Explainable Deep Learning-based Classification of Wolff-Parkinson-White Electrocardiographic Signals
Alice Ragonesi, Stefania Fresca, Karli Gillette, Stefan Kurath-Koller, Gernot Plank, Elena Zappon

TL;DR
This paper presents a deep learning model for localizing Wolff-Parkinson-White syndrome accessory pathways from ECGs, integrating explainability methods to enhance interpretability and clinical trust.
Contribution
It introduces a novel DL approach trained on synthetic ECG data with integrated XAI techniques for transparent AP localization across 24 cardiac regions.
Findings
Localization accuracy above 95%
High sensitivity (94.32%) and specificity (99.78%)
Identification of key ECG leads for AP localization
Abstract
Wolff-Parkinson-White (WPW) syndrome is a cardiac electrophysiology (EP) disorder caused by the presence of an accessory pathway (AP) that bypasses the atrioventricular node, faster ventricular activation rate, and provides a substrate for atrio-ventricular reentrant tachycardia (AVRT). Accurate localization of the AP is critical for planning and guiding catheter ablation procedures. While traditional diagnostic tree (DT) methods and more recent machine learning (ML) approaches have been proposed to predict AP location from surface electrocardiogram (ECG), they are often constrained by limited anatomical localization resolution, poor interpretability, and the use of small clinical datasets. In this study, we present a Deep Learning (DL) model for the localization of single manifest APs across 24 cardiac regions, trained on a large, physiologically realistic database of synthetic ECGs…
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Taxonomy
TopicsCardiac Arrhythmias and Treatments · Cardiac electrophysiology and arrhythmias · ECG Monitoring and Analysis
