What is it about?

Mendelian randomization (MR) is a valuable tool for inferring causal relationships among a wide range of traits using summary statistics from genome-wide association studies (GWASs). Existing summary-level MR methods primarily focused on accounting for confounding due to pleiotropy. Here, we show that sample structure is another major confounding factor, including population stratification, cryptic relatedness, and sample overlap. We propose a unified MR approach, MR-APSS, which 1) accounts for pleiotropy and sample structure simultaneously by leveraging genome-wide information; and 2) allows the inclusion of more genetic variants with moderate effects as instrument variables (IVs) to improve statistical power without inflating type I errors. We first evaluated MR-APSS using comprehensive simulations and negative controls and then applied MR-APSS to study the causal relationships among a collection of diverse complex traits. The results suggest that MR-APSS can better identify plausible causal relationships with high reliability. In particular, MR-APSS can perform well for highly polygenic traits, where the IV strengths tend to be relatively weak and existing summary-level MR methods for causal inference are vulnerable to confounding effects.

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Why is it important?

We show that, besides pleiotropy, sample structure is another major confounding factor, including population stratification, cryptic relatedness, and sample overlap in Mendelian randomization (MR) analysis. Our method, MR-APSS, accounts for pleiotropy and sample structure simultaneously by leveraging genome-wide information. Both simulations and real data analysis results suggest that MR-APSS avoids many false-positive findings and improves the statistical power of detecting causal effects.

Perspectives

We hope that MR-APSS can motivate more researchers to uncover more reliable causal relationships using rich genetic data resources.

Xianghong Hu

The proposed MR-APSS method can effectively reduce false positive findings by simultaneously accounting for two major confounding bias: pleiotropy and sample structure. It also allow to include more genetic variants with weak effects as instrument variables to improve statistical power. To facilitate the usage of MR-APSS, we have made all the source code and real data in our paper publicly available. We hope researchers will find this tool to be useful for screening causal relationship between exposure and outcome traits.

Professor Can Yang
The Hong Kong University of Science and Technology

Read the Original

This page is a summary of: Mendelian randomization for causal inference accounting for pleiotropy and sample structure using genome-wide summary statistics, Proceedings of the National Academy of Sciences, July 2022, Proceedings of the National Academy of Sciences,
DOI: 10.1073/pnas.2106858119.
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