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Bipartite Graphs for Visualization Analysis of Microbiome Data

机译:用于微生物组数据可视化分析的二部图

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摘要

Visualization analysis plays an important role in metagenomics research. Proper and clear visualization can help researchers get their first insights into data and by selecting different features, also revealing and highlighting hidden relationships and drawing conclusions. To prevent the resulting presentations from becoming chaotic, visualization techniques have to properly tackle the high dimensionality of microbiome data. Although a number of different methods based on dimensionality reduction, correlations, Venn diagrams, and network representations have already been published, there is still room for further improvement, especially in the techniques that allow visual comparison of several environments or developmental stages in one environment. In this article, we represent microbiome data by bipartite graphs, where one partition stands for taxa and the other stands for samples. We demonstrated that community detection is independent of taxonomical level. Moreover, focusing on higher taxonomical levels and the appropriate merging of samples greatly helps improving graph organization and makes our presentations clearer than other graph and network visualizations. Capturing labels in the vertices also brings the possibility of clearly comparing two or more microbial communities by showing their common and unique parts.
机译:可视化分析在宏基因组学研究中起着重要作用。正确而清晰的可视化可以帮助研究人员对数据进行初步了解,并通过选择不同的功能,还可以揭示和突出显示隐藏的关系并得出结论。为了防止最终的演示变得混乱,可视化技术必须正确解决微生物组数据的高维问题。尽管已经发布了许多基于降维,相关性,维恩图和网络表示的不同方法,但仍有进一步改进的空间,尤其是在允许对多个环境或一个环境中的开发阶段进行可视比较的技术中。在本文中,我们用二部图表示微生物组数据,其中一个分区代表分类群,另一个分区代表样本。我们证明了社区检测与分类学水平无关。此外,专注于更高的分类标准和适当的样本合并可以极大地帮助改善图形的组织,并使我们的演示文稿比其他图形和网络可视化效果更清晰。通过在顶点上捕获标签,还可以通过显示两个或多个微生物的共同和独特部分,从而清楚地比较它们。

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