Title :
Application of shunting inhibitory artificial neural networks to medical diagnosis
Author :
Arulampalam, G. ; Bouzerdoum, A.
Author_Institution :
Edith Cowan Univ., Joondalup, WA, Australia
Abstract :
Shunting inhibitory artificial neural networks (SIANNs) are biologically inspired networks in which the neurons interact among each other via a nonlinear mechanism called shunting inhibition. Since they are high-order networks, SIANNs are capable of producing complex, nonlinear decision boundaries. In this article, feedforward SIANNs are applied to several medical diagnosis problems and the results are compared with those obtained using multilayer perceptrons (MLPs). First, the structure of feedforward SIANNs is presented. Then, these networks are applied to some standard medical classification problems, namely the Pima Indians diabetes and Wisconsin breast cancer classification problems. The SIANN performance compares favourably with that of MLPs. Moreover, some problems with the diabetes data set are addressed and a reduction in the number of inputs is investigated.
Keywords :
cancer; feedforward neural nets; mammography; medical diagnostic computing; pattern classification; Pima Indians; Wisconsin; biologically inspired networks; breast cancer; diabetes; feedforward SIANNs; high-order networks; input number reduction; interacting neurons; medical classification problems; medical diagnosis; multilayer perceptrons; nonlinear decision boundaries; nonlinear mechanism; performance; shunting inhibition; shunting inhibitory artificial neural networks; Artificial neural networks; Australia; Breast cancer; Cellular neural networks; Diabetes; Differential equations; Image processing; Medical diagnosis; Neurons; Nonhomogeneous media;
Conference_Titel :
Intelligent Information Systems Conference, The Seventh Australian and New Zealand 2001
Print_ISBN :
1-74052-061-0
DOI :
10.1109/ANZIIS.2001.974056