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Relating drug response to epigenetic and genetic markers using a region-based kernel score test

机译:使用基于区域的内核评分测试将药物对表观遗传和遗传标记的反应相关

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In GAW20, we investigated the association of specific genetic regions of interest (ROIs) with log-transformed triglyceride (TG) levels following lipid-lowering medication using epigenetic and genetic markers. The goal was to incorporate kernels for cytosine-phosphate-guanine (CpG) markers and compare the kernels to a purely parametric model. Post-treatment TG levels were investigated for post-methylation data at CpG sites and region-specific SNPs and adjusted for pre-treatment TG levels and age, in independent individuals only (real data: n =?150; simulated data, replicate 84: n =?111). In both data sets, our single-CpG-marker results using kernels and linear regression were in good agreement. In the real data, we investigated the introns of the CPT1A gene previously reported as associated with TG levels as separate ROIs, and were able to find hints of an association of cg17058475 and cg00574958 with post-treatment TG levels. In the simulated data, we investigated a total of 10 regions, in which the 5 causal and 5 non-causal markers lie, respectively, with increased methylation variances, yielding plausible results for the 3 window sizes. Overall, this indicates that kernels for CpG markers are feasible. An interaction regression model for the causal SNP with the nearest CpG marker identified an effect for the SNPs with the three greatest heritabilities simulated. The simulation model assumed full SNP effect only for unmethylated regions decreasing to zero in the case of full methylation. Thus, in the context of a clear candidate setting, interaction between epigenetic and genetic data may enhance information, albeit nominally, even with small sample sizes. Relieving the burden of multiple testing, developing kernels further to analyze data from multiple omics jointly is well warranted.
机译:在GAW20中,我们使用表观遗传和遗传标记研究了降脂药物后特定目标遗传区域(ROI)与对数转化的甘油三酸酯(TG)水平的关联。目标是将核仁用于胞嘧啶-磷酸-鸟嘌呤(CpG)标记,并将核与纯参数化模型进行比较。仅在独立个体中研究了治疗后TG水平的CpG位点和区域特异性SNP的甲基化后数据,并针对治疗前TG水平和年龄进行了调整(真实数据:n = 150;模拟数据,重复84: n =?111)。在两个数据集中,我们使用核和线性回归的单CpG标记结果均吻合良好。在真实数据中,我们调查了先前报道与TG水平相关的CPT1A基因的内含子,并将其作为单独的ROI,并且能够发现cg17058475和cg00574958与治疗后TG水平相关的暗示。在模拟数据中,我们调查了总共10个区域,其中5个因果标记和5个非因果标记分别位于甲基化差异增加的区域,对于3个窗口大小,得出了合理的结果。总体而言,这表明CpG标记的内核是可行的。具有最接近的CpG标记的因果SNP的相互作用回归模型确定了模拟的三个最大遗传力对SNP的作用。该模拟模型仅在未完全甲基化的情况下假设仅将未甲基化的区域降至零的SNP效应。因此,在明确的候选环境中,表观遗传数据与遗传数据之间的交互作用即使在样本量较小的情况下也可以名义上增强信息。减轻多重测试的负担,进一步开发内核以共同分析来自多个组学的数据是非常有必要的。

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