Maman David, Liba Guy, Hirschmann Michael Tobias, Ben Zvi Lior, Fournier Linor, Steinfeld Yaniv, Berkovich Yaron
Israel Institute of Technology, Technion University Hospital, Rappaport Faculty of Medicine, Haifa, Israel.
Department of Orthopedics, Carmel Medical Center, Haifa, Israel.
Knee Surg Sports Traumatol Arthrosc. 2025 May;33(5):1754-1762. doi: 10.1002/ksa.12547. Epub 2024 Dec 4.
The purpose of this study was to predict high-risk patients who experience significant increases in hospital charges and length of stay (LOS) following specific postoperative complications.
This study analyzed over two million patients from the Nationwide Inpatient Sample database undergoing elective total knee arthroplasty (TKA) for primary osteoarthritis. Baseline demographics, clinical characteristics and incidence of postoperative complications were examined. A neural network model was utilized to predict high-risk patients who fall into the top 25% for both LOS and total hospital charges after complications such as sepsis or surgical site infection (SSI).
The most common complications were blood loss anaemia (14.6%), acute kidney injury (1.6%) and urinary tract infection (0.9%). Patients with complications incurred significantly higher total charges (mean $66,804) and longer LOS (mean 2.9 days) compared to those without complications (mean $58,545 and 2.1 days, respectively). The neural network model demonstrated strong predictive performance, with an area under the curve of 0.83 for the training set and 0.78 for the testing set. Key complications like sepsis and SSIs significantly impacted hospital charges and LOS. For example, a 57-year-old patient with diabetes and sepsis had a 100% probability of being in the top 25% for both total charges and LOS.
Postoperative complications in TKA patients significantly increase hospital charges and LOS. The neural network model effectively predicted high-risk patients after specific complications occurred, offering a potential tool for improving patient management and resource allocation.
Level III.
本研究旨在预测特定术后并发症后住院费用和住院时间(LOS)显著增加的高危患者。
本研究分析了来自全国住院患者样本数据库的超过两百万例行择期全膝关节置换术(TKA)治疗原发性骨关节炎的患者。检查了基线人口统计学、临床特征和术后并发症发生率。利用神经网络模型预测在发生败血症或手术部位感染(SSI)等并发症后LOS和总住院费用均处于前25%的高危患者。
最常见的并发症是失血贫血(14.6%)、急性肾损伤(1.6%)和尿路感染(0.9%)。与无并发症的患者相比,有并发症的患者总费用显著更高(平均66,804美元),住院时间更长(平均2.9天)(无并发症患者分别为平均58,545美元和2.1天)。神经网络模型表现出强大的预测性能,训练集曲线下面积为0.83,测试集为0.78。败血症和SSI等关键并发症对住院费用和LOS有显著影响。例如,一名57岁患有糖尿病和败血症的患者总费用和LOS均有100%的概率处于前25%。
TKA患者的术后并发症显著增加住院费用和LOS。神经网络模型在特定并发症发生后有效预测了高危患者,为改善患者管理和资源分配提供了一个潜在工具。
三级。