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解析单分子反应体系的化学主方程。

Solving the chemical master equation for monomolecular reaction systems analytically.

作者信息

Jahnke Tobias, Huisinga Wilhelm

机构信息

Fachbereich Mathematik und Informatik, Freie Universität Berlin, Arnimallee 2-6, 14195 Berlin, Germany.

出版信息

J Math Biol. 2007 Jan;54(1):1-26. doi: 10.1007/s00285-006-0034-x. Epub 2006 Sep 5.

DOI:10.1007/s00285-006-0034-x
PMID:16953443
Abstract

The stochastic dynamics of a well-stirred mixture of molecular species interacting through different biochemical reactions can be accurately modelled by the chemical master equation (CME). Research in the biology and scientific computing community has concentrated mostly on the development of numerical techniques to approximate the solution of the CME via many realizations of the associated Markov jump process. The domain of exact and/or efficient methods for directly solving the CME is still widely open, which is due to its large dimension that grows exponentially with the number of molecular species involved. In this article, we present an exact solution formula of the CME for arbitrary initial conditions in the case where the underlying system is governed by monomolecular reactions. The solution can be expressed in terms of the convolution of multinomial and product Poisson distributions with time-dependent parameters evolving according to the traditional reaction-rate equations. This very structured representation allows to deduce easily many properties of the solution. The model class includes many interesting examples. For more complex reaction systems, our results can be seen as a first step towards the construction of new numerical integrators, because solutions to the monomolecular case provide promising ansatz functions for Galerkin-type methods.

摘要

通过不同生化反应相互作用的分子物种充分搅拌混合物的随机动力学可以用化学主方程(CME)精确建模。生物学和科学计算领域的研究主要集中在开发数值技术,通过相关马尔可夫跳跃过程的多次实现来近似CME的解。直接求解CME的精确和/或有效方法的领域仍然广泛开放,这是由于其维度随着所涉及分子物种的数量呈指数增长。在本文中,我们给出了在基础系统由单分子反应控制的情况下,针对任意初始条件的CME精确解公式。该解可以表示为多项分布和乘积泊松分布的卷积,其参数随时间根据传统反应速率方程演化。这种非常结构化的表示允许轻松推导解的许多性质。该模型类别包括许多有趣的例子。对于更复杂的反应系统,我们的结果可以被视为构建新数值积分器的第一步,因为单分子情况的解为伽辽金型方法提供了有前景的试探函数。

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