Paper
23 October 1996 Classification of epileptic EEG using neural network and wavelet transform
Arthur Ashot Petrosian, Richard Homan, Danil Prokhorov, Donald C. Wunsch II
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Abstract
One of the major contributions of electroencephalography has been its application in the diagnosis and clinical evaluation of epilepsy. The interpretation of the EEG is achieved through visual inspection by a trained electroencephalographer. However, descriptions of rules used during the visual analysis of data are often subjective and can vary from one reader to another. Computerized methods are a means to standardize this process. In recent years, much effort has been made to develop such methods that can characterize different interictal, ictal, and postictal stages. the main issue of whether there exists a preictal phenomenon remains unresolved. In the present study we address this issue making use of specifically designed and trained recurrent neural networks in conjunction with signal wavelet decomposition technique. The purpose of this combined consideration was to demonstrate the potential for seizure prediction by up to several minutes prior to its onset.
© (1996) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Arthur Ashot Petrosian, Richard Homan, Danil Prokhorov, and Donald C. Wunsch II "Classification of epileptic EEG using neural network and wavelet transform", Proc. SPIE 2825, Wavelet Applications in Signal and Image Processing IV, (23 October 1996); https://doi.org/10.1117/12.255307
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Cited by 7 scholarly publications.
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KEYWORDS
Electroencephalography

Wavelets

Neural networks

Wavelet transforms

Epilepsy

Signal processing

Visualization

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