Non-Invasive Multiclass Diabetes Classification Using Breath Biomarkers and Machine Learning with Explainable AI

被引:0
作者
Gudino-Ochoa, Alberto [1 ,2 ]
Garcia-Rodriguez, Julio Alberto [1 ,3 ]
Ochoa-Ornelas, Raquel [4 ]
Ruiz-Velazquez, Eduardo [2 ]
Uribe-Toscano, Sofia [5 ]
Cuevas-Chavez, Jorge Ivan [2 ]
Sanchez-Arias, Daniel Alejandro [2 ]
机构
[1] Tecnol Nacl Mexico, Inst Tecnol Ciudad Guzman, Elect Dept, Ciudad Guzman 49100, Jalisco, Mexico
[2] Univ Guadalajara, Ctr Univ Ciencias Exactas Ingn CUCEI, Elect & Comp Div, Guadalajara 44430, Jalisco, Mexico
[3] Univ Guadalajara, Ctr Univ CUSUR, Dept Ciencias Computac Innovac Tecnol, Ciudad Guzman 49000, Jalisco, Mexico
[4] Tecnol Nacl Mexico, Inst Tecnol Ciudad Guzman, Syst & Computat Dept, Ciudad Guzman 49100, Jalisco, Mexico
[5] Univ Guadalajara, Ctr Univ CUSUR, Dept Ciencias Clin, Div Ciencias Salud, Av Enrique Arreola Silva 883, Ciudad Guzman 49000, Jalisco, Mexico
来源
DIABETOLOGY | 2025年 / 6卷 / 06期
关键词
breath acetone; diabetes classification; machine learning; breath biomarkers; medical expert systems; exhaled breath analysis; DIAGNOSIS;
D O I
10.3390/diabetology6060051
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background/Objectives: The increasing prevalence of diabetes underscores the urgent need for non-invasive, rapid, and cost-effective diagnostic alternatives. This study presents a breath-based multiclass diabetes classification system leveraging only three gas sensors (CO, alcohol, and acetone) to analyze exhaled breath composition. Methods: Breath samples were collected from 58 participants (22 healthy, 7 prediabetic, and 29 diabetic), with blood glucose levels serving as the reference metric. To enhance classification performance, we introduced a novel biomarker, the alcohol-to-acetone ratio, through a feature engineering approach. Class imbalance was addressed using the Synthetic Minority Over-Sampling Technique (SMOTE), ensuring a balanced dataset for model training. A nested cross-validation framework with 3 outer and 3 inner folds was implemented. Multiple machine learning classifiers were evaluated, with Random Forest and Gradient Boosting emerging as the top-performing models. Results: An ensemble combining both yielded the highest overall performance, achieving an average accuracy of 98.86%, precision of 99.07%, recall of 98.81% and F1 score of 98.87%. These findings highlight the potential of gas sensor-based breath analysis as a highly accurate, scalable, and non-invasive method for diabetes screening. Conclusions: The proposed system offers a promising alternative to blood-based diagnostic approaches, paving the way for real-world applications in point-of-care diagnostics and continuous health monitoring.
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页数:21
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