Fontaine Fabien, Pastor Manuel, Zamora Ismael, Sanz Ferran
Research Unit on Biomedical Informatics (GRIB), IMIM/Universitat Pompeu Fabra, C/Dr. Aiguader, 80, E-08003 Barcelona, Spain.
J Med Chem. 2005 Apr 7;48(7):2687-94. doi: 10.1021/jm049113+.
The aim of this work is to present the anchor-GRIND methodology. Anchor-GRIND efficiently combines a priori chemical and biological knowledge about the studied compounds with alignment-independent molecular descriptors derived from molecular interaction fields. Such descriptors are particularly useful for series of ligands sharing a common scaffold but with very diverse substituents. The method uses a specific position of the molecular structure (the "anchor point") to compare the spatial distribution of the molecular interaction fields of the substituents. The descriptors produced are more detailed and specific than the original GRIND while still avoiding the bias introduced by the alignment. Three data sets have been studied to demonstrate the usefulness of the anchor-GRIND methodology for 3D-QSAR modeling. The two first data sets respectively include congeneric series of the hepatitis C virus NS3 protease and of the acetylcholinesterase inhibitors. The third data set discriminates between factor Xa inhibitors of high and low affinity. In all the series presented, the models obtained with the anchor-GRIND are statistically sound and easy to interpret.
这项工作的目的是介绍锚定-GRIND方法。锚定-GRIND有效地将关于所研究化合物的先验化学和生物学知识与源自分子相互作用场的与比对无关的分子描述符结合起来。此类描述符对于具有共同骨架但取代基非常多样的一系列配体特别有用。该方法利用分子结构的特定位置(“锚点”)来比较取代基的分子相互作用场的空间分布。所产生的描述符比原始的GRIND更详细、更具体,同时仍避免了比对引入的偏差。已经研究了三个数据集,以证明锚定-GRIND方法在3D-QSAR建模中的有用性。前两个数据集分别包括丙型肝炎病毒NS3蛋白酶和乙酰胆碱酯酶抑制剂的同系物系列。第三个数据集区分高亲和力和低亲和力的凝血因子Xa抑制剂。在所有呈现的系列中,用锚定-GRIND获得的模型在统计学上是合理的且易于解释。