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GBOOST: a GPU-based tool for detecting gene-gene interactions in genome-wide case control studies

机译:GBOOST:基于GPU的工具,可在全基因组病例对照研究中检测基因与基因的相互作用

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摘要

Motivation: Collecting millions of genetic variations is feasible with the advanced genotyping technology. With a huge amount of genetic variations data in hand, developing efficient algorithms to carry out the gene-gene interaction analysis in a timely manner has become one of the key problems in genome-wide association studies (GWAS). Boolean operation-based screening and testing (BOOST), a recent work in GWAS, completes gene-gene interaction analysis in 2.5 days on a desktop computer. Compared with central processing units (CPUs), graphic processing units (GPUs) are highly parallel hardware and provide massive computing resources. We are, therefore, motivated to use GPUs to further speed up the analysis of gene-gene interactions.Results: We implement the BOOST method based on a GPU framework and name it GBOOST. GBOOST achieves a 40-fold speedup compared with BOOST. It completes the analysis of Wellcome Trust Case Control Consortium Type 2 Diabetes (WTCCC T2D) genome data within 1.34 h on a desktop computer equipped with Nvidia GeForce GTX 285 display card.
机译:动机:利用先进的基因分型技术,收集数百万种遗传变异是可行的。拥有大量的遗传变异数据,及时开发有效的算法来进行基因-基因相互作用分析已成为全基因组关联研究(GWAS)的关键问题之一。基于布尔运算的筛选和测试(BOOST)是GWAS中的一项最新工作,可在台式计算机上在2.5天内完成基因-基因相互作用分析。与中央处理器(CPU)相比,图形处理器(GPU)是高度并行的硬件,并提​​供大量的计算资源。因此,我们有动力使用GPU来进一步加快基因-基因相互作用的分析。结果:我们基于GPU框架实现BOOST方法,并将其命名为GBOOST。与BOOST相比,GBOOST的速度提高了40倍。它可以在配备Nvidia GeForce GTX 285显示卡的台式计算机上,在1.34小时内完成对惠康信任案例控制协会2型糖尿病(WTCCC T2D)基因组数据的分析。

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