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Predicting reintubation, prolonged mechanical ventilation and death in post-coronary artery bypass graft surgery: a comparison between artificial neural networks and logistic regression models

INTRODUCTION: In coronary artery bypass (CABG) surgery, the common complications are the need for reintubation, prolonged mechanical ventilation (PMV) and death. Thus, a reliable model for the prognostic evaluation of those particular outcomes is a worthwhile pursuit. The existence of such a system...

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Autores principales: Mendes, Renata G., de Souza, César R., Machado, Maurício N., Correa, Paulo R., Di Thommazo-Luporini, Luciana, Arena, Ross, Myers, Jonathan, Pizzolato, Ednaldo B., Borghi-Silva, Audrey
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Termedia Publishing House 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4548023/
https://www.ncbi.nlm.nih.gov/pubmed/26322087
http://dx.doi.org/10.5114/aoms.2015.48145
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author Mendes, Renata G.
de Souza, César R.
Machado, Maurício N.
Correa, Paulo R.
Di Thommazo-Luporini, Luciana
Arena, Ross
Myers, Jonathan
Pizzolato, Ednaldo B.
Borghi-Silva, Audrey
author_facet Mendes, Renata G.
de Souza, César R.
Machado, Maurício N.
Correa, Paulo R.
Di Thommazo-Luporini, Luciana
Arena, Ross
Myers, Jonathan
Pizzolato, Ednaldo B.
Borghi-Silva, Audrey
author_sort Mendes, Renata G.
collection PubMed
description INTRODUCTION: In coronary artery bypass (CABG) surgery, the common complications are the need for reintubation, prolonged mechanical ventilation (PMV) and death. Thus, a reliable model for the prognostic evaluation of those particular outcomes is a worthwhile pursuit. The existence of such a system would lead to better resource planning, cost reductions and an increased ability to guide preventive strategies. The aim of this study was to compare different methods – logistic regression (LR) and artificial neural networks (ANNs) – in accomplishing this goal. MATERIAL AND METHODS: Subjects undergoing CABG (n = 1315) were divided into training (n = 1053) and validation (n = 262) groups. The set of independent variables consisted of age, gender, weight, height, body mass index, diabetes, creatinine level, cardiopulmonary bypass, presence of preserved ventricular function, moderate and severe ventricular dysfunction and total number of grafts. The PMV was also an input for the prediction of death. The ability of ANN to discriminate outcomes was assessed using receiver-operating characteristic (ROC) analysis and the results were compared using a multivariate LR. RESULTS: The ROC curve areas for LR and ANN models, respectively, were: for reintubation 0.62 (CI: 0.50–0.75) and 0.65 (CI: 0.53–0.77); for PMV 0.67 (CI: 0.57–0.78) and 0.72 (CI: 0.64–0.81); and for death 0.86 (CI: 0.79–0.93) and 0.85 (CI: 0.80–0.91). No differences were observed between models. CONCLUSIONS: The ANN has similar discriminating power in predicting reintubation, PMV and death outcomes. Thus, both models may be applicable as a predictor for these outcomes in subjects undergoing CABG.
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spelling pubmed-45480232015-08-28 Predicting reintubation, prolonged mechanical ventilation and death in post-coronary artery bypass graft surgery: a comparison between artificial neural networks and logistic regression models Mendes, Renata G. de Souza, César R. Machado, Maurício N. Correa, Paulo R. Di Thommazo-Luporini, Luciana Arena, Ross Myers, Jonathan Pizzolato, Ednaldo B. Borghi-Silva, Audrey Arch Med Sci Clinical Research INTRODUCTION: In coronary artery bypass (CABG) surgery, the common complications are the need for reintubation, prolonged mechanical ventilation (PMV) and death. Thus, a reliable model for the prognostic evaluation of those particular outcomes is a worthwhile pursuit. The existence of such a system would lead to better resource planning, cost reductions and an increased ability to guide preventive strategies. The aim of this study was to compare different methods – logistic regression (LR) and artificial neural networks (ANNs) – in accomplishing this goal. MATERIAL AND METHODS: Subjects undergoing CABG (n = 1315) were divided into training (n = 1053) and validation (n = 262) groups. The set of independent variables consisted of age, gender, weight, height, body mass index, diabetes, creatinine level, cardiopulmonary bypass, presence of preserved ventricular function, moderate and severe ventricular dysfunction and total number of grafts. The PMV was also an input for the prediction of death. The ability of ANN to discriminate outcomes was assessed using receiver-operating characteristic (ROC) analysis and the results were compared using a multivariate LR. RESULTS: The ROC curve areas for LR and ANN models, respectively, were: for reintubation 0.62 (CI: 0.50–0.75) and 0.65 (CI: 0.53–0.77); for PMV 0.67 (CI: 0.57–0.78) and 0.72 (CI: 0.64–0.81); and for death 0.86 (CI: 0.79–0.93) and 0.85 (CI: 0.80–0.91). No differences were observed between models. CONCLUSIONS: The ANN has similar discriminating power in predicting reintubation, PMV and death outcomes. Thus, both models may be applicable as a predictor for these outcomes in subjects undergoing CABG. Termedia Publishing House 2015-08-11 2015-08-12 /pmc/articles/PMC4548023/ /pubmed/26322087 http://dx.doi.org/10.5114/aoms.2015.48145 Text en Copyright © 2015 Termedia & Banach http://creativecommons.org/licenses/by-nc-nd/3.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution-Noncommercial 3.0 Unported License, permitting all non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Clinical Research
Mendes, Renata G.
de Souza, César R.
Machado, Maurício N.
Correa, Paulo R.
Di Thommazo-Luporini, Luciana
Arena, Ross
Myers, Jonathan
Pizzolato, Ednaldo B.
Borghi-Silva, Audrey
Predicting reintubation, prolonged mechanical ventilation and death in post-coronary artery bypass graft surgery: a comparison between artificial neural networks and logistic regression models
title Predicting reintubation, prolonged mechanical ventilation and death in post-coronary artery bypass graft surgery: a comparison between artificial neural networks and logistic regression models
title_full Predicting reintubation, prolonged mechanical ventilation and death in post-coronary artery bypass graft surgery: a comparison between artificial neural networks and logistic regression models
title_fullStr Predicting reintubation, prolonged mechanical ventilation and death in post-coronary artery bypass graft surgery: a comparison between artificial neural networks and logistic regression models
title_full_unstemmed Predicting reintubation, prolonged mechanical ventilation and death in post-coronary artery bypass graft surgery: a comparison between artificial neural networks and logistic regression models
title_short Predicting reintubation, prolonged mechanical ventilation and death in post-coronary artery bypass graft surgery: a comparison between artificial neural networks and logistic regression models
title_sort predicting reintubation, prolonged mechanical ventilation and death in post-coronary artery bypass graft surgery: a comparison between artificial neural networks and logistic regression models
topic Clinical Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4548023/
https://www.ncbi.nlm.nih.gov/pubmed/26322087
http://dx.doi.org/10.5114/aoms.2015.48145
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