INTRODUCTION TO ANIMAL BREEDING. Lecture Nr 3. The genetic evaluation (for a single trait) The Estimated Breeding Values (EBV) The accuracy of EBVs

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INTRODUCTION TO ANIMAL BREEDING Lecture Nr 3 The genetic evaluation (for a single trait) The Estimated Breeding Values (EBV) The accuracy of EBVs Etienne Verrier INA Paris-Grignon, Animal Sciences Department Verrier@inapg.fr

Purpose and general approach How to deal with the environmental factors The Estimated Breeding Values The accuracy of EBVs Summary

On what to select a reproducing animal A/ On the basis of its own performance B/ On the basis of the expected value of its offspring How to rank the candidates on the basis of the value of their future offspring? On the basis of their additive genetic value

Concept of additive genetic value (Reminder) P = µ + G + E G= A + D Sum of the vaerage gene effects E(A i A p ) = 1/2 A p E(P i A p ) = µ + 1/2 A p Interaction effects between genes depend on the way of mating Previous chapter

Genetic evaluation To predict (to estimate) the (additive) genetic value of a given animal or of a group of animals Provides the ranking of candidates to be selected Estimated Breeding Value Selection Index

Available information for the genetic evaluation of a given animal Its own performance(s) Its genotype for known genes or marker genes Its pedigree Performance(s) of Related animals Basis of genetic evaluation Importance the data recording

Why performances are useful? Statistical approach: The genetic value (A) is a random variable One looks to predict this value for any animal P i correlationa i P i provides information, due to its correlation with A i In that case, correlation is due to the fact that A i is included in P i

Why performances are useful? Sire Sire Dam Dam Animal Animal Sibs Sibs Offspring Offspring Due to kinship

Purpose and general approach How to deal with the environmental factors The Estimated Breeding Values The accuracy of EBVs Summary

Identified environmental factors Photo: E. Verrier Farm Year Season within a year Primiparous vs. multiparous females Sex (e.g. for growth performances) etc.

Prior control of the environment Principle: To round up all candidates in the same place at the same time Performance control station Advantage: Contemporary animals under homogenous conditions Restriction of the variations due to the environment Caution: The environmental conditions within the station should be not too much different from the conditions on farm

Posterior correction of data for the environmental effects: principle To express all performances as a deviation from a common basis Year 1 Year 2 Year 3 Year 4 Year 5 Year 6 Averaged performances General mean

Posterior correction of data for the environmental effects: practice Problem not so simple BLUP methodology Best Linear Unbiased Predictor BLUP EBVs Animal model BLUP EBVs...

Purpose and general approach How to deal with the environmental factors The Estimated Breeding Values The accuracy of EBVs Summary

A simple example Evaluation on the basis of the own performance P

A simple example Evaluation on the basis of the own performance A EBV = Expected genetic value according to the own performance E(A i P i ) Possible values P

A simple example Evaluation on the basis of the own performance A Expected genetic value according to the own performance Linear regression of A i on P i P

EBV : definition Estimated Breeding Value = Conditionnal expected (additive) genetic value according to the known performance = b x (P - µ)

Coefficient of regression of A on P Case of the own performance b = Cov (A i, P i ) Var (P i ) Cov (A i, P i ) = Cov (A i, A i + D i + E i ) = Cov (A i, A i ) = Var (A i ) b = V A V P = h 2 EBV = h 2 (P i - µ) Reminder : h 2 = proportion of individual differences which is from additive genetic origin

EBV computed on the basis of the performance of a related animal EBV = b (P j - µ) b = Cov (A i, P j ) Var (P j ) 2 Φ ij V A Covariance between relatives f(v P ) Previous chapter

Schematic presentation EBV = c x f(h 2 ) x (P - µ) Depends on the difference of generation with the candidate to be evaluated Weight puted on the available performance Sire s or dam s performance c = ½ Own or sib s performance c = 1 Offspring s performance c = 2

Purpose and general approach How to deal with the environmental factors The Estimated Breeding Values The accuracy of EBVs Summary

Prediction is not certainty A Possible values = Range of uncertainty It is minimised, by the nature of the method EBV=E(A i P i ) P

Range of uncertainty (Variance of prediction error) A Large uncertainty Low accuracy of the EBV P A Small uncertainty High accuracy of the EBV P

Repeatability (Rep.) / Accuracy - C D - Degree of confidence to be attached to the EBV An increase of Rep. means that uncertainty is reduced Square of the coefficient of correlation between the true genetic value and the EBV No information Rep. = R 2 (EBV, A i ) All is known 0 1

Variance of prediction error A EBV E A EBV EBV P c h = Unbiased predictor Variance of prediction error (which was minimised): c h b g var(error) = var A EBV = 1 Rep 2 σ A

Factors of variation of Rep The heritability (h 2 ) of the trait The kind and the amount of information taken into account Kind of performance : own or relative s performance Number of performances Correlations between the different performances

Evolution of the EBV and its accuracy during the life of a given animal The example of a Selle Français stallion 80 Source: Haras Nationaux / INRA 60 Rep (%) 40 20 EBV 0 Parents Parents + own perf. Parents + own perf. + offspring

Summary EBVs are computed from know performances and pedigree data, within a model Need to take into account the environmental factors EBV = best predictor of the genetic value The variance of prediction error can be derived from the accuracy, which depends on the heritability of the trait and on the nature and amount of information