Back to Search Start Over

Novel subgroups of type 2 diabetes based on multi-Omics profiling: an IMI-RHAPSODY Study

Authors :
Shiying Li
Iulian Dragan
Chun Ho Fung
Dmitry Kuznetsov
Michael K. Hansen
Joline W.J. Beulens
Leen M. ’t Hart
Roderick C. Slieker
Louise A. Donnelly
Mathias J. Gerl
Christian Klose
Florence Mehl
Kai Simons
Petra JM Elders
Ewan R. Pearson
Guy A. Rutter
Mark Ibberson
Publication Year :
2022
Publisher :
Cold Spring Harbor Laboratory, 2022.

Abstract

Type 2 diabetes is a complex, multifactorial disease with varying presentation and underlying pathophysiology. Recent studies using data-driven cluster analysis have led to a stratification of type 2 diabetes into novel subgroups based on six clinical measurements. Whether these subgroups truly correspond to the underlying phenotypic differences is nevertheless unclear. Here, we apply an unsupervised, data-driven clustering method (Similarity Network Fusion) to characterize type 2 diabetes in two independent cohorts involving 1,134 subjects in total based on integrated plasma lipidomics and peptidomics data without pre-selection. Logistic regression was then used to explore clustering based on ≥ 180 circulating lipids and 1,195 protein biomarkers, alongside clinical signatures. Two subgroups were identified, one of which associated with elevated C-peptide levels, diabetic complications and more severe insulin resistance compared to the other. GWAS analysis against 403 type 2 diabetes risk variants revealed associations of several SNPs with clusters and altered molecular profiles. We thus demonstrate that heterogeneity in type 2 diabetes can be captured by circulating omics alone using an unsupervised bottom-up approach. Such multiomics signatures could reflect pathological mechanisms underlying type 2 diabetes and thus may help inform on precision medicine approaches to disease management.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........e1bb407838f1290f327a42906f6d7615