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Dive into the research topics where Barak Raveh is active.

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Featured researches published by Barak Raveh.


Nucleic Acids Research | 2011

Rosetta FlexPepDock web server—high resolution modeling of peptide–protein interactions

Nir London; Barak Raveh; Eyal Cohen; Guy Fathi; Ora Schueler-Furman

Peptide–protein interactions are among the most prevalent and important interactions in the cell, but a large fraction of those interactions lack detailed structural characterization. The Rosetta FlexPepDock web server (http://flexpepdock.furmanlab.cs.huji.ac.il/) provides an interface to a high-resolution peptide docking (refinement) protocol for the modeling of peptide–protein complexes, implemented within the Rosetta framework. Given a protein receptor structure and an approximate, possibly inaccurate model of the peptide within the receptor binding site, the FlexPepDock server refines the peptide to high resolution, allowing full flexibility to the peptide backbone and to all side chains. This protocol was extensively tested and benchmarked on a wide array of non-redundant peptide–protein complexes, and was proven effective when applied to peptide starting conformations within 5.5 Å backbone root mean square deviation from the native conformation. FlexPepDock has been applied to several systems that are mediated and regulated by peptide–protein interactions. This easy to use and general web server interface allows non-expert users to accurately model their specific peptide–protein interaction of interest.


Proteins | 2010

Sub‐angstrom modeling of complexes between flexible peptides and globular proteins

Barak Raveh; Nir London; Ora Schueler-Furman

A wide range of regulatory processes in the cell are mediated by flexible peptides that fold upon binding to globular proteins. Computational efforts to model these interactions are hindered by the large number of rotatable bonds in flexible peptides relative to typical ligand molecules, and the fact that different peptides assume different backbone conformations within the same binding site. In this study, we present Rosetta FlexPepDock, a novel tool for refining coarse peptide–protein models that allows significant changes in both peptide backbone and side chains. We obtain high resolution models, often of sub‐angstrom backbone quality, over an extensive and general benchmark that is based on a large nonredundant dataset of 89 peptide–protein interactions. Importantly, side chains of known binding motifs are modeled particularly well, typically with atomic accuracy. In addition, our protocol has improved modeling quality for the important application of cross docking to PDZ domains. We anticipate that the ability to create high resolution models for a wide range of peptide–protein complexes will have significant impact on structure‐based functional characterization, controlled manipulation of peptide interactions, and on peptide‐based drug design. Proteins 2010.


PLOS ONE | 2011

Rosetta FlexPepDock ab-initio: Simultaneous Folding, Docking and Refinement of Peptides onto Their Receptors

Barak Raveh; Nir London; Lior Zimmerman; Ora Schueler-Furman

Flexible peptides that fold upon binding to another protein molecule mediate a large number of regulatory interactions in the living cell and may provide highly specific recognition modules. We present Rosetta FlexPepDock ab-initio, a protocol for simultaneous docking and de-novo folding of peptides, starting from an approximate specification of the peptide binding site. Using the Rosetta fragments library and a coarse-grained structural representation of the peptide and the receptor, FlexPepDock ab-initio samples efficiently and simultaneously the space of possible peptide backbone conformations and rigid-body orientations over the receptor surface of a given binding site. The subsequent all-atom refinement of the coarse-grained models includes full side-chain modeling of both the receptor and the peptide, resulting in high-resolution models in which key side-chain interactions are recapitulated. The protocol was applied to a benchmark in which peptides were modeled over receptors in either their bound backbone conformations or in their free, unbound form. Near-native peptide conformations were identified in 18/26 of the bound cases and 7/14 of the unbound cases. The protocol performs well on peptides from various classes of secondary structures, including coiled peptides with unusual turns and kinks. The results presented here significantly extend the scope of state-of-the-art methods for high-resolution peptide modeling, which can now be applied to a wide variety of peptide-protein interactions where no prior information about the peptide backbone conformation is available, enabling detailed structure-based studies and manipulation of those interactions.


Proteins | 2007

Prediction of transition metal-binding sites from apo protein structures

Mariana Babor; Sergey Gerzon; Barak Raveh; Vladimir Sobolev; Marvin Edelman

Metal ions are crucial for protein function. They participate in enzyme catalysis, play regulatory roles, and help maintain protein structure. Current tools for predicting metal–protein interactions are based on proteins crystallized with their metal ions present (holo forms). However, a majority of resolved structures are free of metal ions (apo forms). Moreover, metal binding is a dynamic process, often involving conformational rearrangement of the binding pocket. Thus, effective predictions need to be based on the structure of the apo state. Here, we report an approach that identifies transition metal‐binding sites in apo forms with a resulting selectivity >95%. Applying the approach to apo forms in the Protein Data Bank and structural genomics initiative identifies a large number of previously unknown, putative metal‐binding sites, and their amino acid residues, in some cases providing a first clue to the function of the protein. Proteins 2008.


Proteins | 2010

Can self-inhibitory peptides be derived from the interfaces of globular protein–protein interactions?

Nir London; Barak Raveh; Dana Movshovitz-Attias; Ora Schueler-Furman

In this study, we assess on a large scale the possibility of deriving self‐inhibitory peptides from protein domains with globular architectures. Such inhibitory peptides would inhibit interactions of their origin domain by mimicking its mode of binding to cognate partners, and could serve as promising leads for rational design of inhibitory drugs. For our large‐scale analysis, we analyzed short linear segments that were cut out of protein interfaces in silico in complex structures of protein–protein docking Benchmark 3.0 and CAPRI targets from rounds 1–19. Our results suggest that more than 50% of these globular interactions are dominated by one short linear segment at the domain interface, which provides more than half of the original interaction energy. Importantly, in many cases the derived peptides show strong energetic preference for their original binding mode independently of the context of their original domain, as we demonstrate by extensive computational peptide docking experiments. As an in depth case study, we computationally design a candidate peptide to inhibit the EphB4–EphrinB2 interaction based on a short peptide derived from the G‐H loop in EphrinB2. Altogether, we provide an elaborate framework for the in silico selection of candidate inhibitory molecules for protein–protein interactions. Such candidate molecules can be readily subjected to wet‐laboratory experiments and provide highly promising starting points for subsequent drug design. Proteins 2010.


PLOS Computational Biology | 2009

Rapid Sampling of Molecular Motions with Prior Information Constraints

Barak Raveh; Angela Enosh; Ora Schueler-Furman; Dan Halperin

Proteins are active, flexible machines that perform a range of different functions. Innovative experimental approaches may now provide limited partial information about conformational changes along motion pathways of proteins. There is therefore a need for computational approaches that can efficiently incorporate prior information into motion prediction schemes. In this paper, we present PathRover, a general setup designed for the integration of prior information into the motion planning algorithm of rapidly exploring random trees (RRT). Each suggested motion pathway comprises a sequence of low-energy clash-free conformations that satisfy an arbitrary number of prior information constraints. These constraints can be derived from experimental data or from expert intuition about the motion. The incorporation of prior information is very straightforward and significantly narrows down the vast search in the typically high-dimensional conformational space, leading to dramatic reduction in running time. To allow the use of state-of-the-art energy functions and conformational sampling, we have integrated this framework into Rosetta, an accurate protocol for diverse types of structural modeling. The suggested framework can serve as an effective complementary tool for molecular dynamics, Normal Mode Analysis, and other prevalent techniques for predicting motion in proteins. We applied our framework to three different model systems. We show that a limited set of experimentally motivated constraints may effectively bias the simulations toward diverse predicates in an outright fashion, from distance constraints to enforcement of loop closure. In particular, our analysis sheds light on mechanisms of protein domain swapping and on the role of different residues in the motion.


Journal of Cell Biology | 2016

Simple rules for passive diffusion through the nuclear pore complex.

Benjamin L. Timney; Barak Raveh; Roxana Mironska; Jill M. Trivedi; Seung Joong Kim; Daniel Russel; Susan R. Wente; Andrej Sali; Michael P. Rout

Passive macromolecular diffusion through nuclear pore complexes is thought to decrease dramatically beyond ∼40 kD. Using time-resolved fluorescence microscopy and Brownian dynamics simulations, Timney et al. show that this barrier is in fact much softer, decreasing along a continuum.


Current Opinion in Structural Biology | 2013

Peptide docking and structure-based characterization of peptide binding: from knowledge to know-how.

Nir London; Barak Raveh; Ora Schueler-Furman

Peptide-mediated interactions are gaining increased attention due to their predominant roles in the many regulatory processes that involve dynamic interactions between proteins. The structures of such interactions provide an excellent starting point for their characterization and manipulation, and can provide leads for targeted inhibitor design. The relatively few experimentally determined structures of peptide-protein complexes can be complemented with an outburst of modeling approaches that have been introduced in recent years, with increasing accuracy and applicability to ever more systems. We review different methods to address the considerable challenges in modeling the binding of a short yet highly flexible peptide to its partner. These methods apply an array of sampling strategies and draw from a recent amassing of knowledge about the biophysical nature of peptide-protein interactions. We elaborate on applications of these structure-based approaches and in particular on the characterization of peptide binding specificity to different peptide-binding domains and enzymes. Such applications can identify new biological targets and thus complement our current view of protein-protein interactions in living organisms. Accurate peptide-protein docking is of particular importance in the light of increased appreciation of the crucial functional roles of disordered regions and the many linear binding motifs embedded within.


IEEE Transactions on Robotics | 2011

A Little More, a Lot Better: Improving Path Quality by a Path-Merging Algorithm

Barak Raveh; Angela Enosh; Dan Halperin

Sampling-based motion planners are an effective means to generate collision-free motion paths. However, the quality of these motion paths (with respect to quality measures, such as path length, clearance, smoothness, or energy) is often notoriously low, especially in high-dimensional configuration spaces. We introduce a simple algorithm to merge an arbitrary number of input motion paths into a hybrid output path of superior quality, for a broad and general formulation of path quality. Our approach is based on the observation that the quality of certain subpaths within each solution may be higher than the quality of the entire path. A dynamic-programming algorithm, which we recently developed to compare and cluster multiple motion paths, reduces the running time of the merging algorithm significantly. We tested our algorithm in motion-planning problems with up to 12 degrees of freedom (DOFs), where our method is shown to be particularly effective. We show that our algorithm is able to merge a handful of input paths produced by several different motion planners to produce output paths of much higher quality.


Methods of Molecular Biology | 2011

Modeling of proteins and their assemblies with the Integrative Modeling Platform.

Benjamin Webb; Keren Lasker; Javier A. Velázquez-Muriel; Dina Schneidman-Duhovny; Riccardo Pellarin; Massimiliano Bonomi; Charles H. Greenberg; Barak Raveh; Elina Tjioe; Daniel Russel; Andrej Sali

To understand the workings of the living cell, we need to characterize protein assemblies that constitute the cell (for example, the ribosome, 26S proteasome, and the nuclear pore complex). A reliable high-resolution structural characterization of these assemblies is frequently beyond the reach of current experimental methods, such as X-ray crystallography, NMR spectroscopy, electron microscopy, footprinting, chemical cross-linking, FRET spectroscopy, small-angle X-ray scattering, and proteomics. However, the information garnered from different methods can be combined and used to build computational models of the assembly structures that are consistent with all of the available datasets. Here, we describe a protocol for this integration, whereby the information is converted to a set of spatial restraints and a variety of optimization procedures can be used to generate models that satisfy the restraints as much as possible. These generated models can then potentially inform about the precision and accuracy of structure determination, the accuracy of the input datasets, and further data generation. We also demonstrate the Integrative Modeling Platform (IMP) software, which provides the necessary computational framework to implement this protocol, and several applications for specific-use cases.

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Nir London

Hebrew University of Jerusalem

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Ora Schueler-Furman

Hebrew University of Jerusalem

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Andrej Sali

University of California

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