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Effects of robotic gait training after stroke: A meta-analysis - 29/11/20

Doi : 10.1016/j.rehab.2020.02.008 
Geoffroy Moucheboeuf a, b, Romain Griffier c, David Gasq d, e, Bertrand Glize a, b, Laurent Bouyer f, Patrick Dehail a, b, Helene Cassoudesalle a, b,
a Service de Médecine Physique et Réadaptation, Pôle de neurosciences cliniques, Centre Hospitalier Universitaire de Bordeaux, Bordeaux, France 
b HACS team-U1219 INSERM Bordeaux Population Health & University of Bordeaux, Bordeaux, France 
c Department of Public Health, Faculty of medicine, University of Bordeaux, Bordeaux, France 
d Toulouse NeuroImaging Center (ToNIC), Université de Toulouse & Inserm, Toulouse, France 
e Department of Functional Physiological Explorations, University Hospital of Toulouse, Toulouse, France 
f Department of Rehabilitation, Faculty of Medicine, Université Laval, Québec, Canada 

Corresponding author. Department of Rehabilitation Sciences, University of Bordeaux, 33000 Bordeaux, France.Department of Rehabilitation Sciences, University of BordeauxBordeaux33000France

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Abstract

Background

Robotic devices are often used in rehabilitation and might be efficient to improve walking capacity after stroke.

Objective

First to investigate the effects of robot-assisted gait training after stroke and second to explain the observed heterogeneity of results in previous meta-analyses.

Methods

All randomized controlled trials investigating exoskeletons or end-effector devices in adult patients with stroke were searched in databases (MEDLINE, EMBASE, CENTRAL, CINAHL, OPENGREY, OPENSIGLE, PEDRO, WEB OF SCIENCE, CLINICAL TRIALS, conference proceedings) from inception to November 2019, as were bibliographies of previous meta-analyses, independently by 2 reviewers. The following variables collected before and after the rehabilitation program were gait speed, gait endurance, Berg Balance Scale (BBS), Functional Ambulation Classification (FAC) and Timed Up and Go scores. We also extracted data on randomization method, blinding of outcome assessors, drop-outs, intention (or not) to treat, country, number of participants, disease duration, mean age, features of interventions, and date of outcomes assessment.

Results

We included 33 studies involving 1466 participants. On analysis by subgroups of intervention, as compared with physiotherapy alone, physiotherapy combined with body-weight support training and robot-assisted gait training conferred greater improvement in gait speed (+0.09m/s, 95% confidence interval [CI] 0.03 to 0.15; p=0.002), FAC scores (+0.51, 95% CI 0.07 to 0.95; p=0.022) and BBS scores (+4.16, 95% CI 2.60 to 5.71; p=0.000). A meta-regression analysis suggested that these results were underestimated by the attrition bias of studies.

Conclusions

Robot-assisted gait training combined with physiotherapy and body-weight support training seems an efficient intervention for gait recovery after stroke.

El texto completo de este artículo está disponible en PDF.

Keywords : Stroke, Robot-assisted gait training, Exoskeleton, End-effector, Gait, Walking, Rehabilitation


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 PROSPERO study's registration number: CRD42018092227.


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Vol 63 - N° 6

P. 518-534 - novembre 2020 Regresar al número
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