Valdiviezo Alan, Luo Yu-Syuan, Chen Zunwei, Chiu Weihsueh A, Rusyn Ivan
Interdisciplinary Faculty of Toxicology, College of Veterinary Medicine and Biomedical Sciences, Texas A&M University, College Station, Texas 77843, USA.
Department of Veterinary Integrative Biosciences, College of Veterinary Medicine and Biomedical Sciences, Texas A&M University, College Station, Texas 77843, USA.
Toxicol Sci. 2021 Aug 30;183(1):60-69. doi: 10.1093/toxsci/kfab076.
In vitro cell-based toxicity testing methods generate large amounts of data informative for risk-based evaluations. To allow extrapolation of the quantitative outputs from cell-based tests to the equivalent exposure levels in humans, reverse toxicokinetic modeling is used to conduct in vitro-to-in vivo extrapolation (IVIVE) from in vitro effective concentrations to in vivo oral dose equivalents. IVIVE modeling approaches for individual chemicals are well-established; however, the potential implications of chemical-to-chemical interactions in mixture settings on IVIVE remain largely unexplored. We hypothesized that chemical coexposures could modulate both protein binding efficiency and hepatocyte clearance of the chemicals in a mixture, which would in turn affect the quantitative IVIVE toxicokinetic parameters. To test this hypothesis, we used 20 pesticides from the Agency for Toxic Substances and Disease Registry Substance Priority List, both individually and as equimolar mixtures, and investigated the concentration-dependent effects of chemical interactions on in vitro toxicokinetic parameters. Plasma protein binding efficiency was determined by using ultracentrifugation, and hepatocyte clearance was estimated in suspensions of cryopreserved primary human hepatocytes. We found that for single chemicals, the protein binding efficiencies were similar at different test concentrations. In a mixture, however, both protein binding efficiency and hepatocyte clearance were affected. When IVIVE was conducted using mixture-derived toxicokinetic data, more conservative estimates of activity-to-exposure ratios were produced as compared with using data from single chemical experiments. Because humans are exposed to mixtures of chemicals, this study is significant as it demonstrates the importance of incorporating mixture-derived parameters into IVIVE for in vitro bioactivity data in order to accurately prioritize risks and facilitate science-based decision-making.
基于细胞的体外毒性测试方法可生成大量对基于风险的评估有参考价值的数据。为了将基于细胞测试的定量结果外推至人体中的等效暴露水平,需使用反向毒代动力学模型进行从体外有效浓度到体内口服剂量当量的体外到体内外推(IVIVE)。针对单一化学品的IVIVE建模方法已很成熟;然而,混合物环境中化学品之间的相互作用对IVIVE的潜在影响在很大程度上仍未得到探索。我们假设化学物质的共同暴露可调节混合物中化学物质的蛋白质结合效率和肝细胞清除率,进而影响定量IVIVE毒代动力学参数。为验证这一假设,我们使用了来自有毒物质和疾病登记署物质优先清单中的20种农药,分别单独使用以及作为等摩尔混合物使用,并研究了化学相互作用对体外毒代动力学参数的浓度依赖性影响。通过超速离心法测定血浆蛋白结合效率,并在冷冻保存的原代人肝细胞悬浮液中估算肝细胞清除率。我们发现,对于单一化学物质,在不同测试浓度下蛋白质结合效率相似。然而,在混合物中,蛋白质结合效率和肝细胞清除率均受到影响。当使用混合物衍生的毒代动力学数据进行IVIVE时,与使用单一化学物质实验数据相比,活性与暴露比的估计更为保守。由于人类会接触化学物质混合物,本研究具有重要意义,因为它证明了将混合物衍生参数纳入IVIVE以处理体外生物活性数据对于准确确定风险优先级和促进基于科学的决策的重要性。