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GBOOST 2.0: A GPU-based tool for detecting gene-gene interactions with covariates adjustment in genome-wide association studies

机译:GBOOST 2.0:基于GPU的工具,可在全基因组关联研究中检测具有协变量调整的基因与基因之间的相互作用

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Detecting gene-gene interaction patterns is important to reveal associations between genotype and complex diseases. This task, however, is computationally challenging. For example, in order to exhaustively detect interactions of 1,000,000 single nucleotide polymorphisms (SNPs) genotyped from thousands of individuals, we need to carry out 5×1011 statistical tests. To address the computational challenge, Wan et. al. [1] proposed a fast method named BOOST to exhaustively detect interactions of all SNP pairs. BOOST completes pairwise analysis of 360,000 SNPs in 60 hours on a standard desktop PC. As the interaction tests of SNP pairs are highly parallel, Yung et. al. [2] implemented the BOOST method in GPU and named it GBOOST. GBOOST usually takes about one and a half hours to finish genome-wide interaction analysis of a data set containing about 350,000 SNPs and 5,000 samples using Nvidia GeForce GTX 285 dispaly card.
机译:检测基因基因相互作用模式对于揭示基因型和复杂疾病之间的关联是重要的。但是,这项任务是在计算上具有挑战性的。例如,为了详细地检测来自数千个个体的1,000,000个单核苷酸多态性(SNP)的相互作用,我们需要进行5×1011统计测试。为了解决计算挑战,WAN ET。 al。 [1]提出了一种名为Boost的快速方法,以彻底检测所有SNP对的相互作用。 Boost在标准台式PC上在60小时内完成360,000个SNP的成对分析。随着SNP对的相互作用测试高度平行,Yung Et。 al。 [2]在GPU中实现了升压方法并命名为GBoost。 GBOOST通常需要大约一个半小时,完成使用NVIDIA GEForce GTX 285 ASMAILAY卡的约350,000个SNP和5,000个样品的数据集的基因组相互作用分析。

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