Great minds map alike Citizen and expert distribution models of schistosome snail hosts in rural west Uganda

Open Access
Authors
  • Noelia Valderrama-Bhraunxs
  • Tine Huyse
  • Emiel van Loon ORCID logo
  • Anton Van Rompaey
Publication date 12-2025
Journal Ecological solutions and evidence
Article number e70163
Volume | Issue number 6 | 4
Number of pages 14
Organisations
  • Faculty of Science (FNWI) - Institute for Biodiversity and Ecosystem Dynamics (IBED)
Abstract
Schistosomiasis is a parasitic disease that affects over 250 million people worldwide, with the majority living in rural areas of sub-Saharan Africa. The parasite relies on freshwater snails of the genus Biomphalaria as intermediate hosts. Mapping snail distribution is vital for identifying disease transmission hotspots. However, expert-led monitoring is often constrained by limited resources and restricted access to remote areas, highlighting the need for scalable and cost-effective alternatives.This study evaluates the effectiveness of citizen science in predicting Biomphalaria spp. presence by comparing models built from expert - and citizen-collected data. We tested two scenarios: the first one assumed perfect detection and focused on environmental and geomorphological predictors, while the second accounted for imperfect detection to explore discrepancies between citizen observations and expert-derived detection probabilities.In the perfect detection scenario, the expert and citizen models identified site type and NDVI as significant environmental predictors of snail presence. Although both models demonstrated low marginal R2 values (~16%–17%), indicating limited explanatory power of broad-scale environmental predictors, conditional R2 values exceeded 65%, suggesting that fine-scale, site-specific habitat characteristics are critical determinants of Biomphalaria spp. presence. For the imperfect detection scenario, the expert model and the citizen observations showed minimal discrepancies, primarily explained by individual observer variability and differences in sampling effort. Increased sampling effort consistently reduced false negatives and led to unexpected observations of snail presence by the citizens (i.e. observed presence in sites predicted unsuitable by the expert model).Practical implication. Our findings demonstrate that citizen science data, when properly structured and statistically accounted for bias and errors, can generate ecological modelling outputs comparable to those based on expert-led surveys. We highlight the importance of accounting for observer variability, providing calibrated training and optimizing sampling strategies to enhance data quality. This study presents a transferable and cost-efficient framework for participatory ecological monitoring in resource-limited and undersampled regions.
Document type Article
Note With supplementary material.
Language English
Published at https://doi.org/10.1002/2688-8319.70163
Other links https://www.scopus.com/pages/publications/105024529588
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