Investigation of NMDA Receptor Channel Blockers in a Series of Methylene Blue Conjugates Using QSAR and Molecular Modeling

Main Article Content

V.Y. Grigorev
K.A. Shcherbakov
D.E. Polianczyk
A.N. Razdolsky
A.V. Veselovsky
V.V. Grigoriev
A.V. Yarkov
O.A. Raevsky

Abstract

29 conjugates of methylene blue and four chemical structures, including derivatives of carbazole, tetrahydrocarbazole, substituted indoles and γ-carboline, combined with a 1-oxopropylene spacer have been studied as channel blockers of the NMDA receptor (binding site of MK-801) by using four QSAR methods (multiple linear regression, random forest, support vector machine, Gaussian process) and molecular docking. QSAR models have satisfactory characteristics. The analysis of regression models at the statistical level revealed an important role of the hydrogen bond in the complex formation. This was also confirmed by the study of modeled by docking complexes. It was found that the increase in the inhibitory activity of the part of compounds could be attributed to appearance of additional H bonds between the ligands and the receptor.

Article Details

How to Cite
Grigorev, V., Shcherbakov, K., Polianczyk, D., Razdolsky, A., Veselovsky, A., Grigoriev, V., Yarkov, A., & Raevsky, O. (2019). Investigation of NMDA Receptor Channel Blockers in a Series of Methylene Blue Conjugates Using QSAR and Molecular Modeling. Biomedical Chemistry: Research and Methods, 2(2), e00091. https://doi.org/10.18097/BMCRM00091
Section
EXPERIMENTAL RESEARCH

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