逆转录病毒识别的快速算法

W. Ashlock, S. Datta
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引用次数: 2

摘要

逆转录病毒在医学、进化和生物学中发挥着重要作用。了解逆转录病毒对宿主的影响的关键一步是在宿主基因组中识别它们。利用序列比对检测逆转录病毒是困难的,因为逆转录病毒种类繁多,突变率高。我们提出了一种快速,准确的算法来检测逆转录病毒,该算法使用监督机器学习和三组特征。一组新的特征确定了逆转录病毒的特征性阅读框结构。另外两组包括其他研究人员用来寻找外显子的特征。我们的算法区分逆转录病毒基因组与非编码序列,内源性逆转录病毒与非编码序列和基因具有很高的准确性。它还能区分内源性逆转录病毒与完整逆转录病毒基因组,慢病毒与其他逆转录病毒,准确度都很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast algorithms for recognizing retroviruses
Retroviruses have important roles to play in medicine, evolution, and biology. A key step towards understanding the effect of retroviruses on hosts is identifying them in the host genome. Detecting retroviruses using sequence alignment is difficult because are very diverse and have high mutation rates. We propose a fast, accurate algorithm for detecting retroviruses that uses supervised machine learning and three sets of features. One set of novel features identify the characteristic reading frame structure of retroviruses. The other two sets include features that have been used by other researchers for exon finding. Our algorithm distinguishes retroviral genomes from non-coding sequences and endogenous retroviruses from non-coding sequences and from genes with high accuracy. It also distinguishes endogenous retroviruses from intact retroviral genomes, lentiviruses from other retroviruses, all with high accuracy.
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