Decoding the EEG patterns induced by sequential finger movement for brain-computer interfaces

Author:

Liu Chang,You Jia,Wang Kun,Zhang Shanshan,Huang Yining,Xu Minpeng,Ming Dong

Abstract

ObjectiveIn recent years, motor imagery-based brain–computer interfaces (MI-BCIs) have developed rapidly due to their great potential in neurological rehabilitation. However, the controllable instruction set limits its application in daily life. To extend the instruction set, we proposed a novel movement-intention encoding paradigm based on sequential finger movement.ApproachTen subjects participated in the offline experiment. During the experiment, they were required to press a key sequentially [i.e., Left→Left (LL), Right→Right (RR), Left→Right (LR), and Right→Left (RL)] using the left or right index finger at about 1 s intervals under an auditory prompt of 1 Hz. The movement-related cortical potential (MRCP) and event-related desynchronization (ERD) features were used to investigate the electroencephalography (EEG) variation induced by the sequential finger movement tasks. Twelve subjects participated in an online experiment to verify the feasibility of the proposed paradigm.Main resultsAs a result, both the MRCP and ERD features showed the specific temporal–spatial EEG patterns of different sequential finger movement tasks. For the offline experiment, the average classification accuracy of the four tasks was 71.69%, with the highest accuracy of 79.26%. For the online experiment, the average accuracies were 83.33% and 82.71% for LL-versus-RR and LR-versus-RL, respectively.SignificanceThis paper demonstrated the feasibility of the proposed sequential finger movement paradigm through offline and online experiments. This study would be helpful for optimizing the encoding method of motor-related EEG information and providing a promising approach to extending the instruction set of the movement intention-based BCIs.

Funder

Research and Development

Publisher

Frontiers Media SA

Subject

General Neuroscience

Reference61 articles.

1. Determining appropriate approaches for using data in feature selection;Aldehim;Int. J. Mach. Learn. Cybern.,2015

2. Filter Bank Common Spatial Pattern (FBCSP) Algorithm Using Online Adaptive and Semi-Supervised Learning;Ang,2011

3. Filter Bank Common Spatial Pattern Algorithm on BCI Competition IV Datasets 2a and 2b.Frontiers in neuroscience;Ang,2012

4. A Modified Approach to Ensemble of SVM for P300 based Brain Computer Interface;Bhatnagar;International Conference on Advances in Human Machine Interaction (HMI).,2016

5. Research on feature modulation and classification performance of ASMI-BCI;Bian;J Electr Meas Instrum,2022

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