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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >GI-SVM: A sensitive method for predicting genomic islands based on unannotated sequence of a single genome
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GI-SVM: A sensitive method for predicting genomic islands based on unannotated sequence of a single genome

机译:GI-SVM:基于单个基因组的未注释序列预测基因组岛的灵敏方法

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摘要

Genomic islands (GIs) are clusters of functionally related genes acquired by lateral genetic transfer (LGT), and they are present in many bacterial genomes. GIs are extremely important for bacterial research, because they not only promote genome evolution but also contain genes that enhance adaption and enable antibiotic resistance. Many methods have been proposed to predict GI. But most of them rely on either annotations or comparisons with other closely related genomes. Hence these methods cannot be easily applied to new genomes. As the number of newly sequenced bacterial genomes rapidly increases, there is a need for methods to detect GI based solely on sequences of a single genome. In this paper, we propose a novel method, GI-SVM, to predict GIs given only the unannotated genome sequence. GI-SVM is based on one-class support vector machine (SVM), utilizing composition bias in terms of k-mer content. From our evaluations on three real genomes, GI-SVM can achieve higher recall compared with current methods, without much loss of precision. Besides, GI-SVM allows flexible parameter tuning to get optimal results for each genome. In short, GI-SVM provides a more sensitive method for researchers interested in a first-pass detection of GI in newly sequenced genomes.
机译:基因岛(GIs)是通过横向遗传转移(LGT)获得的功能相关基因的簇,它们存在于许多细菌基因组中。胃肠道对于细菌研究极为重要,因为它们不仅促进基因组进化,而且还包含增强适应性并使抗生素具有抗性的基因。已经提出了许多预测GI的方法。但是它们大多数依赖注释或与其他紧密相关的基因组进行比较。因此,这些方法不能轻易地应用于新的基因组。随着新测序的细菌基因组数量的迅速增加,需要一种仅基于单个基因组序列检测GI的方法。在本文中,我们提出了一种新的方法GI-SVM,仅在未注释的基因组序列下预测GI。 GI-SVM基于一类支持向量机(SVM),利用了k-mer含量方面的成分偏差。根据我们对三个真实基因组的评估,与现有方法相比,GI-SVM可以实现更高的查全率,而不会损失很多精度。此外,GI-SVM允许灵活的参数调整以获得每个基因组的最佳结果。简而言之,GI-SVM为感兴趣的研究人员提供了一种更灵敏的方法,该方法对首次测序的基因组中的GI进行首过检测感兴趣。

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