Pinto Caroline L, Mansouri Kamel, Judson Richard, Browne Patience
Office of Chemical Safety and Pollution Prevention, US Environmental Protection Agency , 1200 Pennsylvania Avenue, N.W., Washington, DC 20460, United States.
Oak Ridge Institute for Science and Education , MC-100-44, P.O. Box 117, Oak Ridge, Tennessee 37831-0117, United States.
Chem Res Toxicol. 2016 Sep 19;29(9):1410-27. doi: 10.1021/acs.chemrestox.6b00079. Epub 2016 Aug 31.
The US Environmental Protection Agency's (EPA) Endocrine Disruptor Screening Program (EDSP) is using in vitro data generated from ToxCast/Tox21 high-throughput screening assays to assess the endocrine activity of environmental chemicals. Considering that in vitro assays may have limited metabolic capacity, inactive chemicals that are biotransformed into metabolites with endocrine bioactivity may be missed for further screening and testing. Therefore, there is a value in developing novel approaches to account for metabolism and endocrine activity of both parent chemicals and their associated metabolites. We used commercially available software to predict metabolites of 50 parent compounds, out of which 38 chemicals are known to have estrogenic metabolites, and 12 compounds and their metabolites are negative for estrogenic activity. Three ER QSAR models were used to determine potential estrogen bioactivity of the parent compounds and predicted metabolites, the outputs of the models were averaged, and the chemicals were then ranked based on the total estrogenicity of the parent chemical and metabolites. The metabolite prediction software correctly identified known estrogenic metabolites for 26 out of 27 parent chemicals with associated metabolite data, and 39 out of 46 estrogenic metabolites were predicted as potential biotransformation products derived from the parent chemical. The QSAR models estimated stronger estrogenic activity for the majority of the known estrogenic metabolites compared to their parent chemicals. Finally, the three models identified a similar set of parent compounds as top ranked chemicals based on the estrogenicity of putative metabolites. This proposed in silico approach is an inexpensive and rapid strategy for the detection of chemicals with estrogenic metabolites and may reduce potential false negative results from in vitro assays.
美国环境保护局(EPA)的内分泌干扰物筛选计划(EDSP)正在使用从ToxCast/Tox21高通量筛选试验中生成的体外数据,来评估环境化学品的内分泌活性。鉴于体外试验的代谢能力可能有限,那些被生物转化为具有内分泌生物活性的代谢物的非活性化学品可能会被遗漏,无法进行进一步的筛选和测试。因此,开发新方法来考虑母体化学品及其相关代谢物的代谢和内分泌活性具有重要意义。我们使用商用软件预测了50种母体化合物的代谢物,其中38种化学品已知具有雌激素活性代谢物,12种化合物及其代谢物的雌激素活性为阴性。使用三个雌激素受体定量构效关系(ER QSAR)模型来确定母体化合物和预测代谢物的潜在雌激素生物活性,将模型的输出结果进行平均,然后根据母体化学品和代谢物的总雌激素活性对化学品进行排名。代谢物预测软件在27种有相关代谢物数据的母体化学品中,正确识别出了26种已知的雌激素活性代谢物,46种雌激素活性代谢物中有39种被预测为母体化学品的潜在生物转化产物。与母体化学品相比,QSAR模型估计大多数已知的雌激素活性代谢物具有更强的雌激素活性。最后,基于假定代谢物的雌激素活性,这三个模型识别出了一组相似的母体化合物作为排名靠前的化学品。这种提出的计算机模拟方法是一种检测具有雌激素活性代谢物的化学品的廉价且快速的策略,可能会减少体外试验中潜在的假阴性结果。