Investigation of the risk of surgical infections at the “Federico II” University Hospital by regression analysis using the Firth method

E. Montella, I. Loperto, M. Pietrantonio, Vincenza Colucci, M. Triassi, A. M. Ponsiglione
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Abstract

Surgical infections (SSIs) are among the most common type of healthcare associated infections (HAIs) and a major cause of morbidity among surgical patients, increase of hospitalization days and of healthcare expenditure In this work, we present a logistic regression model to study the impact that different clinical, demographic and organizational factors have on the risk of occurrence of HAIs in a surgery department. The proposed model regression model is based on the Firth's penalized maximum likelihood logistic regression, a well-suited methodology for the analysis of unbalanced datasets, such as those related to events with a low occurrence rate, which is often the case of hospital infections. The model proved to be able to identify the factors most influencing the risk of SSIs and offers a promising tool for the systematic study of SSIs.
采用Firth方法对“费德里科二世”大学医院外科感染风险进行回归分析
手术感染(ssi)是最常见的医疗相关感染(HAIs)类型之一,也是外科患者发病率、住院天数和医疗费用增加的主要原因。在本工作中,我们提出了一个logistic回归模型来研究不同临床、人口统计学和组织因素对外科发生HAIs风险的影响。所提出的模型回归模型基于Firth的惩罚最大似然逻辑回归,这是一种非常适合分析不平衡数据集的方法,例如与低发生率事件相关的数据集,通常是医院感染的情况。该模型能够识别影响ssi风险的因素,为ssi的系统研究提供了一个很有前景的工具。
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