Tang Ming, Wang Siyuan, Wang Yiwen, Chen Mianpeng, Chang Xindong, He Mingfei, Fang Qingqing, Yin Shiwu
Department of Interventional Vascular Medicine, Hefei Hospital Affiliated to Anhui Medical University, The Second People's Hospital of Hefei, Hefei City, Anhui Province, People's Republic of China.
The Fifth Clinical College of Medicine, Anhui Medical University, Hefei City, Anhui Province, People's Republic of China.
Risk Manag Healthc Policy. 2024 Mar 23;17:689-699. doi: 10.2147/RMHP.S453819. eCollection 2024.
To develop an individualized predictive model for postoperative recurrent lumbar disc herniation (PRLDH) in patients undergoing percutaneous endoscopic transforaminal discectomy (PETD) by considering postoperative activity factors.
Retrospectively collected data from 612 LDH patients who underwent PETD in our institution from January 2017 to June 2023. They were divided into a training group (429 cases) and a validation group (183 cases). Lasso regression (Model 1) and random forest (Model 2) were applied for variable selection in the training group. The two models were compared in terms of discrimination (the area under curve, AUC), calibration (calibration curve), and clinical utility (decision curve analysis, DCA). Akaike information criterion (AIC) was used for model comparison, and internal validation employed 1000 times Bootstrap + 10-fold cross-validation. Finally, a Nomogram was constructed to display the results and uploaded to the web version.
Among 612 treated LDH patients, 66 (10.78%) developed PRLDH. Model 1, superior in AUC, calibration, DCA, and AIC over Model 2, was chosen as the predictive model. Logistic regression in the training group identified BMI, smoking, activity level score, time to first ambulation, diabetes, Modic change, and Pfirrmann grade as independent predictors of PRLDH. Model 1 exhibited a training group AUC of 0.813 (95% CI 0.753-0.872) and a validation group AUC of 0.868 (95% CI 0.773-0.962). At a Youden index of 0.50, sensitivity was 0.73, specificity was 0.77. Internal validation (1000 times Bootstrap + 10-fold cross-validation) for the training group showed accuracy of 0.889, kappa consistency of 0.112, and AUC of 0.757. The Hosmer-Lemeshow goodness-of-fit tests indicated good discriminative ability for Model 1 in both the training (=2.895, =0.941) and validation groups (=8.197, =0.414). The DCA and Nomogram are accessible at https://sofarnomogram.shinyapps.io/PRLDHNom/.
The Nomogram predictive model, developed based on postoperative activity factors in this study, demonstrates excellent predictive capability, facilitating risk assessment for the occurrence of PRLDH after PETD.
通过考虑术后活动因素,为接受经皮内镜下椎间孔切开椎间盘切除术(PETD)的患者建立个性化的术后复发性腰椎间盘突出症(PRLDH)预测模型。
回顾性收集2017年1月至2023年6月在本机构接受PETD的612例腰椎间盘突出症患者的数据。将他们分为训练组(429例)和验证组(183例)。在训练组中应用套索回归(模型1)和随机森林(模型2)进行变量选择。对这两个模型在区分度(曲线下面积,AUC)、校准(校准曲线)和临床实用性(决策曲线分析,DCA)方面进行比较。采用赤池信息准则(AIC)进行模型比较,内部验证采用1000次自助抽样+10折交叉验证。最后,构建列线图以展示结果并上传至网络版。
在612例接受治疗的腰椎间盘突出症患者中,66例(10.78%)发生了PRLDH。模型1在AUC、校准、DCA和AIC方面优于模型2,被选为预测模型。训练组的逻辑回归确定体重指数、吸烟、活动水平评分、首次下床活动时间、糖尿病、Modic改变和Pfirrmann分级为PRLDH的独立预测因素。模型1在训练组中的AUC为(0.813)(95%可信区间(0.753 - 0.872)),在验证组中的AUC为(0.868)(95%可信区间(0.773 - 0.962))。在约登指数为(0.50)时,灵敏度为(0.73),特异度为(0.77)。训练组的内部验证(1000次自助抽样+10折交叉验证)显示准确率为(0.889),kappa一致性为(0.112),AUC为(0.757)。Hosmer-Lemeshow拟合优度检验表明模型1在训练组((χ² = 2.895),(P = 0.941))和验证组((χ² = 8.197),(P = 0.414))中均具有良好的区分能力。DCA和列线图可在https://sofarnomogram.shinyapps.io/PRLDHNom/获取。
本研究基于术后活动因素建立的列线图预测模型具有出色的预测能力,有助于对PETD术后PRLDH的发生进行风险评估。