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Title

Epilepsy Diagnosis Using Directed Acyclic Graph SVM Technique in EEG Signals.

Authors

Babu, Shyam; Wadhwani, Arun Kumar

Abstract

Epilepsy is a complicated neurological disorder that causes rapid and frequent seizures in both adults and children. EEG signals are emerging as non-invasive methods for analyzing epilepsy. However, processing and analyzing large volumes of EEG data requires significant time and expertise from neurophysiologists. This research presents a novel method to effectively differentiate between focal EEG and non-focal EEG data using the DAGSVM classifier. The suggested method utilizes the Bern Barcelona dataset and applies the Discrete Fourier Transform to EEG signals to identify time-frequency characteristics. We use 7,000 EEG signals, with 700 for testing and 6,800 for training. Results suggest that the DAGSVM classifier significantly exceeds existing approaches, achieving an accuracy of 99.71%. High accuracy improves patient results by facilitating the early diagnosis and care of epilepsy.

Subjects

DISCRETE Fourier transforms; DISCRETE wavelet transforms; DIRECTED acyclic graphs; DIAGNOSIS of epilepsy; EARLY diagnosis; ELECTROENCEPHALOGRAPHY

Publication

Traitement du Signal, 2024, Vol 41, Issue 6, p3163

ISSN

0765-0019

Publication type

Academic Journal

DOI

10.18280/ts.410632

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