Department of Computer Science, Virginia Tech, Blacksburg, Virginia 24061, USA.
J Chem Phys. 2012 Jan 21;136(3):034105. doi: 10.1063/1.3677190.
The eukaryotic cell cycle is regulated by a complicated chemical reaction network. Although many deterministic models have been proposed, stochastic models are desired to capture noise in the cell resulting from low numbers of critical species. However, converting a deterministic model into one that accurately captures stochastic effects can result in a complex model that is hard to build and expensive to simulate. In this paper, we first apply a hybrid (mixed deterministic and stochastic) simulation method to such a stochastic model. With proper partitioning of reactions between deterministic and stochastic simulation methods, the hybrid method generates the same primary characteristics and the same level of noise as Gillespie's stochastic simulation algorithm, but with better efficiency. By studying the results generated by various partitionings of reactions, we developed a new strategy for hybrid stochastic modeling of the cell cycle. The new approach is not limited to using mass-action rate laws. Numerical experiments demonstrate that our approach is consistent with characteristics of noisy cell cycle progression, and yields cell cycle statistics in accord with experimental observations.
真核细胞周期受复杂的化学反应网络调控。虽然已经提出了许多确定性模型,但为了捕捉由于关键物种数量较少而导致的细胞内噪声,仍需要随机模型。然而,将确定性模型转换为能够准确捕捉随机效应的模型可能会导致模型变得复杂,难以构建且模拟成本高。在本文中,我们首先将混合(确定和随机混合)模拟方法应用于此类随机模型。通过在确定模拟方法和随机模拟方法之间对反应进行适当的分区,混合方法生成的主要特征与 Gillespie 的随机模拟算法相同,且噪声水平相同,但效率更高。通过研究不同分区反应生成的结果,我们开发了一种新的细胞周期混合随机建模策略。新方法不仅限于使用质量作用定律。数值实验表明,我们的方法与噪声细胞周期进展的特征一致,并产生与实验观察一致的细胞周期统计数据。