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Machine learning applied to species occurrence and interactions: the missing link in biodiversity assessment and modelling of Antarctic plankton distribution
Grillo, M.; Schiaparelli, S.; Durazzano, T.; Guglielmo, L.; Granata, A.; Huettmann, F. (2024). Machine learning applied to species occurrence and interactions: the missing link in biodiversity assessment and modelling of Antarctic plankton distribution. Ecol. Proces. 13(1): 56. https://dx.doi.org/10.1186/s13717-024-00532-6
In: Ecological Processes. Springer: New York. e-ISSN 2192-1709
Peer reviewed article  

Available in  Authors 

Keywords
    Aquatic communities > Plankton > Phytoplankton
    Copepoda [WoRMS]
    PS, Ross Sea [Marine Regions]; PSE, Antarctica, Victoria Land, Terra Nova Bay [Marine Regions]
    Marine/Coastal
Author keywords
    Species Distribution Model, Marine trophic web

Authors  Top 
  • Grillo, M.
  • Schiaparelli, S., more
  • Durazzano, T.
  • Guglielmo, L.
  • Granata, A.
  • Huettmann, F.

Abstract

    Background

    Plankton is the essential ecological category that occupies the lower levels of aquatic trophic networks, representing a good indicator of environmental change. However, most studies deal with distribution of single species or taxa and do not take into account the complex of biological interactions of the real world that rule the ecological processes.

    Results

    This study focused on analyzing Antarctic marine phytoplankton, mesozooplankton, and microzooplankton, examining their biological interactions and co-existences. Field data yielded 1053 biological interaction values, 762 coexistence values, and 15 zero values. Six phytoplankton assemblages and six copepod species were selected based on their abundance and ecological roles. Using 23 environmental descriptors, we modelled the distribution of taxa to accurately represent their occurrences. Sampling was conducted during the 2016–2017 Italian National Antarctic Programme (PNRA) ‘P-ROSE’ project in the East Ross Sea. Machine learning techniques were applied to the occurrence data to generate 48 predictive species distribution maps (SDMs), producing 3D maps for the entire Ross Sea area. These models quantitatively predicted the occurrences of each copepod and phytoplankton assemblage, providing crucial insights into potential variations in biotic and trophic interactions, with significant implications for the management and conservation of Antarctic marine resources. The Receiver Operating Characteristic (ROC) results indicated the highest model efficiency, for Cyanophyta (74%) among phytoplankton assemblages and Paralabidocera antarctica (83%) among copepod communities. The SDMs revealed distinct spatial heterogeneity in the Ross Sea area, with an average Relative Index of Occurrence values of 0.28 (min: 0; max: 0.65) for phytoplankton assemblages and 0.39 (min: 0; max: 0.71) for copepods.

    Conclusion

    The results of this study are essential for a science-based management for one of the world’s most pristine ecosystems and addressing potential climate-induced alterations in species interactions. Our study emphasizes the importance of considering biological interactions in planktonic studies, employing open access and machine learning for measurable and repeatable distribution modelling, and providing crucial ecological insights for informed conservation strategies in the face of environmental change.

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