26 results on '"Beglov, D."'
Search Results
2. Risk factors for extremely preterm and very preterm birth
- Author
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Beglov, D. E., primary, Artymuk, N. V., additional, Novikova, O. N., additional, Marochko, K. V., additional, and Parfenova, Ya. A., additional
- Published
- 2022
- Full Text
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3. Hormonal and immunological features of women with cervical insuffciency
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Beglov, D. E., primary, Artymuk, N. V., additional, and Novikova, O. N., additional
- Published
- 2022
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4. Expanding FTMap for Fragment-Based Identification of Pharmacophore Regions in Ligand Binding Sites.
- Author
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Khan O, Jones G, Lazou M, Joseph-McCarthy D, Kozakov D, Beglov D, and Vajda S
- Subjects
- Ligands, Binding Sites, Protein Binding, Pharmacophore, Drug Discovery methods
- Abstract
The knowledge of ligand binding hot spots and of the important interactions within such hot spots is crucial for the design of lead compounds in the early stages of structure-based drug discovery. The computational solvent mapping server FTMap can reliably identify binding hot spots as consensus clusters, free energy minima that bind a variety of organic probe molecules. However, in its current implementation, FTMap provides limited information on regions within the hot spots that tend to interact with specific pharmacophoric features of potential ligands. E-FTMap is a new server that expands on the original FTMap protocol. E-FTMap uses 119 organic probes, rather than the 16 in the original FTMap, to exhaustively map binding sites, and identifies pharmacophore features as atomic consensus sites where similar chemical groups bind. We validate E-FTMap against a set of 109 experimentally derived structures of fragment-lead pairs, finding that highly ranked pharmacophore features overlap with the corresponding atoms in both fragments and lead compounds. Additionally, comparisons of mapping results to ensembles of bound ligands reveal that pharmacophores generated with E-FTMap tend to sample highly conserved protein-ligand interactions. E-FTMap is available as a web server at https://eftmap.bu.edu.
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- 2024
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5. Uncertainty quantification of receptor ligand binding sites prediction.
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Chen N, Yu D, Beglov D, Kon M, and Castrillon-Candas JE
- Abstract
Recent advancements in protein docking site prediction have highlighted the limitations of traditional rigid docking algorithms, like PIPER, which often neglect critical stochastic elements such as solvent-induced fluctuations. These oversights can lead to inaccuracies in identifying viable docking sites due to the complexity of high-dimensional, stochastic energy manifolds with low regularity. To address this issue, our research introduces a novel model where the molecular shapes of ligands and receptors are represented using multi-variate Karhunen-Lo `eve (KL) expansions. This method effectively captures the stochastic nature of energy manifolds, allowing for a more accurate representation of molecular interactions.Developed as a plugin for PIPER, our scientific computing software enhances the platform, delivering robust uncertainty measures for the energy manifolds of ranked binding sites. Our results demonstrate that top-ranked binding sites, characterized by lower uncertainty in the stochastic energy manifold, align closely with actual docking sites. Conversely, sites with higher uncertainty correlate with less optimal docking positions. This distinction not only validates our approach but also sets a new standard in protein docking predictions, offering substantial implications for future molecular interaction research and drug development.
- Published
- 2024
6. Impact of AlphaFold on structure prediction of protein complexes: The CASP15-CAPRI experiment.
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Lensink MF, Brysbaert G, Raouraoua N, Bates PA, Giulini M, Honorato RV, van Noort C, Teixeira JMC, Bonvin AMJJ, Kong R, Shi H, Lu X, Chang S, Liu J, Guo Z, Chen X, Morehead A, Roy RS, Wu T, Giri N, Quadir F, Chen C, Cheng J, Del Carpio CA, Ichiishi E, Rodriguez-Lumbreras LA, Fernandez-Recio J, Harmalkar A, Chu LS, Canner S, Smanta R, Gray JJ, Li H, Lin P, He J, Tao H, Huang SY, Roel-Touris J, Jimenez-Garcia B, Christoffer CW, Jain AJ, Kagaya Y, Kannan H, Nakamura T, Terashi G, Verburgt JC, Zhang Y, Zhang Z, Fujuta H, Sekijima M, Kihara D, Khan O, Kotelnikov S, Ghani U, Padhorny D, Beglov D, Vajda S, Kozakov D, Negi SS, Ricciardelli T, Barradas-Bautista D, Cao Z, Chawla M, Cavallo L, Oliva R, Yin R, Cheung M, Guest JD, Lee J, Pierce BG, Shor B, Cohen T, Halfon M, Schneidman-Duhovny D, Zhu S, Yin R, Sun Y, Shen Y, Maszota-Zieleniak M, Bojarski KK, Lubecka EA, Marcisz M, Danielsson A, Dziadek L, Gaardlos M, Gieldon A, Liwo A, Samsonov SA, Slusarz R, Zieba K, Sieradzan AK, Czaplewski C, Kobayashi S, Miyakawa Y, Kiyota Y, Takeda-Shitaka M, Olechnovic K, Valancauskas L, Dapkunas J, Venclovas C, Wallner B, Yang L, Hou C, He X, Guo S, Jiang S, Ma X, Duan R, Qui L, Xu X, Zou X, Velankar S, and Wodak SJ
- Subjects
- Protein Conformation, Protein Binding, Molecular Docking Simulation, Computational Biology methods, Software, Protein Interaction Mapping methods, Algorithms
- Abstract
We present the results for CAPRI Round 54, the 5th joint CASP-CAPRI protein assembly prediction challenge. The Round offered 37 targets, including 14 homodimers, 3 homo-trimers, 13 heterodimers including 3 antibody-antigen complexes, and 7 large assemblies. On average ~70 CASP and CAPRI predictor groups, including more than 20 automatics servers, submitted models for each target. A total of 21 941 models submitted by these groups and by 15 CAPRI scorer groups were evaluated using the CAPRI model quality measures and the DockQ score consolidating these measures. The prediction performance was quantified by a weighted score based on the number of models of acceptable quality or higher submitted by each group among their five best models. Results show substantial progress achieved across a significant fraction of the 60+ participating groups. High-quality models were produced for about 40% of the targets compared to 8% two years earlier. This remarkable improvement is due to the wide use of the AlphaFold2 and AlphaFold2-Multimer software and the confidence metrics they provide. Notably, expanded sampling of candidate solutions by manipulating these deep learning inference engines, enriching multiple sequence alignments, or integration of advanced modeling tools, enabled top performing groups to exceed the performance of a standard AlphaFold2-Multimer version used as a yard stick. This notwithstanding, performance remained poor for complexes with antibodies and nanobodies, where evolutionary relationships between the binding partners are lacking, and for complexes featuring conformational flexibility, clearly indicating that the prediction of protein complexes remains a challenging problem., (© 2023 The Authors. Proteins: Structure, Function, and Bioinformatics published by Wiley Periodicals LLC.)
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- 2023
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7. The ClusPro AbEMap web server for the prediction of antibody epitopes.
- Author
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Desta IT, Kotelnikov S, Jones G, Ghani U, Abyzov M, Kholodov Y, Standley DM, Beglov D, Vajda S, and Kozakov D
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- Epitopes, Antigens, Antibodies, Epitope Mapping, Furylfuramide, Proteins chemistry
- Abstract
Antibodies play an important role in the immune system by binding to molecules called antigens at their respective epitopes. These interfaces or epitopes are structural entities determined by the interactions between an antibody and an antigen, making them ideal systems to analyze by using docking programs. Since the advent of high-throughput antibody sequencing, the ability to perform epitope mapping using only the sequence of the antibody has become a high priority. ClusPro, a leading protein-protein docking server, together with its template-based modeling version, ClusPro-TBM, have been re-purposed to map epitopes for specific antibody-antigen interactions by using the Antibody Epitope Mapping server (AbEMap). ClusPro-AbEMap offers three different modes for users depending on the information available on the antibody as follows: (i) X-ray structure, (ii) computational/predicted model of the structure or (iii) only the amino acid sequence. The AbEMap server presents a likelihood score for each antigen residue of being part of the epitope. We provide detailed information on the server's capabilities for the three options and discuss how to obtain the best results. In light of the recent introduction of AlphaFold2 (AF2), we also show how one of the modes allows users to use their AF2-generated antibody models as input. The protocol describes the relative advantages of the server compared to other epitope-mapping tools, its limitations and potential areas of improvement. The server may take 45-90 min depending on the size of the proteins., (© 2023. Springer Nature Limited.)
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- 2023
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8. High Accuracy Prediction of PROTAC Complex Structures.
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Ignatov M, Jindal A, Kotelnikov S, Beglov D, Posternak G, Tang X, Maisonneuve P, Poda G, Batey RA, Sicheri F, Whitty A, Tonge PJ, Vajda S, and Kozakov D
- Subjects
- Proteolysis, Ubiquitination, Ubiquitin-Protein Ligases metabolism, Proteins metabolism
- Abstract
The design of PROteolysis-TArgeting Chimeras (PROTACs) requires bringing an E3 ligase into proximity with a target protein to modulate the concentration of the latter through its ubiquitination and degradation. Here, we present a method for generating high-accuracy structural models of E3 ligase-PROTAC-target protein ternary complexes. The method is dependent on two computational innovations: adding a "silent" convolution term to an efficient protein-protein docking program to eliminate protein poses that do not have acceptable linker conformations and clustering models of multiple PROTACs that use the same E3 ligase and target the same protein. Results show that the largest consensus clusters always have high predictive accuracy and that the ensemble of models can be used to predict the dissociation rate and cooperativity of the ternary complex that relate to the degrading activity of the PROTAC. The method is demonstrated by applications to known PROTAC structures and a blind test involving PROTACs against BRAF mutant V600E. The results confirm that PROTACs function by stabilizing a favorable interaction between the E3 ligase and the target protein but do not necessarily exploit the most energetically favorable geometry for interaction between the proteins.
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- 2023
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9. Mapping of antibody epitopes based on docking and homology modeling.
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Desta IT, Kotelnikov S, Jones G, Ghani U, Abyzov M, Kholodov Y, Standley DM, Sabitova M, Beglov D, Vajda S, and Kozakov D
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- Epitopes metabolism, Molecular Dynamics Simulation, Proteins chemistry, Protein Binding, Antibodies chemistry, Antigens chemistry
- Abstract
Antibodies are key proteins produced by the immune system to target pathogen proteins termed antigens via specific binding to surface regions called epitopes. Given an antigen and the sequence of an antibody the knowledge of the epitope is critical for the discovery and development of antibody based therapeutics. In this work, we present a computational protocol that uses template-based modeling and docking to predict epitope residues. This protocol is implemented in three major steps. First, a template-based modeling approach is used to build the antibody structures. We tested several options, including generation of models using AlphaFold2. Second, each antibody model is docked to the antigen using the fast Fourier transform (FFT) based docking program PIPER. Attention is given to optimally selecting the docking energy parameters depending on the input data. In particular, the van der Waals energy terms are reduced for modeled antibodies relative to x-ray structures. Finally, ranking of antigen surface residues is produced. The ranking relies on the docking results, that is, how often the residue appears in the docking poses' interface, and also on the energy favorability of the docking pose in question. The method, called PIPER-Map, has been tested on a widely used antibody-antigen docking benchmark. The results show that PIPER-Map improves upon the existing epitope prediction methods. An interesting observation is that epitope prediction accuracy starting from antibody sequence alone does not significantly differ from that of starting from unbound (i.e., separately crystallized) antibody structure., (© 2022 Wiley Periodicals LLC.)
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- 2023
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10. Benchmark Sets for Binding Hot Spot Identification in Fragment-Based Ligand Discovery.
- Author
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Wakefield AE, Yueh C, Beglov D, Castilho MS, Kozakov D, Keserű GM, Whitty A, and Vajda S
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- Binding Sites, Ligands, Protein Binding, Benchmarking, Proteins metabolism
- Abstract
Binding hot spots are regions of proteins that, due to their potentially high contribution to the binding free energy, have high propensity to bind small molecules. We present benchmark sets for testing computational methods for the identification of binding hot spots with emphasis on fragment-based ligand discovery. Each protein structure in the set binds a fragment, which is extended into larger ligands in other structures without substantial change in its binding mode. Structures of the same proteins without any bound ligand are also collected to form an unbound benchmark. We also discuss a set developed by Astex Pharmaceuticals for the validation of hot and warm spots for fragment binding. The set is based on the assumption that a fragment that occurs in diverse ligands in the same subpocket identifies a binding hot spot. Since this set includes only ligand-bound proteins, we added a set with unbound structures. All four sets were tested using FTMap, a computational analogue of fragment screening experiments to form a baseline for testing other prediction methods, and differences among the sets are discussed.
- Published
- 2020
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11. ClusPro in rounds 38 to 45 of CAPRI: Toward combining template-based methods with free docking.
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Padhorny D, Porter KA, Ignatov M, Alekseenko A, Beglov D, Kotelnikov S, Ashizawa R, Desta I, Alam N, Sun Z, Brini E, Dill K, Schueler-Furman O, Vajda S, and Kozakov D
- Subjects
- Amino Acid Sequence, Benchmarking, Binding Sites, Humans, Ligands, Peptides metabolism, Protein Binding, Protein Conformation, alpha-Helical, Protein Conformation, beta-Strand, Protein Interaction Domains and Motifs, Protein Interaction Mapping, Protein Multimerization, Proteins metabolism, Research Design, Structural Homology, Protein, Thermodynamics, Molecular Docking Simulation, Peptides chemistry, Proteins chemistry, Software
- Abstract
Targets in the protein docking experiment CAPRI (Critical Assessment of Predicted Interactions) generally present new challenges and contribute to new developments in methodology. In rounds 38 to 45 of CAPRI, most targets could be effectively predicted using template-based methods. However, the server ClusPro required structures rather than sequences as input, and hence we had to generate and dock homology models. The available templates also provided distance restraints that were directly used as input to the server. We show here that such an approach has some advantages. Free docking with template-based restraints using ClusPro reproduced some interfaces suggested by weak or ambiguous templates while not reproducing others, resulting in correct server predicted models. More recently we developed the fully automated ClusPro TBM server that performs template-based modeling and thus can use sequences rather than structures of component proteins as input. The performance of the server, freely available for noncommercial use at https://tbm.cluspro.org, is demonstrated by predicting the protein-protein targets of rounds 38 to 45 of CAPRI., (© 2020 Wiley Periodicals, Inc.)
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- 2020
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12. Structure-Based Analysis of Cryptic-Site Opening.
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Sun Z, Wakefield AE, Kolossvary I, Beglov D, and Vajda S
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- Binding Sites, Crystallography, X-Ray, Ligands, Models, Molecular, Molecular Dynamics Simulation, Protein Binding, Protein Conformation, Proteins chemistry, Proteins metabolism
- Abstract
Many proteins in their unbound structures have cryptic sites that are not appropriately sized for drug binding. We consider here 32 proteins from the recently published CryptoSite set with validated cryptic sites, and study whether the sites remain cryptic in all available X-ray structures of the proteins solved without any ligand bound near the sites. It was shown that only few of these proteins have binding pockets that never form without ligand binding. Sites that are cryptic in some structures but spontaneously form in others are also rare. In most proteins the forming of pockets is affected by mutations or ligand binding at locations far from the cryptic site. To further explore these mechanisms, we applied adiabatic biased molecular dynamics simulations to guide the proteins from their ligand-free structures to ligand-bound conformations, and studied the distribution of druggability scores of the pockets located at the cryptic sites., Competing Interests: Declaration of Interests The current affiliation of I.K. is Silicon Therapeutics, Boston, MA, 02215, USA. D.B. is an employee and shareholder of Acpharis Inc., Holliston, MA 01746, USA, in addition to his affiliation with Boston University. S.V. is a shareholder of Acpharis Inc. The other authors declare no competing interests., (Copyright © 2019 Elsevier Ltd. All rights reserved.)
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- 2020
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13. Template-based modeling by ClusPro in CASP13 and the potential for using co-evolutionary information in docking.
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Porter KA, Padhorny D, Desta I, Ignatov M, Beglov D, Kotelnikov S, Sun Z, Alekseenko A, Anishchenko I, Cong Q, Ovchinnikov S, Baker D, Vajda S, and Kozakov D
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- Algorithms, Binding Sites genetics, Databases, Protein, Humans, Molecular Docking Simulation, Molecular Dynamics Simulation, Protein Interaction Mapping, Proteins chemistry, Proteins genetics, Structural Homology, Protein, Computational Biology, Protein Conformation, Proteins ultrastructure, Software
- Abstract
As a participant in the joint CASP13-CAPRI46 assessment, the ClusPro server debuted its new template-based modeling functionality. The addition of this feature, called ClusPro TBM, was motivated by the previous CASP-CAPRI assessments and by the proven ability of template-based methods to produce higher-quality models, provided templates are available. In prior assessments, ClusPro submissions consisted of models that were produced via free docking of pre-generated homology models. This method was successful in terms of the number of acceptable predictions across targets; however, analysis of results showed that purely template-based methods produced a substantially higher number of medium-quality models for targets for which there were good templates available. The addition of template-based modeling has expanded ClusPro's ability to produce higher accuracy predictions, primarily for homomeric but also for some heteromeric targets. Here we review the newest additions to the ClusPro web server and discuss examples of CASP-CAPRI targets that continue to drive further development. We also describe ongoing work not yet implemented in the server. This includes the development of methods to improve template-based models and the use of co-evolutionary information for data-assisted free docking., (© 2019 Wiley Periodicals, Inc. The World Health Organization retains copyright and all other rights in the manuscript of this article as submitted for publication.)
- Published
- 2019
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14. Blind prediction of homo- and hetero-protein complexes: The CASP13-CAPRI experiment.
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Lensink MF, Brysbaert G, Nadzirin N, Velankar S, Chaleil RAG, Gerguri T, Bates PA, Laine E, Carbone A, Grudinin S, Kong R, Liu RR, Xu XM, Shi H, Chang S, Eisenstein M, Karczynska A, Czaplewski C, Lubecka E, Lipska A, Krupa P, Mozolewska M, Golon Ł, Samsonov S, Liwo A, Crivelli S, Pagès G, Karasikov M, Kadukova M, Yan Y, Huang SY, Rosell M, Rodríguez-Lumbreras LA, Romero-Durana M, Díaz-Bueno L, Fernandez-Recio J, Christoffer C, Terashi G, Shin WH, Aderinwale T, Maddhuri Venkata Subraman SR, Kihara D, Kozakov D, Vajda S, Porter K, Padhorny D, Desta I, Beglov D, Ignatov M, Kotelnikov S, Moal IH, Ritchie DW, Chauvot de Beauchêne I, Maigret B, Devignes MD, Ruiz Echartea ME, Barradas-Bautista D, Cao Z, Cavallo L, Oliva R, Cao Y, Shen Y, Baek M, Park T, Woo H, Seok C, Braitbard M, Bitton L, Scheidman-Duhovny D, Dapkūnas J, Olechnovič K, Venclovas Č, Kundrotas PJ, Belkin S, Chakravarty D, Badal VD, Vakser IA, Vreven T, Vangaveti S, Borrman T, Weng Z, Guest JD, Gowthaman R, Pierce BG, Xu X, Duan R, Qiu L, Hou J, Ryan Merideth B, Ma Z, Cheng J, Zou X, Koukos PI, Roel-Touris J, Ambrosetti F, Geng C, Schaarschmidt J, Trellet ME, Melquiond ASJ, Xue L, Jiménez-García B, van Noort CW, Honorato RV, Bonvin AMJJ, and Wodak SJ
- Subjects
- Algorithms, Binding Sites genetics, Databases, Protein, Models, Molecular, Protein Binding genetics, Protein Interaction Mapping, Proteins chemistry, Proteins genetics, Structural Homology, Protein, Computational Biology, Protein Conformation, Proteins ultrastructure, Software
- Abstract
We present the results for CAPRI Round 46, the third joint CASP-CAPRI protein assembly prediction challenge. The Round comprised a total of 20 targets including 14 homo-oligomers and 6 heterocomplexes. Eight of the homo-oligomer targets and one heterodimer comprised proteins that could be readily modeled using templates from the Protein Data Bank, often available for the full assembly. The remaining 11 targets comprised 5 homodimers, 3 heterodimers, and two higher-order assemblies. These were more difficult to model, as their prediction mainly involved "ab-initio" docking of subunit models derived from distantly related templates. A total of ~30 CAPRI groups, including 9 automatic servers, submitted on average ~2000 models per target. About 17 groups participated in the CAPRI scoring rounds, offered for most targets, submitting ~170 models per target. The prediction performance, measured by the fraction of models of acceptable quality or higher submitted across all predictors groups, was very good to excellent for the nine easy targets. Poorer performance was achieved by predictors for the 11 difficult targets, with medium and high quality models submitted for only 3 of these targets. A similar performance "gap" was displayed by scorer groups, highlighting yet again the unmet challenge of modeling the conformational changes of the protein components that occur upon binding or that must be accounted for in template-based modeling. Our analysis also indicates that residues in binding interfaces were less well predicted in this set of targets than in previous Rounds, providing useful insights for directions of future improvements., (© 2019 Wiley Periodicals, Inc.)
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- 2019
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15. Amidino-Rocaglates: A Potent Class of eIF4A Inhibitors.
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Chu J, Zhang W, Cencic R, Devine WG, Beglov D, Henkel T, Brown LE, Vajda S, Porco JA Jr, and Pelletier J
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- Animals, Antineoplastic Agents metabolism, Antineoplastic Agents pharmacology, Antineoplastic Agents therapeutic use, Benzofurans metabolism, Cell Survival drug effects, DEAD-box RNA Helicases chemistry, DEAD-box RNA Helicases genetics, DEAD-box RNA Helicases metabolism, Drug Design, Eukaryotic Initiation Factor-4A genetics, Eukaryotic Initiation Factor-4A metabolism, Female, Humans, Lymphoma drug therapy, Lymphoma metabolism, Lymphoma pathology, Mice, Mice, Inbred C57BL, Protein Biosynthesis drug effects, RNA chemistry, RNA metabolism, Recombinant Proteins biosynthesis, Recombinant Proteins chemistry, Recombinant Proteins isolation & purification, Ribosomes metabolism, Structure-Activity Relationship, Amidines chemistry, Antineoplastic Agents chemistry, Benzofurans chemistry, Eukaryotic Initiation Factor-4A antagonists & inhibitors
- Abstract
Rocaglates share a common cyclopenta[b]benzofuran core that inhibits eukaryotic translation initiation by modifying the behavior of the RNA helicase, eIF4A. Working as interfacial inhibitors, rocaglates stabilize the association between eIF4A and RNA, which can lead to the formation of steric barriers that block initiating ribosomes. There is significant interest in the development and expansion of rocaglate derivatives, as several members of this family have been shown to possess potent anti-neoplastic activity in vitro and in vivo. To further our understanding of rocaglate diversity and drug design, herein we explore the RNA clamping activity of >200 unique rocaglate derivatives. Through this, we report on the identification and characterization of a potent class of synthetic rocaglates called amidino-rocaglates. These compounds are among the most potent rocaglates documented to date and, taken together, this work offers important information that will guide the future design of rocaglates with improved biological properties., (Copyright © 2019 Elsevier Ltd. All rights reserved.)
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- 2019
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16. Discovery of Macrocyclic Inhibitors of Apurinic/Apyrimidinic Endonuclease 1.
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Trilles R, Beglov D, Chen Q, He H, Wireman R, Reed A, Chennamadhavuni S, Panek JS, Brown LE, Vajda S, Porco JA Jr, Kelley MR, and Georgiadis MM
- Subjects
- Catalytic Domain, Cell Line, Tumor, DNA Damage drug effects, DNA-(Apurinic or Apyrimidinic Site) Lyase chemistry, DNA-(Apurinic or Apyrimidinic Site) Lyase metabolism, Drug Discovery, Enzyme Inhibitors chemical synthesis, Enzyme Inhibitors metabolism, Humans, Lactams, Macrocyclic chemical synthesis, Lactams, Macrocyclic metabolism, Lactones chemical synthesis, Lactones metabolism, Molecular Docking Simulation, Molecular Structure, Protein Binding, Small Molecule Libraries chemical synthesis, Small Molecule Libraries metabolism, Small Molecule Libraries pharmacology, Structure-Activity Relationship, DNA-(Apurinic or Apyrimidinic Site) Lyase antagonists & inhibitors, Enzyme Inhibitors pharmacology, Lactams, Macrocyclic pharmacology, Lactones pharmacology
- Abstract
Apurinic/apyrimidinic endonuclease 1 (APE1) is an essential base excision repair enzyme that is upregulated in a number of cancers, contributes to resistance of tumors treated with DNA-alkylating or -oxidizing agents, and has recently been identified as an important therapeutic target. In this work, we identified hot spots for binding of small organic molecules experimentally in high resolution crystal structures of APE1 and computationally through the use of FTMAP analysis ( http://ftmap.bu.edu/ ). Guided by these hot spots, a library of drug-like macrocycles was docked and then screened for inhibition of APE1 endonuclease activity. In an iterative process, hot-spot-guided docking, characterization of inhibition of APE1 endonuclease, and cytotoxicity of cancer cells were used to design next generation macrocycles. To assess target selectivity in cells, selected macrocycles were analyzed for modulation of DNA damage. Taken together, our studies suggest that macrocycles represent a promising class of compounds for inhibition of APE1 in cancer cells.
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- 2019
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17. Cryptic binding sites on proteins: definition, detection, and druggability.
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Vajda S, Beglov D, Wakefield AE, Egbert M, and Whitty A
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- Animals, Computer-Aided Design, Humans, Ligands, Machine Learning, Molecular Docking Simulation, Molecular Dynamics Simulation, Proteins metabolism, Binding Sites drug effects, Drug Discovery methods, Proteins chemistry
- Abstract
Many proteins in their unbound structures lack surface pockets appropriately sized for drug binding. Hence, a variety of experimental and computational tools have been developed for the identification of cryptic sites that are not evident in the unbound protein but form upon ligand binding, and can provide tractable drug target sites. The goal of this review is to discuss the definition, detection, and druggability of such sites, and their potential value for drug discovery. Novel methods based on molecular dynamics simulations are particularly promising and yield a large number of transient pockets, but it has been shown that only a minority of such sites are generally capable of binding ligands with substantial affinity. Based on recent studies, current methodology can be improved by combining molecular dynamics with fragment docking and machine learning approaches., (Copyright © 2018 Elsevier Ltd. All rights reserved.)
- Published
- 2018
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18. Exploring the structural origins of cryptic sites on proteins.
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Beglov D, Hall DR, Wakefield AE, Luo L, Allen KN, Kozakov D, Whitty A, and Vajda S
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- Binding Sites, Ligands, Molecular Dynamics Simulation, Protein Binding, Protein Conformation, Proteins chemistry
- Abstract
Molecular dynamics (MD) simulations of proteins reveal the existence of many transient surface pockets; however, the factors determining what small subset of these represent druggable or functionally relevant ligand binding sites, called "cryptic sites," are not understood. Here, we examine multiple X-ray structures for a set of proteins with validated cryptic sites, using the computational hot spot identification tool FTMap. The results show that cryptic sites in ligand-free structures generally have a strong binding energy hot spot very close by. As expected, regions around cryptic sites exhibit above-average flexibility, and close to 50% of the proteins studied here have unbound structures that could accommodate the ligand without clashes. Nevertheless, the strong hot spot neighboring each cryptic site is almost always exploited by the bound ligand, suggesting that binding may frequently involve an induced fit component. We additionally evaluated the structural basis for cryptic site formation, by comparing unbound to bound structures. Cryptic sites are most frequently occluded in the unbound structure by intrusion of loops (22.5%), side chains (19.4%), or in some cases entire helices (5.4%), but motions that create sites that are too open can also eliminate pockets (19.4%). The flexibility of cryptic sites frequently leads to missing side chains or loops (12%) that are particularly evident in low resolution crystal structures. An interesting observation is that cryptic sites formed solely by the movement of side chains, or of backbone segments with fewer than five residues, result only in low affinity binding sites with limited use for drug discovery., Competing Interests: The authors declare no conflict of interest.
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- 2018
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19. Protein-ligand docking using FFT based sampling: D3R case study.
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Padhorny D, Hall DR, Mirzaei H, Mamonov AB, Moghadasi M, Alekseenko A, Beglov D, and Kozakov D
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- 17-alpha-Hydroxyprogesterone chemistry, Binding Sites, Calcifediol chemistry, Computer-Aided Design, Drug Design, Humans, Ligands, Monte Carlo Method, Protein Binding, Proteins chemistry, 17-alpha-Hydroxyprogesterone pharmacology, Calcifediol pharmacology, Fourier Analysis, Molecular Docking Simulation, Proteins metabolism
- Abstract
Fast Fourier transform (FFT) based approaches have been successful in application to modeling of relatively rigid protein-protein complexes. Recently, we have been able to adapt the FFT methodology to treatment of flexible protein-peptide interactions. Here, we report our latest attempt to expand the capabilities of the FFT approach to treatment of flexible protein-ligand interactions in application to the D3R PL-2016-1 challenge. Based on the D3R assessment, our FFT approach in conjunction with Monte Carlo minimization off-grid refinement was among the top performing methods in the challenge. The potential advantage of our method is its ability to globally sample the protein-ligand interaction landscape, which will be explored in further applications.
- Published
- 2018
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20. ClusPro PeptiDock: efficient global docking of peptide recognition motifs using FFT.
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Porter KA, Xia B, Beglov D, Bohnuud T, Alam N, Schueler-Furman O, and Kozakov D
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- Algorithms, Cyclins chemistry, Cyclins metabolism, Databases, Protein, Fourier Analysis, Peptides chemistry, Peptides metabolism, Computational Biology methods, Molecular Docking Simulation methods, Protein Conformation, Protein Interaction Domains and Motifs, Software
- Abstract
Summary: We present an approach for the efficient docking of peptide motifs to their free receptor structures. Using a motif based search, we can retrieve structural fragments from the Protein Data Bank (PDB) that are very similar to the peptide's final, bound conformation. We use a Fast Fourier Transform (FFT) based docking method to quickly perform global rigid body docking of these fragments to the receptor. According to CAPRI peptide docking criteria, an acceptable conformation can often be found among the top-ranking predictions., Availability and Implementation: The method is available as part of the protein-protein docking server ClusPro at https://peptidock.cluspro.org/nousername.php., Contact: midas@laufercenter.org or oraf@ekmd.huji.ac.il., Supplementary Information: Supplementary data are available at Bioinformatics online., (© The Author (2017). Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions@oup.com)
- Published
- 2017
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21. New additions to the ClusPro server motivated by CAPRI.
- Author
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Vajda S, Yueh C, Beglov D, Bohnuud T, Mottarella SE, Xia B, Hall DR, and Kozakov D
- Subjects
- Benchmarking, Binding Sites, Cluster Analysis, Crystallography, X-Ray, Databases, Protein, Internet, Protein Binding, Protein Conformation, Protein Interaction Mapping, Protein Multimerization, Research Design, Structural Homology, Protein, Thermodynamics, Algorithms, Computational Biology methods, Molecular Docking Simulation methods, Proteins chemistry, Software, Water chemistry
- Abstract
The heavily used protein-protein docking server ClusPro performs three computational steps as follows: (1) rigid body docking, (2) RMSD based clustering of the 1000 lowest energy structures, and (3) the removal of steric clashes by energy minimization. In response to challenges encountered in recent CAPRI targets, we added three new options to ClusPro. These are (1) accounting for small angle X-ray scattering data in docking; (2) considering pairwise interaction data as restraints; and (3) enabling discrimination between biological and crystallographic dimers. In addition, we have developed an extremely fast docking algorithm based on 5D rotational manifold FFT, and an algorithm for docking flexible peptides that include known sequence motifs. We feel that these developments will further improve the utility of ClusPro. However, CAPRI emphasized several shortcomings of the current server, including the problem of selecting the right energy parameters among the five options provided, and the problem of selecting the best models among the 10 generated for each parameter set. In addition, results convinced us that further development is needed for docking homology models. Finally, we discuss the difficulties we have encountered when attempting to develop a refinement algorithm that would be computationally efficient enough for inclusion in a heavily used server. Proteins 2017; 85:435-444. © 2016 Wiley Periodicals, Inc., (© 2016 Wiley Periodicals, Inc.)
- Published
- 2017
- Full Text
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22. The ClusPro web server for protein-protein docking.
- Author
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Kozakov D, Hall DR, Xia B, Porter KA, Padhorny D, Yueh C, Beglov D, and Vajda S
- Subjects
- Algorithms, Databases, Protein, Heparin metabolism, Protein Multimerization, Protein Structure, Quaternary, Thermodynamics, Computational Biology methods, Internet, Protein Interaction Mapping methods
- Abstract
The ClusPro server (https://cluspro.org) is a widely used tool for protein-protein docking. The server provides a simple home page for basic use, requiring only two files in Protein Data Bank (PDB) format. However, ClusPro also offers a number of advanced options to modify the search; these include the removal of unstructured protein regions, application of attraction or repulsion, accounting for pairwise distance restraints, construction of homo-multimers, consideration of small-angle X-ray scattering (SAXS) data, and location of heparin-binding sites. Six different energy functions can be used, depending on the type of protein. Docking with each energy parameter set results in ten models defined by centers of highly populated clusters of low-energy docked structures. This protocol describes the use of the various options, the construction of auxiliary restraints files, the selection of the energy parameters, and the analysis of the results. Although the server is heavily used, runs are generally completed in <4 h.
- Published
- 2017
- Full Text
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23. Prediction of homoprotein and heteroprotein complexes by protein docking and template-based modeling: A CASP-CAPRI experiment.
- Author
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Lensink MF, Velankar S, Kryshtafovych A, Huang SY, Schneidman-Duhovny D, Sali A, Segura J, Fernandez-Fuentes N, Viswanath S, Elber R, Grudinin S, Popov P, Neveu E, Lee H, Baek M, Park S, Heo L, Rie Lee G, Seok C, Qin S, Zhou HX, Ritchie DW, Maigret B, Devignes MD, Ghoorah A, Torchala M, Chaleil RA, Bates PA, Ben-Zeev E, Eisenstein M, Negi SS, Weng Z, Vreven T, Pierce BG, Borrman TM, Yu J, Ochsenbein F, Guerois R, Vangone A, Rodrigues JP, van Zundert G, Nellen M, Xue L, Karaca E, Melquiond AS, Visscher K, Kastritis PL, Bonvin AM, Xu X, Qiu L, Yan C, Li J, Ma Z, Cheng J, Zou X, Shen Y, Peterson LX, Kim HR, Roy A, Han X, Esquivel-Rodriguez J, Kihara D, Yu X, Bruce NJ, Fuller JC, Wade RC, Anishchenko I, Kundrotas PJ, Vakser IA, Imai K, Yamada K, Oda T, Nakamura T, Tomii K, Pallara C, Romero-Durana M, Jiménez-García B, Moal IH, Férnandez-Recio J, Joung JY, Kim JY, Joo K, Lee J, Kozakov D, Vajda S, Mottarella S, Hall DR, Beglov D, Mamonov A, Xia B, Bohnuud T, Del Carpio CA, Ichiishi E, Marze N, Kuroda D, Roy Burman SS, Gray JJ, Chermak E, Cavallo L, Oliva R, Tovchigrechko A, and Wodak SJ
- Subjects
- Algorithms, Amino Acid Motifs, Bacteria chemistry, Binding Sites, Computational Biology methods, Humans, International Cooperation, Internet, Protein Binding, Protein Conformation, alpha-Helical, Protein Conformation, beta-Strand, Protein Folding, Protein Interaction Domains and Motifs, Protein Multimerization, Protein Structure, Tertiary, Sequence Homology, Amino Acid, Thermodynamics, Computational Biology statistics & numerical data, Models, Statistical, Molecular Docking Simulation, Molecular Dynamics Simulation, Proteins chemistry, Software
- Abstract
We present the results for CAPRI Round 30, the first joint CASP-CAPRI experiment, which brought together experts from the protein structure prediction and protein-protein docking communities. The Round comprised 25 targets from amongst those submitted for the CASP11 prediction experiment of 2014. The targets included mostly homodimers, a few homotetramers, and two heterodimers, and comprised protein chains that could readily be modeled using templates from the Protein Data Bank. On average 24 CAPRI groups and 7 CASP groups submitted docking predictions for each target, and 12 CAPRI groups per target participated in the CAPRI scoring experiment. In total more than 9500 models were assessed against the 3D structures of the corresponding target complexes. Results show that the prediction of homodimer assemblies by homology modeling techniques and docking calculations is quite successful for targets featuring large enough subunit interfaces to represent stable associations. Targets with ambiguous or inaccurate oligomeric state assignments, often featuring crystal contact-sized interfaces, represented a confounding factor. For those, a much poorer prediction performance was achieved, while nonetheless often providing helpful clues on the correct oligomeric state of the protein. The prediction performance was very poor for genuine tetrameric targets, where the inaccuracy of the homology-built subunit models and the smaller pair-wise interfaces severely limited the ability to derive the correct assembly mode. Our analysis also shows that docking procedures tend to perform better than standard homology modeling techniques and that highly accurate models of the protein components are not always required to identify their association modes with acceptable accuracy. Proteins 2016; 84(Suppl 1):323-348. © 2016 Wiley Periodicals, Inc., (© 2016 Wiley Periodicals, Inc.)
- Published
- 2016
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24. Quantifying the chameleonic properties of macrocycles and other high-molecular-weight drugs.
- Author
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Whitty A, Zhong M, Viarengo L, Beglov D, Hall DR, and Vajda S
- Subjects
- Drug Design, Humans, Macrocyclic Compounds pharmacology, Models, Molecular, Molecular Weight, Macrocyclic Compounds chemistry
- Abstract
Key to the pharmaceutical utility of certain macrocyclic drugs is a 'chameleonic' ability to change their conformation to expose polar groups in aqueous solution, but bury them when traversing lipid membranes. Based on analysis of the structures of 20 macrocyclic compounds that are approved oral drugs, we propose that good solubility requires a topological polar surface area (TPSA, in Å(2)) of ≥0.2×molecular weight (MW). Meanwhile, good passive membrane permeability requires a molecular (i.e., 3D) PSA in nonpolar environments of ≤140Å(2). We show that one or other of these limits is almost invariably violated for compounds with MW>600Da, suggesting that some degree of chameleonic behavior is required for most high MW oral drugs., (Copyright © 2016. Published by Elsevier Ltd.)
- Published
- 2016
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25. The FTMap family of web servers for determining and characterizing ligand-binding hot spots of proteins.
- Author
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Kozakov D, Grove LE, Hall DR, Bohnuud T, Mottarella SE, Luo L, Xia B, Beglov D, and Vajda S
- Subjects
- Binding Sites, Databases, Protein, Internet, Ligands, Molecular Probes, Protein Conformation, Computational Biology methods, Proteins chemistry, Proteins metabolism
- Abstract
FTMap is a computational mapping server that identifies binding hot spots of macromolecules-i.e., regions of the surface with major contributions to the ligand-binding free energy. To use FTMap, users submit a protein, DNA or RNA structure in PDB (Protein Data Bank) format. FTMap samples billions of positions of small organic molecules used as probes, and it scores the probe poses using a detailed energy expression. Regions that bind clusters of multiple probe types identify the binding hot spots in good agreement with experimental data. FTMap serves as the basis for other servers, namely FTSite, which is used to predict ligand-binding sites, FTFlex, which is used to account for side chain flexibility, FTMap/param, used to parameterize additional probes and FTDyn, for mapping ensembles of protein structures. Applications include determining the druggability of proteins, identifying ligand moieties that are most important for binding, finding the most bound-like conformation in ensembles of unliganded protein structures and providing input for fragment-based drug design. FTMap is more accurate than classical mapping methods such as GRID and MCSS, and it is much faster than the more-recent approaches to protein mapping based on mixed molecular dynamics. By using 16 probe molecules, the FTMap server finds the hot spots of an average-size protein in <1 h. As FTFlex performs mapping for all low-energy conformers of side chains in the binding site, its completion time is proportionately longer.
- Published
- 2015
- Full Text
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26. Energy Minimization on Manifolds for Docking Flexible Molecules.
- Author
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Mirzaei H, Zarbafian S, Villar E, Mottarella S, Beglov D, Vajda S, Paschalidis ICh, Vakili P, and Kozakov D
- Subjects
- Algorithms, Ligands, Molecular Docking Simulation, Pliability, Rotation, Proteins chemistry, Small Molecule Libraries chemistry
- Abstract
In this paper, we extend a recently introduced rigid body minimization algorithm, defined on manifolds, to the problem of minimizing the energy of interacting flexible molecules. The goal is to integrate moving the ligand in six dimensional rotational/translational space with internal rotations around rotatable bonds within the two molecules. We show that adding rotational degrees of freedom to the rigid moves of the ligand results in an overall optimization search space that is a manifold to which our manifold optimization approach can be extended. The effectiveness of the method is shown for three different docking problems of increasing complexity. First, we minimize the energy of fragment-size ligands with a single rotatable bond as part of a protein mapping method developed for the identification of binding hot spots. Second, we consider energy minimization for docking a flexible ligand to a rigid protein receptor, an approach frequently used in existing methods. In the third problem, we account for flexibility in both the ligand and the receptor. Results show that minimization using the manifold optimization algorithm is substantially more efficient than minimization using a traditional all-atom optimization algorithm while producing solutions of comparable quality. In addition to the specific problems considered, the method is general enough to be used in a large class of applications such as docking multidomain proteins with flexible hinges. The code is available under open source license (at http://cluspro.bu.edu/Code/Code_Rigtree.tar) and with minimal effort can be incorporated into any molecular modeling package.
- Published
- 2015
- Full Text
- View/download PDF
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