Transfer learning enables prediction of myocardial injury from continuous single-lead electrocardiography.
Boyang Tom JinRaj PalletiSiyu ShiAndrew Y NgJames V QuinnPranav RajpurkarDavid A KimPublished in: Journal of the American Medical Informatics Association : JAMIA (2022)
Deep learning models pretrained on labeled 12-lead ECGs can predict myocardial injury from noisy, continuous monitor data early in a patient's presentation. The utility of continuous single-lead ECG in the risk stratification of chest pain has implications for wearable devices and preclinical settings, where external validation of the approach is needed.