成对比较
调解
心理健康
贝叶斯概率
计量经济学
非参数统计
心理学
干扰素
计算机科学
因果推理
推论
混淆
临床心理学
统计
发展心理学
数学
精神科
人工智能
政治学
法学
作者
Samrat Roy,Michael J. Daniels,Jason Roy
出处
期刊:Biostatistics
[Oxford University Press]
日期:2024-02-09
卷期号:25 (3): 919-932
标识
DOI:10.1093/biostatistics/kxad038
摘要
Mediation analysis with contemporaneously observed multiple mediators is a significant area of causal inference. Recent approaches for multiple mediators are often based on parametric models and thus may suffer from model misspecification. Also, much of the existing literature either only allow estimation of the joint mediation effect or estimate the joint mediation effect just as the sum of individual mediator effects, ignoring the interaction among the mediators. In this article, we propose a novel Bayesian nonparametric method that overcomes the two aforementioned drawbacks. We model the joint distribution of the observed data (outcome, mediators, treatment, and confounders) flexibly using an enriched Dirichlet process mixture with three levels. We use standardization (g-computation) to compute all possible mediation effects, including pairwise and all other possible interaction among the mediators. We thoroughly explore our method via simulations and apply our method to a mental health data from Wisconsin Longitudinal Study, where we estimate how the effect of births from unintended pregnancies on later life mental depression (CES-D) among the mothers is mediated through lack of self-acceptance and autonomy, employment instability, lack of social participation, and increased family stress. Our method identified significant individual mediators, along with some significant pairwise effects.
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