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      Development of Optimized Phenomic Predictors for Efficient Plant Breeding Decisions Using Phenomic-Assisted Selection in Soybean

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          Abstract

          The rate of advancement made in phenomic-assisted breeding methodologies has lagged those of genomic-assisted techniques, which is now a critical component of mainstream cultivar development pipelines. However, advancements made in phenotyping technologies have empowered plant scientists with affordable high-dimensional datasets to optimize the operational efficiencies of breeding programs. Phenomic and seed yield data was collected across six environments for a panel of 292 soybean accessions with varying genetic improvements. Random forest, a machine learning (ML) algorithm, was used to map complex relationships between phenomic traits and seed yield and prediction performance assessed using two cross-validation (CV) scenarios consistent with breeding challenges. To develop a prescriptive sensor package for future high-throughput phenotyping deployment to meet breeding objectives, feature importance in tandem with a genetic algorithm (GA) technique allowed selection of a subset of phenotypic traits, specifically optimal wavebands. The results illuminated the capability of fusing ML and optimization techniques to identify a suite of in-season phenomic traits that will allow breeding programs to decrease the dependence on resource-intensive end-season phenotyping (e.g., seed yield harvest). While we illustrate with soybean, this study establishes a template for deploying multitrait phenomic prediction that is easily amendable to any crop species and any breeding objective.

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          Random Forests

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            Building Predictive Models inRUsing thecaretPackage

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              Efficient methods to compute genomic predictions.

              P VanRaden (2008)
              Efficient methods for processing genomic data were developed to increase reliability of estimated breeding values and to estimate thousands of marker effects simultaneously. Algorithms were derived and computer programs tested with simulated data for 2,967 bulls and 50,000 markers distributed randomly across 30 chromosomes. Estimation of genomic inbreeding coefficients required accurate estimates of allele frequencies in the base population. Linear model predictions of breeding values were computed by 3 equivalent methods: 1) iteration for individual allele effects followed by summation across loci to obtain estimated breeding values, 2) selection index including a genomic relationship matrix, and 3) mixed model equations including the inverse of genomic relationships. A blend of first- and second-order Jacobi iteration using 2 separate relaxation factors converged well for allele frequencies and effects. Reliability of predicted net merit for young bulls was 63% compared with 32% using the traditional relationship matrix. Nonlinear predictions were also computed using iteration on data and nonlinear regression on marker deviations; an additional (about 3%) gain in reliability for young bulls increased average reliability to 66%. Computing times increased linearly with number of genotypes. Estimation of allele frequencies required 2 processor days, and genomic predictions required <1 d per trait, and traits were processed in parallel. Information from genotyping was equivalent to about 20 daughters with phenotypic records. Actual gains may differ because the simulation did not account for linkage disequilibrium in the base population or selection in subsequent generations.
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                Author and article information

                Contributors
                Journal
                Plant Phenomics
                Plant Phenomics
                PLANTPHENOMICS
                Plant Phenomics
                AAAS
                2643-6515
                2019
                28 July 2019
                : 2019
                : 5809404
                Affiliations
                1Department of Agronomy, Iowa State University, Ames, IA, USA
                2Department of Electrical Engineering, Iowa State University, Ames, IA, USA
                3Department of Mechanical Engineering, Iowa State University, Ames, IA, USA
                Article
                10.34133/2019/5809404
                7706298
                33313530
                85e9cd4c-f080-4e40-9ad3-8eb6ea30e6af
                Copyright © 2019 Kyle Parmley et al.

                Exclusive licensee Nanjing Agricultural University. Distributed under a Creative Commons Attribution License (CC BY 4.0).

                History
                : 5 May 2019
                : 6 July 2019
                Funding
                Funded by: Soybean Association
                Funded by: Monsanto Chair in Soybean Breeding
                Categories
                Research Article

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