Yu Yue, Lakkis Andrew, Zhao Bingxin, Jin Jin
medRxiv. 2024 Nov 27:2024.11.25.24317939. doi: 10.1101/2024.11.25.24317939.
Mendelian Randomization analysis is a popular method to infer causal relationships between exposures and outcomes, utilizing data from genome-wide association studies (GWAS) to overcome limitations of observational research by treating genetic variants as instrumental variables. This study focuses on a specific problem setting, where causal signals may exist among a series of correlated traits, but the exposures of interest, such as biological functions or lower-dimensional latent factors that regulate the observable traits, are not directly observable. We propose a Bayesian Mendelian randomization analysis framework that allows joint analysis of the causal effects of multiple latent exposures on a disease outcome leveraging GWAS summary-level association statistics for traits co-regulated by the exposures. We conduct simulation studies to show the validity and superiority of the method in terms of type I error control and power due to a more flexible modeling framework and a more stable algorithm compared to an alternative approach and traditional single- and multi-exposure analysis approaches not specifically designed for the problem. We have also applied the method to reveal evidence of the causal effects of psychiatric factors, including compulsive, psychotic, neurodevelopmental, and internalizing factors, on neurodegenerative, autoimmune, digestive, and cardiometabolic diseases.
孟德尔随机化分析是一种用于推断暴露因素与结局之间因果关系的常用方法,它利用全基因组关联研究(GWAS)的数据,通过将基因变异作为工具变量来克服观察性研究的局限性。本研究聚焦于一种特定的问题设定,即一系列相关性状之间可能存在因果信号,但感兴趣的暴露因素,如调节可观察性状的生物学功能或低维潜在因素,无法直接观察到。我们提出了一种贝叶斯孟德尔随机化分析框架,该框架允许利用暴露因素共同调节的性状的GWAS汇总水平关联统计量,对多种潜在暴露因素对疾病结局的因果效应进行联合分析。我们进行了模拟研究,以表明该方法在控制I型错误和检验效能方面的有效性和优越性,这是由于与未专门针对该问题设计的替代方法以及传统的单暴露和多暴露分析方法相比,它具有更灵活的建模框架和更稳定的算法。我们还应用该方法揭示了包括强迫、精神病、神经发育和内化因素在内的精神因素对神经退行性、自身免疫性、消化系统和心脏代谢疾病因果效应的证据。