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首页> 外文期刊>BMC Genomics >Systematic interrogation of the Conus marmoreus venom duct transcriptome with ConoSorter reveals 158 novel conotoxins and 13 new gene superfamilies
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Systematic interrogation of the Conus marmoreus venom duct transcriptome with ConoSorter reveals 158 novel conotoxins and 13 new gene superfamilies

机译:用ConoSorter系统询问马氏锥虫毒管转录组,揭示了158种新型芋螺毒素和13个新基因超家族

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Background Conopeptides, often generically referred to as conotoxins, are small neurotoxins found in the venom of predatory marine cone snails. These molecules are highly stable and are able to efficiently and selectively interact with a wide variety of heterologous receptors and channels, making them valuable pharmacological probes and potential drug leads. Recent advances in next-generation RNA sequencing and high-throughput proteomics have led to the generation of large data sets that require purpose-built and dedicated bioinformatics tools for efficient data mining. Results Here we describe ConoSorter, an algorithm that categorizes cDNA or protein sequences into conopeptide superfamilies and classes based on their signal, pro- and mature region sequence composition. ConoSorter also catalogues key sequence characteristics (including relative sequence frequency, length, number of cysteines, N-terminal hydrophobicity, sequence similarity score) and automatically searches the ConoServer database for known precursor sequences, facilitating identification of known and novel conopeptides. When applied to ConoServer and UniProtKB/Swiss-Prot databases, ConoSorter is able to recognize 100% of known conotoxin superfamilies and classes with a minimum species specificity of 99%. As a proof of concept, we performed a reanalysis of Conus marmoreus venom duct transcriptome and (i) correctly classified all sequences previously annotated, (ii) identified 158 novel precursor conopeptide transcripts, 106 of which were confirmed by protein mass spectrometry, and (iii) identified another 13 novel conotoxin gene superfamilies. Conclusions Taken together, these findings indicate that ConoSorter is not only capable of robust classification of known conopeptides from large RNA data sets, but can also facilitate de novo identification of conopeptides which may have pharmaceutical importance.
机译:背景肽,通常统称为芋螺毒素,是在掠食性海锥蜗牛毒液中发现的小神经毒素。这些分子是高度稳定的,并且能够与多种异源受体和通道有效且选择性地相互作用,从而使其成为有价值的药理探针和潜在的药物先导。下一代RNA测序和高通量蛋白质组学的最新进展已导致生成大型数据集,这些数据集需要专用和专用的生物信息学工具来进行有效的数据挖掘。结果在这里我们描述了ConoSorter,一种将cDNA或蛋白质序列根据其信号,前区和成熟区序列组成归类为conopeptide超家族和类的算法。 ConoSorter还可以对关键序列特征进行分类(包括相对序列频率,长度,半胱氨酸数量,N端疏水性,序列相似性评分),并自动在ConoServer数据库中搜索已知的前体序列,从而有助于识别已知和新颖的对映体。当应用于ConoServer和UniProtKB / Swiss-Prot数据库时,ConoSorter能够识别100%的已知芋螺毒素超家族和类别,且最低物种特异性为99%。作为概念的证明,我们对马氏锥虫毒液管道转录组进行了重新分析,并(i)正确分类了先前注释的所有序列,(ii)鉴定了158种新的前体conopeptide转录本,其中106种已通过蛋白质质谱法确认,和(iii )鉴定出另外13个新的芋螺毒素基因超家族。结论综上所述,这些发现表明ConoSorter不仅能够从大型RNA数据集中对已知的conopepteptes进行可靠的分类,而且还可以从头开始鉴定可能具有药学重要性的conopepteptes。

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