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Linkage disequilibrium among commonly genotyped SNP variants detected from bull sequence

机译:从公牛序列检测到的常规基因分型SNP变体中的连锁不平衡

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Genomic prediction utilizing causal variants could increase selection accuracy above that achieved with SNPs genotyped by currently available arrays used for genomic selection. A number of variants detected from sequencing influential sires are likely to be causal, but noticeable improvements in prediction accuracy using imputed sequence variant genotypes have not been reported. Improvement in accuracy of predicted breeding values may be limited by the accuracy of imputed sequence variants. Using genotypes of SNPs on a high-density array and non-synonymous SNPs detected in sequence from influential sires of a multibreed population, results of this examination suggest that linkage disequilibrium between non-synonymous and array SNPs may be insufficient for accurate imputation from the array to sequence. In contrast to 75% of array SNPs being strongly correlated to another SNP on the array, less than 25% of the non-synonymous SNPs were strongly correlated to an array SNP. When correlations between non-synonymous and array SNPs were strong, distances between the SNPs were greater than separation that might be expected based on linkage disequilibrium decay. Consistently near-perfect whole-genome linkage disequilibrium between the full array and each non-synonymous SNP within the sequenced bulls suggests that whole-genome approaches to infer sequence variants might be more accurate than imputation based on local haplotypes. Opportunity for strong linkage disequilibrium between sequence and array SNPs may be limited by discrepancies in allele frequency distributions, so investigating alternate genotyping approaches and panels providing greater chances of frequency-matched SNPs strongly correlated to sequence variants is also warranted. Genotypes used for this study are available from https://www.animalgenome.org/repository/pub/USDA2017.0519/.
机译:利用因果变体的基因组预测可以提高上述选择精度,通过用于基因组选择的当前可用阵列的SNP进行基因分型实现。从序列的序列中检测到的许多变体可能是因果的,但尚未报道使用算术序列变体基因型的预测准确性的显着改善。预测育种值的准确性的提高可以受到估算序列变体的准确性的限制。使用SNP的基因型在序列中依次检测到多毛细群众的有影响力的阵列和非同义SNP,该检查的结果表明,非同义和阵列SNP之间的联动不平衡可能不足以从阵列中准确估算。序列。相反,75%的阵列SNP与阵列上的另一个SNP强烈相关,小于25%的非同义SNP与阵列SNP强烈相关。当非同义和阵列SNP之间的相关性强烈时,SNP之间的距离大于基于连接不平衡衰减衰减可能预期的分离。完全阵列和测序公牛内的每个非同义SNP之间的一贯近乎完善的全基因组连锁不平衡表明,对推断序列变体的全基因组方法可能比基于局部单倍型更准确。在序列和阵列SNP之间的强烈连接不平衡的机会可能受等位基因频率分布的差异限制,因此还需要研究提供与序列变体强烈相关的频率匹配的SNP的更大机会的替代基因分型方法和面板。用于本研究的基因型可从https://www.animalgenome.org/repository/pub/usda2017.0519/获得。

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