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pLARmEB: integration of least angle regression with empirical Bayes for multilocus genome-wide association studies

机译:pLARmEB:最小角度回归与经验Bayes的集成用于多基因座全基因组关联研究

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摘要

Multilocus genome-wide association studies (GWAS) have become the state-of-the-art procedure to identify quantitative trait nucleotides (QTNs) associated with complex traits. However, implementation of multilocus model in GWAS is still difficult. In this study, we integrated least angle regression with empirical Bayes to perform multilocus GWAS under polygenic background control. We used an algorithm of model transformation that whitened the covariance matrix of the polygenic matrix K and environmental noise. Markers on one chromosome were included simultaneously in a multilocus model and least angle regression was used to select the most potentially associated single-nucleotide polymorphisms (SNPs), whereas the markers on the other chromosomes were used to calculate kinship matrix as polygenic background control. The selected SNPs in multilocus model were further detected for their association with the trait by empirical Bayes and likelihood ratio test. We herein refer to this method as the pLARmEB (polygenic-background-control-based least angle regression plus empirical Bayes). Results from simulation studies showed that pLARmEB was more powerful in QTN detection and more accurate in QTN effect estimation, had less false positive rate and required less computing time than Bayesian hierarchical generalized linear model, efficient mixed model association (EMMA) and least angle regression plus empirical Bayes. pLARmEB, multilocus random-SNP-effect mixed linear model and fast multilocus random-SNP-effect EMMA methods had almost equal power of QTN detection in simulation experiments. However, only pLARmEB identified 48 previously reported genes for 7 flowering time-related traits in Arabidopsis thaliana.
机译:多基因组全基因组关联研究(GWAS)已成为鉴定与复杂性状相关的定量性状核苷酸(QTN)的最先进方法。但是,在GWAS中实现多基因座模型仍然很困难。在这项研究中,我们将最小角度回归与经验贝叶斯相结合,以在多基因背景控制下执行多基因座GWAS。我们使用了一种模型转换算法,该算法将多基因矩阵K和环境噪声的协方差矩阵增白。一个基因座上的标记同时包含在多基因座模型中,最小角度回归用于选择最可能相关的单核苷酸多态性(SNP),而另一条染色体上的标记则用于计算血统矩阵作为多基因背景对照。通过经验贝叶斯和似然比检验进一步检测了多基因座模型中选择的SNP与性状的相关性。我们在本文中将此方法称为pLARmEB(基于多基因背景控制的最小角度回归加经验贝叶斯)。仿真研究的结果表明,与贝叶斯分层广义线性模型,有效的混合模型关联(EMMA)和最小角度回归加在一起,pLARmEB在QTN检测中功能更强大,在QTN效果估计中更准确,误报率更低,所需的计算时间更少。经验贝叶斯。在模拟实验中,pLARmEB,多位点随机-SNP效应混合线性模型和快速多位点随机-SNP效应EMMA方法具有几乎相同的QTN检测功效。然而,只有pLARmEB在拟南芥中鉴定了48种先前报道的7种开花时间相关性状的基因。

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