Fast and accurate short-read alignment with hybrid hash-tree data structure.

Junichiro Makino, Toshikazu Ebisuzaki, Ryutaro Himeno, Yoshihide Hayashizaki
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Abstract

Rapidly increasing the amount of short-read data generated by NGSs (new-generation sequencers) calls for the development of fast and accurate read alignment programs. The programs based on the hash table (BLAST) and Burrows-Wheeler transform (bwa-mem) are used, and the latter is known to give superior performance. We here present a new algorithm, a hybrid of hash table and suffix tree, which we designed to speed up the alignment of short reads against large reference sequences such as the human genome. The total turnaround time for processing one human genome sample (read depth of 30) is just 31 min with our system while that was more than 25 h with bwa-mem/gatk. The time for the aligner alone is 28 min for our system but around 2 h for bwa-mem. Our new algorithm is 4.4 times faster than bwa-mem while achieving similar accuracy. Variant calling and other downstream analyses after the alignment can be done with open-source tools such as SAMtools and Genome Analysis Toolkit (gatk) packages, as well as our own fast variant caller, which is well parallelized and much faster than gatk.

利用混合哈希树数据结构实现快速准确的短读取配准。
NGS(新一代测序仪)产生的短读数数据量迅速增加,需要开发快速准确的读数比对程序。目前使用的是基于哈希表(BLAST)和Burrows-Wheeler变换(bwa-mem)的程序,已知后者性能更优。我们在此介绍一种新算法,它是哈希表和后缀树的混合算法,我们设计它的目的是加快短读数与大型参考序列(如人类基因组)的比对速度。使用我们的系统处理一个人类基因组样本(读取深度为 30)的总周转时间仅为 31 分钟,而使用 bwa-mem/gatk 则需要 25 小时以上。我们的系统仅比对器就需要 28 分钟,而 bwa-mem 则需要约 2 小时。我们的新算法比 bwa-mem 快 4.4 倍,而准确率却相差无几。比对后的变异调用和其他下游分析可以使用开源工具,如 SAMtools 和基因组分析工具包(gatk),以及我们自己的快速变异调用程序来完成。
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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