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ECG-GraphNet: Advanced arrhythmia classification based on graph convolutional networks

Author(s)
Lee, MyeonghunLim, JiwooKim, Jinkook
Issued Date
2025-08
DOI
10.1016/j.hroo.2025.05.012
URI
https://scholarworks.unist.ac.kr/handle/201301/91406
Fulltext
https://www.sciencedirect.com/science/article/pii/S266650182500162X?pes=vor&utm_source=clarivate&getft_integrator=clarivate
Citation
HEART RHYTHM O2, v.6, no.8, pp.1199 - 1211
Abstract
Background Deep learning has significantly improved medical diagnostics, particularly in electrocardiogram (ECG) analysis, yet accurate classification of arrhythmias remains challenging. Objective We propose Electrocardiogram Graph Convolutional Network (ECG-GraphNet), a graph convolutional network designed to classify arrhythmias into 3 types: normal (N), supraventricular ectopic (S), and ventricular ectopic (V) beats. Methods ECG-GraphNet utilizes a novel graph representation of ECG data in which the P wave, QRS complex, and T wave are modeled as individual nodes. A unique QRS-centered weighted average pooling method is employed to enhance beat-specific feature extraction. We systematically explored various aspects including node features, edge definitions, a data augmentation method, and architecture configuration to determine the optimal model design. Experiments were conducted on 10-second ECG recordings from 328 patients using a single-lead device. Results The optimized ECG-GraphNet achieved a Macro F1 score of 88.61% in 5-fold cross-validation. Scalability experiments further demonstrated its robustness, with Macro F1 scores of 85.21% and 87.03% across diverse ECG patterns and sizes. Conclusion Our novel approach and comprehensive analysis underscore the potential advantages of ECG-GraphNet in clinical diagnosis and monitoring.
Publisher
ELSEVIER
ISSN
2666-5018
Keyword (Author)
ArrhythmiaMachine learningDeep learningGraph convolutional networkElectrocardiogramCardiovascular disease
Keyword
HEARTBEAT CLASSIFICATIONP-WAVE

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