Abstract
Aims This study aims to identify and visualize electrocardiogram (ECG) features using an explainable deep learning–based algorithm to predict cardiac resynchronization therapy (CRT) outcome. Its performance is compared with current guideline ECG criteria and QRSAREA. Methods A deep learning algorithm, trained on 1.1 million ECGs from 251 473 patients, was
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