Myoelectric pattern recognition with virtual reality and serious gaming improves upper limb function in chronic stroke: a single case experimental design study
Journal article, 2025
Background: Myoelectric pattern recognition (MPR) combines multiple surface electromyography channels with a machine learning algorithm to decode motor intention with an aim to enhance upper limb function after stroke. This study aims to determine the feasibility and preliminary effectiveness of a novel intervention combining MPR, virtual reality (VR), and serious gaming to improve upper limb function in people with chronic stroke.
Methods: In this single case experimental A-B-A design study, six individuals with chronic stroke and moderate to severe upper limb impairment completed 18, 2 h sessions, 3 times a week. Repeated assessments were performed using the Fugl-Meyer Assessment of Upper Extremity (FMA-UE), Action Research Arm Test (ARAT), grip strength, and kinematics of the drinking task at baseline, during, and post intervention. The results were analyzed by using visual analysis and Tau-U statistics.
Results: All participants improved upper limb function assessed by FMA-UE (Tau-U 0.72-1.0), and five out of six improved beyond the minimal clinical important difference (MCID). Four participants improved ARAT and grip strength scores (Tau-U 0.84-1.0), with one reaching the MCID for ARAT. Three out of four participants in the kinematic analysis achieved improvements beyond the MCID in movement time and smoothness, two with a Tau-U > 0.90, and two participants improved trunk displacement beyond the MCID (Tau-U 0.68). Most participants showed some deterioration in the follow-up phase. Conclusions: MPR combined with VR and serious gaming is a feasible and promising intervention for improving upper limb function in people with chronic stroke.
Myoelectric pattern recognition
Virtual reality
Rehabilitation
Upper limb function
Electromyography
Stroke
Author
Maria Munoz-Novoa
University of Gothenburg
Center for Bionics and Pain Research
Morten B. Kristoffersen
Center for Bionics and Pain Research
Sahlgrenska University Hospital
University of Gothenburg
Katharina S. Sunnerhagen
Sahlgrenska University Hospital
University of Gothenburg
Autumn Naber
Center for Bionics and Pain Research
Max Jair Ortiz Catalan
Chalmers, Electrical Engineering, Systems and control
Sahlgrenska University Hospital
Bionics Institute
Center for Bionics and Pain Research
Margit Alt Murphy
Sahlgrenska University Hospital
University of Gothenburg
Journal of NeuroEngineering and Rehabilitation
17430003 (eISSN)
Vol. 22 1 6Highly integrated bionic prostheses
Swedish Research Council (VR) (2020-04817), 2021-01-01 -- 2024-12-31.
Subject Categories (SSIF 2025)
Neurosciences
Neurology
DOI
10.1186/s12984-025-01541-y
PubMed
39825410