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Statistical inference for time course RNA-Seq data using a negative binomial mixed-effect model

机译:使用负二项式混合效应模型对时程RNA-Seq数据进行统计推断

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摘要

BackgroundAccurate identification of differentially expressed (DE) genes in time course RNA-Seq data is crucial for understanding the dynamics of transcriptional regulatory network. However, most of the available methods treat gene expressions at different time points as replicates and test the significance of the mean expression difference between treatments or conditions irrespective of time. They thus fail to identify many DE genes with different profiles across time. In this article, we propose a negative binomial mixed-effect model (NBMM) to identify DE genes in time course RNA-Seq data. In the NBMM, mean gene expression is characterized by a fixed effect, and time dependency is described by random effects. The NBMM is very flexible and can be fitted to both unreplicated and replicated time course RNA-Seq data via a penalized likelihood method. By comparing gene expression profiles over time, we further classify the DE genes into two subtypes to enhance the understanding of expression dynamics. A significance test for detecting DE genes is derived using a Kullback-Leibler distance ratio. Additionally, a significance test for gene sets is developed using a gene set score.
机译:背景技术在时间过程中准确识别差异表达(DE)基因的RNA-Seq数据对于理解转录调控网络的动力学至关重要。然而,大多数可用的方法将基因表达在不同时间点作为复制品处理,并测试处理或条件之间的平均表达差异的重要性,而与时间无关。因此,他们无法跨时间鉴定出许多具有不同特征的DE基因。在本文中,我们提出了一个负二项式混合效应模型(NBMM)以在时程RNA-Seq数据中识别DE基因。在NBMM中,平均基因表达具有固定效应,而时间依赖性则由随机效应描述。 NBMM非常灵活,可以通过惩罚似然法拟合未复制和复制的时程RNA-Seq数据。通过比较一段时间内的基因表达谱,我们将DE基因进一步分为两个亚型,以增强对表达动力学的理解。使用Kullback-Leibler距离比得出检测DE基因的显着性检验。另外,使用基因组评分开发了基因组的显着性检验。

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