6533b852fe1ef96bd12aaedb

RESEARCH PRODUCT

Multivariate factor analysis of Girgentana goat milk composition

P. GiacconeMaria Luisa ScatassaMassimo Todaro

subject

Multivariate statistics040301 veterinary sciencesVarimax rotation0402 animal and dairy sciencefood and beverages04 agricultural and veterinary sciences040201 dairy & animal scienceBreedGirgentana goat Milk composition Multivariate analysis0403 veterinary scienceSettore AGR/17 - Zootecnica Generale E Miglioramento GeneticoMixed linear modelGirgentana goatAnimal Science and ZoologyComposition (visual arts)lcsh:Animal cultureFood scienceParity (mathematics)lcsh:SF1-1100MathematicsMorning

description

The interpretation of the several variables that contribute to defining milk quality is difficult due to the high degree of  correlation among them. In this case, one of the best methods of statistical processing is factor analysis, which belongs  to the multivariate groups; for our study this particular statistical approach was employed.  A total of 1485 individual goat milk samples from 117 Girgentana goats, were collected fortnightly from January to July,  and analysed for physical and chemical composition, and clotting properties. Milk pH and tritable acidity were within the  normal range for fresh goat milk. Morning milk yield resulted 704 ± 323 g with 3.93 ± 1.23% and 3.48±0.38% for fat  and protein percentages, respectively. The milk urea content was 43.70 ± 8.28 mg/dl. The clotting ability of Girgentana  milk was quite good, with a renneting time equal to 16.96 ± 3.08 minutes, a rate of curd formation of 2.01 ± 1.63 min-  utes and a curd firmness of 25.08 ± 7.67 millimetres.  Factor analysis was performed by applying axis orthogonal rotation (rotation type VARIMAX); the analysis grouped the  milk components into three latent or common factors. The first, which explained 51.2% of the total covariance, was  defined as “slow milks”, because it was linked to r and pH. The second latent factor, which explained 36.2% of the total  covariance, was defined as “milk yield”, because it is positively correlated to the morning milk yield and to the urea con-  tent, whilst negatively correlated to the fat percentage. The third latent factor, which explained 12.6% of the total covari-  ance, was defined as “curd firmness,” because it is linked to protein percentage, a30 and titatrable acidity. With the aim  of evaluating the influence of environmental effects (stage of kidding, parity and type of kidding), factor scores were anal-  ysed with the mixed linear model. Results showed significant effects of the season of kidding and parity on common fac-  tors, while no differences were found between goats with one or more kids. The multivariate factor analysis technique  was effective in describing the quality of Girgentana milk with a low number of new latent variables. These new variables  have been useful in the study of the effect of some technical factors such as parity and season of kidding on the quan-  titative and qualitative aspects of milk production in this goat breed. 

https://doi.org/10.4081/ijas.2005.403