Systems Biology Lab/AIMMS, VU University, Amsterdam, The Netherlands.
Institute for Theoretical Biology (ITB), Institute for Biology, Humboldt-University of Berlin, Berlin, Germany.
Bioessays. 2023 Oct;45(10):e2300015. doi: 10.1002/bies.202300015. Epub 2023 Aug 9.
Microbial systems biology has made enormous advances in relating microbial physiology to the underlying biochemistry and molecular biology. By meticulously studying model microorganisms, in particular Escherichia coli and Saccharomyces cerevisiae, increasingly comprehensive computational models predict metabolic fluxes, protein expression, and growth. The modeling rationale is that cells are constrained by a limited pool of resources that they allocate optimally to maximize fitness. As a consequence, the expression of particular proteins is at the expense of others, causing trade-offs between cellular objectives such as instantaneous growth, stress tolerance, and capacity to adapt to new environments. While current computational models are remarkably predictive for E. coli and S. cerevisiae when grown in laboratory environments, this may not hold for other growth conditions and other microorganisms. In this contribution, we therefore discuss the relationship between the instantaneous growth rate, limited resources, and long-term fitness. We discuss uses and limitations of current computational models, in particular for rapidly changing and adverse environments, and propose to classify microbial growth strategies based on Grimes's CSR framework.
微生物系统生物学在将微生物生理学与基础生物化学和分子生物学联系起来方面取得了巨大进展。通过对模式微生物(特别是大肠杆菌和酿酒酵母)进行细致的研究,越来越全面的计算模型可以预测代谢通量、蛋白质表达和生长。建模的基本原理是,细胞受到有限资源的限制,它们会最优地分配这些资源,以最大限度地提高适应性。因此,特定蛋白质的表达是以牺牲其他蛋白质为代价的,这导致了细胞目标(如瞬时生长、应激耐受和适应新环境的能力)之间的权衡。虽然当前的计算模型在实验室环境下对大肠杆菌和酿酒酵母的生长具有很好的预测性,但对于其他生长条件和其他微生物来说,这可能并不适用。在这篇文章中,我们因此讨论了瞬时生长速率、有限资源和长期适应性之间的关系。我们讨论了当前计算模型的用途和局限性,特别是对于快速变化和不利的环境,并提出了根据 Grimes 的 CSR 框架对微生物生长策略进行分类的方法。