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Hubba: hub objects analyzer—a framework of interactome hubs identification for network biology

机译:Hubba:中心对象分析器-用于网络生物学的交互组中心识别框架

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摘要

One major task in the post-genome era is to reconstruct proteomic and genomic interacting networks using high-throughput experiment data. To identify essential nodes/hubs in these interactomes is a way to decipher the critical keys inside biochemical pathways or complex networks. These essential nodes/hubs may serve as potential drug-targets for developing novel therapy of human diseases, such as cancer or infectious disease caused by emerging pathogens. Hub Objects Analyzer (Hubba) is a web-based service for exploring important nodes in an interactome network generated from specific small- or large-scale experimental methods based on graph theory. Two characteristic analysis algorithms, Maximum Neighborhood Component (MNC) and Density of Maximum Neighborhood Component (DMNC) are developed for exploring and identifying hubs/essential nodes from interactome networks. Users can submit their own interaction data in PSI format (Proteomics Standards Initiative, version 2.5 and 1.0), tab format and tab with weight values. User will get an email notification of the calculation complete in minutes or hours, depending on the size of submitted dataset. Hubba result includes a rank given by a composite index, a manifest graph of network to show the relationship amid these hubs, and links for retrieving output files. This proposed method (DMNC || MNC) can be applied to discover some unrecognized hubs from previous dataset. For example, most of the Hubba high-ranked hubs (80% in top 10 hub list, and >70% in top 40 hub list) from the yeast protein interactome data (Y2H experiment) are reported as essential proteins. Since the analysis methods of Hubba are based on topology, it can also be used on other kinds of networks to explore the essential nodes, like networks in yeast, rat, mouse and human. The website of Hubba is freely available at http://hub.iis.sinica.edu.tw/Hubba.
机译:后基因组时代的一项主要任务是使用高通量实验数据重建蛋白质组学和基因组相互作用网络。识别这些交互组中的关键节点/集线器是一种解密生化途径或复杂网络内部关键密钥的方法。这些必需的结节/集线器可以用作潜在的药物靶标,用于开发人类疾病的新疗法,例如由新兴病原体引起的癌症或传染病。集线器对象分析器(Hubba)是一项基于Web的服务,用于探索通过基于图论的特定小型或大型实验方法生成的交互组网络中的重要节点。开发了两种特征分析算法,即最大邻域分量(MNC)和最大邻域分量密度(DMNC),用于从交互组网络中探索和识别集线器/基本节点。用户可以以PSI格式(蛋白质组学标准倡议组织,版本2.5和1.0),标签格式和带有权重值的标签提交自己的交互数据。用户将在几分钟或几小时内收到有关计算完成的电子邮件通知,具体取决于提交的数据集的大小。 Hubba的结果包括一个由综合索引给出的等级,一个网络清单图(用于显示这些集线器之间的关系)以及用于检索输出文件的链接。该提议的方法(DMNC || MNC)可用于从以前的数据集中发现一些无法识别的集线器。例如,来自酵母蛋白质相互作用组数据(Y2H实验)的大多数Hubba高级集线器(在前10个集线器列表中占80%,在前40个集线器列表中> 70%)被报告为必需蛋白。由于Hubba的分析方法是基于拓扑的,因此它也可以用于其他类型的网络以探索基本节点,例如酵母,大鼠,小鼠和人类的网络。 Hubba的网站可免费访问http://hub.iis.sinica.edu.tw/Hubba。

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