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arxiv: q-bio/0310011 · v2 · submitted 2003-10-10 · 🧬 q-bio.QM · cs.CE· physics.data-an· q-bio.NC

Complex Independent Component Analysis of Frequency-Domain Electroencephalographic Data

classification 🧬 q-bio.QM cs.CEphysics.data-anq-bio.NC
keywords sourcescomplexdataindependentmixinganalysisbraincomponent
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Independent component analysis (ICA) has proven useful for modeling brain and electroencephalographic (EEG) data. Here, we present a new, generalized method to better capture the dynamics of brain signals than previous ICA algorithms. We regard EEG sources as eliciting spatio-temporal activity patterns, corresponding to, e.g., trajectories of activation propagating across cortex. This leads to a model of convolutive signal superposition, in contrast with the commonly used instantaneous mixing model. In the frequency-domain, convolutive mixing is equivalent to multiplicative mixing of complex signal sources within distinct spectral bands. We decompose the recorded spectral-domain signals into independent components by a complex infomax ICA algorithm. First results from a visual attention EEG experiment exhibit (1) sources of spatio-temporal dynamics in the data, (2) links to subject behavior, (3) sources with a limited spectral extent, and (4) a higher degree of independence compared to sources derived by standard ICA.

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