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A new measure of the robustness of biochemical networks

机译:生化网络鲁棒性的新度量

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Motivation: The robustness of a biochemical network is defined as the tolerance of variations in kinetic parameters with respect to the maintenance of steady state. Robustness also plays an important role in the fail-safe mechanism in the evolutionary process of biochemical networks. The purposes of this paper are to use the synergism and saturation system (S-system) representation to describe a biochemical network and to develop a robustness measure of a biochemical network subject to variations in kinetic parameters. Since most biochemical networks in nature operate close to the steady state, we consider only the robustness measurement of a biochemical network at the steady state.Results: We show that the upper bound of the tolerated parameter variations is related to the system matrix of a biochemical network at the steady state. Using this upper bound, we can calculate the tolerance (robustness) of a biochemical network without testing many parametric perturbations. We find that a biochemical network with a large tolerance can also better attenuate the effects of variations in rate parameters and environments. Compensatory parameter variations and network redundancy are found to be important mechanisms for the robustness of biochemical networks. Finally, four biochemical networks, such as a cascaded biochemical network, the glycolytic-glycogenolytic pathway in a perfused rat liver, the tricarboxylic acid cycle in Dictyostelium discoideum and the cAMP oscillation network in bacterial chemotaxis, are used to illustrate the usefulness of the proposed robustness measure.
机译:动机:生化网络的鲁棒性定义为相对于维持稳态的动力学参数变化的容忍度。健壮性在生化网络进化过程中的故障安全机制中也起着重要作用。本文的目的是使用协同和饱和系统(S-system)表示法来描述生化网络,并开发受动力学参数变化影响的生化网络的鲁棒性度量。由于自然界中大多数生化网络都运行在接近稳态的状态,因此我们仅考虑生化网络在稳态下的鲁棒性测量。结果:我们表明,可容忍的参数变化的上限与生化系统的系统矩阵有关网络处于稳定状态。使用此上限,我们可以计算生化网络的容差(鲁棒性),而无需测试许多参数扰动。我们发现,具有较大耐受性的生化网络还可以更好地减弱速率参数和环境变化的影响。发现补偿参数的变化和网络冗余是生化网络鲁棒性的重要机制。最后,通过四个生化网络,例如级联生化网络,大鼠肝脏灌注中的糖酵解糖酵解途径,盘基网柄菌中的三羧酸循环以及细菌趋化性中的cAMP振荡网络,来说明所提出的鲁棒性的有效性。测量。

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