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Effective Computational Methods for Hybrid Stochastic Gene Networks

机译:混合随机基因网络的有效计算方法

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At the scale of the individual cell, protein production is a stochastic process with multiple time scales, combining quick and slow random steps with discontinuous and smooth variation. Hybrid stochastic processes, in particular piecewise-deterministic Markov processes (PDMP), are well adapted for describing such situations. PDMPs approximate the jump Markov processes traditionally used as models for stochastic chemical reaction networks. Although hybrid modelling is now well established in biology, these models remain computationally challenging. We propose several improved methods for computing time dependent multivariate probability distributions (MPD) of PDMP models of gene networks. In these models, the promoter dynamics is described by a finite state, continuous time Markov process, whereas the mRNA and protein levels follow ordinary differential equations (ODEs). The Monte-Carlo method combines direct simulation of the PDMP with analytic solutions of the ODEs. The push-forward method numerically computes the probability measure advected by the deterministic ODE flow, through the use of analytic expressions of the corresponding semigroup. Compared to earlier versions of this method, the probability of the promoter states sequence is computed beyond the naïve mean field theory and adapted for non-linear regulation functions. Availability. The algorithms described in this paper were implemented in MATLAB. The code is available at Zenodo.
机译:在单个细胞的规模上,蛋白质生产是具有多个时间尺度的随机过程,将快速和缓慢的随机步骤与不连续和平滑的变化结合在一起。混合随机过程,特别是分段确定性马尔可夫过程(PDMP),非常适合描述这种情况。 PDMP近似于传统上用作随机化学反应网络模型的跳跃马尔可夫过程。尽管现在在生物学中已经建立了混合建模,但是这些模型在计算上仍然具有挑战性。我们提出了几种改进的方法来计算基因网络的PDMP模型的时间相关多元概率分布(MPD)。在这些模型中,启动子动力学由有限状态,连续时间马尔可夫过程描述,而mRNA和蛋白质水平遵循常微分方程(ODE)。蒙特卡洛方法将PDMP的直接模拟与ODE的解析解结合在一起。前推方法通过使用相应的半群的解析表达式来数值计算确定性ODE流所推导的概率测度。与该方法的早期版本相比,启动子状态序列的概率超出了朴素的平均场理论,并且适用于非线性调节函数。可用性。本文描述的算法是在MATLAB中实现的。该代码可从Zenodo获得。

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