Different facets of the same niche: Integrating citizen science and scientific survey data to predict biological invasion risk under multiple global change drivers

Author:

Di Febbraro Mirko1ORCID,Bosso Luciano2ORCID,Fasola Mauro3ORCID,Santicchia Francesca4ORCID,Aloise Gaetano5ORCID,Lioy Simone6ORCID,Tricarico Elena78ORCID,Ruggieri Luciano9,Bovero Stefano10,Mori Emiliano811ORCID,Bertolino Sandro12ORCID

Affiliation:

1. Environmetrics Lab, Department of Biosciences and Territory University of Molise Pesche Isernia Italy

2. Department of Research Infrastructures for Marine Biological Resources Stazione Zoologica Anton Dohrn Naples Italy

3. Dipartimento Scienze della Terra e dell'Ambiente Università di Pavia Pavia Italy

4. Environment Analysis and Management Unit, Guido Tosi Research Group, Department of Theoretical and Applied Sciences Università degli Studi dell'Insubria Varese Italy

5. Museo di Storia Naturale e Orto Botanico Università della Calabria Rende Cosenza Italy

6. Department of Agricultural, Forest and Food Sciences University of Turin Turin Italy

7. Department of Biology University of Florence Sesto Fiorentino Italy

8. National Biodiversity Future Center (NBFC) Palermo Italy

9. EBN Italia at Pro Natura Turin Italy

10. “Zirichiltaggi” Sardinia Wildlife Conservation NGO Sassari Italy

11. Consiglio Nazionale delle Ricerche Istituto di Ricerca sugli Ecosistemi Terrestri Florence Italy

12. Department of Life Sciences and Systems Biology University of Turin Turin Italy

Abstract

AbstractCitizen science initiatives have been increasingly used by researchers as a source of occurrence data to model the distribution of alien species. Since citizen science presence‐only data suffer from some fundamental issues, efforts have been made to combine these data with those provided by scientifically structured surveys. Surprisingly, only a few studies proposing data integration evaluated the contribution of this process to the effective sampling of species' environmental niches and, consequently, its effect on model predictions on new time intervals. We relied on niche overlap analyses, machine learning classification algorithms and ecological niche models to compare the ability of data from citizen science and scientific surveys, along with their integration, in capturing the realized niche of 13 invasive alien species in Italy. Moreover, we assessed differences in current and future invasion risk predicted by each data set under multiple global change scenarios. We showed that data from citizen science and scientific surveys captured similar species niches though highlighting exclusive portions associated with clearly identifiable environmental conditions. In terrestrial species, citizen science data granted the highest gain in environmental space to the pooled niches, determining an increased future biological invasion risk. A few aquatic species modelled at the regional scale reported a net loss in the pooled niches compared to their scientific survey niches, suggesting that citizen science data may also lead to contraction in pooled niches. For these species, models predicted a lower future biological invasion risk. These findings indicate that citizen science data may represent a valuable contribution to predicting future spread of invasive alien species, especially within national‐scale programmes. At the same time, citizen science data collected on species poorly known to citizen scientists, or in strictly local contexts, may strongly affect the niche quantification of these taxa and the prediction of their future biological invasion risk.

Funder

Università degli Studi di Firenze

Università degli Studi di Torino

Publisher

Wiley

Subject

General Environmental Science,Ecology,Environmental Chemistry,Global and Planetary Change

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