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首页> 外文期刊>Genetics, selection, evolution >Tag SNP selection for prediction of tick resistance in Brazilian Braford and Hereford cattle breeds using Bayesian methods
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Tag SNP selection for prediction of tick resistance in Brazilian Braford and Hereford cattle breeds using Bayesian methods

机译:使用贝叶斯方法选择SNP标签来预测巴西Braford和Hereford牛品种的抗tick虫性

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Cattle resistance to ticks is known to be under genetic control with a complex biological mechanism within and among breeds. Our aim was to identify genomic segments and tag single nucleotide polymorphisms (SNPs) associated with tick-resistance in Hereford and Braford cattle. The predictive performance of a very low-density tag SNP panel was estimated and compared with results obtained with a 50 K SNP dataset. BayesB (π = 0.99) was initially applied in a genome-wide association study (GWAS) for this complex trait by using deregressed estimated breeding values for tick counts and 41,045 SNP genotypes from 3455 animals raised in southern Brazil. To estimate the combined effect of a genomic region that is potentially associated with quantitative trait loci (QTL), 2519 non-overlapping 1-Mb windows that varied in SNP number were defined, with the top 48 windows including 914 SNPs and explaining more than 20% of the estimated genetic variance for tick resistance. Subsequently, the most informative SNPs were selected based on Bayesian parameters (model frequency and t-like statistics), linkage disequilibrium and minor allele frequency to propose a very low-density 58-SNP panel. Some of these tag SNPs mapped close to or within genes and pseudogenes that are functionally related to tick resistance. Prediction ability of this SNP panel was investigated by cross-validation using K-means and random clustering and a BayesA model to predict direct genomic values. Accuracies from these cross-validations were 0.27 ± 0.09 and 0.30 ± 0.09 for the K-means and random clustering groups, respectively, compared to respective values of 0.37 ± 0.08 and 0.43 ± 0.08 when using all 41,045 SNPs and BayesB with π = 0.99, or of 0.28 ± 0.07 and 0.40 ± 0.08 with π = 0.999. Bayesian GWAS model parameters can be used to select tag SNPs for a very low-density panel, which will include SNPs that are potentially linked to functional genes. It can be useful for cost-effective genomic selection tools, when one or a few key complex traits are of interest.
机译:已知牛对壁虱的抗性处于遗传控制之下,具有品种内部和品种之间的复杂生物机制。我们的目标是鉴定赫里福德和布拉福德牛与tick虫抗性相关的基因组片段并标记单核苷酸多态性(SNP)。估计了非常低密度标签SNP面板的预测性能,并将其与使用50K SNP数据集获得的结果进行了比较。 BayesB(π= 0.99)最初通过对巴西南部饲养的3455只动物的壁虱计数和41,045个SNP基因型的回归估计育种值进行回归分析,对该复杂性状进行了全基因组关联研究(GWAS)。为了估计可能与数量性状基因座(QTL)相关的基因组区域的组合效应,定义了2519个SNP数量不重叠的非重叠1-Mb窗口,其中前48个窗口包括914个SNP,并解释了20多个tick抗性估计遗传方差的百分比。随后,根据贝叶斯参数(模型频率和t样统计量),连锁不平衡和次要等位基因频率选择信息量最大的SNP,以建立一个非常低密度的58-SNP面板。这些标签SNP中的一些定位在与壁虱抗性功能相关的基因和假基因附近或内部。通过使用K均值和随机聚类以及BayesA模型预测直接基因组值的交叉验证,研究了该SNP面板的预测能力。这些交叉验证的K均值和随机聚类组的准确度分别为0.27±0.09和0.30±0.09,而使用所有41,045个SNP和BayesB且π= 0.99时分别为0.37±0.08和0.43±0.08。或0.28±0.07和0.40±0.08且π= 0.999。贝叶斯GWAS模型参数可用于为非常低密度的面板选择标签SNP,其中包括可能与功能基因关联的SNP。当一个或几个关键的复杂性状受到关注时,它可用于具有成本效益的基因组选择工具。

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