Geard Nicholas, Willadsen Kai
School of Electronics and Computer Science, University of Southampton, Southampton SO17 1BJ, United Kingdom.
Birth Defects Res C Embryo Today. 2009 Jun;87(2):131-42. doi: 10.1002/bdrc.20150.
The network of interacting regulatory signals within a cell comprises one of the most complex and powerful computational systems in biology. Gene regulatory networks (GRNs) play a key role in transforming the information encoded in a genome into morphological form. To achieve this feat, GRNs must respond to and integrate environmental signals with their internal dynamics in a robust and coordinated fashion. The highly dynamic nature of this process lends itself to interpretation and analysis in the language of dynamical models. Modeling provides a means of systematically untangling the complicated structure of GRNs, a framework within which to simulate the behavior of reconstructed systems and, in some cases, suites of analytic tools for exploring that behavior and its implications. This review provides a general background to the idea of treating a regulatory network as a dynamical system, and describes a variety of different approaches that have been taken to the dynamical modeling of GRNs.
细胞内相互作用的调控信号网络是生物学中最复杂、最强大的计算系统之一。基因调控网络(GRN)在将基因组中编码的信息转化为形态形式方面起着关键作用。为了实现这一壮举,基因调控网络必须以稳健且协调的方式响应环境信号并将其与内部动态整合起来。这一过程的高度动态性使其适合用动态模型的语言进行解释和分析。建模提供了一种系统梳理基因调控网络复杂结构的方法,一个用于模拟重建系统行为的框架,并且在某些情况下,还提供了一套用于探索该行为及其影响的分析工具。本综述提供了将调控网络视为动态系统这一理念的一般背景,并描述了用于基因调控网络动态建模的各种不同方法。