Nonlinear mixed effect models to describe the dry matter accumulation in garlic plants

Author:

Teixeira Filipe Ribeiro Formiga1ORCID,Nascimento Moysés2ORCID,Cecon Paulo Roberto2ORCID,Silva Anderson Rodrigo da3ORCID

Affiliation:

1. Universidade Federal do Piauí, Brasil

2. Universidade Federal de Viçosa, Brasil

3. Instituto Federal Goiano, Brasil

Abstract

ABSTRACT: Given the importance of describing the accumulation of total dry matter in garlic accessions and the advantage of Nonlinear Mixed Effect Models (NLME) in this process, the present work research compared four nonlinear equations (Gompertz, Logistic, Richards, and von Bertalanffy) in the fit of accumulation of total dry matter per plant of 30 garlic accessions. The objective was also to identify the best accessions according to each growth parameter by estimating the random effects around the mean through the best among the models. The analysis was carried out using the R software. The best model was the Logistic according to the criteria used for comparison (AIC, BIC, R a j . 2, MSE and MAE), presenting estimates closer to the actual observed values. According to the random effects estimated by this model, which represent deviations from the mean, the accessions that showed the highest asymptotic weight were 4505, 4826 and 4500, while accessions 4826, 4837 and 4491 took longer to reach the inflection point of the curve. The NLME approach used one fit per equation to obtain information on all individuals in the sample, efficiently adjusting the accumulated total dry matter and identifying the best accessions according to the estimated random effects of its parameters.

Publisher

FapUNIFESP (SciELO)

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