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Drug Discovery & GPCR Models

Drug Discovery & GPCR Models. Sheila DeWitt, PhD VP Discovery & Manufacturing October 25, 2007. Outline. Overview of EPIX’ Product Portfolio Drug Discovery Strategy Case Study – 5HT1A. Clinical Portfolio – Internally Discovered . Three Drug Candidates in Phase 2 Development. Product.

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Drug Discovery & GPCR Models

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  1. Drug Discovery & GPCR Models Sheila DeWitt, PhDVP Discovery & ManufacturingOctober 25, 2007

  2. Outline • Overview of EPIX’ Product Portfolio • Drug Discovery Strategy • Case Study – 5HT1A

  3. Clinical Portfolio – Internally Discovered Three Drug Candidates in Phase 2 Development Product Target Lead Discovery Lead Optimization IND/GLP Tox Phase I Phase 2 Phase 3 NDA Approved PRX-08066 (5-HT2B) Pulmonary Hypertension w/ COPD Depression PRX-00023 (5-HT1A) Alzheimer's Disease (GSK has exclusive option) PRX-03140 (5-HT4) Obesity, Cognitive Impairment PRX-07034 (5-HT6) COPD = Chronic Obstructive Pulmonary Disease

  4. Proprietary Drug Discovery Technology • GPCRs – Strategic drug development targets • Embedded proteins in surface membrane of all cells • Mediate biological signaling in health/disease • Commercially validated - 40% of top 100 drugs • Never crystallized – 3D Structures Unknown • SAR a “hit-or-miss” exercise requiring years • Side effect / selectivity issues remain problematic • Opportunity for EPIX • Proprietary modeling / screening technologies • Commitment to discovery triad: • Computational and medicinal chemistry integrated with biology

  5. Outline • Overview of EPIX’ Product Portfolio • Drug Discovery Strategy • Case Study – 5HT1A

  6. EPIX Discovery Strategy Drug Discovery • Modeling Novel GPCR modeling methodology (PREDICT™) • Screening in silico screening > 4 Mil commercially available cmpds • Hit Charact 3D Models & Purchased SAR (pSAR) to prioritize scaffolds • Lead Opt 3D Models, Biology, and Med Chem to optimize Model Development Screening Hit Characterization Lead Optimization Preclinical Development

  7. EPIX Discovery Strategy Drug Discovery • Modeling Novel GPCR modeling methodology (PREDICT™) • Screening in silico screening > 4 Mil commercially available cmpds • Hit Charact 3D Models & Purchased SAR (pSAR) to prioritize scaffolds • Lead Opt 3D Models, Biology, and Med Chem to optimize Model Development Screening Hit Characterization Lead Optimization Preclinical Development

  8. Modeling GPCRs with PREDICT™ • Unique de novo GPCR structure prediction algorithm • Based on scientific understanding of GPCR folds • from experiments, simulations and theory • Folds the protein within its membrane environment • Does not rely on rhodopsin x-ray structure • Does not use homology modeling • Applicable (in principle) to any GPCR

  9. Ser199 TM5 Asp116 TM3 PREDICT Model Two-Tier Modeling: ~5,000 Decoys Virtual Complex PREDICT Modeling Process GPCR sequence

  10. 6 5 4 7 3 2 1 PREDICTTM: Step I - Build 7 TMs • Represent each helix by a 2D dial • Generate all closed 2D configurations of 7 dials • under geometrical constraints • Optimize each 2D configuration • to maximize hydrophobic moment in the direction of the membrane (introduce experimental constraints) Binding pocket

  11. 6 5 4 7 3 2 1 PREDICTTM: Step II – Translate 2D to 3D • Extend each optimized 2D configuration into a 3D representation and optimize in 3D

  12. EPIX Discovery Strategy Drug Discovery • Modeling Novel GPCR modeling methodology (PREDICT™) • Screening in silico screening > 4 Mil commercially available cmpds • Hit Charact 3D Models & Purchased SAR (pSAR) to prioritize scaffolds • Lead Opt 3D Models, Biology, and Med Chem to optimize Model Development Screening Hit Characterization Lead Optimization Preclinical Development

  13. Docking PREDICTTM Scoring Biological assays EPIX’ in silico Screening Process Data collection Target modeling Library generation Selection of virtual hits

  14. EPIX Screening Libraries • Size: ~4 million drug-like compounds • Source: Catalogues of ~30 reputable vendors • Updates: Continuously (+before new projects) • Criteria: Availability for immediate purchase • Advantages: • Diverse • Rapid access to newest compounds (30% change per year) • Cheap to obtain and to maintain • Quick registration (buy only what is actually needed) • Limitations: • Non-standard targets may not be represented well • Need to improve IP properties since hits will be in public domain

  15. in silico Screening & Hit Characterization • Datamine collection of >4 Mil commercially available cmpds • Select focused cmpd library for target (100,000–400,000) • In silico screening of focused library against target protein • Scoring & selection of prioritized cmpds (200-300 ‘virtual hits’) • Purchase and test ‘virtual hits’ in biological assay • Hit criteria Ki/IC50 < 10mM (validated dose response) • Datamine around hits to generate pSAR • Prioritize scaffold for Lead Optimization • Further optimize model for specific scaffold using pSAR

  16. EPIX Discovery Strategy Drug Discovery • Modeling Novel GPCR modeling methodology (PREDICT™) • Screening in silico screening > 4 Mil commercially available cmpds • Hit Charact 3D Models & Purchased SAR (pSAR) to prioritize scaffolds • Lead Opt 3D Models, Biology, and Med Chem to optimize Model Development Screening Hit Characterization Lead Optimization Preclinical Development

  17. EPIX Paradigm for Lead Optimization • Integrated MedChem–CompChem teams (2:1 ratio) • Extensive use of computational tools (3D structures, predictive ADMET) to navigate the multiple possible optimization pathways: • Suggest/prioritize what to synthesize • Suggest/prioritize what NOT to synthesize • Efficient process, robust, agnostic to the receptor class

  18. Efficient and Effective Discovery Engine Industry Standards EPIX Hits “wet” assay screen <1M compounds ~12 months Hits in silico screen 4M compounds ~ 6 months Lead Optimization ~1,000 compounds 2-5 years to clinical candidate Lead Optimization 100 compounds or less 6-12 months to clinical candidate

  19. EPIX’ Lead Optimization Track Record (1) Estimated

  20. Outline • Overview of EPIX’ Product Portfolio • Drug Discovery Strategy • Case Study – 5HT1A

  21. PRX-00023 ~ Depression • 5-HT1A partial agonist, proven mechanism of action • Estimated world market for treatments $20 billion* • 35M in US (more than 16% of the population) suffer from depression severe enough to warrant treatment at some time in their lives • Substantial commercial opportunity for a selective, better tolerated alternative: • No withdrawal symptoms, sexual dysfunction, weight changes or sleep disturbances as observed with SSRIs • Lacks the addictive and sedative effects of the benzodiazepines • Does not have side effects of azapirones • Initiated Phase 2b trial March 2007 ~ results expected 1H08 • Achieved significant results on depression in Phase 3 anxiety clinical trial • Source: National Institute of Mental Health, 2003 National Comorbidity Study, Sponsored by the National Institutes of Health

  22. Mechanisms of Other Drug Classes SSRI / SNRI • Mechanism results in increased levels of serotonin (5-HT), norepinephrine (NE) • Affects 5-HT (14), NE (>6) receptors • Affects sleep, sexual function, appetite • Withdrawal symptoms • Black box warning Azapirones • 5-HT1A agonists • Affinity for “off-target” GPCRs • Dopamine D2, alpha-1, alpha-2 • Nausea, lightheadedness, headache, restlessness • Slow dose escalation requirements

  23. Mechanism of Action – PRX-00023 Potential advantages • Highly selective for 5-HT1A • No sexual dysfunction • No effects on sleep or appetite • No withdrawal symptoms • Do not expect black box warning • Well tolerated compared to azapirones, with minimal dose escalation required PRX-00023

  24. PRX-00023 Superior to other 5-HT1A Agonists • Azapirones & other 5-HT1A agonists have selectivity issues and metabolic liabilities • PRX-00023 • Very high affinity for 5-HT1A (Ki = 5nM) • Better selectivity • minimal binding to alpha-1 (Ki = 1600nM), alpha-2 (> 3000nM) and dopamine D2 (Ki > 2000nM) receptors compared to Azapirones • Not metabolized to 1-(2-pyrimidimyl)-piperazine, a potent alpha2-adrenergic modulator • Better selectivity results in superior tolerability and no need to a few weeks of multi-step dose titration • Once daily dosing • No significant inhibition of CYP450 or hERG • Well tolerated in three Phase I and two Phase II clinical trials • No significant nausea / lightheadedness vs. azapirones

  25. PRX-00023 Phase 2b in Depression in Progress ~ Data in 1H08 • Double-blind, randomized, placebo-controlled dose clinical trial of PRX-00023 in major depressive disorder (MDD) • 8-week study with 120mg twice daily flexible dosing • Approximately 330 MDD patients • Randomized 1:1 drug vs. placebo • Primary endpoint • Change from baseline in MADRS compared to placebo • Secondary endpoints • Changes in the Hamilton Anxiety Score (HAM-A) • Clinical Global Impressions Improvement Scale (CGI-I) • Clinical Global Severity of Illness Scale (CGI-S)

  26. Outline • Overview of EPIX’ Product Portfolio • in silico Modeling Strategy • Discovery Case Study – 5HT1A

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