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Specification construction and exact reduction of state transition system models of biochemical processes

机译:生化过程的状态转换系统模型的规范构造和精确还原

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摘要

Biochemical reaction systems may be viewed as discrete event processes characterized by a number of states and state transitions. These systems may be modeled as state transition systems with transitions representing individual reaction events. Since they often involve a large number of interactions, it can be difficult to construct such a model for a system, and since the resulting state-level model can involve a huge number of states, model analysis can be difficult or impossible. Here, we describe methods for the high-level specification of a system using hypergraphs, for the automated generation of a state-level model from a high-level model, and for the exact reduction of a state-level model using information from the high-level model. Exact reduction is achieved through the automated application to the high-level model of the symmetry reduction technique and reduction by decomposition by independent subsystems, allowing potentially significant reductions without the need to generate a full model. The application of the method to biochemical reaction systems is illustrated by models describing a hypothetical ion-channel at several levels of complexity. The method allows for the reduction of the otherwise intractable example models to a manageable size.
机译:生化反应系统可以看作是离散事件过程,其特征在于许多状态和状态转换。可以将这些系统建模为状态转换系统,其中转换代表各个反应事件。由于它们通常涉及大量交互,因此可能难以为系统构建这样的模型,并且由于生成的状态级别模型可能涉及大量状态,因此模型分析可能很困难或不可能。在这里,我们描述了使用超图对系统进行高级规范,从高级模型自动生成状态级模型以及使用来自高级图的信息精确还原状态级模型的方法。级模型。通过自动应用对称减少技术的高级模型并通过独立子系统的分解进行减少,可以实现精确的减少,从而无需生成完整的模型就可以进行潜在的大幅减少。该方法在生化反应系统中的应用由模型描述,该模型描述了几种复杂性水平下的假设离子通道。该方法允许将原本难以处理的示例模型减少到可管理的大小。

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