Mediation analysis with contemporaneously observed multiple mediators is an important 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 as the sum of individual mediator effects, which often is not a reasonable assumption. In this paper, we propose a methodology which overcomes the two aforementioned drawbacks. Our method is based on a novel Bayesian nonparametric (BNP) approach, wherein the joint distribution of the observed data (outcome, mediators, treatment, and confounders) is modeled flexibly using an enriched Dirichlet process mixture with three levels: the first level characterizing the conditional distribution of the outcome given the mediators, treatment and the confounders, the second level corresponding to the conditional distribution of each of the mediators given the treatment and the confounders, and the third level corresponding to the distribution of the treatment and the confounders. We use standardization (g-computation) to compute causal mediation effects under three uncheckable assumptions that allow identification of the individual and joint mediation effects. The efficacy of our proposed method is demonstrated with simulations. We apply our proposed method to analyze data from a study of Ventilator-associated Pneumonia (VAP) co-infected patients, where the effect of the abundance of Pseudomonas on VAP infection is suspected to be mediated through antibiotics.
翻译:同时观察的多重调解人的调解分析是一个重要的因果关系推断领域。最近对多重调解人采取的办法往往以参数模型为基础,因此可能存在模式上的偏差。此外,许多现有文献要么只能够估计联合调解效应,要么将联合调解效应作为个人调解人效应的总和来估计联合调解效应,而这往往不是合理的假设。在本文件中,我们提出了一个克服上述两个缺点的方法。我们的方法基于一种新的巴伊西亚非参数(BNP)方法,其中观察到的数据(结果、调解人、治疗和安慰者)的联合分配模式采用三个层次的丰富迪里赫莱进程混合模型。此外,许多现有文献要么只能够估计联合调解效应,要么将联合调解效应作为个人调解人、治疗者和共同调解人效应的总和。在本文中,我们采用新颖的巴耶斯非参数,我们使用标准化(g-compalation)来根据三个无法核对的假设来计算所观察到的因果调解效应,从而可以确定个人、治疗和联合调解作用。我们提议的巴迪姆比亚分析方法,我们的拟议方法通过模拟分析。