class_id | details | description | start_date | Venues | learning_levels | Topic | Tags | delivery_method | presenters | Organizer | seminar_series | class_title |
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1543 |
Organized By:NIH LibraryDescriptionThis 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. |
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 | |
1528 |
Organized By:NIH LibraryDescriptionWhat 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. |
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 | |
1391 |
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: 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 |
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: 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 |
Organized By:NIH Data SeminarsDescriptionWe 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! |
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 | |
1557 |
Organized By:NCIDescriptionThis 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!
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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 | |
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 2024 |
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 | |
1403 |
Distinguished Speakers Seminar SeriesDescriptionDr. O'Neill's research programs employ molecular genetics, genomics and computational approaches to study the mechanisms that maintain, and disrupt, genome stability with a particular focus on repetitive elements. Projects include studying: retroelement transcription and centromere function; novel small RNA biogenesis pathways; and global chromosome and genome changes during instability (such as in cancer and hybrid dysgenesis). In addition, we use a diverse set of rapidly evolving next generation sequencing (NGS) technologies and novel library ...Read More Dr. O'Neill's research programs employ molecular genetics, genomics and computational approaches to study the mechanisms that maintain, and disrupt, genome stability with a particular focus on repetitive elements. Projects include studying: retroelement transcription and centromere function; novel small RNA biogenesis pathways; and global chromosome and genome changes during instability (such as in cancer and hybrid dysgenesis). In addition, we use a diverse set of rapidly evolving next generation sequencing (NGS) technologies and novel library preparation and computational methodologies for drafting and characterizing genome sequences in efforts to establish broad eukaryotic species as models for studying genome biology. Recently, Dr. O'Neill's lab has expanded their efforts towards applying broad NGS techniques to both model and non-model systems to understand the dynamic response of the genome to environmental queues, such as global warming. 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 |
Dr. O'Neill's research programs employ molecular genetics, genomics and computational approaches to study the mechanisms that maintain, and disrupt, genome stability with a particular focus on repetitive elements. Projects include studying: retroelement transcription and centromere function; novel small RNA biogenesis pathways; and global chromosome and genome changes during instability (such as in cancer and hybrid dysgenesis). In addition, we use a diverse set of rapidly evolving next generation sequencing (NGS) technologies and novel library preparation and computational methodologies for drafting and characterizing genome sequences in efforts to establish broad eukaryotic species as models for studying genome biology. Recently, Dr. O'Neill's lab has expanded their efforts towards applying broad NGS techniques to both model and non-model systems to understand the dynamic response of the genome to environmental queues, such as global warming. 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 | Rachel O'Neill | |
1488 |
AI in Biomedical Research @ NIH Seminar SeriesDescriptionThe goal of Artificial Intelligence Resource (AIR) is to make AI tools available to Center for Cancer Research (CCR) investigators. The strength of AI is that algorithms can be trained to seek specific information that may be scientifically or clinically important. AIR will mainly focus on “Computer Vision” which analyzes medical images, such as radiologic, digital pathology, video/endoscopy, and optical imaging among others. Examples of potential projects include developing better screening, detection methods ...Read More The goal of Artificial Intelligence Resource (AIR) is to make AI tools available to Center for Cancer Research (CCR) investigators. The strength of AI is that algorithms can be trained to seek specific information that may be scientifically or clinically important. AIR will mainly focus on “Computer Vision” which analyzes medical images, such as radiologic, digital pathology, video/endoscopy, and optical imaging among others. Examples of potential projects include developing better screening, detection methods or predictive markers, or improving procedures among many others. Both clinical and laboratory-based imaging projects will be considered. Please refer to our ongoing projects and prior publications for more information. |
The goal of Artificial Intelligence Resource (AIR) is to make AI tools available to Center for Cancer Research (CCR) investigators. The strength of AI is that algorithms can be trained to seek specific information that may be scientifically or clinically important. AIR will mainly focus on “Computer Vision” which analyzes medical images, such as radiologic, digital pathology, video/endoscopy, and optical imaging among others. Examples of potential projects include developing better screening, detection methods or predictive markers, or improving procedures among many others. Both clinical and laboratory-based imaging projects will be considered. Please refer to our ongoing projects and prior publications for more information. | 2024-09-26 13:00:00 | Online Webinar | Any | AI,Image Analysis | Online | Ismail Baris Turkbey M.D. (NCI CCR AIR) | BTEP | 1 | Artificial Intelligence Resource | |
1545 |
Organized By:NCI Cancer Research Data CommonsDescriptionThe 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 |
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 Dr. Bethesda.,NCI Shady Grove at 9609 Medical Center Drive, Rockville, MD 20850 | Any | Cancer Cloud | In-Person | NCI Cancer Research Data Commons | 0 | CRDC Symposium: October 16-17, 2024 | ||
1387 |
Distinguished Speakers Seminar SeriesDescriptionDr. Blackshaw's work examines the molecular basis of neuronal and glial cell fate specification and survival, focusing on characterizing the network of genes that control specification of different cell types within the retina and hypothalamus, two structures that arise from the embryonic forebrain. The ultimate goal is to use insights gained from learning how individual cell types are specified to understand how these cells contribute to the regulation of behavior, and how ...Read More Dr. Blackshaw's work examines the molecular basis of neuronal and glial cell fate specification and survival, focusing on characterizing the network of genes that control specification of different cell types within the retina and hypothalamus, two structures that arise from the embryonic forebrain. The ultimate goal is to use insights gained from learning how individual cell types are specified to understand how these cells contribute to the regulation of behavior, and how they can be replaced in neurodegenerative disease. 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 |
Dr. Blackshaw's work examines the molecular basis of neuronal and glial cell fate specification and survival, focusing on characterizing the network of genes that control specification of different cell types within the retina and hypothalamus, two structures that arise from the embryonic forebrain. The ultimate goal is to use insights gained from learning how individual cell types are specified to understand how these cells contribute to the regulation of behavior, and how they can be replaced in neurodegenerative disease. 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 | ||
1422 |
AI in Biomedical Research @ NIH Seminar SeriesDescriptionDavid M. Reif, Ph.D., joined the NIEHS in 2022 as Chief of the Predictive Toxicology Branch (PTB) in the Division of Translational Toxicology (DTT). In this role, he will leverage expertise of the branch in data science, toxicogenomics, spatiotemporal exposures and toxicology, computational methods development, and new approach methods (NAMs) to advance predictive toxicology applications with partners across NIEHS, the interagency Tox21 Program and the Interagency Coordinating Committee on the Validation of Alternative Methods (...Read More David M. Reif, Ph.D., joined the NIEHS in 2022 as Chief of the Predictive Toxicology Branch (PTB) in the Division of Translational Toxicology (DTT). In this role, he will leverage expertise of the branch in data science, toxicogenomics, spatiotemporal exposures and toxicology, computational methods development, and new approach methods (NAMs) to advance predictive toxicology applications with partners across NIEHS, the interagency Tox21 Program and the Interagency Coordinating Committee on the Validation of Alternative Methods (ICCVAM). 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 |
David M. Reif, Ph.D., joined the NIEHS in 2022 as Chief of the Predictive Toxicology Branch (PTB) in the Division of Translational Toxicology (DTT). In this role, he will leverage expertise of the branch in data science, toxicogenomics, spatiotemporal exposures and toxicology, computational methods development, and new approach methods (NAMs) to advance predictive toxicology applications with partners across NIEHS, the interagency Tox21 Program and the Interagency Coordinating Committee on the Validation of Alternative Methods (ICCVAM). 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 | David Reif, Ph.D. | |
1386 |
Distinguished Speakers Seminar SeriesDescriptionThe primary theme of Dr. Bult's personal research program is “bridging the digital biology divide,” reflecting the critical role that informatics and computational biology play in modern biomedical research. Dr. Bult is a Principal Investigator in the Mouse Genome Informatics (MGI) consortium that develops knowledge-bases to advance the laboratory mouse as a model system for research into the genetic and genomic basis of human biology and disease. Recent research initiatives ...Read More The primary theme of Dr. Bult's personal research program is “bridging the digital biology divide,” reflecting the critical role that informatics and computational biology play in modern biomedical research. Dr. Bult is a Principal Investigator in the Mouse Genome Informatics (MGI) consortium that develops knowledge-bases to advance the laboratory mouse as a model system for research into the genetic and genomic basis of human biology and disease. Recent research initiatives in Dr. Bult's research group include computational prediction of gene function in the mouse and the use of the mouse to understand genetic pathways in normal lung development and disease. 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 |
The primary theme of Dr. Bult's personal research program is “bridging the digital biology divide,” reflecting the critical role that informatics and computational biology play in modern biomedical research. Dr. Bult is a Principal Investigator in the Mouse Genome Informatics (MGI) consortium that develops knowledge-bases to advance the laboratory mouse as a model system for research into the genetic and genomic basis of human biology and disease. Recent research initiatives in Dr. Bult's research group include computational prediction of gene function in the mouse and the use of the mouse to understand genetic pathways in normal lung development and disease. 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 |