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Neurofeedback Training of Alpha Relative Power Improves the Performance of Motor Imagery Brain-Computer Interface

Qing Zhou, Ruidong Cheng, Lin Yao, Xiangming Ye, Kedi Xu

2022Frontiers in Human Neuroscience21 citationsDOIOpen Access PDF

Abstract

Significant variation in performance in motor imagery (MI) tasks impedes their wide adoption for brain-computer interface (BCI) applications. Previous researchers have found that resting-state alpha-band power is positively correlated with MI-BCI performance. In this study, we designed a neurofeedback training (NFT) protocol based on the up-regulation of the alpha band relative power (RP) to investigate its effect on MI-BCI performance. The principal finding of this study is that alpha NFT could successfully help subjects increase alpha-rhythm power and improve their MI-BCI performance. An individual difference was also found in this study in that subjects who increased alpha power more had a better performance improvement. Additionally, the functional connectivity (FC) of the frontal-parietal (FP) network was found to be enhanced after alpha NFT. However, the enhancement failed to reach a significant level after multiple comparisons correction. These findings contribute to a better understanding of the neurophysiological mechanism of cognitive control through alpha regulation.

Topics & Concepts

NeurofeedbackBrain–computer interfaceMotor imagerySensorimotor rhythmAlpha (finance)ElectroencephalographyBeta RhythmPsychologyInterface (matter)Resting state fMRIBrain activity and meditationComputer sciencePhysical medicine and rehabilitationNeuroscienceMedicineDevelopmental psychologyConstruct validityPsychometricsParallel computingMaximum bubble pressure methodBubbleEEG and Brain-Computer InterfacesNeural dynamics and brain functionAdvanced Memory and Neural Computing
Neurofeedback Training of Alpha Relative Power Improves the Performance of Motor Imagery Brain-Computer Interface | Litcius