DocumentCode
1195607
Title
Artificial neural network and spectrum analysis methods for detecting brain diseases from the CNV response in the electroencephalogram
Author
Jervis, B.W. ; Saatchi, M.R. ; Lacey, A. ; Roberts, T. ; Allen, E.M. ; Hudson, N.R. ; Oke, S. ; Grimsley, M.
Author_Institution
Sch. of Eng. Technol., Sheffield Hallam Univ., UK
Volume
141
Issue
6
fYear
1994
fDate
11/1/1994 12:00:00 AM
Firstpage
432
Lastpage
440
Abstract
Two methods of identifying schizophrenia, Parkinson´s disease (PD), and Huntington´s disease (HD) are described. The methods are based on the analysis of the contingent negative variation (CNV), an event related potential (ERP) in the electroencephalogram. The first method involves spectrum analysis of the CNV and discriminant analysis of the Fourier harmonic frequency components. The other method involves the application of supervised learning artificial neural networks to the CNV features obtained in the time domain. Additionally, unsupervised artificial neural networks were used to presymptomatically assess the risk of HD. Sensitivities and specificities lie between 0.81 and 1.0 with low false positive rates (0 to 0.13) for differentiating between disease and normal data, and between disease data, dependent on disease and method. The preferred method for disease differentiation for accuracy and ease of application is the multilayer perceptron. Using Kohonen and ART networks for detecting abnormal CNVs in subjects at risk of HD (ARs) eight abnormals are identified in agreement with the prediction of risk derived from a published risk table. In addition, one of the abnormals has since developed symptomatic Huntington´s disease. The recommended method is to combine the results of the Kohonen method with an ART2 and a modified ART1 network
Keywords
Fourier analysis; bioelectric potentials; brain; electroencephalography; learning (artificial intelligence); medical diagnostic computing; medical signal processing; neural nets; self-organising feature maps; spectral analysis; unsupervised learning; ART networks; CNV response; Fourier harmonic frequency components; Huntington´s disease; Kohonen networks; Parkinson´s disease; abnormal CNV; brain diseases; contingent negative variation; discriminant analysis; disease differentiation; electroencephalogram; multilayer perceptron; patient identification; schizophrenia; sensitivities; specificities; spectrum analysis; supervised learning; symptomatic Huntington´s disease; time domain; unsupervised artificial neural networks;
fLanguage
English
Journal_Title
Science, Measurement and Technology, IEE Proceedings -
Publisher
iet
ISSN
1350-2344
Type
jour
DOI
10.1049/ip-smt:19941480
Filename
331584
Link To Document