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Development of Dimethyl Sulfoxide Solubility Models Using 163 000 Molecules: Using a Domain Applicability Metric to Select More Reliable Predictions

[Image: see text] The dimethyl sulfoxide (DMSO) solubility data from Enamine and two UCB pharma compound collections were analyzed using 8 different machine learning methods and 12 descriptor sets. The analyzed data sets were highly imbalanced with 1.7–5.8% nonsoluble compounds. The libraries’ enric...

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Autores principales: Tetko, Igor V., Novotarskyi, Sergii, Sushko, Iurii, Ivanov, Vladimir, Petrenko, Alexander E., Dieden, Reiner, Lebon, Florence, Mathieu, Benoit
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2013
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3760295/
https://www.ncbi.nlm.nih.gov/pubmed/23855787
http://dx.doi.org/10.1021/ci400213d
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author Tetko, Igor V.
Novotarskyi, Sergii
Sushko, Iurii
Ivanov, Vladimir
Petrenko, Alexander E.
Dieden, Reiner
Lebon, Florence
Mathieu, Benoit
author_facet Tetko, Igor V.
Novotarskyi, Sergii
Sushko, Iurii
Ivanov, Vladimir
Petrenko, Alexander E.
Dieden, Reiner
Lebon, Florence
Mathieu, Benoit
author_sort Tetko, Igor V.
collection PubMed
description [Image: see text] The dimethyl sulfoxide (DMSO) solubility data from Enamine and two UCB pharma compound collections were analyzed using 8 different machine learning methods and 12 descriptor sets. The analyzed data sets were highly imbalanced with 1.7–5.8% nonsoluble compounds. The libraries’ enrichment by soluble molecules from the set of 10% of the most reliable predictions was used to compare prediction performances of the methods. The highest accuracies were calculated using a C4.5 decision classification tree, random forest, and associative neural networks. The performances of the methods developed were estimated on individual data sets and their combinations. The developed models provided on average a 2-fold decrease of the number of nonsoluble compounds amid all compounds predicted as soluble in DMSO. However, a 4–9-fold enrichment was observed if only 10% of the most reliable predictions were considered. The structural features influencing compounds to be soluble or nonsoluble in DMSO were also determined. The best models developed with the publicly available Enamine data set are freely available online at http://ochem.eu/article/33409.
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spelling pubmed-37602952013-09-03 Development of Dimethyl Sulfoxide Solubility Models Using 163 000 Molecules: Using a Domain Applicability Metric to Select More Reliable Predictions Tetko, Igor V. Novotarskyi, Sergii Sushko, Iurii Ivanov, Vladimir Petrenko, Alexander E. Dieden, Reiner Lebon, Florence Mathieu, Benoit J Chem Inf Model [Image: see text] The dimethyl sulfoxide (DMSO) solubility data from Enamine and two UCB pharma compound collections were analyzed using 8 different machine learning methods and 12 descriptor sets. The analyzed data sets were highly imbalanced with 1.7–5.8% nonsoluble compounds. The libraries’ enrichment by soluble molecules from the set of 10% of the most reliable predictions was used to compare prediction performances of the methods. The highest accuracies were calculated using a C4.5 decision classification tree, random forest, and associative neural networks. The performances of the methods developed were estimated on individual data sets and their combinations. The developed models provided on average a 2-fold decrease of the number of nonsoluble compounds amid all compounds predicted as soluble in DMSO. However, a 4–9-fold enrichment was observed if only 10% of the most reliable predictions were considered. The structural features influencing compounds to be soluble or nonsoluble in DMSO were also determined. The best models developed with the publicly available Enamine data set are freely available online at http://ochem.eu/article/33409. American Chemical Society 2013-07-15 2013-08-26 /pmc/articles/PMC3760295/ /pubmed/23855787 http://dx.doi.org/10.1021/ci400213d Text en Copyright © 2013 American Chemical Society Terms of Use (http://pubs.acs.org/page/policy/authorchoice_termsofuse.html)
spellingShingle Tetko, Igor V.
Novotarskyi, Sergii
Sushko, Iurii
Ivanov, Vladimir
Petrenko, Alexander E.
Dieden, Reiner
Lebon, Florence
Mathieu, Benoit
Development of Dimethyl Sulfoxide Solubility Models Using 163 000 Molecules: Using a Domain Applicability Metric to Select More Reliable Predictions
title Development of Dimethyl Sulfoxide Solubility Models Using 163 000 Molecules: Using a Domain Applicability Metric to Select More Reliable Predictions
title_full Development of Dimethyl Sulfoxide Solubility Models Using 163 000 Molecules: Using a Domain Applicability Metric to Select More Reliable Predictions
title_fullStr Development of Dimethyl Sulfoxide Solubility Models Using 163 000 Molecules: Using a Domain Applicability Metric to Select More Reliable Predictions
title_full_unstemmed Development of Dimethyl Sulfoxide Solubility Models Using 163 000 Molecules: Using a Domain Applicability Metric to Select More Reliable Predictions
title_short Development of Dimethyl Sulfoxide Solubility Models Using 163 000 Molecules: Using a Domain Applicability Metric to Select More Reliable Predictions
title_sort development of dimethyl sulfoxide solubility models using 163 000 molecules: using a domain applicability metric to select more reliable predictions
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3760295/
https://www.ncbi.nlm.nih.gov/pubmed/23855787
http://dx.doi.org/10.1021/ci400213d
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