Metanálise de razões 87Sr/86Sr em otólitos para estabelecer limiares para determinar o movimento de peixes
DOI:
https://doi.org/10.20950/1678-2305/bip.2023.49.e832Palavras-chave:
Peixes migratórios, Área de vida de peixes, Isótopos de estrôncio, Geoquímica, Peixe reofílicoResumo
Dados não publicados em conjunto com revisão da literatura foram combinados para testar a hipótese de que existe um padrão para classificar peixes como “migradores” ou “residentes” de acordo com a variabilidade nas proporções de isótopos de estrôncio ( 87 Sr/ 86 Sr) em otólitos em função das assinaturas isotópicas ambientais. A variabilidade nas razões de Sr encontradas nos otólitos dos espécimes de peixes como porcentagem da variabilidade ambiental isotópica foi utilizada para determinar a intensidade do movimento em uma determinada área de estudo (índice POEVSri). Uma meta-análise clássica e uma regressão frequentista foram aplicadas para obter um modelo logístico para descrever o padrão. A meta-análise retornou um POEVSri limite de 28,95% para indivíduos sedentários, e o modelo logístico demonstra alta probabilidade de migração para índices POEVSri superiores a 32%. Há um gradiente de probabilidades de movimento no intervalo de POEVSri entre 8 e 32%, com cada classe tendo probabilidades iguais quando POEVSri é de aproximadamente 20%. Quanto à aplicabilidade para estudos futuros, se aspectos como amostragem espacial e sazonal suficiente da água forem abordados, o modelo fornece dois limites diferentes para os peixes: “movers” a priori são aqueles com POEVSri ≥ 32%, e os peixes residentes têm POEVSri ≤ 8%.
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Copyright (c) 2023 Fábio Ricardo da Rosa, Esteban Avigliano, Fabrice Duponchelle, Luciana Alves Pereira, Marília Hauser, Lorenzo Soriano Antonaccio Barroco, Carlos Edwar de Carvalho Freitas, Raniere Garcez Costa Sousa
Este trabalho está licenciado sob uma licença Creative Commons Attribution 4.0 International License.