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Statistical models for estimating lamb birth weight using body measurements

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Abstract The objective of this study was to estimate lamb birth weight based on body dimensions. We monitored 101 lambs (61 Charollais lambs, 27 Kent lambs, and 13 their crossbreds)… Click to show full abstract

Abstract The objective of this study was to estimate lamb birth weight based on body dimensions. We monitored 101 lambs (61 Charollais lambs, 27 Kent lambs, and 13 their crossbreds) at a selected commercial flock. Birth weight, chest circumference (CC), head circumference (HC), and shin circumference (SC) were measured immediately after birth using a tape measure. Correlation analysis indicated the promising use of CC (r = 0.795; p < .001) or HC (r = 0.679; p < .001) for estimating body weight. Statistical models with one body measurement indicated that a model with CC as a covariate had the highest coefficient of determination and the lowest Akaike’s information criterion, corrected Akaike’s information criterion, and Bayesian information criterion. The defined criteria generally identified that models with SC, HC, and CC and models with HC and CC as covariates were the best. Residual analyses verified our results, but more extensive analyses of other breeds under different breeding conditions should be conducted to confirm and generalise our results. Highlights Statistical models have been proposed to predict the birth weight of lambs. Tape measure can be successfully used for birth weight estimation. Model with chest, head, shin circumferences as covariates were suggested.

Keywords: body; birth; statistical models; birth weight; information criterion; lamb birth

Journal Title: Italian Journal of Animal Science
Year Published: 2021

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