首页> 外文期刊>Journal of Applied Animal Research >Linear and logistic models for multiple-breed genetic analysis of heifer fertility in Mexican Simmental?¢????Simbrah beef cattle
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Linear and logistic models for multiple-breed genetic analysis of heifer fertility in Mexican Simmental?¢????Simbrah beef cattle

机译:线性和逻辑模型对墨西哥西门塔尔州西姆巴拉(Simbrah)牛小母牛育性的多品种遗传分析

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ABSTRACT The aim of this study was to compare alternative models for the genetic evaluation of heifer fertility in Simmental?¢????Simbrah cattle. The analyses were conducted using a database with 37,390 female birth information recorded from 1984 to 2007, and 59,018 individuals in the pedigree. Three generalized mixed models were adjusted for a single trait in a multiracial population: linear animal, linear sire and logistic sire. The models were analysed by restricted maximum likelihood procedure with Average Information algorithm. Two strategies of cross-validation were carried out to evaluate the predict ability of the models. The heritability from linear animal and sire models had lower values than that estimated with the logistic model, 0.04?¢???????±?¢????0.00, 0.05?¢???????±?¢????0.00 and 0.20?¢???????±?¢????0.03, respectively. High Spearman and Kendall correlations were observed between the ranks of breeding values (BV) estimated from the linear and logistic sire models, 0.99 and 0.94, respectively. In contrast, these correlations were lower between the animal and sire models, 71% and 54%, respectively. The logistic sire model was the best estimating the BV with ancestors?¢???? information, while the linear animal model (LAM) was the best predicting with scattered information. In general, it was considered that best fit and prediction was produced with the LAM.
机译:摘要这项研究的目的是比较西门塔尔牛(Simbrah)的小母牛育性遗传评估的替代模型。使用数据库进行分析,该数据库包含1984年至2007年记录的37,390名女性出生信息,以及家谱中的59,018个人。针对多种族群体中的单个性状,对三种广义混合模型进行了调整:线性动物,线性公母和后代公母。通过使用平均信息算法的受限最大似然程序对模型进行了分析。进行了两种交叉验证策略来评估模型的预测能力。线性动物和父系模型的遗传力值比逻辑模型估计的值低,0.04±0.00±0.05,0.05±0.05±0.05。 0.00和0.20分别为±0.03和0.03。从线性和对数公母模型估计的育种值(BV)等级之间观察到了高Spearman和Kendall相关性,分别为0.99和0.94。相反,动物模型和父模型之间的相关性较低,分别为71%和54%。 Logistic父亲模型是与祖先一起估算BV的最佳方法?信息,而线性动物模型(LAM)在分散的信息下是最好的预测。通常,人们认为使用LAM可以产生最佳拟合和预测。

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