[Regular Paper] A High-Performance Sequence Analysis Engine for Shotgun Metagenomics through GPU Acceleration

Ying-Feng Hsu, Morito Matsuoka, Nicolas Jung, Y. Matsumoto, D. Motooka, S. Nakamura
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Abstract

With the continual growth of low-cost and high-throughput DNA sequence technology, the scale and amount of next-generation sequencing (NGS) datasets are continually increasing in many genomics research areas. Shotgun metagenomics sequencing provides comprehensive information on microorganisms, based on complex samples of the ecosystem. Due to challenges of its scale and computational complexity, efficient sequence processing and analyzing tools are needed. In this paper, we propose a novel high-performance shotgun metagenomics sequence analysis engine for the task of sequence comparison. It includes two major components. First, a customized shifting database, which is optimized from any existing DNA sequence dataset. Second, a high-performance sequence computation algorithm that utilizes the customized shifting reference database and accelerates GPU parallel computing. We elaborated upon the efficiency and computational complexity of our proposed approach in an HPC server, which has eight Nvidia Tesla P100 GPUs. We also conducted a case study to detect viral sequences from patients' blood samples. Our experimental result shows that we obtain similar accuracy to the conventional BLAST method, but with a computational speed that is about twenty times faster.
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基于GPU加速的Shotgun Metagenomics的高性能序列分析引擎
随着低成本、高通量DNA测序技术的不断发展,下一代测序(NGS)数据集的规模和数量在许多基因组学研究领域不断增加。霰弹枪宏基因组测序基于生态系统的复杂样本,提供了关于微生物的全面信息。由于其规模和计算复杂度的挑战,需要高效的序列处理和分析工具。本文提出了一种新型的高性能霰弹枪宏基因组序列分析引擎,用于序列比较。它包括两个主要组成部分。首先,根据现有的DNA序列数据集进行优化,建立自定义的移位数据库。其次,利用自定义移位参考数据库加速GPU并行计算的高性能序列计算算法。我们在HPC服务器上详细阐述了我们提出的方法的效率和计算复杂性,该服务器具有8个Nvidia Tesla P100 gpu。我们还进行了一个病例研究,从患者血液样本中检测病毒序列。我们的实验结果表明,我们获得了与传统BLAST方法相似的精度,但计算速度快了大约20倍。
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