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Genomic analysis of the hierarchical structure of regulatory networks

机译:监管网络层次结构的基因组分析

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A fundamental question in biology is how the cell uses transcription factors (TFs) to coordinate the expression of thousands of genes in response to various stimuli. The relationships between TFs and their target genes can be modeled in terms of directed regulatory networks. These relationships, in turn, can be readily compared with commonplace "chain-of-command" structures in social networks, which have characteristic hierarchical layouts. Here, we develop algorithms for identifying generalized hierarchies (allowing for various loop structures) and use these approaches to illuminate extensive pyramid-shaped hierarchical structures existing in the regulatory networks of representative prokaryotes (Escherichia coli) and eukaryotes (Saccharomyces cer-evisiae), with most TFs at the bottom levels and only a few master TFs on top. These masters are situated near the center of the protein-protein interaction network, a different type of network from the regulatory one, and they receive most of the input for the whole regulatory hierarchy through protein interactions. Moreover, they have maximal influence over other genes, in terms of affecting expression-level changes. Surprisingly, however, TFs at the bottom of the regulatory hierarchy are more essential to the viability of the cell. Finally, one might think master TFs achieve their wide influence through directly regulating many targets, but TFs with most direct targets are in the middle of the hierarchy. We find, in fact, that these midlevel TFs are "control bottlenecks" in the hierarchy, and this great degree of control for "middle managers" has parallels in efficient social structures in various corporate and governmental settings.
机译:生物学中的一个基本问题是细胞如何利用转录因子(TF)来协调数千种基因的表达,以响应各种刺激。 TF与它们的靶基因之间的关系可以根据定向调控网络来建模。这些关系又可以容易地与社交网络中常见的“命令链”结构(具有特征性的层次布局)进行比较。在这里,我们开发了用于识别广义层次结构的算法(允许各种环结构),并使用这些方法来阐明存在于代表性原核生物(大肠杆菌)和真核生物(酿酒酵母)的调控网络中的广泛的金字塔形层次结构,大多数TF位于最底层,而只有几个主TF位于最顶层。这些母版位于蛋白质-蛋白质相互作用网络的中心,这是与监管网络不同类型的网络,它们通过蛋白质相互作用获得整个监管体系的大部分输入。此外,就影响表达水平的变化而言,它们对其他基因的影响最大。但是,令人惊讶的是,位于监管层级底部的TF对于细胞的生存能力更为重要。最后,人们可能会认为,主要TF通过直接监管许多目标来实现其广泛的影响力,但是具有最直接目标的TF处于层次结构的中间。实际上,我们发现这些中层TF是层次结构中的“控制瓶颈”,而对“中层管理人员”的这种高度控制与在各种公司和政府环境中有效的社会结构相似。

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