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Risk Characterization and Probabilistic Concentration–Response Modeling of Complex Environmental Mixtures Using New Approach Methodologies (NAMs) Data from Organotypic in Vitro Human Stem Cell Assays

机译:使用新方法方法(NAMS)来自体外人干细胞测定的新方法(NAMS)数据的复杂环境混合物的风险特征和概率浓度 - 响应模拟

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Background: Risk assessment of chemical mixtures or complex substances remains a major methodological challenge due to lack of available hazard or exposure data. Therefore, risk assessors usually infer hazard or risk from data on the subset of constituents with available toxicity values. Objectives: We evaluated the validity of the widely used traditional mixtures risk assessment paradigms, Independent Action (IA) and Concentration Addition (CA), with new approach methodologies (NAMs) data from human cell-based in vitro assays. Methods: A diverse set of 42 chemicals was tested both individually and as mixtures for functional and cytotoxic effects in vitro . A panel of induced pluripotent stem cell (iPSCs)-derived models (hepatocytes, cardiomyocytes, endothelial, and neurons) and one primary cell type (HUVEC) were used. Bayesian concentration–response modeling of individual chemicals or their mixtures was performed for a total of 47 phenotypes to derive point-of-departure (POD) values. Probabilistic IA or CA was conducted to estimate the mixture effects based on the bioactivity profiles from the individual chemicals and compared with mixture bioactivity. Results: All mixtures showed significant bioactivity, even though some were constructed using individual chemical concentrations considered “low” or “safe.” Even though CA is much more accurate as a predictor of mixture effects in comparison with IA, with CA-based POD typically within an order of magnitude of the actual mixture, in some cases, the bioactivity of the mixtures appeared to be much greater than that of their components under either additivity assumption. Discussion: These results suggest that CA is a preferred first approximation for predicting mixture toxicity when data for all constituents are available. However, because the accuracy of additivity assumptions varies greatly across phenotypes, we posit that mixtures and complex substances need to be directly tested for their hazard potential. NAMs provide a practical solution that rapidly yields highly informative data for mixtures risk assessment.
机译:背景:由于缺乏可用的危险或暴露数据,化学混合物或复杂物质的风险评估仍然是主要的方法论挑战。因此,风险评估员通常从具有可用毒性值的成分子集上的数据推断出危害或风险。目的:我们评估了广泛使用的传统混合物风险评估范例,独立行动(IA)和浓度添加(CA)的有效性,具有来自人细胞的体外测定的新方法(NAMS)数据。方法:各种42种化学品,单独测试,作为体外功能和细胞毒性作用的混合物。使用诱导多能干细胞(IPSC)的模型(肝细胞,心肌细胞,内皮和神经元)和一种主要细胞类型(HUVEC)。贝叶斯浓度 - 响应各种化学物质或其混合物的响应建模,总共进行47个表型,以衍生出发点(POD)值。进行概率IA或CA以估计基于来自个体化学品的生物活性谱并与混合物生物活性进行比较。结果:所有混合物都显示出显着的生物活性,尽管有些是使用被认为是“低”或“安全”的单独化学浓度构建的。尽管与IA相比,CA与混合物效果的预测性更准确,但与IA的效果相比,通常在实际混合物的大小范围内,在某些情况下,混合物的生物活性似乎远大于它们的组件在任何添加性假设下。讨论:这些结果表明CA是当所有成分数据数据可用时预测混合物毒性的首选近似。然而,因为添加剂假设的准确性在表型上变化很大,因此我们的混合物和复杂物质需要直接测试它们的危险潜力。 NAMS提供了一种实用的解决方案,可快速产生高度信息丰富的混合物风险评估数据。

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