在存在随机基因表达噪音的情况下,通过基于微RNA的前馈回路维持稳态mRNA水平

IF 2.3 4区 数学 Q1 MATHEMATICS, APPLIED
Iryna Zabaikina, Pavol Bokes
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引用次数: 0

摘要

活细胞的所有重要功能都依赖于通过基因表达产生各种功能分子。由于生化反应的离散性,生产过程具有突发性和随机性。在某些情况下,RNA 或蛋白质的浓度需要调节,以维持细胞内部的微妙平衡。在这里,我们考虑了由两种 RNA 分子(mRNA 和一种拮抗 microRNA)组成的图案,它们由一个共享的编码序列编码,并形成一个前馈回路(FFL)。研究表明,这种控制机制在确定性背景下具有完美的适应性。我们证明,如果以随机猝发的方式产生,(平均值的)适应性就会变得不完美。尽管如此,FFL 在平衡信号变化方面仍优于基准反馈回路。在方法上,我们将广泛用于单个调控分子建模的混合随机模型应用于当前涉及两个物种的动机;拉普拉斯变换的使用从而规避了由于 mRNA 与 microRNA 相互作用而产生的时刻闭合问题。我们希望这种方法能适用于其他非线性动力学系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maintenance of steady-state mRNA levels by a microRNA-based feed forward loop in the presence of stochastic gene expression noise

All vital functions of living cells rely on the production of various functional molecules through gene expression. The production periods are burst-like and stochastic due to the discrete nature of biochemical reactions. In certain contexts, the concentrations of RNA or protein require regulation to maintain a fine internal balance within the cell. Here we consider a motif of two types of RNA molecules – mRNA and an antagonistic microRNA – which are encoded by a shared coding sequence and form a feed forward loop (FFL). This control mechanism is shown to be perfectly adapting in the deterministic context. We demonstrate that the adaptation (of the mean value) becomes imperfect if production occurs in random bursts. The FFL nevertheless outperforms the benchmark feedback loop in terms of counterbalancing variations in the signal. Methodologically, we adapt a hybrid stochastic model, which has widely been used to model a single regulatory molecule, to the current case of a motif involving two species; the use of the Laplace transform thereby circumvents the problem of moment closure that arises owing to the mRNA–microRNA interaction. We expect that the approach can be applicable to other systems with nonlinear kinetics.

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来源期刊
CiteScore
4.70
自引率
0.00%
发文量
31
审稿时长
>12 weeks
期刊介绍: Since 2008 EJAM surveys have been expanded to cover Applied and Industrial Mathematics. Coverage of the journal has been strengthened in probabilistic applications, while still focusing on those areas of applied mathematics inspired by real-world applications, and at the same time fostering the development of theoretical methods with a broad range of applicability. Survey papers contain reviews of emerging areas of mathematics, either in core areas or with relevance to users in industry and other disciplines. Research papers may be in any area of applied mathematics, with special emphasis on new mathematical ideas, relevant to modelling and analysis in modern science and technology, and the development of interesting mathematical methods of wide applicability.
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