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Systematic Reduction of a Stochastic Signalling Cascade Model

机译:系统减少随机信号级联模型

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摘要

Biochemical systems involve chemical reactions occurring in low-number regimes, wherein fluctuations are not negligible and thus stochastic models are required to capture the system behaviour. The resulting models are often quite large and complex, involving many reactions and species. For clarity and computational tractability, it is important to be able to simplify these systems to equivalent ones involving fewer elements. While many model simplification approaches have been developed for deterministic systems, there has been limited work on applying these approaches to stochastic modelling. Here, we propose a method that reduces the complexity of stochastic biochemical network models, and apply this method to the reduction of a mammalian signalling cascade. Our results indicate that the simplified model gives an accurate representation for not only the average number of all species, but also for the associated fluctuations and statistical parameters.
机译:生化系统涉及在少数情况下发生的化学反应,其中波动不可忽略,因此需要随机模型来捕获系统行为。生成的模型通常非常大且复杂,涉及许多反应和物种。为了清楚和易于计算,将这些系统简化为涉及较少元素的等效系统非常重要。虽然已经为确定性系统开发了许多模型简化方法,但是将这些方法应用于随机建模的工作仍然有限。在这里,我们提出了一种减少随机生化网络模型的复杂性的方法,并将该方法应用于减少哺乳动物信号级联反应。我们的结果表明,简化的模型不仅可以准确表示所有物种的平均数量,还可以准确地表示相关的波动和统计参数。

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