Ribeiro Andre, Zhu Rui, Kauffman Stuart A
Institute for Biocomplexity and Informatics, Department of Physics and Astronomy, University of Calgary, Calgary, Alberta, Canada.
J Comput Biol. 2006 Nov;13(9):1630-9. doi: 10.1089/cmb.2006.13.1630.
A stochastic genetic toggle switch model that consists of two identical, mutually repressive genes is built using the Gillespie algorithm with time delays as an example of a simple stochastic gene regulatory network. The stochastic kinetics of this model is investigated, and it is found that the delays for the protein productions can highly weaken the global fluctuations for the expressions of the two genes, making the two mutually repressive genes coexist for a long time. Starting from this model, we propose a practical modeling strategy for more complex gene regulatory networks. Unlike previous applications of the Gillespie algorithm to simulate specific genetic networks dynamics, this modeling strategy is proposed for an ensemble approach to study the dynamical properties of these networks. The model allows any combination of gene expression products, forming complex multimers, and each one of the multimers is assigned to a randomly chosen gene promoter site as an activator or inhibitor. In addition, each gene, although it has only one promoter site, can have multiple regulatory sites and distinct rates of translation and transcription. Also, different genes have different time delays for transcription and translation and all reaction constant rates are initially randomly chosen from a range of values. Therefore, the general strategy here proposed may be used to simulate real genetic networks.
构建了一个由两个相同且相互抑制的基因组成的随机遗传开关模型,以具有时间延迟的 Gillespie 算法为例,作为一个简单的随机基因调控网络。研究了该模型的随机动力学,发现蛋白质产生的延迟可以极大地减弱两个基因表达的全局波动,使两个相互抑制的基因能够长时间共存。从这个模型出发,我们为更复杂的基因调控网络提出了一种实用的建模策略。与之前应用 Gillespie 算法模拟特定基因网络动态不同,此建模策略是为一种整体方法而提出的,用于研究这些网络的动态特性。该模型允许基因表达产物的任何组合,形成复杂的多聚体,并且每个多聚体被分配到一个随机选择的基因启动子位点作为激活剂或抑制剂。此外,每个基因虽然只有一个启动子位点,但可以有多个调控位点以及不同的转录和翻译速率。而且,不同基因的转录和翻译具有不同的时间延迟,所有反应常数速率最初都从一系列值中随机选择。因此,这里提出的一般策略可用于模拟真实的基因网络。