首页> 外文期刊>Journal of exposure science & environmental epidemiology >Exposure to selected preservatives in personal care products: case study comparison of exposure models and observational biomonitoring data
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Exposure to selected preservatives in personal care products: case study comparison of exposure models and observational biomonitoring data

机译:接触个人护理产品中的选定防腐剂:曝光模型和观察生物监测数据的案例研究比较

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摘要

Exposure models provide critical information for risk assessment of personal care product ingredients, but there have been limited opportunities to compare exposure model predictions to observational exposure data. Urinary excretion data from a biomonitoring study in eight individuals were used to estimate minimum absorbed doses for triclosan and methyl-, ethyl-, and n-propyl- parabens (TCS, MP, EP, PP). Three screening exposure models (European Commission Scientific Commission on Consumer Safety [SCCS] algorithms, ConsExpo in deterministic mode, and RAIDAR-ICE) and two higher-tier probabilistic models (SHEDS-HT, and Creme Care & Cosmetics) were used to model participant exposures. Average urinary excretion rates of TCS, MP, EP, and PP for participants using products with those ingredients were 16.9, 3.32, 1.9, and 0.91 μg/kg-d, respectively. The SCCS default aggregate and RAIDAR-ICE screening models generally resulted in the highest predictions compared to other models. Approximately 60-90% of the model predictions for most of the models were within a factor of 10 of the observed exposures; ~30—40% of the predictions were within a factor of 3. Estimated exposures from urinary data tended to fall in the upper range of predictions from the probabilistic models. This analysis indicates that currently available exposure models provide estimates that are generally realistic. Uncertainties in preservative product concentrations and dermal absorption parameters as well as degree of metabolism following dermal absorption influence interpretation of the modeled vs. measured exposures. Use of multiple models may help characterize potential exposures more fully than reliance on a single model.
机译:曝光模型为个人护理产品成分提供了风险评估的关键信息,但有限的机会将曝光模型预测与观察曝光数据进行比较。来自8个体的生物监测研究中的尿液排泄数据用于估计三胞嘧啶和甲基,乙基和N-丙基 - 羟基苯甲酸(TCS,MP,EP,PP)的最小吸收剂量。三种筛查曝光模型(欧盟消费者安全[SCCS]算法,确定性模式的Consexpo和Raidar-Ice)和两个高层概率模型(Sheds-HT和Creme Care&Cosmetics)用于建模参与者曝光。参与者使用与这些成分的产品的参与者的TCS,MP,EP和PP的平均尿液排泄率分别为16.9,3.32,1.9和0.91μg/ kg-d。与其他模型相比,SCCS默认聚合和RAidar-Ice筛选模型通常导致最高的预测。大多数模型的大约60-90%的模型预测是观察到的曝光率的10倍; 〜30-40%的预测是在3.尿路数据的估计暴露在概率模型的预测范围内。该分析表明,目前可用的曝光模型提供了通常逼真的估计。防腐产品浓度的不确定性和皮肤吸收参数以及皮肤吸收后的代谢程度影响模拟的与测量曝光的解释。使用多种模型可能有助于表征潜在的曝光,而不是依赖于单个模型。

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