Wu Yinxiang, Kang Hyunseung, Ye Ting
Department of Biostatistics, University of Washington, Seattle, Washington, U.S.A.
Department of Statistics, University of Wisconsin-Madison, Madison, Wisconsin, U.S.A.
Biometrika. 2025 Jul 21. doi: 10.1093/biomet/asaf053.
Multivariable Mendelian randomization (MVMR) uses genetic variants as instrumental variables to infer the direct effects of multiple exposures on an outcome. However, unlike univariable Mendelian randomization, MVMR often faces greater challenges with many weak instruments, which can lead to bias not necessarily toward zero and inflation of type I errors. In this work, we introduce a new asymptotic regime that allows exposures to have varying degrees of instrument strength, providing a more accurate theoretical framework for studying MVMR estimators. Under this regime, our analysis of the widely used multivariable inverse-variance weighted method shows that it is often biased and tends to produce misleadingly narrow confidence intervals in the presence of many weak instruments. To address this, we propose a simple, closed-form modification to the multivariable inverse-variance weighted estimator to reduce bias from weak instruments, and additionally introduce a novel spectral regularization technique to improve finite-sample performance. We show that the resulting spectral-regularized estimator remains consistent and asymptotically normal under many weak instruments. Through simulations and real data applications, we demonstrate that our proposed estimator and asymptotic framework can enhance the robustness of MVMR analyses.
多变量孟德尔随机化(MVMR)使用基因变异作为工具变量来推断多种暴露因素对一个结局的直接影响。然而,与单变量孟德尔随机化不同,MVMR常常面临许多弱工具变量带来的更大挑战,这可能导致偏差不一定趋于零,以及第一类错误的膨胀。在这项工作中,我们引入了一种新的渐近情形,允许暴露因素具有不同程度的工具变量强度,为研究MVMR估计量提供了一个更准确的理论框架。在这种情形下,我们对广泛使用的多变量逆方差加权方法的分析表明,在存在许多弱工具变量的情况下,该方法常常存在偏差,并且倾向于产生误导性的狭窄置信区间。为了解决这个问题,我们对多变量逆方差加权估计量提出了一种简单的、封闭形式的修正,以减少弱工具变量带来的偏差,并额外引入了一种新颖的谱正则化技术来提高有限样本性能。我们表明,在许多弱工具变量的情况下,所得的谱正则化估计量仍然是一致的且渐近正态的。通过模拟和实际数据应用,我们证明了我们提出的估计量和渐近框架可以增强MVMR分析的稳健性。