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Published in: Health Services and Outcomes Research Methodology 2/2008

01-06-2008

Causal mediation analyses for randomized trials

Authors: Kevin G. Lynch, Mark Cary, Robert Gallop, Thomas R. Ten Have

Published in: Health Services and Outcomes Research Methodology | Issue 2/2008

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Abstract

In the context of randomized intervention trials, we describe causal methods for analyzing how post-randomization factors constitute the process through which randomized baseline interventions act on outcomes. Traditionally, such mediation analyses have been undertaken with great caution, because they assume that the mediating factor is also randomly assigned to individuals in addition to the randomized baseline intervention (i.e., sequential ignorability). Because the mediating factors are typically not randomized, such analyses are unprotected from unmeasured confounders that may lead to biased inference. We review several causal approaches that attempt to reduce such bias without assuming that the mediating factor is randomized. However, these causal approaches require certain interaction assumptions that may be assessed if there is enough treatment heterogeneity with respect to the mediator. We describe available estimation procedures in the context of several examples from the literature and provide resources for software code.
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Metadata
Title
Causal mediation analyses for randomized trials
Authors
Kevin G. Lynch
Mark Cary
Robert Gallop
Thomas R. Ten Have
Publication date
01-06-2008
Publisher
Springer US
Published in
Health Services and Outcomes Research Methodology / Issue 2/2008
Print ISSN: 1387-3741
Electronic ISSN: 1572-9400
DOI
https://doi.org/10.1007/s10742-008-0028-9

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