Computational Identification of Bacterial Communities
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32797
Computational Identification of Bacterial Communities

Authors: Eleftheria Tzamali, Panayiota Poirazi, Ioannis G. Tollis, Martin Reczko

Abstract:

Stable bacterial polymorphism on a single limiting resource may appear if between the evolved strains metabolic interactions take place that allow the exchange of essential nutrients [8]. Towards an attempt to predict the possible outcome of longrunning evolution experiments, a network based on the metabolic capabilities of homogeneous populations of every single gene knockout strain (nodes) of the bacterium E. coli is reconstructed. Potential metabolic interactions (edges) are allowed only between strains of different metabolic capabilities. Bacterial communities are determined by finding cliques in this network. Growth of the emerged hypothetical bacterial communities is simulated by extending the metabolic flux balance analysis model of Varma et al [2] to embody heterogeneous cell population growth in a mutual environment. Results from aerobic growth on 10 different carbon sources are presented. The upper bounds of the diversity that can emerge from single-cloned populations of E. coli such as the number of strains that appears to metabolically differ from most strains (highly connected nodes), the maximum clique size as well as the number of all the possible communities are determined. Certain single gene deletions are identified to consistently participate in our hypothetical bacterial communities under most environmental conditions implying a pattern of growth-condition- invariant strains with similar metabolic effects. Moreover, evaluation of all the hypothetical bacterial communities under growth on pyruvate reveals heterogeneous populations that can exhibit superior growth performance when compared to the performance of the homogeneous wild-type population.

Keywords: Bacterial polymorphism, clique identification, dynamic FBA, evolution, metabolic interactions.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1081792

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 1334

References:


[1] D. Treves, S. Manning, and J. Adams, "Repeated evolution of an acetate-crossfeeding polymorphism in long-term populations of Escherichia coli," Mol. Biol. Evol., vol. 15, no. 7, pp. 789-797, 1998.
[2] A. Varma, and B.O. Palsson, "Stoichiometric flux balance models quantitatively predict growth and metabolic by-product secretion in wild-type Escherichia coli W3110," Appl. Environ. Microbiol., vol. 60, no. 10, pp. 3724-31, 1994.
[3] E. Tzamali, and M. Reczko, "The benefit of cooperation: Identifying growth efficient interacting strains of Escherichia coli using metabolic flux balance models," 8th IEEE International conference on bioinformatics and bioengineering, Greece, 2008.
[4] J.L. Reed, et al., "An expanded genome-scale model of Escherichia coli K-12 (iJR904 GSM/GPR)," Genome Biol, vol. 4, no. 9, pp. R54, 2003.
[5] Scott A Becker, Adam M Feist, Monica L Mo, Gregory Hannum, Bernhard ├ÿ Palsson & Markus J Herrgard, "Quantitative prediction of cellular metabolism with constraint-based models: the COBRA Toolbox," Nature Protocols, vol. 2, pp. 727-738, 2007.
[6] Janet M. Six, Ioannis G. Tollis, "Effective Graph Visualization Via Node Grouping," infovis, pp.51-58, 2001 IEEE Symposium on Information Visualization (InfoVis 2001), 2001
[7] Paul Rainey, Angus Buckling, Rees Kassen and Michael Travisano, "The emergence and maintenance of diversity: insights from experimental bacterial populations," Tree, vol. 15, pp. 243-247, 2000.
[8] R. F. Rosenzweig, R. R. Sharp, D. S. Treves, and J. Adams, "Microbial Evolution in a Simple Unstructured Environment: Genetic Differentiation in Escherichia Coli," Genetics, vol. 137(4), pp. 903- 917, 1994
[9] Patric R. J. Ostergard, "A New Algorithm for the Maximum-Weight Clique Problem," Electronic Notes in Discrete Mathematics, 6th Twente Workshop on Graphs and Combinatorial Optimization, vol. 3, pp. 153- 156, 1999.