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GWAS Study

Efficient genome-wide association in biobanks using topic modeling identifies multiple novel disease loci.

McCoy TH, Castro VM, Snapper LA et al.

28861588 PubMed ID
GWAS Study Type
10845 Participants
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Chapter I

Publication Details

Comprehensive information about this research publication

Authors

MT
McCoy TH
CV
Castro VM
SL
Snapper LA
HK
Hart KL
PR
Perlis RH
Chapter II

Abstract

Summary of the research findings

Biobanks and national registries represent a powerful tool for genomic discovery, but rely on diagnostic codes that may be unreliable and fail to capture the relationship between related diagnoses. We developed an efficient means of conducting genome-wide association studies using combinations of diagnostic codes from electronic health records (EHR) for 10845 participants in a biobanking program at two large academic medical centers. Specifically, we applied latent Dirichilet allocation to fit 50 disease topics based on diagnostic codes, then conducted genome-wide common-variant association for each topic. In sensitivity analysis, these results were contrasted with those obtained from traditional single-diagnosis phenome-wide association analysis, as well as those in which only a subset of diagnostic codes are included per topic. In meta-analysis across three biobank cohorts, we identified 23 disease-associated loci with p<1e-15, including previously associated autoimmune disease loci. In all cases, observed significant associations were of greater magnitude than for single phenome-wide diagnostic codes, and incorporation of less strongly-loading diagnostic codes enhanced association. This strategy provides a more efficient means of phenome-wide association in biobanks with coded clinical data.

10,845 European ancestry individuals

Chapter III

Study Statistics

Key metrics and study information

10845
Total Participants
GWAS
Study Type
No
Replicated
European
Ancestry
Chapter IV

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