Samant Asawari, Ogunnaike Babatunde A, Vlachos Dionisios G
Department of Chemical Engineering, University of Delaware, Newark, Delaware 19716, USA.
BMC Bioinformatics. 2007 May 24;8:175. doi: 10.1186/1471-2105-8-175.
The fundamental role that intrinsic stochasticity plays in cellular functions has been shown via numerous computational and experimental studies. In the face of such evidence, it is important that intracellular networks are simulated with stochastic algorithms that can capture molecular fluctuations. However, separation of time scales and disparity in species population, two common features of intracellular networks, make stochastic simulation of such networks computationally prohibitive. While recent work has addressed each of these challenges separately, a generic algorithm that can simultaneously tackle disparity in time scales and population scales in stochastic systems is currently lacking. In this paper, we propose the hybrid, multiscale Monte Carlo (HyMSMC) method that fills in this void.
The proposed HyMSMC method blends stochastic singular perturbation concepts, to deal with potential stiffness, with a hybrid of exact and coarse-grained stochastic algorithms, to cope with separation in population sizes. In addition, we introduce the computational singular perturbation (CSP) method as a means of systematically partitioning fast and slow networks and computing relaxation times for convergence. We also propose a new criteria of convergence of fast networks to stochastic low-dimensional manifolds, which further accelerates the algorithm.
We use several prototype and biological examples, including a gene expression model displaying bistability, to demonstrate the efficiency, accuracy and applicability of the HyMSMC method. Bistable models serve as stringent tests for the success of multiscale MC methods and illustrate limitations of some literature methods.
通过大量的计算和实验研究,已经表明内在随机性在细胞功能中发挥的基本作用。面对这些证据,使用能够捕捉分子波动的随机算法来模拟细胞内网络非常重要。然而,时间尺度分离和物种数量差异是细胞内网络的两个常见特征,这使得对此类网络进行随机模拟在计算上令人望而却步。虽然最近的工作分别解决了这些挑战中的每一个,但目前缺乏一种能够同时解决随机系统中时间尺度和种群尺度差异的通用算法。在本文中,我们提出了混合多尺度蒙特卡罗(HyMSMC)方法来填补这一空白。
所提出的HyMSMC方法将处理潜在刚性的随机奇异摄动概念与精确和粗粒度随机算法的混合相结合,以应对种群大小的差异。此外,我们引入计算奇异摄动(CSP)方法,作为系统划分快速和慢速网络并计算收敛松弛时间的一种手段。我们还提出了快速网络收敛到随机低维流形的新准则,这进一步加速了算法。
我们使用几个原型和生物学实例,包括一个显示双稳性的基因表达模型,来证明HyMSMC方法的效率、准确性和适用性。双稳模型是对多尺度蒙特卡罗方法成功与否的严格测试,并说明了一些文献方法的局限性。