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Prediction of weaning weight in Santa Inês lambs using the body volume formula.

Antonio Leandro Chaves GurgelGelson Dos Santos DifanteJoão Virgínio Emerenciano NetoLuís Carlos Vinhas ÍtavoCamila Celeste Brandão Ferreira ÍtavoCarolina Marques CostaGeraldo Tadeu Dos SantosAlfonso Juventino Chay-Canul
Published in: Tropical animal health and production (2022)
Weaning weight (WW) is one of the most important information within production systems, as it is a reflection of management during the breastfeeding phase and will influence the performance of animals in subsequent phases. This study aimed to develop and evaluate linear, quadratic, and exponential models to predict WW using the body volume (BV) formula in Santa Inês lambs for meat. Eighty-five lambs at 90 days of age with WW 17.52 ± 3.79 kg and BV 13.29 ± 2.86 dm 3 were evaluated. The quality of fit of the models was evaluated using the coefficient of determination (R 2 ), mean squared error (MSE), and root MSE (RMSE). For the external evaluation of the models, an independent dataset from 43 lambs at 90 days of age was used. The first-degree linear model showed the lowest values of MSE (1.02) and RMSE (1.01). In the external evaluation, all models exhibited estimates of mean WW and standard deviation of this weight similar to the external dataset, as well as high values (above 0.89) for the R 2 of predicted vs. observed data. Concordance correlation coefficient (CCC) analysis also revealed that all models showed accuracy and precision (CCC > 0.90). There was no difference between the models in terms of accuracy (P > 0.05). The comparison in terms of precision indicated that the linear model is more precise than the exponential model and that the quadratic model is as precise as the linear model. The first-degree linear model should be used due to its simplicity of interpretation and ease of estimation.
Keyphrases
  • body mass index
  • physical activity
  • weight loss
  • preterm infants
  • healthcare
  • machine learning
  • weight gain
  • mechanical ventilation
  • inflammatory response
  • lps induced
  • big data
  • high resolution
  • human milk
  • deep learning