基于机器学习的聚类方法可识别具有不同多组学特征和代谢模式的肥胖亚群。

IF 4.2 2区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Obesity Pub Date : 2024-11-05 DOI:10.1002/oby.24137
Mohammad Y. Anwar, Heather Highland, Victoria Lynn Buchanan, Mariaelisa Graff, Kristin Young, Kent D. Taylor, Russell P. Tracy, Peter Durda, Yongmei Liu, Craig W. Johnson, Francois Aguet, Kristin G. Ardlie, Robert E. Gerszten, Clary B. Clish, Leslie A. Lange, Jingzhong Ding, Mark O. Goodarzi, Yii-Der Ida Chen, Gina M. Peloso, Xiuqing Guo, Maggie A. Stanislawski, Jerome I. Rotter, Stephen S. Rich, Anne E. Justice, Ching-ti Liu, Kari North
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引用次数: 0

摘要

目的肥胖症患者对心脏代谢疾病的易感性不同。我们假设,综合多组学方法可能有助于识别具有不同心脏代谢疾病模式的肥胖症患者亚群:我们利用多族裔动脉粥样硬化研究(MESA)队列中 243 人的数据,进行了基于机器学习的综合无监督聚类,以确定蛋白质组学和代谢组学定义的肥胖症患者亚群(体重指数≥ 30 kg/m2)。我们对导致观察到的集群的 Omics 进行了功能表征。我们进行了多变量回归,以评估每个群组中的个体是否表现出不同的心脏代谢特征模式:iCluster2的平均体重指数值、空腹血糖和炎症水平显著较高,iCluster1与较高的总胆固醇和高密度脂蛋白胆固醇水平相关。介导细胞生长、脂肪生成和能量消耗的途径与 iCluster1 呈正相关。炎症反应和胰岛素抵抗途径与 iCluster2 呈正相关:尽管这两个已确定的群组可能代表了在不同阶段测量到的与肥胖相关的渐进式病理过程,但鉴于比较组之间没有明显的年龄差异,其他机制的组合也可能是已确定群组的基础。例如,聚类可能反映了饮食/行为模式的差异或代谢损伤的不同速率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning-based clustering identifies obesity subgroups with differential multi-omics profiles and metabolic patterns

Machine learning-based clustering identifies obesity subgroups with differential multi-omics profiles and metabolic patterns

Objective

Individuals living with obesity are differentially susceptible to cardiometabolic diseases. We hypothesized that an integrative multi-omics approach might improve identification of subgroups of individuals with obesity who have distinct cardiometabolic disease patterns.

Methods

We performed machine learning-based, integrative unsupervised clustering to identify proteomics- and metabolomics-defined subpopulations of individuals living with obesity (BMI ≥ 30 kg/m2), leveraging data from 243 individuals in the Multi-Ethnic Study of Atherosclerosis (MESA) cohort. Omics that contributed to the observed clusters were functionally characterized. We performed multivariate regression to assess whether the individuals in each cluster demonstrated differential patterns of cardiometabolic traits.

Results

We identified two distinct clusters (iCluster1 and 2). iCluster2 had significantly higher average BMI values, fasting blood glucose, and inflammation. iCluster1 was associated with higher levels of total cholesterol and high-density lipoprotein cholesterol. Pathways mediating cell growth, lipogenesis, and energy expenditures were positively associated with iCluster1. Inflammatory response and insulin resistance pathways were positively associated with iCluster2.

Conclusions

Although the two identified clusters may represent progressive obesity-related pathologic processes measured at different stages, other mechanisms in combination could also underpin the identified clusters given no significant age difference between the comparative groups. For instance, clusters may reflect differences in dietary/behavioral patterns or differential rates of metabolic damage.

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来源期刊
Obesity
Obesity 医学-内分泌学与代谢
CiteScore
11.70
自引率
1.40%
发文量
261
审稿时长
2-4 weeks
期刊介绍: Obesity is the official journal of The Obesity Society and is the premier source of information for increasing knowledge, fostering translational research from basic to population science, and promoting better treatment for people with obesity. Obesity publishes important peer-reviewed research and cutting-edge reviews, commentaries, and public health and medical developments.
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