Yang Xiaomeng, Che Xuexue, Li Yao, Liu Wenjing, Zhang Jia, Han Jiao
Department of Obstetrical III, Baoji Maternal and Child Health Hospital Baoji 721000, Shaanxi, China.
Am J Transl Res. 2025 Mar 15;17(3):1834-1847. doi: 10.62347/QKFG5933. eCollection 2025.
To identify independent risk factors for postpartum hemorrhage (PPH) and to develop a dynamic nomogram model for early prediction and prevention of PPH.
A retrospective analysis was conducted on clinical data from 372 pregnant women with placenta previa admitted to Baoji Maternal and Child Health Hospital between March 2022 and March 2024. Patients were categorized into a PPH group (blood loss ≥ 1500 mL, n = 109) and a non-PPH group (blood loss < 1500 mL, n = 263). Clinical data were collected from electronic medical records. The included cases were split into a training set (n = 260) and a validation set (n = 112) at a 7:3 ratio. Multivariate logistic regression were conducted to identify risk factors for PPH, and a nomogram predictive model was constructed based on the identified factors. The predictive performance of the model was assessed using ROC curve analysis, decision curve analysis (DCA), and calibration curves.
Multivariate logistic regression identified age ≥ 32.5 years (P < 0.001), number of cesarean sections ≥ 2 (P = 0.037), placental adhesion (P < 0.001), placental implantation (P = 0.002), partial placenta previa (P = 0.004), prior cesarean section with placenta previa (P = 0.020), and anemia (P = 0.002) as independent risk factors for PPH. The nomogram achieved an AUC of 0.880 in the training set and 0.840 in the validation set, indicating strong discrimination and predictive capability. ROC analysis showed that age, number of cesarean sections, and placental adhesion had high sensitivity and specificity for predicting PPH, supporting the model's clinical utility.
The dynamic nomogram model developed in this study, based on factors such as age, number of cesarean sections, placental adhesion, placental implantation, placenta previa type, previous cesarean with placenta previa, and anemia, demonstrated excellent predictive performance for early identification of PPH risk.
确定产后出血(PPH)的独立危险因素,并建立动态列线图模型用于PPH的早期预测和预防。
对2022年3月至2024年3月在宝鸡市妇幼保健院收治的372例前置胎盘孕妇的临床资料进行回顾性分析。将患者分为PPH组(失血≥1500 mL,n = 109)和非PPH组(失血<1500 mL,n = 263)。从电子病历中收集临床资料。纳入病例按7:3的比例分为训练集(n = 260)和验证集(n = 112)。进行多因素逻辑回归以确定PPH的危险因素,并基于确定的因素构建列线图预测模型。使用ROC曲线分析、决策曲线分析(DCA)和校准曲线评估模型的预测性能。
多因素逻辑回归确定年龄≥32.5岁(P < 0.001)、剖宫产次数≥2次(P = 0.037)、胎盘粘连(P < 0.001)、胎盘植入(P = 0.002)、部分性前置胎盘(P = 0.004)、既往前置胎盘剖宫产史(P = 0.020)和贫血(P = 0.002)为PPH的独立危险因素。列线图在训练集中的AUC为0.880,在验证集中为0.840,表明具有较强的区分度和预测能力。ROC分析表明,年龄、剖宫产次数和胎盘粘连对预测PPH具有较高的敏感性和特异性,支持该模型的临床实用性。
本研究基于年龄、剖宫产次数、胎盘粘连、胎盘植入、前置胎盘类型、既往前置胎盘剖宫产史和贫血等因素建立的动态列线图模型,在早期识别PPH风险方面表现出优异的预测性能。