C-reactive protein-triglyceride glucose index in predicting three-vessel coronary artery disease risk: a retrospective study using machine learning approaches

C反应蛋白-甘油三酯-葡萄糖指数在预测三支冠状动脉疾病风险中的应用:一项采用机器学习方法的回顾性研究

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Abstract

BACKGROUND: Three-vessel coronary artery disease (TVD) is a severe subtype of coronary heart disease, strongly associated with inflammation and metabolic dysfunction. The C-reactive protein-triglyceride glucose index (CTI), an integrated measure of inflammation and metabolism, may serve as a critical predictor of TVD risk. This study evaluates the predictive utility of CTI for TVD. METHODS: This single-center retrospective study compared clinical characteristics, laboratory indices, and inflammation- and metabolism-related markers between TVD and non-TVD groups. Feature selection using the Boruta algorithm and LASSO regression identified key predictors for constructing a TVD risk model. SHAP analysis provided model interpretability and evaluated the relative importance of predictive factors. Predefined subgroup analyses by sex and diabetes status were conducted using multivariable logistic regression, with interaction terms tested to assess the consistency of CTI's predictive effect across subgroups. RESULTS: Traditional risk factors, including gender, age, hypertension, diabetes, and smoking, were significantly more prevalent in the TVD group. The CTI index was markedly elevated in this group and emerged as a critical predictor. Boruta and LASSO identified CTI, age, and gender as primary predictors. SHAP analysis confirmed the prominent role of CTI, with age and gender also contributing significantly to risk prediction. CTI demonstrated the strongest positive impact on TVD risk assessment. Subgroup analyses showed CTI was significantly associated with TVD in men and diabetic patients, with no significant interaction by sex or diabetes, indicating a generally stable predictive effect. CONCLUSION: CTI is a reliable predictor of TVD with immediate value for improving current risk assessment and patient stratification. Beyond its present clinical relevance, CTI also holds potential for future applications in early screening and long-term management.

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