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A non-invasive smart healthcare monitoring system based on the Internet of things

Kalaivani Subbaian, Hayder M. A. Ghanimi, Vijayalakshmi Baba, S. Venkatesh, S. Lavanya, Sudhakar Sengan

Abstract


A worldwide increase in healthcare problems and disorders underscored the significance of across the globe healthcare monitoring (HCM). Several countries have increased lifespans due to technological medical developments, government health initiatives, and personal cleanliness. Globalization has led to a gradually rising elderly population and a decrease in fertility, which might result in problems with socioeconomic status. In order to assist older adults, HCM technologies must be cost-effective and simple to implement. Autonomous HCM could be feasible, incorporating wearable devices with sensors, actuators, and communication. The above approach enables practical and efficient personal medical care for older people, minimizing their requirement for costly hospital treatment. The entire study emphasizes the non-invasive blood glucose monitoring (NIBGM). The idea for the project includes developing a non-invasive medical device with RFID tags login, data storage, and smart sensors that allow the monitoring of several organs. The small in size, interconnected sensor monitors body temperature (BT), blood glucose level (BGL), blood pressure (BP), heart rate (HR), and oxygen saturation (OS). The internet-based monitoring device permits healthcare providers to keep track of patient’s health metrics in real-time and send data to remote places. The new method allows healthcare professionals to present rapid assistance and reinforcement, enhancing the results for patients.


Keywords


WSN; IoT; RFID; healthcare; non-invasive blood glucose monitoring

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References


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DOI: https://doi.org/10.32629/jai.v7i5.1571

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Copyright (c) 2024 Kalaivani Subbaian, Hayder M. A. Ghanimi, Vijayalakshmi Baba, S. Venkatesh, S. Lavanya, Sudhakar Sengan

License URL: https://creativecommons.org/licenses/by-nc/4.0/