Clinical Epidemiology Division, Department of Medicine Solna, Karolinska Institutet, Stockholm, Sweden.
Department of Women's and Children's Health, Uppsala University, Uppsala, Sweden.
PLoS One. 2019 Nov 27;14(11):e0225716. doi: 10.1371/journal.pone.0225716. eCollection 2019.
To evaluate the capacity of multivariable prediction of preeclampsia during pregnancy, based on detailed routinely collected early pregnancy data in nulliparous women.
A population-based cohort study of 62 562 pregnancies of nulliparous women with deliveries 2008-13 in the Stockholm-Gotland Counties in Sweden.
Maternal social, reproductive and medical history and medical examinations (including mean arterial pressure, proteinuria, hemoglobin and capillary glucose levels) routinely collected at the first visit in antenatal care, constitute the predictive variables. Predictive models for preeclampsia were created by three methods; logistic regression models using 1) pre-specified variables (similar to the Fetal Medicine Foundation model including maternal factors and mean arterial pressure), 2) backward selection starting from the full suite of variables, and 3) a Random forest model using the same candidate variables. The performance of the British National Institute for Health and Care Excellence (NICE) binary risk classification guidelines for preeclampsia was also evaluated. The outcome measures were diagnosis of preeclampsia with delivery <34, <37, and ≥37 weeks' gestation.
A total of 2 773 (4.4%) nulliparous women subsequently developed preeclampsia. The pre-specified variables model was superior the other two models, regarding prediction of preeclampsia with delivery <34 and <37 weeks, both with areas under the curve of 0.68, and sensitivity of 30.6% (95% CI 24.5-37.2) and 29.2% (95% CI 25.2-33.4) at a 10% false positive rate, respectively. The performance of these customizable multivariable models at the chosen false positive rate, was significantly better than the binary NICE-guidelines for preeclampsia with delivery <37 and ≥37 weeks' gestation.
Multivariable models in early pregnancy had a modest performance, although providing advantages over the NICE-guidelines, in predicting preeclampsia in nulliparous women. Use of a machine learning algorithm (Random forest) did not result in superior prediction.
基于详细的初产妇常规早孕数据,评估多变量预测子痫前期的能力。
一项基于人群的队列研究,纳入了 2008 年至 2013 年在瑞典斯德哥尔摩-哥德堡县分娩的 62562 例初产妇。
母亲的社会、生殖和医疗史以及在产前检查中的首次就诊时进行的医学检查(包括平均动脉压、蛋白尿、血红蛋白和毛细血管血糖水平),构成了预测变量。通过三种方法建立子痫前期预测模型:1)使用预定义变量的逻辑回归模型(类似于包含母体因素和平均动脉压的胎儿医学基金会模型);2)从全套变量开始的向后选择;3)使用相同候选变量的随机森林模型。还评估了英国国家卫生与保健卓越研究所(NICE)子痫前期二分风险分类指南的性能。结局指标是分娩前 34 周、37 周和≥37 周时子痫前期的诊断。
共有 2773 例(4.4%)初产妇随后发生子痫前期。与其他两种模型相比,预定义变量模型在预测分娩前 34 周和 37 周的子痫前期方面表现更好,曲线下面积分别为 0.68,灵敏度分别为 30.6%(95%CI 24.5-37.2)和 29.2%(95%CI 25.2-33.4),假阳性率为 10%。在选择的假阳性率下,这些可定制的多变量模型的性能明显优于用于预测分娩前 37 周和≥37 周子痫前期的 NICE 指南。
多变量模型在预测初产妇子痫前期方面表现一般,但优于 NICE 指南。使用机器学习算法(随机森林)并未导致更好的预测。