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Network2Canvas: network visualization on a canvas with enrichment analysis

机译:Network2Canvas:具有丰富性分析的画布上的网络可视化

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摘要

>Motivation: Networks are vital to computational systems biology research, but visualizing them is a challenge. For networks larger than ∼100 nodes and ∼200 links, ball-and-stick diagrams fail to convey much information. To address this, we developed Network2Canvas (N2C), a web application that provides an alternative way to view networks. N2C visualizes networks by placing nodes on a square toroidal canvas. The network nodes are clustered on the canvas using simulated annealing to maximize local connections where a node’s brightness is made proportional to its local fitness. The interactive canvas is implemented in HyperText Markup Language (HTML)5 with the JavaScript library Data-Driven Documents (D3). We applied N2C to visualize 30 canvases made from human and mouse gene-set libraries and 6 canvases made from the Food and Drug Administration (FDA)-approved drug-set libraries. Given lists of genes or drugs, enriched terms are highlighted on the canvases, and their degree of clustering is computed. Because N2C produces visual patterns of enriched terms on canvases, a trained eye can detect signatures instantly. In summary, N2C provides a new flexible method to visualize large networks and can be used to perform and visualize gene-set and drug-set enrichment analyses.>Availability: N2C is freely available at and is open source.>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:网络对于计算系统生物学研究至关重要,但是可视化它们是一个挑战。对于大于约100个节点和约200个链接的网络,球状图无法传达很多信息。为了解决这个问题,我们开发了Network2Canvas(N2C),这是一个Web应用程序,它提供了一种查看网络的替代方法。 N2C通过将节点放置在方形环形画布上来可视化网络。使用模拟退火将网络节点聚集在画布上,以最大化本地连接,其中节点的亮度与其本地适应度成正比。交互式画布是使用JavaScript库数据驱动文档(D3)以超文本标记语言(HTML)5实现的。我们应用N2C可视化了30个由人和小鼠基因集库制成的画布,以及6个由美国食品药品监督管理局(FDA)批准的药品集库制成的画布。给定基因或药物列表,可以在画布上突出显示丰富的术语,并计算其聚类程度。由于N2C在画布上产生丰富术语的视觉模式,因此训练有素的眼睛可以立即检测到签名。总而言之,N2C提供了一种新的灵活方法来可视化大型网络,可用于执行和可视化基因组和药物组富集分析。>可用性: N2C可以免费获得并且是开源的。 >联系方式: >补充信息:可从生物信息学在线获得。

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