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PNAS Plus: rMATS: Robust and flexible detection of differential alternative splicing from replicate RNA-Seq data

机译:PNAS Plus:rMATS:从重复的RNA-Seq数据中可靠灵活地检测差异性可变剪接

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摘要

Ultra-deep RNA sequencing (RNA-Seq) has become a powerful approach for genome-wide analysis of pre-mRNA alternative splicing. We previously developed multivariate analysis of transcript splicing (MATS), a statistical method for detecting differential alternative splicing between two RNA-Seq samples. Here we describe a new statistical model and computer program, replicate MATS (rMATS), designed for detection of differential alternative splicing from replicate RNA-Seq data. rMATS uses a hierarchical model to simultaneously account for sampling uncertainty in individual replicates and variability among replicates. In addition to the analysis of unpaired replicates, rMATS also includes a model specifically designed for paired replicates between sample groups. The hypothesis-testing framework of rMATS is flexible and can assess the statistical significance over any user-defined magnitude of splicing change. The performance of rMATS is evaluated by the analysis of simulated and real RNA-Seq data. rMATS outperformed two existing methods for replicate RNA-Seq data in all simulation settings, and RT-PCR yielded a high validation rate (94%) in an RNA-Seq dataset of prostate cancer cell lines. Our data also provide guiding principles for designing RNA-Seq studies of alternative splicing. We demonstrate that it is essential to incorporate biological replicates in the study design. Of note, pooling RNAs or merging RNA-Seq data from multiple replicates is not an effective approach to account for variability, and the result is particularly sensitive to outliers. The rMATS source code is freely available at . As the popularity of RNA-Seq continues to grow, we expect rMATS will be useful for studies of alternative splicing in diverse RNA-Seq projects.
机译:超深RNA测序(RNA-Seq)已成为全基因组前mRNA替代剪接的强大分析方法。我们先前开发了转录剪接(MATS)的多变量分析,一种用于检测两个RNA-Seq样本之间差异性选择性剪接的统计方法。在这里,我们描述了一种新的统计模型和计算机程序,复制MATS(rMATS),其设计用于从复制RNA-Seq数据中检测差异性可变剪接。 rMATS使用分层模型来同时考虑各个重复样本的不确定性和重复样本之间的变异性。除了分析未配对的重复片段外,rMATS还包括一个专门为样品组之间的配对重复片段设计的模型。 rMATS的假设检验框架非常灵活,可以评估任何用户定义的剪接变化幅度的统计意义。 rMATS的性能通过对模拟和真实RNA-Seq数据的分析来评估。在所有模拟设置中,rMATS的性能均优于两种现有的复制RNA-Seq数据的方法,而RT-PCR在前列腺癌细胞系的RNA-Seq数据集中产生了很高的确认率(94%)。我们的数据还为设计替代剪接的RNA-Seq研究提供了指导原则。我们证明将生物学复制品纳入研究设计至关重要。值得注意的是,合并RNA或合并来自多个重复样品的RNA-Seq数据不是解决变异性的有效方法,并且结果对异常值特别敏感。可从以下网址免费获得rMATS源代码。随着RNA-Seq的受欢迎程度持续增长,我们预计rMATS将可用于研究各种RNA-Seq项目中的可变剪接。

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