Please use this identifier to cite or link to this item: https://open.uns.ac.rs/handle/123456789/2017
Title: Electrostatic and topological features as predictors of antifungal potential of oxazolo derivatives as promising compounds in treatment of infections caused by Candida albicans
Authors: Kovačević, Strahinja 
Karadžić Banjac, Milica 
Podunavac-Kuzmanović, Sanja 
Jevrić, Lidija 
Ivanović, Evica
Vojnović, Matilda 
Issue Date: 17-Sep-2018
Publisher: Ljubljana: Slovenian Chemical Society
Journal: Acta Chimica Slovenica
Abstract: © 2018 Slovensko Kemijsko Drustvo. All rights reserved. The results presented in this study include the prediction of the antifungal activity of 24 oxazolo derivatives based on their topological and electrostatic molecular descriptors, derived from the 2D molecular structures. The artificial neural network (ANN) method was applied as a regression tool. The input data for ANN modeling were selected by stepwise selection (SS) procedure. The ANN modeling resulted in three networks with the outstanding statistical characteristics. High predictivity of the established networks was confirmed by comparisons of the predicted and experimental data and by the residuals analysis. The obtained results indicate the usefulness of the formed ANNs in precise prediction of minimum inhibitory concentrations of the analyzed compounds towards Candida albicans. The Sum of Ranking Differences (SRD) method was used in this study to reveal possible grouping of the compounds in the space of the variables used in ANN modeling. The obtained results can be considered to be a contribution to development of new antifungal drugs structurally based on oxazole core, particularly nowadays when there is a lack of highly efficient antimycotics.
URI: https://open.uns.ac.rs/handle/123456789/2017
ISSN: 13180207
DOI: 10.17344/acsi.2017.3532
Appears in Collections:TF Publikacije/Publications

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