Abstract
Existing imaging genetics studies have been mostly limited in scope by using imaging-derived phenotypes defined by human experts. Here, leveraging new breakthroughs in self-supervised deep representation learning, we propose a new approach, image-based genome-wide association study (iGWAS), for identifying genetic factors associated with phenotypes discovered from medical images using contrastive learning. Using retinal fundus photos, our model extracts a 128-dimensional vector representing features of the retina as phenotypes. After training the model on 40,000 images from the EyePACS dataset, we generated phenotypes from 130,329 images of 65,629 British White participants in the UK Biobank. We conducted GWAS on these phenotypes and identified 14 loci with genome-wide significance (p<5×10−8 and intersection of hits from left and right eyes). We also did GWAS on the retina color, the average color of the center region of the retinal fundus photos. The GWAS of retina colors identified 34 loci, 7 are overlapping with GWAS of raw image phenotype. Our results establish the feasibility of this new framework of genomic study based on self-supervised phenotyping of medical images.
Funder
National Eye Institute
National Institute on Aging
American Diabetes Association
Retinal Research Foundation
Research to Prevent Blindness
NASA
National Center for Advancing Translational Sciences
National Institute of Neurological Disorders and Stroke
Cancer Prevention and Research Institute of Texas
Publisher
Public Library of Science (PLoS)
Reference63 articles.
1. Deep learning enables genetic analysis of the human thoracic aorta;JP Pirruccello;Nat Genet,2022
2. Genome wide association analysis of the heart using high-resolution 3D cardiac MRI identifies new genetic loci underlying cardiac structure and function.;Marvao A de,2016
3. Common genetic variation influencing human white matter microstructure;B Zhao;Science,2021
4. Deep phenotyping: deep learning for temporal phenotype/genotype classification.;S Taghavi Namin;Plant Methods,2018
5. High-throughput phenotyping with deep learning gives insight into the genetic architecture of flowering time in wheat.;X Wang;Gigascience.,2019
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献