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Transfer Learning

Catalog entries using this tag (links open the entry card on its page):

Entries

InsightGWAS (Migraine) (InsightGWAS)

AI GWAS Transformer Deep Learning Migraine Transfer Learning Nat Commun
PUBMED_LINK
41372126
FULL NAME
InsightGWAS - Transformer-based Deep Learning Enhances Migraine GWAS
DESCRIPTION
InsightGWAS is a Transformer-based model that enhances genetic discovery for migraine GWAS by integrating functional annotations and leveraging transfer learning from GWAS datasets of major depressive disorder. It identified 293 previously unreported loci from 53,109 cases and 230,876 controls. Published in Nature Communications.
TITLE
Transformer-based deep learning enhances discovery in migraine GWAS.
ABSTRACT
Migraine is a complex neurological disorder with substantial heritability, yet genome-wide association studies (GWAS) have explained only a fraction of its genetic component. We developed InsightGWAS, a Transformer-based model, to enhance genetic discovery for migraine by integrating functional annotations and leveraging transfer learning from GWAS datasets of major depressive disorder (MDD), identifying 293 previously unreported loci.
DOI
10.1038/s41467-025-65991-7

transferGWAS

AI GWAS Imaging Transfer Learning Deep Learning Retinal Fundus Representation Learning
PUBMED_LINK
35640976
FULL NAME
transferGWAS: GWAS of Images Using Deep Transfer Learning
DESCRIPTION
transferGWAS performs GWAS directly on full medical images using deep transfer learning: (1) a pretrained CNN (ResNet-based architecture, pretrained on ImageNet) extracts feature embeddings from raw images; (2) these learned representations are used as quantitative phenotypes for genetic association testing. Applied to UK Biobank retinal fundus images, identified 60 genomic regions including 7 novel candidate loci for eye-related traits. First demonstration of direct GWAS on whole images without predefined phenotype engineering.
URL
https://github.com/mkirchler/transferGWAS/
KEYWORDS
deep transfer learning, pretrained CNN, ResNet, retinal fundus, whole-image GWAS, representation learning, UK Biobank
TITLE
transferGWAS: GWAS of images using deep transfer learning.
Main citation
Kirchler M, Konigorski S, Norden M, Meltendorf C, Kloft M, Schurmann C, Lippert C. (2022) transferGWAS: GWAS of images using deep transfer learning. Bioinformatics, 38(14):3621-3628. doi:10.1093/bioinformatics/btac369. PMID 35640976
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.
DOI
10.1093/bioinformatics/btac369