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A LASSO penalized regression approach for genome-wide association analyses using related individuals: application to the Genetic Analysis Workshop 19 simulated data

机译:使用相关个人进行全基因组关联分析的LASSO罚分回归方法:应用于遗传分析研讨会19模拟数据

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摘要

We propose a novel LASSO (least absolute shrinkage and selection operator) penalized regression method used to analyze samples consisting of (potentially) related individuals. Developed in the context of linear mixed models, our method models the relatedness of individuals in the sample through a random effect whose covariance structure is a linear function of known matrices with elements combinations of the condensed coefficients of identity between the individuals in the sample. We implement our method to analyze the simulated family data provided by the 19th Genetic Analysis Workshop in an effort to identify loci regulating the simulated trait of systolic blood pressure. The analyses were performed with full knowledge of the simulation model. Our findings demonstrate that we can significantly reduce the rate of false positive signals by incorporating the relatedness of the study participants.
机译:我们提出了一种新颖的LASSO(最小绝对收缩和选择算子)惩罚回归方法,用于分析由(潜在)相关个体组成的样本。在线性混合模型的背景下开发的,我们的方法通过随机效应对样品中个体的相关性进行建模,该随机效应的协方差结构是已知矩阵的线性函数,其中包含样品中个体之间的同一性浓缩系数的元素组合。我们实施我们的方法来分析由第十九届遗传分析研讨会提供的模拟家庭数据,以努力确定调节收缩压模拟特征的基因座。在完全了解仿真模型的情况下进行了分析。我们的发现表明,通过纳入研究参与者的相关性,我们可以显着降低假阳性信号的发生率。

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