Department of Pharmacology, Jawaharlal Institute of Postgraduate Medical Education and Research (JIPMER), Puducherry, India.
Department of General Surgery, Sri Manakula Vinayagar Medical College and Hospital (SMVMCH), Puducherry, India.
Pain. 2023 Jun 1;164(6):1332-1339. doi: 10.1097/j.pain.0000000000002821. Epub 2022 Nov 9.
Fentanyl exhibits interindividual variability in its dose requirement due to various nongenetic and genetic factors such as single nucleotide polymorphisms (SNPs). This study aims to develop and cross-validate robust predictive models for postoperative fentanyl analgesic requirement and other related outcomes in patients undergoing major breast surgery. Data regarding genotypes of 10 candidate SNPs, cold pain test (CPT) scores, pupillary response to fentanyl (PRF), and other common clinical characteristics were recorded from 257 patients undergoing major breast surgery. Predictive models for 24-hour fentanyl requirement, 24-hour pain scores, and time for first analgesic (TFA) in the postoperative period were developed using 4 different algorithms: generalised linear regression model, linear support vector machine learning (SVM-Linear), random forest (RF), and Bayesian regularised neural network. The variant genotype of OPRM1 (rs1799971) and higher CPT scores were associated with higher 24-hour postoperative fentanyl consumption, whereas higher PRF and history of hypertension were associated with lower fentanyl requirement. The variant allele of COMT (rs4680) and higher CPT scores were associated with 24-hour postoperative pain scores. The variant genotype of CTSG (rs2070697), higher intraoperative fentanyl use, and higher CPT scores were associated with significantly lower TFA. The predictive models for 24-hour postoperative fentanyl requirement, pain scores, and TFA had R-squared values of 0.313 (SVM-Linear), 0.434 (SVM-Linear), and 0.532 (RF), respectively. We have developed and cross-validated predictive models for 24-hour postoperative fentanyl requirement, 24-hour postoperative pain scores, and TFA with satisfactory performance characteristics and incorporated them in a novel web application.
芬太尼的剂量需求存在个体间差异,这是由于多种非遗传和遗传因素所致,如单核苷酸多态性(SNP)。本研究旨在建立并交叉验证用于预测大型乳房手术后患者术后芬太尼镇痛需求及其他相关结局的稳健预测模型。记录了 257 例接受大型乳房手术的患者的 10 个候选 SNP 基因型、冷痛测试(CPT)评分、芬太尼瞳孔反应(PRF)和其他常见临床特征的数据。使用 4 种不同算法(广义线性回归模型、线性支持向量机学习(SVM-Linear)、随机森林(RF)和贝叶斯正则化神经网络)建立了 24 小时芬太尼需求、24 小时疼痛评分和术后首次镇痛(TFA)时间的预测模型。OPRM1(rs1799971)的变异基因型和较高的 CPT 评分与较高的术后 24 小时芬太尼消耗量相关,而较高的 PRF 和高血压病史与芬太尼需求较低相关。COMT(rs4680)的变异等位基因和较高的 CPT 评分与术后 24 小时疼痛评分相关。CTSG(rs2070697)的变异基因型、术中芬太尼用量较高和 CPT 评分较高与 TFA 显著降低相关。24 小时术后芬太尼需求、疼痛评分和 TFA 的预测模型的 R-squared 值分别为 0.313(SVM-Linear)、0.434(SVM-Linear)和 0.532(RF)。我们已经建立并交叉验证了用于预测术后 24 小时芬太尼需求、24 小时术后疼痛评分和 TFA 的预测模型,这些模型具有令人满意的性能特征,并将其纳入了一个新的网络应用程序中。