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Conditional estimation of local pooled dispersion parameter in small-sample RNA-Seq data improves differential expression test

机译:小样本RNA-SEQ数据中局部汇集分散参数的条件估计改善了差异表达测试

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摘要

High throughput sequencing technology in transcriptomics studies contribute to the understanding of gene regulation mechanism and its cellular function, but also increases a need for accurate statistical methods to assess quantitative differences between experiments. Many methods have been developed to account for the specifics of count data: non-normality, a dependence of the variance on the mean, and small sample size. Among them, the small number of samples in typical experiments is still a challenge. Here we present a method for differential analysis of count data, using conditional estimation of local pooled dispersion parameters. A comprehensive evaluation of our proposed method in the aspect of differential gene expression analysis using both simulated and real data sets shows that the proposed method is more powerful than other existing methods while controlling the false discovery rates. By introducing conditional estimation of local pooled dispersion parameters, we successfully overcome the limitation of small power and enable a powerful quantitative analysis focused on differential expression test with the small number of samples.
机译:转录组学研究中的高通量测序技术有助于了解基因调控机制及其细胞功能,但也增加了准确的统计方法,以评估实验之间的定量差异。已经开发出许多方法来解释计数数据的细节:非正常性,依赖性对平均值和小样本大小的依赖性。其中,典型实验中的少量样品仍然是一个挑战。在这里,我们介绍了一种用于计数数据的差异分析的方法,使用局部汇集分散参数的条件估计。通过模拟和实际数据集的差异基因表达分析方面的综合评价,使用模拟和实际数据集显示所提出的方法比控制错误发现率的其他现有方法更强大。通过引入局部汇集色散参数的条件估计,我们成功地克服了小功率的限制,并实现了强大的定量分析,其专注于少量样品的差异表达试验。

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