4.7 Article

Integrating experimental and distribution data to predict future species patterns

Journal

SCIENTIFIC REPORTS
Volume 9, Issue -, Pages -

Publisher

NATURE RESEARCH
DOI: 10.1038/s41598-018-38416-3

Keywords

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Funding

  1. BONUS project BAMBI
  2. joint Baltic Sea research and development programme [Art 185]
  3. European Union's Seventh Programme for research, technological development and demonstration
  4. Baltic Sea countries
  5. Estonian Research Council [IUT02-20]
  6. Academy of Finland [317255]
  7. University of Helsinki
  8. Jane and Aatos Erkko Foundation
  9. Linnaeus Centre for Marine Evolutionary Biology at the University of Gothenburg
  10. Swedish Research Councils VR and Formas
  11. Ministry of Environment, Finland (VELMU Programme)
  12. SmartSea project (Academy of Finland, Strategic Research Council) [292985]

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Predictive species distribution models are mostly based on statistical dependence between environmental and distributional data and therefore may fail to account for physiological limits and biological interactions that are fundamental when modelling species distributions under future climate conditions. Here, we developed a state-of-the-art method integrating biological theory with survey and experimental data in a way that allows us to explicitly model both physical tolerance limits of species and inherent natural variability in regional conditions and thereby improve the reliability of species distribution predictions under future climate conditions. By using a macroalga-herbivore association (Fucus vesiculosus - Idotea balthica) as a case study, we illustrated how salinity reduction and temperature increase under future climate conditions may significantly reduce the occurrence and biomass of these important coastal species. Moreover, we showed that the reduction of herbivore occurrence is linked to reduction of their host macroalgae. Spatial predictive modelling and experimental biology have been traditionally seen as separate fields but stronger interlinkages between these disciplines can improve species distribution projections under climate change. Experiments enable qualitative prior knowledge to be defined and identify cause-effect relationships, and thereby better foresee alterations in ecosystem structure and functioning under future climate conditions that are not necessarily seen in projections based on non-causal statistical relationships alone.

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