MST-DGCN: Multi-Scale Temporal–Dynamic Graph Convolutional with Orthogonal Gate for Imbalanced Multi-Label ECG Arrhythmia Classification

Jie Chen, Mingfeng Jiang, Xiaoyu He, Yang Li, Jucheng Zhang, Juan Li, Yongquan Wu, Wei Ke

Research output: Contribution to journalArticlepeer-review

Abstract

Multi-label arrhythmia classification from 12-lead ECG signals is a tricky problem, including spatiotemporal feature extraction, feature fusion, and class imbalance. To address these issues, a multi-scale temporal–dynamic graph convolutional with orthogonal gates method, termed MST-DGCN, is proposed for ECG arrhythmia classification. In this method, a temporal–dynamic graph convolution with dynamic adjacency matrices is used to learn spatiotemporal patterns jointly, and an orthogonal gated fusion mechanism is used to eliminate redundancy, so as to strength their complementarity and independence through adjusting the significance of features dynamically. Moreover, a multi-instance learning strategy is proposed to alleviate class imbalance by adjusting the proportion of a few arrhythmia samples through adaptive label allocation. After validating on the St Petersburg INCART dataset under stringent inter-patient settings, the experimental results show that the proposed MST-DGCN method can achieve the best classification performance with an F1-score of 73.66% (+6.2% over prior baseline methods), with concurrent improvements in AUC (70.92%) and mAP (85.24%), while maintaining computational efficiency.

Original languageEnglish
Article number219
JournalAI (Switzerland)
Volume6
Issue number9
DOIs
Publication statusPublished - Sept 2025

Keywords

  • ECG
  • dynamic graph convolution
  • multi-label arrhythmia classification
  • multi-scale
  • orthogonal gated fusion

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