Liu Hao, Xing Fei, Jiang Jiabao, Chen Zhao, Xiang Zhou, Duan Xin
Department of Orthopedic Surgery, Orthopedic Research Institute, West China Hospital, Sichuan University, Chengdu, China.
Department of Pediatric Surgery, West China Hospital, Sichuan University, Chengdu, China.
Front Med (Lausanne). 2024 May 17;11:1362153. doi: 10.3389/fmed.2024.1362153. eCollection 2024.
In elderly individuals suffering from hip fractures, a prolonged hospital length of stay (PLOS) not only heightens the probability of patient complications but also amplifies mortality risks. Yet, most elderly hip fracture patients present compromised baseline health conditions. Additionally, PLOS leads to increased expenses for patient treatment and care, while also diminishing hospital turnover rates. This, in turn, jeopardizes the prompt allocation of beds for urgent cases.
A retrospective study was carried out from October 2021 to November 2023 on 360 elderly hip fracture patients who underwent surgical treatment at West China Hospital. The 75th percentile of the total patient cohort's hospital stay duration, which was 12 days, was used to define prolonged hospital length of stay (PLOS). The cohort was divided into training and testing datasets with a 70:30 split. A predictive model was developed using the random forest algorithm, and its performance was validated and compared with the Lasso regression model.
Out of 360 patients, 103 (28.61%) experienced PLOS. A Random Forest classification model was developed using the training dataset, identifying 10 essential variables. The Random Forest model achieved perfect performance in the training set, with an area under the curve (AUC), balanced accuracy, Kappa value, and F1 score of 1.000. In the testing set, the model's performance was assessed with an AUC of 0.846, balanced accuracy of 0.7294, Kappa value of 0.4325, and F1 score of 0.6061.
This study aims to develop a prognostic model for predicting delayed discharge in elderly patients with hip fractures, thereby improving the accuracy of predicting PLOS in this population. By utilizing machine learning models, clinicians can optimize the allocation of medical resources and devise effective rehabilitation strategies for geriatric hip fracture patients. Additionally, this method can potentially improve hospital bed turnover rates, providing latent benefits for the healthcare system.
在老年髋部骨折患者中,住院时间延长(PLOS)不仅会增加患者并发症的概率,还会加大死亡风险。然而,大多数老年髋部骨折患者的基线健康状况较差。此外,住院时间延长会导致患者治疗和护理费用增加,同时也会降低医院的周转率。这反过来又会危及紧急病例床位的及时分配。
对2021年10月至2023年11月在华西医院接受手术治疗的360例老年髋部骨折患者进行回顾性研究。以患者总住院时间的第75百分位数(12天)来定义住院时间延长(PLOS)。该队列以70:30的比例分为训练数据集和测试数据集。使用随机森林算法开发了一个预测模型,并对其性能进行了验证,并与套索回归模型进行了比较。
在360例患者中,103例(28.61%)经历了住院时间延长。使用训练数据集开发了一个随机森林分类模型,确定了10个重要变量。随机森林模型在训练集中表现完美,曲线下面积(AUC)、平衡准确率、Kappa值和F1分数均为1.000。在测试集中,该模型的性能评估结果为AUC为0.846,平衡准确率为0.7294,Kappa值为0.4325,F1分数为0.6061。
本研究旨在开发一种预测老年髋部骨折患者延迟出院的预后模型,从而提高该人群住院时间延长的预测准确性。通过使用机器学习模型,临床医生可以优化医疗资源的分配,并为老年髋部骨折患者制定有效的康复策略。此外,这种方法可能会提高医院床位周转率,为医疗系统带来潜在益处。