| Literature DB >> 28143402 |
Rama Bangera1, Katharina Correa2, Jean P Lhorente1, René Figueroa1, José M Yáñez3,4.
Abstract
BACKGROUND: Salmon Rickettsial Syndrome (SRS) caused by Piscirickettsia salmonis is a major disease affecting the Chilean salmon industry. Genomic selection (GS) is a method wherein genome-wide markers and phenotype information of full-sibs are used to predict genomic EBV (GEBV) of selection candidates and is expected to have increased accuracy and response to selection over traditional pedigree based Best Linear Unbiased Prediction (PBLUP). Widely used GS methods such as genomic BLUP (GBLUP), SNPBLUP, Bayes C and Bayesian Lasso may perform differently with respect to accuracy of GEBV prediction. Our aim was to compare the accuracy, in terms of reliability of genome-enabled prediction, from different GS methods with PBLUP for resistance to SRS in an Atlantic salmon breeding program. Number of days to death (DAYS), binary survival status (STATUS) phenotypes, and 50 K SNP array genotypes were obtained from 2601 smolts challenged with P. salmonis. The reliability of different GS methods at different SNP densities with and without pedigree were compared to PBLUP using a five-fold cross validation scheme.Entities:
Keywords: Disease resistance; Genomic selection; Reliability; Salmon Rickettsial Syndrome
Mesh:
Year: 2017 PMID: 28143402 PMCID: PMC5282740 DOI: 10.1186/s12864-017-3487-y
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Estimates of residual variancea (), additive genetic varianceb () and heritabilityc () with their standard errors (±SE) for SRS resistance phenotypes DAYS and STATUS using different modelsd
| Model | Trait | ||||
|---|---|---|---|---|---|
| Days | Status | ||||
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| |
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| 73.079 | 16.640 | 0.185 ± 0.038 | 0.358 | 0.260 ± 0.037 |
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| 65.323 | 24.295 | 0.271 ± 0.041 | 0.661 | 0.393 ± 0.040 |
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| 65.454 | 17.392 | 0.210 ± 0.031 | 0.442 | 0.303 ± 0.054 |
|
| 65.348 | 19.318 | 0.228 ± 0.032 | 0.417 | 0.290 ± 0.053 |
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| 64.963 | 18.037 | 0.217 ± 0.030 | 0.439 | 0.300 ± 0.063 |
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| 65.118 | 19.530 | 0.231 ± 0.034 | 0.374 | 0.269 ± 0.052 |
aResidual variance for binary survival STATUS was set to 1
b, cTotal additive genetic variance : PBLUP and GBLUP was ; BAYESC and BLASSO was ; PBAYESC and PBLASSO was
cHeritability : PBLUP and GBLUP ; BAYESC, BLASSO, PBAYESC and PBLASSO
dModels with pedigree: pedigree based BLUP (PBLUP), genomic BLUP (GBLUP) and Bayesian estimation methods with additive SNP effects and polygenic pedigree (PBAYESC and PBLASSO); Models with only additive SNP effects: Bayesian estimation methods (BAYESC and BLASSO)
Correlationa between breeding values for SRS resistance phenotypesb estimated with different modelsc using data from 50 K SNP genotypesd
| Model | PBLUP | GBLUP | SNPBLUP | PSNPBLUP | BAYESC | PBAYESC | BLASSO | PBLASSO |
|---|---|---|---|---|---|---|---|---|
|
| 0.79 | 0.81 | 0.95 | 0.77 | 0.85 | 0.77 | 0.84 | |
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| 0.79 | 0.95 | 0.91 | 1.00 | 0.99 | 1.00 | 1.00 | |
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| 0.78 | 1.00 | 0.94 | 0.96 | 0.96 | 0.96 | 0.96 | |
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| 0.91 | 0.96 | 0.96 | 0.90 | 0.94 | 0.90 | 0.93 | |
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| 0.77 | 1.00 | 1.00 | 0.95 | 0.99 | 1.00 | 0.99 | |
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| 0.90 | 0.97 | 0.97 | 1.00 | 0.96 | 0.99 | 1.00 | |
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| 0.76 | 1.00 | 1.00 | 0.95 | 1.00 | 0.96 | 0.99 | |
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| 0.91 | 0.97 | 0.96 | 1.00 | 0.96 | 1.00 | 0.96 |
aAverage Pearson correlation between breeding values estimated with different models a from five-fold cross validation scheme
bSRS resistance phenotypes: Survival days (DAYS) below diagonal and binary survival (STATUS) above diagonal
cModels with pedigree: pedigree based BLUP (PBLUP), genomic BLUP (GBLUP), marker-effects BLUP with polygenic pedigree (PSNPBLUP) and Bayesian estimation methods with marker-effects and polygenic pedigree (PBAYESC and PBLASSO); Models with only marker-effects: market-effects BLUP (SNPBLUP) and Bayesian estimation methods (BAYESC and BLASSO)
dThe effective number of SNPs used was 49 684 from the 50 K SNP array
Mean reliability and bias of estimated breeding value (EBV) and genomic EBV (GEBV) for SRS survival DAYS and STATUS with their standard errors (±SE) using pedigree based and genomic models
| Modelsa | Trait | |||
|---|---|---|---|---|
| Days | Status | |||
| Reliability ± | Bias ± | Reliability ± | Bias ± | |
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| 0.342 ± 0.080 | 0.960 ± 0.146 | 0.201 ± 0.038 | 0.304 ± 0.042 |
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| 0.414 ± 0.065 | 0.949 ± 0.097 | 0.256 ± 0.026 | 0.276 ± 0.026 |
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| 0.429 ± 0.069 | 1.026 ± 0.110 | 0.256 ± 0.032 | 1.365 ± 0.096 |
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| 0.368 ± 0.069 | 0.814 ± 0.097 | 0.256 ± 0.039 | 0.798 ± 0.073 |
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| 0.424 ± 0.066 | 0.961 ± 0.098 | 0.261 ± 0.026 | 0.287 ± 0.028 |
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| 0.389 ± 0.071 | 0.916 ± 0.106 | 0.256 ± 0.031 | 0.294 ± 0.029 |
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| 0.424 ± 0.066 | 0.955 ± 0.097 | 0.262 ± 0.026 | 0.287 ± 0.026 |
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| 0.390 ± 0.072 | 0.937 ± 0.112 | 0.256 ± 0.029 | 0.285 ± 0.033 |
aModels with pedigree: pedigree based BLUP (PBLUP), genomic BLUP (GBLUP), marker-effects BLUP with polygenic pedigree (PSNPBLUP) and Bayesian estimation methods with marker-effects and polygenic pedigree (PBAYESC and PBLASSO); Models with only marker-effects: market-effects BLUP (SNPBLUP) and Bayesian estimation methods (BAYESC and BLASSO)
bThe effective number of SNPs used was 49 684 from the 50 K SNP array
Fig. 1Relative increase in reliability1 of different genomic selection models2 for trait DAYS and STATUS compared with classic pedigree-based model (PBLUP). 1 Reliability of DAYS and STATUS using the PBLUP was 0.34 and 0.20, respectively. 2 Genomic selection models with pedigree and marker: genomic BLUP (GBLUP), marker-effects BLUP (PSNPBLUP) and Bayesian estimation methods (PBAYESC and PBLASSO); GS models with only marker-effects: marker-effects BLUP (SNPBLUP) and Bayesian estimation methods (BAYESC and BLASSO)
Fig. 2Relative increase in reliability of different genomic selection models for trait DAYS and STATUS at different SNP densities compared with classic pedigree-based model (PBLUP). Reliability of DAYS and STATUS using the PBLUP was 0.34 and 0.20, respectively. Genomic selection models with pedigree and marker: genomic BLUP (GBLUP), marker-effects BLUP (PSNPBLUP) and Bayesian estimation methods (PBAYESC and PBLASSO); GS models with only marker-effects: marker-effects BLUP (SNPBLUP) and Bayesian estimation methods (BAYESC and BLASSO). SNP densities: 500, 1 000 (1 K), 3 000 (3 K), 10 000 (10 K), 20 000 (20 K) and 49 684 (50 K) SNP