scholarly journals Predicting the Specificity- Determining Positions of Receptor Tyrosine Kinase Axl

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.

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

ABSTRACTDue to its clinical relevance, 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 partner-selecting, i.e., specificity-determining 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-related diseases. For this, we used three sequence-based predictors – SDPred, Multi-RELIEF, and Sequence Harmony – and a structure-based approach by utilizing HADDOCK and extensive molecular dynamics simulations. As a result, we show that (i) sequence-based methods overpredict the number of specificity-determining positions for Axl complexes and that (ii) combining sequence-based approaches with HADDOCK provides the most coherent set of predictions. Our work lays out a critical study on the comparative performance specificity-determining position predictors. It also presents a combined sequence-structure-based approach, which can guide the development of therapeutic molecules capable of combatting Axl misregulation in different types of diseases.


eLife ◽  
2013 ◽  
Vol 2 ◽  
Author(s):  
Anton Arkhipov ◽  
Yibing Shan ◽  
Eric T Kim ◽  
Ron O Dror ◽  
David E Shaw

The receptor tyrosine kinase Her2, an intensely pursued drug target, differs from other members of the EGFR family in that it does not bind EGF-like ligands, relying instead on heterodimerization with other (ligand-bound) EGFR-family receptors for activation. The structural basis for Her2 heterodimerization, however, remains poorly understood. The unexpected recent finding of asymmetric ectodomain dimer structures of Drosophila EGFR (dEGFR) suggests a possible structural basis for Her2 heterodimerization, but all available structures for dimers of human EGFR family ectodomains are symmetric. Here, we report results from long-timescale molecular dynamics simulations indicating that a single ligand is necessary and sufficient to stabilize the ectodomain interface of Her2 heterodimers, which assume an asymmetric conformation similar to that of dEGFR dimers. This structural parallelism suggests a dimerization mechanism that has been conserved in the evolution of the EGFR family from Drosophila to human.


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.


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