Fibration symmetry uncovers minimal regulatory networks for logical computation in bacteria

Luis A. Álvarez-García, Wolfram Liebermeister, Ian Leifer, Hernán A. Makse
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Abstract

Symmetry principles have proven important in physics, deep learning and geometry, allowing for the reduction of complicated systems to simpler, more comprehensible models that preserve the system's features of interest. Biological systems often show a high level of complexity and consist of a high number of interacting parts. Using symmetry fibrations, the relevant symmetries for biological 'message-passing' networks, we reduced the gene regulatory networks of E. coli and B. subtilis bacteria in a way that preserves information flow and highlights the computational capabilities of the network. Nodes that share isomorphic input trees are grouped into equivalence classes called fibers, whereby genes that receive signals with the same 'history' belong to one fiber and synchronize. We further reduce the networks to its computational core by removing 'dangling ends' via k-core decomposition. The computational core of the network consists of a few strongly connected components in which signals can cycle while signals are transmitted between these 'information vortices' in a linear feed-forward manner. These components are in charge of decision making in the bacterial cell by employing a series of genetic toggle-switch circuits that store memory, and oscillator circuits. These circuits act as the central computation machine of the network, whose output signals then spread to the rest of the network.
纤颤对称揭示了细菌中逻辑计算的最小调节网络
对称性原理在物理、深度学习和几何中已经被证明是重要的,它允许将复杂的系统简化为更简单、更容易理解的模型,从而保留系统感兴趣的特征。生物系统通常表现出高度的复杂性,并由大量相互作用的部分组成。使用对称纤维,生物“信息传递”网络的相关对称性,我们减少了大肠杆菌和枯草芽孢杆菌的基因调控网络,以保持信息流并突出网络的计算能力。共享同构输入树的节点被分组到称为纤维的等价类中,从而接收具有相同“历史”的信号的基因属于一个纤维并同步。我们通过k核分解去除“悬垂末端”,进一步将网络减少到其计算核心。网络的计算核心由几个强连接的组件组成,当信号以线性前馈方式在这些“信息漩涡”之间传输时,信号可以循环。这些元件通过使用一系列存储记忆的基因开关电路和振荡器电路,在细菌细胞中负责决策。这些电路充当网络的中央计算机器,其输出信号随后传播到网络的其余部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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