Heuett William J, Qian Hong
Department of Physics, University of Colorado, 390 UCB, Boulder, Colorado 80309-0390, USA.
J Bioinform Comput Biol. 2006 Dec;4(6):1227-43. doi: 10.1142/s0219720006002430.
Stoichiometric Network Theory is a constraints-based, optimization approach for quantitative analysis of the phenotypes of large-scale biochemical networks that avoids the use of detailed kinetics. This approach uses the reaction stoichiometric matrix in conjunction with constraints provided by flux balance and energy balance to guarantee mass conserved and thermodynamically allowable predictions. However, the flux and energy balance constraints have not been effectively applied simultaneously on the genome scale because optimization under the combined constraints is non-linear. In this paper, a sequential quadratic programming algorithm that solves the non-linear optimization problem is introduced. A simple example and the system of fermentation in Saccharomyces cerevisiae are used to illustrate the new method. The algorithm allows the use of non-linear objective functions. As a result, we suggest a novel optimization with respect to the heat dissipation rate of a system. We also emphasize the importance of incorporating interactions between a model network and its surroundings.
化学计量网络理论是一种基于约束的优化方法,用于对大规模生化网络的表型进行定量分析,该方法避免使用详细的动力学。这种方法结合反应化学计量矩阵以及通量平衡和能量平衡提供的约束条件,以确保质量守恒并进行热力学上可行的预测。然而,通量和能量平衡约束尚未在基因组规模上有效地同时应用,因为在组合约束下的优化是非线性的。本文介绍了一种求解非线性优化问题的序列二次规划算法。通过一个简单的例子和酿酒酵母的发酵系统来说明该新方法。该算法允许使用非线性目标函数。因此,我们提出了一种关于系统散热率的新型优化方法。我们还强调了纳入模型网络与其周围环境之间相互作用的重要性。