Principal component and multivariate factor analysis of detailed sheep milk fatty acid profile
Articolo
Data di Pubblicazione:
2021
Abstract:
Fatty acid (FA) profile is one of the most important
aspects of the nutritional properties of milk. The FA
content in milk is affected by several factors such as
diet, physiology, environment, and genetics. Recently,
principal component analysis (PCA) and multivariate
factor analysis (MFA) have been used to summarize
the complex correlation pattern of the milk FA pro
file
by extracting a reduced number of new variables.
In this work, the milk FA profile of a sample of 993
Sarda breed ewes was analyzed with PCA and MFA
to compare the ability of these 2 multivariate statisti
cal
techniques in investigating the possible existence
of latent substructures, and in studying the influence
of physiological and environmental effects on the new
extracted variables. Individual scores of PCA and MFA
were analyzed with a mixed model that included the
fixed effects of parity, days in milking, lambing month,
number of lambs born, altitude of flock location, and
the random effect of flock nested within altitude. Both
techniques detected the same number of latent variables
(9) explaining 80% of the total variance. In general,
PCA structures were difficult to interpret, with only
4 principal components being associated with a clear
meaning. Principal component 1 in particular was the
easiest to interpret and agreed with the interpretation
of the first factor, with both being associated with the
FA of mammary origin. On the other hand, MFA was
able to identify a clear structure for all the extracted
latent variables, confirming the ability of this technique
to group FA according to their function or metabolic
origin. Key pathways of the milk FA metabolism were
identified as mammary gland de novo synthesis, ruminal
biohydrogenation, desaturation performed by stearoyl
coenzyme
A desaturase enzyme, and rumen microbial
activity, confirming previous findings in sheep and in
other species. In general, the new extracted variables
were mainly affected by physiological factors as days
in milk, parity, and lambing month; the number of
lambs born had no effect on the new variables, and
altitude influenced only one principal component and
factor. Both techniques were able to summarize a larger
amount of the original variance into a reduced number
of variables. Moreover, factor analysis confirmed its
ability to identify latent common factors clearly related
to FA metabolic pathways.
Tipologia CRIS:
03A-Articolo su Rivista
Keywords:
FATTY ACID, PRINCIPAL COMPONENTS, FACTOR ANALYSIS, MILK
Elenco autori:
Correddu, F.; Cesarani, A.; Dimauro, C.; Gaspa, G.; Macciotta, N.P.P.
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