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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的MAS-QTL数据组的关联分析

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Background It 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 . Results Using the Genome-wide Rapid Association using Mixed Model and Regression and principal component stratification approach we detected around 100 significant SNPs for the quantitative trait (p SNPs for the categorical trait. With additional principal component regression we reduced the list to 16 and 50 SNPs for the quantitative and categorical trait, respectively. Conclusions GRAMMAR could efficiently incorporate the information regarding random genetic effects. Principal component stratification should be cautiously used with stringent multiple hypothesis testing correction to correct for ancestral stratification and association analyses for binary traits when there are systematic genetic effects such as half sib family structures. Bayesian networks are useful to investigate relationships among SNPs and environmental variables.
机译:背景技术已经表明,如果不考虑个体之间的遗传关系,则不会针对基因组的宽协会研究,这可能导致误报。为了解决这个问题,我们使用混合模型和回归和主成分分层分析来使用基因组快速协会。为了考虑到显着标记中的联动不平衡,可以包括从顶部标记获得的主要成分增加作为协变量。对贝叶斯网络的估计也可用于调查SNP中的联系性不平衡及其与环境变量的关系。对于我们首先估计残留物的定量性状,同时考虑到多种子分子效应。然后,我们使用单一的SNP方法来基于残留物和应用主成分回归来检测最重要的SNP,并考虑这些SNP中的链接不平衡。对于分类特征,我们使用主成分分层方法来解释背景效果。用于校正连锁不平衡,我们使用了主成分Logit回归。估计贝叶斯网络估计调查SNP之间的关系。结果使用混合模型和回归和回归和回归和主要成分分层方法的结果,我们检测到大约100个重要的SNP,用于定量特征(用于分类特征的P SNPS。通过额外的主成分回归,我们将列表还原为16和50个SNP分别用于定量和分类性状。结论语法可以有效地纳入随机遗传效应的信息。主成分分层应小心与严格的多假设检测校正,以校正祖先分层和在有系统遗传时对二元特征的关联分析半SIB系列结构等效果。贝叶斯网络可用于调查SNP和环境变量之间的关系。

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