» Articles » PMID: 30341493

Integrating Genomic-enabled Prediction and High-throughput Phenotyping in Breeding for Climate-resilient Bread Wheat

Abstract

Genomic selection and high-throughput phenotyping (HTP) are promising tools to accelerate breeding gains for high-yielding and climate-resilient wheat varieties. Hence, our objective was to evaluate them for predicting grain yield (GY) in drought-stressed (DS) and late-sown heat-stressed (HS) environments of the International maize and wheat improvement center's elite yield trial nurseries. We observed that the average genomic prediction accuracies using fivefold cross-validations were 0.50 and 0.51 in the DS and HS environments, respectively. However, when a different nursery/year was used to predict another nursery/year, the average genomic prediction accuracies in the DS and HS environments decreased to 0.18 and 0.23, respectively. While genomic predictions clearly outperformed pedigree-based predictions across nurseries, they were similar to pedigree-based predictions within nurseries due to small family sizes. In populations with some full-sibs in the training population, the genomic and pedigree-based prediction accuracies were on average 0.27 and 0.35 higher than the accuracies in populations with only one progeny per cross, indicating the importance of genetic relatedness between the training and validation populations for good predictions. We also evaluated the item-based collaborative filtering approach for multivariate prediction of GY using the green normalized difference vegetation index from HTP. This approach proved to be the best strategy for across-nursery predictions, with average accuracies of 0.56 and 0.62 in the DS and HS environments, respectively. We conclude that GY is a challenging trait for across-year predictions, but GS and HTP can be integrated in increasing the size of populations screened and evaluating unphenotyped large nurseries for stress-resilience within years.

Citing Articles

The Genetics and Breeding of Heat Stress Tolerance in Wheat: Advances and Prospects.

Zheng Y, Cai Z, Wang Z, Maruza T, Zhang G Plants (Basel). 2025; 14(2).

PMID: 39861500 PMC: 11768744. DOI: 10.3390/plants14020148.


GWAS elucidated grain yield genetics in Indian spring wheat under diverse water conditions.

Gaur A, Jindal Y, Singh V, Tiwari R, Juliana P, Kaushik D Theor Appl Genet. 2024; 137(8):177.

PMID: 38972024 DOI: 10.1007/s00122-024-04680-3.


Enhancing the potential of phenomic and genomic prediction in winter wheat breeding using high-throughput phenotyping and deep learning.

Kaushal S, Gill H, Billah M, Khan S, Halder J, Bernardo A Front Plant Sci. 2024; 15:1410249.

PMID: 38872880 PMC: 11169824. DOI: 10.3389/fpls.2024.1410249.


Prediction of biomass accumulation and tolerance of wheat seedlings to drought and elevated temperatures using hyperspectral imaging.

Sherstneva O, Abdullaev F, Kior D, Yudina L, Gromova E, Vodeneev V Front Plant Sci. 2024; 15:1344826.

PMID: 38371404 PMC: 10869465. DOI: 10.3389/fpls.2024.1344826.


Plant responses to climate change, how global warming may impact on food security: a critical review.

Janni M, Maestri E, Gulli M, Marmiroli M, Marmiroli N Front Plant Sci. 2024; 14:1297569.

PMID: 38250438 PMC: 10796516. DOI: 10.3389/fpls.2023.1297569.


References
1.
Money D, Gardner K, Migicovsky Z, Schwaninger H, Zhong G, Myles S . LinkImpute: Fast and Accurate Genotype Imputation for Nonmodel Organisms. G3 (Bethesda). 2015; 5(11):2383-90. PMC: 4632058. DOI: 10.1534/g3.115.021667. View

2.
Juliana P, Singh R, Singh P, Crossa J, Huerta-Espino J, Lan C . Genomic and pedigree-based prediction for leaf, stem, and stripe rust resistance in wheat. Theor Appl Genet. 2017; 130(7):1415-1430. PMC: 5487692. DOI: 10.1007/s00122-017-2897-1. View

3.
Kruijer W, Boer M, Malosetti M, Flood P, Engel B, Kooke R . Marker-based estimation of heritability in immortal populations. Genetics. 2014; 199(2):379-98. PMC: 4317649. DOI: 10.1534/genetics.114.167916. View

4.
Cabrera-Bosquet L, Crossa J, von Zitzewitz J, Serret M, Araus J . High-throughput phenotyping and genomic selection: the frontiers of crop breeding converge. J Integr Plant Biol. 2012; 54(5):312-20. DOI: 10.1111/j.1744-7909.2012.01116.x. View

5.
Sun J, Rutkoski J, Poland J, Crossa J, Jannink J, Sorrells M . Multitrait, Random Regression, or Simple Repeatability Model in High-Throughput Phenotyping Data Improve Genomic Prediction for Wheat Grain Yield. Plant Genome. 2017; 10(2). DOI: 10.3835/plantgenome2016.11.0111. View