PERFORMANCE ANALYSIS AND CARCASS CHARACTERISTICS OF SANTA INÊS SHEEP USING MULTIVARIATE TECHNICS

ABSTRACT The objective of this study was to apply multivariate analysis techniques such as principal component and canonical discriminant analyses to a set of performance and carcass data of Santa Inês sheep, to identify the relationships and select the variables that best explain the total variatio...

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Hauptverfasser: TARLAN OLIVEIRA MILANÊS, LUCIANA FELIZARDO PEREIRA SOARES, MARIA NORMA RIBEIRO, FRANCISCO FERNANDO RAMOS DE CARVALHO
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creator TARLAN OLIVEIRA MILANÊS
LUCIANA FELIZARDO PEREIRA SOARES
MARIA NORMA RIBEIRO
FRANCISCO FERNANDO RAMOS DE CARVALHO
description ABSTRACT The objective of this study was to apply multivariate analysis techniques such as principal component and canonical discriminant analyses to a set of performance and carcass data of Santa Inês sheep, to identify the relationships and select the variables that best explain the total variation of the data, in addition to quantifying an association between performance and carcass characteristics. The main components generated were efficient in reducing a cumulative total variation of 25 original variables correlated to four linear combinations, which together explained 80% of the total variation of the data. The first two principal components together explained approximately 65% of the total variation of the variables analyzed. In the first two linear combinations, the characteristics with the highest factor loading coefficients were cold carcass weight (CCW), hot carcass weight (HCW), empty body weight (EBW), average weight (AW), croup width (CW), cold carcass yield (CCY), and hot carcass yield (HCY). The variables selected in the canonical discriminant analysis, in order of importance, were total carbohydrate intake (TCI), total digestible nitrogen intake (TDNI), dry matter intake (DMI), non-fibrous carbohydrate intake (NFI), and fiber detergent neutral intake (NDFI). The first canonical root shows a correlation coefficient of approximately 0.82, showing a high association between the performance variables. The classification errors in the discriminant analysis were less than 5%, which were probably due to the similarity between individuals for the studied traits. The multivariate techniques were adequate and efficient in simplifying the sample space and classifying the animals in their original groups.
doi_str_mv 10.6084/m9.figshare.14328024
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identifier DOI: 10.6084/m9.figshare.14328024
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subjects Agricultural Biotechnology not elsewhere classified
Agricultural Economics
Animal Physiology - Systems
Food Sciences not elsewhere classified
FOS: Agricultural biotechnology
FOS: Biological sciences
FOS: Earth and related environmental sciences
FOS: Economics and business
FOS: Other engineering and technologies
Wildlife and Habitat Management
title PERFORMANCE ANALYSIS AND CARCASS CHARACTERISTICS OF SANTA INÊS SHEEP USING MULTIVARIATE TECHNICS
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