| Literature DB >> 33920359 |
Ivana Plavšin1,2, Jerko Gunjača2,3, Zlatko Šatović2,4, Hrvoje Šarčević2,3, Marko Ivić1, Krešimir Dvojković1, Dario Novoselović1,2.
Abstract
Selection for wheat (Triticum aestivum L.) grain quality is often costly and time-consuming since it requires extensive phenotyping in the last phases of development of new lines and cultivars. The development of high-throughput genotyping in the last decade enabled reliable and rapid predictions of breeding values based only on marker information. Genomic selection (GS) is a method that enables the prediction of breeding values of individuals by simultaneously incorporating all available marker information into a model. The success of GS depends on the obtained prediction accuracy, which is influenced by various molecular, genetic, and phenotypic factors, as well as the factors of the selected statistical model. The objectives of this article are to review research on GS for wheat quality done so far and to highlight the key factors affecting prediction accuracy, in order to suggest the most applicable approach in GS for wheat quality traits.Entities:
Keywords: GEBV; genomic selection; heritability; prediction accuracy; training population; validation population; wheat quality
Year: 2021 PMID: 33920359 PMCID: PMC8069980 DOI: 10.3390/plants10040745
Source DB: PubMed Journal: Plants (Basel) ISSN: 2223-7747
Figure 1Flow diagram of a plant breeding program based on genomic selection.
Figure 2Classification of the most frequently used genomic selection prediction models.
Overview of references for genomic selection studies covering wheat quality traits.
| Reference | Quality Traits Examined 1 | Population Type and Size 2 | Platform and Number of Markers 2 | GS Prediction Model 3 | Factors Affecting Prediction Accuracy Examined 2 | Comparison to Other Types of Selection 2 | Single-Trait (ST) or Multitrait (MT) Analysis | |||
|---|---|---|---|---|---|---|---|---|---|---|
| Selected Model | TP Size | TP/VP | Marker | |||||||
| [ | TW, PHS, FY, KH, LA-SRC, NaCO-SRC, Suc-SRC, H2O-SRC | 2 biparental populations (209/174 DHs) | 399 multiple platforms/574 DArTs | RRBLUP, BayesCπ | Yes | Yes | No | Yes | Yes (MAS and PS) | ST |
| [ | TW, PHS, FY, FP, LA-SRC, NaCO-SRC, Suc-SRC, H2O-SRC, KH | 374 lines | 1158 DArTs | RRBLUP, BayesA, BayesB, BayesCπ | Yes | Yes | No | Yes | Yes (MAS and PS) | ST |
| [ | TKW, TW, GPC, FY, FP, LV, KH, SDS sedimentation, mixograph and alveograph traits | 5520 lines | 3075 SNPs | RRBLUP, GAUSS, PLSR, EN, RF | Yes | Yes | No | No | Yes | ST |
| [ | TKW, TW, GPC, KH, SDS sedimentation | 8416/2403 landrace accessions | ~23,000/~33,000 DArT SNPs | GBLUP | No | Yes | Yes | No | No | ST |
| [ | TW, FY, FP, LA-SRC, NaCO-SRC, Suc-SRC, H2O-SRC, KH | 273 elite lines and cultivars | 3919/13,198 SNPs | RRBLUP, BRR, RKHS, EN | Yes | Yes | Yes | Yes | No | ST |
| [ | TKW, TW, GPC, GC, SC, KH, Zeleny sedimentation | 135 inbred lines,1604 hybrids | 17,372 SNPs | RRBLUP, W-BLUP, BayesCπ | Yes | Yes | Yes | Yes | Yes (PS) | ST |
| [ | GPC, PY | 659 lines | 9500 DArT SNPs | RRBLUP | No | Yes | Yes | No | No | ST |
| [ | TKW, TW, GPC, FY, FP, SC, amylose content, FN, LV, LT, MIXT, KH, starch damage, viscosity, farinograph and extensograph traits | 2076 varieties and synthetic derivative lines | 51,208 SNPs | Multivariate model | No | No | No | No | No | ST + MT |
| [ | GPC, farinograph, extensograph, and alveograph traits | 128 DHs | 6600 DArT SNPs | RRBLUP | No | No | No | No | No | MT |
| [ | GPC, gluten index, alveograph traits | 170 varieties and advanced lines, 154 DHs | 9752/5153 SNPs | RRBLUP, GBLUP, BayesA, BayesB, BL, RKHS, MT-BayesA, MT-Matrix, MT-SI | Yes | No | Yes | Yes | No | ST + MT |
| [ | TKW, TW, GPC, FN, Zeleny sedimentation | 635 lines (159 full-sib families) | 10,802 SNPs | GBLUP, BL | Yes | Yes | Yes | Yes | No | ST |
| [ | TW, GPC, WGC, SV, alveograph and mixograph traits | 495 lines | 6655 SNPs | BRR, Bayes multivariate Gaussian model | No | Yes | No | No | No | ST + MT |
| [ | GPC, farinograph and extensograph traits | 840 lines | 4598 DArT SNPs | RRBLUP, W-BLUP | Yes | No | No | No | Yes (MAS) | ST + MT |
| [ | TKW, GPC, mixograph, farinograph, and extensograph traits | 57 cultivars and lines | 7588 SNPs | RRBLUP, BayesA BayesB, BL, BRR | Yes | No | No | No | No | ST + MT |
| [ | TKW, GPC, SDS sedimentation | 282 DHs | 7426 SNPs | RRBLUP, BL, RF, RKHS | Yes | Yes | No | No | Yes (PS) | ST |
| [ | TKW, TW, GPC, FY, FP, FS, LV, MIXT, KH, grain color, alveograph traits | 3485 lines | 78,606 SNPs | GBLUP, BayesB | Yes | No | Yes | Yes | No | ST |
| [ | TKW, GPC, FN, Zeleny sedimentation | 1152 lines | 11,058 SNPs | GBLUP, Bayesian SNP-BLUP | Yes | Yes | Yes | No | Yes (MAS) | ST + MT |
| [ | FY, alveograph traits | 635 lines (159 full-sib families) | 10,802 SNPs | GBLUP, BL | Yes | Yes | Yes | No | No | ST |
| [ | GPC, PY, extensograph and farinograph traits | 480 lines | 7300 DArT SNPs | GBLUP, W-BLUP | Yes | No | No | No | No | ST + MT |
| [ | TKW, TW, GPC, FP, LV, KH, SDS sedimentation, mixograph and alveograph traits | ~1400 lines | 78,606 SNPs before filtering * | BMTME, MTR | Yes | No | No | No | No | MT |
| [ | GPC, Zeleny sedimentation | 1325 lines | 9290 SNPs | RRBLUP, BL | Yes | No | No | No | No | ST |
* Final number of markers used for analysis is not mentioned. 1 TKW—thousand-kernel weight, TW—test weight, GPC—grain protein content, FY—flour yield, FP—flour protein, FS—flour sedimentation, WGC—wet gluten content, PY—protein yield, GC—gluten content, KH—kernel hardness, SC—starch content, FN—falling number, LV—loaf volume, LT—loaf texture, MIXT—mixing time, SV—sedimentation volume, PHS—preharvest sprouting, LA-SRC—lactic acid solvent retention capacity, NaCO-SRC—sodium carbonate solvent retention capacity, H2O-SRC—water solvent retention capacity, Suc-SRC—sucrose solvent retention capacity, SDS—sodium dodecyl sulfate. 2 DH—double haploid, SNP—single nucleotide polymorphism, TP—training population, VP—validation population, PS—phenotypic selection, MAS—marker-assisted selection, ST—single-trait, MT—multitrait. 3 GS—genomic selection, RRBLUP—ridge regression best linear unbiased prediction, GBLUP—genomic best linear unbiased prediction, BL—Bayesian least absolute shrinkage and selector operator (LASSO), BRR—Bayesian ridge regression, GAUSS—Gaussian kernel, PLSR—partial least squares regression, RKHS—reproducing kernel Hilbert space, EN—elastic net, W-BLUP—weighted best linear unbiased prediction, BMTME—Bayesian multitrait multienvironment, MTR—multitrait ridge regression, MT-SI—multitrait selection index, RF—random forest.
Overview of heritability and GS prediction accuracy reported in studies covering wheat quality traits.
| Reference | Quality Traits Examined 1 | Heritability Type | Heritability Strength | Heritability Range | GS Prediction Accuracy Range 3 |
|---|---|---|---|---|---|
| [ | PHS, GPC, TW, Suc-SRC, LA-SRC, KH, FY | broad-sense | high | 0.71–0.93 | 0.45–0.76 |
| [ | TW, PHS, FY, KH, LA-SRC, NaCO-SRC, Suc-SRC, H2O-SRC | broad-sense | moderate—high | 0.67–0.95 | 0.27–0.74 |
| [ | TKW, TW, GPC, FY, FP, SDS sedimentation, KH, LV, mixograph and alveograph traits | narrow-sense | moderate | 0.41–0.68 | 0.42–0.71 |
| [ | TW, FY, FP, KH, LA-SRC, NaCO-SRC, Suc-SRC, H2O-SRC | alternative calculation for unbalanced data 2 | high | 0.75–0.95 | 0.31–0.67 |
| [ | TKW, TW, GPC, GC, SC, KH, Zeleny sedimentation | broad-sense | moderate—high | 0.63–0.96 | 0.35–0.96 4 |
| [ | GPC, farinograph, extensograph, and alveograph traits | alternative calculation for unbalanced data 2 | moderate—high | 0.69–0.83 | 0.16–0.61 4 |
| [ | TKW, TW, GPC, FN, Zeleny sedimentation | narrow-sense | moderate—high | 0.56–0.81 | 0.2–0.79 |
| [ | TW, GPC, WGC, SV, alveograph and mixograph traits | broad-sense | moderate | 0.36–0.64 | 0.24–0.43 4 |
| [ | GPC, farinograph and extensograph traits | narrow-sense | moderate | 0.4–0.66 | 0.3–0.53 |
| [ | TKW, GPC, mixograph, farinograph, and extensograph traits | broad-sense | high | 0.78–0.93 | 0.25–0.42 |
| [ | FY, alveograph traits | narrow-sense | moderate—high | 0.38–0.72 | 0.3–0.79 |
| [ | GPC, SC, Zeleny sedimentation | narrow-sense | low—moderate | 0.35–0.62 | 0.1–0.3 |
1 TKW—thousand-kernel weight, TW—test weight, GPC—grain protein content, FY—flour yield, FP—flour protein, WGC—wet gluten content, GC—gluten content, KH—kernel hardness, SC—starch content, FN—falling number, LV—loaf volume, SV—sedimentation volume, PHS—preharvest sprouting, LA-SRC—lactic acid solvent retention capacity, NaCO-SRC—sodium carbonate solvent retention capacity, H2O-SRC—water solvent retention capacity, Suc-SRC—sucrose solvent retention capacity, SDS—sodium dodecyl sulfate. 2 According to Piepho and Möhring [70]. 3 Accuracy across all used models or scenarios. 4 Accuracy of single-trait genomic selection model.