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首页> 外文期刊>BioMed research international >Application of Stochastic Automata Networks for Creation of Continuous Time Markov Chain Models of Voltage Gating of Gap Junction Channels
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Application of Stochastic Automata Networks for Creation of Continuous Time Markov Chain Models of Voltage Gating of Gap Junction Channels

机译:随机自动机网络在间隙连接通道电压门控连续时间马尔可夫链模型创建中的应用

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摘要

The primary goal of this work was to study advantages of numerical methods used for the creation of continuous time Markov chain models (CTMC) of voltage gating of gap junction (GJ) channels composed of connexin protein. This task was accomplished by describing gating of GJs using the formalism of the stochastic automata networks (SANs), which allowed for very efficient building and storing of infinitesimal generator of the CTMC that allowed to produce matrices of the models containing a distinct block structure. All of that allowed us to develop efficient numerical methods for a steady-state solution of CTMC models. This allowed us to accelerate CPU time, which is necessary to solve CTMC models, ∼20 times.
机译:这项工作的主要目标是研究用于创建由连接蛋白组成的间隙连接(GJ)通道的电压门控的连续时间Markov链模型(CTMC)的数值方法的优势。通过使用随机自动机网络(SAN)的形式描述GJ的门控来完成此任务,这可以非常有效地构建和存储CTMC的无穷小生成器,从而可以生成包含不同块结构的模型矩阵。所有这些使我们能够为CTMC模型的稳态解开发高效的数值方法。这使我们可以将解决CTMC模型所需的CPU时间缩短约20倍。

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