Hirono Yuta, Kai Chiharu, Yoshida Akifumi, Sato Ikumi, Kodama Naoki, Uchida Fumikage, Kasai Satoshi
Major in Health and Welfare, Graduate School of Niigata University of Health and Welfare, Niigata, Japan.
TOITU Co. Ltd., Tokyo, Japan.
Front Physiol. 2024 Jul 8;15:1293328. doi: 10.3389/fphys.2024.1293328. eCollection 2024.
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.
产时胎心监护(CTG)测量对于监测期间评估胎儿健康状况至关重要,而准确评估需要可良好追溯的CTG信号。当前基于对多普勒超声(DUS)信号进行自相关分析的胎心率计算算法,由于无法区分信号,常常导致信号丢失。我们推测按类型对DUS信号进行分类可能是一种解决方案,并提出可使用基于人工智能(AI)的方法进行分类。然而,由于数据可用性有限,将AI用于DUS信号的研究较少。因此,本研究着重评估半监督学习在即便数据集有限的情况下提高DUS信号分类准确性方面的有效性。通过无应激试验和分娩期DUS信号创建了包含胎儿心跳、伪像及其他两类的数据。半监督学习模型在分别有9600个和48000个数据点的标记数据和未标记数据上始终优于监督学习模型,平均分类准确率达到80.9%。初步研究结果表明,将半监督学习应用于使用DUS信号的AI模型开发可实现较高的泛化准确率并减少工作量。这种方法可能会提高胎儿监测的质量。