Park Juw Won, Tokheim Collin, Shen Shihao, Xing Yi
Department of Microbiology, Immunology, and Molecular Genetics, UCLA, Los Angeles, CA, USA.
Methods Mol Biol. 2013;1038:171-9. doi: 10.1007/978-1-62703-514-9_10.
RNA sequencing (RNA-Seq) has emerged as a powerful and increasingly cost-effective technology for analysis of transcriptomes. RNA-Seq has several significant advantages over gene expression microarrays, including its high sensitivity and accuracy, broad dynamic range, nucleotide-level resolution, ability to detect novel mRNA transcripts, and ability to analyze pre-mRNA alternative splicing. A major application of RNA-Seq is to detect differential alternative splicing, i.e., differences in exon splicing patterns among different biological conditions. We recently developed a statistical method multivariate analysis of transcript splicing (MATS) for detecting differential alternative splicing events from RNA-Seq data. Here, we describe a computational pipeline RNASeq-MATS based on the MATS algorithm. This pipeline automatically detects and analyzes differential alternative splicing events corresponding to all major types of alternative splicing patterns from RNA-Seq data.
RNA测序(RNA-Seq)已成为一种强大且成本效益日益提高的转录组分析技术。与基因表达微阵列相比,RNA-Seq具有几个显著优势,包括高灵敏度和准确性、广泛的动态范围、核苷酸水平分辨率、检测新mRNA转录本的能力以及分析前体mRNA可变剪接的能力。RNA-Seq的一个主要应用是检测差异可变剪接,即在不同生物学条件下外显子剪接模式的差异。我们最近开发了一种统计方法——转录本剪接多变量分析(MATS),用于从RNA-Seq数据中检测差异可变剪接事件。在此,我们描述了一种基于MATS算法的计算流程RNASeq-MATS。该流程可自动从RNA-Seq数据中检测和分析与所有主要可变剪接模式相对应的差异可变剪接事件。