转录组
生物
选择性拼接
计算生物学
从头转录组组装
基因表达谱
胚胎干细胞
cDNA文库
RNA剪接
胚状体
Illumina染料测序
遗传学
核糖核酸
基因
基因表达
DNA测序
互补DNA
信使核糖核酸
成体干细胞
作者
Nicole Cloonan,Alistair R.R. Forrest,Gabriel Kolle,Brooke Gardiner,Geoffrey J. Faulkner,Mellissa K Brown,Darrin Taylor,Anita L Steptoe,Shivangi Wani,Graeme Bethel,Alan J. Robertson,Andrew C. Perkins,Stephen J. Bruce,Clarence C. Lee,Swati Ranade,Heather E. Peckham,Jonathan M. Manning,Kevin McKernan,Sean M. Grimmond
出处
期刊:Nature Methods
[Springer Nature]
日期:2008-05-30
卷期号:5 (7): 613-619
被引量:963
摘要
We developed a massive-scale RNA sequencing protocol, short quantitative random RNA libraries or SQRL, to survey the complexity, dynamics and sequence content of transcriptomes in a near-complete fashion. This method generates directional, random-primed, linear cDNA libraries that are optimized for next-generation short-tag sequencing. We surveyed the poly(A)+ transcriptomes of undifferentiated mouse embryonic stem cells (ESCs) and embryoid bodies (EBs) at an unprecedented depth (10 Gb), using the Applied Biosystems SOLiD technology. These libraries capture the genomic landscape of expression, state-specific expression, single-nucleotide polymorphisms (SNPs), the transcriptional activity of repeat elements, and both known and new alternative splicing events. We investigated the impact of transcriptional complexity on current models of key signaling pathways controlling ESC pluripotency and differentiation, highlighting how SQRL can be used to characterize transcriptome content and dynamics in a quantitative and reproducible manner, and suggesting that our understanding of transcriptional complexity is far from complete.
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