Department of Obstetrics and Gynecology, Cedars-Sinai Medical Center, Los Angeles, California.
Division of Informatics, Department of Biomedical Sciences, Cedars-Sinai Medical Center, Los Angeles, California.
Am J Perinatol. 2024 May;41(S 01):e412-e419. doi: 10.1055/a-1885-1697. Epub 2022 Jun 25.
This study aimed to develop and validate a machine learning (ML) model to predict the probability of a vaginal delivery (Partometer) using data iteratively obtained during labor from the electronic health record.
A retrospective cohort study of deliveries at an academic, tertiary care hospital was conducted from 2013 to 2019 who had at least two cervical examinations. The population was divided into those delivered by physicians with nulliparous term singleton vertex (NTSV) cesarean delivery rates <23.9% (Partometer cohort) and the remainder (control cohort). The cesarean rate among this population of lower risk patients is a standard metric by which to compare provider rates; <23.9% was the Healthy People 2020 goal. A supervised automated ML approach was applied to generate a model for each population. The primary outcome was accuracy of the model developed on the Partometer cohort at 4 hours from admission to labor and delivery. Secondary outcomes included discrimination ability (receiver operating characteristics-area under the curve [ROC-AUC]), precision-recall AUC, and calibration of the Partometer. To assess generalizability, we compared the performance and clinical predictors identified by the Partometer to the control model.
There were 37,932 deliveries during the study period; after exclusions, 9,385 deliveries were included in the Partometer cohort and 19,683 in the control cohort. Accuracy of predicting vaginal delivery at 4 hours was 87.1% for the Partometer (ROC-AUC: 0.82). Clinical predictors of greatest importance in the stacked Intrapartum Partometer Model included the Admission Model prediction and ongoing measures of dilatation and station which mirrored those found in the control population.
Using automated ML and intrapartum factors improved the accuracy of prediction of probability of a vaginal delivery over both previously published models based on logistic regression. Harnessing real-time data and ML could represent the bridge to generating a truly prescriptive tool to augment clinical decision-making, predict labor outcomes, and reduce maternal and neonatal morbidity.
· Our ML-based model yielded accurate predictions of mode of delivery early in labor.. · Predictors for models created on populations with high and low cesarean rates were the same.. · A ML-based model may provide meaningful guidance to clinicians managing labor..
本研究旨在开发和验证一种机器学习(ML)模型,该模型使用来自电子健康记录的分娩期间迭代获得的数据预测阴道分娩的概率(Partometer)。
对 2013 年至 2019 年在学术型三级保健医院分娩的至少有两次宫颈检查的患者进行了回顾性队列研究。该人群分为经阴道分娩的医生的新生儿单胎头位(NTSV)剖宫产率<23.9%(Partometer 队列)和其余患者(对照组)。该低风险人群的剖宫产率是比较提供者率的标准指标;<23.9%是 2020 年健康人目标。应用监督式自动 ML 方法为每个人群生成一个模型。主要结局是在入院至分娩和分娩后 4 小时对 Partometer 队列开发的模型的准确性。次要结局包括区分能力(接收者操作特征曲线下面积[ROC-AUC])、精度-召回 AUC 和 Partometer 的校准。为了评估可推广性,我们比较了 Partometer 模型和对照组的性能和临床预测因素。
在研究期间有 37932 次分娩;排除后,Partometer 队列纳入 9385 次分娩,对照组纳入 19683 次分娩。Partometer 预测 4 小时阴道分娩的准确性为 87.1%(ROC-AUC:0.82)。Intrapartum Partometer 模型中最重要的临床预测因素包括入院模型预测和正在进行的扩张和位置测量,这与对照组中发现的因素相似。
使用自动化 ML 和分娩期间的因素提高了预测阴道分娩概率的准确性,优于以前基于逻辑回归的模型。利用实时数据和 ML 可以代表生成真正有指导意义的工具的桥梁,以增强临床决策、预测分娩结果并降低母婴发病率。
· 我们基于 ML 的模型在分娩早期产生了准确的分娩方式预测。· 高剖宫产率和低剖宫产率人群模型的预测因素相同。· ML 模型可能为管理分娩的临床医生提供有意义的指导。