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1.
Comput Struct Biotechnol J ; 19: 3674-3681, 2021.
Article de Anglais | MEDLINE | ID: mdl-34285770

RÉSUMÉ

Mutations in leucine-rich repeat kinase 2 (LRRK2) are a frequent cause of autosomal dominant Parkinson's disease (PD) and have been associated with familial and sporadic PD. Reducing the kinase activity of LRRK2 is a promising therapeutic strategy since pathogenic mutations increase the kinase activity. Several small-molecule LRRK2 inhibitors are currently under investigation for the treatment of PD. However, drug discovery and development are always accompanied by high costs and a risk of late failure. The use of already approved drugs for a new indication, which is known as drug repositioning, can reduce the cost and risk. In this study, we applied a structure-based drug repositioning approach to identify new LRRK2 inhibitors that are already approved for a different indication. In a large-scale structure-based screening, we compared the protein-ligand interaction patterns of known LRRK2 inhibitors with protein-ligand complexes in the PDB. The screening yielded 6 drug repositioning candidates. Two of these candidates, Sunitinib and Crizotinib, demonstrated an inhibition potency (IC50) and binding affinity (Kd) in the nanomolar to micromolar range. While Sunitinib has already been known to inhibit LRRK2, Crizotinib is a novel LRRK2 binder. Our results underscore the potential of structure-based methods for drug discovery and development. In light of the recent breakthroughs in cryo-electron microscopy and structure prediction, we believe that structure-based approaches like ours will grow in importance.

2.
Nucleic Acids Res ; 49(W1): W530-W534, 2021 07 02.
Article de Anglais | MEDLINE | ID: mdl-33950214

RÉSUMÉ

With the growth of protein structure data, the analysis of molecular interactions between ligands and their target molecules is gaining importance. PLIP, the protein-ligand interaction profiler, detects and visualises these interactions and provides data in formats suitable for further processing. PLIP has proven very successful in applications ranging from the characterisation of docking experiments to the assessment of novel ligand-protein complexes. Besides ligand-protein interactions, interactions with DNA and RNA play a vital role in many applications, such as drugs targeting DNA or RNA-binding proteins. To date, over 7% of all 3D structures in the Protein Data Bank include DNA or RNA. Therefore, we extended PLIP to encompass these important molecules. We demonstrate the power of this extension with examples of a cancer drug binding to a DNA target, and an RNA-protein complex central to a neurological disease. PLIP is available online at https://plip-tool.biotec.tu-dresden.de and as open source code. So far, the engine has served over a million queries and the source code has been downloaded several thousand times.


Sujet(s)
ADN/composition chimique , Protéines de liaison à l'ARN/composition chimique , ARN/composition chimique , Logiciel , Algorithmes , Antinéoplasiques/composition chimique , Guanosine triphosphate/composition chimique , Ligands , Conformation d'acide nucléique , Phénazines/composition chimique , Conformation des protéines , RNA polymerase II/composition chimique , Éléments de réponse
3.
Int J Mol Sci ; 21(22)2020 Nov 20.
Article de Anglais | MEDLINE | ID: mdl-33233837

RÉSUMÉ

Chagas disease, caused by the parasite Trypanosoma cruzi, affects millions of people in South America. The current treatments are limited, have severe side effects, and are only partially effective. Drug repositioning, defined as finding new indications for already approved drugs, has the potential to provide new therapeutic options for Chagas. In this work, we conducted a structure-based drug repositioning approach with over 130,000 3D protein structures to identify drugs that bind therapeutic Chagas targets and thus represent potential new Chagas treatments. The screening yielded over 500 molecules as hits, out of which 38 drugs were prioritized following a rigorous filtering process. About half of the latter were already known to have trypanocidal activity, while the others are novel to Chagas disease. Three of the new drug candidates-ciprofloxacin, naproxen, and folic acid-showed a growth inhibitory activity in the micromolar range when tested ex vivo on T. cruzi trypomastigotes, validating the prediction. We show that our drug repositioning approach is able to pinpoint relevant drug candidates at a fraction of the time and cost of a conventional screening. Furthermore, our results demonstrate the power and potential of structure-based drug repositioning in the context of neglected tropical diseases where the pharmaceutical industry has little financial interest in the development of new drugs.


Sujet(s)
Maladie de Chagas/traitement médicamenteux , Ciprofloxacine , Repositionnement des médicaments , Acide folique , Naproxène , Trypanocides , Trypanosoma cruzi/effets des médicaments et des substances chimiques , Animaux , Lignée cellulaire , Ciprofloxacine/composition chimique , Ciprofloxacine/pharmacologie , Acide folique/composition chimique , Acide folique/pharmacologie , Souris , Naproxène/composition chimique , Naproxène/pharmacologie , Relation structure-activité , Trypanocides/composition chimique , Trypanocides/pharmacologie
4.
Sci Rep ; 10(1): 12647, 2020 07 28.
Article de Anglais | MEDLINE | ID: mdl-32724042

RÉSUMÉ

Storage and directed transfer of information is the key requirement for the development of life. Yet any information stored on our genes is useless without its correct interpretation. The genetic code defines the rule set to decode this information. Aminoacyl-tRNA synthetases are at the heart of this process. We extensively characterize how these enzymes distinguish all natural amino acids based on the computational analysis of crystallographic structure data. The results of this meta-analysis show that the correct read-out of genetic information is a delicate interplay between the composition of the binding site, non-covalent interactions, error correction mechanisms, and steric effects.


Sujet(s)
Acides aminés/métabolisme , Amino acyl-tRNA synthetases/métabolisme , Évolution biologique , Code génétique , Biosynthèse des protéines , ARN de transfert/métabolisme , Amino acyl-tRNA synthetases/génétique , Animaux , Archéobactéries , Bactéries , Humains , Méta-analyse comme sujet , ARN de transfert/génétique
5.
Int J Mol Sci ; 21(12)2020 Jun 16.
Article de Anglais | MEDLINE | ID: mdl-32560043

RÉSUMÉ

Chagas disease, caused by Trypanosoma cruzi (T. cruzi), affects nearly eight million people worldwide. There are currently only limited treatment options, which cause several side effects and have drug resistance. Thus, there is a great need for a novel, improved Chagas treatment. Bifunctional enzyme dihydrofolate reductase-thymidylate synthase (DHFR-TS) has emerged as a promising pharmacological target. Moreover, some human dihydrofolate reductase (HsDHFR) inhibitors such as trimetrexate also inhibit T. cruzi DHFR-TS (TcDHFR-TS). These compounds serve as a starting point and a reference in a screening campaign to search for new TcDHFR-TS inhibitors. In this paper, a novel virtual screening approach was developed that combines classical docking with protein-ligand interaction profiling to identify drug repositioning opportunities against T. cruzi infection. In this approach, some food and drug administration (FDA)-approved drugs that were predicted to bind with high affinity to TcDHFR-TS and whose predicted molecular interactions are conserved among known inhibitors were selected. Overall, ten putative TcDHFR-TS inhibitors were identified. These exhibited a similar interaction profile and a higher computed binding affinity, compared to trimetrexate. Nilotinib, glipizide, glyburide and gliquidone were tested on T. cruzi epimastigotes and showed growth inhibitory activity in the micromolar range. Therefore, these compounds could lead to the development of new treatment options for Chagas disease.


Sujet(s)
Maladie de Chagas/enzymologie , Antifoliques/pharmacologie , Trypanocides/pharmacologie , Maladie de Chagas/traitement médicamenteux , Simulation numérique , Repositionnement des médicaments , Antifoliques/composition chimique , Glipizide/composition chimique , Glipizide/pharmacologie , Glibenclamide/composition chimique , Glibenclamide/pharmacologie , Humains , Ligands , Simulation de docking moléculaire , Structure moléculaire , Pyrimidines/composition chimique , Pyrimidines/pharmacologie , Relation structure-activité , Sulfonylurées/composition chimique , Sulfonylurées/pharmacologie , Trypanocides/composition chimique , Trypanosoma cruzi/effets des médicaments et des substances chimiques
6.
PLoS One ; 15(5): e0233089, 2020.
Article de Anglais | MEDLINE | ID: mdl-32459810

RÉSUMÉ

Many drugs are promiscuous and bind to multiple targets. On the one hand, these targets may be linked to unwanted side effects, but on the other, they may achieve a combined desired effect (polypharmacology) or represent multiple diseases (drug repositioning). With the growth of 3D structures of drug-target complexes, it is today possible to study drug promiscuity at the structural level and to screen vast amounts of drug-target interactions to predict side effects, polypharmacological potential, and repositioning opportunities. Here, we pursue such an approach to identify drugs inactivating B-cells, whose dysregulation can function as a driver of autoimmune diseases. Screening over 500 kinases, we identified 22 candidate targets, whose knock out impeded the activation of B-cells. Among these 22 is the gene KDR, whose gene product VEGFR2 is a prominent cancer target with anti-VEGFR2 drugs on the market for over a decade. The main result of this paper is that structure-based drug repositioning for the identified kinase targets identified the cancer drug ibrutinib as micromolar VEGFR2 inhibitor with a very high therapeutic index in B-cell inactivation. These findings prove that ibrutinib is not only acting on the Bruton's tyrosine kinase BTK, against which it was designed. Instead, it may be a polypharmacological drug, which additionally targets angiogenesis via inhibition of VEGFR2. Therefore ibrutinib carries potential to treat other VEGFR2 associated disease. Structure-based drug repositioning explains ibrutinib's anti VEGFR2 action through the conservation of a specific pattern of interactions of the drug with BTK and VEGFR2. Overall, structure-based drug repositioning was able to predict these findings at a fraction of the time and cost of a conventional screen.


Sujet(s)
Repositionnement des médicaments/méthodes , Pyrazoles/composition chimique , Pyrazoles/pharmacologie , Pyrimidines/composition chimique , Pyrimidines/pharmacologie , Récepteur-2 au facteur croissance endothéliale vasculaire/antagonistes et inhibiteurs , Adénine/analogues et dérivés , Agammaglobulinaemia tyrosine kinase/antagonistes et inhibiteurs , Agammaglobulinaemia tyrosine kinase/métabolisme , Lymphocytes B/métabolisme , Humains , Cellules Jurkat , Pipéridines , Interférence par ARN , Transduction du signal/effets des médicaments et des substances chimiques , Suramine/composition chimique , Suramine/pharmacologie , Récepteur-2 au facteur croissance endothéliale vasculaire/métabolisme
7.
J Med Chem ; 63(16): 8667-8682, 2020 08 27.
Article de Anglais | MEDLINE | ID: mdl-32243158

RÉSUMÉ

Artificial intelligence and machine learning have demonstrated their potential role in predictive chemistry and synthetic planning of small molecules; there are at least a few reports of companies employing in silico synthetic planning into their overall approach to accessing target molecules. A data-driven synthesis planning program is one component being developed and evaluated by the Machine Learning for Pharmaceutical Discovery and Synthesis (MLPDS) consortium, comprising MIT and 13 chemical and pharmaceutical company members. Together, we wrote this perspective to share how we think predictive models can be integrated into medicinal chemistry synthesis workflows, how they are currently used within MLPDS member companies, and the outlook for this field.


Sujet(s)
Techniques de chimie synthétique/méthodes , Chimie pharmaceutique/méthodes , Apprentissage machine , Industrie chimique/méthodes , Découverte de médicament/méthodes , Modèles chimiques , Recherche pharmaceutique/méthodes
8.
Nucleic Acids Res ; 47(D1): D1236-D1244, 2019 01 08.
Article de Anglais | MEDLINE | ID: mdl-30239928

RÉSUMÉ

Lectins, and related receptors such as adhesins and toxins, are glycan-binding proteins from all origins that decipher the glycocode, i.e. the structural information encoded in the conformation of complex carbohydrates present on the surface of all cells. Lectins are still poorly classified and annotated, but since their functions are based on ligand recognition, their 3D-structures provide a solid foundation for characterization. UniLectin3D is a curated database that classifies lectins on origin and fold, with cross-links to literature, other databases in glycosciences and functional data such as known specificity. The database provides detailed information on lectins, their bound glycan ligands, and features their interactions using the Protein-Ligand Interaction Profiler (PLIP) server. Special care was devoted to the description of the bound glycan ligands with the use of simple graphical representation and numerical format for cross-linking to other databases in glycoscience. We conceived the design of the database architecture and the navigation tools to account for all organisms, as well as to search for oligosaccharide epitopes complexed within specified binding sites. UniLectin3D is accessible at https://www.unilectin.eu/unilectin3D.


Sujet(s)
Biologie informatique/méthodes , Bases de données de protéines , Conformation des protéines , Récepteurs de surface cellulaire/composition chimique , Sites de fixation , Humains , Internet , Lectines/composition chimique , Lectines/métabolisme , Ligands , Modèles moléculaires , Polyosides/composition chimique , Polyosides/métabolisme , Liaison aux protéines , Récepteurs de surface cellulaire/métabolisme
9.
PLoS Comput Biol ; 14(4): e1006101, 2018 04.
Article de Anglais | MEDLINE | ID: mdl-29659563

RÉSUMÉ

The origin of the machinery that realizes protein biosynthesis in all organisms is still unclear. One key component of this machinery are aminoacyl tRNA synthetases (aaRS), which ligate tRNAs to amino acids while consuming ATP. Sequence analyses revealed that these enzymes can be divided into two complementary classes. Both classes differ significantly on a sequence and structural level, feature different reaction mechanisms, and occur in diverse oligomerization states. The one unifying aspect of both classes is their function of binding ATP. We identified Backbone Brackets and Arginine Tweezers as most compact ATP binding motifs characteristic for each Class. Geometric analysis shows a structural rearrangement of the Backbone Brackets upon ATP binding, indicating a general mechanism of all Class I structures. Regarding the origin of aaRS, the Rodin-Ohno hypothesis states that the peculiar nature of the two aaRS classes is the result of their primordial forms, called Protozymes, being encoded on opposite strands of the same gene. Backbone Brackets and Arginine Tweezers were traced back to the proposed Protozymes and their more efficient successors, the Urzymes. Both structural motifs can be observed as pairs of residues in contemporary structures and it seems that the time of their addition, indicated by their placement in the ancient aaRS, coincides with the evolutionary trace of Proto- and Urzymes.


Sujet(s)
Amino acyl-tRNA synthetases/classification , Amino acyl-tRNA synthetases/métabolisme , Adénosine triphosphate/métabolisme , Séquence d'acides aminés , Amino acyl-tRNA synthetases/génétique , Arginine/composition chimique , Séquence nucléotidique , Domaine catalytique/génétique , Codon/génétique , Biologie informatique , Évolution moléculaire , Variation génétique , Humains , Ligands , Modèles moléculaires , Mutagenèse , Conformation des protéines , ARN de transfert/composition chimique , ARN de transfert/génétique , ARN de transfert/métabolisme
10.
PLoS Comput Biol ; 13(12): e1005898, 2017 12.
Article de Anglais | MEDLINE | ID: mdl-29244826

RÉSUMÉ

Over the past decades, quantitative methods linking theory and observation became increasingly important in many areas of life science. Subsequently, a large number of mathematical and computational models has been developed. The BioModels database alone lists more than 140,000 Systems Biology Markup Language (SBML) models. However, while the exchange within specific model classes has been supported by standardisation and database efforts, the generic application and especially the re-use of models is still limited by practical issues such as easy and straight forward model execution. MAGPIE, a Modeling and Analysis Generic Platform with Integrated Evaluation, closes this gap by providing a software platform for both, publishing and executing computational models without restrictions on the programming language, thereby combining a maximum on flexibility for programmers with easy handling for non-technical users. MAGPIE goes beyond classical SBML platforms by including all models, independent of the underlying programming language, ranging from simple script models to complex data integration and computations. We demonstrate the versatility of MAGPIE using four prototypic example cases. We also outline the potential of MAGPIE to improve transparency and reproducibility of computational models in life sciences. A demo server is available at magpie.imb.medizin.tu-dresden.de.


Sujet(s)
Disciplines des sciences biologiques/statistiques et données numériques , Modèles biologiques , Logiciel , Biologie informatique , Simulation numérique , Humains , Modèles statistiques , Langages de programmation , Reproductibilité des résultats , Biologie des systèmes
11.
Sci Rep ; 7(1): 11401, 2017 09 12.
Article de Anglais | MEDLINE | ID: mdl-28900272

RÉSUMÉ

Drug repositioning identifies new indications for known drugs. Here we report repositioning of the malaria drug amodiaquine as a potential anti-cancer agent. While most repositioning efforts emerge through serendipity, we have devised a computational approach, which exploits interaction patterns shared between compounds. As a test case, we took the anti-viral drug brivudine (BVDU), which also has anti-cancer activity, and defined ten interaction patterns using our tool PLIP. These patterns characterise BVDU's interaction with its target s. Using PLIP we performed an in silico screen of all structural data currently available and identified the FDA approved malaria drug amodiaquine as a promising repositioning candidate. We validated our prediction by showing that amodiaquine suppresses chemoresistance in a multiple myeloma cancer cell line by inhibiting the chaperone function of the cancer target Hsp27. This work proves that PLIP interaction patterns are viable tools for computational repositioning and can provide search query information from a given drug and its target to identify structurally unrelated candidates, including drugs approved by the FDA, with a known safety and pharmacology profile. This approach has the potential to reduce costs and risks in drug development by predicting novel indications for known drugs and drug candidates.


Sujet(s)
Amodiaquine/pharmacologie , Antipaludiques/pharmacologie , Antinéoplasiques/pharmacologie , Biologie informatique , Repositionnement des médicaments , Amodiaquine/composition chimique , Amodiaquine/usage thérapeutique , Antipaludiques/composition chimique , Antipaludiques/usage thérapeutique , Antinéoplasiques/composition chimique , Antinéoplasiques/usage thérapeutique , Lignée cellulaire tumorale , Biologie informatique/méthodes , Repositionnement des médicaments/méthodes , Protéines du choc thermique HSP27/antagonistes et inhibiteurs , Humains , Ligands , Modèles moléculaires , Conformation moléculaire , Liaison aux protéines , Reproductibilité des résultats , Relation structure-activité
12.
J Med Chem ; 59(24): 11069-11078, 2016 12 22.
Article de Anglais | MEDLINE | ID: mdl-27936766

RÉSUMÉ

Drug discovery is usually focused on a single protein target; in this process, existing compounds that bind to related proteins are often ignored. We describe ProBiS plugin, extension of our earlier ProBiS-ligands approach, which for a given protein structure allows prediction of its binding sites and, for each binding site, the ligands from similar binding sites in the Protein Data Bank. We developed a new database of precalculated binding site comparisons of about 290000 proteins to allow fast prediction of binding sites in existing proteins. The plugin enables advanced viewing of predicted binding sites, ligands' poses, and their interactions in three-dimensional graphics. Using the InhA query protein, an enoyl reductase enzyme in the Mycobacterium tuberculosis fatty acid biosynthesis pathway, we predicted its possible ligands and assessed their inhibitory activity experimentally. This resulted in three previously unrecognized inhibitors with novel scaffolds, demonstrating the plugin's utility in the early drug discovery process.


Sujet(s)
Protéines bactériennes/antagonistes et inhibiteurs , Découverte de médicament , Mycobacterium tuberculosis/enzymologie , Oxidoreductases/antagonistes et inhibiteurs , Protéines bactériennes/métabolisme , Sites de fixation/effets des médicaments et des substances chimiques , Relation dose-effet des médicaments , Acides gras/biosynthèse , Ligands , Modèles moléculaires , Structure moléculaire , Mycobacterium tuberculosis/métabolisme , Oxidoreductases/métabolisme , Relation structure-activité
13.
Curr Pharm Des ; 22(21): 3124-34, 2016.
Article de Anglais | MEDLINE | ID: mdl-26873186

RÉSUMÉ

BACKGROUND: Drug repositioning aims to identify novel indications for existing drugs. One approach to repositioning exploits shared binding sites between the drug targets and other proteins. Here, we review the principle and algorithms of such target hopping and illustrate them in Chagas disease, an in Latin America widely spread, but neglected disease. CONCLUSION: We demonstrate how target hopping recovers known treatments for Chagas disease and predicts novel drugs, such as the antiviral foscarnet, which we predict to target Farnesyl Pyrophosphate Synthase in Trypanosoma cruzi, the causative agent of Chagas disease.


Sujet(s)
Algorithmes , Maladie de Chagas/traitement médicamenteux , Repositionnement des médicaments , Trypanocides/pharmacologie , Trypanosoma cruzi/effets des médicaments et des substances chimiques , Maladie de Chagas/métabolisme , Humains , Modèles moléculaires , Polyisoprényl-phosphates/antagonistes et inhibiteurs , Polyisoprényl-phosphates/métabolisme , Sesquiterpènes/antagonistes et inhibiteurs , Sesquiterpènes/métabolisme , Trypanocides/composition chimique , Trypanosoma cruzi/enzymologie
14.
Nucleic Acids Res ; 43(W1): W443-7, 2015 Jul 01.
Article de Anglais | MEDLINE | ID: mdl-25873628

RÉSUMÉ

The characterization of interactions in protein-ligand complexes is essential for research in structural bioinformatics, drug discovery and biology. However, comprehensive tools are not freely available to the research community. Here, we present the protein-ligand interaction profiler (PLIP), a novel web service for fully automated detection and visualization of relevant non-covalent protein-ligand contacts in 3D structures, freely available at projects.biotec.tu-dresden.de/plip-web. The input is either a Protein Data Bank structure, a protein or ligand name, or a custom protein-ligand complex (e.g. from docking). In contrast to other tools, the rule-based PLIP algorithm does not require any structure preparation. It returns a list of detected interactions on single atom level, covering seven interaction types (hydrogen bonds, hydrophobic contacts, pi-stacking, pi-cation interactions, salt bridges, water bridges and halogen bonds). PLIP stands out by offering publication-ready images, PyMOL session files to generate custom images and parsable result files to facilitate successive data processing. The full python source code is available for download on the website. PLIP's command-line mode allows for high-throughput interaction profiling.


Sujet(s)
Simulation de docking moléculaire/méthodes , Conformation des protéines , Logiciel , Algorithmes , Antienzymes/composition chimique , Internet , Ligands , Protéines/composition chimique
15.
Prog Biophys Mol Biol ; 116(2-3): 174-86, 2014.
Article de Anglais | MEDLINE | ID: mdl-24923864

RÉSUMÉ

Detection of remote binding site similarity in proteins plays an important role for drug repositioning and off-target effect prediction. Various non-covalent interactions such as hydrogen bonds and van-der-Waals forces drive ligands' molecular recognition by binding sites in proteins. The increasing amount of available structures of protein-small molecule complexes enabled the development of comparative approaches. Several methods have been developed to characterize and compare protein-ligand interaction patterns. Usually implemented as fingerprints, these are mainly used for post processing docking scores and (off-)target prediction. In the latter application, interaction profiles detect similarities in the bound interactions of different ligands and thus identify essential interactions between a protein and its small molecule ligands. Interaction pattern similarity correlates with binding site similarity and is thus contributing to a higher precision in binding site similarity assessment of proteins with distinct global structure. This renders it valuable for existing drug repositioning approaches in structural bioinformatics. Current methods to characterize and compare structure-based interaction patterns - both for protein-small-molecule and protein-protein interactions - as well as their potential in target prediction will be reviewed in this article. The question of how the set of interaction types, flexibility or water-mediated interactions, influence the comparison of interaction patterns will be discussed. Due to the wealth of protein-ligand structures available today, predicted targets can be ranked by comparing their ligand interaction pattern to patterns of the known target. Such knowledge-based methods offer high precision in comparison to methods comparing whole binding sites based on shape and amino acid physicochemical similarity.


Sujet(s)
Polypharmacologie , Protéines/composition chimique , Protéines/métabolisme , Sites de fixation , Ligands , Liaison aux protéines , Bibliothèques de petites molécules/métabolisme
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