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Conference Paper A deep learning model for classification of uncontrolled diabetics based on microwave resonator measurements of urine
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Authors
Hyeon Sung Cho, Chunhwa Ihm, Ji Hun Jeong, Dae-Yong Song, Jae-chan Jeong, Hyo Bong Hong
Issue Date
2024-10
Citation
International Conference on Information and Communication Technology Convergence (ICTC) 2024, pp.1707-1709
Publisher
IEEE
Language
English
Type
Conference Paper
DOI
https://dx.doi.org/10.1109/ICTC62082.2024.10826627
Abstract
In this paper, an analysis of human urine using a microwave resonator was conducted and a deep learning model implemented to distinguish between uncontrolled diabetics and controlled diabetics was developed. It was necessary to collect urine samples from diabetic patients with poorly controlled diabetes, normal individuals, and diabetic patients with well controlled diabetes for the study. According to our findings, deep learning methods are more accurate than peak analysis techniques in classifying controlled diabetics in complex compounds measured by microwave resonators. This innovative approach has the potential to transform early disease detection and diagnosis, leading to more effective treatments and improved patient outcomes. Furthermore, the novel analytical method presented in our paper has broader applications, including the classification of intricate chemical components in foods and natural products.
KSP Keywords
Analytical Method, Detection and diagnosis, Early disease detection, Human Urine, Innovative approach, Learning methods, Microwave resonator, Peak analysis, Urine samples, analysis techniques, chemical components