Changes of chaoticness in spontaneous EEG/MEG
Author(s) -
Zbigniew J. Kowalik,
Thomas Elbert
Publication year - 1994
Publication title -
integrative physiological and behavioral science
Language(s) - English
Resource type - Journals
eISSN - 2168-7846
pISSN - 1053-881X
DOI - 10.1007/bf02691331
Subject(s) - lyapunov exponent , electroencephalography , statistical physics , fractal dimension , computation , phase transition , chaotic , measure (data warehouse) , fractal , mathematics , computer science , psychology , physics , neuroscience , artificial intelligence , mathematical analysis , algorithm , condensed matter physics , data mining
Depending on the task being investigated in EEG/MEG experiments, the corresponding signal is more or less ordered. The question still open is how can one detect the changes of this order while the tasks performed by the brain vary continuously. By applying a static measurement of the fractal dimension or Lyapunov exponent, different brain states could be characterized. However, transitions between different states may not be detected, especially if the moments of transitions are not strictly defined. Here we show how the dynamical measure based on the largest local Lyapunov exponent can be applied for the detection of the changes of the chaoticity of the brain processes measured in EEG and MEG experiments. In this article, we demonstrate an algorithm for computation of chaoticity that is especially useful for nonstationary signals. Moreover, we introduce the idea that chaoticity is able to detect, locally in time, critical jumps (phase-transition-like phenomena) in the human brain, as well as the information flow through the cortex.
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