| Literature DB >> 27118561 |
Liam G Fearnley1,2,3, Michael Inouye4,2,3.
Abstract
Metabolomics is becoming feasible for population-scale studies of human disease. In this review, we survey epidemiological studies that leverage metabolomics and multi-omics to gain insight into disease mechanisms. We outline key practical, technological and analytical limitations while also highlighting recent successes in integrating these data. The use of multi-omics to infer reaction rates is discussed as a potential future direction for metabolomics research, as a means of identifying biomarkers as well as inferring causality. Furthermore, we highlight established analysis approaches as well as simulation-based methods currently used in single- and multi-cell levels in systems biology.Entities:
Keywords: epidemiology; genomics; metabolomics; systems biology; transcriptomics
Mesh:
Substances:
Year: 2016 PMID: 27118561 PMCID: PMC5100607 DOI: 10.1093/ije/dyw046
Source DB: PubMed Journal: Int J Epidemiol ISSN: 0300-5771 Impact factor: 7.196
Figure. 1.A schematic of integrating metabolomics data with other multi-omics data as part of known reaction networks. Metabolomics together with other multi-omics data can be integrated into the analysis of metabolism at different points in various systems. Genomic, epigenomic, transcriptomic and proteomic variation all have various direct and indirect effects on the function and cross-talk of various metabolic and signalling networks.
Figure. 2.The lipid-leukocyte (LL) module and its known metabolite associations. A number of classes of metabolites (left, via NMR and MS) are associated with the LL co-expression module. Starred metabolites (leucine and isoleucine) are directly quantified on both MS and NMR platforms. This module is expressed in basophils and mast cells, which play significant roles in both disease and the development of the innate immune system. The specific role of the LL module in these processes remains unknown.
Figure. 3.Steady-state metabolic measurements vs integrative multi-system measurement and modelling. a) Single-time, steady-state metabolic measurement directly measures the concentration of metabolites within the metabolism, but does not provide direct insight into the known interactions between these molecules. b) Integrative, multi-system measurement and modelling provide this missing insight into the interactions within the system; not only are metabolites measured, but also information about the rates of reactions that convert metabolites into other metabolites are inferred, modelled or predicted, providing more insight into the behaviour of the system as a whole.
Figure. 4.An overview of the molecular and genetic basis of phenylketonuria (PKU). PKU is an inborn error of metabolism where symptoms occur due to accumulation of phenylalanine (Phe) in the blood (hyperphenylalanaemia), which overwhelms transporters that carry amino acids over the blood-brain barrier.
Summary of measurement technologies and analysis techniques discussed in this review with selected example references
| Measurement technologies | Description |
|---|---|
| Mass spectrometry | Rapid detection of low-concentration metabolites |
| GC-MS | Separation of volatile metabolites |
| LC-MS | Separation of non-volatile metabolites, broad scope |
| Direct infusion | Fast broad coverage of metabolites |
| High-throughput NMR | Complementary measurement technology; precise concentration measurement |
| Metabolic flux imaging | |
| Metabolic association studies | Direct analogue of GWAS studies; testing of metabolites for association with phenotype |
| Gaussian graphical modelling | Inference and reconstruction of metabolic pathways where reactions are unknown |
| Pathway analysis | Test for enrichment of sets of functionally related entities associated with phenotype |
| Gene set enrichment analysis | Gene sets sourced from databases and ontologies (e.g. Gene Ontology) |
| Metabolic set enrichment analysis | Metabolite sets sourced from databases (e.g. KEGG database) |
| Metabolomic GWAS | Finding single nucleotide polymorphism s (SNPs) correlated with metabolic markers; GWAS with metabolite as trait |
| Classic mendelian randomization | Determination of causal relationships between an exposure and outcome of interest using SNP as instrument |
| Two-step MR | As for classic MR, but enables the testing of intermediate phenotypes that may confound the instrument |
| Metabolite association with co-expression networks | Association of metabolite measurements with systems of genes that have similar expression behaviour |
| Metabolite ratios | Association of ratios of metabolites, used as proxies for reaction rates, with a phenotype |
| Genome-scale model simulation | Simulation of known reactions incorporating genetic variation |