Literature DB >> 32007491

Prediction of vaginal birth after cesarean deliveries using machine learning.

Michal Lipschuetz1, Joshua Guedalia2, Amihai Rottenstreich3, Michal Novoselsky Persky3, Sarah M Cohen3, Doron Kabiri3, Gabriel Levin3, Simcha Yagel4, Ron Unger2, Yishai Sompolinsky3.   

Abstract

BACKGROUND: Efforts to reduce cesarean delivery rates to 12-15% have been undertaken worldwide. Special focus has been directed towards parturients who undergo a trial of labor after cesarean delivery to reduce the burden of repeated cesarean deliveries. Complication rates are lowest when a vaginal birth is achieved and highest when an unplanned cesarean delivery is performed, which emphasizes the need to assess, in advance, the likelihood of a successful vaginal birth after cesarean delivery. Vaginal birth after cesarean delivery calculators have been developed in different populations; however, some limitations to their implementation into clinical practice have been described. Machine-learning methods enable investigation of large-scale datasets with input combinations that traditional statistical analysis tools have difficulty processing.
OBJECTIVE: The aim of this study was to evaluate the feasibility of using machine-learning methods to predict a successful vaginal birth after cesarean delivery. STUDY
DESIGN: The electronic medical records of singleton, term labors during a 12-year period in a tertiary referral center were analyzed. With the use of gradient boosting, models that incorporated multiple maternal and fetal features were created to predict successful vaginal birth in parturients who undergo a trial of labor after cesarean delivery. One model was created to provide a personalized risk score for vaginal birth after cesarean delivery with the use of features that are available as early as the first antenatal visit; a second model was created that reassesses this score after features are added that are available only in proximity to delivery.
RESULTS: A cohort of 9888 parturients with 1 previous cesarean delivery was identified, of which 75.6% of parturients (n=7473) attempted a trial of labor, with a success rate of 88%. A machine-learning-based model to predict when vaginal delivery would be successful was developed. When features that are available at the first antenatal visit are used, the model showed a receiver operating characteristic curve with area under the curve of 0.745 (95% confidence interval, 0.728-0.762) that increased to 0.793 (95% confidence interval, 0.778-0.808) when features that are available in proximity to the delivery process were added. Additionally, for the later model, a risk stratification tool was built to allocate parturients into low-, medium-, and high-risk groups for failed trial of labor after cesarean delivery. The low- and medium-risk groups (42.4% and 25.6% of parturients, respectively) showed a success rate of 97.3% and 90.9%, respectively. The high-risk group (32.1%) had a vaginal delivery success rate of 73.3%. Application of the model to a cohort of parturients who elected a repeat cesarean delivery (n=2145) demonstrated that 31% of these parturients would have been allocated to the low- and medium-risk groups had a trial of labor been attempted.
CONCLUSION: Trial of labor after cesarean delivery is safe for most parturients. Success rates are high, even in a population with high rates of trial of labor after cesarean delivery. Application of a machine-learning algorithm to assign a personalized risk score for a successful vaginal birth after cesarean delivery may help in decision-making and contribute to a reduction in cesarean delivery rates. Parturient allocation to risk groups may help delivery process management.
Copyright © 2020 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  machine-learning; personalized; prediction; trial of labor; vaginal birth after cesarean delivery

Mesh:

Year:  2020        PMID: 32007491     DOI: 10.1016/j.ajog.2019.12.267

Source DB:  PubMed          Journal:  Am J Obstet Gynecol        ISSN: 0002-9378            Impact factor:   8.661


  14 in total

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2.  Diversity in Machine Learning: A Systematic Review of Text-Based Diagnostic Applications.

Authors:  Lane Fitzsimmons; Maya Dewan; Judith W Dexheimer
Journal:  Appl Clin Inform       Date:  2022-05-25       Impact factor: 2.762

3.  Development and Validation of Predictive Models for Vaginal Birth After Cesarean Delivery in China.

Authors:  Shilei Bi; Lizi Zhang; Jingsi Chen; Lijun Huang; Shanshan Zeng; Jinping Jia; Suiwen Wen; Yinli Cao; Shaoshuai Wang; Xiaoyan Xu; Feng Ling; Xianlan Zhao; Yangyu Zhao; Qiying Zhu; Hongbo Qi; Lanzhen Zhang; Hongtian Li; Lili Du; Zhijian Wang; Dunjin Chen
Journal:  Med Sci Monit       Date:  2020-12-03

4.  Maternal age at first cesarean delivery related to adverse pregnancy outcomes in a second cesarean delivery: a multicenter, historical, cross-sectional cohort study.

Authors:  Shilei Bi; Lizi Zhang; Jingsi Chen; Minshan Huang; Lijun Huang; Shanshan Zeng; Yulian Li; Yingyu Liang; Jinping Jia; Suiwen Wen; Yinli Cao; Shaoshuai Wang; Xiaoyan Xu; Ling Feng; Xianlan Zhao; Yangyu Zhao; Qiying Zhu; Hongbo Qi; Lanzhen Zhang; Hongtian Li; Zhijian Wang; Lili Du; Dunjin Chen
Journal:  BMC Pregnancy Childbirth       Date:  2021-02-12       Impact factor: 3.007

5.  A Retrospective Study of the Association of Repeated Attempts at Trial of Labor After Cesarean Birth on Maternal and Neonatal Outcomes.

Authors:  Abdulrahim A Rouzi; Rana Alamoudi; Sarah Ghazali; Nisma Almansouri; Abdullah Kafy; Meshari Alrumaihi; Wajeh Hariri; Esraa Alsafri
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Review 6.  Intelligent systems in obstetrics and midwifery: Applications of machine learning.

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Authors:  Siming Xin; Hong Wan; Xiaoming Zeng; Yanyan Fu; Zhizhong Wang; Hua Lai; Ying Xiong; Jiusheng Zheng; Lingzhi Liu
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Review 8.  Using Machine Learning to Predict Complications in Pregnancy: A Systematic Review.

Authors:  Ayleen Bertini; Rodrigo Salas; Steren Chabert; Luis Sobrevia; Fabián Pardo
Journal:  Front Bioeng Biotechnol       Date:  2022-01-19

9.  Clinical Effects of Form-Based Management of Forceps Delivery under Intelligent Medical Model.

Authors:  Siming Xin; Zhizhong Wang; Hua Lai; Lingzhi Liu; Ting Shen; Fangping Xu; Xiaoming Zeng; Jiusheng Zheng
Journal:  J Healthc Eng       Date:  2021-05-31       Impact factor: 2.682

10.  Prediction of vaginal birth after cesarean delivery in Southeast China: a retrospective cohort study.

Authors:  Hua-Le Zhang; Liang-Hui Zheng; Li-Chun Cheng; Zhao-Dong Liu; Lu Yu; Qin Han; Geng-Yun Miao; Jian-Ying Yan
Journal:  BMC Pregnancy Childbirth       Date:  2020-09-15       Impact factor: 3.007

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