Department of Neurobiology and Anatomy, University of Texas Medical School, Houston, Texas 77030, USA.
J Chem Phys. 2012 Jul 28;137(4):044105. doi: 10.1063/1.4731754.
Many biochemical networks have complex multidimensional dynamics and there is a long history of methods that have been used for dimensionality reduction for such reaction networks. Usually a deterministic mass action approach is used; however, in small volumes, there are significant fluctuations from the mean which the mass action approach cannot capture. In such cases stochastic simulation methods should be used. In this paper, we evaluate the applicability of one such dimensionality reduction method, the quasi-steady state approximation (QSSA) [L. Menten and M. Michaelis, "Die kinetik der invertinwirkung," Biochem. Z 49, 333369 (1913)] for dimensionality reduction in case of stochastic dynamics. First, the applicability of QSSA approach is evaluated for a canonical system of enzyme reactions. Application of QSSA to such a reaction system in a deterministic setting leads to Michaelis-Menten reduced kinetics which can be used to derive the equilibrium concentrations of the reaction species. In the case of stochastic simulations, however, the steady state is characterized by fluctuations around the mean equilibrium concentration. Our analysis shows that a QSSA based approach for dimensionality reduction captures well the mean of the distribution as obtained from a full dimensional simulation but fails to accurately capture the distribution around that mean. Moreover, the QSSA approximation is not unique. We have then extended the analysis to a simple bistable biochemical network model proposed to account for the stability of synaptic efficacies; the substrate of learning and memory [J. E. Lisman, "A mechanism of memory storage insensitive to molecular turnover: A bistable autophosphorylating kinase," Proc. Natl. Acad. Sci. U.S.A. 82, 3055-3057 (1985)]. Our analysis shows that a QSSA based dimensionality reduction method results in errors as big as two orders of magnitude in predicting the residence times in the two stable states.
许多生化网络具有复杂的多维动力学特性,因此针对这些反应网络,已经有很长一段时间的维度降低方法。通常使用确定性质量作用方法;然而,在小体积中,存在着显著的均值波动,质量作用方法无法捕捉到这种波动。在这种情况下,应该使用随机模拟方法。在本文中,我们评估了一种维度降低方法,即准稳态近似(QSSA)[L. Menten 和 M. Michaelis,“Die kinetik der invertinwirkung”,Biochem. Z 49,333369(1913)],在随机动力学情况下用于维度降低的适用性。首先,我们评估了 QSSA 方法在酶反应的典型系统中的适用性。在确定性设置中,将 QSSA 应用于这种反应系统会导致米氏动力学,从而可以用来推导反应物质的平衡浓度。然而,在随机模拟的情况下,稳态的特征是围绕平均平衡浓度的波动。我们的分析表明,基于 QSSA 的维度降低方法很好地捕捉了从全维模拟获得的分布的平均值,但未能准确地捕捉平均值周围的分布。此外,QSSA 近似不是唯一的。然后,我们将分析扩展到一个简单的双稳态生化网络模型,该模型旨在解释突触效率的稳定性;学习和记忆的底物[J. E. Lisman,“一种对分子周转率不敏感的记忆存储机制:双稳态自磷酸化激酶”,Proc. Natl. Acad. Sci. U.S.A. 82,3055-3057(1985)]。我们的分析表明,基于 QSSA 的维度降低方法在预测两个稳定状态的停留时间方面会导致高达两个数量级的误差。