Lee John Song En, Sultana Rehena, Han Nian Lin Reena, Sia Alex Tiong Heng, Sng Ban Leong
Department of Women's Anaesthesia, KK Women's and Children's Hospital, 100 Bukit Timah Road, Singapore, 229899, Singapore.
Centre for Quantitative Medicine, Duke-NUS Medical School, 8 College Road, Singapore, 169857, Singapore.
BMC Anesthesiol. 2018 Nov 29;18(1):176. doi: 10.1186/s12871-018-0638-x.
Epidural catheter re-siting in parturients receiving labour epidural analgesia is distressing to the parturient and places them at increased complications from a repeat procedure. The aim of this study was to develop and validate a clinical risk factor model to predict the incidence of epidural catheter re-siting in labour analgesia.
The data from parturients that received labour epidural analgesia in our centre during 2014-2015 was used to develop a predictive model for epidural catheter re-siting during labour analgesia. Multivariate logistic regression analysis was used to identify factors that were predictive of epidural catheter re-siting. The forward, backward and stepwise variable selection methods were applied to build a predictive model, which was internally validated. The final multivariate model was externally validated with the data collected from 10,170 parturients during 2012-2013 in our centre.
Ninety-three (0.88%) parturients in 2014-2015 required re-siting of their epidural catheter. The training data set included 7439 paturients in 2014-2015. A higher incidence of breakthrough pain (OR = 4.42), increasing age (OR = 1.07), an increased pain score post-epidural catheter insertion (OR = 1.35) and problems such as inability to obtain cerebrospinal fluid in combined spinal epidural technique (OR = 2.06) and venous puncture (OR = 1.70) were found to be significantly predictive of epidural catheter re-siting, while spontaneous onset of labour (OR = 0.31) was found to be protective. The predictive model was validated internally on a further 3189 paturients from the data of 2014-2015 and externally on 10,170 paturients from the data of 2012-2013. Predictive accuracy of the model based on C-statistic were 0.89 (0.86, 0.93) and 0.92 (0.88, 0.97) for training and internal validation data respectively. Similarly, predictive accuracy in terms of C-statistic was 0.89 (0.86, 0.92) based on 2012-2013 data.
Our predictive model of epidural re-siting in parturients receiving labour epidural analgesia could provide timely identification of high-risk paturients required epidural re-siting.
接受分娩硬膜外镇痛的产妇重新放置硬膜外导管会令产妇痛苦,且重复操作会增加其并发症风险。本研究的目的是开发并验证一种临床风险因素模型,以预测分娩镇痛时硬膜外导管重新放置的发生率。
使用2014 - 2015年期间在我们中心接受分娩硬膜外镇痛的产妇数据,建立分娩镇痛时硬膜外导管重新放置的预测模型。采用多因素逻辑回归分析来确定可预测硬膜外导管重新放置的因素。应用向前、向后和逐步变量选择方法构建预测模型,并进行内部验证。最终的多因素模型用2012 - 2013年期间在我们中心收集的10170名产妇的数据进行外部验证。
2014 - 2015年有93名(0.88%)产妇需要重新放置硬膜外导管。训练数据集包括2014 - 2015年的7439名产妇。发现突破性疼痛发生率较高(比值比[OR]=4.42)、年龄增加(OR = 1.07)、硬膜外导管插入后疼痛评分增加(OR = 1.35)以及联合脊髓硬膜外技术中无法获取脑脊液(OR = 2.06)和静脉穿刺(OR = 1.70)等问题是硬膜外导管重新放置的显著预测因素,而自然临产(OR = 0.31)具有保护作用。该预测模型在2014 - 2015年数据中的另外3189名产妇中进行了内部验证,并在2012 - 2013年数据中的10170名产妇中进行了外部验证。基于C统计量,训练数据和内部验证数据的模型预测准确性分别为0.89(0.86,0.93)和0.92(0.88,0.97)。同样,基于2012 - 2013年数据,C统计量的预测准确性为0.89(0.86,0.92)。
我们的接受分娩硬膜外镇痛产妇硬膜外重新放置预测模型可及时识别需要硬膜外重新放置的高危产妇。