This multicenter retrospective cohort study evaluated 1,823 patients with comorbid metabolic dysfunction-associated steatotic liver disease and type 2 diabetes mellitus. The setting was multicenter. The sample included a complete unmatched Cohort I with 1,665 patients, a matched analysis of 630 patients, and an external validation group of 158 patients.
Researchers compared non-traditional lipid indices, including Castelli risk index-II, remnant cholesterol, atherogenic index of plasma, and lipoprotein combined index, against conventional lipid profiles. The primary outcome was coronary heart disease risk. Castelli risk index-II demonstrated a significant independent association with coronary heart disease risk, with an odds ratio of 2.394 and a 95% confidence interval of 2.065–2.788. Remnant cholesterol, atherogenic index of plasma, and lipoprotein combined index showed significant nonlinear associations with coronary heart disease risk. Castelli risk index-II also had the highest positive correlation with the severity of coronary lesions, with a rho value of 0.302.
Safety data regarding adverse events, serious adverse events, discontinuations, and tolerability were not reported. The study design is noted as a multicenter retrospective study, indicating that association only applies and causality is not established. Follow-up duration was not reported. Practice relevance was not reported. Clinicians should recognize these findings as observational evidence requiring further validation before clinical application.
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BackgroundPatients with comorbid metabolic dysfunction-associated steatotic liver disease (MASLD) and type 2 diabetes mellitus (T2DM) have a significantly heightened risk for coronary heart disease (CHD). Conventional lipid profiles often underestimate residual cardiovascular risk. This study identifies valuable non-traditional lipid indicators and develops an interpretable machine learning framework for CHD identification in this population.MethodsThis multicenter retrospective study analyzed 1,823 patients with MASLD and T2DM. Following 1:1 propensity score matching, 630 participants were used for association analysis, whereas the complete unmatched Cohort I (n = 1,665) was used for machine learning model development, with an independent cohort of 158 patients for external validation. Logistic regression and restricted cubic spline (RCS) models evaluated associations between CHD risk and eight non-traditional lipid indices. Six machine learning algorithms were compared using cascaded feature selection, with model transparency provided by Shapley Additive Explanations (SHAP) and Local Interpretable Model-agnostic Explanations (LIME).ResultsMultivariable analysis revealed that all eight non-traditional lipid indices were significantly associated with CHD risk, with Castelli risk index-II (CRI-II) demonstrating the strongest independent association (OR = 2.394, 95% CI: 2.065–2.788). RCS analysis identified linear positive associations for CRI-II, while non-traditional indices such as remnant cholesterol (RC), atherogenic index of plasma (AIP), and lipoprotein combined index (LCI) exhibited significant nonlinear associations with CHD risk. Furthermore, CRI-II showed the highest positive correlation with the severity of coronary lesions as quantified by the Gensini score (ρ = 0.302, p