肥胖表型与膳食模式之间的关系:基于中国多民族队列研究的两步聚类分析。

IF 4.3 2区 医学 Q1 MEDICINE, GENERAL & INTERNAL Preventive medicine Pub Date : 2024-08-13 DOI:10.1016/j.ypmed.2024.108100
Yuxin Hu, Yuxin Zhang, Jianqin Zhong, Yuan Wang, Enhui Zhou, Feng Hong
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引用次数: 0

摘要

研究目的本研究旨在探索肥胖表型并研究其与膳食模式的关联:数据来自 2018 年 7 月至 2019 年 8 月进行的中国多民族队列研究基线调查。所有体重指数不低于 24 kg/m2 的参与者都被纳入其中,并接受了问卷调查、体格检查和临床实验室检测。研究采用两步聚类分析法对参与者进行表型分类。通过食物频率问卷收集饮食信息,并进行主成分分析以确定不同的饮食模式:我们分析了 8757 名参与者的数据。结果:我们对 8757 名参与者的数据进行了分析,根据人口统计学特征、生化指标和人体测量数据,将他们分为代谢健康型肥胖和代谢不健康型肥胖(MUO)两类。主要预测因素包括血清尿酸、性别和舒张压。按性别进行的分组分析在男性和女性参与者中发现了三个不同的组群。MUO组在一系列慢性非传染性疾病中发病率最高。分析发现,参与者有三种独特的膳食模式,分别为优质蛋白模式、米油红肉模式和油盐模式。值得注意的是,MUO 亚组的米油红肉和油盐模式的因子得分明显更高:结论:肥胖表型与代谢和人口特征密切相关,血清尿酸是划分肥胖代谢状态的重要因素。米-油-红肉和油-盐模式可能与肥胖症患者的代谢状态有关。
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Association between obesity phenotypes and dietary patterns: A two-step cluster analysis based on the China multi-ethnic cohort study

Objective

This study aimed to explore obesity phenotypes and investigate their association with dietary patterns.

Methods

Data were obtained from the baseline survey conducted in the China Multi-Ethnic Cohort Study from July 2018 to August 2019. All participants with a body mass index of at least 24 kg/m2 were enrolled and underwent a questionnaire survey, physical examination, and clinical laboratory tests. A two-step cluster analysis was employed to classify the participants into phenotypes. Dietary information was collected using the food frequency questionnaire, and principal component analysis was conducted to identify distinct dietary patterns.

Results

We analyzed the data of 8757 participants. They were categorized based on demographic characteristics, biochemical indicators, and anthropometric measurements into two distinct clusters identified as metabolically healthy obesity and metabolically unhealthy obesity (MUO). Key predictors included serum uric acid, sex, and diastolic blood pressure. Subgroup analysis by sex identified three distinct clusters within both male and female participants. The MUO group had the highest prevalence of a range of chronic noncommunicable diseases. The analysis uncovered three unique dietary patterns among participants classified as the premium protein, rice-oil-red meat, and oil-salt patterns. Notably, the MUO subgroup demonstrated significantly higher factor scores for both the rice-oil-red meat and oil-salt patterns.

Conclusions

Obesity phenotypes are closely related to metabolic and demographic characteristics, with serum uric acid being a significant factor in categorizing the metabolic states of obesity. The rice-oil-red meat and oil-salt patterns may be related to the metabolic status of individuals with obesity.

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来源期刊
Preventive medicine
Preventive medicine 医学-公共卫生、环境卫生与职业卫生
CiteScore
7.70
自引率
3.90%
发文量
0
审稿时长
42 days
期刊介绍: Founded in 1972 by Ernst Wynder, Preventive Medicine is an international scholarly journal that provides prompt publication of original articles on the science and practice of disease prevention, health promotion, and public health policymaking. Preventive Medicine aims to reward innovation. It will favor insightful observational studies, thoughtful explorations of health data, unsuspected new angles for existing hypotheses, robust randomized controlled trials, and impartial systematic reviews. Preventive Medicine''s ultimate goal is to publish research that will have an impact on the work of practitioners of disease prevention and health promotion, as well as of related disciplines.
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