Cargando…

Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain–Computer Interface Experiments

In this study, the sources of EEG activity in motor imagery brain–computer interface (BCI) control experiments were investigated. Sixteen linear decomposition methods for EEG source separation were compared according to different criteria. The criteria were mutual information reduction between the s...

Descripción completa

Detalles Bibliográficos
Autores principales: Frolov, Alexander, Bobrov, Pavel, Biryukova, Elena, Isaev, Mikhail, Kerechanin, Yaroslav, Bobrov, Dmitry, Lekin, Alexander
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7805631/
https://www.ncbi.nlm.nih.gov/pubmed/33501255
http://dx.doi.org/10.3389/frobt.2020.00088
_version_ 1783636343829561344
author Frolov, Alexander
Bobrov, Pavel
Biryukova, Elena
Isaev, Mikhail
Kerechanin, Yaroslav
Bobrov, Dmitry
Lekin, Alexander
author_facet Frolov, Alexander
Bobrov, Pavel
Biryukova, Elena
Isaev, Mikhail
Kerechanin, Yaroslav
Bobrov, Dmitry
Lekin, Alexander
author_sort Frolov, Alexander
collection PubMed
description In this study, the sources of EEG activity in motor imagery brain–computer interface (BCI) control experiments were investigated. Sixteen linear decomposition methods for EEG source separation were compared according to different criteria. The criteria were mutual information reduction between the source activities and physiological plausibility. The latter was tested by estimating the dipolarity of the source topographic maps, i.e., the accuracy of approximating the map by potential distribution from a single current dipole, as well as by the specificity of the source activity for different motor imagery tasks. The decomposition methods were also compared according to the number of shared components found. The results indicate that most of the dipolar components are found by the Independent Component Analysis Methods AMICA and PWCICA, which also provided the highest information reduction. These two methods also found the most task-specific EEG patterns of the blind source separation algorithms used. They are outperformed only by non-blind Common Spatial Pattern methods in terms of pattern specificity. The components found by all of the methods were clustered using the Attractor Neural Network with Increasing Activity. The results of the cluster analysis revealed the most frequent patterns of electrical activity occurring in the experiments. The patterns reflect blinking, eye movements, sensorimotor rhythm suppression during the motor imagery, and activations in the precuneus, supplementary motor area, and premotor areas of both hemispheres. Overall, multi-method decomposition with subsequent clustering and task-specificity estimation is a viable and informative procedure for processing the recordings of electrophysiological experiments.
format Online
Article
Text
id pubmed-7805631
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-78056312021-01-25 Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain–Computer Interface Experiments Frolov, Alexander Bobrov, Pavel Biryukova, Elena Isaev, Mikhail Kerechanin, Yaroslav Bobrov, Dmitry Lekin, Alexander Front Robot AI Robotics and AI In this study, the sources of EEG activity in motor imagery brain–computer interface (BCI) control experiments were investigated. Sixteen linear decomposition methods for EEG source separation were compared according to different criteria. The criteria were mutual information reduction between the source activities and physiological plausibility. The latter was tested by estimating the dipolarity of the source topographic maps, i.e., the accuracy of approximating the map by potential distribution from a single current dipole, as well as by the specificity of the source activity for different motor imagery tasks. The decomposition methods were also compared according to the number of shared components found. The results indicate that most of the dipolar components are found by the Independent Component Analysis Methods AMICA and PWCICA, which also provided the highest information reduction. These two methods also found the most task-specific EEG patterns of the blind source separation algorithms used. They are outperformed only by non-blind Common Spatial Pattern methods in terms of pattern specificity. The components found by all of the methods were clustered using the Attractor Neural Network with Increasing Activity. The results of the cluster analysis revealed the most frequent patterns of electrical activity occurring in the experiments. The patterns reflect blinking, eye movements, sensorimotor rhythm suppression during the motor imagery, and activations in the precuneus, supplementary motor area, and premotor areas of both hemispheres. Overall, multi-method decomposition with subsequent clustering and task-specificity estimation is a viable and informative procedure for processing the recordings of electrophysiological experiments. Frontiers Media S.A. 2020-07-30 /pmc/articles/PMC7805631/ /pubmed/33501255 http://dx.doi.org/10.3389/frobt.2020.00088 Text en Copyright © 2020 Frolov, Bobrov, Biryukova, Isaev, Kerechanin, Bobrov and Lekin. http://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 Robotics and AI
Frolov, Alexander
Bobrov, Pavel
Biryukova, Elena
Isaev, Mikhail
Kerechanin, Yaroslav
Bobrov, Dmitry
Lekin, Alexander
Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain–Computer Interface Experiments
title Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain–Computer Interface Experiments
title_full Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain–Computer Interface Experiments
title_fullStr Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain–Computer Interface Experiments
title_full_unstemmed Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain–Computer Interface Experiments
title_short Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain–Computer Interface Experiments
title_sort using multiple decomposition methods and cluster analysis to find and categorize typical patterns of eeg activity in motor imagery brain–computer interface experiments
topic Robotics and AI
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7805631/
https://www.ncbi.nlm.nih.gov/pubmed/33501255
http://dx.doi.org/10.3389/frobt.2020.00088
work_keys_str_mv AT frolovalexander usingmultipledecompositionmethodsandclusteranalysistofindandcategorizetypicalpatternsofeegactivityinmotorimagerybraincomputerinterfaceexperiments
AT bobrovpavel usingmultipledecompositionmethodsandclusteranalysistofindandcategorizetypicalpatternsofeegactivityinmotorimagerybraincomputerinterfaceexperiments
AT biryukovaelena usingmultipledecompositionmethodsandclusteranalysistofindandcategorizetypicalpatternsofeegactivityinmotorimagerybraincomputerinterfaceexperiments
AT isaevmikhail usingmultipledecompositionmethodsandclusteranalysistofindandcategorizetypicalpatternsofeegactivityinmotorimagerybraincomputerinterfaceexperiments
AT kerechaninyaroslav usingmultipledecompositionmethodsandclusteranalysistofindandcategorizetypicalpatternsofeegactivityinmotorimagerybraincomputerinterfaceexperiments
AT bobrovdmitry usingmultipledecompositionmethodsandclusteranalysistofindandcategorizetypicalpatternsofeegactivityinmotorimagerybraincomputerinterfaceexperiments
AT lekinalexander usingmultipledecompositionmethodsandclusteranalysistofindandcategorizetypicalpatternsofeegactivityinmotorimagerybraincomputerinterfaceexperiments