FPGA上用于非编码RNA基因检测的硬件加速Qrna封装

Fei Xia, Y. Dou, Guo-Qing Lei
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引用次数: 1

摘要

非编码rna (ncRNAs)在生物过程中具有重要的功能作用,已成为现代分子生物学的研究热点。然而,与蛋白质编码基因不同,ncRNA基因序列不具有很强的统计信号,因此如何发现ncRNA备受关注。QRNA是一种功能强大的程序,目前已被广泛用作检测ncRNA基因的高效分析工具。然而,随着基因数据库的爆炸式增长,QRNA包的计算需求和复杂的数据依赖性极大地限制了QRNA包的实用性。为了加速ncRNA基因检测在FPGA芯片上的应用,本文提出了一种细粒度并行QRNA原型系统FPQRNA。我们提出了一个具有多个pe (Processing Elements)的类似收缩压的阵列架构。我们按列划分任务,并将任务分配给pe以实现负载平衡。我们利用数据重用方案来减少从外部存储器加载矩阵的需要。实验结果表明,在AMD Phenom 9650 Quad CPU的PC平台上运行QRNA - 2.0.3c软件,对996个残基进行配对序列比对的速度提高了18倍以上,而FPGA加速器的功耗仅为通用微处理器的30%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fpqrna: Hardware-Accelerated Qrna Package for noncoding RNA Gene Detecting on FPGA
Noncoding RNAs (ncRNAs) have important functional roles in biological processes and have become a central research interest in modern molecular biology. However, how to find ncRNA attracts much more attention since ncRNA gene sequences do not have strong statistical signals, unlike protein coding genes. QRNA is a powerful program and has been widely used as an efficient analysis tool to detect ncRNA gene at present. Unfortunately, the O(L3) computing requirements and complicated data dependency greatly limit the usefulness of QRNA package with the explosion in gene database. In this paper, we present a fine-grained parallel QRNA prototype system, FPQRNA, for accelerating ncRNA gene detection application on FPGA chip. We propose a systolic-like array architecture with multiple PEs (Processing Elements). We partition the tasks by columns and assign tasks to PEs for load balance. We exploit data reuse schemes to reduce the need to load matrices from external memory. The experimental results show a speedup factor of more than 18× over the QRNA - 2.0.3c software running on a PC platform with AMD Phenom 9650 Quad CPU for pairwise sequence alignment with 996 residues, however the power consumption of our FPGA accelerator is only about 30% of that of the general-purpose microprocessors.
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