Bioengineering Laboratory, Department of Orthopaedic Surgery, Massachusetts General Hospital, Harvard Medical School, 55 Fruit Street, Boston, MA, 02114, USA.
Knee Surg Sports Traumatol Arthrosc. 2022 Aug;30(8):2573-2581. doi: 10.1007/s00167-021-06812-4. Epub 2022 Jan 5.
Adequate postoperative pain control following total knee arthroplasty (TKA) is required to achieve optimal patient recovery. However, the postoperative recovery may lead to an unnaturally extended opioid use, which has been associated with adverse outcomes. This study hypothesizes that machine learning models can accurately predict extended opioid use following primary TKA.
A total of 8873 consecutive patients that underwent primary TKA were evaluated, including 643 patients (7.2%) with extended postoperative opioid use (> 90 days). Electronic patient records were manually reviewed to identify patient demographics and surgical variables associated with prolonged postoperative opioid use. Five machine learning algorithms were developed, encompassing the breadth of state-of-the-art machine learning algorithms available in the literature, to predict extended opioid use following primary TKA, and these models were assessed by discrimination, calibration, and decision curve analysis.
The strongest predictors for prolonged opioid prescription following primary TKA were preoperative opioid duration (100% importance; p < 0.01), drug abuse (54% importance; p < 0.01), and depression (47% importance; p < 0.01). The five machine learning models all achieved excellent performance across discrimination (AUC > 0.83), calibration, and decision curve analysis. Higher net benefits for all machine learning models were demonstrated, when compared to the default strategies of changing management for all patients or no patients.
The study findings show excellent model performance for the prediction of extended postoperative opioid use following primary total knee arthroplasty, highlighting the potential of these models to assist in preoperatively identifying at risk patients, and allowing the implementation of individualized peri-operative counselling and pain management strategies to mitigate complications associated with prolonged opioid use.
IV.
全膝关节置换术(TKA)后需要充分控制术后疼痛,以实现患者的最佳康复。然而,术后恢复可能导致阿片类药物的使用时间异常延长,这与不良结局有关。本研究假设机器学习模型可以准确预测初次 TKA 后阿片类药物的使用时间延长。
评估了 8873 例连续接受初次 TKA 的患者,其中 643 例(7.2%)患者术后阿片类药物使用时间延长(>90 天)。对电子病历进行人工审查,以确定与术后延长阿片类药物使用相关的患者人口统计学和手术变量。开发了 5 种机器学习算法,涵盖了文献中现有的各种最先进的机器学习算法,以预测初次 TKA 后阿片类药物的使用时间延长,并通过判别、校准和决策曲线分析评估这些模型。
初次 TKA 后延长阿片类药物处方的最强预测因素是术前阿片类药物使用时间(100%重要性;p<0.01)、药物滥用(54%重要性;p<0.01)和抑郁(47%重要性;p<0.01)。所有 5 种机器学习模型在判别(AUC>0.83)、校准和决策曲线分析方面均表现出优异的性能。与所有患者或无患者改变管理的默认策略相比,所有机器学习模型的净收益更高。
研究结果表明,这些模型在预测初次全膝关节置换术后延长的术后阿片类药物使用方面具有出色的模型性能,突出了这些模型在术前识别高危患者的潜力,并允许实施个体化围手术期咨询和疼痛管理策略,以减轻与延长阿片类药物使用相关的并发症。
IV。