Litcius/Paper detail

transferGWAS: GWAS of images using deep transfer learning

Matthias Kirchler, Stefan Konigorski, Matthias Norden, Christian Meltendorf, Marius Kloft, Claudia Schurmann, Christoph Lippert

2022Bioinformatics42 citationsDOI

Abstract

MOTIVATION: Medical images can provide rich information about diseases and their biology. However, investigating their association with genetic variation requires non-standard methods. We propose transferGWAS, a novel approach to perform genome-wide association studies directly on full medical images. First, we learn semantically meaningful representations of the images based on a transfer learning task, during which a deep neural network is trained on independent but similar data. Then, we perform genetic association tests with these representations. RESULTS: We validate the type I error rates and power of transferGWAS in simulation studies of synthetic images. Then we apply transferGWAS in a genome-wide association study of retinal fundus images from the UK Biobank. This first-of-a-kind GWAS of full imaging data yielded 60 genomic regions associated with retinal fundus images, of which 7 are novel candidate loci for eye-related traits and diseases. AVAILABILITY AND IMPLEMENTATION: Our method is implemented in Python and available at https://github.com/mkirchler/transferGWAS/. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

Topics & Concepts

Genome-wide association studyComputer sciencePython (programming language)Artificial intelligenceDeep learningBiobankTransfer of learningGenetic associationAssociation (psychology)Pattern recognition (psychology)Machine learningBioinformaticsBiologyGeneticsGenotypePhilosophyGeneSingle-nucleotide polymorphismEpistemologyOperating systemRetinal Imaging and AnalysisRetinal Diseases and TreatmentsGenetic Associations and Epidemiology