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Single channel approach for filtering electroencephalographic signals strongly contaminated with facial electromyography

Eliminating facial electromyographic (EMG) signal from the electroencephalogram (EEG) is crucial for the accuracy of applications such as brain computer interfaces (BCIs) and brain functionality measurement. Facial electromyography typically corrupts the electroencephalogram. Although it is possible...

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Autores principales: Queiroz, Carlos Magno Medeiros, da Silva, Gustavo Moreira, Walter, Steffen, Peres, Luciano Brinck, Luiz, Luiza Maire David, Costa, Samila Carolina, de Faria, Kelly Christina, Pereira, Adriano Alves, Vieira, Marcus Fraga, Cabral, Ariana Moura, Andrade, Adriano de Oliveira
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9361713/
https://www.ncbi.nlm.nih.gov/pubmed/35959164
http://dx.doi.org/10.3389/fncom.2022.822987
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author Queiroz, Carlos Magno Medeiros
da Silva, Gustavo Moreira
Walter, Steffen
Peres, Luciano Brinck
Luiz, Luiza Maire David
Costa, Samila Carolina
de Faria, Kelly Christina
Pereira, Adriano Alves
Vieira, Marcus Fraga
Cabral, Ariana Moura
Andrade, Adriano de Oliveira
author_facet Queiroz, Carlos Magno Medeiros
da Silva, Gustavo Moreira
Walter, Steffen
Peres, Luciano Brinck
Luiz, Luiza Maire David
Costa, Samila Carolina
de Faria, Kelly Christina
Pereira, Adriano Alves
Vieira, Marcus Fraga
Cabral, Ariana Moura
Andrade, Adriano de Oliveira
author_sort Queiroz, Carlos Magno Medeiros
collection PubMed
description Eliminating facial electromyographic (EMG) signal from the electroencephalogram (EEG) is crucial for the accuracy of applications such as brain computer interfaces (BCIs) and brain functionality measurement. Facial electromyography typically corrupts the electroencephalogram. Although it is possible to find in the literature a number of multi-channel approaches for filtering corrupted EEG, studies employing single-channel approaches are scarce. In this context, this study proposed a single-channel method for attenuating facial EMG noise from contaminated EEG. The architecture of the method allows for the evaluation and incorporation of multiple decomposition and adaptive filtering techniques. The decomposition method was responsible for generating EEG or EMG reference signals for the adaptive filtering stage. In this study, the decomposition techniques CiSSA, EMD, EEMD, EMD-PCA, SSA, and Wavelet were evaluated. The adaptive filtering methods RLS, Wiener, LMS, and NLMS were investigated. A time and frequency domain set of features were estimated from experimental signals to evaluate the performance of the single channel method. This set of characteristics permitted the characterization of the contamination of distinct facial muscles, namely Masseter, Frontalis, Zygomatic, Orbicularis Oris, and Orbicularis Oculi. Data were collected from ten healthy subjects executing an experimental protocol that introduced the necessary variability to evaluate the filtering performance. The largest level of contamination was produced by the Masseter muscle, as determined by statistical analysis of the set of features and visualization of topological maps. Regarding the decomposition method, the SSA method allowed for the generation of more suitable reference signals, whereas the RLS and NLMS methods were more suitable when the reference signal was derived from the EEG. In addition, the LMS and RLS methods were more appropriate when the reference signal was the EMG. This study has a number of practical implications, including the use of filtering techniques to reduce EEG contamination caused by the activation of facial muscles required by distinct types of studies. All the developed code, including examples, is available to facilitate a more accurate reproduction and improvement of the results of this study.
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spelling pubmed-93617132022-08-10 Single channel approach for filtering electroencephalographic signals strongly contaminated with facial electromyography Queiroz, Carlos Magno Medeiros da Silva, Gustavo Moreira Walter, Steffen Peres, Luciano Brinck Luiz, Luiza Maire David Costa, Samila Carolina de Faria, Kelly Christina Pereira, Adriano Alves Vieira, Marcus Fraga Cabral, Ariana Moura Andrade, Adriano de Oliveira Front Comput Neurosci Neuroscience Eliminating facial electromyographic (EMG) signal from the electroencephalogram (EEG) is crucial for the accuracy of applications such as brain computer interfaces (BCIs) and brain functionality measurement. Facial electromyography typically corrupts the electroencephalogram. Although it is possible to find in the literature a number of multi-channel approaches for filtering corrupted EEG, studies employing single-channel approaches are scarce. In this context, this study proposed a single-channel method for attenuating facial EMG noise from contaminated EEG. The architecture of the method allows for the evaluation and incorporation of multiple decomposition and adaptive filtering techniques. The decomposition method was responsible for generating EEG or EMG reference signals for the adaptive filtering stage. In this study, the decomposition techniques CiSSA, EMD, EEMD, EMD-PCA, SSA, and Wavelet were evaluated. The adaptive filtering methods RLS, Wiener, LMS, and NLMS were investigated. A time and frequency domain set of features were estimated from experimental signals to evaluate the performance of the single channel method. This set of characteristics permitted the characterization of the contamination of distinct facial muscles, namely Masseter, Frontalis, Zygomatic, Orbicularis Oris, and Orbicularis Oculi. Data were collected from ten healthy subjects executing an experimental protocol that introduced the necessary variability to evaluate the filtering performance. The largest level of contamination was produced by the Masseter muscle, as determined by statistical analysis of the set of features and visualization of topological maps. Regarding the decomposition method, the SSA method allowed for the generation of more suitable reference signals, whereas the RLS and NLMS methods were more suitable when the reference signal was derived from the EEG. In addition, the LMS and RLS methods were more appropriate when the reference signal was the EMG. This study has a number of practical implications, including the use of filtering techniques to reduce EEG contamination caused by the activation of facial muscles required by distinct types of studies. All the developed code, including examples, is available to facilitate a more accurate reproduction and improvement of the results of this study. Frontiers Media S.A. 2022-07-26 /pmc/articles/PMC9361713/ /pubmed/35959164 http://dx.doi.org/10.3389/fncom.2022.822987 Text en Copyright © 2022 Queiroz, da Silva, Walter, Peres, Luiz, Costa, de Faria, Pereira, Vieira, Cabral and Andrade. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Queiroz, Carlos Magno Medeiros
da Silva, Gustavo Moreira
Walter, Steffen
Peres, Luciano Brinck
Luiz, Luiza Maire David
Costa, Samila Carolina
de Faria, Kelly Christina
Pereira, Adriano Alves
Vieira, Marcus Fraga
Cabral, Ariana Moura
Andrade, Adriano de Oliveira
Single channel approach for filtering electroencephalographic signals strongly contaminated with facial electromyography
title Single channel approach for filtering electroencephalographic signals strongly contaminated with facial electromyography
title_full Single channel approach for filtering electroencephalographic signals strongly contaminated with facial electromyography
title_fullStr Single channel approach for filtering electroencephalographic signals strongly contaminated with facial electromyography
title_full_unstemmed Single channel approach for filtering electroencephalographic signals strongly contaminated with facial electromyography
title_short Single channel approach for filtering electroencephalographic signals strongly contaminated with facial electromyography
title_sort single channel approach for filtering electroencephalographic signals strongly contaminated with facial electromyography
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9361713/
https://www.ncbi.nlm.nih.gov/pubmed/35959164
http://dx.doi.org/10.3389/fncom.2022.822987
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