Faculty of Mathematics, University of Vienna, Austria.
Department of Analytical Chemistry, University of Vienna, Austria.
PLoS Comput Biol. 2022 Feb 1;18(2):e1009843. doi: 10.1371/journal.pcbi.1009843. eCollection 2022 Feb.
Traditional (genome-scale) metabolic models of cellular growth involve an approximate biomass "reaction", which specifies biomass composition in terms of precursor metabolites (such as amino acids and nucleotides). On the one hand, biomass composition is often not known exactly and may vary drastically between conditions and strains. On the other hand, the predictions of computational models crucially depend on biomass. Also elementary flux modes (EFMs), which generate the flux cone, depend on the biomass reaction. To better understand cellular phenotypes across growth conditions, we introduce and analyze new classes of elementary vectors for comprehensive (next-generation) metabolic models, involving explicit synthesis reactions for all macromolecules. Elementary growth modes (EGMs) are given by stoichiometry and generate the growth cone. Unlike EFMs, they are not support-minimal, in general, but cannot be decomposed "without cancellations". In models with additional (capacity) constraints, elementary growth vectors (EGVs) generate a growth polyhedron and depend also on growth rate. However, EGMs/EGVs do not depend on the biomass composition. In fact, they cover all possible biomass compositions and can be seen as unbiased versions of elementary flux modes/vectors (EFMs/EFVs) used in traditional models. To relate the new concepts to other branches of theory, we consider autocatalytic sets of reactions. Further, we illustrate our results in a small model of a self-fabricating cell, involving glucose and ammonium uptake, amino acid and lipid synthesis, and the expression of all enzymes and the ribosome itself. In particular, we study the variation of biomass composition as a function of growth rate. In agreement with experimental data, low nitrogen uptake correlates with high carbon (lipid) storage.
传统(全基因组规模)代谢模型涉及细胞生长的近似生物量“反应”,该反应根据前体代谢物(如氨基酸和核苷酸)来指定生物量组成。一方面,生物量组成通常并不完全清楚,并且在条件和菌株之间可能有很大差异。另一方面,计算模型的预测取决于生物量。同样,生成通量锥的基本通量模式 (EFMs) 也取决于生物质反应。为了更好地理解跨生长条件的细胞表型,我们引入并分析了涉及所有大分子合成反应的综合(下一代)代谢模型的新类别的基本向量,包括基本生长模式 (EGMs)。它们由化学计量学给出并生成生长锥。与 EFMs 不同,它们通常不是支持最小的,但不能“无抵消”分解。在具有附加(能力)约束的模型中,基本生长向量 (EGV) 生成生长多面体,并且还取决于生长速率。然而,EGMs/EGVs 不依赖于生物量组成。事实上,它们涵盖了所有可能的生物量组成,并且可以被视为传统模型中使用的基本通量模式/向量 (EFMs/EFVs) 的无偏版本。为了将新概念与理论的其他分支联系起来,我们考虑了反应的自催化集。此外,我们在涉及葡萄糖和铵摄取、氨基酸和脂质合成以及所有酶和核糖体自身表达的自组装细胞的小模型中说明了我们的结果。特别是,我们研究了生物量组成随生长速率的变化。与实验数据一致,低氮摄取与高碳(脂质)储存相关。