Department of Mother and Child Care, "Grigore T. Popa" University of Medicine and Pharmacy, 700115 Iasi, Romania.
Surgical Department, Faculty of Medicine, "Grigore T. Popa" University of Medicine and Pharmacy, 700115 Iasi, Romania.
Medicina (Kaunas). 2024 Aug 11;60(8):1298. doi: 10.3390/medicina60081298.
: Polycystic ovary syndrome (PCOS) is a complex disorder that can negatively impact the obstetrical outcomes. The aim of this study was to determine the predictive performance of four machine learning (ML)-based algorithms for the prediction of adverse pregnancy outcomes in pregnant patients diagnosed with PCOS. : A total of 174 patients equally divided into 2 groups depending on the PCOS diagnosis were included in this prospective study. We used the Mantel-Haenszel test to evaluate the risk of adverse pregnancy outcomes for the PCOS patients and reported the results as a crude and adjusted odds ratio (OR) with a 95% confidence interval (CI). A generalized linear model was used to identify the predictors of adverse pregnancy outcomes in PCOS patients, quantifying their impact as risk ratios (RR) with 95% CIs. Significant predictors were included in four machine learning-based algorithms and a sensitivity analysis was employed to quantify their performance. : Our crude estimates suggested that PCOS patients had a higher risk of developing gestational diabetes and had a higher chance of giving birth prematurely or through cesarean section in comparison to patients without PCOS. When adjusting for confounders, only the odds of delivery via cesarean section remained significantly higher for PCOS patients. Obesity was outlined as a significant predictor for gestational diabetes and fetal macrosomia, while a personal history of diabetes demonstrated a significant impact on the occurrence of all evaluated outcomes. Random forest (RF) performed the best when used to predict the occurrence of gestational diabetes (area under the curve, AUC value: 0.782), fetal macrosomia (AUC value: 0.897), and preterm birth (AUC value: 0.901) in PCOS patients. : Complex ML algorithms could be used to predict adverse obstetrical outcomes in PCOS patients, but larger datasets should be analyzed for their validation.
多囊卵巢综合征(PCOS)是一种复杂的疾病,可能会对产科结局产生负面影响。本研究旨在确定四种基于机器学习(ML)的算法在预测诊断为 PCOS 的孕妇不良妊娠结局方面的预测性能。
这项前瞻性研究共纳入 174 名患者,根据 PCOS 诊断将其平均分为 2 组。我们使用 Mantel-Haenszel 检验评估 PCOS 患者不良妊娠结局的风险,并以粗比数比(OR)和 95%置信区间(CI)报告结果。我们使用广义线性模型来确定 PCOS 患者不良妊娠结局的预测因素,并以 95%CI 量化其风险比(RR)的影响。将显著的预测因素纳入四个基于机器学习的算法中,并进行敏感性分析以量化其性能。
我们的初步估计表明,与无 PCOS 的患者相比,PCOS 患者发生妊娠期糖尿病的风险更高,早产或剖宫产的几率更高。在调整混杂因素后,只有剖宫产的几率对 PCOS 患者仍然显著更高。肥胖被确定为妊娠期糖尿病和胎儿巨大儿的显著预测因素,而糖尿病个人史对所有评估结果的发生都有显著影响。随机森林(RF)在预测 PCOS 患者发生妊娠期糖尿病(AUC 值:0.782)、胎儿巨大儿(AUC 值:0.897)和早产(AUC 值:0.901)方面表现最佳。
复杂的 ML 算法可用于预测 PCOS 患者的不良产科结局,但需要分析更大的数据集以验证其准确性。