Diagnosis of arrhythmias with few abnormal ECG samples using metric-based meta learning.

Journal: Computers in biology and medicine
Published Date:

Abstract

A major challenge in artificial intelligence based ECG diagnosis lies that it is difficult to obtain sufficient annotated training samples for each rhythm type, especially for rare diseases, which makes many approaches fail to achieve the desired performance with limited ECG records. In this paper, we propose a Meta Siamese Network (MSN) based on metric learning to achieve high accuracy for automatic ECG arrhythmias diagnosis with limited ECG records. First, the ECG signals from three different ECG datasets are preprocessed through resampling, wavelet denoising, R-wave localization, heartbeat segmentation and Z-score normalization. Then, an ECG dataset with limited records is constructed to verify the performance of the proposed model and explore variation of model performance with the sample size. Second, a metric-based meta-learning framework is proposed to address the challenge of few-shot learning for automatic ECG diagnosis of cardiac arrhythmia, and siamese network is employed to achieve arrhythmia diagnosis based on similarity metric. Finally, the N-way K-shot meta-testing strategy is proposed based on the siamese network with double inputs, and the experimental results demonstrate that the proposed strategy can effectively improve the robustness of the proposed model.

Authors

  • Zhenxing Liu
    School of information Science and Engineering, Wuhan University of Science and Technology, Wuhan 430081, China. Electronic address: zhenxingliu@wust.edu.cn.
  • Yujie Chen
    State Key Laboratory of Optoelectronic Materials and Technologies, School of Electronics and Information Technology, Sun Yat-sen University, 510275 Guangzhou, China.
  • Yong Zhang
    Outpatient Department of Hepatitis, The Sixth Affiliated People's Hospital of Dalian Medical University, Dalian, Liaoning, China.
  • Shaolin Ran
    School of Artificial Intelligence and Automation, Huazhong University of Science and Technology, Wuhan 430074, China. Electronic address: ranshaolin@hust.edu.cn.
  • Cheng Cheng
    School of Artificial Intelligence and Automation, MOE Key Lab of Intelligent Control and Image Processing, Huazhong University of Science and Technology, Wuhan 430074, China.
  • Guili Yang
    Hospital of WUST, Wuhan University of Science and Technology, Wuhan 430081, China. Electronic address: 1037551909@qq.com.