Growth against entropy in bacterial metabolism: the phenotypic trade-off behind empirical growth rate distributions in E-coli
Articolo
Data di Pubblicazione:
2016
Abstract:
The solution space of genome-scale models of cellular metabolism provides a map between physically viable flux configurations and cellular metabolic phenotypes described, at the most basic level, by the corresponding growth rates. By sampling the solution space of E. coli' s metabolic network, we show that empirical growth rate distributions recently obtained in experiments at single-cell resolution can be explained in terms of a trade-off between the higher fitness of fast-growing phenotypes and the higher entropy of slow-growing ones. Based on this, we propose a minimal model for the evolution of a large bacterial population that captures this trade-off. The scaling relationships observed in experiments encode, in such frameworks, for the same distance from the maximum achievable growth rate, the same degree of growth rate maximization, and/or the same rate of phenotypic change. Being grounded on genome-scale metabolic network reconstructions, these results allow for multiple implications and extensions in spite of the underlying conceptual simplicity.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
metabolism; maximum entropy; cell-to-cell variability; flux balance analysis
Elenco autori:
DE MARTINO, Andrea
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