动脉粥样硬化指数与前驱糖尿病之间的关系:中国普通体检人群的5年回顾性队列研究。

IF 8.5 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Xianli Qiu, Yong Han, Changchun Cao, Yuheng Liao, Haofei Hu
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引用次数: 0

摘要

背景和目的:动脉粥样硬化指数已成为心脏代谢紊乱的有希望的标志物,但它们与前驱糖尿病风险的关系尚不清楚。本研究旨在全面评估中国人群中6项动脉粥样硬化指标与前驱糖尿病风险之间的关系,并探讨这些动脉粥样硬化参数对前驱糖尿病的预测价值。方法:本回顾性队列研究包括来自中国32个医疗保健中心的97151名参与者,中位随访时间为2.99(2.13,3.95)年。计算6项致动脉粥样硬化指数:Castelli’s Risk Index- i (CRI-I)、Castelli’s Risk Index- ii (CRI-II)、血浆致动脉粥样硬化指数(AIP)、致动脉粥样硬化指数(AI)、脂蛋白联合指数(LCI)、胆固醇指数(CHOLINDEX)。为了解决动脉粥样硬化指数与前驱糖尿病风险之间的自然关系,我们应用Cox比例风险回归与三次样条函数和光滑曲线拟合,使用递归算法计算拐点。机器学习方法(XGBoost和Boruta方法)来解决指标之间的高度共线性并评估其相对重要性,结合时间相关的ROC分析来评估3年,4年和5年随访的预测性能。结果:在随访期间,11,199名参与者发展为糖尿病前期(发病率:3.71 / 100人年)。在所有动脉粥样硬化指数和糖尿病前期风险之间观察到显著的非线性关联。通过对动脉粥样硬化指数的Z-score标准化、综合Cox比例风险回归和先进的机器学习技术,我们发现AIP是糖尿病前期最显著的预测因子[HR = 1.057 (95% CI 1.035-1.080, P)]。结论:本研究发现动脉粥样硬化指数与糖尿病前期风险之间存在统计学上显著的相关性,突出了它们之间的非线性关系和综合效应。虽然这些指标的预测性能不高(AUC为0.55-0.68),但当纳入综合评估策略时,这些发现可能有助于改善风险分层。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Association between atherogenicity indices and prediabetes: a 5-year retrospective cohort study in a general Chinese physical examination population.

Background and objective: Atherogenicity indices have emerged as promising markers for cardiometabolic disorders, yet their relationship with prediabetes risk remains unclear. This study aimed to comprehensively evaluate the associations between six atherogenicity indices and prediabetes risk in a Chinese population, and explore the predictive value of these atherosclerotic parameters for prediabetes.

Methods: This retrospective cohort study included 97,151 participants from 32 healthcare centers across China, with a median follow-up of 2.99 (2.13, 3.95) years. Six atherogenicity indices were calculated: Castelli's Risk Index-I (CRI-I), Castelli's Risk Index-II (CRI-II), Atherogenic Index of Plasma (AIP), Atherogenic Index (AI), Lipoprotein Combine Index (LCI), and Cholesterol Index (CHOLINDEX). To address the natural relationships between the atherogenicity indices and risk of prediabetes, we applied Cox proportional hazards regression with cubic spline functions and smooth curve fitting, using a recursive algorithm to calculate inflection points. Machine learning approach (XGBoost and Boruta methods) to address the high collinearity among indices and assess their relative importance, combined with time-dependent ROC analysis to evaluate the predictive performance at 3-, 4-, and 5-year follow-up.

Results: During follow-up, 11,199 participants developed prediabetes (incidence rate: 3.71 per 100 person-years). Significant nonlinear associations were observed between all atherogenicity indices and prediabetes risk. Through Z-score standardization of atherogenicity indices and comprehensive Cox proportional hazards regression and advanced machine learning techniques, we identified AIP as the most significant predictor of prediabetes [HR = 1.057 (95% CI 1.035-1.080, P < 0.0001)], with LCI emerging as a secondary important marker [HR = 1.020 (95% CI 1.002-1.038, P = 0.0267)]. Our innovative XGBoost and Boruta analysis uniquely validated these findings, providing robust evidence of AIP and LCI's critical role in prediabetes risk assessment. Time-dependent ROC analysis further validated these findings, with LCI and AIP demonstrating comparable discrimination, with overlapping AUC ranges of 0.5952-0.6082. Notably, the combined indices model achieved enhanced predictive performance (AUC: 0.6753) compared to individual indices, suggesting the potential benefit of using multiple atherogenicity indices for prediabetes risk prediction.

Conclusion: This study identifies statistically significant associations between atherogenicity indices and prediabetes risk, highlighting their nonlinear relationships and combined effects. While the predictive performance of these indices is modest (AUC 0.55-0.68), these findings may contribute to improved risk stratification when incorporated into comprehensive assessment strategies.

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来源期刊
Cardiovascular Diabetology
Cardiovascular Diabetology 医学-内分泌学与代谢
CiteScore
12.30
自引率
15.10%
发文量
240
审稿时长
1 months
期刊介绍: Cardiovascular Diabetology is a journal that welcomes manuscripts exploring various aspects of the relationship between diabetes, cardiovascular health, and the metabolic syndrome. We invite submissions related to clinical studies, genetic investigations, experimental research, pharmacological studies, epidemiological analyses, and molecular biology research in this field.
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