孟德尔随机化
因果关系
因果推理
多效性
全基因组关联研究
连锁不平衡
推论
计算机科学
统计
生物
计量经济学
遗传学
数学
遗传变异
人工智能
表型
单核苷酸多态性
基因型
单倍型
法学
基因
政治学
作者
Zipeng Liu,Yiming Qin,Tian Wu,Justin D. Tubbs,Larry Baum,Timothy Shin Heng Mak,Miaoxin Li,Yan Dora Zhang,Pak Sham
标识
DOI:10.1038/s41467-023-36490-4
摘要
Abstract Mendelian randomization using GWAS summary statistics has become a popular method to infer causal relationships across complex diseases. However, the widespread pleiotropy observed in GWAS has made the selection of valid instrumental variables problematic, leading to possible violations of Mendelian randomization assumptions and thus potentially invalid inferences concerning causation. Furthermore, current MR methods can examine causation in only one direction, so that two separate analyses are required for bi-directional analysis. In this study, we propose a ststistical framework, MRCI (Mixture model Reciprocal Causation Inference), to estimate reciprocal causation between two phenotypes simultaneously using the genome-scale summary statistics of the two phenotypes and reference linkage disequilibrium information. Simulation studies, including strong correlated pleiotropy, showed that MRCI obtained nearly unbiased estimates of causation in both directions, and correct Type I error rates under the null hypothesis. In applications to real GWAS data, MRCI detected significant bi-directional and uni-directional causal influences between common diseases and putative risk factors.
科研通智能强力驱动
Strongly Powered by AbleSci AI