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CUDA compatible GPU cards as efficient hardware accelerators for Smith-Waterman sequence alignment

机译:兼容CUDA的GPU卡可作为Smith-Waterman序列比对的高效硬件加速器

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摘要

BackgroundSearching for similarities in protein and DNA databases has become a routine procedure in Molecular Biology. The Smith-Waterman algorithm has been available for more than 25 years. It is based on a dynamic programming approach that explores all the possible alignments between two sequences; as a result it returns the optimal local alignment. Unfortunately, the computational cost is very high, requiring a number of operations proportional to the product of the length of two sequences. Furthermore, the exponential growth of protein and DNA databases makes the Smith-Waterman algorithm unrealistic for searching similarities in large sets of sequences. For these reasons heuristic approaches such as those implemented in FASTA and BLAST tend to be preferred, allowing faster execution times at the cost of reduced sensitivity. The main motivation of our work is to exploit the huge computational power of commonly available graphic cards, to develop high performance solutions for sequence alignment.
机译:背景技术在蛋白质和DNA数据库中寻找相似性已成为分子生物学的常规程序。 Smith-Waterman算法已经使用了25年以上。它基于动态编程方法,可探索两个序列之间的所有可能比对;结果,它返回最佳的局部对齐方式。不幸的是,计算成本非常高,需要大量与两个序列的长度乘积成比例的运算。此外,蛋白质和DNA数据库的指数增长使Smith-Waterman算法在大型序列中搜索相似性变得不切实际。由于这些原因,倾向于优先使用启发式方法(例如在FASTA和BLAST中实施的方法),从而以降低灵敏度的代价实现更快的执行时间。我们工作的主要动机是利用常用图形卡的巨大计算能力,开发用于序列比对的高性能解决方案。

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