Tokic Milenko, Hatzimanikatis Vassily, Miskovic Ljubisa
Laboratory of Computational Systems Biotechnology (LCSB), École Polytechnique Fédérale de Lausanne (EPFL), 1015 Lausanne, Switzerland.
Biotechnol Biofuels. 2020 Feb 28;13:33. doi: 10.1186/s13068-020-1665-7. eCollection 2020.
is a promising candidate for the industrial production of biofuels and biochemicals because of its high tolerance to toxic compounds and its ability to grow on a wide variety of substrates. Engineering this organism for improved performances and predicting metabolic responses upon genetic perturbations requires reliable descriptions of its metabolism in the form of stoichiometric and kinetic models.
In this work, we developed kinetic models of to predict the metabolic phenotypes and design metabolic engineering interventions for the production of biochemicals. The developed kinetic models contain 775 reactions and 245 metabolites. Furthermore, we introduce here a novel set of constraints within thermodynamics-based flux analysis that allow for considering concentrations of metabolites that exist in several compartments as separate entities. We started by a gap-filling and thermodynamic curation of iJN1411, the genome-scale model of KT2440. We then systematically reduced the curated iJN1411 model, and we created three core stoichiometric models of different complexity that describe the central carbon metabolism of . Using the medium complexity core model as a scaffold, we generated populations of large-scale kinetic models for two studies. In the first study, the developed kinetic models successfully captured the experimentally observed metabolic responses to several single-gene knockouts of a wild-type strain of KT2440 growing on glucose. In the second study, we used the developed models to propose metabolic engineering interventions for improved robustness of this organism to the stress condition of increased ATP demand.
The study demonstrates the potential and predictive capabilities of the kinetic models that allow for rational design and optimization of recombinant strains for improved production of biofuels and biochemicals. The curated genome-scale model of together with the developed large-scale stoichiometric and kinetic models represents a significant resource for researchers in industry and academia.
由于其对有毒化合物具有高耐受性且能够在多种底物上生长,因此是生物燃料和生物化学品工业生产的一个有前景的候选者。对该生物体进行工程改造以提高性能并预测基因扰动后的代谢反应,需要以化学计量和动力学模型的形式对其代谢进行可靠描述。
在这项工作中,我们开发了的动力学模型,以预测代谢表型并设计用于生物化学品生产的代谢工程干预措施。所开发的动力学模型包含775个反应和245种代谢物。此外,我们在此引入了基于热力学的通量分析中的一组新约束,允许将存在于多个隔室中的代谢物浓度视为单独的实体。我们从对KT2440的基因组规模模型iJN1411进行缺口填充和热力学整理开始。然后,我们系统地简化了整理后的iJN1411模型,并创建了三个不同复杂度的核心化学计量模型,这些模型描述了的中心碳代谢。以中等复杂度的核心模型为框架,我们针对两项研究生成了大规模动力学模型群体。在第一项研究中,所开发的动力学模型成功捕获了在葡萄糖上生长的野生型KT2440菌株的几个单基因敲除的实验观察到的代谢反应。在第二项研究中,我们使用所开发的模型提出代谢工程干预措施,以提高该生物体对增加ATP需求的应激条件的耐受性。
该研究证明了动力学模型的潜力和预测能力,这些模型允许对重组菌株进行合理设计和优化,以提高生物燃料和生物化学品的产量。整理后的的基因组规模模型以及所开发的大规模化学计量和动力学模型为工业界和学术界的研究人员提供了重要资源。