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From Gigabyte to Kilobyte: A Bioinformatics Protocol for Mining Large RNA-Seq Transcriptomics Data

机译:从千兆字节到千字节:挖掘大型RNA-Seq转录组学数据的生物信息学协议

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摘要

RNA-Seq techniques generate hundreds of millions of short RNA reads using next-generation sequencing (NGS). These RNA reads can be mapped to reference genomes to investigate changes of gene expression but improved procedures for mining large RNA-Seq datasets to extract valuable biological knowledge are needed. RNAMiner—a multi-level bioinformatics protocol and pipeline—has been developed for such datasets. It includes five steps: Mapping RNA-Seq reads to a reference genome, calculating gene expression values, identifying differentially expressed genes, predicting gene functions, and constructing gene regulatory networks. To demonstrate its utility, we applied RNAMiner to datasets generated from Human, Mouse, Arabidopsis thaliana, and Drosophila melanogaster cells, and successfully identified differentially expressed genes, clustered them into cohesive functional groups, and constructed novel gene regulatory networks. The RNAMiner web service is available at .
机译:RNA测序技术使用下一代测序(NGS)生成亿万个短RNA读数。可以将这些RNA读数映射到参考基因组以研究基因表达的变化,但是需要改进的程序来挖掘大型RNA-Seq数据集以提取有价值的生物学知识。已经针对此类数据集开发了RNAMiner(一种多级生物信息学协议和管道)。它包括五个步骤:将RNA-Seq读图映射到参考基因组,计算基因表达值,识别差异表达的基因,预测基因功能以及构建基因调控网络。为了证明其实用性,我们将RNAMiner应用于人类,小鼠,拟南芥和果蝇果蝇细胞生成的数据集,并成功鉴定了差异表达的基因,将它们聚类为具有凝聚力的官能团,并构建了新的基因调控网络。 RNAMiner Web服务可从访问。

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