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Detection of liver metastisis using the backpropagation algorithm and linear discriminant analysis
Resource type
Authors/contributors
- Daponte, John S (Author)
- Parikh, Jo Ann (Author)
- Katz, David A (Author)
Title
Detection of liver metastisis using the backpropagation algorithm and linear discriminant analysis
Abstract
The purpose of this study was to compare the classification capabilities
of the backpropagation algorithm and linear discriminant analysis for
detecting liver metastisis using image texture features obtained from
ultrasonic images of the liver. Twenty-one quantitative parameters were
obtained from 134 regions of interest of equal size. The images were
collected by the same radiologist on the same imager with the controls
adjusted for variations in patient body size so as to produce images of
consistent quality. Quantitative features were divided so that 13 were
first-order statistics, 6 were second-order statistics, and 2 were image
gradient parameters. The same features were processed by both the
backpropagation algorithm and linear discriminant analysis using
`jack-knife'' testing and the results of each computer- generated
classification was compared to the supplied diagnosis in an effort to
determine which method could best identify patterns. For this particular
application, the backpropagation neural network was found to have
slightly superior classification results (87) than linear discriminant
analysis (83).
Proceedings Title
Applications of Artificial Neural Networks II
Publisher
SPIE
Place
Bellingham, WA, United States
Date
1991
Volume
1469
Pages
441-450
DOI
ISBN
0277786X (ISSN); 0819405787 (ISBN)
Citation Key
pop00082
Language
English
Library Catalog
NASA ADS
Extra
1 citations (Crossref) [2023-10-31]
Citation Key Alias: daponteDetectionLiverMetastisis1991, lens.org/021-367-922-786-875
Citation
Daponte, J. S., Parikh, J. A., & Katz, D. A. (1991). Detection of liver metastisis using the backpropagation algorithm and linear discriminant analysis. Applications of Artificial Neural Networks II, 1469, 441–450. https://doi.org/10.1117/12.45003
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