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GWAS Study

Mining the unknown: a systems approach to metabolite identification combining genetic and metabolic information.

Krumsiek J, Suhre K, Evans AM et al.

23093944 PubMed ID
GWAS Study Type
1678 Participants
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Chapter I

Publication Details

Comprehensive information about this research publication

Authors

KJ
Krumsiek J
SK
Suhre K
EA
Evans AM
MM
Mitchell MW
MR
Mohney RP
MM
Milburn MV
WB
Wägele B
RW
Römisch-Margl W
IT
Illig T
AJ
Adamski J
GC
Gieger C
TF
Theis FJ
KG
Kastenmüller G
Chapter II

Abstract

Summary of the research findings

Recent genome-wide association studies (GWAS) with metabolomics data linked genetic variation in the human genome to differences in individual metabolite levels. A strong relevance of this metabolic individuality for biomedical and pharmaceutical research has been reported. However, a considerable amount of the molecules currently quantified by modern metabolomics techniques are chemically unidentified. The identification of these "unknown metabolites" is still a demanding and intricate task, limiting their usability as functional markers of metabolic processes. As a consequence, previous GWAS largely ignored unknown metabolites as metabolic traits for the analysis. Here we present a systems-level approach that combines genome-wide association analysis and Gaussian graphical modeling with metabolomics to predict the identity of the unknown metabolites. We apply our method to original data of 517 metabolic traits, of which 225 are unknowns, and genotyping information on 655,658 genetic variants, measured in 1,768 human blood samples. We report previously undescribed genotype-metabotype associations for six distinct gene loci (SLC22A2, COMT, CYP3A5, CYP2C18, GBA3, UGT3A1) and one locus not related to any known gene (rs12413935). Overlaying the inferred genetic associations, metabolic networks, and knowledge-based pathway information, we derive testable hypotheses on the biochemical identities of 106 unknown metabolites. As a proof of principle, we experimentally confirm nine concrete predictions. We demonstrate the benefit of our method for the functional interpretation of previous metabolomics biomarker studies on liver detoxification, hypertension, and insulin resistance. Our approach is generic in nature and can be directly transferred to metabolomics data from different experimental platforms.

1,678 European ancestry individuals

Chapter III

Study Statistics

Key metrics and study information

1678
Total Participants
GWAS
Study Type
No
Replicated
European
Ancestry
Germany
Recruitment Country
Chapter IV

Analysis

Comprehensive review of health and genetic findings

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