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Combination of pharmacophore hypothesis genetic function approximation model and molecular docking to identify novel inhibitors of S6K1

机译:药效基团假说遗传功能近似模型和分子对接的组合以鉴定新型S6K1抑制剂

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摘要

S6K1 has emerged as a potential target for the treatment for obesity, type II diabetes and cancer diseases. Discovery of S6K1 inhibitors has thus attracted much attention in recent years. In this investigation, a hybrid virtual screening method that involves pharmacophore hypothesis, genetic function approximation (GFA) model, and molecular docking technology has been used to discover S6K1 inhibitors especially with novel scaffolds. The common feature pharmacophore hypothesis and GFA regression model of S6K1 inhibitors were first developed and applied in a virtual screen of the Specs database for retrieving S6K1 inhibitors. Then, the molecular docking method was carried out to re-filter these screened compounds. Finally, 60 compounds with promising S6K1 inhibitory activity were carefully selected and have been handed over to the other group to complete the follow-up compound synthesis (or purchase) and activity test.Electronic supplementary materialThe online version of this article (doi:10.1007/s11030-013-9473-7) contains supplementary material, which is available to authorized users.
机译:S6K1已成为治疗肥胖,II型糖尿病和癌症疾病的潜在靶标。因此,近年来发现S6K1抑制剂备受关注。在这项研究中,一种涉及药效基团假说,遗传功能近似(GFA)模型和分子对接技术的混合虚拟筛选方法已被用于发现S6K1抑制剂,尤其是新型支架。首先开发了S6K1抑制剂的共同特征药效基团假设和GFA回归模型,并将其应用于Specs数据库的虚拟屏幕中以检索S6K1抑制剂。然后,进行分子对接方法以重新过滤这些筛选出的化合物。最后,精心选择了60种具有希望的S6K1抑制活性的化合物,并将其移交给另一组,以完成后续化合物的合成(或购买)和活性测试。电子补充材料本文的在线版本(doi:10.1007 / s11030-013-9473-7)包含补充材料,授权用户可以使用。

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