Thomas Philipp, Shahrezaei Vahid
Department of Mathematics, Imperial College London, London, UK.
J R Soc Interface. 2021 May;18(178):20210274. doi: 10.1098/rsif.2021.0274. Epub 2021 May 26.
The chemical master equation and the Gillespie algorithm are widely used to model the reaction kinetics inside living cells. It is thereby assumed that cell growth and division can be modelled through effective dilution reactions and extrinsic noise sources. We here re-examine these paradigms through developing an analytical agent-based framework of growing and dividing cells accompanied by an exact simulation algorithm, which allows us to quantify the dynamics of virtually any intracellular reaction network affected by stochastic cell size control and division noise. We find that the solution of the chemical master equation-including static extrinsic noise-exactly agrees with the agent-based formulation when the network under study exhibits , a novel condition that generalizes concentration homeostasis in deterministic systems to higher order moments and distributions. We illustrate stochastic concentration homeostasis for a range of common gene expression networks. When this condition is not met, we demonstrate by extending the linear noise approximation to agent-based models that the dependence of gene expression noise on cell size can qualitatively deviate from the chemical master equation. Surprisingly, the total noise of the agent-based approach can still be well approximated by extrinsic noise models.
化学主方程和 Gillespie 算法被广泛用于模拟活细胞内的反应动力学。因此可以假设,细胞生长和分裂可以通过有效的稀释反应和外在噪声源来建模。我们在此通过开发一个基于代理的分析框架来重新审视这些范式,该框架用于模拟生长和分裂的细胞,并伴有精确的模拟算法,这使我们能够量化受随机细胞大小控制和分裂噪声影响的几乎任何细胞内反应网络的动力学。我们发现,当所研究的网络呈现出一种新的条件时,化学主方程的解(包括静态外在噪声)与基于代理的公式完全一致,该条件将确定性系统中的浓度稳态推广到高阶矩和分布。我们展示了一系列常见基因表达网络的随机浓度稳态。当不满足此条件时,我们通过将线性噪声近似扩展到基于代理的模型来证明,基因表达噪声对细胞大小的依赖性可能在定性上偏离化学主方程。令人惊讶的是,基于代理方法的总噪声仍然可以通过外在噪声模型很好地近似。