A signal regularity-based automated seizure prediction algorithm using long-term scalp EEG recordings

The purpose of this study was to evaluate a signal regularity-based automated seizure prediction algorithm for scalp EEG. Signal regularity was quantified using the Pattern Match Regularity Statistic (PMRS), a statistical measure. The primary feature of the prediction algorithm is the degree of conv...

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Bibliographic Details
Date:2011
Main Authors: Jui-Hong, Ch., Deng-Shan, Sh., Halford, J.J., Kelly, K.M., Kern, R.T., Yang, M.C.K., Jicong, Zh., Sackellares, J.Ch., Pardalos, P.M.
Format: Article
Language:English
Published: Інститут кібернетики ім. В.М. Глушкова НАН України 2011
Series:Кибернетика и системный анализ
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Online Access:https://nasplib.isofts.kiev.ua/handle/123456789/84219
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Journal Title:Digital Library of Periodicals of National Academy of Sciences of Ukraine
Cite this:A signal regularity-based automated seizure prediction algorithm using long-term scalp EEG recordings / Ch. Jui-Hong, Sh. Deng-Shan, J.J. Halford, K.M. Kelly, R.T. Kern, M.C.K. Yang, Zh. Jicong, J.Ch. Sackellares, P.M. Pardalos // Кибернетика и системный анализ. — 2011. — Т. 47, № 4. — С. 95-107. — Бібліогр.: 41 назв. — рос.

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Digital Library of Periodicals of National Academy of Sciences of Ukraine
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Summary:The purpose of this study was to evaluate a signal regularity-based automated seizure prediction algorithm for scalp EEG. Signal regularity was quantified using the Pattern Match Regularity Statistic (PMRS), a statistical measure. The primary feature of the prediction algorithm is the degree of convergence in PMRS (“PMRS entrainment”) among the electrode groups determined in the algorithm training process. The hypothesis is that the PMRS entrainment increases during the transition between interictal and ictal states, and therefore may serve as an indicator for prediction of an impending seizure.