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Published in: Microsystem Technologies 10/2020

16-02-2018 | Technical Paper

Performance analysis of power and power variance for classification, detection and localization of epileptic multi-channel EEG

Authors: Manish N. Tibdewal, Anupama S. There, M. Mahadevappa, AjoyKumar Ray, Monika Malokar

Published in: Microsystem Technologies | Issue 10/2020

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Abstract

There are a large number of data sets of EEG signal for which, it is difficult to judge and monitor brain activity through observations. Epilepsy is a disorder in which a recurrent and sudden malfunction of the brain is characterized. It is proposed to classify, detect and localize Epileptic multi-channel EEG through various power and novel power variance features non-invasively. This work presents power spectral estimation (PSE) using time–frequency analysis of EEG signals in both parametric (FFT) and non-parametric methods (i.e. Welch, Burg, Covariance, MUSIC and Yule–Walker). To examine the robustness of power features for different methods, the analysis of p value is performed. The detection of epileptic seizure is classified using different kernels through SVM. It is observed from the PSE that the power features have higher values in epileptic subjects as compared to non-epileptic subjects. Amongst all the parametric and non-parametric methods, the MUSIC method gives the highest average power. Sensitivity, specificity, and classification accuracy are 100% for Welch, Burg, Covariance, and Yule–Walker methods while MUSIC and FFT methods deliver 98.73 and 99.52% respectively. The novelty is introduced through the quantification of power and power variance robust feature region/lobe-wise. This quantification is used for the localization of 25 epileptic subjects. Analysis of the parametric and non-parametric PSD methods for extraction of power and power variance features is not used by any study. These are effectively utilized for detection and localization of epilepsy non-invasively.

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Metadata
Title
Performance analysis of power and power variance for classification, detection and localization of epileptic multi-channel EEG
Authors
Manish N. Tibdewal
Anupama S. There
M. Mahadevappa
AjoyKumar Ray
Monika Malokar
Publication date
16-02-2018
Publisher
Springer Berlin Heidelberg
Published in
Microsystem Technologies / Issue 10/2020
Print ISSN: 0946-7076
Electronic ISSN: 1432-1858
DOI
https://doi.org/10.1007/s00542-018-3789-2

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