Cargando…

A Multifrequency Brain Network-Based Deep Learning Framework for Motor Imagery Decoding

Motor imagery (MI) is an important part of brain-computer interface (BCI) research, which could decode the subject's intention and help remodel the neural system of stroke patients. Therefore, accurate decoding of electroencephalography- (EEG-) based motion imagination has received a lot of att...

Descripción completa

Detalles Bibliográficos
Autores principales: Xue, Juntao, Ren, Feiyue, Sun, Xinlin, Yin, Miaomiao, Wu, Jialing, Ma, Chao, Gao, Zhongke
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7787825/
https://www.ncbi.nlm.nih.gov/pubmed/33505456
http://dx.doi.org/10.1155/2020/8863223
_version_ 1783632905416736768
author Xue, Juntao
Ren, Feiyue
Sun, Xinlin
Yin, Miaomiao
Wu, Jialing
Ma, Chao
Gao, Zhongke
author_facet Xue, Juntao
Ren, Feiyue
Sun, Xinlin
Yin, Miaomiao
Wu, Jialing
Ma, Chao
Gao, Zhongke
author_sort Xue, Juntao
collection PubMed
description Motor imagery (MI) is an important part of brain-computer interface (BCI) research, which could decode the subject's intention and help remodel the neural system of stroke patients. Therefore, accurate decoding of electroencephalography- (EEG-) based motion imagination has received a lot of attention, especially in the research of rehabilitation training. We propose a novel multifrequency brain network-based deep learning framework for motor imagery decoding. Firstly, a multifrequency brain network is constructed from the multichannel MI-related EEG signals, and each layer corresponds to a specific brain frequency band. The structure of the multifrequency brain network matches the activity profile of the brain properly, which combines the information of channel and multifrequency. The filter bank common spatial pattern (FBCSP) algorithm filters the MI-based EEG signals in the spatial domain to extract features. Further, a multilayer convolutional network model is designed to distinguish different MI tasks accurately, which allows extracting and exploiting the topology in the multifrequency brain network. We use the public BCI competition IV dataset 2a and the public BCI competition III dataset IIIa to evaluate our framework and get state-of-the-art results in the first dataset, i.e., the average accuracy is 83.83% and the value of kappa is 0.784 for the BCI competition IV dataset 2a, and the accuracy is 89.45% and the value of kappa is 0.859 for the BCI competition III dataset IIIa. All these results demonstrate that our framework can classify different MI tasks from multichannel EEG signals effectively and show great potential in the study of remodelling the neural system of stroke patients.
format Online
Article
Text
id pubmed-7787825
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher Hindawi
record_format MEDLINE/PubMed
spelling pubmed-77878252021-01-26 A Multifrequency Brain Network-Based Deep Learning Framework for Motor Imagery Decoding Xue, Juntao Ren, Feiyue Sun, Xinlin Yin, Miaomiao Wu, Jialing Ma, Chao Gao, Zhongke Neural Plast Research Article Motor imagery (MI) is an important part of brain-computer interface (BCI) research, which could decode the subject's intention and help remodel the neural system of stroke patients. Therefore, accurate decoding of electroencephalography- (EEG-) based motion imagination has received a lot of attention, especially in the research of rehabilitation training. We propose a novel multifrequency brain network-based deep learning framework for motor imagery decoding. Firstly, a multifrequency brain network is constructed from the multichannel MI-related EEG signals, and each layer corresponds to a specific brain frequency band. The structure of the multifrequency brain network matches the activity profile of the brain properly, which combines the information of channel and multifrequency. The filter bank common spatial pattern (FBCSP) algorithm filters the MI-based EEG signals in the spatial domain to extract features. Further, a multilayer convolutional network model is designed to distinguish different MI tasks accurately, which allows extracting and exploiting the topology in the multifrequency brain network. We use the public BCI competition IV dataset 2a and the public BCI competition III dataset IIIa to evaluate our framework and get state-of-the-art results in the first dataset, i.e., the average accuracy is 83.83% and the value of kappa is 0.784 for the BCI competition IV dataset 2a, and the accuracy is 89.45% and the value of kappa is 0.859 for the BCI competition III dataset IIIa. All these results demonstrate that our framework can classify different MI tasks from multichannel EEG signals effectively and show great potential in the study of remodelling the neural system of stroke patients. Hindawi 2020-12-07 /pmc/articles/PMC7787825/ /pubmed/33505456 http://dx.doi.org/10.1155/2020/8863223 Text en Copyright © 2020 Juntao Xue et al. https://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Xue, Juntao
Ren, Feiyue
Sun, Xinlin
Yin, Miaomiao
Wu, Jialing
Ma, Chao
Gao, Zhongke
A Multifrequency Brain Network-Based Deep Learning Framework for Motor Imagery Decoding
title A Multifrequency Brain Network-Based Deep Learning Framework for Motor Imagery Decoding
title_full A Multifrequency Brain Network-Based Deep Learning Framework for Motor Imagery Decoding
title_fullStr A Multifrequency Brain Network-Based Deep Learning Framework for Motor Imagery Decoding
title_full_unstemmed A Multifrequency Brain Network-Based Deep Learning Framework for Motor Imagery Decoding
title_short A Multifrequency Brain Network-Based Deep Learning Framework for Motor Imagery Decoding
title_sort multifrequency brain network-based deep learning framework for motor imagery decoding
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7787825/
https://www.ncbi.nlm.nih.gov/pubmed/33505456
http://dx.doi.org/10.1155/2020/8863223
work_keys_str_mv AT xuejuntao amultifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT renfeiyue amultifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT sunxinlin amultifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT yinmiaomiao amultifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT wujialing amultifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT machao amultifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT gaozhongke amultifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT xuejuntao multifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT renfeiyue multifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT sunxinlin multifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT yinmiaomiao multifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT wujialing multifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT machao multifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding
AT gaozhongke multifrequencybrainnetworkbaseddeeplearningframeworkformotorimagerydecoding