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Reaction Factoring and Bipartite Update Graphs Accelerate the Gillespie Algorithm for Large-Scale Biochemical Systems

机译:反应因子和二部更新图可加速大规模生化系统的Gillespie算法

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摘要

ODE simulations of chemical systems perform poorly when some of the species have extremely low concentrations. Stochastic simulation methods, which can handle this case, have been impractical for large systems due to computational complexity. We observe, however, that when modeling complex biological systems: (1) a small number of reactions tend to occur a disproportionately large percentage of the time, and (2) a small number of species tend to participate in a disproportionately large percentage of reactions. We exploit these properties in LOLCAT Method, a new implementation of the Gillespie Algorithm. First, factoring reaction propensities allows many propensities dependent on a single species to be updated in a single operation. Second, representing dependencies between reactions with a bipartite graph of reactions and species requires only storage for reactions, rather than the required for a graph that includes only reactions. Together, these improvements allow our implementation of LOLCAT Method to execute orders of magnitude faster than currently existing Gillespie Algorithm variants when simulating several yeast MAPK cascade models.
机译:当某些物种的浓度极低时,化学系统的ODE模拟效果会很差。可以处理这种情况的随机仿真方法由于计算复杂性而在大型系统中不切实际。但是,我们观察到,在对复杂的生物系统进行建模时:(1)少量的反应往往会以不成比例的时间比例发生,并且(2)少数物种的反应往往会以不成比例的比例参与反应。我们在Gillespie算法的新实现LOLCAT方法中利用了这些属性。首先,分解反应倾向允许在单个操作中更新取决于单个物种的许多倾向。其次,用反应和物质的二分图表示反应之间的依赖性仅需要存储反应,而不需要仅包含反应的图。综合起来,这些改进使我们在模拟几个酵母MAPK级联模型时,实现LOLCAT方法的执行速度比当前现有的Gillespie算法变体快几个数量级。

著录项

  • 作者

    Indurkhya, Sagar; Beal, Jacob;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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