Modelling the growth of tambaqui, Colossoma macropomum (Cuvier, 1816) in floodplain lakes: model selection and multimodel inference

The tambaqui, Colossoma macropomum, is one of the most commercially valuable Amazonian fish species, and in the floodplains of the region, they are caught in both rivers and lakes. Most growth studies on this species to date have adjusted only one growth model, the von Bertalanffy, without consideri...

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Main Authors: LRF Costa, RB Barthem, AL Albernaz, MM Bittencourt, MA Villacorta-Corrêa
Format: Article
Language:English
Published: Instituto Internacional de Ecologia
Series:Brazilian Journal of Biology
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1519-69842013000200397&lng=en&tlng=en
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spelling doaj-b9b83240686143fa812345cffd5813292020-11-25T00:30:35ZengInstituto Internacional de EcologiaBrazilian Journal of Biology1678-437573239740310.1590/S1519-69842013000200021S1519-69842013000200397Modelling the growth of tambaqui, Colossoma macropomum (Cuvier, 1816) in floodplain lakes: model selection and multimodel inferenceLRF CostaRB BarthemAL AlbernazMM BittencourtMA Villacorta-CorrêaThe tambaqui, Colossoma macropomum, is one of the most commercially valuable Amazonian fish species, and in the floodplains of the region, they are caught in both rivers and lakes. Most growth studies on this species to date have adjusted only one growth model, the von Bertalanffy, without considering its possible uncertainties. In this study, four different models (von Bertalanffy, Logistic, Gompertz and the general model of Schnüte-Richards) were adjusted to a data set of fish caught within lakes from the middle Solimões River. These models were adjusted by non-linear equations, using the sample size of each age class as its weight. The adjustment evaluation of each model was based on the Akaike Information Criterion (AIC), the variation of AIC between the models (Δi) and the evidence weights (wi). Both the Logistic (Δi = 0.0) and Gompertz (Δi = 1.12) models were supported by the data, but neither of them was clearly superior (wi, respectively 52.44 and 29.95%). Thus, we propose the use of an averaged-model to estimate the asymptotic length (L∞). The averaged-model, based on Logistic and Gompertz models, resulted in an estimate of L∞=90.36, indicating that the tambaqui would take approximately 25 years to reach average size.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1519-69842013000200397&lng=en&tlng=enAmazonColossoma macropomumfish growthmodel selectionmultimodel inference
collection DOAJ
language English
format Article
sources DOAJ
author LRF Costa
RB Barthem
AL Albernaz
MM Bittencourt
MA Villacorta-Corrêa
spellingShingle LRF Costa
RB Barthem
AL Albernaz
MM Bittencourt
MA Villacorta-Corrêa
Modelling the growth of tambaqui, Colossoma macropomum (Cuvier, 1816) in floodplain lakes: model selection and multimodel inference
Brazilian Journal of Biology
Amazon
Colossoma macropomum
fish growth
model selection
multimodel inference
author_facet LRF Costa
RB Barthem
AL Albernaz
MM Bittencourt
MA Villacorta-Corrêa
author_sort LRF Costa
title Modelling the growth of tambaqui, Colossoma macropomum (Cuvier, 1816) in floodplain lakes: model selection and multimodel inference
title_short Modelling the growth of tambaqui, Colossoma macropomum (Cuvier, 1816) in floodplain lakes: model selection and multimodel inference
title_full Modelling the growth of tambaqui, Colossoma macropomum (Cuvier, 1816) in floodplain lakes: model selection and multimodel inference
title_fullStr Modelling the growth of tambaqui, Colossoma macropomum (Cuvier, 1816) in floodplain lakes: model selection and multimodel inference
title_full_unstemmed Modelling the growth of tambaqui, Colossoma macropomum (Cuvier, 1816) in floodplain lakes: model selection and multimodel inference
title_sort modelling the growth of tambaqui, colossoma macropomum (cuvier, 1816) in floodplain lakes: model selection and multimodel inference
publisher Instituto Internacional de Ecologia
series Brazilian Journal of Biology
issn 1678-4375
description The tambaqui, Colossoma macropomum, is one of the most commercially valuable Amazonian fish species, and in the floodplains of the region, they are caught in both rivers and lakes. Most growth studies on this species to date have adjusted only one growth model, the von Bertalanffy, without considering its possible uncertainties. In this study, four different models (von Bertalanffy, Logistic, Gompertz and the general model of Schnüte-Richards) were adjusted to a data set of fish caught within lakes from the middle Solimões River. These models were adjusted by non-linear equations, using the sample size of each age class as its weight. The adjustment evaluation of each model was based on the Akaike Information Criterion (AIC), the variation of AIC between the models (Δi) and the evidence weights (wi). Both the Logistic (Δi = 0.0) and Gompertz (Δi = 1.12) models were supported by the data, but neither of them was clearly superior (wi, respectively 52.44 and 29.95%). Thus, we propose the use of an averaged-model to estimate the asymptotic length (L∞). The averaged-model, based on Logistic and Gompertz models, resulted in an estimate of L∞=90.36, indicating that the tambaqui would take approximately 25 years to reach average size.
topic Amazon
Colossoma macropomum
fish growth
model selection
multimodel inference
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1519-69842013000200397&lng=en&tlng=en
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