KANALYZER: a method to identify variations of discriminative k-mers in genomic sequences

Dylan Lebatteux, Hugo Soudeyns, I. Boucoiran, S. Gantt, Abdoulaye Baniré Diallo
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引用次数: 1

Abstract

Discriminative k-mers are unique genomic regions that characterize a given viral family, genus, species, or variant. Most existing algorithms for identifying discriminative k-mer sets are limited to returning raw sub-sequences. However, to explain the discriminative properties of a given k-mer for specific taxonomic groups of viruses, it is important to identify the variations (nucleotide sequences derived from an initial k-mer having undergone one or more nucleotide changes) of this k-mer that occur in other groups of viruses. These variations as well as their frequencies of occurrence, their genomic location and their potential influence on biological functions r epresent important insights to understand the classification process. In this article, we introduce KANALYZER, a novel algorithm to identify variations of discriminative k-mers and associated information according to viral taxonomy. The algorithm was assessed to identify k-mer variations in both simulated and real viral sequence sets. In these evaluations, KANALYZER correctly and quickly identified over 95% of the variations and associated information. KANALYZER algorithm is integrated directly into CASTOR-KRFE discriminative k-mers identification tool pipeline. The source code, detailed results and data to reproduce the experiments are available at https://github.com/bioinfoUQAM/CASTOR_KRFE.
KANALYZER:一种在基因组序列中识别歧视性k-mers变异的方法
区别性k-mers是独特的基因组区域,表征给定的病毒科,属,种或变体。大多数现有的识别判别k-mer集的算法都局限于返回原始子序列。然而,为了解释给定k-mer对特定病毒分类群的区别性,重要的是确定该k-mer在其他病毒群中发生的变异(由初始k-mer产生的核苷酸序列经历了一个或多个核苷酸变化)。这些变异及其发生频率、基因组位置和对生物学功能的潜在影响为理解分类过程提供了重要的见解。在这篇文章中,我们介绍了一种新的算法KANALYZER,它可以根据病毒的分类来识别区别性k-mers的变异和相关信息。对该算法进行了评估,以识别模拟和真实病毒序列集中的k-mer变异。在这些评估中,KANALYZER正确、快速地识别了95%以上的变异和相关信息。KANALYZER算法直接集成到CASTOR-KRFE判别k-mers识别工具管道中。源代码、详细的结果和重现实验的数据可在https://github.com/bioinfoUQAM/CASTOR_KRFE上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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