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OptCouple: Joint simulation of gene knockouts, insertions and medium modifications for prediction of growth-coupled strain designs

机译:OptCouple:基因敲除,插入和培养基修饰的联合模拟,用于预测生长偶联的菌株设计

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Biological production of chemicals is an attractive alternative to petrochemical-based production, due to advantages in environmental impact and the spectrum of feasible targets. However, engineering microbial strains to overproduce a compound of interest can be a long, costly and painstaking process. If production can be coupled to cell growth it is possible to use adaptive laboratory evolution to increase the production rate. Strategies for coupling production to growth, however, are often not trivial to find. Here we present OptCouple, a constraint-based modeling algorithm to simultaneously identify combinations of gene knockouts, insertions and medium supplements that lead to growth-coupled production of a target compound. We validated the algorithm by showing that it can find novel strategies that are growth-coupled in silico for a compound that has not been coupled to growth previously, as well as reproduce known growth-coupled strain designs for two different target compounds. Furthermore, we used OptCouple to construct an alternative design with potential for higher production. We provide an efficient and easy-to-use implementation of the OptCouple algorithm in the cameo Python package for computational strain design.
机译:由于在环境影响和可行目标范围方面的优势,化学物质的生物生产是石化生产的一种有吸引力的替代方法。然而,工程改造微生物菌株以过量生产目标化合物可能是一个漫长,昂贵且费力的过程。如果生产可以与细胞生长耦合,则可以使用自适应实验室进化来提高生产率。然而,将生产与增长相结合的策略往往并非易事。在这里,我们介绍OptCouple,这是一种基于约束的建模算法,可同时识别基因敲除,插入和培养基添加物的组合,从而导致目标化合物的生长偶联生产。我们通过证明它可以找到一种新颖的策略来验证该算法,该策略是针对以前未与生长耦合的化合物进行计算机增长耦合,以及为两种不同的目标化合物复制已知的生长耦合菌株设计。此外,我们使用OptCouple构建了具有更高产量潜力的替代设计。我们在cameo Python软件包中提供了OptCouple算法的高效且易于使用的实现,用于计算应变设计。

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