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Pathology-Aware Multi-View Contrastive Learning for Patient-Independent ECG Reconstruction

arXiv cs.LG / 3/19/2026

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Key Points

  • Introduces Pathology-Aware Multi-View Contrastive Learning to reconstruct a full 12-lead ECG from a reduced-lead set by regularizing the latent space with a pathology manifold.
  • Combines high-fidelity time-domain waveforms with pathology-aware embeddings learned via supervised contrastive alignment to preserve disease morphology while suppressing anatomical variability.
  • Maximizes mutual information between latent representations and clinical labels to filter out nuisance anatomical variables in the reconstruction process.
  • Demonstrates approximately 76% RMSE reduction versus state-of-the-art in a patient-independent setting on PTB-XL, with cross-dataset generalization to the PTB Diagnostic Database.
  • Addresses an ill-posed inverse problem and moves toward hardware-portable, diagnostic-grade ECG reconstruction.

Abstract

Reconstructing a 12-lead electrocardiogram (ECG) from a reduced lead set is an ill-posed inverse problem due to anatomical variability. Standard deep learning methods often ignore underlying cardiac pathology losing vital morphology in precordial leads. We propose Pathology-Aware Multi-View Contrastive Learning, a framework that regularizes the latent space through a pathological manifold. Our architecture integrates high-fidelity time-domain waveforms with pathology-aware embeddings learned via supervised contrastive alignment. By maximizing mutual information between latent representations and clinical labels, the framework learns to filter anatomical "nuisance" variables. On the PTB-XL dataset, our method achieves approx. 76\% reduction in RMSE compared to state-of-the-art model in patient-independent setting. Cross-dataset evaluation on the PTB Diagnostic Database confirms superior generalization, bridging the gap between hardware portability and diagnostic-grade reconstruction.