CUDA-LR: CUDA-accelerated logistic regression analysis tool for gene-gene interaction for genome-wide association study

Sungyoung Lee, Min-Seok Kwon, Iksoo Huh, T. Park
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引用次数: 3

Abstract

In genome-wide association studies (GWAS), logistic regression (LR) has been most commonly used for finding an association between a disease phenotype and genetic variants such as single nucleotide polymorphism (SNP). Since logistic regression model requires iterative algorithms to get the parameter estimates, its application to GWAS has been limited to the identification of the individual SNPs. Thus, there have been limited applications of LR to multiple SNP analysis including gene-gene interaction analysis in large scale GWAS data. To overcome this computational burden, we developed a logistic regression analysis tool named CUDA-LR, based on the new programming architecture using Graphics Processing Unit (GPU). CUDA-LR supports not only the simple model with single SNP but also more complex model with two SNPs including the interaction. In addition, CUDA-LR provides various parameters to gain more acceleration and perform specified analysis. In the comparison between our analysis and the other methods, CUDA-LR showed almost 700-folds of acceleration and highly reliable results by our GPU specified optimization techniques. We believe that the CUDA-LR now is a useful logistic regression analysis tool for interaction analysis of large scale GWAS datasets.
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CUDA-LR:用于全基因组关联研究的基因相互作用的cuda加速逻辑回归分析工具
在全基因组关联研究(GWAS)中,逻辑回归(LR)最常用于发现疾病表型与遗传变异(如单核苷酸多态性(SNP))之间的关联。由于逻辑回归模型需要迭代算法来获得参数估计,因此其在GWAS中的应用仅限于单个snp的识别。因此,LR在大规模GWAS数据中包括基因-基因互作分析在内的多SNP分析中的应用有限。为了克服这一计算负担,我们开发了一种名为CUDA-LR的逻辑回归分析工具,该工具基于使用图形处理单元(GPU)的新编程架构。CUDA-LR不仅支持单SNP的简单模型,也支持包含相互作用的双SNP的复杂模型。此外,CUDA-LR提供了各种参数,以获得更多的加速和执行指定的分析。在我们的分析与其他方法的比较中,CUDA-LR通过我们的GPU指定优化技术显示了近700倍的加速和高度可靠的结果。我们相信CUDA-LR现在是一个有用的逻辑回归分析工具,用于大规模GWAS数据集的交互分析。
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