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Robot Assisted Training for the Upper Limb after Stroke (RATULS): study protocol for a randomised controlled trial

Overview of attention for article published in Trials, July 2017
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Title
Robot Assisted Training for the Upper Limb after Stroke (RATULS): study protocol for a randomised controlled trial
Published in
Trials, July 2017
DOI 10.1186/s13063-017-2083-4
Pubmed ID
Authors

Helen Rodgers, Lisa Shaw, Helen Bosomworth, Lydia Aird, Natasha Alvarado, Sreeman Andole, David L. Cohen, Jesse Dawson, Janet Eyre, Tracy Finch, Gary A. Ford, Jennifer Hislop, Steven Hogg, Denise Howel, Niall Hughes, Hermano Igo Krebs, Christopher Price, Lynn Rochester, Elaine Stamp, Laura Ternent, Duncan Turner, Luke Vale, Elizabeth Warburton, Frederike van Wijck, Scott Wilkes

Abstract

Loss of arm function is a common and distressing consequence of stroke. We describe the protocol for a pragmatic, multicentre randomised controlled trial to determine whether robot-assisted training improves upper limb function following stroke. Study design: a pragmatic, three-arm, multicentre randomised controlled trial, economic analysis and process evaluation. NHS stroke services. adults with acute or chronic first-ever stroke (1 week to 5 years post stroke) causing moderate to severe upper limb functional limitation. Randomisation groups: 1. Robot-assisted training using the InMotion robotic gym system for 45 min, three times/week for 12 weeks 2. Enhanced upper limb therapy for 45 min, three times/week for 12 weeks 3. Usual NHS care in accordance with local clinical practice Randomisation: individual participant randomisation stratified by centre, time since stroke, and severity of upper limb impairment. upper limb function measured by the Action Research Arm Test (ARAT) at 3 months post randomisation. upper limb impairment (Fugl-Meyer Test), activities of daily living (Barthel ADL Index), quality of life (Stroke Impact Scale, EQ-5D-5L), resource use, cost per quality-adjusted life year and adverse events, at 3 and 6 months. Blinding: outcomes are undertaken by blinded assessors. Economic analysis: micro-costing and economic evaluation of interventions compared to usual NHS care. A within-trial analysis, with an economic model will be used to extrapolate longer-term costs and outcomes. Process evaluation: semi-structured interviews with participants and professionals to seek their views and experiences of the rehabilitation that they have received or provided, and factors affecting the implementation of the trial. allowing for 10% attrition, 720 participants provide 80% power to detect a 15% difference in successful outcome between each of the treatment pairs. Successful outcome definition: baseline ARAT 0-7 must improve by 3 or more points; baseline ARAT 8-13 improve by 4 or more points; baseline ARAT 14-19 improve by 5 or more points; baseline ARAT 20-39 improve by 6 or more points. The results from this trial will determine whether robot-assisted training improves upper limb function post stroke. ISRCTN, identifier: ISRCTN69371850 . Registered 4 October 2013.

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Geographical breakdown

Country Count As %
Unknown 303 100%

Demographic breakdown

Readers by professional status Count As %
Student > Bachelor 41 14%
Student > Master 34 11%
Student > Ph. D. Student 29 10%
Researcher 23 8%
Student > Doctoral Student 13 4%
Other 45 15%
Unknown 118 39%
Readers by discipline Count As %
Nursing and Health Professions 53 17%
Medicine and Dentistry 31 10%
Engineering 25 8%
Neuroscience 16 5%
Business, Management and Accounting 7 2%
Other 48 16%
Unknown 123 41%