On homology modeling of the M2 muscarinic acetylcholine receptor subtype

Twelve homology models of the human M 2 muscarinic receptor using different sets of templates have been designed using the Prime program or the modeller program and compared to crystallographic structure (PDB:3UON). The best models were obtained using single template of the closest published structu...

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Veröffentlicht in:Journal of computer-aided molecular design 2013-06, Vol.27 (6), p.525-538
Hauptverfasser: Jakubík, Jan, Randáková, Alena, Doležal, Vladimír
Format: Artikel
Sprache:eng
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Zusammenfassung:Twelve homology models of the human M 2 muscarinic receptor using different sets of templates have been designed using the Prime program or the modeller program and compared to crystallographic structure (PDB:3UON). The best models were obtained using single template of the closest published structure, the M 3 muscarinic receptor (PDB:4DAJ). Adding more (structurally distant) templates led to worse models. Data document a key role of the template in homology modeling. The models differ substantially. The quality checks built into the programs do not correlate with the RMSDs to the crystallographic structure and cannot be used to select the best model. Re-docking of the antagonists present in crystallographic structure and relative binding energy estimation by calculating MM/GBSA in Prime and the binding energy function in YASARA suggested it could be possible to evaluate the quality of the orthosteric binding site based on the prediction of relative binding energies. Although estimation of relative binding energies distinguishes between relatively good and bad models it does not indicate the best one. On the other hand, visual inspection of the models for known features and knowledge-based analysis of the intramolecular interactions allows an experimenter to select overall best models manually.
ISSN:0920-654X
1573-4951
DOI:10.1007/s10822-013-9660-8