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首页> 外文期刊>International journal of computational biology and drug design >Correcting imbalanced reads coverage in bacterial transcriptome sequencing with extreme deep coverage
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Correcting imbalanced reads coverage in bacterial transcriptome sequencing with extreme deep coverage

机译:用极深的覆盖范围纠正细菌转录组测序中不平衡的读数覆盖范围

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摘要

High throughput bacterial RNA-Seq experiments can generate extremely high and imbalanced sequencing coverage. Over- or underestimation of gene expression levels will hinder accurate gene differential expression analysis. Here we evaluated strategies to identify expression differences of genes with high coverage in bacterial transcriptome data using either raw sequence reads or unique reads with duplicate fragments removed. In addition, we proposed a generalised linear model (GLM) based approach to identify imbalance in read coverage based on sequence compositions. Our results show that analysis using raw reads identifies more differentially expressed genes with more accurate fold change than using unique reads. We also demonstrate the presence of sequence composition related biases that are independent of gene expression levels and experimental conditions. Finally, genes that still show strong coverage imbalance after correction were tagged using statistical approach.
机译:高通量细菌RNA-Seq实验可产生极高且不平衡的测序覆盖率。基因表达水平的过高或过低将妨碍准确的基因差异表达分析。在这里,我们评估了使用原始序列读数或去除了重复片段的独特读数来鉴定细菌转录组数据中具有高覆盖度的基因表达差异的策略。此外,我们提出了一种基于广义线性模型(GLM)的方法,以基于序列组成识别阅读覆盖率的不平衡。我们的结果表明,与使用独特读物相比,使用原始读物进行的分析可以鉴定出更准确的倍数变化的差异表达基因。我们还证明了存在与序列组成有关的偏差,这些偏差与基因表达水平和实验条件无关。最后,使用统计学方法标记在校正后仍然显示很强的覆盖失衡的基因。

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