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The Level of Residual Dispersion Variation and the Power of Differential Expression Tests for RNA-Seq Data

机译:残留色散变化的水平和RNA-Seq数据差异表达测试的功效

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摘要

RNA-Sequencing (RNA-Seq) has been widely adopted for quantifying gene expression changes in comparative transcriptome analysis. For detecting differentially expressed genes, a variety of statistical methods based on the negative binomial (NB) distribution have been proposed. These methods differ in the ways they handle the NB nuisance parameters (i.e., the dispersion parameters associated with each gene) to save power, such as by using a dispersion model to exploit an apparent relationship between the dispersion parameter and the NB mean. Presumably, dispersion models with fewer parameters will result in greater power if the models are correct, but will produce misleading conclusions if not. This paper investigates this power and robustness trade-off by assessing rates of identifying true differential expression using the various methods under realistic assumptions about NB dispersion parameters. Our results indicate that the relative performances of the different methods are closely related to the level of dispersion variation unexplained by the dispersion model. We propose a simple statistic to quantify the level of residual dispersion variation from a fitted dispersion model and show that the magnitude of this statistic gives hints about whether and how much we can gain statistical power by a dispersion-modeling approach.
机译:RNA测序(RNA-Seq)已被广泛用于定量比较转录组分析中的基因表达变化。为了检测差异表达的基因,已经提出了多种基于负二项式(NB)分布的统计方法。这些方法的不同之处在于它们处理NB干扰参数(即与每个基因相关的分散参数)以节省功耗的方式不同,例如通过使用分散模型来利用分散参数与NB平均值之间的表观关系。据推测,如果模型正确,具有较少参数的色散模型将产生更大的功效,但如果不正确,则会产生误导性结论。本文通过在关于NB色散参数的实际假设下,使用各种方法评估识别真正差异表达的比率,来研究这种能力和鲁棒性的权衡。我们的结果表明,不同方法的相对性能与色散模型无法解释的色散变化水平密切相关。我们提出了一个简单的统计量,用于从拟合的弥散模型中量化残留弥散变化的水平,并表明该统计量的大小提示了我们是否可以通过色散建模方法获得统计能力以及获得多少统计能力。

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  • 作者

    Gu Mi; Yanming Di;

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  • 年(卷),期 -1(10),4
  • 年度 -1
  • 页码 e0120117
  • 总页数 25
  • 原文格式 PDF
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