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Classification of light Yorkshire pigs at different production stages using ordinary least squares and machine learning methods.
Casellas, J; Salgado-López, P; Lorente, J; Diaz, I Solar; Rathje, T; Gasa, J; Solà-Oriol, D.
Afiliação
  • Casellas J; Department of Animal and Food Science, Autonomous University of Barcelona, Bellaterra 08193, Spain.
  • Salgado-López P; Animal Nutrition and Welfare Service (SNIBA), Department of Animal and Food Science, Autonomous University of Barcelona, Bellaterra 08193, Spain. Electronic address: pau.salgado@uab.cat.
  • Lorente J; Andrimner Genética Aplicada, Calvet 30-32, 3(o) 2(a), 08021, Barcelona, Spain.
  • Diaz IS; DNA Genetics LLC, Columbus, NE 68601, USA.
  • Rathje T; DNA Genetics LLC, Columbus, NE 68601, USA.
  • Gasa J; Animal Nutrition and Welfare Service (SNIBA), Department of Animal and Food Science, Autonomous University of Barcelona, Bellaterra 08193, Spain.
  • Solà-Oriol D; Animal Nutrition and Welfare Service (SNIBA), Department of Animal and Food Science, Autonomous University of Barcelona, Bellaterra 08193, Spain.
Animal ; 18(1): 101047, 2024 Jan.
Article em En | MEDLINE | ID: mdl-38159346
ABSTRACT
Pig homogeneity and growth are major concerns for the pig industry today. Variability in pigs' size has a strong impact on profitability as uniformity plays a key role in the overall economic value of pigs produced. This research focused on statistical methods to identify pigs at risk of growth retardation at different stages of production. Data from 125 083 Yorkshire pigs at weaning (18-28 d), 59 533 pigs at the end of the nursery period (70-82 d) and 48 862 pigs at slaughter (155-170 d) were analyzed under three different cut-points (lowest 10, 20 and 30%) to characterize light animals. Records were randomly split into 21 trainingtesting sets, and each training data set was analyzed through an ordinary least squares approach and four machine learning algorithms (decision tree, random forest, and two alternative boosting approaches). A wide range of weighting functions were applied to give increased relevance to lighter pigs. Each resulting classification norm was used to classify light pigs in the testing data set. Both sensitivity and specificity were retained to construct the receiver operating characteristic curve, and the statistical performance of each analytical approach was evaluated by the area under the curve (AUC). In all production stages and cut-points, the random forest machine learning algorithm provided the highest AUC, closely followed by boosting procedures. For weaning BW (WW), factors related to birth BW and litter size accounted for more than 75% of the important prediction factors for light pigs. BW at the end of the nursery period and slaughter BW analyses revealed a similar pattern where WW and BW at the end of the nursery period accounted for more than 40 and 50% of statistical importance among the prediction factors, respectively. Machine learning algorithms are useful tools to easily evaluate the risk factors affecting the efficiency and homogeneity in swine. Since the BW at birth and weaning are key factors, sow nutrition and feeding management during gestation and lactation, along with piglet management during lactation, are identified as important influences on pig weight variability.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Lactação / Aumento de Peso Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Lactação / Aumento de Peso Idioma: En Ano de publicação: 2024 Tipo de documento: Article