An Investigation in Applying Internet of Things Approach in Safe Food Dietary Plan for Better Chronic Diabetes Management among Elderly Adults

Author:

Geetha G.1ORCID,Radeep Krishna R.2ORCID,Vyas Swati3ORCID,Sukhwal Isha4ORCID,Jain Ankit5ORCID,Chaturvedi Abhay6ORCID,Shah Mohd Asif7ORCID

Affiliation:

1. Department of IT, VR Siddhartha Engineering College, Vijayawada, India

2. Department of ECE, Mangalam College of Engineering, Ettumanoor, Kerala, India

3. Department of Home Science: Foods and Nutrition, IIS Deemed to be a University, Jaipur, India

4. Department of Home Science, IIS Deemed to be University, Jaipur, India

5. Amity University, Jaipur, Rajasthan, India

6. Department of Electronics & Communication Engineering, GLA University, Mathura, U.P., India

7. Bakhtar University, Kabul, Afghanistan

Abstract

Chronic diabetes among adults is a public health concern and clinicians are trying to implement new strategies to effectively manage the disease. Traditionally, healthcare professionals are used to monitor and track the lab reports of patients. After that, they used to provide respective medicines and lifestyle plans to manage the chronic disease. The lifestyle of the patients and access to safe and secure food products is also responsible for developing chronic diseases. Thus, the Internet of Things (IoT) has taken an utmost interest in managing diabetes. This research is going to analyze the accuracy of IoT in assisting chronic diabetes management and determining food safety. To accomplish the research objectives, the researchers performed a linear regression analysis to understand whether IoT devices and Artificial Intelligence (AI) assist in assessing food safety and diabetes management. The independent variables selected were lab test values, treatment records, epoch size of AI, and image resolution of the training dataset. Dependent variables were the accuracy of IoT. Here, the accuracy of IoT and AI has been determined. Moreover, the accuracy of clinicians in diabetes management has been observed. It has been found that clinicians have high variance in accuracy (max 99%) whereas machines have limited variance in accuracy (max. 98%). Secondary research identified that clinicians need to be involved along with IoT devices for better management of this chronic disease and help patients by providing the safest food options.

Publisher

Hindawi Limited

Subject

Safety, Risk, Reliability and Quality,Food Science

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