Dynamic machine learning models for predicting cesarean delivery risk in women with no prior cesarean delivery: A retrospective nationwide cohort analysis.
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2025-11
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Abstract
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To develop and validate advanced machine learning (ML) models for predicting unplanned intrapartum cesarean deliveries in women with no previous cesarean delivery, using both static and dynamic clinical data.Methods
A retrospective cohort study was conducted using nationwide data from a large integrated healthcare provider, including 262 632 women whose labor had started. Two ML models, logistic regression and decision tree algorithms, were employed to predict unplanned cesarean delivery. The models incorporated demographic, medical, and obstetric variables collected at multiple time points during labor. Model performance was evaluated based on accuracy, sensitivity, specificity, and the area under the receiver operating characteristics curve (AUC-ROC).Results
The logistic regression model demonstrated an accuracy of 95% with an AUC-ROC of 0.92. The decision tree model showed adaptability in highly variable labor conditions, achieving an F1 score of 0.91 and excelling in real-time prediction. Key predictors included maternal age, gestational age, body mass index, fetal heart rate patterns, and labor dynamics. Model performance remained robust across various demographic subgroups but was slightly reduced in nulliparous women.Conclusion
These ML models provide an innovative approach to predicting unplanned cesarean delivery by integrating diverse clinical parameters, enhancing decision making, and optimizing labor management. Prospective validation and seamless integration into clinical workflows are required to establish their utility in broader obstetric practice.Type
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Givon, Ido, Nati Bor, Ran Matot, Lior Friedrich, Daya Gross, Gili Konforty, Arriel Benis, Eran Hadar, et al. (2025). Dynamic machine learning models for predicting cesarean delivery risk in women with no prior cesarean delivery: A retrospective nationwide cohort analysis. International journal of gynaecology and obstetrics: the official organ of the International Federation of Gynaecology and Obstetrics, 171(2). pp. 775–783. 10.1002/ijgo.70234 Retrieved from https://hdl.handle.net/10161/33541.
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Arriel Benis
Dr. Arriel Benis is a researcher and educator working at the intersection of medical informatics, digital health, and artificial intelligence, advancing health systems and biomedical engineering innovation. His work leverages AI, data science, and knowledge management to improve health-related decision-making at the individual, population, and public health levels.
His research focuses on developing data-driven healthcare solutions that enhance patient care, optimize clinical processes, and promote sustainable systems. Dr. Benis has engineered (a) clinical decision support systems with direct patient and healthcare partitioners impact such as ADHD, PTSD, and diabetes patient management and health communication, (b) MIMO -the Medical Informatics and Digital Health Multilingual Ontology- integrating more than 3500 terms and concepts across 30+ languages, actively deployed in healthcare organizations for AI-powered training and international projects support, (c) smart home and smart city health monitoring approach from a One Health viewpoint. Dr. Benis is a pioneer of the One Digital Health framework, which strategically links digital health innovation with environmental monitoring.
His past academic positions include serving as a department head and track director in biomedical and health informatics. He holds various leadership roles in the international medical informatics community, is a fellow of the International Academy for Health Sciences Informatics, and is the Editor-in-Chief of JMIR Medical Informatics. Dr. Benis is committed to training the next generation of innovators in digital health and medical informatics.
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