RESISTANCE INDUCTION MANAGEMENT ALTERS SOYBEAN ARCHITECTURE, YIELD COMPONENTS, AND PRODUCTIVITY
DOI:
https://doi.org/10.66104/6rws9277Keywords:
Foliar health; Glycine max; induced resistance; multivariate analyses; reproductive efficiency.Abstract
The study evaluated different resistance induction managements in soybean, highlighting that combinations of inducers and fungicides can significantly modify plant architecture, yield components, and productivity under Cerrado conditions. The research emphasizes the economic importance of the crop, the impacts of foliar and late-season diseases, the limitations of chemical control alone, and the potential of resistance inducers to optimize plant health and morphophysiological performance. The experiment was conducted in Mineiros, Goiás, on an Oxisol under tropical Aw climate, using a randomized block design with four managements (ISR1–ISR4) applied to the cultivar Brasmax Olimpo IPRO. Treatments were performed at vegetative and reproductive stages, evaluating structural traits (branching, node number, stem height and diameter), reproductive traits (number of pods and grains per category), and yield. Analyses included descriptive statistics, PCA, LASSO, and path analysis to identify variables most influencing yield. ISR1 and ISR2 promoted higher vegetative vigor, increased three- and four-grain pods, and achieved superior yields, up to 70.09 bags ha⁻¹. ISR3 resulted in a more compact architecture and lower yield, while ISR4 showed intermediate performance. Path analysis indicated P3S, P4S, BRN, MNN, PLH, and TPD as positive contributors to yield. It is concluded that managements balancing vegetative vigor and a high proportion of three- and four-grain pods are more efficient in maximizing soybean productivity.
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Copyright (c) 2026 Julia Dias Costa, Ivan Ricardo Carvalho, Diego Oliveira Ribeiro, Glicélia Pereira Silva, Alexandre Igor de Azevedo Pereira, Carmen Rosa da Silva Curvelo, Rodrigo Vieira da Silva, Deborah Amorim Martins, Luiz Leonardo Ferreira

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