DocumentCode
1379546
Title
Nonlinear Markov process amplitude EEG model for nonlinear coupling interaction of spontaneous EEG
Author
Bai, Ou ; Nakamura, Masatoshi ; Ikeda, Akio ; Shibasaki, Hiroshi
Author_Institution
Dept. of Adv. Syst. Control Eng., Saga Univ., Japan
Volume
47
Issue
9
fYear
2000
Firstpage
1141
Lastpage
1146
Abstract
To develop an appropriate model for representing spontaneous electroencephalography (EEG) is an important and necessary work in the field of neuroscience. The Markov process amplitude (MPA) EEG model has been proposed in our previous work for representing the features of the EEG in terms of a few parameters. However, being a linear model, the linear MPA EEG model cannot perfectly describe the spontaneous EEG that displays nonlinear phenomena. Here, the nonlinear Markov process amplitude (nonlinear MPA) EEG model that includes nonlinear components is introduced. The consistent consideration of the nonlinear features of the EEG investigated by N. Wiener (1966) and P.L. Nunez (1995) can be seen from the nonlinear MPA EEG model. The similarity in the time domain and the goodness of fitting in the frequency domain with respect to the ongoing EEG are shown. As a result, the EEG power spectrum can be decomposed into the spontaneous components and the nonlinearly coupled components by use of the nonlinear MPA EEG model, which is useful for a better understanding the mechanism of the EEG generation.
Keywords
Markov processes; electroencephalography; medical signal processing; physiological models; spectral analysis; EEG features representation; EEG power spectrum; electrodiagnostics; frequency domain; goodness of fitting; linear model; nonlinear Markov process amplitude EEG model; nonlinear coupling interaction; nonlinearly coupled components; ongoing EEG; spontaneous EEG; spontaneous components; time domain; Brain modeling; Control engineering; Couplings; Displays; Electroencephalography; Frequency domain analysis; Markov processes; Neuroscience; Power generation; Rhythm; Biomedical Engineering; Electroencephalography; Humans; Markov Chains; Models, Neurological; Nonlinear Dynamics;
fLanguage
English
Journal_Title
Biomedical Engineering, IEEE Transactions on
Publisher
ieee
ISSN
0018-9294
Type
jour
DOI
10.1109/10.867917
Filename
867917
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