Lawson Michael J, Petzold Linda, Hellander Andreas
Department of Cell and Molecular Biology, Uppsala University, Box 337, Uppsala 75105, Sweden.
Department of Computer Science, University of California Santa Barbara, Santa Barbara, CA 93106-5070, USA.
J R Soc Interface. 2015 May 6;12(106). doi: 10.1098/rsif.2015.0054.
Quantitative biology relies on the construction of accurate mathematical models, yet the effectiveness of these models is often predicated on making simplifying approximations that allow for direct comparisons with available experimental data. The Michaelis-Menten (MM) approximation is widely used in both deterministic and discrete stochastic models of intracellular reaction networks, owing to the ubiquity of enzymatic activity in cellular processes and the clear biochemical interpretation of its parameters. However, it is not well understood how the approximation applies to the discrete stochastic case or how it extends to spatially inhomogeneous systems. We study the behaviour of the discrete stochastic MM approximation as a function of system size and show that significant errors can occur for small volumes, in comparison with a corresponding mass-action system. We then explore some consequences of these results for quantitative modelling. One consequence is that fluctuation-induced sensitivity, or stochastic focusing, can become highly exaggerated in models that make use of MM kinetics even if the approximations are excellent in a deterministic model. Another consequence is that spatial stochastic simulations based on the reaction-diffusion master equation can become highly inaccurate if the model contains MM terms.
定量生物学依赖于精确数学模型的构建,然而这些模型的有效性往往基于做出简化近似,以便能够与现有的实验数据进行直接比较。米氏(MM)近似在细胞内反应网络的确定性和离散随机模型中都有广泛应用,这是由于酶活性在细胞过程中普遍存在,且其参数具有明确的生化解释。然而,对于该近似如何应用于离散随机情况以及如何扩展到空间非均匀系统,人们还了解得不够透彻。我们研究离散随机MM近似作为系统大小的函数的行为,并表明与相应的质量作用系统相比,对于小体积系统可能会出现显著误差。然后,我们探讨这些结果对定量建模的一些影响。一个影响是,即使在确定性模型中近似效果很好,但在使用MM动力学的模型中,涨落诱导的敏感性或随机聚焦可能会被高度夸大。另一个影响是,如果模型包含MM项,基于反应扩散主方程的空间随机模拟可能会变得非常不准确。