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Systematic Evaluation of Methods for Integration of Transcriptomic Data into Constraint-Based Models of Metabolism

机译:将转录组数据整合到基于约束的代谢模型中的方法的系统评价

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摘要

Constraint-based models of metabolism are a widely used framework for predicting flux distributions in genome-scale biochemical networks. The number of published methods for integration of transcriptomic data into constraint-based models has been rapidly increasing. So far the predictive capability of these methods has not been critically evaluated and compared. This work presents a survey of recently published methods that use transcript levels to try to improve metabolic flux predictions either by generating flux distributions or by creating context-specific models. A subset of these methods is then systematically evaluated using published data from three different case studies in E. coli and S. cerevisiae. The flux predictions made by different methods using transcriptomic data are compared against experimentally determined extracellular and intracellular fluxes (from 13C-labeling data). The sensitivity of the results to method-specific parameters is also evaluated, as well as their robustness to noise in the data. The results show that none of the methods outperforms the others for all cases. Also, it is observed that for many conditions, the predictions obtained by simple flux balance analysis using growth maximization and parsimony criteria are as good or better than those obtained using methods that incorporate transcriptomic data. We further discuss the differences in the mathematical formulation of the methods, and their relation to the results we have obtained, as well as the connection to the underlying biological principles of metabolic regulation.
机译:基于约束的代谢模型是预测基因组规模生化网络中通量分布的广泛使用的框架。将转录组学数据整合到基于约束的模型中的已发布方法的数量正在迅速增加。到目前为止,尚未严格评估和比较这些方法的预测能力。这项工作对最近发表的方法进行了调查,这些方法使用转录本水平尝试通过生成流量分布或通过创建特定于上下文的模型来改善代谢流量的预测。然后,使用来自大肠杆菌和酿酒酵母的三个不同案例研究的公开数据,系统评估这些方法的子集。将使用转录组学数据通过不同方法得出的通量预测值与实验确定的细胞外和细胞内通量进行比较(根据13C标记数据)。还评估了结果对方法特定参数的敏感性,以及它们对数据中噪声的鲁棒性。结果表明,在所有情况下,这些方法均未优于其他方法。同样,可以观察到,在许多情况下,通过使用生长最大化和简约标准的简单通量平衡分析获得的预测与使用合并转录组数据的方法获得的预测一样好或更好。我们进一步讨论了该方法的数学公式中的差异,以及它们与我们获得的结果的关系,以及与代谢调节的基本生物学原理的联系。

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