0
Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Sign in to save

Bayesian species sensitivity distribution modeling for microplastic particles: integrating particle characteristics and intra-species variation

Environmental Toxicology and Chemistry 2026 Score: 50 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Kazutaka M. Takeshita, Koji Ueda, Koji Ueda, Koji Ueda, Yuichi Iwasaki, Koji Ueda, Wataru Naito Kazutaka M. Takeshita, Kazutaka M. Takeshita, Wataru Naito Koji Ueda, Koji Ueda, Wataru Naito Wataru Naito Wataru Naito Wataru Naito Yuichi Iwasaki, Wataru Naito Wataru Naito Wataru Naito

Summary

Researchers applied hierarchical Bayesian modeling to develop species sensitivity distributions for microplastics, incorporating particle size, shape, and censored effect data across up to 33 species, finding that smaller particles and fiber shapes are associated with lower chronic no-effect concentrations and estimating hazardous concentrations spanning several orders of magnitude.

Because of the global concern about the environmental impacts of microplastic particles (MPs), scientifically defensible ecological risk assessments are increasingly required. However, such assessments remain challenging because of factors such as the diversity of MP characteristics (e.g., particle length and shape). In this study, we developed species sensitivity distributions (SSDs) for MPs using hierarchical Bayesian modeling, which accounted for intra-species variation as well as the influence of MP characteristics on chronic no observed effect concentrations (NOECs). We also incorporated highest observed no-effect concentrations (HONECs) into SSD estimation by appropriately treating them as right-censored data. Using data from a recently updated ecotoxicity database, we analyzed two datasets excluding HONECs (21 species) and including HONECs (33 species). For the HONEC-excluded dataset, the best SSD model, selected based on the widely applicable information criterion, included size category (<83 μm vs. ≥83 μm) and fiber shape, suggesting that smaller particles and fibers were associated with lower chronic NOECs. For the HONEC-included dataset, the best model included particle length and shape (fragment and fiber), indicating that shorter particle lengths and non-spherical shapes were linked to lower chronic NOECs. Median estimates of the hazardous concentration for 5% of species (HC5) ranged from 0.06 μg/L (fiber, particle length <83 μm) to 111 μg/L (non-fiber, particle length ≥83 μm) in the HONEC-excluded dataset. For the HONEC-included dataset, median HC5 estimates ranged from 0.003 to 167 μg/L depending on particle length and shape, while their 95% Bayesian credible intervals spanned approximately 5 to 7 orders of magnitude. Despite uncertainties in modeling, our SSD modeling framework provided a generalizable and data-informed approach to the incorporation of diverse MP characteristics and censored effect concentrations to improve ecological risk assessments for MPs as well as other substances.

Sign in to start a discussion.

Share this paper