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GWAS Study

A generalized linear mixed model association tool for biobank-scale data.

Jiang L, Zheng Z, Fang H et al.

34737426 PubMed ID
GWAS Study Type
456348 Participants
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Chapter I

Publication Details

Comprehensive information about this research publication

Authors

JL
Jiang L
ZZ
Zheng Z
FH
Fang H
YJ
Yang J
Chapter II

Abstract

Summary of the research findings

Compared with linear mixed model-based genome-wide association (GWA) methods, generalized linear mixed model (GLMM)-based methods have better statistical properties when applied to binary traits but are computationally much slower. In the present study, leveraging efficient sparse matrix-based algorithms, we developed a GLMM-based GWA tool, fastGWA-GLMM, that is severalfold to orders of magnitude faster than the state-of-the-art tools when applied to the UK Biobank (UKB) data and scalable to cohorts with millions of individuals. We show by simulation that the fastGWA-GLMM test statistics of both common and rare variants are well calibrated under the null, even for traits with extreme case-control ratios. We applied fastGWA-GLMM to the UKB data of 456,348 individuals, 11,842,647 variants and 2,989 binary traits (full summary statistics available at http://fastgwa.info/ukbimpbin ), and identified 259 rare variants associated with 75 traits, demonstrating the use of imputed genotype data in a large cohort to discover rare variants for binary complex traits.

976 European ancestry cases, 455,372 European ancestry controls

Chapter III

Study Statistics

Key metrics and study information

456348
Total Participants
GWAS
Study Type
No
Replicated
European
Ancestry
U.K.
Recruitment Country
Chapter IV

Analysis

Comprehensive review of health and genetic findings

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