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Otolith reading and multi-model inference for improved estimation of age and growth in the gilthead seabream Sparus aurata (L.)
Authors:Lny Mercier  Jacques Panfili  Christelle Paillon  Awa N'diaye  David Mouillot  Audrey M Darnaude
Institution:a UMR 5119 UM2-CNRS-IRD-IFREMER-UM1 ECOSYM, Place Eugène Bataillon, 34095 Montpellier Cedex 5, France;b UMR 5119 UM2-CNRS-IRD-IFREMER-UM1 ECOSYM, IRD B.P. 1386, 18524 Dakar, Senegal
Abstract:Accurate knowledge of fish age and growth is crucial for species conservation and management of exploited marine stocks. In exploited species, age estimation based on otolith reading is routinely used for building growth curves that are used to implement fishery management models. However, the universal fit of the von Bertalanffy growth function (VBGF) on data from commercial landings can lead to uncertainty in growth parameter inference, preventing accurate comparison of growth-based history traits between fish populations. In the present paper, we used a comprehensive annual sample of wild gilthead seabream (Sparus aurata L.) in the Gulf of Lions (France, NW Mediterranean) to test a methodology improving growth modelling for exploited fish populations. After validating the timing for otolith annual increment formation for all life stages, a comprehensive set of growth models (including VBGF) were fitted to the obtained age–length data, used as a whole or sub-divided between group 0 individuals and those coming from commercial landings (ages 1–6). Comparisons in growth model accuracy based on Akaike Information Criterion allowed assessment of the best model for each dataset and, when no model correctly fitted the data, a multi-model inference (MMI) based on model averaging was carried out. The results provided evidence that growth parameters inferred with VBGF must be used with high caution. Hence, VBGF turned to be among the less accurate for growth prediction irrespective of the dataset and its fit to the whole population, the juvenile or the adult datasets provided different growth parameters. The best models for growth prediction were the Tanaka model, for group 0 juveniles, and the MMI, for the older fish, confirming that growth differs substantially between juveniles and adults. All asymptotic models failed to correctly describe the growth of adult S. aurata, probably because of the poor representation of old individuals in the dataset. Multi-model inference associated with separate analysis of juveniles and adult fish is then advised to obtain objective estimations of growth parameters when sampling cannot be corrected towards older fish.
Keywords:gilthead seabream  Von Bertalanffy growth function  multi-model inference  AIC weights  Mediterranean Sea  Gulf of Lions
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