Department of Pediatrics, University of Alberta, Edmonton, AB, Canada.
Department of Obstetrics and Gynaecology, University of Alberta, Edmonton, AB, Canada.
PLoS One. 2022 Oct 6;17(10):e0268229. doi: 10.1371/journal.pone.0268229. eCollection 2022.
Previously developed cesarean section (CS) and emergency CS prediction tools use antenatal and intrapartum risk factors. We aimed to develop a predictive model for the risk of emergency CS before the onset of labour utilizing antenatal obstetric and non-obstetric factors.
We completed a secondary analysis of data collected from the CHILD Cohort Study. The analysis was limited to term (≥37 weeks), singleton pregnant women with cephalic presentation. The sample was divided into a training and validation dataset. The emergency CS prediction model was developed in the training dataset and the performance accuracy was assessed by the area under the receiver operating characteristic curve(AUC) of the receiver operating characteristic analysis (ROC). Our final model was subsequently evaluated in the validation dataset.
The participant sample consisted of 2,836 pregnant women. Mean age of participants was 32 years, mean BMI of 25.4 kg/m2 and 39% were nulliparous. 14% had emergency CS delivery. Each year of increasing maternal age increased the odds of emergency CS by 6% (adjusted Odds Ratio (aOR 1.06,1.02-1.08). Likewise, there was a 4% increase odds of emergency CS for each unit increase in BMI (aOR 1.04,1.02-1.06). In contrast, increase in maternal height has a negative association with emergency CS. The final emergency CS delivery predictive model included six variables (hypertensive disorders of pregnancy, antenatal depression, previous vaginal delivery, age, height, BMI). The AUC for our final prediction model was 0.74 (0.72-0.77) in the training set with a similar AUC in the validation dataset (0.77; 0.71-0.82).
The developed and validated emergency CS delivery prediction model can be used in counselling prospective parents around their CS risk and healthcare resource planning. Further validation of the tool is suggested.
先前开发的剖宫产(CS)和紧急 CS 预测工具使用产前和产时危险因素。我们旨在利用产前产科和非产科因素,为分娩前发生紧急 CS 的风险开发预测模型。
我们对 CHILD 队列研究收集的数据进行了二次分析。分析仅限于足月(≥37 周)、头位单胎妊娠妇女。样本分为训练数据集和验证数据集。在训练数据集中开发了紧急 CS 预测模型,并通过接受者操作特征分析(ROC)的接收者操作特征曲线(AUC)评估了性能准确性。随后在验证数据集中评估了我们的最终模型。
参与者样本包括 2836 名孕妇。参与者的平均年龄为 32 岁,平均 BMI 为 25.4kg/m2,39%为初产妇。14%的孕妇行紧急 CS 分娩。母亲年龄每增加 1 岁,行紧急 CS 的几率增加 6%(调整后的优势比(aOR)为 1.06,1.02-1.08)。同样,BMI 每增加 1 个单位,行紧急 CS 的几率增加 4%(aOR 为 1.04,1.02-1.06)。相比之下,母亲身高的增加与紧急 CS 呈负相关。最终的紧急 CS 分娩预测模型包括 6 个变量(妊娠高血压疾病、产前抑郁、既往阴道分娩、年龄、身高、BMI)。该预测模型在训练集中的 AUC 为 0.74(0.72-0.77),在验证数据集中的 AUC 相似(0.77;0.71-0.82)。
开发和验证的紧急 CS 分娩预测模型可用于向准父母提供 CS 风险和医疗资源规划方面的咨询。建议进一步验证该工具。