| Literature DB >> 25580377 |
T J VanderWeele1, S Vansteelandt2.
Abstract
Recent advances in the causal inference literature on mediation have extended traditional approaches to direct and indirect effects to settings that allow for interactions and non-linearities. In this paper, these approaches from causal inference are further extended to settings in which multiple mediators may be of interest. Two analytic approaches, one based on regression and one based on weighting are proposed to estimate the effect mediated through multiple mediators and the effects through other pathways. The approaches proposed here accommodate exposure-mediator interactions and, to a certain extent, mediator-mediator interactions as well. The methods handle binary or continuous mediators and binary, continuous or count outcomes. When the mediators affect one another, the strategy of trying to assess direct and indirect effects one mediator at a time will in general fail; the approach given in this paper can still be used. A characterization is moreover given as to when the sum of the mediated effects for multiple mediators considered separately will be equal to the mediated effect of all of the mediators considered jointly. The approach proposed in this paper is robust to unmeasured common causes of two or more mediators.Entities:
Keywords: Direct and indirect effects; joint effects mediation; regression; weighting
Year: 2014 PMID: 25580377 PMCID: PMC4287269 DOI: 10.1515/em-2012-0010
Source DB: PubMed Journal: Epidemiol Methods ISSN: 2161-962X