EEG Channel Selection for Stroke Patient Rehabilitation Using BAT Optimizer

Author:

Al-Betar Mohammed Azmi1ORCID,Alyasseri Zaid Abdi Alkareem23ORCID,Al-Qazzaz Noor Kamal4,Makhadmeh Sharif Naser15,Ali Nabeel Salih2ORCID,Guger Christoph6ORCID

Affiliation:

1. Artificial Intelligence Research Center (AIRC), College of Engineering and Information Technology, Ajman University, Ajman P.O. Box 346, United Arab Emirates

2. Information Technology Research and Development Center (ITRDC), University of Kufa, Najaf 54001, Iraq

3. College of Engineering, University of Warith Al-Anbiyaa, Karbala 56001, Iraq

4. Biomedical Engineering Department, AL-Khwarizmi College of Engineering, University of Baghdad, Baghdad 47146, Iraq

5. Data Science and Artificial Intelligence Department, Faculty of Information Technology, University of Petra, Amman 1196, Jordan

6. G.Tec Medical Engineering GmbH, 4521 Schiedlberg, Austria

Abstract

Stroke is a major cause of mortality worldwide, disrupts cerebral blood flow, leading to severe brain damage. Hemiplegia, a common consequence, results in motor task loss on one side of the body. Many stroke survivors face long-term motor impairments and require great rehabilitation. Electroencephalograms (EEGs) provide a non-invasive method to monitor brain activity and have been used in brain–computer interfaces (BCIs) to help in rehabilitation. Motor imagery (MI) tasks, detected through EEG, are pivotal for developing BCIs that assist patients in regaining motor purpose. However, interpreting EEG signals for MI tasks remains challenging due to their complexity and low signal-to-noise ratio. The main aim of this study is to focus on optimizing channel selection in EEG-based BCIs specifically for stroke rehabilitation. Determining the most informative EEG channels is crucial for capturing the neural signals related to motor impairments in stroke patients. In this paper, a binary bat algorithm (BA)-based optimization method is proposed to select the most relevant channels tailored to the unique neurophysiological changes in stroke patients. This approach is able to enhance the BCI performance by improving classification accuracy and reducing data dimensionality. We use time–entropy–frequency (TEF) attributes, processed through automated independent component analysis with wavelet transform (AICA-WT) denoising, to enhance signal clarity. The selected channels and features are proved through a k-nearest neighbor (KNN) classifier using public BCI datasets, demonstrating improved classification of MI tasks and the potential for better rehabilitation outcomes.

Funder

Deanship of Research and Graduate Studies (DRG) at Ajman University, Ajman, UAE

Publisher

MDPI AG

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