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Detecting COVID-19 from digitized ECG printouts using 1D convolutional neural networks

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Listed:
  • Thao Nguyen
  • Hieu H Pham
  • Khiem H Le
  • Anh-Tu Nguyen
  • Tien Thanh
  • Cuong Do

Abstract

The COVID-19 pandemic has exposed the vulnerability of healthcare services worldwide, raising the need to develop novel tools to provide rapid and cost-effective screening and diagnosis. Clinical reports indicated that COVID-19 infection may cause cardiac injury, and electrocardiograms (ECG) may serve as a diagnostic biomarker for COVID-19. This study aims to utilize ECG signals to detect COVID-19 automatically. We propose a novel method to extract ECG signals from ECG paper records, which are then fed into one-dimensional convolution neural network (1D-CNN) to learn and diagnose the disease. To evaluate the quality of digitized signals, R peaks in the paper-based ECG images are labeled. Afterward, RR intervals calculated from each image are compared to RR intervals of the corresponding digitized signal. Experiments on the COVID-19 ECG images dataset demonstrate that the proposed digitization method is able to capture correctly the original signals, with a mean absolute error of 28.11 ms. The 1D-CNN model (SEResNet18), which is trained on the digitized ECG signals, allows to identify between individuals with COVID-19 and other subjects accurately, with classification accuracies of 98.42% and 98.50% for classifying COVID-19 vs. Normal and COVID-19 vs. other classes, respectively. Furthermore, the proposed method also achieves a high-level of performance for the multi-classification task. Our findings indicate that a deep learning system trained on digitized ECG signals can serve as a potential tool for diagnosing COVID-19.

Suggested Citation

  • Thao Nguyen & Hieu H Pham & Khiem H Le & Anh-Tu Nguyen & Tien Thanh & Cuong Do, 2022. "Detecting COVID-19 from digitized ECG printouts using 1D convolutional neural networks," PLOS ONE, Public Library of Science, vol. 17(11), pages 1-17, November.
  • Handle: RePEc:plo:pone00:0277081
    DOI: 10.1371/journal.pone.0277081
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