Combining the Performance Strengths of the Logistic Regression and Neural Network Models: A Medical Outcomes Approach
The assessment of medical outcomes is important in the effort to contain costs, streamline patient management, and codify medical practices. As such, it is necessary to develop predictive models that will make accurate predictions of these outcomes. The neural network methodology has often been show...
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doaj-3d1f309854824113b644525c8f201d8b2020-11-24T20:56:09ZengHindawi LimitedThe Scientific World Journal1537-744X2003-01-01345547610.1100/tsw.2003.35Combining the Performance Strengths of the Logistic Regression and Neural Network Models: A Medical Outcomes ApproachWun Wong0Peter J. Fos1Frederick E. Petry2McKesson Health Solutions, 275 Grove Street, Suite 1-110, Newton, MA 02466, USAMcKesson Health Solutions, 275 Grove Street, Suite 1-110, Newton, MA 02466, USAMcKesson Health Solutions, 275 Grove Street, Suite 1-110, Newton, MA 02466, USAThe assessment of medical outcomes is important in the effort to contain costs, streamline patient management, and codify medical practices. As such, it is necessary to develop predictive models that will make accurate predictions of these outcomes. The neural network methodology has often been shown to perform as well, if not better, than the logistic regression methodology in terms of sample predictive performance. However, the logistic regression method is capable of providing an explanation regarding the relationship(s) between variables. This explanation is often crucial to understanding the clinical underpinnings of the disease process. Given the respective strengths of the methodologies in question, the combined use of a statistical (i.e., logistic regression) and machine learning (i.e., neural network) technology in the classification of medical outcomes is warranted under appropriate conditions. The study discusses these conditions and describes an approach for combining the strengths of the models.http://dx.doi.org/10.1100/tsw.2003.35 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Wun Wong Peter J. Fos Frederick E. Petry |
spellingShingle |
Wun Wong Peter J. Fos Frederick E. Petry Combining the Performance Strengths of the Logistic Regression and Neural Network Models: A Medical Outcomes Approach The Scientific World Journal |
author_facet |
Wun Wong Peter J. Fos Frederick E. Petry |
author_sort |
Wun Wong |
title |
Combining the Performance Strengths of the Logistic Regression and Neural Network Models: A Medical Outcomes Approach |
title_short |
Combining the Performance Strengths of the Logistic Regression and Neural Network Models: A Medical Outcomes Approach |
title_full |
Combining the Performance Strengths of the Logistic Regression and Neural Network Models: A Medical Outcomes Approach |
title_fullStr |
Combining the Performance Strengths of the Logistic Regression and Neural Network Models: A Medical Outcomes Approach |
title_full_unstemmed |
Combining the Performance Strengths of the Logistic Regression and Neural Network Models: A Medical Outcomes Approach |
title_sort |
combining the performance strengths of the logistic regression and neural network models: a medical outcomes approach |
publisher |
Hindawi Limited |
series |
The Scientific World Journal |
issn |
1537-744X |
publishDate |
2003-01-01 |
description |
The assessment of medical outcomes is important in the effort to contain costs, streamline patient management, and codify medical practices. As such, it is necessary to develop predictive models that will make accurate predictions of these outcomes. The neural network methodology has often been shown to perform as well, if not better, than the logistic regression methodology in terms of sample predictive performance. However, the logistic regression method is capable of providing an explanation regarding the relationship(s) between variables. This explanation is often crucial to understanding the clinical underpinnings of the disease process. Given the respective strengths of the methodologies in question, the combined use of a statistical (i.e., logistic regression) and machine learning (i.e., neural network) technology in the classification of medical outcomes is warranted under appropriate conditions. The study discusses these conditions and describes an approach for combining the strengths of the models. |
url |
http://dx.doi.org/10.1100/tsw.2003.35 |
work_keys_str_mv |
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1716790601325740032 |