Fitting nonlinear double sigmoid models to macauba fruit growth data using Bayesian inference

ABSTRACT: Macauba (Acrocomia aculeata) is a palm tree native to the tropical regions of the Americas. It is used as a food and applied in the cosmetic and pharmaceutical industries. Macauba fruit is a source of raw material for oil and bioenergy production. Determining the ideal time to harvest maca...

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Main Authors: Edilene Cristina Pedroso Azarias, Natiele de Almeida Gonzaga, Édipo Menezes da Silva, Edilson Marcelino Silva, Tales Jesus Fernandes, Joel Augusto Muniz
Format: Article
Language:English
Published: Universidade Federal de Santa Maria 2025-08-01
Series:Ciência Rural
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-84782025000900203&lng=en&tlng=en
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author Edilene Cristina Pedroso Azarias
Natiele de Almeida Gonzaga
Édipo Menezes da Silva
Edilson Marcelino Silva
Tales Jesus Fernandes
Joel Augusto Muniz
author_facet Edilene Cristina Pedroso Azarias
Natiele de Almeida Gonzaga
Édipo Menezes da Silva
Edilson Marcelino Silva
Tales Jesus Fernandes
Joel Augusto Muniz
author_sort Edilene Cristina Pedroso Azarias
collection DOAJ
description ABSTRACT: Macauba (Acrocomia aculeata) is a palm tree native to the tropical regions of the Americas. It is used as a food and applied in the cosmetic and pharmaceutical industries. Macauba fruit is a source of raw material for oil and bioenergy production. Determining the ideal time to harvest macauba fruit is essential to ensure maximum quality and optimize the post-harvest and storage processes. The present study characterized the accumulation of total dry mass and mesocarp dry mass of macauba fruit over time. We used Bayesian inference to estimate the parameters of the nonlinear double logistic and double Gompertz regression models to find the model that best describes the data. Fruit samples were collected from one week after spathe opening and continuing weekly until natural fruit drop, at 62 weeks after anthesis, and dried in a forced ventilation oven. Statistical analyses were conducted in the R software, and the weighted resampling method was used. The Criterion of density Predictive Ordered (CPO) and deviance information criterion (DIC) were used to select the models. The double Gompertz model best fitted the data. The fruit mesocarp showed no difference in growth rate between the first and second stages of development. In the final stage, it reached values close to 9 g. The total dry mass showed faster growth in the first stage, with values close to 34 g in the final stage.
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spelling doaj-art-69d170cef96448a1a1f2d623bde147e92025-08-20T03:41:50ZengUniversidade Federal de Santa MariaCiência Rural1678-45962025-08-0155910.1590/0103-8478cr20240448Fitting nonlinear double sigmoid models to macauba fruit growth data using Bayesian inferenceEdilene Cristina Pedroso Azariashttps://orcid.org/0000-0002-5580-3754Natiele de Almeida Gonzagahttps://orcid.org/0000-0002-4916-9056Édipo Menezes da Silvahttps://orcid.org/0000-0002-1613-6522Edilson Marcelino Silvahttps://orcid.org/0000-0002-2800-3495Tales Jesus Fernandeshttps://orcid.org/0000-0002-1457-9653Joel Augusto Munizhttps://orcid.org/0000-0002-1069-4136ABSTRACT: Macauba (Acrocomia aculeata) is a palm tree native to the tropical regions of the Americas. It is used as a food and applied in the cosmetic and pharmaceutical industries. Macauba fruit is a source of raw material for oil and bioenergy production. Determining the ideal time to harvest macauba fruit is essential to ensure maximum quality and optimize the post-harvest and storage processes. The present study characterized the accumulation of total dry mass and mesocarp dry mass of macauba fruit over time. We used Bayesian inference to estimate the parameters of the nonlinear double logistic and double Gompertz regression models to find the model that best describes the data. Fruit samples were collected from one week after spathe opening and continuing weekly until natural fruit drop, at 62 weeks after anthesis, and dried in a forced ventilation oven. Statistical analyses were conducted in the R software, and the weighted resampling method was used. The Criterion of density Predictive Ordered (CPO) and deviance information criterion (DIC) were used to select the models. The double Gompertz model best fitted the data. The fruit mesocarp showed no difference in growth rate between the first and second stages of development. In the final stage, it reached values close to 9 g. The total dry mass showed faster growth in the first stage, with values close to 34 g in the final stage.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-84782025000900203&lng=en&tlng=enregressiondouble Gompertzdouble logisticmesocarp
spellingShingle Edilene Cristina Pedroso Azarias
Natiele de Almeida Gonzaga
Édipo Menezes da Silva
Edilson Marcelino Silva
Tales Jesus Fernandes
Joel Augusto Muniz
Fitting nonlinear double sigmoid models to macauba fruit growth data using Bayesian inference
Ciência Rural
regression
double Gompertz
double logistic
mesocarp
title Fitting nonlinear double sigmoid models to macauba fruit growth data using Bayesian inference
title_full Fitting nonlinear double sigmoid models to macauba fruit growth data using Bayesian inference
title_fullStr Fitting nonlinear double sigmoid models to macauba fruit growth data using Bayesian inference
title_full_unstemmed Fitting nonlinear double sigmoid models to macauba fruit growth data using Bayesian inference
title_short Fitting nonlinear double sigmoid models to macauba fruit growth data using Bayesian inference
title_sort fitting nonlinear double sigmoid models to macauba fruit growth data using bayesian inference
topic regression
double Gompertz
double logistic
mesocarp
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-84782025000900203&lng=en&tlng=en
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