CLINet: A novel deep learning network for ECG signal classification.

Journal: Journal of electrocardiology
Published Date:

Abstract

Machine learning is poised to revolutionize medicine with algorithms that spot cardiac arrhythmia. An automated diagnostic approach can boost the efficacy of diagnosing life-threatening arrhythmia disorders in routine medical procedures. In this paper, we propose a deep learning network CLINet for ECG signal classification. Our network uses convolution, LSTM and involution layers to bring their unique advantages together. For both convolution and involution layers, we use multiple, large size kernels for multi-scale representation learning. CLINet does not require complicated pre-processing and can handle electrocardiograms of any length. Our network achieves 99.90% accuracy on the ICCAD dataset and 99.94% accuracy on the MIT-BIH dataset. With only 297 K parameters, our model can be easily embedded in smart wearable devices. The source code of CLINet is available at https://github.com/CandleLabAI/CLINet-ECG-Classification-2024.

Authors

  • Ananya Mantravadi
    IIIT Raichur, Karnataka, India.
  • Siddharth Saini
    IIIT Raichur, Karnataka, India.
  • Sai Chandra Teja R
    Green PMU Semi Pvt Ltd, Hyderabad, Telangana, India. Electronic address: saichandrateja@greenpmusemi.com.
  • Sparsh Mittal
    Indian Institute of Technology (IIT) Roorkee, India.
  • Shrimay Shah
    IIT Gandhinagar, Palaj, Gujrat, India.
  • Sri Devi R
    Sri Venkateswara Institute of Medical Sciences SVIMS, Tirupati, Andhra Pradesh, India.
  • Rekha Singhal
    TCS Research, New York, United States of America.