Meng X Flora, Baetica Ania-Ariadna, Singhal Vipul, Murray Richard M
Mathematical Institute, University of Oxford, Oxford OX2 6GG, UK
Department of Electrical Engineering and Computer Science, Massachusetts Institute of Technology, Cambridge, MA 02142, USA.
J R Soc Interface. 2017 May;14(130). doi: 10.1098/rsif.2017.0157.
Noise is often indispensable to key cellular activities, such as gene expression, necessitating the use of stochastic models to capture its dynamics. The chemical master equation (CME) is a commonly used stochastic model of Kolmogorov forward equations that describe how the probability distribution of a chemically reacting system varies with time. Finding analytic solutions to the CME can have benefits, such as expediting simulations of multiscale biochemical reaction networks and aiding the design of distributional responses. However, analytic solutions are rarely known. A recent method of computing analytic stationary solutions relies on gluing simple state spaces together recursively at one or two states. We explore the capabilities of this method and introduce algorithms to derive analytic stationary solutions to the CME. We first formally characterize state spaces that can be constructed by performing single-state gluing of paths, cycles or both sequentially. We then study stochastic biochemical reaction networks that consist of reversible, elementary reactions with two-dimensional state spaces. We also discuss extending the method to infinite state spaces and designing the stationary behaviour of stochastic biochemical reaction networks. Finally, we illustrate the aforementioned ideas using examples that include two interconnected transcriptional components and biochemical reactions with two-dimensional state spaces.
噪声对于关键的细胞活动(如基因表达)通常是不可或缺的,这就需要使用随机模型来捕捉其动态变化。化学主方程(CME)是一种常用的描述化学反应系统概率分布如何随时间变化的Kolmogorov正向方程的随机模型。找到CME的解析解可能会有诸多益处,比如加快多尺度生化反应网络的模拟以及辅助分布响应的设计。然而,解析解却很少为人所知。一种最近计算解析稳态解的方法依赖于在一两个状态下递归地将简单状态空间拼接在一起。我们探索了这种方法的能力,并引入算法来推导CME的解析稳态解。我们首先正式刻画了可以通过依次对路径、循环或两者进行单状态拼接而构建的状态空间。然后我们研究了由具有二维状态空间的可逆基元反应组成的随机生化反应网络。我们还讨论了将该方法扩展到无限状态空间以及设计随机生化反应网络的稳态行为。最后,我们通过包含两个相互连接的转录组件和具有二维状态空间的生化反应的例子来说明上述观点。