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A Comparison of Methods for RNA-Seq Differential Expression Analysis and a New Empirical Bayes Approach

机译:RNA-Seq差异表达分析方法的比较和新的经验贝叶斯方法

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摘要

Transcriptome-based biosensors are expected to have a large impact on the future of biotechnology. However, a central aspect of transcriptomics is differential expression analysis, where, currently, deep RNA sequencing (RNA-seq) has the potential to replace the microarray as the standard assay for RNA quantification. Our contributions here to RNA-seq differential expression analysis are two-fold. First, given the high cost of an RNA-seq run, biological replicates are rare, and therefore, information sharing across genes to obtain variance estimates is crucial. To handle such information sharing in a rigorous manner, we propose an hierarchical, empirical Bayes approach (R-EBSeq) that combines the Cufflinks model for generating relative transcript abundance measurements, known as FPKM (fragments per kilobase of transcript length per million mapped reads) with the EBArrays framework, which was previously developed for empirical Bayes analysis of microarray data. A desirable feature of R-EBSeq is easy-to-implement analysis of more than pairwise comparisons, as we illustrate with experimental data. Secondly, we develop the standard RNA-seq test data set, on the level of reads, where 79 transcripts are artificially differentially expressed and, therefore, explicitly known. This test data set allows us to compare the performance, in terms of the true discovery rate, of R-EBSeq to three other widely used RNAseq data analysis packages: Cuffdiff, DEseq and BaySeq. Our analysis indicates that DESeq identifies the first half of the differentially expressed transcripts well, but then is outperformed by Cuffdiff and R-EBSeq. Cuffdiff and R-EBSeq are the two top performers. Thus, R-EBSeq offers good performance, while allowing flexible and rigorous comparison of multiple biological conditions.
机译:基于转录组的生物传感器有望对生物技术的未来产生重大影响。但是,转录组学的一个主要方面是差异表达分析,目前,深度RNA测序(RNA-seq)有望取代微阵列,成为RNA定量的标准检测方法。我们对RNA-seq差异表达分析的贡献是双重的。首先,鉴于RNA测序运行的高昂成本,生物学复制很少见,因此,跨基因共享信息以获得变异估计至关重要。为了以严格的方式处理此类信息共享,我们提出了一种分层的经验贝叶斯方法(R-EBSeq),该方法结合了Cufflinks模型以生成相对转录本丰度测量,称为FPKM(每千个映射读段的转录本每千碱基的片段)使用EBArrays框架,该框架以前是为对微阵列数据进行经验贝叶斯分析而开发的。 R-EBSeq的一个理想功能是易于执行的分析,而不是成对比较,正如我们用实验数据所说明的那样。其次,我们在阅读水平上开发了标准的RNA-seq测试数据集,其中人为差异表达了79个转录物,因此被明确知道。该测试数据集使我们能够将R-EBSeq与其他三种广泛使用的RNAseq数据分析包(Cuffdiff,DEseq和BaySeq)的性能(以真实发现率进行比较)进行比较。我们的分析表明,DESeq可以很好地识别差异表达转录本的前半部分,但其表现优于Cuffdiff和R-EBSeq。 Cuffdiff和R-EBSeq是表现最好的两个。因此,R-EBSeq提供了良好的性能,同时允许对多种生物学条件进行灵活而严格的比较。

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