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A two-step integrated approach to detect differentially expressed genes in RNA-Seq data

机译:一种两步的综合方法来检测RNA-SEQ数据中的差异表达基因

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摘要

One of the primary objectives of ribonucleic acid (RNA) sequencing or RNA-Seq experiment is to identify differentially expressed (DE) genes in two or more treatment conditions. It is a common practice to assume that all read counts from RNA-Seq data follow overdispersed (OD) Poisson or negative binomial (NB) distribution, which is sometimes misleading because within each condition, some genes may have unvarying transcription levels with no overdispersion. In such a case, it is more appropriate and logical to consider two sets of genes: OD and non-overdispersed (NOD). We propose a new two-step integrated approach to distinguish DE genes in RNA-Seq data using standard Poisson and NB models for NOD and OD genes, respectively. This is an integrated approach because this method can be merged with any other NB-based methods for detecting DE genes. We design a simulation study and analyze two real RNA-Seq data to evaluate the proposed strategy. We compare the performance of this new method combined with the three R-software packages namely edgeR, DESeq2, and DSS with their default settings. For both the simulated and real data sets, integrated approaches perform better or at least equally well compared to the regular methods embedded in these R-packages.
机译:核糖核酸(RNA)测序或RNA-SEQ实验的主要目标之一是在两个或更多个治疗条件下鉴定差异表达(DE)基因。常见的做法是假设来自RNA-SEQ数据的所有读数遵循过量分散的(OD)泊松或负二进制(NB)分布,这有时是误导性,因为在每个条件下,一些基因可能具有没有过度分散的不变的转录水平。在这种情况下,考虑两组基因更合适和逻辑:OD和非过度分散(NOD)。我们提出了一种新的两步综合方法,分别使用标准泊松和NB模型来区分RNA-SEQ数据中的DE基因,分别用于点头和OD基因。这是一种综合方法,因为该方法可以与任何其他基于NB的方法合并以检测DE基因。我们设计模拟研究并分析了两个真正的RNA-SEQ数据,以评估所提出的策略。我们比较这个新方法的性能与三个R-Software Packages,即Edger,Deseq2和DSS的默认设置相结合。对于模拟和实际数据集,与嵌入这些R包中的常规方法相比,集成方法更好或至少同样好。

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