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research article

Learning to control a BMI-driven wheelchair for people with severe tetraplegia

Tonin, Luca
•
Perdikis, Serafeim
•
Kuzu, Taylan Deniz
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December 22, 2022
Iscience

Mind-controlled wheelchairs are an intriguing assistive mobility solution applicable in complete paralysis. Despite progress in brain-machine interface (BMI) technology, its translation remains elusive. The primary objective of this study is to probe the hypothesis that BMI skill acquisition by end-users is fundamental to control a non-invasive brain-actuated intelligent wheelchair in real-world settings. We demonstrate that three tetraplegic spinal-cord injury users could be trained to operate a non-invasive, self-paced thought-controlled wheelchair and execute complex navigation tasks. However, only the two users exhibiting increasing decoding performance and feature discriminancy, significant neuro-plasticity changes and improved BMI command latency, achieved high navigation performance. In addition, we show that dexterous, continuous control of robots is possible through low-degree of freedom, discrete and uncertain control channels like a motor imagery BMI, by blending human and artificial intelligence through shared-control methodologies. We posit that subject learning and shared-control are the key components paving the way for translational non-invasive BMI.

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Type
research article
DOI
10.1016/j.isci.2022.105418
Web of Science ID

WOS:001084010800001

Author(s)
Tonin, Luca
Perdikis, Serafeim
Kuzu, Taylan Deniz
Pardo, Jorge
Orset, Bastien  
Lee, Kyuhwa
Aach, Mirko
Schildhauer, Thomas Armin
Martinez-Olivera, Ramon
Millan, Jose del R.
Date Issued

2022-12-22

Publisher

Cell Press

Published in
Iscience
Volume

25

Issue

12

Article Number

105418

Subjects

Brain-Computer Interface

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Motor-Imagery

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Machine Interfaces

•

Bci

•

Adaptation

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Stimulation

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Movement

•

Patient

•

Cortex

•

Signal

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LNCO  
FunderGrant Number

MIUR (Italian Minister for Education)

Law 232/2016

Department of Information Engineering of the University of Padova

TONI_BIRD2020_01

Available on Infoscience
February 16, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/203868
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