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通过雌激素受体α配体结合域发挥作用的新型内分泌干扰化学物的计算机模拟鉴定及药理学评价

In silico identification and pharmacological evaluation of novel endocrine disrupting chemicals that act via the ligand-binding domain of the estrogen receptor α.

作者信息

McRobb Fiona M, Kufareva Irina, Abagyan Ruben

机构信息

Skaggs School of Pharmacy and Pharmaceutical Sciences, University of California San Diego, La Jolla, CA, 92093

出版信息

Toxicol Sci. 2014 Sep;141(1):188-97. doi: 10.1093/toxsci/kfu114. Epub 2014 Jun 13.

Abstract

Endocrine disrupting chemicals (EDCs) pose a significant threat to human health, society, and the environment. Many EDCs elicit their toxic effects through nuclear hormone receptors, like the estrogen receptor α (ERα). In silico models can be used to prioritize chemicals for toxicological evaluation to reduce the amount of costly pharmacological testing and enable early alerts for newly designed compounds. However, many of the current computational models are overly dependent on the chemistry of known modulators and perform poorly for novel chemical scaffolds. Herein we describe the development of computational, three-dimensional multi-conformational pocket-field docking, and chemical-field docking models for the identification of novel EDCs that act via the ligand-binding domain of ERα. These models were highly accurate in the retrospective task of distinguishing known high-affinity ERα modulators from inactive or decoy molecules, with minimal training. To illustrate the utility of the models in prospective in silico compound screening, we screened a database of over 6000 environmental chemicals and evaluated the 24 top-ranked hits in an ERα transcriptional activation assay and a differential scanning fluorimetry-based ERα binding assay. Promisingly, six chemicals displayed ERα agonist activity (32nM-3.98μM) and two chemicals had moderately stabilizing effects on ERα. Two newly identified active compounds were chemically related β-adrenergic receptor (βAR) agonists, dobutamine, and ractopamine (a feed additive that promotes leanness in cattle and poultry), which are the first βAR agonists identified as activators of ERα-mediated gene transcription. This approach can be applied to other receptors implicated in endocrine disruption.

摘要

内分泌干扰化学物质(EDCs)对人类健康、社会和环境构成重大威胁。许多EDCs通过核激素受体引发其毒性作用,如雌激素受体α(ERα)。计算机模拟模型可用于对化学物质进行毒理学评估的优先级排序,以减少昂贵的药理学测试数量,并对新设计的化合物发出早期警报。然而,目前的许多计算模型过度依赖已知调节剂的化学结构,对新型化学支架的表现不佳。在此,我们描述了用于识别通过ERα配体结合域起作用的新型EDCs的计算、三维多构象口袋场对接和化学场对接模型的开发。这些模型在将已知的高亲和力ERα调节剂与无活性或诱饵分子区分开来的回顾性任务中高度准确,且训练极少。为了说明这些模型在计算机模拟化合物筛选前瞻性应用中的效用,我们筛选了一个包含6000多种环境化学物质的数据库,并在ERα转录激活试验和基于差示扫描荧光法的ERα结合试验中评估了排名前24的命中物。令人鼓舞的是,六种化学物质显示出ERα激动剂活性(32nM - 3.98μM),两种化学物质对ERα有适度的稳定作用。两种新鉴定出的活性化合物是化学相关的β-肾上腺素能受体(βAR)激动剂,多巴酚丁胺和莱克多巴胺(一种促进牛和家禽瘦肉生长的饲料添加剂),它们是首批被鉴定为ERα介导基因转录激活剂的βAR激动剂。这种方法可应用于与内分泌干扰有关的其他受体。

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