| Literature DB >> 24957891 |
Doreen Schwarz1, Isabel Orf2, Joachim Kopka3, Martin Hagemann4.
Abstract
Our knowledge on cyanobacterial molecular biology increased tremendously by the application of the "omics" techniques. Only recently, metabolomics was applied systematically to model cyanobacteria. Metabolomics, the quantitative estimation of ideally the complete set of cellular metabolites, is particularly well suited to mirror cellular metabolism and its flexibility under diverse conditions. Traditionally, small sets of metabolites are quantified in targeted metabolome approaches. The development of separation technologies coupled to mass-spectroscopy- or nuclear-magnetic-resonance-based identification of low molecular mass molecules presently allows the profiling of hundreds of metabolites of diverse chemical nature. Metabolome analysis was applied to characterize changes in the cyanobacterial primary metabolism under diverse environmental conditions or in defined mutants. The resulting lists of metabolites and their steady state concentrations in combination with transcriptomics can be used in system biology approaches. The application of stable isotopes in fluxomics, i.e. the quantitative estimation ofEntities:
Year: 2013 PMID: 24957891 PMCID: PMC3901253 DOI: 10.3390/metabo3010072
Source DB: PubMed Journal: Metabolites ISSN: 2218-1989
Figure 1The primary metabolism of cyanobacteria and major entry points for inorganic carbon or glucose as organic carbon source (shown in red). Cyanobacteria such as Synechocystis 6803 fix CO2 mostly via the Calvin-Benson cycle, which is linked to the photorespiratory 2PG cycle. Organic carbon is exported to the sugar metabolism and eventually stored as glycogen, which is used as carbon source during the night via the oxidative pentose phosphate (OPP) cycle and finally respiration. Organic carbon also can be channeled into glycolysis and tricarboxylic acid (TCA) cycle mostly to produce carbon skeletons for biosynthetic purposes. The molecule 2-oxoglutarate (2OG) is taken as precursor for ammonium assimilation via glutamine-synthetase/glutamine-oxoglutarat-aminotransferase (GS-GOGAT) and represents the main link to nitrogen metabolism. Green squares label metabolites detected by gas-chromatography-mass-spectrometry (GC-MS) [22,51]. Blue squares show as for now non-detected metabolites by GC-MS. Dihydroxyacetone phosphate (DHAP), 2-phosphoglycolate (2PG), 3-phosphoglycerate (3PGA), 2-phosphoglycerate (2PGA), Phosphoenolpyruvate (PEP), 2-oxoglutarate (2OG).
Figure 2The essential workflow of non-targeted metabolite profiling. Non-targeted metabolite profiling generates reproducible and standardized metabolite profiles of biological samples. These profiles are transformed into numerical data matrices using automated data processing methods. Statistical data analyses identify compounds or groups of compounds, which are relevant for the investigated phenomenon. The chemical properties of the compounds of interest, in the case of GC-MS-based profiling, the retention index and the mass spectrum of a compound are matched to reference libraries such as the Golm Metabolome Database (http://gmd.mpimp-golm.mpg.de/). A positive matching result of a metabolite is prerequisite for the physiological interpretation, which is ideally done in context with metabolic pathways. A compound, which cannot be matched to reference information can be documented and referred to via the database entry of its chemical properties until final structural elucidation.
Figure 3Mapping of metabolite profiles from the glycolate dehydrogenase 1 (ΔglcD1) (sll0404) and the glycine decarboxylase (ΔgcvT) (sll0171) mutants to primary metabolism of Synechocystis 6803 wild type. The pathway mapping was customized to the current coverage of GC-MS profiles of primary metabolism. The mapping visualizes the specific metabolic precursor accumulation phenotypes of the photorespiratory mutants defective in glycolate dehydrogenase 1 (ΔglcD1) and in the T-protein subunit of glycine decarboxylase (ΔgcvT), when shifted from high (5%) to low (0.035%) CO2 availability. Data were taken from the supplement of Eisenhut et al. [22]; n.d. (not detected). The top left insert shows the pathway overview and position of the zoom-in on photorespiration. The bottom left insert describes the color-coding of the bar diagrams. The display was partially automated using the VANTED software tool [58].
Figure 4Mass isotopomer distributions of malate from a 13C-pulse experiment of Synechocystis. 6803 wild type pre-acclimated to 0.035% CO2. Mass isotopomer distributions are taken from a time course recorded at t0-t15 after a pulse with 2% (w/w) 13C-NaHCO3. Arrows indicate the preferential incorporation of two coupled 13C-carbon atoms, namely A+2 and A+4, into malate molecules. The mass isotopomer distribution at t0 reflects the naturally occurring isotopes of elements present in the malate molecule. The descriptor A represents the so-called monoisotopic mass of molecules, i.e. molecules that contain only 12C, the most abundant C-isotope, whereas A+1 to A+4 represent the mass of molecules, which contain one or in the case of malate up to four 13C-atoms. (All theoretically possible combinations of 12C and 13C atoms are given in the row below). Abundances are normalized to the sum of all mass isotopomers of malate. The malate 13C-enrichment reflects the non-random dilution of stable isotopes in biological systems. Note that the use of radioactive isotopes such as 14C does not directly provide information on the number of labeled carbon atoms in a molecule.