School of Medicine, Loma Linda University, Loma Linda, CA.
Department of Orthopedics, Loma Linda University, Loma Linda, CA.
J Foot Ankle Surg. 2024 Sep-Oct;63(5):557-561. doi: 10.1053/j.jfas.2024.05.005. Epub 2024 May 23.
Ankle osteoarthritis (OA) is a debilitating condition that arises as a result of trauma or injury to the ankle and often progresses to chronic pain and loss of function that may require surgical intervention. Total ankle arthroplasty (TAA) has emerged as a means of operative treatment for end-stage ankle OA. Increased hospital length of stay (LOS) is a common adverse postoperative outcome that increases both the complications and cost of care associated with arthroplasty procedures. The purpose of this study was to employ four machine learning (ML) algorithms to predict LOS in patients undergoing TAA using the American College of Surgeons National Surgical Quality Improvement Program (ACS-NSQIP) database. The ACS-NSQIP database was queried to identify adult patients undergoing elective TAA from 2008 to 2018. Four supervised ML classification algorithms were utilized and tasked with predicting increased hospital length of stay (LOS). Among these variables, female sex, ASA Class III, preoperative sodium, preoperative hematocrit, diabetes, preoperative creatinine, other arthritis, BMI, preoperative WBC, and Hispanic ethnicity carried the highest importance across predictions generated by 4 independent ML algorithms. Predictions generated by these algorithms were made with an average AUC of 0.7257, as well as an average accuracy of 73.98% and an average sensitivity and specificity of 48.47% and 79.38%, respectively. These findings may be useful for guiding decision-making within the perioperative period and may serve to identify patients at increased risk for a prolonged LOS.
踝关节骨关节炎(OA)是一种使人虚弱的疾病,它是由于踝关节受伤或受伤引起的,通常会发展为慢性疼痛和功能丧失,可能需要手术干预。全踝关节置换术(TAA)已成为治疗晚期踝关节 OA 的手术治疗方法。住院时间延长(LOS)是常见的术后不良后果,会增加与关节置换手术相关的并发症和护理成本。本研究的目的是使用美国外科医师学会国家手术质量改进计划(ACS-NSQIP)数据库中的四种机器学习(ML)算法来预测 TAA 患者的 LOS。使用 ACS-NSQIP 数据库来识别 2008 年至 2018 年期间接受择期 TAA 的成年患者。使用了四种监督 ML 分类算法,并负责预测住院时间延长(LOS)。在这些变量中,女性、ASA 分级 III、术前钠、术前血细胞比容、糖尿病、术前肌酐、其他关节炎、BMI、术前白细胞计数和西班牙裔种族在 4 种独立的 ML 算法生成的预测中具有最高的重要性。这些算法生成的预测的平均 AUC 为 0.7257,平均准确率为 73.98%,平均灵敏度和特异性分别为 48.47%和 79.38%。这些发现可能有助于指导围手术期的决策,并有助于识别 LOS 延长风险增加的患者。