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A physicochemical descriptor-based scoring scheme for effective and rapid filtering of kinase-like chemical space

BACKGROUND: The current chemical space of known small molecules is estimated to exceed 10(60 )structures. Though the largest physical compound repositories contain only a few tens of millions of unique compounds, virtual screening of databases of this size is still difficult. In recent years, the ap...

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Autores principales: Singh, Narender, Sun, Hongmao, Chaudhury, Sidhartha, AbdulHameed, Mohamed Diwan M, Wallqvist, Anders, Tawa, Gregory
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3299594/
https://www.ncbi.nlm.nih.gov/pubmed/22316383
http://dx.doi.org/10.1186/1758-2946-4-4
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author Singh, Narender
Sun, Hongmao
Chaudhury, Sidhartha
AbdulHameed, Mohamed Diwan M
Wallqvist, Anders
Tawa, Gregory
author_facet Singh, Narender
Sun, Hongmao
Chaudhury, Sidhartha
AbdulHameed, Mohamed Diwan M
Wallqvist, Anders
Tawa, Gregory
author_sort Singh, Narender
collection PubMed
description BACKGROUND: The current chemical space of known small molecules is estimated to exceed 10(60 )structures. Though the largest physical compound repositories contain only a few tens of millions of unique compounds, virtual screening of databases of this size is still difficult. In recent years, the application of physicochemical descriptor-based profiling, such as Lipinski's rule-of-five for drug-likeness and Oprea's criteria of lead-likeness, as early stage filters in drug discovery has gained widespread acceptance. In the current study, we outline a kinase-likeness scoring function based on known kinase inhibitors. RESULTS: The method employs a collection of 22,615 known kinase inhibitors from the ChEMBL database. A kinase-likeness score is computed using statistical analysis of nine key physicochemical descriptors for these inhibitors. Based on this score, the kinase-likeness of four publicly and commercially available databases, i.e., National Cancer Institute database (NCI), the Natural Products database (NPD), the National Institute of Health's Molecular Libraries Small Molecule Repository (MLSMR), and the World Drug Index (WDI) database, is analyzed. Three of these databases, i.e., NCI, NPD, and MLSMR are frequently used in the virtual screening of kinase inhibitors, while the fourth WDI database is for comparison since it covers a wide range of known chemical space. Based on the kinase-likeness score, a kinase-focused library is also developed and tested against three different kinase targets selected from three different branches of the human kinome tree. CONCLUSIONS: Our proposed methodology is one of the first that explores how the narrow chemical space of kinase inhibitors and its relevant physicochemical information can be utilized to build kinase-focused libraries and prioritize pre-existing compound databases for screening. We have shown that focused libraries generated by filtering compounds using the kinase-likeness score have, on average, better docking scores than an equivalent number of randomly selected compounds. Beyond library design, our findings also impact the broader efforts to identify kinase inhibitors by screening pre-existing compound libraries. Currently, the NCI library is the most commonly used database for screening kinase inhibitors. Our research suggests that other libraries, such as MLSMR, are more kinase-like and should be given priority in kinase screenings.
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spelling pubmed-32995942012-03-14 A physicochemical descriptor-based scoring scheme for effective and rapid filtering of kinase-like chemical space Singh, Narender Sun, Hongmao Chaudhury, Sidhartha AbdulHameed, Mohamed Diwan M Wallqvist, Anders Tawa, Gregory J Cheminform Research Article BACKGROUND: The current chemical space of known small molecules is estimated to exceed 10(60 )structures. Though the largest physical compound repositories contain only a few tens of millions of unique compounds, virtual screening of databases of this size is still difficult. In recent years, the application of physicochemical descriptor-based profiling, such as Lipinski's rule-of-five for drug-likeness and Oprea's criteria of lead-likeness, as early stage filters in drug discovery has gained widespread acceptance. In the current study, we outline a kinase-likeness scoring function based on known kinase inhibitors. RESULTS: The method employs a collection of 22,615 known kinase inhibitors from the ChEMBL database. A kinase-likeness score is computed using statistical analysis of nine key physicochemical descriptors for these inhibitors. Based on this score, the kinase-likeness of four publicly and commercially available databases, i.e., National Cancer Institute database (NCI), the Natural Products database (NPD), the National Institute of Health's Molecular Libraries Small Molecule Repository (MLSMR), and the World Drug Index (WDI) database, is analyzed. Three of these databases, i.e., NCI, NPD, and MLSMR are frequently used in the virtual screening of kinase inhibitors, while the fourth WDI database is for comparison since it covers a wide range of known chemical space. Based on the kinase-likeness score, a kinase-focused library is also developed and tested against three different kinase targets selected from three different branches of the human kinome tree. CONCLUSIONS: Our proposed methodology is one of the first that explores how the narrow chemical space of kinase inhibitors and its relevant physicochemical information can be utilized to build kinase-focused libraries and prioritize pre-existing compound databases for screening. We have shown that focused libraries generated by filtering compounds using the kinase-likeness score have, on average, better docking scores than an equivalent number of randomly selected compounds. Beyond library design, our findings also impact the broader efforts to identify kinase inhibitors by screening pre-existing compound libraries. Currently, the NCI library is the most commonly used database for screening kinase inhibitors. Our research suggests that other libraries, such as MLSMR, are more kinase-like and should be given priority in kinase screenings. BioMed Central 2012-02-08 /pmc/articles/PMC3299594/ /pubmed/22316383 http://dx.doi.org/10.1186/1758-2946-4-4 Text en Copyright ©2012 Singh et al; licensee Chemistry Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Singh, Narender
Sun, Hongmao
Chaudhury, Sidhartha
AbdulHameed, Mohamed Diwan M
Wallqvist, Anders
Tawa, Gregory
A physicochemical descriptor-based scoring scheme for effective and rapid filtering of kinase-like chemical space
title A physicochemical descriptor-based scoring scheme for effective and rapid filtering of kinase-like chemical space
title_full A physicochemical descriptor-based scoring scheme for effective and rapid filtering of kinase-like chemical space
title_fullStr A physicochemical descriptor-based scoring scheme for effective and rapid filtering of kinase-like chemical space
title_full_unstemmed A physicochemical descriptor-based scoring scheme for effective and rapid filtering of kinase-like chemical space
title_short A physicochemical descriptor-based scoring scheme for effective and rapid filtering of kinase-like chemical space
title_sort physicochemical descriptor-based scoring scheme for effective and rapid filtering of kinase-like chemical space
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3299594/
https://www.ncbi.nlm.nih.gov/pubmed/22316383
http://dx.doi.org/10.1186/1758-2946-4-4
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