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Delineating functional principles of the bow tie structure of a kinase-phosphatase network in the budding yeast

机译:描述发芽酵母中激酶磷酸酶网络的领结结构的功能原理

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Background Kinases and phosphatases (KP) form complex self-regulating networks essential for cellular signal processing. In spite of having a wealth of data about interactions among KPs and their substrates, we have very limited models of the structures of the directed networks they form and consequently our ability to formulate hypotheses about how their structure determines the flow of information in these networks is restricted. Results We assembled and studied the largest bona fide kinase-phosphatase network (KP-Net) known to date for the yeast Saccharomyces cerevisiae . Application of the vertex sort (VS) algorithm on the KP-Net allowed us to elucidate its hierarchical structure in which nodes are sorted into top, core and bottom layers, forming a bow tie structure with a strongly connected core layer. Surprisingly, phosphatases tend to sort into the top layer, implying they are less regulated by phosphorylation than kinases. Superposition of the widest range of KP biological properties over the KP-Net hierarchy shows that core layer KPs: (i), receive the largest number of inputs; (ii), form bottlenecks implicated in multiple pathways and in decision-making; (iii), and are among the most regulated KPs both temporally and spatially. Moreover, top layer KPs are more abundant and less noisy than those in the bottom layer. Finally, we showed that the VS algorithm depends on node degrees without biasing the biological results of the sorted network. The VS algorithm is available as an R package ( https://cran.r-project.org/web/packages/VertexSort/index.html ). Conclusions The KP-Net model we propose possesses a bow tie hierarchical structure in which the top layer appears to ensure highest fidelity and the core layer appears to mediate signal integration and cell state-dependent signal interpretation. Our model of the yeast KP-Net provides both functional insight into its organization as we understand today and a framework for future investigation of information processing in yeast and eukaryotes in general.
机译:背景激酶和磷酸酶(KP)形成细胞信号处理所必需的复杂的自调节网络。尽管拥有大量有关KP及其底物之间相互作用的数据,但我们对它们形成的有向网络的结构的模型非常有限,因此我们就其结构如何决定这些网络中的信息流提出假设的能力是受限制的。结果我们组装并研究了迄今为止最大的酿酒酵母酵母(Saccharomyces cerevisiae)真正的激酶磷酸酶网络(KP-Net)。顶点排序(VS)算法在KP-Net上的应用使我们能够阐明其层次结构,其中节点分为顶层,核心层和底层,形成了具有牢固连接的核心层的蝶形领结结构。出乎意料的是,磷酸酶趋于分选到顶层,这意味着它们比激酶受磷酸化的调节较少。在KP-Net层次上,最广泛的KP生物学特性叠加表明,核心层KP:(i)获得最多的输入; (ii)形成涉及多种途径和决策的瓶颈; (iii),并且在时间和空间上均是最受监管的KP之一。此外,顶层KP比底层KP更为丰富且噪音较小。最后,我们证明了VS算法取决于节点的度数,而不会影响已排序网络的生物学结果。 VS算法作为R包提供(https://cran.r-project.org/web/packages/VertexSort/index.html)。结论我们提出的KP-Net模型具有领结层次结构,其中顶层似乎可以确保最高保真度,而核心层则可以介导信号集成和依赖于细胞状态的信号解释。我们的酵母KP-Net模型既提供了我们今天所了解的功能,也提供了其组织的功能洞察力,也为将来进一步研究酵母和真核生物中的信息处理提供了框架。

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