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Efficient meta-analysis of multivariate genome-wide association studies with Meta-MOSTest

Authors :
Aihua Lin
Alexey Shadrin
Dennis van der Meer
Guy Hindley
Weiqiu Cheng
Ida Elken Sønderby
Shahram Bahrami
Kevin S O’Connell
Zillur Rahman
Nadine Parker
Olav B Smeland
Chun C. Fan
Dominic Holland
Anders M Dale
Ole A Andreassen
Oleksandr Frei
Publication Year :
2022
Publisher :
Cold Spring Harbor Laboratory, 2022.

Abstract

MotivationGenome-wide association studies (GWAS) have been successful in identifying genetic variants associated with a particular phenotype. However, many complex phenotypes are influenced by multiple genetic variants with small effects. Detecting the genetic pleiotropy can provide insights into biological mechanisms influencing complex human phenotypes. The recently developed Multivariate Omnibus Statistical Test (MOSTest) has proven to be efficient and powerful, suited for complex large-scale data. The method substantially increased discovery of genetic variants associated with brain MRI phenotypes in the UK Biobank compared to conventionally use multivariate approach. Here we extend the MOSTest to meta-analysis (Meta-MOSTest), facilitating data analysis of multiple phenotypes across multiple cohorts. We evaluated our updated approach in the UK Biobank using brain MRI phenotypes, by comparing the discovery yield of the single-cohort MOSTest versus Meta-MOSTest through simulating sub-cohorts of different sample sizes from 265 to 26501 subjects.ResultsOur method works efficiently on large-scale cohorts with a large number of MRI phenotypes. We found that lower per-cohort sample sizes resulted in a reduced discovery yield indicating a loss of statistical power. However, with a minimum sample size of 250 subjects across cohorts, Meta-MOSTest was equivalent to MOSTest on discovery yield while maintaining a well-calibrated type I error and equivalent statistical power. We conclude that Meta-MOSTest is a useful tool for multivariate analysis across separate brain imaging genetics cohorts.Availability and implementationAll codes are freely available on GitHub: MOSTest and Meta-MOSTest.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........8c8be4ea3a28f4d92eef20b63b1bfd26
Full Text :
https://doi.org/10.1101/2022.08.18.504383