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Gene expression rate comparison for multiple high-throughput datasets

机译:多个高通量数据集的基因表达率比较

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Microarray provides genome-wide transcript profiles, whereas RNA-seq is an alternative approach applied for transcript discovery and genome annotation. Both high-throughput techniques show quantitative measurement of gene expression. To explore differential gene expression rates and understand biological functions, the authors designed a system which utilises annotations from Kyoto Encyclopedia of Genes and Genomes (KEGG) biological pathways and Gene Ontology (GO) associations for integrating multiple RNA-seq or microarray datasets. The developed system is initiated by either estimating gene expression levels from mapping next generation sequencing short reads onto reference genomes or performing intensity analysis from microarray raw images. Normalisation procedures on expression levels are evaluated and compared through different approaches including Reads Per Kilobase per Million mapped reads (RPKM) and housekeeping gene selection. Such gene expression levels are shown in different colour shades and graphically displayed in designed temporal pathways. To enhance importance of functional relationships of clustered genes, representative GO terms associated with differentially expressed gene cluster are visually illustrated in a tag cloud representation.
机译:微阵列提供了全基因组的转录本谱,而RNA-seq是应用于转录本发现和基因组注释的另一种方法。两种高通量技术都可以定量测量基因表达。为了探究差异的基因表达速率并了解生物学功能,作者设计了一个系统,该系统利用了《京都基因与基因组百科全书》(KEGG)的生物途径注释和基因本体论(GO)关联注释来整合多个RNA-seq或微阵列数据集。通过从映射下一代测序短读片段到参考基因组上的基因表达水平评估基因表达水平或从微阵列原始图像进行强度分析来启动开发的系统。通过不同方法评估和比较表达水平的标准化程序,包括每千碱基每百万碱基对读图(RPKM)和管家基因选择。此类基因表达水平以不同的颜色阴影显示,并以图形方式显示在设计的时间路径中。为了增强聚类基因功能关系的重要性,在标签云表示中直观地说明了与差异表达的基因簇相关的代表性GO术语。

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    《Systems Biology, IET》 |2013年第5期|135-142|共8页
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  • 入库时间 2022-08-17 13:11:19

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