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4 months ago

MINA: Multilevel Knowledge-Guided Attention for Modeling Electrocardiography Signals

Shenda Hong; Cao Xiao; Tengfei Ma; Hongyan Li; Jimeng Sun

MINA: Multilevel Knowledge-Guided Attention for Modeling Electrocardiography Signals

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

hsd1503/MINA
Official
pytorch

Benchmarks

BenchmarkMethodologyMetrics
atrial-fibrillation-detection-on-physionetMINA
F1: 0.8342
PR-AUC: 0.9436
ROC-AUC: 0.9488

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MINA: Multilevel Knowledge-Guided Attention for Modeling Electrocardiography Signals | Papers | HyperAI