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Mining regulatory 5'UTRs from cDNA deep sequencing datasets.

机译:从cDNA深度测序数据集中挖掘调节性5'UTR。

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Regulatory 5' untranslated regions (r5'UTRs) of mRNAs such as riboswitches modulate the expression of genes involved in varied biological processes in both bacteria and eukaryotes. New high-throughput sequencing technologies could provide powerful tools for discovery of novel r5'UTRs, but the size and complexity of the datasets generated by these technologies makes it difficult to differentiate r5'UTRs from the multitude of other types of RNAs detected. Here, we developed and implemented a bioinformatic approach to identify putative r5'UTRs from within large datasets of RNAs recently identified by pyrosequencing of the Vibrio cholerae small transcriptome. This screen yielded only ~1% of all non-overlapping RNAs along with 75% of previously annotated r5'UTRs and 69 candidate V. cholerae r5'UTRs. These candidates include several putative functional homologues of diverse r5'UTRs characterized in other species as well as numerous candidates upstream of genes involved in pathways not known to be regulated by r5'UTRs, such as fatty acid oxidation and peptidoglycan catabolism. Two of these novel r5'UTRs were experimentally validated using a GFP reporter-based approach. Our findings suggest that the number and diversity of pathways regulated by r5'UTRs has been underestimated and that deep sequencing-based transcriptomics will be extremely valuable in the search for novel r5'UTRs.
机译:mRNA的调节性5'非翻译区(r5'UTR)(如核糖开关)可调节细菌和真核生物中涉及多种生物学过程的基因的表达。新的高通量测序技术可以为发现新型r5'UTR提供强大的工具,但是这些技术生成的数据集的大小和复杂性使得很难将r5'UTR与检测到的其他多种RNA区别开来。在这里,我们开发并实施了一种生物信息学方法,可以从最近通过霍乱弧菌小转录组的焦磷酸测序确定的大型RNA数据集中识别推定的r5'UTR。该筛选仅产生了所有非重叠RNA的〜1%,以及先前注释的r5'UTR和69个候选霍乱弧菌r5'UTR的75%。这些候选物包括以其他物种为特征的各种r5'UTR的几个推定功能同源物,以及参与未知由r5'UTR调控的途径(如脂肪酸氧化和肽聚糖分解代谢)的基因上游的众多候选物。这些新颖的r5'UTR中的两个已使用基于GFP报告基因的方法进行了实验验证。我们的发现表明,被r5'UTR调控的途径的数量和多样性被低估了,基于深度测序的转录组学在寻找新型r5'UTR方面将非常有价值。

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