Harvard Combined Orthopaedic Residency Program, Harvard Medical School, Boston, MA, USA.
Harvard Medical School, Boston, MA, USA.
Arch Orthop Trauma Surg. 2023 Sep;143(9):5985-5992. doi: 10.1007/s00402-023-04827-9. Epub 2023 Mar 11.
Arthroplasty care delivery is facing a growing supply-demand mismatch. To meet future demand for joint arthroplasty, systems will need to identify potential surgical candidates prior to evaluation by orthopaedic surgeons.
Retrospective review was conducted at two academic medical centers and three community hospitals from March 1 to July 31, 2020 to identify new patient telemedicine encounters (without prior in-person evaluation) for consideration of hip or knee arthroplasty. The primary outcome was surgical indication for joint replacement. Five machine learning algorithms were developed to predict likelihood of surgical indication and assessed by discrimination, calibration, overall performance, and decision curve analysis.
Overall, 158 patients underwent new patient telemedicine evaluation for consideration of THA, TKA, or UKA and 65.2% (n = 103) were indicated for operative intervention prior to in-person evaluation. The median age was 65 (interquartile range 59-70) and 60.8% were women. Variables found to be associated with operative intervention were radiographic degree of arthritis, prior trial of intra-articular injection, trial of physical therapy, opioid use, and tobacco use. In the independent testing set (n = 46) not used for algorithm development, the stochastic gradient boosting algorithm achieved the best performance with AUC 0.83, calibration intercept 0.13, calibration slope 1.03, Brier score 0.15 relative to a null model Brier score of 0.23, and higher net benefit than the default alternatives on decision curve analysis.
We developed a machine learning algorithm to identify potential surgical candidates for joint arthroplasty in the setting of osteoarthritis without an in-person evaluation or physical examination. If externally validated, this algorithm could be deployed by various stakeholders, including patients, providers, and health systems, to direct appropriate next steps in patients with osteoarthritis and improve efficiency in identifying surgical candidates.
III.
关节置换手术的提供与需求不匹配的问题日益严重。为了满足未来关节置换的需求,系统需要在骨科医生评估之前识别潜在的手术候选人。
本回顾性研究于 2020 年 3 月 1 日至 7 月 31 日在两家学术医疗中心和三家社区医院进行,以确定新的患者远程医疗就诊(无事先的面对面评估)是否考虑髋关节或膝关节置换。主要结局是关节置换的手术指征。开发了五种机器学习算法来预测手术指征的可能性,并通过判别能力、校准、整体性能和决策曲线分析进行评估。
总体而言,158 名患者接受了新的患者远程医疗评估,以考虑 THA、TKA 或 UKA,并且在进行面对面评估之前,有 65.2%(n=103)有手术干预指征。中位年龄为 65 岁(四分位距 59-70 岁),60.8%为女性。与手术干预相关的变量包括放射学关节炎程度、关节内注射试验、物理治疗试验、阿片类药物使用和烟草使用。在未用于算法开发的独立测试集(n=46)中,随机梯度增强算法的表现最佳,AUC 为 0.83,校准截距为 0.13,校准斜率为 1.03,Brier 得分相对于默认模型的 0.23 为 0.15,并且在决策曲线分析中具有更高的净收益。
我们开发了一种机器学习算法,用于在没有面对面评估或体检的情况下识别骨关节炎患者的潜在关节置换手术候选人。如果经过外部验证,该算法可以由各种利益相关者(包括患者、提供者和医疗系统)部署,以指导骨关节炎患者的适当后续步骤,并提高识别手术候选人的效率。
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