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Main Authors: Talarico, Lorenzo, Catucci, Elena, Martinoli, Marco, Scardi, Michele, Tancioni, Lorenzo
Format: Artículo científico
Language:en
Published: Ecology and evolution 2025
Online Access:https://pubmed.ncbi.nlm.nih.gov/40584670/
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author Talarico, Lorenzo
Catucci, Elena
Martinoli, Marco
Scardi, Michele
Tancioni, Lorenzo
author_facet Talarico, Lorenzo
Catucci, Elena
Martinoli, Marco
Scardi, Michele
Tancioni, Lorenzo
Talarico, Lorenzo
Catucci, Elena
Martinoli, Marco
Scardi, Michele
Tancioni, Lorenzo
collection PubMed - marine biology
contents Modelling Complex Spatial Distribution in Central Italy: A Random Forest Approach Revealing Underrepresented Lowland Populations Based on Spatially-Explicit Predictors. Talarico, Lorenzo Catucci, Elena Martinoli, Marco Scardi, Michele Tancioni, Lorenzo Species distribution models are powerful tools to infer ecology and support management of conservation and socio-economic valuable taxa, such as brown trout ( complex). Using a random forest approach, we modelled its distribution in central Italy watercourses, using recent presences/absences and eight environmental/bioclimatic predictors. The model shows (i) high predictive ability ( = 0.76), (ii) predicts suitable, naturally-infrequent lowland watercourses where brown trout occurs or may occur. Moreover, the prediction values (iii) expresses a remarkable positive monotone relationship with abundance classes of brown trout computed during field sampling, despite such information was not included in the model development. Predictors' importance pointed out to the crucial role of bioclimatic constraints (linked to thermal suitability and habitat availability) over anthropogenic disturbance and lithotypes. This modelling exercise reiterates the importance of modelling approaches based on spatially explicit proxies of species habitat requirements to assist taxa management by revealing suitable but infrequent and singular areas that could be considered worthy of protection.
format Artículo científico
id pubmed_40584670
institution PubMed
language en
publishDate 2025
publisher Ecology and evolution
record_format pubmed
spellingShingle Modelling Complex Spatial Distribution in Central Italy: A Random Forest Approach Revealing Underrepresented Lowland Populations Based on Spatially-Explicit Predictors.
Talarico, Lorenzo
Catucci, Elena
Martinoli, Marco
Scardi, Michele
Tancioni, Lorenzo
Modelling Complex Spatial Distribution in Central Italy: A Random Forest Approach Revealing Underrepresented Lowland Populations Based on Spatially-Explicit Predictors. Talarico, Lorenzo Catucci, Elena Martinoli, Marco Scardi, Michele Tancioni, Lorenzo Species distribution models are powerful tools to infer ecology and support management of conservation and socio-economic valuable taxa, such as brown trout ( complex). Using a random forest approach, we modelled its distribution in central Italy watercourses, using recent presences/absences and eight environmental/bioclimatic predictors. The model shows (i) high predictive ability ( = 0.76), (ii) predicts suitable, naturally-infrequent lowland watercourses where brown trout occurs or may occur. Moreover, the prediction values (iii) expresses a remarkable positive monotone relationship with abundance classes of brown trout computed during field sampling, despite such information was not included in the model development. Predictors' importance pointed out to the crucial role of bioclimatic constraints (linked to thermal suitability and habitat availability) over anthropogenic disturbance and lithotypes. This modelling exercise reiterates the importance of modelling approaches based on spatially explicit proxies of species habitat requirements to assist taxa management by revealing suitable but infrequent and singular areas that could be considered worthy of protection.
title Modelling Complex Spatial Distribution in Central Italy: A Random Forest Approach Revealing Underrepresented Lowland Populations Based on Spatially-Explicit Predictors.
url https://pubmed.ncbi.nlm.nih.gov/40584670/