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Statistical methods for mediation analysis in the era of high-throughput genomics: Current successes and future challenges

机译:高通量基因组学时代中介分析的统计方法:当前的成功与未来挑战

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Mediation analysis investigates the intermediate mechanism through which an exposure exerts its influence on the outcome of interest. Mediation analysis is becoming increasingly popular in high-throughput genomics studies where a common goal is to identify molecular-level traits, such as gene expression or methylation, which actively mediate the genetic or environmental effects on the outcome. Mediation analysis in genomics studies is particularly challenging, however, thanks to the large number of potential mediators measured in these studies as well as the composite null nature of the mediation effect hypothesis. Indeed, while the standard univariate and multivariate mediation methods have been well-established for analyzing one or multiple mediators, they are not well-suited for genomics studies with a large number of mediators and often yield conservative p-values and limited power. Consequently, over the past few years many new high-dimensional mediation methods have been developed for analyzing the large number of potential mediators collected in high-throughput genomics studies. In this work, we present a thorough review of these important recent methodological advances in high-dimensional mediation analysis. Specifically, we describe in detail more than ten high-dimensional mediation methods, focusing on their motivations, basic modeling ideas, specific modeling assumptions, practical successes, methodological limitations, as well as future directions. We hope our review will serve as a useful guidance for statisticians and computational biologists who develop methods of high-dimensional mediation analysis as well as for analysts who apply mediation methods to high-throughput genomics studies.
机译:调解分析调查了暴露对兴趣结果影响的中间机制。中介分析在高通量基因组学研究中变得越来越受欢迎,其中共同的目标是识别分子水平性状,例如基因表达或甲基化,这激发了对结果的遗传或环境影响。然而,由于这些研究中测量的大量潜在介质以及中介效应假设的复合效应性质,因此基因组学研究中的中介分析特别具有挑战性。实际上,虽然标准单变量和多变量和多变量调解方法已经过分了解一个或多个调解器,但它们对具有大量介质的基因组学研究并不完全适合于基因组学研究,并且通常会产生保守的p值和有限的功率。因此,在过去的几年里,已经开发了许多新的高维调解方法,用于分析高通量基因组学研究中收集的大量潜在介质。在这项工作中,我们对高维调解分析的这些重要的最近方法进步彻底审查。具体而言,我们详细描述了十个以上的高维中调解方法,重点关注其动机,基本的建模思想,具体的建模假设,实际的成功,方法论限制以及未来的方向。我们希望我们的审查将成为统计学家和计算生物学家的有用指导,他们开发了高维调解分析方法以及将调解方法应用于高通量基因组学研究的分析师。

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