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Dive into the research topics where Z. Nevin Gerek is active.

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Featured researches published by Z. Nevin Gerek.


PLOS Computational Biology | 2011

Change in allosteric network affects binding affinities of PDZ domains: analysis through perturbation response scanning.

Z. Nevin Gerek; S. Banu Ozkan

The allosteric mechanism plays a key role in cellular functions of several PDZ domain proteins (PDZs) and is directly linked to pharmaceutical applications; however, it is a challenge to elaborate the nature and extent of these allosteric interactions. One solution to this problem is to explore the dynamics of PDZs, which may provide insights about how intramolecular communication occurs within a single domain. Here, we develop an advancement of perturbation response scanning (PRS) that couples elastic network models with linear response theory (LRT) to predict key residues in allosteric transitions of the two most studied PDZs (PSD-95 PDZ3 domain and hPTP1E PDZ2 domain). With PRS, we first identify the residues that give the highest mean square fluctuation response upon perturbing the binding sites. Strikingly, we observe that the residues with the highest mean square fluctuation response agree with experimentally determined residues involved in allosteric transitions. Second, we construct the allosteric pathways by linking the residues giving the same directional response upon perturbation of the binding sites. The predicted intramolecular communication pathways reveal that PSD-95 and hPTP1E have different pathways through the dynamic coupling of different residue pairs. Moreover, our analysis provides a molecular understanding of experimentally observed hidden allostery of PSD-95. We show that removing the distal third alpha helix from the binding site alters the allosteric pathway and decreases the binding affinity. Overall, these results indicate that (i) dynamics plays a key role in allosteric regulations of PDZs, (ii) the local changes in the residue interactions can lead to significant changes in the dynamics of allosteric regulations, and (iii) this might be the mechanism that each PDZ uses to tailor their binding specificities regulation.


Proteins | 2009

Identification of specificity and promiscuity of PDZ domain interactions through their dynamic behavior.

Z. Nevin Gerek; Ozlem Keskin; S. Banu Ozkan

PDZ domains (PDZs), the most common interaction domain proteins, play critical roles in many cellular processes. PDZs perform their job by binding specific protein partners. However, they are very promiscuous, binding to more than one protein, yet selective at the same time. We examined the binding related dynamics of various PDZs to have insight about their specificity and promiscuity. We used full atomic normal mode analysis and a modified coarse‐grained elastic network model to compute the binding related dynamics. In the latter model, we introduced specificity for each single parameter constant and included the solvation effect implicitly. The modified model, referred to as specific‐Gaussian Network Model (s‐GNM), highlights some interesting differences in the conformational changes of PDZs upon binding to Class I or Class II type peptides. By clustering the residue fluctuation profiles of PDZs, we have shown: (i) binding selectivities can be discriminated from their dynamics, and (ii) the dynamics of different structural regions play critical roles for Class I and Class II specificity. s‐GNM is further tested on a dual‐specific PDZ which showed only Class I specificity when a point mutation exists on the βA‐βB loop. We observe that the binding dynamics change consistently in the mutated and wild type structures. In addition, we found that the binding induced fluctuation profiles can be used to discriminate the binding selectivity of homolog structures. These results indicate that s‐GNM can be a powerful method to study the changes in binding selectivities for mutant or homolog PDZs. Proteins 2009.


Protein Science | 2010

A flexible docking scheme to explore the binding selectivity of PDZ domains

Z. Nevin Gerek; S. Banu Ozkan

Modeling of protein binding site flexibility in molecular docking is still a challenging problem due to the large conformational space that needs sampling. Here, we propose a flexible receptor docking scheme: A dihedral restrained replica exchange molecular dynamics (REMD), where we incorporate the normal modes obtained by the Elastic Network Model (ENM) as dihedral restraints to speed up the search towards correct binding site conformations. To our knowledge, this is the first approach that uses ENM modes to bias REMD simulations towards binding induced fluctuations in docking studies. In our docking scheme, we first obtain the deformed structures of the unbound protein as initial conformations by moving along the binding fluctuation mode, and perform REMD using the ENM modes as dihedral restraints. Then, we generate an ensemble of multiple receptor conformations (MRCs) by clustering the lowest replica trajectory. Using ROSETTALIGAND, we dock ligands to the clustered conformations to predict the binding pose and affinity. We apply this method to postsynaptic density‐95/Dlg/ZO‐1 (PDZ) domains; whose dynamics govern their binding specificity. Our approach produces the lowest energy bound complexes with an average ligand root mean square deviation of 0.36 Å. We further test our method on (i) homologs and (ii) mutant structures of PDZ where mutations alter the binding selectivity. In both cases, our approach succeeds to predict the correct pose and the affinity of binding peptides. Overall, with this approach, we generate an ensemble of MRCs that leads to predict the binding poses and specificities of a protein complex accurately.


Journal of Chemical Information and Modeling | 2014

BP-Dock: A Flexible Docking Scheme for Exploring Protein–Ligand Interactions Based on Unbound Structures

Ashini Bolia; Z. Nevin Gerek; S. Banu Ozkan

Molecular docking serves as an important tool in modeling protein-ligand interactions. However, it is still challenging to incorporate overall receptor flexibility, especially backbone flexibility, in docking due to the large conformational space that needs to be sampled. To overcome this problem, we developed a novel flexible docking approach, BP-Dock (Backbone Perturbation-Dock) that can integrate both backbone and side chain conformational changes induced by ligand binding through a multi-scale approach. In the BP-Dock method, we mimic the nature of binding-induced events as a first-order approximation by perturbing the residues along the protein chain with a small Brownian kick one at a time. The response fluctuation profile of the chain upon these perturbations is computed using the perturbation response scanning method. These response fluctuation profiles are then used to generate binding-induced multiple receptor conformations for ensemble docking. To evaluate the performance of BP-Dock, we applied our approach on a large and diverse data set using unbound structures as receptors. We also compared the BP-Dock results with bound and unbound docking, where overall receptor flexibility was not taken into account. Our results highlight the importance of modeling backbone flexibility in docking for recapitulating the experimental binding affinities, especially when an unbound structure is used. With BP-Dock, we can generate a wide range of binding site conformations realized in nature even in the absence of a ligand that can help us to improve the accuracy of unbound docking. We expect that our fast and efficient flexible docking approach may further aid in our understanding of protein-ligand interactions as well as virtual screening of novel targets for rational drug design.


PLOS Computational Biology | 2012

Collective Dynamics Differentiates Functional Divergence in Protein Evolution

Tyler J. Glembo; Daniel W. Farrell; Z. Nevin Gerek; M. F. Thorpe; S. Banu Ozkan

Protein evolution is most commonly studied by analyzing related protein sequences and generating ancestral sequences through Bayesian and Maximum Likelihood methods, and/or by resurrecting ancestral proteins in the lab and performing ligand binding studies to determine function. Structural and dynamic evolution have largely been left out of molecular evolution studies. Here we incorporate both structure and dynamics to elucidate the molecular principles behind the divergence in the evolutionary path of the steroid receptor proteins. We determine the likely structure of three evolutionarily diverged ancestral steroid receptor proteins using the Zipping and Assembly Method with FRODA (ZAMF). Our predictions are within ∼2.7 Å all-atom RMSD of the respective crystal structures of the ancestral steroid receptors. Beyond static structure prediction, a particular feature of ZAMF is that it generates protein dynamics information. We investigate the differences in conformational dynamics of diverged proteins by obtaining the most collective motion through essential dynamics. Strikingly, our analysis shows that evolutionarily diverged proteins of the same family do not share the same dynamic subspace, while those sharing the same function are simultaneously clustered together and distant from those, that have functionally diverged. Dynamic analysis also enables those mutations that most affect dynamics to be identified. It correctly predicts all mutations (functional and permissive) necessary to evolve new function and ∼60% of permissive mutations necessary to recover ancestral function.


Proteins | 2012

The binding affinities of proteins interacting with the PDZ domain of PICK1

Ashini Bolia; Z. Nevin Gerek; Ozlem Keskin; Sefika Banu Ozkan; Kumlesh K. Dev

Protein interacting with C kinase (PICK1) is well conserved throughout evolution and plays a critical role in synaptic plasticity by regulating the trafficking and posttranslational modification of its interacting proteins. PICK1 contains a single PSD95/DlgA/Zo‐1 (PDZ) protein–protein interaction domain, which is promiscuous and shown to interact with over 60 proteins, most of which play roles in neuronal function. Several reports have suggested the role of PICK1 in disorders such as epilepsy, pain, brain trauma and stroke, drug abuse and dependence, schizophrenia and psychosis. Importantly, lead compounds that block PICK1 interactions are also now becoming available. Here, a new modeling approach was developed to investigate binding affinities of PDZ interactions. Using these methods, the binding affinities of all major PICK1 interacting proteins are reported and the effects of PICK1 mutations on these interactions are described. These modeling methods have important implications in defining the binding properties of proteins interacting with PICK1 as well as the general structural requirements of PDZ interactions. The study also provides modeling methods to support in the drug design of ligands for PDZ domains, which may further aid in development of the family of PDZ domains as a drug target. Proteins 2012;.


Biophysical Journal | 2013

Structural Dynamics Flexibility Informs Function and Evolution at a Proteome Scale

Z. Nevin Gerek; Sudhir Kumar; S. Banu Ozkan

Abstract: Protein structures are dynamic entities with a myriad of atomic fluctuations, side chain rotations, and collective domain movements. While the importance of these dynamics to proper functioning of some proteins is emerging, there is a lack of broad evidence for the critical role of protein dynamics in shaping the biological functions and protein evolution for a large number of proteins in a proteome. To this aim, we develop novel dynamic flexibility index (dfi) to quantify the dynamic properties of individual residues in any protein using perturbation response scanning that couples elastic network models with linear response theory. Then, we use dfi to assess the importance of protein dynamics in over 100 human proteins. Our analyses involving functionally critical positions, disease-associated and benign population variations, and the rate of interspecific substitutions per residue produce concordant patterns and establish that the preservation of dynamic properties of residues in a protein structure are critical for maintaining the protein/biological function at a proteome scale. Therefore, structural dynamics needs to become a major component of the analysis of protein function and evolution.


Biophysical Journal | 2010

Application of Linear Response Theory on Protein Networks For Identifying Allosteric Transitions

Z. Nevin Gerek; S. Banu Ozkan

We developed a fast and accurate method to predict residues that play an important role in allosteric transitions of single protein domains called perturbation response scanning (PRS). This method treats the protein as an elastic network and uses linear response theory (LRT) to obtain the residue fluctuations upon external perturbation. By sequentially exerting directed random forces on single-residues along the chain of the unbound form (i.e. by perturbing each residue one by one along the chain) and recording the resulting relative changes in the residue coordinates using LRT, we can successfully reproduce the residue displacements from the experimental structures of bound and unbound forms. Rigorous analysis of the response fluctuation profiles upon random perturbation of each residue, we identify the highest response residues that mediate long-range communication in proteins. Based on a structural network without reference to the dynamics of the bound forms, a dominant intermolecular signaling pathway of PDZ domain proteins (PSD-95 and hPTP1E) and cAMP-dependent protein kinase (PKA) can be identified.This method can determine not only residues that play an important role in allostery but can be utilized to determine multiple receptor conformation for flexible docking scheme.


Biophysical Journal | 2011

Perturbation Response Scanning Method for Identifying Allosteric Transitions and Utilizing in Flexible Docking

Z. Nevin Gerek; Ashini Bolia; S. Banu Ozkan


Archive | 2009

Proteins: Structure, Function, and Bioinformatics

Stephen D. Weeks; Kimberly C. Grasty; Lisa Hernandez-Cuebas; Patrick J. Loll; Alok Sharma; K. Sekar; M. Vijayan; Georgii G. Krivov; Maxim V. Shapovalov; Roland L. Dunbrack; Z. Nevin Gerek; Ozlem Keskin; S. Banu Ozkan

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S. Banu Ozkan

Arizona State University

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Ashini Bolia

Arizona State University

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M. F. Thorpe

Arizona State University

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