Department of Biomedical Informatics, Ajou University School of Medicine, Suwon, Korea.
Department of Obstetrics and Gynecology, Ajou University School of Medicine, Suwon, Korea.
Yonsei Med J. 2022 Jul;63(7):692-700. doi: 10.3349/ymj.2022.63.7.692.
Fetal well-being is usually assessed via fetal heart rate (FHR) monitoring during the antepartum period. However, the interpretation of FHR is a complex and subjective process with low reliability. This study developed a machine learning model that can classify fetal cardiotocography results as normal or abnormal.
In total, 17492 fetal cardiotocography results were obtained from Ajou University Hospital and 100 fetal cardiotocography results from Czech Technical University and University Hospital in Brno. Board-certified physicians then reviewed the fetal cardiotocography results and labeled 1456 of them as gold-standard; these results were used to train and validate the model. The remaining results were used to validate the clinical effectiveness of the model with the actual outcome.
In a test dataset, our model achieved an area under the receiver operating characteristic curve (AUROC) of 0.89 and area under the precision-recall curve (AUPRC) of 0.73 in an internal validation dataset. An average AUROC of 0.73 and average AUPRC of 0.40 were achieved in the external validation dataset. Fetus abnormality score, as calculated from the continuous fetal cardiotocography results, was significantly associated with actual clinical outcomes [intrauterine growth restriction: odds ratio, 3.626 (=0.031); Apgar score 1 min: odds ratio, 9.523 (<0.001), Apgar score 5 min: odds ratio, 11.49 (=0.001), and fetal distress: odds ratio, 23.09 (<0.001)].
The machine learning model developed in this study showed precision in classifying FHR signals. This suggests that the model can be applied to medical devices as a screening tool for monitoring fetal status.
胎儿的健康状况通常通过产前期间的胎儿心率(FHR)监测来评估。然而,FHR 的解读是一个复杂且主观的过程,可靠性较低。本研究开发了一种机器学习模型,可以对胎儿胎心监护图结果进行正常或异常分类。
总共从Ajou 大学医院获得了 17492 份胎儿胎心监护图结果,从捷克技术大学和布尔诺的大学医院获得了 100 份胎儿胎心监护图结果。经过认证的医生审查了胎儿胎心监护图结果,并将其中 1456 份标记为金标准;这些结果用于训练和验证模型。其余结果用于使用实际结果验证模型的临床有效性。
在测试数据集上,我们的模型在内部验证数据集上的接收者操作特征曲线下面积(AUROC)为 0.89,精度-召回曲线下面积(AUPRC)为 0.73。在外部验证数据集中,平均 AUROC 为 0.73,平均 AUPRC 为 0.40。从连续的胎儿胎心监护图结果计算得出的胎儿异常评分与实际临床结局显著相关[宫内生长受限:比值比,3.626(=0.031);1 分钟 Apgar 评分:比值比,9.523(<0.001),5 分钟 Apgar 评分:比值比,11.49(=0.001),胎儿窘迫:比值比,23.09(<0.001)]。
本研究开发的机器学习模型在分类 FHR 信号方面表现出较高的准确性。这表明该模型可应用于医疗设备,作为监测胎儿状况的筛选工具。