Snowflake: visualizing microbiome abundance tables as multivariate bipartite graphs

Jannes Peeters, Daniël M. Bot, Gustavo Rovelo Ruiz, Jan Aerts
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Abstract

Current visualizations in microbiome research rely on aggregations in taxonomic classifications or do not show less abundant taxa. We introduce Snowflake: a new visualization method that creates a clear overview of the microbiome composition in collected samples without losing any information due to classification or neglecting less abundant reads. Snowflake displays every observed OTU/ASV in the microbiome abundance table and provides a solution to include the data’s hierarchical structure and additional information obtained from downstream analysis (e.g., alpha- and beta-diversity) and metadata. Based on the value-driven ICE-T evaluation methodology, Snowflake was positively received. Experts in microbiome research found the visualizations to be user-friendly and detailed and liked the possibility of including and relating additional information to the microbiome’s composition. Exploring the topological structure of the microbiome abundance table allows them to quickly identify which taxa are unique to specific samples and which are shared among multiple samples (i.e., separating sample-specific taxa from the core microbiome), and see the compositional differences between samples. An R package for constructing and visualizing Snowflake microbiome composition graphs is available at https://gitlab.com/vda-lab/snowflake.
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雪花:将微生物组丰度表可视化为多变量双峰图
目前微生物组研究中的可视化方法依赖于分类学分类的聚合,或者无法显示含量较低的类群。我们介绍的 Snowflake 是一种新的可视化方法,它能清晰地显示采集样本中微生物组的组成,不会因为分类或忽略低丰度读数而丢失任何信息。Snowflake 可在微生物组丰度表中显示每个观察到的 OTU/ASV,并提供一种解决方案,将数据的层次结构以及从下游分析(如α和β多样性)和元数据中获得的附加信息纳入其中。根据以价值为导向的 ICE-T 评估方法,Snowflake 得到了积极的评价。微生物组研究方面的专家认为,可视化效果方便用户使用,内容详尽,而且可以将其他信息纳入微生物组的组成并与之相关联。通过探索微生物组丰度表的拓扑结构,他们可以快速识别哪些类群是特定样本所独有的,哪些类群是多个样本共有的(即从核心微生物组中分离出特定样本类群),并查看不同样本之间的组成差异。用于构建和可视化雪花微生物群组成图的 R 软件包可在 https://gitlab.com/vda-lab/snowflake 上获得。
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