Yuan Zhongshang, Liu Lu, Guo Ping, Yan Ran, Xue Fuzhong, Zhou Xiang
Department of Biostatistics, School of Public Health, Cheeloo College of Medicine, Shandong University, Jinan, Shandong 250012, China.
Institute for Medical Dataology, Cheeloo College of Medicine, Shandong University, Jinan, Shandong 250012, China.
Sci Adv. 2022 Mar 4;8(9):eabl5744. doi: 10.1126/sciadv.abl5744. Epub 2022 Mar 2.
Mendelian randomization (MR) is a common tool for identifying causal risk factors underlying diseases. Here, we present a method, MR with automated instrument determination (MRAID), for effective MR analysis. MRAID borrows ideas from fine-mapping analysis to model an initial set of candidate single-nucleotide polymorphisms that are in potentially high linkage disequilibrium with each other and automatically selects among them the suitable instruments for causal inference. MRAID also explicitly models both uncorrelated and correlated horizontal pleiotropic effects that are widespread for complex trait analysis. MRAID achieves both tasks through a joint likelihood framework and relies on a scalable sampling-based algorithm to compute calibrated values. Comprehensive and realistic simulations show that MRAID can provide calibrated type I error control and reduce false positives while being more powerful than existing approaches. We illustrate the benefits of MRAID for an MR screening analysis across 645 trait pairs in U.K. Biobank, identifying multiple lifestyle causal risk factors of cardiovascular disease-related traits.
孟德尔随机化(MR)是识别疾病潜在因果风险因素的常用工具。在此,我们提出一种方法,即具有自动工具确定功能的孟德尔随机化(MRAID),用于有效的孟德尔随机化分析。MRAID借鉴了精细定位分析的思路,对一组初始的候选单核苷酸多态性进行建模,这些多态性彼此之间可能处于高度连锁不平衡状态,并自动从中选择适合因果推断的工具变量。MRAID还明确对复杂性状分析中普遍存在的不相关和相关水平多效性效应进行建模。MRAID通过联合似然框架实现这两项任务,并依靠一种基于采样的可扩展算法来计算校准值。全面且现实的模拟表明,MRAID可以提供校准的I型错误控制,减少假阳性,同时比现有方法更具效力。我们通过对英国生物银行中645个性状对进行孟德尔随机化筛查分析,阐述了MRAID的优势,识别出心血管疾病相关性状的多种生活方式因果风险因素。