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Genomes to Drugs: A Bioinformatics Perspective Sharmila Mande Bioinformatics Division Advanced Technology Centre Asia’s Largest Global Software & Services Company Data types along the drug discover chain Target Identification Target Lead Validation Identification Genomics SNP EST/cDNA Lead Optimisation Chemistry ADMET HTS SNP Pre-clinical trials Gene expression Proteomics Asia’s Largest Global Software & Services Company Traditional drug discovery process • Development time per drug: 8 to 12 years. • Development cost per drug: $500- $900 M • High failure rates - especially in clinical stage Asia’s Largest Global Software & Services Company Post-genomics scenario • Reduction of drug development time • Reduction of cost of developing drugs – Develop high quality information early in drug discovery process – Faster identification of new drug targets – Higher quality target and leads – Reduction of drug failure rates Asia’s Largest Global Software & Services Company Design principles • Do experiments in silico first Hypothesis Selection Synthesis “Real World” Bioassay Analysis “in silico World” Asia’s Largest Global Software & Services Company Whole genomes • Complete genome sequences of – about 138 microbial organisms – Human – Parasites – Plant • Possible to develop novel cures Asia’s Largest Global Software & Services Company Drug Target Identification Three possible cases: • Human protein is not functioning properly, or its activity needs to be modified. Sickle cell anemia • The potential target is a key protein from infectious organism, and has no counterpart in humans Bacterial Cell wall • The target is a protein from an infectious organism and a homologous protein exists in humans. DHFR Asia’s Largest Global Software & Services Company How Many Drug Targets ? • Present day therapy addresses only 500 molecular targets • Cell membrane receptors constitute the largest class of current drug targets • Human and other microbial genomes suggest that many more targets may be available Asia’s Largest Global Software & Services Company Target Identification: Comparative Genomics • Target identification in the pre-genomics era was an extremely tedious and time consuming process. • Genomics approaches - a major development in recent times in drug discovery e.g. broad spectrum antibiotics drugs against malaria parasite Asia’s Largest Global Software & Services Company Target Validation • There is an opportunity to identify many more targets • Bottleneck in validation of drug targets Asia’s Largest Global Software & Services Company Computational Approaches in Drug Design without prior knowledge of receptor structure with prior knowledge of receptor structure Generation of a pharmacophore 3D arrangement of functionally important parts of molecules Docking Scan a database for optimal fitting of inhibitors Quantitative structureactivity relationships De-novo design Generate a “custom” ligand for a given active site Asia’s Largest Global Software & Services Company Drug Design Cycle Asia’s Largest Global Software & Services Company Computational Approaches in Drug Design: No prior knowledge of receptor structure Combinatorial Chemistry Asia’s Largest Global Software & Services Company Pharmacophore generation Cyclic urea inhibitor of HIV protease from pharmacophore hypothesis. Asia’s Largest Global Software & Services Company Computational Approaches in Drug Design: Prior knowledge of receptor structure • Captopril, the first therapeutic drug from structure based studies • Antihypertensive • Angiotensin converting enzyme modelled on carboxypeptidase • 30,000 fold improvement in inhibitory activity obtained, from the first lead Nsuccinoyl-prolin to captopril Asia’s Largest Global Software & Services Company Examples of Structure Based Drug Design HIV protease with amprenavir Influenza with neuraminidase inhibitor Asia’s Largest Global Software & Services Company If HTS is available, why do docking at all? Protein Tyrosine Phosphatase 1B inhibitors: • 400,000 compounds screened by HTS vs. 365 compounds high scoring docking compounds. • Hit-rate by computational approaches 1700 times higher. Computationally identified compounds more “drug-like”. Dihydropicolinate reductase inhibitor: • hit rate < 0.2% in HTS and > 6% in computer-based approach Asia’s Largest Global Software & Services Company Lead Optimization active site Receptor / Enzyme Enzyme Receptor / Enzyme Enzyme Ki~1mM Receptor/ Enzyme Enzyme Ki~1-10 nM Asia’s Largest Global Software & Services Company ADMET Drug failures • 39% Poor pharmacokinetics • 11% Toxicity ADMET prediction • in-silico approaches Asia’s Largest Global Software & Services Company In silico ADMET Identify • Non soluble compounds • Non permeable compounds • Non metabolically stable compounds • Toxicophores Asia’s Largest Global Software & Services Company Bioinformatics success stories • Quick target identification (Merck) – potential drug targets for schizophrenia • Expedited drug candidate identification (SKB) – drugs for bone tumor (target cathepsin K) • Poor drug candidate elimination (Aventis vs GSK and SP) – anti IL-5 therapy against asthma Asia’s Largest Global Software & Services Company TCS’ Bioinformatics Division • Part of Advanced Technology Centre Genome Analysis Sequence Analysis Comparative Genomics • 40 persons (9 Ph.D’s) TCS Drug Design • Undertaking R&D in selected areas of computational biology Bio-Suite Structural Analysis 3D Modelling Simulation Structural Manipulations Asia’s Largest Global Software & Services Company Thank You Asia’s Largest Global Software & Services Company