There are many research questions about effects of naturally0ccuring behaviors (e.g. dieting) on overweight and obesity for which a randomized controlled trial would be untenable. For these we must rely on observational studies, and causal inference with observational data poses difficult methodological challenges. Many techniques have been proposed for estimating average causal effects, but tools for modeling variation in these effects are scarce. In this R21 project, we will develop a new methodology for causal regression which allows effects at the individual level to covary with characteristics of individuals, contexts and environments. Our formulation is similar to that of the marginal structural model developed by James Robins et al., but we propose a new estimation technique based on imputation rather than weighting. We will obtain estimates and standard errors, diagnostics to help users identify shortcomings in the model, and methods to handle data from surveys with complex design features (strata, clusters, unequal probabilities of selection). Methods will be implemented in a user-friendly software and made available to health-outcome researchers. Secondary analyses will be performed on three epidemiologic datasets to assess the variation in effects dietary restraint, physical activity and other behaviors on body weight and other sequelae in adolescence and young adulthood.

Public Health Relevance

This project will (a) generate new statistical methods and software to help obesity researchers draw robust conclusions about effects of behaviors and treatments that have not been randomized, and (b) apply these methods in secondary analyses of observational data on weight-related behaviors in adolescence and young adulthood. Methods and findings will inform the design and implementation of more effective interventions for treatment and prevention of obesity.

Agency
National Institute of Health (NIH)
Institute
National Institute of Diabetes and Digestive and Kidney Diseases (NIDDK)
Type
Exploratory/Developmental Grants (R21)
Project #
1R21DK082858-01A1
Application #
7739894
Study Section
Kidney, Nutrition, Obesity and Diabetes (KNOD)
Program Officer
Everhart, James
Project Start
2009-07-20
Project End
2011-06-30
Budget Start
2009-07-20
Budget End
2010-06-30
Support Year
1
Fiscal Year
2009
Total Cost
$176,400
Indirect Cost
Name
Pennsylvania State University
Department
Biostatistics & Other Math Sci
Type
Schools of Arts and Sciences
DUNS #
003403953
City
University Park
State
PA
Country
United States
Zip Code
16802
Zhu, Yeying; Ghosh, Debashis; Coffman, Donna L et al. (2016) Estimating controlled direct effects of restrictivefeeding practices in the 'Early dieting in girls' study. J R Stat Soc Ser C Appl Stat 65:115-130
Coffman, Donna L; Balantekin, Katherine N; Savage, Jennifer S (2016) Using Propensity Score Methods To Assess Causal Effects of Mothers' Dieting Behavior on Daughters' Early Dieting Behavior. Child Obes 12:334-40
Zhu, Yeying; Coffman, Donna L; Ghosh, Debashis (2015) A Boosting Algorithm for Estimating Generalized Propensity Scores with Continuous Treatments. J Causal Inference 3:25-40
Coffman, Donna L; Zhong, Wei (2012) Assessing mediation using marginal structural models in the presence of confounding and moderation. Psychol Methods 17:642-64
Coffman, Donna L; Caldwell, Linda L; Smith, Edward A (2012) Introducing the at-risk average causal effect with application to HealthWise South Africa. Prev Sci 13:437-47