Reed Jennifer L, Palsson Bernhard Ø
Department of Bioengineering, University of California, San Diego, San Diego, California 92092-0412, USA.
Genome Res. 2004 Sep;14(9):1797-805. doi: 10.1101/gr.2546004.
The constraint-based analysis of genome-scale metabolic and regulatory networks has been successful in predicting phenotypes and useful for analyzing high-throughput data sets. Within this modeling framework, linear optimization has been used to study genome-scale metabolic models, resulting in the enumeration of single optimal solutions describing the best use of the network to support growth. Here mixed-integer linear programming was used to calculate and study a subset of the alternate optimal solutions for a genome-scale metabolic model of Escherichia coli (iJR904) under a wide variety of environmental conditions. Analysis of the calculated sets of optimal solutions found that: (1) only a small subset of reactions in the network have variable fluxes across optima; (2) sets of reactions that are always used together in optimal solutions, correlated reaction sets, showed moderate agreement with the currently known transcriptional regulatory structure in E. coli and available expression data, and (3) reactions that are used under certain environmental conditions can provide clues about network regulatory needs. In addition, calculation of suboptimal flux distributions, using flux variability analysis, identified reactions which are used under significantly more environmental conditions suboptimally than optimally. Together these results demonstrate the utilization of reactions in genome-scale models under a variety of different growth conditions.
基于约束的基因组规模代谢和调控网络分析已成功用于预测表型,并有助于分析高通量数据集。在该建模框架内,线性优化已被用于研究基因组规模代谢模型,从而枚举描述网络支持生长的最佳利用方式的单一最优解。本文采用混合整数线性规划来计算和研究大肠杆菌(iJR904)基因组规模代谢模型在各种环境条件下的一组交替最优解。对计算得到的最优解集的分析发现:(1)网络中只有一小部分反应在最优解之间具有可变通量;(2)在最优解中总是一起使用的反应集,即相关反应集,与大肠杆菌目前已知的转录调控结构和可用的表达数据显示出适度的一致性,并且(3)在特定环境条件下使用的反应可以提供有关网络调控需求的线索。此外,使用通量变异性分析计算次优通量分布,确定了在显著更多环境条件下以次优而非最优方式使用的反应。这些结果共同证明了在各种不同生长条件下基因组规模模型中反应的利用情况。