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DockCrunch and Beyond... The future of receptor-based virtual screening Bohdan Waszkowycz, Tim Perkins & Jin Li Protherics Molecular Design Ltd Macclesfield, UK
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Outline Structure-based virtual screening –an achievable (and possibly useful) tool for drug discovery –the DockCrunch validation study Protherics’ experience since DockCrunch –methods: making VS a routine task –analysis: getting the most from your data –the future (and beyond)
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Virtual Screening computational screening targeted selection screen smaller focused libraries compound collections virtual libraries receptor structure molecular docking
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Why Use Molecular Docking? Most detailed representation of binding site –overcomes simplifications of pharmacophores –identify both conservative and novel solutions –impetus for de novo design/optimisation Broad range of analyses applicable –diverse scoring/selection criteria Quality/throughput of available methods –good enough, despite technical limitations
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DockCrunch Validation study for large-scale virtual screening –flexible ligand/rigid receptor docking –PRO_LEADS docking code using ChemScore scoring function –1.1M druglike ACD-SC compounds –dock versus oestrogen receptor (agonist and antagonist structures) –collaboration with SGI
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Oestradiol:Oestrogen Receptor Complex
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DockedEnergy Profiles Agonist ReceptorAntagonist receptor Achieve good separation in terms of predicted binding affinity
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DockCrunch Results Demonstrated technical feasibility –1.1M cpds docked in 6 days/64 processor Origin –implemented automated pre- and post-processing Demonstrated potential for lead identification –successful discrimination of seeded known hits –activity for 21 out of 37 assayed compounds –ER binding affinities to 7nM Ki –novel non-steroidal chemistries
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Since DockCrunch... VS established as a routine CAMD task: –2.2M structures docked in DockCrunch –1.5M docked versus in-house target –2.5M docked to date in external contracts –project 1: 0.25M Dec 2000 –project 2: 0.25M Jan 2001 –project 3: 1M Feb 2001 –project 4: 1M March-April 2001 –project 5: 0.5M to do in May... –diverse targets/databases/project objectives
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Virtual Screening within Prometheus Database preparation e.g. salt removal, protonation Database pre-filtering select drug-like profile Receptor-ligand docking predict binding mode/affinity Analysis graphical browsing, subset selection Receptor structure Commercial databases Virtual databases
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PRO_LEADS Docking Tabu search + extended ChemScore function –robust prediction of binding free energy –85% success rate achieved across diverse test set Pre-calculated grids for energies/neighbour lists –defines extent of binding site –automatically/graphically defined Selection of PRO_LEADS docking protocol –use standard protocol across all receptors –specific constraints or modified energy terms available if desired
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Example of Grid Definition cAMP-dependent kinase (1YDS) contact surface coloured by lipophilicity
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Docking Throughput Standard protocols take 1–5 mins/ligand –e.g. typical VS run at ~4 min for 3M tabu steps –250k cpds/week on 100 processor Linux cluster (VA Linux 750MHz PIII) PLUNDER script for parallelization –automatic processing of ligand batches –balances processor workload –works across heterogeneous architectures –supplies running time statistics –handles hardware failures
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Data Analysis and Subset Selection Intrinsic problems of scoring functions: –cannot parameterize all critical interactions –try to take account of induced fit effects –calibrated only versus good binders –ignore co-operativity in binding When applied to random datasets: –predicted affinity typically normal distributed –overestimates binding affinity of random set energy alone not ideal for subset selection
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Achieving Better Selection Need to supplement scoring function –consensus scoring schemes Explore more fundamental descriptors of receptor:ligand complementarity –capture characteristics of diverse receptor types –assess deficiencies of existing scoring functions –use as simple filters or as pseudo energy terms
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Enrichment Rates Effect of different selection criteria for ER set for recovery of seeded compounds
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Requirements for Analysis Package VS generates huge data output –want to be able to browse through entire dataset Real-time navigation of large datasets –graphing property distributions –selections based on property filters –browsing of 3D models within selections –initiating additional property calculations –data transformations –writing subset/reports
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PropertyViewer
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Approach to Analysis 1. Preliminary exploration –browse property distributions –comparisons with known ligands 2. Initial elimination of poor structures –DockedEnergy, component energies –DE corrected for size/functionality –receptor:ligand steric complementarity –polar/lipophilic surface complementarity
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Approach to Analysis 3. Further filtering define focused subsets –tighter 2D property filters –clustering by 2D chemistry –presence of key 3D binding interactions –specific H-bonds, specific lipo contacts, pocket occupancy, volume overlap with reference ligand/fragment, etc –similarity/diversity of 3D binding mode –3D similarity descriptors –final ranking by DockedEnergy or hybrid energy/complementarity scoring function
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DockedEnergy vs Size
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Complementarity Space ER and FXa datasets
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Addressing More Difficult Cases - COX2 Knowns show clustering in property space despite modest DockedEnergy
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Improvements in Docking Function original docking function some misdocked knowns new docking function more consistent docking +ve shift in random energies
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Comparison of filters in subset selection 87% pass 2D filters 37% pass energy filters 22% pass complementarity filters 1% 12% 22% 9% 2% 43% 0% Initial filtering to ~10% –energy filters –complementarity –2D properties Selection of final ~1% subset –3D structural features –preferred binding motifs –2D/3D diversity
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Conclusions Established VS as a routine CAMD task –focused software development –achieved success in drug discovery projects VS is more than a black box –data mining is worthwhile –explore receptor-ligand complementarity to achieve good subset selection and point towards better scoring functions
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Future Directions for VS Exploit expanding computing resource –improved docking/scoring functions –improved receptor representations Broader application of VS –evaluation of drugability of early targets –screening of very large virtual libraries –routine screening across protein families –DMPK issues
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Acknowledgements Tim Perkins Martin Harrison Richard SykesCarol Baxter Richard HallChris Murray David FrenkelJin Li David Sheppard Thanks to: SGI, MSI, MDL, VA Linux http://www.protherics.com/crunch/
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