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Discovery of antiandrogen activity of nonsteroidal scaffolds of marketed drugs

机译:发现市售药物的非甾体类支架的抗雄激素活性

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Finding good drug leads de novo from large chemical libraries, real or virtual, is not an easy task. High-throughput screening is often plagued by low hit rates and many leads that are toxic or exhibit poor bioavailability. Exploiting the secondary activity of marketed drugs, on the other hand, may help in generating drug leads that can be optimized for the observed side-effect target, while maintaining acceptable bioavailability and toxicity profiles. Here, we describe an efficient computational methodology to discover leads to a protein target from safe marketed drugs. We applied an in silico "drug repurposing" procedure for identification of nonsteroidal antagonists against the human androgen receptor (AR), using multiple predicted models of an antagonist-bound receptor. The library of marketed oral drugs was then docked into the best-performing models, and the 11 selected compounds with the highest docking score were tested in vitro for AR binding and antagonism of dihydrotestosterone-induced AR transactivation. The phenothiazine derivatives acetophenazine, fluphenazine, and periciazine, used clinically as antipsychotic drugs, were identified as weak AR antagonists. This in vitro biological activity correlated well with endocrine side effects observed in individuals taking these medications. Further computational optimization of phenothiazines, rncombined with in vitro screening, led to the identification of a nonsteroidal antiandrogen with improved AR antagonism and marked reduction in affinity for dopaminergic and serotonergic receptors that are the primary target of phenothiazine antipsychotics.
机译:从大型化学数据库(无论是真实的还是虚拟的)中找到从头开始的优质药物并非易事。高通量筛选通常受到命中率低和许多有毒或生物利用度差的铅的困扰。另一方面,开发市售药物的次要活性可能有助于产生可以针对观察到的副作用目标进行优化的药物线索,同时保持可接受的生物利用度和毒性。在这里,我们描述了一种有效的计算方法,可以从安全上市的药物中发现导致蛋白质靶标的线索。我们使用一种结合了结合剂的受体的多种预测模型,采用计算机模拟“药物再利用”程序来鉴定针对人类雄激素受体(AR)的非甾体类拮抗剂。然后将市售的口服药物文库对接到性能最佳的模型中,并在体外测试11种选择的对接得分最高的化合物的AR结合和二氢睾丸激素诱导的AR反式激活的拮抗作用。临床上用作抗精神病药物的吩噻嗪衍生物乙酰吩嗪,氟奋乃静和periciazine被确定为弱AR拮抗剂。这种体外生物学活性与在服用这些药物的个体中观察到的内分泌副作用密切相关。吩噻嗪的进一步计算优化与体外筛选相结合,导致鉴定出具有改善的AR拮抗作用且对作为吩噻嗪类抗精神病药物的主要靶点的多巴胺能和血清素能受体的亲和力显着降低的非甾体类抗雄激素。

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