The 12-lead electrocardiogram as a biomarker of biological age
European Heart Journal - Digital Health

Abstract
We have demonstrated that a neural network is able to predict a person’s age from the electrocardiogram (ECG) [artificial intelligence (AI) ECG age]. However, some discrepancies were observed between ECG-derived and chronological ages. We assessed whether the difference between AI ECG and chronological age (Age-Gap) represents biological ageing and predicts long-term outcomes.
We previously developed a convolutional neural network to predict chronological age from ECGs. In this study, we used the network to analyse standard digital 12-lead ECGs in a cohort of 25 144 subjects ≥30 years who had primary care outpatient visits from 1997 to 2003. Subjects with coronary artery disease, stroke, and atrial fibrillation were excluded. We tested whether Age-Gap was correlated with total and cardiovascular mortality. Of 25 144 subjects tested (54% females, 95% Caucasian) followed for 12.4 ± 5.3 years, the mean chronological age was 53.7 ± 11.6 years and ECG-derived age was 54.6 ± 11 years (
The difference between AI ECG and chronological age is an independent predictor of all-cause and cardiovascular mortality. Discrepancies between these possibly reflect disease independent biological ageing.
Contributors

Adetola O Ladejobi
Author

Jose R Medina-Inojosa
Author

Michal Shelly Cohen
Author

Zachi I Attia
Author

Christopher G Scott
Author

Nathan K LeBrasseur
Author

Bernard J Gersh
Author

Peter A Noseworthy
Author

Paul A Friedman
Author

Suraj Kapa
Author

