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Deep learning enables genetic analysis of the human thoracic aorta

Authors :
Pirruccello, James P.
Chaffin, Mark D.
Chou, Elizabeth L.
Fleming, Stephen J.
Lin, Honghuang
Nekoui, Mahan
Khurshid, Shaan
Friedman, Samuel F.
Bick, Alexander G.
Arduini, Alessandro
Weng, Lu-Chen
Choi, Seung Hoan
Akkad, Amer-Denis
Batra, Puneet
Tucker, Nathan R.
Hall, Amelia W.
Roselli, Carolina
Benjamin, Emelia J.
Vellarikkal, Shamsudheen K.
Gupta, Rajat M.
Stegmann, Christian M.
Juric, Dejan
Stone, James R.
Vasan, Ramachandran S.
Ho, Jennifer E.
Hoffmann, Udo
Lubitz, Steven A.
Philippakis, Anthony A.
Lindsay, Mark E.
Ellinor, Patrick T.
Source :
Nature Genetics; 20240101, Issue: Preprints p1-12, 12p
Publication Year :
2024

Abstract

Enlargement or aneurysm of the aorta predisposes to dissection, an important cause of sudden death. We trained a deep learning model to evaluate the dimensions of the ascending and descending thoracic aorta in 4.6 million cardiac magnetic resonance images from the UK Biobank. We then conducted genome-wide association studies in 39,688 individuals, identifying 82 loci associated with ascending and 47 with descending thoracic aortic diameter, of which 14 loci overlapped. Transcriptome-wide analyses, rare-variant burden tests and human aortic single nucleus RNA sequencing prioritized genes including SVIL, which was strongly associated with descending aortic diameter. A polygenic score for ascending aortic diameter was associated with thoracic aortic aneurysm in 385,621 UK Biobank participants (hazard ratio = 1.43 per s.d., confidence interval 1.32–1.54, P= 3.3 × 10−20). Our results illustrate the potential for rapidly defining quantitative traits with deep learning, an approach that can be broadly applied to biomedical images.

Details

Language :
English
ISSN :
10614036 and 15461718
Issue :
Preprints
Database :
Supplemental Index
Journal :
Nature Genetics
Publication Type :
Periodical
Accession number :
ejs58357790
Full Text :
https://doi.org/10.1038/s41588-021-00962-4