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Pathways of Distinction Analysis: A New Technique for Multi–SNP Analysis of GWAS Data

机译:差异分析的途径:GWAS数据多SNP分析的新技术

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摘要

Genome-wide association studies (GWAS) have become increasingly common due to advances in technology and have permitted the identification of differences in single nucleotide polymorphism (SNP) alleles that are associated with diseases. However, while typical GWAS analysis techniques treat markers individually, complex diseases (cancers, diabetes, and Alzheimers, amongst others) are unlikely to have a single causative gene. Thus, there is a pressing need for multi–SNP analysis methods that can reveal system-level differences in cases and controls. Here, we present a novel multi–SNP GWAS analysis method called Pathways of Distinction Analysis (PoDA). The method uses GWAS data and known pathway–gene and gene–SNP associations to identify pathways that permit, ideally, the distinction of cases from controls. The technique is based upon the hypothesis that, if a pathway is related to disease risk, cases will appear more similar to other cases than to controls (or vice versa) for the SNPs associated with that pathway. By systematically applying the method to all pathways of potential interest, we can identify those for which the hypothesis holds true, i.e., pathways containing SNPs for which the samples exhibit greater within-class similarity than across classes. Importantly, PoDA improves on existing single–SNP and SNP–set enrichment analyses, in that it does not require the SNPs in a pathway to exhibit independent main effects. This permits PoDA to reveal pathways in which epistatic interactions drive risk. In this paper, we detail the PoDA method and apply it to two GWAS: one of breast cancer and the other of liver cancer. The results obtained strongly suggest that there exist pathway-wide genomic differences that contribute to disease susceptibility. PoDA thus provides an analytical tool that is complementary to existing techniques and has the power to enrich our understanding of disease genomics at the systems-level.
机译:由于技术的进步,全基因组关联研究(GWAS)已变得越来越普遍,并已允许鉴定与疾病相关的单核苷酸多态性(SNP)等位基因的差异。但是,尽管典型的GWAS分析技术可以单独处理标记物,但复杂的疾病(癌症,糖尿病和阿尔茨海默氏症等)不太可能具有单一的致病基因。因此,迫切需要能够揭示病例和对照中系统级差异的多SNP分析方法。在这里,我们提出了一种新颖的多SNP GWAS分析方法,称为差异分析途径(PoDA)。该方法利用GWAS数据以及已知的途径-基因和基因-SNP关联来鉴定理想情况下允许区分病例与对照的途径。该技术基于以下假设:如果某个途径与疾病风险相关,那么与该途径相关的SNP的病例看起来将比其他病例更类似于对照(反之亦然)。通过系统地将该方法应用于所有可能感兴趣的途径,我们可以确定那些假设成立的途径,即包含SNP的途径,其样本在类内的相似性高于跨类。重要的是,PoDA改进了现有的单SNP和SNP富集分析,因为它不需要SNP即可显示独立的主要作用。这使PoDA能够揭示上位相互作用推动风险的途径。在本文中,我们详细介绍了PoDA方法并将其应用于两种GWAS:一种是乳腺癌,另一种是肝癌。获得的结果强烈表明存在全通路的基因组差异,这些差异导致疾病的易感性。因此,PoDA提供了一种分析工具,可作为现有技术的补充,并具有丰富我们对系统级疾病基因组学的理解的能力。

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