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A Tutorial on Analysis and Simulation of Boolean Gene Regulatory Network Models

机译:布尔基因调控网络模型分析与仿真教程

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摘要

Driven by the desire to understand genomic functions through the interactions among genes and gene products, the research in gene regulatory networks has become a heated area in genomic signal processing. Among the most studied mathematical models are Boolean networks and probabilistic Boolean networks, which are rule-based dynamic systems. This tutorial provides an introduction to the essential concepts of these two Boolean models, and presents the up-to-date analysis and simulation methods developed for them. In the Analysis section, we will show that Boolean models are Markov chains, based on which we present a Markovian steady-state analysis on attractors, and also reveal the relationship between probabilistic Boolean networks and dynamic Bayesian networks (another popular genetic network model), again via Markov analysis; we dedicate the last subsection to structural analysis, which opens a door to other topics such as network control. The Simulation section will start from the basic tasks of creating state transition diagrams and finding attractors, proceed to the simulation of network dynamics and obtaining the steady-state distributions, and finally come to an algorithm of generating artificial Boolean networks with prescribed attractors. The contents are arranged in a roughly logical order, such that the Markov chain analysis lays the basis for the most part of Analysis section, and also prepares the readers to the topics in Simulation section.
机译:由于渴望通过基因和基因产物之间的相互作用来了解基因组功能,因此基因调控网络的研究已成为基因组信号处理的热点领域。在研究最多的数学模型中,布尔网络和概率布尔网络是基于规则的动态系统。本教程介绍了这两个布尔模型的基本概念,并介绍了为它们开发的最新分析和仿真方法。在“分析”部分,我们将显示布尔模型是马尔可夫链,在此基础上我们对吸引子进行了马尔可夫稳态分析,还揭示了概率布尔网络与动态贝叶斯网络(另一种流行的遗传网络模型)之间的关系,再次通过马尔可夫分析;我们将最后一部分专门用于结构分析,这为诸如网络控制之类的其他主题打开了一扇门。 “模拟”部分将从创建状态转换图和查找吸引子的基本任务开始,继续进行网络动力学仿真并获得稳态分布,最后介绍一种使用指定吸引子生成人工布尔网络的算法。内容按大致逻辑顺序排列,因此,马尔可夫链分析为“分析”部分的大部分奠定了基础,同时也为读者提供了“模拟”部分中的主题的准备。

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