An efficient parallel approach for identifying protein families in large-scale metagenomic data sets

Changjun Wu, A. Kalyanaraman
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引用次数: 19

Abstract

Metagenomics is the study of environmental microbial communities using state-of-the-art genomic tools. Recent advancements in high-throughput technologies have enabled the accumulation of large volumes of metagenomic data that was until a couple of years back was deemed impractical for generation. A primary bottleneck, however, is in the lack of scalable algorithms and open source software for large-scale data processing. In this paper, we present the design and implementation of a novel parallel approach to identify protein families from large-scale metagenomic data. Given a set of peptide sequences we reduce the problem to one of detecting arbitrarily-sized dense subgraphs from bipartite graphs. Our approach efficiently parallelizes this task on a distributed memory machine through a combination of divide-and-conquer and combinatorial pattern matching heuristic techniques. We present performance and quality results of extensively testing our implementation on 160 K randomly sampled sequences from the CAMERA environmental sequence database using 512 nodes of a BlueGene/L supercomputer.
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一种在大规模宏基因组数据集中识别蛋白质家族的有效并行方法
宏基因组学是使用最先进的基因组工具研究环境微生物群落。近年来,高通量技术的进步使得大量宏基因组数据的积累成为可能,而这些数据在几年前还被认为是不切实际的。然而,主要的瓶颈是缺乏可扩展的算法和用于大规模数据处理的开源软件。在本文中,我们提出了一种新的平行方法的设计和实现,从大规模宏基因组数据中识别蛋白质家族。给定一组肽序列,我们将问题简化为从二部图中检测任意大小的密集子图的问题。我们的方法通过分而治之和组合模式匹配启发式技术的结合,在分布式内存机器上有效地并行化了该任务。我们使用BlueGene/L超级计算机的512个节点,对来自CAMERA环境序列数据库的160 K随机采样序列进行了广泛的测试,并给出了性能和质量结果。
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