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arxiv: 2503.00711 · v1 · pith:4J73IFXGnew · submitted 2025-03-02 · 💻 cs.LG · cs.AI

OpenECG: Benchmarking ECG Foundation Models with Public 1.2 Million Records

classification 💻 cs.LG cs.AI
keywords databyoldatasetssimclranalysisecg-fmsexperimentsfoundation
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This study introduces OpenECG, a large-scale benchmark of 1.2 million 12-lead ECG recordings from nine centers, to evaluate ECG foundation models (ECG-FMs) trained on public datasets. We investigate three self-supervised learning methods (SimCLR, BYOL, MAE) with ResNet-50 and Vision Transformer architectures, assessing model generalization through leave-one-dataset-out experiments and data scaling analysis. Results show that pre-training on diverse datasets significantly improves generalization, with BYOL and MAE outperforming SimCLR, highlighting the efficacy of feature-consistency and generative learning over contrastive approaches. Data scaling experiments reveal that performance saturates at 60-70% of total data for BYOL and MAE, while SimCLR requires more data. These findings demonstrate that publicly available ECG data can match or surpass proprietary datasets in training robust ECG-FMs, paving the way for scalable, clinically meaningful AI-driven ECG analysis.

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Cited by 3 Pith papers

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  1. Pretraining Strategies and Scaling for ECG Foundation Models: A Systematic Study

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    Contrastive predictive coding pretraining combined with structured state space models yields the strongest ECG foundation models, with continued gains from scaling data to 11 million samples.

  2. Pretraining on Sleep Data Improves non-Sleep Biosignal Tasks

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    Sleep-only contrastive pretraining improves results on non-sleep EEG and ECG tasks relative to training from scratch and matches or exceeds some specialized models.

  3. Extending Pretrained 10-Second ECG Foundation Models to Longer Horizons

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    A parameter-efficient plug-in framework adds structurally compatible long-sequence processing and semantically informed temporal modeling to extend pretrained 10-second ECG foundation models to longer variable-length inputs.