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A protocol to evaluate RNA sequencing normalization methods

机译:一种评估RNA测序标准化方法的方案

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BACKGROUND:RNA sequencing technologies have allowed researchers to gain a better understanding of how the transcriptome affects disease. However, sequencing technologies often unintentionally introduce experimental error into RNA sequencing data. To counteract this, normalization methods are standardly applied with the intent of reducing the non-biologically derived variability inherent in transcriptomic measurements. However, the comparative efficacy of the various normalization techniques has not been tested in a standardized manner. Here we propose tests that evaluate numerous normalization techniques and applied them to a large-scale standard data set. These tests comprise a protocol that allows researchers to measure the amount of non-biological variability which is present in any data set after normalization has been performed, a crucial step to assessing the biological validity of data following normalization.RESULTS:In this study we present two tests to assess the validity of normalization methods applied to a large-scale data set collected for systematic evaluation purposes. We tested various RNASeq normalization procedures and concluded that transcripts per million (TPM) was the best performing normalization method based on its preservation of biological signal as compared to the other methods tested.CONCLUSION:Normalization is of vital importance to accurately interpret the results of genomic and transcriptomic experiments. More work, however, needs to be performed to optimize normalization methods for RNASeq data. The present effort helps pave the way for more systematic evaluations of normalization methods across different platforms. With our proposed schema researchers can evaluate their own or future normalization methods to further improve the field of RNASeq normalization.
机译:背景:RNA测序技术使研究人员能够更好地了解转录组如何影响疾病。然而,序列技术经常意味着将实验误差引入RNA测序数据。为了抵消这一点,标准化方法标准应用于降低转录组测量中固有的非生物学衍生的变化的目的。然而,各种归一化技术的比较功效尚未以标准化的方式进行测试。在这里,我们提出了评估众多标准化技术的测试并将其应用于大规模标准数据集。这些测试包括一种协议,该协议允许研究人员测量已经在执行归一化之后的任何数据集中的非生物变异性的量,这是评估正常化后数据的生物学有效性的关键步骤。结果:在本研究中我们存在评估归一化方法的有效性应用于用于系统评估目的的大规模数据集的归一化方法的有效性。我们测试了各种RNAseq标准化程序并得出结论,每百万(TPM)的成绩单是基于其测试的其他方法的保存最佳的正常化方法。结论:正常化至关重要,以准确解释基因组的结果至关重要和转录组实验。但是,需要进行更多的工作以优化RNASEQ数据的归一化方法。目前的努力有助于为不同平台进行归一化方法的更系统评估铺平道路。通过我们所提出的架构研究人员,可以评估自己或未来的正常化方法,以进一步改善RNASEQ标准化领域。

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