Body Composition and Mortality in Coronary Artery Disease With Mild Renal Insufficiency in Chinese Patients

医学 内科学 肥胖悖论 比例危险模型 心脏病学 置信区间 风险因素 回顾性队列研究 肥胖 死因 冠状动脉疾病 肾功能 体质指数 危险系数 疾病 超重
作者
Yong Peng,Fei Chen,Fang‐Yang Huang,Tianli Xia,Bao‐Tao Huang,Hua Chai,Pengju Wang,Zhi‐Liang Zuo,Wei Liu,Chen Zhang,Yi-Yue Gui,Mao Chen,Dejia Huang
出处
期刊:Journal of Renal Nutrition [Elsevier BV]
卷期号:27 (3): 187-193 被引量:5
标识
DOI:10.1053/j.jrn.2017.01.018
摘要

Objective Obesity is a risk factor for both coronary artery disease (CAD) and chronic renal insufficiency (RI); patients with CAD are prone to and RI. In this study, we try to analyze the effect of body composition on death in CAD patients with mild RI. Design Retrospective cohort study. Subjects A total of 1,591 consecutive CAD patients confirmed by coronary angiography were enrolled and met the mild RI criteria by estimated glomerular filtration rate: 60-90 mL/min. Main Outcome Measurements The influence of body composition on mortality of CAD was detected in different body compositions, including body mass index (BMI), body fat (BF), and lean mass index (LMI). The end points were all-cause mortality. Cox models were used to evaluate the relationship of quintiles of body compositions with all-cause mortality. Results A survival curve showed that the risk of death was higher in the low BMI group than in the high BMI group (log-rank for overall P  = .002); LMI was inversely correlated with risk of death, such that a lower LMI was associated with a higher risk of death (log-rank for overall P Conclusion For CAD patients with mild RI, BMI or BF was unrelated to risk of death, while LMI was inversely correlated with risk of death. A weak obesity paradox was observed in this study.

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