Search results for "Virtual screening"

showing 10 items of 102 documents

Molecular topology: A new strategy for antimicrobial resistance control

2017

The control of antimicrobial resistance (AMR) seems to have come to an impasse. The use and abuse of antibacterial drugs has had major consequences on the genetic mutability of both pathogenic and nonpathogenic microorganisms, leading to the development of new highly resistant strains. Because of the complexity of this situation, an in silico strategy based on QSAR molecular topology was devised to identify synthetic molecules as antimicrobial agents not susceptible to one or several mechanisms of resistance such as: biofilms formation (BF), ionophore (IA) activity, epimerase (EI) activity or SOS system (RecA inhibition). After selecting a group of 19 compounds, five of them showed signific…

0301 basic medicineQuantitative structure–activity relationshipStaphylococcusIn silico030106 microbiologyMicrobial Sensitivity Testsmedicine.disease_causeMicrobiologyStructure-Activity Relationship03 medical and health sciencesAntibiotic resistanceDrug Resistance BacterialDrug DiscoveryEnterococcus faecalisEscherichia colimedicineEscherichia coliPharmacologyVirtual screeningDose-Response Relationship DrugMolecular StructureChemistryOrganic ChemistryBiofilmGeneral MedicineAntimicrobialAnti-Bacterial Agents030104 developmental biologyBiofilmsRegression AnalysisStaphylococcusEuropean Journal of Medicinal Chemistry
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Identification of novel compounds against three targets of SARS CoV-2 coronavirus by combined virtual screening and supervised machine learning.

2021

Coronavirus disease 2019 (COVID-19) is a major threat worldwide due to its fast spreading. As yet, there are no established drugs available. Speeding up drug discovery is urgently required. We applied a workflow of combined in silico methods (virtual drug screening, molecular docking and supervised machine learning algorithms) to identify novel drug candidates against COVID-19. We constructed chemical libraries consisting of FDA-approved drugs for drug repositioning and of natural compound datasets from literature mining and the ZINC database to select compounds interacting with SARS-CoV-2 target proteins (spike protein, nucleocapsid protein, and 2′-o-ribose methyltransferase). Supported by…

0301 basic medicineSimeprevirArtificial intelligencevirusesMERS Middle East Respiratory SyndromeHealth InformaticsBiologyMachine learningcomputer.software_genremedicine.disease_causeAntiviral AgentsArticleWHO World Health OrganizationAUC area under the curve03 medical and health sciences0302 clinical medicinessRNA single-stranded RNA virusmedicineChemotherapyHumansSARS severe acute respiratory syndromeCOVID-19 coronavirus disease 2019CoronavirusNatural productsVirtual screeningACE2 angiotensin converting enzyme 2Drug discoverybusiness.industrySARS-CoV-2COVID-19LBE lowest binding energyFDA Food and Drug AdministrationROC receiver operating characteristicComputer Science ApplicationsHIV human immunodeficiency virusMolecular Docking SimulationDrug repositioning030104 developmental biologyDrug developmentSevere acute respiratory syndrome-related coronavirusParitaprevirInfectious diseasesRespiratory virusArtificial intelligenceSupervised Machine Learningbusinesscomputer030217 neurology & neurosurgeryComputers in biology and medicine
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Search of Chemical Scaffolds for Novel Antituberculosis Agents

2005

3 A method to identify chemical scaffolds potentially active against Mycobacterium tuberculosis is presented. The molecular features of a set of structurally heterogeneous antituberculosis drugs were coded by means of structural invariants. Three tech- niques were used to obtain equations able to model the antituberculosis activity: linear discriminant analysis, multilinear re- gression, and shrinkage estimation-ridge regression. The model obtained was statistically validated through leave-n-out test, and an external set and was applied to a database for the search of new active agents. The selected compounds were assayed in vitro, and among those identified as active stand reserpine, N,N,N…

0301 basic medicineStereochemistryAntitubercular AgentsQuantitative Structure-Activity RelationshipComputational biology01 natural sciencesBiochemistryAnalytical ChemistryMycobacterium tuberculosis03 medical and health sciencesmedicineComputer SimulationMycobacterium avium complexEthambutolVirtual screeningMolecular StructurebiologyChemistrybiology.organism_classificationLinear discriminant analysis0104 chemical sciences010404 medicinal & biomolecular chemistry030104 developmental biologyModels ChemicalDrug DesignRegression AnalysisMolecular MedicineMultiple linear regression analysisBiotechnologyPentamidinemedicine.drugSLAS Discovery
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Screening of potent phytochemical inhibitors against SARS-CoV-2 protease and its two Asian mutants

2021

Abstract Background COVID-19, declared a pandemic in March 2020 by the World Health Organization is caused by Severe Acute Respiratory Syndrome Coronavirus 2 (SARS-CoV-2). The virus has already killed more than 2.3 million people worldwide. Object The principal intent of this work was to investigate lead compounds by screening natural product library (NPASS) for possible treatment of COVID-19. Methods Pharmacophore features were used to screen a large database to get a small dataset for structure-based virtual screening of natural product compounds. In the structure-based screening, molecular docking was performed to find a potent inhibitor molecule against the main protease (Mpro) of SARS-…

0301 basic medicineStereochemistrymedicine.medical_treatmentPhytochemicalsProtein Data Bank (RCSB PDB)Health Informaticsmedicine.disease_causeMolecular Docking SimulationAntiviral AgentsArticleDocking03 medical and health scienceschemistry.chemical_compound0302 clinical medicinemedicineHumansProtease InhibitorsCoronavirusVirtual screeningNatural productsProteaseChemistrySARS-CoV-2COVID-19Computer Science ApplicationsProteaseCoronavirusMolecular Docking Simulation030104 developmental biologyDocking (molecular)PharmacophoreLead compound030217 neurology & neurosurgeryMproPeptide HydrolasesComputers in Biology and Medicine
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Repurposing old drugs to fight multidrug resistant cancers.

2020

Overcoming multidrug resistance represents a major challenge for cancer treatment. In the search for new chemotherapeutics to treat malignant diseases, drug repurposing gained a tremendous interest during the past years. Repositioning candidates have often emerged through several stages of clinical drug development, and may even be marketed, thus attracting the attention and interest of pharmaceutical companies as well as regulatory agencies. Typically, drug repositioning has been serendipitous, using undesired side effects of small molecule drugs to exploit new disease indications. As bioinformatics gain increasing popularity as an integral component of drug discovery, more rational approa…

0301 basic medicineVirtual screeningCancer ResearchDrug repurposingSettore BIO/11 - Biologia MolecolareAntineoplastic AgentsDrug resistanceBioinformatics03 medical and health sciencesClinical cancer trials; Drug repurposing; Multidrug resistant cancer; Pharmacophore modelling; Virtual screening0302 clinical medicineNeoplasmsDrug DiscoveryMedicineHumansPharmacology (medical)Computer SimulationRepurposingPharmacologyVirtual screeningDrug discoverybusiness.industryDrug RepositioningComputational BiologyDrug Resistance Multiple3. Good healthMultiple drug resistanceDrug repositioning030104 developmental biologyInfectious DiseasesOncologyDrug developmentDrug Resistance Neoplasm030220 oncology & carcinogenesisMultidrug resistant cancerPharmacophore modellingPharmacophorebusinessClinical cancer trialsDrug resistance updates : reviews and commentaries in antimicrobial and anticancer chemotherapy
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mD3DOCKxb: An Ultra-Scalable CPU-MIC Coordinated Virtual Screening Framework

2017

Molecular docking is an important method in computational drug discovery. In large-scale virtual screening, millions of small drug-like molecules (chemical compounds) are compared against a designated target protein (receptor). Depending on the utilized docking algorithm for screening, this can take several weeks on conventional HPC systems. However, for certain applications including large-scale screening tasks for newly emerging infectious diseases such high runtimes can be highly prohibitive. In this paper, we investigate how the massively parallel neo-heterogeneous architecture of Tianhe-2 Supercomputer consisting of thousands of nodes comprising CPUs and MIC coprocessors that can effic…

0301 basic medicineVirtual screeningMulti-core processorCoprocessorComputer sciencebusiness.industryParallel computingSupercomputer03 medical and health sciences030104 developmental biologyEmbedded systemScalabilityTianhe-2Algorithm designbusinessMassively parallel2017 17th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing (CCGRID)
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2019

Golgi α-mannosidase II (GMII) is a glycoside hydrolase playing a crucial role in the N-glycosylation pathway. In various tumour cell lines, the distribution of N-linked sugars on the cell surface is modified and correlates with the progression of tumour metastasis. GMII therefore is a possible molecular target for anticancer agents. Here, we describe the identification of a non-competitive GMII inhibitor using computer-aided drug design methods including identification of a possible allosteric binding site, pharmacophore search and virtual screening.

0301 basic medicineVirtual screeningMultidisciplinaryChemistryCellAllosteric regulationGolgi apparatus010402 general chemistry01 natural sciencesEnzyme structure0104 chemical sciences03 medical and health sciencessymbols.namesake030104 developmental biologymedicine.anatomical_structureBiochemistrymedicinesymbolsGlycoside hydrolaseBinding sitePharmacophorePLOS ONE
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Discovery of Natural Products as Novel and Potent FXR Antagonists by Virtual Screening

2018

Farnesoid X receptor (FXR) is a member of nuclear receptor family involved in multiple physiological processes through regulating specific target genes. The critical role of FXR as a transcriptional regulator makes it a promising target for diverse diseases, especially those related to metabolic disorders such as diabetes and cholestasis. However, the underlying activation mechanism of FXR is still a blur owing to the absence of proper FXR modulators. To identify potential FXR modulators, an in-house natural product database (NPD) containing over 4,000 compounds was screened by structure-based virtual screening strategy and subsequent hit-based similarity searching method. After the yeast t…

0301 basic medicinenatural product01 natural scienceslcsh:Chemistry03 medical and health scienceschemistry.chemical_compoundTranscriptional regulationGeneIC50Original ResearchVirtual screeningNatural productantagonistmolecular dockingsimilarity searchingGeneral Chemistryvirtual screening0104 chemical sciencesChemistry010404 medicinal & biomolecular chemistry030104 developmental biologyFXRlcsh:QD1-999Nuclear receptorBiochemistrychemistryFarnesoid X receptorGuggulsteroneFrontiers in Chemistry
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Off-Target-Based Design of Selective HIV-1 PROTEASE Inhibitors

2021

The approval of the first HIV-1 protease inhibitors (HIV-1 PRIs) marked a fundamental step in the control of AIDS, and this class of agents still represents the mainstay therapy for this illness. Despite the undisputed benefits, the necessary lifelong treatment led to numerous severe side-effects (metabolic syndrome, hepatotoxicity, diabetes, etc.). The HIV-1 PRIs are capable of interacting with “secondary” targets (off-targets) characterized by different biological activities from that of HIV-1 protease. In this scenario, the in-silico techniques undoubtedly contributed to the design of new small molecules with well-fitting selectivity against the main target, analyzing possible undesirabl…

0301 basic medicineon/off-targetsProtein ConformationComputer sciencemedicine.medical_treatmentHIV InfectionsLigands01 natural sciencesHIV ProteaseHIV-1 proteaseCatalytic DomainDrug DiscoveryBiology (General)DRUDITSpectroscopyMolecular StructurebiologyGeneral MedicineResearch processSmall moleculeComputer Science ApplicationsMolecular Docking SimulationChemistryligand-structure basedQH301-705.5NCI databaseComputational biologyArticleCatalysisInorganic ChemistryStructure-Activity Relationshipmolecular descriptors03 medical and health sciencesHIV-1 proteasemedicineHumansComputer SimulationPhysical and Theoretical ChemistryQD1-999Molecular BiologyVirtual screeningProteaseOrganic ChemistryHIV Protease Inhibitorsmolecular dockingvirtual screening0104 chemical sciences010404 medicinal & biomolecular chemistry030104 developmental biologyDrug DesignHIV-1biology.proteinInternational Journal of Molecular Sciences
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Estimation of ADME Properties in Drug Discovery: Predicting Caco-2 Cell Permeability Using Atom-Based Stochastic and Non-stochastic Linear Indices

2007

The in vitro determination of the permeability through cultured Caco-2 cells is the most often-used in vitro model for drug absorption. In this report, we use the largest data set of measured P(Caco-2), consisting of 157 structurally diverse compounds. Linear discriminant analysis (LDA) was used to obtain quantitative models that discriminate higher absorption compounds from those with moderate-poorer absorption. The best LDA model has an accuracy of 90.58% and 84.21% for training and test set. The percentage of good correlation, in the virtual screening of 241 drugs with the reported values of the percentage of human intestinal absorption (HIA), was greater than 81%. In addition, multiple …

Absorption (pharmacology)Stochastic ProcessesVirtual screeningQuantitative structure–activity relationshipDrug discoveryStereochemistryLinear modelQuantitative Structure-Activity RelationshipPharmaceutical ScienceLinear discriminant analysisPermeabilityData setROC CurveDrug DesignTest setLinear regressionLinear ModelsHumansPharmacokineticsCaco-2 CellsBiological systemADMEMathematicsJournal of Pharmaceutical Sciences
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