Premium
Correlative climatic niche models predict real and virtual species distributions equally well
Author(s) -
Journé Valentin,
Barnagaud JeanYves,
Bernard Cyril,
Crochet PierreAndré,
Morin Xavier
Publication year - 2020
Publication title -
ecology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.144
H-Index - 294
eISSN - 1939-9170
pISSN - 0012-9658
DOI - 10.1002/ecy.2912
Subject(s) - environmental niche modelling , range (aeronautics) , predictive power , species distribution , ecological niche , ecology , niche , climate change , taxonomic rank , taxon , biodiversity , macroecology , correlative , geography , biology , habitat , philosophy , materials science , epistemology , composite material , linguistics
Climate is one of the main factors driving species distributions and global biodiversity patterns. Obtaining accurate predictions of species’ range shifts in response to ongoing climate change has thus become a key issue in ecology and conservation. Correlative species distribution models ( cSDM s) have become a prominent tool to this aim in the last decade and have demonstrated good predictive abilities with current conditions, irrespective of the studied taxon. However, cSDM s rely on statistical association between species’ presence and environmental conditions and have rarely been challenged on their actual capacity to reflect causal relationships between species and climate. In this study, we question whether cSDM s can accurately identify if climate and species distributions are causally linked, a prerequisite for accurate prediction of range shift in relation to climate change. We compared the performance of cSDM s in predicting the distributions of 132 European terrestrial species, chosen randomly within five taxonomic groups (three vertebrate groups and two plant groups), and of 1,320 virtual species whose distribution is causally fully independent from climate. We found that (1) for real species, the performance of cSDM s varied principally with range size, rather than with taxonomic groups and (2) cSDM s did not predict the distributions of real species with a greater accuracy than the virtual ones. Our results unambiguously show that the high predictive power of cSDM s can be driven by spatial autocorrelation in climatic and distributional data and does not necessarily reflect causal relationships between climate and species distributions. Thus, high predictive performance of cSDM s does not ensure that they accurately depict the role of climate in shaping species distributions. Our findings therefore call for strong caution when using cSDM s to provide predictions on future range shifts in response to climate change.