The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
Adaptation and Customization in Virtual Rehabilitation
Abstract
Background. Adaptation and customization are two related but distinct concepts that are central to virtual rehabilitation if this motor therapy modality is to succeed in alleviating the demand for expert supervision. These two elements of the therapy are required to exploit the flexibility of virtual environments to enhance motor training and boost therapy outcome. Aim. The chapter provides a non-systematic overview of the state of the art regarding the evolving manipulation of virtual rehabilitation environments to optimize therapy outcome manifested through customization and adaptation mechanisms. Methods. Both concepts will be defined, aspects guiding their implementation reviewed, and available literature suggesting different solutions discussed. We present “Gesture Therapy”, a platform realizing our contributions to the field and we present results of the adaptation techniques integrated into it. Less explored additional dimensions such as liability and privacy issues affecting their implementation are briefly discussed. Results. Solutions to implement decision-making on how to manipulate the environment are varied. They range from predefined system configurations to sophisticated artificial intelligence (AI) models. Challenge maintenance and feedback personalization is the most common driving force for their incorporation to virtual rehabilitation platforms. Conclusions. Customization and adaptation are the main mechanisms responsible for the full exploitation of the potential of virtual rehabilitation environments, and the potential benefits are worth pursuing. Despite encouraging evidence of the many solutions proposed thus far in literature, none has yet proven to substantially alter the therapy outcome. In consequence, research is still on going to equip virtual rehabilitation solutions with efficacious tailoring elements.
Related Content
Kumar Shalender, Babita Singla.
© 2024.
11 pages.
|
R. Akash, V. Suganya.
© 2024.
32 pages.
|
Prathmesh Singh, Arnav Upadhyaya, Nripendra Singh.
© 2024.
14 pages.
|
Arpan Anand, Priya Jindal.
© 2024.
13 pages.
|
Surjit Singha, K. P. Jaheer Mukthar.
© 2024.
26 pages.
|
M. Vaishali, V. Kiruthiga.
© 2024.
14 pages.
|
Ranjit Singha, Surjit Singha.
© 2024.
21 pages.
|
|
|