Robot-Assisted Training for Upper Limb in Stroke (ROBOTAS): An Observational, Multicenter Study to Identify Determinants of Efficacy

Author:

Calabrò Rocco Salvatore,Morone GiovanniORCID,Naro Antonino,Gandolfi MarialuisaORCID,Liotti Vitalma,D’aurizio Carlo,Straudi Sofia,Focacci Antonella,Pournajaf SanazORCID,Aprile Irene,Filoni Serena,Zanetti ClaudiaORCID,Leo Maria Rosaria,Tedesco Lucia,Spina VincenzoORCID,Chisari Carmelo,Taveggia Giovanni,Mazzoleni Stefano,Smania NicolaORCID,Paolucci Stefano,Franceschini Marco,Bonaiuti Donatella

Abstract

Background: The loss of arm function is a common and disabling outcome after stroke. Robot-assisted upper limb (UL) training may improve outcomes. The aim of this study was to explore the effect of robot-assisted training using end-effector and exoskeleton robots on UL function following a stroke in real-life clinical practice. Methods: A total of 105 patients affected by a first-ever supratentorial stroke were enrolled in 18 neurorehabilitation centers and treated with electromechanically assisted arm training as an add-on to conventional therapy. Both interventions provided either an exoskeleton or an end-effector device (as per clinical practice) and consisted of 20 sessions (3/5 times per week; 6–8 weeks). Patients were assessed by validated UL scales at baseline (T0), post-treatment (T1), and at three-month follow-up (T2). The primary outcome was the Fugl-Meyer Assessment for the upper extremity (FMA-UE). Results: FMA-UE improved at T1 by 6 points on average in the end-effector group and 11 points on average in the exoskeleton group (p < 0.0001). Exoskeletons were more effective in the subacute phase, whereas the end-effectors were more effective in the chronic phase (p < 0.0001). Conclusions: robot-assisted training might help improve UL function in stroke patients as an add-on treatment in both subacute and chronic stages. Pragmatic and highmethodological studies are needed to confirm the showed effectiveness of the exoskeleton and end-effector devices.

Funder

Ministero della Salute

Publisher

MDPI AG

Subject

General Medicine

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