Abstract

Abstract Motivation: The success or failure of an epilepsy surgery depends greatly on the localization of epileptic focus (origin of a seizure). We address the problem of identification of a seizure origin through an analysis of ictal electroencephalogram (EEG), which is proven to be an effective standard in epileptic focus localization. Summary: With a goal of developing an automated and robust way of visual analysis of large amounts of EEG data, we propose a novel approach based on multiway models to study epilepsy seizure structure. Our contributions are 3-fold. First, we construct an Epilepsy Tensor with three modes, i.e. time samples, scales and electrodes, through wavelet analysis of multi-channel ictal EEG. Second, we demonstrate that multiway analysis techniques, in particular parallel factor analysis (PARAFAC), provide promising results in modeling the complex structure of an epilepsy seizure, localizing a seizure origin and extracting artifacts. Third, we introduce an approach for removing artifacts using multilinear subspace analysis and discuss its merits and drawbacks. Results: Ictal EEG analysis of 10 seizures from 7 patients are included in this study. Our results for 8 seizures match with clinical observations in terms of seizure origin and extracted artifacts. On the other hand, for 2 of the seizures, seizure localization is not achieved using an initial trial of PARAFAC modeling. In these cases, first, we apply an artifact removal method and subsequently apply the PARAFAC model on the epilepsy tensor from which potential artifacts have been removed. This method successfully identifies the seizure origin in both cases. Contact: acare@cs.rpi.edu

Keywords

EpilepsyElectroencephalographyIctalComputer scienceArtifact (error)Artificial intelligencePattern recognition (psychology)Focus (optics)Epileptic seizureWaveletNeurosciencePsychology

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Publication Info

Year
2007
Type
article
Volume
23
Issue
13
Pages
i10-i18
Citations
278
Access
Closed

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Evrim Acar, Canan Aykut Bingöl, Haluk O. Bingol et al. (2007). Multiway analysis of epilepsy tensors. Bioinformatics , 23 (13) , i10-i18. https://doi.org/10.1093/bioinformatics/btm210

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DOI
10.1093/bioinformatics/btm210