Life-threatening ventricular arrhythmia prediction in patients with dilated cardiomyopathy using explainable electrocardiogram-based deep neural networks
EP Europace Journal

Abstract
While electrocardiogram (ECG) characteristics have been associated with life-threatening ventricular arrhythmias (LTVA) in dilated cardiomyopathy (DCM), they typically rely on human-derived parameters. Deep neural networks (DNNs) can discover complex ECG patterns, but the interpretation is hampered by their ‘black-box’ characteristics. We aimed to detect DCM patients at risk of LTVA using an inherently explainable DNN.
In this two-phase study, we first developed a variational autoencoder DNN on more than 1 million 12-lead median beat ECGs, compressing the ECG into 21 different factors (F): FactorECG. Next, we used two cohorts with a combined total of 695 DCM patients and entered these factors in a Cox regression for the composite LTVA outcome, which was defined as sudden cardiac arrest, spontaneous sustained ventricular tachycardia, or implantable cardioverter-defibrillator treated ventricular arrhythmia. Most patients were male (
Inherently explainable DNNs can detect patients at risk of LTVA which is mainly driven by P-wave abnormalities.
Contributors

Arjan Sammani
Author

Rutger R van de Leur
Author

Michiel T H M Henkens
Author

Mathias Meine
Author

Peter Loh
Author

Rutger J Hassink
Author

Daniel L Oberski
Author

Stephane R B Heymans
Author

Pieter A Doevendans
Author

Folkert W Asselbergs
Author

Anneline S J M te Riele
Author

