AUTHOR(S)
Indiana University-Bloomington, University of Alabama at Birmingham
Obesity Research Short Courses
Course recordings provide rigorous exposure to fundamental principles of obesity research. A broad array of techniques for applying these principles in research are addressed by experts in their fields. These annual short courses better position scientists — and clinician researchers — to help identify ways of reducing the burden of obesity.
The Obesity Short Courses are jointly hosted by the Indiana University-Bloomington and the University of Alabama at Birmingham.
Short Course on Mathematical Sciences in Obesity Research
- Mathematical Sciences in Obesity Research (2017)
- Mathematical Sciences in Obesity Research (2016)
- Mathematical Sciences in Obesity Research (2015)
- Mathematical Sciences in Obesity Research (2014)
Short Course on Strengthening Causal Inference in Behavioral Obesity Research
The identification of causal relations is fundamental to a science of intervention and prevention. Obesity is a major problem for which much progress in understanding, treatment, and prevention remains to be made. A burgeoning array of research techniques exists to help scientists make more informed conclusions about causal effects, but many obesity researchers are unfamiliar with these techniques. Understanding which social and behavioral factors cause variations in adiposity and which other factors cause variations is vital to producing, evaluating, and selecting among intervention and prevention strategies as well as to understanding obesity’s root causes, requiring input from disciplines including statistics, economics, psychology, epidemiology, mathematics, philosophy, and in some cases behavioral or statistical genetics.
The Strengthening Causal Inference in Behavioral Obesity Research course provides rigorous exposure to the key fundamental principles of causal inference in behavioral obesity research. The nine modules in the 2019 webinar series cover:
- key underlying and fundamental principles of causal inference in obesity research
- application of a broad range of techniques in obesity research
- tailored approaches to specific and varying situations in obesity research
Module 1: Introduction to Basic Language, Terms, and Concepts in Statistics and Design
- Intro to Statistical Inference
with Dr. Evan Mayo-Wilson of Indiana University-Bloomington - Intro to Energy Balance and Laws of Thermodynamics
with Dr. Greg Demas of Indiana University-Bloomington - Study Designs & Quantifying Effect and Association Size
with Dr. Keith Haddock of Hope Health Research Institute
Module 2: Conventional Observational Studies: Advantages, Limits, and Best Practices
- Best practices
with Dr. Douglas Weed of DLW Consulting - Advantages
with Dr. Yiqing Song of Indiana University-Purdue University Indianapolis - Limits I – Theory: Bias and Confounding
with Dr. Dominik Alexander of Meta Method Health - Limits II – Empirical: Evidence & Case Studies of Confirmation and Non-Confirmation of Observational Study-Generated Hypotheses
with Dr. Andrew Brown of Indiana University-Bloomington
Module 3: Randomized Controlled Experiments, Part I
- Theory: Potential Outcomes
with Dean David B. Allison of Indiana University-Bloomington - Methods for Randomization (Including Cluster Randomization, Stratifies, Choice of Allocation Rations, Adaptive, Etc.)
with Dr. Scarlett Bellamy of the University of Pennsylvania - Power & Sample Size Calculation
with Dr. Michael Oakes of the University of Minnesota - Choice of Control Condition Based on Hypothesis and Anticipated Claims
with Dr. Kevin Fontaine of the University of Alabama at Birmingham - Controlling for Expectancy and Not-Specific Effects
with Dr. Jack Raglin of Indiana University-Bloomington
Module 4: Randomized Controlled Experiments, Part II
- Identifying and Guarding Against Inferential Errors and Exaggerated Claims
with Dr. Andrew Brown of Indiana University-Bloomington - Practical Challenges: Measurement Error, Missing Data, Assumption Violations, Etc.
with Dr. Carmen Tekwe of Indiana University-Bloomington - Ethical Issues in RCEs
with Dr. Theodore Kyle of ConscienHealth - Procedural Elements: Trail Registration, Reporting Guidelines
with Dr. Samuel Field of the Center for Open Science - Large Simple Trials & Cluster Randomized Trials
with Dr. Michael Oakes of the University of Minnesota
- Importance in Evaluating Changes that Occur
with Dr. Kosali Simon of Indiana University-Bloomington - Design & Analysis
with Dr. Coady Wing of Indiana University-Bloomington - Ethical Issues
with Dr. Greg Pavela of the University of Alabama at Birmingham - Quasi-Experiments – Real World Case Studies
with Dr. Nir Menachemi of Indiana University-Bloomington
- The Role of Natural Experiments in Public Health Decision Making
with Dr. Christina Ludema of Indiana University-Bloomington - Study Design and Practical Applications of Natural Experiments in Public Health
with Dr. David Redden of the University of Alabama at Birmingham - Analysis
with Dr. Bisakha Sen of the University of Alabama at Birmingham - Packet Randomized Experiments: Adoption Example
with Dr. Greg Pavela of the University of Alabama at Birmingham
Module 7: Genetically Informed Designs – Unmeasured Genotype Approaches
- Co-Twin and Sibling Control Designs
with Dr. Matt McGue of the University of Minnesota - Structural Equation Modeling of Twin and Family Data to Assess Causal Effects
with Dr. Michael Neale of the Virginia of Commonwealth University - Ethical Considerations: Studying Behavioral Phenotypes in Weight-Discordant Siblings
with Dr. Tanja Kral of the University of Pennsylvania
Module 8: Genetically Informed Designs – Measured Genotype Approaches
- Causal Inference from Mendelian Randomization
with Dr. Kaitlin Wade of the University of Bristol - Methodological Issues in Testing for Gene by Environment or Gene by Behavior Interaction
with Dr. Ruth Loos of Icahn School of Medicine at Mount Sinai - Social, Behavioral, and Ethical Issues
with Dr. Jody Madeira of Indiana University-Bloomington - Real World Case Studies – Causal Inference and Counterfactuals in Obesity Research: Obesity and the Gut Microbiome
with Dr. Lee Kaplan of Harvard University
Module 9: Mediating and Moderating Variables
- Conceptual Models (the Mediator-Moderator Distinction, Environmental, Behavioral, Psychological, and Molecular Mediators and Moderators)
with Dr. David Redden of the University of Alabama at Birmingham - Testing in General Linear Models
with Dr. Amanda Fairchild of the University of South Carolina - Testing in Structural Equation Models
with Dr. Michael Neale of the Virginia of Commonwealth University - Real Life Examples & Ethical Issues
with Dr. Amanda Fairchild of the University of South Carolina
This short course is based upon work supported by the National Institutes of Health under Grant No. (R25HL124208). Any opinions, findings, and conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the National Institutes of Health.