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Revisiting the Reduction of Stochastic Models of Genetic Feedback Loops with Fast Promoter Switching

机译:通过快速启动子切换重新审视遗传反馈环随机模型的减少

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摘要

Propensity functions of the Hill type are commonly used to model transcriptional regulation in stochastic models of gene expression. This leads to an effective reduced master equation for the mRNA and protein dynamics only. Based on deterministic considerations, it is often stated or tacitly assumed that such models are valid in the limit of rapid promoter switching. Here, starting from the chemical master equation describing promoter-protein interactions, mRNA transcription, protein translation, and decay, we prove that in the limit of fast promoter switching, the distribution of protein numbers is different than that given by standard stochastic models with Hill-type propensities. We show the differences are pronounced whenever the protein-DNA binding rate is much larger than the unbinding rate, a special case of fast promoter switching. Furthermore, we show using both theory and simulations that use of the standard stochastic models leads to drastically incorrect predictions for the switching properties of positive feedback loops and that these differences decrease with increasing mean protein burst size. Our results confirm that commonly used stochastic models of gene regulatory networks are only accurate in a subset of the parameter space consistent with rapid promoter switching.
机译:山型的倾向函数通常用于模拟基因表达随机模型中的转录调控。这导致MRNA和蛋白质动态的有效减少的母部方程。基于确定性考虑,通常认为这种模型在快速启动子切换的极限中有效地说明或默认地阐述。这里,从描述启动子蛋白质相互作用,mRNA转录,蛋白翻译和腐烂的化学母母方程开始,我们证明在快速启动子切换的极限中,蛋白质数的分布不同于山的标准随机模型给出的 - 型盈利。我们表明,只要蛋白质DNA结合速率远大于未粘连率,差异就会发音,这是快速启动子切换的特殊情况。此外,我们展示了使用标准随机模型的理论和仿真,导致正反馈环路的切换性能急剧上不正确的预测,并且这些差异随着平均蛋白质突发大小而降低。我们的结果证实,基因监管网络的常用随机模型仅在与快速启动子切换一致的参数空间的子集中仅准确。

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