Lemmen C, Lengauer T
German National Research Center for Information Technology (GMD), Institute for Algorithms and Scientific Computing (SCAI), Sankt Augustin, Germany.
J Comput Aided Mol Des. 2000 Mar;14(3):215-32. doi: 10.1023/a:1008194019144.
In drug design, often enough, no structural information on a particular receptor protein is available. However, frequently a considerable number of different ligands is known together with their measured binding affinities towards a receptor under consideration. In such a situation, a set of plausible relative superpositions of different ligands, hopefully approximating their putative binding geometry, is usually the method of choice for preparing data for the subsequent application of 3D methods that analyze the similarity or diversity of the ligands. Examples are 3D-QSAR studies, pharmacophore elucidation, and receptor modeling. An aggravating fact is that ligands are usually quite flexible and a rigorous analysis has to incorporate molecular flexibility. We review the past six years of scientific publishing on molecular superposition. Our focus lies on automatic procedures to be performed on arbitrary molecular structures. Methodical aspects are our main concern here. Accordingly, plain application studies with few methodical elements are omitted in this presentation. While this review cannot mention every contribution to this actively developing field, we intend to provide pointers to the recent literature providing important contributions to computational methods for the structural alignment of molecules. Finally we provide a perspective on how superposition methods can effectively be used for the purpose of virtual database screening. In our opinion it is the ultimate goal to detect analogues in structure databases of nontrivial size in order to narrow down the search space for subsequent experiments.
在药物设计中,常常没有关于特定受体蛋白的结构信息。然而,通常已知相当数量的不同配体及其对所考虑受体的测量结合亲和力。在这种情况下,一组不同配体的合理相对叠加,有望近似其假定的结合几何结构,通常是为后续应用分析配体相似性或多样性的三维方法准备数据的首选方法。例如三维定量构效关系研究、药效团阐明和受体建模。一个令人困扰的事实是,配体通常相当灵活,严格的分析必须纳入分子灵活性。我们回顾了过去六年关于分子叠加的科学出版物。我们的重点在于对任意分子结构执行的自动程序。这里我们主要关注方法学方面。因此,本报告省略了几乎没有方法学元素的普通应用研究。虽然本综述无法提及对这个积极发展领域的每一项贡献,但我们打算为最近的文献提供指引,这些文献对分子结构比对的计算方法做出了重要贡献。最后,我们就叠加方法如何有效地用于虚拟数据库筛选的目的提供一个观点。我们认为,最终目标是在非平凡规模的结构数据库中检测类似物,以便缩小后续实验的搜索空间。