Mohammed Soheeb Khan
Development and evaluation of prototype virtual reality telemedicine system for asynchronous gait analysis
Khan, Mohammed Soheeb; Chan, W.; Sakellariou, S.; Harrison, D. K.; Charissis, V.
Authors
Abstract
Various rehabilitation and diagnostic methods related to musculoskeletal injuries or diseases however, can be challenging to monitor and record over long time periods. Furthermore, patients in remote locations, which represent a substantial proportion, face additional time and cost limitations. Current gait analysis methods, although they provide a very detailed record of the patient's walking cycle, are few and located in major city based facilities. Telemedicine based systems are increasingly in demand as they offer cost benefits and wider accessibility. Our proposed system offers a novel, cost efficient motion capture method which could be deployed in remote location and record patient's gait which in turn can be presented to the specialist medical staff remotely through an analytical Virtual Reality environment for review.
Citation
Khan, M. S., Chan, W., Sakellariou, S., Harrison, D. K., & Charissis, V. (2014, September). Development and evaluation of prototype virtual reality telemedicine system for asynchronous gait analysis. Presented at Appropriate Healthcare Technologies for Low Resource Settings (AHT 2014), London
Presentation Conference Type | Conference Paper (published) |
---|---|
Conference Name | Appropriate Healthcare Technologies for Low Resource Settings (AHT 2014) |
Start Date | Sep 17, 2014 |
Online Publication Date | Apr 13, 2015 |
Publication Date | 2014 |
Deposit Date | Apr 27, 2023 |
Publisher | Institution of Engineering and Technology (IET) |
Pages | 18-21 |
Book Title | Proceedings of the 8th International Conference in Appropriate Healthcare Technologies for Low Resource Setting (AHT IET 2014) |
DOI | https://doi.org/10.1049/cp.2014.0778 |
Keywords | HCI; telemedicine; virtual reality; motion capture; gait analysis |
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