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Growth and food intake curves for group-housed gilts and castrated male pigs

Published online by Cambridge University Press:  02 September 2010

S. Andersen
Affiliation:
National Committee for Pig Breeding, Health and Production, Copenhagen, Denmark
B. Pedersen
Affiliation:
National Committee for Pig Breeding, Health and Production, Copenhagen, Denmark
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Abstract

Polynomial models with random regression coefficients were used to describe cumulated food intake and gain as a function of number of days on test for gilts and castrated male pigs which were on test from 30 to 115 kg live weight. Growth rate and daily food intake were expressed as the derivative of the curves. The applied models allowed a separation of between and within animal variation. Confidence limits for average curves and prediction limits for individual curves were also obtained. A similar model was used to describe gain as a function of cumulated food intake. From this function food efficiency was obtained. The application of the results in stochastic simulation models is discussed.

Growth rate and daily food intake had a more curvilinear progress for castrated males than for gilts. It was estimated that 98% of the castrated males and 96% of the gilts had a lower growth rate at day 80 than at day 50; 74% of the castrated males and 48% of the gilts had a lower daily food intake at day 100 than at day 80. On average food efficiency of gilts was higher than food efficiency of castrated males and the difference increased through the test period.

Type
Research Article
Copyright
Copyright © British Society of Animal Science 1996

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