用孟德尔随机化和协变量校正的GWAS数据进行无偏因果推理。

IF 3.3 Q2 GENETICS & HEREDITY
Peiyao Wang, Zhaotong Lin, Wei Pan
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引用次数: 0

摘要

孟德尔随机化(MR)利用可公开获得的全基因组关联研究(GWAS)结果,促进了观察数据的因果推断。在GWAS中,可以调整一个或多个可遗传协变量,以估计snp对焦点性状的直接影响或提高统计能力,但这可能会在snp -性状关联估计中引入对撞机偏差,从而影响下游MR分析。数值研究表明,使用协变量调整的GWAS汇总数据可能会在单变量孟德尔随机化(UVMR)中引入偏倚,而多变量孟德尔随机化(MVMR)可以减轻偏倚。然而,MVMR为什么/如何工作仍然不清楚,甚至是神秘的;需要一个严谨的理论来解释和证实上述实证观察。在本文中,我们得到了在暴露的GWAS和/或结果的GWAS中调整多个协变量时的一些分析结果,从而支持和解释了实证结果。我们的分析结果提供了对UVMR中偏差如何产生以及如何在MVMR中避免偏差的见解,无论是否存在对撞机偏差。我们还考虑在对撞机偏差校正后应用UVMR或MVMR方法。我们进行了大量的模拟,以证明使用协变量调整的GWAS汇总数据,MVMR通过产生几乎无偏的因果估计而优于UVMR;然而,在某些情况下,在偏置校正后应用UVMR是有利的。在对体重指数(BMI)进行代谢组学主成分调整的GWAS数据的实际数据分析中,我们检查了BMI对血压的因果关系,证实了上述观点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unbiased causal inference with Mendelian randomization and covariate-adjusted GWAS data.

Mendelian randomization (MR) facilitates causal inference with observational data using publicly available genome-wide association study (GWAS) results. In a GWAS, one or more heritable covariates may be adjusted for to estimate the direct effects of SNPs on a focal trait or to improve statistical power, which may introduce collider bias in SNP-trait association estimates, thus affecting downstream MR analyses. Numerical studies suggested that using covariate-adjusted GWAS summary data might introduce bias in univariable Mendelian randomization (UVMR), which can be mitigated by multivariable Mendelian randomization (MVMR). However, it remains unclear and even mysterious why/how MVMR works; a rigorous theory is needed to explain and substantiate the above empirical observation. In this paper, we derive some analytical results when multiple covariates are adjusted for in the GWAS of exposure and/or the GWAS of outcome, thus supporting and explaining the empirical results. Our analytical results offer insights to how bias arises in UVMR and how it is avoided in MVMR, regardless of whether collider bias is present. We also consider applying UVMR or MVMR methods after collider-bias correction. We conducted extensive simulations to demonstrate that with covariate-adjusted GWAS summary data, MVMR had an advantage over UVMR by producing nearly unbiased causal estimates; however, in some situations it is advantageous to apply UVMR after bias correction. In real data analyses of the GWAS data with body mass index (BMI) being adjusted for metabolomic principal components, we examined the causal effect of BMI on blood pressure, confirming the above points.

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来源期刊
HGG Advances
HGG Advances Biochemistry, Genetics and Molecular Biology-Molecular Medicine
CiteScore
4.30
自引率
4.50%
发文量
69
审稿时长
14 weeks
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