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Utilization of IoT in Diagnosis of Diabetes: A Review

Devanshi Bhati, Arushi Agrawal, Prerna Pandey, Mitisha Vijavvargiya, Devendra Nath Pathak

Abstract


The internet of things (IoT) is a concept for interconnected gadgets that have the ability to track, sense, process, and analyze data. Due to the characteristics as well as the business prospects, IoT has become a particularly appealing study subject. In this article, we design a telemedicine platform for the management and control of diabetes. This platform aims to assist diabetic patients in tracking and keeping an eye on their vital signs and blood sugar levels. In addition, the platform informs and provides feedback to patients to help manage and prevent diabetes complications. Chronic diabetes is caused by the body's inability to generate enough insulin, which results in high blood sugar levels. As a result, the suggested self-care system can address problems with the conventional approach to managing diabetes and aid both the patient and the doctor in keeping track of, capturing, and evaluating data for the diabetes prognosis.


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