analysis of piscirickettsia salmonis metabolism using genome-scale reconstruction, modeling, and testing

analysis of piscirickettsia salmonis metabolism using genome-scale reconstruction, modeling, and testing

;María P. Cortés;María P. Cortés;María P. Cortés;Sebastián N. Mendoza;Sebastián N. Mendoza;Dante Travisany;Dante Travisany;Dante Travisany;Alexis Gaete;Anne Siegel;Verónica Cambiazo;Verónica Cambiazo;Alejandro Maass;Alejandro Maass;Alejandro Maass
journal of magnetic resonance (san diego, calif : 1997) 2017 Vol. 8 pp. -
175
corts2017frontiersanalysis

Abstract

Piscirickettsia salmonis is an intracellular bacterial fish pathogen that causes piscirickettsiosis, a disease with highly adverse impact in the Chilean salmon farming industry. The development of effective treatment and control methods for piscireckttsiosis is still a challenge. To meet it the number of studies on P. salmonis has grown in the last couple of years but many aspects of the pathogen’s biology are still poorly understood. Studies on its metabolism are scarce and only recently a metabolic model for reference strain LF-89 was developed. We present a new genome-scale model for P. salmonis LF-89 with more than twice as many genes as in the previous model and incorporating specific elements of the fish pathogen metabolism. Comparative analysis with models of different bacterial pathogens revealed a lower flexibility in P. salmonis metabolic network. Through constraint-based analysis, we determined essential metabolites required for its growth and showed that it can benefit from different carbon sources tested experimentally in new defined media. We also built an additional model for strain A1-15972, and together with an analysis of P. salmonis pangenome, we identified metabolic features that differentiate two main species clades. Both models constitute a knowledge-base for P. salmonis metabolism and can be used to guide the efficient culture of the pathogen and the identification of specific drug targets.

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183307
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10.3389/fmicb.2017.02462
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