Abstract
This chapter provides a critical review of statistical methods applied in animal and plant breeding programs, especially Bayesian methods. Classical and Bayesian procedures are presented in pedigree-based and marker-based models. The flexibility of the Bayesian approaches and their high accuracy of prediction of the breeding values are illustrated. We show a tendency of the superiority of Bayesian methods over best linear unbiased prediction (BLUP) in accuracy of selection, but some difficulties on elicitation of some complex prior distributions are investigated. Genetic models including marker and pedigree information are more accurate than statistical models based on markers or pedigree alone. Keywords:
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CITATION STYLE
Zaabza, H. B., Gara, A. B., & Rekik, B. (2017). Bayesian Modeling in Genetics and Genomicsvvv. In Bayesian Inference. InTech. https://doi.org/10.5772/intechopen.70167
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