Division of Sports Medicine & Shoulder, Department of Orthopedics, Midwest Orthopedics at Rush, Rush University, Chicago, IL, USA.
Division of Sports Medicine & Shoulder, Department of Orthopedics, Midwest Orthopedics at Rush, Rush University, Chicago, IL, USA.
J Shoulder Elbow Surg. 2021 Jun;30(6):e290-e299. doi: 10.1016/j.jse.2020.09.007. Epub 2020 Oct 1.
Patient satisfaction after primary anatomic and reverse total shoulder arthroplasty (TSA) represents an important metric for gauging patients' perception of their care and surgical outcomes. Although TSA confers improvement in pain and function for most patients, inevitably some will remain unsatisfied postoperatively. The purpose of this study was to (1) train supervised machine learning (SML) algorithms to predict satisfaction after TSA and (2) develop a clinical tool for individualized assessment of patient-specific risk factors.
We performed a retrospective review of primary anatomic and reverse TSA patients between January 2014 and February 2018. A total of 16 demographic, clinical, and patient-reported outcomes were evaluated for predictive value. Five SML algorithms underwent 3 iterations of 10-fold cross-validation on a training set (80% of cohort). Assessment by discrimination, calibration, Brier score, and decision-curve analysis was performed on an independent testing set (remaining 20% of cohort). Global and local model behaviors were evaluated with global variable importance plots and local interpretable model-agnostic explanations, respectively.
The study cohort consisted of 413 patients, of whom 331 (82.6%) were satisfied at 2 years postoperatively. The support vector machine model demonstrated the best relative performance on the independent testing set not used for model training (concordance statistic, 0.80; calibration intercept, 0.20; calibration slope, 2.32; Brier score, 0.11). The most important factors for predicting satisfaction were baseline Single Assessment Numeric Evaluation score, exercise and activity, workers' compensation status, diagnosis, symptom duration prior to surgery, body mass index, age, smoking status, anatomic vs. reverse TSA, and diabetes. The support vector machine algorithm was incorporated into an open-access digital application for patient-level explanations of risk and predictions, available at https://orthopedics.shinyapps.io/SatisfactionTSA/.
The best-performing SML model demonstrated excellent discrimination and adequate calibration for predicting satisfaction following TSA and was used to create an open-access, clinical decision-making tool. However, rigorous external validation in different geographic locations and patient populations is essential prior to assessment of clinical utility. Given that this tool is based on partially modifiable risk factors, it may enhance shared decision making and allow for periods of targeted preoperative health-optimization efforts.
初次全肩关节成形术(TSA)和反式全肩关节成形术后患者满意度是评估患者对护理和手术结果感知的重要指标。尽管 TSA 可改善大多数患者的疼痛和功能,但不可避免地仍有一些患者术后会不满意。本研究的目的是:(1)训练监督机器学习(SML)算法来预测 TSA 后的满意度;(2)开发一种用于评估患者特定风险因素的个体化评估的临床工具。
我们对 2014 年 1 月至 2018 年 2 月期间初次全肩关节成形术和反式全肩关节成形术患者进行了回顾性研究。共评估了 16 项人口统计学、临床和患者报告的结果,以评估其预测价值。5 种 SML 算法在训练集(队列的 80%)上进行了 3 次 10 折交叉验证。使用独立测试集(队列的剩余 20%)进行区分度、校准、Brier 评分和决策曲线分析评估。通过全局变量重要性图和局部可解释模型不可知解释分别评估全局和局部模型行为。
研究队列包括 413 例患者,其中 331 例(82.6%)在术后 2 年时满意。在未用于模型训练的独立测试集上,支持向量机模型的相对性能表现最佳(一致性统计量为 0.80;校准截距为 0.20;校准斜率为 2.32;Brier 评分为 0.11)。预测满意度的最重要因素是基线单评估数字评估评分、运动和活动、工人赔偿状况、诊断、术前症状持续时间、体重指数、年龄、吸烟状况、解剖型与反式 TSA 以及糖尿病。支持向量机算法被纳入一个开放访问的数字应用程序,用于患者风险的解释和预测,可在 https://orthopedics.shinyapps.io/SatisfactionTSA/ 上获取。
表现最佳的 SML 模型在预测 TSA 后满意度方面表现出了极好的区分度和足够的校准度,并被用于创建一个开放访问的临床决策工具。然而,在评估临床实用性之前,在不同地理位置和患者人群中进行严格的外部验证是至关重要的。鉴于该工具基于部分可修改的风险因素,它可能会增强共同决策,并允许进行有针对性的术前健康优化努力。