Samjeed Amna, Wahbah Maisam, Khandoker Ahsan H
Annu Int Conf IEEE Eng Med Biol Soc. 2024 Jul;2024:1-4. doi: 10.1109/EMBC53108.2024.10782057.
Prior research has demonstrated that maternal heart rate variability (HRV) and physiological factors can significantly impact fetal autonomic nervous system development. This article aims to predict fetal autonomic age using the multi-linear regression models constructed from different features including maternal HRV, respiration rate, and demographics, along with maternal-fetal heartbeats coupling strength in addition to fetal HRV parameters. The study includes fetal ECG data of 62 fetuses with gestational ages ranging between 20-41 weeks. Initially, the data is segmented according to fetal behavioural states and then used in the proposed methodology. Leave one sample out cross-validation method is used to validate the models. Results showed the importance of considering maternal HRV parameters, BMI, and respiration rate when estimating fetal age in active state, where the proposed methodology returned a correlation of 0.604 and error of 2.95 weeks. In quiet state, more involvement of maternal-fetal heartbeats coupling strength was observed when estimating the fetal age (R = 0.75, Error = 2.86 weeks). Therefore, the findings presented in this study confirmed that the assessment of fetal development and health can be improved by incorporating maternal features.
先前的研究表明,母体心率变异性(HRV)和生理因素会对胎儿自主神经系统发育产生显著影响。本文旨在利用基于不同特征构建的多线性回归模型预测胎儿自主神经年龄,这些特征包括母体HRV、呼吸频率和人口统计学特征,以及除胎儿HRV参数外的母婴心跳耦合强度。该研究纳入了62例孕周在20至41周之间的胎儿心电图数据。首先,根据胎儿行为状态对数据进行分段,然后将其用于所提出的方法中。采用留一法交叉验证方法对模型进行验证。结果表明,在估计活跃状态下的胎儿年龄时,考虑母体HRV参数、体重指数(BMI)和呼吸频率非常重要,所提出的方法得出的相关性为0.604,误差为2.95周。在安静状态下,估计胎儿年龄时观察到母婴心跳耦合强度的更多参与(R = 0.75,误差 = 2.86周)。因此,本研究的结果证实,纳入母体特征可以改善对胎儿发育和健康的评估。