Li Yanan, Li Liang, Song Xiao, Meng Fanqing, Zhang Meiling, Li Yarong, Chu Ran
Department of Obstetrics and Gynecology, Shandong Provincial Hospital Affiliated to Shandong First Medical University, Jinan, Shandong, P.R. China.
Department of Obstetrics, the International Peace Maternity and Child Health Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, P.R. China.
Ther Adv Reprod Health. 2025 Feb 12;19:26334941251317644. doi: 10.1177/26334941251317644. eCollection 2025 Jan-Dec.
The placenta accreta spectrum (PAS) represents a significant risk factor for severe postpartum hemorrhage. Recent studies have demonstrated the safety of neuraxial anesthesia (NA) in cesarean delivery (CD) for patients with PAS.
To evaluate the risk of severe peripartum hemorrhage in patients with PAS who underwent CD under NA.
A multicenter retrospective cohort study.
This study analyzed 214 patients diagnosed with PAS. Logistic regression was used to identify factors increasing the risk of severe peripartum hemorrhage. A total of six machine learning (ML) algorithms were employed for model validation.
The predictive model includes the following risk factors: age at delivery >33 years ( = 0.004), history of CD >1 ( = 0.020), preoperative HGB ⩽ 100 g/L ( = 0.013), placenta previa classification ( = 0.001), vascular lacunae within the placenta ( = 0.015), and labor duration ( = 0.026). The validation of ML algorithms revealed that the model achieved an accuracy ranging from 0.68 to 0.71, with an area under the receiver operating characteristic curve between 0.75 and 0.79. A nomogram list and web-based calculator were constructed for clinical implementation, and a risk stratification system was established based on model scores.
A prenatal risk assessment model was developed to estimate the likelihood of severe peripartum hemorrhage in PAS patients undergoing CD under NA. This model may provide preliminary support for clinicians in tailoring anesthetic management strategies for potentially high-risk cases, but further studies are needed to confirm its clinical utility.
胎盘植入谱系疾病(PAS)是严重产后出血的重要危险因素。近期研究已证实,对于患有PAS的患者,剖宫产(CD)时采用椎管内麻醉(NA)是安全的。
评估在NA下接受CD的PAS患者发生严重围产期出血的风险。
一项多中心回顾性队列研究。
本研究分析了214例诊断为PAS的患者。采用逻辑回归确定增加严重围产期出血风险的因素。共采用六种机器学习(ML)算法进行模型验证。
预测模型包括以下危险因素:分娩年龄>33岁(=0.004)、剖宫产史>1次(=0.020)、术前血红蛋白(HGB)≤100 g/L(=0.013)、前置胎盘分类(=0.001)、胎盘内血管腔隙(=0.015)和产程(=0.026)。ML算法验证显示,该模型的准确率在0.68至0.71之间,受试者工作特征曲线下面积在0.75至0.79之间。构建了列线图列表和基于网络的计算器用于临床应用,并基于模型评分建立了风险分层系统。
开发了一种产前风险评估模型,以估计在NA下接受CD的PAS患者发生严重围产期出血的可能性。该模型可为临床医生针对潜在高危病例制定麻醉管理策略提供初步支持,但需要进一步研究以证实其临床实用性。