily accessible on their smartphone. Dr. Gillian Hooker of Concert Genetics and Dr. Michael Schatz of Johns Hopkins University will use this prediction as an aspirational theme for their talks, highlighting their own work in the context of that theme and speculating about the next decade in their areas. The talks will be followed by a moderated question-and-answer session. All seminars will be open to the public and recorded for posting on GenomeTV. | 2021-10-04 15:00:00 | Online | Genomics | Online | NHGRI | 0 | Bold Predictions for Human Genomics by 2030 | |||
462 |
Description
A 4-week series of hands-on workshops.
The Linux “shell” is the command-line interface to the Linux operating system. It is built into all Linux systems, from Android devices to the world’s largest supercomputers, including NIH’s Biowulf cluster.
In this 4-week series of two-hour workshops, we will introduce Bash, by far the most popular version of the Linux shell and a useful scripting language for Linux. Instructors will use the Linux terminal and you ...Read More
A 4-week series of hands-on workshops.
The Linux “shell” is the command-line interface to the Linux operating system. It is built into all Linux systems, from Android devices to the world’s largest supercomputers, including NIH’s Biowulf cluster.
In this 4-week series of two-hour workshops, we will introduce Bash, by far the most popular version of the Linux shell and a useful scripting language for Linux. Instructors will use the Linux terminal and you will follow along on a remote Linux system accessible by all course registrants, allowing you to gain a strong foundation in the fundamentals of and best practices for using Linux.
Week 1, Oct 5, 11 a.m. – 1 p.m. ET: Setup, introducing the shell, navigating files and directories; Working with files and directories (Part I)
Week 2, Oct 12, 11 a.m. – 1 p.m. ET: Working with files and directories (Part II); Pipes and filters
Week 3, Oct 19, 11 a.m. – 1 p.m. ET: Loops; Shell scripts (Part I)
Week 4, Oct 26, 11 a.m. – 1 p.m. ET: Shell scripts (Part II); Finding things
For more information see: https://cbiit.github.io/p2p-datasci/2021-09-09-introduction_to_linux/
Instructors:
Amy Stonelake, Ph.D., BTEP Program Manager
George Zaki, Ph.D., FNLCR Bioinformatics Manager
Andrew Weisman, Ph.D., FNLCR HPC Analyst
DetailsWhenTue, Oct 05, 2021 - 11:00 am - 1:00 pmWhereIn-Person |
A 4-week series of hands-on workshops. The Linux “shell” is the command-line interface to the Linux operating system. It is built into all Linux systems, from Android devices to the world’s largest supercomputers, including NIH’s Biowulf cluster. In this 4-week series of two-hour workshops, we will introduce Bash, by far the most popular version of the Linux shell and a useful scripting language for Linux. Instructors will use the Linux terminal and you will follow along on a remote Linux system accessible by all course registrants, allowing you to gain a strong foundation in the fundamentals of and best practices for using Linux. Week 1, Oct 5, 11 a.m. – 1 p.m. ET: Setup, introducing the shell, navigating files and directories; Working with files and directories (Part I) Week 2, Oct 12, 11 a.m. – 1 p.m. ET: Working with files and directories (Part II); Pipes and filters Week 3, Oct 19, 11 a.m. – 1 p.m. ET: Loops; Shell scripts (Part I) Week 4, Oct 26, 11 a.m. – 1 p.m. ET: Shell scripts (Part II); Finding things For more information see: https://cbiit.github.io/p2p-datasci/2021-09-09-introduction_to_linux/ Instructors: Amy Stonelake, Ph.D., BTEP Program Manager George Zaki, Ph.D., FNLCR Bioinformatics Manager Andrew Weisman, Ph.D., FNLCR HPC Analyst | 2021-10-05 11:00:00 | In-Person | 0 | Introduction to Linux Shell for Data Science | ||||||
444 |
Description
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use ...Read More
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them.
Feel free to install the IGV browser in advance from here - https://software.broadinstitute.org/software/igv/download(link is external) (the UCSV browser is web browser based).
DetailsOrganizerNIH Training LibraryWhenTue, Oct 05, 2021 - 1:00 pm - 2:30 pmWhereOnline |
This course walks through using and applying two popular, freely available genome browsers and how they can help bioinformatics analysis: the University of California Santa Cruz (UCSC) Genome Browser and the Integrative Genomics Viewer (IGV). Used to view the assembly of the complete genome in human or other species, these browsers are valuable tools for identifying and localizing genes/mutations. This course will demonstrate how to view different genome maps/tracks and make best use of them. Feel free to install the IGV browser in advance from here - https://software.broadinstitute.org/software/igv/download(link is external) (the UCSV browser is web browser based). | 2021-10-05 13:00:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | GENOME BROWSER | |||
1004 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Oct 07, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-10-07 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
479 |
Description
Dr. Pjotr Prins and Arun Isaac will present their Concise Common Workflow Language (CCWL). CCWL makes code reusable and adaptable across a variety of software and hardware environment while following FAIR+ (Findable, Accessible, Interoperable, Reusable, and Computable) principles. They will also discuss their prototype COVID-19 cloud setup, with a hands-on demonstration of the universal software deployment system Guix, part of the open-source operating system GNU.
CWL is of particular interest to cancer researchers because it ...Read More
Dr. Pjotr Prins and Arun Isaac will present their Concise Common Workflow Language (CCWL). CCWL makes code reusable and adaptable across a variety of software and hardware environment while following FAIR+ (Findable, Accessible, Interoperable, Reusable, and Computable) principles. They will also discuss their prototype COVID-19 cloud setup, with a hands-on demonstration of the universal software deployment system Guix, part of the open-source operating system GNU.
CWL is of particular interest to cancer researchers because it provides a standardized machine-readable semantics model for running workflows on virtual environments. Attendees will learn how CCWL, as a CWL compiler, works with a package manager like GNU Guix to improve reproducibility and validation of bioinformatics workflows.
This webinar is part of the monthly Containers and Workflow Interest Group (CWIG) webinar series. CWIG brings together data scientists, bioinformaticians, computer scientists, and researchers to learn more about cloud computing and container technologies, workflows, and pipelines that could drive cancer data science.
The webinar series features a variety of presenters from across NIH, industry, and academia. Though cancer research is the focus of the series, unrelated data science and cloud computing topics are still welcome. In the last year, the CWIG webinar speakers have discussed:
DetailsOrganizerCBIITWhenFri, Oct 08, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Dr. Pjotr Prins and Arun Isaac will present their Concise Common Workflow Language (CCWL). CCWL makes code reusable and adaptable across a variety of software and hardware environment while following FAIR+ (Findable, Accessible, Interoperable, Reusable, and Computable) principles. They will also discuss their prototype COVID-19 cloud setup, with a hands-on demonstration of the universal software deployment system Guix, part of the open-source operating system GNU. CWL is of particular interest to cancer researchers because it provides a standardized machine-readable semantics model for running workflows on virtual environments. Attendees will learn how CCWL, as a CWL compiler, works with a package manager like GNU Guix to improve reproducibility and validation of bioinformatics workflows. This webinar is part of the monthly Containers and Workflow Interest Group (CWIG) webinar series. CWIG brings together data scientists, bioinformaticians, computer scientists, and researchers to learn more about cloud computing and container technologies, workflows, and pipelines that could drive cancer data science. The webinar series features a variety of presenters from across NIH, industry, and academia. Though cancer research is the focus of the series, unrelated data science and cloud computing topics are still welcome. In the last year, the CWIG webinar speakers have discussed: NIH cloud programs like the NCI Cloud Resources and NIH STRIDES. commercial cloud platforms for biomedical data storage and computing. pipelines and tools for deep learning and various omics analysis. Speakers: Pjotr Prins, Ph.D. Dr. Prins is a bioinformatician at-large and assistant (coding) professor at the Department of Genetics, Genomics, and Informatics at the University of Tennessee Health Science Center. He is also the director of Genenetwork.org and writes critical software for genetics and pangenomics Arun Isaac Mr. Isaac is a doctoral student at the Department of Computational and Data Sciences, Indian Institute of Science. He regularly contributes to GNU Guix and is the author of guile-email, an email parser for Guile. | 2021-10-08 15:00:00 | Online | Data Science | Online | CBIIT | 0 | Reproducible FAIR+ Workflows and the CCWL | |||
474 |
Description
This course uses lectures, demos, and hands-on labs to give you an overview of Google Cloud products and services so that you can learn the value of Google Cloud and how to incorporate cloud-based solutions into your business strategies.
Course Content
This course uses lectures, demos, and hands-on labs to give you an overview of Google Cloud products and services so that you can learn the value of Google Cloud and how to incorporate cloud-based solutions into your business strategies.
Course Content
DetailsOrganizerNIH STRIDESWhenMon, Oct 11, 2021 - 9:00 am - 4:00 pmWhereOnline |
This course uses lectures, demos, and hands-on labs to give you an overview of Google Cloud products and services so that you can learn the value of Google Cloud and how to incorporate cloud-based solutions into your business strategies. Course Content Module 1: Introducing Google Cloud Platform Module 2: Getting Started with Google Cloud Platform Module 3: Virtual Machines and Networks in the Cloud Module 4: Storage in the Cloud Module 5: Containers in the Cloud Module 6: Applications in the Cloud Module 7: Developing, Deploying, and Monitoring in the Cloud Module 8: Big Data and Machine Learning in the Cloud Who should attend This class is intended for the following: Individuals planning to deploy applications and create application environments on Google Cloud Platform. Developers, systems operations professionals, and solution architects getting started with Google Cloud Platform. Executives and business decision makers evaluating the potential of Google Cloud Platform to address their business needs. Course Objectives This course teaches participants the following skills: Identify the purpose and value of Google Cloud Platform products and services Interact with Google Cloud Platform services Describe ways in which customers have used Google Cloud Platform Choose among and use application deployment environments on Google Cloud Platform: Google App Engine, Google Kubernetes Engine, and Google Compute Engine Choose among and use Google Cloud Platform storage options: Google Cloud Storage, Google Cloud SQL, Google Cloud Bigtable, and Google Cloud Datastore Make basic use of BigQuery, Google’s managed data warehouse for analytics Make basic use of Cloud Deployment Manager, Google’s tool for creating and managing cloud resources through templates Make basic use of Google Stackdriver, Google’s monitoring, logging, and diagnostics system Outline: Google Cloud Fundamentals: Core Infrastructure (GCF-CI) Module 1: Introducing Google Cloud Platform Explain the advantages of Google Cloud Platform. Define the components of Google's network infrastructure, including: Points of presence, data centers, regions, and zones. Understand the difference between Infrastructure-as-a- Service (IaaS) and Platform-as-a-Service (PaaS). Module 2: Getting Started with Google Cloud Platform Identify the purpose of projects on Google Cloud Platform. Understand the purpose of and use cases for Identity and Access Management. List the methods of interacting with Google Cloud Platform. Lab: Getting Started with Google Cloud Platform. Module 3: Virtual Machines and Networks in the Cloud Identify the purpose of and use cases for Google Compute Engine. Understand the various Google Cloud Platform networking and operational tools and services. Lab: Compute Engine Module 4: Storage in the Cloud Understand the purpose of and use cases for: Google Cloud Storage, Google Cloud SQL, Google Cloud Bigtable, and Google Cloud Datastore. Learn how to choose between the various storage options on Google Cloud Platform. Lab: Cloud Storage and Cloud SQL Module 5: Containers in the Cloud Define the concept of a container and identify uses for containers. Identify the purpose of and use cases for Google Kubernetes Engine and Kubernetes. Lab: Kubernetes Engine Module 6: Applications in the Cloud Understand the purpose of and use cases for Google App Engine. Contrast the App Engine Standard environment with the App Engine Flexible environment. Understand the purpose of and use cases for Google Cloud Endpoints. Lab: App Engine Module 7: Developing, Deploying, and Monitoring in the Cloud Understand options for software developers to host their source code. Understand the purpose of template-based creation and management of resources. Understand the purpose of integrated monitoring, alerting, and debugging. Lab: Deployment Manager and Stackdriver Module 8: Big Data and Machine Learning in the Cloud Understand the purpose of and use cases for the products and services in the Google Cloud big data and machine learning platforms. Lab: BigQuery Prerequisites Familiarity with the Linux command line, web servers, and text editors. | 2021-10-11 09:00:00 | Online | Cloud | Online | NIH STRIDES | 0 | GCP Fundamentals - Core Infrastructure | |||
473 |
Description
Speaker: Tali Mazor, Ph.D., Scientist, Knowledge Systems Group, Dana-Farber Cancer Institute
Tali Mazor, Ph.D., of the Dana-Farber Cancer Institute will discuss the functions and features of the cBioPortal for Cancer Genomics. This open-source software platform offers an interactive tool for exploring large-scale cancer genomics data sets through a user-friendly interface. Using cBioPortal, researchers can integrate genomic and clinical data and have access to a suite of visualization and analysis options, including ...Read More
Speaker: Tali Mazor, Ph.D., Scientist, Knowledge Systems Group, Dana-Farber Cancer Institute
Tali Mazor, Ph.D., of the Dana-Farber Cancer Institute will discuss the functions and features of the cBioPortal for Cancer Genomics. This open-source software platform offers an interactive tool for exploring large-scale cancer genomics data sets through a user-friendly interface. Using cBioPortal, researchers can integrate genomic and clinical data and have access to a suite of visualization and analysis options, including cohort/patient-level visualization, mutation visualization, survival analysis, and alteration enrichment analysis.
The cBioPortal for Cancer Genomics is an open-source software platform that enables interactive, exploratory analysis of large-scale cancer genomics data sets with a user-friendly interface. It integrates genomic and clinical data, and provides a suite of visualization and analysis options, including cohort and patient-level visualization, mutation visualization, survival analysis and alteration enrichment analysis. Features of the portal include OncoPrints, a compact graphical representation of alterations in multiple genes across a cohort, mutational diagrams that show locations and frequencies of mutations in a single gene, subgroup definition and comparison, Kaplan-Meier survival curves, plots that allow the visualization of correlation between different data types (e.g. the correlation between DNA copy number and mRNA expression for a gene of interest), among others. To facilitate interpretation, the cBioPortal also integrates data from several leading knowledgebases and computational resources.
This webinar will introduce basic exploratory, analytic and visualization features of the cBioPortal, as well as several advanced features, including:
- Exploring data with study view
- Running and modifying queries
- OncoPrints, mutation diagrams, survival analysis, enrichment analysis
- Resources integrated into the cBioPortal
- Working with different data types, including mutations, copy number, mRNA expression and protein levels
- Onco Query Language
- Resources to get additional help
DetailsOrganizerCBIITWhenTue, Oct 12, 2021 - 10:00 am - 11:00 amWhereOnline |
Speaker: Tali Mazor, Ph.D., Scientist, Knowledge Systems Group, Dana-Farber Cancer Institute Tali Mazor, Ph.D., of the Dana-Farber Cancer Institute will discuss the functions and features of the cBioPortal for Cancer Genomics. This open-source software platform offers an interactive tool for exploring large-scale cancer genomics data sets through a user-friendly interface. Using cBioPortal, researchers can integrate genomic and clinical data and have access to a suite of visualization and analysis options, including cohort/patient-level visualization, mutation visualization, survival analysis, and alteration enrichment analysis. The cBioPortal for Cancer Genomics is an open-source software platform that enables interactive, exploratory analysis of large-scale cancer genomics data sets with a user-friendly interface. It integrates genomic and clinical data, and provides a suite of visualization and analysis options, including cohort and patient-level visualization, mutation visualization, survival analysis and alteration enrichment analysis. Features of the portal include OncoPrints, a compact graphical representation of alterations in multiple genes across a cohort, mutational diagrams that show locations and frequencies of mutations in a single gene, subgroup definition and comparison, Kaplan-Meier survival curves, plots that allow the visualization of correlation between different data types (e.g. the correlation between DNA copy number and mRNA expression for a gene of interest), among others. To facilitate interpretation, the cBioPortal also integrates data from several leading knowledgebases and computational resources. This webinar will introduce basic exploratory, analytic and visualization features of the cBioPortal, as well as several advanced features, including: - Exploring data with study view - Running and modifying queries - OncoPrints, mutation diagrams, survival analysis, enrichment analysis - Resources integrated into the cBioPortal - Working with different data types, including mutations, copy number, mRNA expression and protein levels - Onco Query Language - Resources to get additional help | 2021-10-12 10:00:00 | Online | Cancer,Genomics | Online | CBIIT | 0 | cBioPortal for Cancer Genomics | |||
464 |
Description
MATLAB provides two-way integration with many programming languages such as Python, which allows for greater collaboration between investigators. This webinar will cover how to call MATLAB from Python and how to call Python libraries from MATLAB. Attendees will learn how to use MATLAB’s Python integration to improve the compatibility and usability of their code. This webinar will be helpful for participants who have collaborators using Python with MATLAB, or for attendees who want to ...Read More
MATLAB provides two-way integration with many programming languages such as Python, which allows for greater collaboration between investigators. This webinar will cover how to call MATLAB from Python and how to call Python libraries from MATLAB. Attendees will learn how to use MATLAB’s Python integration to improve the compatibility and usability of their code. This webinar will be helpful for participants who have collaborators using Python with MATLAB, or for attendees who want to integrate MATLAB’s capabilities in a Python program. This session is for beginners; no software installation required.
DetailsOrganizerNIH Training LibraryWhenTue, Oct 12, 2021 - 1:00 pm - 2:00 pmWhereOnline |
MATLAB provides two-way integration with many programming languages such as Python, which allows for greater collaboration between investigators. This webinar will cover how to call MATLAB from Python and how to call Python libraries from MATLAB. Attendees will learn how to use MATLAB’s Python integration to improve the compatibility and usability of their code. This webinar will be helpful for participants who have collaborators using Python with MATLAB, or for attendees who want to integrate MATLAB’s capabilities in a Python program. This session is for beginners; no software installation required. | 2021-10-12 13:00:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | MATLAB WITH PYTHON | |||
475 |
DescriptionDetailsOrganizerNIH STRIDESWhenWed, Oct 13, 2021 - 9:00 am - 4:00 pmWhereOnline |
2021-10-13 09:00:00 | Online | Cloud | Online | NIH STRIDES | 0 | Fundamentals of Life Science Tools in Google Cloud (Custom) | ||||
445 |
Description
For the Introductory Training we will cover basic topics such as: MetaCore overview; how to use MetaCore as a knowledge mining tool; how to upload data; running functional enrichments and exploring pathway maps; and running workflows.
For the Introductory Training we will cover basic topics such as: MetaCore overview; how to use MetaCore as a knowledge mining tool; how to upload data; running functional enrichments and exploring pathway maps; and running workflows.
DetailsOrganizerNIH Training LibraryWhenWed, Oct 13, 2021 - 9:30 am - 10:30 amWhereOnline |
For the Introductory Training we will cover basic topics such as: MetaCore overview; how to use MetaCore as a knowledge mining tool; how to upload data; running functional enrichments and exploring pathway maps; and running workflows. | 2021-10-13 09:30:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | METACORE INTRODUCTORY TRAINING | |||
480 |
Description
Register for the 2021 Clinical Proteomics Tumor Analysis Consortium (CPTAC) Virtual Scientific Symposium to hear CPTAC investigators share their latest discoveries in the field of cancer proteogenomics, cancer research, and data analysis tools.
In addition to scientific talks on tumor biology and translational studies, there will be demonstrations of these CPTAC-developed data analysis tools:
Register for the 2021 Clinical Proteomics Tumor Analysis Consortium (CPTAC) Virtual Scientific Symposium to hear CPTAC investigators share their latest discoveries in the field of cancer proteogenomics, cancer research, and data analysis tools.
In addition to scientific talks on tumor biology and translational studies, there will be demonstrations of these CPTAC-developed data analysis tools:
DetailsOrganizerCBIITWhenWed, Oct 13, 2021 - 11:00 am - 3:50 pmWhereOnline |
Register for the 2021 Clinical Proteomics Tumor Analysis Consortium (CPTAC) Virtual Scientific Symposium to hear CPTAC investigators share their latest discoveries in the field of cancer proteogenomics, cancer research, and data analysis tools. In addition to scientific talks on tumor biology and translational studies, there will be demonstrations of these CPTAC-developed data analysis tools: FragPipe Computational Pipeline (for comprehensive analysis of mass spectrometry-based proteomics data) ProTrack-Kinase Activity Portal (for querying/visualizing/downloading kinase activity scores of multiple cancer types) BayesDebulk (analysis method for inferring cell-type composition in bulk tissue using proteogenomics data) The CPTAC program is a national effort coordinated through NCI’s Office of Cancer Clinical Proteomics Research to accelerate the understanding of cancer biology through the marriage of large-scale proteome and genome analysis, or proteogenomics. Proteogenomics allows CPTAC researchers to paint a more detailed picture of tumor carcinogenesis and progression, micro-environments, and immune landscapes. This information can then be leveraged therapeutically to improve patient care. | 2021-10-13 11:00:00 | Online | Data Science | Online | CBIIT | 0 | 2021 Clinical Proteomics Tumor Analysis Consortium (CPTAC) Annual Scientific Symposium | |||
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DescriptionPlease plan to attend the Physician-Scientist Early Investigator Program (PEIP) seminar by: Nicholas Rydzewski, M.D. University of WisconsinDr. Rydzewski is currently Chief Resident in the Radiation Oncology Residency Program at the University of Wisconsin. He is deeply committed to advancing the use of artificial intelligence and liquid biopsies to better inform precision cancer therapy approaches for patients before ...Read More Please plan to attend the Physician-Scientist Early Investigator Program (PEIP) seminar by: Nicholas Rydzewski, M.D. University of WisconsinDr. Rydzewski is currently Chief Resident in the Radiation Oncology Residency Program at the University of Wisconsin. He is deeply committed to advancing the use of artificial intelligence and liquid biopsies to better inform precision cancer therapy approaches for patients before and following radiation. This is a significant and timely arena for translational research with great promise to advance the discipline of Radiation Oncology over the years to come. DetailsOrganizerCBIITWhenThu, Oct 14, 2021 - 10:00 am - 11:00 amWhereOnline |
Please plan to attend the Physician-Scientist Early Investigator Program (PEIP) seminar by: Nicholas Rydzewski, M.D. University of Wisconsin Dr. Rydzewski is currently Chief Resident in the Radiation Oncology Residency Program at the University of Wisconsin. He is deeply committed to advancing the use of artificial intelligence and liquid biopsies to better inform precision cancer therapy approaches for patients before and following radiation. This is a significant and timely arena for translational research with great promise to advance the discipline of Radiation Oncology over the years to come. | 2021-10-14 10:00:00 | Online | Cancer,Artificial Intelligence / Machine Learning,Genomics | Online | CBIIT | 0 | Bringing Cancer Genomics and AI to the Oncology Clinic | |||
446 |
Description
The ISB Cancer Gateway in the Cloud(link is external) (ISB-CGC) offers multiple avenues for accessing and analyzing large-scale cancer datasets, including TCGA, TARGET, CPTAC and important references such as GENCODE and COSMIC. ISB-CGC users can process petabytes of data using complex workflows written in the language of their choice (including but not limited to CWL, WDL, Snakemake, Nextflow, etc). ...Read More
The ISB Cancer Gateway in the Cloud(link is external) (ISB-CGC) offers multiple avenues for accessing and analyzing large-scale cancer datasets, including TCGA, TARGET, CPTAC and important references such as GENCODE and COSMIC. ISB-CGC users can process petabytes of data using complex workflows written in the language of their choice (including but not limited to CWL, WDL, Snakemake, Nextflow, etc). They can develop new analyses using SQL, Python, and R to mine data including gene expression, protein abundance, and somatic mutations in easily accessible and queryable tables. Updated interactive web tools at isb-cgc.org (link is external)allow cohort creation, data discovery, and exploration. In our cloud computing session, we will demonstrate common bioinformatic workflows using both Python and R while integrating various omic data types such as gene mutations, copy number, gene expression, methylation, and proteomics. We will show how this can be interactively and iteratively performed in the cloud using the ISB-CGC platform. Attendees will receive hands-on training on optimizing analyses using “burstable” cloud tools, which enables the user to rapidly combine and interrogate their cancer datasets with those available at the Cancer Research Data Commons.
DetailsOrganizerNIH Training LibraryWhenThu, Oct 14, 2021 - 1:00 pm - 4:00 pmWhereOnline |
The ISB Cancer Gateway in the Cloud(link is external) (ISB-CGC) offers multiple avenues for accessing and analyzing large-scale cancer datasets, including TCGA, TARGET, CPTAC and important references such as GENCODE and COSMIC. ISB-CGC users can process petabytes of data using complex workflows written in the language of their choice (including but not limited to CWL, WDL, Snakemake, Nextflow, etc). They can develop new analyses using SQL, Python, and R to mine data including gene expression, protein abundance, and somatic mutations in easily accessible and queryable tables. Updated interactive web tools at isb-cgc.org (link is external)allow cohort creation, data discovery, and exploration. In our cloud computing session, we will demonstrate common bioinformatic workflows using both Python and R while integrating various omic data types such as gene mutations, copy number, gene expression, methylation, and proteomics. We will show how this can be interactively and iteratively performed in the cloud using the ISB-CGC platform. Attendees will receive hands-on training on optimizing analyses using “burstable” cloud tools, which enables the user to rapidly combine and interrogate their cancer datasets with those available at the Cancer Research Data Commons. | 2021-10-14 13:00:00 | Online | Cloud | Online | NIH Training Library | 0 | THE ISB CANCER GATEWAY IN THE CLOUD: ACCESS, EXPLORE, AND ANALYZE LARGE-SCALE CANCER DATA THROUGH THE GOOGLE CLOUD | |||
1008 |
Description
Meeting Link
Forward genetic screens using CRISPR (clustered regularly interspaced short palindromic repeats)–associated nucleases like Cas9 are a powerful tool to pinpoint genes involved in disease. Initial screens capitalized on genome-scale libraries to perturb nearly all protein-coding genes in the human genome to examine therapeutic resistance and gene essentiality in cancer cell lines.
We ...Read More
Meeting Link
Forward genetic screens using CRISPR (clustered regularly interspaced short palindromic repeats)–associated nucleases like Cas9 are a powerful tool to pinpoint genes involved in disease. Initial screens capitalized on genome-scale libraries to perturb nearly all protein-coding genes in the human genome to examine therapeutic resistance and gene essentiality in cancer cell lines.
We have further developed the CRISPR screening toolbox in several new directions, including in vivo screens to understand drivers of lung metastasis, saturation mutagenesis of noncoding regions to identify functional elements that drive chemotherapeutic resistance in melanoma, and screens that dissect complex interactions between tumor cells and primary immune cells in cancer immunotherapy. Recently, we developed the first RNA-targeting CRISPR screens in melanoma and combined CRISPR perturbations of chromatin modifiers with single-cell measurements of chromatin accessibility. Taken together, these new frontiers expand the potential of CRISPR screens for fundamental genomic discovery, gene regulation, and therapeutic development to overcome drug resistance.
RegisterOrganizerBTEPWhenThu, Oct 14, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link Forward genetic screens using CRISPR (clustered regularly interspaced short palindromic repeats)–associated nucleases like Cas9 are a powerful tool to pinpoint genes involved in disease. Initial screens capitalized on genome-scale libraries to perturb nearly all protein-coding genes in the human genome to examine therapeutic resistance and gene essentiality in cancer cell lines. We have further developed the CRISPR screening toolbox in several new directions, including in vivo screens to understand drivers of lung metastasis, saturation mutagenesis of noncoding regions to identify functional elements that drive chemotherapeutic resistance in melanoma, and screens that dissect complex interactions between tumor cells and primary immune cells in cancer immunotherapy. Recently, we developed the first RNA-targeting CRISPR screens in melanoma and combined CRISPR perturbations of chromatin modifiers with single-cell measurements of chromatin accessibility. Taken together, these new frontiers expand the potential of CRISPR screens for fundamental genomic discovery, gene regulation, and therapeutic development to overcome drug resistance. | 2021-10-14 13:00:00 | Online Webinar | Online | Neville Sanjana (New York Genome Center) | BTEP | 0 | New Functional Genomic Approaches in Human Cancer Models | |||
1005 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Oct 14, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-10-14 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
476 |
Description
This course will introduce you to Google Cloud's big data and machine learning functions. You'll begin with a quick overview of Google Cloud and then dive deeper into its data processing capabilities.
Prerequisites
Roughly one year of experience with one or more of the following: ● A common query language such as SQL. ● Extract, transform, and load activities. ● Data modeling. ● Machine learning and/or statistics. ● Programming in Python.
Objectives
● Identify the purpose and value of the ...Read More
This course will introduce you to Google Cloud's big data and machine learning functions. You'll begin with a quick overview of Google Cloud and then dive deeper into its data processing capabilities.
Prerequisites
Roughly one year of experience with one or more of the following: ● A common query language such as SQL. ● Extract, transform, and load activities. ● Data modeling. ● Machine learning and/or statistics. ● Programming in Python.
Objectives
● Identify the purpose and value of the key Big Data and Machine Learning products in Google Cloud. ● Use Cloud SQL and Dataproc to migrate existing MySQL and Hadoop/Pig/Spark/Hive workloads to Google Cloud. ● Employ BigQuery and Cloud SQL to carry out interactive data analysis. ● Choose between different data processing products in Google Cloud. ● Create ML models with BigQuery ML, ML APIs, and AutoML.
Audience
● Data analysts, data scientists, and business analysts who are getting started with Google Cloud. ● Individuals responsible for designing pipelines and architectures for data processing, creating and maintaining machine learning and statistical models, querying datasets, visualizing query results, and creating reports. ● Executives and IT decision makers evaluating Google Cloud for use by data scientists.
Course Outline
The course includes presentations, demonstrations, and hands-on labs.
Module 1: Introduction to Google Cloud
Module 2: Recommending Products Using Cloud SQL and Spark
Module 3: Predicting Visitor Purchases Using BigQuery ML
Module 4: Real-time Dashboards with Pub/Sub, Dataflow, and Google Data Studio
Module 5: Deriving Insights from Unstructured Data Using Machine Learning
Module 6: Summary
DetailsOrganizerNIH STRIDESWhenFri, Oct 15, 2021 - 9:00 am - 4:00 pmWhereOnline |
This course will introduce you to Google Cloud's big data and machine learning functions. You'll begin with a quick overview of Google Cloud and then dive deeper into its data processing capabilities. Prerequisites Roughly one year of experience with one or more of the following: ● A common query language such as SQL. ● Extract, transform, and load activities. ● Data modeling. ● Machine learning and/or statistics. ● Programming in Python. Objectives ● Identify the purpose and value of the key Big Data and Machine Learning products in Google Cloud. ● Use Cloud SQL and Dataproc to migrate existing MySQL and Hadoop/Pig/Spark/Hive workloads to Google Cloud. ● Employ BigQuery and Cloud SQL to carry out interactive data analysis. ● Choose between different data processing products in Google Cloud. ● Create ML models with BigQuery ML, ML APIs, and AutoML. Audience ● Data analysts, data scientists, and business analysts who are getting started with Google Cloud. ● Individuals responsible for designing pipelines and architectures for data processing, creating and maintaining machine learning and statistical models, querying datasets, visualizing query results, and creating reports. ● Executives and IT decision makers evaluating Google Cloud for use by data scientists. Course Outline The course includes presentations, demonstrations, and hands-on labs. Module 1: Introduction to Google Cloud Identify the different aspects of Google Cloud’s infrastructure. Identify the big data and ML products that form Google Cloud. Module 2: Recommending Products Using Cloud SQL and Spark Review how businesses use recommendation models. Evaluate how and where you will compute and store your housing rental model results. Analyze how running Hadoop in the cloud with Dataproc can enable scale. Evaluate different approaches for storing recommendation data off-cluster. Module 3: Predicting Visitor Purchases Using BigQuery ML Analyze big data at scale with BigQuery. Learn how BigQuery processes queries and stores data at scale. Walkthrough key ML terms: features, labels, training data. Evaluate the different types of models for structured datasets. Create custom ML models with BigQuery ML. Module 4: Real-time Dashboards with Pub/Sub, Dataflow, and Google Data Studio Identify modern data pipeline challenges and how to solve them at scale with Dataflow. Design streaming pipelines with Apache Beam. Build collaborative real-time dashboards with Data Studio. Module 5: Deriving Insights from Unstructured Data Using Machine Learning Evaluate how businesses use unstructured ML models and how the models work. Choose the right approach for machine learning models between pre-built and custom. Create a high-performing custom image classification model with no code using AutoML. Module 6: Summary Recap of key learning points. Resources. | 2021-10-15 09:00:00 | Online | Cloud | Online | NIH STRIDES | 0 | GCP Fundamentals - Big Data & Machine Learning | |||
447 |
Description
For the Advanced Training, topics covered depend upon survey results: find key hubs using over-connectivity analysis; using Microarray repository for gene comparisons against public data; building networks with MetaCore; constructing your own pathway maps; performing toxicogenomic analysis in MetaCore; analyzing and building networks with miRNA and mRNA data; analyzing multi-omics data (RNA-seq, proteomics, metabolomics, etc).
For the Advanced Training, topics covered depend upon survey results: find key hubs using over-connectivity analysis; using Microarray repository for gene comparisons against public data; building networks with MetaCore; constructing your own pathway maps; performing toxicogenomic analysis in MetaCore; analyzing and building networks with miRNA and mRNA data; analyzing multi-omics data (RNA-seq, proteomics, metabolomics, etc).
DetailsOrganizerNIH Training LibraryWhenTue, Oct 19, 2021 - 9:30 am - 10:30 amWhereOnline |
For the Advanced Training, topics covered depend upon survey results: find key hubs using over-connectivity analysis; using Microarray repository for gene comparisons against public data; building networks with MetaCore; constructing your own pathway maps; performing toxicogenomic analysis in MetaCore; analyzing and building networks with miRNA and mRNA data; analyzing multi-omics data (RNA-seq, proteomics, metabolomics, etc). | 2021-10-19 09:30:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | METACORE ADVANCED SESSION | |||
482 |
Description
Hosted by NIH.AI and NVIDIA, this three-hour workshop will offer opportunities to share the latest updates in applying machine learning in medical image analysis and ongoing activities across the National Institutes of Health (NIH). NVIDIA specialists will deliver targeted presentations and NIH and Fellows will deliver lighting talks about their work. There will be plenty of time for open discussion among peers and across disciplines.
Hosted by NIH.AI and NVIDIA, this three-hour workshop will offer opportunities to share the latest updates in applying machine learning in medical image analysis and ongoing activities across the National Institutes of Health (NIH). NVIDIA specialists will deliver targeted presentations and NIH and Fellows will deliver lighting talks about their work. There will be plenty of time for open discussion among peers and across disciplines.
DetailsOrganizerNIH.AIWhenTue, Oct 19, 2021 - 1:00 pm - 4:00 pmWhereOnline |
Hosted by NIH.AI and NVIDIA, this three-hour workshop will offer opportunities to share the latest updates in applying machine learning in medical image analysis and ongoing activities across the National Institutes of Health (NIH). NVIDIA specialists will deliver targeted presentations and NIH and Fellows will deliver lighting talks about their work. There will be plenty of time for open discussion among peers and across disciplines. | 2021-10-19 13:00:00 | Online | Artificial Intelligence / Machine Learning,Image Analysis | Online | NIH.AI | 0 | Deep Learning for Computer Vision and Medical Image Analysis | |||
448 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH Training LibraryWhenWed, Oct 20, 2021 - 3:00 pm - 4:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2021-10-20 15:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 1 | |||
483 |
Description
Presenter:
Trevor Bedford, Ph.D.
Associate Professor
Vaccine and Infectious Disease Division
Human Biology Division
Herbold Computational Biology Program
Fred Hutchinson Cancer Research Center
Genomic epidemiology has enabled critical insights during the COVID-19 pandemic. At the forefront of these insights has been SARS-CoV-2's remarkable potential for adaptive evolution. Dr. Bedford will discuss the evolutionary dynamics of SARS-CoV-2 with a focus on the emergence of variant of concern and variant of interest viruses. ...Read More
Presenter:
Trevor Bedford, Ph.D.
Associate Professor
Vaccine and Infectious Disease Division
Human Biology Division
Herbold Computational Biology Program
Fred Hutchinson Cancer Research Center
Genomic epidemiology has enabled critical insights during the COVID-19 pandemic. At the forefront of these insights has been SARS-CoV-2's remarkable potential for adaptive evolution. Dr. Bedford will discuss the evolutionary dynamics of SARS-CoV-2 with a focus on the emergence of variant of concern and variant of interest viruses. He will characterize mutational patterns in these variant viruses and chart their spread across geographies. He also will provide a larger perspective on genomic surveillance, projected future viral circulation patterns, and strategies for ongoing pandemic management.
Dr. Bedford is an associate professor in the vaccine and infectious disease division, the human biology division, and the Herbold Computational Biology Program at Fred Hutch. The Bedford lab studies the rapid spread and evolution of viruses, including those that cause COVID-19, influenza, Ebola, and Zika. Bedford's visual representations of viral family trees are used to show how the fate of dangerous outbreaks is often determined by the genetics of the infectious agent, human behavior, and geography.
Link now to https://videocast.nih.gov/ical.ics?live=43795 to add this to your Outlook calendar. Continuing Medical Education (CME) credits will be available; the code will be announced at the start of the lecture.
DetailsWhenWed, Oct 20, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Presenter: Trevor Bedford, Ph.D. Associate Professor Vaccine and Infectious Disease Division Human Biology Division Herbold Computational Biology Program Fred Hutchinson Cancer Research Center Genomic epidemiology has enabled critical insights during the COVID-19 pandemic. At the forefront of these insights has been SARS-CoV-2's remarkable potential for adaptive evolution. Dr. Bedford will discuss the evolutionary dynamics of SARS-CoV-2 with a focus on the emergence of variant of concern and variant of interest viruses. He will characterize mutational patterns in these variant viruses and chart their spread across geographies. He also will provide a larger perspective on genomic surveillance, projected future viral circulation patterns, and strategies for ongoing pandemic management. Dr. Bedford is an associate professor in the vaccine and infectious disease division, the human biology division, and the Herbold Computational Biology Program at Fred Hutch. The Bedford lab studies the rapid spread and evolution of viruses, including those that cause COVID-19, influenza, Ebola, and Zika. Bedford's visual representations of viral family trees are used to show how the fate of dangerous outbreaks is often determined by the genetics of the infectious agent, human behavior, and geography. Link now to https://videocast.nih.gov/ical.ics?live=43795 to add this to your Outlook calendar. Continuing Medical Education (CME) credits will be available; the code will be announced at the start of the lecture. | 2021-10-20 15:00:00 | Online | Data Science,Genomics | In-Person | 0 | Evolutionary Dynamics of SARS-CoV-2 | ||||
358 |
Description
Register Now
Faculty: Joao Xavier, PhD – Memorial Sloan Kettering Cancer Center; NCI CSBC
Moderator: Matthew J. Reilley, MD – University of Virginia
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as ...Read More
Register Now
Faculty: Joao Xavier, PhD – Memorial Sloan Kettering Cancer Center; NCI CSBC
Moderator: Matthew J. Reilley, MD – University of Virginia
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series.
Learning Objectives
A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research.
Series Organizers
Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Big Data and Data Sharing Committee, Chair
Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Co-Chair
Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Immediate Past Chair
Carsten Krieg, PhD – Medical University of South Carolina
Big Data and Data Sharing Committee, Member
DetailsOrganizerNCI and the Society for Immunotherapy of Cancer (SITC)WhenWed, Oct 20, 2021 - 4:30 pm - 5:30 pmWhereOnline |
Register Now Faculty: Joao Xavier, PhD – Memorial Sloan Kettering Cancer Center; NCI CSBC Moderator: Matthew J. Reilley, MD – University of Virginia Target Audience This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series. Learning Objectives A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research. Series Organizers Kellie N. Smith, PhD – Johns Hopkins School of Medicine Big Data and Data Sharing Committee, Chair Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Co-Chair Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Immediate Past Chair Carsten Krieg, PhD – Medical University of South Carolina Big Data and Data Sharing Committee, Member | 2021-10-20 16:30:00 | Online | Single Cell Technologies,Cancer,Data Science | Online | NCI and the Society for Immunotherapy of Cancer (SITC) | 0 | SINGLE-CELL PROTEOMICS | |||
1003 |
Description
Announcing a FREE 30 day TRIAL to Qiagen IPA's Land Explorer (an add-on to the existing NCI Qiagen IPA license). If you are interested in access to the FREE TRIAL, please register for this webinar.
If you are not a current IPA user and would like to try it, please submit a ticket at https://service.cancer.gov
A follow-up survey will gather your input and ...Read More
Announcing a FREE 30 day TRIAL to Qiagen IPA's Land Explorer (an add-on to the existing NCI Qiagen IPA license). If you are interested in access to the FREE TRIAL, please register for this webinar.
If you are not a current IPA user and would like to try it, please submit a ticket at https://service.cancer.gov
A follow-up survey will gather your input and opinion as to whether this tool should be added to the NCI Qiagen IPA license. Feedback is CRITICAL to making this happen.
WebEx meeting link
Learn how to leverage IPA’s Land Explorer to navigate >500,000 'omics samples from GEO, SRA, ArrayExpress, TCGA, GTEx and other sources.
RegisterOrganizerBTEPWhenThu, Oct 21, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Announcing a FREE 30 day TRIAL to Qiagen IPA's Land Explorer (an add-on to the existing NCI Qiagen IPA license). If you are interested in access to the FREE TRIAL, please register for this webinar. If you are not a current IPA user and would like to try it, please submit a ticket at https://service.cancer.gov A follow-up survey will gather your input and opinion as to whether this tool should be added to the NCI Qiagen IPA license. Feedback is CRITICAL to making this happen. WebEx meeting link Learn how to leverage IPA’s Land Explorer to navigate >500,000 'omics samples from GEO, SRA, ArrayExpress, TCGA, GTEx and other sources. Discover and validate biomarkers Identify key regulators and targets Study biological, pathological and drug-target mechanisms Generate strong hypotheses supported by thousands of samples from public domain. Land Explorer can help answer questions like: How is a gene/protein expressed across different diseases, tissues, cell types or other groups of interest? Is the expression of a gene correlated with expression of other genes? For a given gene, what mutation, CNV and fusion information can we get from TCGA? Is the survival of cohorts different if they have high vs low expression of a gene, or mutant vs wild type allele for a gene? What are the genes expressed in responders vs non-responders for a drug treatment? Access to this tool will be granted to all users on the NCI Ingenuity Pathway Analysis (IPA) license. The webinar will demonstrate how to access these features. If you are not a current Qiagen IPA user and would like to try it, you may request via the Service Desk. | 2021-10-21 13:00:00 | Online Webinar | Online | BTEP | 0 | Access GEO, SRA, ArrayExpress, TCGA, GTEx and more with Qiagen IPA Land Explorer FREE TRIAL for NCI | ||||
1006 |
Description
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the ...Read More
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Oct 21, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
RNA sequencing (RNA-seq) is a widely used method in genomics, which enables the interrogation of whole cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a RNA-seq workflow on the NIDAP collaboration platform, which is available and free to use for all NIH researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. Instructions will be emailed to you the week before the class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will be held at the date and time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~4.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind RNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic Bulk RNA-seq analysis, including filtering and QC, PCA, expression heatmaps, differential expression of genes analysis, volcano plots, and pathway/gene set analysis. After you complete this training, you will become eligible for further training workshops in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-10-21 14:00:00 | Online Webinar | Bulk RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Bulk RNA-Seq Analysis on NIDAP | ||
449 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
DetailsOrganizerNIH Training LibraryWhenThu, Oct 21, 2021 - 3:00 pm - 4:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2021-10-21 15:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 2 | |||
477 |
Description
Learn how to create and deploy containerized applications on Google Kubernetes Engine (GKE). This course features a combination of lectures, demos, and hands-on labs to help you explore and deploy solution elements —including infrastructure components like pods, and containers.
Prerequisites
To get the most out of this course, participants should have: - Completed Google Cloud Fundamentals: Core Infrastructure or have equivalent experience. - Basic proficiency with command-line tools and Linux operating system environments
Objectives
This ...Read More
Learn how to create and deploy containerized applications on Google Kubernetes Engine (GKE). This course features a combination of lectures, demos, and hands-on labs to help you explore and deploy solution elements —including infrastructure components like pods, and containers.
Prerequisites
To get the most out of this course, participants should have: - Completed Google Cloud Fundamentals: Core Infrastructure or have equivalent experience. - Basic proficiency with command-line tools and Linux operating system environments
Objectives
This course teaches participants the following skills: Understand how software containers work. - Understand the architecture of Kubernetes. - Understand the architecture of Google Cloud. - Understand how pod networking works in Kubernetes Engine. - Create Kubernetes Engine clusters using the Google Cloud Console and gcloud/ kubectl commands.
Audience
This class is intended for the following participants: - Cloud architects, administrators, and SysOps/DevOps personnel. - Individuals using Google Cloud to create new solutions or to integrate existing systems, application environments, and infrastructure with the Google Cloud.
Course Outline
The course includes presentations, demonstrations, and hands-on labs.
Module 1: Introduction to Google Cloud
Module 2: Containers and Kubernetes in Google Cloud
Module 3: Kubernetes Architecture
Module 4: Introduction to Kubernetes Workloads
DetailsOrganizerNIH STRIDESWhenFri, Oct 22, 2021 - 9:00 am - 4:00 pmWhereOnline |
Learn how to create and deploy containerized applications on Google Kubernetes Engine (GKE). This course features a combination of lectures, demos, and hands-on labs to help you explore and deploy solution elements —including infrastructure components like pods, and containers. Prerequisites To get the most out of this course, participants should have: - Completed Google Cloud Fundamentals: Core Infrastructure or have equivalent experience. - Basic proficiency with command-line tools and Linux operating system environments Objectives This course teaches participants the following skills: Understand how software containers work. - Understand the architecture of Kubernetes. - Understand the architecture of Google Cloud. - Understand how pod networking works in Kubernetes Engine. - Create Kubernetes Engine clusters using the Google Cloud Console and gcloud/ kubectl commands. Audience This class is intended for the following participants: - Cloud architects, administrators, and SysOps/DevOps personnel. - Individuals using Google Cloud to create new solutions or to integrate existing systems, application environments, and infrastructure with the Google Cloud. Course Outline The course includes presentations, demonstrations, and hands-on labs. Module 1: Introduction to Google Cloud Use the Google Cloud Console. Use Cloud Shell. Define Cloud Computing. Identify Google Cloud compute services. Understand regions and zones. Understand the Cloud resource hierarchy. Administer your Google Cloud resources. Module 2: Containers and Kubernetes in Google Cloud Create a container using Cloud Build. Store a container in Container Registry. Understand the relationship between Kubernetes and Google Kubernetes Engine (GKE). Understand how to choose among Google Cloud Compute platforms. Module 3: Kubernetes Architecture Understand the architecture of Kubernetes: pods, namespaces. Understand the control-plane components of Kubernetes. Create container images using Cloud Build. Store container images in Container Registry. Create a Kubernetes engine cluster. Module 4: Introduction to Kubernetes Workloads The kubectl command. Introduction to deployments. Pod networking. Volumes overview. | 2021-10-22 09:00:00 | Online | Cloud | Online | NIH STRIDES | 0 | Getting Started with Google Kubernetes Engine | |||
1002 |
Description
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m14c6833bc06f89408464fac5bb2e8ce9
Human cells generate remarkable regulatory and functional complexity from a finite set of genes. Production of mRNA isoforms through alternative RNA processing and modifications is essential for generating this complexity. With the rapid accumulation of cancer RNA-seq data ...Read More
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m14c6833bc06f89408464fac5bb2e8ce9
Human cells generate remarkable regulatory and functional complexity from a finite set of genes. Production of mRNA isoforms through alternative RNA processing and modifications is essential for generating this complexity. With the rapid accumulation of cancer RNA-seq data in public repositories, there is an unprecedented opportunity to elucidate the landscape and functional consequence of mRNA isoform variation in cancer. In this talk, Dr. Xing will discuss his lab’s computational tools for characterizing mRNA isoform variation, as well as key biological insights obtained when applying these tools to massive RNA-seq data across cancer and normal transcriptomes. Collectively, they have uncovered mRNA isoforms and associated regulatory networks that play crucial roles in tumor development and progression and have identified novel targets for therapy development.
Following the webinar, there will be a Question and Answer session for anyone with questions about mRNA isoform computational tools (rMATS, DARTS, new tools) from 2:00 to 3:00 p.m. It will be held at the same meeting link as the webinar.
RegisterOrganizerBTEPWhenTue, Oct 26, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m14c6833bc06f89408464fac5bb2e8ce9 Human cells generate remarkable regulatory and functional complexity from a finite set of genes. Production of mRNA isoforms through alternative RNA processing and modifications is essential for generating this complexity. With the rapid accumulation of cancer RNA-seq data in public repositories, there is an unprecedented opportunity to elucidate the landscape and functional consequence of mRNA isoform variation in cancer. In this talk, Dr. Xing will discuss his lab’s computational tools for characterizing mRNA isoform variation, as well as key biological insights obtained when applying these tools to massive RNA-seq data across cancer and normal transcriptomes. Collectively, they have uncovered mRNA isoforms and associated regulatory networks that play crucial roles in tumor development and progression and have identified novel targets for therapy development. Following the webinar, there will be a Question and Answer session for anyone with questions about mRNA isoform computational tools (rMATS, DARTS, new tools) from 2:00 to 3:00 p.m. It will be held at the same meeting link as the webinar. | 2021-10-26 13:00:00 | Online Webinar | Online | Yi Xing (Children\'s Hospital of Philadelphia) | BTEP | 0 | Computational Tools to Study mRNA Isoform Variation in Cancer | |||
481 |
Description
Wrapping up its final webinar of 2021, the NCI Cancer Research Data Commons (CRDC) Cancer Genomics Cloud (CGC) welcomes Cold Spring Harbor Laboratory fellow Dr. Pascal Belleau. He will share his findings from recent work on the CGC, typing the Human Leukocyte Antigen (HLA) class II complex in 11,000 patient samples from The Cancer Genome Atlas (TCGA) data set.
Through his study, Dr. Belleau investigated the presence and patterns of the HLA class II complex across 33 tumor ...Read More
Wrapping up its final webinar of 2021, the NCI Cancer Research Data Commons (CRDC) Cancer Genomics Cloud (CGC) welcomes Cold Spring Harbor Laboratory fellow Dr. Pascal Belleau. He will share his findings from recent work on the CGC, typing the Human Leukocyte Antigen (HLA) class II complex in 11,000 patient samples from The Cancer Genome Atlas (TCGA) data set.
Through his study, Dr. Belleau investigated the presence and patterns of the HLA class II complex across 33 tumor types. The HLA class II complex is a molecular component linked to the body’s immune response. Understanding how this molecular complex differs across cancer types can give us insight into how it may mediate the immune system’s response to cancer.
As one of the three Cloud Resources within the NCI CRDC, the Seven Bridges’ CGC provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale-analysis in the cloud.
Speaker:
Pascal Belleau, Ph.D.
Dr. Belleau is a computational biology postdoctoral fellow at the Quantitative Biology Department of Cold Spring Harbor Laboratory.
DetailsOrganizerCBIITWhenWed, Oct 27, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Wrapping up its final webinar of 2021, the NCI Cancer Research Data Commons (CRDC) Cancer Genomics Cloud (CGC) welcomes Cold Spring Harbor Laboratory fellow Dr. Pascal Belleau. He will share his findings from recent work on the CGC, typing the Human Leukocyte Antigen (HLA) class II complex in 11,000 patient samples from The Cancer Genome Atlas (TCGA) data set. Through his study, Dr. Belleau investigated the presence and patterns of the HLA class II complex across 33 tumor types. The HLA class II complex is a molecular component linked to the body’s immune response. Understanding how this molecular complex differs across cancer types can give us insight into how it may mediate the immune system’s response to cancer. As one of the three Cloud Resources within the NCI CRDC, the Seven Bridges’ CGC provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale-analysis in the cloud. Speaker: Pascal Belleau, Ph.D. Dr. Belleau is a computational biology postdoctoral fellow at the Quantitative Biology Department of Cold Spring Harbor Laboratory. | 2021-10-27 14:00:00 | Online | Data Science | Online | CBIIT | 0 | HLA Class II Across The Cancer Genome Atlas Cancer Dataset | |||
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The Cancer Genomics Cloud (CGC)(link is external), powered by Seven Bridges, is an NCI-funded resource that provides a unified platform for cancer data analysis by co-localizing three components within the cloud: 1) large cancer datasets from TCGA, CPTAC and several others; 2) more than 500 bioinformatics tools and best-practice workflows for analyzing multi-omics data; and 3) the computational capabilities to do large-scale analyses. This hands-on session of CGC allows the participants to browse, query, and filter datasets of interest and bring their own data for collaborative analysis. The CGC also provides the flexibility to use private tools and the ability to complete reproducible and interactive data analyses (e.g., RStudio, Jupyter notebook). Currently, data analysis is supported in both Google and Amazon cloud environments. Altogether, the CGC is a network of findable, accessible, interoperable, and reusable (FAIR) datasets, workflows, and services which make cancer data analysis faster and more easily available for all. | 2021-10-28 13:00:00 | Online | Cloud | Online | NIH Training Library | 0 | THE CANCER GENOMICS CLOUD: A SECURE AND SCALABLE PLATFORM TO ACCESS, SHARE, AND ANALYZE MULTI-OMICS DATASETS | |||
484 |
Description
Please join us for a discussion followed by question and answer session on the topic of “R or Python, Which Should I Learn?”.
We will be joined by Andrew Weisman of the Frederick National Laboratory for Cancer Research, Strategic Data Science Initiative (FNLCR, SDSI) and new BTEP Trainer Joe Wu to discuss the utility of R and Python for bioinformatics and data science analyses. You will gain insight into which of these 2 programming languages might ...Read More
Please join us for a discussion followed by question and answer session on the topic of “R or Python, Which Should I Learn?”.
We will be joined by Andrew Weisman of the Frederick National Laboratory for Cancer Research, Strategic Data Science Initiative (FNLCR, SDSI) and new BTEP Trainer Joe Wu to discuss the utility of R and Python for bioinformatics and data science analyses. You will gain insight into which of these 2 programming languages might be more appropriate for the types of analyses you want to perform. For example:
DetailsWhenThu, Oct 28, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Please join us for a discussion followed by question and answer session on the topic of “R or Python, Which Should I Learn?”. We will be joined by Andrew Weisman of the Frederick National Laboratory for Cancer Research, Strategic Data Science Initiative (FNLCR, SDSI) and new BTEP Trainer Joe Wu to discuss the utility of R and Python for bioinformatics and data science analyses. You will gain insight into which of these 2 programming languages might be more appropriate for the types of analyses you want to perform. For example: Are there bioinformatics or genomics specialized tools in R? (Bioconductor). In Python? (BioPython) What kinds of data visualization can I do in R and how do I do them? Should I use Python for Machine Learning? Can I run Python and R on my local machine? Should I use Python or R on NIH High Performance Unix Cluster Biowulf? What are Integrated Data Environments (IDE) for R and Python? Why should I use them and how do I access them? How do I upload my data into Python? Into R? Where should I go next to learn more about R and Python? | 2021-10-28 13:00:00 | Online | Programming,Data Science | Online | 0 | R or Python, Which Should I Learn? | ||||
1010 |
Description
For NCI Coursera license holders. Please join us for a discussion followed by question and answer session on the topic of "R or Python, Which Should I Learn?".
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mc0dcb9bacede1aa994ccf80cbca3d523
We will be joined by Andrew Weisman of the Frederick National Laboratory ...Read More
For NCI Coursera license holders. Please join us for a discussion followed by question and answer session on the topic of "R or Python, Which Should I Learn?".
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mc0dcb9bacede1aa994ccf80cbca3d523
We will be joined by Andrew Weisman of the Frederick National Laboratory for Cancer Research, Strategic Data Science Initiative (FNLCR, SDSI) and new BTEP Trainer Joe Wu to discuss the utility of R and Python for bioinformatics and data science analyses. You will gain insight into which of these 2 programming languages might be more appropriate for the types of analyses you want to perform. For example:
RegisterOrganizerBTEPWhenThu, Oct 28, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
For NCI Coursera license holders. Please join us for a discussion followed by question and answer session on the topic of "R or Python, Which Should I Learn?". Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mc0dcb9bacede1aa994ccf80cbca3d523 We will be joined by Andrew Weisman of the Frederick National Laboratory for Cancer Research, Strategic Data Science Initiative (FNLCR, SDSI) and new BTEP Trainer Joe Wu to discuss the utility of R and Python for bioinformatics and data science analyses. You will gain insight into which of these 2 programming languages might be more appropriate for the types of analyses you want to perform. For example: Are there bioinformatics or genomics specialized tools in R? (Bioconductor). In Python? (BioPython) What kinds of data visualization can I do in R and how do I do them? Should I use Python for Machine Learning? Can I run Python and R on my local machine? Should I use Python or R on NIH High Performance Unix Cluster Biowulf? What are Integrated Data Environments (IDE) for R and Python? Why should I use them and how do I access them? How do I upload my data into Python? Into R? Where should I go next to learn more about R and Python? For further reading: DataCamp: Choosing Python or R for Data Analysis? An infographic. Coursera, Python or R for Data Analysis: Which Should I Learn? Towards Data Science: R vs Python? Which Should Beginners Learn? | 2021-10-28 13:00:00 | Online Webinar | Online | Joe Wu (BTEP),Andrew Weisman Ph.D. (NCI) | BTEP | 0 | Coursera Study Groups: R or Python, Which Should I Learn ? | |||
1007 |
Description
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For ...Read More
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well.
This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page.
IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion.
Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter.
PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data.
RegisterOrganizerBTEPWhenThu, Oct 28, 2021 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Single-cell RNA sequencing (scRNA-seq) is a relatively new and powerful method in genomics, which enables the interrogation of whole single cellular transcriptomes. The CCR Collaborative Bioinformatics Resource (CCBR) has implemented a basic scRNA-seq workflow, based on the popular Seurat workflow, on the NIH Integrated Data Analysis Platform (NIDAP). This platform is available and free to use for all NCI researchers. The platform allows users to explore and build their analyses in a graphical environment. For researchers who are conversant in code, or who are interested in learning, all of the workflow code is easily viewable and modifiable, as well. This course will consist of a series of video tutorials that you may work through at your own speed, followed by a live virtual Discussion class in which you can ask our instructors to clarify or expand on any topics covered in the video tutorials. You will be emailed instructions on how to begin the week before your class starts. At that time, you will receive access to the tutorials and documentation, as well as a calendar invitation to your live Discussion class. Your live Discussion class will occur at the time shown at the top of this page. IT IS YOUR RESPONSIBILITY to complete ~3.5 hours of self-guided video tutorials BEFORE your scheduled Discussion class so that you can effectively participate in the discussion. Topics you will learn about include the theory behind scRNA-seq and many of the methodologies we use in the analysis, as well as a full tutorial on how to complete a basic scRNA-seq analysis, including filtering and QC, PCA and merging of objects, TSNE and UMAP projections, cell type annotation, coloring cells by gene expression or other metadata, and differential expression of genes analysis. After you complete this training, you will become eligible for further training tutorials in which you will learn how to upload your own data to the platform to begin your own analyses and gain access to workshops with our trainers to help you overcome any dataset-specific challenges that you may encounter. PLEASE NOTE: Trainees will need their own NIH username and password and an NIH computer capable of connecting to the secure NIH network using VPN. This is necessary to ensure the security and privacy of the data. | 2021-10-28 14:00:00 | Online Webinar | Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 0 | Single-cell RNA-Seq Analysis on NIDAP | ||
471 |
Description
FireCloud (Powered by Terra(link is external)) is a data analysis platform that contains a system of workspace functionalities centered on data sharing and analysis. Researchers can use FireCloud to perform a variety of analyses through two main mechanisms: batch workflow execution and interactive analysis (including data visualization). Workflow execution is achieved through a workflow management system called Cromwell, which ...Read More
FireCloud (Powered by Terra(link is external)) is a data analysis platform that contains a system of workspace functionalities centered on data sharing and analysis. Researchers can use FireCloud to perform a variety of analyses through two main mechanisms: batch workflow execution and interactive analysis (including data visualization). Workflow execution is achieved through a workflow management system called Cromwell, which is designed to be highly portable, capable of connecting to multiple computing platforms, and horizontally scalable. Interactive analysis is achieved through Jupyter notebooks or RStudio, which can be associated with a range of configurable runtime environments and incorporate various kernels and packages to support exploratory analyses of arbitrary scale and complexity.
In this hands-on session, we will introduce FireCloud to all attendees as a part of the NCI Cloud Resources. The participants will learn how to access key data sets such as TCGA and CPTAC and bring this data (or their own data) into a secure FireCloud workspace. Participants will also learn how to configure and launch workflows from their workspace and perform interactive analysis with applications such as Jupyter Notebooks, RStudio, and more. This session will also cover how billing operates in FireCloud and how to securely share the personal FireCloud workspace with collaborators.
DetailsOrganizerNIH Training LibraryWhenThu, Nov 04, 2021 - 1:00 pm - 4:00 pmWhereOnline |
FireCloud (Powered by Terra(link is external)) is a data analysis platform that contains a system of workspace functionalities centered on data sharing and analysis. Researchers can use FireCloud to perform a variety of analyses through two main mechanisms: batch workflow execution and interactive analysis (including data visualization). Workflow execution is achieved through a workflow management system called Cromwell, which is designed to be highly portable, capable of connecting to multiple computing platforms, and horizontally scalable. Interactive analysis is achieved through Jupyter notebooks or RStudio, which can be associated with a range of configurable runtime environments and incorporate various kernels and packages to support exploratory analyses of arbitrary scale and complexity. In this hands-on session, we will introduce FireCloud to all attendees as a part of the NCI Cloud Resources. The participants will learn how to access key data sets such as TCGA and CPTAC and bring this data (or their own data) into a secure FireCloud workspace. Participants will also learn how to configure and launch workflows from their workspace and perform interactive analysis with applications such as Jupyter Notebooks, RStudio, and more. This session will also cover how billing operates in FireCloud and how to securely share the personal FireCloud workspace with collaborators. | 2021-11-04 13:00:00 | Online | Cloud | Online | NIH Training Library | 0 | INTRODUCTION TO BROAD FIRECLOUD POWERED BY TERRA: SECURELY ANALYZING CANCER DATASETS IN THE CLOUD | |||
485 |
Description
Abstract: Existing human genome assemblies have almost entirely excluded highly repetitive sequences within and near centromeres, limiting our understanding of their organization, evolution, and essential role in chromosome segregation. Now, the first complete, telomere-to-telomere human genome assembly (T2T-CHM13) has enabled us to deeply characterize peri/centromeric repeats at single-base resolution, totaling 6.2% of the genome (189.9 Mb). Mapping the inner kinetochore protein CENP-A revealed overlap with the most recently duplicated subregions within centromeric repeat arrays. A ...Read More
Abstract: Existing human genome assemblies have almost entirely excluded highly repetitive sequences within and near centromeres, limiting our understanding of their organization, evolution, and essential role in chromosome segregation. Now, the first complete, telomere-to-telomere human genome assembly (T2T-CHM13) has enabled us to deeply characterize peri/centromeric repeats at single-base resolution, totaling 6.2% of the genome (189.9 Mb). Mapping the inner kinetochore protein CENP-A revealed overlap with the most recently duplicated subregions within centromeric repeat arrays. A comparison of chromosome X centromeres across a diverse panel of individuals illuminated high degrees of structural, epigenetic, and sequence variation. In total, we present an atlas of human centromeres to guide future studies of their complex and critical functions as well as their evolutionary dynamics.
DetailsWhenThu, Nov 04, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Abstract: Existing human genome assemblies have almost entirely excluded highly repetitive sequences within and near centromeres, limiting our understanding of their organization, evolution, and essential role in chromosome segregation. Now, the first complete, telomere-to-telomere human genome assembly (T2T-CHM13) has enabled us to deeply characterize peri/centromeric repeats at single-base resolution, totaling 6.2% of the genome (189.9 Mb). Mapping the inner kinetochore protein CENP-A revealed overlap with the most recently duplicated subregions within centromeric repeat arrays. A comparison of chromosome X centromeres across a diverse panel of individuals illuminated high degrees of structural, epigenetic, and sequence variation. In total, we present an atlas of human centromeres to guide future studies of their complex and critical functions as well as their evolutionary dynamics. | 2021-11-04 13:00:00 | Genomics | Online | 0 | Expanding Studies of Centromere Structure and Function in the Era of T2T Genomics | |||||
1009 |
Description
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mf0f44a00dfd24b954e3b3574894b21c4
Abstract: Existing human genome assemblies have almost entirely excluded highly repetitive sequences within and near centromeres, limiting our understanding of their organization, evolution, and essential role in chromosome segregation. Now, the first complete, telomere-to-telomere human genome ...Read More
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mf0f44a00dfd24b954e3b3574894b21c4
Abstract: Existing human genome assemblies have almost entirely excluded highly repetitive sequences within and near centromeres, limiting our understanding of their organization, evolution, and essential role in chromosome segregation. Now, the first complete, telomere-to-telomere human genome assembly (T2T-CHM13) has enabled us to deeply characterize peri/centromeric repeats at single-base resolution, totaling 6.2% of the genome (189.9 Mb). Mapping the inner kinetochore protein CENP-A revealed overlap with the most recently duplicated subregions within centromeric repeat arrays. A comparison of chromosome X centromeres across a diverse panel of individuals illuminated high degrees of structural, epigenetic, and sequence variation. In total, we present an atlas of human centromeres to guide future studies of their complex and critical functions as well as their evolutionary dynamics.
RegisterOrganizerBTEPWhenThu, Nov 04, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mf0f44a00dfd24b954e3b3574894b21c4 Abstract: Existing human genome assemblies have almost entirely excluded highly repetitive sequences within and near centromeres, limiting our understanding of their organization, evolution, and essential role in chromosome segregation. Now, the first complete, telomere-to-telomere human genome assembly (T2T-CHM13) has enabled us to deeply characterize peri/centromeric repeats at single-base resolution, totaling 6.2% of the genome (189.9 Mb). Mapping the inner kinetochore protein CENP-A revealed overlap with the most recently duplicated subregions within centromeric repeat arrays. A comparison of chromosome X centromeres across a diverse panel of individuals illuminated high degrees of structural, epigenetic, and sequence variation. In total, we present an atlas of human centromeres to guide future studies of their complex and critical functions as well as their evolutionary dynamics. | 2021-11-04 13:00:00 | Online Webinar | Online | Karen Miga (UCSC) | BTEP | 0 | Expanding Studies of Centromere Structure and Function in the Era of T2T Genomics | |||
465 |
Description
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training ...Read More
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, participants should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; and describe how to save data in R.
Participants are encouraged to install R(link is external) and RStudio(link is external) before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
DetailsOrganizerNIH Training LibraryWhenWed, Nov 10, 2021 - 1:00 pm - 2:15 pmWhereOnline |
This is the second class in the NIH Library Introduction to R Series. A basic understanding of R and RStudio is expected. This class provides a basic overview of R data types, data frames, and factors. Additionally, this class will cover indexing and subsetting data frames, and dealing with missing data. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, participants should be able to: define R data frames; characterize how to inspect data frames; list the major methods for describing the content and structure of data frames; illustrate how to index and subset a data frame; describe how to use comparison operators on a data frame; discuss R factors; describe how to convert R factors; describe how to rename factors; discuss options for dealing with missing data in R; and describe how to save data in R. Participants are encouraged to install R(link is external) and RStudio(link is external) before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. | 2021-11-10 13:00:00 | Online | Programming | Online | NIH Training Library | 0 | INTRODUCTION TO R DATA TYPES | |||
491 |
Description
The Cancer Genomics Cloud (CGC) is a cloud-based bioinformatics ecosystem supported by the National Cancer Institute (NCI). The CGC allows users to run computational workflows defined in the Common Workflow Language (CWL) on a wealth of large datasets, in place, in the cloud. Users may also upload their own data and take advantage of the scalability of cloud computing for their data analysis. In addition to the hundreds of publicly available bioinformatics workflows in the ...Read More
The Cancer Genomics Cloud (CGC) is a cloud-based bioinformatics ecosystem supported by the National Cancer Institute (NCI). The CGC allows users to run computational workflows defined in the Common Workflow Language (CWL) on a wealth of large datasets, in place, in the cloud. Users may also upload their own data and take advantage of the scalability of cloud computing for their data analysis. In addition to the hundreds of publicly available bioinformatics workflows in the CGC Public Apps Gallery users can employ a variety of methods to develop their own. These include an integrated graphical user interface for creating workflows, as well as an ecosystem of tools enabling local development and automated deployment of workflows to the CGC. We will detail how to develop efficient workflows for the CGC and how to use best practices such as version control and continuous integration with the CGC, using publicly available tools developed by Seven Bridges.
Presented by Dr. Jeffrey Grover, Genomics Scientist, Seven Bridges
Abstracts, Slides and Recordings from past CWIG webinars can be found here.
For questions and subscription, please reach us at NCICWIGUserMail@mail.nih.gov
Meeting number (access code): 180 425 7227
Meeting password: 6pSMQPBS$43
DetailsOrganizerNCI Containers and Workflows Interest GroupWhenFri, Nov 12, 2021 - 3:00 pm - 4:00 pmWhereOnline |
The Cancer Genomics Cloud (CGC) is a cloud-based bioinformatics ecosystem supported by the National Cancer Institute (NCI). The CGC allows users to run computational workflows defined in the Common Workflow Language (CWL) on a wealth of large datasets, in place, in the cloud. Users may also upload their own data and take advantage of the scalability of cloud computing for their data analysis. In addition to the hundreds of publicly available bioinformatics workflows in the CGC Public Apps Gallery users can employ a variety of methods to develop their own. These include an integrated graphical user interface for creating workflows, as well as an ecosystem of tools enabling local development and automated deployment of workflows to the CGC. We will detail how to develop efficient workflows for the CGC and how to use best practices such as version control and continuous integration with the CGC, using publicly available tools developed by Seven Bridges. Presented by Dr. Jeffrey Grover, Genomics Scientist, Seven Bridges Abstracts, Slides and Recordings from past CWIG webinars can be found here. For questions and subscription, please reach us at NCICWIGUserMail@mail.nih.gov Meeting number (access code): 180 425 7227 Meeting password: 6pSMQPBS$43 | 2021-11-12 15:00:00 | Online | Cancer,Genomics,Cloud | Online | NCI Containers and Workflows Interest Group | 0 | Developing Scalable Bioinformatics Workflows on the Cancer Genomics Cloud | |||
487 |
Description
The NCI HALO cloud deployment provides NCI researchers with powerful image management and analysis tools for digital pathology and numerous other 2D imaging applications. Key capabilities include expert user assessment, image archiving, and advanced AI analysis.
Given the diversity of image types, the range and complexity of analytic workflows, and the need for many investigators to incorporate orthogonal data, NCI has recently augmented HALO functionality with data aggregation by integrating HALO into the NIH Integrated ...Read More
The NCI HALO cloud deployment provides NCI researchers with powerful image management and analysis tools for digital pathology and numerous other 2D imaging applications. Key capabilities include expert user assessment, image archiving, and advanced AI analysis.
Given the diversity of image types, the range and complexity of analytic workflows, and the need for many investigators to incorporate orthogonal data, NCI has recently augmented HALO functionality with data aggregation by integrating HALO into the NIH Integrated Data Analysis Portal (NIDAP).
In this session of NCI’s IT Engagement Seminar Series (ITESS), DCEG's Scott Lawrence will show how to manage large-scale image analysis in HALO via NIDAP.
Topics will include:
DetailsOrganizerCBIITWhenTue, Nov 16, 2021 - 11:00 am - 12:00 pmWhereOnline |
The NCI HALO cloud deployment provides NCI researchers with powerful image management and analysis tools for digital pathology and numerous other 2D imaging applications. Key capabilities include expert user assessment, image archiving, and advanced AI analysis. Given the diversity of image types, the range and complexity of analytic workflows, and the need for many investigators to incorporate orthogonal data, NCI has recently augmented HALO functionality with data aggregation by integrating HALO into the NIH Integrated Data Analysis Portal (NIDAP). In this session of NCI’s IT Engagement Seminar Series (ITESS), DCEG's Scott Lawrence will show how to manage large-scale image analysis in HALO via NIDAP. Topics will include: leveraging NIDAP-HALO bidirectional communication to bring in disparate types, streamline data management across studies create new analysis workflows refine image analysis pipelines an update on NCI HALO AI Working Group efforts to create AI classifiers for in-platform use. | 2021-11-16 11:00:00 | Online | NIDAP,Image Analysis | Online | CBIIT | 0 | Overview of large-scale image analysis in HALO via NIDAP | |||
492 |
DescriptionPresenter: Rahul Satija, PhD, is a Core Faculty Member at the New York Genome Center (NYGC), with a joint appointment as Associate Professor at the Center for Genomics and Systems Biology at New York University (NYU). Prior to joining the NYGC, Dr. Satija was a postdoctoral researcher at the Broad Institute of Harvard and MIT, where he developed new methods for single cell analysis. The Satija ...Read More Presenter: Rahul Satija, PhD, is a Core Faculty Member at the New York Genome Center (NYGC), with a joint appointment as Associate Professor at the Center for Genomics and Systems Biology at New York University (NYU). Prior to joining the NYGC, Dr. Satija was a postdoctoral researcher at the Broad Institute of Harvard and MIT, where he developed new methods for single cell analysis. The Satija Lab focuses on developing computational and experimental methods to sequence and interpret the molecular contents of a single cell. His Lab applies single cell genomics to understand the causes and consequences of cell-to-cell variation, with a particular focus on immune regulation and early development. Dr. Satija is a recipient of the NIH New Innovator Award, and in 2020 was selected to direct an NIH Center for Excellence in Genomic Science. Dr. Satija holds a BS degree in Biology and Music from Duke University, and obtained his PhD in Statistics from Oxford University as a Rhodes Scholar. Meeting ID: 161 696 7428 Passcode: 711813DetailsOrganizerSystems Biology Interest GroupWhenTue, Nov 16, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Presenter: Rahul Satija, PhD, is a Core Faculty Member at the New York Genome Center (NYGC), with a joint appointment as Associate Professor at the Center for Genomics and Systems Biology at New York University (NYU). Prior to joining the NYGC, Dr. Satija was a postdoctoral researcher at the Broad Institute of Harvard and MIT, where he developed new methods for single cell analysis. The Satija Lab focuses on developing computational and experimental methods to sequence and interpret the molecular contents of a single cell. His Lab applies single cell genomics to understand the causes and consequences of cell-to-cell variation, with a particular focus on immune regulation and early development. Dr. Satija is a recipient of the NIH New Innovator Award, and in 2020 was selected to direct an NIH Center for Excellence in Genomic Science. Dr. Satija holds a BS degree in Biology and Music from Duke University, and obtained his PhD in Statistics from Oxford University as a Rhodes Scholar. Meeting ID: 161 696 7428 Passcode: 711813 | 2021-11-16 14:00:00 | Online | Online | Systems Biology Interest Group | 0 | Integrated analysis of single-cell data across technologies and modalities | ||||
488 |
Description
The webinar will highlight how Chromium Single Cell Solutions and Visium Spatial Solutions can uncover molecular insights, dissect cell-type differences, investigate the adaptive immune system, detect novel subtypes and biomarkers, and map the epigenetic landscape cell by cell. The seminar will provide an overview of the 10X product portfolio, focusing on the following:
The webinar will highlight how Chromium Single Cell Solutions and Visium Spatial Solutions can uncover molecular insights, dissect cell-type differences, investigate the adaptive immune system, detect novel subtypes and biomarkers, and map the epigenetic landscape cell by cell. The seminar will provide an overview of the 10X product portfolio, focusing on the following:
DetailsOrganizerCCR Single Cell Analysis and Sequencing FacilitiesWhenWed, Nov 17, 2021 - 11:00 am - 12:00 pmWhereOnline |
The webinar will highlight how Chromium Single Cell Solutions and Visium Spatial Solutions can uncover molecular insights, dissect cell-type differences, investigate the adaptive immune system, detect novel subtypes and biomarkers, and map the epigenetic landscape cell by cell. The seminar will provide an overview of the 10X product portfolio, focusing on the following: Profiling of the epigenome and transcriptome with Multiome ATAC + GE Assessing gene expression with morphological context with Visium Spatial Transcriptomics Economically scaling up experiments with new High-Throughput (HT) kits Presenter: Bradley Toms, Science and Technology Advisor, 10X Genomics For questions about this seminar, please contact: Michael Kelly, Ph.D. Single Cell Analysis Facility, CRTP 37 Convent Dr., Rm 1042A michael.kelly3@nih.gov | 2021-11-17 11:00:00 | Online | Single Cell Technologies | Online | CCR Single Cell Analysis and Sequencing Facilities | 0 | 10x Genomics Single Cell and Visium Spatial Product Overview for CCR | |||
489 |
Description
In this talk, Dr. David Kepplinger will describe the detrimental effects of “data-artifacts,” specifically as they relate to biomarker discovery and related feature selection techniques. He will also discuss a novel method for reliably identifying relevant biomarkers in the presence of such artifacts. This new method harnesses as much information as possible from the data and does not require prior specification of the form or source of the artifacts. According to Dr. Kepplinger, the method ...Read More
In this talk, Dr. David Kepplinger will describe the detrimental effects of “data-artifacts,” specifically as they relate to biomarker discovery and related feature selection techniques. He will also discuss a novel method for reliably identifying relevant biomarkers in the presence of such artifacts. This new method harnesses as much information as possible from the data and does not require prior specification of the form or source of the artifacts. According to Dr. Kepplinger, the method is proving to be more accurate than others currently in use. He will demonstrate how he used this method in a proteomic biomarker discovery study.
Increasingly affordable high-throughput proteomics and genome sequencing have led to an abundance of data, which, in turn, has resulted in numerous studies to find new biomarkers for disease. Extrapolating meaningful results can be challenging, however. Many biomarker studies feature small sample sizes from often heterogeneous populations, with hundreds or even thousands of sequenced genes. This not only leads to a very large pool of candidate biomarkers, but it also introduces a high risk for outliers and other forms of contamination that can lead to spurious discoveries.
Presenter: Dr. David Kepplinger
Dr. David Kepplinger is an assistant professor in the Department of Statistics at George Mason University. His research agenda centers on finding robust statistical solutions that can be translated into practical applications in biomedical science. In particular, Dr. Kepplinger is examining new ways of minimizing adverse contamination, or outliers found in data, to improve predictive models of disease.
DetailsOrganizerCBIITWhenWed, Nov 17, 2021 - 11:00 am - 12:00 pmWhereOnline |
In this talk, Dr. David Kepplinger will describe the detrimental effects of “data-artifacts,” specifically as they relate to biomarker discovery and related feature selection techniques. He will also discuss a novel method for reliably identifying relevant biomarkers in the presence of such artifacts. This new method harnesses as much information as possible from the data and does not require prior specification of the form or source of the artifacts. According to Dr. Kepplinger, the method is proving to be more accurate than others currently in use. He will demonstrate how he used this method in a proteomic biomarker discovery study. Increasingly affordable high-throughput proteomics and genome sequencing have led to an abundance of data, which, in turn, has resulted in numerous studies to find new biomarkers for disease. Extrapolating meaningful results can be challenging, however. Many biomarker studies feature small sample sizes from often heterogeneous populations, with hundreds or even thousands of sequenced genes. This not only leads to a very large pool of candidate biomarkers, but it also introduces a high risk for outliers and other forms of contamination that can lead to spurious discoveries. Presenter: Dr. David Kepplinger Dr. David Kepplinger is an assistant professor in the Department of Statistics at George Mason University. His research agenda centers on finding robust statistical solutions that can be translated into practical applications in biomedical science. In particular, Dr. Kepplinger is examining new ways of minimizing adverse contamination, or outliers found in data, to improve predictive models of disease. | 2021-11-17 11:00:00 | Online | Proteomics | Online | CBIIT | 0 | Robust Prediction of Stenosis from Protein Expression Data | |||
359 |
Description
Register Now
Faculty: Joao Xavier, PhD – Memorial Sloan Kettering Cancer Center; NCI CSBC
Moderator: Matthew J. Reilley, MD – University of Virginia
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as ...Read More
Register Now
Faculty: Joao Xavier, PhD – Memorial Sloan Kettering Cancer Center; NCI CSBC
Moderator: Matthew J. Reilley, MD – University of Virginia
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series.
Learning Objectives
A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research.
Series Organizers
Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Big Data and Data Sharing Committee, Chair
Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Co-Chair
Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Immediate Past Chair
Carsten Krieg, PhD – Medical University of South Carolina
Big Data and Data Sharing Committee, Member
DetailsOrganizerNCI and the Society for Immunotherapy of Cancer (SITC)WhenWed, Nov 17, 2021 - 4:30 pm - 5:30 pmWhereOnline |
Register Now Faculty: Joao Xavier, PhD – Memorial Sloan Kettering Cancer Center; NCI CSBC Moderator: Matthew J. Reilley, MD – University of Virginia Target Audience This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series. Learning Objectives A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research. Series Organizers Kellie N. Smith, PhD – Johns Hopkins School of Medicine Big Data and Data Sharing Committee, Chair Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Co-Chair Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Immediate Past Chair Carsten Krieg, PhD – Medical University of South Carolina Big Data and Data Sharing Committee, Member | 2021-11-17 16:30:00 | Online | Cancer,Data Science,Microbiome | Online | NCI and the Society for Immunotherapy of Cancer (SITC) | 0 | MICROBIOME ANALYSES | |||
493 |
Description
Presenter:
Greg Thurber, Ph.D.
University of Michigan
Presenter:
Greg Thurber, Ph.D.
University of Michigan
DetailsOrganizerMolecular Discovery Seminar SeriesWhenThu, Nov 18, 2021 - 10:00 am - 11:00 amWhereOnline |
Presenter: Greg Thurber, Ph.D. University of Michigan | 2021-11-18 10:00:00 | Online | Online | Molecular Discovery Seminar Series | 0 | Imaging and Computational Tools to Usher in the Next Wave of Antibody Drug Conjugate Approvals | ||||
466 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH Training LibraryWhenThu, Nov 18, 2021 - 12:00 pm - 1:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2021-11-18 12:00:00 | Online | Data Science | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 1 | |||
1011 |
Description
In this class, we will explore the basics of R. Topics covered will include:
In this class, we will explore the basics of R. Topics covered will include:
RegisterOrganizerBTEPWhenThu, Nov 18, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this class, we will explore the basics of R. Topics covered will include: Overview of R Studio IDE Checking R version and switching between different versions of R Working with directories Setting working directory Listing files in the working directory Importing files (csv, tab-delimited text, xlsx) Write data frames to csv Data manipulation including subsetting and filtering Basic plotting using R’s base plotting This will not be a hands-on class so no need to install anything prior to class. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=mda1ba0e0d1dda9e929ee492b1c8e2a5a Class recording: https://cbiit.webex.com/recordingservice/sites/cbiit/recording/playback/b5f1f8622ac7103aaf5f0050568ccf8b Class PowerPoint (slide 9 has a description of the parameters used to fine tune the bar plot): https://btep.ccr.cancer.gov/wp-content/uploads/getting_to_know_r_20211118-1.pptx If you have any questions, please email ncibtep@nih.gov | 2021-11-18 13:00:00 | Online Webinar | Online | Joe Wu (BTEP) | BTEP | 0 | Getting to know R | |||
467 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
DetailsOrganizerNIH Training LibraryWhenFri, Nov 19, 2021 - 12:00 pm - 1:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2021-11-19 12:00:00 | Online | Data Science | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 2 | |||
490 |
Description
High-resolution, whole-brain microscopy provides unprecedented new insights into the brain’s structural organization, molecular diversity and connectivity. The Brain Image Library (BIL) provides infrastructure that facilitates the sharing of this valuable data, enabling investigators to comply with NIH data sharing requirements. This talk will describe the BIL, the data contributed, the resources provided, and the data sharing challenges faced as the focus towards human brain imaging contemplates the capture of petabyte sized cellular-scale data.
Speaker: ...Read More
High-resolution, whole-brain microscopy provides unprecedented new insights into the brain’s structural organization, molecular diversity and connectivity. The Brain Image Library (BIL) provides infrastructure that facilitates the sharing of this valuable data, enabling investigators to comply with NIH data sharing requirements. This talk will describe the BIL, the data contributed, the resources provided, and the data sharing challenges faced as the focus towards human brain imaging contemplates the capture of petabyte sized cellular-scale data.
Speaker: Alexander Ropelewski
Mr. Ropelewski cultivated his 30+ year professional career at the Pittsburgh Supercomputing Center where he directs the Biomedical Applications Group, a group focused on enhancing the use of High-Performance Computing (HPC), Networking, and Data Science within the Biomedical Research Community. A computer scientist graduate from the University of Pittsburgh, Mr. Ropelewski’s HPC work includes the creation of parallel codes on a wide-range of computing architectures and major contributions to architectural frameworks for data-intensive projects. Ropelewski is currently PI and Operations Director for the BIL, an NIH funded national public resource enabling researchers to deposit, analyze, mine, share and interact with large brain image datasets. Other data intensive projects Mr. Ropelewski currently contributes to include the AUROA-US Breast Cancer Data Coordinating Center and the Infrastructure and Engagement component of the NIH HuBMAP project. In addition to those data intensive projects, Ropelewski co-directs the training and dissemination components of the National Center for Multiscale Modeling of Biological Systems. In the recent past, he led the PSC’s NIH funded MARC program, a multi-institutional collaborative bioinformatics training effort involving scientists and educators at several Minority Serving Institutions.
The seminar is open to the public and registration is required each month.
DetailsWhenFri, Nov 19, 2021 - 12:00 pm - 1:00 pmWhereOnline |
High-resolution, whole-brain microscopy provides unprecedented new insights into the brain’s structural organization, molecular diversity and connectivity. The Brain Image Library (BIL) provides infrastructure that facilitates the sharing of this valuable data, enabling investigators to comply with NIH data sharing requirements. This talk will describe the BIL, the data contributed, the resources provided, and the data sharing challenges faced as the focus towards human brain imaging contemplates the capture of petabyte sized cellular-scale data. Speaker: Alexander Ropelewski Mr. Ropelewski cultivated his 30+ year professional career at the Pittsburgh Supercomputing Center where he directs the Biomedical Applications Group, a group focused on enhancing the use of High-Performance Computing (HPC), Networking, and Data Science within the Biomedical Research Community. A computer scientist graduate from the University of Pittsburgh, Mr. Ropelewski’s HPC work includes the creation of parallel codes on a wide-range of computing architectures and major contributions to architectural frameworks for data-intensive projects. Ropelewski is currently PI and Operations Director for the BIL, an NIH funded national public resource enabling researchers to deposit, analyze, mine, share and interact with large brain image datasets. Other data intensive projects Mr. Ropelewski currently contributes to include the AUROA-US Breast Cancer Data Coordinating Center and the Infrastructure and Engagement component of the NIH HuBMAP project. In addition to those data intensive projects, Ropelewski co-directs the training and dissemination components of the National Center for Multiscale Modeling of Biological Systems. In the recent past, he led the PSC’s NIH funded MARC program, a multi-institutional collaborative bioinformatics training effort involving scientists and educators at several Minority Serving Institutions. The seminar is open to the public and registration is required each month. | 2021-11-19 12:00:00 | Online | Image Analysis | Online | 0 | The Brain Image Library: A Resource for Sharing Microscopy Data | ||||
494 |
DescriptionPlease plan to attend the Earl Stadtman Investigator Program search seminar by: Francis O'Reilly, Ph.D. Technische Universität Berlin Dr. O'Reilly's research focuses on developing and using proteomics techniques in combination with structural biology technologies to discover the topology of protein complexes. Please plan to attend the Earl Stadtman Investigator Program search seminar by: Francis O'Reilly, Ph.D. Technische Universität Berlin Dr. O'Reilly's research focuses on developing and using proteomics techniques in combination with structural biology technologies to discover the topology of protein complexes. DetailsOrganizerEarl Stadtman Investigator ProgramWhenMon, Nov 22, 2021 - 10:00 am - 11:00 amWhereOnline |
Please plan to attend the Earl Stadtman Investigator Program search seminar by: Francis O'Reilly, Ph.D. Technische Universität Berlin Dr. O'Reilly's research focuses on developing and using proteomics techniques in combination with structural biology technologies to discover the topology of protein complexes. | 2021-11-22 10:00:00 | Online | Proteomics | Online | Earl Stadtman Investigator Program | 0 | Discovering the topology of protein complexes in situ using structural proteomics | |||
468 |
Description
This one-hour introductory class provides researchers with an overview of online resources for locating research datasets, data repositories, and data publications for data sharing and re-use. Participants will learn search strategies for locating datasets through federated data search portals and generalist data repositories, including directories for locating discipline-specific and institutional data repositories. An overview of key issues to consider when re-using datasets or when locating a data repository for sharing and preservation purposes will be ...Read More
This one-hour introductory class provides researchers with an overview of online resources for locating research datasets, data repositories, and data publications for data sharing and re-use. Participants will learn search strategies for locating datasets through federated data search portals and generalist data repositories, including directories for locating discipline-specific and institutional data repositories. An overview of key issues to consider when re-using datasets or when locating a data repository for sharing and preservation purposes will be discussed.
DetailsOrganizerNIH Training LibraryWhenMon, Nov 22, 2021 - 11:00 am - 12:00 pmWhereOnline |
This one-hour introductory class provides researchers with an overview of online resources for locating research datasets, data repositories, and data publications for data sharing and re-use. Participants will learn search strategies for locating datasets through federated data search portals and generalist data repositories, including directories for locating discipline-specific and institutional data repositories. An overview of key issues to consider when re-using datasets or when locating a data repository for sharing and preservation purposes will be discussed. | 2021-11-22 11:00:00 | Online | Data Resources | Online | NIH Training Library | 0 | RESOURCES FOR FINDING AND SHARING RESEARCH DATA | |||
497 |
Description
Speaker:
Bill Wysocki, Ph.D, Director of User Services and Outreach for the GDC at the University of Chicago.
The NCI Genomic Data Commons’s (GDC) November webinar will show researchers how to both download from and upload to the GDC. As a data sharing platform within the NCI Cancer Research Data Commons (CRDC), the GDC ...Read More
Speaker:
Bill Wysocki, Ph.D, Director of User Services and Outreach for the GDC at the University of Chicago.
The NCI Genomic Data Commons’s (GDC) November webinar will show researchers how to both download from and upload to the GDC. As a data sharing platform within the NCI Cancer Research Data Commons (CRDC), the GDC provides access to large quantities of genomic data in and around 18 formats. GDC provides a variety of ways for users to transfer the high volume of available data.
During the webinar, GDC’s Dr. Bill Wysocki will cover:
DetailsOrganizerNCI Genomic Data CommonsWhenMon, Nov 29, 2021 - 2:00 pm - 3:00 pmWhereOnline |
Speaker: Bill Wysocki, Ph.D, Director of User Services and Outreach for the GDC at the University of Chicago. The NCI Genomic Data Commons’s (GDC) November webinar will show researchers how to both download from and upload to the GDC. As a data sharing platform within the NCI Cancer Research Data Commons (CRDC), the GDC provides access to large quantities of genomic data in and around 18 formats. GDC provides a variety of ways for users to transfer the high volume of available data. During the webinar, GDC’s Dr. Bill Wysocki will cover: how to download data from the GDC using the GDC Data Portal, Data Transfer Tool, and API. how to upload data through GDC’s Data Transfer Tool and API. frequently asked questions and helpful tips for transferring data. Learn more about the GDC and its fellow data sharing components by visiting the CRDC | 2021-11-29 14:00:00 | Online | Data Science | Online | NCI Genomic Data Commons | 0 | Genomic Data Commons Download and Upload Strategies | |||
498 |
Description
Speaker:
James Lacey, Ph.D., M.P.H.
Dr. James Lacey is a City of Hope professor and director of the Division of Health Analytics within the Department of Computational and Quantitative Medicine. His research focuses on epidemiologic cohort studies, population-health informatics, expansion of the California Teachers Study, risk factors of gynecologic cancers, and post-menopausal hormone use and cancer risk.
In this talk, Dr. James Lacey will describe the choices the cancer research community should ...Read More
Speaker:
James Lacey, Ph.D., M.P.H.
Dr. James Lacey is a City of Hope professor and director of the Division of Health Analytics within the Department of Computational and Quantitative Medicine. His research focuses on epidemiologic cohort studies, population-health informatics, expansion of the California Teachers Study, risk factors of gynecologic cancers, and post-menopausal hormone use and cancer risk.
In this talk, Dr. James Lacey will describe the choices the cancer research community should consider and the questions they need to ask when transitioning their research projects to a cloud-based ecosystem.
Broad and early adoption of cloud computing like NCI’s Cancer Research Data Commons (CRDC) has the potential to accelerate cancer research and to eliminate some of today’s most pressing “pain points” involved in data access, use, tracking, sharing, and reporting. This essential transition also brings with it a major shift in how cancer researchers conduct their research. Dr. Lacey will discuss this new way of approaching research questions and the importance of considering the full data lifecycle right from the start.
Dr. Lacey is the lead principal investigator of the City of Hope’s California Teachers Study, a large epidemiological study on the incidence of breast cancer. In 2016, this landmark study moved to the cloud, giving Dr. Lacey a unique perspective on some of the unanticipated, underrecognized, and unintended consequences of transitioning an active, real-world, and large-scale NCI-funded research project to the cloud and the CRDC framework. He will discuss the lessons learned in making this transition and the decisions research teams need to consider to ensure they leverage all the benefits of a cloud environment.
DetailsWhenWed, Dec 01, 2021 - 11:00 am - 12:00 pmWhereOnline |
Speaker: James Lacey, Ph.D., M.P.H. Dr. James Lacey is a City of Hope professor and director of the Division of Health Analytics within the Department of Computational and Quantitative Medicine. His research focuses on epidemiologic cohort studies, population-health informatics, expansion of the California Teachers Study, risk factors of gynecologic cancers, and post-menopausal hormone use and cancer risk. In this talk, Dr. James Lacey will describe the choices the cancer research community should consider and the questions they need to ask when transitioning their research projects to a cloud-based ecosystem. Broad and early adoption of cloud computing like NCI’s Cancer Research Data Commons (CRDC) has the potential to accelerate cancer research and to eliminate some of today’s most pressing “pain points” involved in data access, use, tracking, sharing, and reporting. This essential transition also brings with it a major shift in how cancer researchers conduct their research. Dr. Lacey will discuss this new way of approaching research questions and the importance of considering the full data lifecycle right from the start. Dr. Lacey is the lead principal investigator of the City of Hope’s California Teachers Study, a large epidemiological study on the incidence of breast cancer. In 2016, this landmark study moved to the cloud, giving Dr. Lacey a unique perspective on some of the unanticipated, underrecognized, and unintended consequences of transitioning an active, real-world, and large-scale NCI-funded research project to the cloud and the CRDC framework. He will discuss the lessons learned in making this transition and the decisions research teams need to consider to ensure they leverage all the benefits of a cloud environment. | 2021-12-01 11:00:00 | Online | Data Science | Online | 0 | A Tension: Growing Pains as Research and Researchers Adopt and Adapt to Cloud and Commons | ||||
486 |
Description
Key Pathway Advisor (KPA) is a web application for biological pathway analysis of OMICs data. This session will demonstrate using KPA to: explore the biological meaning of data; predict key protein activity changes that could be the root cause of gene expression alterations; understand how biological pathways are impacted by data; create hypotheses about new targets, mechanisms of action, biomarkers and disease associations; and align results with current knowledge of biomarkers and drug targets. Bioinformatics ...Read More
Key Pathway Advisor (KPA) is a web application for biological pathway analysis of OMICs data. This session will demonstrate using KPA to: explore the biological meaning of data; predict key protein activity changes that could be the root cause of gene expression alterations; understand how biological pathways are impacted by data; create hypotheses about new targets, mechanisms of action, biomarkers and disease associations; and align results with current knowledge of biomarkers and drug targets. Bioinformatics experience is not required to use this tool.
DetailsOrganizerNIH Training LibraryWhenThu, Dec 02, 2021 - 9:30 am - 10:30 amWhereOnline |
Key Pathway Advisor (KPA) is a web application for biological pathway analysis of OMICs data. This session will demonstrate using KPA to: explore the biological meaning of data; predict key protein activity changes that could be the root cause of gene expression alterations; understand how biological pathways are impacted by data; create hypotheses about new targets, mechanisms of action, biomarkers and disease associations; and align results with current knowledge of biomarkers and drug targets. Bioinformatics experience is not required to use this tool. | 2021-12-02 09:30:00 | Online | Pathway Analysis,Omics | Online | NIH Training Library | 0 | USING KEY PATHWAY ADVISOR FOR PATHWAY ANALYSIS | |||
501 |
Description
*** This seminar is open to the public, but registration is required.
Recent genomic and imaging technologies that measure features at the resolution of single cells present exciting opportunities to characterize diverse immune cell states in various disease contexts and elucidate their circuitry and role in driving response to therapies. However, analyzing and integrating single-cell data across patients, time points, and data modalities involves significant statistical and computational challenges. Dr. Azizi will present a set of ...Read More
*** This seminar is open to the public, but registration is required.
Recent genomic and imaging technologies that measure features at the resolution of single cells present exciting opportunities to characterize diverse immune cell states in various disease contexts and elucidate their circuitry and role in driving response to therapies. However, analyzing and integrating single-cell data across patients, time points, and data modalities involves significant statistical and computational challenges. Dr. Azizi will present a set of machine learning methods developed to address problems such as handling sparsity and noise, distinguishing technical variation from biological heterogeneity, inferring underlying circuitry, and inferring temporal dynamics of immune states in clinical cohorts. Dr. Azizi will also present novel biological insights obtained from applying these methods to cancer systems. These results include continuous phenotypic expansion of immune cells when interfacing with breast tumors and detecting key exhausted T cell subsets with divergent temporal dynamics that define response to immunotherapy in leukemia.
Speaker:
Elham Azizi, Ph.D.
Herbert & Florence Irving Assistant Professor of Cancer Data Research at the Irving Institute for Cancer Dynamics
Assistant Professor of Biomedical Engineering
Columbia University
DetailsOrganizerNIAIDWhenFri, Dec 03, 2021 - 12:00 pm - 1:00 pmWhereOnline |
*** This seminar is open to the public, but registration is required. Recent genomic and imaging technologies that measure features at the resolution of single cells present exciting opportunities to characterize diverse immune cell states in various disease contexts and elucidate their circuitry and role in driving response to therapies. However, analyzing and integrating single-cell data across patients, time points, and data modalities involves significant statistical and computational challenges. Dr. Azizi will present a set of machine learning methods developed to address problems such as handling sparsity and noise, distinguishing technical variation from biological heterogeneity, inferring underlying circuitry, and inferring temporal dynamics of immune states in clinical cohorts. Dr. Azizi will also present novel biological insights obtained from applying these methods to cancer systems. These results include continuous phenotypic expansion of immune cells when interfacing with breast tumors and detecting key exhausted T cell subsets with divergent temporal dynamics that define response to immunotherapy in leukemia. Speaker: Elham Azizi, Ph.D. Herbert & Florence Irving Assistant Professor of Cancer Data Research at the Irving Institute for Cancer Dynamics Assistant Professor of Biomedical Engineering Columbia University | 2021-12-03 12:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIAID | 0 | Machine Learning for Modeling Dynamics of Immune Cell States | |||
504 |
Description
Presenter:
Dr. Zemin Zhang is a Professor at Peking University and a Principal Investigator at Biomedical Pioneering Innovation Center (BIOPIC). He obtained his BS from Nankai University and PhD from Penn State University. He conducted postdoctoral training at UCSF and spent ~17 years at Genentech/Roche prior to joining Peking University. His lab focuses on understanding the detailed characteristics of the tumor microenvironment, particularly the interplay between immune and cancer cells using single cell sequencing technologies, ...Read More
Presenter:
Dr. Zemin Zhang is a Professor at Peking University and a Principal Investigator at Biomedical Pioneering Innovation Center (BIOPIC). He obtained his BS from Nankai University and PhD from Penn State University. He conducted postdoctoral training at UCSF and spent ~17 years at Genentech/Roche prior to joining Peking University. His lab focuses on understanding the detailed characteristics of the tumor microenvironment, particularly the interplay between immune and cancer cells using single cell sequencing technologies, with the goal of identifying rare cell subtypes that are causally related to cancer. His lab is also pursuing the development of novel bioinformatics tools for single cell data integration and analysis. He is a CUSBEA Scholar as well as Cheung Kong Scholar.
DetailsOrganizerNCI CCR Liver Cancer Program (LCP)WhenMon, Dec 06, 2021 - 9:00 am - 10:00 amWhereOnline |
Presenter: Dr. Zemin Zhang is a Professor at Peking University and a Principal Investigator at Biomedical Pioneering Innovation Center (BIOPIC). He obtained his BS from Nankai University and PhD from Penn State University. He conducted postdoctoral training at UCSF and spent ~17 years at Genentech/Roche prior to joining Peking University. His lab focuses on understanding the detailed characteristics of the tumor microenvironment, particularly the interplay between immune and cancer cells using single cell sequencing technologies, with the goal of identifying rare cell subtypes that are causally related to cancer. His lab is also pursuing the development of novel bioinformatics tools for single cell data integration and analysis. He is a CUSBEA Scholar as well as Cheung Kong Scholar. | 2021-12-06 09:00:00 | Online | Single Cell Technologies,Cancer | Online | NCI CCR Liver Cancer Program (LCP) | 0 | Single Cell Analysis of Tumor Infiltrating Immune Cells in Liver Cancer and Beyond | |||
505 |
Description
Researchers have identified potential biomarkers, representing both biological and social factors, that can impact cancer incidence and care outcomes. Those biomarkers are being gleaned from a wide variety of data in the Cancer Research Data Ecosystem, from wearable sensors to blood tests. In this webinar, Drs. Mancini and Gilmore will describe how different types of biomarkers can ...Read More
Researchers have identified potential biomarkers, representing both biological and social factors, that can impact cancer incidence and care outcomes. Those biomarkers are being gleaned from a wide variety of data in the Cancer Research Data Ecosystem, from wearable sensors to blood tests. In this webinar, Drs. Mancini and Gilmore will describe how different types of biomarkers can be used to examine the effects of cancer and cancer treatment on trajectories related to aging. Examples include digital biomarkers related to gait and balance, as well as a biological biomarker reflecting epigenetic age.
This webinar is hosted by NCI’s Behavioral Research Program and Epidemiology and Genomics Research Program.
Speakers:
Martina Mancini, Ph.D.
Dr. Martina Mancini is an assistant professor of neurology at the School of Medicine Balance Disorders Laboratory, Oregon Health & Science University.
Nikesha Gilmore, Ph.D.
Dr. Nikesha Gilmore is a research assistant professor in the Department of Surgery, School of Medicine and Dentistry at the University of Rochester Medical Center.
DetailsWhenMon, Dec 06, 2021 - 1:00 pm - 2:00 pmWhereOnline |
Researchers have identified potential biomarkers, representing both biological and social factors, that can impact cancer incidence and care outcomes. Those biomarkers are being gleaned from a wide variety of data in the Cancer Research Data Ecosystem, from wearable sensors to blood tests. In this webinar, Drs. Mancini and Gilmore will describe how different types of biomarkers can be used to examine the effects of cancer and cancer treatment on trajectories related to aging. Examples include digital biomarkers related to gait and balance, as well as a biological biomarker reflecting epigenetic age. This webinar is hosted by NCI’s Behavioral Research Program and Epidemiology and Genomics Research Program. Speakers: Martina Mancini, Ph.D. Dr. Martina Mancini is an assistant professor of neurology at the School of Medicine Balance Disorders Laboratory, Oregon Health & Science University. Nikesha Gilmore, Ph.D. Dr. Nikesha Gilmore is a research assistant professor in the Department of Surgery, School of Medicine and Dentistry at the University of Rochester Medical Center. | 2021-12-06 13:00:00 | Online | Cancer,Image Analysis | Online | 0 | Discover Precision Medicine Approach for Breast Cancer Detection and Diagnosis | ||||
495 |
Description
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class:
Class #4 will focus on Generative Adversarial Networks and their application to bioimage synthesis.
Expected knowledge: Basic Python, Basic Linux/Unix, some Math.
This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be ...Read More
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class:
Class #4 will focus on Generative Adversarial Networks and their application to bioimage synthesis.
Expected knowledge: Basic Python, Basic Linux/Unix, some Math.
This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class.
Instructor: Gennady Denisov (NIH HPC staff)
The class is free but registration is required.
DetailsOrganizerHPC BiowulfWhenTue, Dec 07, 2021 - 9:30 am - 12:00 pmWhereOnline |
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class: Class #4 will focus on Generative Adversarial Networks and their application to bioimage synthesis. Expected knowledge: Basic Python, Basic Linux/Unix, some Math. This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class. Instructor: Gennady Denisov (NIH HPC staff) The class is free but registration is required. | 2021-12-07 09:30:00 | Online | Data Science | Online | HPC Biowulf | 0 | Deep Learning by Example on Biowulf - Class #4 | |||
496 |
Description
NCATS was sparked by the energy of patients, communities, and researchers frustrated by the high failure rate of drug development. This event will highlight collaborative efforts and state-of-the-art technologies that are breaking down barriers to bring more treatments to all people more quickly.
The agenda features conversations and lightning-round talks by thought leaders in research, clinical care, and advocacy who will share their perspectives on the transformational power of data, novel approaches for de-risking a ...Read More
NCATS was sparked by the energy of patients, communities, and researchers frustrated by the high failure rate of drug development. This event will highlight collaborative efforts and state-of-the-art technologies that are breaking down barriers to bring more treatments to all people more quickly.
The agenda features conversations and lightning-round talks by thought leaders in research, clinical care, and advocacy who will share their perspectives on the transformational power of data, novel approaches for de-risking a drug’s journey along the preclinical pathway, crosscutting solutions for many diseases, and high-impact innovations in clinical research.
DetailsWhenTue, Dec 07, 2021 - 12:30 pm - 5:00 pmWhereOnline |
NCATS was sparked by the energy of patients, communities, and researchers frustrated by the high failure rate of drug development. This event will highlight collaborative efforts and state-of-the-art technologies that are breaking down barriers to bring more treatments to all people more quickly. The agenda features conversations and lightning-round talks by thought leaders in research, clinical care, and advocacy who will share their perspectives on the transformational power of data, novel approaches for de-risking a drug’s journey along the preclinical pathway, crosscutting solutions for many diseases, and high-impact innovations in clinical research. | 2021-12-07 12:30:00 | Online | Data Science | Online | 0 | NCATS’ 10th Anniversary Event | ||||
1012 |
Description
This will be an introductory course on Jupyter Notebook. Jupyter Notebook is a powerful tool that helps researchers document code written for data analyses and subsequently share analyses with others. Ultimately, Jupyter Notebook facilitates reproducible data analysis. Jupyter Notebook supports various programming languages and among these are Python and R, which are commonly used in bioinformatics.
This will not be a hands-on course so no need to install anything ...Read More
This will be an introductory course on Jupyter Notebook. Jupyter Notebook is a powerful tool that helps researchers document code written for data analyses and subsequently share analyses with others. Ultimately, Jupyter Notebook facilitates reproducible data analysis. Jupyter Notebook supports various programming languages and among these are Python and R, which are commonly used in bioinformatics.
This will not be a hands-on course so no need to install anything prior to class.
Objectives for the course include:
RegisterOrganizerBTEPWhenThu, Dec 09, 2021 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This will be an introductory course on Jupyter Notebook. Jupyter Notebook is a powerful tool that helps researchers document code written for data analyses and subsequently share analyses with others. Ultimately, Jupyter Notebook facilitates reproducible data analysis. Jupyter Notebook supports various programming languages and among these are Python and R, which are commonly used in bioinformatics. This will not be a hands-on course so no need to install anything prior to class. Objectives for the course include: Obtain a solid understanding of what Jupyter Notebook does Become familiar with different approaches for accessing Jupyter Notebook Become familiar with the Jupyter Notebook interface and working in the notebook Obtain knowledge on ways to share Jupyter Notebook Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m4d29f346716c952d92aad3db4a335121 Class recording: https://cbiit.webex.com/cbiit/ldr.php?RCID=2a90c0bd794b63a972cf8d7aa4c501b6 | 2021-12-09 13:00:00 | Online Webinar | Online | Joe Wu (BTEP) | BTEP | 0 | Publishing your data analysis story with Jupyter Notebook | |||
507 |
Description
About the Seminar
Dr. Greene plans to discuss the richness of open data resources in biology and how they can support machine learning approaches and be enriched by such methods. He’ll also discuss how we might think about data sharing to maximize reuse and the value of our public investment.
About the Speaker
Dr. Casey Greene, Ph.D. is a Professor in the Department of Read More
About the Seminar
Dr. Greene plans to discuss the richness of open data resources in biology and how they can support machine learning approaches and be enriched by such methods. He’ll also discuss how we might think about data sharing to maximize reuse and the value of our public investment.
About the Speaker
Dr. Casey Greene, Ph.D. is a Professor in the Department of Biochemistry and Molecular Genetics(link is external) and the Director of the Center for Health AI(link is external) in the University of Colorado School of Medicine(link is external) and the Interim Director of the Colorado Center for Personalized Medicine(link is external). His lab develops machine learning methods that integrate distinct large-scale datasets to extract the rich and intrinsic information embedded in such integrated data. This approach reveals underlying principles of an organism’s genetics, its environment, and its response to that environment. He established the Research Parasite Award(link is external), which is given annually to exemplars of data reuse and accompanied by a cash prize.
The seminar is open to the public and registration is required each month.
DetailsOrganizerData Sharing and Reuse Seminar SeriesWhenFri, Dec 10, 2021 - 12:00 pm - 1:00 pmWhereOnline |
About the Seminar Dr. Greene plans to discuss the richness of open data resources in biology and how they can support machine learning approaches and be enriched by such methods. He’ll also discuss how we might think about data sharing to maximize reuse and the value of our public investment. About the Speaker Dr. Casey Greene, Ph.D. is a Professor in the Department of Biochemistry and Molecular Genetics(link is external) and the Director of the Center for Health AI(link is external) in the University of Colorado School of Medicine(link is external) and the Interim Director of the Colorado Center for Personalized Medicine(link is external). His lab develops machine learning methods that integrate distinct large-scale datasets to extract the rich and intrinsic information embedded in such integrated data. This approach reveals underlying principles of an organism’s genetics, its environment, and its response to that environment. He established the Research Parasite Award(link is external), which is given annually to exemplars of data reuse and accompanied by a cash prize. The seminar is open to the public and registration is required each month. | 2021-12-10 12:00:00 | Online | Data Science | Online | Data Sharing and Reuse Seminar Series | 0 | Open Data Can Power AI-based Approaches to Tackle Biomedical Challenges | |||
502 |
Description
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the Read More
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: describe the purpose of Tidyverse packages; select certain columns or rows in a data frame; describe the function of the pipe operator; add new columns to a dataframe that are functions of existing columns; use the split-apply-combine concept for data analysis; use summarize, group by, and count to split a data frame into groups of observations, apply summary statistics for each group, and then combine the results; describe the concept of a wide and a long table format and for which purpose those formats are useful; describe the function of key-value pairs; reshape a data frame using the gather commands from the tidyr package; export a data frame to a .csv file.
Students are encouraged to install R(link is external) and RStudio(link is external) and download the class data before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
DetailsOrganizerNIH Training LibraryWhenTue, Dec 14, 2021 - 1:00 pm - 2:15 pmWhereOnline |
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: describe the purpose of Tidyverse packages; select certain columns or rows in a data frame; describe the function of the pipe operator; add new columns to a dataframe that are functions of existing columns; use the split-apply-combine concept for data analysis; use summarize, group by, and count to split a data frame into groups of observations, apply summary statistics for each group, and then combine the results; describe the concept of a wide and a long table format and for which purpose those formats are useful; describe the function of key-value pairs; reshape a data frame using the gather commands from the tidyr package; export a data frame to a .csv file. Students are encouraged to install R(link is external) and RStudio(link is external) and download the class data before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. | 2021-12-14 13:00:00 | Online | Programming | Online | NIH Training Library | 0 | DATA WRANGLING IN R | |||
503 |
Description
Speaker:
Alisa Goldstein, Ph.D.
Senior Investigator
NCI, Division of Cancer Epidemiology and Genetics, Clinical Genetics Branch
Dr. Alisa Goldstein is a Senior Investigator in NIH’s Division of Cancer Epidemiology and Genetics (DCEG), Clinical Genetics Branch. Her research focuses on genetic epidemiologic studies of several cancers, including melanoma and upper gastrointestinal (UGI) cancer. The main goal of her studies is to understand the role of genetic and environmental factors in the etiology of these ...Read More
Speaker:
Alisa Goldstein, Ph.D.
Senior Investigator
NCI, Division of Cancer Epidemiology and Genetics, Clinical Genetics Branch
Dr. Alisa Goldstein is a Senior Investigator in NIH’s Division of Cancer Epidemiology and Genetics (DCEG), Clinical Genetics Branch. Her research focuses on genetic epidemiologic studies of several cancers, including melanoma and upper gastrointestinal (UGI) cancer. The main goal of her studies is to understand the role of genetic and environmental factors in the etiology of these cancers. Her studies combine epidemiologic, genetic, clinical, and molecular methodologies. Dr. Goldstein is one of the leads of the Melanoma Genetics Consortium (GenoMEL). In this webinar, Dr. Goldstein will be presenting on lessons learned from GenoMEL’s Next Generation Sequencing cloud project.
DetailsWhenTue, Dec 14, 2021 - 3:00 pm - 4:00 pmWhereOnline |
Speaker: Alisa Goldstein, Ph.D. Senior Investigator NCI, Division of Cancer Epidemiology and Genetics, Clinical Genetics Branch Dr. Alisa Goldstein is a Senior Investigator in NIH’s Division of Cancer Epidemiology and Genetics (DCEG), Clinical Genetics Branch. Her research focuses on genetic epidemiologic studies of several cancers, including melanoma and upper gastrointestinal (UGI) cancer. The main goal of her studies is to understand the role of genetic and environmental factors in the etiology of these cancers. Her studies combine epidemiologic, genetic, clinical, and molecular methodologies. Dr. Goldstein is one of the leads of the Melanoma Genetics Consortium (GenoMEL). In this webinar, Dr. Goldstein will be presenting on lessons learned from GenoMEL’s Next Generation Sequencing cloud project. | 2021-12-14 15:00:00 | Online | Cancer,Genomics | Online | 0 | Lessons Learned from GenoMEL’s Next Generation Sequencing Cloud Project | ||||
506 |
Description
In this seminar, Mrs. Aya Abdelsalam Ismail will give an overview on interpreting neural networks, with a particular focus on the use of Deep Neural Networks (DNNs) to track and predict changes over time.
DNNs are proving to be highly accurate alternatives to conventional statistical and analytical methods, especially when considering numerous variables (genes, RNA molecules, proteins, etc.) and multiple interactions. Still, practitioners in fields such as science, bioinformatics, and research often are hesitant to ...Read More
In this seminar, Mrs. Aya Abdelsalam Ismail will give an overview on interpreting neural networks, with a particular focus on the use of Deep Neural Networks (DNNs) to track and predict changes over time.
DNNs are proving to be highly accurate alternatives to conventional statistical and analytical methods, especially when considering numerous variables (genes, RNA molecules, proteins, etc.) and multiple interactions. Still, practitioners in fields such as science, bioinformatics, and research often are hesitant to use DNN models because they can be difficult to interpret.
During the event, Mrs. Ismail will:
DetailsOrganizerNCIWhenWed, Dec 15, 2021 - 11:00 am - 12:00 pmWhereOnline |
In this seminar, Mrs. Aya Abdelsalam Ismail will give an overview on interpreting neural networks, with a particular focus on the use of Deep Neural Networks (DNNs) to track and predict changes over time. DNNs are proving to be highly accurate alternatives to conventional statistical and analytical methods, especially when considering numerous variables (genes, RNA molecules, proteins, etc.) and multiple interactions. Still, practitioners in fields such as science, bioinformatics, and research often are hesitant to use DNN models because they can be difficult to interpret. During the event, Mrs. Ismail will: highlight the limitations of existing saliency-based interpretability methods for Recurrent Neural Networks and offer methods for overcoming these challenges. describe a framework for evaluating time series data using multiple metrics to assess the performance of a specific saliency method for detecting importance over time. show how to apply that evaluation framework to different saliency-based methods across diverse models. offer solutions for improving the quality of saliency methods in time series data using a two-step temporal saliency rescaling (TSR) approach (which first calculates the importance of each time step before calculating the importance of each feature over time). talk about how interpretations can be improved using a novel training technique known as saliency-guided training. Mrs. Aya Abdelsalam Ismail is a Ph.D. candidate at the University of Maryland. Her research focuses on the interpretability of neural models, long-term forecasting in time series, and applications of deep learning in neuroscience and health informatics. | 2021-12-15 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NCI | 0 | Learn About Interpretable and Explainable Deep Learning | |||
360 |
Description
Register Now
Faculty: Yi Xing, PhD – Children's Hospital of Pennsylvania/University of Pennsylvania; NCI Cancer Moonshot IOTN
Moderator: Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training ...Read More
Register Now
Faculty: Yi Xing, PhD – Children's Hospital of Pennsylvania/University of Pennsylvania; NCI Cancer Moonshot IOTN
Moderator: Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Target Audience
This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series.
Learning Objectives
A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research.
Series Organizers
Kellie N. Smith, PhD – Johns Hopkins School of Medicine
Big Data and Data Sharing Committee, Chair
Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Co-Chair
Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN
Big Data and Data Sharing Committee, Immediate Past Chair
Carsten Krieg, PhD – Medical University of South Carolina
Big Data and Data Sharing Committee, Member
DetailsOrganizerNCI and the Society for Immunotherapy of Cancer (SITC)WhenFri, Dec 17, 2021 - 2:30 pm - 3:30 pmWhereOnline |
Register Now Faculty: Yi Xing, PhD – Children's Hospital of Pennsylvania/University of Pennsylvania; NCI Cancer Moonshot IOTN Moderator: Kellie N. Smith, PhD – Johns Hopkins School of Medicine Target Audience This series will serve as an excellent resource for all stakeholders interested in expanding their knowledge in computation immune-oncology. Specifically, early career scientists who want to further their training in computational immuno-oncology, as well as more senior career individuals who want to implement these techniques for the first time will greatly benefit from the series. Learning Objectives A key goal of this training program is to ensure participants remain on the cutting edge of computational immuno-oncology, to increase the participants’ awareness of the NCI-supported Cancer Moonshot Immunotherapy Networks, to enhance scientific engagements between the Cancer Moonshot(SM) Immunotherapy Networks and the broader cancer immunotherapy community, and to fulfill the Blue Ribbon Panel goal of acceleration of progress in cancer research. Series Organizers Kellie N. Smith, PhD – Johns Hopkins School of Medicine Big Data and Data Sharing Committee, Chair Song Liu, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Co-Chair Alan Hutson, PhD – Roswell Park Comprehensive Cancer Center, NCI Cancer Moonshot IOTN & DRSN Big Data and Data Sharing Committee, Immediate Past Chair Carsten Krieg, PhD – Medical University of South Carolina Big Data and Data Sharing Committee, Member | 2021-12-17 14:30:00 | Online | Cancer,Data Science | Online | NCI and the Society for Immunotherapy of Cancer (SITC) | 0 | NEOANTIGEN DISCOVERY | |||
515 |
Description
Environmental exposures such as smoking are widely recognized risk factors in the emergence of lung diseases including lung cancer and acute respiratory distress syndrome (ARDS). However, the strength of environmental exposures is difficult to measure, making it challenging to understand their impacts. Since many environmental factors, including smoking, are mutagenic and leave characteristic patterns of mutations, called mutational signatures, Dr. Przytycka postulated that analyzing the interaction of mutational signatures with the activities of molecular pathways, ...Read More
Environmental exposures such as smoking are widely recognized risk factors in the emergence of lung diseases including lung cancer and acute respiratory distress syndrome (ARDS). However, the strength of environmental exposures is difficult to measure, making it challenging to understand their impacts. Since many environmental factors, including smoking, are mutagenic and leave characteristic patterns of mutations, called mutational signatures, Dr. Przytycka postulated that analyzing the interaction of mutational signatures with the activities of molecular pathways, can shed light on the impact of the mutagenic environmental factors to the biological processes. In particular, Dr. Przytycka and her group utilized mutational signatures from lung adenocarcinoma (LUAD) data set collected in TCGA to investigate the role of environmental factors in COVID-19 vulnerabilities. By delineating changes associated with smoking in pathway-level gene expression and cell type proportions, our study demonstrates that mutational signatures can be utilized to study the impact of exogenous mutagenic factors on them.
This seminar is open to the public, but registration is required.
Speaker:
Teresa Przytycka, Ph.D.
Senior Investigator
National Center of Biotechnology Information
National Library of Medicine
DetailsOrganizerNIAIDWhenFri, Jan 07, 2022 - 12:00 pm - 1:00 pmWhereOnline |
Environmental exposures such as smoking are widely recognized risk factors in the emergence of lung diseases including lung cancer and acute respiratory distress syndrome (ARDS). However, the strength of environmental exposures is difficult to measure, making it challenging to understand their impacts. Since many environmental factors, including smoking, are mutagenic and leave characteristic patterns of mutations, called mutational signatures, Dr. Przytycka postulated that analyzing the interaction of mutational signatures with the activities of molecular pathways, can shed light on the impact of the mutagenic environmental factors to the biological processes. In particular, Dr. Przytycka and her group utilized mutational signatures from lung adenocarcinoma (LUAD) data set collected in TCGA to investigate the role of environmental factors in COVID-19 vulnerabilities. By delineating changes associated with smoking in pathway-level gene expression and cell type proportions, our study demonstrates that mutational signatures can be utilized to study the impact of exogenous mutagenic factors on them. This seminar is open to the public, but registration is required. Speaker: Teresa Przytycka, Ph.D. Senior Investigator National Center of Biotechnology Information National Library of Medicine | 2022-01-07 12:00:00 | Online | Cancer,Pathway Analysis | Online | NIAID | 0 | Mutational Signatures as Sensors of Environmental Exposures: Role of Smoking in COVID-19 Vulnerabilities | |||
516 |
DescriptionPlease plan to attend the Earl Stadtman Investigator Program search seminar by: Augustin Luna, Ph.D. Harvard Medical School Dr. Luna's research focuses on the analysis of complex biological systems to understand and control them in order to improve human ...Read More Please plan to attend the Earl Stadtman Investigator Program search seminar by: Augustin Luna, Ph.D. Harvard Medical School Dr. Luna's research focuses on the analysis of complex biological systems to understand and control them in order to improve human health. A focal point of this work has been the usage of molecular networks and pathways as a means of integrating and analyzing wide-scale changes in cellular processes in response to external stimuli (e.g. drug response) and alterations (e.g. mutations) through statistical and mechanistic models. More ways to join: Join from the meeting link https://cbiit.webex.com/cbiit/j.php?MTID=m07bfc2c8395e2094fb4fd1777f2cb101 Join by meeting number Meeting number (access code): 2311 021 8653 Meeting password: uuG3mhZ2J?7 DetailsOrganizerEarl Stadtman Investigator ProgramWhenTue, Jan 11, 2022 - 2:00 pm - 3:00 pmWhereOnline |
Please plan to attend the Earl Stadtman Investigator Program search seminar by: Augustin Luna, Ph.D. Harvard Medical School Dr. Luna's research focuses on the analysis of complex biological systems to understand and control them in order to improve human health. A focal point of this work has been the usage of molecular networks and pathways as a means of integrating and analyzing wide-scale changes in cellular processes in response to external stimuli (e.g. drug response) and alterations (e.g. mutations) through statistical and mechanistic models. More ways to join: Join from the meeting link https://cbiit.webex.com/cbiit/j.php?MTID=m07bfc2c8395e2094fb4fd1777f2cb101 Join by meeting number Meeting number (access code): 2311 021 8653 Meeting password: uuG3mhZ2J?7 | 2022-01-11 14:00:00 | Online | Data Science | Online | Earl Stadtman Investigator Program | 0 | Integrative Modeling of Drug Response and Resistance Using Big Data and Network Pharmacology | |||
517 |
Description
Recent technological advances in science provide novel opportunities to unravel the complex biology of diseases. Immunological changes in translational settings are often highly dynamic and involve multiple interconnected biological systems. We will discuss a series of machine learning innovations which enable objective analysis of single-cell immunologic data robust to small variations in patient cohort, as well as integration with prior knowledge to increase predictive power without increasing cohort size. Next, we will discuss integration of ...Read More
Recent technological advances in science provide novel opportunities to unravel the complex biology of diseases. Immunological changes in translational settings are often highly dynamic and involve multiple interconnected biological systems. We will discuss a series of machine learning innovations which enable objective analysis of single-cell immunologic data robust to small variations in patient cohort, as well as integration with prior knowledge to increase predictive power without increasing cohort size. Next, we will discuss integration of single cell data into a multiomics setting using a customized machine learning algorithm. This computational pipeline increases predictive power and reveals new biology, by combining datasets of various sizes and modularities in a balanced manner. Finally, we will discuss the use of machine learning algorithms for integration of biological profiling with social determinants of health and electronic health records for identification of non-biological modifiable factors.
Bio: Nima Aghaeepour is an Assistant Professor at Stanford University. His laboratory develops machine learning and artificial intelligence methods to study clinical and biological modalities in translational settings. He is primarily interested in leveraging multiomics studies, wearable devices, and electronic health records to address global health challenges. His work is recognized by awards from numerous national and international organizations including the Bill and Melinda Gates Foundation, the March of Dimes Foundation, the Burroughs Wellcome Fund, the National Institute of General Medical Sciences, and the National Center for Advancing Translational Sciences.
DetailsOrganizerCDSLWhenWed, Jan 12, 2022 - 11:00 am - 12:00 pmWhereOnline |
Recent technological advances in science provide novel opportunities to unravel the complex biology of diseases. Immunological changes in translational settings are often highly dynamic and involve multiple interconnected biological systems. We will discuss a series of machine learning innovations which enable objective analysis of single-cell immunologic data robust to small variations in patient cohort, as well as integration with prior knowledge to increase predictive power without increasing cohort size. Next, we will discuss integration of single cell data into a multiomics setting using a customized machine learning algorithm. This computational pipeline increases predictive power and reveals new biology, by combining datasets of various sizes and modularities in a balanced manner. Finally, we will discuss the use of machine learning algorithms for integration of biological profiling with social determinants of health and electronic health records for identification of non-biological modifiable factors. Bio: Nima Aghaeepour is an Assistant Professor at Stanford University. His laboratory develops machine learning and artificial intelligence methods to study clinical and biological modalities in translational settings. He is primarily interested in leveraging multiomics studies, wearable devices, and electronic health records to address global health challenges. His work is recognized by awards from numerous national and international organizations including the Bill and Melinda Gates Foundation, the March of Dimes Foundation, the Burroughs Wellcome Fund, the National Institute of General Medical Sciences, and the National Center for Advancing Translational Sciences. | 2022-01-12 11:00:00 | Online | Online | CDSL | 0 | Machine learning for multiomics analysis of biological systems in translational settings. | ||||
499 |
Description
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Read More
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R.
Students are encouraged to install R(link is external) and RStudio(link is external) before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed.
DetailsOrganizerNIH Training LibraryWhenThu, Jan 13, 2022 - 10:00 am - 11:00 amWhereOnline |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R(link is external) and RStudio(link is external) before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. | 2022-01-13 10:00:00 | Online | Programming | Online | NIH Training Library | 0 | INTRODUCTION TO R AND RSTUDIO | |||
519 |
Description
Presenter: Dr. Melissa Cline
Meeting number: 2300 677 6825
Password: HpX4MWfT*77
Join by video system
Dial 23006776825@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Presenter: Dr. Melissa Cline
Meeting number: 2300 677 6825
Password: HpX4MWfT*77
Join by video system
Dial 23006776825@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
DetailsOrganizerNCI Containers and Workflows Interest GroupWhenFri, Jan 14, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Presenter: Dr. Melissa Cline Meeting number: 2300 677 6825 Password: HpX4MWfT*77 Join by video system Dial 23006776825@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. | 2022-01-14 15:00:00 | Online | Variant Analysis,Cancer | Online | NCI Containers and Workflows Interest Group | 0 | Federated Analysis for Cancer Variant Interpretation | |||
520 |
Description
For our next CDSL Webinar we will have a guest lecture by Dr. Russell Rockne from Beckman Research Institute, City of Hope National Medical Center.
Abstract: Temporal dynamics of gene expression inform cellular and molecular perturbations associated with disease development and evolution. Given the complexity of high-dimensional temporal genomic data, an analytic framework guided by a robust theory is needed to interpret time-sequential changes and to predict system dynamics. Using a ...Read More
For our next CDSL Webinar we will have a guest lecture by Dr. Russell Rockne from Beckman Research Institute, City of Hope National Medical Center.
Abstract: Temporal dynamics of gene expression inform cellular and molecular perturbations associated with disease development and evolution. Given the complexity of high-dimensional temporal genomic data, an analytic framework guided by a robust theory is needed to interpret time-sequential changes and to predict system dynamics. Using a murine model of acute myeloid leukemia (AML) we model temporal dynamics of the transcriptome of peripheral blood mononuclear cells derived from time-sequential bulk RNA-seq (mRNA) and micro-RNA-seq (miRNA) expression data in a CBFB-MYH11 (CM) knock-in mouse model (Cbfb+/56M/Mx1-Cre; C57BL/6) that mimics human inv(16) AML. Blood was collected from both CM (n=7) and control mice lacking the transgene (n=7) before CM induction and every month for 10 months post-induction.
From the time-series mRNA and miRNA expression data, we construct an AML state-space with the singular value decomposition. Using the samples’ location in the state-space, we applied the state-transition model which views the development of AML as a particle undergoing Brownian motion in a potential with three states corresponding to critical points: health (c1), unstable transition (c2), and overt AML (c3). The dynamics of mRNA and miRNA expression in the state-space relative to the critical points accurately predicted AML development in two validation studies (N=12, logrank p<0.01) and identified transcriptional perturbations associated with leukemia progression, including: cell signaling, inflammation, and metabolic pathways. Moreover, the geometry of the mRNA and miRNA state-spaces provided novel interpretations of gene dynamics, aligned gene signals that were not synchronized in time across mice, and provided quantifications of gene and pathway contributions to leukemia development. Interestingly, the acute angle between the mRNA and miRNA state-spaces revealed a mapping between related but distinctly different ‘epigenetic’ representations of AML. Our state-transition mathematical model and the geometry of the mRNA and miRNA state-spaces provides a theory-guided, insightful analysis of longitudinal multi-omic data which predicts leukemia progression and suggests novel targets for therapeutic interventions.
Dr. Rockne received his Ph.D. in Applied Mathematics at the University of Washington where he developed predictive mathematical models of brain cancer response to radiation therapy with PhD advisor Dr. Kristin Swanson. He then performed postdoctoral research at Northwestern University and was subsequently recruited to the Beckman Research Institute in California as an Assistant Professor, where he established the Division of Mathematical Oncology in the Department of Computational and Quantitative Medicine.
Dr. Rockne’s current research includes mathematical modeling as it relates to precision medicine, data science, computational systems biology, machine learning, and quantitative image analysis. Dr. Rockne is funded by the NCI, NINDS, the California Institute for Regenerative Medicine (CIRM), and is a PI in the Physical Sciences Oncology Network (PSON) and Cancer Systems Biology Consortium (CSBC).
Active areas of Dr. Rockne’s research include time-series genomic data analysis; modeling with single-cell sequencing data; and the integration of machine learning methods with mechanism-based mathematical models. Dr. Rockne is recognized as a leader in the field of Mathematical Oncology, with positions on several editorial boards, including JCO Clinical Cancer Informatics, and highly cited manuscripts and editorials, including a recent Roadmap article which outlines the next 5 years of research in the field of Mathematical Oncology.
DetailsOrganizerCDSLWhenWed, Jan 19, 2022 - 11:00 am - 12:00 pmWhereOnline |
For our next CDSL Webinar we will have a guest lecture by Dr. Russell Rockne from Beckman Research Institute, City of Hope National Medical Center. Abstract: Temporal dynamics of gene expression inform cellular and molecular perturbations associated with disease development and evolution. Given the complexity of high-dimensional temporal genomic data, an analytic framework guided by a robust theory is needed to interpret time-sequential changes and to predict system dynamics. Using a murine model of acute myeloid leukemia (AML) we model temporal dynamics of the transcriptome of peripheral blood mononuclear cells derived from time-sequential bulk RNA-seq (mRNA) and micro-RNA-seq (miRNA) expression data in a CBFB-MYH11 (CM) knock-in mouse model (Cbfb+/56M/Mx1-Cre; C57BL/6) that mimics human inv(16) AML. Blood was collected from both CM (n=7) and control mice lacking the transgene (n=7) before CM induction and every month for 10 months post-induction. From the time-series mRNA and miRNA expression data, we construct an AML state-space with the singular value decomposition. Using the samples’ location in the state-space, we applied the state-transition model which views the development of AML as a particle undergoing Brownian motion in a potential with three states corresponding to critical points: health (c1), unstable transition (c2), and overt AML (c3). The dynamics of mRNA and miRNA expression in the state-space relative to the critical points accurately predicted AML development in two validation studies (N=12, logrank p<0.01) and identified transcriptional perturbations associated with leukemia progression, including: cell signaling, inflammation, and metabolic pathways. Moreover, the geometry of the mRNA and miRNA state-spaces provided novel interpretations of gene dynamics, aligned gene signals that were not synchronized in time across mice, and provided quantifications of gene and pathway contributions to leukemia development. Interestingly, the acute angle between the mRNA and miRNA state-spaces revealed a mapping between related but distinctly different ‘epigenetic’ representations of AML. Our state-transition mathematical model and the geometry of the mRNA and miRNA state-spaces provides a theory-guided, insightful analysis of longitudinal multi-omic data which predicts leukemia progression and suggests novel targets for therapeutic interventions. Dr. Rockne received his Ph.D. in Applied Mathematics at the University of Washington where he developed predictive mathematical models of brain cancer response to radiation therapy with PhD advisor Dr. Kristin Swanson. He then performed postdoctoral research at Northwestern University and was subsequently recruited to the Beckman Research Institute in California as an Assistant Professor, where he established the Division of Mathematical Oncology in the Department of Computational and Quantitative Medicine. Dr. Rockne’s current research includes mathematical modeling as it relates to precision medicine, data science, computational systems biology, machine learning, and quantitative image analysis. Dr. Rockne is funded by the NCI, NINDS, the California Institute for Regenerative Medicine (CIRM), and is a PI in the Physical Sciences Oncology Network (PSON) and Cancer Systems Biology Consortium (CSBC). Active areas of Dr. Rockne’s research include time-series genomic data analysis; modeling with single-cell sequencing data; and the integration of machine learning methods with mechanism-based mathematical models. Dr. Rockne is recognized as a leader in the field of Mathematical Oncology, with positions on several editorial boards, including JCO Clinical Cancer Informatics, and highly cited manuscripts and editorials, including a recent Roadmap article which outlines the next 5 years of research in the field of Mathematical Oncology. | 2022-01-19 11:00:00 | Online | Cancer | Online | CDSL | 0 | Acute angles in Acute Myeloid Leukemia: A geometric perspective on longitudinal multi-omics | |||
1013 |
Description
Join us for this Webinar session, where Partek scientists will show you how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for DNA-Seq data analysis.
Agenda:
- Import fastq file
- Alignment
- QA/QC
- SNV Detection
- Variant Annotation
- Variant visualization
- Export Results
Join us for this Webinar session, where Partek scientists will show you how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for DNA-Seq data analysis.
Agenda:
- Import fastq file
- Alignment
- QA/QC
- SNV Detection
- Variant Annotation
- Variant visualization
- Export Results
RegisterOrganizerBTEPWhenWed, Jan 19, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
Join us for this Webinar session, where Partek scientists will show you how to use the point-and-click interface in Partek Flow to go from raw data to experimental results for DNA-Seq data analysis. Agenda: - Import fastq file - Alignment - QA/QC - SNV Detection - Variant Annotation - Variant visualization - Export Results | 2022-01-19 11:00:00 | Online Webinar | Online | Partek Scientist | BTEP | 0 | Variant DNA-Seq Data Analysis in Partek Flow | |||
521 |
Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member.
Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please
- mute when not speaking
- refrain from screen sharing until asked to do so in the breakout room
- screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users
For inquiries please email to: staff@hpc.nih.gov
DetailsOrganizerHPC BiowulfWhenWed, Jan 19, 2022 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users For inquiries please email to: staff@hpc.nih.gov | 2022-01-19 13:00:00 | Online | Online | HPC Biowulf | 0 | Next edition of the NIH HPC monthly Zoom-In Consults | ||||
508 |
Description
Participants will learn how to use the point-and-click interface in Partek Flow for RNA-Seq analysis to go from raw data to experimental results. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish RNA-Seq data analysis.
Participants will learn how to use the point-and-click interface in Partek Flow for RNA-Seq analysis to go from raw data to experimental results. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish RNA-Seq data analysis.
DetailsOrganizerNIH Training LibraryWhenThu, Jan 20, 2022 - 10:30 am - 1:00 pmWhereOnline |
Participants will learn how to use the point-and-click interface in Partek Flow for RNA-Seq analysis to go from raw data to experimental results. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish RNA-Seq data analysis. | 2022-01-20 10:30:00 | Online | Bulk RNA-Seq | Online | NIH Training Library | 0 | BULK RNA-SEQ DATA ANALYSIS IN PARTEK FLOW | |||
500 |
Description
Artificial Intelligence (AI) and Machine Learning (ML) are hot topics today, but are already part of our everyday lives. This class will introduce the basic principles of AI and ML and the current state of this field. The instructor will share examples of AI used in common applications and health research. AI limitations and ethical considerations will also be discussed. This course is designed for individuals new to the topic or for those who need ...Read More
Artificial Intelligence (AI) and Machine Learning (ML) are hot topics today, but are already part of our everyday lives. This class will introduce the basic principles of AI and ML and the current state of this field. The instructor will share examples of AI used in common applications and health research. AI limitations and ethical considerations will also be discussed. This course is designed for individuals new to the topic or for those who need a refresher.
DetailsOrganizerNIH Training LibraryWhenFri, Jan 21, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Artificial Intelligence (AI) and Machine Learning (ML) are hot topics today, but are already part of our everyday lives. This class will introduce the basic principles of AI and ML and the current state of this field. The instructor will share examples of AI used in common applications and health research. AI limitations and ethical considerations will also be discussed. This course is designed for individuals new to the topic or for those who need a refresher. | 2022-01-21 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Training Library | 0 | INTRODUCTION TO ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING | |||
518 |
DescriptionPlease plan to attend the Earl Stadtman Investigator Program search seminar by: Elizabeth Finn, Ph.D. Laboratory of Receptor Biology and Gene Expression, CCR Dr. Finn studies the large-scale features of genome organization within the nucleus by combining large imaging ...Read More Please plan to attend the Earl Stadtman Investigator Program search seminar by: Elizabeth Finn, Ph.D. Laboratory of Receptor Biology and Gene Expression, CCR Dr. Finn studies the large-scale features of genome organization within the nucleus by combining large imaging datasets with sequencing data. She is focused on understanding how the flexibility of the chromatin fiber contributes to high variability in the organization of genomes and to determine how this underappreciated feature affects genome function. More ways to join: https://cbiit.webex.com/cbiit/j.php?MTID=m208b728f6989e83393a4aee1c2ac9d9cMeeting number (access code): 23147289990 Meeting password: Seminar022422! DetailsOrganizerEarl Stadtman Investigator ProgramWhenMon, Jan 24, 2022 - 12:00 pm - 1:00 pmWhereOnline |
Please plan to attend the Earl Stadtman Investigator Program search seminar by: Elizabeth Finn, Ph.D. Laboratory of Receptor Biology and Gene Expression, CCR Dr. Finn studies the large-scale features of genome organization within the nucleus by combining large imaging datasets with sequencing data. She is focused on understanding how the flexibility of the chromatin fiber contributes to high variability in the organization of genomes and to determine how this underappreciated feature affects genome function. More ways to join: https://cbiit.webex.com/cbiit/j.php?MTID=m208b728f6989e83393a4aee1c2ac9d9c Meeting number (access code): 23147289990 Meeting password: Seminar022422! | 2022-01-24 12:00:00 | Online | Spatial Transcriptomics | Online | Earl Stadtman Investigator Program | 0 | Patterns of Variability in Spatial Genome Organization | |||
522 |
Description
Speaker:
Anant Madabhushi, Ph.D.
Donnell Institute Professor of Biomedical Engineering
Director, Center for Computational Imaging and Personalized Diagnostics (CCIPD)
Case Western Reserve University (CWRU), Cleveland
Anant Madabhushi, PhD, is a Research Scientist at the Louis Stokes Cleveland Veterans Administration (VA) Medical Center and has affiliate appointments both at University Hospitals and Cleveland Clinic. He holds secondary appointments in the departments of Biomedical Engineering, Urology, Radiology, Pathology, Radiation Oncology, Electrical Engineering & Computer ...Read More
Speaker:
Anant Madabhushi, Ph.D.
Donnell Institute Professor of Biomedical Engineering
Director, Center for Computational Imaging and Personalized Diagnostics (CCIPD)
Case Western Reserve University (CWRU), Cleveland
Anant Madabhushi, PhD, is a Research Scientist at the Louis Stokes Cleveland Veterans Administration (VA) Medical Center and has affiliate appointments both at University Hospitals and Cleveland Clinic. He holds secondary appointments in the departments of Biomedical Engineering, Urology, Radiology, Pathology, Radiation Oncology, Electrical Engineering & Computer Science and Gen Med Sciences at CWRU.
Madabhushi’s team at CCIPD is developing and applying novel Artificial Intelligence and machine learning approaches for the diagnosis, prognosis and prediction of therapy response for a variety of diseases including several different types of cancers, cardiovascular disease, kidney and eye disease. The Center is located in Cleveland’s unique medical ecosystem, an extensive clinical network within which it boasts numerous successful collaborations including with the Cleveland Clinic and the Cole Eye Institute, University Hospitals, the VA Louis Stokes Medical Center, MetroHealth, and the Case Comprehensive Cancer Center at CWRU.
Madabhushi has more than 100 patents either issued or pending in the areas of medical image analysis, computer-aided diagnosis, and computer vision, more than 70 of which are issued. He was responsible for more than 10 percent of all patents awarded to Case Western Reserve University in 2017, 2018 and 2019.
The author of more than 400 peer-reviewed journal articles and conference papers, Madabhushi is a sought after lecturer who has delivered more than 350 talks around the world. His efforts as a professor and researcher have gained international attention in the field of biomedical engineering, garnering him several awards. Most notably, Madabhushi is a fellow of the American Institute of Medical and Biomedical Engineering (AIMBE), a Fellow of the Institute of Electrical and Electronics Engineers (IEEE) and a fellow of the National Academy of Inventors (NAI). In 2015, he made Crain’s Cleveland Business magazine’s “Forty under 40” list. In 2019 and 2020, Madabhushi was named to The Pathologist's Power List, a list of 100 most inspiring professionals in pathology and laboratory medicine. In 2020, he received the Diekhoff Award for Distinguished Graduate Student Mentoring at CWRU. In 2021 he was honored as one of Crain’s Cleveland Business Notable Entrepreneurs of the year.
Madabhushi’s work on developing “smart computers for identifying lung cancer patients who will benefit from chemotherapy” was ranked as one of the top 10 medical breakthroughs of 2018 by Prevention Magazine. In 2019, Nature Magazine called him out as one of five scientists pursuing truly offbeat and innovative approaches in cancer research. His work on using AI for addressing health disparities, especially in identifying differences in appearance of prostate cancer between black and white men, received national attention in 2020.
Madabhushi has secured more than $60 million in grant funding and co-founded two companies, Vascuvis Inc. (now Elucid Bioimaging) and IbRiS Inc., which was acquired by Inspirata in 2015. He has been involved in several sponsored research and industry partnerships with medical imaging and pharmaceutical companies. In addition, more than 15 technologies developed by Madabhushi’s team have been licensed.
This presentation is open to anyone at the NIH and to the public. Please visit cpfp.cancer.gov/colloquia for more information.
DetailsOrganizerNCIWhenTue, Jan 25, 2022 - 11:00 am - 12:00 pmWhereOnline |
Speaker: Anant Madabhushi, Ph.D. Donnell Institute Professor of Biomedical Engineering Director, Center for Computational Imaging and Personalized Diagnostics (CCIPD) Case Western Reserve University (CWRU), Cleveland Anant Madabhushi, PhD, is a Research Scientist at the Louis Stokes Cleveland Veterans Administration (VA) Medical Center and has affiliate appointments both at University Hospitals and Cleveland Clinic. He holds secondary appointments in the departments of Biomedical Engineering, Urology, Radiology, Pathology, Radiation Oncology, Electrical Engineering & Computer Science and Gen Med Sciences at CWRU. Madabhushi’s team at CCIPD is developing and applying novel Artificial Intelligence and machine learning approaches for the diagnosis, prognosis and prediction of therapy response for a variety of diseases including several different types of cancers, cardiovascular disease, kidney and eye disease. The Center is located in Cleveland’s unique medical ecosystem, an extensive clinical network within which it boasts numerous successful collaborations including with the Cleveland Clinic and the Cole Eye Institute, University Hospitals, the VA Louis Stokes Medical Center, MetroHealth, and the Case Comprehensive Cancer Center at CWRU. Madabhushi has more than 100 patents either issued or pending in the areas of medical image analysis, computer-aided diagnosis, and computer vision, more than 70 of which are issued. He was responsible for more than 10 percent of all patents awarded to Case Western Reserve University in 2017, 2018 and 2019. The author of more than 400 peer-reviewed journal articles and conference papers, Madabhushi is a sought after lecturer who has delivered more than 350 talks around the world. His efforts as a professor and researcher have gained international attention in the field of biomedical engineering, garnering him several awards. Most notably, Madabhushi is a fellow of the American Institute of Medical and Biomedical Engineering (AIMBE), a Fellow of the Institute of Electrical and Electronics Engineers (IEEE) and a fellow of the National Academy of Inventors (NAI). In 2015, he made Crain’s Cleveland Business magazine’s “Forty under 40” list. In 2019 and 2020, Madabhushi was named to The Pathologist's Power List, a list of 100 most inspiring professionals in pathology and laboratory medicine. In 2020, he received the Diekhoff Award for Distinguished Graduate Student Mentoring at CWRU. In 2021 he was honored as one of Crain’s Cleveland Business Notable Entrepreneurs of the year. Madabhushi’s work on developing “smart computers for identifying lung cancer patients who will benefit from chemotherapy” was ranked as one of the top 10 medical breakthroughs of 2018 by Prevention Magazine. In 2019, Nature Magazine called him out as one of five scientists pursuing truly offbeat and innovative approaches in cancer research. His work on using AI for addressing health disparities, especially in identifying differences in appearance of prostate cancer between black and white men, received national attention in 2020. Madabhushi has secured more than $60 million in grant funding and co-founded two companies, Vascuvis Inc. (now Elucid Bioimaging) and IbRiS Inc., which was acquired by Inspirata in 2015. He has been involved in several sponsored research and industry partnerships with medical imaging and pharmaceutical companies. In addition, more than 15 technologies developed by Madabhushi’s team have been licensed. This presentation is open to anyone at the NIH and to the public. Please visit cpfp.cancer.gov/colloquia for more information. | 2022-01-25 11:00:00 | Online | Cancer,Artificial Intelligence / Machine Learning | Online | NCI | 0 | Interpreter of Maladies - AI for Addressing Problems in Precision Oncology | |||
509 |
Description
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature.
Part 1 will address considerations for the choice of statistical tests including the importance of study design and hypothesis, ...Read More
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature.
Part 1 will address considerations for the choice of statistical tests including the importance of study design and hypothesis, type of data and their distributions, and provide a brief review of important statistical features. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study.
Although you may attend only one part of this series, attending both parts will give you a better understanding of the most used statistical tests in the biomedical literature. You must register separately for Part 2 of this class series.
DetailsOrganizerNIH Training LibraryWhenTue, Jan 25, 2022 - 1:00 pm - 4:00 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature. Part 1 will address considerations for the choice of statistical tests including the importance of study design and hypothesis, type of data and their distributions, and provide a brief review of important statistical features. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend only one part of this series, attending both parts will give you a better understanding of the most used statistical tests in the biomedical literature. You must register separately for Part 2 of this class series. | 2022-01-25 13:00:00 | Online | Statistics | Online | NIH Training Library | 0 | OVERVIEW OF COMMON STATISTICAL TESTS: PART 1 | |||
510 |
Description
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature.
Part 2 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ...Read More
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature.
Part 2 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and some nonparametric tests. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study.
Although you may attend only one part of this series, attending both parts will give you a better understanding of the most used statistical tests in the biomedical literature. You must register separately for Part 1 of this class series.
DetailsOrganizerNIH Training LibraryWhenThu, Jan 27, 2022 - 1:00 pm - 4:00 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class geared to cover the general concepts behind common statistical tests. This two-part lecture series will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature. Part 2 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and some nonparametric tests. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend only one part of this series, attending both parts will give you a better understanding of the most used statistical tests in the biomedical literature. You must register separately for Part 1 of this class series. | 2022-01-27 13:00:00 | Online | Statistics | Online | NIH Training Library | 0 | OVERVIEW OF COMMON STATISTICAL TESTS: PART 2 | |||
524 |
Description
Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. It is built to be highly visual, easy to use, and collaborative. Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast and more. Searching, sharing, and automation features are built into all major workflows. More information can be found on our website at geneious.com
Presenter: ...Read More
Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. It is built to be highly visual, easy to use, and collaborative. Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast and more. Searching, sharing, and automation features are built into all major workflows. More information can be found on our website at geneious.com
Presenter: Evan Starr, PhD, Field Application Scientist for Geneious
**Registration is required to join this event. If you have not registered, please do so now.**
DetailsOrganizerCBIITWhenFri, Jan 28, 2022 - 10:00 am - 11:00 amWhereOnline |
Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. It is built to be highly visual, easy to use, and collaborative. Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast and more. Searching, sharing, and automation features are built into all major workflows. More information can be found on our website at geneious.com Presenter: Evan Starr, PhD, Field Application Scientist for Geneious **Registration is required to join this event. If you have not registered, please do so now.** | 2022-01-28 10:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to Next Generation Sequencing with Geneious Prime | |||
523 |
Description
Learn how to use the FlowJo™ workspace, including how to load samples (experimental data), statistics, and gates, create groups and analyses, and generate tabular and graphical layouts.
Presenter: Veronica Obregon-Perko, PhD FlowJo Application Scientist
** Registration is required to join this event. If you have not registered, please do so now.**
Learn how to use the FlowJo™ workspace, including how to load samples (experimental data), statistics, and gates, create groups and analyses, and generate tabular and graphical layouts.
Presenter: Veronica Obregon-Perko, PhD FlowJo Application Scientist
** Registration is required to join this event. If you have not registered, please do so now.**
DetailsOrganizerCBIITWhenMon, Jan 31, 2022 - 10:00 am - 11:00 amWhereOnline |
Learn how to use the FlowJo™ workspace, including how to load samples (experimental data), statistics, and gates, create groups and analyses, and generate tabular and graphical layouts. Presenter: Veronica Obregon-Perko, PhD FlowJo Application Scientist ** Registration is required to join this event. If you have not registered, please do so now.** | 2022-01-31 10:00:00 | Online | Flow Cytometry | Online | CBIIT | 0 | Intro to FlowJo™ Cytometry v10 | |||
1014 |
Description
This course will include a series of 4 lessons for scientists new to R or with limited R experience. The purpose of this course is to introduce the foundational skills necessary to begin to analyze and visualize data in R.
To participate in this class you will need your government-issued computer and a reliable internet connection. You do not need to download or install any software to participate in the class. However, at the end of ...Read More
This course will include a series of 4 lessons for scientists new to R or with limited R experience. The purpose of this course is to introduce the foundational skills necessary to begin to analyze and visualize data in R.
To participate in this class you will need your government-issued computer and a reliable internet connection. You do not need to download or install any software to participate in the class. However, at the end of the class, we will provide instruction on installing R and R Studio on your local machine.
This class will be taught on the DNAnexus platform. Every learner will need to create an account at https://dnanexus.com
After you have created your DNAnexus account, please send your DNAnexus login to us at: ncibtep@nih.gov
Class materials will be provided each week and accessible online at https://btep.ccr.cancer.gov/docs/rintro/
By registering for this class you are registering for ALL sessions of the class. You do not need to register separately for every session.
Class Dates and Times:
We will open the room one hour early on Feb 1 (at 12 noon) to help you get logged into the DNAnexus platform. Please be sure to login early so you're ready when class starts at 1 PM.
Feb 1, 1-3 PM: Introduction to R (Why Learn R?, Getting Started with R and RStudio, R Basics) , Recording
Feb 8, 1-3 PM: Data Frames and Data Wrangling, Recording
Feb 15, 1 - 3, PM: Working with Tabular Data in R (tidy verse), Recording
Feb 22, 1-3 PM: Visualize Data in Graphs, Plots and Charts with R (ggplot2), Recording
RegisterOrganizerBTEPWhenTue, Feb 01, 2022 - 1:00 pm - 3:00 pmWhereOnline Webinar |
This course will include a series of 4 lessons for scientists new to R or with limited R experience. The purpose of this course is to introduce the foundational skills necessary to begin to analyze and visualize data in R. To participate in this class you will need your government-issued computer and a reliable internet connection. You do not need to download or install any software to participate in the class. However, at the end of the class, we will provide instruction on installing R and R Studio on your local machine. This class will be taught on the DNAnexus platform. Every learner will need to create an account at https://dnanexus.com After you have created your DNAnexus account, please send your DNAnexus login to us at: ncibtep@nih.gov Class materials will be provided each week and accessible online at https://btep.ccr.cancer.gov/docs/rintro/ By registering for this class you are registering for ALL sessions of the class. You do not need to register separately for every session. Class Dates and Times: We will open the room one hour early on Feb 1 (at 12 noon) to help you get logged into the DNAnexus platform. Please be sure to login early so you're ready when class starts at 1 PM. Feb 1, 1-3 PM: Introduction to R (Why Learn R?, Getting Started with R and RStudio, R Basics) , Recording Feb 8, 1-3 PM: Data Frames and Data Wrangling, Recording Feb 15, 1 - 3, PM: Working with Tabular Data in R (tidy verse), Recording Feb 22, 1-3 PM: Visualize Data in Graphs, Plots and Charts with R (ggplot2), Recording | 2022-02-01 13:00:00 | Online Webinar | Online | Joe Wu (BTEP),Alex Emmons (BTEP) | BTEP | 0 | R Introductory Series 2022 | |||
526 |
Description
Presenter:
Atul Butte, M.D., Ph.D.
Atul Butte, M.D., Ph.D., is the Priscilla Chan and Mark Zuckerberg Distinguished Professor and inaugural Director of the Bakar Computational Health Sciences Institute at the University of California, San Francisco (UCSF). Dr. Butte is also the Chief Data Scientist for the entire University of California Health System, with 20 health professional schools, six medical schools, five academic medical centers, 10 hospitals and over 1,000 care delivery sites. ...Read More
Presenter:
Atul Butte, M.D., Ph.D.
Atul Butte, M.D., Ph.D., is the Priscilla Chan and Mark Zuckerberg Distinguished Professor and inaugural Director of the Bakar Computational Health Sciences Institute at the University of California, San Francisco (UCSF). Dr. Butte is also the Chief Data Scientist for the entire University of California Health System, with 20 health professional schools, six medical schools, five academic medical centers, 10 hospitals and over 1,000 care delivery sites. Dr. Butte has been continually funded by NIH for 20 years, is an inventor on 24 patents, and has authored over 200 publications, with research featured in the New York Times, Wall Street Journal, and Wired. Dr. Butte was elected to the National Academy of Medicine in 2015, and in 2013, he was recognized by the Obama Administration as a White House Champion of Change in Open Science for promoting science through publicly available data. Dr. Butte is also a founder of three investor-backed data-driven companies: Personalis (IPO, 2019), providing medical genome sequencing services; Carmenta (acquired by Progenity, 2015), discovering diagnostics for pregnancy complications; and NuMedii, finding new uses for drugs through open molecular data. Dr. Butte trained in computer science at Brown University, worked as a software engineer at Apple and Microsoft, received his M.D. at Brown University, trained in pediatrics and pediatric endocrinology at Children's Hospital Boston, and then received his Ph.D. from Harvard Medical School and the Massachusetts Institute of Technology.
DetailsWhenFri, Feb 04, 2022 - 12:00 pm - 1:00 pmWhereOnline |
Presenter: Atul Butte, M.D., Ph.D. Atul Butte, M.D., Ph.D., is the Priscilla Chan and Mark Zuckerberg Distinguished Professor and inaugural Director of the Bakar Computational Health Sciences Institute at the University of California, San Francisco (UCSF). Dr. Butte is also the Chief Data Scientist for the entire University of California Health System, with 20 health professional schools, six medical schools, five academic medical centers, 10 hospitals and over 1,000 care delivery sites. Dr. Butte has been continually funded by NIH for 20 years, is an inventor on 24 patents, and has authored over 200 publications, with research featured in the New York Times, Wall Street Journal, and Wired. Dr. Butte was elected to the National Academy of Medicine in 2015, and in 2013, he was recognized by the Obama Administration as a White House Champion of Change in Open Science for promoting science through publicly available data. Dr. Butte is also a founder of three investor-backed data-driven companies: Personalis (IPO, 2019), providing medical genome sequencing services; Carmenta (acquired by Progenity, 2015), discovering diagnostics for pregnancy complications; and NuMedii, finding new uses for drugs through open molecular data. Dr. Butte trained in computer science at Brown University, worked as a software engineer at Apple and Microsoft, received his M.D. at Brown University, trained in pediatrics and pediatric endocrinology at Children's Hospital Boston, and then received his Ph.D. from Harvard Medical School and the Massachusetts Institute of Technology. | 2022-02-04 12:00:00 | Online | Data Science | Online | 0 | Precisely Practicing Medicine from 700 Trillion Points of Data | ||||
511 |
Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also ...Read More
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics.
Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects.
DetailsOrganizerNIH Training LibraryWhenMon, Feb 07, 2022 - 10:00 am - 3:00 pmWhereOnline |
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics. Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects. | 2022-02-07 10:00:00 | Online | Pathway Analysis | Online | NIH Training Library | 0 | INGENUITY PATHWAY ANALYSIS (IPA) | |||
512 |
Description
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the Read More
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: describe the purpose of Tidyverse packages; select certain columns or rows in a data frame; describe the function of the pipe operator; add new columns to a dataframe that are functions of existing columns; use the split-apply-combine concept for data analysis; use summarize, group by, and count to split a data frame into groups of observations, apply summary statistics for each group, and then combine the results; describe the concept of a wide and a long table format and for which purpose those formats are useful; describe the function of key-value pairs; reshape a data frame using the gather commands from the tidyr package; export a data frame to a .csv file.
Students are encouraged to install R(link is external) and RStudio(link is external) and download the class data before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
DetailsOrganizerNIH Training LibraryWhenWed, Feb 09, 2022 - 1:00 pm - 2:15 pmWhereOnline |
Data Wrangling in R is the third class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of manipulating, analyzing and exporting data with the R tidyverse. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: describe the purpose of Tidyverse packages; select certain columns or rows in a data frame; describe the function of the pipe operator; add new columns to a dataframe that are functions of existing columns; use the split-apply-combine concept for data analysis; use summarize, group by, and count to split a data frame into groups of observations, apply summary statistics for each group, and then combine the results; describe the concept of a wide and a long table format and for which purpose those formats are useful; describe the function of key-value pairs; reshape a data frame using the gather commands from the tidyr package; export a data frame to a .csv file. Students are encouraged to install R(link is external) and RStudio(link is external) and download the class data before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. | 2022-02-09 13:00:00 | Online | Programming | Online | NIH Training Library | 0 | DATA WRANGLING IN R | |||
528 |
Description
The seminar is open to the public and registration is required each month.
Dr. Hunter Mosely plans to discuss the richness of open data resources in biology and how they can support machine learning approaches and be enriched by such methods. He’ll also discuss how we might think about data sharing to maximize reuse and the value of our public investment.
Speaker:
Dr. Mosely’s formal education spans multiple disciplines including chemistry, mathematics, computer ...Read More
The seminar is open to the public and registration is required each month.
Dr. Hunter Mosely plans to discuss the richness of open data resources in biology and how they can support machine learning approaches and be enriched by such methods. He’ll also discuss how we might think about data sharing to maximize reuse and the value of our public investment.
Speaker:
Dr. Mosely’s formal education spans multiple disciplines including chemistry, mathematics, computer science, and biochemistry. He has over 25 years of experience in bioinformatics research, particularly in the development of automated analyses of nuclear magnetic resonance (NMR), mass spectrometry (MS), x-ray crystallographic, ontological, and next generation sequencing (NGS) data. This includes extensive expertise in algorithm development, mathematical modeling, and biophysical informatics. He also has unique educational and research experiences that allow him to work across computational, mathematical, and biological fields, facilitating and leading collaborations between computational, statistical, and biological scientists. He is an Associate Director of the Institute for Biomedical Informatics at the University of Kentucky (UK). His lab has a strong history of developing open-source software tools that enable access of public repository data including the Biological Magnetic Resonance Bank (BMRB), worldwide Protein Data Bank (wwPDB), and the Metabolomics Workbench (MWbench). They also develop new methods in functional annotation enrichment and molecular interaction network analyses. They are actively developing methods to integrate metabolomics data with other omics-level datasets for systems-level analyses that can extract mechanistic information on specific biological processes and on specific human diseases which will translate into clinical practice.
DetailsOrganizerData Sharing and Reuse Seminar SeriesWhenFri, Feb 11, 2022 - 12:00 pm - 1:00 pmWhereOnline |
The seminar is open to the public and registration is required each month. Dr. Hunter Mosely plans to discuss the richness of open data resources in biology and how they can support machine learning approaches and be enriched by such methods. He’ll also discuss how we might think about data sharing to maximize reuse and the value of our public investment. Speaker: Dr. Mosely’s formal education spans multiple disciplines including chemistry, mathematics, computer science, and biochemistry. He has over 25 years of experience in bioinformatics research, particularly in the development of automated analyses of nuclear magnetic resonance (NMR), mass spectrometry (MS), x-ray crystallographic, ontological, and next generation sequencing (NGS) data. This includes extensive expertise in algorithm development, mathematical modeling, and biophysical informatics. He also has unique educational and research experiences that allow him to work across computational, mathematical, and biological fields, facilitating and leading collaborations between computational, statistical, and biological scientists. He is an Associate Director of the Institute for Biomedical Informatics at the University of Kentucky (UK). His lab has a strong history of developing open-source software tools that enable access of public repository data including the Biological Magnetic Resonance Bank (BMRB), worldwide Protein Data Bank (wwPDB), and the Metabolomics Workbench (MWbench). They also develop new methods in functional annotation enrichment and molecular interaction network analyses. They are actively developing methods to integrate metabolomics data with other omics-level datasets for systems-level analyses that can extract mechanistic information on specific biological processes and on specific human diseases which will translate into clinical practice. | 2022-02-11 12:00:00 | Online | Data Management | Online | Data Sharing and Reuse Seminar Series | 0 | February Data Sharing and Reuse Seminar | |||
527 |
Description
Dr. Jeremy Goecks will share how cancer researchers are using the machine learning capabilities of the Galaxy project, one of the largest and most widely used open-source platforms for biomedical data science, to predict therapeutic responses and analyze tumor spatial biology. In addition to Galaxy’s machine learning functions, cancer researchers can use it to access cutting-edge analysis methods, reproduce and share complex computational analyses, and perform large-scale analyses across many data sets. Dr. Goecks ...Read More
Dr. Jeremy Goecks will share how cancer researchers are using the machine learning capabilities of the Galaxy project, one of the largest and most widely used open-source platforms for biomedical data science, to predict therapeutic responses and analyze tumor spatial biology. In addition to Galaxy’s machine learning functions, cancer researchers can use it to access cutting-edge analysis methods, reproduce and share complex computational analyses, and perform large-scale analyses across many data sets. Dr. Goecks will also discuss how NCI’s Human Tumor Atlas Network—a series of open-source atlases showing the 3-dimensional cellular, morphological, and molecular features of human cancers—can be used in conjunction with Galaxy.
This webinar is part of the monthly Containers and Workflows Interest Group (CWIG) webinar series. CWIG brings together data scientists, bioinformaticians, computer scientists, and researchers to learn more about cloud computing and container technologies, workflows, and pipelines that could drive cancer data science.
The webinar series features a variety of presenters from across NIH, industry, and academia. Though cancer research is the focus of the series, unrelated data science and cloud computing topics are still welcome. In the last year, the CWIG webinar speakers have discussed:
DetailsOrganizerNCI Containers and Workflows Interest GroupWhenFri, Feb 11, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Dr. Jeremy Goecks will share how cancer researchers are using the machine learning capabilities of the Galaxy project, one of the largest and most widely used open-source platforms for biomedical data science, to predict therapeutic responses and analyze tumor spatial biology. In addition to Galaxy’s machine learning functions, cancer researchers can use it to access cutting-edge analysis methods, reproduce and share complex computational analyses, and perform large-scale analyses across many data sets. Dr. Goecks will also discuss how NCI’s Human Tumor Atlas Network—a series of open-source atlases showing the 3-dimensional cellular, morphological, and molecular features of human cancers—can be used in conjunction with Galaxy. This webinar is part of the monthly Containers and Workflows Interest Group (CWIG) webinar series. CWIG brings together data scientists, bioinformaticians, computer scientists, and researchers to learn more about cloud computing and container technologies, workflows, and pipelines that could drive cancer data science. The webinar series features a variety of presenters from across NIH, industry, and academia. Though cancer research is the focus of the series, unrelated data science and cloud computing topics are still welcome. In the last year, the CWIG webinar speakers have discussed: NIH cloud programs like the Cancer Genomics Cloud (CGC), its fellow NCI Cloud Resources, and NIH Science and Technology Research Infrastructure for Discovery, Experimentation, and Sustainability (STRIDES). commercial cloud platforms for biomedical data storage and computing. pipelines and tools for deep learning and various omics analysis. Speaker: Jeremy Goecks, Ph.D. Dr. Goecks is an associate professor of biomedical engineering and section head for Cancer Data Science at Oregon Health & Science University. He is also a principal investigator for the NCI Cancer MoonshotSM Center in the Human Tumor Atlas Network (HTAN) and the Galaxy platform. | 2022-02-11 15:00:00 | Online | Bioinformatics Software | Online | NCI Containers and Workflows Interest Group | 0 | The Galaxy Platform for Accessible, Reproducible, and Scalable Biomedical Data Science | |||
529 |
Description
As the number of parameters being interrogated rises, thorough identification and characterization of populations using traditional manual gating analysis becomes more challenging. Join us to learn about the suite of tools in FlowJo™ that enable computational discovery in high parameter data sets.As the number of parameters being interrogated rises, thorough identification and characterization of populations using traditional manual gating analysis becomes more challenging. Join us to learn about the suite of tools in FlowJo™ ...Read More
As the number of parameters being interrogated rises, thorough identification and characterization of populations using traditional manual gating analysis becomes more challenging. Join us to learn about the suite of tools in FlowJo™ that enable computational discovery in high parameter data sets.As the number of parameters being interrogated rises, thorough identification and characterization of populations using traditional manual gating analysis becomes more challenging. Join us to learn about the suite of tools in FlowJo™ that enable computational discovery in high parameter data sets.
DetailsOrganizerCBIITWhenMon, Feb 14, 2022 - 10:00 am - 11:00 amWhereOnline |
As the number of parameters being interrogated rises, thorough identification and characterization of populations using traditional manual gating analysis becomes more challenging. Join us to learn about the suite of tools in FlowJo™ that enable computational discovery in high parameter data sets.As the number of parameters being interrogated rises, thorough identification and characterization of populations using traditional manual gating analysis becomes more challenging. Join us to learn about the suite of tools in FlowJo™ that enable computational discovery in high parameter data sets. | 2022-02-14 10:00:00 | Online | Data Science | Online | CBIIT | 0 | High Parameter Analysis in FlowJo™ Cytometry | |||
530 |
Description
For our next CDSL webinar we will have a guest lecture by Dr. Leng Han from the Center for Epigenetics and Disease Prevention at Texas A&M University.
Abstract: Despite advancements in treatment options for cancer, a majority of cancer types continue to lack fully characterized and effective targeted therapies to improve disease diagnostics, prognoses, and patient survival outcomes. Therefore, there is an urgent need to gain a more comprehensive ...Read More
For our next CDSL webinar we will have a guest lecture by Dr. Leng Han from the Center for Epigenetics and Disease Prevention at Texas A&M University.
Abstract: Despite advancements in treatment options for cancer, a majority of cancer types continue to lack fully characterized and effective targeted therapies to improve disease diagnostics, prognoses, and patient survival outcomes. Therefore, there is an urgent need to gain a more comprehensive understanding of the molecular basis of diseases and develop novel prognostic and therapeutic strategies. Our lab utilizes cutting-edge techniques in systems biology to understand the molecular mechanisms of complex diseases. We have comprehensive understanding of the molecular mechanisms of novel transcriptomic elements in human diseases (Trends in Cancer, 2018), including QTL (Nucleic Acids Research, 2018; Nucleic Acids Research, 2019a; Nucleic Acids Research, 2019b), snoRNA (Cell Reports, 2017, Molecular Cancer, 2020), APA (Journal of the National Cancer Institute, 2018; Nucleic Acids Research, 2020), circRNA (Genome Medicine, 2019a; Genome Medicine, 2019b) and eRNA (Nature Communications, 2019; Nucleic Acids Research, 2021; Cancer Research, 2022). We pioneered a series of pan-cancer analyses to provide clinical insights into cancer therapy, including chronotherapy (Cell Systems, 2018), hypoxia-targeted therapy (Nature Metabolism, 2019), target therapy (Genome Medicine, 2020a), and immunotherapy (Nature Immunology, 2019; Nature Communications, 2020a; Nature Communications, 2020b; Genome Medicine, 2020b; Advanced Science, 2020; Journal of the National Cancer Institute, 2021; Cancer Cell, 2021; The Innovation, 2021; Journal for Immunotherapy of Cancer, 2022; Nature Reviews Clinical Oncology, 2022). These studies shed light on future clinical considerations for the development of innovative therapies for cancer types currently lacking effective treatment options. We will further develop highly innovative prognostic and therapeutic strategies with the potential to produce a major impact on biomedical research.
Bio: Dr. Han is an Associate Professor and CPRIT scholar at Texas A&M University, Institute of Biosciences & Technology. Before join TAMU, he is an Assistant Professor at The University of Texas Health Science Center at Houston. Dr. Han obtained his PhD from Chinese Academy of Sciences and did postdoc training with Dr. Joseph C. Wu at Stanford University, and Dr. Han Liang at MD Anderson Cancer Center. Dr. Han’s lab focused on harnessing big data for precision oncology. In the past several years, his labs contributed to RNA-targeted therapy, target therapy and immunotherapy, and published several papers in high profile journals, including Cancer Cell, Nature Metabolism, Nature Immunology, Nature Communications, The Innovation, Cell Systems, Cell Reports, Nucleic Acids Research, Genome Medicine, Journal of the National Cancer Institute. He has been invited to contribute review, commentary and spotlight by multiple journals, including Nature Reviews Clinical Oncology, Nature Biotechnology, Trends in Genetics, Trends in Cancer, Trends in Molecular Medicine, Genome Medicine, and Oncogene. To date, he has published >140 peer-reviewed papers, with a total of > 17,000 citations (Google scholar, H-index = 56).
DetailsOrganizerCDSLWhenWed, Feb 16, 2022 - 11:00 am - 12:00 pmWhereOnline |
For our next CDSL webinar we will have a guest lecture by Dr. Leng Han from the Center for Epigenetics and Disease Prevention at Texas A&M University. Abstract: Despite advancements in treatment options for cancer, a majority of cancer types continue to lack fully characterized and effective targeted therapies to improve disease diagnostics, prognoses, and patient survival outcomes. Therefore, there is an urgent need to gain a more comprehensive understanding of the molecular basis of diseases and develop novel prognostic and therapeutic strategies. Our lab utilizes cutting-edge techniques in systems biology to understand the molecular mechanisms of complex diseases. We have comprehensive understanding of the molecular mechanisms of novel transcriptomic elements in human diseases (Trends in Cancer, 2018), including QTL (Nucleic Acids Research, 2018; Nucleic Acids Research, 2019a; Nucleic Acids Research, 2019b), snoRNA (Cell Reports, 2017, Molecular Cancer, 2020), APA (Journal of the National Cancer Institute, 2018; Nucleic Acids Research, 2020), circRNA (Genome Medicine, 2019a; Genome Medicine, 2019b) and eRNA (Nature Communications, 2019; Nucleic Acids Research, 2021; Cancer Research, 2022). We pioneered a series of pan-cancer analyses to provide clinical insights into cancer therapy, including chronotherapy (Cell Systems, 2018), hypoxia-targeted therapy (Nature Metabolism, 2019), target therapy (Genome Medicine, 2020a), and immunotherapy (Nature Immunology, 2019; Nature Communications, 2020a; Nature Communications, 2020b; Genome Medicine, 2020b; Advanced Science, 2020; Journal of the National Cancer Institute, 2021; Cancer Cell, 2021; The Innovation, 2021; Journal for Immunotherapy of Cancer, 2022; Nature Reviews Clinical Oncology, 2022). These studies shed light on future clinical considerations for the development of innovative therapies for cancer types currently lacking effective treatment options. We will further develop highly innovative prognostic and therapeutic strategies with the potential to produce a major impact on biomedical research. Bio: Dr. Han is an Associate Professor and CPRIT scholar at Texas A&M University, Institute of Biosciences & Technology. Before join TAMU, he is an Assistant Professor at The University of Texas Health Science Center at Houston. Dr. Han obtained his PhD from Chinese Academy of Sciences and did postdoc training with Dr. Joseph C. Wu at Stanford University, and Dr. Han Liang at MD Anderson Cancer Center. Dr. Han’s lab focused on harnessing big data for precision oncology. In the past several years, his labs contributed to RNA-targeted therapy, target therapy and immunotherapy, and published several papers in high profile journals, including Cancer Cell, Nature Metabolism, Nature Immunology, Nature Communications, The Innovation, Cell Systems, Cell Reports, Nucleic Acids Research, Genome Medicine, Journal of the National Cancer Institute. He has been invited to contribute review, commentary and spotlight by multiple journals, including Nature Reviews Clinical Oncology, Nature Biotechnology, Trends in Genetics, Trends in Cancer, Trends in Molecular Medicine, Genome Medicine, and Oncogene. To date, he has published >140 peer-reviewed papers, with a total of > 17,000 citations (Google scholar, H-index = 56). | 2022-02-16 11:00:00 | Online | Cancer,Data Science | Online | CDSL | 0 | Harnessing big data for precision oncology | |||
513 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH Training LibraryWhenThu, Feb 17, 2022 - 12:00 pm - 1:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2022-02-17 12:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 1 | |||
1048 |
Distinguished Speakers Seminar SeriesDescriptionOur goal is to understand how cellular heterogeneity encodes the molecular structure, function, and regulation of complex biological systems. Primarily using single cell genomics, we analyze systems by profiling their most fundamental units individually – a ‘bottom-up’ approach that allows us to study how diverse groups of cells work together to drive biological processes and behaviors. – Satija Lab Since Dr. Satija will be ...Read More Our goal is to understand how cellular heterogeneity encodes the molecular structure, function, and regulation of complex biological systems. Primarily using single cell genomics, we analyze systems by profiling their most fundamental units individually – a ‘bottom-up’ approach that allows us to study how diverse groups of cells work together to drive biological processes and behaviors. – Satija Lab Since Dr. Satija will be presenting unpublished work in this webinar, it will not be recorded or distributed. DetailsOrganizerBTEPWhenThu, Feb 17, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Our goal is to understand how cellular heterogeneity encodes the molecular structure, function, and regulation of complex biological systems. Primarily using single cell genomics, we analyze systems by profiling their most fundamental units individually – a ‘bottom-up’ approach that allows us to study how diverse groups of cells work together to drive biological processes and behaviors. – Satija Lab Since Dr. Satija will be presenting unpublished work in this webinar, it will not be recorded or distributed. | 2022-02-17 13:00:00 | Any | Single Cell Technologies | Single Cell RNA-seq,Single Cell Technologies | Online | Rahul Satija (NYU) | BTEP | 1 | Integrated Analysis of Single Cell Data Across Technologies and Modalities | |
1015 |
Description
Rahul Satija, D.Phil., Core Faculty Member, New York Genome Center, Associate Professor of Biology, Center for Genomics and Systems Biology, New York University (NYU), Associate Faculty, Institute for Systems Genetics, NYU Langone Medical Center
Our goal is to understand how cellular heterogeneity encodes the molecular structure, function, and regulation of complex biological systems. Primarily using single cell genomics, we analyze systems by profiling their most fundamental units individually - a ‘bottom-up’ approach that allows ...Read More
Rahul Satija, D.Phil., Core Faculty Member, New York Genome Center, Associate Professor of Biology, Center for Genomics and Systems Biology, New York University (NYU), Associate Faculty, Institute for Systems Genetics, NYU Langone Medical Center
Our goal is to understand how cellular heterogeneity encodes the molecular structure, function, and regulation of complex biological systems. Primarily using single cell genomics, we analyze systems by profiling their most fundamental units individually - a ‘bottom-up’ approach that allows us to study how diverse groups of cells work together to drive biological processes and behaviors. - Satija Lab
Since Dr. Satija will be presenting unpublished work in this webinar, it will not be recorded or distributed.
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=ma7870df34aaa3a8048bff388e2f964c1
RegisterOrganizerBTEPWhenThu, Feb 17, 2022 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Rahul Satija, D.Phil., Core Faculty Member, New York Genome Center, Associate Professor of Biology, Center for Genomics and Systems Biology, New York University (NYU), Associate Faculty, Institute for Systems Genetics, NYU Langone Medical Center Our goal is to understand how cellular heterogeneity encodes the molecular structure, function, and regulation of complex biological systems. Primarily using single cell genomics, we analyze systems by profiling their most fundamental units individually - a ‘bottom-up’ approach that allows us to study how diverse groups of cells work together to drive biological processes and behaviors. - Satija Lab Since Dr. Satija will be presenting unpublished work in this webinar, it will not be recorded or distributed. Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=ma7870df34aaa3a8048bff388e2f964c1 | 2022-02-17 13:00:00 | Online Webinar | Online | Rahul Satija (NYU) | BTEP | 0 | Rahul Satija: Integrated Analysis of Single Cell Data Across Technologies and Modalities | |||
514 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
DetailsOrganizerNIH Training LibraryWhenFri, Feb 18, 2022 - 12:00 pm - 1:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2022-02-18 12:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 2 | |||
1018 |
Description
We will go over data clean up, visualization, clustering (tSNE, UMAP, 3D PCA) and cluster identification using your markers. Qlucore supports automatic import of 10x data, user-friendly visualization, easier cluster ID and visual statistics. In this presentation we will go over some basics, and considerations to set up your single cell data work pipeline from 10x output. We will show a user friendly alternative to data processing vs Loupe Browser. No expertise in data science ...Read More
We will go over data clean up, visualization, clustering (tSNE, UMAP, 3D PCA) and cluster identification using your markers. Qlucore supports automatic import of 10x data, user-friendly visualization, easier cluster ID and visual statistics. In this presentation we will go over some basics, and considerations to set up your single cell data work pipeline from 10x output. We will show a user friendly alternative to data processing vs Loupe Browser. No expertise in data science or bioinformatics is required, the session is designed for people new to data handling, interested to get hands-on with their data analysis.
Recording
RegisterOrganizerBTEPWhenWed, Feb 23, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
We will go over data clean up, visualization, clustering (tSNE, UMAP, 3D PCA) and cluster identification using your markers. Qlucore supports automatic import of 10x data, user-friendly visualization, easier cluster ID and visual statistics. In this presentation we will go over some basics, and considerations to set up your single cell data work pipeline from 10x output. We will show a user friendly alternative to data processing vs Loupe Browser. No expertise in data science or bioinformatics is required, the session is designed for people new to data handling, interested to get hands-on with their data analysis. Recording | 2022-02-23 11:00:00 | Online Webinar | Online | Yana Stackpole (Qlucore) | BTEP | 0 | Your Single Cell Data, from 10x Output to Clustering, Cluster ID and Statistical Analysis in a Visual Qlucore Platform | |||
531 |
Description
DNASTAR offers software solutions for molecular biology, protein analysis, and genomics. In this one hour webinar attendees will be presented with an overview of the applications included in Lasergene Molecular Biology and Protein. The webinar will use the latest software version, Lasergene 17.3, to provide demonstrations of various workflows, including: cloning and primer design, auto-annotation, multiple sequence (phylogenetic) alignment, Sanger sequence assembly/alignment, and protein analysis including 3D structure visualization.
Speaker: Dr. Carl-Erik Tornqvist, Field Application ...Read More
DNASTAR offers software solutions for molecular biology, protein analysis, and genomics. In this one hour webinar attendees will be presented with an overview of the applications included in Lasergene Molecular Biology and Protein. The webinar will use the latest software version, Lasergene 17.3, to provide demonstrations of various workflows, including: cloning and primer design, auto-annotation, multiple sequence (phylogenetic) alignment, Sanger sequence assembly/alignment, and protein analysis including 3D structure visualization.
Speaker: Dr. Carl-Erik Tornqvist, Field Application Scientist, DNASTAR
DetailsOrganizerCBIITWhenMon, Feb 28, 2022 - 10:00 am - 11:00 amWhereOnline |
DNASTAR offers software solutions for molecular biology, protein analysis, and genomics. In this one hour webinar attendees will be presented with an overview of the applications included in Lasergene Molecular Biology and Protein. The webinar will use the latest software version, Lasergene 17.3, to provide demonstrations of various workflows, including: cloning and primer design, auto-annotation, multiple sequence (phylogenetic) alignment, Sanger sequence assembly/alignment, and protein analysis including 3D structure visualization. Speaker: Dr. Carl-Erik Tornqvist, Field Application Scientist, DNASTAR | 2022-02-28 10:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Introduction to DNASTAR Lasergene | |||
532 |
Description
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis.
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis.
DetailsOrganizerNIH Training LibraryWhenTue, Mar 01, 2022 - 10:30 am - 12:30 pmWhereOnline |
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis. | 2022-03-01 10:30:00 | Online | Bioinformatics Software, | Online | NIH Training Library | 0 | BASIC SINGLE CELL ANALYSIS IN PARTEK FLOW | |||
540 |
Description
Please join us for an LCB webinar next Tuesday, March 8, 2:00-3:00, via ZoomGov
Dr. Thomas Gonatopoulos-Pournatzis, Stadtman Investigator, RNA Biology Laboratory, Functional Transcriptomics Section, NCI Frederick (guest of Pedro Batista) will present a lecture:
Towards Uncovering the Regulatory and Functional Complexity of the Mammalian Transcriptome.
Meeting ID: 161 556 4245
Please join us for an LCB webinar next Tuesday, March 8, 2:00-3:00, via ZoomGov
Dr. Thomas Gonatopoulos-Pournatzis, Stadtman Investigator, RNA Biology Laboratory, Functional Transcriptomics Section, NCI Frederick (guest of Pedro Batista) will present a lecture:
Towards Uncovering the Regulatory and Functional Complexity of the Mammalian Transcriptome.
Meeting ID: 161 556 4245
DetailsOrganizerLaboratory of Cell Biology (LCB)WhenTue, Mar 08, 2022 - 2:00 pm - 3:00 pmWhereOnline |
Please join us for an LCB webinar next Tuesday, March 8, 2:00-3:00, via ZoomGov Dr. Thomas Gonatopoulos-Pournatzis, Stadtman Investigator, RNA Biology Laboratory, Functional Transcriptomics Section, NCI Frederick (guest of Pedro Batista) will present a lecture: Towards Uncovering the Regulatory and Functional Complexity of the Mammalian Transcriptome. Meeting ID: 161 556 4245 | 2022-03-08 14:00:00 | Online | Online | Laboratory of Cell Biology (LCB) | 0 | Uncovering the Regulatory and Functional Complexity of the Mammalian Transcriptome | ||||
538 |
DescriptionAre you interested in growing your data science skills or connecting with like-minded practitioners at NCI? Join us on March 8, 3:00 pm – 4:00 pm ET for a seminar on data science resources available to NCI staff! We will provide an overview of various training resources and courses on subjects ranging from bioinformatics to data science and software engineering—and share information on computing resources, forums, and workshops. Please mark your calendar today! Read More Are you interested in growing your data science skills or connecting with like-minded practitioners at NCI? Join us on March 8, 3:00 pm – 4:00 pm ET for a seminar on data science resources available to NCI staff! We will provide an overview of various training resources and courses on subjects ranging from bioinformatics to data science and software engineering—and share information on computing resources, forums, and workshops. Please mark your calendar today! Topics include:
Meeting number: 2317 575 7919 Password: qeUg93beT*3 DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, Mar 08, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Are you interested in growing your data science skills or connecting with like-minded practitioners at NCI? Join us on March 8, 3:00 pm – 4:00 pm ET for a seminar on data science resources available to NCI staff! We will provide an overview of various training resources and courses on subjects ranging from bioinformatics to data science and software engineering—and share information on computing resources, forums, and workshops. Please mark your calendar today! Topics include: Data science and cancer research: definitions, ongoing work NCI and NIH Data Science courses and workshops Communities: NCI and NIH data science teams, groups, and listservs Tools and Platforms, including NIH Integrated Data Analysis Portal (NIDAP) and scientific computing tools Compute Resources: Virtual machines, Biowulf, Frederick Research Computing Environment (FRCE) Asking for help Consultation and resources from the CBIIT Scientific Computing Program and the Frederick National Laboratory Presenter: George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Meeting number: 2317 575 7919 Password: qeUg93beT*3 | 2022-03-08 15:00:00 | Online | Data Science | Online | NCI Data Science Learning Exchange | 0 | NCI and NIH Data Science Resources | |||
539 |
DescriptionPlease join us on March 9 when Johns Hopkins University’s Elana J. Fertig, Ph.D., will demonstrate how CoGAPS, an established method for identifying transcriptional signatures related to cell type and state, can be applied to single cell data to identify patterns underlying immunotherapy response and resistance. Dr. Fertig is an associate professor of oncology and director of the division/research program in quantitative sciences, co-director of the ...Read More Please join us on March 9 when Johns Hopkins University’s Elana J. Fertig, Ph.D., will demonstrate how CoGAPS, an established method for identifying transcriptional signatures related to cell type and state, can be applied to single cell data to identify patterns underlying immunotherapy response and resistance. Dr. Fertig is an associate professor of oncology and director of the division/research program in quantitative sciences, co-director of the Convergence Institute, and associate director of quantitative sciences at the Sidney Kimmel Comprehensive Cancer Center at the Johns Hopkins University. DetailsOrganizerCBIITWhenWed, Mar 09, 2022 - 11:00 am - 12:00 pmWhereOnline |
Please join us on March 9 when Johns Hopkins University’s Elana J. Fertig, Ph.D., will demonstrate how CoGAPS, an established method for identifying transcriptional signatures related to cell type and state, can be applied to single cell data to identify patterns underlying immunotherapy response and resistance. Dr. Fertig is an associate professor of oncology and director of the division/research program in quantitative sciences, co-director of the Convergence Institute, and associate director of quantitative sciences at the Sidney Kimmel Comprehensive Cancer Center at the Johns Hopkins University. | 2022-03-09 11:00:00 | Online | Omics | Online | CBIIT | 0 | Learn about Multi-omics Modeling for Predictive Cancer Immunotherapy | |||
533 |
Description
Attendees will learn how to use Partek Flow to identify cell subtypes using both gene and protein expression in a peripheral blood mononuclear cell (PBMC) sample using Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-Seq) technology. CITE-Seq is a multimodal single cell phenotyping method. CITE-Seq data analysis starts with importing a count matrix file, followed by QC and filtering data. Clustering analysis and dimension reduction techniques are then used to visualize and identify subtypes ...Read More
Attendees will learn how to use Partek Flow to identify cell subtypes using both gene and protein expression in a peripheral blood mononuclear cell (PBMC) sample using Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-Seq) technology. CITE-Seq is a multimodal single cell phenotyping method. CITE-Seq data analysis starts with importing a count matrix file, followed by QC and filtering data. Clustering analysis and dimension reduction techniques are then used to visualize and identify subtypes of cells. Differential expression detection among different subtypes will be demonstrated, followed by Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis. Basic knowledge of Partek Flow is required.
DetailsOrganizerNIH Training LibraryWhenThu, Mar 10, 2022 - 10:30 am - 12:00 pmWhereOnline |
Attendees will learn how to use Partek Flow to identify cell subtypes using both gene and protein expression in a peripheral blood mononuclear cell (PBMC) sample using Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-Seq) technology. CITE-Seq is a multimodal single cell phenotyping method. CITE-Seq data analysis starts with importing a count matrix file, followed by QC and filtering data. Clustering analysis and dimension reduction techniques are then used to visualize and identify subtypes of cells. Differential expression detection among different subtypes will be demonstrated, followed by Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis. Basic knowledge of Partek Flow is required. | 2022-03-10 10:30:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | CITE-SEQ DATA ANALYSIS IN PARTEK FLOW | |||
541 |
Description
Presenter: Dr. Enis Afgan
Meeting number: 2300 677 6825
Password: HpX4MWfT*77
Presenter: Dr. Enis Afgan
Meeting number: 2300 677 6825
Password: HpX4MWfT*77
DetailsOrganizerNCI Containers and Workflows Interest GroupWhenFri, Mar 11, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Presenter: Dr. Enis Afgan Meeting number: 2300 677 6825 Password: HpX4MWfT*77 | 2022-03-11 15:00:00 | Online | Bioinformatics Software | Online | NCI Containers and Workflows Interest Group | 0 | Galaxy and Software Containers: A Recipe for Success | |||
543 |
Description
Please join us on March 23 when Ben Raphael, Ph.D., will present “Quantifying Tumor Heterogeneity Using Single-Cell and Spatial Sequencing.” In this presentation, Dr. Raphael will describe computational approaches to quantify tumor heterogeneity and reconstruct tumor evolution using data from single-cell DNA and spatial RNA sequencing technologies. He will also explain how tumors are heterogeneous mixtures of normal and cancerous cells with distinct genetic and transcriptional profiles.
Dr. Raphael is a professor at Princeton University ...Read More
Please join us on March 23 when Ben Raphael, Ph.D., will present “Quantifying Tumor Heterogeneity Using Single-Cell and Spatial Sequencing.” In this presentation, Dr. Raphael will describe computational approaches to quantify tumor heterogeneity and reconstruct tumor evolution using data from single-cell DNA and spatial RNA sequencing technologies. He will also explain how tumors are heterogeneous mixtures of normal and cancerous cells with distinct genetic and transcriptional profiles.
Dr. Raphael is a professor at Princeton University where he develops algorithms and mathematical models for addressing biological problems. His major areas of interest include computational cancer genomics, human structural variation, and comparative genomics.
DetailsOrganizerData Science Seminar SeriesWhenWed, Mar 23, 2022 - 11:00 am - 12:00 pmWhereOnline |
Please join us on March 23 when Ben Raphael, Ph.D., will present “Quantifying Tumor Heterogeneity Using Single-Cell and Spatial Sequencing.” In this presentation, Dr. Raphael will describe computational approaches to quantify tumor heterogeneity and reconstruct tumor evolution using data from single-cell DNA and spatial RNA sequencing technologies. He will also explain how tumors are heterogeneous mixtures of normal and cancerous cells with distinct genetic and transcriptional profiles. Dr. Raphael is a professor at Princeton University where he develops algorithms and mathematical models for addressing biological problems. His major areas of interest include computational cancer genomics, human structural variation, and comparative genomics. | 2022-03-23 11:00:00 | Online | Data Science | Online | Data Science Seminar Series | 0 | Quantifying Tumor Heterogeneity Using Single-Cell and Spatial Sequencing | |||
525 |
Description
Introduction to Data Visualization in R: ggplot in R is the fourth class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of producing scatter plots, boxplots, and time series plots using ggplot. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered ...Read More
Introduction to Data Visualization in R: ggplot in R is the fourth class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of producing scatter plots, boxplots, and time series plots using ggplot. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class students should be able to: understand the basics of plotting in ggplot; demonstrate how to add a layer to a plot using ggplot; define ggplot aesthetics; add a geometric function to a plot; produce boxplots, and time series plots using ggplot; set universal plot settings; describe what faceting is and apply faceting in ggplot; modify the aesthetics of an existing ggplot plot (including axis labels and color); build complex and customized plots from data in a data frame; exporting a plot using ggplot.
Students are encouraged to install R(link is external) and RStudio(link is external) and download the class data before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class.
DetailsOrganizerNIH Training LibraryWhenWed, Mar 23, 2022 - 1:00 pm - 2:15 pmWhereOnline |
Introduction to Data Visualization in R: ggplot in R is the fourth class in the NIH Library Introduction to R Series. A basic understanding of R and R Data Types is expected. This class provides a basic overview of producing scatter plots, boxplots, and time series plots using ggplot. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services Program that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class students should be able to: understand the basics of plotting in ggplot; demonstrate how to add a layer to a plot using ggplot; define ggplot aesthetics; add a geometric function to a plot; produce boxplots, and time series plots using ggplot; set universal plot settings; describe what faceting is and apply faceting in ggplot; modify the aesthetics of an existing ggplot plot (including axis labels and color); build complex and customized plots from data in a data frame; exporting a plot using ggplot. Students are encouraged to install R(link is external) and RStudio(link is external) and download the class data before the class so that they can follow along with the instructor. Attendees will need to download the class data before the class. | 2022-03-23 13:00:00 | Online | Programming | Online | NIH Training Library | 0 | INTRODUCTION TO DATA VISUALIZATION IN R: GGPLOT | |||
1020 |
Description
Featured in our "Topics in Bioinformatics Series", this class will introduce the QIIME2 platform for microbiome analysis.
QIIME2 is a powerful microbiome analysis platform with a wide array of tools that can be used throughout all stages of your microbiome workflow, from raw data to statistical evaluation and visualization.
This course will provide an overview of QIIME2, which will include an introduction to the core plugins and methods available with a base QIIME2 installation, tools ...Read More
Featured in our "Topics in Bioinformatics Series", this class will introduce the QIIME2 platform for microbiome analysis.
QIIME2 is a powerful microbiome analysis platform with a wide array of tools that can be used throughout all stages of your microbiome workflow, from raw data to statistical evaluation and visualization.
This course will provide an overview of QIIME2, which will include an introduction to the core plugins and methods available with a base QIIME2 installation, tools for reproducibility and visualization, features available for community support and help, and additional learning opportunities.
After taking this class, you should have a general idea of whether the QIIME2 platform will be useful for analyzing your microbiome data.
For more information on QIIME2, see the QIIME2 website.
Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m575307c646228f47e670a6b7bfa69847
RegisterOrganizerBTEPWhenThu, Mar 24, 2022 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Featured in our "Topics in Bioinformatics Series", this class will introduce the QIIME2 platform for microbiome analysis. QIIME2 is a powerful microbiome analysis platform with a wide array of tools that can be used throughout all stages of your microbiome workflow, from raw data to statistical evaluation and visualization. This course will provide an overview of QIIME2, which will include an introduction to the core plugins and methods available with a base QIIME2 installation, tools for reproducibility and visualization, features available for community support and help, and additional learning opportunities. After taking this class, you should have a general idea of whether the QIIME2 platform will be useful for analyzing your microbiome data. For more information on QIIME2, see the QIIME2 website. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m575307c646228f47e670a6b7bfa69847 | 2022-03-24 13:00:00 | Online Webinar | Microbiome analysis | Online | Alex Emmons (BTEP) | BTEP | 0 | Introducing QIIME2, a powerful microbiome analysis platform | ||
548 |
DescriptionDr. Ziv Bar-Joseph FORE Systems Biology Professor of Computer Science Machine Learning Department Computational Biology Department School of Computer Science Carnegie Mellon University Biological processes, including those involved in immune response, disease progression and development, are often dynamic. To fully understand and model regulatory networks that are activated as part of these processes requires the integration of static and times series bulk and single cell data. I will discuss methods ...Read MoreDr. Ziv Bar-Joseph FORE Systems Biology Professor of Computer Science Machine Learning Department Computational Biology Department School of Computer Science Carnegie Mellon University Biological processes, including those involved in immune response, disease progression and development, are often dynamic. To fully understand and model regulatory networks that are activated as part of these processes requires the integration of static and times series bulk and single cell data. I will discuss methods for designing experiments for studying such systems and machine learning methods for the analysis and integration of profiled data to reconstruct networks for within and between interacting cells and cell types. An application of these methods for improving protocols for the differentiation of iPSCs to lung cells and liver organoids will be presented.DetailsOrganizerSystems Biology Interest GroupWhenTue, Mar 29, 2022 - 2:00 pm - 3:00 pmWhereOnline |
Dr. Ziv Bar-Joseph FORE Systems Biology Professor of Computer Science Machine Learning Department Computational Biology Department School of Computer Science Carnegie Mellon University Biological processes, including those involved in immune response, disease progression and development, are often dynamic. To fully understand and model regulatory networks that are activated as part of these processes requires the integration of static and times series bulk and single cell data. I will discuss methods for designing experiments for studying such systems and machine learning methods for the analysis and integration of profiled data to reconstruct networks for within and between interacting cells and cell types. An application of these methods for improving protocols for the differentiation of iPSCs to lung cells and liver organoids will be presented. | 2022-03-29 14:00:00 | Online | Bulk RNA-Seq,Artificial Intelligence / Machine Learning, | Online | Systems Biology Interest Group | 0 | Temporal Modeling Using Single-Cell Transcriptomics | |||
542 |
Description
Predicting how changes in the genome manifest as phenotypic differences is an extremely challenging problem that requires a deep understanding of multiscale biological mechanisms. And while we know a great deal about how information stored in a sequence of nucleotides translates into the complexities of life, our understanding of how subtle changes on the molecular scale can lead to drastic changes in phenotype is incomplete. In the age of genomic sequencing and the wealth of ...Read More
Predicting how changes in the genome manifest as phenotypic differences is an extremely challenging problem that requires a deep understanding of multiscale biological mechanisms. And while we know a great deal about how information stored in a sequence of nucleotides translates into the complexities of life, our understanding of how subtle changes on the molecular scale can lead to drastic changes in phenotype is incomplete. In the age of genomic sequencing and the wealth of information on variation in the human genome, predicting the degree a variant of unknown significance will contribute to the pathogenicity of a disease is a challenge that can only be addressed by a computational approach. And not just because the prevalence of genomic variation makes experimental characterization intractable, advances in Artificial Intelligence (AI) provide a means to learn the multiscale complexity and emergent properties that drive genetic disease. Our preliminary studies have shown AI trained on simulations of variant protein dynamics can segregate between related but distinct disease mechanisms, and is even predictive of disease severity. As our knowledge of variant-disease associations continues to grow, AI models that connect variation in DNA to disease phenotypes will become an integral part of how we understand, assess, and treat genetic disease.
Speaker: Matthew McCoy, Ph.D., Assistant Professor, Department of Oncology, Georgetown University Medical Center
Biography:
- PhD, Bioinformatics and Computational Biology, George Mason University
- Assistant Professor, Department of Oncology, Georgetown University Medical Center
- Contributes to the research and education mission of Georgetown University's Innovation Center for Biomedical Informatics
- Research interests: Using the information gleaned through various high throughput technologies to parameterize physiologically realistic, multi-scale models of biological systems, with the ultimate goal of informing therapeutic decision making though personalized models of genetic disease.
- Accolades: Received the Marco Ramoni Distinguished Paper Award for work he presented at the AMIA 2018 Informatics Summit.
DetailsOrganizerNIA Artificial Intelligence Lecture SeriesWhenWed, Mar 30, 2022 - 10:00 am - 11:00 amWhereOnline |
Predicting how changes in the genome manifest as phenotypic differences is an extremely challenging problem that requires a deep understanding of multiscale biological mechanisms. And while we know a great deal about how information stored in a sequence of nucleotides translates into the complexities of life, our understanding of how subtle changes on the molecular scale can lead to drastic changes in phenotype is incomplete. In the age of genomic sequencing and the wealth of information on variation in the human genome, predicting the degree a variant of unknown significance will contribute to the pathogenicity of a disease is a challenge that can only be addressed by a computational approach. And not just because the prevalence of genomic variation makes experimental characterization intractable, advances in Artificial Intelligence (AI) provide a means to learn the multiscale complexity and emergent properties that drive genetic disease. Our preliminary studies have shown AI trained on simulations of variant protein dynamics can segregate between related but distinct disease mechanisms, and is even predictive of disease severity. As our knowledge of variant-disease associations continues to grow, AI models that connect variation in DNA to disease phenotypes will become an integral part of how we understand, assess, and treat genetic disease. Speaker: Matthew McCoy, Ph.D., Assistant Professor, Department of Oncology, Georgetown University Medical Center Biography: - PhD, Bioinformatics and Computational Biology, George Mason University - Assistant Professor, Department of Oncology, Georgetown University Medical Center - Contributes to the research and education mission of Georgetown University's Innovation Center for Biomedical Informatics - Research interests: Using the information gleaned through various high throughput technologies to parameterize physiologically realistic, multi-scale models of biological systems, with the ultimate goal of informing therapeutic decision making though personalized models of genetic disease. - Accolades: Received the Marco Ramoni Distinguished Paper Award for work he presented at the AMIA 2018 Informatics Summit. | 2022-03-30 10:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIA Artificial Intelligence Lecture Series | 0 | Using Artificial Intelligence to Model and Understand Genetic Disease | |||
1021 |
DescriptionWelcome to the Data Visualization with R course series! Here, we hope to help you establish the foundations for generating publication quality plots in R. We will mostly be using ggplot2 (https://ggplot2.tidyverse.org/), a powerful yet easy to learn R package that will enable users to visually explore their data and / or generate publication quality figures. This ...Read More Welcome to the Data Visualization with R course series! Here, we hope to help you establish the foundations for generating publication quality plots in R. We will mostly be using ggplot2 (https://ggplot2.tidyverse.org/), a powerful yet easy to learn R package that will enable users to visually explore their data and / or generate publication quality figures. This series will include 6 lessons over 6 weeks. Each lesson will be held online on Tuesdays at 1 pm. The lessons will be 1 hour in duration followed immediately by a 1-hour help session. Registering here will register you for all 6 lessons. You do not need to register for each individual lesson. We are catering this course series to those with little to no experience with R. You will not need to install R on your computer for this class. Instead, we will be using R through DNAnexus, a cloud platform for bioinformatics analysis. Upon registering for the class, register for a free DNAnexus account at https://www.dnanexus.com. You will need to send your username to ncibtep@nih.gov to finish setting up your DNAnexus account for course access. In this series, we will show you how to import data into R and subsequently generate some common plots such as scatter, histogram, bar, box and whisker, and heat map. We will also learn how to customize these plots using the grammar of graphics philosophy that ggplot2 was created under, and we will learn how to generate multi-panel figures (i.e., sub plots). The same meeting link can be used for all 6 lessons. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=me81c20b6f217db351033f8ecd4694550 Lesson 1, April 5, 2022: Introduction to plot types In lesson 1, we will answer the question: Why R for data visualization? In addition, we will introduce the various plot types that will be generated throughout the course and will showcase related plots that you will be able to create in the future using the foundational skills gained over the next 6 weeks. Lesson 1 will not be hands-on so no coding yet. Lesson 2, April 12, 2022: Basics of ggplot2 In lesson 2, we will focus on the basics of ggplot2, including the grammar of graphics philosophy and its application. This lesson will provide a hands on introduction to the ggplot2 syntax, geom functions, mapping and aesthetics, and plot layering. Lesson 3, April 19, 2022: Scatter plots and ggplot2 customization In lesson 3, we will continue the discussion on the grammar of graphics, with a focus on ggplot2 plot customization including axes labels, coordinate systems, axes scales, and themes. This hands on lesson will showcase these features of plot building through the generation of increasingly complex scatter plots using data included with a base R installation as well as RNASeq data. Lesson 4, April 26, 2022: Visualizing summary statistics with histograms, bar plots, and box plots In lesson 4, we will learn to generate plots that will help with visualization of summary statistics including bar plot with error bars, histogram, as well as the box and whiskers plot. Lesson 5, May 3, 2022: Visualizing clusters with heatmaps In lesson 5, we will introduce the heatmap and dendrogram as tools for visualizing clusters in data. Lesson 6, May 10, 2022: Combining multiple plots to create a figure panel In lesson 6, we will focus on generating sub plots and multi plot figure panels using ggplot2 associated packages. This will allow us to meet any figure limitations that scientific journals may have. Course Materials: https://btep.ccr.cancer.gov/docs/data-visualization-with-r/RegisterOrganizerBTEPWhenTue, Apr 05, 2022 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Welcome to the Data Visualization with R course series! Here, we hope to help you establish the foundations for generating publication quality plots in R. We will mostly be using ggplot2 (https://ggplot2.tidyverse.org/), a powerful yet easy to learn R package that will enable users to visually explore their data and / or generate publication quality figures. This series will include 6 lessons over 6 weeks. Each lesson will be held online on Tuesdays at 1 pm. The lessons will be 1 hour in duration followed immediately by a 1-hour help session. Registering here will register you for all 6 lessons. You do not need to register for each individual lesson. We are catering this course series to those with little to no experience with R. You will not need to install R on your computer for this class. Instead, we will be using R through DNAnexus, a cloud platform for bioinformatics analysis. Upon registering for the class, register for a free DNAnexus account at https://www.dnanexus.com. You will need to send your username to ncibtep@nih.gov to finish setting up your DNAnexus account for course access. In this series, we will show you how to import data into R and subsequently generate some common plots such as scatter, histogram, bar, box and whisker, and heat map. We will also learn how to customize these plots using the grammar of graphics philosophy that ggplot2 was created under, and we will learn how to generate multi-panel figures (i.e., sub plots). The same meeting link can be used for all 6 lessons. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=me81c20b6f217db351033f8ecd4694550 Lesson 1, April 5, 2022: Introduction to plot types In lesson 1, we will answer the question: Why R for data visualization? In addition, we will introduce the various plot types that will be generated throughout the course and will showcase related plots that you will be able to create in the future using the foundational skills gained over the next 6 weeks. Lesson 1 will not be hands-on so no coding yet. Lesson 2, April 12, 2022: Basics of ggplot2 In lesson 2, we will focus on the basics of ggplot2, including the grammar of graphics philosophy and its application. This lesson will provide a hands on introduction to the ggplot2 syntax, geom functions, mapping and aesthetics, and plot layering. Lesson 3, April 19, 2022: Scatter plots and ggplot2 customization In lesson 3, we will continue the discussion on the grammar of graphics, with a focus on ggplot2 plot customization including axes labels, coordinate systems, axes scales, and themes. This hands on lesson will showcase these features of plot building through the generation of increasingly complex scatter plots using data included with a base R installation as well as RNASeq data. Lesson 4, April 26, 2022: Visualizing summary statistics with histograms, bar plots, and box plots In lesson 4, we will learn to generate plots that will help with visualization of summary statistics including bar plot with error bars, histogram, as well as the box and whiskers plot. Lesson 5, May 3, 2022: Visualizing clusters with heatmaps In lesson 5, we will introduce the heatmap and dendrogram as tools for visualizing clusters in data. Lesson 6, May 10, 2022: Combining multiple plots to create a figure panel In lesson 6, we will focus on generating sub plots and multi plot figure panels using ggplot2 associated packages. This will allow us to meet any figure limitations that scientific journals may have. Course Materials: https://btep.ccr.cancer.gov/docs/data-visualization-with-r/ | 2022-04-05 13:00:00 | Online Webinar | Data visualization | Online | Joe Wu (BTEP),Alex Emmons (BTEP) | BTEP | 0 | Data Visualization with R | ||
547 |
Description
In this seminar, Dr. Malachi Griffith will:
In this seminar, Dr. Malachi Griffith will:
DetailsOrganizerData Science Seminar SeriesWhenWed, Apr 06, 2022 - 11:00 am - 12:00 pmWhereOnline |
In this seminar, Dr. Malachi Griffith will: introduce neoantigens, a promising area for cancer immunotherapy and precision medicine. describe how immunogenomic and bioinformatic approaches are helping to identify neoantigens and therapeutic modalities to target these abnormal proteins. offer insight into tools to support related clinical trial efforts. Neoantigens are new peptide sequences created from somatic mutations. Loading neoantigens onto major histocompatibility complex (MHC) molecules allows them to be recognized by immune cells, creating an ideal target for immunotherapy and personalized T-cell therapies. To identify and prioritize neoantigens, we need to be able to correctly predict their expression, processing, presentation, and stability. We also need to accurately determine how well T-cells recognize these peptide MHC complexes, ultimately confirming if a neoantigen induced a therapeutically meaningful immune response. The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. Speaker: Dr. Griffith is an associate professor of medicine (oncology) and genetics and assistant director of the McDonnell Genome Institute at Washington University in St. Louis. Dr. Griffith is a co-chair of the Global Alliance for Genomics & Health’s Variant Interpretation for Cancer Consortium. He has published more than 90 studies, received numerous research awards and honors, and held several large grants from NIH, including a K99/R00 Career Development Award. He has mentored more than 50 bioinformatics trainees, and he served as an instructor for Cold Spring Harbor Laboratories and the Canadian Bioinformatics Workshops. | 2022-04-06 11:00:00 | Online | Cancer,Bioinformatics Software | Online | Data Science Seminar Series | 0 | Bioinformatics Approaches for Neoantigen Identification and Prioritization | |||
1019 |
Description
Gene set enrichment analysis (GSEA) is a statistical method that can be used to determine if gene sets are differentially expressed in different phenotypes. Qlucore Omics Explorer has implemented the GSEA method in a generic, fast, and easy to use workbench, ideal for biologists.
Now it is also possible to easily compare Mouse and Rat gene expression data with human pathways (gene sets) using a simple conversion. Read More
Gene set enrichment analysis (GSEA) is a statistical method that can be used to determine if gene sets are differentially expressed in different phenotypes. Qlucore Omics Explorer has implemented the GSEA method in a generic, fast, and easy to use workbench, ideal for biologists.
Now it is also possible to easily compare Mouse and Rat gene expression data with human pathways (gene sets) using a simple conversion. A gene set is a collection of genes, present in a pathway, or associated with a specific biological process, disease, or other lists of biologically relevant information. Gene sets are available for download from open online repositories such as MSigDB (Molecular Signatures Database) from Broad Institute. All gene sets in MSigDB consist of human gene symbols. In Qlucore Omics Explorer 3.8 you can benefit from in-built conversion of variable identifiers using so-called chip files that are provided by Broad Institute. RegisterOrganizerBTEPWhenWed, Apr 06, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
Gene set enrichment analysis (GSEA) is a statistical method that can be used to determine if gene sets are differentially expressed in different phenotypes. Qlucore Omics Explorer has implemented the GSEA method in a generic, fast, and easy to use workbench, ideal for biologists. Now it is also possible to easily compare Mouse and Rat gene expression data with human pathways (gene sets) using a simple conversion. A gene set is a collection of genes, present in a pathway, or associated with a specific biological process, disease, or other lists of biologically relevant information. Gene sets are available for download from open online repositories such as MSigDB (Molecular Signatures Database) from Broad Institute. All gene sets in MSigDB consist of human gene symbols. In Qlucore Omics Explorer 3.8 you can benefit from in-built conversion of variable identifiers using so-called chip files that are provided by Broad Institute. | 2022-04-06 11:00:00 | Online Webinar | Online | Yana Stackpole (Qlucore) | BTEP | 0 | Qlucore: Pathway Analysis with Gene Set Enrichment Analysis (GSEA) | |||
550 |
Description
Life Rafts in a Sea of Data: The Role of Librarians in Supporting Data Sharing
Abstract: The NIH has updated its policies on managing and sharing research data and will require a Data Management and Sharing Plan for all NIH-funded projects beginning in January 2023. This impending change may seem overwhelming, particularly for researchers who have not had to consider how to make their data findable, accessible, interoperable, or reusable by others ...Read More
Life Rafts in a Sea of Data: The Role of Librarians in Supporting Data Sharing
Abstract: The NIH has updated its policies on managing and sharing research data and will require a Data Management and Sharing Plan for all NIH-funded projects beginning in January 2023. This impending change may seem overwhelming, particularly for researchers who have not had to consider how to make their data findable, accessible, interoperable, or reusable by others outside of the project team before. Librarians have prepared for the data sharing requirements made by funding agencies and publishers, and many academic libraries now offer data services to help researchers navigate through the process. Librarians offer services and support to help craft actionable data sharing plans, to assist researchers in considering how to document and organize their data, and to prepare data for deposit into a repository. Our presentation will introduce you to how librarians approach data services and how to connect with the services they provide.
Making Headway in National Efforts toward Data Sharing and Suppor
Abstract: A growing area of library services involves supporting (re)use, management, and sharing of data in research. In order to support capacity for data-informed research, the National Center for Data Services (NCDS) was established in July 2021. The NCDS provides training, resources, and support for health information professionals in developing data literacy and providing data services. This presentation will provide background about the NCDS and detail the particular efforts of the Center toward informing about the NIH Data Management and Sharing Plan requirements to begin in 2023.
Carlson Bio: Jake Carlson is the Director of the Deep Blue Repository and Research Data Services (DBRRDS) department at the University of Michigan (U-M) Library. DBRRDS oversees the Library’s two institutional repositories: Deep Blue Documents(link is external), for articles, dissertations, presentations and other human-readable materials, and Deep Blue Data(link is external), for data sets and other machine-readable materials generated by the U-M community. Carlson’s work centers on developing and supporting services to publish materials of scholarly value that do not have a home in traditional publication structures, including research data, following FAIR and ethical practices. Carlson has authored or co-authored more than 20 articles on research data services in libraries. He is a co-editor, with Lisa Johnston, of the book Data information Literacy: Librarians, Data and the Education of a New Generation of Researchers published in 2015 by the Purdue University Press.
Narlock Bio: Mikala Narlock is the Assistant Director of the Data Curation Network, based at the University of Minnesota. In this role, Mikala ensures the DCN develops in a sustainable fashion while advancing strategic goals. Specific responsibilities include support and development for the data curators; fostering community with members and potential partners; advocating for the data curation profession; facilitating shared curation activities; and upholding DCN's reputation as a trusted, transparent, and empowering partner.
Ossom-Williamson Bio: Peace Ossom-Williamson, MLS, MS, AHIP is Associate Director of the National Center for Data Services of the Network of the National Library of Medicine. Prior to this role, she served as Director of Research Data Services at The University of Texas at Arlington, where she developed and led efforts supporting data use in research. She is a medical librarian and health educator with 17 years of experience in libraries in a wide variety of roles, and she teaches numerous courses for different audiences around data services and public health informatics.
DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenWed, Apr 06, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Life Rafts in a Sea of Data: The Role of Librarians in Supporting Data Sharing Abstract: The NIH has updated its policies on managing and sharing research data and will require a Data Management and Sharing Plan for all NIH-funded projects beginning in January 2023. This impending change may seem overwhelming, particularly for researchers who have not had to consider how to make their data findable, accessible, interoperable, or reusable by others outside of the project team before. Librarians have prepared for the data sharing requirements made by funding agencies and publishers, and many academic libraries now offer data services to help researchers navigate through the process. Librarians offer services and support to help craft actionable data sharing plans, to assist researchers in considering how to document and organize their data, and to prepare data for deposit into a repository. Our presentation will introduce you to how librarians approach data services and how to connect with the services they provide. Making Headway in National Efforts toward Data Sharing and Suppor Abstract: A growing area of library services involves supporting (re)use, management, and sharing of data in research. In order to support capacity for data-informed research, the National Center for Data Services (NCDS) was established in July 2021. The NCDS provides training, resources, and support for health information professionals in developing data literacy and providing data services. This presentation will provide background about the NCDS and detail the particular efforts of the Center toward informing about the NIH Data Management and Sharing Plan requirements to begin in 2023. Carlson Bio: Jake Carlson is the Director of the Deep Blue Repository and Research Data Services (DBRRDS) department at the University of Michigan (U-M) Library. DBRRDS oversees the Library’s two institutional repositories: Deep Blue Documents(link is external), for articles, dissertations, presentations and other human-readable materials, and Deep Blue Data(link is external), for data sets and other machine-readable materials generated by the U-M community. Carlson’s work centers on developing and supporting services to publish materials of scholarly value that do not have a home in traditional publication structures, including research data, following FAIR and ethical practices. Carlson has authored or co-authored more than 20 articles on research data services in libraries. He is a co-editor, with Lisa Johnston, of the book Data information Literacy: Librarians, Data and the Education of a New Generation of Researchers published in 2015 by the Purdue University Press. Narlock Bio: Mikala Narlock is the Assistant Director of the Data Curation Network, based at the University of Minnesota. In this role, Mikala ensures the DCN develops in a sustainable fashion while advancing strategic goals. Specific responsibilities include support and development for the data curators; fostering community with members and potential partners; advocating for the data curation profession; facilitating shared curation activities; and upholding DCN's reputation as a trusted, transparent, and empowering partner. Ossom-Williamson Bio: Peace Ossom-Williamson, MLS, MS, AHIP is Associate Director of the National Center for Data Services of the Network of the National Library of Medicine. Prior to this role, she served as Director of Research Data Services at The University of Texas at Arlington, where she developed and led efforts supporting data use in research. She is a medical librarian and health educator with 17 years of experience in libraries in a wide variety of roles, and she teaches numerous courses for different audiences around data services and public health informatics. | 2022-04-06 13:00:00 | Data Management | Online | NIH Office of Data Science Strategy (ODSS) | 0 | Introduction to Data Curation and Services for Researchers | ||||
534 |
Description
During the first part of the session attendees will learn how to use Partek Flow to perform special transcriptions by overlaying cell location information and histological images on single cell RNA-Seq data using 10X genomics data. During the second part of the session, attendees will learn how to run trajectory analysis and calculate pseudo-time.
During the first part of the session attendees will learn how to use Partek Flow to perform special transcriptions by overlaying cell location information and histological images on single cell RNA-Seq data using 10X genomics data. During the second part of the session, attendees will learn how to run trajectory analysis and calculate pseudo-time.
DetailsOrganizerNIH Training LibraryWhenThu, Apr 07, 2022 - 10:30 am - 12:30 pmWhereOnline |
During the first part of the session attendees will learn how to use Partek Flow to perform special transcriptions by overlaying cell location information and histological images on single cell RNA-Seq data using 10X genomics data. During the second part of the session, attendees will learn how to run trajectory analysis and calculate pseudo-time. | 2022-04-07 10:30:00 | Online | Single Cell Technologies,Bioinformatics Software,Spatial Transcriptomics | Online | NIH Training Library | 0 | SPATIAL TRANSCRIPTOMICS AND TRAJECTORY ANALYSIS IN PARTEK FLOW | |||
549 |
Description
Join Dr. Maryellen L. Giger at the April NCI Imaging and Informatics Community Webinar for a discussion on the development, validation, database needs, and ultimate future implementation of artificial intelligence (AI) in the clinical radiology workflow, which will include case studies of breast cancer and COVID-19.
AI in medical imaging involves research in task-based discovery, predictive modeling, and robust clinical translation. Quantitative radiomic analyses, an extension of computer-aided detection and computer-aided diagnosis methods, are yielding ...Read More
Join Dr. Maryellen L. Giger at the April NCI Imaging and Informatics Community Webinar for a discussion on the development, validation, database needs, and ultimate future implementation of artificial intelligence (AI) in the clinical radiology workflow, which will include case studies of breast cancer and COVID-19.
AI in medical imaging involves research in task-based discovery, predictive modeling, and robust clinical translation. Quantitative radiomic analyses, an extension of computer-aided detection and computer-aided diagnosis methods, are yielding novel image-based tumor characteristics, (i.e., signatures that may ultimately contribute to the design of patient-specific cancer diagnostics and treatments).
Beyond human-engineered features, deep convolutional neural networks (CNN) are being investigated in the diagnosis of disease through radiography, ultrasound, and MRIs. The method of extracting characteristic radiomic features of a lesion and/or background can be referred to as “virtual biopsies.” For radiologists, various AI methods are evolving with the potential to aid as second, concurrent, or primary autonomous readers. In addition, performance evaluations, as well as considerations of robustness and repeatability, are necessary to enable translation.
DetailsOrganizerCBIITWhenThu, Apr 07, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Join Dr. Maryellen L. Giger at the April NCI Imaging and Informatics Community Webinar for a discussion on the development, validation, database needs, and ultimate future implementation of artificial intelligence (AI) in the clinical radiology workflow, which will include case studies of breast cancer and COVID-19. AI in medical imaging involves research in task-based discovery, predictive modeling, and robust clinical translation. Quantitative radiomic analyses, an extension of computer-aided detection and computer-aided diagnosis methods, are yielding novel image-based tumor characteristics, (i.e., signatures that may ultimately contribute to the design of patient-specific cancer diagnostics and treatments). Beyond human-engineered features, deep convolutional neural networks (CNN) are being investigated in the diagnosis of disease through radiography, ultrasound, and MRIs. The method of extracting characteristic radiomic features of a lesion and/or background can be referred to as “virtual biopsies.” For radiologists, various AI methods are evolving with the potential to aid as second, concurrent, or primary autonomous readers. In addition, performance evaluations, as well as considerations of robustness and repeatability, are necessary to enable translation. | 2022-04-07 13:00:00 | Online | Cancer,Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Machine Intelligence Data Science in Medical Imaging of Breast Cancer and COVID-19 | |||
544 |
Description
The central nervous system (CNS) is intrinsically complex and CNS injury impacts molecules, cells, circuits, cognition, mood and behavior, and all organ systems innervated by CNS via its peripheral projections. To manage this complexity the fields of traumatic brain injury and spinal cord injury have launched community-driven data sharing initiatives and ecosystems for making research data FAIR and AI-ready. Dr. Ferguson will provide an overview of these efforts and describe how machine intelligence on pooled ...Read More
The central nervous system (CNS) is intrinsically complex and CNS injury impacts molecules, cells, circuits, cognition, mood and behavior, and all organ systems innervated by CNS via its peripheral projections. To manage this complexity the fields of traumatic brain injury and spinal cord injury have launched community-driven data sharing initiatives and ecosystems for making research data FAIR and AI-ready. Dr. Ferguson will provide an overview of these efforts and describe how machine intelligence on pooled data is revolutionizing precision care in these epidemiologically large, yet poorly understood areas of biomedicine.
Speaker:
Adam R. Fergurson, M.S., Ph.D.
Director of Data Science, Brain and Spinal Injury Center (BASIC). Professor, Department of Neurological Surgery, University of California, San Francisco. Principal Investigator, San Francisco VA Healthcare System.
Dr. Ferguson works specifically at the interface of data science and translational biomedical research. During his PhD in psychology (behavioral neuroscience), he specialized in injury-induced neuroplasticity, as well multivariate quantitative methods. He then completed postdoctoral research in cellular and molecular neuroscience, including an individual NIH NRSA (F32) dedicated to synaptic biology after spinal cord injury (SCI). He pivoted directly from F32- funded postdoc into R01-funded faculty of UCSF in 2010 with an NIH early-stage investigator award (R01) in synaptic biology after CNS injury and an established investigator award (R01) to develop data science tools for neurotrauma. His laboratory has continued to pursue both bench research and data science ever since. Among their notable scientific contributions, they developed a preclinical data sharing network that has now matured into the Open Data Commons for Spinal Cord Injury (odc-sci.org) and Traumatic Brain Injury (odc-tbi.org), cloud- based data infrastructures hosting data from over 100+ laboratories (10,000+ research subjects), and the translational private data commons (pdc-sci.org) for late-stage stem cell and neuromodulation therapies. He is jointly appointed to the San Francisco Veterans Affairs (VA) Health Care System and has two VA Merit Awards (I01) to develop data science tools for late-stage nonhuman SCI translational models and chronic traumatic brain injury (cTBI) and serves as MPI on the VA PRECISE-TBI Interagency Resource Center (I50). At UCSF, he serves as PD/PI on and NIH UG3/UH3 project for multicenter biomarker discovery in preclinical TBI (TOP-NT), a U24 to support Panneurotrauma data repositories, and an R01 for synaptic plasticity after neurotrauma. He also serves as data science Co-I on multicenter clinical research projects, including large-scale NIH/DoD clinical discovery projects TRACKSCI, TRACK-TBI/TED, CARE-TRACK-TBI DOD-DOE grant, and the UCSF-REACH U19 chronic low back pain project as part of the HEAL initiative. He is involved in shaping national data sharing policy for FAIR (findable, accessible, interoperable, reusable) data through workshop presentations at NASEM and related whitepapers. Finally, he serves as director of biostats and data sciences for the UCSF BMS graduate studies program and has served as mentor/co-mentor on 16 successful fellowships including 5 NRSAs, a NIH K99R00, a K22R00, NIH diversity awards, an NIH BD2K RoadTrip fellowship, 2 VA CDA K award, among others. Collectively this work has produced 170+ published papers in preclinical and clinical research, most co-authored with trainees.
About the Seminar Series:
The seminar is open to the public and registration is required each month.
The National Institutes of Health (NIH) Office of Data Science Strategy hosts this seminar series to highlight exemplars of data sharing and reuse on the second Friday of each month at noon ET. The monthly series highlights researchers who have taken existing data and found clever ways to reuse the data or generate new findings. A different NIH institute or center will also share its data science activities each month.
DetailsOrganizerData Sharing and Reuse Seminar SeriesWhenFri, Apr 08, 2022 - 12:00 pm - 1:00 pmWhereOnline |
The central nervous system (CNS) is intrinsically complex and CNS injury impacts molecules, cells, circuits, cognition, mood and behavior, and all organ systems innervated by CNS via its peripheral projections. To manage this complexity the fields of traumatic brain injury and spinal cord injury have launched community-driven data sharing initiatives and ecosystems for making research data FAIR and AI-ready. Dr. Ferguson will provide an overview of these efforts and describe how machine intelligence on pooled data is revolutionizing precision care in these epidemiologically large, yet poorly understood areas of biomedicine. Speaker: Adam R. Fergurson, M.S., Ph.D. Director of Data Science, Brain and Spinal Injury Center (BASIC). Professor, Department of Neurological Surgery, University of California, San Francisco. Principal Investigator, San Francisco VA Healthcare System. Dr. Ferguson works specifically at the interface of data science and translational biomedical research. During his PhD in psychology (behavioral neuroscience), he specialized in injury-induced neuroplasticity, as well multivariate quantitative methods. He then completed postdoctoral research in cellular and molecular neuroscience, including an individual NIH NRSA (F32) dedicated to synaptic biology after spinal cord injury (SCI). He pivoted directly from F32- funded postdoc into R01-funded faculty of UCSF in 2010 with an NIH early-stage investigator award (R01) in synaptic biology after CNS injury and an established investigator award (R01) to develop data science tools for neurotrauma. His laboratory has continued to pursue both bench research and data science ever since. Among their notable scientific contributions, they developed a preclinical data sharing network that has now matured into the Open Data Commons for Spinal Cord Injury (odc-sci.org) and Traumatic Brain Injury (odc-tbi.org), cloud- based data infrastructures hosting data from over 100+ laboratories (10,000+ research subjects), and the translational private data commons (pdc-sci.org) for late-stage stem cell and neuromodulation therapies. He is jointly appointed to the San Francisco Veterans Affairs (VA) Health Care System and has two VA Merit Awards (I01) to develop data science tools for late-stage nonhuman SCI translational models and chronic traumatic brain injury (cTBI) and serves as MPI on the VA PRECISE-TBI Interagency Resource Center (I50). At UCSF, he serves as PD/PI on and NIH UG3/UH3 project for multicenter biomarker discovery in preclinical TBI (TOP-NT), a U24 to support Panneurotrauma data repositories, and an R01 for synaptic plasticity after neurotrauma. He also serves as data science Co-I on multicenter clinical research projects, including large-scale NIH/DoD clinical discovery projects TRACKSCI, TRACK-TBI/TED, CARE-TRACK-TBI DOD-DOE grant, and the UCSF-REACH U19 chronic low back pain project as part of the HEAL initiative. He is involved in shaping national data sharing policy for FAIR (findable, accessible, interoperable, reusable) data through workshop presentations at NASEM and related whitepapers. Finally, he serves as director of biostats and data sciences for the UCSF BMS graduate studies program and has served as mentor/co-mentor on 16 successful fellowships including 5 NRSAs, a NIH K99R00, a K22R00, NIH diversity awards, an NIH BD2K RoadTrip fellowship, 2 VA CDA K award, among others. Collectively this work has produced 170+ published papers in preclinical and clinical research, most co-authored with trainees. About the Seminar Series: The seminar is open to the public and registration is required each month. The National Institutes of Health (NIH) Office of Data Science Strategy hosts this seminar series to highlight exemplars of data sharing and reuse on the second Friday of each month at noon ET. The monthly series highlights researchers who have taken existing data and found clever ways to reuse the data or generate new findings. A different NIH institute or center will also share its data science activities each month. | 2022-04-08 12:00:00 | Online | Data Science | Online | Data Sharing and Reuse Seminar Series | 0 | Data Sharing and Machine Intelligence for Translational CNS Injury Research | |||
1022 |
Description
The first and the most common single cell application is single cell RNA-Seq, which enables scientists to focus on the gene expression profiles of individual cells rather than on tissue averages. Knowledge of expression profiles facilitates detection and characterization of novel cell types and better insight into the biology of known types. This presentation will demonstrate how to use Partek Flow data visualizations and statistical analysis tools to find answers to biological questions.
Meeting Link: <...Read More
The first and the most common single cell application is single cell RNA-Seq, which enables scientists to focus on the gene expression profiles of individual cells rather than on tissue averages. Knowledge of expression profiles facilitates detection and characterization of novel cell types and better insight into the biology of known types. This presentation will demonstrate how to use Partek Flow data visualizations and statistical analysis tools to find answers to biological questions.
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mf92e0f73192a3f90badcd96bd399ec03
It is not necessary to have Partek Flow working on your laptop to attend this training, but if you would like to install it for future use:
RegisterOrganizerBTEPWhenWed, Apr 13, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
The first and the most common single cell application is single cell RNA-Seq, which enables scientists to focus on the gene expression profiles of individual cells rather than on tissue averages. Knowledge of expression profiles facilitates detection and characterization of novel cell types and better insight into the biology of known types. This presentation will demonstrate how to use Partek Flow data visualizations and statistical analysis tools to find answers to biological questions. Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=mf92e0f73192a3f90badcd96bd399ec03 It is not necessary to have Partek Flow working on your laptop to attend this training, but if you would like to install it for future use: have a HPC account — see here for information about how to obtain a HPC account. have a /data directory with enough disk space to hold their Partek Flow files — please fill out this online form if you do not already have a /data directory or if you require more disk space. have a Partek Flow account created for them — please contact staff@hpc.nih.gov. Once these steps have been accomplished, Partek Flow is available at https://partekflow.cit.nih.gov/flow. | 2022-04-13 11:00:00 | Online Webinar | Single Cell RNA-seq | Online | Xiaowen Wang (Partek) | BTEP | 0 | Single Cell RNA Seq Analysis with Partek Flow | ||
552 |
Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
For meeting zoom link, email: staff@hpc.nih.gov
Date: Wed 13 Apr
Time: 1 - 3 pm ET
At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member.
Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please
- mute when not speaking
- refrain from screen sharing until asked to do so in the breakout room
- screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users
DetailsOrganizerHPC BiowulfWhenWed, Apr 13, 2022 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. For meeting zoom link, email: staff@hpc.nih.gov Date: Wed 13 Apr Time: 1 - 3 pm ET At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2022-04-13 13:00:00 | Online | NIH High Performance Unix Cluster Biowulf | In-Person | HPC Biowulf | 0 | NIH HPC Biowulf Monthly Zoom-in Consults | |||
535 |
Description
Participants will learn how to perform analysis for ATAC-Seq/ChIP-Seq data in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish ATAC-Seq/ChIP-Seq data analysis.
Participants will learn how to perform analysis for ATAC-Seq/ChIP-Seq data in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish ATAC-Seq/ChIP-Seq data analysis.
DetailsOrganizerNIH Training LibraryWhenThu, Apr 14, 2022 - 10:30 am - 12:30 pmWhereOnline |
Participants will learn how to perform analysis for ATAC-Seq/ChIP-Seq data in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish ATAC-Seq/ChIP-Seq data analysis. | 2022-04-14 10:30:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | ATAC-SEQ/CHIP-SEQ DATA ANALYSIS IN PARTEK FLOW | |||
551 |
Description
During this seminar, Dr. Clemens Grassberger will highlight:
During this seminar, Dr. Clemens Grassberger will highlight:
DetailsOrganizerCBIITWhenWed, Apr 20, 2022 - 11:00 am - 12:00 pmWhereOnline |
During this seminar, Dr. Clemens Grassberger will highlight: current computational and mathematical approaches for modeling the impact of radiotherapy on the immune system, and how to design the next generation of combination trials. The increasing use of radiotherapy in multi-modality approaches, together with targeted biological agents, have emphasized the need for treatment response models encompassing the entire cancer treatment, not only radiotherapy. When combining radiotherapy with immunotherapeutic approaches, there is now a focus on evaluating the effects of radiation on the patient’s immune response, in addition to the direct biological effects of radiation on the tumor. | 2022-04-20 11:00:00 | Online | Cancer | Online | CBIIT | 0 | Computational and Mathematical Approaches to Modeling Immunotherapy-Radiotherapy Combinations | |||
1023 |
Description
Qiagen IPA Land Explorer links out to the OmicSoft “Land” collections of disease-relevant datasets (>500,000 samples) directly from within IPA to:
Qiagen IPA Land Explorer links out to the OmicSoft “Land” collections of disease-relevant datasets (>500,000 samples) directly from within IPA to:
RegisterOrganizerBTEPWhenWed, Apr 20, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
Qiagen IPA Land Explorer links out to the OmicSoft “Land” collections of disease-relevant datasets (>500,000 samples) directly from within IPA to: Explore sample-level data expression, variation, fusions, and more from 500,000+ datasets Explore full differential expression results from 100,000+ disease-focused statistical comparisons Quickly create survival plots from thousands of samples, grouped on metadata or ‘Omics data Export ‘Omics and comparison data for downstream analytics Land Explorer can help you answer questions like below and more How is a gene/protein expressed across different diseases, tissues, cell type and other groups of interest? How does expression of target gene correlate with expression of other genes? For a gene what mutation, CNV and fusion information can I get from TCGA? Is the survival of cohorts different if they have high vs low expression of a gene or mutant vs wild type allele for a gene? Which genes are expressed in responders vs non-responders for a drug treatment? Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m6a4ca1b5d634700c3ad9c7e6c1b45b72 | 2022-04-20 11:00:00 | Online Webinar | Online | Shawn Prince (Qiagen) | BTEP | 0 | Training: Access GEO, SRA, ArrayExpress, TCGA, GTEx and more with Qiagen IPA Land Explorer | |||
1049 |
Distinguished Speakers Seminar SeriesDescriptionMaking data reusable for discovery and shared analytics across domains is a laborious, specific-skill requiring task that most data providers do not have the resources, expertise, or perspective to perform. Equally challenged are the data re-users, who function in a landscape of bespoke schemas, formats, and coding – when they can get past understanding the licensing and access control issues. Making the most of our collective data requires partnerships between basic researchers, clinicians, patients, and ...Read More Making data reusable for discovery and shared analytics across domains is a laborious, specific-skill requiring task that most data providers do not have the resources, expertise, or perspective to perform. Equally challenged are the data re-users, who function in a landscape of bespoke schemas, formats, and coding – when they can get past understanding the licensing and access control issues. Making the most of our collective data requires partnerships between basic researchers, clinicians, patients, and informaticians, as well as sophisticated strategies to address a myriad of interoperability issues. This talk will review different communities endeavors towards these ends from across the translational spectrum. DetailsOrganizerBTEPWhenThu, Apr 21, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Making data reusable for discovery and shared analytics across domains is a laborious, specific-skill requiring task that most data providers do not have the resources, expertise, or perspective to perform. Equally challenged are the data re-users, who function in a landscape of bespoke schemas, formats, and coding – when they can get past understanding the licensing and access control issues. Making the most of our collective data requires partnerships between basic researchers, clinicians, patients, and informaticians, as well as sophisticated strategies to address a myriad of interoperability issues. This talk will review different communities endeavors towards these ends from across the translational spectrum. | 2022-04-21 13:00:00 | Any | Online | Melissa Haendel (CU Anschutz) | BTEP | 1 | Realizing Data Interoperability Across Basic Research, Clinical Care, and Patients | |||
1017 |
Description
Making data reusable for discovery and shared analytics across domains is a laborious, specific-skill requiring task that most data providers do not have the resources, expertise, or perspective to perform. Equally challenged are the data re-users, who function in a landscape of bespoke schemas, formats, and coding - when they can get past understanding the licensing and access control issues. Making the most of our collective data requires partnerships between basic researchers, clinicians, patients, and ...Read More
Making data reusable for discovery and shared analytics across domains is a laborious, specific-skill requiring task that most data providers do not have the resources, expertise, or perspective to perform. Equally challenged are the data re-users, who function in a landscape of bespoke schemas, formats, and coding - when they can get past understanding the licensing and access control issues. Making the most of our collective data requires partnerships between basic researchers, clinicians, patients, and informaticians, as well as sophisticated strategies to address a myriad of interoperability issues. This talk will review different communities endeavors towards these ends from across the translational spectrum.
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=maacbd8f1e72dc84ac2cab361e6a2f328
RegisterOrganizerBTEPWhenThu, Apr 21, 2022 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Making data reusable for discovery and shared analytics across domains is a laborious, specific-skill requiring task that most data providers do not have the resources, expertise, or perspective to perform. Equally challenged are the data re-users, who function in a landscape of bespoke schemas, formats, and coding - when they can get past understanding the licensing and access control issues. Making the most of our collective data requires partnerships between basic researchers, clinicians, patients, and informaticians, as well as sophisticated strategies to address a myriad of interoperability issues. This talk will review different communities endeavors towards these ends from across the translational spectrum. Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=maacbd8f1e72dc84ac2cab361e6a2f328 | 2022-04-21 13:00:00 | Online Webinar | Online | Melissa Haendel (CU Anschutz) | BTEP | 0 | Melissa Haendel: Realizing Data Interoperability Across Basic Research, Clinical Care, and Patients | |||
536 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH Training LibraryWhenMon, Apr 25, 2022 - 1:00 pm - 2:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2022-04-25 13:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 1 | |||
537 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
DetailsOrganizerNIH Training LibraryWhenTue, Apr 26, 2022 - 1:00 pm - 2:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2022-04-26 13:00:00 | Online | Data Management | Online | NIH Training Library | 0 | DATA MANAGEMENT AND SHARING: PART 2 | |||
560 |
Description
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the second of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Rong Fan of Yale University will be presenting, “Read More
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the second of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Rong Fan of Yale University will be presenting, “New Technologies for Clinical Decision Making and Research: Computational Science in Immuno-Oncology.” Discussion will be moderated by University of Virginia’s Dr. Matthew Reilley. Attendees must log in or create a free SITC account to register.
The SITC-NCI Computational Immuno-Oncology Webinar Series consists of nine, hour-long courses featuring a moderator and faculty speaker to lead instruction. Topics will cover a host of computational challenges of analyzing and integrating diverse assay data across the spectrum of immuno-oncology. This series is intended for scientists early in their career and/or those who want to remain abreast of the latest technologies. These webinars were created to foster better communication concerning data science technologies and analyses between cancer immunotherapy researchers and clinicians to advance translational immunotherapy research.
Speakers:
Rong Fan, Ph.D.
Dr. Fan is a professor of biomedical engineering and pathology at Yale School of Medicine.
Matthew Reilley, M.D.
Dr. Reilley is an assistant professor in the University of Virginia’s School of Medicine in the Department of Medicine, Hematology, and Oncology.
DetailsOrganizerCBIITWhenWed, Apr 27, 2022 - 2:00 pm - 3:00 pmWhereOnline |
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the second of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Rong Fan of Yale University will be presenting, “New Technologies for Clinical Decision Making and Research: Computational Science in Immuno-Oncology.” Discussion will be moderated by University of Virginia’s Dr. Matthew Reilley. Attendees must log in or create a free SITC account to register. The SITC-NCI Computational Immuno-Oncology Webinar Series consists of nine, hour-long courses featuring a moderator and faculty speaker to lead instruction. Topics will cover a host of computational challenges of analyzing and integrating diverse assay data across the spectrum of immuno-oncology. This series is intended for scientists early in their career and/or those who want to remain abreast of the latest technologies. These webinars were created to foster better communication concerning data science technologies and analyses between cancer immunotherapy researchers and clinicians to advance translational immunotherapy research. Speakers: Rong Fan, Ph.D. Dr. Fan is a professor of biomedical engineering and pathology at Yale School of Medicine. Matthew Reilley, M.D. Dr. Reilley is an assistant professor in the University of Virginia’s School of Medicine in the Department of Medicine, Hematology, and Oncology. | 2022-04-27 14:00:00 | Online | Cancer | Online | CBIIT | 0 | SITC-NCI Computational Immuno-Oncology Webinar Series: New Technologies for Clinical Decision Making and Research | |||
561 |
Description
This webinar will provide a foundation on NCI’s Imaging Data Commons (IDC) and NCI Cloud Resources, components of the cloud-based Cancer Research Data Commons (CRDC). All American Association of Physicists in ...Read More
This webinar will provide a foundation on NCI’s Imaging Data Commons (IDC) and NCI Cloud Resources, components of the cloud-based Cancer Research Data Commons (CRDC). All American Association of Physicists in Medicine (AAPM) members are welcome, as well as the general public.
This event will cover:
DetailsOrganizerCBIITWhenThu, Apr 28, 2022 - 12:00 pm - 1:00 pmWhereOnline |
This webinar will provide a foundation on NCI’s Imaging Data Commons (IDC) and NCI Cloud Resources, components of the cloud-based Cancer Research Data Commons (CRDC). All American Association of Physicists in Medicine (AAPM) members are welcome, as well as the general public. This event will cover: accessing imaging data, building cohorts, creating virtual workspaces in the cloud to develop or run AI algorithms and pipelines, reproducing and sharing results of studies in diagnosis or treatment of cancer, and system demos. | 2022-04-28 12:00:00 | Online | Cancer | Online | CBIIT | 0 | Imaging Data Commons: A Platform for Data Sharing, Visualization, and AI Research in Imaging and Therapy | |||
562 |
Description
Register for the April Cancer Genomics Cloud (CGC) webinar to learn more about how NCI’s Cancer Research Data Commons (CRDC) and one of the Cloud Resources are helping researchers with little-to-no-programming skills conduct bioinformatics research.
Dr. Daoud Meerzaman, NCI CBIIT’s Computational Genomics and Bioinformatics ...Read More
Register for the April Cancer Genomics Cloud (CGC) webinar to learn more about how NCI’s Cancer Research Data Commons (CRDC) and one of the Cloud Resources are helping researchers with little-to-no-programming skills conduct bioinformatics research.
Dr. Daoud Meerzaman, NCI CBIIT’s Computational Genomics and Bioinformatics Branch chief, will present on the work the CRDC and CGC are undertaking to facilitate the collaboration between data scientists and biologists.
As one of the three Cloud Resources within the NCI CRDC, the Seven Bridges’ CGC provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale analysis on the cloud.
Presenter:
Daoud Meerzaman, Ph.D.
Dr. Meerzaman is the Computational Genomics and Bioinformatics Branch (CGBB) chief at CBIIT. Under his supervision, CGBB provides bioinformatics analysis support for life sciences and clinical and translational research for intramural scientists, including both NCI’s Division of Cancer Epidemiology and Genetics and Center for Cancer Research.
DetailsOrganizerCBIITWhenThu, Apr 28, 2022 - 2:00 pm - 3:00 pmWhereOnline |
Register for the April Cancer Genomics Cloud (CGC) webinar to learn more about how NCI’s Cancer Research Data Commons (CRDC) and one of the Cloud Resources are helping researchers with little-to-no-programming skills conduct bioinformatics research. Dr. Daoud Meerzaman, NCI CBIIT’s Computational Genomics and Bioinformatics Branch chief, will present on the work the CRDC and CGC are undertaking to facilitate the collaboration between data scientists and biologists. As one of the three Cloud Resources within the NCI CRDC, the Seven Bridges’ CGC provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale analysis on the cloud. Presenter: Daoud Meerzaman, Ph.D. Dr. Meerzaman is the Computational Genomics and Bioinformatics Branch (CGBB) chief at CBIIT. Under his supervision, CGBB provides bioinformatics analysis support for life sciences and clinical and translational research for intramural scientists, including both NCI’s Division of Cancer Epidemiology and Genetics and Center for Cancer Research. | 2022-04-28 14:00:00 | Online | Cloud | Online | CBIIT | 0 | Bridging the Gap Between Data Scientists, Clinicians, and Biologists Using CRDC and its CGC Cloud Resource | |||
563 |
Description
Federated Learning (FL) has emerged as a potential solution due to its capability in training models without sharing data. To enable effective FL in real applications, a robust communication framework is crucial.
Join Drs. Jayashree Kalpathy-Cramer and Ziyue Xu during the May NCI Imaging and Informatics Community Webinar as they cover the open-source NVIDIA Federated Learning Application Runtime (FLAIR) environment infrastructure for orchestrating an FL study. Also discussed will be Project MONAI, a medical imaging ...Read More
Federated Learning (FL) has emerged as a potential solution due to its capability in training models without sharing data. To enable effective FL in real applications, a robust communication framework is crucial.
Join Drs. Jayashree Kalpathy-Cramer and Ziyue Xu during the May NCI Imaging and Informatics Community Webinar as they cover the open-source NVIDIA Federated Learning Application Runtime (FLAIR) environment infrastructure for orchestrating an FL study. Also discussed will be Project MONAI, a medical imaging use case, recent research towards better performing FL pipelines, and the introduction of a current Medical Image Computing and Computer Assisted Intervention challenge on breast density FL.
The accuracy and robustness of AI algorithms rely heavily on the quantity, quality, and diversity of the training data set. For medical imaging applications, the challenge of constructing such a data set is particularly significant, mainly due to the privacy concerns in data sharing across multiple institutions.
This event is free and open to the public.
Speakers:
Jayashree Kalpathy-Cramer, Ph.D., M.G.H
Dr. Kalpathy-Cramer is an associate professor of radiology at Harvard Medical School, co-director of the QTIM Laboratory and the Center for Machine Learning at the Athinoula A. Martinos Center, and scientific director at the MGH & BWH Center for Clinical Data Science. Her research areas include machine learning (ML), informatics, image analysis, and statistical methods. In addition to developing novel ML algorithms, her lab is also actively engaged in the applications of these to clinical problems in radiology, oncology, and ophthalmology.
Ziyue Xu, Ph.D.
Dr. Xu is a senior scientist at Nvidia Corporation. His research interests lie in image analysis and ML with applications in biomedical and clinical imaging. Before joining Nvidia, Dr. Xu was an NIH staff scientist. He is an associate editor for the IEEE Transactions on Medical Imaging, Journal of Biomedical and Health Informatics, Computerized Medical Imaging and Graphics, and Computers in Biology and Medicine. He also serves as a program chair and committee member for multiple conferences (e.g., MICCAI, AAAI, etc.).
DetailsOrganizerCBIITWhenMon, May 02, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Federated Learning (FL) has emerged as a potential solution due to its capability in training models without sharing data. To enable effective FL in real applications, a robust communication framework is crucial. Join Drs. Jayashree Kalpathy-Cramer and Ziyue Xu during the May NCI Imaging and Informatics Community Webinar as they cover the open-source NVIDIA Federated Learning Application Runtime (FLAIR) environment infrastructure for orchestrating an FL study. Also discussed will be Project MONAI, a medical imaging use case, recent research towards better performing FL pipelines, and the introduction of a current Medical Image Computing and Computer Assisted Intervention challenge on breast density FL. The accuracy and robustness of AI algorithms rely heavily on the quantity, quality, and diversity of the training data set. For medical imaging applications, the challenge of constructing such a data set is particularly significant, mainly due to the privacy concerns in data sharing across multiple institutions. This event is free and open to the public. Speakers: Jayashree Kalpathy-Cramer, Ph.D., M.G.H Dr. Kalpathy-Cramer is an associate professor of radiology at Harvard Medical School, co-director of the QTIM Laboratory and the Center for Machine Learning at the Athinoula A. Martinos Center, and scientific director at the MGH & BWH Center for Clinical Data Science. Her research areas include machine learning (ML), informatics, image analysis, and statistical methods. In addition to developing novel ML algorithms, her lab is also actively engaged in the applications of these to clinical problems in radiology, oncology, and ophthalmology. Ziyue Xu, Ph.D. Dr. Xu is a senior scientist at Nvidia Corporation. His research interests lie in image analysis and ML with applications in biomedical and clinical imaging. Before joining Nvidia, Dr. Xu was an NIH staff scientist. He is an associate editor for the IEEE Transactions on Medical Imaging, Journal of Biomedical and Health Informatics, Computerized Medical Imaging and Graphics, and Computers in Biology and Medicine. He also serves as a program chair and committee member for multiple conferences (e.g., MICCAI, AAAI, etc.). | 2022-05-02 13:00:00 | Online | Image Analysis | Online | CBIIT | 0 | CANCELED - Federated Learning in Medical Imaging: Framework, Use Case, and Research | |||
571 |
Description
For our next CDSL webinar we will have a guest lecture by Dr. Julio Saez-Rodriguez from the Institute for Computational Biomedicine, Heidelberg.
Bio: Julio Saez-Rodriguez is Professor of Medical Bioinformatics and Data Analysis at the Faculty of Medicine of Heidelberg University, director of the Institute for Computational Biomedicine, group leader of the EMBL-Heidelberg University Molecular Medicine Partnership Unit and a co-director of the DREAM challenges. He holds a PhD (2007) in ...Read More
For our next CDSL webinar we will have a guest lecture by Dr. Julio Saez-Rodriguez from the Institute for Computational Biomedicine, Heidelberg.
Bio: Julio Saez-Rodriguez is Professor of Medical Bioinformatics and Data Analysis at the Faculty of Medicine of Heidelberg University, director of the Institute for Computational Biomedicine, group leader of the EMBL-Heidelberg University Molecular Medicine Partnership Unit and a co-director of the DREAM challenges. He holds a PhD (2007) in Chemical Engineering. He was a postdoctoral fellow at Harvard Medical School and M.I.T (2007- 2010), group leader at EMBL-EBI, Cambridge (2010-2015), and professor of Computational Biomedicine at RWTH Aachen (2015-2018). His research focuses on computational methods to understand and treat the deregulation of cellular networks in disease (www.saezlab.org).
Abstract: Multi-omics technologies, and in particular those with single-cell and spatial resolution, provide unique opportunities to study deregulation of intra- and inter-cellular processes in cancer and other diseases. In this talk I will present recent methods and applications from our group towards this aim, with a focus is on computational approaches that combine data with biological knowledge.
DetailsOrganizerCDSLWhenWed, May 04, 2022 - 11:00 am - 12:00 pmWhereOnline |
For our next CDSL webinar we will have a guest lecture by Dr. Julio Saez-Rodriguez from the Institute for Computational Biomedicine, Heidelberg. Bio: Julio Saez-Rodriguez is Professor of Medical Bioinformatics and Data Analysis at the Faculty of Medicine of Heidelberg University, director of the Institute for Computational Biomedicine, group leader of the EMBL-Heidelberg University Molecular Medicine Partnership Unit and a co-director of the DREAM challenges. He holds a PhD (2007) in Chemical Engineering. He was a postdoctoral fellow at Harvard Medical School and M.I.T (2007- 2010), group leader at EMBL-EBI, Cambridge (2010-2015), and professor of Computational Biomedicine at RWTH Aachen (2015-2018). His research focuses on computational methods to understand and treat the deregulation of cellular networks in disease (www.saezlab.org). Abstract: Multi-omics technologies, and in particular those with single-cell and spatial resolution, provide unique opportunities to study deregulation of intra- and inter-cellular processes in cancer and other diseases. In this talk I will present recent methods and applications from our group towards this aim, with a focus is on computational approaches that combine data with biological knowledge. | 2022-05-04 11:00:00 | Online | Omics | Online | CDSL | 0 | Combining multi-omics data and biological knowledge to extract disease mechanisms | |||
570 |
Description
Presenter:
Thomas Gonatopoulos-Pournatzis, Ph.D.
Stadtman Investigator
NIH Distinguished Scholar Head
Functional Transcriptomics Section
RNA Biology
Laboratory NCI-Frederick
Dr. Gonatopoulos-Pournatzis studies the regulatory pathways and functional roles of alternative splicing and other pre-mRNA processing events in mammalian cells. Towards this, he has developed several CRISPR-based screening platforms which are coupled to high-throughput phenotyping and enable systematic exploration of the regulatory and functional complexity of pre-mRNA processing. Dr. Gonatopoulos-Pournatzis’ team combines these functional genomics ...Read More
Presenter:
Thomas Gonatopoulos-Pournatzis, Ph.D.
Stadtman Investigator
NIH Distinguished Scholar Head
Functional Transcriptomics Section
RNA Biology
Laboratory NCI-Frederick
Dr. Gonatopoulos-Pournatzis studies the regulatory pathways and functional roles of alternative splicing and other pre-mRNA processing events in mammalian cells. Towards this, he has developed several CRISPR-based screening platforms which are coupled to high-throughput phenotyping and enable systematic exploration of the regulatory and functional complexity of pre-mRNA processing. Dr. Gonatopoulos-Pournatzis’ team combines these functional genomics tools with molecular and biochemical approaches as well as animal models to identify alternative exons and other genetic segments that underlie phenotypes related to normal physiology and disease states. The long-term goal of his research is to contribute to the functional annotation of all exons in the human genome and to map the gene regulatory networks that underlie the complexity of the mammalian transcriptome.
DetailsOrganizerFrederick Faculty Seminar SeriesWhenWed, May 04, 2022 - 12:00 pm - 1:00 pmWhereOnline |
Presenter: Thomas Gonatopoulos-Pournatzis, Ph.D. Stadtman Investigator NIH Distinguished Scholar Head Functional Transcriptomics Section RNA Biology Laboratory NCI-Frederick Dr. Gonatopoulos-Pournatzis studies the regulatory pathways and functional roles of alternative splicing and other pre-mRNA processing events in mammalian cells. Towards this, he has developed several CRISPR-based screening platforms which are coupled to high-throughput phenotyping and enable systematic exploration of the regulatory and functional complexity of pre-mRNA processing. Dr. Gonatopoulos-Pournatzis’ team combines these functional genomics tools with molecular and biochemical approaches as well as animal models to identify alternative exons and other genetic segments that underlie phenotypes related to normal physiology and disease states. The long-term goal of his research is to contribute to the functional annotation of all exons in the human genome and to map the gene regulatory networks that underlie the complexity of the mammalian transcriptome. | 2022-05-04 12:00:00 | Online | Transcriptomics | Online | Frederick Faculty Seminar Series | 0 | Towards Uncovering the Regulatory and Functional Complexity of the Mammalian Transcriptome | |||
554 |
Description
Overview
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code ...Read More
Overview
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Registration is required. Register at this link. Sign-in information for the Workshops will be provided once registered.
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, May 10, 2022 - 11:00 am - 1:00 pmWhereOnline |
Overview Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities. If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Registration is required. Register at this link. Sign-in information for the Workshops will be provided once registered. Week 1, May 10, 2022, 11 a.m. – 1 p.m. ET: Introduction to Python & Colab, Running & Quitting, Variables & Assignment NOTE: A one-hour help session will be offered on May 13, 2022, 11 a.m. – 12 p.m. ET: Getting Started with Google Colab Week 2, May 17, 2022, 11 a.m. – 1 p.m. ET: Data Types and Type Conversion, Built-in Functions & Help Libraries Week 3, May 24, 2022, 11 a.m. – 1 p.m. ET: Reading Tabular Data into DataFrames, Pandas DataFrames, Plotting 1 Week 4, May 31, 2022, 11 a.m. – 1 p.m. ET: Plotting 2, Lists, For Loops Week 5, June 7, 2022, 11 a.m. – 1 p.m. ET: Conditionals, Looping Over Data Sets, Writing Functions Week 6, June 14, 2022, 11 a.m. – 1 p.m. ET: Variable Scope, Programming Style, Wrap-Up Workshop Recordings and Materials: Recordings and Files: https://github.com/CBIIT/python-carpentry-workshop. This page contains last year’s material as well. Software Carpentry Lesson: Plotting and programming with Python Workshop Webpage at the NCI Data Science Learning Exchange: Introduction to Python A Series of Hands-on Software Carpentry Workshops (2022) Before the workshop: We will use Google Colab for this workshop. Colab allows us to write and execute Python code through the browser. A Google Account is required for using Colab. If you do not have one, please create a Google Account before the workshop. For technical assistance, contact NCI technical support at https://service.cancer.gov/ncisp. Presenters: Pinyi Lu, PhD, Data Scientist; Andrew Weisman, PhD, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2022-05-10 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Introduction to Python and Colab: Running, Quitting, Variables and Assignment | |||
545 |
Description
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Read More
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R.
Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed.
DetailsOrganizerNIH Training LibraryWhenWed, May 11, 2022 - 10:00 am - 11:00 amWhereOnline |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. | 2022-05-11 10:00:00 | Online | Programming | Online | NIH Training Library | 0 | Introduction to R and RStudio | |||
1030 |
Description
Many new studies include RNA sequencing data. In this webinar we will go through the process of downloading and importing SRA data using the SRA toolkit, how to use an aligner to convert fastq files into BAM files and then how to import and normalize the BAM files in Omics Explorer. We will also show how you can download GEO soft files, TCGA mRNA data from GDAC and import 10X Genomics Cellranger data.
Meeting ...Read More
Many new studies include RNA sequencing data. In this webinar we will go through the process of downloading and importing SRA data using the SRA toolkit, how to use an aligner to convert fastq files into BAM files and then how to import and normalize the BAM files in Omics Explorer. We will also show how you can download GEO soft files, TCGA mRNA data from GDAC and import 10X Genomics Cellranger data.
Meeting link:
https://cbiit.webex.com/cbiit/j.php?MTID=m1ab9795e00f76ba4641bf19f662d54a9
Meeting number:
2311 589 3124
Password:
VKwJ4MRg4?7
Host key:
372928
Cohost:
Alex Emmons; Amy Stonelake; Desiree Tillo; Peter Fitzgerald; Joe Wu; Carl McIntosh
Join by video system
Dial 23115893124@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in number (US/Canada)
Access code: 2311 589 3124
Host PIN: 5225
RegisterOrganizerBTEPWhenWed, May 11, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
Many new studies include RNA sequencing data. In this webinar we will go through the process of downloading and importing SRA data using the SRA toolkit, how to use an aligner to convert fastq files into BAM files and then how to import and normalize the BAM files in Omics Explorer. We will also show how you can download GEO soft files, TCGA mRNA data from GDAC and import 10X Genomics Cellranger data. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m1ab9795e00f76ba4641bf19f662d54a9 Meeting number: 2311 589 3124 Password: VKwJ4MRg4?7 Host key: 372928 Cohost: Alex Emmons; Amy Stonelake; Desiree Tillo; Peter Fitzgerald; Joe Wu; Carl McIntosh Join by video system Dial 23115893124@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2311 589 3124 Host PIN: 5225 | 2022-05-11 11:00:00 | Online Webinar | Online | Yana Stackpole (Qlucore) | BTEP | 0 | Qlucore: Import and Analyze public data from SRA, GEO and TCGA | |||
564 |
Description
The Eunice Kennedy Shriver National Institute of Child Health and Human Development (NICHD) Office of the Scientific Director invites you to the Division of Intramural Research (DIR) Tenure-Track Investigator Virtual Symposia Series.
Speakers:
Timothy J. Petros, Ph.D.
Investigator, Unit on Cellular and Molecular Neurodevelopment, NICHD, NIH
“A comprehensive spatial epigenome atlas of the embryonic mouse brain”
Maria K. Lehtinen, Ph.D.
Hannah C. Kinney, M.D. Chair in Pediatric Pathology Research, Boston Children’...Read More
The Eunice Kennedy Shriver National Institute of Child Health and Human Development (NICHD) Office of the Scientific Director invites you to the Division of Intramural Research (DIR) Tenure-Track Investigator Virtual Symposia Series.
Speakers:
Timothy J. Petros, Ph.D.
Investigator, Unit on Cellular and Molecular Neurodevelopment, NICHD, NIH
“A comprehensive spatial epigenome atlas of the embryonic mouse brain”
Maria K. Lehtinen, Ph.D.
Hannah C. Kinney, M.D. Chair in Pediatric Pathology Research, Boston Children’s Hospital
Associate Professor, Harvard Medical School
“Signals making a splash: Choroid plexus – cerebrospinal fluid contributions to brain development”
Flora M. Vaccarino, M.D.
Professor, Child Study Center and Department of Neuroscience, Yale School of Medicine
“Organoid modeling of gene regulatory events during forebrain development”
Bing Ren, Ph.D.
Member of the Ludwig Institute for Cancer Research
Director of the Center for Epigenomics, Professor of Cellular and Molecular Medicine, University of California, San Diego
“Single cell epigenome atlases of the brain”
Arnold Kriegstein M.D., Ph.D.
Professor of Neurobiology, University of California, San Francisco
“Development and evolution of the human brain revealed by single cell transcriptomics”
About the series:
The NICHD DIR Tenure-Track Investigator Virtual Symposia Series provides tenure-track investigators within NICHD the opportunity to organize a virtual mini-symposium to showcase their area of science to the NICHD DIR and larger NIH intramural community. Symposia are held monthly on the second Thursday of the month at 1 pm ET, and are open to all NIH faculty, trainees, and staff.
American Sign Language interpreting services will be available only upon request. Individuals who need interpreting services and/or other reasonable accommodations to participate in this event, should contact Amaressa Abiodun (amaressa.abiodun@nih.gov), 301-435-6994. Requests should be made five days in advance of the event.
DetailsOrganizerNICHDWhenThu, May 12, 2022 - 1:00 pm - 4:00 pmWhereOnline |
The Eunice Kennedy Shriver National Institute of Child Health and Human Development (NICHD) Office of the Scientific Director invites you to the Division of Intramural Research (DIR) Tenure-Track Investigator Virtual Symposia Series. Speakers: Timothy J. Petros, Ph.D. Investigator, Unit on Cellular and Molecular Neurodevelopment, NICHD, NIH “A comprehensive spatial epigenome atlas of the embryonic mouse brain” Maria K. Lehtinen, Ph.D. Hannah C. Kinney, M.D. Chair in Pediatric Pathology Research, Boston Children’s Hospital Associate Professor, Harvard Medical School “Signals making a splash: Choroid plexus – cerebrospinal fluid contributions to brain development” Flora M. Vaccarino, M.D. Professor, Child Study Center and Department of Neuroscience, Yale School of Medicine “Organoid modeling of gene regulatory events during forebrain development” Bing Ren, Ph.D. Member of the Ludwig Institute for Cancer Research Director of the Center for Epigenomics, Professor of Cellular and Molecular Medicine, University of California, San Diego “Single cell epigenome atlases of the brain” Arnold Kriegstein M.D., Ph.D. Professor of Neurobiology, University of California, San Francisco “Development and evolution of the human brain revealed by single cell transcriptomics” About the series: The NICHD DIR Tenure-Track Investigator Virtual Symposia Series provides tenure-track investigators within NICHD the opportunity to organize a virtual mini-symposium to showcase their area of science to the NICHD DIR and larger NIH intramural community. Symposia are held monthly on the second Thursday of the month at 1 pm ET, and are open to all NIH faculty, trainees, and staff. American Sign Language interpreting services will be available only upon request. Individuals who need interpreting services and/or other reasonable accommodations to participate in this event, should contact Amaressa Abiodun (amaressa.abiodun@nih.gov), 301-435-6994. Requests should be made five days in advance of the event. | 2022-05-12 13:00:00 | Online | Online | NICHD | 0 | Utilizing Single Cell Technologies to Understand Brain Development | ||||
565 |
Description
About the Seminar
Artificial intelligence and machine learning have the potential to greatly transform healthcare. Although these techniques have shown remarkable performance for many tasks including medical image analysis, we will share some of the challenges that we have faced in developing robust and trustworthy algorithms including a lack of repeatability, explainability, generalizability, and the potential for bias. Access to large, representative, diverse, and well curated datasets is vital to improving the performance ...Read More
About the Seminar
Artificial intelligence and machine learning have the potential to greatly transform healthcare. Although these techniques have shown remarkable performance for many tasks including medical image analysis, we will share some of the challenges that we have faced in developing robust and trustworthy algorithms including a lack of repeatability, explainability, generalizability, and the potential for bias. Access to large, representative, diverse, and well curated datasets is vital to improving the performance of machine learning algorithms. Historically, concerns related to patient privacy, regulations, cost and logistical challenges have limited data-sharing. Approaches such as federated learning can improve the robustness of algorithms by providing a framework where the trained models have been exposed to multi-institutional datasets without the need for data-sharing. We will review examples of privacy preserving learning from multi-institutional datasets and discuss successes as well as directions for future research.
About the Speaker
Jayashree Kalpathy-Cramer is currently an Associate Professor of Radiology at Harvard Medical School, and a Co-Director of the QTIM lab and the Center for Machine Learning at the Martinos Center. She is the incoming chief of the new Division of Artificial Medical Intelligence in Ophthalmology at the University of Colorado (CU) School of Medicine. An electrical engineer by training, she worked in the semiconductor industry for several years. After returning to academia, she is now focused on the applications of machine learning and modeling in healthcare. Her research interests include medical image analysis, machine learning and artificial intelligence for applications in radiology, oncology, and ophthalmology. The work in her lab spans the spectrum from novel algorithm development to clinical deployment. She is passionate about the potential that these techniques have to improve access to healthcare in the US and worldwide. Dr. Kalpathy-Cramer has authored over 200 peer-reviewed publications and has written over a dozen book chapters.
About the Seminar Series
The seminar is open to the public and registration is required each month. Individuals who need interpreting services and/or other reasonable accommodations to participate in this event should contact Rachel Pisarski(link sends e-mail) at 301-670-4990. Requests should be made at least five days in advance of the event.
DetailsOrganizerData Sharing and Reuse Seminar SeriesWhenFri, May 13, 2022 - 12:00 pm - 1:00 pmWhereOnline |
About the Seminar Artificial intelligence and machine learning have the potential to greatly transform healthcare. Although these techniques have shown remarkable performance for many tasks including medical image analysis, we will share some of the challenges that we have faced in developing robust and trustworthy algorithms including a lack of repeatability, explainability, generalizability, and the potential for bias. Access to large, representative, diverse, and well curated datasets is vital to improving the performance of machine learning algorithms. Historically, concerns related to patient privacy, regulations, cost and logistical challenges have limited data-sharing. Approaches such as federated learning can improve the robustness of algorithms by providing a framework where the trained models have been exposed to multi-institutional datasets without the need for data-sharing. We will review examples of privacy preserving learning from multi-institutional datasets and discuss successes as well as directions for future research. About the Speaker Jayashree Kalpathy-Cramer is currently an Associate Professor of Radiology at Harvard Medical School, and a Co-Director of the QTIM lab and the Center for Machine Learning at the Martinos Center. She is the incoming chief of the new Division of Artificial Medical Intelligence in Ophthalmology at the University of Colorado (CU) School of Medicine. An electrical engineer by training, she worked in the semiconductor industry for several years. After returning to academia, she is now focused on the applications of machine learning and modeling in healthcare. Her research interests include medical image analysis, machine learning and artificial intelligence for applications in radiology, oncology, and ophthalmology. The work in her lab spans the spectrum from novel algorithm development to clinical deployment. She is passionate about the potential that these techniques have to improve access to healthcare in the US and worldwide. Dr. Kalpathy-Cramer has authored over 200 peer-reviewed publications and has written over a dozen book chapters. About the Seminar Series The seminar is open to the public and registration is required each month. Individuals who need interpreting services and/or other reasonable accommodations to participate in this event should contact Rachel Pisarski(link sends e-mail) at 301-670-4990. Requests should be made at least five days in advance of the event. | 2022-05-13 12:00:00 | Online | Artificial Intelligence / Machine Learning | Online | Data Sharing and Reuse Seminar Series | 0 | Learning from Multi-Institutional Data – A Practical Guide | |||
553 |
Description
Presenters: Dr. W. Lee Pang, Principal Developer Advocate, Amazon Web Services, HealthAI
Web Ex Details:
Read More
Presenters: Dr. W. Lee Pang, Principal Developer Advocate, Amazon Web Services, HealthAI
Web Ex Details:
https://cbiit.webex.com/cbiit/j.php?MTID=mc7e3cc7cb71241b833b1be0aaaaffee5
Friday, May 13, 2022 3:00 pm | 1 hour | (UTC-04:00) Eastern Time (US & Canada)
Meeting number: 2300 677 6825
Password: HpX4MWfT*77
Join by video system
Dial 23006776825@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in toll number (US/Canada)
Access code: 230 067 76825
If you have any questions, please email: NCICWIGUserMail@mail.nih.gov
DetailsOrganizerNCI Containers and Workflows Interest GroupWhenFri, May 13, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Presenters: Dr. W. Lee Pang, Principal Developer Advocate, Amazon Web Services, HealthAI Web Ex Details: https://cbiit.webex.com/cbiit/j.php?MTID=mc7e3cc7cb71241b833b1be0aaaaffee5 Friday, May 13, 2022 3:00 pm | 1 hour | (UTC-04:00) Eastern Time (US & Canada) Meeting number: 2300 677 6825 Password: HpX4MWfT*77 Join by video system Dial 23006776825@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 230 067 76825 If you have any questions, please email: NCICWIGUserMail@mail.nih.gov | 2022-05-13 15:00:00 | Online | Genomics,Cloud | Online | NCI Containers and Workflows Interest Group | 0 | Scalable and Reproducible Genomics Data Analysis on Amazon Web Services (AWS) | |||
555 |
Description
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will ...Read More
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break.
Workshop Recordings and Materials:
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, May 17, 2022 - 11:00 am - 1:00 pmWhereOnline |
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities. If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. Workshop Recordings and Materials: Recordings and Files: https://github.com/CBIIT/python-carpentry-workshop. This page contains last year’s material as well. Software Carpentry Lesson: Plotting and programming with Python Before the workshop: We will use Google Colab for this workshop. Colab allows us to write and execute Python code through the browser. A Google Account is required for using Colab. If you do not have one, please create a Google Account before the workshop. For technical assistance, contact NCI technical support at https://service.cancer.gov/ncisp. Presenters: Pinyi Lu, PhD, Data Scientist; Andrew Weisman, PhD, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2022-05-17 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Python Data Types and Type Conversion, Built-in Functions and Help Libraries | |||
572 |
Description
Metabolomic and multi-omic data are increasingly being collected in basic, preclinical, and clinical research studies. Interpretation of these data though remains challenging. Common challenges include the difficulty in identifying metabolites and assigning unique identifiers, and the scarcity of resources that provide up-to-data comprehensive annotations and analysis tools on integrated genes/proteins and metabolites. To aid in interpreting these complex data, we developed RaMP-DB 2.0, a public resource that contains comprehensive biological, structural/chemical, disease, and ontology ...Read More
Metabolomic and multi-omic data are increasingly being collected in basic, preclinical, and clinical research studies. Interpretation of these data though remains challenging. Common challenges include the difficulty in identifying metabolites and assigning unique identifiers, and the scarcity of resources that provide up-to-data comprehensive annotations and analysis tools on integrated genes/proteins and metabolites. To aid in interpreting these complex data, we developed RaMP-DB 2.0, a public resource that contains comprehensive biological, structural/chemical, disease, and ontology annotations for human metabolites and metabolic genes/proteins. The associated RaMP-DB 2.0 framework provides the ability to query those annotations and to perform pathway and chemical enrichment analysis on input multi-omic datasets. Since our first release, RaMP-DB 2.0 has been substantially upgraded and now includes an expanded breadth and depth of functional and chemical annotations, and a reproducible and semi-automated method for entity resolution of analytes across the different source databases pulled. The usability of the RaMP-DB 2.0 has also been improved through updates of pathway and chemical enrichment analysis methods, and a completely revamped web interface and associated public API for programmatic access. RaMP-DB 2.0 currently pulls information from HMDB, KEGG (through HMDB), Reactome, WikiPathways, Lipid-MAPS, and ChEBI and includes 254,860 chemical structures, of which 43,338 are lipids, 15,389 genes, 53,745 pathways, 807,362 metabolic enzyme/metabolite reactions, and 699 functional ontologies (biofluid, health condition, etc.). RaMP-DB 2.0 is available at https://rampdb.nih.gov/.
Speaker:
Ewy Mathé, Ph.D., Director of Informatics, Division of Preclinical Innovation, National Center for Advancing Translational Sciences, NIH
DetailsOrganizerThe NIH Metabolomics Interest GroupWhenTue, May 17, 2022 - 11:00 am - 12:00 pmWhereOnline |
Metabolomic and multi-omic data are increasingly being collected in basic, preclinical, and clinical research studies. Interpretation of these data though remains challenging. Common challenges include the difficulty in identifying metabolites and assigning unique identifiers, and the scarcity of resources that provide up-to-data comprehensive annotations and analysis tools on integrated genes/proteins and metabolites. To aid in interpreting these complex data, we developed RaMP-DB 2.0, a public resource that contains comprehensive biological, structural/chemical, disease, and ontology annotations for human metabolites and metabolic genes/proteins. The associated RaMP-DB 2.0 framework provides the ability to query those annotations and to perform pathway and chemical enrichment analysis on input multi-omic datasets. Since our first release, RaMP-DB 2.0 has been substantially upgraded and now includes an expanded breadth and depth of functional and chemical annotations, and a reproducible and semi-automated method for entity resolution of analytes across the different source databases pulled. The usability of the RaMP-DB 2.0 has also been improved through updates of pathway and chemical enrichment analysis methods, and a completely revamped web interface and associated public API for programmatic access. RaMP-DB 2.0 currently pulls information from HMDB, KEGG (through HMDB), Reactome, WikiPathways, Lipid-MAPS, and ChEBI and includes 254,860 chemical structures, of which 43,338 are lipids, 15,389 genes, 53,745 pathways, 807,362 metabolic enzyme/metabolite reactions, and 699 functional ontologies (biofluid, health condition, etc.). RaMP-DB 2.0 is available at https://rampdb.nih.gov/. Speaker: Ewy Mathé, Ph.D., Director of Informatics, Division of Preclinical Innovation, National Center for Advancing Translational Sciences, NIH | 2022-05-17 11:00:00 | Online | Omics | Online | The NIH Metabolomics Interest Group | 0 | RaMP-DB 2.0: A Comprehensive, Public Database and Analytical Tools for Extracting Biological and Chemical Insight from Metabolomic and Multi-Omic Data | |||
1028 |
Description
Powerful and Intuitive Gene Expression Visualization Tools to Interpret Biological Signals – Bulk and Single Cell Data
The increasing use of genomic technologies, such as RNA-Seq and single cell RNA-Seq, to assess gene expression patterns has led to an unprecedented amount of data. For many, the size and complexity of these data sets make it challenging to see the biological signals. But not anymore.
The visualization tools in Partek® Flow® provide the flexibility needed ...Read More
Powerful and Intuitive Gene Expression Visualization Tools to Interpret Biological Signals – Bulk and Single Cell Data
The increasing use of genomic technologies, such as RNA-Seq and single cell RNA-Seq, to assess gene expression patterns has led to an unprecedented amount of data. For many, the size and complexity of these data sets make it challenging to see the biological signals. But not anymore.
The visualization tools in Partek® Flow® provide the flexibility needed to display gene expression results ready for publication. Our powerful, interactive plots also facilitate novel discovery and provide fast and accurate QAQC. Together with the easy-to-use point and click interface, Partek Flow allows you to answer more questions and move forward with your research.
In this webinar, you will learn how to visualize gene expression data using:
RegisterOrganizerBTEPWhenWed, May 18, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
Powerful and Intuitive Gene Expression Visualization Tools to Interpret Biological Signals – Bulk and Single Cell Data The increasing use of genomic technologies, such as RNA-Seq and single cell RNA-Seq, to assess gene expression patterns has led to an unprecedented amount of data. For many, the size and complexity of these data sets make it challenging to see the biological signals. But not anymore. The visualization tools in Partek® Flow® provide the flexibility needed to display gene expression results ready for publication. Our powerful, interactive plots also facilitate novel discovery and provide fast and accurate QAQC. Together with the easy-to-use point and click interface, Partek Flow allows you to answer more questions and move forward with your research. In this webinar, you will learn how to visualize gene expression data using: Feature distribution plots Sample correlation plots Volcano plots Chromosome view Dot plots Violin plots Hierarchical clustering PCA t-SNE Customizable scatterplots WebEx link: https://cbiit.webex.com/cbiit/j.php?MTID=m634db94c7c42f1eb6dcf1850c27bd2c6 Meeting number: 2310 750 5275 Password: a73JRXKwm?6 Host key: 148776 Cohost: Alex Emmons; Amy Stonelake; Desiree Tillo; Peter Fitzgerald; Joe Wu; Carl McIntosh Join by video system Dial 23107505275@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2310 750 5275 Host PIN: 5225 | 2022-05-18 11:00:00 | Online Webinar | Bulk RNA-seq,Single Cell RNA-seq | Online | Xiaowen Wang (Partek) | BTEP | 0 | Partek Flow: Bulk and Single Cell Gene Expression Visualization | ||
574 |
Description
During the May Accelerating Therapeutics for Opportunities in Medicine (ATOM) Webinar Series, discover how computing and machine learning can accelerate molecular optimization for cancer and infectious disease therapeutics.
The ATOM Consortium is a public-private partnership whose mission is to transform drug discovery by accelerating the development of more effective therapies for patients.
This webinar will demonstrate how ATOM strives to:
During the May Accelerating Therapeutics for Opportunities in Medicine (ATOM) Webinar Series, discover how computing and machine learning can accelerate molecular optimization for cancer and infectious disease therapeutics.
The ATOM Consortium is a public-private partnership whose mission is to transform drug discovery by accelerating the development of more effective therapies for patients.
This webinar will demonstrate how ATOM strives to:
DetailsOrganizerData Science Seminar SeriesWhenWed, May 18, 2022 - 1:00 pm - 2:00 pmWhereOnline |
During the May Accelerating Therapeutics for Opportunities in Medicine (ATOM) Webinar Series, discover how computing and machine learning can accelerate molecular optimization for cancer and infectious disease therapeutics. The ATOM Consortium is a public-private partnership whose mission is to transform drug discovery by accelerating the development of more effective therapies for patients. This webinar will demonstrate how ATOM strives to: speed up molecular optimization for applications ranging from cancer to infectious disease therapeutics with the help of computing and machine learning, establish multiparameter property optimization across efficacy, safety, pharmacokinetics, and developability, and, develop systems with the potential to guide and optimize experimental data collection and design validation. Presenter: Mr. Jim Brase is the deputy associate director for computing at Lawrence Livermore National Laboratory (LLNL). He leads LLNL research in the application of high-performance computing, large-scale data science, and simulation to a broad range of national security and science missions. Mr. Brase is also co-lead of the ATOM Consortium for computational acceleration of drug discovery and on the leadership team of the COVID-19 HPC Consortium. His research interests focus on the intersection of machine learning, simulation, and high-performance computing. He is currently leading efforts on large-scale computing for life science, biosecurity, and nuclear security applications. | 2022-05-18 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | Data Science Seminar Series | 0 | The ATOM Molecular Design Approach for Accelerated Drug Discovery | |||
576 |
Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member.
Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please
- mute when not speaking
- refrain from screen sharing until asked to do so in the breakout room
- screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users
For inquiries please email to: staff@hpc.nih.gov
DetailsOrganizerNIH HPCWhenWed, May 18, 2022 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users For inquiries please email to: staff@hpc.nih.gov | 2022-05-18 13:00:00 | Online | Online | NIH HPC | 0 | Next edition of the NIH HPC monthly Zoom-In Consults | ||||
573 |
Description
Data is everywhere! In cancer research, data has had an impact on everything from how cancer is diagnosed to how decisions are made about prognosis and treatment. To illustrate the ubiquity of data and its influence on cancer research, Dr. Jill Barnholtz-Sloan will present, “DataMatters—Leveraging Big Data for Impact on Cancer.”
In her lecture, she’ll:
Data is everywhere! In cancer research, data has had an impact on everything from how cancer is diagnosed to how decisions are made about prognosis and treatment. To illustrate the ubiquity of data and its influence on cancer research, Dr. Jill Barnholtz-Sloan will present, “DataMatters—Leveraging Big Data for Impact on Cancer.”
In her lecture, she’ll:
DetailsOrganizerData Science Seminar SeriesWhenThu, May 19, 2022 - 1:00 pm - 2:30 pmWhereOnline |
Data is everywhere! In cancer research, data has had an impact on everything from how cancer is diagnosed to how decisions are made about prognosis and treatment. To illustrate the ubiquity of data and its influence on cancer research, Dr. Jill Barnholtz-Sloan will present, “DataMatters—Leveraging Big Data for Impact on Cancer.” In her lecture, she’ll: focus on how big data has impacted cancer to date and its impact on future research, use specific examples from her work researching brain tumors, and discuss big data resources available through NCI with detailed descriptions. This presentation is part of the 2022 Special Lecture Series hosted by Big Data Training for Cancer Research, a program of Purdue University’s Center for Cancer Research. Presenter: Jill Barnholtz-Sloan, Ph.D. Dr. Barnholtz-Sloan is the associate director for the Informatics and Data Science Program at NCI CBIIT and a senior investigator for NCI’s Division of Cancer Epidemiology and Genetics. | 2022-05-19 13:00:00 | Online | Cancer | Online | Data Science Seminar Series | 0 | Special Lecture Series: DataMatters—Leveraging Big Data for Impact on Cancer | |||
1016 |
Description
THIS EVENT HAS BEEN CANCELLED
Rhabdomyosarcoma (RMS) is the most common soft tissue sarcoma of childhood and are subdivided into three major histomorphologic subtypes: alveolar (ARMS), embryonal (ERMS), or spindle/sclerosing (SSRMS). Patients with ARMS histology have a poor outcome relative to ERMS, and molecular studies have found recurrent chromosome rearrangements t(2;13) or t(1;13) which generate PAX3-FOXO1 or PAX7-FOXO1 fusion genes, respectively, in the majority of ARMS. The PAX3-FOXO1 fusion gene ...Read More
THIS EVENT HAS BEEN CANCELLED
Rhabdomyosarcoma (RMS) is the most common soft tissue sarcoma of childhood and are subdivided into three major histomorphologic subtypes: alveolar (ARMS), embryonal (ERMS), or spindle/sclerosing (SSRMS). Patients with ARMS histology have a poor outcome relative to ERMS, and molecular studies have found recurrent chromosome rearrangements t(2;13) or t(1;13) which generate PAX3-FOXO1 or PAX7-FOXO1 fusion genes, respectively, in the majority of ARMS. The PAX3-FOXO1 fusion gene is more common, is the main oncogenic driver, and is associated with poor outcome. For patients with metastatic disease or recurrent RMS, despite aggressive therapy, the 5-year survival rate remains poor. Beyond PAX-FOXO1 fusion status, no genomic markers are available for risk stratification. We first established an international consortium to study the incidence of driver mutations and their association with clinical outcome and identified 641 patients that had sufficient DNA for analyses. A median of 1 mutation was found per tumor. In FOXO1 fusion negative cases (FN), mutation of any RAS pathway member was found in greater than 50% of cases, and 21% had no putative driver mutation identified. We discovered that mutations of MYOD1, TP53, and CDKN2A were associated with a dismal survival. We next utilized convolutional neural networks (CNNs) to learn histologic features associated with the driver mutations and outcome using hematoxylin and eosin (H&E) images of the diagnostic RMS tumors. The trained CNN could accurately classify ARMS with an ROC of 0.87 on an independent test dataset. CNN models trained on mutationally-annotated samples identified RAS pathway mutations and tumors with high-risk mutations in MYOD1 or TP53 with an ROC of 0.96 and 0.64, respectively. Remarkably, CNN models, were superior in predicting event-free survival compared to current molecular-clinical risk stratification. We thus identify mutations associated with adverse outcome in RMS, allowing for an improved risk stratification, and demonstrate that CNNs are a powerful tool for molecular and prognostic prediction of rhabdomyosarcoma from diagnostic H&E images. RegisterOrganizerBTEPWhenThu, May 19, 2022 - 1:00 pm - 2:00 pmWhereOnline Webinar |
THIS EVENT HAS BEEN CANCELLEDRhabdomyosarcoma (RMS) is the most common soft tissue sarcoma of childhood and are subdivided into three major histomorphologic subtypes: alveolar (ARMS), embryonal (ERMS), or spindle/sclerosing (SSRMS). Patients with ARMS histology have a poor outcome relative to ERMS, and molecular studies have found recurrent chromosome rearrangements t(2;13) or t(1;13) which generate PAX3-FOXO1 or PAX7-FOXO1 fusion genes, respectively, in the majority of ARMS. The PAX3-FOXO1 fusion gene is more common, is the main oncogenic driver, and is associated with poor outcome. For patients with metastatic disease or recurrent RMS, despite aggressive therapy, the 5-year survival rate remains poor. Beyond PAX-FOXO1 fusion status, no genomic markers are available for risk stratification. We first established an international consortium to study the incidence of driver mutations and their association with clinical outcome and identified 641 patients that had sufficient DNA for analyses. A median of 1 mutation was found per tumor. In FOXO1 fusion negative cases (FN), mutation of any RAS pathway member was found in greater than 50% of cases, and 21% had no putative driver mutation identified. We discovered that mutations of MYOD1, TP53, and CDKN2A were associated with a dismal survival. We next utilized convolutional neural networks (CNNs) to learn histologic features associated with the driver mutations and outcome using hematoxylin and eosin (H&E) images of the diagnostic RMS tumors. The trained CNN could accurately classify ARMS with an ROC of 0.87 on an independent test dataset. CNN models trained on mutationally-annotated samples identified RAS pathway mutations and tumors with high-risk mutations in MYOD1 or TP53 with an ROC of 0.96 and 0.64, respectively. Remarkably, CNN models, were superior in predicting event-free survival compared to current molecular-clinical risk stratification. We thus identify mutations associated with adverse outcome in RMS, allowing for an improved risk stratification, and demonstrate that CNNs are a powerful tool for molecular and prognostic prediction of rhabdomyosarcoma from diagnostic H&E images. | 2022-05-19 13:00:00 | Online Webinar | Online | Javed Khan (NCI/CCR) | BTEP | 0 | Javed Khan: Integrating Genomics and H&E Images to Predict the Molecular Subtype and Survival of Patients with Rhabdomyosarcoma using Deep Learning Algorithms - CANCELLED | |||
556 |
Description
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will ...Read More
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions
Workshop Recordings and Materials:
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, May 24, 2022 - 11:00 am - 1:00 pmWhereOnline |
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities. If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions Workshop Recordings and Materials: Recordings and Files: https://github.com/CBIIT/python-carpentry-workshop. This page contains last year’s material as well. Software Carpentry Lesson: Plotting and programming with Python Workshop Webpage at the NCI Data Science Learning Exchange: Introduction to Python A Series of Hands-on Software Carpentry Workshops (2022) Before the workshop: We will use Google Colab for this workshop. Colab allows us to write and execute Python code through the browser. A Google Account is required for using Colab. If you do not have one, please create a Google Account before the workshop. For technical assistance, contact NCI technical support at https://service.cancer.gov/ncisp. Presenters: Pinyi Lu, PhD, Data Scientist; Andrew Weisman, PhD, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2022-05-24 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Python: Reading Tabular Data into Data Frames, Pandas Data Frames, Plotting 1 | |||
579 |
Description
Dr. Peng Jiang of NCI’s Center for Cancer Research will discuss CytoSig, a software-based platform that is designed to provide both a database of target genes modulated by cytokines (i.e., proteins secreted by certain cells of the immune system and have an effect on other cells) and a predictive model of cytokine signaling cascades from transcriptomic ...Read More
Dr. Peng Jiang of NCI’s Center for Cancer Research will discuss CytoSig, a software-based platform that is designed to provide both a database of target genes modulated by cytokines (i.e., proteins secreted by certain cells of the immune system and have an effect on other cells) and a predictive model of cytokine signaling cascades from transcriptomic profiles. Business and drug development professionals, researchers, and investors are encouraged to attend this event.
CytoSig covers over 20,000 curated human cytokine, chemokine, and growth factor response experiments, and can solve challenges by reliably predicting the activity of 43 cytokines in both tissues and single cells based on the transcriptional effect of target genes.
NCI is seeking parties interested in licensing and/or co-development of CytoSig, which solves challenges by:
DetailsOrganizerCBIITWhenWed, May 25, 2022 - 11:00 am - 12:00 pmWhereOnline |
Dr. Peng Jiang of NCI’s Center for Cancer Research will discuss CytoSig, a software-based platform that is designed to provide both a database of target genes modulated by cytokines (i.e., proteins secreted by certain cells of the immune system and have an effect on other cells) and a predictive model of cytokine signaling cascades from transcriptomic profiles. Business and drug development professionals, researchers, and investors are encouraged to attend this event. CytoSig covers over 20,000 curated human cytokine, chemokine, and growth factor response experiments, and can solve challenges by reliably predicting the activity of 43 cytokines in both tissues and single cells based on the transcriptional effect of target genes. NCI is seeking parties interested in licensing and/or co-development of CytoSig, which solves challenges by: offering significantly larger database content coverage and use of transcriptome data to model cytokine signaling activity and regulatory cascades in human inflammatory processes. coupling large-scale automatic data processing with natural language processing functions to assist expert metadata annotations with RNA-sequencing and MicroArray big-data analysis. Presenter: Peng Jiang, Ph.D. Dr. Jiang is a Stadtman investigator for NCI’s Center for Cancer Research, Cancer Data Science Laboratory. In his research, he focuses on developing integrative frameworks that leverage the big-data resource in public domains to identify regulators of cancer therapy resistance. His team is developing statistical and machine learning infrastructures that transfer knowledge from a vast amount of previous data cohorts to the study of new cancer biology problems. | 2022-05-25 11:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | CytoSig: Novel Software Platform Predictor of Cytokine Signaling Activity and Target Discovery | |||
546 |
Description
This training will provide an introduction to RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The exercise will run on the Galaxy platform using Illumina paired-end RNA-seq data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; measure ...Read More
This training will provide an introduction to RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The exercise will run on the Galaxy platform using Illumina paired-end RNA-seq data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; measure abundance of transcripts; perform differential expression analysis; and visualize the output of RNA-seq analyses.
DetailsOrganizerNIH Training LibraryWhenWed, May 25, 2022 - 1:00 pm - 4:00 pmWhereOnline |
This training will provide an introduction to RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The exercise will run on the Galaxy platform using Illumina paired-end RNA-seq data. Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; measure abundance of transcripts; perform differential expression analysis; and visualize the output of RNA-seq analyses. | 2022-05-25 13:00:00 | Online | Bulk RNA-Seq | Online | NIH Training Library | 0 | RNA Seq Analysis Training | |||
580 |
Description
Are you attending the two-day CCR-DCEG Health Disparity Workshop? Consider listening to Dr. Jill Barnholtz-Sloan, CBIIT associate director, give a brief presentation on how data science resources can advance cancer health disparity research.
Dr. Barnholtz-Sloan will provide an overview on:
Are you attending the two-day CCR-DCEG Health Disparity Workshop? Consider listening to Dr. Jill Barnholtz-Sloan, CBIIT associate director, give a brief presentation on how data science resources can advance cancer health disparity research.
Dr. Barnholtz-Sloan will provide an overview on:
DetailsOrganizerCBIITWhenWed, May 25, 2022 - 2:30 pm - 2:55 pmWhereOnline |
Are you attending the two-day CCR-DCEG Health Disparity Workshop? Consider listening to Dr. Jill Barnholtz-Sloan, CBIIT associate director, give a brief presentation on how data science resources can advance cancer health disparity research. Dr. Barnholtz-Sloan will provide an overview on: how to choose a data set, strengths, limitations, and examples of registry data, administrative claims, EHR data, data aggregators, networks/companies with clinical and genomic cancer data, and data resources available at NCI. There is an extensive amount of data resources that have been recently developed, and it may feel overwhelming to determine what is available and best suits your research. Dr. Barnholtz-Sloan hopes to give clarity to this situation. The Division of Cancer Epidemiology and Genetics and the Center for Cancer Research recognize the significance of health disparity research (and acknowledge its barriers) within the intramural research community. They have collaborated on this workshop to communicate the expectations of health disparity research, resources to investigate cancer health disparities, opportunities for collaborations, and future directions. Presenter: Jill Barnholtz-Sloan, Ph.D. Dr. Barnholtz-Sloan is the associate director for the Informatics and Data Science Program at NCI CBIIT and a senior investigator for NCI’s Division of Cancer Epidemiology and Genetics. | 2022-05-25 14:30:00 | Online | Data Resources | Online | CBIIT | 0 | Data Resources for Data Science to Advance Cancer Health Disparity Research | |||
581 |
Description
Want to learn about the latest data science technologies and immunotherapy research?
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the third of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Hongkai Ji of Johns Hopkins Bloomberg School of Public Health will be presenting, “Read More
Want to learn about the latest data science technologies and immunotherapy research?
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the third of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Hongkai Ji of Johns Hopkins Bloomberg School of Public Health will be presenting, “Identifying and Preventing Artifacts in High Dimensional Data: Computational Science in Immuno-Oncology.” The discussion will be moderated by Medical University of South Carolina’s Dr. Carsten Krieg.
The SITC-NCI Computational Immuno-Oncology Webinar Series consists of nine, hour-long courses featuring a moderator and faculty speaker to lead instruction. Topics will cover a host of computational challenges of analyzing and integrating diverse assay data across the spectrum of immuno-oncology. This series is intended for scientists early in their career and/or those who want to remain abreast of the latest technologies. These webinars were created to foster better communication concerning data science technologies and analyses between cancer immunotherapy researchers and clinicians to advance translational immunotherapy research.
Presenters:
DetailsOrganizerCBIITWhenThu, May 26, 2022 - 12:30 pm - 1:30 pmWhereOnline |
Want to learn about the latest data science technologies and immunotherapy research? In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the third of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Hongkai Ji of Johns Hopkins Bloomberg School of Public Health will be presenting, “Identifying and Preventing Artifacts in High Dimensional Data: Computational Science in Immuno-Oncology.” The discussion will be moderated by Medical University of South Carolina’s Dr. Carsten Krieg. The SITC-NCI Computational Immuno-Oncology Webinar Series consists of nine, hour-long courses featuring a moderator and faculty speaker to lead instruction. Topics will cover a host of computational challenges of analyzing and integrating diverse assay data across the spectrum of immuno-oncology. This series is intended for scientists early in their career and/or those who want to remain abreast of the latest technologies. These webinars were created to foster better communication concerning data science technologies and analyses between cancer immunotherapy researchers and clinicians to advance translational immunotherapy research. Presenters: Hongkai Ji, Ph.D., M.A., M.E. Dr. Ji is a professor at Johns Hopkins Bloomberg School of Public Health in the Department of Biostatistics. Carsten Krieg, Ph.D. Dr. Krieg is an assistant professor at the Medical University of South Carolina in the Department of Pathology and Laboratory Medicine. | 2022-05-26 12:30:00 | Online | Cancer,Data Science | Online | CBIIT | 0 | SITC-NCI Computational Immuno-Oncology Webinar Series: Identifying and Preventing Artifacts in High Dimensional Data | |||
577 |
Description
The Cancer Genomics Cloud (CGC), powered by Seven Bridges and funded by the NCI, is a flexible cloud platform that enables analysis, storage, and computation of large cancer datasets. The CGC provides a user-friendly portal to access and analyze cancer data where it lives. With the CGC, any user with an account can easily access petabytes of cancer data, share it, analyze and use the computational power of the cloud without having to learn how ...Read More
The Cancer Genomics Cloud (CGC), powered by Seven Bridges and funded by the NCI, is a flexible cloud platform that enables analysis, storage, and computation of large cancer datasets. The CGC provides a user-friendly portal to access and analyze cancer data where it lives. With the CGC, any user with an account can easily access petabytes of cancer data, share it, analyze and use the computational power of the cloud without having to learn how to program and get familiar with several different data portals.
DetailsOrganizerCBIITWhenThu, May 26, 2022 - 2:00 pm - 3:00 pmWhereOnline |
The Cancer Genomics Cloud (CGC), powered by Seven Bridges and funded by the NCI, is a flexible cloud platform that enables analysis, storage, and computation of large cancer datasets. The CGC provides a user-friendly portal to access and analyze cancer data where it lives. With the CGC, any user with an account can easily access petabytes of cancer data, share it, analyze and use the computational power of the cloud without having to learn how to program and get familiar with several different data portals. | 2022-05-26 14:00:00 | Online | Cancer,Cloud | Online | CBIIT | 0 | Cancer Genomics Cloud | |||
557 |
Description
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will ...Read More
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Workshop Recordings and Materials:
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, May 31, 2022 - 11:00 am - 1:00 pmWhereOnline |
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities. If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Workshop Recordings and Materials: Recordings and Files: https://github.com/CBIIT/python-carpentry-workshop. This page contains last year’s material as well. Software Carpentry Lesson: Plotting and programming with Python Workshop Webpage at the NCI Data Science Learning Exchange: Introduction to Python A Series of Hands-on Software Carpentry Workshops (2022) Before the workshop: We will use Google Colab for this workshop. Colab allows us to write and execute Python code through the browser. A Google Account is required for using Colab. If you do not have one, please create a Google Account before the workshop. For technical assistance, contact NCI technical support at https://service.cancer.gov/ncisp. Presenters: Pinyi Lu, PhD, Data Scientist; Andrew Weisman, PhD, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2022-05-31 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Python: Plotting 2, Lists, For Loops | |||
583 |
Description
Please join us tomorrow, Wednesday, June 1, 2022, when Dr. Svitlana Volkova from the Pacific Northwest National Laboratory (PNNL) will present “Augmented Intelligence for Science and Security: From Narrow AI to Sustainable and Trustworthy Foundation Models.”
Dr. Volkova is a Chief Scientist in Decision Intelligence and Analytics in the National Security Directorate at PNNL, where she leads the lab’s internal Mega-AI (Artificial intelligence) investment focusing on developing and deploying massive-scale foundation AI models for science and ...Read More
Please join us tomorrow, Wednesday, June 1, 2022, when Dr. Svitlana Volkova from the Pacific Northwest National Laboratory (PNNL) will present “Augmented Intelligence for Science and Security: From Narrow AI to Sustainable and Trustworthy Foundation Models.”
Dr. Volkova is a Chief Scientist in Decision Intelligence and Analytics in the National Security Directorate at PNNL, where she leads the lab’s internal Mega-AI (Artificial intelligence) investment focusing on developing and deploying massive-scale foundation AI models for science and security mission areas.
DetailsOrganizerData Science Seminar SeriesWhenWed, Jun 01, 2022 - 11:00 am - 12:00 pmWhereOnline |
Please join us tomorrow, Wednesday, June 1, 2022, when Dr. Svitlana Volkova from the Pacific Northwest National Laboratory (PNNL) will present “Augmented Intelligence for Science and Security: From Narrow AI to Sustainable and Trustworthy Foundation Models.” Dr. Volkova is a Chief Scientist in Decision Intelligence and Analytics in the National Security Directorate at PNNL, where she leads the lab’s internal Mega-AI (Artificial intelligence) investment focusing on developing and deploying massive-scale foundation AI models for science and security mission areas. | 2022-06-01 11:00:00 | Online | Data Science | Online | Data Science Seminar Series | 0 | Augmented Intelligence for Science and Security: From Narrow AI to Sustainable and Trustworthy Foundation Models | |||
582 |
Description
This is an NIH Director’s Lecture. The Director’s Lectures feature leading researchers from around the globe. Nominated by scientists and interest groups throughout NIH, the speakers are specifically approved by the NIH Director. There are typically three NIH Director’s Lectures per year.
The Fair laboratory focuses on mechanisms and principles that underlie the developing brain. The majority of this work uses functional MRI and resting state functional connectivity MRI to assess typical ...Read More
This is an NIH Director’s Lecture. The Director’s Lectures feature leading researchers from around the globe. Nominated by scientists and interest groups throughout NIH, the speakers are specifically approved by the NIH Director. There are typically three NIH Director’s Lectures per year.
The Fair laboratory focuses on mechanisms and principles that underlie the developing brain. The majority of this work uses functional MRI and resting state functional connectivity MRI to assess typical and atypical populations. Dr. Fair is the co-director of the new Masonic Institute for the Developing Brain.
Speaker:
Damien Fair, Ph.D.
Professor, Institute of Child Development
Professor, Department of Pediatrics
Redleaf Endowed Director, Masonic Institute for the Developing Brain
University of Minnesota
DetailsWhenWed, Jun 01, 2022 - 3:00 pm - 4:00 pmWhereOnline |
This is an NIH Director’s Lecture. The Director’s Lectures feature leading researchers from around the globe. Nominated by scientists and interest groups throughout NIH, the speakers are specifically approved by the NIH Director. There are typically three NIH Director’s Lectures per year. The Fair laboratory focuses on mechanisms and principles that underlie the developing brain. The majority of this work uses functional MRI and resting state functional connectivity MRI to assess typical and atypical populations. Dr. Fair is the co-director of the new Masonic Institute for the Developing Brain. Speaker: Damien Fair, Ph.D. Professor, Institute of Child Development Professor, Department of Pediatrics Redleaf Endowed Director, Masonic Institute for the Developing Brain University of Minnesota | 2022-06-01 15:00:00 | Online | Image Analysis | Online | 0 | The Future of Non Invasive Functional Imaging in the Era of Big Data | ||||
584 |
Description
Join the June NCI Imaging and Informatics Community Webinar for a discussion on the recent contributions from Dr. Mirabela Rusu’s Personalized Integrative Medicine Laboratory (PIMed) at Stanford University. Recent laboratory contributions include:
Join the June NCI Imaging and Informatics Community Webinar for a discussion on the recent contributions from Dr. Mirabela Rusu’s Personalized Integrative Medicine Laboratory (PIMed) at Stanford University. Recent laboratory contributions include:
DetailsOrganizerCBIITWhenMon, Jun 06, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Join the June NCI Imaging and Informatics Community Webinar for a discussion on the recent contributions from Dr. Mirabela Rusu’s Personalized Integrative Medicine Laboratory (PIMed) at Stanford University. Recent laboratory contributions include: registering whole-mount pathology images with an MRI, training deep learning models to extract pathomic MRI biomarkers, using biomarkers in training to detect and distinguish indolent and aggressive prostate cancers, and showing the benefits of using labels from pathology in training deep learning models to distinguish idle vs. aggressive prostate cancer. The PIMed Laboratory focuses on improving the interpretation of prostate MRI by developing deep learning models that automatically localize prostate cancers on MRI scans. The novelty of these methods comes from using whole-mount pathology images to label MRI images and create pathomic MRI biomarkers of cancer. This approach achieved an area under the receiver operator characteristics curve of 0.93 evaluated on a per-lesion basis, outperforming existing deep learning models. In patients outside the training cohorts, such predictive models will outline the extent of cancer on radiology images in the absence of pathology images, thus helping guide the prostate biopsy and local treatment. Speaker: Dr. Mirabela Rusu, PH.D. Dr. Rusu is an assistant professor for the department of radiology at Stanford University. She is director of the PIMed Laboratory, which has a multi-disciplinary direction focused on developing analytic methods for biomedical data integration, with a particular interest in radiology-pathology fusion to facilitate radiology image labeling. Dr. Mirabela Rusu’s laboratory focuses on improving the interpretation of prostate MRI by developing deep learning models that automatically localize indolent and aggressive prostate cancers on MRI scans. The subtle difference in MRI appearance of prostate cancer and benign prostate tissue renders the interpretation of prostate MRI challenging, causing many false positives, false negatives, and wide variations in interpretation. The talk will focus on discussing recent advances by the lab through registering whole-mount pathology images with MRI, training deep learning models to extract pathomic MRI biomarkers, and using them to detect and distinguish prostate cancers. | 2022-06-06 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Bridging the Gap Between Prostate Radiology and Pathology Through Machine Learning | |||
585 |
Description
Are you a cancer researcher or bioinformatician wanting to learn more about how the experts at NCI’s Genomic Data Commons (GDC) process a variety of molecular data types? This month’s GDC support webinar is for you!
University of Chicago’s Dr. Zhenyu Zhang and Dr. Bill Wysocki will describe the bioinformatics pipelines for a medley of data ...Read More
Are you a cancer researcher or bioinformatician wanting to learn more about how the experts at NCI’s Genomic Data Commons (GDC) process a variety of molecular data types? This month’s GDC support webinar is for you!
University of Chicago’s Dr. Zhenyu Zhang and Dr. Bill Wysocki will describe the bioinformatics pipelines for a medley of data types. Users can even learn about information stored in surprising places!
During the webinar, the GDC bioinformatics team will:
DetailsOrganizerData ScienceWhenMon, Jun 06, 2022 - 2:00 pm - 3:00 pmWhereOnline |
Are you a cancer researcher or bioinformatician wanting to learn more about how the experts at NCI’s Genomic Data Commons (GDC) process a variety of molecular data types? This month’s GDC support webinar is for you! University of Chicago’s Dr. Zhenyu Zhang and Dr. Bill Wysocki will describe the bioinformatics pipelines for a medley of data types. Users can even learn about information stored in surprising places! During the webinar, the GDC bioinformatics team will: provide an overview of whole genome sequencing (WGS), methylation, copy number, protein expression (RPPA), and other data types available at the GDC and how they are processed. describe the GDC’s WGS mutation and copy number variant calling pipelines. demonstrate how to locate and download these data types from the GDC. As part of the NCI Cancer Research Data Commons (CRDC), the GDC provides the cancer research community with data and tools to access, analyze, and share valuable genomic data. Presenters: Zhenyu Zhang, Ph.D. Dr. Zhang is the GDC co-principal investigator at the University of Chicago. Bill Wysocki, Ph.D. Dr. Wysocki is the director of User Services and Outreach for the GDC at the University of Chicago. | 2022-06-06 14:00:00 | Online | Data Resources | Online | Data Science | 0 | Processing Whole Genome, Methylation, and Copy Number Data Types at the GDC | |||
558 |
Description
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will ...Read More
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Workshop Recordings and Materials:
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, Jun 07, 2022 - 11:00 am - 1:00 pmWhereOnline |
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities. If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Workshop Recordings and Materials: Recordings and Files: https://github.com/CBIIT/python-carpentry-workshop. This page contains last year’s material as well. Software Carpentry Lesson: Plotting and programming with Python Workshop Webpage at the NCI Data Science Learning Exchange: Introduction to Python A Series of Hands-on Software Carpentry Workshops (2022) Before the workshop: We will use Google Colab for this workshop. Colab allows us to write and execute Python code through the browser. A Google Account is required for using Colab. If you do not have one, please create a Google Account before the workshop. For technical assistance, contact NCI technical support at https://service.cancer.gov/ncisp. Presenters: Pinyi Lu, PhD, Data Scientist; Andrew Weisman, PhD, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2022-06-07 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Python: Conditionals, Looping Over Data Sets, Writing Functions | |||
1032 |
Description
Welcome to the Data Wrangling with R course series! The purpose of this course is to introduce you to essential R packages and functions that will make your life easier when it comes time to explore, clean, transform, and summarize your data. Around 50-80 % of a data scientists time is often said to be devoted to data wrangling, or the act of getting data ...Read More
Welcome to the Data Wrangling with R course series! The purpose of this course is to introduce you to essential R packages and functions that will make your life easier when it comes time to explore, clean, transform, and summarize your data. Around 50-80 % of a data scientists time is often said to be devoted to data wrangling, or the act of getting data into a specific format. We can reduce some of this time simply by becoming more familiar with the packages and tools dedicated to tidying, transforming, and summarizing data. In R, one such collection of packages is known as the tidyverse, which will be the focus of this course.
This series will include 8 lessons over 5 weeks. Each lesson will be held virtually using the Webex platform on Tuesdays / Thursdays at 1 pm. Lessons will immediately be followed by a one-hour help session. Help sessions will be structured around a set of practice problems for you to test your new skills. Though, we welcome all questions!
Registering here will register you for all 8 lessons. You do not need to register for each individual lesson. If you decide to register for this series after the start of the course, please send us an email at ncibtep@nih.gov, and we will register you.
No experience with R is necessary to attend this course. The first few lessons will be focused on getting acquainted with R and RStudio. Moreover, you will not need to install R on your computer for this class. Instead, we will be using R through DNAnexus, a cloud platform for bioinformatics analysis. Upon registering for the class, register for a free DNAnexus account at https://www.dnanexus.com. You will need to send your username to ncibtep@nih.gov to finish setting up your DNAnexus account for course access. Even if you already have a DNAnexus account, please send your username to ncibtep@nih.gov.
In this series, you will learn how to navigate RStudio, assign objects and use functions, and clean, transform, and summarize data. The last course in this series will be devoted to you and your data. If you do not have your own data, we will provide a data set and practice questions for you to test your wrangling skills.
Lesson 1, June, 7th, 2022, Introduction to R, RStudio, and the Tidyverse
This will be a no coding introduction to R, RStudio, and the Tidyverse. In this lesson, we will review some of the advantages of using R for data analysis and will get you acquainted with the RStudio environment. The help session will be devoted to getting everyone connected to the course on DNAnexus.
Lesson 2, June 9th, 2022, Getting started with R.
Lesson 2 will focus on some of the basics of R programming including naming and assigning R objects, recognizing and using R functions, understanding data types and classes, becoming familiar with the R programming syntax.
Lesson 3, June 14, 2022, Importing and reshaping data
In lesson 3, we will learn how to import simple and complex data and how to avoid common mistakes. We will also learn how to reshape data, for example, from wide to long format, with tidyr.
Lesson 4, June 16, 2022, Data Visualization with ggplot2
Lesson 4 will be a brief reprieve from data wrangling. In this lesson, we will learn the basics of plotting with ggplot2.
Lesson 5, June 21st, 2022, Introducing dplyr and the pipe
In Lesson 5, we will learn how to improve code interpretability with the pipe (%>%) from the magrittr package. We will also learn how to merge and filter data frames.
Lesson 6, June 23rd, 2022, Continue data wrangling with dplyr.
In Lesson 6, we will continue to wrangle data using dplyr. This lesson will focus on functions such as group_by(), arrange(), summarize(), and mutate().
Lesson 7, July 5th, 2022, Lesson Review
In Lesson 7 we will review many of the important concepts we learned throughout the course.
Lesson 8, July 7th, 2022, Working with your own data.
Lesson 8 will be a BYOD (bring your own data) class. You will have two hours to work on your own data and get help accordingly. If you do not have your own data, we will provide a data set and practice questions for you to test your wrangling skills.
Course materials will be updated before each lesson here.
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m21dc5f9c2cb503ff6bf96ce52d57d9d5
RegisterOrganizerBTEPWhenTue, Jun 07 - Thu, Jul 07, 2022 -1:00 pm - 2:00 pmWhereOnline Webinar |
Welcome to the Data Wrangling with R course series! The purpose of this course is to introduce you to essential R packages and functions that will make your life easier when it comes time to explore, clean, transform, and summarize your data. Around 50-80 % of a data scientists time is often said to be devoted to data wrangling, or the act of getting data into a specific format. We can reduce some of this time simply by becoming more familiar with the packages and tools dedicated to tidying, transforming, and summarizing data. In R, one such collection of packages is known as the tidyverse, which will be the focus of this course. This series will include 8 lessons over 5 weeks. Each lesson will be held virtually using the Webex platform on Tuesdays / Thursdays at 1 pm. Lessons will immediately be followed by a one-hour help session. Help sessions will be structured around a set of practice problems for you to test your new skills. Though, we welcome all questions! Registering here will register you for all 8 lessons. You do not need to register for each individual lesson. If you decide to register for this series after the start of the course, please send us an email at ncibtep@nih.gov, and we will register you. No experience with R is necessary to attend this course. The first few lessons will be focused on getting acquainted with R and RStudio. Moreover, you will not need to install R on your computer for this class. Instead, we will be using R through DNAnexus, a cloud platform for bioinformatics analysis. Upon registering for the class, register for a free DNAnexus account at https://www.dnanexus.com. You will need to send your username to ncibtep@nih.gov to finish setting up your DNAnexus account for course access. Even if you already have a DNAnexus account, please send your username to ncibtep@nih.gov. In this series, you will learn how to navigate RStudio, assign objects and use functions, and clean, transform, and summarize data. The last course in this series will be devoted to you and your data. If you do not have your own data, we will provide a data set and practice questions for you to test your wrangling skills. Lesson 1, June, 7th, 2022, Introduction to R, RStudio, and the Tidyverse This will be a no coding introduction to R, RStudio, and the Tidyverse. In this lesson, we will review some of the advantages of using R for data analysis and will get you acquainted with the RStudio environment. The help session will be devoted to getting everyone connected to the course on DNAnexus. Lesson 2, June 9th, 2022, Getting started with R. Lesson 2 will focus on some of the basics of R programming including naming and assigning R objects, recognizing and using R functions, understanding data types and classes, becoming familiar with the R programming syntax. Lesson 3, June 14, 2022, Importing and reshaping data In lesson 3, we will learn how to import simple and complex data and how to avoid common mistakes. We will also learn how to reshape data, for example, from wide to long format, with tidyr. Lesson 4, June 16, 2022, Data Visualization with ggplot2 Lesson 4 will be a brief reprieve from data wrangling. In this lesson, we will learn the basics of plotting with ggplot2. Lesson 5, June 21st, 2022, Introducing dplyr and the pipe In Lesson 5, we will learn how to improve code interpretability with the pipe (%>%) from the magrittr package. We will also learn how to merge and filter data frames. Lesson 6, June 23rd, 2022, Continue data wrangling with dplyr. In Lesson 6, we will continue to wrangle data using dplyr. This lesson will focus on functions such as group_by(), arrange(), summarize(), and mutate(). Lesson 7, July 5th, 2022, Lesson Review In Lesson 7 we will review many of the important concepts we learned throughout the course. Lesson 8, July 7th, 2022, Working with your own data. Lesson 8 will be a BYOD (bring your own data) class. You will have two hours to work on your own data and get help accordingly. If you do not have your own data, we will provide a data set and practice questions for you to test your wrangling skills. Course materials will be updated before each lesson here. Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m21dc5f9c2cb503ff6bf96ce52d57d9d5 | 2022-06-07 13:00:00 | Online Webinar | Data analysis,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Data Wrangling with R | ||
566 |
Description
For the Introductory Training we will cover basic topics such as: MetaCore overview; how to use MetaCore as a knowledge mining tool; how to upload data; running functional enrichments and exploring pathway maps; and running workflows.
For the Introductory Training we will cover basic topics such as: MetaCore overview; how to use MetaCore as a knowledge mining tool; how to upload data; running functional enrichments and exploring pathway maps; and running workflows.
DetailsOrganizerNIH Training LibraryWhenThu, Jun 09, 2022 - 10:00 am - 11:00 amWhereOnline |
For the Introductory Training we will cover basic topics such as: MetaCore overview; how to use MetaCore as a knowledge mining tool; how to upload data; running functional enrichments and exploring pathway maps; and running workflows. | 2022-06-09 10:00:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | MetaCore Introductory Training | |||
587 |
Description
Presenter:
Emile Voest, M.D., Ph.D. Professor, Medical Oncology Medical Director, Board of Directors Netherlands Cancer Institute
Emile Voest is professor of Medical Oncology, senior group leader at the Netherlands Cancer Institute, senior scientist of the Oncode Institute, and translational scientist. He is the current chair of the board of directors of Cancer Core Europe, a collaboration of seven excellent comprehensive cancer centers. Until 2021, he served as executive medical director of the Netherlands Cancer ...Read More
Presenter:
Emile Voest, M.D., Ph.D. Professor, Medical Oncology Medical Director, Board of Directors Netherlands Cancer Institute
Emile Voest is professor of Medical Oncology, senior group leader at the Netherlands Cancer Institute, senior scientist of the Oncode Institute, and translational scientist. He is the current chair of the board of directors of Cancer Core Europe, a collaboration of seven excellent comprehensive cancer centers. Until 2021, he served as executive medical director of the Netherlands Cancer Institute. He is also an independent, non-executive board member of Sanofi, is co-founder and serves on the non-executive board of the Hartwig Medical Foundation. He recently has co-founded Mosaic Therapeutics, devoted to developing new combinatorial treatments in a specific genomic background. His academic group is devoted to bringing precision medicine to patients and is focused on large scale genomic sequencing of patients with metastatic cancer, the development of co-culture models of primary cultures of tumors (i.c. organoids) and immune cells to improve drug development and immunotherapy and to determine which treatment is best for a specific patient via computational, integrated approaches.
Can't join the meeting? https://collaborationhelp.cisco.com/article/WBX000029055
DetailsOrganizerNCIWhenFri, Jun 10, 2022 - 12:00 pm - 1:00 pmWhereOnline |
Presenter: Emile Voest, M.D., Ph.D. Professor, Medical Oncology Medical Director, Board of Directors Netherlands Cancer Institute Emile Voest is professor of Medical Oncology, senior group leader at the Netherlands Cancer Institute, senior scientist of the Oncode Institute, and translational scientist. He is the current chair of the board of directors of Cancer Core Europe, a collaboration of seven excellent comprehensive cancer centers. Until 2021, he served as executive medical director of the Netherlands Cancer Institute. He is also an independent, non-executive board member of Sanofi, is co-founder and serves on the non-executive board of the Hartwig Medical Foundation. He recently has co-founded Mosaic Therapeutics, devoted to developing new combinatorial treatments in a specific genomic background. His academic group is devoted to bringing precision medicine to patients and is focused on large scale genomic sequencing of patients with metastatic cancer, the development of co-culture models of primary cultures of tumors (i.c. organoids) and immune cells to improve drug development and immunotherapy and to determine which treatment is best for a specific patient via computational, integrated approaches. Can't join the meeting? https://collaborationhelp.cisco.com/article/WBX000029055 | 2022-06-10 12:00:00 | Online | Cancer,Genomics | Online | NCI | 0 | Genomics and Beyond: How We Need to Improve on Precision Medicine | |||
591 |
Description
Join the upcoming NCI Containers and Workflows Interest Group (CWIG) webinar to learn about the research and functionality available through the University of California, San Francisco’s (UCSF) Information Commons.
As an open-source platform, the commons support deep data science and artificial intelligence methodologies. The platform offers access to de-identified clinical, imaging, and genomic profile data for 5.5 million UCSF patients. Drs. Sharat Israni and Gundolf Schenk will highlight examples of how leveraging this multidimensional data ...Read More
Join the upcoming NCI Containers and Workflows Interest Group (CWIG) webinar to learn about the research and functionality available through the University of California, San Francisco’s (UCSF) Information Commons.
As an open-source platform, the commons support deep data science and artificial intelligence methodologies. The platform offers access to de-identified clinical, imaging, and genomic profile data for 5.5 million UCSF patients. Drs. Sharat Israni and Gundolf Schenk will highlight examples of how leveraging this multidimensional data can result in richer scientific findings for cancer research.
At the next CWIG webinar in September, a practicing oncologist will present how they use this research data platform to conduct cancer research.
CWIG is a monthly webinar series that brings together data scientists, bioinformaticians, computer scientists, and researchers to learn more about cloud computing and container technologies, workflows, and pipelines that could drive cancer data science.
The webinar series features a variety of presenters from across NIH, industry, and academia. Though cancer research is the focus of the series, unrelated data science and cloud computing topics are still welcome. In the last year, the CWIG webinar speakers have discussed:
DetailsOrganizerData ScienceWhenFri, Jun 10, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Join the upcoming NCI Containers and Workflows Interest Group (CWIG) webinar to learn about the research and functionality available through the University of California, San Francisco’s (UCSF) Information Commons. As an open-source platform, the commons support deep data science and artificial intelligence methodologies. The platform offers access to de-identified clinical, imaging, and genomic profile data for 5.5 million UCSF patients. Drs. Sharat Israni and Gundolf Schenk will highlight examples of how leveraging this multidimensional data can result in richer scientific findings for cancer research. At the next CWIG webinar in September, a practicing oncologist will present how they use this research data platform to conduct cancer research. CWIG is a monthly webinar series that brings together data scientists, bioinformaticians, computer scientists, and researchers to learn more about cloud computing and container technologies, workflows, and pipelines that could drive cancer data science. The webinar series features a variety of presenters from across NIH, industry, and academia. Though cancer research is the focus of the series, unrelated data science and cloud computing topics are still welcome. In the last year, the CWIG webinar speakers have discussed: NIH cloud programs like the Cancer Genomics Cloud, its fellow NCI Cloud Resources, and NIH STRIDES. commercial cloud platforms for biomedical data storage and computing. pipelines and tools for deep learning and various omics analysis. Presenters: Sharat Israni, Ph.D. Dr. Israni is the executive director and chief technology officer at UCSF’s Bakar Computational Health Sciences Institute, which is building the UCSF Information Commons. Gundolf Schenk, Ph.D. Dr. Schenk is a principal data scientist working at UCSF’s Bakar Computational Health Sciences Institute, where he applies his skills to integrate clinical notes and automate detection of structure within various modalities of biomedical data. | 2022-06-10 15:00:00 | Online | Cancer,Data Science | Online | Data Science | 0 | UCSF Information and Cancer Commons: Part 1 of 2 | |||
559 |
Description
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will ...Read More
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities.
If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation.
NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions!
Workshop Recordings and Materials:
DetailsOrganizerNCI Data Science Learning ExchangeWhenTue, Jun 14, 2022 - 11:00 am - 1:00 pmWhereOnline |
Python is one of the preferred programming languages for scientists to solve a wide variety of biological problems. We find that many scientists who come to Software Carpentry workshops use Python and want to learn more about its capabilities. If you are a novice and want to learn how to program in Python to help you in your work, please join our six-week series of two-hour workshops! Instructors will use live code and you will follow along on your own computer. You will gain a strong foundation in the fundamentals of Python along with best practices for scientific computing: breaking down analyses into modular units, task automation, and encapsulation. NOTE: This is a six-part course, held weekly for 6 weeks from 11 am – 1 pm, with a 20-minute lunch break. When you register, you are registering for all 6 weeks. Please make sure you have time in your schedule to commit to all six sessions! Workshop Recordings and Materials: Recordings and Files: https://github.com/CBIIT/python-carpentry-workshop. This page contains last year’s material as well. Software Carpentry Lesson: Plotting and programming with Python Workshop Webpage at the NCI Data Science Learning Exchange: Introduction to Python A Series of Hands-on Software Carpentry Workshops (2022) Before the workshop: We will use Google Colab for this workshop. Colab allows us to write and execute Python code through the browser. A Google Account is required for using Colab. If you do not have one, please create a Google Account before the workshop. For technical assistance, contact NCI technical support at https://service.cancer.gov/ncisp. Presenters: Pinyi Lu, PhD, Data Scientist; Andrew Weisman, PhD, Bioinformatics Analyst; and George Zaki, PhD, Bioinformatics Manager, Frederick National Laboratory for Cancer Research (FNLCR) Questions? Contact the NCI Data Science Learning Exchange | 2022-06-14 11:00:00 | Online | Programming | Online | NCI Data Science Learning Exchange | 0 | Python: Variable Scope, Programming Style, Wrap-Up | |||
586 |
Description
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the fourth of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Lillian L. Siu of the Princess Margaret Cancer Centre will be presenting, “Read More
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the fourth of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Lillian L. Siu of the Princess Margaret Cancer Centre will be presenting, “Utilizing Correlative Studies for Drug Development: Computational Science in Immuno-Oncology.” The discussion will be moderated by Dr. Dora Hammerl of Erasmus MC Cancer Institute.
The SITC-NCI Computational Immuno-Oncology Webinar Series consists of nine, hour-long courses featuring a moderator and faculty speaker to lead instruction. Topics will cover a host of computational challenges of analyzing and integrating diverse assay data across the spectrum of immuno-oncology. This series is intended for scientists early in their career and/or those who want to remain abreast of the latest technologies. These webinars were created to foster better communication concerning data science technologies and analyses between cancer immunotherapy researchers and clinicians to advance translational immunotherapy research.
Presenters:
DetailsOrganizerData ScienceWhenTue, Jun 14, 2022 - 12:30 pm - 1:30 pmWhereOnline |
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the fourth of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Lillian L. Siu of the Princess Margaret Cancer Centre will be presenting, “Utilizing Correlative Studies for Drug Development: Computational Science in Immuno-Oncology.” The discussion will be moderated by Dr. Dora Hammerl of Erasmus MC Cancer Institute. The SITC-NCI Computational Immuno-Oncology Webinar Series consists of nine, hour-long courses featuring a moderator and faculty speaker to lead instruction. Topics will cover a host of computational challenges of analyzing and integrating diverse assay data across the spectrum of immuno-oncology. This series is intended for scientists early in their career and/or those who want to remain abreast of the latest technologies. These webinars were created to foster better communication concerning data science technologies and analyses between cancer immunotherapy researchers and clinicians to advance translational immunotherapy research. Presenters: Lillian L. Siu, M.D. Dr. Siu is a senior scientist at the Princess Margaret Cancer Centre. Here, she works as the director of the Phase I Program, co-director of the Bras and Family Drug Development Program, and the clinical lead for the Tumor Immunotherapy Program. Dora Hammerl, Ph.D. Dr. Hammerl is a postdoctoral researcher at Erasmus MC Cancer Institute. | 2022-06-14 12:30:00 | Online | Data Science | Online | Data Science | 0 | SITC-NCI Computational Immuno-Oncology Webinar Series: Utilizing Correlative Studies for Drug Development | |||
590 |
Description
In this webinar, NCI Program Director Dr. Juli Klemm will give an overview of two trans-NCI programs: Informatics Technology for Cancer Research (ITCR), and the Serological Sciences Network (SeroNet).
The ITCR Program funds investigator-initiated informatics technology development driven by critical needs in ...Read More
In this webinar, NCI Program Director Dr. Juli Klemm will give an overview of two trans-NCI programs: Informatics Technology for Cancer Research (ITCR), and the Serological Sciences Network (SeroNet).
The ITCR Program funds investigator-initiated informatics technology development driven by critical needs in cancer research. The presentation will provide an overview of the program's goals and funding opportunities, as well as highlight some of the supported informatics tools.
SeroNet, established through emergency COVID-19 funding, is leading studies to understand how the immune system responds to SARS-CoV-2 infection and vaccination. The program’s mission, structure, and some key research findings will be discussed.
The Infectious Agents and Cancer Epidemiology Research webinar series is designed to highlight emerging and cutting-edge research related to infection-associated cancers, share scientific knowledge about technologies and methods that may enhance and facilitate infection-associated cancer epidemiology research, and foster cross-disciplinary discussions on infectious agents and cancer epidemiology.
Presenter:
Dr. Juli Klemm is an NCI program director in the Center for Strategic Scientific Initiatives (CSSI) and directs the NCI Informatics Technology for Cancer Research Program supporting open source, investigator-initiated informatics technology development. In addition, Dr. Klemm coordinates the trans-NCI Advisory Committee to CSSI and has been closely involved in organizing SeroNet in support of NCI’s response to the COVID-19 pandemic.
DetailsOrganizerData ScienceWhenTue, Jun 14, 2022 - 2:00 pm - 3:00 pmWhereOnline |
In this webinar, NCI Program Director Dr. Juli Klemm will give an overview of two trans-NCI programs: Informatics Technology for Cancer Research (ITCR), and the Serological Sciences Network (SeroNet). The ITCR Program funds investigator-initiated informatics technology development driven by critical needs in cancer research. The presentation will provide an overview of the program's goals and funding opportunities, as well as highlight some of the supported informatics tools. SeroNet, established through emergency COVID-19 funding, is leading studies to understand how the immune system responds to SARS-CoV-2 infection and vaccination. The program’s mission, structure, and some key research findings will be discussed. The Infectious Agents and Cancer Epidemiology Research webinar series is designed to highlight emerging and cutting-edge research related to infection-associated cancers, share scientific knowledge about technologies and methods that may enhance and facilitate infection-associated cancer epidemiology research, and foster cross-disciplinary discussions on infectious agents and cancer epidemiology. Presenter: Dr. Juli Klemm is an NCI program director in the Center for Strategic Scientific Initiatives (CSSI) and directs the NCI Informatics Technology for Cancer Research Program supporting open source, investigator-initiated informatics technology development. In addition, Dr. Klemm coordinates the trans-NCI Advisory Committee to CSSI and has been closely involved in organizing SeroNet in support of NCI’s response to the COVID-19 pandemic. | 2022-06-14 14:00:00 | Online | Bioinformatics Software,Data Science | Online | Data Science | 0 | Overview of Two NCI Programs: The Informatics Technology for Cancer Research (ITCR) Program and Serological Sciences Network (SeroNet) | |||
567 |
Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also ...Read More
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics.
Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects.
DetailsOrganizerNIH Training LibraryWhenWed, Jun 15, 2022 - 10:00 am - 3:00 pmWhereOnline |
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics. Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects. | 2022-06-15 10:00:00 | Online | Pathway Analysis | Online | NIH Training Library | 0 | Ingenuity Pathway Analysis (IPA) | |||
1029 |
Description
Partek® Flow® bioinformatics software is available to all NCI researchers. Join us for an online training session specifically for NCI researchers where a Partek® scientist will demonstrate how to perform the advanced and in-depth analysis of your Single Cell data. The training session will start with Visium Spatial Gene Expression data import and annotation, followed by how to use histology information to perform cell type classification. Then we will introduce the most recent improvements on ...Read More
Partek® Flow® bioinformatics software is available to all NCI researchers. Join us for an online training session specifically for NCI researchers where a Partek® scientist will demonstrate how to perform the advanced and in-depth analysis of your Single Cell data. The training session will start with Visium Spatial Gene Expression data import and annotation, followed by how to use histology information to perform cell type classification. Then we will introduce the most recent improvements on heatmap/bubble map visualization. Lastly, we will discuss how to use Garnett to automatically classify cell types.
Meeting link:
https://cbiit.webex.com/cbiit/j.php?MTID=m6916d6f765f43c8bf2118659530bf0dd
Meeting number:
2307 014 7918
Password:
r3CAK2FAD9?
Join by video system
Dial 23070147918@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in number (US/Canada)
Access code: 2307 014 7918
Host PIN: 5225
RegisterOrganizerBTEPWhenWed, Jun 15, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
Partek® Flow® bioinformatics software is available to all NCI researchers. Join us for an online training session specifically for NCI researchers where a Partek® scientist will demonstrate how to perform the advanced and in-depth analysis of your Single Cell data. The training session will start with Visium Spatial Gene Expression data import and annotation, followed by how to use histology information to perform cell type classification. Then we will introduce the most recent improvements on heatmap/bubble map visualization. Lastly, we will discuss how to use Garnett to automatically classify cell types. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m6916d6f765f43c8bf2118659530bf0dd Meeting number: 2307 014 7918 Password: r3CAK2FAD9? Join by video system Dial 23070147918@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2307 014 7918 Host PIN: 5225 | 2022-06-15 11:00:00 | Online Webinar | Single Cell RNA-seq | Online | Xiaowen Wang (Partek) | BTEP | 0 | Single Cell Analysis in Partek Flow: Advanced and In-depth Training Including Cell Type Classification | ||
575 |
Description
During this seminar, Washington University in St. Louis’ Dr. Obi L. Griffith will present CIViC: an open access, open source, community-driven web resource for clinical interpretation of variants in cancer. The goal of this resource is to enable precision medicine by providing an educational forum for dissemination of knowledge and active discussion of the clinical significance of cancer genome alterations.
The ...Read More
During this seminar, Washington University in St. Louis’ Dr. Obi L. Griffith will present CIViC: an open access, open source, community-driven web resource for clinical interpretation of variants in cancer. The goal of this resource is to enable precision medicine by providing an educational forum for dissemination of knowledge and active discussion of the clinical significance of cancer genome alterations.
The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI.
Presenter:
Obi L. Griffith, Ph.D.
Dr. Griffith is an associate professor of medicine (oncology) and the assistant director of the McDonnell Genome Institute at Washington University in St. Louis School of Medicine. He has his doctorate in medical genetics from the University of British Columbia in Vancouver, Canada. Dr. Griffith’s research interests include cancer informatics, clinical statistics, and breast cancer.
DetailsOrganizerData Science Seminar SeriesWhenWed, Jun 15, 2022 - 11:00 am - 12:00 pmWhereOnline |
During this seminar, Washington University in St. Louis’ Dr. Obi L. Griffith will present CIViC: an open access, open source, community-driven web resource for clinical interpretation of variants in cancer. The goal of this resource is to enable precision medicine by providing an educational forum for dissemination of knowledge and active discussion of the clinical significance of cancer genome alterations. The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. Presenter: Obi L. Griffith, Ph.D. Dr. Griffith is an associate professor of medicine (oncology) and the assistant director of the McDonnell Genome Institute at Washington University in St. Louis School of Medicine. He has his doctorate in medical genetics from the University of British Columbia in Vancouver, Canada. Dr. Griffith’s research interests include cancer informatics, clinical statistics, and breast cancer. | 2022-06-15 11:00:00 | Online | Variant Analysis,Bioinformatics Software | Online | Data Science Seminar Series | 0 | CIViC—Democratizing Access to Cancer Variant Interpretations | |||
568 |
Description
For the Advanced Training, topics covered depend upon survey results: find key hubs using over-connectivity analysis; using Microarray repository for gene comparisons against public data; building networks with MetaCore; constructing your own pathway maps; performing toxicogenomic analysis in MetaCore; analyzing and building networks with miRNA and mRNA data; analyzing multi-omics data (RNA-seq, proteomics, metabolomics, etc).
For the Advanced Training, topics covered depend upon survey results: find key hubs using over-connectivity analysis; using Microarray repository for gene comparisons against public data; building networks with MetaCore; constructing your own pathway maps; performing toxicogenomic analysis in MetaCore; analyzing and building networks with miRNA and mRNA data; analyzing multi-omics data (RNA-seq, proteomics, metabolomics, etc).
DetailsOrganizerNIH Training LibraryWhenThu, Jun 16, 2022 - 10:00 am - 11:00 amWhereOnline |
For the Advanced Training, topics covered depend upon survey results: find key hubs using over-connectivity analysis; using Microarray repository for gene comparisons against public data; building networks with MetaCore; constructing your own pathway maps; performing toxicogenomic analysis in MetaCore; analyzing and building networks with miRNA and mRNA data; analyzing multi-omics data (RNA-seq, proteomics, metabolomics, etc). | 2022-06-16 10:00:00 | Online | Bioinformatics Software | Online | NIH Training Library | 0 | MetaCore Advanced Session | |||
1024 |
Description
Sarah Teichmann, Ph.D., Fellow of the Academy of Medical Sciences (UK FMedSci), Fellow of the Royal Society (FRS), Wellcome Sanger Institute
Sarah Teichmann is co-founder and principal leader of the Human Cell Atlas (HCA) international consortium. The International Human Cell Atlas initiative aims to create comprehensive reference maps of all human cells to further understand health and disease.
The 37 trillion cells of the human body have a remarkable array of specialized functions, and must ...Read More
Sarah Teichmann, Ph.D., Fellow of the Academy of Medical Sciences (UK FMedSci), Fellow of the Royal Society (FRS), Wellcome Sanger Institute
Sarah Teichmann is co-founder and principal leader of the Human Cell Atlas (HCA) international consortium. The International Human Cell Atlas initiative aims to create comprehensive reference maps of all human cells to further understand health and disease.
The 37 trillion cells of the human body have a remarkable array of specialized functions, and must cooperate and collaborate in time and space to construct a functioning human. In this talk I will describe my lab’s efforts to understand this cellular diversity through a programme of cell atlasing. Harnessing cutting edge single cell genomics, imaging and computational technologies, we investigate development, homeostasis and disease states, at scale and in 3D, with a particular focus on immunity. I will illustrate the relevance of cell atlas-ing for engineering organoids and regenerative medicine, and will share new results providing insights into pacemaker cells from the sinoatrial node of this heart. Overall I hope to illustrate the power of single cell approaches in unlocking fundamental knowledge about the human body.
Meeting link:
https://cbiit.webex.com/cbiit/j.php?MTID=mbfca0baa7aa989a895c21f06841884d5
Meeting number:
2303 842 8144
Password:
6yqVRn7dq*7
Join by video system
Dial 23038428144@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in number (US/Canada)
Access code: 2303 842 8144
RegisterOrganizerBTEPWhenThu, Jun 16, 2022 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Sarah Teichmann, Ph.D., Fellow of the Academy of Medical Sciences (UK FMedSci), Fellow of the Royal Society (FRS), Wellcome Sanger Institute Sarah Teichmann is co-founder and principal leader of the Human Cell Atlas (HCA) international consortium. The International Human Cell Atlas initiative aims to create comprehensive reference maps of all human cells to further understand health and disease. The 37 trillion cells of the human body have a remarkable array of specialized functions, and must cooperate and collaborate in time and space to construct a functioning human. In this talk I will describe my lab’s efforts to understand this cellular diversity through a programme of cell atlasing. Harnessing cutting edge single cell genomics, imaging and computational technologies, we investigate development, homeostasis and disease states, at scale and in 3D, with a particular focus on immunity. I will illustrate the relevance of cell atlas-ing for engineering organoids and regenerative medicine, and will share new results providing insights into pacemaker cells from the sinoatrial node of this heart. Overall I hope to illustrate the power of single cell approaches in unlocking fundamental knowledge about the human body. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=mbfca0baa7aa989a895c21f06841884d5 Meeting number: 2303 842 8144 Password: 6yqVRn7dq*7 Join by video system Dial 23038428144@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2303 842 8144 | 2022-06-16 13:00:00 | Online Webinar | Single Cell RNA-seq | Online | Sarah Teichmann (Wellcome Sanger Institute) | BTEP | 0 | Mapping the Human Body One Cell at a Time | ||
1050 |
Distinguished Speakers Seminar SeriesDescriptionSarah Teichmann is co-founder and principal leader of the Human Cell Atlas (HCA) international consortium. The International Human Cell Atlas initiative aims to create comprehensive reference maps of all human cells to further understand health and disease. The 37 trillion cells of the human body have a remarkable array of specialized functions, and must cooperate and collaborate in time and space to construct a functioning human. In this talk I will describe my ...Read More Sarah Teichmann is co-founder and principal leader of the Human Cell Atlas (HCA) international consortium. The International Human Cell Atlas initiative aims to create comprehensive reference maps of all human cells to further understand health and disease. The 37 trillion cells of the human body have a remarkable array of specialized functions, and must cooperate and collaborate in time and space to construct a functioning human. In this talk I will describe my lab’s efforts to understand this cellular diversity through a programme of cell atlasing. Harnessing cutting edge single cell genomics, imaging and computational technologies, we investigate development, homeostasis and disease states, at scale and in 3D, with a particular focus on immunity. I will illustrate the relevance of cell atlas-ing for engineering organoids and regenerative medicine, and will share new results providing insights into pacemaker cells from the sinoatrial node of this heart. Overall I hope to illustrate the power of single cell approaches in unlocking fundamental knowledge about the human body. DetailsOrganizerBTEPWhenThu, Jun 16, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Sarah Teichmann is co-founder and principal leader of the Human Cell Atlas (HCA) international consortium. The International Human Cell Atlas initiative aims to create comprehensive reference maps of all human cells to further understand health and disease. The 37 trillion cells of the human body have a remarkable array of specialized functions, and must cooperate and collaborate in time and space to construct a functioning human. In this talk I will describe my lab’s efforts to understand this cellular diversity through a programme of cell atlasing. Harnessing cutting edge single cell genomics, imaging and computational technologies, we investigate development, homeostasis and disease states, at scale and in 3D, with a particular focus on immunity. I will illustrate the relevance of cell atlas-ing for engineering organoids and regenerative medicine, and will share new results providing insights into pacemaker cells from the sinoatrial node of this heart. Overall I hope to illustrate the power of single cell approaches in unlocking fundamental knowledge about the human body. | 2022-06-16 13:00:00 | Any | Online | BTEP | 1 | Mapping the Human Body One Cell at a Time | ||||
569 |
Description
Key Pathway Advisor (KPA) is a web application for biological pathway analysis of OMICs data. This session will demonstrate using KPA to: explore the biological meaning of data; predict key protein activity changes that could be the root cause of gene expression alterations; understand how biological pathways are impacted by data; create hypotheses about new targets, mechanisms of action, biomarkers and disease associations; and align results with current knowledge of biomarkers and drug targets. Bioinformatics ...Read More
Key Pathway Advisor (KPA) is a web application for biological pathway analysis of OMICs data. This session will demonstrate using KPA to: explore the biological meaning of data; predict key protein activity changes that could be the root cause of gene expression alterations; understand how biological pathways are impacted by data; create hypotheses about new targets, mechanisms of action, biomarkers and disease associations; and align results with current knowledge of biomarkers and drug targets. Bioinformatics experience is not required to use this tool.
DetailsOrganizerNIH Training LibraryWhenTue, Jun 21, 2022 - 10:00 am - 11:00 amWhereOnline |
Key Pathway Advisor (KPA) is a web application for biological pathway analysis of OMICs data. This session will demonstrate using KPA to: explore the biological meaning of data; predict key protein activity changes that could be the root cause of gene expression alterations; understand how biological pathways are impacted by data; create hypotheses about new targets, mechanisms of action, biomarkers and disease associations; and align results with current knowledge of biomarkers and drug targets. Bioinformatics experience is not required to use this tool. | 2022-06-21 10:00:00 | Online | Pathway Analysis | Online | NIH Training Library | 0 | Using Key Pathway Advisor for Pathway Analysis | |||
593 |
Description
Cancer origination and progression is a complex process that can be viewed as a somatic evolutionary progression with clonal cellular expansion(s) driven by accumulation of survival-/evasion-beneficial genomic mutations, alongside constantly changing selective pressures. We are going to focus on two aspects of genomic abberations observed in cancers: large-scale somatic genomic copy number variations (CNV) and extrachmosomal DNA (ecDNA) amplicons. CNVs amplify or delete one or both germline alleles of genomic segments, chromosome arms, ...Read More
Cancer origination and progression is a complex process that can be viewed as a somatic evolutionary progression with clonal cellular expansion(s) driven by accumulation of survival-/evasion-beneficial genomic mutations, alongside constantly changing selective pressures. We are going to focus on two aspects of genomic abberations observed in cancers: large-scale somatic genomic copy number variations (CNV) and extrachmosomal DNA (ecDNA) amplicons. CNVs amplify or delete one or both germline alleles of genomic segments, chromosome arms, or even entire chromosomes, while ecDNA represent novel circular centromere-less DNA molecules comprised of excised parts of linear chromosomes. Both of these genomic alterations can drive tumor heterogeneity, improve tumor microenvironment adaptation, and increase potential for drug treatment resistance.
We present a computational workflow to infer clone- and haplotype-specific cancer CNV profiles and identify and assembly ecDNA in tumors by processing long nanopore reads obtained with high-throughput bulk sequencing of a tumor and matching normal samples. For CNV inference the workflow focuses on inferring heterozygous germline SNPs, phasing them, and then performing count-based inference of clone- and alelle-specific CNVs in tumor samples allowing for multi-clonal composition. For ecDNA analysis the workflow focuses on detecting focal amplification coverage regions most likely representing ecDNa comprising fragments, and performing de novo assembly with the reads originating from such coverage pileups.
We evaluated the proposed workflow on a range of cancer cell lines with known CNV and ecDNA aberrations. We demonstrate that our approach can detect clone- and haplotype-specific CNVs in concordance with previously published bulk and single-cell analysis, with results being stable across tumor samples' sequencing coverage levels down to 40x, putting the proposed approach on par with the industry standard NGS-based experiments. We further observe the robust capability of the presented nanopore-based method to identify and assembly ecDNA amplicons, with results remaining stable for samples sequenced with <1x WGS coverage levels. We further demonstrate proof of concept multiplexing capabilities of the nanopore platform for multi-site tumor sampling and ecDNA analysis. Lastly, we showcase the of the unique ability of nanopore reads to retain single-molecule methylation signals, with the proposed workflow allowing us to identify differentially methylated regions both across intra-tumor multi-site samples, as well as in a tumor vs normal comparison, thus shedding light in acquisition/loss of DNA modifications in ecDNA and CNV regions.
Overall, the presented results demonstrate how nanopore sequencing can be cost- and time-effective stand-alone platform used to resolve some of the complexity that characterizes structurally aberrant heterogeneous cancer samples, while also revealing the previously inaccessible dimension of allele-specific tumor methylation.
For our next CDSL webinar we will have a guest lecture by Dr. Sergey Aganezov from the Genomics Applications group at Oxford Nanopore Technologies.
Bio: Dr. Aganezov is a Bioinformatics Scientist in the Genomics Applications group at Oxford Nanopore Technologies. His main research focuses on structural genomics, cancer genomics, DNA methylation analysis, and programmable Nanopore platform applications. Before joining ONT Dr. Aganezov was a Postdoctoral Research Fellow at Johns Hopkins University (prof. Schatz group) following a Postdoctoral Research Fellowship at Princeton University (prof. Raphael Group). During his postdoctoral research Dr. Aganezov focused on human and plant structural genomics, including areas of assembly, structural/copy number variation detection and integration, comparative genomics, including co-leading genome variation analysis in the Telomere-2-Telomere consortium. Dr. Aganezov holds a PhD from The George Washington University's department of Mathematics, and B.S from ITMO University in Computer Science and Applied Mathematics.
DetailsOrganizerCDSLWhenWed, Jun 22, 2022 - 11:00 am - 12:00 pmWhereOnline |
Cancer origination and progression is a complex process that can be viewed as a somatic evolutionary progression with clonal cellular expansion(s) driven by accumulation of survival-/evasion-beneficial genomic mutations, alongside constantly changing selective pressures. We are going to focus on two aspects of genomic abberations observed in cancers: large-scale somatic genomic copy number variations (CNV) and extrachmosomal DNA (ecDNA) amplicons. CNVs amplify or delete one or both germline alleles of genomic segments, chromosome arms, or even entire chromosomes, while ecDNA represent novel circular centromere-less DNA molecules comprised of excised parts of linear chromosomes. Both of these genomic alterations can drive tumor heterogeneity, improve tumor microenvironment adaptation, and increase potential for drug treatment resistance. We present a computational workflow to infer clone- and haplotype-specific cancer CNV profiles and identify and assembly ecDNA in tumors by processing long nanopore reads obtained with high-throughput bulk sequencing of a tumor and matching normal samples. For CNV inference the workflow focuses on inferring heterozygous germline SNPs, phasing them, and then performing count-based inference of clone- and alelle-specific CNVs in tumor samples allowing for multi-clonal composition. For ecDNA analysis the workflow focuses on detecting focal amplification coverage regions most likely representing ecDNa comprising fragments, and performing de novo assembly with the reads originating from such coverage pileups. We evaluated the proposed workflow on a range of cancer cell lines with known CNV and ecDNA aberrations. We demonstrate that our approach can detect clone- and haplotype-specific CNVs in concordance with previously published bulk and single-cell analysis, with results being stable across tumor samples' sequencing coverage levels down to 40x, putting the proposed approach on par with the industry standard NGS-based experiments. We further observe the robust capability of the presented nanopore-based method to identify and assembly ecDNA amplicons, with results remaining stable for samples sequenced with <1x WGS coverage levels. We further demonstrate proof of concept multiplexing capabilities of the nanopore platform for multi-site tumor sampling and ecDNA analysis. Lastly, we showcase the of the unique ability of nanopore reads to retain single-molecule methylation signals, with the proposed workflow allowing us to identify differentially methylated regions both across intra-tumor multi-site samples, as well as in a tumor vs normal comparison, thus shedding light in acquisition/loss of DNA modifications in ecDNA and CNV regions. Overall, the presented results demonstrate how nanopore sequencing can be cost- and time-effective stand-alone platform used to resolve some of the complexity that characterizes structurally aberrant heterogeneous cancer samples, while also revealing the previously inaccessible dimension of allele-specific tumor methylation. For our next CDSL webinar we will have a guest lecture by Dr. Sergey Aganezov from the Genomics Applications group at Oxford Nanopore Technologies. Bio: Dr. Aganezov is a Bioinformatics Scientist in the Genomics Applications group at Oxford Nanopore Technologies. His main research focuses on structural genomics, cancer genomics, DNA methylation analysis, and programmable Nanopore platform applications. Before joining ONT Dr. Aganezov was a Postdoctoral Research Fellow at Johns Hopkins University (prof. Schatz group) following a Postdoctoral Research Fellowship at Princeton University (prof. Raphael Group). During his postdoctoral research Dr. Aganezov focused on human and plant structural genomics, including areas of assembly, structural/copy number variation detection and integration, comparative genomics, including co-leading genome variation analysis in the Telomere-2-Telomere consortium. Dr. Aganezov holds a PhD from The George Washington University's department of Mathematics, and B.S from ITMO University in Computer Science and Applied Mathematics. | 2022-06-22 11:00:00 | Online | Variant Analysis,Sequencing Technologies | Online | CDSL | 0 | Characterizing copy number variations and extrachromosomal DNA amplicons in heterogeneous cancer samples with nanopore sequencing. | |||
588 |
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RStudio Team is a data science platform that allows data scientists to develop and share data science pipelines with collaborators. In this presentation, RStudio will highlight the basic functionalities of the platform to provide web based integrated development environment for R and Python, as well as sharing and managing Shiny web applications. | 2022-06-24 10:00:00 | Online | Programming,Data Science | Online | NCI Data Science Learning Exchange | 0 | Join the RStudio team: demo of capabilities to accelerate and share data science insights | |||
578 |
Description
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Read More
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R.
Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed.
DetailsOrganizerNIH Training LibraryWhenMon, Jun 27, 2022 - 11:00 am - 12:00 pmWhereOnline |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. | 2022-06-27 11:00:00 | Online | Programming | Online | NIH Training Library | 0 | Introduction to R and RStudio | |||
1031 |
Description
THIS EVENT HAS BEEN RESCHEDULED FROM 6/22 TO 6/29 AT 11:00 AM USING THE SAME MEETING LINK.
We will go over RNA-seq from experimental design, data import options, data normalization options, to to statistical tests and biological interpretation using Gene Set Enrichment Analysis (GSEA). In this live demo we will build together a signature for separating a disease conditions in a multi-group and two-group analysis.
Meeting link:
Read More
THIS EVENT HAS BEEN RESCHEDULED FROM 6/22 TO 6/29 AT 11:00 AM USING THE SAME MEETING LINK.
We will go over RNA-seq from experimental design, data import options, data normalization options, to to statistical tests and biological interpretation using Gene Set Enrichment Analysis (GSEA). In this live demo we will build together a signature for separating a disease conditions in a multi-group and two-group analysis.
Meeting link:
https://cbiit.webex.com/cbiit/j.php?MTID=m456d47dea218c2604205abc3c723d570
Meeting number:
2309 204 3527
Password:
AyKA5SyR$76
Join by video system
Dial 23092043527@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in number (US/Canada)
Access code: 2309 204 3527
RegisterOrganizerBTEPWhenWed, Jun 29, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
THIS EVENT HAS BEEN RESCHEDULED FROM 6/22 TO 6/29 AT 11:00 AM USING THE SAME MEETING LINK. We will go over RNA-seq from experimental design, data import options, data normalization options, to to statistical tests and biological interpretation using Gene Set Enrichment Analysis (GSEA). In this live demo we will build together a signature for separating a disease conditions in a multi-group and two-group analysis. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m456d47dea218c2604205abc3c723d570 Meeting number: 2309 204 3527 Password: AyKA5SyR$76 Join by video system Dial 23092043527@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2309 204 3527 | 2022-06-29 11:00:00 | Online Webinar | Bulk RNA-seq | Online | Yana Stackpole (Qlucore) | BTEP | 0 | Visual and Fast Bulk RNA-Seq Analysis for Biologists with Qlucore Omics Explorer - RESCHEDULED | ||
589 |
Description
During this webinar, Computational Biologist Dr. Eytan Ruppin will present on “SELECT,” a computational approach that aims to identify clinically relevant synthetic lethal interactions, thereby harnessing them to predict patient response to cancer therapy from the bulk tumor transcriptome.
Tested on a broad collection of targeted and immunotherapy clinical trials, SELECT is predictive of patients’ response in 80% of those and in the recent multi-arm WINTHER clinical trial.
The session will also cover:
During this webinar, Computational Biologist Dr. Eytan Ruppin will present on “SELECT,” a computational approach that aims to identify clinically relevant synthetic lethal interactions, thereby harnessing them to predict patient response to cancer therapy from the bulk tumor transcriptome.
Tested on a broad collection of targeted and immunotherapy clinical trials, SELECT is predictive of patients’ response in 80% of those and in the recent multi-arm WINTHER clinical trial.
The session will also cover:
DetailsOrganizerData Science Seminar SeriesWhenWed, Jun 29, 2022 - 11:00 am - 12:00 pmWhereOnline |
During this webinar, Computational Biologist Dr. Eytan Ruppin will present on “SELECT,” a computational approach that aims to identify clinically relevant synthetic lethal interactions, thereby harnessing them to predict patient response to cancer therapy from the bulk tumor transcriptome. Tested on a broad collection of targeted and immunotherapy clinical trials, SELECT is predictive of patients’ response in 80% of those and in the recent multi-arm WINTHER clinical trial. The session will also cover: “MadHitter” and “PERCEPTION,” two new computational approaches for guiding precision cancer therapy based on single cell tumor transcriptomics. future challenges that need to be addressed to further advance transcriptomics-based precision oncology, including the development of a new precision oncology expression-based approach starting from histopathological images. The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. Presenter: Eytan Ruppin, M.D., Ph.D. Dr. Ruppin is the chief and senior investigator of NCI’s Cancer Data Science Laboratory. He’s a trained computational biologist whose research is focused on developing and harnessing data science approaches for the integration of multi-omics data to better understand the pathogenesis of cancer, its evolution, and treatment. | 2022-06-29 11:00:00 | Online | Cancer,Transcriptomics | Online | Data Science Seminar Series | 0 | Next Generation Transcriptomics-based Precision Oncology | |||
594 |
Description
The CCR Genomics, Sequencing and Single Cell Analysis Core Facilities are pleased to host a virtual technology seminar with Illumina.
Presentation overview: For decades cancer methylation studies have provided insights into tumorigenic pathways and cancer progression. Now new solutions such as cell-free DNA methylation sequencing for ultrasensitive and non-invasive cancer detection and classification, and DNA methylation at single-cell resolution have emerged to meet the field's rapidly evolving needs. Additionally, methylation arrays ...Read More
The CCR Genomics, Sequencing and Single Cell Analysis Core Facilities are pleased to host a virtual technology seminar with Illumina.
Presentation overview: For decades cancer methylation studies have provided insights into tumorigenic pathways and cancer progression. Now new solutions such as cell-free DNA methylation sequencing for ultrasensitive and non-invasive cancer detection and classification, and DNA methylation at single-cell resolution have emerged to meet the field's rapidly evolving needs. Additionally, methylation arrays minimize cost per sample and enable high-throughput quantitative interrogation of methylation sites across the genome.
In this seminar, we will review recent research that incorporates the latest DNA methylation approaches and introduce valuable tools that add another dimension to the study of cancer.
About the Speaker: Mike Gregory has supported genomics initiatives at the NIH for over 15 years. Gregory is currently the Sr. Sequencing Specialist at Illumina and supports all local federal government accounts. Prior to joining Illumina, Gregory was the Sequencing Production Group Leader at the NIH’s Intramural Sequencing Center (NISC) at the NHGRI.
Gregory holds a bachelor’s degree in biotechnology from James Madison University, and a master’s degree in biotechnology from Johns Hopkins University with a focus on assay development.
For questions about this seminar, please contact:
Liz Conner, Ph.D.
CCR Genomics Core
Webinar number:2317 518 2763
Webinar password: Please obtain your webinar password from your host.
DetailsOrganizerCCR Genomics CoreWhenWed, Jun 29, 2022 - 12:00 pm - 1:00 pmWhereOnline |
The CCR Genomics, Sequencing and Single Cell Analysis Core Facilities are pleased to host a virtual technology seminar with Illumina. Presentation overview: For decades cancer methylation studies have provided insights into tumorigenic pathways and cancer progression. Now new solutions such as cell-free DNA methylation sequencing for ultrasensitive and non-invasive cancer detection and classification, and DNA methylation at single-cell resolution have emerged to meet the field's rapidly evolving needs. Additionally, methylation arrays minimize cost per sample and enable high-throughput quantitative interrogation of methylation sites across the genome. In this seminar, we will review recent research that incorporates the latest DNA methylation approaches and introduce valuable tools that add another dimension to the study of cancer. About the Speaker: Mike Gregory has supported genomics initiatives at the NIH for over 15 years. Gregory is currently the Sr. Sequencing Specialist at Illumina and supports all local federal government accounts. Prior to joining Illumina, Gregory was the Sequencing Production Group Leader at the NIH’s Intramural Sequencing Center (NISC) at the NHGRI. Gregory holds a bachelor’s degree in biotechnology from James Madison University, and a master’s degree in biotechnology from Johns Hopkins University with a focus on assay development. For questions about this seminar, please contact: Liz Conner, Ph.D. CCR Genomics Core Webinar number:2317 518 2763 Webinar password: Please obtain your webinar password from your host. | 2022-06-29 12:00:00 | Online | Sequencing Technologies | Online | CCR Genomics Core | 0 | Illumina seminar: DNA Methylation NGS and Microarrays | |||
1033 |
Description
Experimental Design Considerations in Variant Analysis
Experimental Design Considerations in Variant Analysis
RegisterOrganizerBTEPWhenThu, Jun 30, 2022 - 2:00 pm - 4:00 pmWhereOnline Webinar |
Experimental Design Considerations in Variant Analysis Germline vs Somatic WGS vs WES Sample sizes and statistical power QC, variant annotation, and analysis considerations Beyond GATK! A survey of variant calling tools The actual Best Practices for variant calling Long read technology and germline variant calling Tumor vs tumor-normal: performance and considerations Structural variants · Long-read approaches for SV discovery/current WGS/WES Best Practices workflow Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m7a7e36713b391012d5d3b800c983fc2c | 2022-06-30 14:00:00 | Online Webinar | Online | Justin Lack (NIAID CBR),Keyur Talsania (Bioinformatics Analyst IV ABCS FNLCR) | BTEP | 0 | Variant Analysis: Experimental Design, Best Practices and Workflows | |||
592 |
Description
In this presentation, Drs. Hutson and Liu will provide a high-level overview of the data, software and model sharing capabilities and strategies developed as part of the Cancer Moonshot Immuno-Oncology Translational Network (IOTN) Data Management Resource Center (DMRC) and Drug Resistance Sensitivity Network (DRSN) Coordinating Center (CC) funded efforts. They will then transition the presentation to a specific set of common workflow language (CWL) software tools they developed to aid cancer researchers in terms of ...Read More
In this presentation, Drs. Hutson and Liu will provide a high-level overview of the data, software and model sharing capabilities and strategies developed as part of the Cancer Moonshot Immuno-Oncology Translational Network (IOTN) Data Management Resource Center (DMRC) and Drug Resistance Sensitivity Network (DRSN) Coordinating Center (CC) funded efforts. They will then transition the presentation to a specific set of common workflow language (CWL) software tools they developed to aid cancer researchers in terms of providing portable and reproducible data analysis workflows across different tools and computing environments. They will provide an overview of Rcwl, an R interface to CWL, which makes it easier to build CWL pipelines within R, and to enable scalable execution in a variety of computing environments, including local workstation, HPC and the cloud. Based on this work, they have developed ReUseData, which uses the CWL framework to standardize the data management for commonly used omics data resources. ReUseData provides curated and fully annotated data sets that are interoperable with workflow-based data analysis methods and promotes reproducibility, data reusability and cloud sharing.
Speakers:
Dr. Alan Hutson is Chair of Biostatistics and Bioinformatics at Roswell Park Comprehensive Cancer Center. A position he has held for 17 years. He is currently lead PI of the Cancer Moonshot Immuno-Oncology Translation Network (IOTN): Data Management and Resource-Sharing Center (DMRC) and is lead PI for the Drug Resistance Sensitivity Network (DRSN): Coordinating Center (CC). Dr. Hutson is the leader of an NCI-funded ovarian cancer SPORE (PI: Odunsi) biostatistics and biomedical informatics resource. He was Chair of Biostatistics at the University at Buffalo for 15 years, where he participated in multiple federally funded grants and founded the undergraduate and graduate programs in statistics, biostatistics, and bioinformatics and biostatistics. Prior to his tenure in Buffalo, Dr. Hutson was director of the informatics core within the University of Florida’s General Clinical Research Center (GCRC). Dr. Hutson is Full Professor of Oncology at Roswell Park, New York State NYSTAR Distinguished Professor with recognition of excellence in the field of bioinformatics, and Fellow of the American Statistical Association. He has over 250 publications spanning biomedical and biostatistical research and two monographs.
Dr. Qian Liu is an Assistant Professor in the Department of Biostatistics and Bioinformatics at Roswell Park Comprehensive Cancer Center. Dr. Liu received her PhD in Biostatistics from SUNY Buffalo and postdoc training in the Bioconductor Core Group. Dr. Liu is currently a CTSI Scholar with the Mentored Career Development Award sponsored by the NCATS, NIH. Dr. Liu’s research revolves around deciphering large cancer genomic data through the development of computational tools and bioinformatics software by integrating reproducible workflow frameworks and scalable cloud computing strategies.
DetailsOrganizerData Science Seminar SeriesWhenFri, Jul 08, 2022 - 12:00 pm - 1:00 pmWhereOnline |
In this presentation, Drs. Hutson and Liu will provide a high-level overview of the data, software and model sharing capabilities and strategies developed as part of the Cancer Moonshot Immuno-Oncology Translational Network (IOTN) Data Management Resource Center (DMRC) and Drug Resistance Sensitivity Network (DRSN) Coordinating Center (CC) funded efforts. They will then transition the presentation to a specific set of common workflow language (CWL) software tools they developed to aid cancer researchers in terms of providing portable and reproducible data analysis workflows across different tools and computing environments. They will provide an overview of Rcwl, an R interface to CWL, which makes it easier to build CWL pipelines within R, and to enable scalable execution in a variety of computing environments, including local workstation, HPC and the cloud. Based on this work, they have developed ReUseData, which uses the CWL framework to standardize the data management for commonly used omics data resources. ReUseData provides curated and fully annotated data sets that are interoperable with workflow-based data analysis methods and promotes reproducibility, data reusability and cloud sharing. Speakers: Dr. Alan Hutson is Chair of Biostatistics and Bioinformatics at Roswell Park Comprehensive Cancer Center. A position he has held for 17 years. He is currently lead PI of the Cancer Moonshot Immuno-Oncology Translation Network (IOTN): Data Management and Resource-Sharing Center (DMRC) and is lead PI for the Drug Resistance Sensitivity Network (DRSN): Coordinating Center (CC). Dr. Hutson is the leader of an NCI-funded ovarian cancer SPORE (PI: Odunsi) biostatistics and biomedical informatics resource. He was Chair of Biostatistics at the University at Buffalo for 15 years, where he participated in multiple federally funded grants and founded the undergraduate and graduate programs in statistics, biostatistics, and bioinformatics and biostatistics. Prior to his tenure in Buffalo, Dr. Hutson was director of the informatics core within the University of Florida’s General Clinical Research Center (GCRC). Dr. Hutson is Full Professor of Oncology at Roswell Park, New York State NYSTAR Distinguished Professor with recognition of excellence in the field of bioinformatics, and Fellow of the American Statistical Association. He has over 250 publications spanning biomedical and biostatistical research and two monographs. Dr. Qian Liu is an Assistant Professor in the Department of Biostatistics and Bioinformatics at Roswell Park Comprehensive Cancer Center. Dr. Liu received her PhD in Biostatistics from SUNY Buffalo and postdoc training in the Bioconductor Core Group. Dr. Liu is currently a CTSI Scholar with the Mentored Career Development Award sponsored by the NCATS, NIH. Dr. Liu’s research revolves around deciphering large cancer genomic data through the development of computational tools and bioinformatics software by integrating reproducible workflow frameworks and scalable cloud computing strategies. | 2022-07-08 12:00:00 | Online | Data Science | Online | Data Science Seminar Series | 0 | July Data Sharing and Reuse Seminar | |||
595 |
Description
Matlab on the Biowulf Cluster
Description: An introduction to Matlab on the Biowulf cluster. This course will cover: (1) brief review of the Biowulf cluster; (2) running Matlab interactively; (3) running Matlab scripts as batch jobs using sbatch and swarm; and (4) Limits, pitfalls and caveats.
Expected knowledge: Basic knowledge of Matlab. Familiarity with the Linux/Unix command line.
Instructor: Antonio Ulloa (NIH HPC Staff)
Please contact staff@hpc.nih.gov ...Read More
Matlab on the Biowulf Cluster
Description: An introduction to Matlab on the Biowulf cluster. This course will cover: (1) brief review of the Biowulf cluster; (2) running Matlab interactively; (3) running Matlab scripts as batch jobs using sbatch and swarm; and (4) Limits, pitfalls and caveats.
Expected knowledge: Basic knowledge of Matlab. Familiarity with the Linux/Unix command line.
Instructor: Antonio Ulloa (NIH HPC Staff)
Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems
DetailsOrganizerHPC BiowulfWhenMon, Jul 11, 2022 - 11:00 am - 1:00 pmWhereOnline |
Matlab on the Biowulf Cluster Description: An introduction to Matlab on the Biowulf cluster. This course will cover: (1) brief review of the Biowulf cluster; (2) running Matlab interactively; (3) running Matlab scripts as batch jobs using sbatch and swarm; and (4) Limits, pitfalls and caveats. Expected knowledge: Basic knowledge of Matlab. Familiarity with the Linux/Unix command line. Instructor: Antonio Ulloa (NIH HPC Staff) Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems | 2022-07-11 11:00:00 | Online | Online | HPC Biowulf | 0 | Matlab on the Biowulf Cluster | ||||
596 |
Description
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a "point and click" approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing ...Read More
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a "point and click" approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data.
Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; identify variants; visualize the exome sequencing data and variants.
DetailsOrganizerNIH Training LibraryWhenWed, Jul 13, 2022 - 1:00 pm - 4:00 pmWhereOnline |
This training will provide an introduction to exome sequencing data analysis followed by tutorials showing the use of exome analysis workflow and preparing participants to independently run basic exome analysis for variant detection using a "point and click" approach on a public Galaxy platform. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. Participants will have a chance to: run quality control check on sequencing data; align the sequencing reads to a reference genome; generate alignment statistics and check mapping quality; identify variants; visualize the exome sequencing data and variants. | 2022-07-13 13:00:00 | Online | Genomics | Online | NIH Training Library | 0 | Exome Sequencing Data Analysis | |||
1025 |
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Nicholas Navin, Ph.D. Professor, Department of Genetics, Division of Basic Science Research, The University of Texas MD Anderson Cancer Center Grady F. Saunders, Ph.D. Distinguished Professorship for Molecular Biology, Department of Genetics, The University of Texas MD Anderson Cancer Center Professor, The University of Texas, MD Anderson Cancer Center, UT Health Graduate School of Biomedical Sciences Director of the CPRIT Single Cell Genomic Center Co-Director, Advanced Technology Genomics Core at The University of Texas MD Anderson Cancer Center The efforts of our laboratory are split evenly between experimental and computational biology. We develop new experimental methods to sequence single cells and isolate rare subpopulations and develop new analytical approaches to detect variants and apply statistical methods to these data sets. We focus mainly on breast cancer to understand the role of clonal diversity in the evolution of invasion, metastasis and response to chemotherapy. We are also using these tools to study rare tumor cell subpopulations including circulating tumor cells and cancer stem cells. Our goal is to understand the role of clonal diversity in tumor evolution so that we can exploit this diversity for therapeutic vulnerabilities and improve diagnostic tools and the early detection of cancer. We fully expect that applying these tools to human patients will lead to reduced morbidity in breast cancer. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m3d6c312fd01c84f8c197dbe3628fd3fe Meeting number: 2302 953 7047 Password: JPjyP4YT@32 Join by video system Dial 23029537047@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2302 953 7047 | 2022-07-14 13:00:00 | Online Webinar | Single Cell RNA-seq | Online | Nicholas Navin (MD Anderson Cancer Center) | BTEP | 0 | Nicholas Navin: Decoding Breast Cancer Progression with Single Cell Genomics | ||
1051 |
Distinguished Speakers Seminar SeriesDescriptionThe efforts of our laboratory are split evenly between experimental and computational biology. We develop new experimental methods to sequence single cells and isolate rare subpopulations and develop new analytical approaches to detect variants and apply statistical methods to these data sets. We focus mainly on breast cancer to understand the role of clonal diversity in the evolution of invasion, metastasis and response to chemotherapy. We are also using these tools to study rare ...Read More The efforts of our laboratory are split evenly between experimental and computational biology. We develop new experimental methods to sequence single cells and isolate rare subpopulations and develop new analytical approaches to detect variants and apply statistical methods to these data sets. We focus mainly on breast cancer to understand the role of clonal diversity in the evolution of invasion, metastasis and response to chemotherapy. We are also using these tools to study rare tumor cell subpopulations including circulating tumor cells and cancer stem cells. Our goal is to understand the role of clonal diversity in tumor evolution so that we can exploit this diversity for therapeutic vulnerabilities and improve diagnostic tools and the early detection of cancer. We fully expect that applying these tools to human patients will lead to reduced morbidity in breast cancer. DetailsOrganizerBTEPWhenThu, Jul 14, 2022 - 1:00 pm - 2:00 pmWhereOnline |
The efforts of our laboratory are split evenly between experimental and computational biology. We develop new experimental methods to sequence single cells and isolate rare subpopulations and develop new analytical approaches to detect variants and apply statistical methods to these data sets. We focus mainly on breast cancer to understand the role of clonal diversity in the evolution of invasion, metastasis and response to chemotherapy. We are also using these tools to study rare tumor cell subpopulations including circulating tumor cells and cancer stem cells. Our goal is to understand the role of clonal diversity in tumor evolution so that we can exploit this diversity for therapeutic vulnerabilities and improve diagnostic tools and the early detection of cancer. We fully expect that applying these tools to human patients will lead to reduced morbidity in breast cancer. | 2022-07-14 13:00:00 | Any | Online | Nicholas Navin (MD Anderson Cancer Center) | BTEP | 1 | Decoding Breast Cancer Progression with Single Cell Genomics | |||
599 |
Description
Accelerate your discovery with the leading platform for single-cell flow cytometry analysis
Topics to be covered:
Accelerate your discovery with the leading platform for single-cell flow cytometry analysis
Topics to be covered:
DetailsOrganizerCBIITWhenFri, Jul 15, 2022 - 10:00 am - 12:30 pmWhereOnline |
Accelerate your discovery with the leading platform for single-cell flow cytometry analysis Topics to be covered: Adding data File formats Using groups Annotation Making gates Making tables Using the layout editor for graphics Compensation Traditional compensation + Autospill compensation | 2022-07-15 10:00:00 | Online | Single Cell Technologies | Online | CBIIT | 0 | Introduction to FlowJo™ Cytometry Title | |||
1034 |
Description
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m62ed494c9292a59c0f158b2c60f08263
Join us for an introduction to bioinformatics resources for NCI CCR researchers. We will look at the information available on the BTEP website, such as the NIH Bioinformatics Calendar, training opportunities, and upcoming events. We will ...Read More
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m62ed494c9292a59c0f158b2c60f08263
Join us for an introduction to bioinformatics resources for NCI CCR researchers. We will look at the information available on the BTEP website, such as the NIH Bioinformatics Calendar, training opportunities, and upcoming events. We will show new website pages with in-depth content to help scientists understand and utilize the resources available. We will also discuss the high-performance Unix cluster Biowulf, and point-and-click graphical user interface software for Next-Gen sequence analysis (Partek Flow, Qiagen Ingenuity Pathway Analysis). You'll find out about available workflows, cloud resources, and NCI sequencing cores. We'll finish by looking at other NIH resources available to NCI CCR researchers and answering any questions you may have about the information
Meeting number:
2319 610 3784
Password:
eWTvJfb2$83
Join by video system
Dial 23196103784@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in number (US/Canada)
.
RegisterOrganizerBTEPWhenTue, Jul 26, 2022 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m62ed494c9292a59c0f158b2c60f08263 Join us for an introduction to bioinformatics resources for NCI CCR researchers. We will look at the information available on the BTEP website, such as the NIH Bioinformatics Calendar, training opportunities, and upcoming events. We will show new website pages with in-depth content to help scientists understand and utilize the resources available. We will also discuss the high-performance Unix cluster Biowulf, and point-and-click graphical user interface software for Next-Gen sequence analysis (Partek Flow, Qiagen Ingenuity Pathway Analysis). You'll find out about available workflows, cloud resources, and NCI sequencing cores. We'll finish by looking at other NIH resources available to NCI CCR researchers and answering any questions you may have about the information Meeting number: 2319 610 3784 Password: eWTvJfb2$83 Join by video system Dial 23196103784@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) . | 2022-07-26 13:00:00 | Online Webinar | Online | Amy Stonelake (BTEP) | BTEP | 0 | BTEP: Introduction to Bioinformatics Resources | |||
602 |
Description
Many recent studies highlighted the improved capability of long-read sequencing to detect structural variation in the human genome. For example, these technologies was also recently utilized to produce the first complete assembly of the human genome by the Telomere-to-Telomere consortium. Further, Human Pangenome Reference Consortium has recently released 47 nearly-complete haplotype-resolved human genomes from diverse backgrounds.
A few recent studies have utilized long-read sequencing to discover complex genomic changes such as chromothripsis or ecDNA formation in ...Read More
Many recent studies highlighted the improved capability of long-read sequencing to detect structural variation in the human genome. For example, these technologies was also recently utilized to produce the first complete assembly of the human genome by the Telomere-to-Telomere consortium. Further, Human Pangenome Reference Consortium has recently released 47 nearly-complete haplotype-resolved human genomes from diverse backgrounds.
A few recent studies have utilized long-read sequencing to discover complex genomic changes such as chromothripsis or ecDNA formation in cancer patients. However the broad application of the technology is facing additional hurdles, such as patient sample availability, high-molecular weight DNA extraction, tumor heterogeneity and purity among others. Compared to short-read sequencing, there are little-to-no existing computational approaches to analyze cancer long-read data either.
In this discussion, I will summarize the recent successes of long-read sequencing. Then, I will give my perspective on the promises and challenges of the application of long reads to cancer genomes and our plans to overcome them.
Bio: Before joining the Cancer Data Science Laboratory in January 2022, Dr. Mikhail Kolmogorov was a postdoctoral fellow at the University of California (UC) Santa Cruz, supervised by Dr. Benedict Paten. Prior to that, he was a postdoctoral fellow at the UC San Diego, co-supervised by Dr. Rob Knight and Dr. Pavel Pevzner. Mikhail completed his Ph.D. in September 2019 in Computer Science from UC San Diego, under the mentorship of Dr. Pavel Pevzner. He received his M.Sc. in bioinformatics from St. Petersburg University of the Russian Academy of Sciences.
DetailsOrganizerCDSLWhenWed, Jul 27, 2022 - 11:00 am - 12:00 pmWhereOnline |
Many recent studies highlighted the improved capability of long-read sequencing to detect structural variation in the human genome. For example, these technologies was also recently utilized to produce the first complete assembly of the human genome by the Telomere-to-Telomere consortium. Further, Human Pangenome Reference Consortium has recently released 47 nearly-complete haplotype-resolved human genomes from diverse backgrounds. A few recent studies have utilized long-read sequencing to discover complex genomic changes such as chromothripsis or ecDNA formation in cancer patients. However the broad application of the technology is facing additional hurdles, such as patient sample availability, high-molecular weight DNA extraction, tumor heterogeneity and purity among others. Compared to short-read sequencing, there are little-to-no existing computational approaches to analyze cancer long-read data either. In this discussion, I will summarize the recent successes of long-read sequencing. Then, I will give my perspective on the promises and challenges of the application of long reads to cancer genomes and our plans to overcome them. Bio: Before joining the Cancer Data Science Laboratory in January 2022, Dr. Mikhail Kolmogorov was a postdoctoral fellow at the University of California (UC) Santa Cruz, supervised by Dr. Benedict Paten. Prior to that, he was a postdoctoral fellow at the UC San Diego, co-supervised by Dr. Rob Knight and Dr. Pavel Pevzner. Mikhail completed his Ph.D. in September 2019 in Computer Science from UC San Diego, under the mentorship of Dr. Pavel Pevzner. He received his M.Sc. in bioinformatics from St. Petersburg University of the Russian Academy of Sciences. | 2022-07-27 11:00:00 | Online | Cancer,Sequencing Technologies | Online | CDSL | 0 | Profiling of structural variants and complex rearrangements in cancer genome using long-read sequencing | |||
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DescriptionThis July, the CGC Webinar Series features a talk by Dr. Nadia Lanman from Purdue University. In this upcoming webinar, Dr. Lanman will present her research studying human gliomas using dog as a model organism. Spontaneous gliomas in dogs are being used as a translational model for human glioma, but molecular characterization is not yet complete. This work utilizes publicly available datasets to characterize the molecular characteristics of canine gliomas. ...Read More This July, the CGC Webinar Series features a talk by Dr. Nadia Lanman from Purdue University. In this upcoming webinar, Dr. Lanman will present her research studying human gliomas using dog as a model organism. Spontaneous gliomas in dogs are being used as a translational model for human glioma, but molecular characterization is not yet complete. This work utilizes publicly available datasets to characterize the molecular characteristics of canine gliomas. Dr. Lanman shows how key canonical pathways altered in human gliomas are likewise altered in canine gliomas, and how the canine tumor microenvironment (TME), like that in humans, appears to be immunosuppressive. Gene expression profiles of astrocytomas and oligodendrogliomas show alterations in a number of signaling pathways, including several immune-related and TME-specific pathways. Dr. Lanman and her team will show how they developed a Naïve Bayes classifier that accurately classifies canine glioma pathologies based on gene expression profiles alone. Dr. Lanman is a research assistant professor in the Department of Comparative Pathobiology at Purdue University. In 2015, Dr. Lanman took a position with the Purdue University Center for Cancer Research, directing the Computational Genomics Shared Resource (CG-SR) and managing the Purdue side of the Collaborative Core for Cancer Bioinformatics (C3B), a joint bioinformatics core shared between IU and Purdue. Dr. Lanman’s work at the cancer center focuses on managing the bioinformatics core, training, and data analysis. Dr. Lanman’s research is focused on utilizing large genomics datasets to expand our knowledge of the molecular basis of cancer as well as immune and inflammatory diseases. Dr. Lanman is particularly interested in data integration and in developing methods for datasets that leverage temporal or spatial resolution.DetailsOrganizerCancer Genomics Cloud / 7 BridgesWhenWed, Jul 27, 2022 - 2:00 pm - 3:00 pmWhereOnline |
This July, the CGC Webinar Series features a talk by Dr. Nadia Lanman from Purdue University. In this upcoming webinar, Dr. Lanman will present her research studying human gliomas using dog as a model organism. Spontaneous gliomas in dogs are being used as a translational model for human glioma, but molecular characterization is not yet complete. This work utilizes publicly available datasets to characterize the molecular characteristics of canine gliomas. Dr. Lanman shows how key canonical pathways altered in human gliomas are likewise altered in canine gliomas, and how the canine tumor microenvironment (TME), like that in humans, appears to be immunosuppressive. Gene expression profiles of astrocytomas and oligodendrogliomas show alterations in a number of signaling pathways, including several immune-related and TME-specific pathways. Dr. Lanman and her team will show how they developed a Naïve Bayes classifier that accurately classifies canine glioma pathologies based on gene expression profiles alone. Dr. Lanman is a research assistant professor in the Department of Comparative Pathobiology at Purdue University. In 2015, Dr. Lanman took a position with the Purdue University Center for Cancer Research, directing the Computational Genomics Shared Resource (CG-SR) and managing the Purdue side of the Collaborative Core for Cancer Bioinformatics (C3B), a joint bioinformatics core shared between IU and Purdue. Dr. Lanman’s work at the cancer center focuses on managing the bioinformatics core, training, and data analysis. Dr. Lanman’s research is focused on utilizing large genomics datasets to expand our knowledge of the molecular basis of cancer as well as immune and inflammatory diseases. Dr. Lanman is particularly interested in data integration and in developing methods for datasets that leverage temporal or spatial resolution. | 2022-07-27 14:00:00 | Online | Cancer,Cloud | Online | Cancer Genomics Cloud / 7 Bridges | 0 | A Comparative Analysis of the Molecular Characteristics of Canine and Human Gliomas | |||
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Description
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, ...Read More
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives.
Speaker: Andrey Fedorov, Ph.D.Exit Disclaimer, Brigham and Women's Hospital
DetailsOrganizerCancer MoonshotWhenThu, Jul 28, 2022 - 12:00 pm - 1:00 pmWhereOnline |
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives. Speaker: Andrey Fedorov, Ph.D.Exit Disclaimer, Brigham and Women's Hospital | 2022-07-28 12:00:00 | Online | Image Analysis | Online | Cancer Moonshot | 0 | NCI Imaging Data Commons, Part of the Cancer Research Data Commons | |||
609 |
Description
Abstract: Liver cancer, comprising mainly hepatocellular carcinoma (HCC) and intrahepatic cholangiocarcinoma (iCCA), is one of the deadliest cancers in the world, with a five-year survival rate less than 20%. Immunotherapy has emerged as a promising treatment strategy against cancer. However, the efficacy in liver cancer is limited. It is known that less than 20% of HCC patients and fewer iCCA patients respond to immunotherapy, but it is unclear why some patients respond while others do ...Read More
Abstract: Liver cancer, comprising mainly hepatocellular carcinoma (HCC) and intrahepatic cholangiocarcinoma (iCCA), is one of the deadliest cancers in the world, with a five-year survival rate less than 20%. Immunotherapy has emerged as a promising treatment strategy against cancer. However, the efficacy in liver cancer is limited. It is known that less than 20% of HCC patients and fewer iCCA patients respond to immunotherapy, but it is unclear why some patients respond while others do not. Herein, we performed single-cell transcriptomic profiling of a prospective cohort of liver cancer patients who were enrolled at the NIH Clinical Center for immune checkpoint inhibition clinical trials. We developed an algorithm called Calculating Aggressiveness via Single Cell Analysis During Evolution (CASCADE), a novel tool to determine the evolution of a tumor ecosystem in response to treatment. Using this method, we were able to classify and validate tumor evolution and link it to patient outcome.
Bio: Mahler Revsine is a CRTA postbaccalaureate fellow in the Laboratory of Human Carcinogenesis, CCR, NCI. He is supported by the NCI CCR Excellence in Postdoctoral Research Transition Award received by Dr. Lichun Ma. Under the supervision of Dr. Lichun Ma and Dr. Xin Wei Wang, Mahler mainly focuses on understanding liver tumor evolution using a single-cell approach. He graduated from the University of North Carolina in 2021 with bachelor’s degrees in both computer science and biology.
DetailsOrganizerCDSLWhenWed, Aug 03, 2022 - 11:00 am - 12:00 pmWhereOnline |
Abstract: Liver cancer, comprising mainly hepatocellular carcinoma (HCC) and intrahepatic cholangiocarcinoma (iCCA), is one of the deadliest cancers in the world, with a five-year survival rate less than 20%. Immunotherapy has emerged as a promising treatment strategy against cancer. However, the efficacy in liver cancer is limited. It is known that less than 20% of HCC patients and fewer iCCA patients respond to immunotherapy, but it is unclear why some patients respond while others do not. Herein, we performed single-cell transcriptomic profiling of a prospective cohort of liver cancer patients who were enrolled at the NIH Clinical Center for immune checkpoint inhibition clinical trials. We developed an algorithm called Calculating Aggressiveness via Single Cell Analysis During Evolution (CASCADE), a novel tool to determine the evolution of a tumor ecosystem in response to treatment. Using this method, we were able to classify and validate tumor evolution and link it to patient outcome. Bio: Mahler Revsine is a CRTA postbaccalaureate fellow in the Laboratory of Human Carcinogenesis, CCR, NCI. He is supported by the NCI CCR Excellence in Postdoctoral Research Transition Award received by Dr. Lichun Ma. Under the supervision of Dr. Lichun Ma and Dr. Xin Wei Wang, Mahler mainly focuses on understanding liver tumor evolution using a single-cell approach. He graduated from the University of North Carolina in 2021 with bachelor’s degrees in both computer science and biology. | 2022-08-03 11:00:00 | Online | Single Cell Technologies | Online | CDSL | 0 | Single-Cell Dissection of Liver Tumor Evolution in Response to Immunotherapy | |||
597 |
Description
This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow and preparing participants to independently run basic ChIP-seq analysis for peak calling using a "point and click" approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP-seq data. Participants will have a chance to: run quality control on ChIP-seq data; map raw reads to a reference genome; generate alignment statistics and ...Read More
This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow and preparing participants to independently run basic ChIP-seq analysis for peak calling using a "point and click" approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP-seq data. Participants will have a chance to: run quality control on ChIP-seq data; map raw reads to a reference genome; generate alignment statistics and check mapping quality; call peaks using MACS; annotate peaks; visualize the enriched regions.
DetailsOrganizerNIH Training LibraryWhenWed, Aug 03, 2022 - 1:00 pm - 4:00 pmWhereOnline |
This training will provide an introduction to ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow and preparing participants to independently run basic ChIP-seq analysis for peak calling using a "point and click" approach on Galaxy platform. The hands-on exercise will run on a Galaxy platform using ChIP-seq data. Participants will have a chance to: run quality control on ChIP-seq data; map raw reads to a reference genome; generate alignment statistics and check mapping quality; call peaks using MACS; annotate peaks; visualize the enriched regions. | 2022-08-03 13:00:00 | Online | Genomics | Online | NIH Training Library | 0 | ChIP Sequencing Data Analysis | |||
611 |
Description
For our next CDSL webinar we will have two fellows’ talks from Dr. Zisha Zhong and Arati Rajeevan.
Zisha’s talk details:
Title: Multi-task Feature Learning to train Interpretable Encoders on Histopathology Images
Digital pathology images contain very detailed information of tumor micro-environment (TME) at a micrometer resolution. Existing research on digital pathology images focuses on either cancer diagnosis or prognosis, or morphological segmentation. However, so far as we ...Read More
For our next CDSL webinar we will have two fellows’ talks from Dr. Zisha Zhong and Arati Rajeevan.
Zisha’s talk details:
Title: Multi-task Feature Learning to train Interpretable Encoders on Histopathology Images
Digital pathology images contain very detailed information of tumor micro-environment (TME) at a micrometer resolution. Existing research on digital pathology images focuses on either cancer diagnosis or prognosis, or morphological segmentation. However, so far as we know, little frameworks exist to perform differential analysis between images from diverse groups. We developed a multitask multi-instance framework for differential analysis of digital pathology images of breast cancer groups. We have developed a Multitask framework to learn low-dimensional representations of Hematoxylin and Eosin (H&E) images at patch-level and image-level. We utilize a convolution neural network (CNN) to obtain a patch-level representation and a gated-attention mechanism to aggregate patch-level representations to get an image-level representation. Multitask-HENet is trained by predicting numerous image-level annotations, including survival outcome, stage, molecular and immune subtype, gene expression, cytotoxic lymphocytes level, and tumor immune dysfunction and exclusion scores under a multitasking framework. We train the model on TCGA-BRCA H&E images and annotations along with the patient-matched annotations from other studies. By performing a diverse set of image-level tasks through a shared patch-encoder, the feature network exhibits the distinction among tumor, stroma, lymphocyte, necrosis, fat, and other tissue types.
Bio: Zisha Zhong is a postdoctoral fellow in the Cancer Data Science Laboratory (CDSL), National Cancer Institute (NCI). Under the supervision of Dr. Peng Jiang, Zisha mainly focuses on understanding biomedical images using machine learning approaches. He received a B.E. degree from Central South University (CSU) in 2010 and a Ph.D. degree from the National Laboratory of Pattern Recognition (NLPR), Institute of Automation, Chinese Academy of Sciences (CASIA) in 2017 under the supervision of Dr. Chunhong Pan and Dr. Bin Fan. From March 2017 to July 2018, he worked as a Postdoc on medical image analysis at the University of Iowa Health Care (UIHC) under the supervision of Dr. Xiaodong Wu and Dr. Yusung Kim. He has broad research interests in pattern recognition, machine learning, and image analysis.
Arati’s talk details:
Title: Epigenomic Oncofetal Reprogramming Across Cancer Types
Developmental biologists have long hypothesized that tumorigenesis involves a reactivation of embryonic developmental programs that would normally be dormant in healthy tissues. For many years it has been difficult to test this hypothesis due to the lack of genomic sequencing data across tumor and tissue types, but through recent technological advances it is now possible. To answer the question of whether genomic regions necessary in development are re-activated in cancer, I obtained epigenomic and transcriptomic data from several tissues and selected genomic regions based on trends in their expression profiles across fetal, adult, and tumor tissues. I found that the genes that are active in both development and cancer are prognostic indicators of survival, have been experimentally proven to increase cell proliferation, and are functionally linked to enhancers that are themselves re-activated. These genes make attractive targets for cancer therapies, as altering their function may reduce the severity of different types of cancers.
Bio: Arati is a post-baccalaureate fellow in Dr. Sridhar Hannenhalli’s lab in the CDSL. She graduated from Carnegie Mellon University in 2019 with a B.S. in Biological Sciences. Her research interests include exploring the effect of CREs and other noncoding regions on cancer progression and better understanding the origins of cancer to improve diagnostics and treatment.
DetailsOrganizerCDSLWhenWed, Aug 10, 2022 - 11:00 am - 12:00 pmWhereOnline |
For our next CDSL webinar we will have two fellows’ talks from Dr. Zisha Zhong and Arati Rajeevan. Zisha’s talk details: Title: Multi-task Feature Learning to train Interpretable Encoders on Histopathology Images Digital pathology images contain very detailed information of tumor micro-environment (TME) at a micrometer resolution. Existing research on digital pathology images focuses on either cancer diagnosis or prognosis, or morphological segmentation. However, so far as we know, little frameworks exist to perform differential analysis between images from diverse groups. We developed a multitask multi-instance framework for differential analysis of digital pathology images of breast cancer groups. We have developed a Multitask framework to learn low-dimensional representations of Hematoxylin and Eosin (H&E) images at patch-level and image-level. We utilize a convolution neural network (CNN) to obtain a patch-level representation and a gated-attention mechanism to aggregate patch-level representations to get an image-level representation. Multitask-HENet is trained by predicting numerous image-level annotations, including survival outcome, stage, molecular and immune subtype, gene expression, cytotoxic lymphocytes level, and tumor immune dysfunction and exclusion scores under a multitasking framework. We train the model on TCGA-BRCA H&E images and annotations along with the patient-matched annotations from other studies. By performing a diverse set of image-level tasks through a shared patch-encoder, the feature network exhibits the distinction among tumor, stroma, lymphocyte, necrosis, fat, and other tissue types. Bio: Zisha Zhong is a postdoctoral fellow in the Cancer Data Science Laboratory (CDSL), National Cancer Institute (NCI). Under the supervision of Dr. Peng Jiang, Zisha mainly focuses on understanding biomedical images using machine learning approaches. He received a B.E. degree from Central South University (CSU) in 2010 and a Ph.D. degree from the National Laboratory of Pattern Recognition (NLPR), Institute of Automation, Chinese Academy of Sciences (CASIA) in 2017 under the supervision of Dr. Chunhong Pan and Dr. Bin Fan. From March 2017 to July 2018, he worked as a Postdoc on medical image analysis at the University of Iowa Health Care (UIHC) under the supervision of Dr. Xiaodong Wu and Dr. Yusung Kim. He has broad research interests in pattern recognition, machine learning, and image analysis. Arati’s talk details: Title: Epigenomic Oncofetal Reprogramming Across Cancer Types Developmental biologists have long hypothesized that tumorigenesis involves a reactivation of embryonic developmental programs that would normally be dormant in healthy tissues. For many years it has been difficult to test this hypothesis due to the lack of genomic sequencing data across tumor and tissue types, but through recent technological advances it is now possible. To answer the question of whether genomic regions necessary in development are re-activated in cancer, I obtained epigenomic and transcriptomic data from several tissues and selected genomic regions based on trends in their expression profiles across fetal, adult, and tumor tissues. I found that the genes that are active in both development and cancer are prognostic indicators of survival, have been experimentally proven to increase cell proliferation, and are functionally linked to enhancers that are themselves re-activated. These genes make attractive targets for cancer therapies, as altering their function may reduce the severity of different types of cancers. Bio: Arati is a post-baccalaureate fellow in Dr. Sridhar Hannenhalli’s lab in the CDSL. She graduated from Carnegie Mellon University in 2019 with a B.S. in Biological Sciences. Her research interests include exploring the effect of CREs and other noncoding regions on cancer progression and better understanding the origins of cancer to improve diagnostics and treatment. | 2022-08-10 11:00:00 | Online | Image Analysis | Online | CDSL | 0 | Multi-task Feature Learning to train Interpretable Encoders on Histopathology Images. And Epigenomic Oncofetal Reprogramming Across Cancer Types | |||
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Description
The NIH Office of Science Policy (OSP) and the Office of Extramural Research (OER) invite you to join them for an engaging and interactive webinar focused on the new DMS policy which goes into effect on January 25, 2023. In this webinar, you will learn about DMS policy expectations, the applicability of the policy, how to prepare a Data Management and Sharing Plan, and considerations for sharing data responsibly. Don't miss this valuable opportunity to hear from ...Read More
The NIH Office of Science Policy (OSP) and the Office of Extramural Research (OER) invite you to join them for an engaging and interactive webinar focused on the new DMS policy which goes into effect on January 25, 2023. In this webinar, you will learn about DMS policy expectations, the applicability of the policy, how to prepare a Data Management and Sharing Plan, and considerations for sharing data responsibly. Don't miss this valuable opportunity to hear from policy experts and get your questions answered.
Make plans to also attend Part 2 of this DMS Webinar Series, "Diving Deeper into the NIH Data Management and Sharing Policy." Register separately at https://bit.ly/Diving-Deeper-Into-DMS-Policy.
RESOURCES: Check out the latest DMS policy information, resources, and FAQs at sharing.nih.gov. This event will be recorded.
SHARE YOUR QUESTIONS ABOUT THE POLICY: Use the optional “Questions & Comments” box below if you have a DMS policy or process question that you would like answered either in the presentation or during the live Q&A.
QUESTIONS ABOUT THIS WEBINAR: Email the NIH OER Communications Team at OER@od.nih.gov.
ACCESSIBILITY: We strive to host inclusive, accessible events that enable all individuals to engage and participate fully. All presentations will include real-time closed captioning and ASL interpreters. To request additional accommodations or for inquiries about accessibility, please contact OER@od.nih.gov at least 3 business days before the event.
DetailsOrganizerOffice of Science Policy (OSP)WhenThu, Aug 11, 2022 - 1:30 pm - 3:00 pmWhereOnline |
The NIH Office of Science Policy (OSP) and the Office of Extramural Research (OER) invite you to join them for an engaging and interactive webinar focused on the new DMS policy which goes into effect on January 25, 2023. In this webinar, you will learn about DMS policy expectations, the applicability of the policy, how to prepare a Data Management and Sharing Plan, and considerations for sharing data responsibly. Don't miss this valuable opportunity to hear from policy experts and get your questions answered. Make plans to also attend Part 2 of this DMS Webinar Series, "Diving Deeper into the NIH Data Management and Sharing Policy." Register separately at https://bit.ly/Diving-Deeper-Into-DMS-Policy. RESOURCES: Check out the latest DMS policy information, resources, and FAQs at sharing.nih.gov. This event will be recorded. SHARE YOUR QUESTIONS ABOUT THE POLICY: Use the optional “Questions & Comments” box below if you have a DMS policy or process question that you would like answered either in the presentation or during the live Q&A. QUESTIONS ABOUT THIS WEBINAR: Email the NIH OER Communications Team at OER@od.nih.gov. ACCESSIBILITY: We strive to host inclusive, accessible events that enable all individuals to engage and participate fully. All presentations will include real-time closed captioning and ASL interpreters. To request additional accommodations or for inquiries about accessibility, please contact OER@od.nih.gov at least 3 business days before the event. | 2022-08-11 13:30:00 | Online | Data Management | Online | Office of Science Policy (OSP) | 0 | A Conversation with NIH: Implementing the New Data Management and Sharing Policy | |||
610 |
Description
The NIH-funded International epidemiology Databases to Evaluate AIDS (IeDEA) consortium is a global HIV observational research network with seven geographic regions and over 350 participating HIV care and treatment clinics. The data scientists and data managers of IeDEA established the Harmonist Project to develop informatics-driven methodologies, data standards, and tools to catalyze IeDEA data sharing and scientific collaboration. In this presentation, Drs. Duda and Lewis will share the process and outcomes and demos of generalizable tools ...Read More
The NIH-funded International epidemiology Databases to Evaluate AIDS (IeDEA) consortium is a global HIV observational research network with seven geographic regions and over 350 participating HIV care and treatment clinics. The data scientists and data managers of IeDEA established the Harmonist Project to develop informatics-driven methodologies, data standards, and tools to catalyze IeDEA data sharing and scientific collaboration. In this presentation, Drs. Duda and Lewis will share the process and outcomes and demos of generalizable tools built on REDCap and R Shiny. They will also present ongoing adaptations of the software with research partners, and potential uses for other large observational research networks.
About the Speakers:
Stephany Duda, Ph.D., is an Associate Professor of Biomedical Informatics in the School of Medicine at Vanderbilt University. Her work focuses on clinical research informatics and global health informatics, particularly issues in data capture, data quality, and international observational databases. She has developed the NIAID-funded Harmonist Project to support data sharing, data quality control, and research portfolio coordination for international research consortia.
Judith Lewis, Ph.D., is a biomedical engineer whose past research focused on biomedical instrumentation, image analysis, and interactive, image guided surgery. She is now applying those engineering design principles to the development of reproducible bioinformatics workflows for data quality and report generation in international observational research networks.
DetailsOrganizerData Sharing and Reuse Seminar SeriesWhenFri, Aug 12, 2022 - 12:00 pm - 1:00 pmWhereOnline |
The NIH-funded International epidemiology Databases to Evaluate AIDS (IeDEA) consortium is a global HIV observational research network with seven geographic regions and over 350 participating HIV care and treatment clinics. The data scientists and data managers of IeDEA established the Harmonist Project to develop informatics-driven methodologies, data standards, and tools to catalyze IeDEA data sharing and scientific collaboration. In this presentation, Drs. Duda and Lewis will share the process and outcomes and demos of generalizable tools built on REDCap and R Shiny. They will also present ongoing adaptations of the software with research partners, and potential uses for other large observational research networks. About the Speakers: Stephany Duda, Ph.D., is an Associate Professor of Biomedical Informatics in the School of Medicine at Vanderbilt University. Her work focuses on clinical research informatics and global health informatics, particularly issues in data capture, data quality, and international observational databases. She has developed the NIAID-funded Harmonist Project to support data sharing, data quality control, and research portfolio coordination for international research consortia. Judith Lewis, Ph.D., is a biomedical engineer whose past research focused on biomedical instrumentation, image analysis, and interactive, image guided surgery. She is now applying those engineering design principles to the development of reproducible bioinformatics workflows for data quality and report generation in international observational research networks. | 2022-08-12 12:00:00 | Online | Data Science | Online | Data Sharing and Reuse Seminar Series | 0 | Harmonist/IeDEA: Designing Consortium Tools for Collaboration and Data Sharing | |||
614 |
Description
The Gabriella Miller Kids First Pediatric Research Program (Kids First) is an NIH Common Fund program focusing on the biology of childhood cancer and structural birth defects. The program created the Gabriella Miller Kids First Data Resource, which includes the Kids First Portal, a cloud platform and other tools to foster analysis and collaboration. During this course, participants will learn some simple rules, dubbed Elements of Style, for analyzing large-scale datasets, such as genomic and ...Read More
The Gabriella Miller Kids First Pediatric Research Program (Kids First) is an NIH Common Fund program focusing on the biology of childhood cancer and structural birth defects. The program created the Gabriella Miller Kids First Data Resource, which includes the Kids First Portal, a cloud platform and other tools to foster analysis and collaboration. During this course, participants will learn some simple rules, dubbed Elements of Style, for analyzing large-scale datasets, such as genomic and phenotypic data accessible through the Kids First Data Resource. Using cloud platforms, participants will learn how to build and share processes in ways that assure reproducibility regardless of the computational environment.
Scheduled over five days, 2 hours each day, users will learn about reasoning with jupyter lab notebooks (python or R kernels), code versioning with git, and GitHub, containerization with conda and Docker, workflow development and execution. All of this with an eye towards platform independence, made possible through proper containerization and configuration files used by workflow languages, enabling the work on their laptop, using on-premise computer environments and in the cloud using a platform as a service. This class will use Seven Bridges’ Cavatica platform to conduct cloud-based analyses. Requirements include a browser (Chrome preferred, registration through the Kids First Data Resource Center) and internet access.
Speakers:
Anne Deslattes Mays, PhD https://www.nichd.nih.gov/about/org/od/odss/deslattes-mays
David Higgins, PhD https://d3b.center/team-members/higgins/
Course Description: https://github.com/NIH-NICHD/Kids-First-Elements-of-Style-Workflow-Creation-Maintenance
DetailsOrganizerCBIITWhenMon, Aug 22, 2022 - 11:00 am - 1:00 pmWhereOnline |
The Gabriella Miller Kids First Pediatric Research Program (Kids First) is an NIH Common Fund program focusing on the biology of childhood cancer and structural birth defects. The program created the Gabriella Miller Kids First Data Resource, which includes the Kids First Portal, a cloud platform and other tools to foster analysis and collaboration. During this course, participants will learn some simple rules, dubbed Elements of Style, for analyzing large-scale datasets, such as genomic and phenotypic data accessible through the Kids First Data Resource. Using cloud platforms, participants will learn how to build and share processes in ways that assure reproducibility regardless of the computational environment. Scheduled over five days, 2 hours each day, users will learn about reasoning with jupyter lab notebooks (python or R kernels), code versioning with git, and GitHub, containerization with conda and Docker, workflow development and execution. All of this with an eye towards platform independence, made possible through proper containerization and configuration files used by workflow languages, enabling the work on their laptop, using on-premise computer environments and in the cloud using a platform as a service. This class will use Seven Bridges’ Cavatica platform to conduct cloud-based analyses. Requirements include a browser (Chrome preferred, registration through the Kids First Data Resource Center) and internet access. Speakers: Anne Deslattes Mays, PhD https://www.nichd.nih.gov/about/org/od/odss/deslattes-mays David Higgins, PhD https://d3b.center/team-members/higgins/ Course Description: https://github.com/NIH-NICHD/Kids-First-Elements-of-Style-Workflow-Creation-Maintenance | 2022-08-22 11:00:00 | Online | Data Management | Online | CBIIT | 0 | Elements of Style in Workflow Creation and Maintenance | |||
600 |
Description
This event has been cancelled and will be rescheduled.
Are you clear on how deep learning fits into Machine Learning? Confused about the difference between training, testing, and validation datasets? Join us for an overview of common Machine Learning terminology. While this is not a formal introduction to Machine Learning, we will introduce concepts in a logical order so beginners can become familiar with Machine Learning jargon ...Read More
This event has been cancelled and will be rescheduled.
Are you clear on how deep learning fits into Machine Learning? Confused about the difference between training, testing, and validation datasets? Join us for an overview of common Machine Learning terminology. While this is not a formal introduction to Machine Learning, we will introduce concepts in a logical order so beginners can become familiar with Machine Learning jargon and get started! Presenter:Andrew Weisman, PhD, High Performance Computing Analyst, Frederick National Laboratory for Cancer Research (FNLCR) DetailsOrganizerCBIITWhenTue, Aug 23, 2022 - 11:00 am - 12:00 pmWhereOnline |
This event has been cancelled and will be rescheduled. Are you clear on how deep learning fits into Machine Learning? Confused about the difference between training, testing, and validation datasets? Join us for an overview of common Machine Learning terminology. While this is not a formal introduction to Machine Learning, we will introduce concepts in a logical order so beginners can become familiar with Machine Learning jargon and get started! Presenter: Andrew Weisman, PhD, High Performance Computing Analyst, Frederick National Laboratory for Cancer Research (FNLCR) | 2022-08-23 11:00:00 | Online | Data Science | Online | CBIIT | 0 | CANCELLED Machine Learning Jargon - An Introduction to Key Concepts and Terms | |||
1035 |
Description
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m875b987cd37fafd4c24a84b7296aadb0
This webinar will demonstrate new features for creating publication ready RNA-Seq Graphs using the easy Point-and-Click interface within Partek Flow:
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m875b987cd37fafd4c24a84b7296aadb0
This webinar will demonstrate new features for creating publication ready RNA-Seq Graphs using the easy Point-and-Click interface within Partek Flow:
RegisterOrganizerBTEPWhenWed, Aug 24, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m875b987cd37fafd4c24a84b7296aadb0 This webinar will demonstrate new features for creating publication ready RNA-Seq Graphs using the easy Point-and-Click interface within Partek Flow: Drag and drop data to modify plots with ease Alter figures with direct manipulation Quickly access recently used data for reuse Access tools, setup, and expanded configuration settings from a single, global menu Undock the context-sensitive settings menu and move it anywhere and keep it open Streamline selection and filtering using a single tool Create feature lists from a heat-map, volcano plot, or table Acquire help materials including our new self-help videos for navigating the controls | 2022-08-24 11:00:00 | Online Webinar | Online | Xiaowen Wang (Partek) | BTEP | 0 | Creating Publication Ready RNA-Seq Graphs in Partek Flow | |||
616 |
Description
Precision oncology has made significant advances, mainly by targeting actionable mutations and fusion events involving cancer driver genes. Aiming to expand treatment opportunities, recent studies have begun to explore the utility of tumor transcriptome in guiding patients’ treatment. I will describe a few new computational approaches that we have developed to this end: First, SELECT and ENLIGHT, that aim to predict patient response from bulk tumor transcriptome. Second, PERCEPTION, ...Read More
Precision oncology has made significant advances, mainly by targeting actionable mutations and fusion events involving cancer driver genes. Aiming to expand treatment opportunities, recent studies have begun to explore the utility of tumor transcriptome in guiding patients’ treatment. I will describe a few new computational approaches that we have developed to this end: First, SELECT and ENLIGHT, that aim to predict patient response from bulk tumor transcriptome. Second, PERCEPTION, which aim to advance precision cancer therapy from single cell tumor transcriptomics. Thirdly, DeepPT, a precision oncology expression-based approach that starts from tumor histopathological images. Finally, as time permits, I will briefly describe the development of liquid-based transcriptomics (LBT) and discuss the challenges laying ahead.
Bio
Eytan Ruppin received his M.D. and Ph.D. (Computer Science) from Tel-Aviv University where he has served as a professor of Computer Science & Medicine since 1995, conducting computational multi-disciplinary research spanning a wide variety of topics, including neuroscience, evolutionary computation, natural language processing, machine learning and systems biology. He joined the University of Maryland in July 2014 as a Computer Science professor and director of its center for bioinformatics and computational biology (CBCB), before joining the NCI in January 2018, where he founded and is Chief of its Cancer Data Science department. He is a member of the editorial board of EMBO Reports and Molecular Systems Biology, a fellow of the International Society for Computational Biology (ISCB), and is the recipient of the NCI Director award and the Delano Award for Computational Biosciences. Dr. Ruppin is also a co-founder of startup companies involved in precision medicine and cancer drug discovery.
For inquiries, please contact our presenter, Dr. Eytan Ruppin at eytan.ruppin@nih.gov.
DetailsOrganizerCDSLWhenWed, Aug 24, 2022 - 11:00 am - 12:00 pmWhereOnline |
Precision oncology has made significant advances, mainly by targeting actionable mutations and fusion events involving cancer driver genes. Aiming to expand treatment opportunities, recent studies have begun to explore the utility of tumor transcriptome in guiding patients’ treatment. I will describe a few new computational approaches that we have developed to this end: First, SELECT and ENLIGHT, that aim to predict patient response from bulk tumor transcriptome. Second, PERCEPTION, which aim to advance precision cancer therapy from single cell tumor transcriptomics. Thirdly, DeepPT, a precision oncology expression-based approach that starts from tumor histopathological images. Finally, as time permits, I will briefly describe the development of liquid-based transcriptomics (LBT) and discuss the challenges laying ahead. Bio Eytan Ruppin received his M.D. and Ph.D. (Computer Science) from Tel-Aviv University where he has served as a professor of Computer Science & Medicine since 1995, conducting computational multi-disciplinary research spanning a wide variety of topics, including neuroscience, evolutionary computation, natural language processing, machine learning and systems biology. He joined the University of Maryland in July 2014 as a Computer Science professor and director of its center for bioinformatics and computational biology (CBCB), before joining the NCI in January 2018, where he founded and is Chief of its Cancer Data Science department. He is a member of the editorial board of EMBO Reports and Molecular Systems Biology, a fellow of the International Society for Computational Biology (ISCB), and is the recipient of the NCI Director award and the Delano Award for Computational Biosciences. Dr. Ruppin is also a co-founder of startup companies involved in precision medicine and cancer drug discovery. For inquiries, please contact our presenter, Dr. Eytan Ruppin at eytan.ruppin@nih.gov. | 2022-08-24 11:00:00 | Online | Single Cell Technologies,Cancer | Online | CDSL | 0 | Next generation transcriptomics-based precision oncology | |||
613 |
Description
Register for the August Cancer Genomics Cloud (CGC) webinar to learn more about FragPipe, a one-stop proteomics data analysis suite, and how it runs on the CGC using publicly available data.
Dr. Fengchao Yu from the University of Michigan will present how he developed FragPipe as well as how the program can perform searches and support quantifications. Following Dr. Yu, ...Read More
Register for the August Cancer Genomics Cloud (CGC) webinar to learn more about FragPipe, a one-stop proteomics data analysis suite, and how it runs on the CGC using publicly available data.
Dr. Fengchao Yu from the University of Michigan will present how he developed FragPipe as well as how the program can perform searches and support quantifications. Following Dr. Yu, Dr. Rowan Beck from Seven Bridges will demonstrate how to run FragPipe on the CGC.
As one of the three Cloud Resources within the NCI Cancer Research Data Commons, the Seven Bridges’ CGC provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale analysis on the cloud.
Speakers:
Fengchao Yu, Ph.D.
Dr. Yu is a research investigator from Alexey Nesvizhskii’s lab at the University of Michigan. His research interests include proteomics and bioinformatics. Currently, he is the leading developer and maintainer of FragPipe, MSFragger, and IonQuant.
Rowan Beck, Ph.D.
Dr. Beck is the community engagement manager for Seven Bridges. She creates content to help researchers learn how to use Seven Bridges platforms, leads training sessions and workshops, and engages with users of Seven Bridges platforms to understand their research questions.
DetailsOrganizerCBIITWhenWed, Aug 24, 2022 - 2:00 pm - 3:00 pmWhereOnline |
Register for the August Cancer Genomics Cloud (CGC) webinar to learn more about FragPipe, a one-stop proteomics data analysis suite, and how it runs on the CGC using publicly available data. Dr. Fengchao Yu from the University of Michigan will present how he developed FragPipe as well as how the program can perform searches and support quantifications. Following Dr. Yu, Dr. Rowan Beck from Seven Bridges will demonstrate how to run FragPipe on the CGC. As one of the three Cloud Resources within the NCI Cancer Research Data Commons, the Seven Bridges’ CGC provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale analysis on the cloud. Speakers: Fengchao Yu, Ph.D. Dr. Yu is a research investigator from Alexey Nesvizhskii’s lab at the University of Michigan. His research interests include proteomics and bioinformatics. Currently, he is the leading developer and maintainer of FragPipe, MSFragger, and IonQuant. Rowan Beck, Ph.D. Dr. Beck is the community engagement manager for Seven Bridges. She creates content to help researchers learn how to use Seven Bridges platforms, leads training sessions and workshops, and engages with users of Seven Bridges platforms to understand their research questions. | 2022-08-24 14:00:00 | Online | Data Science,Proteomics | Online | CBIIT | 0 | FragPipe Enables One-Stop Proteomics Data Analysis | |||
1036 |
Description
Users will learn how to:
• Upload their dataset (RNA-seq, scRNA-seq, proteomics, metabolomics and more) and perform interactive core/pathway analysis in IPA
• Understand the different result types produced (pathways, key regulators, impact on biological functions/diseases and more)
• Compare different experimental conditions (treatments, timepoints, single-cell clusters, disease types and more) and identify similarities and contrasts
• Generate a network even without a dataset or experimental design for hypothesis generation
Meeting Link: Read More
Users will learn how to:
• Upload their dataset (RNA-seq, scRNA-seq, proteomics, metabolomics and more) and perform interactive core/pathway analysis in IPA
• Understand the different result types produced (pathways, key regulators, impact on biological functions/diseases and more)
• Compare different experimental conditions (treatments, timepoints, single-cell clusters, disease types and more) and identify similarities and contrasts
• Generate a network even without a dataset or experimental design for hypothesis generation
Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m54a568e14af14dd390661127728aad0b
RegisterOrganizerBTEPWhenWed, Aug 31, 2022 - 11:00 am - 12:00 pmWhereOnline Webinar |
Users will learn how to: • Upload their dataset (RNA-seq, scRNA-seq, proteomics, metabolomics and more) and perform interactive core/pathway analysis in IPA • Understand the different result types produced (pathways, key regulators, impact on biological functions/diseases and more) • Compare different experimental conditions (treatments, timepoints, single-cell clusters, disease types and more) and identify similarities and contrasts • Generate a network even without a dataset or experimental design for hypothesis generation Meeting Link: https://cbiit.webex.com/cbiit/j.php?MTID=m54a568e14af14dd390661127728aad0b | 2022-08-31 11:00:00 | Online Webinar | Online | Shawn Prince (Qiagen) | BTEP | 0 | Qiagen Pathway Analysis for Beginners: Generating a Gene Network from Experimental Data | |||
603 |
Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also ...Read More
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics.
Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects.
DetailsOrganizerNIH LibraryWhenThu, Sep 01, 2022 - 10:00 am - 3:00 pmWhereOnline |
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics. Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects. | 2022-09-01 10:00:00 | Online | Pathway Analysis | Online | NIH Library | 0 | Ingenuity Pathway Analysis (IPA) | |||
625 |
Description
In this session of the University of Alabama at Birmingham’s O’Neal Research Seminar Series, CBIIT’s Dr. Jill Barnholtz-Sloan will share how big data has provided insight on brain and central nervous system (CNS) tumors. Dr. Barnholtz-Sloan will particularly discuss:
In this session of the University of Alabama at Birmingham’s O’Neal Research Seminar Series, CBIIT’s Dr. Jill Barnholtz-Sloan will share how big data has provided insight on brain and central nervous system (CNS) tumors. Dr. Barnholtz-Sloan will particularly discuss:
DetailsOrganizerCBIITWhenWed, Sep 07, 2022 - 2:00 pm - 3:00 pmWhereOnline |
In this session of the University of Alabama at Birmingham’s O’Neal Research Seminar Series, CBIIT’s Dr. Jill Barnholtz-Sloan will share how big data has provided insight on brain and central nervous system (CNS) tumors. Dr. Barnholtz-Sloan will particularly discuss: general cancer statistics vs. brain/CNS tumor statistics. statistics on brain tumor incidence (by age) and U.S. survival probabilities. general cause and risk factors for brain tumors, as well as environmental and genetic risk factors. the molecular basis of brain tumors. male and female sex differences as they relate to brain tumors (including treatment responses and adverse effects). O’Neal Cancer Seminars are regular research seminars hosted by the O'Neal Comprehensive Cancer Center that feature a wide range of cancer-related topics. Presenter: Jill Barnholtz-Sloan, Ph.D. Dr. Barnholtz-Sloan is the associate director for the Informatics and Data Science Program at NCI CBIIT and a senior investigator for NCI’s Division of Cancer Epidemiology and Genetics. | 2022-09-07 14:00:00 | Online | Cancer,Data Science | Online | CBIIT | 0 | Leveraging Big Data to Help Us Understand Brain Tumors | |||
626 |
Description
In this session of the University of Alabama at Birmingham’s Informatics Institute PowerTalk Seminar Series, CBIIT’s Dr. Jill Barnholtz-Sloan will emphasize how big data’s impact on cancer research has influenced cancer diagnosis, treatment choices, and prognosis.
Attend this seminar to hear Dr. Barnholtz-Sloan:
In this session of the University of Alabama at Birmingham’s Informatics Institute PowerTalk Seminar Series, CBIIT’s Dr. Jill Barnholtz-Sloan will emphasize how big data’s impact on cancer research has influenced cancer diagnosis, treatment choices, and prognosis.
Attend this seminar to hear Dr. Barnholtz-Sloan:
DetailsOrganizerCBIITWhenFri, Sep 09, 2022 - 10:00 am - 11:00 amWhereOnline |
In this session of the University of Alabama at Birmingham’s Informatics Institute PowerTalk Seminar Series, CBIIT’s Dr. Jill Barnholtz-Sloan will emphasize how big data’s impact on cancer research has influenced cancer diagnosis, treatment choices, and prognosis. Attend this seminar to hear Dr. Barnholtz-Sloan: touch on data-driven research limitations and how the NCI Cancer Research Data Commons (CRDC) has been designed as a data science platform to address said limitations. define the current CRDC repositories and highlight activities/functionalities pertaining to them. highlight how big data has successfully influenced research. Presenter: Jill Barnholtz-Sloan, Ph.D. Dr. Barnholtz-Sloan is the associate director for the Informatics and Data Science Program at NCI CBIIT and a senior investigator for NCI’s Division of Cancer Epidemiology and Genetics. | 2022-09-09 10:00:00 | Online | Cancer,Data Science | Online | CBIIT | 0 | PowerTalk Seminar Series Presents: #DataMatters—Leveraging Big Data for Cancer Discovery and Impact | |||
627 |
Description
We welcome members of the NIH to join us for a seminar event, covering multiplexed, direct digital gene expression profiling applications utilizing NanoString nCounter expression profiling technology as well as spatial biology discoveries generated using the GeoMx Digital Spatial Profiler and CosMx Spatial Molecular Imager. nCounter and GeoMx technologies are currently available for use on campus, and the NIH will be one of the first to adopt the CosMx technology.
Presented by Min Mo, PhD, ...Read More
We welcome members of the NIH to join us for a seminar event, covering multiplexed, direct digital gene expression profiling applications utilizing NanoString nCounter expression profiling technology as well as spatial biology discoveries generated using the GeoMx Digital Spatial Profiler and CosMx Spatial Molecular Imager. nCounter and GeoMx technologies are currently available for use on campus, and the NIH will be one of the first to adopt the CosMx technology.
Presented by Min Mo, PhD, Field Applications Scientist at NanoString Technologies and former Fellow at the NIH in Frederick.
Includes technology updates, including Immuno-Oncology, Oncology, Immunology, Metabolic Profiling content, the new CosMx Spatial Molecular Imager, and case study reviews.
Speaker:
Min Mo, PhD,
NanoString Field
Applications Scientist
DetailsOrganizerNanostring TechnologyWhenMon, Sep 12, 2022 - 12:00 pm - 1:00 pmWhereOnline |
We welcome members of the NIH to join us for a seminar event, covering multiplexed, direct digital gene expression profiling applications utilizing NanoString nCounter expression profiling technology as well as spatial biology discoveries generated using the GeoMx Digital Spatial Profiler and CosMx Spatial Molecular Imager. nCounter and GeoMx technologies are currently available for use on campus, and the NIH will be one of the first to adopt the CosMx technology. Presented by Min Mo, PhD, Field Applications Scientist at NanoString Technologies and former Fellow at the NIH in Frederick. Includes technology updates, including Immuno-Oncology, Oncology, Immunology, Metabolic Profiling content, the new CosMx Spatial Molecular Imager, and case study reviews. Speaker: Min Mo, PhD, NanoString Field Applications Scientist | 2022-09-12 12:00:00 | Online | Spatial Transcriptomics | Online | Nanostring Technology | 0 | New Developments in Bulk & Spatial Expression Profiling: NanoString Technology at the NIH | |||
604 |
Description
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Read More
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R.
Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed.
DetailsOrganizerNIH LibraryWhenTue, Sep 13, 2022 - 10:00 am - 11:00 amWhereOnline |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. | 2022-09-13 10:00:00 | Online | Programming | Online | NIH Library | 0 | Introduction to R and RStudio | |||
605 |
Description
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and ...Read More
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database).
DetailsOrganizerNIH LibraryWhenWed, Sep 14, 2022 - 1:00 pm - 4:00 pmWhereOnline |
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database). | 2022-09-14 13:00:00 | Online | Pathway Analysis | Online | NIH Library | 0 | Pathway Analysis | |||
629 |
Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member.
Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please
- mute when not speaking
- refrain from screen sharing until asked to do so in the breakout room
- screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
- be prepared to wait your turn if staff are already helping other users.
Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems
Meeting ID: 160 300 4510
Passcode: 908767
DetailsOrganizerHPC BiowulfWhenWed, Sep 14, 2022 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users. Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems Meeting ID: 160 300 4510 Passcode: 908767 | 2022-09-14 13:00:00 | Online | Online | HPC Biowulf | 0 | NIH HPC monthly Zoom-In Consults | ||||
606 |
Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also ...Read More
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics.
Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects.
DetailsOrganizerNIH LibraryWhenThu, Sep 15, 2022 - 10:00 am - 3:00 pmWhereOnline |
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics. Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects. | 2022-09-15 10:00:00 | Online | Pathway Analysis | Online | NIH Library | 0 | Ingenuity Pathway Analysis (IPA) | |||
630 |
Description
In partnership with the National Cancer Institute (NCI) Cancer MoonshotSM, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are excited to announce our second "SITC-NCI Computational Immuno-Oncology Webinar Series" throughout 2022.
These nine, hour-long webinars will feature a moderator and faculty speaker leading instruction on a range of topics that ...Read More
In partnership with the National Cancer Institute (NCI) Cancer MoonshotSM, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are excited to announce our second "SITC-NCI Computational Immuno-Oncology Webinar Series" throughout 2022.
These nine, hour-long webinars will feature a moderator and faculty speaker leading instruction on a range of topics that cover a host of computational challenges of analyzing and integrating diverse assay data across the spectrum of immuno-oncology. Meant for scientists early in their career or those who want to remain abreast of the latest technologies, the goal of this series is to help foster better communication concerning data science technologies and analyses between cancer immunotherapy researchers and clinicians in order to fuel translational immunotherapy research.
Speakers:
Olivier Elemento, Ph.D
Professor of Physiology and Biophysics, Weill Cornell Medicine
The Elemento lab combines Big Data analytics with experimentation to develop entirely new ways to help prevent, diagnose, understand, treat and ultimately cure cancer. Our research involves routine use of ultrafast DNA sequencing, proteomics, high-performance computing, mathematical modeling, and artificial intelligence/machine learning.
Santosh Putta, PhD (Moderator)
CEO and co-founder, Qognit Inc.
He has over 20 years of experience in creating software and data science solutions in the life sciences industry. Prior to Qognit, he was VP of Computational Sciences at Nodality, where he was responsible for building and leading Computational Biology, Biostatistics and Software functions. Dr. Putta directed statistical analysis and design on multiple clinical studies and guided the software platform architecture to design and manage single cell proteomics data and client facing data software.
DetailsOrganizerSITC-NCI Computational IO SeriesWhenThu, Sep 15, 2022 - 1:00 pm - 2:00 pmWhereOnline |
In partnership with the National Cancer Institute (NCI) Cancer MoonshotSM, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are excited to announce our second "SITC-NCI Computational Immuno-Oncology Webinar Series" throughout 2022. These nine, hour-long webinars will feature a moderator and faculty speaker leading instruction on a range of topics that cover a host of computational challenges of analyzing and integrating diverse assay data across the spectrum of immuno-oncology. Meant for scientists early in their career or those who want to remain abreast of the latest technologies, the goal of this series is to help foster better communication concerning data science technologies and analyses between cancer immunotherapy researchers and clinicians in order to fuel translational immunotherapy research. Speakers: Olivier Elemento, Ph.D Professor of Physiology and Biophysics, Weill Cornell Medicine The Elemento lab combines Big Data analytics with experimentation to develop entirely new ways to help prevent, diagnose, understand, treat and ultimately cure cancer. Our research involves routine use of ultrafast DNA sequencing, proteomics, high-performance computing, mathematical modeling, and artificial intelligence/machine learning. Santosh Putta, PhD (Moderator) CEO and co-founder, Qognit Inc. He has over 20 years of experience in creating software and data science solutions in the life sciences industry. Prior to Qognit, he was VP of Computational Sciences at Nodality, where he was responsible for building and leading Computational Biology, Biostatistics and Software functions. Dr. Putta directed statistical analysis and design on multiple clinical studies and guided the software platform architecture to design and manage single cell proteomics data and client facing data software. | 2022-09-15 13:00:00 | Online | Cancer,Artificial Intelligence / Machine Learning | Online | SITC-NCI Computational IO Series | 0 | MACHINE LEARNING AND AI: COMPUTATIONAL SCIENCE IN IMMUNO-ONCOLOGY | |||
612 |
Description
The scientific objectives of the symposium are to discuss a) current state of the art technologies in computational immuno-oncology (IO) and b) outstanding scientific gaps and opportunities. Scientific themes to be explored include 1) multi-modal data integration, 2) computational challenges in IO data including rigor, reproducibility, artificial intelligence (AI), deep learning, data bias, etc., and 3) enabling medical discoveries to inform therapeutic development using IO data.
Agenda
The scientific objectives of the symposium are to discuss a) current state of the art technologies in computational immuno-oncology (IO) and b) outstanding scientific gaps and opportunities. Scientific themes to be explored include 1) multi-modal data integration, 2) computational challenges in IO data including rigor, reproducibility, artificial intelligence (AI), deep learning, data bias, etc., and 3) enabling medical discoveries to inform therapeutic development using IO data.
Agenda
DetailsOrganizerNCIWhenMon, Sep 19, 2022 - 8:30 am - 5:00 pmWhereOnline |
The scientific objectives of the symposium are to discuss a) current state of the art technologies in computational immuno-oncology (IO) and b) outstanding scientific gaps and opportunities. Scientific themes to be explored include 1) multi-modal data integration, 2) computational challenges in IO data including rigor, reproducibility, artificial intelligence (AI), deep learning, data bias, etc., and 3) enabling medical discoveries to inform therapeutic development using IO data. Agenda | 2022-09-19 08:30:00 | Online | Artificial Intelligence / Machine Learning | Online | NCI | 0 | NCI Computational Immuno-Oncology Workshop | |||
632 |
Description
Dr. Mikhail Kolmogorov, Stadtman Investigator, Cancer Data Science Laboratory, NCI (guest of Pedro Batista) will present a lecture:
Please join us for a hybrid LCB seminar/webinar via ZoomGov and in Conference Room 37/2041
Meeting ID: 160 471 2637
Passcode: 796015
Dr. Mikhail Kolmogorov, Stadtman Investigator, Cancer Data Science Laboratory, NCI (guest of Pedro Batista) will present a lecture:
Please join us for a hybrid LCB seminar/webinar via ZoomGov and in Conference Room 37/2041
Meeting ID: 160 471 2637
Passcode: 796015
DetailsOrganizerLaboratory of Cell Biology (LCB)WhenTue, Sep 20, 2022 - 2:30 pm - 3:30 pmWhereOnline |
Dr. Mikhail Kolmogorov, Stadtman Investigator, Cancer Data Science Laboratory, NCI (guest of Pedro Batista) will present a lecture: Please join us for a hybrid LCB seminar/webinar via ZoomGov and in Conference Room 37/2041 Meeting ID: 160 471 2637 Passcode: 796015 | 2022-09-20 14:30:00 | Online | Cancer,Genomics | Online | Laboratory of Cell Biology (LCB) | 0 | Profiling Structural Variants and Complex Rearrangements in Cancer Genomes Using Long-Reads | |||
628 |
Description
Join University of Colorado’s Dr. Arjun Krishnan as he discusses how machine learning and natural language processing can contribute to making public -omics data more accessible.
Dr. Krishnan will also present the recent work from his group, the Krishnan Lab, to address these two challenges that contribute to under-used data:
Join University of Colorado’s Dr. Arjun Krishnan as he discusses how machine learning and natural language processing can contribute to making public -omics data more accessible.
Dr. Krishnan will also present the recent work from his group, the Krishnan Lab, to address these two challenges that contribute to under-used data:
DetailsWhenWed, Sep 21, 2022 - 11:00 am - 12:00 pmWhereOnline |
Join University of Colorado’s Dr. Arjun Krishnan as he discusses how machine learning and natural language processing can contribute to making public -omics data more accessible. Dr. Krishnan will also present the recent work from his group, the Krishnan Lab, to address these two challenges that contribute to under-used data: Unstructured metadata: sample descriptions contain information about their source in the form of ambiguous plain text. Missing metadata: sample descriptions frequently miss key, basic pieces of information about their source. The Krishnan Lab works in the areas of computational biology and biomedical data science at the University of Colorado Anschutz Medical Campus. The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. Speaker: Arjun Krishnan, Ph.D. Dr. Krishnan is an associate professor at the University of Colorado and a group leader at the Krishan Lab. He works on developing computational approaches to study the genetic basis of biomedical phenomena relevant to human health and disease. Dr. Krishnan is primarily interested in bridging the gap between large-scale genomic/clinical data and actionable biological insights using statistical and machine learning approaches. | 2022-09-21 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | 0 | Democratizing Data-Driven Biology by Overcoming the Metadata Bottleneck | ||||
607 |
Description
DNASTAR offers software solutions for molecular biology, structural biology, and genomics. In this class, attendees will be presented with an overview of the applications within the Lasergene Suite. The instructor will use the latest software version and demonstration data to provide tutorials for various workflows, including: cloning and primer design, Sanger sequence alignment, protein structure analysis, and next generation sequence assembly and analysis. Individual meetings after the training session can be scheduled to provide help ...Read More
DNASTAR offers software solutions for molecular biology, structural biology, and genomics. In this class, attendees will be presented with an overview of the applications within the Lasergene Suite. The instructor will use the latest software version and demonstration data to provide tutorials for various workflows, including: cloning and primer design, Sanger sequence alignment, protein structure analysis, and next generation sequence assembly and analysis. Individual meetings after the training session can be scheduled to provide help with specific projects. To schedule an individual meeting, please email the instructor.
DetailsOrganizerNIH LibraryWhenThu, Sep 22, 2022 - 9:30 am - 11:30 amWhereOnline |
DNASTAR offers software solutions for molecular biology, structural biology, and genomics. In this class, attendees will be presented with an overview of the applications within the Lasergene Suite. The instructor will use the latest software version and demonstration data to provide tutorials for various workflows, including: cloning and primer design, Sanger sequence alignment, protein structure analysis, and next generation sequence assembly and analysis. Individual meetings after the training session can be scheduled to provide help with specific projects. To schedule an individual meeting, please email the instructor. | 2022-09-22 09:30:00 | Online | Bioinformatics Software | Online | NIH Library | 0 | DNASTAR Lasergene Demonstration and Training Workshop | |||
1026 |
Description
The avalanche of easy-to-create genomics data has impacted almost all areas of medicine and science, from cancer patients and microbial diagnostics to molecular monitoring for astronauts in space. In this lecture, new discoveries from RNA- and DNA-sequencing with the FDA’s SEQC study show the ability of single-molecule methods to reveal rare alleles and provide more comprehensive epigenomics maps of patients and cancers. Also, recent technologies and algorithms from our laboratory and others demonstrate that ...Read More
The avalanche of easy-to-create genomics data has impacted almost all areas of medicine and science, from cancer patients and microbial diagnostics to molecular monitoring for astronauts in space. In this lecture, new discoveries from RNA- and DNA-sequencing with the FDA’s SEQC study show the ability of single-molecule methods to reveal rare alleles and provide more comprehensive epigenomics maps of patients and cancers. Also, recent technologies and algorithms from our laboratory and others demonstrate that an integrative, cross-kingdom view of patients (precision metagenomics) holds unprecedented biomedical potential to discern risk, improve diagnostic accuracy, and to map both genetic and epigenetic states, as well as clonal changes in mutations with clonal hematopoiesis. Finally, these methods and molecular tools work together to guide comprehensive, longitudinal, multi-omic views of human astronaut physiology and biology in the NASA Twins Study and several other missions with SpaceX and Axiom, which lay the foundation for future, long-duration spaceflight, including sequencing, quantifying, and engineering genomes to survive on other planets over the next 500 years (https://mitpress.mit.edu/books/next-500-years).
Christopher E. Mason, Ph.D.
RegisterOrganizerBTEPWhenThu, Sep 22, 2022 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The avalanche of easy-to-create genomics data has impacted almost all areas of medicine and science, from cancer patients and microbial diagnostics to molecular monitoring for astronauts in space. In this lecture, new discoveries from RNA- and DNA-sequencing with the FDA’s SEQC study show the ability of single-molecule methods to reveal rare alleles and provide more comprehensive epigenomics maps of patients and cancers. Also, recent technologies and algorithms from our laboratory and others demonstrate that an integrative, cross-kingdom view of patients (precision metagenomics) holds unprecedented biomedical potential to discern risk, improve diagnostic accuracy, and to map both genetic and epigenetic states, as well as clonal changes in mutations with clonal hematopoiesis. Finally, these methods and molecular tools work together to guide comprehensive, longitudinal, multi-omic views of human astronaut physiology and biology in the NASA Twins Study and several other missions with SpaceX and Axiom, which lay the foundation for future, long-duration spaceflight, including sequencing, quantifying, and engineering genomes to survive on other planets over the next 500 years (https://mitpress.mit.edu/books/next-500-years). Christopher E. Mason, Ph.D. Professor of Physiology and Biophysics, Weill Cornell Medicine, New York, NY Director, WorldQuant Initiative for Quantitative Prediction and WorldQuant Foundation Research Scholar Professor of Computational Genomics in Computational Biomedicine in the Institute for Computational Biomedicine Professor of Neuroscience in the Brain and Mind Institute (secondary appointment) Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m7bebbef7690ce27f76326ab37d375d3d Meeting number: 2302 792 7779 Password: JxbcvER$685 Host key: 560701 Cohost: Alex Emmons; Amy Stonelake; Desiree Tillo; Peter Fitzgerald; Joe Wu; Carl McIntosh Join by video system Dial 23027927779@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2302 792 7779 Host PIN: 5225 | 2022-09-22 13:00:00 | Online Webinar | Online | Christopher Mason (Weill Cornell Medicine) | BTEP | 0 | Christopher Mason: A 500 Year Plan for Genetics, Epigenetics and Cell Engineering | |||
1052 |
Distinguished Speakers Seminar SeriesDescriptionThe avalanche of easy-to-create genomics data has impacted almost all areas of medicine and science, from cancer patients and microbial diagnostics to molecular monitoring for astronauts in space. In this lecture, new discoveries from RNA- and DNA-sequencing with the FDA’s SEQC study show the ability of single-molecule methods to reveal rare alleles and provide more comprehensive epigenomics maps of patients and cancers. Also, recent technologies and algorithms from our laboratory and others demonstrate ...Read More The avalanche of easy-to-create genomics data has impacted almost all areas of medicine and science, from cancer patients and microbial diagnostics to molecular monitoring for astronauts in space. In this lecture, new discoveries from RNA- and DNA-sequencing with the FDA’s SEQC study show the ability of single-molecule methods to reveal rare alleles and provide more comprehensive epigenomics maps of patients and cancers. Also, recent technologies and algorithms from our laboratory and others demonstrate that an integrative, cross-kingdom view of patients (precision metagenomics) holds unprecedented biomedical potential to discern risk, improve diagnostic accuracy, and to map both genetic and epigenetic states, as well as clonal changes in mutations with clonal hematopoiesis. Finally, these methods and molecular tools work together to guide comprehensive, longitudinal, multi-omic views of human astronaut physiology and biology in the NASA Twins Study and several other missions with SpaceX and Axiom, which lay the foundation for future, long-duration spaceflight, including sequencing, quantifying, and engineering genomes to survive on other planets over the next 500 years (https://mitpress.mit.edu/books/next-500-years). DetailsOrganizerBTEPWhenThu, Sep 22, 2022 - 1:00 pm - 2:00 pmWhereOnline |
The avalanche of easy-to-create genomics data has impacted almost all areas of medicine and science, from cancer patients and microbial diagnostics to molecular monitoring for astronauts in space. In this lecture, new discoveries from RNA- and DNA-sequencing with the FDA’s SEQC study show the ability of single-molecule methods to reveal rare alleles and provide more comprehensive epigenomics maps of patients and cancers. Also, recent technologies and algorithms from our laboratory and others demonstrate that an integrative, cross-kingdom view of patients (precision metagenomics) holds unprecedented biomedical potential to discern risk, improve diagnostic accuracy, and to map both genetic and epigenetic states, as well as clonal changes in mutations with clonal hematopoiesis. Finally, these methods and molecular tools work together to guide comprehensive, longitudinal, multi-omic views of human astronaut physiology and biology in the NASA Twins Study and several other missions with SpaceX and Axiom, which lay the foundation for future, long-duration spaceflight, including sequencing, quantifying, and engineering genomes to survive on other planets over the next 500 years (https://mitpress.mit.edu/books/next-500-years). | 2022-09-22 13:00:00 | Any | Online | Christopher Mason (Weill Cornell Medicine) | BTEP | 1 | A 500 Year Plan for Genetics, Epigenetics and Cell Engineering | |||
640 |
Description
This class will provide an overview of the data collection process for your review – whether scoping or systematic. The importance of data cleaning for consistency to ensure accurate identification of comparable outcome measures across studies and how to do so will be discussed. We will review the process and tools to use, discuss recommended practices, and share lessons learned. Participants will receive resources and information on recommended practices for performing this important step in your ...Read More
This class will provide an overview of the data collection process for your review – whether scoping or systematic. The importance of data cleaning for consistency to ensure accurate identification of comparable outcome measures across studies and how to do so will be discussed. We will review the process and tools to use, discuss recommended practices, and share lessons learned. Participants will receive resources and information on recommended practices for performing this important step in your review.
Speaker:
Alicia Livinski
Informationist
NIH Library
DetailsOrganizerNIH LibraryWhenMon, Sep 26, 2022 - 1:00 pm - 2:00 pmWhereOnline |
This class will provide an overview of the data collection process for your review – whether scoping or systematic. The importance of data cleaning for consistency to ensure accurate identification of comparable outcome measures across studies and how to do so will be discussed. We will review the process and tools to use, discuss recommended practices, and share lessons learned. Participants will receive resources and information on recommended practices for performing this important step in your review. Speaker: Alicia Livinski Informationist NIH Library | 2022-09-26 13:00:00 | Online | Data Management | Online | NIH Library | 0 | Collecting and Cleaning Data for Your Review | |||
631 |
Description
Speaker:
Neil L. Kelleher, Ph.D.
Walter and Mary E. Glass Professor of Molecular Biosciences
Professor of Chemistry in the Weinberg College of Arts and Sciences
Professor of Medicine (Hematology & Oncology) in the Feinberg School of Medicine
Director, Chemistry of Life Processes Institute & Northwestern Proteomics
Northwestern University
Dr. Kelleher received his Ph.D. from Cornell University and completed his postdoctoral training from Harvard Medical School. He then joined the faculty at ...Read More
Speaker:
Neil L. Kelleher, Ph.D.
Walter and Mary E. Glass Professor of Molecular Biosciences
Professor of Chemistry in the Weinberg College of Arts and Sciences
Professor of Medicine (Hematology & Oncology) in the Feinberg School of Medicine
Director, Chemistry of Life Processes Institute & Northwestern Proteomics
Northwestern University
Dr. Kelleher received his Ph.D. from Cornell University and completed his postdoctoral training from Harvard Medical School. He then joined the faculty at the University of Illinois at Urbana-Champaign where he established research program in proteomics. In 2010, he joined the faculty at the Northwestern University.
Dr. Kelleher's Team is built around expertise in technology development for complex mixture analysis using Fourier-Transform Mass Spectrometry for targeted applications in proteomics and metabolomics. His lab leverages top-down proteomics, which is the analysis of intact proteins for precise localization of post-translational modifications to advance the understanding of chromatin and cancer biology.
Dr. Kelleher is a pioneer of the top-down approach and the Human Proteoform Project (HPfP), a global research initiative to weigh every protein in the human body, 250,000 proteoforms (specific molecular form of a gene product) in 4,000 different cell types. This will enable dramatic increases in the speed and efficiency by which investigators can identify higher-value protein-based markers of disease including cancer, and spur game-changing advances in biomedical research, drug development and human health.
Dr. Kelleher developed the ProSight PTM software platform that allows identification and characterization of both intact proteins and peptides. This is the only proteomics software that allows the user to search their tandem MS data against proteome warehouses containing the known biological complexity present in UniProt (a resource of protein sequence and functional information).
Dr. Kelleher has co-authored over 300 articles in peer-reviewed journals including Science, Nature Methods, PNAS, Cancer Discovery, Mol. Cell. Proteomics, J. Cell Biol., and J Biol Chem.
Dr. Kelleher received many awards including Biermann Medal (American Society for Mass Spectrometry), Pfizer Award in Enzyme Chemistry (American Chemical Society, DBC), Presidential Early Career Award in Science and Engineering, National Science Foundation CAREER Award, Burroughs Wellcome Award in the Pharmacological Sciences, and American Society of Mass Spectrometry Research Award.
Meeting number (access code): 2309 555 7341
Meeting password: 4qrPy7wAm*2
DetailsOrganizerNCIWhenTue, Sep 27, 2022 - 9:30 am - 10:30 amWhereOnline |
Speaker: Neil L. Kelleher, Ph.D. Walter and Mary E. Glass Professor of Molecular Biosciences Professor of Chemistry in the Weinberg College of Arts and Sciences Professor of Medicine (Hematology & Oncology) in the Feinberg School of Medicine Director, Chemistry of Life Processes Institute & Northwestern Proteomics Northwestern University Dr. Kelleher received his Ph.D. from Cornell University and completed his postdoctoral training from Harvard Medical School. He then joined the faculty at the University of Illinois at Urbana-Champaign where he established research program in proteomics. In 2010, he joined the faculty at the Northwestern University. Dr. Kelleher's Team is built around expertise in technology development for complex mixture analysis using Fourier-Transform Mass Spectrometry for targeted applications in proteomics and metabolomics. His lab leverages top-down proteomics, which is the analysis of intact proteins for precise localization of post-translational modifications to advance the understanding of chromatin and cancer biology. Dr. Kelleher is a pioneer of the top-down approach and the Human Proteoform Project (HPfP), a global research initiative to weigh every protein in the human body, 250,000 proteoforms (specific molecular form of a gene product) in 4,000 different cell types. This will enable dramatic increases in the speed and efficiency by which investigators can identify higher-value protein-based markers of disease including cancer, and spur game-changing advances in biomedical research, drug development and human health. Dr. Kelleher developed the ProSight PTM software platform that allows identification and characterization of both intact proteins and peptides. This is the only proteomics software that allows the user to search their tandem MS data against proteome warehouses containing the known biological complexity present in UniProt (a resource of protein sequence and functional information). Dr. Kelleher has co-authored over 300 articles in peer-reviewed journals including Science, Nature Methods, PNAS, Cancer Discovery, Mol. Cell. Proteomics, J. Cell Biol., and J Biol Chem. Dr. Kelleher received many awards including Biermann Medal (American Society for Mass Spectrometry), Pfizer Award in Enzyme Chemistry (American Chemical Society, DBC), Presidential Early Career Award in Science and Engineering, National Science Foundation CAREER Award, Burroughs Wellcome Award in the Pharmacological Sciences, and American Society of Mass Spectrometry Research Award. Meeting number (access code): 2309 555 7341 Meeting password: 4qrPy7wAm*2 | 2022-09-27 09:30:00 | Online | Proteomics | Online | NCI | 0 | Expanding Proteogenomics to Map the Proteoform Landscape of Human Tumors | |||
1037 |
Description
Course Objectives:
This 12-week long course is for scientists wanting to learn basic bioinformatics skills. Material will be taught at a beginner to intermediate level. There are no pre-requisites.
Learners will:
Course Objectives:
This 12-week long course is for scientists wanting to learn basic bioinformatics skills. Material will be taught at a beginner to intermediate level. There are no pre-requisites.
Learners will:
RegisterOrganizerBTEPWhenTue, Sep 27 - Tue, Dec 13, 2022 -1:00 pm - 1:00 pmWhereOnline Webinar |
Course Objectives: This 12-week long course is for scientists wanting to learn basic bioinformatics skills. Material will be taught at a beginner to intermediate level. There are no pre-requisites. Learners will: Learn Unix skills to download, decompress and work with sequence data Work with different file formats commonly found in bioinformatics (fasta, fastq, sam, bam, genbank) Navigate around a Unix file system and understand file paths and directory structure Log into and learn about the NIH High Performance Unix cluster Biowulf Understand the concepts behind bulk RNA-Seq data analyses Assay sequence data for quality and trim adapters Map sequences to a genome with both alignment and classification based methods Generate differential expression data and create heatmaps Learn about gene ontology (GO) and cellular pathway analysis Class materials: https://btep.ccr.cancer.gov/docs/b4b/ Course Requirements: There are no prerequisites to take this course. It's open to CCR scientists wanting to learn basic bioinformatics skills, including working in a Unix environment and analyzing RNA-Seq data. To participate in this course, you will need a computer, a reliable internet connection, and a web browser. All classes and help sessions will be held virtually through Webex. In addition, this class will be taught with the GOLD learning environment on the DNAnexus platform. To participate in the class, you need to: Create a DNAnexus account. Make a note of your login id and password. You will need this every day for class. Fill out the registration survey (you will need your DNAnexus login id) https://www.surveymonkey.com/r/LWXPTKF All Classes will use this WebEx meeting information: Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=md8d9e09c4c485da7600d3f4adebe3e55 Meeting number: 2311 744 8253 Password: wU9tPx3vf*3 Join by video system Dial 23117448253@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2311 744 8253 | 2022-09-27 13:00:00 | Online Webinar | Bulk RNA-seq | Online | Peter FitzGerald (GAU),Amy Stonelake (BTEP),Joe Wu (BTEP),Alex Emmons (BTEP) | BTEP | 0 | Bioinformatics for Beginners: RNA-Seq Data Analysis | ||
617 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH LibraryWhenTue, Sep 27, 2022 - 3:00 pm - 4:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2022-09-27 15:00:00 | Online | Data Management | Online | NIH Library | 0 | Data Management and Sharing: Part 1 | |||
618 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
DetailsOrganizerNIH LibraryWhenWed, Sep 28, 2022 - 3:00 pm - 4:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2022-09-28 15:00:00 | Online | Data Management | Online | NIH Library | 0 | Data Management and Sharing: Part 2 | |||
642 |
Description
We invite you to join us for the Neuro-Oncology Visiting Scholar Lecture scheduled for next week by Eytan Ruppin, M.D. Ph.D:
Next Generation Transcriptomics-based Precision Oncology
Eytan Ruppin received his M.D. and Ph.D. (Computer Science) from Tel-Aviv University where he has served as a professor of Computer Science & Medicine since 1995, conducting computational multi-disciplinary research spanning a wide variety of topics, including ...Read More
We invite you to join us for the Neuro-Oncology Visiting Scholar Lecture scheduled for next week by Eytan Ruppin, M.D. Ph.D:
Next Generation Transcriptomics-based Precision Oncology
Eytan Ruppin received his M.D. and Ph.D. (Computer Science) from Tel-Aviv University where he has served as a professor of Computer Science & Medicine since 1995, conducting computational multi-disciplinary research spanning a wide variety of topics, including neuroscience, evolutionary computation, natural language processing, machine learning and systems biology. He joined the University of Maryland in July 2014 as a Computer Science professor and director of its center for bioinformatics and computational biology (CBCB), before joining the NCI in January 2018, where he co-founded and is Chief of its Cancer Data Science Lab. Studying cancer metabolism, his lab has been involved in identifying the first metabolic synthetic lethal cancer drug target and in the discovery of the link between urea cycle dysregulation and response to immunotherapy, among others. His recent research focus is on developing new approaches for transcriptomics-based precision oncology, which are now moving into clinical prospective testing. Dr. Ruppin is a member of the editorial board of Molecular Systems Biology and a fellow of the International Society for Computational Biology (ISCB). He has recently received the NCI Director award (2022) and the Delano Award for Computational Biosciences (2023) for his contributions for advancing transcriptomics-based precision oncology. Dr. Ruppin is also a co-founder of a few startup companies involved in precision medicine and cancer drug discovery.
Meeting number:2319 071 3551
DetailsOrganizerNCIWhenWed, Sep 28, 2022 - 3:00 pm - 4:00 pmWhereOnline |
We invite you to join us for the Neuro-Oncology Visiting Scholar Lecture scheduled for next week by Eytan Ruppin, M.D. Ph.D: Next Generation Transcriptomics-based Precision Oncology Eytan Ruppin received his M.D. and Ph.D. (Computer Science) from Tel-Aviv University where he has served as a professor of Computer Science & Medicine since 1995, conducting computational multi-disciplinary research spanning a wide variety of topics, including neuroscience, evolutionary computation, natural language processing, machine learning and systems biology. He joined the University of Maryland in July 2014 as a Computer Science professor and director of its center for bioinformatics and computational biology (CBCB), before joining the NCI in January 2018, where he co-founded and is Chief of its Cancer Data Science Lab. Studying cancer metabolism, his lab has been involved in identifying the first metabolic synthetic lethal cancer drug target and in the discovery of the link between urea cycle dysregulation and response to immunotherapy, among others. His recent research focus is on developing new approaches for transcriptomics-based precision oncology, which are now moving into clinical prospective testing. Dr. Ruppin is a member of the editorial board of Molecular Systems Biology and a fellow of the International Society for Computational Biology (ISCB). He has recently received the NCI Director award (2022) and the Delano Award for Computational Biosciences (2023) for his contributions for advancing transcriptomics-based precision oncology. Dr. Ruppin is also a co-founder of a few startup companies involved in precision medicine and cancer drug discovery. Meeting number:2319 071 3551 | 2022-09-28 15:00:00 | Online | Cancer,Transcriptomics | Online | NCI | 0 | Eytan Ruppin: Next Generation Transcriptomics-based Precision Oncology | |||
634 |
Description
The size and complexity of data necessary to derive meaningful scientific and clinical insights are advancing at an unprecedented rate. At the core of this complexity is an ever-expanding array of technologies, instrumentation, and analytic workflows, the outputs of which must be brought together and co-analyzed. Aggregating and harmonizing disparate data types into a functional model that is useable by diverse subject matter experts and supports low code/no code multimodal analysis is key to ...Read More
The size and complexity of data necessary to derive meaningful scientific and clinical insights are advancing at an unprecedented rate. At the core of this complexity is an ever-expanding array of technologies, instrumentation, and analytic workflows, the outputs of which must be brought together and co-analyzed. Aggregating and harmonizing disparate data types into a functional model that is useable by diverse subject matter experts and supports low code/no code multimodal analysis is key to harnessing this complexity. The NIH Integrated Data Analysis Platform (NIDAP) aims to accelerate basic, translational, and clinical research by addressing this challenge. In this talk, Dr. Chitwood will describe how the Palantir Foundry platform serves as the NIDAP hub and demonstrate how interoperability with numerous NCI data systems and computational resources supports the development of enterprise-wide and group-specific capabilities custom data configurations that enable users to access and analyze multimodal data rapidly.
Speaker:
Dr. Patrick Chitwood from Palantir Technologies. Dr. Chitwood will describe how the Palantir Foundry platform serves as the NIDAP hub and demonstrate how interoperability with numerous NCI data systems and computational resources supports the development of both enterprise-wide capabilities and group-specific custom data configurations which enable users to rapidly access and analyze multimodal data.
DetailsOrganizerCBIITWhenThu, Sep 29, 2022 - 1:00 pm - 2:00 pmWhereOnline |
The size and complexity of data necessary to derive meaningful scientific and clinical insights are advancing at an unprecedented rate. At the core of this complexity is an ever-expanding array of technologies, instrumentation, and analytic workflows, the outputs of which must be brought together and co-analyzed. Aggregating and harmonizing disparate data types into a functional model that is useable by diverse subject matter experts and supports low code/no code multimodal analysis is key to harnessing this complexity. The NIH Integrated Data Analysis Platform (NIDAP) aims to accelerate basic, translational, and clinical research by addressing this challenge. In this talk, Dr. Chitwood will describe how the Palantir Foundry platform serves as the NIDAP hub and demonstrate how interoperability with numerous NCI data systems and computational resources supports the development of enterprise-wide and group-specific capabilities custom data configurations that enable users to access and analyze multimodal data rapidly. Speaker: Dr. Patrick Chitwood from Palantir Technologies. Dr. Chitwood will describe how the Palantir Foundry platform serves as the NIDAP hub and demonstrate how interoperability with numerous NCI data systems and computational resources supports the development of both enterprise-wide capabilities and group-specific custom data configurations which enable users to rapidly access and analyze multimodal data. | 2022-09-29 13:00:00 | Online | NIDAP | Online | CBIIT | 0 | IT Engagement Seminar Series: Data Aggregation and Analysis in NIDAP | |||
639 |
Description
An overview of the JPSurv webtool to analyze survival data by year of diagnosis and estimate calendar years when changes in survival have occurred. Covers topics such as the JPsurv model, trend survival measures in the survival and probability of death scales, and applications. A live demonstration is provided using the JPSurv webtool application.
Speakers:
Angela Mariotto, PhD
Chief, Data Analytics Branch
National Cancer Institute
Theresa Devasia, PhD
Mathematical ...Read More
An overview of the JPSurv webtool to analyze survival data by year of diagnosis and estimate calendar years when changes in survival have occurred. Covers topics such as the JPsurv model, trend survival measures in the survival and probability of death scales, and applications. A live demonstration is provided using the JPSurv webtool application.
Speakers:
Angela Mariotto, PhD
Chief, Data Analytics Branch
National Cancer Institute
Theresa Devasia, PhD
Mathematical Statistician, Data Analytics Branch
National Cancer Institute
DetailsOrganizerCBIITWhenThu, Sep 29, 2022 - 1:00 pm - 3:00 pmWhereOnline |
An overview of the JPSurv webtool to analyze survival data by year of diagnosis and estimate calendar years when changes in survival have occurred. Covers topics such as the JPsurv model, trend survival measures in the survival and probability of death scales, and applications. A live demonstration is provided using the JPSurv webtool application. Speakers: Angela Mariotto, PhD Chief, Data Analytics Branch National Cancer Institute Theresa Devasia, PhD Mathematical Statistician, Data Analytics Branch National Cancer Institute | 2022-09-29 13:00:00 | Online | Statistics,Cancer | Online | CBIIT | 0 | Jpsurv a Tool to Analyze and Estimate Cancer Survival Trends | |||
646 |
DescriptionPlease plan to attend the Physician-Scientist Early Investigator Program (PEIP) seminar by: Jay Ronquillo, M.D. Center for Biomedical Informatics and Information Technology, NCI Dr. Ronquillo is an NIH Data and Technology Advancement (DATA) National Service Scholar with the Center for Biomedical Informatics and Information Technology, NCI. His primary research and teaching interests are in the application ...Read MorePlease plan to attend the Physician-Scientist Early Investigator Program (PEIP) seminar by: Jay Ronquillo, M.D. Center for Biomedical Informatics and Information Technology, NCI Dr. Ronquillo is an NIH Data and Technology Advancement (DATA) National Service Scholar with the Center for Biomedical Informatics and Information Technology, NCI. His primary research and teaching interests are in the application of real-world evidence for the development of new methods, analyses, and technologies that impact precision medicine, population health, and healthcare policy.Join by meeting number Meeting number (access code): 2305 783 1834 Meeting password: QRugYUD?758 DetailsOrganizerCBIITWhenThu, Sep 29, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Please plan to attend the Physician-Scientist Early Investigator Program (PEIP) seminar by: Jay Ronquillo, M.D. Center for Biomedical Informatics and Information Technology, NCI Dr. Ronquillo is an NIH Data and Technology Advancement (DATA) National Service Scholar with the Center for Biomedical Informatics and Information Technology, NCI. His primary research and teaching interests are in the application of real-world evidence for the development of new methods, analyses, and technologies that impact precision medicine, population health, and healthcare policy. Join by meeting number Meeting number (access code): 2305 783 1834 Meeting password: QRugYUD?758 | 2022-09-29 13:00:00 | Online | Cancer | Online | CBIIT | 0 | Opportunities for precision medicine using informatics and the NIH 'All of Us' program | |||
615 |
Description
Join the newest Containers and Workflow Interest Group (CWIG) webinar series.
Presenter: Dr. Travis Zack, MD, PhD, Oncology Fellow
Bakar Computational Health Sciences Institute, UCSF
Meeting number (access code): 2302 115 0349
Meeting password: JiAwFf3J@73
Join the newest Containers and Workflow Interest Group (CWIG) webinar series.
Presenter: Dr. Travis Zack, MD, PhD, Oncology Fellow
Bakar Computational Health Sciences Institute, UCSF
Meeting number (access code): 2302 115 0349
Meeting password: JiAwFf3J@73
DetailsOrganizerContainers and Workflow Interest Group (CWIG)WhenThu, Sep 29, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Join the newest Containers and Workflow Interest Group (CWIG) webinar series. Presenter: Dr. Travis Zack, MD, PhD, Oncology Fellow Bakar Computational Health Sciences Institute, UCSF Meeting number (access code): 2302 115 0349 Meeting password: JiAwFf3J@73 | 2022-09-29 15:00:00 | Online | Data Science | Online | Containers and Workflow Interest Group (CWIG) | 0 | UCSF Information Commons, Clinical Use Cases and Models - Session II of II | |||
641 |
Description
The goal of this webinar series is to enhance understanding within the NCI and the research community of opportunities for targeting fusion oncoproteins through emerging chemoproteomic methods. This presentation will focus on computational tools and strategies for rational degrader design to target fusion oncoproteins.
Speaker:
Huan Rui, Ph.D.
Senior Scientist, Computational Chemistry
Dr. Rui is a senior scientist at Amgen specializing in computational chemistry. Dr. Rui currently leads the computational efforts for ...Read More
The goal of this webinar series is to enhance understanding within the NCI and the research community of opportunities for targeting fusion oncoproteins through emerging chemoproteomic methods. This presentation will focus on computational tools and strategies for rational degrader design to target fusion oncoproteins.
Speaker:
Huan Rui, Ph.D.
Senior Scientist, Computational Chemistry
Dr. Rui is a senior scientist at Amgen specializing in computational chemistry. Dr. Rui currently leads the computational efforts for the induced proximity platform at Amgen, where her research interests include using molecular dynamics and free energy simulations to study biological systems and applying machine-learning techniques to augment physics-based modeling.
DetailsOrganizerNCIWhenFri, Sep 30, 2022 - 12:00 pm - 1:00 pmWhereOnline |
The goal of this webinar series is to enhance understanding within the NCI and the research community of opportunities for targeting fusion oncoproteins through emerging chemoproteomic methods. This presentation will focus on computational tools and strategies for rational degrader design to target fusion oncoproteins. Speaker: Huan Rui, Ph.D. Senior Scientist, Computational Chemistry Dr. Rui is a senior scientist at Amgen specializing in computational chemistry. Dr. Rui currently leads the computational efforts for the induced proximity platform at Amgen, where her research interests include using molecular dynamics and free energy simulations to study biological systems and applying machine-learning techniques to augment physics-based modeling. | 2022-09-30 12:00:00 | Online | Cancer,Proteomics | Online | NCI | 0 | Novel Chemical Approaches for Targeting Fusion Oncoproteins: Computational Tools and Strategies for Rational Degrader Design | |||
638 |
Description
We invite you to join in an inspiring conversation between a thought leader from the Cancer Moonshot and creative visualization expert and opportunity to engage with new colleagues from other fields in a discussion on the frontiers of cancer data visualization. Additional information can be found at the DataViz + Cancer website.
Speakers:
Benjamin Stokes, Ph.D.
Associate Professor
American University
Civic media scholar, neighborhood game designer
Director of The Playful City ...Read More
We invite you to join in an inspiring conversation between a thought leader from the Cancer Moonshot and creative visualization expert and opportunity to engage with new colleagues from other fields in a discussion on the frontiers of cancer data visualization. Additional information can be found at the DataViz + Cancer website.
Speakers:
Benjamin Stokes, Ph.D.
Associate Professor
American University
Civic media scholar, neighborhood game designer
Director of The Playful City Lab
Chief Advisor of interactive media for the Peabody Awards
Eric Holland, M.D., Ph.D.
Senior VP and Director
Human Biology Division at Fred Hutch
Physician-scientist who develops multidisciplinary approaches to address the molecular basis of brain tumors and new approaches to their treatment
DetailsOrganizerNCIWhenMon, Oct 03, 2022 - 12:00 pm - 1:30 pmWhereOnline |
We invite you to join in an inspiring conversation between a thought leader from the Cancer Moonshot and creative visualization expert and opportunity to engage with new colleagues from other fields in a discussion on the frontiers of cancer data visualization. Additional information can be found at the DataViz + Cancer website. Speakers: Benjamin Stokes, Ph.D. Associate Professor American University Civic media scholar, neighborhood game designer Director of The Playful City Lab Chief Advisor of interactive media for the Peabody Awards Eric Holland, M.D., Ph.D. Senior VP and Director Human Biology Division at Fred Hutch Physician-scientist who develops multidisciplinary approaches to address the molecular basis of brain tumors and new approaches to their treatment | 2022-10-03 12:00:00 | Online | Cancer,Data Resources | Online | NCI | 0 | DataViz + Cancer MicroLab: How Can Interactive Media Help Advance Brain Cancer Research? | |||
647 |
Description
Join Drs. Andrey Fedorov and Hugo Aerts for the upcoming October NCI Imaging and Informatics Community Webinar. Their presentation includes updates to the Imaging Data Commons (IDC)—a repository of the NCI Cancer Research Data Commons—and conversation concerning a cloud-based platform for the dissemination of deep learning models.
Dr. Fedorov ...Read More
Join Drs. Andrey Fedorov and Hugo Aerts for the upcoming October NCI Imaging and Informatics Community Webinar. Their presentation includes updates to the Imaging Data Commons (IDC)—a repository of the NCI Cancer Research Data Commons—and conversation concerning a cloud-based platform for the dissemination of deep learning models.
Dr. Fedorov will provide the update on IDC and discuss new data sets and new features of the repository. He will also review the work on expanding learning materials, including the application of IDC and cloud computing to support reproducible artificial intelligence (AI) research.
Dr. Aerts will present on the cloud-based platform that NCI and his team are developing for the structured dissemination of deep learning models that is domain-, data-, and framework-agnostic, and can cater to different workflows and contributors’ preferences.
Speakers:
Andrey Fedorov, Ph.D.
Dr. Fedorov is an associate professor of radiology at Harvard Medical School. His research is in the translation and validation of medical image computing technology in clinical research applications, with a focus on quantitative imaging, imaging informatics, and image-guided interventional procedures. He is currently a co-principal investigator tasked with building the NCI Imaging Data Commons.
Hugo Aerts, Ph.D.
Dr. Aerts is an associate professor at Harvard University and a full professor at Maastricht University. He is the director of the Artificial Intelligence in Medicine (AIM) Program at Harvard-Mass General Brigham (MGB), a leader in medical AI, and a principal investigator on major NIH-supported efforts, including NCI’s Quantitative Imaging Network and Informatics Technology for Cancer Research initiatives.
Meeting number:2307 428 4731
DetailsOrganizerCBIITWhenMon, Oct 03, 2022 - 1:00 pm - 2:30 pmWhereOnline |
Join Drs. Andrey Fedorov and Hugo Aerts for the upcoming October NCI Imaging and Informatics Community Webinar. Their presentation includes updates to the Imaging Data Commons (IDC)—a repository of the NCI Cancer Research Data Commons—and conversation concerning a cloud-based platform for the dissemination of deep learning models. Dr. Fedorov will provide the update on IDC and discuss new data sets and new features of the repository. He will also review the work on expanding learning materials, including the application of IDC and cloud computing to support reproducible artificial intelligence (AI) research. Dr. Aerts will present on the cloud-based platform that NCI and his team are developing for the structured dissemination of deep learning models that is domain-, data-, and framework-agnostic, and can cater to different workflows and contributors’ preferences. Speakers: Andrey Fedorov, Ph.D. Dr. Fedorov is an associate professor of radiology at Harvard Medical School. His research is in the translation and validation of medical image computing technology in clinical research applications, with a focus on quantitative imaging, imaging informatics, and image-guided interventional procedures. He is currently a co-principal investigator tasked with building the NCI Imaging Data Commons. Hugo Aerts, Ph.D. Dr. Aerts is an associate professor at Harvard University and a full professor at Maastricht University. He is the director of the Artificial Intelligence in Medicine (AIM) Program at Harvard-Mass General Brigham (MGB), a leader in medical AI, and a principal investigator on major NIH-supported efforts, including NCI’s Quantitative Imaging Network and Informatics Technology for Cancer Research initiatives. Meeting number:2307 428 4731 | 2022-10-03 13:00:00 | Online | Image Analysis | Online | CBIIT | 0 | A Cloud-Based Platform for the Dissemination of Deep Learning Models | |||
619 |
Description
This one-hour session builds on the Introduction to R & RStudio class. The session begins by introducing and identifying different categories of data. Participants will examine data types, create vectors, and assign values to vectors. They will also learn how to import data into RStudio, and examine those data frames for further cleaning, analysis and visualization. Participants will learn the differences between numeric, character, and logical data and how to change data types in R. ...Read More
This one-hour session builds on the Introduction to R & RStudio class. The session begins by introducing and identifying different categories of data. Participants will examine data types, create vectors, and assign values to vectors. They will also learn how to import data into RStudio, and examine those data frames for further cleaning, analysis and visualization. Participants will learn the differences between numeric, character, and logical data and how to change data types in R. They will also be able to create subsets and export project data for future use.
DetailsOrganizerNIH LibraryWhenTue, Oct 04, 2022 - 11:00 am - 12:00 pmWhereOnline |
This one-hour session builds on the Introduction to R & RStudio class. The session begins by introducing and identifying different categories of data. Participants will examine data types, create vectors, and assign values to vectors. They will also learn how to import data into RStudio, and examine those data frames for further cleaning, analysis and visualization. Participants will learn the differences between numeric, character, and logical data and how to change data types in R. They will also be able to create subsets and export project data for future use. | 2022-10-04 11:00:00 | Online | Programming | Online | NIH Library | 0 | Data Types in R and RStudio | |||
659 |
Description
Speaker:
Steven D Cappell
NIH Stadtman Investigator
Center for Cancer Research – National Cancer Institute – Bethesda MD
My laboratory is integrating quantitative image analysis with genetic, biochemical, and systems biology approaches to understand how cells make fate decisions, such as the decision to enter the cell cycle and proliferate. This is arguably one of the most important decisions mammalian cells have to make with defective regulation leading to cancer or tissue degeneration. The control ...Read More
Speaker:
Steven D Cappell
NIH Stadtman Investigator
Center for Cancer Research – National Cancer Institute – Bethesda MD
My laboratory is integrating quantitative image analysis with genetic, biochemical, and systems biology approaches to understand how cells make fate decisions, such as the decision to enter the cell cycle and proliferate. This is arguably one of the most important decisions mammalian cells have to make with defective regulation leading to cancer or tissue degeneration. The control mechanisms underlying cell cycle regulation are highly dynamic and complex, and we are interested in mapping these dynamic signaling pathways to identify vulnerabilities that can be exploited for therapeutic utility. Our efforts to monitor signaling pathways in real-time and in live cells have already begun to reveal some of the mechanisms involved in cell cycle commitment. Moving forward, we seek to gain a more detailed understanding of the regulatory circuits generating irreversibility in the cell cycle, how these mechanisms are perturbed in cancer cells, and how cancer cells specifically adapt to genetic or pharmacological perturbations to continue to proliferate.
Venue: Building 4 – Room 433 (NIH Bethesda campus) + virtual
Meeting ID: 161 216 1536
Passcode: 169470
DetailsOrganizerSystems Biology Interest GroupWhenTue, Oct 04, 2022 - 11:00 am - 12:00 pmWhereOnline |
Speaker: Steven D Cappell NIH Stadtman Investigator Center for Cancer Research – National Cancer Institute – Bethesda MD My laboratory is integrating quantitative image analysis with genetic, biochemical, and systems biology approaches to understand how cells make fate decisions, such as the decision to enter the cell cycle and proliferate. This is arguably one of the most important decisions mammalian cells have to make with defective regulation leading to cancer or tissue degeneration. The control mechanisms underlying cell cycle regulation are highly dynamic and complex, and we are interested in mapping these dynamic signaling pathways to identify vulnerabilities that can be exploited for therapeutic utility. Our efforts to monitor signaling pathways in real-time and in live cells have already begun to reveal some of the mechanisms involved in cell cycle commitment. Moving forward, we seek to gain a more detailed understanding of the regulatory circuits generating irreversibility in the cell cycle, how these mechanisms are perturbed in cancer cells, and how cancer cells specifically adapt to genetic or pharmacological perturbations to continue to proliferate. Venue: Building 4 – Room 433 (NIH Bethesda campus) + virtual Meeting ID: 161 216 1536 Passcode: 169470 | 2022-10-04 11:00:00 | Online | Single Cell Technologies | Online | Systems Biology Interest Group | 0 | Leveraging single-cell dynamics to predict cell fates | |||
645 |
Description
Speaker:
Luis G. Carvajal-Carmona, Ph.D.
Professor and Auburn Community Cancer Endowed Chair in Basic Science
Department of Biochemistry and Molecular Medicine
UC Davis Health School of Medicine
Dr. Luis Carvajal-Carmona is Professor and Auburn Community Cancer Endowed Chair in Basic Science in the Department of Biochemistry and Molecular Medicine at UC Davis Health School of Medicine. He also is the leader of the Cancer Center’s Latinos United for Cancer ...Read More
Speaker:
Luis G. Carvajal-Carmona, Ph.D.
Professor and Auburn Community Cancer Endowed Chair in Basic Science
Department of Biochemistry and Molecular Medicine
UC Davis Health School of Medicine
Dr. Luis Carvajal-Carmona is Professor and Auburn Community Cancer Endowed Chair in Basic Science in the Department of Biochemistry and Molecular Medicine at UC Davis Health School of Medicine. He also is the leader of the Cancer Center’s Latinos United for Cancer Health Advancement (LUCHA) initiative and the co-director Community Engagement Program at the Clinical and Translational Science Center. His research group at the Carvajal-Carmona Lab is interested in the study of cancer genetic susceptibility. They use genetic, genomic, and functional approaches to identify novel cancer-causing gene and mutations in human populations, to investigate the function of genetic variation associated with disease, and to carry out pre-clinical studies aimed at developing better molecularly guided therapies. In this webinar, Dr. Carvajal-Carmona will be presenting on genetics, genomics, and precision medicine of gastric cancer in Latinos
DetailsOrganizerSeqSPACE Webinar SeriesWhenTue, Oct 04, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Speaker: Luis G. Carvajal-Carmona, Ph.D. Professor and Auburn Community Cancer Endowed Chair in Basic Science Department of Biochemistry and Molecular Medicine UC Davis Health School of Medicine Dr. Luis Carvajal-Carmona is Professor and Auburn Community Cancer Endowed Chair in Basic Science in the Department of Biochemistry and Molecular Medicine at UC Davis Health School of Medicine. He also is the leader of the Cancer Center’s Latinos United for Cancer Health Advancement (LUCHA) initiative and the co-director Community Engagement Program at the Clinical and Translational Science Center. His research group at the Carvajal-Carmona Lab is interested in the study of cancer genetic susceptibility. They use genetic, genomic, and functional approaches to identify novel cancer-causing gene and mutations in human populations, to investigate the function of genetic variation associated with disease, and to carry out pre-clinical studies aimed at developing better molecularly guided therapies. In this webinar, Dr. Carvajal-Carmona will be presenting on genetics, genomics, and precision medicine of gastric cancer in Latinos | 2022-10-04 15:00:00 | Online | Cancer,Genomics | Online | SeqSPACE Webinar Series | 0 | Genetics, Genomics and Precision Medicine of Gastric Cancer in Latinos | |||
644 |
Description
In this seminar, Project Rōnin’s Vice President of Data Science, Dr. Christine Swisher, will discuss the challenges of ensuring safe and ethical artificial intelligence (AI) in healthcare.
Specifically, Dr. Swisher will examine:
In this seminar, Project Rōnin’s Vice President of Data Science, Dr. Christine Swisher, will discuss the challenges of ensuring safe and ethical artificial intelligence (AI) in healthcare.
Specifically, Dr. Swisher will examine:
DetailsOrganizerCBIITWhenWed, Oct 05, 2022 - 11:00 am - 12:00 pmWhereOnline |
In this seminar, Project Rōnin’s Vice President of Data Science, Dr. Christine Swisher, will discuss the challenges of ensuring safe and ethical artificial intelligence (AI) in healthcare. Specifically, Dr. Swisher will examine: the need to monitor the real-world impact of AI-based decision-making tools proactively and continuously. approaches that result in improved technology reliability and better patient outcomes. With her Project Rōnin team, Dr. Swisher has delivered AI-based systems that support clinical decision-making and natural language processing innovations. She also holds over 20 patents on machine learning and AI. The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. Speaker: Christine Swisher, Ph.D. Dr. Swisher leads teams of data scientists, statisticians, clinical informaticists, and machine learning experts to build technologies that solve challenging clinical problems. She is passionate about improving patient outcomes and delivering innovations safely and ethically. | 2022-10-05 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Continuous Delivery of Safe and Ethical Artificial Intelligence in Healthcare | |||
648 |
Description
For our next CDSL webinar we will have presentations by two CDSL fellows: Ekaterina Kazantseva and Sanna Madan.
Ekaterina is a master’s student in Dr. Mikhail Kolmogorov's group and the title of her talk is "Phasing of Partially Resolved Metagenomic Assemblies".
Sanna is a PhD student working with Dr. Eytan Ruppin and she will give a talk on "Identifying new CAR-T targets from single cell RNA-seq dataRead More
For our next CDSL webinar we will have presentations by two CDSL fellows: Ekaterina Kazantseva and Sanna Madan.
Ekaterina is a master’s student in Dr. Mikhail Kolmogorov's group and the title of her talk is "Phasing of Partially Resolved Metagenomic Assemblies".
Sanna is a PhD student working with Dr. Eytan Ruppin and she will give a talk on "Identifying new CAR-T targets from single cell RNA-seq data".
Abstract (Ekaterina's talk):
Long-read metagenomic sequencing has recently been used to recover complete bacterial genomes from various complex metagenomic communities. Metagenome assembly algorithms however are still facing challenges in deconvolution of closely-related species and strains. De novo assemblies of highly heterogeneous bacterial species typically result in tangled assembly graphs, where some sequences could be strain-specific, while others represent species-level consensus. Such a partially-collapsed representation of bacterial strains does not take full advantage of the ability of long reads to phase small variants. In this work we present an algorithm called MetaPhase that extends metagenomic phasing approaches to assembly graphs. Our algorithm operates on graph paths rather than single contigs, and iteratively simplifies assembly graphs with newly reconstructed strain contigs. We benchmark our algorithm using mock communities and show that it produces accurate and complete strain-level reconstructions and substantially improves over the initial partially-collapsed assemblies.
Abstract (Sanna's talk):
Chimeric antigen receptor (CAR) T cell therapy is a powerful and promising tool for unleashing lasting antitumor immunity. While this modality has yielded major clinical success in treating blood cancers, obstacles remain to achieve its potential in solid tumors. In particular, identifying targets that are uniformly expressed across cancer cells and minimally so on normal cells remains a key challenge. Thus, the criteria for ideal CAR-T targets are two-fold: they must (1) be selectively expressed in tumor cells and not on non-tumor cells within the tumor microenvironment (TME), and (2) be lowly expressed across normal human tissues. Mining single cell transcriptomics datasets of solid tumors, we first survey the landscape of current CAR-T targets in the clinic, charting their tumor cell-specificity (termed selectivity score) and expression levels across healthy tissues (termed safety score). Next, we identify cell surface protein-encoding genes whose selectivity and safety scores surpass those of the leading targets in clinics. Subsequently, we put forth that the proteins encoding the genes resulting from our analysis may constitute optimal new targets of CAR-T therapies. Intriguingly, our analysis has yielded an enrichment of targets for head and neck cancer, a cancer type for which there are currently very few unique targets of CAR-T therapies in the clinic. Taken together, this analysis uncovers a large potential of scRNA-seq data in developing precise, selective CAR-T therapies.
DetailsOrganizerCDSLWhenWed, Oct 05, 2022 - 11:00 am - 12:00 pmWhereOnline |
For our next CDSL webinar we will have presentations by two CDSL fellows: Ekaterina Kazantseva and Sanna Madan. Ekaterina is a master’s student in Dr. Mikhail Kolmogorov's group and the title of her talk is "Phasing of Partially Resolved Metagenomic Assemblies". Sanna is a PhD student working with Dr. Eytan Ruppin and she will give a talk on "Identifying new CAR-T targets from single cell RNA-seq data". Abstract (Ekaterina's talk): Long-read metagenomic sequencing has recently been used to recover complete bacterial genomes from various complex metagenomic communities. Metagenome assembly algorithms however are still facing challenges in deconvolution of closely-related species and strains. De novo assemblies of highly heterogeneous bacterial species typically result in tangled assembly graphs, where some sequences could be strain-specific, while others represent species-level consensus. Such a partially-collapsed representation of bacterial strains does not take full advantage of the ability of long reads to phase small variants. In this work we present an algorithm called MetaPhase that extends metagenomic phasing approaches to assembly graphs. Our algorithm operates on graph paths rather than single contigs, and iteratively simplifies assembly graphs with newly reconstructed strain contigs. We benchmark our algorithm using mock communities and show that it produces accurate and complete strain-level reconstructions and substantially improves over the initial partially-collapsed assemblies. Abstract (Sanna's talk): Chimeric antigen receptor (CAR) T cell therapy is a powerful and promising tool for unleashing lasting antitumor immunity. While this modality has yielded major clinical success in treating blood cancers, obstacles remain to achieve its potential in solid tumors. In particular, identifying targets that are uniformly expressed across cancer cells and minimally so on normal cells remains a key challenge. Thus, the criteria for ideal CAR-T targets are two-fold: they must (1) be selectively expressed in tumor cells and not on non-tumor cells within the tumor microenvironment (TME), and (2) be lowly expressed across normal human tissues. Mining single cell transcriptomics datasets of solid tumors, we first survey the landscape of current CAR-T targets in the clinic, charting their tumor cell-specificity (termed selectivity score) and expression levels across healthy tissues (termed safety score). Next, we identify cell surface protein-encoding genes whose selectivity and safety scores surpass those of the leading targets in clinics. Subsequently, we put forth that the proteins encoding the genes resulting from our analysis may constitute optimal new targets of CAR-T therapies. Intriguingly, our analysis has yielded an enrichment of targets for head and neck cancer, a cancer type for which there are currently very few unique targets of CAR-T therapies in the clinic. Taken together, this analysis uncovers a large potential of scRNA-seq data in developing precise, selective CAR-T therapies. | 2022-10-05 11:00:00 | Online | Genomics, | Online | CDSL | 0 | Phasing of Partially Resolved Metagenomic Assemblies and Identifying new CAR-T targets from single cell RNA-seq data | |||
660 |
Description
This is a reminder that Friday we are having the next meeting of your SIG. We are excited to host:
This is a reminder that Friday we are having the next meeting of your SIG. We are excited to host:
DetailsOrganizerLong-read and Long-range Sequencing Scientific Interest GroupWhenFri, Oct 07, 2022 - 2:00 pm - 3:00 pmWhereOnline |
This is a reminder that Friday we are having the next meeting of your SIG. We are excited to host: Sergey Koren, Associate Investigator, NIH/NHGRI Mitchell R. Vollger, University of Washington | 2022-10-07 14:00:00 | Online | Sequencing Technologies | Online | Long-read and Long-range Sequencing Scientific Interest Group | 0 | Complete, telomere-to-telomere assembly of diploid human genomes and beyond AND Using a complete human reference to explore variation in segmental duplications | |||
620 |
Description
This is an introductory two-part course that focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. RStudio also connects with Git and Github, and learners will have a chance to experiment with this integration and understand its advantages for collaboration and ...Read More
This is an introductory two-part course that focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. RStudio also connects with Git and Github, and learners will have a chance to experiment with this integration and understand its advantages for collaboration and version control. Some familiarity or experience in R and RStudio is recommended but not required. Participants are encouraged to install R, RStudio and create a GitHub account before the course so that they can follow along with the instructor. Participants must register separately for Part 2 of this class.
DetailsOrganizerNIH LibraryWhenTue, Oct 11, 2022 - 11:00 am - 12:00 pmWhereOnline |
This is an introductory two-part course that focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. RStudio also connects with Git and Github, and learners will have a chance to experiment with this integration and understand its advantages for collaboration and version control. Some familiarity or experience in R and RStudio is recommended but not required. Participants are encouraged to install R, RStudio and create a GitHub account before the course so that they can follow along with the instructor. Participants must register separately for Part 2 of this class. | 2022-10-11 11:00:00 | Online | Programming | Online | NIH Library | 0 | Project Management and Reproducibility in RStudio: Part 1 | |||
649 |
Description
This one-hour introductory class provides researchers with an overview of online resources for locating research datasets, data repositories, and data publications for data sharing and re-use. Participants will learn search strategies for locating datasets through federated data search portals and generalist data repositories, including directories for locating discipline-specific and institutional data repositories. An overview of key issues to consider when re-using datasets or when locating a data repository for sharing and preservation purposes will be ...Read More
This one-hour introductory class provides researchers with an overview of online resources for locating research datasets, data repositories, and data publications for data sharing and re-use. Participants will learn search strategies for locating datasets through federated data search portals and generalist data repositories, including directories for locating discipline-specific and institutional data repositories. An overview of key issues to consider when re-using datasets or when locating a data repository for sharing and preservation purposes will be discussed.
DetailsOrganizerNIH LibraryWhenWed, Oct 12, 2022 - 11:00 am - 12:00 pmWhereOnline |
This one-hour introductory class provides researchers with an overview of online resources for locating research datasets, data repositories, and data publications for data sharing and re-use. Participants will learn search strategies for locating datasets through federated data search portals and generalist data repositories, including directories for locating discipline-specific and institutional data repositories. An overview of key issues to consider when re-using datasets or when locating a data repository for sharing and preservation purposes will be discussed. | 2022-10-12 11:00:00 | Online | Data Resources | Online | NIH Library | 0 | Resources for Finding and Sharing Research Data | |||
661 |
Description
Join us for a panel discussion with the 7 generalist repositories participating in the NIH Generalist Repository Ecosystem Initiative (GREI). Learn about common features and capabilities across repositories as well as repositories that support specific use cases. Discover how these repositories are working together to support NIH-funded researchers and participate in an audience Q&A.
Speakers:
Introduction by: Ishwar Chandramouliswaran (NIH ODSS)
Sonia Barbosa (Dataverse)
Jennifer Gibson (Dryad)
Sara Gonzales (Northwestern, Zenodo)
Ana ...Read More
Join us for a panel discussion with the 7 generalist repositories participating in the NIH Generalist Repository Ecosystem Initiative (GREI). Learn about common features and capabilities across repositories as well as repositories that support specific use cases. Discover how these repositories are working together to support NIH-funded researchers and participate in an audience Q&A.
Speakers:
Introduction by: Ishwar Chandramouliswaran (NIH ODSS)
Sonia Barbosa (Dataverse)
Jennifer Gibson (Dryad)
Sara Gonzales (Northwestern, Zenodo)
Ana Van Gulick (Figshare)
Luca Belletti (Mendeley Data)
Eric Olson (Open Science Framework)
Ida Sim (Vivli)
DetailsOrganizerThe NIH Generalist Repository Ecosystem Initiative (GREI)WhenWed, Oct 12, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Join us for a panel discussion with the 7 generalist repositories participating in the NIH Generalist Repository Ecosystem Initiative (GREI). Learn about common features and capabilities across repositories as well as repositories that support specific use cases. Discover how these repositories are working together to support NIH-funded researchers and participate in an audience Q&A. Speakers: Introduction by: Ishwar Chandramouliswaran (NIH ODSS) Sonia Barbosa (Dataverse) Jennifer Gibson (Dryad) Sara Gonzales (Northwestern, Zenodo) Ana Van Gulick (Figshare) Luca Belletti (Mendeley Data) Eric Olson (Open Science Framework) Ida Sim (Vivli) | 2022-10-12 13:00:00 | Online | Data Management | Online | The NIH Generalist Repository Ecosystem Initiative (GREI) | 0 | Meet the GREI Generalist Repositories | |||
621 |
Description
This is an introductory two-part course that focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. Participants will learn how to create reproducible documents that combine code, analysis, and narrative. This intermediate-level course is designed to be relevant to students from different disciplines. Some familiarity or experience in R and RStudio is recommended but not ...Read More
This is an introductory two-part course that focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. Participants will learn how to create reproducible documents that combine code, analysis, and narrative. This intermediate-level course is designed to be relevant to students from different disciplines. Some familiarity or experience in R and RStudio is recommended but not required. Participants are encouraged to install R, RStudio and create a GitHub account before the course so that they can follow along with the instructor. Participants must register separately for Part 1 of this class.
DetailsOrganizerNIH LibraryWhenThu, Oct 13, 2022 - 11:00 am - 12:00 pmWhereOnline |
This is an introductory two-part course that focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. Participants will learn how to create reproducible documents that combine code, analysis, and narrative. This intermediate-level course is designed to be relevant to students from different disciplines. Some familiarity or experience in R and RStudio is recommended but not required. Participants are encouraged to install R, RStudio and create a GitHub account before the course so that they can follow along with the instructor. Participants must register separately for Part 1 of this class. | 2022-10-13 11:00:00 | Online | Programming | Online | NIH Library | 0 | Project Management and Reproducibility in RStudio: Part 2 | |||
622 |
Description
This virtual hands-on workshop explores the fundamentals of machine learning using MATLAB. The participants will be introduced to machine learning techniques to quickly explore data, use classification and regression apps to interactively train, compare and tune a model, and optimize the model using hyperparameter tuning. The participants will also learn how to get started with deep learning in MATLAB for data preparation, design, simulation, and deployment of deep neural networks. This is an introductory level ...Read More
This virtual hands-on workshop explores the fundamentals of machine learning using MATLAB. The participants will be introduced to machine learning techniques to quickly explore data, use classification and regression apps to interactively train, compare and tune a model, and optimize the model using hyperparameter tuning. The participants will also learn how to get started with deep learning in MATLAB for data preparation, design, simulation, and deployment of deep neural networks. This is an introductory level class.
DetailsOrganizerNIH LibraryWhenThu, Oct 13, 2022 - 1:00 pm - 2:30 pmWhereOnline |
This virtual hands-on workshop explores the fundamentals of machine learning using MATLAB. The participants will be introduced to machine learning techniques to quickly explore data, use classification and regression apps to interactively train, compare and tune a model, and optimize the model using hyperparameter tuning. The participants will also learn how to get started with deep learning in MATLAB for data preparation, design, simulation, and deployment of deep neural networks. This is an introductory level class. | 2022-10-13 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Library | 0 | Hands On Virtual Lab: Machine Learning | |||
643 |
Description
The call for better data and evidence for decision-making has become very real as evidenced by the Federal Data Strategy, as well as the passage of both the Foundations of Evidence-based Policymaking Act (Evidence Act) and the CHIPS+ Act. The challenge to be addressed is finding out not just what data are produced but how they are used – in essence, to build an Amazon.com for data -so that both governments and researchers can quickly ...Read More
The call for better data and evidence for decision-making has become very real as evidenced by the Federal Data Strategy, as well as the passage of both the Foundations of Evidence-based Policymaking Act (Evidence Act) and the CHIPS+ Act. The challenge to be addressed is finding out not just what data are produced but how they are used – in essence, to build an Amazon.com for data -so that both governments and researchers can quickly find the data and evidence they need. To paraphrase Lee Platt’s aphorism about HP - “If researchers knew what researchers know, they would be three times more productive"
This talk will provide an overview of a massive effort over the past five years which has been focused on finding out how data are being used, to answer what questions, and find out who are the experts, by mining text documents that are hidden in plain sight - in the text of scientific publications, government reports and public documents.
Just as with Amazon, the results are enormously powerful. The pilot, which is sponsored by agencies such as NSF’s National Center for Science and Engineering Statistics (NCSES) and the Department of Education’s National Center for Education Statistics (NCES) – has generated a prototype API and a dashboard that can be used – so that, for example, agencies can document dataset use for Congress and the public, program managers can identify investment opportunities rapidly and researchers can more easily build on existing knowledge rather than redoing things from scratch.
Speaker:
Dr. Julia Lane is a Professor at the NYU Wagner Graduate School of Public Service. She is founder or co-founder of many data initiatives that have served the public good, including the Longitudinal-Employer Household Dynamics Program at the Census Bureau; the Star Metrics/UMETRICS program that led to the establishment of the Institute for Research on Innovation and Science at the University of Michigan; the New Zealand Integrated Data Infrastructure, which holds data from across various sectors; the NORC Data Enclave supporting research access to confidential data; the Patentsview project to increase the usability of patent data; and the Coleridge Initiative to use data more effectively in government decision-making. She currently serves on the Advisory Committee on Data for Evidence Building and the National AI Research Resources Task Force. Her most recent paper(link is external) was published in Nature, and used UMETRICS data.
DetailsOrganizerData Sharing and Reuse Seminar SeriesWhenFri, Oct 14, 2022 - 12:00 pm - 1:00 pmWhereOnline |
The call for better data and evidence for decision-making has become very real as evidenced by the Federal Data Strategy, as well as the passage of both the Foundations of Evidence-based Policymaking Act (Evidence Act) and the CHIPS+ Act. The challenge to be addressed is finding out not just what data are produced but how they are used – in essence, to build an Amazon.com for data -so that both governments and researchers can quickly find the data and evidence they need. To paraphrase Lee Platt’s aphorism about HP - “If researchers knew what researchers know, they would be three times more productive" This talk will provide an overview of a massive effort over the past five years which has been focused on finding out how data are being used, to answer what questions, and find out who are the experts, by mining text documents that are hidden in plain sight - in the text of scientific publications, government reports and public documents. Just as with Amazon, the results are enormously powerful. The pilot, which is sponsored by agencies such as NSF’s National Center for Science and Engineering Statistics (NCSES) and the Department of Education’s National Center for Education Statistics (NCES) – has generated a prototype API and a dashboard that can be used – so that, for example, agencies can document dataset use for Congress and the public, program managers can identify investment opportunities rapidly and researchers can more easily build on existing knowledge rather than redoing things from scratch. Speaker: Dr. Julia Lane is a Professor at the NYU Wagner Graduate School of Public Service. She is founder or co-founder of many data initiatives that have served the public good, including the Longitudinal-Employer Household Dynamics Program at the Census Bureau; the Star Metrics/UMETRICS program that led to the establishment of the Institute for Research on Innovation and Science at the University of Michigan; the New Zealand Integrated Data Infrastructure, which holds data from across various sectors; the NORC Data Enclave supporting research access to confidential data; the Patentsview project to increase the usability of patent data; and the Coleridge Initiative to use data more effectively in government decision-making. She currently serves on the Advisory Committee on Data for Evidence Building and the National AI Research Resources Task Force. Her most recent paper(link is external) was published in Nature, and used UMETRICS data. | 2022-10-14 12:00:00 | Online | Cloud,Data Management | Online | Data Sharing and Reuse Seminar Series | 0 | Data Search and Discovery: Building an Amazon.com for Data | |||
633 |
Description
October’s Containers and Workflow Interest Group (CWIG) webinar series.
Presenters:
Mike Callaghan, Cloud Customer Experience Account Lead, Google
Dave Belardo, Customer Engineer, Google
Mike Callaghan, Customer Engineer, Deloitte Consulting
Meeting number (access code): 2318 931 3839
Meeting password: YQbjmZ3U32@
October’s Containers and Workflow Interest Group (CWIG) webinar series.
Presenters:
Mike Callaghan, Cloud Customer Experience Account Lead, Google
Dave Belardo, Customer Engineer, Google
Mike Callaghan, Customer Engineer, Deloitte Consulting
Meeting number (access code): 2318 931 3839
Meeting password: YQbjmZ3U32@ DetailsOrganizerContainers and Workflow Interest Group (CWIG)WhenFri, Oct 14, 2022 - 3:00 pm - 4:00 pmWhereOnline |
October’s Containers and Workflow Interest Group (CWIG) webinar series. Presenters: Mike Callaghan, Cloud Customer Experience Account Lead, Google Dave Belardo, Customer Engineer, Google Mike Callaghan, Customer Engineer, Deloitte Consulting Meeting number (access code): 2318 931 3839 Meeting password: YQbjmZ3U32@ | 2022-10-14 15:00:00 | Online | Cloud | Online | Containers and Workflow Interest Group (CWIG) | 0 | Using Google for NCI Research | |||
650 |
Description
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class to assist researchers in writing a manuscript. Participants will become familiar with statistical issues that can arise as well as recommendations to prevent them. At the end of the class, participants should have a good sense of what to do and not to do when writing the statistical sections of a manuscript. Most of the ...Read More
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class to assist researchers in writing a manuscript. Participants will become familiar with statistical issues that can arise as well as recommendations to prevent them. At the end of the class, participants should have a good sense of what to do and not to do when writing the statistical sections of a manuscript. Most of the examples will be related to clinical research; however, anyone can benefit from the tips shared. Plenty of time will be devoted for questions, and references will be provided for more in-depth self-study.
This class complements, How to Write a Research Paper Parts 1 & 2, as it specifically covers key points in writing the statistical portion of a manuscript – particularly for clinical research. Attendance to How to Write a Research Paper is not required to benefit from this class.
DetailsOrganizerNIH LibraryWhenTue, Oct 18, 2022 - 10:00 am - 11:30 amWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class to assist researchers in writing a manuscript. Participants will become familiar with statistical issues that can arise as well as recommendations to prevent them. At the end of the class, participants should have a good sense of what to do and not to do when writing the statistical sections of a manuscript. Most of the examples will be related to clinical research; however, anyone can benefit from the tips shared. Plenty of time will be devoted for questions, and references will be provided for more in-depth self-study. This class complements, How to Write a Research Paper Parts 1 & 2, as it specifically covers key points in writing the statistical portion of a manuscript – particularly for clinical research. Attendance to How to Write a Research Paper is not required to benefit from this class. | 2022-10-18 10:00:00 | Online | Statistics | Online | NIH Library | 0 | Statistical Considerations in Preparing Your Paper | |||
670 |
Description
Our bodies host millions of microorganisms, and our relationship with these tiny living companions is complex. While microbial communities support normal processes and defend against harmful pathogens, infections with some viruses and bacteria can drive and modulate tumor progression. Advances in sequencing technologies and in bioinformatic methods have spurred the discovery of microbes in different cancer types. However, a major bottleneck for the study of microorganisms in human diseases is the difficulty to identify and ...Read More
Our bodies host millions of microorganisms, and our relationship with these tiny living companions is complex. While microbial communities support normal processes and defend against harmful pathogens, infections with some viruses and bacteria can drive and modulate tumor progression. Advances in sequencing technologies and in bioinformatic methods have spurred the discovery of microbes in different cancer types. However, a major bottleneck for the study of microorganisms in human diseases is the difficulty to identify and quantify microbes. Short read sequencing technologies, which are the current standard for microbiome studies, do not support identification of divergent and highly mutated sequences and pose a challenge for correctly mapping reads to diverse microbial genes. We develop deep learning-based sequence analysis frameworks that allow identification of diverse microorganisms in cancers, and minimize reliance on homology-based approaches. Applying these methods to publicly available sequencing cohorts, we detect new viruses that have not been implicated in cancer before and identify microbial proteins that correlate with patients’ outcomes.
Dr. Auslander earned her B.S. in computer science and biology from Tel Aviv University and continued her studies in Maryland, where she obtained a computer science Ph.D. from the University of Maryland with a combined fellowship at the National Cancer Institute. She received postdoctoral training at the National Center of Biotechnology Information (NCBI) and joined The Wistar Institute in 2021 as an assistant professor.
Speaker:
Dr. Noam Auslander from the Wistar Institute.
DetailsOrganizerCDSLWhenWed, Oct 19, 2022 - 11:00 am - 12:00 pmWhereOnline |
Our bodies host millions of microorganisms, and our relationship with these tiny living companions is complex. While microbial communities support normal processes and defend against harmful pathogens, infections with some viruses and bacteria can drive and modulate tumor progression. Advances in sequencing technologies and in bioinformatic methods have spurred the discovery of microbes in different cancer types. However, a major bottleneck for the study of microorganisms in human diseases is the difficulty to identify and quantify microbes. Short read sequencing technologies, which are the current standard for microbiome studies, do not support identification of divergent and highly mutated sequences and pose a challenge for correctly mapping reads to diverse microbial genes. We develop deep learning-based sequence analysis frameworks that allow identification of diverse microorganisms in cancers, and minimize reliance on homology-based approaches. Applying these methods to publicly available sequencing cohorts, we detect new viruses that have not been implicated in cancer before and identify microbial proteins that correlate with patients’ outcomes. Dr. Auslander earned her B.S. in computer science and biology from Tel Aviv University and continued her studies in Maryland, where she obtained a computer science Ph.D. from the University of Maryland with a combined fellowship at the National Cancer Institute. She received postdoctoral training at the National Center of Biotechnology Information (NCBI) and joined The Wistar Institute in 2021 as an assistant professor. Speaker: Dr. Noam Auslander from the Wistar Institute. | 2022-10-19 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CDSL | 0 | Deciphering microbial diversity in tumors by deep learning | |||
1038 |
Description
The QIIME platform, including QIIME 1 and QIIME 2, has been extensively applied in microbiome research, repeatedly making analyses that were challenging or impossible into routine tasks. While QIIME began as a marker gene (e.g., 16S, ITS, ...) analysis platform, microbiome research is transitioning toward multi-omics. With funding from NCI’s Informatics Technology for Cancer Research program, QIIME 2 is transitioning to become a microbiome multi-omics analysis platform. In this talk, Dr. Caporaso will introduce QIIME 2, including current ...Read More
The QIIME platform, including QIIME 1 and QIIME 2, has been extensively applied in microbiome research, repeatedly making analyses that were challenging or impossible into routine tasks. While QIIME began as a marker gene (e.g., 16S, ITS, ...) analysis platform, microbiome research is transitioning toward multi-omics. With funding from NCI’s Informatics Technology for Cancer Research program, QIIME 2 is transitioning to become a microbiome multi-omics analysis platform. In this talk, Dr. Caporaso will introduce QIIME 2, including current work on expanding beyond marker gene analysis. He will also discuss QIIME 2’s retrospective data provenance tracking system, and how it can help you to get help with your bioinformatics analyses and ensure that your work is reproducible. Dr. Caporaso will describe the ways that QIIME 2 can be used, including through the Galaxy graphical user interface, a command line interface, or a Python 3 API. Full support for using QIIME 2 through these different interface types ensures that using QIIME 2 will be accessible and convenient for you, regardless of your computational background. Finally, he will present on QIIME 2’s extensive educational and technical support resources, so that you can start learning QIIME 2 as quickly as possible.
Greg Caporaso, PhD
RegisterOrganizerBTEPWhenWed, Oct 19, 2022 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The QIIME platform, including QIIME 1 and QIIME 2, has been extensively applied in microbiome research, repeatedly making analyses that were challenging or impossible into routine tasks. While QIIME began as a marker gene (e.g., 16S, ITS, ...) analysis platform, microbiome research is transitioning toward multi-omics. With funding from NCI’s Informatics Technology for Cancer Research program, QIIME 2 is transitioning to become a microbiome multi-omics analysis platform. In this talk, Dr. Caporaso will introduce QIIME 2, including current work on expanding beyond marker gene analysis. He will also discuss QIIME 2’s retrospective data provenance tracking system, and how it can help you to get help with your bioinformatics analyses and ensure that your work is reproducible. Dr. Caporaso will describe the ways that QIIME 2 can be used, including through the Galaxy graphical user interface, a command line interface, or a Python 3 API. Full support for using QIIME 2 through these different interface types ensures that using QIIME 2 will be accessible and convenient for you, regardless of your computational background. Finally, he will present on QIIME 2’s extensive educational and technical support resources, so that you can start learning QIIME 2 as quickly as possible. Greg Caporaso, PhD Professor at Northern Arizona University A microbiome expert with 100+ related publications Lead developer of the QIIME 2 Platform Visit his lab website at https://caporasolab.us Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=mf29214700e5b2bdccb7616a2a6871b35 This event is open to all interested across NIH. However, it will also serve as lesson 1 in a 7 lesson course series on using QIIME 2 for microbiome analysis, which will focus on 16S rRNA amplicon data. Registration for the QIIME2 microbiome course series will be separate. Please email ncibtep@nih.gov for related questions or concerns. | 2022-10-19 13:00:00 | Online Webinar | Microbiome analysis | Online | Greg Caporaso (NAU) | BTEP | 0 | Greg Caporaso: Toward Fully Reproducible Microbiome Multi-omics Bioinformatics with QIIME 2 | ||
1039 |
Description
Welcome to the Microbiome Analysis with QIIME 2 course series!
This course series was designed to teach the basics of targeted amplicon data processing and analysis using the QIIME 2 platform. Attendees will learn how to format data and metadata, import data, denoise and classify sequences, and conduct basic analyses including measures of alpha and beta diversity. Content from this course was inspired by and uses code from the Read More
Welcome to the Microbiome Analysis with QIIME 2 course series!
This course series was designed to teach the basics of targeted amplicon data processing and analysis using the QIIME 2 platform. Attendees will learn how to format data and metadata, import data, denoise and classify sequences, and conduct basic analyses including measures of alpha and beta diversity. Content from this course was inspired by and uses code from the QIIME 2 Cancer Microbiome Intervention Tutorial created by the QIIME2 developers. However, this course does not seek to duplicate tutorial materials available on the QIIME2 website but rather complement them. We hope to provide a hands on learning environment where learners can test their skills and ask questions as we work through tutorial material and additional practice materials in optional help sessions.
This course series will include seven 1 - 1.25 hour lectures followed by a 45 minute optional practice session. Lessons will be on Mondays and Wednesdays from 1 - 2:15 pm. Help sessions will begin thereafter 2:15 - 3:00 pm.
Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=mbd4e8c310f625b8154dc52a0c491e335
(Note: Lesson 1 has a different meeting link.)
Lesson topics:
Lesson 1: Toward fully reproducible microbiome multi-omics bioinformatics with QIIME 2 (Oct 19th)
Lesson 2: Preparing the data, data import, and demultiplexing (Oct 24th)
Lesson 3: Trimming, read joining and quality filtering, OTU clustering / denoising (Oct 26th)
Lesson 4: Taxonomic classification, phylogeny, feature table filtering (Oct 31st)
Lesson 5: Alpha diversity (Nov 2nd )
Lesson 6: Beta diversity (Nov 7th)
Lesson 7: Course Wrap-up (Nov 9th)
Course requirements:
Who can take this course?
There are no prerequisites to take this course. However, learners should have basic unix skills (e.g., know how to navigate directories, copy, move, and download files from the web). This course is open to NCI researchers interested in using the QIIME2 platform to process and analyze microbiome data.
What materials are needed to take this course?
To participate in this course, you will need a computer, a reliable internet connection, and a web browser. All classes and help sessions will be held virtually through Webex. This class will be taught using the GOLD learning environment on the DNAnexus platform. Learners will need to sign up for a DNAnexus account and send their user name to ncibtep@nih.gov.
Registering here will register you for all 7 lessons, including Lesson 1, which will provide an introduction to QIIME 2 by one of the leading developers of the QIIME 2 platform, Dr. Greg Caporaso. You do not need to register for each individual lesson. If you decide to register for this series after the start of the course, please send us an email at ncibtep@nih.gov, and we will register you.
RegisterOrganizerBTEPWhenWed, Oct 19 - Wed, Nov 09, 2022 -1:00 pm - 1:15 pmWhereOnline Webinar |
Welcome to the Microbiome Analysis with QIIME 2 course series! This course series was designed to teach the basics of targeted amplicon data processing and analysis using the QIIME 2 platform. Attendees will learn how to format data and metadata, import data, denoise and classify sequences, and conduct basic analyses including measures of alpha and beta diversity. Content from this course was inspired by and uses code from the QIIME 2 Cancer Microbiome Intervention Tutorial created by the QIIME2 developers. However, this course does not seek to duplicate tutorial materials available on the QIIME2 website but rather complement them. We hope to provide a hands on learning environment where learners can test their skills and ask questions as we work through tutorial material and additional practice materials in optional help sessions. This course series will include seven 1 - 1.25 hour lectures followed by a 45 minute optional practice session. Lessons will be on Mondays and Wednesdays from 1 - 2:15 pm. Help sessions will begin thereafter 2:15 - 3:00 pm. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=mbd4e8c310f625b8154dc52a0c491e335 (Note: Lesson 1 has a different meeting link.) Lesson topics: Lesson 1: Toward fully reproducible microbiome multi-omics bioinformatics with QIIME 2 (Oct 19th) Lesson 2: Preparing the data, data import, and demultiplexing (Oct 24th) Lesson 3: Trimming, read joining and quality filtering, OTU clustering / denoising (Oct 26th) Lesson 4: Taxonomic classification, phylogeny, feature table filtering (Oct 31st) Lesson 5: Alpha diversity (Nov 2nd ) Lesson 6: Beta diversity (Nov 7th) Lesson 7: Course Wrap-up (Nov 9th) Course requirements: Who can take this course? There are no prerequisites to take this course. However, learners should have basic unix skills (e.g., know how to navigate directories, copy, move, and download files from the web). This course is open to NCI researchers interested in using the QIIME2 platform to process and analyze microbiome data. What materials are needed to take this course? To participate in this course, you will need a computer, a reliable internet connection, and a web browser. All classes and help sessions will be held virtually through Webex. This class will be taught using the GOLD learning environment on the DNAnexus platform. Learners will need to sign up for a DNAnexus account and send their user name to ncibtep@nih.gov. Registering here will register you for all 7 lessons, including Lesson 1, which will provide an introduction to QIIME 2 by one of the leading developers of the QIIME 2 platform, Dr. Greg Caporaso. You do not need to register for each individual lesson. If you decide to register for this series after the start of the course, please send us an email at ncibtep@nih.gov, and we will register you. | 2022-10-19 13:00:00 | Online Webinar | Microbiome analysis | Online | Alex Emmons (BTEP),Greg Caporaso (NAU),Samantha Chill (CCBR) | BTEP | 0 | Microbiome Analysis with QIIME 2 | ||
667 |
Description
Speaker:
Ron Germain, M.D., Ph.D.
NIH Distinguished Investigator
NIAID, NIH
Dr. Germain received his Sc.B. and Sc.M. from Brown University in 1970 and his M.D. and Ph.D. from Harvard Medical School and Harvard University in 1976. From 1976 to 1982, he served as an instructor, assistant professor, and associate professor of pathology at Harvard Medical School. From 1982 to 1987, he worked as a senior investigator in the Laboratory of Immunology (LI). In 1987, he was ...Read More
Speaker:
Ron Germain, M.D., Ph.D.
NIH Distinguished Investigator
NIAID, NIH
Dr. Germain received his Sc.B. and Sc.M. from Brown University in 1970 and his M.D. and Ph.D. from Harvard Medical School and Harvard University in 1976. From 1976 to 1982, he served as an instructor, assistant professor, and associate professor of pathology at Harvard Medical School. From 1982 to 1987, he worked as a senior investigator in the Laboratory of Immunology (LI). In 1987, he was appointed chief of the Lymphocyte Biology Section. In 1994, Dr. Germain was named deputy chief of LI. In 2006, he became director of the NIAID Program in Systems Immunology and Infectious Disease Modeling, which became the Laboratory of Systems Biology in 2011 and for which he serves as chief of the laboratory. He is also acting chief of LI and associate director of the Trans-NIH Center for Human Immunology, Inflammation, and Autoimmunity (CHI). Since receiving his doctoral degrees, he has led a laboratory investigating basic immunobiology. He and his colleagues have made key contributions to our understanding of MHC class II molecule structure–function relationships, the cell biology of antigen processing, and the molecular basis of T cell recognition.
The Lymphocyte Biology Section (LBS) has made numerous contributions to the understanding of the cell biology of antigen processing and presentation by MHC class I and especially class II molecules. It also has examined recognition of these ligands by T cells with a focus on the signaling mechanisms involved in ligand discrimination. Since the early 2000’s, the LBS has conducted analysis of immune cell behavior in vivo using methods of intravital 2-photon imaging that it helped pioneer, providing real-time, high-resolution visualization of immune-cell dynamics in situ. More recently, the LBS has developed novel, highly multiplex section and volume imaging methods (Histo-cytometry and Ce3D) that allow an unprecedented analysis of cell phenotype, signaling, function, and location in complex tissue settings. These various imaging technologies are being used with more conventional molecular and cellular immunological methods to 1) describe the dynamics of innate and adaptive immune cell movement in lymphoid and non-lymphoid tissue; 2) localize the sites and duration of the cell-cell interactions involved in the development of adaptive immune responses; 3) analyze how differences in these aspects of cell migration and interaction affect differentiation events and functional immunity; and 4) investigate the dynamic behavior and effector activities of innate and adaptive immune cells in non-lymphoid sites.
Lecture will be in person with remote viewing at https://videocast.nih.gov(external link).
DetailsOrganizerWilliam E. Paul LectureWhenWed, Oct 19, 2022 - 2:00 pm - 3:00 pmWhereBethesda Bldg 10 |
Speaker: Ron Germain, M.D., Ph.D. NIH Distinguished Investigator NIAID, NIH Dr. Germain received his Sc.B. and Sc.M. from Brown University in 1970 and his M.D. and Ph.D. from Harvard Medical School and Harvard University in 1976. From 1976 to 1982, he served as an instructor, assistant professor, and associate professor of pathology at Harvard Medical School. From 1982 to 1987, he worked as a senior investigator in the Laboratory of Immunology (LI). In 1987, he was appointed chief of the Lymphocyte Biology Section. In 1994, Dr. Germain was named deputy chief of LI. In 2006, he became director of the NIAID Program in Systems Immunology and Infectious Disease Modeling, which became the Laboratory of Systems Biology in 2011 and for which he serves as chief of the laboratory. He is also acting chief of LI and associate director of the Trans-NIH Center for Human Immunology, Inflammation, and Autoimmunity (CHI). Since receiving his doctoral degrees, he has led a laboratory investigating basic immunobiology. He and his colleagues have made key contributions to our understanding of MHC class II molecule structure–function relationships, the cell biology of antigen processing, and the molecular basis of T cell recognition. The Lymphocyte Biology Section (LBS) has made numerous contributions to the understanding of the cell biology of antigen processing and presentation by MHC class I and especially class II molecules. It also has examined recognition of these ligands by T cells with a focus on the signaling mechanisms involved in ligand discrimination. Since the early 2000’s, the LBS has conducted analysis of immune cell behavior in vivo using methods of intravital 2-photon imaging that it helped pioneer, providing real-time, high-resolution visualization of immune-cell dynamics in situ. More recently, the LBS has developed novel, highly multiplex section and volume imaging methods (Histo-cytometry and Ce3D) that allow an unprecedented analysis of cell phenotype, signaling, function, and location in complex tissue settings. These various imaging technologies are being used with more conventional molecular and cellular immunological methods to 1) describe the dynamics of innate and adaptive immune cell movement in lymphoid and non-lymphoid tissue; 2) localize the sites and duration of the cell-cell interactions involved in the development of adaptive immune responses; 3) analyze how differences in these aspects of cell migration and interaction affect differentiation events and functional immunity; and 4) investigate the dynamic behavior and effector activities of innate and adaptive immune cells in non-lymphoid sites. Lecture will be in person with remote viewing at https://videocast.nih.gov(external link). | 2022-10-19 14:00:00 | Bethesda Bldg 10 | Image Analysis | In-Person | William E. Paul Lecture | 0 | Gaining New Insights into 'Fundamental Immunology' Using Imaging and Computation | |||
666 |
Description
An overview of the geospatial tools that are useful for characterizing areas of the country in terms of cancer incidence, mortality, screening frequency, risk factors, socio-demographic and environmental variables relevant to cancer.
The presentation will introduce two resources of geospatial tools for visualization of population-based cancer statistics at National Cancer Institute: 1) State Cancer Profiles, an interactive mapping engine designed to provide a geographic profile of cancer with a combination of maps, charts, tables, and graphs ...Read More
An overview of the geospatial tools that are useful for characterizing areas of the country in terms of cancer incidence, mortality, screening frequency, risk factors, socio-demographic and environmental variables relevant to cancer.
The presentation will introduce two resources of geospatial tools for visualization of population-based cancer statistics at National Cancer Institute: 1) State Cancer Profiles, an interactive mapping engine designed to provide a geographic profile of cancer with a combination of maps, charts, tables, and graphs presenting the latest available cancer statistics and other relevant data; and 2) GIS Portal for Cancer Research, a more comprehensive resource of geographically referenced cancer statistics, social and environmental data, several interactive tools, and knowledge related to geographic disparities in cancer burden.
Speakers:
Zaria Tatalovich, Ph.D.
Geospatial Scientist
National Cancer Institute
Jeremy Lyman
Senior Systems and GIS Analyst
Information Management Services, Inc. (IMS)
James Cucinelli
Senior Systems Analyst
Information Management Services, Inc. (IMS)
DetailsOrganizerGeospatial AnalysisWhenThu, Oct 20, 2022 - 1:00 pm - 3:00 pmWhereOnline |
An overview of the geospatial tools that are useful for characterizing areas of the country in terms of cancer incidence, mortality, screening frequency, risk factors, socio-demographic and environmental variables relevant to cancer. The presentation will introduce two resources of geospatial tools for visualization of population-based cancer statistics at National Cancer Institute: 1) State Cancer Profiles, an interactive mapping engine designed to provide a geographic profile of cancer with a combination of maps, charts, tables, and graphs presenting the latest available cancer statistics and other relevant data; and 2) GIS Portal for Cancer Research, a more comprehensive resource of geographically referenced cancer statistics, social and environmental data, several interactive tools, and knowledge related to geographic disparities in cancer burden. Speakers: Zaria Tatalovich, Ph.D. Geospatial Scientist National Cancer Institute Jeremy Lyman Senior Systems and GIS Analyst Information Management Services, Inc. (IMS) James Cucinelli Senior Systems Analyst Information Management Services, Inc. (IMS) | 2022-10-20 13:00:00 | Online | Geospatial Analysis | Online | Geospatial Analysis | 0 | Geospatial Tools | |||
672 |
Description
Single cell chromatin accessibility, measured by ATAC-seq, and single cell gene expression, measured by RNA-seq provide two views on a cell’s state. From chromatin accessibility it is possible to infer information about the regulation of genes such as the location of putative cis-regulatory elements near a gene and the transcription factors that bind to these regions. Rigorously comparing gene expression and chromatin accessibility in the same single cells could illuminate the logic of how ...Read More
Single cell chromatin accessibility, measured by ATAC-seq, and single cell gene expression, measured by RNA-seq provide two views on a cell’s state. From chromatin accessibility it is possible to infer information about the regulation of genes such as the location of putative cis-regulatory elements near a gene and the transcription factors that bind to these regions. Rigorously comparing gene expression and chromatin accessibility in the same single cells could illuminate the logic of how coupling or decoupling of these mechanisms regulates fate commitment and cancer cell state plasticity. MIRA: Probabilistic Multimodal Models for Integrated Regulatory Analysis, is a comprehensive methodology that systematically contrasts transcription and chromatin accessibility to infer the regulatory circuitry driving cells along developmental trajectories. MIRA leverages topic modeling of cell states and regulatory potential modeling of individual gene loci. MIRA thereby represents cell states in an efficient and interpretable latent space and infers high fidelity lineage trees. To determine the key regulators of cell fate decisions MIRA uses a probabilistic in silico deletion method based on DNA sequence motifs and the Cistrome DB compendium of transcription factor binding sites. Applied to epidermal maintenance differentiation and embryonic brain development from two different multimodal platforms, MIRA revealed important insights into the transcriptional regulation of these systems.
Speaker:
Cliff Meyer Ph.D., Dana-Farber Cancer Institute
DetailsOrganizerCBIITWhenFri, Oct 21, 2022 - 10:00 am - 11:00 amWhereOnline |
Single cell chromatin accessibility, measured by ATAC-seq, and single cell gene expression, measured by RNA-seq provide two views on a cell’s state. From chromatin accessibility it is possible to infer information about the regulation of genes such as the location of putative cis-regulatory elements near a gene and the transcription factors that bind to these regions. Rigorously comparing gene expression and chromatin accessibility in the same single cells could illuminate the logic of how coupling or decoupling of these mechanisms regulates fate commitment and cancer cell state plasticity. MIRA: Probabilistic Multimodal Models for Integrated Regulatory Analysis, is a comprehensive methodology that systematically contrasts transcription and chromatin accessibility to infer the regulatory circuitry driving cells along developmental trajectories. MIRA leverages topic modeling of cell states and regulatory potential modeling of individual gene loci. MIRA thereby represents cell states in an efficient and interpretable latent space and infers high fidelity lineage trees. To determine the key regulators of cell fate decisions MIRA uses a probabilistic in silico deletion method based on DNA sequence motifs and the Cistrome DB compendium of transcription factor binding sites. Applied to epidermal maintenance differentiation and embryonic brain development from two different multimodal platforms, MIRA revealed important insights into the transcriptional regulation of these systems. Speaker: Cliff Meyer Ph.D., Dana-Farber Cancer Institute | 2022-10-21 10:00:00 | Online | Online | CBIIT | 0 | MIRA: Joint Regulatory Modeling of Multimodal Expression and Chromatin Accessibility in Single Cells | ||||
676 |
Description
Speaker:
Jill S. Barnholtz-Sloan, Ph.D.
Associate Director
Informatics and Data Science at the Center for Biomedical Informatics and Information Technology
Senior Investigator
Trans-Divisional Research Program, Division of Cancer Epidemiology and Genetics, NCI
Dr. Barnholtz-Sloan earned a Ph.D. in biostatistics from the University of Texas Health Science Center at Houston School of Public Health and an M.S. in statistics from the University of Texas at Austin.
Before joining NCI in 2021, she ...Read More
Speaker:
Jill S. Barnholtz-Sloan, Ph.D.
Associate Director
Informatics and Data Science at the Center for Biomedical Informatics and Information Technology
Senior Investigator
Trans-Divisional Research Program, Division of Cancer Epidemiology and Genetics, NCI
Dr. Barnholtz-Sloan earned a Ph.D. in biostatistics from the University of Texas Health Science Center at Houston School of Public Health and an M.S. in statistics from the University of Texas at Austin.
Before joining NCI in 2021, she was Professor and Associate Director for Translational Informatics/Data Sciences at the Case Western Reserve University School of Medicine and Case Comprehensive Cancer Center, and Director of Research Health Analytics and Informatics at the University Hospitals Health System.
Dr. Barnholtz-Sloan was trained in biostatistics, population genetics, and human genetics. Her role in team science has been essential for multiple, successful multi-disciplinary research projects. In the Trans-Divisional Research Program of DCEG, she has been facilitating collaborations in data science and in the study of brain tumors by leveraging her experience in multi-institutional team science and the use of large, complex healthcare datasets to enhance the data assets already available in the NCI Cancer Research Data Commons.
Dr. Barnholtz-Sloan leads effort at CBIIT to shape informatics and data science strategies and foster collaboration within NCI, across NIH and the cancer research community. Thus, as both an active researcher and administrator, she has insight into how data can be translated into real-world solutions to help diagnose, prevent, and treat cancer.
Given her dual roles in CBIIT and DCEG, Dr. Barnholtz-Sloan envisions bringing data science to all research domains within DCEG, helping to move towards (1) use of cloud resources for computing and data sharing via the NIH Science and Technology Research Infrastructure for Discovery, Experimentation, and Sustainability (STRIDES) Initiative, and (2) use of the Findability, Accessibility, Interoperability, and Reuse (FAIR) principles for research in DCEG.
Dr. Barnholtz-Sloan has published over 420 articles in peer-reviewed journals including Cancer Cell, Nature, Neuro Oncology, Cancer Res., Nature Commun., JCO Clin Cancer Inform., JAMA Oncology, and Mol Cancer Res.
Dr. Barnholtz-Sloan has served as a disease expert on the NCI’s TCGA brain tumor-related working groups, co-chaired the NCI Clinical Proteomic Tumor Analysis Consortium (CPTAC) glioblastoma expert committee, and served as an expert peer reviewer for NIH study sections.
DetailsOrganizerCBIITWhenTue, Oct 25, 2022 - 9:30 am - 10:30 amWhereOnline |
Speaker: Jill S. Barnholtz-Sloan, Ph.D. Associate Director Informatics and Data Science at the Center for Biomedical Informatics and Information Technology Senior Investigator Trans-Divisional Research Program, Division of Cancer Epidemiology and Genetics, NCI Dr. Barnholtz-Sloan earned a Ph.D. in biostatistics from the University of Texas Health Science Center at Houston School of Public Health and an M.S. in statistics from the University of Texas at Austin. Before joining NCI in 2021, she was Professor and Associate Director for Translational Informatics/Data Sciences at the Case Western Reserve University School of Medicine and Case Comprehensive Cancer Center, and Director of Research Health Analytics and Informatics at the University Hospitals Health System. Dr. Barnholtz-Sloan was trained in biostatistics, population genetics, and human genetics. Her role in team science has been essential for multiple, successful multi-disciplinary research projects. In the Trans-Divisional Research Program of DCEG, she has been facilitating collaborations in data science and in the study of brain tumors by leveraging her experience in multi-institutional team science and the use of large, complex healthcare datasets to enhance the data assets already available in the NCI Cancer Research Data Commons. Dr. Barnholtz-Sloan leads effort at CBIIT to shape informatics and data science strategies and foster collaboration within NCI, across NIH and the cancer research community. Thus, as both an active researcher and administrator, she has insight into how data can be translated into real-world solutions to help diagnose, prevent, and treat cancer. Given her dual roles in CBIIT and DCEG, Dr. Barnholtz-Sloan envisions bringing data science to all research domains within DCEG, helping to move towards (1) use of cloud resources for computing and data sharing via the NIH Science and Technology Research Infrastructure for Discovery, Experimentation, and Sustainability (STRIDES) Initiative, and (2) use of the Findability, Accessibility, Interoperability, and Reuse (FAIR) principles for research in DCEG. Dr. Barnholtz-Sloan has published over 420 articles in peer-reviewed journals including Cancer Cell, Nature, Neuro Oncology, Cancer Res., Nature Commun., JCO Clin Cancer Inform., JAMA Oncology, and Mol Cancer Res. Dr. Barnholtz-Sloan has served as a disease expert on the NCI’s TCGA brain tumor-related working groups, co-chaired the NCI Clinical Proteomic Tumor Analysis Consortium (CPTAC) glioblastoma expert committee, and served as an expert peer reviewer for NIH study sections. | 2022-10-25 09:30:00 | Online | Data Management | Online | CBIIT | 0 | CDP Science Session Series - CBIIT overview: Enabling informatics, data science, IT and data sharing for the NCI and beyond | |||
673 |
Description
Qiagen Ingenuity Pathway Analysis (IPA) For modeling, analyzing, and understanding complex 'omics data.
During this workshop you will learn how to:
• Upload data, run an IPA core analysis and interpret the results
• Use IPA even if you do not have a dataset to build networks and generate hypotheses
• Find potential regulators and master regulators and their impact on your experiment
Speaker:
Nicole Mckieran, Field Application Scientist, Qiagen Inc.
Qiagen Ingenuity Pathway Analysis (IPA) For modeling, analyzing, and understanding complex 'omics data.
During this workshop you will learn how to:
• Upload data, run an IPA core analysis and interpret the results
• Use IPA even if you do not have a dataset to build networks and generate hypotheses
• Find potential regulators and master regulators and their impact on your experiment
Speaker:
Nicole Mckieran, Field Application Scientist, Qiagen Inc.
DetailsOrganizerCBIITWhenTue, Oct 25, 2022 - 10:00 am - 11:00 amWhereOnline |
Qiagen Ingenuity Pathway Analysis (IPA) For modeling, analyzing, and understanding complex 'omics data. During this workshop you will learn how to: • Upload data, run an IPA core analysis and interpret the results • Use IPA even if you do not have a dataset to build networks and generate hypotheses • Find potential regulators and master regulators and their impact on your experiment Speaker: Nicole Mckieran, Field Application Scientist, Qiagen Inc. | 2022-10-25 10:00:00 | Online | Pathway Analysis | Online | CBIIT | 0 | Ingenuity Pathway Analysis (IPA) New User Training | |||
623 |
Description
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach, and will cover the ...Read More
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach, and will cover the concepts of hypothesis testing, confidence intervals, Type I and Type II errors, statistical power, and p-values. Technical details will be kept to an absolute minimum.
Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 2 of this class series.
DetailsOrganizerNIH LibraryWhenTue, Oct 25, 2022 - 11:00 am - 11:30 amWhereOnline |
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach, and will cover the concepts of hypothesis testing, confidence intervals, Type I and Type II errors, statistical power, and p-values. Technical details will be kept to an absolute minimum. Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 2 of this class series. | 2022-10-25 11:00:00 | Online | Statistics | Online | NIH Library | 0 | Statistical Inference for Non Statisticians: Part 1 | |||
664 |
Description
The Division of Cancer Prevention is hosting the Statistical Adjustment for Multiplicity Virtual Workshop from October 26-27, 2022.
Workshop Goal
The goal of this workshop is to bring together medical doctors, epidemiologists, and statisticians from the academy, industry, and government, representing a broad range of expertise and experiences to:
The Division of Cancer Prevention is hosting the Statistical Adjustment for Multiplicity Virtual Workshop from October 26-27, 2022.
Workshop Goal
The goal of this workshop is to bring together medical doctors, epidemiologists, and statisticians from the academy, industry, and government, representing a broad range of expertise and experiences to:
DetailsOrganizerDivision of Cancer PreventionWhenWed, Oct 26 - Thu, Oct 27, 2022 -9:00 am - 3:00 pmWhereOnline |
The Division of Cancer Prevention is hosting the Statistical Adjustment for Multiplicity Virtual Workshop from October 26-27, 2022. Workshop Goal The goal of this workshop is to bring together medical doctors, epidemiologists, and statisticians from the academy, industry, and government, representing a broad range of expertise and experiences to: Discuss traditional, new, and emerging methods of statistical adjustment Assess suitability of techniques in different situations in pursuit of protected inference to aid both rigor and reproducibility Review best practices for multiplicity adjustment Foster idea exchange and new collaborative interactions to address current gaps in the knowledge base This workshop will provide helpful guidelines that will enable investigators in the external community to conduct protected inference. | 2022-10-26 09:00:00 | Online | Statistics | Online | Division of Cancer Prevention | 0 | Statistical Adjustment for Multiplicity Virtual Workshop | |||
674 |
Description
Multiomics Data Analysis in Partek Flow® bioinformatics software which is available to NCI researchers provides a singular environment that enables the analysis and visualization of NGS data with no programming or command-line expertise. Join us a Partek® scientist will demonstrate how to get started, analyze and visualize Multiomics data using Partek Flow’s point and click features through the analysis of a Spatial Transcriptomic data.
Speaker:
Alex Rutkovsky, Field Application Scientist, Partek Inc.
Multiomics Data Analysis in Partek Flow® bioinformatics software which is available to NCI researchers provides a singular environment that enables the analysis and visualization of NGS data with no programming or command-line expertise. Join us a Partek® scientist will demonstrate how to get started, analyze and visualize Multiomics data using Partek Flow’s point and click features through the analysis of a Spatial Transcriptomic data.
Speaker:
Alex Rutkovsky, Field Application Scientist, Partek Inc.
DetailsOrganizerCBIITWhenWed, Oct 26, 2022 - 10:00 am - 11:00 amWhereOnline |
Multiomics Data Analysis in Partek Flow® bioinformatics software which is available to NCI researchers provides a singular environment that enables the analysis and visualization of NGS data with no programming or command-line expertise. Join us a Partek® scientist will demonstrate how to get started, analyze and visualize Multiomics data using Partek Flow’s point and click features through the analysis of a Spatial Transcriptomic data. Speaker: Alex Rutkovsky, Field Application Scientist, Partek Inc. | 2022-10-26 10:00:00 | Online | Spatial Transcriptomics | Online | CBIIT | 0 | Partek Flow Introductory Webinar | |||
624 |
Description
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach, and will cover the ...Read More
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study?
This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach, and will cover the concepts of Bayes’ Theorem, prior and posterior distributions, and Bayes factor. Technical details will be kept to an absolute minimum.
Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 1 of this class series.
DetailsOrganizerNIH LibraryWhenWed, Oct 26, 2022 - 11:00 am - 11:30 amWhereOnline |
What’s the difference between “regular” statistics (i.e. what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach, and will cover the concepts of Bayes’ Theorem, prior and posterior distributions, and Bayes factor. Technical details will be kept to an absolute minimum. Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. You must register separately for Part 1 of this class series. | 2022-10-26 11:00:00 | Online | Statistics | Online | NIH Library | 0 | Statistical Inference for Non Statisticians: Part 2 | |||
668 |
Description
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the eighth of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Theodore Alexandrov of European Molecular Biology Laboratory will present, “Read More
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the eighth of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Theodore Alexandrov of European Molecular Biology Laboratory will present, “Single Cell Metabolomics: Computational Science in Immuno-Oncology” with moderation by Dr. Dora Hammerl of Erasmus MC Cancer Institute.
Dr. Alexandrov will highlight emerging, single-cell metabolomics technology for profiling the metabolism of individual cells. Such highlights include:
DetailsOrganizerCBIITWhenWed, Oct 26, 2022 - 2:30 pm - 3:30 pmWhereOnline |
In partnership with NCI’s Cancer MoonshotSM Initiative, the Society for Immunotherapy of Cancer (SITC) and the Big Data and Data Sharing Committee are hosting the eighth of nine webinars that make up the 2022 SITC-NCI Computational Immuno-Oncology Webinar Series. Dr. Theodore Alexandrov of European Molecular Biology Laboratory will present, “Single Cell Metabolomics: Computational Science in Immuno-Oncology” with moderation by Dr. Dora Hammerl of Erasmus MC Cancer Institute. Dr. Alexandrov will highlight emerging, single-cell metabolomics technology for profiling the metabolism of individual cells. Such highlights include: key aspects, challenges, and perspectives on how this technology could advance research tools for drug and therapy development. The SITC-NCI Computational Immuno-Oncology Webinar Series consists of nine, hour-long courses featuring a moderator and faculty speaker to lead instruction. Topics will cover a host of computational challenges of analyzing and integrating diverse assay data across the spectrum of immuno-oncology. This series is intended for scientists early in their careers and/or those who want to remain abreast of the latest technologies. These webinars were created to foster better communication concerning data science technologies and analyses between cancer immunotherapy researchers and clinicians to advance translational immunotherapy research. Speakers: Theodore Alexandrov, Ph.D. Dr. Alexandrov is head of the metabolomics core facility and team leader at European Molecular Biology Laboratory, in addition to being a group leader in the Molecular Medicine Partnership Unit. Dora Hammerl, Ph.D. Dr. Hammerl joined the Debets Laboratory at Erasmus MC Cancer Institute where she received her doctorate in 2020. She is the co-founder and vice president of research and development at Pan Cancer T, a company dedicated to developing T cell receptor (TCR) T cell therapies. | 2022-10-26 14:30:00 | Online | Single Cell Technologies | Online | CBIIT | 0 | Single Cell Metabolomics: Computational Science in Immuno-Oncology | |||
686 |
Description
UCSC Xena is a web-based visual integration and exploration tool for multi-omic data and associated clinical and phenotypic annotations. Xena showcases seminal cancer genomics datasets from TCGA and the Pan-Cancer Atlas, as well as the GDC, PCAWG, and ICGC; a total of more than 1500 datasets across 50 cancer types. We support virtually any type of functional genomics data modality, including SNPs, INDELs, large structural variants, CNV, gene and other types of expression, DNA methylation, clinical and phenotypic annotations. Browser features include the high performance Visual Spreadsheet, dynamic Kaplan-Meier survival analysis, genome-wide differential gene expression analysis, powerful filtering and subgrouping, charts, statistical analyses, genomic signatures, and live bookmarks. Researchers can use the same visualizations to view their own data privately and securely in Xena.
Xena can help you answer questions like:
DetailsOrganizerCBIITWhenMon, Oct 31, 2022 - 10:00 am - 11:00 amWhereOnline |
UCSC Xena is a web-based visual integration and exploration tool for multi-omic data and associated clinical and phenotypic annotations. Xena showcases seminal cancer genomics datasets from TCGA and the Pan-Cancer Atlas, as well as the GDC, PCAWG, and ICGC; a total of more than 1500 datasets across 50 cancer types. We support virtually any type of functional genomics data modality, including SNPs, INDELs, large structural variants, CNV, gene and other types of expression, DNA methylation, clinical and phenotypic annotations. Browser features include the high performance Visual Spreadsheet, dynamic Kaplan-Meier survival analysis, genome-wide differential gene expression analysis, powerful filtering and subgrouping, charts, statistical analyses, genomic signatures, and live bookmarks. Researchers can use the same visualizations to view their own data privately and securely in Xena. Xena can help you answer questions like: Is over-expression of geneA associated with better survival in these two cancer types? Is geneB differentially expressed in TCGA tumor vs GTEx normal? What are the most differentially expressed genes for the subgroups I just made? What is the relationship between expression, mutation, copy number, etc for these genes? This webinar will include a live demonstration of Xena. Feel free to follow along in either Chrome or Firefox. | 2022-10-31 10:00:00 | Online | Cancer | Online | CBIIT | 0 | Introduction to UCSC Xena: a tool for multi-omics data & associate clinical and phenotypic annotations | |||
651 |
Description
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also ...Read More
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics.
Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects.
DetailsOrganizerNIH LibraryWhenTue, Nov 01, 2022 - 10:00 am - 3:00 pmWhereOnline |
Learn how to get started on using QIAGEN’s Ingenuity Pathway Analysis (IPA) to quickly identify biological relationships, mechanisms, pathways, functions and diseases most relevant to experimental datasets. IPA is cited in tens of thousands of peer-reviewed articles. The class will demonstrate how to explore IPA's knowledge & discovery tools to relate the most recent literature findings to your research. The demo session will mainly focus on biological interpretation of expression data but will also cover multi-omics analysis including variant data and phosphoproteomics. Getting Started: fundamentals of IPA; overview of key features; search & pathway building; advanced search; building & editing pathways; using Build & Overlay tools. Dataset Analysis: data upload & analysis; interpretation of gene, transcript, protein & metabolite data; pathway analysis & canonical pathways; downstream effects & interpreting the heat map; causal regulators and their directional effect on genes, functions and diseases across multiple time points or doses; interpreting networks; comparison & multiple observations analysis; miRNA and isoform analysis; BioProfiler: define relationships between molecule activity and diseases/processes in the literature. Q & A session: A QIAGEN Ingenuity Field Applications Scientist will be available to answer individual questions or discuss specific projects. | 2022-11-01 10:00:00 | Online | Pathway Analysis | Online | NIH Library | 0 | Ingenuity Pathway Analysis (IPA) | |||
652 |
Description
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This will enable users to have well formatted data frames for future clean and consistent analysis and visualizations.
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This will enable users to have well formatted data frames for future clean and consistent analysis and visualizations.
DetailsOrganizerNIH LibraryWhenTue, Nov 01, 2022 - 10:00 am - 11:00 amWhereOnline |
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. | 2022-11-01 10:00:00 | Online | Programming | Online | NIH Library | 0 | Data Wrangling in R | |||
665 |
Description
Join us to learn how Visium Spatial and Xenium In Situ platforms from 10x Genomics can help you push the boundaries of your research. Uncover molecular insights, dissect cell-type differences, investigate the adaptive immune system, detect novel subtypes and biomarkers, and map the epigenetic landscape cell by cell. Enabling deeper insight into cancer, immunology, neuroscience, and developmental biology, 10x Genomics gives researchers the ability to see biology in new ways.
This event is co-hosted with ...Read More
Join us to learn how Visium Spatial and Xenium In Situ platforms from 10x Genomics can help you push the boundaries of your research. Uncover molecular insights, dissect cell-type differences, investigate the adaptive immune system, detect novel subtypes and biomarkers, and map the epigenetic landscape cell by cell. Enabling deeper insight into cancer, immunology, neuroscience, and developmental biology, 10x Genomics gives researchers the ability to see biology in new ways.
This event is co-hosted with NCI’s Single Cell Analysis Facility with the goal of bringing together new and experienced NIH Spatial Transcriptomics users. 10x Genomics will provide lunch for all attendees. Presentations will include:
DetailsOrganizerNCI’s Single Cell Analysis FacilityWhenTue, Nov 01, 2022 - 10:00 am - 5:30 pmWhereBethesda, BLDG 45 Natcher Conference Center |
Join us to learn how Visium Spatial and Xenium In Situ platforms from 10x Genomics can help you push the boundaries of your research. Uncover molecular insights, dissect cell-type differences, investigate the adaptive immune system, detect novel subtypes and biomarkers, and map the epigenetic landscape cell by cell. Enabling deeper insight into cancer, immunology, neuroscience, and developmental biology, 10x Genomics gives researchers the ability to see biology in new ways. This event is co-hosted with NCI’s Single Cell Analysis Facility with the goal of bringing together new and experienced NIH Spatial Transcriptomics users. 10x Genomics will provide lunch for all attendees. Presentations will include: Basics of Visium - Visium tissue preparation, analysis tools and single cell data integration New application for FFPE samples with Visium CytAssist An introduction to our new Xenium In Situ platform Extended Q&A as well as opportunities to chat with 10x Support team Part of the goal of the in person NIH event on Nov 1st is to help bring together folks who have started using these technologies and those that are potentially interested in utilizing them. | 2022-11-01 10:00:00 | Bethesda, BLDG 45 Natcher Conference Center | Spatial Transcriptomics | In-Person | NCI’s Single Cell Analysis Facility | 0 | NIH Spatial Transcriptomics Showcase | |||
678 |
Description
NCI’s Childhood Cancer Data Initiative (CCDI) is hosting a workshop to discuss issues and opportunities for extracting electronic health records (EHR)—health information stored in a digital format—for childhood cancer research.
During the session, the workshop will cover:
NCI’s Childhood Cancer Data Initiative (CCDI) is hosting a workshop to discuss issues and opportunities for extracting electronic health records (EHR)—health information stored in a digital format—for childhood cancer research.
During the session, the workshop will cover:
DetailsOrganizerCBIITWhenWed, Nov 02, 2022 - 10:00 am - 3:30 pmWhereOnline |
NCI’s Childhood Cancer Data Initiative (CCDI) is hosting a workshop to discuss issues and opportunities for extracting electronic health records (EHR)—health information stored in a digital format—for childhood cancer research. During the session, the workshop will cover: issues surrounding EHR data portability and interoperability. potential approaches to structuring EHR data for maximal utility and benefit. opportunities to capitalize on the use of EHR data for clinical care and research. This workshop is organized by CBIIT Director Dr. Tony Kerlavage and CBIIT Office of Data Sharing Director Dr. Jaime Guidry Auvil. The NCI CCDI was announced by the White House and received its first allocation of funding in FY2020, with the goal of learning from every child and young adult with cancer to improve pediatric cancer treatment and data sharing integrity. | 2022-11-02 10:00:00 | Online | Data Management | Online | CBIIT | 0 | CCDI Workshop: The Importance of Electronic Health Record (EHR) Data in Clinical Care and Research | |||
669 |
Description
Join Emory University’s Dr. Anant Madabhushi as he discusses the Center for Computational Imaging and Personalized Diagnostics’ (CCIPD’s) development work on new radiomic and pathomic approaches for capturing intra-tumoral heterogeneity and modeling tumor appearance. This approach predicts disease outcome, recurrence, progression, and response to therapy in the context of prostate, brain, rectal, oropharyngeal, and lung ...Read More
Join Emory University’s Dr. Anant Madabhushi as he discusses the Center for Computational Imaging and Personalized Diagnostics’ (CCIPD’s) development work on new radiomic and pathomic approaches for capturing intra-tumoral heterogeneity and modeling tumor appearance. This approach predicts disease outcome, recurrence, progression, and response to therapy in the context of prostate, brain, rectal, oropharyngeal, and lung cancers.
The CCIPD at Case Western Reserve University has been developing tools for connecting diverse biological data that spans different scales, modalities, and functionalities. These tools include methods for removing attributes for characterizing disease appearance/behavior on radiographic (radiomics) and digitized pathology images (pathomics).
The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI.
Speaker:
Anant Madabhushi, Ph.D.
Dr. Madabhushi is a professor of biomedical engineering and on faculty in the Departments of Pathology, Biomedical Informatics, and Radiology and Imaging Sciences at Emory University. He is also a research health scientist at the Atlanta Veterans Administration Medical Center. Dr. Madabhushi has authored more than 450 peer-reviewed publications and more than 100 patents either issued or pending in the areas of artificial intelligence, radiomics, medical image analysis, computer-aided diagnosis, and computer vision.
DetailsOrganizerData Science Seminar SeriesWhenWed, Nov 02, 2022 - 11:00 am - 12:00 pmWhereOnline |
Join Emory University’s Dr. Anant Madabhushi as he discusses the Center for Computational Imaging and Personalized Diagnostics’ (CCIPD’s) development work on new radiomic and pathomic approaches for capturing intra-tumoral heterogeneity and modeling tumor appearance. This approach predicts disease outcome, recurrence, progression, and response to therapy in the context of prostate, brain, rectal, oropharyngeal, and lung cancers. The CCIPD at Case Western Reserve University has been developing tools for connecting diverse biological data that spans different scales, modalities, and functionalities. These tools include methods for removing attributes for characterizing disease appearance/behavior on radiographic (radiomics) and digitized pathology images (pathomics). The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. Speaker: Anant Madabhushi, Ph.D. Dr. Madabhushi is a professor of biomedical engineering and on faculty in the Departments of Pathology, Biomedical Informatics, and Radiology and Imaging Sciences at Emory University. He is also a research health scientist at the Atlanta Veterans Administration Medical Center. Dr. Madabhushi has authored more than 450 peer-reviewed publications and more than 100 patents either issued or pending in the areas of artificial intelligence, radiomics, medical image analysis, computer-aided diagnosis, and computer vision. | 2022-11-02 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | Data Science Seminar Series | 0 | AI, Radiomics, Pathomics, and Deep Learning: Implications for Precision Oncology | |||
690 |
Description
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks.
Current topics include three series of practical training sessions on the following topics:
1) AlphaFold Protein Structure Prediction with ChimeraX
The AlphaFold AI system has revolutionized protein structure prediction from sequence and has made obsolete most other methods. DeepMind, the creators of AlphaFold, have also collaborated with EMBL’s European ...Read More
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks.
Current topics include three series of practical training sessions on the following topics:
1) AlphaFold Protein Structure Prediction with ChimeraX
The AlphaFold AI system has revolutionized protein structure prediction from sequence and has made obsolete most other methods. DeepMind, the creators of AlphaFold, have also collaborated with EMBL’s European Bioinformatics Institute to provide access to an online database of over 200 million predicted protein structures. UCSF ChimeraX is a free, multi-platform molecular modeling program which is actively integrating AlphaFold calculations and the AlphaFold database into its visualization platform.
This workshop will comprise lecture and hands-on exercises that show how to get and evaluate AlphaFold prediction within ChimeraX. We will show how to download structures from the AlphaFold database. Students will learn how to submit AlphaFold calculations when pre-calculated structures are not available, and the situations when that may be necessary. We will also discuss how to use ChimeraX to interpret the two types of error predictions provided by AlphaFold calculations, as well as how UniProt integration into ChimeraX synergistically aids structure analysis.
Before attending the workshop, please download and install the ChimeraX Release Candidate 1.5 version of the program from the following website, and verify that it is working:
https://gcc02.safelinks.protection.outlook.com/?url=https%3A%2F%2Fwww.cgl.ucsf.edu%2Fchimerax%2Fdownload.html&data=05%7C01%7Cmaria.gomez%40nih.gov%7C350114eb9b1f4eab973d08dabb70f7ba%7C14b77578977342d58507251ca2dc2b06%7C0%7C0%7C638028391104184057%7CUnknown%7CTWFpbGZsb3d8eyJWIjoiMC4wLjAwMDAiLCJQIjoiV2luMzIiLCJBTiI6Ik1haWwiLCJXVCI6Mn0%3D%7C3000%7C%7C%7C&sdata=0Hy2%2B1l7JTmKIHHE%2BeaUcNNwG9CEgitfVQrdc1EkDaA%3D&reserved=0
DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenWed, Nov 02, 2022 - 1:00 pm - 3:00 pmWhereOnline |
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks. Current topics include three series of practical training sessions on the following topics: 1) AlphaFold Protein Structure Prediction with ChimeraX The AlphaFold AI system has revolutionized protein structure prediction from sequence and has made obsolete most other methods. DeepMind, the creators of AlphaFold, have also collaborated with EMBL’s European Bioinformatics Institute to provide access to an online database of over 200 million predicted protein structures. UCSF ChimeraX is a free, multi-platform molecular modeling program which is actively integrating AlphaFold calculations and the AlphaFold database into its visualization platform. This workshop will comprise lecture and hands-on exercises that show how to get and evaluate AlphaFold prediction within ChimeraX. We will show how to download structures from the AlphaFold database. Students will learn how to submit AlphaFold calculations when pre-calculated structures are not available, and the situations when that may be necessary. We will also discuss how to use ChimeraX to interpret the two types of error predictions provided by AlphaFold calculations, as well as how UniProt integration into ChimeraX synergistically aids structure analysis. Before attending the workshop, please download and install the ChimeraX Release Candidate 1.5 version of the program from the following website, and verify that it is working: https://gcc02.safelinks.protection.outlook.com/?url=https%3A%2F%2Fwww.cgl.ucsf.edu%2Fchimerax%2Fdownload.html&data=05%7C01%7Cmaria.gomez%40nih.gov%7C350114eb9b1f4eab973d08dabb70f7ba%7C14b77578977342d58507251ca2dc2b06%7C0%7C0%7C638028391104184057%7CUnknown%7CTWFpbGZsb3d8eyJWIjoiMC4wLjAwMDAiLCJQIjoiV2luMzIiLCJBTiI6Ik1haWwiLCJXVCI6Mn0%3D%7C3000%7C%7C%7C&sdata=0Hy2%2B1l7JTmKIHHE%2BeaUcNNwG9CEgitfVQrdc1EkDaA%3D&reserved=0 | 2022-11-02 13:00:00 | Online | Proteomics | Online | NIAID Bioinformatics and Computational Biosciences Branch | 0 | AlphaFold Protein Structure Prediction with ChimeraX | |||
677 |
Description
This 90-minute MicroLab will start with an inspiring conversation between a thought leader from the Cancer Moonshot and a creative visualization expert, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Emma Lundberg, Ph.D.(link is external), Associate Professor at Stanford University
Researcher focused ...Read More
This 90-minute MicroLab will start with an inspiring conversation between a thought leader from the Cancer Moonshot and a creative visualization expert, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization.
Speakers:
Emma Lundberg, Ph.D.(link is external), Associate Professor at Stanford University
Researcher focused on spatial proteomics, cell biology, and game-based large scale data analysis
eMalick Njie, Ph.D.(link is external), Founder of NeuroStorm Studios
His company is translating neuroscience into real world applications and immersive experiences.
DetailsWhenThu, Nov 03, 2022 - 12:00 pm - 1:30 pmWhereOnline |
This 90-minute MicroLab will start with an inspiring conversation between a thought leader from the Cancer Moonshot and a creative visualization expert, followed by an opportunity to engage new colleagues from other fields in a fascinating discussion on the frontiers of cancer data visualization. Speakers: Emma Lundberg, Ph.D.(link is external), Associate Professor at Stanford University Researcher focused on spatial proteomics, cell biology, and game-based large scale data analysis eMalick Njie, Ph.D.(link is external), Founder of NeuroStorm Studios His company is translating neuroscience into real world applications and immersive experiences. | 2022-11-03 12:00:00 | Online | Cancer | Online | 0 | DataViz + Cancer MicroLab: How can data visualization, AI, and VR help address challenges in mapping cell biology? | ||||
653 |
Description
Participants will learn how to use the point-and-click interface in Partek Flow for RNA-Seq analysis to go from raw data to experimental results. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish RNA-Seq data analysis.
Participants will learn how to use the point-and-click interface in Partek Flow for RNA-Seq analysis to go from raw data to experimental results. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish RNA-Seq data analysis.
DetailsOrganizerNIH LibraryWhenFri, Nov 04, 2022 - 10:00 am - 12:30 pmWhereOnline |
Participants will learn how to use the point-and-click interface in Partek Flow for RNA-Seq analysis to go from raw data to experimental results. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for the start to finish RNA-Seq data analysis. | 2022-11-04 10:00:00 | Online | Bulk RNA-Seq | Online | NIH Library | 0 | Bulk RNA Seq Data Analysis in Partek Flow | |||
654 |
Description
The All of Us Research Program is collecting health data from at least a million people to advance precision medicine research and fuel new insights into human health. Dr. Andrea Ramirez, M.D., M.S., Chief Data Officer at All of Us, will co-present with a representative from the All of Us Data and Research Center to NIH researchers and staff, talking about the All of ...Read More
The All of Us Research Program is collecting health data from at least a million people to advance precision medicine research and fuel new insights into human health. Dr. Andrea Ramirez, M.D., M.S., Chief Data Officer at All of Us, will co-present with a representative from the All of Us Data and Research Center to NIH researchers and staff, talking about the All of Us dataset and how researchers can access and use it.
DetailsOrganizerNIH LibraryWhenMon, Nov 07, 2022 - 11:00 am - 12:00 pmWhereOnline |
The All of Us Research Program is collecting health data from at least a million people to advance precision medicine research and fuel new insights into human health. Dr. Andrea Ramirez, M.D., M.S., Chief Data Officer at All of Us, will co-present with a representative from the All of Us Data and Research Center to NIH researchers and staff, talking about the All of Us dataset and how researchers can access and use it. | 2022-11-07 11:00:00 | Online | Data Resources | Online | NIH Library | 0 | Access Data from the All of Us Research Program | |||
698 |
Description
Join University of Maryland’s Dr. Eliot Siegel for the upcoming November NCI Imaging and Informatics Community Webinar (IICW). This presentation will address the gaps of applying artificial intelligence (AI) into clinical practice as exemplified by mammography, computer-aided diagnosis (CAD) and AI. Additionally, Dr. Siegel will discuss some proposed solutions to these challenges that could accelerate adoption of ...Read More
Join University of Maryland’s Dr. Eliot Siegel for the upcoming November NCI Imaging and Informatics Community Webinar (IICW). This presentation will address the gaps of applying artificial intelligence (AI) into clinical practice as exemplified by mammography, computer-aided diagnosis (CAD) and AI. Additionally, Dr. Siegel will discuss some proposed solutions to these challenges that could accelerate adoption of these algorithms and enhance care for oncology patients.
The monthly NCI IICW is organized by the Center for Biomedical Informatics and Information Technology and the Cancer Imaging Program. During the first Monday of every month, this event features scientific presentations and project updates.
Speaker:
Eliot Siegel, M.D.
Dr. Siegel is a professor and vice chair at the University of Maryland School of Medicine, Department of Diagnostic Radiology, as well as chief of radiology and nuclear medicine for the Veterans Affairs Maryland Healthcare System. He is the director of the Maryland Imaging Research Technologies Laboratory and has adjunct appointments as professor of bioengineering at the University of Maryland, College Park and as professor of computer science at the University of Maryland, Baltimore County.
DetailsOrganizerCBIITWhenMon, Nov 07, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Join University of Maryland’s Dr. Eliot Siegel for the upcoming November NCI Imaging and Informatics Community Webinar (IICW). This presentation will address the gaps of applying artificial intelligence (AI) into clinical practice as exemplified by mammography, computer-aided diagnosis (CAD) and AI. Additionally, Dr. Siegel will discuss some proposed solutions to these challenges that could accelerate adoption of these algorithms and enhance care for oncology patients. The monthly NCI IICW is organized by the Center for Biomedical Informatics and Information Technology and the Cancer Imaging Program. During the first Monday of every month, this event features scientific presentations and project updates. Speaker: Eliot Siegel, M.D. Dr. Siegel is a professor and vice chair at the University of Maryland School of Medicine, Department of Diagnostic Radiology, as well as chief of radiology and nuclear medicine for the Veterans Affairs Maryland Healthcare System. He is the director of the Maryland Imaging Research Technologies Laboratory and has adjunct appointments as professor of bioengineering at the University of Maryland, College Park and as professor of computer science at the University of Maryland, Baltimore County. | 2022-11-07 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | CBIIT | 0 | Bringing AI from Hype to Reality for Routine Clinical Practice: Defining and Addressing the Gaps | |||
655 |
Description
This is the first course in a four-part series on data visualization in R. A basic understanding of R is expected. This class provides a basic overview using ggplot, which is a part of the tidyverse. The tidyverse is a collection of R packages designed for data science. Participants are encouraged to install Read More
This is the first course in a four-part series on data visualization in R. A basic understanding of R is expected. This class provides a basic overview using ggplot, which is a part of the tidyverse. The tidyverse is a collection of R packages designed for data science. Participants are encouraged to install R and RStudio before the course so that they can follow along with the instructor. Participants will need to download the class data before the webinar. Separate registration is required for each course in the series.
DetailsOrganizerNIH LibraryWhenTue, Nov 08, 2022 - 1:00 pm - 2:00 pmWhereOnline |
This is the first course in a four-part series on data visualization in R. A basic understanding of R is expected. This class provides a basic overview using ggplot, which is a part of the tidyverse. The tidyverse is a collection of R packages designed for data science. Participants are encouraged to install R and RStudio before the course so that they can follow along with the instructor. Participants will need to download the class data before the webinar. Separate registration is required for each course in the series. | 2022-11-08 13:00:00 | Online | Programming | Online | NIH Library | 0 | Introduction to Data Visualization in R: ggplot | |||
695 |
Description
Over the past decade the importance of Structural Variation (SV) is becoming more obvious not just for population diversity but also with clear impacts in multiple diseases (e.g. Neurological) as well as cancer. SV are often loosely defined as 50bp or larger being characterized in five different SV types that impact more base pairs than single nucleotide variations all together. These types of genomic alterations (SV) are often located in tandem repeats and are ...Read More
Over the past decade the importance of Structural Variation (SV) is becoming more obvious not just for population diversity but also with clear impacts in multiple diseases (e.g. Neurological) as well as cancer. SV are often loosely defined as 50bp or larger being characterized in five different SV types that impact more base pairs than single nucleotide variations all together. These types of genomic alterations (SV) are often located in tandem repeats and are thus hard to identify and thus study. My group as well as others have demonstrated that long read platforms are superior to identify SV and resolve their alleles together with giving deeper insights in the complexity and variability of repeats. This is also true to resolve the often-complex genomes of cancer patients, where often complex alleles are forming new haplotypes or impacting complex regions such as HLA.
In my talk I will summarize the efforts of my group over the past year to improve the detection of Structural Variation and rapid turnaround of diagnosis using long read platforms such as Oxford Nanopore. As such I will demonstrate how we enabled a rapid sequencing effort for full genome sequencing from blood take from patients to report within 8 hours. I will continue to discuss how this can be further optimized in terms of comprehensiveness and scaling. My talk will conclude in highlighting novel developments in my group around single cell genomics sequencing and how we can improve the characterization and study of somatic and mosaic alleles thought a standard sequencing approach.
Dr. Fritz Sedlazeck is an Associate Professor at the Human Genome Sequencing Center at Baylor College of Medicine and an Adjunct Associate Professor at Rice University. His research focuses on algorithmic developments and high-performance computing for genomic and genetic applications. Specifically, he studies ways to improve the characterization of complex genomic alterations between individuals’ genomes based on large genomic sequencing data and as such improve our understanding of complex phenotypes such as human diseases.
DetailsOrganizerCDSLWhenWed, Nov 09, 2022 - 11:00 am - 12:00 pmWhereOnline |
Over the past decade the importance of Structural Variation (SV) is becoming more obvious not just for population diversity but also with clear impacts in multiple diseases (e.g. Neurological) as well as cancer. SV are often loosely defined as 50bp or larger being characterized in five different SV types that impact more base pairs than single nucleotide variations all together. These types of genomic alterations (SV) are often located in tandem repeats and are thus hard to identify and thus study. My group as well as others have demonstrated that long read platforms are superior to identify SV and resolve their alleles together with giving deeper insights in the complexity and variability of repeats. This is also true to resolve the often-complex genomes of cancer patients, where often complex alleles are forming new haplotypes or impacting complex regions such as HLA. In my talk I will summarize the efforts of my group over the past year to improve the detection of Structural Variation and rapid turnaround of diagnosis using long read platforms such as Oxford Nanopore. As such I will demonstrate how we enabled a rapid sequencing effort for full genome sequencing from blood take from patients to report within 8 hours. I will continue to discuss how this can be further optimized in terms of comprehensiveness and scaling. My talk will conclude in highlighting novel developments in my group around single cell genomics sequencing and how we can improve the characterization and study of somatic and mosaic alleles thought a standard sequencing approach. Dr. Fritz Sedlazeck is an Associate Professor at the Human Genome Sequencing Center at Baylor College of Medicine and an Adjunct Associate Professor at Rice University. His research focuses on algorithmic developments and high-performance computing for genomic and genetic applications. Specifically, he studies ways to improve the characterization of complex genomic alterations between individuals’ genomes based on large genomic sequencing data and as such improve our understanding of complex phenotypes such as human diseases. | 2022-11-09 11:00:00 | Online | Variant Analysis | Online | CDSL | 0 | Genomic Structural Variations and beyond | |||
656 |
Description
Join this introductory session to learn about how SAS analytics can enable researchers to amass, prepare, model, mine, analyze, and report on complex data. SAS resources are currently used at NIH in biomedical, cancer, COVID-19, and other infectious disease research.
This 45-minute session will provide an overview of SAS resources, including analytics software, support, and on-demand training resources available to NIH through the SAS website. Learn how to access online courses related to SAS programming, ...Read More
Join this introductory session to learn about how SAS analytics can enable researchers to amass, prepare, model, mine, analyze, and report on complex data. SAS resources are currently used at NIH in biomedical, cancer, COVID-19, and other infectious disease research.
This 45-minute session will provide an overview of SAS resources, including analytics software, support, and on-demand training resources available to NIH through the SAS website. Learn how to access online courses related to SAS programming, statistics, SAS macro language, and more.
DetailsOrganizerNIH LibraryWhenWed, Nov 09, 2022 - 1:00 pm - 1:45 pmWhereOnline |
Join this introductory session to learn about how SAS analytics can enable researchers to amass, prepare, model, mine, analyze, and report on complex data. SAS resources are currently used at NIH in biomedical, cancer, COVID-19, and other infectious disease research. This 45-minute session will provide an overview of SAS resources, including analytics software, support, and on-demand training resources available to NIH through the SAS website. Learn how to access online courses related to SAS programming, statistics, SAS macro language, and more. | 2022-11-09 13:00:00 | Online | Programming | Online | NIH Library | 0 | Introduction to SAS Training Resources | |||
694 |
DescriptionSince its release in September 2005, the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB) have served as key resources for interpreting the biological significance of expression changes in large transcriptomic datasets.
The 2022.X series of updates to the GSEA-MSigDB suite bring with ...Read More Since its release in September 2005, the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB) have served as key resources for interpreting the biological significance of expression changes in large transcriptomic datasets.
The 2022.X series of updates to the GSEA-MSigDB suite bring with them many new features, including a new series of collections designed for direct analysis of data from mouse models without the traditionally required orthology conversion.
We hope you can join this upcoming webinar and learn the basics of the GSEA method, the resources available in the Molecular Signatures Database, and an overview of how to take advantage of the newly enhanced support for mouse data. DetailsOrganizerCBIITWhenWed, Nov 09, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Since its release in September 2005, the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB) have served as key resources for interpreting the biological significance of expression changes in large transcriptomic datasets. The 2022.X series of updates to the GSEA-MSigDB suite bring with them many new features, including a new series of collections designed for direct analysis of data from mouse models without the traditionally required orthology conversion. We hope you can join this upcoming webinar and learn the basics of the GSEA method, the resources available in the Molecular Signatures Database, and an overview of how to take advantage of the newly enhanced support for mouse data. | 2022-11-09 13:00:00 | Online | Pathway Analysis | Online | CBIIT | 0 | New Resources for Mouse Model Analysis Using GSEA and MSigDB in 2022 | |||
675 |
Description
Speakers:
Speakers:
DetailsOrganizerSeqSPACE Webinar SeriesWhenWed, Nov 09, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Speakers: Amanda Phipps, PhD, MPH Associate Professor and Associate Chair of Epidemiology Department of Epidemiology University of Washington School of Public Health Tabitha Harrison, MPH Research Scientist University of Washington School of Public Health Dr. Amanda Phipps is an Associate Professor and Associate Chair of Epidemiology and Tabitha Harrison is currently a Research Scientist in the Department of Epidemiology at the University of Washington School of Public Health. These investigators are part of the Genetics and Epidemiology of Colorectal Cancer Consortium (GECCO), an international collaboration that focuses on identification of genetic risk factors and gene-environment interactions for colorectal cancer (CRC). They have been leading several sequencing studies within the GECCO consortium and will be presenting on results from targeted tumor sequencing studies in CRC. | 2022-11-09 15:00:00 | Online | Cancer | Online | SeqSPACE Webinar Series | 0 | Targeted Tumor Sequencing in Colorectal Cancer: The Genetics and Epidemiology of Colorectal Cancer Consortium | |||
689 |
Description
R on Biowulf: a set of short case studies that will demonstrate the usage of R on the NIH Biowulf cluster
We will focus on:
1) migrating/reinstalling R packages from your laptop
to the HPC cluster;
2) managing your own R packages vs using system
packages;
3) speeding up R scripts with parallel computing. There will
be hands-on activities/troubleshooting at the end of the tutorial.
Expected background: Basic knowledge of R, Unix and active Biowulf account.
...Read More
R on Biowulf: a set of short case studies that will demonstrate the usage of R on the NIH Biowulf cluster
We will focus on:
1) migrating/reinstalling R packages from your laptop
to the HPC cluster;
2) managing your own R packages vs using system
packages;
3) speeding up R scripts with parallel computing. There will
be hands-on activities/troubleshooting at the end of the tutorial.
Expected background: Basic knowledge of R, Unix and active Biowulf account.
Instructors: Qi Yu, Wolfgang Resch (NIH HPC Staff)
For inquiries email staff@hpc.nih.gov
DetailsOrganizerHPC BiowulfWhenThu, Nov 10, 2022 - 9:30 am - 11:30 amWhereOnline |
R on Biowulf: a set of short case studies that will demonstrate the usage of R on the NIH Biowulf cluster We will focus on: 1) migrating/reinstalling R packages from your laptop to the HPC cluster; 2) managing your own R packages vs using system packages; 3) speeding up R scripts with parallel computing. There will be hands-on activities/troubleshooting at the end of the tutorial. Expected background: Basic knowledge of R, Unix and active Biowulf account. Instructors: Qi Yu, Wolfgang Resch (NIH HPC Staff) For inquiries email staff@hpc.nih.gov | 2022-11-10 09:30:00 | Online | Programming | Online | HPC Biowulf | 0 | R on Biowulf | |||
657 |
Description
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis.
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis.
DetailsOrganizerNIH LibraryWhenThu, Nov 10, 2022 - 10:00 am - 12:30 pmWhereOnline |
Participants will learn how to identify cell populations and detect differentially expressed genes in a simple Single Cell RNA-Seq experiment with the point-and-click interface in Partek Flow. By completing this session, attendees will acquire a working knowledge of the tools available to NIH researchers for Single Cell RNA-Seq data analysis. | 2022-11-10 10:00:00 | Online | Online | NIH Library | 0 | Single Cell RNA Seq Data Analysis in Partek Flow | ||||
662 |
Description
Learn how to include generalist repositories in data sharing plans as part of your preparation for the new NIH Data Management and Sharing Policy beginning in January 2023. This webinar will include guidance on selecting a generalist repository, using generalist repositories jointly with discipline-specific repositories, describing plans to use a generalist repository in a Data Management and Sharing Plan, and preparing for data sharing and reporting.
Speakers:
Julie Goldman (Dataverse, Harvard Library)
Sarah Lippincott (...Read More
Learn how to include generalist repositories in data sharing plans as part of your preparation for the new NIH Data Management and Sharing Policy beginning in January 2023. This webinar will include guidance on selecting a generalist repository, using generalist repositories jointly with discipline-specific repositories, describing plans to use a generalist repository in a Data Management and Sharing Plan, and preparing for data sharing and reporting.
Speakers:
Julie Goldman (Dataverse, Harvard Library)
Sarah Lippincott (Dryad)
Nici Pfeiffer (Open Science Framework)
Rebecca Li (Vivli)
Moderated by: Ana Van Gulick (Figshare)
DetailsOrganizerThe NIH Generalist Repository Ecosystem Initiative (GREI)WhenThu, Nov 10, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Learn how to include generalist repositories in data sharing plans as part of your preparation for the new NIH Data Management and Sharing Policy beginning in January 2023. This webinar will include guidance on selecting a generalist repository, using generalist repositories jointly with discipline-specific repositories, describing plans to use a generalist repository in a Data Management and Sharing Plan, and preparing for data sharing and reporting. Speakers: Julie Goldman (Dataverse, Harvard Library) Sarah Lippincott (Dryad) Nici Pfeiffer (Open Science Framework) Rebecca Li (Vivli) Moderated by: Ana Van Gulick (Figshare) | 2022-11-10 15:00:00 | Online | Data Management | Online | The NIH Generalist Repository Ecosystem Initiative (GREI) | 0 | How to include generalist repositories in your NIH data management and sharing plans | |||
699 |
Description
Join Google’s Marcos Novaes, Ph.D., as he presents on the design of large-scale solutions for high-performance computing, machine learning, and the internet of things using the Google Cloud Platform.
Dr. Norvaes will go over:
Join Google’s Marcos Novaes, Ph.D., as he presents on the design of large-scale solutions for high-performance computing, machine learning, and the internet of things using the Google Cloud Platform.
Dr. Norvaes will go over:
DetailsOrganizerCBIITWhenThu, Nov 10, 2022 - 3:00 pm - 4:00 pmWhereOnline |
Join Google’s Marcos Novaes, Ph.D., as he presents on the design of large-scale solutions for high-performance computing, machine learning, and the internet of things using the Google Cloud Platform. Dr. Norvaes will go over: the Google Cloud Medical Imaging Suite. using Jupyter lab extensions for medical imaging, such as interactive Python widgets, 3DSlicer Kernel, and running 3DSlicer and MONAILabel in a Jupyter environment using Imaging Data Commons data sets. This webinar is part of the monthly Containers and Workflows Interest Group (CWIG) webinar series. CWIG brings together data scientists, bioinformaticians, computer scientists, and researchers to learn more about cloud computing and container technologies, workflows, and pipelines that could drive cancer data science. The webinar series features a variety of presenters from across NIH, industry, and academia. Though cancer research is the focus of the series, unrelated data science and cloud computing topics are still welcome. In the last year, the CWIG webinar speakers have discussed: NIH cloud programs like the Cancer Genomics Cloud, its fellow NCI Cloud Resources, and NIH Science and Technology Research Infrastructure for Discovery, Experimentation, and Sustainability (STRIDES). commercial cloud platforms for biomedical data storage and computing. pipelines and tools for deep learning and various omics analysis. Speaker: Marcos Novaes, Ph.D. Dr. Norvaes is a Google Cloud Platform solution architect. His areas of interest include the re-architecture of traditionally distributed numerical methods at a large scale using modern technologies developed for machine learning, such as Google's Tensorflow. | 2022-11-10 15:00:00 | Online | Image Analysis | Online | CBIIT | 0 | Google Cloud Medical Imaging | |||
688 |
Description
During this webinar, the Genomic Data Commons’ (GDC’s) Drs. Zhenyu Zhang and Bill Wysocki will review the different types of harmonized data that the GDC makes available for the cancer research community. The webinar will also:
During this webinar, the Genomic Data Commons’ (GDC’s) Drs. Zhenyu Zhang and Bill Wysocki will review the different types of harmonized data that the GDC makes available for the cancer research community. The webinar will also:
DetailsOrganizerCBIITWhenMon, Nov 14, 2022 - 2:00 pm - 3:00 pmWhereOnline |
During this webinar, the Genomic Data Commons’ (GDC’s) Drs. Zhenyu Zhang and Bill Wysocki will review the different types of harmonized data that the GDC makes available for the cancer research community. The webinar will also: exemplify use cases for this data, such as how to: identify high- and low-frequency cancer drivers. define genomic determinants of response to therapy. inform the composition of clinical trial cohorts that shared targeted genetic lesions. provide an overview of GDC pipelines for harmonizing and processing data. The NCI GDC harmonizes raw sequencing data from cancer genomic studies by aligning to a common reference genome and applying standard bioinformatics pipelines. This generates high-level data such as mutation calls and structural variants. As part of the NCI Cancer Research Data Commons (CRDC), the GDC provides the cancer research community with data and tools to access, analyze, and share valuable genomic data. Speakers: Bill Wysocki, Ph.D. Dr. Wysocki is the director of User Services and Outreach for the GDC at the University of Chicago. Dr. Zhenyu Zhang, Ph.D. Dr. Zhang is the GDC co-principal investigator at the University of Chicago. | 2022-11-14 14:00:00 | Online | Data Resources | Online | CBIIT | 0 | Example Use Cases for Harmonized Data in the GDC | |||
691 |
Description
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks.
Current topics include three series of practical training sessions on the following topics:
Unix for Biologists I
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks.
Current topics include three series of practical training sessions on the following topics:
Unix for Biologists I
DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenMon, Nov 14, 2022 - 3:00 pm - 5:00 pmWhereOnline |
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks. Current topics include three series of practical training sessions on the following topics: Unix for Biologists I | 2022-11-14 15:00:00 | Online | Proteomics | Online | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Unix for Biologists I | |||
671 |
Description
This workshop, geared toward researchers and information professionals, will provide an overview of appraising and preparing research data for the purpose of data sharing through the Data Curation Network’s CURATE(D) model. During this half-day learning opportunity, attendees will:
This workshop, geared toward researchers and information professionals, will provide an overview of appraising and preparing research data for the purpose of data sharing through the Data Curation Network’s CURATE(D) model. During this half-day learning opportunity, attendees will:
DetailsOrganizerData ScienceWhenTue, Nov 15, 2022 - 1:00 pm - 4:00 pmWhereOnline |
This workshop, geared toward researchers and information professionals, will provide an overview of appraising and preparing research data for the purpose of data sharing through the Data Curation Network’s CURATE(D) model. During this half-day learning opportunity, attendees will: Increase their understanding of data curation practices to make data more Findable, Accessible, Interoperable, and Reusable (FAIR). Apply the CURATE(D) model to a data deposit. Meet like-minded colleagues who are interested in developing or enhancing curation practices at their institutions. This will be an interactive workshop with breakout rooms and small group activities. Attendees will need access to appropriate technology (computer, microphone, webcam, speakers/headphones, web browsers, high speed internet) and come prepared to participate. Speakers: Michelle Yee, Senior Data Catalog Coordinator, New York University (NYU) Health Sciences Library Marley Kalt, Data Management Consultant, Johns Hopkins University Sheridan Libraries Shanda Hunt, Public Health Librarian & Data Curation Specialist, Health Sciences Library, University of Minnesota | 2022-11-15 13:00:00 | Online | Data Management | Online | Data Science | 0 | Applying the CURATE(D) Model for Data Curation | |||
679 |
Description
Join Drs. Jennifer E. Beane-Ebel and Vijaya B. Kolachalama of Boston University as they discuss their studies of pathological and molecular alterations associated with lesion severity and progression.
Topics include deep learning methods for characterizing the pathology of premalignant lesions, which precede invasive carcinoma, and lung cancer specimens.
The Human Tumor Atlas Network (HTAN) consists of Read More
Join Drs. Jennifer E. Beane-Ebel and Vijaya B. Kolachalama of Boston University as they discuss their studies of pathological and molecular alterations associated with lesion severity and progression.
Topics include deep learning methods for characterizing the pathology of premalignant lesions, which precede invasive carcinoma, and lung cancer specimens.
The Human Tumor Atlas Network (HTAN) consists of 10 research centers seeking to identify the molecular and cellular conditions that cause healthy cells to become cancerous and that drive critical transitions in advanced cancers. Both speakers support the Lung Pre-Cancer Atlas: the particular HTAN research network that consists of university collaborators who seek to study and address lung cancer in its premalignancy (conditions that have the potential to progress to cancer) status.
The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI.
Speakers:
DetailsOrganizerCBIITWhenWed, Nov 16, 2022 - 11:00 am - 12:00 pmWhereOnline |
Join Drs. Jennifer E. Beane-Ebel and Vijaya B. Kolachalama of Boston University as they discuss their studies of pathological and molecular alterations associated with lesion severity and progression. Topics include deep learning methods for characterizing the pathology of premalignant lesions, which precede invasive carcinoma, and lung cancer specimens. The Human Tumor Atlas Network (HTAN) consists of 10 research centers seeking to identify the molecular and cellular conditions that cause healthy cells to become cancerous and that drive critical transitions in advanced cancers. Both speakers support the Lung Pre-Cancer Atlas: the particular HTAN research network that consists of university collaborators who seek to study and address lung cancer in its premalignancy (conditions that have the potential to progress to cancer) status. The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. Speakers: Jennifer E. Beane-Ebel, Ph.D. Dr. Beane-Ebel is an associate professor at the Boston University Chobanian & Avedisian School of Medicine. She operates on a team that currently uses single-cell technologies to understand how smoking alters the cellular architecture of the bronchial epithelium and the immune microenvironment. Vijaya B. Kolachalama, Ph.D., FAHA Dr. Kolachalama is an associate professor at the Boston University Chobanian & Avedisian School of Medicine. He is also a member of the Whitaker Cardiovascular Institute and the Evans Center for Interdisciplinary Biomedical Research of Boston University. He earned his B.S. from the Indian Institute of Technology and his Ph.D. from the University of Southampton. | 2022-11-16 11:00:00 | Online | Data Management | Online | CBIIT | 0 | Hear How Researchers Use Transcriptomics and Digital Pathology for Pre-cancer Phenotyping | |||
697 |
Description
Attend this webinar to hear a moderated, five-person panel expand on the presentation, “Perspectives on CMS Linkage for Cancer Research in Cohort Studies.” This presentation is from the recent 2022 Annual Meeting of the NCI Cohort Consortium.
Cohort investigators will discuss their experiences working with Medicare data to explore linkages that are relevant to cancer research. Take advantage of their insights on the use of existing data to further cancer research!
Moderators:
Yu Chen, PhD, MPH
...Read More
Attend this webinar to hear a moderated, five-person panel expand on the presentation, “Perspectives on CMS Linkage for Cancer Research in Cohort Studies.” This presentation is from the recent 2022 Annual Meeting of the NCI Cohort Consortium.
Cohort investigators will discuss their experiences working with Medicare data to explore linkages that are relevant to cancer research. Take advantage of their insights on the use of existing data to further cancer research!
Moderators:
Yu Chen, PhD, MPH
Professor of Epidemiology,
Departments of Population Health and Environmental Medicine,
New York University School of Medicine
Lynne Wilkens, DrPH, MS
Director, Biostatistics Shared Resource, University of Hawaiʻi Cancer Center
Associate Director, Shared Resources, University of Hawaiʻi Cancer Center
Full Member, Population Sciences in the Pacific Program (Cancer Epidemiology), University of Hawaiʻi Cancer Center
Featured speakers:
A. Heather Eliassen, ScD
Professor of Nutrition and Epidemiology
Harvard T.H. Chan School of Public Health
Lindsey Enewold, PhD, MPH
Epidemiologist
Healthcare Assessment Research Branch
Healthcare Delivery Research Program
National Cancer Institute
James V. Lacey, Jr., PhD, MPH
Professor and Director
Division of Health Analytics
Department of Computational and Qualitative Medicine
City of Hope
DetailsOrganizerCBIITWhenWed, Nov 16, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Attend this webinar to hear a moderated, five-person panel expand on the presentation, “Perspectives on CMS Linkage for Cancer Research in Cohort Studies.” This presentation is from the recent 2022 Annual Meeting of the NCI Cohort Consortium. Cohort investigators will discuss their experiences working with Medicare data to explore linkages that are relevant to cancer research. Take advantage of their insights on the use of existing data to further cancer research! Moderators: Yu Chen, PhD, MPH Professor of Epidemiology, Departments of Population Health and Environmental Medicine, New York University School of Medicine Lynne Wilkens, DrPH, MS Director, Biostatistics Shared Resource, University of Hawaiʻi Cancer Center Associate Director, Shared Resources, University of Hawaiʻi Cancer Center Full Member, Population Sciences in the Pacific Program (Cancer Epidemiology), University of Hawaiʻi Cancer Center Featured speakers: A. Heather Eliassen, ScD Professor of Nutrition and Epidemiology Harvard T.H. Chan School of Public Health Lindsey Enewold, PhD, MPH Epidemiologist Healthcare Assessment Research Branch Healthcare Delivery Research Program National Cancer Institute James V. Lacey, Jr., PhD, MPH Professor and Director Division of Health Analytics Department of Computational and Qualitative Medicine City of Hope | 2022-11-16 13:00:00 | Online | Data Resources | Online | CBIIT | 0 | Using Medicare Data for Cancer Research | |||
692 |
Description
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks.
Current topics include three series of practical training sessions on the following topics:
Unix for Biologists II
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks.
Current topics include three series of practical training sessions on the following topics:
Unix for Biologists II
DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenWed, Nov 16, 2022 - 3:00 pm - 5:00 pmWhereOnline |
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks. Current topics include three series of practical training sessions on the following topics: Unix for Biologists II | 2022-11-16 15:00:00 | Online | Proteomics | Online | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Unix for Biologists II | |||
635 |
Description
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel Report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives.
Presenter:
Speaker: Read More
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel Report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives.
Presenter:
Speaker: Zeynep Gümüş Ph.D., Icahn School of Medicine at Mt. Sinai
DetailsOrganizerCancer MoonshotWhenThu, Nov 17, 2022 - 12:00 pm - 1:00 pmWhereOnline |
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel Report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives. Presenter: Speaker: Zeynep Gümüş Ph.D., Icahn School of Medicine at Mt. Sinai | 2022-11-17 12:00:00 | Online | Cancer | Online | Cancer Moonshot | 0 | Seminar for the Cancer Moonshot Seminar Series, NCI Emerging Technologies Seminar Series, and DataViz + Cancer | |||
696 |
Description
Join Icahn School of Medicine at Mount Sinai’s Dr. Zeynep Gümüş to learn about a user-friendly tool she and her team are developing to enable researchers of all computational skill levels to visually analyze and explore immune monitoring assay results.
This joint event from the NCI Emerging Technologies Seminar Series and DataViz + Cancer webinar is a part of the Read More
Join Icahn School of Medicine at Mount Sinai’s Dr. Zeynep Gümüş to learn about a user-friendly tool she and her team are developing to enable researchers of all computational skill levels to visually analyze and explore immune monitoring assay results.
This joint event from the NCI Emerging Technologies Seminar Series and DataViz + Cancer webinar is a part of the Cancer Moonshot℠ Seminar Series, which showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report.
The NCI Emerging Technology Seminar Series highlights novel technologies being supported through NCI awards that could transform cancer research and clinical care.
The DataViz + Cancer micro lab brings together thought leaders from the NCI Cancer Moonshot and visualization experts to engage and discuss the frontiers of cancer data visualization.
Speaker:
Dr. Gümüş is an assistant professor at the Department of Genetics and Genomics at the Icahn School of Medicine at Mount Sinai. Her research focus is developing and applying computational methods to define and implement genomics-based precision medicine approaches.
DetailsOrganizerCancer MoonshotWhenThu, Nov 17, 2022 - 12:00 pm - 1:00 pmWhereOnline |
Join Icahn School of Medicine at Mount Sinai’s Dr. Zeynep Gümüş to learn about a user-friendly tool she and her team are developing to enable researchers of all computational skill levels to visually analyze and explore immune monitoring assay results. This joint event from the NCI Emerging Technologies Seminar Series and DataViz + Cancer webinar is a part of the Cancer Moonshot℠ Seminar Series, which showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. The NCI Emerging Technology Seminar Series highlights novel technologies being supported through NCI awards that could transform cancer research and clinical care. The DataViz + Cancer micro lab brings together thought leaders from the NCI Cancer Moonshot and visualization experts to engage and discuss the frontiers of cancer data visualization. Speaker: Dr. Gümüş is an assistant professor at the Department of Genetics and Genomics at the Icahn School of Medicine at Mount Sinai. Her research focus is developing and applying computational methods to define and implement genomics-based precision medicine approaches. | 2022-11-17 12:00:00 | Online | Data Science | Online | Cancer Moonshot | 0 | Development of a Visualization Approach to Enhance Cancer Moonshot℠ Data | |||
658 |
Description
In this hands-on virtual lab, the participants will familiarize themselves with Deep Learning concepts and techniques, using MATLAB Online to train deep neural networks on GPUs in the cloud, create deep learning models from scratch for images and signal data, explore pretrained models and use transfer learning, import and export models from Python frameworks such as Keras and PyTorch, as well as automatically generate code for embedded targets. Deep Learning can achieve state-of-the-art accuracy when ...Read More
In this hands-on virtual lab, the participants will familiarize themselves with Deep Learning concepts and techniques, using MATLAB Online to train deep neural networks on GPUs in the cloud, create deep learning models from scratch for images and signal data, explore pretrained models and use transfer learning, import and export models from Python frameworks such as Keras and PyTorch, as well as automatically generate code for embedded targets. Deep Learning can achieve state-of-the-art accuracy when it comes to complex problems such as image classification or developing predictive models for signal processing applications. Deep Learning outperforms humans in some tasks like classifying objects in images. Cancer researchers are using deep learning to automatically detect cancer cells, for example. This is an introductory class with a 3.5 hour duration, including a 20 minute break.
DetailsOrganizerNIH LibraryWhenThu, Nov 17, 2022 - 1:00 pm - 2:30 pmWhereOnline |
In this hands-on virtual lab, the participants will familiarize themselves with Deep Learning concepts and techniques, using MATLAB Online to train deep neural networks on GPUs in the cloud, create deep learning models from scratch for images and signal data, explore pretrained models and use transfer learning, import and export models from Python frameworks such as Keras and PyTorch, as well as automatically generate code for embedded targets. Deep Learning can achieve state-of-the-art accuracy when it comes to complex problems such as image classification or developing predictive models for signal processing applications. Deep Learning outperforms humans in some tasks like classifying objects in images. Cancer researchers are using deep learning to automatically detect cancer cells, for example. This is an introductory class with a 3.5 hour duration, including a 20 minute break. | 2022-11-17 13:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Library | 0 | Hands On Virtual Lab: Deep Learning | |||
687 |
Description
The Medical Rehabilitation Research Speaker Series provides an opportunity for selected NCMRR and NIH rehabilitation research grantees to share their research with colleagues from rehabilitation-related and other fields. This fourth session features NCMRR grantees Deanna Gates, Ph.D., and Jacob George, Ph.D., presenting their advances in the fields of artificial intelligence and machine learning. Series events will include presentations from the grantees followed by a question-and-answer session.
Speakers:
Deanna Gates, Ph....Read More
The Medical Rehabilitation Research Speaker Series provides an opportunity for selected NCMRR and NIH rehabilitation research grantees to share their research with colleagues from rehabilitation-related and other fields. This fourth session features NCMRR grantees Deanna Gates, Ph.D., and Jacob George, Ph.D., presenting their advances in the fields of artificial intelligence and machine learning. Series events will include presentations from the grantees followed by a question-and-answer session.
Speakers:
Deanna Gates, Ph.D.
Director, Rehabilitation Biomechanic Laboratory
University of Michigan
Dr. Gates is an associate professor of movement science in the School of Kinesiology at the University of Michigan. She is also an associate professor of biomedical engineering in the College of Engineering and Medical School and the director of the Rehabilitation Biomechanics Laboratory. Her research focuses on biomechanics, rehabilitation, prosthetic and orthotics, control of repetitive movements, and nonlinear dynamics.
Jacob George, Ph.D.
Director, Utah NeuroRobotics Lab
University of Utah
Dr. George is an assistant professor in the Departments of Electrical & Computer Engineering and Physical Medicine & Rehabilitation at the University of Utah. He also is the director of the Utah NeuroRobotics Lab, which is working at the intersection of artificial intelligence, robotics, and neuroscience, to develop biologically inspired artificial intelligence and brain-machine interfaces to restore and/or enhance human function.
DetailsOrganizerNICHDWhenFri, Nov 18, 2022 - 12:00 pm - 1:00 pmWhereOnline |
The Medical Rehabilitation Research Speaker Series provides an opportunity for selected NCMRR and NIH rehabilitation research grantees to share their research with colleagues from rehabilitation-related and other fields. This fourth session features NCMRR grantees Deanna Gates, Ph.D., and Jacob George, Ph.D., presenting their advances in the fields of artificial intelligence and machine learning. Series events will include presentations from the grantees followed by a question-and-answer session. Speakers: Deanna Gates, Ph.D. Director, Rehabilitation Biomechanic Laboratory University of Michigan Dr. Gates is an associate professor of movement science in the School of Kinesiology at the University of Michigan. She is also an associate professor of biomedical engineering in the College of Engineering and Medical School and the director of the Rehabilitation Biomechanics Laboratory. Her research focuses on biomechanics, rehabilitation, prosthetic and orthotics, control of repetitive movements, and nonlinear dynamics. Jacob George, Ph.D. Director, Utah NeuroRobotics Lab University of Utah Dr. George is an assistant professor in the Departments of Electrical & Computer Engineering and Physical Medicine & Rehabilitation at the University of Utah. He also is the director of the Utah NeuroRobotics Lab, which is working at the intersection of artificial intelligence, robotics, and neuroscience, to develop biologically inspired artificial intelligence and brain-machine interfaces to restore and/or enhance human function. | 2022-11-18 12:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NICHD | 0 | Leveraging Artificial Intelligence/machine Learning | |||
708 |
Description
CIViC (Clinical Interpretation of Variants in Cancer, www.civicdb.org) is a free and open resource for curation and distribution of cancer variant knowledge which employs crowdsourced curation and expert moderation from published literature and meeting abstracts. The CIViC data model incorporates structured fields for variant classification which reflect field-wide guidelines including AMP/ASCO/CAP standards for somatic variants and ClinGen/CGC/VICC recommendations for evaluation of variant oncogenicity. CIViC is utilized by ClinGen Somatic ...Read More
CIViC (Clinical Interpretation of Variants in Cancer, www.civicdb.org) is a free and open resource for curation and distribution of cancer variant knowledge which employs crowdsourced curation and expert moderation from published literature and meeting abstracts. The CIViC data model incorporates structured fields for variant classification which reflect field-wide guidelines including AMP/ASCO/CAP standards for somatic variants and ClinGen/CGC/VICC recommendations for evaluation of variant oncogenicity. CIViC is utilized by ClinGen Somatic Cancer Variant Curation Expert Panels (SC-VCEPs) to define new standards for domain specific variant classification. The CIViC data model is currently expanding to incorporate multi variant Molecular Profiles, for clinical interpretation of co-occuring variants from different genes.
Speaker:
Arpad Danos Ph.D., Washington
University in St. Louis
DetailsOrganizerCBIITWhenTue, Nov 29, 2022 - 2:00 pm - 3:00 pmWhereOnline |
CIViC (Clinical Interpretation of Variants in Cancer, www.civicdb.org) is a free and open resource for curation and distribution of cancer variant knowledge which employs crowdsourced curation and expert moderation from published literature and meeting abstracts. The CIViC data model incorporates structured fields for variant classification which reflect field-wide guidelines including AMP/ASCO/CAP standards for somatic variants and ClinGen/CGC/VICC recommendations for evaluation of variant oncogenicity. CIViC is utilized by ClinGen Somatic Cancer Variant Curation Expert Panels (SC-VCEPs) to define new standards for domain specific variant classification. The CIViC data model is currently expanding to incorporate multi variant Molecular Profiles, for clinical interpretation of co-occuring variants from different genes. Speaker: Arpad Danos Ph.D., Washington University in St. Louis | 2022-11-29 14:00:00 | Online | Cancer | Online | CBIIT | 0 | Introduction to CIViC (Clinical Interpretation of Variants in Cancer) | |||
709 |
Description
Helen Shearman, PhD, Senior Application Scientist, will be presenting a one-hour overview demonstration on Geneious Prime. Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. It is built to be highly visual, easy to use, and collaborative. Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast and more. Searching, sharing, and automation features are built into all major workflows. More information ...Read More
Helen Shearman, PhD, Senior Application Scientist, will be presenting a one-hour overview demonstration on Geneious Prime. Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. It is built to be highly visual, easy to use, and collaborative. Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast and more. Searching, sharing, and automation features are built into all major workflows. More information can be found on our website at geneious.com
Speaker:
Helen Shearman, PhD, Senior
Application Scientist, Geneious
DetailsOrganizerCBIITWhenWed, Nov 30, 2022 - 10:00 am - 11:00 amWhereOnline |
Helen Shearman, PhD, Senior Application Scientist, will be presenting a one-hour overview demonstration on Geneious Prime. Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. It is built to be highly visual, easy to use, and collaborative. Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast and more. Searching, sharing, and automation features are built into all major workflows. More information can be found on our website at geneious.com Speaker: Helen Shearman, PhD, Senior Application Scientist, Geneious | 2022-11-30 10:00:00 | Online | Cancer | Online | CBIIT | 0 | Introduction to Geneious Prime | |||
700 |
Description
This lecture will present an overview of various open-source databases and servers available that support pharmacogenomics research and drug discovery. Specifically, this lecture will focus on integrated-omics and data-driven approaches for novel drug discovery, drug repositioning, and understanding the molecular basis of drug-induced adverse events. Using two case studies, the lecture will demonstrate how available data can be repurposed to find preclinical candidate therapeutics and/or understand the molecular basis for drug response.
Speaker:
Dr. ...Read More
This lecture will present an overview of various open-source databases and servers available that support pharmacogenomics research and drug discovery. Specifically, this lecture will focus on integrated-omics and data-driven approaches for novel drug discovery, drug repositioning, and understanding the molecular basis of drug-induced adverse events. Using two case studies, the lecture will demonstrate how available data can be repurposed to find preclinical candidate therapeutics and/or understand the molecular basis for drug response.
Speaker:
Dr. Anil Goud Jegga, D.V.M., M.Res.
Dr. Goud Jegga is a professor in the Division of Biomedical Informatics at Cincinnati Children’s Hospital Medical Center and University of Cincinnati. His research interests are in translational bioinformatics, specifically drug discovery and drug repositioning. His team is currently focusing on developing and implementing systems biology-based novel computational approaches to find drug candidates for rare lung disorders.
DetailsOrganizerNICHDWhenWed, Nov 30, 2022 - 12:00 pm - 1:00 pmWhereOnline |
This lecture will present an overview of various open-source databases and servers available that support pharmacogenomics research and drug discovery. Specifically, this lecture will focus on integrated-omics and data-driven approaches for novel drug discovery, drug repositioning, and understanding the molecular basis of drug-induced adverse events. Using two case studies, the lecture will demonstrate how available data can be repurposed to find preclinical candidate therapeutics and/or understand the molecular basis for drug response. Speaker: Dr. Anil Goud Jegga, D.V.M., M.Res. Dr. Goud Jegga is a professor in the Division of Biomedical Informatics at Cincinnati Children’s Hospital Medical Center and University of Cincinnati. His research interests are in translational bioinformatics, specifically drug discovery and drug repositioning. His team is currently focusing on developing and implementing systems biology-based novel computational approaches to find drug candidates for rare lung disorders. | 2022-11-30 12:00:00 | Online | Pharmacogenomics | Online | NICHD | 0 | Pharmacogenomics and Bioinformatics in Drug Discovery | |||
706 |
Description
The All of Us Research Program is enrolling a diverse group of at least 1 million persons in the United States to accelerate biomedical research and improve health of individuals and populations. In this webinar, the speakers will give a quick introduction to the current status of the cohort and provide a hands-on training session for scientists interested in accessing and analyzing All of Us Data.
Speakers:
The All of Us Research Program is enrolling a diverse group of at least 1 million persons in the United States to accelerate biomedical research and improve health of individuals and populations. In this webinar, the speakers will give a quick introduction to the current status of the cohort and provide a hands-on training session for scientists interested in accessing and analyzing All of Us Data.
Speakers:
DetailsOrganizerNCIWhenThu, Dec 01, 2022 - 1:00 pm - 2:30 pmWhereOnline |
The All of Us Research Program is enrolling a diverse group of at least 1 million persons in the United States to accelerate biomedical research and improve health of individuals and populations. In this webinar, the speakers will give a quick introduction to the current status of the cohort and provide a hands-on training session for scientists interested in accessing and analyzing All of Us Data. Speakers: Sheri Schully, PhD Deputy Chief Medical and Scientific Officer Division of Medical and Scientific Research, All of Us Research Program, National Institutes of Health Geoffrey S. Ginsburg, MD, PhD Chief Medical and Scientific Officer, Director Division of Medical and Scientific Research, All of Us Research Program, National Institutes of Health | 2022-12-01 13:00:00 | Online | Cancer,Data Resources | Online | NCI | 0 | Using the All of Us Research Program Data for Cancer Researchers | |||
707 |
Description
Speaker:
Matthew McCoy, Ph.D.
Assistant Professor, Department of Oncology
Georgetown University Medical Center
Meeting number (access code): 2306 903 3155; password: Td9fb6pf62@
Speaker:
Matthew McCoy, Ph.D.
Assistant Professor, Department of Oncology
Georgetown University Medical Center
Meeting number (access code): 2306 903 3155; password: Td9fb6pf62@
DetailsOrganizerFNL Science and Technology GroupWhenThu, Dec 01, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Speaker: Matthew McCoy, Ph.D. Assistant Professor, Department of Oncology Georgetown University Medical Center Meeting number (access code): 2306 903 3155; password: Td9fb6pf62@ | 2022-12-01 13:00:00 | Online | Cancer,Data Science | Online | FNL Science and Technology Group | 0 | Scientific Partners Distinguished Lecture Series Presents: “Understanding and Overcoming the Challenges of Cancer Patient Digital Twins” | |||
710 |
Description
Helen Shearman, Ph.D., Senior Field Application Scientist, will be presenting a one-hour Q&A and tips and tricks session for Geneious Prime. This session is aimed at people who already have a little experience with Geneious Prime. Helen will present some tips and tricks for how to make the most out of Geneious Prime, from tips for data management and shortcuts, through to how to run high-throughput analyses and create workflows. Attendees are ...Read More
Helen Shearman, Ph.D., Senior Field Application Scientist, will be presenting a one-hour Q&A and tips and tricks session for Geneious Prime. This session is aimed at people who already have a little experience with Geneious Prime. Helen will present some tips and tricks for how to make the most out of Geneious Prime, from tips for data management and shortcuts, through to how to run high-throughput analyses and create workflows. Attendees are welcome to ask questions or suggest topic areas.
Speaker:
Helen Shearman, Ph.D., Senior
Application Scientist, Geneious
DetailsOrganizerCBIITWhenFri, Dec 02, 2022 - 10:00 am - 11:00 amWhereOnline |
Helen Shearman, Ph.D., Senior Field Application Scientist, will be presenting a one-hour Q&A and tips and tricks session for Geneious Prime. This session is aimed at people who already have a little experience with Geneious Prime. Helen will present some tips and tricks for how to make the most out of Geneious Prime, from tips for data management and shortcuts, through to how to run high-throughput analyses and create workflows. Attendees are welcome to ask questions or suggest topic areas. Speaker: Helen Shearman, Ph.D., Senior Application Scientist, Geneious | 2022-12-02 10:00:00 | Online | Cancer | Online | CBIIT | 0 | Geneious Prime Tips and Tricks Session | |||
711 |
Description
Speakers:
Speakers:
DetailsOrganizerSIGWhenFri, Dec 02, 2022 - 2:00 pm - 3:00 pmWhereOnline |
Speakers: Karen Miga (UCSC) “Expanding Studies of Centromere Structure and Function in the Era of Telomere-to-Telomere (T2T) Genomics” https://migalab.com/ Miten Jain (Northeastern) “Recent progress in human genome analysis using nanopore long reads” https://coe.northeastern.edu/people/jain-miten/ | 2022-12-02 14:00:00 | Online | Genomics | Online | SIG | 0 | NIH Long-read SIG meeting | |||
680 |
Description
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a review of core concepts in epidemiology. This session will cover the principles of epidemiology, key concepts and terms, brief review of outbreak investigations and study designs, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises ...Read More
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a review of core concepts in epidemiology. This session will cover the principles of epidemiology, key concepts and terms, brief review of outbreak investigations and study designs, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed).
DetailsOrganizerNIH LibraryWhenTue, Dec 06, 2022 - 1:00 pm - 4:00 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a review of core concepts in epidemiology. This session will cover the principles of epidemiology, key concepts and terms, brief review of outbreak investigations and study designs, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed). | 2022-12-06 13:00:00 | Online | Statistics | Online | NIH Library | 0 | A Review of Epidemiology Concepts and Statistics | |||
712 |
Description
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a review of core concepts in epidemiology. This session will cover the principles of epidemiology, key concepts and terms, brief review of outbreak investigations and study designs, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises ...Read More
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a review of core concepts in epidemiology. This session will cover the principles of epidemiology, key concepts and terms, brief review of outbreak investigations and study designs, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed).
Speaker:
Ninet Sinaii
NIH Library
DetailsOrganizerNIH LibraryWhenTue, Dec 06, 2022 - 1:00 pm - 4:00 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a review of core concepts in epidemiology. This session will cover the principles of epidemiology, key concepts and terms, brief review of outbreak investigations and study designs, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed). Speaker: Ninet Sinaii NIH Library | 2022-12-06 13:00:00 | Online | Statistics | Online | NIH Library | 0 | A Review of Epidemiology Concepts and Statistics | |||
681 |
Description
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to ...Read More
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings.
DetailsOrganizerNIH LibraryWhenWed, Dec 07, 2022 - 10:00 am - 11:00 amWhereOnline |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. | 2022-12-07 10:00:00 | Online | Programming,Data Science | Online | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |||
715 |
Description
Learn how to leverage Activity Plot, Pattern Search, Comparison Analysis, Analysis Match and Land Explorer.
Speaker:
Shawn Prince
Field Application Scientist
Learn how to leverage Activity Plot, Pattern Search, Comparison Analysis, Analysis Match and Land Explorer.
Speaker:
Shawn Prince
Field Application Scientist
DetailsOrganizerCBIITWhenThu, Dec 08, 2022 - 10:00 am - 11:00 amWhereOnline |
Learn how to leverage Activity Plot, Pattern Search, Comparison Analysis, Analysis Match and Land Explorer. Speaker: Shawn Prince Field Application Scientist | 2022-12-08 10:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | Advanced Ingenuity Pathway Analysis by Qiagen | |||
682 |
Description
This class provides a basic overview of distributions and methods for describing part-to-whole relationships in ggplot. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install Read More
This class provides a basic overview of distributions and methods for describing part-to-whole relationships in ggplot. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install R, RStudio, and the tidyverse package, before the webinar so that they can follow along with the instructor.
DetailsOrganizerNIH LibraryWhenThu, Dec 08, 2022 - 1:00 pm - 2:15 pmWhereOnline |
This class provides a basic overview of distributions and methods for describing part-to-whole relationships in ggplot. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install R, RStudio, and the tidyverse package, before the webinar so that they can follow along with the instructor. | 2022-12-08 13:00:00 | Online | Programming | Online | NIH Library | 0 | Distributions and Part to Whole Relationships in ggplot | |||
693 |
Description
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks.
Current topics include three series of practical training sessions on the following topics:
Introduction to Macromolecular Simulation
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks.
Current topics include three series of practical training sessions on the following topics:
Introduction to Macromolecular Simulation
DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenThu, Dec 08, 2022 - 2:00 pm - 3:30 pmWhereOnline |
Do you need to strengthen your structural biology skills? The NIAID Bioinformatics and Computational Biosciences Branch (BCBB) is offering training sessions over the next few weeks. Current topics include three series of practical training sessions on the following topics: Introduction to Macromolecular Simulation | 2022-12-08 14:00:00 | Online | Proteomics | Online | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Introduction to Macromolecular Simulation | |||
663 |
Description
This webinar will introduce best practices for sharing NIH-funded data in generalist repositories including tips and guidance for generating high quality metadata to describe your data, preparing data files and documentation for sharing, considerations for data licensing and privacy, and reporting on open data and metrics.
Speakers:
Sonia Barbosa (Dataverse)
Sarah Lippincott (Dryad)
Eric Olson (Open Science Framework)
Ida Sim (Vivli)
Moderated by Anita de Waard (Mendeley Data)
This webinar will introduce best practices for sharing NIH-funded data in generalist repositories including tips and guidance for generating high quality metadata to describe your data, preparing data files and documentation for sharing, considerations for data licensing and privacy, and reporting on open data and metrics.
Speakers:
Sonia Barbosa (Dataverse)
Sarah Lippincott (Dryad)
Eric Olson (Open Science Framework)
Ida Sim (Vivli)
Moderated by Anita de Waard (Mendeley Data)
DetailsOrganizerThe NIH Generalist Repository Ecosystem Initiative (GREI)WhenThu, Dec 08, 2022 - 3:00 pm - 4:00 pmWhereOnline |
This webinar will introduce best practices for sharing NIH-funded data in generalist repositories including tips and guidance for generating high quality metadata to describe your data, preparing data files and documentation for sharing, considerations for data licensing and privacy, and reporting on open data and metrics. Speakers: Sonia Barbosa (Dataverse) Sarah Lippincott (Dryad) Eric Olson (Open Science Framework) Ida Sim (Vivli) Moderated by Anita de Waard (Mendeley Data) | 2022-12-08 15:00:00 | Online | Data Management | Online | The NIH Generalist Repository Ecosystem Initiative (GREI) | 0 | Best practices for sharing data in a generalist repository: Metadata, data preparation, and reporting | |||
713 |
Description
PhysioNet is a data sharing platform that began as an outreach component for an NIH research project in 1999. Rebuilt in 2019 following FAIR principles (Findable, Accessible, Interoperable, Reusable), the platform has grown rapidly. It now serves over 55,000 registered users around the world with >30TB of data and is heavily used across research, education, and industry. PhysioNet is a recommended repository for journals including the Springer Nature collection, eLife, and PLOS. It also supports regular “datathons” ...Read More
PhysioNet is a data sharing platform that began as an outreach component for an NIH research project in 1999. Rebuilt in 2019 following FAIR principles (Findable, Accessible, Interoperable, Reusable), the platform has grown rapidly. It now serves over 55,000 registered users around the world with >30TB of data and is heavily used across research, education, and industry. PhysioNet is a recommended repository for journals including the Springer Nature collection, eLife, and PLOS. It also supports regular “datathons” around the world, which bring together clinicians and data scientists to focus on important, unanswered questions in health research. PhysioNet has been a close collaborator of MIT Libraries and it is piloting their data citation service, helping to help establish datasets as primary research objects and to reward those who share. While the vast majority of data on PhysioNet is fully open access, the platform is unique in supporting training requirements and access control where necessary. This allows researchers to share sensitive resources that would not be possible through typical data sharing platforms. Over half of all PhysioNet users (approx 35,000) have been “credentialed”, providing evidence of their identity and training in human research. PhysioNet was recently featured in an ORCID showcase due to its novel use of the ORCID Trust Markers as part of this process.
Speakers:
DetailsOrganizerNIHWhenFri, Dec 09, 2022 - 12:00 pm - 1:00 pmWhereOnline |
PhysioNet is a data sharing platform that began as an outreach component for an NIH research project in 1999. Rebuilt in 2019 following FAIR principles (Findable, Accessible, Interoperable, Reusable), the platform has grown rapidly. It now serves over 55,000 registered users around the world with >30TB of data and is heavily used across research, education, and industry. PhysioNet is a recommended repository for journals including the Springer Nature collection, eLife, and PLOS. It also supports regular “datathons” around the world, which bring together clinicians and data scientists to focus on important, unanswered questions in health research. PhysioNet has been a close collaborator of MIT Libraries and it is piloting their data citation service, helping to help establish datasets as primary research objects and to reward those who share. While the vast majority of data on PhysioNet is fully open access, the platform is unique in supporting training requirements and access control where necessary. This allows researchers to share sensitive resources that would not be possible through typical data sharing platforms. Over half of all PhysioNet users (approx 35,000) have been “credentialed”, providing evidence of their identity and training in human research. PhysioNet was recently featured in an ORCID showcase due to its novel use of the ORCID Trust Markers as part of this process. Speakers: Dr. Roger Mark Distinguished Professor in Health Sciences and Technology Institute of Medical Engineering and Science at MIT, and Assistant Pro Dr. Mark is a fellow of the IEEE, a fellow of the American College of Cardiology, and a founding fellow of the American Institute of Medical and Biological Engineering. Dr. Mark’s research activities focus on physiological signal processing and database development, cardiovascular modeling, and critical care decision support and predictive modeling. His group launched and maintains PhysioNet. Dr. Tom Pollard Research Scientist MIT’s Institute of Medical Engineering and Science Dr. Tom Pollard, Ph.D., is a Research Scientist at MIT’s Institute of Medical Engineering and Science, and the Technical Director of PhysioNet. His efforts center on sharing data for use in research, education, and industry, with a focus on critical care. Prior to joining MIT in 2015 he completed an interdisciplinary PhD on computational modeling of patient physiology at University College London, based between Mullard Space Science Laboratory and University College Hospital. | 2022-12-09 12:00:00 | Online | Data Resources | Online | NIH | 0 | December Data Sharing and Reuse Seminar | |||
683 |
Description
Learn what a generalist repository is, including key repository features and how generalist repositories fit into the NIH data sharing landscape for intramural researchers and can help with meeting the new NIH Data Management and Sharing Policy requirements. Hear from representatives of the 7 repositories participating in the NIH Generalist Repository Ecosystem Initiative: Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo. Learn about the unique features of these repositories and what types of ...Read More
Learn what a generalist repository is, including key repository features and how generalist repositories fit into the NIH data sharing landscape for intramural researchers and can help with meeting the new NIH Data Management and Sharing Policy requirements. Hear from representatives of the 7 repositories participating in the NIH Generalist Repository Ecosystem Initiative: Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo. Learn about the unique features of these repositories and what types of research outputs can be shared in which repositories.
DetailsOrganizerNIH LibraryWhenWed, Dec 14, 2022 - 1:00 pm - 2:00 pmWhereOnline |
Learn what a generalist repository is, including key repository features and how generalist repositories fit into the NIH data sharing landscape for intramural researchers and can help with meeting the new NIH Data Management and Sharing Policy requirements. Hear from representatives of the 7 repositories participating in the NIH Generalist Repository Ecosystem Initiative: Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo. Learn about the unique features of these repositories and what types of research outputs can be shared in which repositories. | 2022-12-14 13:00:00 | Online | Data Management | Online | NIH Library | 0 | Data Sharing: Generalist Repositories Ecosystem Initiative | |||
714 |
Description
David Baker is the director of the Institute for Protein Design, a Howard Hughes Medical Institute Investigator, the Henrietta and Aubrey Davis Endowed Professor in Biochemistry, and an adjunct professor of genome sciences, bioengineering, chemical engineering, computer science, and physics at the University of Washington. His research group is focused on the design of macromolecular structures and functions.
He received his Ph.D. in biochemistry with Randy Schekman at the University of California, Berkeley, and ...Read More
David Baker is the director of the Institute for Protein Design, a Howard Hughes Medical Institute Investigator, the Henrietta and Aubrey Davis Endowed Professor in Biochemistry, and an adjunct professor of genome sciences, bioengineering, chemical engineering, computer science, and physics at the University of Washington. His research group is focused on the design of macromolecular structures and functions.
He received his Ph.D. in biochemistry with Randy Schekman at the University of California, Berkeley, and did postdoctoral work in biophysics with David Agard at UCSF. Dr. Baker has received awards from the National Science Foundation, the Beckman Foundation, and the Packard Foundation. He is the recipient of the Breakthrough Prize in Life Sciences, Irving Sigal and Hans Neurath awards from the Protein Society, the Overton Prize from the ISCB, the Feynman Prize from the Foresight Institute
**** E-mail WALSoffice@od.nih.gov to let us know you if you plan to attend in person at Lipsett.
DetailsOrganizerOD/Office of Intramural Research (OIR)WhenWed, Dec 14, 2022 - 2:00 pm - 3:00 pmWhereBldg. 10, Clinical Center, Lipsett Amphitheater |
David Baker is the director of the Institute for Protein Design, a Howard Hughes Medical Institute Investigator, the Henrietta and Aubrey Davis Endowed Professor in Biochemistry, and an adjunct professor of genome sciences, bioengineering, chemical engineering, computer science, and physics at the University of Washington. His research group is focused on the design of macromolecular structures and functions. He received his Ph.D. in biochemistry with Randy Schekman at the University of California, Berkeley, and did postdoctoral work in biophysics with David Agard at UCSF. Dr. Baker has received awards from the National Science Foundation, the Beckman Foundation, and the Packard Foundation. He is the recipient of the Breakthrough Prize in Life Sciences, Irving Sigal and Hans Neurath awards from the Protein Society, the Overton Prize from the ISCB, the Feynman Prize from the Foresight Institute **** E-mail WALSoffice@od.nih.gov to let us know you if you plan to attend in person at Lipsett. | 2022-12-14 14:00:00 | Bldg. 10, Clinical Center, Lipsett Amphitheater | Proteomics | Online | OD/Office of Intramural Research (OIR) | 0 | Protein design, deep learning | |||
684 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH LibraryWhenThu, Dec 15, 2022 - 1:00 pm - 2:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2022-12-15 13:00:00 | Online | Data Management | Online | NIH Library | 0 | Data Management and Sharing: Part 1 | |||
685 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
DetailsOrganizerNIH LibraryWhenFri, Dec 16, 2022 - 1:00 pm - 2:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2022-12-16 13:00:00 | Online | Data Management | Online | NIH Library | 0 | Data Management and Sharing: Part 2 | |||
701 |
Description
This class provides a basic overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install Read More
This class provides a basic overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install R, RStudio, and the tidyverse package, before the webinar so that they can follow along with the instructor.
DetailsOrganizerNIH LibraryWhenThu, Jan 05, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This class provides a basic overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install R, RStudio, and the tidyverse package, before the webinar so that they can follow along with the instructor. | 2023-01-05 13:00:00 | Online | Programming | Online | NIH Library | 0 | Visualizing Relationships in ggplot | |||
720 |
Description
Over the last two decades three major technologies have developed as the bed rock of how we understand living systems; genomics, including nucleic acid based molecular biology readouts, imaging from near-atomic resolution to whole organism structures and machine learning including the very large non-linear architectures of artificial intelligence (AI). Dr. Ewan Birney will provide a brief tour of this technology development, using examples from the European Molecular Biology Laboratory (EMBL) and touching on both fundamental ...Read More
Over the last two decades three major technologies have developed as the bed rock of how we understand living systems; genomics, including nucleic acid based molecular biology readouts, imaging from near-atomic resolution to whole organism structures and machine learning including the very large non-linear architectures of artificial intelligence (AI). Dr. Ewan Birney will provide a brief tour of this technology development, using examples from the European Molecular Biology Laboratory (EMBL) and touching on both fundamental biological discoveries through to clinical applications. He will end by providing a perspective for the future of this triad with their impressive opportunities, the landscape of data and skills needed to actualize them and some potential pitfalls to avoid.
Speaker:
Ewan Birney, Ph.D.
Deputy Director General of the European Molecular Biology Laboratory (EMBL)
Director of EMBL's European Bioinformatics Institute
This seminar will be held in-person in Lipsett Amphitheater, NIH Clinical Center and via Zoom
DetailsWhenTue, Jan 10, 2023 - 2:30 pm - 3:30 pmWhereOnline |
Over the last two decades three major technologies have developed as the bed rock of how we understand living systems; genomics, including nucleic acid based molecular biology readouts, imaging from near-atomic resolution to whole organism structures and machine learning including the very large non-linear architectures of artificial intelligence (AI). Dr. Ewan Birney will provide a brief tour of this technology development, using examples from the European Molecular Biology Laboratory (EMBL) and touching on both fundamental biological discoveries through to clinical applications. He will end by providing a perspective for the future of this triad with their impressive opportunities, the landscape of data and skills needed to actualize them and some potential pitfalls to avoid. Speaker: Ewan Birney, Ph.D. Deputy Director General of the European Molecular Biology Laboratory (EMBL) Director of EMBL's European Bioinformatics Institute This seminar will be held in-person in Lipsett Amphitheater, NIH Clinical Center and via Zoom | 2023-01-10 14:30:00 | Online | Genomics | Online | 0 | Genomics, Imaging, and AI: Three Technologies That Are Changing Biological Research Through to Clinical Practice | ||||
1041 |
Description
Join us for an introduction to bioinformatics resources for NCI CCR researchers. We will look at the information available on the BTEP website, such as the:
Join us for an introduction to bioinformatics resources for NCI CCR researchers. We will look at the information available on the BTEP website, such as the:
RegisterOrganizerBTEPWhenThu, Jan 12, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Join us for an introduction to bioinformatics resources for NCI CCR researchers. We will look at the information available on the BTEP website, such as the: NIH Bioinformatics Calendar Training opportunities Upcoming events New website resources Biowulf Next-Gen Seq Analysis tools (Partek,Qlucore, Qiagen) Workflows Cloud resources NCI sequencing cores NIH resources | 2023-01-12 13:00:00 | Online Webinar | Online | Amy Stonelake (BTEP) | BTEP | 0 | Introduction to Bioinformatics Resources for NCI CCR Scientists | |||
719 |
Description
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to ...Read More
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings.
DetailsOrganizerNIH LibraryWhenTue, Jan 17, 2023 - 11:00 am - 12:00 pmWhereOnline |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. | 2023-01-17 11:00:00 | Online | Programming | Online | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |||
702 |
Description
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Read More
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons.
By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R.
Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed.
DetailsOrganizerNIH LibraryWhenWed, Jan 18, 2023 - 11:00 am - 12:00 pmWhereOnline |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. | 2023-01-18 11:00:00 | Online | Programming | Online | NIH Library | 0 | Introduction to R and RStudio | |||
723 |
Description
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot ...Read More
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In.
For inquiries email to staff@hpc.nih.gov
DetailsOrganizerNIH HPCWhenWed, Jan 18, 2023 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. For inquiries email to staff@hpc.nih.gov | 2023-01-18 13:00:00 | Online | Data Science | Online | NIH HPC | 0 | Next edition of the NIH HPC monthly Zoom-In Consults! | |||
721 |
Description
The National Cancer Institute (NCI) has launched a new virtual seminar series titled NCI Rising Scholars: Cancer Research Seminar Series. This monthly seminar series is an opportunity to highlight the research and the important contributions made by NCI-supported postdoctoral fellows and early career investigators at NCI laboratories and NCI-funded institutions nationwide.
Speaker:
Read More
The National Cancer Institute (NCI) has launched a new virtual seminar series titled NCI Rising Scholars: Cancer Research Seminar Series. This monthly seminar series is an opportunity to highlight the research and the important contributions made by NCI-supported postdoctoral fellows and early career investigators at NCI laboratories and NCI-funded institutions nationwide.
Speaker:
Ajit Johnson Nirmal, Ph.D.
Instructor in Medicine
Harvard Medical School and Dana Farber Cancer Institute
In this seminar, NCI K99/R00 Awardee Dr. Ajit Johnson Nirmal from Harvard Medical School and Dana Farber Cancer Institute will discuss his research from the following publication: Spatial landscape of progression and immunoediting in primary melanoma at single cell resolution.
Melanoma is a type of skin cancer that can be cured if caught early but can be life-threatening if it spreads. In this study, Dr. Nirmal and his team used a combination of imaging and sequencing technology to study how melanoma interacts with its microenvironment. They found that the organization of cancer cells, immune cells, and other cells in the body changes as melanoma progresses. In early stages, there are signs that the immune system is being suppressed. When melanoma becomes invasive, specific areas form where the immune system is suppressed, and cancer cells can grow and spread. However, a short distance away, there are also areas where the immune system fights cancer. This shows that cancer and the immune system can coexist and evolve together. This type of study helps understand how cancer can avoid being destroyed by the immune system.
DetailsOrganizerNCI Rising Scholars: Cancer Research Seminar SeriesWhenThu, Jan 19, 2023 - 2:00 pm - 3:00 pmWhereOnline |
The National Cancer Institute (NCI) has launched a new virtual seminar series titled NCI Rising Scholars: Cancer Research Seminar Series. This monthly seminar series is an opportunity to highlight the research and the important contributions made by NCI-supported postdoctoral fellows and early career investigators at NCI laboratories and NCI-funded institutions nationwide. Speaker: Ajit Johnson Nirmal, Ph.D. Instructor in Medicine Harvard Medical School and Dana Farber Cancer Institute In this seminar, NCI K99/R00 Awardee Dr. Ajit Johnson Nirmal from Harvard Medical School and Dana Farber Cancer Institute will discuss his research from the following publication: Spatial landscape of progression and immunoediting in primary melanoma at single cell resolution. Melanoma is a type of skin cancer that can be cured if caught early but can be life-threatening if it spreads. In this study, Dr. Nirmal and his team used a combination of imaging and sequencing technology to study how melanoma interacts with its microenvironment. They found that the organization of cancer cells, immune cells, and other cells in the body changes as melanoma progresses. In early stages, there are signs that the immune system is being suppressed. When melanoma becomes invasive, specific areas form where the immune system is suppressed, and cancer cells can grow and spread. However, a short distance away, there are also areas where the immune system fights cancer. This shows that cancer and the immune system can coexist and evolve together. This type of study helps understand how cancer can avoid being destroyed by the immune system. | 2023-01-19 14:00:00 | Online | Single Cell Technologies | Online | NCI Rising Scholars: Cancer Research Seminar Series | 0 | The Spatial Landscape of Progression and Immunoediting in Primary Melanoma at Single Cell Resolution | |||
1042 |
DescriptionThis course will include a series of 8 lessons for scientists new to R or with limited R experience. The purpose of this course is to introduce the foundational skills necessary to begin to analyze and visualize data in R. Lessons will be on Mondays and Wednesdays from 1 pm to 2:15 pm and will be followed by a 45 minute optional help session. To participate in this class you will need your government-issued computer and a ...Read More This course will include a series of 8 lessons for scientists new to R or with limited R experience. The purpose of this course is to introduce the foundational skills necessary to begin to analyze and visualize data in R. Lessons will be on Mondays and Wednesdays from 1 pm to 2:15 pm and will be followed by a 45 minute optional help session. To participate in this class you will need your government-issued computer and a reliable internet connection. You do not need to download or install any software to participate in the class. However, at the end of the class, we will provide instruction on installing R and R Studio on your local machine. This class will be taught on the DNAnexus platform. Every learner will need to create an account at https://dnanexus.com. After you have created your DNAnexus account, please complete this form. If you fail to complete the form, we will not be able to give you access to the course on DNAnexus. Class materials will be accessible online at https://bioinformatics.ccr.cancer.gov/docs/rintro_2023/index.html. By registering for this class you are registering for ALL sessions of the class. You do not need to register separately for every session. Course dates: January 23rd - February 15th Topics to be covered: Getting started with R and RStudio R basics Working with tabular data Introduction to data wrangling with the tidyverse Introduction to data visualization with ggplot2 Bioconductor and report generating Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m46a79d660bad841acb4e7a088e8de741 RegisterOrganizerBTEPWhenMon, Jan 23 - Wed, Feb 15, 2023 -1:00 pm - 2:15 pmWhereOnline Webinar |
This course will include a series of 8 lessons for scientists new to R or with limited R experience. The purpose of this course is to introduce the foundational skills necessary to begin to analyze and visualize data in R. Lessons will be on Mondays and Wednesdays from 1 pm to 2:15 pm and will be followed by a 45 minute optional help session. To participate in this class you will need your government-issued computer and a reliable internet connection. You do not need to download or install any software to participate in the class. However, at the end of the class, we will provide instruction on installing R and R Studio on your local machine. This class will be taught on the DNAnexus platform. Every learner will need to create an account at https://dnanexus.com. After you have created your DNAnexus account, please complete this form. If you fail to complete the form, we will not be able to give you access to the course on DNAnexus. Class materials will be accessible online at https://bioinformatics.ccr.cancer.gov/docs/rintro_2023/index.html. By registering for this class you are registering for ALL sessions of the class. You do not need to register separately for every session. Course dates: January 23rd - February 15th Topics to be covered: Getting started with R and RStudio R basics Working with tabular data Introduction to data wrangling with the tidyverse Introduction to data visualization with ggplot2 Bioconductor and report generating Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m46a79d660bad841acb4e7a088e8de741 | 2023-01-23 13:00:00 | Online Webinar | R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | R Introductory Course Series 2023 | ||
1043 |
Description
Welcome to BTEP’s Introduction to Unix on Biowulf course series. We will meet on Tuesdays and Thursdays from 1 pm to 2 pm (starting January 24, 2023) to learn how to work in the Unix command line environment on Biowulf. We will meet for a total of seven classes, with the last class taking place on Tuesday, February 14, 2023. This course series will be held online through Webex. Following a 1-hour lesson (1 pm to 2 pm), we will host a 1...Read More
Welcome to BTEP’s Introduction to Unix on Biowulf course series. We will meet on Tuesdays and Thursdays from 1 pm to 2 pm (starting January 24, 2023) to learn how to work in the Unix command line environment on Biowulf. We will meet for a total of seven classes, with the last class taking place on Tuesday, February 14, 2023. This course series will be held online through Webex. Following a 1-hour lesson (1 pm to 2 pm), we will host a 1-hour (2 pm to 3 pm) optional help session.
This course series is meant for those with little to no experience in working on Unix command line or Biowulf; thus, you do not need to have a Biowulf account to participate. However, you will need your government furnished computer and a connection to the NIH network either on-campus or through VPN. You will not need to install anything for this class.
The ability to work in Unix command line is important because many bioinformatics applications are designed to work on a Unix based system; therefore, the ability to work in the Unix environment is important for those wishing to pursue bioinformatics work. Biowulf is the high-performance compute cluster at NIH and runs the Unix command line environment at is core. Many applications used in bioinformatics are installed on Biowulf and together, with its computational power makes it an ideal platform for bioinformatics.
Please fill out this survey when registering to let us know if you have a Biowulf account: https://www.surveymonkey.com/r/LSWTXFJ
By registering for this class, you are registering for ALL sessions of the class. You do not need to register separately for every session.
Course dates:
January 24, 2023 (Tuesday)
January 26, 2023 (Thursday)
January 31, 2023 (Tuesday)
February 2, 2023 (Thursday)
February 9, 2023 (Thursday)
February 14, 2023 (Tuesday)
February 16, 2023 (Thursday)
Topics to be covered:
Logging into Biowulf from our local computer
Navigating the Biowulf environment
Working with files and directories
Useful Unix commands
Downloading data
Introducing Biowulf applications for working with sequencing data
Course documents:
https://btep.ccr.cancer.gov/docs/unix-on-biowulf-2023/
Meeting link:
https://cbiit.webex.com/cbiit/j.php?MTID=m933fd4cf621d4603cb70d11f05b61ae7
RegisterOrganizerBTEPWhenTue, Jan 24 - Thu, Feb 16, 2023 -1:00 pm - 3:00 pmWhereOnline Webinar |
Welcome to BTEP’s Introduction to Unix on Biowulf course series. We will meet on Tuesdays and Thursdays from 1 pm to 2 pm (starting January 24, 2023) to learn how to work in the Unix command line environment on Biowulf. We will meet for a total of seven classes, with the last class taking place on Tuesday, February 14, 2023. This course series will be held online through Webex. Following a 1-hour lesson (1 pm to 2 pm), we will host a 1-hour (2 pm to 3 pm) optional help session. This course series is meant for those with little to no experience in working on Unix command line or Biowulf; thus, you do not need to have a Biowulf account to participate. However, you will need your government furnished computer and a connection to the NIH network either on-campus or through VPN. You will not need to install anything for this class. The ability to work in Unix command line is important because many bioinformatics applications are designed to work on a Unix based system; therefore, the ability to work in the Unix environment is important for those wishing to pursue bioinformatics work. Biowulf is the high-performance compute cluster at NIH and runs the Unix command line environment at is core. Many applications used in bioinformatics are installed on Biowulf and together, with its computational power makes it an ideal platform for bioinformatics. Please fill out this survey when registering to let us know if you have a Biowulf account: https://www.surveymonkey.com/r/LSWTXFJ By registering for this class, you are registering for ALL sessions of the class. You do not need to register separately for every session. Course dates: January 24, 2023 (Tuesday) January 26, 2023 (Thursday) January 31, 2023 (Tuesday) February 2, 2023 (Thursday) February 9, 2023 (Thursday) February 14, 2023 (Tuesday) February 16, 2023 (Thursday) Topics to be covered: Logging into Biowulf from our local computer Navigating the Biowulf environment Working with files and directories Useful Unix commands Downloading data Introducing Biowulf applications for working with sequencing data Course documents: https://btep.ccr.cancer.gov/docs/unix-on-biowulf-2023/ Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m933fd4cf621d4603cb70d11f05b61ae7 | 2023-01-24 13:00:00 | Online Webinar | Unix and Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Introduction to Unix on Biowulf | ||
1040 |
Description
Bulk RNA-Seq data analysis - learn all about expression counts (raw counts, FPKM, RPKM, TMM, TPM, CPM).
Those of you, who are hands-on with RNA-seq, or even simply reading publications on this know there are different types of expression counts – raw counts, FPKM, RPKM, TMM, TPM, and CPM.
Some of you get a master matrix from your sequencing core with several types of counts calculated for each dataset. We will go over them to help ...Read More
Bulk RNA-Seq data analysis - learn all about expression counts (raw counts, FPKM, RPKM, TMM, TPM, CPM).
Those of you, who are hands-on with RNA-seq, or even simply reading publications on this know there are different types of expression counts – raw counts, FPKM, RPKM, TMM, TPM, and CPM.
Some of you get a master matrix from your sequencing core with several types of counts calculated for each dataset. We will go over them to help you make better decisions with your data.
This session is designed for biologists who want to learn more about RNA-seq but have no formal training in bioinformatics.
(Public RNA-seq datasets will be used, and the live demo part will be done in Qlucore Omics Explorer.)
Meeting link:
https://cbiit.webex.com/cbiit/j.php?MTID=m352db52a9b85f947079401bd016e80db
Meeting number:
2304 363 5509
Password:
Fy4DT3AA2A?
Join by video system
Dial 23043635509@cbiit.webex.com
You can also dial 173.243.2.68 and enter your meeting number.
Join by phone
1-650-479-3207 Call-in number (US/Canada)
RegisterOrganizerBTEPWhenWed, Jan 25, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Bulk RNA-Seq data analysis - learn all about expression counts (raw counts, FPKM, RPKM, TMM, TPM, CPM). Those of you, who are hands-on with RNA-seq, or even simply reading publications on this know there are different types of expression counts – raw counts, FPKM, RPKM, TMM, TPM, and CPM. Some of you get a master matrix from your sequencing core with several types of counts calculated for each dataset. We will go over them to help you make better decisions with your data. This session is designed for biologists who want to learn more about RNA-seq but have no formal training in bioinformatics. (Public RNA-seq datasets will be used, and the live demo part will be done in Qlucore Omics Explorer.) Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m352db52a9b85f947079401bd016e80db Meeting number: 2304 363 5509 Password: Fy4DT3AA2A? Join by video system Dial 23043635509@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) | 2023-01-25 11:00:00 | Online Webinar | Online | Yana Stackpole (Qlucore) | BTEP | 0 | Bulk RNA-Seq Data Analysis: Learn about Expression Counts with Qlucore | |||
703 |
Description
This one-hour session builds on the Introduction to R & RStudio class. The session begins by introducing and identifying different categories of data. Participants will examine data types, create vectors, and assign values to vectors. They will also learn how to import data into RStudio, and examine those data frames for further cleaning, analysis and visualization. Participants will learn the differences between numeric, character, and logical data and how to change data types in R. ...Read More
This one-hour session builds on the Introduction to R & RStudio class. The session begins by introducing and identifying different categories of data. Participants will examine data types, create vectors, and assign values to vectors. They will also learn how to import data into RStudio, and examine those data frames for further cleaning, analysis and visualization. Participants will learn the differences between numeric, character, and logical data and how to change data types in R. They will also be able to create subsets and export project data for future use.
DetailsOrganizerNIH LibraryWhenWed, Jan 25, 2023 - 11:00 am - 12:00 pmWhereOnline |
This one-hour session builds on the Introduction to R & RStudio class. The session begins by introducing and identifying different categories of data. Participants will examine data types, create vectors, and assign values to vectors. They will also learn how to import data into RStudio, and examine those data frames for further cleaning, analysis and visualization. Participants will learn the differences between numeric, character, and logical data and how to change data types in R. They will also be able to create subsets and export project data for future use. | 2023-01-25 11:00:00 | Online | Programming | Online | NIH Library | 0 | Data Types in R and RStudio | |||
724 |
Description
Please join us on Jan. 25 when Gemma Turon, Ph.D., and Miquel Duran-Frigola, Ph.D., from the Ersilia Open Source Initiative will present “Ersilia: A Hub of Open-Source AI/ML Models for Drug Discovery and Global Health.”
Drs. Turon and Duran-Frigola are co-founders of the Ersilia Open Source Initiative, a tech nonprofit organization that equips universities, hospitals, and laboratories in low-resourced countries with data science tools for infectious and neglected disease research.
Please join us on Jan. 25 when Gemma Turon, Ph.D., and Miquel Duran-Frigola, Ph.D., from the Ersilia Open Source Initiative will present “Ersilia: A Hub of Open-Source AI/ML Models for Drug Discovery and Global Health.”
Drs. Turon and Duran-Frigola are co-founders of the Ersilia Open Source Initiative, a tech nonprofit organization that equips universities, hospitals, and laboratories in low-resourced countries with data science tools for infectious and neglected disease research.
DetailsOrganizerData Science Seminar SeriesWhenWed, Jan 25, 2023 - 11:00 am - 12:00 pmWhereOnline |
Please join us on Jan. 25 when Gemma Turon, Ph.D., and Miquel Duran-Frigola, Ph.D., from the Ersilia Open Source Initiative will present “Ersilia: A Hub of Open-Source AI/ML Models for Drug Discovery and Global Health.” Drs. Turon and Duran-Frigola are co-founders of the Ersilia Open Source Initiative, a tech nonprofit organization that equips universities, hospitals, and laboratories in low-resourced countries with data science tools for infectious and neglected disease research. | 2023-01-25 11:00:00 | Online | Artificial Intelligence / Machine Learning | Online | Data Science Seminar Series | 0 | Ersilia: A Hub of Open-Source AI/ML Models for Drug Discovery and Global Health | |||
726 |
Description
These virtual monthly seminars showcase a novel technology being supported through NCI that could transform cancer research and clinical care. During the January seminar, Dr. Jenny Jiang will discuss a newly developed technology to link T cell antigen specificity to TCR sequencing, gene expression, and phenotyping at a single-cell level and in a high-throughput manner.
Speaker:
Ning Jenny Jiang, Ph.D.
University of Pennsylvania
These virtual monthly seminars showcase a novel technology being supported through NCI that could transform cancer research and clinical care. During the January seminar, Dr. Jenny Jiang will discuss a newly developed technology to link T cell antigen specificity to TCR sequencing, gene expression, and phenotyping at a single-cell level and in a high-throughput manner.
Speaker:
Ning Jenny Jiang, Ph.D.
University of Pennsylvania
DetailsOrganizerNCIWhenWed, Jan 25, 2023 - 2:00 pm - 3:00 pmWhereOnline |
These virtual monthly seminars showcase a novel technology being supported through NCI that could transform cancer research and clinical care. During the January seminar, Dr. Jenny Jiang will discuss a newly developed technology to link T cell antigen specificity to TCR sequencing, gene expression, and phenotyping at a single-cell level and in a high-throughput manner. Speaker: Ning Jenny Jiang, Ph.D. University of Pennsylvania | 2023-01-25 14:00:00 | Online | Single Cell Technologies | Online | NCI | 0 | NCI's Emerging Technology Seminar: High Throughput and High Dimensional Single T Cell Profiling | |||
636 |
Description
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel Report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives.
Speaker: Heidi ...Read More
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel Report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives.
Speaker: Heidi Hanson, Ph.D., Oak Ridge National Laboratory
DetailsOrganizerCancer MoonshotWhenThu, Jan 26, 2023 - 12:00 pm - 1:00 pmWhereOnline |
This seminar series showcases research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel Report. These presentations will inform the community about the progress of Cancer Moonshot–funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives. Speaker: Heidi Hanson, Ph.D., Oak Ridge National Laboratory | 2023-01-26 12:00:00 | Online | Cancer | Online | Cancer Moonshot | 0 | DOE-NCI Collaboration: MOSSAIC for Advancing Computational Models for Cancer Research | |||
704 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH LibraryWhenThu, Jan 26, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2023-01-26 13:00:00 | Online | Data Management | Online | NIH Library | 0 | Data Management and Sharing: Part 1 | |||
705 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class.
DetailsOrganizerNIH LibraryWhenFri, Jan 27, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2023-01-27 13:00:00 | Online | Data Management | Online | NIH Library | 0 | Data Management and Sharing: Part 2 | |||
728 |
Description
Are you interested in accessing cancer data from genomics studies? If so, register for this NCI webinar to learn more about the Genomic Data Commons (GDC)!
University of Chicago’s Dr. Bill Wysocki will discuss how users can better understand the structure and content of data in the GDC, helping them access, submit, or analyze available data.
Dr. Wysocki will review ...Read More
Are you interested in accessing cancer data from genomics studies? If so, register for this NCI webinar to learn more about the Genomic Data Commons (GDC)!
University of Chicago’s Dr. Bill Wysocki will discuss how users can better understand the structure and content of data in the GDC, helping them access, submit, or analyze available data.
Dr. Wysocki will review the GDC Data Model, a graph-based data model that maintains a relationship between a case, biospecimen, clinical, and submitted data files. He’ll also review the GDC Data Dictionary, a resource that describes the clinical, biospecimen, administrative, and genomic metadata that can be used with the genomic data generated by the GDC. Topics of interest include:
DetailsOrganizerCBIITWhenMon, Jan 30, 2023 - 2:00 pm - 3:00 pmWhereOnline |
Are you interested in accessing cancer data from genomics studies? If so, register for this NCI webinar to learn more about the Genomic Data Commons (GDC)! University of Chicago’s Dr. Bill Wysocki will discuss how users can better understand the structure and content of data in the GDC, helping them access, submit, or analyze available data. Dr. Wysocki will review the GDC Data Model, a graph-based data model that maintains a relationship between a case, biospecimen, clinical, and submitted data files. He’ll also review the GDC Data Dictionary, a resource that describes the clinical, biospecimen, administrative, and genomic metadata that can be used with the genomic data generated by the GDC. Topics of interest include: recent structural updates supporting sample property standardization. new fields supporting NCI programs such as The Cancer Genome Atlas (TCGA) and the Therapeutically Applicable Research to Generate Effective Treatments (TARGET). As part of the NCI Cancer Research Data Commons, the GDC supports the submission of data from cancer genomics studies and makes submitted data available to the research community through data access tools. | 2023-01-30 14:00:00 | Online | Data Science | Online | CBIIT | 0 | Genomic Data Commons (GDC) Data Model and Data Dictionary Overview and Updates | |||
729 |
Description
WebMeV was designed to address the hurdles present for wet lab scientists using Bioinformatics tools. RNASeq tools and pipelines have become robust and standardized. WebMeV leverages this fact to provide a simple, fully graphical, and interactive web-based solution to Bioinformatic analyses. WebMeV endeavors to be fully transparent and reproducible by having both code and environment open-sourced, portable, and fully reproducible independent of WebMeV with Github and Docker repositories.
WebMeV was designed to address the hurdles present for wet lab scientists using Bioinformatics tools. RNASeq tools and pipelines have become robust and standardized. WebMeV leverages this fact to provide a simple, fully graphical, and interactive web-based solution to Bioinformatic analyses. WebMeV endeavors to be fully transparent and reproducible by having both code and environment open-sourced, portable, and fully reproducible independent of WebMeV with Github and Docker repositories.
DetailsOrganizerCBIITWhenTue, Jan 31, 2023 - 10:00 am - 11:00 amWhereOnline |
WebMeV was designed to address the hurdles present for wet lab scientists using Bioinformatics tools. RNASeq tools and pipelines have become robust and standardized. WebMeV leverages this fact to provide a simple, fully graphical, and interactive web-based solution to Bioinformatic analyses. WebMeV endeavors to be fully transparent and reproducible by having both code and environment open-sourced, portable, and fully reproducible independent of WebMeV with Github and Docker repositories. | 2023-01-31 10:00:00 | Online | Bioinformatics Software,Cloud | Online | CBIIT | 0 | Introductory WebMeV workshop | |||
725 |
Description
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #6 will focus on on Graph Convolutional Networks, handling imbalanced data and their application to classification of cancer types.
Expected knowledge: Basic Python, Basic Linux/Unix.
This class is part of a series, but each class is stand-alone. The class will be webcast and ...Read More
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #6 will focus on on Graph Convolutional Networks, handling imbalanced data and their application to classification of cancer types.
Expected knowledge: Basic Python, Basic Linux/Unix.
This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class.
Instructor: Gennady Denisov (NIH HPC staff)
For inquiries email staff@hpc.nih.gov
DetailsOrganizerNIH HPCWhenTue, Feb 07, 2023 - 9:00 am - 12:00 pmWhereOnline |
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. Class #6 will focus on on Graph Convolutional Networks, handling imbalanced data and their application to classification of cancer types. Expected knowledge: Basic Python, Basic Linux/Unix. This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class. Instructor: Gennady Denisov (NIH HPC staff) For inquiries email staff@hpc.nih.gov | 2023-02-07 09:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH HPC | 0 | Deep Learning by Example on Biowulf - Class #6 | |||
722 |
Description
The National Cancer Institute (NCI) is holding a virtual meeting on February 7-8, 2023 from 12 - 4 PM ET, Read More
The National Cancer Institute (NCI) is holding a virtual meeting on February 7-8, 2023 from 12 - 4 PM ET, Variation to Biology: Optimizing Functional Analysis of Cancer Risk Variants, to identify and discuss how best to address scientific challenges and opportunities for understanding the path from genetic variation to cancer phenotype. This meeting is open to the public and free to attend, but registration is required to access the virtual event.
Research conducted over the past 15+ years has identified thousands of common genetic variants that associate with risk for cancer. Because most of these variants have small effect sizes and are located in non-protein coding regions of the genome, understanding how they impact molecular mechanisms and the biology underlying cancer risk is challenging.
The main goal for this meeting is to convene participants to identify and discuss challenges to using genetic association data to discover and understand the mechanisms underlying cancer risk and how they ultimately lead to cancer, and consider ways that NCI could help optimize progress in this area. Register for our meeting and stay tuned for more details about the agenda!
For more information, please contact nciepicommunications@mail.nih.gov.
DetailsOrganizerNCIWhenTue, Feb 07 - Wed, Feb 08, 2023 -12:00 pm - 4:00 pmWhereOnline |
The National Cancer Institute (NCI) is holding a virtual meeting on February 7-8, 2023 from 12 - 4 PM ET, Variation to Biology: Optimizing Functional Analysis of Cancer Risk Variants, to identify and discuss how best to address scientific challenges and opportunities for understanding the path from genetic variation to cancer phenotype. This meeting is open to the public and free to attend, but registration is required to access the virtual event. Research conducted over the past 15+ years has identified thousands of common genetic variants that associate with risk for cancer. Because most of these variants have small effect sizes and are located in non-protein coding regions of the genome, understanding how they impact molecular mechanisms and the biology underlying cancer risk is challenging. The main goal for this meeting is to convene participants to identify and discuss challenges to using genetic association data to discover and understand the mechanisms underlying cancer risk and how they ultimately lead to cancer, and consider ways that NCI could help optimize progress in this area. Register for our meeting and stay tuned for more details about the agenda! For more information, please contact nciepicommunications@mail.nih.gov. | 2023-02-07 12:00:00 | Online | Variant Analysis,Cancer | Online | NCI | 0 | Variation to Biology: Optimizing Functional Analysis of Cancer Risk Variants | |||
744 |
Description
Join Dr. Peng Liu of Iowa State University as she proposes a model-based algorithm based on Poisson hurdle models for sparse microbiome count data. Simulation results demonstrate that the proposed methods provide better clustering results than alternative methods under various settings.
In this seminar, Dr. Liu will:
Join Dr. Peng Liu of Iowa State University as she proposes a model-based algorithm based on Poisson hurdle models for sparse microbiome count data. Simulation results demonstrate that the proposed methods provide better clustering results than alternative methods under various settings.
In this seminar, Dr. Liu will:
DetailsOrganizerCBIITWhenWed, Feb 08, 2023 - 11:00 am - 12:00 pmWhereOnline |
Join Dr. Peng Liu of Iowa State University as she proposes a model-based algorithm based on Poisson hurdle models for sparse microbiome count data. Simulation results demonstrate that the proposed methods provide better clustering results than alternative methods under various settings. In this seminar, Dr. Liu will: describe an expectation-maximization algorithm and a modified version using simulated annealing to conduct cluster analysis. provide methods for initialization and choosing the number of clusters. illustrate how to apply this method using her team’s developed R package, PHclust, and apply the proposed method to a microbiome data set that results in interesting biological findings. This method can also be applied to single-cell RNA-sequencing data. | 2023-02-08 11:00:00 | Online | Microbiome | Online | CBIIT | 0 | Poisson Hurdle Model-based Clustering for Microbiome Data | |||
727 |
DescriptionNCI announces availability of the Read More NCI announces availability of the institute-wide site license for MATLAB that provides access to MATLAB, Simulink, and additional products on government-furnished equipment to all NCI staff, including fellows, contractors, and trainees. These powerful tools and accompanying training courses will soon be made available to advance scientific research. The 1-hour virtual session will cover:
Contact the NCI MATLAB Team at NCIMatLabTeam@mail.nih.gov for more information. DetailsOrganizerCBIITWhenThu, Feb 09, 2023 - 1:00 pm - 2:00 pmWhereOnline |
NCI announces availability of the institute-wide site license for MATLAB that provides access to MATLAB, Simulink, and additional products on government-furnished equipment to all NCI staff, including fellows, contractors, and trainees. These powerful tools and accompanying training courses will soon be made available to advance scientific research. The 1-hour virtual session will cover: NCI’s MATLAB Institute-Wide License's features and capabilities Accessing the software and self-paced training classes A live demonstration of what you can do with MATLAB Learn how MATLAB can be used to visualize and analyze data, perform numerical computations, and develop algorithms. See how MATLAB can help you become more effective in your work. Review new tools, AI capabilities, online resources and more. Who Should Attend NCI investigators and staff seeking more information about the MATLAB site license; new and experienced users. Contact the NCI MATLAB Team at NCIMatLabTeam@mail.nih.gov for more information. | 2023-02-09 13:00:00 | Online | Bioinformatics Software | Online | CBIIT | 0 | NCI-wide MATLAB License Launch Event | |||
745 |
Description
February 13-17 is International Love Data Week 2023, a week-long celebration highlighting the importance of research data management, sharing, preservation, and reuse. The NIH Library loves data and is celebrating all February (and March, too!) with data classes, resources, services, and even ...Read More
February 13-17 is International Love Data Week 2023, a week-long celebration highlighting the importance of research data management, sharing, preservation, and reuse. The NIH Library loves data and is celebrating all February (and March, too!) with data classes, resources, services, and even a new subject guide. This session will focus on data wrangling using the tidyverse package. After a short demo, participants will break into groups to work on a mini-challenge. Participants must install R, RStudio, and the tidyverse package before this session so they can follow along with the instructor and participate in the breakout rooms.
DetailsOrganizerNIH LibraryWhenTue, Feb 14, 2023 - 10:00 am - 10:45 amWhereOnline |
February 13-17 is International Love Data Week 2023, a week-long celebration highlighting the importance of research data management, sharing, preservation, and reuse. The NIH Library loves data and is celebrating all February (and March, too!) with data classes, resources, services, and even a new subject guide. This session will focus on data wrangling using the tidyverse package. After a short demo, participants will break into groups to work on a mini-challenge. Participants must install R, RStudio, and the tidyverse package before this session so they can follow along with the instructor and participate in the breakout rooms. | 2023-02-14 10:00:00 | Online | Programming | Online | NIH Library | 0 | Love Data Week 2023: Wrangle Some Data | |||
743 |
Description
The CCR Genomics, Sequencing and Single Cell Analysis Core Facilities are pleased to host a technology seminar on single cell sequencing with Oxford Nanopore Technologies (ONT) and 10X Genomics
1:00 – 1:45 Nanopore Sequencing updates and Single Cell applications
Edward Sawicki, Jr, Regional Sequencing Specialist, Oxford Nanopore Technologies
1:45 – 2:30 Add New dimensions to your 10X single cell and spatial experiments with long read sequencing.
Bradley Toms, Science and Technology Advisor, 10X Genomics
2:30-3:00 Group Discussion ...Read More
The CCR Genomics, Sequencing and Single Cell Analysis Core Facilities are pleased to host a technology seminar on single cell sequencing with Oxford Nanopore Technologies (ONT) and 10X Genomics
1:00 – 1:45 Nanopore Sequencing updates and Single Cell applications
Edward Sawicki, Jr, Regional Sequencing Specialist, Oxford Nanopore Technologies
1:45 – 2:30 Add New dimensions to your 10X single cell and spatial experiments with long read sequencing.
Bradley Toms, Science and Technology Advisor, 10X Genomics
2:30-3:00 Group Discussion and Mingle.
Webinar number: 2315 654 2799
Webinar password: JTgQbQ7H6@2 (58472774 from phones)
Join by phone 1-650-479-3207 Call-in toll number (US/Canada)
Access code: 231 565 42799
For questions about this seminar please contact any of the Facility Core heads below:
Liz Conner, CCR Genomics Core
Mike Kelly, CCR Single Cell Analysis Facility
Bao Tran, CCR Sequencing Facility
Xiaolin Wu, CCR Genomics Technology Lab
DetailsOrganizerCCR Genomics CoreWhenWed, Feb 15, 2023 - 1:00 pm - 3:00 pmWhereOnline |
The CCR Genomics, Sequencing and Single Cell Analysis Core Facilities are pleased to host a technology seminar on single cell sequencing with Oxford Nanopore Technologies (ONT) and 10X Genomics 1:00 – 1:45 Nanopore Sequencing updates and Single Cell applications Edward Sawicki, Jr, Regional Sequencing Specialist, Oxford Nanopore Technologies 1:45 – 2:30 Add New dimensions to your 10X single cell and spatial experiments with long read sequencing. Bradley Toms, Science and Technology Advisor, 10X Genomics 2:30-3:00 Group Discussion and Mingle. Webinar number: 2315 654 2799 Webinar password: JTgQbQ7H6@2 (58472774 from phones) Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 231 565 42799 For questions about this seminar please contact any of the Facility Core heads below: Liz Conner, CCR Genomics Core Mike Kelly, CCR Single Cell Analysis Facility Bao Tran, CCR Sequencing Facility Xiaolin Wu, CCR Genomics Technology Lab | 2023-02-15 13:00:00 | Online | Single Cell Technologies | Online | CCR Genomics Core | 0 | Oxford Nanopore Technologies (ONT) and 10X Genomics Technology Seminar | |||
746 |
Description
February 13-17 is International Love Data Week 2023, a week-long celebration highlighting the importance of research data management, sharing, preservation, and reuse. The NIH Library loves data and is celebrating all February (and March, too!) with data classes, resources, services, and even a new subject guide. This session will ...Read More
February 13-17 is International Love Data Week 2023, a week-long celebration highlighting the importance of research data management, sharing, preservation, and reuse. The NIH Library loves data and is celebrating all February (and March, too!) with data classes, resources, services, and even a new subject guide. This session will focus on making a plot using ggplot. ggplot is a part of the tidyverse, a collection of R packages designed for data science. After a short demo, participants will break into groups to work on a mini-challenge. Participants must install R, RStudio, and the tidyverse package before this session so they can follow along with the instructor and participate in the breakout rooms.
DetailsOrganizerNIH LibraryWhenThu, Feb 16, 2023 - 10:00 am - 10:45 amWhereOnline |
February 13-17 is International Love Data Week 2023, a week-long celebration highlighting the importance of research data management, sharing, preservation, and reuse. The NIH Library loves data and is celebrating all February (and March, too!) with data classes, resources, services, and even a new subject guide. This session will focus on making a plot using ggplot. ggplot is a part of the tidyverse, a collection of R packages designed for data science. After a short demo, participants will break into groups to work on a mini-challenge. Participants must install R, RStudio, and the tidyverse package before this session so they can follow along with the instructor and participate in the breakout rooms. | 2023-02-16 10:00:00 | Online | Programming | Online | NIH Library | 0 | Love Data Week 2023: Visualize Some Data | |||
749 |
Description
Dr. Brendan Miller is a post-doctoral research fellow at Johns Hopkins University in the Department of Biomedical Engineering. On Friday Feb 17, 1:00-2:00 PM, he will be discussing some tools he has recently helped develop for the analysis of spatially resolved transcriptome data.
Delineating the spatial organization of transcriptionally distinct cell types within tissues is critical for understanding the cellular basis of tissue function. Recent technological advancements have enabled spatially resolved transcriptomic profiling, but new computational ...Read More
Dr. Brendan Miller is a post-doctoral research fellow at Johns Hopkins University in the Department of Biomedical Engineering. On Friday Feb 17, 1:00-2:00 PM, he will be discussing some tools he has recently helped develop for the analysis of spatially resolved transcriptome data.
Delineating the spatial organization of transcriptionally distinct cell types within tissues is critical for understanding the cellular basis of tissue function. Recent technological advancements have enabled spatially resolved transcriptomic profiling, but new computational approaches are needed to take advantage of this new spatial information. In this talk, Dr. Miller will highlight two recently published computational tools for uncovering spatially resolved gene expression and cell type spatial organizational patterns in tissues. The first is MERINGUE, an approach to characterize significant spatial gene expression heterogeneity in spatially resolved molecular resolution data that is also robust to cellular density. The second is STdeconvolve, an approach to deconvolve cell types and their transcriptional profiles in spatially resolved multi-cellular pixel resolution data without a reference. Taken together, these tools can enable identification of cell type organizational patterns and distinct transcriptional states within poorly characterized tissues, such as tumors or other perturbations where the cell type composition and spatial organization remains unclear. MERINGUE and STdeconvolve are both available as open-source R software packages with code and tutorials available at https://jef.works/MERINGUE/ and https://jef.works/STdeconvolve/.
Meeting ID: 160 400 8994
Passcode: 082861
DetailsOrganizerNIH - Data scienceWhenFri, Feb 17, 2023 - 1:00 pm - 2:00 pmWhereOnline |
Dr. Brendan Miller is a post-doctoral research fellow at Johns Hopkins University in the Department of Biomedical Engineering. On Friday Feb 17, 1:00-2:00 PM, he will be discussing some tools he has recently helped develop for the analysis of spatially resolved transcriptome data. Delineating the spatial organization of transcriptionally distinct cell types within tissues is critical for understanding the cellular basis of tissue function. Recent technological advancements have enabled spatially resolved transcriptomic profiling, but new computational approaches are needed to take advantage of this new spatial information. In this talk, Dr. Miller will highlight two recently published computational tools for uncovering spatially resolved gene expression and cell type spatial organizational patterns in tissues. The first is MERINGUE, an approach to characterize significant spatial gene expression heterogeneity in spatially resolved molecular resolution data that is also robust to cellular density. The second is STdeconvolve, an approach to deconvolve cell types and their transcriptional profiles in spatially resolved multi-cellular pixel resolution data without a reference. Taken together, these tools can enable identification of cell type organizational patterns and distinct transcriptional states within poorly characterized tissues, such as tumors or other perturbations where the cell type composition and spatial organization remains unclear. MERINGUE and STdeconvolve are both available as open-source R software packages with code and tutorials available at https://jef.works/MERINGUE/ and https://jef.works/STdeconvolve/. Meeting ID: 160 400 8994 Passcode: 082861 | 2023-02-17 13:00:00 | Online | Spatial Transcriptomics | Online | NIH - Data science | 0 | Computational tools for spatially resolved transcriptomic data analysis (Brendan Miller) | |||
748 |
DescriptionPlease plan to attend the Earl Stadtman Investigator Program search seminar by: Stephanie Harmon, Ph.D. Molecular Imaging Branch (MIB), CCR hosted by the MIB Dr. Harmon is a Staff Scientist in the MIB whose broad research interests include quantitative ...Read More Please plan to attend the Earl Stadtman Investigator Program search seminar by: Stephanie Harmon, Ph.D. Molecular Imaging Branch (MIB), CCR hosted by the MIB Dr. Harmon is a Staff Scientist in the MIB whose broad research interests include quantitative imaging biomarkers, artificial intelligence applications in medical imaging, and data-driven modeling of cancer treatments and outcomes. For additional information on this seminar, please contact Philip Eclarinal at eclarinalpc@nci.nih.gov. DetailsOrganizerCCRWhenTue, Feb 21, 2023 - 11:00 am - 12:00 pmWhereOnline |
Please plan to attend the Earl Stadtman Investigator Program search seminar by: Stephanie Harmon, Ph.D. Molecular Imaging Branch (MIB), CCR hosted by the MIB Dr. Harmon is a Staff Scientist in the MIB whose broad research interests include quantitative imaging biomarkers, artificial intelligence applications in medical imaging, and data-driven modeling of cancer treatments and outcomes. For additional information on this seminar, please contact Philip Eclarinal at eclarinalpc@nci.nih.gov. | 2023-02-21 11:00:00 | Online | Artificial Intelligence / Machine Learning,Image Analysis | Online | CCR | 0 | AI-Driven Imaging Biomarkers in Genitourinary Cancers | |||
730 |
Description
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management ...Read More
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing.
This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class.
DetailsOrganizerNIH LibraryWhenWed, Feb 22, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2023-02-22 13:00:00 | Online | Data Management | Online | NIH Library | 0 | Data Management and Sharing: Part 1 | |||
716 |
Description
Macros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read, easier to edit, less prone to errors, and often allows it to run more efficiently. This intermediate class will provide an overview of what is a macro and how macros work in SAS, including the macro facility. Examples of macro code will be made available to class participants for modification and later use.
Macros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read, easier to edit, less prone to errors, and often allows it to run more efficiently. This intermediate class will provide an overview of what is a macro and how macros work in SAS, including the macro facility. Examples of macro code will be made available to class participants for modification and later use.
DetailsOrganizerNIH LibraryWhenThu, Feb 23, 2023 - 10:00 am - 11:00 amWhereOnline |
Macros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read, easier to edit, less prone to errors, and often allows it to run more efficiently. This intermediate class will provide an overview of what is a macro and how macros work in SAS, including the macro facility. Examples of macro code will be made available to class participants for modification and later use. | 2023-02-23 10:00:00 | Online | Bioinformatics Software | Online | NIH Library | 0 | Coding Macros in SAS | |||
750 |
Description
In this session we will go over a visual, dynamic, and interactive way to work with OMICs data using public leukemia GEO gene expression data sets. We will approach the data with confirmatory and exploratory analyses angles using DGE, GSEA, network analysis, GO, and data set comparison. Everything is done in a user-friendly, highly visual, and super-fast interface.
Presenter: Yana Stackpole, Ph.D. (Qlucore Training and Support)
Agenda:
In this session we will go over a visual, dynamic, and interactive way to work with OMICs data using public leukemia GEO gene expression data sets. We will approach the data with confirmatory and exploratory analyses angles using DGE, GSEA, network analysis, GO, and data set comparison. Everything is done in a user-friendly, highly visual, and super-fast interface.
Presenter: Yana Stackpole, Ph.D. (Qlucore Training and Support)
Agenda:
DetailsOrganizerCBIITWhenThu, Feb 23, 2023 - 10:30 am - 11:30 amWhereOnline |
In this session we will go over a visual, dynamic, and interactive way to work with OMICs data using public leukemia GEO gene expression data sets. We will approach the data with confirmatory and exploratory analyses angles using DGE, GSEA, network analysis, GO, and data set comparison. Everything is done in a user-friendly, highly visual, and super-fast interface. Presenter: Yana Stackpole, Ph.D. (Qlucore Training and Support) Agenda: Benefits and challenges of big data Finding differentiating variables and validating your findings Functional data analysis using GSEA, NDEx, and GO Confirmatory and discovery analyses Working with public data: GEO, GREIN, TCGA Q&A Custom demo | 2023-02-23 10:30:00 | Online | Genomics | Online | CBIIT | 0 | Visualization-Guided Analysis + Biological Interpretation of OMICs Data in Qlucore | |||
717 |
Description
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions select, filter, pipes, mutate, head, is.na, and export. Learning these functions will enable users to have ...Read More
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions select, filter, pipes, mutate, head, is.na, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations.
DetailsOrganizerNIH LibraryWhenMon, Feb 27, 2023 - 1:00 pm - 2:00 pmWhereOnline |
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions select, filter, pipes, mutate, head, is.na, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. | 2023-02-27 13:00:00 | Online | R programming | Online | Candace Norton (NIH Library) | NIH Library | 0 | Data Wrangling in R: Part 1 | ||
1047 |
DescriptionThis class, hosted by the Center for Biomedical Informatics & Information Technology (CBIIT) will provide refresher training for the Qiagen Ingenuity Pathway Analysis (IPA) package. The class is two hours long where The first hour will focus on:
This class, hosted by the Center for Biomedical Informatics & Information Technology (CBIIT) will provide refresher training for the Qiagen Ingenuity Pathway Analysis (IPA) package. The class is two hours long where The first hour will focus on:
The second hour, for more advanced use cases, will focus on:
Please watch the video addressing formatting and uploading of data to IPA prior to attending If you have questions, contact Daoud Meerzaman or Mel Nisonger. DetailsOrganizerCBIITWhenTue, Feb 28, 2023 - 1:00 pm - 3:00 pmWhereOnline |
This class, hosted by the Center for Biomedical Informatics & Information Technology (CBIIT) will provide refresher training for the Qiagen Ingenuity Pathway Analysis (IPA) package. The class is two hours long where The first hour will focus on: Running an IPA core analysis and interpret the results Using IPA even if you do not have a dataset to build networks and generate hypotheses Finding potential regulators and master regulators and their impact on your experiment The second hour, for more advanced use cases, will focus on: How to leverage Activity Plot, Pattern Search, Comparison Analysis and Analysis Match Please watch the video addressing formatting and uploading of data to IPA prior to attending If you have questions, contact Daoud Meerzaman or Mel Nisonger. | 2023-02-28 13:00:00 | Online | Any | Bioinformatics,Bioinformatics Software,Pathway Analysis | Online | CBIIT | 0 | Ingenuity Pathway Analysis (IPA) New and Advanced User Refresher | ||
718 |
Description
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will build on the introduction provided in Data Wrangling Part 1 to further explore the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions group_by, summarize, count, arrange, pivot_...Read More
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will build on the introduction provided in Data Wrangling Part 1 to further explore the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions group_by, summarize, count, arrange, pivot_wider, pivot_longer, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations.
DetailsOrganizerNIH LibraryWhenTue, Feb 28, 2023 - 1:00 pm - 2:00 pmWhereOnline |
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will build on the introduction provided in Data Wrangling Part 1 to further explore the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions group_by, summarize, count, arrange, pivot_wider, pivot_longer, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. | 2023-02-28 13:00:00 | Online | R programming | Online | NIH Library | 0 | Data Wrangling in R: Part 2 | |||
731 |
Description
This class focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install ...Read More
This class focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class.
DetailsOrganizerNIH LibraryWhenWed, Mar 01, 2023 - 10:00 am - 11:00 amWhereOnline |
This class focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. | 2023-03-01 10:00:00 | Online | Programming | Online | NIH Library | 0 | Introduction to Project Management in RStudio | |||
732 |
Description
This class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, learners will have a chance to experiment with this integration and understand its advantages for collaboration and version control. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install <...Read More
This class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, learners will have a chance to experiment with this integration and understand its advantages for collaboration and version control. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. Participants will need to download the class data before the class.
DetailsOrganizerNIH LibraryWhenThu, Mar 02, 2023 - 10:00 am - 11:00 amWhereOnline |
This class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, learners will have a chance to experiment with this integration and understand its advantages for collaboration and version control. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. Participants will need to download the class data before the class. | 2023-03-02 10:00:00 | Online | Programming | Online | NIH Library | 0 | Working with Git in RStudio | |||
733 |
Description
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to ...Read More
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings.
DetailsOrganizerNIH LibraryWhenFri, Mar 03, 2023 - 10:00 am - 11:00 amWhereOnline |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. | 2023-03-03 10:00:00 | Online | Programming | Online | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |||
734 |
Description
Learn about a wide range of capabilities for image processing and computer vision including machine and deep learning using deep convolutional neural networks (CNNs). Transitioning image models from pixel-based to feature-based allows us to extract information from images and video at a high level, to detect, classify, and track objects, co-register images, or understand a real-world scene. Using collections of features, we can train computers to recognize objects, with user-specified or automatically determined features. This ...Read More
Learn about a wide range of capabilities for image processing and computer vision including machine and deep learning using deep convolutional neural networks (CNNs). Transitioning image models from pixel-based to feature-based allows us to extract information from images and video at a high level, to detect, classify, and track objects, co-register images, or understand a real-world scene. Using collections of features, we can train computers to recognize objects, with user-specified or automatically determined features. This is an introductory class, but familiarity with MATLAB or image processing is recommended.
DetailsOrganizerNIH LibraryWhenMon, Mar 06, 2023 - 12:00 pm - 1:00 pmWhereOnline |
Learn about a wide range of capabilities for image processing and computer vision including machine and deep learning using deep convolutional neural networks (CNNs). Transitioning image models from pixel-based to feature-based allows us to extract information from images and video at a high level, to detect, classify, and track objects, co-register images, or understand a real-world scene. Using collections of features, we can train computers to recognize objects, with user-specified or automatically determined features. This is an introductory class, but familiarity with MATLAB or image processing is recommended. | 2023-03-06 12:00:00 | Online | Image Analysis | Online | NIH Library | 0 | MATLAB Medical Image Processing Techniques | |||
735 |
Description
This class is designed for those who want to learn the basic of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class participants will learn the basics of creating markdown ...Read More
This class is designed for those who want to learn the basic of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class participants will learn the basics of creating markdown documents. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class.
DetailsOrganizerNIH LibraryWhenTue, Mar 07, 2023 - 10:00 am - 11:00 amWhereOnline |
This class is designed for those who want to learn the basic of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class participants will learn the basics of creating markdown documents. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. | 2023-03-07 10:00:00 | Online | Programming | Online | NIH Library | 0 | Reproducibility in RStudio: Basic Markdown | |||
736 |
Part Of: Statistics and Epidemiology with BCES and the NIH library CourseDescription
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature.
Part 1 will address fundamental statistical concepts including hypothesis testing, p-values and confidence intervals, types ...Read More
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature.
Part 1 will address fundamental statistical concepts including hypothesis testing, p-values and confidence intervals, types of data and their distributional importance, and bias and confounding. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study.
Although you may attend any part of this series by itself, attending all five parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series.
DetailsOrganizerNIH LibraryWhenTue, Mar 07, 2023 - 1:00 pm - 4:00 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, p-values and confidence intervals, types of data and their distributional importance, and bias and confounding. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all five parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-03-07 13:00:00 | Online | Statistics | Online | NIH Library | 0 | Overview of Statistical Concepts: Part 1 | |||
1053 |
DescriptionPartek software provides a singular web based point and click environment for analyzing and visualizing high dimensional multi-omics sequencing data, making bioinformatics easily accessible to all researchers. Partek Flow software is available to NCI researchers. Join us for this online training session, where the Partek Scientist will show you how to perform start to finish analysis on Single Cell RNA-Seq data with the point-and-click user interface in ...Read More Partek software provides a singular web based point and click environment for analyzing and visualizing high dimensional multi-omics sequencing data, making bioinformatics easily accessible to all researchers. Partek Flow software is available to NCI researchers. Join us for this online training session, where the Partek Scientist will show you how to perform start to finish analysis on Single Cell RNA-Seq data with the point-and-click user interface in Partek software. A human PBMC scRNA-Seq sample data will be used to illustrate basic analysis steps from raw count matrix to cell type classification and differential analysis. Agenda: · Perform QA/QC · Normalization · Cell type classification · Differential analysis · Visualization (t-SNE, UMAP, Violin plot, bubble map etc.) RegisterOrganizerBTEPWhenWed, Mar 08, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Partek software provides a singular web based point and click environment for analyzing and visualizing high dimensional multi-omics sequencing data, making bioinformatics easily accessible to all researchers. Partek Flow software is available to NCI researchers. Join us for this online training session, where the Partek Scientist will show you how to perform start to finish analysis on Single Cell RNA-Seq data with the point-and-click user interface in Partek software. A human PBMC scRNA-Seq sample data will be used to illustrate basic analysis steps from raw count matrix to cell type classification and differential analysis. Agenda: · Perform QA/QC · Normalization · Cell type classification · Differential analysis · Visualization (t-SNE, UMAP, Violin plot, bubble map etc.) | 2023-03-08 11:00:00 | Online Webinar | Any | Online | Xiaowen Wang (Partek) | BTEP | 0 | Single Cell Data Analysis in Partek Flow | ||
1057 |
DescriptionIn this Center for Biomedical Informatics and Information Technology (CBIIT) sponsored seminar, Dr. Spyridon Bakas, professor at the University of Pennsylvania's Perelman School of Medicine, will present "Federated Learning Enabling Big Data Analyses in Healthcare". Dr. Bakas will discuss the results of the largest FL study to date that focuses ...Read More In this Center for Biomedical Informatics and Information Technology (CBIIT) sponsored seminar, Dr. Spyridon Bakas, professor at the University of Pennsylvania's Perelman School of Medicine, will present "Federated Learning Enabling Big Data Analyses in Healthcare". Dr. Bakas will discuss the results of the largest FL study to date that focuses on glioblastoma and leveraging the data of thousands of patients across six continents. Federated learning enables big data for rare cancer boundary detection. FL addresses concerns about reproducibility and generalizability of data from unseen sources. Developments in FL can pave the way for addressing clinical questions in rare diseases. DetailsOrganizerCBIITWhenWed, Mar 08, 2023 - 11:00 am - 12:00 pmWhereOnline |
In this Center for Biomedical Informatics and Information Technology (CBIIT) sponsored seminar, Dr. Spyridon Bakas, professor at the University of Pennsylvania's Perelman School of Medicine, will present "Federated Learning Enabling Big Data Analyses in Healthcare". Dr. Bakas will discuss the results of the largest FL study to date that focuses on glioblastoma and leveraging the data of thousands of patients across six continents. Federated learning enables big data for rare cancer boundary detection. FL addresses concerns about reproducibility and generalizability of data from unseen sources. Developments in FL can pave the way for addressing clinical questions in rare diseases. | 2023-03-08 11:00:00 | Online | Any | Data Science | Online | Spyridon Bakas | CBIIT | 0 | Federated Learning Enabling Big Data Analyses in Healthcare | |
747 |
Part Of: Statistics and Epidemiology with BCES and the NIH library CourseDescription
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature.
Part 2 will provide a review of study designs in biomedical research. This class will ...Read More
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature.
Part 2 will provide a review of study designs in biomedical research. This class will cover details related to case studies/series, ecological, cross-sectional, case-control, and cohort studies, clinical trials, and other study designs and considerations. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study.
Although you may attend any part of this series by itself, attending all five parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series.
DetailsOrganizerNIH LibraryWhenWed, Mar 08, 2023 - 1:00 pm - 3:00 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs in biomedical research. This class will cover details related to case studies/series, ecological, cross-sectional, case-control, and cohort studies, clinical trials, and other study designs and considerations. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all five parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-03-08 13:00:00 | Online | Statistics | Online | NIH Library | 0 | Overview of Study Design: Part 2 | |||
737 |
Description
This class is designed for those who want to extend the basics of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class, participants will learn how to render documents in ...Read More
This class is designed for those who want to extend the basics of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class, participants will learn how to render documents in multiple format, and format citations and bibliographies using Zotero. Zotero is a free, easy-to-use tool to help collect, organize, annotate, cite, and share research. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class.
DetailsOrganizerNIH LibraryWhenThu, Mar 09, 2023 - 10:00 am - 11:00 amWhereOnline |
This class is designed for those who want to extend the basics of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class, participants will learn how to render documents in multiple format, and format citations and bibliographies using Zotero. Zotero is a free, easy-to-use tool to help collect, organize, annotate, cite, and share research. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. | 2023-03-09 10:00:00 | Online | Programming | Online | NIH Library | 0 | Reproducibility in RStudio: Advanced Markdown | |||
1046 |
DescriptionDr. Melissa Haendel and Dr. Jakob Seidlitz will present "2022 DataWorks! Grand Prize Winners: Innovations in Data Sharing and Reuse" at the monthly Data Sharing and Reuse Seminar on March 10, 2023 at 12 p.m. EDT. Dr. Haendel will discuss how academic medical centers, safety net hospitals, and community clinics across the country worked to pool and harmonize their Electronic Health Record Data to combat the COVID19 pandemic. The National Covid Cohort Collaborative (...Read More Dr. Melissa Haendel and Dr. Jakob Seidlitz will present "2022 DataWorks! Grand Prize Winners: Innovations in Data Sharing and Reuse" at the monthly Data Sharing and Reuse Seminar on March 10, 2023 at 12 p.m. EDT. Dr. Haendel will discuss how academic medical centers, safety net hospitals, and community clinics across the country worked to pool and harmonize their Electronic Health Record Data to combat the COVID19 pandemic. The National Covid Cohort Collaborative (N3C) is now the largest publicly available, national, HIPAA-limited dataset in US History. She will illustrate how a unique public-private-government governance partnership helped realize collaborative analytics at an unprecedented scale to address the infectious disease crises. She will also share how successful interdisciplinary team science and big data approaches can be used to improve scientific discovery, impact policy, treatment guidelines, and national decisions. The centralized data approach also enhanced data consistency and interoperability across health systems and thereby revealed key patterns in COVID-19 risk factors, treatment, disparities, and outcomes. Dr. Seidlitz will focus on how hundreds of publicly accessible neuroimaging datasets, comprising over 100,000 individuals, were combined to create fully life-spanning “brain charts” of human brain development and aging. He will describe the experience of helping to spearhead this collaborative grass-roots project on the heels of the global pandemic, the emergent capabilities of these comprehensive models of the human brain, as well as obstacles and opportunities for clinical translation. DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenFri, Mar 10, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
Dr. Melissa Haendel and Dr. Jakob Seidlitz will present "2022 DataWorks! Grand Prize Winners: Innovations in Data Sharing and Reuse" at the monthly Data Sharing and Reuse Seminar on March 10, 2023 at 12 p.m. EDT. Dr. Haendel will discuss how academic medical centers, safety net hospitals, and community clinics across the country worked to pool and harmonize their Electronic Health Record Data to combat the COVID19 pandemic. The National Covid Cohort Collaborative (N3C) is now the largest publicly available, national, HIPAA-limited dataset in US History. She will illustrate how a unique public-private-government governance partnership helped realize collaborative analytics at an unprecedented scale to address the infectious disease crises. She will also share how successful interdisciplinary team science and big data approaches can be used to improve scientific discovery, impact policy, treatment guidelines, and national decisions. The centralized data approach also enhanced data consistency and interoperability across health systems and thereby revealed key patterns in COVID-19 risk factors, treatment, disparities, and outcomes. Dr. Seidlitz will focus on how hundreds of publicly accessible neuroimaging datasets, comprising over 100,000 individuals, were combined to create fully life-spanning “brain charts” of human brain development and aging. He will describe the experience of helping to spearhead this collaborative grass-roots project on the heels of the global pandemic, the emergent capabilities of these comprehensive models of the human brain, as well as obstacles and opportunities for clinical translation. | 2023-03-10 12:00:00 | Online Webinar | Any | Data Science | Data Science,Data Sharing | Online | Jakob Seidlitz,Melissa Haendel (CU Anschutz) | NIH Office of Data Science Strategy (ODSS) | 0 | March Data Sharing and Reuse Seminar |
738 |
Part Of: Statistics and Epidemiology with BCES and the NIH library CourseDescription
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature.
Part 3 will describe the basic concepts for using common statistical tests such as Chi-square, ...Read More
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature.
Part 3 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study.
Although you may attend any part of this series by itself, attending all five parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series.
DetailsOrganizerNIH LibraryWhenTue, Mar 14, 2023 - 12:30 pm - 4:45 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all five parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-03-14 12:30:00 | Online | Statistics | Online | NIH Library | 0 | Overview of Common Statistical Tests: Part 3 | |||
739 |
Description
This class provides a basic overview of creating plots using ggplot. ggplot is a part of the Tidyverse, a collection of R packages designed for data science. This class will focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. Participants are encouraged to install Read More
This class provides a basic overview of creating plots using ggplot. ggplot is a part of the Tidyverse, a collection of R packages designed for data science. This class will focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. Participants are encouraged to install R, RStudio, and the tidyverse package, before the class.
DetailsOrganizerNIH LibraryWhenTue, Mar 14, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This class provides a basic overview of creating plots using ggplot. ggplot is a part of the Tidyverse, a collection of R packages designed for data science. This class will focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. Participants are encouraged to install R, RStudio, and the tidyverse package, before the class. | 2023-03-14 13:00:00 | Online | Programming | Online | NIH Library | 0 | Introduction to Data Visualization in R: ggplot | |||
1056 |
Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescriptionDo you use excel's VLOOKUP function often to merge tables or search for subsets of data in large NGS data files? If so, you may be interested in a more programmatic solution. Join us for a lesson on performing VLOOKUP in excel followed by a more reproducible solution with R programming. Whether you are interested in merging a list of gene ids with a table of functional annotations or searching for unique matches of ...Read More Do you use excel's VLOOKUP function often to merge tables or search for subsets of data in large NGS data files? If so, you may be interested in a more programmatic solution. Join us for a lesson on performing VLOOKUP in excel followed by a more reproducible solution with R programming. Whether you are interested in merging a list of gene ids with a table of functional annotations or searching for unique matches of known T-Cell Receptor sequences among output from a 10X TCR sequencing run, this tutorial will likely be useful to you. This tutorial will kick off the BTEP Coding Club, which features monthly 1-hour tutorials of bioinformatics tools, software, or skills. Email us at ncibtep@nih.gov if you would like to see a topic featured by the BTEP Coding Club. RegisterOrganizerBTEPWhenWed, Mar 15, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Do you use excel's VLOOKUP function often to merge tables or search for subsets of data in large NGS data files? If so, you may be interested in a more programmatic solution. Join us for a lesson on performing VLOOKUP in excel followed by a more reproducible solution with R programming. Whether you are interested in merging a list of gene ids with a table of functional annotations or searching for unique matches of known T-Cell Receptor sequences among output from a 10X TCR sequencing run, this tutorial will likely be useful to you. This tutorial will kick off the BTEP Coding Club, which features monthly 1-hour tutorials of bioinformatics tools, software, or skills. Email us at ncibtep@nih.gov if you would like to see a topic featured by the BTEP Coding Club. | 2023-03-15 11:00:00 | Online Webinar | Excel,R programming | Online | Alex Emmons (BTEP) | BTEP | 1 | VLOOKUP in excel and the R programming equivalent | ||
740 |
Description
This virtual hands-on workshop explores the fundamentals of machine learning using MATLAB. The participants will be introduced to machine learning techniques to quickly explore data, use classification and regression apps to interactively train, compare and tune a model, and optimize the model using hyperparameter tuning. The participants will also learn how to get started with deep learning in MATLAB for data preparation, design, simulation, and deployment of deep neural networks. This is an introductory level ...Read More
This virtual hands-on workshop explores the fundamentals of machine learning using MATLAB. The participants will be introduced to machine learning techniques to quickly explore data, use classification and regression apps to interactively train, compare and tune a model, and optimize the model using hyperparameter tuning. The participants will also learn how to get started with deep learning in MATLAB for data preparation, design, simulation, and deployment of deep neural networks. This is an introductory level class.
DetailsOrganizerNIH LibraryWhenWed, Mar 15, 2023 - 12:00 pm - 1:00 pmWhereOnline |
This virtual hands-on workshop explores the fundamentals of machine learning using MATLAB. The participants will be introduced to machine learning techniques to quickly explore data, use classification and regression apps to interactively train, compare and tune a model, and optimize the model using hyperparameter tuning. The participants will also learn how to get started with deep learning in MATLAB for data preparation, design, simulation, and deployment of deep neural networks. This is an introductory level class. | 2023-03-15 12:00:00 | Online | Artificial Intelligence / Machine Learning | Online | NIH Library | 0 | Hands On Virtual Lab: Machine Learning | |||
741 |
Part Of: Statistics and Epidemiology with BCES and the NIH library CourseDescription
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature.
Part 4 will provide a brief review of the principles of epidemiology, outbreak investigations, implications ...Read More
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature.
Part 4 will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed).
Although you may attend any part of this series by itself, attending all five parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series.
DetailsOrganizerNIH LibraryWhenWed, Mar 15, 2023 - 1:00 pm - 4:00 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This five-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed). Although you may attend any part of this series by itself, attending all five parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-03-15 13:00:00 | Online | Statistics | Online | NIH Library | 0 | A Review of Epidemiology Concepts and Statistics: Part 4 | |||
742 |
Description
This advanced class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. Participants are encouraged to install R, RStudioRead More
This advanced class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. Participants are encouraged to install R, RStudio, and the tidyverse package, before the class.
DetailsOrganizerNIH LibraryWhenThu, Mar 16, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This advanced class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. Participants are encouraged to install R, RStudio, and the tidyverse package, before the class. | 2023-03-16 13:00:00 | Online | Programming | Online | NIH Library | 0 | Introduction to Data Visualization in R: Customization in ggplot | |||
1054 |
Part Of: Statistics and Epidemiology with BCES and the NIH library CourseDescriptionThe purpose of this class is to introduce the fundamentals of conducting a meta-analysis. The focus will be on randomized clinical trials; however, the presenter will also briefly discuss the application of meta-analyses in laboratory and observational (epidemiological) studies. The audience should have an acquaintance with basic statistical concepts (including, but not limited to: dichotomous and continuous outcomes, odds ratios, standard deviation and error, weighted average, fixed and random effects and associated ...Read More The purpose of this class is to introduce the fundamentals of conducting a meta-analysis. The focus will be on randomized clinical trials; however, the presenter will also briefly discuss the application of meta-analyses in laboratory and observational (epidemiological) studies. The audience should have an acquaintance with basic statistical concepts (including, but not limited to: dichotomous and continuous outcomes, odds ratios, standard deviation and error, weighted average, fixed and random effects and associated models, etc.). However, it will only be necessary to understand the principles and interpretation of these ideas, not the underlying mathematics and calculations to learn the principles presented. This class will not contain a “hands-on” portion or a set of exercises to be completed in a statistical software package during the training or afterwards. This class will be taught by the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES). DetailsOrganizerNIH LibraryWhenMon, Mar 20, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
The purpose of this class is to introduce the fundamentals of conducting a meta-analysis. The focus will be on randomized clinical trials; however, the presenter will also briefly discuss the application of meta-analyses in laboratory and observational (epidemiological) studies. The audience should have an acquaintance with basic statistical concepts (including, but not limited to: dichotomous and continuous outcomes, odds ratios, standard deviation and error, weighted average, fixed and random effects and associated models, etc.). However, it will only be necessary to understand the principles and interpretation of these ideas, not the underlying mathematics and calculations to learn the principles presented. This class will not contain a “hands-on” portion or a set of exercises to be completed in a statistical software package during the training or afterwards. This class will be taught by the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES). | 2023-03-20 13:00:00 | Online Webinar | Meta-analysis,Statistics | Online | NIH Library | 0 | Meta-Analysis: Quantifying a Systematic Review: Part 5 | |||
1059 |
DescriptionLearn how scientists are using ddPCR technology for absolute quantification of copy number variation, pathogen detection, detection of rare mutations, genome editing, and NGS data validation. We will go over ddPCR basics, and workflow followed by ddPCR application areas. Presentation will include 30 minutes of QX Manager software training (software introduction + data analysis) followed by Q&A Learn how scientists are using ddPCR technology for absolute quantification of copy number variation, pathogen detection, detection of rare mutations, genome editing, and NGS data validation. We will go over ddPCR basics, and workflow followed by ddPCR application areas. Presentation will include 30 minutes of QX Manager software training (software introduction + data analysis) followed by Q&A DetailsOrganizerCCR Genomics CoreWhenThu, Mar 23, 2023 - 12:00 pm - 2:00 pmWhereBldg. 37, Room 2041/2107 |
Learn how scientists are using ddPCR technology for absolute quantification of copy number variation, pathogen detection, detection of rare mutations, genome editing, and NGS data validation. We will go over ddPCR basics, and workflow followed by ddPCR application areas. Presentation will include 30 minutes of QX Manager software training (software introduction + data analysis) followed by Q&A | 2023-03-23 12:00:00 | Bldg. 37, Room 2041/2107 | Any | Technology | Hybrid | CCR Genomics Core | 0 | Bio-Rad Technology Seminar | ||
637 |
Description
The upcoming presentations will showcase research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. They will inform the community about the progress of Cancer Moonshot-funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot ...Read More
The upcoming presentations will showcase research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. They will inform the community about the progress of Cancer Moonshot-funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives.
Speaker: Sandro Santagata, M.D., Ph.D., Brigham and Women’s Hospital
DetailsOrganizerCancer MoonshotWhenThu, Mar 23, 2023 - 12:00 pm - 1:00 pmWhereOnline |
The upcoming presentations will showcase research from different Cancer Moonshot initiatives that support the 10 recommendations of the Blue Ribbon Panel report. They will inform the community about the progress of Cancer Moonshot-funded projects, provide outreach related to Cancer Moonshot projects, enhance discussions and collaborations related to Cancer Moonshot research, and promote the sharing of data from Cancer Moonshot initiatives. Speaker: Sandro Santagata, M.D., Ph.D., Brigham and Women’s Hospital | 2023-03-23 12:00:00 | Online | Cancer | Online | Cancer Moonshot | 0 | Pre-Cancer Atlases of Cutaneous and Hematologic Origin | |||
1055 |
DescriptionThis afternoon workshop will give attendees an understanding of how single cell technologies are used to study cancer. To start us off, Mike Kelly, head of the Single Cell Analysis Facility (SCAF), will give an overview of the current and emerging high-value single cell sequencing and closely associated spatial transcriptional profiling methods along with some example applications in cancer research. He will discuss some of the ...Read More This afternoon workshop will give attendees an understanding of how single cell technologies are used to study cancer. To start us off, Mike Kelly, head of the Single Cell Analysis Facility (SCAF), will give an overview of the current and emerging high-value single cell sequencing and closely associated spatial transcriptional profiling methods along with some example applications in cancer research. He will discuss some of the strengths and limitations of these existing technologies, and preview some of the most promising upcoming assays that may be of interest to the community. Following this we will have Kimia Dadkhah, bioinformatics analyst (SCAF), who will talk about the essential quality control metrics in single cell data analysis and important factors to keep in mind in interpretation of the data. Next up is Abdalla Abdelmaksound (CCBR), [Data Integration: batch correction and different data types], and Stefan Cordes (NHLBI) – who will review trajectory inference – with and without the incorporation of RNA velocity – as a tool to reconstruct cell state dynamics from single cell genomics data. He will show that the inclusion of single cell lineage-tracing indices to follow heritable barcodes can improve reconstruction. RegisterOrganizerBTEPWhenThu, Mar 23, 2023 - 1:00 pm - 5:00 pmWhereOnline Webinar |
This afternoon workshop will give attendees an understanding of how single cell technologies are used to study cancer. To start us off, Mike Kelly, head of the Single Cell Analysis Facility (SCAF), will give an overview of the current and emerging high-value single cell sequencing and closely associated spatial transcriptional profiling methods along with some example applications in cancer research. He will discuss some of the strengths and limitations of these existing technologies, and preview some of the most promising upcoming assays that may be of interest to the community. Following this we will have Kimia Dadkhah, bioinformatics analyst (SCAF), who will talk about the essential quality control metrics in single cell data analysis and important factors to keep in mind in interpretation of the data. Next up is Abdalla Abdelmaksound (CCBR), [Data Integration: batch correction and different data types], and Stefan Cordes (NHLBI) – who will review trajectory inference – with and without the incorporation of RNA velocity – as a tool to reconstruct cell state dynamics from single cell genomics data. He will show that the inclusion of single cell lineage-tracing indices to follow heritable barcodes can improve reconstruction. | 2023-03-23 13:00:00 | Online Webinar | Any | Cancer,,Single Cell Technologies | Online | ,Kimia Dadkhah (SCAF),Mike Kelly (SCAF),Stefan Cordes (NHLBI) | BTEP | 0 | Single Cell Technologies in Cancer: Half-Day Workshop | |
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DescriptionPartek Flow provides a singular web based point and click environment for analyzing and visualizing high dimensional multi-omics sequencing data, making bioinformatics easily accessible to all researchers. Partek Flow software is available to NCI researchers. Join us for this online webinar session, where the Partek Scientist will show you how to perform start to finish analysis on RNA-Seq data with the point-and-click user interface in Partek Flow. Partek Flow provides a singular web based point and click environment for analyzing and visualizing high dimensional multi-omics sequencing data, making bioinformatics easily accessible to all researchers. Partek Flow software is available to NCI researchers. Join us for this online webinar session, where the Partek Scientist will show you how to perform start to finish analysis on RNA-Seq data with the point-and-click user interface in Partek Flow. DetailsOrganizerCBIITWhenThu, Mar 30, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Partek Flow provides a singular web based point and click environment for analyzing and visualizing high dimensional multi-omics sequencing data, making bioinformatics easily accessible to all researchers. Partek Flow software is available to NCI researchers. Join us for this online webinar session, where the Partek Scientist will show you how to perform start to finish analysis on RNA-Seq data with the point-and-click user interface in Partek Flow.RNA-Seq example data will be used to illustrate the analysis steps from fastq files to biological interpretation.Agenda:· Data QA/QC· Alignment· Quantification and filtering· Normalization· Differential expression detection· Biological interpretation· Visualization (PCA, dotplot, volcano plot, hierarchical clustering etc.) | 2023-03-30 11:00:00 | Online Webinar | Any | RNA Seq | Online | CBIIT | 0 | Partek Webinar: RNA-Seq Data Analysis in Partek Flow | ||
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Distinguished Speakers Seminar SeriesDescriptionAI Models of Cancer and Precision Medicine: Building a Mind for Cancer The long-term objective of the Ideker Lab is to create artificially intelligent, mechanistic models of cancer and neurodegenerative diseases for translation of patient data to precision diagnosis and treatment. We seek to advance this goal by addressing fundamental questions in the field: What are the genetic and molecular networks that promote disease, and how do we ...Read More AI Models of Cancer and Precision Medicine: Building a Mind for Cancer The long-term objective of the Ideker Lab is to create artificially intelligent, mechanistic models of cancer and neurodegenerative diseases for translation of patient data to precision diagnosis and treatment. We seek to advance this goal by addressing fundamental questions in the field: What are the genetic and molecular networks that promote disease, and how do we best chart these? How do we use knowledge of these networks in intelligent systems for predicting the effects of genotype on phenotype? – Ideker Lab, https://idekerlab.ucsd.edu/research/cancer/ Meeting number: 2301 489 7073 Password: JVmmuxM*744 Host key: 809371 Cohost: Alex Emmons; Amy Stonelake; Desiree Tillo; Peter Fitzgerald; Joe Wu; Carl McIntosh Join by video system Dial 23014897073@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2301 489 7073This webinar will be recorded and made available on the BTEP web site: https://bioinformatics.ccr.cancer.gov/btep/btep-video-archive-of-past-classes/ within 48 hours after the event ends. RegisterOrganizerBTEPWhenThu, Mar 30, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
AI Models of Cancer and Precision Medicine: Building a Mind for Cancer The long-term objective of the Ideker Lab is to create artificially intelligent, mechanistic models of cancer and neurodegenerative diseases for translation of patient data to precision diagnosis and treatment. We seek to advance this goal by addressing fundamental questions in the field: What are the genetic and molecular networks that promote disease, and how do we best chart these? How do we use knowledge of these networks in intelligent systems for predicting the effects of genotype on phenotype? – Ideker Lab, https://idekerlab.ucsd.edu/research/cancer/ Meeting number: 2301 489 7073 Password: JVmmuxM*744 Host key: 809371 Cohost: Alex Emmons; Amy Stonelake; Desiree Tillo; Peter Fitzgerald; Joe Wu; Carl McIntosh Join by video system Dial 23014897073@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2301 489 7073 This webinar will be recorded and made available on the BTEP web site: https://bioinformatics.ccr.cancer.gov/btep/btep-video-archive-of-past-classes/ within 48 hours after the event ends. | 2023-03-30 13:00:00 | Online Webinar | Any | Cancer | Online | Trey Ideker (UCSD) | BTEP | 1 | AI Models of Cancer in Precision Medicine: Trey Ideker | |
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DescriptionAlejandro Schäffer, Ph.D., was born in Montevideo, Uruguay, and emigrated with his parents to the United States. He received his B.S. in Applied Mathematics and his M.S. in Mathematics from Carnegie Mellon University in 1983. He received his Ph.D. in Computer Science from Stanford University in 1988, focusing on algorithms and theoretical computer science. In 1992, he switched his research focus to software for genetics. He is best known for leading the ...Read More Alejandro Schäffer, Ph.D., was born in Montevideo, Uruguay, and emigrated with his parents to the United States. He received his B.S. in Applied Mathematics and his M.S. in Mathematics from Carnegie Mellon University in 1983. He received his Ph.D. in Computer Science from Stanford University in 1988, focusing on algorithms and theoretical computer science. In 1992, he switched his research focus to software for genetics. He is best known for leading the development of the genetic linkage analysis package FASTLINK and for doing the implementation of the PSI-BLAST module of the sequence analysis package BLAST. The 1997 paper describing PSI-BLAST and other algorithmic improvements to BLAST is one of the 100 most cited scientific papers of all time. He has also carried out genomic data analysis as a member of large teams doing medical genetics studies, especially studies identifying genes that when mutated cause human primary immunodeficiencies. DetailsOrganizerNCIWhenFri, Mar 31, 2023 - 12:00 pm - 1:00 pmWhereBldg. 10 Clinical Center Lipsett Amphitheater |
Alejandro Schäffer, Ph.D., was born in Montevideo, Uruguay, and emigrated with his parents to the United States. He received his B.S. in Applied Mathematics and his M.S. in Mathematics from Carnegie Mellon University in 1983. He received his Ph.D. in Computer Science from Stanford University in 1988, focusing on algorithms and theoretical computer science. In 1992, he switched his research focus to software for genetics. He is best known for leading the development of the genetic linkage analysis package FASTLINK and for doing the implementation of the PSI-BLAST module of the sequence analysis package BLAST. The 1997 paper describing PSI-BLAST and other algorithmic improvements to BLAST is one of the 100 most cited scientific papers of all time. He has also carried out genomic data analysis as a member of large teams doing medical genetics studies, especially studies identifying genes that when mutated cause human primary immunodeficiencies.In 1999, Dr. Schäffer co-authored one of the first papers in tumor phylogenetics, now an active area of research in cancer genomics. Dr. Schäffer has been a computer scientist at the National Institutes of Health since 1996, first at the National Center for Human Genome Research, which became the National Human Genome Research Institute, from 1996 to 1998, second at the National Center for Biotechnology Information from 1998 to 2018 and currently at the Cancer Data Science Laboratory in NCI which he joined on October 28, 2018. In the Cancer Data Science Laboratory, Dr. Schäffer is guided by the Lab Chief, Dr. Eytan Ruppin, to apply his experience in algorithms, biological sequence analysis, genetic data analysis and immunology to address research questions in cancer genomics. | 2023-03-31 12:00:00 | Bldg. 10 Clinical Center Lipsett Amphitheater | Any | Cancer,Single Cell Technologies | Hybrid | Alejandro A. Schaffer (CDSL) | NCI | 0 | Studying Precision Oncology Past by Mining a Clinical Trials Database and Identifying Future Opportunities from Single-Cell Analysis | |
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DescriptionWorkshop Description: The application of AI to cancer research holds promise to accelerate new discoveries, enable early detection, improve diagnosis, and spur development of new therapies for cancer. Machine learning and other forms of AI have made a significant impact in some areas of cancer research, but the full promise of data-driven approaches has been elusive. While there are important ongoing efforts to collect and produce large, well-annotated datasets to support the ...Read More Workshop Description: The application of AI to cancer research holds promise to accelerate new discoveries, enable early detection, improve diagnosis, and spur development of new therapies for cancer. Machine learning and other forms of AI have made a significant impact in some areas of cancer research, but the full promise of data-driven approaches has been elusive. While there are important ongoing efforts to collect and produce large, well-annotated datasets to support the training of robust deep learning models, the heterogeneity and complexity of cancer, along with privacy and bias concerns, continues to limit the application of AI methods to many critical areas of cancer research. There is a need for foundational advances in machine learning that can operate on incomplete, noisy, unbalanced and/or biased data across the cancer research continuum. The goals of this workshop are to (1) examine the state of the science for AI methods designed to operate on noisy, complex, or low-dimensional data, (2) explore how these methods may be applied to key areas of cancer research, and (3) discuss processes for identifying the biological questions that will motivate further advances in machine learning. This workshop will highlight the importance of leveraging advances across fields to accelerate cancer research and discovery through AI. Workshop Chairs: Caroline Uhler, Ph.D. (MIT and Broad Institute) Olivier Gevaert, Ph.D. (Stanford University) NCI Planning Committee: Juli Klemm, Ph.D. Jennifer Couch, Ph.D. Sean Hanlon, Ph.D. Natalie Abrams, Ph.D. Keyvan Farahani, Ph.D. Emily Greenspan, Ph.D. Paul Han, M.D., M.A., M.P.H. Roxanne Jensen, Ph.D. Jerry Li, M.D., Ph.D. AgendaA summary of the planned workshop sessions and participants is provided below. A detailed agenda with speakers and presentation titles will be posted ahead of the meeting. DAY 1, April 3, 2023 (11 am to 4:30 pm EDT)Welcome and Opening Comments
Session 1: Integrating classical structure prediction with machine learning towards drug discovery Session Chair: Trey Ideker, UCSD This session will focus on expanding the field of structure prediction to incorporate multiple data modalities and layers of biological structure beyond the protein, as well as meta-learning for identifying targets for drug discovery. Speakers:
Panelists:
Session 2: Chemical, genetic, and mechanical perturbations for understanding mechanisms in cancer: Extrapolating beyond existing data Session Chair: Fabian Theis, Helmholtz Munich In this session, researchers will discuss the use of large-scale perturbation data for causal modeling, combining representation learning with perturbation approaches, and methods to extrapolate beyond existing perturbation data. Speakers:
Panelists:
Session 3: Multimodal learning in data limited contexts: Leveraging tissue-level data for understanding cell-cell interactions in cancer Session chair: Dana Pe’er, Memorial Sloan Kettering This session will focus on multimodal learning in data limited contexts, including cell-cell interactions and predicting outcomes. Dealing with imbalances across multimodal data sets and foundational models will also be discussed. Speakers:
Panelists:
Session 4: Making use of large-scale, structured clinical research data and image repositories Session chair: Ziad Obermeyer, UC Berkeley In this session, researchers will discuss the use of large-scale clinical research data for machine learning models. Discussion topics include the use of synthetic data, considerations of bias, generalizable models, and development of digital twins. Speakers:
Panelists:
Session 5: Improving modeling of real-world evidence data in clinical research and clinical trial design Session chair: Tianxi Cai, Harvard This session will focus on real-world evidence (RWE) data modeling, including issues associated with RWE data such as electronic health record coding and unbalanced data, towards the development of clinical trials. Speakers:
Panelists:
Session 6: Cross-cutting discussion with session chairs Session chair: Olivier Gevaert, Stanford University Discussion of the approaches and challenges identified during the workshop and opportunities for the future. Panelists:
DetailsOrganizerNCIWhenMon, Apr 03 - Tue, Apr 04, 2023 -11:00 am - 5:00 pmWhereOnline |
Workshop Description: The application of AI to cancer research holds promise to accelerate new discoveries, enable early detection, improve diagnosis, and spur development of new therapies for cancer. Machine learning and other forms of AI have made a significant impact in some areas of cancer research, but the full promise of data-driven approaches has been elusive. While there are important ongoing efforts to collect and produce large, well-annotated datasets to support the training of robust deep learning models, the heterogeneity and complexity of cancer, along with privacy and bias concerns, continues to limit the application of AI methods to many critical areas of cancer research. There is a need for foundational advances in machine learning that can operate on incomplete, noisy, unbalanced and/or biased data across the cancer research continuum. The goals of this workshop are to (1) examine the state of the science for AI methods designed to operate on noisy, complex, or low-dimensional data, (2) explore how these methods may be applied to key areas of cancer research, and (3) discuss processes for identifying the biological questions that will motivate further advances in machine learning. This workshop will highlight the importance of leveraging advances across fields to accelerate cancer research and discovery through AI. Workshop Chairs: Caroline Uhler, Ph.D. (MIT and Broad Institute) Olivier Gevaert, Ph.D. (Stanford University) NCI Planning Committee: Juli Klemm, Ph.D. Jennifer Couch, Ph.D. Sean Hanlon, Ph.D. Natalie Abrams, Ph.D. Keyvan Farahani, Ph.D. Emily Greenspan, Ph.D. Paul Han, M.D., M.A., M.P.H. Roxanne Jensen, Ph.D. Jerry Li, M.D., Ph.D. Agenda A summary of the planned workshop sessions and participants is provided below. A detailed agenda with speakers and presentation titles will be posted ahead of the meeting. DAY 1, April 3, 2023 (11 am to 4:30 pm EDT) Welcome and Opening Comments National Cancer Institute Caroline Uhler, MIT and Broad Institute Session 1: Integrating classical structure prediction with machine learning towards drug discovery Session Chair: Trey Ideker, UCSD This session will focus on expanding the field of structure prediction to incorporate multiple data modalities and layers of biological structure beyond the protein, as well as meta-learning for identifying targets for drug discovery. Speakers: Anima Anandkumar, Cal Tech and NVIDIA Andrej Sali, UCSF Jure Leskovec, Stanford Panelists: Rick Stevens, Argonne National Laboratory Sergey Ovchinnikov, Harvard Session 2: Chemical, genetic, and mechanical perturbations for understanding mechanisms in cancer: Extrapolating beyond existing data Session Chair: Fabian Theis, Helmholtz Munich In this session, researchers will discuss the use of large-scale perturbation data for causal modeling, combining representation learning with perturbation approaches, and methods to extrapolate beyond existing perturbation data. Speakers: Yoshua Bengio, Université de Montréal GV Shivashankar, ETH Zurich Smita Krishnaswamy, Yale Panelists: Paquita Vazquez, Broad Institute Byung-Jun Yoon, Texas A&M University and Brookhaven National Laboratory Session 3: Multimodal learning in data limited contexts: Leveraging tissue-level data for understanding cell-cell interactions in cancer Session chair: Dana Pe’er, Memorial Sloan Kettering This session will focus on multimodal learning in data limited contexts, including cell-cell interactions and predicting outcomes. Dealing with imbalances across multimodal data sets and foundational models will also be discussed. Speakers: Elena Fertig, Johns Hopkins Elham Azizi, Columbia Livnat Jerby, Stanford Panelists: Marianna Rapsomaniki, IBM Research Arjun Krishnan, University of Colorado DAY 2, April 4, 2023 (11 am to 3:30 pm EDT) Session 4: Making use of large-scale, structured clinical research data and image repositories Session chair: Ziad Obermeyer, UC Berkeley In this session, researchers will discuss the use of large-scale clinical research data for machine learning models. Discussion topics include the use of synthetic data, considerations of bias, generalizable models, and development of digital twins. Speakers: Chris Probert, InSitro James Zou, Stanford Mihaela van der Schaar, University of Cambridge Panelists: Lily Peng, Verily Matthew Lungren, Microsoft/UCSF Session 5: Improving modeling of real-world evidence data in clinical research and clinical trial design Session chair: Tianxi Cai, Harvard This session will focus on real-world evidence (RWE) data modeling, including issues associated with RWE data such as electronic health record coding and unbalanced data, towards the development of clinical trials. Speakers: Sean Khozin, MIT Limor Appelbaum, Beth Israel Deaconess Ryan Copping, Genentech Panelists: Donna Rivera, FDA Khaled El Emam, University of Ottawa Session 6: Cross-cutting discussion with session chairs Session chair: Olivier Gevaert, Stanford University Discussion of the approaches and challenges identified during the workshop and opportunities for the future. Panelists: Caroline Uhler, MIT and Broad Institute Trey Ideker, UCSD Dana Pe’er, Memorial Sloan Kettering Ziad Obermeyer, UC Berkeley Tianxi Cai, Harvard | 2023-04-03 11:00:00 | Any | Artificial Intelligence / Machine Learning | Online | NCI | 0 | Cancer AI Research: Computational Approaches Addressing Imperfect Data | |||
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DescriptionThis class provides a basic overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install R, RStudio, and the tidyverse package, before the webinar so that they can follow along ...Read More This class provides a basic overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install R, RStudio, and the tidyverse package, before the webinar so that they can follow along with the instructor. DetailsOrganizerNIH LibraryWhenTue, Apr 04, 2023 - 11:00 am - 11:00 amWhereOnline Webinar |
This class provides a basic overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install R, RStudio, and the tidyverse package, before the webinar so that they can follow along with the instructor. | 2023-04-04 11:00:00 | Online Webinar | Any | Data Visualization | R programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Visualizing Relationships in ggplot |
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DescriptionPython is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed ...Read More Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings DetailsOrganizerNIH LibraryWhenTue, Apr 04, 2023 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings | 2023-04-04 14:00:00 | Online Webinar | Beginner | Python | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
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Single Cell Seminar SeriesDescriptionAzimuth is a web application that uses an annotated reference dataset to automate the processing, analysis, and interpretation of a new single-cell RNA-seq experiment. Azimuth leverages a Read More Azimuth is a web application that uses an annotated reference dataset to automate the processing, analysis, and interpretation of a new single-cell RNA-seq experiment. Azimuth leverages a 'reference-based mapping' pipeline that inputs a counts matrix of gene expression in single cells, and performs normalization, visualization, cell annotation, and differential expression (biomarker discovery). All results can be explored within the app, and easily downloaded for additional downstream analysis. - Satija Lab
The development of Azimuth is led by the New York Genome Center Mapping Component as part of the NIH Human Biomolecular Atlas Project (HuBMAP). This webinar will be recorded and made available on the BTEP web site: https://bioinformatics.ccr.cancer.gov/btep/btep-video-archive-of-past-classes/ within 48 hours after the event ends. Join information Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m1ff4bc9a56dbdc18375eecaed1c280fb Meeting number: 2304 561 2241 Password: JXrwyY4j85@ Host key: 183061 Cohost: Alex Emmons; Amy Stonelake; Desiree Tillo; Peter Fitzgerald; Joe Wu; Carl McIntosh Join by video system Dial 23045612241@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2304 561 2241
RegisterOrganizerBTEPWhenThu, Apr 06, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Azimuth is a web application that uses an annotated reference dataset to automate the processing, analysis, and interpretation of a new single-cell RNA-seq experiment. Azimuth leverages a 'reference-based mapping' pipeline that inputs a counts matrix of gene expression in single cells, and performs normalization, visualization, cell annotation, and differential expression (biomarker discovery). All results can be explored within the app, and easily downloaded for additional downstream analysis. - Satija Lab The development of Azimuth is led by the New York Genome Center Mapping Component as part of the NIH Human Biomolecular Atlas Project (HuBMAP). This webinar will be recorded and made available on the BTEP web site: https://bioinformatics.ccr.cancer.gov/btep/btep-video-archive-of-past-classes/ within 48 hours after the event ends. Join information Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m1ff4bc9a56dbdc18375eecaed1c280fb Meeting number: 2304 561 2241 Password: JXrwyY4j85@ Host key: 183061 Cohost: Alex Emmons; Amy Stonelake; Desiree Tillo; Peter Fitzgerald; Joe Wu; Carl McIntosh Join by video system Dial 23045612241@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2304 561 2241 | 2023-04-06 13:00:00 | Online Webinar | Any | Cancer, | Online | Rahul Satija (NYU) | BTEP | 1 | Rahul Satija: (Azimuth) Annotation of Cell Types in Single Cell Analysis of Cancer | |
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Part Of: Data Visualization with R CourseDescriptionWondering why you should use R for data visualization? Lesson 1 of the Data Visualization with R course series will address this question and introduce the various plot types that will be generated throughout the course. Lesson 1 will also showcase related plots that you will be able to create in the future using the foundational skills gained over the next 5 lessons. This will not be a hands-on lesson so no coding just yet. ...Read More Wondering why you should use R for data visualization? Lesson 1 of the Data Visualization with R course series will address this question and introduce the various plot types that will be generated throughout the course. Lesson 1 will also showcase related plots that you will be able to create in the future using the foundational skills gained over the next 5 lessons. This will not be a hands-on lesson so no coding just yet. The hands-on portion of this series will start with lesson 2, Getting Started with ggplot2. This lesson is the first lesson of a multi-lesson course series. Registering here will register you for the entire course series. IMPORTANT: You do not need to download or install any software to participate in the course. This course will be taught on the DNAnexus platform. Every learner will need to create a free DNAnexus account at https://dnanexus.com. After you have created your DNAnexus account, please complete this form. If you fail to complete the form, we will not be able to give you access to the course on DNAnexus. RegisterOrganizerBTEPWhenTue, Apr 11, 2023 - 1:00 pm - 2:15 pmWhereOnline Webinar |
Wondering why you should use R for data visualization? Lesson 1 of the Data Visualization with R course series will address this question and introduce the various plot types that will be generated throughout the course. Lesson 1 will also showcase related plots that you will be able to create in the future using the foundational skills gained over the next 5 lessons. This will not be a hands-on lesson so no coding just yet. The hands-on portion of this series will start with lesson 2, Getting Started with ggplot2. This lesson is the first lesson of a multi-lesson course series. Registering here will register you for the entire course series. IMPORTANT: You do not need to download or install any software to participate in the course. This course will be taught on the DNAnexus platform. Every learner will need to create a free DNAnexus account at https://dnanexus.com. After you have created your DNAnexus account, please complete this form. If you fail to complete the form, we will not be able to give you access to the course on DNAnexus. | 2023-04-11 13:00:00 | Online Webinar | Beginner | Data Visualization | R programming | Online | Alex Emmons (BTEP),Joe Wu (BTEP) | BTEP | 0 | Introduction to plot types |
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DescriptionPartek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. In this training session, you will learn to analyze 10x Visium spatial transcriptomics data using Partek Flow. This class is not hands-on.
Meeting link: Read More Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. In this training session, you will learn to analyze 10x Visium spatial transcriptomics data using Partek Flow. This class is not hands-on.
Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m2c767df055749f8d495d3f488edc5e4c Meeting number: 2301 219 9973 Password: ZSqfGSq@743 Host key: 284830 Join by video system: Join by phone: RegisterOrganizerBTEPWhenWed, Apr 12, 2023 - 11:00 am - 12:30 pmWhereOnline Webinar |
Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. In this training session, you will learn to analyze 10x Visium spatial transcriptomics data using Partek Flow. This class is not hands-on. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m2c767df055749f8d495d3f488edc5e4c Meeting number: 2301 219 9973 Password: ZSqfGSq@743 Host key: 284830 Join by video system: Dial 23012199973@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone: 1-650-479-3207 Call-in number (US/Canada) Access code: 2301 219 9973 Host PIN: 2784 Global call-in numbers | 2023-04-12 11:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software,Spatial Transcriptomics | Bioinformatics,Bioinformatics Software,Spatial Transcriptomics | Online | Joe Wu (BTEP),Partek Scientist | BTEP | 0 | Analyzing 10x Visium spatial transcriptomics data using Partek Flow |
1089 |
DescriptionAll Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues ...Read More All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. For inquires please email staff@hpc.nih.gov
DetailsOrganizerHPC BiowulfWhenWed, Apr 12, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. For inquires please email staff@hpc.nih.gov | 2023-04-12 13:00:00 | Online Webinar | Any | Data Management | Online | HPC Biowulf | 0 | Next edition of the NIH HPC monthly Zoom-In Consults! | ||
1070 |
DescriptionIn this hands-on virtual lab, the participants will familiarize themselves with Deep Learning concepts and techniques, using MATLAB Online to train deep neural networks on GPUs in the cloud, create deep learning models from scratch for images and signal data, explore pretrained models and use transfer learning, import and export models from Python frameworks such as Keras and PyTorch, as well as automatically generate code for embedded targets. Deep ...Read More In this hands-on virtual lab, the participants will familiarize themselves with Deep Learning concepts and techniques, using MATLAB Online to train deep neural networks on GPUs in the cloud, create deep learning models from scratch for images and signal data, explore pretrained models and use transfer learning, import and export models from Python frameworks such as Keras and PyTorch, as well as automatically generate code for embedded targets. Deep Learning can achieve state-of-the-art accuracy when it comes to complex problems such as image classification or developing predictive models for signal processing applications. Deep Learning outperforms humans in some tasks like classifying objects in images. Cancer researchers are using deep learning to automatically detect cancer cells, for example. DetailsOrganizerNIH LibraryWhenThu, Apr 13, 2023 - 12:00 pm - 1:30 pmWhereOnline Webinar |
In this hands-on virtual lab, the participants will familiarize themselves with Deep Learning concepts and techniques, using MATLAB Online to train deep neural networks on GPUs in the cloud, create deep learning models from scratch for images and signal data, explore pretrained models and use transfer learning, import and export models from Python frameworks such as Keras and PyTorch, as well as automatically generate code for embedded targets. Deep Learning can achieve state-of-the-art accuracy when it comes to complex problems such as image classification or developing predictive models for signal processing applications. Deep Learning outperforms humans in some tasks like classifying objects in images. Cancer researchers are using deep learning to automatically detect cancer cells, for example. | 2023-04-13 12:00:00 | Online Webinar | Any | Artificial Intelligence / Machine Learning | MATLAB | Online | Mathworks | NIH Library | 0 | Hands-On Virtual Lab: Deep Learning |
1062 |
Part Of: Data Visualization with R CourseDescriptionLesson 2 of the Data Visualization with R course series will focus on the basics of ggplot2, including the grammar of graphics philosophy and its application. This lesson will provide a hands on introduction to the ggplot2 syntax, geom functions, mapping and aesthetics, and plot layering. Registering for lesson 1 of this course series will enroll you in the entire course series. Lesson 2 of the Data Visualization with R course series will focus on the basics of ggplot2, including the grammar of graphics philosophy and its application. This lesson will provide a hands on introduction to the ggplot2 syntax, geom functions, mapping and aesthetics, and plot layering. Registering for lesson 1 of this course series will enroll you in the entire course series. DetailsOrganizerBTEPWhenThu, Apr 13, 2023 - 1:00 pm - 2:15 pmWhereOnline Webinar |
Lesson 2 of the Data Visualization with R course series will focus on the basics of ggplot2, including the grammar of graphics philosophy and its application. This lesson will provide a hands on introduction to the ggplot2 syntax, geom functions, mapping and aesthetics, and plot layering. Registering for lesson 1 of this course series will enroll you in the entire course series. | 2023-04-13 13:00:00 | Online Webinar | Beginner | Data Visualization | R programming | Online | Alex Emmons (BTEP),Joe Wu (BTEP) | BTEP | 0 | Getting Started with ggplot2 |
1088 |
DescriptionThe NICHD DIR Tenure-Track Investigator Virtual Symposia Series provides tenure-track investigators within NICHD the opportunity to organize a virtual mini-symposium to showcase their area of science to the NICHD DIR and larger NIH intramural community. Symposia are held on the second Thursday of every month and are open to all NIH faculty, trainees, and staff. Speakers include Elaine Hsiao, Ph.D., Associate Professor, Dept. of Microbiology, Immunology, & Molecular Genetics, University of California ...Read More The NICHD DIR Tenure-Track Investigator Virtual Symposia Series provides tenure-track investigators within NICHD the opportunity to organize a virtual mini-symposium to showcase their area of science to the NICHD DIR and larger NIH intramural community. Symposia are held on the second Thursday of every month and are open to all NIH faculty, trainees, and staff. Speakers include Elaine Hsiao, Ph.D., Associate Professor, Dept. of Microbiology, Immunology, & Molecular Genetics, University of California Los Angeles; Jessica Grembi, Ph.D., Postdoctoral Scholar, Department of Microbiology and Immunology, Stanford School of Medicine; Cathy Lozopone, Ph.D., Associate Professor, Department of Biomedical Informatics, University of Colorado Anschutz Medical Campus; Ilana Brito, Ph.D., Associate Professor, Meinig School of Biomedical Engineering, Cornell University; Justin Silverman, M.D., Ph.D., Assistant Professor, Department of Statistics, Penn State University; Jamie Morton, Ph.D., Investigator, NICHD. DetailsOrganizerNICHDWhenThu, Apr 13, 2023 - 1:00 pm - 4:00 pmWhereOnline Webinar |
The NICHD DIR Tenure-Track Investigator Virtual Symposia Series provides tenure-track investigators within NICHD the opportunity to organize a virtual mini-symposium to showcase their area of science to the NICHD DIR and larger NIH intramural community. Symposia are held on the second Thursday of every month and are open to all NIH faculty, trainees, and staff. Speakers include Elaine Hsiao, Ph.D., Associate Professor, Dept. of Microbiology, Immunology, & Molecular Genetics, University of California Los Angeles; Jessica Grembi, Ph.D., Postdoctoral Scholar, Department of Microbiology and Immunology, Stanford School of Medicine; Cathy Lozopone, Ph.D., Associate Professor, Department of Biomedical Informatics, University of Colorado Anschutz Medical Campus; Ilana Brito, Ph.D., Associate Professor, Meinig School of Biomedical Engineering, Cornell University; Justin Silverman, M.D., Ph.D., Assistant Professor, Department of Statistics, Penn State University; Jamie Morton, Ph.D., Investigator, NICHD. | 2023-04-13 13:00:00 | Online Webinar | Any | Microbiome,Omics | multi-omics | Online | NICHD | 0 | Disentangling Host Microbe Interactions Through the Analysis of High Dimensional Multi Omics Data | |
1072 |
Part Of: NIH Data Sharing and Reuse Seminar Series CourseDescriptionThis seminar will introduce the NIH Comparative Genomics Resource (CGR), an NIH-funded, multi-year NLM project to establish an ecosystem to facilitate reliable comparative genomics analyses for all eukaryotic organisms in collaboration with the genomics community. The project’s vision is to maximize the biomedical impact of eukaryotic research organisms and their genomic data resources to meet emerging research needs for human health. To achieve this, NCBI is providing high-value data and assorted tools compatible ...Read More This seminar will introduce the NIH Comparative Genomics Resource (CGR), an NIH-funded, multi-year NLM project to establish an ecosystem to facilitate reliable comparative genomics analyses for all eukaryotic organisms in collaboration with the genomics community. The project’s vision is to maximize the biomedical impact of eukaryotic research organisms and their genomic data resources to meet emerging research needs for human health. To achieve this, NCBI is providing high-value data and assorted tools compatible with community-provided resources. DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenFri, Apr 14, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
This seminar will introduce the NIH Comparative Genomics Resource (CGR), an NIH-funded, multi-year NLM project to establish an ecosystem to facilitate reliable comparative genomics analyses for all eukaryotic organisms in collaboration with the genomics community. The project’s vision is to maximize the biomedical impact of eukaryotic research organisms and their genomic data resources to meet emerging research needs for human health. To achieve this, NCBI is providing high-value data and assorted tools compatible with community-provided resources. | 2023-04-14 12:00:00 | Online Webinar | Any | Data Management,Data Resources | Data analysis | Online | Valerie Schneider (NCBI) | NIH Office of Data Science Strategy (ODSS) | 0 | The NIH Comparative Genomics Resource (CGR): A new ecosystem facilitating reliable comparative genomics |
1090 |
DescriptionEfforts are underway to characterize cancer cell lines and identify their genetic and pharmacological vulnerabilities, but integration is essential for their interpretation. To empower researchers, to utilize the growing knowledge from these hundreds of cancer model systems, we harmonized and integrated datasets into the DepMap portal (Read More Efforts are underway to characterize cancer cell lines and identify their genetic and pharmacological vulnerabilities, but integration is essential for their interpretation. To empower researchers, to utilize the growing knowledge from these hundreds of cancer model systems, we harmonized and integrated datasets into the DepMap portal (depmap.org) to make it easy and possible to explore and analyze the data across modalities. This talk will introduce the Cancer Dependency Map project, how these data can be explored in the DepMap portal and highlight recent and upcoming additions to the DepMap portal. DetailsOrganizerCBIITWhenTue, Apr 18, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
Efforts are underway to characterize cancer cell lines and identify their genetic and pharmacological vulnerabilities, but integration is essential for their interpretation. To empower researchers, to utilize the growing knowledge from these hundreds of cancer model systems, we harmonized and integrated datasets into the DepMap portal (depmap.org) to make it easy and possible to explore and analyze the data across modalities. This talk will introduce the Cancer Dependency Map project, how these data can be explored in the DepMap portal and highlight recent and upcoming additions to the DepMap portal. | 2023-04-18 12:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Mel Nisonger (CBIIT) | CBIIT | 0 | Introduction to the DepMap portal | |
1063 |
Part Of: Data Visualization with R CourseDescriptionLesson 3 of the Data Visualization with R course series will continue the discussion on the grammar of graphics, with a focus on ggplot2 plot customization including axes labels, coordinate systems, axes scales, and themes. This hands on lesson will showcase these features of plot building through the generation of increasingly complex scatter plots using data included with a base R installation as well as RNA-seq data. Lesson 3 of the Data Visualization with R course series will continue the discussion on the grammar of graphics, with a focus on ggplot2 plot customization including axes labels, coordinate systems, axes scales, and themes. This hands on lesson will showcase these features of plot building through the generation of increasingly complex scatter plots using data included with a base R installation as well as RNA-seq data. Registering for lesson 1 of this course series will enroll you in the entire course series. DetailsOrganizerBTEPWhenTue, Apr 18, 2023 - 1:00 pm - 2:15 pmWhereOnline Webinar |
Lesson 3 of the Data Visualization with R course series will continue the discussion on the grammar of graphics, with a focus on ggplot2 plot customization including axes labels, coordinate systems, axes scales, and themes. This hands on lesson will showcase these features of plot building through the generation of increasingly complex scatter plots using data included with a base R installation as well as RNA-seq data. Registering for lesson 1 of this course series will enroll you in the entire course series. | 2023-04-18 13:00:00 | Online Webinar | Beginner | Data Visualization | R programming | Online | Alex Emmons (BTEP),Joe Wu (BTEP) | BTEP | 0 | Scatter plots and Non-data elements of ggplot2 customization |
1073 |
DescriptionRegister by April 03, 2023. Using information gleaned from a person’s genome can assist clinicians in customizing their patient’s case management and increase the likelihood of a positive outcome. While NCBI has long had resources for biologists to explore what is known about genomes, genes and genetic variations, we have also added resources designed to assist the clinical community in understanding the impact of genetic variations in their patients. Using real-world cases, ...Read More Register by April 03, 2023. Using information gleaned from a person’s genome can assist clinicians in customizing their patient’s case management and increase the likelihood of a positive outcome. While NCBI has long had resources for biologists to explore what is known about genomes, genes and genetic variations, we have also added resources designed to assist the clinical community in understanding the impact of genetic variations in their patients. Using real-world cases, this workshop will show you how to use free, high quality, online resources to assist you with your patient care. See more here.
DetailsOrganizerNCBIWhenTue, Apr 18, 2023 - 1:00 pm - 3:00 pmWhereOnline |
Register by April 03, 2023. Using information gleaned from a person’s genome can assist clinicians in customizing their patient’s case management and increase the likelihood of a positive outcome. While NCBI has long had resources for biologists to explore what is known about genomes, genes and genetic variations, we have also added resources designed to assist the clinical community in understanding the impact of genetic variations in their patients. Using real-world cases, this workshop will show you how to use free, high quality, online resources to assist you with your patient care. See more here. | 2023-04-18 13:00:00 | Data Resources | NCBI | Online | NCBI | 0 | NCBI Resources for Genetics-based Clinical Decision Support | |||
1076 |
Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescriptionThis BTEP coding club will introduce beginners to Jupyter Notebook, a platform to organize code and analysis steps in one place. Jupyter Notebook can be easily installed or run in a web browser, and supports several languages such as R and Python. It provides a way to keep track of all steps in an analysis and a place for collaboration. Come learn what Jupyter Notebook can do for you. This class will not be ...Read More This BTEP coding club will introduce beginners to Jupyter Notebook, a platform to organize code and analysis steps in one place. Jupyter Notebook can be easily installed or run in a web browser, and supports several languages such as R and Python. It provides a way to keep track of all steps in an analysis and a place for collaboration. Come learn what Jupyter Notebook can do for you. This class will not be hands-on so need to install anything to attend. RegisterOrganizerBTEPWhenWed, Apr 19, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
This BTEP coding club will introduce beginners to Jupyter Notebook, a platform to organize code and analysis steps in one place. Jupyter Notebook can be easily installed or run in a web browser, and supports several languages such as R and Python. It provides a way to keep track of all steps in an analysis and a place for collaboration. Come learn what Jupyter Notebook can do for you. This class will not be hands-on so need to install anything to attend. | 2023-04-19 11:00:00 | Online Webinar | Beginner | Bioinformatics,Data Science,Data Visualization | Bioinformatics,Data Science,Data visualization | Online | Joe Wu (BTEP) | BTEP | 1 | Documenting Data Analysis with Jupyter Lab |
1064 |
Part Of: Data Visualization with R CourseDescriptionIt is common to obtain summary statistics for a dataset to understand parameters like mean, standard deviation, and distribution. In Lesson 4 of the Data Visualization with R course series, we will learn to generate plots that will help with visualization of summary statistics including bar plots with error bars, histograms, and box and whiskers plots. Registering for lesson 1 of this course series will enroll you ...Read More It is common to obtain summary statistics for a dataset to understand parameters like mean, standard deviation, and distribution. In Lesson 4 of the Data Visualization with R course series, we will learn to generate plots that will help with visualization of summary statistics including bar plots with error bars, histograms, and box and whiskers plots. Registering for lesson 1 of this course series will enroll you in the entire course series. DetailsOrganizerBTEPWhenThu, Apr 20, 2023 - 1:00 pm - 2:15 pmWhereOnline |
It is common to obtain summary statistics for a dataset to understand parameters like mean, standard deviation, and distribution. In Lesson 4 of the Data Visualization with R course series, we will learn to generate plots that will help with visualization of summary statistics including bar plots with error bars, histograms, and box and whiskers plots. Registering for lesson 1 of this course series will enroll you in the entire course series. | 2023-04-20 13:00:00 | Beginner | Data Visualization | R programming | Online | Alex Emmons (BTEP),Joe Wu (BTEP) | BTEP | 0 | Visualizing Summary Statistics with ggplot2 | |
1071 |
DescriptionMacros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read and edit, less prone to errors, and allows it to run more efficiently. This 90-minute advanced class will provide an in-depth look at using and writing macros in SAS. Topics covered in this class include macro function, using SQL and Data Step to create macro variables, indirect references to macro variables, defining ...Read More Macros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read and edit, less prone to errors, and allows it to run more efficiently. This 90-minute advanced class will provide an in-depth look at using and writing macros in SAS. Topics covered in this class include macro function, using SQL and Data Step to create macro variables, indirect references to macro variables, defining and calling a macro, macro variable scope, conditional processing, and iterative processing. DetailsOrganizerNIH LibraryWhenTue, Apr 25, 2023 - 12:00 pm - 1:30 pmWhereOnline Webinar |
Macros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read and edit, less prone to errors, and allows it to run more efficiently. This 90-minute advanced class will provide an in-depth look at using and writing macros in SAS. Topics covered in this class include macro function, using SQL and Data Step to create macro variables, indirect references to macro variables, defining and calling a macro, macro variable scope, conditional processing, and iterative processing. | 2023-04-25 12:00:00 | Online Webinar | Advanced | Data Science,Statistics | Online | SAS | NIH Library | 0 | Advanced Coding Macros in SAS | |
1065 |
Part Of: Data Visualization with R CourseDescriptionLesson 5 of the Data Visualization with R course series will introduce the heatmap and dendrogram as tools for visualizing clusters in data. This lesson will primarily use the R package pheatmap. Registering for lesson 1 of this course series will enroll you in the entire course series. Lesson 5 of the Data Visualization with R course series will introduce the heatmap and dendrogram as tools for visualizing clusters in data. This lesson will primarily use the R package pheatmap. Registering for lesson 1 of this course series will enroll you in the entire course series. DetailsOrganizerBTEPWhenTue, Apr 25, 2023 - 1:00 pm - 2:15 pmWhereOnline Webinar |
Lesson 5 of the Data Visualization with R course series will introduce the heatmap and dendrogram as tools for visualizing clusters in data. This lesson will primarily use the R package pheatmap. Registering for lesson 1 of this course series will enroll you in the entire course series. | 2023-04-25 13:00:00 | Online Webinar | Beginner | Data Visualization | R programming | Online | Alex Emmons (BTEP),Joe Wu (BTEP) | BTEP | 0 | Visualizing clusters with heatmaps |
1074 |
DescriptionRegister by April 10, 2023. This workshop is for biological researchers who would like to incorporate NCBI command-line clients into their workflows to access and process NCBI molecular data and metadata. In this workshop you will learn to use both the EDirect suite and the Datasets command-line interface (CLI) to download gene sequences, genome assemblies and their associated metadata, and create custom reports that cross reference biological features and sequence data. You do not ...Read More Register by April 10, 2023. This workshop is for biological researchers who would like to incorporate NCBI command-line clients into their workflows to access and process NCBI molecular data and metadata. In this workshop you will learn to use both the EDirect suite and the Datasets command-line interface (CLI) to download gene sequences, genome assemblies and their associated metadata, and create custom reports that cross reference biological features and sequence data. You do not need to have prior experience with EDirect or the Datasets CLI tools (datasets and dataformat), but you will need to be familiar with NCBI databases and comfortable using the Unix/Linux shell to get the most out of this workshop. See more information here. DetailsOrganizerNCBIWhenTue, Apr 25, 2023 - 1:00 pm - 3:00 pmWhereOnline |
Register by April 10, 2023. This workshop is for biological researchers who would like to incorporate NCBI command-line clients into their workflows to access and process NCBI molecular data and metadata. In this workshop you will learn to use both the EDirect suite and the Datasets command-line interface (CLI) to download gene sequences, genome assemblies and their associated metadata, and create custom reports that cross reference biological features and sequence data. You do not need to have prior experience with EDirect or the Datasets CLI tools (datasets and dataformat), but you will need to be familiar with NCBI databases and comfortable using the Unix/Linux shell to get the most out of this workshop. See more information here. | 2023-04-25 13:00:00 | Online | Bioinformatics | NCBI | Online | NCBI | 0 | Downloading NCBI Biological Data and Creating Custom Reports Using the Command Line | ||
1101 |
DescriptionIn this month’s Cancer Genomics Cloud (CGC) webinar, Dr. Tolga Can of the Colorado School of Mines will share how he and members of the Erson-Bensan Lab are using publicly available RNA-seq data sets and CGC resources to screen for alternative polyadenylation events in cancer cells. Dr. Tolga will discuss how to:
In this month’s Cancer Genomics Cloud (CGC) webinar, Dr. Tolga Can of the Colorado School of Mines will share how he and members of the Erson-Bensan Lab are using publicly available RNA-seq data sets and CGC resources to screen for alternative polyadenylation events in cancer cells. Dr. Tolga will discuss how to:
As one of the three Cloud Resources within the NCI Cancer Research Data Commons, the Seven Bridges’ CGC (Velsera) provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale analysis on the cloud. Presenter: Tolga Can, Ph.D. Dr. Can is a computer science professor at the Colorado School of Mines. His main research interests include bioinformatics, graph theory, and algorithms. He has worked on protein structure analysis and large-scale biological networks.
DetailsOrganizerCBIITWhenWed, Apr 26, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this month’s Cancer Genomics Cloud (CGC) webinar, Dr. Tolga Can of the Colorado School of Mines will share how he and members of the Erson-Bensan Lab are using publicly available RNA-seq data sets and CGC resources to screen for alternative polyadenylation events in cancer cells. Dr. Tolga will discuss how to: utilize the tools on CGC to speed up data upload, preprocessing, and alignment stages. use programmatic access to automatically update the metadata of individual samples to avoid manually entering the information for data sets containing hundreds of samples. use locally installed and cloud-based tools together for downstream analysis. As one of the three Cloud Resources within the NCI Cancer Research Data Commons, the Seven Bridges’ CGC (Velsera) provides researchers access to a wide variety of data sets, a catalog of tools to analyze and visualize the data directly from the browser, and scalable computational resources to perform large scale analysis on the cloud. Presenter: Tolga Can, Ph.D. Dr. Can is a computer science professor at the Colorado School of Mines. His main research interests include bioinformatics, graph theory, and algorithms. He has worked on protein structure analysis and large-scale biological networks. | 2023-04-26 13:00:00 | Online Webinar | Any | RNA-Seq | Online | Tolga Can Ph.D. | CBIIT | 0 | Mining for Alternative Polyadenylation Events in Cancer Using Large Scale RNA-Seq Datasets | |
1066 |
Part Of: Data Visualization with R CourseDescriptionScientific journals almost always have limits on the number of figures that can be included in a publication. Don't fret, in the 6th and final lesson of the Data Visualization with R course series, we will focus on generating sub-plots and multi-plot figure panels using ggplot2 associated packages. Registering for lesson 1 of this course series will enroll you in the entire course series. Scientific journals almost always have limits on the number of figures that can be included in a publication. Don't fret, in the 6th and final lesson of the Data Visualization with R course series, we will focus on generating sub-plots and multi-plot figure panels using ggplot2 associated packages. Registering for lesson 1 of this course series will enroll you in the entire course series. DetailsOrganizerBTEPWhenThu, Apr 27, 2023 - 1:00 pm - 2:15 pmWhereOnline Webinar |
Scientific journals almost always have limits on the number of figures that can be included in a publication. Don't fret, in the 6th and final lesson of the Data Visualization with R course series, we will focus on generating sub-plots and multi-plot figure panels using ggplot2 associated packages. Registering for lesson 1 of this course series will enroll you in the entire course series. | 2023-04-27 13:00:00 | Online Webinar | Beginner | Data Visualization | R programming | Online | Alex Emmons (BTEP),Joe Wu (BTEP) | BTEP | 0 | Combining multiple plots to create a figure panel |
1100 |
DescriptionThe Cancer Proteome Atlas (TCPA): a major bioinformatics resource for cancer proteomics data using reverse-phase protein arrays (RPPAs) In contrast to the recent exploration of next-generation sequencing at both DNA and RNA levels, access to high-quality, large-scale proteomic data has been relatively limited in cancer research. This is despite proteins comprising the basic functional units in various biological processes and being major ...Read More The Cancer Proteome Atlas (TCPA): a major bioinformatics resource for cancer proteomics data using reverse-phase protein arrays (RPPAs) In contrast to the recent exploration of next-generation sequencing at both DNA and RNA levels, access to high-quality, large-scale proteomic data has been relatively limited in cancer research. This is despite proteins comprising the basic functional units in various biological processes and being major targets for many current cancer drugs. We developed TCPA, a user-friendly web platform to analyze and visualize RPPA-based cancer functional proteomics data. Currently, TCPA contains three independent analytic web platforms:
DetailsOrganizerCBIITWhenTue, May 02, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
The Cancer Proteome Atlas (TCPA): a major bioinformatics resource for cancer proteomics data using reverse-phase protein arrays (RPPAs) In contrast to the recent exploration of next-generation sequencing at both DNA and RNA levels, access to high-quality, large-scale proteomic data has been relatively limited in cancer research. This is despite proteins comprising the basic functional units in various biological processes and being major targets for many current cancer drugs. We developed TCPA, a user-friendly web platform to analyze and visualize RPPA-based cancer functional proteomics data. Currently, TCPA contains three independent analytic web platforms: TCPA-patient focuses on the analysis and visualization of patient samples (Li et al., Nature Methods 2013) and includes ~8,000 TCGA samples and independent patient cohorts. TCPA-cell line focuses on the analysis of cell line samples and includes >1,000 CCLE samples and ~700 cell lines from the MD Anderson Cell Line project (MCLP, Li et al., Cancer Cell 2017; Ng et al., Cancer Cell 2018). TCPA-perturbation allows the analysis of perturbed protein expression profiles in >12,000 cell line samples in response to ~170 drug compounds (Zhao et al., Cancer Cell 2020). | 2023-05-02 11:00:00 | Online Webinar | Any | Proteomics | Online | CBIIT | 0 | The Cancer Proteome Atlas | ||
1080 |
DescriptionParticipants will learn how to develop artificial intelligence (AI) applications focused on biomedical imaging datasets. The course will cover the entire AI pipeline from image exploration and labeling to development and deployment of predictive models on images using both machine learning and deep learning approaches. This includes annotating and exploring image datasets, exploring techniques for developing machine and deep learning models, optimizing the parameters of the deep networks, and automatically generating code for edge ...Read More Participants will learn how to develop artificial intelligence (AI) applications focused on biomedical imaging datasets. The course will cover the entire AI pipeline from image exploration and labeling to development and deployment of predictive models on images using both machine learning and deep learning approaches. This includes annotating and exploring image datasets, exploring techniques for developing machine and deep learning models, optimizing the parameters of the deep networks, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenTue, May 02, 2023 - 12:00 pm - 1:30 pmWhereOnline |
Participants will learn how to develop artificial intelligence (AI) applications focused on biomedical imaging datasets. The course will cover the entire AI pipeline from image exploration and labeling to development and deployment of predictive models on images using both machine learning and deep learning approaches. This includes annotating and exploring image datasets, exploring techniques for developing machine and deep learning models, optimizing the parameters of the deep networks, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. | 2023-05-02 12:00:00 | Any | Artificial Intelligence / Machine Learning,Data Science | Online | Mathworks | NIH Library | 0 | Data Science and Artificial Intelligence: Medical Imaging Datasets Using MATLAB | ||
1083 |
DescriptionPartek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. In this training session, you will learn to analyze ChIP sequencing data using Partek Flow. This class is not hands-on. Meeting link: https://cbiit.webex.com/cbiit/j....Read More Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. In this training session, you will learn to analyze ChIP sequencing data using Partek Flow. This class is not hands-on. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=me1a0fce51b10f9a6b5cbb7040274e4f9 Meeting number: 2303 020 2675 Password:jwHGmr2S$34 Host key: 959222 Join by video system: Join by phone: RegisterOrganizerBTEPWhenWed, May 03, 2023 - 11:00 am - 12:30 pmWhereOnline Webinar |
Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. In this training session, you will learn to analyze ChIP sequencing data using Partek Flow. This class is not hands-on. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=me1a0fce51b10f9a6b5cbb7040274e4f9 Meeting number: 2303 020 2675 Password:jwHGmr2S$34 Host key: 959222 Join by video system: Dial 23030202675@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone: 1-650-479-3207 Call-in number (US/Canada) Access code: 2303 020 2675 Host PIN: 2784 Global call-in numbers | 2023-05-03 11:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software,ChIP sequencing | Bioinformatics,Bioinformatics Software,ChIP sequencing | Online | Joe Wu (BTEP),Partek Scientist | BTEP | 0 | Analyzing ChIP sequencing data with Partek Flow |
1115 |
DescriptionIn this seminar, you’ll learn about the use of patient data combined from sources throughout the healthcare system. This type of patient data is called a longitudinal patient record (LPR), and it’s a type of real-world data that can drive precision oncology forward. Despite recent progress using LPRs for cancer research, there are many things to consider that could improve the way researchers use this combined patient data. ...Read More In this seminar, you’ll learn about the use of patient data combined from sources throughout the healthcare system. This type of patient data is called a longitudinal patient record (LPR), and it’s a type of real-world data that can drive precision oncology forward. Despite recent progress using LPRs for cancer research, there are many things to consider that could improve the way researchers use this combined patient data. The Mayo Clinic’s Dr. Hongfang Liu will discuss the opportunities and challenges, including:
The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. Speaker: Hongfang Liu, Ph.D. Dr. Liu is the Dr. Richard F. Emslander Professor of Biomedical Informatics at the Mayo Clinic, and she is directing the biomedical informatics program at the Mayo Clinic Center for Clinical and Translational Science. Dr. Liu has a broad range of research interest in the discovery, translation, and application of data science, informatics, and artificial intelligence. Dr. Liu is committed to advancing people-centric, value-added, and evidence-based methodology and technology innovations under the RITE-FAIR principles.
DetailsOrganizerCBIITWhenWed, May 03, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
In this seminar, you’ll learn about the use of patient data combined from sources throughout the healthcare system. This type of patient data is called a longitudinal patient record (LPR), and it’s a type of real-world data that can drive precision oncology forward. Despite recent progress using LPRs for cancer research, there are many things to consider that could improve the way researchers use this combined patient data. The Mayo Clinic’s Dr. Hongfang Liu will discuss the opportunities and challenges, including: applying Reproducible, Implementable, Transparent, and Explainable (RITE) principles to the data. applying Findable, Accessible, Interoperable, and Reusable (FAIR) principles to the data. the limits to using only imaging or structured data, without important information from clinical narratives. The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. Speaker: Hongfang Liu, Ph.D. Dr. Liu is the Dr. Richard F. Emslander Professor of Biomedical Informatics at the Mayo Clinic, and she is directing the biomedical informatics program at the Mayo Clinic Center for Clinical and Translational Science. Dr. Liu has a broad range of research interest in the discovery, translation, and application of data science, informatics, and artificial intelligence. Dr. Liu is committed to advancing people-centric, value-added, and evidence-based methodology and technology innovations under the RITE-FAIR principles. | 2023-05-03 11:00:00 | Online Webinar | Any | Data Science | Online | Hongfang Liu Ph.D. | CBIIT | 0 | WONDER: Accelerating Real World Data-driven Precision Oncology through Data Science and Informatics Excellence in Research | |
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Distinguished Speakers Seminar SeriesDescription
The National Cancer Insitute (NCI) Cancer Research Data Commons (CRDC) includes petabytes of genomic, proteomic, imaging and other data that can be immediately accessed and analyzed by approved users in a secure cloud environment. In this webinar, attendees will learn how the CRDC is transforming cancer research by streamlining collaboration, democratizing access to data and increasing accessibility of complex computational algorithms. We will include a live demonstration of the Seven Bridges Cancer Genomics cloud as ...Read More
The National Cancer Insitute (NCI) Cancer Research Data Commons (CRDC) includes petabytes of genomic, proteomic, imaging and other data that can be immediately accessed and analyzed by approved users in a secure cloud environment. In this webinar, attendees will learn how the CRDC is transforming cancer research by streamlining collaboration, democratizing access to data and increasing accessibility of complex computational algorithms. We will include a live demonstration of the Seven Bridges Cancer Genomics cloud as well as case studies of research performed in the CRDC.
RegisterOrganizerBTEPWhenThu, May 04, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The National Cancer Insitute (NCI) Cancer Research Data Commons (CRDC) includes petabytes of genomic, proteomic, imaging and other data that can be immediately accessed and analyzed by approved users in a secure cloud environment. In this webinar, attendees will learn how the CRDC is transforming cancer research by streamlining collaboration, democratizing access to data and increasing accessibility of complex computational algorithms. We will include a live demonstration of the Seven Bridges Cancer Genomics cloud as well as case studies of research performed in the CRDC. | 2023-05-04 13:00:00 | Online Webinar | Any | Cloud,Genomics | Online | Brandi Davis-Dusenbery (Velsera) | BTEP | 1 | The Power of Connection: How the Cancer Research Data Commons enables researchers to connect data, computational tools, and collaborators to accelerate discovery | |
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DescriptionCenter for Structural Biology (CSB) Seminar Series Speaker: Edward Marcotte, Ph.D. Department of Molecular Biosciences University of Texas, Austin Center for Structural Biology (CSB) Seminar Series Speaker: Edward Marcotte, Ph.D. Department of Molecular Biosciences University of Texas, Austin DetailsOrganizerCSBWhenFri, May 05, 2023 - 3:00 pm - 4:00 pmWhereAuditorium, Building 549, NCI at Frederick |
Center for Structural Biology (CSB) Seminar Series Speaker: Edward Marcotte, Ph.D. Department of Molecular Biosciences University of Texas, Austin | 2023-05-05 15:00:00 | Auditorium, Building 549, NCI at Frederick | Any | Proteomics | In-Person | Edward Marcotte Ph.D. | CSB | 0 | Proteomics across deep evolutionary time to decode human genetics | |
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DescriptionIf you’re attending the 2023 Organization for the Study of Sex Differences (OSSD) annual meeting from May 7-11, you’ll have the opportunity to hear about big data and cancer from NCI’s Dr. Jill Barnholtz-Sloan. Read More If you’re attending the 2023 Organization for the Study of Sex Differences (OSSD) annual meeting from May 7-11, you’ll have the opportunity to hear about big data and cancer from NCI’s Dr. Jill Barnholtz-Sloan. The registration process requires creating an account, which is different than becoming a member. This event is open to non-members. In her talk, Using “Big Data” to Examine Sex Differences in Cancer: Glioma as an Exemplar, Jill will focus on using available data sets to examine the role that sex differences play in cancer. She will use brain tumors as an example. She will also highlight some of the work done in her research group. Speaker: Jill Barnholtz-Sloan, Ph.D. Dr. Barnholtz-Sloan is the associate director of the informatics and data science program. She leads efforts at CBIIT to shape informatics and data science strategies and foster collaboration across the cancer research community. She is pursuing a research agenda in descriptive epidemiology and etiology of brain tumors as a senior intramural investigator in NCI’s Division of Cancer Epidemiology and Genetics Trans-Divisional Research Program. As both an active researcher and administrator, she has insight into how to translate data into real-world solutions to help diagnose, prevent, and treat cancer.
DetailsOrganizerCBIITWhenTue, May 09, 2023 - 8:05 am - 8:30 amWhereOnline Webinar |
If you’re attending the 2023 Organization for the Study of Sex Differences (OSSD) annual meeting from May 7-11, you’ll have the opportunity to hear about big data and cancer from NCI’s Dr. Jill Barnholtz-Sloan. The registration process requires creating an account, which is different than becoming a member. This event is open to non-members. In her talk, Using “Big Data” to Examine Sex Differences in Cancer: Glioma as an Exemplar, Jill will focus on using available data sets to examine the role that sex differences play in cancer. She will use brain tumors as an example. She will also highlight some of the work done in her research group. Speaker: Jill Barnholtz-Sloan, Ph.D. Dr. Barnholtz-Sloan is the associate director of the informatics and data science program. She leads efforts at CBIIT to shape informatics and data science strategies and foster collaboration across the cancer research community. She is pursuing a research agenda in descriptive epidemiology and etiology of brain tumors as a senior intramural investigator in NCI’s Division of Cancer Epidemiology and Genetics Trans-Divisional Research Program. As both an active researcher and administrator, she has insight into how to translate data into real-world solutions to help diagnose, prevent, and treat cancer. | 2023-05-09 08:05:00 | Online Webinar | Any | Cancer | Online | Jill Barnholtz-Sloan (NCI/CCR) | CBIIT | 0 | OSSD 2023: Using “Big Data” to Examine Sex Differences in Cancer | |
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DescriptionThe Cancer Proteome Atlas (TCPA): a major bioinformatics resource for cancer proteomics data using reverse-phase protein arrays (RPPAs)
In contrast to the recent exploration of next-generation sequencing at both DNA and RNA levels, access to high-quality, large-scale proteomic data has been relatively limited in cancer research. This is ...Read More The Cancer Proteome Atlas (TCPA): a major bioinformatics resource for cancer proteomics data using reverse-phase protein arrays (RPPAs)
In contrast to the recent exploration of next-generation sequencing at both DNA and RNA levels, access to high-quality, large-scale proteomic data has been relatively limited in cancer research. This is despite proteins comprising the basic functional units in various biological processes and being major targets for many current cancer drugs.
We developed TCPA, a user-friendly web platform to analyze and visualize RPPA-based cancer functional proteomics data. Currently, TCPA contains three independent analytic web platforms:
DetailsOrganizerCBIITWhenTue, May 09, 2023 - 11:00 am - 12:00 pmWhereOnline |
The Cancer Proteome Atlas (TCPA): a major bioinformatics resource for cancer proteomics data using reverse-phase protein arrays (RPPAs) In contrast to the recent exploration of next-generation sequencing at both DNA and RNA levels, access to high-quality, large-scale proteomic data has been relatively limited in cancer research. This is despite proteins comprising the basic functional units in various biological processes and being major targets for many current cancer drugs. We developed TCPA, a user-friendly web platform to analyze and visualize RPPA-based cancer functional proteomics data. Currently, TCPA contains three independent analytic web platforms: TCPA-patient focuses on the analysis and visualization of patient samples (Li et al., Nature Methods 2013) and includes ~8,000 TCGA samples and independent patient cohorts. TCPA-cell line focuses on the analysis of cell line samples and includes >1,000 CCLE samples and ~700 cell lines from the MD Anderson Cell Line project (MCLP, Li et al., Cancer Cell 2017; Ng et al., Cancer Cell 2018). TCPA-perturbation allows the analysis of perturbed protein expression profiles in >12,000 cell line samples in response to ~170 drug compounds (Zhao et al., Cancer Cell 2020). | 2023-05-09 11:00:00 | Online | Any | Proteomics | Online | CBIIT | 0 | The Cancer Proteome Atlas | ||
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DescriptionIn this class, attendees will be introduced to the different bioinformatics resources available to them at NCI Center for Cancer Research (CCR). This includes: (1) Bioinformatics Training Classes and Events (2) Online Learning Platforms Licenses (Coursera and Dataquest) (3) Using the NIH High Performance Compute Cluster Biowulf (4) Next-Gen Sequencing software purchased by the Office of Science Technology and Resources (OSTR) (5)Available Cloud Resources In this class, attendees will be introduced to the different bioinformatics resources available to them at NCI Center for Cancer Research (CCR). This includes: (1) Bioinformatics Training Classes and Events (2) Online Learning Platforms Licenses (Coursera and Dataquest) (3) Using the NIH High Performance Compute Cluster Biowulf (4) Next-Gen Sequencing software purchased by the Office of Science Technology and Resources (OSTR) (5)Available Cloud Resources RegisterOrganizerBTEPWhenThu, May 11, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this class, attendees will be introduced to the different bioinformatics resources available to them at NCI Center for Cancer Research (CCR). This includes: (1) Bioinformatics Training Classes and Events (2) Online Learning Platforms Licenses (Coursera and Dataquest) (3) Using the NIH High Performance Compute Cluster Biowulf (4) Next-Gen Sequencing software purchased by the Office of Science Technology and Resources (OSTR) (5)Available Cloud Resources | 2023-05-11 13:00:00 | Online Webinar | Any | Bioinformatics | Online | Amy Stonelake (BTEP) | BTEP | 0 | Introduction to Bioinformatics Resources at NCI/CCR | |
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DescriptionGalaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will introduce RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The hands-on exercises will run on the Galaxy platform using Illumina paired-end RNA-seq data. The workshop will ...Read More Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will introduce RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The hands-on exercises will run on the Galaxy platform using Illumina paired-end RNA-seq data. The workshop will be taught by NCI staff and is open to NIH and HHS staff. DetailsOrganizerNIH LibraryWhenFri, May 12, 2023 - 12:00 pm - 3:00 pmWhereOnline Webinar |
Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will introduce RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The hands-on exercises will run on the Galaxy platform using Illumina paired-end RNA-seq data. The workshop will be taught by NCI staff and is open to NIH and HHS staff. | 2023-05-12 12:00:00 | Online Webinar | Any | RNA-Seq | Online | Daoud Meerzaman (CBIIT) | NIH Library | 0 | RNA-Seq Analysis Training | |
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DescriptionAre you familiar with the bioinformatics tools and databases Enrichr, Harmonizome, BioJupies, and ARCHS4, developed by the Ma’ayan Lab? In this webinar, Dr. Avi Ma’ayan describes two new bioinformatics software tools he and his lab are developing. Learn how these data-integration tools can help analyze various data types to better understand complex diseases, such as diabetes and cancer. The following tools will be featured:
Are you familiar with the bioinformatics tools and databases Enrichr, Harmonizome, BioJupies, and ARCHS4, developed by the Ma’ayan Lab? In this webinar, Dr. Avi Ma’ayan describes two new bioinformatics software tools he and his lab are developing. Learn how these data-integration tools can help analyze various data types to better understand complex diseases, such as diabetes and cancer. The following tools will be featured:
Presenter: Dr. Ma’ayan is a Mount Sinai Endowed Professor in bioinformatics; professor in the department of pharmacological sciences; director of the Mount Sinai Center for Bioinformatics; and a faculty member in the department of artificial intelligence and human health. He holds these positions at the Icahn School of Medicine at Mount Sinai in New York City.
DetailsOrganizerCBIITWhenFri, May 12, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
Are you familiar with the bioinformatics tools and databases Enrichr, Harmonizome, BioJupies, and ARCHS4, developed by the Ma’ayan Lab? In this webinar, Dr. Avi Ma’ayan describes two new bioinformatics software tools he and his lab are developing. Learn how these data-integration tools can help analyze various data types to better understand complex diseases, such as diabetes and cancer. The following tools will be featured: Diabetes Data and Hypothesis Hub (D2H2), which combines resources and data sets related to diabetes into one integrative platform; and Playbook Partnership Workflow Builder (PPWB), which helps novice users build customizable bioinformatics workflows for generating hypotheses and customizing data analysis and visualization. Presenter: Dr. Ma’ayan is a Mount Sinai Endowed Professor in bioinformatics; professor in the department of pharmacological sciences; director of the Mount Sinai Center for Bioinformatics; and a faculty member in the department of artificial intelligence and human health. He holds these positions at the Icahn School of Medicine at Mount Sinai in New York City. | 2023-05-12 12:00:00 | Online Webinar | Any | Bioinformatics Software | Online | CBIIT | 0 | The Diabetes Data and Hypothesis Hub (D2H2) and the Playbook Partnership Workflow Builder (PPWB): Bioinformatics Tools for Hypothesis Generation via Data Integration | ||
1081 |
DescriptionParticipants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) ...Read More Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and Long Short-Term Memories (LSTMs) for biomedical signal data, creating machine learning models for biomedical signal data, applying advanced signal pre-processing techniques for automated feature extraction, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenMon, May 15, 2023 - 12:00 pm - 1:30 pmWhereOnline |
Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and Long Short-Term Memories (LSTMs) for biomedical signal data, creating machine learning models for biomedical signal data, applying advanced signal pre-processing techniques for automated feature extraction, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. | 2023-05-15 12:00:00 | Any | Data Science | Online | Mathworks | NIH Library | 0 | Data Science and Artificial Intelligence: Signals and Time Series Datasets Using MATLAB | ||
1133 |
Part Of: Course: Introduction to Unix on Biowulf CourseDescriptionWelcome to Introduction to Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 ...Read More Welcome to Introduction to Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. Everyone will use a Biowulf Student Account for this course, you do not need to have your own Biowulf account. All lessons will be recorded and made available on the BTEP website. Please sign up for the course only if you attend all 4 class sessions as the class size will be limited. This course will be repeated in the near future. In this course, participants will
Meeting information: Meeting link: Meeting number: Join by phone Global call-in numbers: DetailsOrganizerBTEPWhenTue, May 16, 2023 - 1:00 pm - 3:00 pmWhereOnline |
Welcome to Introduction to Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. Everyone will use a Biowulf Student Account for this course, you do not need to have your own Biowulf account. All lessons will be recorded and made available on the BTEP website. Please sign up for the course only if you attend all 4 class sessions as the class size will be limited. This course will be repeated in the near future. In this course, participants will Learn to log onto Biowulf (lesson 1, May 16) Learn to navigate the folder and file (directory) structure on Biowulf (lesson 2, May 23) Learn to work with very large Next Generation Sequencing (NGS) files on a Unix system (lesson 3, May 30) Understand how to run interactive, swarm and batch jobs as well as work with bioinformatics modules on Biowulf (lesson 4, June 6) Meeting information: Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m6c624a110f8fbdb607345593cf9c624f Meeting number:2318 574 8744Password:bmV565kRGp*Host key:759718Join by video systemDial 23185748744@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2318 574 8744 Global call-in numbers:https://cbiit.webex.com/webappng/sites/cbiit/meeting/info/81852c4726654806992d399ac523771d# | 2023-05-16 13:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Introduction to Unix on Biowulf Lesson 1 |
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Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescriptionFunctional enrichment analysis is used to understand the biological context of gene lists or differential expression results. There are a multitude of tools available for this purpose. clusterProfiler is a popular R / Bioconductor package supporting over-representation analysis (ORA) and gene set enrichment analysis (GSEA) using up-to-date biological knowledge of genes and biological processes (GO and KEGG) and support for thousands of organisms. ...Read More Functional enrichment analysis is used to understand the biological context of gene lists or differential expression results. There are a multitude of tools available for this purpose. clusterProfiler is a popular R / Bioconductor package supporting over-representation analysis (ORA) and gene set enrichment analysis (GSEA) using up-to-date biological knowledge of genes and biological processes (GO and KEGG) and support for thousands of organisms. The latest version of clusterProfiler (v. 4.6.2) also provides a tidy interface for visualizing resulting output. This May 2023 session of the BTEP Coding Club will provide an overview and demo of many of the key features of the clusterProfiler R package. RegisterOrganizerBTEPWhenWed, May 17, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Functional enrichment analysis is used to understand the biological context of gene lists or differential expression results. There are a multitude of tools available for this purpose. clusterProfiler is a popular R / Bioconductor package supporting over-representation analysis (ORA) and gene set enrichment analysis (GSEA) using up-to-date biological knowledge of genes and biological processes (GO and KEGG) and support for thousands of organisms. The latest version of clusterProfiler (v. 4.6.2) also provides a tidy interface for visualizing resulting output. This May 2023 session of the BTEP Coding Club will provide an overview and demo of many of the key features of the clusterProfiler R package. | 2023-05-17 11:00:00 | Online Webinar | Any | R programming | Online | Alex Emmons (BTEP) | BTEP | 1 | Functional Enrichment Analysis with clusterProfiler | |
1139 |
DescriptionAll Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues ...Read More All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
For inquires email staff@hpc.nih.gov DetailsWhenWed, May 17, 2023 - 1:00 pm - 3:00 pmWhereOnline |
All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) be prepared to wait your turn if staff are already helping other users For inquires email staff@hpc.nih.gov | 2023-05-17 13:00:00 | Online | Any | Online | 0 | Next edition of the NIH HPC monthly Zoom-In Consults! | ||||
1138 |
DescriptionJoin the next ScHARe Think-a-Thon on May 17. This 2-hour interactive webinar will continue to introduce researchers to the numerous social determinants of health and population science datasets available through ScHARe. NIH staff will provide hands-on training on using Terra workspaces to access and analyze these datasets. (To participate in this Think-a-Thon, you must first register for ScHARe. NIMHD staff will be available online from 2-2:30 p.m. ET to help new users register and ...Read More Join the next ScHARe Think-a-Thon on May 17. This 2-hour interactive webinar will continue to introduce researchers to the numerous social determinants of health and population science datasets available through ScHARe. NIH staff will provide hands-on training on using Terra workspaces to access and analyze these datasets. (To participate in this Think-a-Thon, you must first register for ScHARe. NIMHD staff will be available online from 2-2:30 p.m. ET to help new users register and set up their Terra workspace.) ScHARe Think-a-Thons are open to participants from all career levels, disciplines, and levels of background knowledge. Register to attend this event: bit.ly/think-a-thon-4n.
DetailsOrganizerNIMHDWhenWed, May 17, 2023 - 2:30 pm - 4:30 pmWhereOnline Webinar |
Join the next ScHARe Think-a-Thon on May 17. This 2-hour interactive webinar will continue to introduce researchers to the numerous social determinants of health and population science datasets available through ScHARe. NIH staff will provide hands-on training on using Terra workspaces to access and analyze these datasets. (To participate in this Think-a-Thon, you must first register for ScHARe. NIMHD staff will be available online from 2-2:30 p.m. ET to help new users register and set up their Terra workspace.) ScHARe Think-a-Thons are open to participants from all career levels, disciplines, and levels of background knowledge. Register to attend this event: bit.ly/think-a-thon-4n. | 2023-05-17 14:30:00 | Online Webinar | Any | Data Science | Online | Deb Durand | NIMHD | 0 | Schare Think a Thon: an Interactive Webinar on Terra Datasets | |
1131 |
DescriptionPatient-derived cancer models (PDCM) have become an essential tool in both cancer research and preclinical studies. Each model type offers unique advantages and is better suited for specific research areas: cell lines are low cost and allow high throughput assays, organoids model the impact of intratumor heterogeneity, tumor evolution, and drug response, and patient-derived xenografts (PDXs) retain the tumor architecture to better predict patient response to treatment. Seamless access ...Read More Patient-derived cancer models (PDCM) have become an essential tool in both cancer research and preclinical studies. Each model type offers unique advantages and is better suited for specific research areas: cell lines are low cost and allow high throughput assays, organoids model the impact of intratumor heterogeneity, tumor evolution, and drug response, and patient-derived xenografts (PDXs) retain the tumor architecture to better predict patient response to treatment. Seamless access to PDCMs is, however, hindered by the lack of shared data standards. As such, PDCM stakeholders - i.e., researchers, clinicians, bioinformaticians and analytical tool developers - are faced with the challenge to navigate a complex and siloed landscape across multiple commercial and academic resources.
CancerModels.Org is a new cancer research platform that aggregates clinical, genomic, and functional data from PDXs, organoids and cell lines. The platform addresses the needs of the stakeholders by standardizing, harmonizing and integrating the complex and diverse data associated with patient-derived cancer models. Its foundation is underpinned by our efforts to develop and promote the use of descriptive standards (e.g., PDX-MI, PMID: 29092942) to facilitate data interoperability and global sharing of models. Further value is provided by enriching the models and data with concepts from well-established terminologies (e.g, NCI Thesaurus) and links to external resources, such as, publication platforms, raw data archives and cancer specific annotation tools enabling exploration and prioritization of cancer model variation data. CancerModels.Org is freely available under an Apache 2.0 license. Learning Outcomes
By the end of the webinar you will be able to:
Target Audience
This webinar targets basic and translational scientists aiming to learn more about the utility or to make direct use of patient-derived cancer models and/or molecular data, associated with patient-derived cancer models.
DetailsOrganizerCBIITWhenFri, May 19, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Patient-derived cancer models (PDCM) have become an essential tool in both cancer research and preclinical studies. Each model type offers unique advantages and is better suited for specific research areas: cell lines are low cost and allow high throughput assays, organoids model the impact of intratumor heterogeneity, tumor evolution, and drug response, and patient-derived xenografts (PDXs) retain the tumor architecture to better predict patient response to treatment. Seamless access to PDCMs is, however, hindered by the lack of shared data standards. As such, PDCM stakeholders - i.e., researchers, clinicians, bioinformaticians and analytical tool developers - are faced with the challenge to navigate a complex and siloed landscape across multiple commercial and academic resources. CancerModels.Org is a new cancer research platform that aggregates clinical, genomic, and functional data from PDXs, organoids and cell lines. The platform addresses the needs of the stakeholders by standardizing, harmonizing and integrating the complex and diverse data associated with patient-derived cancer models. Its foundation is underpinned by our efforts to develop and promote the use of descriptive standards (e.g., PDX-MI, PMID: 29092942) to facilitate data interoperability and global sharing of models. Further value is provided by enriching the models and data with concepts from well-established terminologies (e.g, NCI Thesaurus) and links to external resources, such as, publication platforms, raw data archives and cancer specific annotation tools enabling exploration and prioritization of cancer model variation data. CancerModels.Org is freely available under an Apache 2.0 license. Learning Outcomes By the end of the webinar you will be able to: Search for and access patient-derived cancer models based on specific criteria (e.g. gene variant) Explore molecular data for patient-derived models of specific cancer types Identify potential collaborators generating patient-derived cancer models Understand the quality representation for PDCMs within the platform Target Audience This webinar targets basic and translational scientists aiming to learn more about the utility or to make direct use of patient-derived cancer models and/or molecular data, associated with patient-derived cancer models. | 2023-05-19 11:00:00 | Online Webinar | Any | Cancer | Online | CBIIT | 0 | A Guide to Identifying Suitable Patient-derived Cancer Models in CancerModels.Org | ||
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Part Of: Course: Introduction to Unix on Biowulf CourseDescriptionWelcome to Learning Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. ...Read More Welcome to Learning Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. Everyone will use a Biowulf Student Account for this course, you do not need to have your own Biowulf account. All lessons will be recorded and made available on the BTEP website. In this course, participants will
Meeting information: Meeting link: Meeting number: Join by phone Global call-in numbers: DetailsOrganizerBTEPWhenTue, May 23, 2023 - 1:00 pm - 3:00 pmWhereOnline |
Welcome to Learning Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. Everyone will use a Biowulf Student Account for this course, you do not need to have your own Biowulf account. All lessons will be recorded and made available on the BTEP website. In this course, participants will Learn to log onto Biowulf (lesson 1, May 16) Learn to navigate the folder and file (directory) structure on Biowulf (lesson 2, May 23) Learn to work with very large Next Generation Sequencing (NGS) files on a Unix system (lesson 3, May 30) Learn how to run interactive, swarm and batch jobs as well as work with bioinformatics modules on Biowulf (lesson 4, June 6) Meeting information: Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m6c624a110f8fbdb607345593cf9c624f Meeting number:2318 574 8744Password:bmV565kRGp*Join by video systemDial 23185748744@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2318 574 8744 Global call-in numbers:https://cbiit.webex.com/webappng/sites/cbiit/meeting/info/81852c4726654806992d399ac523771d# | 2023-05-23 13:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Introduction to Unix on Biowulf Lesson 2 |
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DescriptionNIH Text Mining and Natural Language Processing SIG is pleased to welcome you to a special event dedicated to Large Language Models. Abstract: The release of ChatGPT and the subsequent launch of GPT-4 by OpenAI has created a storm, capturing the attention of both the general public and domain professionals. In this talk, we will provide a comprehensive review of Large Language Models (LLMs), and how ...Read More NIH Text Mining and Natural Language Processing SIG is pleased to welcome you to a special event dedicated to Large Language Models. Abstract: The release of ChatGPT and the subsequent launch of GPT-4 by OpenAI has created a storm, capturing the attention of both the general public and domain professionals. In this talk, we will provide a comprehensive review of Large Language Models (LLMs), and how they can be used in Biomedical and Clinical applications, as well as their potential in addressing current challenges in the field, in driving innovation, and in improving the outcomes. About the Speakers: Dr. Shubo Tian is a research scientist in Dr. Zhiyong Lu’s group. He has extensive experience in using pre-trained language models for various biomedical and clinical applications, including information retrieval, information extraction such as named entity recognition and relation extraction, entity linking, and health outcome predictions. Dr. Shubo Tian holds a PhD degree in statistics and has a wide range of experience in the industry. Dr. Qiao Jin is researcher scientist in the BioNLP group led by Dr. Zhiyong Lu at NCBI/NLM/NIH. He received his M.D. degree from Tsinghua University in 2022. Dr. Jin’s research interests include deep learning, natural language processing, information retrieval, and their applications in biomedicine. He published ~20 peer-reviewed articles at EMNLP, NAACL, SIGIR, including BioELMo (one of the first pre-trained language models in biomedicine) and PubMedQA (a widely-used biomedical question answering benchmark for evaluating LLMs). He has won the first BioBank Disease AI Challenge, and the TREC 2020 Precision Medicine track. His EBM-Net work received the Best NLP Paper Award from the International Medical Informatics Association in 2021. His primary focus recently has been to improve biomedical information access with large language models. Meeting ID: 160 092 5176 Passcode: 676857 DetailsOrganizerNIH Text Mining and Natural Language ProcessingWhenTue, May 23, 2023 - 2:00 pm - 3:00 pmWhereOnline Webinar |
NIH Text Mining and Natural Language Processing SIG is pleased to welcome you to a special event dedicated to Large Language Models. Abstract: The release of ChatGPT and the subsequent launch of GPT-4 by OpenAI has created a storm, capturing the attention of both the general public and domain professionals. In this talk, we will provide a comprehensive review of Large Language Models (LLMs), and how they can be used in Biomedical and Clinical applications, as well as their potential in addressing current challenges in the field, in driving innovation, and in improving the outcomes. About the Speakers: Dr. Shubo Tian is a research scientist in Dr. Zhiyong Lu’s group. He has extensive experience in using pre-trained language models for various biomedical and clinical applications, including information retrieval, information extraction such as named entity recognition and relation extraction, entity linking, and health outcome predictions. Dr. Shubo Tian holds a PhD degree in statistics and has a wide range of experience in the industry. Dr. Qiao Jin is researcher scientist in the BioNLP group led by Dr. Zhiyong Lu at NCBI/NLM/NIH. He received his M.D. degree from Tsinghua University in 2022. Dr. Jin’s research interests include deep learning, natural language processing, information retrieval, and their applications in biomedicine. He published ~20 peer-reviewed articles at EMNLP, NAACL, SIGIR, including BioELMo (one of the first pre-trained language models in biomedicine) and PubMedQA (a widely-used biomedical question answering benchmark for evaluating LLMs). He has won the first BioBank Disease AI Challenge, and the TREC 2020 Precision Medicine track. His EBM-Net work received the Best NLP Paper Award from the International Medical Informatics Association in 2021. His primary focus recently has been to improve biomedical information access with large language models. Meeting ID: 160 092 5176 Passcode: 676857 | 2023-05-23 14:00:00 | Online Webinar | Any | Artificial Intelligence / Machine Learning | Online | NIH Text Mining and Natural Language Processing | 0 | Overview of ChatGPT and other Large Language Models and their applications in Biomedicine | ||
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DescriptionIn this webinar, University of Wisconsin-Madison’s Dr. Tiwari shares how she and her laboratory have created machine learning (ML) techniques to better understand the basic biology of tumors through non-invasive imaging, histopathology, and omics data.
In this webinar, University of Wisconsin-Madison’s Dr. Tiwari shares how she and her laboratory have created machine learning (ML) techniques to better understand the basic biology of tumors through non-invasive imaging, histopathology, and omics data.
Presenter: Dr. Tiwari is a visiting associate professor in the radiology and biomedical engineering departments at the University of Wisconsin-Madison. She is also an assistant professor of biomedical engineering and the director of the Brain Image Computing Laboratory at Case Western Reserve University.
DetailsOrganizerNCIWhenTue, May 23, 2023 - 2:00 pm - 3:00 pmWhereOnline Webinar |
In this webinar, University of Wisconsin-Madison’s Dr. Tiwari shares how she and her laboratory have created machine learning (ML) techniques to better understand the basic biology of tumors through non-invasive imaging, histopathology, and omics data. Discover how she and her team use this research to predict disease outcome, recurrence, progression, and therapy response (with a particular emphasis on brain tumors). Learn about ongoing efforts to design new image-based features for evaluating post-treatment outcomes and forecasting chemo-radiation treatment responses. Hear about the clinical implications of the ML techniques (in terms of translation). Presenter: Dr. Tiwari is a visiting associate professor in the radiology and biomedical engineering departments at the University of Wisconsin-Madison. She is also an assistant professor of biomedical engineering and the director of the Brain Image Computing Laboratory at Case Western Reserve University. | 2023-05-23 14:00:00 | Online Webinar | Any | Artificial Intelligence / Machine Learning | Online | Pallavi Tiwari Ph.D. | NCI | 0 | Artificial Intelligence and Computational Imaging: Opportunities for Precision Medicine | |
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DescriptionDr. Katherine Janeway is a pediatric hematologist-oncologist and investigator at the Dana-Farber Cancer Institute with a research focus of pediatric sarcomas. With her presentation "Count Me In: Partnering with Patients to Define the Landscape of Rare, Aggressive Sarcomas," Dr. Janeway will address the Cancer Moonshot Research initiative to Establish ...Read More Dr. Katherine Janeway is a pediatric hematologist-oncologist and investigator at the Dana-Farber Cancer Institute with a research focus of pediatric sarcomas. With her presentation "Count Me In: Partnering with Patients to Define the Landscape of Rare, Aggressive Sarcomas," Dr. Janeway will address the Cancer Moonshot Research initiative to Establish a Network for Direct Patient Engagement. DetailsWhenThu, May 25, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
Dr. Katherine Janeway is a pediatric hematologist-oncologist and investigator at the Dana-Farber Cancer Institute with a research focus of pediatric sarcomas. With her presentation "Count Me In: Partnering with Patients to Define the Landscape of Rare, Aggressive Sarcomas," Dr. Janeway will address the Cancer Moonshot Research initiative to Establish a Network for Direct Patient Engagement. | 2023-05-25 12:00:00 | Online Webinar | Any | Cancer | Online | Katherine Janeway MD | 0 | Count Me In: Partnering with Patients to Define the Landscape of Rare, Aggressive Sarcomas | ||
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Single Cell Seminar SeriesDescriptionSingle-cell technologies, such as single-cell RNA sequencing (scRNA-seq), have increased the resolution achieved in the study of cellular phenotypes, allowing measurements of thousands of different genes in thousands of individual cells. This has created an opportunity to begin understanding the dynamics of the prime biological processes undergone by cells, while requiring unique computational tools. In our lab, we develop novel and innovative computational methods for single-cell data analysis. - Theis Lab Single-cell technologies, such as single-cell RNA sequencing (scRNA-seq), have increased the resolution achieved in the study of cellular phenotypes, allowing measurements of thousands of different genes in thousands of individual cells. This has created an opportunity to begin understanding the dynamics of the prime biological processes undergone by cells, while requiring unique computational tools. In our lab, we develop novel and innovative computational methods for single-cell data analysis. - Theis Lab RegisterOrganizerBTEPWhenThu, May 25, 2023 - 3:30 pm - 4:30 pmWhereOnline Webinar |
Single-cell technologies, such as single-cell RNA sequencing (scRNA-seq), have increased the resolution achieved in the study of cellular phenotypes, allowing measurements of thousands of different genes in thousands of individual cells. This has created an opportunity to begin understanding the dynamics of the prime biological processes undergone by cells, while requiring unique computational tools. In our lab, we develop novel and innovative computational methods for single-cell data analysis. - Theis Lab | 2023-05-25 15:30:00 | Online Webinar | Any | Online | Fabian Theis (Helmholtz Munich) | BTEP | 1 | Learning and Transferring Cellular State in Single Cell Atlases | ||
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Part Of: Course: Introduction to Unix on Biowulf CourseDescriptionWelcome to Learning Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. ...Read More Welcome to Learning Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. Everyone will use a Biowulf Student Account for this course, you do not need to have your own Biowulf account. All lessons will be recorded and made available on the BTEP website. In this course, participants will
Meeting information: Meeting link: Global call-in numbers: DetailsOrganizerBTEPWhenTue, May 30, 2023 - 1:00 pm - 3:00 pmWhereOnline |
Welcome to Learning Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. Everyone will use a Biowulf Student Account for this course, you do not need to have your own Biowulf account. All lessons will be recorded and made available on the BTEP website. In this course, participants will Learn to log onto Biowulf (lesson 1, May 16) Learn to navigate the folder and file (directory) structure on Biowulf (lesson 2, May 23) Learn to work with very large Next Generation Sequencing (NGS) files on a Unix system (lesson 3, May 30) Learn how to run interactive, swarm and batch jobs as well as work with bioinformatics modules on Biowulf (lesson 4, June 6) Meeting information: Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m6c624a110f8fbdb607345593cf9c624fMeeting number:2318 574 8744Password:bmV565kRGp*Join by video systemDial 23185748744@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number.Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2318 574 8744 Global call-in numbers:https://cbiit.webex.com/webappng/sites/cbiit/meeting/info/81852c4726654806992d399ac523771d# | 2023-05-30 13:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Introduction to Unix on Biowulf Lesson 3 |
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DescriptionJoin this introductory session to learn how to sign up and access complimentary SAS training resources available to NIH and HHS employees. Get pointers on how to navigate complimentary tutorials, programming courses, and eLearning. In this session, the trainer will demonstrate how to enroll in recommended SAS 9.4 trainings and courses. Join this introductory session to learn how to sign up and access complimentary SAS training resources available to NIH and HHS employees. Get pointers on how to navigate complimentary tutorials, programming courses, and eLearning. In this session, the trainer will demonstrate how to enroll in recommended SAS 9.4 trainings and courses. DetailsOrganizerNIH LibraryWhenWed, May 31, 2023 - 11:00 am - 12:00 pmWhereOnline |
Join this introductory session to learn how to sign up and access complimentary SAS training resources available to NIH and HHS employees. Get pointers on how to navigate complimentary tutorials, programming courses, and eLearning. In this session, the trainer will demonstrate how to enroll in recommended SAS 9.4 trainings and courses. | 2023-05-31 11:00:00 | Any | Statistics | Online | SAS | NIH Library | 0 | Tips for Getting Started with SAS Training | ||
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DescriptionPlease join us on May 31 when Harvard University’s John Quackenbush, Ph.D., will present “Read More Please join us on May 31 when Harvard University’s John Quackenbush, Ph.D., will present “Why Networks Matter: Embracing Biological Complexity.” Dr. Quackenbush will share multiple examples illustrating the importance of network models. He draws on his work in cancer, chronic obstructive pulmonary disease, and the analysis of data from 38 tissues provided by the Genotype-Tissue Expression project. Learn how researchers can use these models to explore the development and progression of the disease and new ways to identify therapeutics. Dr. Quackenbush is a computational biology and bioinformatics professor and Chair of the Department of Biostatistics at the Harvard T.H. Chan School of Public Health. He is also a professor at the Dana-Farber Cancer Institute. DetailsOrganizerCBIITWhenWed, May 31, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Please join us on May 31 when Harvard University’s John Quackenbush, Ph.D., will present “Why Networks Matter: Embracing Biological Complexity.” Dr. Quackenbush will share multiple examples illustrating the importance of network models. He draws on his work in cancer, chronic obstructive pulmonary disease, and the analysis of data from 38 tissues provided by the Genotype-Tissue Expression project. Learn how researchers can use these models to explore the development and progression of the disease and new ways to identify therapeutics. Dr. Quackenbush is a computational biology and bioinformatics professor and Chair of the Department of Biostatistics at the Harvard T.H. Chan School of Public Health. He is also a professor at the Dana-Farber Cancer Institute. | 2023-05-31 11:00:00 | Online Webinar | Any | Data Science,Genomics | Online | John Quackenbush Ph.D. | CBIIT | 0 | Why Networks Matter: Embracing Biological Complexity | |
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Single Cell Seminar SeriesDescriptionCellTypist was first developed as a platform for exploring tissue adaptation of cell types using scRNA-seq semi-automatic annotations. Now it's an open source tool for automated cell type annotations as well as a working group in charge of curating models and ontologies. CellTypist was first developed as a platform for exploring tissue adaptation of cell types using scRNA-seq semi-automatic annotations. Now it's an open source tool for automated cell type annotations as well as a working group in charge of curating models and ontologies. RegisterOrganizerBTEPWhenThu, Jun 01, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
CellTypist was first developed as a platform for exploring tissue adaptation of cell types using scRNA-seq semi-automatic annotations. Now it's an open source tool for automated cell type annotations as well as a working group in charge of curating models and ontologies. | 2023-06-01 13:00:00 | Online Webinar | Any | Online | Chuan Xu Ph.D. (Teichmann Lab) | BTEP | 1 | CellTypist v2.0: Automatic Cell Type Harmonization and Integration in Single Cell Data | ||
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DescriptionThis is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services ...Read More This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. DetailsOrganizerNIH LibraryWhenTue, Jun 06, 2023 - 11:00 am - 12:00 pmWhereOnline |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. | 2023-06-06 11:00:00 | Online | Any | Programming | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Introduction to R and RStudio | |
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Part Of: Course: Introduction to Unix on Biowulf CourseDescriptionWelcome to Learning Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. ...Read More Welcome to Learning Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. Everyone will use a Biowulf Student Account for this course, you do not need to have your own Biowulf account. All lessons will be recorded and made available on the BTEP website. In this course, participants will
Meeting information: Meeting link: Meeting number: Join by phone Global call-in numbers: DetailsOrganizerBTEPWhenTue, Jun 06, 2023 - 1:00 pm - 3:00 pmWhereOnline |
Welcome to Learning Unix on Biowulf. This course consists of four one-hour lessons that will run weekly on Tuesdays from 1 -2 PM starting May 16. Subsequent lessons will be held on May 23, May 30, and June 6. Registering for the first lesson will enroll you for all lessons, you do not need to register for each lesson separately. An optional help session will follow each lesson from 2 – 3 PM. Everyone will use a Biowulf Student Account for this course, you do not need to have your own Biowulf account. All lessons will be recorded and made available on the BTEP website. In this course, participants will Learn to log onto Biowulf (lesson 1, May 16) Learn to navigate the folder and file (directory) structure on Biowulf (lesson 2, May 23) Learn to work with very large Next Generation Sequencing (NGS) files on a Unix system (lesson 3, May 30) Learn how to run interactive, swarm and batch jobs as well as work with bioinformatics modules on Biowulf (lesson 4, June 6) Meeting information: Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m6c624a110f8fbdb607345593cf9c624f Meeting number:2318 574 8744Password:bmV565kRGp*Join by video systemDial 23185748744@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2318 574 8744 Global call-in numbers:https://cbiit.webex.com/webappng/sites/cbiit/meeting/info/81852c4726654806992d399ac523771d# | 2023-06-06 13:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Introduction to Unix on Biowulf Lesson 4 |
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DescriptionDr. Maximilian Haeussler is the co-PI for the UCSC Genome Browser, an interactive website offering access to genome sequence data from a variety of vertebrate and invertebrate species and major model organisms, integrated with a large collection of aligned annotations. Dr. Melissa Cline is program manager of the UCSC BRCA ...Read More Dr. Maximilian Haeussler is the co-PI for the UCSC Genome Browser, an interactive website offering access to genome sequence data from a variety of vertebrate and invertebrate species and major model organisms, integrated with a large collection of aligned annotations. Dr. Melissa Cline is program manager of the UCSC BRCA Exchange, a project which aims to advance the understanding of the genetic basis of breast, ovarian, pancreatic, and other cancers by pooling data on BRCA1/2 genetic variants and corresponding clinical data from around the world. In this webinar, Drs. Haeussler and Cline will discuss these programs and data resources for clinical variant interpretation. DetailsWhenTue, Jun 06, 2023 - 3:00 pm - 4:00 pmWhereOnline |
Dr. Maximilian Haeussler is the co-PI for the UCSC Genome Browser, an interactive website offering access to genome sequence data from a variety of vertebrate and invertebrate species and major model organisms, integrated with a large collection of aligned annotations. Dr. Melissa Cline is program manager of the UCSC BRCA Exchange, a project which aims to advance the understanding of the genetic basis of breast, ovarian, pancreatic, and other cancers by pooling data on BRCA1/2 genetic variants and corresponding clinical data from around the world. In this webinar, Drs. Haeussler and Cline will discuss these programs and data resources for clinical variant interpretation. | 2023-06-06 15:00:00 | Online | Any | Cancer | Online | Maximilian Haeussler Ph.D.,Melissa Cline Ph.D. | 0 | UCSC Genome Browser and BRCA Exchange: Data Resources for Clinical Variant Interpretation | ||
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Description"New Violin plot, more statistical tests, and even more info for 3D PCA in Qlucore 3.9" In addition, we will discuss using Plot lables and Colors more effectively in your Data Visualizations. RegisterOrganizerBTEPWhenWed, Jun 07, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
"New Violin plot, more statistical tests, and even more info for 3D PCA in Qlucore 3.9"We are excited to share the new Qlucore Omics Explorer version 3.9 with you! It brings to you a Violin plot, more options for Box plot customizations, more statistical tests, and even more ways to add info to your 3D PCA.We will look at Violin and Violin vs Box plot, review new tests, and play with even more rich 3D PCA. In addition, we will discuss using Plot lables and Colors more effectively in your Data Visualizations. Alternate Meeting Options Meeting number: 2305 530 4942 Password: JEeu5TjT$33 Join by video system Dial 23055304942@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2305 530 4942 | 2023-06-07 11:00:00 | Online Webinar | Any | Bioinformatics Software,Statistics | Online | Yana Stackpole (Qlucore) | BTEP | 0 | Qlucore v 3.9: New features - Violin Plots, Statistical Tests, and Using Plot Labels and Colors Effectively | |
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DescriptionIn this webinar, participants will learn how to tell a story with their data using notebook-style live scripts and how to integrate MATLAB with Python code. Attendees will also learn how to share code and take advantage of MATLAB community tools such as File Exchange and GitHub. Finally, the participants will find out how they can host MATLAB offerings at their High-Performance Computing Centers or a Science Gateway. This session is for beginners; no ...Read More In this webinar, participants will learn how to tell a story with their data using notebook-style live scripts and how to integrate MATLAB with Python code. Attendees will also learn how to share code and take advantage of MATLAB community tools such as File Exchange and GitHub. Finally, the participants will find out how they can host MATLAB offerings at their High-Performance Computing Centers or a Science Gateway. This session is for beginners; no software installation required. DetailsOrganizerNIH LibraryWhenWed, Jun 07, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
In this webinar, participants will learn how to tell a story with their data using notebook-style live scripts and how to integrate MATLAB with Python code. Attendees will also learn how to share code and take advantage of MATLAB community tools such as File Exchange and GitHub. Finally, the participants will find out how they can host MATLAB offerings at their High-Performance Computing Centers or a Science Gateway. This session is for beginners; no software installation required. | 2023-06-07 12:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Mathworks | NIH Library | 0 | MATLAB for Open Science | |
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DescriptionJoin us for the upcoming CCR Fellows & Young Investigators-Seminar Series (CCR FYI-SS 2022/2023) which is being held as a ‘virtual’ seminar that is open to everyone! Julianna King, Laboratory Animal Sciences Program (LASP) “Genome-wide CRISPR Screening to Identify Factors Regulating ADAR-mediated RNA Editing” If you ...Read More Join us for the upcoming CCR Fellows & Young Investigators-Seminar Series (CCR FYI-SS 2022/2023) which is being held as a ‘virtual’ seminar that is open to everyone! Julianna King, Laboratory Animal Sciences Program (LASP) “Genome-wide CRISPR Screening to Identify Factors Regulating ADAR-mediated RNA Editing” If you wish to present your work via this series, please let me know as dates are still available – see below. DetailsOrganizerNCI Center for Cancer ResearchWhenWed, Jun 07, 2023 - 1:30 pm - 2:30 pmWhereOnline Webinar |
Join us for the upcoming CCR Fellows & Young Investigators-Seminar Series (CCR FYI-SS 2022/2023) which is being held as a ‘virtual’ seminar that is open to everyone! Julianna King, Laboratory Animal Sciences Program (LASP) “Genome-wide CRISPR Screening to Identify Factors Regulating ADAR-mediated RNA Editing” If you wish to present your work via this series, please let me know as dates are still available – see below. | 2023-06-07 13:30:00 | Online Webinar | Any | CRISPR | Online | Julianna King - Laboratory Animal Sciences Program (LASP) | NCI Center for Cancer Research | 0 | Genome-wide CRISPR Screening to Identify Factors Regulating ADAR-mediated RNA Editing | |
1102 |
DescriptionThis class focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install Read More This class focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. DetailsOrganizerNIH LibraryWhenThu, Jun 08, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
This class focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. | 2023-06-08 10:00:00 | Online Webinar | Any | Programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Introduction to Project Management in RStudio | |
1103 |
DescriptionThis one-hour session builds on the Introduction to R & RStudio class. The session begins by introducing and identifying different categories of data. Participants will examine data types, create vectors, and assign values to vectors. They will also learn how to import data into RStudio, and examine those data frames for further cleaning, analysis and visualization. Participants will learn the differences between numeric, character, and logical data and how to change data types in ...Read More This one-hour session builds on the Introduction to R & RStudio class. The session begins by introducing and identifying different categories of data. Participants will examine data types, create vectors, and assign values to vectors. They will also learn how to import data into RStudio, and examine those data frames for further cleaning, analysis and visualization. Participants will learn the differences between numeric, character, and logical data and how to change data types in R. They will also be able to create subsets and export project data for future use. DetailsOrganizerNIH LibraryWhenFri, Jun 09, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
This one-hour session builds on the Introduction to R & RStudio class. The session begins by introducing and identifying different categories of data. Participants will examine data types, create vectors, and assign values to vectors. They will also learn how to import data into RStudio, and examine those data frames for further cleaning, analysis and visualization. Participants will learn the differences between numeric, character, and logical data and how to change data types in R. They will also be able to create subsets and export project data for future use. | 2023-06-09 11:00:00 | Online Webinar | Any | Programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Data Types in R and RStudio | |
1154 |
Part Of: NIH Data Sharing and Reuse Seminar Series CourseDescriptionDr. Nara Sobreira will present "PhenoDB, a phenotypic and genotypic data sharing tool" at the monthly Data Sharing and Reuse Seminar on June 9, 2023, at 12 p.m. EST. About the SeminarThis seminar will discuss the use of phenotypic and genotypic data sharing tools to facilitate the discovery of novel disease-causing genes and variants. About the SpeakerDr. Sobreira, an associate professor at the McKusick-Nathans Department of ...Read More Dr. Nara Sobreira will present "PhenoDB, a phenotypic and genotypic data sharing tool" at the monthly Data Sharing and Reuse Seminar on June 9, 2023, at 12 p.m. EST. About the SeminarThis seminar will discuss the use of phenotypic and genotypic data sharing tools to facilitate the discovery of novel disease-causing genes and variants. About the SpeakerDr. Sobreira, an associate professor at the McKusick-Nathans Department of Genetic Medicine at Johns Hopkins University, will present PhenoDB. Her research focuses on the identification of the genetic etiology of rare Mendelian diseases. To facilitate this work, she has development public genetic databases and genetic analytical tools that are highly valuable and widely used to promote data sharing, disease gene identification and facilitate collaborations. She participated in the development of PhenoDB and developed the PhenoDB analysis module that is in use around the world. Dr. Sobreira is one of the creators of GeneMatcher, the most widely used data sharing platform of rare Mendelian diseases. In addition, she has created VariantMatcher, for the sharing of gene variant information. Dr. Sobreira received her medical degree from the Pernambuco University’s School of Medicine in 2003. She completed a clinical genetics residency in Sao Paulo – Brazil (UNIFESP) before joining the Human Genetics graduate program at Johns Hopkins (2007 to 2012). This was followed by a one-year postdoc and a two-year clinical genetics fellowship also at Johns Hopkins School of Medicine. DetailsOrganizerData ScienceWhenFri, Jun 09, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
Dr. Nara Sobreira will present "PhenoDB, a phenotypic and genotypic data sharing tool" at the monthly Data Sharing and Reuse Seminar on June 9, 2023, at 12 p.m. EST. About the Seminar This seminar will discuss the use of phenotypic and genotypic data sharing tools to facilitate the discovery of novel disease-causing genes and variants. About the Speaker Dr. Sobreira, an associate professor at the McKusick-Nathans Department of Genetic Medicine at Johns Hopkins University, will present PhenoDB. Her research focuses on the identification of the genetic etiology of rare Mendelian diseases. To facilitate this work, she has development public genetic databases and genetic analytical tools that are highly valuable and widely used to promote data sharing, disease gene identification and facilitate collaborations. She participated in the development of PhenoDB and developed the PhenoDB analysis module that is in use around the world. Dr. Sobreira is one of the creators of GeneMatcher, the most widely used data sharing platform of rare Mendelian diseases. In addition, she has created VariantMatcher, for the sharing of gene variant information. Dr. Sobreira received her medical degree from the Pernambuco University’s School of Medicine in 2003. She completed a clinical genetics residency in Sao Paulo – Brazil (UNIFESP) before joining the Human Genetics graduate program at Johns Hopkins (2007 to 2012). This was followed by a one-year postdoc and a two-year clinical genetics fellowship also at Johns Hopkins School of Medicine. | 2023-06-09 12:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Nara Sobreira (JHU) | Data Science | 0 | PhenoDB, a phenotypic and genotypic data sharing tool | |
1105 |
DescriptionData Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions select, filter, pipes, mutate, head, is.na, and export. Learning these functions will enable users to ...Read More Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions select, filter, pipes, mutate, head, is.na, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. DetailsOrganizerNIH LibraryWhenMon, Jun 12, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions select, filter, pipes, mutate, head, is.na, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. | 2023-06-12 13:00:00 | Online Webinar | Any | Programming | Online | Candace Norton (NIH Library) | NIH Library | 0 | Data Wrangling in R: Part 1 | |
1106 |
DescriptionThis class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, learners will have a chance to experiment with this integration and understand its advantages for collaboration and version control. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are ...Read More This class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, learners will have a chance to experiment with this integration and understand its advantages for collaboration and version control. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. Participants will need to download the class data before the class. DetailsOrganizerNIH LibraryWhenTue, Jun 13, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
This class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, learners will have a chance to experiment with this integration and understand its advantages for collaboration and version control. This intermediate-level class is designed to be relevant to participants from different disciplines. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. Participants will need to download the class data before the class. | 2023-06-13 10:00:00 | Online Webinar | Any | Programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Working with Git in RStudio | |
1173 |
DescriptionMany cancer-related independent studies that employ bulk and single cell RNA-seq can be found in the Gene Expression Omnibus (GEO). While some studies provide aligned read files, these are processed non-uniformly. This shortcoming makes it difficult to query and integrate this data across studies and with additional external data.
Read More Many cancer-related independent studies that employ bulk and single cell RNA-seq can be found in the Gene Expression Omnibus (GEO). While some studies provide aligned read files, these are processed non-uniformly. This shortcoming makes it difficult to query and integrate this data across studies and with additional external data.
To bridge the gap that currently exists between RNA-seq data generation and RNA-seq data processing and reuse, we developed the resource, All RNA-seq and ChIP-Seq Sample and Signature Search (ARCHS4).
ARCHS4 provides processed RNA-seq data from GEO to support retrospective data analyses and reuse by catering to users with different levels of computational expertise. Besides serving data from over one million samples uniformly aligned for download and API access, tools that utilizes ARCHS4 data provide gene function predictions from co-expression correlations, including ways to modulate the expression of long non-coding RNAs with small molecules, as well as ways to identify personalized novel immunotherapeutic targets for tumors profiled with RNA-seq. Importantly, using the ARCHS4 cost-effective infrastructure, we also provide a free FASTQ alignment service to the community.
In this workshop, we will present different ways to interact with the ARCHS4 resource, and related tools that utilize ARCHS4 data for systematic scientific discovery.
For questions about this training, contact Daoud Meerzaman or Mel Nisonger. DetailsOrganizerCBIITWhenTue, Jun 13, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Many cancer-related independent studies that employ bulk and single cell RNA-seq can be found in the Gene Expression Omnibus (GEO). While some studies provide aligned read files, these are processed non-uniformly. This shortcoming makes it difficult to query and integrate this data across studies and with additional external data. To bridge the gap that currently exists between RNA-seq data generation and RNA-seq data processing and reuse, we developed the resource, All RNA-seq and ChIP-Seq Sample and Signature Search (ARCHS4). ARCHS4 provides processed RNA-seq data from GEO to support retrospective data analyses and reuse by catering to users with different levels of computational expertise. Besides serving data from over one million samples uniformly aligned for download and API access, tools that utilizes ARCHS4 data provide gene function predictions from co-expression correlations, including ways to modulate the expression of long non-coding RNAs with small molecules, as well as ways to identify personalized novel immunotherapeutic targets for tumors profiled with RNA-seq. Importantly, using the ARCHS4 cost-effective infrastructure, we also provide a free FASTQ alignment service to the community. In this workshop, we will present different ways to interact with the ARCHS4 resource, and related tools that utilize ARCHS4 data for systematic scientific discovery. For questions about this training, contact Daoud Meerzaman or Mel Nisonger. | 2023-06-13 11:00:00 | Online Webinar | Any | RNA-Seq | Online | CBIIT | 0 | ARCHS4: Massive Mining of Publicly Available RNA Sequencing Data | ||
1162 |
Part Of: Introduction to Bioinformatics Summer Series CourseDescriptionIn this class, attendees will be introduced to the different bioinformatics resources available to them at NCI. This includes: (1) Bioinformatics Training Classes and Events (2) Online Learning Platforms Licenses (Coursera and Dataquest) (3) Using the NIH High Performance Compute Cluster Biowulf (4) Next-Gen Sequencing software purchased by the Office of Science Technology and Resources (OSTR) (5)Available Cloud Resources In this class, attendees will be introduced to the different bioinformatics resources available to them at NCI. This includes: (1) Bioinformatics Training Classes and Events (2) Online Learning Platforms Licenses (Coursera and Dataquest) (3) Using the NIH High Performance Compute Cluster Biowulf (4) Next-Gen Sequencing software purchased by the Office of Science Technology and Resources (OSTR) (5)Available Cloud Resources RegisterOrganizerBTEPWhenTue, Jun 13, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this class, attendees will be introduced to the different bioinformatics resources available to them at NCI. This includes: (1) Bioinformatics Training Classes and Events (2) Online Learning Platforms Licenses (Coursera and Dataquest) (3) Using the NIH High Performance Compute Cluster Biowulf (4) Next-Gen Sequencing software purchased by the Office of Science Technology and Resources (OSTR) (5)Available Cloud Resources | 2023-06-13 13:00:00 | Online Webinar | Any | Bioinformatics | Online | Amy Stonelake (BTEP) | BTEP | 0 | Introduction to Bioinformatics Resources at NCI | |
1084 |
DescriptionPartek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. In this training session, you will learn to analyze bulk RNA sequencing data using Partek Flow. This class is not hands-on.
Meeting link: https://cbiit.webex.com/cbiit/...Read More Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. In this training session, you will learn to analyze bulk RNA sequencing data using Partek Flow. This class is not hands-on.
Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m6da28111eefd3ab12d0d59477796d6bb Meeting number: 2309 032 9788 Password: pxJpAyn7*49 Host key: 652701 Join by video system: Join by phone: RegisterOrganizerBTEPWhenWed, Jun 14, 2023 - 11:00 am - 12:30 pmWhereOnline Webinar |
Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. In this training session, you will learn to analyze bulk RNA sequencing data using Partek Flow. This class is not hands-on. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m6da28111eefd3ab12d0d59477796d6bb Meeting number: 2309 032 9788 Password: pxJpAyn7*49 Host key: 652701 Join by video system: Dial 23090329788@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone: 1-650-479-3207 Call-in number (US/Canada)br>Access code: 2309 032 9788 Access code: 2309 032 9788 Global call-in numbers | 2023-06-14 11:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software,Bulk RNA-Seq | Bioinformatics,Bioinformatics Software,Bulk RNA-seq | Online | Joe Wu (BTEP),Partek Scientist | BTEP | 0 | Analyzing bulk RNA sequencing data with Partek Flow |
1107 |
DescriptionGenerative modeling is an artificial intelligence (AI) technique that creates unique content (such as text, graphics, audio, and video) by first analyzing training examples. Generative AI includes ChatGPT, which generates text in a dialogue format, and DALL·E 2, which can create images based on natural language description. Generative AI is a rapidly expanding field that offers many ...Read More Generative modeling is an artificial intelligence (AI) technique that creates unique content (such as text, graphics, audio, and video) by first analyzing training examples. Generative AI includes ChatGPT, which generates text in a dialogue format, and DALL·E 2, which can create images based on natural language description. Generative AI is a rapidly expanding field that offers many possible applications for biomedical researchers and support staff. Join this roundtable discussion to learn about Generative AI and discuss possible applications and potential ethical concerns and issues with the use of Generative AI within scientific research and publishing. DetailsOrganizerNIH LibraryWhenWed, Jun 14, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Generative modeling is an artificial intelligence (AI) technique that creates unique content (such as text, graphics, audio, and video) by first analyzing training examples. Generative AI includes ChatGPT, which generates text in a dialogue format, and DALL·E 2, which can create images based on natural language description. Generative AI is a rapidly expanding field that offers many possible applications for biomedical researchers and support staff. Join this roundtable discussion to learn about Generative AI and discuss possible applications and potential ethical concerns and issues with the use of Generative AI within scientific research and publishing. | 2023-06-14 13:00:00 | Online Webinar | Any | Artificial Intelligence / Machine Learning | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Generative Artificial Intelligence: A Roundtable Discussion | |
1175 |
DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room
For inquires send email to staff@hpc.nih.gov - be prepared to wait your turn if staff are already helping other users DetailsOrganizerNIH - HPCWhenWed, Jun 14, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) For inquires send email to staff@hpc.nih.gov - be prepared to wait your turn if staff are already helping other users | 2023-06-14 13:00:00 | Online Webinar | Any | Online | NIH - HPC | 0 | Zoom-In Consult for Biowulf Users | |||
1108 |
DescriptionThis class is designed for those who want to learn the basic of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class participants will learn the basics ...Read More This class is designed for those who want to learn the basic of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class participants will learn the basics of creating markdown documents. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. DetailsOrganizerNIH LibraryWhenThu, Jun 15, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This class is designed for those who want to learn the basic of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class participants will learn the basics of creating markdown documents. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. | 2023-06-15 13:00:00 | Online Webinar | Any | Programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Reproducibility in RStudio: Basic Markdown | |
1148 |
Description
Are you interested in analyzing your own data, but you lack coding experience? No problem. There are several proprietary -omics solutions available to researchers within the Center for Cancer Research (CCR). If you have no idea where to start, this two-hour BTEP event featuring four guest speakers from popular commercial software accessible by individuals affiliated with the CCR, is for you. Guest speakers from Partek Flow, QIAGEN CLC Genomics ...Read More
Are you interested in analyzing your own data, but you lack coding experience? No problem. There are several proprietary -omics solutions available to researchers within the Center for Cancer Research (CCR). If you have no idea where to start, this two-hour BTEP event featuring four guest speakers from popular commercial software accessible by individuals affiliated with the CCR, is for you. Guest speakers from Partek Flow, QIAGEN CLC Genomics Workbench, Qlucore Omics Explorer, and the NIH Integrated Data Analysis Platform will outline the types of analyses / workflows (e.g., Variant analysis, RNA-seq, CITE-seq, ATAC-seq, ChIP-seq, scRNA-seq, etc.) possible with featured software. Each presentation will be approximately 30 minutes and include a 5 minute question and answer session.
Presentation Schedule: 1:00 - 1:30 PM Partek Flow 1:30 - 2:00 PM QIAGEN CLC Genomics Workbench 2:00 - 2:30 PM Qlucore Omics Explorer 2:30 - 3:00 PM NIH Integrated Data Analysis Platform (NIDAP) Webex meeting information: https://cbiit.webex.com/cbiit/j.php?MTID=meadc52474c7d3816f0ae22444b9f05d1 Thursday, June 15, 2023 1:00 PM | 2 hours | (UTC-04:00) Eastern Time (US & Canada) Meeting number: 2310 553 2989 Password: nXDjj9kX@69 Join by video system Dial 23105532989@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 231 055 32989 RegisterOrganizerBTEPWhenThu, Jun 15, 2023 - 1:00 pm - 3:00 pmWhereOnline |
Are you interested in analyzing your own data, but you lack coding experience? No problem. There are several proprietary -omics solutions available to researchers within the Center for Cancer Research (CCR). If you have no idea where to start, this two-hour BTEP event featuring four guest speakers from popular commercial software accessible by individuals affiliated with the CCR, is for you. Guest speakers from Partek Flow, QIAGEN CLC Genomics Workbench, Qlucore Omics Explorer, and the NIH Integrated Data Analysis Platform will outline the types of analyses / workflows (e.g., Variant analysis, RNA-seq, CITE-seq, ATAC-seq, ChIP-seq, scRNA-seq, etc.) possible with featured software. Each presentation will be approximately 30 minutes and include a 5 minute question and answer session. Presentation Schedule: 1:00 - 1:30 PM Partek Flow 1:30 - 2:00 PM QIAGEN CLC Genomics Workbench 2:00 - 2:30 PM Qlucore Omics Explorer 2:30 - 3:00 PM NIH Integrated Data Analysis Platform (NIDAP) Webex meeting information: https://cbiit.webex.com/cbiit/j.php?MTID=meadc52474c7d3816f0ae22444b9f05d1 Thursday, June 15, 2023 1:00 PM | 2 hours | (UTC-04:00) Eastern Time (US & Canada) Meeting number: 2310 553 2989 Password: nXDjj9kX@69 Join by video system Dial 23105532989@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Access code: 231 055 32989 | 2023-06-15 13:00:00 | Online | Any | Bioinformatics Software,Omics | Online | BTEP | 0 | Analyzing your data WITHOUT coding experience: CCR Bioinformatics Licensed Software | ||
1176 |
DescriptionSince its release in September 2005, the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB), have been invaluable resources for interpreting the biological significance of expression changes in large transcriptomic datasets. These tools enable the computation of "enrichment scores" to detect coordinated changes in gene expression programs in response to different perturbations. <...Read More Since its release in September 2005, the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB), have been invaluable resources for interpreting the biological significance of expression changes in large transcriptomic datasets. These tools enable the computation of "enrichment scores" to detect coordinated changes in gene expression programs in response to different perturbations.
In this webinar, we will provide an overview of the GSEA method, discuss best practices for analyzing various types of input data, and explore the wide range of resources available in the Molecular Signatures Database for analyzing both human and model organism data. Additionally, we will offer a sneak peek into several upcoming enhancements to the GSEA-MSigDB ecosystem.
For questions contact Daoud Meerzaman or Mel Nisonger. DetailsOrganizerCBIITWhenThu, Jun 15, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Since its release in September 2005, the Gene Set Enrichment Analysis (GSEA) software and its companion gene set collections, the Molecular Signatures Database (MSigDB), have been invaluable resources for interpreting the biological significance of expression changes in large transcriptomic datasets. These tools enable the computation of "enrichment scores" to detect coordinated changes in gene expression programs in response to different perturbations. In this webinar, we will provide an overview of the GSEA method, discuss best practices for analyzing various types of input data, and explore the wide range of resources available in the Molecular Signatures Database for analyzing both human and model organism data. Additionally, we will offer a sneak peek into several upcoming enhancements to the GSEA-MSigDB ecosystem. For questions contact Daoud Meerzaman or Mel Nisonger. | 2023-06-15 13:00:00 | Online Webinar | Any | Data Science | Online | CBIIT | 0 | An Introduction to Gene Set Enrichment Analysis (GSEA) and the Molecular Signatures Database (MSigDB) | ||
1109 |
DescriptionData Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will build on the introduction provided in Data Wrangling Part 1 to further explore the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions group_by, summarize, count, arrange, ...Read More Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will build on the introduction provided in Data Wrangling Part 1 to further explore the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions group_by, summarize, count, arrange, pivot_wider, pivot_longer, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. DetailsOrganizerNIH LibraryWhenFri, Jun 16, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will build on the introduction provided in Data Wrangling Part 1 to further explore the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions group_by, summarize, count, arrange, pivot_wider, pivot_longer, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. | 2023-06-16 11:00:00 | Online Webinar | Any | Programming | Online | Candace Norton (NIH Library) | NIH Library | 0 | Data Wrangling in R: Part 2 | |
1110 |
DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, p-values and confidence intervals, types of data and their distributional importance, and bias and confounding. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenTue, Jun 20, 2023 - 1:00 pm - 4:00 pmWhereOnline Webinar |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, p-values and confidence intervals, types of data and their distributional importance, and bias and confounding. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-06-20 13:00:00 | Online Webinar | Any | Statistics | Online | Ninet Sinaii Ph.D. MPH (Biostatistics and Clinical Epidemiology Branch NIH Clinical Center) | NIH Library | 0 | Overview of Statistical Concepts | |
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DescriptionThis class is designed for those who want to extend the basics of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class, participants will learn how to render ...Read More This class is designed for those who want to extend the basics of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class, participants will learn how to render documents in multiple format, and format citations and bibliographies using Zotero. Zotero is a free, easy-to-use tool to help collect, organize, annotate, cite, and share research. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. DetailsOrganizerNIH LibraryWhenTue, Jun 20, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This class is designed for those who want to extend the basics of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this intermediate-level class, participants will learn how to render documents in multiple format, and format citations and bibliographies using Zotero. Zotero is a free, easy-to-use tool to help collect, organize, annotate, cite, and share research. Some familiarity or experience in R and RStudio is recommended. Participants are encouraged to install R and RStudio before the class. | 2023-06-20 13:00:00 | Online Webinar | Any | Programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Reproducibility in RStudio: Advanced Markdown | |
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DescriptionDr. Weissleder will talk about a novel method for single extracellular vesicle analysis which allows multiplexing (MASEV). This has generated new insight into EV biology and clinical applications. For any questions, please contact Kelly Crotty (Kelly.crotty@nih.gov). Dr. Weissleder will talk about a novel method for single extracellular vesicle analysis which allows multiplexing (MASEV). This has generated new insight into EV biology and clinical applications. For any questions, please contact Kelly Crotty (Kelly.crotty@nih.gov). DetailsWhenTue, Jun 20, 2023 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Dr. Weissleder will talk about a novel method for single extracellular vesicle analysis which allows multiplexing (MASEV). This has generated new insight into EV biology and clinical applications. For any questions, please contact Kelly Crotty (Kelly.crotty@nih.gov). | 2023-06-20 14:00:00 | Online Webinar | Any | Imaging | Online | Ralph Weissleder MD Ph.D. | 0 | Artificial Intelligence and Computational Imaging: Opportunities for Precision Medicine | ||
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DescriptionPicture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful?Read More Picture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful? The cloud is here for you! The NIH STRIDES Initiative and Google have teamed up to create a custom course for NIH staff and NIH-funded researchers: “Medical Imaging and Machine Learning in Google Cloud”. The course introduces Google Cloud’s Medical Imaging Suite and works with real-life data sets from the National Cancer Institute’s Imaging Data Commons. The course is offered at no cost in June, July, August, and September 2023.
Want more course details? Required Prerequisites Format Duration & Dates Experience working with medical imaging data Basic understanding of machine learning Basic familiarity with Google Cloud or watch this 6-minute video before attending the course Virtual with live instruction from Google experts One full day – 9:00 AM to 5:00 PM EST with the following date options:
Ready to sign up? For NIH staff: Visit the course page in the LMS to learn more. Click the “Begin Registration” button to select your preferred date. For Institution and Organization staff associated with NIH: Email Dr. Philip Meacham indicating your interest and any potential time zone conflicts.
If you have any questions about this course or additional cloud trainings, please message Dr. Philip Meacham or the STRIDES Training Team at STRIDESTraining@nih.gov.
DetailsOrganizerNIH STRIDESWhenWed, Jun 21, 2023 - 9:00 am - 5:00 pmWhereOnline Webinar |
Picture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful? The cloud is here for you! The NIH STRIDES Initiative and Google have teamed up to create a custom course for NIH staff and NIH-funded researchers: “Medical Imaging and Machine Learning in Google Cloud”. The course introduces Google Cloud’s Medical Imaging Suite and works with real-life data sets from the National Cancer Institute’s Imaging Data Commons. The course is offered at no cost in June, July, August, and September 2023. Want more course details? Required Prerequisites Format Duration & Dates Experience working with medical imaging data Basic understanding of machine learning Basic familiarity with Google Cloud or watch this 6-minute video before attending the course Virtual with live instruction from Google experts One full day – 9:00 AM to 5:00 PM EST with the following date options: Wednesday, June 21 Thursday, July 20 Tuesday, August 15 Thursday, September 21 Ready to sign up? For NIH staff: Visit the course page in the LMS to learn more. Click the “Begin Registration” button to select your preferred date. For Institution and Organization staff associated with NIH: Email Dr. Philip Meacham indicating your interest and any potential time zone conflicts. If you have any questions about this course or additional cloud trainings, please message Dr. Philip Meacham or the STRIDES Training Team at STRIDESTraining@nih.gov. | 2023-06-21 09:00:00 | Online Webinar | Any | Cloud | Online | NIH STRIDES | 0 | Picture Perfect – Free Medical Imaging and Machine Learning with Google Cloud Training! | ||
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Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescriptionBiowulf is the high-performance computing cluster (HPC) at NIH. In addition to its vast compute power, Biowulf has hundreds of bioinformatics tools and databases for analyzing Next Generation Sequencing (NGS) data. This coding club will provide participants the foundations for harnessing Biowulf’s computing power to analyze NGS data. Participants will learn to request computing resources on and to submit scripts to the Biowulf system. This class is not hands-on so no ...Read More Biowulf is the high-performance computing cluster (HPC) at NIH. In addition to its vast compute power, Biowulf has hundreds of bioinformatics tools and databases for analyzing Next Generation Sequencing (NGS) data. This coding club will provide participants the foundations for harnessing Biowulf’s computing power to analyze NGS data. Participants will learn to request computing resources on and to submit scripts to the Biowulf system. This class is not hands-on so no need to obtain a Biowulf account prior to attending.
Meeting link:
Global call-in numbers: RegisterOrganizerBTEPWhenWed, Jun 21, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Biowulf is the high-performance computing cluster (HPC) at NIH. In addition to its vast compute power, Biowulf has hundreds of bioinformatics tools and databases for analyzing Next Generation Sequencing (NGS) data. This coding club will provide participants the foundations for harnessing Biowulf’s computing power to analyze NGS data. Participants will learn to request computing resources on and to submit scripts to the Biowulf system. This class is not hands-on so no need to obtain a Biowulf account prior to attending. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m39e6aa973e1500fbac8d3516e23cfaf8 Meeting number:2317 419 7733Password:yKZJuSQ*983Host key:520526Join by video systemDial 23174197733@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2317 419 7733Host PIN: 2784 Global call-in numbers:https://cbiit.webex.com/webappng/sites/cbiit/meeting/info/431acd8d9e5f4ad79e425d4832178a31# | 2023-06-21 11:00:00 | Online Webinar | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 1 | BTEP Coding Club: Submitting Scripts to the Biowulf Batch System |
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Single Cell Seminar SeriesDescriptionThe Bhattacharya Lab at the UCSF Parnassus Campus is focused on the functional role of monocyte-derived macrophages in the onset and persistence of fibrosis in the lung. We are addressing the following major questions, with a goal of discovering new targets for therapy for acute lung injury and fibrosis:
The Bhattacharya Lab at the UCSF Parnassus Campus is focused on the functional role of monocyte-derived macrophages in the onset and persistence of fibrosis in the lung. We are addressing the following major questions, with a goal of discovering new targets for therapy for acute lung injury and fibrosis:
RegisterOrganizerBTEPWhenThu, Jun 22, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The Bhattacharya Lab at the UCSF Parnassus Campus is focused on the functional role of monocyte-derived macrophages in the onset and persistence of fibrosis in the lung. We are addressing the following major questions, with a goal of discovering new targets for therapy for acute lung injury and fibrosis: What molecules released by monocyte-derived macrophages and other immune cells signal to and activate pro-fibrotic programs in parenchymal cell types such as fibroblasts and epithelial cells? What reciprocal signals derive from these parenchymal cells to modify the immune response? How can this pathologic crosstalk be reversed to combat fibrosis and restore lung health? | 2023-06-22 13:00:00 | Online Webinar | Any | Online | Mallar Bhattacharya M.D. (UCSF) | BTEP | 1 | Single Cell Annotation with SingleR: Macrophage-fibroblast crosstalk in lung fibrosis | ||
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DescriptionThis advanced class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. Participants are encouraged to install R, Read More This advanced class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. Participants are encouraged to install R, RStudio, and the tidyverse package, before the class. DetailsOrganizerNIH LibraryWhenThu, Jun 22, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This advanced class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. Participants are encouraged to install R, RStudio, and the tidyverse package, before the class. | 2023-06-22 13:00:00 | Online Webinar | Any | Programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Introduction to Data Visualization in R: Customization in ggplot | |
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DescriptionScientists and educators from many different fields need to find and understand chemical data to perform their work. As such, understanding PubChem, the world’s largest collection of freely accessible chemical information, is a powerful skill for researchers, clinicians, and more. For educators, using PubChem in the classroom can facilitate active learning and exploration related to chemistry principles. In this workshop, participants will have access to NCBI experts and be introduced to the ...Read More Scientists and educators from many different fields need to find and understand chemical data to perform their work. As such, understanding PubChem, the world’s largest collection of freely accessible chemical information, is a powerful skill for researchers, clinicians, and more. For educators, using PubChem in the classroom can facilitate active learning and exploration related to chemistry principles. In this workshop, participants will have access to NCBI experts and be introduced to the functionality of the PubChem Database. In this online, interactive workshop, we will learn:
Note: This workshop is designed for life scientists, including educators and students, without exhaustive training in chemistry. Additionally, materials used for this workshop will remain available after the course for your use in research projects and curriculum development. More advanced PubChem workshops will be available in the future. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . DetailsOrganizerNCBIWhenThu, Jun 22, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
Scientists and educators from many different fields need to find and understand chemical data to perform their work. As such, understanding PubChem, the world’s largest collection of freely accessible chemical information, is a powerful skill for researchers, clinicians, and more. For educators, using PubChem in the classroom can facilitate active learning and exploration related to chemistry principles. In this workshop, participants will have access to NCBI experts and be introduced to the functionality of the PubChem Database. In this online, interactive workshop, we will learn: Best practices of searching in PubChem Where to find molecular and chemical safety information How to use the PubChem Sketcher to find information about your chemical structure How to find a possible inhibitor for your gene Note: This workshop is designed for life scientists, including educators and students, without exhaustive training in chemistry. Additionally, materials used for this workshop will remain available after the course for your use in research projects and curriculum development. More advanced PubChem workshops will be available in the future. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . | 2023-06-22 13:00:00 | Online Webinar | Any | Online | Alexa Salsbury (NCBI) | NCBI | 0 | An Introduction to PubChem for Life Science | ||
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DescriptionGalaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This training will introduce ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is a mixture of lecture and hands-on exercises. By the end ...Read More Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This training will introduce ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is a mixture of lecture and hands-on exercises. By the end of this class, students will be able to: independently run basic ChIP-seq analysis for peak calling, run quality control on ChIP-seq data, map raw reads to a reference genome, generate alignment statistics and check mapping quality, call peaks using MACS, annotate peaks, and visualize the enriched regions. DetailsOrganizerCBIITWhenFri, Jun 23, 2023 - 12:00 pm - 3:00 pmWhereOnline Webinar |
Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This training will introduce ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is a mixture of lecture and hands-on exercises. By the end of this class, students will be able to: independently run basic ChIP-seq analysis for peak calling, run quality control on ChIP-seq data, map raw reads to a reference genome, generate alignment statistics and check mapping quality, call peaks using MACS, annotate peaks, and visualize the enriched regions. | 2023-06-23 12:00:00 | Online Webinar | Any | ChIP sequencing | Online | Daoud Meerzaman (CBIIT) | CBIIT | 0 | ChIP Sequencing Data Analysis | |
1187 |
DescriptionPlease join us for the launch of the NIGMS Sandbox, a cloud-based learning platform that contains 12 modules developed by NIGMS-supported investigators and Google Cloud engineers. Each module is delivered through an interactive step-by-step tutorial, quizzes, and visualizations. The webinar will cover how you can learn a wide array of biomedical research topics, including omics analyses, DNA methylation analysis, ATAC-seq, biomarker discovery, Read More Please join us for the launch of the NIGMS Sandbox, a cloud-based learning platform that contains 12 modules developed by NIGMS-supported investigators and Google Cloud engineers. Each module is delivered through an interactive step-by-step tutorial, quizzes, and visualizations. The webinar will cover how you can learn a wide array of biomedical research topics, including omics analyses, DNA methylation analysis, ATAC-seq, biomarker discovery, and artificial intelligence/machine learning-powered image analysis through the Sandbox. The webinar will also include live demonstrations on how to access and run the modules. Webinar ID: 161 848 0380 Passcode: 121302 Agenda:
1:30 PM – 1:40 PM Opening Remarks from Jon Lorsch (Director, NIGMS) and Susan Gregurick (Director, ODSS) 1:40 PM– 1:55 PM
NIGMS Sandbox Modules Overview by Ming Lei, Division Director, DRCB, NIGMS
1:55 PM – 2:20 PM Accessing NIGMS Sandbox modules and CloudLab Account requests by Lakshmi Matukumalli, NIGMS / Thad Carlson, CIT 2:20 PM– 2:45 PM ATAC-Seq module demonstration by Babu Guda and Jordan Rowley, University of Nebraska Medical Center 2:45 PM – 3:10 PM Biomarker Discovery Module demonstration by Chris Hemme, University of Rhode Island 3:10 PM – 3:30 PM Q&A session
DetailsWhenFri, Jun 23, 2023 - 1:30 pm - 3:30 pmWhereOnline Webinar |
Please join us for the launch of the NIGMS Sandbox, a cloud-based learning platform that contains 12 modules developed by NIGMS-supported investigators and Google Cloud engineers. Each module is delivered through an interactive step-by-step tutorial, quizzes, and visualizations. The webinar will cover how you can learn a wide array of biomedical research topics, including omics analyses, DNA methylation analysis, ATAC-seq, biomarker discovery, and artificial intelligence/machine learning-powered image analysis through the Sandbox. The webinar will also include live demonstrations on how to access and run the modules. Webinar ID: 161 848 0380 Passcode: 121302 Agenda: 1:30 PM – 1:40 PM Opening Remarks from Jon Lorsch (Director, NIGMS) and Susan Gregurick (Director, ODSS) 1:40 PM– 1:55 PM NIGMS Sandbox Modules Overview by Ming Lei, Division Director, DRCB, NIGMS 1:55 PM – 2:20 PM Accessing NIGMS Sandbox modules and CloudLab Account requests by Lakshmi Matukumalli, NIGMS / Thad Carlson, CIT 2:20 PM– 2:45 PM ATAC-Seq module demonstration by Babu Guda and Jordan Rowley, University of Nebraska Medical Center 2:45 PM – 3:10 PM Biomarker Discovery Module demonstration by Chris Hemme, University of Rhode Island 3:10 PM – 3:30 PM Q&A session | 2023-06-23 13:30:00 | Online Webinar | Any | Cloud | Online | 0 | NIGMS Sandbox Cloud Modules Launch Event Today | |||
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DescriptionIn this webinar, University of Chicago’s Dr. Bill Wysocki will demonstrate the NCI Genomic Data Commons’ (GDC’s) Binary Alignment Map (BAM) slicing feature. If you use the GDC repository, discover how this feature enables you to access specific alignments efficiently, reducing download time and storage requirements. You will learn how to specify the subset of a BAM file for downloading by providing genome coordinates, gene symbols, or ...Read More In this webinar, University of Chicago’s Dr. Bill Wysocki will demonstrate the NCI Genomic Data Commons’ (GDC’s) Binary Alignment Map (BAM) slicing feature. If you use the GDC repository, discover how this feature enables you to access specific alignments efficiently, reducing download time and storage requirements. You will learn how to specify the subset of a BAM file for downloading by providing genome coordinates, gene symbols, or requesting unmapped reads. Dr. Wysocki will demonstrate BAM slicing through both the GDC Data Portal and the Application Programming Interface. Take advantage of this opportunity to enhance your research efficiency and explore the GDC BAM slicing feature. Dr. Wysocki is the director of User Services and Outreach for the GDC in the Center for Translational Data Science at the University of Chicago. DetailsOrganizerCBIITWhenMon, Jun 26, 2023 - 2:00 pm - 2:30 pmWhereOnline Webinar |
In this webinar, University of Chicago’s Dr. Bill Wysocki will demonstrate the NCI Genomic Data Commons’ (GDC’s) Binary Alignment Map (BAM) slicing feature. If you use the GDC repository, discover how this feature enables you to access specific alignments efficiently, reducing download time and storage requirements. You will learn how to specify the subset of a BAM file for downloading by providing genome coordinates, gene symbols, or requesting unmapped reads. Dr. Wysocki will demonstrate BAM slicing through both the GDC Data Portal and the Application Programming Interface. Take advantage of this opportunity to enhance your research efficiency and explore the GDC BAM slicing feature. Dr. Wysocki is the director of User Services and Outreach for the GDC in the Center for Translational Data Science at the University of Chicago. | 2023-06-26 14:00:00 | Online Webinar | Any | Data Science | Online | CBIIT | 0 | Genomic Data Commons BAM Slicing | ||
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Part Of: Introduction to Bioinformatics Summer Series CourseDescriptionParticipants will learn about FAIR principles (findability, accessibility, interoperability, and reusability) and how they apply to scientific data. Given the NIH Data Sharing Policy for intramural scientists, methods for organizing, managing, and sharing data in bioinformatics projects will be discussed.
Participants will learn about FAIR principles (findability, accessibility, interoperability, and reusability) and how they apply to scientific data. Given the NIH Data Sharing Policy for intramural scientists, methods for organizing, managing, and sharing data in bioinformatics projects will be discussed.
RegisterOrganizerBTEPWhenTue, Jun 27, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Participants will learn about FAIR principles (findability, accessibility, interoperability, and reusability) and how they apply to scientific data. Given the NIH Data Sharing Policy for intramural scientists, methods for organizing, managing, and sharing data in bioinformatics projects will be discussed. | 2023-06-27 13:00:00 | Online Webinar | Any | Online | Peter FitzGerald (GAU) | BTEP | 0 | Keeping your Data FAIR: Organizing, Managing, and Sharing your Data | ||
1178 |
DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs in biomedical ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs in biomedical research. This class will cover details related to case studies/series, ecological, cross-sectional, case-control, and cohort studies, clinical trials, and other study designs and considerations. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. For more information, contact Alicia Livinski, alicia.livinski@nih.gov DetailsOrganizerNIH LibraryWhenTue, Jun 27, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs in biomedical research. This class will cover details related to case studies/series, ecological, cross-sectional, case-control, and cohort studies, clinical trials, and other study designs and considerations. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. For more information, contact Alicia Livinski, alicia.livinski@nih.gov | 2023-06-27 13:00:00 | Online Webinar | Any | Online | Ninet Sinaii | NIH Library | 0 | Part 2: Overview of Study Design | ||
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DescriptionThis talk will focus on the FAIR principles and the other aspects of data and workflow management we believe are necessary for reproducible research. Mr. Smith will discuss how the Arvados platform helps you “go FAIR” and beyond with your data, digital objects, and all aspects of your computational workflows. The Arvados Platform is a 100% open source platform that integrates a data management system and a compute ...Read More This talk will focus on the FAIR principles and the other aspects of data and workflow management we believe are necessary for reproducible research. Mr. Smith will discuss how the Arvados platform helps you “go FAIR” and beyond with your data, digital objects, and all aspects of your computational workflows. The Arvados Platform is a 100% open source platform that integrates a data management system and a compute management system to create a unified environment to store and organize data and run Common Workflow Language (CWL) workflows. Brett Smith is a Senior Software Developer with longtime experience in Linux programming and system administration as well as deep roots in Free and Open Source Software communities. Mr. Smith has previously worked at the Free Software Foundation, World Wide Web Consortium, and Software Freedom Conservancy in both technical and community roles. DetailsOrganizerCBIITWhenWed, Jun 28, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
This talk will focus on the FAIR principles and the other aspects of data and workflow management we believe are necessary for reproducible research. Mr. Smith will discuss how the Arvados platform helps you “go FAIR” and beyond with your data, digital objects, and all aspects of your computational workflows. The Arvados Platform is a 100% open source platform that integrates a data management system and a compute management system to create a unified environment to store and organize data and run Common Workflow Language (CWL) workflows. Brett Smith is a Senior Software Developer with longtime experience in Linux programming and system administration as well as deep roots in Free and Open Source Software communities. Mr. Smith has previously worked at the Free Software Foundation, World Wide Web Consortium, and Software Freedom Conservancy in both technical and community roles. | 2023-06-28 11:00:00 | Online Webinar | Any | Online | Brett Smith (Senior Software Engineer Curii) | CBIIT | 0 | Realizing FAIR principles and Reproducible Computational Workflows with the Arvados Platform | ||
1189 |
DescriptionTo register to attend, you must log in or create a free account. Do you want to better your communication on data science technologies and analyses with cancer immunotherapy researchers? If so, a webinar series from NCI and the Society for Immunotherapy of Cancer (SITC) may be for you! The 2023 SITC-NCI Computational ...Read More To register to attend, you must log in or create a free account. Do you want to better your communication on data science technologies and analyses with cancer immunotherapy researchers? If so, a webinar series from NCI and the Society for Immunotherapy of Cancer (SITC) may be for you! The 2023 SITC-NCI Computational Immuno-Oncology Webinar Series features eight, one-hour-long webinars that can help you advance your training in computational immuno-oncology. The first seminar, “Facilitating Discovery of New Resistance Mechanisms with Data Visualization,” features Dr. Aaron Newman of Stanford University and Dr. Carsten Krieg from the Medical University of South Carolina. The SITC-NCI Computational Immuno-Oncology Webinar Series aims to educate early-career scientists on computational immuno-oncology, increase participants’ awareness of and engagement in NCI-supported Cancer Moonshot SM Immunotherapy Networks, and fulfill the Blue Ribbon Panel’s goal of accelerating progress in cancer research. DetailsOrganizerCBIITWhenWed, Jun 28, 2023 - 12:30 pm - 1:30 pmWhereOnline Webinar |
To register to attend, you must log in or create a free account. Do you want to better your communication on data science technologies and analyses with cancer immunotherapy researchers? If so, a webinar series from NCI and the Society for Immunotherapy of Cancer (SITC) may be for you! The 2023 SITC-NCI Computational Immuno-Oncology Webinar Series features eight, one-hour-long webinars that can help you advance your training in computational immuno-oncology. The first seminar, “Facilitating Discovery of New Resistance Mechanisms with Data Visualization,” features Dr. Aaron Newman of Stanford University and Dr. Carsten Krieg from the Medical University of South Carolina. The SITC-NCI Computational Immuno-Oncology Webinar Series aims to educate early-career scientists on computational immuno-oncology, increase participants’ awareness of and engagement in NCI-supported Cancer Moonshot SM Immunotherapy Networks, and fulfill the Blue Ribbon Panel’s goal of accelerating progress in cancer research. | 2023-06-28 12:30:00 | Online Webinar | Any | Data Science | Online | Aaron Newman Ph.D.,Carsten Krieg Ph.D. | CBIIT | 0 | Facilitating Discovery of New Resistance Mechanisms with Data Visualization | |
1149 |
DescriptionAll biology research projects involve finding relevant literature and identifying related biological information. Often high school or new undergraduate students need guidance on how to effectively search for helpful information. For almost 35 years, the NCBI has provided free access to high-quality biological databases for the research community. In addition, we’ve created tools to help organize selected literature and biological data records for quick and easy access. In this online, interactive workshop ...Read More All biology research projects involve finding relevant literature and identifying related biological information. Often high school or new undergraduate students need guidance on how to effectively search for helpful information. For almost 35 years, the NCBI has provided free access to high-quality biological databases for the research community. In addition, we’ve created tools to help organize selected literature and biological data records for quick and easy access. In this online, interactive workshop we will take you step-by-step through how to:
Note: This workshop was designed for both student researchers, and the educators and mentors who want to help students use these resources. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . DetailsOrganizerNCBIWhenThu, Jun 29, 2023 - 1:00 pm - 4:00 pmWhereOnline Webinar |
All biology research projects involve finding relevant literature and identifying related biological information. Often high school or new undergraduate students need guidance on how to effectively search for helpful information. For almost 35 years, the NCBI has provided free access to high-quality biological databases for the research community. In addition, we’ve created tools to help organize selected literature and biological data records for quick and easy access. In this online, interactive workshop we will take you step-by-step through how to: Use the web interface to effectively search NCBI databases Create and use your NCBI account to: Save a search and set up weekly or monthly emails to notify you of new records Store selected records in an online folder to access and share them Find information related to a proposed research project topic across linked NCBI databases, from publications and associated genome sequences down to protein structures Begin to interpret the information you’ve found in the context of the project Note: This workshop was designed for both student researchers, and the educators and mentors who want to help students use these resources. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . | 2023-06-29 13:00:00 | Online Webinar | Any | Online | Rana Morris (NCBI),Sally Chang (NCBI) | NCBI | 0 | A Biology Student’s Guide to Finding & Organizing NCBI Data for Research Projects | ||
1163 |
Part Of: Introduction to Bioinformatics Summer Series CourseDescriptionStarting with the classic Central Dogma of Molecular Biology, we will look at how each of the components (DNA, RNA, protein) is measured and analyzed. Next-Gen Sequencing (NGS) techniques, analyses tools available, and some history of how it all started with the Human Genome Project will be discussed.
Starting with the classic Central Dogma of Molecular Biology, we will look at how each of the components (DNA, RNA, protein) is measured and analyzed. Next-Gen Sequencing (NGS) techniques, analyses tools available, and some history of how it all started with the Human Genome Project will be discussed.
RegisterOrganizerBTEPWhenThu, Jun 29, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Starting with the classic Central Dogma of Molecular Biology, we will look at how each of the components (DNA, RNA, protein) is measured and analyzed. Next-Gen Sequencing (NGS) techniques, analyses tools available, and some history of how it all started with the Human Genome Project will be discussed. | 2023-06-29 13:00:00 | Online Webinar | Any | Bioinformatics,Genomics | Online | Amy Stonelake (BTEP) | BTEP | 0 | Central Dogma of Molecular Biology: Analyzing DNA, RNA, and Proteins | |
1192 |
DescriptionPlease join us for a special presentation about the Fred Hutchinson’s data journal to the cloud, including an innovative cloud platform (Cirro: https://cirro.bio/) to streamline data collection, management, and distribution from Core facilities to users. Presenter: Michael Zager, Director of the Fred Hutchinson Data Core and Visualization Center of Brotman Baty ...Read More Please join us for a special presentation about the Fred Hutchinson’s data journal to the cloud, including an innovative cloud platform (Cirro: https://cirro.bio/) to streamline data collection, management, and distribution from Core facilities to users. Presenter: Michael Zager, Director of the Fred Hutchinson Data Core and Visualization Center of Brotman Baty Institute Abstract: Big data technologies promise to revolutionize our understanding and treatment of disease. To maximize the potential of their biological data, life science organizations must revisit traditional approaches to data storage, management, processing, and distribution. Commercial Cloud providers offer a foundation for innovation, but concerns over cost, complexity, and security have limited adoption. Fred Hutch has developed Cirro, a bioinformatics cloud, to address these concerns. Core facilities use Cirro to automatically tag, process, and securely distribute instrument data. Researchers execute batch, ad-hoc, and interactive visual analyses of their data with or without writing code. Bioinformaticians share pipelines and notebooks and can more effectively collaborate due to robust lineage tracing and shared workspaces. Administrators can set billing limits, confident that the platform has undergone hundreds of hours of third-party security and infrastructure review. During this talk, we will demonstrate Cirro and discuss its origins, evolution, and future goals. Meeting ID: 160 190 6960 Passcode: 495128 DetailsWhenThu, Jun 29, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Please join us for a special presentation about the Fred Hutchinson’s data journal to the cloud, including an innovative cloud platform (Cirro: https://cirro.bio/) to streamline data collection, management, and distribution from Core facilities to users. Presenter: Michael Zager, Director of the Fred Hutchinson Data Core and Visualization Center of Brotman Baty Institute Abstract: Big data technologies promise to revolutionize our understanding and treatment of disease. To maximize the potential of their biological data, life science organizations must revisit traditional approaches to data storage, management, processing, and distribution. Commercial Cloud providers offer a foundation for innovation, but concerns over cost, complexity, and security have limited adoption. Fred Hutch has developed Cirro, a bioinformatics cloud, to address these concerns. Core facilities use Cirro to automatically tag, process, and securely distribute instrument data. Researchers execute batch, ad-hoc, and interactive visual analyses of their data with or without writing code. Bioinformaticians share pipelines and notebooks and can more effectively collaborate due to robust lineage tracing and shared workspaces. Administrators can set billing limits, confident that the platform has undergone hundreds of hours of third-party security and infrastructure review. During this talk, we will demonstrate Cirro and discuss its origins, evolution, and future goals. Meeting ID: 160 190 6960 Passcode: 495128 | 2023-06-29 13:00:00 | Online Webinar | Any | Cancer,Cloud | Online | Michael Zager Director of the Fred Hutchinson Data Core and Visualization Center of Brotman Baty Institute | 0 | Instruments to Insights, Fred Hutchinson Cancer Centers Journey to The Cloud | ||
1190 |
DescriptionHave you checked out NCI’s Childhood Cancer Data Initiative’s (CCDI’s) new online Hub? It gives you instant access to a rapidly growing inventory of data, tools, and resources on childhood cancer data. Attend this meeting and learn more about accessing data through the Hub. You’ll get tips ...Read More Have you checked out NCI’s Childhood Cancer Data Initiative’s (CCDI’s) new online Hub? It gives you instant access to a rapidly growing inventory of data, tools, and resources on childhood cancer data. Attend this meeting and learn more about accessing data through the Hub. You’ll get tips on how to use the Hub to access resources in the CCDI Data Ecosystem. You’ll also learn about the types of data available in the Childhood Cancer Data Catalog and how to access and use these data. This meeting is the latest in a list of CCDI symposiums, workshops, webinars, and events developed by CCDI to foster collaboration and data sharing within the childhood cancer community of hospitals, clinics, and other stakeholders. As noted by Dr. Subhashini Jagu, CBIIT Scientific Policy and Program Branch A chief, “By empowering the pediatric cancer community with platforms and tools like the CCDI Hub, our goal is to accelerate data-based discovery and encourage collaboration and breakthroughs in biomedical research.” DetailsOrganizerCBIITWhenThu, Jun 29, 2023 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Have you checked out NCI’s Childhood Cancer Data Initiative’s (CCDI’s) new online Hub? It gives you instant access to a rapidly growing inventory of data, tools, and resources on childhood cancer data. Attend this meeting and learn more about accessing data through the Hub. You’ll get tips on how to use the Hub to access resources in the CCDI Data Ecosystem. You’ll also learn about the types of data available in the Childhood Cancer Data Catalog and how to access and use these data. This meeting is the latest in a list of CCDI symposiums, workshops, webinars, and events developed by CCDI to foster collaboration and data sharing within the childhood cancer community of hospitals, clinics, and other stakeholders. As noted by Dr. Subhashini Jagu, CBIIT Scientific Policy and Program Branch A chief, “By empowering the pediatric cancer community with platforms and tools like the CCDI Hub, our goal is to accelerate data-based discovery and encourage collaboration and breakthroughs in biomedical research.” | 2023-06-29 14:00:00 | Online Webinar | Any | Cancer | Online | CBIIT | 0 | Using the CCDI Hub and Childhood Cancer Data Catalog | ||
1180 |
Part Of: Toward Reproducibility with R on Biowulf CourseDescriptionThis is the first lesson in the course, Toward Reproducibility with R on Biowulf. This lesson will provide a general introduction to the course and serve as a refresher on Unix, Biowulf, and R. This is the first lesson in the course, Toward Reproducibility with R on Biowulf. This lesson will provide a general introduction to the course and serve as a refresher on Unix, Biowulf, and R. RegisterOrganizerBTEPWhenThu, Jul 06, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This is the first lesson in the course, Toward Reproducibility with R on Biowulf. This lesson will provide a general introduction to the course and serve as a refresher on Unix, Biowulf, and R. | 2023-07-06 13:00:00 | Beginner | NIH High Performance Unix Cluster Biowulf,R programming | R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to Biowulf, Unix, and R | |
1156 |
DescriptionThis class provides a basic overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install Read More This class provides a basic overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install R, RStudio, and the tidyverse package, before the webinar so that they can follow along with the instructor. DetailsOrganizerNIH LibraryWhenTue, Jul 11, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
This class provides a basic overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Participants are expected to have taken the Introduction to Data Visualization in R: ggplot class. Participants are encouraged to install R, RStudio, and the tidyverse package, before the webinar so that they can follow along with the instructor. | 2023-07-11 10:00:00 | Online Webinar | Any | R programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Visualizing Relationships in ggplot | |
1165 |
Part Of: Introduction to Bioinformatics Summer Series CourseDescriptionAttendees will learn about high performance computing (HPC) with the NIH cluster Biowulf. This resource contains hundreds of open source bioinformatics tools and biological databases. Participants will understand why it's important to be able to work on an HPC cluster for Next-Gen Sequencing data analyses. Attendees will learn about high performance computing (HPC) with the NIH cluster Biowulf. This resource contains hundreds of open source bioinformatics tools and biological databases. Participants will understand why it's important to be able to work on an HPC cluster for Next-Gen Sequencing data analyses. RegisterOrganizerBTEPWhenTue, Jul 11, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Attendees will learn about high performance computing (HPC) with the NIH cluster Biowulf. This resource contains hundreds of open source bioinformatics tools and biological databases. Participants will understand why it's important to be able to work on an HPC cluster for Next-Gen Sequencing data analyses. | 2023-07-11 13:00:00 | Online Webinar | Any | NIH High Performance Unix Cluster Biowulf,Next-Gen Sequencing | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to High Performance Computing at NIH: Biowulf | |
1194 |
DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room
For inquires send email to staff@hpc.nih.gov - be prepared to wait your turn if staff are already helping other users DetailsWhenWed, Jul 12, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) For inquires send email to staff@hpc.nih.gov - be prepared to wait your turn if staff are already helping other users | 2023-07-12 13:00:00 | Online Webinar | Any | Online | 0 | Zoom-In Consult for Biowulf Users | ||||
1196 |
DescriptionSession 4 of this webinar series will explore what is possible when data are FAIR (findable, accessible, interoperable, and reusable) and how data contributors can increase the reusability of their data. Secondary research utilizes data derived from previous research to validate original study findings, generate new hypotheses, or answer new research questions. Examples of secondary research include metanalyses, systematic reviews, and “big data” analysis efforts. The National Institutes of Health DMS policy will ...Read More Session 4 of this webinar series will explore what is possible when data are FAIR (findable, accessible, interoperable, and reusable) and how data contributors can increase the reusability of their data. Secondary research utilizes data derived from previous research to validate original study findings, generate new hypotheses, or answer new research questions. Examples of secondary research include metanalyses, systematic reviews, and “big data” analysis efforts. The National Institutes of Health DMS policy will increase scientific data availability and potentially ignite further research to expand knowledge. Increased data reuse will benefit not only data consumers but also the primary data generators, whose work will be amplified. DetailsOrganizerNIDDKWhenThu, Jul 13, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
Session 4 of this webinar series will explore what is possible when data are FAIR (findable, accessible, interoperable, and reusable) and how data contributors can increase the reusability of their data. Secondary research utilizes data derived from previous research to validate original study findings, generate new hypotheses, or answer new research questions. Examples of secondary research include metanalyses, systematic reviews, and “big data” analysis efforts. The National Institutes of Health DMS policy will increase scientific data availability and potentially ignite further research to expand knowledge. Increased data reuse will benefit not only data consumers but also the primary data generators, whose work will be amplified. | 2023-07-13 12:00:00 | Online Webinar | Any | Data Sharing | Online | Vivian Ota Wang Ph.D.,Harold Lehmann M.D. Ph.D., | NIDDK | 0 | NIDDK Data Management & Sharing (DMS) Webinar Series | |
1118 |
DescriptionMATLAB provides two-way integration with many programming languages such as Python, which allows for greater collaboration between investigators. This webinar will cover how to call MATLAB from Python and how to call Python libraries from MATLAB. Attendees will learn how to use MATLAB’s Python integration to improve the compatibility and usability of their code. This webinar will be helpful for participants who have collaborators using Python with MATLAB, or for attendees who ...Read More MATLAB provides two-way integration with many programming languages such as Python, which allows for greater collaboration between investigators. This webinar will cover how to call MATLAB from Python and how to call Python libraries from MATLAB. Attendees will learn how to use MATLAB’s Python integration to improve the compatibility and usability of their code. This webinar will be helpful for participants who have collaborators using Python with MATLAB, or for attendees who want to integrate MATLAB’s capabilities in a Python program. This session is for beginners; no software installation required. DetailsOrganizerNIH LibraryWhenThu, Jul 13, 2023 - 1:00 pm - 2:30 pmWhereOnline Webinar |
MATLAB provides two-way integration with many programming languages such as Python, which allows for greater collaboration between investigators. This webinar will cover how to call MATLAB from Python and how to call Python libraries from MATLAB. Attendees will learn how to use MATLAB’s Python integration to improve the compatibility and usability of their code. This webinar will be helpful for participants who have collaborators using Python with MATLAB, or for attendees who want to integrate MATLAB’s capabilities in a Python program. This session is for beginners; no software installation required. | 2023-07-13 13:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Mathworks | NIH Library | 0 | MATLAB with Python | |
1150 |
DescriptionThe Comparative Genome Viewer (CGV) is a visualization tool that helps you quickly compare two genomes based on assembly-assembly alignments provided by NCBI. CGV includes eukaryotic (animal, plant and fungal) assemblies, and many cross-species comparisons. You can view chromosome-scale rearrangements, search for genes, and display aligned regions at the sequence level. In this workshop, you will have the opportunity to:
The Comparative Genome Viewer (CGV) is a visualization tool that helps you quickly compare two genomes based on assembly-assembly alignments provided by NCBI. CGV includes eukaryotic (animal, plant and fungal) assemblies, and many cross-species comparisons. You can view chromosome-scale rearrangements, search for genes, and display aligned regions at the sequence level. In this workshop, you will have the opportunity to:
This online, interactive workshop is designed for any life scientist, including research students and educators, who want to visually compare genomes to gain biological insight and share these insights with others. Some familiarity with genomics vocabulary and concepts is recommended for attendees. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . DetailsOrganizerNCBIWhenThu, Jul 13, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
The Comparative Genome Viewer (CGV) is a visualization tool that helps you quickly compare two genomes based on assembly-assembly alignments provided by NCBI. CGV includes eukaryotic (animal, plant and fungal) assemblies, and many cross-species comparisons. You can view chromosome-scale rearrangements, search for genes, and display aligned regions at the sequence level. In this workshop, you will have the opportunity to: Compare the human T2T CHM3 assembly to the current reference assembly, GRCh38.14 Explore the extent of gene order conservation (synteny) between two organisms Transfer a viewed region to the Genome Data Viewer where you can expand your analysis View pairwise alignment at the sequence level Download a FASTA alignment file for a region, or download complete whole genome alignment data Generate a scalable vector graphics image (SVG) of your current view This online, interactive workshop is designed for any life scientist, including research students and educators, who want to visually compare genomes to gain biological insight and share these insights with others. Some familiarity with genomics vocabulary and concepts is recommended for attendees. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . | 2023-07-13 13:00:00 | Online Webinar | Any | Online | Wayne Matten PhD | NCBI | 0 | Exploring the Relationship Between Two Eukaryotic Genomes Using the Comparative Genome Viewer | ||
1181 |
Part Of: Toward Reproducibility with R on Biowulf CourseDescriptionIn Lesson 2 of Toward Reproducibility with R on Biowulf, partipants will learn about ways to use R on Biowulf. The focus will be on interactively working with R on Biowulf. Two different ways of accessing RStudio will be demonstrated. In addition, there will be a discussion on R modules and setting up custom R libraries on Biowulf. In Lesson 2 of Toward Reproducibility with R on Biowulf, partipants will learn about ways to use R on Biowulf. The focus will be on interactively working with R on Biowulf. Two different ways of accessing RStudio will be demonstrated. In addition, there will be a discussion on R modules and setting up custom R libraries on Biowulf. RegisterOrganizerBTEPWhenThu, Jul 13, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In Lesson 2 of Toward Reproducibility with R on Biowulf, partipants will learn about ways to use R on Biowulf. The focus will be on interactively working with R on Biowulf. Two different ways of accessing RStudio will be demonstrated. In addition, there will be a discussion on R modules and setting up custom R libraries on Biowulf. | 2023-07-13 13:00:00 | Online Webinar | Beginner | NIH High Performance Unix Cluster Biowulf,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Getting Started with R on Biowulf | |
1197 |
DescriptionThis seminar is open to the public and registration is required each month. Individuals who need interpretating services and/or other reasonable accommodations to participate in this event should contact Janiya Peters (jpeters@scgcorp.com) at 301-670-4990. Request should be made at least three business days om advance of the event. A recording will be available on this page after each event This seminar is open to the public and registration is required each month. Individuals who need interpretating services and/or other reasonable accommodations to participate in this event should contact Janiya Peters (jpeters@scgcorp.com) at 301-670-4990. Request should be made at least three business days om advance of the event. A recording will be available on this page after each event DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenFri, Jul 14, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
This seminar is open to the public and registration is required each month. Individuals who need interpretating services and/or other reasonable accommodations to participate in this event should contact Janiya Peters (jpeters@scgcorp.com) at 301-670-4990. Request should be made at least three business days om advance of the event. A recording will be available on this page after each event | 2023-07-14 12:00:00 | Online Webinar | Any | Data Sharing | Online | NIH Office of Data Science Strategy (ODSS) | 0 | July Data Sharing and Reuse Seminar | ||
1157 |
DescriptionGalaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will cover exome sequencing data analysis, followed by tutorials showing the use of exome analysis workflow. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. This workshop will be taught by NCI staff and is open to NIH and ...Read More Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will cover exome sequencing data analysis, followed by tutorials showing the use of exome analysis workflow. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. This workshop will be taught by NCI staff and is open to NIH and HHS staff. Participants will have a chance to: independently run basic exome analysis for variant detection, run quality control check on sequencing data, align the sequencing reads to a reference genome, generate alignment statistics and check mapping quality, identify variants, and visualize the exome sequencing data and variants. This class is 3 hours and is a mix of lecture and hand-on exercise. DetailsOrganizerNIH LibraryWhenFri, Jul 14, 2023 - 1:00 pm - 4:00 pmWhereOnline Webinar |
Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will cover exome sequencing data analysis, followed by tutorials showing the use of exome analysis workflow. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. This workshop will be taught by NCI staff and is open to NIH and HHS staff. Participants will have a chance to: independently run basic exome analysis for variant detection, run quality control check on sequencing data, align the sequencing reads to a reference genome, generate alignment statistics and check mapping quality, identify variants, and visualize the exome sequencing data and variants. This class is 3 hours and is a mix of lecture and hand-on exercise. | 2023-07-14 13:00:00 | Online Webinar | Any | Sequencing Technologies | Online | NIH Library | 0 | Exome Sequencing Data Analysis | ||
1119 |
DescriptionWhen it comes to data analysis and visualization, technical professionals who use Excel often encounter functional limitations. MATLAB supplements the capabilities of Excel by providing access to pre-built mathematical and analysis functions, visualization tools, and the ability to automate analysis workflows. Attendees will learn the main steps required for performing data analysis with MATLAB, including data access and pre-processing, modeling, and deployment. Attendees will gain an understanding of how to efficiently apply data analysis ...Read More When it comes to data analysis and visualization, technical professionals who use Excel often encounter functional limitations. MATLAB supplements the capabilities of Excel by providing access to pre-built mathematical and analysis functions, visualization tools, and the ability to automate analysis workflows. Attendees will learn the main steps required for performing data analysis with MATLAB, including data access and pre-processing, modeling, and deployment. Attendees will gain an understanding of how to efficiently apply data analysis techniques using the MATLAB platform. This session is for beginners; no software installation required. DetailsOrganizerNIH LibraryWhenTue, Jul 18, 2023 - 12:00 pm - 1:30 pmWhereOnline Webinar |
When it comes to data analysis and visualization, technical professionals who use Excel often encounter functional limitations. MATLAB supplements the capabilities of Excel by providing access to pre-built mathematical and analysis functions, visualization tools, and the ability to automate analysis workflows. Attendees will learn the main steps required for performing data analysis with MATLAB, including data access and pre-processing, modeling, and deployment. Attendees will gain an understanding of how to efficiently apply data analysis techniques using the MATLAB platform. This session is for beginners; no software installation required. | 2023-07-18 12:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Mathworks | NIH Library | 0 | MATLAB for Excel Users | |
1195 |
Description
To register to attend, you must log in or create a free account.
Continue to learn about cutting-edge computational immuno-oncology through a partnership between NCI and the Society for Immunotherapy of Cancer (SITC)! In this webinar, Dr. David Van Valen of the California Institute of Technology and Dr. Riyue Bao of the University of Pittsburgh Medical Center will present “Read More
To register to attend, you must log in or create a free account.
Continue to learn about cutting-edge computational immuno-oncology through a partnership between NCI and the Society for Immunotherapy of Cancer (SITC)! In this webinar, Dr. David Van Valen of the California Institute of Technology and Dr. Riyue Bao of the University of Pittsburgh Medical Center will present “Clinical Applications of Data Visualization.” The SITC-NCI Computational Immuno-Oncology Webinar Series features eight, one-hour-long webinars designed to educate early-career scientists on computational immuno-oncology, increase participants’ awareness of and engagement in NCI-supported Cancer Moonshot SM Immunotherapy Networks, and fulfill the Blue Ribbon Panel’s goal of accelerating progress in cancer research. DetailsOrganizerCBIITWhenTue, Jul 18, 2023 - 12:30 pm - 1:30 pmWhereOnline Webinar |
To register to attend, you must log in or create a free account. Continue to learn about cutting-edge computational immuno-oncology through a partnership between NCI and the Society for Immunotherapy of Cancer (SITC)! In this webinar, Dr. David Van Valen of the California Institute of Technology and Dr. Riyue Bao of the University of Pittsburgh Medical Center will present “Clinical Applications of Data Visualization.” The SITC-NCI Computational Immuno-Oncology Webinar Series features eight, one-hour-long webinars designed to educate early-career scientists on computational immuno-oncology, increase participants’ awareness of and engagement in NCI-supported Cancer Moonshot SM Immunotherapy Networks, and fulfill the Blue Ribbon Panel’s goal of accelerating progress in cancer research. | 2023-07-18 12:30:00 | Online Webinar | Any | Data Science | Online | David Van Valen M.D. Ph.D.,Riyue Bao Ph.D. | CBIIT | 0 | Clinical Applications of Data Visualization | |
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DescriptionThis workshop is for life scientists, including educators and research students, who would like to learn to use the command line for searching and fetching NCBI data. In this workshop, we will begin with an introduction to working in a command line environment and then show you how to use the EDirect suite to access biological data from several NCBI databases. You do not need to have had prior experience with the command ...Read More This workshop is for life scientists, including educators and research students, who would like to learn to use the command line for searching and fetching NCBI data. In this workshop, we will begin with an introduction to working in a command line environment and then show you how to use the EDirect suite to access biological data from several NCBI databases. You do not need to have had prior experience with the command line, but we do recommend that you have some familiarity with NCBI databases get the most of this workshop. In this workshop you will learn how to:
Note: This workshop is appropriate for both student researchers themselves as well as educators and mentors who want to help their students learn to use these resources. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . DetailsOrganizerNCBIWhenTue, Jul 18, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
This workshop is for life scientists, including educators and research students, who would like to learn to use the command line for searching and fetching NCBI data. In this workshop, we will begin with an introduction to working in a command line environment and then show you how to use the EDirect suite to access biological data from several NCBI databases. You do not need to have had prior experience with the command line, but we do recommend that you have some familiarity with NCBI databases get the most of this workshop. In this workshop you will learn how to: Write Bash commands with parameters Construct search queries using NCBI’s EDirect to search in a specific database Download selected data in chosen file formats Link to related data in another database Combine commands into reproducible workflows Note: This workshop is appropriate for both student researchers themselves as well as educators and mentors who want to help their students learn to use these resources. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . | 2023-07-18 13:00:00 | Online Webinar | Any | Online | Sally Chang (NCBI) | NCBI | 0 | Accessing NCBI Biology Resources Using EDirect for Command Line Novices | ||
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Part Of: Introduction to Bioinformatics Summer Series CourseDescriptionIn this class, participants will learn about the R and Python programming languages, and how each is used in bioinformatics research. The advantages of each language will be discussed, and how to choose which is most applicable to your data analyses. Learning resources for beginners will be provided and questions answered. In this class, participants will learn about the R and Python programming languages, and how each is used in bioinformatics research. The advantages of each language will be discussed, and how to choose which is most applicable to your data analyses. Learning resources for beginners will be provided and questions answered. RegisterOrganizerBTEPWhenTue, Jul 18, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this class, participants will learn about the R and Python programming languages, and how each is used in bioinformatics research. The advantages of each language will be discussed, and how to choose which is most applicable to your data analyses. Learning resources for beginners will be provided and questions answered. | 2023-07-18 13:00:00 | Online Webinar | Any | Programming,Python,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to R and Python Programming Languages | |
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Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescriptionThis session of the BTEP Coding Club will focus on strategies for overcoming errors, warnings, and other common problems with R code. In this 1-hour tutorial targeting beginner R users, we will discuss commonly observed errors, how to find help, and how to approach and debug R code. This session of the BTEP Coding Club will focus on strategies for overcoming errors, warnings, and other common problems with R code. In this 1-hour tutorial targeting beginner R users, we will discuss commonly observed errors, how to find help, and how to approach and debug R code. RegisterOrganizerBTEPWhenWed, Jul 19, 2023 - 11:00 am - 12:00 pmWhereOnline |
This session of the BTEP Coding Club will focus on strategies for overcoming errors, warnings, and other common problems with R code. In this 1-hour tutorial targeting beginner R users, we will discuss commonly observed errors, how to find help, and how to approach and debug R code. | 2023-07-19 11:00:00 | Beginner | R programming | Online | Alex Emmons (BTEP) | BTEP | 1 | A Beginners Guide to Troubleshooting R Code | ||
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DescriptionPicture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful?Read More Picture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful? The cloud is here for you! The NIH STRIDES Initiative and Google have teamed up to create a custom course for NIH staff and NIH-funded researchers: “Medical Imaging and Machine Learning in Google Cloud”. The course introduces Google Cloud’s Medical Imaging Suite and works with real-life data sets from the National Cancer Institute’s Imaging Data Commons. The course is offered at no cost in June, July, August, and September 2023.
Want more course details? Required Prerequisites Format Duration & Dates Experience working with medical imaging data Basic understanding of machine learning Basic familiarity with Google Cloud or watch this 6-minute video before attending the course Virtual with live instruction from Google experts One full day – 9:00 AM to 5:00 PM EST with the following date options:
Ready to sign up? For NIH staff: Visit the course page in the LMS to learn more. Click the “Begin Registration” button to select your preferred date. For Institution and Organization staff associated with NIH: Email Dr. Philip Meacham indicating your interest and any potential time zone conflicts.
If you have any questions about this course or additional cloud trainings, please message Dr. Philip Meacham or the STRIDES Training Team at STRIDESTraining@nih.gov.
DetailsOrganizerNIH STRIDESWhenThu, Jul 20, 2023 - 9:00 am - 5:00 pmWhereOnline Webinar |
Picture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful? The cloud is here for you! The NIH STRIDES Initiative and Google have teamed up to create a custom course for NIH staff and NIH-funded researchers: “Medical Imaging and Machine Learning in Google Cloud”. The course introduces Google Cloud’s Medical Imaging Suite and works with real-life data sets from the National Cancer Institute’s Imaging Data Commons. The course is offered at no cost in June, July, August, and September 2023. Want more course details? Required Prerequisites Format Duration & Dates Experience working with medical imaging data Basic understanding of machine learning Basic familiarity with Google Cloud or watch this 6-minute video before attending the course Virtual with live instruction from Google experts One full day – 9:00 AM to 5:00 PM EST with the following date options: Wednesday, June 21 Thursday, July 20 Tuesday, August 15 Thursday, September 21 Ready to sign up? For NIH staff: Visit the course page in the LMS to learn more. Click the “Begin Registration” button to select your preferred date. For Institution and Organization staff associated with NIH: Email Dr. Philip Meacham indicating your interest and any potential time zone conflicts. If you have any questions about this course or additional cloud trainings, please message Dr. Philip Meacham or the STRIDES Training Team at STRIDESTraining@nih.gov. | 2023-07-20 09:00:00 | Online Webinar | Any | Cloud | Online | NIH STRIDES | 0 | Picture Perfect – Free Medical Imaging and Machine Learning with Google Cloud Training! | ||
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Part Of: Toward Reproducibility with R on Biowulf CourseDescriptionLesson 3 of Toward Reproducibility with R on Biowulf will focus on enhancing reproducibility as you get started using R. In particular, participants will learn how to set up and organize an R project and use the renv package for R dependency management. Lesson 3 of Toward Reproducibility with R on Biowulf will focus on enhancing reproducibility as you get started using R. In particular, participants will learn how to set up and organize an R project and use the renv package for R dependency management. RegisterOrganizerBTEPWhenThu, Jul 20, 2023 - 1:00 pm - 2:00 pmWhereOnline |
Lesson 3 of Toward Reproducibility with R on Biowulf will focus on enhancing reproducibility as you get started using R. In particular, participants will learn how to set up and organize an R project and use the renv package for R dependency management. | 2023-07-20 13:00:00 | Beginner | NIH High Performance Unix Cluster Biowulf,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | R Project Management and renv | ||
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DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. The first part of the class will be 10:00 a.m. - 12:00 p.m. followed by a break from 12:00-1:00 p.m. The class resume at 1:00 p.m. and conclude at 4:00 p.m. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. For more information, contact Alicia Livinski, alicia.livinski@nih.gov
DetailsOrganizerNIH LibraryWhenMon, Jul 24, 2023 - 10:00 am - 4:00 pmWhereOnline Webinar |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. The first part of the class will be 10:00 a.m. - 12:00 p.m. followed by a break from 12:00-1:00 p.m. The class resume at 1:00 p.m. and conclude at 4:00 p.m. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. For more information, contact Alicia Livinski, alicia.livinski@nih.gov | 2023-07-24 10:00:00 | Online Webinar | Any | Online | Ninet Sinaii | NIH Library | 0 | Part 3: Overview of Common Statistical Tests | ||
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Part Of: Introduction to Bioinformatics Summer Series CourseDescriptionParticipants will learn how Jupyter Lab Notebooks can be used to organize, manage, and share their bioinformatics analyses projects. The instructor will demonstrate how to install, launch, and interact with Jupyter Lab Notebooks. This will include managing code, data, and visualizations, which are kept all in one place within the Notebook. A great class for those starting a new bioinformatics project. Participants will learn how Jupyter Lab Notebooks can be used to organize, manage, and share their bioinformatics analyses projects. The instructor will demonstrate how to install, launch, and interact with Jupyter Lab Notebooks. This will include managing code, data, and visualizations, which are kept all in one place within the Notebook. A great class for those starting a new bioinformatics project. RegisterOrganizerBTEPWhenTue, Jul 25, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Participants will learn how Jupyter Lab Notebooks can be used to organize, manage, and share their bioinformatics analyses projects. The instructor will demonstrate how to install, launch, and interact with Jupyter Lab Notebooks. This will include managing code, data, and visualizations, which are kept all in one place within the Notebook. A great class for those starting a new bioinformatics project. | 2023-07-25 13:00:00 | Online Webinar | Any | Bioinformatics,Jupyter Notebooks | Online | Joe Wu (BTEP) | BTEP | 0 | Managing Bioinformatics Projects with Jupyter Notebook | |
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DescriptionCommunity/Patient Engaged AI for Biomedical Research: This session showcases technologies and tools that foster patient engagement in cancer research. It builds upon the well-established tradition of community-based participatory research in the U.S. and the EU, while incorporating the latest advancements in explainable AI. The trans-NCI Artificial Intelligence (AI) Working Group is proud to announce a series of meetings focused on discussing "Equitable and Engaged AI to Advance Biomedical ...Read More Community/Patient Engaged AI for Biomedical Research: This session showcases technologies and tools that foster patient engagement in cancer research. It builds upon the well-established tradition of community-based participatory research in the U.S. and the EU, while incorporating the latest advancements in explainable AI. The trans-NCI Artificial Intelligence (AI) Working Group is proud to announce a series of meetings focused on discussing "Equitable and Engaged AI to Advance Biomedical Research." These meetings will bring together diverse subject matter experts from both the United States and the European Union to facilitate robust discussions and collaborative efforts in the field of equitable and engaged AI. The objective of these meetings is to maximize interactivity, facilitate collaboration building, and encourage open sharing of information and novel ideas. DetailsOrganizerNCIWhenWed, Jul 26, 2023 - 9:00 am - 12:00 pmWhereOnline Webinar |
Community/Patient Engaged AI for Biomedical Research: This session showcases technologies and tools that foster patient engagement in cancer research. It builds upon the well-established tradition of community-based participatory research in the U.S. and the EU, while incorporating the latest advancements in explainable AI. The trans-NCI Artificial Intelligence (AI) Working Group is proud to announce a series of meetings focused on discussing "Equitable and Engaged AI to Advance Biomedical Research." These meetings will bring together diverse subject matter experts from both the United States and the European Union to facilitate robust discussions and collaborative efforts in the field of equitable and engaged AI. The objective of these meetings is to maximize interactivity, facilitate collaboration building, and encourage open sharing of information and novel ideas. | 2023-07-26 09:00:00 | Online Webinar | Any | Artificial Intelligence / Machine Learning | Online | Peter Funk Ph.D.,Tina Hernandez-Boussard Ph.D.,Phillip Kellmeyer M.D.,Katherine Kim Ph.D.,Bradley Malin Ph.D.,Pietro Michelucci Ph.D.,Denis R Newman-Griffis Ph.D.,Mats Nordlund Ph.D.,Rickard Sohlberg DR H.C | NCI | 0 | Artificial Intelligence Engagement Seminar Series. Community/Patient Engaged AI for Biomedical Research | |
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DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of the principles of epidemiology, ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed). Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenWed, Jul 26, 2023 - 1:00 pm - 4:00 pmWhereOnline Webinar |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed). Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-07-26 13:00:00 | Online Webinar | Any | Statistics | Online | Ninet Sinaii | NIH Library | 0 | Part 4: A Review of Epidemiology Concepts and Statistics | |
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DescriptionThis new webinar will be covering and discussing the host responses to vaccines with invited speakers Dr. Oliver He and Dr. Guanming Wu. During the hour long webinar, Vaccine Induced Gene Expression Analysis Tool (VIGET), a tool developed with the aim to provide an interactive online tool for users to efficiently and robustly analyze the host immune response gene expression data collected in the ImmPort/GEO databases will be ...Read More This new webinar will be covering and discussing the host responses to vaccines with invited speakers Dr. Oliver He and Dr. Guanming Wu. During the hour long webinar, Vaccine Induced Gene Expression Analysis Tool (VIGET), a tool developed with the aim to provide an interactive online tool for users to efficiently and robustly analyze the host immune response gene expression data collected in the ImmPort/GEO databases will be explored. VIGET allows users to select vaccines, choose ImmPort studies, set up analysis models by choosing confounding variables and two groups of samples having different vaccination times, and then perform differential expression analysis to select genes for pathway enrichment analysis and functional interaction network construction using the Reactome’s web services. DetailsWhenThu, Jul 27, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
This new webinar will be covering and discussing the host responses to vaccines with invited speakers Dr. Oliver He and Dr. Guanming Wu. During the hour long webinar, Vaccine Induced Gene Expression Analysis Tool (VIGET), a tool developed with the aim to provide an interactive online tool for users to efficiently and robustly analyze the host immune response gene expression data collected in the ImmPort/GEO databases will be explored. VIGET allows users to select vaccines, choose ImmPort studies, set up analysis models by choosing confounding variables and two groups of samples having different vaccination times, and then perform differential expression analysis to select genes for pathway enrichment analysis and functional interaction network construction using the Reactome’s web services. | 2023-07-27 12:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Dr. Oliver He,Dr. Guanming Wu | 0 | VIGET: A web portal for study of vaccine-induced host responses based on Reactome pathways and ImmPort data | ||
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DescriptionFor 35 years, NCBI has collected a vast amount of sequence information including from a diverse array of organisms, including viruses, bacteria and fungi. With all of the databases and tools available at NCBI, it is sometimes daunting to know where to start looking to find helpful data for a research project. This workshop is designed to provide guided, hands-on experience with the NCBI website to find biosequence-based information to support viral, bacterial ...Read More For 35 years, NCBI has collected a vast amount of sequence information including from a diverse array of organisms, including viruses, bacteria and fungi. With all of the databases and tools available at NCBI, it is sometimes daunting to know where to start looking to find helpful data for a research project. This workshop is designed to provide guided, hands-on experience with the NCBI website to find biosequence-based information to support viral, bacterial or fungal pathogen research. In this workshop you will learn how to:
Note: This workshop was designed for both student researchers and their supportive educators and mentors. We expect that participants in this workshop will already have familiarity with basic molecular biology concepts. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . DetailsOrganizerNCBIWhenThu, Jul 27, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
For 35 years, NCBI has collected a vast amount of sequence information including from a diverse array of organisms, including viruses, bacteria and fungi. With all of the databases and tools available at NCBI, it is sometimes daunting to know where to start looking to find helpful data for a research project. This workshop is designed to provide guided, hands-on experience with the NCBI website to find biosequence-based information to support viral, bacterial or fungal pathogen research. In this workshop you will learn how to: Identify pathogens based on isolate sequences. Discover available NCBI information for a particular or closely-related organism. View and download genomic sequences and annotation data. Access specialty resources including the Pathogen Detection Project and NCBI Virus. Note: This workshop was designed for both student researchers and their supportive educators and mentors. We expect that participants in this workshop will already have familiarity with basic molecular biology concepts. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . | 2023-07-27 13:00:00 | Online Webinar | Any | Online | Rana Morris (NCBI) | NCBI | 0 | An Introduction to Pathogen Data at NCBI | ||
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DescriptionThis course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about ...Read More This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. DetailsOrganizerNIH LibraryWhenThu, Jul 27, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2023-07-27 13:00:00 | Online Webinar | Any | Data Management | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Data Management and Sharing: Part 1 | |
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Part Of: Toward Reproducibility with R on Biowulf CourseDescriptionLesson 4 of Toward Reproducibility with R on Biowulf will focus on using R from the command line and submitting R scripts using sbatch on Biowulf. There will also be a brief discussion on paralellizing R code. Lesson 4 of Toward Reproducibility with R on Biowulf will focus on using R from the command line and submitting R scripts using sbatch on Biowulf. There will also be a brief discussion on paralellizing R code. RegisterOrganizerBTEPWhenThu, Jul 27, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Lesson 4 of Toward Reproducibility with R on Biowulf will focus on using R from the command line and submitting R scripts using sbatch on Biowulf. There will also be a brief discussion on paralellizing R code. | 2023-07-27 13:00:00 | Online Webinar | Beginner | NIH High Performance Unix Cluster Biowulf,R programming | Online | Alex Emmons (BTEP),Joe Wu (BTEP),Wolfgang Resch (NIH/CIT) | BTEP | 0 | Submitting R Scripts via command line | |
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DescriptionThe trans-NCI Artificial Intelligence (AI) Working Group is proud to announce a series of meetings focused on discussing "Equitable and Engaged AI to Advance Biomedical Research." These meetings will bring together diverse subject matter experts from both the United States and the European Union to facilitate robust discussions and collaborative efforts in the field of equitable and engaged AI. The objective of these meetings is to maximize interactivity, facilitate collaboration building, and encourage open ...Read More The trans-NCI Artificial Intelligence (AI) Working Group is proud to announce a series of meetings focused on discussing "Equitable and Engaged AI to Advance Biomedical Research." These meetings will bring together diverse subject matter experts from both the United States and the European Union to facilitate robust discussions and collaborative efforts in the field of equitable and engaged AI. The objective of these meetings is to maximize interactivity, facilitate collaboration building, and encourage open sharing of information and novel ideas. Ethical AI and the Inclusion of Underserved Communities: This session aims to explore the ethical use of AI and foster the inclusion of underserved communities. It builds upon the principles of explainable AI, trust in AI, and technical strategies to address challenges associated with limited data sets and data annotation. DetailsOrganizerNCIWhenFri, Jul 28, 2023 - 9:00 am - 12:00 pmWhereOnline Webinar |
The trans-NCI Artificial Intelligence (AI) Working Group is proud to announce a series of meetings focused on discussing "Equitable and Engaged AI to Advance Biomedical Research." These meetings will bring together diverse subject matter experts from both the United States and the European Union to facilitate robust discussions and collaborative efforts in the field of equitable and engaged AI. The objective of these meetings is to maximize interactivity, facilitate collaboration building, and encourage open sharing of information and novel ideas. Ethical AI and the Inclusion of Underserved Communities: This session aims to explore the ethical use of AI and foster the inclusion of underserved communities. It builds upon the principles of explainable AI, trust in AI, and technical strategies to address challenges associated with limited data sets and data annotation. | 2023-07-28 09:00:00 | Online Webinar | Any | Artificial Intelligence / Machine Learning | Online | Bradley Malin Ph.D.,Denis R Newman-Griffis Ph.D.,Katherine Kim Ph.D.,Mats Nordlund Ph.D.,Peter Funk Ph.D.,Pietro Michelucci Ph.D.,Rickard Sohlberg DR H.C,Tina Hernandez-Boussard Ph.D.,Philipp Kellmeyer M.D. | NCI | 0 | Artificial Intelligence Engagement Seminar Series. Ethical AI and the Inclusion of Underserved Communities | |
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DescriptionThis course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about ...Read More This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. DetailsOrganizerNIH LibraryWhenFri, Jul 28, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2023-07-28 13:00:00 | Online Webinar | Any | Data Management | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Data Management and Sharing: Part 2 | |
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DescriptionPython is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of ...Read More Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. DetailsOrganizerNIH LibraryWhenWed, Aug 02, 2023 - 2:00 pm - 3:00 pmWhereOnline |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. | 2023-08-02 14:00:00 | Any | Data Science | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | ||
1153 |
DescriptionIdentification of evolutionarily related DNA or protein sequences (homologs) is a crucial step in many biology workflows. For example, homologous sequences are used to infer relationships between organisms, understand how sequence changes affect observable traits, and identify potential animal models for genetic disorders. NCBI’s BLAST program is a standard tool for identifying homologs, and this virtual workshop will teach you best practices for using it for your analysis goals. You will ...Read More Identification of evolutionarily related DNA or protein sequences (homologs) is a crucial step in many biology workflows. For example, homologous sequences are used to infer relationships between organisms, understand how sequence changes affect observable traits, and identify potential animal models for genetic disorders. NCBI’s BLAST program is a standard tool for identifying homologs, and this virtual workshop will teach you best practices for using it for your analysis goals. You will learn when and how to use important but often misunderstood aspects of the BLAST programs and databases, such as when it’s helpful to change the BLAST program by using filters and adjusting parameters such as word size, e-value cutoff, and maximum target sequences. In this workshop, you will use web-based NCBI resources to:
Note: This online, interactive workshop is designed for any life scientist, including research students and educators, who wants to use BLAST in their project or workflow. Familiarity with genetics and evolutionary biology vocabulary and concepts is recommended for attendees. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . DetailsOrganizerNCBIWhenThu, Aug 03, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
Identification of evolutionarily related DNA or protein sequences (homologs) is a crucial step in many biology workflows. For example, homologous sequences are used to infer relationships between organisms, understand how sequence changes affect observable traits, and identify potential animal models for genetic disorders. NCBI’s BLAST program is a standard tool for identifying homologs, and this virtual workshop will teach you best practices for using it for your analysis goals. You will learn when and how to use important but often misunderstood aspects of the BLAST programs and databases, such as when it’s helpful to change the BLAST program by using filters and adjusting parameters such as word size, e-value cutoff, and maximum target sequences. In this workshop, you will use web-based NCBI resources to: Select the correct NCBI alignment tool and BLAST database for your search goal Use other NCBI sequence analysis services including COBALT, a multiple protein sequence alignment tool Make use of the new organism-based nucleotide and ClusteredNR protein databases to easily assess the taxonomic diversity of your BLAST results Visually examine results using auxiliary tools such as TreeViewer, Multiple Sequence Alignment, Graphical Sequence, and the Genome Data viewers. Note: This online, interactive workshop is designed for any life scientist, including research students and educators, who wants to use BLAST in their project or workflow. Familiarity with genetics and evolutionary biology vocabulary and concepts is recommended for attendees. Due to curricular and technical limits, we’ve capped the number of spots to provide the best workshop experience. If you register to apply, you will be notified of your application status approximately 2 weeks before the scheduled event. We recommend having access to a stable internet connection and modern web browser on a laptop or desktop computer to be able to successfully participate in the hands-on exercises. Please see our FAQs page for more information and if you still have questions about the NCBI Outreach Events program or this specific workshop, email us at workshops@ncbi.nlm.nih.gov . | 2023-08-03 13:00:00 | Online Webinar | Any | Online | Alexa Salsbury (NCBI),Sally Chang (NCBI) | NCBI | 0 | Exploring Evolutionary Relationships Using BLAST | ||
1222 |
DescriptionThis session will address key requirements of the NIH Genomic Data Sharing (GDS) Policy and implementation within the NIH IRP. It will also include discussion about harmonization of the GDS Policy with the NIH Data Management and Sharing (DMS) Policy. Individuals with disabilities who need reasonable accommodation to participate in this event should contact Peg Sanders at margaret.sanders@nih.gov. This session will address key requirements of the NIH Genomic Data Sharing (GDS) Policy and implementation within the NIH IRP. It will also include discussion about harmonization of the GDS Policy with the NIH Data Management and Sharing (DMS) Policy. Individuals with disabilities who need reasonable accommodation to participate in this event should contact Peg Sanders at margaret.sanders@nih.gov. DetailsOrganizerNIH Office of Human Subjects Research ProtectionsWhenMon, Aug 07, 2023 - 3:00 pm - 4:00 pmWhereOnline Webinar |
This session will address key requirements of the NIH Genomic Data Sharing (GDS) Policy and implementation within the NIH IRP. It will also include discussion about harmonization of the GDS Policy with the NIH Data Management and Sharing (DMS) Policy. Individuals with disabilities who need reasonable accommodation to participate in this event should contact Peg Sanders at margaret.sanders@nih.gov. | 2023-08-07 15:00:00 | Online Webinar | Any | Data Sharing | Online | Dr. Julia Slutsman Director of the Genomic Data Sharing Policy Implementation Office,Dr. Cheryl Jacobs Health Science Policy Analyst and Team Lead Scientific Data Sharing Policy | NIH Office of Human Subjects Research Protections | 0 | Implementing the NIH Genomic Data Sharing Policy: What Intramural Investigators Need to Know | |
1170 |
DescriptionPicture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful?Read More Picture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful? The cloud is here for you! The NIH STRIDES Initiative and Google have teamed up to create a custom course for NIH staff and NIH-funded researchers: “Medical Imaging and Machine Learning in Google Cloud”. The course introduces Google Cloud’s Medical Imaging Suite and works with real-life data sets from the National Cancer Institute’s Imaging Data Commons. The course is offered at no cost in June, July, August, and September 2023.
Want more course details? Required Prerequisites Format Duration & Dates Experience working with medical imaging data Basic understanding of machine learning Basic familiarity with Google Cloud or watch this 6-minute video before attending the course Virtual with live instruction from Google experts One full day – 9:00 AM to 5:00 PM EST with the following date options:
Ready to sign up? For NIH staff: Visit the course page in the LMS to learn more. Click the “Begin Registration” button to select your preferred date. For Institution and Organization staff associated with NIH: Email Dr. Philip Meacham indicating your interest and any potential time zone conflicts.
If you have any questions about this course or additional cloud trainings, please message Dr. Philip Meacham or the STRIDES Training Team at STRIDESTraining@nih.gov.
DetailsOrganizerNIH STRIDESWhenTue, Aug 15, 2023 - 9:00 am - 5:00 pmWhereOnline Webinar |
Picture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful? The cloud is here for you! The NIH STRIDES Initiative and Google have teamed up to create a custom course for NIH staff and NIH-funded researchers: “Medical Imaging and Machine Learning in Google Cloud”. The course introduces Google Cloud’s Medical Imaging Suite and works with real-life data sets from the National Cancer Institute’s Imaging Data Commons. The course is offered at no cost in June, July, August, and September 2023. Want more course details? Required Prerequisites Format Duration & Dates Experience working with medical imaging data Basic understanding of machine learning Basic familiarity with Google Cloud or watch this 6-minute video before attending the course Virtual with live instruction from Google experts One full day – 9:00 AM to 5:00 PM EST with the following date options: Wednesday, June 21 Thursday, July 20 Tuesday, August 15 Thursday, September 21 Ready to sign up? For NIH staff: Visit the course page in the LMS to learn more. Click the “Begin Registration” button to select your preferred date. For Institution and Organization staff associated with NIH: Email Dr. Philip Meacham indicating your interest and any potential time zone conflicts. If you have any questions about this course or additional cloud trainings, please message Dr. Philip Meacham or the STRIDES Training Team at STRIDESTraining@nih.gov. | 2023-08-15 09:00:00 | Online Webinar | Any | Cloud | Online | NIH STRIDES | 0 | Picture Perfect – Free Medical Imaging and Machine Learning with Google Cloud Training! | ||
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DescriptionThis talk will cover what to do when you first start looking at a new dataset. We will also discuss how to efficiently orient the data to avoid pitfalls and maximize knowledge gain in downstream analysis. This is a beginner course with no prerequisites. Some basic R and Excel commands will be covered briefly, but experience in these is not required. This session will be recorded, and materials will be shared with ...Read More This talk will cover what to do when you first start looking at a new dataset. We will also discuss how to efficiently orient the data to avoid pitfalls and maximize knowledge gain in downstream analysis. This is a beginner course with no prerequisites. Some basic R and Excel commands will be covered briefly, but experience in these is not required. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. Location: Building 549, Executive Board Room, NCI-Frederick Campus or Join via Webex Additional Webex info.: Meeting number (access code): 2311 984 1392. Meeting password: Data@3752! DetailsOrganizerABCS/FNLCRWhenTue, Aug 15, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
This talk will cover what to do when you first start looking at a new dataset. We will also discuss how to efficiently orient the data to avoid pitfalls and maximize knowledge gain in downstream analysis. This is a beginner course with no prerequisites. Some basic R and Excel commands will be covered briefly, but experience in these is not required. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. Location: Building 549, Executive Board Room, NCI-Frederick Campus or Join via Webex Additional Webex info.: Meeting number (access code): 2311 984 1392. Meeting password: Data@3752! | 2023-08-15 12:00:00 | Online Webinar | Any | Statistics | Hybrid | Duncan Donohue PhD (Data Management Services Inc. a BRMI company.) | ABCS/FNLCR | 0 | The Statistics for Lunch Series Presents: Introduction to Data Exploration | |
1216 |
Part Of: Python Introductory Education Series (PIES) CourseDescriptionThis is the first class of the Python Introductory Education Series. It is meant to provide an overview of the Python programming language. Critically, it will ensure that participants can sign onto Biowulf and start a Jupyter Lab session, which is the tool that will be used for interactions with Python for the duration of this course series. Meeting link: This is the first class of the Python Introductory Education Series. It is meant to provide an overview of the Python programming language. Critically, it will ensure that participants can sign onto Biowulf and start a Jupyter Lab session, which is the tool that will be used for interactions with Python for the duration of this course series. Meeting link: Meeting number: Join by video system Join by phone RegisterOrganizerBTEPWhenTue, Aug 15, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This is the first class of the Python Introductory Education Series. It is meant to provide an overview of the Python programming language. Critically, it will ensure that participants can sign onto Biowulf and start a Jupyter Lab session, which is the tool that will be used for interactions with Python for the duration of this course series. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m5ab31c664ec6a805d36742a85da3ad40 Meeting number:2310 916 7142Password:iEXJBgB@828 Join by video systemDial 23109167142@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2310 916 7142 | 2023-08-15 13:00:00 | Online | Beginner | Data Science,Python | Data Science,Python | Online | Joe Wu (BTEP) | BTEP | 0 | Introduction to Python |
1199 |
Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescriptionHeatmaps and volcano plots are common data visualizations in bioinformatic analyses of genomic data, such as bulk RNA-seq. While both plot types can be used to visualize gene expression, heatmaps can be used to examine expression data across samples, and in combination with clustering techniques, reveal potential patterns in the data. Volcano plots demonstrate the direction, distribution, and statistical significance of gene expression between experimental conditions (example tumor vs. non-tumor, or drug ...Read More Heatmaps and volcano plots are common data visualizations in bioinformatic analyses of genomic data, such as bulk RNA-seq. While both plot types can be used to visualize gene expression, heatmaps can be used to examine expression data across samples, and in combination with clustering techniques, reveal potential patterns in the data. Volcano plots demonstrate the direction, distribution, and statistical significance of gene expression between experimental conditions (example tumor vs. non-tumor, or drug treated vs. non-treated). In this coding club, we will demonstrate how to construct these plots using the R/Bioconductor tools ComplexHeatmap and EnhancedVolcano.
RegisterOrganizerBTEPWhenWed, Aug 16, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Heatmaps and volcano plots are common data visualizations in bioinformatic analyses of genomic data, such as bulk RNA-seq. While both plot types can be used to visualize gene expression, heatmaps can be used to examine expression data across samples, and in combination with clustering techniques, reveal potential patterns in the data. Volcano plots demonstrate the direction, distribution, and statistical significance of gene expression between experimental conditions (example tumor vs. non-tumor, or drug treated vs. non-treated). In this coding club, we will demonstrate how to construct these plots using the R/Bioconductor tools ComplexHeatmap and EnhancedVolcano. | 2023-08-16 11:00:00 | Online Webinar | Any | Data Visualization,R programming | Bioconductor | Online | Joe Wu (BTEP) | BTEP | 1 | Using EnhancedVolcano and ComplexHeatmap to visualize -omics data |
1228 |
DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room
Meeting ID: 161 010 1183 Passcode: 158916 DetailsWhenWed, Aug 16, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) be prepared to wait your turn if staff are already helping other users Meeting ID: 161 010 1183 Passcode: 158916 | 2023-08-16 13:00:00 | Online Webinar | Any | Bioinformatics | Online | 0 | Zoom-In Consult for Biowulf Users | |||
1217 |
Part Of: Python Introductory Education Series (PIES) CourseDescriptionIn the second class of the Python Introductory Education Series, participants will start to dive into Python. Participants will walk away with knowledge of common Python data types and structures, how to assign variables, load external Python packages, and import as well as view tabular data in Python. A Biowulf account and knowledge of working on Biowulf is needed for this class.
In the second class of the Python Introductory Education Series, participants will start to dive into Python. Participants will walk away with knowledge of common Python data types and structures, how to assign variables, load external Python packages, and import as well as view tabular data in Python. A Biowulf account and knowledge of working on Biowulf is needed for this class.
Meeting number: Join by video system Join by phone RegisterOrganizerBTEPWhenThu, Aug 17, 2023 - 1:00 pm - 2:00 pmWhereOnline |
In the second class of the Python Introductory Education Series, participants will start to dive into Python. Participants will walk away with knowledge of common Python data types and structures, how to assign variables, load external Python packages, and import as well as view tabular data in Python. A Biowulf account and knowledge of working on Biowulf is needed for this class. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m5ab31c664ec6a805d36742a85da3ad40 Meeting number:2310 916 7142Password:iEXJBgB@828 Join by video systemDial 23109167142@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2310 916 7142 | 2023-08-17 13:00:00 | Online | Beginner | Data Science,Python | Data Science,Python | Online | Joe Wu (BTEP) | BTEP | 0 | Python Data Types and Structures |
1223 |
DescriptionLearn how to use the FlowJo workspace, including how to load samples, initiate a basic gating scheme, generate statistics, and create graphical layouts. Learn how to use the FlowJo workspace, including how to load samples, initiate a basic gating scheme, generate statistics, and create graphical layouts. DetailsOrganizerCBIITWhenFri, Aug 18, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
Learn how to use the FlowJo workspace, including how to load samples, initiate a basic gating scheme, generate statistics, and create graphical layouts.We'll also discuss how to access sample quality and compensation tools. Designed for those new to the software. | 2023-08-18 10:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Veronica Obregon-Perko Ph.D. FlowJo Application Scientist (Southeast US) BD Life Sciences | CBIIT | 0 | Introduction to FlowJo Cytometry training | |
1224 |
DescriptionXena can help you answer questions like: Xena can help you answer questions like: DetailsOrganizerCBIITWhenMon, Aug 21, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
Xena can help you answer questions like:• Is over-expression of this gene associated with lower survival in these two cancer types?• Is this gene differentially expressed in TCGA tumor vs GTEx normal?• What are the most differentially expressed genes for the subgroups I just made? | 2023-08-21 12:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Mary Goldman Design and Outreach Engineer | CBIIT | 0 | Introduction to UCSC Xena: a tool for multi-omic data & associate clinical and phenotypic annotations | |
1226 |
DescriptionIn this introduction webinar, broken down into two 40 minute sessions one week apart, we will look at a biologist-friendly way to analyze RNAseq data in Qlucore, integrated GSEA, and then taking results into NDEx + Cytoscape for biological network analysis. In this introduction webinar, broken down into two 40 minute sessions one week apart, we will look at a biologist-friendly way to analyze RNAseq data in Qlucore, integrated GSEA, and then taking results into NDEx + Cytoscape for biological network analysis. DetailsOrganizerCBIITWhenTue, Aug 22, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
In this introduction webinar, broken down into two 40 minute sessions one week apart, we will look at a biologist-friendly way to analyze RNAseq data in Qlucore, integrated GSEA, and then taking results into NDEx + Cytoscape for biological network analysis. | 2023-08-22 10:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Yana Stackpole (Qlucore) | CBIIT | 0 | Part 1- Visualization-guided analysis + biological interpretation of OMICs data in Qlucore | |
1227 |
DescriptionIn this session, we will discuss conceptual overview of a computing cluster, how to get access to the NCI cluster in Frederick (FRCE) and how to connect and run basic programs. We will also provide use case examples and share details for getting additional help. The session is geared towards users new to computing clusters and/or those that are not familiar with FRCE. This session will be recorded, and materials will ...Read More In this session, we will discuss conceptual overview of a computing cluster, how to get access to the NCI cluster in Frederick (FRCE) and how to connect and run basic programs. We will also provide use case examples and share details for getting additional help. The session is geared towards users new to computing clusters and/or those that are not familiar with FRCE. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. Location: Hybrid; Building 549, Executive Board Room, NCI-Frederick Campus You will receive a confirmation email with Webex login information.
DetailsOrganizerAdvanced Biomedical Computational Sciences (ABCS)WhenTue, Aug 22, 2023 - 12:00 pm - 1:00 pmWhereBuilding 549, Executive Board Room, NCI-Frederick Campus |
In this session, we will discuss conceptual overview of a computing cluster, how to get access to the NCI cluster in Frederick (FRCE) and how to connect and run basic programs. We will also provide use case examples and share details for getting additional help. The session is geared towards users new to computing clusters and/or those that are not familiar with FRCE. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. Location: Hybrid; Building 549, Executive Board Room, NCI-Frederick Campus You will receive a confirmation email with Webex login information. | 2023-08-22 12:00:00 | Building 549, Executive Board Room, NCI-Frederick Campus | Any | Computing Resources | Hybrid | Natasha Pacheco PhD (ABCS FNLCR),Samuel Walters-Nevet (Statistical Consulting and Scientific Programming Services FNLCR Data Management Services Inc. a BRMi company) | Advanced Biomedical Computational Sciences (ABCS) | 0 | The FRCE and Computational Sciences Series Presents: Frederick Research Computing Environment (FRCE): A "Quick-Start" Guide to the SLURM Cluster Environment | |
1218 |
Part Of: Python Introductory Education Series (PIES) CourseDescriptionThis class of the Python Introductory Education Series will introduce participants to working with and wrangling tabular data using the package Pandas. A Biowulf account and knowledge of working on Biowulf is needed for this class. Meeting link: Meeting number: Join by video system This class of the Python Introductory Education Series will introduce participants to working with and wrangling tabular data using the package Pandas. A Biowulf account and knowledge of working on Biowulf is needed for this class. Meeting link: Meeting number: Join by video system Join by phone RegisterOrganizerBTEPWhenTue, Aug 22, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This class of the Python Introductory Education Series will introduce participants to working with and wrangling tabular data using the package Pandas. A Biowulf account and knowledge of working on Biowulf is needed for this class. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m5ab31c664ec6a805d36742a85da3ad40 Meeting number:2310 916 7142Password:iEXJBgB@828 Join by video systemDial 23109167142@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2310 916 7142 | 2023-08-22 13:00:00 | Online | Beginner | Data Science,Python | Data Science,Python | Online | Joe Wu (BTEP) | BTEP | 0 | Data Wrangling using Python |
1229 |
DescriptionAttend this virtual junior investigator session and hear Oak Ridge National Lab’s Dr. Adam Spannaus and Stanford’s Dr. Chenchen Zhu describe how they use analyses and AI models to support the following Cancer MoonshotSM initiatives: Attend this virtual junior investigator session and hear Oak Ridge National Lab’s Dr. Adam Spannaus and Stanford’s Dr. Chenchen Zhu describe how they use analyses and AI models to support the following Cancer MoonshotSM initiatives: This webinar is part of the Cancer Moonshot Seminar Series. The series showcases research progress on the Cancer Moonshot initiatives. Those initiatives were developed to support the 10 recommendations from the Blue Ribbon Panel report. DetailsOrganizerCBIITWhenThu, Aug 24, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
Attend this virtual junior investigator session and hear Oak Ridge National Lab’s Dr. Adam Spannaus and Stanford’s Dr. Chenchen Zhu describe how they use analyses and AI models to support the following Cancer MoonshotSM initiatives: Build a National Cancer Data Ecosystem Generate Human Tumor Atlases This webinar is part of the Cancer Moonshot Seminar Series. The series showcases research progress on the Cancer Moonshot initiatives. Those initiatives were developed to support the 10 recommendations from the Blue Ribbon Panel report. | 2023-08-24 12:00:00 | Online Webinar | Any | Data Science | Online | Adam Spannaus (Advanced Computing for Health Sciences Oak Ridge National Laboratory),Chenchen Zhu (Stanford University) | CBIIT | 0 | Spatial Data Analyses and AI Models for Cancer Research | |
1225 |
DescriptionIn this introductory session, we will look at a biologist-friendly way to analyze RNAseq data in Qlucore, integrated GSEA, and then taking results into NDEx + Cytoscape for biological network analysis. In this introductory session, we will look at a biologist-friendly way to analyze RNAseq data in Qlucore, integrated GSEA, and then taking results into NDEx + Cytoscape for biological network analysis. DetailsOrganizerCBIITWhenTue, Aug 29, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
In this introductory session, we will look at a biologist-friendly way to analyze RNAseq data in Qlucore, integrated GSEA, and then taking results into NDEx + Cytoscape for biological network analysis. | 2023-08-29 10:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Yana Stackpole (Qlucore) | CBIIT | 0 | Part 2- Visualization-guided analysis + biological interpretation of OMICs data in Qlucore | |
1219 |
Part Of: Python Introductory Education Series (PIES) CourseDescriptionThis class will wrap up the Python Introductory Education Series by showing participants how to create data visualizations. A Biowulf account and knowledge of working on Biowulf is needed for this class. Meeting link: Join by video system This class will wrap up the Python Introductory Education Series by showing participants how to create data visualizations. A Biowulf account and knowledge of working on Biowulf is needed for this class. Meeting link: Join by video system Join by phone Global Call-in numbers: RegisterOrganizerBTEPWhenTue, Aug 29, 2023 - 1:00 pm - 2:00 pmWhereOnline |
This class will wrap up the Python Introductory Education Series by showing participants how to create data visualizations. A Biowulf account and knowledge of working on Biowulf is needed for this class. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mc87d65d367d806a735b5bfa7bf18b813 Meeting number:2307 432 2909Password:nXBWCi6E2@6 Join by video systemDial 23074322909@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2307 432 2909Host PIN: 2784 Global Call-in numbers:https://cbiit.webex.com/webappng/sites/cbiit/meeting/info/8e4de5d2517047eea087c3372219a6d3# | 2023-08-29 13:00:00 | Online | Beginner | Data Science,Python | Data Science,Python | Online | Joe Wu (BTEP) | BTEP | 0 | Data Visualization using Python |
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DescriptionPython Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenTue, Sep 05, 2023 - 1:00 pm - 3:00 pmWhereOnline |
Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. | 2023-09-05 13:00:00 | Online | Any | Python Programming | Online | Burke Squires (NIAID) | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Python Programming for Scientists. Intro to Jupyter Notebooks | |
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DescriptionWith the advancements in single cell and spatial profiling technologies and methods, some of us thought it would be helpful to re-establish a community of end users on campus. We invite those that are interested to attend an introductory meeting Wednesday (Sept 6th, 2023). This users group aims to coordinate a regular schedule of presentations and discussion meetings where we can present our work in a friendly ...Read More With the advancements in single cell and spatial profiling technologies and methods, some of us thought it would be helpful to re-establish a community of end users on campus. We invite those that are interested to attend an introductory meeting Wednesday (Sept 6th, 2023). This users group aims to coordinate a regular schedule of presentations and discussion meetings where we can present our work in a friendly environment and discuss common hurdles that we may encounter in the implementation of these technologies and in our research. Overall: The meeting format will be “lightning talks” (~ 5 minutes each) to get a taste of some of the spatial profiling applications being used at NIH. Following the talks, there will be light refreshments and everyone is welcome to stay and chat with colleagues. ___________________________________________________________________________ Our fantastic speaker line-up: “Single-cell Spatial-Transcriptomic Analysis Revealed Leukemia-immune cell interactions in Refractory and Relapsed AML Patients Receiving Pembrolizumab and Decitabine” Speaker: Chen Zhao, NCI-CCR
“Detecting Viral Transcripts with Spatial Profiling in Kaposi Sarcoma Patient Samples” Speaker: Joe Ziegelbauer, NCI-CCR
“Spatial Transcriptomic Profiling of the Immune Response to Toxoplasma gondii Infection in the Brain” Speaker: Alex Clark, NCI-CCR
“Spatial Transcriptomics to Evaluate Heterogeneity of Basal Forebrain Cholinergic Neurons” Speaker: Mala Ananth, NINDS
“Single-cell Spatial Transcriptomic Technologies Reveal Cell Type-specific Changes in a Mouse Model of a-Synucleinopathy” Speaker: Liam Horan-Portelance, NIA
“Spatial Protein Detection Technologies Easily Accessible at NIH” Speaker: Noemi Kedei, NCI-CCR
“Pooled Optical Phenotyping for Functional Genomics Screens” Speaker: Gianluca Pegoraro, NCI-CCR
“The Onset of Multiple Sclerosis-like Lesions in Marmoset Brain Through the Lens of Longitudinal MRI, Digital Histopathology, and Spatial Transcriptomics.” Speaker: Jing-Ping Lin, NINDS So, if you are currently working on a “single cell or spatial project” or are considering one and want to share and discuss experiences with others on campus, please join us for this introductory meeting. Based on those that we have talked to, this community will benefit from the different backgrounds and experiences that covers a broad array of different technologies, platforms, and methods of analysis - particularly in the spatial profiling domain. We hope to help organize forums and meetings to complement other group and community efforts, just as the single cell community has with other groups and scientific interest groups. For those that cannot attend in person and still would like to participate, you will find WebEx access information below. Note that it will ask you to register (free) and provide your name and email. WebEx Access Info: Topic: Single Cell and Spatial Users Group Intro Meeting Date and Time: Wednesday, Sept 6th, 2023 10:00 am, Eastern Daylight Time (New York, GMT-04:00) Event number: 2301 014 8729 Event password: W32RfVE39V$ Web Access: https://cbiit.webex.com/weblink/register/r5959c51a2bcc1b0831aa111e559dcb67
Audio-Only Access: Call-in: 1-650-479-3207 Access code: 2301 014 8729
DetailsOrganizerSingle Cell and Spatial Users GroupWhenWed, Sep 06, 2023 - 10:00 am - 11:00 amWhereBuilding 45 (Natcher) Room E1/E2 |
With the advancements in single cell and spatial profiling technologies and methods, some of us thought it would be helpful to re-establish a community of end users on campus. We invite those that are interested to attend an introductory meeting Wednesday (Sept 6th, 2023). This users group aims to coordinate a regular schedule of presentations and discussion meetings where we can present our work in a friendly environment and discuss common hurdles that we may encounter in the implementation of these technologies and in our research. Overall: The meeting format will be “lightning talks” (~ 5 minutes each) to get a taste of some of the spatial profiling applications being used at NIH. Following the talks, there will be light refreshments and everyone is welcome to stay and chat with colleagues. ___________________________________________________________________________ Our fantastic speaker line-up: “Single-cell Spatial-Transcriptomic Analysis Revealed Leukemia-immune cell interactions in Refractory and Relapsed AML Patients Receiving Pembrolizumab and Decitabine” Speaker: Chen Zhao, NCI-CCR “Detecting Viral Transcripts with Spatial Profiling in Kaposi Sarcoma Patient Samples” Speaker: Joe Ziegelbauer, NCI-CCR “Spatial Transcriptomic Profiling of the Immune Response to Toxoplasma gondii Infection in the Brain” Speaker: Alex Clark, NCI-CCR “Spatial Transcriptomics to Evaluate Heterogeneity of Basal Forebrain Cholinergic Neurons” Speaker: Mala Ananth, NINDS “Single-cell Spatial Transcriptomic Technologies Reveal Cell Type-specific Changes in a Mouse Model of a-Synucleinopathy” Speaker: Liam Horan-Portelance, NIA “Spatial Protein Detection Technologies Easily Accessible at NIH” Speaker: Noemi Kedei, NCI-CCR “Pooled Optical Phenotyping for Functional Genomics Screens” Speaker: Gianluca Pegoraro, NCI-CCR “The Onset of Multiple Sclerosis-like Lesions in Marmoset Brain Through the Lens of Longitudinal MRI, Digital Histopathology, and Spatial Transcriptomics.” Speaker: Jing-Ping Lin, NINDS So, if you are currently working on a “single cell or spatial project” or are considering one and want to share and discuss experiences with others on campus, please join us for this introductory meeting. Based on those that we have talked to, this community will benefit from the different backgrounds and experiences that covers a broad array of different technologies, platforms, and methods of analysis - particularly in the spatial profiling domain. We hope to help organize forums and meetings to complement other group and community efforts, just as the single cell community has with other groups and scientific interest groups. For those that cannot attend in person and still would like to participate, you will find WebEx access information below. Note that it will ask you to register (free) and provide your name and email. WebEx Access Info: Topic: Single Cell and Spatial Users Group Intro Meeting Date and Time: Wednesday, Sept 6th, 2023 10:00 am, Eastern Daylight Time (New York, GMT-04:00) Event number: 2301 014 8729 Event password: W32RfVE39V$ Web Access: https://cbiit.webex.com/weblink/register/r5959c51a2bcc1b0831aa111e559dcb67 Audio-Only Access: Call-in: 1-650-479-3207 Access code: 2301 014 8729 | 2023-09-06 10:00:00 | Building 45 (Natcher) Room E1/E2 | Any | Single Cell Technologies | Hybrid | Jamie Diemer (NHLBI),Mike Kelly (SCAF),Stefan Cordes (NHLBI) | Single Cell and Spatial Users Group | 0 | Intro Meeting: Single Cell and Spatial Users Group | |
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Part Of: Fall 2023 Introduction to Unix on Biowulf CourseDescriptionThis is Lesson 1 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. ...Read More This is Lesson 1 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. Biowulf is the Unix/Linux-based high-performance computing (HPC) cluster at NIH. Unix is an operating system where users interact with the computer by issuing commands rather than using a graphical user interface (GUI). Compared to a personal computer, Biowulf offers much more compute power and is suitable for analyzing large datasets such as those derived from next generation sequencing (NGS). Also, more than 900 scientific software modules are installed on Biowulf, including those for NGS analysis. These are a couple of compelling reasons to use Biowulf. Mastery of Unix commands is needed to take advantage of the resources on Biowulf. This course series is aimed at the beginners. No experience with using high performance computing systems such as Biowulf or Unix is needed to attend. Participants will acquire fundamental knowledge regarding Biowulf and learn basic Unix commands that will enable them to start using the cluster. In this first lesson, we will learn how to connect to Biowulf from our Mac or Windows personal computers. Meeting link: Join by video system Join by phone Global call-in numbers RegisterOrganizerBTEPWhenThu, Sep 07, 2023 - 11:00 am - 12:00 pmWhereOnline |
This is Lesson 1 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. Biowulf is the Unix/Linux-based high-performance computing (HPC) cluster at NIH. Unix is an operating system where users interact with the computer by issuing commands rather than using a graphical user interface (GUI). Compared to a personal computer, Biowulf offers much more compute power and is suitable for analyzing large datasets such as those derived from next generation sequencing (NGS). Also, more than 900 scientific software modules are installed on Biowulf, including those for NGS analysis. These are a couple of compelling reasons to use Biowulf. Mastery of Unix commands is needed to take advantage of the resources on Biowulf. This course series is aimed at the beginners. No experience with using high performance computing systems such as Biowulf or Unix is needed to attend. Participants will acquire fundamental knowledge regarding Biowulf and learn basic Unix commands that will enable them to start using the cluster. In this first lesson, we will learn how to connect to Biowulf from our Mac or Windows personal computers. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=meeaee8bf461ee77ae4d108c530a2f36b Meeting number:2317 648 4731Password:jDpPNeB@943 Join by video systemDial 23176484731@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2317 648 4731Host PIN: 2784 Global call-in numbershttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/b51f123715824cd0a1a858757da1ef64# | 2023-09-07 11:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 1 Introduction to Unix on Biowulf Fall 2023 |
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DescriptionPython Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenThu, Sep 07, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. | 2023-09-07 13:00:00 | Online Webinar | Any | Python Programming | Online | Burke Squires (NIAID) | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Python Programming for Scientists. Intro to Programming (with Python) | |
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DescriptionHybrid Seminar Speaker: Brian Kelsall, M.D. Website: https://www.niaid.nih.gov/research/brian-l-kelsall-md After graduating from ...Read More Hybrid Seminar Speaker: Brian Kelsall, M.D. Website: https://www.niaid.nih.gov/research/brian-l-kelsall-md After graduating from Stanford University with a BA degree in Human Biology, Dr. Kelsall completed medical school at Case Western Reserve University, a residency in internal medicine at New York Hospital/Cornell, and subspecialty training in infectious diseases at the University of Virginia, where he studied IgA responses to Entamoeba histolytica with Johnathan Ravdin and Dick Pearson. He came to the NIH in 1992 to further his studies of mucosal immunology with Warren Strober, where he defined the first phenotypes and localization of dendritic cell subpopulations in Peyer’s patches and focused his studies on the reciprocal roles of IL-12 and TGFβ in the induction of oral tolerance. He started his own laboratory in 1995, and since that time his work has been directed to understanding the development, phenotype and function of myeloid cells in the intestine, innate immunity to intestinal viral infections, the pathogenesis of inflammatory bowel disease in mouse models, and the influence of commensal bacteria on innate and adaptive immunity in the intestine. DetailsOrganizerNCIWhenFri, Sep 08, 2023 - 9:00 am - 10:00 amWhereBldg. 549 Auditorium |
Hybrid SeminarFriday, September 8, 2023 • 9:00-10:00 a.m.Building 549 Auditorium (In-person attendance encouraged) Speaker: Brian Kelsall, M.D.Senior Investigator, Mucosal Immunobiology SectionLaboratory of Molecular ImmunologyNational Institutes of Allergy and Infectious Diseases, NIH Website: https://www.niaid.nih.gov/research/brian-l-kelsall-md After graduating from Stanford University with a BA degree in Human Biology, Dr. Kelsall completed medical school at Case Western Reserve University, a residency in internal medicine at New York Hospital/Cornell, and subspecialty training in infectious diseases at the University of Virginia, where he studied IgA responses to Entamoeba histolytica with Johnathan Ravdin and Dick Pearson. He came to the NIH in 1992 to further his studies of mucosal immunology with Warren Strober, where he defined the first phenotypes and localization of dendritic cell subpopulations in Peyer’s patches and focused his studies on the reciprocal roles of IL-12 and TGFβ in the induction of oral tolerance. He started his own laboratory in 1995, and since that time his work has been directed to understanding the development, phenotype and function of myeloid cells in the intestine, innate immunity to intestinal viral infections, the pathogenesis of inflammatory bowel disease in mouse models, and the influence of commensal bacteria on innate and adaptive immunity in the intestine. If unable to join the seminar in person:Join from the meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=me673d4e711a0098f9fcad816369a48aa Join by meeting number Meeting number (access code): 2308 726 1406 Meeting password: CILab@549aud! Join by phone1-650-479-3207 Call-in toll number (US/Canada)Join from a video system or applicationDial 23087261406@cbiit.webex.comYou can also dial 173.243.2.68 and enter the meeting number. CIL Host: Dan McVicar (mcvicard@mail.nih.gov), 301-846-5163For seminar assistance, please contact Ave Springer (ave.springer@nih.gov) | 2023-09-08 09:00:00 | Bldg. 549 Auditorium | Any | Cancer,Single Cell | Hybrid | Brian Kelsall (NIAID) | NCI | 0 | Harnessing single-cell mRNA sequencing to understand immunity in the intestine | |
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This seminar will discuss how we can leverage shared data to discover signatures of human vaccination and infection responses. A key example will be work done as part of the NIH Human Immunology Project Consortium (HIPC)(link is external) where data from ImmPort(link is external) was compiled and reanalyzed to identify pre-vaccination and temporal signatures of antibody responses that were shared across multiple vaccines. About the Speaker Professor Steven Kleinstein is a computational immunologist with a combination of big data analysis and immunology domain expertise. His research interests include both developing new computational methods and applying these methods to study human immune responses. His lab develops the widely used Immcantation framework(link is external), which provides a start-to-finish analytical ecosystem for high-throughput adaptive immune receptor repertoire sequencing (AIRR-seq) datasets. He currently co-leads the data coordinating center for the NIH Human Immunology Project Consortium (HIPC)(link is external). Prof. Kleinstein is Anthony N. Brady Professor of Pathology at the Yale School of Medicine where he co-directs the Program in Computational Biology & Bioinformatics(link is external). He received a B.A.S. in Computer Science from the University of Pennsylvania and a Ph.D. in Computer Science from Princeton University. | 2023-09-08 12:00:00 | Online Webinar | Any | Data Sharing | Online | Prof. Steven Kleinstein Ph.D. | NIH Office of Data Science Strategy (ODSS) | 0 | Leveraging Shared Data for Systems Immunology: Signatures of Vaccination and Infection at the monthly Data Sharing and Reuse Seminar | |
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DescriptionWe invite you to attend the Biobanking for Precision Medicine seminar series. We invite you to attend the Biobanking for Precision Medicine seminar series. Abstract: NCI, in line with U.S. government policies, strongly advocates for equitable data sharing and collaborative science across the cancer research community for the benefit of those afflicted with or at risk for cancer. With modern technology and tools, experts can glean powerful insights from high-quality structured data associated with biospecimens used for research, exponentially faster and more accurately than ever before. Through the studies it funds, NCI collects high-quality biospecimens and associated data, multiple types of clinical care, population studies, and scientific research data that collectively can provide a comprehensive understanding of cancer subtypes, inform therapeutic strategies, and promote public health. To this end, NCI has established an Office of Data Sharing (ODS) focused on developing and implementing an approach to data sharing that maximizes utility of diverse data types across cancer studies in line with government policy expectations and regulations. Drs. Guidry Auvil and Boja, from ODS, will discuss the vision and direction of data sharing for NCI studies that use biospecimens, including how key data initiatives can provide a framework of data assembly, infrastructure, and utility that are aimed at bridging patient care, public health, and cancer research through aligned and consistent approaches to data sharing. For more information, please contact Dr. Veena Gopalakrishnan
DetailsOrganizerNCIWhenMon, Sep 11, 2023 - 11:00 am - 12:30 pmWhereOnline Webinar |
We invite you to attend the Biobanking for Precision Medicine seminar series.The seminar series is brought to you by NCI’s Biorepositories and Biospecimen Research Branch (BBRB) and addresses current topics in biobanking science, policy and operations. In the era of precision medicine, high quality biospecimens are central to understanding complex diseases, biomarker discovery and unraveling the mechanisms of resistance to therapies. This seminar series is intended to be forward-looking with a focus on improving awareness of best practices for collection of biospecimens and associated data as well as expanding research participation through biobanking.Our focus for fall/winter 2023 is on the theme of data sharing in biobanking studies and research that uses biospecimens. The seminar by Drs. Guidry Auvil and Boja is the first of a five-part mini-series on this topic. Abstract: NCI, in line with U.S. government policies, strongly advocates for equitable data sharing and collaborative science across the cancer research community for the benefit of those afflicted with or at risk for cancer. With modern technology and tools, experts can glean powerful insights from high-quality structured data associated with biospecimens used for research, exponentially faster and more accurately than ever before. Through the studies it funds, NCI collects high-quality biospecimens and associated data, multiple types of clinical care, population studies, and scientific research data that collectively can provide a comprehensive understanding of cancer subtypes, inform therapeutic strategies, and promote public health. To this end, NCI has established an Office of Data Sharing (ODS) focused on developing and implementing an approach to data sharing that maximizes utility of diverse data types across cancer studies in line with government policy expectations and regulations. Drs. Guidry Auvil and Boja, from ODS, will discuss the vision and direction of data sharing for NCI studies that use biospecimens, including how key data initiatives can provide a framework of data assembly, infrastructure, and utility that are aimed at bridging patient care, public health, and cancer research through aligned and consistent approaches to data sharing. For more information, please contact Dr. Veena Gopalakrishnan | 2023-09-11 11:00:00 | Online Webinar | Any | Online | Jaime M. Guidry Auvil Ph.D. (CBIIT), | NCI | 0 | From Biospecimen to Data and Knowledge: Driving Impactful Resource Sharing for Cancer Research | ||
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DescriptionAnimal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research ...Read More Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy. DetailsOrganizerNIH LibraryWhenTue, Sep 12, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Animal models are used to study the development and progression of diseases and to test new treatments. Model organisms are a subset of research organisms that serve as a proxy for understanding human biology. This introductory class will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. The class will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy. | 2023-09-12 11:00:00 | Online Webinar | Any | Databases | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Animal Model and Model Organism Information Resources | |
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DescriptionIn this talk we will discuss how and why to minimize and correct for batch effects in our experiments. We will cover appropriate sample randomization and several computational methods to help uncover and mitigate batch effects. A working knowledge of R will be useful but is not required. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a ...Read More In this talk we will discuss how and why to minimize and correct for batch effects in our experiments. We will cover appropriate sample randomization and several computational methods to help uncover and mitigate batch effects. A working knowledge of R will be useful but is not required. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. You will receive a confirmation email with the Webex login information. DetailsWhenTue, Sep 12, 2023 - 12:00 pm - 1:00 pmWhereBuilding 549, Conference Room A, NCI-Frederick Campus |
In this talk we will discuss how and why to minimize and correct for batch effects in our experiments. We will cover appropriate sample randomization and several computational methods to help uncover and mitigate batch effects. A working knowledge of R will be useful but is not required. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. You will receive a confirmation email with the Webex login information. | 2023-09-12 12:00:00 | Building 549, Conference Room A, NCI-Frederick Campus | Any | Data Management | Hybrid | Duncan Donohue Ph.D. | 0 | Batch Correction and Sample Randomization | ||
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DescriptionPython Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenTue, Sep 12, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. | 2023-09-12 13:00:00 | Online Webinar | Any | Python Programming | Online | Burke Squires (NIAID) | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Python Programming for Scientists. The Python Programming Language (for experienced programmers) | |
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DescriptionDr. Burcu F. Darst is an assistant professor in the Public Health Sciences Division at the Fred Hutchinson Cancer Center. Her research is focused on identifying and understanding genetic and multi-omic risk factors of prostate cancer in diverse populations. In this webinar, Dr. Darst will be presenting on her effort to improve the utility of polygenic risk scores and rare genetic variants for the prediction of prostate cancer across patient populations. Dr. Burcu F. Darst is an assistant professor in the Public Health Sciences Division at the Fred Hutchinson Cancer Center. Her research is focused on identifying and understanding genetic and multi-omic risk factors of prostate cancer in diverse populations. In this webinar, Dr. Darst will be presenting on her effort to improve the utility of polygenic risk scores and rare genetic variants for the prediction of prostate cancer across patient populations. DetailsWhenTue, Sep 12, 2023 - 3:00 pm - 4:00 pmWhereOnline Webinar |
Dr. Burcu F. Darst is an assistant professor in the Public Health Sciences Division at the Fred Hutchinson Cancer Center. Her research is focused on identifying and understanding genetic and multi-omic risk factors of prostate cancer in diverse populations. In this webinar, Dr. Darst will be presenting on her effort to improve the utility of polygenic risk scores and rare genetic variants for the prediction of prostate cancer across patient populations. | 2023-09-12 15:00:00 | Online Webinar | Any | Cancer | Online | Burcu F. Darst (Fred Hutchinson Cancer Center) | 0 | Incorporating Common and Rare Genetic Variants into Polygenic Risk Scores of Prostate Cancer across Diverse Populations | ||
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DescriptionFORGEdb is a web-based tool that can rapidly integrate data for individual genetic variants, providing information on associated regulatory elements, transcription factor (TF) binding sites and target genes for over 37 million variants. FORGEdb is a web-based tool that can rapidly integrate data for individual genetic variants, providing information on associated regulatory elements, transcription factor (TF) binding sites and target genes for over 37 million variants. For questions contact Daoud Meerzaman or Kayla Strauss
DetailsOrganizerCBIITWhenWed, Sep 13, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
FORGEdb is a web-based tool that can rapidly integrate data for individual genetic variants, providing information on associated regulatory elements, transcription factor (TF) binding sites and target genes for over 37 million variants. FORGEdb uses annotations derived from data across a wide range of biological samples to delineate the regulatory context for each variant at the cell type level. Multiple data types, such as Combined Annotation Dependent Depletion (CADD) scores, expression quantitative trait loci (eQTLs), activity-by-contact (ABC) interactions, Contextual Analysis of TF Occupancy (CATO) scores, transcription factor (TF) motifs, DNase I hotspots, histone mark ChIP-seq peaks and chromatin states, are included in FORGEdb and these annotations are integrated into a FORGEdb score to guide assessment of functional importance. For questions contact Daoud Meerzaman or Kayla Strauss | 2023-09-13 10:00:00 | Online Webinar | Any | Online | Dr. Charles Breeze | CBIIT | 0 | Introduction to FORGEdb: A tool for identifying candidate functional variants and uncovering target genes and mechanisms for complex diseases | ||
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DescriptionSometimes the data you need is not available in a .csv or a SAS7BDAT format, or maybe it is not available on your computer or within your organization at all. This intermediate class will cover methods to connect to data that is not already in a flat file or not locally available, using SAS. Methods covered in this class include SAS Proc HTTP, API calls to a specific database or website, and using ...Read More Sometimes the data you need is not available in a .csv or a SAS7BDAT format, or maybe it is not available on your computer or within your organization at all. This intermediate class will cover methods to connect to data that is not already in a flat file or not locally available, using SAS. Methods covered in this class include SAS Proc HTTP, API calls to a specific database or website, and using a SAS Connector to data stored on a SQL server. DetailsOrganizerNIH LibraryWhenWed, Sep 13, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Sometimes the data you need is not available in a .csv or a SAS7BDAT format, or maybe it is not available on your computer or within your organization at all. This intermediate class will cover methods to connect to data that is not already in a flat file or not locally available, using SAS. Methods covered in this class include SAS Proc HTTP, API calls to a specific database or website, and using a SAS Connector to data stored on a SQL server. | 2023-09-13 11:00:00 | Online Webinar | Any | Statistics | Online | SAS | NIH Library | 0 | Methods for Connecting to Data Using SAS | |
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DescriptionPartek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with ...Read More Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf once a Biowulf and Partek Flow account has been set up. This setup allows users to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. Partek Flow enables the creation of publication quality visualizations. This online class is not hands-on. Biowulf and Partek Flow accounts are not required to attend. Participants will be presented with instructions for obtaining access to Partek Flow at the beginning of class. In this training session, participants will learn to analyze a single sample human PBMC single cell RNA sequencing dataset using Partek Flow. Topics covered include:
Meeting link: Meeting number:
Global call-in numbers RegisterOrganizerBTEPWhenWed, Sep 13, 2023 - 11:00 am - 12:30 pmWhereOnline |
Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf once a Biowulf and Partek Flow account has been set up. This setup allows users to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. Partek Flow enables the creation of publication quality visualizations. This online class is not hands-on. Biowulf and Partek Flow accounts are not required to attend. Participants will be presented with instructions for obtaining access to Partek Flow at the beginning of class. In this training session, participants will learn to analyze a single sample human PBMC single cell RNA sequencing dataset using Partek Flow. Topics covered include: Data QA/QC Filter cells and genes Normalization Cell type classification Differential analysis Pathway analysis Visualization (PCA, UMAP, tSNE, dot plot, volcano plot, hierarchical clustering etc.) Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m9e70b8721a03fb2cb0108ee1adccfe0d Meeting number:2306 886 0137Password:CHp4Frih*82Join by video systemDial 23068860137@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2306 886 0137Host PIN: 2784 Global call-in numbershttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/2f623d6d07c040149fce0c57267f24c4# | 2023-09-13 11:00:00 | Online | Beginner | Bioinformatics,Bioinformatics Software, | Bioinformatics,Bioinformatics Software,Single Cell RNA SEQ | Online | Joe Wu (BTEP),Xiaowen Wang (Partek) | BTEP | 0 | Partek Flow Basic single cell RNA sequencing data analysis |
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DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room
Meeting ID: 160 812 7623 Passcode: 083637
DetailsWhenWed, Sep 13, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) be prepared to wait your turn if staff are already helping other users Meeting ID: 160 812 7623 Passcode: 083637 | 2023-09-13 13:00:00 | Online Webinar | Any | Biowulf | Online | 0 | Next edition of the NIH HPC monthly Zoom-In Consults | |||
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Part Of: Fall 2023 Introduction to Unix on Biowulf CourseDescriptionThis is Lesson 2 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. ...Read More This is Lesson 2 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. Biowulf is the Unix/Linux-based high-performance computing (HPC) cluster at NIH. Unix is an operating system where users interact with the computer by issuing commands rather than using a graphical user interface (GUI). Compared to a personal computer, Biowulf offers much more compute power and is suitable for analyzing large datasets such as those derived from next generation sequencing (NGS). Also, more than 900 scientific software modules are installed on Biowulf, including those for NGS analysis. These are a couple of compelling reasons to use Biowulf. Mastery of Unix commands is needed to take advantage of the resources on Biowulf. This course series is aimed at the beginners. No experience with using high performance computing systems such as Biowulf or Unix is needed to attend. Participants will acquire fundamental knowledge regarding Biowulf and learn basic Unix commands that will enable them to start using the cluster. In this lesson, we will learn how to navigate the Biowulf directory structure. Meeting link: Join by video system Join by phone Global call-in numbers RegisterOrganizerBTEPWhenThu, Sep 14, 2023 - 11:00 am - 12:00 pmWhereOnline |
This is Lesson 2 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. Biowulf is the Unix/Linux-based high-performance computing (HPC) cluster at NIH. Unix is an operating system where users interact with the computer by issuing commands rather than using a graphical user interface (GUI). Compared to a personal computer, Biowulf offers much more compute power and is suitable for analyzing large datasets such as those derived from next generation sequencing (NGS). Also, more than 900 scientific software modules are installed on Biowulf, including those for NGS analysis. These are a couple of compelling reasons to use Biowulf. Mastery of Unix commands is needed to take advantage of the resources on Biowulf. This course series is aimed at the beginners. No experience with using high performance computing systems such as Biowulf or Unix is needed to attend. Participants will acquire fundamental knowledge regarding Biowulf and learn basic Unix commands that will enable them to start using the cluster. In this lesson, we will learn how to navigate the Biowulf directory structure. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=meeaee8bf461ee77ae4d108c530a2f36b Meeting number:2317 648 4731Password:jDpPNeB@943 Join by video systemDial 23176484731@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2317 648 4731Host PIN: 2784 Global call-in numbershttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/b51f123715824cd0a1a858757da1ef64# | 2023-09-14 11:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 2 Introduction to Unix on Biowulf Fall 2023 |
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DescriptionIn this 90-minute session, participants will learn to improve and optimize their MATLAB code to boost execution speed by orders of magnitude. The course covers common pitfalls in writing MATLAB code, explores the use of the MATLAB Profiler to find bottlenecks, and introduces the use of Parallel Computing Toolbox. The course also addresses: vectorization and best coding practices in MATLAB; incorporating compiled languages, such as C, into MATLAB applications; utilizing additional hardware, such as ...Read More In this 90-minute session, participants will learn to improve and optimize their MATLAB code to boost execution speed by orders of magnitude. The course covers common pitfalls in writing MATLAB code, explores the use of the MATLAB Profiler to find bottlenecks, and introduces the use of Parallel Computing Toolbox. The course also addresses: vectorization and best coding practices in MATLAB; incorporating compiled languages, such as C, into MATLAB applications; utilizing additional hardware, such as multicore processors and GPUS to improve performance; as well as scaling up to a computer cluster, grid environment or cloud. This session is for beginners through experienced; no software installation required. DetailsOrganizerNIH LibraryWhenThu, Sep 14, 2023 - 12:00 pm - 1:30 pmWhereOnline Webinar |
In this 90-minute session, participants will learn to improve and optimize their MATLAB code to boost execution speed by orders of magnitude. The course covers common pitfalls in writing MATLAB code, explores the use of the MATLAB Profiler to find bottlenecks, and introduces the use of Parallel Computing Toolbox. The course also addresses: vectorization and best coding practices in MATLAB; incorporating compiled languages, such as C, into MATLAB applications; utilizing additional hardware, such as multicore processors and GPUS to improve performance; as well as scaling up to a computer cluster, grid environment or cloud. This session is for beginners through experienced; no software installation required. | 2023-09-14 12:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Mathworks | NIH Library | 0 | Optimizing MATLAB and Accelerating Code | |
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Distinguished Speakers Seminar SeriesDescriptionWhile there is a positive correlation between cancer and aging, the mechanisms underlying this relationship remain unclear. Clonal hematopoiesis, a benign condition that is both associated with aging and predisposes to increased risk of development of blood cancers, presents an opportunity to understand the connection between cancer and aging. This seminar will discuss emerging discoveries of mechanisms acting within the hematopoietic stem cells as well as alterations in the bone marrow microenvironment that promote ...Read More While there is a positive correlation between cancer and aging, the mechanisms underlying this relationship remain unclear. Clonal hematopoiesis, a benign condition that is both associated with aging and predisposes to increased risk of development of blood cancers, presents an opportunity to understand the connection between cancer and aging. This seminar will discuss emerging discoveries of mechanisms acting within the hematopoietic stem cells as well as alterations in the bone marrow microenvironment that promote clonal hematopoiesis and transformation to blood cancers. RegisterOrganizerBTEPWhenThu, Sep 14, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
While there is a positive correlation between cancer and aging, the mechanisms underlying this relationship remain unclear. Clonal hematopoiesis, a benign condition that is both associated with aging and predisposes to increased risk of development of blood cancers, presents an opportunity to understand the connection between cancer and aging. This seminar will discuss emerging discoveries of mechanisms acting within the hematopoietic stem cells as well as alterations in the bone marrow microenvironment that promote clonal hematopoiesis and transformation to blood cancers. | 2023-09-14 13:00:00 | Online Webinar | Any | Cancer | Online | Jennifer Trowbridge (The Jackson Lab) | BTEP | 1 | Hematopoietic stem cell-intrinsic and -extrinsic contribution to aging and clonal hematopoiesis | |
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DescriptionPython Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenThu, Sep 14, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. | 2023-09-14 13:00:00 | Online Webinar | Any | Python Programming | Online | Burke Squires (NIAID) | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Python Programming for Scientists. Data Analysis with Python - Part I | |
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DescriptionResearchers and academic staff who support them, representatives from data repositories, and NIH staff interested in how metadata can make NIH-funded research more findable are invited to the GREI Metadata and Search subcommittee’s Collaborative Webinar: Metadata Recommendations. At this webinar, attendees will learn about the metadata recommendations from the GREI metadata and search subcommittee, including how the recommendations came about, what we hope to achieve, and next steps. Attendees will ...Read More Researchers and academic staff who support them, representatives from data repositories, and NIH staff interested in how metadata can make NIH-funded research more findable are invited to the GREI Metadata and Search subcommittee’s Collaborative Webinar: Metadata Recommendations. At this webinar, attendees will learn about the metadata recommendations from the GREI metadata and search subcommittee, including how the recommendations came about, what we hope to achieve, and next steps. Attendees will also have a chance to share their feedback. Registration is free and open to all who are interested. DetailsOrganizerNIH - Data scienceWhenFri, Sep 15, 2023 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Researchers and academic staff who support them, representatives from data repositories, and NIH staff interested in how metadata can make NIH-funded research more findable are invited to the GREI Metadata and Search subcommittee’s Collaborative Webinar: Metadata Recommendations. At this webinar, attendees will learn about the metadata recommendations from the GREI metadata and search subcommittee, including how the recommendations came about, what we hope to achieve, and next steps. Attendees will also have a chance to share their feedback. Registration is free and open to all who are interested. | 2023-09-15 14:00:00 | Online Webinar | Any | Data Sharing | Online | NIH - Data science | 0 | GREI Collaborative Webinar: Metadata Recommendations | ||
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DescriptionThe NIH is home to a number of groups aimed at supporting bioinformatics, genomics, computational biology and various related topics. Many of these groups meet regularly to host talks or provide training opportunities, while others have active online communities where people can ask questions and get help. The goals of the Bioinformatics Community Fair is to introduce members of the NIH community to these groups: their goals and scope, training opportunities and ...Read More The NIH is home to a number of groups aimed at supporting bioinformatics, genomics, computational biology and various related topics. Many of these groups meet regularly to host talks or provide training opportunities, while others have active online communities where people can ask questions and get help. The goals of the Bioinformatics Community Fair is to introduce members of the NIH community to these groups: their goals and scope, training opportunities and talks planned for the future, how one can connect with them, etc. In addition to the group presentations, there will also be several panel discussions on recent topics of interest in the bioinformatics community including data organization, management and sharing, and cloud resources for bioinformatics, as well as a discussion about the current bioinformatics ecosystem at NIH overall, and what could be done to improve it. Interested individuals of all backgrounds and skill-levels are welcome to attend. DetailsOrganizerNIHWhenMon, Sep 18, 2023 - 9:00 am - 12:00 pmWhereBethesda Building 10 FAES Classroom #1 (B1C211) |
The NIH is home to a number of groups aimed at supporting bioinformatics, genomics, computational biology and various related topics. Many of these groups meet regularly to host talks or provide training opportunities, while others have active online communities where people can ask questions and get help. The goals of the Bioinformatics Community Fair is to introduce members of the NIH community to these groups: their goals and scope, training opportunities and talks planned for the future, how one can connect with them, etc. In addition to the group presentations, there will also be several panel discussions on recent topics of interest in the bioinformatics community including data organization, management and sharing, and cloud resources for bioinformatics, as well as a discussion about the current bioinformatics ecosystem at NIH overall, and what could be done to improve it. Interested individuals of all backgrounds and skill-levels are welcome to attend. | 2023-09-18 09:00:00 | Bethesda Building 10 FAES Classroom #1 (B1C211) | Any | Bioinformatics | In-Person | Amy Stonelake (BTEP),Darrell Hurt (NIAID),Keith Hughitt (BYOB),Mariam Quinones (NIAID) | NIH | 0 | NIH Research Festival: Bioinformatics Community Fair, Day 1 | |
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DescriptionThe NIH is home to a number of groups aimed at supporting bioinformatics, genomics, computational biology and various related topics. Many of these groups meet regularly to host talks or provide training opportunities, while others have active online communities where people can ask questions and get help. The goals of the Bioinformatics Community Fair is to introduce members of the NIH community to these groups: their goals and scope, training opportunities and ...Read More The NIH is home to a number of groups aimed at supporting bioinformatics, genomics, computational biology and various related topics. Many of these groups meet regularly to host talks or provide training opportunities, while others have active online communities where people can ask questions and get help. The goals of the Bioinformatics Community Fair is to introduce members of the NIH community to these groups: their goals and scope, training opportunities and talks planned for the future, how one can connect with them, etc. In addition to the group presentations, there will also be several panel discussions on recent topics of interest in the bioinformatics community including data organization, management and sharing, and cloud resources for bioinformatics, as well as a discussion about the current bioinformatics ecosystem at NIH overall, and what could be done to improve it. Interested individuals of all backgrounds and skill-levels are welcome to attend. DetailsOrganizerNIHWhenTue, Sep 19, 2023 - 9:00 am - 12:00 pmWhereBethesda, Building 10, FAES Classroom #5 |
The NIH is home to a number of groups aimed at supporting bioinformatics, genomics, computational biology and various related topics. Many of these groups meet regularly to host talks or provide training opportunities, while others have active online communities where people can ask questions and get help. The goals of the Bioinformatics Community Fair is to introduce members of the NIH community to these groups: their goals and scope, training opportunities and talks planned for the future, how one can connect with them, etc. In addition to the group presentations, there will also be several panel discussions on recent topics of interest in the bioinformatics community including data organization, management and sharing, and cloud resources for bioinformatics, as well as a discussion about the current bioinformatics ecosystem at NIH overall, and what could be done to improve it. Interested individuals of all backgrounds and skill-levels are welcome to attend. | 2023-09-19 09:00:00 | Bethesda, Building 10, FAES Classroom #5 | Any | Bioinformatics,Cloud,Data Sharing | In-Person | Daoud Meerzaman (CBIIT),Joelle Mornini (NIH Library),Wolfgang Resch (NIH/CIT) | NIH | 0 | NIH Research Festival: Bioinformatics Community Fair, Day 2 | |
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DescriptionPython Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenTue, Sep 19, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. | 2023-09-19 13:00:00 | Online Webinar | Any | Python Programming | Online | Burke Squires (NIAID) | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Python Programming for Scientists. Data Analysis with Python - Part II | |
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DescriptionThis workshop is part of the 2023 NIH Research Festival schedule. Data Sharing in Generalist Repositories This workshop is part of the 2023 NIH Research Festival schedule. Data Sharing in Generalist Repositories DetailsOrganizerNIH LibraryWhenTue, Sep 19, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
This workshop is part of the 2023 NIH Research Festival schedule. Data Sharing in Generalist Repositories Generalist repositories offer NIH researchers a flexible, trusted resource to share data for which there is no appropriate discipline specific repository as well as to share many other research outputs valuable for reproducibility and open science. This mini-workshop, presented by participants of the NIH Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo) will share generalist repository use cases and best practices for sharing and finding data in generalist repositories. It will describe how generalist repositories fit into the NIH data repository landscape for intramural researchers and can be part of meeting the new NIH Data Management and Sharing Policy requirements. It will present both the key common features of generalist repositories that meet the NIH desirable repository characteristics as well as the unique features of these repositories that make them suited to specific types of data. Through interactive training exercises, the mini-workshop will provide guidance on how to share data and other outputs in generalist repositories, using high quality metadata, persistent identifiers, and detailed descriptions to ensure that research outputs are discoverable and reusable. | 2023-09-19 13:00:00 | Online Webinar | Any | Data Sharing | Online | NIH Library | 0 | NIH Research Festival: Generalist Repository Ecosystem Initiative (GREI) | ||
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Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescriptionThis session of the BTEP Coding Club will focus on the tool rMATS for differential alternative splicing event detection from RNA-Seq data. This 1-hour demo will provide a detailed overview of rMATS including why you may want to use it, how to use it, and how to interpret and further use resulting outputs. https://rnaseq-mats.sourceforge.io/ Multivariate Analysis of Transcript Splicing (MATS)Read More This session of the BTEP Coding Club will focus on the tool rMATS for differential alternative splicing event detection from RNA-Seq data. This 1-hour demo will provide a detailed overview of rMATS including why you may want to use it, how to use it, and how to interpret and further use resulting outputs. https://rnaseq-mats.sourceforge.io/ Multivariate Analysis of Transcript Splicing (MATS) MATS is a computational tool to detect differential alternative splicing events from RNA-Seq data. The statistical model of MATS calculates the P-value and false discovery rate that the difference in the isoform ratio of a gene between two conditions exceeds a given user-defined threshold. From the RNA-Seq data, MATS can automatically detect and analyze alternative splicing events corresponding to all major types of alternative splicing patterns. MATS handles replicate RNA-Seq data from both paired and unpaired study design. RegisterOrganizerBTEPWhenWed, Sep 20, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
This session of the BTEP Coding Club will focus on the tool rMATS for differential alternative splicing event detection from RNA-Seq data. This 1-hour demo will provide a detailed overview of rMATS including why you may want to use it, how to use it, and how to interpret and further use resulting outputs. https://rnaseq-mats.sourceforge.io/ Multivariate Analysis of Transcript Splicing (MATS) MATS is a computational tool to detect differential alternative splicing events from RNA-Seq data. The statistical model of MATS calculates the P-value and false discovery rate that the difference in the isoform ratio of a gene between two conditions exceeds a given user-defined threshold. From the RNA-Seq data, MATS can automatically detect and analyze alternative splicing events corresponding to all major types of alternative splicing patterns. MATS handles replicate RNA-Seq data from both paired and unpaired study design. | 2023-09-20 11:00:00 | Online Webinar | Intermediate | RNA-Seq | Online | Alexei Lobanov (CCBR) | BTEP | 1 | Using rMATS for differential alternative splicing detection | |
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DescriptionIf you have any questions, please email: NCICWIGUserMail@mail.nih.gov Webinar number (access code): 2304 223 5796 If you have any questions, please email: NCICWIGUserMail@mail.nih.gov Webinar number (access code): 2304 223 5796 DetailsOrganizerContainers and Workflow Interest Group (CWIG)WhenWed, Sep 20, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
If you have any questions, please email: NCICWIGUserMail@mail.nih.gov Webinar number (access code): 2304 223 5796Webinar password: GHpsGSe*597 (44774730 from phones and video systems) | 2023-09-20 11:00:00 | Online Webinar | Any | Cloud,Omics | Online | Ariella Sasson (Amazon Web Services) | Containers and Workflow Interest Group (CWIG) | 0 | AWS HealthOmics: Transform omics data into insights | |
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DescriptionPicture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful?Read More Picture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful? The cloud is here for you! The NIH STRIDES Initiative and Google have teamed up to create a custom course for NIH staff and NIH-funded researchers: “Medical Imaging and Machine Learning in Google Cloud”. The course introduces Google Cloud’s Medical Imaging Suite and works with real-life data sets from the National Cancer Institute’s Imaging Data Commons. The course is offered at no cost in June, July, August, and September 2023.
Want more course details? Required Prerequisites Format Duration & Dates Experience working with medical imaging data Basic understanding of machine learning Basic familiarity with Google Cloud or watch this 6-minute video before attending the course Virtual with live instruction from Google experts One full day – 9:00 AM to 5:00 PM EST with the following date options:
Ready to sign up? For NIH staff: Visit the course page in the LMS to learn more. Click the “Begin Registration” button to select your preferred date. For Institution and Organization staff associated with NIH: Email Dr. Philip Meacham indicating your interest and any potential time zone conflicts.
If you have any questions about this course or additional cloud trainings, please message Dr. Philip Meacham or the STRIDES Training Team at STRIDESTraining@nih.gov.
DetailsOrganizerNIH STRIDESWhenThu, Sep 21, 2023 - 9:00 am - 5:00 pmWhereOnline Webinar |
Picture this… You have large amounts of siloed medical imaging data, but you don’t have the time or budget to manually prepare the images and datasets for annotation and analysis. Don’t you wish there were tools available to you to make your imaging data accessible, interoperable, and insightful? The cloud is here for you! The NIH STRIDES Initiative and Google have teamed up to create a custom course for NIH staff and NIH-funded researchers: “Medical Imaging and Machine Learning in Google Cloud”. The course introduces Google Cloud’s Medical Imaging Suite and works with real-life data sets from the National Cancer Institute’s Imaging Data Commons. The course is offered at no cost in June, July, August, and September 2023. Want more course details? Required Prerequisites Format Duration & Dates Experience working with medical imaging data Basic understanding of machine learning Basic familiarity with Google Cloud or watch this 6-minute video before attending the course Virtual with live instruction from Google experts One full day – 9:00 AM to 5:00 PM EST with the following date options: Wednesday, June 21 Thursday, July 20 Tuesday, August 15 Thursday, September 21 Ready to sign up? For NIH staff: Visit the course page in the LMS to learn more. Click the “Begin Registration” button to select your preferred date. For Institution and Organization staff associated with NIH: Email Dr. Philip Meacham indicating your interest and any potential time zone conflicts. If you have any questions about this course or additional cloud trainings, please message Dr. Philip Meacham or the STRIDES Training Team at STRIDESTraining@nih.gov. | 2023-09-21 09:00:00 | Online Webinar | Any | Cloud | Online | NIH STRIDES | 0 | Picture Perfect – Free Medical Imaging and Machine Learning with Google Cloud Training! | ||
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Part Of: Fall 2023 Introduction to Unix on Biowulf CourseDescriptionThis is Lesson 3 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. ...Read More This is Lesson 3 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. Biowulf is the Unix/Linux-based high-performance computing (HPC) cluster at NIH. Unix is an operating system where users interact with the computer by issuing commands rather than using a graphical user interface (GUI). Compared to a personal computer, Biowulf offers much more compute power and is suitable for analyzing large datasets such as those derived from next generation sequencing (NGS). Also, more than 900 scientific software modules are installed on Biowulf, including those for NGS analysis. These are a couple of compelling reasons to use Biowulf. Mastery of Unix commands is needed to take advantage of the resources on Biowulf. This course series is aimed at the beginners. No experience with using high performance computing systems such as Biowulf or Unix is needed to attend. Participants will acquire fundamental knowledge regarding Biowulf and learn basic Unix commands that will enable them to start using the cluster. In this lesson, we will learn how to work with files and directories and interactive sessions on Biowulf. We will also use Biowulf to explore Next Generation Sequencing data. Meeting link: Join by video system Join by phone Global call-in numbers RegisterOrganizerBTEPWhenThu, Sep 21, 2023 - 11:00 am - 12:00 pmWhereOnline |
This is Lesson 3 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. Biowulf is the Unix/Linux-based high-performance computing (HPC) cluster at NIH. Unix is an operating system where users interact with the computer by issuing commands rather than using a graphical user interface (GUI). Compared to a personal computer, Biowulf offers much more compute power and is suitable for analyzing large datasets such as those derived from next generation sequencing (NGS). Also, more than 900 scientific software modules are installed on Biowulf, including those for NGS analysis. These are a couple of compelling reasons to use Biowulf. Mastery of Unix commands is needed to take advantage of the resources on Biowulf. This course series is aimed at the beginners. No experience with using high performance computing systems such as Biowulf or Unix is needed to attend. Participants will acquire fundamental knowledge regarding Biowulf and learn basic Unix commands that will enable them to start using the cluster. In this lesson, we will learn how to work with files and directories and interactive sessions on Biowulf. We will also use Biowulf to explore Next Generation Sequencing data. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=meeaee8bf461ee77ae4d108c530a2f36b Meeting number:2317 648 4731Password:jDpPNeB@943 Join by video systemDial 23176484731@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2317 648 4731Host PIN: 2784 Global call-in numbershttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/b51f123715824cd0a1a858757da1ef64# | 2023-09-21 11:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 3 Introduction to Unix on Biowulf Fall 2023 |
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DescriptionPython Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenThu, Sep 21, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. | 2023-09-21 13:00:00 | Online Webinar | Any | Python Programming | Online | Burke Squires (NIAID) | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Python Programming for Scientists. Data Visualization with Python | |
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DescriptionThe training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), ...Read More The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database). DetailsOrganizerNIH LibraryWhenFri, Sep 22, 2023 - 12:00 pm - 3:00 pmWhereOnline Webinar |
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database). | 2023-09-22 12:00:00 | Online Webinar | Any | Pathway Analysis | Online | Daoud Meerzaman (CBIIT) | NIH Library | 0 | Pathway Analysis | |
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DescriptionPython Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenTue, Sep 26, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. | 2023-09-26 13:00:00 | Online Webinar | Any | Python Programming | Online | Burke Squires (NIAID) | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Python Programming for Scientists. Intermediate Python Programming | |
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DescriptionPartek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using ...Read More Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf once a Biowulf and Partek Flow account has been set up. This setup allows users to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. Partek Flow enables the creation of publication quality visualizations. This online class is not hands-on. Biowulf and Partek Flow accounts are not required to attend. Participants will be presented with instructions for obtaining access to Partek Flow at the beginning of class. This training session will use a multi-sample single cell RNA sequencing dataset to demonstrate how to perform cell type classification and comparison of gene expression among treatment groups in Partek Flow. Further, participants will learn how to integrate protein information derived from CITE-sequencing with RNA information to gain gene expression insight from a multi-omics perspective. Spatial transcriptomics will also be discussed.
Meeting link: Join by video system Join by phone Global call-in numbers RegisterOrganizerBTEPWhenWed, Sep 27, 2023 - 11:00 am - 12:30 pmWhereOnline |
Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf once a Biowulf and Partek Flow account has been set up. This setup allows users to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. Partek Flow enables the creation of publication quality visualizations. This online class is not hands-on. Biowulf and Partek Flow accounts are not required to attend. Participants will be presented with instructions for obtaining access to Partek Flow at the beginning of class. This training session will use a multi-sample single cell RNA sequencing dataset to demonstrate how to perform cell type classification and comparison of gene expression among treatment groups in Partek Flow. Further, participants will learn how to integrate protein information derived from CITE-sequencing with RNA information to gain gene expression insight from a multi-omics perspective. Spatial transcriptomics will also be discussed. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m9bb2d96e49e23ac11b6cd8ccc7f7a5fc Meeting number:2302 232 0954Password:iJNTWXh*368 Join by video systemDial 23022320954@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2302 232 0954Host PIN: 2784 Global call-in numbershttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/6276763b44dd40daadbc3745d5d5ed6d# | 2023-09-27 11:00:00 | Online | Beginner | Bioinformatics,Bioinformatics Software,CITE sequencing,,Spatial Transcriptomics | Bioinformatics,Bioinformatics Software,CITE sequencing,Single Cell RNA SEQ,Spatial Transcriptomics | Online | Joe Wu (BTEP),Xiaowen Wang (Partek) | BTEP | 0 | Partek Flow Advanced single cell RNA sequencing data analysis |
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Part Of: Fall 2023 Introduction to Unix on Biowulf CourseDescriptionThis is Lesson 4 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. ...Read More This is Lesson 4 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. Biowulf is the Unix/Linux-based high-performance computing (HPC) cluster at NIH. Unix is an operating system where users interact with the computer by issuing commands rather than using a graphical user interface (GUI). Compared to a personal computer, Biowulf offers much more compute power and is suitable for analyzing large datasets such as those derived from next generation sequencing (NGS). Also, more than 900 scientific software modules are installed on Biowulf, including those for NGS analysis. These are a couple of compelling reasons to use Biowulf. Mastery of Unix commands is needed to take advantage of the resources on Biowulf. This course series is aimed at the beginners. No experience with using high performance computing systems such as Biowulf or Unix is needed to attend. Participants will acquire fundamental knowledge regarding Biowulf and learn basic Unix commands that will enable them to start using the cluster. In this lesson, we will learn how to work with bioinformatics applications on Biowulf and submit swarm and shell scripts to the Biowulf batch system. Meeting link: Join by video system Join by phone Global call-in numbers RegisterOrganizerBTEPWhenThu, Sep 28, 2023 - 11:00 am - 12:00 pmWhereOnline |
This is Lesson 4 of the Fall 2023 Introduction to Unix on Biowulf Series. Registering for this class will get you signed up for all four sessions in this course. Please make sure that you can attend all four lessons prior to registering as class size is limited. We will use Biowulf student accounts for this course series. A personal Biowulf account is not required for participation. Biowulf is the Unix/Linux-based high-performance computing (HPC) cluster at NIH. Unix is an operating system where users interact with the computer by issuing commands rather than using a graphical user interface (GUI). Compared to a personal computer, Biowulf offers much more compute power and is suitable for analyzing large datasets such as those derived from next generation sequencing (NGS). Also, more than 900 scientific software modules are installed on Biowulf, including those for NGS analysis. These are a couple of compelling reasons to use Biowulf. Mastery of Unix commands is needed to take advantage of the resources on Biowulf. This course series is aimed at the beginners. No experience with using high performance computing systems such as Biowulf or Unix is needed to attend. Participants will acquire fundamental knowledge regarding Biowulf and learn basic Unix commands that will enable them to start using the cluster. In this lesson, we will learn how to work with bioinformatics applications on Biowulf and submit swarm and shell scripts to the Biowulf batch system. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=meeaee8bf461ee77ae4d108c530a2f36b Meeting number:2317 648 4731Password:jDpPNeB@943 Join by video systemDial 23176484731@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2317 648 4731Host PIN: 2784 Global call-in numbershttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/b51f123715824cd0a1a858757da1ef64# | 2023-09-28 11:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 4 Introduction to Unix on Biowulf Fall 2023 |
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Single Cell Seminar SeriesDescriptionThe Trapnell Lab at the University of Washington's Department of Genome Sciences studies how genomes encode the program of vertebrate development and how that program goes awry in disease. We build new tools, technologies, and software for decoding this program from large-scale single-cell experiments. Meeting number: 2305 942 7068 Password: XUujpgh7@72 Join by video system Dial 23059427068@cbiit.webex.com You can also dial 173.243.2.68 ...Read MoreThe Trapnell Lab at the University of Washington's Department of Genome Sciences studies how genomes encode the program of vertebrate development and how that program goes awry in disease. We build new tools, technologies, and software for decoding this program from large-scale single-cell experiments. Meeting number: 2305 942 7068 Password: XUujpgh7@72 Join by video system Dial 23059427068@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2305 942 7068RegisterOrganizerBTEPWhenThu, Sep 28, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The Trapnell Lab at the University of Washington's Department of Genome Sciences studies how genomes encode the program of vertebrate development and how that program goes awry in disease. We build new tools, technologies, and software for decoding this program from large-scale single-cell experiments. Meeting number: 2305 942 7068 Password: XUujpgh7@72 Join by video system Dial 23059427068@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2305 942 7068 | 2023-09-28 13:00:00 | Online Webinar | Any | Single Cell Technologies | Online | Cole Trapnell (Univ. of Washington) | BTEP | 1 | Whole Embryo Developmental Genetics at Single Cell Resolution | |
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DescriptionPython Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. DetailsOrganizerNIAID Bioinformatics and Computational Biosciences BranchWhenThu, Sep 28, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
Python Programming for Scientists" is an engaging and practical training series designed to equip scientists with essential Python programming skills to enhance their research capabilities. This comprehensive series is explicitly tailored for researchers seeking to leverage Python's power to analyze data, model complex systems, and streamline scientific workflows. We will cover topics such as Jupyter Notebooks, programming concepts, the Python programming language, and data analysis using Python. | 2023-09-28 13:00:00 | Online Webinar | Any | Python Programming | Online | Burke Squires (NIAID) | NIAID Bioinformatics and Computational Biosciences Branch | 0 | Python Programming for Scientists. Bioinformatics Programming with Python | |
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DescriptionAttend the Bridge2AI-Skills & Workforce Development (SWD) Lecture Series for 2023-24 on the Large Language Model (LLM) Module Dr. Xia “Ben” Hu is an Associate Professor at Rice University in the Department of Computer Science. Dr. Hu has published over 200 articles/reports as proceedings at high impact venues, including NeurIPS, ICLR, KDD, WWW, IJCAI, and AAAI. His team developed an open-source package “AutoKeras”, which has become a highly popular automated deep learning ...Read More Attend the Bridge2AI-Skills & Workforce Development (SWD) Lecture Series for 2023-24 on the Large Language Model (LLM) Module Dr. Xia “Ben” Hu is an Associate Professor at Rice University in the Department of Computer Science. Dr. Hu has published over 200 articles/reports as proceedings at high impact venues, including NeurIPS, ICLR, KDD, WWW, IJCAI, and AAAI. His team developed an open-source package “AutoKeras”, which has become a highly popular automated deep learning system on Github (with over 8,000 stars and 1,000 forks). Also, his work on deep collaborative filtering, anomaly detection, and knowledge graphs have been included in the TensorFlow package, Apple production system and Bing production system, respectively. His publications have received several Best Paper Awards (e.g., ICML, WWW, WSDM, ICDM, AMIA and INFORMS). Dr. Hu is the recipient of NSF CAREER Award and ACM SIGKDD Rising Star Award. His work is highly regarded (with 20,000+ citations, an h-index of 58). DetailsOrganizerNCIWhenThu, Sep 28, 2023 - 3:00 pm - 4:00 pmWhereOnline Webinar |
Attend the Bridge2AI-Skills & Workforce Development (SWD) Lecture Series for 2023-24 on the Large Language Model (LLM) Module Dr. Xia “Ben” Hu is an Associate Professor at Rice University in the Department of Computer Science. Dr. Hu has published over 200 articles/reports as proceedings at high impact venues, including NeurIPS, ICLR, KDD, WWW, IJCAI, and AAAI. His team developed an open-source package “AutoKeras”, which has become a highly popular automated deep learning system on Github (with over 8,000 stars and 1,000 forks). Also, his work on deep collaborative filtering, anomaly detection, and knowledge graphs have been included in the TensorFlow package, Apple production system and Bing production system, respectively. His publications have received several Best Paper Awards (e.g., ICML, WWW, WSDM, ICDM, AMIA and INFORMS). Dr. Hu is the recipient of NSF CAREER Award and ACM SIGKDD Rising Star Award. His work is highly regarded (with 20,000+ citations, an h-index of 58). | 2023-09-28 15:00:00 | Online Webinar | Any | AI/ML | Online | Dr. Xia “Ben” Hu (Rice University) | NCI | 0 | ChatGPT in Action: An Experimental Investigation of Its Effectiveness in NLP Tasks. | |
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DescriptionDr. Peng Jiang started his research program at NCI in July 2019. His lab focuses on developing big data and artificial intelligence frameworks to identify biomarkers and new therapeutic approaches for cancer immunotherapies in solid tumors. Before joining NCI, he finished his postdoctoral training at the Dana Farber Cancer Institute and Harvard University. During his postdoctoral research, Dr. Jiang developed computational frameworks that repurposed public domain data to identify biomarkers and regulators of cancer immunotherapy ...Read More Dr. Peng Jiang started his research program at NCI in July 2019. His lab focuses on developing big data and artificial intelligence frameworks to identify biomarkers and new therapeutic approaches for cancer immunotherapies in solid tumors. Before joining NCI, he finished his postdoctoral training at the Dana Farber Cancer Institute and Harvard University. During his postdoctoral research, Dr. Jiang developed computational frameworks that repurposed public domain data to identify biomarkers and regulators of cancer immunotherapy resistance. Notably, his computational model TIDE revealed that cancer cells could utilize the self-protection strategy of cytotoxic lymphocytes to resist lymphocyte killing under immune checkpoint blockade. Dr. Jiang finished his Ph.D. in the Department of Computer Science & Lewis Sigler Institute for Integrative Genomics at Princeton University. He completed his undergraduate study with the highest national honors at the Department of Computer Science at Tsinghua University. He is a recipient of the NCI K99 Pathway to Independence Award, the Scholar-In-Training Award of the American Association of Cancer Research, the Technology Innovation Award of the Cancer Research Institute, and the NCI Director’s Award for Data Science. DetailsOrganizerNCIWhenFri, Sep 29, 2023 - 12:00 pm - 1:00 pmWhereClinical Center | Lipsett Amphitheater |
Dr. Peng Jiang started his research program at NCI in July 2019. His lab focuses on developing big data and artificial intelligence frameworks to identify biomarkers and new therapeutic approaches for cancer immunotherapies in solid tumors. Before joining NCI, he finished his postdoctoral training at the Dana Farber Cancer Institute and Harvard University. During his postdoctoral research, Dr. Jiang developed computational frameworks that repurposed public domain data to identify biomarkers and regulators of cancer immunotherapy resistance. Notably, his computational model TIDE revealed that cancer cells could utilize the self-protection strategy of cytotoxic lymphocytes to resist lymphocyte killing under immune checkpoint blockade. Dr. Jiang finished his Ph.D. in the Department of Computer Science & Lewis Sigler Institute for Integrative Genomics at Princeton University. He completed his undergraduate study with the highest national honors at the Department of Computer Science at Tsinghua University. He is a recipient of the NCI K99 Pathway to Independence Award, the Scholar-In-Training Award of the American Association of Cancer Research, the Technology Innovation Award of the Cancer Research Institute, and the NCI Director’s Award for Data Science. | 2023-09-29 12:00:00 | Clinical Center | Lipsett Amphitheater | Any | Cancer | Hybrid | Peng Jiang Ph.D. (CCR) | NCI | 0 | Big Data Approaches to Study Intercellular Signaling During Tumor Immune Evasion | |
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DescriptionMultiplexed antibody-based imaging enables the detailed characterization of molecular and cellular organization in tissues. Significant advances in the field now allow high-parameter data collection (60+ targets); however, considerable expertise and capital are needed to validate antibodies, construct antibody panels, and acquire images. To overcome these challenges, we developed Iterative Bleaching Extends multi-pleXity (IBEX), an open-source, community supported method that can be completed at relatively low cost by biologists with basic laboratory skills. The IBEX Imaging ...Read More Multiplexed antibody-based imaging enables the detailed characterization of molecular and cellular organization in tissues. Significant advances in the field now allow high-parameter data collection (60+ targets); however, considerable expertise and capital are needed to validate antibodies, construct antibody panels, and acquire images. To overcome these challenges, we developed Iterative Bleaching Extends multi-pleXity (IBEX), an open-source, community supported method that can be completed at relatively low cost by biologists with basic laboratory skills. The IBEX Imaging Community is an international group of scientists committed to sharing knowledge related to multiplexed imaging in a transparent and collaborative manner. Organ Mapping Antibody Panels (OMAPs) are community-validated resources that save time and money, increase reproducibility, and support the construction of a Human Reference Atlas. Open science empowers discovery across several domains including the construction of molecular and spatial atlases of normal and diseased tissues. To this end, we have employed advanced sequencing and imaging technologies to generate a multi-omic, multi-scale atlas of follicular lymphoma (FL) lymph nodes and the developing human thymus. In summary, a community approach to multiplexed imaging is needed to reduce financial costs, instill confidence in the resulting data, and accelerate translational research efforts. DetailsOrganizerSeminar - Systems Biology Interest GroupWhenTue, Oct 03, 2023 - 9:30 am - 10:30 amWhereBuilding 4 – Room 433 (NIH Bethesda campus) |
Multiplexed antibody-based imaging enables the detailed characterization of molecular and cellular organization in tissues. Significant advances in the field now allow high-parameter data collection (60+ targets); however, considerable expertise and capital are needed to validate antibodies, construct antibody panels, and acquire images. To overcome these challenges, we developed Iterative Bleaching Extends multi-pleXity (IBEX), an open-source, community supported method that can be completed at relatively low cost by biologists with basic laboratory skills. The IBEX Imaging Community is an international group of scientists committed to sharing knowledge related to multiplexed imaging in a transparent and collaborative manner. Organ Mapping Antibody Panels (OMAPs) are community-validated resources that save time and money, increase reproducibility, and support the construction of a Human Reference Atlas. Open science empowers discovery across several domains including the construction of molecular and spatial atlases of normal and diseased tissues. To this end, we have employed advanced sequencing and imaging technologies to generate a multi-omic, multi-scale atlas of follicular lymphoma (FL) lymph nodes and the developing human thymus. In summary, a community approach to multiplexed imaging is needed to reduce financial costs, instill confidence in the resulting data, and accelerate translational research efforts. Short Bio:Dr. Andrea Radtke is an Associate Scientist at the National Institutes of Health. Dr. Radtke specializes in advanced microscopy techniques including IBEX, an open-source method that enables more than 65 protein biomarkers to be visualized in diverse tissues. She is passionate about team science and open science. Zoom link: on demand For more information, contact:Gregoire.altan-bonnet@nih.govSungm@nih.govSteven.cappell@nih.gov | 2023-10-03 09:30:00 | Building 4 – Room 433 (NIH Bethesda campus) | Any | Hybrid | Dr. Andrea Radtke (NIAID) | Seminar - Systems Biology Interest Group | 0 | Turning discovery into health with the spatial biology community | ||
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DescriptionPresented as part of the Read More Presented as part of the Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) Webinar Series Dr. Kushal Dey is an Assistant Member and Josie Robertson Investigator in the Department of Computational and Systems Biology at the Sloan Kettering Institute, Memorial Sloan Kettering Cancer Center. He is also an Assistant Professor at the Gerstner Sloan Kettering Graduate School of Biomedical Sciences. In this webinar, Dr. Dey will discuss his work at the Kushal Dey Lab, which builds statistical and machine learning models that integrate genetic and genomic data to prioritize variants, genes, and cell types, and to decode the causal functional architecture underlying heritable complex diseases — including immune-related diseases, like Alzheimer’s and inflammatory bowel disease, and heritable cancers, like breast cancer. DetailsOrganizerNCIWhenTue, Oct 03, 2023 - 3:00 pm - 4:00 pmWhereOnline Webinar |
Presented as part of the Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) Webinar Series Dr. Kushal Dey is an Assistant Member and Josie Robertson Investigator in the Department of Computational and Systems Biology at the Sloan Kettering Institute, Memorial Sloan Kettering Cancer Center. He is also an Assistant Professor at the Gerstner Sloan Kettering Graduate School of Biomedical Sciences. In this webinar, Dr. Dey will discuss his work at the Kushal Dey Lab, which builds statistical and machine learning models that integrate genetic and genomic data to prioritize variants, genes, and cell types, and to decode the causal functional architecture underlying heritable complex diseases — including immune-related diseases, like Alzheimer’s and inflammatory bowel disease, and heritable cancers, like breast cancer.Speaker:Kushal Dey, PhDAssistant Member and Josie Robertson Investigator, Department of Computational and Systems BiologyAssistant Professor, Gerstner Sloan Kettering Graduate School of Biomedical SciencesSloan Kettering Institute, Memorial Sloan Kettering Cancer Center | 2023-10-03 15:00:00 | Online Webinar | Any | Variant Analysis | Online | Kushal Dey Ph.D. (Sloan Kettering) | NCI | 0 | Prioritizing Disease-Critical Variants, Genes, and Cell Types Using Genetic and Genomic Data | |
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DescriptionOur series of talks continues this month with two 20-minute presentations. There will be light refreshments and we encourage attendees to stay and chat with colleagues after the presentations. Our series of talks continues this month with two 20-minute presentations. There will be light refreshments and we encourage attendees to stay and chat with colleagues after the presentations. Single Cell and Spatial Genomics Users Group organizing committee:
Information about attending the talks virtually is below: Join by meeting number
DetailsWhenWed, Oct 04, 2023 - 10:00 am - 11:00 amWhereBuilding 40 Room 1201/1203 |
Our series of talks continues this month with two 20-minute presentations. There will be light refreshments and we encourage attendees to stay and chat with colleagues after the presentations. Droplet-microfluidics-assisted transcriptome sequencing of HIV DNA+ cells reveals HIV silencing signatures of HIV-infected ‘latent reservoirs’ Eli Boritz, MD, PhDChief, Virus Persistence and Dynamics SectionNational Institute of Allergy and Infectious Diseases (NIAID) Single-nuclei RNA and ATAC Sequencing Uncovers Subtypes in Pancreatic Neuroendocrine Tumors Shreya Rajhans CRTA Postbaccalaureate Fellow | Arda LabNational Cancer Institute (NCI) Single Cell and Spatial Genomics Users Group organizing committee:Mala Ananth, Mark Cookson, Stefan Cordes, Jamie Diemer, and Mike Kelly Information about attending the talks virtually is below: Join by meeting numberMeeting number (access code): 2300 958 5424 Meeting password: TbpjMsu*233 | 2023-10-04 10:00:00 | Building 40 Room 1201/1203 | Any | Genomics,Single Cell | Hybrid | Eli Boritz MD PhD (NIAID),Shreya Rajhans (NCI) | 0 | Single Cell and Spatial Genomics Users Group – 2 x 20 minute Talks | ||
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DescriptionThis is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code ...Read More This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. DetailsOrganizerNIH LibraryWhenWed, Oct 04, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. | 2023-10-04 13:00:00 | Online Webinar | Any | R programming | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Introduction to R and RStudio | |
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Distinguished Speakers Seminar SeriesDescriptionThere is an urgent need to take what we have learned in our new data-driven era of medicine, and use it to create a new system of precision medicine, delivering the best, safest, cost-effective preventative or therapeutic intervention at the right time, for the right patients. Dr. Butte's teams at the University of California build and apply tools that convert trillions of points of molecular, clinical, and epidemiological data -- measured by researchers and ...Read More There is an urgent need to take what we have learned in our new data-driven era of medicine, and use it to create a new system of precision medicine, delivering the best, safest, cost-effective preventative or therapeutic intervention at the right time, for the right patients. Dr. Butte's teams at the University of California build and apply tools that convert trillions of points of molecular, clinical, and epidemiological data -- measured by researchers and clinicians over the past decade and now commonly termed “big data” -- into diagnostics, therapeutics, and new insights into disease. Dr. Butte, a computer scientist and pediatrician, will highlight his center’s recent work on integrating electronic health records data from over 8 million patients across the entire University of California, and how analytics on this “real world data” can lead to new evidence for drug efficacy, new savings from better medication choices, and new methods to teach intelligence – real and artificial – to more precisely practice medicine. DetailsOrganizerBTEPWhenThu, Oct 05, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
There is an urgent need to take what we have learned in our new data-driven era of medicine, and use it to create a new system of precision medicine, delivering the best, safest, cost-effective preventative or therapeutic intervention at the right time, for the right patients. Dr. Butte's teams at the University of California build and apply tools that convert trillions of points of molecular, clinical, and epidemiological data -- measured by researchers and clinicians over the past decade and now commonly termed “big data” -- into diagnostics, therapeutics, and new insights into disease. Dr. Butte, a computer scientist and pediatrician, will highlight his center’s recent work on integrating electronic health records data from over 8 million patients across the entire University of California, and how analytics on this “real world data” can lead to new evidence for drug efficacy, new savings from better medication choices, and new methods to teach intelligence – real and artificial – to more precisely practice medicine. | 2023-10-05 13:00:00 | Online Webinar | Any | Big Data,Precision Medicine | Online | Atul Butte MD (UCSF) | BTEP | 1 | CANCELLED EVENT: Precisely Practicing Medicine from 700 Trillion Points of Data | |
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DescriptionDr. Hoifung Poon is the General Manager at Health Futures of Microsoft Research and an affiliated professor at University of Washington Medical School. He leads biomedical AI research and incubation, with the overarching goal of structuring medical data to accelerate discovery and improve delivery for precision health. His team and collaborators are among the first to explore large language models (LLMs) in health applications, from foundational research to incubations at large health systems and ...Read More Dr. Hoifung Poon is the General Manager at Health Futures of Microsoft Research and an affiliated professor at University of Washington Medical School. He leads biomedical AI research and incubation, with the overarching goal of structuring medical data to accelerate discovery and improve delivery for precision health. His team and collaborators are among the first to explore large language models (LLMs) in health applications, from foundational research to incubations at large health systems and life science companies, and ultimately to commercialization. His prior work has been recognized with Best Paper Awards from premier venues, including as NAACL, EMNLP, and UAI. DetailsOrganizerNCIWhenThu, Oct 05, 2023 - 3:00 pm - 4:00 pmWhereOnline Webinar |
Dr. Hoifung Poon is the General Manager at Health Futures of Microsoft Research and an affiliated professor at University of Washington Medical School. He leads biomedical AI research and incubation, with the overarching goal of structuring medical data to accelerate discovery and improve delivery for precision health. His team and collaborators are among the first to explore large language models (LLMs) in health applications, from foundational research to incubations at large health systems and life science companies, and ultimately to commercialization. His prior work has been recognized with Best Paper Awards from premier venues, including as NAACL, EMNLP, and UAI. | 2023-10-05 15:00:00 | Online Webinar | Any | AI/ML | Online | Dr. Hoifung Poon (Microsoft/U. of Washington) | NCI | 0 | Advancing Health at the Speed of AI. | |
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DescriptionIn this talk we will discuss what is a p-value and examples of p-value hacking. We will also review the basics of several statistical tests and when to use them. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov) from the Advanced Biomedical Computational Science group at FNLCR. This will be a ...Read More In this talk we will discuss what is a p-value and examples of p-value hacking. We will also review the basics of several statistical tests and when to use them. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov) from the Advanced Biomedical Computational Science group at FNLCR. This will be a hybrid event. DetailsWhenTue, Oct 10, 2023 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room |
In this talk we will discuss what is a p-value and examples of p-value hacking. We will also review the basics of several statistical tests and when to use them. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov) from the Advanced Biomedical Computational Science group at FNLCR. This will be a hybrid event. | 2023-10-10 12:00:00 | Building 549 Executive Board Room | Any | Statistics | Hybrid | 0 | What is a p-value and what statistical test should I use? | |||
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DescriptionPartek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact ...Read More Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf once a Biowulf and Partek Flow account has been set up. This setup allows users to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. Partek Flow enables the creation of publication quality visualizations. This online class is not hands-on. Biowulf and Partek Flow accounts are not required to attend. Participants will be presented with instructions for obtaining access to Partek Flow at the beginning of class. This training session will address bulk RNA and ATAC sequencing analysis using Partek Flow. Participants will learn how to integrate these two assays to gain insights on the epigenetic regulation of gene expression. Topics covered include:
Meeting link: Join by video system Join by phone RegisterWhenWed, Oct 11, 2023 - 11:00 am - 12:30 pmWhereOnline |
Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf once a Biowulf and Partek Flow account has been set up. This setup allows users to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. Partek Flow enables the creation of publication quality visualizations. This online class is not hands-on. Biowulf and Partek Flow accounts are not required to attend. Participants will be presented with instructions for obtaining access to Partek Flow at the beginning of class. This training session will address bulk RNA and ATAC sequencing analysis using Partek Flow. Participants will learn how to integrate these two assays to gain insights on the epigenetic regulation of gene expression. Topics covered include: Import of fastq files Alignment of fastq files to reference genome Detect peaks for ATAC sequencing data Quantification for RNA sequencing data Compare peak regions and gene expression Integrate RNA sequencing and ATAC sequencing results Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mc425f72619b46e5defe804bf67a43b70 Meeting number:2304 390 4110Password:JeRmMFa*823 Join by video systemDial 23043904110@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2304 390 4110Host PIN: 2784 | 2023-10-11 11:00:00 | Online | Beginner | ATAC sequencing,Bioinformatics,Bioinformatics Software,Bulk RNA-Seq | ATAC sequencing,Bioinformatics,Bioinformatics Software,Bulk RNA-seq | Online | Joe Wu (BTEP),Xiaowen Wang (Partek) | 0 | Partek Flow Integration of bulk RNA sequencing and ATAC sequencing data | |
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DescriptionThis session focuses on R data types and data structures. In R, more advanced libraries (code) may require data to be a particular data type or data structure to perform a function or analysis. Understanding the foundational concepts of data types and data structures will enable emerging coders to avoid programmatic pitfalls and correct coding errors effectively. This class will demonstrate how to determine data types, and build data structures, and convert data types ...Read More This session focuses on R data types and data structures. In R, more advanced libraries (code) may require data to be a particular data type or data structure to perform a function or analysis. Understanding the foundational concepts of data types and data structures will enable emerging coders to avoid programmatic pitfalls and correct coding errors effectively. This class will demonstrate how to determine data types, and build data structures, and convert data types when needed for functions such as analysis and visualizations. DetailsOrganizerNIH LibraryWhenWed, Oct 11, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This session focuses on R data types and data structures. In R, more advanced libraries (code) may require data to be a particular data type or data structure to perform a function or analysis. Understanding the foundational concepts of data types and data structures will enable emerging coders to avoid programmatic pitfalls and correct coding errors effectively. This class will demonstrate how to determine data types, and build data structures, and convert data types when needed for functions such as analysis and visualizations. | 2023-10-11 13:00:00 | Online Webinar | Any | R programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Data Types in R and RStudio | |
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DescriptionIn this one-hour session we will describe various resources available to NIH researchers to learn bioinformatics skills. These include trainings by specific groups or institutes (NCI, NIH Library, ODSS), licenses available for online learning, mailing lists, training calendars, and resources available NIH-wide for Next Gen Sequencing Analysis (Biowulf, Cloud). If you are completely new to bioinformatics at NIH, or have been doing bioinformatics analyses for a while, you will find some useful information in ...Read More In this one-hour session we will describe various resources available to NIH researchers to learn bioinformatics skills. These include trainings by specific groups or institutes (NCI, NIH Library, ODSS), licenses available for online learning, mailing lists, training calendars, and resources available NIH-wide for Next Gen Sequencing Analysis (Biowulf, Cloud). If you are completely new to bioinformatics at NIH, or have been doing bioinformatics analyses for a while, you will find some useful information in this presentation. RegisterOrganizerBTEPWhenThu, Oct 12, 2023 - 1:00 pm - 2:00 pmWhereOnline |
In this one-hour session we will describe various resources available to NIH researchers to learn bioinformatics skills. These include trainings by specific groups or institutes (NCI, NIH Library, ODSS), licenses available for online learning, mailing lists, training calendars, and resources available NIH-wide for Next Gen Sequencing Analysis (Biowulf, Cloud). If you are completely new to bioinformatics at NIH, or have been doing bioinformatics analyses for a while, you will find some useful information in this presentation. | 2023-10-12 13:00:00 | Online | Any | Bioinformatics | Online | Amy Stonelake (BTEP) | BTEP | 0 | Introduction to Bioinformatics Resources at NIH | |
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DescriptionZhiyong Lu, Ph.D. will present AI in Medicine: Improving Access to Literature Data for Knowledge Discovery at the monthly Data Sharing and Reuse Seminar.
Zhiyong Lu, Ph.D. will present AI in Medicine: Improving Access to Literature Data for Knowledge Discovery at the monthly Data Sharing and Reuse Seminar.
About the Speaker Dr. Zhiyong Lu is a (tenured) Senior Investigator at the National Library of Medicine Intramural Research Program, leading research in biomedical text and image processing, information retrieval, and AI/machine learning. In his role as Deputy Director for Literature Search at National Center of Biotechnology Information (NCBI), Dr. Lu oversees the overall R&D efforts to improve literature search and information access in resources like PubMed and LitCovid, which are used by millions worldwide each day. Dr. Lu also serves as an Associate Editor of Bioinformatics, and Organizer of the BioCreative NLP challenge. Over the last 15 years, Dr. Lu has mentored over 60 trainees, many of whom have gone on to become independent faculty members/researchers at academic institutions in the US, Europe, and Asia. With over 300 peer-reviewed publications, Dr. Lu is a highly cited author, and a Fellow of the American College of Medical Informatics (ACMI) and the International Academy of Health Sciences Informatics (IAHSI). DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenFri, Oct 13, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
Zhiyong Lu, Ph.D. will present AI in Medicine: Improving Access to Literature Data for Knowledge Discovery at the monthly Data Sharing and Reuse Seminar. The explosion of biomedical big data and information in the past decade or so has created new opportunities for discoveries to improve the treatment and prevention of human diseases. But the large body of knowledge—mostly exists as free text in journal articles for humans to read—presents a grand new challenge: individual scientists around the world are increasingly finding themselves overwhelmed by the sheer volume of research literature and are struggling to keep up to date and to make sense of this wealth of textual information. Our research aims to break down this barrier and to empower scientists towards accelerated knowledge discovery. This seminar will discuss the development of large-scale, AI-based solutions for better understanding scientific text in the biomedical literature. Moreover, I will demonstrate their uses in some real-world applications such as improving PubMed searches (Fiorini et al., Nature Biotechnology 2018), supporting precision medicine with LitVar (Allot et al., Nature Genetics 2023), and taming COVID-19 pandemic paper tsunami in LitCovid (Chen et al., Nature 2000). About the Speaker Dr. Zhiyong Lu is a (tenured) Senior Investigator at the National Library of Medicine Intramural Research Program, leading research in biomedical text and image processing, information retrieval, and AI/machine learning. In his role as Deputy Director for Literature Search at National Center of Biotechnology Information (NCBI), Dr. Lu oversees the overall R&D efforts to improve literature search and information access in resources like PubMed and LitCovid, which are used by millions worldwide each day. Dr. Lu also serves as an Associate Editor of Bioinformatics, and Organizer of the BioCreative NLP challenge. Over the last 15 years, Dr. Lu has mentored over 60 trainees, many of whom have gone on to become independent faculty members/researchers at academic institutions in the US, Europe, and Asia. With over 300 peer-reviewed publications, Dr. Lu is a highly cited author, and a Fellow of the American College of Medical Informatics (ACMI) and the International Academy of Health Sciences Informatics (IAHSI). | 2023-10-13 12:00:00 | Online Webinar | Any | Artificial Intelligence | Online | Dr. Zhiyong Lu (NCBI) | NIH Office of Data Science Strategy (ODSS) | 0 | AI in Medicine: Improving Access to Literature Data for Knowledge Discovery | |
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DescriptionThis class introduces version control and how to use GitHub for project versioning. Participants will have a better understanding of version control, GitHub, and their advantages for managing projects. Upon completion of this class participants should be able to recognize why version control is useful, discuss the difference between Git and GitHub, ...Read More This class introduces version control and how to use GitHub for project versioning. Participants will have a better understanding of version control, GitHub, and their advantages for managing projects. Upon completion of this class participants should be able to recognize why version control is useful, discuss the difference between Git and GitHub, list the options for authenticating to GitHub, and list the options for creating a personal access token (PAT). DetailsOrganizerNIH LibraryWhenMon, Oct 16, 2023 - 2:00 pm - 3:00 pmWhereOnline Webinar |
This class introduces version control and how to use GitHub for project versioning. Participants will have a better understanding of version control, GitHub, and their advantages for managing projects. Upon completion of this class participants should be able to recognize why version control is useful, discuss the difference between Git and GitHub, list the options for authenticating to GitHub, and list the options for creating a personal access token (PAT). | 2023-10-16 14:00:00 | Online Webinar | Any | GitHub | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Version Control and GitHub | |
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DescriptionLabeling signal data is a very important step in creating AI-based signal processing solutions. However, this step can be very time consuming and manual. In this beginner/intermediate one-hour session, the attendees will be introduced to signal labeling for use in AI applications and discuss how MATLAB can be used to speed up and simplify the process, from preprocessing to extracting information from signals. The session will ...Read More Labeling signal data is a very important step in creating AI-based signal processing solutions. However, this step can be very time consuming and manual. In this beginner/intermediate one-hour session, the attendees will be introduced to signal labeling for use in AI applications and discuss how MATLAB can be used to speed up and simplify the process, from preprocessing to extracting information from signals. The session will cover different approaches for signal labeling, including using algorithms and automating with deep learning models. It will also discuss an iterative method of building deep learning models and reducing human effort in labeling. DetailsOrganizerNIH LibraryWhenTue, Oct 17, 2023 - 12:00 pm - 1:30 pmWhereOnline Webinar |
Labeling signal data is a very important step in creating AI-based signal processing solutions. However, this step can be very time consuming and manual. In this beginner/intermediate one-hour session, the attendees will be introduced to signal labeling for use in AI applications and discuss how MATLAB can be used to speed up and simplify the process, from preprocessing to extracting information from signals. The session will cover different approaches for signal labeling, including using algorithms and automating with deep learning models. It will also discuss an iterative method of building deep learning models and reducing human effort in labeling. | 2023-10-17 12:00:00 | Online Webinar | Any | Matlab | Online | Mathworks | NIH Library | 0 | MATLAB Automated Labeling and Iterative Learning | |
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Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescriptionThis October session of the BTEP Coding club will feature a tutorial on how to access data from GEO as well as how to submit data to GEO.
This October session of the BTEP Coding club will feature a tutorial on how to access data from GEO as well as how to submit data to GEO.
RegisterOrganizerBTEPWhenWed, Oct 18, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
This October session of the BTEP Coding club will feature a tutorial on how to access data from GEO as well as how to submit data to GEO. | 2023-10-18 11:00:00 | Online Webinar | Any | Data Management | Gene Expression Omnibus | Online | Joshua Meyer (CCBR) | BTEP | 1 | Accessing data from and Submitting data to the Gene Expression Omnibus (GEO) |
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DescriptionData Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions select, filter, pipes, mutate, head, is.na, and export. Learning these functions will enable users to ...Read More Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions select, filter, pipes, mutate, head, is.na, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. DetailsOrganizerNIH LibraryWhenWed, Oct 18, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will introduce the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions select, filter, pipes, mutate, head, is.na, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. | 2023-10-18 13:00:00 | Online Webinar | Any | R programming | Online | Candace Norton (NIH Library) | NIH Library | 0 | Data Wrangling in R: Part 1 | |
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DescriptionData Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will build on the introduction provided in Data Wrangling Part 1 to further explore the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions group_by, summarize, count, arrange, ...Read More Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will build on the introduction provided in Data Wrangling Part 1 to further explore the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions group_by, summarize, count, arrange, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. DetailsOrganizerNIH LibraryWhenThu, Oct 19, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Data Wrangling is another class in the NIH Library Introduction to R and RStudio Series. A basic understanding of using R and RStudio to manage data is expected. This one-hour class will build on the introduction provided in Data Wrangling Part 1 to further explore the R tidyverse package and how to use it to manipulate, analyze and export data. This class will explore options for using the tidyverse functions group_by, summarize, count, arrange, and export. Learning these functions will enable users to have well formatted data frames for future clean and consistent analysis and visualizations. | 2023-10-19 13:00:00 | Online Webinar | Any | R programming | Online | Candace Norton (NIH Library) | NIH Library | 0 | Data Wrangling in R: Part 2 | |
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DescriptionPython is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of ...Read More Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. DetailsOrganizerNIH LibraryWhenFri, Oct 20, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. | 2023-10-20 10:00:00 | Online Webinar | Any | Python Programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
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DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class to assist researchers in writing a manuscript. Participants will become familiar with statistical issues that can arise as well as recommendations to prevent them. At the end of the class, participants should have a good sense of what to do and not to do when writing the statistical sections of a manuscript. Most of ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class to assist researchers in writing a manuscript. Participants will become familiar with statistical issues that can arise as well as recommendations to prevent them. At the end of the class, participants should have a good sense of what to do and not to do when writing the statistical sections of a manuscript. Most of the examples will be related to clinical research; however, anyone can benefit from the tips shared. Plenty of time will be devoted for questions, and references will be provided for more in-depth self-study. This class complements, How to Write a Research Paper Parts 1 & 2, as it specifically covers key points in writing the statistical portion of a manuscript – particularly for clinical research. Attendance to How to Write a Research Paper is not required to benefit from this class. DetailsOrganizerNIH LibraryWhenFri, Oct 20, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering a class to assist researchers in writing a manuscript. Participants will become familiar with statistical issues that can arise as well as recommendations to prevent them. At the end of the class, participants should have a good sense of what to do and not to do when writing the statistical sections of a manuscript. Most of the examples will be related to clinical research; however, anyone can benefit from the tips shared. Plenty of time will be devoted for questions, and references will be provided for more in-depth self-study. This class complements, How to Write a Research Paper Parts 1 & 2, as it specifically covers key points in writing the statistical portion of a manuscript – particularly for clinical research. Attendance to How to Write a Research Paper is not required to benefit from this class. | 2023-10-20 13:00:00 | Online Webinar | Any | Statistics | Online | Xiaobai Li ( NIH Clinical Center) | NIH Library | 0 | Statistical Considerations in Preparing Your Paper | |
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DescriptionThis class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, participants will have a chance to experiment with this integration and understand its advantages for collaboration and managing projects. You must have taken the Version Control and GitHub class to be successful in this class. Upon ...Read More This class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, participants will have a chance to experiment with this integration and understand its advantages for collaboration and managing projects. You must have taken the Version Control and GitHub class to be successful in this class. Upon completion of this class participants should be able to discuss the difference between Git and GitHub, list the options for authenticating to GitHub, create a new R project using a GitHub repository, and distinguish between pulling and pushing data from a repository. DetailsOrganizerNIH LibraryWhenMon, Oct 23, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
This class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, participants will have a chance to experiment with this integration and understand its advantages for collaboration and managing projects. You must have taken the Version Control and GitHub class to be successful in this class. Upon completion of this class participants should be able to discuss the difference between Git and GitHub, list the options for authenticating to GitHub, create a new R project using a GitHub repository, and distinguish between pulling and pushing data from a repository. | 2023-10-23 10:00:00 | Online Webinar | Any | R programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Git in RStudio | |
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DescriptionQIAGEN Ingenuity Pathway Analysis (IPA) is the leading pathway analysis application among the life science research community and is cited in tens of thousands of articles for the analysis, integration and interpretation of data derived from ‘omics experiments. Such experiments include RNA-seq, small RNA-seq, metabolomics, proteomics, microarrays including miRNA and SNP, and small-scale experiments. With QIAGEN IPA you can predict downstream effects and identify new targets or candidate biomarkers. QIAGEN Ingenuity Pathway Analysis ...Read More QIAGEN Ingenuity Pathway Analysis (IPA) is the leading pathway analysis application among the life science research community and is cited in tens of thousands of articles for the analysis, integration and interpretation of data derived from ‘omics experiments. Such experiments include RNA-seq, small RNA-seq, metabolomics, proteomics, microarrays including miRNA and SNP, and small-scale experiments. With QIAGEN IPA you can predict downstream effects and identify new targets or candidate biomarkers. QIAGEN Ingenuity Pathway Analysis helps you perform insightful data analysis and interpretation to understand your experimental results within the context of various biological systems. It includes the most extensive molecular pathway and relationship database backed by scientific literature, along with a leading analysis engine, which will provide you with confidence in your results that you can quickly digest and interpret for publications and reports. DetailsOrganizerCBIITWhenMon, Oct 23, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
QIAGEN Ingenuity Pathway Analysis (IPA) is the leading pathway analysis application among the life science research community and is cited in tens of thousands of articles for the analysis, integration and interpretation of data derived from ‘omics experiments. Such experiments include RNA-seq, small RNA-seq, metabolomics, proteomics, microarrays including miRNA and SNP, and small-scale experiments. With QIAGEN IPA you can predict downstream effects and identify new targets or candidate biomarkers. QIAGEN Ingenuity Pathway Analysis helps you perform insightful data analysis and interpretation to understand your experimental results within the context of various biological systems. It includes the most extensive molecular pathway and relationship database backed by scientific literature, along with a leading analysis engine, which will provide you with confidence in your results that you can quickly digest and interpret for publications and reports. Basic Training • Introduction to IPA • Data format and upload o Types of data o How to upload your data to IPA and start an analysis • Understanding a Core Analysis o Canonical Pathways o Upstream Regulators o Diseases and Functions | 2023-10-23 10:00:00 | Online Webinar | Any | Pathway Analysis | Online | Shawn Prince (Qiagen) | CBIIT | 0 | QIAGEN Ingenuity Pathway Analysis (IPA) | |
1272 |
DescriptionDo you use the Cancer Research Data Commons’ (CRDC’s) Genomic Data Commons (GDC) for downloading molecular, clinical, and/or imaging data? Do you download large quantities of data? Attend this webinar to learn more about two particular methods for making such data transfer/download easier! GDC offers a variety of methods for data transfer, and in this presentation, University of Chicago's Dr. Bill Wysocki will demonstrate the GDC Data ...Read More Do you use the Cancer Research Data Commons’ (CRDC’s) Genomic Data Commons (GDC) for downloading molecular, clinical, and/or imaging data? Do you download large quantities of data? Attend this webinar to learn more about two particular methods for making such data transfer/download easier! GDC offers a variety of methods for data transfer, and in this presentation, University of Chicago's Dr. Bill Wysocki will demonstrate the GDC Data Transfer Tool and the GDC Application Programming Interface. He'll also elaborate on how to remediate downloading issues when they occur. DetailsOrganizerCBIITWhenMon, Oct 23, 2023 - 2:00 pm - 2:30 pmWhereOnline Webinar |
Do you use the Cancer Research Data Commons’ (CRDC’s) Genomic Data Commons (GDC) for downloading molecular, clinical, and/or imaging data? Do you download large quantities of data? Attend this webinar to learn more about two particular methods for making such data transfer/download easier! GDC offers a variety of methods for data transfer, and in this presentation, University of Chicago's Dr. Bill Wysocki will demonstrate the GDC Data Transfer Tool and the GDC Application Programming Interface. He'll also elaborate on how to remediate downloading issues when they occur. | 2023-10-23 14:00:00 | Online Webinar | Any | Data Sharing | Online | Bill Wysocki Ph.D. (CRDC GDC) | CBIIT | 0 | Downloading Large Data Sets from the Genomic Data Commons (GDC) | |
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DescriptionIn this session, we will provide an overview of the Next-Generation Sequencing (NGS) capabilities and applications. We will present the workflows and analyses for Illumina short-read, PacBio, and Oxford Nanopore long-read sequencing on Frederick Research Computing Environment (FRCE) as user cases. The session is geared towards users new to NGS applications and/or those who are not familiar with FRCE computational environment for NGS analysis. This session will be recorded, and materials ...Read More In this session, we will provide an overview of the Next-Generation Sequencing (NGS) capabilities and applications. We will present the workflows and analyses for Illumina short-read, PacBio, and Oxford Nanopore long-read sequencing on Frederick Research Computing Environment (FRCE) as user cases. The session is geared towards users new to NGS applications and/or those who are not familiar with FRCE computational environment for NGS analysis. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco from the Advanced Biomedical Computational Science group at Frederick National Laboratory for Cancer Research.
DetailsOrganizerFRCE and Computational Sciences SeriesWhenTue, Oct 24, 2023 - 12:00 pm - 1:00 pmWhereNCI Campus at Frederick, Building 549, Executive Board Room |
In this session, we will provide an overview of the Next-Generation Sequencing (NGS) capabilities and applications. We will present the workflows and analyses for Illumina short-read, PacBio, and Oxford Nanopore long-read sequencing on Frederick Research Computing Environment (FRCE) as user cases. The session is geared towards users new to NGS applications and/or those who are not familiar with FRCE computational environment for NGS analysis. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco from the Advanced Biomedical Computational Science group at Frederick National Laboratory for Cancer Research. If you are an individual with a disability who needs reasonable accommodations to participate in this event, please contact Natasha Pacheco at your earliest convenience, so that we can discuss your accommodation request. | 2023-10-24 12:00:00 | NCI Campus at Frederick, Building 549, Executive Board Room | Any | Hybrid | Shaojun Xie Ph.D.,Sulbha Choudhari Ph.D.,Ying Wu Ph.D. | FRCE and Computational Sciences Series | 0 | Introduction to Next-Generation Sequencing Analysis on FRCE | ||
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DescriptionEvery week, thousands of biomedical research papers are published with a portion of them containing supporting tables with data about genes, transcripts, variants, and proteins. For example, supporting tables may contain differentially expressed genes and proteins from transcriptomics and proteomics assays, targets of transcription factors from ChIP-seq experiments, hits from genome-wide CRISPR screens, or genes identified to harbor mutations from GWAS studies. Because these gene sets are commonly buried in the supplemental tables of ...Read More Every week, thousands of biomedical research papers are published with a portion of them containing supporting tables with data about genes, transcripts, variants, and proteins. For example, supporting tables may contain differentially expressed genes and proteins from transcriptomics and proteomics assays, targets of transcription factors from ChIP-seq experiments, hits from genome-wide CRISPR screens, or genes identified to harbor mutations from GWAS studies. Because these gene sets are commonly buried in the supplemental tables of research publications, they are not widely available for search and reuse.
DetailsOrganizerCBIITWhenWed, Oct 25, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
Every week, thousands of biomedical research papers are published with a portion of them containing supporting tables with data about genes, transcripts, variants, and proteins. For example, supporting tables may contain differentially expressed genes and proteins from transcriptomics and proteomics assays, targets of transcription factors from ChIP-seq experiments, hits from genome-wide CRISPR screens, or genes identified to harbor mutations from GWAS studies. Because these gene sets are commonly buried in the supplemental tables of research publications, they are not widely available for search and reuse. Rummagene is a web server application that provides access to hundreds of thousands of human and mouse gene sets extracted from supporting materials of publications listed on PubMed Central (PMC). Rummagene can be used to find surprising relationships between unexpected biological processes, concepts, and named entities. By overlaying the Rummagene gene set space with the Enrichr gene set space we can discover areas of biological and biomedical knowledge unique to each resource. | 2023-10-25 10:00:00 | Online Webinar | Any | Data Mining | Online | Avi Ma’ayan Ph.D. (Mount Sinai Center for Bioinformatics) | CBIIT | 0 | Rummagene: Mining Gene Sets from Supporting Materials of PMC Publications | |
1233 |
DescriptionPartek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact ...Read More Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf once a Biowulf and Partek Flow account has been set up. This setup allows users to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. Partek Flow enables the creation of publication quality visualizations. This online class is not hands-on. Biowulf and Partek Flow accounts are not required to attend. Participants will be presented with instructions for obtaining access to Partek Flow at the beginning of class. This training session will address RNA and ATAC sequencing analysis on the single cell level using Partek Flow. Participants will learn how to integrate these two assays to gain insights to the epigenetic regulation of gene expression at the single cell level. Topics covered include:
Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m53264dc1ee781615a0d289b1678feefc Meeting number: Join by video system Join by phone RegisterWhenWed, Oct 25, 2023 - 11:00 am - 12:30 pmWhereOnline |
Partek Flow is your start-to-finish solution for analyzing high dimensional multi-omics sequencing data. It is a point-and-click software and is suitable for those who wish to avoid the steep learning curve associated with analyzing sequencing data through command line and/or code. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf once a Biowulf and Partek Flow account has been set up. This setup allows users to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. Partek Flow enables the creation of publication quality visualizations. This online class is not hands-on. Biowulf and Partek Flow accounts are not required to attend. Participants will be presented with instructions for obtaining access to Partek Flow at the beginning of class. This training session will address RNA and ATAC sequencing analysis on the single cell level using Partek Flow. Participants will learn how to integrate these two assays to gain insights to the epigenetic regulation of gene expression at the single cell level. Topics covered include: Import single cell ATAC sequencing Cellranger output QA/QC Visualization Compare peak regions Motif detection Integration with single cell RNA-seq data Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m53264dc1ee781615a0d289b1678feefc Meeting number:2300 641 2315Password:mcCG3P8kh@2 Join by video systemDial 23006412315@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2300 641 2315Host PIN: 2784 | 2023-10-25 11:00:00 | Online | Beginner | Bioinformatics,Bioinformatics Software,, | Bioinformatics,Bioinformatics Software,Single Cell RNA SEQ,single cell ATAC seq | Online | Joe Wu (BTEP),Xiaowen Wang (Partek) | 0 | Partek Flow Integration of single cell RNA sequencing and single cell ATAC sequencing data | |
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DescriptionAdditional Connection information: Meeting ID: 248 393 722 628 Passcode: kcALva Additional Connection information: Meeting ID: 248 393 722 628 Passcode: kcALva DetailsOrganizerChief Science Officer, Dr. Leonard Freedman, Science and Technology GroupWhenThu, Oct 26, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Additional Connection information: Meeting ID: 248 393 722 628 Passcode: kcALva | 2023-10-26 11:00:00 | Online Webinar | Any | AI/ML,Image Analysis | Online | Hyun Jung Ph.D. Bioinformatics and Computational Science Directorate | Chief Science Officer, Dr. Leonard Freedman, Science and Technology Group | 0 | Digital pathology image analysis using deep learning | |
1122 |
DescriptionAnalysis of medical images such as MRI, CT, X-ray and ultrasound requires a comprehensive environment for data access, visualization, processing, and algorithm development. MATLAB provides tools such as Medical Imaging Toolbox and Deep Learning Toolbox and algorithms for end-to-end medical image analysis and Artificial Intelligence (AI) workflow. This class will highlight the main challenges of extracting clinically meaningful information based on advanced techniques such as AI. Participants will learn how to clean, segment, register, ...Read More Analysis of medical images such as MRI, CT, X-ray and ultrasound requires a comprehensive environment for data access, visualization, processing, and algorithm development. MATLAB provides tools such as Medical Imaging Toolbox and Deep Learning Toolbox and algorithms for end-to-end medical image analysis and Artificial Intelligence (AI) workflow. This class will highlight the main challenges of extracting clinically meaningful information based on advanced techniques such as AI. Participants will learn how to clean, segment, register, and label a large collection of images. This is an introductory level class. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenWed, Nov 01, 2023 - 12:00 pm - 1:30 pmWhereOnline Webinar |
Analysis of medical images such as MRI, CT, X-ray and ultrasound requires a comprehensive environment for data access, visualization, processing, and algorithm development. MATLAB provides tools such as Medical Imaging Toolbox and Deep Learning Toolbox and algorithms for end-to-end medical image analysis and Artificial Intelligence (AI) workflow. This class will highlight the main challenges of extracting clinically meaningful information based on advanced techniques such as AI. Participants will learn how to clean, segment, register, and label a large collection of images. This is an introductory level class. No installation of MATLAB is necessary. | 2023-11-01 12:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Mathworks | NIH Library | 0 | Medical Image Analysis and AI with MATLAB | |
1125 |
Distinguished Speakers Seminar SeriesDescriptionIn this seminar, Dr. Furlan will share data using single cell genomic technologies after hematopoietic cell transplantation including the molecular approaches and computational tools they have used and developed as they relate to this field. Meeting number: 2302 366 1547 Password: PpPs7MHM@52 Join by video system Dial 23023661547@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2302 366 1547In this seminar, Dr. Furlan will share data using single cell genomic technologies after hematopoietic cell transplantation including the molecular approaches and computational tools they have used and developed as they relate to this field. Meeting number: 2302 366 1547 Password: PpPs7MHM@52 Join by video system Dial 23023661547@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2302 366 1547RegisterOrganizerBTEPWhenThu, Nov 02, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this seminar, Dr. Furlan will share data using single cell genomic technologies after hematopoietic cell transplantation including the molecular approaches and computational tools they have used and developed as they relate to this field. Meeting number: 2302 366 1547 Password: PpPs7MHM@52 Join by video system Dial 23023661547@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2302 366 1547 | 2023-11-02 13:00:00 | Online Webinar | Any | Cancer | Online | Scott Furlan (Fred Hutchinson Cancer Center) | BTEP | 1 | Translating Single Cell Genomics for use in Patients after Blood and Marrow Transplantation | |
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DescriptionUK Biobank is a large-scale biomedical database and research resource, containing in-depth genetic and health information from half a million UK participants. The database is regularly augmented with additional data and is globally accessible to approved researchers undertaking vital research into the most common and life-threatening diseases. This workshop will teach participants how to translate their research onto the UK Biobank Research Analysis Platform (UKB-RAP). This is open to all potential UK ...Read More UK Biobank is a large-scale biomedical database and research resource, containing in-depth genetic and health information from half a million UK participants. The database is regularly augmented with additional data and is globally accessible to approved researchers undertaking vital research into the most common and life-threatening diseases. This workshop will teach participants how to translate their research onto the UK Biobank Research Analysis Platform (UKB-RAP). This is open to all potential UK Biobank researchers, whether they have a UKB-RAP (UK Biobank Research Analysis Platform) account or haven’t started on the Platform yet. Schedule
RegisterOrganizerBTEPWhenMon, Nov 06, 2023 - 10:00 am - 2:00 pmWhereBldg 35A, Room 610 |
UK Biobank is a large-scale biomedical database and research resource, containing in-depth genetic and health information from half a million UK participants. The database is regularly augmented with additional data and is globally accessible to approved researchers undertaking vital research into the most common and life-threatening diseases. This workshop will teach participants how to translate their research onto the UK Biobank Research Analysis Platform (UKB-RAP). This is open to all potential UK Biobank researchers, whether they have a UKB-RAP (UK Biobank Research Analysis Platform) account or haven’t started on the Platform yet.This hands-on workshop will include:-An overview on how to use UKB-RAP.-Teaching common data processing operations that researchers need to do including using the cohort browser, ubuntu workstations, JupyterLab, working with UKB-RAP apps and building workflows.-Hands-on activities where researchers can do data exploration. Schedule 10:00AM - 11:15AM Introduction into UKB-RAP platform and cohort browser demo 11:15AM - 11:30AM Coffee break 11:30AM - 12:00PM Jupyter lab/Command line demo 12:00pm - 2:00 PM Open office hours/breakout session | 2023-11-06 10:00:00 | Bldg 35A, Room 610 | Any | Phenotype Genotype,UK BioBank | In-Person | Ben Busby (DNAnexus),Brenton Pyle (DNAnexus) | BTEP | 0 | Start Running Your Analyses on the UK Biobank Research Analysis Platform | |
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DescriptionThis talk will cover how to maximize the utility of your data by handling missing values and performing mathematical transformations. We will cover best practices, common pitfalls, and touch on data standardization methods. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov) from the Advanced Biomedical Computational ...Read More This talk will cover how to maximize the utility of your data by handling missing values and performing mathematical transformations. We will cover best practices, common pitfalls, and touch on data standardization methods. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov) from the Advanced Biomedical Computational Science group. DetailsOrganizerCBIITWhenTue, Nov 14, 2023 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room, Frederick |
This talk will cover how to maximize the utility of your data by handling missing values and performing mathematical transformations. We will cover best practices, common pitfalls, and touch on data standardization methods. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov) from the Advanced Biomedical Computational Science group. | 2023-11-14 12:00:00 | Building 549 Executive Board Room, Frederick | Any | Hybrid | Duncan Donohue PhD (Data Management Services Inc. a BRMI company.) | CBIIT | 0 | Missing Values and Data Transformations | ||
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DescriptionDr. Ting Wang is a Sanford C. and Karen P. Loewentheil Distinguished Professor of Medicine at the McDonnell Genome Institute, Washington University School of Medicine in St. Louis. Dr. Wang’s lab investigates epigenetic determinants of cell fates in normal development and regeneration, in cancer, and in evolution, by integrating cutting-edge experimental and computational technologies. His lab developed widely used DNA methylomics technologies, algorithms to identify regulatory motifs and modules, and analytical and ...Read More Dr. Ting Wang is a Sanford C. and Karen P. Loewentheil Distinguished Professor of Medicine at the McDonnell Genome Institute, Washington University School of Medicine in St. Louis. Dr. Wang’s lab investigates epigenetic determinants of cell fates in normal development and regeneration, in cancer, and in evolution, by integrating cutting-edge experimental and computational technologies. His lab developed widely used DNA methylomics technologies, algorithms to identify regulatory motifs and modules, and analytical and visualization tools to integrate large genomic and epigenomic data. DetailsWhenTue, Nov 14, 2023 - 3:00 pm - 4:00 pmWhereOnline Webinar |
Dr. Ting Wang is a Sanford C. and Karen P. Loewentheil Distinguished Professor of Medicine at the McDonnell Genome Institute, Washington University School of Medicine in St. Louis. Dr. Wang’s lab investigates epigenetic determinants of cell fates in normal development and regeneration, in cancer, and in evolution, by integrating cutting-edge experimental and computational technologies. His lab developed widely used DNA methylomics technologies, algorithms to identify regulatory motifs and modules, and analytical and visualization tools to integrate large genomic and epigenomic data.Dr. Karen Miga is an Assistant Professor in the Biomolecular Engineering Department at the University of California, Santa Cruz (UCSC). She is also the Associate Director of the UCSC Genomics Institute. In addition, she co-leads the Telomere-to-Telomere (T2T) Consortium and is the Project Director of the Human Pangenome Reference Consortium (HPRC) Production Center at UCSC. Her lab aims to uncover a new source of genetic and epigenetic variation in the human population, which is useful to investigate novel associations between genotype and phenotype of inherited traits and disease. | 2023-11-14 15:00:00 | Online Webinar | Any | Cancer | Online | Ting Wang Ph.D. (Wash. U. School of Medicine), | 0 | Human Pangenome Reference | ||
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DescriptionThis class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. You must have taken Data Visualization in R: ggplot class to be successful in this class. By the end of this class, participants should be able to describe options for time series data, create a line ...Read More This class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. You must have taken Data Visualization in R: ggplot class to be successful in this class. By the end of this class, participants should be able to describe options for time series data, create a line plot in ggplot, learn how to facet a plot, demonstrate options for customizing the title and axis, and apply different ggplot themes. DetailsOrganizerNIH LibraryWhenWed, Nov 15, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
This class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. You must have taken Data Visualization in R: ggplot class to be successful in this class. By the end of this class, participants should be able to describe options for time series data, create a line plot in ggplot, learn how to facet a plot, demonstrate options for customizing the title and axis, and apply different ggplot themes. | 2023-11-15 10:00:00 | Online Webinar | Any | Data Visualization,R programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot: Customizations | |
1220 |
Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescriptionThis session introduces two versions of the R/ Bioconductor package OmicCircos to generate high-quality circular plots for visualizing multi-dimensional omics data:
Meeting number:2310 050 3184 Password:3sfNDMBq*66 Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2310 050 3184This session introduces two versions of the R/ Bioconductor package OmicCircos to generate high-quality circular plots for visualizing multi-dimensional omics data:
Meeting number:2310 050 3184 Password:3sfNDMBq*66 Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2310 050 3184RegisterOrganizerBTEPWhenWed, Nov 15, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
This session introduces two versions of the R/ Bioconductor package OmicCircos to generate high-quality circular plots for visualizing multi-dimensional omics data: coding in the R environment for programmers; point-and-click OmicCircos R Shiny app on the Cancer Genomics Cloud (CGC) for non-programmers. Meeting number:2310 050 3184 Password:3sfNDMBq*66 Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2310 050 3184 | 2023-11-15 11:00:00 | Online Webinar | Any | Data Visualization,Genomics | Online | Chunhua Yan (CBIIT CGBB),Ying Hu (CBIIT CGBB) | BTEP | 1 | Visualizing multi-dimensional omics data with circular plots in R package OmicCircos | |
1302 |
DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users
DetailsWhenWed, Nov 15, 2023 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2023-11-15 13:00:00 | Any | Online | 0 | Zoom-In Consult for Biowulf Users | |||||
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DescriptionThis class will provide a demonstration of how to identify cell types based on statistics, visualization, and canonical markers. One Peripheral blood mononuclear cells (PBMCs) sample will be used to illustrate a basic Single Cell RNA-Seq analysis pipeline. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical ...Read More This class will provide a demonstration of how to identify cell types based on statistics, visualization, and canonical markers. One Peripheral blood mononuclear cells (PBMCs) sample will be used to illustrate a basic Single Cell RNA-Seq analysis pipeline. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis pipelines, Partek Flow enables users to carry out routine NGS data analysis using dozens of popular algorithms without writing codes or running command lines tools. Attendees will need to have taken the Partek Flow Basic Components class before registering or be comfortable with Partek Flow. By the end of this class, attendees will be able describe how to access Partek Flow from the NIH Library, discuss the Quality Control (QC) and Quality Assurance (QA) tools, identify pre- and post-alignment tools, describe options for quantification and normalization, and perform pathway analysis and visualization. DetailsOrganizerNIH LibraryWhenThu, Nov 16, 2023 - 10:00 am - 11:30 amWhereOnline Webinar |
This class will provide a demonstration of how to identify cell types based on statistics, visualization, and canonical markers. One Peripheral blood mononuclear cells (PBMCs) sample will be used to illustrate a basic Single Cell RNA-Seq analysis pipeline. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis pipelines, Partek Flow enables users to carry out routine NGS data analysis using dozens of popular algorithms without writing codes or running command lines tools. Attendees will need to have taken the Partek Flow Basic Components class before registering or be comfortable with Partek Flow. By the end of this class, attendees will be able describe how to access Partek Flow from the NIH Library, discuss the Quality Control (QC) and Quality Assurance (QA) tools, identify pre- and post-alignment tools, describe options for quantification and normalization, and perform pathway analysis and visualization. | 2023-11-16 10:00:00 | Online Webinar | Any | Online | Partek | NIH Library | 0 | Basic Single Cell RNA-Seq Analysis & Visualization in Partek Flow | ||
1254 |
DescriptionThis session describes the application of the web-based interactive OmicCircos in R Shiny to construct circular plots with desired biological features. Example data from human and mouse genomes will be used to demonstrate over thirty plot functions along with the color selection, annotation, labeling, and zoom capabilities. User-guide, take-home video and sample plots from publications will be provided. No R Programming experience is required. By the end of this training, students will be able ...Read More This session describes the application of the web-based interactive OmicCircos in R Shiny to construct circular plots with desired biological features. Example data from human and mouse genomes will be used to demonstrate over thirty plot functions along with the color selection, annotation, labeling, and zoom capabilities. User-guide, take-home video and sample plots from publications will be provided. No R Programming experience is required. By the end of this training, students will be able to format data for omicCircos in R Shiny, use the point-and-click interface to set the parameters and generate circular plots, and export the plot for presentation and publication. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is 2 hours and is a mix of lecture and demo. DetailsOrganizerCBIITWhenFri, Nov 17, 2023 - 12:00 pm - 2:00 pmWhereOnline Webinar |
This session describes the application of the web-based interactive OmicCircos in R Shiny to construct circular plots with desired biological features. Example data from human and mouse genomes will be used to demonstrate over thirty plot functions along with the color selection, annotation, labeling, and zoom capabilities. User-guide, take-home video and sample plots from publications will be provided. No R Programming experience is required. By the end of this training, students will be able to format data for omicCircos in R Shiny, use the point-and-click interface to set the parameters and generate circular plots, and export the plot for presentation and publication. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is 2 hours and is a mix of lecture and demo. | 2023-11-17 12:00:00 | Online Webinar | Beginner | Data Visualization | Online | Daoud Meerzaman (CBIIT) | CBIIT | 0 | NGS Visualization Tool | |
1305 |
DescriptionDear Colleagues,
This presentation will provide an overview of OpenCRAVAT.
Annotation and interpretation of cancer variants is critical to the design of personalized ...Read More Dear Colleagues,
This presentation will provide an overview of OpenCRAVAT.
Annotation and interpretation of cancer variants is critical to the design of personalized molecular therapies, and to clinicians working in genetic testing labs and molecular tumor boards. Hundreds of interpretation tools are available, but they are dispersed, and many are proprietary and expensive. OpenCRAVAT is an easy-to-use, open source, integrated annotator with 160+ modular tools. With a professional quality GUI, easy installation, and local, web, and cloud versions, it makes high-throughput variant annotation accessible to both researchers and clinicians. DetailsOrganizerCBIITWhenTue, Nov 21, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
Dear Colleagues, This presentation will provide an overview of OpenCRAVAT. Annotation and interpretation of cancer variants is critical to the design of personalized molecular therapies, and to clinicians working in genetic testing labs and molecular tumor boards. Hundreds of interpretation tools are available, but they are dispersed, and many are proprietary and expensive. OpenCRAVAT is an easy-to-use, open source, integrated annotator with 160+ modular tools. With a professional quality GUI, easy installation, and local, web, and cloud versions, it makes high-throughput variant annotation accessible to both researchers and clinicians. | 2023-11-21 10:00:00 | Online Webinar | Any | Bioinformatics Software,Variant Analysis | Online | Rachel Karchin Ph.D. Johns Hopkins University | CBIIT | 0 | Webinar on OpenCRAVAT: An open source, scalable decision support system to support variant and gene prioritization | |
1283 |
Part Of: Data Wrangling with R CourseDescription
This will be a no coding introduction to R, RStudio, and the Tidyverse. In this lesson, we will review some of the advantages of using R for data analysis and will get you acquainted with the RStudio environment. The end of the lesson will shift focus to getting everyone connected to the course on DNAnexus.
This will be a no coding introduction to R, RStudio, and the Tidyverse. In this lesson, we will review some of the advantages of using R for data analysis and will get you acquainted with the RStudio environment. The end of the lesson will shift focus to getting everyone connected to the course on DNAnexus.
RegisterOrganizerBTEPWhenMon, Nov 27, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This will be a no coding introduction to R, RStudio, and the Tidyverse. In this lesson, we will review some of the advantages of using R for data analysis and will get you acquainted with the RStudio environment. The end of the lesson will shift focus to getting everyone connected to the course on DNAnexus. | 2023-11-27 13:00:00 | Online Webinar | Beginner | R programming | Data analysis | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to R, RStudio, and the Tidyverse |
1303 |
DescriptionRecent advances in protein structure prediction methods such as AlphaFold2 and ESMFold has enabled protein structure prediction to achieve experimental accuracy in certain cases. In this talk, we will discuss the advantages and limitations of these structure prediction methods and how to run novel structure predictions on FRCE and publicly available servers. No prior knowledge is needed to predict basic protein structures on public servers and interpret prediction results. A beginner level of knowledge ...Read More Recent advances in protein structure prediction methods such as AlphaFold2 and ESMFold has enabled protein structure prediction to achieve experimental accuracy in certain cases. In this talk, we will discuss the advantages and limitations of these structure prediction methods and how to run novel structure predictions on FRCE and publicly available servers. No prior knowledge is needed to predict basic protein structures on public servers and interpret prediction results. A beginner level of knowledge working with Unix shell commands will be helpful to predict more complex protein structures on FRCE. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. DetailsWhenTue, Nov 28, 2023 - 12:00 pm - 1:00 pmWhereBuilding 549 Conference Room B |
Recent advances in protein structure prediction methods such as AlphaFold2 and ESMFold has enabled protein structure prediction to achieve experimental accuracy in certain cases. In this talk, we will discuss the advantages and limitations of these structure prediction methods and how to run novel structure predictions on FRCE and publicly available servers. No prior knowledge is needed to predict basic protein structures on public servers and interpret prediction results. A beginner level of knowledge working with Unix shell commands will be helpful to predict more complex protein structures on FRCE. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. | 2023-11-28 12:00:00 | Building 549 Conference Room B | Any | Hybrid | David R. Bell Advanced Biomedical Computational Science | 0 | Protein Structure Prediction on FRCE | |||
1301 |
DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, p-values and confidence intervals, types of data and their distributional importance, and bias and confounding. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenTue, Nov 28, 2023 - 1:00 pm - 4:30 pmWhereOnline Webinar |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, p-values and confidence intervals, types of data and their distributional importance, and bias and confounding. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-11-28 13:00:00 | Online Webinar | Any | Statistics | Online | Ninet Sinaii (BCES) | NIH Library | 0 | Part 1: Overview of Statistical Concepts | |
1306 |
DescriptionIn this seminar, you'll learn about the somatic variant caller named Lancet. This accurate, open-source tool leverages local assembly and joint analysis of tumor-normal, paired, high-throughput sequence data. New York Genome Center’s Dr. Giuseppe Narzisi will provide an overview of:
In this seminar, you'll learn about the somatic variant caller named Lancet. This accurate, open-source tool leverages local assembly and joint analysis of tumor-normal, paired, high-throughput sequence data. New York Genome Center’s Dr. Giuseppe Narzisi will provide an overview of:
Dr. Narzisi will also give a historical review of alignment-based methods. He’ll highlight limitations and the need for new genome graph approaches. The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. DetailsOrganizerCBIITWhenWed, Nov 29, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
In this seminar, you'll learn about the somatic variant caller named Lancet. This accurate, open-source tool leverages local assembly and joint analysis of tumor-normal, paired, high-throughput sequence data. New York Genome Center’s Dr. Giuseppe Narzisi will provide an overview of: the methodology behind the tool. how it’s benchmarking against similar tools. improvements in computational performance. recent integrations with third party tools to visually inspect the somatic variants in graph space. Dr. Narzisi will also give a historical review of alignment-based methods. He’ll highlight limitations and the need for new genome graph approaches. The Data Science Seminar Series presents talks from innovators in the cancer research and informatics communities both within and outside of NCI. | 2023-11-29 11:00:00 | Online Webinar | Any | Bioinformatics Software,Variant Analysis | Online | Giuseppe Narzisi Ph.D (New York Genome Center) | CBIIT | 0 | Somatic Variant Analysis and Detection Using Localized Genome Graphs | |
1275 |
DescriptionIn this session we will take a closer look at the usage and all configuration options for heatmaps and PCA (sample and variable) plots in Qlucore. Also, we will look at easy and cool ways to interact with these plots making selections directly from the plots, adjusting annotations as you go, and working with them in a synchronized manner so we can visually make connections between information in different plots. Those considerations will help ...Read More In this session we will take a closer look at the usage and all configuration options for heatmaps and PCA (sample and variable) plots in Qlucore. Also, we will look at easy and cool ways to interact with these plots making selections directly from the plots, adjusting annotations as you go, and working with them in a synchronized manner so we can visually make connections between information in different plots. Those considerations will help you think of options when preparing a presentation or a manuscript and will provide a How-To guidance. Feel free to join with your Qlucore opened, so you can reproduce the settings of this live demo as we go! RegisterOrganizerBTEPWhenWed, Nov 29, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
In this session we will take a closer look at the usage and all configuration options for heatmaps and PCA (sample and variable) plots in Qlucore. Also, we will look at easy and cool ways to interact with these plots making selections directly from the plots, adjusting annotations as you go, and working with them in a synchronized manner so we can visually make connections between information in different plots. Those considerations will help you think of options when preparing a presentation or a manuscript and will provide a How-To guidance. Feel free to join with your Qlucore opened, so you can reproduce the settings of this live demo as we go! Note that this is an online class. To follow along, submit a ticket with service.cancer.gov to get Qlucore Omics Explorer installed or to update to the latest version. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m01ce32b74d7750187c9baeeb6ceae70e Meeting number:2302 413 2707Password: J93QbStRE@6 Join by video systemDial 23024132707@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2302 413 2707 Global call-in numbershttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/d7510a6be6ae46d19090cb94ea96dc01# | 2023-11-29 11:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software,Data Visualization | Bioinformatics,Bioinformatics Software,Data visualization | Online | Joe Wu (BTEP),Yana Stackpole (Qlucore) | BTEP | 0 | Qlucore Plots in Focus: Heatmaps and PCA |
1284 |
Part Of: Data Wrangling with R CourseDescription
This lesson will focus on some of the basics of R programming including naming and assigning R objects, recognizing and using R functions, understanding data types and classes, and becoming familiar with the R programming syntax.
This lesson will focus on some of the basics of R programming including naming and assigning R objects, recognizing and using R functions, understanding data types and classes, and becoming familiar with the R programming syntax.
RegisterOrganizerBTEPWhenWed, Nov 29, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This lesson will focus on some of the basics of R programming including naming and assigning R objects, recognizing and using R functions, understanding data types and classes, and becoming familiar with the R programming syntax. | 2023-11-29 13:00:00 | Online Webinar | Beginner | R programming | Data analysis | Online | Alex Emmons (BTEP) | BTEP | 0 | Getting Started with R |
1308 |
DescriptionJoin us for the upcoming CCR Fellows & Young Investigators-Seminar Series (CCR FYI-SS 2023/2024) which is being held as a ‘virtual’ seminar that is open to everyone! Tap to join from a mobile device (attendees only) +1-650-479-3207,, 23102470324## Call-in toll number (US/Canada) Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application ...Read More Join us for the upcoming CCR Fellows & Young Investigators-Seminar Series (CCR FYI-SS 2023/2024) which is being held as a ‘virtual’ seminar that is open to everyone! Tap to join from a mobile device (attendees only) +1-650-479-3207,, 23102470324## Call-in toll number (US/Canada) Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 23102470324@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number.
DetailsOrganizerNCI CCRWhenWed, Nov 29, 2023 - 1:30 pm - 2:30 pmWhereOnline Webinar |
Join us for the upcoming CCR Fellows & Young Investigators-Seminar Series (CCR FYI-SS 2023/2024) which is being held as a ‘virtual’ seminar that is open to everyone! Tap to join from a mobile device (attendees only) +1-650-479-3207,, 23102470324## Call-in toll number (US/Canada) Join by phone 1-650-479-3207 Call-in toll number (US/Canada) Join from a video system or application Dial 23102470324@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. | 2023-11-29 13:30:00 | Online Webinar | Any | Literature Curation | Online | Erica Lyons (BACS) | NCI CCR | 0 | Rare Disease Variant Curation from Literature: Creatine Transport Deficiency in Focus | |
1286 |
DescriptionGreetings, NCI intramural researchers, Greetings, NCI intramural researchers, DetailsOrganizerNCI Bioinformatics CommunityWhenThu, Nov 30, 2023 - 1:00 pm - 4:00 pmWhereOnline Webinar |
Greetings, NCI intramural researchers, Earlier this year we reached out to gather your input on the formation of a bioinformatics community within the NCI Intramural Research Program. Why create such a community? Bioinformatics and computational biology have become increasingly essential for biomedical research. Too many of us are confronted with isolation, information silos, and lack of training and professional growth opportunities to keep pace with this fast-evolving field. To address this challenge, we are pleased to inform you that DCEG, CCR, and CBIIT have partnered to create the new NCI Bioinformatics Community (NCI BC). The NCI BC will: • Create an environment that strengthens the bonds between members of the bioinformatics community• Offer comprehensive training opportunities and continuous professional development to improve the skillset of community members, ensuring they stay up-to-date with emerging technologies and methodologies• Link individuals with like-minded interests in new topics to self-assemble in order to facilitate networking, troubleshooting, and learning from each other; and promote interdisciplinary collaboration on tool, algorithm, workflow, and pipeline development benefiting the larger community In conjunction with its launch, you are invited to the inaugural Community virtual workshop “NCI Bioinformatics Community: AI/ML in Cancer” on Thursday, November 30, 1-4pm with keynote speaker John Quackenbush, PhD, Harvard School of Public Health, Department of Biostatistics on “Why Networks Matter: Embracing Biological Complexity.” You will also hear from fellow intramural peers and leaders sharing insights and learnings on bioinformatics cancer research. REGISTER today! If you are interested in joining the Community, please visit the Community website and click on Get Connected. For questions or comments please contact the NCI BC mailbox here. We look forward to engaging with you to increase collaborative opportunities, networks, and skills to further bioinformatics cancer research. Thank you, The NCI Bioinformatics Community Planning Committee | 2023-11-30 13:00:00 | Online Webinar | Any | Bioinformatics | Online | John Quackenbush Ph.D. (Harvard School) | NCI Bioinformatics Community | 0 | NCI Bioinformatics Community: AI/ML in Cancer | |
1285 |
Part Of: Data Wrangling with R CourseDescription
In this lesson, we will learn how to import simple and complex data and how to avoid common mistakes. We will also learn how to reshape data, for example, from wide to long format, with tidyr.
In this lesson, we will learn how to import simple and complex data and how to avoid common mistakes. We will also learn how to reshape data, for example, from wide to long format, with tidyr.
RegisterOrganizerBTEPWhenMon, Dec 04, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this lesson, we will learn how to import simple and complex data and how to avoid common mistakes. We will also learn how to reshape data, for example, from wide to long format, with tidyr. | 2023-12-04 13:00:00 | Online Webinar | Beginner | R programming | Data analysis | Online | Alex Emmons (BTEP) | BTEP | 0 | Importing and reshaping data |
1295 |
DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs in biomedical research. This class will cover details related to case studies/series, ecological, cross-sectional, case-control, and cohort studies, clinical trials, and other study designs and considerations. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenMon, Dec 04, 2023 - 1:00 pm - 3:30 pmWhereOnline Webinar |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs in biomedical research. This class will cover details related to case studies/series, ecological, cross-sectional, case-control, and cohort studies, clinical trials, and other study designs and considerations. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-12-04 13:00:00 | Online Webinar | Any | Statistics | Online | Ninet Sinaii (BCES) | NIH Library | 0 | Part 2: Overview of Study Design | |
1297 |
DescriptionThis class provides an overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Upon completion of this class, participants should be able to define bivariate data, create a scatterplot using ggplot, define linear regression, and demonstrate how to perform a simple linear regression in R. You must have taken Data Visualization in R: ggplot ...Read More This class provides an overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Upon completion of this class, participants should be able to define bivariate data, create a scatterplot using ggplot, define linear regression, and demonstrate how to perform a simple linear regression in R. You must have taken Data Visualization in R: ggplot class to be successful in this class. DetailsOrganizerNIH LibraryWhenTue, Dec 05, 2023 - 2:00 pm - 3:00 pmWhereOnline Webinar |
This class provides an overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Upon completion of this class, participants should be able to define bivariate data, create a scatterplot using ggplot, define linear regression, and demonstrate how to perform a simple linear regression in R. You must have taken Data Visualization in R: ggplot class to be successful in this class. | 2023-12-05 14:00:00 | Online Webinar | Any | Data Visualization | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot: Visualizing Relationships and Linear Regression | |
1309 |
DescriptionThis presentation will provide a one-hour overview demonstration on Geneious Prime, a software platform for molecular biology and sequence analysis. It is built to be highly visual, easy to use, and collaborative.
Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast, and more. It ...Read More This presentation will provide a one-hour overview demonstration on Geneious Prime, a software platform for molecular biology and sequence analysis. It is built to be highly visual, easy to use, and collaborative.
Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast, and more. It is customizable and has built-in support for high-throughput analyses, as well as the ability to automate complex workflows.
More information can be found on the website. DetailsOrganizerCBIITWhenWed, Dec 06, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
This presentation will provide a one-hour overview demonstration on Geneious Prime, a software platform for molecular biology and sequence analysis. It is built to be highly visual, easy to use, and collaborative. Tools include primer design and molecular cloning, chromatogram and NGS analysis, DNA and protein sequence alignments, NCBI Blast, and more. It is customizable and has built-in support for high-throughput analyses, as well as the ability to automate complex workflows. More information can be found on the website. | 2023-12-06 10:00:00 | Online Webinar | Any | Bioinformatics Software | Online | Helen Shearman Ph.D. (GENEIOUS) | CBIIT | 0 | Join us for a Webinar on Geneious Prime | |
1304 |
Coding Club Seminar SeriesPart Of: BTEP Coding Club CourseDescription
NIDAP, the NIH Integrated Data Analysis Platform, is a cloud-based and collaborative data aggregation and analysis platform. The NIDAP platform hosts user-friendly bioinformatics workflows (Bulk RNA-Seq, scRNA-Seq, Digital Spatial Profiling) and other component analysis and visualization tools that have been created and maintained by the NCI developer community based on open-source tools.
In this BTEP Coding Club session, Alexei Lobanov, bioinformatics analyst with CCBR, will demonstrate how to create ...Read More
NIDAP, the NIH Integrated Data Analysis Platform, is a cloud-based and collaborative data aggregation and analysis platform. The NIDAP platform hosts user-friendly bioinformatics workflows (Bulk RNA-Seq, scRNA-Seq, Digital Spatial Profiling) and other component analysis and visualization tools that have been created and maintained by the NCI developer community based on open-source tools.
In this BTEP Coding Club session, Alexei Lobanov, bioinformatics analyst with CCBR, will demonstrate how to create NIDAP templates, GUI-like environments that allow users to run the same code on new datasets using a point-and-click approach, from source code (R or python).
Why create a NIDAP template? 1) “Templatizing” your code is easy and allows users / collaborators with no coding skills to efficiently use your code. 2) Pre-made templates encourage efficiency and reproducibility. Templates allow the user to easily create custom workflows and pipelines that can be shared with collaborators and/or applied to future data sets.
RegisterOrganizerBTEPWhenWed, Dec 06, 2023 - 11:00 am - 12:00 pmWhereOnline |
NIDAP, the NIH Integrated Data Analysis Platform, is a cloud-based and collaborative data aggregation and analysis platform. The NIDAP platform hosts user-friendly bioinformatics workflows (Bulk RNA-Seq, scRNA-Seq, Digital Spatial Profiling) and other component analysis and visualization tools that have been created and maintained by the NCI developer community based on open-source tools. In this BTEP Coding Club session, Alexei Lobanov, bioinformatics analyst with CCBR, will demonstrate how to create NIDAP templates, GUI-like environments that allow users to run the same code on new datasets using a point-and-click approach, from source code (R or python). Why create a NIDAP template? 1) “Templatizing” your code is easy and allows users / collaborators with no coding skills to efficiently use your code. 2) Pre-made templates encourage efficiency and reproducibility. Templates allow the user to easily create custom workflows and pipelines that can be shared with collaborators and/or applied to future data sets. | 2023-12-06 11:00:00 | Online | Any | NIDAP | Bioinformatics | Online | Alexei Lobanov (CCBR) | BTEP | 1 | Creating R / Python templates for the NIH Integrated Data Analysis Platform (NIDAP) |
1287 |
Part Of: Data Wrangling with R CourseDescription
This lesson will be a brief reprieve from data wrangling and will instead introduce the basics of plotting with ggplot2.
This lesson will be a brief reprieve from data wrangling and will instead introduce the basics of plotting with ggplot2.
RegisterOrganizerBTEPWhenWed, Dec 06, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This lesson will be a brief reprieve from data wrangling and will instead introduce the basics of plotting with ggplot2. | 2023-12-06 13:00:00 | Online Webinar | Beginner | R programming | Data analysis,Data visualization | Online | Alex Emmons (BTEP) | BTEP | 0 | Data Visualization with ggplot2 |
1300 |
DescriptionPython is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of ...Read More Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. DetailsOrganizerNIH LibraryWhenWed, Dec 06, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. | 2023-12-06 13:00:00 | Online Webinar | Any | Python Programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
1294 |
DescriptionThis hands-on workshop will introduce the Ingenuity Pathway Analysis (IPA) and CLC Genomics Workbench tools, which are available to access from the NIH Library. IPA can be used identify biological relationships, mechanisms, pathways, functions, and diseases most relevant to experimental datasets. CLC Biomedical Genomics Workbench supports a comprehensive set of NGS data analysis applications, including resequencing, read mapping, de novo assembly, and many RNA-Seq tools. Upon completion of this workshop, participants should ...Read More This hands-on workshop will introduce the Ingenuity Pathway Analysis (IPA) and CLC Genomics Workbench tools, which are available to access from the NIH Library. IPA can be used identify biological relationships, mechanisms, pathways, functions, and diseases most relevant to experimental datasets. CLC Biomedical Genomics Workbench supports a comprehensive set of NGS data analysis applications, including resequencing, read mapping, de novo assembly, and many RNA-Seq tools. Upon completion of this workshop, participants should be able compare different groups at different time points and treatments, perform Analysis Match to compare user data with public data sources, generate IPA Networks using genes and diseases of interest, and understand the major applications of CLC Biomedical Genomics Workbench. Session 1 (IPA): 10:00 AM to 12:00 PM Session 2 (CLC Genomic Workbench): 12:00 PM to 12:45 PM Session 3 (IPA): 1:00 PM to 2:30 PM Session 4 (AMA): 2:45 PM to 4:00 PM Note on Technology Registrants will receive an email with information and instructions to install CLC Genomics Workbench before the class. If you register the day before the class, you may not have time to download and properly install CLC. If you do not have the software installed, this training will be demo only. You can request 1 space for in person mode. If no spaces remain, your registration can be rejected or sent to the waitlist if it is available. DetailsOrganizerNIH LibraryWhenThu, Dec 07, 2023 - 10:00 am - 4:00 pmWhereNIH Library Training Room |
This hands-on workshop will introduce the Ingenuity Pathway Analysis (IPA) and CLC Genomics Workbench tools, which are available to access from the NIH Library. IPA can be used identify biological relationships, mechanisms, pathways, functions, and diseases most relevant to experimental datasets. CLC Biomedical Genomics Workbench supports a comprehensive set of NGS data analysis applications, including resequencing, read mapping, de novo assembly, and many RNA-Seq tools. Upon completion of this workshop, participants should be able compare different groups at different time points and treatments, perform Analysis Match to compare user data with public data sources, generate IPA Networks using genes and diseases of interest, and understand the major applications of CLC Biomedical Genomics Workbench. Session 1 (IPA): 10:00 AM to 12:00 PMIn this session, participants will learn about bioinformatics resources from the NIH Library and learn how to perform pathway analysis using IPA. Session 2 (CLC Genomic Workbench): 12:00 PM to 12:45 PMIn this session, participants will learn about CLC Genomic Workbench. Session 3 (IPA): 1:00 PM to 2:30 PMIn this session, participants will extend the learning from Session 1 and learn how to mine IPA database for novel discoveries. Session 4 (AMA): 2:45 PM to 4:00 PMIn this session, participants will have an opportunity to talk about their own research and use of Qiagen products with Qiagen scientists. Note on TechnologyParticipants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install CLC Genomics Workbench before the class. If you register the day before the class, you may not have time to download and properly install CLC. If you do not have the software installed, this training will be demo only. You can request 1 space for in person mode. If no spaces remain, your registration can be rejected or sent to the waitlist if it is available. | 2023-12-07 10:00:00 | NIH Library Training Room | Any | Bioinformatics Software | In-Person | Qiagen staff | NIH Library | 0 | NIH Library Workshop: Ingenuity Pathway Analysis (IPA) and CLC Genomic Workbench | |
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DescriptionJoin this introductory session to learn how to sign up and access complimentary SAS training resources available to NIH and HHS employees. Get pointers on how to navigate complimentary tutorials, programming courses, and eLearning. In this session, the trainer will demonstrate how to enroll in recommended SAS 9.4 trainings and courses. Join this introductory session to learn how to sign up and access complimentary SAS training resources available to NIH and HHS employees. Get pointers on how to navigate complimentary tutorials, programming courses, and eLearning. In this session, the trainer will demonstrate how to enroll in recommended SAS 9.4 trainings and courses. DetailsOrganizerNIH LibraryWhenThu, Dec 07, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
Join this introductory session to learn how to sign up and access complimentary SAS training resources available to NIH and HHS employees. Get pointers on how to navigate complimentary tutorials, programming courses, and eLearning. In this session, the trainer will demonstrate how to enroll in recommended SAS 9.4 trainings and courses. | 2023-12-07 11:00:00 | Online Webinar | Any | Statistics | Online | SAS | NIH Library | 0 | Tips for Getting Started with SAS Training | |
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DescriptionThis webinar will discuss and demonstrate experimental design considerations in variant analysis, including the origins of tissue samples (germline vs. somatic), whole exome (WES) or whole-genome sequencing (WGS), sample sizes and statistical power, quality control, variant annotation, and other analytical considerations. In addition, this webinar will touch on variant calling workflows and best practices. This webinar will discuss and demonstrate experimental design considerations in variant analysis, including the origins of tissue samples (germline vs. somatic), whole exome (WES) or whole-genome sequencing (WGS), sample sizes and statistical power, quality control, variant annotation, and other analytical considerations. In addition, this webinar will touch on variant calling workflows and best practices. RegisterOrganizerBTEPWhenThu, Dec 07, 2023 - 2:00 pm - 3:00 pmWhereOnline |
This webinar will discuss and demonstrate experimental design considerations in variant analysis, including the origins of tissue samples (germline vs. somatic), whole exome (WES) or whole-genome sequencing (WGS), sample sizes and statistical power, quality control, variant annotation, and other analytical considerations. In addition, this webinar will touch on variant calling workflows and best practices. | 2023-12-07 14:00:00 | Online | Any | Variant Analysis | Online | Justin Lack (NCBR/IDSS/NIAID) | BTEP | 0 | Variant Analysis: Experimental Design, Best Practices, and Workflows | |
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DescriptionThis presentation will discuss strategies and policies for effective sharing and reuse of large multidimensional datasets. Dr. Espinosa will discuss his experiences as a data generator, data analyst, collaborator, teacher, and mentor through the COVIDome Project, the Human Trisome Project, and the INCLUDE Data Hub. Dr. Espinosa will illustrate the power of sharing data ahead of publication and the need for user-friendly data sharing platforms and intuitive data visualization portals. His presentation will ...Read More This presentation will discuss strategies and policies for effective sharing and reuse of large multidimensional datasets. Dr. Espinosa will discuss his experiences as a data generator, data analyst, collaborator, teacher, and mentor through the COVIDome Project, the Human Trisome Project, and the INCLUDE Data Hub. Dr. Espinosa will illustrate the power of sharing data ahead of publication and the need for user-friendly data sharing platforms and intuitive data visualization portals. His presentation will include real-life examples applicable to the study of COVID19 and Down syndrome. He will also present on the importance of developing training and education opportunities for diverse stakeholders. Lastly, he will discuss the importance of international data collection and sharing at a global scale. About the Speaker:Dr. Espinosa is the Executive Director of the Linda Crnic Institute for Down Syndrome and Professor of Pharmacology at the University of Colorado School of Medicine at the Anschutz Medical Campus. Dr. Espinosa received his Bachelor’s degree in Biology from the Universidad Nacional de Mar del Plata, Argentina, in 1994, and a PhD in Biology from the Universidad de Buenos Aires, Argentina, in 1999. Supported by a fellowship from the PEW Charitable Trusts, Dr. Espinosa completed his post-doctoral training at the Salk Institute for Biological Studies in La Jolla, California. In 2004, supported by a fellowship from the Leukemia and Lymphoma Society, he began his independent appointment at the University of Colorado Boulder, in the Department of Molecular, Cellular and Developmental Biology. In 2009 he was appointed to the Howard Hughes Medical Institute as an Early Career Scientist. At the Crnic Institute, Dr. Espinosa directs the Human Trisome Project, a pan-omics cohort study of the population with Down syndrome, which has enabled the design and launch of novel clinical trials to improve health outcomes in Down syndrome. Dr. Espinosa currently serves as the Leader of the Administrative and Outreach Core of the NIH INCLUDE Project Data Coordinating Center, a new data resource that aims to accelerate discoveries into the mechanisms underlying the increased risk of co-occurring medical conditions in people with Down syndrome. DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenFri, Dec 08, 2023 - 12:00 pm - 1:00 pmWhereOnline Webinar |
This presentation will discuss strategies and policies for effective sharing and reuse of large multidimensional datasets. Dr. Espinosa will discuss his experiences as a data generator, data analyst, collaborator, teacher, and mentor through the COVIDome Project, the Human Trisome Project, and the INCLUDE Data Hub. Dr. Espinosa will illustrate the power of sharing data ahead of publication and the need for user-friendly data sharing platforms and intuitive data visualization portals. His presentation will include real-life examples applicable to the study of COVID19 and Down syndrome. He will also present on the importance of developing training and education opportunities for diverse stakeholders. Lastly, he will discuss the importance of international data collection and sharing at a global scale. About the Speaker: Dr. Espinosa is the Executive Director of the Linda Crnic Institute for Down Syndrome and Professor of Pharmacology at the University of Colorado School of Medicine at the Anschutz Medical Campus. Dr. Espinosa received his Bachelor’s degree in Biology from the Universidad Nacional de Mar del Plata, Argentina, in 1994, and a PhD in Biology from the Universidad de Buenos Aires, Argentina, in 1999. Supported by a fellowship from the PEW Charitable Trusts, Dr. Espinosa completed his post-doctoral training at the Salk Institute for Biological Studies in La Jolla, California. In 2004, supported by a fellowship from the Leukemia and Lymphoma Society, he began his independent appointment at the University of Colorado Boulder, in the Department of Molecular, Cellular and Developmental Biology. In 2009 he was appointed to the Howard Hughes Medical Institute as an Early Career Scientist. At the Crnic Institute, Dr. Espinosa directs the Human Trisome Project, a pan-omics cohort study of the population with Down syndrome, which has enabled the design and launch of novel clinical trials to improve health outcomes in Down syndrome. Dr. Espinosa currently serves as the Leader of the Administrative and Outreach Core of the NIH INCLUDE Project Data Coordinating Center, a new data resource that aims to accelerate discoveries into the mechanisms underlying the increased risk of co-occurring medical conditions in people with Down syndrome. | 2023-12-08 12:00:00 | Online Webinar | Any | Data Sharing | Online | Dr. Joaquin M. Espinosa (Linda Crnic Institute) | NIH Office of Data Science Strategy (ODSS) | 0 | Being FAIR in the pan-omics era: lessons from the INCLUDE Project | |
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DescriptionThis presentation will provide a one-hour introduction to The AMARETTO software toolbox: multimodal and multiscale circuit-, network-, and graph-based fusion of multi-omics, clinical, imaging, and perturbation data across studies of patients, etiologies and model systems of complex human disease. This presentation will provide a one-hour introduction to The AMARETTO software toolbox: multimodal and multiscale circuit-, network-, and graph-based fusion of multi-omics, clinical, imaging, and perturbation data across studies of patients, etiologies and model systems of complex human disease. DetailsOrganizerCBIITWhenMon, Dec 11, 2023 - 10:00 am - 11:00 amWhereOnline Webinar |
This presentation will provide a one-hour introduction to The AMARETTO software toolbox: multimodal and multiscale circuit-, network-, and graph-based fusion of multi-omics, clinical, imaging, and perturbation data across studies of patients, etiologies and model systems of complex human disease. During this webinar, we will demonstrate the utility of AMARETTO for several Use Cases integrating multi-omics, clinical, imaging, and driver and drug perturbation data across model systems and patient studies of cancer. | 2023-12-11 10:00:00 | Online Webinar | Any | Bioinformatics Software,Multiomics | Online | Nathalie Pochet PhD (Broad Institute) | CBIIT | 0 | Join us for a webinar on The AMARETTO software toolbox. | |
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Part Of: Data Wrangling with R CourseDescription
In this lesson, we will learn how to improve code interpretability with the pipe (%>%) from the magrittr package. We will also learn how to merge and filter data frames.
In this lesson, we will learn how to improve code interpretability with the pipe (%>%) from the magrittr package. We will also learn how to merge and filter data frames.
RegisterOrganizerBTEPWhenMon, Dec 11, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this lesson, we will learn how to improve code interpretability with the pipe (%>%) from the magrittr package. We will also learn how to merge and filter data frames. | 2023-12-11 13:00:00 | Online Webinar | Beginner | R programming | Data analysis | Online | Alex Emmons (BTEP) | BTEP | 0 | Introducing dplyr and the pipe (part 1) |
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DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. The first part of the class will be 10:00 a.m. to 12:00 p.m. followed by a break from 12:00-1:00 p.m. The class resumes at 1:00 p.m. and concludes at 4:30 p.m. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenTue, Dec 12, 2023 - 10:00 am - 4:30 pmWhereOnline Webinar |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. The first part of the class will be 10:00 a.m. to 12:00 p.m. followed by a break from 12:00-1:00 p.m. The class resumes at 1:00 p.m. and concludes at 4:30 p.m. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-12-12 10:00:00 | Online Webinar | Any | Statistics | Online | Ninet Sinaii (BCES) | NIH Library | 0 | Part 3: Overview of Common Statistical Tests | |
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DescriptionDr. Anant Madabhushi and his team have been developing computerized knowledge alignment, representation, and fusion tools for integrating and correlating heterogeneous biological data spanning different spatial and temporal scales, modalities, and functionalities. These tools include computerized feature analysis methods for extracting subvisual attributes for characterizing disease appearance and behavior on radiographic (radiomics) and digitized pathology images (pathomics). Over the last dozen years, there has been substantial progress in developing new radiomic and pathomic approaches ...Read More Dr. Anant Madabhushi and his team have been developing computerized knowledge alignment, representation, and fusion tools for integrating and correlating heterogeneous biological data spanning different spatial and temporal scales, modalities, and functionalities. These tools include computerized feature analysis methods for extracting subvisual attributes for characterizing disease appearance and behavior on radiographic (radiomics) and digitized pathology images (pathomics). Over the last dozen years, there has been substantial progress in developing new radiomic and pathomic approaches for capturing intra-tumoral heterogeneity and modeling tumor appearance. Specifically, Dr. Madabhushi will discuss how these radiomic and pathomic approaches can be applied to predicting disease outcome, recurrence, progression, and response to therapy in the context of prostate, brain, rectal, oropharyngeal, and lung cancers. NIH registrants who attend more than 45 minutes of the webinar are eligible for 1 ESA credit and a certificate of completion. The certificate will be sent to the email address provided at the time of registration. If you have questions about ESA accreditation for Infectious Agents and Cancer Epidemiology Research webinars, please email iaandcancer@mail.nih.gov. DetailsOrganizerNCIWhenTue, Dec 12, 2023 - 2:00 pm - 3:00 pmWhereOnline Webinar |
Dr. Anant Madabhushi and his team have been developing computerized knowledge alignment, representation, and fusion tools for integrating and correlating heterogeneous biological data spanning different spatial and temporal scales, modalities, and functionalities. These tools include computerized feature analysis methods for extracting subvisual attributes for characterizing disease appearance and behavior on radiographic (radiomics) and digitized pathology images (pathomics). Over the last dozen years, there has been substantial progress in developing new radiomic and pathomic approaches for capturing intra-tumoral heterogeneity and modeling tumor appearance. Specifically, Dr. Madabhushi will discuss how these radiomic and pathomic approaches can be applied to predicting disease outcome, recurrence, progression, and response to therapy in the context of prostate, brain, rectal, oropharyngeal, and lung cancers. NIH registrants who attend more than 45 minutes of the webinar are eligible for 1 ESA credit and a certificate of completion. The certificate will be sent to the email address provided at the time of registration. If you have questions about ESA accreditation for Infectious Agents and Cancer Epidemiology Research webinars, please email iaandcancer@mail.nih.gov. | 2023-12-12 14:00:00 | Online Webinar | Any | Image Analysis,Machine Learning | Online | Anant Madabhushi PhD (Emory University) | NCI | 0 | Interpreter of Maladies: Application of Machine Learning to Precision Oncology | |
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DescriptionIn this session we will take a closer look at the usage and all configuration options for Venn diagram and Pie chart in Qlucore. Also, we will look at variable list manipulations like compare lists (overlap, merge, difference). Those considerations will help you think of options when preparing a presentation or a manuscript and will provide a How-To guidance. Feel free to join with your Qlucore opened, so you can reproduce the settings of ...Read More In this session we will take a closer look at the usage and all configuration options for Venn diagram and Pie chart in Qlucore. Also, we will look at variable list manipulations like compare lists (overlap, merge, difference). Those considerations will help you think of options when preparing a presentation or a manuscript and will provide a How-To guidance. Feel free to join with your Qlucore opened, so you can reproduce the settings of this live demo as we go! Meeting link: Join by video system Join by phone Global call-in numbers RegisterOrganizerBTEPWhenWed, Dec 13, 2023 - 11:00 am - 12:00 pmWhereOnline Webinar |
In this session we will take a closer look at the usage and all configuration options for Venn diagram and Pie chart in Qlucore. Also, we will look at variable list manipulations like compare lists (overlap, merge, difference). Those considerations will help you think of options when preparing a presentation or a manuscript and will provide a How-To guidance. Feel free to join with your Qlucore opened, so you can reproduce the settings of this live demo as we go! Note that this is an online class. To follow along, submit a ticket with service.cancer.gov to get Qlucore Omics Explorer installed or to update to the latest version. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mdfdc3742f60c78dc16ef292922d683bb Meeting number:2306 287 6160Password: 3mGZYbdJ*53 Join by video systemDial 23062876160@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2306 287 6160 Global call-in numbershttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/abd6f170680943eca5fec3ffb03a7d63# | 2023-12-13 11:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software,Data Visualization | Bioinformatics,Bioinformatics Software,Data visualization | Online | Joe Wu (BTEP),Yana Stackpole (Qlucore) | BTEP | 0 | Qlucore Plots in Focus: Venn Digrams, Pie Charts, and Variable List Manipulations |
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Part Of: Data Wrangling with R CourseDescription
In this lesson, we will continue to wrangle data using dplyr, focusing on functions such as group_by(), arrange(), summarize(), and mutate().
In this lesson, we will continue to wrangle data using dplyr, focusing on functions such as group_by(), arrange(), summarize(), and mutate().
RegisterOrganizerBTEPWhenWed, Dec 13, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this lesson, we will continue to wrangle data using dplyr, focusing on functions such as group_by(), arrange(), summarize(), and mutate(). | 2023-12-13 13:00:00 | Online Webinar | Beginner | R programming | Data analysis | Online | Alex Emmons (BTEP) | BTEP | 0 | Introducing dplyr and the pipe (part 2) |
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DescriptionFor inquires send email to staff@hpc.nih.gov Meeting ID: 161 385 0213 Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from ...Read More For inquires send email to staff@hpc.nih.gov Meeting ID: 161 385 0213 Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users
DetailsWhenWed, Dec 13, 2023 - 1:00 pm - 3:00 pmWhereOnline Webinar |
For inquires send email to staff@hpc.nih.gov Meeting ID: 161 385 0213Passcode: 179891 Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2023-12-13 13:00:00 | Online Webinar | Any | Biowulf | Online | 0 | Zoom-In Consult for Biowulf Users | |||
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DescriptionThe seminar series is brought to you by NCI’s Biorepositories and Biospecimen Research Branch (BBRB) and addresses current topics in biobanking science, policy and operations. In the era of precision medicine, high quality biospecimens are central to understanding complex diseases, biomarker discovery and unraveling the mechanisms of resistance to therapies. This seminar series is intended to be forward-looking with a focus on improving awareness of best practices for collection of biospecimens and ...Read More The seminar series is brought to you by NCI’s Biorepositories and Biospecimen Research Branch (BBRB) and addresses current topics in biobanking science, policy and operations. In the era of precision medicine, high quality biospecimens are central to understanding complex diseases, biomarker discovery and unraveling the mechanisms of resistance to therapies. This seminar series is intended to be forward-looking with a focus on improving awareness of best practices for collection of biospecimens and associated data as well as expanding research participation through biobanking. Our focus for fall/winter 2023 is on the theme of data sharing in biobanking studies and research that uses biospecimens. The seminar by Dr. Sheri Schully is the final talk of a four-part mini-series on this topic. The All of Us Research Program is enrolling a diverse group of at least 1 million persons in the United States in order to accelerate biomedical research and improve health of individuals and populations. The program aims to make the research results accessible to participants, and it is developing new approaches to generate, access, and make data broadly available to approved researchers. All of Us opened for enrollment in May 2018 and currently enrolls participants 18 years of age or older from a network of more than 340 recruitment sites. Elements of the program protocol include health questionnaires, electronic health records (EHRs), physical measurements, the use of digital health technology, and the collection and analysis of biospecimens, including genetic analysis. To date, the program has enrolled over 700,000 participants with whole genome sequencing data is available to researchers on more than 245,000 participants. DetailsOrganizerCBIITWhenWed, Dec 13, 2023 - 2:00 pm - 3:30 pmWhereOnline Webinar |
The seminar series is brought to you by NCI’s Biorepositories and Biospecimen Research Branch (BBRB) and addresses current topics in biobanking science, policy and operations. In the era of precision medicine, high quality biospecimens are central to understanding complex diseases, biomarker discovery and unraveling the mechanisms of resistance to therapies. This seminar series is intended to be forward-looking with a focus on improving awareness of best practices for collection of biospecimens and associated data as well as expanding research participation through biobanking. Our focus for fall/winter 2023 is on the theme of data sharing in biobanking studies and research that uses biospecimens. The seminar by Dr. Sheri Schully is the final talk of a four-part mini-series on this topic. The All of Us Research Program is enrolling a diverse group of at least 1 million persons in the United States in order to accelerate biomedical research and improve health of individuals and populations. The program aims to make the research results accessible to participants, and it is developing new approaches to generate, access, and make data broadly available to approved researchers. All of Us opened for enrollment in May 2018 and currently enrolls participants 18 years of age or older from a network of more than 340 recruitment sites. Elements of the program protocol include health questionnaires, electronic health records (EHRs), physical measurements, the use of digital health technology, and the collection and analysis of biospecimens, including genetic analysis. To date, the program has enrolled over 700,000 participants with whole genome sequencing data is available to researchers on more than 245,000 participants. | 2023-12-13 14:00:00 | Online Webinar | Any | Online | Dr. Sheri Schully (All of Us Research Program National Institutes of Health) | CBIIT | 0 | Data Management and Sharing in the All of Us Research Program | ||
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DescriptionNIDAP, the NIH Integrated Data Analysis Platform, is a cloud-based, collaborative data aggregation and analysis platform that hosts user-friendly bioinformatics workflows and other component analysis and visualization tools. The NCI CCR Collaborative Bioinformatics Resource (CCBR) have created and maintain public workflows for transcriptomics analysis, including Bulk RNA-seq, Single-cell RNA-seq, and Spatial Profiling (GeoMx DSP & Visium). Additionally, they have made available <...Read More NIDAP, the NIH Integrated Data Analysis Platform, is a cloud-based, collaborative data aggregation and analysis platform that hosts user-friendly bioinformatics workflows and other component analysis and visualization tools. The NCI CCR Collaborative Bioinformatics Resource (CCBR) have created and maintain public workflows for transcriptomics analysis, including Bulk RNA-seq, Single-cell RNA-seq, and Spatial Profiling (GeoMx DSP & Visium). Additionally, they have made available self-guided training tutorials to facilitate their use on NIDAP by NCI researchers, especially those with limited bioinformatics experience. In this Topics in Bioinformatics event, the CCBR team will introduce the NIDAP platform and provide an overview of their transcriptomic analysis workflows available for you to use on NIDAP today. This is not a hands-on event. However, attendees will leave with the knowledge needed to immediately get started using NIDAP and the resources available to tackle more complicated bioinformatics problems. RegisterOrganizerBTEPWhenThu, Dec 14, 2023 - 1:00 pm - 2:00 pmWhereOnline |
NIDAP, the NIH Integrated Data Analysis Platform, is a cloud-based, collaborative data aggregation and analysis platform that hosts user-friendly bioinformatics workflows and other component analysis and visualization tools. The NCI CCR Collaborative Bioinformatics Resource (CCBR) have created and maintain public workflows for transcriptomics analysis, including Bulk RNA-seq, Single-cell RNA-seq, and Spatial Profiling (GeoMx DSP & Visium). Additionally, they have made available self-guided training tutorials to facilitate their use on NIDAP by NCI researchers, especially those with limited bioinformatics experience. In this Topics in Bioinformatics event, the CCBR team will introduce the NIDAP platform and provide an overview of their transcriptomic analysis workflows available for you to use on NIDAP today. This is not a hands-on event. However, attendees will leave with the knowledge needed to immediately get started using NIDAP and the resources available to tackle more complicated bioinformatics problems. | 2023-12-14 13:00:00 | Online | Any | Bioinformatics,NIDAP,Transcriptomics | Bioinformatics,NIDAP,Transcriptomics | Online | Joshua Meyer (CCBR),Ned Cauley (CCBR) | BTEP | 0 | Capabilities of the NIDAP platform for Transcriptomic Analysis |
1290 |
Part Of: Data Wrangling with R CourseDescriptionIn this lesson, we will learn about specialized data containers / classes that are shared across Bioconductor packages. These classes allow us to store and easily manage multiple -omics types. We will discuss some of the properties of these classes and gain insight into how to access and subset the data stored within. In this lesson, we will learn about specialized data containers / classes that are shared across Bioconductor packages. These classes allow us to store and easily manage multiple -omics types. We will discuss some of the properties of these classes and gain insight into how to access and subset the data stored within. RegisterOrganizerBTEPWhenMon, Dec 18, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this lesson, we will learn about specialized data containers / classes that are shared across Bioconductor packages. These classes allow us to store and easily manage multiple -omics types. We will discuss some of the properties of these classes and gain insight into how to access and subset the data stored within. | 2023-12-18 13:00:00 | Online Webinar | Beginner | R programming | Bioconductor,Data analysis | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to Bioconductor -omics classes (containers) |
1299 |
DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed). Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenMon, Dec 18, 2023 - 1:00 pm - 4:30 pmWhereOnline Webinar |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed). Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2023-12-18 13:00:00 | Online Webinar | Any | Statistics | Online | Ninet Sinaii (BCES) | NIH Library | 0 | Part 4: A Review of Epidemiology Concepts and Statistics | |
1291 |
Part Of: Data Wrangling with R CourseDescription
In this lesson, we will review many of the important concepts we learned throughout the course. We will also practice using our skills together on a realistic data set.
In this lesson, we will review many of the important concepts we learned throughout the course. We will also practice using our skills together on a realistic data set.
RegisterOrganizerBTEPWhenWed, Dec 20, 2023 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this lesson, we will review many of the important concepts we learned throughout the course. We will also practice using our skills together on a realistic data set. | 2023-12-20 13:00:00 | Online Webinar | Beginner | R programming | Data analysis | Online | Alex Emmons (BTEP) | BTEP | 0 | Data Wrangling Review and Practice |
1324 |
Descriptionon Wednesday, January 3rd at noon in Building 41, Conference Room C507/C509 and online. In-person attendance is encouraged. Dr. Larson's research is focused on understanding gene expression in eukaryotic cells, starting from the mechanistic behavior of individual macromolecules and proceeding to their regulation in cells and tissue. His laboratory utilizes a battery of biophysical, molecular and genomic approaches, ...Read More on Wednesday, January 3rd at noon in Building 41, Conference Room C507/C509 and online. In-person attendance is encouraged. Dr. Larson's research is focused on understanding gene expression in eukaryotic cells, starting from the mechanistic behavior of individual macromolecules and proceeding to their regulation in cells and tissue. His laboratory utilizes a battery of biophysical, molecular and genomic approaches, including single-molecule microscopy, RNA visualization in fixed and living cells, computational modeling of gene regulation, and nascent RNA sequencing. Dr. Larson helped pioneer in vivo single-molecule studies of transcription and splicing. The view that has emerged from these studies is that gene regulation is a dynamic process resulting in stochastic variation within populations. His current work is focused on applying these experimental and theoretical approaches to the study of hematopoiesis in health and disease through the trans-NIH Myeloid Malignancies Program. For those unable to attend in person, this seminar will also be available via WebEx. See below for information on the WebEx session. For additional information on this seminar, please contact Lori Holliday at hollidal@mail.nih.gov. DetailsOrganizerCCRWhenWed, Jan 03, 2024 - 12:00 pm - 1:00 pmWhereBldg 41, Conference Room C507/C509 |
on Wednesday, January 3rd at noon in Building 41, Conference Room C507/C509 and online. In-person attendance is encouraged. Dr. Larson's research is focused on understanding gene expression in eukaryotic cells, starting from the mechanistic behavior of individual macromolecules and proceeding to their regulation in cells and tissue. His laboratory utilizes a battery of biophysical, molecular and genomic approaches, including single-molecule microscopy, RNA visualization in fixed and living cells, computational modeling of gene regulation, and nascent RNA sequencing. Dr. Larson helped pioneer in vivo single-molecule studies of transcription and splicing. The view that has emerged from these studies is that gene regulation is a dynamic process resulting in stochastic variation within populations. His current work is focused on applying these experimental and theoretical approaches to the study of hematopoiesis in health and disease through the trans-NIH Myeloid Malignancies Program. For those unable to attend in person, this seminar will also be available via WebEx. See below for information on the WebEx session. For additional information on this seminar, please contact Lori Holliday at hollidal@mail.nih.gov. | 2024-01-03 12:00:00 | Bldg 41, Conference Room C507/C509 | Any | Single Cell | Hybrid | Daniel Larson (NCI) | CCR | 0 | Gene Expression in Health and Disease: The Single-Cell Perspective | |
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DescriptionThis is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Read More This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. DetailsOrganizerNIH LibraryWhenTue, Jan 09, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. | 2024-01-09 11:00:00 | Online Webinar | Any | Programming | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Introduction to R and RStudio | |
1325 |
DescriptionThis talk will cover the basics of what affects and how to compute statistical power, sample size, and effect size. This is a beginner level talk. Some examples will be presented in the statistical programming language R. A working knowledge of R would be helpful but is not required. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (Read More This talk will cover the basics of what affects and how to compute statistical power, sample size, and effect size. This is a beginner level talk. Some examples will be presented in the statistical programming language R. A working knowledge of R would be helpful but is not required. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov) from the Advanced Biomedical Computational Science group. DetailsWhenTue, Jan 09, 2024 - 12:00 pm - 1:00 pmWhereOnline Webinar |
This talk will cover the basics of what affects and how to compute statistical power, sample size, and effect size. This is a beginner level talk. Some examples will be presented in the statistical programming language R. A working knowledge of R would be helpful but is not required. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov) from the Advanced Biomedical Computational Science group. | 2024-01-09 12:00:00 | Online Webinar | Any | Statistics | Online | Duncan Donohue PhD (Data Management Services Inc. a BRMI company.) | 0 | Introduction to Sample Size and Statistical Power | ||
1328 |
DescriptionOur series of talks continues next month with two 20-minute presentations focused on single cell genomics studies in the model organism zebrafish. There will be light refreshments and we encourage attendees to stay and chat with colleagues after the presentations. Title: “Single-cell analysis of shared signatures and transcriptional diversity during zebrafish development” Our series of talks continues next month with two 20-minute presentations focused on single cell genomics studies in the model organism zebrafish. There will be light refreshments and we encourage attendees to stay and chat with colleagues after the presentations. Title: “Single-cell analysis of shared signatures and transcriptional diversity during zebrafish development” Join by meeting number
DetailsOrganizerSingle Cell and Spatial Genomics Users GroupWhenWed, Jan 10, 2024 - 10:00 am - 11:00 amWhereBuilding 35A Room 640 |
Our series of talks continues next month with two 20-minute presentations focused on single cell genomics studies in the model organism zebrafish. There will be light refreshments and we encourage attendees to stay and chat with colleagues after the presentations. Title: “Single-cell analysis of shared signatures and transcriptional diversity during zebrafish development” Abhinav Sur, PhDPostdoctoral Fellow | Unit on Cell Specification and DifferentiationNational Institute of Child Health and Development (NICHD) Title: “Identifying the source of blastemal cells during zebrafish larva caudal fin regeneration” Hui Wang, PhD Postdoctoral Fellow | Translational and Functional Genomics BranchNational Human Genome Research Institute (NHGRI) Join by meeting number Meeting number (access code): 2313 323 4434 Meeting password: JMmTmvv@533 | 2024-01-10 10:00:00 | Building 35A Room 640 | Any | Single Cell | Hybrid | Abhinav Sur PhD (NICHD),Hui Wang PhD (NHGRI) | Single Cell and Spatial Genomics Users Group | 0 | Single Cell and Spatial Genomics Users Group | |
1352 |
DescriptionAbout this talk: In this presentation we will go through the rich variety of database types, from traditional relational to cutting-edge NoSQL, uncovering how each 'flavor' adds its unique spice to the world of data management. Discover the key ingredients that make databases powerful and learn how to choose the perfect blend for diverse applications in this insightful exploration. Attendees should have some database knowledge prior to attending. About this talk: In this presentation we will go through the rich variety of database types, from traditional relational to cutting-edge NoSQL, uncovering how each 'flavor' adds its unique spice to the world of data management. Discover the key ingredients that make databases powerful and learn how to choose the perfect blend for diverse applications in this insightful exploration. Attendees should have some database knowledge prior to attending. Meeting number: 2315 033 5566. Password: npJDb39RS7? DetailsOrganizerABCS/FNLCRWhenTue, Jan 16, 2024 - 12:00 pm - 1:00 pmWhereBldg. 549, Executive Board Room, NCI Frederick |
About this talk: In this presentation we will go through the rich variety of database types, from traditional relational to cutting-edge NoSQL, uncovering how each 'flavor' adds its unique spice to the world of data management. Discover the key ingredients that make databases powerful and learn how to choose the perfect blend for diverse applications in this insightful exploration. Attendees should have some database knowledge prior to attending.This session will be recorded, and all materials will be shared after the presentation. To view previous Programmer’s Corner events, please visit https://bioinfo-abcc.ncifcrf.gov/training/. Meeting number: 2315 033 5566. Password: npJDb39RS7? | 2024-01-16 12:00:00 | Bldg. 549, Executive Board Room, NCI Frederick | Any | Databases | Hybrid | Anney Che (Advanced Biomedical Computational Science) | ABCS/FNLCR | 0 | Programmer's Corner: Exploring the Flavorful World of Databases | |
1318 |
DescriptionThis class focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. This course is designed to be relevant to participants from different disciplines. Upon completion of this class participants should be able to define project management from a data science perspective, list the advantages of using RStudio projects, ...Read More This class focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. This course is designed to be relevant to participants from different disciplines. Upon completion of this class participants should be able to define project management from a data science perspective, list the advantages of using RStudio projects, apply best practices for setting up RStudio for projects, create a new RStudio Project, and discuss best practices for organizing data in an RStudio project. DetailsOrganizerNIH LibraryWhenTue, Jan 16, 2024 - 1:00 pm - 2:30 pmWhereOnline Webinar |
This class focuses on data and project management using R and RStudio. RStudio makes it possible to work on a complete research project in a more efficient, integrated, and organized manner. This course is designed to be relevant to participants from different disciplines. Upon completion of this class participants should be able to define project management from a data science perspective, list the advantages of using RStudio projects, apply best practices for setting up RStudio for projects, create a new RStudio Project, and discuss best practices for organizing data in an RStudio project. | 2024-01-16 13:00:00 | Online Webinar | Any | Programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Project Management in RStudio | |
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Description
To register to attend, you must log in or create a free SITC Cancer Immunotherapy CONNECT account.
It’s your last chance to register and learn about the cutting edge of computational immuno-oncology through a partnership between NCI and the Society for Immunotherapy of Cancer (SITC)! In this webinar, Drs. Benjamin Vincent and Marshall Thompson will discuss:
To register to attend, you must log in or create a free SITC Cancer Immunotherapy CONNECT account.
It’s your last chance to register and learn about the cutting edge of computational immuno-oncology through a partnership between NCI and the Society for Immunotherapy of Cancer (SITC)! In this webinar, Drs. Benjamin Vincent and Marshall Thompson will discuss:
This SITC-NCI Computational Immuno-Oncology Webinar is the eighth and final one-hour-long webinar designed to educate early-career scientists on computational immuno-oncology, increase participants’ awareness of and engagement in NCI-supported Cancer Moonshot SM Immunotherapy Networks, and fulfill the Blue Ribbon Panel’s goal of accelerating progress in cancer research. DetailsOrganizerCBIITWhenTue, Jan 16, 2024 - 1:30 pm - 2:30 pmWhereOnline |
To register to attend, you must log in or create a free SITC Cancer Immunotherapy CONNECT account. It’s your last chance to register and learn about the cutting edge of computational immuno-oncology through a partnership between NCI and the Society for Immunotherapy of Cancer (SITC)! In this webinar, Drs. Benjamin Vincent and Marshall Thompson will discuss: antigen discovery for T cell adoptive cellular therapies and its historical context, therapeutic application space, current genomics/bioinformatics methods for antigen discovery and prioritization, and open problems in the field. This SITC-NCI Computational Immuno-Oncology Webinar is the eighth and final one-hour-long webinar designed to educate early-career scientists on computational immuno-oncology, increase participants’ awareness of and engagement in NCI-supported Cancer Moonshot SM Immunotherapy Networks, and fulfill the Blue Ribbon Panel’s goal of accelerating progress in cancer research. | 2024-01-16 13:30:00 | Online | Any | Cancer Data | Online | CBIIT | 0 | Data Used in Cellular Therapies | ||
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DescriptionFrederick National Laboratory Frederick National Laboratory DetailsOrganizerScience and Technology Group (STG)WhenWed, Jan 17, 2024 - 11:00 am - 12:00 pmWhereOnline |
Frederick National LaboratoryScience and Technology Group: Work in Progress Seminar Series presents: “Enhancing Data Exploration, User Experience and Curation Efficiency in caNanoLab with Large Language Model” | 2024-01-17 11:00:00 | Online | Any | Artificial Intelligence | Online | Weina Ke | Science and Technology Group (STG) | 0 | Enhancing Data Exploration, User Experience and Curation Efficiency in caNanoLab with Large Language Model | |
1360 |
DescriptionFor inquires send email to staff@hpc.nih.gov Meeting ID: 160 335 9291 Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to ...Read More For inquires send email to staff@hpc.nih.gov Meeting ID: 160 335 9291 Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users
DetailsOrganizerNIH HPCWhenWed, Jan 17, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Meeting ID: 160 335 9291Passcode: 640160 Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2024-01-17 13:00:00 | Online | Any | HPC Systems | Online | HPC Staff | NIH HPC | 0 | Zoom-In Consult for Biowulf Users | |
1359 |
DescriptionJoin us for the next ScHARe Think-a-Thon on January 17. This interactive webinar will help attendees unlock the power of data science by demystifying the process of choosing computational data science tools and techniques. Participants will be empowered to make confident choices when selecting computational strategies for their data analysis goals. Think-a-Thons are for researchers, educators, and students from all disciplines, career levels, and data science backgrounds. Register to attend. Join us for the next ScHARe Think-a-Thon on January 17. This interactive webinar will help attendees unlock the power of data science by demystifying the process of choosing computational data science tools and techniques. Participants will be empowered to make confident choices when selecting computational strategies for their data analysis goals. Think-a-Thons are for researchers, educators, and students from all disciplines, career levels, and data science backgrounds. Register to attend. DetailsOrganizerNIMHD and NINRWhenWed, Jan 17, 2024 - 2:00 pm - 4:30 pmWhereOnline |
Join us for the next ScHARe Think-a-Thon on January 17. This interactive webinar will help attendees unlock the power of data science by demystifying the process of choosing computational data science tools and techniques. Participants will be empowered to make confident choices when selecting computational strategies for their data analysis goals. Think-a-Thons are for researchers, educators, and students from all disciplines, career levels, and data science backgrounds. Register to attend. | 2024-01-17 14:00:00 | Online | Any | Data Science | Online | Deborah Guadalupe Duran (NIMHD),Luca Calzoni (NIMHD) | NIMHD and NINR | 0 | Schare Think a Thon | Computational Data Science Strategies: Getting Ready for Data Science 101 | |
1362 |
DescriptionArtificial Intelligence (AI) is becoming increasingly ubiquitous in biomedical research, enabled by large datasets, new algorithms, and hardware improvements. In this 30-minute talk and Q and A session, Dr. Brian Ondov will introduce the basic principles of AI and describe how its various forms can help researchers in different ways, including image classification, sequence-based prediction, generative models, and language understanding. Dr. Ondov is a postdoctoral fellow at the National Library of Medicine, ...Read More Artificial Intelligence (AI) is becoming increasingly ubiquitous in biomedical research, enabled by large datasets, new algorithms, and hardware improvements. In this 30-minute talk and Q and A session, Dr. Brian Ondov will introduce the basic principles of AI and describe how its various forms can help researchers in different ways, including image classification, sequence-based prediction, generative models, and language understanding. Dr. Ondov is a postdoctoral fellow at the National Library of Medicine, where he researches AI for consumer health communication, and faculty at FAES, where he teaches Applied Machine Learning (BIOF 509) and Advanced Applications of Artificial Intelligence (BIOF 510). The Foundation for Advanced Education in the Sciences (FAES) at NIH seeks to foster education and research in the biomedical sciences by providing instruction at the cutting edge of biological science and its evolving applications. Our goals also include responding to the educational and cultural needs of the NIH community and projecting FAES educational assets globally. All courses and workshops are open to the public. NOTICE OF NONDISCRIMINATORY POLICY AS TO STUDENTS FAES admits students of any race, color, national and ethnic origin to all the rights, privileges, programs, and activities generally accorded or made available to students at the school. It does not discriminate on the basis of race, color, national and ethnic origin, sex, disability, or age in administration of its educational policies, admissions policies, scholarship programs, and other school-administered programs. Please email registrar@FAES.org with questions or if you have issues with registration. DetailsOrganizerOD/ORSWhenThu, Jan 18, 2024 - 12:00 pm - 12:30 pmWhereOnline |
Artificial Intelligence (AI) is becoming increasingly ubiquitous in biomedical research, enabled by large datasets, new algorithms, and hardware improvements. In this 30-minute talk and Q and A session, Dr. Brian Ondov will introduce the basic principles of AI and describe how its various forms can help researchers in different ways, including image classification, sequence-based prediction, generative models, and language understanding. Dr. Ondov is a postdoctoral fellow at the National Library of Medicine, where he researches AI for consumer health communication, and faculty at FAES, where he teaches Applied Machine Learning (BIOF 509) and Advanced Applications of Artificial Intelligence (BIOF 510). The Foundation for Advanced Education in the Sciences (FAES) at NIH seeks to foster education and research in the biomedical sciences by providing instruction at the cutting edge of biological science and its evolving applications. Our goals also include responding to the educational and cultural needs of the NIH community and projecting FAES educational assets globally. All courses and workshops are open to the public. NOTICE OF NONDISCRIMINATORY POLICY AS TO STUDENTS FAES admits students of any race, color, national and ethnic origin to all the rights, privileges, programs, and activities generally accorded or made available to students at the school. It does not discriminate on the basis of race, color, national and ethnic origin, sex, disability, or age in administration of its educational policies, admissions policies, scholarship programs, and other school-administered programs. Please email registrar@FAES.org with questions or if you have issues with registration. | 2024-01-18 12:00:00 | Online | Any | Artificial Intelligence | Online | OD/ORS | 0 | FAES Educational Webinar: Artificial Intelligence in the Biomedical Sciences | ||
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DescriptionTrey Ideker, Ph.D., is a professor of medicine, bioengineering, and computer science, and former chief of genetics at the University of California San Diego (UCSD). Additionally, he is director or co-director of the Bridge2AI Functional Genomics Data Generation Program, the Cancer Cell Map Initiative, the National Resource for Network Biology, and the UCSD Graduate Program in Bioinformatics and Systems Biology—all NIH-funded efforts. Dr. Ideker received his B.S. ...Read More Trey Ideker, Ph.D., is a professor of medicine, bioengineering, and computer science, and former chief of genetics at the University of California San Diego (UCSD). Additionally, he is director or co-director of the Bridge2AI Functional Genomics Data Generation Program, the Cancer Cell Map Initiative, the National Resource for Network Biology, and the UCSD Graduate Program in Bioinformatics and Systems Biology—all NIH-funded efforts. Dr. Ideker received his B.S. and M.Eng. degrees in computer science from the Massachusetts Institute of Technology and a Ph.D. in genome sciences from the University of Washington under Drs. Lee Hood and Dick Karp. He was then a David Baltimore fellow at the Whitehead Institute in Cambridge, MA, before joining the UCSD faculty in 2003. Presently, Dr. Ideker serves on the Board of Scientific Advisors to NCI and, formerly, to the National Human Genome Research Institute. He also serves on the editorial boards of Cell, Cell Systems, PLoS Computational Biology, and Molecular Systems Biology. He was named a Top 10 Innovator by Technology Review, received the 2009 International Society for Computational Biology Overton Prize, and is a fellow of the American Association for the Advancement of Science, American Institute for Medical and Biological Engineering, and International Society for Computational Biology organizations. Since 2020, he has been named a Web of Science Highly Cited Researcher (top 1% by citations). Dr. Ideker’s research laboratory has led seminal studies establishing the theory and practice of systems biology, including systematic techniques for elucidating human cell architecture and its molecular networks. From 2001 to the present, his laboratory produced numerous maps of protein-protein, transcriptional, and genetic networks in model organisms and humans (in collaboration with trainees and co-investigators), along with widely used Cytoscape network analysis software (with Dr. Gary Bader and others). His studies introduced core concepts in bioinformatics, including generation of transcriptional networks to explain genome-wide expression patterns (with Dr. Leroy Hood), network alignment and evolutionary comparison (with Drs. Richard Karp and Roded Sharan) and network biomarkers, which enable multigenic definitions of patient subtypes and treatment responses. He also introduced experimental mapping techniques, including synthetic-lethal interaction mapping with CRISPR/Cas9 (with Dr. Prashant Mali) and characterization of differential interactions across conditions and time (with Dr. Nevan Krogan). These technologies have broadly informed the mechanisms by which diverse genetic alterations drive cancer, neurological disorders, and drug resistance. Recently, Drs. Ideker and Emma Lundberg demonstrated an end-to-end pipeline for mapping the structure of human cells over a broad range (10–9 to 10–5 m) based on the fusion of protein networks with immunofluorescence imaging. Dr. Ideker has also recently shown that network maps provide a substrate for deep learning models of cell structure and function, with basic implications for the construction of intelligent systems in precision medicine (with Dr. Jianzhu Ma and co-investigators). Finally, Dr. Ideker and collaborators showed that large parts of the methylome are remodeled with age, leading to the first epigenetic clock and the rapidly expanding field of epigenetic aging. DetailsOrganizerNCI CCRWhenFri, Jan 19, 2024 - 12:00 pm - 1:00 pmWhereOnline |
Trey Ideker, Ph.D., is a professor of medicine, bioengineering, and computer science, and former chief of genetics at the University of California San Diego (UCSD). Additionally, he is director or co-director of the Bridge2AI Functional Genomics Data Generation Program, the Cancer Cell Map Initiative, the National Resource for Network Biology, and the UCSD Graduate Program in Bioinformatics and Systems Biology—all NIH-funded efforts. Dr. Ideker received his B.S. and M.Eng. degrees in computer science from the Massachusetts Institute of Technology and a Ph.D. in genome sciences from the University of Washington under Drs. Lee Hood and Dick Karp. He was then a David Baltimore fellow at the Whitehead Institute in Cambridge, MA, before joining the UCSD faculty in 2003. Presently, Dr. Ideker serves on the Board of Scientific Advisors to NCI and, formerly, to the National Human Genome Research Institute. He also serves on the editorial boards of Cell, Cell Systems, PLoS Computational Biology, and Molecular Systems Biology. He was named a Top 10 Innovator by Technology Review, received the 2009 International Society for Computational Biology Overton Prize, and is a fellow of the American Association for the Advancement of Science, American Institute for Medical and Biological Engineering, and International Society for Computational Biology organizations. Since 2020, he has been named a Web of Science Highly Cited Researcher (top 1% by citations). Dr. Ideker’s research laboratory has led seminal studies establishing the theory and practice of systems biology, including systematic techniques for elucidating human cell architecture and its molecular networks. From 2001 to the present, his laboratory produced numerous maps of protein-protein, transcriptional, and genetic networks in model organisms and humans (in collaboration with trainees and co-investigators), along with widely used Cytoscape network analysis software (with Dr. Gary Bader and others). His studies introduced core concepts in bioinformatics, including generation of transcriptional networks to explain genome-wide expression patterns (with Dr. Leroy Hood), network alignment and evolutionary comparison (with Drs. Richard Karp and Roded Sharan) and network biomarkers, which enable multigenic definitions of patient subtypes and treatment responses. He also introduced experimental mapping techniques, including synthetic-lethal interaction mapping with CRISPR/Cas9 (with Dr. Prashant Mali) and characterization of differential interactions across conditions and time (with Dr. Nevan Krogan). These technologies have broadly informed the mechanisms by which diverse genetic alterations drive cancer, neurological disorders, and drug resistance. Recently, Drs. Ideker and Emma Lundberg demonstrated an end-to-end pipeline for mapping the structure of human cells over a broad range (10–9 to 10–5 m) based on the fusion of protein networks with immunofluorescence imaging. Dr. Ideker has also recently shown that network maps provide a substrate for deep learning models of cell structure and function, with basic implications for the construction of intelligent systems in precision medicine (with Dr. Jianzhu Ma and co-investigators). Finally, Dr. Ideker and collaborators showed that large parts of the methylome are remodeled with age, leading to the first epigenetic clock and the rapidly expanding field of epigenetic aging. | 2024-01-19 12:00:00 | Any | Precision Medicine | Online | Trey Ideker (UCSD) | NCI CCR | 0 | Assembling Digital Tumor Cells for Precision Oncology | ||
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DescriptionDear Colleagues, Dear Colleagues, DetailsOrganizerCBIITWhenMon, Jan 22, 2024 - 10:00 am - 11:00 amWhereOnline |
Dear Colleagues, Optical Genome Maps (OGM) provide scaffolding information for large DNA molecules. In this talk, we describe the use of this technology for detecting structural variants and chaining them together to elucidate somatic complex structural variation in cancer. We focus specifically on two mechanisms of focal Copy Number Amplifications (fCNA) in cancer: extrachromosomal DNA (ecDNA) and Breakage Fusion Bridge cycles (BFB). We describe:• how our AmpliconReconstructor (AR) method integrates OGM with next-generation sequencing (NGS) to resolve ecDNA at single-nucleotide resolution.• a novel algorithm, OM2BFB, that detects and reconstructs BFB amplifications using optical genome maps.• the method used to predict 371 BFB events using whole genome sequences from 2,557 primary tumors and cancer lines to compare/contrast their properties against ecDNA. | 2024-01-22 10:00:00 | Online | Any | Variant Analysis | Online | Vineet Bafna (UCSD) | CBIIT | 0 | Optical Genome Map Technologies for decoding Complex Structural Variation in Cancer | |
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Part Of: Introduction to Unix on Biowulf: January 2024 CourseDescriptionThis is the first lesson in the Introduction to Unix on Biowulf, January 2024 series. In this lesson, participants will learn to log onto Biowulf and receive an overview of Unix command line as well as the Biowulf environment. Please make sure you can attend all six lessons in this series before registering. Registering for this lesson will enroll you in all lessons for this course. <...Read MoreThis is the first lesson in the Introduction to Unix on Biowulf, January 2024 series. In this lesson, participants will learn to log onto Biowulf and receive an overview of Unix command line as well as the Biowulf environment. Please make sure you can attend all six lessons in this series before registering. Registering for this lesson will enroll you in all lessons for this course. Meeting information: Meeting link: Join by video system Join by phone
RegisterOrganizerBTEPWhenMon, Jan 22, 2024 - 1:00 pm - 3:00 pmWhereOnline Webinar |
This is the first lesson in the Introduction to Unix on Biowulf, January 2024 series. In this lesson, participants will learn to log onto Biowulf and receive an overview of Unix command line as well as the Biowulf environment. Please make sure you can attend all six lessons in this series before registering. Registering for this lesson will enroll you in all lessons for this course. Meeting information: Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mb2b097ebdc0b4ecb97b718e7b1d6534b Meeting number:2305 963 7083Password:JBrhyQd@986 Join by video systemDial 23059637083@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2305 963 7083 | 2024-01-22 13:00:00 | Online Webinar | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 1: Introduction to Unix on Biowulf, January 2024 |
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DescriptionNCI is launching the virtual Cancer AI Conversations series featuring multiple perspectives on timely topics and themes in artificial intelligence for cancer research! Each event features short talks from 2-4 subject matter experts offering diverse views on the session topic. These talks will be followed by a moderated panel discussion. “Cancer AI Conversations” are bimonthly, 1-hour virtual events featuring timely topics related to the application ...Read More NCI is launching the virtual Cancer AI Conversations series featuring multiple perspectives on timely topics and themes in artificial intelligence for cancer research! Each event features short talks from 2-4 subject matter experts offering diverse views on the session topic. These talks will be followed by a moderated panel discussion. “Cancer AI Conversations” are bimonthly, 1-hour virtual events featuring timely topics related to the application of artificial intelligence in cancer research. Each event features short talks from 2-4 subject matter experts offering diverse perspectives on the session topic. All of the Cancer AI Conversations will be recorded and posted for future viewing. DetailsOrganizerNCIWhenTue, Jan 23, 2024 - 11:00 am - 12:00 pmWhereOnline |
NCI is launching the virtual Cancer AI Conversations series featuring multiple perspectives on timely topics and themes in artificial intelligence for cancer research! Each event features short talks from 2-4 subject matter experts offering diverse views on the session topic. These talks will be followed by a moderated panel discussion. “Cancer AI Conversations” are bimonthly, 1-hour virtual events featuring timely topics related to the application of artificial intelligence in cancer research. Each event features short talks from 2-4 subject matter experts offering diverse perspectives on the session topic. All of the Cancer AI Conversations will be recorded and posted for future viewing. | 2024-01-23 11:00:00 | Online | Any | Artificial Intelligence / Machine Learning | Online | Alexander Johansen (Standford University),Claus O. Wike (U Texas at Austin),Hoifung Poon (Microsoft Research) | NCI | 0 | Cancer AI Conversations: Understanding the Role of Prompt Engineering in Generative AI | |
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DescriptionIn this session, we will discuss the potential of GPUs, and when and why to use GPUs on the Frederick Research Computing Environment (FRCE). We will explore the possibilities of GPU-accelerated AI applications and interactive sessions on FRCE to maximize GPU utilization. This session is geared towards beginners. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (<...Read More In this session, we will discuss the potential of GPUs, and when and why to use GPUs on the Frederick Research Computing Environment (FRCE). We will explore the possibilities of GPU-accelerated AI applications and interactive sessions on FRCE to maximize GPU utilization. This session is geared towards beginners. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research.
DetailsOrganizerAdvanced Biomedical Computational Sciences (ABCS)WhenTue, Jan 23, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room Frederick |
In this session, we will discuss the potential of GPUs, and when and why to use GPUs on the Frederick Research Computing Environment (FRCE). We will explore the possibilities of GPU-accelerated AI applications and interactive sessions on FRCE to maximize GPU utilization. This session is geared towards beginners. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. | 2024-01-23 12:00:00 | Building 549 Executive Board Room Frederick | Any | Artificial Intelligence | Hybrid | Mohammad Alodadi (BACS ABCS) | Advanced Biomedical Computational Sciences (ABCS) | 0 | Maximizing Computational Power: Unleashing the Potential of FRCE GPUs for Advanced AI Research, NLP, and Large Language Models | |
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DescriptionThis class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, participants will have a chance to experiment with this integration and understand its advantages for collaboration and managing projects. You must have taken Version Control and GitHub class to be successful in this class. Upon completion of this class participants should be able to discuss the difference between Git and GitHub, list the options for authenticating to GitHub, ...Read More This class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, participants will have a chance to experiment with this integration and understand its advantages for collaboration and managing projects. You must have taken Version Control and GitHub class to be successful in this class. Upon completion of this class participants should be able to discuss the difference between Git and GitHub, list the options for authenticating to GitHub, create a new R project using a GitHub repository, and distinguish between pulling and pushing data from a repository. DetailsOrganizerNIH LibraryWhenTue, Jan 23, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This class focuses on using Git and GitHub, with RStudio. Using integrated RStudio tools, participants will have a chance to experiment with this integration and understand its advantages for collaboration and managing projects. You must have taken Version Control and GitHub class to be successful in this class. Upon completion of this class participants should be able to discuss the difference between Git and GitHub, list the options for authenticating to GitHub, create a new R project using a GitHub repository, and distinguish between pulling and pushing data from a repository. | 2024-01-23 13:00:00 | Online Webinar | Any | Version Control | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Git in RStudio | |
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Looking for data sharing platforms to enhance your research and advance communal knowledge of childhood cancers? Join the first NCI Childhood Cancer Data Initiative (CCDI) webinar of the new year! Mr. Clay McLeod and Dr. Xin Zhou will talk about the following platforms, accessible via St. Jude Cloud, a St. Jude Children’s Research Hospital initiative: PeCan (Version 2): This web-based childhood cancer data resource allows for quick, interactive analysis of different types of childhood cancer data from approximately 9,000 samples. St. Jude Survivorship Portal: This portal allows you to analyze and interact with nearly 90 million clinical data points and 1.5 terabytes of genetic data collected from a cohort of over 7,000 childhood cancer survivors. This webinar is part of the CCDI webinar series, which highlights how to use CCDI’s web applications, platforms, and data, and give attendees the opportunity to learn how to use available resources. | 2024-01-23 13:00:00 | Online | Any | Cancer Data | Online | Mr. Clay McLeod (St. Jude Children\'s Research Hospital),Xin Zhou Ph.D. (St. Jude Children\'s Research Hospital) | CBIIT | 0 | Navigating St. Jude PeCan and Survivorship Data Sharing Tools | |
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Part Of: R Introductory Series 2024 CourseDescriptionThis is the first lesson of the R Introductory Series. This lesson will serve as a general introduction to R and RStudio. Attendees will explore the RStudio interactive development environment (IDE) and learn to create R projects and scripts, navigate between directories, use functions, and obtain help. This is the first lesson of the R Introductory Series. This lesson will serve as a general introduction to R and RStudio. Attendees will explore the RStudio interactive development environment (IDE) and learn to create R projects and scripts, navigate between directories, use functions, and obtain help. RegisterOrganizerBTEPWhenTue, Jan 23, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This is the first lesson of the R Introductory Series. This lesson will serve as a general introduction to R and RStudio. Attendees will explore the RStudio interactive development environment (IDE) and learn to create R projects and scripts, navigate between directories, use functions, and obtain help. | 2024-01-23 13:00:00 | Online | Any | R programming | Data analysis,Data visualization,Data wrangling,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to R and RStudio |
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DescriptionDear Colleague,
Helen Shearman, Ph.D., Senior Field Application Scientist, will be presenting a one-hour overview demonstration on SnapGene.
Dear Colleague,
Helen Shearman, Ph.D., Senior Field Application Scientist, will be presenting a one-hour overview demonstration on SnapGene.
For questions contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenWed, Jan 24, 2024 - 10:00 am - 11:00 amWhereOnline |
Dear Colleague, Helen Shearman, Ph.D., Senior Field Application Scientist, will be presenting a one-hour overview demonstration on SnapGene. SnapGene offers a fast and easy way to plan, visualize, and document your everyday cloning procedures. With SnapGene, you can create and view plasmid maps. It makes cloning easier and provides a record of DNA constructs. More information can be found on their website at snapgene.com. For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-01-24 10:00:00 | Online | Any | Molecular Biology Software | Online | Helen Shearman (SnapGene) | CBIIT | 0 | Join us for a webinar on SnapGene | |
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Coding Club Seminar SeriesDescriptionDocumenting your data analysis is a crucial step toward making your research reproducible. In this session of the BTEP Coding Club, we will learn how to get started using Quarto with RStudio for report generation. Documenting your data analysis is a crucial step toward making your research reproducible. In this session of the BTEP Coding Club, we will learn how to get started using Quarto with RStudio for report generation. RegisterOrganizerBTEPWhenWed, Jan 24, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Documenting your data analysis is a crucial step toward making your research reproducible. In this session of the BTEP Coding Club, we will learn how to get started using Quarto with RStudio for report generation. | 2024-01-24 11:00:00 | Online Webinar | Any | R programming | Quarto | Online | Alex Emmons (BTEP) | BTEP | 1 | Documenting Your Analysis with Quarto |
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DescriptionDear colleagues, Dear colleagues, Research in the Ma'ayan Lab involves applying computational methods to study the complexity of regulatory networks in mammalian cells. The lab team develops algorithms and software to study how regulatory networks control cellular processes such as differentiation, dedifferentiation, apoptosis, and proliferation.
DetailsOrganizerCBIITWhenWed, Jan 24, 2024 - 11:00 am - 12:00 pmWhereOnline |
Dear colleagues, Please join us on Wed., Jan. 24 when Dr. Avi Ma’ayan from the Icahn School of Medicine at Mount Sinai will demonstrate how to use these tools to access hundreds of thousands of gene sets. The tools include: • Rummagene, which lets you access human and mouse gene-sets from the supporting materials in PubMed Central (PMC). To date, researchers have used the softbot to scan 5,670,312 PMC articles, uncovering 126,390 articles with 667,029 gene sets.• Rummageo, which gives you access to gene sets from human and mouse RNA-seq studies in the Gene Expression Omnibus (GEO) database. Rummageo currently contains 135,264 human and 158,062 mouse gene-sets from 23,395 GEO studies. Research in the Ma'ayan Lab involves applying computational methods to study the complexity of regulatory networks in mammalian cells. The lab team develops algorithms and software to study how regulatory networks control cellular processes such as differentiation, dedifferentiation, apoptosis, and proliferation. Research in the Ma'ayan Lab involves applying computational methods to study the complexity of regulatory networks in mammalian cells. The lab team develops algorithms and software to study how regulatory networks control cellular processes such as differentiation, dedifferentiation, apoptosis, and proliferation. | 2024-01-24 11:00:00 | Online | Beginner | Online | Dr. Avi Ma\'ayan (Icahn School of Medicine at Mount Sinai) | CBIIT | 0 | Rummagene and Rummageo: Automated Mining of Gene Sets from PubMed Central (PMC) and the Gene Expression Omnibus (GEO) | ||
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DescriptionThis 90-minute course equips participants with essential knowledge and skills for effective interactions with Large Language Models (LLMs), such as ChatGPT. Explore the intricacies of prompt engineering and its pivotal role in optimizing the conversational capabilities of LLMs. Emphasizing best practices and practical applications, this course features live demonstrations and group discussion, and provides valuable skills for the effective use of LLMs. Attendees are encouraged to Read More This 90-minute course equips participants with essential knowledge and skills for effective interactions with Large Language Models (LLMs), such as ChatGPT. Explore the intricacies of prompt engineering and its pivotal role in optimizing the conversational capabilities of LLMs. Emphasizing best practices and practical applications, this course features live demonstrations and group discussion, and provides valuable skills for the effective use of LLMs. Attendees are encouraged to register for a free ChatGPT account prior to taking this class. DetailsOrganizerNIH LibraryWhenWed, Jan 24, 2024 - 11:30 am - 1:00 pmWhereOnline Webinar |
This 90-minute course equips participants with essential knowledge and skills for effective interactions with Large Language Models (LLMs), such as ChatGPT. Explore the intricacies of prompt engineering and its pivotal role in optimizing the conversational capabilities of LLMs. Emphasizing best practices and practical applications, this course features live demonstrations and group discussion, and provides valuable skills for the effective use of LLMs. Attendees are encouraged to register for a free ChatGPT account prior to taking this class. | 2024-01-24 11:30:00 | Online Webinar | Any | CHATGPT | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Best Practices and Patterns for Prompt Generation in ChatGPT | |
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Part Of: Introduction to Unix on Biowulf: January 2024 CourseDescriptionThis is the second lesson of the Introduction to Unix on Biowulf, January 2024 series. After this lesson, participants will
This is the second lesson of the Introduction to Unix on Biowulf, January 2024 series. After this lesson, participants will
Meeting information: Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenWed, Jan 24, 2024 - 1:00 pm - 3:00 pmWhereOnline Webinar |
This is the second lesson of the Introduction to Unix on Biowulf, January 2024 series. After this lesson, participants will Know how to get help with Unix commands Know how to transfer data from local computer to the cluster Be able to navigate the Unix file systems (changing directories) Be able to list directory content Be able to describe file and directory permissions as well as know how to modify them Meeting information: Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mb2b097ebdc0b4ecb97b718e7b1d6534b Meeting number:2305 963 7083Password:JBrhyQd@986 Join by video systemDial 23059637083@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2305 963 7083 | 2024-01-24 13:00:00 | Online Webinar | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 2: Introduction to Unix on Biowulf, January 2024 |
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DescriptionThis course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about ...Read More This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. DetailsOrganizerNIH LibraryWhenThu, Jan 25, 2024 - 12:00 pm - 1:00 pmWhereOnline Webinar |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2024-01-25 12:00:00 | Online Webinar | Any | Data Management,Data Sharing | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Data Management and Sharing: Part 1 | |
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Part Of: R Introductory Series 2024 CourseDescriptionIn this lesson, attendees will learn the most basic features of the R programming language including:
In this lesson, attendees will learn the most basic features of the R programming language including:
RegisterOrganizerBTEPWhenThu, Jan 25, 2024 - 1:00 pm - 2:00 pmWhereOnline |
In this lesson, attendees will learn the most basic features of the R programming language including: R syntax Creating R objects Data types Using mathematical operations Using comparison operators Creating, subsetting, and modifying vectors | 2024-01-25 13:00:00 | Online | Any | R programming | R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | The Basics of R Programming |
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DescriptionThe RDI SIG is a trans-institute group whose investigators apply informatics approach to curate, harmonize, standardize, and analyze biomedical data obtained from a variety of resources (i.e., gene sequences, bioassays, electronic health records and other forms of real-world data, scientific publications) for clinical, biological, and public health research applications. The group meets to discuss the challenges/emerging technology of integrating computational techniques into analysis workflows and new developments in rare disease informatics applications. ...Read More The RDI SIG is a trans-institute group whose investigators apply informatics approach to curate, harmonize, standardize, and analyze biomedical data obtained from a variety of resources (i.e., gene sequences, bioassays, electronic health records and other forms of real-world data, scientific publications) for clinical, biological, and public health research applications. The group meets to discuss the challenges/emerging technology of integrating computational techniques into analysis workflows and new developments in rare disease informatics applications. January's meeting will involve a presentation on one of the collaborative projects formed from this SIG. Utilizing proteomics data and laboratory tests from the NICHD observational study 18-CH-0002, this study aims to identify significant biomarkers associated with CLN3. The ultimate goal is to construct a prediction model for assisting in CLN3 diagnosis. Preliminary findings include the identification of key CLN3-related biomarkers using panelized regression models and Random Forest classification, and a time series analysis pilot study revealed proteins whose changes precede symptom worsening, suggesting the potential for developing an early prediction model to facilitate early-stage interventions in preventing CLN3 progression. For more information on the SIG, visit our homepage: https://oir.nih.gov/sigs/rare-disease-informatics-scientific-interest-group DetailsOrganizerRare Disease InformaticsWhenFri, Jan 26, 2024 - 10:00 am - 11:00 amWhereOnline |
The RDI SIG is a trans-institute group whose investigators apply informatics approach to curate, harmonize, standardize, and analyze biomedical data obtained from a variety of resources (i.e., gene sequences, bioassays, electronic health records and other forms of real-world data, scientific publications) for clinical, biological, and public health research applications. The group meets to discuss the challenges/emerging technology of integrating computational techniques into analysis workflows and new developments in rare disease informatics applications. January's meeting will involve a presentation on one of the collaborative projects formed from this SIG. Utilizing proteomics data and laboratory tests from the NICHD observational study 18-CH-0002, this study aims to identify significant biomarkers associated with CLN3. The ultimate goal is to construct a prediction model for assisting in CLN3 diagnosis. Preliminary findings include the identification of key CLN3-related biomarkers using panelized regression models and Random Forest classification, and a time series analysis pilot study revealed proteins whose changes precede symptom worsening, suggesting the potential for developing an early prediction model to facilitate early-stage interventions in preventing CLN3 progression. For more information on the SIG, visit our homepage: https://oir.nih.gov/sigs/rare-disease-informatics-scientific-interest-group | 2024-01-26 10:00:00 | Online | Any | Proteomics,Rare Disease | Online | Shixue Sun (NCATS) | Rare Disease Informatics | 0 | Rare Disease Informatics SIG January Meeting CLN3 Collaborative Study | |
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DescriptionThis course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about ...Read More This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. DetailsOrganizerNIH LibraryWhenFri, Jan 26, 2024 - 12:00 pm - 1:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2024-01-26 12:00:00 | Any | Data Management,Data Sharing | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Data Management and Sharing: Part 2 | ||
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Part Of: Introduction to Unix on Biowulf: January 2024 CourseDescriptionIn the third lesson of the Introduction to Unix on Biowulf, January 2024 series participants will learn to copy, move, rename, and remove files and folder using Unix commands. Meeting link: Join by video system In the third lesson of the Introduction to Unix on Biowulf, January 2024 series participants will learn to copy, move, rename, and remove files and folder using Unix commands. Meeting link: Join by video system Join by phone
RegisterOrganizerBTEPWhenMon, Jan 29, 2024 - 1:00 pm - 3:00 pmWhereOnline |
In the third lesson of the Introduction to Unix on Biowulf, January 2024 series participants will learn to copy, move, rename, and remove files and folder using Unix commands. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mb2b097ebdc0b4ecb97b718e7b1d6534b Meeting number:2305 963 7083Password:JBrhyQd@986 Join by video systemDial 23059637083@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2305 963 7083 | 2024-01-29 13:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 3: Introduction to Unix on Biowulf, January 2024 |
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DescriptionThis class introduces version control and how to use GitHub for project versioning. Participants will have a better understanding of version control, GitHub, and their advantages for managing projects. Upon completion of this class participants should be able to recognize why version control is useful, discuss the difference between Git and GitHub, ...Read More This class introduces version control and how to use GitHub for project versioning. Participants will have a better understanding of version control, GitHub, and their advantages for managing projects. Upon completion of this class participants should be able to recognize why version control is useful, discuss the difference between Git and GitHub, list the options for authenticating to GitHub, and list the options for creating a personal access token (PAT). DetailsOrganizerNIH LibraryWhenTue, Jan 30, 2024 - 1:00 pm - 2:30 pmWhereOnline Webinar |
This class introduces version control and how to use GitHub for project versioning. Participants will have a better understanding of version control, GitHub, and their advantages for managing projects. Upon completion of this class participants should be able to recognize why version control is useful, discuss the difference between Git and GitHub, list the options for authenticating to GitHub, and list the options for creating a personal access token (PAT). | 2024-01-30 13:00:00 | Online Webinar | Any | Version Control | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Version Control and GitHub | |
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Part Of: R Introductory Series 2024 CourseDescriptionThis lesson will introduce data structures with a focus on data frames. Attendees will learn how to import, summarize, and explore data stored in data frames. This lesson will introduce data structures with a focus on data frames. Attendees will learn how to import, summarize, and explore data stored in data frames. RegisterOrganizerBTEPWhenTue, Jan 30, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This lesson will introduce data structures with a focus on data frames. Attendees will learn how to import, summarize, and explore data stored in data frames. | 2024-01-30 13:00:00 | Online | Any | R programming | Data analysis,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | R Data Structures: Introducing Data Frames |
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Part Of: Introduction to Unix on Biowulf: January 2024 CourseDescriptionThe fourth lesson of the Introduction to Unix on Biowulf, January 2024 series will introduce participants to bioinformatics software installed on Biowulf. Meeting link: Join by video system The fourth lesson of the Introduction to Unix on Biowulf, January 2024 series will introduce participants to bioinformatics software installed on Biowulf. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenWed, Jan 31, 2024 - 1:00 pm - 3:00 pmWhereOnline Webinar |
The fourth lesson of the Introduction to Unix on Biowulf, January 2024 series will introduce participants to bioinformatics software installed on Biowulf. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mb2b097ebdc0b4ecb97b718e7b1d6534b Meeting number:2305 963 7083Password:JBrhyQd@986 Join by video systemDial 23059637083@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2305 963 7083 | 2024-01-31 13:00:00 | Online Webinar | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 4: Introduction to Unix on Biowulf, January 2024 |
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Part Of: R Introductory Series 2024 CourseDescriptionThis lesson will introduce data wrangling with R. Attendees will learn to filter data using base R and tidyverse (dplyr) functionality. This lesson will introduce data wrangling with R. Attendees will learn to filter data using base R and tidyverse (dplyr) functionality. RegisterOrganizerBTEPWhenThu, Feb 01, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This lesson will introduce data wrangling with R. Attendees will learn to filter data using base R and tidyverse (dplyr) functionality. | 2024-02-01 13:00:00 | Online | Any | R programming | Data analysis,Data wrangling,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Data Frames and Data Wrangling (part 1) |
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Please plan to attend this seminar on Zoom tomorrow. The meeting is sponsored by the NIH Virology Interest Group, but Dr. Parker is using some exciting tools to examine gene expression at the subcellular level and should be of interest to people on this listserv as well. Meeting ID: 160 085 3909Passcode: 295420 | 2024-02-01 15:00:00 | Online | Any | Spatial Transcriptomics | Online | John S. L. Parker (Baker Institute for Animal Health) | NIH Virology Interest Group | 0 | Use of Spatiotemporal Transcriptomics as a Discovery Tool for Viral Pathogenesis | |
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Part Of: Introduction to Unix on Biowulf: January 2024 CourseDescriptionThe fifth lesson in the Introduction to Unix on Biowulf, January 2024 series teaches participants to submit scripts to the Biowulf batch system, which enables automation of multi-step analyses. Meeting link: Join by video system The fifth lesson in the Introduction to Unix on Biowulf, January 2024 series teaches participants to submit scripts to the Biowulf batch system, which enables automation of multi-step analyses. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenMon, Feb 05, 2024 - 1:00 pm - 3:00 pmWhereOnline |
The fifth lesson in the Introduction to Unix on Biowulf, January 2024 series teaches participants to submit scripts to the Biowulf batch system, which enables automation of multi-step analyses. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mb2b097ebdc0b4ecb97b718e7b1d6534b Meeting number:2305 963 7083Password:JBrhyQd@986 Join by video systemDial 23059637083@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2305 963 7083 | 2024-02-05 13:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 5: Introduction to Unix on Biowulf, January 2024 |
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DescriptionThis class provides a basic overview of creating plots using ggplot. ggplot is a part of the Tidyverse, a collection of R packages designed for data science. This class will focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must have taken Introduction ...Read More This class provides a basic overview of creating plots using ggplot. ggplot is a part of the Tidyverse, a collection of R packages designed for data science. This class will focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must have taken Introduction to R and RStudio class to be successful in this class. By the end of this class, participants should be able to discuss the connection between data, aesthetics, & the grammar of graphics, describe how ggplot works, define geoms, and distinguish between individual geoms and collective geoms. DetailsOrganizerNIH LibraryWhenTue, Feb 06, 2024 - 1:00 pm - 2:30 pmWhereOnline |
This class provides a basic overview of creating plots using ggplot. ggplot is a part of the Tidyverse, a collection of R packages designed for data science. This class will focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must have taken Introduction to R and RStudio class to be successful in this class. By the end of this class, participants should be able to discuss the connection between data, aesthetics, & the grammar of graphics, describe how ggplot works, define geoms, and distinguish between individual geoms and collective geoms. | 2024-02-06 13:00:00 | Online | Any | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot | ||
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Part Of: R Introductory Series 2024 CourseDescriptionIn this lesson, attendees will learn how to transform, summarize, and reshape data using functions from the tidyverse. In this lesson, attendees will learn how to transform, summarize, and reshape data using functions from the tidyverse. RegisterOrganizerBTEPWhenTue, Feb 06, 2024 - 1:00 pm - 2:00 pmWhereOnline |
In this lesson, attendees will learn how to transform, summarize, and reshape data using functions from the tidyverse. | 2024-02-06 13:00:00 | Online | Any | R programming | Data analysis,Data wrangling,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Data Frames and Data Wrangling (part 2) |
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Part Of: Introduction to Unix on Biowulf: January 2024 CourseDescriptionThis the final (6th) lesson of the Introduction to Unix on Biowulf, January 2024 series. Participants will learn to view and edit text files as well as scripts and to perform basic wrangling tasks on tabular data. Meeting link: This the final (6th) lesson of the Introduction to Unix on Biowulf, January 2024 series. Participants will learn to view and edit text files as well as scripts and to perform basic wrangling tasks on tabular data. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenWed, Feb 07, 2024 - 1:00 pm - 3:00 pmWhereOnline |
This the final (6th) lesson of the Introduction to Unix on Biowulf, January 2024 series. Participants will learn to view and edit text files as well as scripts and to perform basic wrangling tasks on tabular data. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mb2b097ebdc0b4ecb97b718e7b1d6534b Meeting number:2305 963 7083Password:JBrhyQd@986 Join by video systemDial 23059637083@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2305 963 7083 | 2024-02-07 13:00:00 | Online | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Bioinformatics,NIH High Performance Unix Cluster Biowulf | Online | Joe Wu (BTEP) | BTEP | 0 | Lesson 6: Introduction to Unix on Biowulf, January 2024 |
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Part Of: R Introductory Series 2024 CourseDescriptionThis lesson will introduce prominent ways to visualize data with R. The majority of the lesson will be devoted to learning how to create publishable figures using the ggplot2 package. This lesson will introduce prominent ways to visualize data with R. The majority of the lesson will be devoted to learning how to create publishable figures using the ggplot2 package. RegisterOrganizerBTEPWhenThu, Feb 08, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This lesson will introduce prominent ways to visualize data with R. The majority of the lesson will be devoted to learning how to create publishable figures using the ggplot2 package. | 2024-02-08 13:00:00 | Online | Any | R programming | Data visualization,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to Data Visualization with R (part 1) |
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DescriptionThe first half of the session will briefly review statistics training resources available to the NCI based on feedback from previous Statistics for Lunch sessions. For the second half, we will have an open forum for participants to provide additional feedback on statistics training topics for future Statistics for Lunch sessions. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a ...Read More The first half of the session will briefly review statistics training resources available to the NCI based on feedback from previous Statistics for Lunch sessions. For the second half, we will have an open forum for participants to provide additional feedback on statistics training topics for future Statistics for Lunch sessions. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov)
DetailsOrganizerBACSWhenTue, Feb 13, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Conference Room B |
The first half of the session will briefly review statistics training resources available to the NCI based on feedback from previous Statistics for Lunch sessions. For the second half, we will have an open forum for participants to provide additional feedback on statistics training topics for future Statistics for Lunch sessions. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov) | 2024-02-13 12:00:00 | Building 549 Conference Room B | Any | Statistics | Hybrid | Natasha Pacheco (BACS ABCS) | BACS | 0 | Overview of Statistics Training Resources | |
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DescriptionThis class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. You must have taken Data Visualization in R: ggplot class to be successful in this class. By the end of this class, participants should be able to describe options for time series data, create a line ...Read More This class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. You must have taken Data Visualization in R: ggplot class to be successful in this class. By the end of this class, participants should be able to describe options for time series data, create a line plot in ggplot, learn how to facet a plot, demonstrate options for customizing the title and axis, and apply different ggplot themes. DetailsOrganizerNIH LibraryWhenTue, Feb 13, 2024 - 1:00 pm - 2:30 pmWhereOnline |
This class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. You must have taken Data Visualization in R: ggplot class to be successful in this class. By the end of this class, participants should be able to describe options for time series data, create a line plot in ggplot, learn how to facet a plot, demonstrate options for customizing the title and axis, and apply different ggplot themes. | 2024-02-13 13:00:00 | Online | Any | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot: Customizations | ||
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Part Of: R Introductory Series 2024 CourseDescriptionIn this lesson, attendees will continue learning how to plot publishable figures with ggplot2. In this lesson, attendees will continue learning how to plot publishable figures with ggplot2. RegisterOrganizerBTEPWhenTue, Feb 13, 2024 - 1:00 pm - 2:00 pmWhereOnline |
In this lesson, attendees will continue learning how to plot publishable figures with ggplot2. | 2024-02-13 13:00:00 | Online | Any | R programming | Data visualization,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to Data Visualization with R (Part 2) |
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DescriptionPython is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of ...Read More Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. DetailsOrganizerNIH LibraryWhenWed, Feb 14, 2024 - 11:00 am - 12:00 pmWhereOnline |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. | 2024-02-14 11:00:00 | Online | Any | Programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
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DescriptionExplore the intricate world of pathway analysis with Reactome. Reactome is an open-source, manually-curated and peer-reviewed biological pathway knowledgebase, free and open to the public. We will provide you an overview of the contents of Reactome and show you how you can leverage the suite of Reactome analysis tools, including advanced tools such as ReactomeIDG, a tool for uncovering "dark proteins," revealing potential drug targets and informing perturbation studies, and <...Read More Explore the intricate world of pathway analysis with Reactome. Reactome is an open-source, manually-curated and peer-reviewed biological pathway knowledgebase, free and open to the public. We will provide you an overview of the contents of Reactome and show you how you can leverage the suite of Reactome analysis tools, including advanced tools such as ReactomeIDG, a tool for uncovering "dark proteins," revealing potential drug targets and informing perturbation studies, and ReactomeGSA, a multi-omic, mult-species comparative pathway analysis tool. Reactome is accessible to both entry-level and intermediate computational biologists for unraveling cellular pathways and discovering novel avenues for research. RegisterOrganizerBTEPWhenWed, Feb 14, 2024 - 11:00 am - 12:00 pmWhereOnline |
Explore the intricate world of pathway analysis with Reactome. Reactome is an open-source, manually-curated and peer-reviewed biological pathway knowledgebase, free and open to the public. We will provide you an overview of the contents of Reactome and show you how you can leverage the suite of Reactome analysis tools, including advanced tools such as ReactomeIDG, a tool for uncovering "dark proteins," revealing potential drug targets and informing perturbation studies, and ReactomeGSA, a multi-omic, mult-species comparative pathway analysis tool. Reactome is accessible to both entry-level and intermediate computational biologists for unraveling cellular pathways and discovering novel avenues for research. | 2024-02-14 11:00:00 | Online | Any | Bioinformatics Software,Pathway Analysis | Online | Nancy Li Ph.D. (Reactome DB) | BTEP | 0 | Introduction to Pathway Analysis using the Reactome Pathway Knowledgebase | |
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DescriptionFor inquires send email to staff@hpc.nih.gov Meeting ID: 160 198 9146 Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from ...Read More For inquires send email to staff@hpc.nih.gov Meeting ID: 160 198 9146 Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users
DetailsOrganizerCCRWhenWed, Feb 14, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Meeting ID: 160 198 9146Passcode: 083637 Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2024-02-14 13:00:00 | Online | Any | Biowulf | Online | HPC Staff | CCR | 0 | Zoom-In Consult for Biowulf Users | |
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DescriptionThis one-hour introductory class provides researchers with an overview of online resources for locating research datasets, data repositories, and data publications for data sharing and re-use. Participants will learn search strategies for locating datasets through federated data search portals and generalist data repositories, including directories for locating discipline-specific and institutional data repositories. An overview of key issues to consider when re-using datasets or when locating a data repository for sharing and preservation purposes will ...Read More This one-hour introductory class provides researchers with an overview of online resources for locating research datasets, data repositories, and data publications for data sharing and re-use. Participants will learn search strategies for locating datasets through federated data search portals and generalist data repositories, including directories for locating discipline-specific and institutional data repositories. An overview of key issues to consider when re-using datasets or when locating a data repository for sharing and preservation purposes will be discussed. DetailsOrganizerNIH LibraryWhenThu, Feb 15, 2024 - 11:00 am - 12:00 pmWhereOnline |
This one-hour introductory class provides researchers with an overview of online resources for locating research datasets, data repositories, and data publications for data sharing and re-use. Participants will learn search strategies for locating datasets through federated data search portals and generalist data repositories, including directories for locating discipline-specific and institutional data repositories. An overview of key issues to consider when re-using datasets or when locating a data repository for sharing and preservation purposes will be discussed. | 2024-02-15 11:00:00 | Online | Any | Data Sharing | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Resources for Finding and Sharing Research Data | |
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DescriptionThe Zoom link for the Educational Webinar will be sent to you via email on February 14, 2024. Join FAES for a dynamic and inspiring celebration of data science during International Love Data Week (Feb 12-16, 2024). Learn about the crucial role of data science and its expanding influence in the research arena. This 30-minute webinar will delve into the exciting world of data science in biomedical research through example projects that ...Read More The Zoom link for the Educational Webinar will be sent to you via email on February 14, 2024. Join FAES for a dynamic and inspiring celebration of data science during International Love Data Week (Feb 12-16, 2024). Learn about the crucial role of data science and its expanding influence in the research arena. This 30-minute webinar will delve into the exciting world of data science in biomedical research through example projects that are easily accessible to learners from any computational background. FAES bioinformatics faculty members, Dr. Yuan-Chiao Lu and Kiersten Campbell, will demonstrate the transformative impact of data science skills in biomedical research and provide essential resources to begin your data science adventure. Dr. Yuan-Chiao Lu (is a distinguished scientist in the academic field of injury biomechanics, computer-aided design, medical image processing, and data science and faculty at FAES where he teaches BIOF 475, MATH 215, MATH 216, and STAT 323. He earned his Ph.D. in Biomedical Engineering and Mechanics and has expertise in applied mathematics, statistics, biomechanics, and data science. Kiersten Campbell is a graduate student in the Computer Science & Informatics Ph.D. program at Emory University and faculty at FAES where she teaches BIOF 475. Her research interests center around developing new analysis methods and software tools for next-generation sequencing data to empower biomedical discoveries. NOTICE OF NONDISCRIMINATORY POLICY AS TO STUDENTS FAES admits students of any race, color, national and ethnic origin to all the rights, privileges, programs, and activities generally accorded or made available to students at the school. It does not discriminate on the basis of race, color, national and ethnic origin, sex, disability, or age in administration of its educational policies, admissions policies, scholarship programs, and other school-administered programs. DetailsOrganizerOD/ORSWhenThu, Feb 15, 2024 - 12:00 pm - 12:30 pmWhereOnline |
The Zoom link for the Educational Webinar will be sent to you via email on February 14, 2024. Join FAES for a dynamic and inspiring celebration of data science during International Love Data Week (Feb 12-16, 2024). Learn about the crucial role of data science and its expanding influence in the research arena. This 30-minute webinar will delve into the exciting world of data science in biomedical research through example projects that are easily accessible to learners from any computational background. FAES bioinformatics faculty members, Dr. Yuan-Chiao Lu and Kiersten Campbell, will demonstrate the transformative impact of data science skills in biomedical research and provide essential resources to begin your data science adventure. Dr. Yuan-Chiao Lu (is a distinguished scientist in the academic field of injury biomechanics, computer-aided design, medical image processing, and data science and faculty at FAES where he teaches BIOF 475, MATH 215, MATH 216, and STAT 323. He earned his Ph.D. in Biomedical Engineering and Mechanics and has expertise in applied mathematics, statistics, biomechanics, and data science. Kiersten Campbell is a graduate student in the Computer Science & Informatics Ph.D. program at Emory University and faculty at FAES where she teaches BIOF 475. Her research interests center around developing new analysis methods and software tools for next-generation sequencing data to empower biomedical discoveries. NOTICE OF NONDISCRIMINATORY POLICY AS TO STUDENTS FAES admits students of any race, color, national and ethnic origin to all the rights, privileges, programs, and activities generally accorded or made available to students at the school. It does not discriminate on the basis of race, color, national and ethnic origin, sex, disability, or age in administration of its educational policies, admissions policies, scholarship programs, and other school-administered programs. | 2024-02-15 12:00:00 | Online | Any | Data Science | Online | Yuan-Chiao Lu (FAES),Kiersten Campbell (FAES) | OD/ORS | 0 | FAES Educational Webinar: Getting Started With Data Science to Advance Your Biomedical Research | |
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Part Of: R Introductory Series 2024 CourseDescriptionThis lesson will be divided into two parts. Part 1 will introduce Bioconductor, an R package repository for the analysis of biological data. Part 2 will introduce RMarkdown and Quarto for report generation with R. This lesson will be divided into two parts. Part 1 will introduce Bioconductor, an R package repository for the analysis of biological data. Part 2 will introduce RMarkdown and Quarto for report generation with R. RegisterOrganizerBTEPWhenThu, Feb 15, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This lesson will be divided into two parts. Part 1 will introduce Bioconductor, an R package repository for the analysis of biological data. Part 2 will introduce RMarkdown and Quarto for report generation with R. | 2024-02-15 13:00:00 | Online | Any | R programming | Bioconductor,R programming,Report generation | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to Bioconductor and report generation with R |
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DescriptionDeep sequencing has emerged as the primary tool for transcriptome profiling in cancer research. Like other high-throughput profiling technologies, sequencing is susceptible to systematic non-biological artifacts stemming from inconsistent experimental handling. A critical initial step in sequencing data analysis is to “normalize” sequencing depth to enhance data comparability across samples. While numerous normalization methods have been proposed, there is no systematically superior method, and different methods may yield divergent analysis results. This underscores the ...Read More Deep sequencing has emerged as the primary tool for transcriptome profiling in cancer research. Like other high-throughput profiling technologies, sequencing is susceptible to systematic non-biological artifacts stemming from inconsistent experimental handling. A critical initial step in sequencing data analysis is to “normalize” sequencing depth to enhance data comparability across samples. While numerous normalization methods have been proposed, there is no systematically superior method, and different methods may yield divergent analysis results. This underscores the urgent need for a realistic and objective performance evaluation, particularly in the context of small RNA sequencing, along with a statistically principled approach to guide the method selection for a given dataset. To address these needs, we have developed (1) benchmark data and computational tools for the comprehensive evaluation of depth normalization methods in microRNA sequencing and (2) a data-driven and biology-motivated approach for the objective selection of a suitable method tailored to the dataset at hand. We assessed the performance of the latter approach using our benchmark data and applied it to data in the Cancer Genome Atlas. The evaluation tools and selection approach are implemented in R packages named PRECISION.seq and DANA, both of which are freely available for download on GitHub. DetailsOrganizerCBIITWhenFri, Feb 16, 2024 - 10:00 am - 11:00 amWhereOnline |
Deep sequencing has emerged as the primary tool for transcriptome profiling in cancer research. Like other high-throughput profiling technologies, sequencing is susceptible to systematic non-biological artifacts stemming from inconsistent experimental handling. A critical initial step in sequencing data analysis is to “normalize” sequencing depth to enhance data comparability across samples. While numerous normalization methods have been proposed, there is no systematically superior method, and different methods may yield divergent analysis results. This underscores the urgent need for a realistic and objective performance evaluation, particularly in the context of small RNA sequencing, along with a statistically principled approach to guide the method selection for a given dataset. To address these needs, we have developed (1) benchmark data and computational tools for the comprehensive evaluation of depth normalization methods in microRNA sequencing and (2) a data-driven and biology-motivated approach for the objective selection of a suitable method tailored to the dataset at hand. We assessed the performance of the latter approach using our benchmark data and applied it to data in the Cancer Genome Atlas. The evaluation tools and selection approach are implemented in R packages named PRECISION.seq and DANA, both of which are freely available for download on GitHub. | 2024-02-16 10:00:00 | Online | Any | Online | Li-Xuan Qin | CBIIT | 0 | Statistical Evaluation and Selection of Depth Normalization in Small RNA Sequencing | ||
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DescriptionThis one-hour training will provide detailed information and demonstrations on how to manage data in Excel. By the end of this course, the participants will recognize how to filter data by text, numbers, and date; how to sort data alphabetically and by color; how to remove duplicates; how to split and combine columns; and how to create customs lists. This is an introductory class for those who need to quickly learn basic ...Read More This one-hour training will provide detailed information and demonstrations on how to manage data in Excel. By the end of this course, the participants will recognize how to filter data by text, numbers, and date; how to sort data alphabetically and by color; how to remove duplicates; how to split and combine columns; and how to create customs lists. This is an introductory class for those who need to quickly learn basic Excel data management features and for those who are interested in a refresher. Basic knowledge of Excel is required. DetailsOrganizerNIH LibraryWhenFri, Feb 16, 2024 - 12:00 pm - 1:00 pmWhereOnline |
This one-hour training will provide detailed information and demonstrations on how to manage data in Excel. By the end of this course, the participants will recognize how to filter data by text, numbers, and date; how to sort data alphabetically and by color; how to remove duplicates; how to split and combine columns; and how to create customs lists. This is an introductory class for those who need to quickly learn basic Excel data management features and for those who are interested in a refresher. Basic knowledge of Excel is required. | 2024-02-16 12:00:00 | Online | Any | Data Management | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Managing Data in Excel | |
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DescriptionDear colleagues,
Dear colleagues,
DetailsOrganizerBCBBWhenWed, Feb 21, 2024 - 9:30 am - 4:30 pmWhereBuilding 10 – Foundation for Advanced Education in the Sciences (FAES) Classrooms and Terrace |
Dear colleagues, The Bioinformatics and Computational Biosciences Branch (BCBB) at NIAID invites you to join us for in-person hands-on workshops that will explore biovisualization techniques. Developers of UCSF ChimeraX and Cytoscape will be on campus for Virtual Reality (VR) demos and in-person hands-on workshops. These will showcase the use of ChimeraX for visualizing and analyzing 3D medical imaging scans and 3D molecular structures, and Cytoscape for network visualization. These immersive experiences will be led by the experts from the University of California San Francisco (UCSF)’s Resource for Biocomputing, Visualization, and Informatics (RBVI). Visit our website for additional information about the workshops and our speakers. ALL DAY: Virtual Reality Demonstrations • When: 9:30 AM – 4 PM• Where: FAES Terrace – 1C168• Drop by to explore the molecular structures and medical imaging data in virtual reality with ChimeraX. Hosted by the NIAID Biovisualization Lab. Visualizing Atomic Models with ChimeraX • When: 1:00 PM – 3:00 PM• Where: FAES Classroom 5 - B1C210• This hands-on session will introduce visualizing atomic models, X-ray maps, cryoEM maps, AlphaFold models, and NMR constraints using ChimeraX 1.7. Developed by UCSF, ChimeraX is an open-source next-generation molecular visualization program. This course is suitable for anyone who is new to using the UCSF ChimeraX application. Experienced users of ChimeraX (and Chimera) may benefit from instruction on the newest features in ChimeraX. Visualizing and Segmenting 3D Medical Imaging Scans • When: 1:30 PM – 3:00 PM• Where: FAES Classrooms 1 & 2• In this tutorial, we’ll learn how to use UCSF ChimeraX to look at a variety of medical image formats. Over the past few years, ChimeraX has been increasingly integrating medical image analysis alongside its traditional use case as a molecular visualization tool. We’ll go over those advancements in our program, first by getting our bearings loading publicly accessible anonymized images from the Cancer Imaging Archive. Using that data, we’ll explore different ways to customize the look of the data in ChimeraX. Finally, we’ll use newly developed tools for visualization and segmentation including interactive segmentation in virtual reality. Network Visualization with Cytoscape • When: 3:00 PM – 4:30 PM• Where: FAES Classroom 5 - B1C210• In this tutorial, we will explore the network analysis and visualization tool Cytoscape. Cytoscape is an excellent tool to create effective network figures, integrate public network and pathway sources (e.g. STRING, NDex, IntAct, Reactome, Wikipathways) with your own proteomic or transcriptomic data. During the tutorial, we'll talk about how to load data from public sources, integrate data, and some tips and tricks for visualizing your networks. This will be a hands-on tutorial, so please bring your laptop with Cytoscape 3.10.1 loaded. To RSVP for the workshops, please fill out this form. Space in these workshops is limited so we encourage you to sign up now. | 2024-02-21 09:30:00 | Building 10 – Foundation for Advanced Education in the Sciences (FAES) Classrooms and Terrace | Any | Imaging,Virtual Reality | In-Person | Tom Goddard (UC San Francisco),Zach Pearson (UCSF),John \'Scooter\" Morris (UCSF) | BCBB | 0 | EXCLUSIVE BIOVISUALIZATION WORKSHOPS AND VIRTUAL REALITY DEMOS | |
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Descriptionhttps://cap-lab.bio(link is external) https://(link is external)qiime2.org(link is external) The QIIME platform, including QIIME 1 and QIIME 2 (https://qiime2.org(link is external)), has been extensively applied in microbiome research, repeatedly making analyses that were once challenging or impossible into routine tasks. While QIIME began as a marker gene (e.g., 16S, ITS, ...) analysis platform, microbiome research is rapidly transitioning toward multi-omics data, introducing many new informatics challenges. With funding from NCI’s Informatics Technology for Cancer Research program (https://itcr.cancer.gov/), QIIME 2 is transitioning to become a microbiome multi-omics data science platform. In this talk I will introduce QIIME 2, including our current work on expanding beyond marker gene analysis, including the new QIIME 2 Shotgun Metagenomics Distribution. I will also discuss QIIME 2’s retrospective data provenance tracking system, including our recently introduced Provenance Replay functionality (https://doi.org/10.1371/journal.pcbi.1011676(link is external)), which enables you to automatically generated new code from your existing QIIME 2 results to reproduce and "replay" analyses that you or others ran. I will describe the ways that QIIME 2 can be used, including through the Galaxy graphical user interface (https://cancer.usegalaxy.org(link is external)), its command line interface, and its Python 3 API. Full support for using QIIME 2 through these different interface types ensures that using QIIME 2 will be accessible and convenient for you, regardless of your computational background. Finally, I’ll present on QIIME 2’s extensive educational and technical support resources (https://doi.org/10.1371/journal.pcbi.1009056(link is external)) so you can start learning and applying QIIME 2 to advance your work as quickly as possible. DetailsOrganizerCBIITWhenWed, Feb 21, 2024 - 10:00 am - 11:00 amWhereOnline |
https://cap-lab.bio(link is external) https://(link is external)qiime2.org(link is external) The QIIME platform, including QIIME 1 and QIIME 2 (https://qiime2.org(link is external)), has been extensively applied in microbiome research, repeatedly making analyses that were once challenging or impossible into routine tasks. While QIIME began as a marker gene (e.g., 16S, ITS, ...) analysis platform, microbiome research is rapidly transitioning toward multi-omics data, introducing many new informatics challenges. With funding from NCI’s Informatics Technology for Cancer Research program (https://itcr.cancer.gov/), QIIME 2 is transitioning to become a microbiome multi-omics data science platform. In this talk I will introduce QIIME 2, including our current work on expanding beyond marker gene analysis, including the new QIIME 2 Shotgun Metagenomics Distribution. I will also discuss QIIME 2’s retrospective data provenance tracking system, including our recently introduced Provenance Replay functionality (https://doi.org/10.1371/journal.pcbi.1011676(link is external)), which enables you to automatically generated new code from your existing QIIME 2 results to reproduce and "replay" analyses that you or others ran. I will describe the ways that QIIME 2 can be used, including through the Galaxy graphical user interface (https://cancer.usegalaxy.org(link is external)), its command line interface, and its Python 3 API. Full support for using QIIME 2 through these different interface types ensures that using QIIME 2 will be accessible and convenient for you, regardless of your computational background. Finally, I’ll present on QIIME 2’s extensive educational and technical support resources (https://doi.org/10.1371/journal.pcbi.1009056(link is external)) so you can start learning and applying QIIME 2 to advance your work as quickly as possible. | 2024-02-21 10:00:00 | Online | Any | Microbiome | Online | CBIIT | 0 | Toward fully reproducible microbiome multi-omics bioinformatics with QIIME 2 | ||
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DescriptionScience and Technology Group: Work in Progress Seminar Series Meeting ID: 287 867 275 591 Science and Technology Group: Work in Progress Seminar Series Meeting ID: 287 867 275 591 DetailsOrganizerScience and Technology Group (STG)WhenWed, Feb 21, 2024 - 11:00 am - 12:00 pmWhereOnline |
Science and Technology Group: Work in Progress Seminar Series Meeting ID: 287 867 275 591 Passcode: wrbFXg | 2024-02-21 11:00:00 | Online | Any | Sequencing | Online | Bao Tran (CRTP) | Science and Technology Group (STG) | 0 | Second-generation vs. Third-Generation Sequencing Technology: The Last Argument of Kings? | |
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Coding Club Seminar SeriesDescriptionVersioning enables researchers to track changes in coding projects. This Coding Club session will introduce the versioning tool GitHub (https://github.com). At the end of this class, participants will
Versioning enables researchers to track changes in coding projects. This Coding Club session will introduce the versioning tool GitHub (https://github.com). At the end of this class, participants will
Installation of software is not needed to participate. This class will be followed by one addressing versioning using Git on February 28, 2024 from 11 AM to 12 PM. See https://bioinformatics.ccr.cancer.gov/btep/classes/version-control-using-git for information and registration. Meeting information: Meeting link: Join by video system Join by phone Global call-in options RegisterWhenWed, Feb 21, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Versioning enables researchers to track changes in coding projects. This Coding Club session will introduce the versioning tool GitHub (https://github.com). At the end of this class, participants will Become familiar with options available for using GitHub at NCI Be able to use GitHub to Create coding projects Track changes in code Revert to a previous version of code Collaborate with the project team Installation of software is not needed to participate. This class will be followed by one addressing versioning using Git on February 28, 2024 from 11 AM to 12 PM. See https://bioinformatics.ccr.cancer.gov/btep/classes/version-control-using-git for information and registration. Meeting information: Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=meadb08ed71552393fe486073a7a7ffc5 Meeting number:2308 646 3414Password:VRjdm9A5y$4 Join by video systemDial 23086463414@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2308 646 3414 Global call-in optionshttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/e453fc36a706405db9991abd0f97f7bb# | 2024-02-21 11:00:00 | Online Webinar | Beginner | Data Science,Version Control | Coding,Data Science,Version Control | Online | Joe Wu (BTEP),Nadim Rizk (CBIIT) | 1 | Version control using Github | |
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DescriptionThe remarkable advances of artificial intelligence (AI) technology are revolutionizing established approaches to the acquisition, interpretation, and analysis of biomedical imaging data. Development, validation, and continuous refinement of AI tools requires easy access to large high-quality annotated datasets, which are both representative and diverse. The NCI Imaging Data Commons (IDC) hosts large and diverse publicly available cancer image data collections. The remarkable advances of artificial intelligence (AI) technology are revolutionizing established approaches to the acquisition, interpretation, and analysis of biomedical imaging data. Development, validation, and continuous refinement of AI tools requires easy access to large high-quality annotated datasets, which are both representative and diverse. The NCI Imaging Data Commons (IDC) hosts large and diverse publicly available cancer image data collections. DetailsOrganizerCBIITWhenWed, Feb 21, 2024 - 11:00 am - 12:00 pmWhereOnline |
The remarkable advances of artificial intelligence (AI) technology are revolutionizing established approaches to the acquisition, interpretation, and analysis of biomedical imaging data. Development, validation, and continuous refinement of AI tools requires easy access to large high-quality annotated datasets, which are both representative and diverse. The NCI Imaging Data Commons (IDC) hosts large and diverse publicly available cancer image data collections. Andrey Fedorov, Ph.D., is a researcher at Brigham and Women's Hospital (BWH) and Associate Professor in Radiology at Harvard Medical School. | 2024-02-21 11:00:00 | Online | Any | AI,Imaging | Online | Andrey Fedorov (Brigham and Women\'s Hospital Harvard Medical School) | CBIIT | 0 | NCI Imaging Data Commons: Toward Transparency, Reproducibility, and Scalability in Imaging Artificial Intelligence | |
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DescriptionDuring this 90-minute training session, attendees will be introduced to the interface of MATLAB, develop a solid understanding of Artificial Intelligence (AI) fundamentals, and discover additional resources and support tailored for beginners. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. During this 90-minute training session, attendees will be introduced to the interface of MATLAB, develop a solid understanding of Artificial Intelligence (AI) fundamentals, and discover additional resources and support tailored for beginners. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenThu, Feb 22, 2024 - 10:00 am - 11:30 amWhereOnline |
During this 90-minute training session, attendees will be introduced to the interface of MATLAB, develop a solid understanding of Artificial Intelligence (AI) fundamentals, and discover additional resources and support tailored for beginners. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. | 2024-02-22 10:00:00 | Online | Any | AI,Bioinformatics Software | Online | Mathworks | NIH Library | 0 | Data Science and AI: AI for Beginners with MATLAB | |
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DescriptionJoin us for an introduction to bioinformatics resources for NCI CCR researchers. Featuring:
Join us for an introduction to bioinformatics resources for NCI CCR researchers. Featuring:
RegisterOrganizerBTEPWhenThu, Feb 22, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Join us for an introduction to bioinformatics resources for NCI CCR researchers. Featuring: NIH Bioinformatics Calendar Programming Classes (R, Unix, Python) Class documentation Website resources working on high performance compute cluster (Biowulf/Helix) Next-Gen Seq Analysis tools (Partek,Qlucore, Qiagen) available workflows Cloud resources for cancer research NCI cores NCI and CCR specific resources NIH-wide resources | 2024-02-22 13:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software | Online | Amy Stonelake (BTEP) | BTEP | 0 | Bioinformatics Resources for NCI CCR Scientists | |
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DescriptionRegister for this presentation on recent efforts in developing methodologies and software tailored for important clinical natural language processing (NLP) tasks such as information extraction and question answering.
Advancements in large language models (LLMs) has transformed the landscape of NLP. Clinical NLP, with its objective of comprehending medical narratives such as clinical notes within ...Read More Register for this presentation on recent efforts in developing methodologies and software tailored for important clinical natural language processing (NLP) tasks such as information extraction and question answering.
Advancements in large language models (LLMs) has transformed the landscape of NLP. Clinical NLP, with its objective of comprehending medical narratives such as clinical notes within electronic health records, has also benefited from the integration of LLMs.
We will explore the utilization of both open-source and closed-source LLMs, including LLaMA and ChatGPT, in our work. Additionally, we will delve into the valuable insights gained from using LLM-based approaches in clinical applications. DetailsOrganizerCBIITWhenFri, Feb 23, 2024 - 10:00 am - 11:00 amWhereOnline |
Register for this presentation on recent efforts in developing methodologies and software tailored for important clinical natural language processing (NLP) tasks such as information extraction and question answering. Advancements in large language models (LLMs) has transformed the landscape of NLP. Clinical NLP, with its objective of comprehending medical narratives such as clinical notes within electronic health records, has also benefited from the integration of LLMs. We will explore the utilization of both open-source and closed-source LLMs, including LLaMA and ChatGPT, in our work. Additionally, we will delve into the valuable insights gained from using LLM-based approaches in clinical applications. | 2024-02-23 10:00:00 | Online | Any | AI | Online | Hua Xu (American College of Medical Informatics Fellow) | CBIIT | 0 | Clinical Natural Language Processing in the Era of Large Language Models | |
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DescriptionThis session will cover what are containers, and why and how to use them in your Bioinformatics workflows. We will review best practices, basic commands, and useful resources. This session is geared towards beginners. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco Read More This session will cover what are containers, and why and how to use them in your Bioinformatics workflows. We will review best practices, basic commands, and useful resources. This session is geared towards beginners. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco natasha.pacheco@nih.gov DetailsOrganizerCCRWhenTue, Feb 27, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room Frederick |
This session will cover what are containers, and why and how to use them in your Bioinformatics workflows. We will review best practices, basic commands, and useful resources. This session is geared towards beginners. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco natasha.pacheco@nih.gov | 2024-02-27 12:00:00 | Building 549 Executive Board Room Frederick | Any | Bioinformatics | Hybrid | Vishal Koparde (CCBR) | CCR | 0 | Using Containers in Bioinformatics Analyses | |
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DescriptionIn this seminar, you'll learn about the somatic variant caller named Lancet. This accurate, open-source tool leverages local assembly and joint analysis of tumor-normal, paired, high-throughput sequence data. New York Genome Center’s Dr. Giuseppe Narzisi will provide an overview of:
In this seminar, you'll learn about the somatic variant caller named Lancet. This accurate, open-source tool leverages local assembly and joint analysis of tumor-normal, paired, high-throughput sequence data. New York Genome Center’s Dr. Giuseppe Narzisi will provide an overview of:
Dr. Narzisi will also give a historical review of alignment-based methods. He’ll highlight limitations and the need for new genome graph approaches. DetailsOrganizerCBIITWhenWed, Feb 28, 2024 - 10:00 am - 11:00 amWhereOnline |
In this seminar, you'll learn about the somatic variant caller named Lancet. This accurate, open-source tool leverages local assembly and joint analysis of tumor-normal, paired, high-throughput sequence data. New York Genome Center’s Dr. Giuseppe Narzisi will provide an overview of: the methodology behind the tool. how it’s benchmarking against similar tools. improvements in computational performance. recent integrations with third party tools to visually inspect the somatic variants in graph space. Dr. Narzisi will also give a historical review of alignment-based methods. He’ll highlight limitations and the need for new genome graph approaches. | 2024-02-28 10:00:00 | Online | Any | Variant Analysis | Online | Giuseppe Narzisi (New York Genome Center) | CBIIT | 0 | Somatic Variant Analysis and Detection Using Localized Genome Graphs | |
1402 |
Coding Club Seminar SeriesDescriptionVersioning enables researchers to track changes in coding projects. This Coding Club session will introduce Git (https://git-scm.com), an open-source software used to perform versioning locally and enables users to upload code to web repositories such as GitHub. At the end of this class, participants will
Versioning enables researchers to track changes in coding projects. This Coding Club session will introduce Git (https://git-scm.com), an open-source software used to perform versioning locally and enables users to upload code to web repositories such as GitHub. At the end of this class, participants will
Installation of software is not needed to participate. Meeting information: Meeting link: Join by video system Join by phone Global call-in options RegisterWhenWed, Feb 28, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Versioning enables researchers to track changes in coding projects. This Coding Club session will introduce Git (https://git-scm.com), an open-source software used to perform versioning locally and enables users to upload code to web repositories such as GitHub. At the end of this class, participants will Be able to describe Git Be able to use Git to Create coding projects Save and track changes to code Upload code to GitHub Revert to/view previous versions of code Perform basic collaboration tasks Installation of software is not needed to participate. Meeting information: Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=meadb08ed71552393fe486073a7a7ffc5 Meeting number:2308 646 3414Password:VRjdm9A5y$4 Join by video systemDial 23086463414@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2308 646 3414 Global call-in optionshttps://cbiit.webex.com/webappng/sites/cbiit/meeting/info/e453fc36a706405db9991abd0f97f7bb# | 2024-02-28 11:00:00 | Online Webinar | Beginner | ,Data Science,Version Control | Data Science,Version Control,code | Online | Joe Wu (BTEP) | 1 | Version control using Git (Cancelled) | |
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DescriptionThis class provides an overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Upon completion of this class, participants should be able to define bivariate data, create a scatterplot using ggplot, define linear regression, and demonstrate how to perform a simple linear regression in R. You must have taken Data Visualization in R: ggplot ...Read More This class provides an overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Upon completion of this class, participants should be able to define bivariate data, create a scatterplot using ggplot, define linear regression, and demonstrate how to perform a simple linear regression in R. You must have taken Data Visualization in R: ggplot class to be successful in this class. DetailsOrganizerNIH LibraryWhenThu, Feb 29, 2024 - 1:00 pm - 2:30 pmWhereOnline |
This class provides an overview of the methods used to visualize the association among two or more quantitative variables. This class will focus on scatterplots, scatterplot matrix, and visualizing paired data. Upon completion of this class, participants should be able to define bivariate data, create a scatterplot using ggplot, define linear regression, and demonstrate how to perform a simple linear regression in R. You must have taken Data Visualization in R: ggplot class to be successful in this class. | 2024-02-29 13:00:00 | Online | Any | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot: Visualizing Relationships and Linear Regression | ||
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AI in Biomedical Research @ NIH Seminar SeriesDescriptionArtificial Intelligence (AI) is becoming increasingly ubiquitous in biomedical research, enabled by large datasets, new algorithms, and hardware improvements. In this session, Dr. Brian Ondov will introduce the basic principles of AI and describe how its various forms can help researchers in different ways, including image classification, sequence-based prediction, generative models, and language understanding. Alternative Meeting Information: Meeting number: 2317 349 4415 Password: Sfz2B5PNH*5 Join by video system Dial 23173494415@cbiit.webex.com You can ...Read MoreArtificial Intelligence (AI) is becoming increasingly ubiquitous in biomedical research, enabled by large datasets, new algorithms, and hardware improvements. In this session, Dr. Brian Ondov will introduce the basic principles of AI and describe how its various forms can help researchers in different ways, including image classification, sequence-based prediction, generative models, and language understanding. Alternative Meeting Information: Meeting number: 2317 349 4415 Password: Sfz2B5PNH*5 Join by video system Dial 23173494415@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2317 349 4415RegisterOrganizerBTEPWhenThu, Feb 29, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Artificial Intelligence (AI) is becoming increasingly ubiquitous in biomedical research, enabled by large datasets, new algorithms, and hardware improvements. In this session, Dr. Brian Ondov will introduce the basic principles of AI and describe how its various forms can help researchers in different ways, including image classification, sequence-based prediction, generative models, and language understanding. Alternative Meeting Information: Meeting number: 2317 349 4415 Password: Sfz2B5PNH*5 Join by video system Dial 23173494415@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2317 349 4415 | 2024-02-29 13:00:00 | Online Webinar | Any | AI,Biomedical Research | Online | Brian Ondov Ph.D. (NLM) | BTEP | 1 | Artificial Intelligence in the Biomedical Sciences | |
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DescriptionThe Consortium of Metabolomics Studies (COMETS) is a partnership of researchers from around the globe that promotes collaboration among prospective cohort studies that follow participants for a range of outcomes and perform metabolomic profiling of individuals. At this TEAG forum, Dr. Kelly Crotty will describe the framework for collaboration created by COMETS, the infrastructure built to support data analysis for large-scale collaborations, and the ongoing research projects pursued by COMETS members. The Consortium of Metabolomics Studies (COMETS) is a partnership of researchers from around the globe that promotes collaboration among prospective cohort studies that follow participants for a range of outcomes and perform metabolomic profiling of individuals. At this TEAG forum, Dr. Kelly Crotty will describe the framework for collaboration created by COMETS, the infrastructure built to support data analysis for large-scale collaborations, and the ongoing research projects pursued by COMETS members. Meeting number: 2306 723 2372
DetailsOrganizerTrans-NCI Extramural Awareness Group (TEAG) ForumWhenThu, Feb 29, 2024 - 1:00 pm - 2:00 pmWhereOnline |
The Consortium of Metabolomics Studies (COMETS) is a partnership of researchers from around the globe that promotes collaboration among prospective cohort studies that follow participants for a range of outcomes and perform metabolomic profiling of individuals. At this TEAG forum, Dr. Kelly Crotty will describe the framework for collaboration created by COMETS, the infrastructure built to support data analysis for large-scale collaborations, and the ongoing research projects pursued by COMETS members.If you have any questions regarding the session, please contact Dr. Kelly Crotty. Meeting number: 2306 723 2372Password: Teag_2024Join by phone: dial 1-650-479-3207 | 2024-02-29 13:00:00 | Online | Any | Metabolomics | Online | Kelly Crotty (NCI) | Trans-NCI Extramural Awareness Group (TEAG) Forum | 0 | TEAG Forum: Consortium of Metabolomics Studies (COMETS) | |
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DescriptionJens Rittscher is Professor of Engineering Science at the University of Oxford with his appointment held jointly between the Institute of Biomedical Engineering and the Nuffield Department of Medicine. He is a group leader at the Big Data Institute and is affiliated with the Ludwig Institute of Cancer Research and the Wellcome Centre as an adjunct member. Previously, he was a senior research scientist and manager at GE Global Research (Niskyauna, NY, USA). His ...Read More Jens Rittscher is Professor of Engineering Science at the University of Oxford with his appointment held jointly between the Institute of Biomedical Engineering and the Nuffield Department of Medicine. He is a group leader at the Big Data Institute and is affiliated with the Ludwig Institute of Cancer Research and the Wellcome Centre as an adjunct member. Previously, he was a senior research scientist and manager at GE Global Research (Niskyauna, NY, USA). His research interests lie in enabling biomedical imaging through the development of new algorithms and novel computational platforms, with a current focus to improve mechanistic understanding of cancer and patient care through quantitative analysis of image data. He is a co-director of the Oxford EPSRC Centre for Doctoral Training in Health Data Science. Presently, he serves on the executive committee of the Medical Image Analysis and the editorial board of Biological Imaging. In 2019 he co-founded the Oxford University Spinout company Ground Truth Labs. CIL Host: Dave Wink (wink@mail.nih.gov), 301-846-7182
DetailsOrganizerCCRWhenFri, Mar 01, 2024 - 9:00 am - 10:00 amWhereBuilding 549 Auditorium (In-person attendance encouraged) |
Jens Rittscher is Professor of Engineering Science at the University of Oxford with his appointment held jointly between the Institute of Biomedical Engineering and the Nuffield Department of Medicine. He is a group leader at the Big Data Institute and is affiliated with the Ludwig Institute of Cancer Research and the Wellcome Centre as an adjunct member. Previously, he was a senior research scientist and manager at GE Global Research (Niskyauna, NY, USA). His research interests lie in enabling biomedical imaging through the development of new algorithms and novel computational platforms, with a current focus to improve mechanistic understanding of cancer and patient care through quantitative analysis of image data. He is a co-director of the Oxford EPSRC Centre for Doctoral Training in Health Data Science. Presently, he serves on the executive committee of the Medical Image Analysis and the editorial board of Biological Imaging. In 2019 he co-founded the Oxford University Spinout company Ground Truth Labs. If unable to join the seminar in person:Join from the meeting link https://cbiit.webex.com/cbiit/j.php?MTID=me673d4e711a0098f9fcad816369a48aa Join by meeting number Meeting number (access code): 2308 726 1406 Meeting password: CILab@549aud! Join from a video system or applicationDial 23087261406@cbiit.webex.comYou can also dial 173.243.2.68 and enter the meeting number. CIL Host: Dave Wink (wink@mail.nih.gov), 301-846-7182For assistance, please contact Valarie Porter (valarie.porter@nih.gov) | 2024-03-01 09:00:00 | Building 549 Auditorium (In-person attendance encouraged) | Any | AI | Hybrid | Jens Rittscher (Harris Manchester College / University of Oxford) | CCR | 0 | Beyond Genomics - AI as an enabler for next generation pathology | |
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DescriptionThe NCI Cancer Imaging Program presents a new monthly webinar series highlighting advancements in our imaging community. Please join us for our next lecture in the series Dr. McNally earned her Ph.D. in veterinary medicine from Louisiana State University, followed by a postdoctoral training at the University of Alabama in Birmingham. Dr. McNally is currently Stephenson chair of cancer imaging, program leader of cancer therapeutics, and professor of surgery at the ...Read More The NCI Cancer Imaging Program presents a new monthly webinar series highlighting advancements in our imaging community. Please join us for our next lecture in the series Dr. McNally earned her Ph.D. in veterinary medicine from Louisiana State University, followed by a postdoctoral training at the University of Alabama in Birmingham. Dr. McNally is currently Stephenson chair of cancer imaging, program leader of cancer therapeutics, and professor of surgery at the University of Oklahoma Health Science Center. Her research focuses on the development of new imaging agents, nanodrug delivery systems, and optoacoustic imaging to improve the detection and treatment of cancer. DetailsOrganizerNCIWhenMon, Mar 04, 2024 - 1:00 pm - 2:00 pmWhereOnline |
The NCI Cancer Imaging Program presents a new monthly webinar series highlighting advancements in our imaging community. Please join us for our next lecture in the series Dr. McNally earned her Ph.D. in veterinary medicine from Louisiana State University, followed by a postdoctoral training at the University of Alabama in Birmingham. Dr. McNally is currently Stephenson chair of cancer imaging, program leader of cancer therapeutics, and professor of surgery at the University of Oklahoma Health Science Center. Her research focuses on the development of new imaging agents, nanodrug delivery systems, and optoacoustic imaging to improve the detection and treatment of cancer.For more information regarding this NCI imaging community webinar, please contact Dr. J. Manuel Perez. | 2024-03-04 13:00:00 | Online | Any | Imaging | Online | Lacey McNally (University of Oklahoma College of Medicine) | NCI | 0 | Tumor-Targeted Contrast Agents for Optoacoustic Imaging | |
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DescriptionThis class is designed for those who want to extend the basics of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this class you will learn about the similarities and differences between R-markdown and Quarto. You will also learn how to use Quarto ...Read More This class is designed for those who want to extend the basics of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this class you will learn about the similarities and differences between R-markdown and Quarto. You will also learn how to use Quarto to render documents in multiple formats, with a focus on scholarly publishing. Upon completion of this class participants will be able to distinguish between R-markdown and Quarto, identify publishing workflows using markdown, demonstrate the differences between the visual and source editors, create basic markdown elements, learn how to create and run code-blocks, and render a markdown document in multiple formats. Individuals who need reasonable accommodations to participate should contact the NIH Interpreting Office directly at nih@ainterpreting.com, or the NIH Library Information Desk at 301-496-1080. Requests should be made at least five business days in advance in order to ensure availability. DetailsOrganizerNIH LibraryWhenMon, Mar 04, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This class is designed for those who want to extend the basics of R Markdown and apply those skills in Quarto. Quarto is an open-source scientific and technical publishing system that offers multilingual programming language support to create dynamic and static documents, books, presentations, blogs, and other online resources. In this class you will learn about the similarities and differences between R-markdown and Quarto. You will also learn how to use Quarto to render documents in multiple formats, with a focus on scholarly publishing. Upon completion of this class participants will be able to distinguish between R-markdown and Quarto, identify publishing workflows using markdown, demonstrate the differences between the visual and source editors, create basic markdown elements, learn how to create and run code-blocks, and render a markdown document in multiple formats. Individuals who need reasonable accommodations to participate should contact the NIH Interpreting Office directly at nih@ainterpreting.com, or the NIH Library Information Desk at 301-496-1080. Requests should be made at least five business days in advance in order to ensure availability. | 2024-03-04 13:00:00 | Online | Any | Quarto | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Introduction to Quarto for Scholarly Publishing | |
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DescriptionThis in-person workshop will show participants how to identify cell types based on statistics, visualization, and canonical markers. One Peripheral blood mononuclear cells (PBMCs) sample will be used to illustrate a basic Single Cell RNA-Seq analysis pipeline. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis pipelines, Partek Flow enables ...Read More This in-person workshop will show participants how to identify cell types based on statistics, visualization, and canonical markers. One Peripheral blood mononuclear cells (PBMCs) sample will be used to illustrate a basic Single Cell RNA-Seq analysis pipeline. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis pipelines, Partek Flow enables users to carry out routine NGS data analysis using dozens of popular algorithms without writing codes or running command lines tools. Attendees will need to have taken the Partek Flow Basic Components class before registering or be comfortable with Partek Flow. By the end of this class, attendees will be able to demonstrate how to access Partek Flow from the NIH Library, discuss the Quality Control (QC) and Quality Assurance (QA) tools, identify pre- and post-alignment tools, describe options for quantification and normalization, and perform pathway analysis and visualization. Note on Technology Registrants will receive an email with information and instructions to install and verify access to Partek Flow before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only.
DetailsOrganizerNIH LibraryWhenTue, Mar 05, 2024 - 10:00 am - 12:00 pmWhereNIH Library Training Room Building 10 Clinical Center South Entrance |
This in-person workshop will show participants how to identify cell types based on statistics, visualization, and canonical markers. One Peripheral blood mononuclear cells (PBMCs) sample will be used to illustrate a basic Single Cell RNA-Seq analysis pipeline. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis pipelines, Partek Flow enables users to carry out routine NGS data analysis using dozens of popular algorithms without writing codes or running command lines tools. Attendees will need to have taken the Partek Flow Basic Components class before registering or be comfortable with Partek Flow. By the end of this class, attendees will be able to demonstrate how to access Partek Flow from the NIH Library, discuss the Quality Control (QC) and Quality Assurance (QA) tools, identify pre- and post-alignment tools, describe options for quantification and normalization, and perform pathway analysis and visualization. Note on TechnologyParticipants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to Partek Flow before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. | 2024-03-05 10:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Single Cell RNA-Seq | In-Person | Partek | NIH Library | 0 | NIH Library Workshop: Single Cell RNA-Seq Analysis & Visualization in Partek Flow | |
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DescriptionThis in-person, hands-on training will introduce participants to single cell RNA sequencing analysis using Partek Flow, a point-and-click software for analyzing high dimensional multi-omics sequencing data. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf. This enables investigators to take advantage of the compute power offered by HPC while using a graphical user interface ...Read More This in-person, hands-on training will introduce participants to single cell RNA sequencing analysis using Partek Flow, a point-and-click software for analyzing high dimensional multi-omics sequencing data. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf. This enables investigators to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. At the end of this class, participants will know how to import single cell data to their projects and perform cell type classification, obtain differentially expressed genes, identify molecular pathways as well as create visualizations such as PCA, UMAP, and t-SNE. Skills learn in this class can be applied to analysis of other high throughput sequencing types using Partek Flow. Partek will provide temporary/training access to Partek Flow, so bring a laptop to follow along! NOTE: This is an in-person class only and takes place in NIH Building 35 (John Edward Porter Neuroscience Research Center) Room 620/630. There is no option to attend virtually, and this class will not be recorded. RegisterOrganizerBTEPWhenTue, Mar 05, 2024 - 2:00 pm - 4:00 pmWhereNIH Building 35 Room 620/630 |
This in-person, hands-on training will introduce participants to single cell RNA sequencing analysis using Partek Flow, a point-and-click software for analyzing high dimensional multi-omics sequencing data. At NIH, Partek Flow is hosted on the Biowulf high performance computing cluster (HPC). Researchers interact with the software through a web browser using a URL supplied by Biowulf. This enables investigators to take advantage of the compute power offered by HPC while using a graphical user interface to construct a sequencing data analysis workflow. At the end of this class, participants will know how to import single cell data to their projects and perform cell type classification, obtain differentially expressed genes, identify molecular pathways as well as create visualizations such as PCA, UMAP, and t-SNE. Skills learn in this class can be applied to analysis of other high throughput sequencing types using Partek Flow. Partek will provide temporary/training access to Partek Flow, so bring a laptop to follow along! NOTE: This is an in-person class only and takes place in NIH Building 35 (John Edward Porter Neuroscience Research Center) Room 620/630. There is no option to attend virtually, and this class will not be recorded. | 2024-03-05 14:00:00 | NIH Building 35 Room 620/630 | Any | Bioinformatics,Bioinformatics Software,Single Cell RNA-Seq | Bioinformatics,Bioinformatics Software,Single Cell RNA-seq | In-Person | Joe Wu (BTEP),Xiaowen Wang (Partek) | BTEP | 0 | Single cell RNA sequencing analysis with Partek Flow: in-person training |
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DescriptionThe NCI Cancer Diagnosis Program in the Division of Cancer Treatment and Diagnosis is hosting a workshop, “Digital Pathology Imaging (DPI) in Cancer Clinical Trials and Research.” This workshop will focus on the expanding role of DPI in translational cancer research, biomarker studies, clinical trials, and pharmaceutical development. The primary objectives are to understand the specific needs of investigators and biospecimen banks for DPI and to successfully integrate DPI into cancer clinical ...Read More The NCI Cancer Diagnosis Program in the Division of Cancer Treatment and Diagnosis is hosting a workshop, “Digital Pathology Imaging (DPI) in Cancer Clinical Trials and Research.” This workshop will focus on the expanding role of DPI in translational cancer research, biomarker studies, clinical trials, and pharmaceutical development. The primary objectives are to understand the specific needs of investigators and biospecimen banks for DPI and to successfully integrate DPI into cancer clinical trials. Workshop speakers will present the challenges of digital and computational pathology, including diverse hardware and software, image acquisition, validation, storage, data management, intellectual property, and public-private partnerships. The meeting will gather members of the scientific community, leaders of cancer clinical trials, representatives from NCI biospecimen banks, pathologists, radiologists, IT scientists, and policy advisors. The workshop participants will discuss how to best address challenges posed by the current lack of standardized approaches for DPI utilization in clinical trials and biobanking and will propose potential solutions. See the agenda and speaker information on the event page
DetailsOrganizerNCIWhenWed, Mar 06 - Thu, Mar 07, 2024 -9:00 am - 5:00 pmWhereOnline |
The NCI Cancer Diagnosis Program in the Division of Cancer Treatment and Diagnosis is hosting a workshop, “Digital Pathology Imaging (DPI) in Cancer Clinical Trials and Research.” This workshop will focus on the expanding role of DPI in translational cancer research, biomarker studies, clinical trials, and pharmaceutical development. The primary objectives are to understand the specific needs of investigators and biospecimen banks for DPI and to successfully integrate DPI into cancer clinical trials. Workshop speakers will present the challenges of digital and computational pathology, including diverse hardware and software, image acquisition, validation, storage, data management, intellectual property, and public-private partnerships. The meeting will gather members of the scientific community, leaders of cancer clinical trials, representatives from NCI biospecimen banks, pathologists, radiologists, IT scientists, and policy advisors. The workshop participants will discuss how to best address challenges posed by the current lack of standardized approaches for DPI utilization in clinical trials and biobanking and will propose potential solutions. See the agenda and speaker information on the event page | 2024-03-06 09:00:00 | Online | Any | Imaging | Online | NCI | 0 | NCI/DCTD/CDP Virtual Workshop on Digital Pathology Imaging in Cancer Clinical Trials and Research | ||
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DescriptionThe National Institutes of Health (NIH) promotes the use of Common Data Elements (CDEs) to standardize data collection, sharing, and interoperability in health and disease research. In line with Congressional Appropriations language, the Office of Data Science Strategy (ODSS) is expanding these efforts by collaborating with research stakeholders to enhance and broaden the development and adoption of CDEs for various diseases areas, including but not limited to autoimmune and immune-mediated conditions. This workshop aims ...Read More The National Institutes of Health (NIH) promotes the use of Common Data Elements (CDEs) to standardize data collection, sharing, and interoperability in health and disease research. In line with Congressional Appropriations language, the Office of Data Science Strategy (ODSS) is expanding these efforts by collaborating with research stakeholders to enhance and broaden the development and adoption of CDEs for various diseases areas, including but not limited to autoimmune and immune-mediated conditions. This workshop aims to bring together expert panels, researchers, professional societies, and patient organizations to explore the value, resources, and applications of CDEs. Our speakers will cover a range of pertinent topics, including: the value of CDEs, current NIH resources for CDEs, technical implementation aspects and approaches to enhancing interoperability, overcoming barriers in CDE adoption in community research, and use cases for preparing and applying CDEs to intelligent technologies. This is a hybrid workshop. Virtual participation is available. For those attending via webinar, the link will be distributed via email prior to the date of the event. If there are questions in the meantime, please reach out to us at nih-odss-cde-workshop@nih.gov DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenWed, Mar 06 - Thu, Mar 07, 2024 -9:00 am - 4:00 pmWhereRuth Kirschstein Auditorium, Natcher Conference Center (Building 45) |
The National Institutes of Health (NIH) promotes the use of Common Data Elements (CDEs) to standardize data collection, sharing, and interoperability in health and disease research. In line with Congressional Appropriations language, the Office of Data Science Strategy (ODSS) is expanding these efforts by collaborating with research stakeholders to enhance and broaden the development and adoption of CDEs for various diseases areas, including but not limited to autoimmune and immune-mediated conditions. This workshop aims to bring together expert panels, researchers, professional societies, and patient organizations to explore the value, resources, and applications of CDEs. Our speakers will cover a range of pertinent topics, including: the value of CDEs, current NIH resources for CDEs, technical implementation aspects and approaches to enhancing interoperability, overcoming barriers in CDE adoption in community research, and use cases for preparing and applying CDEs to intelligent technologies. This is a hybrid workshop. Virtual participation is available. For those attending via webinar, the link will be distributed via email prior to the date of the event. If there are questions in the meantime, please reach out to us at nih-odss-cde-workshop@nih.gov | 2024-03-06 09:00:00 | Ruth Kirschstein Auditorium, Natcher Conference Center (Building 45) | Any | Common Data Elements | Hybrid | NIH Office of Data Science Strategy (ODSS) | 0 | Advancing the Use and Development of Common Data Elements (CDE) in Research Workshop | ||
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DescriptionPlease join us on Wednesday, March 6 when Daniella Lowenberg from the University of California, California Digital Library will present “Defining the Need for Open Data Metrics.” Please join us on Wednesday, March 6 when Daniella Lowenberg from the University of California, California Digital Library will present “Defining the Need for Open Data Metrics.” DetailsOrganizerCBIITWhenWed, Mar 06, 2024 - 11:00 am - 12:00 pmWhereOnline |
Please join us on Wednesday, March 6 when Daniella Lowenberg from the University of California, California Digital Library will present “Defining the Need for Open Data Metrics.” Widespread adoption of open data practices, including the implementation of the latest NIH data management and sharing policy, has resulted in a wealth of open datasets and increased attention on data as a public asset. In order to fulfill responsible data stewardship, we must take steps to understand how data are found, accessed, and reused. This talk will focus on the journey towards development of these assessment frameworks, priority areas, and examples of how shifting focus from data access to data metrics will more effectively allow academic and government bodies to meet open data goals. Ms. Lowenberg is on loan from the University of California Office of the President to the Administration for Children and Families (ACF) at the U.S. Department of Health and Human Services as the Senior Advisor for Data Governance. In this role she is focused on developing strategies for open and restricted use data assets across ACF | 2024-03-06 11:00:00 | Online | Any | Data Management | Online | Daniella Lowenberg (University of California) | CBIIT | 0 | Defining the Need for Open Data Metrics | |
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DescriptionThis one-hour training will provide detailed information on how to create charts in MS Excel, including reviewing and selecting chart types, layouts, and styles. The training will also cover changing colors and format options, as well as how to make changes to titles and labels. This is an introductory class for those who need to quickly learn basic Excel chart features and for those who are interested in a ...Read More This one-hour training will provide detailed information on how to create charts in MS Excel, including reviewing and selecting chart types, layouts, and styles. The training will also cover changing colors and format options, as well as how to make changes to titles and labels. This is an introductory class for those who need to quickly learn basic Excel chart features and for those who are interested in a refresher. No previous experience with Excel is required, but basic familiarity with Microsoft Office is helpful. DetailsOrganizerNIH LibraryWhenThu, Mar 07, 2024 - 12:00 pm - 1:00 pmWhereOnline |
This one-hour training will provide detailed information on how to create charts in MS Excel, including reviewing and selecting chart types, layouts, and styles. The training will also cover changing colors and format options, as well as how to make changes to titles and labels. This is an introductory class for those who need to quickly learn basic Excel chart features and for those who are interested in a refresher. No previous experience with Excel is required, but basic familiarity with Microsoft Office is helpful. | 2024-03-07 12:00:00 | Online | Any | Data Visualization | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Creating Charts in Excel | |
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DescriptionThe goal of this exploratory workshop is to identify scientific and collaborative bridges between the communities of mathematical theory development and computational cancer biology research by bringing together mathematical theorists and cancer biologists from across various subfields. Through talks, group discussions, and breakouts, the workshop is expected to result in insights addressing the following questions: What collaborative barriers and opportunities exist across mathematical theoretical methods development and cancer biology research?Read More The goal of this exploratory workshop is to identify scientific and collaborative bridges between the communities of mathematical theory development and computational cancer biology research by bringing together mathematical theorists and cancer biologists from across various subfields. Through talks, group discussions, and breakouts, the workshop is expected to result in insights addressing the following questions: What collaborative barriers and opportunities exist across mathematical theoretical methods development and cancer biology research? How can these communities more effectively find each other and collaborate? What are opportunities for NCI to address functional gaps (communication, education/research silos, pace of research) between these communities? Additional information about the workshop can be found in the agenda at https://www.cancer.gov/about-nci/organization/dcb/news/exploratory-workshop-on-math4cancerbio-agenda. Individuals who need reasonable accommodations to participate in this event should contact Dr. David Miller at david.miller3@nih.gov or 240-276-6810. Requests should be made at least five days in advance. DetailsOrganizerNCIWhenMon, Mar 11 - Tue, Mar 12, 2024 -9:00 am - 3:00 pmWhereOnline |
The goal of this exploratory workshop is to identify scientific and collaborative bridges between the communities of mathematical theory development and computational cancer biology research by bringing together mathematical theorists and cancer biologists from across various subfields. Through talks, group discussions, and breakouts, the workshop is expected to result in insights addressing the following questions: What collaborative barriers and opportunities exist across mathematical theoretical methods development and cancer biology research? How can these communities more effectively find each other and collaborate? What are opportunities for NCI to address functional gaps (communication, education/research silos, pace of research) between these communities? Additional information about the workshop can be found in the agenda at https://www.cancer.gov/about-nci/organization/dcb/news/exploratory-workshop-on-math4cancerbio-agenda. Individuals who need reasonable accommodations to participate in this event should contact Dr. David Miller at david.miller3@nih.gov or 240-276-6810. Requests should be made at least five days in advance. | 2024-03-11 09:00:00 | Online | Any | Cancer,Math | Online | David Miller (NCI),Dan Gallahan (NCI),Raul Rabadan (Columbia University),Shmuel Weinberger (University of Chicago) | NCI | 0 | NCI Exploratory Workshop on Math, Theory, and Cancer Biology | |
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DescriptionThis class is designed for those who want to extend the basics covered in the Introduction to Quarto for Scholarly Publishing class. In this class you will learn how to format tables, work with LaTeX equations, customize code blocks, and insert images. Upon completion of this class participants should be able to create tables, customize code-blocks, create LaTeX equations, and insert images into a markdown document. <...Read More This class is designed for those who want to extend the basics covered in the Introduction to Quarto for Scholarly Publishing class. In this class you will learn how to format tables, work with LaTeX equations, customize code blocks, and insert images. Upon completion of this class participants should be able to create tables, customize code-blocks, create LaTeX equations, and insert images into a markdown document. You must have taken Introduction to Quarto for Scholarly Publishing to be successful in this class. DetailsOrganizerNIH LibraryWhenMon, Mar 11, 2024 - 1:00 pm - 2:30 pmWhereOnline |
This class is designed for those who want to extend the basics covered in the Introduction to Quarto for Scholarly Publishing class. In this class you will learn how to format tables, work with LaTeX equations, customize code blocks, and insert images. Upon completion of this class participants should be able to create tables, customize code-blocks, create LaTeX equations, and insert images into a markdown document. You must have taken Introduction to Quarto for Scholarly Publishing to be successful in this class. | 2024-03-11 13:00:00 | Online | Any | Quarto | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Quarto for Scholarly Publishing: Advanced Formatting | |
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DescriptionIn this webinar, the participants will learn about application of machine learning methods, specifically geared towards predicting the toxicity of target molecules. They will gain insights into various machine learning techniques, fostering a comprehensive understanding of their application in this critical domain. Furthermore, attendees will acquire the skills to apply machine learning to their data, utilize applications to train artificial intelligence (AI) models for toxicity prediction, and effortlessly share the results with collaborators. <...Read MoreIn this webinar, the participants will learn about application of machine learning methods, specifically geared towards predicting the toxicity of target molecules. They will gain insights into various machine learning techniques, fostering a comprehensive understanding of their application in this critical domain. Furthermore, attendees will acquire the skills to apply machine learning to their data, utilize applications to train artificial intelligence (AI) models for toxicity prediction, and effortlessly share the results with collaborators. This is an introductory level class taught by MathWorks. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenTue, Mar 12, 2024 - 12:00 pm - 1:00 pmWhereOnline |
In this webinar, the participants will learn about application of machine learning methods, specifically geared towards predicting the toxicity of target molecules. They will gain insights into various machine learning techniques, fostering a comprehensive understanding of their application in this critical domain. Furthermore, attendees will acquire the skills to apply machine learning to their data, utilize applications to train artificial intelligence (AI) models for toxicity prediction, and effortlessly share the results with collaborators. This is an introductory level class taught by MathWorks. No installation of MATLAB is necessary. | 2024-03-12 12:00:00 | Online | Any | AI | Online | Mathworks | NIH Library | 0 | Data Science and AI: Predicting Toxicity in Small Molecules using MATLAB | |
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DescriptionDear Colleagues, Dear Colleagues, DetailsOrganizerCBIITWhenWed, Mar 13, 2024 - 11:00 am - 12:00 pmWhereOnline |
Dear Colleagues, UCSC Xena is a web-based visual integration and exploration tool for multi-omic data and associated clinical and phenotypic annotations. Xena showcases seminal cancer genomics datasets from TCGA and the Pan-Cancer Atlas, as well as the GDC, PCAWG, and ICGC; a total of more than 1500 datasets across 50 cancer types. We support virtually any type of functional genomics data modality, including SNPs, INDELs, large structural variants, CNV, gene and other types of expression, DNA methylation, clinical and phenotypic annotations. Browser features include the high performance Visual Spreadsheet, dynamic Kaplan-Meier survival analysis, genome-wide differential gene expression analysis, genome-wide GSEA analysis, powerful filtering and subgrouping, charts, statistical analyses, genomic signatures, and live bookmarks. Researchers can use the same visualizations to view their own data privately and securely in Xena. Xena can help you answer questions like:• Is over-expression of this gene associated with lower survival in these two cancer types?• Is this gene differentially expressed in TCGA tumor vs GTEx normal?• What are the most differentially expressed genes for the subgroups I just made? | 2024-03-13 11:00:00 | Online | Any | UCSC Xena | Online | Mary Goldman (UCSC Xena Design and Outreach Engineer) | CBIIT | 0 | Introduction to UCSC Xena: a tool for multi-omic data & associate clinical and phenotypic annotations | |
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DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users
DetailsWhenWed, Mar 13, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2024-03-13 13:00:00 | Online | Any | Biowulf | Online | HPC Staff | 0 | Zoom-In Consult for Biowulf Users | ||
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DescriptionElectronic lab notebooks (ELNs) are digital tools that allow researchers to record, manage, and share their data and results in a secure and efficient way. The virtual roundtable discussion will cover various aspects of using ELNs in biomedical research, such as general best practices and use cases; specific considerations for technology transfer, records management, and pre-clinical studies; and avoiding scientific misconduct. The participants will learn from the presentations of experts and practitioners with experience ...Read More Electronic lab notebooks (ELNs) are digital tools that allow researchers to record, manage, and share their data and results in a secure and efficient way. The virtual roundtable discussion will cover various aspects of using ELNs in biomedical research, such as general best practices and use cases; specific considerations for technology transfer, records management, and pre-clinical studies; and avoiding scientific misconduct. The participants will learn from the presentations of experts and practitioners with experience and knowledge of different ELN platforms and solutions. A full schedule and list of presentations and speakers will be added closer to the event date. DetailsOrganizerNIH LibraryWhenMon, Mar 18, 2024 - 1:00 pm - 2:30 pmWhereOnline |
Electronic lab notebooks (ELNs) are digital tools that allow researchers to record, manage, and share their data and results in a secure and efficient way. The virtual roundtable discussion will cover various aspects of using ELNs in biomedical research, such as general best practices and use cases; specific considerations for technology transfer, records management, and pre-clinical studies; and avoiding scientific misconduct. The participants will learn from the presentations of experts and practitioners with experience and knowledge of different ELN platforms and solutions. A full schedule and list of presentations and speakers will be added closer to the event date. | 2024-03-18 13:00:00 | Online | Any | Electronic Lab Notebooks (ELN) | Online | Alicia Lillich (NIH Library) | NIH Library | 0 | Electronic Lab Notebooks: A Roundtable Discussion | |
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DescriptionThis class is designed for those who want to extend the basics covered in the Introduction to Quarto for Scholarly Publishing to Formatting class. This class uses Quarto to render formatted citations and bibliographies included in a journal article, report, or presentation. This class also discusses the Zotero API, which is supported in RStudio. Zotero is a free, easy-to-use tool to help you collect, organize, annotate, cite, ...Read More This class is designed for those who want to extend the basics covered in the Introduction to Quarto for Scholarly Publishing to Formatting class. This class uses Quarto to render formatted citations and bibliographies included in a journal article, report, or presentation. This class also discusses the Zotero API, which is supported in RStudio. Zotero is a free, easy-to-use tool to help you collect, organize, annotate, cite, and share research. This class also covers exporting citations from Endnote in a format supported by Quarto. EndNote is a software package which is designed to help you to organize citations and create a bibliography. The current version of EndNote available from the NIH Library is Endnote 21. You must have taken Introduction to Quarto for Scholarly Publishing to be successful in this class. Upon completion of this class participants should be able to link RStudio to Zotero, create a bibliography and link it to a markdown document, insert citations using RStudio Visual Interface, and via the command line, and download and link a CSL file which specifies the formatting to use when generating the citations and bibliography. DetailsOrganizerNIH LibraryWhenTue, Mar 19, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This class is designed for those who want to extend the basics covered in the Introduction to Quarto for Scholarly Publishing to Formatting class. This class uses Quarto to render formatted citations and bibliographies included in a journal article, report, or presentation. This class also discusses the Zotero API, which is supported in RStudio. Zotero is a free, easy-to-use tool to help you collect, organize, annotate, cite, and share research. This class also covers exporting citations from Endnote in a format supported by Quarto. EndNote is a software package which is designed to help you to organize citations and create a bibliography. The current version of EndNote available from the NIH Library is Endnote 21. You must have taken Introduction to Quarto for Scholarly Publishing to be successful in this class. Upon completion of this class participants should be able to link RStudio to Zotero, create a bibliography and link it to a markdown document, insert citations using RStudio Visual Interface, and via the command line, and download and link a CSL file which specifies the formatting to use when generating the citations and bibliography. | 2024-03-19 13:00:00 | Online | Any | Quarto | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Quarto for Scholarly Publishing: Working with Citations | |
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DescriptionVinton “Vint” Cerf, Ph.D., is the special guest for the 2024 J. Edward Rall Cultural Lecture, The Promises and Perils of AI in Biomedical Research and Health Care Delivery. Dr. Cerf is known as one of the “fathers of the internet” and currently serves as vice president and Chief Internet Evangelist for Google. NIH Director Dr. Monica Bertagnolli will hold a conversation with Dr. Cerf about AI and machine learning, ...Read More Vinton “Vint” Cerf, Ph.D., is the special guest for the 2024 J. Edward Rall Cultural Lecture, The Promises and Perils of AI in Biomedical Research and Health Care Delivery. Dr. Cerf is known as one of the “fathers of the internet” and currently serves as vice president and Chief Internet Evangelist for Google. NIH Director Dr. Monica Bertagnolli will hold a conversation with Dr. Cerf about AI and machine learning, especially as it relates to her vision for delivering evidence-based care to all people and invite him to respond to questions from NIH staff submitted in advance on the lecture topic. Vint Cerf and his collaborator Robert Kahn received the U.S. National Medal of Technology from President Clinton in 1997 for founding and developing the internet. Dr. Cerf later received the Presidential Medal of Freedom from President George W. Bush, the Marconi Prize, and the Turing Award, among many other awards. He is a thought leader and a public face in the internet world for Google, where he contributes to global policy development and continued standardization of the internet. Long a champion of internet neutrality and full accessibility, Cerf in recent years has voiced his concern about and has proposed possible solutions to combat dangers such as the long-term durability of digital storage, the spread of misinformation, and rapid growth of AI. The Rall Cultural Lecture is named in honor of Dr. Joseph "Ed" Rall, who helped to define NIH's modern intramural research program and establish a stable academic-like and culturally rich community within a rapidly expanding government agency. You will be able to view this event at https://videocast.nih.gov/ on the day of the event. DetailsOrganizerNIH -OIRWhenTue, Mar 19, 2024 - 1:30 pm - 2:30 pmWhereMain NIH Campus, Building 10 (Clinical Center); Masur Auditorium |
Vinton “Vint” Cerf, Ph.D., is the special guest for the 2024 J. Edward Rall Cultural Lecture, The Promises and Perils of AI in Biomedical Research and Health Care Delivery. Dr. Cerf is known as one of the “fathers of the internet” and currently serves as vice president and Chief Internet Evangelist for Google. NIH Director Dr. Monica Bertagnolli will hold a conversation with Dr. Cerf about AI and machine learning, especially as it relates to her vision for delivering evidence-based care to all people and invite him to respond to questions from NIH staff submitted in advance on the lecture topic. Vint Cerf and his collaborator Robert Kahn received the U.S. National Medal of Technology from President Clinton in 1997 for founding and developing the internet. Dr. Cerf later received the Presidential Medal of Freedom from President George W. Bush, the Marconi Prize, and the Turing Award, among many other awards. He is a thought leader and a public face in the internet world for Google, where he contributes to global policy development and continued standardization of the internet. Long a champion of internet neutrality and full accessibility, Cerf in recent years has voiced his concern about and has proposed possible solutions to combat dangers such as the long-term durability of digital storage, the spread of misinformation, and rapid growth of AI. The Rall Cultural Lecture is named in honor of Dr. Joseph "Ed" Rall, who helped to define NIH's modern intramural research program and establish a stable academic-like and culturally rich community within a rapidly expanding government agency. You will be able to view this event at https://videocast.nih.gov/ on the day of the event. | 2024-03-19 13:30:00 | Main NIH Campus, Building 10 (Clinical Center); Masur Auditorium | Any | AI | Online | Vint Cerf Ph.D. (Evangelist for Google) | NIH -OIR | 0 | WALS J. Edward Rall Cultural Lecture: The Promises and Perils of AI in Biomedical Research and Health Care Delivery | |
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DescriptionDear Colleagues,
cBioPortal is an open-access resource for interactive exploration of multidimensional cancer genomics data sets, currently providing access to data from >200,000 tumor samples collected from >400 published cancer studies.
This webinar will explore cBioPortal and how it facilitates access to cancer genomic data sets for the entire biomedical community. It provides a simple yet flexible interface to integrated data sets, intuitive visualization options, and a programmatic web interface, all of which can aid researchers in translating cancer genomic data into biologic insights and potential clinical applications.
Presenters: Ino de Bruijn and Ritika Kundra, Bioinformatics Software Engineers from Memorial Sloan Kettering Cancer Center
For questions, contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenWed, Mar 20, 2024 - 10:00 am - 11:00 amWhereOnline |
Dear Colleagues, cBioPortal is an open-access resource for interactive exploration of multidimensional cancer genomics data sets, currently providing access to data from >200,000 tumor samples collected from >400 published cancer studies. This webinar will explore cBioPortal and how it facilitates access to cancer genomic data sets for the entire biomedical community. It provides a simple yet flexible interface to integrated data sets, intuitive visualization options, and a programmatic web interface, all of which can aid researchers in translating cancer genomic data into biologic insights and potential clinical applications. Presenters: Ino de Bruijn and Ritika Kundra, Bioinformatics Software Engineers from Memorial Sloan Kettering Cancer Center For questions, contact Daoud Meerzaman or Kayla Strauss. | 2024-03-20 10:00:00 | Online | Any | Cancer genomics | Online | Ino de Bruijn and Ritika Kundra (Memorial Sloan Kettering Cancer Center) | CBIIT | 0 | cBioPortal for Cancer Genomics Webinar | |
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DescriptionOur series of talks continues with two 20-minute presentations. There will be light refreshments (coffee and donuts) provided, so please consider attending in person! We encourage attendees to stay and chat with colleagues after the presentations. Presenter: Matthew Manion, PhD Our series of talks continues with two 20-minute presentations. There will be light refreshments (coffee and donuts) provided, so please consider attending in person! We encourage attendees to stay and chat with colleagues after the presentations. Presenter: Matthew Manion, PhD Presenter: Meeting number (access code): 2557 406 7680 DetailsOrganizerSingle Cell and Spatial Genomics Users Group organizing committeeWhenWed, Mar 20, 2024 - 10:00 am - 11:30 amWhereBuilding 35A Room 640 |
Our series of talks continues with two 20-minute presentations. There will be light refreshments (coffee and donuts) provided, so please consider attending in person! We encourage attendees to stay and chat with colleagues after the presentations. Title: “Differential activity of the transcription factor Nkx2.1 in embryonic mouse brain, lung, and thyroid” Presenter: Matthew Manion, PhDPostdoctoral Fellow | Unit on Cellular and Molecular NeurodevelopmentNational Institute of Child Health and Development (NICHD) Title: “Hierarchical integration preserves intrasample relationships while effectively identifying inter sample similarities” Presenter: Brian Capaldo, PhD Bioinformatics Specialist | Center for Biomedical Informatics & Information TechnologyNational Cancer Institute (NCI) Meeting number (access code): 2557 406 7680 Meeting password: Fm5DdW9Jt2Q | 2024-03-20 10:00:00 | Building 35A Room 640 | Any | Hybrid | Matthew Manion (National Institute of Child Health and Development (NICHD) Brian Capaldo (National Cancer Institute (NCI) | Single Cell and Spatial Genomics Users Group organizing committee | 0 | Single Cell and Spatial Genomics Users Group – 2 x 20 minute Talks | ||
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DescriptionMeeting number (access code): 2303 344 1474 Meeting number (access code): 2303 344 1474 DetailsOrganizerContainers and Workflow Interest Group (CWIG)WhenWed, Mar 20, 2024 - 11:00 am - 12:00 pmWhereOnline |
Meeting number (access code): 2303 344 1474Meeting password: 2K9AfEmfN@2 | 2024-03-20 11:00:00 | Online | Any | Online | Krish Seshadri (NCI/CBIIT/DSSB) Lawrence Brem (NCI/CBIIT) | Containers and Workflow Interest Group (CWIG) | 0 | Use of Containers for Custom Software Development at the NCI for AWS Cloud and On Premises | ||
1419 |
DescriptionGeneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. In this presentation, a Field Application Scientist with Geneious Prime, Dr. Evan Starr will discuss a general introduction to the software and then cover NGS mapping and de novo assembly, variant calling, RNA-Seq, and handling large datasets. More information can be found at geneious.com. Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. In this presentation, a Field Application Scientist with Geneious Prime, Dr. Evan Starr will discuss a general introduction to the software and then cover NGS mapping and de novo assembly, variant calling, RNA-Seq, and handling large datasets. More information can be found at geneious.com. RegisterOrganizerBTEPWhenWed, Mar 20, 2024 - 1:00 pm - 2:00 pmWhereOnline |
Geneious Prime is a comprehensive software suite of molecular biology and NGS analysis tools. In this presentation, a Field Application Scientist with Geneious Prime, Dr. Evan Starr will discuss a general introduction to the software and then cover NGS mapping and de novo assembly, variant calling, RNA-Seq, and handling large datasets. More information can be found at geneious.com. | 2024-03-20 13:00:00 | Online | Any | Bioinformatics Software,Next-Gen Sequencing | Bioinformatics Software,Geneious Prime | Online | Evan Starr PhD Field Application Scientist | BTEP | 0 | Introduction to Geneious Prime |
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AI in Biomedical Research @ NIH Seminar SeriesDescriptionContext-aware AI implemented to facilitate data discovery and harmonization has significantly accelerated some of the common bottlenecks in the collaborative research process. Pilot work has shows major time and cost savings compared to current completely manual processes. Alternative Meeting Information: Meeting number: 2314 904 4579 Password: MRdP4sWN?63 Join by video system Dial 23149044579@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/...Read MoreContext-aware AI implemented to facilitate data discovery and harmonization has significantly accelerated some of the common bottlenecks in the collaborative research process. Pilot work has shows major time and cost savings compared to current completely manual processes. Alternative Meeting Information: Meeting number: 2314 904 4579 Password: MRdP4sWN?63 Join by video system Dial 23149044579@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2314 904 4579RegisterOrganizerBTEPWhenThu, Mar 21, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Context-aware AI implemented to facilitate data discovery and harmonization has significantly accelerated some of the common bottlenecks in the collaborative research process. Pilot work has shows major time and cost savings compared to current completely manual processes. Alternative Meeting Information: Meeting number: 2314 904 4579 Password: MRdP4sWN?63 Join by video system Dial 23149044579@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2314 904 4579 | 2024-03-21 13:00:00 | Online Webinar | Any | AI/ML | Online | Mike Nalls Ph.D. (CARD) | BTEP | 1 | How Large Language Models (LLMs) Accelerate Data Discovery and Harmonization | |
1444 |
DescriptionThis 3-hour seminar is tailored for biologists, data analysts, and researchers who are eager to dive into the essentials of computational flow cytometry analysis using R. Flow cytometry is a crucial technique in cell biology, enabling the quantitative analysis of cell populations for a deeper understanding of health. The seminar focuses on the computational data analysis step, guiding participants through the basics of analyzing and understanding flow cytometry data. It includes hands-on code demonstrations ...Read More This 3-hour seminar is tailored for biologists, data analysts, and researchers who are eager to dive into the essentials of computational flow cytometry analysis using R. Flow cytometry is a crucial technique in cell biology, enabling the quantitative analysis of cell populations for a deeper understanding of health. The seminar focuses on the computational data analysis step, guiding participants through the basics of analyzing and understanding flow cytometry data. It includes hands-on code demonstrations and a follow-along activity, utilizing popular R packages for flow cytometry analysis such as flowCore, flowAI, ggcyto, among others, to load, visualize, and analyze .fcs files effectively. Target Audience - Researchers and students in cell biology, immunology, and related fields - Biomedical researchers interested in learning computational data analysis - Data analysts and bioinformaticians exploring flow cytometry Prerequisites - Basic understanding of cell biology and flow cytometry concepts - Some familiarity with R programming is helpful but not required Objectives - Load and visualize .fcs files in R - Understand the basics of quality control and data transformation for flow cytometry data - Perform automated gating and basic statistical analysis using R packages - Identify resources for further learning in computational flow cytometry Materials and Resources - Access to presentation slides and R scripts used during the demonstration - Sample .fcs files for the follow-along activity - A curated list of resources for further study in computational flow cytometry analysis Speaker: Gabriel Rosenfeld serves as Lead of Data Science in the Science Support Section in Bioinformatics and Computational Bioscience Branch (BCBB). He also contributes as subject matter expert to the TB Portals program, a trans-national partnership to use real-world data to study drug-resistant tuberculosis. He joined NIAID as a Presidential Management Fellow (PMF) in 2013, spent several years in industry, and joined BCBB in 2020 to use data science to help advance collaborators’ research projects. Individuals with disabilities who need reasonable accommodation to participate in this event should contact Karlynn Noble at karlynn.noble@nih.gov. DetailsOrganizerNIAIDWhenFri, Mar 22, 2024 - 1:00 pm - 4:00 pmWhereOnline |
This 3-hour seminar is tailored for biologists, data analysts, and researchers who are eager to dive into the essentials of computational flow cytometry analysis using R. Flow cytometry is a crucial technique in cell biology, enabling the quantitative analysis of cell populations for a deeper understanding of health. The seminar focuses on the computational data analysis step, guiding participants through the basics of analyzing and understanding flow cytometry data. It includes hands-on code demonstrations and a follow-along activity, utilizing popular R packages for flow cytometry analysis such as flowCore, flowAI, ggcyto, among others, to load, visualize, and analyze .fcs files effectively. Target Audience - Researchers and students in cell biology, immunology, and related fields - Biomedical researchers interested in learning computational data analysis - Data analysts and bioinformaticians exploring flow cytometry Prerequisites - Basic understanding of cell biology and flow cytometry concepts - Some familiarity with R programming is helpful but not required Objectives - Load and visualize .fcs files in R - Understand the basics of quality control and data transformation for flow cytometry data - Perform automated gating and basic statistical analysis using R packages - Identify resources for further learning in computational flow cytometry Materials and Resources - Access to presentation slides and R scripts used during the demonstration - Sample .fcs files for the follow-along activity - A curated list of resources for further study in computational flow cytometry analysis Speaker: Gabriel Rosenfeld serves as Lead of Data Science in the Science Support Section in Bioinformatics and Computational Bioscience Branch (BCBB). He also contributes as subject matter expert to the TB Portals program, a trans-national partnership to use real-world data to study drug-resistant tuberculosis. He joined NIAID as a Presidential Management Fellow (PMF) in 2013, spent several years in industry, and joined BCBB in 2020 to use data science to help advance collaborators’ research projects. Individuals with disabilities who need reasonable accommodation to participate in this event should contact Karlynn Noble at karlynn.noble@nih.gov. | 2024-03-22 13:00:00 | Online | Any | Flow Cytometry,R programming | Online | Gabriel Rosenfeld (NIAID/OCICB/BCBB) | NIAID | 0 | Introduction to Computational Flow Cytometry Using R | |
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Dear Colleagues, Developed by expert statisticians and programmers, SUDAAN is a software package designed for researchers who work with study data. SUDAAN procedures properly account for correlated observations, clustering, weighting, stratification, and other complex design features—making them ideal for efficiently and accurately analyzing data from surveys and experimental studies. Join us for an introduction to SUDAAN. In this webinar the following will be discussed: 1. Correlated Data in Surveys and Experimental Studies2. Overview of Sample Surveys a. Complex Design Features b. Clustering and Intracluster Correlation c. Weighting3. Effects of Complex Design Features on Variance4. Why use SUDAAN? Consequences of Not Fully Accounting for Complex Design5. Overview of SUDAAN procedures6. Questions Presenters: Darryl Creel and Taylor Lewis, SUDAAN Software Experts For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-03-26 10:00:00 | Online | Any | Statistics | Online | Darryl Creel (SUDANN Software Experts) | CBIIT | 0 | Introduction to SUDAAN - Statistical Software for Analyzing Correlated Data | |
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DescriptionNCI is launching the virtual Cancer AI Conversations series featuring multiple perspectives on timely topics and themes in artificial intelligence for cancer research! Each event features short talks from 2-4 subject matter experts offering diverse views on the session topic. These talks will be followed by a moderated panel discussion. “Cancer AI Conversations” are bimonthly, 1-hour virtual events featuring timely topics related to the application ...Read More NCI is launching the virtual Cancer AI Conversations series featuring multiple perspectives on timely topics and themes in artificial intelligence for cancer research! Each event features short talks from 2-4 subject matter experts offering diverse views on the session topic. These talks will be followed by a moderated panel discussion. “Cancer AI Conversations” are bimonthly, 1-hour virtual events featuring timely topics related to the application of artificial intelligence in cancer research. Each event features short talks from 2-4 subject matter experts offering diverse perspectives on the session topic. All of the Cancer AI Conversations will be recorded and posted for future viewing. DetailsOrganizerNCIWhenTue, Mar 26, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
NCI is launching the virtual Cancer AI Conversations series featuring multiple perspectives on timely topics and themes in artificial intelligence for cancer research! Each event features short talks from 2-4 subject matter experts offering diverse views on the session topic. These talks will be followed by a moderated panel discussion. “Cancer AI Conversations” are bimonthly, 1-hour virtual events featuring timely topics related to the application of artificial intelligence in cancer research. Each event features short talks from 2-4 subject matter experts offering diverse perspectives on the session topic. All of the Cancer AI Conversations will be recorded and posted for future viewing. | 2024-03-26 11:00:00 | Online Webinar | Any | Artificial Intelligence / Machine Learning | Online | Dana Farber (Cancer Center),Julian Hong (UC San Francisco),William Lotter | NCI | 0 | Cancer AI Conversations: Machine Learning in Cancer Care Delivery: Implementation and Sustainability | |
1429 |
DescriptionIn this session, we will discuss the potential of GPUs, and when and why to use GPUs on the Frederick Research Computing Environment (FRCE). We will explore the possibilities of GPU-accelerated AI applications and interactive sessions on FRCE to maximize GPU utilization. This session is geared towards beginners. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (<...Read More In this session, we will discuss the potential of GPUs, and when and why to use GPUs on the Frederick Research Computing Environment (FRCE). We will explore the possibilities of GPU-accelerated AI applications and interactive sessions on FRCE to maximize GPU utilization. This session is geared towards beginners. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research.
DetailsOrganizerBioinformatics and Computational Science (BACS)WhenTue, Mar 26, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room Frederick |
In this session, we will discuss the potential of GPUs, and when and why to use GPUs on the Frederick Research Computing Environment (FRCE). We will explore the possibilities of GPU-accelerated AI applications and interactive sessions on FRCE to maximize GPU utilization. This session is geared towards beginners. This session will be recorded, and materials will be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. | 2024-03-26 12:00:00 | Building 549 Executive Board Room Frederick | Any | AI | Hybrid | Mohammad Alodadi (BACS ABCS) | Bioinformatics and Computational Science (BACS) | 0 | Maximizing Computational Power: Unleashing the Potential of FRCE GPUs for Advanced AI Research, NLP, and Large Language Models | |
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DescriptionOn Wednesday, March 27th, at 9:00 a.m., in Building 37, Room 4041/4107, and online. In-person attendance is encouraged.
On Wednesday, March 27th, at 9:00 a.m., in Building 37, Room 4041/4107, and online. In-person attendance is encouraged.
Join by meeting number DetailsOrganizerCCRWhenWed, Mar 27, 2024 - 9:00 am - 10:00 amWhereBuilding 37 Room 4041/4107 |
On Wednesday, March 27th, at 9:00 a.m., in Building 37, Room 4041/4107, and online. In-person attendance is encouraged. Dr. Khan is the Deputy Chief of the Genetics Branch and Head of the Oncogenomics Section, where he has established a translational genomics program over the past 22 years. The mission of his section is to harness the power of high throughput omics methods to interrogate the genomes of germline and tumors of children with high-risk, refractory, and recurrent cancers. The goals are to decipher the biology of these cancers, to identify and validate biomarkers and novel therapeutic targets, and to translate our findings to the clinic. For those unable to attend in person, this seminar will also be available via WebEx. See below for the WebEx link. For additional information on this seminar, please contact Katie Tipton at katie.tipton2@nih.gov. Join by meeting number Meeting number (access code): 2305 136 9232 Meeting password: XmyXuP99g$2 | 2024-03-27 09:00:00 | Building 37 Room 4041/4107 | Any | ImmunoGenomics | Hybrid | Javed Khan (Genetics Branch CCR) | CCR | 0 | Precision ImmunoGenomics: Challenges and Opportunities for Pediatric Cancers | |
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Coding Club Seminar SeriesDescriptionDAVID (the Database for Annotation, Visualization and Integrated Discovery) provides a comprehensive set of functional annotation tools for investigators to understand the biological meaning behind large lists of genes acquired from high-throughput assays such as RNA-Seq, Proteomics, Microarray, etc. In this BTEP Coding Club session, developers from DAVID (Weizhong Chang and Brad Sherman) will give an overview of DAVID and provide training on key tools including functional annotation tools (table, chart, and clustering), gene ...Read More DAVID (the Database for Annotation, Visualization and Integrated Discovery) provides a comprehensive set of functional annotation tools for investigators to understand the biological meaning behind large lists of genes acquired from high-throughput assays such as RNA-Seq, Proteomics, Microarray, etc. In this BTEP Coding Club session, developers from DAVID (Weizhong Chang and Brad Sherman) will give an overview of DAVID and provide training on key tools including functional annotation tools (table, chart, and clustering), gene functional classification, gene ID conversion, gene name batch viewer, and the newly developed ortholog conversion tool. RegisterOrganizerBTEPWhenWed, Mar 27, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
DAVID (the Database for Annotation, Visualization and Integrated Discovery) provides a comprehensive set of functional annotation tools for investigators to understand the biological meaning behind large lists of genes acquired from high-throughput assays such as RNA-Seq, Proteomics, Microarray, etc. In this BTEP Coding Club session, developers from DAVID (Weizhong Chang and Brad Sherman) will give an overview of DAVID and provide training on key tools including functional annotation tools (table, chart, and clustering), gene functional classification, gene ID conversion, gene name batch viewer, and the newly developed ortholog conversion tool. | 2024-03-27 11:00:00 | Online Webinar | Any | DAVID,Functional enrichment,Pathway Analysis | DAVID,Pathway Analysis | Online | Brad Sherman,Weizhong Chang | BTEP | 1 | An Introduction to DAVID for Functional Enrichment Analysis |
1430 |
DescriptionThis half-day, virtual workshop features representatives from NCI cancer data cloud resources, including the NCI Cancer Research Data Commons (CRDC), Institute for Systems Biology Cancer Gateway in the Cloud (ISB-CGC), and Read More This half-day, virtual workshop features representatives from NCI cancer data cloud resources, including the NCI Cancer Research Data Commons (CRDC), Institute for Systems Biology Cancer Gateway in the Cloud (ISB-CGC), and Cancer Genomics Cloud (CGC)/SevenBridges. While each of these cloud resources contains cancer research data and tools for data analysis and visualization, they differ in the data sets, methods, and workflows available. Following an introduction to the CRDC, the ISB-CGC and CGC/SevenBridges platforms will be discussed and demonstrated. Registration: https://cbiit.webex.com/weblink/register/r50df6ddbea64638857b6e0dabd1f0cc4 Agenda: https://bioinformatics.ccr.cancer.gov/NCIBioinformaticsCommunity/introduction-to-nci-cancer-cloud-resources/DetailsOrganizerNCI Bioinformatics CommunityWhenWed, Mar 27, 2024 - 1:00 pm - 3:00 pmWhereOnline Webinar |
This half-day, virtual workshop features representatives from NCI cancer data cloud resources, including the NCI Cancer Research Data Commons (CRDC), Institute for Systems Biology Cancer Gateway in the Cloud (ISB-CGC), and Cancer Genomics Cloud (CGC)/SevenBridges. While each of these cloud resources contains cancer research data and tools for data analysis and visualization, they differ in the data sets, methods, and workflows available. Following an introduction to the CRDC, the ISB-CGC and CGC/SevenBridges platforms will be discussed and demonstrated. Registration: https://cbiit.webex.com/weblink/register/r50df6ddbea64638857b6e0dabd1f0cc4 Agenda: https://bioinformatics.ccr.cancer.gov/NCIBioinformaticsCommunity/introduction-to-nci-cancer-cloud-resources/ | 2024-03-27 13:00:00 | Online Webinar | Any | Cancer genomics,Cloud | Online | David Pot Ph.D. (ISB-CGC),Erin Beck (CRDC),Fabian Seidl Ph.D. (ISB-CGC),Rowan Beck Ph.D. (SevenBridges/Velsera) | NCI Bioinformatics Community | 0 | Introduction to Cancer Cloud Resources | |
1409 |
DescriptionJoin John McCulloch and colleagues from the NCI Laboratory of Integrative Cancer Immunology - Microbiome and Genetics Core (LICI-MGC) in an introduction to JAMS, a comprehensive software package for microbial sequencing analysis (microbiomes and isolate genomes), which caters to all steps within a microbiome project analysis. With a few one-liners, the JAMS package will automatically generate an R image from which a panoply of ...Read More Join John McCulloch and colleagues from the NCI Laboratory of Integrative Cancer Immunology - Microbiome and Genetics Core (LICI-MGC) in an introduction to JAMS, a comprehensive software package for microbial sequencing analysis (microbiomes and isolate genomes), which caters to all steps within a microbiome project analysis. With a few one-liners, the JAMS package will automatically generate an R image from which a panoply of different plots and statistics can be obtained by applying any of several highly customizable plotting functions guaranteeing painless, accurate and useful publication-quality graphs. RegisterOrganizerBTEPWhenThu, Mar 28, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Join John McCulloch and colleagues from the NCI Laboratory of Integrative Cancer Immunology - Microbiome and Genetics Core (LICI-MGC) in an introduction to JAMS, a comprehensive software package for microbial sequencing analysis (microbiomes and isolate genomes), which caters to all steps within a microbiome project analysis. With a few one-liners, the JAMS package will automatically generate an R image from which a panoply of different plots and statistics can be obtained by applying any of several highly customizable plotting functions guaranteeing painless, accurate and useful publication-quality graphs. | 2024-03-28 13:00:00 | Online Webinar | Any | Data Visualization,Data analysis,Microbiome | Microbiome analysis,Shotgun metagenomics | Online | John McCulloch | BTEP | 0 | Streamlining microbial shotgun analysis with JAMS - from fastqs to pdfs |
1443 |
DescriptionThis event is sponsored by an organization outside of the NIH; it is listed here due to the nature of the presented topics and their appeal to the NCI community. Description: Recent developments in molecular biology, multiplexed imaging, and computational biology have transformed the field of single cell genomics, and have widespread biological applications. However, the breathtaking pace of technology development has given rise to a multitude of molecular protocols, ...Read More This event is sponsored by an organization outside of the NIH; it is listed here due to the nature of the presented topics and their appeal to the NCI community. Description: Recent developments in molecular biology, multiplexed imaging, and computational biology have transformed the field of single cell genomics, and have widespread biological applications. However, the breathtaking pace of technology development has given rise to a multitude of molecular protocols, commercial systems, and computational challenges. The Satija Lab is excited to host the seventh annual Single Cell Genomics Day on Friday, March 29, 2024. This workshop will begin with an overview of exciting developments in the field over the past year, followed by in-depth presentations on exciting methods and techniques. Our goal is to empower you to utilize single cell genomics in your work. The workshop is free and open to beginners and experts alike. Come to:
Additional speakers and a full agenda will be posted to this website in advance of the workshop. Single Cell Genomics Day will take place virtually in 2024. We are able to make all talks freely available via livestream thanks to support from the National Human Genome Research Institute to the Center for Integrated Cellular Analysis. DetailsOrganizerNon-NIH Event; Satija LabWhenFri, Mar 29, 2024 - 10:00 am - 5:00 pmWhereOnline |
This event is sponsored by an organization outside of the NIH; it is listed here due to the nature of the presented topics and their appeal to the NCI community. Description: Recent developments in molecular biology, multiplexed imaging, and computational biology have transformed the field of single cell genomics, and have widespread biological applications. However, the breathtaking pace of technology development has given rise to a multitude of molecular protocols, commercial systems, and computational challenges. The Satija Lab is excited to host the seventh annual Single Cell Genomics Day on Friday, March 29, 2024. This workshop will begin with an overview of exciting developments in the field over the past year, followed by in-depth presentations on exciting methods and techniques. Our goal is to empower you to utilize single cell genomics in your work. The workshop is free and open to beginners and experts alike. Come to: Learn about cutting-edge molecular technologies for multimodal single-cell analysis, scalable perturbation screens, time-resolved measurements, and spatial profiling. Discover powerful new computational approaches for analyzing single cell data with AI language models, interpreting and benchmarking spatial technologies, and cross-species atlasing. Hear keynote presentations from: Ido Amit Weizmann Institute of Science Jason Buenrostro Broad Institute Xiaowei Zhuang Harvard University Additional speakers and a full agenda will be posted to this website in advance of the workshop. Single Cell Genomics Day will take place virtually in 2024. We are able to make all talks freely available via livestream thanks to support from the National Human Genome Research Institute to the Center for Integrated Cellular Analysis. | 2024-03-29 10:00:00 | Online | Any | Single Cell | Single Cell Technologies | Online | Non-NIH Event; Satija Lab | 0 | Single Cell Genomics Day: A (Virtual) Practical Workshop (Satija Lab) | |
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DescriptionThis first of five webinars will introduce NIH’s All of Us Research Program, including the program’s mission and core values. Learn about the current size and diversity of the participant cohort and the data types and tools available to researchers. Attendees will also see examples of recent research using the All of Us dataset. Presenter: Sheri Schully, Ph.D., is the deputy chief medical and scientific officer ...Read More This first of five webinars will introduce NIH’s All of Us Research Program, including the program’s mission and core values. Learn about the current size and diversity of the participant cohort and the data types and tools available to researchers. Attendees will also see examples of recent research using the All of Us dataset. Presenter: Sheri Schully, Ph.D., is the deputy chief medical and scientific officer and the lead for ancillary studies in the All of Us Research Program at the National Institutes of Health. Through her leadership, she is establishing ancillary studies as a core and scalable capability of the program that will expand the cohort and deliver new phenotypic, lifestyle, environmental, and biological data to the All of Us Researcher Workbench. Dr. Schully has been involved with shaping the program and setting the scientific vision and strategy since its inception. Dr. Schully's research interests include genomics, personalized medicine, and the integration of genetic and genomic information into clinical and public health practices. Her work has been published in numerous high-impact scientific journals. This is the first of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged, but not required, to attend all sessions. Register for additional sessions below: Session 2 - April 12: All of Us Researcher Workbench Registration
DetailsOrganizerNIH LibraryWhenFri, Mar 29, 2024 - 11:00 am - 12:00 pmWhereOnline |
This first of five webinars will introduce NIH’s All of Us Research Program, including the program’s mission and core values. Learn about the current size and diversity of the participant cohort and the data types and tools available to researchers. Attendees will also see examples of recent research using the All of Us dataset. Presenter: Sheri Schully, Ph.D., is the deputy chief medical and scientific officer and the lead for ancillary studies in the All of Us Research Program at the National Institutes of Health. Through her leadership, she is establishing ancillary studies as a core and scalable capability of the program that will expand the cohort and deliver new phenotypic, lifestyle, environmental, and biological data to the All of Us Researcher Workbench. Dr. Schully has been involved with shaping the program and setting the scientific vision and strategy since its inception. Dr. Schully's research interests include genomics, personalized medicine, and the integration of genetic and genomic information into clinical and public health practices. Her work has been published in numerous high-impact scientific journals. This is the first of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged, but not required, to attend all sessions. Register for additional sessions below: Session 2 - April 12: All of Us Researcher Workbench RegistrationSession 3 - April 19: Diving into the Researcher Workbench DataSession 4 - April 26: Introduction to Coding in the Researcher WorkbenchSession 5 - May 3: Resources to Support Researchers Week of the All of Us Convention, Hosted by All of Us - April 3 to 4, 2024 Interested researchers are invited to attend the All of Us Researchers Convention on April 3 and 4. The free, virtual event provides an opportunity for researchers who use All of Us data to showcase their work for others who share their interests in precision medicine. Register for the All of Us Researchers Convention at ResearchAllofUs.org/2024Convention. | 2024-03-29 11:00:00 | Online | Any | Online | Sheri Schully (All of Us Research Program NIH) | NIH Library | 0 | All of Us NIH Library Webinar Series: Session 1 - Introduction to the All of Us Research Program and Research Hub | ||
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DescriptionEmbark on a journey of visionary insights! Join us for the launch of the NEI Informatics & Data-Driven Insights: Seminars & Dialogue Opportunities for Vision Health series, hosted by the National Eye Institute’s Office of Data Science and Health Informatics (ODSHI). ...Read More Embark on a journey of visionary insights! Join us for the launch of the NEI Informatics & Data-Driven Insights: Seminars & Dialogue Opportunities for Vision Health series, hosted by the National Eye Institute’s Office of Data Science and Health Informatics (ODSHI). Get ready as Michael Chiang, NEI Director, and Kerry Goetz, Associate Director of ODSHI, unveil the series and delve into NEI's perspective on the dynamic intersection of data science and vision research. Engage in stimulating dialogue with our esteemed speakers and share your input on future topics of interest. Don't miss this chance to be part of shaping the future of vision health! Speakers: Michael F. Chiang, MD: Michael F. Chiang is Director of the National Eye Institute. By background, he is a pediatric ophthalmologist and is also board-certified in clinical informatics. His research focuses on the interface of biomedical informatics and clinical ophthalmology in areas such as retinopathy of prematurity (ROP), telehealth, artificial intelligence, electronic health records, data science, and genotype-phenotype correlation. He is an Adjunct Investigator at the National Library of Medicine, and his group has published over 250 peer-reviewed papers and developed an assistive artificial intelligence system for ROP that received Breakthrough Status from the U.S. Food and Drug Administration.
DetailsOrganizerNEIWhenMon, Apr 01, 2024 - 11:00 am - 12:00 pmWhereOnline |
Embark on a journey of visionary insights! Join us for the launch of the NEI Informatics & Data-Driven Insights: Seminars & Dialogue Opportunities for Vision Health series, hosted by the National Eye Institute’s Office of Data Science and Health Informatics (ODSHI). Get ready as Michael Chiang, NEI Director, and Kerry Goetz, Associate Director of ODSHI, unveil the series and delve into NEI's perspective on the dynamic intersection of data science and vision research. Engage in stimulating dialogue with our esteemed speakers and share your input on future topics of interest. Don't miss this chance to be part of shaping the future of vision health! Speakers: Michael F. Chiang, MD: Michael F. Chiang is Director of the National Eye Institute. By background, he is a pediatric ophthalmologist and is also board-certified in clinical informatics. His research focuses on the interface of biomedical informatics and clinical ophthalmology in areas such as retinopathy of prematurity (ROP), telehealth, artificial intelligence, electronic health records, data science, and genotype-phenotype correlation. He is an Adjunct Investigator at the National Library of Medicine, and his group has published over 250 peer-reviewed papers and developed an assistive artificial intelligence system for ROP that received Breakthrough Status from the U.S. Food and Drug Administration. Kerry Goetz, MS: Kerry Goetz is the Associate Director for the National Eye Institute’s Office of Data Science and Health Informatics. The office is responsible for advancing data management and sharing strategies to make NEI data FAIR (Fully AI-Ready & Findable, Accessible, Interoperable, and Reusable). For more than a decade, Ms. Goetz has been leading the eyeGENE Program, a controlled access resource with data, samples, and a patient registry for rare eye conditions. She has implemented the sharing of several other clinical trial datasets through NEI BRICS, part of the NEI Data Commons. She has also been entrenched in standards development for more than 15 years. Ms. Goetz co-leads the Eye Care and Vision Research Observational Health Data Sciences and Informatics Working Group, is a member of the American Academy of Ophthalmology Standards Working Group, and also works to align imaging standards and health data to enable groundbreaking research. Accommodations: If you need reasonable accommodations to participate in this event, please send an email with your request to the Office of Data Science and Health Informatics at neiodshi@nih.gov at least 3 days prior to the event. For more information: Please contact the NEI Office of Data Science and Health Informatics at neiodshi@nih.gov. | 2024-04-01 11:00:00 | Online | Any | Data Science | Online | Michael F. Chiang (NEI),Kerry Goetz (NEI) | NEI | 0 | NEI Informatics & Data-Driven Insights: Seminars & Dialogue Opportunities for Vision Health | |
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Getting Started with scRNA-Seq Seminar SeriesDescriptionThe Single Cell Analysis Facility (SCAF) is a CCR facility dedicated to the application of single-cell technologies in cancer research. Based on the NIH Bethesda main campus, SCAF aims to provide the broadest range of project support from consultation on experimental design, sequencing, and data analysis. Learn more about SCAF and the single-cell genomics technologies available to CCR investigators in this overview presentation. The Single Cell Analysis Facility (SCAF) is a CCR facility dedicated to the application of single-cell technologies in cancer research. Based on the NIH Bethesda main campus, SCAF aims to provide the broadest range of project support from consultation on experimental design, sequencing, and data analysis. Learn more about SCAF and the single-cell genomics technologies available to CCR investigators in this overview presentation. RegisterOrganizerBTEPWhenWed, Apr 03, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The Single Cell Analysis Facility (SCAF) is a CCR facility dedicated to the application of single-cell technologies in cancer research. Based on the NIH Bethesda main campus, SCAF aims to provide the broadest range of project support from consultation on experimental design, sequencing, and data analysis. Learn more about SCAF and the single-cell genomics technologies available to CCR investigators in this overview presentation. | 2024-04-03 13:00:00 | Online Webinar | Any | Single Cell Technologies | Single Cell Technologies | Online | Mike Kelly (SCAF) | BTEP | 1 | The CCR Single Cell Analysis Facility (SCAF): An Overview |
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AI in Biomedical Research @ NIH Seminar SeriesDescriptionAlthough generative artificial intelligence (AI), a’la ChatGPT, is receiving a lot of “attention” these days, there are many other options for using AI to support biomedical research. In order to help analyze and interpret single cell genomics data, we have found that AI approaches that retain “explainability” are especially useful in providing functional insights into the underlying biological systems being studied, in this case, the human brain. Alternative Meeting Information: Meeting number: 2319 134 3591 ...Read MoreAlthough generative artificial intelligence (AI), a’la ChatGPT, is receiving a lot of “attention” these days, there are many other options for using AI to support biomedical research. In order to help analyze and interpret single cell genomics data, we have found that AI approaches that retain “explainability” are especially useful in providing functional insights into the underlying biological systems being studied, in this case, the human brain. Alternative Meeting Information: Meeting number: 2319 134 3591 Password: CAvtjHh*634 Join by video system Dial 23191343591@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2319 134 3591RegisterOrganizerBTEPWhenThu, Apr 04, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Although generative artificial intelligence (AI), a’la ChatGPT, is receiving a lot of “attention” these days, there are many other options for using AI to support biomedical research. In order to help analyze and interpret single cell genomics data, we have found that AI approaches that retain “explainability” are especially useful in providing functional insights into the underlying biological systems being studied, in this case, the human brain. Alternative Meeting Information: Meeting number: 2319 134 3591 Password: CAvtjHh*634 Join by video system Dial 23191343591@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2319 134 3591 | 2024-04-04 13:00:00 | Online Webinar | Any | AI | Online | Richard Scheuermann Ph.D. (NLM) | BTEP | 1 | Explainable Artificial Intelligence (XAI) and Single Cell Genomics to Understand the Cellular Complexity of the Human Brain | |
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DescriptionIn this talk, we will cover what differentiates parametric and non-parametric statistics, tests/methods of both types for different data scenarios, when to use one vs. the other, and tradeoffs/pitfalls of each. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (Read More In this talk, we will cover what differentiates parametric and non-parametric statistics, tests/methods of both types for different data scenarios, when to use one vs. the other, and tradeoffs/pitfalls of each. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research.
DetailsOrganizerBACSWhenTue, Apr 09, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room Frederick |
In this talk, we will cover what differentiates parametric and non-parametric statistics, tests/methods of both types for different data scenarios, when to use one vs. the other, and tradeoffs/pitfalls of each. This will be a hybrid event. This session will be recorded, and materials will be shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. | 2024-04-09 12:00:00 | Building 549 Executive Board Room Frederick | Any | Statistics | Hybrid | Duncan Donohue (Data Management Services Inc. a BRMI company) | BACS | 0 | Parametric vs. non-parametric statistics | |
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Getting Started with scRNA-Seq Seminar SeriesDescriptionSingle cell RNA sequencing (scRNA-Seq) is becoming increasingly more common in biomedical research, but what is scRNA-Seq? How does it differ from other transcriptomic approaches (e.g., bulk RNA-Seq), and what are the potential applications, technologies, and workflows? This presentation will introduce learners to scRNA-Seq, answering the above and touching on additional topics such as methodological challenges, concerns, and best practices. Single cell RNA sequencing (scRNA-Seq) is becoming increasingly more common in biomedical research, but what is scRNA-Seq? How does it differ from other transcriptomic approaches (e.g., bulk RNA-Seq), and what are the potential applications, technologies, and workflows? This presentation will introduce learners to scRNA-Seq, answering the above and touching on additional topics such as methodological challenges, concerns, and best practices. RegisterOrganizerBTEPWhenWed, Apr 10, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Single cell RNA sequencing (scRNA-Seq) is becoming increasingly more common in biomedical research, but what is scRNA-Seq? How does it differ from other transcriptomic approaches (e.g., bulk RNA-Seq), and what are the potential applications, technologies, and workflows? This presentation will introduce learners to scRNA-Seq, answering the above and touching on additional topics such as methodological challenges, concerns, and best practices. | 2024-04-10 13:00:00 | Online Webinar | Any | Single Cell,Single Cell Analysis | Single Cell RNA SEQ | Online | Charlie Seibert (NCI CCR SCAF),Saeed Yadranji Aghdam | BTEP | 1 | Introduction to single cell RNA-Seq |
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Distinguished Speakers Seminar SeriesDescriptionInformaticians aim to bring the right information to the forefront at the right time to improve decision-making. Dr. Greene's lab develops computational methods that integrate distinct large-scale datasets to extract the rich and intrinsic information embedded in such integrated data. Dr. Greene will discuss how this can reveal underlying principles of an organism’s genetics, its environment, and its response to that environment. Dr. Greene will also discuss work in the CU ...Read More Informaticians aim to bring the right information to the forefront at the right time to improve decision-making. Dr. Greene's lab develops computational methods that integrate distinct large-scale datasets to extract the rich and intrinsic information embedded in such integrated data. Dr. Greene will discuss how this can reveal underlying principles of an organism’s genetics, its environment, and its response to that environment. Dr. Greene will also discuss work in the CU Anschutz Center for Personalized Medicine that brings genetics to the point of care. Alternative Meeting Information: Meeting number: 2304 252 4992 Password: 7M6pV7UYw3* Join by video system Dial 23042524992@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2304 252 4992RegisterOrganizerBTEPWhenThu, Apr 11, 2024 - 1:00 pm - 2:00 pmWhereOnline |
Informaticians aim to bring the right information to the forefront at the right time to improve decision-making. Dr. Greene's lab develops computational methods that integrate distinct large-scale datasets to extract the rich and intrinsic information embedded in such integrated data. Dr. Greene will discuss how this can reveal underlying principles of an organism’s genetics, its environment, and its response to that environment. Dr. Greene will also discuss work in the CU Anschutz Center for Personalized Medicine that brings genetics to the point of care. Alternative Meeting Information: Meeting number: 2304 252 4992 Password: 7M6pV7UYw3* Join by video system Dial 23042524992@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2304 252 4992 | 2024-04-11 13:00:00 | Online | Any | Data Mining | Online | Casey Greene Ph.D. (CU Anschutz) | BTEP | 1 | Engineering Serendipity: Computational Methods for Large-Scale Data Extraction | |
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DescriptionThis session will outline the All of Us Researcher Workbench registration process for NIH researchers. Access to the Researcher Workbench is free, and all registered researchers are provided $300 initial computational credits. Some analyses in the cloud may incur additional costs beyond these credits. Attendees will also learn how to create a Google billing account in case they use up their initial credits. Finally, attendees will hear about funding opportunities that can support using the ...Read More This session will outline the All of Us Researcher Workbench registration process for NIH researchers. Access to the Researcher Workbench is free, and all registered researchers are provided $300 initial computational credits. Some analyses in the cloud may incur additional costs beyond these credits. Attendees will also learn how to create a Google billing account in case they use up their initial credits. Finally, attendees will hear about funding opportunities that can support using the All of Us dataset. Presenter: Dr. Chris Lord is a project manager at Vanderbilt University Medical Center that primarily assists with research support for the Data and Research Center (DRC), focusing on the User Support Hub, featured workspaces, and creating support materials for users. Additionally, he assists with the Help Desk, office hours, and user communications. Before joining the DRC in 2022, he received his Ph.D. from UCSD in cell biology and then was a postdoctoral fellow and research assistant professor at Vanderbilt University. This is the second of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged, but not required, to attend all sessions. Register for additional sessions below:
For questions about this webinar series, contact Cindy Sheffield, cynthia.sheffield@nih.gov
DetailsOrganizerNIH LibraryWhenFri, Apr 12, 2024 - 11:00 am - 12:00 pmWhereOnline |
This session will outline the All of Us Researcher Workbench registration process for NIH researchers. Access to the Researcher Workbench is free, and all registered researchers are provided $300 initial computational credits. Some analyses in the cloud may incur additional costs beyond these credits. Attendees will also learn how to create a Google billing account in case they use up their initial credits. Finally, attendees will hear about funding opportunities that can support using the All of Us dataset. Presenter: Dr. Chris Lord is a project manager at Vanderbilt University Medical Center that primarily assists with research support for the Data and Research Center (DRC), focusing on the User Support Hub, featured workspaces, and creating support materials for users. Additionally, he assists with the Help Desk, office hours, and user communications. Before joining the DRC in 2022, he received his Ph.D. from UCSD in cell biology and then was a postdoctoral fellow and research assistant professor at Vanderbilt University. This is the second of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged, but not required, to attend all sessions. Register for additional sessions below: Session 3 - April 19: Diving into the Researcher Workbench Data Session 4 - April 26: Introduction to Coding in the Researcher Workbench Session 5 - May 3: Resources to Support Researchers For questions about this webinar series, contact Cindy Sheffield, cynthia.sheffield@nih.gov | 2024-04-12 11:00:00 | Online | Any | All of Us Research Program | Online | Chris Lord (Vanderbilt University Medical Center) | NIH Library | 0 | All of Us NIH Library Webinar Series: Session 2 - All of Us Researcher Workbench Registration | |
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DescriptionGitHub is a powerful platform for tracking, sharing, and collaborating on software projects of all kinds. Whether you’re a bioinformatics analyst, a software engineer, or a biologist who sometimes codes, GitHub can help you and your team stay organized and work reproducibly. In this talk, we’ll cover concepts & tips for making the most of GitHub to manage bioinformatics projects, and we’ll demonstrate how we use these in ...Read More GitHub is a powerful platform for tracking, sharing, and collaborating on software projects of all kinds. Whether you’re a bioinformatics analyst, a software engineer, or a biologist who sometimes codes, GitHub can help you and your team stay organized and work reproducibly. In this talk, we’ll cover concepts & tips for making the most of GitHub to manage bioinformatics projects, and we’ll demonstrate how we use these in practice with CCBR pipelines. Basic knowledge of git/GitHub is recommended but not required. Anyone who codes, regardless of experience level, will gain something from this talk. This will be a hybrid event. This session will be recorded, and materials will be posted on the ABCS training site and also shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. No registration required. DetailsOrganizerBACSWhenTue, Apr 16, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room Frederick |
GitHub is a powerful platform for tracking, sharing, and collaborating on software projects of all kinds. Whether you’re a bioinformatics analyst, a software engineer, or a biologist who sometimes codes, GitHub can help you and your team stay organized and work reproducibly. In this talk, we’ll cover concepts & tips for making the most of GitHub to manage bioinformatics projects, and we’ll demonstrate how we use these in practice with CCBR pipelines. Basic knowledge of git/GitHub is recommended but not required. Anyone who codes, regardless of experience level, will gain something from this talk. This will be a hybrid event. This session will be recorded, and materials will be posted on the ABCS training site and also shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. No registration required. | 2024-04-16 12:00:00 | Building 549 Executive Board Room Frederick | Any | GitHub | Hybrid | Kelly Sovacool CCR Collaborative Bioinformatics Resource (CCBR) | BACS | 0 | Organizing and documenting NGS pipelines on GitHub | |
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Getting Started with scRNA-Seq Seminar SeriesDescriptionKimia Dadkhah, bioinformatics analyst (SCAF), will talk about Cell Ranger output and essential quality control metrics in single cell data analysis, how to interpret these and make informed decisions, and other considerations to keep in mind when assessing the quality of returned data from SCAF. Kimia Dadkhah, bioinformatics analyst (SCAF), will talk about Cell Ranger output and essential quality control metrics in single cell data analysis, how to interpret these and make informed decisions, and other considerations to keep in mind when assessing the quality of returned data from SCAF. RegisterOrganizerBTEPWhenWed, Apr 17, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Kimia Dadkhah, bioinformatics analyst (SCAF), will talk about Cell Ranger output and essential quality control metrics in single cell data analysis, how to interpret these and make informed decisions, and other considerations to keep in mind when assessing the quality of returned data from SCAF. | 2024-04-17 13:00:00 | Online Webinar | Any | Single Cell,Single Cell Analysis | Single Cell RNA-seq | Online | Kimia Dadkhah (SCAF) | BTEP | 1 | SCAF: Overview of Cell Ranger output files and single cell data analysis quality control |
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DescriptionDear Colleagues, Dear Colleagues, For questions contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenFri, Apr 19, 2024 - 10:00 am - 11:00 amWhereOnline |
Dear Colleagues, This webinar will introduce TumorDecon, a computational tool that's at an early stage of contributing to the intersection of bioinformatics and oncology. TumorDecon aims to simplify the complex nature of tumors by utilizing deconvolution algorithms to estimate the percentages of various immune cells from gene expression profiles of the bulk of cells.During the presentation, the following will be discussed: • Basic overview of TumorDecon, touching upon how it processes transcriptomic data to offer a glimpse into the cellular composition of tumors.• Preliminary applications of TumorDecon, drawing from a few examples and datasets to illustrate its potential utility in research and possibly in clinical contexts.• Live demonstration of TumorDecon's software, aiming to provide a clear picture of how users can navigate and utilize the tool. Audience engagement is encouraged to exchange ideas and discuss how tools like TumorDecon can be improved and might fit into the broader landscape of cancer research and treatment. For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-04-19 10:00:00 | Online | Any | Cancer | Online | Leili Shahriyari (University of Massachusetts Amherst) | CBIIT | 0 | Webinar on TumorDecon: A digital cytometry software | |
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DescriptionIn this webinar, attendees will learn the basics of using the All of Us Researcher Workbench’s point-and-click research tools, including how to create a workspace, how to build a cohort of All of Us participants using the Cohort Builder, and more. Presenter: Dr. Chris Lord is a project manager at Vanderbilt University Medical Center that primarily assists with research support for the Data and Research Center (DRC), focusing on ...Read More In this webinar, attendees will learn the basics of using the All of Us Researcher Workbench’s point-and-click research tools, including how to create a workspace, how to build a cohort of All of Us participants using the Cohort Builder, and more. Presenter: Dr. Chris Lord is a project manager at Vanderbilt University Medical Center that primarily assists with research support for the Data and Research Center (DRC), focusing on the User Support Hub, featured workspaces, and creating support materials for users. Additionally, he assists with the Help Desk, office hours, and user communications. Before joining the DRC in 2022, he received his Ph.D. from UCSD in cell biology and then was a postdoctoral fellow and research assistant professor at Vanderbilt University. This is the third of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged, but not required, to attend all sessions. Register for additional sessions below:
For questions about this webinar series, contact Cindy Sheffield, cynthia.sheffield@nih.gov
DetailsOrganizerNIH LibraryWhenFri, Apr 19, 2024 - 11:00 am - 12:00 pmWhereOnline |
In this webinar, attendees will learn the basics of using the All of Us Researcher Workbench’s point-and-click research tools, including how to create a workspace, how to build a cohort of All of Us participants using the Cohort Builder, and more. Presenter: Dr. Chris Lord is a project manager at Vanderbilt University Medical Center that primarily assists with research support for the Data and Research Center (DRC), focusing on the User Support Hub, featured workspaces, and creating support materials for users. Additionally, he assists with the Help Desk, office hours, and user communications. Before joining the DRC in 2022, he received his Ph.D. from UCSD in cell biology and then was a postdoctoral fellow and research assistant professor at Vanderbilt University. This is the third of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged, but not required, to attend all sessions. Register for additional sessions below: Session 4 - April 26: Introduction to Coding in the Researcher Workbench Session 5 - May 3: Resources to Support Researchers For questions about this webinar series, contact Cindy Sheffield, cynthia.sheffield@nih.gov | 2024-04-19 11:00:00 | Online | Any | All of Us Research Program | Online | Chris Lord (Vanderbilt University Medical Center) | NIH Library | 0 | All of Us NIH Library Seminar Series: Session 3 - Diving into the Researcher Workbench Data | |
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DescriptionLooking for an introduction to artificial intelligence (AI) or an opportunity to expand on what you already know? Attend this workshop hosted by the NIH-funded Bridge2AI CHoRUS network and the University of Florida College of Medicine. Whether you register for the beginner or advanced track, you’ll be equipped with knowledge and skills that you could transfer to your own cancer research. If you have little-to-no experience using AI, join ...Read More Looking for an introduction to artificial intelligence (AI) or an opportunity to expand on what you already know? Attend this workshop hosted by the NIH-funded Bridge2AI CHoRUS network and the University of Florida College of Medicine. Whether you register for the beginner or advanced track, you’ll be equipped with knowledge and skills that you could transfer to your own cancer research. If you have little-to-no experience using AI, join the “AI Boot Camp” (beginner track). If you have experience, the “Generative AI with Diffusion Models Workshop” (advanced track) might be better for you. Learn more about each track below! AI Boot CampRegister if you have no prior programming experience and/or are an AI and machine learning novice. You’ll learn about:
Register if you understand PyTorch and deep learning. You’ll learn:
Upon completing either track, you’ll receive a digital Credly credentials badge and certificate. DetailsOrganizerCBIITWhenSun, Apr 21, 2024 - 7:30 am - 5:30 pmWhereOnline |
Looking for an introduction to artificial intelligence (AI) or an opportunity to expand on what you already know? Attend this workshop hosted by the NIH-funded Bridge2AI CHoRUS network and the University of Florida College of Medicine. Whether you register for the beginner or advanced track, you’ll be equipped with knowledge and skills that you could transfer to your own cancer research. If you have little-to-no experience using AI, join the “AI Boot Camp” (beginner track). If you have experience, the “Generative AI with Diffusion Models Workshop” (advanced track) might be better for you. Learn more about each track below! AI Boot Camp Register if you have no prior programming experience and/or are an AI and machine learning novice. You’ll learn about: the Jupyter Lab environment and how to create Jupyter notebooks. the rules of the programming language “Python” and how to develop and execute the code for manipulating biomedical data. important Python libraries for biomedical data science. additional topics related to large language models (LLMs), multidisciplinary collaboration, AI, and more. Generative AI with Diffusion Models Workshop Register if you understand PyTorch and deep learning. You’ll learn: how to improve the quality of generated images through the process of gradually diffusing the noise. how to control the image output with context embeddings. how to generate images from English text-prompts. additional topics related to denoising diffusion models. Upon completing either track, you’ll receive a digital Credly credentials badge and certificate. | 2024-04-21 07:30:00 | Online | Any | AI | Online | CBIIT | 0 | AI for Clinical Care Workshop | ||
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DescriptionDear Colleagues, Dear Colleagues, For questions contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenMon, Apr 22, 2024 - 10:00 am - 11:00 amWhereOnline |
Dear Colleagues, In this webinar, you'll get an introduction to XNAT. XNAT is an open-source platform for managing, processing, and sharing medical imaging and related data in research settings. You can use XNAT's flexible architecture and extensive customization options to streamline your workflows and collaborate effectively. It can also help to accelerate discoveries in neuroscience and medical imaging research. You'll learn about key features and benefits of XNAT, including example use cases in oncology research. For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-04-22 10:00:00 | Online | Any | Image Analysis | Online | Daniel Marcus (Washington University School of Medicine in St. Louis) | CBIIT | 0 | XNAT: an open-source imaging informatics software platform | |
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Description
Intended Audience
This webinar targets researchers interested in exploring genomic mutation analysis capabilities within the recently introduced NCI Genomic Data Commons (GDC) 2.0 platform. It aims to accommodate individuals interested in analyzing genes and mutations within a cancer disease type, irrespective of their prior genomics experience. AbstractGDC 2.0 adopts a "cohort-centric" approach, allowing users to construct custom sets of cases and conduct gene- and variant-level data analysis directly within their web browser. This ...Read More
Intended Audience
This webinar targets researchers interested in exploring genomic mutation analysis capabilities within the recently introduced NCI Genomic Data Commons (GDC) 2.0 platform. It aims to accommodate individuals interested in analyzing genes and mutations within a cancer disease type, irrespective of their prior genomics experience. AbstractGDC 2.0 adopts a "cohort-centric" approach, allowing users to construct custom sets of cases and conduct gene- and variant-level data analysis directly within their web browser. This webinar will demonstrate the new cohort-centric workflow, from cohort building to analyzing genes and mutations associated with a cohort. Additionally, participants may ask GDC experts questions and provide feedback on GDC 2.0. Included Topics
DetailsOrganizerNCI Genomic Data CommonsWhenMon, Apr 22, 2024 - 2:00 pm - 3:00 pmWhereOnline |
Intended Audience This webinar targets researchers interested in exploring genomic mutation analysis capabilities within the recently introduced NCI Genomic Data Commons (GDC) 2.0 platform. It aims to accommodate individuals interested in analyzing genes and mutations within a cancer disease type, irrespective of their prior genomics experience. Abstract GDC 2.0 adopts a "cohort-centric" approach, allowing users to construct custom sets of cases and conduct gene- and variant-level data analysis directly within their web browser. This webinar will demonstrate the new cohort-centric workflow, from cohort building to analyzing genes and mutations associated with a cohort. Additionally, participants may ask GDC experts questions and provide feedback on GDC 2.0. Included Topics Utilizing the Cohort Builder to create custom cohorts for specific cancer disease types Employing the Mutation Frequency Tool to visualize the most frequently mutated genes within a cohort Using OncoMatrix to analyze the top mutated genes affected by high-impact mutations in a cohort Using ProteinPaint to explore mutations and their potential impact within protein coding regions of genes Webex Information Meeting number (access code): 2306 971 7385 Meeting password: TGwpjPf@283 (84975731 from phones and video systems) | 2024-04-22 14:00:00 | Online | Any | Cancer genomics | Online | Dr. Bill Wysocki (UChicago) | NCI Genomic Data Commons | 0 | Genomic Mutation Analysis in GDC 2.0 | |
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DescriptionDr. Stephanie Harmon obtained her Ph.D. in medical physics at the University of Wisconsin–Madison and did her postgraduate training at Leidos Biomedical Research where she worked within the Molecular Imaging Branch and investigated computational biomarkers in various state-of-the-art prostate imaging modalities. In 2020, she became a staff scientist within the newly formed Artificial Intelligence Resource of the NCI. Dr. Harmon’s research interests focus on computational approaches, including computer ...Read More Dr. Stephanie Harmon obtained her Ph.D. in medical physics at the University of Wisconsin–Madison and did her postgraduate training at Leidos Biomedical Research where she worked within the Molecular Imaging Branch and investigated computational biomarkers in various state-of-the-art prostate imaging modalities. In 2020, she became a staff scientist within the newly formed Artificial Intelligence Resource of the NCI. Dr. Harmon’s research interests focus on computational approaches, including computer vision and artificial intelligence, for combining multiscale biological and clinicopathological data to model cancer and cancer-related outcomes. She investigates the functional relationship of imaging characteristics across biological scales and their role in phenotypic heterogeneity in various cancer types. Her research centers around the idea that the use of integrative biomarkers from various imaging scales could enhance the understanding of disease and the role of imaging in cancer diagnosis and treatment. Her long-term goal is to identify interpretable imaging-based biomarkers on histopathological images that can predict underlying molecular phenotypes and translate these findings to improve diagnosis, treatment, and patient outcomes in various cancers. Dr. Harmon received many awards during her training, including the Prostate Cancer Foundation Young Investigator Award and the NCI Director’s Intramural Innovation Award. Dr. Harmon has published over 75 peer-reviewed articles, including publications in the Journal of Nuclear Medicine, PLOS One, JAMA Oncology, Cancer Imaging, Radiology, American Journal of Pathology, Journal of Medical Imaging, Nature Medicine, Journal of Clinical Oncology, Clinical Cancer Research, and Nature Communications. For more information, please contact Aniruddha Ganguly, Ph.D. Meeting number (access code): 2319 301 4914 Meeting password: KpxUgxg$372 DetailsOrganizerNCIWhenTue, Apr 23, 2024 - 9:30 am - 10:30 amWhereOnline |
Dr. Stephanie Harmon obtained her Ph.D. in medical physics at the University of Wisconsin–Madison and did her postgraduate training at Leidos Biomedical Research where she worked within the Molecular Imaging Branch and investigated computational biomarkers in various state-of-the-art prostate imaging modalities. In 2020, she became a staff scientist within the newly formed Artificial Intelligence Resource of the NCI. Dr. Harmon’s research interests focus on computational approaches, including computer vision and artificial intelligence, for combining multiscale biological and clinicopathological data to model cancer and cancer-related outcomes. She investigates the functional relationship of imaging characteristics across biological scales and their role in phenotypic heterogeneity in various cancer types. Her research centers around the idea that the use of integrative biomarkers from various imaging scales could enhance the understanding of disease and the role of imaging in cancer diagnosis and treatment. Her long-term goal is to identify interpretable imaging-based biomarkers on histopathological images that can predict underlying molecular phenotypes and translate these findings to improve diagnosis, treatment, and patient outcomes in various cancers. Dr. Harmon received many awards during her training, including the Prostate Cancer Foundation Young Investigator Award and the NCI Director’s Intramural Innovation Award. Dr. Harmon has published over 75 peer-reviewed articles, including publications in the Journal of Nuclear Medicine, PLOS One, JAMA Oncology, Cancer Imaging, Radiology, American Journal of Pathology, Journal of Medical Imaging, Nature Medicine, Journal of Clinical Oncology, Clinical Cancer Research, and Nature Communications. For more information, please contact Aniruddha Ganguly, Ph.D. Meeting number (access code): 2319 301 4914 Meeting password: KpxUgxg$372 | 2024-04-23 09:30:00 | Online | Any | AI,Image Analysis | Online | Stephanie A. Harmon (Molecular Imagin Branch CCR NCI) | NCI | 0 | Cancer Diagnosis Program Science Session Series: AI-Driven Imaging Biomarkers in Genitourinary Cancers | |
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DescriptionWhat’s the difference between “regular” statistics (i.e., what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will ...Read More What’s the difference between “regular” statistics (i.e., what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach and will cover the concepts of hypothesis testing, confidence intervals, Type I and Type II errors, statistical power, and p-values. Technical details will be kept to an absolute minimum. The class will be taught by the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES). Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees, and references will be provided for in-depth self-study. You must register separately for Part 2 of this class series. Individuals who need reasonable accommodations to participate should contact the NIH Interpreting Office directly at nih@ainterpreting.com, or the NIH Library Information Desk at 301-496-1080. Requests should be made at least five business days in advance in order to ensure availability. DetailsOrganizerORF/NIH LibraryWhenTue, Apr 23, 2024 - 11:00 am - 1:00 pmWhereOnline |
What’s the difference between “regular” statistics (i.e., what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 1 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 1 will address the frequentist approach and will cover the concepts of hypothesis testing, confidence intervals, Type I and Type II errors, statistical power, and p-values. Technical details will be kept to an absolute minimum. The class will be taught by the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES). Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees, and references will be provided for in-depth self-study. You must register separately for Part 2 of this class series. Individuals who need reasonable accommodations to participate should contact the NIH Interpreting Office directly at nih@ainterpreting.com, or the NIH Library Information Desk at 301-496-1080. Requests should be made at least five business days in advance in order to ensure availability. | 2024-04-23 11:00:00 | Online | Any | Statistics | Online | Xiaobai Li | ORF/NIH Library | 0 | Statistical Inference - Frequentist Approach: Part 1 | |
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DescriptionCrunching of large data requires large resources. Exploration of holobiont metagenomes is considered a “big data” project and here I’ll be describing how I used the FRCE cluster to explore 794 metagenomes simultaneously to assess the biosynthetic capacity associated with lichens. This presentation will focus more on computational tools and techniques used to solve metagenomic problems. This presentation is aimed at beginner to intermediate users. A basic understanding of Bash and ...Read More Crunching of large data requires large resources. Exploration of holobiont metagenomes is considered a “big data” project and here I’ll be describing how I used the FRCE cluster to explore 794 metagenomes simultaneously to assess the biosynthetic capacity associated with lichens. This presentation will focus more on computational tools and techniques used to solve metagenomic problems. This presentation is aimed at beginner to intermediate users. A basic understanding of Bash and Slurm would be beneficial but not vital. This will be a hybrid event. This session will be recorded, and materials will be posted on the ABCS training site and also shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. DetailsOrganizerBACSWhenTue, Apr 23, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Conference Room B, Frederick |
Crunching of large data requires large resources. Exploration of holobiont metagenomes is considered a “big data” project and here I’ll be describing how I used the FRCE cluster to explore 794 metagenomes simultaneously to assess the biosynthetic capacity associated with lichens. This presentation will focus more on computational tools and techniques used to solve metagenomic problems. This presentation is aimed at beginner to intermediate users. A basic understanding of Bash and Slurm would be beneficial but not vital. This will be a hybrid event. This session will be recorded, and materials will be posted on the ABCS training site and also shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. | 2024-04-23 12:00:00 | Building 549 Conference Room B, Frederick | Any | Big Data | Hybrid | Sam Waterworth Molecular Targets Program NCI | BACS | 0 | Practical use case of FRCE cluster utilities: Exploring the metagenome of 794 lichen holobionts | |
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DescriptionJoin Dr. Kai Tan of the Children’s Hospital of Philadelphia as he discusses his cutting-edge technology, CytoCommunity, for the supervised and unsupervised discovery of tissue cellular neighborhoods. CytoCommunity offers a powerful and scalable method for de novo interpretation of cellular function and cell-cell communications in tissue microenvironments. This event is part of the NCI Emerging ...Read More Join Dr. Kai Tan of the Children’s Hospital of Philadelphia as he discusses his cutting-edge technology, CytoCommunity, for the supervised and unsupervised discovery of tissue cellular neighborhoods. CytoCommunity offers a powerful and scalable method for de novo interpretation of cellular function and cell-cell communications in tissue microenvironments. This event is part of the NCI Emerging Technologies Seminar Series, which highlights novel, NCI-funded technologies working to transform cancer research and clinical care. DetailsOrganizerCBIITWhenTue, Apr 23, 2024 - 2:00 pm - 3:00 pmWhereOnline |
Join Dr. Kai Tan of the Children’s Hospital of Philadelphia as he discusses his cutting-edge technology, CytoCommunity, for the supervised and unsupervised discovery of tissue cellular neighborhoods. CytoCommunity offers a powerful and scalable method for de novo interpretation of cellular function and cell-cell communications in tissue microenvironments. This event is part of the NCI Emerging Technologies Seminar Series, which highlights novel, NCI-funded technologies working to transform cancer research and clinical care. | 2024-04-23 14:00:00 | Online | Any | AI | Online | Kai Tan (Children’s Hospital of Philadelphia) | CBIIT | 0 | Finding Neighborhoods in the Land of Spatial Omics | |
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DescriptionPlease join us on Wednesday, April 24, 2024, when Dr. Abhishek Jha, co-founder and CEO of Elucidata, will present " Data Quality for LLMs: Building a Reliable Data Foundation." The presentation starts at 11:00 a.m. ET and ends at noon. Please join us on Wednesday, April 24, 2024, when Dr. Abhishek Jha, co-founder and CEO of Elucidata, will present " Data Quality for LLMs: Building a Reliable Data Foundation." The presentation starts at 11:00 a.m. ET and ends at noon. • unstructured data from the public repository Gene Expression Omnibus. DetailsOrganizerCBIITWhenWed, Apr 24, 2024 - 11:00 am - 12:00 pmWhereOnline |
Please join us on Wednesday, April 24, 2024, when Dr. Abhishek Jha, co-founder and CEO of Elucidata, will present " Data Quality for LLMs: Building a Reliable Data Foundation." The presentation starts at 11:00 a.m. ET and ends at noon. If you use large language models (LLMs) in your cancer research, register for this seminar to hear Elucidata’s Dr. Abhishek Jha discuss how data quality impacts LLM performance. A reliable foundation that is well annotated and accessible to an LLM plays a major role in the value of its results. You’ll see examples of how LLM-powered artificial intelligence (AI) agents query across three versions of the same gene expression corpus with differing results, including: • unstructured data from the public repository Gene Expression Omnibus.• structured data from the Crowd Extracted Expression of Differential Signatures project.• clean, linked, and harmonized data. Dr. Jha will use these examples to discuss how the different quality in these data sources impacts LLM performance. | 2024-04-24 11:00:00 | Online | Any | AI,Data Management | Online | Dr. Abhishek Jha (Elucidata) | CBIIT | 0 | Data Quality for LLMs: Building a Reliable Data Foundation | |
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Getting Started with scRNA-Seq Seminar SeriesDescriptionThis seminar provides an introduction to R in the context of single cell RNA-Seq analysis with Seurat. In this seminar, attendees will learn about options for analyzing scRNA-Seq data, resources for learning R, how to import scRNA-Seq data, and how to create, examine, and access data stored in a Seurat object. This seminar provides an introduction to R in the context of single cell RNA-Seq analysis with Seurat. In this seminar, attendees will learn about options for analyzing scRNA-Seq data, resources for learning R, how to import scRNA-Seq data, and how to create, examine, and access data stored in a Seurat object. RegisterOrganizerBTEPWhenWed, Apr 24, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This seminar provides an introduction to R in the context of single cell RNA-Seq analysis with Seurat. In this seminar, attendees will learn about options for analyzing scRNA-Seq data, resources for learning R, how to import scRNA-Seq data, and how to create, examine, and access data stored in a Seurat object. | 2024-04-24 13:00:00 | Online Webinar | Beginner | R programming,Single Cell Analysis,Single Cell RNA-Seq | R programming,Seurat,Single Cell RNA-seq | Online | Alex Emmons (BTEP) | BTEP | 1 | Introduction to scRNA-Seq with R (Seurat) |
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DescriptionDear Colleagues, Dear Colleagues, For questions contact Daoud Meerzaman or Kayla Strauss.
DetailsOrganizerCBIITWhenFri, Apr 26, 2024 - 10:00 am - 11:00 amWhereOnline |
Dear Colleagues, In this webinar, you'll get an introduction to WebMeV. WebMeV aims to democratize bioinformatics analysis for biological sciences researchers. The maturation of many bioinformatics processes in sequencing has enabled the standardization of protocols. This allows simple programmatic encapsulation of the analysis. New technology has also allowed increased accessibility and replication of the software environment itself. WebMeV provides both transparency and reproducibility of the analysis code and build environment. It also provides an easy to use web-based graphical interface to count-based bioinformatics analyses of RNASeq, scRNASeq, and more. For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-04-26 10:00:00 | Online | Any | Bioinformatics Software,Genomics | Online | John Quackenbush (Harvard T.H. Chan School of Public Health) | CBIIT | 0 | Webinar on WebMeV: Web-based Software for Exploratory Next Generation Genomic Data Analysis | |
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DescriptionWebinar attendees will hear tips and tricks to code efficiently in the Researcher Workbench using R and RStudio. Although Python and SAS are alternative programming languages available on the Researcher Workbench, this session will only focus on using R and RStudio. Participants should already have a general understanding of how to code in R prior to attending the session. This session will not cover the basics of coding in R. Presenter:Read More Webinar attendees will hear tips and tricks to code efficiently in the Researcher Workbench using R and RStudio. Although Python and SAS are alternative programming languages available on the Researcher Workbench, this session will only focus on using R and RStudio. Participants should already have a general understanding of how to code in R prior to attending the session. This session will not cover the basics of coding in R. Presenter: Aymone Kouame is a Data Scientist at Vanderbilt University Medical Center. She leads the Data Science & Engineering efforts for Digital Health Technologies (Fitbit). She is involved in the back-end and front-end processes of the All of Us Researcher Workbench curated data repository, working closely with the Curation and the Research Support Teams. Aymone discovered her passion for Data Science after a few years working/studying in Business and Accounting. She holds Master Degrees of Science in Data Analytics, Information Systems, and Accounting and Business Management. Before VUMC, she worked on the Data Science team of a cyber security company. This is the fourth of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged to attend all sessions. Register for additional session below:
For questions about this webinar series, contact Cindy Sheffield, cynthia.sheffield@nih.gov
DetailsOrganizerNIH LibraryWhenFri, Apr 26, 2024 - 11:00 am - 12:00 pmWhereOnline |
Webinar attendees will hear tips and tricks to code efficiently in the Researcher Workbench using R and RStudio. Although Python and SAS are alternative programming languages available on the Researcher Workbench, this session will only focus on using R and RStudio. Participants should already have a general understanding of how to code in R prior to attending the session. This session will not cover the basics of coding in R. Presenter: Aymone Kouame is a Data Scientist at Vanderbilt University Medical Center. She leads the Data Science & Engineering efforts for Digital Health Technologies (Fitbit). She is involved in the back-end and front-end processes of the All of Us Researcher Workbench curated data repository, working closely with the Curation and the Research Support Teams. Aymone discovered her passion for Data Science after a few years working/studying in Business and Accounting. She holds Master Degrees of Science in Data Analytics, Information Systems, and Accounting and Business Management. Before VUMC, she worked on the Data Science team of a cyber security company. This is the fourth of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged to attend all sessions. Register for additional session below: Session 5 - May 3: Resources to Support Researchers For questions about this webinar series, contact Cindy Sheffield, cynthia.sheffield@nih.gov | 2024-04-26 11:00:00 | Online | Any | All of Us Research Program | Online | Aymone Kouame (Vanderbilt University Medical Center) | NIH Library | 0 | All of Us NIH Library Webinar Series: Session 4 - Introduction to Coding in the Researcher Workbench | |
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DescriptionWhat’s the difference between “regular” statistics (i.e., what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 ...Read More What’s the difference between “regular” statistics (i.e., what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach and will cover the concepts of Bayes’ Theorem, prior and posterior distributions, and Bayes factor. Technical details will be kept to an absolute minimum. This class will be taught by the Clinical Center's Biostatistics and Clinical Epidemiology Service (CC/BCES). Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees, and references will be provided for in-depth self-study. You must register separately for Part 1 of this class series. DetailsOrganizerNIH LibraryWhenTue, Apr 30, 2024 - 11:00 am - 12:30 pmWhereOnline |
What’s the difference between “regular” statistics (i.e., what you may have been using in the past several years) and the “new” Bayesian statistics? Which one should you use for your next study? This is Part 2 of a two-part lecture series intended for non-statisticians interested in understanding the basic, intuitive thinking behind the two schools of statistical inference: frequentist (known as classical) and Bayesian. Part 2 will address the Bayesian approach and will cover the concepts of Bayes’ Theorem, prior and posterior distributions, and Bayes factor. Technical details will be kept to an absolute minimum. This class will be taught by the Clinical Center's Biostatistics and Clinical Epidemiology Service (CC/BCES). Although you may attend only one part of this series, attending both parts will give you a better sense of the contrast between these two statistical approaches. During the class, time will be devoted to questions from attendees, and references will be provided for in-depth self-study. You must register separately for Part 1 of this class series. | 2024-04-30 11:00:00 | Online | Any | Data analysis,Statistics | Online | Nusrat Rabbee | NIH Library | 0 | Statistical Inference - Bayesian Concepts: Part 2 | |
1448 |
Getting Started with scRNA-Seq Seminar SeriesDescriptionThis lesson reviews many of the standard steps in a scRNA-Seq workflow: QC filtering, normalization, scaling, and clustering. This lesson reviews many of the standard steps in a scRNA-Seq workflow: QC filtering, normalization, scaling, and clustering. RegisterOrganizerBTEPWhenWed, May 01, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This lesson reviews many of the standard steps in a scRNA-Seq workflow: QC filtering, normalization, scaling, and clustering. | 2024-05-01 13:00:00 | Online Webinar | Beginner | Single Cell Analysis,Single Cell RNA-Seq | R programming,Single Cell RNA-seq | Online | Alex Emmons (BTEP) | BTEP | 1 | Getting Started with Seurat: QC to Clustering |
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To register to attend, you must log in to your SITC Cancer Immunotherapy CONNECT account. Don’t have an account? Create a free one. Join Dr. Mullin of the Roswell Park Comprehensive Cancer Center and Dr. Bao of the UPMC Hillman Cancer Center as they talk about artificial intelligence’s (AI’s) role in real-time monitoring of patients who are receiving immunotherapy for immune-related adverse events (irAE). If you attend, you’ll learn about: the current application of AI in irAE monitoring and detection. future applications of these technologies across the field. This webinar is the first of the 2024 SITC-NCI Computational Immuno-oncology Webinar Series, which focuses on the application of AI in immuno-oncology. It consists of nine free webinars to help individual research labs overcome computational challenges while analyzing and integrating different assay data throughout the immuno-oncology spectrum using AI. The annual series aims to educate early-career scientists, increase participants’ awareness of and engagement in NCI-supported Cancer Moonshot℠ Immunotherapy Networks, and fulfill the Blue Ribbon Panel’s goal of accelerating progress in cancer research. | 2024-05-02 12:00:00 | Online | Any | AI | Online | Sarah Mullin (Roswell Park Comprehensive Cancer Center) Riyue Bao (UPMC Hillman Cancer Center) | CBIIT | 0 | Real-Time AI Monitoring & Early Detection of Immune-Related Adverse Events | |
1381 |
AI in Biomedical Research @ NIH Seminar SeriesDescriptionThe explosion of biomedical big data and information in the past decade or so has created new opportunities for discoveries to improve the treatment and prevention of human diseases. As such, the field of medicine is undergoing a paradigm shift driven by AI-powered analytical solutions. This talk explores the benefits (and risks) of AI and ChatGPT, highlighting their pivotal roles in revolutionizing biomedical discovery, patient care, diagnosis, treatment, and medical research. By ...Read More The explosion of biomedical big data and information in the past decade or so has created new opportunities for discoveries to improve the treatment and prevention of human diseases. As such, the field of medicine is undergoing a paradigm shift driven by AI-powered analytical solutions. This talk explores the benefits (and risks) of AI and ChatGPT, highlighting their pivotal roles in revolutionizing biomedical discovery, patient care, diagnosis, treatment, and medical research. By demonstrating their uses in some real-world applications such as improving biomedical literature searches (Nature Biotechnology 2018; Nature 2020; Nature Genetics 2023), accelerating patient trial matching (TrialGPT, in collaboration with NCI clinicians), and assisting gene set analysis (GeneAgent, in collaboration with NCI researchers), we underscore the potential of AI and ChatGPT in enhancing clinical decision-making, personalizing patient experiences, and accelerating knowledge discovery. Alternative Meeting Information: Meeting number: 2300 950 8025 Password: qiQsnDx?923 Join by video system Dial 23009508025@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2300 950 8025RegisterOrganizerBTEPWhenThu, May 02, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The explosion of biomedical big data and information in the past decade or so has created new opportunities for discoveries to improve the treatment and prevention of human diseases. As such, the field of medicine is undergoing a paradigm shift driven by AI-powered analytical solutions. This talk explores the benefits (and risks) of AI and ChatGPT, highlighting their pivotal roles in revolutionizing biomedical discovery, patient care, diagnosis, treatment, and medical research. By demonstrating their uses in some real-world applications such as improving biomedical literature searches (Nature Biotechnology 2018; Nature 2020; Nature Genetics 2023), accelerating patient trial matching (TrialGPT, in collaboration with NCI clinicians), and assisting gene set analysis (GeneAgent, in collaboration with NCI researchers), we underscore the potential of AI and ChatGPT in enhancing clinical decision-making, personalizing patient experiences, and accelerating knowledge discovery. Alternative Meeting Information: Meeting number: 2300 950 8025 Password: qiQsnDx?923 Join by video system Dial 23009508025@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2300 950 8025 | 2024-05-02 13:00:00 | Online Webinar | Any | AI,Text Mining | Online | Dr. Zhiyong Lu (NCBI) | BTEP | 1 | Transforming Medicine with AI: From TrialGPT to GeneAgent | |
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DescriptionWebinar attendees will learn how to use and navigate the All of Us Researcher Workbench’s User Support Hub, which provides video tutorials, help articles, and more. Attendees will also learn about opportunities to get support from the Researcher Workbench help desk and how to stay involved with the All of Us Research Program through the program’s network of partners. Presenters: Rubin Baskir, ...Read More Webinar attendees will learn how to use and navigate the All of Us Researcher Workbench’s User Support Hub, which provides video tutorials, help articles, and more. Attendees will also learn about opportunities to get support from the Researcher Workbench help desk and how to stay involved with the All of Us Research Program through the program’s network of partners. Presenters: Rubin Baskir, Ph.D., Researcher Engagement and Outreach Branch Chief, All of Us Research Program Sydney McMaster, CHES, Program Officer, All of Us Research Program This is the fifth of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged, but not required, to attend all sessions. For questions about this webinar series, contact Cindy Sheffield, cynthia.sheffield@nih.gov
DetailsOrganizerNIH LibraryWhenFri, May 03, 2024 - 11:00 am - 12:00 pmWhereOnline |
Webinar attendees will learn how to use and navigate the All of Us Researcher Workbench’s User Support Hub, which provides video tutorials, help articles, and more. Attendees will also learn about opportunities to get support from the Researcher Workbench help desk and how to stay involved with the All of Us Research Program through the program’s network of partners. Presenters: Rubin Baskir, Ph.D., Researcher Engagement and Outreach Branch Chief, All of Us Research ProgramRubin Baskir, Ph.D., is a Program Officer and the Researcher Engagement and Outreach Branch Chief within the NIH All of Us Research Program engagement team. He is excited to be working with a team that helps maintain the essential relationship between the program, participants, and community partners. Prior to his current position, Baskir began working in the All of Us Research Program as part of an American Association for the Advancement of Science (AAAS) science and technology policy fellowship. His interest in health policy began during his graduate work at Vanderbilt University, where, in addition to researching mechanisms of disease and signal transduction, he gained an appreciation for the effects of policy on human health. Baskir received his doctorate in clinical and cellular biology from Vanderbilt University and his Bachelor’s degree in biology from Washington University in St. Louis. Sydney McMaster, CHES, Program Officer, All of Us Research ProgramAs a passionate health equity advocate, Sydney McMaster has served as a Program Officer and Researcher Engagement Specialist for the NIH All of Us Research Program for over two years. In this role, she functions as a liaison between the researcher community and the national program, offering support and technical assistance to researchers interested in studying the program’s dataset. Prior to this role, Sydney served as a Public Health Analyst with the Health Resources and Services Administration (HRSA) for three years. As a previous participant in a pathways internship program with HRSA, Sydney is passionate about supporting equitable pathways for diverse professionals interested in research and public health careers. This is the fifth of five sessions about NIH’s All of Us Research Program and Researcher Workbench. Attendees are encouraged, but not required, to attend all sessions. For questions about this webinar series, contact Cindy Sheffield, cynthia.sheffield@nih.gov | 2024-05-03 11:00:00 | Online | Any | All of Us Research Program | Online | Rubin Baskir and Sydney McMaster (All of Us Research Program) | NIH Library | 0 | All of Us NIH Library Webinar Series: Session 5 - Resources to Support Researchers | |
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DescriptionHave you been looking for ways to use artificial intelligence (AI) in clinical practice but not sure where to start? Attend this webinar for tips from Dr. Anant Madabhushi on applying AI in precision oncology. He’ll describe how AI can be affordable, easy to interpret, and help ensure more equitable care for every patient. Specifically, Dr. Madabhushi will discuss efforts by his group to develop AI-based approaches for measuring:
Have you been looking for ways to use artificial intelligence (AI) in clinical practice but not sure where to start? Attend this webinar for tips from Dr. Anant Madabhushi on applying AI in precision oncology. He’ll describe how AI can be affordable, easy to interpret, and help ensure more equitable care for every patient. Specifically, Dr. Madabhushi will discuss efforts by his group to develop AI-based approaches for measuring:
He’ll describe how biomarkers like these can help you predict how well a patient will respond to treatment, as well as monitor their response. Dr. Madabhushi has been on the forefront of translating lab-created technologies into clinical practice. He’s pioneered the use of AI in precision oncology, offering new solutions for diagnosing cancers (i.e., breast, prostate, lung) and predicting how patients will respond to cancer treatments, such as chemotherapy, immunotherapy, and protein inhibitors (i.e., cyclin-dependent kinase 4 and 6). The Cancer Imaging Program is part of NCI’s Division of Cancer Treatment & Diagnosis. The program hosts this monthly NCI Imaging Community Webinar Series for scientists and clinicians interested in advancing cancer imaging. If you want to learn about upcoming opportunities for engagement, interdisciplinary collaboration, and current research showcases, you can explore upcoming events on the webinar series’ webpage. Dr. Anant Madabhushi is the Robert W. Woodruff Professor of Biomedical Engineering and serves on the faculty of the departments of pathology, biomedical informatics, urology, radiation oncology, radiology and imaging sciences, global health and computer and information sciences, all at Emory University. He’s also a research career scientist at the Atlanta Veterans Administration Medical Center. And he’s director of the Emory Empathetic AI for Health Institute at Emory University. Dr. Madabhushi has authored more than 500 peer-reviewed scientific publications and holds (or has pending) over 200 patents in the areas of AI, radiomics, medical image analysis, computer-aided diagnosis, and computer vision. DetailsOrganizerCBIITWhenMon, May 06, 2024 - 1:00 pm - 2:00 pmWhereOnline |
Have you been looking for ways to use artificial intelligence (AI) in clinical practice but not sure where to start? Attend this webinar for tips from Dr. Anant Madabhushi on applying AI in precision oncology. He’ll describe how AI can be affordable, easy to interpret, and help ensure more equitable care for every patient. Specifically, Dr. Madabhushi will discuss efforts by his group to develop AI-based approaches for measuring: alterations in the immune architecture underlying diseases (i.e., collagen disorder) using AI and pathology images, and changes in tumor blood vessels (vessel tortuosity) using AI and radiologic scans. He’ll describe how biomarkers like these can help you predict how well a patient will respond to treatment, as well as monitor their response. Dr. Madabhushi has been on the forefront of translating lab-created technologies into clinical practice. He’s pioneered the use of AI in precision oncology, offering new solutions for diagnosing cancers (i.e., breast, prostate, lung) and predicting how patients will respond to cancer treatments, such as chemotherapy, immunotherapy, and protein inhibitors (i.e., cyclin-dependent kinase 4 and 6). The Cancer Imaging Program is part of NCI’s Division of Cancer Treatment & Diagnosis. The program hosts this monthly NCI Imaging Community Webinar Series for scientists and clinicians interested in advancing cancer imaging. If you want to learn about upcoming opportunities for engagement, interdisciplinary collaboration, and current research showcases, you can explore upcoming events on the webinar series’ webpage. Dr. Anant Madabhushi is the Robert W. Woodruff Professor of Biomedical Engineering and serves on the faculty of the departments of pathology, biomedical informatics, urology, radiation oncology, radiology and imaging sciences, global health and computer and information sciences, all at Emory University. He’s also a research career scientist at the Atlanta Veterans Administration Medical Center. And he’s director of the Emory Empathetic AI for Health Institute at Emory University. Dr. Madabhushi has authored more than 500 peer-reviewed scientific publications and holds (or has pending) over 200 patents in the areas of AI, radiomics, medical image analysis, computer-aided diagnosis, and computer vision. | 2024-05-06 13:00:00 | Online | Any | AI | Online | CBIIT | 0 | Affordable, Interpretable, and Equitable AI for Precision Oncology | ||
1452 |
DescriptionMacros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read, easier to edit, less prone to errors, and often allows it to run more efficiently. This intermediate class will provide an overview of what is a macro and how macros work in SAS, including the macro facility. Examples of macro code will be made available to class participants for modification and ...Read More Macros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read, easier to edit, less prone to errors, and often allows it to run more efficiently. This intermediate class will provide an overview of what is a macro and how macros work in SAS, including the macro facility. Examples of macro code will be made available to class participants for modification and later use. DetailsOrganizerNIH LibraryWhenTue, May 07, 2024 - 10:00 am - 11:00 amWhereOnline |
Macros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read, easier to edit, less prone to errors, and often allows it to run more efficiently. This intermediate class will provide an overview of what is a macro and how macros work in SAS, including the macro facility. Examples of macro code will be made available to class participants for modification and later use. | 2024-05-07 10:00:00 | Online | Any | SAS | Online | SAS | NIH Library | 0 | Coding Macros in SAS | |
1453 |
DescriptionGalaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will introduce RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The hands-on exercises will run on the Galaxy platform using Illumina paired-end RNA-seq data. The workshop will ...Read More Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will introduce RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The hands-on exercises will run on the Galaxy platform using Illumina paired-end RNA-seq data. The workshop will be taught by NCI staff and is open to NIH and HHS staff. DetailsOrganizerNIH LibraryWhenTue, May 07, 2024 - 1:00 pm - 4:00 pmWhereOnline |
Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will introduce RNA-seq data analysis followed by tutorials showing the use of popular RNA-seq analysis packages and preparing participants to independently run basic RNA-Seq analysis for expression profiling. The hands-on exercises will run on the Galaxy platform using Illumina paired-end RNA-seq data. The workshop will be taught by NCI staff and is open to NIH and HHS staff. | 2024-05-07 13:00:00 | Online | Any | RNA-Seq | Online | Daoud Meerzaman (CBIIT) | NIH Library | 0 | RNA-Seq Analysis Training | |
1480 |
DescriptionPresented as part of the Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) Webinar Series Dr. Philip Lupo is a professor of pediatrics and hematology-oncology at Baylor ...Read More Presented as part of the Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) Webinar Series Dr. Philip Lupo is a professor of pediatrics and hematology-oncology at Baylor College of Medicine. His lab focuses on the molecular epidemiology of pediatric disease and conditions. His areas of interest include understanding the risk of cancer among children with structural birth defects, determining inherited genes underlying susceptibility to rhabdomyosarcoma, phenomic and genomic studies of structural birth defects, and addressing disparities in acute lymphoblastic leukemia susceptibility and outcomes. In this webinar, Dr. Lupo will be presenting on leveraging population-based registries for genomic studies of pediatric cancer. For more information, contact Leah Mechanic. DetailsOrganizerNCIWhenTue, May 07, 2024 - 3:00 pm - 4:00 pmWhereOnline |
Presented as part of the Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) Webinar Series Dr. Philip Lupo is a professor of pediatrics and hematology-oncology at Baylor College of Medicine. His lab focuses on the molecular epidemiology of pediatric disease and conditions. His areas of interest include understanding the risk of cancer among children with structural birth defects, determining inherited genes underlying susceptibility to rhabdomyosarcoma, phenomic and genomic studies of structural birth defects, and addressing disparities in acute lymphoblastic leukemia susceptibility and outcomes. In this webinar, Dr. Lupo will be presenting on leveraging population-based registries for genomic studies of pediatric cancer. For more information, contact Leah Mechanic. | 2024-05-07 15:00:00 | Online | Any | Cancer,Genomics | Online | Dr. Philip Lupo (Baylor College of Medicine) | NCI | 0 | Leveraging Population-Based Registries for Genomic Studies of Pediatric Cancer | |
1442 |
DescriptionIf you’re a researcher, clinician, informaticist, commercial partner, or policy maker interested in cancer data science, register to attend this Cancer Data Exchange Summit. You’ll have the opportunity to hear (and take part in) discussions around current opportunities and challenges with the following topics:
If you’re a researcher, clinician, informaticist, commercial partner, or policy maker interested in cancer data science, register to attend this Cancer Data Exchange Summit. You’ll have the opportunity to hear (and take part in) discussions around current opportunities and challenges with the following topics:
You can also help identify cancer-specific elements; develop implementation guides; and define requirements to build large language models for extracting data. The participant group will comprise researchers, clinicians, informatics/data scientists, patient advocates, standard-setting organizations (such as HL7/FHIR), policymakers, EHR vendors, and industry partners. Their collaborative efforts will focus on identifying current opportunities, challenges, and essential oncology-specific data requirements for the USCDI+ Cancer use cases (1) using real-world data to determine patient eligibility for clinical trials; (2) identifying immune-related adverse events; (3) enhancing the efficiency and timeliness of cancer registry data. DetailsOrganizerNCIWhenWed, May 08 - Thu, May 09, 2024 -10:00 am - 5:00 pmWhereNCI Shady Grove at 9609 Medical Center Drive, Rockville |
If you’re a researcher, clinician, informaticist, commercial partner, or policy maker interested in cancer data science, register to attend this Cancer Data Exchange Summit. You’ll have the opportunity to hear (and take part in) discussions around current opportunities and challenges with the following topics: How to use a patient’s data to determine their eligibility for clinical trials How to identify and develop data standards to detect immune-related adverse events Ways to enhance the efficiency and timeliness of the collection of cancer registry data Ways to support patient access, interoperability, and data sharing You can also help identify cancer-specific elements; develop implementation guides; and define requirements to build large language models for extracting data. The participant group will comprise researchers, clinicians, informatics/data scientists, patient advocates, standard-setting organizations (such as HL7/FHIR), policymakers, EHR vendors, and industry partners. Their collaborative efforts will focus on identifying current opportunities, challenges, and essential oncology-specific data requirements for the USCDI+ Cancer use cases (1) using real-world data to determine patient eligibility for clinical trials; (2) identifying immune-related adverse events; (3) enhancing the efficiency and timeliness of cancer registry data. | 2024-05-08 10:00:00 | NCI Shady Grove at 9609 Medical Center Drive, Rockville | Any | Cancer,Science | Hybrid | NCI | 0 | Cancer Research Data Exchange Summit | ||
1481 |
DescriptionQlucore Omics Explorer is a point-and-click software that enables analysis of RNA sequencing (bulk and single cell), proteomics and metabolomics data. It’s machine learning capabilities also allow for classification of cell types. This software is available to NCI CCR scientists. In this session, participants will learn to analyze bulk RNA sequencing data using Qlucore Omics Explorer. Topics discussed include experimental design, data import, normalization, differential expression analysis, and biological interpretation in and outside ...Read More Qlucore Omics Explorer is a point-and-click software that enables analysis of RNA sequencing (bulk and single cell), proteomics and metabolomics data. It’s machine learning capabilities also allow for classification of cell types. This software is available to NCI CCR scientists. In this session, participants will learn to analyze bulk RNA sequencing data using Qlucore Omics Explorer. Topics discussed include experimental design, data import, normalization, differential expression analysis, and biological interpretation in and outside Qlucore (i.e. GSEA, pathway visualization, biological networks, GO enrichment). Experience using this software is not required to attend. Participants are encouraged to install Qlucore Omics Explorer by submitting a ticket with the NCI computer service desk (service.cancer.gov) prior to the event. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenWed, May 08, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Qlucore Omics Explorer is a point-and-click software that enables analysis of RNA sequencing (bulk and single cell), proteomics and metabolomics data. It’s machine learning capabilities also allow for classification of cell types. This software is available to NCI CCR scientists. In this session, participants will learn to analyze bulk RNA sequencing data using Qlucore Omics Explorer. Topics discussed include experimental design, data import, normalization, differential expression analysis, and biological interpretation in and outside Qlucore (i.e. GSEA, pathway visualization, biological networks, GO enrichment). Experience using this software is not required to attend. Participants are encouraged to install Qlucore Omics Explorer by submitting a ticket with the NCI computer service desk (service.cancer.gov) prior to the event. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mbcf05ad560604862467c52417b2c399bMeeting number:2303 382 3263Password:NTmpQhY@733 Join by video systemDial 23033823263@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2303 382 3263 | 2024-05-08 11:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software | Bioinformatics,Bioinformatics Software,Bulk RNA-seq | Online | Joe Wu (BTEP),Yana Stackpole (Qlucore) | BTEP | 0 | Visual and fast bulk RNAseq analysis for biologists using Qlucore Omics Explorer |
1454 |
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This one-hour session will introduce attendees to the world of Artificial Intelligence (AI) as we explore the fundamentals, applications, and ethical considerations of this transformative technology. Key topics will include machine learning, deep learning, data handling, and real-world AI applications across various industries. We'll delve into the ethical implications of AI and offer insights on how to become AI literate. Whether you're a seasoned professional or just starting your AI journey, this session will equip you with essential knowledge to navigate the AI landscape effectively and make informed decisions in our data-driven world. | 2024-05-08 13:00:00 | Online | Beginner | AI | Online | Alicia Lillich (NIH Library) | NIH Library | 0 | AI Literacy: Navigating the World of Artificial Intelligence | |
1455 |
DescriptionThis is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services ...Read More This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. DetailsOrganizerNIH LibraryWhenThu, May 09, 2024 - 11:00 am - 12:00 pmWhereOnline |
This is the first class in the NIH Library Introduction to R Series. This class provides a basic overview of the functionality of R programming language and RStudio. R is a programming language and open source environment for statistical computing and graphics. The R class series is a comprehensive collection of training sessions offered by the NIH Library Data Services and Bioinformatics programs that is designed to teach non-programmers how to write modular code and to introduce best practices for using R for data analysis and data visualization. Each class uses both evidence-based best practices for programming and practical hands-on lessons. By the end of this class, students should be able to: list reasons for using R; describe the purpose of the RStudio Script, Console, Environment, and Plots panes; describe the various methods for finding help on R and RStudio; organize files and directories for a set of analyses as an R Project; define the following terms as they relate to R: object, assign, comment, call, function, and arguments; and assign values to objects in R. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. Please bring your laptop with R and RStudio installed. | 2024-05-09 11:00:00 | Online | Any | R programming | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Introduction to R and RStudio | |
1499 |
DescriptionPlease join us for the May Data Sharing and Reuse Seminar featuring Dr. Ali Loveys and Fiona Meng from FI Consulting. They will be sharing their presentation on Laying the Foundation for AI-Ready Data. In September 2023, the NIDDK Central Repository announced a challenge to enhance NIDDK data sets for future AI applications. Participants utilized data from longitudinal studies on type 1 diabetes (TEDDY and TrialNet). FI Consulting's team, led by Dr. Ali Loveys, successfully consolidated ...Read More Please join us for the May Data Sharing and Reuse Seminar featuring Dr. Ali Loveys and Fiona Meng from FI Consulting. They will be sharing their presentation on Laying the Foundation for AI-Ready Data. In September 2023, the NIDDK Central Repository announced a challenge to enhance NIDDK data sets for future AI applications. Participants utilized data from longitudinal studies on type 1 diabetes (TEDDY and TrialNet). FI Consulting's team, led by Dr. Ali Loveys, successfully consolidated and unified TrialNet data sets, identified data outliers, and ensured consistent variable representation. Their efforts created a data set for time-series analysis, making it more likely to inform prevention and personalized treatment plans for those at risk of diabetes and diabetes-related complications. This seminar is open to the public and registration is required each month. Individuals who need interpretating services and/or other reasonable accommodations to participate in this event should contact Janiya Peters (jpeters@scgcorp.com) at 301-670-4990. Request should be made at least three business days om advance of the event. A recording will be available on this page after each event. DetailsOrganizerNIH Office of Data Science Strategy (ODSS)WhenFri, May 10, 2024 - 12:00 pm - 1:00 pmWhereOnline |
Please join us for the May Data Sharing and Reuse Seminar featuring Dr. Ali Loveys and Fiona Meng from FI Consulting. They will be sharing their presentation on Laying the Foundation for AI-Ready Data. In September 2023, the NIDDK Central Repository announced a challenge to enhance NIDDK data sets for future AI applications. Participants utilized data from longitudinal studies on type 1 diabetes (TEDDY and TrialNet). FI Consulting's team, led by Dr. Ali Loveys, successfully consolidated and unified TrialNet data sets, identified data outliers, and ensured consistent variable representation. Their efforts created a data set for time-series analysis, making it more likely to inform prevention and personalized treatment plans for those at risk of diabetes and diabetes-related complications. This seminar is open to the public and registration is required each month. Individuals who need interpretating services and/or other reasonable accommodations to participate in this event should contact Janiya Peters (jpeters@scgcorp.com) at 301-670-4990. Request should be made at least three business days om advance of the event. A recording will be available on this page after each event. | 2024-05-10 12:00:00 | Online | Any | AI | Online | Ali Loveys (NIH ODSS) | NIH Office of Data Science Strategy (ODSS) | 0 | May Data Sharing and Reuse Seminar | |
1456 |
DescriptionThis in-person workshop will focus on data wrangling using tidy data principles. Tidy data describes a standard way of storing data that facilitates analysis and visualization within the tidyverse ecosystem. There will be a discussion of what makes data "tidy," and methods for reshaping your data using Read More This in-person workshop will focus on data wrangling using tidy data principles. Tidy data describes a standard way of storing data that facilitates analysis and visualization within the tidyverse ecosystem. There will be a discussion of what makes data "tidy," and methods for reshaping your data using dplyr and tidyr functions. Prior to attending this class, you will need to have:
By the end of this class, attendees will be able to demonstrate how to describe the purpose of the dplyr and tidyr packages, select certain columns in a data frame, select certain rows in a data frame according to filtering conditions, and add new columns to a data frame that are functions of existing columns. Note on TechnologyThe NIH Library has 24 pre-configured Windows laptops that you are welcome to use during this training on a first come, first served basis. You are also welcome to bring your own laptop (PC or Mac). NIH Staff bringing their own NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH-Guest-Network Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to R and RStudio before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. DetailsOrganizerNIH LibraryWhenMon, May 13, 2024 - 10:00 am - 12:00 pmWhereNIH Library Training Room |
This in-person workshop will focus on data wrangling using tidy data principles. Tidy data describes a standard way of storing data that facilitates analysis and visualization within the tidyverse ecosystem. There will be a discussion of what makes data "tidy," and methods for reshaping your data using dplyr and tidyr functions. Prior to attending this class, you will need to have: Installed R and RStudio Taken the Introduction to R and RStudio class. If not, here are some resources for getting started: Introduction to R Introduction to RStudio Introduction to Scripts in RStudio By the end of this class, attendees will be able to demonstrate how to describe the purpose of the dplyr and tidyr packages, select certain columns in a data frame, select certain rows in a data frame according to filtering conditions, and add new columns to a data frame that are functions of existing columns. Note on Technology The NIH Library has 24 pre-configured Windows laptops that you are welcome to use during this training on a first come, first served basis. You are also welcome to bring your own laptop (PC or Mac). NIH Staff bringing their own NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH-Guest-Network Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to R and RStudio before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. | 2024-05-13 10:00:00 | NIH Library Training Room | Any | Data Wrangling | In-Person | Doug Joubert (NIH Library),Joelle Mornini (NIH Library) | NIH Library | 0 | Data Wrangling Workshop | |
1500 |
DescriptionThis presentation will explain the difference between the mean and standard deviation of a set of values and the standard error of the mean. The parameters involved in comparing two normally distributed populations relative to a single value are the sample size, the effect size, the standard deviations of the distributions, the significance level, and the power. We will discuss the relationship between these parameters and accuracy, and how increasing the sample size will, ...Read More This presentation will explain the difference between the mean and standard deviation of a set of values and the standard error of the mean. The parameters involved in comparing two normally distributed populations relative to a single value are the sample size, the effect size, the standard deviations of the distributions, the significance level, and the power. We will discuss the relationship between these parameters and accuracy, and how increasing the sample size will, in general, not change the effect size or the standard deviations of the populations, but will increase the significance (i.e. decrease the p-value) of the effect size. This will be a hybrid event. This session will be recorded, and materials will be posted on the ABCS training site and also shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. DetailsOrganizerBACSWhenTue, May 14, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room Frederick |
This presentation will explain the difference between the mean and standard deviation of a set of values and the standard error of the mean. The parameters involved in comparing two normally distributed populations relative to a single value are the sample size, the effect size, the standard deviations of the distributions, the significance level, and the power. We will discuss the relationship between these parameters and accuracy, and how increasing the sample size will, in general, not change the effect size or the standard deviations of the populations, but will increase the significance (i.e. decrease the p-value) of the effect size. This will be a hybrid event. This session will be recorded, and materials will be posted on the ABCS training site and also shared with attendees a few days after the event. For additional details and questions, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science group, Frederick National Laboratory for Cancer Research. | 2024-05-14 12:00:00 | Building 549 Executive Board Room Frederick | Any | Hybrid | Brian Luke (Advanced Biomedical Computational Science ABCS) | BACS | 0 | Effect Size, p-value, and Accuracy | ||
1457 |
DescriptionParticipants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) ...Read More Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and Long Short-Term Memories (LSTMs) for biomedical signal data, creating machine learning models for biomedical signal data, applying advanced signal pre-processing techniques for automated feature extraction, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenTue, May 14, 2024 - 1:00 pm - 2:30 pmWhereOnline |
Participants will learn how to develop artificial intelligence (AI) applications using MATLAB, even if they do not have a formal background in machine and deep learning. The goal of this course is to introduce tools and fundamental approaches for developing predictive models on biomedical signals. The course will cover the entire AI pipeline, from signal exploration to deployment, including: annotating time series biomedical signals automatically, creating deep learning models using Convolutional Neural Networks (CNNs) and Long Short-Term Memories (LSTMs) for biomedical signal data, creating machine learning models for biomedical signal data, applying advanced signal pre-processing techniques for automated feature extraction, and automatically generating code for edge deployment of AI models. This is an introductory level class. No installation of MATLAB is necessary. | 2024-05-14 13:00:00 | Online | Any | AI | Online | Mathworks | NIH Library | 0 | Data Science and Artificial Intelligence: Signals and Time Series Datasets Using MATLAB | |
1501 |
DescriptionIn this one-hour webinar, you'll get a demonstration of DNASTAR Lasergene Software. DNASTAR offers software solutions for molecular biology, protein analysis, and genomics. This presentation will focus on an overview of the applications included in Lasergene Molecular Biology and Protein. -cloning and primer design. In this one-hour webinar, you'll get a demonstration of DNASTAR Lasergene Software. DNASTAR offers software solutions for molecular biology, protein analysis, and genomics. This presentation will focus on an overview of the applications included in Lasergene Molecular Biology and Protein. -cloning and primer design. For questions contact Daoud Meerzaman or Kayla Strauss DetailsOrganizerCBIITWhenWed, May 15, 2024 - 10:00 am - 11:00 amWhereOnline |
In this one-hour webinar, you'll get a demonstration of DNASTAR Lasergene Software. DNASTAR offers software solutions for molecular biology, protein analysis, and genomics. This presentation will focus on an overview of the applications included in Lasergene Molecular Biology and Protein. The webinar will use the latest software version, Lasergene 17.6, to provide demonstrations of various workflows, including: -cloning and primer design.-auto-annotation.-multiple sequence (phylogenetic) alignment.-Sanger sequence assembly/alignment.-protein analyses including 3D structure visualization. For questions contact Daoud Meerzaman or Kayla Strauss | 2024-05-15 10:00:00 | Online | Any | Bioinformatics Software | Online | Carl-Erik Tornqvist (DNASTAR) | CBIIT | 0 | Webinar on DNASTAR Lasergene Software | |
1476 |
Description
To register to attend, you must log in to your SITC Cancer Immunotherapy CONNECT account. Don’t have an account? Create a free one.
Join Dr. Karchin of the Johns Hopkins School of Medicine and Dr. Krieg of the Medical University of South Carolina as they discuss the novel use of artificial intelligence (AI) in immunotherapy ...Read More
To register to attend, you must log in to your SITC Cancer Immunotherapy CONNECT account. Don’t have an account? Create a free one.
Join Dr. Karchin of the Johns Hopkins School of Medicine and Dr. Krieg of the Medical University of South Carolina as they discuss the novel use of artificial intelligence (AI) in immunotherapy target discovery. Attend this webinar to learn how:
This webinar is part of the 2024 SITC-NCI Computational Immuno-oncology Webinar Series, which focuses on the application of AI in immuno-oncology. This is the second of nine free webinars to help individual research labs overcome computational challenges while analyzing and integrating different assay data throughout the immuno-oncology spectrum using AI. The annual series aims to educate early-career scientists, increase participants’ awareness of and engagement in NCI-supported Cancer Moonshot℠ Immunotherapy Networks, and fulfill the Blue Ribbon Panel’s goal of accelerating progress in cancer research. DetailsOrganizerCBIITWhenWed, May 15, 2024 - 12:00 pm - 1:00 pmWhereOnline |
To register to attend, you must log in to your SITC Cancer Immunotherapy CONNECT account. Don’t have an account? Create a free one. Join Dr. Karchin of the Johns Hopkins School of Medicine and Dr. Krieg of the Medical University of South Carolina as they discuss the novel use of artificial intelligence (AI) in immunotherapy target discovery. Attend this webinar to learn how: AI advances could quickly improve clinical care. you can use AI to better analyze large-scale data sets for biomarkers that can enhance immunotherapy research. This webinar is part of the 2024 SITC-NCI Computational Immuno-oncology Webinar Series, which focuses on the application of AI in immuno-oncology. This is the second of nine free webinars to help individual research labs overcome computational challenges while analyzing and integrating different assay data throughout the immuno-oncology spectrum using AI. The annual series aims to educate early-career scientists, increase participants’ awareness of and engagement in NCI-supported Cancer Moonshot℠ Immunotherapy Networks, and fulfill the Blue Ribbon Panel’s goal of accelerating progress in cancer research. | 2024-05-15 12:00:00 | Online | Any | AI | Online | Rachel Karchin (Johns Hopkins School of Medicine) Carsten Krieg (Medical University of South Carolina) | CBIIT | 0 | AI in Personalized Immunotherapies | |
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DescriptionGeneralist repositories offer NIH researchers a flexible, trusted resource to share data for which there is no appropriate discipline specific repository as well as to share many other research outputs valuable for reproducibility and open science. This webinar, presented by participants of the NIH Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo) will share generalist repository use cases and best practices for sharing and finding data ...Read More Generalist repositories offer NIH researchers a flexible, trusted resource to share data for which there is no appropriate discipline specific repository as well as to share many other research outputs valuable for reproducibility and open science. This webinar, presented by participants of the NIH Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo) will share generalist repository use cases and best practices for sharing and finding data in generalist repositories. It will describe how generalist repositories fit into the NIH data repository landscape for intramural researchers and can be part of meeting the new NIH Data Management and Sharing Policy requirements. It will present both the key common features of generalist repositories that meet the NIH desirable repository characteristics as well as the unique features of these repositories that make them suited to specific types of data. DetailsOrganizerNIH LibraryWhenWed, May 15, 2024 - 1:00 pm - 2:00 pmWhereOnline |
Generalist repositories offer NIH researchers a flexible, trusted resource to share data for which there is no appropriate discipline specific repository as well as to share many other research outputs valuable for reproducibility and open science. This webinar, presented by participants of the NIH Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo) will share generalist repository use cases and best practices for sharing and finding data in generalist repositories. It will describe how generalist repositories fit into the NIH data repository landscape for intramural researchers and can be part of meeting the new NIH Data Management and Sharing Policy requirements. It will present both the key common features of generalist repositories that meet the NIH desirable repository characteristics as well as the unique features of these repositories that make them suited to specific types of data. | 2024-05-15 13:00:00 | Online | Any | Online | Ana Van Gulick (FigShare) | NIH Library | 0 | Data Sharing: Generalist Repositories Ecosystem Initiative | ||
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DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
DetailsWhenWed, May 15, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) be prepared to wait your turn if staff are already helping other users | 2024-05-15 13:00:00 | Online | Any | Biowulf | Online | 0 | Zoom-In Consult for Biowulf Users (Wed 15 May) | |||
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DescriptionThis course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about ...Read More This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. DetailsOrganizerNIH LibraryWhenThu, May 16, 2024 - 12:00 pm - 1:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. Part 1 of this training will cover understanding research data, how to manage research data, and how to work with data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 2 of this class. | 2024-05-16 12:00:00 | Online | Any | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Data Management and Sharing: Part 1 | ||
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DescriptionQiagen CLC Genomics Workbench is a point-and-click bioinformatics software that runs on a personal computer and enables bulk RNA sequencing, ChIP sequencing, long reads, and variant analysis. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can inquire with the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench) about using this ...Read More Qiagen CLC Genomics Workbench is a point-and-click bioinformatics software that runs on a personal computer and enables bulk RNA sequencing, ChIP sequencing, long reads, and variant analysis. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can inquire with the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench) about using this package. This hands-on training will guide participants through bulk RNA sequencing analysis using CLC Genomics Workbench. After the class, participants will be able to
To get the most of this hands-on session, please reach out to the NCI service desk (https://service.cancer.gov/ncisp) to get this software installed, preview the tutorial (https://resources.qiagenbioinformatics.com/tutorials/RNASeq-droso.pdf), and download the example dataset (http://resources.qiagenbioinformatics.com/testdata/RNA_Seq_Droso2.zip) prior to attending. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenThu, May 16, 2024 - 1:00 pm - 2:30 pmWhereOnline Webinar |
Qiagen CLC Genomics Workbench is a point-and-click bioinformatics software that runs on a personal computer and enables bulk RNA sequencing, ChIP sequencing, long reads, and variant analysis. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can inquire with the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench) about using this package. This hands-on training will guide participants through bulk RNA sequencing analysis using CLC Genomics Workbench. After the class, participants will be able to Import files and illumina reads Import and associate metadata with samples Download reference genome and annotation Obtain RNA sequencing expression counts and perform differential expression analysis Construct PCA and heatmap to visualize RNA sequencing data To get the most of this hands-on session, please reach out to the NCI service desk (https://service.cancer.gov/ncisp) to get this software installed, preview the tutorial (https://resources.qiagenbioinformatics.com/tutorials/RNASeq-droso.pdf), and download the example dataset (http://resources.qiagenbioinformatics.com/testdata/RNA_Seq_Droso2.zip) prior to attending. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m07f826d16b67d3c3b8a86e275ebac5a5Meeting number:2300 281 6121Password:e7aEqhpy@34 Join by video systemDial 23002816121@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2300 281 6121 | 2024-05-16 13:00:00 | Online Webinar | Any | Bioinformatics Software,Bulk RNA-Seq | Bioinformatics Software,Bulk RNA-seq | Online | Joe Wu (BTEP),Shawn Prince (Qiagen) | BTEP | 0 | Qiagen CLC Genomics Workbench: bulk RNA sequencing |
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DescriptionThe NIH Artificial Intelligence (AI) Symposium will take place on Friday, May 17th, 2024, in Masur Auditorium in Building 10 on the Bethesda NIH campus. This event is open to all NIH members - registration and abstract submission are now open https://forms.microsoft.com/g/4WpdBXcEu6 Biomedical science is in a technological revolution, driven by innovations in deep learning architecture and computational power. These ...Read More The NIH Artificial Intelligence (AI) Symposium will take place on Friday, May 17th, 2024, in Masur Auditorium in Building 10 on the Bethesda NIH campus. This event is open to all NIH members - registration and abstract submission are now open https://forms.microsoft.com/g/4WpdBXcEu6 Biomedical science is in a technological revolution, driven by innovations in deep learning architecture and computational power. These cutting-edge techniques are being applied to every sub-field of the biological sciences, and with ground-breaking advancements arriving constantly it is challenging for researchers to stay up to speed on what is possible. This one-day NIH AI Symposium will bring together researchers from a broad range of disciplines to share their AI-related research, with the goal of disseminating the newest AI research, providing an opportunity to network, and to cross-pollinate ideas across disciplines in order to advance AI research in biomedicine. Keynote speakers James Zou, Ph.D. (Stanford University) and Hari Shroff, Ph.D. (Janelia Research Campus) will share their research, and also participate in a Panel Discussion on the current and future potential of AI in biomedical sciences. There will also be short talks and posters from researchers on campus who are developing or using AI approaches. The NIH AI Symposium is sponsored by NHLBI, in partnership with FAES. Registration and abstract submission are open to all NIH members, including experts in AI-related fields and novices interested in gaining more exposure. Important dates: March 15th - Abstract submission deadline April 5th - Abstract notifications May 3rd – Registration deadline Sign language interpreting and CART services are available upon request to participate in this event. Individuals needing either of these services and/or other reasonable accommodations should contact Ryan O’Neill (oneillrs@nih.gov). Questions can be directed to Lead Organizer Ryan O’Neill, Ph.D. (oneillrs@nih.gov). DetailsOrganizerNHLBIWhenFri, May 17, 2024 - 9:00 am - 5:30 pmWhereMain NIH Campus Building 10 (Clinical Center); Masur Auditorium |
The NIH Artificial Intelligence (AI) Symposium will take place on Friday, May 17th, 2024, in Masur Auditorium in Building 10 on the Bethesda NIH campus. This event is open to all NIH members - registration and abstract submission are now open https://forms.microsoft.com/g/4WpdBXcEu6 Biomedical science is in a technological revolution, driven by innovations in deep learning architecture and computational power. These cutting-edge techniques are being applied to every sub-field of the biological sciences, and with ground-breaking advancements arriving constantly it is challenging for researchers to stay up to speed on what is possible. This one-day NIH AI Symposium will bring together researchers from a broad range of disciplines to share their AI-related research, with the goal of disseminating the newest AI research, providing an opportunity to network, and to cross-pollinate ideas across disciplines in order to advance AI research in biomedicine. Keynote speakers James Zou, Ph.D. (Stanford University) and Hari Shroff, Ph.D. (Janelia Research Campus) will share their research, and also participate in a Panel Discussion on the current and future potential of AI in biomedical sciences. There will also be short talks and posters from researchers on campus who are developing or using AI approaches. The NIH AI Symposium is sponsored by NHLBI, in partnership with FAES. Registration and abstract submission are open to all NIH members, including experts in AI-related fields and novices interested in gaining more exposure. Important dates: March 15th - Abstract submission deadline April 5th - Abstract notifications May 3rd – Registration deadline Sign language interpreting and CART services are available upon request to participate in this event. Individuals needing either of these services and/or other reasonable accommodations should contact Ryan O’Neill (oneillrs@nih.gov). Questions can be directed to Lead Organizer Ryan O’Neill, Ph.D. (oneillrs@nih.gov). | 2024-05-17 09:00:00 | Main NIH Campus Building 10 (Clinical Center); Masur Auditorium | Any | AI | In-Person | James Zou (Stanford University) Hari Shroff (Janelia Research Campus) | NHLBI | 0 | NIH Artificial Intelligence Symposium | |
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DescriptionThis course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about ...Read More This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. DetailsOrganizerNIH LibraryWhenFri, May 17, 2024 - 12:00 pm - 1:00 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2024-05-17 12:00:00 | Online | Any | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Data Management and Sharing: Part 2 | ||
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DescriptionHybrid (in-person location in Rockville, MD) Virtual attending via WebEx Meeting, link will be available two weeks prior to the meeting date. Attend the 2024 Co-Clinical Imaging Research Resource Program (CIRP) Annual Hybrid Meeting to learn about optimized quantitative imaging methods in cancer research and precision oncology. Register ...Read More Hybrid (in-person location in Rockville, MD) Virtual attending via WebEx Meeting, link will be available two weeks prior to the meeting date. Attend the 2024 Co-Clinical Imaging Research Resource Program (CIRP) Annual Hybrid Meeting to learn about optimized quantitative imaging methods in cancer research and precision oncology. Register by 11:00 p.m. ET, May 6. You’ll hear from presenters about optimizing quantitative imaging methods to improve the quality of imaging results for co-clinical cancer trials. You’ll also learn about applications of co-clinical imaging to precision oncology. There will be poster presentations, demonstrations, and discussions. The CIRP network is a joint effort of the Cancer Imaging Program at the Division of Cancer Treatment and Diagnosis, the Division of Cancer Biology, and the Division of Cancer Prevention. CIRP’s mission is to advance precision medicine by establishing best practices for co-clinical imaging. CIRP also seeks to develop optimized translational quantitative imaging methodologies to advance cancer research and treatment. DetailsOrganizerCBIITWhenMon, May 20 - Tue, May 21, 2024 -9:00 am - 4:00 pmWhere9609 Medical Center Drive, Rockville |
Hybrid (in-person location in Rockville, MD) Virtual attending via WebEx Meeting, link will be available two weeks prior to the meeting date. Attend the 2024 Co-Clinical Imaging Research Resource Program (CIRP) Annual Hybrid Meeting to learn about optimized quantitative imaging methods in cancer research and precision oncology. Register by 11:00 p.m. ET, May 6. You’ll hear from presenters about optimizing quantitative imaging methods to improve the quality of imaging results for co-clinical cancer trials. You’ll also learn about applications of co-clinical imaging to precision oncology. There will be poster presentations, demonstrations, and discussions. The CIRP network is a joint effort of the Cancer Imaging Program at the Division of Cancer Treatment and Diagnosis, the Division of Cancer Biology, and the Division of Cancer Prevention. CIRP’s mission is to advance precision medicine by establishing best practices for co-clinical imaging. CIRP also seeks to develop optimized translational quantitative imaging methodologies to advance cancer research and treatment. | 2024-05-20 09:00:00 | 9609 Medical Center Drive, Rockville | Any | AI | Hybrid | CBIIT | 0 | Co-Clinical Imaging Research Resource Program Annual Hybrid Meeting 2024 | ||
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DescriptionThe ISB-CGC (Cancer Gateway in the Cloud) hosts data from programs such as The Cancer Genome Atlas Program (TCGA) and Clinical Proteomic Tumor Analysis Consortium (CPTAC) in Google BigQuery where it can be quickly analyzed using simple SQL or loaded into R and Python. As a cloud initiative and part of the Cancer Research Data Commons ISB-CGC provides many resources and funding to start processing and analyzing your own data in the cloud. The ISB-CGC (Cancer Gateway in the Cloud) hosts data from programs such as The Cancer Genome Atlas Program (TCGA) and Clinical Proteomic Tumor Analysis Consortium (CPTAC) in Google BigQuery where it can be quickly analyzed using simple SQL or loaded into R and Python. As a cloud initiative and part of the Cancer Research Data Commons ISB-CGC provides many resources and funding to start processing and analyzing your own data in the cloud. RegisterOrganizerBTEPWhenWed, May 22, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
The ISB-CGC (Cancer Gateway in the Cloud) hosts data from programs such as The Cancer Genome Atlas Program (TCGA) and Clinical Proteomic Tumor Analysis Consortium (CPTAC) in Google BigQuery where it can be quickly analyzed using simple SQL or loaded into R and Python. As a cloud initiative and part of the Cancer Research Data Commons ISB-CGC provides many resources and funding to start processing and analyzing your own data in the cloud. | 2024-05-22 11:00:00 | Online Webinar | Any | Cancer genomics,Cloud | Online | David Pot Ph.D. (ISB-CGC),Fabian Seidl Ph.D. (ISB-CGC) | BTEP | 0 | Analyzing Cancer Data from the CRDC in the Google Cloud with the ISB-CGC Cancer Gateway in the Cloud | |
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DescriptionPlease join us on Wednesday, May 22, 2024, when Dr. Elham Azizi from Columbia University will present "Machine Learning Dynamics in the Tumor Microenvironment." The presentation starts at 11:00 a.m. ET and ends at noon. Please join us on Wednesday, May 22, 2024, when Dr. Elham Azizi from Columbia University will present "Machine Learning Dynamics in the Tumor Microenvironment." The presentation starts at 11:00 a.m. ET and ends at noon. DetailsOrganizerCBIITWhenWed, May 22, 2024 - 11:00 am - 12:00 pmWhereOnline |
Please join us on Wednesday, May 22, 2024, when Dr. Elham Azizi from Columbia University will present "Machine Learning Dynamics in the Tumor Microenvironment." The presentation starts at 11:00 a.m. ET and ends at noon. Dr. Azizi is an Assistant Professor of Cancer Data Research and Assistant Professor of Biomedical Engineering. She is also affiliated with the Department of Computer Science, Data Science Institute, and the Herbert Irving Comprehensive Cancer Center. | 2024-05-22 11:00:00 | Online | Any | Machine Learning | Online | Elham Azizi (Columbia University) | CBIIT | 0 | Machine Learning Dynamics in the Tumor Microenvironment | |
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Getting Started with scRNA-Seq Seminar SeriesDescriptionThis seminar provides an overview of differential expression testing with Seurat. Topics to be covered include preparing data for differential gene expression, differential gene analysis between specific groups, differential gene analysis for cluster classification, SingleR for cell type annotation, and visualizing genes of interest.
This seminar provides an overview of differential expression testing with Seurat. Topics to be covered include preparing data for differential gene expression, differential gene analysis between specific groups, differential gene analysis for cluster classification, SingleR for cell type annotation, and visualizing genes of interest.
RegisterOrganizerBTEPWhenWed, May 22, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This seminar provides an overview of differential expression testing with Seurat. Topics to be covered include preparing data for differential gene expression, differential gene analysis between specific groups, differential gene analysis for cluster classification, SingleR for cell type annotation, and visualizing genes of interest. | 2024-05-22 13:00:00 | Online Webinar | Any | Single Cell Analysis,Single Cell RNA-Seq | R programming,Seurat,Single Cell RNA-seq | Online | Nathan Wong (CCBR) | BTEP | 1 | Differential Expression Analysis with Seurat |
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DescriptionAre you attending the 2024 AMIA Clinical Informatics Conference? Join NCI Fellow, Austin Fitts, as he presents on the National Childhood Cancer Registry (NCCR) during the May 22 afternoon sessions. The NCCR links cancer registry data with harmonized real-world ...Read More Are you attending the 2024 AMIA Clinical Informatics Conference? Join NCI Fellow, Austin Fitts, as he presents on the National Childhood Cancer Registry (NCCR) during the May 22 afternoon sessions. The NCCR links cancer registry data with harmonized real-world data for population-level research in childhood cancer. He will also share how NCCR’s harmonization process allows for more longitudinal studies and can serve as a model for similar data harmonization initiatives. There are future plans to publish the NCCR data model and make an initial harmonized data set available to the cancer research community through the upcoming NCCR Data Platform. Session Title: Advancing the Usability of Healthcare Data
DetailsOrganizerCBIITWhenWed, May 22, 2024 - 4:00 pm - 5:00 pmWhereOnline |
Are you attending the 2024 AMIA Clinical Informatics Conference? Join NCI Fellow, Austin Fitts, as he presents on the National Childhood Cancer Registry (NCCR) during the May 22 afternoon sessions. The NCCR links cancer registry data with harmonized real-world data for population-level research in childhood cancer. He will also share how NCCR’s harmonization process allows for more longitudinal studies and can serve as a model for similar data harmonization initiatives. There are future plans to publish the NCCR data model and make an initial harmonized data set available to the cancer research community through the upcoming NCCR Data Platform. Session Title: Advancing the Usability of Healthcare Data Austin Fitts, Pharm.D., is a post-doctoral fellow at NCI’s Surveillance Research Program. He completed his Doctor of Pharmacy degree from University of Mississippi School of Pharmacy in 2021. Dr. Fitts completed residencies in hospital pharmacy at North Mississippi Medical Center and pharmacy informatics at Vanderbilt University Medical Center. His current professional interests include pharmacy informatics, pediatric oncology, and pharmacoepidemiology. | 2024-05-22 16:00:00 | Online | Any | AI | Online | Austin Fitts (NCI’s Surveillance Research Program) | CBIIT | 0 | Harmonization of Real-World Data to Common Data Elements for the National Childhood Cancer Registry | |
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Coding Club Seminar SeriesDescriptionVersioning enables researchers to track changes in coding projects. This Coding Club introduces Git (https://git-scm.com), an open-source software used to perform versioning on a personal computer. At the end of this class, participants will:
Versioning enables researchers to track changes in coding projects. This Coding Club introduces Git (https://git-scm.com), an open-source software used to perform versioning on a personal computer. At the end of this class, participants will:
RegisterOrganizerBTEPWhenThu, May 23, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Versioning enables researchers to track changes in coding projects. This Coding Club introduces Git (https://git-scm.com), an open-source software used to perform versioning on a personal computer. At the end of this class, participants will: Understand the importance of versioning Describe Git Know how to access Git Be aware of resources that helps with Git installation on personal computer Be aware of the availability of Git on Biowulf, the NIH high performance computing system Define repository Know the steps involved in the versioning process including Initiating a new repository Understanding the difference between tracked and untracked files Excluding files from being tracked Staging files with changes Commiting changes and writing commit messages Viewing commit logs Compare between versions of code Revert to a previous version of code Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m8d56b3aff91ddd2e6df839d05dda6a8f Meeting number: 2319 013 9531 Password: dnAnqfP$642 Join by video system Dial 23190139531@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2319 013 9531 | 2024-05-23 11:00:00 | Online Webinar | Beginner | Version Control | Version Control,code | Online | Desiree Tillo PhD (Genomics Core GAU/BTEP) | BTEP | 1 | Version control with Git |
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DescriptionDuring this virtual conversation of the Cancer Moonshot Seminar Series, Dr. Kai Tan, an investigator with the Human Tumor Atlas Network, and Liz Salmi, a co-investigator and patient advocate with the Participant Engagement and Cancer Genome Sequencing Network, will discuss how Cancer Moonshot initiatives ...Read More During this virtual conversation of the Cancer Moonshot Seminar Series, Dr. Kai Tan, an investigator with the Human Tumor Atlas Network, and Liz Salmi, a co-investigator and patient advocate with the Participant Engagement and Cancer Genome Sequencing Network, will discuss how Cancer Moonshot initiatives are advancing data sharing in a session moderated by Dr. Emily Boja, a branch chief at NCI, who provides programmatic leadership and support for data sharing. Additional information and registration can be found at the Cancer Moonshot Seminar Series Registration Website. DetailsOrganizerNCIWhenThu, May 23, 2024 - 12:00 pm - 1:00 pmWhereOnline |
During this virtual conversation of the Cancer Moonshot Seminar Series, Dr. Kai Tan, an investigator with the Human Tumor Atlas Network, and Liz Salmi, a co-investigator and patient advocate with the Participant Engagement and Cancer Genome Sequencing Network, will discuss how Cancer Moonshot initiatives are advancing data sharing in a session moderated by Dr. Emily Boja, a branch chief at NCI, who provides programmatic leadership and support for data sharing. Additional information and registration can be found at the Cancer Moonshot Seminar Series Registration Website. | 2024-05-23 12:00:00 | Online | Any | Cancer Moonshot,Data Sharing | Online | Emily Boja (NCI) | NCI | 0 | Cancer Moonshot℠ Conversation: Advancing Data Sharing through the Cancer Moonshot | |
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Distinguished Speakers Seminar SeriesDescriptionAn exciting opportunity at the intersection of the biomedical sciences and machine learning stems from the growing availability of large-scale multi-modal data (imaging-based and sequencing-based, observational and perturbational, at the single-cell level, tissue-level, and organism-level). Traditional representation learning methods, although often highly successful in predictive tasks, do not generally elucidate underlying causal mechanisms. Dr. Uhler will present initial ideas towards building a statistical and computational framework for causal representation learning and its applications towards ...Read More An exciting opportunity at the intersection of the biomedical sciences and machine learning stems from the growing availability of large-scale multi-modal data (imaging-based and sequencing-based, observational and perturbational, at the single-cell level, tissue-level, and organism-level). Traditional representation learning methods, although often highly successful in predictive tasks, do not generally elucidate underlying causal mechanisms. Dr. Uhler will present initial ideas towards building a statistical and computational framework for causal representation learning and its applications towards identifying novel disease biomarkers as well as inferring gene regulation in health and disease. Alternative Meeting Information: Meeting number: 2312 523 4308 Password: rgE4DbPX$65 Join by video system Dial 23125234308@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2312 523 4308RegisterOrganizerBTEPWhenThu, May 23, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
An exciting opportunity at the intersection of the biomedical sciences and machine learning stems from the growing availability of large-scale multi-modal data (imaging-based and sequencing-based, observational and perturbational, at the single-cell level, tissue-level, and organism-level). Traditional representation learning methods, although often highly successful in predictive tasks, do not generally elucidate underlying causal mechanisms. Dr. Uhler will present initial ideas towards building a statistical and computational framework for causal representation learning and its applications towards identifying novel disease biomarkers as well as inferring gene regulation in health and disease. Alternative Meeting Information: Meeting number: 2312 523 4308 Password: rgE4DbPX$65 Join by video system Dial 23125234308@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2312 523 4308 | 2024-05-23 13:00:00 | Online Webinar | Any | Computational Biology,Machine Learning,Statistics | Online | Caroline Uhler Ph.D. (MIT) | BTEP | 1 | Multimodal Data Integration: From Biomarkers to Mechanisms | |
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DescriptionThe symposium's goals are to explore the integration of AI in understanding and managing immunological data, foster a paradigm shift in how immunologists leverage AI to propel their research forward, and inform NIAID about existing AI resources, needs, and future directions to support DAIT. The symposium will:
The symposium's goals are to explore the integration of AI in understanding and managing immunological data, foster a paradigm shift in how immunologists leverage AI to propel their research forward, and inform NIAID about existing AI resources, needs, and future directions to support DAIT. The symposium will:
This is a hybrid meeting where attendees can choose to attend in-person or via Zoom Government. Speakers and Moderators who are part of this program are expected to attend in person. For programmatic questions, please contact dait_ai_workshop@mail.nih.gov. For meeting logistical questions, please contact Heather Leonard, Lumina Corps, at EventsNIAID@luminacorps.com. DetailsOrganizerNIAIDWhenTue, May 28 - Wed, May 29, 2024 -8:30 am - 4:45 pmWhereNIAID Conference Center, 5601 Fishers Lane, Room 1D13 Grand Hall, Rockville, MD 20850 |
The symposium's goals are to explore the integration of AI in understanding and managing immunological data, foster a paradigm shift in how immunologists leverage AI to propel their research forward, and inform NIAID about existing AI resources, needs, and future directions to support DAIT. The symposium will: Present stimulating use cases covering AI for immunology, e.g., concrete examples where AI has already made significant contributions to immunology Identify near-term and long-term challenges and barriers, e.g., address current limitations and challenges facing the integration of AI in immunology Discuss the scientific and clinical opportunities empowered by the AI revolution, e.g., how it could revolutionize our understanding of the immune system, lead to groundbreaking treatments, and influence public health policy. This is a hybrid meeting where attendees can choose to attend in-person or via Zoom Government. Speakers and Moderators who are part of this program are expected to attend in person.In-person registration is required by Tuesday, May 21, 2024 https://web.cvent.com/event/b1808ba5-fb93-4bf9-a253-dc63938869a9/summary For programmatic questions, please contact dait_ai_workshop@mail.nih.gov. For meeting logistical questions, please contact Heather Leonard, Lumina Corps, at EventsNIAID@luminacorps.com. | 2024-05-28 08:30:00 | NIAID Conference Center, 5601 Fishers Lane, Room 1D13 Grand Hall, Rockville, MD 20850 | Any | AI,Immunology | Hybrid | NIAID | 0 | AI and Immunology - Exploring Opportunities and Challenges | ||
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DescriptionNCI is launching the virtual Cancer AI Conversations series featuring multiple perspectives on timely topics and themes in artificial intelligence for cancer research! Each event features short talks from 2-4 subject matter experts offering diverse views on the session topic. These talks will be followed by a moderated panel discussion. “Cancer AI Conversations” are bimonthly, 1-hour virtual events featuring timely topics related to the application ...Read More NCI is launching the virtual Cancer AI Conversations series featuring multiple perspectives on timely topics and themes in artificial intelligence for cancer research! Each event features short talks from 2-4 subject matter experts offering diverse views on the session topic. These talks will be followed by a moderated panel discussion. “Cancer AI Conversations” are bimonthly, 1-hour virtual events featuring timely topics related to the application of artificial intelligence in cancer research. Each event features short talks from 2-4 subject matter experts offering diverse perspectives on the session topic. All of the Cancer AI Conversations will be recorded and posted for future viewing. DetailsOrganizerNCIWhenTue, May 28, 2024 - 11:00 am - 12:00 pmWhereOnline |
NCI is launching the virtual Cancer AI Conversations series featuring multiple perspectives on timely topics and themes in artificial intelligence for cancer research! Each event features short talks from 2-4 subject matter experts offering diverse views on the session topic. These talks will be followed by a moderated panel discussion. “Cancer AI Conversations” are bimonthly, 1-hour virtual events featuring timely topics related to the application of artificial intelligence in cancer research. Each event features short talks from 2-4 subject matter experts offering diverse perspectives on the session topic. All of the Cancer AI Conversations will be recorded and posted for future viewing. | 2024-05-28 11:00:00 | Online | Any | Artificial Intelligence / Machine Learning | Online | Tina Hernandez-Boussard (Stanford U),Katharine Rendle (Upenn) | NCI | 0 | Cancer AI Conversations: Machine Learning in Cancer Care Delivery: Implementation and Sustainability | |
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DescriptionFrederick Research Computing Environment (FRCE) and Computational Sciences Series In this session, we will explore how machine learning can be used to analyze whole slide pathological images (WSIs). We will showcase how to utilize the Frederick Research Computing Environment (FRCE) to speed up processing using GPUs. Having a foundational understanding of machine learning or deep learning could be advantageous.
Frederick Research Computing Environment (FRCE) and Computational Sciences Series In this session, we will explore how machine learning can be used to analyze whole slide pathological images (WSIs). We will showcase how to utilize the Frederick Research Computing Environment (FRCE) to speed up processing using GPUs. Having a foundational understanding of machine learning or deep learning could be advantageous.
DetailsOrganizerNCIWhenTue, May 28, 2024 - 12:00 pm - 1:00 pmWhereBldg. 549 Executive Board Room NCI Frederick |
Frederick Research Computing Environment (FRCE) and Computational Sciences Series In this session, we will explore how machine learning can be used to analyze whole slide pathological images (WSIs). We will showcase how to utilize the Frederick Research Computing Environment (FRCE) to speed up processing using GPUs. Having a foundational understanding of machine learning or deep learning could be advantageous. This session will be recorded, and materials will be posted on the Advanced Biomedical Computational Science training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco, of the Advanced Biomedical Computational Science (ABCS) group at Frederick National Laboratory for Cancer Research. If you are an individual with a disability who needs reasonable accommodations to participate in this event, please contact Natasha Pacheco at least five business days before the event, so that we can discuss your accommodation request. | 2024-05-28 12:00:00 | Bldg. 549 Executive Board Room NCI Frederick | Any | Image Analysis | Hybrid | Dorsa Ziaei Imaging and Visualization Group (IVG) Advanced Biomedical Computational Science (ABCS) | NCI | 0 | Whole Slide Pathological Image Analysis Using Frederick Research Computing Environment | |
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DescriptionThis class provides a basic overview of creating plots using ggplot. ggplot is a part of the Tidyverse, a collection of R packages designed for data science. This class will focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must ...Read More This class provides a basic overview of creating plots using ggplot. ggplot is a part of the Tidyverse, a collection of R packages designed for data science. This class will focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must have taken Introduction to R and RStudio class to be successful in this class. By the end of this class, participants should be able to discuss the connection between data, aesthetics, & the grammar of graphics, describe how ggplot works, define geoms, and distinguish between individual geoms and collective geoms. DetailsOrganizerNIH LibraryWhenTue, May 28, 2024 - 1:00 pm - 2:30 pmWhereOnline |
This class provides a basic overview of creating plots using ggplot. ggplot is a part of the Tidyverse, a collection of R packages designed for data science. This class will focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must have taken Introduction to R and RStudio class to be successful in this class. By the end of this class, participants should be able to discuss the connection between data, aesthetics, & the grammar of graphics, describe how ggplot works, define geoms, and distinguish between individual geoms and collective geoms. | 2024-05-28 13:00:00 | Online | Any | R programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot | |
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DescriptionThis class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. You must have taken Data Visualization in R: ggplot class to be successful in this class. By the end of this class, participants should be able to describe options for time series data, create a line ...Read More This class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. You must have taken Data Visualization in R: ggplot class to be successful in this class. By the end of this class, participants should be able to describe options for time series data, create a line plot in ggplot, learn how to facet a plot, demonstrate options for customizing the title and axis, and apply different ggplot themes. DetailsOrganizerNIH LibraryWhenWed, May 29, 2024 - 10:00 am - 11:30 amWhereOnline |
This class provides an overview of options for customizing a ggplot graph. This class will focus on methods for creating small multiples, options for customizing a graph, and how to apply ggplot themes. You must have taken Data Visualization in R: ggplot class to be successful in this class. By the end of this class, participants should be able to describe options for time series data, create a line plot in ggplot, learn how to facet a plot, demonstrate options for customizing the title and axis, and apply different ggplot themes. | 2024-05-29 10:00:00 | Online | Any | R programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot: Customizations | |
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DescriptionDear Colleagues, Key Takeaways: • Gain ...Read More Dear Colleagues, Key Takeaways: • Gain a deeper understanding of the benefits of post-processing in optimizing your work For questions, contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenWed, May 29, 2024 - 10:00 am - 11:00 amWhereOnline |
Dear Colleagues, As machine learning permeates across biomedical research, achieving optimal accuracy demands more than just model deployment. Join us for a webinar where we explore post-processing techniques designed to elevate the accuracy and efficiency of prediction models. Using interactive tools in MATLAB, we will evaluate machine learning models, refine predictions, and discuss how to apply these techniques to your work. Key Takeaways: • Gain a deeper understanding of the benefits of post-processing in optimizing your work• Implement post-processing techniques to refine and enhance predictions• Use interactive tools to streamline workflows and reduce manual coding time For questions, contact Daoud Meerzaman or Kayla Strauss. | 2024-05-29 10:00:00 | Online | Any | Data Science,Matlab | Online | Elvira Osuna-Highley (MathWorks) | CBIIT | 0 | Now What? Post-Processing AI Techniques for Enhanced Accuracy | |
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Getting Started with scRNA-Seq Seminar SeriesDescriptionThis talk will cover a scRNA-seq workflow available to NCI researchers on NIDAP. NIDAP, the NIH Integrated Data Analysis Platform, is a cloud-based and collaborative data aggregation and analysis platform that hosts user-friendly bioinformatics workflows. This platform allows researchers to use many of the open-source tools discussed in this seminar series without necessitating coding experience. This seminar will focus on the capabilities of this workflow for QC, annotation, and visualization of single-cell ...Read More This talk will cover a scRNA-seq workflow available to NCI researchers on NIDAP. NIDAP, the NIH Integrated Data Analysis Platform, is a cloud-based and collaborative data aggregation and analysis platform that hosts user-friendly bioinformatics workflows. This platform allows researchers to use many of the open-source tools discussed in this seminar series without necessitating coding experience. This seminar will focus on the capabilities of this workflow for QC, annotation, and visualization of single-cell RNA-seq data. RegisterOrganizerBTEPWhenWed, May 29, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This talk will cover a scRNA-seq workflow available to NCI researchers on NIDAP. NIDAP, the NIH Integrated Data Analysis Platform, is a cloud-based and collaborative data aggregation and analysis platform that hosts user-friendly bioinformatics workflows. This platform allows researchers to use many of the open-source tools discussed in this seminar series without necessitating coding experience. This seminar will focus on the capabilities of this workflow for QC, annotation, and visualization of single-cell RNA-seq data. | 2024-05-29 13:00:00 | Online Webinar | Any | NIDAP,Single Cell RNA-Seq | NIDAP,Single Cell RNA-seq | Online | Joshua Meyer (CCBR) | BTEP | 1 | The CCBR Single-cell RNA-seq Workflow on NIDAP |
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DescriptionThis 90-minute course equips participants with essential knowledge and skills for effective interactions with Large Language Models (LLMs), such as ChatGPT. Explore the intricacies of prompt engineering and its pivotal role in optimizing the conversational capabilities of LLMs. Emphasizing best practices and practical applications, this course features live demonstrations and group discussion, and provides valuable skills for the effective use of LLMs. Attendees are encouraged to Read More This 90-minute course equips participants with essential knowledge and skills for effective interactions with Large Language Models (LLMs), such as ChatGPT. Explore the intricacies of prompt engineering and its pivotal role in optimizing the conversational capabilities of LLMs. Emphasizing best practices and practical applications, this course features live demonstrations and group discussion, and provides valuable skills for the effective use of LLMs. Attendees are encouraged to register for a free ChatGPT account prior to taking this class. DetailsOrganizerNIH LibraryWhenThu, May 30, 2024 - 12:00 pm - 1:30 pmWhereOnline |
This 90-minute course equips participants with essential knowledge and skills for effective interactions with Large Language Models (LLMs), such as ChatGPT. Explore the intricacies of prompt engineering and its pivotal role in optimizing the conversational capabilities of LLMs. Emphasizing best practices and practical applications, this course features live demonstrations and group discussion, and provides valuable skills for the effective use of LLMs. Attendees are encouraged to register for a free ChatGPT account prior to taking this class. | 2024-05-30 12:00:00 | Online | Any | AI | Online | Alicia Lillich (NIH Library),Joelle Mornini (NIH Library) | NIH Library | 0 | Best Practices and Patterns for Prompt Generation in ChatGPT | |
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DescriptionGalaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This training will introduce ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is a mixture of lecture and hands-on exercises. By the ...Read More Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This training will introduce ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is a mixture of lecture and hands-on exercises. By the end of this class, students will be able to: independently run basic ChIP-seq analysis for peak calling, run quality control on ChIP-seq data, map raw reads to a reference genome, generate alignment statistics and check mapping quality, call peaks using MACS, annotate peaks, and visualize the enriched regions. DetailsOrganizerNIH LibraryWhenTue, Jun 04, 2024 - 1:00 pm - 4:00 pmWhereOnline |
Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This training will introduce ChIP sequencing data analysis followed by a tutorial showing ChIP-seq analysis workflow. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is a mixture of lecture and hands-on exercises. By the end of this class, students will be able to: independently run basic ChIP-seq analysis for peak calling, run quality control on ChIP-seq data, map raw reads to a reference genome, generate alignment statistics and check mapping quality, call peaks using MACS, annotate peaks, and visualize the enriched regions. | 2024-06-04 13:00:00 | Online | Any | ChIP sequencing | Online | Daoud Meerzaman (CBIIT) | NIH Library | 0 | ChIP Sequencing Data Analysis | |
1507 |
DescriptionThe CCR Genomics Core Facility is pleased to host a virtual technology workshop with EpiCypher on CUT&RUN library prep/sequencing Presentation overview: The location of histone post-translational modifications and chromatin-associated proteins within the genome is an important consideration for many cancer researchers. Today, there are many assays available to map how this landscape shifts in disease states or in response to treatment—but which is the best one for ...Read More The CCR Genomics Core Facility is pleased to host a virtual technology workshop with EpiCypher on CUT&RUN library prep/sequencing Presentation overview: The location of histone post-translational modifications and chromatin-associated proteins within the genome is an important consideration for many cancer researchers. Today, there are many assays available to map how this landscape shifts in disease states or in response to treatment—but which is the best one for your lab? In this seminar, we will explore CUT&RUN, a revolutionary epigenomic mapping tool that is quickly replacing ChIP-Seq for understanding the role of the epigenome in cancer research. Whether you’re a current CUT&RUN researcher looking to improve your experimental outcomes, a ChIP-Seq expert interested in new technologies, or a new user curious about how CUT&RUN can be used to profile your favorite epigenetic targets, this webinar will set you on the path to success! For questions about this seminar please Liz Conner, CCR Genomics Core DetailsOrganizerCCR Genomics CoreWhenThu, Jun 06, 2024 - 11:00 am - 12:00 pmWhereOnline |
The CCR Genomics Core Facility is pleased to host a virtual technology workshop with EpiCypher on CUT&RUN library prep/sequencing Presentation overview: The location of histone post-translational modifications and chromatin-associated proteins within the genome is an important consideration for many cancer researchers. Today, there are many assays available to map how this landscape shifts in disease states or in response to treatment—but which is the best one for your lab? In this seminar, we will explore CUT&RUN, a revolutionary epigenomic mapping tool that is quickly replacing ChIP-Seq for understanding the role of the epigenome in cancer research. Whether you’re a current CUT&RUN researcher looking to improve your experimental outcomes, a ChIP-Seq expert interested in new technologies, or a new user curious about how CUT&RUN can be used to profile your favorite epigenetic targets, this webinar will set you on the path to success! For questions about this seminar please Liz Conner, CCR Genomics Core | 2024-06-06 11:00:00 | Online | Any | Epigenomics | Online | Hannah Devens (EpiCypher) | CCR Genomics Core | 0 | Advancing epigenomics with CUT&RUN: tips, tricks, and best practices | |
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Distinguished Speakers Seminar SeriesDescriptionThe Brooks Lab developed a computational tool called FLAIR (Full-Length Alternative Isoform Analysis of RNA) to produce confident transcript isoforms from long-read RNA-seq data with the aim of alternative isoform detection and quantification. With an increase in the usage of long-read RNA-seq, there is a growing need for a systematic evaluation of this approach. We are part of an international community effort called the Long-read RNA-seq Genome Annotation Assessment Project (LRGASP) to perform such ...Read More The Brooks Lab developed a computational tool called FLAIR (Full-Length Alternative Isoform Analysis of RNA) to produce confident transcript isoforms from long-read RNA-seq data with the aim of alternative isoform detection and quantification. With an increase in the usage of long-read RNA-seq, there is a growing need for a systematic evaluation of this approach. We are part of an international community effort called the Long-read RNA-seq Genome Annotation Assessment Project (LRGASP) to perform such an evaluation. The Brooks Lab is extending FLAIR to incorporate sequence variation, RNA editing, and RNA modification in isoform detection as well as detection of complex gene fusions from long-read sequencing data. Meeting number: 2311 656 4503 Password: ySkM7uW6B$5 Join by video system Dial 23116564503@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2311 656 4503RegisterOrganizerBTEPWhenThu, Jun 06, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The Brooks Lab developed a computational tool called FLAIR (Full-Length Alternative Isoform Analysis of RNA) to produce confident transcript isoforms from long-read RNA-seq data with the aim of alternative isoform detection and quantification. With an increase in the usage of long-read RNA-seq, there is a growing need for a systematic evaluation of this approach. We are part of an international community effort called the Long-read RNA-seq Genome Annotation Assessment Project (LRGASP) to perform such an evaluation. The Brooks Lab is extending FLAIR to incorporate sequence variation, RNA editing, and RNA modification in isoform detection as well as detection of complex gene fusions from long-read sequencing data. Meeting number: 2311 656 4503 Password: ySkM7uW6B$5 Join by video system Dial 23116564503@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2311 656 4503 | 2024-06-06 13:00:00 | Online Webinar | Any | Cancer,Long-read sequencing | Online | Angela Brooks Ph.D. (UCSC) | BTEP | 1 | A More Comprehensive Landscape of RNA Alterations in Cancer with Long-read Sequencing | |
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DescriptionThis webinar introduces SimBiology as a modeling environment for mechanistic pharmacokinetic (PK), pharmacodynamic (PD), and quantitative systems pharmacology (QSP) modeling and simulation. Participants will learn how to use the SimBiology Model Builder app to build a mechanistic model and how to use the SimBiology Model Analyzer app to calibrate the model to experimental data, as well as perform model predictions. This is an introductory-level class taught by MathWorks. No installation of ...Read More This webinar introduces SimBiology as a modeling environment for mechanistic pharmacokinetic (PK), pharmacodynamic (PD), and quantitative systems pharmacology (QSP) modeling and simulation. Participants will learn how to use the SimBiology Model Builder app to build a mechanistic model and how to use the SimBiology Model Analyzer app to calibrate the model to experimental data, as well as perform model predictions. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenThu, Jun 06, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This webinar introduces SimBiology as a modeling environment for mechanistic pharmacokinetic (PK), pharmacodynamic (PD), and quantitative systems pharmacology (QSP) modeling and simulation. Participants will learn how to use the SimBiology Model Builder app to build a mechanistic model and how to use the SimBiology Model Analyzer app to calibrate the model to experimental data, as well as perform model predictions. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. | 2024-06-06 13:00:00 | Online | Any | Matlab | Online | Mathworks | NIH Library | 0 | Modeling of Biological Systems with MATLAB: Introduction to Simbiology & Biopipeline Designer | |
1527 |
DescriptionAdditional Connection information: Additional Connection information: DetailsOrganizerNCIWhenFri, Jun 07, 2024 - 11:00 am - 12:00 pmWhereOnline |
Additional Connection information:Meeting number: 2300 325 2760Password: TaXmEyU36*2 | 2024-06-07 11:00:00 | Online | Any | Data Science | Online | Eric Stahlberg (Cancer Research Technology Program FNLCR) | NCI | 0 | Data Science and AI in Health: What’s in it for me? | |
1529 |
DescriptionPlease join us for the next talk in our single cell and spatial interest group series. Please join us for the next talk in our single cell and spatial interest group series. DetailsOrganizerCCRWhenMon, Jun 10, 2024 - 2:00 pm - 3:00 pmWhereBldg. 10 Clinical Center Lipsett Amphitheater |
Please join us for the next talk in our single cell and spatial interest group series. Dr. Jasmine Plummer is a faculty member and the Director of St. Jude Children's Research Hospital Center for Spatial OMICs. Research interests include single cell systems biology, spatial genomics and proteomics, disease pathogenesis from cells of origin, and genomics technology development. In this seminar, Dr. Plummer will highlight the advancements in single cell and spatial technologies and their applications to better understand health and disease. Limited meeting slots with Dr. Plummer remain for Tuesday June 11th (day after seminar) – please contact Mike Kelly (michael.kelly3@nih.gov), if interested. Single Cell and Spatial Biology Users Group organizing team:Mike Kelly, Jamie Diemer, Mala Ananth, Stefan Cordes, and Mark Cookson | 2024-06-10 14:00:00 | Bldg. 10 Clinical Center Lipsett Amphitheater | Any | Single Cell Technologies | In-Person | Jasmine Plummer (St. Jude Children\'s Research Hospital) | CCR | 0 | Single Cell and Spatial Technologies: Applications to Disease. Co-sponsored by the NCI Center for Cancer Research Pediatric Oncology Branch Childhood Cancer Data Initiative (CCDI) | |
1522 |
DescriptionThis talk will cover the basics of statistical resampling methods such as bootstrap, Monte Carlo, and permutations for estimating parameters and testing hypotheses. We will discuss when you might want to use resampling methods in place of standard parametric or non-parametric statistics, types of cross-validation, and when to resample with or without replacement. This session will be recorded, and materials will be posted on the Read More This talk will cover the basics of statistical resampling methods such as bootstrap, Monte Carlo, and permutations for estimating parameters and testing hypotheses. We will discuss when you might want to use resampling methods in place of standard parametric or non-parametric statistics, types of cross-validation, and when to resample with or without replacement. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research.
DetailsOrganizerABCS groupWhenTue, Jun 11, 2024 - 12:00 pm - 1:00 pmWhereAuditorium Building 549 NCI at Frederick |
This talk will cover the basics of statistical resampling methods such as bootstrap, Monte Carlo, and permutations for estimating parameters and testing hypotheses. We will discuss when you might want to use resampling methods in place of standard parametric or non-parametric statistics, types of cross-validation, and when to resample with or without replacement. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. | 2024-06-11 12:00:00 | Auditorium Building 549 NCI at Frederick | Any | Statistics | Hybrid | Duncan Donohue (Data Management Services Inc. a BRMI company) | ABCS group | 0 | Introduction to Statistical Resampling Methods | |
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DescriptionLarge language models (LLMs) are artificial intelligence (AI) algorithms that employ deep learning and extensive data sets to create new content. LLMs offer many possible applications in the biomedical field, such as the development of chatbots for use by clinicians, patients, and researchers. Join this roundtable discussion to learn about current use cases of LLMs at NIH. The program will begin with brief presentations by our panelists, followed by an open discussion: <...Read More Large language models (LLMs) are artificial intelligence (AI) algorithms that employ deep learning and extensive data sets to create new content. LLMs offer many possible applications in the biomedical field, such as the development of chatbots for use by clinicians, patients, and researchers. Join this roundtable discussion to learn about current use cases of LLMs at NIH. The program will begin with brief presentations by our panelists, followed by an open discussion: Alicia Lillich, NIH Library Trey Saddler, NIEHS Mike A. Nalls, Ph.D., NIA Nathan Hotaling, Ph.D., NCATS Nicole Sroka, NLM Steevenson Nelson, Ph.D., OD Nick Asendorf, Ph.D., NHLBI DetailsOrganizerNIH LibraryWhenTue, Jun 11, 2024 - 1:00 pm - 2:30 pmWhereOnline |
Large language models (LLMs) are artificial intelligence (AI) algorithms that employ deep learning and extensive data sets to create new content. LLMs offer many possible applications in the biomedical field, such as the development of chatbots for use by clinicians, patients, and researchers. Join this roundtable discussion to learn about current use cases of LLMs at NIH. The program will begin with brief presentations by our panelists, followed by an open discussion: Alicia Lillich, NIH Library Introduction to Large Language Models (LLMs) Trey Saddler, NIEHSToxPipe: Semi-Autonomous AI Integration of Diverse Toxicological Data Streams Mike A. Nalls, Ph.D., NIALLMs to Accelerate Tedious Tasks in Research Nathan Hotaling, Ph.D., NCATSApplications of Retrieval Augmented Generative AI to Scientific Discovery, Scientific Management, and Code Development and Maintenance at NCATS Nicole Sroka, NLMNLM GenAI Pilot: Customer Response Case Study Steevenson Nelson, Ph.D., ODTrans IRP Contract Tool (Updates) Nick Asendorf, Ph.D., NHLBINHLBI Chat | 2024-06-11 13:00:00 | Online | Any | AI | Online | Alicia Lillich (NIH Library),Joelle Mornini (NIH Library) | NIH Library | 0 | AI Large Language Models at NIH: A Roundtable Discussion | |
1518 |
Descriptionggplot2 is an R graphics package from the tidyverse collection. It is one of the most installed packages in R. It allows the user to create informative plots quickly by using a 'grammar of graphics' implementation. This lesson, which is recommended for learners with beginner level experience with R programming, will introduce the ggplot2 package and demonstrate how to get started constructing publication ready plots. This lesson will be demo based. However, ...Read More ggplot2 is an R graphics package from the tidyverse collection. It is one of the most installed packages in R. It allows the user to create informative plots quickly by using a 'grammar of graphics' implementation. This lesson, which is recommended for learners with beginner level experience with R programming, will introduce the ggplot2 package and demonstrate how to get started constructing publication ready plots. This lesson will be demo based. However, learners are welcome to follow along using a local installation of R and RStudio. RegisterOrganizerBTEPWhenTue, Jun 11, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
ggplot2 is an R graphics package from the tidyverse collection. It is one of the most installed packages in R. It allows the user to create informative plots quickly by using a 'grammar of graphics' implementation. This lesson, which is recommended for learners with beginner level experience with R programming, will introduce the ggplot2 package and demonstrate how to get started constructing publication ready plots. This lesson will be demo based. However, learners are welcome to follow along using a local installation of R and RStudio. | 2024-06-11 13:00:00 | Online Webinar | Beginner | Data Visualization,R programming | Data visualization,R programming,ggplot2 | Online | Alex Emmons (BTEP) | BTEP | 0 | Data Visualization with ggplot2 |
1493 |
DescriptionMacros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read and edit, less prone to errors, and allows it to run more efficiently. This 90-minute advanced class will provide an in-depth look at using and writing macros in SAS. Topics covered in this class include macro function, using SQL and Data Step to create macro variables, indirect references to macro variables, defining ...Read More Macros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read and edit, less prone to errors, and allows it to run more efficiently. This 90-minute advanced class will provide an in-depth look at using and writing macros in SAS. Topics covered in this class include macro function, using SQL and Data Step to create macro variables, indirect references to macro variables, defining and calling a macro, macro variable scope, conditional processing, and iterative processing. DetailsOrganizerNIH LibraryWhenWed, Jun 12, 2024 - 11:00 am - 12:30 pmWhereOnline |
Macros are ways to use code to substitute in a value, and using macros makes a code in SAS easier to read and edit, less prone to errors, and allows it to run more efficiently. This 90-minute advanced class will provide an in-depth look at using and writing macros in SAS. Topics covered in this class include macro function, using SQL and Data Step to create macro variables, indirect references to macro variables, defining and calling a macro, macro variable scope, conditional processing, and iterative processing. | 2024-06-12 11:00:00 | Online | Any | Statistics | Online | SAS | NIH Library | 0 | Advanced Coding Macros in SAS | |
1509 |
DescriptionJoin us for an engaging training session where we will examine the similarities and differences between machine learning and statistical differential gene expression (DGE) analysis using Qlucore Omics Explorer. Qlucore Omics Explorer is a point-and-click package available to NCI CCR scientists that enables visualization-based analysis of multi-omics data including RNA-seq, scRNA, proteomics, metabolomics, as well as enabling the use of machine learning to obtain a deeper understanding of data. Join us for an engaging training session where we will examine the similarities and differences between machine learning and statistical differential gene expression (DGE) analysis using Qlucore Omics Explorer. Qlucore Omics Explorer is a point-and-click package available to NCI CCR scientists that enables visualization-based analysis of multi-omics data including RNA-seq, scRNA, proteomics, metabolomics, as well as enabling the use of machine learning to obtain a deeper understanding of data. Meeting information: https://cbiit.webex.com/cbiit/j.php?MTID=m11ad78fb6a8303d5d72cffe7c9abfb3a Join by video system Join by phone RegisterOrganizerBTEPWhenWed, Jun 12, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Join us for an engaging training session where we will examine the similarities and differences between machine learning and statistical differential gene expression (DGE) analysis using Qlucore Omics Explorer. Qlucore Omics Explorer is a point-and-click package available to NCI CCR scientists that enables visualization-based analysis of multi-omics data including RNA-seq, scRNA, proteomics, metabolomics, as well as enabling the use of machine learning to obtain a deeper understanding of data. At the end of this class, participants will · Have a deeper understanding of RNA-seq data analysis and understand how to leverage both machine learning and statistical methods to obtain more comprehensive insights.· Know the different gene selection methods used by machine learning and statistical DGE analysis.· Know how integrating machine learning with DGE analysis can provide additional insights and enhance your research findings.· Be able to describe steps for applying machine learning to enhance insight extraction from RNA-seq data. Experience using Qlucore Omics Explorer is not needed to attend. Submit a ticket with service.cancer.gov to get this software installed on personal computer. Meeting information: https://cbiit.webex.com/cbiit/j.php?MTID=m11ad78fb6a8303d5d72cffe7c9abfb3a Meeting number:2307 302 4819 Join by video systemDial 23073024819@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2307 302 4819 | 2024-06-12 11:00:00 | Online Webinar | Any | Artificial Intelligence / Machine Learning,Bioinformatics,Bulk RNA-Seq,Molecular Biology Software | Artificial Intelligence / Machine Learning,Bioinformatics,Bioinformatics Software,Bulk RNA-seq | Online | Joe Wu (BTEP),Yana Stackpole (Qlucore) | BTEP | 0 | Machine Learning for RNA-seq Data vs. Statistical DGE Analysis – Utilizing Both for Deeper Insights |
1526 |
DescriptionPlease join us on Wednesday, June 12, 2024, when Aaron Y. Lee, M.D., M.S.C.I., will present "The Current State of Transparency for AI Models and Datasets." The presentation starts at 11:00 a.m. ET and ends at noon. Please join us on Wednesday, June 12, 2024, when Aaron Y. Lee, M.D., M.S.C.I., will present "The Current State of Transparency for AI Models and Datasets." The presentation starts at 11:00 a.m. ET and ends at noon. DetailsOrganizerCBIITWhenWed, Jun 12, 2024 - 11:00 am - 12:00 pmWhereOnline |
Please join us on Wednesday, June 12, 2024, when Aaron Y. Lee, M.D., M.S.C.I., will present "The Current State of Transparency for AI Models and Datasets." The presentation starts at 11:00 a.m. ET and ends at noon. Dr. Lee, associate professor and vitreoretinal surgeon at the University of Washington, Department of Ophthalmology, will discuss the current landscape of artifacts that can enhance AI model transparency, provide metadata for datasets, and recent efforts to adopt these tools in the NIH Bridge2AI program. The NIH Common Fund’s Bridge to Artificial Intelligence (Bridge2AI) program addresses biomedical challenges that are beyond human intuition. The program utilizes biomedical and behavioral research to develop artificial intelligence (AI) and machine learning (ML) models. | 2024-06-12 11:00:00 | Online | Any | AI | Online | Aaron Y. Lee (University of Washington) | CBIIT | 0 | The Current State of Transparency for AI Models and Datasets | |
1531 |
DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
DetailsOrganizerNIH HPCWhenWed, Jun 12, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) be prepared to wait your turn if staff are already helping other users | 2024-06-12 13:00:00 | Online | Any | Biowulf | Online | NIH HPC | 0 | Zoom-In Consult for Biowulf Users (Wed 12 Jun) | ||
1494 |
DescriptionPython is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of ...Read More Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. DetailsOrganizerNIH LibraryWhenThu, Jun 13, 2024 - 11:00 am - 12:00 pmWhereOnline |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. | 2024-06-13 11:00:00 | Online | Any | Python Programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
1523 |
DescriptionQiagen CLC Genomics Workbench is a point-and-click bioinformatics software that runs on a personal computer and enables bulk RNA sequencing, ChIP sequencing, long reads, and variant analysis. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can inquire with the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench) about using this ...Read More Qiagen CLC Genomics Workbench is a point-and-click bioinformatics software that runs on a personal computer and enables bulk RNA sequencing, ChIP sequencing, long reads, and variant analysis. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can inquire with the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench) about using this package. This class will guide participants through a complete ChIP sequencing analysis workflow using CLC Genomics Workbench. At the end of the session, participants will know how to: Join by video system Join by phone RegisterOrganizerBTEPWhenThu, Jun 13, 2024 - 1:00 pm - 2:30 pmWhereOnline Webinar |
Qiagen CLC Genomics Workbench is a point-and-click bioinformatics software that runs on a personal computer and enables bulk RNA sequencing, ChIP sequencing, long reads, and variant analysis. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can inquire with the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench) about using this package. This class will guide participants through a complete ChIP sequencing analysis workflow using CLC Genomics Workbench. At the end of the session, participants will know how to: · Import and prepare the raw sequencing data for analysis.· Map the reads to a reference genome.· Call peaks.· Visualize results.· Extract sequences within peak region. Experience using CLC Genomics Workbench is not required for participation. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mc1865c293c813a1e3dfbb239518d370a Meeting number:2319 733 9579Password:CHbX8Gwv3*2 Join by video systemDial 23197339579@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada) | 2024-06-13 13:00:00 | Online Webinar | Any | Bioinformatics Software,ChIP sequencing | Bioinformatics Software,ChIP sequencing | Online | Joe Wu (BTEP),Shawn Prince (Qiagen) | BTEP | 0 | Analyzing ChIP sequencing data using Qiagen's CLC Genomics Workbench |
1525 |
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The schedule for this week consists of one presentation: Lorenz Adlung, UMC Hamburg-Eppendorf, will discuss: scMod: Marrying machine learning and deterministic modelling of longitudinal single-cell dataSingle-cell-based methods such as flow cytometry or single-cell mRNA sequencing (scRNA-seq) allow deep molecular and cellular profiling of biological processes. However, despite their high throughput, these measurements represent only a snapshot in time. But longitudinal single-cell-based datasets can be used for deterministic ordinary differential equation (ODE)-based modeling to mechanistically describe molecular or cellular dynamics. In my talk, I will present two examples of how we are using time-resolved single-cell datasets to gain a better understanding of cellular signaling, immune responses, and tissue regeneration. Our multidisciplinary efforts are focused on developing methods for applying predictive models in biomedical contexts. For example, we envision that deconvolution of time-resolved bulk mRNA sequencing data could complement scRNA-seq resources, e.g. from the Human Cell Atlas, for ODE-based modeling to leverage large-scale single-cell data in clinical practice. | 2024-06-13 15:00:00 | Online | Any | Single Cell Analysis | Online | Lorenz Adlung (UMC Hamburg-Eppendorf) | CRBM Seminars | 0 | IMAG/MSM WG Multiscale Modeling and Viral Pandemics Zoom @ everyone. scMod: Marrying machine learning and deterministic modelling of longitudinal single-cell data | |
1521 |
DescriptionData Sharing and Reuse Seminar Series Please join us for the June Data Sharing and Reuse Seminar where Micahel Schatz, Ph.D. will be presenting "BioDIGS: BioDiversity and Informatics for Genomics Scholars. This collaborative soil metagenome project focused on understanding soil biodiversity and its impact on human health. BioDIGS partners with the Genomic Data Science Community Network (GDSCN) to engage faculty and students in the genomic data science life cycle. This comprehensive ...Read More Data Sharing and Reuse Seminar Series Please join us for the June Data Sharing and Reuse Seminar where Micahel Schatz, Ph.D. will be presenting "BioDIGS: BioDiversity and Informatics for Genomics Scholars. This collaborative soil metagenome project focused on understanding soil biodiversity and its impact on human health. BioDIGS partners with the Genomic Data Science Community Network (GDSCN) to engage faculty and students in the genomic data science life cycle. This comprehensive study of soil biodiversity has already revealed significant associations between metagenome diversity and heavy metal content. Long-read sequencing enables the discovery of complete genomes and novel gene sequences, while highlighting the complex relations among different species in the soil. We hope to see you there! DetailsOrganizerNIH Data SeminarsWhenFri, Jun 14, 2024 - 12:00 pm - 1:00 pmWhereOnline |
Data Sharing and Reuse Seminar Series Please join us for the June Data Sharing and Reuse Seminar where Micahel Schatz, Ph.D. will be presenting "BioDIGS: BioDiversity and Informatics for Genomics Scholars. This collaborative soil metagenome project focused on understanding soil biodiversity and its impact on human health. BioDIGS partners with the Genomic Data Science Community Network (GDSCN) to engage faculty and students in the genomic data science life cycle. This comprehensive study of soil biodiversity has already revealed significant associations between metagenome diversity and heavy metal content. Long-read sequencing enables the discovery of complete genomes and novel gene sequences, while highlighting the complex relations among different species in the soil. We hope to see you there! | 2024-06-14 12:00:00 | Online | Any | Long-read sequencing,Biodiversity | Online | Michael Schatz Ph.D. (Johns Hopkins University) | NIH Data Seminars | 0 | Data Sharing and Reuse Seminar Series BioDIGS: BioDiversity and Informatics for Genomics Scholars | |
1524 |
DescriptionThe rising popularity of spatial transcriptomics (ST) has prompted the development of numerous analysis methods, each varying in robustness and user accessibility. These diverse approaches could help provide a better understanding of the tumor microenvironment. However, navigating ST data analysis poses challenges for non-data scientists, limiting their exploratory capabilities and hypothesis generation. The rising popularity of spatial transcriptomics (ST) has prompted the development of numerous analysis methods, each varying in robustness and user accessibility. These diverse approaches could help provide a better understanding of the tumor microenvironment. However, navigating ST data analysis poses challenges for non-data scientists, limiting their exploratory capabilities and hypothesis generation. For questions, contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenTue, Jun 18, 2024 - 10:00 am - 11:00 amWhereOnline |
The rising popularity of spatial transcriptomics (ST) has prompted the development of numerous analysis methods, each varying in robustness and user accessibility. These diverse approaches could help provide a better understanding of the tumor microenvironment. However, navigating ST data analysis poses challenges for non-data scientists, limiting their exploratory capabilities and hypothesis generation. Join this webinar for a discussion on the development of a user-friendly web application integrating the spatialGE R package, and providing a comprehensive platform for ST data analysis and visualization. spatialGE has been expanded to include additional ST analysis methods like SpaGCN, STdeconvolve, and InSituType, enhancing its utility for the cancer research community. Support for single-cell ST data analysis and test datasets to aid user proficiency with spatialGE has also been incorporated. For questions, contact Daoud Meerzaman or Kayla Strauss. | 2024-06-18 10:00:00 | Online | Any | Spatial Transcriptomics | Online | Oscar Ospina | CBIIT | 0 | User-Friendly Analysis of Spatial Transcriptomics with spatialGE | |
1519 |
Coding Club Seminar SeriesDescriptionThe Cancer Genome Atlas (TCGA) was a landmark cancer genomics program that molecularly characterized over 20,000 primary cancer and matched normal samples spanning 33 cancer types. This resulted in a massive open-source dataset that continues to uncover revelations regarding the molecular underpinnings of various cancers. This BTEP Coding Club session demonstrates how to access and download TCGA data from the Genomic Data Commons (GDC). Other means of accessing, analyzing, and downloading TCGA data will also be ...Read More The Cancer Genome Atlas (TCGA) was a landmark cancer genomics program that molecularly characterized over 20,000 primary cancer and matched normal samples spanning 33 cancer types. This resulted in a massive open-source dataset that continues to uncover revelations regarding the molecular underpinnings of various cancers. This BTEP Coding Club session demonstrates how to access and download TCGA data from the Genomic Data Commons (GDC). Other means of accessing, analyzing, and downloading TCGA data will also be discussed. RegisterOrganizerBTEPWhenTue, Jun 18, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The Cancer Genome Atlas (TCGA) was a landmark cancer genomics program that molecularly characterized over 20,000 primary cancer and matched normal samples spanning 33 cancer types. This resulted in a massive open-source dataset that continues to uncover revelations regarding the molecular underpinnings of various cancers. This BTEP Coding Club session demonstrates how to access and download TCGA data from the Genomic Data Commons (GDC). Other means of accessing, analyzing, and downloading TCGA data will also be discussed. | 2024-06-18 13:00:00 | Online Webinar | Any | NCI Genomic Data Commons,TCGA | GDC,TCGA | Online | Alex Emmons (BTEP) | BTEP | 1 | Accessing and Downloading TCGA Data |
1530 |
DescriptionClustered heat maps are widely used for visualizing patterns in molecular profiling data. But traditional, static heat maps have significant limitations when applied to large datasets (1000s of elements per axis). Presented in this talk will be the Next-Generation Clustered Heat Map (NG-CHM) system of highly interactive clustered heat maps for addressing these limitations. Also provided will be all the capabilities expected of a state-of-the-art heat map system. NG-CHMs enable ...Read More Clustered heat maps are widely used for visualizing patterns in molecular profiling data. But traditional, static heat maps have significant limitations when applied to large datasets (1000s of elements per axis). Presented in this talk will be the Next-Generation Clustered Heat Map (NG-CHM) system of highly interactive clustered heat maps for addressing these limitations. Also provided will be all the capabilities expected of a state-of-the-art heat map system. NG-CHMs enable the user to navigate large omic databases, zooming to drill down on detailed patterns, link out to dozens of external metadata resources, produce high-resolution graphics, and preserve all metadata needed to reproduce the map at a later time. They have proved valuable in many large-scale NIH projects. Data types covered by NG-CHMs have included essentially all the phenotypic genotypic characteristics currently measured at the DNA, RNA, protein, and metabolite levels, in both bulk and single-cell studies. For questions contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenThu, Jun 20, 2024 - 10:00 am - 11:00 amWhereOnline |
Clustered heat maps are widely used for visualizing patterns in molecular profiling data. But traditional, static heat maps have significant limitations when applied to large datasets (1000s of elements per axis). Presented in this talk will be the Next-Generation Clustered Heat Map (NG-CHM) system of highly interactive clustered heat maps for addressing these limitations. Also provided will be all the capabilities expected of a state-of-the-art heat map system. NG-CHMs enable the user to navigate large omic databases, zooming to drill down on detailed patterns, link out to dozens of external metadata resources, produce high-resolution graphics, and preserve all metadata needed to reproduce the map at a later time. They have proved valuable in many large-scale NIH projects. Data types covered by NG-CHMs have included essentially all the phenotypic genotypic characteristics currently measured at the DNA, RNA, protein, and metabolite levels, in both bulk and single-cell studies. NG-CHMs have been used by thousands of individual researchers and have been incorporated into a variety of public websites. The presentation will conclude with a brief summary of future plans. For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-06-20 10:00:00 | Online | Any | Heat Maps | Online | Bradley Broom (MD Anderson Cancer Center) | CBIIT | 0 | Next-Generation Clustered Heat Maps | |
1495 |
DescriptionWhat are common statistical analyses for continuous data? Can you check whether your continuous outcome is normally distributed? What are the methods when the data are not normal? How do you model the outcome with multiple predictors in regression? This is a two-hour lecture intended for those doing basic data analysis using R. Basic R programming is a pre-requisite for this course, as is knowledge of basic statistical concepts, such as mean ...Read More What are common statistical analyses for continuous data? Can you check whether your continuous outcome is normally distributed? What are the methods when the data are not normal? How do you model the outcome with multiple predictors in regression? This is a two-hour lecture intended for those doing basic data analysis using R. Basic R programming is a pre-requisite for this course, as is knowledge of basic statistical concepts, such as mean and p-value from statistical hypothesis testing. This class will be taught by the Clinical Center's Biostatistics and Clinical Epidemiology Service (CC/BCES). The learning outcomes include:
R code snippets will be shared during the lecture and within lecture notes. The class will be recorded, so you can go back to the material as you begin to do your own modeling. During the class, time will be devoted to explaining the concepts, and code snippets and output and references will be provided for in-depth material. Preclass Requirements: You must take the basic R programming and statistical inference – Part I classes as pre-requisite through the NIH Library or have acquired the equivalent knowledge elsewhere prior to registering for this class. Statistical Software: We will be using R and RStudio for our statistical analysis. R is open source and free. There are versions for Mac OSX, Windows, and Linux. You can download it from https://cran.r-project.org/. Additionally, we will be using RStudio as a graphical interface for R. RStudio is free for everyone to download at https://posit.co/download/rstudio-desktop/. See above for pre-requisites in R programming. DetailsOrganizerNIH LibraryWhenThu, Jun 20, 2024 - 11:00 am - 1:00 pmWhereOnline |
What are common statistical analyses for continuous data? Can you check whether your continuous outcome is normally distributed? What are the methods when the data are not normal? How do you model the outcome with multiple predictors in regression? This is a two-hour lecture intended for those doing basic data analysis using R. Basic R programming is a pre-requisite for this course, as is knowledge of basic statistical concepts, such as mean and p-value from statistical hypothesis testing. This class will be taught by the Clinical Center's Biostatistics and Clinical Epidemiology Service (CC/BCES). The learning outcomes include: calculating and displaying descriptive statistics, such as center and spread of distribution and boxplots recognizing common continuous probability density functions estimating mean and confidence intervals for the center of normally and non-normally distributed data hypothesis testing for one-sample and two-sample linear regression the F-distribution and one-way ANOVA R code snippets will be shared during the lecture and within lecture notes. The class will be recorded, so you can go back to the material as you begin to do your own modeling. During the class, time will be devoted to explaining the concepts, and code snippets and output and references will be provided for in-depth material. Preclass Requirements: You must take the basic R programming and statistical inference – Part I classes as pre-requisite through the NIH Library or have acquired the equivalent knowledge elsewhere prior to registering for this class. Statistical Software: We will be using R and RStudio for our statistical analysis. R is open source and free. There are versions for Mac OSX, Windows, and Linux. You can download it from https://cran.r-project.org/. Additionally, we will be using RStudio as a graphical interface for R. RStudio is free for everyone to download at https://posit.co/download/rstudio-desktop/. See above for pre-requisites in R programming. | 2024-06-20 11:00:00 | Online | Any | R programming,Statistics | Online | Nusrat Rabbee (NIH/CC) | NIH Library | 0 | Statistical Methods for Continuous Data Analysis Using R | |
1426 |
Distinguished Speakers Seminar SeriesDescription
Dr. Irizarry will share findings demonstrating limitations of current
workflows that are popular in single cell RNA-Seq data analysis. Specifically, he will describe challenges and solutions to dimension reduction, cell-type classification, and statistical significance analysis of clustering. Dr. Irizarry will end the talk describing some of his work related to spatial transcriptomics. Specifically, he will describe approaches to cell type annotation that account for presence of multiple cell-types ...Read More
Dr. Irizarry will share findings demonstrating limitations of current
workflows that are popular in single cell RNA-Seq data analysis. Specifically, he will describe challenges and solutions to dimension reduction, cell-type classification, and statistical significance analysis of clustering. Dr. Irizarry will end the talk describing some of his work related to spatial transcriptomics. Specifically, he will describe approaches to cell type annotation that account for presence of multiple cell-types represented in the measurements, a common occurrence with technologies such as Visium and SlideSeq. He will demonstrate how this approach facilitates the discovery of spatially varying genes. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m9dcd9ce21f4fa6b1a8e2d998a88c2c2b Meeting number: 2317 712 9095 Password: gUKZzp3u76? Join by video system Dial 23177129095@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2317 712 9095 RegisterOrganizerBTEPWhenThu, Jun 20, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Dr. Irizarry will share findings demonstrating limitations of currentworkflows that are popular in single cell RNA-Seq data analysis.Specifically, he will describe challenges and solutions to dimensionreduction, cell-type classification, and statistical significanceanalysis of clustering. Dr. Irizarry will end the talk describing some of hiswork related to spatial transcriptomics. Specifically, he will describeapproaches to cell type annotation that account for presence ofmultiple cell-types represented in the measurements, a commonoccurrence with technologies such as Visium and SlideSeq. He willdemonstrate how this approach facilitates the discovery of spatiallyvarying genes. Meeting link: https://cbiit.webex.com/cbiit/j.php?MTID=m9dcd9ce21f4fa6b1a8e2d998a88c2c2b Meeting number: 2317 712 9095 Password: gUKZzp3u76? Join by video system Dial 23177129095@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2317 712 9095 | 2024-06-20 13:00:00 | Online Webinar | Any | Biomarkers,Diagnostics | Online | Rafael Irizarry Ph.D. (Harvard) | BTEP | 1 | Statistical Methods for Single-Cell RNA-Seq Analysis and Spatial Transcriptomics | |
1520 |
DescriptionRegister for the June Emerging Technologies Seminar to hear from Dr. Dana Pe’er of the Memorial Sloan Kettering Cancer Center. She will describe new bioinformatics tools for exploring the complex tumor microenvironment. The Human Tumor Atlas Network, an NCI-funded Cancer MoonshotSM initiative, supports these tools with their 3D tumor atlases. The Read More Register for the June Emerging Technologies Seminar to hear from Dr. Dana Pe’er of the Memorial Sloan Kettering Cancer Center. She will describe new bioinformatics tools for exploring the complex tumor microenvironment. The Human Tumor Atlas Network, an NCI-funded Cancer MoonshotSM initiative, supports these tools with their 3D tumor atlases. The NCI Emerging Technologies Seminar Series highlights novel technologies supported through NCI awards that could transform cancer research and clinical care. To stay apprised of updates to this event and the latest from NCI about data science, sign up to receive our weekly email. DetailsOrganizerCBIITWhenTue, Jun 25, 2024 - 2:00 pm - 3:00 pmWhereOnline |
Register for the June Emerging Technologies Seminar to hear from Dr. Dana Pe’er of the Memorial Sloan Kettering Cancer Center. She will describe new bioinformatics tools for exploring the complex tumor microenvironment. The Human Tumor Atlas Network, an NCI-funded Cancer MoonshotSM initiative, supports these tools with their 3D tumor atlases. The NCI Emerging Technologies Seminar Series highlights novel technologies supported through NCI awards that could transform cancer research and clinical care. To stay apprised of updates to this event and the latest from NCI about data science, sign up to receive our weekly email. | 2024-06-25 14:00:00 | Online | Any | Image Analysis | Online | Dana Pe’er Ph.D. (Memorial Sloan Kettering Cancer Center) | CBIIT | 0 | Representing and Embedding Tissue Structures | |
1496 |
DescriptionThis in-person hands-on workshop will introduce the Ingenuity Pathway Analysis (IPA), which is available to access from the NIH Library. IPA can be used identify biological relationships, mechanisms, pathways, functions, and diseases most relevant to experimental datasets. Upon completion of this workshop, participants will be to able compare different groups at different time points and treatments, perform Analysis ...Read More This in-person hands-on workshop will introduce the Ingenuity Pathway Analysis (IPA), which is available to access from the NIH Library. IPA can be used identify biological relationships, mechanisms, pathways, functions, and diseases most relevant to experimental datasets. Upon completion of this workshop, participants will be to able compare different groups at different time points and treatments, perform Analysis Match to compare user data with public data sources, and generate IPA Networks using genes and diseases of interest. Session 1 (IPA): 10:00 AM to 12:00 PM In this session, participants will learn about bioinformatics resources from the NIH Library and learn how to perform pathway analysis using IPA. Lunch: 12:00 PM to 12:45 PM Lunch on your own Session 2 (IPA): 1:00 PM to 2:30 PM In this session, participants will extend the learning from Session 1 and learn how to mine IPA database for novel discoveries. Session 3 (CLC): 2:30 PM to 4:00 PM In this session, participants will learn about CLC Genomics Workbench, including a live demo of the basic features and main functionalities. Note on TechnologyParticipants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to IPA before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. DetailsOrganizerNIH LibraryWhenWed, Jun 26, 2024 - 10:00 am - 4:00 pmWhereNIH Library Training Room Building 10 Clinical Center South Entrance |
This in-person hands-on workshop will introduce the Ingenuity Pathway Analysis (IPA), which is available to access from the NIH Library. IPA can be used identify biological relationships, mechanisms, pathways, functions, and diseases most relevant to experimental datasets. Upon completion of this workshop, participants will be to able compare different groups at different time points and treatments, perform Analysis Match to compare user data with public data sources, and generate IPA Networks using genes and diseases of interest. Session 1 (IPA): 10:00 AM to 12:00 PM In this session, participants will learn about bioinformatics resources from the NIH Library and learn how to perform pathway analysis using IPA. Lunch: 12:00 PM to 12:45 PM Lunch on your own Session 2 (IPA): 1:00 PM to 2:30 PM In this session, participants will extend the learning from Session 1 and learn how to mine IPA database for novel discoveries. Session 3 (CLC): 2:30 PM to 4:00 PM In this session, participants will learn about CLC Genomics Workbench, including a live demo of the basic features and main functionalities. Note on Technology Participants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to IPA before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. | 2024-06-26 10:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Pathway Analysis | In-Person | NIH Library Staff | NIH Library | 0 | NIH Library Workshop: Ingenuity Pathway Analysis (IPA) | |
1497 |
DescriptionIn this in-person session, participants will have an opportunity to discuss their own research and use of Qiagen products with Qiagen scientists. Note on TechnologyParticipants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. In this in-person session, participants will have an opportunity to discuss their own research and use of Qiagen products with Qiagen scientists. Note on TechnologyParticipants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. DetailsOrganizerNIH LibraryWhenThu, Jun 27, 2024 - 10:00 am - 12:00 pmWhereNIH Library Training Room Building 10 Clinical Center South Entrance |
In this in-person session, participants will have an opportunity to discuss their own research and use of Qiagen products with Qiagen scientists. Note on Technology Participants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. | 2024-06-27 10:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Pathway Analysis | In-Person | Qiagen | NIH Library | 0 | NIH Library Workshop: Qiagen Ask Me Anything (AMA) | |
1532 |
DescriptionDuring this presentation, you will learn about the GenePattern ecosystem, an environment for accessible, reproducible research that has been serving the needs of the cancer genomics community since 2004. GenePattern hosts hundreds of genomics analysis and visualization tools, presented in a web-based format that requires no programming, along with extensive features for reproducibility and accessibility. During this presentation, you will learn about the GenePattern ecosystem, an environment for accessible, reproducible research that has been serving the needs of the cancer genomics community since 2004. GenePattern hosts hundreds of genomics analysis and visualization tools, presented in a web-based format that requires no programming, along with extensive features for reproducibility and accessibility. A notebook interface allows GenePattern analyses to be combined with all the capabilities that Jupyter Notebooks offers. Mr. Reich will describe how scientists can use GenePattern to empower their cancer genomics research. For questions, contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenThu, Jun 27, 2024 - 10:00 am - 11:00 amWhereOnline |
During this presentation, you will learn about the GenePattern ecosystem, an environment for accessible, reproducible research that has been serving the needs of the cancer genomics community since 2004. GenePattern hosts hundreds of genomics analysis and visualization tools, presented in a web-based format that requires no programming, along with extensive features for reproducibility and accessibility. Available analyses include bulk and single-cell gene expression, gene set enrichment analysis, mutation significance, flow cytometry, proteomics, general machine learning approaches, and many others. A notebook interface allows GenePattern analyses to be combined with all the capabilities that Jupyter Notebooks offers. Mr. Reich will describe how scientists can use GenePattern to empower their cancer genomics research. For questions, contact Daoud Meerzaman or Kayla Strauss. | 2024-06-27 10:00:00 | Online | Any | Bioinformatics Software | Online | Michael Reich (Mesirov Lab UC San Diego) | CBIIT | 0 | The GenePattern Ecosystem for Cancer Genomics and Reproducible Research | |
1395 |
AI in Biomedical Research @ NIH Seminar SeriesDescriptionAlternative Meeting Information: Meeting number: 2310 497 7985 Password: mjPjjmi$473 Join by video system Dial 23104977985@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2310 497 7985 Alternative Meeting Information: Meeting number: 2310 497 7985 Password: mjPjjmi$473 Join by video system Dial 23104977985@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2310 497 7985 RegisterOrganizerBTEPWhenThu, Jun 27, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Alternative Meeting Information: Meeting number: 2310 497 7985 Password: mjPjjmi$473 Join by video system Dial 23104977985@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2310 497 7985 | 2024-06-27 13:00:00 | Online Webinar | Any | AI | Online | Faraz Faghri Ph.D. (CARD) | BTEP | 1 | AI to Accelerate Biomedical Research | |
1498 |
DescriptionDuring this webinar, participants will enhance their technical skills and proficiency with MATLAB by navigating online MATLAB resources designed to augment the learning experience and problem-solving capabilities, including documentation, examples, and community forums. In addition, this webinar will also present a preview of upcoming webinars, featuring cutting-edge topics and expert insights. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. During this webinar, participants will enhance their technical skills and proficiency with MATLAB by navigating online MATLAB resources designed to augment the learning experience and problem-solving capabilities, including documentation, examples, and community forums. In addition, this webinar will also present a preview of upcoming webinars, featuring cutting-edge topics and expert insights. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenFri, Jun 28, 2024 - 11:00 am - 12:00 pmWhereOnline |
During this webinar, participants will enhance their technical skills and proficiency with MATLAB by navigating online MATLAB resources designed to augment the learning experience and problem-solving capabilities, including documentation, examples, and community forums. In addition, this webinar will also present a preview of upcoming webinars, featuring cutting-edge topics and expert insights. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. | 2024-06-28 11:00:00 | Online | Any | Matlab | Online | Mathworks | NIH Library | 0 | MATLAB Training and Resources | |
1544 |
DescriptionThis two-hour in-person workshop will focus on data wrangling using tidy data principles. Tidy data describes a standard way of storing data that facilitates analysis and visualization within the tidyverse ecosystem. There will be a discussion of what makes data "tidy," and methods for reshaping your data using Read More This two-hour in-person workshop will focus on data wrangling using tidy data principles. Tidy data describes a standard way of storing data that facilitates analysis and visualization within the tidyverse ecosystem. There will be a discussion of what makes data "tidy," and methods for reshaping your data using dplyr and tidyr functions. By the end of this training, attendees will be able to demonstrate how to:
Prior to attending this training, you will need to have:
Participants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to R and RStudio before the training. If you register the day before the training, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. DetailsOrganizerNIH LibraryWhenMon, Jul 08, 2024 - 1:00 pm - 3:00 pmWhereNIH Library Training Room Building 10 Clinical Center South Entrance |
This two-hour in-person workshop will focus on data wrangling using tidy data principles. Tidy data describes a standard way of storing data that facilitates analysis and visualization within the tidyverse ecosystem. There will be a discussion of what makes data "tidy," and methods for reshaping your data using dplyr and tidyr functions. By the end of this training, attendees will be able to demonstrate how to: Describe the purpose of the dplyr and tidyr packages Select certain columns and rows in a data frame Add new columns to a data frame that are functions of existing columns Use the split-apply-combine concept for data analysis Requirements Prior to attending this training, you will need to have: Installed R and RStudio Taken the Introduction to R and RStudio training. If not, here are some resources for getting started: Introduction to R Introduction to RStudio Introduction to Scripts in RStudio Note on Technology Participants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to R and RStudio before the training. If you register the day before the training, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. | 2024-07-08 13:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Data | In-Person | Doug Joubert (NIH Library) | NIH Library | 0 | Data Wrangling Workshop | |
1538 |
DescriptionGalaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will cover exome sequencing data analysis, followed by tutorials showing the use of exome analysis workflow. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. This workshop will be taught by NCI staff and is open to NIH and ...Read More Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will cover exome sequencing data analysis, followed by tutorials showing the use of exome analysis workflow. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. This workshop will be taught by NCI staff and is open to NIH and HHS staff. Participants will have a chance to: independently run basic exome analysis for variant detection, run quality control check on sequencing data, align the sequencing reads to a reference genome, generate alignment statistics and check mapping quality, identify variants, and visualize the exome sequencing data and variants. This class is 3 hours and is a mix of lecture and hand-on exercise. DetailsOrganizerNIH LibraryWhenTue, Jul 09, 2024 - 1:00 pm - 4:00 pmWhereOnline |
Galaxy is a scientific workflow, data integration, data analysis, and publishing platform that makes computational biology accessible to research scientists that do not have computer programming experience. This workshop will cover exome sequencing data analysis, followed by tutorials showing the use of exome analysis workflow. The hands-on exercise will run on a Galaxy platform using Illumina paired-end exome sequencing data. This workshop will be taught by NCI staff and is open to NIH and HHS staff. Participants will have a chance to: independently run basic exome analysis for variant detection, run quality control check on sequencing data, align the sequencing reads to a reference genome, generate alignment statistics and check mapping quality, identify variants, and visualize the exome sequencing data and variants. This class is 3 hours and is a mix of lecture and hand-on exercise. | 2024-07-09 13:00:00 | Online | Any | Exome Seq | Online | Daoud Meerzaman (CBIIT) | NIH Library | 0 | Exome Sequencing Data Analysis | |
1546 |
DescriptionIn this BTEP training session, participants will learn about the R and Python programming languages including how each is used in bioinformatics research. The advantages of each language will be discussed as well as how to choose which is most applicable to your data analyses. Learning resources for beginners will be provided and questions answered. In this BTEP training session, participants will learn about the R and Python programming languages including how each is used in bioinformatics research. The advantages of each language will be discussed as well as how to choose which is most applicable to your data analyses. Learning resources for beginners will be provided and questions answered. RegisterOrganizerBTEPWhenTue, Jul 09, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
In this BTEP training session, participants will learn about the R and Python programming languages including how each is used in bioinformatics research. The advantages of each language will be discussed as well as how to choose which is most applicable to your data analyses. Learning resources for beginners will be provided and questions answered. | 2024-07-09 13:00:00 | Online Webinar | Any | Python Programming,R programming | Python,R programming | Online | Alex Emmons (BTEP) | BTEP | 0 | Introduction to R and Python Programming Languages |
1548 |
DescriptionQlucore Omics Explorer is a point-and-click software for analyzing various omics data including RNA sequencing (bulk and single cell), proteomics, and metabolomics. Participants will learn to perform QC, construct visualizations (ie. PCA, heatmap, volcano, box, and violin plots), and conduct GSEA on proteomics data. Qlucore Omics Explorer is available to NCI CCR scientists, just submit a ticket with service.cancer.gov to get it installed on personal computer. Experience using and installation of this ...Read More Qlucore Omics Explorer is a point-and-click software for analyzing various omics data including RNA sequencing (bulk and single cell), proteomics, and metabolomics. Participants will learn to perform QC, construct visualizations (ie. PCA, heatmap, volcano, box, and violin plots), and conduct GSEA on proteomics data. Qlucore Omics Explorer is available to NCI CCR scientists, just submit a ticket with service.cancer.gov to get it installed on personal computer. Experience using and installation of this package is not required for attendance. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenWed, Jul 10, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Qlucore Omics Explorer is a point-and-click software for analyzing various omics data including RNA sequencing (bulk and single cell), proteomics, and metabolomics. Participants will learn to perform QC, construct visualizations (ie. PCA, heatmap, volcano, box, and violin plots), and conduct GSEA on proteomics data. Qlucore Omics Explorer is available to NCI CCR scientists, just submit a ticket with service.cancer.gov to get it installed on personal computer. Experience using and installation of this package is not required for attendance. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m4283de721bdf4352afefa8f173dd1fec Meeting number:2306 026 6337Password:G3vpTHKS8*3 Join by video systemDial 23060266337@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2306 026 6337 | 2024-07-10 11:00:00 | Online Webinar | Beginner | Bioinformatics,Bioinformatics Software,Proteomics | Bioinformatics,Bioinformatics Software,Proteomics | Online | Joe Wu (BTEP),Yana Stackpole (Qlucore) | BTEP | 0 | Proteomics Data Analysis in Qlucore – from Mass Spectrometry Output to Statistical Analysis, Visualization to Biological Interpretation in GSEA |
1512 |
DescriptionPlease join us for this special event featuring three speakers on the topic of Single-Cell Spatial Transcriptomics. George Zaki, Ph.D., Director, Applied Scientific Computing, BACS, The Frederick National Lab for Cancer Research, NCI/CBIIT Analysis of SPAtial Single-Cell Datasets using SPAC: From hypotheses to insights SPAC is a modular, from raw tabular data to scientific ...Read More Please join us for this special event featuring three speakers on the topic of Single-Cell Spatial Transcriptomics. George Zaki, Ph.D., Director, Applied Scientific Computing, BACS, The Frederick National Lab for Cancer Research, NCI/CBIIT Analysis of SPAtial Single-Cell Datasets using SPAC: From hypotheses to insights SPAC is a modular, from raw tabular data to scientific insights, web-accessible toolkit for analyzing spatial, single-cell datasets derived from multiplex IF-stained, whole-slide images generated by different technologies, such as InSituPlex (Ultivue), Imaging cyTOF (Standard BioTools), and PhenoCycler (AKA CODEX) or Opal TSA (Akoya Biosciences). Researchers use SPAC to build and configure scalable, flexible, multistep analysis pipelines on the web and share them with collaborators using a single click. Noemi Kedei, M.D., Facility Head, Staff Scientist, Spatial Imaging Technology Resource (SpITR), NCI CCR OSTR Generating Highly Multiplex Single Cell Level Protein Expression Data in Tissues Formerly known as the Collaborative Protein Technology Resource (CPTR), the Spatial Imaging Technology Resource (SpITR) is an open core supported by the NCI CCR Office of Science and Technology Resources (OSTR) dedicated to establishing and implementing cutting-edge molecular profiling technologies to facilitate discovery, translational, and clinical research. Spatial technologies include Phenocycler Fusion/CODEX for highly multiplex protein detection at single cell resolution and Nanostring CosMx and GeoMx Digital Spatial Profiling (DSP) for protein and transcript detection at single cell and regional level. Lichun Ma Ph.D., Stadtman Investigator, Cancer Data Science Laboratory (CDSL), NCI CCR Spatial Single-cell Dissection of Cellular Neighborhoods in Liver Cancer Tumor heterogeneity is the observation that cancer cells can show distinct differences from patient to patient, from primary to secondary tumors, or even between cells within the same tumor. This phenomenon is a major barrier to effective cancer interventions. A better understanding of tumor heterogeneity is critical for improving cancer treatment. Using cutting-edge technology in single-cell and spatial ‘omics assays, my research program focuses on developing novel approaches to understanding tumor heterogeneity through the lens of cellular neighborhoods. RegisterOrganizerBTEPWhenThu, Jul 11, 2024 - 1:00 pm - 3:30 pmWhereOnline Webinar |
Please join us for this special event featuring three speakers on the topic of Single-Cell Spatial Transcriptomics. George Zaki, Ph.D., Director, Applied Scientific Computing, BACS, The Frederick National Lab for Cancer Research, NCI/CBIIT Analysis of SPAtial Single-Cell Datasets using SPAC: From hypotheses to insights SPAC is a modular, from raw tabular data to scientific insights, web-accessible toolkit for analyzing spatial, single-cell datasets derived from multiplex IF-stained, whole-slide images generated by different technologies, such as InSituPlex (Ultivue), Imaging cyTOF (Standard BioTools), and PhenoCycler (AKA CODEX) or Opal TSA (Akoya Biosciences). Researchers use SPAC to build and configure scalable, flexible, multistep analysis pipelines on the web and share them with collaborators using a single click. Noemi Kedei, M.D., Facility Head, Staff Scientist, Spatial Imaging Technology Resource (SpITR), NCI CCR OSTR Generating Highly Multiplex Single Cell Level Protein Expression Data in Tissues Formerly known as the Collaborative Protein Technology Resource (CPTR), the Spatial Imaging Technology Resource (SpITR) is an open core supported by the NCI CCR Office of Science and Technology Resources (OSTR) dedicated to establishing and implementing cutting-edge molecular profiling technologies to facilitate discovery, translational, and clinical research. Spatial technologies include Phenocycler Fusion/CODEX for highly multiplex protein detection at single cell resolution and Nanostring CosMx and GeoMx Digital Spatial Profiling (DSP) for protein and transcript detection at single cell and regional level. Lichun Ma Ph.D., Stadtman Investigator, Cancer Data Science Laboratory (CDSL), NCI CCR Spatial Single-cell Dissection of Cellular Neighborhoods in Liver Cancer Tumor heterogeneity is the observation that cancer cells can show distinct differences from patient to patient, from primary to secondary tumors, or even between cells within the same tumor. This phenomenon is a major barrier to effective cancer interventions. A better understanding of tumor heterogeneity is critical for improving cancer treatment. Using cutting-edge technology in single-cell and spatial ‘omics assays, my research program focuses on developing novel approaches to understanding tumor heterogeneity through the lens of cellular neighborhoods. | 2024-07-11 13:00:00 | Online Webinar | Any | Proteomics,Single Cell Technologies,Spatial Transcriptomics | Online | George Zaki Ph.D. (FNLCR CBIIT),Lichun Ma Ph.D. (CCR CDSL),Noemi Kedei M.D. (CCR SpITR) | BTEP | 0 | SPECIAL EVENT: Single-Cell Spatial Transcriptomics + Proteomics! | |
1515 |
DescriptionPython is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of ...Read More Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. DetailsOrganizerNIH LibraryWhenFri, Jul 12, 2024 - 11:00 am - 12:00 pmWhereOnline |
Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. This class will demonstrate integrated development and learning (IDE) platforms for learning Python, the fundamentals of Python coding, and why it is advantageous to develop these skills. The session will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. It will also provide an overview of programming constructs needed to learn Python. Finally, this class will demonstrate why these skills can boost productivity, rigor, and transparency in reporting research findings. | 2024-07-12 11:00:00 | Online | Any | Python Programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
1551 |
DescriptionWe cordially invite you to attend the July Data Sharing and Reuse Seminar featuring Satra Ghosh, Ph.D. As the Director of the Open Data in Neuroscience Initiative and a Principal Research Scientist at the McGovern Institute of the Massachusetts Institute of Technology, Dr. Ghosh will be discussing "The Transformative Potential and Challenges of Open Data and Technologies in Neuroscience." The National Institute of Mental Health is generously supporting this event to emphasize the ...Read More We cordially invite you to attend the July Data Sharing and Reuse Seminar featuring Satra Ghosh, Ph.D. As the Director of the Open Data in Neuroscience Initiative and a Principal Research Scientist at the McGovern Institute of the Massachusetts Institute of Technology, Dr. Ghosh will be discussing "The Transformative Potential and Challenges of Open Data and Technologies in Neuroscience." The National Institute of Mental Health is generously supporting this event to emphasize the importance of open data in fostering democratization in neuroscience research. This seminar will delve into topics such as enabling data sharing, analysis, and interpretation to accelerate the discovery and understanding of neural systems. Additionally, it will address pertinent issues like diverse perspectives, the importance of sustainable stewardship, and the crucial role of ethical considerations in leveraging open data effectively in neuroscience research. We hope to see you there! DetailsOrganizerData Sharing and Reuse Seminar SeriesWhenFri, Jul 12, 2024 - 12:00 pm - 1:00 pmWhereOnline |
We cordially invite you to attend the July Data Sharing and Reuse Seminar featuring Satra Ghosh, Ph.D. As the Director of the Open Data in Neuroscience Initiative and a Principal Research Scientist at the McGovern Institute of the Massachusetts Institute of Technology, Dr. Ghosh will be discussing "The Transformative Potential and Challenges of Open Data and Technologies in Neuroscience." The National Institute of Mental Health is generously supporting this event to emphasize the importance of open data in fostering democratization in neuroscience research. This seminar will delve into topics such as enabling data sharing, analysis, and interpretation to accelerate the discovery and understanding of neural systems. Additionally, it will address pertinent issues like diverse perspectives, the importance of sustainable stewardship, and the crucial role of ethical considerations in leveraging open data effectively in neuroscience research. We hope to see you there! | 2024-07-12 12:00:00 | Online | Any | Data Sharing | Online | Satra Ghosh (McGovern Institute Massachussetts Institute of Technology) | Data Sharing and Reuse Seminar Series | 0 | The Transformative Potential and Challenges of Open Data and Technologies in Neuroscience | |
1533 |
DescriptionLearn about creating presentations, graphics, and information that is available to people of all abilities. This training will be held across two sessions on Monday, July 15, from 2:30 – 4:00 and Tuesday, July 16, from 12:30 – 2:00. These classes will count towards 3h of DEIA training. Day 1: Topics to be covered included: What is accessibility and why is it important? Learn the basics of creating accessible documents and guidance on how to add ...Read More Learn about creating presentations, graphics, and information that is available to people of all abilities. This training will be held across two sessions on Monday, July 15, from 2:30 – 4:00 and Tuesday, July 16, from 12:30 – 2:00. These classes will count towards 3h of DEIA training. Day 1: Topics to be covered included: What is accessibility and why is it important? Learn the basics of creating accessible documents and guidance on how to add captioning, ASL Interpretation, and other accessibility features. Class requirements: none DetailsOrganizerNIA Biomedical Data Science SeriesWhenMon, Jul 15, 2024 - 2:30 pm - 4:00 pmWhereOnline |
Learn about creating presentations, graphics, and information that is available to people of all abilities. This training will be held across two sessions on Monday, July 15, from 2:30 – 4:00 and Tuesday, July 16, from 12:30 – 2:00. These classes will count towards 3h of DEIA training. Day 1: Topics to be covered included: What is accessibility and why is it important? Learn the basics of creating accessible documents and guidance on how to add captioning, ASL Interpretation, and other accessibility features. Class requirements: none Accessibility Statement: This training will be held virtually on Zoom. Closed captioning will be available. Individuals who are needing ASL interpretation and/or other reasonable accommodations should contact Kelli Van Zee, kelli.vanzee@nih.gov. Requests should be made at least five days in advance. | 2024-07-15 14:30:00 | Online | Any | Data Sharing,ASL | Online | Kelly Ohaver and Kelli Van Zee (NIA) | NIA Biomedical Data Science Series | 0 | Access Ability: Creating and Sharing Accessible Information to All (Day 1) | |
1534 |
DescriptionLearn about creating presentations, graphics, and information that is available to people of all abilities. This training will be held across two sessions on Monday, July 15, from 2:30 – 4:00 and Tuesday, July 16, from 12:30 – 2:00. These classes will count towards 3h of DEIA training. Days 2: Day 2 includes a more in-depth look at requirements for visual elements like color contrast, descriptions, and other accessibility features for charts, graphs, figures. There will also be ...Read More Learn about creating presentations, graphics, and information that is available to people of all abilities. This training will be held across two sessions on Monday, July 15, from 2:30 – 4:00 and Tuesday, July 16, from 12:30 – 2:00. These classes will count towards 3h of DEIA training. Days 2: Day 2 includes a more in-depth look at requirements for visual elements like color contrast, descriptions, and other accessibility features for charts, graphs, figures. There will also be a few tips for R Studio, Python, and GraphPad. Additionally, you will learn how to create accessible visual elements for documents. Class requirements: none DetailsOrganizerNIA Biomedical Data Science SeriesWhenTue, Jul 16, 2024 - 12:30 pm - 2:00 pmWhereOnline |
Learn about creating presentations, graphics, and information that is available to people of all abilities. This training will be held across two sessions on Monday, July 15, from 2:30 – 4:00 and Tuesday, July 16, from 12:30 – 2:00. These classes will count towards 3h of DEIA training. Days 2: Day 2 includes a more in-depth look at requirements for visual elements like color contrast, descriptions, and other accessibility features for charts, graphs, figures. There will also be a few tips for R Studio, Python, and GraphPad. Additionally, you will learn how to create accessible visual elements for documents. Class requirements: none Accessibility Statement: This training will be held virtually on Zoom. Closed captioning will be available. Individuals who are needing ASL interpretation and/or other reasonable accommodations should contact Kelli Van Zee, kelli.vanzee@nih.gov. Requests should be made at least five days in advance. | 2024-07-16 12:30:00 | Online | Any | ASL,Data Sharing | Online | Kelly Ohaver and Kelli Van Zee (NIA) | NIA Biomedical Data Science Series | 0 | Access Ability: Creating and Sharing Accessible Information to All (Day 2) | |
1549 |
DescriptionDear Colleagues, Dear Colleagues, DetailsOrganizerCBIITWhenWed, Jul 17, 2024 - 11:00 am - 12:00 pmWhereOnline |
Dear Colleagues, Please join us on Wednesday, July 17, 2024, when Dr. Olivier Gevaert from Stanford University will discuss leveraging data at different scales for personalized diagnosis, prognosis, and therapy in the fields of oncology and neuroscience. Dr. Gevaert and his team of researchers aim to harness the wealth of data available in the field of medicine for personalized treatment by leveraging the synergies between data at various scales, including molecular, cellular, and tissue-scale data. By developing advanced computational methods rooted in statistics and mathematics, the researchers aim to enhance decision-support models for personalized diagnosis, prognosis, and therapy. The presentation starts at 11:00 a.m. ET and ends at noon. | 2024-07-17 11:00:00 | Online | Any | Data Science | Online | Olivier Gevaert (Stanford University) | CBIIT | 0 | Biomedical Data Fusion Lab | |
1540 |
DescriptionIn this one hour and half hour online training, attendees will apply deep learning to brain MRI images. By the end of this training, the attendees will be able to:
In this one hour and half hour online training, attendees will apply deep learning to brain MRI images. By the end of this training, the attendees will be able to:
This is an introductory-level training taught by MathWorks. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenWed, Jul 17, 2024 - 1:00 pm - 2:30 pmWhereOnline |
In this one hour and half hour online training, attendees will apply deep learning to brain MRI images. By the end of this training, the attendees will be able to: Recognize multiple methods of generating models Interrogate the models with explainability techniques, such as applying artificial intelligence (AI) to data, using apps to train AI models for prediction, and sharing results with collaborators. This is an introductory-level training taught by MathWorks. No installation of MATLAB is necessary. | 2024-07-17 13:00:00 | Online | Any | Matlab | Online | Mathworks | NIH Library | 0 | Data Science and AI: Brain MRI Datasets with MATLAB | |
1556 |
DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
DetailsOrganizerNCIWhenWed, Jul 17, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) be prepared to wait your turn if staff are already helping other users | 2024-07-17 13:00:00 | Online | Any | Biowulf | Online | HPC Staff | NCI | 0 | Zoom-In Consult for Biowulf Users (Wed 17 Jul) | |
1517 |
DescriptionThis class will provide an overview of the data collection process for your review – whether scoping or systematic. The importance of data cleaning for consistency to ensure accurate identification of comparable outcome measures across studies and how to do so will be discussed. We will review the process and tools to use, discuss recommended practices, and share lessons learned. Participants will receive resources and information on recommended practices for performing this important step ...Read More This class will provide an overview of the data collection process for your review – whether scoping or systematic. The importance of data cleaning for consistency to ensure accurate identification of comparable outcome measures across studies and how to do so will be discussed. We will review the process and tools to use, discuss recommended practices, and share lessons learned. Participants will receive resources and information on recommended practices for performing this important step in your review. DetailsOrganizerNIH LibraryWhenThu, Jul 18, 2024 - 10:00 am - 11:30 amWhereOnline |
This class will provide an overview of the data collection process for your review – whether scoping or systematic. The importance of data cleaning for consistency to ensure accurate identification of comparable outcome measures across studies and how to do so will be discussed. We will review the process and tools to use, discuss recommended practices, and share lessons learned. Participants will receive resources and information on recommended practices for performing this important step in your review. | 2024-07-18 10:00:00 | Online | Any | Data Management | Online | Jordan Wickstrom (NIH Clinical Center) | NIH Library | 0 | Collecting and Cleaning Data for Your Review | |
1547 |
DescriptionLong read sequencing holds an advantage over short read sequencing in areas such as structural variant and transcript isoform discovery. This class will demonstrate long read analysis using Qiagen’s CLC Genomics Workbench, a point-and-click software for analyzing multi-omics sequencing data including RNA and ChIP. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at ...Read More Long read sequencing holds an advantage over short read sequencing in areas such as structural variant and transcript isoform discovery. This class will demonstrate long read analysis using Qiagen’s CLC Genomics Workbench, a point-and-click software for analyzing multi-omics sequencing data including RNA and ChIP. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can reach out to the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench) After this class, participants will be able to 1) perform de novo assembly as well as map high-quality long reads to reference and 2) polish de novo assembly of poor-quality long reads using high-quality short reads. Experience using and installation of this software is not needed to attend. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenThu, Jul 18, 2024 - 1:00 pm - 2:30 pmWhereOnline Webinar |
Long read sequencing holds an advantage over short read sequencing in areas such as structural variant and transcript isoform discovery. This class will demonstrate long read analysis using Qiagen’s CLC Genomics Workbench, a point-and-click software for analyzing multi-omics sequencing data including RNA and ChIP. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can reach out to the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench) After this class, participants will be able to 1) perform de novo assembly as well as map high-quality long reads to reference and 2) polish de novo assembly of poor-quality long reads using high-quality short reads. Experience using and installation of this software is not needed to attend. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mc5699a15ca783a3a62a9ce26be123337Meeting number:2319 610 3073Password:YbMHySw*425 Join by video systemDial 23196103073@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2319 610 3073 | 2024-07-18 13:00:00 | Online Webinar | Beginner | Bioinformatics,Bioinformatics Software,Long-read sequencing | Bioinformatics,Bioinformatics Software | Online | Joe Wu (BTEP),Shawn Prince (Qiagen) | BTEP | 0 | Qiagen CLC Genomics Workbench: De Novo Assembly Using Long Reads and Short Read Polishing |
1552 |
DescriptionThe molecular mechanisms underlying many types of cancer involve aberrances in trans-acting factors and their binding to cis-regulatory elements to regulate gene expression. Techniques such as ChIP-seq, DNase-seq, and ATAC-seq are commonly used to profile the binding patterns of trans-factors and the chromatin landscape on a genome-wide scale, which are collectively referred to as "cistromes." Integrating and analyzing cistrome data with gene expression profiles can provide valuable insights into the underlying mechanisms ...Read More The molecular mechanisms underlying many types of cancer involve aberrances in trans-acting factors and their binding to cis-regulatory elements to regulate gene expression. Techniques such as ChIP-seq, DNase-seq, and ATAC-seq are commonly used to profile the binding patterns of trans-factors and the chromatin landscape on a genome-wide scale, which are collectively referred to as "cistromes." Integrating and analyzing cistrome data with gene expression profiles can provide valuable insights into the underlying mechanisms of cancer-related gene misregulation. For questions, contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenFri, Jul 19, 2024 - 10:00 am - 11:00 amWhereOnline |
The molecular mechanisms underlying many types of cancer involve aberrances in trans-acting factors and their binding to cis-regulatory elements to regulate gene expression. Techniques such as ChIP-seq, DNase-seq, and ATAC-seq are commonly used to profile the binding patterns of trans-factors and the chromatin landscape on a genome-wide scale, which are collectively referred to as "cistromes." Integrating and analyzing cistrome data with gene expression profiles can provide valuable insights into the underlying mechanisms of cancer-related gene misregulation. The Cistrome DB is a repository of annotated, processed, and quality-controlled publicly available cistrome data for human and mouse, designed to simplify cistrome data discovery, visualization, and analysis for experimental and computational biologists. Discussed in the presentation will be:• recent Cistrome DB developments• description of methods for incorporating CistromeDB data in single cell ATAC-seq and RNA-seq multimodal analysis• introduction to new cistrome resources for deep neural network applications in regulatory genomics For questions, contact Daoud Meerzaman or Kayla Strauss. | 2024-07-19 10:00:00 | Online | Any | Epigenetics | Online | Cliff Meyer (Dana-Farber Cancer Institute Harvard T.H. Chan School of Public Health) | CBIIT | 0 | Decoding Epigenetic Complexity: Modeling Gene Regulation with the Cistrome Data Browser | |
1550 |
DescriptionCancer AI Conversations are virtual events featuring timely topics related to the application of artificial intelligence (AI) in cancer research. This discussion will focus on the impact of AI on cancer health disparities. Moderator: Veronica Rotemberg, M.D., Ph.D., Memorial Sloan Kettering Cancer Center Additional information can be found on the <...Read More Cancer AI Conversations are virtual events featuring timely topics related to the application of artificial intelligence (AI) in cancer research. This discussion will focus on the impact of AI on cancer health disparities. Moderator: Veronica Rotemberg, M.D., Ph.D., Memorial Sloan Kettering Cancer Center Additional information can be found on the Cancer AI Conversations website. DetailsOrganizerNCIWhenTue, Jul 23, 2024 - 11:00 am - 12:00 pmWhereOnline |
Cancer AI Conversations are virtual events featuring timely topics related to the application of artificial intelligence (AI) in cancer research. This discussion will focus on the impact of AI on cancer health disparities. Moderator: Veronica Rotemberg, M.D., Ph.D., Memorial Sloan Kettering Cancer CenterPanelists: Emma Pierson, Ph.D., Cornell University; Edmondo Robinson, M.D., M.A., Moffitt Cancer Center Additional information can be found on the Cancer AI Conversations website. | 2024-07-23 11:00:00 | Online | Any | AI | Online | Emma Pierson (Cornell University) | NCI | 0 | Cancer AI Conversations: AI and Cancer Health Disparities | |
1553 |
DescriptionIn this presentation, we will demonstrate how to use enterprise data science platform to configure, run, share, and scale downstream bioinformatics and image analysis pipelines using cloud and HPC resources. This session is geared towards a mix of beginner and intermediate-level attendees. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few ...Read More In this presentation, we will demonstrate how to use enterprise data science platform to configure, run, share, and scale downstream bioinformatics and image analysis pipelines using cloud and HPC resources. This session is geared towards a mix of beginner and intermediate-level attendees. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. DetailsOrganizerABCS/FNLCRWhenTue, Jul 23, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room Frederick |
In this presentation, we will demonstrate how to use enterprise data science platform to configure, run, share, and scale downstream bioinformatics and image analysis pipelines using cloud and HPC resources. This session is geared towards a mix of beginner and intermediate-level attendees. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. | 2024-07-23 12:00:00 | Building 549 Executive Board Room Frederick | Any | Cloud,HPC Systems | Hybrid | George Zaki (FNLCR) | ABCS/FNLCR | 0 | Cloud or HPC? Scaling bioinformatics pipeline using cloud and HPC resources using enterprise data science platforms. | |
1541 |
DescriptionThis hour and half in-person training will explore the topics of perception and cognition, and how these apply to data visualization. There will also be a discussion on “pre-attentive” properties or visual properties that “pop-out.” These topics are important guides that inform what chart type is most appropriate to visualize your data. This class will also focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how ...Read More This hour and half in-person training will explore the topics of perception and cognition, and how these apply to data visualization. There will also be a discussion on “pre-attentive” properties or visual properties that “pop-out.” These topics are important guides that inform what chart type is most appropriate to visualize your data. This class will also focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must have taken Introduction to R and RStudio class to be successful in this class. By the end of this training, participants should be able to:
Attendees are expected to have basic understanding of R and RStudio. In order to proceed, attendees should have done the following:
Participants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to RStudio and R before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. You can request 1 space for in person mode. If no spaces remain, your registration can be rejected or sent to the waitlist if it is available. DetailsOrganizerNIH LibraryWhenWed, Jul 24, 2024 - 10:00 am - 11:30 amWhereNIH Library Training Room Building 10 Clinical Center South Entrance |
This hour and half in-person training will explore the topics of perception and cognition, and how these apply to data visualization. There will also be a discussion on “pre-attentive” properties or visual properties that “pop-out.” These topics are important guides that inform what chart type is most appropriate to visualize your data. This class will also focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must have taken Introduction to R and RStudio class to be successful in this class. By the end of this training, participants should be able to: Describe how perception and cognition inform visualizations Discuss the connection between data, aesthetics, & the grammar of graphics Define geoms and distinguish between individual geoms and collective geoms Create a plot and save it in a high-resolution format Attendees are expected to have basic understanding of R and RStudio. In order to proceed, attendees should have done the following: Installed R and RStudio Taken Introduction to R and RStudio class. If not, here are some resources for getting started: Introduction to R Introduction to RStudio Introduction to Scripts in RStudio Note on Technology Participants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to RStudio and R before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. You can request 1 space for in person mode. If no spaces remain, your registration can be rejected or sent to the waitlist if it is available. | 2024-07-24 10:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Data Visualization | In-Person | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot | |
1536 |
Coding Club Seminar SeriesDescriptionPartek Flow enables scientists to construct analysis workflows for multi-omics sequencing data including DNA, bulk and single cell RNA, spatial transcriptomics, ATAC and ChIP. It is hosted on Biowulf, the NIH high performance computing system and suitable for those with little command line knowledge to conduct analyses through a point-and-click interface utilizing Biowulf’s immense compute power, rather than a personal computer that may not have the power for analyzing large genomic datasets. This ...Read More Partek Flow enables scientists to construct analysis workflows for multi-omics sequencing data including DNA, bulk and single cell RNA, spatial transcriptomics, ATAC and ChIP. It is hosted on Biowulf, the NIH high performance computing system and suitable for those with little command line knowledge to conduct analyses through a point-and-click interface utilizing Biowulf’s immense compute power, rather than a personal computer that may not have the power for analyzing large genomic datasets. This Coding Club helps scientists with no or limited experience get started using Partek Flow. Participants will learn to acquire access to, transfer data to, and import data into projects on the NIH Partek Flow server. A Partek Flow account is not required for participation. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenWed, Jul 24, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Partek Flow enables scientists to construct analysis workflows for multi-omics sequencing data including DNA, bulk and single cell RNA, spatial transcriptomics, ATAC and ChIP. It is hosted on Biowulf, the NIH high performance computing system and suitable for those with little command line knowledge to conduct analyses through a point-and-click interface utilizing Biowulf’s immense compute power, rather than a personal computer that may not have the power for analyzing large genomic datasets. This Coding Club helps scientists with no or limited experience get started using Partek Flow. Participants will learn to acquire access to, transfer data to, and import data into projects on the NIH Partek Flow server. A Partek Flow account is not required for participation. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=ma36cfbd1ac621ea0882fb46f1938cb55 Meeting number:2310 377 6819Password:ZbVR7YPk?64 Join by video systemDial 23103776819@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2310 377 6819 | 2024-07-24 11:00:00 | Online Webinar | Beginner | Bioinformatics Software | Bioinformatics Software | Online | Joe Wu (BTEP) | BTEP | 1 | Getting Started with Partek Flow at NIH |
1535 |
DescriptionKnowledge of Unix command line is advantageous for scientists who are new to bioinformatics, as many tools are designed to run on Unix-like systems. High performance computing systems (e.g., NIH Biowulf) also require command line skills. Biowulf has around 1000 software, including those for bioinformatics installed and provides more compute power for bioinformatics analyses that are otherwise cumbersome to do on a personal computer. Commands learned in this class will enable novices to sign ...Read More Knowledge of Unix command line is advantageous for scientists who are new to bioinformatics, as many tools are designed to run on Unix-like systems. High performance computing systems (e.g., NIH Biowulf) also require command line skills. Biowulf has around 1000 software, including those for bioinformatics installed and provides more compute power for bioinformatics analyses that are otherwise cumbersome to do on a personal computer. Commands learned in this class will enable novices to sign onto Biowulf, navigate through its directories, and work with files, which are essential steps for getting started with bioinformatics. This class is not hands-on. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenWed, Jul 24, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Knowledge of Unix command line is advantageous for scientists who are new to bioinformatics, as many tools are designed to run on Unix-like systems. High performance computing systems (e.g., NIH Biowulf) also require command line skills. Biowulf has around 1000 software, including those for bioinformatics installed and provides more compute power for bioinformatics analyses that are otherwise cumbersome to do on a personal computer. Commands learned in this class will enable novices to sign onto Biowulf, navigate through its directories, and work with files, which are essential steps for getting started with bioinformatics. This class is not hands-on. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m48cf56f8596b3fb88ccf3bda7bb41b7dMeeting number:2307 098 2880Password:3JNm9mWRb$6 Join by video systemDial 23070982880@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meetingnumber. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2307 098 2880 | 2024-07-24 13:00:00 | Online Webinar | Beginner | Bioinformatics,NIH High Performance Unix Cluster Biowulf,unix | Bioinformatics,NIH High Performance Unix Cluster Biowulf,unix | Online | Joe Wu (BTEP) | BTEP | 0 | Unix for the Bioinformatics Beginners |
1554 |
DescriptionAs a cancer researcher, did you know that data sharing is now required by many funding agencies and journals? Join NCI CBIIT’s Dr. Jill Barnholtz-Sloan as she highlights how researchers have used large-scale, multi-modal data sets in the past, and how researchers can continue to use these data sets to positively influence human health (...Read More As a cancer researcher, did you know that data sharing is now required by many funding agencies and journals? Join NCI CBIIT’s Dr. Jill Barnholtz-Sloan as she highlights how researchers have used large-scale, multi-modal data sets in the past, and how researchers can continue to use these data sets to positively influence human health (including cancer research). During this discussion, Dr. Barnholtz-Sloan will share details about her work at NCI, as well as provide information on:
She’ll also summarize NCI resources available to you, how you can access them, and success stories from their use. The University of California, Irvine, is hosting this webinar. DetailsOrganizerCBIITWhenWed, Jul 24, 2024 - 4:00 pm - 5:15 pmWhereOnline |
As a cancer researcher, did you know that data sharing is now required by many funding agencies and journals? Join NCI CBIIT’s Dr. Jill Barnholtz-Sloan as she highlights how researchers have used large-scale, multi-modal data sets in the past, and how researchers can continue to use these data sets to positively influence human health (including cancer research). During this discussion, Dr. Barnholtz-Sloan will share details about her work at NCI, as well as provide information on: accessing data resources from large NCI-funded studies, cloud computing workspaces, and analytical workflows. She’ll also summarize NCI resources available to you, how you can access them, and success stories from their use. The University of California, Irvine, is hosting this webinar. | 2024-07-24 16:00:00 | Online | Any | Data Sharing | Online | Jill Barnholtz-Sloan (NCI/CCR) | CBIIT | 0 | Utilizing Data to Make Advancements for Cancer with Dr. Jill Barnholtz-Sloan | |
1555 |
DescriptionJoin us for an informative webinar on the GARDE software where Dr. Del Fiol will describe how GARDE works, how GARDE has been implemented to support population-based genetic testing, the GARDE chatbot, and results of population analyses using GARDE. GARDE is a software platform that uses: 1) algorithms to identify individuals who are eligible for genetic testing of hereditary cancer syndromes based on their family history recorded in electronic health records (...Read More Join us for an informative webinar on the GARDE software where Dr. Del Fiol will describe how GARDE works, how GARDE has been implemented to support population-based genetic testing, the GARDE chatbot, and results of population analyses using GARDE. GARDE is a software platform that uses: 1) algorithms to identify individuals who are eligible for genetic testing of hereditary cancer syndromes based on their family history recorded in electronic health records (EHRs); and 2) automated chatbots for patient outreach, education, and access to genetic testing. GARDE has been deployed at University of Utah Health and New York University Langone Health (NYU) to support the Cancer Moonshot-funded BRIDGE trial, and more recently at Medical University of South Carolina (MUSC) and Weill Cornell Medicine. For questions contact Daoud Meerzaman or Kayla Strauss.
DetailsOrganizerCBIITWhenThu, Jul 25, 2024 - 10:00 am - 11:00 amWhereOnline |
Join us for an informative webinar on the GARDE software where Dr. Del Fiol will describe how GARDE works, how GARDE has been implemented to support population-based genetic testing, the GARDE chatbot, and results of population analyses using GARDE. GARDE is a software platform that uses: 1) algorithms to identify individuals who are eligible for genetic testing of hereditary cancer syndromes based on their family history recorded in electronic health records (EHRs); and 2) automated chatbots for patient outreach, education, and access to genetic testing. GARDE has been deployed at University of Utah Health and New York University Langone Health (NYU) to support the Cancer Moonshot-funded BRIDGE trial, and more recently at Medical University of South Carolina (MUSC) and Weill Cornell Medicine. For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-07-25 10:00:00 | Online | Any | Genetic Testing | Online | Guilherme Del Fiol (University of Utah School of Medicine) | CBIIT | 0 | GARDE: Open-Source Platform for Population-based Genetic Testing of Hereditary Cancer Syndromes | |
1542 |
DescriptionThis hour and half in-person training will explore the topics of perception and cognition, and how these apply to data visualization. There will also be a discussion on “pre-attentive” properties or visual properties that “pop-out.” These topics are important guides that inform what chart type is most appropriate to visualize your data. This class will also focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how ...Read More This hour and half in-person training will explore the topics of perception and cognition, and how these apply to data visualization. There will also be a discussion on “pre-attentive” properties or visual properties that “pop-out.” These topics are important guides that inform what chart type is most appropriate to visualize your data. This class will also focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must have taken Introduction to R and RStudio class to be successful in this class. By the end of this training, participants should be able to:
Attendees are expected to have basic understanding of R and RStudio. In order to proceed, attendees should have done the following:
Participants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to RStudio and R before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. You can request 1 space for in person mode. If no spaces remain, your registration can be rejected or sent to the waitlist if it is available. DetailsOrganizerNIH LibraryWhenThu, Jul 25, 2024 - 1:00 pm - 2:30 pmWhereNIH Library Training Room Building 10 Clinical Center South Entrance |
This hour and half in-person training will explore the topics of perception and cognition, and how these apply to data visualization. There will also be a discussion on “pre-attentive” properties or visual properties that “pop-out.” These topics are important guides that inform what chart type is most appropriate to visualize your data. This class will also focus on identifying the appropriate packages for plotting, defining plot aesthetics, and demonstrating how to add layers to ggplot graphs. You must have taken Introduction to R and RStudio class to be successful in this class. By the end of this training, participants should be able to: Describe how perception and cognition inform visualizations Discuss the connection between data, aesthetics, & the grammar of graphics Define geoms and distinguish between individual geoms and collective geoms Create a plot and save it in a high-resolution format Attendees are expected to have basic understanding of R and RStudio. In order to proceed, attendees should have done the following: Installed R and RStudio Taken Introduction to R and RStudio class. If not, here are some resources for getting started: Introduction to R Introduction to RStudio Introduction to Scripts in RStudio Note on Technology Participants are expected to bring their own laptops to this training. NIH Staff using an NIH-laptop can easily connect to the staff Wi-Fi. If participants are bringing a personal laptop, they are restricted to using the NIH Public Wi-Fi. Registrants will receive an email with information and instructions to install and verify access to RStudio and R before the class. If you register the day before the class, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. You can request 1 space for in person mode. If no spaces remain, your registration can be rejected or sent to the waitlist if it is available. | 2024-07-25 13:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Data Visualization | In-Person | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot: Customizations | |
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DescriptionThis one-hour online training session will instruct participants on chart creation in Excel. By the end of this training, attendees will be able to:
This one-hour online training session will instruct participants on chart creation in Excel. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of Excel. This is an introductory training for those who need to quickly learn basic Excel chart features, as well as a refresher for those with more experience. Basic familiarity of Excel is helpful, but not required. You can request 1 space for online mode. If no spaces remain, your registration can be rejected or sent to the waitlist if it is available. DetailsOrganizerNIH LibraryWhenTue, Jul 30, 2024 - 12:00 pm - 1:00 pmWhereOnline |
This one-hour online training session will instruct participants on chart creation in Excel. By the end of this training, attendees will be able to: Review and select chart types, layout, and style Change colors and format options Add titles and labels Attendees are not expected to have any prior knowledge of Excel. This is an introductory training for those who need to quickly learn basic Excel chart features, as well as a refresher for those with more experience. Basic familiarity of Excel is helpful, but not required. You can request 1 space for online mode. If no spaces remain, your registration can be rejected or sent to the waitlist if it is available. | 2024-07-30 12:00:00 | Online | Any | Excel | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Creating Charts in Excel | |
1576 |
DescriptionThis webinar will focus on the data discovery and sharing infrastructure available for librarians and researchers. Demonstrating how technologies like repositories, data catalogs, and standards work together, this webinar will provide needed background on that infrastructure while also discussing how this infrastructure can be leveraged to increase the discoverability of your and your researcher’s data. By registering for this class, you are agreeing to the Read More This webinar will focus on the data discovery and sharing infrastructure available for librarians and researchers. Demonstrating how technologies like repositories, data catalogs, and standards work together, this webinar will provide needed background on that infrastructure while also discussing how this infrastructure can be leveraged to increase the discoverability of your and your researcher’s data. By registering for this class, you are agreeing to the NNLM Code of Conduct. Objectives: By the end of this webinar, attendees will be able to
DetailsOrganizerNIH LibraryWhenTue, Aug 06, 2024 - 2:00 pm - 3:00 pmWhereOnline |
This webinar will focus on the data discovery and sharing infrastructure available for librarians and researchers. Demonstrating how technologies like repositories, data catalogs, and standards work together, this webinar will provide needed background on that infrastructure while also discussing how this infrastructure can be leveraged to increase the discoverability of your and your researcher’s data. By registering for this class, you are agreeing to the NNLM Code of Conduct. Objectives: By the end of this webinar, attendees will be able to State where to learn about available data discovery and sharing infrastructure Describe how various pieces of infrastructure interact when users search for data for re-use Apply knowledge of this infrastructure when sharing their own data or assisting researchers with sharing data | 2024-08-06 14:00:00 | Online | Any | Data Sharing | Online | Nicole Contaxis (NYU Health Sciences Library NYU Langone Health) | NIH Library | 0 | Understanding Data Discovery and Sharing Infrastructure and Leveraging It for Your Benefit | |
1563 |
DescriptionThis one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview ...Read More This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to:
Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. DetailsOrganizerNIH LibraryWhenWed, Aug 07, 2024 - 2:00 pm - 3:00 pmWhereOnline |
This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to: Recognize four freely available IDEs for python coding Identify fundamental components of python code Understand how and why notebooks support rigor and transparency in analysis Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. | 2024-08-07 14:00:00 | Online | Any | Python | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
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DescriptionGeneralist repositories are a flexible, trusted resource for sharing research data for which there is no appropriate discipline specific repository as well as many other research outputs valuable for reproducibility and open science. This webinar is presented by participants of the Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo), an NIH program supporting the enhancement of generalist repository functionality to better support NIH data sharing ...Read More Generalist repositories are a flexible, trusted resource for sharing research data for which there is no appropriate discipline specific repository as well as many other research outputs valuable for reproducibility and open science. This webinar is presented by participants of the Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo), an NIH program supporting the enhancement of generalist repository functionality to better support NIH data sharing use cases. The GREI repositories will share generalist repository use cases and best practices for sharing and finding data and describe how generalist repositories fit into the wider data repository landscape and how they can be part of meeting the new NIH Data Management and Sharing Policy requirements. It will present both the key common features of the GREI generalist repositories that meet the NIH desirable repository characteristics as well as the unique features of these repositories that make them suited to specific types of data. By registering for this class, you are agreeing to the NNLM Code of Conduct. Objectives:
DetailsOrganizerNIH LibraryWhenWed, Aug 07, 2024 - 2:00 pm - 3:00 pmWhereOnline |
Generalist repositories are a flexible, trusted resource for sharing research data for which there is no appropriate discipline specific repository as well as many other research outputs valuable for reproducibility and open science. This webinar is presented by participants of the Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo), an NIH program supporting the enhancement of generalist repository functionality to better support NIH data sharing use cases. The GREI repositories will share generalist repository use cases and best practices for sharing and finding data and describe how generalist repositories fit into the wider data repository landscape and how they can be part of meeting the new NIH Data Management and Sharing Policy requirements. It will present both the key common features of the GREI generalist repositories that meet the NIH desirable repository characteristics as well as the unique features of these repositories that make them suited to specific types of data. By registering for this class, you are agreeing to the NNLM Code of Conduct. Objectives: Define generalist repositories and how they fit into the broader data repository landscape. Explain the purpose and goals of the NIH Generalist Repository Ecosystem Initiative (GREI). Describe common use cases for generalist repositories in data sharing. Understand best practices for sharing and finding data in generalist repositories. Discuss how generalist repositories can help meet NIH Data Management and Sharing Policy requirements. | 2024-08-07 14:00:00 | Online | Any | Data Sharing | Online | Julie Goldman (Harvard Library on behalf of Harvard Dataverse),Gretchen Gueguen ( Center for Open Science),Pearl Go (Northwestern University on behalf of Zenodo) | NIH Library | 0 | The NIH Generalist Repository Ecosystem Initiative (GREI): Supporting Data Sharing in Generalist Repositories | |
1528 |
DescriptionWhat are common statistical analyses for binary data? What is the distribution of your binary dependent variable? What is the difference from normally distributed data? How do you model the binary outcome with multiple predictors in a regression? This is a two-hour lecture intended for those doing basic data analysis using R. Basic R programming is a pre-requisite for this course, as is knowledge of basic statistical concepts, such as, mean and ...Read More What are common statistical analyses for binary data? What is the distribution of your binary dependent variable? What is the difference from normally distributed data? How do you model the binary outcome with multiple predictors in a regression? This is a two-hour lecture intended for those doing basic data analysis using R. Basic R programming is a pre-requisite for this course, as is knowledge of basic statistical concepts, such as, mean and p-value from statistical hypothesis testing. This class will be taught by the Clinical Center's Biostatistics and Clinical Epidemiology Service (CC/BCES). The learning outcomes include:
R code snippets will be shared during the lecture and within lecture notes. The class will be recorded, so you can go back to the material as you begin to do your own modeling. During the class, time will be devoted to explaining the concepts, and code snippets and output and references will be provided for in-depth material. Preclass Requirements: You must take the basic R programming and statistical inference – Part I classes as pre-requisite through the NIH Library or have acquired the equivalent knowledge elsewhere prior to registering for this class. Statistical Software: We will be using R and RStudio for our statistical analysis. R is open source and free. There are versions for Mac OSX, Windows, and Linux. You can download it from https://cran.r-project.org/. Additionally, we will be using RStudio as a graphical interface for R. RStudio is free for everyone to download from https://posit.co/download/rstudio-desktop/. See above for pre-requisites in R programming. DetailsOrganizerNIH LibraryWhenThu, Aug 08, 2024 - 11:00 am - 1:00 pmWhereOnline |
What are common statistical analyses for binary data? What is the distribution of your binary dependent variable? What is the difference from normally distributed data? How do you model the binary outcome with multiple predictors in a regression? This is a two-hour lecture intended for those doing basic data analysis using R. Basic R programming is a pre-requisite for this course, as is knowledge of basic statistical concepts, such as, mean and p-value from statistical hypothesis testing. This class will be taught by the Clinical Center's Biostatistics and Clinical Epidemiology Service (CC/BCES). The learning outcomes include: calculating and displaying descriptive statistics, such as rates, proportions, and barplots recognizing the binomial probability density function as distinct from the normal density function estimating proportion and confidence intervals hypothesis testing for one-sample and two-sample logistic regression and checking model assumptions model diagnostics checking and results interpretation R code snippets will be shared during the lecture and within lecture notes. The class will be recorded, so you can go back to the material as you begin to do your own modeling. During the class, time will be devoted to explaining the concepts, and code snippets and output and references will be provided for in-depth material. Preclass Requirements: You must take the basic R programming and statistical inference – Part I classes as pre-requisite through the NIH Library or have acquired the equivalent knowledge elsewhere prior to registering for this class. Statistical Software: We will be using R and RStudio for our statistical analysis. R is open source and free. There are versions for Mac OSX, Windows, and Linux. You can download it from https://cran.r-project.org/. Additionally, we will be using RStudio as a graphical interface for R. RStudio is free for everyone to download from https://posit.co/download/rstudio-desktop/. See above for pre-requisites in R programming. | 2024-08-08 11:00:00 | Online | Any | Statistics | Online | Nusrat Rabbee (NIH/CC) | NIH Library | 0 | Statistical Methods for Binary Data Analysis Using R | |
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Distinguished Speakers Seminar SeriesDescriptionThe Elemento lab combines Big Data analytics with experimentation to develop entirely new ways to help prevent, diagnose, understand, treat and ultimately cure disease. Our research involves routine use of ultrafast DNA sequencing, proteomics, high-performance computing, mathematical modeling, and artificial intelligence/machine learning. We’re revolutionizing healthcare by developing innovative approaches to better predict, diagnose, treat, and prevent disease to improve clinical care for every patient. Alternative Meeting Information: ...Read MoreThe Elemento lab combines Big Data analytics with experimentation to develop entirely new ways to help prevent, diagnose, understand, treat and ultimately cure disease. Our research involves routine use of ultrafast DNA sequencing, proteomics, high-performance computing, mathematical modeling, and artificial intelligence/machine learning. We’re revolutionizing healthcare by developing innovative approaches to better predict, diagnose, treat, and prevent disease to improve clinical care for every patient. Alternative Meeting Information: Meeting number: 2319 759 4122 Password: cN2HVb7Zi$3 Join by video system Dial 23197594122@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2319 759 4122RegisterOrganizerBTEPWhenThu, Aug 08, 2024 - 1:00 pm - 2:00 pmWhereOnline |
The Elemento lab combines Big Data analytics with experimentation to develop entirely new ways to help prevent, diagnose, understand, treat and ultimately cure disease. Our research involves routine use of ultrafast DNA sequencing, proteomics, high-performance computing, mathematical modeling, and artificial intelligence/machine learning. We’re revolutionizing healthcare by developing innovative approaches to better predict, diagnose, treat, and prevent disease to improve clinical care for every patient. Alternative Meeting Information: Meeting number: 2319 759 4122 Password: cN2HVb7Zi$3 Join by video system Dial 23197594122@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2319 759 4122 | 2024-08-08 13:00:00 | Online | Any | AI,Precision Medicine | Online | Olivier Elemento Ph.D. (Weill Cornell Medicine) | BTEP | 1 | Genomes, Avatars and AI: The Future of Personalized Medicine | |
1558 |
DescriptionWe cordially invite you to attend the upcoming Data Sharing and Reuse Seminar featuring Dr. Robert Schuler and Dr. Jifan Feng. Dr. Schuler, a Senior Computer Scientist and Lead Scientist at the University of Southern California's Information Sciences Institute, will be joined by Dr. Feng, a Research Associate at the Center for Craniofacial Molecular Biology, Herman Ostrow School of Dentistry of USC. They will be presenting on "FaceBase: Empowering Dental, Oral, and Craniofacial Research ...Read More We cordially invite you to attend the upcoming Data Sharing and Reuse Seminar featuring Dr. Robert Schuler and Dr. Jifan Feng. Dr. Schuler, a Senior Computer Scientist and Lead Scientist at the University of Southern California's Information Sciences Institute, will be joined by Dr. Feng, a Research Associate at the Center for Craniofacial Molecular Biology, Herman Ostrow School of Dentistry of USC. They will be presenting on "FaceBase: Empowering Dental, Oral, and Craniofacial Research Through Data Sharing and Reuse." This event is generously supported by the National Institute of Dental and Craniofacial Research to highlight the importance of data sharing in advancing dental and craniofacial research. The seminar will introduce FaceBase, a trusted data resource for research and education on craniofacial and dental development and malformations/diseases across human and animal models. Dr. Schuler will present FaceBase as a community-building platform offering a cloud-based repository of high-quality FAIR data resources. Dr. Feng will then showcase examples of FaceBase data reuse in dental, oral, and craniofacial research. This presentation will demonstrate how FaceBase facilitates data sharing, analysis, and interpretation to accelerate discoveries in the field. We look forward to your participation in this informative session! DetailsOrganizerNIH Data SeminarsWhenFri, Aug 09, 2024 - 12:00 pm - 1:00 pmWhereOnline |
We cordially invite you to attend the upcoming Data Sharing and Reuse Seminar featuring Dr. Robert Schuler and Dr. Jifan Feng. Dr. Schuler, a Senior Computer Scientist and Lead Scientist at the University of Southern California's Information Sciences Institute, will be joined by Dr. Feng, a Research Associate at the Center for Craniofacial Molecular Biology, Herman Ostrow School of Dentistry of USC. They will be presenting on "FaceBase: Empowering Dental, Oral, and Craniofacial Research Through Data Sharing and Reuse." This event is generously supported by the National Institute of Dental and Craniofacial Research to highlight the importance of data sharing in advancing dental and craniofacial research. The seminar will introduce FaceBase, a trusted data resource for research and education on craniofacial and dental development and malformations/diseases across human and animal models. Dr. Schuler will present FaceBase as a community-building platform offering a cloud-based repository of high-quality FAIR data resources. Dr. Feng will then showcase examples of FaceBase data reuse in dental, oral, and craniofacial research. This presentation will demonstrate how FaceBase facilitates data sharing, analysis, and interpretation to accelerate discoveries in the field. We look forward to your participation in this informative session! | 2024-08-09 12:00:00 | Online | Any | Data Sharing | Online | Robert Schuler (USC),Jifan Feng (Herman Ostrow School of Dentistry of USC) | NIH Data Seminars | 0 | FaceBase: Empowering Dental, Oral, and Craniofacial Research through Data Sharing and Reuse | |
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DescriptionThis session will cover the basics of linear mixed-effects modeling as a method of regression analysis for clustered data. Special emphasis will be on the ideas behind random-intercepts and random-slopes modeling, and the discussion will be centered on simple and concrete examples. This session is geared towards participants with beginner to intermediate knowledge of applied statistics or biostatistics. Familiarity with regression analysis is also recommended. This session will be recorded, and materials will be ...Read More This session will cover the basics of linear mixed-effects modeling as a method of regression analysis for clustered data. Special emphasis will be on the ideas behind random-intercepts and random-slopes modeling, and the discussion will be centered on simple and concrete examples. This session is geared towards participants with beginner to intermediate knowledge of applied statistics or biostatistics. Familiarity with regression analysis is also recommended. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. DetailsOrganizerAdvanced Biomedical Computational Sciences (ABCS)WhenTue, Aug 13, 2024 - 12:00 pm - 1:00 pmWhereAuditorium Building 549 NCI at Frederick |
This session will cover the basics of linear mixed-effects modeling as a method of regression analysis for clustered data. Special emphasis will be on the ideas behind random-intercepts and random-slopes modeling, and the discussion will be centered on simple and concrete examples. This session is geared towards participants with beginner to intermediate knowledge of applied statistics or biostatistics. Familiarity with regression analysis is also recommended. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. | 2024-08-13 12:00:00 | Auditorium Building 549 NCI at Frederick | Any | Data | In-Person | Alex Mitrophanov (FNLCR/NCI/NIH) | Advanced Biomedical Computational Sciences (ABCS) | 0 | Introduction to linear mixed-effects modeling | |
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DescriptionNCI staff are welcome to register for an upcoming Childhood Cancer Data Initiative (CCDI) webinar titled, "CCDI Federated Data: Enhancing Data Discoverability," where you can learn about one of the newest advancements for querying genomic, clinical, imaging, and biospecimen data through a standard application programming interface (API). Join representative members of the demonstration project and learn about: NCI staff are welcome to register for an upcoming Childhood Cancer Data Initiative (CCDI) webinar titled, "CCDI Federated Data: Enhancing Data Discoverability," where you can learn about one of the newest advancements for querying genomic, clinical, imaging, and biospecimen data through a standard application programming interface (API). Join representative members of the demonstration project and learn about: DetailsOrganizerNCIWhenTue, Aug 13, 2024 - 1:00 pm - 2:00 pmWhereOnline |
NCI staff are welcome to register for an upcoming Childhood Cancer Data Initiative (CCDI) webinar titled, "CCDI Federated Data: Enhancing Data Discoverability," where you can learn about one of the newest advancements for querying genomic, clinical, imaging, and biospecimen data through a standard application programming interface (API). Join representative members of the demonstration project and learn about:• how to access the API, including the OpenAPI Specification and materials to support API development,• harmonized data elements available through the API,• use cases for leveraging the API,• the future direction of data federationFor questions about this event, please contact CCDIevents@mail.nih.gov | 2024-08-13 13:00:00 | Online | Any | Data | Online | NCI Staff | NCI | 0 | CCDI Webinar | CCDI Federated Data– Enhancing Data Discoverability | |
1560 |
DescriptionIn this introduction session, Dr. Yana Stackpole will discuss biologist-friendly ways to import and analyze RNAseq data in Qlucore, followed by integrated GSEA for biological interpretation. In this introduction session, Dr. Yana Stackpole will discuss biologist-friendly ways to import and analyze RNAseq data in Qlucore, followed by integrated GSEA for biological interpretation. Along with this session, you will get access to short video tutorials for easy reproduction of all steps of this workflow! For questions contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenWed, Aug 14, 2024 - 10:00 am - 11:00 amWhereOnline |
In this introduction session, Dr. Yana Stackpole will discuss biologist-friendly ways to import and analyze RNAseq data in Qlucore, followed by integrated GSEA for biological interpretation. She will pick a public cancer-related dataset from GREIN DB (as a matrix of counts + annotation files), import it into Qlucore, do a visual QC check, statistical analysis, GSEA (using Hallmark gene set collection) with visuals like PCA biplot, heatmap, volcano plot, box plot, violin plot, etc. You will both experience the analysis done in real time and see how you can restore a session saved previously. This introduction is intended for biologists looking to get more hands-on with RNAseq data in the easiest and fastest way, and for more experienced biologists looking for an interactive, fast, and visual way to handle their datasets creating publication-ready images. Along with this session, you will get access to short video tutorials for easy reproduction of all steps of this workflow! Qlucore access is already available to you via NCI. For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-08-14 10:00:00 | Online | Any | RNA-Seq | Online | Yana Stackpole (Qlucore) | CBIIT | 0 | RNAseq Data Analysis in Qlucore | |
1582 |
DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
DetailsOrganizerNIH HPCWhenWed, Aug 14, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) be prepared to wait your turn if staff are already helping other users | 2024-08-14 13:00:00 | Online | Any | Biowulf | Online | NIH HPC | 0 | Zoom-In Consult for Biowulf Users (Wed 14 Aug) | ||
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DescriptionQiagen’s CLC Genomics Workbench is a point-and-click software for analyzing multi-omics sequencing data including variant analysis, RNA sequencing, and ChIP sequencing. This class will demonstrate variant analysis using this software. Participants will be able to start from FASTQ files and generate as well as interpret variant information using CLC Genomics Workbench after this class. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service....Read More Qiagen’s CLC Genomics Workbench is a point-and-click software for analyzing multi-omics sequencing data including variant analysis, RNA sequencing, and ChIP sequencing. This class will demonstrate variant analysis using this software. Participants will be able to start from FASTQ files and generate as well as interpret variant information using CLC Genomics Workbench after this class. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can reach out to the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench). Meeting link: Join by video system Join by phone
RegisterOrganizerBTEPWhenThu, Aug 15, 2024 - 1:00 pm - 2:30 pmWhereOnline Webinar |
Qiagen’s CLC Genomics Workbench is a point-and-click software for analyzing multi-omics sequencing data including variant analysis, RNA sequencing, and ChIP sequencing. This class will demonstrate variant analysis using this software. Participants will be able to start from FASTQ files and generate as well as interpret variant information using CLC Genomics Workbench after this class. NCI scientists can use CLC Genomics Workbench through the NCI institutional license, just submit a ticket with service.cancer.gov to get it installed on personal computer. Others at NIH can reach out to the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/clc-genomics-workbench). Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=me82578b3ace777df00282d39c283e7f8 Meeting number:2301 296 6988Password:XgnZHM44e$5 Join by video systemDial 23012966988@cbiit.webex.comYou can also ial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2301 296 6988 | 2024-08-15 13:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software,Variant Analysis | Bioinformatics,Bioinformatics Software,Variant Analysis | Online | Joe Wu (BTEP),Shawn Prince (Qiagen) | BTEP | 0 | Variant Analysis with Qiagen CLC Genomics Workbench |
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DescriptionFrederick National Laboratory "Single Cell Characterization of Antigen-Specific Responses: An Immunomics Approach" Meeting ID: 225 592 603 654 Frederick National Laboratory "Single Cell Characterization of Antigen-Specific Responses: An Immunomics Approach" Meeting ID: 225 592 603 654 DetailsOrganizerFNL Science and Technology GroupWhenWed, Aug 21, 2024 - 11:00 am - 12:00 pmWhereOnline |
Frederick National LaboratoryScience and Technology Group: Work in Progress Seminar Series presents: "Single Cell Characterization of Antigen-Specific Responses: An Immunomics Approach" Meeting ID: 225 592 603 654 Passcode: B7sey6 | 2024-08-21 11:00:00 | Online | Any | Single Cell | Online | Brenna Hill (AIDS and Cancer Virus Program) | FNL Science and Technology Group | 0 | Single Cell Characterization of Antigen-Specific Responses: An Immunomics Approach | |
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DescriptionIn this webinar, Dr. Carey will provide an introduction to Bioconductor for genomic data science.
Bioconductor.org enters its third decade as an NHGRI/NCI-funded resource for many aspects of genomic data science.
In this presentation, the basic ...Read More In this webinar, Dr. Carey will provide an introduction to Bioconductor for genomic data science.
Bioconductor.org enters its third decade as an NHGRI/NCI-funded resource for many aspects of genomic data science.
In this presentation, the basic assets of the project are presented. Software topics will be discussed including the integrative data containers for genome scale experiments (SummarizedExperiment, SingleCellExperiment), plus well-documented components of analytic workflows for transcriptomics and epigenetics, and thousands of resources for annotation of genomic data. Approaches to assuring user and developer satisfaction will also be discussed.
For questions, contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenFri, Aug 23, 2024 - 10:00 am - 11:00 amWhereOnline |
In this webinar, Dr. Carey will provide an introduction to Bioconductor for genomic data science. Bioconductor.org enters its third decade as an NHGRI/NCI-funded resource for many aspects of genomic data science. In this presentation, the basic assets of the project are presented. Software topics will be discussed including the integrative data containers for genome scale experiments (SummarizedExperiment, SingleCellExperiment), plus well-documented components of analytic workflows for transcriptomics and epigenetics, and thousands of resources for annotation of genomic data. Approaches to assuring user and developer satisfaction will also be discussed. For questions, contact Daoud Meerzaman or Kayla Strauss. | 2024-08-23 10:00:00 | Online | Any | R programming | Online | Vincent J. Carey (Brigham and Women\'s Hospital Harvard Medical School) | CBIIT | 0 | An Introduction to Bioconductor for Genomic Data Science | |
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DescriptionThis hands-on workshop will help you advance your microbiome analysis and computing skills, and help
This hands-on workshop will help you advance your microbiome analysis and computing skills, and help
● All participants should bring a laptop and be able to install software on their laptop. Any laptop Contact itcrtrainingnetwork@gmail.com with any questions!
DetailsOrganizerNCIWhenTue, Aug 27 - Thu, Aug 29, 2024 -10:00 am - 2:00 pmWhereNIH Campus Building 50, Room 1328 |
This hands-on workshop will help you advance your microbiome analysis and computing skills, and helpyou learn new ways to leverage computing resources for your research. What you’ll learn: ● The basics of interacting with command line software.● Using QIIME 2 for microbiome data analysis.● Using containers (e.g., Docker) to support reproducible bioinformatics.● Using QIIME 2 through the Galaxy graphical interface (https://cancer.usegalaxy.org).● Computing resources that can help you do your work more efficiently, especially for data that’s toobig for your laptop. Prerequisites: ● All participants should bring a laptop and be able to install software on their laptop. Any laptopthat can run Google Chrome and Docker Desktop should work just fine!● Attendees are required to install Docker and Docker Desktop in advance for this workshop.If you use a government computer or don’t have admin privileges on the computer youplan to use, you will need to contact your IT to have this set up – this may take weeks.● Please review the instructions here to install the requisite software on your laptop before theworkshop.● Please review our overview of working with command line software.● Some familiarity with molecular biology and microbiomes is expected.Space is limited - please only register if you can commit to the full event! Contact itcrtrainingnetwork@gmail.com with any questions! | 2024-08-27 10:00:00 | NIH Campus Building 50, Room 1328 | Any | Microbiome | In-Person | ITN,QIIME 2 team (Caporaso Lab) | NCI | 0 | Leveraging High-Performance Computing Resources and Using QIIME 2 to Advance your Microbiome Projects | |
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DescriptionThis 45-minute online Lunch and Learn training will help attendees develop their own customized strategy for responsibly incorporating generative artificial intelligence (AI) tools, such as ChatGPT, into their workflows. By the end of this training, attendees will be able to:
This 45-minute online Lunch and Learn training will help attendees develop their own customized strategy for responsibly incorporating generative artificial intelligence (AI) tools, such as ChatGPT, into their workflows. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of generative AI tools to be successful in this training. DetailsOrganizerNIH LibraryWhenTue, Aug 27, 2024 - 12:00 pm - 12:45 pmWhereOnline Webinar |
This 45-minute online Lunch and Learn training will help attendees develop their own customized strategy for responsibly incorporating generative artificial intelligence (AI) tools, such as ChatGPT, into their workflows. By the end of this training, attendees will be able to: Assess appropriate use cases for generative AI tools within their specific research/work context Develop a customized generative AI usage strategy Document their approach for using generative AI tools Attendees are not expected to have any prior knowledge of generative AI tools to be successful in this training. | 2024-08-27 12:00:00 | Online Webinar | Any | AI | AI | Online | Alicia Lillich (NIH Library) | NIH Library | 0 | Crafting Your Generative AI Usage Strategy |
1565 |
DescriptionThis one-hour online training covers various aspects of sharing code using MATLAB community tools like File Exchange and GitHub. By the end of this training, attendees will be able to:
This one-hour online training covers various aspects of sharing code using MATLAB community tools like File Exchange and GitHub. By the end of this training, attendees will be able to:
This is an introductory-level training taught by MathWorks. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenThu, Aug 29, 2024 - 11:00 am - 12:00 pmWhereOnline |
This one-hour online training covers various aspects of sharing code using MATLAB community tools like File Exchange and GitHub. By the end of this training, attendees will be able to: Share the code with collaborators and the scientific community Take advantage of MATLAB community tools such as File Exchange & GitHub Learn how to host MATLAB offerings at their HPC center or a Science Gateway Create notebook-style Live Scripts using MATLAB Live Editor Leverage MATLAB Community Resources to make code, projects, and toolboxes available Learn how to access MATLAB through the browser and share licenses with collaborators This is an introductory-level training taught by MathWorks. No installation of MATLAB is necessary. | 2024-08-29 11:00:00 | Online | Any | Matlab | Online | Mathworks | NIH Library | 0 | Open Science and Collaboration with MATLAB | |
1394 |
Distinguished Speakers Seminar SeriesDescriptionDr. Mardis is an internationally recognized expert in cancer genomics, with ongoing interests in the integrated characterization of cancer genomes, defining DNA-based somatic and germline interactions and RNA-based pathways, and immune microenvironments that lead to cancer onset and progression, specifically involving pediatric cancers. Most recently, her research has been oriented toward translational aspects of cancer genomics, specifically identifying how the cancer genome changes with treatment, including acquired resistance, the use of genomics in understanding ...Read More Dr. Mardis is an internationally recognized expert in cancer genomics, with ongoing interests in the integrated characterization of cancer genomes, defining DNA-based somatic and germline interactions and RNA-based pathways, and immune microenvironments that lead to cancer onset and progression, specifically involving pediatric cancers. Most recently, her research has been oriented toward translational aspects of cancer genomics, specifically identifying how the cancer genome changes with treatment, including acquired resistance, the use of genomics in understanding immune therapy response, and the clinical benefit of cancer molecular profiling in the pediatric setting. Alternative Meeting Information: Meeting number: 2312 714 2024 Password: GrddnZQ*248 Join by video system Dial 23127142024@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2312 714 2024RegisterOrganizerBTEPWhenThu, Aug 29, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Dr. Mardis is an internationally recognized expert in cancer genomics, with ongoing interests in the integrated characterization of cancer genomes, defining DNA-based somatic and germline interactions and RNA-based pathways, and immune microenvironments that lead to cancer onset and progression, specifically involving pediatric cancers. Most recently, her research has been oriented toward translational aspects of cancer genomics, specifically identifying how the cancer genome changes with treatment, including acquired resistance, the use of genomics in understanding immune therapy response, and the clinical benefit of cancer molecular profiling in the pediatric setting. Alternative Meeting Information: Meeting number: 2312 714 2024 Password: GrddnZQ*248 Join by video system Dial 23127142024@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2312 714 2024 | 2024-08-29 13:00:00 | Online Webinar | Any | Cancer genomics,Pediatric Cancer | Online | Elaine Mardis Ph.D. (Nationwide Children\'s Hospital) | BTEP | 1 | Clinical and Computational Molecular Profiling in Pediatric Cancer Diagnostics | |
1586 |
DescriptionThis course is designed to provide participants with an introduction to R programming, specifically focusing on data wrangling techniques. Throughout the course, participants will gain a comprehensive understanding of how to effectively use RStudio, import files into R, and navigate the basic R language. The course begins with an overview of RStudio, ensuring participants are familiar with its interface and functionality. From there, participants will learn how to import various file types ...Read More This course is designed to provide participants with an introduction to R programming, specifically focusing on data wrangling techniques. Throughout the course, participants will gain a comprehensive understanding of how to effectively use RStudio, import files into R, and navigate the basic R language. The course begins with an overview of RStudio, ensuring participants are familiar with its interface and functionality. From there, participants will learn how to import various file types into R, including CSV, Excel, and text files. They will also explore different types of variables in R, such as numeric, character, and factor variables. Participants will learn how to clean and transform data, handle missing values, filter and subset data, and perform data aggregation and reshaping. They will also be introduced to the concept of tidy data and how to achieve it using R. By the end of the course, participants will have a solid foundation in R programming and data wrangling techniques. They will be equipped with the skills necessary to efficiently manipulate and prepare data for further analysis and visualization. DetailsOrganizerNIAIDWhenFri, Aug 30, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This course is designed to provide participants with an introduction to R programming, specifically focusing on data wrangling techniques. Throughout the course, participants will gain a comprehensive understanding of how to effectively use RStudio, import files into R, and navigate the basic R language. The course begins with an overview of RStudio, ensuring participants are familiar with its interface and functionality. From there, participants will learn how to import various file types into R, including CSV, Excel, and text files. They will also explore different types of variables in R, such as numeric, character, and factor variables. Participants will learn how to clean and transform data, handle missing values, filter and subset data, and perform data aggregation and reshaping. They will also be introduced to the concept of tidy data and how to achieve it using R. By the end of the course, participants will have a solid foundation in R programming and data wrangling techniques. They will be equipped with the skills necessary to efficiently manipulate and prepare data for further analysis and visualization. | 2024-08-30 13:00:00 | Online | Any | Data Wrangling,R programming | Online | Mina Peyton (NIAID),Yuyan Yi (NIAID) | NIAID | 0 | Introduction to R: Part 1 – Data Wrangling | |
1566 |
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This one-hour session will introduce attendees to the world of Artificial Intelligence (AI) as we explore the fundamentals, applications, and ethical considerations of this transformative technology. Key topics will include machine learning, deep learning, data handling, and real-world AI applications across various industries. We'll delve into the ethical implications of AI and offer insights on how to become AI literate. Whether you're a seasoned professional or just starting your AI journey, this session will equip you with essential knowledge to navigate the AI landscape effectively and make informed decisions in our data-driven world. | 2024-09-04 13:00:00 | Online | Any | AI | Online | Alicia Lillich (NIH Library) | NIH Library | 0 | AI Literacy: Navigating the World of Artificial Intelligence | |
1587 |
DescriptionThis course provides an introduction to data visualization using R. Participants will learn data visualization with base R and using the R package ggplot2 to explore various types of data visualizations, including scatter plots, line charts, bar graphs, histograms, box plots, and more. They will also be introduced to customizing and enhancing visualizations with themes, labels, annotations, and color schemes. By the end of this course, participants will have the skills and knowledge to ...Read More This course provides an introduction to data visualization using R. Participants will learn data visualization with base R and using the R package ggplot2 to explore various types of data visualizations, including scatter plots, line charts, bar graphs, histograms, box plots, and more. They will also be introduced to customizing and enhancing visualizations with themes, labels, annotations, and color schemes. By the end of this course, participants will have the skills and knowledge to create insightful and visually appealing data visualizations using R that will enable them to communicate data-driven insights effectively. DetailsOrganizerNIAIDWhenFri, Sep 06, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This course provides an introduction to data visualization using R. Participants will learn data visualization with base R and using the R package ggplot2 to explore various types of data visualizations, including scatter plots, line charts, bar graphs, histograms, box plots, and more. They will also be introduced to customizing and enhancing visualizations with themes, labels, annotations, and color schemes. By the end of this course, participants will have the skills and knowledge to create insightful and visually appealing data visualizations using R that will enable them to communicate data-driven insights effectively. | 2024-09-06 13:00:00 | Online | Any | Data Visualization,R programming | Online | Mina Peyton (NIAID),Yuyan Yi (NIAID) | NIAID | 0 | Introduction to R: Part 2 – Data Visualization | |
1590 |
DescriptionThis introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. This class will focus on Message Passing and Self Attention-based Networks, data augmentation, transfer learning and their application to drug molecule property prediction. The links to all the previous classes are available in the Course Syllabus page: This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. This class will focus on Message Passing and Self Attention-based Networks, data augmentation, transfer learning and their application to drug molecule property prediction. The links to all the previous classes are available in the Course Syllabus page: Expected knowledge: Basic Python, Basic Linux/Unix. This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class. The class is free but registration is required. Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems
DetailsOrganizerNIH - HPCWhenTue, Sep 10, 2024 - 9:30 am - 12:00 pmWhereOnline |
This introductory course teaches the basics of deep learning and of different types of deep learning networks through a set of hands-on biological examples implemented in Keras, one example per class. This class will focus on Message Passing and Self Attention-based Networks, data augmentation, transfer learning and their application to drug molecule property prediction. The links to all the previous classes are available in the Course Syllabus page:https://hpc.nih.gov/training/deep_learning_by_example.html Expected knowledge: Basic Python, Basic Linux/Unix. This class is part of a series, but each class is stand-alone. The class will be webcast and recorded. Handouts will be made available one day prior to the class. The class is free but registration is required. Please contact staff@hpc.nih.gov with any questions about the NIH HPC Systems | 2024-09-10 09:30:00 | Online | Any | Biowulf | Online | Gennady Denisov (NIH HPC staff) | NIH - HPC | 0 | Deep Learning by Example on Biowulf | |
1567 |
DescriptionThe training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and ...Read More The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database). DetailsOrganizerNIH LibraryWhenTue, Sep 10, 2024 - 1:00 pm - 4:00 pmWhereOnline |
The training will overview the current status of pathway tools, with focus on software available to NIH community. It will discuss the biological interoperation of mutation and expression data in the context of pathways, pathway databases, and popular web-based pathway tools. The pathway software GSEA, g: Profiler, and PATHVIEW will be used to demonstrate how to run the pathway analysis of expression data against GO (Gene Ontology), KEGG (Kyoto Encyclopedia of Genes and Genomes), and MSigDB (Molecular Signatures Database). | 2024-09-10 13:00:00 | Online | Any | Pathway Analysis | Online | Daoud Meerzaman (CBIIT) | NIH Library | 0 | Pathway Analysis | |
1602 |
DescriptionQlucore Omics Explorer is a point-and-click package available to NCI CCR scientists that enables visualization-based analysis of multi-omics data including RNA-seq, scRNA-seq, proteomics, metabolomics, as well as enabling the use of machine learning classification of cell types. In this session, participants will learn to apply regression approaches to identify correlation between gene and protein expression data using this software. Experience using or installation of Qlucore Omics Explorer is not needed to attend. ...Read More Qlucore Omics Explorer is a point-and-click package available to NCI CCR scientists that enables visualization-based analysis of multi-omics data including RNA-seq, scRNA-seq, proteomics, metabolomics, as well as enabling the use of machine learning classification of cell types. In this session, participants will learn to apply regression approaches to identify correlation between gene and protein expression data using this software. Experience using or installation of Qlucore Omics Explorer is not needed to attend. Submit a ticket with service.cancer.gov to get this software installed on personal computer. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenWed, Sep 11, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Qlucore Omics Explorer is a point-and-click package available to NCI CCR scientists that enables visualization-based analysis of multi-omics data including RNA-seq, scRNA-seq, proteomics, metabolomics, as well as enabling the use of machine learning classification of cell types. In this session, participants will learn to apply regression approaches to identify correlation between gene and protein expression data using this software. Experience using or installation of Qlucore Omics Explorer is not needed to attend. Submit a ticket with service.cancer.gov to get this software installed on personal computer. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mb18bd3453faaa86c27d393a462ff76f9Meeting number:2309 498 3121 Join by video systemDial 23094983121@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2309 498 3121Host PIN: 2784 | 2024-09-11 11:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software,Proteomics,Statistics,Transcriptomics | Bioinformatics,Bioinformatics Software,Proteomics,Statistics,Transcriptomics | Online | Joe Wu (BTEP),Yana Stackpole (Qlucore) | BTEP | 0 | Finding Correlation between Gene and Protein Expression Data with Qlucore using Regression |
1568 |
DescriptionThis one-hour and thirty minute online training is part one of an introductory two-part series for those who want to learn about research data management and sharing, or for those who are interested in a refresher. The series provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. Read More This one-hour and thirty minute online training is part one of an introductory two-part series for those who want to learn about research data management and sharing, or for those who are interested in a refresher. The series provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of part one of this training series, attendees will be able to:
During Part 2, attendees will learn about sharing and archiving data. You must register separately for Part 2 of this training. This training is introductory, no prior knowledge required. DetailsOrganizerNIH LibraryWhenWed, Sep 11, 2024 - 12:00 pm - 1:30 pmWhereOnline |
This one-hour and thirty minute online training is part one of an introductory two-part series for those who want to learn about research data management and sharing, or for those who are interested in a refresher. The series provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of part one of this training series, attendees will be able to: Understand data management best practices Become familiar with data management tools Have a solid knowledge of the resources, enabling data sharing During Part 2, attendees will learn about sharing and archiving data. You must register separately for Part 2 of this training. This training is introductory, no prior knowledge required. | 2024-09-11 12:00:00 | Online | Any | Data Management and Sharing | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Data Management and Sharing: Part 1 | |
1569 |
DescriptionThis one-hour online training will cover a basic overview of the functionality of R programming language and RStudio. R is a programming language and open-source environment for statistical computing and graphics. By the end of this training, attendees will be able to:
This one-hour online training will cover a basic overview of the functionality of R programming language and RStudio. R is a programming language and open-source environment for statistical computing and graphics. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of R/RStudio to be successful in this training. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. DetailsOrganizerNIH LibraryWhenThu, Sep 12, 2024 - 11:00 am - 12:00 pmWhereOnline |
This one-hour online training will cover a basic overview of the functionality of R programming language and RStudio. R is a programming language and open-source environment for statistical computing and graphics. By the end of this training, attendees will be able to: Describe the purpose of R and RStudio Organize files and directories for a set of analyses as an R Project Define key terms as they relate to R: object, assign, comment, call, function, and arguments Find help and learning resources related to R and RStudio Attendees are not expected to have any prior knowledge of R/RStudio to be successful in this training. Students are encouraged to install R and RStudio before the class so that they can follow along with the instructor. | 2024-09-12 11:00:00 | Online | Any | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Introduction to R and RStudio | ||
1606 |
DescriptionDr. Nussinov will highlight some scientific questions bordering on physics and biology, where fundamental physics and chemistry can help biology. They span the behavior of a bird, protein activation, signaling in cancer, and neurodevelopmental disorders like autism. They are based on the premise that physico-chemical foundation underlies the mysteries of life, and powerful ideas can inspire experimental approaches to test them. Still, the complexity is immense. The questions are mostly – albeit not all – related ...Read More Dr. Nussinov will highlight some scientific questions bordering on physics and biology, where fundamental physics and chemistry can help biology. They span the behavior of a bird, protein activation, signaling in cancer, and neurodevelopmental disorders like autism. They are based on the premise that physico-chemical foundation underlies the mysteries of life, and powerful ideas can inspire experimental approaches to test them. Still, the complexity is immense. The questions are mostly – albeit not all – related to our work, and some involve simulations. DetailsOrganizerHPC BiowulfWhenThu, Sep 12, 2024 - 11:00 am - 12:00 pmWhereBuilding 40, Room 1201 / 1203 |
Dr. Nussinov will highlight some scientific questions bordering on physics and biology, where fundamental physics and chemistry can help biology. They span the behavior of a bird, protein activation, signaling in cancer, and neurodevelopmental disorders like autism. They are based on the premise that physico-chemical foundation underlies the mysteries of life, and powerful ideas can inspire experimental approaches to test them. Still, the complexity is immense. The questions are mostly – albeit not all – related to our work, and some involve simulations. | 2024-09-12 11:00:00 | Building 40, Room 1201 / 1203 | Any | Biowulf | In-Person | Ruth Nussinov (FNLCR) | HPC Biowulf | 0 | Biowulf 25th Anniversary Seminar Series: Science is about curiosity and asking significant questions | |
1570 |
DescriptionThis course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about ...Read More This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. DetailsOrganizerNIH LibraryWhenThu, Sep 12, 2024 - 12:00 pm - 1:15 pmWhereOnline |
This course provides detailed information on managing and sharing data from the first data planning stage, through the data life cycle, to data archiving, and finally to selecting an appropriate repository for data preservation. By the end of this course, participants will have an understanding of data management best practices, data management tools, and resources that enable data sharing. This is an introductory two-part course for those who want to learn about research data management and sharing, or for those who are interested in a refresher. During Part 2 of this training, participants will learn about sharing and archiving data. Audience: Researchers, fellows, post-docs, and trainees. You must register separately for Part 1 of this class. | 2024-09-12 12:00:00 | Online | Any | Data Management and Sharing | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Data Management and Sharing: Part 2 | |
1403 |
Distinguished Speakers Seminar SeriesDescriptionTelomere to telomere (T2T) genome assemblies represent a paradigm shift in comparative genomics, offering insights into chromosome structure, evolution, and function at the highest resolution. Dr. O'Neill's lab has made recent efforts employing long-read based genome assembly, coupled with epigenetic, functional and repeat analyses, which have afforded the opportunity to delineate key elements participant in centromere function and chromosome rearrangement. Using a comparative approach and long-read, gapless genome assemblies, their studies ...Read More Telomere to telomere (T2T) genome assemblies represent a paradigm shift in comparative genomics, offering insights into chromosome structure, evolution, and function at the highest resolution. Dr. O'Neill's lab has made recent efforts employing long-read based genome assembly, coupled with epigenetic, functional and repeat analyses, which have afforded the opportunity to delineate key elements participant in centromere function and chromosome rearrangement. Using a comparative approach and long-read, gapless genome assemblies, their studies provide insight into the diversity, distribution, and evolution of repetitive regions that shape chromosome structure and evolution in human and in species groups experiencing rapid karyotypic change. Meeting number: 2315 524 3558 Password: JEexR5Jq@63 Join by video system Dial 23155243558@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2315 524 3558RegisterOrganizerBTEPWhenThu, Sep 12, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Telomere to telomere (T2T) genome assemblies represent a paradigm shift in comparative genomics, offering insights into chromosome structure, evolution, and function at the highest resolution. Dr. O'Neill's lab has made recent efforts employing long-read based genome assembly, coupled with epigenetic, functional and repeat analyses, which have afforded the opportunity to delineate key elements participant in centromere function and chromosome rearrangement. Using a comparative approach and long-read, gapless genome assemblies, their studies provide insight into the diversity, distribution, and evolution of repetitive regions that shape chromosome structure and evolution in human and in species groups experiencing rapid karyotypic change. Meeting number: 2315 524 3558 Password: JEexR5Jq@63 Join by video system Dial 23155243558@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2315 524 3558 | 2024-09-12 13:00:00 | Online Webinar | Any | Cancer genomics,Repetive Elements | Online | Rachel O\'Neill Ph.D. (Univ. of Connecticut) | BTEP | 1 | Telomere-to-telomere (T2T) Genome Assemblies: Shining a Light on Repeat Biology and Chromosome Dynamics | |
1591 |
DescriptionReverse-phase protein arrays (RPPAs) represent a powerful functional proteomic approach to elucidate cancer-related molecular mechanisms and develop novel cancer therapies.
To facilitate community-based investigation of the large-scale protein expression data generated by this platform, we have developed a user-friendly, open-access bioinformatic resource, Read More Reverse-phase protein arrays (RPPAs) represent a powerful functional proteomic approach to elucidate cancer-related molecular mechanisms and develop novel cancer therapies.
To facilitate community-based investigation of the large-scale protein expression data generated by this platform, we have developed a user-friendly, open-access bioinformatic resource, The Cancer Proteome Atlas (TCPA), which contains several applications.
The first application focuses on RPPA data of patient tumors, which contains >8,000 samples of 32 cancer types from The Cancer Genome Atlas and other independent patient cohorts. The second focuses on the RPPA data of >1,500 cancer cell lines with publicly available, high-quality DNA, RNA and drug screening data. The third focuses on perturbed RPPA profiles of >14,000 samples given drug treatments.
To further address the informatic challenges of analyzing such diverse datasets, in addition to the GUI interfaces, we recently developed a chatbot, TPCAplus, through which users can analyze the RPPA data through human nature languages and obtain the results and related analytic reports without a learning curve.
Such a chatbot empowers a broad research community to explore high-quality RPPA datasets and generate testable hypotheses in an effective and intuitive manner, representing the direction of next-generation data analytics.
For questions, contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenFri, Sep 13, 2024 - 10:00 am - 11:00 amWhereOnline |
Reverse-phase protein arrays (RPPAs) represent a powerful functional proteomic approach to elucidate cancer-related molecular mechanisms and develop novel cancer therapies. To facilitate community-based investigation of the large-scale protein expression data generated by this platform, we have developed a user-friendly, open-access bioinformatic resource, The Cancer Proteome Atlas (TCPA), which contains several applications. The first application focuses on RPPA data of patient tumors, which contains >8,000 samples of 32 cancer types from The Cancer Genome Atlas and other independent patient cohorts. The second focuses on the RPPA data of >1,500 cancer cell lines with publicly available, high-quality DNA, RNA and drug screening data. The third focuses on perturbed RPPA profiles of >14,000 samples given drug treatments. To further address the informatic challenges of analyzing such diverse datasets, in addition to the GUI interfaces, we recently developed a chatbot, TPCAplus, through which users can analyze the RPPA data through human nature languages and obtain the results and related analytic reports without a learning curve. Such a chatbot empowers a broad research community to explore high-quality RPPA datasets and generate testable hypotheses in an effective and intuitive manner, representing the direction of next-generation data analytics. For questions, contact Daoud Meerzaman or Kayla Strauss. | 2024-09-13 10:00:00 | Online | Any | Proteomics | Online | Han Liang (MD Anderson Cancer Center) | CBIIT | 0 | ITCR Webinar: Introduction to the Cancer Proteome Atlas | |
1588 |
DescriptionThis course provides an introduction to data analysis using R, focusing on conducting various statistical tests and generating commonly used statistical regression models. Participants will learn how to perform hypothesis testing, calculate descriptive statistics, and conduct inferential statistics using R. The course covers topics such as t-tests, ANOVA, chi-square tests, and correlation analysis. Participants will also learn how to generate regression models, including linear regression, logistic regression, and multiple regression, to analyze ...Read More This course provides an introduction to data analysis using R, focusing on conducting various statistical tests and generating commonly used statistical regression models. Participants will learn how to perform hypothesis testing, calculate descriptive statistics, and conduct inferential statistics using R. The course covers topics such as t-tests, ANOVA, chi-square tests, and correlation analysis. Participants will also learn how to generate regression models, including linear regression, logistic regression, and multiple regression, to analyze relationships between variables. Additionally, the course emphasizes interpreting the output results using R functions. Participants will gain practical skills in understanding and communicating the findings from statistical analyses conducted in R. By the end of the course, participants will have a solid foundation in data analysis using R and be able to apply these skills to real-world datasets. DetailsOrganizerNIAIDWhenFri, Sep 13, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This course provides an introduction to data analysis using R, focusing on conducting various statistical tests and generating commonly used statistical regression models. Participants will learn how to perform hypothesis testing, calculate descriptive statistics, and conduct inferential statistics using R. The course covers topics such as t-tests, ANOVA, chi-square tests, and correlation analysis. Participants will also learn how to generate regression models, including linear regression, logistic regression, and multiple regression, to analyze relationships between variables. Additionally, the course emphasizes interpreting the output results using R functions. Participants will gain practical skills in understanding and communicating the findings from statistical analyses conducted in R. By the end of the course, participants will have a solid foundation in data analysis using R and be able to apply these skills to real-world datasets. | 2024-09-13 13:00:00 | Online | Any | Data analysis,R programming | Online | Mina Peyton (NIAID),Yuyan Yi (NIAID) | NIAID | 0 | Introduction to R: Part 3 – Data Analysis | |
1571 |
DescriptionThis 45-minute online training will provide an overview of NanCI by the National Cancer Institute (NCI), a new mobile application that uses machine learning algorithms to match users’ interests and provide a unique experience by recommending tailored content, such as people to connect with, events to attend, and ...Read More This 45-minute online training will provide an overview of NanCI by the National Cancer Institute (NCI), a new mobile application that uses machine learning algorithms to match users’ interests and provide a unique experience by recommending tailored content, such as people to connect with, events to attend, and interesting scientific papers. NanCI is a platform that leverages large language models (LLMs) to help scientists learn about areas of interest. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of the tool to be successful in this training. DetailsOrganizerNIH LibraryWhenMon, Sep 16, 2024 - 1:00 pm - 1:45 pmWhereOnline |
This 45-minute online training will provide an overview of NanCI by the National Cancer Institute (NCI), a new mobile application that uses machine learning algorithms to match users’ interests and provide a unique experience by recommending tailored content, such as people to connect with, events to attend, and interesting scientific papers. NanCI is a platform that leverages large language models (LLMs) to help scientists learn about areas of interest. By the end of this training, attendees will be able to: Identify how to access NanCI Describe the capabilities of NanCI Discuss the roadmap for future developments of NanCI Attendees are not expected to have any prior knowledge of the tool to be successful in this training. | 2024-09-16 13:00:00 | Online | Any | AI | Online | Oliver Bogler (NCI) | NIH Library | 0 | NanCI, Connecting Scientists: AI-Powered App from NCI | |
1592 |
DescriptionThis hour and half online training will explore the topics of perception and cognition, and how these apply to data visualization. This class will also teach you how to visualize your data using ggplot2. We will start by creating a simple scatterplot and use that to introduce aesthetic mappings and geometric objects, the fundamental building blocks of ggplot2. You must have taken Introduction to R and RStudio class to be successful in this class.Read More This hour and half online training will explore the topics of perception and cognition, and how these apply to data visualization. This class will also teach you how to visualize your data using ggplot2. We will start by creating a simple scatterplot and use that to introduce aesthetic mappings and geometric objects, the fundamental building blocks of ggplot2. You must have taken Introduction to R and RStudio class to be successful in this class.
DetailsOrganizerNIH LibraryWhenTue, Sep 17, 2024 - 10:00 am - 11:30 amWhereOnline |
This hour and half online training will explore the topics of perception and cognition, and how these apply to data visualization. This class will also teach you how to visualize your data using ggplot2. We will start by creating a simple scatterplot and use that to introduce aesthetic mappings and geometric objects, the fundamental building blocks of ggplot2. You must have taken Introduction to R and RStudio class to be successful in this class. By the end of this training, participants should be able to: • Describe how perception and cognition inform visualizations• Discuss the visual properties that “pop-out," and how these inform visualizations• Distinguish between aesthetic mappings and geometric objects, the fundamental building blocks of ggplot2• Create a simple scatterplot• Create a plot and save it in a high-resolution format Attendees are expected to have basic understanding of R and RStudio. In order to proceed, attendees should have done the following: 1. Installed R and RStudio 2. Taken Introduction to R and RStudio training. If not, here are some resources for getting started: • Introduction to R • Introduction to RStudio • Introduction to Scripts in RStudio | 2024-09-17 10:00:00 | Online | Any | Programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot | |
1572 |
DescriptionThis one hour and half hour online training will equip participants with essential knowledge and skills for effective interactions with Large Language Models (LLMs), such as ChatGPT. Explore the intricacies of prompt engineering and its pivotal role in optimizing the conversational capabilities of LLMs. Emphasizing best practices and practical applications, this training features live demonstrations and group discussion, and provides valuable skills for the effective use of LLMs. <...Read MoreThis one hour and half hour online training will equip participants with essential knowledge and skills for effective interactions with Large Language Models (LLMs), such as ChatGPT. Explore the intricacies of prompt engineering and its pivotal role in optimizing the conversational capabilities of LLMs. Emphasizing best practices and practical applications, this training features live demonstrations and group discussion, and provides valuable skills for the effective use of LLMs. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of ChatGPT to be successful in this training. DetailsOrganizerNIH LibraryWhenTue, Sep 17, 2024 - 12:30 pm - 2:00 pmWhereOnline |
This one hour and half hour online training will equip participants with essential knowledge and skills for effective interactions with Large Language Models (LLMs), such as ChatGPT. Explore the intricacies of prompt engineering and its pivotal role in optimizing the conversational capabilities of LLMs. Emphasizing best practices and practical applications, this training features live demonstrations and group discussion, and provides valuable skills for the effective use of LLMs. By the end of this training, attendees will be able to: Define LLMs, prompt patterns, and prompt engineering Identify potential uses and issues to consider when using LLMs in the biomedical research field Use a selection of prompt patterns to improve generated output from LLMs Identify resources for learning more about prompt engineering in LLMs Attendees are not expected to have any prior knowledge of ChatGPT to be successful in this training. | 2024-09-17 12:30:00 | Online | Any | AI | Online | Alicia Lillich (NIH Library),Joelle Mornini (NIH Library) | NIH Library | 0 | Best Practices and Patterns for Prompt Generation in ChatGPT | |
1608 |
DescriptionLearn how to use the FlowJo™ workspace, including how to load files, evaluate sample quality, draw gates, and generate tabular and graphical layouts.
Designed for those new to the software or need a refresher.
For questions, contact <...Read More Learn how to use the FlowJo™ workspace, including how to load files, evaluate sample quality, draw gates, and generate tabular and graphical layouts.
Designed for those new to the software or need a refresher.
For questions, contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenWed, Sep 18, 2024 - 10:00 am - 11:00 amWhereOnline |
Learn how to use the FlowJo™ workspace, including how to load files, evaluate sample quality, draw gates, and generate tabular and graphical layouts. Designed for those new to the software or need a refresher. For questions, contact Daoud Meerzaman or Kayla Strauss. | 2024-09-18 10:00:00 | Online | Any | Flow Cytometry | Online | Veronica Obregon-Perko (Informatics BD) | CBIIT | 0 | Introduction to FlowJo™ Software training | |
1573 |
DescriptionThis one-hour online training will cover several integration points between SAS and open-source tools to empower the developer and the organization to integrate the benefits of both SAS and open source. By the end of this training, attendees will be able to:
This one-hour online training will cover several integration points between SAS and open-source tools to empower the developer and the organization to integrate the benefits of both SAS and open source. By the end of this training, attendees will be able to:
Attendees are expected to be familiar with the basic functions of SAS to be successful in this training. Contact nihlibrary@nih.gov for information on how to access on-demand introductory SAS trainings. DetailsOrganizerNIH LibraryWhenWed, Sep 18, 2024 - 11:00 am - 12:00 pmWhereOnline |
This one-hour online training will cover several integration points between SAS and open-source tools to empower the developer and the organization to integrate the benefits of both SAS and open source. By the end of this training, attendees will be able to: Use the Base SAS Call System Routine and the Base SAS Java Object to call open-source tools from within SAS Describe client-side integration with R using SAS/IML Studio and server-side integration with SAS/IML Identify integration points that exist within SAS Model Manager and SAS Enterprise Miner Describe how Python users can call SAS from their Python sessions using SASPY Identify how SAS can incorporate Python functions in a SAS program Attendees are expected to be familiar with the basic functions of SAS to be successful in this training. Contact nihlibrary@nih.gov for information on how to access on-demand introductory SAS trainings. | 2024-09-18 11:00:00 | Online | Any | SAS | Online | SAS | NIH Library | 0 | Integration of SAS with Open-Source Tools | |
1605 |
DescriptionFrederick National Laboratory
Meeting ID: 225 592 603 654
Frederick National Laboratory
Meeting ID: 225 592 603 654
DetailsOrganizerFNL Science and Technology GroupWhenWed, Sep 18, 2024 - 11:00 am - 12:00 pmWhereOnline |
Frederick National LaboratoryScience and Technology Group: Work in Progress Seminar Series presents: “Modernization of Next Generation Sequencing Big Data Analysis Pipelines Leveraging NIH’s on-prem High Performance ComputingCluster … and Cloud.” Meeting ID: 225 592 603 654 Passcode: B7sey6 | 2024-09-18 11:00:00 | Online | Any | Big Data | Online | Vishal Koparde (OSTR / CCR) | FNL Science and Technology Group | 0 | Modernization of Next Generation Sequencing Big Data Analysis Pipelines Leveraging NIH’s on-prem High Performance Computing Cluster … and Cloud | |
1593 |
DescriptionThis one hour and half online training builds on the topics covered in the Data Visualization in ggplot training. It provides an overview of options for working with dates, times, and options for customizing a ggplot graph. You must have taken Data Visualization in R: ggplot training to be successful in this training. By the end of this training, attendees should be able to:
This one hour and half online training builds on the topics covered in the Data Visualization in ggplot training. It provides an overview of options for working with dates, times, and options for customizing a ggplot graph. You must have taken Data Visualization in R: ggplot training to be successful in this training. By the end of this training, attendees should be able to:
Attendees are expected to have a basic understanding of R and RStudio. In order to proceed, attendees should have the done following: DetailsOrganizerNIH LibraryWhenThu, Sep 19, 2024 - 10:00 am - 11:30 amWhereOnline |
This one hour and half online training builds on the topics covered in the Data Visualization in ggplot training. It provides an overview of options for working with dates, times, and options for customizing a ggplot graph. You must have taken Data Visualization in R: ggplot training to be successful in this training. By the end of this training, attendees should be able to: Describe options for time series data Create a line plot in ggplot Learn how to facet a plot Demonstrate options for customizing the title and axis Apply different ggplot themes Attendees are expected to have a basic understanding of R and RStudio. In order to proceed, attendees should have the done following: Installed R and RStudio Taken Introduction to R and RStudio training. If not, here are some resources for getting started: Introduction to R Introduction to RStudio Introduction to Scripts in RStudio | 2024-09-19 10:00:00 | Online | Any | Programming | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Visualization in ggplot: Customizations | |
1574 |
DescriptionThis hour and-half online training discusses how MATLAB enhances data analysis and visualization for technical professionals who typically use Excel. It highlights MATLAB's advantages, such as access to pre-built mathematical and analysis functions, powerful visualization tools, and the capability to automate analysis workflows, addressing the functional limitations often encountered with Excel. By the end of this training, attendees will be able to:
This hour and-half online training discusses how MATLAB enhances data analysis and visualization for technical professionals who typically use Excel. It highlights MATLAB's advantages, such as access to pre-built mathematical and analysis functions, powerful visualization tools, and the capability to automate analysis workflows, addressing the functional limitations often encountered with Excel. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of MATLAB and/or Excel. This training is an introductory level; no software installation required. DetailsOrganizerNIH LibraryWhenThu, Sep 19, 2024 - 12:00 pm - 1:30 pmWhereOnline |
This hour and-half online training discusses how MATLAB enhances data analysis and visualization for technical professionals who typically use Excel. It highlights MATLAB's advantages, such as access to pre-built mathematical and analysis functions, powerful visualization tools, and the capability to automate analysis workflows, addressing the functional limitations often encountered with Excel. By the end of this training, attendees will be able to: Learn the main steps required for performing data analysis with MATLAB, including data access and pre-processing, modeling, and deployment Gain an understanding of how to efficiently apply data analysis techniques using the MATLAB platform Share results with others buy automatically creating reports Attendees are not expected to have any prior knowledge of MATLAB and/or Excel. This training is an introductory level; no software installation required. | 2024-09-19 12:00:00 | Online | Any | Matlab | Online | Mathworks | NIH Library | 0 | MATLAB for Excel Users | |
1607 |
DescriptionQiagen Ingenuity Pathway Analysis (IPA) is a point-and-click software that enables scientists to discern how genomic, transcriptomic, proteomic, and metabolomic changes influence molecular biology pathways and networks. This software is available to NCI investigators, just submit a ticket with NCI computing help desk (https://service.cancer.gov/ncisp?cid=eb_govdel) to get it installed on personal computer. Those outside of NCI can inquire about using IPA through the NIH Library (https://www.nihlibrary....Read More Qiagen Ingenuity Pathway Analysis (IPA) is a point-and-click software that enables scientists to discern how genomic, transcriptomic, proteomic, and metabolomic changes influence molecular biology pathways and networks. This software is available to NCI investigators, just submit a ticket with NCI computing help desk (https://service.cancer.gov/ncisp?cid=eb_govdel) to get it installed on personal computer. Those outside of NCI can inquire about using IPA through the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/ingenuity-pathways-analysis-ipa). After this class, participants will be able to describe IPA, know the required data formats, become familiar with data upload to as well as conducting analysis using this software. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenThu, Sep 19, 2024 - 1:00 pm - 2:30 pmWhereOnline Webinar |
Qiagen Ingenuity Pathway Analysis (IPA) is a point-and-click software that enables scientists to discern how genomic, transcriptomic, proteomic, and metabolomic changes influence molecular biology pathways and networks. This software is available to NCI investigators, just submit a ticket with NCI computing help desk (https://service.cancer.gov/ncisp?cid=eb_govdel) to get it installed on personal computer. Those outside of NCI can inquire about using IPA through the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/ingenuity-pathways-analysis-ipa). After this class, participants will be able to describe IPA, know the required data formats, become familiar with data upload to as well as conducting analysis using this software.This class is a demo and not hands-on. Experience using or installation of IPA is not required to participate. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mbe8225ad268918bbe0b1088692c77ed3Meeting number:2307 822 5514Password:m6mXPchc$26 Join by video systemDial 23078225514@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2307 822 5514Host PIN: 2784 | 2024-09-19 13:00:00 | Online Webinar | Any | Bioinformatics,Bioinformatics Software,Pathway Analysis | Bioinformatics,Bioinformatics Software,Pathway Analysis | Online | Joe Wu (BTEP),Shawn Prince (Qiagen) | BTEP | 0 | Pathway Analysis using Qiagen IPA |
1589 |
DescriptionIn this course, participants will integrate the knowledge gained from previous sessions on data wrangling, data visualization, and data analysis to undertake a comprehensive demonstration project analyzing real-world data. Through a step-by-step walkthrough of an example data analysis project, participants will develop a thorough understanding of the entire process of real-world data analysis, including data wrangling, visualization, extracting insights, and interpreting results, to apply these skills in future projects. By the end of the ...Read More In this course, participants will integrate the knowledge gained from previous sessions on data wrangling, data visualization, and data analysis to undertake a comprehensive demonstration project analyzing real-world data. Through a step-by-step walkthrough of an example data analysis project, participants will develop a thorough understanding of the entire process of real-world data analysis, including data wrangling, visualization, extracting insights, and interpreting results, to apply these skills in future projects. By the end of the course, participants will have a good foundation in the essential steps of data analysis and be equipped to effectively analyze and interpret real-world data using R. DetailsOrganizerNIAIDWhenFri, Sep 20, 2024 - 1:00 pm - 2:00 pmWhereOnline |
In this course, participants will integrate the knowledge gained from previous sessions on data wrangling, data visualization, and data analysis to undertake a comprehensive demonstration project analyzing real-world data. Through a step-by-step walkthrough of an example data analysis project, participants will develop a thorough understanding of the entire process of real-world data analysis, including data wrangling, visualization, extracting insights, and interpreting results, to apply these skills in future projects. By the end of the course, participants will have a good foundation in the essential steps of data analysis and be equipped to effectively analyze and interpret real-world data using R. | 2024-09-20 13:00:00 | Online | Any | Data analysis,R programming | Online | Mina Peyton (NIAID),Yuyan Yi (NIAID) | NIAID | 0 | Introduction to R: Part 4 – Real-world Data Analysis Using R | |
1604 |
DescriptionCome to the Fair! In the morning session, several different groups will speak about their training and education programs. The afternoon session will be devoted to learning about research using AI across intramural NIH.
Come to the Fair! In the morning session, several different groups will speak about their training and education programs. The afternoon session will be devoted to learning about research using AI across intramural NIH.
No registration necessary. This is an in-person event only. A recording will be made available after the event in our Video Archive. DetailsOrganizerBTEPWhenMon, Sep 23, 2024 - 10:00 am - 3:00 pmWhereNIH Library Training Room Building 10 Clinical Center South Entrance |
Come to the Fair! In the morning session, several different groups will speak about their training and education programs. The afternoon session will be devoted to learning about research using AI across intramural NIH. Bioinformatics Resources at NIH, Amy Stonelake, PhD (NCI CCR BTEP)10:00 – 10:25 am Biowulf – An HPC Resource for the IRP, Wolfgang Resch, PhD (NIH HPC Biowulf)10:25 – 10:50 am Data and Bioinformatics Resources from the NIH Library, Doug Joubert (NIH Library)10:50 – 11:15 am Integrating NGS, AI, and Pathway Analysis: A New Era of Computational Biology, Daoud Meerzaman, PhD (NCI CBIIT)11:15 – 11:40 am The NIAID Biovisualization Lab: A Central Resource for Immersive Exploration of Data with Virtual Reality and Advanced Visualization Technologies, Meghan McCarthy, PhD (BioViz Lab, NIAID)11:40 am – 12:05 pm Single Cell and Spatial Genomics: An Overview of the Tools to Study Cellular Heterogeneity, Dynamics and Intracellular Signaling, Stefan Cordes, MD (Single Cell and Spatial Transcriptomics Users Group)12:05 – 12:30 pm Q & A Lunch: What Do You Want to Know About Bioinformatics or Data Science?12:30 – 1:00 pm Multimodal AI to Predict Chemotherapy Response of Ovarian Cancer, Daoud Meerzaman, PhD (CBIIT)1:00 – 1:30 pm Transforming Medicine with AI: from PubMed Search to TrialGPT, Zhiyong Lu, PhD FACMI FIAHSI (NLM)1:30 – 2:00 pm Translational AI Applications in Prostate Cancer, Baris Turkbey, MD FSAR (NCI CCR AIR)2:00 – 2:30 pm Exploring Large Language Models: Capabilities and Limitations in Biomedical Research, Maya Willey, Owen Bianchi (CARD, DataTecnica, LLC)2:30 – 3:00 pm No registration necessary. This is an in-person event only. A recording will be made available after the event in our Video Archive. | 2024-09-23 10:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Artificial Intelligence,Bioinformatics,Data Science,Single Cell,Spatial Transcriptomics,VR | In-Person | Amy Stonelake (BTEP),Daoud Meerzaman (CBIIT),Doug Joubert (NIH Library),Ismail Baris Turkbey M.D. (NCI CCR AIR),Maya Willey (CARD),Meghan McCarthy (NIAID),Owen Bianchi (CARD),Stefan Cordes (NHLBI),Wolfgang Resch (NIH/CIT),Zhiyong Lu (NCBI) | BTEP | 0 | NIH Research Festival - Bioinformatics Community Fair | |
1578 |
DescriptionThis class will introduce beginners or those looking for a refresher to Jupyter Lab, a platform used to organize code and analysis steps in one place. Jupyter Lab can be easily installed or run in a web browser, and supports several languages such as R and Python. It provides a way to keep track of all steps in an analysis and a place for collaboration. This class will not be hands-on and is a ...Read More This class will introduce beginners or those looking for a refresher to Jupyter Lab, a platform used to organize code and analysis steps in one place. Jupyter Lab can be easily installed or run in a web browser, and supports several languages such as R and Python. It provides a way to keep track of all steps in an analysis and a place for collaboration. This class will not be hands-on and is a demo only. Experience using or installation onto personal computer of Jupyter Lab is not needed to attend. Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenTue, Sep 24, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
This class will introduce beginners or those looking for a refresher to Jupyter Lab, a platform used to organize code and analysis steps in one place. Jupyter Lab can be easily installed or run in a web browser, and supports several languages such as R and Python. It provides a way to keep track of all steps in an analysis and a place for collaboration. This class will not be hands-on and is a demo only. Experience using or installation onto personal computer of Jupyter Lab is not needed to attend. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m50d3c03617e19b2bfb62186d42c43d18Meeting number:2312 914 2236Password:pGFKUWs?723 Join by video systemDial 23129142236@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2312 914 2236 | 2024-09-24 13:00:00 | Online Webinar | Beginner | Bioinformatics,Data Science,Jupyter Lab,Reproducible Analysis | Bioinformatics,Data Science,Jupyter Lab,Reproducible Analysis | Online | Joe Wu (BTEP) | BTEP | 0 | Document Analysis Steps with Jupyter Lab |
1603 |
DescriptionPlease join us on Wednesday, September 25, 2024, where Gina Kuffel, B.S., and Steph Singleton, M.S., will demo the newly launched Clinical and Translational Data Commons (CTDC). Please join us on Wednesday, September 25, 2024, where Gina Kuffel, B.S., and Steph Singleton, M.S., will demo the newly launched Clinical and Translational Data Commons (CTDC). DetailsOrganizerCBIITWhenWed, Sep 25, 2024 - 11:00 am - 12:00 pmWhereOnline |
Please join us on Wednesday, September 25, 2024, where Gina Kuffel, B.S., and Steph Singleton, M.S., will demo the newly launched Clinical and Translational Data Commons (CTDC). As the newest addition to NCI's Cancer Research Data Commons, the CTDC was developed to house a vast array of clinical and translational data from NCI-funded clinical trials, correlative studies, and interventional studies. The presenters will show you how to search, explore, and select data of interest through the CTDC’s interactive dashboard, which provides summaries of participant demographics, diagnoses, disease stages, targeted therapies, and more. For more information about the CTDC, read the short news piece or visit the CTDC portal. | 2024-09-25 11:00:00 | Online | Any | Data Science | Online | Gina Kuffel (CTDC),Steph Singleton (CTDC) | CBIIT | 0 | NCI’s Clinical and Translational Data Commons: Your Resource for Cancer Discovery | |
1617 |
DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder)
DetailsOrganizerNIH - HPCWhenWed, Sep 25, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) be prepared to wait your turn if staff are already helping other users | 2024-09-25 13:00:00 | Online | Any | Biowulf | Online | HPC Staff | NIH - HPC | 0 | Zoom-In Consult for Biowulf Users (Wed 25 Sep) | |
1488 |
AI in Biomedical Research @ NIH Seminar SeriesDescriptionDr. Turkbey will discuss radiology, pathology, and multimodal AI models his NCI lab has developed for prostate cancer diagnosis and prognosis prediction. Dr. Turkbey will discuss radiology, pathology, and multimodal AI models his NCI lab has developed for prostate cancer diagnosis and prognosis prediction. RegisterOrganizerBTEPWhenThu, Sep 26, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Dr. Turkbey will discuss radiology, pathology, and multimodal AI models his NCI lab has developed for prostate cancer diagnosis and prognosis prediction. | 2024-09-26 13:00:00 | Online Webinar | Any | AI,Image Analysis | Online | Ismail Baris Turkbey M.D. (NCI CCR AIR) | BTEP | 1 | Translational AI Applications in Prostate Cancer | |
1575 |
DescriptionThis session describes the application of the web-based interactive OmicCircos in R Shiny to construct circular plots with desired biological features. Example data from human and mouse genomes will be used to demonstrate over thirty plot functions along with the color selection, annotation, labeling, and zoom capabilities. User-guide, take-home video and sample plots from publications will be provided. No R Programming experience is required. By the end of this training, students will be ...Read More This session describes the application of the web-based interactive OmicCircos in R Shiny to construct circular plots with desired biological features. Example data from human and mouse genomes will be used to demonstrate over thirty plot functions along with the color selection, annotation, labeling, and zoom capabilities. User-guide, take-home video and sample plots from publications will be provided. No R Programming experience is required. By the end of this training, students will be able to format data for omicCircos in R Shiny, use the point-and-click interface to set the parameters and generate circular plots, and export the plot for presentation and publication. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is 3 hours and is a mix of lecture and demo. DetailsOrganizerNIH LibraryWhenFri, Sep 27, 2024 - 1:00 pm - 4:00 pmWhereOnline |
This session describes the application of the web-based interactive OmicCircos in R Shiny to construct circular plots with desired biological features. Example data from human and mouse genomes will be used to demonstrate over thirty plot functions along with the color selection, annotation, labeling, and zoom capabilities. User-guide, take-home video and sample plots from publications will be provided. No R Programming experience is required. By the end of this training, students will be able to format data for omicCircos in R Shiny, use the point-and-click interface to set the parameters and generate circular plots, and export the plot for presentation and publication. This workshop will be taught by NCI staff and is open to NIH and HHS staff. This class is 3 hours and is a mix of lecture and demo. | 2024-09-27 13:00:00 | Online | Any | Data Visualization | Online | Daoud Meerzaman (CBIIT) | NIH Library | 0 | NGS Visualization Tool | |
1610 |
DescriptionIn this webinar, you'll gain insights into the Electronic Medical Record Search Engine (EMERSE). EMERSE is a simple, powerful tool to help researchers like you identify key data within free text clinical notes from electronic health record systems.
Presenter: David Hanauer, MD, MS, FACMI, FAMIA ...Read More In this webinar, you'll gain insights into the Electronic Medical Record Search Engine (EMERSE). EMERSE is a simple, powerful tool to help researchers like you identify key data within free text clinical notes from electronic health record systems.
Presenter: David Hanauer, MD, MS, FACMI, FAMIA Director of MICHR Informatics Program Associate Professor of Learning Health Sciences Associate Professor of Informatics, U-M School of Information Clinical Associate Professor of Pediatrics
Non-technical research teams can use EMERSE to quickly find rare mentions of anything within the free text notes including diseases, gene names, drugs, side effects, and more.
With support from the NCI Informatics Technology for Cancer Research program, the EMERSE team recently launched a version with built-in natural language processing (NLP) capabilities, blending the power of NLP with the simplicity of search.
Currently, 18 research centers in the U.S. (and one in Europe) currently run or are implementing EMERSE. You can find information at https://project-emerse.org/.
For questions contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenMon, Sep 30, 2024 - 10:00 am - 11:00 amWhereOnline |
In this webinar, you'll gain insights into the Electronic Medical Record Search Engine (EMERSE). EMERSE is a simple, powerful tool to help researchers like you identify key data within free text clinical notes from electronic health record systems. Presenter: David Hanauer, MD, MS, FACMI, FAMIA Director of MICHR Informatics Program Associate Professor of Learning Health Sciences Associate Professor of Informatics, U-M School of Information Clinical Associate Professor of Pediatrics Non-technical research teams can use EMERSE to quickly find rare mentions of anything within the free text notes including diseases, gene names, drugs, side effects, and more. With support from the NCI Informatics Technology for Cancer Research program, the EMERSE team recently launched a version with built-in natural language processing (NLP) capabilities, blending the power of NLP with the simplicity of search. Currently, 18 research centers in the U.S. (and one in Europe) currently run or are implementing EMERSE. You can find information at https://project-emerse.org/. For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-09-30 10:00:00 | Online | Any | TEXT PROCESSING | Online | David Hanauer (MICHR Informatics Program) | CBIIT | 0 | Unlocking Insights from Clinical Notes with the EMERSE Text Processing Tool | |
1580 |
DescriptionDr. Nusrat Rabbee’s book, “Biomarker Analysis in Clinical Trials Using R” offers practical guidance to statisticians on how to incorporate biomarker data analysis in clinical trial studies. In it, she ...Read More Dr. Nusrat Rabbee’s book, “Biomarker Analysis in Clinical Trials Using R” offers practical guidance to statisticians on how to incorporate biomarker data analysis in clinical trial studies. In it, she discusses the appropriate statistical methods for evaluating pharmacodynamic, predictive and surrogate biomarkers for delivering increased value in the drug development process. In this webinar, she will be discussing “Statistical Analysis of Biomarker data in Clinical Trials” from her book. RegisterOrganizerBTEPWhenTue, Oct 01, 2024 - 1:00 pm - 2:00 pmWhereOnline |
Dr. Nusrat Rabbee’s book, “Biomarker Analysis in Clinical Trials Using R” offers practical guidance to statisticians on how to incorporate biomarker data analysis in clinical trial studies. In it, she discusses the appropriate statistical methods for evaluating pharmacodynamic, predictive and surrogate biomarkers for delivering increased value in the drug development process. In this webinar, she will be discussing “Statistical Analysis of Biomarker data in Clinical Trials” from her book. | 2024-10-01 13:00:00 | Online | Any | Clinical Trials,Statistics | Online | Nusrat Rabbee PhD (NIH CC) | BTEP | 0 | Statistical Analysis of Biomarker Data in Clinical Trials | |
1594 |
DescriptionThis one hour training, presented by speakers from NIH Cloud Lab, will provide an overview of the generative artificial intelligence (AI) services across three major cloud service providers (CSPs), including Amazon Web Services (AWS), Microsoft Azure, and Google Cloud, and the steps to follow for setting up AI chatbots in cloud environments. This training will also offer time for a question-and-answer session, where ...Read More This one hour training, presented by speakers from NIH Cloud Lab, will provide an overview of the generative artificial intelligence (AI) services across three major cloud service providers (CSPs), including Amazon Web Services (AWS), Microsoft Azure, and Google Cloud, and the steps to follow for setting up AI chatbots in cloud environments. This training will also offer time for a question-and-answer session, where participants can ask the speakers questions about development of AI chatbots using large language models (LLMs) in a cloud environment and use of NIH Cloud Lab. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of generative AI to be successful in this training. DetailsOrganizerNIH LibraryWhenMon, Oct 07, 2024 - 11:00 am - 12:00 pmWhereOnline |
This one hour training, presented by speakers from NIH Cloud Lab, will provide an overview of the generative artificial intelligence (AI) services across three major cloud service providers (CSPs), including Amazon Web Services (AWS), Microsoft Azure, and Google Cloud, and the steps to follow for setting up AI chatbots in cloud environments. This training will also offer time for a question-and-answer session, where participants can ask the speakers questions about development of AI chatbots using large language models (LLMs) in a cloud environment and use of NIH Cloud Lab. By the end of this training, attendees will be able to: Compare/contrast the capabilities of generative AI services across the three major cloud service providers (CSPs) Evaluate (informally) the experience in setting up chatbot functionality with the cloud environments Highlight relative strengths, weaknesses, and optimal use cases for each CSP’s generative AI offerings Attendees are not expected to have any prior knowledge of generative AI to be successful in this training. | 2024-10-07 11:00:00 | Online | Any | AI | Online | NIH Cloud Lab | NIH Library | 0 | AI Large Language Model Experts: Ask Me Anything Discussion | |
1618 |
DescriptionWe will cover recently developed statistical approaches to the classification of BRCA2 variants using the functional-assay data generated by our NCI collaborators (Dr. Sharan’s lab). Our main objective is to illustrate how statistical modeling and analysis can provide essential means to solve a biological problem. Knowledge of intermediate college-level statistics (including notions such as random variables, probability distributions, and logistic regression) is expected. This session will be recorded, and materials will be posted ...Read More We will cover recently developed statistical approaches to the classification of BRCA2 variants using the functional-assay data generated by our NCI collaborators (Dr. Sharan’s lab). Our main objective is to illustrate how statistical modeling and analysis can provide essential means to solve a biological problem. Knowledge of intermediate college-level statistics (including notions such as random variables, probability distributions, and logistic regression) is expected. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. DetailsOrganizerAdvanced Biomedical Computational Sciences (ABCS)WhenTue, Oct 08, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Executive Board Room NCI-Frederick Campus |
We will cover recently developed statistical approaches to the classification of BRCA2 variants using the functional-assay data generated by our NCI collaborators (Dr. Sharan’s lab). Our main objective is to illustrate how statistical modeling and analysis can provide essential means to solve a biological problem. Knowledge of intermediate college-level statistics (including notions such as random variables, probability distributions, and logistic regression) is expected. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. | 2024-10-08 12:00:00 | Building 549 Executive Board Room NCI-Frederick Campus | Any | Statistics | Hybrid | Alexander Y. Mitrophanov PhD (ABCS/FNLCR) | Advanced Biomedical Computational Sciences (ABCS) | 0 | Statistical approaches to detect pathogenic variants of the BRCA2 oncogene | |
1616 |
DescriptionMass spectrometry is a powerful tool for analyzing protein regulation and function. This workshop, divided into two parts, will explain the fundamentals of mass spectrometry experiments and how proteins are identified. We will further discuss how quantitation is performed in mass spectrometry-based experiments and provide examples of how quantitative mass spectrometry data can be mined to generate new hypotheses. Meet the Speakers: Ronald Holewinski, PhD is a proteomics ...Read More Mass spectrometry is a powerful tool for analyzing protein regulation and function. This workshop, divided into two parts, will explain the fundamentals of mass spectrometry experiments and how proteins are identified. We will further discuss how quantitation is performed in mass spectrometry-based experiments and provide examples of how quantitative mass spectrometry data can be mined to generate new hypotheses. Meet the Speakers: Ronald Holewinski, PhD is a proteomics expert with the CCR Protein Characterization Laboratory. Lisa Jenkins, PhD is a Senior Associate Scientist and Head of the CCR Mass Spectrometry Resource. Meeting Details: Meeting link: Meeting number: Meeting password: Join from a video or application Join by phone
RegisterOrganizerBTEPWhenTue, Oct 08, 2024 - 2:00 pm - 4:15 pmWhereOnline Webinar |
Mass spectrometry is a powerful tool for analyzing protein regulation and function. This workshop, divided into two parts, will explain the fundamentals of mass spectrometry experiments and how proteins are identified. We will further discuss how quantitation is performed in mass spectrometry-based experiments and provide examples of how quantitative mass spectrometry data can be mined to generate new hypotheses. Meet the Speakers: Ronald Holewinski, PhD is a proteomics expert with the CCR Protein Characterization Laboratory. Lisa Jenkins, PhD is a Senior Associate Scientist and Head of the CCR Mass Spectrometry Resource. Meeting Details: Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m70d39ed097f71403b8827deab5588270 Meeting number:2319 555 5567 Meeting password:ASy6va6i3n? Join from a video or applicationDial 23195555567@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 TollAccess code: 23195555567 | 2024-10-08 14:00:00 | Online Webinar | Any | Data analysis,Mass spectrometry,Proteomics | Proteomics | Online | Lisa Jenkins,Ronald Holewinski | BTEP | 0 | Fundamentals of Mass Spectrometry Based Proteomics and Applications for Quantitation |
1595 |
DescriptionThis 1.5 hour online workshop will focus on data wrangling using tidy data principles. Tidy data describes a standard way of storing data that facilitates analysis and visualization within the tidyverse ecosystem. There will be a discussion of what makes data "tidy," and methods for reshaping your data using Read More This 1.5 hour online workshop will focus on data wrangling using tidy data principles. Tidy data describes a standard way of storing data that facilitates analysis and visualization within the tidyverse ecosystem. There will be a discussion of what makes data "tidy," and methods for reshaping your data using dplyr and tidyr functions. By the end of this training, attendees will be able to demonstrate how to:
Prior to attending this training, you will need to have:
Registrants will receive an email with information and instructions to install and verify access to R and RStudio before the training. If you register the day before the training, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. DetailsOrganizerNIH LibraryWhenWed, Oct 09, 2024 - 10:00 am - 11:30 amWhereOnline |
This 1.5 hour online workshop will focus on data wrangling using tidy data principles. Tidy data describes a standard way of storing data that facilitates analysis and visualization within the tidyverse ecosystem. There will be a discussion of what makes data "tidy," and methods for reshaping your data using dplyr and tidyr functions. By the end of this training, attendees will be able to demonstrate how to: Describe the purpose of the dplyr and tidyr packages Select certain columns and rows in a data frame Add new columns to a data frame that are functions of existing columns Use the split-apply-combine concept for data analysis Requirements Prior to attending this training, you will need to have: Installed R and RStudio Taken the Introduction to R and RStudio training. If not, here are some resources for getting started: Introduction to R Introduction to RStudio Introduction to Scripts in RStudio Note on Technology Registrants will receive an email with information and instructions to install and verify access to R and RStudio before the training. If you register the day before the training, you may not have time to download and properly install the necessary software. If you do not have the software installed, this training will be demo only. | 2024-10-09 10:00:00 | Online | Any | Data analysis | Online | Doug Joubert (NIH Library) | NIH Library | 0 | Data Wrangling Workshop | |
1609 |
DescriptionThis session will give an overview of the NCI Cancer Research Data Commons and the variety of available cancer data such as RNA expression and protein abundance. These data are hosted in openly accessible Google BigQuery tables by ISB-CGC. We will provide a hands-on tutorial showing how to browse and perform pan-TCGA analyses in minutes with SQL and how to ...Read More This session will give an overview of the NCI Cancer Research Data Commons and the variety of available cancer data such as RNA expression and protein abundance. These data are hosted in openly accessible Google BigQuery tables by ISB-CGC. We will provide a hands-on tutorial showing how to browse and perform pan-TCGA analyses in minutes with SQL and how to feed these data into R to perform differential expression using cloud resources. This class is recommended for advanced users with R, Python, or SQL experience. Meeting number: 2306 107 3626 Password: QZtfwxA@294 Join by video system Dial 23061073626@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2306 107 3626 RegisterOrganizerBTEPWhenWed, Oct 09, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
This session will give an overview of the NCI Cancer Research Data Commons and the variety of available cancer data such as RNA expression and protein abundance. These data are hosted in openly accessible Google BigQuery tables by ISB-CGC. We will provide a hands-on tutorial showing how to browse and perform pan-TCGA analyses in minutes with SQL and how to feed these data into R to perform differential expression using cloud resources. This class is recommended for advanced users with R, Python, or SQL experience. Meeting number: 2306 107 3626 Password: QZtfwxA@294 Join by video system Dial 23061073626@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2306 107 3626 | 2024-10-09 11:00:00 | Online Webinar | Advanced | Cancer Research Data Commons (CRDC) | Online | David Pot Ph.D. (ISB-CGC),Fabian Seidl Ph.D. (ISB-CGC) | BTEP | 0 | Using Google BigQuery and R to Analyze TCGA data from the NCI Genomic and Proteomic Data Commons | |
1596 |
DescriptionThis one-hour online training will provide detailed information and demonstrations on how to manage data in Excel. By the end of this training, attendees will be able to:
This one-hour online training will provide detailed information and demonstrations on how to manage data in Excel. By the end of this training, attendees will be able to:
This is an introductory training for those who need to quickly learn basic Excel data management features and for those who are interested in a refresher. Basic knowledge of Excel is required. DetailsOrganizerNIH LibraryWhenWed, Oct 09, 2024 - 12:00 pm - 1:00 pmWhereOnline |
This one-hour online training will provide detailed information and demonstrations on how to manage data in Excel. By the end of this training, attendees will be able to: Filter data by text, numbers, and date Sort data alphabetically and by color Remove duplicates Split and combine columns Create customs lists This is an introductory training for those who need to quickly learn basic Excel data management features and for those who are interested in a refresher. Basic knowledge of Excel is required. | 2024-10-09 12:00:00 | Online | Any | Data Management | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | Managing Data in Excel | |
1622 |
DescriptionThis introductory lecture will provide an overview of bulk RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data. The talk is aimed at those with little or no experience with RNASEQ, and will cover the experimental design, quality control, sequencing platforms, analysis workflow, and software tools. This introductory lecture will provide an overview of bulk RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data. The talk is aimed at those with little or no experience with RNASEQ, and will cover the experimental design, quality control, sequencing platforms, analysis workflow, and software tools. RegisterOrganizerBTEPWhenThu, Oct 10, 2024 - 10:00 am - 11:00 amWhereOnline Webinar |
This introductory lecture will provide an overview of bulk RNA-Seq technology, its various application and shortcomings, as well as detailing the steps involved in analyzing the resulting data. The talk is aimed at those with little or no experience with RNASEQ, and will cover the experimental design, quality control, sequencing platforms, analysis workflow, and software tools. | 2024-10-10 10:00:00 | Online Webinar | Beginner | Bulk RNA-Seq,Data analysis | Online | Peter FitzGerald (GAU) | BTEP | 0 | An Introduction to RNASEQ - Overview of Expression Data Analysis | |
1490 |
AI in Biomedical Research @ NIH Seminar SeriesDescriptionDigital Pathology has advanced significantly in the past decade, evolving beyond assisting pathologists to now informing molecular and genetic properties of tumors. Recent breakthroughs in machine learning and AI, particularly in big data and image analysis, have ushered in a new era of capabilities. This talk will present these advancements and demonstrate how our lab is developing tools to apply them, focusing on improving precision diagnostics and treatment of pediatric tumors. We'll conclude by ...Read More Digital Pathology has advanced significantly in the past decade, evolving beyond assisting pathologists to now informing molecular and genetic properties of tumors. Recent breakthroughs in machine learning and AI, particularly in big data and image analysis, have ushered in a new era of capabilities. This talk will present these advancements and demonstrate how our lab is developing tools to apply them, focusing on improving precision diagnostics and treatment of pediatric tumors. We'll conclude by exploring applications of these techniques to analyze and understand reproductive aging, showcasing the broad potential of next-generation digital pathology in medical research. RegisterOrganizerBTEPWhenThu, Oct 10, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Digital Pathology has advanced significantly in the past decade, evolving beyond assisting pathologists to now informing molecular and genetic properties of tumors. Recent breakthroughs in machine learning and AI, particularly in big data and image analysis, have ushered in a new era of capabilities. This talk will present these advancements and demonstrate how our lab is developing tools to apply them, focusing on improving precision diagnostics and treatment of pediatric tumors. We'll conclude by exploring applications of these techniques to analyze and understand reproductive aging, showcasing the broad potential of next-generation digital pathology in medical research. | 2024-10-10 13:00:00 | Online Webinar | Any | AI,Cancer,Digital Pathology | Online | Sanju Sinha Ph.D. (Sanford Burnham Prebys) | BTEP | 1 | Pixels to Prognosis: Next-Gen Digital Pathology for Cancer and Reproductive Aging Research | |
1621 |
DescriptionThis one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. ...Read More This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to:
Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. DetailsOrganizerNIH LibraryWhenFri, Oct 11, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to: Recognize four freely available IDEs for python coding Identify fundamental components of python code Understand how and why notebooks support rigor and transparency in analysis Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. | 2024-10-11 13:00:00 | Online | Any | Data Science,Python | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
1585 |
DescriptionRegister for the symposium and pass along to your network! <...Read MoreRegister for the symposium and pass along to your network! A foundational shift to a culture of broad data sharing and collaborative science holds immense promise for more rapid advances in cancer research. NCI’s Office of Data Sharing will bring together experts and stakeholders including scientists, clinicians, policymakers, patients, advocates and trainees across government, academia and industry to learn from one another and explore ways to maximize the benefits of these efforts. Please join us for engaging discussions on advancing cancer research through data sharing and reuse. The Symposium will include sessions on key topics of interest:
This two-day event will include learning sessions, panel discussion and thinktank opportunities to address meaningful data sharing and data use and will be followed immediately by the NCI Cancer Research Data Commons (CRDC) Symposium which will focus on how this data science infrastructure fits in the data sharing lifecycle to support cancer research. The ultimate goals of improved data sharing are to enhance the abilities of the cancer research and care community to learn from every patient to achieve better prevention, treatment, and outcomes for all who are affected by cancer. Email the Office of Data Sharing if you would like more information or have general questions.
DetailsOrganizerNCI Office of Data SharingWhenTue, Oct 15 - Wed, Oct 16, 2024 -9:00 am - 5:00 pmWhereBuilding 10, Masur Auditorium (Bethesda) |
On October 15th-16th, 2024, the NCI Office of Data Sharing (ODS) is hosting the Annual Data Sharing Symposium titled Driving Cancer Advances through Impactful Research inside the Clinical Center at the National Institutes of Health in Bethesda, MD. Register for the symposium and pass along to your network! A foundational shift to a culture of broad data sharing and collaborative science holds immense promise for more rapid advances in cancer research. NCI’s Office of Data Sharing will bring together experts and stakeholders including scientists, clinicians, policymakers, patients, advocates and trainees across government, academia and industry to learn from one another and explore ways to maximize the benefits of these efforts. Please join us for engaging discussions on advancing cancer research through data sharing and reuse. The Symposium will include sessions on key topics of interest: Honoring the Contributions of Research Participants Highlighting the Broad Impact of Data Sharing and Reuse Exploring a Learning Health System for Cancer Review and Look Ahead to the impact of AI on Data Sharing Improving Data Access and Utility This two-day event will include learning sessions, panel discussion and thinktank opportunities to address meaningful data sharing and data use and will be followed immediately by the NCI Cancer Research Data Commons (CRDC) Symposium which will focus on how this data science infrastructure fits in the data sharing lifecycle to support cancer research. The ultimate goals of improved data sharing are to enhance the abilities of the cancer research and care community to learn from every patient to achieve better prevention, treatment, and outcomes for all who are affected by cancer. Email the Office of Data Sharing if you would like more information or have general questions. | 2024-10-15 09:00:00 | Building 10, Masur Auditorium (Bethesda) | Any | Data Sharing | In-Person | NCI Office of Data Sharing | 0 | Second Annual Data Sharing Symposium: Driving Cancer Advances through Impactful Research | ||
1597 |
DescriptionThis one-hour online training will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. This training will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy. By the end of this training, ...Read More This one-hour online training will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. This training will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of these resources to be successful in this training. DetailsOrganizerNIH LibraryWhenTue, Oct 15, 2024 - 11:00 am - 12:00 pmWhereOnline |
This one-hour online training will cover techniques on locating biomedical research articles, patents, NIH-funded research projects, genetic information, and print and electronic books related to animal models and model organisms. This training will also discuss the differences between animal models, research organisms, and model organisms, and will review requirements and resources for the NIH Model Organism Sharing Policy. By the end of this training, attendees will be able to: Describe the difference between animal models, research organisms, and model organisms Identify requirements for the NIH Model Organism Sharing Policy Locate biomedical articles and patents related to animal models Discover NIH-funded research projects, genetic information, and biomedical literature related to specific research organisms Explore books on animal models and model organisms Attendees are not expected to have any prior knowledge of these resources to be successful in this training. | 2024-10-15 11:00:00 | Online | Any | Excel | Online | Joelle Mornini (NIH Library) | NIH Library | 0 | Animal Model and Model Organism Information Resources | |
1611 |
DescriptionJoin Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your ...Read More Join Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your analysis workflow following cell segmentation of your tissue. What You’ll Learn:
Why Attend?
Don’t miss this opportunity to enhance your data analysis skills with MAWA! Planned schedule: Tue 10/15, 1-2 PM Topic: Introduction to NIDAP, MAWA Basics, and Supervised Phenotyping Speaker: Andrew Weisman, Ph.D.
Tue 10/22, 1-2 PM Topic: Unsupervised phenotyping. Speaker: Andrei Bombin, Ph.D.
Tue 10/29, 1-2 PM Topic: Pairwise spatial analysis using hypothesis testing. Speaker: Andrew Weisman, Ph.D.
Wed 11/6, 11-12 PM Topic: Neighborhood analysis using spatial UMAP. Speaker: Dante Smith, Ph.D.
RegisterOrganizerBTEPWhenTue, Oct 15, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Join Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your analysis workflow following cell segmentation of your tissue. What You’ll Learn: File Handling: Efficiently manage your datasets. Phenotyping: Identify and categorize cell types. Spatial Analysis: Analyze spatial relationships within your data. Why Attend? Easy-To-Use Platform: MAWA offers an intuitive interface suitable for both novices and experts. High Performance: Efficiently handles large datasets with millions of cells or objects. Free Access: MAWA is available for free use. Don’t miss this opportunity to enhance your data analysis skills with MAWA! Planned schedule: Tue 10/15, 1-2 PM Topic: Introduction to NIDAP, MAWA Basics, and Supervised Phenotyping Speaker: Andrew Weisman, Ph.D. Tue 10/22, 1-2 PM Topic: Unsupervised phenotyping. Speaker: Andrei Bombin, Ph.D. Tue 10/29, 1-2 PM Topic: Pairwise spatial analysis using hypothesis testing. Speaker: Andrew Weisman, Ph.D. Wed 11/6, 11-12 PM Topic: Neighborhood analysis using spatial UMAP. Speaker: Dante Smith, Ph.D. | 2024-10-15 13:00:00 | Online Webinar | Any | Data analysis,Spatial Transcriptomics | Online | Andrew Weisman Ph.D. (NCI) | BTEP | 0 | Spatial Omics Data Analysis with MAWA 1: Introduction to NIDAP, MAWA Basics, and Phenotyping | |
1545 |
DescriptionThe CRDC will celebrate its 10th anniversary with this one-and-a-half-day event highlighting its accomplishments and looking ahead to exciting initiatives. We are planning many informative sessions and report-outs on new work, including our AI Readiness Initiative and the CRDC’s collaboration with the Advanced Research Projects Agency for Health (ARPA-H) to develop a Biomedical Data Fabric (BDF) Toolbox. The CRDC will celebrate its 10th anniversary with this one-and-a-half-day event highlighting its accomplishments and looking ahead to exciting initiatives. We are planning many informative sessions and report-outs on new work, including our AI Readiness Initiative and the CRDC’s collaboration with the Advanced Research Projects Agency for Health (ARPA-H) to develop a Biomedical Data Fabric (BDF) Toolbox. An event registration page and preliminary agenda are available here: https://events.cancer.gov/crdc/events DetailsOrganizerNCI Cancer Research Data CommonsWhenWed, Oct 16 - Thu, Oct 17, 2024 -9:00 am - 5:00 pmWhereBldg 10, Center Drive, Bethesda., NCI Shady Grove at 9609 Medical Center Drive Rockville |
The CRDC will celebrate its 10th anniversary with this one-and-a-half-day event highlighting its accomplishments and looking ahead to exciting initiatives. We are planning many informative sessions and report-outs on new work, including our AI Readiness Initiative and the CRDC’s collaboration with the Advanced Research Projects Agency for Health (ARPA-H) to develop a Biomedical Data Fabric (BDF) Toolbox. Our Fall Symposium shares a half-day joint session, focused on data sharing, with CBIIT’s Office of Data Sharing (ODS) Annual Meeting. The joint session, on the afternoon of October 16th, will be the final session of the ODS Meeting, and the first session of the CRDC Symposium. If you can make it to all three days, so much the better! The ODS Annual Meeting runs October 15-16. The registration page is here: https://events.cancer.gov/ods/annualdatasharingsymposium An event registration page and preliminary agenda are available here: https://events.cancer.gov/crdc/events The CRDC has come a long way in the last 10 years as we have empowered the cancer research community with access to NCI-funded research data, secure cloud-based workspaces, analytical tools, and an evolving infrastructure to address the rapidly changing research landscape. We hope that you will engage with us – in person or virtually – as we all look ahead to the next 10 years. | 2024-10-16 09:00:00 | Bldg 10, Center Drive, Bethesda.,NCI Shady Grove at 9609 Medical Center Drive Rockville | Any | Cancer Cloud | In-Person | NCI Cancer Research Data Commons | 0 | NCI Cancer Research Data Commons (CRDC) Symposium | ||
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DescriptionDear Colleagues, Dear Colleagues, Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Laurie Morrissey (240-276-5154, laurie.morrissey@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339). Requests should be made at least five days in advance of the event.
DetailsOrganizerCBIITWhenWed, Oct 16, 2024 - 11:00 am - 12:00 pmWhereOnline |
Dear Colleagues, Thanks to advances in single-cell genomics, researchers can construct large-scale organ atlases, giving you more accurate ways to study genetic mutations and alterations related to drug responses and disease. These models also create a unique opportunity to use artificial intelligence (AI) to better understand cellular responses, using both multiomic and spatial data. In this upcoming webinar, hear Dr. Fabian Theis discuss how AI is enabling researchers to model single-cell variation, potentially creating a single-cell foundation model. Dr. Theis will:• review deep learning approaches for identifying gene expression,• outline applications for cell atlas building,• address concerns (such as variations in drug responses and multiscale readouts),• explain organism-wide cell type predictors, and• review the future of foundation models and their potential impact on spatial omics for modeling the cellular niche. Individuals with disabilities who need sign language interpreters and/or reasonable accommodation to participate in this event should contact Laurie Morrissey (240-276-5154, laurie.morrissey@nih.gov), and/or the Federal TTY Relay number (1-800-877-8339). Requests should be made at least five days in advance of the event. | 2024-10-16 11:00:00 | Online | Any | AI,Single Cell | Online | Dr. Fabian Theis | CBIIT | 0 | Generative AI for Modeling Single-Cell State and Response | |
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DescriptionIn this webinar, attendees will learn to call MATLAB from Python and to call Python libraries from MATLAB. In addition, they will learn how to use MATLAB’s Python integration to improve the compatibility and usability of the code. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. In this webinar, attendees will learn to call MATLAB from Python and to call Python libraries from MATLAB. In addition, they will learn how to use MATLAB’s Python integration to improve the compatibility and usability of the code. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. DetailsOrganizerNIH LibraryWhenWed, Oct 16, 2024 - 1:00 pm - 2:30 pmWhereOnline |
In this webinar, attendees will learn to call MATLAB from Python and to call Python libraries from MATLAB. In addition, they will learn how to use MATLAB’s Python integration to improve the compatibility and usability of the code. This is an introductory-level class taught by MathWorks. No installation of MATLAB is necessary. | 2024-10-16 13:00:00 | Online | Any | Matlab,Python | Online | Mathworks | NIH Library | 0 | Using MATLAB and Python Together | |
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DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users DetailsOrganizerHPC StaffWhenWed, Oct 16, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2024-10-16 13:00:00 | Online | Any | HPC Systems | Online | Biowulf Staff members | HPC Staff | 0 | Zoom-In Consult for Biowulf Users (Wed 16 Oct) | |
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DescriptionPlease join us on Thursday for our third talk in the Biowulf 25th Anniversary Seminar Series: Explorations in use of Synthetic Images for Biomedical ML/AI Research This talk will be videocast at: https://videocast.nih.gov/watch=54838 Abstract: Please join us on Thursday for our third talk in the Biowulf 25th Anniversary Seminar Series: Explorations in use of Synthetic Images for Biomedical ML/AI Research This talk will be videocast at: https://videocast.nih.gov/watch=54838 Abstract: DetailsOrganizerNational Library of MedicineWhenThu, Oct 17, 2024 - 11:00 am - 12:00 pmWhereBuilding 31 / 6C Room D & E (Bethesda) |
Please join us on Thursday for our third talk in the Biowulf 25th Anniversary Seminar Series: Explorations in use of Synthetic Images for Biomedical ML/AI Research This talk will be videocast at: https://videocast.nih.gov/watch=54838 Abstract:The integration of synthetic images in biomedical machine learning (ML) and artificial intelligence (AI) research is revolutionizing the field by addressing critical challenges such as data scarcity, privacy concerns, and bias. This talk highlights our many research explorations into the development, use, and outcomes with synthetic data in ML/AI for biomedical research and applications. It will cover several of the latest advancements and applications of synthetic image generation techniques, including Generative Adversarial Networks (GANs) and Diffusion Models (DMs). It will address methodologies and challenges for creating high-fidelity synthetic medical images across various modalities, such as optical images, CTs and X-rays. The discussion will highlight how these synthetic images are utilized for data augmentation, model training, and validation, toward enhancing the robustness and generalizability of ML models – and resulting findings and open questions. Results from past and ongoing research will be discussed to provide the audience with a better understanding of the opportunities and pitfalls in this space. | 2024-10-17 11:00:00 | Building 31 / 6C Room D & E (Bethesda) | Any | Biowulf | Hybrid | Sameer Antani Ph.D. Computational Health Research Branch National Library of Medicine | National Library of Medicine | 0 | Biowulf 25th Anniversary Seminar Series: Dr. Sameer Antani (NLM) | |
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DescriptionPopular structure prediction program AlphaFold3 and its competitor Chai-1 recently added capabilities to predict 3D RNA structures straight from sequence input. In this talk, we will discuss some test cases for these programs and review useful legacy tools that split the RNA structure prediction problem into 2D and 3D steps. Select FRCE web servers and other software encapsulated in virtual machines available for download from FRCE will be presented. No prior knowledge of RNA ...Read More Popular structure prediction program AlphaFold3 and its competitor Chai-1 recently added capabilities to predict 3D RNA structures straight from sequence input. In this talk, we will discuss some test cases for these programs and review useful legacy tools that split the RNA structure prediction problem into 2D and 3D steps. Select FRCE web servers and other software encapsulated in virtual machines available for download from FRCE will be presented. No prior knowledge of RNA prediction programs or servers is assumed. A familiarity with Unix shell interface is helpful. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. DetailsOrganizerABCS groupWhenTue, Oct 22, 2024 - 12:00 pm - 1:00 pmWhereAuditorium Building 549 NCI at Frederick |
Popular structure prediction program AlphaFold3 and its competitor Chai-1 recently added capabilities to predict 3D RNA structures straight from sequence input. In this talk, we will discuss some test cases for these programs and review useful legacy tools that split the RNA structure prediction problem into 2D and 3D steps. Select FRCE web servers and other software encapsulated in virtual machines available for download from FRCE will be presented. No prior knowledge of RNA prediction programs or servers is assumed. A familiarity with Unix shell interface is helpful. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. | 2024-10-22 12:00:00 | Auditorium Building 549 NCI at Frederick | Any | RNA-Seq | Hybrid | Wojciech (Voytek) Kasprzak (Advanced Biomedical Computational Science) | ABCS group | 0 | Notable RNA Structure Prediction Tools on FRCE and Beyond | |
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DescriptionGeneralist repositories offer NIH researchers a flexible, trusted resource to share data for which there is no appropriate discipline specific repository as well as to share many other research outputs valuable for reproducibility and open science. This webinar, presented by participants of the NIH Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo) will share generalist repository use cases and best practices for sharing and finding data ...Read More Generalist repositories offer NIH researchers a flexible, trusted resource to share data for which there is no appropriate discipline specific repository as well as to share many other research outputs valuable for reproducibility and open science. This webinar, presented by participants of the NIH Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo) will share generalist repository use cases and best practices for sharing and finding data in generalist repositories. It will describe how generalist repositories fit into the NIH data repository landscape for intramural researchers and can be part of meeting the new NIH Data Management and Sharing Policy requirements. It will present both the key common features of generalist repositories that meet the NIH desirable repository characteristics as well as the unique features of these repositories that make them suited to specific types of data. DetailsOrganizerNIH LibraryWhenTue, Oct 22, 2024 - 1:00 pm - 2:00 pmWhereOnline |
Generalist repositories offer NIH researchers a flexible, trusted resource to share data for which there is no appropriate discipline specific repository as well as to share many other research outputs valuable for reproducibility and open science. This webinar, presented by participants of the NIH Generalist Repository Ecosystem Initiative (GREI) (Dataverse, Dryad, Figshare, Mendeley Data, Open Science Framework, Vivli, and Zenodo) will share generalist repository use cases and best practices for sharing and finding data in generalist repositories. It will describe how generalist repositories fit into the NIH data repository landscape for intramural researchers and can be part of meeting the new NIH Data Management and Sharing Policy requirements. It will present both the key common features of generalist repositories that meet the NIH desirable repository characteristics as well as the unique features of these repositories that make them suited to specific types of data. | 2024-10-22 13:00:00 | Online | Any | Data Sharing | Online | Ana Van Gulick (FigShare) | NIH Library | 0 | Data Sharing: Generalist Repositories Ecosystem Initiative | |
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DescriptionJoin Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your ...Read More Join Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your analysis workflow following cell segmentation of your tissue. What You’ll Learn:
Why Attend?
Don’t miss this opportunity to enhance your data analysis skills with MAWA! Planned schedule: Tue 10/15, 1-2 PM Topic: Introduction to NIDAP. MAWA Basics, and Supervised Phenotyping. Speaker: Andrew Weisman, Ph.D.
Tue 10/22, 1-2 PM Topic: Unsupervised phenotyping. Speaker: Andrei Bombin, Ph.D.
Tue 10/29, 1-2 PM Topic: Pairwise spatial analysis using hypothesis testing. Speaker: Andrew Weisman, Ph.D.
Wed 11/6, 11-12 PM Topic: Neighborhood analysis using spatial UMAP. Speaker: Dante Smith, Ph.D.
RegisterOrganizerBTEPWhenTue, Oct 22, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Join Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your analysis workflow following cell segmentation of your tissue. What You’ll Learn: File Handling: Efficiently manage your datasets. Phenotyping: Identify and categorize cell types. Spatial Analysis: Analyze spatial relationships within your data. Why Attend? Easy-To-Use Platform: MAWA offers an intuitive interface suitable for both novices and experts. High Performance: Efficiently handles large datasets with millions of cells or objects. Free Access: MAWA is available for free use. Don’t miss this opportunity to enhance your data analysis skills with MAWA! Planned schedule: Tue 10/15, 1-2 PM Topic: Introduction to NIDAP. MAWA Basics, and Supervised Phenotyping. Speaker: Andrew Weisman, Ph.D. Tue 10/22, 1-2 PM Topic: Unsupervised phenotyping. Speaker: Andrei Bombin, Ph.D. Tue 10/29, 1-2 PM Topic: Pairwise spatial analysis using hypothesis testing. Speaker: Andrew Weisman, Ph.D. Wed 11/6, 11-12 PM Topic: Neighborhood analysis using spatial UMAP. Speaker: Dante Smith, Ph.D. | 2024-10-22 13:00:00 | Online Webinar | Any | Data analysis,Spatial Transcriptomics | Online | Andrei Bombin Ph.D. (NCI) | BTEP | 0 | Spatial Omics Data Analysis with MAWA 2: Unsupervised Phenotyping | |
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DescriptionPlease send any questions and/or specific topic areas that you’re interested in hearing about for this presentation by Friday, 10/18 to Kayla Strauss. QIAGEN Ingenuity Pathway Analysis (IPA) is the leading pathway analysis application among the life science research community and is cited in tens of thousands of articles for the analysis, integration and interpretation of data derived from ‘...Read More Please send any questions and/or specific topic areas that you’re interested in hearing about for this presentation by Friday, 10/18 to Kayla Strauss. QIAGEN Ingenuity Pathway Analysis (IPA) is the leading pathway analysis application among the life science research community and is cited in tens of thousands of articles for the analysis, integration and interpretation of data derived from ‘omics experiments. Such experiments include RNA-seq, small RNA-seq, metabolomics, proteomics, microarrays including miRNA and SNP, and small-scale experiments.
DetailsOrganizerCBIITWhenWed, Oct 23, 2024 - 10:00 am - 11:00 amWhereOnline |
Please send any questions and/or specific topic areas that you’re interested in hearing about for this presentation by Friday, 10/18 to Kayla Strauss. QIAGEN Ingenuity Pathway Analysis (IPA) is the leading pathway analysis application among the life science research community and is cited in tens of thousands of articles for the analysis, integration and interpretation of data derived from ‘omics experiments. Such experiments include RNA-seq, small RNA-seq, metabolomics, proteomics, microarrays including miRNA and SNP, and small-scale experiments. With QIAGEN IPA you can predict downstream effects and identify new targets or candidate biomarkers. QIAGEN Ingenuity Pathway Analysis helps you perform insightful data analysis and interpretation to understand your experimental results within the context of various biological systems. It includes the most extensive molecular pathway and relationship database backed by scientific literature, along with a leading analysis engine, which will provide you with confidence in your results that you can quickly digest and interpret for publications and reports. Basic Training (to be tailored by your specific questions received beforehand): • Introduction to IPA • Data format and upload o Types of data o How to upload your data to IPA and start an analysis • Understanding a Core Analysis o Canonical Pathways o Upstream Regulators o Diseases and Functions For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-10-23 10:00:00 | Online | Any | Pathway Analysis | Online | Shawn Prince (Senior Field Application Scientist- QIAGEN) | CBIIT | 0 | QIAGEN Ingenuity Pathway Analysis (IPA) Webinar | |
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DescriptionCellMinerCDB is an interactive public web application (https://discover.nci.nih.gov/cellminercdb/) that simplifies access and exploration of cancer cell line pharmacogenomic data across different sources such as the National Cancer Institute (NCI), Broad Institute, Sanger/MGH and MD Anderson Cancer Center (MAACC). It leverages overlaps of cell lines and drugs across databases to examine reproducibility, expand association and pathway analyses, and ...Read More CellMinerCDB is an interactive public web application (https://discover.nci.nih.gov/cellminercdb/) that simplifies access and exploration of cancer cell line pharmacogenomic data across different sources such as the National Cancer Institute (NCI), Broad Institute, Sanger/MGH and MD Anderson Cancer Center (MAACC). It leverages overlaps of cell lines and drugs across databases to examine reproducibility, expand association and pathway analyses, and discover drug response biomarkers. Additional Meeting Information Meeting number: 2308 686 9253 Password: KWihcpc$588
Join by video system Dial 23086869253@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2308 686 9253 RegisterOrganizerBTEPWhenWed, Oct 23, 2024 - 11:00 am - 12:00 pmWhereOnline |
CellMinerCDB is an interactive public web application (https://discover.nci.nih.gov/cellminercdb/) that simplifies access and exploration of cancer cell line pharmacogenomic data across different sources such as the National Cancer Institute (NCI), Broad Institute, Sanger/MGH and MD Anderson Cancer Center (MAACC). It leverages overlaps of cell lines and drugs across databases to examine reproducibility, expand association and pathway analyses, and discover drug response biomarkers. Additional Meeting Information Meeting number: 2308 686 9253 Password: KWihcpc$588 Join by video system Dial 23086869253@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2308 686 9253 | 2024-10-23 11:00:00 | Online | Any | Cancer,Databases | Online | Fathi Elloumi PhD (CCR DTP),William Reinhold (CCR DTP),Augustin Luna Ph.D. (CCR DTP) | BTEP | 0 | CellMiner Cross-DataBase (CellMinerCDB) for Exploration and Analyses of Cancer Cell Line Pharmacogenomics Data | |
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DescriptionThis one-hour online training will cover tips and tricks to run your processing against large datasets more efficiently in SAS. By the end of this training, attendees will be able to:
This one-hour online training will cover tips and tricks to run your processing against large datasets more efficiently in SAS. By the end of this training, attendees will be able to:
Attendees are expected to be familiar with the basic functions of SAS to be successful in this training. Contact nihlibrary@nih.gov for information on how to access on-demand introductory SAS trainings. DetailsOrganizerNIH LibraryWhenWed, Oct 23, 2024 - 11:00 am - 12:00 pmWhereOnline |
This one-hour online training will cover tips and tricks to run your processing against large datasets more efficiently in SAS. By the end of this training, attendees will be able to: Describe general best coding practices that, when processing large data, will speed up performance Discuss best practices in using PROC SQL and DATA Step in working with large data Identify best practices in processing against external data sources Attendees are expected to be familiar with the basic functions of SAS to be successful in this training. Contact nihlibrary@nih.gov for information on how to access on-demand introductory SAS trainings. | 2024-10-23 11:00:00 | Online | Any | Data analysis,SAS | Online | SAS | NIH Library | 0 | Working with Large Datasets in SAS | |
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DescriptionLearn the nuts and bolts of 16S amplicon microbiome sequence analysis with DADA2. This hands-on tutorial will walk through all key steps in detail, providing understanding about each component and common pitfalls. Feel free to bring data from a current project, too! While most of the training will be taught in R, limited R coding experience will be necessary. Learn the nuts and bolts of 16S amplicon microbiome sequence analysis with DADA2. This hands-on tutorial will walk through all key steps in detail, providing understanding about each component and common pitfalls. Feel free to bring data from a current project, too! While most of the training will be taught in R, limited R coding experience will be necessary. DetailsOrganizerNIAID BCBBWhenWed, Oct 23, 2024 - 2:00 pm - 5:00 pmWhereOnline |
Learn the nuts and bolts of 16S amplicon microbiome sequence analysis with DADA2. This hands-on tutorial will walk through all key steps in detail, providing understanding about each component and common pitfalls. Feel free to bring data from a current project, too! While most of the training will be taught in R, limited R coding experience will be necessary. | 2024-10-23 14:00:00 | Online | Any | Microbiome | Online | Katie McCauley (NIAID BCBB) | NIAID BCBB | 0 | 16S Amplicon Sequence Analysis with DADA2 and R | |
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AI in Biomedical Research @ NIH Seminar SeriesDescriptionRecent advances in artificial intelligence (AI) have revolutionized the use of hematoxylin and eosin (H&E)-stained tumor slides for precision oncology, enabling data-driven approaches to predict molecular characteristics and therapeutic outcomes. In my talk, I will present ENLIGHT–DeepPT, a novel two-step AI framework. The first step, DeepPT, leverages deep learning to predict genome-wide tumor mRNA expression from H&E slides. The second step, ENLIGHT, utilizes these inferred expression values to ...Read More Recent advances in artificial intelligence (AI) have revolutionized the use of hematoxylin and eosin (H&E)-stained tumor slides for precision oncology, enabling data-driven approaches to predict molecular characteristics and therapeutic outcomes. In my talk, I will present ENLIGHT–DeepPT, a novel two-step AI framework. The first step, DeepPT, leverages deep learning to predict genome-wide tumor mRNA expression from H&E slides. The second step, ENLIGHT, utilizes these inferred expression values to predict patient response to targeted and immune therapies. We validate this framework across 16 cohorts from The Cancer Genome Atlas (TCGA) and independent datasets, demonstrating successful prediction of true responders in five patient cohorts spanning six cancer types, with a 39.5% increased response rate and an odds ratio of 2.28. In addition, I will introduce DEPLOY, a deep learning model designed to enhance the diagnosis of central nervous system (CNS) tumors by predicting tumor categories from histopathology slides. DEPLOY integrates three components: a direct classifier based on histopathology images, an indirect model that predicts DNA methylation profiles for tumor classification, and a model that uses patient demographics. Trained on a dataset of 1,796 patients and tested on independent cohorts of 2,156 patients, DEPLOY achieves 95% overall accuracy and 91% balanced accuracy. These results underscore the potential of DEPLOY to assist pathologists in classifying CNS tumors rapidly, offering a promising tool for improving diagnostic precision in clinical settings. RegisterOrganizerBTEPWhenThu, Oct 24, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Recent advances in artificial intelligence (AI) have revolutionized the use of hematoxylin and eosin (H&E)-stained tumor slides for precision oncology, enabling data-driven approaches to predict molecular characteristics and therapeutic outcomes. In my talk, I will present ENLIGHT–DeepPT, a novel two-step AI framework. The first step, DeepPT, leverages deep learning to predict genome-wide tumor mRNA expression from H&E slides. The second step, ENLIGHT, utilizes these inferred expression values to predict patient response to targeted and immune therapies. We validate this framework across 16 cohorts from The Cancer Genome Atlas (TCGA) and independent datasets, demonstrating successful prediction of true responders in five patient cohorts spanning six cancer types, with a 39.5% increased response rate and an odds ratio of 2.28. In addition, I will introduce DEPLOY, a deep learning model designed to enhance the diagnosis of central nervous system (CNS) tumors by predicting tumor categories from histopathology slides. DEPLOY integrates three components: a direct classifier based on histopathology images, an indirect model that predicts DNA methylation profiles for tumor classification, and a model that uses patient demographics. Trained on a dataset of 1,796 patients and tested on independent cohorts of 2,156 patients, DEPLOY achieves 95% overall accuracy and 91% balanced accuracy. These results underscore the potential of DEPLOY to assist pathologists in classifying CNS tumors rapidly, offering a promising tool for improving diagnostic precision in clinical settings. | 2024-10-24 13:00:00 | Online Webinar | Any | AI,Precision Oncology | Online | Eldad Shulman Ph.D. (CDSL) | BTEP | 1 | Leveraging AI for Precision Oncology: From Predicting Therapeutic Response to Enhancing CNS Tumor Diagnosis | |
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DescriptionNIH Text Mining and Natural Language Processing SIG is pleased to welcome you to this special event featuring two extraordinary speakers focused on the applications of Deep Learning in Computational Biology. NIH Text Mining and Natural Language Processing SIG is pleased to welcome you to this special event featuring two extraordinary speakers focused on the applications of Deep Learning in Computational Biology. DetailsOrganizerNIH Text Mining and Natural Language Processing SIGWhenThu, Oct 24, 2024 - 2:00 pm - 3:00 pmWhereOnline |
NIH Text Mining and Natural Language Processing SIG is pleased to welcome you to this special event featuring two extraordinary speakers focused on the applications of Deep Learning in Computational Biology. Speaker: Dr. Lauren Porter, Principal Investigator at the Division of Intramural Research, NLM, NIHTitle: Predicting unknown regions of protein fold space Speaker: Dr. Ivan Ovcharenko, Principal Investigator at the Division of Intramural Research, NLM, NIH Title: Deep Learning Models Accurately Identify Disease-Causal Regulatory Variants Predicting unknown regions of protein fold spaceRecent work suggests that AlphaFold (AF)–a deep learning-based model that can accurately infer protein structure from sequence–may discern important features of folded protein energy landscapes, defined by the diversity and frequency of different conformations in the folded state. Here, we test the limits of its predictive power on fold-switching proteins, which assume two structures with regions of distinct secondary and/or tertiary structure. We find that (1) AF is a weak predictor of fold switching and (2) some of its successes result from memorization of training-set structures rather than learned protein energetics. Combining >280,000 models from several implementations of AF2 and AF3, a 35% success rate was achieved for fold switchers likely in AF’s training sets. AF2’s confidence metrics selected against models consistent with experimentally determined fold-switching structures and failed to discriminate between low and high energy conformations. Further, AF captured only one out of seven experimentally confirmed fold switchers outside of its training sets despite extensive sampling of an additional ~280,000 models. Several observations indicate that AF2 has memorized structural information during training, and AF3 misassigns coevolutionary restraints. These limitations constrain the scope of successful predictions, highlighting the need for physically based methods that readily predict multiple protein conformations. Deep Learning Models Accurately Identify Disease-Causal Regulatory VariantsGenetic association studies have identified thousands of independent signals associated with a wide range of human complex diseases. Despite these successes, pinpointing specific causal variants underlying a genetic association signal remains challenging. In this presentation, I will introduce a deep learning (DL) model designed to accurately predict disease-causal variants in the noncoding regions of the human genome. By applying this model to enhancers, we identify a specific set of causal variants linked to type 2 diabetes, several of which have been confirmed biochemically. When extending the model to silencers, we find that candidate silencers exhibit strong enrichment in disease-associated variants, with certain diseases showing a significantly stronger association with silencer variants than with enhancer variants. Nearly 52% of candidate silencers cluster together, forming silencer-rich loci. In the loci of Parkinson's disease hallmark genes TRIM31 and MAL, the associated SNPs densely populate these clustered candidate silencers rather than enhancers, showing an overall twofold enrichment of silencers compared to enhancers. The disruption of apoptosis in neuronal cells is associated with both schizophrenia and bipolar disorder and can largely be attributed to variants within candidate silencers. Our model allows for a mechanistic explanation of causative SNP effects by identifying altered binding of tissue-specific repressors and activators, validated with 70% directional concordance using SNP-SELEX. Focusing on individual silencer variants, experimental data confirms the roles of the rs62055708 SNP in Parkinson's disease, rs2535629 in schizophrenia, and rs6207121 in type 1 diabetes. In summary, our results suggest that advancements in deep learning models for discovering disease-causal variants can provide a foundation for explaining mechanisms of action and designing novel diagnostics and therapeutics. | 2024-10-24 14:00:00 | Online | Any | AI,Variant Analysis,Protein Folding | Online | Lauren Porter (NLM NIH) Ivan Ovcharenko (NLM NIH) | NIH Text Mining and Natural Language Processing SIG | 0 | Applications of Deep Learning in Computational Biology | |
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DescriptionIn this presentation, you will get an overview of the Cancer Digital Slide Archive (CDSA) platform. CDSA is an open source, web-based platform for storage, visualization, and management of digitized whole slide images.
This framework supports the growing need for pathology data management within the biomedical research community. You can use it to ...Read More In this presentation, you will get an overview of the Cancer Digital Slide Archive (CDSA) platform. CDSA is an open source, web-based platform for storage, visualization, and management of digitized whole slide images.
This framework supports the growing need for pathology data management within the biomedical research community. You can use it to navigate across vast histological datasets.
The integration of the HistomicsTK, a toolkit for high-throughput histology image analysis, provides sophisticated computational tools to drive insights into disease mechanisms, diagnosis, and treatment.
For questions contact Daoud Meerzaman or Kayla Strauss. DetailsOrganizerCBIITWhenTue, Oct 29, 2024 - 10:00 am - 11:00 amWhereOnline |
In this presentation, you will get an overview of the Cancer Digital Slide Archive (CDSA) platform. CDSA is an open source, web-based platform for storage, visualization, and management of digitized whole slide images. This framework supports the growing need for pathology data management within the biomedical research community. You can use it to navigate across vast histological datasets. The integration of the HistomicsTK, a toolkit for high-throughput histology image analysis, provides sophisticated computational tools to drive insights into disease mechanisms, diagnosis, and treatment. For questions contact Daoud Meerzaman or Kayla Strauss. | 2024-10-29 10:00:00 | Online | Any | Data Management | Online | David Gutman MD PhD (Department of Biomedical Informatics at Emory University School of Medicine) | CBIIT | 0 | The Cancer Digital Slide Archive (CDSA) webinar | |
1613 |
DescriptionJoin Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your ...Read More Join Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your analysis workflow following cell segmentation of your tissue. What You’ll Learn:
Why Attend?
Don’t miss this opportunity to enhance your data analysis skills with MAWA! Planned schedule: Tue 10/15, 1-2 PM Topic: Introduction to NIDAP. MAWA Basics and Supervised Phenotyping. Speaker: Andrew Weisman, Ph.D.
Tue 10/22, 1-2 PM Topic: Unsupervised phenotyping. Speaker: Andrei Bombin, Ph.D.
Tue 10/29, 1-2 PM Topic: Pairwise spatial analysis using hypothesis testing. Speaker: Andrew Weisman, Ph.D.
Wed 11/6, 11-12 PM Topic: Neighborhood analysis using spatial UMAP. Speaker: Dante Smith, Ph.D.
RegisterOrganizerBTEPWhenTue, Oct 29, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Join Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your analysis workflow following cell segmentation of your tissue. What You’ll Learn: File Handling: Efficiently manage your datasets. Phenotyping: Identify and categorize cell types. Spatial Analysis: Analyze spatial relationships within your data. Why Attend? Easy-To-Use Platform: MAWA offers an intuitive interface suitable for both novices and experts. High Performance: Efficiently handles large datasets with millions of cells or objects. Free Access: MAWA is available for free use. Don’t miss this opportunity to enhance your data analysis skills with MAWA! Planned schedule: Tue 10/15, 1-2 PM Topic: Introduction to NIDAP. MAWA Basics and Supervised Phenotyping. Speaker: Andrew Weisman, Ph.D. Tue 10/22, 1-2 PM Topic: Unsupervised phenotyping. Speaker: Andrei Bombin, Ph.D. Tue 10/29, 1-2 PM Topic: Pairwise spatial analysis using hypothesis testing. Speaker: Andrew Weisman, Ph.D. Wed 11/6, 11-12 PM Topic: Neighborhood analysis using spatial UMAP. Speaker: Dante Smith, Ph.D. | 2024-10-29 13:00:00 | Online Webinar | Any | Data analysis,Spatial Transcriptomics | Online | Andrew Weisman Ph.D. (NCI) | BTEP | 0 | Spatial Omics Data Analysis with MAWA 3: Pairwise Spatial Analysis using Hypothesis Testing | |
1620 |
Coding Club Seminar SeriesDescriptionIn this session of the BTEP Coding Club, Emily Clough, PhD, GEO Curator, will explore updates to analysis tools available within the Gene Expression Omnibus (GEO), a public repository for gene expression and epigenomics data sets. In the past several years GEO has made major updates and additions to the online analysis tool GEO2R. Many new visualization plots have been added to explore results, and now human RNA-seq data are available for analysis.Read More In this session of the BTEP Coding Club, Emily Clough, PhD, GEO Curator, will explore updates to analysis tools available within the Gene Expression Omnibus (GEO), a public repository for gene expression and epigenomics data sets. In the past several years GEO has made major updates and additions to the online analysis tool GEO2R. Many new visualization plots have been added to explore results, and now human RNA-seq data are available for analysis. Meeting link: Meeting number: Meeting password: Join from a video or application
RegisterOrganizerBTEPWhenWed, Oct 30, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
In this session of the BTEP Coding Club, Emily Clough, PhD, GEO Curator, will explore updates to analysis tools available within the Gene Expression Omnibus (GEO), a public repository for gene expression and epigenomics data sets. In the past several years GEO has made major updates and additions to the online analysis tool GEO2R. Many new visualization plots have been added to explore results, and now human RNA-seq data are available for analysis. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=m0b499a1174cc32a9355c87c395b5ac15 Meeting number:2318 999 6974 Meeting password:dVuQdig?937 Join from a video or applicationDial 23189996974@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 TollAccess code: 23189996974 | 2024-10-30 11:00:00 | Online Webinar | Any | RNA-Seq,GEO | R programming,GEO,RNA-Seq | Online | Emily Clough (GEO) | BTEP | 1 | GEO Analysis Tools: New and Improved |
1638 |
DescriptionA hands-on workshop for analyzing metagenomes in the open-source microbiome application Nephele. Participants will first learn how to navigate Nephele and process their reads to trim and filter for quality. They will then learn how to run their data through the WGSA2 pipeline to assemble metagenomic reads, obtain taxonomic and functional annotations and abundances for downstream analyses, generate metagenome assembled genomes, explore viruses, and more. A hands-on workshop for analyzing metagenomes in the open-source microbiome application Nephele. Participants will first learn how to navigate Nephele and process their reads to trim and filter for quality. They will then learn how to run their data through the WGSA2 pipeline to assemble metagenomic reads, obtain taxonomic and functional annotations and abundances for downstream analyses, generate metagenome assembled genomes, explore viruses, and more. DetailsOrganizerNIAID BCBBWhenFri, Nov 01, 2024 - 2:00 pm - 4:00 pmWhereOnline |
A hands-on workshop for analyzing metagenomes in the open-source microbiome application Nephele. Participants will first learn how to navigate Nephele and process their reads to trim and filter for quality. They will then learn how to run their data through the WGSA2 pipeline to assemble metagenomic reads, obtain taxonomic and functional annotations and abundances for downstream analyses, generate metagenome assembled genomes, explore viruses, and more. | 2024-11-01 14:00:00 | Online | Any | Microbiome | Online | Lauren Krausfeldt (NIAID),Poorani Subramanian (NIAID) | NIAID BCBB | 0 | Shotgun Metagenomics Using Nephele | |
1640 |
DescriptionIntroduction to spatial transcriptomics methods and concepts for STx data analysis Introduction to spatial transcriptomics methods and concepts for STx data analysis DetailsOrganizerNIAID BCBBWhenMon, Nov 04, 2024 - 1:00 pm - 3:00 pmWhereOnline |
Introduction to spatial transcriptomics methods and concepts for STx data analysis | 2024-11-04 13:00:00 | Online | Any | Transcriptomics | Online | Margaret Ho (NIAID BCBB) | NIAID BCBB | 0 | Spatial Transcriptomics Introduction and Tutorial (Part I) | |
1651 |
DescriptionThis one-hour interactive training will cover how to use the ScHARe cloud and Terra platform focusing on how to utilize over 260 social determinants of health (SDoH) data sets and analytic notebooks containing ready-to-use code. SDoH contribute to the onset, management and mortality associated with disease and disorders. It is critical that conditions where a person is born, grows, lives, learns, works, plays and matures is included in the understanding of their health and ...Read More This one-hour interactive training will cover how to use the ScHARe cloud and Terra platform focusing on how to utilize over 260 social determinants of health (SDoH) data sets and analytic notebooks containing ready-to-use code. SDoH contribute to the onset, management and mortality associated with disease and disorders. It is critical that conditions where a person is born, grows, lives, learns, works, plays and matures is included in the understanding of their health and well-being. However, challenges such as lack of centralized location, fragmented data sources, inconsistent measurement standards, missing data, and variations in inclusion practices and procedures have historically made it difficult to incorporate SDoH into human health research. The ScHARe Cloud addresses these barriers and provides a centralized resource designed to facilitate to include SDoH in research involving humans, especially health disparities. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of the product/tool to be successful in this training. This training is designed to be beginner-friendly, allowing everyone, regardless of their technical background, to confidently engage with the platform. Note: users must have a Gmail address to register for and use the ScHARe platform This is one of two classes on the ScHARe platform. Learn more and register for the other class: How to Use the ScHARe Project Data Repository for Population and Social Science Projects. DetailsOrganizerNIH LibraryWhenMon, Nov 04, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This one-hour interactive training will cover how to use the ScHARe cloud and Terra platform focusing on how to utilize over 260 social determinants of health (SDoH) data sets and analytic notebooks containing ready-to-use code. SDoH contribute to the onset, management and mortality associated with disease and disorders. It is critical that conditions where a person is born, grows, lives, learns, works, plays and matures is included in the understanding of their health and well-being. However, challenges such as lack of centralized location, fragmented data sources, inconsistent measurement standards, missing data, and variations in inclusion practices and procedures have historically made it difficult to incorporate SDoH into human health research. The ScHARe Cloud addresses these barriers and provides a centralized resource designed to facilitate to include SDoH in research involving humans, especially health disparities. By the end of this training, attendees will be able to: Use ScHARe cloud platform for their research projects Set up a secure Terra workspace tailored to their needs Search, identify, and integrate relevant datasets into their workspace Access and utilize Python and R code notebooks for analyses, missing data imputation, and data visualization. Attendees are not expected to have any prior knowledge of the product/tool to be successful in this training. This training is designed to be beginner-friendly, allowing everyone, regardless of their technical background, to confidently engage with the platform. Note: users must have a Gmail address to register for and use the ScHARe platform This is one of two classes on the ScHARe platform. Learn more and register for the other class: How to Use the ScHARe Project Data Repository for Population and Social Science Projects. | 2024-11-04 13:00:00 | Online | Any | Cloud,Data integration | ScHARe | Online | Deborah Duran (NIMHD),Elif Dede-Yildirim | NIH Library | 0 | ScHARe: Cloud Platform with Centralized SDoH Data Sets for Research |
1614 |
DescriptionJoin Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your ...Read More Join Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your analysis workflow following cell segmentation of your tissue. What You’ll Learn:
Why Attend?
Don’t miss this opportunity to enhance your data analysis skills with MAWA! Planned schedule: Tue 10/15, 1-2 PM Topic: Introduction to NIDAP. MAWA Basics, and Supervised Phenotyping. Speaker: Andrew Weisman, Ph.D.
Tue 10/22, 1-2 PM Topic: Unsupervised phenotyping. Speaker: Andrei Bombin, Ph.D.
Tue 10/29, 1-2 PM Topic: Pairwise spatial analysis using hypothesis testing. Speaker: Andrew Weisman, Ph.D.
Wed 11/6, 11-12 PM Topic: Neighborhood analysis using spatial UMAP. Speaker: Dante Smith, Ph.D.
RegisterOrganizerBTEPWhenWed, Nov 06, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
Join Our Training on Spatial Omics Data Analysis with MAWA (Multiplex Analysis Web Apps). Want to learn how to process and analyze your spatial proteomics/transcriptomics data? Join us for four virtual hour-long sessions at NIH, where you’ll get hands-on, step-by-step training using sample datasets (.csv, .tsv, .txt) with MAWA (Multiplex Analysis Web Apps). This user-friendly, graphical software platform offers an end-to-end solution for your analysis workflow following cell segmentation of your tissue. What You’ll Learn: File Handling: Efficiently manage your datasets. Phenotyping: Identify and categorize cell types. Spatial Analysis: Analyze spatial relationships within your data. Why Attend? Easy-To-Use Platform: MAWA offers an intuitive interface suitable for both novices and experts. High Performance: Efficiently handles large datasets with millions of cells or objects. Free Access: MAWA is available for free use. Don’t miss this opportunity to enhance your data analysis skills with MAWA! Planned schedule: Tue 10/15, 1-2 PM Topic: Introduction to NIDAP. MAWA Basics, and Supervised Phenotyping. Speaker: Andrew Weisman, Ph.D. Tue 10/22, 1-2 PM Topic: Unsupervised phenotyping. Speaker: Andrei Bombin, Ph.D. Tue 10/29, 1-2 PM Topic: Pairwise spatial analysis using hypothesis testing. Speaker: Andrew Weisman, Ph.D. Wed 11/6, 11-12 PM Topic: Neighborhood analysis using spatial UMAP. Speaker: Dante Smith, Ph.D. | 2024-11-06 11:00:00 | Online Webinar | Any | Data analysis,Spatial Transcriptomics | Online | Dante Smith Ph.D. (NCI) | BTEP | 0 | Spatial Omics Data Analysis with MAWA 4: Neighborhood Analysis using Spatial UMAP | |
1634 |
DescriptionJoin by meeting number:
Join by meeting number:
DetailsOrganizerNCIWhenWed, Nov 06, 2024 - 11:00 am - 12:00 pmWhereOnline |
Join by meeting number: Meeting number (access code): 2305 301 5709 Meeting password: RTdpZCg*255 | 2024-11-06 11:00:00 | Online | Any | Single Cell | Online | Michael Kelly Ph.D. (CCR Single Cell Analysis Facility) | NCI | 0 | From One Blueprint, a Symphony of Cellular Diversity: Exploring Cell Phenotypes with Single Cell Sequencing & Spatial Transcriptomic Profiling Technologies | |
1655 |
DescriptionNeuro-Oncology Branch Visiting Scholar Program Lecture Neuro-Oncology Branch Visiting Scholar Program Lecture DetailsOrganizerCCR Neuro-Oncology BranchWhenWed, Nov 06, 2024 - 3:00 pm - 4:00 pmWhereOnline Webinar |
Neuro-Oncology Branch Visiting Scholar Program Lecture | 2024-11-06 15:00:00 | Online Webinar | Any | Cancer,Transcriptomics,Pathology | In-Person | Eytan Ruppin MD Ph.D (CCR Cancer Data Science Lab) | CCR Neuro-Oncology Branch | 0 | Next Generation Precision Oncology: From Tumor Transcriptomics to Pathology Slides | |
1387 |
Distinguished Speakers Seminar SeriesDescriptionDr. Blackshaw's work investigates the molecular mechanisms controlling neurogenesis and cell fate specification in the vertebrate forebrain, with a particular focus on the retina. He currently focuses on the use of comparative Single-Cell Multiomic Analysis to identify gene regulatory networks that control retinal development and injury-induced regeneration. He will describe recent work that has used insights from both studying both development and injury-induced neurogenesis in zebrafish to induce glia ...Read More Dr. Blackshaw's work investigates the molecular mechanisms controlling neurogenesis and cell fate specification in the vertebrate forebrain, with a particular focus on the retina. He currently focuses on the use of comparative Single-Cell Multiomic Analysis to identify gene regulatory networks that control retinal development and injury-induced regeneration. He will describe recent work that has used insights from both studying both development and injury-induced neurogenesis in zebrafish to induce glia in mammalian retina to generate neurons. Meeting number: 2312 437 6963 Password: bMrGtiA@933 Join by video system Dial 23124376963@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2312 437 6963RegisterOrganizerBTEPWhenThu, Nov 07, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Dr. Blackshaw's work investigates the molecular mechanisms controlling neurogenesis and cell fate specification in the vertebrate forebrain, with a particular focus on the retina. He currently focuses on the use of comparative Single-Cell Multiomic Analysis to identify gene regulatory networks that control retinal development and injury-induced regeneration. He will describe recent work that has used insights from both studying both development and injury-induced neurogenesis in zebrafish to induce glia in mammalian retina to generate neurons. Meeting number: 2312 437 6963 Password: bMrGtiA@933 Join by video system Dial 23124376963@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2312 437 6963 | 2024-11-07 13:00:00 | Online Webinar | Any | Online | Seth Blackshaw Ph.D. (Johns Hopkins) | BTEP | 1 | Building and Rebuilding the Vertebrate Retina, One Cell at a Time | ||
1654 |
DescriptionIn the era of renewed space exploration, understanding female health risks during spaceflight is essential. This talk focuses on leveraging NIAID's ImmPort and NASA's GeneLab data using computational and systems biology to investigate microRNA (miRNA)-driven risks for female astronauts. We identified a shared miRNA signature linked to small-for-gestational-age (SGA) outcomes in both humans and mice, suggesting that space stressors may elevate reproductive risks. Machine learning techniques revealed FDA-approved drugs, including hormone ...Read More In the era of renewed space exploration, understanding female health risks during spaceflight is essential. This talk focuses on leveraging NIAID's ImmPort and NASA's GeneLab data using computational and systems biology to investigate microRNA (miRNA)-driven risks for female astronauts. We identified a shared miRNA signature linked to small-for-gestational-age (SGA) outcomes in both humans and mice, suggesting that space stressors may elevate reproductive risks. Machine learning techniques revealed FDA-approved drugs, including hormone receptor and vitamin D receptor antagonists, as potential countermeasures. Our findings highlight the need for targeted interventions to protect female health during and after space missions.
DetailsOrganizerNIAIDWhenThu, Nov 07, 2024 - 3:00 pm - 4:00 pmWhereOnline Webinar |
In the era of renewed space exploration, understanding female health risks during spaceflight is essential. This talk focuses on leveraging NIAID's ImmPort and NASA's GeneLab data using computational and systems biology to investigate microRNA (miRNA)-driven risks for female astronauts. We identified a shared miRNA signature linked to small-for-gestational-age (SGA) outcomes in both humans and mice, suggesting that space stressors may elevate reproductive risks. Machine learning techniques revealed FDA-approved drugs, including hormone receptor and vitamin D receptor antagonists, as potential countermeasures. Our findings highlight the need for targeted interventions to protect female health during and after space missions. | 2024-11-07 15:00:00 | Online Webinar | Any | Immunology | Online | Afshin Beheshti (University of Pittsburgh) | NIAID | 0 | Harnessing NIAID’s ImmPort & NASA’s GeneLab Through Computational and Systems Biology Approach: Determining Female Health Risks for Spaceflight Driven by MicroRNAs | |
1623 |
DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, p-values and confidence intervals, types of data and their distributional importance, and bias and confounding. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenFri, Nov 08, 2024 - 12:00 pm - 3:30 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 1 will address fundamental statistical concepts including hypothesis testing, p-values and confidence intervals, types of data and their distributional importance, and bias and confounding. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2024-11-08 12:00:00 | Online | Any | Statistics | Online | Ninet Sinaii (BCES) | NIH Library | 0 | Overview of Statistical Concepts: Part 1 | |
1639 |
DescriptionLearn microbiome analysis basics in R with phyloseq. This workshop will cover different types of analysis frequently used in microbiome studies, including sample diversity, community composition, and differential taxa. The techniques we learn will be applicable to both amplicon and metagenomic data Learn microbiome analysis basics in R with phyloseq. This workshop will cover different types of analysis frequently used in microbiome studies, including sample diversity, community composition, and differential taxa. The techniques we learn will be applicable to both amplicon and metagenomic data DetailsOrganizerNIAID BCBBWhenFri, Nov 08, 2024 - 2:00 pm - 5:00 pmWhereOnline |
Learn microbiome analysis basics in R with phyloseq. This workshop will cover different types of analysis frequently used in microbiome studies, including sample diversity, community composition, and differential taxa. The techniques we learn will be applicable to both amplicon and metagenomic data | 2024-11-08 14:00:00 | Online | Any | Microbiome | Online | Katie McCauley (NIAID BCBB) | NIAID BCBB | 0 | Statistical Analysis of Microbiome Data | |
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DescriptionJoin us at the upcoming hybrid NIH BRAIN NeuroAI Workshop on November 12 and 13, with virtual access to in-person panels and discussions at the NIH Campus in Bethesda, MD. Artificial intelligence (AI) is reshaping technology across neuroscience, health, and computing. As the potential benefits and limitations of AI become clear, the mission to understand the brain and accelerate cures is converging with interdisciplinary efforts to disentangle fundamental principles of intelligence in brains and ...Read More Join us at the upcoming hybrid NIH BRAIN NeuroAI Workshop on November 12 and 13, with virtual access to in-person panels and discussions at the NIH Campus in Bethesda, MD. Artificial intelligence (AI) is reshaping technology across neuroscience, health, and computing. As the potential benefits and limitations of AI become clear, the mission to understand the brain and accelerate cures is converging with interdisciplinary efforts to disentangle fundamental principles of intelligence in brains and AI. The NIH Brain Research Through Advancing Innovative Neurotechnologies® (BRAIN) Initiative is poised to leverage its wealth of data and tools to advance new theories and catalyze emerging NeuroAI research directions at the intersection of neuroscience and AI. This two-day hybrid workshop will bring together early-career researchers and leading neuroscientists, theorists, and engineers to broadly discuss promising NeuroAI research approaches, including those from related fields such as embodied cognition, physical intelligence, and neuromorphic engineering. In addition to current data-driven NeuroAI approaches, future NeuroAI research may benefit from methods and models that address the role of embodiment and behavior, including how both living organisms and artificial agents can learn efficiently and effectively from environmental feedback grounded in physical interaction. The BRAIN Initiative seeks diverse scientific and technological perspectives about how NeuroAI research can establish shared fundamental principles, develop theoretical frameworks, and coordinate interdisciplinary approaches to advance our understanding of natural intelligence, resilience, adaptability, and energy-efficiency in the brains of humans and other animals. Across two days, the workshop will feature four scientific panel sessions diving into critical questions including: what can be learned from the similarities and differences between natural intelligence and AI; how metrics and benchmarks can be designed to effectively compare AI models to brains; and why neuromorphic engineering approaches, bio-inspired robotics, and principles of physical intelligence may be important tools for accelerating the potentially transformative health impact of NeuroAI research. To illuminate the landscape of NeuroAI funding opportunities, the Funders Panel on the first day of the workshop, November 12, will feature representatives from agencies and foundations including the NIH, the National Science Foundation, the Department of Energy, the Department of Defense, and the Simons Foundation. To showcase innovative work from rising NeuroAI talents, the second day of the workshop, November 13, will feature the BRAIN NeuroAI Early-Career Scholars Poster Blitz and Poster Session. The BRAIN Initiative welcomes participants at all career stages from academic, industry, and government laboratories and research organizations; funding agency staff; representatives of foundations and advocacy groups; and science journalists, clinicians, and interested members of the public. Discussions and collaborations fostered during this event will identify prospects for novel NeuroAI research and reveal promising approaches, priorities, and opportunities in this exciting field. for virtual attendance! Virtual participants will be able to watch all sessions except the in-person poster session, and be able to submit questions to the moderated Q&A for the in-person panel discussions. Visit the workshop website for more information, including the agenda, speakers, and organizers. Please send any event inquiries to BRAINNeuroAIWorkshop@ninds.nih.gov. DetailsOrganizerNIH The BRAIN InitiativeWhenTue, Nov 12 - Wed, Nov 13, 2024 -8:00 am - 6:00 pmWhereNatcher Conference Center (Building 45), National Institutes of Health (Main Campus), 9000 Rockville Pike. Bethesda, MD 20892. |
Join us at the upcoming hybrid NIH BRAIN NeuroAI Workshop on November 12 and 13, with virtual access to in-person panels and discussions at the NIH Campus in Bethesda, MD. Artificial intelligence (AI) is reshaping technology across neuroscience, health, and computing. As the potential benefits and limitations of AI become clear, the mission to understand the brain and accelerate cures is converging with interdisciplinary efforts to disentangle fundamental principles of intelligence in brains and AI. The NIH Brain Research Through Advancing Innovative Neurotechnologies® (BRAIN) Initiative is poised to leverage its wealth of data and tools to advance new theories and catalyze emerging NeuroAI research directions at the intersection of neuroscience and AI. This two-day hybrid workshop will bring together early-career researchers and leading neuroscientists, theorists, and engineers to broadly discuss promising NeuroAI research approaches, including those from related fields such as embodied cognition, physical intelligence, and neuromorphic engineering. In addition to current data-driven NeuroAI approaches, future NeuroAI research may benefit from methods and models that address the role of embodiment and behavior, including how both living organisms and artificial agents can learn efficiently and effectively from environmental feedback grounded in physical interaction. The BRAIN Initiative seeks diverse scientific and technological perspectives about how NeuroAI research can establish shared fundamental principles, develop theoretical frameworks, and coordinate interdisciplinary approaches to advance our understanding of natural intelligence, resilience, adaptability, and energy-efficiency in the brains of humans and other animals. Across two days, the workshop will feature four scientific panel sessions diving into critical questions including: what can be learned from the similarities and differences between natural intelligence and AI; how metrics and benchmarks can be designed to effectively compare AI models to brains; and why neuromorphic engineering approaches, bio-inspired robotics, and principles of physical intelligence may be important tools for accelerating the potentially transformative health impact of NeuroAI research. To illuminate the landscape of NeuroAI funding opportunities, the Funders Panel on the first day of the workshop, November 12, will feature representatives from agencies and foundations including the NIH, the National Science Foundation, the Department of Energy, the Department of Defense, and the Simons Foundation. To showcase innovative work from rising NeuroAI talents, the second day of the workshop, November 13, will feature the BRAIN NeuroAI Early-Career Scholars Poster Blitz and Poster Session. The BRAIN Initiative welcomes participants at all career stages from academic, industry, and government laboratories and research organizations; funding agency staff; representatives of foundations and advocacy groups; and science journalists, clinicians, and interested members of the public. Discussions and collaborations fostered during this event will identify prospects for novel NeuroAI research and reveal promising approaches, priorities, and opportunities in this exciting field. for virtual attendance! Virtual participants will be able to watch all sessions except the in-person poster session, and be able to submit questions to the moderated Q&A for the in-person panel discussions. Visit the workshop website for more information, including the agenda, speakers, and organizers. Please send any event inquiries to BRAINNeuroAIWorkshop@ninds.nih.gov. | 2024-11-12 08:00:00 | Natcher Conference Center (Building 45), National Institutes of Health (Main Campus), 9000 Rockville Pike. Bethesda, MD 20892. | Any | AI | Online | NIH The BRAIN Initiative | 0 | 2024 BRAIN NeuroAI Workshop | ||
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DescriptionIn this hour and half online training, attendees will learn how to improve and optimize their MATLAB code to boost execution speed by orders of magnitude. The training covers common pitfalls in writing MATLAB code, explores the use of the MATLAB Profiler to find bottlenecks, and introduces the use of Parallel Computing Toolbox. The training also addresses vectorization and best coding practices in MATLAB. Read More In this hour and half online training, attendees will learn how to improve and optimize their MATLAB code to boost execution speed by orders of magnitude. The training covers common pitfalls in writing MATLAB code, explores the use of the MATLAB Profiler to find bottlenecks, and introduces the use of Parallel Computing Toolbox. The training also addresses vectorization and best coding practices in MATLAB. By the end of this training, attendees will be able to:
This training is for beginners through experienced; no software installation required. DetailsOrganizerNIH LibraryWhenTue, Nov 12, 2024 - 11:00 am - 12:30 pmWhereOnline |
In this hour and half online training, attendees will learn how to improve and optimize their MATLAB code to boost execution speed by orders of magnitude. The training covers common pitfalls in writing MATLAB code, explores the use of the MATLAB Profiler to find bottlenecks, and introduces the use of Parallel Computing Toolbox. The training also addresses vectorization and best coding practices in MATLAB. By the end of this training, attendees will be able to: Incorporate compiled languages, such as C, into MATLAB applications Utilize additional hardware, such as multicore processors and GPUS to improve performance Scale up to a computer cluster, grid environment or cloud This training is for beginners through experienced; no software installation required. | 2024-11-12 11:00:00 | Online | Any | Matlab | Online | Mathworks | NIH Library | 0 | Optimizing MATLAB and Accelerating Code | |
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DescriptionWe will discuss statistical considerations in planning, executing, and interpreting experiments using animals. Topics will include interpreting minimally powered pilot studies, dealing with complex time series, and maximizing knowledge gain from limited resources. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha ...Read More We will discuss statistical considerations in planning, executing, and interpreting experiments using animals. Topics will include interpreting minimally powered pilot studies, dealing with complex time series, and maximizing knowledge gain from limited resources. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. DetailsOrganizerAdvanced Biomedical Computational Sciences (ABCS)WhenTue, Nov 12, 2024 - 12:00 pm - 1:00 pmWhereBuilding 549 Conference Room A NCI-Frederick Campus |
We will discuss statistical considerations in planning, executing, and interpreting experiments using animals. Topics will include interpreting minimally powered pilot studies, dealing with complex time series, and maximizing knowledge gain from limited resources. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. | 2024-11-12 12:00:00 | Building 549 Conference Room A NCI-Frederick Campus | Any | Statistics | Hybrid | Duncan Donohue (Data Management Services Inc. a BRMI company) | Advanced Biomedical Computational Sciences (ABCS) | 0 | Statistical Considerations for Animal Model Experiments | |
1625 |
DescriptionThis one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. ...Read More This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to:
Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. DetailsOrganizerNIH LibraryWhenTue, Nov 12, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to: Recognize four freely available IDEs for python coding Identify fundamental components of python code Understand how and why notebooks support rigor and transparency in analysis Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. | 2024-11-12 13:00:00 | Online | Any | Python | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
1653 |
DescriptionNCI staff are welcome to register for an upcoming Childhood Cancer Data Initiative (CCDI) webinar: "Live Demo: National Childhood Cancer Registry (NCCR) Data Platform." Join the NCCR Technical Lead Johanna Goderre, M.P.H., on November 12 for an introduction to the new NCCR Data Platform, featuring a live demo and an engaging panel discussion with Kelly Getz, Ph.D., M.P.H., and Tamara Miller, M.D., M.S.C....Read More NCI staff are welcome to register for an upcoming Childhood Cancer Data Initiative (CCDI) webinar: "Live Demo: National Childhood Cancer Registry (NCCR) Data Platform." Join the NCCR Technical Lead Johanna Goderre, M.P.H., on November 12 for an introduction to the new NCCR Data Platform, featuring a live demo and an engaging panel discussion with Kelly Getz, Ph.D., M.P.H., and Tamara Miller, M.D., M.S.C.E., about the anticipated use of the new resource.
For questions about this event, please contact CCDIevents@mail.nih.gov. DetailsOrganizerNCIWhenTue, Nov 12, 2024 - 2:00 pm - 3:00 pmWhereOnline |
NCI staff are welcome to register for an upcoming Childhood Cancer Data Initiative (CCDI) webinar: "Live Demo: National Childhood Cancer Registry (NCCR) Data Platform." Join the NCCR Technical Lead Johanna Goderre, M.P.H., on November 12 for an introduction to the new NCCR Data Platform, featuring a live demo and an engaging panel discussion with Kelly Getz, Ph.D., M.P.H., and Tamara Miller, M.D., M.S.C.E., about the anticipated use of the new resource. The NCCR Data Platform is the nation’s first data-sharing resource to link adolescent and young adult (AYA) records across population-based cancer registries and real-world data partners. You can request access by visiting the NCCR Data Platform website. This webinar will be presented with real-time captioning. For questions about this event, please contact CCDIevents@mail.nih.gov. | 2024-11-12 14:00:00 | Online | Any | Cancer Data | Online | Kelly Getz (NCCR) Tamara Miller (NCCR) | NCI | 0 | CCDI Webinar | Live Demo: NCCR Data Platform | |
1615 |
DescriptionThis webinar will provide an overview of the generative artificial intelligence (AI) services across three major cloud service providers (CSPs) and the steps to follow for setting up AI chatbots in cloud environments with a bioinformatic focus. Following this will be a demonstration on workflow managers for bioinformatic analysis including Snakemake, Workflow Description Language (WDL), and Nextflow. Brought to you be the STRIDES initiative at NIH.&...Read More This webinar will provide an overview of the generative artificial intelligence (AI) services across three major cloud service providers (CSPs) and the steps to follow for setting up AI chatbots in cloud environments with a bioinformatic focus. Following this will be a demonstration on workflow managers for bioinformatic analysis including Snakemake, Workflow Description Language (WDL), and Nextflow. Brought to you be the STRIDES initiative at NIH. IF YOU PREVIOUSLY REGISTERED FOR THIS EVENT YOU DO NOT NEED TO REGISTER AGAIN. PLEASE USE THE NEW MEETING LINK ON THIS PAGE. RegisterOrganizerBTEPWhenWed, Nov 13, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
This webinar will provide an overview of the generative artificial intelligence (AI) services across three major cloud service providers (CSPs) and the steps to follow for setting up AI chatbots in cloud environments with a bioinformatic focus. Following this will be a demonstration on workflow managers for bioinformatic analysis including Snakemake, Workflow Description Language (WDL), and Nextflow. Brought to you be the STRIDES initiative at NIH. IF YOU PREVIOUSLY REGISTERED FOR THIS EVENT YOU DO NOT NEED TO REGISTER AGAIN. PLEASE USE THE NEW MEETING LINK ON THIS PAGE. | 2024-11-13 11:00:00 | Online Webinar | Any | AI,Cloud | Online | Kyle O\'Connell (NIH/CIT),Zelaikha Yosufzai (NIH/CIT) | BTEP | 0 | Rescheduled Event - Bioinformatics: AI Chatbots in the Cloud. Plus workflows. | |
1626 |
DescriptionThis one-hour online training will cover several easy-to-use tools for analytic situations, including PROC FREQ (chi-square tests, Fisher's exact test), PROC TTEST, and PROC NPAR1WAY. This training covers the basic guidelines for using different tests with examples. By the end of this training, attendees will be able to:
This one-hour online training will cover several easy-to-use tools for analytic situations, including PROC FREQ (chi-square tests, Fisher's exact test), PROC TTEST, and PROC NPAR1WAY. This training covers the basic guidelines for using different tests with examples. By the end of this training, attendees will be able to:
Attendees are expected to be familiar with the basic functions of SAS to be successful in this training. Contact nihlibrary@nih.gov for information on how to access on-demand introductory SAS trainings. DetailsOrganizerNIH LibraryWhenWed, Nov 13, 2024 - 11:00 am - 12:00 pmWhereOnline |
This one-hour online training will cover several easy-to-use tools for analytic situations, including PROC FREQ (chi-square tests, Fisher's exact test), PROC TTEST, and PROC NPAR1WAY. This training covers the basic guidelines for using different tests with examples. By the end of this training, attendees will be able to: Review data with a listing report Explore categorical variables using Proc Freq Explore continuous variables using Proc Means and Proc Univariate Review hypothesis testing Perform association analysis with categorical and ordinal variables using Proc Freq Perform analysis of variance with continuous variables using Proc t-test Perform nonparametric analysis using Proc Npar1way Identify resources for learning more Attendees are expected to be familiar with the basic functions of SAS to be successful in this training. Contact nihlibrary@nih.gov for information on how to access on-demand introductory SAS trainings. | 2024-11-13 11:00:00 | Online | Any | SAS | Online | SAS | NIH Library | 0 | Using SAS/STAT | |
1656 |
DescriptionThe National Library of Medicine (NLM) Division of Intramural Research (DIR) is pleased to welcome Manisha Desai, PhD, Section Chief of Biostatistics and Director of the Quantitative Sciences Unit at Stanford University School of Medicine, to give the 2024 NLM Ada Lovelace Computational Health Lecture entitled, “Can Data Science and AI Deliver on Its Promise for Improving Public Health?” Please join us on November 13, 2024, at 11:00am in the NLM Visitor Center (Building 38A) ...Read More The National Library of Medicine (NLM) Division of Intramural Research (DIR) is pleased to welcome Manisha Desai, PhD, Section Chief of Biostatistics and Director of the Quantitative Sciences Unit at Stanford University School of Medicine, to give the 2024 NLM Ada Lovelace Computational Health Lecture entitled, “Can Data Science and AI Deliver on Its Promise for Improving Public Health?” Please join us on November 13, 2024, at 11:00am in the NLM Visitor Center (Building 38A) and online via NIH Videocast. Data science has played an essential role in solving many public health problems. For example, clinical trials are data-intensive and are the gold standard for establishing standard of care for treating many diseases. More recently there has been a rise in the use of data science to develop artificial intelligence (AI)-based tools that present promising solutions of how we diagnose, monitor, and treat patients. For example, AI algorithms that leverage imaging data have provided insight into how to diagnose conditions or more accurately stage cancer. However, there have been many failures in translation. To realize the promise of data science and AI, there are many challenges to address, including the complexity of the intervention design itself, the underlying data used to establish AI-based algorithms, and the way AI-based interventions are evaluated. Vignettes of trials that evaluate AI-based tools illustrate issues and potential solutions. Ada Lovelace Day, an annual observance named for one of the first woman computer programmers, celebrates women in science, technology, engineering, and mathematics (STEM). The NLM Ada Lovelace Computational Health Lecture series, introduced in 2020, recognizes the contributions of computer scientists in research on health and biomedicine and invites them to share their pioneering research with NIH and beyond. Event will be videocast LIVE online
DetailsOrganizerNational Library of Medicine (NLM)WhenWed, Nov 13, 2024 - 11:00 am - 12:00 pmWhereBuilding 38A (Lister Hill National Center); NLM Visitor Center |
The National Library of Medicine (NLM) Division of Intramural Research (DIR) is pleased to welcome Manisha Desai, PhD, Section Chief of Biostatistics and Director of the Quantitative Sciences Unit at Stanford University School of Medicine, to give the 2024 NLM Ada Lovelace Computational Health Lecture entitled, “Can Data Science and AI Deliver on Its Promise for Improving Public Health?” Please join us on November 13, 2024, at 11:00am in the NLM Visitor Center (Building 38A) and online via NIH Videocast. Data science has played an essential role in solving many public health problems. For example, clinical trials are data-intensive and are the gold standard for establishing standard of care for treating many diseases. More recently there has been a rise in the use of data science to develop artificial intelligence (AI)-based tools that present promising solutions of how we diagnose, monitor, and treat patients. For example, AI algorithms that leverage imaging data have provided insight into how to diagnose conditions or more accurately stage cancer. However, there have been many failures in translation. To realize the promise of data science and AI, there are many challenges to address, including the complexity of the intervention design itself, the underlying data used to establish AI-based algorithms, and the way AI-based interventions are evaluated. Vignettes of trials that evaluate AI-based tools illustrate issues and potential solutions. Ada Lovelace Day, an annual observance named for one of the first woman computer programmers, celebrates women in science, technology, engineering, and mathematics (STEM). The NLM Ada Lovelace Computational Health Lecture series, introduced in 2020, recognizes the contributions of computer scientists in research on health and biomedicine and invites them to share their pioneering research with NIH and beyond. Event will be videocast LIVE online | 2024-11-13 11:00:00 | Building 38A (Lister Hill National Center); NLM Visitor Center | Any | AI | Hybrid | Manisha Desai (Stanford University School of Medicine) | National Library of Medicine (NLM) | 0 | NLM Ada Lovelace Lecture: Can Data Science and AI Deliver on Its Promise for Improving Public Health? | |
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DescriptionIn this webinar, Dana-Farber Cancer Institute’s Dr. Renato Umeton will explore the transformative journey of applying artificial intelligence (AI) solutions at scale, and in full compliance, bridging the gap between Big Tech, operations, and research.
In this webinar, Dana-Farber Cancer Institute’s Dr. Renato Umeton will explore the transformative journey of applying artificial intelligence (AI) solutions at scale, and in full compliance, bridging the gap between Big Tech, operations, and research.
DetailsOrganizerCBIITWhenWed, Nov 13, 2024 - 11:00 am - 12:00 pmWhereOnline |
In this webinar, Dana-Farber Cancer Institute’s Dr. Renato Umeton will explore the transformative journey of applying artificial intelligence (AI) solutions at scale, and in full compliance, bridging the gap between Big Tech, operations, and research. Dr. Umeton will present on: • the strategic development of AI infrastructure.• the governance frameworks that ensure secure use of AI.• the deployment of GPT4DFCI—a generative AI tool, restricted to the Dana-Farber private network, that's helping the workforce with operational, administrative, and research uses. (This does not include direct clinical care.) Throughout this hour, learn about challenges faced, breakthroughs achieved, and the future directions of expanding AI capabilities in your cancer research. | 2024-11-13 11:00:00 | Online | Any | AI | Online | Renato Umeton (Dana-Farber Cancer Institute) | CBIIT | 0 | Integrating AI and Generative AI in Operations and Research: From Creating the Team and Infrastructure to Supporting 2,000+ Users | |
1661 |
DescriptionFor inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, ...Read More For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users DetailsOrganizerNIH - HPCWhenWed, Nov 13, 2024 - 1:00 pm - 3:00 pmWhereOnline |
For inquires send email to staff@hpc.nih.gov Next edition of the NIH HPC monthly Zoom-In Consults! All Biowulf users, and all those interested in using the systems, are invited to stop by our Zoom session to discuss problems and concerns, from scripting problems to node allocation, to strategies for a particular project, to anything that is affecting your use of the HPC systems. Users will be assigned to a breakout-session with a member of the HPC staff to discuss the problem 1-on-1. We'll try to address simpler issues on the spot and follow up on more complex questions after the Zoom-In. At the Zoom-In: You will initially join the main lobby and triage area. There, you can briefly describe your issue, and then will be invited to join a 1-on-1 breakout room with a staff member. Once you are finished with your focused consultation you can return to the main meeting room if you have additional questions or topics to discuss. Please - mute when not speaking - refrain from screen sharing until asked to do so in the breakout room - screen share as you would in a public space with the understanding that other NIH HPC staff may join and view what you are sharing (i.e. look over your shoulder) - be prepared to wait your turn if staff are already helping other users | 2024-11-13 13:00:00 | Online | Any | Biowulf | Online | HPC Staff | NIH - HPC | 0 | Zoom-In Consult for Biowulf Users (Wed 13 Nov) | |
1422 |
AI in Biomedical Research @ NIH Seminar SeriesDescriptionThe accessibility of artificial intelligence/machine learning (AI/ML) tools has taken off in recent years. This democratization of advanced analytics has the potential to revolutionize predictive toxicology, especially for applications that generate massive, multimodal data. Realizing this promise will require tools tuned to learn from trusted sources that can evolve as new data emerge. This talk will describe such efforts at NIEHS using data that range in scale from lab-based behavioral ...Read More The accessibility of artificial intelligence/machine learning (AI/ML) tools has taken off in recent years. This democratization of advanced analytics has the potential to revolutionize predictive toxicology, especially for applications that generate massive, multimodal data. Realizing this promise will require tools tuned to learn from trusted sources that can evolve as new data emerge. This talk will describe such efforts at NIEHS using data that range in scale from lab-based behavioral experiments to epidemiological-scale geospatial data. Meeting number: 2318 207 2771 Password: 5DMpVr5Mt5@ Join by video system Dial 23182072771@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2318 207 2771RegisterOrganizerBTEPWhenThu, Nov 14, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
The accessibility of artificial intelligence/machine learning (AI/ML) tools has taken off in recent years. This democratization of advanced analytics has the potential to revolutionize predictive toxicology, especially for applications that generate massive, multimodal data. Realizing this promise will require tools tuned to learn from trusted sources that can evolve as new data emerge. This talk will describe such efforts at NIEHS using data that range in scale from lab-based behavioral experiments to epidemiological-scale geospatial data. Meeting number: 2318 207 2771 Password: 5DMpVr5Mt5@ Join by video system Dial 23182072771@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2318 207 2771 | 2024-11-14 13:00:00 | Online Webinar | Any | AI | Online | David Reif Ph.D. (NIEHS) | BTEP | 1 | Custom AI Deployments to Keep Data Conversations (“chats”) Current | |
1627 |
DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs in biomedical research. This class will cover details related to case studies/series, ecological, cross-sectional, case-control, and cohort studies, clinical trials, and other study designs and considerations. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenFri, Nov 15, 2024 - 1:00 pm - 3:30 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 2 will provide a review of study designs in biomedical research. This class will cover details related to case studies/series, ecological, cross-sectional, case-control, and cohort studies, clinical trials, and other study designs and considerations. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2024-11-15 13:00:00 | Online | Any | Statistics | Online | Ninet Sinaii (BCES) | NIH Library | 0 | Overview of Study Design: Part 2 | |
1641 |
DescriptionHands-on workshop using R and Seurat to analyze an example spatial transcriptomics dataset Hands-on workshop using R and Seurat to analyze an example spatial transcriptomics dataset DetailsOrganizerNIAID BCBBWhenFri, Nov 15, 2024 - 1:00 pm - 3:00 pmWhereOnline |
Hands-on workshop using R and Seurat to analyze an example spatial transcriptomics dataset | 2024-11-15 13:00:00 | Online | Any | Transcriptomics | Online | Margaret Ho (NIAID BCBB) | NIAID BCBB | 0 | Spatial Transcriptomics Introduction and Tutorial (Part 2) | |
1628 |
DescriptionThis one hour and a half online training in the NIH Library Evidence Synthesis Review series provides an overview of the data collection process for your review. The training will cover how to clean the data and the importance of this step to ensuring accurate data is collected from each included article. By the end of this training, attendees will be able ...Read More This one hour and a half online training in the NIH Library Evidence Synthesis Review series provides an overview of the data collection process for your review. The training will cover how to clean the data and the importance of this step to ensuring accurate data is collected from each included article. By the end of this training, attendees will be able to:
Attendees are not expected to have prior knowledge of how to conduct a review. It is recommended that those planning to undertake a review, should register for the Evidence Synthesis series that take a deeper dive into the required methods for each step in a review. NIH DetailsOrganizerNIH LibraryWhenTue, Nov 19, 2024 - 12:00 pm - 1:30 pmWhereOnline |
This one hour and a half online training in the NIH Library Evidence Synthesis Review series provides an overview of the data collection process for your review. The training will cover how to clean the data and the importance of this step to ensuring accurate data is collected from each included article. By the end of this training, attendees will be able to: Describe an overview of the data collection process Name 2 tools used for data collection Identify the number of people needed to collect the data Explain the importance of defining your variables to collect Understand the importance of piloting the data collection process Attendees are not expected to have prior knowledge of how to conduct a review. It is recommended that those planning to undertake a review, should register for the Evidence Synthesis series that take a deeper dive into the required methods for each step in a review. NIH | 2024-11-19 12:00:00 | Online | Any | Data | Online | Jordan Wickstrom (NIH Clinical Center) | NIH Library | 0 | Collecting and Cleaning Data for Your Review | |
1631 |
DescriptionPartek Flow enables scientists to construct analysis workflows for multi-omics sequencing data including DNA, bulk and single cell RNA, spatial transcriptomics, ATAC and ChIP. It is a point-and-click software hosted on Biowulf, the NIH high performance computing system and suitable for those without programming knowledge to conduct analyses while still utilizing Biowulf’s immense compute power. This class introduces bulk RNA sequencing analysis using this software. Topics discussed will range from uploading FASTQ files ...Read More Partek Flow enables scientists to construct analysis workflows for multi-omics sequencing data including DNA, bulk and single cell RNA, spatial transcriptomics, ATAC and ChIP. It is a point-and-click software hosted on Biowulf, the NIH high performance computing system and suitable for those without programming knowledge to conduct analyses while still utilizing Biowulf’s immense compute power. This class introduces bulk RNA sequencing analysis using this software. Topics discussed will range from uploading FASTQ files to the NIH Partek Flow server to differential gene expression analysis as well as construction of data visualizations. This class is a demo and not hands-on. Experience using or access to Partek Flow is not required to participate. Note regarding Partek Flow availability at NIH
Meeting link: Join by video system Join by phone RegisterOrganizerBTEPWhenTue, Nov 19, 2024 - 1:00 pm - 2:00 pmWhereOnline Webinar |
Partek Flow enables scientists to construct analysis workflows for multi-omics sequencing data including DNA, bulk and single cell RNA, spatial transcriptomics, ATAC and ChIP. It is a point-and-click software hosted on Biowulf, the NIH high performance computing system and suitable for those without programming knowledge to conduct analyses while still utilizing Biowulf’s immense compute power. This class introduces bulk RNA sequencing analysis using this software. Topics discussed will range from uploading FASTQ files to the NIH Partek Flow server to differential gene expression analysis as well as construction of data visualizations. This class is a demo and not hands-on. Experience using or access to Partek Flow is not required to participate. Note regarding Partek Flow availability at NIH NCI scientists, please use the NCI-wide Partek Flow license. See https://bioinformatics.ccr.cancer.gov/docs/getting-started-with-partek-flow/ to learn how to get access. NHGRI researchers can inquire about their institutional licesne. See https://research.nhgri.nih.gov/bi-training.shtml for details. Others at NIH can inquire with the NIH Library (https://www.nihlibrary.nih.gov/resources/tools/partek-flow) Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mb5c882975a7558efba68f7a787f81390 Meeting number:2317 349 2168Password:VpANffw@652 Join by video systemDial 23173492168@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2317 349 2168 | 2024-11-19 13:00:00 | Online Webinar | Bioinformatics,Bioinformatics Software,Bulk RNA-Seq | Bioinformatics,Bioinformatics Software,Bulk RNA-seq | Online | Joe Wu (BTEP) | BTEP | 0 | Bulk RNA Sequencing Analysis using Partek Flow | |
1619 |
Coding Club Seminar SeriesDescriptionggplot2 is a popular R package for data visualization that uses layers to build high quality plots. There are over 100 packages that extend the functionality of ggplot2. This session of the BTEP Coding Club will focus on the package ggpubr, which facilitates plot customization and statistical integration, making it much easier to create publication ready plots with ggplot2. Specifically, this lesson will demonstrate how to visualize the results of common statistical tests (e.g., ...Read More ggplot2 is a popular R package for data visualization that uses layers to build high quality plots. There are over 100 packages that extend the functionality of ggplot2. This session of the BTEP Coding Club will focus on the package ggpubr, which facilitates plot customization and statistical integration, making it much easier to create publication ready plots with ggplot2. Specifically, this lesson will demonstrate how to visualize the results of common statistical tests (e.g., t-tests, ANOVA, Pearson correlation). Meeting Information: https://cbiit.webex.com/cbiit/j.php?MTID=md5545c8b063ac2e0996ac7390c1ffc65 Join by video system Join by phone Access code: 231 092 18299 RegisterOrganizerBTEPWhenWed, Nov 20, 2024 - 11:00 am - 12:00 pmWhereOnline Webinar |
ggplot2 is a popular R package for data visualization that uses layers to build high quality plots. There are over 100 packages that extend the functionality of ggplot2. This session of the BTEP Coding Club will focus on the package ggpubr, which facilitates plot customization and statistical integration, making it much easier to create publication ready plots with ggplot2. Specifically, this lesson will demonstrate how to visualize the results of common statistical tests (e.g., t-tests, ANOVA, Pearson correlation). Meeting Information: https://cbiit.webex.com/cbiit/j.php?MTID=md5545c8b063ac2e0996ac7390c1ffc65Wednesday, November 20, 2024 11:00 AM | 1 hour | (UTC-04:00) Eastern Time (US & Canada)Meeting number: 2310 921 8299Password: T2dQbtX5M*4 Join by video systemDial 23109218299@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in toll number (US/Canada) Access code: 231 092 18299 | 2024-11-20 11:00:00 | Online Webinar | Intermediate | Data Visualization,Data analysis,R programming | R programming | Online | Alex Emmons (BTEP) | BTEP | 1 | Data Visualization and Statistical Integration with ggpubr |
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DescriptionDear FNL colleagues, Dear FNL colleagues,
The event is free. Coffee and pastries will be provided for all in-person participants! DetailsOrganizerFNLCRWhenThu, Nov 21, 2024 - 8:00 am - 9:00 amWhereATRF main auditorium, Frederick. |
Dear FNL colleagues, It’s time once again for our last in 2024 Biotech Connector event!! The Frederick National Laboratory for Cancer Research together with the Frederick County Chamber of Commerce organizes the quarterly Biotech Connector Speaker Series. This event promotes and supports the Frederick County and surrounding areas’ biotech and bioscience community and provides an inside look at local advances in breakthrough technologies in life sciences to improve human health. Please join us for our fourth quarter Biotech Connector Speaker Series on November 21 at 8am in the main auditorium at the ATRF or connect virtually via Webex. Don’t miss this exciting event from 8-9 a.m. focused on advances in next-generation sequencing! You will also have an opportunity to engage in the conversation with our speakers after the presentations and connect with your colleagues. The event is free. Coffee and pastries will be provided for all in-person participants! For any questions regarding the event, please contact Lyuba Khavrutskii at the Frederick National Laboratory Partnership Development Office at lyuba.khavrutskii@nih.gov. | 2024-11-21 08:00:00 | ATRF main auditorium, Frederick. | Any | Sequencing | Hybrid | Olena Lar (R&D CIAN Diagnostics),Samuel Rulli (QIAGEN),Bao Tran (NCI-Sequencing Facility(NCI-SF) CRTP. | FNLCR | 0 | Biotech Connector Event “Unlocking the Genome: Advances in Next-Generation Sequencing | |
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DescriptionJoin this webinar to gain insights from Dr. Qi Long, who will explore how LLMs offer a promising solution to data issues, especially those stemming from incomplete information.
Dr. Long will share his team's recent work in this space, including:
Read More Join this webinar to gain insights from Dr. Qi Long, who will explore how LLMs offer a promising solution to data issues, especially those stemming from incomplete information.
Dr. Long will share his team's recent work in this space, including:
• mCodeGPT for extracting Minimal Common Oncology Data Elements (mCODE) from EHRs.
DetailsOrganizerCBIITWhenThu, Nov 21, 2024 - 10:00 am - 11:00 amWhereOnline |
Join this webinar to gain insights from Dr. Qi Long, who will explore how LLMs offer a promising solution to data issues, especially those stemming from incomplete information. Dr. Long will share his team's recent work in this space, including: • mCodeGPT for extracting Minimal Common Oncology Data Elements (mCODE) from EHRs.• SDoH-GPT for extracting Social Determinants of Health (SDoH) from unstructured data in EHRs.• Multimodal Graph-LLM for predicting clinical events using both structured and unstructured EHR data. Additionally, he will discuss ongoing and planned research focused on developing rigorous statistical and machine learning methods to address various issues and biases with LLMs. Presenter: Qi Long, Ph.D., University of Pennsylvania For questions, please contact Daoud Meerzaman or Kayla Strauss. | 2024-11-21 10:00:00 | Online | Any | AI | Online | Dr. Qi Long (University of Pennsylvania) | CBIIT | 0 | Advancing Responsible Large Language Models (LLMs) for Biomedicine and Healthcare | |
1386 |
Distinguished Speakers Seminar SeriesDescriptionThe Research to Accelerate Cures and Equity (RACE) for Children Act of 2017 requires companies developing targeted cancer drugs for adults to evaluate those drugs for applicability to pediatric cancer. The NCI-funded Pediatric Preclinical In Vivo Testing (PIVOT) consortium collaborates with industry partners to perform rigorous preclinical testing of novel targeted agents using in vivo models of common pediatric cancers. As pediatric cancer is rare, assembling sufficient numbers of patients for clinical ...Read More The Research to Accelerate Cures and Equity (RACE) for Children Act of 2017 requires companies developing targeted cancer drugs for adults to evaluate those drugs for applicability to pediatric cancer. The NCI-funded Pediatric Preclinical In Vivo Testing (PIVOT) consortium collaborates with industry partners to perform rigorous preclinical testing of novel targeted agents using in vivo models of common pediatric cancers. As pediatric cancer is rare, assembling sufficient numbers of patients for clinical trials is challenging. It highlights the importance of effective preclinical testing for identifying promising agents and agents with low potential for improving treatment options for children with cancer. Join information Alternative Meeting Information: Meeting number: 2309 763 3797 Password: GmUAeeZ@236 Join by video system Dial 23097633797@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2309 763 3797Register |
The Research to Accelerate Cures and Equity (RACE) for Children Act of 2017 requires companies developing targeted cancer drugs for adults to evaluate those drugs for applicability to pediatric cancer. The NCI-funded Pediatric Preclinical In Vivo Testing (PIVOT) consortium collaborates with industry partners to perform rigorous preclinical testing of novel targeted agents using in vivo models of common pediatric cancers. As pediatric cancer is rare, assembling sufficient numbers of patients for clinical trials is challenging. It highlights the importance of effective preclinical testing for identifying promising agents and agents with low potential for improving treatment options for children with cancer. Join information Alternative Meeting Information: Meeting number: 2309 763 3797 Password: GmUAeeZ@236 Join by video system Dial 23097633797@cbiit.webex.com You can also dial 173.243.2.68 and enter your meeting number. Join by phone 1-650-479-3207 Call-in number (US/Canada) Access code: 2309 763 3797 | 2024-11-21 13:00:00 | Online | Any | Cancer genomics,Mouse | Online | Carol Bult Ph.D. (The Jackson Lab) | BTEP | 1 | Pre-clinical Evaluation of Targeted Therapies for Pediatric Cancer | |
1657 |
DescriptionThe proliferation of medical data and the advancements of large language models (LLMs) promise to revolutionize healthcare; however, studying and improving health equity for all patients remains a significant challenge. In this talk, I will present recent work on two critical aspects of this evolving landscape. First, I will examine the unexpected consequences of multi-source data scaling. Counter to intuition, adding training data can sometimes reduce overall accuracy, produce uncertain fairness outcomes, and diminish ...Read More The proliferation of medical data and the advancements of large language models (LLMs) promise to revolutionize healthcare; however, studying and improving health equity for all patients remains a significant challenge. In this talk, I will present recent work on two critical aspects of this evolving landscape. First, I will examine the unexpected consequences of multi-source data scaling. Counter to intuition, adding training data can sometimes reduce overall accuracy, produce uncertain fairness outcomes, and diminish worst-subgroup performance. These findings underscore the complexity of working with disparate data sources in healthcare AI. Next, I will showcase applications of LLMs to improve health equity. Through participatory design with healthcare workers and patients, we developed guiding principles for LLM use in maternal health. Additionally, we demonstrate how LLMs can help understand health disparities in treatment protocols by extracting rationales for treatment protocols using clinical notes. The talk concludes by emphasizing vigilance and ethical considerations as we advance towards more data-driven and AI-assisted healthcare. Individuals with disabilities who need accommodation to participate in this meeting should contact: rebecca.krupenevich@nih.gov DetailsOrganizerNational Institute on Aging (NIA)WhenFri, Nov 22, 2024 - 1:00 pm - 2:00 pmWhereOnline |
The proliferation of medical data and the advancements of large language models (LLMs) promise to revolutionize healthcare; however, studying and improving health equity for all patients remains a significant challenge. In this talk, I will present recent work on two critical aspects of this evolving landscape. First, I will examine the unexpected consequences of multi-source data scaling. Counter to intuition, adding training data can sometimes reduce overall accuracy, produce uncertain fairness outcomes, and diminish worst-subgroup performance. These findings underscore the complexity of working with disparate data sources in healthcare AI. Next, I will showcase applications of LLMs to improve health equity. Through participatory design with healthcare workers and patients, we developed guiding principles for LLM use in maternal health. Additionally, we demonstrate how LLMs can help understand health disparities in treatment protocols by extracting rationales for treatment protocols using clinical notes. The talk concludes by emphasizing vigilance and ethical considerations as we advance towards more data-driven and AI-assisted healthcare. Individuals with disabilities who need accommodation to participate in this meeting should contact: rebecca.krupenevich@nih.gov | 2024-11-22 13:00:00 | Online | Any | AI | Online | Irene Chen (UC Berkeley) | National Institute on Aging (NIA) | 0 | Leveraging Large Datasets and LLMs to Improve Health Equity | |
1660 |
DescriptionDr. Daniel Orringer received his M.D. from The Ohio State University, completed his residency in neurological surgery at the University of Michigan Health System, and fellowship training in neuro-oncology at the Massachusetts General-Brigham and Women's Hospital of Harvard Medical School. He is board certified in neurosurgery. Dr. Orringer runs a highly interdisciplinary research group focused on three initiatives: • improving surgical outcomes for people with brain tumors,<...Read More Dr. Daniel Orringer received his M.D. from The Ohio State University, completed his residency in neurological surgery at the University of Michigan Health System, and fellowship training in neuro-oncology at the Massachusetts General-Brigham and Women's Hospital of Harvard Medical School. He is board certified in neurosurgery. Dr. Orringer runs a highly interdisciplinary research group focused on three initiatives: • improving surgical outcomes for people with brain tumors,
Meeting Number (access code): 2314 588 1524 Details |
Dr. Daniel Orringer received his M.D. from The Ohio State University, completed his residency in neurological surgery at the University of Michigan Health System, and fellowship training in neuro-oncology at the Massachusetts General-Brigham and Women's Hospital of Harvard Medical School. He is board certified in neurosurgery. Dr. Orringer runs a highly interdisciplinary research group focused on three initiatives: • improving surgical outcomes for people with brain tumors,• using artificial intelligence to support surgical decision-making and brain tumor diagnosis, and• conducting clinical and translational trials of novel therapeutics. Dr. Orringer specializes in brain mapping operations, in which he has extensive experience. Additionally, he has developed a novel laser-based technique—stimulated Raman histology—to detect tumors that were previously undetectable. Dr. Orringer has received many awards, including the Andrew Parsa Young Investigator Basic/Translational Research Award from the Society for Neuro-Oncology, the Congress of Neurological Surgeons’ Innovator of the Year Award, and the Congress of Neurological Surgeons’ Rosenblum–Mahaley Clinical Research Award. Dr. Orringer has co-authored over 80 peer-reviewed publications in journals such as Cancer Research, Clinical Cancer Research, Nature Biomedical Engineering, Neuro-Oncology, Molecular Cancer Research, Nature Medicine and Neurosurgery. For more information, please contact Aniruddha Ganguly, Ph.D. Meeting Number (access code): 2314 588 1524 Meeting Password: dFEVsuq*229 | 2024-11-26 09:30:00 | Online | Any | Cancer,Data Science | Online | Daniel A. Orringer M.D. (Grossman School of Medicine NY) | NCI | 0 | Leveraging Optical Imaging and Data Science to Enable Precision Intervention in Brain Tumor Surgery | |
1643 |
DescriptionCancer AI Conversations is a virtual event series featuring timely topics related to the application of artificial intelligence in cancer research. Cancer AI Conversations is a virtual event series featuring timely topics related to the application of artificial intelligence in cancer research. DetailsOrganizerNCIWhenTue, Nov 26, 2024 - 11:00 am - 12:00 pmWhereOnline |
Cancer AI Conversations is a virtual event series featuring timely topics related to the application of artificial intelligence in cancer research.Moderator: Jayashree Kalpathy-Cramer, Ph.D., University of ColoradoAdditional information can be found on the Cancer AI Conversations website. | 2024-11-26 11:00:00 | Online | Any | AI | Online | Peter Mattson Ph.D. ML Commons,Lanjing Zhang M.D. Rutgers University | NCI | 0 | Cancer AI Conversations: Evaluating AI Models | Benchmarking and Fairness | |
1664 |
DescriptionThis talk will introduce quantum chemistry and how it is useful for the modeling of therapeutic and diagnostic agents. This session is geared towards beginners. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (Read More This talk will introduce quantum chemistry and how it is useful for the modeling of therapeutic and diagnostic agents. This session is geared towards beginners. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. DetailsOrganizerAdvanced Biomedical Computational Sciences (ABCS)WhenTue, Nov 26, 2024 - 11:00 am - 12:00 pmWhereBuilding 549 Conference Room A NCI-Frederick Campus |
This talk will introduce quantum chemistry and how it is useful for the modeling of therapeutic and diagnostic agents. This session is geared towards beginners. This session will be recorded, and materials will be posted on the ABCS training site and will also be shared with attendees a few days after the event. For details, please contact Natasha Pacheco (natasha.pacheco@nih.gov), Advanced Biomedical Computational Science (ABCS) group, Frederick National Laboratory for Cancer Research. | 2024-11-26 11:00:00 | Building 549 Conference Room A NCI-Frederick Campus | Any | Hybrid | Joseph Ivanic (Advanced Biomedical Computational Science) | Advanced Biomedical Computational Sciences (ABCS) | 0 | Quantum Chemistry: What is it and What is it Good for? | ||
1644 |
DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. The first part of the class will be 10:00 a.m. to 12:00 p.m. followed by a break from 12:00-1:00 p.m. The class resumes at 1:00 p.m. and concludes at 4:30 p.m. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenTue, Dec 03, 2024 - 10:00 am - 4:30 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 3 will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. During the class, time will be devoted to questions from attendees and references will be provided for in-depth self-study. The first part of the class will be 10:00 a.m. to 12:00 p.m. followed by a break from 12:00-1:00 p.m. The class resumes at 1:00 p.m. and concludes at 4:30 p.m. Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2024-12-03 10:00:00 | Online | Any | Statistics | Online | Ninet Sinaii (BCES) | NIH Library | 0 | Overview of Common Statistical Tests: Part 3 | |
1645 |
DescriptionThis one and a half hour online training will provide a demonstration of how to build a Bulk RNA-Seq data analysis pipeline using a fastq file. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis ...Read More This one and a half hour online training will provide a demonstration of how to build a Bulk RNA-Seq data analysis pipeline using a fastq file. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis pipelines, Partek Flow enables users to carry out routine NGS data analysis using dozens of popular algorithms without writing codes or running command lines tools. By the end of this training , attendees will be able to:
Registrants will receive an email with information and instructions to verify Partek Flow before the class. If you register the day before the class, you may not have time to secure access to Partek Flow. If you do not have the software installed, this training will be demo only. DetailsOrganizerNIH LibraryWhenTue, Dec 03, 2024 - 10:00 am - 11:30 amWhereOnline |
This one and a half hour online training will provide a demonstration of how to build a Bulk RNA-Seq data analysis pipeline using a fastq file. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis pipelines, Partek Flow enables users to carry out routine NGS data analysis using dozens of popular algorithms without writing codes or running command lines tools. By the end of this training , attendees will be able to: Describe how to access Partek Flow from the NIH Library Discuss the Quality Control (QC) and Quality Assurance (QA) tools Identify pre- and post-alignment tools Describe options for quantification and normalization Perform pathway analysis and visualization Requirements Attendees will need to have taken the Partek Flow Basic Components training before registering or be comfortable with Partek Flow. Access any of the NIH HPC resources require an NIH HPC account. NIH HPC accounts are restricted to NIH employees and contractors as determined by inclusion in the NIH Enterprise Directory. You can request an account from NIH HPC Account page. You also need to register for a Partek Flow account through the NIH Library. Note on Technology Registrants will receive an email with information and instructions to verify Partek Flow before the class. If you register the day before the class, you may not have time to secure access to Partek Flow. If you do not have the software installed, this training will be demo only. | 2024-12-03 10:00:00 | Online | Any | RNASEQ | Online | Partek | NIH Library | 0 | Bulk RNA-Seq Data Analysis in Partek Flow | |
1666 |
DescriptionSequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) Webinar Series The Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) webinar series began 10 years ago in November 2014. ...Read More Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) Webinar Series The Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) webinar series began 10 years ago in November 2014. The series was designed to share lessons learned about the application of next-generation sequencing to cancer epidemiology research. In this special webinar, organized to mark this milestone, Kimberly Doheny, Ph.D.; Alexander Gusev, Ph.D.; and Melissa Davis, Ph.D., will reflect on lessons learned, opportunities and challenges, and their vision for the future of sequencing in cancer epidemiology. The webinar will be moderated by Fredrick Schumacher, Ph.D., M.P.H., and Tabitha Harrison, M.P.H., who have been moderating this series since its inception. For more information, contact Leah Mechanic.
DetailsOrganizerNCIWhenTue, Dec 03, 2024 - 3:00 pm - 4:00 pmWhereOnline |
Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) Webinar Series The Sequencing Strategies for Population and Cancer Epidemiology Studies (SeqSPACE) webinar series began 10 years ago in November 2014. The series was designed to share lessons learned about the application of next-generation sequencing to cancer epidemiology research. In this special webinar, organized to mark this milestone, Kimberly Doheny, Ph.D.; Alexander Gusev, Ph.D.; and Melissa Davis, Ph.D., will reflect on lessons learned, opportunities and challenges, and their vision for the future of sequencing in cancer epidemiology. The webinar will be moderated by Fredrick Schumacher, Ph.D., M.P.H., and Tabitha Harrison, M.P.H., who have been moderating this series since its inception. For more information, contact Leah Mechanic. | 2024-12-03 15:00:00 | Online | Any | Online | Melissa B. Davis (Morehouse School of Medicine),Kimberly F. Doheny (Johns Hopkins University School of Medicine),Alexander Gusev (Harvard Medical School and Dana-Farber Cancer Institute),Tabitha Harrison (University of Washington School of Public Health),Frederick Schumacher (Case Western Reserve University) | NCI | 0 | SeqSPACE 10-Year Anniversary: Past, Present, and Future | ||
1646 |
DescriptionThis one and a half hour online training will provide a demonstration of how to identify cell types based on statistics, visualization, and canonical markers. One Peripheral blood mononuclear cells (PBMCs) sample will be used to illustrate a basic Single Cell RNA-Seq analysis pipeline. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small ...Read More This one and a half hour online training will provide a demonstration of how to identify cell types based on statistics, visualization, and canonical markers. One Peripheral blood mononuclear cells (PBMCs) sample will be used to illustrate a basic Single Cell RNA-Seq analysis pipeline. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis pipelines, Partek Flow enables users to carry out routine NGS data analysis using dozens of popular algorithms without writing codes or running command lines tools. Attendees will need to have taken the Partek Flow Basic Components class before registering or be comfortable with Partek Flow. By the end of this training, attendees will be able to:
Access to the NIH Library Partek Flow requires two accounts:
Registrants will receive an email with information and instructions to verify Partek Flow before the class. If you register the day before the class, you may not have time to secure access to Partek Flow. If you do not have the software installed, this training will be demo only. DetailsOrganizerNIH LibraryWhenThu, Dec 05, 2024 - 10:00 am - 11:30 amWhereOnline |
This one and a half hour online training will provide a demonstration of how to identify cell types based on statistics, visualization, and canonical markers. One Peripheral blood mononuclear cells (PBMCs) sample will be used to illustrate a basic Single Cell RNA-Seq analysis pipeline. Partek Flow is a web-based application for the analysis of next generation sequencing (NGS) including RNA, small RNA, and DNA sequencing. With an easy-to-use graphical interface and the ability to build custom analysis pipelines, Partek Flow enables users to carry out routine NGS data analysis using dozens of popular algorithms without writing codes or running command lines tools. Attendees will need to have taken the Partek Flow Basic Components class before registering or be comfortable with Partek Flow. By the end of this training, attendees will be able to: Describe how to access Partek Flow from the NIH Library Discuss the Quality Control (QC) and Quality Assurance (QA) tools Normalize data Descriptions options for cell type classification Perform differential analysis Requirements Access to the NIH Library Partek Flow requires two accounts: Attendees will need to have taken the Partek Flow Basic Components class before registering or be comfortable with Partek Flow. Access any of the NIH HPC resources require an NIH HPC account. NIH HPC accounts are restricted to NIH employees and contractors as determined by inclusion in the NIH Enterprise Directory. You can request an account from NIH HPC Account page. You also need to register for a Partek Flow account through the NIH Library. Note on Technology Registrants will receive an email with information and instructions to verify Partek Flow before the class. If you register the day before the class, you may not have time to secure access to Partek Flow. If you do not have the software installed, this training will be demo only. | 2024-12-05 10:00:00 | Online | Any | SINGLE CELL RNA SEQ | Online | Partek | NIH Library | 0 | Basic Single Cell RNA-Seq Analysis & Visualization in Partek Flow | |
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DescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed). Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. DetailsOrganizerNIH LibraryWhenMon, Dec 09, 2024 - 1:00 pm - 4:30 pmWhereOnline |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering classes geared to cover general concepts behind statistics and epidemiology. This four-part lecture series will help participants better understand statistical and epidemiological features in biomedical research, interpret results and findings, design and prepare studies, and understand/critically review the results in published literature. Part 4 will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). The instructor will present a set of exercises to work through during the lesson (a calculator will be needed). Although you may attend any part of this series by itself, attending all four parts will provide a more comprehensive review of important statistical and epidemiological considerations that build on each other. You must register separately for each part of this class series. | 2024-12-09 13:00:00 | Online | Any | Statistics | Online | Ninet Sinaii (BCES) | NIH Library | 0 | A Review of Epidemiology Concepts and Statistics: Part 4 | |
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DescriptionThis one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. ...Read More This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to:
Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. DetailsOrganizerNIH LibraryWhenTue, Dec 10, 2024 - 1:00 pm - 2:00 pmWhereOnline |
This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to: Recognize four freely available IDEs for python coding Identify fundamental components of python code Understand how and why notebooks support rigor and transparency in analysis Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. | 2024-12-10 13:00:00 | Online | Any | Python | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
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DescriptionThis one-hour online training will cover how to sign up and access complimentary SAS training resources available to NIH and HHS employees. The instructor will demonstrate how to enroll in recommended SAS 9.4 trainings. By the end of this training, attendees will be able to:
This one-hour online training will cover how to sign up and access complimentary SAS training resources available to NIH and HHS employees. The instructor will demonstrate how to enroll in recommended SAS 9.4 trainings. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of SAS to be successful in this training. DetailsOrganizerNIH LibraryWhenWed, Dec 11, 2024 - 12:00 pm - 1:00 pmWhereOnline |
This one-hour online training will cover how to sign up and access complimentary SAS training resources available to NIH and HHS employees. The instructor will demonstrate how to enroll in recommended SAS 9.4 trainings. By the end of this training, attendees will be able to: Enroll in recommended SAS 9.4 trainings Navigate complimentary tutorials, programming courses, and eLearning for SAS Attendees are not expected to have any prior knowledge of SAS to be successful in this training. | 2024-12-11 12:00:00 | Online | Beginner | SAS | Online | SAS | NIH Library | 0 | Tips for Getting Started with SAS Training | |
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DescriptionThis class will introduce bulk RNA sequencing analysis using Qiagen software. Participants will learn how to process FASTQ files and obtain differential expression using CLC Genomics Workbench as well as extract biological insight using Ingenuity Pathway Analysis. Meeting link: Join by video system This class will introduce bulk RNA sequencing analysis using Qiagen software. Participants will learn how to process FASTQ files and obtain differential expression using CLC Genomics Workbench as well as extract biological insight using Ingenuity Pathway Analysis. Meeting link: Join by video system Join by phone
Register |
This class will introduce bulk RNA sequencing analysis using Qiagen software. Participants will learn how to process FASTQ files and obtain differential expression using CLC Genomics Workbench as well as extract biological insight using Ingenuity Pathway Analysis. Meeting link:https://cbiit.webex.com/cbiit/j.php?MTID=mc5435dc253dc80f408270b9432a56bf6Meeting number:2307 183 2951Password:9u6pBmhCX?9 Join by video systemDial 23071832951@cbiit.webex.comYou can also dial 173.243.2.68 and enter your meeting number. Join by phone1-650-479-3207 Call-in number (US/Canada)Access code: 2307 183 2951 | 2024-12-12 13:00:00 | Online Webinar | Bioinformatics,Bioinformatics Software,Bulk RNA-Seq,Pathway Analysis | Bioinformatics,Bioinformatics Software,Bulk RNA-seq,Pathway Analysis | Online | Joe Wu (BTEP),Shawn Prince (Qiagen) | BTEP | 0 | Bulk RNA Sequencing Analysis with Qiagen: From FASTQ to Biological Interpretation |