Quantitative Genomic Dissection of Soybean Yield Components

Soybean is a crop of major economic importance with low rates of genetic gains for grain yield compared to other field crops. A deeper understanding of the genetic architecture of yield components may enable better ways to tackle the breeding challenges. Key yield components include the total number...

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Main Authors: Alencar Xavier, Katy M. Rainey
Format: Article
Language:English
Published: Oxford University Press 2020-02-01
Series:G3: Genes, Genomes, Genetics
Subjects:
gxe
Online Access:http://g3journal.org/lookup/doi/10.1534/g3.119.400896
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spelling doaj-bcffbb09bfe74f3ba2d822e9c64b65cf2021-07-02T07:42:41ZengOxford University PressG3: Genes, Genomes, Genetics2160-18362020-02-0110266567510.1534/g3.119.40089624Quantitative Genomic Dissection of Soybean Yield ComponentsAlencar XavierKaty M. RaineySoybean is a crop of major economic importance with low rates of genetic gains for grain yield compared to other field crops. A deeper understanding of the genetic architecture of yield components may enable better ways to tackle the breeding challenges. Key yield components include the total number of pods, nodes and the ratio pods per node. We evaluated the SoyNAM population, containing approximately 5600 lines from 40 biparental families that share a common parent, in 6 environments distributed across 3 years. The study indicates that the yield components under evaluation have low heritability, a reasonable amount of epistatic control, and partially oligogenic architecture: 18 quantitative trait loci were identified across the three yield components using multi-approach signal detection. Genetic correlation between yield and yield components was highly variable from family-to-family, ranging from -0.2 to 0.5. The genotype-by-environment correlation of yield components ranged from -0.1 to 0.4 within families. The number of pods can be utilized for indirect selection of yield. The selection of soybean for enhanced yield components can be successfully performed via genomic prediction, but the challenging data collections necessary to recalibrate models over time makes the introgression of QTL a potentially more feasible breeding strategy. The genomic prediction of yield components was relatively accurate across families, but less accurate predictions were obtained from within family predictions and predicting families not observed included in the calibration set.http://g3journal.org/lookup/doi/10.1534/g3.119.400896soybeangenomic predictiongwasgxeyieldyield componentsheritabilitysoynam
collection DOAJ
language English
format Article
sources DOAJ
author Alencar Xavier
Katy M. Rainey
spellingShingle Alencar Xavier
Katy M. Rainey
Quantitative Genomic Dissection of Soybean Yield Components
G3: Genes, Genomes, Genetics
soybean
genomic prediction
gwas
gxe
yield
yield components
heritability
soynam
author_facet Alencar Xavier
Katy M. Rainey
author_sort Alencar Xavier
title Quantitative Genomic Dissection of Soybean Yield Components
title_short Quantitative Genomic Dissection of Soybean Yield Components
title_full Quantitative Genomic Dissection of Soybean Yield Components
title_fullStr Quantitative Genomic Dissection of Soybean Yield Components
title_full_unstemmed Quantitative Genomic Dissection of Soybean Yield Components
title_sort quantitative genomic dissection of soybean yield components
publisher Oxford University Press
series G3: Genes, Genomes, Genetics
issn 2160-1836
publishDate 2020-02-01
description Soybean is a crop of major economic importance with low rates of genetic gains for grain yield compared to other field crops. A deeper understanding of the genetic architecture of yield components may enable better ways to tackle the breeding challenges. Key yield components include the total number of pods, nodes and the ratio pods per node. We evaluated the SoyNAM population, containing approximately 5600 lines from 40 biparental families that share a common parent, in 6 environments distributed across 3 years. The study indicates that the yield components under evaluation have low heritability, a reasonable amount of epistatic control, and partially oligogenic architecture: 18 quantitative trait loci were identified across the three yield components using multi-approach signal detection. Genetic correlation between yield and yield components was highly variable from family-to-family, ranging from -0.2 to 0.5. The genotype-by-environment correlation of yield components ranged from -0.1 to 0.4 within families. The number of pods can be utilized for indirect selection of yield. The selection of soybean for enhanced yield components can be successfully performed via genomic prediction, but the challenging data collections necessary to recalibrate models over time makes the introgression of QTL a potentially more feasible breeding strategy. The genomic prediction of yield components was relatively accurate across families, but less accurate predictions were obtained from within family predictions and predicting families not observed included in the calibration set.
topic soybean
genomic prediction
gwas
gxe
yield
yield components
heritability
soynam
url http://g3journal.org/lookup/doi/10.1534/g3.119.400896
work_keys_str_mv AT alencarxavier quantitativegenomicdissectionofsoybeanyieldcomponents
AT katymrainey quantitativegenomicdissectionofsoybeanyieldcomponents
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