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非编码小分子 RNA 调控基因的强相互作用极限的随机建模。

Stochastic Modeling of Gene Regulation by Noncoding Small RNAs in the Strong Interaction Limit.

机构信息

Department of Physics, University of Massachusetts Boston, Boston, Massachusetts.

Department of Mathematics, University of Massachusetts Boston, Boston, Massachusetts.

出版信息

Biophys J. 2018 Jun 5;114(11):2530-2539. doi: 10.1016/j.bpj.2018.04.044.

Abstract

Noncoding small RNAs (sRNAs) are known to play a key role in regulating diverse cellular processes, and their dysregulation is linked to various diseases such as cancer. Such diseases are also marked by phenotypic heterogeneity, which is often driven by the intrinsic stochasticity of gene expression. Correspondingly, there is significant interest in developing quantitative models focusing on the interplay between stochastic gene expression and regulation by sRNAs. We consider the canonical model of regulation of stochastic gene expression by sRNAs, wherein interaction between constitutively expressed sRNAs and mRNAs leads to stoichiometric mutual degradation. The exact solution of this model is analytically intractable given the nonlinear interaction term between sRNAs and mRNAs, and theoretical approaches typically invoke the mean-field approximation. However, mean-field results are inaccurate in the limit of strong interactions and low abundances; thus, alternative theoretical approaches are needed. In this work, we obtain analytical results for the canonical model of regulation of stochastic gene expression by sRNAs in the strong interaction limit. We derive analytical results for the steady-state generating function of the joint distribution of mRNAs and sRNAs in the limit of strong interactions and use the results derived to obtain analytical expressions characterizing the corresponding protein steady-state distribution. The results obtained can serve as building blocks for the analysis of genetic circuits involving sRNAs and provide new insights into the role of sRNAs in regulating stochastic gene expression in the limit of strong interactions.

摘要

非编码小分子 RNA(sRNA)在调节多种细胞过程中起着关键作用,其失调与癌症等各种疾病有关。这些疾病的特点是表型异质性,通常是由基因表达的内在随机性驱动的。因此,人们非常关注开发定量模型,重点研究 sRNA 对随机基因表达的调控的相互作用。

我们考虑 sRNA 调控随机基因表达的典型模型,其中组成型表达的 sRNA 与 mRNAs 之间的相互作用导致化学计量相互降解。考虑到 sRNA 和 mRNAs 之间的非线性相互作用项,该模型的精确解在解析上是难以处理的,理论方法通常采用平均场近似。然而,在强相互作用和低丰度的极限下,平均场结果是不准确的;因此,需要替代的理论方法。

在这项工作中,我们在强相互作用极限下获得了 sRNA 调控随机基因表达的典型模型的解析结果。我们推导出了强相互作用极限下 mRNAs 和 sRNAs 联合分布的稳态生成函数的解析结果,并利用所得结果获得了描述相应蛋白质稳态分布的解析表达式。所得结果可作为涉及 sRNA 的遗传电路分析的构建块,并为 sRNA 在强相互作用极限下调控随机基因表达的作用提供新的见解。

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本文引用的文献

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