Open Access
Open access
volume 11 issue 11 pages 1065

Enhanced Diabetes Detection and Blood Glucose Prediction Using TinyML-Integrated E-Nose and Breath Analysis: A Novel Approach Combining Synthetic and Real-World Data

Alberto Gudiño-Ochoa 1
Julio Alberto García-Rodríguez 2
Jorge Ivan Cuevas-Chávez 1
Raquel Ochoa-Ornelas 3
Antonio Navarrete Guzmán 4, 5
Carlos Vidrios-Serrano 5
Daniel Alejandro Sánchez-Arias 1
1
 
Electronics Department, Tecnológico Nacional de México/Instituto Tecnológico de Ciudad Guzmán, Ciudad Guzmán 49100, Mexico
3
 
Systems and Computation Department, Tecnológico Nacional de México/Instituto Tecnológico de Ciudad Guzmán, Ciudad Guzmán 49100, Mexico
4
 
Electrical and Electronic Engineering Department, Tecnológico Nacional de México/Instituto Tecnológico de Tepic, Tepic 63175, Mexico
Publication typeJournal Article
Publication date2024-10-25
scimago Q2
wos Q2
SJR0.735
CiteScore5.3
Impact factor3.7
ISSN23065354
Abstract

Diabetes mellitus, a chronic condition affecting millions worldwide, necessitates continuous monitoring of blood glucose level (BGL). The increasing prevalence of diabetes has driven the development of non-invasive methods, such as electronic noses (e-noses), for analyzing exhaled breath and detecting biomarkers in volatile organic compounds (VOCs). Effective machine learning models require extensive patient data to ensure accurate BGL predictions, but previous studies have been limited by small sample sizes. This study addresses this limitation by employing conditional generative adversarial networks (CTGAN) to generate synthetic data from real-world tests involving 29 healthy and 29 diabetic participants, resulting in over 14,000 new synthetic samples. These data were used to validate machine learning models for diabetes detection and BGL prediction, integrated into a Tiny Machine Learning (TinyML) e-nose system for real-time analysis. The proposed models achieved an 86% accuracy in BGL identification using LightGBM (Light Gradient Boosting Machine) and a 94.14% accuracy in diabetes detection using Random Forest. These results demonstrate the efficacy of enhancing machine learning models with both real and synthetic data, particularly in non-invasive systems integrating e-noses with TinyML. This study signifies a major advancement in non-invasive diabetes monitoring, underscoring the transformative potential of TinyML-powered e-nose systems in healthcare applications.

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Gudiño-Ochoa A. et al. Enhanced Diabetes Detection and Blood Glucose Prediction Using TinyML-Integrated E-Nose and Breath Analysis: A Novel Approach Combining Synthetic and Real-World Data // Bioengineering. 2024. Vol. 11. No. 11. p. 1065.
GOST all authors (up to 50) Copy
Gudiño-Ochoa A., García-Rodríguez J. A., Cuevas-Chávez J. I., Ochoa-Ornelas R., Guzmán A. N., Vidrios-Serrano C., Sánchez-Arias D. A. Enhanced Diabetes Detection and Blood Glucose Prediction Using TinyML-Integrated E-Nose and Breath Analysis: A Novel Approach Combining Synthetic and Real-World Data // Bioengineering. 2024. Vol. 11. No. 11. p. 1065.
RIS |
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RIS Copy
TY - JOUR
DO - 10.3390/bioengineering11111065
UR - https://www.mdpi.com/2306-5354/11/11/1065
TI - Enhanced Diabetes Detection and Blood Glucose Prediction Using TinyML-Integrated E-Nose and Breath Analysis: A Novel Approach Combining Synthetic and Real-World Data
T2 - Bioengineering
AU - Gudiño-Ochoa, Alberto
AU - García-Rodríguez, Julio Alberto
AU - Cuevas-Chávez, Jorge Ivan
AU - Ochoa-Ornelas, Raquel
AU - Guzmán, Antonio Navarrete
AU - Vidrios-Serrano, Carlos
AU - Sánchez-Arias, Daniel Alejandro
PY - 2024
DA - 2024/10/25
PB - MDPI
SP - 1065
IS - 11
VL - 11
PMID - 39593725
SN - 2306-5354
ER -
BibTex |
Cite this
BibTex (up to 50 authors) Copy
@article{2024_Gudiño-Ochoa,
author = {Alberto Gudiño-Ochoa and Julio Alberto García-Rodríguez and Jorge Ivan Cuevas-Chávez and Raquel Ochoa-Ornelas and Antonio Navarrete Guzmán and Carlos Vidrios-Serrano and Daniel Alejandro Sánchez-Arias},
title = {Enhanced Diabetes Detection and Blood Glucose Prediction Using TinyML-Integrated E-Nose and Breath Analysis: A Novel Approach Combining Synthetic and Real-World Data},
journal = {Bioengineering},
year = {2024},
volume = {11},
publisher = {MDPI},
month = {oct},
url = {https://www.mdpi.com/2306-5354/11/11/1065},
number = {11},
pages = {1065},
doi = {10.3390/bioengineering11111065}
}
MLA
Cite this
MLA Copy
Gudiño-Ochoa, Alberto, et al. “Enhanced Diabetes Detection and Blood Glucose Prediction Using TinyML-Integrated E-Nose and Breath Analysis: A Novel Approach Combining Synthetic and Real-World Data.” Bioengineering, vol. 11, no. 11, Oct. 2024, p. 1065. https://www.mdpi.com/2306-5354/11/11/1065.