: Species distribution models (SDMs) are commonly used to estimate species' geographic distributions to inform biodiversity assessments and conservation planning. However, despite their growing popularity, range predictions of SDMs are affected by biases in opportunistic occurrence records and the lack of information on range limits. Integration of expert range maps in SDMs could help, but this strategy is still rarely used, especially for marine species. We built SDMs for 196 marine fish species with global distributions of Epinephelidae and Syngnathidae, 4 modeling algorithms, and opportunistic occurrence data. We then developed 2 types of SDM ensembles (i.e., combined predictions of multiple individual SDMs): with and without integration of expert range maps. We quantified the level of dissimilarity in range estimates between the 2 ensembles and explored the effects of taxonomic identity, geographic attributes, and conservation status on dissimilarity in model predictions. Although both types of ensembles had good predictive performance, ensembles informed by expert range maps avoided overpredictions of ranges past geographical barriers. Moreover, the dissimilarity between predictions of the 2 ensembles depended on multiple factors, including the number and extent of opportunistic occurrences, distance of occurrences to the expert range polygons, and fish family. Based on our findings, we recommend that researchers combine complementary information provided by expert range maps and opportunistic occurrences when predicting marine species distributions with SDMs.

Integrating expert range maps and opportunistic occurrence records of marine fish species in range estimates

Mammola, Stefano;
2025

Abstract

: Species distribution models (SDMs) are commonly used to estimate species' geographic distributions to inform biodiversity assessments and conservation planning. However, despite their growing popularity, range predictions of SDMs are affected by biases in opportunistic occurrence records and the lack of information on range limits. Integration of expert range maps in SDMs could help, but this strategy is still rarely used, especially for marine species. We built SDMs for 196 marine fish species with global distributions of Epinephelidae and Syngnathidae, 4 modeling algorithms, and opportunistic occurrence data. We then developed 2 types of SDM ensembles (i.e., combined predictions of multiple individual SDMs): with and without integration of expert range maps. We quantified the level of dissimilarity in range estimates between the 2 ensembles and explored the effects of taxonomic identity, geographic attributes, and conservation status on dissimilarity in model predictions. Although both types of ensembles had good predictive performance, ensembles informed by expert range maps avoided overpredictions of ranges past geographical barriers. Moreover, the dissimilarity between predictions of the 2 ensembles depended on multiple factors, including the number and extent of opportunistic occurrences, distance of occurrences to the expert range polygons, and fish family. Based on our findings, we recommend that researchers combine complementary information provided by expert range maps and opportunistic occurrences when predicting marine species distributions with SDMs.
2025
Istituto di Ricerca sulle Acque - IRSA - Sede Secondaria Verbania
barrera de dispersión
conocimiento de expertos
data integration
dispersal barrier
expert knowledge
generalización apilada
integración de datos
modelo de distribución de especies
species distribution model
stacked generalization
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/554761
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