人口统计学和组织因素对全科住院时间的影响:影响全科住院时间的因素

Martina Profeta, G. Cesarelli, Cristiana Giglio, Giuseppe Ferrucci, A. Borrelli, Francesco Amato
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引用次数: 0

摘要

不必要的住院时间(LOS)对国家医疗保健系统的经济产生了重大影响。许多因素可能影响LOS,如资源、床位和手术程序管理不善。在这项工作中,我们通过使用多元线性回归模型,在人口统计学、临床和组织变量中调查那些最影响LOS的变量。262例患者的数据来自萨勒诺大学l.p. -o医院“San Giovanni di Dio and Ruggi d'Aragona”综合内科医院信息系统。通过选择最合适的预测因子,并通过在自变量数量和数据中不存在多重共线性之间找到最佳权衡,对回归模型进行了测试和优化。结果表明,影响LOS的变量为性别、手术次数和出院方式。
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Influence of demographic and organizational factors on the length of hospital stay in a general medicine department: Factors influencing length of stay in general medicine
Unnecessary Length of Hospital Stay (LOS) has significant consequences on the economy of the national healthcare system. Numerous factors may influence LOS, such as bad management of resources, beds and surgery procedures. In this work we investigate, among the demographic, clinical and organizational variables, those most affecting the LOS, through the use of Multiple Linear Regression model. Data of 262 patients were collected from the hospital information system of the General Medicine Department of the University L.P-o Hospital “San Giovanni di Dio and Ruggi d'Aragona” of Salerno. The regression model has been tested and optimized by selecting the most appropriate predictors and by finding the best trade-off between the number of independent variables and the absence of multicollinearity in the data. Results show that the variables influencing LOS were the gender, the number of procedures and the discharge modality.
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