Guardado en:
Detalles Bibliográficos
Autores principales: Grossi, Francesca, Hazen, Elliott L, Leo, Giulio De, David, Léa, Di-Méglio, Nathalie, Arcangeli, Antonella, Pasanisi, Eugenia, Campana, Ilaria, Paraboschi, Miriam, Castelli, Alberto, Rosso, Massimiliano, Moulins, Aurelie, Tepsich, Paola
Formato: Artículo científico
Lenguaje:en
Publicado: Ecology and evolution 2025
Acceso en línea:https://pubmed.ncbi.nlm.nih.gov/40060728/
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
_version_ 1868266232049827840
author Grossi, Francesca
Hazen, Elliott L
Leo, Giulio De
David, Léa
Di-Méglio, Nathalie
Arcangeli, Antonella
Pasanisi, Eugenia
Campana, Ilaria
Paraboschi, Miriam
Castelli, Alberto
Rosso, Massimiliano
Moulins, Aurelie
Tepsich, Paola
author_facet Grossi, Francesca
Hazen, Elliott L
Leo, Giulio De
David, Léa
Di-Méglio, Nathalie
Arcangeli, Antonella
Pasanisi, Eugenia
Campana, Ilaria
Paraboschi, Miriam
Castelli, Alberto
Rosso, Massimiliano
Moulins, Aurelie
Tepsich, Paola
Grossi, Francesca
Hazen, Elliott L
Leo, Giulio De
David, Léa
Di-Méglio, Nathalie
Arcangeli, Antonella
Pasanisi, Eugenia
Campana, Ilaria
Paraboschi, Miriam
Castelli, Alberto
Rosso, Massimiliano
Moulins, Aurelie
Tepsich, Paola
collection PubMed - marine biology
contents Evaluating Three Modelling Frameworks for Assessing Changes in Fin Whale Distribution in the Mediterranean Sea. Grossi, Francesca Hazen, Elliott L Leo, Giulio De David, Léa Di-Méglio, Nathalie Arcangeli, Antonella Pasanisi, Eugenia Campana, Ilaria Paraboschi, Miriam Castelli, Alberto Rosso, Massimiliano Moulins, Aurelie Tepsich, Paola Understanding the habitat of highly migratory species is aided by using species distribution models to identify species-habitat relationships and to inform conservation and management plans. While Generalized Additive Models (GAMs) are commonly used in ecology, and particularly the habitat modeling of marine mammals, there remains a debate between modeling habitat (presence/absence) versus density (# individuals). Our study assesses the performance and predictive capabilities of GAMs compared to boosted regression trees (BRTs) for modeling both fin whale density and habitat suitability alongside Hurdle Models treating presence/absence and density as a two-stage process to address the challenge of zero-inflated data. Fin whale data were collected from 2008 to 2022 along fixed transects crossing the NW Mediterranean Sea during the summer period. Data were analyzed using traditional line transect methodology, obtaining the Effective Area monitored. Based on existing literature, we select various covariates, either static in nature, such as bathymetry and slope, or variable in time, for example, SST, MLD, Chl concentration, EKE, and FSLE. We compared both the explanatory power and predictive skill of the different modeling techniques. Our results show that all models performed well in distinguishing presences and absences but, while density and presence patterns for the fin whale were similar, their dependencies on environmental factors can vary depending on the chosen model. Bathymetry was the most important variable in all models, followed by SST and the chlorophyll recorded 2 months before the sighting. This study underscores the role SDMs can play in marine mammal conservation efforts and emphasizes the importance of selecting appropriate modeling techniques. It also quantifies the relationship between environmental variables and fin whale distribution in an understudied area, providing a solid foundation for informed decision making and spatial management.
format Artículo científico
id pubmed_40060728
institution PubMed
language en
publishDate 2025
publisher Ecology and evolution
record_format pubmed
spellingShingle Evaluating Three Modelling Frameworks for Assessing Changes in Fin Whale Distribution in the Mediterranean Sea.
Grossi, Francesca
Hazen, Elliott L
Leo, Giulio De
David, Léa
Di-Méglio, Nathalie
Arcangeli, Antonella
Pasanisi, Eugenia
Campana, Ilaria
Paraboschi, Miriam
Castelli, Alberto
Rosso, Massimiliano
Moulins, Aurelie
Tepsich, Paola
Evaluating Three Modelling Frameworks for Assessing Changes in Fin Whale Distribution in the Mediterranean Sea. Grossi, Francesca Hazen, Elliott L Leo, Giulio De David, Léa Di-Méglio, Nathalie Arcangeli, Antonella Pasanisi, Eugenia Campana, Ilaria Paraboschi, Miriam Castelli, Alberto Rosso, Massimiliano Moulins, Aurelie Tepsich, Paola Understanding the habitat of highly migratory species is aided by using species distribution models to identify species-habitat relationships and to inform conservation and management plans. While Generalized Additive Models (GAMs) are commonly used in ecology, and particularly the habitat modeling of marine mammals, there remains a debate between modeling habitat (presence/absence) versus density (# individuals). Our study assesses the performance and predictive capabilities of GAMs compared to boosted regression trees (BRTs) for modeling both fin whale density and habitat suitability alongside Hurdle Models treating presence/absence and density as a two-stage process to address the challenge of zero-inflated data. Fin whale data were collected from 2008 to 2022 along fixed transects crossing the NW Mediterranean Sea during the summer period. Data were analyzed using traditional line transect methodology, obtaining the Effective Area monitored. Based on existing literature, we select various covariates, either static in nature, such as bathymetry and slope, or variable in time, for example, SST, MLD, Chl concentration, EKE, and FSLE. We compared both the explanatory power and predictive skill of the different modeling techniques. Our results show that all models performed well in distinguishing presences and absences but, while density and presence patterns for the fin whale were similar, their dependencies on environmental factors can vary depending on the chosen model. Bathymetry was the most important variable in all models, followed by SST and the chlorophyll recorded 2 months before the sighting. This study underscores the role SDMs can play in marine mammal conservation efforts and emphasizes the importance of selecting appropriate modeling techniques. It also quantifies the relationship between environmental variables and fin whale distribution in an understudied area, providing a solid foundation for informed decision making and spatial management.
title Evaluating Three Modelling Frameworks for Assessing Changes in Fin Whale Distribution in the Mediterranean Sea.
url https://pubmed.ncbi.nlm.nih.gov/40060728/