Bi-Smoothed Functional Independent Component Analysis for EEG Artifact Removal

Motivated by mapping adverse artifactual events caused by body movements in electroencephalographic (EEG) signals, we present a functional independent component analysis based on the spectral decomposition of the kurtosis operator of a smoothed principal component expansion. A discrete roughness pen...

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Bibliographic Details
Main Authors: Marc Vidal, Mattia Rosso, Ana M. Aguilera 
Format: Article
Language:English
Published: MDPI AG 2021-05-01
Series:Mathematics
Subjects:
EEG
Online Access:https://www.mdpi.com/2227-7390/9/11/1243
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spelling doaj-282169a5b5694e9680ff1dfd40aa104c2021-06-01T01:32:50ZengMDPI AGMathematics2227-73902021-05-0191243124310.3390/math9111243Bi-Smoothed Functional Independent Component Analysis for EEG Artifact RemovalMarc Vidal0Mattia Rosso1Ana M. Aguilera 2Institute of Psychoacoustics and Electronic Music (IPEM), Ghent University, 9000 Ghent, BelgiumInstitute of Psychoacoustics and Electronic Music (IPEM), Ghent University, 9000 Ghent, BelgiumDepartment of Statistics and O.R. and IMAG, University of Granada, 18071 Granada, SpainMotivated by mapping adverse artifactual events caused by body movements in electroencephalographic (EEG) signals, we present a functional independent component analysis based on the spectral decomposition of the kurtosis operator of a smoothed principal component expansion. A discrete roughness penalty is introduced in the orthonormality constraint of the covariance eigenfunctions in order to obtain the smoothed basis for the proposed independent component model. To select the tuning parameters, a cross-validation method that incorporates shrinkage is used to enhance the performance on functional representations with a large basis dimension. This method provides an estimation strategy to determine the penalty parameter and the optimal number of components. Our independent component approach is applied to real EEG data to estimate genuine brain potentials from a contaminated signal. As a result, it is possible to control high-frequency remnants of neural origin overlapping artifactual sources to optimize their removal from the signal. An R package implementing our methods is available at CRAN.https://www.mdpi.com/2227-7390/9/11/1243functional datafunctional kurtosispenalized splinessmoothed principal componentsauditory–motor coupling taskEEG
collection DOAJ
language English
format Article
sources DOAJ
author Marc Vidal
Mattia Rosso
Ana M. Aguilera 
spellingShingle Marc Vidal
Mattia Rosso
Ana M. Aguilera 
Bi-Smoothed Functional Independent Component Analysis for EEG Artifact Removal
Mathematics
functional data
functional kurtosis
penalized splines
smoothed principal components
auditory–motor coupling task
EEG
author_facet Marc Vidal
Mattia Rosso
Ana M. Aguilera 
author_sort Marc Vidal
title Bi-Smoothed Functional Independent Component Analysis for EEG Artifact Removal
title_short Bi-Smoothed Functional Independent Component Analysis for EEG Artifact Removal
title_full Bi-Smoothed Functional Independent Component Analysis for EEG Artifact Removal
title_fullStr Bi-Smoothed Functional Independent Component Analysis for EEG Artifact Removal
title_full_unstemmed Bi-Smoothed Functional Independent Component Analysis for EEG Artifact Removal
title_sort bi-smoothed functional independent component analysis for eeg artifact removal
publisher MDPI AG
series Mathematics
issn 2227-7390
publishDate 2021-05-01
description Motivated by mapping adverse artifactual events caused by body movements in electroencephalographic (EEG) signals, we present a functional independent component analysis based on the spectral decomposition of the kurtosis operator of a smoothed principal component expansion. A discrete roughness penalty is introduced in the orthonormality constraint of the covariance eigenfunctions in order to obtain the smoothed basis for the proposed independent component model. To select the tuning parameters, a cross-validation method that incorporates shrinkage is used to enhance the performance on functional representations with a large basis dimension. This method provides an estimation strategy to determine the penalty parameter and the optimal number of components. Our independent component approach is applied to real EEG data to estimate genuine brain potentials from a contaminated signal. As a result, it is possible to control high-frequency remnants of neural origin overlapping artifactual sources to optimize their removal from the signal. An R package implementing our methods is available at CRAN.
topic functional data
functional kurtosis
penalized splines
smoothed principal components
auditory–motor coupling task
EEG
url https://www.mdpi.com/2227-7390/9/11/1243
work_keys_str_mv AT marcvidal bismoothedfunctionalindependentcomponentanalysisforeegartifactremoval
AT mattiarosso bismoothedfunctionalindependentcomponentanalysisforeegartifactremoval
AT anamaguilera bismoothedfunctionalindependentcomponentanalysisforeegartifactremoval
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