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A constant-time kinetic Monte Carlo algorithm for simulation of large biochemical reaction networks

机译:用于大型生化反应网络仿真的恒定时间动力学Monte Carlo算法

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The time evolution of species concentrations in biochemical reaction networks is often modeled using the stochastic simulation algorithm (SSA) [Gillespie, J. Phys. Chem. 81, 2340 (1977)]. The computational cost of the original SSA scaled linearly with the number of reactions in the network. Gibson and Bruck developed a logarithmic scaling version of the SSA which uses a priority queue or binary tree for more efficient reaction selection [Gibson and Bruck, J. Phys. Chem. A 104, 1876 (2000)]. More generally, this problem is one of dynamic discrete random variate generation which finds many uses in kinetic Monte Carlo and discrete event simulation. We present here a constant-time algorithm, whose cost is independent of the number of reactions, enabled by a slightly more complex underlying data structure. While applicable to kinetic Monte Carlo simulations in general, we describe the algorithm in the context of biochemical simulations and demonstrate its competitive performance on small- and medium-size networks, as well as its superior constant-time performance on very large networks, which are becoming necessary to represent the increasing complexity of biochemical data for pathways that mediate cell function. (C) 2008 American Institute of Physics.
机译:生化反应网络中物种浓度的时间演变通常使用随机模拟算法(SSA)进行建模[Gillespie,J. Phys。化学81,2340(1977)]。原始SSA的计算成本与网络中的反应数量成线性比例关系。 Gibson和Bruck开发了SSA的对数缩放版本,它使用优先级队列或二叉树进行更有效的反应选择[Gibson和Bruck,J. Phys。化学A 104,1876(2000)]。更一般而言,此问题是动态离散随机变量生成之一,它在动力学蒙特卡洛和离散事件模拟中有许多用途。我们在这里提出一种恒定时间算法,该算法的成本与反应数量无关,并由稍微复杂的基础数据结构实现。虽然总体上适用于动力学蒙特卡洛模拟,但我们在生化模拟的背景下描述了该算法,并展示了该算法在中小型网络上的竞争性能以及在超大型网络上的出色的恒定时间性能。越来越有必要代表介导细胞功能的途径的生化数据的复杂性。 (C)2008美国物理研究所。

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