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Mass fluctuation kinetics: Capturing stochastic effects in systems of chemical reactions through coupled mean-variance computations

机译:质量波动动力学:通过耦合均值-方差计算来捕获化学反应系统中的随机效应

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The intrinsic stochastic effects in chemical reactions,and particularly in biochemical networks,may result in behaviors significantly different from those predicted by deterministic mass action kinetics (MAK).Analyzing stochastic effects,however,is often computationally taxing and complex.The authors describe here the derivation and application of what they term the mass fluctuation kinetics (MFK),a set of deterministic equations to track the means,variances,and covariances of the concentrations of the chemical species in the system.These equations are obtained by approximating the dynamics of the first and second moments of the chemical master equation.Apart from needing knowledge of the system volume,the MFK description requires only the same information used to specify the MAK model,and is not significantly harder to write down or apply.When the effects of fluctuations are negligible,the MFK description typically reduces to MAK.The MFK equations are capable of describing the average behavior of the network substantially better than MAK,because they incorporate the effects of fluctuations on the evolution of the means.They also account for the effects of the means on the evolution of the variances and covariances,to produce quite accurate uncertainty bands around the average behavior.The MFK computations,although approximate,are significantly faster than Monte Carlo methods for computing first and second moments in systems of chemical reactions.They may therefore be used,perhaps along with a few Monte Carlo simulations of sample state trajectories,to efficiently provide a detailed picture of the behavior of a chemical system.
机译:化学反应中,特别是生化网络中的内在随机效应可能导致行为与确定性质量作用动力学(MAK)所预测的行为明显不同。然而,分析随机效应通常在计算上很费力且复杂。作者在此描述了他们所称的质量波动动力学(MFK)的推导和应用,一组确定性方程式,用于跟踪系统中化学物质浓度的均值,方差和协方差。这些方程式是通过近似化学反应动力学来获得的。化学主方程的第一刻和第二刻。除了需要了解系统体积外,MFK描述仅需要用于指定MAK模型的相同信息,并且记起来或应用起来也不困难。可以忽略不计,MFK描述通常简化为MAK.MFK方程能够描述平均值网络的行为比MAK好得多,因为它们将波动对均值演化的影响合并在一起。它们还考虑了均值对方差和协方差演化的影响,以在平均值附近产生相当准确的不确定带MFK计算虽然近似,但比化学反应系统中计算第一和第二矩的蒙特卡洛方法要快得多。因此,它们可能与样本状态轨迹的一些蒙特卡洛模拟一起使用,可以有效地提供化学系统行为的详细图片。

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