2016
DOI: 10.2135/cropsci2015.08.0512
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Use of Crop Growth Models with Whole‐Genome Prediction: Application to a Maize Multienvironment Trial

Abstract: High throughput genotyping, phenotyping, and envirotyping applied within plant breeding multienvironment trials (METs) provide the data foundations for selection and tackling genotype × environment interactions (GEIs) through whole‐genome prediction (WGP). Crop growth models (CGM) can be used to enable predictions for yield and other traits for different genotypes and environments within a MET if genetic variation for the influential traits and their responses to environmental variation can be incorporated int… Show more

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Cited by 162 publications
(166 citation statements)
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“…Endelman et al (2018) estimated prediction accuracy at 0.53 for yield using only the data for the Wisconsin location. Other promising directions include using environmental variables as covariates in the prediction (Heslot et al, 2014;Jarquín et al, 2014) or combining crop development models with whole-genome prediction (Technow et al, 2015;Cooper et al, 2016). Other promising directions include using environmental variables as covariates in the prediction (Heslot et al, 2014;Jarquín et al, 2014) or combining crop development models with whole-genome prediction (Technow et al, 2015;Cooper et al, 2016).…”
Section: Discussionmentioning
confidence: 99%
“…Endelman et al (2018) estimated prediction accuracy at 0.53 for yield using only the data for the Wisconsin location. Other promising directions include using environmental variables as covariates in the prediction (Heslot et al, 2014;Jarquín et al, 2014) or combining crop development models with whole-genome prediction (Technow et al, 2015;Cooper et al, 2016). Other promising directions include using environmental variables as covariates in the prediction (Heslot et al, 2014;Jarquín et al, 2014) or combining crop development models with whole-genome prediction (Technow et al, 2015;Cooper et al, 2016).…”
Section: Discussionmentioning
confidence: 99%
“…As the first step in the analysis, combinations of year (2013 and 2014) ´ location (Marion and Sciota) ´ N treatment (HN and LN) were considered as eight environments (siteyears). The method has been used by Cooper et al (2016) and Gaffney et al (2015) to quantify total soil moisture available to the crop during the season. This model allowed for assessment of the hybrid ´ environment interaction (which included year, location, and N treatment effects).…”
Section: Methodsmentioning
confidence: 99%
“…This comprehensive approach combines experimental data, physiological understanding of a trait from multiple genotypes, model simulation, and breeding trial validation to determine what traits to measure (Hammer et al, 2016). The current cutting edge of phenomics/CGM application in breeding is best described by the CGM-whole-genome prediction approach of Cooper et al (2016), who show how a relatively simple CGM can be inserted between genomic and phenomic data to impose biological pathway constraints to the statistical prediction models.…”
Section: Crop and Plant Modelingmentioning
confidence: 99%