Please use this identifier to cite or link to this item: http://www.alice.cnptia.embrapa.br/alice/handle/doc/1177470
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dc.contributor.authorEVANGELISTA, J. S. P. C.
dc.contributor.authorDIAS, K. O. das G.
dc.contributor.authorPASTINA, M. M.
dc.contributor.authorCHAVES, S.
dc.contributor.authorGUIMARAES, L. J. M.
dc.contributor.authorHIDALGO, J.
dc.contributor.authorGARCIA-ABADILLO, J.
dc.contributor.authorPERSA, R.
dc.contributor.authorQUEIROZ, V. A. V.
dc.contributor.authorSILVA, D. D. da
dc.contributor.authorBHERING, L. L.
dc.contributor.authorJARQUIN, D.
dc.date.accessioned2025-07-24T11:48:14Z-
dc.date.available2025-07-24T11:48:14Z-
dc.date.created2025-07-24
dc.date.issued2025
dc.identifier.citationFrontiers in Genetics, v. 16, 1475452, 2025.
dc.identifier.urihttp://www.alice.cnptia.embrapa.br/alice/handle/doc/1177470-
dc.descriptionIn Brazil, disease outbreaks in plant cultivars are common in tropical zones. For example, the fungus Fusarium verticillioides produces mycotoxins called fumonisins (FUMO) which are harmful to human and animal health. Besides the genetic component, the expression of this polygenic trait is regulated by interactions between genes and environmental factors (G × E). Genomic selection (GS) emerges as a promising approach to address the influence of multiple loci on resistance. We examined different manners to conduct the prediction of FUMO contamination using genomic and pedigree data, and combinations of these two via the single step model (B-matrix) which also offers the possibility of increasing training set sizes. This is the first study to apply the B-matrix approach for predicting FUMO in tropical maize breeding programs. Our research introduced a cross-validation approach to optimize the hyper-parameter w, which represents the fraction of total additive variance captured by the markers. We demonstrated the importance of selecting optimal w by environment in unbalanced datasets. A total of 13 predictive models considering General Combining Ability (GCA) and Specific Combining Ability (SCA) effects, resulted from five linear predictors and three different covariance structures including the single-step approach. Two crossvalidation scenarios were considered to evaluate the model’s proficiency: CV1 simulated the prediction of completely untested hybrids, where the individuals in the validation set had no phenotypic records in the training set; and CV2 simulated the prediction of partially tested hybrids, where individuals had been evaluated in some environments but not in the target environment. Results showed that using the B-matrix in the five tested linear models increased the predictive ability compared to pedigree or genomic information. Under CV1, increasing training set sizes exhibit superior predictive accuracy. On the other hand, under CV2 the advantages of increasing the training set size are unclear and the improvements are due to better covariance structures. These insights can be applied to plant breeding programs where the GCA, SCA, and G × E interactions are of interest and pedigree information is accessible, but constraints related to genotyping costs for the entire population exist
dc.language.isoeng
dc.rightsopenAccess
dc.subjectFumonisina
dc.subjectInteração genótipo-ambiente
dc.titleOptimizing the single-step model for predicting fumonisins resistance in maize hybrids accounting for the genotype-by-environment interaction.
dc.typeArtigo de periódico
dc.subject.thesagroMelhoramento Vegetal
dc.subject.thesagroMilho
dc.subject.thesagroZea Mays
dc.subject.thesagroResistência
dc.subject.thesagroDoença de Planta
riaa.ainfo.id1177470
riaa.ainfo.lastupdate2025-07-24
dc.identifier.doihttps://doi.org/10.3389/fgene.2025.1475452
dc.contributor.institutionJENIFFER SANTANA PINTO COELHO EVANGELISTA, UNIVERSIDADE FEDERAL DE VIÇOSA; KAIO OLIMPO DAS GRAÇAS DIAS, UNIVERSIDADE FEDERAL DE VIÇOSA; MARIA MARTA PASTINA, CNPMS; SAULO CHAVES, ESCOLA SUPERIOR DE AGRICULTURA LUIZ DE QUEIROZ; LAURO JOSE MOREIRA GUIMARAES, CNPMS; JORGE HIDALGO, UNIVERSITY OF GEORGIA; JULIAN GARCIA-ABADILLO, UNIVERSIDAD POLITÉCNICA DE MADRID; REYNA PERSA, UNIVERSITY OF FLORIDA; VALERIA APARECIDA VIEIRA QUEIROZ, CNPMS; DAGMA DIONISIA DA SILVA ARAUJO, CNPMS; LEONARDO LOPES BHERING, UNIVERSIDADE FEDERAL DE VIÇOSA; DIEGO JARQUIN, UNIVERSITY OF FLORIDA.
Appears in Collections:Artigo em periódico indexado (CNPMS)

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