Classification of ultrasonic image texture by statistical discriminant analysis and neural networks

Resource type
Authors/contributors
Title
Classification of ultrasonic image texture by statistical discriminant analysis and neural networks
Abstract
In this paper the ability of two common statistical discriminant analysis procedures are compared with two commercial neural network software packages. The major objective of this study was to determine which of the procedures could best discriminate between normal and abnormal ultrasonic liver textures. The same set of features were input into both statistical discriminant analysis procedures and both neural network models. Preliminary results have found the restricted Coulomb Energy (RCE) neural network model to have a testing accuracy of 90.6% which is approximately 10% better than any of the other techniques investigated. © 1991.
Publication
Computerized Medical Imaging and Graphics
Date
1991
Volume
15
Issue
1
Pages
3-9
Journal Abbr
Comput. Med. Imaging Graph.
Citation Key
pop00006
ISSN
08956111 (ISSN)
Language
English
Extra
31 citations (Crossref) [2023-10-31] Citation Key Alias: lens.org/028-179-351-770-197 tex.type: [object Object]
Citation
Daponte, J. S., & Sherman, P. (1991). Classification of ultrasonic image texture by statistical discriminant analysis and neural networks. Computerized Medical Imaging and Graphics, 15(1), 3–9. https://doi.org/10.1016/0895-6111(91)90100-a