Predicting hospital-acquired infections by scoring system with simple parameters.

BACKGROUND: Hospital-acquired infections (HAI) are associated with increased attributable morbidity, mortality, prolonged hospitalization, and economic costs. A simple, reliable prediction model for HAI has great clinical relevance. The objective of this study is to develop a scoring system to predi...

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Main Authors: Ying-Jui Chang, Min-Li Yeh, Yu-Chuan Li, Chien-Yeh Hsu, Chao-Cheng Lin, Meng-Shiuan Hsu, Wen-Ta Chiu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3160843?pdf=render
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spelling doaj-1e89badee4a84995bfb2115ea8589b222020-11-25T01:46:41ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-01-0168e2313710.1371/journal.pone.0023137Predicting hospital-acquired infections by scoring system with simple parameters.Ying-Jui ChangMin-Li YehYu-Chuan LiChien-Yeh HsuChao-Cheng LinMeng-Shiuan HsuWen-Ta ChiuBACKGROUND: Hospital-acquired infections (HAI) are associated with increased attributable morbidity, mortality, prolonged hospitalization, and economic costs. A simple, reliable prediction model for HAI has great clinical relevance. The objective of this study is to develop a scoring system to predict HAI that was derived from Logistic Regression (LR) and validated by Artificial Neural Networks (ANN) simultaneously. METHODOLOGY/PRINCIPAL FINDINGS: A total of 476 patients from all the 806 HAI inpatients were included for the study between 2004 and 2005. A sample of 1,376 non-HAI inpatients was randomly drawn from all the admitted patients in the same period of time as the control group. External validation of 2,500 patients was abstracted from another academic teaching center. Sixteen variables were extracted from the Electronic Health Records (EHR) and fed into ANN and LR models. With stepwise selection, the following seven variables were identified by LR models as statistically significant: Foley catheterization, central venous catheterization, arterial line, nasogastric tube, hemodialysis, stress ulcer prophylaxes and systemic glucocorticosteroids. Both ANN and LR models displayed excellent discrimination (area under the receiver operating characteristic curve [AUC]: 0.964 versus 0.969, p = 0.507) to identify infection in internal validation. During external validation, high AUC was obtained from both models (AUC: 0.850 versus 0.870, p = 0.447). The scoring system also performed extremely well in the internal (AUC: 0.965) and external (AUC: 0.871) validations. CONCLUSIONS: We developed a scoring system to predict HAI with simple parameters validated with ANN and LR models. Armed with this scoring system, infectious disease specialists can more efficiently identify patients at high risk for HAI during hospitalization. Further, using parameters either by observation of medical devices used or data obtained from EHR also provided good prediction outcome that can be utilized in different clinical settings.http://europepmc.org/articles/PMC3160843?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Ying-Jui Chang
Min-Li Yeh
Yu-Chuan Li
Chien-Yeh Hsu
Chao-Cheng Lin
Meng-Shiuan Hsu
Wen-Ta Chiu
spellingShingle Ying-Jui Chang
Min-Li Yeh
Yu-Chuan Li
Chien-Yeh Hsu
Chao-Cheng Lin
Meng-Shiuan Hsu
Wen-Ta Chiu
Predicting hospital-acquired infections by scoring system with simple parameters.
PLoS ONE
author_facet Ying-Jui Chang
Min-Li Yeh
Yu-Chuan Li
Chien-Yeh Hsu
Chao-Cheng Lin
Meng-Shiuan Hsu
Wen-Ta Chiu
author_sort Ying-Jui Chang
title Predicting hospital-acquired infections by scoring system with simple parameters.
title_short Predicting hospital-acquired infections by scoring system with simple parameters.
title_full Predicting hospital-acquired infections by scoring system with simple parameters.
title_fullStr Predicting hospital-acquired infections by scoring system with simple parameters.
title_full_unstemmed Predicting hospital-acquired infections by scoring system with simple parameters.
title_sort predicting hospital-acquired infections by scoring system with simple parameters.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-01-01
description BACKGROUND: Hospital-acquired infections (HAI) are associated with increased attributable morbidity, mortality, prolonged hospitalization, and economic costs. A simple, reliable prediction model for HAI has great clinical relevance. The objective of this study is to develop a scoring system to predict HAI that was derived from Logistic Regression (LR) and validated by Artificial Neural Networks (ANN) simultaneously. METHODOLOGY/PRINCIPAL FINDINGS: A total of 476 patients from all the 806 HAI inpatients were included for the study between 2004 and 2005. A sample of 1,376 non-HAI inpatients was randomly drawn from all the admitted patients in the same period of time as the control group. External validation of 2,500 patients was abstracted from another academic teaching center. Sixteen variables were extracted from the Electronic Health Records (EHR) and fed into ANN and LR models. With stepwise selection, the following seven variables were identified by LR models as statistically significant: Foley catheterization, central venous catheterization, arterial line, nasogastric tube, hemodialysis, stress ulcer prophylaxes and systemic glucocorticosteroids. Both ANN and LR models displayed excellent discrimination (area under the receiver operating characteristic curve [AUC]: 0.964 versus 0.969, p = 0.507) to identify infection in internal validation. During external validation, high AUC was obtained from both models (AUC: 0.850 versus 0.870, p = 0.447). The scoring system also performed extremely well in the internal (AUC: 0.965) and external (AUC: 0.871) validations. CONCLUSIONS: We developed a scoring system to predict HAI with simple parameters validated with ANN and LR models. Armed with this scoring system, infectious disease specialists can more efficiently identify patients at high risk for HAI during hospitalization. Further, using parameters either by observation of medical devices used or data obtained from EHR also provided good prediction outcome that can be utilized in different clinical settings.
url http://europepmc.org/articles/PMC3160843?pdf=render
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