scholarly journals Cholesterol Interaction with the MAGUK Protein Family Member, MPP1, via CRAC and CRAC-Like Motifs: An In Silico Docking Analysis

PLoS ONE ◽  
2015 ◽  
Vol 10 (7) ◽  
pp. e0133141 ◽  
Author(s):  
Marcin A. Listowski ◽  
Jacek Leluk ◽  
Sebastian Kraszewski ◽  
Aleksander F. Sikorski
2018 ◽  
Vol 52 ◽  
pp. 178-188 ◽  
Author(s):  
Selma Mahiout ◽  
Sara Giani Tagliabue ◽  
Atefeh Nasri ◽  
Iyekhoetin Matthew Omoruyi ◽  
Lars Pettersson ◽  
...  

2019 ◽  
Author(s):  
Maurice Michel ◽  
Evert J. Homan ◽  
Elisee Wiita ◽  
Kia Pedersen ◽  
Ingrid Almlöf ◽  
...  

Computational chemistry has now been widely accepted as a useful tool for shortening lead times in early drug discovery. When selecting new potential drug targets, it is important to assess the likelihood of finding suitable starting points for lead generation before pursuing costly high-throughput screening campaigns. By exploiting available high-resolution crystal structures, an in silico druggability assessment can facilitate the decision of whether, and in cases where several protein family members exist, which of these to pursue experimentally. Many of the algorithms and software suites commonly applied for in silico druggability assessment are complex, technically challenging and not always user-friendly. Here we applied the intuitive open access servers of DoGSite, FTMap and CryptoSite to comprehensively predict ligand binding pockets, druggability scores and conformationally active regions of the NUDIX protein family. In parallel we analyzed potential ligand binding sites, their druggability and hydrophobic-hydrophilic ratio using Schrödinger’s SiteMap. Then an in silico docking cascade of a subset of the ZINC FragNow library using the Glide docking program was performed to assess identified pockets for large-scale small molecule binding. Subsequently, this initial dual ranking of druggable sites within the NUDIX protein family was benchmarked against experimental hit rates obtained both in-house and by others from traditional biochemical and fragment screening campaigns. The observed correlation suggests that the presented user-friendly workflow of a dual parallel in silico druggability assessment is applicable as a standalone method for decision on target prioritization in future screening campaigns. <br>


Author(s):  
RACHAEL EVANGELINE ◽  
NIHAL AHMED

Objective: The aim of this study is to investigate the potential of Persea americana extracts for their Anti-Parkinson application through an in-silico docking study. Methods: PubChem and protein data bank databases were used to retrieve 3D structures. AutoDock4 was used to perform protein-ligand docking analysis. PyMOL was used to visualize the docking results. Results: Among the 30 ligand, the highest affinity was demonstrated by Hesperidin with a free binding energy of −6.8 kcal/mol and formation of five hydrogen bonds. The second highest significance was demonstrated by Biphenyl 4-(4-diethylaminobenzylidenamino) with a free binding energy of −5.9 kcal/mol with the formation of 2 hydrogen bonds. Among the three sets of phytochemicals from different solvent extracts, water extract demonstrated the highest potential as Anti-Parkinson active. Conclusion: P. americana extracts were analyzed for their Anti-Parkinson potential, and among the three extracts, the aqueous extract was predicted to have significant Anti-Parkinson potential, based on in silico docking analysis, due to the presence of active phytochemicals such as Hesperidin and others.


2014 ◽  
Vol 24 (1) ◽  
pp. 124-130 ◽  
Author(s):  
Rangachari Balamurugan ◽  
Antony Stalin ◽  
Adithan Aravinthan ◽  
Jong-Hoon Kim

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