5D-QSAR: The key for simulating induced fit?

被引:171
作者
Vedani, A [1 ]
Dobler, M [1 ]
机构
[1] Biog Lab 3R, CH-4056 Basel, Switzerland
关键词
D O I
10.1021/jm011005p
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
In this journal we recently reported the development and the validation of a four-dimensional (4D)-QSAR (quantitative structure-activity relationships) concept, allowing for multiple conformation, orientation, and protonation state representation of ligand molecules. While this approach significantly reduces the bias with selecting a bioactive conformer, orientation, or protonation state, it still requires a "sophisticated guess" about manifestation and magnitude of the associated local induced fit-the adaptation of the receptor binding pocket to the individual ligand topology. We have therefore extended our concept (software Quasar) by an additional degree of freedom-the fifth dimension-allowing for a multiple representation of the topology of the quasi-atomistic receptor surrogate. While this entity may be generated using up to six different induced-fit protocols, we demonstrate that the simulated evolution converges to a single model and that 5D-QSAR-due to the fact that model selection may vary throughout the entire simulation-yields less biased results than. 4D-QSAR where only a single induced-fit model can be evaluated at a time. Using two bioregulators (the neurokinin-1 receptor and the aryl hydrocarbon receptor), we compare the results obtained with 4D- and 5D-QSAR. The NK-1 receptor system (represented by a total of 65 antagonist molecules) converges at a crossvalidated r(2) of 0.870 and a predictive r(2) of 0.837; the corresponding values for the Ah receptor system (represented by a total of 131 dibenzodioxins, dibenzofurans, biphenyls, and polyaromatic hydrocarbons) are 0.838 and 0.832, respectively. The results indicate that the formal investment of additional computer time is well-returned both in quantitative and in qualitative values: less-biased boundary conditions, healthier (i.e., less inbred) model populations, and more accurate predictions of new compounds.
引用
收藏
页码:2139 / 2149
页数:11
相关论文
共 46 条
[1]   HYDROGEN-BONDING IN GLOBULAR-PROTEINS [J].
BAKER, EN ;
HUBBARD, RE .
PROGRESS IN BIOPHYSICS & MOLECULAR BIOLOGY, 1984, 44 (02) :97-179
[2]   MOLECULAR MECHANICS SIMULATION OF PROTEIN LIGAND INTERACTIONS - BINDING OF THYROID-HORMONE ANALOGS TO PRE-ALBUMIN [J].
BLANEY, JM ;
WEINER, PK ;
DEARING, A ;
KOLLMAN, PA ;
JORGENSEN, EC ;
OATLEY, SJ ;
BURRIDGE, JM ;
BLAKE, CCF .
JOURNAL OF THE AMERICAN CHEMICAL SOCIETY, 1982, 104 (23) :6424-6434
[3]   3D MOLECULAR LIPOPHILICITY POTENTIAL PROFILES - A NEW TOOL IN MOLECULAR MODELING [J].
FURET, P ;
SELE, A ;
COHEN, NC .
JOURNAL OF MOLECULAR GRAPHICS, 1988, 6 (04) :182-&
[5]   RECEPTOR SURFACE MODELS .2. APPLICATION TO QUANTITATIVE STRUCTURE-ACTIVITY-RELATIONSHIPS STUDIES [J].
HAHN, M ;
ROGERS, D .
JOURNAL OF MEDICINAL CHEMISTRY, 1995, 38 (12) :2091-2102
[6]   RECEPTOR SURFACE MODELS .1. DEFINITION AND CONSTRUCTION [J].
HAHN, M .
JOURNAL OF MEDICINAL CHEMISTRY, 1995, 38 (12) :2080-2090
[7]   EFFECT OF THE 7-AMINO SUBSTITUENT ON THE INHIBITORY POTENCY OF MECHANISM-BASED ISOCOUMARIN INHIBITORS FOR PORCINE PANCREATIC AND HUMAN NEUTROPHIL ELASTASES - A 1.85-A X-RAY STRUCTURE OF THE COMPLEX BETWEEN PORCINE PANCREATIC ELASTASE AND 7-[(N-TOSYLPHENYLALANYL)AMINO]-4-CHLORO-3-METHOXYISOCOUMARIN [J].
HERNANDEZ, MA ;
POWERS, JC ;
GLINSKI, J ;
OLEKSYSZYN, J ;
VIJAYALAKSHMI, J ;
MEYER, EF .
JOURNAL OF MEDICINAL CHEMISTRY, 1992, 35 (06) :1121-1129
[8]   Construction of 3D-QSAR models using the 4D-QSAR analysis formalism [J].
Hopfinger, AJ ;
Wang, S ;
Tokarski, JS ;
Jin, BQ ;
Albuquerque, M ;
Madhav, PJ ;
Duraiswami, C .
JOURNAL OF THE AMERICAN CHEMICAL SOCIETY, 1997, 119 (43) :10509-10524
[9]   3D QSAR in drug design: Recent advances - Preface [J].
Kubinyi, H ;
Folkers, G ;
Martin, YC .
PERSPECTIVES IN DRUG DISCOVERY AND DESIGN, 1998, 12 :V-VII
[10]   QSAR and 3D QSAR in drug design .1. methodology [J].
Kubinyi, H .
DRUG DISCOVERY TODAY, 1997, 2 (11) :457-467