School of Mathematics and Statistics, Mathematical Institute, University of St Andrews, United Kingdom, KY16 9SS.
Division of Mathematics, University of Dundee, Dundee DD1 4HN, Scotland, United Kingdom.
J Theor Biol. 2019 May 7;468:27-44. doi: 10.1016/j.jtbi.2019.02.003. Epub 2019 Feb 10.
Transcription factors are important molecules which control the levels of mRNA and proteins within cells by modulating the process of transcription (the mechanism by which mRNA is produced within cells) and hence translation (the mechanism by which proteins are produced within cells). Transcription factors are part of a wider family of molecular interaction networks known as gene regulatory networks (GRNs) which play an important role in key cellular processes such as cell division and apoptosis (e.g. the p53-Mdm2, NFκB pathways). Transcription factors exert control over molecular levels through feedback mechanisms, with proteins binding to gene sites in the nucleus and either up-regulating or down-regulating production of mRNA. In many GRNs, there is a negative feedback in the network and the transcription rate is reduced. Typically, this leads to the mRNA and protein levels oscillating over time and also spatially between the nucleus and cytoplasm. When experimental data for such systems is analysed, it is observed to be noisy and in many cases the actual numbers of molecules involved are quite low. In order to model such systems accurately and connect with the data in a quantitative way, it is therefore necessary to adopt a stochastic approach as well as take into account the spatial aspect of the problem. In this paper, we extend previous work in the area by formulating and analysing stochastic spatio-temporal models of synthetic GRNs e.g. repressilators and activator-repressor systems.
转录因子是通过调节转录(细胞内产生 mRNA 的机制)和翻译(细胞内产生蛋白质的机制)过程来控制细胞内 mRNA 和蛋白质水平的重要分子。转录因子是被称为基因调控网络(GRN)的更广泛分子相互作用网络家族的一部分,在细胞分裂和细胞凋亡等关键细胞过程中发挥着重要作用(例如 p53-Mdm2、NFκB 途径)。转录因子通过反馈机制对分子水平进行控制,蛋白质结合到核内的基因位点,上调或下调 mRNA 的产生。在许多 GRN 中,网络中存在负反馈,转录速率降低。通常,这会导致 mRNA 和蛋白质水平随时间和核质之间的空间而波动。当对这类系统的实验数据进行分析时,会发现数据存在噪声,而且在许多情况下,涉及的实际分子数量相当低。为了准确地对这类系统进行建模并以定量的方式与数据进行连接,因此有必要采用随机方法,并考虑到问题的空间方面。在本文中,我们通过构建和分析合成 GRN(例如阻遏子和激活剂-阻遏子系统)的随机时空模型,对该领域的先前工作进行了扩展。