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GWAS Study

Inference of chronic obstructive pulmonary disease with deep learning on raw spirograms identifies new genetic loci and improves risk models.

Cosentino J, Behsaz B, Alipanahi B et al.

37069358 PubMed ID
GWAS Study Type
325027 Participants
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Chapter I

Publication Details

Comprehensive information about this research publication

Authors

CJ
Cosentino J
BB
Behsaz B
AB
Alipanahi B
MZ
McCaw ZR
HD
Hill D
ST
Schwantes-An TH
LD
Lai D
CA
Carroll A
HB
Hobbs BD
CM
Cho MH
MC
McLean CY
HF
Hormozdiari F
Chapter II

Abstract

Summary of the research findings

Chronic obstructive pulmonary disease (COPD), the third leading cause of death worldwide, is highly heritable. While COPD is clinically defined by applying thresholds to summary measures of lung function, a quantitative liability score has more power to identify genetic signals. Here we train a deep convolutional neural network on noisy self-reported and International Classification of Diseases labels to predict COPD case-control status from high-dimensional raw spirograms and use the model's predictions as a liability score. The machine-learning-based (ML-based) liability score accurately discriminates COPD cases and controls, and predicts COPD-related hospitalization without any domain-specific knowledge. Moreover, the ML-based liability score is associated with overall survival and exacerbation events. A genome-wide association study on the ML-based liability score replicates existing COPD and lung function loci and also identifies 67 new loci. Lastly, our method provides a general framework to use ML methods and medical-record-based labels that does not require domain knowledge or expert curation to improve disease prediction and genomic discovery for drug design.

325,027 European ancestry individuals

Chapter III

Study Statistics

Key metrics and study information

325027
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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