Tracking epileptiform activity in the multichannel ictal EEG using spatially constrained independent component analysis
Tracking epileptiform activity in the multichannel ictal EEG using spatially constrained independent component analysis
Blind source separation (BSS) methods such as independent component analysis (ICA) are increasingly being used in biomedical signal processing for decomposition of multivariate time-series, such as the multichannel electroencephalogram (EEG), into a set of underlying sources, some of which may reflect clinically relevant neurophysiological activity such as epileptic seizures or spikes. Tracking and detecting signals of interest fundamentally requires at least some a priori knowledge or assumptions regarding the spatial and/or temporal characteristics of the target sources. While such prior information is conventionally used during post-processing, it seems equally sensible to incorporate any available information into the data decomposition process from the outset. This work presents an alternative approach to source tracking in multichannel EEG, which exploits prior knowledge of the spatial topographies of the scalp voltage distributions associated with the target sources. The predetermined target topographies are used in conjunction with spatially constrained ICA to extract target source waveforms which are uncontaminated by contributions from coactive and spatially correlated brain and artifact sources. These signals can then be further analyzed in terms of their morphological, spectral or statistical properties. As illustrated in the context of epileptiform EEG, this method is useful for tracking seizures.
blind source separation, BSS, independent component analysis, ICA, spatial constraints, source tracking
0780387406
2067-2070
Hesse, C.W.
53fee7f7-a12e-4783-a426-0d59afbf475d
James, C.J.
b3733b1f-a6a1-4c9b-b75c-6191d4142e52
2005
Hesse, C.W.
53fee7f7-a12e-4783-a426-0d59afbf475d
James, C.J.
b3733b1f-a6a1-4c9b-b75c-6191d4142e52
Hesse, C.W. and James, C.J.
(2005)
Tracking epileptiform activity in the multichannel ictal EEG using spatially constrained independent component analysis.
In Proceedings of the 2005 IEEE Engineering in Medicine and Biology 27th Annual Conference.
IEEE.
.
Record type:
Conference or Workshop Item
(Paper)
Abstract
Blind source separation (BSS) methods such as independent component analysis (ICA) are increasingly being used in biomedical signal processing for decomposition of multivariate time-series, such as the multichannel electroencephalogram (EEG), into a set of underlying sources, some of which may reflect clinically relevant neurophysiological activity such as epileptic seizures or spikes. Tracking and detecting signals of interest fundamentally requires at least some a priori knowledge or assumptions regarding the spatial and/or temporal characteristics of the target sources. While such prior information is conventionally used during post-processing, it seems equally sensible to incorporate any available information into the data decomposition process from the outset. This work presents an alternative approach to source tracking in multichannel EEG, which exploits prior knowledge of the spatial topographies of the scalp voltage distributions associated with the target sources. The predetermined target topographies are used in conjunction with spatially constrained ICA to extract target source waveforms which are uncontaminated by contributions from coactive and spatially correlated brain and artifact sources. These signals can then be further analyzed in terms of their morphological, spectral or statistical properties. As illustrated in the context of epileptiform EEG, this method is useful for tracking seizures.
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More information
Published date: 2005
Additional Information:
IEEE 01616865
Venue - Dates:
EMBC 2005: 27th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Shanghai, China, 2005-09-01 - 2005-09-04
Keywords:
blind source separation, BSS, independent component analysis, ICA, spatial constraints, source tracking
Identifiers
Local EPrints ID: 28321
URI: http://eprints.soton.ac.uk/id/eprint/28321
ISBN: 0780387406
PURE UUID: a1340a0b-b9e5-4d2f-abad-6187ce547bef
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Date deposited: 05 May 2006
Last modified: 05 Mar 2024 17:38
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Author:
C.W. Hesse
Author:
C.J. James
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