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1.
J Chem Inf Model ; 58(11): 2224-2238, 2018 11 26.
Article in English | MEDLINE | ID: mdl-30351056

ABSTRACT

Although the salt bridge is the strongest among all known noncovalent molecular interactions, no comprehensive studies have been conducted to date to examine its role and significance in drug design. Thus, a systematic study of the salt bridge in biological systems is reported herein, with a broad analysis of publicly available data from Protein Data Bank, DrugBank, ChEMBL, and GPCRdb. The results revealed the distance and angular preferences as well as privileged molecular motifs of salt bridges in ligand-receptor complexes, which could be used to design the strongest interactions. Moreover, using quantum chemical calculations at the MP2 level, the energetic, directionality, and spatial variabilities of salt bridges were investigated using simple model systems mimicking salt bridges in a biological environment. Additionally, natural orbitals for chemical valence (NOCV) combined with the extended-transition-state (ETS) bond-energy decomposition method (ETS-NOCV) were analyzed and indicated a strong covalent contribution to the salt bridge interaction. The present results could be useful for implementation in rational drug design protocols.


Subject(s)
Drug Design , Proteins/chemistry , Salts/chemistry , Small Molecule Libraries/chemistry , Computer-Aided Design , Databases, Pharmaceutical , Databases, Protein , Humans , Ligands , Models, Molecular , Protein Binding , Proteins/metabolism , Quantum Theory , Salts/metabolism , Small Molecule Libraries/metabolism , Thermodynamics
2.
Nucleic Acids Res ; 44(D1): D356-64, 2016 Jan 04.
Article in English | MEDLINE | ID: mdl-26582914

ABSTRACT

Recent developments in G protein-coupled receptor (GPCR) structural biology and pharmacology have greatly enhanced our knowledge of receptor structure-function relations, and have helped improve the scientific foundation for drug design studies. The GPCR database, GPCRdb, serves a dual role in disseminating and enabling new scientific developments by providing reference data, analysis tools and interactive diagrams. This paper highlights new features in the fifth major GPCRdb release: (i) GPCR crystal structure browsing, superposition and display of ligand interactions; (ii) direct deposition by users of point mutations and their effects on ligand binding; (iii) refined snake and helix box residue diagram looks; and (iii) phylogenetic trees with receptor classification colour schemes. Under the hood, the entire GPCRdb front- and back-ends have been re-coded within one infrastructure, ensuring a smooth browsing experience and development. GPCRdb is available at http://www.gpcrdb.org/ and it's open source code at https://bitbucket.org/gpcr/protwis.


Subject(s)
Databases, Protein , Receptors, G-Protein-Coupled/chemistry , Binding Sites , Humans , Ligands , Mutation , Phylogeny , Receptors, G-Protein-Coupled/classification , Receptors, G-Protein-Coupled/genetics , Receptors, G-Protein-Coupled/metabolism , Sequence Alignment , Software
3.
Molecules ; 23(6)2018 May 23.
Article in English | MEDLINE | ID: mdl-29789513

ABSTRACT

Key-based substructural fingerprints are an important element of computer-aided drug design techniques. The usefulness of the fingerprints in filtering compound databases is invaluable, as they allow for the quick rejection of molecules with a low probability of being active. However, this method is flawed, as it does not consider the connections between substructures. After changing the connections between particular chemical moieties, the fingerprint representation of the compound remains the same, which leads to difficulties in distinguishing between active and inactive compounds. In this study, we present a new method of compound representation-substructural connectivity fingerprints (SCFP), providing information not only about the presence of particular substructures in the molecule but also additional data on substructure connections. Such representation was analyzed by the recently developed methodology-extreme entropy machines (EEM). The SCFP can be a valuable addition to virtual screening tools, as it represents compound structure with greater detail and more specificity, allowing for more accurate classification.


Subject(s)
Small Molecule Libraries/chemistry , Chemistry, Pharmaceutical , Computer-Aided Design , Databases, Factual , Databases, Pharmaceutical , Drug Design , Drug Evaluation, Preclinical , Entropy , Machine Learning , Molecular Structure , Structure-Activity Relationship
4.
Molecules ; 23(5)2018 05 10.
Article in English | MEDLINE | ID: mdl-29748476

ABSTRACT

The identification of subtype-selective GPCR (G-protein coupled receptor) ligands is a challenging task. In this study, we developed a computational protocol to find compounds with 5-HT2BR versus 5-HT1BR selectivity. Our approach employs the hierarchical combination of machine learning methods, docking, and multiple scoring methods. First, we applied machine learning tools to filter a large database of druglike compounds by the new Neighbouring Substructures Fingerprint (NSFP). This two-dimensional fingerprint contains information on the connectivity of the substructural features of a compound. Preselected subsets of the database were then subjected to docking calculations. The main indicators of compounds' selectivity were their different interactions with the secondary binding pockets of both target proteins, while binding modes within the orthosteric binding pocket were preserved. The combined methodology of ligand-based and structure-based methods was validated prospectively, resulting in the identification of hits with nanomolar affinity and ten-fold to ten thousand-fold selectivities.


Subject(s)
Drug Evaluation, Preclinical , Machine Learning , Receptor, Serotonin, 5-HT2B/metabolism , Binding Sites , Humans , Ligands , Models, Molecular , Serotonin/chemistry , Serotonin/metabolism
5.
J Chem Inf Model ; 57(2): 311-321, 2017 02 27.
Article in English | MEDLINE | ID: mdl-28055203

ABSTRACT

Despite its remarkable importance in the arena of drug design, serotonin 1A receptor (5-HT1A) has been elusive to the X-ray crystallography community. This lack of direct structural information not only hampers our knowledge regarding the binding modes of many popular ligands (including the endogenous neurotransmitter-serotonin), but also limits the search for more potent compounds. In this paper we shed new light on the 3D pharmacological properties of the 5-HT1A receptor by using a ligand-guided approach (ALiBERO) grounded in the Internal Coordinate Mechanics (ICM) docking platform. Starting from a homology template and set of known actives, the method introduces receptor flexibility via Normal Mode Analysis and Monte Carlo sampling, to generate a subset of pockets that display enriched discrimination of actives from inactives in retrospective docking. Here, we thoroughly investigated the repercussions of using different protein templates and the effect of compound selection on screening performance. Finally, the best resulting protein models were applied prospectively in a large virtual screening campaign, in which two new active compounds were identified that were chemically distinct from those described in the literature.


Subject(s)
Molecular Docking Simulation , Receptor, Serotonin, 5-HT1A/chemistry , Receptor, Serotonin, 5-HT1A/metabolism , Structural Homology, Protein , Crystallography, X-Ray , Drug Evaluation, Preclinical , HEK293 Cells , Humans , Ligands , Monte Carlo Method , Protein Binding , Protein Conformation
6.
J Chem Inf Model ; 55(4): 823-32, 2015 Apr 27.
Article in English | MEDLINE | ID: mdl-25806997

ABSTRACT

Molecular docking, despite its undeniable usefulness in computer-aided drug design protocols and the increasing sophistication of tools used in the prediction of ligand-protein interaction energies, is still connected with a problem of effective results analysis. In this study, a novel protocol for the automatic evaluation of numerous docking results is presented, being a combination of Structural Interaction Fingerprints and Spectrophores descriptors, machine-learning techniques, and multi-step results analysis. Such an approach takes into consideration the performance of a particular learning algorithm (five machine learning methods were applied), the performance of the docking algorithm itself, the variety of conformations returned from the docking experiment, and the receptor structure (homology models were constructed on five different templates). Evaluation using compounds active toward 5-HT6 and 5-HT7 receptors, as well as additional analysis carried out for beta-2 adrenergic receptor ligands, proved that the methodology is a viable tool for supporting virtual screening protocols, enabling proper discrimination between active and inactive compounds.


Subject(s)
Machine Learning , Molecular Docking Simulation , Receptors, Serotonin/metabolism , Algorithms , Automation , Ligands , Protein Conformation , Receptors, Adrenergic, beta-2/chemistry , Receptors, Adrenergic, beta-2/metabolism , Receptors, Serotonin/chemistry
7.
Bioorg Med Chem Lett ; 24(2): 580-5, 2014 Jan 15.
Article in English | MEDLINE | ID: mdl-24374279

ABSTRACT

In this Letter, we present a novel methodology of searching for biologically active compounds, which is based on the combination of docking experiments and analysis of the results by machine learning methods. The study was performed for 5 different protein kinases, and several sets of compounds (active, inactive and assumed inactives) were docked into their targets. The resulting ligand-protein complexes were represented by the means of structural interaction fingerprints profiles (SIFts profiles) that constituted an input for ML methods. The developed protocol was found to be superior to the combination of classification algorithms with the standard fingerprint MACCSFP.


Subject(s)
Artificial Intelligence , Protein Kinase Inhibitors/chemistry , Protein Kinase Inhibitors/metabolism , Artificial Intelligence/trends , Crystallization , Protein Binding/physiology , Protein Structure, Secondary
8.
J Chem Inf Model ; 54(6): 1661-8, 2014 Jun 23.
Article in English | MEDLINE | ID: mdl-24813470

ABSTRACT

Homology modeling is a reliable method of predicting the three-dimensional structures of proteins that lack NMR or X-ray crystallographic data. It employs the assumption that a structural resemblance exists between closely related proteins. Despite the availability of many crystal structures of possible templates, only the closest ones are chosen for homology modeling purposes. To validate the aforementioned approach, we performed homology modeling of four serotonin receptors (5-HT1AR, 5-HT2AR, 5-HT6R, 5-HT7R) for virtual screening purposes, using 10 available G-Protein Coupled Receptors (GPCR) templates with diverse evolutionary distances to the targets, with various approaches to alignment construction and model building. The resulting models were further validated in two steps by means of ligand docking and enrichment calculation, using Glide software. The final quality of the models was determined in virtual screening-like experiments by the AUROC score of the resulting ROC curves. The outcome of this research showed that no correlation between sequence identity and model quality was found, leading to the conclusion that the closest phylogenetic relative is not always the best template for homology modeling.


Subject(s)
Receptors, G-Protein-Coupled/chemistry , Receptors, Serotonin/chemistry , Structural Homology, Protein , Animals , Drug Design , Humans , Ligands , Molecular Docking Simulation , Protein Conformation , Receptors, G-Protein-Coupled/metabolism , Receptors, Serotonin/metabolism , Software
10.
Comput Struct Biotechnol J ; 23: 1181-1188, 2024 Dec.
Article in English | MEDLINE | ID: mdl-38510976

ABSTRACT

Biomedical imaging techniques such as high content screening (HCS) are valuable for drug discovery, but high costs limit their use to pharmaceutical companies. To address this issue, The JUMP-CP consortium released a massive open image dataset of chemical and genetic perturbations, providing a valuable resource for deep learning research. In this work, we aim to utilize the JUMP-CP dataset to develop a universal representation model for HCS data, mainly data generated using U2OS cells and CellPainting protocol, using supervised and self-supervised learning approaches. We propose an evaluation protocol that assesses their performance on mode of action and property prediction tasks using a popular phenotypic screening dataset. Results show that the self-supervised approach that uses data from multiple consortium partners provides representation that is more robust to batch effects whilst simultaneously achieving performance on par with standard approaches. Together with other conclusions, it provides recommendations on the training strategy of a representation model for HCS images.

11.
J Cheminform ; 12(1): 2, 2020 Jan 08.
Article in English | MEDLINE | ID: mdl-33431006

ABSTRACT

Designing a molecule with desired properties is one of the biggest challenges in drug development, as it requires optimization of chemical compound structures with respect to many complex properties. To improve the compound design process, we introduce Mol-CycleGAN-a CycleGAN-based model that generates optimized compounds with high structural similarity to the original ones. Namely, given a molecule our model generates a structurally similar one with an optimized value of the considered property. We evaluate the performance of the model on selected optimization objectives related to structural properties (presence of halogen groups, number of aromatic rings) and to a physicochemical property (penalized logP). In the task of optimization of penalized logP of drug-like molecules our model significantly outperforms previous results.

12.
J Cheminform ; 7: 13, 2015.
Article in English | MEDLINE | ID: mdl-25949744

ABSTRACT

BACKGROUND: Distinguishing active from inactive compounds is one of the crucial problems of molecular docking, especially in the context of virtual screening experiments. The randomization of poses and the natural flexibility of the protein make this discrimination even harder. Some of the recent approaches to post-docking analysis use an ensemble of receptor models to mimic this naturally occurring conformational diversity. However, the optimal number of receptor conformations is yet to be determined. In this study, we compare the results of a retrospective screening of beta-2 adrenergic receptor ligands performed on both the ensemble of receptor conformations extracted from ten available crystal structures and an equal number of homology models. Additional analysis was also performed for homology models with up to 20 receptor conformations considered. RESULTS: The docking results were encoded into the Structural Interaction Fingerprints and were automatically analyzed by support vector machine. The use of homology models in such virtual screening application was proved to be superior in comparison to crystal structures. Additionally, increasing the number of receptor conformational states led to enhanced effectiveness of active vs. inactive compounds discrimination. CONCLUSIONS: For virtual screening purposes, the use of homology models was found to be most beneficial, even in the presence of crystallographic data regarding the conformational space of the receptor. The results also showed that increasing the number of receptors considered improves the effectiveness of identifying active compounds by machine learning methods. Graphical abstractComparison of machine learning results obtained for various number of beta-2 AR homology models and crystal structures.

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