Department of Medical Education, National Taiwan University Hospital, Taipei, Taiwan.
Department of Orthopaedic Surgery, National Taiwan University Hospital, No.7 Chung-Shan South Road, Taipei, 10002, Taiwan.
BMC Musculoskelet Disord. 2023 Jul 5;24(1):553. doi: 10.1186/s12891-023-06667-5.
Preoperative prediction of prolonged postoperative opioid use (PPOU) after total knee arthroplasty (TKA) could identify high-risk patients for increased surveillance. The Skeletal Oncology Research Group machine learning algorithm (SORG-MLA) has been tested internally while lacking external support to assess its generalizability. The aims of this study were to externally validate this algorithm in an Asian cohort and to identify other potential independent factors for PPOU.
In a tertiary center in Taiwan, 3,495 patients receiving TKA from 2010-2018 were included. Baseline characteristics were compared between the external validation cohort and the original developmental cohorts. Discrimination (area under receiver operating characteristic curve [AUROC] and precision-recall curve [AUPRC]), calibration, overall performance (Brier score), and decision curve analysis (DCA) were applied to assess the model performance. A multivariable logistic regression was used to evaluate other potential prognostic factors.
There were notable differences in baseline characteristics between the validation and the development cohort. Despite these variations, the SORG-MLA ( https://sorg-apps.shinyapps.io/tjaopioid/ ) remained its good discriminatory ability (AUROC, 0.75; AUPRC, 0.34) and good overall performance (Brier score, 0.029; null model Brier score, 0.032). The algorithm could bring clinical benefit in DCA while somewhat overestimating the probability of prolonged opioid use. Preoperative acetaminophen use was an independent factor to predict PPOU (odds ratio, 2.05).
The SORG-MLA retained its discriminatory ability and good overall performance despite the different pharmaceutical regulations. The algorithm could be used to identify high-risk patients and tailor personalized prevention policy.
全膝关节置换术(TKA)后延长术后阿片类药物使用(PPOU)的术前预测,可以识别出需要加强监测的高风险患者。Skeletal Oncology Research Group 机器学习算法(SORG-MLA)已在内部进行了测试,但缺乏外部支持来评估其泛化能力。本研究的目的是在亚洲队列中对该算法进行外部验证,并确定其他潜在的 PPOU 独立因素。
在台湾的一家三级中心,纳入了 2010 年至 2018 年间接受 TKA 的 3495 名患者。对外部验证队列和原始开发队列的基线特征进行了比较。应用判别能力(接受者操作特征曲线下面积 [AUROC] 和精度-召回曲线下面积 [AUPRC])、校准、总体性能(Brier 评分)和决策曲线分析(DCA)来评估模型性能。采用多变量逻辑回归评估其他潜在的预后因素。
验证队列和开发队列之间的基线特征存在显著差异。尽管存在这些差异,SORG-MLA(https://sorg-apps.shinyapps.io/tjaopioid/)仍保持良好的判别能力(AUROC,0.75;AUPRC,0.34)和良好的总体性能(Brier 评分,0.029;零模型 Brier 评分,0.032)。该算法在 DCA 中具有临床获益,而在一定程度上高估了延长阿片类药物使用的概率。术前使用对乙酰氨基酚是预测 PPOU 的独立因素(比值比,2.05)。
尽管药物监管不同,SORG-MLA 仍保留了其判别能力和良好的总体性能。该算法可用于识别高风险患者,并制定个性化的预防策略。