基于间隔种子的概率序列特征的宏基因组读取

Samuele Girotto, M. Comin, Cinzia Pizzi
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引用次数: 3

摘要

在医学和环境科学领域,越来越多的测序项目要求开发有效的方法来分析非常大的宏基因组读数集。在宏基因组学中具有挑战性的任务中,在没有参考基因组的情况下,将同一物种的reads聚集在一起的能力,在构建样本中物种相对丰度和多样性的综合描述中起着至关重要的作用。最近,我们提出了一种名为MetaProb的算法,用于宏基因组读取排序,达到了目前无法比拟的精度。MetaProb的竞争优势依赖于基于连续fc-mers的概率序列签名的使用。在这项工作中,我们探索使用间隔种子,而不是连续的标记,来建立这样的签名。实验结果表明,在精心选择的预定义位置允许不匹配在提高精度和减少内存需求方面都有进一步的好处。可用性:https://bitbucket.org/samu661/metaprob。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Binning metagenomic reads with probabilistic sequence signatures based on spaced seeds
The growing number of sequencing projects in medicine and environmental sciences calls for the development of efficient approaches for the analysis of very large sets of metagenomic reads. Among the challenging tasks in metagenomics, the ability to agglomerate, or “bin” together, reads of the same species, without reference genomes, plays a crucial role in building a comprehensive description of relative abundances and diversity of the species in the sample. Recently, we have proposed an algorithm, called MetaProb, for metagenomic reads binning that reaches a precision that is currently unmatched. The competitive advantage of MetaProb depends on the use of probabilistic sequence signatures based on contiguous fc-mers. In this work we explore the use of spaced seeds, rather than contiguous kmers, to build such signatures. The experimental results show that allowing mismatches in carefully chosen predefined positions leads to further benefits both in terms of improved accuracy and of reduction of the memory requirements. Availability: https://bitbucket.org/samu661/metaprob.
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