Combinatorial Design of Molecule using Activity-Linked Substructural Topological Information as Applied to Antitubercular Compounds
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Published:2018-12-14
Issue:1
Volume:15
Page:67-81
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ISSN:1573-4099
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Container-title:Current Computer-Aided Drug Design
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language:en
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Short-container-title:CAD
Author:
Raychaudhury Chandan1, Rizvi Md. Imbesat Hassan1, Pal Debnath1
Affiliation:
1. Department of Computational and Data Sciences, Indian Institute of Science, Bangalore, India
Abstract
Background:
Generating a large number of compounds using combinatorial methods
increases the possibility of finding novel bioactive compounds. Although some combinatorial structure
generation algorithms are available, any method for generating structures from activity-linked
substructural topological information is not yet reported.
Objective:
To develop a method using graph-theoretical techniques for generating structures of
antitubercular compounds combinatorially from activity-linked substructural topological information,
predict activity and prioritize and screen potential drug candidates.
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Methods: Activity related vertices are identified from datasets composed of both active and inactive or,
differently active compounds and structures are generated combinatorially using the topological
distance distribution associated with those vertices. Biological activities are predicted using topological
distance based vertex indices and a rule based method. Generated structures are prioritized using a
newly defined Molecular Priority Score (MPS).
Results:
Studies considering a series of Acid Alkyl Ester (AAE) compounds and three known antitubercular
drugs show that active compounds can be generated from substructural information of other
active compounds for all these classes of compounds. Activity predictions show high level of success
rate and a number of highly active AAE compounds produced high MPS score indicating that MPS
score may help prioritize and screen potential drug molecules. A possible relation of this work with
scaffold hopping and inverse Quantitative Structure-Activity Relationship (iQSAR) problem has also
been discussed.
The proposed method seems to hold promise for discovering novel therapeutic candidates
for combating Tuberculosis and may be useful for discovering novel drug molecules for the treatment
of other diseases as well.
Publisher
Bentham Science Publishers Ltd.
Subject
Drug Discovery,Molecular Medicine,General Medicine
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