ncibtep@nih.gov

Bioinformatics Training and Education Program

Classes & Events

class_id details description start_date Venues learning_levels Topic Tags delivery_method presenters Organizer seminar_series class_title
1778
Organized By:
NIH Library
Description

In this one hour and half hour online training, attendees will apply deep learning to brain MRI images.  

By the end of this training, 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 ...Read More

In this one hour and half hour online training, attendees will apply deep learning to brain MRI images.  

By the end of this training, 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.  

In this one hour and half hour online training, attendees will apply deep learning to brain MRI images.   By the end of this training, 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.   2025-05-13 13:00:00 Online Webinar Beginner Matlab Online Mathworks NIH Library 0 Data Science and AI: Brain MRI Datasets with MATLAB
1762
Organized By:
BTEP
Description

Please note: Registration is required to get the Meeting Link for this event. Please pre-register.

The Human Tumor Atlas Network (HTAN) is a National Cancer Institute (NCI)-funded initiative to construct 3-dimensional atlases of the dynamic cellular, morphological, and molecular features of human cancers as they evolve from precancerous lesions to advanced disease. (Read More

Please note: Registration is required to get the Meeting Link for this event. Please pre-register.

The Human Tumor Atlas Network (HTAN) is a National Cancer Institute (NCI)-funded initiative to construct 3-dimensional atlases of the dynamic cellular, morphological, and molecular features of human cancers as they evolve from precancerous lesions to advanced disease. (Cell April 2020).

This tutorial will demonstrate how to perform spatial analysis on HTAN single cell data identifying local cell neighborhoods directly with built in BigQuery functionality.

This webinar has been moved from May 7 to May 14 due to a schedule conflict. 

Please note: Registration is required to get the Meeting Link for this event. Please pre-register. The Human Tumor Atlas Network (HTAN) is a National Cancer Institute (NCI)-funded initiative to construct 3-dimensional atlases of the dynamic cellular, morphological, and molecular features of human cancers as they evolve from precancerous lesions to advanced disease. (Cell April 2020). This tutorial will demonstrate how to perform spatial analysis on HTAN single cell data identifying local cell neighborhoods directly with built in BigQuery functionality. This webinar has been moved from May 7 to May 14 due to a schedule conflict.  2025-05-14 11:00:00 Online Any Human Tumor Atlas Network Online Fabian Seidl Ph.D. (General Dynamics Information Technology) BTEP 0 Analyzing Human Tumor Atlas Network (HTAN) Spatial Data with BigQuery Spatial Analytics
1769
Organized By:
AI Symposium Committee
Description

This one-day in-person 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. We welcome all NIH researchers who are interested in AI, from novices to experts.

Sponsored by NHLBI and the Office of Intramural Research.&...Read More

This one-day in-person 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. We welcome all NIH researchers who are interested in AI, from novices to experts.

Sponsored by NHLBI and the Office of Intramural Research. 

Keynote Speakers: 

  • Dr. Alexander Rives, Co-founder and chief scientist at Evolutionary Scale, a company focused on applying machine learning and language models to biological systems, including the development of ESM3, a protein language model that enables the generation of novel proteins with potential applications for drug discovery and basic biological research. 
  • Dr. Leo Anthony Celi, Senior Research Scientist at Massachusetts Institue of Technology (MIT) and Associate Professor of Medicine at Harvard Medical school, who has a broad range of interests including integrating clinical expertise with data science, using information technology to enhance healthcare in low- and middle-income countries, and considering the social impacts of AI research. 


About Event: Biomedical science is in the early phase of a technological revolution, driven in large part by innovations in deep learning neural network architecture and availability of computational power. These cutting-edge techniques are being applied to every sub-field of the biological sciences, and with novel ground-breaking advancements arriving every week it is challenging for researchers to stay up to speed on what is available and possible.

Please register and submit a poster abstract. Attendance is limited, so please register now to reserve your spot. 

Registration deadlineApril 25, 2025
Abstract deadline: April 11, 2025

This one-day in-person 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. We welcome all NIH researchers who are interested in AI, from novices to experts.Sponsored by NHLBI and the Office of Intramural Research. Keynote Speakers:  Dr. Alexander Rives, Co-founder and chief scientist at Evolutionary Scale, a company focused on applying machine learning and language models to biological systems, including the development of ESM3, a protein language model that enables the generation of novel proteins with potential applications for drug discovery and basic biological research.  Dr. Leo Anthony Celi, Senior Research Scientist at Massachusetts Institue of Technology (MIT) and Associate Professor of Medicine at Harvard Medical school, who has a broad range of interests including integrating clinical expertise with data science, using information technology to enhance healthcare in low- and middle-income countries, and considering the social impacts of AI research.  About Event: Biomedical science is in the early phase of a technological revolution, driven in large part by innovations in deep learning neural network architecture and availability of computational power. These cutting-edge techniques are being applied to every sub-field of the biological sciences, and with novel ground-breaking advancements arriving every week it is challenging for researchers to stay up to speed on what is available and possible.Please register and submit a poster abstract. Attendance is limited, so please register now to reserve your spot. Registration deadline: April 25, 2025Abstract deadline: April 11, 2025 2025-05-16 09:00:00 Main NIH Campus, Building 10 (Clinical Center); Masur Auditorium Any AI In-Person Alexander Rivas (Evolutionary Scale),Leo Anthony Celi (MIT/Harvard) AI Symposium Committee 0 NIH Artificial Intelligence Symposium
1804
Organized By:
FAES
Description

It took over $3 billion and 13 years to sequence the first human genome. Today, we can sequence a genome in a single day for less than $1,000.  That incredible technological advancement has led to the generation of petabases of genomic data every year, equivalent to sequencing millions of human genomes annually.  Computational genomics, the process of analyzing these massive datasets, is the essential link that transforms the flood of raw information into usable insights to address ...Read More

It took over $3 billion and 13 years to sequence the first human genome. Today, we can sequence a genome in a single day for less than $1,000.  That incredible technological advancement has led to the generation of petabases of genomic data every year, equivalent to sequencing millions of human genomes annually.  Computational genomics, the process of analyzing these massive datasets, is the essential link that transforms the flood of raw information into usable insights to address human health challenges, agricultural inefficiencies, wildlife conservation, and more.  In this webinar, we will discuss the breadth of topics under the computational genomics umbrella and how they connect to real-world innovations.

It took over $3 billion and 13 years to sequence the first human genome. Today, we can sequence a genome in a single day for less than $1,000.  That incredible technological advancement has led to the generation of petabases of genomic data every year, equivalent to sequencing millions of human genomes annually.  Computational genomics, the process of analyzing these massive datasets, is the essential link that transforms the flood of raw information into usable insights to address human health challenges, agricultural inefficiencies, wildlife conservation, and more.  In this webinar, we will discuss the breadth of topics under the computational genomics umbrella and how they connect to real-world innovations. 2025-05-22 11:00:00 Online Any Cancer Genomics Cloud Online Amanda Kowalczyk (FAES) FAES 0 Where Genomes Meet Computers: Explore the World of Computational Genomics
1805
Organized By:
Cancer AI Conversations Series
Description

Agentic AI is a class of artificial intelligence that acts autonomously to make decisions and take actions to achieve specific goals. During this event, the participants will discuss the emerging role of AI agents as intelligent partners in cancer research.

The virtual Cancer AI Conversations Series features perspectives on timely topics and themes in artificial intelligence for cancer research.

Each event features short talks from a panel of subject matter ...Read More

Agentic AI is a class of artificial intelligence that acts autonomously to make decisions and take actions to achieve specific goals. During this event, the participants will discuss the emerging role of AI agents as intelligent partners in cancer research.

The virtual Cancer AI Conversations Series features perspectives on timely topics and themes in artificial intelligence for cancer research.

Each event features short talks from a panel of subject matter experts, offering diverse views on the session topic. These talks are followed by a moderated panel discussion.

Moderator: Anwesha Dey, Ph.D., Genentech
Panelists:
James Zou, Ph.D., Stanford University and Vivek Natarajan, Ph.D., Google

Additional information can be found on the Cancer AI Conversations website.

If you are an individual with a disability who needs reasonable accommodations to participate in this event, please contact Dr. Juli Klemm at your earliest convenience.

Agentic AI is a class of artificial intelligence that acts autonomously to make decisions and take actions to achieve specific goals. During this event, the participants will discuss the emerging role of AI agents as intelligent partners in cancer research.The virtual Cancer AI Conversations Series features perspectives on timely topics and themes in artificial intelligence for cancer research.Each event features short talks from a panel of subject matter experts, offering diverse views on the session topic. These talks are followed by a moderated panel discussion.Moderator: Anwesha Dey, Ph.D., GenentechPanelists: James Zou, Ph.D., Stanford University and Vivek Natarajan, Ph.D., GoogleAdditional information can be found on the Cancer AI Conversations website. If you are an individual with a disability who needs reasonable accommodations to participate in this event, please contact Dr. Juli Klemm at your earliest convenience. 2025-05-27 11:00:00 Online Any AI Online Anwesha Day (Genentech),James Zou (Stanford),Vivek Natarajan (Google) Cancer AI Conversations Series 0 Agentic AI in Cancer Research
1779
Organized By:
NIH Library
Description

This one-hour online training will cover the fundamentals, applications, and ethical considerations of Artificial Intelligence (AI). Attendees will explore key topics such as machine learning, deep learning, data handling, and real-world AI applications across various industries. The session will also delve into the ethical implications of AI and provide insights on becoming AI literate. Whether you're a seasoned professional or just starting your AI journey, this session will equip you with essential ...Read More

This one-hour online training will cover the fundamentals, applications, and ethical considerations of Artificial Intelligence (AI). Attendees will explore key topics such as machine learning, deep learning, data handling, and real-world AI applications across various industries. The session will also delve into the ethical implications of AI and provide insights on becoming 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.

By the end of this training, attendees will be able to: 

  • Understand the core concepts of AI 
  • Recognize the significance of ethical considerations in AI 
  • Begin the journey toward AI literacy

Attendees are not expected to have any prior knowledge of AI to be successful in this training. 

This one-hour online training will cover the fundamentals, applications, and ethical considerations of Artificial Intelligence (AI). Attendees will explore key topics such as machine learning, deep learning, data handling, and real-world AI applications across various industries. The session will also delve into the ethical implications of AI and provide insights on becoming 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. By the end of this training, attendees will be able to:  Understand the core concepts of AI  Recognize the significance of ethical considerations in AI  Begin the journey toward AI literacy Attendees are not expected to have any prior knowledge of AI to be successful in this training.  2025-05-28 13:00:00 Online Webinar Beginner AI Online Alicia Lillich (NIH Library) NIH Library 0 AI Literacy: Navigating the World of Artificial Intelligence
1806
Organized By:
BTEP
Description

This is the first class of the Python Introductory Education Series. Here, participants will learn how to access and interact with Python, obtain an understanding of command syntax for this programming language, know how to get help with Python commands, and be familiar with where to find Python external packages. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff.Read More

This is the first class of the Python Introductory Education Series. Here, participants will learn how to access and interact with Python, obtain an understanding of command syntax for this programming language, know how to get help with Python commands, and be familiar with where to find Python external packages. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff.

Registration: https://cbiit.webex.com/weblink/register/r3588d958cd4c9965d59e7494b1799b3a

 

This is the first class of the Python Introductory Education Series. Here, participants will learn how to access and interact with Python, obtain an understanding of command syntax for this programming language, know how to get help with Python commands, and be familiar with where to find Python external packages. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff. Registration: https://cbiit.webex.com/weblink/register/r3588d958cd4c9965d59e7494b1799b3a   2025-06-03 14:00:00 onlline Beginner Python Python Online Joe Wu (BTEP) BTEP 0 Getting Started with Python
1798
Organized By:
NIH Library
Description

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. 

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. 

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.  2025-06-04 13:00:00 Online Webinar Beginner AI Online Alicia Lillich (NIH Library),Joelle Mornini (NIH Library) NIH Library 0 Best Practices and Patterns for Prompt Generation in ChatGPT
1807
Organized By:
BTEP
Description

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 as well as how to assign variables, understand conditionals, and perform repetitive tasks using loops or iterators. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff.

Registration: ...Read More

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 as well as how to assign variables, understand conditionals, and perform repetitive tasks using loops or iterators. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff.

Registration: https://cbiit.webex.com/weblink/register/r81543a0b3775bc93dbf98aecaf10fd5d

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 as well as how to assign variables, understand conditionals, and perform repetitive tasks using loops or iterators. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff. Registration: https://cbiit.webex.com/weblink/register/r81543a0b3775bc93dbf98aecaf10fd5d 2025-06-05 14:00:00 Online Beginner Python Python Online Joe Wu (BTEP) BTEP 0 Python Data Types, Variable Assignment, Conditionals, Loops, and Iterators
1808
Organized By:
BTEP
Description

This class of the Python Introductory Education Series will introduce participants to working with and wrangling tabular data using the package, Pandas. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff.

Registration: https://cbiit.webex.com/weblink/register/r34b119afdb21840a74ea5ad858ae283f

This class of the Python Introductory Education Series will introduce participants to working with and wrangling tabular data using the package, Pandas. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff.

Registration: https://cbiit.webex.com/weblink/register/r34b119afdb21840a74ea5ad858ae283f

This class of the Python Introductory Education Series will introduce participants to working with and wrangling tabular data using the package, Pandas. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff. Registration: https://cbiit.webex.com/weblink/register/r34b119afdb21840a74ea5ad858ae283f 2025-06-10 14:00:00 Online Beginner Python Python Online Joe Wu (BTEP) BTEP 0 Data Wrangling using Python
1799
Organized By:
NIH Library
Description

This two-hour virtual roundtable discussion will cover development and implementation of artificial intelligence (AI) chatbots at NIH. A chatbot is a software application or web interface designed to have textual or spoken conversations and may use generative AI systems, and chatbots are being developed at NIH to support both intramural and extramural biomedical research. The program will begin with brief presentations by our panelists, followed by an open discussion.  

By the end ...Read More

This two-hour virtual roundtable discussion will cover development and implementation of artificial intelligence (AI) chatbots at NIH. A chatbot is a software application or web interface designed to have textual or spoken conversations and may use generative AI systems, and chatbots are being developed at NIH to support both intramural and extramural biomedical research. The program will begin with brief presentations by our panelists, followed by an open discussion.  

By the end of this training, attendees will be able to: 

  • Identify use cases for AI chatbots at NIH
  • Discuss emerging trends and techniques for development of AI chatbots at NIH
  • List resources and tools for learning about, using, and developing AI chatbots at NIH

Attendees are not expected to have any prior knowledge of AI chatbot development.

Presenters:

Alicia Lillich, NIH Library 
Generative AI Chatbots in the NIH Landscape: Foundations, Opportunities, and Considerations

Steevenson Nelson, Ph.D., OD
Chatbox for the Intramural Research Program (ChIRP)

Trey Saddler, NIEHS
ToxPipe: Chatbots and Retrieval-Augmented Generation on Toxicological Data Streams

Faraz Faghri, NIA
CARDbiomedbench: Biomedical benchmark of chatbots, CARD.AI Arena, CARD.AI, FAIRkit

Dianne Babski, NLM
AI Chatbots: Opportunities and Considerations at NLM

This two-hour virtual roundtable discussion will cover development and implementation of artificial intelligence (AI) chatbots at NIH. A chatbot is a software application or web interface designed to have textual or spoken conversations and may use generative AI systems, and chatbots are being developed at NIH to support both intramural and extramural biomedical research. The program will begin with brief presentations by our panelists, followed by an open discussion.   By the end of this training, attendees will be able to:  Identify use cases for AI chatbots at NIH Discuss emerging trends and techniques for development of AI chatbots at NIH List resources and tools for learning about, using, and developing AI chatbots at NIH Attendees are not expected to have any prior knowledge of AI chatbot development. Presenters: Alicia Lillich, NIH Library Generative AI Chatbots in the NIH Landscape: Foundations, Opportunities, and Considerations Steevenson Nelson, Ph.D., ODChatbox for the Intramural Research Program (ChIRP) Trey Saddler, NIEHSToxPipe: Chatbots and Retrieval-Augmented Generation on Toxicological Data Streams Faraz Faghri, NIACARDbiomedbench: Biomedical benchmark of chatbots, CARD.AI Arena, CARD.AI, FAIRkit Dianne Babski, NLMAI Chatbots: Opportunities and Considerations at NLM 2025-06-11 12:00:00 onlline Any AI Online Alicia Lillich (NIH Library),Dianne Babski (NLM),Faraz Faghri (NIA),Joelle Mornini (NIH Library),Steevenson Nelson (OD),Trey Saddler (NIEHS) NIH Library 0 AI Chatbots: Roundtable Discussion
1809
Organized By:
BTEP
Description

This class will wrap up the Python Introductory Education Series by showing participants how to create data visualizations. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff.

Registration: https://cbiit.webex.com/weblink/register/rc4ff8b251451d806103bc025ab752e60

This class will wrap up the Python Introductory Education Series by showing participants how to create data visualizations. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff.

Registration: https://cbiit.webex.com/weblink/register/rc4ff8b251451d806103bc025ab752e60

This class will wrap up the Python Introductory Education Series by showing participants how to create data visualizations. Experience with Python is not needed for attendance. Participants are required to have access to Biowulf and this class is restricted to NIH staff. Registration: https://cbiit.webex.com/weblink/register/rc4ff8b251451d806103bc025ab752e60 2025-06-12 14:00:00 Online Beginner Python Python Online Joe Wu (BTEP) BTEP 0 Data Visualization using Python
1800
Description

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 ...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: 

  • 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. 

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.  2025-06-18 10:00:00 onlline Beginner Programming Online Cindy Sheffield (NIH Library) 0 Python for Data Science: How to Get Started, What to Learn, and Why
1810
Organized By:
BTEP
Description

NIDDK Biostats Seminar Series: From Research Study Design to Collecting, Managing, and Analyzing Data.

Learning Objectives

1. The learner should know the difference between observational studies, clinical trials (drug and non-drug studies), and secondary data (new data from stored samples, existing data) as defined for the NIH Clinical Center and how study development differs for each.

2. The learner should understand the ...Read More

NIDDK Biostats Seminar Series: From Research Study Design to Collecting, Managing, and Analyzing Data.

Learning Objectives

1. The learner should know the difference between observational studies, clinical trials (drug and non-drug studies), and secondary data (new data from stored samples, existing data) as defined for the NIH Clinical Center and how study development differs for each.

2. The learner should understand the development process, know the timeline, and know the resources available for successful protocol development.

3. The learner should understand the purpose and scope of ClinicalTrials.gov.

4. The learner should be able to identify and understand key data elements and each step of trial registration and reporting.

5. The learner should be able to understand the differences between a scientific hypothesis and a statistical hypothesis.

6. The learner should be able to translate scientific hypotheses into statistical design elements: study design, primary outcomes, statistical hypotheses, sample size calculation, and statistical analysis plan.

 

Tentative Webinar Outline:

2:30-3:00pm – Nancy Alexander (Nurse Specialist (Research), Protocol Navigation Program Lead, NIDDK)

Research study types, timelines, and process for successful protocol development, IRB approval, and study initiation at the NIH, with particular emphasis on NIDDK resources and processes.

3:00– 3:30pm – Dr. Elizabeth Wright (Mathematical Statistician, Biostatistics Program Office, NIDDK)

Understanding ClinicalTrial.gov elements and how they are used in trial registration and reporting for studies at the NIH.

3:30-4:00pm – Dr. Sungyoung Auh (Mathematical Statistician, Biostatistics Program Office, NIDDK)

Translating scientific questions to needed statistical design elements for research study planning, documentation, completion, and reporting.

NIDDK Biostats Seminar Series: From Research Study Design to Collecting, Managing, and Analyzing Data. Learning Objectives 1. The learner should know the difference between observational studies, clinical trials (drug and non-drug studies), and secondary data (new data from stored samples, existing data) as defined for the NIH Clinical Center and how study development differs for each. 2. The learner should understand the development process, know the timeline, and know the resources available for successful protocol development. 3. The learner should understand the purpose and scope of ClinicalTrials.gov. 4. The learner should be able to identify and understand key data elements and each step of trial registration and reporting. 5. The learner should be able to understand the differences between a scientific hypothesis and a statistical hypothesis. 6. The learner should be able to translate scientific hypotheses into statistical design elements: study design, primary outcomes, statistical hypotheses, sample size calculation, and statistical analysis plan.   Tentative Webinar Outline: 2:30-3:00pm – Nancy Alexander (Nurse Specialist (Research), Protocol Navigation Program Lead, NIDDK) Research study types, timelines, and process for successful protocol development, IRB approval, and study initiation at the NIH, with particular emphasis on NIDDK resources and processes. 3:00– 3:30pm – Dr. Elizabeth Wright (Mathematical Statistician, Biostatistics Program Office, NIDDK) Understanding ClinicalTrial.gov elements and how they are used in trial registration and reporting for studies at the NIH. 3:30-4:00pm – Dr. Sungyoung Auh (Mathematical Statistician, Biostatistics Program Office, NIDDK) Translating scientific questions to needed statistical design elements for research study planning, documentation, completion, and reporting. 2025-07-17 14:30:00 Online Webinar Beginner Statistics Online Elizabeth C Wright PhD (NIDDK),Nancy Alexander (NIDDK),Sungyoung Auh PhD (NIDDK) BTEP 0 Initiation, Regulatory Requirements, and Statistical Design for Research Studies Conducted at the NIH