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首页> 外文期刊>Nucleic Acids Research >RNA-seq mixology: designing realistic control experiments to compare protocols and analysis methods
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RNA-seq mixology: designing realistic control experiments to compare protocols and analysis methods

机译:RNA-SEQ混合器:设计现实的对照实验,以比较协议和分析方法

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Carefully designed control experiments provide a gold standard for benchmarking different genomics research tools. A shortcoming of many gene expression control studies is that replication involves profiling the same reference RNA samplemultiple times. This leads to low, pure technical noise that is atypical of regular studies. To achieve a more realistic noise structure, we generated a RNA-sequencing mixture experiment using two cell lines of the same cancer type. Variability was added by extracting RNA from independent cell cultures and degrading particular samples. The systematic gene expression changes induced by this design allowed benchmarking of different library preparation kits (standard poly-A versus total RNA with Ribozero depletion) and analysis pipelines. Data generated using the total RNA kit had more signal for introns and various RNA classes (ncRNA, snRNA, snoRNA) and less variability after degradation. For differential expression analysis, voom with quality weights marginally outperformed other popular methods, while for differential splicing, DEXSeq was simultaneously the most sensitive and the most inconsistent method. For sample deconvolution analysis, DeMix outperformed IsoPure convincingly. Our RNA- sequencing data set provides valuable resource for benchmarking different protocols and data pre-processing workflows. The extra noise mimics routine lab experiments more closely, ensuring any conclusions are widely applicable.
机译:精心设计的控制实验为基准测试不同的基因组学研究工具提供了金标准。许多基因表达对照研究的缺点是复制涉及分析相同的参考RNA Samplemultips时间。这导致低,纯粹的技术噪音是常规研究的非典型。为了实现更现实的噪声结构,我们使用相同癌症类型的两条细胞系产生了RNA测序混合物实验。通过从独立细胞培养物中提取RNA并降解特定样品来添加可变性。该设计诱导的系统基因表达改变允许不同的文库制备试剂盒(标准Poly-A与Ribozero Fepletion的总RNA)和分析管道的基准测试。使用总RNA试剂盒产生的数据对于内含子和各种RNA类(NCRNA,SNRNA,Snorna)具有更多的信号,并且在降解后的可变性较小。对于差异表达分析,使用质量重量变得略微优于其他流行的方法,而对于差异拼接,Dexseq同时是最敏感的和最不一致的方法。对于样品解卷积分析,Demix令人信服地表现出了令人信服的依赖性。我们的RNA-Sequencing数据集提供了有价值的资源,用于基准与不同的协议和数据预处理工作流程。额外的噪声模仿常规实验室实验更紧密,确保任何结论都广泛适用。

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