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How data analysis affects power, reproducibility and biological insight of RNA-seq studies in complex datasets

机译:数据分析如何影响复杂数据集中RNA-seq研究的功效,可重复性和生物学见解

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The sequencing of the full transcriptome (RNA-seq) has become the preferred choice for the measurement of genome-wide gene expression. Despite its widespread use, challenges remain in RNA-seq data analysis. One often-overlooked aspect is normalization. Despite the fact that a variety of factors or ‘batch effects' can contribute unwanted variation to the data, commonly used RNA-seq normalization methods only correct for sequencing depth. The study of gene expression is particularly problematic when it is influenced simultaneously by a variety of biological factors in addition to the one of interest. Using examples from experimental neuroscience, we show that batch effects can dominate the signal of interest; and that the choice of normalization method affects the power and reproducibility of the results. While commonly used global normalization methods are not able to adequately normalize the data, more recently developed RNA-seq normalization can. We focus on one particular method, RUVSeq and show that it is able to increase power and biological insight of the results. Finally, we provide a tutorial outlining the implementation of RUVSeq normalization that is applicable to a broad range of studies as well as meta-analysis of publicly available data.
机译:全转录组(RNA-seq)的测序已成为测量全基因组基因表达的首选方法。尽管被广泛使用,但RNA-seq数据分析仍面临挑战。一个经常被忽视的方面是标准化。尽管存在多种因素或“批处理效应”会导致数据产生不必要的变化,但常用的RNA-seq归一化方法只能校正测序深度。当基因表达受到感兴趣的因素之外的多种生物学因素的同时影响时,对基因表达的研究尤其成问题。使用来自实验神经科学的实例,我们证明了批处理效应可以支配感兴趣的信号。并且归一化方法的选择会影响结果的功效和可重复性。虽然常用的全局归一化方法无法充分归一化数据,但最近开发的RNA-seq归一化可以。我们将重点放在一种特定的方法RUVSeq上,并表明它能够提高功效和对结果的生物学认识。最后,我们提供了一个指南,概述了RUVSeq规范化的实现方式,该方法适用于广泛的研究以及对公开数据的荟萃分析。

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