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A Comparison of Three Methods of Mendelian Randomization when the Genetic Instrument, the Risk Factor and the Outcome Are All Binary

机译:遗传工具,危险因素和结果均为二元模型时孟德尔随机化的三种方法的比较

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摘要

The method of instrumental variable (referred to as Mendelian randomization when the instrument is a genetic variant) has been initially developed to infer on a causal effect of a risk factor on some outcome of interest in a linear model. Adapting this method to nonlinear models, however, is known to be problematic. In this paper, we consider the simple case when the genetic instrument, the risk factor, and the outcome are all binary. We compare via simulations the usual two-stages estimate of a causal odds-ratio and its adjusted version with a recently proposed estimate in the context of a clinical trial with noncompliance. In contrast to the former two, we confirm that the latter is (under some conditions) a valid estimate of a causal odds-ratio defined in the subpopulation of compliers, and we propose its use in the context of Mendelian randomization. By analogy with a clinical trial with noncompliance, compliers are those individuals for whom the presence/absence of the risk factor X is determined by the presence/absence of the genetic variant Z (i.e., for whom we would observe X = Z whatever the alleles randomly received at conception). We also recall and illustrate the huge variability of instrumental variable estimates when the instrument is weak (i.e., with a low percentage of compliers, as is typically the case with genetic instruments for which this proportion is frequently smaller than 10%) where the inter-quartile range of our simulated estimates was up to 18 times higher compared to a conventional (e.g., intention-to-treat) approach. We thus conclude that the need to find stronger instruments is probably as important as the need to develop a methodology allowing to consistently estimate a causal odds-ratio.
机译:工具变量的方法(当该工具是遗传变体时称为孟德尔随机化)已被初步开发,以推断风险因素对线性模型中某些目标结果的因果关系。然而,已知将该方法适应非线性模型是有问题的。在本文中,我们考虑遗传工具,风险因素和结果均为二元的简单情况。我们通过模拟将因果比值比值及其调整版本的通常两阶段估算值与最近在不合规的临床试验中提出的估算值进行比较。与前两者相反,我们确认后者(在某些条件下)是在编者亚群中定义的因果比的有效估计,并且我们建议在孟德尔随机化的背景下使用它。通过与不合规的临床试验进行类比,符合者是指那些风险因素X的存在/不存在由基因变异Z的存在/不存在决定的个体(即,对于等位基因,我们将观察到X = Z的个体)受孕时随机收到)。我们还记得并说明了当工具较弱时(即,合规者的百分比较低,通常是遗传工具,其比例通常小于10%),工具变量估计值的巨大变异性。与传统的方法(例如,意向治疗)相比,我们的模拟估算值的四分位数范围高出18倍。因此,我们得出结论,寻找更强大的工具可能与开发一种能够始终如一地估算因果比的方法学一样重要。

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