Literature DB >> 16205958

Linear and nonlinear modeling of antifungal activity of some heterocyclic ring derivatives using multiple linear regression and Bayesian-regularized neural networks.

Julio Caballero1, Michael Fernández.   

Abstract

Antifungal activity was modeled for a set of 96 heterocyclic ring derivatives (2,5,6-trisubstituted benzoxazoles, 2,5-disubstituted benzimidazoles, 2-substituted benzothiazoles and 2-substituted oxazolo(4,5-b)pyridines) using multiple linear regression (MLR) and Bayesian-regularized artificial neural network (BRANN) techniques. Inhibitory activity against Candida albicans (log(1/C)) was correlated with 3D descriptors encoding the chemical structures of the heterocyclic compounds. Training and test sets were chosen by means of k-Means Clustering. The most appropriate variables for linear and nonlinear modeling were selected using a genetic algorithm (GA) approach. In addition to the MLR equation (MLR-GA), two nonlinear models were built, model BRANN employing the linear variable subset and an optimum model BRANN-GA obtained by a hybrid method that combined BRANN and GA approaches (BRANN-GA). The linear model fit the training set (n = 80) with r2 = 0.746, while BRANN and BRANN-GA gave higher values of r2 = 0.889 and r2 = 0.937, respectively. Beyond the improvement of training set fitting, the BRANN-GA model was superior to the others by being able to describe 87% of test set (n = 16) variance in comparison with 78 and 81% the MLR-GA and BRANN models, respectively. Our quantitative structure-activity relationship study suggests that the distributions of atomic mass, volume and polarizability have relevant relationships with the antifungal potency of the compounds studied. Furthermore, the ability of the six variables selected nonlinearly to differentiate the data was demonstrated when the total data set was well distributed in a Kohonen self-organizing neural network (KNN).

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Year:  2005        PMID: 16205958     DOI: 10.1007/s00894-005-0014-x

Source DB:  PubMed          Journal:  J Mol Model        ISSN: 0948-5023            Impact factor:   1.810


  19 in total

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4.  Synthesis of some new 2-substituted-phenyl-1H-benzimidazole-5-carbonitriles and their potent activity against Candida species.

Authors:  Hakan Göker; Canan Kuş; David W Boykin; Sulhiye Yildiz; Nurten Altanlar
Journal:  Bioorg Med Chem       Date:  2002-08       Impact factor: 3.641

5.  Structure-cytotoxicity relationships for a series of HEPT derivatives.

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7.  Quantitative structure-activity relationship to predict differential inhibition of aldose reductase by flavonoid compounds.

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8.  Antibacterial and antifungal activities of benzimidazole and benzoxazole derivatives.

Authors:  E I Elnima; M U Zubair; A A Al-Badr
Journal:  Antimicrob Agents Chemother       Date:  1981-01       Impact factor: 5.191

9.  Synthesis and structure-activity relationships of new antimicrobial active multisubstituted benzazole derivatives.

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Journal:  Eur J Med Chem       Date:  2004-03       Impact factor: 6.514

10.  Selective inhibitors of Candida albicans dihydrofolate reductase: activity and selectivity of 5-(arylthio)-2,4-diaminoquinazolines.

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  6 in total

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2.  Docking and quantitative structure-activity relationship studies for sulfonyl hydrazides as inhibitors of cytosolic human branched-chain amino acid aminotransferase.

Authors:  Julio Caballero; Ariela Vergara-Jaque; Michael Fernández; Deysma Coll
Journal:  Mol Divers       Date:  2009-04-07       Impact factor: 2.943

3.  QSAR models for predicting the activity of non-peptide luteinizing hormone-releasing hormone (LHRH) antagonists derived from erythromycin A using quantum chemical properties.

Authors:  Michael Fernández; Julio Caballero
Journal:  J Mol Model       Date:  2007-01-10       Impact factor: 1.810

Review 4.  Recent advances in ligand-based drug design: relevance and utility of the conformationally sampled pharmacophore approach.

Authors:  Chayan Acharya; Andrew Coop; James E Polli; Alexander D Mackerell
Journal:  Curr Comput Aided Drug Des       Date:  2011-03       Impact factor: 1.606

5.  In silico prediction of estrogen receptor subtype binding affinity and selectivity using statistical methods and molecular docking with 2-arylnaphthalenes and 2-arylquinolines.

Authors:  Zhizhong Wang; Yan Li; Chunzhi Ai; Yonghua Wang
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6.  Quantitative structure-activity relationship study of P2X7 receptor inhibitors using combination of principal component analysis and artificial intelligence methods.

Authors:  Mehdi Ahmadi; Mohsen Shahlaei
Journal:  Res Pharm Sci       Date:  2015 Jul-Aug
  6 in total

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