...
首页> 外文期刊>Animal Genetics >Design of a low-density SNP chip for the main Australian sheep breeds and its effect on imputation and genomic prediction accuracy
【24h】

Design of a low-density SNP chip for the main Australian sheep breeds and its effect on imputation and genomic prediction accuracy

机译:用于澳大利亚主要绵羊品种的低密度SNP芯片的设计及其对归因和基因组预测准确性的影响

获取原文
获取原文并翻译 | 示例
           

摘要

Genotyping sheep for genome-wide SNPs at lower density and imputing to a higher density would enable cost-effective implementation of genomic selection, provided imputation was accurate enough. Here, we describe the design of a low-density (12k) SNP chip and evaluate the accuracy of imputation from the 12k SNP genotypes to 50k SNP genotypes in the major Australian sheep breeds. In addition, the impact of imperfect imputation on genomic predictions was evaluated by comparing the accuracy of genomic predictions for 15 novel meat traits including carcass and meat quality and omega fatty acid traits in sheep, from 12k SNP genotypes, imputed 50k SNP genotypes and real 50k SNP genotypes. The 12k chip design included 12 223 SNPs with a high minor allele frequency that were selected with intermarker spacing of 50-475 kb. SNPs for parentage and horned or polled tests also were represented. Chromosome ends were enriched with SNPs to reduce edge effects on imputation. The imputation performance of the 12k SNP chip was evaluated using 50k SNP genotypes of 4642 animals from six breeds in three different scenarios: (1) within breed, (2) single breed from multibreed reference and (3) multibreed from a single-breed reference. The highest imputation accuracies were found with scenario 2, whereas scenario 3 was the worst, as expected. Using scenario 2, the average imputation accuracy in Border Leicester, Polled Dorset, Merino, White Suffolk and crosses was 0.95, 0.95, 0.92, 0.91 and 0.93 respectively. Imputation scenario 2 was used to impute 50k genotypes for 10 396 animals with novel meat trait phenotypes to compare genomic prediction accuracy using genomic best linear unbiased prediction (GBLUP) with real and imputed 50k genotypes. The weighted mean imputation accuracy achieved was 0.92. The average accuracy of genomic estimated breeding values (GEBVs) based on only 12k data was 0.08 across traits and breeds, but accuracies varied widely. The mean GBLUP accuracies with imputed 50k data more than doubled to 0.21. Accuracies of genomic prediction were very similar for imputed and real 50k genotypes. There was no apparent impact on accuracy of GEBVs as a result of using imputed rather than real 50k genotypes, provided imputation accuracy was > 90%.
机译:以较低的密度对绵羊进行基因组全基因组SNP基因分型并插值至更高的密度,只要插值足够准确,就可以经济高效地实施基因组选择。在这里,我们描述了低密度(12k)SNP芯片的设计,并评估了澳大利亚主要绵羊品种中从12k SNP基因型到50k SNP基因型的估算准确性。此外,通过比较15k种新的肉质性状的基因组预测的准确性,评估了不完美插补对基因组预测的影响,包括15k种新的肉质和绵羊的肉质和欧米加脂肪酸性状,分别来自12k SNP基因型,推算的50k SNP基因型和真实的50k基因型。 SNP基因型。 12k芯片设计包括12223个具有较高次要等位基因频率的SNP,这些SNP以50-475 kb的标记间隔选择。还代表了用于亲缘关系和有角或民意测验的SNP。染色体末端富含SNP,以减少插补的边缘效应。在三种不同情况下,使用来自六个品种的4642种动物的50k SNP基因型评估了12k SNP芯片的插补性能:(1)品种内,(2)来自多品种参考的单品种,以及(3)来自单品种参考的多品种。如预期的那样,在方案2中发现了最高的插补精度,而方案3是最差的。使用方案2,Border Leicester,Polled Dorset,Merino,White Suffolk和十字架的平均插补准确度分别为0.95、0.95、0.92、0.91和0.93。估算方案2用于为10 396个具有新颖肉性状表型的动物估算50k基因型,以比较使用基因组最佳线性无偏预测(GBLUP)与真实和估算的50k基因型的基因组预测准确性。加权平均插补精度为0.92。仅基于12k数据的基因组估计育种值(GEBV)的平均准确性在各个性状和变种中均为0.08,但准确性差异很大。估算的50k数据的平均GBLUP精度增加了一倍以上,达到0.21。对于估算的和真实的50k基因型,基因组预测的准确性非常相似。如果使用估算的而不是真实的50k基因型,对GEBV的准确性没有明显的影响,只要估算的准确性> 90%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号