Profiling and analysis of chemical compounds using pointwise mutual information

Abstract Pointwise mutual information (PMI) is a measure of association used in information theory. In this paper, PMI is used to characterize several publicly available databases (DrugBank, ChEMBL, PubChem and ZINC) in terms of association strength between compound structural features resulting in...

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Main Authors: I. Čmelo, M. Voršilák, D. Svozil
Format: Article
Language:English
Published: BMC 2021-01-01
Series:Journal of Cheminformatics
Subjects:
Online Access:https://doi.org/10.1186/s13321-020-00483-y
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spelling doaj-7a902a0450124fa7804e687ae8a97e092021-01-17T12:52:30ZengBMCJournal of Cheminformatics1758-29462021-01-0113111810.1186/s13321-020-00483-yProfiling and analysis of chemical compounds using pointwise mutual informationI. Čmelo0M. Voršilák1D. Svozil2CZ-OPENSCREEN National Infrastructure for Chemical Biology, Department of Informatics and Chemistry, Faculty of Chemical Technology, University of Chemistry and Technology PragueCZ-OPENSCREEN National Infrastructure for Chemical Biology, Department of Informatics and Chemistry, Faculty of Chemical Technology, University of Chemistry and Technology PragueCZ-OPENSCREEN National Infrastructure for Chemical Biology, Department of Informatics and Chemistry, Faculty of Chemical Technology, University of Chemistry and Technology PragueAbstract Pointwise mutual information (PMI) is a measure of association used in information theory. In this paper, PMI is used to characterize several publicly available databases (DrugBank, ChEMBL, PubChem and ZINC) in terms of association strength between compound structural features resulting in database PMI interrelation profiles. As structural features, substructure fragments obtained by coding individual compounds as MACCS, PubChemKey and ECFP fingerprints are used. The analysis of publicly available databases reveals, in accord with other studies, unusual properties of DrugBank compounds which further confirms the validity of PMI profiling approach. Z-standardized relative feature tightness (ZRFT), a PMI-derived measure that quantifies how well the given compound’s feature combinations fit these in a particular compound set, is applied for the analysis of compound synthetic accessibility (SA), as well as for the classification of compounds as easy (ES) and hard (HS) to synthesize. ZRFT value distributions are compared with these of SYBA and SAScore. The analysis of ZRFT values of structurally complex compounds in the SAVI database reveals oligopeptide structures that are mispredicted by SAScore as HS, while correctly predicted by ZRFT and SYBA as ES. Compared to SAScore, SYBA and random forest, ZRFT predictions are less accurate, though by a narrow margin (Acc ZRFT  = 94.5%, Acc SYBA  = 98.8%, Acc SAScore  = 99.0%, Acc RF  = 97.3%). However, ZRFT ability to distinguish between ES and HS compounds is surprisingly high considering that while SYBA, SAScore and random forest are dedicated SA models, ZRFT is a generic measurement that merely quantifies the strength of interrelations between structural feature pairs. The results presented in the current work indicate that structural feature co-occurrence, quantified by PMI or ZRFT, contains a significant amount of information relevant to physico-chemical properties of organic compounds.https://doi.org/10.1186/s13321-020-00483-yHashed fingerprintStructural keyInformation theoryPointwise mutual informationSynthetic accessibility
collection DOAJ
language English
format Article
sources DOAJ
author I. Čmelo
M. Voršilák
D. Svozil
spellingShingle I. Čmelo
M. Voršilák
D. Svozil
Profiling and analysis of chemical compounds using pointwise mutual information
Journal of Cheminformatics
Hashed fingerprint
Structural key
Information theory
Pointwise mutual information
Synthetic accessibility
author_facet I. Čmelo
M. Voršilák
D. Svozil
author_sort I. Čmelo
title Profiling and analysis of chemical compounds using pointwise mutual information
title_short Profiling and analysis of chemical compounds using pointwise mutual information
title_full Profiling and analysis of chemical compounds using pointwise mutual information
title_fullStr Profiling and analysis of chemical compounds using pointwise mutual information
title_full_unstemmed Profiling and analysis of chemical compounds using pointwise mutual information
title_sort profiling and analysis of chemical compounds using pointwise mutual information
publisher BMC
series Journal of Cheminformatics
issn 1758-2946
publishDate 2021-01-01
description Abstract Pointwise mutual information (PMI) is a measure of association used in information theory. In this paper, PMI is used to characterize several publicly available databases (DrugBank, ChEMBL, PubChem and ZINC) in terms of association strength between compound structural features resulting in database PMI interrelation profiles. As structural features, substructure fragments obtained by coding individual compounds as MACCS, PubChemKey and ECFP fingerprints are used. The analysis of publicly available databases reveals, in accord with other studies, unusual properties of DrugBank compounds which further confirms the validity of PMI profiling approach. Z-standardized relative feature tightness (ZRFT), a PMI-derived measure that quantifies how well the given compound’s feature combinations fit these in a particular compound set, is applied for the analysis of compound synthetic accessibility (SA), as well as for the classification of compounds as easy (ES) and hard (HS) to synthesize. ZRFT value distributions are compared with these of SYBA and SAScore. The analysis of ZRFT values of structurally complex compounds in the SAVI database reveals oligopeptide structures that are mispredicted by SAScore as HS, while correctly predicted by ZRFT and SYBA as ES. Compared to SAScore, SYBA and random forest, ZRFT predictions are less accurate, though by a narrow margin (Acc ZRFT  = 94.5%, Acc SYBA  = 98.8%, Acc SAScore  = 99.0%, Acc RF  = 97.3%). However, ZRFT ability to distinguish between ES and HS compounds is surprisingly high considering that while SYBA, SAScore and random forest are dedicated SA models, ZRFT is a generic measurement that merely quantifies the strength of interrelations between structural feature pairs. The results presented in the current work indicate that structural feature co-occurrence, quantified by PMI or ZRFT, contains a significant amount of information relevant to physico-chemical properties of organic compounds.
topic Hashed fingerprint
Structural key
Information theory
Pointwise mutual information
Synthetic accessibility
url https://doi.org/10.1186/s13321-020-00483-y
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