scholarly journals Elucidation of SARS-Cov-2 Budding Mechanisms through Molecular Dynamics Simulations of M and E Protein Complexes

Author(s):  
Logan Thrasher Collins ◽  
Tamer Elkholy ◽  
Shafat Mubin ◽  
David Hill ◽  
Ricky Williams ◽  
...  
2010 ◽  
Vol 98 (3) ◽  
pp. 57a
Author(s):  
Djurre de Jong ◽  
Xavier Periole ◽  
Siewert Jan Marrink

2018 ◽  
Vol 20 (5) ◽  
pp. 3438-3444 ◽  
Author(s):  
Miguel A. Soler ◽  
Sara Fortuna ◽  
Ario de Marco ◽  
Alessandro Laio

Accurate binding affinity prediction of modelled nanobody–protein complexes by using the assistance of molecular dynamics simulations for achieving stable conformations.


2021 ◽  
Author(s):  
Logan Thrasher Collins ◽  
Tamer Elkholy ◽  
Shafat Mubin ◽  
Ricky Williams ◽  
Kayode Ezike ◽  
...  

SARS-CoV-2 and other coronaviruses pose a major threat to global health, yet treatment efforts have largely ignored the process of envelope assembly, a key part of the coronaviral life cycle. When expressed together, the M and E proteins are sufficient to facilitate coronavirus envelope assembly. Envelope assembly leads to budding of coronavirus particles into the ER-Golgi intermediate compartment (ERGIC) and subsequent maturation of the virus, yet the mechanisms behind the budding process remain poorly understood. Better understanding of budding may enable new types of antiviral therapies. To this end, we ran atomistic molecular dynamics (MD) simulations of SARS-CoV-2 envelope assembly using the Feig laboratory's refined structural models of the M protein dimer and E protein pentamer. Our MD simulations consisted of M protein dimers and E protein pentamers in patches of virtual ERGIC membrane. By examining how these proteins induce membrane curvature in silico, we have obtained insights around how the budding process may occur. In our simulations, M protein dimers acted cooperatively to induce membrane curvature. By contrast, E protein pentamers kept the membrane planar. These results could help guide the development of novel antiviral therapeutics which inhibit coronavirus budding.


2021 ◽  
Vol 8 ◽  
Author(s):  
Tülay Karakulak ◽  
Ahmet Sureyya Rifaioglu ◽  
João P. G. L. M. Rodrigues ◽  
Ezgi Karaca

Owing to its clinical significance, modulation of functionally relevant amino acids in protein-protein complexes has attracted a great deal of attention. To this end, many approaches have been proposed to predict the partner-selecting amino acid positions in evolutionarily close complexes. These approaches can be grouped into sequence-based machine learning and structure-based energy-driven methods. In this work, we assessed these methods’ ability to map the specificity-determining positions of Axl, a receptor tyrosine kinase involved in cancer progression and immune system diseases. For sequence-based predictions, we used SDPpred, Multi-RELIEF, and Sequence Harmony. For structure-based predictions, we utilized HADDOCK refinement and molecular dynamics simulations. As a result, we observed that (i) sequence-based methods overpredict partner-selecting residues of Axl and that (ii) combining Multi-RELIEF with HADDOCK-based predictions provides the key Axl residues, covered by the extensive molecular dynamics simulations. Expanding on these results, we propose that a sequence-structure-based approach is necessary to determine specificity-determining positions of Axl, which can guide the development of therapeutic molecules to combat Axl misregulation.


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