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QMOD:具有物理意义的定量构效关系。

QMOD: physically meaningful QSAR.

机构信息

Department of Bioengineering and Therapeutic Sciences, Helen Diller Family Comprehensive Cancer Center, University of California, 1450 3rd Street, Room D373, MC 0128, P.O. Box 589001, San Francisco, CA 94158-9001, USA.

出版信息

J Comput Aided Mol Des. 2010 Oct;24(10):865-78. doi: 10.1007/s10822-010-9379-8. Epub 2010 Aug 19.

DOI:10.1007/s10822-010-9379-8
PMID:20721601
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3109424/
Abstract

Computational methods for predicting ligand affinity where no protein structure is known generally take the form of regression analysis based on molecular features that have only a tangential relationship to a protein/ligand binding event. Such methods have utility in retrospective rationalization of activity patterns of substituents on a common scaffold, but are limited when either multiple scaffolds are present or when ligand alignment varies significantly based on structural changes. In addition, such methods generally assume independence and additivity of effect from scaffold substituents. Collectively, these non-physical modeling assumptions sharply limit the utility of widely used QSAR approaches for prospective prediction of ligand activity. The recently introduced Surflex-QMOD approach, by virtue of constructing physical models of binding sites, comes closer to a modeling approach that is congruent with protein ligand binding events. A set of congeneric CDK2 inhibitors showed that induced binding pockets can be quite congruent with the enzyme's active site but that model predictivity within a chemical series does not necessarily depend on congruence. Muscarinic antagonists were used to show that the QMOD approach is capable of making accurate predictions in cases where highly non-additive structure activity effects exist. The QMOD method offers a means to go beyond non-causative correlations in QSAR analysis.

摘要

当未知蛋白质结构时,用于预测配体亲和力的计算方法通常采用基于分子特征的回归分析形式,这些特征与蛋白质/配体结合事件仅有间接关系。这种方法在回顾性合理化常见支架上取代基的活性模式方面具有实用性,但在存在多种支架或配体排列根据结构变化显着变化时受到限制。此外,此类方法通常假定支架取代基的影响具有独立性和可加性。这些非物理建模假设极大地限制了广泛使用的 QSAR 方法在配体活性的前瞻性预测中的实用性。最近引入的 Surflex-QMOD 方法通过构建结合位点的物理模型,更接近与蛋白质配体结合事件一致的建模方法。一组同类 CDK2 抑制剂表明,诱导结合口袋可以与酶的活性位点非常一致,但在化学系列内的模型预测性不一定取决于一致性。毒蕈碱拮抗剂被用于表明 QMOD 方法能够在存在高度非加性结构活性效应的情况下进行准确预测。QMOD 方法提供了一种超越 QSAR 分析中因果关系的方法。

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本文引用的文献

1
Comparative molecular field analysis (CoMFA). 1. Effect of shape on binding of steroids to carrier proteins.比较分子场分析(CoMFA)。1. 形状对类固醇与载体蛋白结合的影响。
J Am Chem Soc. 1988 Aug 1;110(18):5959-67. doi: 10.1021/ja00226a005.
2
Physical binding pocket induction for affinity prediction.用于亲和力预测的物理结合口袋诱导
J Med Chem. 2009 Oct 8;52(19):6107-25. doi: 10.1021/jm901096y.
3
Insights into the structural basis of N2 and O6 substituted guanine derivatives as cyclin-dependent kinase 2 (CDK2) inhibitors: prediction of the binding modes and potency of the inhibitors by docking and ONIOM calculations.N2和O6取代鸟嘌呤衍生物作为细胞周期蛋白依赖性激酶2(CDK2)抑制剂的结构基础洞察:通过对接和ONIOM计算预测抑制剂的结合模式和效力
J Chem Inf Model. 2009 Apr;49(4):886-99. doi: 10.1021/ci8004034.
4
Pseudoreceptor models in drug design: bridging ligand- and receptor-based virtual screening.药物设计中的伪受体模型:连接基于配体和受体的虚拟筛选
Nat Rev Drug Discov. 2008 Aug;7(8):667-77. doi: 10.1038/nrd2615. Epub 2008 Jul 18.
5
Customizing scoring functions for docking.定制对接的评分函数。
J Comput Aided Mol Des. 2008 May;22(5):269-86. doi: 10.1007/s10822-008-9174-y. Epub 2008 Feb 14.
6
The trouble with QSAR (or how I learned to stop worrying and embrace fallacy).定量构效关系的问题(或者我是如何学会不再担忧并接受谬误的)。
J Chem Inf Model. 2008 Jan;48(1):25-6. doi: 10.1021/ci700332k. Epub 2007 Dec 28.
7
Binding MOAD, a high-quality protein-ligand database.绑定MOAD,一个高质量的蛋白质-配体数据库。
Nucleic Acids Res. 2008 Jan;36(Database issue):D674-8. doi: 10.1093/nar/gkm911. Epub 2007 Nov 30.
8
Pushing the boundaries of 3D-QSAR.
J Comput Aided Mol Des. 2007 Jan-Mar;21(1-3):23-32. doi: 10.1007/s10822-006-9100-0. Epub 2007 Jan 26.
9
Parameter estimation for scoring protein-ligand interactions using negative training data.利用负训练数据对蛋白质-配体相互作用进行评分的参数估计
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10
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Curr Med Chem. 2004 Nov;11(22):2991-3005. doi: 10.2174/0929867043364036.