Causal Mediation Analysis in the Presence of a Misclassified Binary Exposure

Mediation analysis is popular in examining the extent to which the effect of an exposure on an outcome is through an intermediate variable. When the exposure is subject to misclassification, the effects estimated can be severely biased. In this paper, when the mediator is binary, we first study the...

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Bibliographic Details
Published inEpidemiologic methods Vol. 8; no. 1
Main Authors Jiang, Zhichao, VanderWeele, Tyler
Format Journal Article
LanguageEnglish
Published Berlin De Gruyter 18.12.2019
Walter de Gruyter GmbH
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Summary:Mediation analysis is popular in examining the extent to which the effect of an exposure on an outcome is through an intermediate variable. When the exposure is subject to misclassification, the effects estimated can be severely biased. In this paper, when the mediator is binary, we first study the bias on traditional direct and indirect effect estimates in the presence of conditional non-differential misclassification of a binary exposure. We show that in the absence of interaction, the misclassification of the exposure will bias the direct effect towards the null but can bias the indirect effect in either direction. We then develop an EM algorithm approach to correcting for the misclassification, and conduct simulation studies to assess the performance of the correction approach. Finally, we apply the approach to National Center for Health Statistics birth certificate data to study the effect of smoking status on the preterm birth mediated through pre-eclampsia.
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ISSN:2194-9263
2161-962X
DOI:10.1515/em-2016-0006