Meal-time Detection by Means of Long Periods Blood Glucose Level Monitoring via IoT Technology
Hassan M. Ahmed (1), Souhail Maraoui (1), Muhammed Abd Elnaby Sadek, (1), Bessam Abdulrazak (1,2), Camille Vandenberghe (2,3), Stephen C. Cunnane, (2,3), F. Guillaume Blanchet (2, 4,5,6) ((1) Ambient Intelligence Laboratory, (AMI-Lab), Departement d'informatique

TL;DR
This paper presents an IoT-based framework for long-term blood glucose monitoring to identify daily mealtime routines in subjects with diabetes, aiding medical intervention and treatment planning.
Contribution
It introduces a comprehensive IoT system for blood glucose data collection and analysis, validated with real-world data from multiple subjects over several days.
Findings
Successfully identified daily mealtime patterns in 4 out of 7 subjects.
Demonstrated near real-time blood glucose monitoring with 5-minute resolution.
Showed potential of IoT in supporting medical studies for diabetes management.
Abstract
Blood glucose level monitoring is of great importance, especially for subjects experiencing type 1 diabetes. Accurate monitoring of their blood glucose level prevents dangerous and life-threatening situations that might be experienced by those subjects. In addition, precise monitoring of blood glucose levels over long periods of time helps establishing knowledge about the daily mealtime routine which aids the medical staff to monitor subjects and properly intervene in hazardous cases such as hypo- or hyperglycemia. Establishing such knowledge will play a potential role when designing proper treatment intervention plan. In this research, we present a complete IoT framework, starting from hardware acquisition system to data analysis approaches that gives a hand for medical staff when long periods of blood glucose monitoring are essential for subjects. Also, this framework is validated…
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Taxonomy
TopicsDiabetes Management and Research · Artificial Intelligence in Healthcare · IoT and Edge/Fog Computing
