Segrè Daniel, Zucker Jeremy, Katz Jeremy, Lin Xiaoxia, D'haeseleer Patrik, Rindone Wayne P, Kharchenko Peter, Nguyen Dat H, Wright Matthew A, Church George M
Lipper Center for Computational Genetics, Harvard Medical School, Boston, Massachusetts, USA.
OMICS. 2003 Fall;7(3):301-16. doi: 10.1089/153623103322452413.
Significant advances in system-level modeling of cellular behavior can be achieved based on constraints derived from genomic information and on optimality hypotheses. For steady-state models of metabolic networks, mass conservation and reaction stoichiometry impose linear constraints on metabolic fluxes. Different objectives, such as maximization of growth rate or minimization of flux distance from a reference state, can be tested in different organisms and conditions. In particular, we have suggested that the metabolic properties of mutant bacterial strains are best described by an algorithm that performs a minimization of metabolic adjustment (MOMA) upon gene deletion. The increasing availability of many annotated genomes paves the way for a systematic application of these flux balance methods to a large variety of organisms. However, such a high throughput goal crucially depends on our capacity to build metabolic flux models in a fully automated fashion. Here we describe a pipeline for generating models from annotated genomes and discuss the current obstacles to full automation. In addition, we propose a framework for the integration of flux modeling results and high throughput proteomic data, which can potentially help in the inference of whole-cell kinetic parameters.
基于从基因组信息得出的约束条件和最优性假设,可以在细胞行为的系统级建模方面取得重大进展。对于代谢网络的稳态模型,质量守恒和反应化学计量对代谢通量施加线性约束。不同的目标,如生长速率最大化或与参考状态的通量距离最小化,可以在不同的生物体和条件下进行测试。特别是,我们已经提出,突变细菌菌株的代谢特性最好用一种在基因缺失时执行代谢调整最小化(MOMA)的算法来描述。许多注释基因组的可得性不断增加,为将这些通量平衡方法系统地应用于多种生物体铺平了道路。然而,这样一个高通量目标关键取决于我们以完全自动化方式构建代谢通量模型的能力。在这里,我们描述了一个从注释基因组生成模型的流程,并讨论了完全自动化目前面临的障碍。此外,我们提出了一个整合通量建模结果和高通量蛋白质组学数据的框架,这可能有助于推断全细胞动力学参数。