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From minimal signed circuits to the dynamics of Boolean regulatory networks

机译:从最小的带符号电路到布尔监管网络的动态变化

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摘要

It is acknowledged that the presence of positive or negative circuits in regulatory networks such as genetic networks is linked to the emergence of significant dynamical properties such as multistability (involved in differentiation) and periodic oscillations (involved in homeostasis). Rules proposed by the biologist R. Thomas assert that these circuits are necessary for such dynamical properties. These rules have been studied by several authors. Their obvious interest is that they relate the rather simple information contained in the structure of the network (signed circuits) to its much more complex dynamical behaviour. We prove in this article a nontrivial converse of these rules, namely that certain positive or negative circuits in a regulatory graph are actually sufficient for the observation of a restricted form of the corresponding dynamical property, differentiation or homeostasis. More precisely, the crucial property that we require is that the circuit be globally minimal. We then apply these results to the vertebrate immune system, and show that the two minimal functional positive circuits of the model indeed behave as modules which combine to explain the presence of the three stable states corresponding to the Th0, Th1 and Th2 cells.
机译:公认的是,诸如遗传网络之类的调节网络中正电路或负电路的存在与诸如多重稳定性(涉及分化)和周期性振荡(涉及稳态)之类的重要动力学特性的出现有关。由生物学家R.托马斯(R. Thomas)提出的规则断言,这些回路对于此类动力学特性是必需的。这些规则已被几位作者研究。他们的明显兴趣在于,它们将网络(符号电路)结构中包含的相当简单的信息与其更为复杂的动态行为相关联。我们在本文中证明了这些规则的不平凡的反面,即规则图中的某些正或负电路实际上足以观察到相应形式的动力学特性,微分或稳态的受限形式。更准确地说,我们需要的关键特性是电路在全局范围内必须最小。然后,我们将这些结果应用于脊椎动物的免疫系统,并显示该模型的两个最小功能正电路确实起着模块的作用,它们共同解释了对应于Th0,Th1和Th2细胞的三个稳定状态的存在。

著录项

  • 来源
    《Bioinformatics》 |2008年第16期|i220-i226|共7页
  • 作者单位

    CNRS Institut de Mathématiques de Luminy Campus de Luminy Case 907 13288 Marseille Cedex 9 France;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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