Cargando…

Prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling.

The length of stay in the postanesthesia care unit (PACU) following general anesthesia in adults is an important issue. A model, which can predict the results of PACU stays, could improve the utilization of PACU and operating room resources through a more efficient arrangement. The purpose of study...

Descripción completa

Detalles Bibliográficos
Autores principales: Kim, W. O., Kil, H. K., Kang, J. W., Park, H. R.
Formato: Texto
Lenguaje:English
Publicado: Korean Academy of Medical Sciences 2000
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3054603/
https://www.ncbi.nlm.nih.gov/pubmed/10719804
_version_ 1782199986128158720
author Kim, W. O.
Kil, H. K.
Kang, J. W.
Park, H. R.
author_facet Kim, W. O.
Kil, H. K.
Kang, J. W.
Park, H. R.
author_sort Kim, W. O.
collection PubMed
description The length of stay in the postanesthesia care unit (PACU) following general anesthesia in adults is an important issue. A model, which can predict the results of PACU stays, could improve the utilization of PACU and operating room resources through a more efficient arrangement. The purpose of study was to compare the performance of neural network to logistic regression analysis using clinical sets of data from adult patients undergoing general anesthesia. An artificial neural network was trained with 409 clinical sets using backward error propagation and validated through independent testing of 183 records. Twenty-two inputs were used to find determinants and to predict categorical values. Logistic regression analysis was performed to provide a comparison. The neural network correctly predicted in 81.4% of situations and identified discriminating variables (intubated state, sex, neuromuscular blocker and intraoperative use of opioid), whereas the figure was 65.0% in logistic regression analysis. We concluded that the neural network could provide a useful predictive model for the optimization of limited resources. The neural network is a new alternative classifying method for developing a predictive paradigm, and it has a higher classifying performance compared to the logistic regression model.
format Text
id pubmed-3054603
institution National Center for Biotechnology Information
language English
publishDate 2000
publisher Korean Academy of Medical Sciences
record_format MEDLINE/PubMed
spelling pubmed-30546032011-03-15 Prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling. Kim, W. O. Kil, H. K. Kang, J. W. Park, H. R. J Korean Med Sci Research Article The length of stay in the postanesthesia care unit (PACU) following general anesthesia in adults is an important issue. A model, which can predict the results of PACU stays, could improve the utilization of PACU and operating room resources through a more efficient arrangement. The purpose of study was to compare the performance of neural network to logistic regression analysis using clinical sets of data from adult patients undergoing general anesthesia. An artificial neural network was trained with 409 clinical sets using backward error propagation and validated through independent testing of 183 records. Twenty-two inputs were used to find determinants and to predict categorical values. Logistic regression analysis was performed to provide a comparison. The neural network correctly predicted in 81.4% of situations and identified discriminating variables (intubated state, sex, neuromuscular blocker and intraoperative use of opioid), whereas the figure was 65.0% in logistic regression analysis. We concluded that the neural network could provide a useful predictive model for the optimization of limited resources. The neural network is a new alternative classifying method for developing a predictive paradigm, and it has a higher classifying performance compared to the logistic regression model. Korean Academy of Medical Sciences 2000-02 /pmc/articles/PMC3054603/ /pubmed/10719804 Text en
spellingShingle Research Article
Kim, W. O.
Kil, H. K.
Kang, J. W.
Park, H. R.
Prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling.
title Prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling.
title_full Prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling.
title_fullStr Prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling.
title_full_unstemmed Prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling.
title_short Prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling.
title_sort prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling.
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3054603/
https://www.ncbi.nlm.nih.gov/pubmed/10719804
work_keys_str_mv AT kimwo predictiononlengthsofstayinthepostanesthesiacareunitfollowinggeneralanesthesiapreliminarystudyoftheneuralnetworkandlogisticregressionmodelling
AT kilhk predictiononlengthsofstayinthepostanesthesiacareunitfollowinggeneralanesthesiapreliminarystudyoftheneuralnetworkandlogisticregressionmodelling
AT kangjw predictiononlengthsofstayinthepostanesthesiacareunitfollowinggeneralanesthesiapreliminarystudyoftheneuralnetworkandlogisticregressionmodelling
AT parkhr predictiononlengthsofstayinthepostanesthesiacareunitfollowinggeneralanesthesiapreliminarystudyoftheneuralnetworkandlogisticregressionmodelling