国际妇产科学杂志 ›› 2025, Vol. 52 ›› Issue (6): 660-663.doi: 10.12280/gjfckx.20250822

• 产科生理及产科疾病:综述 • 上一篇    下一篇

臀位外倒转术疗效预测模型的研究现状

汪萍, 李之岳, 陆勤, 贾玉芳()   

  1. 215000 江苏省苏州市,昆山市中医医院产科
  • 收稿日期:2025-07-24 出版日期:2025-12-15 发布日期:2025-12-30
  • 通讯作者: 贾玉芳 E-mail:13776306661@126.com

Research Status of Efficacy Prediction Models for External Cephalic Version

WANG Ping, LI Zhi-yue, LU Qin, JIA Yu-fang()   

  1. Department of Obstetrics, Kunshan Hospital of Chinese Medicine, Suzhou 215000, Jiangsu Province, China
  • Received:2025-07-24 Published:2025-12-15 Online:2025-12-30
  • Contact: JIA Yu-fang E-mail:13776306661@126.com

摘要:

臀位外倒转术(external cephalic version,ECV)作为纠正妊娠晚期臀位的重要干预措施,其成功率的预测对临床决策至关重要。目前临床上广泛应用的模型构建方法主要包括传统统计学模型和机器学习模型,系统综述这两种模型在预测ECV成功率中的应用进展。传统统计学模型如Logistic回归模型,虽易于解释和临床适用性强,但在处理复杂数据时性能有限。而新兴的机器学习模型展现出了更优的预测潜力,但同时也面临着可解释性差和临床整合难的挑战。未来研究应致力于推动多中心、大样本、前瞻性数据采集,加强模型的外部验证与标准化;同时需提升机器学习模型的透明度与临床适用性,开发出易于整合到临床流程的预测工具,最终构建精准、个体化的ECV决策系统,以有效降低非医学指征的剖宫产率。

关键词: 臀先露, 倒转术,胎位, 预测, 模型,统计学, 机器学习

Abstract:

External cephalic version (ECV), as an important intervention for correcting breech presentation in the late stage of pregnancy, the prediction of its success rate is crucial for clinical decision-making. Currently, the model-building methods widely used in clinical practice mainly include traditional statistical models and machine-learning models. This paper systematically reviews the application progress of these two types of models in predicting the success rate of ECV. Traditional statistical models, such as the Logistic regression model, are easy to interpret and have strong clinical applicability, but their performance is limited when dealing with complex data. The emerging machine-learning models show better prediction potential, but they also face challenges such as poor interpretability and difficulty in clinical integration. Future research should focus on promoting multicenter, large-sample, and prospective data collection, strengthening the external validation and standardization of models. At the same time, it is necessary to improve the transparency and clinical applicability of machine-learning models, develop prediction tools that can be easily integrated into the clinical process, and ultimately construct a precise and individualized ECV decision-making system to effectively reduce the cesarean section rate without medical indications.

Key words: Breech presentation, Version, fetal, Forecasting, Models, statistical, Machine learning