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Hybrid machine learning models for enhanced arrhythmia detection from ECG signals using autoencoder and convolution features

  • Subir Biswas
  • , Prabodh Kumar Sahoo
  • , Brajesh Kumar
  • , Adyasha Rath
  • , Prince Jain
  • , Ganpati Panda
  • , Haipeng Liu
  • , Xinhong Wang
    • C. V. Raman Global University
    • Parul University
    • National Medical Research Association
    • The Second Affiliated Hospital Zhejiang University

    Research output: Contribution to journalArticlepeer-review

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    Abstract

    Automated arrhythmia detection from electrocardiogram (ECG) signals is crucial and important for the early treatment of cardiac disease (CD). In this investigation, eight machine-learning models have been developed to identify improved ECG arrhythmia detection using two standard datasets (MIT-BIH Arrhythmia and the ECG 5000). In the first phase, two types of feature extraction schemes (autoencoder) and (Convolution) are used to obtain relevant features from ECG samples and subsequently, eight ML models are successfully trained and tested to find various performance matrices through simulation-based experiments. Then, the TOPSIS and mRMR ranking schemes are used to rank the ML models and identify the three best-performing models recommended for real-time arrhythmia detection. In this study, it is observed that for the same number of input features, models based on autoencoder features offer enhanced performance compared to those based on convolutional features. It is generally observed that the top identified hybrid model, Autoencoder Features with Neural Network (AEFNN) on the MIT-BIH dataset, achieves an accuracy of 97.96% and on the ECG5000 dataset, the hybrid model achieves an accuracy of 99.20%. This proposed model can be utilized for the early detection of arrhythmia, particularly in large-scale healthcare screening programs, thereby aiding in timely diagnosis and intervention. In this study, two types of features are used to model development in future work. Other relevant important features can be extracted from ECG samples, and those features can be used to develop accurate models to identify Heart disease.
    Original languageEnglish
    Article numbere0334607
    Number of pages25
    JournalPLoS ONE
    Volume20
    Issue number12
    DOIs
    Publication statusPublished - 15 Dec 2025

    Bibliographical note

    Publisher Copyright:
    © 2025 Biswas et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

    Funding

    This work was supported by the Zhejiang Provincial Natural Science Foundation (QN25H180024) and Zhejiang Provincial Health Commission Medical Health Science and Technology Project (Grant No. 2024KY1036).

    FundersFunder number
    Natural Science Foundation of Zhejiang ProvinceQN25H180024
    Medical Health Science and Technology Project of Zhejiang Provincial Health Commission2024KY1036

      Keywords

      • Humans
      • Electrocardiography
      • Algorithms
      • Signal Processing, Computer-Assisted
      • Arrhythmias, Cardiac
      • Machine Learning
      • Neural Networks, Computer
      • Autoencoder

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