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The metabolic network coherence of human transcriptomes is associated with genetic variation at the cadherin 18 locus.

Authors :
Schlicht, Kristina
Nyczka, Piotr
Caliebe, Amke
Freitag-Wolf, Sandra
Claringbould, Annique
Franke, Lude
Võsa, Urmo
Kardia, Sharon L. R.
Smith, Jennifer A.
Zhao, Wei
Gieger, Christian
Peters, Annette
Prokisch, Holger
Strauch, Konstantin
Baurecht, Hansjörg
Weidinger, Stephan
Rosenstiel, Philip
Hütt, Marc-Thorsten
Knecht, Carolin
Szymczak, Silke
Source :
Human Genetics; Apr2019, Vol. 138 Issue 4, p375-388, 14p
Publication Year :
2019

Abstract

Metabolic coherence (MC) is a network-based approach to dimensionality reduction that can be used, for example, to interpret the joint expression of genes linked to human metabolism. Computationally, the derivation of 'transcriptomic' MC involves mapping of an individual gene expression profile onto a gene-centric network derived beforehand from a metabolic network (currently Recon2), followed by the determination of the connectivity of a particular, profile-specific subnetwork. The biological significance of MC has been exemplified previously in the context of human inflammatory bowel disease, among others, but the genetic architecture of this quantitative cellular trait is still unclear. Therefore, we performed a genome-wide association study (GWAS) of MC in the 1000 Genomes/ GEUVADIS data (n = 457) and identified a solitary genome-wide significant association with single nucleotide polymorphisms (SNPs) in the intronic region of the cadherin 18 (CDH18) gene on chromosome 5 (lead SNP: rs11744487, p = 1.2 × 10<superscript>− 8</superscript>). Cadherin 18 is a transmembrane protein involved in human neural development and cell-to-cell signaling. Notably, genetic variation at the CDH18 locus has been associated with metabolic syndrome-related traits before. Replication of our genome-wide significant GWAS result was successful in another population study from the Netherlands (BIOS, n = 2661; lead SNP), but failed in two additional studies (KORA, Germany, n = 711; GENOA, USA, n = 411). Besides sample size issues, we surmise that these discrepant findings may be attributable to technical differences. While 1000 Genomes/GEUVADIS and BIOS gene expression profiles were generated by RNA sequencing, the KORA and GENOA data were microarray-based. In addition to providing first evidence for a link between regional genetic variation and a metabolism-related characteristic of human transcriptomes, our findings highlight the benefit of adopting a systems biology-oriented approach to molecular data analysis. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03406717
Volume :
138
Issue :
4
Database :
Complementary Index
Journal :
Human Genetics
Publication Type :
Academic Journal
Accession number :
136098832
Full Text :
https://doi.org/10.1007/s00439-019-01994-x