Table 4.
Genotyping platforma | GS modelb | Training samplec | Validation sampled | ||||||
---|---|---|---|---|---|---|---|---|---|
Phenotyped | Genotyped | Effective SNPsf | πg | Fitted SNPsh | i | Predictive abilityj | Biask | ||
Chip | ssGBLUP | 4492 | 652 | 40,710 | Nal | Na | 0.45 | 0.46 | 0.24 |
Chip | wssGBLUPe | 4492 | 652 | 40,710 | Na | Na | 0.45 | 0.43 | 0.14 |
Chip | BayesB | 583 | 583 | 40,744 | 0.995 | 204 | 0.44 | 0.26 | 0.14 |
Chip | BayesC | 583 | 583 | 40,744 | 0.995 | 204 | 0.44 | 0.31 | 0.15 |
RAD | ssGBLUP | 4492 | 649 | 10,052 | Na | Na | 0.52 | 0.42 | 0.19 |
RAD | wssGBLUP | 4492 | 649 | 10,052 | Na | Na | 0.52 | 0.40 | 0.13 |
RAD | BayesB | 579 | 579 | 10,059 | 0.980 | 201 | 0.43 | 0.40 | 0.23 |
RAD | BayesC | 579 | 579 | 10,059 | 0.980 | 201 | 0.54 | 0.35 | 0.14 |
The effective number of SNPs used was 40,710 and 10,052 from the Chip and RAD genotyping platforms, respectively.
Genomic selection models: single-step GBLUP (ssGBLUP); weighted ssGBLUP (wssGBLUP); Bayesian methods BayesB and BayesC; the GS analysis included only progeny of 2005 families.
The training sample included offspring from 10 full-sib 2005 families each with n = 38–80 offspring; BayesB and BayesC models included only fish that had both genotype and phenotype records (n = 579–583). In contrast, the ssGBLUP and wssGBLUP methods included also non-genotyped fish that had disease records (progeny of 2005 families).
The validation sample included 53 breeders (offspring of 2005 families that were included in training sample).
From wssGBLUP, iteration 2 results are presented; iteration 2 yielded higher accuracy GEBVs than iteration 3.
The analysis included SNPs and samples with a calling rate ≥0.70 and 0.90 for the RAD and Chip genotyping platforms, respectively.
Mixture parameter p specifies the proportion of loci with null effect.
Markers that are sampled as having non-zero effect (1−π) are fitted simultaneously in the multiple regression model.
Proportion of genetic variance explained by the markers .
The predictive ability (PA) was calculated using the mean progeny performance (MPP) of 31 progeny testing families that had as parents a pair of validation fish. The PA of GEBV was estimated as the correlation of mid-parent GEBV with MPP from each progeny testing family, PAGEBV = CORR(GEBV, MPP).
The bias of GEBV was defined as the regression coefficient of performance MPP on predicted mid-parent GEBV (βMPP.GEBV).
Na indicates either non-available or non-needed data cell.