Departamento de Zootecnia, Faculdade de Ciências Agrárias e Veterinárias, Universidade Estadual Paulista, Jaboticabal, 14884-900, São Paulo, Brazil.
Facultad de Ciencias Agrarias, Fundación Universitaria Agraria de Colombia, Bogotá D.C., Colombia.
Reprod Domest Anim. 2020 Jul;55(7):770-776. doi: 10.1111/rda.13679. Epub 2020 Apr 17.
Multivariate procedures are used for the extraction of variables from the correlation matrix of phenotypes in order to identify those traits that explain the largest proportion of phenotypic variation and to evaluate the relationship structure between these traits. The reproductive traits (days from calving to first estrus [CFE], days from calving to last service [CLS], calving interval [CI] and gestation length [GL]) and milk production traits (milk yield at 305 days of lactation [MY305], peak yield [PY] and milk yield per day of calving interval [MYCI]) of 5,217 Holstein females (primiparous and multiparous) were measured. Principal component analysis (PCA) and factor analysis of the correlation matrix were used to estimate the correlation between traits. Analysis grouped the seven traits into three principal components and four latent factors that retained approximately 81.5% and 88.9% of the total variation of the data, respectively. The production variables exhibited positive phenotypic correlation coefficients of high magnitude (>.67). The phenotypic correlation estimates between the productive and reproductive traits were low, ranging from .13 to .22. A strong association (.99) was observed between CLS and CI. Our results indicate that multivariate analysis was effective in generating correlations between the traits studied, grouping the seven traits in a smaller number of variables that retained approximately 81% of the total variation of the data.
多元分析程序用于从表型相关矩阵中提取变量,以识别出能解释表型变异最大比例的性状,并评估这些性状之间的关系结构。本研究测定了 5217 头荷斯坦奶牛(初产和经产)的繁殖性状(从配种到首次发情的天数 [CFE]、从配种到最后一次配种的天数 [CLS]、产犊间隔 [CI] 和妊娠期 [GL])和产奶性状(305 天泌乳期产奶量 [MY305]、高峰产奶量 [PY] 和产犊间隔每日产奶量 [MYCI])。采用主成分分析(PCA)和相关矩阵因子分析来估计性状间的相关性。分析将这 7 个性状分为 3 个主成分和 4 个潜在因子,分别保留了数据总变异的约 81.5%和 88.9%。生产变量表现出高度正的表型相关系数(>.67)。生产和繁殖性状之间的表型相关估计值较低,范围从.13 到.22。CLS 和 CI 之间存在很强的关联性(.99)。研究结果表明,多元分析在生成研究性状之间的相关性方面是有效的,将 7 个性状分组为少数几个变量,保留了数据总变异的约 81%。