Detection and Prediction of Infectious Diseases Using IoT Sensors: A
Review
- URL: http://arxiv.org/abs/2101.02029v1
- Date: Sat, 2 Jan 2021 15:59:00 GMT
- Title: Detection and Prediction of Infectious Diseases Using IoT Sensors: A
Review
- Authors: Mohammad Meraj, Surendra Pal Singh, Prashant Johri, Mohammad Tabrez
Quasim
- Abstract summary: There are many interactive hardware platform packages like IoT in healthcare.
The most considerable advantage to IoT in healthcare is that it supports doctors in undertaking extra significant clinical work.
This paper investigates the basis exploration of the applicability of IoT in the healthcare System.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: An infectious kind of disease affects a huge number of human beings. A lot of
investigation being conducted throughout the world. There are many interactive
hardware platform packages like IoT in healthcare including smart tracking,
smart sensors, and clinical device integration available in the market.
Emerging technology like IoT has a notable ability to hold patients secure and
healthful and also enhance how physicians supply care. Healthcare IoT also can
bolster affected person pride by permitting patients to spend more time
interacting with their medical doctors due to the fact docs aren't as taken
with the mundane and rote aspects of their career. The most considerable
advantage to IoT in healthcare is that it supports doctors in undertaking extra
significant clinical work in a profession that already is experiencing a
worldwide professional hard work shortage. This paper investigates the basis
exploration of the applicability of IoT in the healthcare System.
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