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Extracting fetal heart signals from Doppler using semi-supervised convolutional neural networks.
Hirono, Yuta; Kai, Chiharu; Yoshida, Akifumi; Sato, Ikumi; Kodama, Naoki; Uchida, Fumikage; Kasai, Satoshi.
Afiliação
  • Hirono Y; Major in Health and Welfare, Graduate School of Niigata University of Health and Welfare, Niigata, Japan.
  • Kai C; TOITU Co. Ltd., Tokyo, Japan.
  • Yoshida A; Major in Health and Welfare, Graduate School of Niigata University of Health and Welfare, Niigata, Japan.
  • Sato I; Department of Radiological Technology, Faculty of Medical Technology, Niigata University of Health and Welfare, Niigata, Japan.
  • Kodama N; Department of Radiological Technology, Faculty of Medical Technology, Niigata University of Health and Welfare, Niigata, Japan.
  • Uchida F; Major in Health and Welfare, Graduate School of Niigata University of Health and Welfare, Niigata, Japan.
  • Kasai S; Department of Nursing, Faculty of Nursing, Niigata University of Health and Welfare, Niigata, Japan.
Front Physiol ; 15: 1293328, 2024.
Article em En | MEDLINE | ID: mdl-39040082
ABSTRACT
Cardiotocography (CTG) measurements are critical for assessing fetal wellbeing during monitoring, and accurate assessment requires well-traceable CTG signals. The current FHR calculation algorithm, based on autocorrelation to Doppler ultrasound (DUS) signals, often results in periods of loss owing to its inability to differentiate signals. We hypothesized that classifying DUS signals by type could be a solution and proposed that an artificial intelligence (AI)-based approach could be used for classification. However, limited studies have incorporated the use of AI for DUS signals because of the limited data availability. Therefore, this study focused on evaluating the effectiveness of semi-supervised learning in enhancing classification accuracy, even in limited datasets, for DUS signals. Data comprising fetal heartbeat, artifacts, and two other categories were created from non-stress tests and labor DUS signals. With labeled and unlabeled data totaling 9,600 and 48,000 data points, respectively, the semi-supervised learning model consistently outperformed the supervised learning model, achieving an average classification accuracy of 80.9%. The preliminary findings indicate that applying semi-supervised learning to the development of AI models using DUS signals can achieve high generalization accuracy and reduce the effort. This approach may enhance the quality of fetal monitoring.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Front Physiol Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Front Physiol Ano de publicação: 2024 Tipo de documento: Article