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1.
J Chem Inf Model ; 63(6): 1745-1755, 2023 03 27.
Article in English | MEDLINE | ID: mdl-36926886

ABSTRACT

Solute carriers (SLCs) are relatively underexplored compared to other prominent protein families such as kinases and G protein-coupled receptors. However, proteins from the SLC family play an essential role in various diseases. One such SLC is the high-affinity norepinephrine transporter (NET/SLC6A2). In contrast to most other SLCs, the NET has been relatively well studied. However, the chemical space of known ligands has a low chemical diversity, making it challenging to identify chemically novel ligands. Here, a computational screening pipeline was developed to find new NET inhibitors. The approach increases the chemical space to model for NETs using the chemical space of related proteins that were selected utilizing similarity networks. Prior proteochemometric models added data from related proteins, but here we use a data-driven approach to select the optimal proteins to add to the modeled data set. After optimizing the data set, the proteochemometric model was optimized using stepwise feature selection. The final model was created using a two-step approach combining several proteochemometric machine learning models through stacking. This model was applied to the extensive virtual compound database of Enamine, from which the top predicted 22,000 of the 600 million virtual compounds were clustered to end up with 46 chemically diverse candidates. A subselection of 32 candidates was synthesized and subsequently tested using an impedance-based assay. There were five hit compounds identified (hit rate 16%) with sub-micromolar inhibitory potencies toward NET, which are promising for follow-up experimental research. This study demonstrates a data-driven approach to diversify known chemical space to identify novel ligands and is to our knowledge the first to select this set based on the sequence similarity of related targets.


Subject(s)
Norepinephrine Plasma Membrane Transport Proteins , Norepinephrine Plasma Membrane Transport Proteins/antagonists & inhibitors , Norepinephrine Plasma Membrane Transport Proteins/genetics , Ligands , Phylogeny , Humans , Cell Line , Datasets as Topic , Protein Binding , Models, Biological
2.
J Chem Inf Model ; 62(24): 6323-6335, 2022 12 26.
Article in English | MEDLINE | ID: mdl-35274943

ABSTRACT

Integration of statistical learning methods with structure-based modeling approaches is a contemporary strategy to identify novel lead compounds in drug discovery. Hepatic organic anion transporting polypeptides (OATP1B1, OATP1B3, and OATP2B1) are classical off-targets, and it is well recognized that their ability to interfere with a wide range of chemically unrelated drugs, environmental chemicals, or food additives can lead to unwanted adverse effects like liver toxicity and drug-drug or drug-food interactions. Therefore, the identification of novel (tool) compounds for hepatic OATPs by virtual screening approaches and subsequent experimental validation is a major asset for elucidating structure-function relationships of (related) transporters: they enhance our understanding about molecular determinants and structural aspects of hepatic OATPs driving ligand binding and selectivity. In the present study, we performed a consensus virtual screening approach by using different types of machine learning models (proteochemometric models, conformal prediction models, and XGBoost models for hepatic OATPs), followed by molecular docking of preselected hits using previously established structural models for hepatic OATPs. Screening the diverse REAL drug-like set (Enamine) shows a comparable hit rate for OATP1B1 (36% actives) and OATP1B3 (32% actives), while the hit rate for OATP2B1 was even higher (66% actives). Percentage inhibition values for 44 selected compounds were determined using dedicated in vitro assays and guided the prioritization of several highly potent novel hepatic OATP inhibitors: six (strong) OATP2B1 inhibitors (IC50 values ranging from 0.04 to 6 µM), three OATP1B1 inhibitors (2.69 to 10 µM), and five OATP1B3 inhibitors (1.53 to 10 µM) were identified. Strikingly, two novel OATP2B1 inhibitors were uncovered (C7 and H5) which show high affinity (IC50 values: 40 nM and 390 nM) comparable to the recently described estrone-based inhibitor (IC50 = 41 nM). A molecularly detailed explanation for the observed differences in ligand binding to the three transporters is given by means of structural comparison of the detected binding sites and docking poses.


Subject(s)
Organic Anion Transporters , Organic Anion Transporters/metabolism , Liver-Specific Organic Anion Transporter 1/metabolism , Molecular Docking Simulation , Ligands , Solute Carrier Organic Anion Transporter Family Member 1B3/metabolism , Biological Transport/physiology , Liver/metabolism , Membrane Transport Proteins/metabolism , Peptides/metabolism , Drug Interactions
3.
Eur J Pharmacol ; 880: 173126, 2020 Aug 05.
Article in English | MEDLINE | ID: mdl-32348778

ABSTRACT

In cancer, G protein-coupled receptors (GPCRs) are involved in tumor progression and metastasis. In this study we particularly examined one GPCR, the adenosine A2B receptor. This receptor is activated by high concentrations of its endogenous ligand adenosine, which suppresses the immune response to fight tumor progression. A series of adenosine A2B receptor mutations were retrieved from the Cancer Genome Atlas harboring data from patient samples with different cancer types. The main goal of this work was to investigate the pharmacology of these mutant receptors using a 'single-GPCR-one-G protein' yeast assay technology. Concentration-growth curves were obtained with the full agonist NECA for the wild-type receptor and 15 mutants. Compared to wild-type receptor, the constitutive activity levels in mutant receptors F141L4.61, Y202C5.58 and L310P8.63 were high, while the potency and efficacy of NECA and BAY 60-6583 on Y202C5.58 was lower. A 33- and 26-fold higher constitutive activity on F141L4.61 and L310P8.63 was reduced to wild-type levels in response to the inverse agonist ZM241385. These constitutively active mutants may thus be tumor promoting. Mutant receptors F259S6.60 and Y113F34.53 showed a more than one log-unit decrease in potency. A complete loss of activation was observed in mutant receptors C29R1.54, W130C4.50 and P249L6.50. All mutations were characterized at the structural level, generating hypotheses of their roles on modulating the receptor conformational equilibrium. Taken together, this study is the first to investigate the nature of adenosine A2B receptor cancer mutations and may thus provide insights in mutant receptor function in cancer.


Subject(s)
Neoplasms/genetics , Receptor, Adenosine A2B/genetics , Adenosine A2 Receptor Agonists/pharmacology , Adenosine-5'-(N-ethylcarboxamide)/pharmacology , Aminopyridines/pharmacology , Computational Biology , Humans , Models, Molecular , Mutation , Receptor, Adenosine A2B/metabolism , Saccharomyces cerevisiae/genetics
4.
J Chem Inf Model ; 60(9): 4283-4295, 2020 09 28.
Article in English | MEDLINE | ID: mdl-32343143

ABSTRACT

Kinases are frequently studied in the context of anticancer drugs. Their involvement in cell responses, such as proliferation, differentiation, and apoptosis, makes them interesting subjects in multitarget drug design. In this study, a workflow is presented that models the bioactivity spectra for two panels of kinases: (1) inhibition of RET, BRAF, SRC, and S6K, while avoiding inhibition of MKNK1, TTK, ERK8, PDK1, and PAK3, and (2) inhibition of AURKA, PAK1, FGFR1, and LKB1, while avoiding inhibition of PAK3, TAK1, and PIK3CA. Both statistical and structure-based models were included, which were thoroughly benchmarked and optimized. A virtual screening was performed to test the workflow for one of the main targets, RET kinase. This resulted in 5 novel and chemically dissimilar RET inhibitors with remaining RET activity of <60% (at a concentration of 10 µM) and similarities with known RET inhibitors from 0.18 to 0.29 (Tanimoto, ECFP6). The four more potent inhibitors were assessed in a concentration range and proved to be modestly active with a pIC50 value of 5.1 for the most active compound. The experimental validation of inhibitors for RET strongly indicates that the multitarget workflow is able to detect novel inhibitors for kinases, and hence, this workflow can potentially be applied in polypharmacology modeling. We conclude that this approach can identify new chemical matter for existing targets. Moreover, this workflow can easily be applied to other targets as well.


Subject(s)
Antineoplastic Agents , Proto-Oncogene Proteins c-ret , Antineoplastic Agents/pharmacology , Drug Design , Polypharmacology , Protein Kinase Inhibitors/pharmacology
5.
Drug Discov Today Technol ; 32-33: 89-98, 2019 Dec.
Article in English | MEDLINE | ID: mdl-33386099

ABSTRACT

Proteochemometrics is a machine learning based modeling approach relying on a combination of ligand and protein descriptors. With ongoing developments in machine learning and increases in public data the technique is more frequently applied in early drug discovery, typically in ligand-target binding prediction. Common applications include improvements to single target quantitative structure-activity relationship models, protein selectivity and promiscuity modeling, and large-scale deep learning approaches. The increase in predictive power using proteochemometrics is observed in multi-target bioactivity modeling, opening the door to more extensive studies covering whole protein families. On top of that, with deep learning fueling more complex and larger scale models, proteochemometrics allows faster and higher quality computational models supporting the design, make, test cycle.


Subject(s)
Binding Sites , Drug Discovery , Models, Molecular , Proteins/pharmacokinetics , Humans , Ligands , Proteins/chemistry , Quantitative Structure-Activity Relationship
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