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膝关节置换术后慢性疼痛的相关因素及风险预测。

Related Factors and Risk Prediction of Chronic Pain after Knee Replacement.

机构信息

Department of Orthopedics, Yingtan 184 Hospital, 335000 Yingtan, Jiangxi, China.

Department of Orthopedics, The 908th Hospital of Joint Logistics Support Force, 330000 Nanchang, Jiangxi, China.

出版信息

Ann Ital Chir. 2024;95(5):934-943. doi: 10.62713/aic.3593.

Abstract

AIM

This study aimed to explore potential risk factors associated with chronic pain after total knee arthroplasty (TKA) and to establish the risk prediction model of chronic postoperative pain (CPSP).

METHODS

This study retrospectively analyzed the clinical data of 160 patients who underwent TKA in our hospital between January 2021 and January 2024. Relevant data such as the baseline characteristics, past medical history, CPSP condition, and pain numerical rating scale (NRS) were retrieved from the medical information system. Logistic regression analysis was performed on the risk factors affecting the postoperative CPSP of the patients. The identified risk factors were incorporated to develop a risk-prediction model.

RESULTS

Among the 160 patients, 67 (41.88%) had CPSP at or around the operation incision. The NRS pain score was significantly higher in the CPSP group than in the non-CPSP group during exercise preoperative and 3 months post-operation. Furthermore, the CPSP group had a higher NRS score than the non-CPSP group at rest 3 months after the procedure (p < 0.05). We observed that the preoperative NRS score, preoperative hospital for special surgery (HSS) score, postoperative functional training, and postoperative adverse events were the independent factors influencing the occurrence of CPSP after TKA (p < 0.05). Additionally, there was a significant positive correlation between preoperative NRS score, postoperative adverse events, and CPSP pain severity, and a significant negative correlation between preoperative HSS score, postoperative functional training, and CPSP pain severity (p < 0.05). The receiver operating characteristic (ROC) curve had excellent calibration and prediction capabilities for the predictive model of CPSP after TKA, with the area under the curve (AUC) of 0.868 (95% CI: 0.811-0.925).

CONCLUSIONS

In this study, the predictive model of CPSP risk for patients after TKA surgery was initially constructed, which can help medical staff predict the risk of CPSP in patients after surgery individually, thereby preventing the occurrence of CPSP.

摘要

目的

本研究旨在探讨全膝关节置换术后慢性疼痛(CPSP)相关的潜在危险因素,并建立 CPSP 的风险预测模型。

方法

本研究回顾性分析了 2021 年 1 月至 2024 年 1 月在我院接受 TKA 的 160 例患者的临床资料。从医疗信息系统中检索基线特征、既往病史、CPSP 情况和疼痛数字评分量表(NRS)等相关数据。对影响患者术后 CPSP 的危险因素进行 logistic 回归分析,将确定的危险因素纳入建立风险预测模型。

结果

在 160 例患者中,有 67 例(41.88%)在手术切口处或周围出现 CPSP。与非 CPSP 组相比,CPSP 组术前和术后 3 个月运动时 NRS 疼痛评分显著更高,且术后 3 个月休息时 CPSP 组 NRS 评分也显著高于非 CPSP 组(p<0.05)。我们观察到术前 NRS 评分、术前美国特种外科医院(HSS)评分、术后功能训练和术后不良事件是影响 TKA 后 CPSP 发生的独立因素(p<0.05)。此外,术前 NRS 评分、术后不良事件与 CPSP 疼痛严重程度呈显著正相关,术前 HSS 评分、术后功能训练与 CPSP 疼痛严重程度呈显著负相关(p<0.05)。ROC 曲线对 TKA 后 CPSP 预测模型具有良好的校准和预测能力,曲线下面积(AUC)为 0.868(95%CI:0.811-0.925)。

结论

本研究初步构建了 TKA 术后 CPSP 风险预测模型,有助于医务人员个体化预测患者术后 CPSP 风险,从而预防 CPSP 的发生。

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