Author/Authors :
Boostani R. نويسنده Department of Computer Sciences and Engineering - School of Engineering - Shiraz University , Sabeti M. نويسنده Department of Computer Engineering - College of Engineering - Shiraz Branch, Islamic Azad University
Abstract :
Objective: In this research, a new approach termed as “evolutionary-based brain
map” is presented as a diagnostic tool to classify schizophrenic and control subjects by
distinguishing their electroencephalogram (EEG) features.
Methods: Particle swarm optimization (PSO) is employed to find discriminative frequency
bands from different EEG channels. By deploying the energy of those selected
frequency bands from different channels within each time frame (window) on the scalp
geometry, a sort of two dimensional points along with their values are created; by
applying Lagrange interpolation, an image can be constructed. Finally, by averaging
the images belonging to successive time frames, an evolutionary-based brain map is
created.
Results: In this study, twenty subjects from each group voluntarily participated
and their EEG signals were caught from 20 channels. The energy of selected bands
for different channels are arranged in a feature vector for each time frame and applied
to Fisher linear discriminant analysis (FLDA) resulting in 83.74% diagnostic accuracy
between the two groups. The achieved result by the proposed method was much
higher than applying the energy of standard EEG bands (delta, theta, alpha, beta and
gamma) to the same classifier which just provided 77.04% accuracy. Applying T-test
to the achieved results supports the supremacy of the proposed method as an automatic
powerful diagnostic tool.
Conclusion: The proposed brain map is capable of highlighting the same physiological
and anatomical changes which are observed in fMRI, PET and CT as differentiable
indicators between controls and schizophrenic patients.