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Prospective performance evaluation of selected common virtual screening tools. Case study: Cyclooxygenase (COX) 1 and 2
- Source :
- European Journal of Medicinal Chemistry
- Publication Year :
- 2014
-
Abstract
- Computational methods can be applied in drug development for the identification of novel lead candidates, but also for the prediction of pharmacokinetic properties and potential adverse effects, thereby aiding to prioritize and identify the most promising compounds. In principle, several techniques are available for this purpose, however, which one is the most suitable for a specific research objective still requires further investigation. Within this study, the performance of several programs, representing common virtual screening methods, was compared in a prospective manner. First, we selected top-ranked virtual screening hits from the three methods pharmacophore modeling, shape-based modeling, and docking. For comparison, these hits were then additionally predicted by external pharmacophore- and 2D similarity-based bioactivity profiling tools. Subsequently, the biological activities of the selected hits were assessed in vitro, which allowed for evaluating and comparing the prospective performance of the applied tools. Although all methods performed well, considerable differences were observed concerning hit rates, true positive and true negative hits, and hitlist composition. Our results suggest that a rational selection of the applied method represents a powerful strategy to maximize the success of a research project, tightly linked to its aims. We employed cyclooxygenase as application example, however, the focus of this study lied on highlighting the differences in the virtual screening tool performances and not in the identification of novel COX-inhibitors.<br />Graphical abstract<br />Highlights • Selected common virtual screening tools were applied in parallel. • Top-ranked hits were investigated with bioactivity profiling tools. • Compounds were tested in vitro for COX activity. • The prospective performance of all applied programs was evaluated and compared.
- Subjects :
- Models, Molecular
Drug Evaluation, Preclinical
AA, arachidonic acid
PGE2, Prostaglandin E2
ECFP4, Extended-connectivity fingerprints 4
Docking
Method comparison
SEA, Similarity Ensemble Approach
MNA, multilevel neighborhoods of atoms
FCFP6, Functional-class fingerprints 6
HBD, hydrogen bond donor
Acc, accuracy
Tc, Tanimoto coefficient
Molecular Structure
R, ring feature
NI, negative ionizable feature
XVOL, exclusion volume
GFA, genetic function approximation
Cyclooxygenase
EE, early enrichment
HIV-1, human immunodeficiency virus 1
OEST, ROCS OpenEye shape Tanimoto
Original Article
DES, diethylstilbestrol
TP, true positive hits
WOMBAT, World of Molecular Bioactivity
ACE, angiotensin-converting enzyme
FN, false negative hits
FP, false positive hits
KEGG, Kyoto Encyclopedia of Genes and Genomes
Structure-Activity Relationship
Shape-based modeling
C, cation
TN, true negative hits
Humans
Cyclooxygenase Inhibitors
ROCS, Rapid Overlay of Chemical Structures
SERMs, selective estrogen receptor modulators
Pharmacophore modeling
Ar, aromatic feature
OE, overall enrichment
Dose-Response Relationship, Drug
MB, metal binding feature
OECS, ROCS OpenEye ComboScore
DUD, Directory of Useful Decoys
m. p., melting point
COX, cyclooxygenase
H, hydrophobic feature
Cyclooxygenase 2
HBA, hydrogen bond acceptor
Cyclooxygenase 1
PASS, Prediction of Activity Spectra for Substances
A, anion
PDB, Protein Databank
2D similarity-based search
Subjects
Details
- ISSN :
- 17683254
- Volume :
- 96
- Database :
- OpenAIRE
- Journal :
- European journal of medicinal chemistry
- Accession number :
- edsair.pmid..........0dd3fe2a26f55615cdfb4f18b5b8beb7