Bipartite Graphs for Visualization Analysis of Microbiome Data

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...

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Main Authors: Karel Sedlar, Petra Videnska, Helena Skutkova, Ivan Rychlik, Ivo Provaznik
Format: Article
Language:English
Published: SAGE Publishing 2016-01-01
Series:Evolutionary Bioinformatics
Online Access:https://doi.org/10.4137/EBO.S38546
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spelling doaj-2b1c4e291a18431da25bb3404efcfe7d2020-11-25T03:40:31ZengSAGE PublishingEvolutionary Bioinformatics1176-93432016-01-0112s110.4137/EBO.S38546Bipartite Graphs for Visualization Analysis of Microbiome DataKarel Sedlar0Petra Videnska1Helena Skutkova2Ivan Rychlik3Ivo Provaznik4Department of Biomedical Engineering, Brno University of Technology, Brno, Czech Republic.Research Centre for Toxic Compounds in the Environment RECETOX, Masaryk University, Brno, Czech Republic.Department of Biomedical Engineering, Brno University of Technology, Brno, Czech Republic.Veterinary Research Institute, Brno, Czech Republic.Department of Biomedical Engineering, Brno University of Technology, Brno, Czech Republic.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.https://doi.org/10.4137/EBO.S38546
collection DOAJ
language English
format Article
sources DOAJ
author Karel Sedlar
Petra Videnska
Helena Skutkova
Ivan Rychlik
Ivo Provaznik
spellingShingle Karel Sedlar
Petra Videnska
Helena Skutkova
Ivan Rychlik
Ivo Provaznik
Bipartite Graphs for Visualization Analysis of Microbiome Data
Evolutionary Bioinformatics
author_facet Karel Sedlar
Petra Videnska
Helena Skutkova
Ivan Rychlik
Ivo Provaznik
author_sort Karel Sedlar
title Bipartite Graphs for Visualization Analysis of Microbiome Data
title_short Bipartite Graphs for Visualization Analysis of Microbiome Data
title_full Bipartite Graphs for Visualization Analysis of Microbiome Data
title_fullStr Bipartite Graphs for Visualization Analysis of Microbiome Data
title_full_unstemmed Bipartite Graphs for Visualization Analysis of Microbiome Data
title_sort bipartite graphs for visualization analysis of microbiome data
publisher SAGE Publishing
series Evolutionary Bioinformatics
issn 1176-9343
publishDate 2016-01-01
description 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.
url https://doi.org/10.4137/EBO.S38546
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AT helenaskutkova bipartitegraphsforvisualizationanalysisofmicrobiomedata
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AT ivoprovaznik bipartitegraphsforvisualizationanalysisofmicrobiomedata
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