MRC Biostatistics Unit, University of Cambridge, Cambridge, UK.
Cardiovascular Epidemiology Unit, University of Cambridge, Cambridge, UK.
Stat Med. 2021 Nov 20;40(26):5813-5830. doi: 10.1002/sim.9156. Epub 2021 Aug 2.
Mendelian randomization is a powerful tool for inferring the presence, or otherwise, of causal effects from observational data. However, the nature of genetic variants is such that pleiotropy remains a barrier to valid causal effect estimation. There are many options in the literature for pleiotropy robust methods when studying the effects of a single risk factor on an outcome. However, there are few pleiotropy robust methods in the multivariable setting, that is, when there are multiple risk factors of interest. In this article we introduce three methods which build on common approaches in the univariable setting: MVMR-Robust; MVMR-Median; and MVMR-Lasso. We discuss the properties of each of these methods and examine their performance in comparison to existing approaches in a simulation study. MVMR-Robust is shown to outperform existing outlier robust approaches when there are low levels of pleiotropy. MVMR-Lasso provides the best estimation in terms of mean squared error for moderate to high levels of pleiotropy, and can provide valid inference in a three sample setting. MVMR-Median performs well in terms of estimation across all scenarios considered, and provides valid inference up to a moderate level of pleiotropy. We demonstrate the methods in an applied example looking at the effects of intelligence, education and household income on the risk of Alzheimer's disease.
孟德尔随机化是一种从观察数据中推断因果效应是否存在的强大工具。然而,由于遗传变异的性质,多效性仍然是有效因果效应估计的障碍。在研究单一风险因素对结果的影响时,文献中有许多针对多效性稳健方法的选择。然而,在多变量环境中,即当有多个感兴趣的风险因素时,多效性稳健方法很少。在本文中,我们介绍了三种方法,这些方法建立在单变量环境中的常见方法之上:MVMR-Robust、MVMR-Median 和 MVMR-Lasso。我们讨论了这些方法的性质,并在模拟研究中比较了它们与现有方法的性能。当多效性水平较低时,MVMR-Robust 被证明优于现有的异常值稳健方法。MVMR-Lasso 在中等到高水平多效性下,在均方误差方面提供了最佳估计,并可在三个样本设置中提供有效推断。MVMR-Median 在所有考虑的情况下在估计方面表现良好,并在中等水平的多效性下提供有效推断。我们在一个应用实例中演示了这些方法,该实例研究了智力、教育和家庭收入对阿尔茨海默病风险的影响。