Entezari Bahar, Koucheki Robert, Abbas Aazad, Toor Jay, Wolfstadt Jesse I, Ravi Bheeshma, Whyne Cari, Lex Johnathan R
Granovsky Gluskin Division of Orthopaedics, Mount Sinai Hospital, Toronto, Ontario, Canada.
Queen's University School of Medicine, Kingston, Ontario, Canada.
Arthroplast Today. 2023 Mar 9;20:101116. doi: 10.1016/j.artd.2023.101116. eCollection 2023 Apr.
There is a growing demand for total joint arthroplasty (TJA) surgery. The applications of machine learning (ML), mathematical optimization, and computer simulation have the potential to improve efficiency of TJA care delivery through outcome prediction and surgical scheduling optimization, easing the burden on health-care systems. The purpose of this study was to evaluate strategies using advances in analytics and computational modeling that may improve planning and the overall efficiency of TJA care.
A systematic review including MEDLINE, Embase, and IEEE Xplore databases was completed from inception to October 3, 2022, for identification of studies generating ML models for TJA length of stay, duration of surgery, and hospital readmission prediction. A scoping review of optimization strategies in elective surgical scheduling was also conducted.
Twenty studies were included for evaluating ML predictions and 17 in the scoping review of scheduling optimization. Among studies generating linear or logistic control models alongside ML models, only 1 found a control model to outperform its ML counterpart. Furthermore, neural networks performed superior to or at the same level as conventional ML models in all but 1 study. Implementation of mathematical and simulation strategies improved the optimization efficiency when compared to traditional scheduling methods at the operational level.
High-performing predictive ML-based models have been developed for TJA, as have mathematical strategies for elective surgical scheduling optimization. By leveraging artificial intelligence for outcome prediction and surgical optimization, there exist greater opportunities for improved resource utilization and cost-savings in TJA than when using traditional modeling and scheduling methods.
全关节置换术(TJA)手术的需求日益增长。机器学习(ML)、数学优化和计算机模拟的应用有潜力通过结果预测和手术安排优化来提高TJA护理服务的效率,减轻医疗保健系统的负担。本研究的目的是评估利用分析和计算建模进展的策略,这些策略可能会改善TJA护理的规划和整体效率。
从数据库建立到2022年10月3日,完成了一项系统综述,包括MEDLINE、Embase和IEEE Xplore数据库,以识别生成用于预测TJA住院时间、手术持续时间和医院再入院情况的ML模型的研究。还对择期手术安排中的优化策略进行了范围综述。
纳入了20项评估ML预测的研究,以及17项纳入手术安排优化范围综述的研究。在与ML模型一起生成线性或逻辑控制模型的研究中,只有1项发现控制模型优于其对应的ML模型。此外,除1项研究外,神经网络在所有研究中的表现均优于或等同于传统ML模型。与传统的手术安排方法相比,数学和模拟策略的实施在操作层面提高了优化效率。
已经为TJA开发了基于ML的高性能预测模型,也有用于择期手术安排优化的数学策略。通过利用人工智能进行结果预测和手术优化,与使用传统建模和安排方法相比,TJA在提高资源利用和节省成本方面有更大的机会。