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Registros recuperados : 11 | |
5. | | SILVA-LOBO, V. L.; AGUIAR, J. T.; MARTINS, B. E. M.; FILIPPI, M. C.; PRABHU, A. S. Carvão da folha de arroz, causado por Entyloma oryzae, em várzeas tropicais. Tropical Plant Pathology, Brasília, DF, v. 36, p. 923, ago. 2011. Suplemento, ref. 1319. Edição dos Resumos do 44 Congresso Brasileiro de Fitopatologia, Bento Gonçalves, ago. 2011. 1 CD-ROM. Biblioteca(s): Embrapa Arroz e Feijão. |
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6. | | AGUIAR, J. T. de; LOBO, V. L. da S.; PRABHU, A. S.; COLOMBARI FILHO, J. M.; MORAIS, O. P. de. Resistência à queima da bainha em genótipos de arroz em condições de casa de vegetação. In: CONGRESSO BRASILEIRO DE MELHORAMENTO DE PLANTAS, 7., 2013, Uberlândia. Variedade melhorada: a força da nossa agricultura: anais. Viçosa, MG: SBMP, 2013. p. 941-944. Biblioteca(s): Embrapa Arroz e Feijão. |
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7. | | AGUIAR, J. T. de; D'AFONSECA, D. S.; SILVA, S. C. da; HEINEMANN, A. B.; LOBO JUNIOR, M. Validação de dados obtidos via satélite para estimativa de variáveis climatológicas em diferentes regiões brasileiras. In: SEMINÁRIO JOVENS TALENTOS, 8., 2014, Santo Antônio de Goiás. Coletânea dos resumos apresentados. Santo Antônio de Goiás: Embrapa Arroz e Feijão, 2014. p. 34. (Embrapa Arroz e Feijão. Documentos, 306). Biblioteca(s): Embrapa Arroz e Feijão. |
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8. | | MORAIS JÚNIOR, O. P.; BRESEGHELLO, F.; DUARTE, J. B.; COELHO, A. S. G.; BORBA, T. C. O.; AGUIAR, J. T.; NEVES, P. C. F.; MORAIS, O. P. Assessing prediction models for different traits in a rice population derived from a Recurrent Selection Program. Crop Science, v. 58, n. 6, p. 2347-2359, Nov./Dec. 2018. Biblioteca(s): Embrapa Arroz e Feijão. |
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9. | | AGUIAR, J. T. de; MARTINS, B. E. de M.; FILIPPI, M. C. C. de; PRABHU, A. S.; LOBO, V. L. da S. Avaliação de carvão da folha (Entyloma oryzae) em genótipos de arroz irrigado. In: SEMINÁRIO JOVENS TALENTOS, 6., 2012, Santo Antônio de Goiás. Resumos apresentados. Santo Antônio de Goiás: Embrapa Arroz e Feijão, 2012. p. 19. (Embrapa Arroz e Feijão. Documentos, 275). Biblioteca(s): Embrapa Arroz e Feijão. |
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11. | | MORAIS JÚNIOR, O. P.; DUARTE, J. B.; BRESEGHELLO, F.; COELHO, A. S. G.; BORBA, T. C. O.; AGUIAR, J. T.; NEVES, P. C. F.; MORAIS, O. P. Relevance of additive and non-additive genetic relatedness for genomic prediction in rice population under recurrent selection breeding. Genetics and Molecular Research, v. 16, n. 4, gmr16039849, Dec. 2017. Biblioteca(s): Embrapa Arroz e Feijão. |
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Registros recuperados : 11 | |
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Registro Completo
Biblioteca(s): |
Embrapa Arroz e Feijão. |
Data corrente: |
26/01/2018 |
Data da última atualização: |
26/01/2018 |
Tipo da produção científica: |
Artigo em Periódico Indexado |
Circulação/Nível: |
A - 2 |
Autoria: |
MORAIS JÚNIOR, O. P.; DUARTE, J. B.; BRESEGHELLO, F.; COELHO, A. S. G.; BORBA, T. C. O.; AGUIAR, J. T.; NEVES, P. C. F.; MORAIS, O. P. |
Afiliação: |
ODILON PEIXOTO MORAIS JUNIOR; JOAO BATISTA DUARTE, UFG; FLAVIO BRESEGHELLO, CNPAF; ALEXANDRE S. G. COELHO, UFG; TEREZA CRISTINA DE OLIVEIRA BORBA, CNPAF; JORDENE T. AGUIAR; PERICLES DE CARVALHO FERREIRA NEVES, CNPAF; ORLANDO PEIXOTO DE MORAIS, CNPAF. |
Título: |
Relevance of additive and non-additive genetic relatedness for genomic prediction in rice population under recurrent selection breeding. |
Ano de publicação: |
2017 |
Fonte/Imprenta: |
Genetics and Molecular Research, v. 16, n. 4, gmr16039849, Dec. 2017. |
ISSN: |
1676-5680 |
DOI: |
10.4238/gmr16039849 |
Idioma: |
Inglês |
Conteúdo: |
In genomic recurrent selection programs of self-pollinated crops, additive genetic effects (breeding values) are effectively relevant for selection of superior progenies as new parents. However, considering additive and nonadditive genetic effects can improve the prediction of genome-enhanced breeding values (GEBV) of progenies, for quantitative traits. In this study, we assessed the magnitude of additive and nonadditive genetic variances for eight key traits in a rice population under recurrent selection, using marker-based relationship matrices. We then assessed the goodness-to-fit, bias, stability and accuracy of prediction for breeding values and total (additive plus nonadditive) genetic values, in five genomic best linear unbiased prediction (GBLUP) models, ignoring or not nonadditive genetic effects. The models were compared using 6174 single nucleotide polymorphisms (SNP) markers from 174 S1:3 progenies evaluated in field yield trial. We found dominance effects accounting for a substantial proportion of the total genetic variance for the key traits in rice, especially for days to flowering. In average of the traits, the component of variance additive, dominance, and epistatic contributed to about 34%, 14% and 9% for phenotypic variance. Additive genomic models, ignoring nonadditive genetic effects, showed better fit to the data and lower bias, in addition to greater stability and accuracy for predict GEBV of progenies. These results improve our understanding of the genetic architecture of the key traits in rice, evaluated in early-generation testing. Clearly, this study highlighted the advantages of additive models using genome-wide information, for genomic prediction applied to recurrent selection in a self-pollinated crop. MenosIn genomic recurrent selection programs of self-pollinated crops, additive genetic effects (breeding values) are effectively relevant for selection of superior progenies as new parents. However, considering additive and nonadditive genetic effects can improve the prediction of genome-enhanced breeding values (GEBV) of progenies, for quantitative traits. In this study, we assessed the magnitude of additive and nonadditive genetic variances for eight key traits in a rice population under recurrent selection, using marker-based relationship matrices. We then assessed the goodness-to-fit, bias, stability and accuracy of prediction for breeding values and total (additive plus nonadditive) genetic values, in five genomic best linear unbiased prediction (GBLUP) models, ignoring or not nonadditive genetic effects. The models were compared using 6174 single nucleotide polymorphisms (SNP) markers from 174 S1:3 progenies evaluated in field yield trial. We found dominance effects accounting for a substantial proportion of the total genetic variance for the key traits in rice, especially for days to flowering. In average of the traits, the component of variance additive, dominance, and epistatic contributed to about 34%, 14% and 9% for phenotypic variance. Additive genomic models, ignoring nonadditive genetic effects, showed better fit to the data and lower bias, in addition to greater stability and accuracy for predict GEBV of progenies. These results improve our understanding of the ge... Mostrar Tudo |
Palavras-Chave: |
GBLUP models; Genetic architecture; Predictive accuracy; Variance components. |
Thesagro: |
Arroz; Melhoramento genético vegetal; Oryza sativa; Seleção recorrente. |
Thesaurus NAL: |
Plant breeding; quantitative traits; Rice. |
Categoria do assunto: |
G Melhoramento Genético |
URL: |
https://ainfo.cnptia.embrapa.br/digital/bitstream/item/171723/1/CNPAF-2017-gmr-opmj.pdf
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Marc: |
LEADER 02868naa a2200361 a 4500 001 2086472 005 2018-01-26 008 2017 bl uuuu u00u1 u #d 022 $a1676-5680 024 7 $a10.4238/gmr16039849$2DOI 100 1 $aMORAIS JÚNIOR, O. P. 245 $aRelevance of additive and non-additive genetic relatedness for genomic prediction in rice population under recurrent selection breeding.$h[electronic resource] 260 $c2017 520 $aIn genomic recurrent selection programs of self-pollinated crops, additive genetic effects (breeding values) are effectively relevant for selection of superior progenies as new parents. However, considering additive and nonadditive genetic effects can improve the prediction of genome-enhanced breeding values (GEBV) of progenies, for quantitative traits. In this study, we assessed the magnitude of additive and nonadditive genetic variances for eight key traits in a rice population under recurrent selection, using marker-based relationship matrices. We then assessed the goodness-to-fit, bias, stability and accuracy of prediction for breeding values and total (additive plus nonadditive) genetic values, in five genomic best linear unbiased prediction (GBLUP) models, ignoring or not nonadditive genetic effects. The models were compared using 6174 single nucleotide polymorphisms (SNP) markers from 174 S1:3 progenies evaluated in field yield trial. We found dominance effects accounting for a substantial proportion of the total genetic variance for the key traits in rice, especially for days to flowering. In average of the traits, the component of variance additive, dominance, and epistatic contributed to about 34%, 14% and 9% for phenotypic variance. Additive genomic models, ignoring nonadditive genetic effects, showed better fit to the data and lower bias, in addition to greater stability and accuracy for predict GEBV of progenies. These results improve our understanding of the genetic architecture of the key traits in rice, evaluated in early-generation testing. Clearly, this study highlighted the advantages of additive models using genome-wide information, for genomic prediction applied to recurrent selection in a self-pollinated crop. 650 $aPlant breeding 650 $aquantitative traits 650 $aRice 650 $aArroz 650 $aMelhoramento genético vegetal 650 $aOryza sativa 650 $aSeleção recorrente 653 $aGBLUP models 653 $aGenetic architecture 653 $aPredictive accuracy 653 $aVariance components 700 1 $aDUARTE, J. B. 700 1 $aBRESEGHELLO, F. 700 1 $aCOELHO, A. S. G. 700 1 $aBORBA, T. C. O. 700 1 $aAGUIAR, J. T. 700 1 $aNEVES, P. C. F. 700 1 $aMORAIS, O. P. 773 $tGenetics and Molecular Research$gv. 16, n. 4, gmr16039849, Dec. 2017.
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Embrapa Arroz e Feijão (CNPAF) |
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