Swiss Federal Institute of Technology (ETH) Zurich, Department of Chemistry and Applied Biosciences, Institute of Pharmaceutical Sciences, Wolfgang-Pauli-Str. 10, 8093 Zürich, Switzerland.
J Comput Chem. 2011 Jun;32(8):1635-47. doi: 10.1002/jcc.21741. Epub 2011 Feb 15.
The text-based similarity searching method Pharmacophore Alignment Search Tool is grounded on pairwise comparisons of potential pharmacophoric points between a query and screening compounds. The underlying scoring matrix is of critical importance for successful virtual screening and hit retrieval from large compound libraries. Here, we compare three conceptually different computational methods for systematic deduction of scoring matrices: assignment-based, alignment-based, and stochastic optimization. All three methods resulted in optimized pharmacophore scoring matrices with significantly superior retrospective performance in comparison with simplistic scoring schemes. Computer-generated similarity matrices of pharmacophoric features turned out to agree well with a manually constructed matrix. We introduce the concept of position-specific scoring to text-based similarity searching so that knowledge about specific ligand-receptor binding patterns can be included and demonstrate its benefit for hit retrieval. The approach was also used for automated pharmacophore elucidation in agonists of peroxisome proliferator activated receptor gamma, successfully identifying key interactions for receptor activation.
基于文本的相似性搜索方法药效基团排列搜索工具是基于查询和筛选化合物之间潜在药效基团点的两两比较。基础评分矩阵对于成功的虚拟筛选和从大型化合物库中检索命中至关重要。在这里,我们比较了三种概念上不同的计算方法,用于系统推导评分矩阵:基于分配、基于对齐和随机优化。所有三种方法都得到了优化的药效基团评分矩阵,与简单的评分方案相比,具有显著优越的回顾性能。药效基团特征的计算机生成相似性矩阵与手动构建的矩阵非常吻合。我们将位置特异性评分的概念引入基于文本的相似性搜索中,以便可以包含关于特定配体-受体结合模式的知识,并证明其对命中检索的益处。该方法还用于过氧化物酶体增殖物激活受体γ激动剂的自动药效基团阐明,成功确定了受体激活的关键相互作用。