Litcius/Paper detail

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

Mohammad Yaser Anwar, Heather M. Highland, Victoria L. Buchanan, Mariaelisa Graff, Kristin Young, Kent D. Taylor, Russell P. Tracy, Peter Durda, Ching‐Ti Liu, Craig Johnson, François Aguet, Kristin 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 E. North

2024Obesity13 citationsDOIOpen Access PDF

Abstract

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: ), 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.

Topics & Concepts

ObesityOmicsInsulin resistanceCluster analysisDiseaseMetabolomicsMedicineBioinformaticsMultivariate statisticsDiabetes mellitusProteomicsCluster (spacecraft)Internal medicineBiologyEndocrinologyMachine learningGeneticsGeneComputer scienceProgramming languageGenetic Associations and EpidemiologyAdipokines, Inflammation, and Metabolic DiseasesDiabetes, Cardiovascular Risks, and Lipoproteins
Machine learning‐based clustering identifies obesity subgroups with differential multi‐omics profiles and metabolic patterns | Litcius