Meghdadi AH, Fazel-Rezai R, Aghakhani Y. A method for detecting nonlinear determinism in normal and epileptic brain EEG signals.
ACTA ACUST UNITED AC 2007;
2007:2008-11. [PMID:
18002379 DOI:
10.1109/iembs.2007.4352713]
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Abstract
A robust method of detecting determinism for short time series is proposed and applied to both healthy and epileptic EEG signals. The method provides a robust measure of determinism through characterizing the trajectories of the signal components which are obtained through singular value decomposition. Robustness of the method is shown by calculating proposed index of determinism at different levels of white and colored noise added to a simulated chaotic signal. The method is shown to be able to detect determinism at considerably high levels of additive noise. The method is then applied to both intracranial and scalp EEG recordings collected in different data sets for healthy and epileptic brain signals. The results show that for all of the studied EEG data sets there is enough evidence of determinism. The determinism is more significant for intracranial EEG recordings particularly during seizure activity.
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