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Prediction of genomic breeding values for growth, carcass and meat quality traits in a multi-breed sheep population using a HD SNP chip

机译:使用HD SNP芯片预测多品种绵羊群体的生长,car体和肉质性状的基因组育种值

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Background New Zealand has some unique Terminal Sire composite sheep breeds, which were developed in the last three decades to meet commercial needs. These composite breeds were developed based on crossing various Terminal Sire and Maternal breeds and, therefore, present high genetic diversity compared to other sheep breeds. Their breeding programs are focused on improving carcass and meat quality traits. There is an interest from the industry to implement genomic selection in this population to increase the rates of genetic gain. Therefore, the main objectives of this study were to determine the accuracy of predicted genomic breeding values for various growth, carcass and meat quality traits using a HD SNP chip and to evaluate alternative genomic relationship matrices, validation designs and genomic prediction scenarios. A large multi-breed population ( n =?14,845) was genotyped with the HD SNP chip (600?K) and phenotypes were collected for a variety of traits. Results The average observed accuracies (± SD) for traits measured in the live animal, carcass, and, meat quality traits ranged from 0.18?±?0.07 to 0.33?±?0.10, 0.28?±?0.09 to 0.55?±?0.05 and 0.21?±?0.07 to 0.36?±?0.08, respectively, depending on the scenario/method used in the genomic predictions. When accounting for population stratification by adjusting for 2, 4 or 6 principal components (PCs) the observed accuracies of molecular breeding values (mBVs) decreased or kept constant for all traits. The mBVs observed accuracies when fitting both G and A matrices were similar to fitting only G matrix. The lowest accuracies were observed for k-means cross-validation and forward validation performed within each k-means cluster. Conclusions The accuracies observed in this study support the feasibility of genomic selection for growth, carcass and meat quality traits in New Zealand Terminal Sire breeds using the Ovine HD SNP chip. There was a clear advantage on using a mixed training population instead of performing analyzes per genomic clusters. In order to perform genomic predictions per breed group, genotyping more animals is recommended to increase the size of the training population within each group and the genetic relationship between training and validation populations. The different scenarios evaluated in this study will help geneticists and breeders to make wiser decisions in their breeding programs.
机译:背景技术新西兰拥有一些独特的终末杂交绵羊品种,这些品种是在过去的三十年中开发的,可以满足商业需求。这些复合品种是在杂交各种不同的终末父本和母本品种的基础上开发的,因此与其他绵羊品种相比,具有较高的遗传多样性。他们的育种计划专注于改善car体和肉质特性。业界有兴趣在该种群中进行基因组选择以增加遗传增益的速率。因此,本研究的主要目的是使用HD SNP芯片确定各种生长,car体和肉质性状的预测基因组育种值的准确性,并评估替代的基因组关系矩阵,验证设计和基因组预测方案。用HD SNP芯片(600?K)对大量的多品种种群(n = 14,845)进行基因分型,并收集各种性状的表型。结果在活体动物,car体和肉质性状中测得的性状的平均观测准确度(±SD)在0.18?±?0.07至0.33?±?0.10、0.28?±?0.09至0.55?±?0.05和取决于基因组预测中使用的方案/方法,分别为0.21±±0.07至0.36±±0.08。当通过调整2、4或6个主要成分(PC)来考虑种群分层时,观察到的分子育种值(mBVs)的准确性对于所有性状都会降低或保持不变。当同时拟合G和A矩阵时,观察到的mBV准确性与仅拟合G矩阵相似。在每个k均值聚类中执行k均值交叉验证和正向验证时,观察到的准确性最低。结论在这项研究中观察到的准确性支持使用Ovine HD SNP芯片对生长在新西兰终末ire鱼品种中的growth体,meat体和肉质性状进行基因组选择的可行性。使用混合训练种群而不是按基因组簇进行分析具有明显的优势。为了对每个品种组进行基因组预测,建议对更多的动物进行基因分型,以增加每个组内训练种群的大小以及训练种群与验证种群之间的遗传关系。本研究评估的不同场景将帮助遗传学家和育种者在育种计划中做出更明智的决定。

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