Papadomanolakis-Pakis Nicholas, Haroutounian Simon, Sørensen Johan Kløvgaard, Runge Charlotte, Brix Lone Dragnes, Christiansen Christian Fynbo, Nikolajsen Lone
Department of Clinical Medicine, Aarhus University, Aarhus, Denmark.
Department of Anaesthesiology and Intensive Care, Aarhus University Hospital, Aarhus, Denmark.
Pain. 2025 Mar 1;166(3):667-679. doi: 10.1097/j.pain.0000000000003405. Epub 2024 Sep 18.
Chronic postsurgical pain (CPSP) is a highly prevalent condition. To improve CPSP management, we aimed to develop and internally validate generalizable point-of-care risk tools for preoperative and postoperative prediction of CPSP 3 months after surgery. A multicentre, prospective, cohort study in adult patients undergoing elective surgery was conducted between May 2021 and May 2023. Prediction models were developed for the primary outcome according to the International Association for the Study of Pain criteria and a secondary threshold-based CPSP outcome. Models were developed with multivariable logistic regression and backward stepwise selection. Internal validation was conducted using bootstrap resampling, and optimism was corrected by shrinkage of predictor weights. Model performance was assessed by discrimination and calibration. Clinical utility was assessed by decision curve analysis. The final cohort included 960 patients, 16.3% experienced CPSP according to the primary outcome and 33.6% according to the secondary outcome. The primary CPSP model included age and presence of other preoperative pain. Predictors in the threshold-based models associated with an increased risk of CPSP included younger age, female sex, preoperative pain in the surgical area, other preoperative pain, orthopedic surgery, minimally invasive surgery, expected surgery duration, and acute postsurgical pain intensity. Optimism-corrected area-under-the-receiver-operating curves for preoperative and postoperative threshold-based models were 0.748 and 0.747, respectively. These models demonstrated good calibration and clinical utility. The primary CPSP model demonstrated fair predictive performance including 2 significant predictors. Derivation of a generalizable risk tool with point-of-care predictors was possible for the threshold-based CPSP models but requires independent validation.
慢性术后疼痛(CPSP)是一种非常普遍的病症。为改善CPSP的管理,我们旨在开发并在内部验证可推广的即时护理风险工具,用于术前和术后预测术后3个月的CPSP。2021年5月至2023年5月期间,对接受择期手术的成年患者进行了一项多中心、前瞻性队列研究。根据国际疼痛研究协会的标准和基于阈值的次要CPSP结果,为主要结局建立了预测模型。通过多变量逻辑回归和向后逐步选择来建立模型。使用自助重采样进行内部验证,并通过预测变量权重的收缩来校正乐观偏差。通过辨别力和校准来评估模型性能。通过决策曲线分析来评估临床效用。最终队列包括960名患者,根据主要结局,16.3%的患者经历了CPSP,根据次要结局,这一比例为33.6%。主要的CPSP模型包括年龄和术前是否存在其他疼痛。基于阈值的模型中与CPSP风险增加相关的预测因素包括年龄较小、女性、手术区域的术前疼痛、其他术前疼痛、骨科手术、微创手术、预期手术持续时间和术后急性疼痛强度。术前和术后基于阈值的模型经乐观偏差校正后的受试者工作特征曲线下面积分别为0.748和0.747。这些模型显示出良好的校准和临床效用。主要的CPSP模型显示出中等的预测性能,包括2个显著的预测因素。对于基于阈值的CPSP模型,有可能推导出具即时护理预测因素的可推广风险工具,但需要进行独立验证。