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Comparison of the kinetics of different Markov models for ligand binding under varying conditions

机译:不同条件下不同马尔可夫模型配体结合动力学的比较

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We recently derived a Markov model for macromolecular ligand binding dynamics from few physical assumptions and showed that its stationary distribution is the grand canonical ensemble [J. W. R. Martini, M. Habeck, and M. Schlather, J. Math. Chem. 52, 665 (2014)]. The transition probabilities of the proposed Markov process define a particular Glauber dynamics and have some similarity to the Metropolis-Hastings algorithm. Here, we illustrate that this model is the stochastic analog of (pseudo) rate equations and the corresponding system of differential equations. Moreover, it can be viewed as a limiting case of general stochastic simulations of chemical kinetics. Thus, the model links stochastic and deterministic approaches as well as kinetics and equilibrium described by the grand canonical ensemble. We demonstrate that the family of transition matrices of our model, parameterized by temperature and ligand activity, generates ligand binding kinetics that respond to changes in these parameters in a qualitatively similar way as experimentally observed kinetics. In contrast, neither the Metropolis-Hastings algorithm nor the Glauber heat bath reflects changes in the external conditions correctly. Both converge rapidly to the stationary distribution, which is advantageous when the major interest is in the equilibrium state, but fail to describe the kinetics of ligand binding realistically. To simulate cellular processes that involve the reversible stochastic binding of multiple factors, our pseudo rate equation model should therefore be preferred to the Metropolis-Hastings algorithm and the Glauber heat bath, if the stationary distribution is not of only interest. (c) 2015 AIP Publishing LLC.
机译:我们最近从很少的物理假设中得出了大分子配体结合动力学的马尔可夫模型,并表明它的平稳分布是大正则整体。 W. R. Martini,M。Habeck和M. Schlather,J。Math。化学52,665(2014)]。提出的马尔可夫过程的转移概率定义了特定的Glauber动力学,并且与Metropolis-Hastings算法有一些相似之处。在这里,我们说明该模型是(伪)速率方程的随机模拟和相应的微分方程系统。此外,可以将其视为化学动力学的一般随机模拟的极限情况。因此,该模型将随机和确定性方法以及由大正则合奏描述的动力学和平衡联系起来。我们证明,通过温度和配体活性参数化的我们模型的过渡矩阵族可以生成配体结合动力学,该定性结合动力学以与实验观察到的动力学定性相似的方式响应这些参数的变化。相反,Metropolis-Hastings算法和Glauber热浴都不能正确反映外部条件的变化。两者都迅速收敛到平稳分布,这在主要关注处于平衡状态时是有利的,但是不能真实地描述配体结合的动力学。为了模拟涉及多个因素可逆随机绑定的细胞过程,因此,如果不仅要关注平稳分布,我们的伪速率方程模型应该首选Metropolis-Hastings算法和Glauber热浴。 (c)2015 AIP Publishing LLC。

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