Literature DB >> 3397250

A parametric model for multichannel EEG spectra.

R D Pascual-Marqui1, P A Valdes-Sosa, A Alvarez-Amador.   

Abstract

The EEG is modelled as the superposition of two component processes: the xi and the alpha processes. In the frequency domain, the xi process is always present and appears as a spectral peak with maximum amplitude at very low frequencies, while the alpha process is characterized by a spectral peak with its maximum located in the traditional alpha band (7-13 Hz), and is not necessarily always present. The multivariate properties of EEG spectra are adequately modelled with frequency independent coherence matrices for each process. Multichannel EEG studies reveal interesting properties: (1) the generalized coherence for alpha is much larger than for xi, indicating increased functional coupling for the alpha process; (2) the alpha coherence matrix has reduced dimensionality, possibly related to a small number of generators; (3) xi coherences are zero phase with magnitudes that decrease exponentially with interelectrode distance; and (4) alpha coherences have significant nonzero phase shifts.

Mesh:

Year:  1988        PMID: 3397250     DOI: 10.3109/00207458808985730

Source DB:  PubMed          Journal:  Int J Neurosci        ISSN: 0020-7454            Impact factor:   2.292


  12 in total

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10.  Mental rotation with abstract and embodied objects as stimuli: evidence from event-related potential (ERP).

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