4.7 Article

Virtual screening of potentially endocrine-disrupting chemicals against nuclear receptors and its application to identify PPARγ-bound fatty acids

期刊

ARCHIVES OF TOXICOLOGY
卷 95, 期 1, 页码 355-374

出版社

SPRINGER HEIDELBERG
DOI: 10.1007/s00204-020-02897-x

关键词

Virtual screening; In silico toxicity prediction; Nuclear receptors; EDC; ToxCast; Furan fatty acid

资金

  1. Biomedical Research Council of Agency for Science, Technology and Research (A*STAR)
  2. ToxMAD project under the Innovations in Food and Chemical Safety Programme [H18/01/a0/B14]

向作者/读者索取更多资源

The study proposed a virtual screening method based on molecular docking to predict potential endocrine-disrupting chemicals that bind to nuclear receptors. By analyzing the discriminating power of multiple structures for NRs and optimizing the strategy with a chemical similarity-weighted scoring scheme, several fatty acids were screened as potential EDCs.
Nuclear receptors (NRs) are key regulators of energy homeostasis, body development, and sexual reproduction. Xenobiotics binding to NRs may disrupt natural hormonal systems and induce undesired adverse effects in the body. However, many chemicals of concerns have limited or no experimental data on their potential or lack-of-potential endocrine-disrupting effects. Here, we propose a virtual screening method based on molecular docking for predicting potential endocrine-disrupting chemicals (EDCs) that bind to NRs. For 12 NRs, we systematically analyzed how multiple crystal structures can be used to distinguish actives and inactives found in previous high-throughput experiments. Our method is based on (i) consensus docking scores from multiple structures at a single functional state (agonist-bound or antagonist-bound), (ii) multiple functional states (agonist-bound and antagonist-bound), and (iii) multiple pockets (orthosteric site and alternative sites) of these NRs. We found that the consensus enrichment from multiple structures is better than or comparable to the best enrichment from a single structure. The discriminating power of this consensus strategy was further enhanced by a chemical similarity-weighted scoring scheme, yielding better or comparable enrichment for all studied NRs. Applying this optimized method, we screened 252 fatty acids against peroxisome proliferator-activated receptor gamma (PPAR gamma) and successfully identified 3 previously unknown fatty acids with Kd = 100-250 mu M including two furan fatty acids: furannonanoic acid (FNA) and furanundecanoic acid (FUA), and one cyclopropane fatty acid: phytomonic acid (PTA). These results suggested that the proposed method can be used to rapidly screen and prioritize potential EDCs for further experimental evaluations.

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