Exploring EEG-based motor imagery decoding: a dual approach using spatial features and spectro-spatial Deep Learning model IFNet.

IFNet brain-machine interface (BMI) common spatial patterns filter bank (CSPFB) convolutional neural network (CNN) deep learning (DL) electroencephalography (EEG) linear discriminant analysis (LDA) motor imagery (MI)

Journal

Frontiers in neuroinformatics
ISSN: 1662-5196
Titre abrégé: Front Neuroinform
Pays: Switzerland
ID NLM: 101477957

Informations de publication

Date de publication:
2024
Historique:
received: 27 11 2023
accepted: 05 02 2024
medline: 15 3 2024
pubmed: 15 3 2024
entrez: 15 3 2024
Statut: epublish

Résumé

In recent years, the decoding of motor imagery (MI) from electroencephalography (EEG) signals has become a focus of research for brain-machine interfaces (BMIs) and neurorehabilitation. However, EEG signals present challenges due to their non-stationarity and the substantial presence of noise commonly found in recordings, making it difficult to design highly effective decoding algorithms. These algorithms are vital for controlling devices in neurorehabilitation tasks, as they activate the patient's motor cortex and contribute to their recovery. This study proposes a novel approach for decoding MI during pedalling tasks using EEG signals. A widespread approach is based on feature extraction using Common Spatial Patterns (CSP) followed by a linear discriminant analysis (LDA) as a classifier. The first approach covered in this work aims to investigate the efficacy of a task-discriminative feature extraction method based on CSP filter and LDA classifier. Additionally, the second alternative hypothesis explores the potential of a spectro-spatial Convolutional Neural Network (CNN) to further enhance the performance of the first approach. The proposed CNN architecture combines a preprocessing pipeline based on filter banks in the frequency domain with a convolutional neural network for spectro-temporal and spectro-spatial feature extraction. To evaluate the approaches and their advantages and disadvantages, EEG data has been recorded from several able-bodied users while pedalling in a cycle ergometer in order to train motor imagery decoding models. The results show levels of accuracy up to 80% in some cases. The CNN approach shows greater accuracy despite higher instability.

Identifiants

pubmed: 38486923
doi: 10.3389/fninf.2024.1345425
pmc: PMC10937463
doi:

Types de publication

Journal Article

Langues

eng

Pagination

1345425

Informations de copyright

Copyright © 2024 Juan, Martínez, Iáñez, Ortiz, Tornero and Azorín.

Déclaration de conflit d'intérêts

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Auteurs

Javier V Juan (JV)

Brain-Machine Interface Systems Lab, Universidad Miguel Hernández de Elche, Elche, Spain.
Center for Clinical Neuroscience HLM, Hospital Los Madroños, Brunete, Spain.

Rubén Martínez (R)

Center for Clinical Neuroscience HLM, Hospital Los Madroños, Brunete, Spain.
Universidad Autónoma de Madrid, Madrid, Spain.
INNTEGRA, Hospital Los Madroños, Brunete, Spain.

Eduardo Iáñez (E)

Brain-Machine Interface Systems Lab, Universidad Miguel Hernández de Elche, Elche, Spain.
Instituto de Investigación en Ingeniería de Elche-I3E, Universidad Miguel Hernández de Elche, Elche, Spain.

Mario Ortiz (M)

Brain-Machine Interface Systems Lab, Universidad Miguel Hernández de Elche, Elche, Spain.
Instituto de Investigación en Ingeniería de Elche-I3E, Universidad Miguel Hernández de Elche, Elche, Spain.

Jesús Tornero (J)

Center for Clinical Neuroscience HLM, Hospital Los Madroños, Brunete, Spain.
INNTEGRA, Hospital Los Madroños, Brunete, Spain.

José M Azorín (JM)

Brain-Machine Interface Systems Lab, Universidad Miguel Hernández de Elche, Elche, Spain.
Instituto de Investigación en Ingeniería de Elche-I3E, Universidad Miguel Hernández de Elche, Elche, Spain.
ValGRAI: Valencian Graduated School and Research Network of Artificial Intelligence, Valencia, Spain.

Classifications MeSH