Journal
AMERICAN JOURNAL OF EPIDEMIOLOGY
Volume 170, Issue 11, Pages 1443-1448Publisher
OXFORD UNIV PRESS INC
DOI: 10.1093/aje/kwp283
Keywords
causality; effect size; epidemiologic methods; indirect effects; mediation; statistics
Categories
Funding
- Columbia University
- Department of Epidemiology, Mailman School of Public Health, Columbia University
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The assessment of indirect effects is an important tool for epidemiologists interested in exploring the mechanisms of exposure-disease relations. A standard way of expressing an indirect effect is in terms of the proportion explained; this is the proportion of the total effect that is explained by a particular mediator (or set of mediators). There are several ways to calculate the proportion explained, based on both additive and multiplicative models. However, these standard methods (particularly those based on multiplicative models) have been criticized for lacking a causal interpretation. To address this issue, the author uses a framework of potential outcomes to define the indirect effects of interest (natural effects) and assess the correspondence between the natural effects and standard measures. The author finds that standard additive measures represent an unbiased weighted average of the effects of interest; standard multiplicative measures, on the other hand, yield a biased weighted average of these effects. If the investigator is primarily interested in whether or not an indirect effect exists, standard measures for mediation will often yield the correct answer. In contrast, if valid quantification of the indirect effect is desired, counterfactual-based methods should be used.
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