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Data structures based on k-mers for querying large collections of sequencing data sets

机译:基于K-MERS查询大量测序数据集的数据结构

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摘要

High-throughput sequencing data sets are usually deposited in public repositories (e.g., the European Nucleotide Archive) to ensure reproducibility. As the amount of data has reached petabyte scale, repositories do not allow one to perform online sequence searches, yet, such a feature would be highly useful to investigators. Toward this goal, in the last few years several computational approaches have been introduced to index and query large collections of data sets. Here, we propose an accessible survey of these approaches, which are generally based on representing data sets as sets of k-mers. We review their properties, introduce a classification, and present their general intuition. We summarize their performance and highlight their current strengths and limitations.
机译:高吞吐量排序数据集通常存放在公共存储库(例如,欧洲核苷酸存档)中以确保可重复性。随着数据量已达到Petabyte刻度,存储库不允许执行在线序列搜索,但这种功能对调查人员非常有用。对于这一目标,在过去几年中,已经引入了几个计算方法来索引和查询大量数据集。在这里,我们提出了对这些方法的可访问调查,这些方法通常基于代表数据集作为K-MERS组。我们审查其属性,介绍分类,并呈现他们的一般直觉。我们总结了他们的表现,并突出了他们当前的优势和局限性。

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