可解释的预测模型来了解孕产妇和胎儿结局的危险因素

IF 5.4 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Tomas M. Bosschieter, Zifei Xu, Hui Lan, Benjamin J. Lengerich, Harsha Nori, Ian Painter, Vivienne Souter, Rich Caruana
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引用次数: 0

摘要

虽然大多数妊娠结果良好,但并发症并不罕见,并可能对母亲和婴儿产生严重影响。通过更好地了解风险因素,加强对高危患者的监测,以及更及时和适当的干预,预测模型有可能改善结果,从而帮助产科医生提供更好的护理。我们确定并研究了四种妊娠并发症的最重要的危险因素:(i)严重的产妇发病率,(ii)肩难产,(iii)早产先兆子痫,(iv)产前死产。我们使用可解释的增强机(EBM),一种高精度的玻璃盒学习方法,来预测和识别重要的风险因素。我们进行外部验证,并对EBM模型进行广泛的稳健性分析。EBMs与其他黑箱机器学习方法(如深度神经网络和随机森林)的准确性相匹配,并且优于逻辑回归,同时更具可解释性。ebm被证明是健壮的。EBM模型的可解释性揭示了对导致风险的特征的惊人见解(例如,母亲身高是肩关节难产的第二大重要特征),并且可能在预测和预防妊娠严重并发症方面具有潜在的临床应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretable Predictive Models to Understand Risk Factors for Maternal and Fetal Outcomes
Although most pregnancies result in a good outcome, complications are not uncommon and can be associated with serious implications for mothers and babies. Predictive modeling has the potential to improve outcomes through better understanding of risk factors, heightened surveillance for high risk patients, and more timely and appropriate interventions, thereby helping obstetricians deliver better care. We identify and study the most important risk factors for four types of pregnancy complications: (i) severe maternal morbidity, (ii) shoulder dystocia, (iii) preterm preeclampsia, and (iv) antepartum stillbirth. We use an Explainable Boosting Machine (EBM), a high-accuracy glass-box learning method, for prediction and identification of important risk factors. We undertake external validation and perform an extensive robustness analysis of the EBM models. EBMs match the accuracy of other black-box ML methods such as deep neural networks and random forests, and outperform logistic regression, while being more interpretable. EBMs prove to be robust. The interpretability of the EBM models reveals surprising insights into the features contributing to risk (e.g. maternal height is the second most important feature for shoulder dystocia) and may have potential for clinical application in the prediction and prevention of serious complications in pregnancy.
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