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Turnover Dependent Phenotypic Simulation: A Quantitative Constraint-Based Simulation Method That Accommodates All Main Strain Design Strategies

机译:周转依赖性表型模拟:一种基于定量约束的仿真方法,适用于所有主要应变设计策略

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摘要

The uncertain relationship between genotype and phenotype can make strain engineering an arduous trial and error process. To identify promising gene targets faster, constraint-based modeling methodologies are often used, although they remain limited in their predictive power. Even though the search for gene knockouts is fairly established in constraint-based modeling, most strain design methods still model gene up/down-regulations by forcing the corresponding flux values to fixed levels without taking in consideration the availability of resources. Here, we present a constraint-based algorithm, the turnover dependent phenotypic simulation (TDPS) that quantitatively simulates phenotypes in a resource conscious manner. Unlike other available algorithms, TDPS does not force flux values and considers resource availability, using metabolite production turnovers as an indicator of metabolite abundance. TDPS can simulate up-regulation of metabolic reactions as well as the introduction of heterologous genes, alongside gene deletion and down-regulation scenarios. TDPS simulations were validated using engineered Saccharomyces cerevisiae strains available in the literature by comparing the simulated and experimental production yields of the target metabolite. For many of the strains evaluated, the experimental production yields were within the simulated intervals and the relative strain performance could be predicted with TDPS. However, the algorithm failed to predict some of the production changes observed experimentally, suggesting that further improvements are necessary. The results also showed that TDPS may be helpful in finding metabolic bottlenecks, but further experiments would be required to confirm these findings.
机译:基因型与表型之间的不确定关系可以使应变工程成为艰苦的试验和误差过程。为了识别有前途的基因靶标,通常使用基于约束的建模方法,但它们在预测力中保持有限。即使在基于约束的建模中公正地确定基因敲除,大多数应变设计方法仍然通过将相应的通量值强制到固定水平而不考虑资源的可用性,仍然通过将相应的助焊量施加到固定水平来模拟基因上/下规定。这里,我们提出了一种基于约束的算法,依赖于依赖表型模拟(TDP),其定量模拟资源有意识的方式的表型。与其他可用算法不同,TDP不强制磁通值并考虑资源可用性,使用代谢物生产流失,作为代谢物丰富的指标。 TDPS可以模拟代谢反应的上调以及异源基因的引入,以及基因缺失和下调情景。通过比较靶代谢物的模拟和实验产量的模拟和实验产量,在文献中使用工程化酿酒酵母菌菌株验证了TDPS模拟。对于评估的许多菌株,实验产量产量在模拟间隔内,并且可以用TDP预测相对应变性能。然而,该算法未能预测实验观察到的一些生产变化,表明需要进一步改进。结果还表明,TDPS可能有助于寻找代谢瓶颈,但是需要进一步的实验来确认这些发现。

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