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Principal components analysis applied to genetic evaluation of racing performance of Thoroughbred race horses in Korea

机译:主成分分析在韩国纯种赛马比赛成绩遗传评价中的应用

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Selection of proper phenotypic trait among various traits related with interesting performance plays an important role in genetic evaluation. In this study, principal components analysis (PCA) was adapted to generate a new index as a measure of racing performance of 12,279 horses. This method allows us to reduce the number of variables considered in the evaluation of the horses' racing performance, which may facilitate modeling genetic programs. The resulted racing time, earning prize and rank were selected for generating new indices as the representation of racing performance of the horses. Three indices used in this study were: 1) PCA1 generated from the modified values of racing time, earning prize and rank, 2) PCA2 generated from the modified racing time and rank, and 3) the adjusted racing time. The first principal components (Ks), elements in the eigenvector corresponding to the largest eigenvalue of PCA, of PCA1 and PCA2 explained the variance of the selected variables about 75.6% and 75.4% respectively. Linear combinations of the first Ks and adjusted variables were used as new performance indices. Those animal models were composed of significant explanatory variables selected by Akaike information criterion (AIC). Heritability and repeatability were 0.324 (+/- 0.026) and 0.334 (+/- 0.034) for adjusted racing time, 0.319 (+/- 0.014) and 0.326 (+/- 0.018) for PCA1, and 0.324 (+/- 0.010) and 0.332 (+/- 0.012) for PCA2 respectively. Estimated heritabilities and repeatabilities for three indices showed similar values for domestic racing records. However, models using PCA showed better fitting for data than model using racing time as a performance index. The proposed methodology is efficient to evaluate the total variance in this group of correlated traits, allowing reduction in the number of variables for genetic evaluation and construction of better fitting model. (c) 2010 Elsevier B.V. All rights reserved.
机译:在与有趣的表现相关的各种性状中选择合适的表型性状在遗传评估中起着重要的作用。在这项研究中,对主要成分分析(PCA)进行了调整,以生成新的指标来衡量12,279匹马的赛道表现。这种方法使我们能够减少在评估赛马成绩时考虑的变量数量,这可能有助于对遗传程序进行建模。选择产生的比赛时间,获胜奖杯和排名,以生成新的指标来代表马匹的比赛表现。本研究中使用的三个指标是:1)从赛车时间,获胜奖金和排名的修正值中生成的PCA1,2)从赛车时间和排名的修正中生成的PCA2,以及3)调整后的赛车时间。特征向量中的第一主成分(Ks)对应于PCA1,PCA2的最大PCA特征值,分别解释了所选变量的方差分别为75.6%和75.4%。前Ks和调整后变量的线性组合用作新的性能指标。这些动物模型由根据Akaike信息标准(AIC)选择的重要解释变量组成。调整后的竞速时间的遗传力和重复性分别为0.324(+/- 0.026)和0.334(+/- 0.034),PCA1为0.319(+/- 0.014)和0.326(+/- 0.018)和0.324(+/- 0.010)和PCA2的0.332(+/- 0.012)。三个指数的估计遗传力和重复性显示了国内赛车记录的相似值。但是,使用PCA的模型比使用竞速时间作为性能指标的模型更适合数据。所提出的方法可以有效地评估这组相关性状中的总方差,从而减少用于遗传评估和构建更好拟合模型的变量数量。 (c)2010 Elsevier B.V.保留所有权利。

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