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Growth against entropy in bacterial metabolism: the phenotypic trade-off behind empirical growth rate distributions in E-coli

机译:对抗细菌代谢中的熵的增长:E.coli的经验增长率分布背后的表型权衡

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摘要

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.
机译:细胞代谢的基因组规模模型的解空间提供了在物理上可行的通量配置与细胞代谢表型之间的映射,该图在最基本的水平上通过相应的生长速率进行了描述。通过对大肠杆菌代谢网络的解决方案空间进行采样,我们表明,最近在单细胞分辨率的实验中获得的经验增长率分布可以通过快速增长的表型的较高适应性和较高的表型之间的权衡来解释。缓慢增长的熵较高。基于此,我们提出了一个捕获大量细菌的进化的最小细菌种群模型。在这样的框架中,在实验中观察到的比例关系编码为距最大可达到的增长率相同的距离,最大化的增长率相同的增长率和/或相同的表型变化速率。尽管基于基本的概念简单性,但基于基因组规模的代谢网络重构,这些结果仍可实现多种含义和扩展。

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