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A non-biased framework for the annotation and classification of the non-miRNA small RNA transcriptome

机译:注释和分类非miRNA小RNA转录组的无偏框架

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Motivation: Recent progress in high-throughput sequencing technologies has largely contributed to reveal a highly complex landscape of small non-coding RNAs (sRNAs), including novel non-canonical sRNAs derived from long non-coding RNA, repeated elements, transcription start sites and splicing site regions among others. The published frameworks for sRNA data analysis are focused on miRNA detection and prediction, ignoring further information in the dataset. As a consequence, tools for the identification and classification of the sRNAs not belonging to miRNA family are currently lacking.Results: Here, we present, SeqCluster, an extension of the currently available SeqBuster tool to identify and analyze at different levels the sRNAs not annotated or predicted as miRNAs. This new module deals with sequences mapping onto multiple locations and permits a highly versatile and user-friendly interaction with the data in order to easily classify sRNA sequences with a putative functional importance. We were able to detect all known classes of sRNAs described to date using SeqCluster with different sRNA datasets.
机译:动机:高通量测序技术的最新进展在很大程度上揭示了小型非编码RNA(sRNA)的高度复杂,包括衍生自长非编码RNA的新型非规范sRNA,重复元件,转录起始位点和拼接站点区域等。 sRNA数据分析的已发布框架专注于miRNA检测和预测,而忽略了数据集中的更多信息。结果,目前缺少用于鉴定和分类不属于miRNA家族的sRNA的工具。或预测为miRNA。这个新模块处理序列映射到多个位置的问题,并允许与数据进行高度通用和用户友好的交互,以便轻松地对具有假定功能重要性的sRNA序列进行分类。我们能够使用带有不同sRNA数据集的SeqCluster来检测迄今描述的所有已知类别的sRNA。

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