Evaluation of a model for glycemic prediction in critically ill surgical patients.

We evaluated a neural network model for prediction of glucose in critically ill trauma and post-operative cardiothoracic surgical patients. A prospective, feasibility trial evaluating a continuous glucose-monitoring device was performed. After institutional review board approval, clinical data from...

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Main Authors: Scott M Pappada, Brent D Cameron, David B Tulman, Raymond E Bourey, Marilyn J Borst, William Olorunto, Sergio D Bergese, David C Evans, Stanislaw P A Stawicki, Thomas J Papadimos
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3716648?pdf=render
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spelling doaj-c3305c0c8f15466ca98fc870a7f5e7702020-11-25T00:48:22ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0187e6947510.1371/journal.pone.0069475Evaluation of a model for glycemic prediction in critically ill surgical patients.Scott M PappadaBrent D CameronDavid B TulmanRaymond E BoureyMarilyn J BorstWilliam OloruntoSergio D BergeseDavid C EvansStanislaw P A StawickiThomas J PapadimosWe evaluated a neural network model for prediction of glucose in critically ill trauma and post-operative cardiothoracic surgical patients. A prospective, feasibility trial evaluating a continuous glucose-monitoring device was performed. After institutional review board approval, clinical data from all consenting surgical intensive care unit patients were converted to an electronic format using novel software. This data was utilized to develop and train a neural network model for real-time prediction of serum glucose concentration implementing a prediction horizon of 75 minutes. Glycemic data from 19 patients were used to "train" the neural network model. Subsequent real-time simulated testing was performed in 5 patients to whom the neural network model was naive. Performance of the model was evaluated by calculating the mean absolute difference percent (MAD%), Clarke Error Grid Analysis, and calculation of the percent of hypoglycemic (≤70 mg/dL), normoglycemic (>70 and <150 mg/dL), and hyperglycemic (≥150 mg/dL) values accurately predicted by the model; 9,405 data points were analyzed. The models successfully predicted trends in glucose in the 5 test patients. Clark Error Grid Analysis indicated that 100.0% of predictions were clinically acceptable with 87.3% and 12.7% of predicted values falling within regions A and B of the error grid respectively. Overall model error (MAD%) was 9.0% with respect to actual continuous glucose modeling data. Our model successfully predicted 96.7% and 53.6% of the normo- and hyperglycemic values respectively. No hypoglycemic events occurred in these patients. Use of neural network models for real-time prediction of glucose in the surgical intensive care unit setting offers healthcare providers potentially useful information which could facilitate optimization of glycemic control, patient safety, and improved care. Similar models can be implemented across a wider scale of biomedical variables to offer real-time optimization, training, and adaptation that increase predictive accuracy and performance of therapies.http://europepmc.org/articles/PMC3716648?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Scott M Pappada
Brent D Cameron
David B Tulman
Raymond E Bourey
Marilyn J Borst
William Olorunto
Sergio D Bergese
David C Evans
Stanislaw P A Stawicki
Thomas J Papadimos
spellingShingle Scott M Pappada
Brent D Cameron
David B Tulman
Raymond E Bourey
Marilyn J Borst
William Olorunto
Sergio D Bergese
David C Evans
Stanislaw P A Stawicki
Thomas J Papadimos
Evaluation of a model for glycemic prediction in critically ill surgical patients.
PLoS ONE
author_facet Scott M Pappada
Brent D Cameron
David B Tulman
Raymond E Bourey
Marilyn J Borst
William Olorunto
Sergio D Bergese
David C Evans
Stanislaw P A Stawicki
Thomas J Papadimos
author_sort Scott M Pappada
title Evaluation of a model for glycemic prediction in critically ill surgical patients.
title_short Evaluation of a model for glycemic prediction in critically ill surgical patients.
title_full Evaluation of a model for glycemic prediction in critically ill surgical patients.
title_fullStr Evaluation of a model for glycemic prediction in critically ill surgical patients.
title_full_unstemmed Evaluation of a model for glycemic prediction in critically ill surgical patients.
title_sort evaluation of a model for glycemic prediction in critically ill surgical patients.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description We evaluated a neural network model for prediction of glucose in critically ill trauma and post-operative cardiothoracic surgical patients. A prospective, feasibility trial evaluating a continuous glucose-monitoring device was performed. After institutional review board approval, clinical data from all consenting surgical intensive care unit patients were converted to an electronic format using novel software. This data was utilized to develop and train a neural network model for real-time prediction of serum glucose concentration implementing a prediction horizon of 75 minutes. Glycemic data from 19 patients were used to "train" the neural network model. Subsequent real-time simulated testing was performed in 5 patients to whom the neural network model was naive. Performance of the model was evaluated by calculating the mean absolute difference percent (MAD%), Clarke Error Grid Analysis, and calculation of the percent of hypoglycemic (≤70 mg/dL), normoglycemic (>70 and <150 mg/dL), and hyperglycemic (≥150 mg/dL) values accurately predicted by the model; 9,405 data points were analyzed. The models successfully predicted trends in glucose in the 5 test patients. Clark Error Grid Analysis indicated that 100.0% of predictions were clinically acceptable with 87.3% and 12.7% of predicted values falling within regions A and B of the error grid respectively. Overall model error (MAD%) was 9.0% with respect to actual continuous glucose modeling data. Our model successfully predicted 96.7% and 53.6% of the normo- and hyperglycemic values respectively. No hypoglycemic events occurred in these patients. Use of neural network models for real-time prediction of glucose in the surgical intensive care unit setting offers healthcare providers potentially useful information which could facilitate optimization of glycemic control, patient safety, and improved care. Similar models can be implemented across a wider scale of biomedical variables to offer real-time optimization, training, and adaptation that increase predictive accuracy and performance of therapies.
url http://europepmc.org/articles/PMC3716648?pdf=render
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