Foundation Models for ECG: Leveraging Hybrid Self-Supervised Learning for Advanced Cardiac Diagnostics
Using foundation models enhanced by self-supervised learning (SSL) methods presents an innovative approach to electrocardiogram (ECG) analysis, which is crucial for cardiac health monitoring and diagnosis. This study comprehensively evaluates foundation models for ECGs, leveraging SSL methods, inclu...
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Zusammenfassung: | Using foundation models enhanced by self-supervised learning (SSL) methods
presents an innovative approach to electrocardiogram (ECG) analysis, which is
crucial for cardiac health monitoring and diagnosis. This study comprehensively
evaluates foundation models for ECGs, leveraging SSL methods, including
generative and contrastive learning, on a vast dataset comprising approximately
1.3 million ECG samples. By integrating these methods with consideration of the
unique characteristics of ECGs, we developed a Hybrid Learning (HL) for
foundation models that improve the precision and reliability of cardiac
diagnostics. The HL-based foundation model adeptly captures the intricate
details of ECGs, enhancing diagnostic capability. The results underscore the
considerable potential of SSL-enhanced foundation models in clinical settings,
setting the stage for future research into their scalable applications across a
broader range of medical diagnostics. This work sets a new standard in the ECG
field, emphasizing the transformative influence of tailored, data-driven model
training on the effectiveness and accuracy of medical diagnostics. |
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DOI: | 10.48550/arxiv.2407.07110 |