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Level-biases in estimated breeding values due to the use of different SNP panels over time in ssGBLUP

机译:由于在SSGBLUP中使用不同的SNP面板,估计育种值的级别偏差

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The main aim of single-step genomic predictions was to facilitate optimal selection in populations consisting of both genotyped and non-genotyped individuals. However, in spite of intensive research, biases still occur, which make it difficult to perform optimal selection across groups of animals. The objective of this study was to investigate whether incomplete genotype datasets with errors could be a potential source of level-bias between genotyped and non-genotyped animals and between animals genotyped on different single nucleotide polymorphism (SNP) panels in single-step genomic predictions. Incomplete and erroneous genotypes of young animals caused biases in breeding values between groups of animals. Systematic noise or missing data for less than 1% of the SNPs in the genotype data had substantial effects on the differences in breeding values between genotyped and non-genotyped animals, and between animals genotyped on different chips. The breeding values of young genotyped individuals were biased upward, and the magnitude was up to 0.8 genetic standard deviations, compared with breeding values of non-genotyped individuals. Similarly, the magnitude of a small value added to the diagonal of the genomic relationship matrix affected the level of average breeding values between groups of genotyped and non-genotyped animals. Cross-validation accuracies and regression coefficients were not sensitive to these factors. Because, historically, different SNP chips have been used for genotyping different parts of a population, fine-tuning of imputation within and across SNP chips and handling of missing genotypes are crucial for reducing bias. Although all the SNPs used for estimating breeding values are present on the chip used for genotyping young animals, incompleteness and some genotype errors might lead to level-biases in breeding values.
机译:单步基因组预测的主要目的是促进由基因分型和非基型个体组成的群体的最佳选择。然而,尽管研究了密集的研究,但仍然发生偏见,这使得难以在动物组中进行最佳选择。本研究的目的是研究具有错误的不完全基因型数据集是否可以是基因分型和非基因分型动物之间的水平偏差的潜在来源,以及在单步基因组预测中不同单核苷酸多态性(SNP)面板上的动物基因分型。幼小动物的不完全和错误的基因型引起了动物组之间的繁殖价值的偏见。系统噪声或缺失的数据在基因型数据中的SNP少于1%对基因分型和非基因分型动物之间的育种价值的差异以及在不同芯片上的动物之间产生了大量影响。与非基因分型育种的育种值相比,幼体型个体的育种值偏向,幅度高达0.8遗传标准偏差。类似地,添加到基因组关系基质对角线的小值的大小影响了基因分型和非基型动物组之间的平均育种值水平。交叉验证精度和回归系数对这些因素不敏感。由于,历史上,不同的SNP芯片已被用于基因分型的群体的不同部分,在SNP芯片内和缺失基因型的处理中的微调和缺失基因型的处理对于减少偏差至关重要。尽管用于估计育种值的所有SNP存在于用于基因分型幼小动物的芯片上,但是不完整性和一些基因型误差可能导致育种值中的水平偏差。

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