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AuthorAl-Sa'd, Mohammad F.
AuthorBoashash, B.
Available date2020-05-14T09:55:43Z
Publication Date2019
Publication NameDigital Signal Processing: A Review Journal
ResourceScopus
ISSN10512004
URIhttp://dx.doi.org/10.1016/j.dsp.2019.02.003
URIhttp://hdl.handle.net/10576/14821
AbstractThis paper presents a novel multi-sensor non-stationary EEG model; it is obtained by combining state of the art mono-sensor newborn EEG simulators, a multilayer newborn head model comprised of four homogeneous concentric spheres, a multi-sensor propagation scheme based on array processing and optical dispersion to calculate inter-channel attenuation and delay, and lastly, a multi-variable optimization paradigm using particle swarm optimization and Monte-Carlo simulations to validate the model for optimal conditions. Multi-sensor EEG of 7 newborns, comprised of seizure and background epochs, are analyzed using time-space, time-frequency, power maps and multi-sensor causality techniques. The outcomes of these methods are validated by medical insights and serve as a backbone for any assumptions and as performance benchmarks for the model to be evaluated against. The results obtained with the developed model show 85.7% averaged time-frequency correlation (which is the selected measure for similarity with real EEG)with 5.9% standard deviation, and the averaged error obtained is 34.6% with 8% standard deviation. The resulting performances indicate that the proposed model provides a suitable matching fit with real EEG in terms of their probability density function, inter-sensor attenuation and translation, and multi-sensor causality. They also demonstrate the model flexibility to generate new unseen samples by utilizing user-defined parameters, making it suitable for other relevant applications. - 2019
SponsorThis research was funded by Qatar Foundation grants NPRP 6-885-2-364 and NPRP 6-680-2-282 . In addition, this work includes the outcome of the first author's Master thesis written under Prof Boashash supervision [86] . The real newborn EEG data and other related materials used in this paper were provided by Prof Paul Colditz, UQCCR, as part of the grant NPRP 6-885-2-364. The authors wish to thank Dr Samir Ouelha for his technical comments and review of this paper. In addition, the authors thank Dr Abdelaziz Gdoura, Paris, France for his general feedback. Appendix A
Languageen
PublisherElsevier Inc.
SubjectEEG analysis
Multi-channel EEG
Multi-sensor propagation
Time-frequency processing
Time-space analysis
TitleDesign and implementation of a multi-sensor newborn EEG seizure and background model with inter-channel field characterization
TypeArticle
Pagination71-99
Volume Number90


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