Mannan Ahmad A, Toya Yoshihiro, Shimizu Kazuyuki, McFadden Johnjoe, Kierzek Andrzej M, Rocco Andrea
Faculty of Health and Medical Sciences, University of Surrey, Guildford, Surrey, GU2 7XH, United Kingdom.
Department of Bioinformatic Engineering, Graduate School of Information Science and Technology, Osaka University, 1-5 Yamadaoka, Suita, Osaka, 565-0871, Japan; Institute for Advanced Biosciences, Keio University, Nipponkoku 403-1, Daihouji, Tsuruoka, Yamagata, 997-0017, Japan.
PLoS One. 2015 Oct 15;10(10):e0139507. doi: 10.1371/journal.pone.0139507. eCollection 2015.
An understanding of the dynamics of the metabolic profile of a bacterial cell is sought from a dynamical systems analysis of kinetic models. This modelling formalism relies on a deterministic mathematical description of enzyme kinetics and their metabolite regulation. However, it is severely impeded by the lack of available kinetic information, limiting the size of the system that can be modelled. Furthermore, the subsystem of the metabolic network whose dynamics can be modelled is faced with three problems: how to parameterize the model with mostly incomplete steady state data, how to close what is now an inherently open system, and how to account for the impact on growth. In this study we address these challenges of kinetic modelling by capitalizing on multi-'omics' steady state data and a genome-scale metabolic network model. We use these to generate parameters that integrate knowledge embedded in the genome-scale metabolic network model, into the most comprehensive kinetic model of the central carbon metabolism of E. coli realized to date. As an application, we performed a dynamical systems analysis of the resulting enriched model. This revealed bistability of the central carbon metabolism and thus its potential to express two distinct metabolic states. Furthermore, since our model-informing technique ensures both stable states are constrained by the same thermodynamically feasible steady state growth rate, the ensuing bistability represents a temporal coexistence of the two states, and by extension, reveals the emergence of a phenotypically heterogeneous population.
通过对动力学模型进行动态系统分析,来探寻对细菌细胞代谢谱动态变化的理解。这种建模形式依赖于酶动力学及其代谢物调控的确定性数学描述。然而,由于缺乏可用的动力学信息,它受到了严重阻碍,限制了可建模系统的规模。此外,代谢网络中其动态变化可被建模的子系统面临三个问题:如何用大多不完整的稳态数据对模型进行参数化,如何封闭现在本质上开放的系统,以及如何考虑对生长的影响。在本研究中,我们通过利用多组学稳态数据和基因组规模代谢网络模型来应对动力学建模的这些挑战。我们用这些来生成参数,将嵌入在基因组规模代谢网络模型中的知识整合到迄今为止实现的大肠杆菌中心碳代谢最全面的动力学模型中。作为应用,我们对所得的富集模型进行了动态系统分析。这揭示了中心碳代谢的双稳态,从而表明其具有表达两种不同代谢状态的潜力。此外,由于我们的模型构建技术确保两种稳定状态都受相同的热力学可行稳态生长速率的约束,随之而来的双稳态代表了两种状态的暂时共存,进而揭示了表型异质群体的出现。