Title of article :
Optimized Seizure Detection Algorithm: A Fast Approach for Onset of Epileptic in EEG Signals Using GT Discriminant Analysis and K-NN Classifier
Author/Authors :
Rezaee، Kh نويسنده Department of Nuclear Engineering, Faculty of Modern Sciences and Technologies, University of Isfahan, Isfahan 81747-73441, Iran , , Azizi، E نويسنده Hakim Sabzevari University of Sabzevar, Department of Electrical and Computer Engineering, Sabzevar, Iran , , Haddadnia، J نويسنده Hakim Sabzevari University of Sabzevar, Department of Electrical and Computer Engineering, Sabzevar, Iran ,
Issue Information :
فصلنامه با شماره پیاپی 0 سال 2016
Abstract :
Background: Epilepsy is a severe disorder of the central nervous system that predisposes the person to recurrent seizures. Fifty million people worldwide suffer from
epilepsy; after Alzheimer’s and stroke, it is the third widespread nervous disorder.
Objective: In this paper, an algorithm to detect the onset of epileptic seizures
based on the analysis of brain electrical signals (EEG) has been proposed. 844 hours
of EEG were recorded form 23 pediatric patients consecutively with 163 occurrences
of seizures. Signals had been collected from Children’s Hospital Boston with a sampling frequency of 256 Hz through 18 channels in order to assess epilepsy surgery. By
selecting effective features from seizure and non-seizure signals of each individual and
putting them into two categories, the proposed algorithm detects the onset of seizures
quickly and with high sensitivity.
Method: In this algorithm, L-sec epochs of signals are displayed in form of a thirdorder tensor in spatial, spectral and temporal spaces by applying wavelet transform.
Then, after applying general tensor discriminant analysis (GTDA) on tensors and calculating mapping matrix, feature vectors are extracted. GTDA increases the sensitivity
of the algorithm by storing data without deleting them. Finally, K-Nearest neighbors
(KNN) is used to classify the selected features.
Results: The results of simulating algorithm on algorithm standard dataset shows
that the algorithm is capable of detecting 98 percent of seizures with an average delay
of 4.7 seconds and the average error rate detection of three errors in 24 hours.
Conclusion: Today, the lack of an automated system to detect or predict the seizure onset is strongly felt.
Journal title :
Journal of Biomedical Physics and Engineering
Journal title :
Journal of Biomedical Physics and Engineering