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Network Mendelian randomization: using genetic variants as instrumental variables to investigate mediation in causal pathways

机译:网络孟德尔随机化:使用遗传变异作为工具变量调查因果途径中的中介

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摘要

>Background: Mendelian randomization uses genetic variants, assumed to be instrumental variables for a particular exposure, to estimate the causal effect of that exposure on an outcome. If the instrumental variable criteria are satisfied, the resulting estimator is consistent even in the presence of unmeasured confounding and reverse causation.>Methods: We extend the Mendelian randomization paradigm to investigate more complex networks of relationships between variables, in particular where some of the effect of an exposure on the outcome may operate through an intermediate variable (a mediator). If instrumental variables for the exposure and mediator are available, direct and indirect effects of the exposure on the outcome can be estimated, for example using either a regression-based method or structural equation models. The direction of effect between the exposure and a possible mediator can also be assessed. Methods are illustrated in an applied example considering causal relationships between body mass index, C-reactive protein and uric acid.>Results: These estimators are consistent in the presence of unmeasured confounding if, in addition to the instrumental variable assumptions, the effects of both the exposure on the mediator and the mediator on the outcome are homogeneous across individuals and linear without interactions. Nevertheless, a simulation study demonstrates that even considerable heterogeneity in these effects does not lead to bias in the estimates.>Conclusions: These methods can be used to estimate direct and indirect causal effects in a mediation setting, and have potential for the investigation of more complex networks between multiple interrelated exposures and disease outcomes.
机译:>背景:孟德尔随机化方法使用遗传变量(假定是特定暴露的工具变量)来估计该暴露对结果的因果关系。如果满足工具变量标准,则即使在存在无法衡量的混淆和反向因果关系的情况下,结果估计量也是一致的。>方法:我们扩展了孟德尔随机范式,以研究变量之间关系的更复杂网络。特别是在暴露对结果的某些影响可能通过中间变量(中介)起作用的情况下。如果有暴露和中介的工具变量可用,则可以估计暴露对结果的直接和间接影响,例如,使用基于回归的方法或结构方程模型。也可以评估暴露与可能的介质之间的作用方向。在应用示例中说明了考虑体重指数,C反应蛋白和尿酸之间因果关系的方法。>结果:如果除了工具变量之外,在存在未测混杂因素的情况下,这些估计量也是一致的假设,暴露对调解人的影响以及调解人对结果的影响在个体之间是同质的,并且是线性的,没有相互作用。尽管如此,一项模拟研究表明,即使在这些影响中存在相当大的异质性,也不会导致估计偏差。>结论:这些方法可用于估计调解环境中的直接和间接因果关系,并且具有研究多个相互关联的暴露与疾病结果之间更复杂网络的潜力。

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