DocumentCode
2113692
Title
Towards the time varying estimation of complex brain connectivity networks by means of a General Linear Kalman Filter approach
Author
Toppi, J. ; Babiloni, F. ; Vecchiato, G. ; De Vico Fallani, F. ; Mattia, D. ; Salinari, S. ; Milde, T. ; Leistritz, Lutz ; Witte, Herbert ; Astolfi, L.
Author_Institution
Dept. of Comput., Control, & Manage. Eng., Univ. of Rome Sapienza, Rome, Italy
fYear
2012
fDate
Aug. 28 2012-Sept. 1 2012
Firstpage
6192
Lastpage
6195
Abstract
One of the main limitations of the brain functional connectivity estimation methods based on Autoregressive Modeling, like the Granger Causality family of estimators, is the hypothesis that only stationary signals can be included in the estimation process. This hypothesis precludes the analysis of transients which often contain important information about the neural processes of interest. On the other hand, previous techniques developed for overcoming this limitation are affected by problems linked to the dimension of the multivariate autoregressive model (MVAR), which prevents from analysing complex networks like those at the basis of most cognitive functions in the brain. The General Linear Kalman Filter (GLKF) approach to the estimation of adaptive MVARs was recently introduced to deal with a high number of time series (up to 60) in a full multivariate analysis. In this work we evaluated the performances of this new method in terms of estimation quality and adaptation speed, by means of a simulation study in which specific factors of interest were systematically varied in the signal generation to investigate their effect on the method performances. The method was then applied to high density EEG data related to an imaginative task. The results confirmed the possibility to use this approach to study complex connectivity networks in a full multivariate and adaptive fashion, thus opening the way to an effective estimation of complex brain connectivity networks.
Keywords
Kalman filters; autoregressive processes; cognition; electroencephalography; medical signal processing; neurophysiology; time series; GLKF approach; Granger causality estimators; adaptive MVAR estimation; autoregressive modeling; brain cognitive functions; brain functional connectivity estimation methods; complex brain connectivity networks; full multivariate analysis; general linear Kalman filter approach; high density EEG data; imaginative task; multivariate autoregressive model; signal generation; time series; time varying estimation; transient signals; Adaptation models; Brain modeling; Electroencephalography; Estimation; Kalman filters; Signal to noise ratio; Transient analysis; Brain; Electroencephalography; Humans; Multivariate Analysis;
fLanguage
English
Publisher
ieee
Conference_Titel
Engineering in Medicine and Biology Society (EMBC), 2012 Annual International Conference of the IEEE
Conference_Location
San Diego, CA
ISSN
1557-170X
Print_ISBN
978-1-4244-4119-8
Electronic_ISBN
1557-170X
Type
conf
DOI
10.1109/EMBC.2012.6347408
Filename
6347408
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