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Integrating Nonadditive Genomic Relationship Matrices into the Study of Genetic Architecture of Complex Traits

机译:将非加性基因组关系矩阵整合到复杂性状的遗传结构研究中

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摘要

The study of genetic architecture of complex traits has been dramatically influenced by implementing genome-wide analytical approaches during recent years. Of particular interest are genomic prediction strategies which make use of genomic information for predicting phenotypic responses instead of detecting trait-associated loci. In this work, we present the results of a simulation study to improve our understanding of the statistical properties of estimation of genetic variance components of complex traits, and of additive, dominance, and genetic effects through best linear unbiased prediction methodology. Simulated dense marker information was used to construct genomic additive and dominance matrices, and multiple alternative pedigree- and marker-based models were compared to determine if including a dominance term into the analysis may improve the genetic analysis of complex traits. Our results showed that a model containing a pedigree- or marker-based additive relationship matrix along with a pedigree-based dominance matrix provided the best partitioning of genetic variance into its components, especially when some degree of true dominance effects was expected to exist. Also, we noted that the use of a marker-based additive relationship matrix along with a pedigree-based dominance matrix had the best performance in terms of accuracy of correlations between true and estimated additive, dominance, and genetic effects.
机译:近年来,通过实施全基因组分析方法,对复杂性状遗传结构的研究产生了重大影响。特别令人感兴趣的是基因组预测策略,该策略利用基因组信息预测表型反应,而不是检测与性状相关的基因座。在这项工作中,我们提出了一个模拟研究的结果,以通过最佳线性无偏预测方法提高我们对复杂性状遗传方差成分以及加性,优势和遗传效应估计的统计属性的理解。使用模拟的密集标记信息来构建基因组加性和优势矩阵,并比较了多个基于谱系和标记的替代模型,以确定分析中是否包括优势项可以改善复杂性状的遗传分析。我们的结果表明,包含基于谱系或基于标记的加性关系矩阵以及基于谱系的优势矩阵的模型,可以将遗传变异最佳地划分为其组成部分,尤其是当预期存在某种程度的真正优势效应时。此外,我们注意到,基于标记的加性关系矩阵以及基于谱系的优势度矩阵的使用,在真实与估计的加性,优势度和遗传效应之间的相关性方面具有最佳性能。

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