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Efficient Design for Mendelian Randomization Studies: Subsample and 2-Sample Instrumental Variable Estimators

机译:孟德尔随机研究的高效设计:子样本和2样本工具变量估计器

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摘要

Mendelian randomization (MR) is a method for estimating the causal relationship between an exposure and an outcome using a genetic factor as an instrumental variable (IV) for the exposure. In the traditional MR setting, data on the IV, exposure, and outcome are available for all participants. However, obtaining complete exposure data may be difficult in some settings, due to high measurement costs or lack of appropriate biospecimens. We used simulated data sets to assess statistical power and bias for MR when exposure data are available for a subset (or an independent set) of participants. We show that obtaining exposure data for a subset of participants is a cost-efficient strategy, often having negligible effects on power in comparison with a traditional complete-data analysis. The size of the subset needed to achieve maximum power depends on IV strength, and maximum power is approximately equal to the power of traditional IV estimators. Weak IVs are shown to lead to bias towards the null when the subsample is small and towards the confounded association when the subset is relatively large. Various approaches for confidence interval calculation are considered. These results have important implications for reducing the costs and increasing the feasibility of MR studies.
机译:孟德尔随机化(MR)是一种使用遗传因子作为暴露的工具变量(IV)来评估暴露与结果之间因果关系的方法。在传统的MR设置中,所有参与者均可获得有关IV,暴露和结局的数据。但是,由于高昂的测量成本或缺乏适当的生物标本,在某些情况下获取完整的暴露数据可能很困难。当暴露数据可用于参与者的子集(或独立集合)时,我们使用模拟数据集来评估MR的统计功效和偏倚。我们表明,获取参与者的子集的暴露数据是一种具有成本效益的策略,与传统的完整数据分析相比,对功率的影响通常可以忽略不计。实现最大功率所需的子集大小取决于IV强度,并且最大功率大约等于传统IV估计器的功率。当子样本较小时,弱IV导致偏向零值,而当子样本相对较大时,IV则导致混杂关联。考虑用于置信区间计算的各种方法。这些结果对于降低成本和提高MR研究的可行性具有重要意义。

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