Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data

Abstract Background Modern agriculture uses hyperspectral cameras that provide hundreds of reflectance data at discrete narrow bands in many environments. These bands often cover the whole visible light spectrum and part of the infrared and ultraviolet light spectra. With the bands, vegetation indic...

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Main Authors: Abelardo Montesinos-López, Osval A. Montesinos-López, Jaime Cuevas, Walter A. Mata-López, Juan Burgueño, Sushismita Mondal, Julio Huerta, Ravi Singh, Enrique Autrique, Lorena González-Pérez, José Crossa
Format: Article
Language:English
Published: BMC 2017-07-01
Series:Plant Methods
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13007-017-0212-4
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spelling doaj-969eadd823974f22b9342b97063d66142020-11-24T21:39:01ZengBMCPlant Methods1746-48112017-07-0113112910.1186/s13007-017-0212-4Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image dataAbelardo Montesinos-López0Osval A. Montesinos-López1Jaime Cuevas2Walter A. Mata-López3Juan Burgueño4Sushismita Mondal5Julio Huerta6Ravi Singh7Enrique Autrique8Lorena González-Pérez9José Crossa10Departamento de Matemáticas, Centro Universitario de Ciencias Exactas e Ingenierías (CUCEI), Universidad de GuadalajaraFacultad de Telemática, Universidad de ColimaUniversidad de Quintana RooFacultad Ingeniería Mecánica y Eléctrica, Universidad de ColimaInternational Maize and Wheat Improvement Center (CIMMYT)International Maize and Wheat Improvement Center (CIMMYT)International Maize and Wheat Improvement Center (CIMMYT)International Maize and Wheat Improvement Center (CIMMYT)International Maize and Wheat Improvement Center (CIMMYT)International Maize and Wheat Improvement Center (CIMMYT)International Maize and Wheat Improvement Center (CIMMYT)Abstract Background Modern agriculture uses hyperspectral cameras that provide hundreds of reflectance data at discrete narrow bands in many environments. These bands often cover the whole visible light spectrum and part of the infrared and ultraviolet light spectra. With the bands, vegetation indices are constructed for predicting agronomically important traits such as grain yield and biomass. However, since vegetation indices only use some wavelengths (referred to as bands), we propose using all bands simultaneously as predictor variables for the primary trait grain yield; results of several multi-environment maize (Aguate et al. in Crop Sci 57(5):1–8, 2017) and wheat (Montesinos-López et al. in Plant Methods 13(4):1–23, 2017) breeding trials indicated that using all bands produced better prediction accuracy than vegetation indices. However, until now, these prediction models have not accounted for the effects of genotype × environment (G × E) and band × environment (B × E) interactions incorporating genomic or pedigree information. Results In this study, we propose Bayesian functional regression models that take into account all available bands, genomic or pedigree information, the main effects of lines and environments, as well as G × E and B × E interaction effects. The data set used is comprised of 976 wheat lines evaluated for grain yield in three environments (Drought, Irrigated and Reduced Irrigation). The reflectance data were measured in 250 discrete narrow bands ranging from 392 to 851 nm (nm). The proposed Bayesian functional regression models were implemented using two types of basis: B-splines and Fourier. Results of the proposed Bayesian functional regression models, including all the wavelengths for predicting grain yield, were compared with results from conventional models with and without bands. Conclusions We observed that the models with B × E interaction terms were the most accurate models, whereas the functional regression models (with B-splines and Fourier basis) and the conventional models performed similarly in terms of prediction accuracy. However, the functional regression models are more parsimonious and computationally more efficient because the number of beta coefficients to be estimated is 21 (number of basis), rather than estimating the 250 regression coefficients for all bands. In this study adding pedigree or genomic information did not increase prediction accuracy.http://link.springer.com/article/10.1186/s13007-017-0212-4Hyper-spectral dataGenomic informationGenotype × environment interactionBand × environment interactionVegetation indicesPrediction accuracy
collection DOAJ
language English
format Article
sources DOAJ
author Abelardo Montesinos-López
Osval A. Montesinos-López
Jaime Cuevas
Walter A. Mata-López
Juan Burgueño
Sushismita Mondal
Julio Huerta
Ravi Singh
Enrique Autrique
Lorena González-Pérez
José Crossa
spellingShingle Abelardo Montesinos-López
Osval A. Montesinos-López
Jaime Cuevas
Walter A. Mata-López
Juan Burgueño
Sushismita Mondal
Julio Huerta
Ravi Singh
Enrique Autrique
Lorena González-Pérez
José Crossa
Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data
Plant Methods
Hyper-spectral data
Genomic information
Genotype × environment interaction
Band × environment interaction
Vegetation indices
Prediction accuracy
author_facet Abelardo Montesinos-López
Osval A. Montesinos-López
Jaime Cuevas
Walter A. Mata-López
Juan Burgueño
Sushismita Mondal
Julio Huerta
Ravi Singh
Enrique Autrique
Lorena González-Pérez
José Crossa
author_sort Abelardo Montesinos-López
title Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data
title_short Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data
title_full Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data
title_fullStr Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data
title_full_unstemmed Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data
title_sort genomic bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data
publisher BMC
series Plant Methods
issn 1746-4811
publishDate 2017-07-01
description Abstract Background Modern agriculture uses hyperspectral cameras that provide hundreds of reflectance data at discrete narrow bands in many environments. These bands often cover the whole visible light spectrum and part of the infrared and ultraviolet light spectra. With the bands, vegetation indices are constructed for predicting agronomically important traits such as grain yield and biomass. However, since vegetation indices only use some wavelengths (referred to as bands), we propose using all bands simultaneously as predictor variables for the primary trait grain yield; results of several multi-environment maize (Aguate et al. in Crop Sci 57(5):1–8, 2017) and wheat (Montesinos-López et al. in Plant Methods 13(4):1–23, 2017) breeding trials indicated that using all bands produced better prediction accuracy than vegetation indices. However, until now, these prediction models have not accounted for the effects of genotype × environment (G × E) and band × environment (B × E) interactions incorporating genomic or pedigree information. Results In this study, we propose Bayesian functional regression models that take into account all available bands, genomic or pedigree information, the main effects of lines and environments, as well as G × E and B × E interaction effects. The data set used is comprised of 976 wheat lines evaluated for grain yield in three environments (Drought, Irrigated and Reduced Irrigation). The reflectance data were measured in 250 discrete narrow bands ranging from 392 to 851 nm (nm). The proposed Bayesian functional regression models were implemented using two types of basis: B-splines and Fourier. Results of the proposed Bayesian functional regression models, including all the wavelengths for predicting grain yield, were compared with results from conventional models with and without bands. Conclusions We observed that the models with B × E interaction terms were the most accurate models, whereas the functional regression models (with B-splines and Fourier basis) and the conventional models performed similarly in terms of prediction accuracy. However, the functional regression models are more parsimonious and computationally more efficient because the number of beta coefficients to be estimated is 21 (number of basis), rather than estimating the 250 regression coefficients for all bands. In this study adding pedigree or genomic information did not increase prediction accuracy.
topic Hyper-spectral data
Genomic information
Genotype × environment interaction
Band × environment interaction
Vegetation indices
Prediction accuracy
url http://link.springer.com/article/10.1186/s13007-017-0212-4
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