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Designing metabolic engineering strategies with genome-scale metabolic flux modeling

机译:使用基因组规模的代谢通量建模设计代谢工程策略

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Abstract: New in silico tools that make use of genome-scale metabolic flux modeling are improving the design of metabolic engineering strategies. This review highlights the latest developments in this area, explains the interface between these in silico tools and the experimental implementation tools of metabolic engineers, and provides a way forward so that in silico predictions can better mimic reality and more experimental methods can be considered in simulation studies. The several methodologies for solving genome-scale models (eg, flux balance analysis [FBA], parsimonious FBA, flux variability analysis, and minimization of metabolic adjustment) all have unique advantages and applications. There are two basic approaches to designing metabolic engineering strategies in silico, and both have demonstrated success in the literature. The first involves: 1) making a genetic manipulation in a model; 2) testing for improved performance through simulation; and 3) iterating the process. The second approach has been used in more recently designed in silico tools and involves: 1) comparing metabolic flux profiles of a wild-type and ideally engineered state and 2) designing engineering strategies based on the differences in these flux profiles. Improvements in genome-scale modeling are anticipated in areas such as the inclusion of all relevant cellular machinery, the ability to understand and anticipate the results of combinatorial enrichment experiments, and constructing dynamic and flexible biomass equations that can respond to environmental and genetic manipulations.
机译:摘要:利用基因组规模的代谢通量建模的新型计算机模拟工具正在改善代谢工程策略的设计。这篇综述重点介绍了该领域的最新发展,解释了这些in silico工具与代谢工程师的实验实施工具之间的接口,并提供了前进的方向,以便inico的预测可以更好地模拟现实,并且可以在仿真中考虑更多的实验方法学习。解决基因组规模模型的几种方法(例如通量平衡分析[FBA],简约FBA,通量变异性分析和最小化代谢调节)均具有独特的优势和应用。在计算机上设计代谢工程策略有两种基本方法,并且两种方法均已在文献中证明是成功的。第一个涉及:1)在模型中进行遗传操作; 2)通过仿真测试以提高性能; 3)重复该过程。第二种方法已在计算机软件的最新设计中使用,涉及:1)比较野生型和理想工程状态的代谢通量图,以及2)根据这些通量图的差异设计工程策略。在诸如所有相关细胞机制的纳入,理解和预期组合富集实验结果的能力以及构建可响应环境和遗传操作的动态和灵活的生物量方程式等领域,有望实现基因组规模建模的改进。

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