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广义因果中介分析

Generalized causal mediation analysis.

作者信息

Albert Jeffrey M, Nelson Suchitra

机构信息

Department of Epidemiology and Biostatistics, School of Medicine, WG-43, Case Western Reserve University, 10900 Euclid Avenue, Cleveland, Ohio 44106, USA.

出版信息

Biometrics. 2011 Sep;67(3):1028-38. doi: 10.1111/j.1541-0420.2010.01547.x. Epub 2011 Feb 9.

Abstract

The goal of mediation analysis is to assess direct and indirect effects of a treatment or exposure on an outcome. More generally, we may be interested in the context of a causal model as characterized by a directed acyclic graph (DAG), where mediation via a specific path from exposure to outcome may involve an arbitrary number of links (or "stages"). Methods for estimating mediation (or pathway) effects are available for a continuous outcome and a continuous mediator related via a linear model, while for a categorical outcome or categorical mediator, methods are usually limited to two-stage mediation. We present a method applicable to multiple stages of mediation and mixed variable types using generalized linear models. We define pathway effects using a potential outcomes framework and present a general formula that provides the effect of exposure through any specified pathway. Some pathway effects are nonidentifiable and their estimation requires an assumption regarding the correlation between counterfactuals. We provide a sensitivity analysis to assess the impact of this assumption. Confidence intervals for pathway effect estimates are obtained via a bootstrap method. The method is applied to a cohort study of dental caries in very low birth weight adolescents. A simulation study demonstrates low bias of pathway effect estimators and close-to-nominal coverage rates of confidence intervals. We also find low sensitivity to the counterfactual correlation in most scenarios.

摘要

中介分析的目标是评估一种治疗或暴露对一个结局的直接和间接效应。更一般地,我们可能对由有向无环图(DAG)所刻画的因果模型背景感兴趣,其中通过从暴露到结局的特定路径进行的中介可能涉及任意数量的链接(或“阶段”)。对于通过线性模型相关联的连续结局和连续中介,有估计中介(或路径)效应的方法,而对于分类结局或分类中介,方法通常限于两阶段中介。我们提出一种使用广义线性模型适用于中介的多个阶段和混合变量类型的方法。我们使用潜在结果框架定义路径效应,并给出一个提供通过任何指定路径的暴露效应的通用公式。一些路径效应是不可识别的,其估计需要关于反事实之间相关性的假设。我们提供敏感性分析以评估该假设的影响。路径效应估计的置信区间通过自助法获得。该方法应用于极低出生体重青少年龋齿的队列研究。一项模拟研究表明路径效应估计器的偏差较低,且置信区间的覆盖率接近名义水平。我们还发现在大多数情况下对反事实相关性的敏感性较低。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7f61/3139764/87d4040c09de/nihms260919f1.jpg

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