AI RESEARCH

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

arXiv CS.LG

ArXi:2603.17248v1 Announce Type: new 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.