Moradi Raheleh, Kashanian Maryam, Yarigholi Fahime, Pazouki Abdolreza, Sheikhtaheri Abbas
Minimally Invasive Surgery Research Center, Iran University of Medical Sciences, Tehran, Iran.
Department of Obstetrics & Gynecology, Akbarabadi Teaching Hospital, Iran University of Medical Sciences, Tehran, Iran.
Surg Endosc. 2025 Apr;39(4):2656-2667. doi: 10.1007/s00464-025-11640-5. Epub 2025 Mar 10.
Metabolic-bariatric surgery (MBS) is the last effective way to lose weight whom around half of the patients are women of reproductive age. It is recommended an interval of 12 months between surgery and pregnancy to optimize weight loss and nutritional status. Predicting pregnancy up to 12 months after MBS is important for evaluating reproductive health services in bariatric centers; therefore, this study aimed to present a prediction model for pregnancy at the first year following MBS using machine learning (ML) algorithms.
In a nested case-control study of 473 women with a history of pregnancy after MBS during 2009-2023, predisposing factors in pregnancy within 12 months after MBS were identified and subsequently, several ML models, including the classification algorithms and decision trees, as well as regression analyses, were applied to predict pregnancy up to 12 months after MBS.
The highest area under the curve (AUC) was 0.920 ± 0.014 (95%CI 0.906, 0.927) for the C5.0 decision tree with sensitivity and specificity of 0.762 ± 0.044 (95%CI 0.739, 0.801) and 0.916 ± 0.028 (95%CI 0.883, 0.922), respectively. This model considered thirteen important factors to predict pregnancy at the first 12 months following MB, including menstrual irregularity, marital status, a history of abnormal fetal development, age, infertility type, parity, gravidity, fertility treatment, presurgery body mass index (BMI), infertility, infertility duration, polycystic ovary syndrome (PCOS), and type 2 diabetes (T2DM).
Developing the ML models, which predict pregnancy within 12 months after MBS, can help bariatric surgeons and obstetricians to prevent and manage suboptimal surgical response and adverse pregnancy outcomes.
代谢减重手术(MBS)是减肥的最后一种有效方法,约一半的患者为育龄女性。建议手术与怀孕间隔12个月,以优化体重减轻和营养状况。预测MBS后12个月内的怀孕情况对于评估减重中心的生殖健康服务很重要;因此,本研究旨在使用机器学习(ML)算法建立一个MBS后第一年怀孕情况的预测模型。
在一项对2009年至2023年期间有MBS后怀孕史的473名女性进行的巢式病例对照研究中,确定了MBS后12个月内怀孕的易感因素,随后应用了几种ML模型,包括分类算法和决策树,以及回归分析,以预测MBS后12个月内的怀孕情况。
C5.0决策树的曲线下面积(AUC)最高,为0.920±0.014(95%CI 0.906,0.927),敏感性和特异性分别为0.762±0.044(95%CI 0.739,0.801)和0.916±0.028(95%CI 0.883,0.922)。该模型考虑了13个预测MBS后前12个月怀孕情况的重要因素,包括月经不规律、婚姻状况、胎儿发育异常史、年龄、不孕类型、产次、妊娠次数、生育治疗、术前体重指数(BMI)、不孕、不孕持续时间、多囊卵巢综合征(PCOS)和2型糖尿病(T2DM)。
开发预测MBS后12个月内怀孕情况的ML模型,有助于减重外科医生和产科医生预防和管理手术反应不佳及不良妊娠结局。