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<p0> Recent advances in computational biology led to emergence of databases with whole-genome metabolic networks. They describe the flow of metabolites within a particular organism. Usage of <em>constraint-based method</em> allows to make quantitative predictions about the phenotype while eliminating many of the complex parameters. Of particular interest to our project is <em>flux balance analysis (FBA)</em>, which allows to predict the optimal steady-state biomass flux, which is often correlated with cell growth rate<sup>[1]</sup> and is the most likely observed phenotype. One major advantage of FBA is that it does not require knowledge of enzymatic parameters. The mathematics of FBA is elucidated in <a href="https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4911401/figure/F2/">this figure<sup>[2]</sup></a></p0> | <p0> Recent advances in computational biology led to emergence of databases with whole-genome metabolic networks. They describe the flow of metabolites within a particular organism. Usage of <em>constraint-based method</em> allows to make quantitative predictions about the phenotype while eliminating many of the complex parameters. Of particular interest to our project is <em>flux balance analysis (FBA)</em>, which allows to predict the optimal steady-state biomass flux, which is often correlated with cell growth rate<sup>[1]</sup> and is the most likely observed phenotype. One major advantage of FBA is that it does not require knowledge of enzymatic parameters. The mathematics of FBA is elucidated in <a href="https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4911401/figure/F2/">this figure<sup>[2]</sup></a></p0> | ||
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Revision as of 16:24, 2 August 2017
------Metabolic Modeling
Results and Discussion
Gold Medal Criterion #3
To complete for the gold medal criterion #3, please describe your work on this page and fill out the description on your judging form. To achieve this medal criterion, you must convince the judges that your team has gained insight into your project from modeling. You may not convince the judges if your model does not have an effect on your project design or implementation.
Please see the 2017 Medals Page for more information.
Best Model Special Prize
To compete for the Best Model prize, please describe your work on this page and also fill out the description on the judging form. Please note you can compete for both the gold medal criterion #3 and the best model prize with this page.
You must also delete the message box on the top of this page to be eligible for the Best Model Prize.
Inspiration
Here are a few examples from previous teams:
References
[1] Feist, Adam M., and Bernhard O. Palsson. “The Biomass Objective Function.” Current opinion in microbiology 13.3 (2010): 344–349. PMC. Web. 28 July 2017.
[2] Cuevas, Daniel A. et al. “From DNA to FBA: How to Build Your Own Genome-Scale Metabolic Model.” Frontiers in Microbiology 7 (2016): 907. PMC. Web. 27 July 2017.
[3] Henry, C.S., DeJongh, M., Best, A.B., Frybarger, P.M., Linsay, B., and R.L. Stevens. High-throughput Generation and Optimization of Genome-scale Metabolic Models. Nature Biotechnology, (2010).
[4] COBRApy: COnstraints-Based Reconstruction and Analysis for Python.
[5] Mackinac: A bridge between ModelSEED and COBRApy to generate and analyze genome-scale metabolic models.
[?] MLA Adadi, Roi et al. “Prediction of Microbial Growth Rate versus Biomass Yield by a Metabolic Network with Kinetic Parameters.” Ed. Nathan D. Price. PLoS Computational Biology 8.7 (2012): e1002575. PMC. Web. 31 July 2017.
[?} Molenaar, Douwe et al. “Shifts in Growth Strategies Reflect Tradeoffs in Cellular Economics.” Molecular Systems Biology 5 (2009): 323. PMC. Web. 31 July 2017.