» Articles » PMID: 35996857

Time-series Multispectral Imaging in Soybean for Improving Biomass and Genomic Prediction Accuracy

Overview
Journal Plant Genome
Specialties Biology
Genetics
Date 2022 Aug 23
PMID 35996857
Authors
Affiliations
Soon will be listed here.
Abstract

Multispectral (MS) imaging enables the measurement of characteristics important for increasing the prediction accuracy of genotypic and phenotypic values for yield-related traits. In this study, we evaluated the potential application of temporal MS imaging for the prediction of aboveground biomass (AGB) in soybean [Glycine max (L.) Merr.]. Field experiments with 198 accessions of soybean were conducted with four different irrigation levels. Five vegetation indices (VIs) were calculated using MS images from soybean canopies from early vegetative to early reproductive stage. To predict the genotypic values of AGB, VIs at the different growth stages were used as secondary traits in a multitrait genomic prediction. The prediction accuracy of the genotypic values of AGB from MS and genomic data largely outperformed that of the genomic data alone before the flowering stage (90% of accessions did not flower), suggesting that it would be possible to determine cross-combinations based on the predicted genotypic values of AGB. We compared the prediction accuracy of a model using the five VIs and a model using only one VI to predict the phenotypic values of AGB and found that the difference in prediction accuracy decreased over time at all irrigation levels except for the most severe drought. The difference in the most severe drought was not as small as that in the other treatments. Only the prediction accuracy of a model using the five VIs in the most severe droughts gradually increased over time. Therefore, the optimal timing for MS imaging may depend on the irrigation levels.

Citing Articles

High-Throughput Phenotyping of Soybean Biomass: Conventional Trait Estimation and Novel Latent Feature Extraction Using UAV Remote Sensing and Deep Learning Models.

Okada M, Barras C, Toda Y, Hamazaki K, Ohmori Y, Yamasaki Y Plant Phenomics. 2024; 6:0244.

PMID: 39252878 PMC: 11382017. DOI: 10.34133/plantphenomics.0244.


Modeling soybean growth: A mixed model approach.

Delattre M, Toda Y, Tressou J, Iwata H PLoS Comput Biol. 2024; 20(7):e1011258.

PMID: 38990979 PMC: 11265664. DOI: 10.1371/journal.pcbi.1011258.


Spatio-temporal modeling of high-throughput multispectral aerial images improves agronomic trait genomic prediction in hybrid maize.

Morales N, Anche M, Kaczmar N, Lepak N, Ni P, Romay M Genetics. 2024; 227(1).

PMID: 38469622 PMC: 11075545. DOI: 10.1093/genetics/iyae037.


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

Mroz T, Shafiee S, Crossa J, Montesinos-Lopez O, Lillemo M Mol Breed. 2024; 44(1):5.

PMID: 38230361 PMC: 10789716. DOI: 10.1007/s11032-024-01449-w.


Random regression for modeling soybean plant response to irrigation changes using time-series multispectral data.

Sakurai K, Toda Y, Hamazaki K, Ohmori Y, Yamasaki Y, Takahashi H Front Plant Sci. 2023; 14:1201806.

PMID: 37476172 PMC: 10354427. DOI: 10.3389/fpls.2023.1201806.