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The Use of Mixed Models for the Analysis of Mediated Data with Time-Dependent Predictors
Author(s) -
Emily Blood,
Debbie M. Cheng
Publication year - 2011
Publication title -
journal of environmental and public health
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.869
H-Index - 35
eISSN - 1687-9813
pISSN - 1687-9805
DOI - 10.1155/2011/435078
Subject(s) - mediation , longitudinal data , structural equation modeling , mixed model , econometrics , generalized linear mixed model , multilevel model , marginal structural model , statistics , observational study , causal model , computer science , random effects model , mathematics , data mining , medicine , meta analysis , political science , law
Linear mixed models (LMMs) are frequently used to analyze longitudinal data. Although these models can be used to evaluate mediation, they do not directly model causal pathways. Structural equation models (SEMs) are an alternative technique that allows explicit modeling of mediation. The goal of this paper is to evaluate the performance of LMMs relative to SEMs in the analysis of mediated longitudinal data with time-dependent predictors and mediators. We simulated mediated longitudinal data from an SEM and specified delayed effects of the predictor. A variety of model specifications were assessed, and the LMMs and SEMs were evaluated with respect to bias, coverage probability, power, and Type I error. Models evaluated in the simulation were also applied to data from an observational cohort of HIV-infected individuals. We found that when carefully constructed, the LMM adequately models mediated exposure effects that change over time in the presence of mediation, even when the data arise from an SEM.

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