Huang Chenyan, Long Xi, van der Ven Myrthe, Kaptein Maurits, Oei S Guid, van den Heuvel Edwin
Department of Mathematics and Computer Science, Eindhoven University of Technology, Eindhoven, 5612 AZ, North Brabant, The Netherlands.
Eindhoven MedTech Innovation Center, Eindhoven University of Technology, Eindhoven, 5612 AZ, North Brabant, The Netherlands.
BMC Pregnancy Childbirth. 2024 Dec 21;24(1):843. doi: 10.1186/s12884-024-07049-y.
This study aimed to predict preterm birth in nulliparous women using machine learning and easily accessible variables from prenatal visits. Elastic net regularized logistic regression models were developed and evaluated using 5-fold cross-validation on data from 8,830 women in the Nulliparous Pregnancy Outcomes Study: New Mothers-to-Be (nuMoM2b) dataset at three prenatal visits: - , - , and - weeks of gestational age (GA). The models' performance, assessed using Area Under the Curve (AUC), sensitivity, specificity, and accuracy, consistently improved with the incorporation of data from later prenatal visits. AUC scores increased from 0.6161 in the first visit to 0.7087 in the third visit, while sensitivity and specificity also showed notable improvements. The addition of ultrasound measurements, such as cervical length and Pulsatility Index, substantially enhanced the models' predictive ability. Notably, the model achieved a sensitivity of 0.8254 and 0.9295 for predicting very preterm and extreme preterm births, respectively, at the third prenatal visit. These findings highlight the importance of ultrasound measurements and suggest that incorporating machine learning-based risk assessment and routine late-pregnancy ultrasounds into prenatal care could improve maternal and neonatal outcomes by enabling timely interventions for high-risk women.
本研究旨在利用机器学习和产前检查中易于获取的变量来预测初产妇的早产情况。在未生育孕妇妊娠结局研究:新准妈妈(nuMoM2b)数据集中,对8830名女性在孕龄(GA)为 - 、 - 和 - 周时的三次产前检查数据,开发并使用五折交叉验证评估了弹性网正则化逻辑回归模型。使用曲线下面积(AUC)、敏感性、特异性和准确性评估模型性能,随着纳入后期产前检查的数据,模型性能持续改善。AUC分数从第一次检查时的0.6161增加到第三次检查时的0.7087,同时敏感性和特异性也有显著提高。添加超声测量值,如宫颈长度和搏动指数,大幅提高了模型的预测能力。值得注意的是,在第三次产前检查时,该模型预测极早产和超早产的敏感性分别达到0.8254和0.9295。这些发现凸显了超声测量的重要性,并表明将基于机器学习的风险评估和常规晚期妊娠超声检查纳入产前护理,通过对高危女性进行及时干预,可改善母婴结局。