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Applying masked autoencoder-based self-supervised learning for high-capability vision transformers of electrocardiographies

Author

Listed:
  • Shinnosuke Sawano
  • Satoshi Kodera
  • Naoto Setoguchi
  • Kengo Tanabe
  • Shunichi Kushida
  • Junji Kanda
  • Mike Saji
  • Mamoru Nanasato
  • Hisataka Maki
  • Hideo Fujita
  • Nahoko Kato
  • Hiroyuki Watanabe
  • Minami Suzuki
  • Masao Takahashi
  • Naoko Sawada
  • Masao Yamasaki
  • Masataka Sato
  • Susumu Katsushika
  • Hiroki Shinohara
  • Norifumi Takeda
  • Katsuhito Fujiu
  • Masao Daimon
  • Hiroshi Akazawa
  • Hiroyuki Morita
  • Issei Komuro

Abstract

The generalization of deep neural network algorithms to a broader population is an important challenge in the medical field. We aimed to apply self-supervised learning using masked autoencoders (MAEs) to improve the performance of the 12-lead electrocardiography (ECG) analysis model using limited ECG data. We pretrained Vision Transformer (ViT) models by reconstructing the masked ECG data with MAE. We fine-tuned this MAE-based ECG pretrained model on ECG-echocardiography data from The University of Tokyo Hospital (UTokyo) for the detection of left ventricular systolic dysfunction (LVSD), and then evaluated it using multi-center external validation data from seven institutions, employing the area under the receiver operating characteristic curve (AUROC) for assessment. We included 38,245 ECG-echocardiography pairs from UTokyo and 229,439 pairs from all institutions. The performances of MAE-based ECG models pretrained using ECG data from UTokyo were significantly higher than that of other Deep Neural Network models across all external validation cohorts (AUROC, 0.913–0.962 for LVSD, p

Suggested Citation

  • Shinnosuke Sawano & Satoshi Kodera & Naoto Setoguchi & Kengo Tanabe & Shunichi Kushida & Junji Kanda & Mike Saji & Mamoru Nanasato & Hisataka Maki & Hideo Fujita & Nahoko Kato & Hiroyuki Watanabe & Mi, 2024. "Applying masked autoencoder-based self-supervised learning for high-capability vision transformers of electrocardiographies," PLOS ONE, Public Library of Science, vol. 19(8), pages 1-17, August.
  • Handle: RePEc:plo:pone00:0307978
    DOI: 10.1371/journal.pone.0307978
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