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Published in: Prevention Science 4/2012

01-08-2012

Introducing the At-Risk Average Causal Effect with Application to HealthWise South Africa

Authors: Donna L. Coffman, Linda L. Caldwell, Edward A. Smith

Published in: Prevention Science | Issue 4/2012

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Abstract

Researchers often hypothesize that a causal variable, whether randomly assigned or not, has an effect on an outcome behavior and that this effect may vary across levels of initial risk of engaging in the outcome behavior. In this paper, we propose a method for quantifying initial risk status. We then illustrate the use of this risk-status variable as a moderator of the causal effect of leisure boredom, a non-randomized continuous variable, on cigarette smoking initiation. The data come from the HealthWise South Africa study. We define the causal effects using marginal structural models and estimate the causal effects using inverse propensity weights. Indeed, we found leisure boredom had a differential causal effect on smoking initiation across different risk statuses. The proposed method may be useful for prevention scientists evaluating causal effects that may vary across levels of initial risk.
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Metadata
Title
Introducing the At-Risk Average Causal Effect with Application to HealthWise South Africa
Authors
Donna L. Coffman
Linda L. Caldwell
Edward A. Smith
Publication date
01-08-2012
Publisher
Springer US
Published in
Prevention Science / Issue 4/2012
Print ISSN: 1389-4986
Electronic ISSN: 1573-6695
DOI
https://doi.org/10.1007/s11121-011-0271-0

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