RNA-seq覆盖对生物通路和GO标签云的影响

Chien-Ming Chen, Tsan-Huang Shih, Tun-Wen Pai, Zhen-Long Liu, M. Chang
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引用次数: 1

摘要

RNA-seq数据分析不仅在转录组尺度上检测新的转录本、启动子和单核苷酸多态性,而且还显示了基因表达的定量测量。为了进行差异表达分析以揭示生物学功能,我们提出了一个集成KEGG生物学途径和基因本体关联的注释的工作流程,用于操作多个RNA-seq数据集。该系统首先将短读段定位到内参基因上,然后对读段覆盖率进行归一化处理,以评估和比较不同基因簇内的表达水平。不同的基因表达水平用不同的颜色表示,并在设计的时间通路中以图形显示。此外,还通过GO标记云表示直观地显示了与差异表达基因簇相关的具有代表性的GO术语。应用三个不同的公共RNA-seq数据集来证明,所提出的工作流程可以为跨株比较或不同时间点测序的相同样品提供有效和高效的差异基因表达分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RNA-seq coverage effects on biological pathways and GO tag clouds
RNA-seq data analysis not only detects novel transcripts, promoters, and single nucleotide polymorphisms in a transcriptome scale, but also shows quantitative measurement of gene expression. In order to perform differential expression analysis for unraveling biological functions, we proposed a workflow which integrated annotations from KEGG biological pathways and Gene Ontology associations for manipulating multiple RNA-seq datasets. The developed system started from mapping short reads onto reference genes, and then performed normalization procedures on read coverage to evaluate and compare expression levels within various gene clusters. Different levels of gene expression were indicated by diverse color shades and graphically shown in designed temporal pathways. Besides, representative GO terms associated with differentially expressed gene cluster were also visually displayed by a GO tag cloud representation. Three different public RNA-seq datasets were applied to demonstrate that the proposed workflow could provide effective and efficient analysis on differential gene expression for either cross-strain comparison or an identical sample sequenced at different time points.
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