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Using machine learning to combine genetic and environmental data for maize grain yield predictions across multi-environment trials.
Fernandes, Igor K; Vieira, Caio C; Dias, Kaio O G; Fernandes, Samuel B.
Afiliação
  • Fernandes IK; Department of Crop, Soil, and Environmental Sciences, Center for Agricultural Data Analytics, University of Arkansas, Fayetteville, AR, USA.
  • Vieira CC; Department of Crop, Soil, and Environmental Sciences, University of Arkansas, Fayetteville, AR, USA.
  • Dias KOG; Department of General Biology, Federal University of Viçosa, Viçosa, Brazil.
  • Fernandes SB; Department of Crop, Soil, and Environmental Sciences, Center for Agricultural Data Analytics, University of Arkansas, Fayetteville, AR, USA. samuelbf@uark.edu.
Theor Appl Genet ; 137(8): 189, 2024 Jul 23.
Article em En | MEDLINE | ID: mdl-39044035
ABSTRACT
KEY MESSAGE Incorporating feature-engineered environmental data into machine learning-based genomic prediction models is an efficient approach to indirectly model genotype-by-environment interactions. Complementing phenotypic traits and molecular markers with high-dimensional data such as climate and soil information is becoming a common practice in breeding programs. This study explored new ways to combine non-genetic information in genomic prediction models using machine learning. Using the multi-environment trial data from the Genomes To Fields initiative, different models to predict maize grain yield were adjusted using various inputs genetic, environmental, or a combination of both, either in an additive (genetic-and-environmental; G+E) or a multiplicative (genotype-by-environment interaction; GEI) manner. When including environmental data, the mean prediction accuracy of machine learning genomic prediction models increased up to 7% over the well-established Factor Analytic Multiplicative Mixed Model among the three cross-validation scenarios evaluated. Moreover, using the G+E model was more advantageous than the GEI model given the superior, or at least comparable, prediction accuracy, the lower usage of computational memory and time, and the flexibility of accounting for interactions by construction. Our results illustrate the flexibility provided by the ML framework, particularly with feature engineering. We show that the feature engineering stage offers a viable option for envirotyping and generates valuable information for machine learning-based genomic prediction models. Furthermore, we verified that the genotype-by-environment interactions may be considered using tree-based approaches without explicitly including interactions in the model. These findings support the growing interest in merging high-dimensional genotypic and environmental data into predictive modeling.
Assuntos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Fenótipo / Zea mays / Interação Gene-Ambiente / Aprendizado de Máquina / Genótipo / Modelos Genéticos Idioma: En Revista: Theor Appl Genet Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Estados Unidos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Fenótipo / Zea mays / Interação Gene-Ambiente / Aprendizado de Máquina / Genótipo / Modelos Genéticos Idioma: En Revista: Theor Appl Genet Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Estados Unidos