Title of article :
Automatic Identification of Interictal Epileptiform Discharges in Secondary Generalized Epilepsy
Author/Authors :
Chang, Won-Du Department of Biomedical Engineering - Hanyang University, Republic of Korea , Cha, Ho-Seung Department of Biomedical Engineering - Hanyang University, Republic of Korea , Lee, Chany Department of Biomedical Engineering - Hanyang University, Republic of Korea , Kang, Hoon-Chul Department of Pediatrics - Severance Children’s Hospital, Epilepsy Research Institute - Yonsei University College of Medicine - Seoul, Republic of Korea , Im, Chang-Hwan Department of Biomedical Engineering - Hanyang University, Republic of Korea
Abstract :
Ictal epileptiform discharges (EDs) are characteristic signal patterns of scalp electroencephalogram (EEG) or intracranial EEG
(iEEG) recorded from patients with epilepsy, which assist with the diagnosis and characterization of various types of epilepsy. The
EEG signal, however, is often recorded from patients with epilepsy for a long period of time, and thus detection and identification
of EDs have been a burden on medical doctors. This paper proposes a new method for automatic identification of two types of EDs,
repeated sharp-waves (sharps), and runs of sharp-and-slow-waves (SSWs), which helps to pinpoint epileptogenic foci in secondary
generalized epilepsy such as Lennox-Gastaut syndrome (LGS). In the experiments with iEEG data acquired from a patient with
LGS, our proposed method detected EDs with an accuracy of 93.76% and classified three different signal patterns with a mean
classification accuracy of 87.69%, which was significantly higher than that of a conventional wavelet-based method. Our study
shows that it is possible to successfully detect and discriminate sharps and SSWs from background EEG activity using our proposed
method.
Keywords :
Epileptiform , Generalized , EEG , sharp-waves
Journal title :
Computational and Mathematical Methods in Medicine