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首页> 外文期刊>Nucleic Acids Research >COMET: adaptive context-based modeling for ultrafast HIV-1 subtype identification
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COMET: adaptive context-based modeling for ultrafast HIV-1 subtype identification

机译:COMET:用于超快HIV-1亚型识别的自适应上下文建模

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摘要

Viral sequence classification has wide applications in clinical, epidemiological, structural and functional categorization studies. Most existing approaches rely on an initial alignment step followed by classification based on phylogenetic or statistical algorithms. Here we present an ultrafast alignment-free subtyping tool for human immunodeficiency virus type one (HIV-1) adapted from Prediction by Partial Matching compression. This tool, named COMET, was compared to the widely used phylogeny-based REGA and SCUEAL tools using synthetic and clinical HIV data sets (1 090 698 and 10 625 sequences, respectively). COMET's sensitivity and specificity were comparable to or higher than the two other subtyping tools on both data sets for known subtypes. COMET also excelled in detecting and identifying new recombinant forms, a frequent feature of the HIV epidemic. Runtime comparisons showed that COMET was almost as fast as USEARCH. This study demonstrates the advantages of alignment-free classification of viral sequences, which feature high rates of variation, recombination and insertions/deletions. COMET is free to use via an online interface.
机译:病毒序列分类在临床,流行病学,结构和功能分类研究中具有广泛的应用。大多数现有方法都依赖于初始比对步骤,然后根据系统发育或统计算法进行分类。在这里,我们介绍了一种适用于人类免疫缺陷病毒类型(HIV-1)的超快速无对齐亚型工具,该工具适用于通过部分匹配压缩的预测。使用合成的和临床的HIV数据集(分别为1,090 698和10 625个序列),将此工具名为COMET,与广泛使用的基于系统发育的REGA和SCUEAL工具进行了比较。在已知亚型的两个数据集上,COMET的敏感性和特异性均与其他两个亚型工具相当或更高。 COMET还擅长检测和鉴定新的重组形式,这是艾滋病流行的常见特征。运行时比较显示,COMET几乎与USEARCH一样快。这项研究证明了病毒序列无比对分类的优势,该序列具有较高的变异率,重组率和插入/缺失率。可通过在线界面免费使用COMET。

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