Jurman Liron, Brisker Karin, Ruach Hasdai Raz, Weitzner Omer, Daykan Yair, Klein Zvi, Schonman Ron, Yagur Yael
Department of Obstetrics and Gynecology, Meir Medical Center, Kfar Saba, Israel.
School of Medicine, Faculty of Medical and Health Sciences, Tel Aviv University, Tel Aviv, Israel.
BMC Pregnancy Childbirth. 2024 Dec 19;24(1):825. doi: 10.1186/s12884-024-07035-4.
To refine decision-making regarding expectant management for ectopic pregnancy (EP) using machine learning.
This retrospective study addressed expectant management in stable patients with ampullar EP, 2014-2022. Electronic medical record data included demographics, medical history, admission data, sonographic findings, and laboratory results. Follow-up data on βhCG levels and success rates were collected. Statistical analysis incorporated a Decision Tree Classifier, a decision tree-based machine learning model. The cohort was divided into training and testing groups for the machine learning model. This model was evaluated for accuracy, precision, recall, and F1 score to predict success of expectant management.
Among 878 cases of EP, the expectant management cohort, comprising 221 cases, exhibited a success rate of 79.6%, with 20.4% requiring subsequent intervention. Mean βhCG levels on admission were 1056.8 ± 1323.5 mIU. The Decision Tree Classifier demonstrated an accuracy of 89%, with precision, recall, and F1 scores of 92%, 95%, and 94%, respectively. Factors for predicting success included clinical symptoms such as pain, the percentage decrease in βhCG levels, gestational age and βhCG level at decision day. Moderate impactful features were white blood cell count, gravidity and maximum tubal dimensions. Smoking status, duration (hours) from time of EP diagnosis to second βhCG test and marital status were minimal significant predictors of success.
The Decision Tree-Based classifier model, with 92% precision and 95% recall, may be a valuable tool for predicting treatment success in hemodynamically stable patients with EP, particularly within the initial 24 h of βhCG follow-up.
利用机器学习优化异位妊娠(EP)期待治疗的决策。
这项回顾性研究针对2014年至2022年稳定的壶腹部EP患者的期待治疗。电子病历数据包括人口统计学、病史、入院数据、超声检查结果和实验室检查结果。收集了βhCG水平和成功率的随访数据。统计分析采用决策树分类器,这是一种基于决策树的机器学习模型。该队列被分为机器学习模型的训练组和测试组。对该模型的准确性、精确性、召回率和F1分数进行评估,以预测期待治疗的成功率。
在878例EP病例中,由221例组成的期待治疗队列成功率为79.6%,20.4%的患者需要后续干预。入院时的平均βhCG水平为1056.8±1323.5 mIU。决策树分类器的准确率为89%,精确率、召回率和F1分数分别为92%、95%和94%。预测成功的因素包括疼痛等临床症状、βhCG水平的下降百分比、孕周和决策日的βhCG水平。有中等影响的特征是白细胞计数、妊娠次数和输卵管最大直径。吸烟状况、从EP诊断到第二次βhCG检测的时间(小时)和婚姻状况是成功的最小显著预测因素。
基于决策树的分类器模型,精确率为92%,召回率为95%,可能是预测血流动力学稳定的EP患者治疗成功的有价值工具,特别是在βhCG随访的最初24小时内。