EcoTox, 2263 SW 37th Avenue, #816, Miami, Florida 33145, United States.
University of Miami, RSMAS 4600 Rickenbacker Causeway, Miami, Florida 33149, United States.
Environ Sci Technol. 2017 May 2;51(9):5182-5192. doi: 10.1021/acs.est.6b05533. Epub 2017 Apr 20.
Biotic Ligand Models (BLMs) for metals are widely applied in ecological risk assessments and in the development of regulatory water quality guidelines in Europe, and in 2007 the United States Environmental Protection Agency (USEPA) recommended BLM-based water quality criteria (WQC) for Cu in freshwater. However, to-date, few states have adopted BLM-based Cu criteria into their water quality standards on a state-wide basis, which appears to be due to the perception that the BLM is too complicated or requires too many input variables. Using the mechanistic BLM framework to first identify key water chemistry parameters that influence Cu bioavailability, namely dissolved organic carbon (DOC), pH, and hardness, we developed Cu criteria using the same basic methodology used by the USEPA to derive hardness-based criteria but with the addition of DOC and pH. As an initial proof of concept, we developed stepwise multiple linear regression (MLR) models for species that have been tested over wide ranges of DOC, pH, and hardness conditions. These models predicted acute Cu toxicity values that were within a factor of ±2 in 77% to 97% of tests (5 species had adequate data) and chronic Cu toxicity values that were within a factor of ±2 in 92% of tests (1 species had adequate data). This level of accuracy is comparable to the BLM. Following USEPA guidelines for WQC development, the species data were then combined to develop a linear model with pooled slopes for each independent parameter (i.e., DOC, pH, and hardness) and species-specific intercepts using Analysis of Covariance. The pooled MLR and BLM models predicted species-specific toxicity with similar precision; adjusted R and R values ranged from 0.56 to 0.86 and 0.66-0.85, respectively. Graphical exploration of relationships between predicted and observed toxicity, residuals and observed toxicity, and residuals and concentrations of key input parameters revealed many similarities and a few key distinctions between the performances of the two models. The pooled MLR model was then applied to the species sensitivity distribution to derive acute and chronic criteria equations similar in form to the USEPA's current hardness-based criteria equations but with DOC, pH, and hardness as the independent variables. Overall, the MLR is less responsive to DOC than the BLM across a range of hardness and pH conditions but more responsive to hardness than the BLM. Additionally, at low and intermediate hardness, the MLR model is less responsive than the BLM to pH, but the two models respond comparably at high hardness. The net effect of these different response profiles is that under many typical water quality conditions, MLR- and BLM-based criteria are quite comparable. Indeed, conditions where the two models differ most (high pH/low hardness and low pH/high hardness) are relatively rare in natural aquatic systems. We suggest that this MLR-based approach, which includes the mechanistic foundation of the BLM but is also consistent with widely accepted hardness-dependent WQC in terms of development and form, may facilitate adoption of updated state-wide Cu criteria that more accurately account for the parameters influencing Cu bioavailability than current hardness-based criteria.
生物配体模型(BLM)在金属方面被广泛应用于生态风险评估和欧洲法规水质标准的制定中,并且 2007 年美国环境保护署(USEPA)推荐了基于 BLM 的铜水质标准(WQC)用于淡水。然而,迄今为止,很少有州在全州范围内将基于 BLM 的铜标准纳入其水质标准,这似乎是因为人们认为 BLM 过于复杂或需要太多的输入变量。我们使用基于机制的 BLM 框架首先确定影响铜生物利用度的关键水化学参数,即溶解有机碳(DOC)、pH 值和硬度,然后使用与 USEPA 用于推导基于硬度的标准相同的基本方法,但添加了 DOC 和 pH 值,开发了铜标准。作为初步概念验证,我们为经过广泛测试的 DOC、pH 值和硬度条件的物种开发了逐步多元线性回归(MLR)模型。这些模型预测的急性铜毒性值在 77%至 97%的测试中在±2 倍以内(5 种物种有足够的数据),慢性铜毒性值在 92%的测试中在±2 倍以内(1 种物种有足够的数据)。这种准确度与 BLM 相当。根据 USEPA 的 WQC 开发指南,将物种数据组合在一起,使用协方差分析为每个独立参数(即 DOC、pH 值和硬度)和物种特异性截距开发具有 pooled 斜率的线性模型。pooled MLR 和 BLM 模型以相似的精度预测物种特异性毒性;调整后的 R 和 R 值分别在 0.56 到 0.86 和 0.66 到 0.85 之间。对预测毒性与观察毒性、残差与观察毒性以及关键输入参数的残差与浓度之间关系的图形探索揭示了两种模型之间的许多相似之处和一些关键区别。然后将 pooled MLR 模型应用于物种敏感性分布,以推导出类似于 USEPA 当前基于硬度的标准方程的急性和慢性标准方程,但将 DOC、pH 值和硬度作为自变量。总体而言,与 BLM 相比,MLR 对 DOC 的响应不如 BLM 敏感,但对硬度的响应比 BLM 更敏感。此外,在低硬度和中等硬度条件下,MLR 模型对 pH 的响应不如 BLM 敏感,但在高硬度条件下,两种模型的响应相当。这些不同响应模式的综合影响是,在许多典型的水质条件下,基于 MLR 和 BLM 的标准非常相似。事实上,两种模型差异最大的条件(高 pH 值/低硬度和低 pH 值/高硬度)在自然水生系统中相对较少见。我们建议采用这种基于 MLR 的方法,该方法包括 BLM 的机制基础,但在开发和形式上也与广泛接受的基于硬度的 WQC 一致,这可能有助于采用更准确地考虑影响铜生物利用度的参数的更新的全州范围的铜标准,而不是当前基于硬度的标准。