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C3NA:基于相关和一致性的跨分类群网络分析方法,用于分析微生物组成数据。

C3NA: correlation and consensus-based cross-taxonomy network analysis for compositional microbial data.

机构信息

Bioinformatics Research Center, Biological Sciences, North Carolina State University, Raleigh, NC, USA.

出版信息

BMC Bioinformatics. 2022 Nov 8;23(1):468. doi: 10.1186/s12859-022-05027-9.

Abstract

BACKGROUND

Studying the co-occurrence network structure of microbial samples is one of the critical approaches to understanding the perplexing and delicate relationship between the microbe, host, and diseases. It is also critical to develop a tool for investigating co-occurrence networks and differential abundance analyses to reveal the disease-related taxa-taxa relationship. In addition, it is also necessary to tighten the co-occurrence network into smaller modules to increase the ability for functional annotation and interpretability of  these taxa-taxa relationships.  Also, it is critical to retain the phylogenetic relationship among the taxa to identify differential abundance patterns, which can be used to resolve contradicting functions reported by different studies.

RESULTS

In this article, we present Correlation and Consensus-based Cross-taxonomy Network Analysis (C3NA), a user-friendly R package for investigating compositional microbial sequencing data to identify and compare co-occurrence patterns across different taxonomic levels. C3NA contains two interactive graphic user interfaces (Shiny applications), one of them dedicated to the comparison between two diagnoses, e.g., disease versus control. We used C3NA to analyze two well-studied diseases, colorectal cancer, and Crohn's disease. We discovered clusters of study and disease-dependent taxa that overlap with known functional taxa studied by other discovery studies and differential abundance analyses.

CONCLUSION

C3NA offers a new microbial data analyses pipeline for refined and enriched taxa-taxa co-occurrence network analyses, and the usability was further expanded via the built-in Shiny applications for interactive investigation.

摘要

背景

研究微生物样本的共现网络结构是理解微生物、宿主和疾病之间复杂微妙关系的关键方法之一。开发用于研究共现网络和差异丰度分析的工具以揭示与疾病相关的分类群-分类群关系也很重要。此外,还需要将共现网络收紧到更小的模块中,以提高这些分类群-分类群关系的功能注释和可解释性。此外,保留分类群之间的系统发育关系对于识别差异丰度模式至关重要,这些模式可用于解决不同研究报告的功能冲突。

结果

在本文中,我们提出了基于相关性和一致性的跨分类群网络分析(C3NA),这是一个用户友好的 R 包,用于研究组合微生物测序数据,以识别和比较不同分类水平的共现模式。C3NA 包含两个交互式图形用户界面(Shiny 应用程序),其中一个专门用于比较两种诊断,例如疾病与对照。我们使用 C3NA 分析了两种研究充分的疾病,即结直肠癌和克罗恩病。我们发现了与其他发现研究和差异丰度分析中研究的已知功能分类群重叠的研究和疾病依赖分类群簇。

结论

C3NA 为精细化和丰富的分类群-分类群共现网络分析提供了一个新的微生物数据分析管道,并且通过内置的 Shiny 应用程序进一步扩展了可用性,以进行交互式研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d4b4/9644555/240df1cf3a51/12859_2022_5027_Fig1_HTML.jpg

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