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Multivariate principal component analysis to evaluate growth performances in Malabari goats of India

机译:多变量主要成分分析,评价印度马拉巴里山羊生长性能

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Evaluation of growth performances in Malabari goats was done with body weight and major morphometric traits, viz. body height, body length and chest girth at 6, 9 and 12 months, respectively. Data pertaining on 1082 Malabari goats spread over a period of 5 years (from 2014 to 2018) were used in the study. Least squares analysis of traits was done to adjust the effect of major significant non-genetic factors. Traits were analysed by using Varimax rotated principal component analysis (PCA) with Kaiser normalization to explain growth performances. Out of twelve principal components, PCA revealed four components explained about 67.78% of total variation. The first component (PC1) explained 28.02% of total variation. It was represented by significantly positive high loading of BH9, BH12 and BH6. The second component explained 15.090% of total variance with high loading of distance between BL9, BL6 and BL12. The third component explained 12.643% of variance and showed high component loadings for CG9, CG6 and CG12. The fourth factor accounted for 12.020% of total variability with comparatively higher loading WT12, WT9 and WT6. The communality ranged from 0.562 for BL12 to 0.848 for BH9. The body weight of adult Malabari goats was predicted using stepwise multiple regression of different interdependent morphometric traits and principal components. The multiple regression model with PC1 and PC2 was most precise with coefficient of determination (R-2) value 74%. Therefore, the study revealed that extracted components revealed maximum variability of growth performances in Malabari goats which could be effectively used for selection and breeding programmes.
机译:利用体重和主要的形态学性质,viz,对马拉巴里山羊生长性能进行评价。体高,体长和胸部周长,分别为6,9和12个月。在研究中使用了1082名Malabari山羊的数据(从2014年到2018年)在研究中使用。对特征的最小二乘分析进行了调整主要显着的非遗传因素的影响。通过使用Varimax旋转的主成分分析(PCA)与Kaiser标准化来分析特征以解释生长性能。在十二个主成分中,PCA透露了四个组成部分解释了总变异的约67.78%。第一组分(PC1)解释了总变异的28.02%。它由BH9,BH12和BH6的显着高负荷显着呈显着。第二个组件在BL9,BL6和BL12之间的高负载距离的总差异中解释了15.090%。第三个组分解释了12.643%的差异,并显示了CG9,CG6和CG12的高分组分载荷。第四个因素占总变异性的12.020%,加载WT12,WT9和WT6相对较高。共同规划为BH9的BL12至0.848的0.562。使用不同相互依存的形态测量特征和主要成分的逐步多次回归预测成年马拉巴里山羊的体重。具有PC1和PC2的多元回归模型最精确,测定系数(R-2)值74%。因此,该研究表明,提取的组分揭示了Malabari山羊的生长性能的最大变化,这可以有效地用于选择和育种计划。

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