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5-羟色胺6拮抗剂的全息定量构效关系研究

Hologram quantitative structure activity relationship studies on 5-HT6 antagonists.

作者信息

Doddareddy Munikumar Reddy, Lee Yeon Joo, Cho Yong Seo, Choi Kyung Il, Koh Hun Yeong, Pae Ae Nim

机构信息

Biochemicals Research Center, Korea Institute of Science and Technology, PO Box 131, Cheongryang, Seoul 130-650, Republic of Korea.

出版信息

Bioorg Med Chem. 2004 Jul 15;12(14):3815-24. doi: 10.1016/j.bmc.2004.05.005.

Abstract

Predictive hologram quantitative structure activity relationship (HQSAR) models were developed for a series of arylsulfonamide compounds acting as specific 5-HT6 antagonists. A training set containing 48 compounds served to establish the model. The best HQSAR model was generated using atoms, bond, and connectivity as fragment distinction and 4-7 as fragment size showing cross-validated r2(q2) value of 0.702 and conventional r2 value of 0.971. The predictive ability of the model was validated by an external test set of 20 compounds giving satisfactory predictive r2 value of 0.678. The efficiency of HQSAR approach was further evidenced by the generation of predictive models for a training set containing 30 highly diverse, both specific and nonspecific 5-HT6 antagonists. The best HQSAR model for this training set was generated using atoms, bond, and connectivity as fragment distinction and 4-7 as fragment size showing cross-validated r2(q2) value of 0.693 and conventional r2 value of 0.923. This model was also validated by using an external test set of 10 compounds giving satisfactory predictive r2 value of 0.692. The contribution maps obtained from these models were used to explain the individual atomic contributions to the overall activity.

摘要

针对一系列作为特异性5-羟色胺6(5-HT6)拮抗剂的芳基磺酰胺化合物,开发了预测性全息定量构效关系(HQSAR)模型。一个包含48种化合物的训练集用于建立该模型。使用原子、键和连接性作为片段区分,4-7作为片段大小,生成了最佳的HQSAR模型,其交叉验证的r2(q2)值为0.702,传统的r2值为0.971。通过一个包含20种化合物的外部测试集验证了该模型的预测能力,其预测性r2值为0.678,令人满意。通过为一个包含30种高度多样化的特异性和非特异性5-HT6拮抗剂的训练集生成预测模型,进一步证明了HQSAR方法的有效性。使用原子、键和连接性作为片段区分,4-7作为片段大小,为该训练集生成了最佳的HQSAR模型,其交叉验证的r2(q2)值为0.693,传统的r2值为0.923。该模型也通过一个包含10种化合物的外部测试集进行了验证,其预测性r2值为0.692,令人满意。从这些模型获得的贡献图用于解释各个原子对整体活性的贡献。

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