A Smart and Home-based Telerehabilitation Tool for Patients with Neuromuscular Disorder

2022 IEEE-EMBS CONFERENCE ON BIOMEDICAL ENGINEERING AND SCIENCES, IECBES(2022)

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摘要
Over fourteen million people suffer from neuromuscular diseases in the UK such as strokes, spinal cord injuries, and Parkinson's disease etc. That means at least one in six people in the UK are living with one or more neurological conditions. In order for patients to return to normal life sooner, a rigorous rehabilitation process is needed. In hospitals, physiotherapists and neurological experts prescribe specific neurorehabilitation exercises. In most cases, patients need to schedule an appointment to receive treatment in a hospital or to have physiotherapists visit them at home. The number of neuromuscular patients has increased, resulting in longer hospital waiting times. In particular, during COVID-19, patients were not allowed to visit hospitals or have physiotherapists visit them due to government restrictions. Online guides for personalised and custom rehabilitation therapy for joint spasticity and stiffness are also not available. This paper reports the development of an IoTbased prototype system that monitors and records joint movements using sensory footwear (consisting of FSR and IMU sensors) and Kinect sensors. In addition, a prototype web portal is also being developed to record performance data during exercises at home and interact with clinicians remotely. A pilot study has been conducted with six healthy individuals and test results show that there is a strong correlation between Kinect data and FSR data in terms of coordination between joint movements.
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The developed telerehabilitation tool could benefit patients with neuromuscular disorders to receive rehabilitation services through online consultations via a web portal,and wearable sensors could be used to measure and record their performance remotely as well as evaluate the synergy between joints and limbs while exercising
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