| Literature DB >> 26498510 |
Anne Goelzer1, Jan Muntel2, Victor Chubukov3, Matthieu Jules4, Eric Prestel4, Rolf Nölker2, Mahendra Mariadassou1, Stéphane Aymerich4, Michael Hecker2, Philippe Noirot4, Dörte Becher2, Vincent Fromion5.
Abstract
Predicting resource allocation between cell processes is the primary step towards decoding the evolutionary constraints governing bacterial growth under various conditions. Quantitative prediction at genome-scale remains a computational challenge as current methods are limited by the tractability of the problem or by simplifying hypotheses. Here, we show that the constraint-based modeling method Resource Balance Analysis (RBA), calibrated using genome-wide absolute protein quantification data, accurately predicts resource allocation in the model bacterium Bacillus subtilis for a wide range of growth conditions. The regulation of most cellular processes is consistent with the objective of growth rate maximization except for a few suboptimal processes which likely integrate more complex objectives such as coping with stressful conditions and survival. As a proof of principle by using simulations, we illustrated how calibrated RBA could aid rational design of strains for maximizing protein production, offering new opportunities to investigate design principles in prokaryotes and to exploit them for biotechnological applications.Entities:
Keywords: Constraint-based modeling; Resource allocation; Strain design; Systems biology
Mesh:
Year: 2015 PMID: 26498510 DOI: 10.1016/j.ymben.2015.10.003
Source DB: PubMed Journal: Metab Eng ISSN: 1096-7176 Impact factor: 9.783