PhysioCLR improved mean AUROC by 12% compared to the strongest baseline across diverse ECG datasets, enhancing arrhythmia classification effectiveness.
Does the PhysioCLR framework improve the performance and generalizability of AI-based ECG arrhythmia classification compared to baseline models?
ECG datasets including two public datasets (Chapman and Georgia) for multilabel ECG diagnoses, and a private ICU dataset for binary classification
PhysioCLR (Physiology-aware Contrastive Learning Representation for ECG), a physiology-aware contrastive learning framework incorporating domain-specific priors
Baseline AI models (strongest baseline)
Mean AUROC for ECG diagnoses/arrhythmia classificationsurrogate
Incorporating physiological priors into self-supervised learning significantly improves the performance and generalizability of AI models for ECG-based arrhythmia classification.
Absolute Event Rate: 0% vs 0%
Electrocardiograms (ECGs) play a crucial role in diagnosing heart conditions; however, the effectiveness of artificial intelligence (AI)-based ECG analysis is often hindered by the limited availability of labeled data. Self-supervised learning (SSL) can address this by leveraging large-scale unlabeled data. We introduce PhysioCLR (Physiology-aware Contrastive Learning Representation for ECG), a physiology-aware contrastive learning framework that incorporates domain-specific priors to enhance the generalizability and clinical relevance of ECG-based arrhythmia classification. Methods: During pretraining, PhysioCLR learns to bring together embeddings of samples that share similar clinically relevant features while pushing apart those that are dissimilar. Unlike existing methods, our method integrates ECG physiological similarity cues into contrastive learning, promoting the learning of clinically meaningful representations. Additionally, we introduce ECG-specific augmentations that preserve the ECG category post-augmentation and propose a hybrid loss function to further refine the quality of learned representations. Results: We evaluate PhysioCLR on two public ECG datasets, Chapman and Georgia, for multilabel ECG diagnoses, as well as a private ICU dataset labeled for binary classification. Across the Chapman, Georgia, and private cohorts, PhysioCLR boosts the mean AUROC by 12% relative to the strongest baseline, underscoring its robust cross-dataset generalization. Conclusion: By embedding physiological knowledge into contrastive learning, PhysioCLR enables the model to learn clinically meaningful and transferable ECG features. Significance: PhysioCLR demonstrates the potential of physiology-informed SSL to offer a promising path toward more effective and label-efficient ECG diagnostics.
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Maghsoodi et al. (Thu,) reported a other. PhysioCLR improved mean AUROC by 12% compared to the strongest baseline across diverse ECG datasets, enhancing arrhythmia classification effectiveness.
synapsesocial.com/papers/6975b28afeba4585c2d6dff6 — DOI: https://doi.org/10.1109/tbme.2026.3656904
Nooshin Maghsoodi
Queen's University
Sarah Nassar
Paul Wilson
University of Toronto
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