Guth K, Riviere J E, Brooks J D, Dammann M, Fabian E, van Ravenzwaay B, Schäfer-Korting M, Landsiedel R
a Experimental Toxicology and Ecology , BASF SE , Ludwigshafen , Germany.
SAR QSAR Environ Res. 2014;25(7):565-88. doi: 10.1080/1062936X.2014.919358. Epub 2014 Jun 6.
Dermal absorption is a critical part in the risk assessment of complex mixtures such as agrochemical formulations. To reduce the number of in vivo or in vitro absorption experiments, the present study aimed to develop an in silico prediction model that considers mixture-related effects. Therefore, an experimental 'real-world' dataset derived from regulatory in vitro studies with human and rat skin was processed. Overall, 56 test substances applied in more than 150 mixtures were used. Descriptors for the substances as well as the mixtures were generated and used for multiple linear regression analysis. Considering the heterogeneity of the underlying data set, the final model provides a good fit (r² = 0.75) and is able to estimate the influence of a newly composed formulation on dermal absorption of a well-known substance (predictivity Q²Ext = 0.73). Application of this model would reduce animal and non-animal testings when used for the optimization of formulations in early developmental stages, or would simplify the registration process, if accepted for read-across.
皮肤吸收是农药制剂等复杂混合物风险评估的关键部分。为了减少体内或体外吸收实验的数量,本研究旨在开发一种考虑混合物相关效应的计算机预测模型。因此,对来自人体和大鼠皮肤的监管体外研究的实验“真实世界”数据集进行了处理。总共使用了56种应用于150多种混合物中的测试物质。生成了物质以及混合物的描述符,并将其用于多元线性回归分析。考虑到底层数据集的异质性,最终模型具有良好的拟合度(r² = 0.75),并且能够估计新配制的制剂对已知物质皮肤吸收的影响(预测性Q²Ext = 0.73)。当该模型用于早期开发阶段制剂的优化时,其应用将减少动物和非动物测试;如果被接受用于类推,则将简化注册过程。