Cardiovascular Risk Stratification in Youth-Onset Type 2 Diabetes Using Machine Learning

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Background: The rising incidence of youth-onset type 2 diabetes mellitus (T2DM), along with the risk of early cardiovascular complications, is concerning. Brachial-ankle pulse wave velocity (baPWV) and carotid intima-media thickness (cIMT) are noninvasive markers of arterial stiffness and atherosclerosis. They serve as important markers for cardiovascular risk assessment. This study aimed to apply machine learning models to identify high-risk individuals who may benefit from early and targeted cardiovascular screening. Methods: This retrospective study included 129 patients with youth-onset T2DM who underwent baPWV and cIMT measurements between January 2018 and July 2024. High-risk groups were defined as having values of >= mean + 1 standard deviation for baPWV (arterial stiffness) and cIMT (atherosclerosis). Clinical predictors were evaluated using linear, logistic regression, and machine learning analyses. Multiple machine learning models were trained using oversampling and cross-validation techniques to enhance prediction performance. Results: Among the models tested, the gradient boosting model with adaptive synthetic sampling oversampling achieved the best performance in predicting both arterial stiffness (accuracy 0.81) and atherosclerosis prediction (accuracy 0.92). Age and hypertension were consistently identified as the most important factors for arterial stiffness. For atherosclerosis risk, traditional analysis identified dyslipidemia, male sex, and duration of illness as relevant factors; machine learning more clearly emphasized low-density lipoprotein cholesterol and triglyceride levels as key predictors of increased cIMT. Conclusion: Hypertension and age were consistent predictors of arterial stiffness, while atherosclerosis risk factors were further clarified with lipid parameters by machine learning analysis. These findings suggest that conventional and machine learning analyses offer complementary strengths. Their combined use may enable earlier to detect nuanced cardiovascular risk patterns and support early and targeted vascular screening in youth-onset T2DM.

키워드

Diabetes Mellitus, Type 2AdolescentPulse Wave AnalysisCarotid Intima-Media ThicknessMachine LearningPULSE-WAVE VELOCITYINTIMA-MEDIA THICKNESSHEALTHY-CHILDRENREFERENCE VALUESADOLESCENTSASSOCIATIONAGE
제목
Cardiovascular Risk Stratification in Youth-Onset Type 2 Diabetes Using Machine Learning
저자
Joo, Eun YoungLee, Yeong SeokShin, Eun JungKim, Su JinLee, Ji-Eun
DOI
10.3346/jkms.2026.41.e4
발행일
2026-05
유형
Article
저널명
Journal of Korean Medical Science
41
18