Giaretta Alberto, Toffolo Gianna Maria, Elston Timothy C
Department of Information Engineering, University of Padova, Padova, Italy.
Department of Pharmacology, University of North Carolina, Chapel Hill, United States of America.
J Theor Biol. 2020 Feb 7;486:110057. doi: 10.1016/j.jtbi.2019.110057. Epub 2019 Oct 28.
High risk forms of human papillomaviruses (HPVs) promote cancerous lesions and are implicated in almost all cervical cancer. Of particular relevance to cancer progression is regulation of the early promoter that controls gene expression in the initial phases of infection and can eventually lead to pre-cancer progression. Our goal was to develop a stochastic model to investigate the control mechanisms that regulate gene expression from the HPV early promoter. Our model integrates modules that account for transcriptional, post-transcriptional, translational and post-translational regulation of E1 and E2 early genes to form a functioning gene regulatory network. Each module consists of a set of biochemical steps whose stochastic evolution is governed by a chemical Master Equation and can be simulated using the Gillespie algorithm. To investigate the role of noise in gene expression, we compared our stochastic simulations with solutions to ordinary differential equations for the mean behavior of the system that are valid under the conditions of large molecular abundances and quasi-equilibrium for fast reactions. The model produced results consistent with known HPV biology. Our simulation results suggest that stochasticity plays a pivotal role in determining the dynamics of HPV gene expression. In particular, the combination of positive and negative feedback regulation generates stochastic bursts of gene expression. Analysis of the model reveals that regulation at the promoter affects burst amplitude and frequency, whereas splicing is more specialized to regulate burst frequency. Our results also suggest that splicing enhancers are a significant source of stochasticity in pre-mRNA abundance and that the number of viruses infecting the host cell represents a third important source of stochasticity in gene expression.
高危型人乳头瘤病毒(HPV)会促使癌前病变,几乎所有宫颈癌都与之相关。与癌症进展特别相关的是早期启动子的调控,该启动子在感染初期控制基因表达,并最终可能导致癌前病变进展。我们的目标是建立一个随机模型,以研究调控HPV早期启动子基因表达的控制机制。我们的模型整合了多个模块,这些模块考虑了E1和E2早期基因的转录、转录后、翻译和翻译后调控,从而形成一个起作用的基因调控网络。每个模块由一组生化步骤组成,其随机演化由化学主方程控制,并可使用 Gillespie 算法进行模拟。为了研究噪声在基因表达中的作用,我们将随机模拟结果与在大分子丰度较大且快速反应为准平衡条件下有效的系统平均行为的常微分方程解进行了比较。该模型产生的结果与已知的HPV生物学一致。我们的模拟结果表明,随机性在决定HPV基因表达动态中起关键作用。特别是,正负反馈调节的组合产生了基因表达的随机爆发。对该模型的分析表明,启动子处的调控影响爆发幅度和频率,而剪接更专门用于调节爆发频率。我们的结果还表明,剪接增强子是前体mRNA丰度随机性的一个重要来源,感染宿主细胞的病毒数量是基因表达随机性的第三个重要来源。