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Irgpr: interactive linear mixed model analysis of genome-wide association studies with composite hypothesis testing and regression diagnostics in R

机译:Irgpr:全基因组关联研究的交互式线性混合模型分析,包括复合假设检验和R中的回归诊断

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摘要

The linear mixed model is the state-of-the-art method to account for the confounding effects of kinship and population structure in genome-wide association studies (GWAS). Current implementations test the effect of one or more genetic markers while including prespecified covariates such as sex. Here we develop an efficient implementation of the linear mixed model that allows composite hypothesis tests to consider genotype interactions with variables such as other genotypes, environment, sex or ancestry. Our R package, Irgpr, allows interactive model fitting and examination of regression diagnostics to facilitate exploratory data analysis in the context of the linear mixed model. By leveraging parallel and out-of-core computing for datasets too large to fit in main memory, Irgpr is applicable to large GWAS datasets and next-generation sequencing data
机译:线性混合模型是解决全基因组关联研究(GWAS)中亲属关系和种群结构混杂影响的最新技术。当前的实现对一个或多个遗传标记的效果进行了测试,同时包括了预先规定的协变量,例如性别。在这里,我们开发了一种线性混合模型的有效实现,该模型允许复合假设检验考虑与其他基因型,环境,性别或血统等变量的基因型相互作用。我们的R软件包Irgpr允许进行交互式模型拟合和回归诊断检查,从而有助于在线性混合模型的情况下进行探索性数据分析。通过对数据集进行过大的处理而无法容纳在主内存中的并行和核外计算,Irgpr适用于大型GWAS数据集和下一代测序数据

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