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1.
Molecules ; 27(3)2022 Feb 02.
Article in English | MEDLINE | ID: mdl-35164270

ABSTRACT

Fluorine is a common substituent in medicinal chemistry and is found in up to 50% of the most profitable drugs. In this study, a statistical analysis of the nature, geometry, and frequency of hydrogen bonds (HBs) formed between the aromatic and aliphatic C-F groups of small molecules and biological targets found in the Protein Data Bank (PDB) repository was presented. Interaction energies were calculated for those complexes using three different approaches. The obtained results indicated that the interaction energy of F-containing HBs is determined by the donor-acceptor distance and not by the angles. Moreover, no significant relationship between the energies of HBs with fluorine and the donor type was found, implying that fluorine is a weak HB acceptor for all types of HB donors. However, the statistical analysis of the PDB repository revealed that the most populated geometric parameters of HBs did not match the calculated energetic optima. In a nutshell, HBs containing fluorine are forced to form due to the stronger ligand-receptor neighboring interactions, which make fluorine the "donor's last resort".


Subject(s)
Fluorine/chemistry , Hydrogen/chemistry , Proteins/chemistry , Animals , Databases, Protein , Humans , Hydrogen Bonding , Ligands , Models, Molecular
2.
J Chem Inf Model ; 61(10): 5054-5065, 2021 10 25.
Article in English | MEDLINE | ID: mdl-34547888

ABSTRACT

Structural fingerprints and pharmacophore modeling are methodologies that have been used for at least 2 decades in various fields of cheminformatics, from similarity searching to machine learning (ML). Advances in in silico techniques consequently led to combining both these methodologies into a new approach known as the pharmacophore fingerprint. Herein, we propose a high-resolution, pharmacophore fingerprint called Pharmacoprint that encodes the presence, types, and relationships between pharmacophore features of a molecule. Pharmacoprint was evaluated in classification experiments by using ML algorithms (logistic regression, support vector machines, linear support vector machines, and neural networks) and outperformed other popular molecular fingerprints (i.e., ECFP4, Estate, MACCS, PubChem, Substructure, Klekota-Roth, CDK, Extended, and GraphOnly) and the ChemAxon pharmacophoric features fingerprint. Pharmacoprint consisted of 39 973 bits; several methods were applied for dimensionality reduction, and the best algorithm not only reduced the length of the bit string but also improved the efficiency of the ML tests. Further optimization allowed us to define the best parameter settings for using Pharmacoprint in discrimination tests and for maximizing statistical parameters. Finally, Pharmacoprint generated for three-dimensional (3D) structures with defined hydrogens as input data was applied to neural networks with a supervised autoencoder for selecting the most important bits and allowed us to maximize the Matthews correlation coefficient up to 0.962. The results show the potential of Pharmacoprint as a new, perspective tool for computer-aided drug design.


Subject(s)
Artificial Intelligence , Drug Design , Algorithms , Computer Simulation , Neural Networks, Computer
3.
Spectrochim Acta A Mol Biomol Spectrosc ; 252: 119536, 2021 May 05.
Article in English | MEDLINE | ID: mdl-33588362

ABSTRACT

Hydrogen bonds (HBs) directly engaging fluorine has been extensively studied, but the indirect effect of fluorine on adjacent donors and acceptors is poorly understood and still difficult to predict. The indirect and direct effect of the fluorination of aniline on HB patterns observed in monofluoroanilines was studied via experimental (vibrational spectroscopy and crystal structure analysis) and theoretical (ab initio molecular dynamics and electrostatic surface potential) methods. It was found that a fluorine substituent decreases the strength and frequency of N-H⋯N HBs and, at the same time, increases the acidity of CH protons, enhancing the competitiveness of weaker interactions. Additionally, the position of fluorine in the aromatic ring strongly affects the C-F bond length, and a direct intramolecular N-H⋯F HB causes an increase in the N-H bond stability. We also provide a methodology to identify and separate individual HBs concerning the type of donor or acceptor from the ab initio molecular dynamics trajectories.

4.
J Mol Model ; 25(5): 114, 2019 Apr 06.
Article in English | MEDLINE | ID: mdl-30955095

ABSTRACT

The complexes of selected long-chain arylpiperazines with homology models of 5-HT1A, 5-HT2A, and 5-HT7 receptors were investigated using quantum mechanical methods. The molecular geometries of the ligand-receptor complexes were firstly optimized with the Our own N-layered Integrated molecular Orbital and molecular Mechanics (ONIOM) method. Next, the fragment molecular orbitals method with an energy decomposition analysis scheme (FMO-EDA) was employed to estimate the interaction energies in binding sites. The results clearly showed that orthosteric binding sites of studied serotonin receptors have both attractive and repulsive regions. In the case of 5-HT1A and 5-HT2A two repulsive areas, located in the lower part of the binding pocket, and one large area of attraction engaging many residues at the top of all helices were identified. Additionally, for the 5-HT7 receptor, the third area of destabilization located at the extracellular end of the helix 6 was found.


Subject(s)
Piperazines/chemistry , Serotonin 5-HT1 Receptor Antagonists/chemistry , Serotonin 5-HT2 Receptor Antagonists/chemistry , Serotonin Antagonists/chemistry , Binding Sites , Humans , Ligands , Models, Molecular , Piperazines/therapeutic use , Protein Binding , Receptors, Serotonin/chemistry , Receptors, Serotonin/drug effects , Receptors, Serotonin/genetics , Serotonin Antagonists/therapeutic use
5.
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
6.
Eur J Med Chem ; 151: 797-814, 2018 May 10.
Article in English | MEDLINE | ID: mdl-29679900

ABSTRACT

Identifying desired interactions with a target receptor is often the first step when designing new active compounds. However, attention should also be focused on contacts with other proteins that result in either selective or polypharmacological compounds. Here, the search for the structural determinants of selectivity between selected serotonin receptor subtypes was carried out. Special attention was focused on 5-HT7R and the cross-interactions between its ligands and the 5-HT1AR, 5-HT1BR, 5-HT2AR, 5-HT2BR, and 5-HT6R subtypes. Selective and non-selective compounds for each pair of 5-HT7/5-HTx receptors were docked to the respective 5-HTR homology models and 5-HT1B/5-HT2BR crystal structures. The contacts present in the ligand-receptor complexes obtained by docking were characterized by the structural interaction fingerprint and statistically analyzed in terms of their frequency. The results allowed for the identification of amino acids that discriminate between selective and non-selective compounds for each 5-HT7/5-HTx receptor pair, which was further compared with available mutagenesis data. Interaction pattern characteristics for compounds with particular activity profiles can constitute the basis for the coherent selectivity theory within a considered set of proteins, supporting the ongoing development of new ligands targeting these receptors. The in silico results were used to analyze prospective virtual screening results towards the 5-HT7 receptor in which compounds of different chemotypes to known 5-HT7R ligands, with micromolar level activities were identified. The findings in this study not only confirm the legitimacy of the approach but also constitute a great starting point for further studies on 5-HT7R ligands selectivity.


Subject(s)
Drug Discovery , Receptors, Serotonin/metabolism , Small Molecule Libraries/chemistry , Small Molecule Libraries/pharmacology , HEK293 Cells , Humans , Ligands , Molecular Docking Simulation , Polypharmacology , Receptors, Serotonin/chemistry
7.
Int J Mol Sci ; 19(4)2018 Mar 30.
Article in English | MEDLINE | ID: mdl-29601530

ABSTRACT

Metabolic stability is an important parameter to be optimized during the complex process of designing new active compounds. Tuning this parameter with the simultaneous maintenance of a desired compound's activity is not an easy task due to the extreme complexity of metabolic pathways in living organisms. In this study, the platform for in silico qualitative evaluation of metabolic stability, expressed as half-lifetime and clearance was developed. The platform is based on the application of machine learning methods and separate models for human, rat and mouse data were constructed. The compounds' evaluation is qualitative and two types of experiments can be performed-regression, which is when the compound is assigned to one of the metabolic stability classes (low, medium, high) on the basis of numerical value of the predicted half-lifetime, and classification, in which the molecule is directly assessed as low, medium or high stability. The results show that the models have good predictive power, with accuracy values over 0.7 for all cases, for Sequential Minimal Optimization (SMO), k-nearest neighbor (IBk) and Random Forest algorithms. Additionally, for each of the analyzed compounds, 10 of the most similar structures from the training set (in terms of Tanimoto metric similarity) are identified and made available for download as separate files for more detailed manual inspection. The predictive power of the models was confronted with the external dataset, containing metabolic stability assessment via the GUSAR software, leading to good consistency of results for SMOreg and Naïve Bayes (~0.8 on average). The tool is available online.


Subject(s)
Computer Simulation , Machine Learning , Software , Algorithms , Animals , Bayes Theorem , Databases, Factual , Humans
8.
J Chem Inf Model ; 57(2): 133-147, 2017 02 27.
Article in English | MEDLINE | ID: mdl-28158942

ABSTRACT

The growing computational abilities of various tools that are applied in the broadly understood field of computer-aided drug design have led to the extreme popularity of virtual screening in the search for new biologically active compounds. Most often, the source of such molecules consists of commercially available compound databases, but they can also be searched for within the libraries of structures generated in silico from existing ligands. Various computational combinatorial approaches are based solely on the chemical structure of compounds, using different types of substitutions for new molecules formation. In this study, the starting point for combinatorial library generation was the fingerprint referring to the optimal substructural composition in terms of the activity toward a considered target, which was obtained using a machine learning-based optimization procedure. The systematic enumeration of all possible connections between preferred substructures resulted in the formation of target-focused libraries of new potential ligands. The compounds were initially assessed by machine learning methods using a hashed fingerprint to represent molecules; the distribution of their physicochemical properties was also investigated, as well as their synthetic accessibility. The examination of various fingerprints and machine learning algorithms indicated that the Klekota-Roth fingerprint and support vector machine were an optimal combination for such experiments. This study was performed for 8 protein targets, and the obtained compound sets and their characterization are publically available at http://skandal.if-pan.krakow.pl/comb_lib/ .


Subject(s)
Combinatorial Chemistry Techniques/methods , Drug Design , Machine Learning , Small Molecule Libraries/chemistry , Computer-Aided Design , Databases, Pharmaceutical
9.
Mol Divers ; 21(2): 407-412, 2017 May.
Article in English | MEDLINE | ID: mdl-28185036

ABSTRACT

The Average Information Content Maximization algorithm (AIC-MAX) based on mutual information maximization was recently introduced to select the most discriminatory features. Here, this methodology was applied to select the most significant bits from the Klekota-Roth fingerprint for serotonin receptors ligands as well as to select the most important features for distinguishing ligands with activity for one receptor versus another. The interpretation of selected bits and machine-learning experiments performed using the reduced interpretations outperformed the raw fingerprints and indicated the most important structural features of the analyzed ligands in terms of activity and selectivity. Moreover, the AIC-MAX methodology applied here for serotonin receptor ligands can also be applied to other target classes.


Subject(s)
Drug Discovery/methods , Informatics/methods , Machine Learning , Receptors, Serotonin/metabolism , Ligands , Structure-Activity Relationship
10.
J Chem Inf Model ; 55(10): 2168-77, 2015 Oct 26.
Article in English | MEDLINE | ID: mdl-26431196

ABSTRACT

In a search for new anti-HIV-1 chemotypes, we developed a multistep ligand-based virtual screening (VS) protocol combining machine learning (ML) methods with the privileged structures (PS) concept. In its learning step, the VS protocol was based on HIV integrase (IN) inhibitors fetched from the ChEMBL database. The performances of various ML methods and PS weighting scheme were evaluated and applied as VS filtering criteria. Finally, a database of 1.5 million commercially available compounds was virtually screened using a multistep ligand-based cascade, and 13 selected unique structures were tested by measuring the inhibition of HIV replication in infected cells. This approach resulted in the discovery of two novel chemotypes with moderate antiretroviral activity, that, together with their topological diversity, make them good candidates as lead structures for future optimization.


Subject(s)
Anti-HIV Agents/chemistry , HIV Integrase Inhibitors/chemistry , HIV-1/drug effects , Machine Learning , Anti-HIV Agents/analysis , Biological Assay , Cells, Cultured , Drug Evaluation, Preclinical , Humans , Inhibitory Concentration 50 , Ligands , Models, Molecular , Molecular Structure
11.
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
12.
PLoS One ; 8(12): e84510, 2013.
Article in English | MEDLINE | ID: mdl-24367669

ABSTRACT

This study explores a new approach to pharmacophore screening involving the use of an optimized linear combination of models instead of a single hypothesis. The implementation and evaluation of the developed methodology are performed for a complete known chemical space of 5-HT1AR ligands (3616 active compounds with K i < 100 nM) acquired from the ChEMBL database. Clusters generated from three different methods were the basis for the individual pharmacophore hypotheses, which were assembled into optimal combinations to maximize the different coefficients, namely, MCC, accuracy and recall, to measure the screening performance. Various factors that influence filtering efficiency, including clustering methods, the composition of test sets (random, the most diverse and cluster population-dependent) and hit mode (the compound must fit at least one or two models from a final combination) were investigated. This method outmatched both single hypothesis and random linear combination approaches.


Subject(s)
Drug Evaluation, Preclinical/methods , Receptor, Serotonin, 5-HT1A/metabolism , Cluster Analysis , Ligands , Models, Molecular , Molecular Conformation , Reproducibility of Results
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