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Data-Driven Classification of Human Movements in Virtual Reality-Based Serious Games: Preclinical Rehabilitation Study in Citizen Science

Overview
Publisher JMIR Publications
Date 2022 Feb 10
PMID 35142629
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Abstract

Background: Sustained engagement is essential for the success of telerehabilitation programs. However, patients' lack of motivation and adherence could undermine these goals. To overcome this challenge, physical exercises have often been gamified. Building on the advantages of serious games, we propose a citizen science-based approach in which patients perform scientific tasks by using interactive interfaces and help advance scientific causes of their choice. This approach capitalizes on human intellect and benevolence while promoting learning. To further enhance engagement, we propose performing citizen science activities in immersive media, such as virtual reality (VR).

Objective: This study aims to present a novel methodology to facilitate the remote identification and classification of human movements for the automatic assessment of motor performance in telerehabilitation. The data-driven approach is presented in the context of a citizen science software dedicated to bimanual training in VR. Specifically, users interact with the interface and make contributions to an environmental citizen science project while moving both arms in concert.

Methods: In all, 9 healthy individuals interacted with the citizen science software by using a commercial VR gaming device. The software included a calibration phase to evaluate the users' range of motion along the 3 anatomical planes of motion and to adapt the sensitivity of the software's response to their movements. During calibration, the time series of the users' movements were recorded by the sensors embedded in the device. We performed principal component analysis to identify salient features of movements and then applied a bagged trees ensemble classifier to classify the movements.

Results: The classification achieved high performance, reaching 99.9% accuracy. Among the movements, elbow flexion was the most accurately classified movement (99.2%), and horizontal shoulder abduction to the right side of the body was the most misclassified movement (98.8%).

Conclusions: Coordinated bimanual movements in VR can be classified with high accuracy. Our findings lay the foundation for the development of motion analysis algorithms in VR-mediated telerehabilitation.

Citing Articles

Efficacy of virtual reality-based training programs and games on the improvement of cognitive disorders in patients: a systematic review and meta-analysis.

Moulaei K, Sharifi H, Bahaadinbeigy K, Dinari F BMC Psychiatry. 2024; 24(1):116.

PMID: 38342912 PMC: 10860230. DOI: 10.1186/s12888-024-05563-z.


Home-Based Rehabilitation of the Shoulder Using Auxiliary Systems and Artificial Intelligence: An Overview.

Cunha B, Ferreira R, Sousa A Sensors (Basel). 2023; 23(16).

PMID: 37631637 PMC: 10459225. DOI: 10.3390/s23167100.

References
1.
Rensink M, Schuurmans M, Lindeman E, Hafsteinsdottir T . Task-oriented training in rehabilitation after stroke: systematic review. J Adv Nurs. 2009; 65(4):737-54. DOI: 10.1111/j.1365-2648.2008.04925.x. View

2.
Hatem S, Saussez G, Della Faille M, Prist V, Zhang X, Dispa D . Rehabilitation of Motor Function after Stroke: A Multiple Systematic Review Focused on Techniques to Stimulate Upper Extremity Recovery. Front Hum Neurosci. 2016; 10:442. PMC: 5020059. DOI: 10.3389/fnhum.2016.00442. View

3.
Panwar M, Biswas D, Bajaj H, Jobges M, Turk R, Maharatna K . Rehab-Net: Deep Learning Framework for Arm Movement Classification Using Wearable Sensors for Stroke Rehabilitation. IEEE Trans Biomed Eng. 2019; 66(11):3026-3037. DOI: 10.1109/TBME.2019.2899927. View

4.
Swinnen S, Wenderoth N . Two hands, one brain: cognitive neuroscience of bimanual skill. Trends Cogn Sci. 2003; 8(1):18-25. DOI: 10.1016/j.tics.2003.10.017. View

5.
Carignan C, Krebs H . Telerehabilitation robotics: bright lights, big future?. J Rehabil Res Dev. 2006; 43(5):695-710. DOI: 10.1682/jrrd.2005.05.0085. View