DrZero Posted July 19 Report Share Posted July 19 File size: 2.82 GBThe Surflex Platform consists of the five modules described below. The Surflex Manual contains details of all computational procedures and options within each command-line module. We support Linux (most common variants), Windows, and MacOS. All of the modules are multi-core capable, and very substantial speed-ups are observed with modern multi-core laptops, workstations, and HPC clusters.Tools ModuleFast and Accurate Small Molecule ProcessingThe Tools module addresses the most common aspects of small-molecule preparation2D to 3D conversion (from SMILES or SDF)Chirality detection and enumerationProtonationConformer generationFeatures and benefitsTemplate-free and non-stochasticRelies on MMFF94sf forcefield for structure derivationFast and accurate on typical drug-like ligands, with better coverage of diverse conformationsFastest and most accurate method for macrocyclic ligandsCapable of incorporating NMR restraints, which is particularly useful for large peptidic macrocyclesSimilarity ModuleState-of-the-Art 3D Molecular SimilarityThe Similarity module implements ligand similarity operations using the eSim methodVirtual screeningPose predictionMultiple ligand alignmentThe core eSim methodology is also integrated into the Docking and QuanSA modules.Features and benefitsVirtual screening enrichment is both practically and statistically significantly better than alternative methodsVirtual screening speeds of over 20 million compounds per day on a single computing coreDatabases of billions of molecules can be screened in hours using cloud-based computing resourcesPose prediction accuracy is substantially better than alternative approachesDocking and xGen ModulesTop-Tier Solution for Virtual Screening and pose Prediction + Real-Space X-ray Density Modeling of LigandsThe Docking module addresses all aspects of ensemble dockingLarge-scale PDB retrieval and processingSurface-based binding site alignment using the PSIM methodFully automatic pocket variant selection to cover the relevant protein conformational variationVirtual screeningPose predictionFeature and benefitsAutomated alignment and selection of appropriate binding site variantsRobust and fully automatic modes for virtual screening and pose prediction\Very extensive validationHighly accurate non-cognate ligand dockingDirectly applicable to synthetic macrocycles, with accuracy equivalent to non-macrocyclesThe xGen module implements a novel method for real-space refinement and de novo fitting of ligand ensembles into X-ray density mapsModels ligand density using conformational ensemblesAvoids atom-specific B-factors as X-ray model parametersProduces chemically sensible conformers with low strain energy; applicable to complex macrocyclesYields superior fit to X-ray density than standard fitting approachesAccessible to non-crystallographers and as part of crystallographic workflowsAffinity ModuleUnique Machine-Learning Approach for Prediction Binding Affinity and PoseThe Affinity Module implements the QuanSA (Quantitative Surface-field Analysis) method, which builds physically meaningful models that approximate the causal basis of protein ligand interactions. The module implements integrated procedures for quantitative prediction of both binding affinity and ligand pose, with or without protein structural informationMultiple ligand alignment for molecular series that include multiple scaffoldsIncorporation of known binding site informationMachine-learning approach to physical binding site model induction using a multiple-instance approachPrediction of both binding affinity and binding mode of new ligandsIterative refinement of models with new dataFeatures and benefitsFully automatic model building, including all aspects of ligand conformation and alignmentThe binding site model (a "pocket-field") is analogous to a protein binding site, including aspects of flexibilityThe pocket-field identifies which pose a new molecule must adopt, and ligand strain is directly modeledMeasurements of prediction confidence and molecular novelty guide user interpretationVery detailed aspects of molecular surface shape, directional hydrogen bonding preferences, and Coulombic electrostatics are learnedRequires as few as 20 molecules for model induction and is capable of modeling series of hundreds of moleculesScreen :What's NewSpoilerhttps://www.biopharmics.com/Public/RELEASE.txtHOMEPAGEhttps://www.biopharmics.comBuy Premium Account From My Download Links & Get Fastest Speed.https://rapidgator.net/file/2c40e0003a655cfd53cc42b0bbe141bc/BioPharmics.Surflex.Platform.v5.191.part1.rar.htmlhttps://rapidgator.net/file/3b8c0c38c7913411a14480cf72f60ff5/BioPharmics.Surflex.Platform.v5.191.part2.rar.html Link to comment Share on other sites More sharing options...
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