Schoenke Venja S A M, Wang Jiaqi, Van den Brink Paul J, Hendriks A Jan
Department of Environmental Science, Radboud University Nijmegen, Nijmegen, Gelderland, The Netherlands.
Aquatic Ecology and Water quality Management Group, Wageningen, Gelderland, The Netherlands.
Environ Toxicol Chem. 2025 Apr 1;44(4):1134-1141. doi: 10.1093/etojnl/vgaf015.
Because chemical pollution poses a persistent threat to freshwater ecosystems and biodiversity, innovative methodologies are required to address the ecological risks associated with such pollutants. This study predicts the long-term impacts of chemicals based on an equation that describes the time dependency of the median lethal and effect concentration (L(E)C50) with the critical body residue concept. This way, the methodology can predict species sensitivity distributions for any given time point. The methodology was extended to predict the mean species abundance relationships (MSAR) as an indicator of biodiversity. To test and validate the methodology, data from a case study with six freshwater arthropods exposed short- and long-term to imidacloprid were used. The potentially affected fraction of species (PAF) and its opposite (1-PAF) were used to validate the MSAR framework itself. The accuracy of the predicted chronic LC50 values was species-dependent. However, except for one species, all predicted chronic LC50 values were within the 95% confidence intervals (CIs) of the fits based on only acute data. The mean differences between the predicted and calculated MSARs were between 2% and 6%. The predicted MSARs generally underestimated the impact of imidacloprid. However, all predicted MSARs were either similar or lower than the calculated 1-PAF, and their CIs covered the calculated MSARs. Thus, the study found that the presented methodology is useful for predicting the long-term effects of chemical pollutants.
由于化学污染对淡水生态系统和生物多样性构成持续威胁,因此需要创新方法来应对与此类污染物相关的生态风险。本研究基于一个描述半数致死浓度和效应浓度(L(E)C50)与关键身体残留概念的时间依赖性的方程式来预测化学物质的长期影响。通过这种方式,该方法可以预测任何给定时间点的物种敏感性分布。该方法被扩展以预测作为生物多样性指标的平均物种丰度关系(MSAR)。为了测试和验证该方法,使用了来自一个案例研究的数据,该研究对六种淡水节肢动物进行了短期和长期的吡虫啉暴露实验。使用物种的潜在受影响比例(PAF)及其相反值(1-PAF)来验证MSAR框架本身。预测的慢性半数致死浓度(LC50)值的准确性因物种而异。然而,除了一个物种外,所有预测的慢性LC50值都在仅基于急性数据的拟合的95%置信区间(CI)内。预测的和计算的MSAR之间的平均差异在2%到6%之间。预测的MSAR通常低估了吡虫啉的影响。然而,所有预测的MSAR要么与计算的1-PAF相似,要么低于计算的1-PAF,并且它们的CI覆盖了计算的MSAR。因此,该研究发现所提出的方法对于预测化学污染物的长期影响是有用的。