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Would large dataset sample size unveil the potential of deep neural networks for improved genome-enabled prediction of complex traits? The case for body weight in broilers.

Tiago L PassafaroFernando B LopesJoão R R DóreaMark CravenVivian BreenRachel J HawkenGuilherme Jordão de Magalhães Rosa
Published in: BMC genomics (2020)
DNN had worse prediction correlation compared to BRR and Bayes Cπ, but improved mean square error of prediction and bias relative to both Bayesian models for genome-enabled prediction of body weight in broilers. Such findings, highlights advantages and disadvantages between predictive approaches depending on the criterion used for comparison. Furthermore, the inclusion of more data per se is not a guarantee for the DNN to outperform the Bayesian regression methods commonly used for genome-enabled prediction. Nonetheless, further analysis is necessary to detect scenarios where DNN can clearly outperform Bayesian benchmark models.
Keyphrases
  • body weight
  • genome wide
  • neural network
  • heat stress
  • climate change
  • risk assessment
  • machine learning
  • gene expression
  • big data
  • artificial intelligence
  • human health