Texture analysis of ultrasonic images using backpropagation neural networks
Resource type
Authors/contributors
- Parikh, Jo Ann (Author)
- Daponte, John S (Author)
- Damodaran, Meledath (Author)
Title
Texture analysis of ultrasonic images using backpropagation neural networks
Abstract
Backpropagation neural networks are applied to the problem of characterization of ultrasonic image texture to detect abnormalities in tissue texture which are indicative of liver disease. Twenty-one texture features were extracted from regions of interest in digitized ultrasonic images. A feature subset, identified by a stepwise selection process, formed the sample input to the networks together with the physician-supplied diagnosis. The classification performance of the backpropagation network is evaluated using a jackknife testing procedure. The performance of the networks is compared with results obtained from linear discriminant analysis and logistic regression techniques. © Springer-Verlag Berlin Heidelberg 1995.
Proceedings Title
International Conference on Semantic Computing
Publisher
Springer Verlag
Date
1995
Volume
1024
Pages
499-500
ISBN
03029743 (ISSN); 9783540606970 (ISBN)
Citation Key
pop00268
Language
English
Extra
0 citations (Crossref) [2023-10-31]
tex.type: Proceedings paper
Citation
Parikh, J. A., Daponte, J. S., & Damodaran, M. (1995). Texture analysis of ultrasonic images using backpropagation neural networks. International Conference on Semantic Computing, 1024, 499–500. https://doi.org/10.1007/3-540-60697-1_144
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