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GVCBLUP: a computer package for genomic prediction and variance component estimation of additive and dominance effects

机译:GVCBLUP:用于加和和优势效应的基因组预测和方差成分估计的计算机软件包

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Background Dominance effect may play an important role in genetic variation of complex traits. Full featured and easy-to-use computing tools for genomic prediction and variance component estimation of additive and dominance effects using genome-wide single nucleotide polymorphism (SNP) markers are necessary to understand dominance contribution to a complex trait and to utilize dominance for selecting individuals with favorable genetic potential. Results The GVCBLUP package is a shared memory parallel computing tool for genomic prediction and variance component estimation of additive and dominance effects using genome-wide SNP markers. This package currently has three main programs (GREML_CE, GREML_QM, and GCORRMX) and a graphical user interface (GUI) that integrates the three main programs with an existing program for the graphical viewing of SNP additive and dominance effects (GVCeasy). The GREML_CE and GREML_QM programs offer complementary computing advantages with identical results for genomic prediction of breeding values, dominance deviations and genotypic values, and for genomic estimation of additive and dominance variances and heritabilities using a combination of expectation-maximization (EM) algorithm and average information restricted maximum likelihood (AI-REML) algorithm. GREML_CE is designed for large numbers of SNP markers and GREML_QM for large numbers of individuals. Test results showed that GREML_CE could analyze 50,000 individuals with 400?K SNP markers and GREML_QM could analyze 100,000 individuals with 50K SNP markers. GCORRMX calculates genomic additive and dominance relationship matrices using SNP markers. GVCeasy is the GUI for GVCBLUP integrated with an existing software tool for the graphical viewing of SNP effects and a function for editing the parameter files for the three main programs. Conclusion The GVCBLUP package is a powerful and versatile computing tool for assessing the type and magnitude of genetic effects affecting a phenotype by estimating whole-genome additive and dominance heritabilities, for genomic prediction of breeding values, dominance deviations and genotypic values, for calculating genomic relationships, and for research and education in genomic prediction and estimation.
机译:背景优势效应可能在复杂性状的遗传变异中起重要作用。使用全基因组单核苷酸多态性(SNP)标记进行基因组预测和加性和优势作用的方差成分估计的功能齐全且易于使用的计算工具,对于了解对复杂性状的优势贡献和利用优势来选择个体是必不可少的具有良好的遗传潜力。结果GVCBLUP软件包是一个共享内存并行计算工具,可使用全基因组SNP标记进行加性和优势效应的基因组预测和方差分量估计。该软件包当前具有三个主要程序(GREML_CE,GREML_QM和GCORRMX)和一个图形用户界面(GUI),该用户界面将这三个主要程序与一个现有程序集成在一起,以图形方式查看SNP加性和优势效应(GVCeasy)。 GREML_CE和GREML_QM程序具有互补的计算优势,具有相同的结果,可用于育种值,优势偏差和基因型值的基因组预测,以及使用期望最大化(EM)算法和平均信息的组合进行加性和优势方差及遗传度的基因组估计受限最大似然(AI-REML)算法。 GREML_CE专为大量SNP标记而设计,而GREML_QM专为大量个人而设计。测试结果表明,GREML_CE可以分析50,000个具有400?K SNP标记的个体,而GREML_QM可以分析100,000个具有50K SNP标记的个体。 GCORRMX使用SNP标记计算基因组加性和优势关系矩阵。 GVCeasy是GVCBLUP的GUI,它与现有的软件工具集成在一起,可图形化地查看SNP效果,还具有编辑三个主要程序的参数文件的功能。结论GVCBLUP软件包是一种功能强大且用途广泛的计算工具,可通过估计全基因组加性和优势遗传力来评估影响表型的遗传效应的类型和强度,以用于育种值,优势偏差和基因型值的基因组预测,以计算基因组关系,以及用于基因组预测和估计的研究和教育。

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