Beta bursts question the ruling power for brain–computer interfaces

Author:

Papadopoulos SotiriosORCID,Szul Maciej J,Congedo Marco,Bonaiuto James J,Mattout Jérémie

Abstract

Abstract Objective: Current efforts to build reliable brain–computer interfaces (BCI) span multiple axes from hardware, to software, to more sophisticated experimental protocols, and personalized approaches. However, despite these abundant efforts, there is still room for significant improvement. We argue that a rather overlooked direction lies in linking BCI protocols with recent advances in fundamental neuroscience. Approach: In light of these advances, and particularly the characterization of the burst-like nature of beta frequency band activity and the diversity of beta bursts, we revisit the role of beta activity in ‘left vs. right hand’ motor imagery (MI) tasks. Current decoding approaches for such tasks take advantage of the fact that MI generates time-locked changes in induced power in the sensorimotor cortex and rely on band-passed power changes in single or multiple channels. Although little is known about the dynamics of beta burst activity during MI, we hypothesized that beta bursts should be modulated in a way analogous to their activity during performance of real upper limb movements. Main results and Significance: We show that classification features based on patterns of beta burst modulations yield decoding results that are equivalent to or better than typically used beta power across multiple open electroencephalography datasets, thus providing insights into the specificity of these bio-markers.

Funder

Agence Nationale de la Recherche

H2020 European Research Council

HiFi project

Publisher

IOP Publishing

Subject

Cellular and Molecular Neuroscience,Biomedical Engineering

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