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Improved Placement of Multi-mapping Small RNAs

机译:改进了多映射小RNA的放置

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摘要

High-throughput sequencing of small RNAs (sRNA-seq) is a popular method used to discover and annotate microRNAs (miRNAs), endogenous short interfering RNAs (siRNAs), and Piwi-associated RNAs (piRNAs). One of the key steps in sRNA-seq data analysis is alignment to a reference genome. sRNA-seq libraries often have a high proportion of reads that align to multiple genomic locations, which makes determining their true origins difficult. Commonly used sRNA-seq alignment methods result in either very low precision (choosing an alignment at random), or sensitivity (ignoring multi-mapping reads). Here, we describe and test an sRNA-seq alignment strategy that uses local genomic context to guide decisions on proper placements of multi-mapped sRNA-seq reads. Tests using simulated sRNA-seq data demonstrated that this local-weighting method outperforms other alignment strategies using three different plant genomes. Experimental analyses with real sRNA-seq data also indicate superior performance of local-weighting methods for both plant miRNAs and heterochromatic siRNAs. The local-weighting methods we have developed are implemented as part of the sRNA-seq analysis program ShortStack, which is freely available under a general public license. Improved genome alignments of sRNA-seq data should increase the quality of downstream analyses and genome annotation efforts.
机译:小RNA(sRNA-seq)的高通量测序是一种流行的方法,用于发现和注释microRNA(miRNA),内源短干扰RNA(siRNA)和与Piwi相关的RNA(piRNA)。 sRNA-seq数据分析的关键步骤之一是与参考基因组进行比对。 sRNA-seq文库通常具有较高比例的读取,可与多个基因组位置对齐,这使得确定其真实来源变得困难。常用的sRNA-seq比对方法会导致非常低的精度(随机选择一个比对)或灵敏度(忽略多重映射读取)。在这里,我们描述并测试了一种sRNA-seq对齐策略,该策略使用本地基因组环境来指导有关多映射sRNA-seq读段正确放置的决策。使用模拟sRNA-seq数据进行的测试表明,这种局部加权方法优于使用三种不同植物基因组的其他比对策略。使用真实sRNA-seq数据进行的实验分析还表明,针对植物miRNA和异色siRNA的局部加权方法均具有出色的性能。我们开发的局部加权方法是sRNA-seq分析程序ShortStack的一部分,该程序可在通用公共许可下免费获得。改进的sRNA-seq数据的基因组比对应提高下游分析和基因组注释工作的质量。

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