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两样本汇总数据孟德尔随机化中多效性研究的框架。

A framework for the investigation of pleiotropy in two-sample summary data Mendelian randomization.

作者信息

Bowden Jack, Del Greco M Fabiola, Minelli Cosetta, Davey Smith George, Sheehan Nuala, Thompson John

机构信息

MRC Integrative Epidemiology Unit, University of Bristol, U.K.

Center for Biomedicine, EURAC research, Bolzano, Italy.

出版信息

Stat Med. 2017 May 20;36(11):1783-1802. doi: 10.1002/sim.7221. Epub 2017 Jan 23.

Abstract

Mendelian randomization (MR) uses genetic data to probe questions of causality in epidemiological research, by invoking the Instrumental Variable (IV) assumptions. In recent years, it has become commonplace to attempt MR analyses by synthesising summary data estimates of genetic association gleaned from large and independent study populations. This is referred to as two-sample summary data MR. Unfortunately, due to the sheer number of variants that can be easily included into summary data MR analyses, it is increasingly likely that some do not meet the IV assumptions due to pleiotropy. There is a pressing need to develop methods that can both detect and correct for pleiotropy, in order to preserve the validity of the MR approach in this context. In this paper, we aim to clarify how established methods of meta-regression and random effects modelling from mainstream meta-analysis are being adapted to perform this task. Specifically, we focus on two contrastin g approaches: the Inverse Variance Weighted (IVW) method which assumes in its simplest form that all genetic variants are valid IVs, and the method of MR-Egger regression that allows all variants to violate the IV assumptions, albeit in a specific way. We investigate the ability of two popular random effects models to provide robustness to pleiotropy under the IVW approach, and propose statistics to quantify the relative goodness-of-fit of the IVW approach over MR-Egger regression. © 2017 The Authors. Statistics in Medicine Published by JohnWiley & Sons Ltd.

摘要

孟德尔随机化(MR)通过引入工具变量(IV)假设,利用遗传数据来探究流行病学研究中的因果关系问题。近年来,通过综合从大型独立研究人群中收集的遗传关联汇总数据估计值来尝试进行MR分析已变得很常见。这被称为两样本汇总数据MR。不幸的是,由于可以轻松纳入汇总数据MR分析的变体数量众多,越来越多的变体可能由于多效性而不符合IV假设。迫切需要开发能够检测和校正多效性的方法,以在此背景下保持MR方法的有效性。在本文中我们旨在阐明主流荟萃分析中已有的荟萃回归和随机效应建模方法是如何被改编以执行此任务的。具体而言,我们关注两种截然不同的方法:最简单形式下假设所有遗传变体都是有效IV的逆方差加权(IVW)方法,以及允许所有变体违反IV假设(尽管是以特定方式)的MR-Egger回归方法。我们研究了两种流行的随机效应模型在IVW方法下对多效性提供稳健性的能力,并提出统计量以量化IVW方法相对于MR-Egger回归的相对拟合优度。© 2017作者。《医学统计学》由John Wiley & Sons Ltd出版。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/224b/5434863/5910a74b34c9/SIM-36-1783-g001.jpg

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