2003
DOI: 10.1021/ci034114g
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Structure-Based versus Property-Based Approaches in the Design of G-Protein-Coupled Receptor-Targeted Libraries

Abstract: In this work, two alternative approaches to the design of small-molecule libraries targeted for several G-protein-coupled receptor (GPCR) classes were explored. The first approach relies on the selection of structural analogues of known active compounds using a substructural similarity method. The second approach, based on an artificial neural network classification procedure, searches for compounds that possess physicochemical properties typical of the GPCR-specific agents. As a reference base, 3365 GPCR-acti… Show more

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Cited by 21 publications
(11 citation statements)
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“…Successful approaches to the design of focused compound libraries have recently been reported for the melanocortin 4 receptor and other GPCRs [73,[85][86][87][88]. They range from 2D simulation algorithms, to the analysis of ligand-receptor spatial arrangements and to neural network learning QSAR systems.…”
Section: Data Base Search For Drug Designmentioning
confidence: 99%
“…Successful approaches to the design of focused compound libraries have recently been reported for the melanocortin 4 receptor and other GPCRs [73,[85][86][87][88]. They range from 2D simulation algorithms, to the analysis of ligand-receptor spatial arrangements and to neural network learning QSAR systems.…”
Section: Data Base Search For Drug Designmentioning
confidence: 99%
“…Constructing libraries targeted for one of these classes and refinements thereof is of common interest now. Recently, neural network techniques were used for designing GPCR targeted libraries [110,111] and serine protease targeted libraries [112]. A first SVM approach predicting GPCR ligands has also been published [113].…”
Section: Model Estimationmentioning
confidence: 99%
“…These training-set molecules are then analyzed to develop a decision rule that can be used to classify new molecules (the test set) into one of the two classes. 6 Various machine-learning techniques have already been suggested to be used to increase the chances of identifying novel GPCR ligands; for example, back-propagation neural networks with BCUT descriptors, 7 a combination of structure-based and property-based parameters, 8 pattern recognition techniques, 9 similarity searching and dynamic compound mapping, 10 or self-organizing neural networks with RDF descriptors. 11 Besides a wide variety of these available methods, Bayesian concepts and methodology has existed for many years to analyze structure activity data or to predict chemical properties; however, its popularity as a tool for substructural analysis within drug discovery and structure-activity analysis is somewhat recent.…”
Section: Introductionmentioning
confidence: 99%
“…For most of published works so far, only representative subgroups belonging to either class A and/or class B GPCR ligands were used. The main objective of these published works was either to classify GPCR and non-GPCR binding ligands 9 or to distinguish target-and family-selective GPCR antagonists. 10 Our model will be able to distinguish the mode of action of GPCR binding ligands, whether they are agonistic or antagonistic.…”
Section: Introductionmentioning
confidence: 99%