A resource of ribosomal RNA-depleted RNA-Seq data from different normal adult and fetal human tissues

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作者
Jocelyn Y.H. Choy
Priscilla L.S. Boon
Nicolas Bertin
Melissa J. Fullwood
机构
[1] Cancer Science Institute of Singapore,
[2] National University of Singapore,undefined
[3] School of Biological Sciences,undefined
[4] Nanyang Technological University,undefined
[5] Institute of Molecular and Cell Biology,undefined
[6] Agency for Science,undefined
[7] Technology and Research (A*STAR),undefined
[8] Yale-NUS Liberal Arts College,undefined
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Gene expression is the most fundamental level at which the genotype leads to the phenotype of the organism. Enabled by ultra-high-throughput next-generation DNA sequencing, RNA-Seq involves shotgun sequencing of fragmented RNA transcripts by next-generation sequencing followed by in silico assembly, and is rapidly becoming the most popular method for gene expression analysis. Poly[A]+ RNA-Seq analyses of normal human adult tissue samples such as Illumina’s Human BodyMap 2.0 Project and the RNA-Seq atlas have provided a useful global resource and framework for comparisons with diseased tissues such as cancer. However, these analyses have failed to provide information on poly[A]−RNA, which is abundant in our cells. The most recent advances in RNA-Seq analyses use ribosomal RNA-depletion to provide information on both poly[A]+ and poly[A]−RNA. In this paper, we describe the use of Illumina’s HiSeq 2000 to generate high quality rRNA-depleted RNA-Seq datasets from human fetal and adult tissues. The datasets reported here will be useful in understanding the different expression profiles in different tissues.
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