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An in silico platform for the design of heterologous pathways in nonnative metabolite production

机译:用于非天然代谢产物生产中异源途径设计的计算机平台

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Background Microorganisms are used as cell factories to produce valuable compounds in pharmaceuticals, biofuels, and other industrial processes. Incorporating heterologous metabolic pathways into well-characterized hosts is a major strategy for obtaining these target metabolites and improving productivity. However, selecting appropriate heterologous metabolic pathways for a host microorganism remains difficult owing to the complexity of metabolic networks. Hence, metabolic network design could benefit greatly from the availability of an in silico platform for heterologous pathway searching. Results We developed an algorithm for finding feasible heterologous pathways by which nonnative target metabolites are produced by host microorganisms, using Escherichia coli, Corynebacterium glutamicum, and Saccharomyces cerevisiae as templates. Using this algorithm, we screened heterologous pathways for the production of all possible nonnative target metabolites contained within databases. We then assessed the feasibility of the target productions using flux balance analysis, by which we could identify target metabolites associated with maximum cellular growth rate. Conclusions This in silico platform, designed for targeted searching of heterologous metabolic reactions, provides essential information for cell factory improvement.
机译:背景技术微生物被用作细胞工厂以在制药,生物燃料和其他工业过程中生产有价值的化合物。将异源代谢途径整合入特征明确的宿主是获得这些目标代谢物并提高生产率的主要策略。然而,由于代谢网络的复杂性,为宿主微生物选择合适的异源代谢途径仍然困难。因此,代谢网络设计可以从用于异源途径搜索的计算机平台的可用性中大大受益。结果我们开发了一种算法,以大肠杆菌,谷氨酸棒状杆菌和酿酒酵母为模板,通过宿主微生物发现非天然目标代谢物的可行异源途径。使用此算法,我们筛选了异源途径来生产数据库中包含的所有可能的非天然目标代谢物。然后,我们使用流量平衡分析评估了目标产品的可行性,通过该分析我们可以确定与最大细胞生长速率相关的目标代谢物。结论此in silico平台旨在针对异源代谢反应进行有针对性的搜索,为改善细胞工厂提供了重要信息。

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