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  4. Blind source separation techniques for decomposing event-related brain signals
 
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2004
Journal Article
Title

Blind source separation techniques for decomposing event-related brain signals

Abstract
Recently blind source separation (BSS) methods have been highly successful when applied to biomedical data. This paper reviews the concept of BSS and demonstrates its usefulness in the context of event-related MEG measurements. In a first experiment we apply BSS to artifact identification of raw MEG data and discuss how the quality of the resulting independent component projections can be evaluated. The second part of our study considers averaged data of event-related magnetic fields. Here, it is particularly important to monitor and thus avoid possible overfitting due to limited sample size. A stability assessment of the BSS decomposition allows to solve this task and an additional grouping of the BSS components reveals interesting structure, that could ultimately be used for gaining a better physiological modeling of the data.
Author(s)
Müller, K.-R.
Vigario, R.
Meinecke, F.
Ziehe, A.
Journal
International Journal of Bifurcation and Chaos in Applied Sciences and Engineering  
DOI
10.1142/S0218127404009466
Language
English
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