Tang Wei-Zhen, Cai Qin-Yu, Liu Tai-Hang, Li Tao-Ting, Zhu Gao-Hui, Li Jia-Cheng, Huang Kang-Jin, Xu Hong-Yu, Hua He-Zhe, Li Rong
Department of Endocrinology, National Clinical Research Center for Child Health and Disorders, Ministry of Education Key Laboratory of Child Development and Disorders, Chongqing Key Laboratory of Pediatrics, Children's Hospital of Chongqing Medical University, Chongqing, 400014, China.
Department of Bioinformatics, School of Basic Medical Sciences, Chongqing Medical University, Chongqing, 400016, PR China.
Lipids Health Dis. 2025 Apr 23;24(1):153. doi: 10.1186/s12944-025-02572-z.
The Cardiometabolic Index (CMI) is a new measure that combines fat distribution and lipid profiles. However, its relationship with rapid decline in renal function and the chronic kidney disease (CKD), especially in individuals with varying glucose metabolism, is still unclear.
This study included 3,485 participants aged 45 and above from the China Longitudinal Study on Health and Retirement (CHARLS), with baseline assessments in 2011-2012 and follow-ups in 2015 and 2018. Participants were grouped into four categories (Q1-Q4) based on baseline CMI levels. The primary outcome was rapid decline in renal function, with CKD events also observed. Multivariable logistic models and restricted cubic spline (RCS) analysis were used to explore the relationship between baseline CMI levels and the risk of kidney disease in individuals with different glucose metabolism statuses. Nine machine learning models were developed using baseline CMI to validate its predictive ability for kidney disease risk. Finally, mediation causal analysis was conducted to examine whether the development of diabetes in the non-diabetic population serves as an important mediator in the relationship between CMI and kidney disease.
During the follow-up period, a total of 173 participants (4.96%) experienced rapid decline in renal function, and 87 participants (2.50%) developed CKD. With increasing baseline CMI levels, the risk of rapid decline in renal function and CKD significantly increased. Among the various machine learning models for predicting kidney disease, logistic regression performed excellently, with AUCs exceeding 0.6, indicating the strong predictive ability of baseline CMI. For the primary outcome, multivariable logistic regression analysis showed that, in all participants, as well as in the normal glucose regulation (NGR) group and the prediabetes (Pre-DM) group, the incidence of rapid decline in renal function significantly increased across different CMI groups (P < 0.05), with trend RR values of 1.285(1.076,1.536), 1.308 (1.015, 1.685) and 1.566 (1.207, 2.031), respectively. However, this association was not observed in patients with diabetes (P for trend > 0.05). RCS analysis further indicated that higher baseline CMI levels were associated with a greater risk of rapid decline in renal function in all participants and in the non-diabetic population. A similar trend was observed for CKD. Finally, mediation causal analysis showed that the development of new-onset diabetes in the non-diabetic population may not be an important mediator in the relationship between CMI and kidney disease.
Higher baseline CMI levels were significantly linked to rapid decline in renal function and CKD in middle-aged and elderly individuals, with the relationship varying by glucose metabolism status. CMI may serve as a useful indicator for predicting kidney disease risk, especially in non-diabetic population.
心脏代谢指数(CMI)是一种综合脂肪分布和血脂谱的新指标。然而,其与肾功能快速下降及慢性肾脏病(CKD)的关系,尤其是在不同糖代谢状态个体中的关系仍不明确。
本研究纳入了来自中国健康与养老追踪调查(CHARLS)的3485名45岁及以上参与者,于2011 - 2012年进行基线评估,并在2015年和2018年进行随访。参与者根据基线CMI水平分为四类(Q1 - Q4)。主要结局是肾功能快速下降,同时观察CKD事件。采用多变量逻辑模型和受限立方样条(RCS)分析来探讨基线CMI水平与不同糖代谢状态个体患肾病风险之间的关系。利用基线CMI开发了9种机器学习模型,以验证其对肾病风险的预测能力。最后,进行中介因果分析,以检验非糖尿病人群中糖尿病的发生是否是CMI与肾病关系中的重要中介因素。
随访期间,共有173名参与者(4.96%)出现肾功能快速下降,87名参与者(2.50%)发生CKD。随着基线CMI水平的升高,肾功能快速下降和CKD的风险显著增加。在各种预测肾病的机器学习模型中,逻辑回归表现出色,曲线下面积(AUC)超过0.6,表明基线CMI具有较强的预测能力。对于主要结局,多变量逻辑回归分析显示,在所有参与者以及正常血糖调节(NGR)组和糖尿病前期(Pre - DM)组中,不同CMI组间肾功能快速下降的发生率均显著增加(P < 0.05),趋势相对危险度(RR)值分别为1.285(1.076, 1.536)、1.308(1.015, 1.685)和1.566(1.207, 2.031)。然而,在糖尿病患者中未观察到这种关联(趋势P > 0.05)。RCS分析进一步表明,较高的基线CMI水平与所有参与者及非糖尿病人群中肾功能快速下降的更大风险相关。CKD也观察到类似趋势。最后,中介因果分析表明,非糖尿病人群中新发糖尿病的发生可能不是CMI与肾病关系中的重要中介因素。
较高的基线CMI水平与中老年个体肾功能快速下降和CKD显著相关,且这种关系因糖代谢状态而异。CMI可能是预测肾病风险的有用指标,尤其是在非糖尿病人群中。