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Complexity quantification of dense array EEG using sample entropy analysis.

作者信息

Ramanand Pravitha, Nampoori V P N, Sreenivasan R

机构信息

International School of Photonics, Cochin University of Science and Technology, Cochin, Kerala 682022, India.

出版信息

J Integr Neurosci. 2004 Sep;3(3):343-58. doi: 10.1142/s0219635204000567.

DOI:10.1142/s0219635204000567
PMID:15366100
Abstract

In this paper, a time series complexity analysis of dense array electroencephalogram signals is carried out using the recently introduced Sample Entropy (SampEn) measure. This statistic quantifies the regularity in signals recorded from systems that can vary from the purely deterministic to purely stochastic realm. The present analysis is conducted with an objective of gaining insight into complexity variations related to changing brain dynamics for EEG recorded from the three cases of passive, eyes closed condition, a mental arithmetic task and the same mental task carried out after a physical exertion task. It is observed that the statistic is a robust quantifier of complexity suited for short physiological signals such as the EEG and it points to the specific brain regions that exhibit lowered complexity during the mental task state as compared to a passive, relaxed state. In the case of mental tasks carried out before and after the performance of a physical exercise, the statistic can detect the variations brought in by the intermediate fatigue inducing exercise period. This enhances its utility in detecting subtle changes in the brain state that can find wider scope for applications in EEG based brain studies.

摘要

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