Determination of neural state classification metrics from the power spectrum of human ECoG.

EMBC(2012)

Cited 3|Views7
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Abstract
Brain electrical activity exhibits scale-free dynamics that follow power law scaling. Previous works have shown that broadband spectral power exhibits state-dependent scaling with a log frequency exponent that systematically varies with neural state. However, the frequency ranges which best characterize biological state are not consistent across brain location or subject. An adaptive piecewise linear fitting solution was developed to extract features for classification of brain state. Performance was evaluated by comparison to an a posteriori based feature search method. This analysis, using the 1/ƒ characteristics of the human ECoG signal, demonstrates utility in advancing the ability to perform automated brain state discrimination.
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Key words
adaptive piecewise linear fitting solution,power law scaling,neurophysiology,state-dependent scaling,electroencephalography,automated brain state discrimination,medical signal processing,broadband spectral power,a posteriori based feature search method,brain electrical activity,human ecog signal,scale-free dynamics,log frequency exponent,feature extraction,bioelectric phenomena,1/f characteristics,signal classification,neural state classification metrics,neural state,brain state
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