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Original scientific paper

Quantitative Structure-Activity Relationship of Tricyclic Carbapenems: Application of Artificial Intelligence Methods for Bioactivity Prediction

Mira Lebez ; Faculty of Chemistry and Chemical Technology; University of Ljubljana, Ljubljana, Slovenia
Tom Šolmajer ; Laboratory of Molecular Modeling and NMR Spectroscopy, National Institute of Chemistry, Hajdrihova 19, P. O. Box 660, 1001 Ljubljana, Slovenia
Jure Župan ; Laboratory of Chemometrics, National Institute of Chemistry, Hajdrihova 19, P. O. Box 660, 1001 Ljubljana, Slovenia


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Abstract

Resistance to antibiotics in bacterial population has widened the interest of Scientific community for development of novel therapeutic compounds. Penicillins and cephalosporins which share the β-lactam structural moiety form the most abundant group of antibiotics on the market. Their recently developed tricyclic analogues have shown remarkable bioactivity towards broad spectrum of bacterial species. In a series of 52 tricyclic carbapenems represented by the 180’dimensional »spectrum-like« representation we studied the structure-activity relationships by application of an artificial neural network. The molecular structure representation by spec-tral intensity values served as inputs into the counter-propagation artificial neural network (CP-ANN). SIMPLEX optimization was carried out to obtain the best ANN model and a genetic algorithm approach was subsequently used to simultaneously minimize the number of variables. Thus, a search for the substituents that predominantly influence the experimental bioactivity was performed.
The constructed CP-ANN model yielded bioactivity values predictions with a correlation coefficient of 0.88, with their values extended over 4 orders of magnitude. The list of substituents selected by our automatic procedure can be compared with the data obtained by protein crystallography of the β-lactam inhibitors in complex with D,D-peptidase enzyme.

Keywords

QSAR; tricyclic carbapenem derivatives; antibiotic ac-tivity; articial neural networks; genetic algorithms

Hrčak ID:

127536

URI

https://hrcak.srce.hr/127536

Publication date:

3.6.2002.

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