在“San Giovanni di Dio e Ruggi d'Aragona”大学医院,通过机器学习和多元线性回归对膝关节置换术后住院时间进行建模

A. M. Ponsiglione, Teresa Angela Trunfio, Giovanni Rossi, A. Borrelli, Maria Romano
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引用次数: 1

摘要

膝关节置换术是医院里最常见的手术之一。人口的逐渐老龄化和临床疾病的蔓延,如肥胖,将导致越来越多地使用这一程序。因此,在日益严峻的临床和财政压力下,能够使与这一程序有关的过程更加有效和高效成为医院的战略。一个有用的参数是住院时间(LOS),其早期预测允许更好的床位管理和资源分配,模拟患者期望并促进出院计划。在这项工作中,使用多元线性回归和机器学习算法研究了2019-2020年期间在圣乔瓦尼迪迪奥和鲁吉阿拉戈纳大学医院接受膝关节手术的124名患者的数据,以评估和预测患者数据如何影响LOS。
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Modelling the length of hospital stay after knee replacement surgery through Machine Learning and Multiple Linear Regression at “San Giovanni di Dio e Ruggi d'Aragona” University Hospital
Knee arthroplasty is one of the most commonly performed procedures within a hospital. The progressive aging of the population and the spread of clinical conditions such as obesity will lead to an increasing use of this procedure. Therefore, being able to make the process related to this procedure more effective and efficient becomes strategic within hospitals, subject to increasingly stringent clinical and financial pressures. A useful parameter for this purpose is the length of stay (LOS), whose early prediction allows for better bed management and resource allocation, models patient expectations and facilitates discharge planning. In this work, the data of 124 patients who underwent knee surgery in the two-year period 2019-2020 at the San Giovanni di Dio and Ruggi d'Aragona university hospital were studied using multiple linear regression and machine learning algorithms in order to evaluate and predict how patient data affect LOS.
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