Author/Authors :
Rasekhi، Jalil نويسنده Department of Biomedical Engineering, Faculty of Engineering, Babol Noshirvani University of Technology, Babol, Iran , , Karami Mollaei، Mohammad Reza نويسنده Department of Electrical and Computer, Babol University of Technology, Babol , , Bandarabadi، Mojtaba نويسنده Department of Informatics Engineering, CISUC/DEI, Center for Informatics and Systems of the University of Coimbra, Polo II 3030-290, Coimbra, Portugal , , Teixeira، César A. نويسنده Department of Informatics Engineering, CISUC/DEI, Center for Informatics and Systems of the University of Coimbra, Polo II 3030-290, Coimbra, Portugal , , Dourado، Ant?nio نويسنده Department of Informatics Engineering, CISUC/DEI, Center for Informatics and Systems of the University of Coimbra, Polo II 3030-290, Coimbra, Portugal ,
Abstract :
Bivariate features, obtained from multichannel electroencephalogram recordings, quantify the relation between different brain regions.
Studies based on bivariate features have shown optimistic results for tackling epileptic seizure prediction problem in patients suffering
from refractory epilepsy. A new bivariate approach using univariate features is proposed here. Differences and ratios of 22 linear
univariate features were calculated using pairwise combination of 6 electroencephalograms channels, to create 330 differential, and
330 relative features. The feature subsets were classified using support vector machines separately, as one of the two classes of
preictal and nonpreictal. Furthermore, minimum Redundancy Maximum Relevance feature reduction method is employed to improve
the predictions and reduce the number of false alarms. The studies were carried out on features obtained from 10 patients. For reduced
subset of 30 features and using differential approach, the seizures were on average predicted in 60.9% of the cases
. Results of bivariate approaches were compared with those achieved
from original linear univariate features, extracted from 6 channels. The advantage of proposed bivariate features is the smaller number
of false predictions in comparison to the original 22 univariate features. In addition, reduction in feature dimension could provide a
less complex and the more cost?effective algorithm. Results indicate that applying machine learning methods on a multidimensional
feature space resulting from relative/differential pairwise combination of 22 univariate features could predict seizure onsets with high
performance.