| Literature DB >> 25309916 |
Joseph Koussa1, Amphun Chaiboonchoe1, Kourosh Salehi-Ashtiani1.
Abstract
The increased demand and consumption of fossil fuels have raised interest in finding renewable energy sources throughout the globe. Much focus has been placed on optimizing microorganisms and primarily microalgae, to efficiently produce compounds that can substitute for fossil fuels. However, the path to achieving economic feasibility is likely to require strain optimization through using available tools and technologies in the fields of systems and synthetic biology. Such approaches invoke a deep understanding of the metabolic networks of the organisms and their genomic and proteomic profiles. The advent of next generation sequencing and other high throughput methods has led to a major increase in availability of biological data. Integration of such disparate data can help define the emergent metabolic system properties, which is of crucial importance in addressing biofuel production optimization. Herein, we review major computational tools and approaches developed and used in order to potentially identify target genes, pathways, and reactions of particular interest to biofuel production in algae. As the use of these tools and approaches has not been fully implemented in algal biofuel research, the aim of this review is to highlight the potential utility of these resources toward their future implementation in algal research.Entities:
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Year: 2014 PMID: 25309916 PMCID: PMC4189764 DOI: 10.1155/2014/649453
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Databases and tools for metabolic network reconstruction.
| Database | Link |
|---|---|
| Algal Functional Annotation Tool |
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| BiGG |
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| BioCyc |
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| Biomart |
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| BRENDA |
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| COBRA |
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| ExPASy |
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| KBASE |
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| KEGG |
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| Model SEED |
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| MetaCyc |
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| Pathway Tools |
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| Reactome |
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| UniProt |
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Figure 1A screen shot of (a) Pathway Tools based on C. Reinhardtii (unpublished data) (b) Metdraw (based on the C. reinhardtii iRC1080 metabolic model [82]) (c) Paint4net visualization of C. reinhardtii central metabolism (based on iAM303 model [84]) flux distribution is shown with forward and reverse fluxes (green and blue, respectively).
Selected software for genome-scale metabolic reconstruction (adapted from Liao et al., 2012 [27]; Agren et al., 2013 [33]; and Hamilton and Reed, 2014 [34]).
| RAVEN | Model SEED | SuBliMinal | GEMSiRV | Pathway Tools | COBRA toolbox | |
|---|---|---|---|---|---|---|
| Input | Annotated genome sequence | Genome annotated in RAST | Species name | Model in sbml format | Annotated genome sequence | Model in sbml format |
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| Reference databases | KEGG | SEED | KEGG, MetaCyc | KEGG | MetaCyc | N/A |
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| Interface | MatLab | Web | Command line | Software | Web, software | MatLab |
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| License | Free (requires a MatLab license) | Free | Free | Free | Free for academic and government use | Free (requires a MatLab license) |
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| Simulation | Yes | Yes | No | Yes | Yes | Yes |
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| Visualization | Yes | Yes (with Cytoscape plug-in) | No | Yes | Yes | Yes |
A comparative table contrasting some of the major model refinement tools.
| Gapfind and Gapfill | GrowMatch | BNICE | MEP | Pathway Tools hole filler | |
|---|---|---|---|---|---|
| Require a reconstructed metabolic model | Yes | Yes | No | Yes | Yes |
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| Additional requirements | External databases, e.g., MetaCyc | Requires | Requires the translation of reactions and substrates into mathematical matrices | Requires expression data analysis | Requires species homology analysis |
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| Refinement strategy | Identifies missing reactions or reverses available reactions | Suppresses genes or adds functionalities associated with genes in the initial model to reconcile the model with | Optimizes pathways in a way that can provide feedback into the model adding compounds and substrates | Identifies missing genes in the model | Identifies missing genes in the model |
A comparative table contrasting major constraint based modeling tools (adapted from Blazier and Papin 2012 [53]).
| GIMME | iMAT | MADE | E-Flux | SIMUP | MTA | |
|---|---|---|---|---|---|---|
| Description | Determines sets of active versus inactive reactions comparing expression levels to a set threshold optimizing the model towards a set objective function | Categorizes reactions into high, moderate, and low expression and solves mathematical equation to optimize for an objective function | Establishes a differential expression profile using several datasets originating from different growth conditions | Sets upper bounds for lowly expressed reactions using an externally set threshold to evaluate expression data sets | Identifies bioengineering strategies that force the cell to coutilize substrates achieving a state of “synthetic survival” | Predicts gene knockout strategies that would alter the metabolic fluxes in a cell in order to achieve the objective function assumed |
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| Advantages | Requires one set of expression data | Requires no knowledge of metabolic functions | Requires no externally set threshold for expression levels | Requires no reduction of expression data to an on/off categorization | Achieves the coutilization of two sugars | Categorizes cell metabolism as “source” or “target” with no necessary |
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| Disadvantages | Requires an externally set threshold for mRNA transcript values | Categorizes genes into high, moderate, and low expression | Requires more than one dataset of expression data to establish differential expression profiles | Sets an upper bound on fluxes using a specific function converting expression data | So far only applicable to sugars | Requires gene expression profiles in order to identify knockout strategies |
Figure 2A schematic representation of a comparative design of electrical and analogous biological circuit. (a) and (d) represent the initial states of the circuits in presence and absence of the input. (b), (c), (e), and (f) represent the designed circuit, addressing the issue raised by the “wild type” design of (a) and (d) when the input signal is interrupted or is not present.
Figure 3A conceptual representation of algal model reconstruction and refinement, integrating various sets of omics data and experimental validation of predictions (based on Manichaikul et al., 2009 [84]).
Figure 4A summary figure representing recombinational transferring of an ORF from a gateway vector in which the initial cloning was done into destination vectors for downstream applications, including high throughput experiments and biochemical assays. Once an ORF is cloned into an “entry vector,” the ORF can easily be transferred into many “destination vectors” with desired expression capabilities and tags [87].