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Mean field analysis of a spatial stochastic model of a gene regulatory network

机译:基因调控网络空间随机模型的均值分析

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A gene regulatory network may be defined as a collection of DNA segments which interact with each other indirectly through their RNA and protein products. Such a network is said to contain a negative feedback loop if its products inhibit gene transcription, and a positive feedback loop if a gene product promotes its own production. Negative feedback loops can create oscillations in mRNA and protein levels while positive feedback loops are primarily responsible for signal amplification. It is often the case in real biological systems that both negative and positive feedback loops operate in parameter regimes that result in low copy numbers of gene products. In this paper we investigate the spatio-temporal dynamics of a single feedback loop in a eukaryotic cell. We first develop a simplified spatial stochastic model of a canonical feedback system (either positive or negative). Using a Gillespie's algorithm, we compute sample trajectories and analyse their corresponding statistics. We then derive a system of equations that describe the spatio-temporal evolution of the stochastic means. Subsequently, we examine the spatially homogeneous case and compare the results of numerical simulations with the spatially explicit case. Finally, using a combination of steady-state analysis and data clustering techniques, we explore model behaviour across a subregion of the parameter space that is difficult to access experimentally and compare the parameter landscape of our spatio-temporal and spatially-homogeneous models.
机译:基因调节网络可以定义为DNA片段的集合,这些DNA片段通过其RNA和蛋白质产物间接相互作用。如果这样的网络的产物抑制基因转录,则称其包含负反馈环,而如果基因产物促进其自身产生,则其包含正反馈环。负反馈回路会在mRNA和蛋白质水平上产生振荡,而正反馈回路则主要负责信号放大。在实际的生物系统中,负反馈回路和正反馈回路都经常​​在参数机制下运行,从而导致基因产物的拷贝数较低。在本文中,我们研究了真核细胞中单个反馈环的时空动态。我们首先开发一个规范反馈系统(正或负)的简化空间随机模型。使用Gillespie算法,我们可以计算样本轨迹并分析其相应的统计数据。然后,我们得出一个描述随机均值的时空演化的方程组。随后,我们检查了空间均匀情况,并将数值模拟的结果与空间明确情况进行了比较。最后,结合使用稳态分析和数据聚类技术,我们探索了难以通过实验访问的参数空间子区域的模型行为,并比较了时空模型和空间均质模型的参数格局。

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