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Journal article

Whole blood co-expression modules associate with metabolic traits and type 2 diabetes: an IMI-DIRECT study

From

Department of Health Technology, Technical University of Denmark1

Disease Data Intelligence, Bioinformatics, Department of Health Technology, Technical University of Denmark2

University of Southern Denmark3

University of Exeter4

Newcastle University5

KTH Royal Institute of Technology6

University of Oxford7

University of Eastern Finland8

National Research Council of Italy9

Sanofi10

Eli Lilly GmbH11

Bioinformatics, Department of Health Technology, Technical University of Denmark12

Aventis Pharma Germany GmbH13

Leiden University14

Department of Bio and Health Informatics, Technical University of Denmark15

University of Geneva16

Technical University of Munich17

Harvard University18

University of Copenhagen19

Helmholtz Zentrum München - German Research Center for Environmental Health20

Utrecht University21

University of Helsinki22

University of Amsterdam23

University of Dundee24

Lund University25

...and 15 more

Background: The rising prevalence of type 2 diabetes (T2D) poses a major global challenge. It remains unresolved to what extent transcriptomic signatures of metabolic dysregulation and T2D can be observed in easily accessible tissues such as blood. Additionally, large-scale human studies are required to further our understanding of the putative inflammatory component of insulin resistance and T2D.

Here we used transcriptomics data from individuals with (n = 789) and without (n = 2127) T2D from the IMI-DIRECT cohorts to describe the co-expression structure of whole blood that mainly reflects processes and cell types of the immune system, and how it relates to metabolically relevant clinical traits and T2D.

Methods: Clusters of co-expressed genes were identified in the non-diabetic IMI-DIRECT cohort and evaluated with regard to stability, as well as preservation and rewiring in the cohort of individuals with T2D. We performed functional and immune cell signature enrichment analyses, and a genome-wide association study to describe the genetic regulation of the modules.

Phenotypic and trans-omics associations of the transcriptomic modules were investigated across both IMI-DIRECT cohorts. Results: We identified 55 whole blood co-expression modules, some of which clustered in larger super-modules. We identified a large number of associations between these transcriptomic modules and measures of insulin action and glucose tolerance.

Some of the metabolically linked modules reflect neutrophil-lymphocyte ratio in blood while others are independent of white blood cell estimates, including a module of genes encoding neutrophil granule proteins with antibacterial properties for which the strongest associations with clinical traits and T2D status were observed.

Through the integration of genetic and multi-omics data, we provide a holistic view of the regulation and molecular context of whole blood transcriptomic modules. We furthermore identified an overlap between genetic signals for T2D and co-expression modules involved in type II interferon signaling. Conclusions: Our results offer a large-scale map of whole blood transcriptomic modules in the context of metabolic disease and point to novel biological candidates for future studies related to T2D.

Language: English
Publisher: BioMed Central
Year: 2020
Pages: 109
ISSN: 1756994x
Types: Journal article
DOI: 10.1186/s13073-020-00806-6
ORCIDs: 0000-0003-0316-5866 , Brorsson, Caroline , De Masi, Federico , Gupta, Ramneek , 0000-0001-9609-7377 , 0000-0002-6880-5759 , 0000-0003-2489-2499 , 0000-0001-8748-3831 , 0000-0001-5948-8993 and 0000-0002-3321-3972

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