Kang Jae-Hwan, Jeon Young-Ju, Lee In-Seon, Kim Junsuk
Digital Health Research Division, Korea Institute of Oriental Medicine, Daejeon, South Korea.
Aging Convergence Research Center, Korea Research Institute of Bioscience and Biotechnology, Daejeon, South Korea.
Heliyon. 2024 Nov 15;10(22):e40433. doi: 10.1016/j.heliyon.2024.e40433. eCollection 2024 Nov 30.
Preterm birth prediction is important in prenatal care; however, it remains a significant challenge due to the complex physiological mechanisms involved. This study aimed to explore the feasibility of phase synchronization of multiple oscillatory components across electrohysterography (EHG) and tocodynamometry (TOCO) signals to identify preterm births using advanced machine-learning techniques. Using an open-access EHG dataset, we first assessed the degree of phase synchronization of five specified frequency ranges from 0.08 to 5.0 Hz in three individual EHG signals by constructing two distinct sets of mean phase coherence: the inclusion or exclusion of TOCO signals. We then employed two machine-learning models, XGBoost and TabNet, to classify preterm and term delivery conditions and analyze the predictive potential of these features. The models' performance was evaluated by considering varying lengths of time windows and the use of overlapping windows. Our results demonstrate the importance of lower-frequency EHG signals and synchronization patterns across the horizontal plane of the abdomen, particularly synchronization between the upper and lower regions of the uterus. Furthermore, we observed a distinctive pattern in the high-frequency band (1.0-2.2 Hz), emphasizing the important role of the lower horizontal regions with other sites in the synchronization process. Interestingly, our findings indicated that TOCO signals, while not substantially enhancing the overall prediction performance, contributed to slightly improved accuracy rates when combined with EHG signals. This study suggests the critical role of EHG signals and their intricate spatiotemporal patterns in predicting preterm birth, providing insights for the development of more accurate and efficient prediction models.
早产预测在产前护理中很重要;然而,由于涉及复杂的生理机制,它仍然是一项重大挑战。本研究旨在探讨跨电子宫图(EHG)和宫缩图(TOCO)信号的多个振荡成分的相位同步的可行性,以使用先进的机器学习技术识别早产。使用一个开放获取的EHG数据集,我们首先通过构建两组不同的平均相位相干性来评估三个单独的EHG信号中从0.08到5.0Hz的五个指定频率范围的相位同步程度:是否包含TOCO信号。然后,我们使用两种机器学习模型,XGBoost和TabNet,对早产和足月分娩情况进行分类,并分析这些特征的预测潜力。通过考虑不同长度的时间窗口和重叠窗口的使用来评估模型的性能。我们的结果证明了低频EHG信号以及腹部水平面同步模式的重要性,特别是子宫上下区域之间的同步。此外,我们在高频带(1.0 - 2.2Hz)观察到一种独特的模式,强调了下水平区域与同步过程中其他部位的重要作用。有趣的是,我们的研究结果表明,TOCO信号虽然没有显著提高整体预测性能,但与EHG信号结合时有助于略微提高准确率。这项研究表明EHG信号及其复杂的时空模式在预测早产中的关键作用,为开发更准确、高效的预测模型提供了见解。