Extraction and visualization of potential pharmacophore points using support vector machines: Application to ligand-based virtual screening for COX-2 inhibitors

被引:55
作者
Franke, L
Byvatov, E
Werz, O
Steinhilber, D
Schneider, P
Schneider, G
机构
[1] Univ Frankfurt, Inst Organ Chem & Chem Biol, D-60439 Frankfurt, Germany
[2] Univ Frankfurt, Inst Pharmazeut Chem, D-60439 Frankfurt, Germany
[3] Schneider Consulting GbR, D-61440 Oberursel, Germany
关键词
D O I
10.1021/jm050619h
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Support vector machines (SVM) were trained to predict cyclooxygenase 2 (COX-2) and thrombin inhibitors. The classifiers were obtained using sets of known COX-2 and thrombin inhibitors as "positive examples" and a large collection of screening compounds as "negative examples". Molecules were encoded by topological pharmacophore-point triangles. In retrospective virtual screening, 50-90% of the known active compounds were listed within the first 0.1% of the ranked database. To check the validity of the constructed classifiers, we developed a method for feature extraction and visualization using SVM. As a result, potential pharmacophore points were weighted according to their importance for COX-2 and thrombin inhibition. Known thrombin and COX-2 pharmacophore points were correctly recognized by the machine learning system. In a prospective virtual screening study, several potential COX-2 inhibitors were predicted and tested in a cellular activity assay. A benzimidazole derivative exhibited significant inhibitory activity with an IC50 of 0.2 mu M, which is better than Celecoxib in our assay. It was demonstrated that the SVM machine-learning method can be used in virtual screening and be analyzed in a human-interpretable way that results in a set of rules for designing novel molecules.
引用
收藏
页码:6997 / 7004
页数:8
相关论文
共 62 条
[51]   Receptor-based 3D QSAR analysis of estrogen receptor ligands - merging the accuracy of receptor-based alignments with the computational efficiency of ligand-based methods [J].
Sippl, W .
JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2000, 14 (06) :559-572
[52]   Prostaglandin endoperoxide H synthases (cyclooxygenases)-1 and -2 [J].
Smith, WL ;
Garavito, RM ;
DeWitt, DL .
JOURNAL OF BIOLOGICAL CHEMISTRY, 1996, 271 (52) :33157-33160
[53]   CYCLIC AMIDES OF N-DELTA-ARYLSULFONYLAMINOACYLATED 4-AMIDINOPHENYLALANINE - TIGHT-BINDING INHIBITORS OF THROMBIN [J].
STURZEBECHER, J ;
MARKWARDT, F ;
VOIGT, B ;
WAGNER, G ;
WALSMANN, P .
THROMBOSIS RESEARCH, 1983, 29 (06) :635-642
[54]  
TONG S, 2000, P 7 INT C MACH LEARN
[55]  
Trummlitz G, 2002, CURR OPIN DRUG DISC, V5, P550
[56]   Cyclooxygenase-1/2 (COX-1/COX-2) and 5-lipoxygenase (5-LOX) inhibitors of the 6,7-diaryl-2,3-1H-dihydropyrrolizine type [J].
Ulbrich, H ;
Fiebich, B ;
Dannhardt, G .
EUROPEAN JOURNAL OF MEDICINAL CHEMISTRY, 2002, 37 (12) :953-959
[57]  
Vapnik V, 1999, NATURE STAT LEARNING
[58]   Active learning with support vector machines in the drug discovery process [J].
Warmuth, MK ;
Liao, J ;
Rätsch, G ;
Mathieson, M ;
Putta, S ;
Lemmen, C .
JOURNAL OF CHEMICAL INFORMATION AND COMPUTER SCIENCES, 2003, 43 (02) :667-673
[59]   LigandScout: 3-d pharmacophores derived from protein-bound Ligands and their use as virtual screening filters [J].
Wolber, G ;
Langer, T .
JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2005, 45 (01) :160-169
[60]  
YAMAMOTO S, 1987, ENZYME IMMUNOASSAY P