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DENSE GRAPHLET STATISTICS OF PROTEIN INTERACTION AND RANDOM NETWORKS

机译:蛋白质相互作用和随机网络的密度图统计

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摘要

Understanding evolutionary dynamics from a systemic point of view crucially depends on knowledge about how evolution affects size and structure of the organisms' functional building blocks (modules). It has been recently reported that statistics over sparse PPI graphlets can robustly monitor such evolutionary changes. However, there is abundant evidence that in PPI networks modules can be identified with highly interconnected (dense) and/or bipartite subgraphs. We count such dense graphlets in PPI networks by employing recently developed search strategies that render related inference problems tractable. We demonstrate that corresponding counting statistics differ significantly between prokaryotes and eukaryotes as well as between "real" PPI networks and scale free network emulators. We also prove that another class of emulators, the low-dimensional geometric random graphs (GRGs) cannot contain a specific type of motifs, complete bipartite graphs, which are abundant in PPI networks.
机译:从系统的角度了解进化动力学至关重要地取决于对进化如何影响生物体功能构建块(模块)的大小和结构的了解。最近有报道说,基于稀疏PPI小图的统计信息可以强有力地监视这种进化变化。但是,有大量证据表明,在PPI网络中,可以使用高度互连(密集)和/或二部子图来识别模块。我们通过采用最近开发的搜索策略来统计PPI网络中的密集图小图,这些搜索策略使相关的推理问题易于处理。我们证明原核生物和真核生物之间以及“真实” PPI网络和无标度网络仿真器之间的对应计数统计差异显着。我们还证明了另一类仿真器,即低维几何随机图(GRG)不能包含特定类型的图案,完整的二部图,这在PPI网络中非常丰富。

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