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Dive into the research topics where Manuel Rueda is active.

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Featured researches published by Manuel Rueda.


Proceedings of the National Academy of Sciences of the United States of America | 2007

A consensus view of protein dynamics

Manuel Rueda; Carles Ferrer-Costa; Tim Meyer; Alberto Perez; Jordi Camps; Josep Lluís Gelpí; Modesto Orozco

The dynamics of proteins in aqueous solution has been investigated through a massive approach based on “state of the art” molecular dynamics simulations performed for all protein metafolds using the four most popular force fields (OPLS, CHARMM, AMBER, and GROMOS). A detailed analysis of the massive database of trajectories (>1.5 terabytes of data obtained using ≈50 years of CPU) allowed us to obtain a robust-consensus picture of protein dynamics in aqueous solution.


Journal of Chemical Information and Modeling | 2010

Recipes for the Selection of Experimental Protein Conformations for Virtual Screening

Manuel Rueda; Giovanni Bottegoni; Ruben Abagyan

The use of multiple X-ray protein structures has been reported to be an efficient alternative for the representation of the binding pocket flexibility needed for accurate small molecules docking. However, the docking performance of the individual single conformations varies widely, and adding certain conformations to an ensemble is even counterproductive. Here we used a very large and diverse benchmark of 1068 X-ray protein conformations of 99 therapeutically relevant proteins, first, to compare the performance of the ensemble and single-conformation docking and, second, to find the properties of the best-performing conformers that can be used to select a smaller set of conformers for ensemble docking. The conformer selection has been validated through retrospective virtual screening experiments aimed at separating known ligand binders from decoys. We found that the conformers cocrystallized with the largest ligands displayed high selectivity for binders, and when combined in ensembles they consistently provided better results than randomly chosen protein conformations. The use of ensembles encompassing between 3 and 5 experimental conformations consistently improved the docking accuracy and binders vs decoys separation.


Proteins | 2010

GPCR 3D homology models for Ligand Screening: Lessons Learned from Blind Predictions of Adenosine A2a Receptor complex

Vsevolod Katritch; Manuel Rueda; Polo Chun-Hung Lam; Mark Yeager; Ruben Abagyan

Proteins of the G‐protein coupled receptor (GPCR) family present numerous attractive targets for rational drug design, but also a formidable challenge for identification and conformational modeling of their 3D structure. A recently performed assessment of blind predictions of adenosine A2a receptor (AA2AR) structure in complex with ZM241385 (ZMA) antagonist provided a first example of unbiased evaluation of the current modeling algorithms on a GPCR target with ∼ 30% sequence identity to the closest structural template. Several of the 29 groups participating in this assessment exercise (Michino et al., doi: 10.1038/nrd2877) successfully predicted the overall position of the ligand ZMA in the AA2AR ligand binding pocket, however models from only three groups captured more than 40% the ligand‐receptor contacts. Here we describe two of these top performing approaches, in which all‐atom models of the AA2AR were generated by homology modeling followed by ligand guided backbone ensemble receptor optimization (LiBERO). The resulting AA2AR‐ZMA models, along with the best models from other groups are assessed here for their vitual ligand screening (VLS) performance on a large set of GPCR ligands. We show that ligand guided optimization was critical for improvement of both ligand‐receptor contacts and VLS performance as compared to the initial raw homology models. The best blindly predicted models performed on par with the crystal structure of AA2AR in selecting known antagonists from decoys, as well as from antagonists for other adenosine subtypes and AA2AR agonists. These results suggest that despite certain inaccuracies, the optimized homology models can be useful in the drug discovery process. Proteins 2010.


Journal of Chemical Information and Modeling | 2009

Consistent Improvement of Cross-Docking Results Using Binding Site Ensembles Generated with Elastic Network Normal Modes

Manuel Rueda; Giovanni Bottegoni; Ruben Abagyan

The representation of protein flexibility is still a challenge for the state-of-the-art flexible ligand docking protocols. In this article, we use a large and diverse benchmark to prove that is possible to improve consistently the cross-docking performance against a single receptor conformation, using an equilibrium ensemble of binding site conformers. The benchmark contained 28 proteins, and our method predicted the top-ranked near native ligand poses 20% more efficiently than using a single receptor. The multiple conformations were derived from the collective variable space defined by all heavy-atom elastic network normal modes, including backbone and side chains. We have found that the binding site displacements for best positioning of the ligand seem rather independent from the global collective motions of the protein. We also found that the number of binding site conformations needed to represent nonredundant flexibility was < 100. The ensemble of receptor conformations can be generated at our Web site at http://abagyan.scripps.edu/MRC.


Journal of Chemical Theory and Computation | 2006

Essential Dynamics: A Tool for Efficient Trajectory Compression and Management

Tim Meyer; Carles Ferrer-Costa; Alberto Perez; Manuel Rueda; Axel Bidon-Chanal; F. J. Luque; Charles A. Laughton; Modesto Orozco

We present a simple method for compression and management of very large molecular dynamics trajectories. The approach is based on the projection of the Cartesian snapshots collected along the trajectory into an orthogonal space defined by the eigenvectors obtained by diagonalization of the covariance matrix. The transformation is mathematically exact when the number of eigenvectors equals 3N-6 (N being the number of atoms), and in practice very accurate even when the number of eigenvectors is much smaller, permitting a dramatic reduction in the size of trajectory files. In addition, we have examined the ability of the method, when combined with interpolation, to recover dense samplings (snapshots collected at a high frequency) from more sparse (lower frequency) data as a method for further data compression. Finally, we have investigated the possibility of using the approach when extrapolating the behavior of the system to times longer than the original simulation period. Overall our results suggest that the method is an attractive alternative to current approaches for including dynamic information in static structure files such as those deposited in the Protein Data Bank.


Structure | 2010

MoDEL (Molecular Dynamics Extended Library): A Database of Atomistic Molecular Dynamics Trajectories

Tim Meyer; Marco D'Abramo; Manuel Rueda; Carles Ferrer-Costa; Alberto Perez; Oliver Carrillo; Jordi Camps; Carles Fenollosa; Dmitry Repchevsky; Josep Lluís Gelpí; Modesto Orozco

More than 1700 trajectories of proteins representative of monomeric soluble structures in the protein data bank (PDB) have been obtained by means of state-of-the-art atomistic molecular dynamics simulations in near-physiological conditions. The trajectories and analyses are stored in a large data warehouse, which can be queried for dynamic information on proteins, including interactions. Here, we describe the project and the structure and contents of our database, and provide examples of how it can be used to describe the global flexibility properties of proteins. Basic analyses and trajectories stripped of solvent molecules at a reduced resolution level are available from our web server.


PLOS ONE | 2011

Systematic Exploitation of Multiple Receptor Conformations for Virtual Ligand Screening

Giovanni Bottegoni; Walter Rocchia; Manuel Rueda; Ruben Abagyan; Andrea Cavalli

The role of virtual ligand screening in modern drug discovery is to mine large chemical collections and to prioritize for experimental testing a comparatively small and diverse set of compounds with expected activity against a target. Several studies have pointed out that the performance of virtual ligand screening can be improved by taking into account receptor flexibility. Here, we systematically assess how multiple crystallographic receptor conformations, a powerful way of discretely representing protein plasticity, can be exploited in screening protocols to separate binders from non-binders. Our analyses encompass 36 targets of pharmaceutical relevance and are based on actual molecules with reported activity against those targets. The results suggest that an ensemble receptor-based protocol displays a stronger discriminating power between active and inactive molecules as compared to its standard single rigid receptor counterpart. Moreover, such a protocol can be engineered not only to enrich a higher number of active compounds, but also to enhance their chemical diversity. Finally, some clear indications can be gathered on how to select a subset of receptor conformations that is most likely to provide the best performance in a real life scenario.


Bioinformatics | 2009

FlexServ: an integrated tool for the analysis of protein flexibility

Jordi Camps; Oliver Carrillo; Agustí Emperador; Laura Orellana; Manuel Rueda; Damjan Cicin-Sain; Marco D'Abramo; Josep Lluís Gelpí; Modesto Orozco

SUMMARY FlexServ is a web-based tool for the analysis of protein flexibility. The server incorporates powerful protocols for the coarse-grained determination of protein dynamics using different versions of Normal Mode Analysis (NMA), Brownian dynamics (BD) and Discrete Dynamics (DMD). It can also analyze user provided trajectories. The server allows a complete analysis of flexibility using a large variety of metrics, including basic geometrical analysis, B-factors, essential dynamics, stiffness analysis, collectivity measures, Lindemanns indexes, residue correlation, chain-correlations, dynamic domain determination, hinge point detections, etc. Data is presented through a web interface as plain text, 2D and 3D graphics. AVAILABILITY http://mmb.pcb.ub.es/FlexServ; http://www.inab.org


Nature Reviews Drug Discovery | 2009

Community-wide assessment of GPCR structure modelling and ligand docking

Mayako Michino; Enrique Abola; Charles L. Brooks; J. Scott Dixon; John Moult; Raymond C. Stevens; Arthur J. Olson; Wiktor Jurkowski; Arne Elofsson; Slawomir Filipek; Irina D. Pogozheva; Bernard Maigret; Jeremy A. Horst; Ambrish Roy; Brady Bernard; Shyamala Iyer; Yang Zhang; Ram Samudrala; Osman Ugur Sezerman; Gregory V. Nikiforovich; Christina M. Taylor; Stefano Costanzi; Y. Vorobjev; N. Bakulina; Victor V. Solovyev; Kazuhiko Kanou; Daisuke Takaya; Genki Terashi; Mayuko Takeda-Shitaka; Hideaki Umeyama

Recent breakthroughs in the determination of the crystal structures of G protein-coupled receptors (GPCRs) have provided new opportunities for structure-based drug design strategies targeting this protein family. With the aim of evaluating the current status of GPCR structure prediction and ligand docking, a community-wide, blind prediction assessment — GPCR Dock 2008 — was conducted in coordination with the publication of the crystal structure of the human adenosine A2A receptor bound to the ligand ZM241385. Twenty-nine groups submitted 206 structural models before the release of the experimental structure, which were evaluated for the accuracy of the ligand binding mode and the overall receptor model compared with the crystal structure. This analysis highlights important aspects for success and future development, such as accurate modelling of structurally divergent regions and use of additional biochemical insight such as disulphide bridges in the extracellular loops.


Journal of Chemical Theory and Computation | 2005

Exploring the Essential Dynamics of B-DNA

Alberto Pérez; José Ramón Blas; Manuel Rueda; J. M. López-Bes; Xavier de la Cruz,†,‖ and; Modesto Orozco

The essential dynamics of different normal and chemically modified DNA duplexes pertaining to the B family have been extensively explored from molecular dynamics simulations using powerful data mining techniques. Some of them, which are presented here for the first time, might become standard, powerful tools to characterize the dynamical behavior of complex biomolecular structures such as nucleic acids. Their potential impact is illustrated by examining the extended trajectories sampled for the set of DNA duplexes considered in this study, which allows us to discuss the degree of conservation of the natural flexibility pattern of the different DNAs, which in specific cases contain severe chemical modifications.

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Ali Torkamani

Scripps Research Institute

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Tim Meyer

Free University of Berlin

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Sarah E. Topol

Scripps Research Institute

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Vsevolod Katritch

University of Southern California

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