A smart Iot-based prototype system for rehabilitation monitoring.

Smart healthcare is growing significantly in the healthcare sector due to the Internet of Things. A remote monitoring system is one of the smart healthcare implementations for rehabilitating stroke patients. Nowadays, as the COVID-19 pandemic continues to spread, patients undergoing home rehabilitat...

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Bibliographic Details
Main Authors: Mad Kaidi, H., Izhar, M. A. M., Ahmad, N., Dziyauddin, R. A., Sarip, S., Mashudi, N. A., Mohamed, N., Jalil, S. Z. A., Khan, M. A. Alam
Format: Article
Language:English
Published: Penerbit UTHM 2023
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Online Access:http://eprints.utm.my/105714/1/MadKaidiH2023_ASmartIotBasedPrototypeSystemforRehabilitation.pdf
http://eprints.utm.my/105714/
http://dx.doi.org/10.30880/ijie.2023.15.03.010
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Summary:Smart healthcare is growing significantly in the healthcare sector due to the Internet of Things. A remote monitoring system is one of the smart healthcare implementations for rehabilitating stroke patients. Nowadays, as the COVID-19 pandemic continues to spread, patients undergoing home rehabilitation have difficulty meeting with their physicians due to movement constraints. In addition, the healthcare facilities are devoted to treating patients with COVID-19. As a result, physicians and patients could not frequently meet to gather their rehabilitation progress. This study involves developing a prototype to monitor a post-stroke patient's rehabilitation process using the Arduino Nano 33 Bluetooth Low Energy (BLE) and force-sensing resistor (FSR). The prototype analyzes critical aspects of the rehabilitation process based on handgrip, heart rate, sleep, and step tracking measurements. The results of the handgrip, heart rate, sleep, and step tracking measurements are evaluated for various types of subjects and six testing approaches showed an accurate and consistent results. However, experiments partially success with a small error is detected while tracking the steps of each subject. Several recommendations are highlighted to improve the prototype using other sensors such as force sensing resistor and flex sensor for handgrip force transducer, electromyogram (EMG) sensor for stroke-patients rehabilitation, and others.