Genomic selection and genetic gain for nut yield in an Australian macadamia breeding population

Abstract Background Improving yield prediction and selection efficiency is critical for tree breeding. This is vital for macadamia trees with the time from crossing to production of new cultivars being almost a quarter of a century. Genomic selection (GS) is a useful tool in plant breeding, particul...

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Main Authors: Katie M. O’Connor, Ben J. Hayes, Craig M. Hardner, Mobashwer Alam, Robert J. Henry, Bruce L. Topp
Format: Article
Language:English
Published: BMC 2021-05-01
Series:BMC Genomics
Subjects:
Online Access:https://doi.org/10.1186/s12864-021-07694-z
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spelling doaj-6dad0306add04f3cb334965102090a702021-05-23T11:24:36ZengBMCBMC Genomics1471-21642021-05-0122111210.1186/s12864-021-07694-zGenomic selection and genetic gain for nut yield in an Australian macadamia breeding populationKatie M. O’Connor0Ben J. Hayes1Craig M. Hardner2Mobashwer Alam3Robert J. Henry4Bruce L. Topp5Queensland Department of Agriculture and Fisheries, Maroochy Research FacilityQueensland Alliance for Agriculture and Food Innovation, University of QueenslandQueensland Alliance for Agriculture and Food Innovation, University of QueenslandQueensland Alliance for Agriculture and Food Innovation, University of Queensland, Maroochy Research FacilityQueensland Alliance for Agriculture and Food Innovation, University of QueenslandQueensland Alliance for Agriculture and Food Innovation, University of Queensland, Maroochy Research FacilityAbstract Background Improving yield prediction and selection efficiency is critical for tree breeding. This is vital for macadamia trees with the time from crossing to production of new cultivars being almost a quarter of a century. Genomic selection (GS) is a useful tool in plant breeding, particularly with perennial trees, contributing to an increased rate of genetic gain and reducing the length of the breeding cycle. We investigated the potential of using GS methods to increase genetic gain and accelerate selection efficiency in the Australian macadamia breeding program with comparison to traditional breeding methods. This study evaluated the prediction accuracy of GS in a macadamia breeding population of 295 full-sib progeny from 32 families (29 parents, reciprocals combined), along with a subset of parents. Historical yield data for tree ages 5 to 8 years were used in the study, along with a set of 4113 SNP markers. The traits of focus were average nut yield from tree ages 5 to 8 years and yield stability, measured as the standard deviation of yield over these 4 years. GBLUP GS models were used to obtain genomic estimated breeding values for each genotype, with a five-fold cross-validation method and two techniques: prediction across related populations and prediction across unrelated populations. Results Narrow-sense heritability of yield and yield stability was low (h2 = 0.30 and 0.04, respectively). Prediction accuracy for yield was 0.57 for predictions across related populations and 0.14 when predicted across unrelated populations. Accuracy of prediction of yield stability was high (r = 0.79) for predictions across related populations. Predicted genetic gain of yield using GS in related populations was 474 g/year, more than double that of traditional breeding methods (226 g/year), due to the halving of generation length from 8 to 4 years. Conclusions The results of this study indicate that the incorporation of GS for yield into the Australian macadamia breeding program may accelerate genetic gain due to reduction in generation length, though the cost of genotyping appears to be a constraint at present.https://doi.org/10.1186/s12864-021-07694-zHorticulturePlant breedingGenome-based predictionPhenotypeFruit tree
collection DOAJ
language English
format Article
sources DOAJ
author Katie M. O’Connor
Ben J. Hayes
Craig M. Hardner
Mobashwer Alam
Robert J. Henry
Bruce L. Topp
spellingShingle Katie M. O’Connor
Ben J. Hayes
Craig M. Hardner
Mobashwer Alam
Robert J. Henry
Bruce L. Topp
Genomic selection and genetic gain for nut yield in an Australian macadamia breeding population
BMC Genomics
Horticulture
Plant breeding
Genome-based prediction
Phenotype
Fruit tree
author_facet Katie M. O’Connor
Ben J. Hayes
Craig M. Hardner
Mobashwer Alam
Robert J. Henry
Bruce L. Topp
author_sort Katie M. O’Connor
title Genomic selection and genetic gain for nut yield in an Australian macadamia breeding population
title_short Genomic selection and genetic gain for nut yield in an Australian macadamia breeding population
title_full Genomic selection and genetic gain for nut yield in an Australian macadamia breeding population
title_fullStr Genomic selection and genetic gain for nut yield in an Australian macadamia breeding population
title_full_unstemmed Genomic selection and genetic gain for nut yield in an Australian macadamia breeding population
title_sort genomic selection and genetic gain for nut yield in an australian macadamia breeding population
publisher BMC
series BMC Genomics
issn 1471-2164
publishDate 2021-05-01
description Abstract Background Improving yield prediction and selection efficiency is critical for tree breeding. This is vital for macadamia trees with the time from crossing to production of new cultivars being almost a quarter of a century. Genomic selection (GS) is a useful tool in plant breeding, particularly with perennial trees, contributing to an increased rate of genetic gain and reducing the length of the breeding cycle. We investigated the potential of using GS methods to increase genetic gain and accelerate selection efficiency in the Australian macadamia breeding program with comparison to traditional breeding methods. This study evaluated the prediction accuracy of GS in a macadamia breeding population of 295 full-sib progeny from 32 families (29 parents, reciprocals combined), along with a subset of parents. Historical yield data for tree ages 5 to 8 years were used in the study, along with a set of 4113 SNP markers. The traits of focus were average nut yield from tree ages 5 to 8 years and yield stability, measured as the standard deviation of yield over these 4 years. GBLUP GS models were used to obtain genomic estimated breeding values for each genotype, with a five-fold cross-validation method and two techniques: prediction across related populations and prediction across unrelated populations. Results Narrow-sense heritability of yield and yield stability was low (h2 = 0.30 and 0.04, respectively). Prediction accuracy for yield was 0.57 for predictions across related populations and 0.14 when predicted across unrelated populations. Accuracy of prediction of yield stability was high (r = 0.79) for predictions across related populations. Predicted genetic gain of yield using GS in related populations was 474 g/year, more than double that of traditional breeding methods (226 g/year), due to the halving of generation length from 8 to 4 years. Conclusions The results of this study indicate that the incorporation of GS for yield into the Australian macadamia breeding program may accelerate genetic gain due to reduction in generation length, though the cost of genotyping appears to be a constraint at present.
topic Horticulture
Plant breeding
Genome-based prediction
Phenotype
Fruit tree
url https://doi.org/10.1186/s12864-021-07694-z
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