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cytoHubba: Identifying hub objects and sub-networks from complex interactome

机译:cytoHubba:从复杂的交互组中识别集线器对象和子网

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摘要

[[abstract]]BACKGROUND:Network is a useful way for presenting many types of biological data including protein-protein interactions, gene regulations, cellular pathways, and signal transductions. We can measure nodes by their network features to infer their importance in the network, and it can help us identify central elements of biological networks.RESULTS:We introduce a novel Cytoscape plugin cytoHubba for ranking nodes in a network by their network features. CytoHubba provides 11 topological analysis methods including Degree, Edge Percolated Component, Maximum Neighborhood Component, Density of Maximum Neighborhood Component, Maximal Clique Centrality and six centralities (Bottleneck, EcCentricity, Closeness, Radiality, Betweenness, and Stress) based on shortest paths. Among the eleven methods, the new proposed method, MCC, has a better performance on the precision of predicting essential proteins from the yeast PPI network.CONCLUSIONS:CytoHubba provide a user-friendly interface to explore important nodes in biological networks. It computes all eleven methods in one stop shopping way. Besides, researchers are able to combine cytoHubba with and other plugins into a novel analysis scheme. The network and sub-networks caught by this topological analysis strategy will lead to new insights on essential regulatory networks and protein drug targets for experimental biologists. According to cytoscape plugin download statistics, the accumulated number of cytoHubba is around 6,700 times since 2010.
机译:[[摘要]]背景:网络是一种呈现多种类型生物学数据的有用方法,包括蛋白质-蛋白质相互作用,基因调控,细胞途径和信号转导。我们可以通过节点的网络特征来度量节点,从而推断它们在网络中的重要性,这可以帮助我们识别生物网络的核心元素。结果:我们引入了一种新颖的Cytoscape插件cytoHubba,用于通过节点的网络特征对节点进行排名。 CytoHubba提供了11种拓扑分析方法,包括基于最短路径的度数,边缘渗透分量,最大邻域分量,最大邻域分量密度,最大集团中心度和六个中心点(Bottleneck,EcCentricity,亲和力,辐射度,中间度和应力)。在这11种方法中,新提出的方法MCC在从酵母PPI网络预测必需蛋白质的精度上具有更好的性能。结论:CytoHubba提供了一个用户友好的界面来探索生物网络中的重要节点。它可以一站式计算所有11种方法。此外,研究人员能够将cytoHubba与其他插件结合在一起,形成一种新颖的分析方案。被这种拓扑分析策略捕获的网络和子网络将为实验生物学家带来有关基本调控网络和蛋白质药物靶标的新见解。根据cytoscape插件下载统计,自2010年以来,cytoHubba的累计数量约为6700次。

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    Chin, CH;

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  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 en-US
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