Abstract :
The mechanisms involved in the control of growth in chickens are too complex to be explained only under univariate analysis
because all related traits are biologically correlated. Therefore, we evaluated broiler chicken performance under a multivariate
approach, using the canonical discriminant analysis. A total of 1920 chicks from eight treatments, defined as the combination
of four broiler chicken strains (Arbor Acres, AgRoss 308, Cobb 500 and RX) from both sexes, were housed in 48 pens. Average
feed intake, average live weight, feed conversion and carcass, breast and leg weights were obtained for days 1 to 42.
Canonical discriminant analysis was implemented by SASR CANDISC procedure and differences between treatments were
obtained by the F-test (P,0.05) over the squared Mahalanobis’ distances. Multivariate performance from all treatments
could be easily visualised because one graph was obtained from two first canonical variables, which explained 96.49% of
total variation, using a SASR CONELIP macro. A clear distinction between sexes was found, where males were better than
females. Also between strains, Arbor Acres, AgRoss 308 and Cobb 500 (commercial) were better than RX (experimental).
Evaluation of broiler chicken performance was facilitated by the fact that the six original traits were reduced to only two
canonical variables. Average live weight and carcass weight (first canonical variable) were the most important traits
to discriminate treatments. The contrast between average feed intake and average live weight plus feed conversion
(second canonical variable) were used to classify them. We suggest analysing performance data sets using canonical
discriminant analysis.
Keywords :
animal breeding , CANDISC procedure , MANOVA , poultry industry