Use este identificador para citar ou linkar para este item: http://www.alice.cnptia.embrapa.br/alice/handle/doc/1159688
Título: Genome-wide family prediction unveils molecular mechanisms underlying the regulation of agronomic traits in Urochloa ruziziensis.
Autoria: MARTINS, F. B.
AONO, A. H.
MORAES, A. da C. L.
FERREIRA, R. C. U.
VILELA, M. de M.
PESSOA FILHO, M. A. C. de P.
RODRIGUES-MOTTA, M.
SIMEÃO, R. M.
SOUZA, A. P. de
Afiliação: FELIPE BITENCOURT MARTINS, UNIVERSIDADE DE CAMPINAS; ALEXANDRE HILD AONO, UNIVERSIDADE DE CAMPINAS; ALINE DA COSTA LIMA MORAES, UNIVERSIDADE DE CAMPINAS; REBECCA CAROLINE ULBRICHT FERREIRA, UNIVERSIDADE DE CAMPINAS; MARIANE DE MENDONCA VILELA, CNPGC; MARCO AURÉLIO CALDAS DE PINHO PESSO, CPAC; MARIANA RODRIGUES-MOTTA, UNIVERSIDADE DE CAMPINAS; ROSANGELA MARIA SIMEAO, CNPGC; ANETE PEREIRA DE SOUZA, UNIVERSIDADE DE CAMPINAS.
Ano de publicação: 2023
Referência: Frontiers in Plant Science, v. 14, 2023.
Conteúdo: Tropical forage grasses, particularly those belonging to the Urochloa genus, play a crucial role in cattle production and serve as the main food source for animals in tropical and subtropical regions. The majority of these species are apomictic and tetraploid, highlighting the significance of U. ruziziensis, a sexual diploid species that can be tetraploidized for use in interspecific crosses with apomictic species. As a means to support breeding programs, our study investigates the feasibility of genome-wide family prediction in U. ruziziensis families to predict agronomic traits. Fifty half-sibling families were assessed for green matter yield, dry matter yield, regrowth capacity, leaf dry matter, and stem dry matter across different clippings established in contrasting seasons with varying available water capacity. Genotyping was performed using a genotyping-by-sequencing approach based on DNA samples from family pools. In addition to conventional genomic prediction methods, machine learning and feature selection algorithms were employed to reduce the necessary number of markers for prediction and enhance predictive accuracy across phenotypes. To explore the regulation of agronomic traits, our study evaluated the significance of selected markers for prediction using a tree-based approach, potentially linking these regions to quantitative trait loci (QTLs). In a multiomic approach, genes from the species transcriptome were mapped and correlated to those markers. A gene coexpression network was modeled with gene expression estimates from a diverse set of U. ruziziensis genotypes, enabling a comprehensive investigation of molecular mechanisms associated with these regions. The heritabilities of the evaluated traits ranged from 0.44 to 0.92. A total of 28,106 filtered SNPs were used to predict phenotypic measurements, achieving a mean predictive ability of 0.762. By employing feature selection techniques, we could reduce the dimensionality of SNP datasets, revealing potential genotype-phenotype associations. The functional annotation of genes near these markers revealed associations with auxin transport and biosynthesis of lignin, flavonol, and folic acid. Further exploration with the gene coexpression network uncovered associations with DNA metabolism, stress response, and circadian rhythm. These genes and regions represent important targets for expanding our understanding of the metabolic regulation of agronomic traits and offer valuable insights applicable to species breeding. Our work represents an innovative contribution to molecular breeding techniques for tropical forages, presenting a viable marker-assisted breeding approach and identifying target regions for future molecular studies on these agronomic traits.
NAL Thesaurus: Forage grasses
Palavras-chave: Feature selection
Gene coexpression networks
Genomic prediction
Machine learning
Major importance markers
RNA-Seq
Digital Object Identifier: https://doi.org/10.3389/fpls.2023.1303417
Notas: Na publicação: Marco Pessoa-Filho.
Tipo do material: Artigo de periódico
Acesso: openAccess
Aparece nas coleções:Artigo em periódico indexado (CNPGC)

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