Enviromental Engineering and Toxicology Dpt., Catholic University of San Antonio, Guadalupe, Murcia, Spain.
Dent Mater. 2010 May;26(5):397-415. doi: 10.1016/j.dental.2009.11.158. Epub 2010 Feb 1.
The purpose of this study is to develop a quantitative structure-activity relationship (QSAR) model that can distinguish mutagenic from non-mutagenic species with alpha,beta-unsaturated carbonyl moiety using two endpoints for this activity - Ames test and mammalian cell gene mutation test - and also to gather information about the molecular features that most contribute to eliminate the mutagenic effects of these chemicals.
Two data sets were used for modeling the two mutagenicity endpoints: (1) Ames test and (2) mammalian cells mutagenesis. The first one comprised 220 molecules, while the second one 48 substances, ranging from acrylates, methacrylates to alpha,beta-unsaturated carbonyl compounds. The QSAR models were developed by applying linear discriminant analysis (LDA) along with different sets of descriptors computed using the DRAGON software.
For both endpoints, there was a concordance of 89% in the prediction and 97% confidentiality by combining the three models for the Ames test mutagenicity. We have also identified several structural alerts to assist the design of new monomers.
These individual models and especially their combination are attractive from the point of view of molecular modeling and could be used for the prediction and design of new monomers that do not pose a human health risk.
本研究旨在建立一种定量构效关系(QSAR)模型,该模型可使用两种终点(Ames 试验和哺乳动物细胞基因突变试验)区分具有α,β-不饱和羰基部分的致突变和非致突变物种,并收集有关最有助于消除这些化学物质致突变作用的分子特征的信息。
使用两个数据集对两种致突变终点进行建模:(1)Ames 试验和(2)哺乳动物细胞突变。第一个数据集包括 220 种分子,第二个数据集包括 48 种物质,范围从丙烯酸酯、甲基丙烯酸酯到α,β-不饱和羰基化合物。QSAR 模型通过应用线性判别分析(LDA)以及使用 DRAGON 软件计算的不同描述符集进行开发。
对于两个终点,通过组合 Ames 试验致突变性的三个模型,在预测方面具有 89%的一致性,在机密性方面具有 97%的一致性。我们还确定了几个结构警报,以协助新单体的设计。
这些单独的模型,尤其是它们的组合,从分子建模的角度来看具有吸引力,可用于预测和设计不会对人类健康构成风险的新单体。