We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
A Bayesian regularized mediation analysis with multiple exposures.
- Authors
Wang, Yu‐Bo; Chen, Zhen; Goldstein, Jill M.; Buck Louis, Germaine M.; Gilman, Stephen E.; Wang, Yu-Bo
- Abstract
Mediation analysis assesses the effect of study exposures on an outcome both through and around specific mediators. While mediation analysis involving multiple mediators has been addressed in recent literature, the case of multiple exposures has received little attention. With the presence of multiple exposures, we consider regularizations that allow simultaneous effect selection and estimation while stabilizing model fit and accounting for model selection uncertainty. In the framework of linear structural-equation models, we analytically show that a two-stage approach regularizing regression coefficients does not guarantee a unimodal posterior distribution and that a product-of-coefficient approach regularizing direct and indirect effects tends to penalize excessively. We propose a regularized difference-of-coefficient approach that bypasses these limitations. Using the connection between regularizations and Bayesian hierarchical models with Laplace prior, we develop an efficient Markov chain Monte Carlo algorithm for posterior estimation and inference. Through simulations, we show that the proposed approach has better empirical performances compared to some alternatives. The methodology is illustrated using data from two epidemiological studies in human reproduction.
- Publication
Statistics in Medicine, 2019, Vol 38, Issue 5, p828
- ISSN
0277-6715
- Publication type
Academic Journal
- DOI
10.1002/sim.8020