| Literature DB >> 22857267 |
Xueyang Feng1, You Xu, Yixin Chen, Yinjie J Tang.
Abstract
BACKGROUND: Concurrent with the efforts currently underway in mapping microbial genomes using high-throughput sequencing methods, systems biologists are building metabolic models to characterize and predict cell metabolisms. One of the key steps in building a metabolic model is using multiple databases to collect and assemble essential information about genome-annotations and the architecture of the metabolic network for a specific organism. To speed up metabolic model development for a large number of microorganisms, we need a user-friendly platform to construct metabolic networks and to perform constraint-based flux balance analysis based on genome databases and experimental results.Entities:
Mesh:
Year: 2012 PMID: 22857267 PMCID: PMC3447728 DOI: 10.1186/1752-0509-6-94
Source DB: PubMed Journal: BMC Syst Biol ISSN: 1752-0509
Comparison of MicrobesFlux and other web-based fluxomics software
| Database | KEGG | KEGG | RAST | iJR904 | None | |
| | Number of organisms | 1,194 | ~780 | ~5,000 | 1 | NA |
| Inflow/outflow introduction | ● | ● | | ● | | |
| | Biomass production implementation | ● | ● | ● | ● | |
| | Automated generation of biomass composition2 | | | ○ | | |
| | Heterologous pathways | ● | ● | | ● | |
| | Knock out pathways | ● | ● | | ● | |
| | Reactant/product Modification | ● | ● | | | |
| | Automated mass balance | ● | ● | ● | ● | ● |
| | Automated compound charging and charge balance | | | ● | | |
| | Transport reactions with coupling to ATP and proton translocation3 | ○ | ○ | | ○ | |
| | Prediction of reaction directionality/reversibility based on thermodynamics4 | | | | | |
| | Gap-fill5 | ○ | ○ | ○ | | |
| | Gene-Protein-Reaction associations | | | ● | ● | |
| | Reaction compartments | | ● | ● | | |
| FBA | ● | ● | ● | ● | ● | |
| | FBA with customized objective function | ● | | | | ● |
| | Dynamic FBA | ● | | | | |
| | Flux Variability Analysis | | ● | | | |
| Pathway visualization | ● | ● | ● | ● | ● | |
| SBML output | ● | ● | ● | ● | ● |
1: The embedded functions, as developed in MicrobesFlux, FAME and Webcoli, are the functional modules that are directly incorporated into the web-based software to provide human-computer interaction and to minimize users’ programming work. Model SEED can achieve the model reconstruction via manual programming on a SBML-formatted metabolic model, instead of using the embedded functions [22].
2: The biomass composition needs to be manually inputted in MicrobesFlux and FAME. Model SEED can automatically generate one template biomass composition for different organisms. Webcoli has fixed the biomass composition of E.coli in the system.
3: The transport reactions (i.e., inflow/outflow) can be coupled to ATP and proton translocation manually in MicrobesFlux, FAME, and Webcoli.
4: None of the software included in Table1 predicts the reaction directionality/reversibility based on thermodynamics.
5: Gap-fill is achieved manually in MicrobesFlux and FAME. Model SEED uses a computational algorithm to achieve semi-automatic gap-fill.
Figure 1 Architecture of MicrobesFlux.
Figure 2 (A) Pathway network of the TOY model used in MicrobesFlux, and (B) the simulated flux distribution of the TOY model used in MicrobesFlux. The same results were obtained by using “linprog” in MATLAB.
Figure 3 Screenshot of the reconstruction of the TOY model by using MicrobesFlux. (A) the TOY model loaded from MicrobesFlux; (B) the pathway information of the TOY model; (C) the customized reconstruction of the TOY model; and (D) the constraint-based flux balance analysis of the TOY model.
Figure 4 Estimation of the growth-associated maintenance (GAM) in sp. strain X514. From this comparison, the GAM value (red dotted line) that was consistent with the experimental data (i.e. growth rate was 0.042 h-1[29]) could be estimated and was indicated on the figure as a 220.0 mmol ATP/g DCW.
Figure 5 Predictions of the relationship between growth rate and outflow fluxes [Unit: mmol/g DCW/h] in sp. strain X514. The glucose inflow flux was fixed as 3.92 mmol/g DCW/h.