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Association analyses of the MAS-QTL data set using grammar principal components and Bayesian network methodologies

机译:使用语法主成分和贝叶斯网络方法对MAS-QTL数据集进行关联分析

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摘要

BackgroundIt has been shown that if genetic relationships among individuals are not taken into account for genome wide association studies, this may lead to false positives. To address this problem, we used Genome-wide Rapid Association using Mixed Model and Regression and principal component stratification analyses. To account for linkage disequilibrium among the significant markers, principal components loadings obtained from top markers can be included as covariates. Estimation of Bayesian networks may also be useful to investigate linkage disequilibrium among SNPs and their relation with environmental variables.For the quantitative trait we first estimated residuals while taking polygenic effects into account. We then used a single SNP approach to detect the most significant SNPs based on the residuals and applied principal component regression to take linkage disequilibrium among these SNPs into account. For the categorical trait we used principal component stratification methodology to account for background effects. For correction of linkage disequilibrium we used principal component logit regression. Bayesian networks were estimated to investigate relationship among SNPs.
机译:背景研究表明,如果在全基因组关联研究中不考虑个体之间的遗传关系,则可能导致假阳性。为了解决此问题,我们使用了混合模型和回归以及主成分分层分析的全基因组快速关联。为了说明重要标记之间的连锁不平衡,可以将从顶部标记获得的主成分负荷作为协变量包括在内。贝叶斯网络的估计也可能有助于研究SNP之间的连锁不平衡及其与环境变量的关系。对于定量特征,我们首先在考虑多基因效应的同时估计残基。然后,我们使用单个SNP方法根据残差检测最重要的SNP,并应用主成分回归以考虑这些SNP之间的连锁不平衡。对于分类特征,我们使用主成分分层方法来说明背景影响。为了校正连锁不平衡,我们使用了主成分对数回归。估计贝叶斯网络调查SNP之间的关系。

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