# Estimating Mediation Effects in Prevention Studies

> **NIH NIH R37** · ARIZONA STATE UNIVERSITY-TEMPE CAMPUS · 2020 · $382,893

## Abstract

The purpose of this competing continuation grant proposal is to develop, evaluate and apply
 methodological and statistical procedures to investigate how prevention programs change outcome
 variables. These mediation analyses assess the link between program effects on the constructs targeted
 by a prevention program and effects on the outcome. As noted by many researchers and federal
 agencies, mediation analyses identify the most effective program components and increase
 understanding of the underlying mechanisms leading to changing outcome variables. Information from
 mediation analysis can make interventions more powerful, more efficient, and shorter. The P. I. of this
grant received a one-year NIDA small grant and four multi-year grants to develop and evaluate mediation
 analysis in prevention research. This work led to many publications and innovations. The proposed
 five-year continuation focuses on the further development and refinement of exciting new mediation
 analysis statistical developments. Four statistical topics represent next steps in this research and include
 analytical and simulation research as well as applications to etiological and prevention data. The work
expands on our development of causal mediation and Bayesian mediation methods that hold great
promise for mediation analysis. In Study 1, practical causal mediation and Bayesian mediation analyses
 for research designs are developed and evaluated. This approach will clarify methods and develop
 approaches for dealing with violation of testable and untestable assumptions. Study 2 investigates
 important measurement issues for the investigation of mediation. This work will focus on methods to
identify critical facets of mediating variables, approaches to understanding whether mediators and
 outcomes are redundant, and develop methods for studies with big data. Study 3 continues the
development and evaluation of new longitudinal mediation methods for ecological momentary assessment
data and other studies with massive data collection. These new methods promise to more accurately
model change over time for both individuals and groups of individuals. Study 4 develops methods to
 uncover subgroups in mediation analysis including causal mediation methods, multilevel models, and new
 approaches based on residuals for identifying individuals for whom mediating processes differ in
 effectiveness from other individuals. For each study, we will investigate unique issues with mediation
analysis of prevention data including methods for small N and also massive data collection (big data), the
RcErLitEicVaANl rCoEle(Soeef imnsetruacstiounrse):ment for mediating mechanisms, and the application of the growing literature on
 causal methods and Bayesian methods. Study 5 applies new statistical methods to data from several NIH
 The project further develops a method, statistical mediation analysis, that extracts more information from
 funded prevention studies providing important feedback abo...

## Key facts

- **NIH application ID:** 9851457
- **Project number:** 4R37DA009757-19
- **Recipient organization:** ARIZONA STATE UNIVERSITY-TEMPE CAMPUS
- **Principal Investigator:** David P MacKinnon
- **Activity code:** R37 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $382,893
- **Award type:** 4C
- **Project period:** 2020-06-01 → 2025-05-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/9851457

## Citation

> US National Institutes of Health, RePORTER application 9851457, Estimating Mediation Effects in Prevention Studies (4R37DA009757-19). Retrieved via AI Analytics 2026-05-23 from https://api.ai-analytics.org/grant/nih/9851457. Licensed CC0.

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