MetaFunc:微生物组高通量测序的分类和功能分析

Arielle Kae Sulit, Tyler Kolisnik, Frank A Frizelle, Rachel Purcell, Sebastian Schmeier
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引用次数: 2

摘要

微生物群落中发生的功能过程的鉴定增强了传统的微生物群落分类学研究,为群落内发生的相互作用提供了更完整的图景。虽然有一些应用程序可以对宏基因组或元转录组进行功能性注释,但这些应用程序很少能够将分类身份与功能联系起来,或者受到输入类型或使用的数据库的限制。在这里,我们提出了MetaFunc,这是一个以RNA序列作为输入读取的工作流程,并从中(1)识别微生物组样本中存在的物种,(2)提供与所识别物种相关的基因本体注释。此外,MetaFunc允许宿主基因分析,绘制宿主基因组的reads,并在微生物组分析之前分离这些reads。微生物分类的差异丰度分析、差异基因表达分析和基因集富集分析可以通过管道进行。微生物种类和宿主基因之间的最终相关性分析也可以进行。最后,MetaFunc构建了一个R shiny应用程序,允许用户查看微生物组结果并与之交互。在本文中,我们展示了MetaFunc如何应用于结直肠癌的亚转录组数据集。
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MetaFunc: Taxonomic and Functional Analyses of High Throughput Sequencing for Microbiomes
Abstract The identification of functional processes taking place in microbiome communities augment traditional microbiome taxonomic studies, giving a more complete picture of interactions taking place within the community. While there are applications that perform functional annotation on metagenomes or metatranscriptomes, very few of these are able to link taxonomic identity to function or are limited by their input types or databases used. Here we present MetaFunc, a workflow which takes RNA sequences as input reads, and from these (1) identifies species present in the microbiome sample and (2) provides gene ontology annotations associated with the species identified. In addition, MetaFunc allows for host gene analysis, mapping the reads to a host genome, and separating these reads, prior to microbiome analyses. Differential abundance analysis for microbe taxonomies, and differential gene expression analysis and gene set enrichment analysis may then be carried out through the pipeline. A final correlation analysis between microbial species and host genes can also be performed. Finally, MetaFunc builds an R shiny application that allows users to view and interact with the microbiome results. In this paper, we showed how MetaFunc can be applied to metatranscriptomic datasets of colorectal cancer.
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