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基于大偏差的随机基因表达

Stochastic gene expression conditioned on large deviations.

作者信息

Horowitz Jordan M, Kulkarni Rahul V

机构信息

Department of Physics, Physics of Living Systems Group, Massachusetts Institute of Technology, 400 Technology Square, Cambridge, MA 02139, United States of America.

出版信息

Phys Biol. 2017 May 23;14(3):03LT01. doi: 10.1088/1478-3975/aa6d89.

Abstract

The intrinsic stochasticity of gene expression can give rise to large fluctuations and rare events that drive phenotypic variation in a population of genetically identical cells. Characterizing the fluctuations that give rise to such rare events motivates the analysis of large deviations in stochastic models of gene expression. Recent developments in non-equilibrium statistical mechanics have led to a framework for analyzing Markovian processes conditioned on rare events and for representing such processes by conditioning-free driven Markovian processes. We use this framework, in combination with approaches based on queueing theory, to analyze a general class of stochastic models of gene expression. Modeling gene expression as a Batch Markovian Arrival Process (BMAP), we derive exact analytical results quantifying large deviations of time-integrated random variables such as promoter activity fluctuations. We find that the conditioning-free driven process can also be represented by a BMAP that has the same form as the original process, but with renormalized parameters. The results obtained can be used to quantify the likelihood of large deviations, to characterize system fluctuations conditional on rare events and to identify combinations of model parameters that can give rise to dynamical phase transitions in system dynamics.

摘要

基因表达的内在随机性会引发大幅波动和罕见事件,这些波动和事件会驱动基因相同的细胞群体中的表型变异。对引发此类罕见事件的波动进行特征描述,推动了对基因表达随机模型中大幅偏差的分析。非平衡统计力学的最新进展带来了一个框架,用于分析以罕见事件为条件的马尔可夫过程,并通过无条件驱动的马尔可夫过程来表示此类过程。我们将这个框架与基于排队论的方法相结合,来分析一类通用的基因表达随机模型。将基因表达建模为批量马尔可夫到达过程(BMAP),我们得出了精确的分析结果,量化了诸如启动子活性波动等时间积分随机变量的大幅偏差。我们发现,无条件驱动过程也可以由一个与原始过程形式相同但参数经过重整化的BMAP来表示。所获得的结果可用于量化大幅偏差的可能性,以表征以罕见事件为条件的系统波动,并识别可能导致系统动力学中动态相变的模型参数组合。

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Stochastic gene expression conditioned on large deviations.基于大偏差的随机基因表达
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