Artificial Intelligence in Aquatic Biodiversity Research: A PRISMA-Based Systematic Review.

Journal: Biology
Published Date:

Abstract

Freshwater ecosystems are increasingly threatened by climate change and anthropogenic activities, necessitating innovative and scalable monitoring solutions. Artificial intelligence (AI) has emerged as a transformative tool in aquatic biodiversity research, enabling automated species identification, predictive habitat modeling, and conservation planning. This systematic review follows the PRISMA framework to analyze AI applications in freshwater biodiversity studies. Using a structured literature search across Scopus, Web of Science, and Google Scholar, we identified 312 relevant studies published between 2010 and 2024. This review categorizes AI applications into species identification, habitat assessment, ecological risk evaluation, and conservation strategies. A risk of bias assessment was conducted using QUADAS-2 and RoB 2 frameworks, highlighting methodological challenges, such as measurement bias and inconsistencies in the model validation. The citation trends demonstrate exponential growth in AI-driven biodiversity research, with leading contributions from China, the United States, and India. Despite the growing use of AI in this field, this review also reveals several persistent challenges, including limited data availability, regional imbalances, and concerns related to model generalizability and transparency. Our findings underscore AI's potential in revolutionizing biodiversity monitoring but also emphasize the need for standardized methodologies, improved data integration, and interdisciplinary collaboration to enhance ecological insights and conservation efforts.

Authors

  • Tymoteusz Miller
    Institute of Marine and Environmental Sciences, University of Szczecin, 71-415 Szczecin, Poland.
  • Grzegorz Michoński
    Institute of Marine and Environmental Sciences, University of Szczecin, 71-415 Szczecin, Poland.
  • Irmina Durlik
    Polish Society of Bioinformatics and Data Science, Biodata, 71-214 Szczecin, Poland.
  • Polina Kozlovska
    Faculty of Economics, Finance and Management, University of Szczecin, 71-412 Szczecin, Poland.
  • Paweł Biczak
    Polish Society of Bioinformatics and Data Science, Biodata, 71-214 Szczecin, Poland.

Keywords

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