Mathematical Biosciences Institute and the College of Public Health, The Ohio State University, 1735 Neil Avenue, Columbus OH 43210, United States of America.
Department of Mathematics and Statistics, University of Maryland, Baltimore County, 1000 Hilltop Circle, Baltimore MD 21250, United States of America.
Phys Biol. 2021 Feb 13;18(1):015002. doi: 10.1088/1478-3975/abc2ab.
In many biological systems, chemical reactions or changes in a physical state are assumed to occur instantaneously. For describing the dynamics of those systems, Markov models that require exponentially distributed inter-event times have been used widely. However, some biophysical processes such as gene transcription and translation are known to have a significant gap between the initiation and the completion of the processes, which renders the usual assumption of exponential distribution untenable. In this paper, we consider relaxing this assumption by incorporating age-dependent random time delays (distributed according to a given probability distribution) into the system dynamics. We do so by constructing a measure-valued Markov process on a more abstract state space, which allows us to keep track of the 'ages' of molecules participating in a chemical reaction. We study the large-volume limit of such age-structured systems. We show that, when appropriately scaled, the stochastic system can be approximated by a system of partial differential equations (PDEs) in the large-volume limit, as opposed to ordinary differential equations (ODEs) in the classical theory. We show how the limiting PDE system can be used for the purpose of further model reductions and for devising efficient simulation algorithms. In order to describe the ideas, we use a simple transcription process as a running example. We, however, note that the methods developed in this paper apply to a wide class of biophysical systems.
在许多生物系统中,化学反 应或物理状态的变化被假定为瞬间发生。为了描述这些系统的动态,广泛使用了需要指数分布的事件间时间的马尔可夫模型。然而,已知有些生物物理过程,如基因转录和翻译,在过程的起始和完成之间存在显著的间隔,这使得通常的指数分布假设不可行。在本文中,我们通过将与年龄相关的随机时滞(根据给定的概率分布分布)纳入系统动态来放宽此假设。我们通过在更抽象的状态空间上构建测度值马尔可夫过程来实现这一点,这使我们能够跟踪参与化学反应的分子的“年龄”。我们研究了这种年龄结构系统的大体积极限。我们表明,在适当缩放后,随机系统可以在大体积极限下被逼近为偏微分方程(PDE)系统,而不是经典理论中的常微分方程(ODE)系统。我们展示了如何将限制 PDE 系统用于进一步的模型简化和设计有效的模拟算法。为了描述这些思想,我们使用一个简单的转录过程作为示例。然而,我们注意到,本文中开发的方法适用于广泛的生物物理系统。