Abstract

BackgroundMost quantitative traits are controlled by multiple quantitative trait loci (QTL). The contribution of each locus may be negligible but the collective contribution of all loci is usually significant. Genome selection that uses markers of the entire genome to predict the genomic values of individual plants or animals can be more efficient than selection on phenotypic values and pedigree information alone for genetic improvement. When a quantitative trait is contributed by epistatic effects, using all markers (main effects) and marker pairs (epistatic effects) to predict the genomic values of plants can achieve the maximum efficiency for genetic improvement.ResultsIn this study, we created 126 recombinant inbred lines of soybean and genotyped 80 makers across the genome. We applied the genome selection technique to predict the genomic value of somatic embryo number (a quantitative trait) for each line. Cross validation analysis showed that the squared correlation coefficient between the observed and predicted embryo numbers was 0.33 when only main (additive) effects were used for prediction. When the interaction (epistatic) effects were also included in the model, the squared correlation coefficient reached 0.78.ConclusionsThis study provided an excellent example for the application of genome selection to plant breeding.

Highlights

  • Most quantitative traits are controlled by multiple quantitative trait loci (QTL)

  • It is effective for genetic improvement of quantitative traits that are controlled by multiple quantitative trait loci (QTL)

  • This study provides another example of successful use of cross validation for genome selection

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Summary

Introduction

Most quantitative traits are controlled by multiple quantitative trait loci (QTL). Genome selection that uses markers of the entire genome to predict the genomic values of individual plants or animals can be more efficient than selection on phenotypic values and pedigree information alone for genetic improvement. When a quantitative trait is contributed by epistatic effects, using all markers (main effects) and marker pairs (epistatic effects) to predict the genomic values of plants can achieve the maximum efficiency for genetic improvement. Genome selection refers to a method for genomic value prediction using markers of the entire genome [1,2] It is effective for genetic improvement of quantitative traits that are controlled by multiple quantitative trait loci (QTL). Cross validation can help us determine the optimal number of QTL included in the model to maximize the efficiency of genome selection

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