将金属形态数据整合到汽车模型中,并应用于缺乏数据的关键技术要素。

IF 2.8 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Séverine Le Faucheur, Jelle Mertens, Eric Van Genderen, Amiel Boullemant, Claude Fortin, Peter G C Campbell
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引用次数: 0

摘要

在之前的一篇论文中,我们开发了定量离子特征-活性关系(QICARs),将金属的内在特性与其对淡水水生生物的急性毒性联系起来。这些预测工具是为一组数据丰富的训练元素开发的,然后应用于技术关键元素(tce)的代表性选择。tce的毒性预测相当好,大多数值位于95%的预测区间内。在目前的工作中,我们将这种方法扩展到使用计算的金属形态。利用线性自由能关系来估计一些需要的热力学常数。利用这些信息,我们将产生50%效应水平(EC50)值的浓度表示为游离金属活性,并进行回归分析。对于训练金属,与使用总溶解金属获得的测定系数相比,测定系数略有增加。与之前一样,对数转换后的共价指数复合值(χm 2r)是它们对藻类和水蚤的急性毒性的最佳预测值(χm =金属的电负性;r =离子半径)。然而,对于tce,回归差得多,特别是当预测的游离金属离子浓度非常低(例如,小于10-18 M)时。我们认为,这一结果反映了这些金属的独特形态,其中(i)自由金属离子仅在极低浓度下存在(其计算存在问题),以及(ii)除了一种情况(Au(CN)2 -)外,金属的计算形态主要是中性多羟基物种(例如Au(OH) 30, Ge(OH) 40…)。在我们看来,这一结果并不会影响qicar的使用。相反,QICARs的使用表明,自由离子活性可能不足以预测所研究的数据贫乏金属的毒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporation of metal speciation data into qicar models and application to data-poor technology-critical elements.

In a previous paper we developed Quantitative Ion Character-Activity Relationships (QICARs) to relate the intrinsic properties of a metal to its acute toxicity towards freshwater aquatic organisms. These predictive tools were developed for a set of data-rich training elements and then applied to a representative selection of Technology-Critical Elements (TCEs). The toxicity of the TCEs was reasonably well predicted, with most values located within the 95% prediction intervals. In the present work we have extended this approach to use the calculated metal speciation. Linear Free Energy Relationships were used to estimate some of the needed thermodynamic constants. Using this information, we expressed the concentration resulting in a 50% effect level (EC50) values as free metal activities and performed the regression analyses. For the training metals, the determination coefficients slightly increased compared to those obtained using the total dissolved metal. As before, the log transformed composite value of the covalent index (χm  2r) was the best predictor of their acute toxicity towards algae and daphnids (χm = metal's electronegativity; r = ionic radius). However, for the TCEs the regressions were much poorer, particularly when the predicted free metal ion concentrations were very low (e.g., less than 10-18 M). We suggest that this result reflects the distinctive speciation of these metals, where (i) the free metal ion is present only at vanishingly low concentrations (the calculation of which is problematic), and (ii) in all but one case (Au(CN)2  -), the metal's calculated speciation is dominated by neutral polyhydroxo species (e.g., Au(OH)3  0, Ge(OH)4  0…). In our view, this result does not undermine the use of QICARs. Rather, the use of QICARs has revealed that the free-ion activity could be inadequate for predicting the toxicity of the studied data-poor metals.

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来源期刊
CiteScore
7.40
自引率
9.80%
发文量
265
审稿时长
3.4 months
期刊介绍: The Society of Environmental Toxicology and Chemistry (SETAC) publishes two journals: Environmental Toxicology and Chemistry (ET&C) and Integrated Environmental Assessment and Management (IEAM). Environmental Toxicology and Chemistry is dedicated to furthering scientific knowledge and disseminating information on environmental toxicology and chemistry, including the application of these sciences to risk assessment.[...] Environmental Toxicology and Chemistry is interdisciplinary in scope and integrates the fields of environmental toxicology; environmental, analytical, and molecular chemistry; ecology; physiology; biochemistry; microbiology; genetics; genomics; environmental engineering; chemical, environmental, and biological modeling; epidemiology; and earth sciences. ET&C seeks to publish papers describing original experimental or theoretical work that significantly advances understanding in the area of environmental toxicology, environmental chemistry and hazard/risk assessment. Emphasis is given to papers that enhance capabilities for the prediction, measurement, and assessment of the fate and effects of chemicals in the environment, rather than simply providing additional data. The scientific impact of papers is judged in terms of the breadth and depth of the findings and the expected influence on existing or future scientific practice. Methodological papers must make clear not only how the work differs from existing practice, but the significance of these differences to the field. Site-based research or monitoring must have regional or global implications beyond the particular site, such as evaluating processes, mechanisms, or theory under a natural environmental setting.
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