孟德尔随机化
人口分层
混淆
生物
人口
因果推理
计量经济学
统计
遗传学
人口学
单核苷酸多态性
数学
遗传变异
基因
基因型
社会学
作者
Nathan LaPierre,Boyang Fu,S. A. Turnbull,Eleazar Eskin,Sriram Sankararaman
标识
DOI:10.1101/gr.277664.123
摘要
Mendelian randomization (MR) has emerged as a powerful approach to leverage genetic instruments to infer causality between pairs of traits in observational studies. However, the results of such studies are susceptible to biases owing to weak instruments, as well as the confounding effects of population stratification and horizontal pleiotropy. Here, we show that family data can be leveraged to design MR tests that are provably robust to confounding from population stratification, assortative mating, and dynastic effects. We show in simulations that our approach, MR-Twin, is robust to confounding from population stratification and is not affected by weak instrument bias, whereas standard MR methods yield inflated false positive rates. We then conduct an exploratory analysis of MR-Twin and other MR methods applied to 121 trait pairs in the UK Biobank data set. Our results suggest that confounding from population stratification can lead to false positives for existing MR methods, whereas MR-Twin is immune to this type of confounding, and that MR-Twin can help assess whether traditional approaches may be inflated owing to confounding from population stratification.
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