Wang Yaping, Yu Weiguang, Zhi Hui, Shang Kun, Yin Hongmei, Shan Dandan, Li Xiao, Li Wenxia, Zhang Xiuru, Zhang Baoli
Department of Anesthesia and Perioperative Medicine, Henan Provincial People's Hospital, Zhengzhou, China.
Department of Emergency Surgery and Orthopaedics, The First Affiliated Hospital, Sun Yat-sen University, Guangzhou, China.
Front Med (Lausanne). 2025 Jul 2;12:1600481. doi: 10.3389/fmed.2025.1600481. eCollection 2025.
This study aimed to develop and validate a nomogram for predicting pressure ulcer (PU) incidence in neurosurgical patients to enhance postoperative risk management.
A retrospective analysis of 1,020 patients across four tertiary centers (2005-2025) evaluated 20 variables. Propensity score matching (PSM) addressed confounding, while LASSO regression and machine learning identified predictors. Model performance was assessed via AUC-ROC, C-index, and decision curve analysis.
Eight independent predictors of PU were identified: diabetes duration, BMI, albumin, prealbumin, age, hemoglobin, temperature difference, and urinary incontinence. The training set achieved an AUC-ROC of 0.825 (95% CI: 0.797-0.853) with 77% sensitivity and 92% specificity, while the validation set showed an AUC-ROC of 0.800 (95% CI: 0.753-0.847) with 76% sensitivity and 92% specificity. The nomogram demonstrated recalibrated C-indices of 0.833 (training) and 0.826 (validation). Decision curve analysis confirmed significant net benefit across clinical thresholds.
This validated nomogram enables early PU risk stratification, facilitating personalized postoperative interventions. Given its high sensitivity and specificity, the model can be integrated into clinical practice to assist in early identification of high-risk patients, thereby improving patient outcomes through timely interventions.
本研究旨在开发并验证一种用于预测神经外科患者压疮(PU)发生率的列线图,以加强术后风险管理。
对四个三级中心(2005 - 2025年)的1020例患者进行回顾性分析,评估20个变量。倾向得分匹配(PSM)用于解决混杂问题,而套索回归和机器学习用于识别预测因素。通过AUC - ROC、C指数和决策曲线分析评估模型性能。
确定了8个压疮的独立预测因素:糖尿病病程、体重指数、白蛋白、前白蛋白、年龄、血红蛋白、温差和尿失禁。训练集的AUC - ROC为0.825(95%CI:0.797 - 0.853),灵敏度为77%,特异度为92%,而验证集的AUC - ROC为0.800(95%CI:0.753 - 0.847),灵敏度为76%,特异度为92%。列线图在训练集和验证集的重新校准C指数分别为0.833和0.826。决策曲线分析证实了在临床阈值范围内有显著的净效益。
这种经过验证的列线图能够实现早期压疮风险分层,便于进行个性化的术后干预。鉴于其高灵敏度和特异度,该模型可整合到临床实践中,以协助早期识别高危患者,从而通过及时干预改善患者预后。