Detection of SNP-SNP Interactions in Genome-wide Association Data Using Random Forests and Association Rules

Tung Nguyen, Ly Le
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引用次数: 4

Abstract

The primary goal of genome-wide association studies (GWAS) is to discover genes or variants associated with complex diseases. Most GWA studies use single SNP (single nucleotide polymorphism) approaches that mainly focused on assessing the association between each individual SNP and disease; therefore they cannot take into account the combinations of SNPs. However, complex diseases are thought to involve complex etiologies including complicated interactions between many SNPs. Thus, different approaches are necessary to identify SNPs that influence disease risk jointly or in complex interactions. To discover SNP-SNP interactions, in this paper we propose first to use an improvement of Random Forest algorithm tailored for structured GWAS data, all rules are then extracted from the trees to analyse SNPs interactions. Our method allows one to select subgroups of informative SNPs which are most relevant to disease for building accurate decision trees and then we enable educe SNPs interactions from these trees. By this way, it reduces the dimensionality and can perform well with high-dimensional SNPs data sets. We conducted experiments on two genome-wide SNP data sets to demonstrate the effectiveness of the method for the SNP-SNP interactions.
利用随机森林和关联规则检测全基因组关联数据中的SNP-SNP相互作用
全基因组关联研究(GWAS)的主要目标是发现与复杂疾病相关的基因或变异。大多数GWA研究使用单SNP(单核苷酸多态性)方法,主要侧重于评估每个SNP与疾病之间的关联;因此它们不能考虑到snp的组合。然而,复杂的疾病被认为涉及复杂的病因,包括许多snp之间复杂的相互作用。因此,需要不同的方法来识别共同或复杂相互作用中影响疾病风险的snp。为了发现SNP-SNP相互作用,在本文中,我们建议首先使用针对结构化GWAS数据定制的随机森林算法的改进,然后从树中提取所有规则以分析snp相互作用。我们的方法允许人们选择与疾病最相关的信息性snp亚组,用于构建准确的决策树,然后我们能够从这些树中减少snp的相互作用。通过这种方式,它降低了维数,可以很好地处理高维snp数据集。我们在两个全基因组SNP数据集上进行了实验,以证明该方法在SNP-SNP相互作用方面的有效性。
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