Cluster-based molecular docking study for in silico identification of novel 6-fluoroquinolones as potential inhibitors against mycobacterium tuberculosis

被引:20
|
作者
Minovski, Nikola [1 ]
Perdih, Andrej [1 ]
Novic, Marjana [1 ]
Solmajer, Tom [1 ]
机构
[1] Natl Inst Chem, Ljubljana 1001, Slovenia
关键词
tuberculosis; antibacterial agents; fluoroquinolones; DNA gyrase; molecular docking; DNA GYRASE; NALIDIXIC-ACID; RESISTANCE; PURIFICATION; EXPLORATION; PERFORMANCE; VALIDATION; STRAINS; COMPLEX; TARGET;
D O I
10.1002/jcc.23205
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
A classical protein sequence alignment and homology modeling strategy were used for building three Mycobacterium tuberculosis-DNA gyrase protein models using the available topoII-DNA-6FQ crystal structure complexes originating from different organisms. The recently determined M. tuberculosis-DNA gyrase apoprotein structures and topoII-DNA-6FQ complexes were used for defining the 6-fluoroquinolones (6-FQs) binding pockets. The quality of the generated models was initially validated by docking of the cocrystallized ligands into their binding site, and subsequently by quantitative evaluation of their discriminatory performances (identification of active/inactive 6-FQs) for a set of 145 6-FQs with known biological activity values. The M. tuberculosis-DNA gyrase model with the highest estimated discriminatory power was selected and used afterwards in an additional molecular docking experiment on a mixed combinatorial set of 427 drug-like 6-FQ analogs for which the biological activity values were predicted using a prebuilt counter-propagation artificial neural network model. A novel three-level Boolean-based [T/F (true/false)] clustering algorithm was used to assess the generated binding poses: Level 1 (geometry properties assessment), Level 2 (score-based clustering and selection of the (T)-signed highly scored Level 1 poses), and Level 3 (activity-based clustering and selection of the most active (T)-signed Level 2 hits). The frequency analysis of occurrence of the fragments attached at R1 and R7 position of the (T)-signed 6-FQs selected in Level 3 revealed several novel attractive fragments and confirmed some previous findings. We believe that this methodology could be successfully used in establishing novel possible structure-activity relationship recommendations in the 6-FQs optimization, which could be of great importance in the current antimycobacterial hit-to-lead processes. (c) 2012 Wiley Periodicals, Inc.
引用
收藏
页码:790 / 801
页数:12
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