Learning ECG Representations via Poly-Window Contrastive Learning
Yi Yuan, Joseph Van Duyn, Runze Yan, Zhuoyi Huang, Sulaiman Vesal, Sergey Plis, Xiao Hu, Gloria Hyunjung Kwak, Ran Xiao, Alex Fedorov

TL;DR
This paper introduces a poly-window contrastive learning framework for ECG analysis that leverages multiple temporal windows to learn invariant and meaningful features, outperforming traditional methods while reducing training time.
Contribution
The work presents a novel poly-window contrastive learning approach that explicitly captures temporal structure in ECG signals, improving representation quality and training efficiency.
Findings
Outperforms two-view contrastive methods in AUROC and F1 scores.
Reduces pre-training epochs and total computation time significantly.
Demonstrates robustness across hyperparameters and design choices.
Abstract
Electrocardiogram (ECG) analysis is foundational for cardiovascular disease diagnosis, yet the performance of deep learning models is often constrained by limited access to annotated data. Self-supervised contrastive learning has emerged as a powerful approach for learning robust ECG representations from unlabeled signals. However, most existing methods generate only pairwise augmented views and fail to leverage the rich temporal structure of ECG recordings. In this work, we present a poly-window contrastive learning framework. We extract multiple temporal windows from each ECG instance to construct positive pairs and maximize their agreement via statistics. Inspired by the principle of slow feature analysis, our approach explicitly encourages the model to learn temporally invariant and physiologically meaningful features that persist across time. We validate our approach through…
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Taxonomy
TopicsECG Monitoring and Analysis · Atrial Fibrillation Management and Outcomes · Cardiac electrophysiology and arrhythmias
