Application of the principal component analysis, cluster analysis, and partial least square regression on crossbreed Angus-Nellore bulls feedlot finished

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作者
Lucas S. F. Lopes
Mateus S. Ferreira
Welder A. Baldassini
Rogério A. Curi
Guilherme L. Pereira
Otávio R. Machado Neto
Henrique N. Oliveira
J. Augusto II V. Silva
Danísio P. Munari
Luis Artur L. Chardulo
机构
[1] São Paulo State University (UNESP),College of Agriculture and Veterinary Science (FCAV)
[2] São Paulo State University (UNESP),College of Veterinary Medicine and Animal Science (FMVZ)
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Beef cattle; Carcass; Meat color; Multivariate statistics; Tenderness;
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摘要
Principal component analysis (PCA) and the non-hierarchical clustering analysis (K-means) were used to characterize the most important variables from carcass and meat quality traits of crossbred cattle. Additionally, partial least square (PLS) regression analysis was applied between the carcass measurements and meat quality traits on the classes defined by the cluster analysis. Ninety-seven non-castrated F1 Angus-Nellore bulls feedlot finished were used. After slaughter, hot carcass weight, carcass yield, cold carcass weight, carcass weight losses, pH, and backfat thickness (BFT) were measured. Subsequently, samples of the longissimus thoracis were collected to analyze shear force (SF), cooking loss (CL), meat color (L*, chroma, and hue), intramuscular fat, protein, collagen, moisture, and ashes. Principal component 1 (PC1) was correlated with colorimetric variables, while PC2 was correlated with carcass weights. Afterwards, three clusters (k = 3) were formed and projected in the gradient defined by PC1 and PC2 and allowed distinguishing groups with divergent values for collagen, protein, moisture, CL, SF, and BFT. Animals from high chroma group presented meat with more attractive colors and tenderness (SF = 1.97 to 4.84 kg). Subsequently, the PLS regression on the three chroma groups revealed a good fitness and the coefficients are used to predict the chroma variable from the explanatory variables, which may have practical importance in attempts to predict meat color from carcass and meat quality traits. Thus, PCA, K-means, and PLS regression confirmed the relationship between meat color and tenderness.
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页码:3655 / 3664
页数:9
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