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Strategies to Incorporate Genomic Prediction Into Population-Wide Genetic Evaluations

Joint ADSA-ASAS Meeting July 7-11, 2008, Indianapolis. Strategies to Incorporate Genomic Prediction Into Population-Wide Genetic Evaluations. Nicolas Gengler 1,2 & Paul VanRaden 3 1 Animal Science Unit, Gembloux Agricultural University, Belgium

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Strategies to Incorporate Genomic Prediction Into Population-Wide Genetic Evaluations

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  1. Joint ADSA-ASAS Meeting July 7-11, 2008, Indianapolis Strategies to Incorporate Genomic Prediction Into Population-WideGenetic Evaluations Nicolas Gengler1,2 & Paul VanRaden3 1Animal Science Unit, Gembloux Agricultural University, Belgium 2National Fund for Scientific Research (FNRS), Brussels, Belgium 3USDA Animal Improvement Programs Laboratory, Beltsville, MD

  2. Issues for Genomic Breeding Values andPopulation-Wide Genetic Evaluations • How to avoid any confusion in the mind of users? • Do markets accept even more “black-box”? • How to create confidence? All these points could be partiallyaddressed by answering this question: How to feedback genomic information to breeders? Therefore integration of genomic breeding valuesand population-wide genetic evaluations a necessity!

  3. Two Main Goals • Include data from other phenotyped relatives into the genotyped animals’ combined EBV, called hereafter “integration” • Transfer information from genotyped to non-genotyped animals to allow for them also computation of combined EBV,called hereafter “propagation” Two goals basically needed to achieve tight integration of genomic and phenotypic information

  4. Three strategies • Selection index to combine sources of information into a single set of breeding values for genotyped animals • Predict SNP gene content, then use it, alternatively predict genomic breeding values than integrate these values using 1 • Integrate genomic breeding values as external information into genetic evaluation using a Bayesian framework

  5. Strategy 1: Selection Index • Define three types of EBV (û1, û2, û3) as components of information vector (û) by • û1 = genomic EBV, known for genotyped animals, their data being YD, DYD or DRP • û2 = non-genomic EBV (PA), known for genotyped animals and based on their data (YD, DYD, DRP) • û3 = traditional EBV (PA) from national / intl. data • Define combined EBV as ûc

  6. Strategy 1: Selection Index • Define needed variances and covariance as proportional to reliabilities (R) and genetic variance:

  7. Strategy 1: Selection Index • Predicting ûc using standard SI • Average SI coefficients (approximate) • Intuitively eliminates double counting for PA • Very similar to values obtained by multiple regression • Achieves “Integration” (Goal 1) • Solves double-counting of PA for genotyped animals

  8. Strategy 2: • Background • SNP data only known for few animals • First idea: propagation of gene content for all animals can be done through out pedigree • Conditional expectation of gene contents for SNPfor ungenotyped animals given molecular and pedigree dataGengler et al. JDS 2008 91: 1652- 1659 • Leads directly to needed covariance structures combining genomic relationship if known with pedigree relationships • However basic idea can be extended easily • Also presented here (Strategy 2b)

  9. Strategy 2: PredictSNP Gene Content Gengler et al. JDS 2008 91: 1652 - 1659 Average gene content = Allele frequency x 2 Unknown SNP gene contents for non-genotyped animals Known SNP gene contents forgenotyped animals Additive relationshipmatrix between ungenotyped and genotyped animals Additive relationshipmatrix among genotypedanimals NB: n = non-genotyped, g = genotyped animals

  10. Strategy 2: PredictSNP Gene Content • Predicted gene content for SNP can be used to predict individual genomic EBV • Leads directly to needed covariance structures combining genomic relationship if known with pedigree relationships • However method can also extended to predict directly individual genomic EBV • Also much simpler than estimating individual SNP gene contents

  11. Strategy 2b: Predict Genomic EBV Average genomicbreeding value Unknown genomicbreeding values for non-genotyped animals Known genomic breeding values for genotyped animals Additive relationshipmatrix between unknown and known animals Additive relationshipmatrix among genotypedanimals NB: n = non-genotyped, g = genotyped animals

  12. Strategy 2b: Equivalent BLUP Method • Equivalent BLUP model to predict ûn • Solving of associated mixed model equations equivalent BLUP prediction of ûn NB: n = non-genotyped, g = genotyped animals

  13. Strategy 2b: Equivalent BLUP Method • Prediction of associated individual reliabilities for every ûn needed • Transfers information from genotyped to non-genotyped animals,achieves “Propagation” (Goal 2) • To allow for non-genotyped animals also computation of combined EBV, use of Method 1 (or other method) needed

  14. Remark • Even by combining genomic EBV from Method 2 (including step from Method 1) • Still not direct integration • However Genomic EBV can also be considered external evaluation known a priori for some animals • Theory exists for Bayesian Integration as used in the beef genetic evaluation systems

  15. Strategy 3: Mixed Model Equationsfor Bayesian Integration • Following Legarra et al. (2007) • Very similar to regular Mixed Model Equations, only two changes

  16. Strategy 3: Mixed Model Equationsfor Bayesian Integration Modified G matrix Prediction error variance matrix of genomic EBV (Co)variance matrix of genomic TBV NB: n = non-genotyped, g = genotyped animals

  17. Strategy 3: Mixed Model Equationsfor Bayesian Integration Least square part of LHS of theoretical BLUP equations for genomic EBV RHS of theoretical BLUP equations for genomic EBV NB: n = non-genotyped, g = genotyped animals

  18. Strategy 3: Mixed Model Equationsfor Bayesian Integration • Additional simplifications (assumptions) used : • D = diagonal matrix whose elements proportional to REL and genetic variance • Ggg= diagonal matrix whose elements proportional to genetic variance, represent maximum PEV • Experience with Bayesian method • Theory sound • However strong assumptions • Also practical experience fine-tuning needed

  19. Discussion • Strategy 1: • Is used since April 2008 in the USA • Achieves “Integration” (Goal 1) • But does not propagate genomic EBV across the pedigree • Strategy 2: • Allows to propagate SNP gene content or even genomic EBV across the pedigree (“Propagation”, Goal 2) • Even if leads to combined genomic – pedigree relationships, their use (inversion) not obvious with many animals • Strategy 3: • Achieves directly both “Integration” (Goal 1) and “Propagation” (Goal 2) because of modified Mixed Model Equations (relatives are also affected, as are other effects in the model) • Potentially a good compromise, also existing standard software can be easily modified

  20. Acknowledgments: Study supported throughFNRS grants F.4552.05 and 2.4507.02, RW-DGA project D31-1168 Thank you for your attention Presenting author’s e-mail: gengler.n@fsagx.ac.be

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