Giordano Nils, Mairet Francis, Gouzé Jean-Luc, Geiselmann Johannes, de Jong Hidde
Université Grenoble Alpes, Laboratoire Interdisciplinaire de Physique (CNRS UMR 5588), Saint Martin d'Hères, France.
Inria, Grenoble - Rhône-Alpes research centre, Montbonnot, Saint Ismier Cedex, France.
PLoS Comput Biol. 2016 Mar 9;12(3):e1004802. doi: 10.1371/journal.pcbi.1004802. eCollection 2016 Mar.
Microbial physiology exhibits growth laws that relate the macromolecular composition of the cell to the growth rate. Recent work has shown that these empirical regularities can be derived from coarse-grained models of resource allocation. While these studies focus on steady-state growth, such conditions are rarely found in natural habitats, where microorganisms are continually challenged by environmental fluctuations. The aim of this paper is to extend the study of microbial growth strategies to dynamical environments, using a self-replicator model. We formulate dynamical growth maximization as an optimal control problem that can be solved using Pontryagin's Maximum Principle. We compare this theoretical gold standard with different possible implementations of growth control in bacterial cells. We find that simple control strategies enabling growth-rate maximization at steady state are suboptimal for transitions from one growth regime to another, for example when shifting bacterial cells to a medium supporting a higher growth rate. A near-optimal control strategy in dynamical conditions is shown to require information on several, rather than a single physiological variable. Interestingly, this strategy has structural analogies with the regulation of ribosomal protein synthesis by ppGpp in the enterobacterium Escherichia coli. It involves sensing a mismatch between precursor and ribosome concentrations, as well as the adjustment of ribosome synthesis in a switch-like manner. Our results show how the capability of regulatory systems to integrate information about several physiological variables is critical for optimizing growth in a changing environment.
微生物生理学呈现出将细胞的大分子组成与生长速率联系起来的生长规律。最近的研究表明,这些经验规律可以从资源分配的粗粒度模型中推导出来。虽然这些研究聚焦于稳态生长,但在自然栖息地中很少能找到这样的条件,在那里微生物不断受到环境波动的挑战。本文的目的是使用一个自我复制模型,将微生物生长策略的研究扩展到动态环境。我们将动态生长最大化表述为一个最优控制问题,可使用庞特里亚金极大值原理来求解。我们将这个理论金标准与细菌细胞中生长控制的不同可能实现方式进行比较。我们发现,在稳态下能实现生长速率最大化的简单控制策略,在从一种生长状态转变到另一种生长状态时并非最优,例如当将细菌细胞转移到支持更高生长速率的培养基中时。结果表明,在动态条件下,一种近乎最优的控制策略需要关于几个而非单个生理变量的信息。有趣的是,这种策略在结构上类似于肠道细菌大肠杆菌中ppGpp对核糖体蛋白合成的调控。它涉及感知前体和核糖体浓度之间的不匹配,以及以类似开关的方式调整核糖体合成。我们的结果表明,调节系统整合关于几个生理变量信息的能力对于在变化的环境中优化生长至关重要。