72 results on '"van Vlijmen H"'
Search Results
2. An immunohistochemical study of endothelial cell heterogeneity in the rat: observations in “en face” Häutchen preparations
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Tomlinson, A., Van Vlijmen, H., Loesch, A., and Burnstock, G.
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- 1991
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3. Open PHACTS computational protocols for in silico target validation of cellular phenotypic screens: knowing the knowns† †The authors declare no competing interests. ‡ ‡Electronic supplementary information (ESI) available: Pipeline Pilot protocols, xls file with the output of the Pipeline Pilot protocols, KNIME workflows, and supplementary figures showing the Pipeline Pilot protocols. See DOI: 10.1039/c6md00065g Click here for additional data file
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Digles, D., Zdrazil, B., Neefs, J.-M., Van Vlijmen, H., Herhaus, C., Caracoti, A., Brea, J., Roibás, B., Loza, M. I., Queralt-Rosinach, N., Furlong, L. I., Gaulton, A., Bartek, L., Senger, S., Chichester, C., Engkvist, O., Evelo, C. T., Franklin, N. I., Marren, D., Ecker, G. F., and Jacoby, E.
- Subjects
Chemistry ,TheoryofComputation_COMPUTATIONBYABSTRACTDEVICES ,ComputingMethodologies_PATTERNRECOGNITION ,ComputingMethodologies_ARTIFICIALINTELLIGENCE - Abstract
Six computational protocols to annotate phenotypic screens., Phenotypic screening is in a renaissance phase and is expected by many academic and industry leaders to accelerate the discovery of new drugs for new biology. Given that phenotypic screening is per definition target agnostic, the emphasis of in silico and in vitro follow-up work is on the exploration of possible molecular mechanisms and efficacy targets underlying the biological processes interrogated by the phenotypic screening experiments. Herein, we present six exemplar computational protocols for the interpretation of cellular phenotypic screens based on the integration of compound, target, pathway, and disease data established by the IMI Open PHACTS project. The protocols annotate phenotypic hit lists and allow follow-up experiments and mechanistic conclusions. The annotations included are from ChEMBL, ChEBI, GO, WikiPathways and DisGeNET. Also provided are protocols which select from the IUPHAR/BPS Guide to PHARMACOLOGY interaction file selective compounds to probe potential targets and a correlation robot which systematically aims to identify an overlap of active compounds in both the phenotypic as well as any kinase assay. The protocols are applied to a phenotypic pre-lamin A/C splicing assay selected from the ChEMBL database to illustrate the process. The computational protocols make use of the Open PHACTS API and data and are built within the Pipeline Pilot and KNIME workflow tools.
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- 2016
4. Molecular modeling of a putative antagonist binding site on helix III of the β-adrenoceptor
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van Vlijmen, H. W. Th. and Ijzerman, A. P.
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- 1989
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5. Abstracts of papers medicinal chemical meeting
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Damsma, G., Westerink, B. H. C., de Vries, J. B., Horn, A. S., Rettenmayr, N., de Miranda, J. F. Rodrigues, Lambrecht, G., Mutschler, E., Russel, F. G. M., van Galen, P. J. M., van Viijmen, H. W. Th., Ijzerman, A. P., Soudijn, W., Vromans, R. M., van de Straat, R., Groeneveld, M., Vermeiden, N. P. E., Siero, H. L. M., van Zwam, A. J. G., de Miranda, J. F. Rodriques, van Ginneken, C. A. M., Willems, P. H. G. M., de Pont, J. J. H. H. M., van Gelderen, J. G., Pruijn, F. B., Bast, A., de Zwart, M. A. H., van der Goot, H., Timmerman, H., Kramer, K., Voss, H. P., Grimbergen, J. A., Goeptar, A. R., Haenen, G. R. M. M., Veerman, M., Vermeulen, N. P. E., Boom, S. P. A., Koper, J. G., Leurs, J. N. L. Go. R., Rekka, E., Sterk, G. J., van der Weide, Jan, Tendijck, H., Tepper, P. G., Horn, A. B., Bosker, F. J., van Bussel, F. J., Plug, M. J., Dijk, J., Tepper, P., Möller, W., Leusen, F. J. J., van Vlijmen, H. W. Th., de Kaste, D., van Amsterdam, J. G. C., Llorens-Cortes, C., Vleeming, W., v. d. Wouw, P. A., v. Rooij, H. H., Wemer, J., Porsius, A. J., Lusthof, K. J., de Mol, N. J., Janssen, L. H. M., Bakri, Aziz, Janssen, Lambert H. M., Wilting, Jaap, Kelder, P. P., Kuit, M. C. A. W., van Sterkenburg, E. L. M., Wilting, J., Bos, O. J. M., and Fischer, M. J. E.
- Published
- 1987
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6. Molecular Modelling of the Antagonist Binding Site on the Adenosine A, Receptor.
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Ljzerman, A. P., Van Galen, P. J. M., Van Vlijmen, H. W., Soudijn, W., Nissen, P., and Wijngaarden, I. Van
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- 1991
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7. Molecular bioactivity extrapolation to novel targets by support vector machines
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Van Westen Gerard JP, Wegner JK, IJzerman AP, Van Vlijmen HWT, and Bender A
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Information technology ,T58.5-58.64 ,Chemistry ,QD1-999 - Published
- 2010
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8. Quantitative prediction of integrase inhibitor resistance from genotype through consensus linear regression modeling
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Van der Borght Koen, Verheyen Ann, Feyaerts Maxim, Van Wesenbeeck Liesbeth, Verlinden Yvan, Van Craenenbroeck Elke, and van Vlijmen Herman
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Consensus model ,Genetic algorithm ,Integrase ,Linear regression ,Raltegravir ,Resistance ,Infectious and parasitic diseases ,RC109-216 - Abstract
Abstract Background Integrase inhibitors (INI) form a new drug class in the treatment of HIV-1 patients. We developed a linear regression modeling approach to make a quantitative raltegravir (RAL) resistance phenotype prediction, as Fold Change in IC50 against a wild type virus, from mutations in the integrase genotype. Methods We developed a clonal genotype-phenotype database with 991 clones from 153 clinical isolates of INI naïve and RAL treated patients, and 28 site-directed mutants. We did the development of the RAL linear regression model in two stages, employing a genetic algorithm (GA) to select integrase mutations by consensus. First, we ran multiple GAs to generate first order linear regression models (GA models) that were stochastically optimized to reach a goal R2 accuracy, and consisted of a fixed-length subset of integrase mutations to estimate INI resistance. Secondly, we derived a consensus linear regression model in a forward stepwise regression procedure, considering integrase mutations or mutation pairs by descending prevalence in the GA models. Results The most frequently occurring mutations in the GA models were 92Q, 97A, 143R and 155H (all 100%), 143G (90%), 148H/R (89%), 148K (88%), 151I (81%), 121Y (75%), 143C (72%), and 74M (69%). The RAL second order model contained 30 single mutations and five mutation pairs (p 2 performance of this model on the clonal training data was 0.97, and 0.78 on an unseen population genotype-phenotype dataset of 171 clinical isolates from RAL treated and INI naïve patients. Conclusions We describe a systematic approach to derive a model for predicting INI resistance from a limited amount of clonal samples. Our RAL second order model is made available as an Additional file for calculating a resistance phenotype as the sum of integrase mutations and mutation pairs.
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- 2013
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9. Cross-validated stepwise regression for identification of novel non-nucleoside reverse transcriptase inhibitor resistance associated mutations
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Van Houtte Margriet, Lecocq Pierre, Van Craenenbroeck Elke, Van der Borght Koen, Van Kerckhove Barbara, Bacheler Lee, Verbeke Geert, and van Vlijmen Herman
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Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background Linear regression models are used to quantitatively predict drug resistance, the phenotype, from the HIV-1 viral genotype. As new antiretroviral drugs become available, new resistance pathways emerge and the number of resistance associated mutations continues to increase. To accurately identify which drug options are left, the main goal of the modeling has been to maximize predictivity and not interpretability. However, we originally selected linear regression as the preferred method for its transparency as opposed to other techniques such as neural networks. Here, we apply a method to lower the complexity of these phenotype prediction models using a 3-fold cross-validated selection of mutations. Results Compared to standard stepwise regression we were able to reduce the number of mutations in the reverse transcriptase (RT) inhibitor models as well as the number of interaction terms accounting for synergistic and antagonistic effects. This reduction in complexity was most significant for the non-nucleoside reverse transcriptase inhibitor (NNRTI) models, while maintaining prediction accuracy and retaining virtually all known resistance associated mutations as first order terms in the models. Furthermore, for etravirine (ETR) a better performance was seen on two years of unseen data. By analyzing the phenotype prediction models we identified a list of forty novel NNRTI mutations, putatively associated with resistance. The resistance association of novel variants at known NNRTI resistance positions: 100, 101, 181, 190, 221 and of mutations at positions not previously linked with NNRTI resistance: 102, 139, 219, 241, 376 and 382 was confirmed by phenotyping site-directed mutants. Conclusions We successfully identified and validated novel NNRTI resistance associated mutations by developing parsimonious resistance prediction models in which repeated cross-validation within the stepwise regression was applied. Our model selection technique is computationally feasible for large data sets and provides an approach to the continued identification of resistance-causing mutations.
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- 2011
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10. A novel chemogenomics analysis of G protein-coupled receptors (GPCRs) and their ligands: a potential strategy for receptor de-orphanization
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Emmerich Michael TM, van Vlijmen Herman WT, Lane Jonathan R, Beukers Margot W, IJzerman Adriaan P, Peironcely Julio E, van der Horst Eelke, Okuno Yasushi, and Bender Andreas
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Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background G protein-coupled receptors (GPCRs) represent a family of well-characterized drug targets with significant therapeutic value. Phylogenetic classifications may help to understand the characteristics of individual GPCRs and their subtypes. Previous phylogenetic classifications were all based on the sequences of receptors, adding only minor information about the ligand binding properties of the receptors. In this work, we compare a sequence-based classification of receptors to a ligand-based classification of the same group of receptors, and evaluate the potential to use sequence relatedness as a predictor for ligand interactions thus aiding the quest for ligands of orphan receptors. Results We present a classification of GPCRs that is purely based on their ligands, complementing sequence-based phylogenetic classifications of these receptors. Targets were hierarchically classified into phylogenetic trees, for both sequence space and ligand (substructure) space. The overall organization of the sequence-based tree and substructure-based tree was similar; in particular, the adenosine receptors cluster together as well as most peptide receptor subtypes (e.g. opioid, somatostatin) and adrenoceptor subtypes. In ligand space, the prostanoid and cannabinoid receptors are more distant from the other targets, whereas the tachykinin receptors, the oxytocin receptor, and serotonin receptors are closer to the other targets, which is indicative for ligand promiscuity. In 93% of the receptors studied, de-orphanization of a simulated orphan receptor using the ligands of related receptors performed better than random (AUC > 0.5) and for 35% of receptors de-orphanization performance was good (AUC > 0.7). Conclusions We constructed a phylogenetic classification of GPCRs that is solely based on the ligands of these receptors. The similarities and differences with traditional sequence-based classifications were investigated: our ligand-based classification uncovers relationships among GPCRs that are not apparent from the sequence-based classification. This will shed light on potential cross-reactivity of GPCR ligands and will aid the design of new ligands with the desired activity profiles. In addition, we linked the ligand-based classification with a ligand-focused sequence-based classification described in literature and proved the potential of this method for de-orphanization of GPCRs.
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- 2010
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11. An Antibody Loop Replacement Design Feasibility Study and a Loop-Swapped Dimer Structure
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van Vlijmen, H
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- 2009
12. Structure-Activity Relationship of Oxacyclo- and Triazolo-Containing Respiratory Syncytial Virus Polymerase Inhibitors.
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Tran MT, Grosse S, Carbajo RJ, Jacoby E, Yin Y, Yu X, Martinez C, Stoops B, Cooymans L, Hu L, Lutter FH, Pieters S, Tan E, Alcázar J, Roymans D, van Vlijmen H, Rigaux P, Sharma S, and Jonckers THM
- Abstract
Despite the availability of medicines preventing respiratory syncytial virus (RSV) infection, post-exposure treatment options are needed for addressing patient's needs. RSV non-nucleoside polymerase inhibitors (NNI) have emerged as a promising asset for which our group previously disclosed JNJ-8003 with potent in vitro antiviral activity and pronounced in vivo efficacy. In this work, a structural-guided design to modify the linker vector of JNJ-8003 resulted in the identification of 2-oxacyclo pyridine-containing derivatives whose various ring closing strategies are described. In addition, bioisosteric replacement of an amide bond with triazole retained potency, and cryo-electron microscopy (cryo-EM) confirmed binding in the capping domain. Subsequent NMR conformational analysis suggested a correlation between the potency and conformations. Our efforts have fulfilled the aim of identifying linker modifications with maintained biological activity while enriching structural diversity and allowing modulations of other parameters., Competing Interests: The authors declare the following competing financial interest(s): All authors are or were previously employed by Johnson and Johnson Innovative Medicine and are possible shareholders., (© 2024 American Chemical Society.)
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- 2024
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13. Kinetic profiling of novel spirobenzo-oxazinepiperidinone derivatives as equilibrative nucleoside transporter 1 inhibitors.
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Vlachodimou A, Bouma J, De Cleyn M, Berthelot D, Pype S, Bosmans JP, van Vlijmen H, Wroblowski B, Heitman LH, and IJzerman AP
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- Humans, Biological Transport, Thioinosine metabolism, Thioinosine pharmacology, Equilibrative Nucleoside Transporter 1 chemistry, Equilibrative Nucleoside Transporter 1 metabolism
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Evaluation of kinetic parameters of drug-target binding, k
on , koff , and residence time (RT), in addition to the traditional in vitro parameter of affinity is receiving increasing attention in the early stages of drug discovery. Target binding kinetics emerges as a meaningful concept for the evaluation of a ligand's duration of action and more generally drug efficacy and safety. We report the biological evaluation of a novel series of spirobenzo-oxazinepiperidinone derivatives as inhibitors of the human equilibrative nucleoside transporter 1 (hENT1, SLC29A1). The compounds were evaluated in radioligand binding experiments, i.e., displacement, competition association, and washout assays, to evaluate their affinity and binding kinetic parameters. We also linked these pharmacological parameters to the compounds' chemical characteristics, and learned that separate moieties of the molecules governed target affinity and binding kinetics. Among the 29 compounds tested, 28 stood out with high affinity and a long residence time of 87 min. These findings reveal the importance of supplementing affinity data with binding kinetics at transport proteins such as hENT1., (© 2023. The Author(s).)- Published
- 2024
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14. The European Lead Factory: Results from a decade of collaborative, public-private, drug discovery programs.
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van Vlijmen H, Pannifer AD, Cochrane P, Basting D, Li VM, Engkvist O, Ortholand JY, Wagener M, Duffy J, Finsinger D, Davis J, van Helden SP, and de Vlieger JSB
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- High-Throughput Screening Assays methods, Drug Industry, Universities, Small Molecule Libraries chemistry, Drug Discovery methods
- Abstract
The European Lead Factory (ELF) is a consortium of universities and small and medium-sized enterprises (SMEs) dedicated to drug discovery, and the pharmaceutical industry. This unprecedented consortium provides high-throughput screening, triage, and hit validation, including to non-consortium members. The ELF library was created through a novel compound-sharing model between nine pharmaceutical companies and expanded through library synthesis by chemistry-specialized SMEs. The library has been screened against ∼270 different targets and 15 phenotypic assays, and hits have been developed to form the basis of patents and spin-off companies. Here, we review the outcome of screening campaigns of the ELF, including the performance and physicochemical properties of the library, identification of possible frequent hitter compounds, and the effectiveness of the compound-sharing model., (Copyright © 2024 The Author(s). Published by Elsevier Ltd.. All rights reserved.)
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- 2024
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15. Alchemical Free Energy Calculations on Membrane-Associated Proteins.
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Papadourakis M, Sinenka H, Matricon P, Hénin J, Brannigan G, Pérez-Benito L, Pande V, van Vlijmen H, de Graaf C, Deflorian F, Tresadern G, Cecchini M, and Cournia Z
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- Entropy, Thermodynamics, Ligands, Lipids, Protein Binding, Membrane Proteins, Molecular Dynamics Simulation
- Abstract
Membrane proteins have diverse functions within cells and are well-established drug targets. The advances in membrane protein structural biology have revealed drug and lipid binding sites on membrane proteins, while computational methods such as molecular simulations can resolve the thermodynamic basis of these interactions. Particularly, alchemical free energy calculations have shown promise in the calculation of reliable and reproducible binding free energies of protein-ligand and protein-lipid complexes in membrane-associated systems. In this review, we present an overview of representative alchemical free energy studies on G-protein-coupled receptors, ion channels, transporters as well as protein-lipid interactions, with emphasis on best practices and critical aspects of running these simulations. Additionally, we analyze challenges and successes when running alchemical free energy calculations on membrane-associated proteins. Finally, we highlight the value of alchemical free energy calculations calculations in drug discovery and their applicability in the pharmaceutical industry.
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- 2023
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16. Structural and mechanistic insights into the inhibition of respiratory syncytial virus polymerase by a non-nucleoside inhibitor.
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Yu X, Abeywickrema P, Bonneux B, Behera I, Anson B, Jacoby E, Fung A, Adhikary S, Bhaumik A, Carbajo RJ, De Bruyn S, Miller R, Patrick A, Pham Q, Piassek M, Verheyen N, Shareef A, Sutto-Ortiz P, Ysebaert N, Van Vlijmen H, Jonckers THM, Herschke F, McLellan JS, Decroly E, Fearns R, Grosse S, Roymans D, Sharma S, Rigaux P, and Jin Z
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- RNA-Dependent RNA Polymerase chemistry, Protein Binding, RNA metabolism, Nucleotides metabolism, Respiratory Syncytial Virus, Human
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The respiratory syncytial virus polymerase complex, consisting of the polymerase (L) and phosphoprotein (P), catalyzes nucleotide polymerization, cap addition, and cap methylation via the RNA dependent RNA polymerase, capping, and Methyltransferase domains on L. Several nucleoside and non-nucleoside inhibitors have been reported to inhibit this polymerase complex, but the structural details of the exact inhibitor-polymerase interactions have been lacking. Here, we report a non-nucleoside inhibitor JNJ-8003 with sub-nanomolar inhibition potency in both antiviral and polymerase assays. Our 2.9 Å resolution cryo-EM structure revealed that JNJ-8003 binds to an induced-fit pocket on the capping domain, with multiple interactions consistent with its tight binding and resistance mutation profile. The minigenome and gel-based de novo RNA synthesis and primer extension assays demonstrated that JNJ-8003 inhibited nucleotide polymerization at the early stages of RNA transcription and replication. Our results support that JNJ-8003 binding modulates a functional interplay between the capping and RdRp domains, and this molecular insight could accelerate the design of broad-spectrum antiviral drugs., (© 2023. Springer Nature Limited.)
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- 2023
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17. Corrigendum to "The European Lead Factory: An updated HTS compound library for innovative drug discovery" [Drug Discov. Today 26(10) (2021) 2406-2413].
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van Vlijmen H, Ortholand JY, Li VM, and de Vlieger JSB
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- 2023
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18. The FAIR Cookbook - the essential resource for and by FAIR doers.
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Rocca-Serra P, Gu W, Ioannidis V, Abbassi-Daloii T, Capella-Gutierrez S, Chandramouliswaran I, Splendiani A, Burdett T, Giessmann RT, Henderson D, Batista D, Emam I, Gadiya Y, Giovanni L, Willighagen E, Evelo C, Gray AJG, Gribbon P, Juty N, Welter D, Quast K, Peeters P, Plasterer T, Wood C, van der Horst E, Reilly D, van Vlijmen H, Scollen S, Lister A, Thurston M, Granell R, and Sansone SA
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The notion that data should be Findable, Accessible, Interoperable and Reusable, according to the FAIR Principles, has become a global norm for good data stewardship and a prerequisite for reproducibility. Nowadays, FAIR guides data policy actions and professional practices in the public and private sectors. Despite such global endorsements, however, the FAIR Principles are aspirational, remaining elusive at best, and intimidating at worst. To address the lack of practical guidance, and help with capability gaps, we developed the FAIR Cookbook, an open, online resource of hands-on recipes for "FAIR doers" in the Life Sciences. Created by researchers and data managers professionals in academia, (bio)pharmaceutical companies and information service industries, the FAIR Cookbook covers the key steps in a FAIRification journey, the levels and indicators of FAIRness, the maturity model, the technologies, the tools and the standards available, as well as the skills required, and the challenges to achieve and improve data FAIRness. Part of the ELIXIR ecosystem, and recommended by funders, the FAIR Cookbook is open to contributions of new recipes., (© 2023. The Author(s).)
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- 2023
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19. The performance of ensemble-based free energy protocols in computing binding affinities to ROS1 kinase.
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Wan S, Bhati AP, Wright DW, Wade AD, Tresadern G, van Vlijmen H, and Coveney PV
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- Molecular Dynamics Simulation, Protein Binding, Thermodynamics, Protein-Tyrosine Kinases, Proto-Oncogene Proteins
- Abstract
Optimization of binding affinities for compounds to their target protein is a primary objective in drug discovery. Herein we report on a collaborative study that evaluates a set of compounds binding to ROS1 kinase. We use ESMACS (enhanced sampling of molecular dynamics with approximation of continuum solvent) and TIES (thermodynamic integration with enhanced sampling) protocols to rank the binding free energies. The predicted binding free energies from ESMACS simulations show good correlations with experimental data for subsets of the compounds. Consistent binding free energy differences are generated for TIES and ESMACS. Although an unexplained overestimation exists, we obtain excellent statistical rankings across the set of compounds from the TIES protocol, with a Pearson correlation coefficient of 0.90 between calculated and experimental activities., (© 2022. The Author(s).)
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- 2022
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20. IMI European Lead Factory - democratizing access to high-throughput screening.
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Jones PS, Boucharens S, McElroy SP, Morrison A, Honarnejad S, van Boeckel S, van den Hurk H, Basting D, Hüser J, Jaroch S, Ottow E, Benningshof J, Folmer RHA, Leemhuis F, Kramer-Verhulst PM, Nies VJM, Orrling KM, Rijnders T, Pfander C, Engkvist O, Pairaudeau G, Simpson PB, Ortholand JY, Roche D, Dömling A, Kühnert SM, Roevens PWM, van Vlijmen H, van Wanrooij EJA, Verbruggen C, Nussbaumer P, Ovaa H, van der Stelt M, Simonsen KB, Tagmose L, Waldmann H, Duffy J, Finsinger D, Jurzak M, Burgess-Brown NA, Lee WH, Rutjes FPJT, Haag H, Kallus C, Mors H, Dorval T, Lesur B, Ramon Olayo F, Hamza D, Jones G, Pearce C, Piechot A, Tzalis D, Clausen MH, Davis J, Derouane D, Vermeiren C, Kaiser M, Stockman RA, Barrault DV, Pannifer AD, Swedlow JR, Nelson AS, Orru RVA, Ruijter E, van Helden SP, Li VM, Vries T, and de Vlieger JSB
- Subjects
- Drug Discovery, Humans, High-Throughput Screening Assays, Small Molecule Libraries
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- 2022
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21. The Impact of Experimental and Calculated Error on the Performance of Affinity Predictions.
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Tresadern G, Tatikola K, Cabrera J, Wang L, Abel R, van Vlijmen H, and Geys H
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- Entropy, Ligands, Protein Binding, Thermodynamics, Proteins chemistry
- Abstract
The accurate prediction of binding affinity between protein and small molecules with free energy methods, particularly the difference in binding affinities via relative binding free energy calculations, has undergone a dramatic increase in use and impact over recent years. The improvements in methodology, hardware, and implementation can deliver results with less than 1 kcal/mol mean unsigned error between calculation and experiment. This is a remarkable achievement and beckons some reflection on the significance of calculation approaching the accuracy of experiment. In this article, we describe a statistical analysis of the implications of variance (standard deviation) of both experimental and calculated binding affinities with respect to the unknown true binding affinity. We reveal that plausible ratios of standard deviation in experiment and calculation can lead to unexpected outcomes for assessing the performance of predictions. The work extends beyond the case of binding free energies to other affinity or property prediction methods.
- Published
- 2022
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22. The European Lead Factory: An updated HTS compound library for innovative drug discovery.
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van Vlijmen H, Ortholand JY, Li VM, and de Vlieger JSB
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- Europe, Humans, Pharmaceutical Preparations chemistry, Small Molecule Libraries, Drug Discovery methods, Drug Industry methods, High-Throughput Screening Assays methods
- Abstract
Through the European Lead Factory model, industry-standard high-throughput screening and hit validation are made available to academia, small and medium-sized enterprises, charity organizations, patient foundations, and participating pharmaceutical companies. The compound collection used for screening is built from a unique diversity of sources. It brings together compounds from companies with different therapeutic area heritages and completely new compounds from library synthesis. This generates structural diversity and combines molecules with complementary physicochemical properties. In 2019, the screening library was updated to enable another 5 years of running innovative drug discovery projects. Here, we investigate the physicochemical and diversity properties of the updated compound collection. We show that it is highly diverse, drug-like, and complementary to commercial screening libraries., Competing Interests: Declaration of Competing Interest The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (Copyright © 2021 The Authors. Published by Elsevier Ltd.. All rights reserved.)
- Published
- 2021
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23. Identification of novel inhibitors of rat Mrp3.
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De Vocht T, Buyck C, Deferm N, Qi B, Van Brantegem P, van Vlijmen H, Snoeys J, Hoeben E, Vermeulen A, and Annaert P
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- Animals, Bayes Theorem, Bile Acids and Salts, Biological Transport, Rats, Hepatocytes metabolism, Multidrug Resistance-Associated Proteins antagonists & inhibitors
- Abstract
Multidrug resistance-associated protein (MRP; ABCC gene family) mediated efflux transport plays an important role in the systemic and tissue exposure profiles of many drugs and their metabolites, and also of endogenous compounds like bile acids and bilirubin conjugates. However, potent and isoform-selective inhibitors of the MRP subfamily are currently lacking. Therefore, the purpose of the present work was to identify novel rat Mrp3 inhibitors. Using 5(6)-carboxy-2',7'-dichlorofluorescein diacetate (CDFDA) as a model-(pro)substrate for Mrp3 in an oil-spin assay with primary rat hepatocytes, the extent of inhibition of CDF efflux was determined for 1584 compounds, yielding 59 hits (excluding the reference inhibitor) that were identified as new Mrp3 inhibitors. A naive Bayesian prediction model was constructed in Pipeline Pilot to elucidate physicochemical and structural features of compounds causing Mrp3 inhibition. The final Bayesian model generated common physicochemical properties of Mrp3 inhibitors. For instance, more than half of the hits contain a phenolic structure. The identified compounds have an AlogP between 2 and 4.5, between 5 to 8 hydrogen bond acceptor atoms, a molecular weight between 260 and 400, and 2 or more aromatic rings. Compared to the depleted dataset (i.e. 90% remaining compounds), the Mrp3 hit rate in the enriched set was 7.5-fold higher (i.e. 17.2% versus 2.3%). Several hits from this first screening approach were confirmed in an additional study using Mrp3 transfected inside-out membrane vesicles. In conclusion, several new and potent inhibitors of Mrp3 mediated efflux were identified in an optimized in vitro rat hepatocyte assay and confirmed using Mrp3 transfected inside-out membrane vesicles. A final naive Bayesian model was developed in an iterative way to reveal common physicochemical and structural features for Mrp3 inhibitors. The final Bayesian model will enable in silico screening of larger libraries and in vitro identification of more potent Mrp3 inhibitors., (Copyright © 2021. Published by Elsevier B.V.)
- Published
- 2021
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24. Mechanism of covalent binding of ibrutinib to Bruton's tyrosine kinase revealed by QM/MM calculations.
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Voice AT, Tresadern G, Twidale RM, van Vlijmen H, and Mulholland AJ
- Abstract
Ibrutinib is the first covalent inhibitor of Bruton's tyrosine kinase (BTK) to be used in the treatment of B-cell cancers. Understanding the mechanism of covalent inhibition will aid in the design of safer and more selective covalent inhibitors that target BTK. The mechanism of covalent inhibition in BTK has been uncertain because there is no appropriate residue nearby that can act as a base to deprotonate the cysteine thiol prior to covalent bond formation. We investigate several mechanisms of covalent modification of C481 in BTK by ibrutinib using combined quantum mechanics/molecular mechanics (QM/MM) molecular dynamics reaction simulations. The lowest energy pathway involves direct proton transfer from C481 to the acrylamide warhead in ibrutinib, followed by covalent bond formation to form an enol intermediate. There is a subsequent rate-limiting keto-enol tautomerisation step (Δ G
‡ = 10.5 kcal mol-1 ) to reach the inactivated BTK/ibrutinib complex. Our results represent the first mechanistic study of BTK inactivation by ibrutinib to consider multiple mechanistic pathways. These findings should aid in the design of covalent drugs that target BTK and other similar targets., Competing Interests: There are no conflicts to declare., (This journal is © The Royal Society of Chemistry.)- Published
- 2021
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25. Assessment of the Fragment Docking Program SEED.
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Goossens K, Wroblowski B, Langini C, van Vlijmen H, Caflisch A, and De Winter H
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- Ligands, Protein Binding, Proteins metabolism
- Abstract
The fragment docking program solvation energy for exhaustive docking (SEED) is evaluated on 15 different protein targets, with a focus on enrichment and the hit rate. It is shown that SEED allows for consistent computational enrichment of fragment libraries, independent of the effective hit rate. Depending on the actual target protein, true positive rates ranging up to 27% are observed at a cutoff value corresponding to the experimental hit rate. The impact of variations in docking protocols and energy filters is discussed in detail. Remaining issues, limitations, and use cases of SEED are also discussed. Our results show that fragment library selection or enhancement for a particular target is likely to benefit from docking with SEED, suggesting that SEED is a useful resource for fragment screening campaigns. A workflow is presented for the use of the program in virtual screening, including filtering and postprocessing to optimize hit rates.
- Published
- 2020
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26. Application of the ESMACS Binding Free Energy Protocol to a Multi-Binding Site Lactate Dehydogenase A Ligand Dataset.
- Author
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Wright DW, Husseini F, Wan S, Meyer C, van Vlijmen H, Tresadern G, and Coveney PV
- Abstract
Over the past two decades, the use of fragment-based lead generation has become a common, mature approach to identify tractable starting points in chemical space for the drug discovery process. This approach naturally involves the study of the binding properties of highly heterogeneous ligands. Such datasets challenge computational techniques to provide comparable binding free energy estimates from different binding modes. The performance of a range of statistically robust ensemble-based binding free energy calculation protocols, called ESMACS (enhanced sampling of molecular dynamics with approximation of continuum solvent), is evaluated. Ligands designed to target two binding pockets in the lactate dehydogenase, a target protein, which vary in size, charge, and binding mode, are studied. When compared to experimental results, excellent statistical rankings are obtained across this highly diverse set of ligands. In addition, three approaches to account for entropic contributions are investigated: 1) normal mode analysis, 2) weighted solvent accessible surface area (WSAS), and 3) variational entropy. Normal mode analysis and WSAS correlate strongly with each other-although the latter is computationally far cheaper-but do not improve rankings. Variational entropy corrects exaggerated discrimination of ligands bound in different pockets but creates three outliers which reduce the quality of the overall ranking., Competing Interests: The authors declare no conflict of interest., (© 2019 The Authors. Published by WILEY‐VCH Verlag GmbH & Co. KGaA, Weinheim.)
- Published
- 2020
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27. Accuracy and Precision of Alchemical Relative Free Energy Predictions with and without Replica-Exchange.
- Author
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Wan S, Tresadern G, Pérez-Benito L, van Vlijmen H, and Coveney PV
- Abstract
A systematic and statistically robust protocol is applied for the evaluation of free energy calculations with and without replica-exchange. The protocol is based on ensemble averaging to generate accurate assessments of the uncertainties in the predictions. Comparison is made between FEP+ and TIES-free energy perturbation and thermodynamic integration with enhanced sampling-the latter with and without the so-called "enhanced sampling" based on replica-exchange protocols. Standard TIES performs best for a reference set of targets and compounds; no benefits accrue from replica-exchange methods. Evaluation of FEP+ and TIES with REST-replica-exchange with solute tempering-reveals a systematic and significant underestimation of free energy differences in FEP+, which becomes increasingly large for long duration simulations, is confirmed by extensive analysis of previous publications, and raises a number of questions pertaining to the accuracy of the predictions with the REST technique not hitherto discussed., Competing Interests: The authors declare no conflict of interest., (© 2019 The Authors. Published by WILEY‐VCH Verlag GmbH & Co. KGaA, Weinheim.)
- Published
- 2020
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28. Large scale relative protein ligand binding affinities using non-equilibrium alchemy.
- Author
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Gapsys V, Pérez-Benito L, Aldeghi M, Seeliger D, van Vlijmen H, Tresadern G, and de Groot BL
- Abstract
Ligand binding affinity calculations based on molecular dynamics (MD) simulations and non-physical (alchemical) thermodynamic cycles have shown great promise for structure-based drug design. However, their broad uptake and impact is held back by the notoriously complex setup of the calculations. Only a few tools other than the free energy perturbation approach by Schrödinger Inc. (referred to as FEP+) currently enable end-to-end application. Here, we present for the first time an approach based on the open-source software pmx that allows to easily set up and run alchemical calculations for diverse sets of small molecules using the GROMACS MD engine. The method relies on theoretically rigorous non-equilibrium thermodynamic integration (TI) foundations, and its flexibility allows calculations with multiple force fields. In this study, results from the Amber and Charmm force fields were combined to yield a consensus outcome performing on par with the commercial FEP+ approach. A large dataset of 482 perturbations from 13 different protein-ligand datasets led to an average unsigned error (AUE) of 3.64 ± 0.14 kJ mol
-1 , equivalent to Schrödinger's FEP+ AUE of 3.66 ± 0.14 kJ mol-1 . For the first time, a setup is presented for overall high precision and high accuracy relative protein-ligand alchemical free energy calculations based on open-source software., Competing Interests: There are no conflicts to declare., (This journal is © The Royal Society of Chemistry.)- Published
- 2019
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29. Limitations of Ligand-Only Approaches for Predicting the Reactivity of Covalent Inhibitors.
- Author
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Voice A, Tresadern G, van Vlijmen H, and Mulholland A
- Subjects
- Acrylamides chemistry, Computational Chemistry, Glutathione chemistry, Models, Molecular, Molecular Structure, Biochemistry methods, Drug Design
- Abstract
Covalent inhibition has undergone a resurgence and is an important modern-day drug design and chemical biology approach. To avoid off-target interactions and to fine-tune reactivity, the ability to accurately predict reactivity is vitally important for the design and development of safer and more effective covalent drugs. Several ligand-only metrics have been proposed that promise quick and simple ways of determining covalent reactivity. In particular, we examine proton affinity and reaction energies calculated with the density functional B3LYP-D3/6-311+G**//B3LYP-D3/6-31G* method to assess the reactivity of a series of α,β-unsaturated carbonyl compounds that form covalent adducts with cysteine. We demonstrate that while these metrics correlate well with experiment for a diverse range of small reactive molecules these approaches fail for predicting the reactivity of drug-like compounds. We conclude that ligand-only metrics such as proton affinity and reaction energies do not capture determinants of reactivity in situ and fail to account for important factors such as conformation, solvation, and intermolecular interactions.
- Published
- 2019
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30. Application of ESMACS binding free energy protocols to diverse datasets: Bromodomain-containing protein 4.
- Author
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Wright DW, Wan S, Meyer C, van Vlijmen H, Tresadern G, and Coveney PV
- Subjects
- Protein Conformation, Thermodynamics, Transcription Factors chemistry, Water chemistry, Molecular Dynamics Simulation, Solvents chemistry, Transcription Factors metabolism
- Abstract
As the application of computational methods in drug discovery pipelines becomes more widespread it is increasingly important to understand how reproducible their results are and how sensitive they are to choices made in simulation setup and analysis. Here we use ensemble simulation protocols, termed ESMACS (enhanced sampling of molecular dynamics with approximation of continuum solvent), to investigate the sensitivity of the popular molecular mechanics Poisson-Boltzmann surface area (MMPBSA) methodology. Using the bromodomain-containing protein 4 (BRD4) system bound to a diverse set of ligands as our target, we show that robust rankings can be produced only through combining ensemble sampling with multiple trajectories and enhanced solvation via an explicit ligand hydration shell.
- Published
- 2019
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31. Predicting Activity Cliffs with Free-Energy Perturbation.
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Pérez-Benito L, Casajuana-Martin N, Jiménez-Rosés M, van Vlijmen H, and Tresadern G
- Subjects
- Databases, Protein, Humans, Models, Biological, Molecular Docking Simulation, Protein Binding, Proteins chemistry, Software, Structure-Activity Relationship, Computer-Aided Design, Drug Design, Proteins metabolism, Small Molecule Libraries chemistry, Small Molecule Libraries pharmacology, Thermodynamics
- Abstract
Activity cliffs (ACs) are an important type of structure-activity relationship in medicinal chemistry where small structural changes result in unexpectedly large differences in biological activity. Being able to predict these changes would have a profound impact on lead optimization of drug candidates. Free-energy perturbation is an ideal tool for predicting relative binding energy differences for small structural modifications, but its performance for ACs is unknown. Here, we show that FEP can on average predict ACs to within 1.39 kcal/mol of experiment (∼1 log unit of activity). We performed FEP calculations with two different software methods: Schrödinger-Desmond FEP+ and GROMACS implementations. There was qualitative agreement in the results from the two methods, and quantitatively the error for one data set was identical, 1.43 kcal/mol, but FEP+ performed better in the second, with errors of 1.17 versus 1.90 kcal/mol. The results have far-reaching implications, suggesting well-implemented FEP calculations can have a major impact on computational drug design.
- Published
- 2019
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32. Molecular Modeling of Drug-Transporter Interactions-An International Transporter Consortium Perspective.
- Author
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Schlessinger A, Welch MA, van Vlijmen H, Korzekwa K, Swaan PW, and Matsson P
- Subjects
- Animals, Drug Interactions, Drug-Related Side Effects and Adverse Reactions etiology, Drug-Related Side Effects and Adverse Reactions genetics, Drug-Related Side Effects and Adverse Reactions metabolism, Genotype, Humans, Ligands, Membrane Transport Modulators metabolism, Membrane Transport Proteins chemistry, Membrane Transport Proteins genetics, Pharmacogenomic Variants, Phenotype, Protein Conformation, Quantitative Structure-Activity Relationship, Risk Assessment, Membrane Transport Modulators pharmacology, Membrane Transport Proteins drug effects, Membrane Transport Proteins metabolism, Molecular Docking Simulation, Molecular Dynamics Simulation, Pharmaceutical Preparations metabolism, Pharmacokinetics
- Abstract
Membrane transporters play diverse roles in the pharmacokinetics and pharmacodynamics of small-molecule drugs. Understanding the mechanisms of drug-transporter interactions at the molecular level is, therefore, essential for the design of drugs with optimal therapeutic effects. This white paper examines recent progress, applications, and challenges of molecular modeling of membrane transporters, including modeling techniques that are centered on the structures of transporter ligands, and those focusing on the structures of the transporters. The goals of this article are to illustrate current best practices and future opportunities in using molecular modeling techniques to understand and predict transporter-mediated effects on drug disposition and efficacy.Membrane transporters from the solute carrier (SLC) and ATP-binding cassette (ABC) superfamilies regulate the cellular uptake, efflux, and homeostasis of many essential nutrients and significantly impact the pharmacokinetics of drugs; further, they may provide targets for novel therapeutics as well as facilitate prodrug approaches. Because of their often broad substrate selectivity they are also implicated in many undesirable and sometimes life-threatening drug-drug interactions (DDIs).
5,6 ., (© 2018 American Society for Clinical Pharmacology and Therapeutics.)- Published
- 2018
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33. Protocols for the Design of Kinase-focused Compound Libraries.
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Jacoby E, Wroblowski B, Buyck C, Neefs JM, Meyer C, Cummings MD, and van Vlijmen H
- Subjects
- Data Mining methods, Protein Kinase Inhibitors chemical synthesis, Protein Kinase Inhibitors pharmacology, Small Molecule Libraries chemical synthesis, Small Molecule Libraries pharmacology, Drug Discovery methods, Protein Kinase Inhibitors chemistry, Small Molecule Libraries chemistry, Structure-Activity Relationship
- Abstract
Protocols for the design of kinase-focused compound libraries are presented. Kinase-focused compound libraries can be differentiated based on the design goal. Depending on whether the library should be a discovery library specific for one particular kinase, a general discovery library for multiple distinct kinase projects, or even phenotypic screening, there exists today a variety of in silico methods to design candidate compound libraries. We address the following scenarios: 1) Datamining of SAR databases and kinase focused vendor catalogues; 2) Predictions and virtual screening; 3) Structure-based design of combinatorial kinase inhibitors; 4) Design of covalent kinase inhibitors; 5) Design of macrocyclic kinase inhibitors; and 6) Design of allosteric kinase inhibitors and activators., (© 2018 Wiley-VCH Verlag GmbH & Co. KGaA, Weinheim.)
- Published
- 2018
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34. Large-Scale Validation of Mixed-Solvent Simulations to Assess Hotspots at Protein-Protein Interaction Interfaces.
- Author
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Ghanakota P, van Vlijmen H, Sherman W, and Beuming T
- Subjects
- Interleukin-2 chemistry, Interleukin-2 metabolism, Protein Conformation, Molecular Dynamics Simulation, Protein Interaction Maps, Proteins chemistry, Proteins metabolism, Solvents chemistry
- Abstract
The ability to target protein-protein interactions (PPIs) with small molecule inhibitors offers great promise in expanding the druggable target space and addressing a broad range of untreated diseases. However, due to their nature and function of interacting with protein partners, PPI interfaces tend to extend over large surfaces without the typical pockets of enzymes and receptors. These features present unique challenges for small molecule inhibitor design. As such, determining whether a particular PPI of interest could be pursued with a small molecule discovery strategy requires an understanding of the characteristics of the PPI interface and whether it has hotspots that can be leveraged by small molecules to achieve desired potency. Here, we assess the ability of mixed-solvent molecular dynamic (MSMD) simulations to detect hotspots at PPI interfaces. MSMD simulations using three cosolvents (acetonitrile, isopropanol, and pyrimidine) were performed on a large test set of 21 PPI targets that have been experimentally validated by small molecule inhibitors. We compare MSMD, which includes explicit solvent and full protein flexibility, to a simpler approach that does not include dynamics or explicit solvent (SiteMap) and find that MSMD simulations reveal additional information about the characteristics of these targets and the ability for small molecules to inhibit the PPI interface. In the few cases were MSMD simulations did not detect hotspots, we explore the shortcomings of this technique and propose future improvements. Finally, using Interleukin-2 as an example, we highlight the advantage of the MSMD approach for detecting transient cryptic druggable pockets that exists at PPI interfaces.
- Published
- 2018
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35. Predicting Binding Free Energies of PDE2 Inhibitors. The Difficulties of Protein Conformation.
- Author
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Pérez-Benito L, Keränen H, van Vlijmen H, and Tresadern G
- Subjects
- Binding Sites, Biophysical Phenomena, Crystallography, X-Ray methods, Cyclic Nucleotide Phosphodiesterases, Type 2 chemistry, Cyclic Nucleotide Phosphodiesterases, Type 2 metabolism, Entropy, Molecular Dynamics Simulation, Protein Binding, Protein Conformation, Proteins, Structure-Activity Relationship, Thermodynamics, Cyclic Nucleotide Phosphodiesterases, Type 2 antagonists & inhibitors, Phosphodiesterase Inhibitors chemistry, Phosphodiesterase Inhibitors metabolism
- Abstract
A congeneric series of 21 phosphodiesterase 2 (PDE2) inhibitors are reported. Crystal structures show how the molecules can occupy a 'top-pocket' of the active site. Molecules with small substituents do not enter the pocket, a critical leucine (Leu770) is closed and water molecules are present. Large substituents enter the pocket, opening the Leu770 conformation and displacing the waters. We also report an X-ray structure revealing a new conformation of the PDE2 active site domain. The relative binding affinities of these compounds were studied with free energy perturbation (FEP) methods and it represents an attractive real-world test case. In general, the calculations could predict the energy of small-to-small, or large-to-large molecule perturbations. However, accurately capturing the transition from small-to-large proved challenging. Only when using alternative protein conformations did results improve. The new X-ray structure, along with a modelled dimer, conferred stability to the catalytic domain during the FEP molecular dynamics (MD) simulations, increasing the convergence and thereby improving the prediction of ΔΔG of binding for some small-to-large transitions. In summary, we found the most significant improvement in results when using different protein structures, and this data set is useful for future free energy validation studies.
- Published
- 2018
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36. Computational chemistry at Janssen.
- Author
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van Vlijmen H, Desjarlais RL, and Mirzadegan T
- Subjects
- Chemistry, Pharmaceutical, Computational Biology, Drug Design, Research, Software, Computer-Aided Design, Drug Discovery methods, Drug Industry methods, Models, Molecular
- Abstract
Computer-aided drug discovery activities at Janssen are carried out by scientists in the Computational Chemistry group of the Discovery Sciences organization. This perspective gives an overview of the organizational and operational structure, the science, internal and external collaborations, and the impact of the group on Drug Discovery at Janssen.
- Published
- 2017
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37. Collaborating to improve the use of free-energy and other quantitative methods in drug discovery.
- Author
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Sherborne B, Shanmugasundaram V, Cheng AC, Christ CD, DesJarlais RL, Duca JS, Lewis RA, Loughney DA, Manas ES, McGaughey GB, Peishoff CE, and van Vlijmen H
- Subjects
- Drug Design, Drug Industry, Humans, Molecular Structure, Software, Structure-Activity Relationship, Thermodynamics, Drug Discovery methods, Pharmaceutical Preparations chemistry
- Abstract
In May and August, 2016, several pharmaceutical companies convened to discuss and compare experiences with Free Energy Perturbation (FEP). This unusual synchronization of interest was prompted by Schrödinger's FEP+ implementation and offered the opportunity to share fresh studies with FEP and enable broader discussions on the topic. This article summarizes key conclusions of the meetings, including a path forward of actions for this group to aid the accelerated evaluation, application and development of free energy and related quantitative, structure-based design methods.
- Published
- 2016
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38. The ELF Honest Data Broker: informatics enabling public-private collaboration in a precompetitive arena.
- Author
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Paillard G, Cochrane P, Jones PS, van Hoorn WP, Caracoti A, van Vlijmen H, and Pannifer AD
- Subjects
- Intellectual Property, Research Personnel, Small Molecule Libraries, Cooperative Behavior, Drug Discovery methods, Drug Industry, Informatics
- Abstract
New precompetitive ways of working in the pharmaceutical industry are driving the development of new informatics systems to enable their execution and management. The European Lead Factory (ELF) is a precompetitive, 30-partner collaboration between academic groups, small-medium enterprises and pharmaceutical companies created to discover small molecule hits against novel biological targets. A unique HTS screening and triage workflow has been developed to balance the intellectual property and scientific requirements of all the partners. Here, we describe the ELF Honest Data Broker, a cloud-based informatics system providing the scientific triage tools, fine-grained permissions and management tools required to implement the workflow., (Copyright © 2015 The Authors. Published by Elsevier Ltd.. All rights reserved.)
- Published
- 2016
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39. QQ-SNV: single nucleotide variant detection at low frequency by comparing the quality quantiles.
- Author
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Van der Borght K, Thys K, Wetzels Y, Clement L, Verbist B, Reumers J, van Vlijmen H, and Aerssens J
- Subjects
- Algorithms, Cluster Analysis, Computer Simulation, Genome, Viral, HIV Infections virology, Hepatitis C virology, Humans, Plasmids genetics, Regression Analysis, HIV Infections genetics, HIV-1 genetics, Hepacivirus genetics, Hepatitis C genetics, High-Throughput Nucleotide Sequencing methods, Polymorphism, Single Nucleotide genetics, Software
- Abstract
Background: Next generation sequencing enables studying heterogeneous populations of viral infections. When the sequencing is done at high coverage depth ("deep sequencing"), low frequency variants can be detected. Here we present QQ-SNV (http://sourceforge.net/projects/qqsnv), a logistic regression classifier model developed for the Illumina sequencing platforms that uses the quantiles of the quality scores, to distinguish true single nucleotide variants from sequencing errors based on the estimated SNV probability. To train the model, we created a dataset of an in silico mixture of five HIV-1 plasmids. Testing of our method in comparison to the existing methods LoFreq, ShoRAH, and V-Phaser 2 was performed on two HIV and four HCV plasmid mixture datasets and one influenza H1N1 clinical dataset., Results: For default application of QQ-SNV, variants were called using a SNV probability cutoff of 0.5 (QQ-SNV(D)). To improve the sensitivity we used a SNV probability cutoff of 0.0001 (QQ-SNV(HS)). To also increase specificity, SNVs called were overruled when their frequency was below the 80(th) percentile calculated on the distribution of error frequencies (QQ-SNV(HS-P80)). When comparing QQ-SNV versus the other methods on the plasmid mixture test sets, QQ-SNV(D) performed similarly to the existing approaches. QQ-SNV(HS) was more sensitive on all test sets but with more false positives. QQ-SNV(HS-P80) was found to be the most accurate method over all test sets by balancing sensitivity and specificity. When applied to a paired-end HCV sequencing study, with lowest spiked-in true frequency of 0.5%, QQ-SNV(HS-P80) revealed a sensitivity of 100% (vs. 40-60% for the existing methods) and a specificity of 100% (vs. 98.0-99.7% for the existing methods). In addition, QQ-SNV required the least overall computation time to process the test sets. Finally, when testing on a clinical sample, four putative true variants with frequency below 0.5% were consistently detected by QQ-SNV(HS-P80) from different generations of Illumina sequencers., Conclusions: We developed and successfully evaluated a novel method, called QQ-SNV, for highly efficient single nucleotide variant calling on Illumina deep sequencing virology data.
- Published
- 2015
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40. Extending kinome coverage by analysis of kinase inhibitor broad profiling data.
- Author
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Jacoby E, Tresadern G, Bembenek S, Wroblowski B, Buyck C, Neefs JM, Rassokhin D, Poncelet A, Hunt J, and van Vlijmen H
- Subjects
- Databases, Protein, High-Throughput Screening Assays, Humans, Molecular Structure, Molecular Targeted Therapy, Protein Kinase Inhibitors chemistry, Protein Kinases genetics, Signal Transduction drug effects, Small Molecule Libraries, Structure-Activity Relationship, Workflow, Drug Discovery methods, Protein Kinase Inhibitors pharmacology, Protein Kinases metabolism, Proteomics methods
- Abstract
The explored kinome was extended with broad profiling using the DiscoveRx and Millipore assay panels. The analysis of the profiling of 3368 selected inhibitors on 456 kinases in the DiscoveRx format delivered several insights. First, the coverage depended on the threshold of the selectivity parameter. Second, the relation between hit confirmation rates and inhibitor selectivity showed unexpectedly that higher selectivity can increase the likelihood of false positives. Third, comparing the coverage of a focused to that of a random library showed that the design based on a maximum number of scaffolds was superior to a limited number of scaffolds. Therefore, selective compounds can be used in target validation, enable the jumpstarting of new kinase drug discovery projects, and chart new biological space via phenotypic screening., (Copyright © 2015 Elsevier Ltd. All rights reserved.)
- Published
- 2015
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- View/download PDF
41. Multi-model inference using mixed effects from a linear regression based genetic algorithm.
- Author
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Van der Borght K, Verbeke G, and van Vlijmen H
- Subjects
- Databases, Genetic, Drug Resistance, Viral genetics, HIV-1 drug effects, HIV-1 enzymology, HIV-1 genetics, Humans, Least-Squares Analysis, Models, Genetic, Mutation, Phenotype, Pyrrolidinones pharmacology, Raltegravir Potassium, Algorithms, Computational Biology methods, Linear Models
- Abstract
Background: Different high-dimensional regression methodologies exist for the selection of variables to predict a continuous variable. To improve the variable selection in case clustered observations are present in the training data, an extension towards mixed-effects modeling (MM) is requested, but may not always be straightforward to implement.In this article, we developed such a MM extension (GA-MM-MMI) for the automated variable selection by a linear regression based genetic algorithm (GA) using multi-model inference (MMI). We exemplify our approach by training a linear regression model for prediction of resistance to the integrase inhibitor Raltegravir (RAL) on a genotype-phenotype database, with many integrase mutations as candidate covariates. The genotype-phenotype pairs in this database were derived from a limited number of subjects, with presence of multiple data points from the same subject, and with an intra-class correlation of 0.92., Results: In generation of the RAL model, we took computational efficiency into account by optimizing the GA parameters one by one, and by using tournament selection. To derive the main GA parameters we used 3 times 5-fold cross-validation. The number of integrase mutations to be used as covariates in the mixed effects models was 25 (chrom.size). A GA solution was found when R2MM > 0.95 (goal.fitness). We tested three different MMI approaches to combine the results of 100 GA solutions into one GA-MM-MMI model. When evaluating the GA-MM-MMI performance on two unseen data sets, a more parsimonious and interpretable model was found (GA-MM-MMI TOP18: mixed-effects model containing the 18 most prevalent mutations in the GA solutions, refitted on the training data) with better predictive accuracy (R2) in comparison to GA-ordinary least squares (GA-OLS) and Least Absolute Shrinkage and Selection Operator (LASSO)., Conclusions: We have demonstrated improved performance when using GA-MM-MMI for selection of mutations on a genotype-phenotype data set. As we largely automated setting the GA parameters, the method should be applicable on similar datasets with clustered observations.
- Published
- 2014
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42. Structure-based site of metabolism prediction for cytochrome P450 2D6.
- Author
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Moors SL, Vos AM, Cummings MD, Van Vlijmen H, and Ceulemans A
- Subjects
- Binding Sites, Catalytic Domain, Heme chemistry, Heme metabolism, Humans, Molecular Structure, Protein Binding, Protein Conformation, Substrate Specificity, Cytochrome P-450 CYP2D6 chemistry, Cytochrome P-450 CYP2D6 metabolism, Models, Molecular
- Abstract
Realistic representation of protein flexibility in biomolecular simulations remains an unsolved fundamental problem and is an active area of research. The high flexibility of the cytochrome P450 2D6 (CYP2D6) active site represents a challenge for accurate prediction of the preferred binding mode and site of metabolism (SOM) for compounds metabolized by this important enzyme. To account for this flexibility, we generated a large ensemble of unbiased CYP2D6 conformations, to which small molecule substrates were docked to predict their experimentally observed SOM. SOM predictivity was investigated as a function of the number of protein structures, the scoring function, the SOM-heme cutoff distance used to distinguish metabolic sites, and intrinsic reactivity. Good SOM predictions for CYP2D6 require information from the protein. A critical parameter is the distance between the heme iron and the candidate site of metabolism. The best predictions were achieved with cutoff distances consistent with the chemistry relevant to CYP2D6 metabolism. Combination of the new ensemble-based docking method with estimated intrinsic reactivities of substrate sites considerably improved the predictivity of the model. Testing on an independent set of substrates yielded area under curve values as high as 0.93, validating our new approach.
- Published
- 2011
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43. Binding of a potent small-molecule inhibitor of six-helix bundle formation requires interactions with both heptad-repeats of the RSV fusion protein.
- Author
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Roymans D, De Bondt HL, Arnoult E, Geluykens P, Gevers T, Van Ginderen M, Verheyen N, Kim H, Willebrords R, Bonfanti JF, Bruinzeel W, Cummings MD, van Vlijmen H, and Andries K
- Subjects
- Amino Acid Sequence, Antiviral Agents chemistry, Antiviral Agents pharmacology, Benzimidazoles chemistry, Benzimidazoles pharmacology, Cell Fusion, Crystallography, X-Ray, HeLa Cells, Humans, Membrane Fusion physiology, Models, Molecular, Molecular Sequence Data, Molecular Structure, Protein Structure, Secondary, Pyridines chemistry, Pyridines pharmacology, Repetitive Sequences, Amino Acid, Respiratory Syncytial Virus, Human chemistry, Sequence Alignment, Structure-Activity Relationship, Viral Fusion Proteins antagonists & inhibitors, Viral Fusion Proteins genetics, Antiviral Agents metabolism, Benzimidazoles metabolism, Pyridines metabolism, Respiratory Syncytial Virus, Human drug effects, Respiratory Syncytial Virus, Human metabolism, Viral Fusion Proteins chemistry, Viral Fusion Proteins metabolism
- Abstract
Six-helix bundle (6HB) formation is an essential step for many viruses that rely on a class I fusion protein to enter a target cell and initiate replication. Because the binding modes of small molecule inhibitors of 6HB formation are largely unknown, precisely how they disrupt 6HB formation remains unclear, and structure-based design of improved inhibitors is thus seriously hampered. Here we present the high resolution crystal structure of TMC353121, a potent inhibitor of respiratory syncytial virus (RSV), bound at a hydrophobic pocket of the 6HB formed by amino acid residues from both HR1 and HR2 heptad-repeats. Binding of TMC353121 stabilizes the interaction of HR1 and HR2 in an alternate conformation of the 6HB, in which direct binding interactions are formed between TMC353121 and both HR1 and HR2. Rather than completely preventing 6HB formation, our data indicate that TMC353121 inhibits fusion by causing a local disturbance of the natural 6HB conformation.
- Published
- 2010
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44. Advantages of predicted phenotypes and statistical learning models in inferring virological response to antiretroviral therapy from HIV genotype.
- Author
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Altmann A, Sing T, Vermeiren H, Winters B, Van Craenenbroeck E, Van der Borght K, Rhee SY, Shafer RW, Schülter E, Kaiser R, Peres Y, Sönnerborg A, Fessel WJ, Incardona F, Zazzi M, Bacheler L, Van Vlijmen H, and Lengauer T
- Subjects
- Algorithms, Computer Simulation, Drug Therapy, Combination, Humans, Models, Biological, Predictive Value of Tests, Sequence Analysis, Anti-Retroviral Agents therapeutic use, HIV drug effects, HIV genetics, HIV Infections drug therapy, HIV Infections virology, Models, Statistical
- Abstract
Background: Inferring response to antiretroviral therapy from the viral genotype alone is challenging. The utility of an intermediate step of predicting in vitro drug susceptibility is currently controversial. Here, we provide a retrospective comparison of approaches using either genotype or predicted phenotypes alone, or in combination., Methods: Treatment change episodes were extracted from two large databases from the USA (Stanford-California) and Europe (EuResistDB) comprising data from 6,706 and 13,811 patients, respectively. Response to antiretroviral treatment was dichotomized according to two definitions. Using the viral sequence and the treatment regimen as input, three expert algorithms (ANRS, Rega and HIVdb) were used to generate genotype-based encodings and VircoTYPE() 4.0 (Virco BVBA, Mechelen, Belgium) was used to generate a predicted -phenotype-based encoding. Single drug classifications were combined into a treatment score via simple summation and statistical learning using random forests. Classification performance was studied on Stanford-California data using cross-validation and, in addition, on the independent EuResistDB data., Results: In all experiments, predicted phenotype was among the most sensitive approaches. Combining single drug classifications by statistical learning was significantly superior to unweighted summation (P<2.2x10(-16)). Classification performance could be increased further by combining predicted phenotypes and expert encodings but not by combinations of expert encodings alone. These results were confirmed on an independent test set comprising data solely from EuResistDB., Conclusions: This study demonstrates consistent performance advantages in utilizing predicted phenotype in most scenarios over methods based on genotype alone in inferring virological response. Moreover, all approaches under study benefit significantly from statistical learning for merging single drug classifications into treatment scores.
- Published
- 2009
45. Structure-activity relationship of ortho- and meta-phenol based LFA-1 ICAM inhibitors.
- Author
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Lin EY, Guckian KM, Silvian L, Chin D, Boriack-Sjodin PA, van Vlijmen H, Friedman JE, and Scott DM
- Subjects
- Animals, Combinatorial Chemistry Techniques, Crystallography, X-Ray, Drug Design, Male, Molecular Conformation, Phenols chemistry, Phenols pharmacology, Rats, Stereoisomerism, Structure-Activity Relationship, Tyrosine chemistry, Intercellular Adhesion Molecule-1 drug effects, Lymphocyte Function-Associated Antigen-1 drug effects, Phenols chemical synthesis
- Abstract
LFA-1 ICAM inhibitors based on ortho- and meta-phenol templates were designed and synthesized by Mitsunobu chemistry. The selection of targets was guided by X-ray co-crystal data, and led to compounds which showed an up to 30-fold increase in potency over reference compound 1 in the LFA-1/ICAM1-Ig assay. The most active compound exploited a new hydrogen bond to the I-domain and exhibited subnanomolar potency.
- Published
- 2008
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46. Structure activity relationships of monocyte chemoattractant proteins in complex with a blocking antibody.
- Author
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Reid C, Rushe M, Jarpe M, van Vlijmen H, Dolinski B, Qian F, Cachero TG, Cuervo H, Yanachkova M, Nwankwo C, Wang X, Etienne N, Garber E, Bailly V, de Fougerolles A, and Boriack-Sjodin PA
- Subjects
- Amino Acid Sequence, Animals, Antibodies, Blocking immunology, Binding Sites, Chemokine CCL2 chemistry, Chemokine CCL2 pharmacology, Chemokine CCL7, Chemokine CCL8, Cytokines metabolism, Humans, Immunoglobulin Fab Fragments immunology, Inflammation drug therapy, Mice, Models, Molecular, Molecular Sequence Data, Monocyte Chemoattractant Proteins chemistry, Mutation, Receptors, CCR2, Receptors, Chemokine antagonists & inhibitors, Receptors, Chemokine chemistry, Structure-Activity Relationship, Wounds and Injuries drug therapy, Antibodies, Blocking pharmacology, Cytokines pharmacology, Immunoglobulin Fab Fragments pharmacology, Monocyte Chemoattractant Proteins pharmacology, Receptors, Chemokine drug effects
- Abstract
Monocyte chemoattractant proteins (MCPs) are cytokines that direct immune cells bearing appropriate receptors to sites of inflammation or injury and are therefore attractive therapeutic targets for inhibitory molecules. 11K2 is a blocking mouse monoclonal antibody active against several human and murine MCPs. A 2.5 A structure of the Fab fragment of this antibody in complex with human MCP-1 has been solved. The Fab blocks CCR2 receptor binding to MCP-1 through an adjacent but distinct binding site. The orientation of the Fab indicates that a single MCP-1 dimer will bind two 11K2 antibodies. Several key residues on the antibody and on human MCPs were predicted to be involved in antibody selectivity. Mutational analysis of these residues confirms their involvement in the antibody-chemokine interaction. In addition to mutations that decreased or disrupted binding, one antibody mutation resulted in a 70-fold increase in affinity for human MCP-2. A key residue missing in human MCP-3, a chemokine not recognized by the antibody, was identified and engineering the preferred residue into the chemokine conferred binding to the antibody.
- Published
- 2006
- Full Text
- View/download PDF
47. Affinity enhancement of an in vivo matured therapeutic antibody using structure-based computational design.
- Author
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Clark LA, Boriack-Sjodin PA, Eldredge J, Fitch C, Friedman B, Hanf KJ, Jarpe M, Liparoto SF, Li Y, Lugovskoy A, Miller S, Rushe M, Sherman W, Simon K, and Van Vlijmen H
- Subjects
- Amino Acid Substitution, Antigen-Antibody Complex chemistry, Crystallography, X-Ray, Immunoglobulins, Integrin alpha1beta1 immunology, Models, Molecular, Structure-Activity Relationship, Antibodies therapeutic use, Antibody Affinity, Binding Sites, Antibody, Computer-Aided Design, Drug Design
- Abstract
Improving the affinity of a high-affinity protein-protein interaction is a challenging problem that has practical applications in the development of therapeutic biomolecules. We used a combination of structure-based computational methods to optimize the binding affinity of an antibody fragment to the I-domain of the integrin VLA1. Despite the already high affinity of the antibody (Kd approximately 7 nM) and the moderate resolution (2.8 A) of the starting crystal structure, the affinity was increased by an order of magnitude primarily through a decrease in the dissociation rate. We determined the crystal structure of a high-affinity quadruple mutant complex at 2.2 A. The structure shows that the design makes the predicted contacts. Structural evidence and mutagenesis experiments that probe a hydrogen bond network illustrate the importance of satisfying hydrogen bonding requirements while seeking higher-affinity mutations. The large and diverse set of interface mutations allowed refinement of the mutant binding affinity prediction protocol and improvement of the single-mutant success rate. Our results indicate that structure-based computational design can be successfully applied to further improve the binding of high-affinity antibodies.
- Published
- 2006
- Full Text
- View/download PDF
48. Novel bicyclic piperazine derivatives of triazolotriazine and triazolopyrimidines as highly potent and selective adenosine A2A receptor antagonists.
- Author
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Peng H, Kumaravel G, Yao G, Sha L, Wang J, Van Vlijmen H, Bohnert T, Huang C, Vu CB, Ensinger CL, Chang H, Engber TM, Whalley ET, and Petter RC
- Subjects
- Administration, Oral, Animals, Catalepsy drug therapy, Disease Models, Animal, Drug Stability, In Vitro Techniques, Male, Mice, Microsomes, Liver metabolism, Molecular Structure, Parkinson Disease drug therapy, Piperazines chemistry, Piperazines pharmacology, Pyrimidines chemistry, Pyrimidines pharmacology, Radioligand Assay, Rats, Rats, Sprague-Dawley, Stereoisomerism, Structure-Activity Relationship, Triazines chemistry, Triazines pharmacology, Triazoles chemistry, Triazoles pharmacology, Adenosine A2 Receptor Antagonists, Piperazines chemical synthesis, Pyrimidines chemical synthesis, Triazines chemical synthesis, Triazoles chemical synthesis
- Abstract
A series of bicyclic piperazine derivatives of triazolotriazine and triazolopyrimidines was synthesized. Some of these analogues show high affinity and excellent selectivity for adenosine A(2a) receptor versus the adenosine A(1) receptor. Structure-activity-relationship (SAR) studies based on octahydropyrrolo[1,2-a]pyrazine and octahydropyrido[1,2-a]pyrazine with various capping groups are reported. Among these analogues, the most potent and selective A(2a) antagonist 26 h has a K(i) value of 0.2 nM and is 16 500-fold selective with respect to the A(1) receptor. Among a number of compounds tested, compounds 21a and 21c exhibited significantly improved metabolic stability. Compounds 21a, 21c, and 18a showed good oral efficacy in rodent catalepsy models of Parkinson's disease.
- Published
- 2004
- Full Text
- View/download PDF
49. Mutations of the anti-mullerian hormone gene in patients with persistent mullerian duct syndrome: biosynthesis, secretion, and processing of the abnormal proteins and analysis using a three-dimensional model.
- Author
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Belville C, Van Vlijmen H, Ehrenfels C, Pepinsky B, Rezaie AR, Picard JY, Josso N, di Clemente N, and Cate RL
- Subjects
- Amino Acid Sequence, Animals, Anti-Mullerian Hormone, COS Cells, Cricetinae, Cysteine genetics, Glycosylation, Humans, Models, Molecular, Molecular Sequence Data, Protein Conformation, Protein Folding, Protein Processing, Post-Translational, Protein Structure, Tertiary, Disorders of Sex Development genetics, Glycoproteins chemistry, Glycoproteins genetics, Glycoproteins metabolism, Mutation, Testicular Hormones chemistry, Testicular Hormones genetics, Testicular Hormones metabolism
- Abstract
Anti-Müllerian hormone (AMH), a TGF-beta family member, determines whether an individual develops a uterus and Fallopian tubes. Mutations in the AMH gene lead to persistent Müllerian duct syndrome in males. The wild-type human AMH protein is synthesized as a disulfide-linked dimer of two identical 70-kDa polypeptides, which undergoes proteolytic processing to generate a 110-kDa N-terminal dimer and a bioactive 25-kDa TGF-beta-like C-terminal dimer. We have studied the biosynthesis and secretion of wild-type AMH and of seven persistent Müllerian duct syndrome proteins, containing mutations in either the N- or C-terminal domain. Mutant proteins lacking the C-terminal domain are secreted more rapidly than full-length AMH, whereas single amino acid changes in both domains can have profound effects on protein stability and folding. The addition of a cysteine in an N-terminal domain mutant, R194C, prevents proper folding, whereas the elimination of the cysteine involved in forming the interchain disulfide bond, in a C-terminal domain mutant, C525Y, leads to a truncation at the C terminus. A molecular model of the AMH C-terminal domain provides insights into how some mutations could affect biosynthesis and function.
- Published
- 2004
- Full Text
- View/download PDF
50. Identification of a new murine tumor necrosis factor receptor locus that contains two novel murine receptors for tumor necrosis factor-related apoptosis-inducing ligand (TRAIL).
- Author
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Schneider P, Olson D, Tardivel A, Browning B, Lugovskoy A, Gong D, Dobles M, Hertig S, Hofmann K, Van Vlijmen H, Hsu YM, Burkly LC, Tschopp J, and Zheng TS
- Subjects
- Amino Acid Sequence, Animals, Apoptosis Regulatory Proteins, Cell Line, Chromosome Mapping, Evolution, Molecular, Humans, Membrane Glycoproteins metabolism, Mice, Models, Molecular, Molecular Sequence Data, Receptors, Tumor Necrosis Factor metabolism, Sequence Analysis, TNF-Related Apoptosis-Inducing Ligand, Tumor Necrosis Factor-alpha metabolism, Membrane Glycoproteins genetics, Receptors, Tumor Necrosis Factor genetics, Tumor Necrosis Factor-alpha genetics
- Abstract
Tumor necrosis factor (TNF) ligand and receptor superfamily members play critical roles in diverse developmental and pathological settings. In search for novel TNF superfamily members, we identified a murine chromosomal locus that contains three new TNF receptor-related genes. Sequence alignments suggest that the ligand binding regions of these murine TNF receptor homologues, mTNFRH1, -2 and -3, are most homologous to those of the tumor necrosis factor-related apoptosis-inducing ligand (TRAIL) receptors. By using a number of in vitro ligand-receptor binding assays, we demonstrate that mTNFRH1 and -2, but not mTNFRH3, bind murine TRAIL, suggesting that they are indeed TRAIL receptors. This notion is further supported by our demonstration that both mTNFRH1:Fc and mTNFRH2:Fc fusion proteins inhibited mTRAIL-induced apoptosis of Jurkat cells. Unlike the only other known murine TRAIL receptor mTRAILR2, however, neither mTNFRH2 nor mTNFRH3 has a cytoplasmic region containing the well characterized death domain motif. Coupled with our observation that overexpression of mTNFRH1 and -2 in 293T cells neither induces apoptosis nor triggers NFkappaB activation, we propose that the mTnfrh1 and mTnfrh2 genes encode the first described murine decoy receptors for TRAIL, and we renamed them mDcTrailr1 and -r2, respectively. Interestingly, the overall sequence structures of mDcTRAILR1 and -R2 are quite distinct from those of the known human decoy TRAIL receptors, suggesting that the presence of TRAIL decoy receptors represents a more recent evolutionary event.
- Published
- 2003
- Full Text
- View/download PDF
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