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Detection of attractors of large Boolean networks via exhaustive enumeration of appropriate subspaces of the state space

机译:通过状态空间适当子空间的穷举枚举来检测大型布尔网络的吸引子

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摘要

BackgroundBoolean models are increasingly used to study biological signaling networks. In a Boolean network, nodes represent biological entities such as genes, proteins or protein complexes, and edges indicate activating or inhibiting influences of one node towards another. Depending on the input of activators or inhibitors, Boolean networks categorize nodes as either active or inactive. The formalism is appealing because for many biological relationships, we lack quantitative information about binding constants or kinetic parameters and can only rely on a qualitative description of the type “A activates (or inhibits) B”. A central aim of Boolean network analysis is the determination of attractors (steady states and/or cycles). This problem is known to be computationally complex, its most important parameter being the number of network nodes. Various algorithms tackle it with considerable success. In this paper we present an algorithm, which extends the size of analyzable networks thanks to simple and intuitive arguments.
机译:背景布尔模型被越来越多地用于研究生物信号网络。在布尔网络中,节点表示生物实体,例如基因,蛋白质或蛋白质复合物,边缘表示激活或抑制一个节点对另一节点的影响。根据激活器或抑制器的输入,布尔网络将节点分类为活动或不活动。形式主义之所以吸引人,是因为对于许多生物学关系,我们缺乏有关结合常数或动力学参数的定量信息,并且只能依靠对“ A激活(或抑制)B”类型的定性描述。布尔网络分析的主要目标是确定吸引子(稳态和/或周期)。已知此问题在计算上很复杂,其最重要的参数是网络节点的数量。各种算法都可以成功解决它。在本文中,我们提出了一种算法,该算法借助简单直观的参数扩展了可分析网络的大小。

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