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首页> 外文期刊>Molecules >Self Organizing Map-Based Classification of Cathepsin k and S Inhibitors with Different Selectivity Profiles Using Different Structural Molecular Fingerprints: Design and Application for Discovery of Novel Hits
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Self Organizing Map-Based Classification of Cathepsin k and S Inhibitors with Different Selectivity Profiles Using Different Structural Molecular Fingerprints: Design and Application for Discovery of Novel Hits

机译:基于自组织图的组织蛋白酶k和S抑制剂具有不同选择性的使用不同结构分子指纹的分类:设计和应用发现新的命中。

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摘要

The main step in a successful drug discovery pipeline is the identification of small potent compounds that selectively bind to the target of interest with high affinity. However, there is still a shortage of efficient and accurate computational methods with powerful capability to study and hence predict compound selectivity properties. In this work, we propose an affordable machine learning method to perform compound selectivity classification and prediction. For this purpose, we have collected compounds with reported activity and built a selectivity database formed of 153 cathepsin K and S inhibitors that are considered of medicinal interest. This database has three compound sets, two K/S and S/K selective ones and one non-selective KS one. We have subjected this database to the selectivity classification tool ‘Emergent Self-Organizing Maps’ for exploring its capability to differentiate selective cathepsin inhibitors for one target over the other. The method exhibited good clustering performance for selective ligands with high accuracy (up to 100 %). Among the possibilites, BAPs and MACCS molecular structural fingerprints were used for such a classification. The results exhibited the ability of the method for structure-selectivity relationship interpretation and selectivity markers were identified for the design of further novel inhibitors with high activity and target selectivity. View Full-Text
机译:成功的药物开发流程的主要步骤是鉴定可有效高选择性地与目标靶标结合的小的有效化合物。然而,仍然缺乏有效且准确的计算方法,其具有强大的能力来研究并预测化合物的选择性。在这项工作中,我们提出了一种负担得起的机器学习方法来执行化合物的选择性分类和预测。为此,我们收集了具有报道活性的化合物,并建立了由153种组织蛋白酶K和S抑制剂组成的选择性数据库,这些抑制剂被认为具有医学意义。该数据库具有三个复合集,两个K / S和S / K选择性集合和一个非选择性KS集合。我们将此数据库置于选择性分类工具“紧急自组织图”的基础上,以探索其区分一个目标与另一个目标的选择性组织蛋白酶抑制剂的能力。该方法对选择性配体具有良好的聚类性能,且准确性很高(最高100%)。在可能性之中,BAP和MACCS分子结构指纹用于这种分类。结果显示了该方法用于结构-选择性关系解释的能力,并且鉴定了选择性标记以设计具有高活性和靶选择性的其他新型抑制剂。查看全文

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