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Assessment of Ten Insulin Resistance Surrogate Indexes Predicts New-Onset Cardiovascular Disease Incidence in Patients with Prediabetes or Diabetes: Insights from CHARLS Data with Machine Learning Analysis Cover

Assessment of Ten Insulin Resistance Surrogate Indexes Predicts New-Onset Cardiovascular Disease Incidence in Patients with Prediabetes or Diabetes: Insights from CHARLS Data with Machine Learning Analysis

By: Hang Xie,  Chaoying Yan,  Yi Zheng and  Haoyu Wu  
Open Access
|Mar 2026

Abstract

Objective: Insulin resistance (IR) is a key driver of prediabetes, type 2 diabetes, and cardiovascular disease (CVD) risk. This study evaluated the predictive performance of ten IR surrogate indexes (TyG, TyG-BMI, TyG-WC, TyG-WHtR, METS-IR, AIP, TyHGB, CTI, eGDR, CVAI) for new-onset CVD in Chinese patients with prediabetes or diabetes, aiming to identify the most effective index for cardiovascular risk stratification.

Methods: This longitudinal cohort study analyzed 3,532 middle-aged and elderly participants from the China Health and Retirement Longitudinal Study (CHARLS) baseline (Wave 1), with incident CVD events assessed at follow-up (Wave 4). Ten IR surrogate indexes were calculated at baseline. Multivariate logistic regression, adjusted for confounders, assessed associations between these indexes and CVD. Non-linear relationships were explored using restricted cubic spline analyses. Nine machine learning algorithms were employed to develop predictive models, with performance evaluated via receiver operating characteristic (ROC) curves, calibration curves, and decision curve analysis.

Results: During follow-up, 874 participants (24.7%) developed CVD. Each standard deviation increase in eGDR was associated with reduced CVD risk (OR = 0.822, 95% CI: 0.696–0.969), while CVAI was linked to increased risk (OR = 1.124, 95% CI: 1.028–1.229). Compared to the lowest quartile, the highest eGDR quartile had a 47.3% lower CVD risk (OR = 0.527, 95% CI: 0.353–0.789, P = 0.0018), and the highest CVAI quartile had a 33.1% higher risk (OR = 1.331, 95% CI: 1.038–1.709, P = 0.0243). Incorporating eGDR and CVAI into machine learning models, particularly K-Nearest Neighbors (KNN), enhanced discrimination (AUC = 0.936, 95% CI: 0.928–0.943).

Conclusion: eGDR and CVAI outperformed other IR indexes in predicting CVD in Chinese patients with prediabetes or diabetes. Their integration into KNN models significantly improved risk stratification, suggesting their utility as accessible clinical tools for early identification and intervention to reduce CVD burden.

DOI: https://doi.org/10.5334/gh.1532 | Journal eISSN: 2211-8179
Language: English
Submitted on: May 29, 2025
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Accepted on: Feb 20, 2026
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Published on: Mar 12, 2026
Published by: Ubiquity Press
In partnership with: Paradigm Publishing Services
Publication frequency: 1 issue per year

© 2026 Hang Xie, Chaoying Yan, Yi Zheng, Haoyu Wu, published by Ubiquity Press
This work is licensed under the Creative Commons Attribution 4.0 License.