Deep learning enables genetic analysis of the human thoracic aorta

深度学习可以对人类胸主动脉进行基因分析

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作者:James P Pirruccello, Mark D Chaffin, Elizabeth L Chou, Stephen J Fleming, Honghuang Lin, Mahan Nekoui, Shaan Khurshid, Samuel F Friedman, Alexander G Bick, Alessandro Arduini, Lu-Chen Weng, Seung Hoan Choi, Amer-Denis Akkad, Puneet Batra, Nathan R Tucker, Amelia W Hall, Carolina Roselli, Emelia J Be

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.

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