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Comprehensive Evaluation of Two Genome-Scale Metabolic Network Models for Scheffersomyces Stipitis

机译:两种基因组规模的代谢网络模型对拟南芥鞭毛虫的综合评价

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摘要

Genome-scale metabolic network models represent the link between the genotype and phenotype of the organism, which are usually reconstructed based on the genome sequence annotation and relevant biochemical and physiological information. These models provide a holistic view of the organism's metabolism, and constraint-based metabolic flux analysis methods have been used extensively to study genome-scale cellular metabolic networks. It is clear that the quality of the metabolic network model determines the outcome of the application. Therefore, it is critically important to determine the accuracy of a genome-scale model in describing the cellular metabolism of the modeled strain. However, because of the model complexity, which results in a system with very high degree of freedom, a good agreement between measured and computed substrate uptake rates and product secretion rates is not sufficient to guarantee the predictive capability of the model. To address this challenge, in this work we presenta novel system identification based framework to extract the qualitative biological knowledge embedded in the quantitative simulation results from the metabolic network models. The extracted knowledge can serve two purposes: model validation during model development phase, which is the focus of this work, and knowledge discovery once the model is validated. This framework bridges the gap between the large amount of numerical results generated from genome-scale models and the knowledge that can be easily understood by biologists. The effectiveness of the proposed framework is demonstrated by its application to the analysis of two recently published genome-scale models of Scheffersomyces stipitis. (C) 2015 Wiley Periodicals, Inc.
机译:基因组规模的代谢网络模型代表了生物体的基因型和表型之间的联系,通常基于基因组序列注释和相关的生化和生理信息对其进行重建。这些模型提供了生物体代谢的整体视图,基于约束的代谢通量分析方法已被广泛用于研究基因组规模的细胞代谢网络。显然,代谢网络模型的质量决定了应用程序的结果。因此,在描述模型菌株的细胞代谢过程中,确定基因组规模模型的准确性至关重要。然而,由于模型的复杂性导致系统具有非常高的自由度,因此测量和计算的底物摄取率与产物分泌率之间的良好一致性不足以保证模型的预测能力。为了应对这一挑战,在这项工作中,我们提出了一个基于系统识别的新颖框架,以从代谢网络模型中提取嵌入定量模拟结果中的定性生物学知识。提取的知识可用于两个目的:在模型开发阶段进行模型验证(这是本文的重点),以及在模型验证后进行知识发现。这个框架弥合了从基因组规模的模型产生的大量数值结果与生物学家容易理解的知识之间的鸿沟。拟议框架的有效性通过将其应用于两个最近公布的裂殖酵母基因组规模模型的分析证明。 (C)2015年Wiley Periodicals,Inc.

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