| Literature DB >> 28747171 |
Breno O Fragomeni1, Daniela A L Lourenco2, Yutaka Masuda2, Andres Legarra3, Ignacy Misztal2.
Abstract
BACKGROUND: Much effort is put into identifying causative quantitative trait nucleotides (QTN) in animal breeding, empowered by the availability of dense single nucleotide polymorphism (SNP) information. Genomic selection using traditional SNP information is easily implemented for any number of genotyped individuals using single-step genomic best linear unbiased predictor (ssGBLUP) with the algorithm for proven and young (APY). Our aim was to investigate whether ssGBLUP is useful for genomic prediction when some or all QTN are known.Entities:
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Year: 2017 PMID: 28747171 PMCID: PMC5530494 DOI: 10.1186/s12711-017-0335-0
Source DB: PubMed Journal: Genet Sel Evol ISSN: 0999-193X Impact factor: 4.297
Parameters for the analysis of scenarios
| Scenario | 60 k SNPs | Causative QTN | Weights GWAS | Causative variances |
|---|---|---|---|---|
| (a) | Yes | |||
| (b) | Yes | Yes | ||
| (c) | Yes | Yes | Yes | |
| (d) | Yes | Yes | Yes | |
| (e) | Yes | |||
| (f) | Yes | Top 10% | ||
| (g) | Yes | Top 10% | Yes | |
| (h) | Yes | Top 10% | Yes | |
| (i) | Yes | Yes |
‘60 k SNPs’ defines scenarios that included the simulated SNPs
‘Causative QTN’ defines scenarios that included all or the top 10% simulated causative variants
‘Weight GWAS’ defines scenarios that used weights from the iterative GWAS approach
‘Causative variance’ defines scenarios that used true simulated variance for QTL
Fig. 1Accuracies of predictions with BLUP and ssGBLUP. Predictions with only pedigree information (BLUP) or genomic information using unweighted GRM derived from 60 k SNPs and a regular inverse (ssGBLUP), and as ssGBLUP but with the GRM inverse derived using APY. The number of causative QTN is 100 or 1000
Fig. 2Accuracies of prediction with ssGBLUP including causative variants. Predictions with ssGBLUP with an unweighted GRM derived from 60 k SNPs and causative QTN and a regular inverse (QTN), as QTN but with a weighted GRM with weights derived from GWAS (QTN/GWAS), as QTN but with a GRM weighted by true QTN effects (QTN/TRUE), and as QTN/TRUE but with the APY inverse (QTN/TRUE/APY). The number of causative QTN is 100 or 1000
Fig. 3Accuracies of prediction with ssGBLUP including the top 10% causative variants. Predictions with ssGBLUP with an unweighted GRM derived from 60 k SNPs + the top 10% causative QTN and a regular inverse (10% QTN), as 10% QTN but with a weighted GRM with weights derived from GWAS (10% QTN/GWAS), as 10% QTN but with a GRM weighted by true QTN effects (10% QTN/TRUE), and as 10% QTN/TRUE but with the APY inverse (10% QTN/TRUE/APY). The number of causative QTN is 100 or 1000
Fig. 4Accuracies of prediction with ssGBLUP including only causative variants. Predictions with ssGBLUP with an unweighted GRM with causative QTN only and a regular inverse with 5% blending by pedigree relationships (only QTN/5% ), as only QTN/5% but with 1% blending by pedigree relationships (only QTN/1% ), as only QTN/1% but with inversion by APY with the number of core animals equal to twice the number of QTN (only QTN/1% /APY), as only QTN/1% /APY but with blending of the identity matrix by 1% (only QTN/1% I/APY). Predictions with GRM weighted by true QTN effects were used with 1% pedigree relationship blending (only QTN/TRUE/1% ) and 1% identity matrix blending (only QTN/TRUE/1% ). The number of causative QTN is 100 or 1000
Fig. 5Accuracy of prediction with ssGBLUP without SNPs flanking QTN. Predictions with ssGBLUP with GRM derived from 60 k SNPs +causative QTN, weighted by the true simulated QTN effects and a constant for SNPs. SNPs flanking the causative variants had weights zeroed within the distance shown on the x axis
Number of eigenvalues explaining 90, 95 or 98% of the variance for genomic relationship matrices
| Option | Number of eigenvalues | |||||
|---|---|---|---|---|---|---|
| 100 QTN | 1000 QTN | |||||
| 90% eigenvalue | 95% eigenvalue | 98% eigenvalue | 90% eigenvalue | 95% eigenvalue | 98% eigenvalue | |
| 60 k | 8496 | 12,185 | 16,978 | 8502 | 12,192 | 16,984 |
| 60 K-BL5 | 9553 | 13,787 | 19,111 | 9560 | 13,796 | 19,120 |
| 60 K-GWAS3 | 4571 | 7537 | 13,139 | 4757 | 7704 | 13,230 |
| 60 K-QTN-BL5 | 9553 | 13,788 | 19,112 | 9563 | 13,806 | 19,136 |
| 60 k-QTN-BL5-TRUEd | 76 | 1803 | 5093 | 469 | 1942 | 5140 |
| 60 k-QTN10-BL5-TRUEa,b,d | 4054 | 8972 | 15,886 | 7482 | 13,320 | 19,918 |
| 60 K-QTN-BL5-GWAS3 | 4082 | 7084 | 12,880 | 4627 | 7594 | 13,186 |
| QTN | 88 | 94 | 98 | 793 | 872 | 930 |
| QTN-BL5c | 94 | 122 | 7639 | 863 | 980 | 7925 |
| QTN-BL1c | 89 | 95 | 127 | 806 | 888 | 995 |
Options used to construct the genomic relation matrix: 60 k non-coding SNPs (60 k), all causative QTN (QTN), the top 10% causative SNPs (QTN10), blending at 5% (BL5) or 1% (BL1), weighted by the 3rd iteration of the single-step GWAS (GWAS3), and weighted by true QTN effects (TRUE) for datasets with 100 or 1000 causative QTN
a10 eigenvalues explained 76% of the variance of for the 100-QTN scenario
b100 eigenvalues explained 71% of the variance of
cEigenvalues after number of QTN (100 or 1000) had values approaching 0 (below 10E−4)
dSimulated true weights for QTN and a constant equal to the minimum QTN value for SNPs