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High-Throughput Phenotyping and Random Regression Models Reveal Temporal Genetic Control of Soybean Biomass Production

Understanding temporal accumulation of soybean above-ground biomass (AGB) has the potential to contribute to yield gains and the development of stress-resilient cultivars. Our main objectives were to develop a high-throughput phenotyping method to predict soybean AGB over time and to reveal its temp...

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Autores principales: Freitas Moreira, Fabiana, Rojas de Oliveira, Hinayah, Lopez, Miguel Angel, Abughali, Bilal Jamal, Gomes, Guilherme, Cherkauer, Keith Aric, Brito, Luiz Fernando, Rainey, Katy Martin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8446606/
https://www.ncbi.nlm.nih.gov/pubmed/34539708
http://dx.doi.org/10.3389/fpls.2021.715983
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author Freitas Moreira, Fabiana
Rojas de Oliveira, Hinayah
Lopez, Miguel Angel
Abughali, Bilal Jamal
Gomes, Guilherme
Cherkauer, Keith Aric
Brito, Luiz Fernando
Rainey, Katy Martin
author_facet Freitas Moreira, Fabiana
Rojas de Oliveira, Hinayah
Lopez, Miguel Angel
Abughali, Bilal Jamal
Gomes, Guilherme
Cherkauer, Keith Aric
Brito, Luiz Fernando
Rainey, Katy Martin
author_sort Freitas Moreira, Fabiana
collection PubMed
description Understanding temporal accumulation of soybean above-ground biomass (AGB) has the potential to contribute to yield gains and the development of stress-resilient cultivars. Our main objectives were to develop a high-throughput phenotyping method to predict soybean AGB over time and to reveal its temporal quantitative genomic properties. A subset of the SoyNAM population (n = 383) was grown in multi-environment trials and destructive AGB measurements were collected along with multispectral and RGB imaging from 27 to 83 days after planting (DAP). We used machine-learning methods for phenotypic prediction of AGB, genomic prediction of breeding values, and genome-wide association studies (GWAS) based on random regression models (RRM). RRM enable the study of changes in genetic variability over time and further allow selection of individuals when aiming to alter the general response shapes over time. AGB phenotypic predictions were high (R(2) = 0.92–0.94). Narrow-sense heritabilities estimated over time ranged from low to moderate (from 0.02 at 44 DAP to 0.28 at 33 DAP). AGB from adjacent DAP had highest genetic correlations compared to those DAP further apart. We observed high accuracies and low biases of prediction indicating that genomic breeding values for AGB can be predicted over specific time intervals. Genomic regions associated with AGB varied with time, and no genetic markers were significant in all time points evaluated. Thus, RRM seem a powerful tool for modeling the temporal genetic architecture of soybean AGB and can provide useful information for crop improvement. This study provides a basis for future studies to combine phenotyping and genomic analyses to understand the genetic architecture of complex longitudinal traits in plants.
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spelling pubmed-84466062021-09-18 High-Throughput Phenotyping and Random Regression Models Reveal Temporal Genetic Control of Soybean Biomass Production Freitas Moreira, Fabiana Rojas de Oliveira, Hinayah Lopez, Miguel Angel Abughali, Bilal Jamal Gomes, Guilherme Cherkauer, Keith Aric Brito, Luiz Fernando Rainey, Katy Martin Front Plant Sci Plant Science Understanding temporal accumulation of soybean above-ground biomass (AGB) has the potential to contribute to yield gains and the development of stress-resilient cultivars. Our main objectives were to develop a high-throughput phenotyping method to predict soybean AGB over time and to reveal its temporal quantitative genomic properties. A subset of the SoyNAM population (n = 383) was grown in multi-environment trials and destructive AGB measurements were collected along with multispectral and RGB imaging from 27 to 83 days after planting (DAP). We used machine-learning methods for phenotypic prediction of AGB, genomic prediction of breeding values, and genome-wide association studies (GWAS) based on random regression models (RRM). RRM enable the study of changes in genetic variability over time and further allow selection of individuals when aiming to alter the general response shapes over time. AGB phenotypic predictions were high (R(2) = 0.92–0.94). Narrow-sense heritabilities estimated over time ranged from low to moderate (from 0.02 at 44 DAP to 0.28 at 33 DAP). AGB from adjacent DAP had highest genetic correlations compared to those DAP further apart. We observed high accuracies and low biases of prediction indicating that genomic breeding values for AGB can be predicted over specific time intervals. Genomic regions associated with AGB varied with time, and no genetic markers were significant in all time points evaluated. Thus, RRM seem a powerful tool for modeling the temporal genetic architecture of soybean AGB and can provide useful information for crop improvement. This study provides a basis for future studies to combine phenotyping and genomic analyses to understand the genetic architecture of complex longitudinal traits in plants. Frontiers Media S.A. 2021-09-03 /pmc/articles/PMC8446606/ /pubmed/34539708 http://dx.doi.org/10.3389/fpls.2021.715983 Text en Copyright © 2021 Moreira, Oliveira, Lopez, Abughali, Gomes, Cherkauer, Brito and Rainey. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Plant Science
Freitas Moreira, Fabiana
Rojas de Oliveira, Hinayah
Lopez, Miguel Angel
Abughali, Bilal Jamal
Gomes, Guilherme
Cherkauer, Keith Aric
Brito, Luiz Fernando
Rainey, Katy Martin
High-Throughput Phenotyping and Random Regression Models Reveal Temporal Genetic Control of Soybean Biomass Production
title High-Throughput Phenotyping and Random Regression Models Reveal Temporal Genetic Control of Soybean Biomass Production
title_full High-Throughput Phenotyping and Random Regression Models Reveal Temporal Genetic Control of Soybean Biomass Production
title_fullStr High-Throughput Phenotyping and Random Regression Models Reveal Temporal Genetic Control of Soybean Biomass Production
title_full_unstemmed High-Throughput Phenotyping and Random Regression Models Reveal Temporal Genetic Control of Soybean Biomass Production
title_short High-Throughput Phenotyping and Random Regression Models Reveal Temporal Genetic Control of Soybean Biomass Production
title_sort high-throughput phenotyping and random regression models reveal temporal genetic control of soybean biomass production
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8446606/
https://www.ncbi.nlm.nih.gov/pubmed/34539708
http://dx.doi.org/10.3389/fpls.2021.715983
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