Multispectral-derived genotypic similarities from budget cameras allow grain yield prediction and genomic selection augmentation in single and multi-environment scenarios in spring wheat

被引:0
作者
Tomasz Mróz
Sahameh Shafiee
Jose Crossa
Osval A. Montesinos-Lopez
Morten Lillemo
机构
[1] Norwegian University of Life Sciences,Department of Plant Sciences
[2] Km 45,International Maize and Wheat Improvement Center (CIMMYT)
[3] Carretera Mexico Veracruz,Facultad de Telemática
[4] Colegio de Postgraduados,undefined
[5] Universidad de Colima,undefined
来源
Molecular Breeding | 2024年 / 44卷
关键词
Spring wheat; Grain yield; Grain yield prediction; Genomic prediction; Multispectral imaging; High-throughput phenotyping;
D O I
暂无
中图分类号
学科分类号
摘要
With abundant available genomic data, genomic selection has become routine in many plant breeding programs. Multispectral data captured by UAVs showed potential for grain yield (GY) prediction in many plant species using machine learning; however, the possibilities of utilizing this data to augment genomic prediction models still need to be explored. We collected high-throughput phenotyping (HTP) multispectral data in a genotyped multi-environment large-scale field trial using two cost-effective cameras to fill this gap. We tested back to back the prediction ability of GY prediction models, including genomic (G matrix), multispectral-derived (M matrix), and environmental (E matrix) relationships using best linear unbiased predictor (BLUP) methodology in single and multi-environment scenarios. We discovered that M allows for GY prediction comparable to the G matrix and that models using both G and M matrices show superior accuracies and errors compared with G or M alone, both in single and multi-environment scenarios. We showed that the M matrix is not entirely environment-specific, and the genotypic relationships become more robust with more data capture sessions over the season. We discovered that the optimal time for data capture occurs during grain filling and that camera bands with the highest heritability are important for GY prediction using the M matrix. We showcased that GY prediction can be performed using only an RGB camera, and even a single data capture session can yield valuable data for GY prediction. This study contributes to a better understanding of multispectral data and its relationships. It provides a flexible framework for improving GS protocols without significant investments or software customization.
引用
收藏
相关论文
共 33 条
[1]  
Aguate FM(2017)Use of hyperspectral image data outperforms vegetation indices in prediction of maize yield Crop Sci 57 2517-2524
[2]  
Araus JL(2014)Field high-throughput phenotyping: the new crop breeding frontier Trends Plant Sci 19 52-61
[3]  
Cairns JE(2015)Breeding schemes for the implementation of genomic selection in wheat ( Plant Sci 242 23-36
[4]  
Bassi FM(2017) spp) IFAC PapersOnLine 50 11479-11484
[5]  
Burud I(2019)Exploring robots and UAVs as phenotyping tools in plant breeding Plant Methods 15 1-19
[6]  
Han L(2019)Modelling maize above-ground biomass based on machine learning approaches using UAV remote-sensing data Plant Methods 15 1-12
[7]  
Hassan MA(2019)Accuracy assessment of plant height using an unmanned aerial vehicle for quantitative genomic analysis in bread wheat Nat Biotechnol 37 744-754
[8]  
Hickey LT(2014)Breeding crops to feed 10 billion G3: Genes Genomes Genet 4 97-108
[9]  
Houchmandzadeh B(2018)An alternative to the breeder’s and Lande’s equation Eur J Agron 95 24-32
[10]  
Hu P(2019)Estimation of plant height using a high throughput phenotyping platform based on unmanned aerial vehicle and self-calibration: example for sorghum breeding G3: Genes Genomes Genet 9 1231-1247