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蛋白酪氨酸磷酸酶1B抑制剂的药效团模型构建

Pharmacophore modeling for protein tyrosine phosphatase 1B inhibitors.

作者信息

Bharatham Kavitha, Bharatham Nagakumar, Lee Keun Woo

机构信息

Division of Applied Life Science, Environmental Biotechnology National Core Research Center Gyeongsang National University, Jinju 660-701 Korea.

出版信息

Arch Pharm Res. 2007 May;30(5):533-42. doi: 10.1007/BF02977644.

Abstract

A three dimensional chemical feature based pharmacophore model was developed for the inhibitors of protein tyrosine phosphatase 1B (PTP1B) using the CATALYST software, which would provide useful knowledge for performing virtual screening to identify new inhibitors targeted toward type II diabetes and obesity. A dataset of 27 inhibitors, with diverse structural properties, and activities ranging from 0.026 to 600 microM, was selected as a training set. Hypol, the most reliable quantitative four featured pharmacophore hypothesis, was generated from a training set composed of compounds with two H-bond acceptors, one hydrophobic aromatic and one ring aromatic features. It has a correlation coefficient, RMSD and cost difference (null cost-total cost) of 0.946, 0.840 and 65.731, respectively. The best hypothesis (Hypol) was validated using four different methods. Firstly, a cross validation was performed by randomizing the data using the Cat-Scramble technique. The results confirmed that the pharmacophore models generated from the training set were valid. Secondly, a test set of 281 molecules was scored, with a correlation of 0.882 obtained between the experimental and predicted activities. Hypol performed well in correctly discriminating the active and inactive molecules. Thirdly, the model was investigated by mapping on two PTP1B inhibitors identified by different pharmaceutical companies. The Hypol model correctly predicted these compounds as being highly active. Finally, docking simulations were performed on few compounds to substantiate the role of the pharmacophore features at the binding site of the protein by analyzing their binding conformations. These multiple validation approaches provided confidence in the utility of this pharmacophore model as a 3D query for virtual screening to retrieve new chemical entities showing potential as potent PTP1B inhibitors.

摘要

使用CATALYST软件,为蛋白酪氨酸磷酸酶1B(PTP1B)抑制剂开发了一种基于三维化学特征的药效团模型,这将为进行虚拟筛选以鉴定针对II型糖尿病和肥胖症的新抑制剂提供有用的知识。选择了一个包含27种抑制剂的数据集作为训练集,这些抑制剂具有不同的结构特性,活性范围为0.026至600微摩尔。Hypol是最可靠的定量四特征药效团假设,它是从由具有两个氢键受体、一个疏水芳香和一个环芳香特征的化合物组成的训练集中生成的。它的相关系数、均方根偏差和成本差异(零成本-总成本)分别为0.946、0.840和65.731。使用四种不同方法对最佳假设(Hypol)进行了验证。首先,使用Cat-Scramble技术对数据进行随机化处理以进行交叉验证。结果证实了从训练集中生成的药效团模型是有效的。其次,对281个分子的测试集进行了评分,实验活性与预测活性之间的相关性为0.882。Hypol在正确区分活性和非活性分子方面表现良好。第三,通过将模型映射到不同制药公司鉴定的两种PTP1B抑制剂上对模型进行了研究。Hypol模型正确地将这些化合物预测为高活性。最后,对少数化合物进行了对接模拟,通过分析它们的结合构象来证实药效团特征在蛋白质结合位点的作用。这些多种验证方法为该药效团模型作为虚拟筛选的三维查询工具以检索显示出作为强效PTP1B抑制剂潜力的新化学实体的实用性提供了信心。

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