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Comparisons of improved genomic predictions generated by different imputation methods for genotyping by sequencing data in livestock populations

机译:通过牲畜群体测序数据进行基因分型产生改进的基因组预测的比较

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Genotyping by sequencing (GBS) still has problems with missing genotypes. Imputation is important for using GBS for genomic predictions, especially for low depths, due to the large number of missing genotypes. Minor allele frequency (MAF) is widely used as a marker data editing criteria for genomic predictions. In this study, three imputation methods (Beagle, IMPUTE2 and FImpute software) based on four MAF editing criteria were investigated with regard to imputation accuracy of missing genotypes and accuracy of genomic predictions, based on simulated data of livestock population. Four MAFs (no MAF limit, MAF?≥?0.001, MAF?≥?0.01 and MAF?≥?0.03) were used for editing marker data before imputation. Beagle, IMPUTE2 and FImpute software were applied to impute the original GBS. Additionally, IMPUTE2 also imputed the expected genotype dosage after genotype correction (GcIM). The reliability of genomic predictions was calculated using GBS and imputed GBS data. The results showed that imputation accuracies were the same for the three imputation methods, except for the data of sequencing read depth (depth)?=?2, where FImpute had a slightly lower imputation accuracy than Beagle and IMPUTE2. GcIM was observed to be the best for all of the imputations at depth?=?4, 5 and 10, but the worst for depth?=?2. For genomic prediction, retaining more SNPs with no MAF limit resulted in higher reliability. As the depth increased to 10, the prediction reliabilities approached those using true genotypes in the GBS loci. Beagle and IMPUTE2 had the largest increases in prediction reliability of 5 percentage points, and FImpute gained 3 percentage points at depth?=?2. The best prediction was observed at depth?=?4, 5 and 10 using GcIM, but the worst prediction was also observed using GcIM at depth?=?2. The current study showed that imputation accuracies were relatively low for GBS with low depths and high for GBS with high depths. Imputation resulted in larger gains in the reliability of genomic predictions for GBS with lower depths. These results suggest that the application of IMPUTE2, based on a corrected GBS (GcIM) to improve genomic predictions for higher depths, and FImpute software could be a good alternative for routine imputation.
机译:通过测序(GBS)的基因分型仍然存在缺失基因型的问题。由于大量缺失的基因型,估算对于使用GBS进行基因组预测,特别是对于低深度来说很重要。次要等位基因频率(MAF)被广泛用作基因组预测的标记数据编辑标准。在本研究中,基于牲畜群的模拟数据,研究了基于四个MAF编辑标准的三种撤销方法(比猎犬,释放2和Fimpute软件)研究了缺失基因型的缺失准确性和基因组预测的准确性。四个MAFS(无MAF限制,MAF?≥?0.001,MAF?≥?0.01和MAF?≥?0.03)用于在估算之前编辑标记数据。采用小猎犬,释放2和Fimpute软件,以赋予原始GBS。另外,赋予赋予2在基因型校正(GCIM)之后占据了预期的基因型剂量。使用GBS和Imbrure GBS数据计算基因组预测的可靠性。结果表明,除了测序读取深度(深度)的数据之外,载口精度对于三种估算方法是相同的,除了测序深度(深度)?=?2,其中Fimpute的估计精度略低于比格格和纯度。观察到GCIM是深度的所有避难所都是最好的?=?4,5和10,但深度最差?=?2。对于基因组预测,保留没有MAF限制的更多SNP导致更高的可靠性。随着深度增加到10,预测可靠性在GBS基因座中使用真正基因型的预测性能够接近那些。比猎犬和赋予赋予预测可靠性增加了5个百分点的最大增长,并且在深度上有3个百分点(深度)=?2。使用GCIM在深度观察到最佳预测,但使用GCIM也观察到最坏的预测在深度时使用GCIM?=?2。目前的研究表明,对于具有低深度的GBS的GBS呈现升值精度相对较低,并且具有高深的GBS。估算导致GB具有较低深度的GB的基因组预测可靠性提高。这些结果表明,基于校正的GBS(GCIM)来改善更高深度的基因组预测,并且Fimpute软件的应用可能是常规估算的替代品。

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