Background: An artificial intelligence (AI)-integrated electromyography (EMG)-driven robot hand was devised for upper extremity (UE) rehabilitation. This robot detects patients' intentions to perform finger extension and flexion based on the EMG activities of 3 forearm muscles.
Objective: This study aimed to assess the effect of this robot in patients with chronic stroke.
Methods: This was a single-blinded, randomized, controlled trial with a 4-week follow-up period. Twenty patients were assigned to the active (n = 11) and control (n = 9) groups. Patients in the active group received 40 minutes of active finger training with this robot twice a week for 4 weeks. Patients in the control group received passive finger training with the same robot. The Fugl-Meyer assessment of UE motor function (FMA), motor activity log-14 amount of use score (MAL-14 AOU), modified Ashworth scale (MAS), reflex, and reciprocal inhibition were assessed before, post, and post-4 weeks (post-4w) of intervention.
Results: FMA was significantly improved at both post ( = .011) and post-4w ( = .021) in the active group. The control group did not show significant improvement in FMA at the post. MAL-14 AOU was improved at the post in the active group ( = .03). In the active group, there were significant improvements in wrist MAS at post ( = .024) and post-4w ( = .026).
Conclusions: The AI-integrated EMG-driven robot improved UE motor function and spasticity, which persisted for 4 weeks. This robot hand might be useful for UE rehabilitation of patients with stroke. The effect of robotic rehabilitation using XMM-HR2 for the paretic upper extremity among hemiparetic patients with stroke. https://jrct.niph.go.jp/ jRCTs032200045.
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http://dx.doi.org/10.1177/15459683231166939 | DOI Listing |
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