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Detection of Epileptic Seizure from Electroencephalogram Signals Based on Feature Ranking and Best Feature Subset Using Mutual Information Estimation
Published in American Scientific Publishers
2016
Volume: 6
   
Issue: 8
Pages: 1850 - 1864
Abstract
Pattern recognition strategies are applied for detecting epileptic abnormality from Electroencephalogram (EEG) signals. So, in this work, it is applied for detecting epileptic abnormality from EEG signals of normal subjects and epileptic patients. In this paper, a novel pattern recognition is studied with statistical features derived from discrete wavelet transform (DWT) coefficients D3-D5 and A5 to detect epileptic seizure abnormality using naïve Bayes (NB) and k-nearest neighbor (k-NN) classifier for fourteen different combinations such as set A to D with set E. In this work, EEG data provided by University of Bonn, Germany, and Christian Medical College and Hospital (CMCH), India are used. Using feature selection and feature ranking based on the estimation of mutual information, the significant features required for the classifier to get higher accuracy is obtained. It is found that NB performs better for 9 different data sets combination and k-NN performs well for 5 data sets. Further, NB achieves 100% classification accuracy (CA) in distinguishing normal eyes open and epileptic dataset and k-NN gives 100% accuracy with only top ranked 14 features in using CMCH data. This shows that proposed system has potential in developing automatic computer-aided epileptic seizure detection systems with lesser computation time to enhance the patient's care and quality of life. © Copyright 2016 American Scientific Publishers.
About the journal
JournalData powered by TypesetJournal of Medical Imaging and Health Informatics
PublisherData powered by TypesetAmerican Scientific Publishers
ISSN2156-7018
Open Access0