Literature DB >> 16279792

Application of validated QSAR models of D1 dopaminergic antagonists for database mining.

Scott Oloff1, Richard B Mailman, Alexander Tropsha.   

Abstract

Rigorously validated quantitative structure-activity relationship (QSAR) models have been developed for 48 antagonists of the dopamine D1 receptor and applied to mining chemical datasets to discover novel potential antagonists. Several QSAR methods have been employed, including comparative molecular field analysis (CoMFA), simulated annealing-partial least squares (SA-PLS), k-nearest neighbor (kNN), and support vector machines (SVM). With the exception of CoMFA, these approaches employed 2D topological descriptors generated with the MolConnZ software package (EduSoft, LLC. MolconnZ, version 4.05; http://www.eslc.vabiotech.com/ [4.05], 2003). The original dataset was split into training and test sets to allow for external validation of each training set model. The resulting models were characterized by cross-validated R2 (q2) for the training set and predictive R2 values for the test set of (q2/R2) 0.51/0.47 for CoMFA, 0.7/0.76 for kNN, R2 for the training and test sets of 0.74/0.71 for SVM, and training set fitness and test set R2 values of 0.68/0.63 for SA-PLS. Validated QSAR models with R2 > 0.7, (i.e., kNN and SVM) were used to mine three publicly available chemical databases: the National Cancer Institute (NCI) database of ca. 250,000 compounds, the Maybridge Database of ca. 56,000 compounds, and the ChemDiv Database of ca. 450,000 compounds. These searches resulted in only 54 consensus hits (i.e., predicted active by all models); five of them were previously characterized as dopamine D1 ligands, but were not present in the original dataset. A small fraction of the purported D1 ligands did not contain a catechol ring found in all known dopamine full agonist ligands, suggesting that they may be novel structural antagonist leads. This study illustrates that the combined application of predictive QSAR modeling and database mining may provide an important avenue for rational computer-aided drug discovery.

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Year:  2005        PMID: 16279792     DOI: 10.1021/jm049116m

Source DB:  PubMed          Journal:  J Med Chem        ISSN: 0022-2623            Impact factor:   7.446


  17 in total

1.  A novel automated lazy learning QSAR (ALL-QSAR) approach: method development, applications, and virtual screening of chemical databases using validated ALL-QSAR models.

Authors:  Shuxing Zhang; Alexander Golbraikh; Scott Oloff; Harold Kohn; Alexander Tropsha
Journal:  J Chem Inf Model       Date:  2006 Sep-Oct       Impact factor: 4.956

2.  kScore: a novel machine learning approach that is not dependent on the data structure of the training set.

Authors:  Scott Oloff; Ingo Muegge
Journal:  J Comput Aided Mol Des       Date:  2007-02-28       Impact factor: 3.686

Review 3.  A cheminformatic toolkit for mining biomedical knowledge.

Authors:  Gus R Rosania; Gordon Crippen; Peter Woolf; David States; Kerby Shedden
Journal:  Pharm Res       Date:  2007-03-24       Impact factor: 4.200

4.  Differentiation of AmpC beta-lactamase binders vs. decoys using classification kNN QSAR modeling and application of the QSAR classifier to virtual screening.

Authors:  Jui-Hua Hsieh; Xiang S Wang; Denise Teotico; Alexander Golbraikh; Alexander Tropsha
Journal:  J Comput Aided Mol Des       Date:  2008-03-13       Impact factor: 3.686

5.  Quantitative Series Enrichment Analysis (QSEA): a novel procedure for 3D-QSAR analysis.

Authors:  Bernd Wendt; Richard D Cramer
Journal:  J Comput Aided Mol Des       Date:  2008-02-27       Impact factor: 3.686

Review 6.  In Silico Studies in Drug Research Against Neurodegenerative Diseases.

Authors:  Farahnaz Rezaei Makhouri; Jahan B Ghasemi
Journal:  Curr Neuropharmacol       Date:  2018       Impact factor: 7.363

Review 7.  Computational systems chemical biology.

Authors:  Tudor I Oprea; Elebeoba E May; Andrei Leitão; Alexander Tropsha
Journal:  Methods Mol Biol       Date:  2011

8.  Discovery of novel antimalarial compounds enabled by QSAR-based virtual screening.

Authors:  Liying Zhang; Denis Fourches; Alexander Sedykh; Hao Zhu; Alexander Golbraikh; Sean Ekins; Julie Clark; Michele C Connelly; Martina Sigal; Dena Hodges; Armand Guiguemde; R Kiplin Guy; Alexander Tropsha
Journal:  J Chem Inf Model       Date:  2013-01-23       Impact factor: 4.956

9.  A novel two-step hierarchical quantitative structure-activity relationship modeling work flow for predicting acute toxicity of chemicals in rodents.

Authors:  Hao Zhu; Lin Ye; Ann Richard; Alexander Golbraikh; Fred A Wright; Ivan Rusyn; Alexander Tropsha
Journal:  Environ Health Perspect       Date:  2009-04-03       Impact factor: 9.031

10.  KiDoQ: using docking based energy scores to develop ligand based model for predicting antibacterials.

Authors:  Aarti Garg; Rupinder Tewari; Gajendra P S Raghava
Journal:  BMC Bioinformatics       Date:  2010-03-11       Impact factor: 3.169

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