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首页> 外文期刊>PLoS Computational Biology >OptRAM: In-silico strain design via integrative regulatory-metabolic network modeling
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OptRAM: In-silico strain design via integrative regulatory-metabolic network modeling

机译:OptRAM:通过集成的调节代谢网络建模进行硅内应变设计

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Author summary Computational strain design algorithms based on genome-scale metabolic models have increasingly been used to guide rational strain design for metabolic engineering. However, most strain optimization algorithms only utilize a metabolic network alone and cannot provide strategies that also involve transcriptional regulation. In this paper, we developed a novel strain design algorithm, named OptRAM (Optimization of Regulatory And Metabolic Network), which can identify combinatorial optimization strategies including overexpression, knockdown or knockout of both transcription factors and metabolic genes, based on our previous IDREAM integrated network framework. OptRAM uses simulated annealing with a novel objective function, which can ensure a favorable coupling between the production of a desired chemical and cell growth. This strategy can be deployed for strain design of bacteria, archaea or eukaryotes. The other advantage of OptRAM compared with previous heuristic approaches is that we systematically evaluated the implementation cost of different solutions and selected strain designs which are more likely to be achievable in experiments. Through the in-silico strain design case studies for producing succinate, 2,3-butanediol, and ethanol in yeast, we demonstrated that OptRAM can identify strategies that increase production beyond what is seen currently, or found as potential designs using alternative methods. We also validated the modified genes chosen by OptRAM in example cases against previous in vivo experiments in the LASER database. Additionally, we experimentally validated the ethanol strain design by evaluating its performance in fermentation. OptRAM provides a robust approach to strain design across gene regulatory network modification and metabolic engineering.
机译:作者摘要基于基因组规模的代谢模型的计算菌株设计算法已越来越多地用于指导代谢工程的合理菌株设计。但是,大多数菌株优化算法仅单独利用代谢网络,而不能提供还涉及转录调控的策略。在本文中,我们开发了一种名为OptRAM(监管和代谢网络的优化)的新颖菌株设计算法,该算法可以基于我们以前的IDREAM集成网络来识别组合优化策略,包括转录因子和代谢基因的过表达,敲除或敲除框架。 OptRAM使用具有新型目标函数的模拟退火,可以确保所需化学物质的产生与细胞生长之间的良好耦合。该策略可用于细菌,古细菌或真核生物的菌株设计。与以前的启发式方法相比,OptRAM的另一个优势在于,我们系统地评估了不同解决方案和选定的应变设计的实施成本,而这些成本更可能是在实验中可以实现的。通过用于在酵母中生产琥珀酸酯,2,3-丁二醇和乙醇的硅菌株设计案例研究,我们证明了OptRAM可以识别出增加产量的策略,这些策略超出了目前的水平,或者使用其他方法可以作为潜在的设计。我们还验证了在示例情况下OptRAM选择的修饰基因是否与激光数据库中以前的体内实验相对比。此外,我们通过评估其在发酵中的性能,通过实验验证了乙醇菌株的设计。 OptRAM为跨基因调节网络修饰和代谢工程的菌株设计提供了一种可靠的方法。

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