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Genetic signal maximization using environmental regression

机译:使用环境回归最大化遗传信号

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Joint analyses of correlated phenotypes in genetic epidemiology studies are common. However, these analyses primarily focus on genetic correlation between traits and do not take into account environmental correlation. We describe a method that optimizes the genetic signal by accounting for stochastic environmental noise through joint analysis of a discrete trait and a correlated quantitative marker. We conducted bivariate analyses where heritability and the environmental correlation between the discrete and quantitative traits were calculated using Genetic Analysis Workshop 17 (GAW17) family data. The resulting inverse value of the environmental correlation between these traits was then used to determine a new β coefficient for each quantitative trait and was constrained in a univariate model. We conducted genetic association tests on 7,087 nonsynonymous SNPs in three GAW17 family replicates for Affected status with the β coefficient fixed for three quantitative phenotypes and compared these to an association model where the β coefficient was allowed to vary. Bivariate environmental correlations were 0.64 (± 0.09) for Q1, 0.798 (± 0.076) for Q2, and ?0.169 (± 0.18) for Q4. Heritability of Affected status improved in each univariate model where a constrained β coefficient was used to account for stochastic environmental effects. No genome-wide significant associations were identified for either method but we demonstrated that constraining β for covariates slightly improved the genetic signal for Affected status. This environmental regression approach allows for increased heritability when the β coefficient for a highly correlated quantitative covariate is constrained and increases the genetic signal for the discrete trait.
机译:遗传流行病学研究中相关表型的联合分析很普遍。但是,这些分析主要集中于性状之间的遗传相关性,而没有考虑环境相关性。我们描述了一种通过对离散性状和相关定量标记进行联合分析来解决随机环境噪声来优化遗传信号的方法。我们进行了双变量分析,其中使用遗传分析研讨会17(GAW17)家族数据计算了遗传性以及离散性和定量性状之间的环境相关性。这些性状之间的环境相关性的所得反值随后用于确定每个定量性状的新β系数,并将其约束在单变量模型中。我们对三个GAW17家族重复样本中的7,087个非同义SNPs进行了遗传关联测试,确定了受影响的状态,并固定了三种定量表型的β系数,并将它们与允许β系数变化的关联模型进行了比较。 Q1的双变量环境相关性是0.64(±0.09),Q2的是0.798(±0.076),Q4的是0.169(±0.18)。在每个受约束的β系数用于解释随机环境影响的单变量模型中,受影响状态的遗传力均得到改善。两种方法均未发现全基因组范围内的显着关联,但我们证明了限制协变量的β会稍微改善患病状态的遗传信号。当高度相关的定量协变量的β系数受到约束时,这种环境回归方法可以增加遗传力,并增加离散性状的遗传信号。

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