Author:
Libiseller-Egger Julian,Phelan Jody E.,Attia Zachi I.,Benavente Ernest Diez,Campino Susana,Friedman Paul A.,Lopez-Jimenez Francisco,Leon David A.,Clark Taane G.
Abstract
AbstractArtificial intelligence (AI)-based approaches can now use electrocardiograms (ECGs) to provide expert-level performance in detecting heart abnormalities and diagnosing disease. Additionally, patient age predicted from ECGs by AI models has shown great potential as a biomarker for cardiovascular age, where recent work has found its deviation from chronological age (“delta age”) to be associated with mortality and co-morbidities. However, despite being crucial for understanding underlying individual risk, the genetic underpinning of delta age is unknown. In this work we performed a genome-wide association study using UK Biobank data (n=34,432) and identified eight loci associated with delta age ($$p\le 5 \times 10^{-8}$$
p
≤
5
×
10
-
8
), including genes linked to cardiovascular disease (CVD) (e.g. SCN5A) and (heart) muscle development (e.g. TTN). Our results indicate that the genetic basis of cardiovascular ageing is predominantly determined by genes directly involved with the cardiovascular system rather than those connected to more general mechanisms of ageing. Our insights inform the epidemiology of CVD, with implications for preventative and precision medicine.
Funder
Wellcome Trust
Medical Research Council
Medical Research Council,United Kingdom
Publisher
Springer Science and Business Media LLC
Cited by
3 articles.
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