» Articles » PMID: 29148137

Brain-Computer Interfaces With Multi-Sensory Feedback for Stroke Rehabilitation: A Case Study

Overview
Journal Artif Organs
Date 2017 Nov 18
PMID 29148137
Citations 12
Authors
Affiliations
Soon will be listed here.
Abstract

Conventional therapies do not provide paralyzed patients with closed-loop sensorimotor integration for motor rehabilitation. This work presents the recoveriX system, a hardware and software platform that combines a motor imagery (MI)-based brain-computer interface (BCI), functional electrical stimulation (FES), and visual feedback technologies for a complete sensorimotor closed-loop therapy system for poststroke rehabilitation. The proposed system was tested on two chronic stroke patients in a clinical environment. The patients were instructed to imagine the movement of either the left or right hand in random order. During these two MI tasks, two types of feedback were provided: a bar extending to the left or right side of a monitor as visual feedback and passive hand opening stimulated from FES as proprioceptive feedback. Both types of feedback relied on the BCI classification result achieved using common spatial patterns and a linear discriminant analysis classifier. After 10 sessions of recoveriX training, one patient partially regained control of wrist extension in her paretic wrist and the other patient increased the range of middle finger movement by 1 cm. A controlled group study is planned with a new version of the recoveriX system, which will have several improvements.

Citing Articles

Effects of brain-computer interface based training on post-stroke upper-limb rehabilitation: a meta-analysis.

Li D, Li R, Song Y, Qin W, Sun G, Liu Y J Neuroeng Rehabil. 2025; 22(1):44.

PMID: 40033447 PMC: 11874405. DOI: 10.1186/s12984-025-01588-x.


EEG-based sensorimotor neurofeedback for motor neurorehabilitation in children and adults: A scoping review.

Cioffi E, Hutber A, Molloy R, Murden S, Yurkewich A, Kirton A Clin Neurophysiol. 2024; 167:143-166.

PMID: 39321571 PMC: 11845253. DOI: 10.1016/j.clinph.2024.08.009.


Brain activation by a VR-based motor imagery and observation task: An fMRI study.

Nunes J, Vourvopoulos A, Blanco-Mora D, Jorge C, Fernandes J, Bermudez I Badia S PLoS One. 2023; 18(9):e0291528.

PMID: 37756271 PMC: 10529559. DOI: 10.1371/journal.pone.0291528.


Scoping Review on Brain-Computer Interface-Controlled Electrical Stimulation Interventions for Upper Limb Rehabilitation in Adults: A Look at Participants, Interventions, and Technology.

Jovanovic L, Jervis Rademeyer H, Pakosh M, Musselman K, Popovic M, Marquez-Chin C Physiother Can. 2023; 75(3):276-290.

PMID: 37736411 PMC: 10510539. DOI: 10.3138/ptc-2021-0074.


BCI-activated electrical stimulation in children with perinatal stroke and hemiparesis: A pilot study.

Jadavji Z, Kirton A, Metzler M, Zewdie E Front Hum Neurosci. 2023; 17:1006242.

PMID: 37007682 PMC: 10063823. DOI: 10.3389/fnhum.2023.1006242.