Meyer Raanan, Weisz Boaz, Eilenberg Roni, Tsadok Meytal Avgil, Uziel Moshe, Sivan Eyal, Mazaki-Tovi Shali, Tsur Abraham
Department of Obstetrics and Gynecology, The Chaim Sheba Medical Center, Tel Hashomer, Israel.
School of Medicine, Tel Aviv University, Tel Aviv-Yafo, Israel.
Int J Gynaecol Obstet. 2023 Apr;161(1):255-263. doi: 10.1002/ijgo.14433. Epub 2022 Sep 18.
To develop a comprehensive machine learning (ML) model predicting unplanned cesarean delivery (uCD) among singleton pregnancies based on features available at admission to labor.
A retrospective cohort study from a tertiary medical center. Women with singleton vertex pregnancy of 34 weeks or more admitted for vaginal delivery between March 2011 and May 2019 were included. The cohort was divided into training (80%) and validation (20%) data sets. A separate cohort between June 2019 and April 2021 served as a test data set. Features selection was performed using a Random Forest ML algorithm.
The study population included 73 667 women, of which 4125 (6.33%) underwent uCD. The final model consisted of 13 features, based on prediction importance. The XGBoost model performed best with areas under the curve for the training, validation, and test data sets of 0.874, 0.839, and 0.840, respectively. The model showed a 65% positive predictive value for uCD among women in the 100th centile group, and a 99% or more negative predictive value in the less than 50th centile group. Positive and negative predictive values remained high among subgroups with high pretest probability of uCD.
An ML model for the prediction of uCD provides clinically useful risk stratification that remains accurate across gestational weeks 34-42 and among clinical risk groups. The model may be clinically useful for physicians and women admitted for labor.
A machine learning model predicts unplanned cesarean delivery and can inform women's individualized decision making.
基于分娩入院时可用的特征,开发一个预测单胎妊娠非计划剖宫产(uCD)的综合机器学习(ML)模型。
一项来自三级医疗中心的回顾性队列研究。纳入2011年3月至2019年5月间因阴道分娩入院的孕周34周及以上的单胎头位妊娠妇女。该队列被分为训练(80%)和验证(20%)数据集。2019年6月至2021年4月间的一个单独队列用作测试数据集。使用随机森林ML算法进行特征选择。
研究人群包括73667名妇女,其中4125名(6.33%)接受了非计划剖宫产。基于预测重要性,最终模型由13个特征组成。XGBoost模型表现最佳,训练、验证和测试数据集的曲线下面积分别为0.874、0.839和0.840。该模型在第100百分位组的妇女中对非计划剖宫产的阳性预测值为65%,在低于第50百分位组中的阴性预测值为99%或更高。在非计划剖宫产预测试概率高的亚组中,阳性和阴性预测值仍然很高。
用于预测非计划剖宫产的ML模型提供了临床上有用的风险分层,在孕周34 - 42周以及临床风险组中均保持准确。该模型可能对医生和入院分娩的妇女具有临床实用性。
一个机器学习模型预测非计划剖宫产,并可为女性的个体化决策提供信息。