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Determination Of Tag Density Required For Digital Transcriptome Analysis: Application To An Androgen-sensitive Prostate Cancer Model

机译:数字转录组分析所需的标签密度的确定:在雄激素敏感性前列腺癌模型中的应用

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High-throughput sequencing has rapidly gained popularity for transcriptome analysis in mammalian cells because of its ability to generate digital and quantitative information on annotated genes and to detect transcripts and mRNA isoforms. Here, we described a double-random priming method for deep sequencing to profile double poly(A)-selected RNA from LNCaP cells before and after androgen stimulation. From ≈20 million sequence tags, we uncovered 71% of annotated genes and identified hormone-regulated gene expression events that are highly correlated with quantitative real time PCR measurement. A fraction of the sequence tags were mapped to constitutive and alternative splicing events to detect known and new mRNA isoforms expressed in the cell. Finally, curve fitting was used to estimate the number of tags necessary to reach a "saturating" discovery rate among individual applications. This study provides a general guide for analysis of gene expression and alternative splicing by deep sequencing.
机译:由于高通量测序能够生成带注释的基因的数字和定量信息以及检测转录本和mRNA同工型的能力,因此在哺乳动物细胞中进行转录组分析已迅速普及。在这里,我们描述了一种用于深度测序的双随机引物方法,以在雄激素刺激之前和之后对来自LNCaP细胞的双poly(A)选择的RNA进行分析。从大约2000万个序列标签中,我们发现了71%的注释基因,并鉴定了与定量实时PCR测量高度相关的激素调节基因表达事件。一部分序列标签被定位到组成性和选择性剪接事件,以检测在细胞中表达的已知和新的mRNA同工型。最后,使用曲线拟合来估计各个应用程序中达到“饱和”发现率所需的标签数量。这项研究为通过深度测序分析基因表达和选择性剪接提供了一般指导。

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