Deep learned representations of the resting 12-lead electrocardiogram to predict at peak exercise.

Details

Serval ID
serval:BIB_2AE6B4314E0C
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Deep learned representations of the resting 12-lead electrocardiogram to predict at peak exercise.
Journal
European journal of preventive cardiology
Author(s)
Khurshid S., Churchill T.W., Diamant N., Di Achille P., Reeder C., Singh P., Friedman S.F., Wasfy M.M., Alba G.A., Maron B.A., Systrom D.M., Wertheim B.M., Ellinor P.T., Ho J.E., Baggish A.L., Batra P., Lubitz S.A., Guseh J.S.
ISSN
2047-4881 (Electronic)
ISSN-L
2047-4873
Publication state
Published
Issued date
25/01/2024
Peer-reviewed
Oui
Volume
31
Number
2
Pages
252-262
Language
english
Notes
Publication types: Journal Article
Publication Status: ppublish
Abstract
To leverage deep learning on the resting 12-lead electrocardiogram (ECG) to estimate peak oxygen consumption (V˙O2peak) without cardiopulmonary exercise testing (CPET).
V ˙ O 2 peak estimation models were developed in 1891 individuals undergoing CPET at Massachusetts General Hospital (age 45 ± 19 years, 38% female) and validated in a separate test set (MGH Test, n = 448) and external sample (BWH Test, n = 1076). Three penalized linear models were compared: (i) age, sex, and body mass index ('Basic'), (ii) Basic plus standard ECG measurements ('Basic + ECG Parameters'), and (iii) basic plus 320 deep learning-derived ECG variables instead of ECG measurements ('Deep ECG-V˙O2'). Associations between estimated V˙O2peak and incident disease were assessed using proportional hazards models within 84 718 primary care patients without CPET. Inference ECGs preceded CPET by 7 days (median, interquartile range 27-0 days). Among models, Deep ECG-V˙O2 was most accurate in MGH Test [r = 0.845, 95% confidence interval (CI) 0.817-0.870; mean absolute error (MAE) 5.84, 95% CI 5.39-6.29] and BWH Test (r = 0.552, 95% CI 0.509-0.592, MAE 6.49, 95% CI 6.21-6.67). Deep ECG-V˙O2 also outperformed the Wasserman, Jones, and FRIEND reference equations (P < 0.01 for comparisons of correlation). Performance was higher in BWH Test when individuals with heart failure (HF) were excluded (r = 0.628, 95% CI 0.567-0.682; MAE 5.97, 95% CI 5.57-6.37). Deep ECG-V˙O2 estimated V˙O2peak <14 mL/kg/min was associated with increased risks of incident atrial fibrillation [hazard ratio 1.36 (95% CI 1.21-1.54)], myocardial infarction [1.21 (1.02-1.45)], HF [1.67 (1.49-1.88)], and death [1.84 (1.68-2.03)].
Deep learning-enabled analysis of the resting 12-lead ECG can estimate exercise capacity (V˙O2peak) at scale to enable efficient cardiovascular risk stratification.
Keywords
Humans, Female, Adult, Middle Aged, Male, Prognosis, Electrocardiography, Exercise Test/methods, Heart Failure, Oxygen Consumption, Atrial fibrillation, Cardiorespiratory fitness, Deep learning, Electronic health records, Peak V̇O2, Risk prediction
Pubmed
Web of science
Create date
09/10/2023 11:24
Last modification date
30/01/2024 7:19
Usage data