Linear Models for the Prediction of the Genetic Merit of Animals
Description:
Fundamental to any livestock improvement program by animal scientists is the prediction of genetic merit in the offspring generation for desirable production traits such as increased growth rate, superior meat, milk, and wool production.\nCovering the foundational principles on the application of linear models for the prediction of genetic merit in livestock, this new edition is fully updated to incorporate recent advances in genomic prediction approaches, genomic models for multi-breed and crossbred performance, dominance, and epistasis. It provides models for the analysis of main production traits as well as functional traits and includes numerous worked examples. For the first time, R codes for key examples in the textbook are provided online.\nThe book covers:
The relationship between the genome and the phenotype. BLUP models for various livestock data and structure. Incorporation of related ancestral parents and metafounders in prediction models. Models for survival analysis and social interaction. Advancements in genomic prediction approaches and selection. Genomic models for multi-breed and crossbred performance. Models for non-additive genetic effects including dominance and epistasis. Estimation of genetic parameters including Gibbs sampling approaches. Computation methods for solving linear mixed model equations. Suitable for graduate and postgraduate students, researchers and lecturers of animal breeding, genetics and genomics, this established textbook provides a thorough grounding in both the basics and in new developments of linear models and animal genetics.
Low Price Summary
Top Bookstores
DISCLOSURE: We're an eBay Partner Network affiliate and we earn commissions from purchases you make on eBay via one of the links above.
Want a Better Price Offer?
Set a price alert and get notified when the book starts selling at your price.
Want to Report a Pricing Issue?
Let us know about the pricing issue you've noticed so that we can fix it.