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MINA: Multilevel Knowledge-Guided Attention for Modeling Electrocardiography Signals
Shenda Hong; Cao Xiao; Tengfei Ma; Hongyan Li; Jimeng Sun

Abstract
Electrocardiography (ECG) signals are commonly used to diagnose various cardiac abnormalities. Recently, deep learning models showed initial success on modeling ECG data, however they are mostly black-box, thus lack interpretability needed for clinical usage. In this work, we propose MultIlevel kNowledge-guided Attention networks (MINA) that predict heart diseases from ECG signals with intuitive explanation aligned with medical knowledge. By extracting multilevel (beat-, rhythm- and frequency-level) domain knowledge features separately, MINA combines the medical knowledge and ECG data via a multilevel attention model, making the learned models highly interpretable. Our experiments showed MINA achieved PR-AUC 0.9436 (outperforming the best baseline by 5.51%) in real world ECG dataset. Finally, MINA also demonstrated robust performance and strong interpretability against signal distortion and noise contamination.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| atrial-fibrillation-detection-on-physionet | MINA | F1: 0.8342 PR-AUC: 0.9436 ROC-AUC: 0.9488 |
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