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The purpose of this pilot study was to provide a new approach for capturing and analyzing wheelchair maneuvering data, which are critical for evaluating wheelchair users' activity levels. We proposed a mobile-cloud (MC) system, which incorporated the emerging mobile and cloud computing technologies. The MC system employed smartphone sensors to collect wheelchair maneuvering data and transmit them to the cloud for storage and analysis. A k-nearest neighbor (KNN) machine-learning algorithm was developed to mitigate the impact of sensor noise and recognize wheelchair maneuvering patterns. We conducted 30 trials in an indoor setting, where each trial contained 10 bouts (i.e., periods of continuous wheelchair movement). We also verified our approach in a different building. Different from existing approaches that require sensors to be attached to wheelchairs' wheels, we placed the smartphone into a smartphone holder attached to the wheelchair. Experimental results illustrate that our approach correctly identified all 300 bouts. Compared to existing approaches, our approach was easier to use while achieving similar accuracy in analyzing the accumulated movement time and maximum period of continuous movement (p > 0.8). Overall, the MC system provided a feasible way to ease the data collection process and generated accurate analysis results for evaluating activity levels.
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http://dx.doi.org/10.1080/10400435.2015.1095810 | DOI Listing |
Assist Technol
August 2025
TTK Center for Rehabilitation Research and Device Development (R2D2), Department of Mechanical Engineering, Indian Institute of Technology Madras, Chennai, India.
NeoFly is a customizable, compact, ergonomic manual wheelchair. This indigenously designed, personalized wheelchair was devised to enhance the user's health and lifestyle. This study aimed to evaluate the long-term impact of NeoFly on users' daily routines.
View Article and Find Full Text PDFIEEE Int Conf Rehabil Robot
May 2025
Manual wheelchair users face many physical and physiological demands when maneuvering and participating within their community. One aspect of daily life which has not been thoroughly examined is how carrying a load affects their mobility. This study presents data collected from 10 participants completing a short outdoor course.
View Article and Find Full Text PDFOrphanet J Rare Dis
July 2025
Division of Respirology, Department of Medicine, University Health Network, 585 University Avenue, 11 PMB 130, Toronto, ON, M5G 2N2, Canada.
Background: Fibrodysplasia ossificans progressiva (FOP) is an ultra-rare genetic bone disease that is characterized by progressive heterotopic ossification of the thoracic cavity. Prognosis is poor with cardiopulmonary complications being the main cause of death. Spirometry is a well-established metric of functional exercise capacity and prognosis in lung diseases but its use is limited in this population.
View Article and Find Full Text PDFBioengineering (Basel)
June 2025
Department of Occupational Therapy and Physiotherapy, Sahlgrenska University Hospital/Mölndal, 431 80 Mölndal, Sweden.
Spinal cord injury (SCI) often necessitates the use of a manual wheelchair, which can overload the shoulders and contribute to upper extremity (UE) pain. Currently, no standardized methods exist to assess UE kinematics during wheelchair propulsion. This study aimed to develop and evaluate a marker-based motion capture model for analyzing UE movement during wheelchair use, with a secondary goal of assessing test-retest reliability.
View Article and Find Full Text PDFDisabil Rehabil Assist Technol
June 2025
University of Texas at Arlington Research Institute, Arlington, TX, USA.
Pressure injuries (PI) pose a significant risk for individuals with spinal cord injuries. While clinical guidelines recommend periodic pressure redistribution (PR), adherence is often low due to limited real-time monitoring and feedback. In this paper, we present an Android application, integrated with a machine learning-based posture prediction algorithm to enhance real-time monitoring and feedback in a smart seat cushion (SSC) system for wheelchair users.
View Article and Find Full Text PDF