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.
Investigation of the risk of surgical infections at the "federico II" University Hospital by regression analysis using the firth method / Montella, E.; Loperto, I.; Pietrantonio, M.; Colucci, V.; Triassi, M.; Ponsiglione, A. M.. - (2021), pp. 1-4. (Intervento presentato al convegno 2021 International Symposium on Biomedical Engineering and Computational Biology, BECB 2021 tenutosi a chn nel 2021) [10.1145/3502060.3503649].
Investigation of the risk of surgical infections at the "federico II" University Hospital by regression analysis using the firth method
Montella E.;Loperto I.;Pietrantonio M.;Colucci V.;Triassi M.;Ponsiglione A. M.
2021
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.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.