MRC Integrative Epidemiology Unit, Population Health Sciences, University of Bristol, Clifton BS8 2BN, United Kingdom
Cold Spring Harb Perspect Med. 2021 Feb 1;11(2):a038984. doi: 10.1101/cshperspect.a038984.
Mendelian randomization (MR) is the use of genetic variants associated with an exposure to estimate the causal effect of that exposure on an outcome. Mediation analysis is the method of decomposing the effects of an exposure on an outcome, which act directly, and those that act via mediating variables. These effects are decomposed through the use of multivariable analysis to estimate the causal effects between three types of variables: exposures, mediators, and an outcome. Multivariable MR (MVMR) is a recent extension to MR that uses genetic variants associated with multiple, potentially related exposures to estimate the effect of each exposure on a single outcome. MVMR allows for equivalent analysis to mediation within the MR framework and therefore can also be used to estimate mediation effects. This approach retains the benefits of using genetic instruments for causal inference, such as avoiding bias due to confounding, while allowing for estimation of the different effects required for mediation analysis. This review explains MVMR, what is estimated when one exposure is a mediator of another in an MVMR estimation, and how MR and MVMR can therefore be used to estimate mediated effects. This review then goes on to consider the advantages and limitations of using MR and MVMR to conduct mediation analysis.
孟德尔随机化(MR)是利用与暴露相关的遗传变异来估计暴露对结果的因果效应。中介分析是分解暴露对结果的直接效应和通过中介变量起作用的效应的方法。这些效应是通过使用多变量分析来估计三种类型的变量(暴露、中介和结果)之间的因果效应来分解的。多变量 MR(MVMR)是 MR 的一个最近扩展,它利用与多个潜在相关暴露相关的遗传变异来估计每个暴露对单个结果的影响。MVMR 允许在 MR 框架内进行与中介相同的分析,因此也可用于估计中介效应。这种方法保留了使用遗传工具进行因果推理的好处,例如避免由于混杂引起的偏差,同时允许估计中介分析所需的不同效应。本综述解释了 MVMR,在 MVMR 估计中,当一个暴露是另一个暴露的中介时会估计什么,以及因此如何使用 MR 和 MVMR 来估计中介效应。然后,本综述继续考虑使用 MR 和 MVMR 进行中介分析的优势和局限性。