Authors
Sindhu P Menon, Prashant Kumar Shukla, Priyanka Sethi, Areej Alasiry, Mehrez Marzougui, M Turki-Hadj Alouane, Arfat Ahmad Khan
Publication date
2023/3/10
Journal
Sensors
Volume
23
Issue
6
Pages
3004
Publisher
MDPI
Description
Background
Continuous surveillance helps people with diabetes live better lives. A wide range of technologies, including the Internet of Things (IoT), modern communications, and artificial intelligence (AI), can assist in lowering the expense of health services. Due to numerous communication systems, it is now possible to provide customized and distant healthcare. Main problem: Healthcare data grows daily, making storage and processing challenging. We provide intelligent healthcare structures for smart e-health apps to solve the aforesaid problem. The 5G network must offer advanced healthcare services to meet important requirements like large bandwidth and excellent energy efficacy.
Methodology
This research suggested an intelligent system for diabetic patient tracking based on machine learning (ML). The architectural components comprised smartphones, sensors, and smart devices, to gather body dimensions. Then, the preprocessed data is normalized using the normalization procedure. To extract features, we use linear discriminant analysis (LDA). To establish a diagnosis, the intelligent system conducted data classification utilizing the suggested advanced-spatial-vector-based Random Forest (ASV-RF) in conjunction with particle swarm optimization (PSO).
Results
Compared to other techniques, the simulation’s outcomes demonstrate that the suggested approach offers greater accuracy.
Total citations