Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da soja
| Ano de defesa: | 2025 |
|---|---|
| Autor(a) principal: | |
| Orientador(a): | |
| Banca de defesa: | |
| Tipo de documento: | Dissertação |
| Tipo de acesso: | Acesso aberto |
| dARK ID: | ark:/26339/001300001bjk2 |
| Idioma: | por |
| Instituição de defesa: |
Universidade Federal de Santa Maria
Brasil Agronomia UFSM Programa de Pós-Graduação em Agronomia Centro de Ciências Rurais |
| Programa de Pós-Graduação: |
Não Informado pela instituição
|
| Departamento: |
Não Informado pela instituição
|
| País: |
Não Informado pela instituição
|
| Palavras-chave em Português: | |
| Link de acesso: | http://repositorio.ufsm.br/handle/1/34531 |
Resumo: | The soybean crop (Glycine max L.) is of great economic importance in Brazil and worldwide, in the production of vegetable oil, biofuels and as a source of protein in animal nutrition. Phosphorus (P) stands out as one of the essential nutrients for growth and development, but much of it is not available in the soil for absorption, so it is important to look for alternatives to increase its availability, such as the use of nutrient fixing and solubilizing microorganisms. Multivariate analysis is used in soybean cultivation to study linear relationships, with the aim of identifying relevant characteristics for selecting superior genotypes. However, these techniques do not take into account the effects of the parameters of the mathematical model of the experimental design and the treatments, stratifying the effects and working only with average observations. Therefore, the aim of this work was to analyze the implications of removing the parameters of the mathematical model on the results of Pearson's linear correlation analysis, principal components, path analysis and canonical correlations in trials with growth-promoting bacteria in soybean cultivation. The field experiment was conducted during the 2019/2020 harvest in the municipality of Barra do Quaraí - RS. The design used was randomized blocks, with four replications. In the first factor: i) Bradyrhizobium spp. + Azospirillum spp; ii) Bradyrhizobium spp + Pseudomonas fluorescens; ii) Bradyrhizobium spp. + Bacillus subtilis; iv) Bradyrhizobium spp. + Bacillus subtilis + Bacillus megaterium; v) Bradyrhizobium spp. + Azospirillum spp. + Pseudomonas fluorescens; vi) Bradyrhizobium spp. + Azospirillum spp. + Bacillus subtilis; vii) Bradyrhizobium spp. + Azospirillum spp. + Bacillus subtilis + Bacillus megaterium; viii) Bradyrhizobium spp. + Azospirillum spp. + Pseudomonas fluorescens + Bacillus subtilis + Bacillus megaterium; and ix) no bacteria; and in the second factor four doses of phosphorus (P2O5): 0, 50, 100 and 150 kg ha-1. The number and dry mass of nodules, leaf phosphorus content, yield and thousand-grain mass, protein, oil, fiber and ash content, as well as palmitic, stearic, oleic, linoleic and linolenic fatty acids in the grains were measured. The parameters of the mathematical model were removed in different treatment effect stratification scenarios and compared with the general mathematical model (Traditional). Multivariate normality and multicollinearity were diagnosed for all scenarios. Removing parameters from the mathematical model increases the variance explained in principal component analysis. In Pearson's linear correlation, this method alters the significance as well as the magnitude and direction of the correlations. Stratifying the effects of the treatments increases the explanatory capacity of the characters in relation to the variance of the grain yield in the path analysis. Removing the effects of the model parameters results in changes in the direction and magnitude (>50%) of the path coefficients. In the canonical correlations, removing parameters changed the statistical significance and, when significant at 5%, increased the canonical correlation and explanatory power. |
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Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da sojaLinear relationships between variables in growth-promoting bacteria and phosphorus (P) solubilizers in soybean cropsGlycine max L.Remoção de parâmetrosCorrelação linear de PearsonAnálise de componentes principaisAnálise de trilhaCorrelações canônicasMulticolinearidadeRelações linearesRemoval of parametersPrincipal component analysisPath analysisCanonical correlationsMulticollinearityLinear relationshipsCNPQ::CIENCIAS AGRARIAS::AGRONOMIAThe soybean crop (Glycine max L.) is of great economic importance in Brazil and worldwide, in the production of vegetable oil, biofuels and as a source of protein in animal nutrition. Phosphorus (P) stands out as one of the essential nutrients for growth and development, but much of it is not available in the soil for absorption, so it is important to look for alternatives to increase its availability, such as the use of nutrient fixing and solubilizing microorganisms. Multivariate analysis is used in soybean cultivation to study linear relationships, with the aim of identifying relevant characteristics for selecting superior genotypes. However, these techniques do not take into account the effects of the parameters of the mathematical model of the experimental design and the treatments, stratifying the effects and working only with average observations. Therefore, the aim of this work was to analyze the implications of removing the parameters of the mathematical model on the results of Pearson's linear correlation analysis, principal components, path analysis and canonical correlations in trials with growth-promoting bacteria in soybean cultivation. The field experiment was conducted during the 2019/2020 harvest in the municipality of Barra do Quaraí - RS. The design used was randomized blocks, with four replications. In the first factor: i) Bradyrhizobium spp. + Azospirillum spp; ii) Bradyrhizobium spp + Pseudomonas fluorescens; ii) Bradyrhizobium spp. + Bacillus subtilis; iv) Bradyrhizobium spp. + Bacillus subtilis + Bacillus megaterium; v) Bradyrhizobium spp. + Azospirillum spp. + Pseudomonas fluorescens; vi) Bradyrhizobium spp. + Azospirillum spp. + Bacillus subtilis; vii) Bradyrhizobium spp. + Azospirillum spp. + Bacillus subtilis + Bacillus megaterium; viii) Bradyrhizobium spp. + Azospirillum spp. + Pseudomonas fluorescens + Bacillus subtilis + Bacillus megaterium; and ix) no bacteria; and in the second factor four doses of phosphorus (P2O5): 0, 50, 100 and 150 kg ha-1. The number and dry mass of nodules, leaf phosphorus content, yield and thousand-grain mass, protein, oil, fiber and ash content, as well as palmitic, stearic, oleic, linoleic and linolenic fatty acids in the grains were measured. The parameters of the mathematical model were removed in different treatment effect stratification scenarios and compared with the general mathematical model (Traditional). Multivariate normality and multicollinearity were diagnosed for all scenarios. Removing parameters from the mathematical model increases the variance explained in principal component analysis. In Pearson's linear correlation, this method alters the significance as well as the magnitude and direction of the correlations. Stratifying the effects of the treatments increases the explanatory capacity of the characters in relation to the variance of the grain yield in the path analysis. Removing the effects of the model parameters results in changes in the direction and magnitude (>50%) of the path coefficients. In the canonical correlations, removing parameters changed the statistical significance and, when significant at 5%, increased the canonical correlation and explanatory power.Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - CAPESA cultura da soja (Glycine max L.) é de grande importância econômica no Brasil e no mundo, na produção de óleo vegetal, biocombustíveis e fonte de proteína na nutrição animal. O fósforo (P) se destaca como um dos nutrientes essenciais para o crescimento e desenvolvimento, no entanto, grande parte não se apresenta disponível no solo para absorção, com isso é importante buscar alternativas para aumentar sua disponibilidade, como a utilização de microrganismos fixadores e solubilizadores de nutrientes. Na cultura da soja são utilizadas análises multivariadas para estudar as relações lineares, visando identificar características relevantes para a seleção de genótipos superiores. No entanto nestas técnicas não considera-se os efeitos dos parâmetros do modelo matemático do delineamento experimental e tratamentos, estratificando efeitos, trabalhando-se apenas com as observações médias. Deste modo, este estudo teve como objetivo de analisar as implicações da remoção dos parâmetros do modelo matemático sob os resultados das análises de correlação linear de Pearson, componentes principais, análise de trilha e de correlações canônicas, em ensaios com bactérias promotoras de crescimento na cultura da soja. O experimento de campo foi conduzido na safra 2019/2020, no município de Barra do Quaraí – RS. O delineamento utilizado foi de blocos casualizados, com quatro repetições. No primeiro fator: i) Bradyrhizobium spp + Azospirillum spp.; ii) Bradyrhizobium spp + Pseudomonas fluorescens; ii) Bradyrhizobium spp + Bacillus subtilis; iv) Bradyrhizobium spp + Bacillus subtilis + Bacillus megaterium; v) Bradyrhizobium spp + Azospirillum spp. + Pseudomonas fluorescens; vi) Bradyrhizobium spp + Azospirillum spp. + Bacillus subtilis; vii) Bradyrhizobium spp + Azospirillum spp. + Bacillus subtilis + Bacillus megaterium; viii) Bradyrhizobium spp + Azospirillum spp. + Pseudomonas fluorescens + Bacillus subtilis + Bacillus megaterium; e ix) sem bactérias; e no segundo fator quatro doses de fósforo (P2O5): 0, 50, 100 e 150 kg ha-1 . Foram mensuradas, número e massa seca de nódulos, teor de fósforo na folha, rendimento e massa de mil grãos, teores de proteína, óleo, fibra e cinzas, assim como ácidos graxos, como palmítico, esteárico, oleico, linoleico e linolênico nos grãos. Realizou-se a remoção de parâmetros do modelo matemático em diferentes cenários de estratificação de efeitos de tratamentos e estes comparados ao analisar com o modelo matemático geral (Tradicional). Realizou-se diagnóstico de normalidade multivariada e multicolinearidade para todos os cenários. A remoção dos parâmetros do modelo matemático aumenta a variância explicada na análise de componentes principais. Na correlação linear de Pearson este método altera a significância, assim como a magnitude e direção das correlações. Com a estratificação de efeitos de tratamentos, aumenta-se a capacidade explicativa dos caracteres em relação a variância no rendimento de grãos nas análises de trilha. Retirar os efeitos dos parâmetros do modelo, resulta em alterações na direção e magnitude (>50%) nos coeficientes de trilha. Nas correlações canônicas a remoção de parâmetros altera a significância estatística e quando significativos a 5% aumentaram a correlação canônica e capacidade explicativa.Universidade Federal de Santa MariaBrasilAgronomiaUFSMPrograma de Pós-Graduação em AgronomiaCentro de Ciências RuraisLúcio, Alessandro Dal'Colhttp://lattes.cnpq.br/0972869223145503Martin, Thomas NewtonCarvalho, Ivan RicardoRocha, Tiago Mateus2025-03-21T12:53:14Z2025-03-21T12:53:14Z2025-02-28info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/masterThesisapplication/pdfhttp://repositorio.ufsm.br/handle/1/34531ark:/26339/001300001bjk2porAttribution-NonCommercial-NoDerivatives 4.0 Internationalinfo:eu-repo/semantics/openAccessreponame:Manancial - Repositório Digital da UFSMinstname:Universidade Federal de Santa Maria (UFSM)instacron:UFSM2025-03-21T12:53:14Zoai:repositorio.ufsm.br:1/34531Biblioteca Digital de Teses e Dissertaçõeshttps://repositorio.ufsm.br/PUBhttps://repositorio.ufsm.br/oai/requestatendimento.sib@ufsm.br||tedebc@gmail.com||manancial@ufsm.bropendoar:2025-03-21T12:53:14Manancial - Repositório Digital da UFSM - Universidade Federal de Santa Maria (UFSM)false |
| dc.title.none.fl_str_mv |
Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da soja Linear relationships between variables in growth-promoting bacteria and phosphorus (P) solubilizers in soybean crops |
| title |
Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da soja |
| spellingShingle |
Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da soja Rocha, Tiago Mateus Glycine max L. Remoção de parâmetros Correlação linear de Pearson Análise de componentes principais Análise de trilha Correlações canônicas Multicolinearidade Relações lineares Removal of parameters Principal component analysis Path analysis Canonical correlations Multicollinearity Linear relationships CNPQ::CIENCIAS AGRARIAS::AGRONOMIA |
| title_short |
Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da soja |
| title_full |
Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da soja |
| title_fullStr |
Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da soja |
| title_full_unstemmed |
Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da soja |
| title_sort |
Relações lineares entre variáveis em bactérias promotoras de crescimento e solubilizadoras de fósforo (P) na cultura da soja |
| author |
Rocha, Tiago Mateus |
| author_facet |
Rocha, Tiago Mateus |
| author_role |
author |
| dc.contributor.none.fl_str_mv |
Lúcio, Alessandro Dal'Col http://lattes.cnpq.br/0972869223145503 Martin, Thomas Newton Carvalho, Ivan Ricardo |
| dc.contributor.author.fl_str_mv |
Rocha, Tiago Mateus |
| dc.subject.por.fl_str_mv |
Glycine max L. Remoção de parâmetros Correlação linear de Pearson Análise de componentes principais Análise de trilha Correlações canônicas Multicolinearidade Relações lineares Removal of parameters Principal component analysis Path analysis Canonical correlations Multicollinearity Linear relationships CNPQ::CIENCIAS AGRARIAS::AGRONOMIA |
| topic |
Glycine max L. Remoção de parâmetros Correlação linear de Pearson Análise de componentes principais Análise de trilha Correlações canônicas Multicolinearidade Relações lineares Removal of parameters Principal component analysis Path analysis Canonical correlations Multicollinearity Linear relationships CNPQ::CIENCIAS AGRARIAS::AGRONOMIA |
| description |
The soybean crop (Glycine max L.) is of great economic importance in Brazil and worldwide, in the production of vegetable oil, biofuels and as a source of protein in animal nutrition. Phosphorus (P) stands out as one of the essential nutrients for growth and development, but much of it is not available in the soil for absorption, so it is important to look for alternatives to increase its availability, such as the use of nutrient fixing and solubilizing microorganisms. Multivariate analysis is used in soybean cultivation to study linear relationships, with the aim of identifying relevant characteristics for selecting superior genotypes. However, these techniques do not take into account the effects of the parameters of the mathematical model of the experimental design and the treatments, stratifying the effects and working only with average observations. Therefore, the aim of this work was to analyze the implications of removing the parameters of the mathematical model on the results of Pearson's linear correlation analysis, principal components, path analysis and canonical correlations in trials with growth-promoting bacteria in soybean cultivation. The field experiment was conducted during the 2019/2020 harvest in the municipality of Barra do Quaraí - RS. The design used was randomized blocks, with four replications. In the first factor: i) Bradyrhizobium spp. + Azospirillum spp; ii) Bradyrhizobium spp + Pseudomonas fluorescens; ii) Bradyrhizobium spp. + Bacillus subtilis; iv) Bradyrhizobium spp. + Bacillus subtilis + Bacillus megaterium; v) Bradyrhizobium spp. + Azospirillum spp. + Pseudomonas fluorescens; vi) Bradyrhizobium spp. + Azospirillum spp. + Bacillus subtilis; vii) Bradyrhizobium spp. + Azospirillum spp. + Bacillus subtilis + Bacillus megaterium; viii) Bradyrhizobium spp. + Azospirillum spp. + Pseudomonas fluorescens + Bacillus subtilis + Bacillus megaterium; and ix) no bacteria; and in the second factor four doses of phosphorus (P2O5): 0, 50, 100 and 150 kg ha-1. The number and dry mass of nodules, leaf phosphorus content, yield and thousand-grain mass, protein, oil, fiber and ash content, as well as palmitic, stearic, oleic, linoleic and linolenic fatty acids in the grains were measured. The parameters of the mathematical model were removed in different treatment effect stratification scenarios and compared with the general mathematical model (Traditional). Multivariate normality and multicollinearity were diagnosed for all scenarios. Removing parameters from the mathematical model increases the variance explained in principal component analysis. In Pearson's linear correlation, this method alters the significance as well as the magnitude and direction of the correlations. Stratifying the effects of the treatments increases the explanatory capacity of the characters in relation to the variance of the grain yield in the path analysis. Removing the effects of the model parameters results in changes in the direction and magnitude (>50%) of the path coefficients. In the canonical correlations, removing parameters changed the statistical significance and, when significant at 5%, increased the canonical correlation and explanatory power. |
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2025 |
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2025-03-21T12:53:14Z 2025-03-21T12:53:14Z 2025-02-28 |
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info:eu-repo/semantics/publishedVersion |
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Universidade Federal de Santa Maria Brasil Agronomia UFSM Programa de Pós-Graduação em Agronomia Centro de Ciências Rurais |
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Universidade Federal de Santa Maria Brasil Agronomia UFSM Programa de Pós-Graduação em Agronomia Centro de Ciências Rurais |
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