Using machine learning to predict the risk of developing hypertensive disorders of pregnancy using a contemporary nulliparous cohort

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Abstract

Background

Hypertensive disorders of pregnancy (HDP) are significant drivers of maternal and neonatal morbidity and mortality. Current management strategies include early identification and initiation of risk mitigating interventions facilitated by a rules-based checklist. Advanced analytic techniques, such as machine learning, can potentially offer improved and refined predictive capabilities.

Objective

To develop and internally validate a machine learning prediction model for hypertensive disorders of pregnancy (HDP) when initiating prenatal care.

Study Design

We developed a prediction model using data from the prospective multisite cohort Nulliparous Pregnancy Outcomes Study: Monitoring Mothers-to-Be (nuMoM2b) among low-risk individuals without a prior history of aspirin utilization for preeclampsia prevention. The primary outcome was the development of HDP. Random forest modeling was utilized to develop predictive models. Recursive feature elimination (RFE) was employed to create a reduced model for each outcome. Area under the curve (AUC), 95% confidence intervals (CI), and calibration curves were utilized to assess discrimination and accuracy. Sensitivity analyses were conducted to compare the sensitivity and specificity of the reduced model compared to existing risk factor-based algorithms.

Results

Of 9,124 assessed low risk nulliparous individuals, 21% (n=1,927) developed HDP. The prediction model for HDP had satisfactory discrimination with an AUC of 0.73 (95% CI: 0.70, 0.75). After RFE, a parsimonious reduced model with 30 features was created with an AUC of 0.71 (95% CI: 0.68, 0.74). Variables included in the model after RFE included body mass index at the first study visit, pre-pregnancy weight, first trimester complete blood count results, and maximum systolic blood pressure at the first visit. Calibration curves for all models revealed relatively stable agreement between predicted and observed probabilities. Sensitivity analysis noted superior sensitivity (AUC 0.80 vs 0.65) and specificity (0.65 vs 0.53) of the model compared to traditional risk factor-based algorithms.

Conclusion

In cohort of low-risk nulliparous pregnant individuals, a prediction model may accurately predict HDP diagnosis at the time of initiating prenatal care and aid employment of close interval monitoring and prophylactic measures earlier in pregnancy.
利用机器学习预测妊娠期高血压疾病的发病风险
背景妊娠高血压疾病(HDP)是导致孕产妇和新生儿发病和死亡的重要因素。目前的管理策略包括通过基于规则的核对表进行早期识别和启动降低风险的干预措施。研究设计我们利用前瞻性多站点队列无胎儿妊娠结局研究(Nulliparous Pregnancy Outcomes Study)的数据开发了一个预测模型:我们利用前瞻性多站点队列 "无胎盘妊娠结局研究:待产母亲监测"(nuMoM2b)中的数据开发了预测模型。主要结果是出现 HDP。随机森林模型用于开发预测模型。采用递归特征剔除法(RFE)为每个结果创建一个简化模型。利用曲线下面积 (AUC)、95% 置信区间 (CI) 和校准曲线来评估区分度和准确性。进行了敏感性分析,以比较简化模型与现有基于风险因素算法的敏感性和特异性。结果 在 9124 名接受评估的低风险无子宫者中,21%(n=1927)发展为 HDP。HDP 预测模型的分辨能力令人满意,AUC 为 0.73 (95% CI: 0.70, 0.75)。RFE 后,建立了一个包含 30 个特征的简化模型,其 AUC 为 0.71(95% CI:0.68,0.74)。RFE 后的模型所包含的变量包括首次就诊时的体重指数、孕前体重、孕期前三个月的全血细胞计数结果以及首次就诊时的最大收缩压。所有模型的校准曲线显示,预测概率和观察概率之间的一致性相对稳定。灵敏度分析表明,与传统的基于风险因素的算法相比,该模型的灵敏度(AUC 0.80 vs 0.65)和特异性(0.65 vs 0.53)更优。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
AJOG global reports
AJOG global reports Endocrinology, Diabetes and Metabolism, Obstetrics, Gynecology and Women's Health, Perinatology, Pediatrics and Child Health, Urology
CiteScore
1.20
自引率
0.00%
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0
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