Selecting likely causal risk factors from high-throughput experiments using multivariable Mendelian randomization

Verena Zuber(University of Cambridge), Johanna M. Colijn(Erasmus MC), Caroline C. W. Klaver(Radboud University Nijmegen), Stephen Burgess(University of Cambridge)
Nature Communications
January 7, 2020
Cited by 252Open Access
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Abstract

Modern high-throughput experiments provide a rich resource to investigate causal determinants of disease risk. Mendelian randomization (MR) is the use of genetic variants as instrumental variables to infer the causal effect of a specific risk factor on an outcome. Multivariable MR is an extension of the standard MR framework to consider multiple potential risk factors in a single model. However, current implementations of multivariable MR use standard linear regression and hence perform poorly with many risk factors. Here, we propose a two-sample multivariable MR approach based on Bayesian model averaging (MR-BMA) that scales to high-throughput experiments. In a realistic simulation study, we show that MR-BMA can detect true causal risk factors even when the candidate risk factors are highly correlated. We illustrate MR-BMA by analysing publicly-available summarized data on metabolites to prioritise likely causal biomarkers for age-related macular degeneration.


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