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Effective Connectivity for Decoding Electroencephalographic Motor Imagery Using a Probabilistic Neural Network

Motor imagery (MI)-based brain–computer interfaces have gained much attention in the last few years. They provide the ability to control external devices, such as prosthetic arms and wheelchairs, by using brain activities. Several researchers have reported the inter-communication of multiple brain r...

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Autores principales: Awais, Muhammad Ahsan, Yusoff, Mohd Zuki, Khan, Danish M., Yahya, Norashikin, Kamel, Nidal, Ebrahim, Mansoor
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8512774/
https://www.ncbi.nlm.nih.gov/pubmed/34640888
http://dx.doi.org/10.3390/s21196570
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author Awais, Muhammad Ahsan
Yusoff, Mohd Zuki
Khan, Danish M.
Yahya, Norashikin
Kamel, Nidal
Ebrahim, Mansoor
author_facet Awais, Muhammad Ahsan
Yusoff, Mohd Zuki
Khan, Danish M.
Yahya, Norashikin
Kamel, Nidal
Ebrahim, Mansoor
author_sort Awais, Muhammad Ahsan
collection PubMed
description Motor imagery (MI)-based brain–computer interfaces have gained much attention in the last few years. They provide the ability to control external devices, such as prosthetic arms and wheelchairs, by using brain activities. Several researchers have reported the inter-communication of multiple brain regions during motor tasks, thus making it difficult to isolate one or two brain regions in which motor activities take place. Therefore, a deeper understanding of the brain’s neural patterns is important for BCI in order to provide more useful and insightful features. Thus, brain connectivity provides a promising approach to solving the stated shortcomings by considering inter-channel/region relationships during motor imagination. This study used effective connectivity in the brain in terms of the partial directed coherence (PDC) and directed transfer function (DTF) as intensively unconventional feature sets for motor imagery (MI) classification. MANOVA-based analysis was performed to identify statistically significant connectivity pairs. Furthermore, the study sought to predict MI patterns by using four classification algorithms—an SVM, KNN, decision tree, and probabilistic neural network. The study provides a comparative analysis of all of the classification methods using two-class MI data extracted from the PhysioNet EEG database. The proposed techniques based on a probabilistic neural network (PNN) as a classifier and PDC as a feature set outperformed the other classification and feature extraction techniques with a superior classification accuracy and a lower error rate. The research findings indicate that when the PDC was used as a feature set, the PNN attained the greatest overall average accuracy of 98.65%, whereas the same classifier was used to attain the greatest accuracy of 82.81% with the DTF. This study validates the activation of multiple brain regions during a motor task by achieving better classification outcomes through brain connectivity as compared to conventional features. Since the PDC outperformed the DTF as a feature set with its superior classification accuracy and low error rate, it has great potential for application in MI-based brain–computer interfaces.
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spelling pubmed-85127742021-10-14 Effective Connectivity for Decoding Electroencephalographic Motor Imagery Using a Probabilistic Neural Network Awais, Muhammad Ahsan Yusoff, Mohd Zuki Khan, Danish M. Yahya, Norashikin Kamel, Nidal Ebrahim, Mansoor Sensors (Basel) Article Motor imagery (MI)-based brain–computer interfaces have gained much attention in the last few years. They provide the ability to control external devices, such as prosthetic arms and wheelchairs, by using brain activities. Several researchers have reported the inter-communication of multiple brain regions during motor tasks, thus making it difficult to isolate one or two brain regions in which motor activities take place. Therefore, a deeper understanding of the brain’s neural patterns is important for BCI in order to provide more useful and insightful features. Thus, brain connectivity provides a promising approach to solving the stated shortcomings by considering inter-channel/region relationships during motor imagination. This study used effective connectivity in the brain in terms of the partial directed coherence (PDC) and directed transfer function (DTF) as intensively unconventional feature sets for motor imagery (MI) classification. MANOVA-based analysis was performed to identify statistically significant connectivity pairs. Furthermore, the study sought to predict MI patterns by using four classification algorithms—an SVM, KNN, decision tree, and probabilistic neural network. The study provides a comparative analysis of all of the classification methods using two-class MI data extracted from the PhysioNet EEG database. The proposed techniques based on a probabilistic neural network (PNN) as a classifier and PDC as a feature set outperformed the other classification and feature extraction techniques with a superior classification accuracy and a lower error rate. The research findings indicate that when the PDC was used as a feature set, the PNN attained the greatest overall average accuracy of 98.65%, whereas the same classifier was used to attain the greatest accuracy of 82.81% with the DTF. This study validates the activation of multiple brain regions during a motor task by achieving better classification outcomes through brain connectivity as compared to conventional features. Since the PDC outperformed the DTF as a feature set with its superior classification accuracy and low error rate, it has great potential for application in MI-based brain–computer interfaces. MDPI 2021-09-30 /pmc/articles/PMC8512774/ /pubmed/34640888 http://dx.doi.org/10.3390/s21196570 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Awais, Muhammad Ahsan
Yusoff, Mohd Zuki
Khan, Danish M.
Yahya, Norashikin
Kamel, Nidal
Ebrahim, Mansoor
Effective Connectivity for Decoding Electroencephalographic Motor Imagery Using a Probabilistic Neural Network
title Effective Connectivity for Decoding Electroencephalographic Motor Imagery Using a Probabilistic Neural Network
title_full Effective Connectivity for Decoding Electroencephalographic Motor Imagery Using a Probabilistic Neural Network
title_fullStr Effective Connectivity for Decoding Electroencephalographic Motor Imagery Using a Probabilistic Neural Network
title_full_unstemmed Effective Connectivity for Decoding Electroencephalographic Motor Imagery Using a Probabilistic Neural Network
title_short Effective Connectivity for Decoding Electroencephalographic Motor Imagery Using a Probabilistic Neural Network
title_sort effective connectivity for decoding electroencephalographic motor imagery using a probabilistic neural network
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8512774/
https://www.ncbi.nlm.nih.gov/pubmed/34640888
http://dx.doi.org/10.3390/s21196570
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