Abstract

Robot-assisted training combined with neural guided strategy has been increasingly applied to stroke rehabilitation. However, the induced neuroplasticity is seldom characterized. It is still uncertain whether this kind of guidance could enhance the long-term training effect for stroke motor recovery. This study was conducted to explore the clinical improvement and the neurological changes after 20-session guided or non-guided robot hand training using two measures: changes in brain discriminant ability between motor-imagery and resting states revealed from electroencephalography (EEG) signals and changes in brain network variability revealed from resting-state functional magnetic resonance imaging (fMRI) data in 24 chronic stroke subjects. The subjects were randomly assigned to receive either combined action observation (AO) with EEG-guided robot-hand training (RobotEEG_AO, n = 13) or robot-hand training without AO and EEG guidance (Robotnon−EEG_Text, n = 11). The robot hand in RobotEEG_AO group was activated only when significant mu suppression (8–12 Hz) was detected from subjects' EEG signals in ipsilesional hemisphere, while the robot hand in Robotnon−EEG_Text group was randomly activated regardless of their EEG signals. Paretic upper-limb motor functions were evaluated at three time-points: before, immediately after and 6 months after the interventions. Only RobotEEG_AO group showed a long-term significant improvement in their upper-limb motor functions while no significant and long-lasting training effect on the paretic motor functions was shown in Robotnon−EEG_Text group. Significant neuroplasticity changes were only observed in RobotEEG_AO group as well. The brain discriminant ability based on the ipsilesional EEG signals significantly improved after intervention. For brain network variability, the whole brain was first divided into six functional subnetworks, and significant increase in the temporal variability was found in four out of the six subnetworks, including sensory-motor areas, attention network, auditory network, and default mode network after intervention. Our results revealed the differences in the long-term training effect and the neuroplasticity changes following the two interventional strategies: with and without neural guidance. The findings might imply that sustainable motor function improvement could be achieved through proper neural guidance, which might provide insights into strategies for effective stroke rehabilitation. Furthermore, neuroplasticity could be promoted more profoundly by the intervention with proper neurofeedback, and might be shaped in relation to better motor skill acquisition.

Highlights

  • Stroke-induced disabilities often imperil the independence of stroke survivors and increase burden of care on their caregivers

  • Motor functions of paretic upper limb of stroke subjects were assessed at three time-points by trained clinical assessors who were blinded to the experiment

  • The changes in brain discriminant ability between the motor imagery state and the resting state revealed from EEG signals, and the changes in brain network variability revealed from resting-state functional magnetic resonance imaging (fMRI) data were explored as the measures of neuroplasticity changes in the stroke subjects following the two different training strategies

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Summary

Introduction

Stroke-induced disabilities often imperil the independence of stroke survivors and increase burden of care on their caregivers. A number of interventions, such as robot-hand training combined with neurofeedback system, have been adopted to facilitate neuroplastic changes and enhance recovery potential. This kind of approach usually asks subjects to perform motor imagery, detects their movement intentions from real-time electroencephalography (EEG) signals, and a robotic device is triggered when desirable EEG features are detected. Such neurofeedback system has been suggested to possess the capability of inducing neural plasticity [8]. The training effects on paretic upper-limb motor function were evaluated by Fugl-Meyer Assessment for upperextremity (FMA-UE) which was repeatedly assessed before, immediately after and 6 months after the intervention, and were compared to a robot-hand training without AO and the input of the subjects’ EEG signals

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