New York-Presbyterian/Columbia University Irving Medical Center, New York, New York, U.S.A.
New York-Presbyterian/Columbia University Irving Medical Center, New York, New York, U.S.A.
Arthroscopy. 2023 Mar;39(3):777-786.e5. doi: 10.1016/j.arthro.2022.06.032. Epub 2022 Jul 9.
This study aimed to develop machine learning (ML) models to predict hospital admission (overnight stay) as well as short-term complications and readmission rates following anterior cruciate ligament reconstruction (ACLR). Furthermore, we sought to compare the ML models with logistic regression models in predicting ACLR outcomes.
The American College of Surgeons National Surgical Quality Improvement Program database was queried for patients who underwent elective ACLR from 2012 to 2018. Artificial neural network ML and logistic regression models were developed to predict overnight stay, 30-day postoperative complications, and ACL-related readmission, and model performance was compared using the area under the receiver operating characteristic curve. Regression analyses were used to identify variables that were significantly associated with the predicted outcomes.
A total of 21,636 elective ACLR cases met inclusion criteria. Variables associated with hospital admission included White race, obesity, hypertension, and American Society of Anesthesiologists classification 3 and greater, anesthesia other than general, prolonged operative time, and inpatient setting. The incidence of hospital admission (overnight stay) was 10.2%, 30-day complications was 1.3%, and 30-day readmission for ACLR-related causes was 0.9%. Compared with logistic regression models, artificial neural network models reported superior area under the receiver operating characteristic curve values in predicting overnight stay (0.835 vs 0.589), 30-day complications (0.742 vs 0.590), reoperation (0.842 vs 0.601), ACLR-related readmission (0.872 vs 0.606), deep-vein thrombosis (0.804 vs 0.608), and surgical-site infection (0.818 vs 0.596).
The ML models developed in this study demonstrate an application of ML in which data from a national surgical patient registry was used to predict hospital admission and 30-day postoperative complications after elective ACLR. ML models developed performed well, outperforming regression models in predicting hospital admission and short-term complications following elective ACLR. ML models performed best when predicting ACLR-related readmissions and reoperations, followed by overnight stay.
IV, retrospective comparative prognostic trial.
本研究旨在开发机器学习 (ML) 模型,以预测前交叉韧带重建 (ACLR) 后住院 (过夜停留) 以及短期并发症和再入院率。此外,我们还试图比较 ML 模型与逻辑回归模型在预测 ACLR 结果方面的性能。
从 2012 年至 2018 年,美国外科医师学会国家手术质量改进计划数据库中查询接受择期 ACLR 的患者。开发人工神经网络 ML 和逻辑回归模型来预测过夜停留、30 天术后并发症和 ACL 相关再入院率,并使用接收者操作特征曲线下的面积来比较模型性能。回归分析用于确定与预测结果显著相关的变量。
共有 21636 例择期 ACLR 病例符合纳入标准。与住院相关的变量包括白人种族、肥胖、高血压和美国麻醉医师协会分类 3 及以上、非全身麻醉、手术时间延长和住院环境。住院 (过夜停留) 发生率为 10.2%,30 天并发症发生率为 1.3%,30 天 ACL 相关再入院率为 0.9%。与逻辑回归模型相比,人工神经网络模型在预测过夜停留 (0.835 与 0.589)、30 天并发症 (0.742 与 0.590)、再次手术 (0.842 与 0.601)、ACL 相关再入院 (0.872 与 0.606)、深静脉血栓形成 (0.804 与 0.608)和手术部位感染 (0.818 与 0.596)方面报告了更高的接收者操作特征曲线值。
本研究中开发的 ML 模型展示了 ML 的一种应用,即使用全国外科患者登记处的数据来预测择期 ACLR 后的住院和 30 天术后并发症。开发的 ML 模型表现良好,在预测择期 ACLR 后的住院和短期并发症方面优于回归模型。ML 模型在预测 ACLR 相关再入院和再手术方面表现最佳,其次是过夜停留。
IV,回顾性比较预后试验。