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首页> 外文期刊>Journal of Animal Science >Predicting breed composition using breed frequencies of 50,000 markers from the US Meat Animal Research Center 2,000 Bull Project1,2
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Predicting breed composition using breed frequencies of 50,000 markers from the US Meat Animal Research Center 2,000 Bull Project1,2

机译:使用美国肉类动物研究中心2,000 Bull Project1,2的50,000个标记的繁殖频率预测品种组成

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Knowledge of breed composition can be useful in multiple aspects of cattle production, and can be critical for analyzing the results of whole genome-wide association studies currently being conducted around the world. We examine the feasibility and accuracy of using genotype data from the most prevalent bovine genome-wide association studies platform, the Illumina BovineSNP50 array (Illumina Inc., San Diego, CA), to estimate breed composition for individual breeds of cattle. First, allele frequencies (of Illumina-defined allele B) of SNP on the array for each of 16 beef cattle breeds were defined by genotyping a large set of more than 2,000 bulls selected in cooperation with the respective breed associations to be representative of their breed. With these breed-specific allele frequencies, the breed compositions of approximately 2,000 two-, three-, and four-way cross (of 8 breeds) cattle produced at the US Meat Animal Research Center were predicted by using a simple multiple regression technique or Mendel (http: //www.genetics.ucla.edu/software/mendel) and their genotypes from the Illumina BovineSNP50 array, and were then compared with pedigree-based estimates of breed composition. The accuracy of marker-based breed composition estimates was 89% when using either estimation method for all breeds except Angus and Red Angus (averaged 79%), based on comparing estimates with pedigree-based average breed composition. Accuracy increased to approximately 88% when these 2 breeds were combined into an aggregate Angus group. Additionally, we used a subset of these markers, approximately 3,000 that populate the Illumina Bovine3K (Illumina Inc.), to see whether breed composition could be estimated with similar accuracy when using this reduced panel of SNP makers. When breed composition was estimated using only SNP in common with the Bovine 3K array accuracy was slightly reduced to 83%. These results suggest that SNP data from these arrays could be used to estimate breed composition in most US beef cattle in situations where pedigree is not known (e.g., multiple-sire natural service matings, non-source-verified animals in feedlots or at slaughter). This approach can aid analyses that depend on knowledge of breed composition, including identification and adjustment of breed-based population stratification, when performing genome-wide association studies on populations with incomplete pedigrees. In addition, SNP-based breed composition estimates may facilitate fitting cow germplasm to the environment, managing cattle in the feedlot, and tracing disease cases back to the geographic region or farm of origin. [PUBLICATION ABSTRACT]
机译:品种组成的知识可能在牛的生产的多个方面有用,并且对于分析目前在世界范围内进行的全基因组关联研究的结果至关重要。我们研究了使用最流行的牛全基因组关联研究平台Illumina BovineSNP50阵列(Illumina Inc.,圣地亚哥,加利福尼亚州)的基因型数据来估计单个牛品种的品种组成的可行性和准确性。首先,通过对与相应品种协会合作选出的代表其品种的2,000多头大公牛进行基因分型,定义了16个肉牛品种中阵列上SNP的(Illumina定义的等位基因B)等位基因频率。利用这些特定品种的等位基因频率,通过使用简单的多元回归技术或孟德尔预测了在美国肉类动物研究中心生产的大约2,000头(8个品种)的两,三,四向杂交牛的品种组成(http://www.genetics.ucla.edu/software/mendel)及其来自Illumina BovineSNP50阵列的基因型,然后将其与基于谱系的品种组成估计值进行比较。根据将估计值与基于系谱的平均品种成分进行比较,对除安格斯和红安格斯以外的所有品种(平均79%)使用任何一种估计方法时,基于标记的品种成分估计的准确性为89%。当将这两个品种合并为一个整体安格斯组时,准确性提高到大约88%。此外,我们使用了这些标记的子集(约有3,000个)填充了Illumina Bovine3K(Illumina Inc.),以查看使用这种精简的SNP制造商组合能否以相似的准确度估算出品种组成。当仅使用SNP与牛3K阵列共同估算品种组成时,准确度略降至83%。这些结果表明,在谱系未知的情况下(例如,多父本自然服务交配,饲养场或屠宰场中未经来源验证的动物),这些阵列的SNP数据可用于估计大多数美国肉牛的品种组成。 。当对血统不全的种群进行全基因组关联研究时,这种方法可以帮助进行依赖于品种组成知识的分析,包括识别和调整基于种群的种群分层。此外,基于SNP的品种组成估计可能有助于使母牛的种质适应环境,管理饲养场中的牲畜,并将疾病病例追溯到地理区域或起源农场。 [出版物摘要]

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