Abstract

Motor imagery (MI) based brain-computer interfaces (BCI) extract commands in real-time and can be used to control a cursor, a robot or functional electrical stimulation (FES) devices. The control of FES devices is especially interesting for stroke rehabilitation, when a patient can use motor imagery to stimulate specific muscles in real-time. However, damage to motor areas resulting from stroke or other causes might impair control of a motor imagery BCI for rehabilitation. The current work presents a comparative evaluation of the MI-based BCI control accuracy between stroke patients and healthy subjects. Five patients who had a stroke that affected the motor system participated in the current study, and were trained across 10–24 sessions lasting about 1 h each with the recoveriX system. The participants' EEG data were classified while they imagined left or right hand movements, and real-time feedback was provided on a monitor. If the correct imagination was detected, the FES was also activated to move the left or right hand. The grand average mean accuracy was 87.4% for all patients and sessions. All patients were able to achieve at least one session with a maximum accuracy above 96%. Both the mean accuracy and the maximum accuracy were surprisingly high and above results seen with healthy controls in prior studies. Importantly, the study showed that stroke patients can control a MI BCI system with high accuracy relative to healthy persons. This may occur because these patients are highly motivated to participate in a study to improve their motor functions. Participants often reported early in the training of motor improvements and this caused additional motivation. However, it also reflects the efficacy of combining motor imagination, seeing continuous bar feedback, and real hand movement that also activates the tactile and proprioceptive systems. Results also suggested that motor function could improve even if classification accuracy did not, and suggest other new questions to explore in future work. Future studies will also be done with a first-person view 3D avatar to provide improved feedback and thereby increase each patients' sense of engagement.

Highlights

  • A brain-computer interface (BCI) enables a direct communication pathway between the brain and external devices

  • A second goal is to see if the Motor imagery (MI) performance of stroke patients gets better with training, and we investigate improvements in motor function resulting from training

  • The present results suggest that stroke patients can control a brain-computer interfaces (BCI) with high accuracy even with the lesioned hemisphere, despite damage to motor areas and other potential problems

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Summary

Introduction

A brain-computer interface (BCI) enables a direct communication pathway between the brain and external devices. Recent analyses and commentaries have addressed promising new goals and user groups, including motor rehabilitation for stroke patients (Prasad et al, 2010; Wolpaw and Elizabeth, 2012; Allison et al, 2013; Brunner et al, 2015). In this approach, the users perform mental imagery tasks that are wellestablished in motor rehabilitation therapy, such as imagination of left or right hand dorsiflexion. It is known that a closed feedback loop increases the users performance (Wolpaw et al, 2002)

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