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DO (WILL) GRIDS MATTER IN DRUG DISCOVERY? Arthur Thomas SIB/Vital-IT and SwissBioGrid.

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Presentation on theme: "DO (WILL) GRIDS MATTER IN DRUG DISCOVERY? Arthur Thomas SIB/Vital-IT and SwissBioGrid."— Presentation transcript:

1 DO (WILL) GRIDS MATTER IN DRUG DISCOVERY? Arthur Thomas SIB/Vital-IT and SwissBioGrid

2 Biology: Big Science! Osaka/Hitachi UHVEM: World’s largest electron microscope Argonne Advanced Photon Source: World’s largest X-ray Crystallography System US NHMFL: 900MHz 21-T wide-bore NMR Facility Automation Partnership: HTS “Factory” 2.5x10 5 /8hr 10 7 data points/year Sanger Institute Sequencing Factory Siemens PET scanner

3 Biology: Big Data! 32,000 measures/spectrum 900 spectra/LC run = 28,800,000 measurements (55MB)/LC run 55 MB/LC run 3 MS-MS/spectrum 200 KB/MS-MS (900 x 3 x 200 KB) + 55 MB = 595 MB 10 spectra/mm = 100 spectra/mm 2 100 x 100 = 10,000 spectra/cm 2 16 x 16 cm 2 gel 6 x 16 x 10,000 = 2,560,000 spectra/gel 2,560,000 x 200 KB = 512 TB [Source: Ron Appel (SIB)] 32,000 measures/spectrum 900 spectra/LC run = 28,800,000 measurements (55MB)/LC run 55 MB/LC run 3 MS-MS/spectrum 200 KB/MS-MS (900 x 3 x 200 KB) + 55 MB = 595 MB 10 spectra/mm = 100 spectra/mm 2 100 x 100 = 10,000 spectra/cm 2 16 x 16 cm 2 gel 6 x 16 x 10,000 = 2,560,000 spectra/gel 2,560,000 x 200 KB = 512 TB [Source: Ron Appel (SIB)] [Source: Selinger et al. Trends in Biotech. (2003)]

4 Biology: Big Data! Source: GenomeNet, Kyoto ~1000 different biology reference data bases: Genome/Nucleotide Sequence Databases RNA sequence databases Protein sequence databases Structure Databases Metabolic and Signaling Pathways Human Genes and Diseases Microarray and other Gene Expression Databases Proteomics Resources Other Molecular Biology Databases Organelle databases Plant databases Immunological databases Source: M Y Galperin, Nucleic Acids Research (2006)

5 Biology: Visualisation! Collaboration! NCMIR “BioWall” SAGE HP Halo Collaboration Studio

6 Drug Discovery & Development 12+ years, $1-1.25 billion HTS QSAR ADME/Tox Sequence Homology, Gene Expression, Proteomics, Comb. Libraries System & Disease Modelling Trial Design ‘Omics Paradigm Change Old ScienceNew Science Classical chemistryCombinatorial chemistry Basic biology‘Omics, Biotechnology Experimentation Computation Low throughputHigh throughput Animal studiesMolecular imaging Paradigm Change Old ScienceNew Science Classical chemistryCombinatorial chemistry Basic biology‘Omics, Biotechnology Experimentation Computation Low throughputHigh throughput Animal studiesMolecular imaging

7 Impact of ‘omics Source: H. Rauwerda et al Drug Discovery Today (2006)

8 The Discovery Sieve

9 Getting Less and Less for More and More Source: PPD Inc.

10 Pharma Challenges Declining productivity and ROI –$1+ billion to bring a drug to market, $1 million/day revenue lost to delay, declining post-patent lifetimes (5-7 years) –Most drug candidates fail 1:10 development candidates fail 1:2 clinical trial candidates fail –Number of NCEs has been falling for a decade –2:3 drugs do not generate a lifetime return –Blockbuster (“one size fits all”) and “me too” mentalities not sustainable; many patents (~$72b) expiring in next 5 years –Stricter regulation (pre- and post-market), greater price pressure and greater liability (Vioxx, Baycol, …) Deluge of data, drought of knowledge –Huge investment in high-throughput data generation technologies not matched by investment in data analysis technologies –Poorly integrated data silos Increasingly collaborative landscape –Challenges of sharing information across enterprise boundaries

11 New Pharma Ecosystem? 1,500 ($50b+) pharma/biotech partnerships in last 7 years –e.g. 50% of Roche pharma/diagnostic revenues from licensing deals Source: Recombinant Capital

12 Typical Grid Applications Drug Discovery –Sequence analysis –Microarray analysis/network inference –Virtual Screening (Autodock, CHARMM, Glide, FlexX) Development –ADME, PK/PD (NONMEM, WinNonLin) –Trial design (TrialSimulator) –Process validation, compliance Marketing –Market data analysis (SAS, SPSS) “Instead of spending millions of dollars and years in the lab screening hundreds of thousands of compounds, now it will be possible to screen hundreds of millions of molecules in months” (Graham Richards)

13 Pharma Grids: the Good News J&JPRD 1 –1,200 rising to 3,000 PCs; mix of Linux (clusters) and Windows (desktops) –20+ applications –United Devices GridMP Novartis 2 –Began in 2001 –Now 2,700+ PCs (out of 65,000), 5+ Tflops, 25,000 PC’s eventually? –Apps: docking, genome annotation, chemoinformatics, clinical trial simulation, text mining –$400k investment, $2+ millions annual savings –United Devices GridMP for PC farm –Rigidly standardized PC environment gsk 1 –1,000+ PCs –$1 million estimated annual savings –United Devices GridMP for PC farm 1 Source: United Devices, Inc. 2 Source: Manuel Peitsch, Novartis

14 Pharma Grids: not-so-good News “Less than half of the top 20 pharmaceutical companies are implementing Grids” [ William Fellows, 451 Group]

15 Barriers to Grid adoption Difficulty of Building a Business Case –Cui bono? –Measuring the ROI? Unsuitable licensing models: driving open source? Trust and Access Control issues –Extending to the balkanized (fire-walled) global enterprise –Extending to the whole development ecosystem Technical Barriers –Lack of suitable (“embarassingly parallel”) applications –Heterogeneity of platforms –Poor standardization of middleware (commercial vs open source): will SOA (OGSA) solve this? –Poor data grid management, semantic integration: driving development of ontologies? –Limited bandwidth: increasing use of Lambda rails?

16 Overcoming the Barriers: Building a Business Case Capacity Improvement –Driven by ROI –Reduced build and running costs of PC Grids cf. dedicated clusters R&D Process Innovation –Driven by need for new ways of doing –Collaborative research (industry/academia) –“Open source research” (NIH, Wellcome)

17 Overcoming the Barriers: Technical Software –Less intrusive, more standardized middleware –Web services, OGSA Data Management –DataGrid techologies Data Integration –Ontologies and shared knowledge spaces “Utility/On-Demand” Computing Bandwidth –National and international LambdaRails Virtual Laboratories/Organizations

18 LambdaRails™ Source: OptiPuter Group

19 SwissBioGrid: A National Resource Dedicated to large-scale computational applications in bioinformatics, modelling, chemoinformatics and bio-medical sciences CSCS manages GRID infrastructure, middleware, security SIB/Vital-IT has primary responsibility for providing bioinformatics application validation and optimization, Web services, database services Some sites compute-intensive, some data-intensive

20 SwissBioGrid: A Mixture of Clusters and PCs UniZH Matterhorn (Sun Grid Engine) SIB Vital-IT (Platform LSF) ETHZ Hreidar (Sun Grid Engine) NorduGRID/ ARC NorduGRID/ ARC CSCS - Ticino Cluster (Itanium, LSF) - Terrane Cluster (PS 5, PBS) - Sun Cluster (PBS) UniBS/FMI PC farms ProtoGRID Metascheduler UniBS BC2 cluster (Platform LSF)

21 Some Good News… “Open source discovery” is thriving! Anthrax (7,000+ CPU years) Smallpox (68,000+ CPU years) –400,000+ CPUs, 53,000+ CPU years to date, 75+ CPU years/day Human Proteome folding, Phase II (761+ CPU years) Cancer project Phase II (437+ CPU years) AIDS project (25,000+ CPU years)

22 Dengue [10 million infections, 100,000 deaths/year] – Autodock, Glide – Mixed PC and cluster Grid – 130,000 ligands from NCI DTP library docked against dengue NS5 protein – ~ 1 CPU min/dock – 70 hits found, being evaluated in vitro – Plan to dock 2.7 million ligands from ZINC library – 1875 CPU-days for 1 target/1 site/1 parameter set/1 library (“parameter sweep”) More Good News… WISDOM Malaria [500 million infections, 1.3 million deaths/year] –Autodock, FlexX –80 CPU years in 6 weeks –1,000,000 ligands against 11 targets –Top 1,000 hits identified Avian Flu [the next Big One] –77 CPU years on 2000 computers –300,000 ligands against 8 Influenza A neuraminidase targets –Hits now being analyzed

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24 From Data Sharing to Knowledge Sharing DataGrid –SwissBioGrid experiment in data grid using Avaki –Complex update patterns KnowledgeGrid –Aggressive use of ontologies for knowledge standardization and sharing Gene Ontology

25 Thank You! Questions?


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