Haoyu Yang, Zhonghua Liu, Ruoyu Wang, En-Yu Lai, Joel Schwartz, Andrea A. Baccarelli, Yen-Tsung Huang, Xihong Lin
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引用次数: 0
摘要
因果中介分析为整合不同类型的暴露、基因组和表型数据提供了一个极具吸引力的框架。最近,人们对这一领域的兴趣大增,主要原因是健康和社会科学领域对因果中介分析的需求日益增长。本文旨在综述中介分析的最新进展,包括对单一中介和大量中介的中介分析,以及对多重暴露和中介的中介分析。我们的综述侧重于因果中介分析统计推断的最新进展,尤其是在高维中介分析方面。我们深入探讨了检验中介效应的复杂性,特别是解决检验大量复合零假设的难题。通过大量的模拟研究,我们比较了各种情况下的现有方法。我们还分析了 "正常老龄化研究"(Normative Aging Study)的数据,该研究将 DNA 甲基化 CpG 位点作为吸烟状态对肺功能影响的潜在中介。我们将讨论这些方法的优缺点以及未来的研究方向。
Causal Mediation Analysis for Integrating Exposure, Genomic, and Phenotype Data
Causal mediation analysis provides an attractive framework for integrating diverse types of exposure, genomic, and phenotype data. Recently, this field has seen a surge of interest, largely driven by the increasing need for causal mediation analyses in health and social sciences. This article aims to provide a review of recent developments in mediation analysis, encompassing mediation analysis of a single mediator and a large number of mediators, as well as mediation analysis with multiple exposures and mediators. Our review focuses on the recent advancements in statistical inference for causal mediation analysis, especially in the context of high-dimensional mediation analysis. We delve into the complexities of testing mediation effects, especially addressing the challenge of testing a large number of composite null hypotheses. Through extensive simulation studies, we compare the existing methods across a range of scenarios. We also include an analysis of data from the Normative Aging Study, which examines DNA methylation CpG sites as potential mediators of the effect of smoking status on lung function. We discuss the pros and cons of these methods and future research directions.
期刊介绍:
The Annual Review of Statistics and Its Application publishes comprehensive review articles focusing on methodological advancements in statistics and the utilization of computational tools facilitating these advancements. It is abstracted and indexed in Scopus, Science Citation Index Expanded, and Inspec.