Automated Recognition of Epileptic EEG States Using a Combination of Symlet Wavelet Processing, Gradient Boosting Machine, and Grid Search Optimizer

Automatic recognition methods for non-stationary electroencephalogram (EEG) data collected from EEG sensors play an essential role in neurological detection. The integrated approaches proposed in this study consist of Symlet wavelet processing, a gradient boosting machine, and a grid search optimize...

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Main Authors: Xiashuang Wang, Guanghong Gong, Ni Li
Format: Article
Language:English
Published: MDPI AG 2019-01-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/19/2/219
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spelling doaj-268657ce8b9949e7ba7d9bd0a03b92df2020-11-25T01:51:42ZengMDPI AGSensors1424-82202019-01-0119221910.3390/s19020219s19020219Automated Recognition of Epileptic EEG States Using a Combination of Symlet Wavelet Processing, Gradient Boosting Machine, and Grid Search OptimizerXiashuang Wang0Guanghong Gong1Ni Li2State Key Laboratory of Virtual Reality Technology and Systems, Beihang University, Beijing 100191, ChinaAutomation Science and Electrical Engineering, Beihang University, Beijing 100191, ChinaState Key Laboratory of Virtual Reality Technology and Systems, Beihang University, Beijing 100191, ChinaAutomatic recognition methods for non-stationary electroencephalogram (EEG) data collected from EEG sensors play an essential role in neurological detection. The integrated approaches proposed in this study consist of Symlet wavelet processing, a gradient boosting machine, and a grid search optimizer for a three-class classification scheme for normal subjects, intermittent epilepsy, and continuous epilepsy. Fourth-order Symlet wavelets are adopted to decompose the EEG data into five frequencies sub-bands, such as gamma, beta, alpha, theta, and delta, whose statistical features were computed and used as classification features. The grid search optimizer is used to automatically find the optimal parameters for training the classifier. The classification accuracy of the gradient boosting machine was compared with that of a conventional support vector machine and a random forest classifier constructed according to previous descriptions. Multiple performance indices were used to evaluate the proposed classification scheme, which provided better classification accuracy and detection effectiveness than has been recently reported in other studies on three-class classification of EEG data.http://www.mdpi.com/1424-8220/19/2/219recognition of epilepsy EEGSymlet waveletgradient boosting machinegrid search optimizermultiple performance indices evaluation
collection DOAJ
language English
format Article
sources DOAJ
author Xiashuang Wang
Guanghong Gong
Ni Li
spellingShingle Xiashuang Wang
Guanghong Gong
Ni Li
Automated Recognition of Epileptic EEG States Using a Combination of Symlet Wavelet Processing, Gradient Boosting Machine, and Grid Search Optimizer
Sensors
recognition of epilepsy EEG
Symlet wavelet
gradient boosting machine
grid search optimizer
multiple performance indices evaluation
author_facet Xiashuang Wang
Guanghong Gong
Ni Li
author_sort Xiashuang Wang
title Automated Recognition of Epileptic EEG States Using a Combination of Symlet Wavelet Processing, Gradient Boosting Machine, and Grid Search Optimizer
title_short Automated Recognition of Epileptic EEG States Using a Combination of Symlet Wavelet Processing, Gradient Boosting Machine, and Grid Search Optimizer
title_full Automated Recognition of Epileptic EEG States Using a Combination of Symlet Wavelet Processing, Gradient Boosting Machine, and Grid Search Optimizer
title_fullStr Automated Recognition of Epileptic EEG States Using a Combination of Symlet Wavelet Processing, Gradient Boosting Machine, and Grid Search Optimizer
title_full_unstemmed Automated Recognition of Epileptic EEG States Using a Combination of Symlet Wavelet Processing, Gradient Boosting Machine, and Grid Search Optimizer
title_sort automated recognition of epileptic eeg states using a combination of symlet wavelet processing, gradient boosting machine, and grid search optimizer
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-01-01
description Automatic recognition methods for non-stationary electroencephalogram (EEG) data collected from EEG sensors play an essential role in neurological detection. The integrated approaches proposed in this study consist of Symlet wavelet processing, a gradient boosting machine, and a grid search optimizer for a three-class classification scheme for normal subjects, intermittent epilepsy, and continuous epilepsy. Fourth-order Symlet wavelets are adopted to decompose the EEG data into five frequencies sub-bands, such as gamma, beta, alpha, theta, and delta, whose statistical features were computed and used as classification features. The grid search optimizer is used to automatically find the optimal parameters for training the classifier. The classification accuracy of the gradient boosting machine was compared with that of a conventional support vector machine and a random forest classifier constructed according to previous descriptions. Multiple performance indices were used to evaluate the proposed classification scheme, which provided better classification accuracy and detection effectiveness than has been recently reported in other studies on three-class classification of EEG data.
topic recognition of epilepsy EEG
Symlet wavelet
gradient boosting machine
grid search optimizer
multiple performance indices evaluation
url http://www.mdpi.com/1424-8220/19/2/219
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AT guanghonggong automatedrecognitionofepilepticeegstatesusingacombinationofsymletwaveletprocessinggradientboostingmachineandgridsearchoptimizer
AT nili automatedrecognitionofepilepticeegstatesusingacombinationofsymletwaveletprocessinggradientboostingmachineandgridsearchoptimizer
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