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Metaheuristics for Strain Optimization Using Transcriptional Information Enriched Metabolic Models

机译:使用转录信息丰富的代谢模型进行菌株优化的元启发式方法

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The identification of a set of genetic manipulations that result in a microbial strain with improved production capabilities of a metabolite with industrial interest is a big challenge in Metabolic Engineering. Evolutionary Algorithms and Simulated Annealing have been used in this task to identify sets of reaction deletions, towards the maximization of a desired objective function. To simulate the cell phenotype for each mutant strain, the Flux Balance Analysis approach is used, assuming organisms have maximized their growth along evolution. In this work, transcriptional information is added to the models using gene-reaction rules. The aim is to find the (near-)optimal set of gene knockouts necessary to reach a given productivity goal. The results obtained are compared with the ones reached using the deletion of reactions, showing that we obtain solutions with similar quality levels and number of knockouts, but biologically more feasible. Indeed, we show that several of the previous solutions are not viable using the provided rules.
机译:在代谢工程学中,鉴定出一组遗传操作会导致微生物菌株的代谢物生产能力得到提高,具有工业价值,这是一个巨大的挑战。在此任务中已使用进化算法和模拟退火来识别反应缺失集,以实现所需目标函数的最大化。为了模拟每种突变菌株的细胞表型,假设生物体在进化过程中已最大化其生长,则使用通量平衡分析方法。在这项工作中,使用基因反应规则将转录信息添加到模型中。目的是找到达到给定生产率目标所需的(近)最佳基因敲除集。将获得的结果与通过删除反应获得的结果进行比较,表明我们获得的溶液的质量水平和敲除次数相似,但生物学上更可行。确实,我们证明了使用提供的规则,某些先前的解决方案是不可行的。

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