评估种间相关性估计模型,以增加分类多样性,同时减少对根据《有毒物质控制法》评估的化学品对动物试验的依赖。

IF 3 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Sandy Raimondo, Crystal R Lilavois, S Lexi Nelson, Kara Koehrn, Kellie Fay, Karen Eisenreich, Emily Vebrosky Nolan, Chris Green, James Bressette
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引用次数: 0

摘要

美国环境保护署致力于实施新的方法方法(NAMs),以加强化学品危害评估的科学基础。根据有毒物质控制法(TSCA)进行的化学评估通常是在有限的测试数据下进行的,非常适合NAMs应用。种间相关估计(ICE)模型是两种物种之间敏感性的对数线性最小二乘回归,通过替代物的敏感性估计未测试物种的急性毒性。物种间相关性估计模型是根据不同的化学作用模式建立并验证的,但其在TSCA化学评价中的应用尚未得到评价。我们使用ICE模型和五种化学物质的测量急性值数据集,增加了关注浓度(CoCs)的分类多样性。使用TSCA风险评估中常用的方法,包括将评估因子应用于最敏感的物种,以及开发物种敏感性分布,其中测量数据至少代表8种物种。将这些CoCs与补充了ICE预测值的数据集的CoCs进行比较,并将ICE预测的物种平均急性值(smav)与其各自的实测值进行比较。种间相关估计模型对SMAVs的预测值分别为87%和92%,在5和10因子范围内。coc仅根据测量数据和补充了ICE的数据预测毒性通常在5倍以内,显示出相当的保护作用。ICE补充数据集的分类多样性显著高于物种敏感性分布的实测数据,为减少不确定性提供了一种数据驱动的方法,并可能减少对评估因子的需求。种间相关估计模型有望改善TSCA下化学评价的分类代表性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of interspecies correlation estimation models to increase taxonomic diversity while reducing reliance on animal testing for chemicals evaluated under the Toxic Substances Control Act.

The U.S. Environmental Protection Agency is committed to the implementation of new approach methodologies (NAMs) to enhance the scientific basis for chemical hazard assessments. Chemical evaluations under the Toxic Substance Control Act (TSCA) are often conducted with limited test data and are well suited for NAMs applications. Interspecies correlation estimation (ICE) models are log-linear least squares regressions of the sensitivity between two species that estimate the acute toxicity of an untested species from the sensitivity of a surrogate. Interspecies correlation estimation models have been developed from and validated for diverse chemical modes of action, but their application in TSCA chemical assessments has not been previously evaluated. We use ICE models and a dataset of measured acute values for five chemicals, increasing the taxonomic diversity from which concentrations of concern (CoCs) are derived. Concentrations of concern were developed using approaches typically applied in TSCA risk evaluations, including application of assessment factors to the most sensitive species and the development of species sensitivity distributions where a minimum of eight species are represented by measured data. These CoCs were compared with those derived from datasets supplemented with ICE-predicted values, as well as comparing ICE predicted species mean acute values (SMAVs) to their respective measured values. Interspecies correlation estimation models predicted SMAVs within a factor of 5 and 10 for 87% and 92% of measured values, respectively. The CoCs developed from measured data only and data supplemented with ICE predicted toxicity were generally within five-fold, showing comparable protection. The taxonomic diversity in the ICE supplemented dataset was substantially higher than the measured data for species sensitivity distributions, providing a data-driven way of reducing uncertainty and potentially reducing the need for assessment factors. Interspecies correlation estimation models show promise as a NAM to improve the taxonomic representation included in chemical evaluations under TSCA.

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来源期刊
Integrated Environmental Assessment and Management
Integrated Environmental Assessment and Management ENVIRONMENTAL SCIENCESTOXICOLOGY&nbs-TOXICOLOGY
CiteScore
5.90
自引率
6.50%
发文量
156
期刊介绍: Integrated Environmental Assessment and Management (IEAM) publishes the science underpinning environmental decision making and problem solving. Papers submitted to IEAM must link science and technical innovations to vexing regional or global environmental issues in one or more of the following core areas: Science-informed regulation, policy, and decision making Health and ecological risk and impact assessment Restoration and management of damaged ecosystems Sustaining ecosystems Managing large-scale environmental change Papers published in these broad fields of study are connected by an array of interdisciplinary engineering, management, and scientific themes, which collectively reflect the interconnectedness of the scientific, social, and environmental challenges facing our modern global society: Methods for environmental quality assessment; forecasting across a number of ecosystem uses and challenges (systems-based, cost-benefit, ecosystem services, etc.); measuring or predicting ecosystem change and adaptation Approaches that connect policy and management tools; harmonize national and international environmental regulation; merge human well-being with ecological management; develop and sustain the function of ecosystems; conceptualize, model and apply concepts of spatial and regional sustainability Assessment and management frameworks that incorporate conservation, life cycle, restoration, and sustainability; considerations for climate-induced adaptation, change and consequences, and vulnerability Environmental management applications using risk-based approaches; considerations for protecting and fostering biodiversity, as well as enhancement or protection of ecosystem services and resiliency.
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