Space and time efficient parallel algorithms and software for EST clustering

A. Kalyanaraman, S. Aluru, S. Kothari
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引用次数: 43

Abstract

Expressed sequence tags, ESTs, are DNA molecules experimentally derived from expressed portions of genes. Clustering of ESTs is essential for gene recognition and understanding important genetic variations such as those resulting in diseases. In this paper, we present the design and development of a parallel software system for EST clustering. To our knowledge, this is the first such effort to address the problem of EST clustering in parallel. The novel features of our approach include 1) design of space efficient algorithms to keep the space requirement linear in the size of the input data set, 2) a combination of algorithmic techniques to reduce the total work without sacrificing the quality of EST clustering, and 3) use of parallel processing to reduce the run-time and facilitate the clustering of large datasets. Using a combination of these techniques, we report the clustering of 81,414 Arabidopsis ESTs in under 2.5 minutes on a 64-processor IBM SP, a problem that is estimated to take 9 hours of run-time with a state-of-the-art software, provided the memory required to run the software can be made available.
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空间和时间高效的EST聚类并行算法和软件
表达序列标签(est)是通过实验从基因的表达部分获得的DNA分子。est聚类对于基因识别和理解重要的遗传变异(如导致疾病的遗传变异)至关重要。在本文中,我们设计和开发了一个用于EST集群的并行软件系统。据我们所知,这是第一次以并行方式解决EST集群问题。该方法的新特点包括:1)设计空间高效算法,使输入数据集的空间需求保持线性;2)结合多种算法技术,在不牺牲EST聚类质量的情况下减少总工作量;3)使用并行处理,减少运行时间,促进大型数据集的聚类。使用这些技术的组合,我们报告了在64处理器IBM SP上在2.5分钟内对81,414个拟南芥ESTs进行聚类,这个问题使用最先进的软件估计需要9个小时的运行时间,前提是可以提供运行软件所需的内存。
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