ECG-AuxNet achieves robust generalizability and clinically aligned interpretability for cardiac disease diagnosis by integrating spatial-temporal features through auxiliary learning.
ECG-AuxNet provides a generalizable and interpretable computational framework for automated cardiac disease diagnosis using ECGs.
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ECG-AuxNet effectively integrates spatial-temporal features through auxiliary learning, achieving robust generalizability in cardiac disease diagnosis with interpretability aligned with clinical expertise.
Shen et al. (Thu,) reported a other. ECG-AuxNet achieves robust generalizability and clinically aligned interpretability for cardiac disease diagnosis by integrating spatial-temporal features through auxiliary learning.