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Development of a Bayesian model to estimate health care outcomes in the severely wounded

BACKGROUND: Graphical probabilistic models have the ability to provide insights as to how clinical factors are conditionally related. These models can be used to help us understand factors influencing health care outcomes and resource utilization, and to estimate morbidity and clinical outcomes in t...

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Autores principales: Stojadinovic, Alexander, Eberhardt, John, Brown, Trevor S, Hawksworth, Jason S, Gage, Frederick, Tadaki, Douglas K, Forsberg, Jonathan A, Davis, Thomas A, Potter, Benjamin K, Dunne, James R, Elster, E A
Formato: Texto
Lenguaje:English
Publicado: Dove Medlical Press 2010
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3004592/
https://www.ncbi.nlm.nih.gov/pubmed/21197361
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author Stojadinovic, Alexander
Eberhardt, John
Brown, Trevor S
Hawksworth, Jason S
Gage, Frederick
Tadaki, Douglas K
Forsberg, Jonathan A
Davis, Thomas A
Potter, Benjamin K
Dunne, James R
Elster, E A
author_facet Stojadinovic, Alexander
Eberhardt, John
Brown, Trevor S
Hawksworth, Jason S
Gage, Frederick
Tadaki, Douglas K
Forsberg, Jonathan A
Davis, Thomas A
Potter, Benjamin K
Dunne, James R
Elster, E A
author_sort Stojadinovic, Alexander
collection PubMed
description BACKGROUND: Graphical probabilistic models have the ability to provide insights as to how clinical factors are conditionally related. These models can be used to help us understand factors influencing health care outcomes and resource utilization, and to estimate morbidity and clinical outcomes in trauma patient populations. STUDY DESIGN: Thirty-two combat casualties with severe extremity injuries enrolled in a prospective observational study were analyzed using step-wise machine-learned Bayesian belief network (BBN) and step-wise logistic regression (LR). Models were evaluated using 10-fold cross-validation to calculate area-under-the-curve (AUC) from receiver operating characteristics (ROC) curves. RESULTS: Our BBN showed important associations between various factors in our data set that could not be developed using standard regression methods. Cross-validated ROC curve analysis showed that our BBN model was a robust representation of our data domain and that LR models trained on these findings were also robust: hospital-acquired infection (AUC: LR, 0.81; BBN, 0.79), intensive care unit length of stay (AUC: LR, 0.97; BBN, 0.81), and wound healing (AUC: LR, 0.91; BBN, 0.72) showed strong AUC. CONCLUSIONS: A BBN model can effectively represent clinical outcomes and biomarkers in patients hospitalized after severe wounding, and is confirmed by 10-fold cross-validation and further confirmed through logistic regression modeling. The method warrants further development and independent validation in other, more diverse patient populations.
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spelling pubmed-30045922010-12-30 Development of a Bayesian model to estimate health care outcomes in the severely wounded Stojadinovic, Alexander Eberhardt, John Brown, Trevor S Hawksworth, Jason S Gage, Frederick Tadaki, Douglas K Forsberg, Jonathan A Davis, Thomas A Potter, Benjamin K Dunne, James R Elster, E A J Multidiscip Healthc Original Research BACKGROUND: Graphical probabilistic models have the ability to provide insights as to how clinical factors are conditionally related. These models can be used to help us understand factors influencing health care outcomes and resource utilization, and to estimate morbidity and clinical outcomes in trauma patient populations. STUDY DESIGN: Thirty-two combat casualties with severe extremity injuries enrolled in a prospective observational study were analyzed using step-wise machine-learned Bayesian belief network (BBN) and step-wise logistic regression (LR). Models were evaluated using 10-fold cross-validation to calculate area-under-the-curve (AUC) from receiver operating characteristics (ROC) curves. RESULTS: Our BBN showed important associations between various factors in our data set that could not be developed using standard regression methods. Cross-validated ROC curve analysis showed that our BBN model was a robust representation of our data domain and that LR models trained on these findings were also robust: hospital-acquired infection (AUC: LR, 0.81; BBN, 0.79), intensive care unit length of stay (AUC: LR, 0.97; BBN, 0.81), and wound healing (AUC: LR, 0.91; BBN, 0.72) showed strong AUC. CONCLUSIONS: A BBN model can effectively represent clinical outcomes and biomarkers in patients hospitalized after severe wounding, and is confirmed by 10-fold cross-validation and further confirmed through logistic regression modeling. The method warrants further development and independent validation in other, more diverse patient populations. Dove Medlical Press 2010-08-16 /pmc/articles/PMC3004592/ /pubmed/21197361 Text en © 2010 Stojadinovic et al, publisher and licensee Dove Medical Press Ltd. This is an Open Access article which permits unrestricted noncommercial use, provided the original work is properly cited.
spellingShingle Original Research
Stojadinovic, Alexander
Eberhardt, John
Brown, Trevor S
Hawksworth, Jason S
Gage, Frederick
Tadaki, Douglas K
Forsberg, Jonathan A
Davis, Thomas A
Potter, Benjamin K
Dunne, James R
Elster, E A
Development of a Bayesian model to estimate health care outcomes in the severely wounded
title Development of a Bayesian model to estimate health care outcomes in the severely wounded
title_full Development of a Bayesian model to estimate health care outcomes in the severely wounded
title_fullStr Development of a Bayesian model to estimate health care outcomes in the severely wounded
title_full_unstemmed Development of a Bayesian model to estimate health care outcomes in the severely wounded
title_short Development of a Bayesian model to estimate health care outcomes in the severely wounded
title_sort development of a bayesian model to estimate health care outcomes in the severely wounded
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3004592/
https://www.ncbi.nlm.nih.gov/pubmed/21197361
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