Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic...

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Basic concepts on GS ΔG = i r σA / L breeder → i, r, L trade-offs → r <> L maximize r/L [i ], integrate (more) precise information more rapidly → GWE G P+G G P+G P+G G G GS addresses 3 of 4 components of genetic gain: generation interval L : early evaluation selection intensity i : evaluation/costs accuracy r : information integration

Transcript of Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic...

Page 1: Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic concepts on GS ΔG = i r σ A / L breeder → i, r, L trade-offs → r  L

Basic concepts on GS

ΔG = i r σA / L breeder → i, r, L trade-offs → r <> L maximize r/L [i ], integrate (more) precise information more rapidly → GWE

G

P+G

G

P+G

P+G

G

G

GS addresses 3 of 4 components of genetic gain: • generation interval L : early evaluation • selection intensity i : evaluation/costs • accuracy r : information integration

Page 2: Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic concepts on GS ΔG = i r σ A / L breeder → i, r, L trade-offs → r  L

Basic concepts on GS

𝑦 = µ + �𝑥𝑖𝑖𝛽𝑖 + 𝜖

𝑢 𝐵𝐵𝐵𝐵 = 𝑋𝛽

𝑢~𝑁(0,𝐺𝐺2𝑢)

𝐺 = 𝑋𝑋′/2�𝑝𝑝

Page 3: Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic concepts on GS ΔG = i r σ A / L breeder → i, r, L trade-offs → r  L
Page 4: Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic concepts on GS ΔG = i r σ A / L breeder → i, r, L trade-offs → r  L

What is prediction accuracy? • most common metric to assess prediction accuracy is

the correlation between estimated and true breeding values (or proxy)

• cross-validation

P G

model

G P’ P

model

P’

What affects prediction accuracy? • relationships between training & prediction sets • size of training & prediction sets • heritabilities (& correlations when multiple

traits)

• marker density (when low) • statistical model (clear with simulations, no so

clear with real data) • level of LD

sam

ple

1

sam

ple

2

Task scientific content: prediction accuracy

Page 5: Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic concepts on GS ΔG = i r σ A / L breeder → i, r, L trade-offs → r  L

fonction drawPedigree [pedantics]

GS evaluation with real data: prediction accuracy versus training/prediction set sizes

P+G

minimize ϴ

G

max ϴ

training set

prediction set

Page 6: Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic concepts on GS ΔG = i r σ A / L breeder → i, r, L trade-offs → r  L
Page 7: Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic concepts on GS ΔG = i r σ A / L breeder → i, r, L trade-offs → r  L
Page 8: Basic concepts on GS - GitHub Pagesfamuvie.github.io/breedR/workshop_IBL/Brief_intro_GS_L...Basic concepts on GS ΔG = i r σ A / L breeder → i, r, L trade-offs → r  L