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Biblioteca(s): |
Embrapa Agroindústria Tropical; Embrapa Agropecuária Oeste; Embrapa Amazônia Oriental; Embrapa Meio-Norte; Embrapa Rondônia; Embrapa Roraima; Embrapa Unidades Centrais. |
Data corrente: |
09/06/2008 |
Data da última atualização: |
19/01/2018 |
Tipo da produção científica: |
Comunicado Técnico/Recomendações Técnicas |
Autoria: |
CARVALHO, A. V.; VASCONCELOS, M. A. M. de; MOREIRA, D. K. T. |
Afiliação: |
ANA VANIA CARVALHO, Bolsista CNPq; MARCUS ARTHUR MARCAL DE VASCONCELOS, CPATU; DEBORA KONO TAKETA MOREIRA, Aluna do Curso de Tecnologia Agroindustrial, Universidade do Estado do Pará. |
Título: |
Obtenção e aproveitamento da farinha de pupunha. |
Ano de publicação: |
2005 |
Fonte/Imprenta: |
Belém, PA: Embrapa Amazônia Oriental, 2005. |
Páginas: |
4 p. |
Descrição Física: |
il. |
Série: |
(Embrapa Amazônia Oriental. Comunicado técnico, 145). |
Idioma: |
Português |
Conteúdo: |
Introdução; materiais básicos; processamento para obtenção da farinha; aproveitamento caseiro da farinha de pupunha em produtos de panificação e confeiteria; bolo fofo de pupunha; bolacha doce de pupunha; biscoitinho salgado de pupunha; torta de limão; modo de preparo; considerações finais. |
Thesagro: |
Farinha; Processamento; Produto de Origem Vegetal; Pupunha; Tecnologia de Alimento. |
Categoria do assunto: |
-- |
URL: |
https://ainfo.cnptia.embrapa.br/digital/bitstream/item/28078/1/com.tec.145.pdf
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Marc: |
LEADER 00932nam a2200217 a 4500 001 1374441 005 2018-01-19 008 2005 bl uuuu u0uu1 u #d 100 1 $aCARVALHO, A. V. 245 $aObtenção e aproveitamento da farinha de pupunha. 260 $aBelém, PA: Embrapa Amazônia Oriental$c2005 300 $a4 p.$cil. 490 $a(Embrapa Amazônia Oriental. Comunicado técnico, 145). 520 $aIntrodução; materiais básicos; processamento para obtenção da farinha; aproveitamento caseiro da farinha de pupunha em produtos de panificação e confeiteria; bolo fofo de pupunha; bolacha doce de pupunha; biscoitinho salgado de pupunha; torta de limão; modo de preparo; considerações finais. 650 $aFarinha 650 $aProcessamento 650 $aProduto de Origem Vegetal 650 $aPupunha 650 $aTecnologia de Alimento 700 1 $aVASCONCELOS, M. A. M. de 700 1 $aMOREIRA, D. K. T.
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Registro original: |
Embrapa Amazônia Oriental (CPATU) |
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| Acesso ao texto completo restrito à biblioteca da Embrapa Arroz e Feijão. Para informações adicionais entre em contato com cnpaf.biblioteca@embrapa.br. |
Registro Completo
Biblioteca(s): |
Embrapa Arroz e Feijão. |
Data corrente: |
18/09/2018 |
Data da última atualização: |
18/09/2018 |
Tipo da produção científica: |
Artigo em Periódico Indexado |
Circulação/Nível: |
A - 1 |
Autoria: |
MORAIS JÚNIOR, O. P.; DUARTE, J. B.; BRESEGHELLO, F.; COELHO, A. S. G.; MORAIS, O. P.; MAGALHÃES JÚNIOR, A. M. |
Afiliação: |
ODILON PEIXOTO MORAIS JUNIOR, UFG; JOAO BATISTA DUARTE, UFG; FLAVIO BRESEGHELLO, CNPAF; ALEXANDRE S. G. COELHO, UFG; ORLANDO PEIXOTO DE MORAIS, CNPAF; ARIANO MARTINS DE MAGALHAES JUNIOR, CPACT. |
Título: |
Single-step reaction norm models for genomic prediction in multienvironment recurrent selection trials. |
Ano de publicação: |
2018 |
Fonte/Imprenta: |
Crop Science, v. 58, n. 2, p. 592-607, Mar./Apr. 2018. |
ISSN: |
0011-183X |
DOI: |
10.2135/cropsci2017.06.0366 |
Idioma: |
Inglês |
Conteúdo: |
In recurrent selection programs, progeny testing is done in multienvironment trials, which generates genotype × environment interaction (G × E). Therefore, modeling G × E is essential for genomic prediction in the context of recurrent genomic selection (RGS). Developing single-step, best linear unbiased prediction-based reaction norm models (termed RN-HBLUP) using data from nongenotyped and genotyped progenies, can enhance predictive accuracy. Our objectives were to evaluate: (i) a class of RN-HBLUP models accommodating combined relationship of pedigree and genomic data, environmental covariates, and their interactions for prediction of phenotypic responses; (ii) the predictive accuracy of these models and the relative importance of main effects and interaction components; and (iii) the influence of different grouping strategies of genetic?environmental data (within selection cycles or across cycles) on prediction accuracy of the merit for untested progenies. The genetic material comprised 667 S1:3 progenies of irrigated rice (Oryza sativa L.) and six check cultivars. These materials were evaluated in yield trials conducted in 10 environments during three selection cycles. Genomic information was derived from single-nucleotide polymorphism markers genotyped on 174 progenies in the third cycle. We evaluated six predictive models. Environmental covariates and G × E interaction explained a significant portion of the phenotypic variance, increasing accuracy and decreasing the bias of phenotypic prediction. Within-cycle data were sufficient for accurate prediction of untested progenies, even in untested environments. We concluded that the RN-HBLUP model, with the comprehensive structure, could be useful in improving the prediction accuracy of quantitative traits in RGS programs. MenosIn recurrent selection programs, progeny testing is done in multienvironment trials, which generates genotype × environment interaction (G × E). Therefore, modeling G × E is essential for genomic prediction in the context of recurrent genomic selection (RGS). Developing single-step, best linear unbiased prediction-based reaction norm models (termed RN-HBLUP) using data from nongenotyped and genotyped progenies, can enhance predictive accuracy. Our objectives were to evaluate: (i) a class of RN-HBLUP models accommodating combined relationship of pedigree and genomic data, environmental covariates, and their interactions for prediction of phenotypic responses; (ii) the predictive accuracy of these models and the relative importance of main effects and interaction components; and (iii) the influence of different grouping strategies of genetic?environmental data (within selection cycles or across cycles) on prediction accuracy of the merit for untested progenies. The genetic material comprised 667 S1:3 progenies of irrigated rice (Oryza sativa L.) and six check cultivars. These materials were evaluated in yield trials conducted in 10 environments during three selection cycles. Genomic information was derived from single-nucleotide polymorphism markers genotyped on 174 progenies in the third cycle. We evaluated six predictive models. Environmental covariates and G × E interaction explained a significant portion of the phenotypic variance, increasing accuracy and decreasing the bi... Mostrar Tudo |
Palavras-Chave: |
Multienvironment prediction. |
Thesagro: |
Arroz; Melhoramento Genético Vegetal; Oryza Sativa; Progênie; Seleção Recorrente. |
Thesaurus NAL: |
Genomics; Plant breeding; Recurrent selection; Rice; Variety trials. |
Categoria do assunto: |
G Melhoramento Genético |
Marc: |
LEADER 02811naa a2200337 a 4500 001 2095887 005 2018-09-18 008 2018 bl uuuu u00u1 u #d 022 $a0011-183X 024 7 $a10.2135/cropsci2017.06.0366$2DOI 100 1 $aMORAIS JÚNIOR, O. P. 245 $aSingle-step reaction norm models for genomic prediction in multienvironment recurrent selection trials.$h[electronic resource] 260 $c2018 520 $aIn recurrent selection programs, progeny testing is done in multienvironment trials, which generates genotype × environment interaction (G × E). Therefore, modeling G × E is essential for genomic prediction in the context of recurrent genomic selection (RGS). Developing single-step, best linear unbiased prediction-based reaction norm models (termed RN-HBLUP) using data from nongenotyped and genotyped progenies, can enhance predictive accuracy. Our objectives were to evaluate: (i) a class of RN-HBLUP models accommodating combined relationship of pedigree and genomic data, environmental covariates, and their interactions for prediction of phenotypic responses; (ii) the predictive accuracy of these models and the relative importance of main effects and interaction components; and (iii) the influence of different grouping strategies of genetic?environmental data (within selection cycles or across cycles) on prediction accuracy of the merit for untested progenies. The genetic material comprised 667 S1:3 progenies of irrigated rice (Oryza sativa L.) and six check cultivars. These materials were evaluated in yield trials conducted in 10 environments during three selection cycles. Genomic information was derived from single-nucleotide polymorphism markers genotyped on 174 progenies in the third cycle. We evaluated six predictive models. Environmental covariates and G × E interaction explained a significant portion of the phenotypic variance, increasing accuracy and decreasing the bias of phenotypic prediction. Within-cycle data were sufficient for accurate prediction of untested progenies, even in untested environments. We concluded that the RN-HBLUP model, with the comprehensive structure, could be useful in improving the prediction accuracy of quantitative traits in RGS programs. 650 $aGenomics 650 $aPlant breeding 650 $aRecurrent selection 650 $aRice 650 $aVariety trials 650 $aArroz 650 $aMelhoramento Genético Vegetal 650 $aOryza Sativa 650 $aProgênie 650 $aSeleção Recorrente 653 $aMultienvironment prediction 700 1 $aDUARTE, J. B. 700 1 $aBRESEGHELLO, F. 700 1 $aCOELHO, A. S. G. 700 1 $aMORAIS, O. P. 700 1 $aMAGALHÃES JÚNIOR, A. M. 773 $tCrop Science$gv. 58, n. 2, p. 592-607, Mar./Apr. 2018.
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