Lee Yun, Lafontaine Rivera Jimmy G, Liao James C
Department of Chemical and Biomolecular Engineering, University of California, 5531 Boelter Hall, Los Angeles, CA 90095, USA.
Department of Chemical and Biomolecular Engineering, University of California, 5531 Boelter Hall, Los Angeles, CA 90095, USA; UCLA-DOE Institute for Genomics and Proteomics, University of California, 611 Young Drive East, Los Angeles, CA 90095, USA.
Metab Eng. 2014 Sep;25:63-71. doi: 10.1016/j.ymben.2014.06.006. Epub 2014 Jun 24.
Metabolic pathways in cells must be sufficiently robust to tolerate fluctuations in expression levels and changes in environmental conditions. Perturbations in expression levels may lead to system failure due to the disappearance of a stable steady state. Increasing evidence has suggested that biological networks have evolved such that they are intrinsically robust in their network structure. In this article, we presented Ensemble Modeling for Robustness Analysis (EMRA), which combines a continuation method with the Ensemble Modeling approach, for investigating the robustness issue of non-native pathways. EMRA investigates a large ensemble of reference models with different parameters, and determines the effects of parameter drifting until a bifurcation point, beyond which a stable steady state disappears and system failure occurs. A pathway is considered to have high bifurcational robustness if the probability of system failure is low in the ensemble. To demonstrate the utility of EMRA, we investigate the bifurcational robustness of two synthetic central metabolic pathways that achieve carbon conservation: non-oxidative glycolysis and reverse glyoxylate cycle. With EMRA, we determined the probability of system failure of each design and demonstrated that alternative designs of these pathways indeed display varying degrees of bifurcational robustness. Furthermore, we demonstrated that target selection for flux improvement should consider the trade-offs between robustness and performance.
细胞中的代谢途径必须足够稳健,以耐受表达水平的波动和环境条件的变化。表达水平的扰动可能会由于稳定稳态的消失而导致系统故障。越来越多的证据表明,生物网络已经进化到在其网络结构上具有内在的稳健性。在本文中,我们提出了用于稳健性分析的集成建模(EMRA),它将延续方法与集成建模方法相结合,用于研究非天然途径的稳健性问题。EMRA研究大量具有不同参数的参考模型集合,并确定参数漂移直至分岔点的影响,超过该点稳定稳态消失且系统故障发生。如果在该集合中系统故障的概率较低,则认为一条途径具有高分岔稳健性。为了证明EMRA的实用性,我们研究了实现碳守恒的两条合成中心代谢途径的分岔稳健性:非氧化糖酵解和逆向乙醛酸循环。通过EMRA,我们确定了每种设计的系统故障概率,并证明这些途径的替代设计确实表现出不同程度的分岔稳健性。此外,我们证明了通量改善的靶点选择应考虑稳健性和性能之间的权衡。