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RAPSearch2: a fast and memory-efficient protein similarity search tool for next-generation sequencing data

机译:RAPSearch2:一种快速且高效存储的蛋白质相似性搜索工具,用于下一代测序数据

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摘要

With the wide application of next-generation sequencing (NGS) techniques, fast tools for protein similarity search that scale well to large query datasets and large databases are highly desirable. In a previous work, we developed RAPSearch, an algorithm that achieved a similar to 20-90-fold speedup relative to BLAST while still achieving similar levels of sensitivity for short protein fragments derived from NGS data. RAPSearch, however, requires a substantial memory footprint to identify alignment seeds, due to its use of a suffix array data structure. Here we present RAPSearch2, a new memory-efficient implementation of the RAPSearch algorithm that uses a collision-free hash table to index a similarity search database. The utilization of an optimized data structure further speeds up the similarity search-another 2-3 times. We also implemented multi-threading in RAPSearch2, and the multi-thread modes achieve significant acceleration ( e. g. 3.5X for 4-thread mode). RAPSearch2 requires up to 2G memory when running in single thread mode, or up to 3.5G memory when running in 4-thread mode.
机译:随着下一代测序(NGS)技术的广泛应用,非常需要能够很好地扩展到大型查询数据集和大型数据库的快速蛋白质相似性搜索工具。在先前的工作中,我们开发了RAPSearch,该算法相对于BLAST达到了20-90倍的加速,同时仍对源自NGS数据的短蛋白片段达到了相似的敏感性水平。但是,由于RAPSearch使用了后缀数组数据结构,因此需要大量内存来标识对齐种子。在这里,我们介绍RAPSearch2,这是RAPSearch算法的一种新的内存有效实现,该算法使用无冲突哈希表为相似性搜索数据库建立索引。优化数据结构的利用进一步加快了相似性搜索-另2-3次。我们还在RAPSearch2中实现了多线程,并且多线程模式实现了显着的加速(例如,对于4线程模式为3.5X)。 RAPSearch2在单线程模式下运行时最多需要2G内存,在4线程模式下运行时最多需要3.5G内存。

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