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Integrating medicinal chemistry, organic/combinatorial chemistry, and computational chemistry for the discovery of selective estrogen receptor modulatorswith FORECASTER, a novel platform for drug discovery

机译:借助FORECASTER将药物化学,有机/组合化学和计算化学相结合,以发现选择性雌激素受体调节剂,这是一种新的药物发现平台

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As part of a large medicinal chemistry program, we wish to develop novel selective estrogen receptor modulators (SERMs) as potential breast cancer treatments using a combination of experimental and computational approaches. However, one of the remaining difficulties nowadays is to fully integrate computational (i.e., virtual, theoretical) and medicinal (i.e., experimental, intuitive) chemistry to take advantage of the full potential of both. For this purpose, we have developed a Web-based platform, FORECASTER, and a number of programs (e.g., PREPARE, REACT, SELECT) with the aim of combining computational chemistry and medicinal chemistry expertise to facilitate drug discovery and development and more specifically to integrate synthesis into computer-aided drug design. In our quest for potent SERMs, this platform was used to build virtual combinatorial libraries, filter and extract a highly diverse library from the NCI database, and dock them to the estrogen receptor (ER), with all of these steps being fully automated by computational chemists for use by medicinal chemists. As a result, virtual screening of a diverse library seeded with active compounds followed by a search for analogs yielded an enrichment factor of 129, with 98% of the seeded active compounds recovered, while the screening of a designed virtual combinatorial library including known actives yielded an area under the receiver operating characteristic (AU-ROC) of 0.78. The lead optimization proved less successful, further demonstrating the challenge to simulate structure activity relationship studies.
机译:作为大型药物化学计划的一部分,我们希望结合实验和计算方法,开发出新型的选择性雌激素受体调节剂(SERM)作为潜在的乳腺癌治疗方法。然而,当今仍然存在的困难之一是将计算化学(即虚拟的,理论的)和药物化学(即实验的,直观的)化学方法完全整合以充分利用两者的全部潜力。为此,我们开发了一个基于Web的平台FORECASTER和许多程序(例如PREPARE,REACT,SELECT),目的是将计算化学和药物化学专业知识相结合,以促进药物的发现和开发,更具体地讲,将合成技术集成到计算机辅助药物设计中。在我们寻求有效的SERM的过程中,该平台用于构建虚拟组合库,从NCI数据库过滤并提取高度多样化的库,并将其停靠到雌激素受体(ER),所有这些步骤都可以通过计算完全自动化供药用化学家使用的化学家。结果,对含有活性化合物的多样化文库进行虚拟筛选,然后搜索类似物,从而获得了129的富集因子,回收了98%的种子活性化合物,而对包含已知活性成分的设计虚拟组合文库进行了筛选接收机工作特性(AU-ROC)下的面积为0.78。铅优化被证明不太成功,进一步证明了模拟结构活性关系研究的挑战。

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