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Computer aided drug design
Lecture 12 Structural Bioinformatics Dr. Avraham Samson 81-871
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Perspective Principles of drug discovery (brief)
Computer driven drug discovery Data driven drug discovery Modern target identification and selection Modern lead identification Overall strong structural bioinformatics emphasis
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What is a drug? Defined composition with a pharmacological effect
Regulated by the Food and Drug Administration (FDA) What is the process of Drug Discovery and Development?
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Drugs and the Discovery Process
Small Molecules Natural products fermentation broths plant extracts animal fluids (e.g., snake venoms) Synthetic Medicinal Chemicals Project medicinal chemistry derived Combinatorial chemistry derived Biologicals Natural products (isolation) Recombinant products Chimeric or novel recombinant products
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Discovery vs. Development
Discovery includes: Concept, mechanism, assay, screening, hit identification, lead demonstration, lead optimization Discovery also includes In Vivo proof of concept in animals and concomitant demonstration of a therapeutic index Development begins when the decision is made to put a molecule into phase I clinical trials
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Discovery and Development
The time from conception to approval of a new drug is typically years The vast majority of molecules fail along the way The estimated cost to bring to market a successful drug is now $800 million!! (Dimasi, 2000)
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Drug Discovery Processes Today
Physiological Hypothesis Primary Assays Biochemical Cellular Pharmacological Physiological Molecular Biological Hypothesis (Genomics) Initial Hit Compounds Screening + Sources of Molecules Natural Products Synthetic Chemicals Combichem Biologicals Chemical Hypothesis
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Drug Discovery Processes - II
Hit to Lead Chemistry - physical properties -in vitro metabolism Secondary Evaluation - Mechanism Of Action - Dose Response Initial Hit Compounds Initial Synthetic Evaluation - analytics - first analogs First In Vivo Tests - PK, efficacy, toxicity
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Drug Discovery Processes - III
Lead Optimization Potency Selectivity Physical Properties PK Metabolism Oral Bioavailability Synthetic Ease Scalability Pharmacology Multiple In Vivo Models Chronic Dosing Preliminary Tox Development Candidate (and Backups)
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Drug Discovery Disciplines
Medicine Physiology/pathology Pharmacology Molecular/cellular biology Automation/robotics Medicinal, analytical,and combinatorial chemistry Structural and computational chemistries Bioinformatics
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Drug Discovery Program Rationales
Unmet Medical Need Me Too! - Market - ($$$s) Drugs in search of indications Side-effects often lead to new indications Indications in search of drugs Mechanism based, hypothesis driven, reductionism
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Serendipity and Drug Discovery
Often molecules are discovered/synthesized for one indication and then turn out to be useful for others Tamoxifen (birth control and cancer) Viagra (hypertension and erectile dysfunction) Salvarsan (Sleeping sickness and syphilis) Interferon-a (hairy cell leukemia and Hepatitis C)
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Issues in Drug Discovery
Hits and Leads - Is it a “Druggable” target? Resistance Pharmacodynamics Delivery - oral and otherwise Metabolism Solubility, toxicity Patentability
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A Little History of Computer Aided Drug Design
1960’s - Viz - review the target - drug interaction 1980’s- Automation - high trhoughput target/drug selection 1980’s- Databases (information technology) - combinatorial libraries 1980’s- Fast computers - docking 1990’s- Fast computers - genome assembly - genomic based target selection 2000’s- Vast information handling - pharmacogenomics
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Chembank database
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Patchdock
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From the Computer Perspective
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Progress About the computer industry…
“If the automobile industry had made as much progress in the past fifty years, a car today would cost a hundredth of a cent and go faster than the speed of light.” Ray Kurzweil, The Age of Spiritual Machines
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Growth of pixel fill rates
SGI PC cards * Not counting custom hardware or special configurations Mention Moore’s Law. Fill rates recently growing by x2 every year Data source: Product literature
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Comparing Growth Rates
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From the Target Perspective
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Bioinformatics - A Revolution
Biological Experiment Data Information Knowledge Discovery Collect Characterize Compare Model Infer Complexity Technology Data Higher-life 1 1000 100000 Computing Power Organ Brain Mapping Cardiac Modeling Cellular Model Metaboloic Pathway of E.coli Sub-cellular 106 102 Neuronal Modeling 1 # People/Web Site Assembly Virus Structure Ribosome Genetic Circuits Structure Human Genome Project Yeast Genome E.Coli Genome C.Elegans Genome 1 Small Genome/Mo. Sequencing Technology ESTs Gene Chips Human Genome Sequence 90 95 00 05 Year
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The Accumulation of Knowledge
This “molecular scene” for cAMP dependant protein kinase (PKA) depicts years of collective knowledge. Traditionally structure determination has been functional driven As we shall see it is becoming genomically driven
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Example - http://arabidopsis.sdsc.edu
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Combinatorial Libraries
Thousands of variations to a fixed template Good libraries span large areas of chemical and conformational space - molecular diversity Diversity in - steric, electrostatic, hydrophobic interactions... Desire to be as broad as “Merck” compounds from random screening Computer aided library design is in its infancy Blaney and Martin - Curr. Op. In Chem. Biol. (1997) 1:54-59
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