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Identifying the Genetic Variation of Gene Expression Using Gene Sets: Application of Novel Gene Set eQTL Approach to PharmGKB and KEGG

机译:确定基因表达的遗传变异使用基因集:新基因组eQTL方法的应用pharmGKB和KEGG

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摘要

Genetic variation underlying the regulation of mRNA gene expression in humans may provide key insights into the molecular mechanisms of human traits and complex diseases. Current statistical methods to map genetic variation associated with mRNA gene expression have typically applied standard linkage and/or association methods; however, when genome-wide SNP and mRNA expression data are available performing all pair wise comparisons is computationally burdensome and may not provide optimal power to detect associations. Consideration of different approaches to account for the high dimensionality and multiple testing issues may provide increased efficiency and statistical power. Here we present a novel approach to model and test the association between genetic variation and mRNA gene expression levels in the context of gene sets (GSs) and pathways, referred to as gene set – expression quantitative trait loci analysis (GS-eQTL). The method uses GSs to initially group SNPs and mRNA expression, followed by the application of principal components analysis (PCA) to collapse the variation and reduce the dimensionality within the GSs. We applied GS-eQTL to assess the association between SNP and mRNA expression level data collected from a cell-based model system using PharmGKB and KEGG defined GSs. We observed a large number of significant GS-eQTL associations, in which the most significant associations arose between genetic variation and mRNA expression from the same GS. However, a number of associations involving genetic variation and mRNA expression from different GSs were also identified. Our proposed GS-eQTL method effectively addresses the multiple testing limitations in eQTL studies and provides biological context for SNP-expression associations.
机译:调节人类mRNA基因表达的潜在遗传变异可能为深入了解人类特征和复杂疾病的分子机制提供重要见识。映射与mRNA基因表达相关的遗传变异的当前统计方法通常已应用标准链接和/或关联方法。但是,当可获得全基因组的SNP和mRNA表达数据时,进行所有成对比较会增加计算负担,并且可能无法提供检测关联的最佳能力。考虑使用不同的方法来解决高维问题和多重测试问题可能会提高效率和统计能力。在这里,我们提出了一种新颖的方法来建模和测试在基因集(GSs)和途径的背景下遗传变异与mRNA基因表达水平之间的关联,称为基因集-表达定量性状基因座分析(GS-eQTL)。该方法首先使用GS将SNP和mRNA表达分组,然后应用主成分分析(PCA)消除变异并降低GS中的维数。我们应用GS-eQTL评估从SNP和mRNA表达水平数据之间的关联,该数据是使用PharmGKB和KEGG定义的GS从基于细胞的模型系统中收集的。我们观察到大量重要的GS-eQTL关联,其中最显着的关联出现在同一GS的遗传变异和mRNA表达之间。然而,还发现了许多与遗传变异和来自不同GS的mRNA表达有关的关联。我们提出的GS-eQTL方法有效地解决了eQTL研究中的多种测试局限性,并为SNP-表达关联提供了生物学背景。

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