Literature DB >> 15208456

Neural networks as robust tools in drug lead discovery and development.

David A Winkler1.   

Abstract

Empirical methods for building predictive models of the relationships between molecular structure and useful properties are becoming increasingly important. This has arisen because drug discovery and development have become more complex. A large amount of biological target information is becoming available though molecular biology. Automation of chemical synthesis and pharmacological screening has also provided a vast amount of experimental data. Tools for designing libraries and extracting information from molecular databases and high-throughput screening (HTS) experiments robustly and quickly enable leads to be discovered more effectively. As drug leads progress down the development pipeline, the ability to predict physicochemical, pharmacokinetic, and toxicological properties of these leads is becoming increasingly important in reducing the number of expensive, late-development failures. Neural network methods have much to offer in these areas. This review introduces the concepts behind neural networks applied to quantitative structure-activity relationships (QSARs), points out problems that may be encountered, suggests ways of avoiding the pitfalls, and introduces several exciting new neural network methods discovered during the last decade.

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Year:  2004        PMID: 15208456     DOI: 10.1385/MB:27:2:139

Source DB:  PubMed          Journal:  Mol Biotechnol        ISSN: 1073-6085            Impact factor:   2.695


  70 in total

1.  A neural network based virtual high throughput screening test for the prediction of CNS activity.

Authors:  G M Keserû; L Molnár; I Greiner
Journal:  Comb Chem High Throughput Screen       Date:  2000-12       Impact factor: 1.339

2.  A comparative study of ligand-receptor complex binding affinity prediction methods based on glycogen phosphorylase inhibitors.

Authors:  S S So; M Karplus
Journal:  J Comput Aided Mol Des       Date:  1999-05       Impact factor: 3.686

3.  A consensus neural network-based technique for discriminating soluble and poorly soluble compounds.

Authors:  David T Manallack; Benjamin G Tehan; Emanuela Gancia; Brian D Hudson; Martyn G Ford; David J Livingstone; David C Whitley; Will R Pitt
Journal:  J Chem Inf Comput Sci       Date:  2003 Mar-Apr

4.  Quantitative structure-activity relationships (QSARs) for skin corrosivity of organic acids, bases and phenols: Principal components and neural network analysis of extended datasets.

Authors:  M D Barratt
Journal:  Toxicol In Vitro       Date:  1996-02       Impact factor: 3.500

5.  On the structure of medicinal chemistry.

Authors:  C Hansch
Journal:  J Med Chem       Date:  1976-01       Impact factor: 7.446

6.  Quantitative structure-activity relationship (QSAR) studies in genetic toxicology: mathematical models and the "biological activity" term of the relationship.

Authors:  R Benigni; A Giuliani
Journal:  Mutat Res       Date:  1994-04-15       Impact factor: 2.433

7.  A practitioner's perspective of the role of quantitative structure-activity analysis in medicinal chemistry.

Authors:  Y C Martin
Journal:  J Med Chem       Date:  1981-03       Impact factor: 7.446

8.  Genetic neural networks for quantitative structure-activity relationships: improvements and application of benzodiazepine affinity for benzodiazepine/GABAA receptors.

Authors:  S S So; M Karplus
Journal:  J Med Chem       Date:  1996-12-20       Impact factor: 7.446

9.  A QSAR model for the eye irritation of cationic surfactants.

Authors:  G Y Patlewicz; R A Rodford; G Ellis; M D Barratt
Journal:  Toxicol In Vitro       Date:  2000-02       Impact factor: 3.500

10.  Neural computing in cancer drug development: predicting mechanism of action.

Authors:  J N Weinstein; K W Kohn; M R Grever; V N Viswanadhan; L V Rubinstein; A P Monks; D A Scudiero; L Welch; A D Koutsoukos; A J Chiausa
Journal:  Science       Date:  1992-10-16       Impact factor: 47.728

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  15 in total

1.  Discovery of 2-(2-benzoxazoyl amino)-4-aryl-5-cyanopyrimidine as negative allosteric modulators (NAMs) of metabotropic glutamate receptor 5 (mGlu₅): from an artificial neural network virtual screen to an in vivo tool compound.

Authors:  Ralf Mueller; Eric S Dawson; Jens Meiler; Alice L Rodriguez; Brian A Chauder; Brittney S Bates; Andrew S Felts; Jeffrey P Lamb; Usha N Menon; Sataywan B Jadhav; Alexander S Kane; Carrie K Jones; Karen J Gregory; Colleen M Niswender; P Jeffrey Conn; Christopher M Olsen; Danny G Winder; Kyle A Emmitte; Craig W Lindsley
Journal:  ChemMedChem       Date:  2012-01-20       Impact factor: 3.466

2.  Iterative experimental and virtual high-throughput screening identifies metabotropic glutamate receptor subtype 4 positive allosteric modulators.

Authors:  Ralf Mueller; Eric S Dawson; Colleen M Niswender; Mariusz Butkiewicz; Corey R Hopkins; C David Weaver; Craig W Lindsley; P Jeffrey Conn; Jens Meiler
Journal:  J Mol Model       Date:  2012-05-17       Impact factor: 1.810

Review 3.  Structure and dynamics of molecular networks: a novel paradigm of drug discovery: a comprehensive review.

Authors:  Peter Csermely; Tamás Korcsmáros; Huba J M Kiss; Gábor London; Ruth Nussinov
Journal:  Pharmacol Ther       Date:  2013-02-04       Impact factor: 12.310

Review 4.  Sparse QSAR modelling methods for therapeutic and regenerative medicine.

Authors:  David A Winkler
Journal:  J Comput Aided Mol Des       Date:  2018-02-14       Impact factor: 3.686

5.  Models for prediction of mortality from cirrhosis with special reference to artificial neural network: a critical review.

Authors:  Uday Chand Ghoshal; Ananya Das
Journal:  Hepatol Int       Date:  2007-11-27       Impact factor: 6.047

6.  Artificial intelligence models for predicting iron deficiency anemia and iron serum level based on accessible laboratory data.

Authors:  Iman Azarkhish; Mohammad Reza Raoufy; Shahriar Gharibzadeh
Journal:  J Med Syst       Date:  2011-04-19       Impact factor: 4.460

7.  Identification of Metabotropic Glutamate Receptor Subtype 5 Potentiators Using Virtual High-Throughput Screening.

Authors:  Ralf Mueller; Alice L Rodriguez; Eric S Dawson; Mariusz Butkiewicz; Thuy T Nguyen; Stephen Oleszkiewicz; Annalen Bleckmann; C David Weaver; Craig W Lindsley; P Jeffrey Conn; Jens Meiler
Journal:  ACS Chem Neurosci       Date:  2010-01-28       Impact factor: 4.418

8.  Artificial neural network--based analysis of high-throughput screening data for improved prediction of active compounds.

Authors:  Swapan Chakrabarti; Stan R Svojanovsky; Romana Slavik; Gunda I Georg; George S Wilson; Peter G Smith
Journal:  J Biomol Screen       Date:  2009-12

9.  Benchmarking ligand-based virtual High-Throughput Screening with the PubChem database.

Authors:  Mariusz Butkiewicz; Edward W Lowe; Ralf Mueller; Jeffrey L Mendenhall; Pedro L Teixeira; C David Weaver; Jens Meiler
Journal:  Molecules       Date:  2013-01-08       Impact factor: 4.411

10.  BgN-Score and BsN-Score: bagging and boosting based ensemble neural networks scoring functions for accurate binding affinity prediction of protein-ligand complexes.

Authors:  Hossam M Ashtawy; Nihar R Mahapatra
Journal:  BMC Bioinformatics       Date:  2015-02-23       Impact factor: 3.169

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