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Applying pattern recognition methods plus quantum and physico-chemical molecular descriptors to analyze the anabolic activity of structurally diverse steroids

机译:应用模式识别方法以及量子和物理化学分子描述符来分析结构多样的类固醇的合成代谢活性

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The great cost associated with the development of new anabolic-androgenic steroid (AASs) makes necessary the development of computational methods that shorten the drug discovery pipeline. Toward this end, quantum, and physicochemical molecular descriptors, plus linear discriminant analysis (LDA) were used to analyze the anabolic/androgenic activity of structurally diverse steroids and to discover novel AASs, as well as also to give a structural interpretation of their anabolic-androgenic ratio (AAR). The obtained models are able to correctly classify 91.67% (86.27%) of the AASs in the training (test) sets, respectively. The results of predictions on the 10% full-out cross-validation test also evidence the robustness of the obtained model. Moreover, these classification functions are applied to an "in house" library of chemicals, to find novel AASs. Two new AASs are synthesized and tested for in vivo activity., Although both AASs are less active than some commercially AASs, this result leaves a door open to a virtual variational study of the structure of the two compounds, to improve their biological activity. The LDA-assisted QSAR models presented here, could significantly reduce the number of synthesized and tested AASs, as well as could increase the chance of finding new chemical entities with higher AAR. (C) 2007 Wiley Periodicals, Inc.
机译:与新的合成代谢雄激素类固醇(AAS)的开发相关的巨额成本使得必须开发可缩短药物开发流程的计算方法。为此,我们使用了量子和物理化学分子描述子以及线性判别分析(LDA)来分析结构多样的类固醇的合成代谢/雄激素活性,并发现新颖的AAS,并对它们的合成代谢进行结构解释。雄激素比(AAR)。所获得的模型能够分别在训练(测试)集中正确分类91.67%(86.27%)的AAS。 10%完全交叉验证测试的预测结果也证明了所获得模型的鲁棒性。此外,将这些分类功能应用于“内部”化学品库中,以找到新颖的AAS。合成了两种新的AAS并测试了其体内活性。尽管这两种AAS的活性都低于某些商业AAS,但这一结果为对这两种化合物的结构进行虚拟变异研究以提高其生物学活性打开了大门。此处介绍的LDA辅助QSAR模型可以大大减少合成和测试的AAS的数量,并可以增加找到具有更高AAR的新化学实体的机会。 (C)2007 Wiley期刊公司

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