Publication | Closed Access
2D QSAR Consensus Prediction for High-Throughput Virtual Screening. An Application to COX-2 Inhibition Modeling and Screening of the NCI Database
73
Citations
24
References
2003
Year
Drug TargetEngineeringHit IdentificationCox-2 Inhibitor TrainingBiostatisticsCancer ResearchVirtual ScreeningCox-2 Binding Ic50PharmacologyTarget PredictionMolecular DockingQsar Consensus PredictionNci DatabaseMolecular PropertyComputational BiologyLigand Test SetCox-2 Inhibition ModelingRational Drug DesignSystems BiologyMedicineQuantitative Structure-activity RelationshipDrug DiscoveryHigh-throughput Screening
Using classification (SOM, LVQ, Binary, Decision Tree) and regression algorithms (PLS, BRANN, k-NN, Linear), this paper details the building of eight 2D-QSAR models from a 266 COX-2 inhibitor training set. The predictive performances of these eight models were subsequently compared using an 88 COX-2 inhibitor test set. Each ligand is described by 52 2D descriptors expressed as van der Waals Surface Areas (P_VSA) and its COX-2 binding IC50. One of our best predictive models is the neural network model (BRANN), which is able to select a subset, from the 88 ligand test set, that contains 94% COX-2 active inhibitors (pIC50>7.5) and detects 71% of all the actives. We then introduce a QSAR consensus prediction protocol that is shown to be more predictive than any single QSAR model: our C3 consensus approach is able to select a subset from the 88 ligand test set that contains 94% active inhibitors and 83% of all the actives. The 2D QSAR consensus protocol was finally applied to the high-throughput virtual screening of the NCI database, containing 193,477 organic compounds.
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