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Registro Completo |
Biblioteca(s): |
Embrapa Arroz e Feijão. |
Data corrente: |
29/05/2022 |
Data da última atualização: |
12/04/2024 |
Tipo da produção científica: |
Capítulo em Livro Técnico-Científico |
Autoria: |
CROSSA, J.; MONTESINOS-LÓPEZ, O. A.; PÉREZ-RODRÍGUEZ, P.; COSTA-NETO, G.; FRITSCHE-NETO, R.; ORTIZ, R.; MARTINI, J. W. R.; LILLEMO, M.; MONTESINOS-LÓPEZ, A.; JARQUIN, D.; BRESEGHELLO, F.; CUEVAS, J.; RINCENT, R. |
Afiliação: |
JOSE CROSSA, CIMMYT; OSVAL ANTONIO MONTESINOS-LOPEZ, UNIVERSIDAD DE COLIMA, México; PAULINO PEREZ-RODRIGUEZ, COLEGIO DE POSTGRADUADOS, Montecillos-Mexico; GERMANO COSTA-NETO, ESALQ; ROBERTO FRITSCHE-NETO, ESALQ; RODOMIRO ORTIZ, SWEDISH UNIVERSITY OF AGRICULTURAL SCIENCES, Alnarp-Sweden; JOHANNES W. R. MARTINI, CIMMYT; MORTEN LILLEMO, NORWEGIAN UNIVERSITY OF LIFE SCIENCES, Norway; ABELARDO MONTESINOS-LOPEZ, CENTRO DE INVESTIGACIÓN EN MATEMÁTICAS, Guanajuato-Mexico; DIEGO JARQUIN, UNIVERSITY OF NEBRASKA, Lincoln-NE; FLAVIO BRESEGHELLO, CNPAF; JAIME CUEVAS, UNIVERSIDAD DE QUINTANA ROO, Quintana Roo-Mexico; RENAUD RINCENT, INRAE, Clermont-Ferrand-France. |
Título: |
Genome and environment based prediction models and methods of complex traits incorporating genotype × environment interaction. |
Ano de publicação: |
2022 |
Fonte/Imprenta: |
In: AHMADI, N.; BARTHOLOME, J. (ed.). Genomic prediction of complex traits: methods and protocols. New York: Humana Press, 2022. |
Páginas: |
p. 245-283. |
Série: |
(Methods in Molecular Biology). |
ISBN: |
978-1-0716-2205-6 |
DOI: |
https://doi.org/10.1007/978-1-0716-2205-6_9 |
Idioma: |
Inglês |
Conteúdo: |
Genomic-enabled prediction models are of paramount importance for the successful implementation of genomic selection (GS) based on breeding values. As opposed to animal breeding, plant breeding includes extensive multienvironment and multiyear field trial data. Hence, genomic-enabled prediction models should include genotype × environment (G × E) interaction, which most of the time increases the prediction performance when the response of lines are different from environment to environment. In this chapter, we describe a historical timeline since 2012 related to advances of the GS models that take into account G × E interaction. We describe theoretical and practical aspects of those GS models, including the gains in prediction performance when including G × E structures for both complex continuous and categorical scale traits. Then, we detailed and explained the main G × E genomic prediction models for complex traits measured in continuous and noncontinuous (categorical) scale. Related to G × E interaction models this review also examine the analyses of the information generated with high-throughput phenotype data (phenomic) and the joint analyses of multitrait and multienvironment field trial data that is also employed in the general assessment of multitrait G × E interaction. The inclusion of nongenomic data in increasing the accuracy and biological reliability of the G × E approach is also outlined. We show the recent advances in large-scale envirotyping (enviromics), and how the use of mechanistic computational modeling can derive the crop growth and development aspects useful for predicting phenotypes and explaining G × E. MenosGenomic-enabled prediction models are of paramount importance for the successful implementation of genomic selection (GS) based on breeding values. As opposed to animal breeding, plant breeding includes extensive multienvironment and multiyear field trial data. Hence, genomic-enabled prediction models should include genotype × environment (G × E) interaction, which most of the time increases the prediction performance when the response of lines are different from environment to environment. In this chapter, we describe a historical timeline since 2012 related to advances of the GS models that take into account G × E interaction. We describe theoretical and practical aspects of those GS models, including the gains in prediction performance when including G × E structures for both complex continuous and categorical scale traits. Then, we detailed and explained the main G × E genomic prediction models for complex traits measured in continuous and noncontinuous (categorical) scale. Related to G × E interaction models this review also examine the analyses of the information generated with high-throughput phenotype data (phenomic) and the joint analyses of multitrait and multienvironment field trial data that is also employed in the general assessment of multitrait G × E interaction. The inclusion of nongenomic data in increasing the accuracy and biological reliability of the G × E approach is also outlined. We show the recent advances in large-scale envirotyping (enviromics), and... Mostrar Tudo |
Palavras-Chave: |
Genome-enabled prediction; Genomic selection; Models with G x E interaction. |
Thesagro: |
Genótipo; Interação Genética; Melhoramento Genético Vegetal. |
Thesaurus Nal: |
Genome; Genomics; Genotype-environment interaction; Plant breeding. |
Categoria do assunto: |
G Melhoramento Genético |
URL: |
https://ainfo.cnptia.embrapa.br/digital/bitstream/doc/1143533/1/cap9-2022.pdf
|
Marc: |
LEADER 03084naa a2200433 a 4500 001 2143533 005 2024-04-12 008 2022 bl uuuu u00u1 u #d 020 $a978-1-0716-2205-6 024 7 $ahttps://doi.org/10.1007/978-1-0716-2205-6_9$2DOI 100 1 $aCROSSA, J. 245 $aGenome and environment based prediction models and methods of complex traits incorporating genotype × environment interaction.$h[electronic resource] 260 $c2022 300 $ap. 245-283. 490 $a(Methods in Molecular Biology). 520 $aGenomic-enabled prediction models are of paramount importance for the successful implementation of genomic selection (GS) based on breeding values. As opposed to animal breeding, plant breeding includes extensive multienvironment and multiyear field trial data. Hence, genomic-enabled prediction models should include genotype × environment (G × E) interaction, which most of the time increases the prediction performance when the response of lines are different from environment to environment. In this chapter, we describe a historical timeline since 2012 related to advances of the GS models that take into account G × E interaction. We describe theoretical and practical aspects of those GS models, including the gains in prediction performance when including G × E structures for both complex continuous and categorical scale traits. Then, we detailed and explained the main G × E genomic prediction models for complex traits measured in continuous and noncontinuous (categorical) scale. Related to G × E interaction models this review also examine the analyses of the information generated with high-throughput phenotype data (phenomic) and the joint analyses of multitrait and multienvironment field trial data that is also employed in the general assessment of multitrait G × E interaction. The inclusion of nongenomic data in increasing the accuracy and biological reliability of the G × E approach is also outlined. We show the recent advances in large-scale envirotyping (enviromics), and how the use of mechanistic computational modeling can derive the crop growth and development aspects useful for predicting phenotypes and explaining G × E. 650 $aGenome 650 $aGenomics 650 $aGenotype-environment interaction 650 $aPlant breeding 650 $aGenótipo 650 $aInteração Genética 650 $aMelhoramento Genético Vegetal 653 $aGenome-enabled prediction 653 $aGenomic selection 653 $aModels with G x E interaction 700 1 $aMONTESINOS-LÓPEZ, O. A. 700 1 $aPÉREZ-RODRÍGUEZ, P. 700 1 $aCOSTA-NETO, G. 700 1 $aFRITSCHE-NETO, R. 700 1 $aORTIZ, R. 700 1 $aMARTINI, J. W. R. 700 1 $aLILLEMO, M. 700 1 $aMONTESINOS-LÓPEZ, A. 700 1 $aJARQUIN, D. 700 1 $aBRESEGHELLO, F. 700 1 $aCUEVAS, J. 700 1 $aRINCENT, R. 773 $tIn: AHMADI, N.; BARTHOLOME, J. (ed.). Genomic prediction of complex traits: methods and protocols. New York: Humana Press, 2022.
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Embrapa Arroz e Feijão (CNPAF) |
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Registro Completo
Biblioteca(s): |
Embrapa Florestas. |
Data corrente: |
23/08/2010 |
Data da última atualização: |
20/06/2024 |
Tipo da produção científica: |
Artigo em Anais de Congresso |
Autoria: |
BOGNOLA, I. A.; LAVORANTI, O. J.; HIGA, A. R.; GOMES, J. B. V.; MAEDA, S.; CORRÊA, C. M. C. |
Afiliação: |
ITAMAR ANTONIO BOGNOLA, CNPF; OSMIR JOSE LAVORANTI, CNPF; ANTONIO RIOYEI HIGA, UFPR; JOAO BOSCO VASCONCELLOS GOMES, CNPF; SHIZUO MAEDA, CNPF; CARLA M. CAMARGO CORRÊA, UFPR. |
Título: |
An equation for yield prediction for Pinus taeda L. as a function of soil properties. |
Ano de publicação: |
2010 |
Fonte/Imprenta: |
In: WORLD CONGRESS OF SOIL SCIENCE, 19., 2010, Brisbaine. Soil solutions for a changing world: congress handbook. [S. l.]: CSIRO, 2010. p. 8-10. |
Idioma: |
Inglês |
Thesagro: |
Pinus Taeda. |
Categoria do assunto: |
-- |
Marc: |
LEADER 00626nam a2200169 a 4500 001 1860717 005 2024-06-20 008 2010 bl uuuu u00u1 u #d 100 1 $aBOGNOLA, I. A. 245 $aAn equation for yield prediction for Pinus taeda L. as a function of soil properties.$h[electronic resource] 260 $aIn: WORLD CONGRESS OF SOIL SCIENCE, 19., 2010, Brisbaine. Soil solutions for a changing world: congress handbook. [S. l.]: CSIRO, 2010. p. 8-10.$c2010 650 $aPinus Taeda 700 1 $aLAVORANTI, O. J. 700 1 $aHIGA, A. R. 700 1 $aGOMES, J. B. V. 700 1 $aMAEDA, S. 700 1 $aCORRÊA, C. M. C.
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