Last updated:
Author(s):
Tyler A. Joseph, Joelle Mbatchou, Arkopravo Ghosh, Anthony Marcketta, Christopher E. Gillies, Jing Tang, Priyanka Nakka, Xinyuan Zhang, Jack A. Kosmicki, Carlo Sidore, Lauren Gurski, Maya Ghoussaini, Manuel A. R. Ferreira, Gonçalo Abecasis, Jonathan Marchini
Publish date:
12 November 2025
Journal:
Nature Genetics
PubMed ID:
41225158

Abstract

Meta-analysis of gene-based tests using single-variant summary statistics is a powerful strategy for genetic association studies. However, current approaches require sharing the covariance matrix between variants for each study and trait of interest. For large-scale studies with many phenotypes, these matrices can be cumbersome to calculate, store and share. Here, to address this challenge, we present REMETA – an efficient tool for meta-analysis of gene-based tests. REMETA uses a single sparse covariance reference file per study that is rescaled for each phenotype using single-variant summary statistics. We develop new methods for binary traits with case-control imbalance, and to estimate allele frequencies, genotype counts and effect sizes of burden tests. We demonstrate the performance and advantages of our approach through meta-analysis of five traits in 469,376 samples in UK Biobank. The open-source REMETA software will facilitate meta-analysis across large-scale exome sequencing studies from diverse studies that cannot easily be combined.

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1. The primary scientific goal of the research is to apply human genetics to the identification of new drug targets, the validation of existing targets…

Institution:
Regeneron Genetics Center, LLC, United States of America

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