Deep learning and the electrocardiogram: review of the current state-of-the-art
EP Europace Journal

Abstract
In the recent decade, deep learning, a subset of artificial intelligence and machine learning, has been used to identify patterns in big healthcare datasets for disease phenotyping, event predictions, and complex decision making. Public datasets for electrocardiograms (ECGs) have existed since the 1980s and have been used for very specific tasks in cardiology, such as arrhythmia, ischemia, and cardiomyopathy detection. Recently, private institutions have begun curating large ECG databases that are orders of magnitude larger than the public databases for ingestion by deep learning models. These efforts have demonstrated not only improved performance and generalizability in these aforementioned tasks but also application to novel clinical scenarios. This review focuses on orienting the clinician towards fundamental tenets of deep learning, state-of-the-art prior to its use for ECG analysis, and current applications of deep learning on ECGs, as well as their limitations and future areas of improvement.
Contributors

Sulaiman Somani
Author

Adam J Russak
Author

Felix Richter
Author

Shan Zhao
Author

Akhil Vaid
Author

Fayzan Chaudhry
Author

Jessica K De Freitas
Author

Nidhi Naik
Author

Riccardo Miotto
Author

Girish N Nadkarni
Author

Jagat Narula
Author

Edgar Argulian
Author

Benjamin S Glicksberg
Author
