DocumentCode :
2860789
Title :
Unsupervised learning in computer aided macroelectromyography
Author :
Schizas, C.N. ; Pattichis, C.S. ; Livesay, R.R. ; Schofield, I.S. ; Lazarou, K.X. ; Middleton, L.T.
fYear :
1991
fDate :
12-14 May 1991
Firstpage :
305
Lastpage :
312
Abstract :
Normals and patients from three disorders have been selected for investigation: motor neurone disease (MND); Becker muscular dystrophy (BMD); and spinal muscular atrophy. The data from 36 macroelectromyograms were used for analysis. The results suggest that unsupervised learning neural networks generally produce better results than those produced by the supervised learning neural networks. No conclusion about the optimum size of the output grid can be reached from the results since the examined models for the 10×10 and 8×8 cases produced similar results. It is expected, however, that an optimum grid size should exist. This size will depend on the size and the variability of the training set. More epochs can improve the performance of a model up to a certain level, beyond which the number of epochs will have no positive effect
Keywords :
bioelectric potentials; learning systems; medical diagnostic computing; neural nets; BMD; Becker muscular dystrophy; MND; computer aided macroelectromyography; epochs; macroelectromyograms; motor neurone disease; optimum grid size; spinal muscular atrophy; training set; unsupervised learning neural networks; Artificial neural networks; Electromyography; Genetics; Muscles; Nervous system; Neural networks; Neurophysiology; Optical fiber testing; Stability; Unsupervised learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer-Based Medical Systems, 1991. Proceedings of the Fourth Annual IEEE Symposium
Conference_Location :
Baltimore, MD
Print_ISBN :
0-8186-2164-8
Type :
conf
DOI :
10.1109/CBMS.1991.128984
Filename :
128984
Link To Document :
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