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Dynamic Data Driven Applications Systems

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Determine tumor characteristics via segmentation, texture ... PGE: Torres-Verdin. University of Chicago CS: Stevens, Papka. University of Maryland CS: Sussman ... – PowerPoint PPT presentation

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Title: Dynamic Data Driven Applications Systems


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Dynamic Data Driven Applications Systems
  • Joel Saltz
  • Chair and Professor
  • Biomedical Informatics Department
  • The Ohio State University

3
Parameter Study Application Scenarios
  • Clinical imaging studies
  • Determine tumor characteristics via segmentation,
    texture analysis of medical imagery
  • Test and refine algorithms by invoking test
    algorithms on distributed datasets of gt1000
    dynamic contrast MR studies
  • Simulation parameter studies
  • 1000s of oil reservoir simulations used to
    determine how to optimize oil production

4
Parameter Study Data Analyses
  • Compare dataset contents
  • Compare features
  • Spatially based comparisons
  • Map datasets between mesh/coordinate systems

MicroCT Osteoporosis Study Kim Powell, Cleveland
Clinic Don Stredney, OSC
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Canonical Services
  • Component Framework for Combined Task/Data
    Parallelism
  • Data Aggregation, generalized reductions
  • Crucial and ubiquitous in data analysis
  • Integrated with Globus/NWS/SRB etc (NPACkage)
    OGSA integration underway
  • Canonical services carried out by Data Parallel
    Components
  • Data Cluster/Decluster/Spatial Indexing/Range
    Query Service (Inherited from Active Data
    Repository)
  • Super-Semantic Data Cache when carrying out
    parameter studies, use caching to eliminate
    redundant computations (Andrade SC2002)
  • Grid Generalized Reduction (Ferreira ICS2002

6
Clinical Studies using Dynamic Contrast Imaging
  • 1000s of dynamic images per research study
  • Iterative investigation of image quantification,
    image registration and image normalization
    techniques
  • Assess techniques ability to correctly
    characterize anatomy and pathophysiology
  • Ground truth assessed by
  • Biopsy results
  • Changes in tumor structure and activity over time
    with treatment
  • Images from many sites including NIH, Heidelberg,
    Oklahoma, Ohio State
  • Collaboration with Michael Knopp, MD

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prior to therapy
1370
1370
after 2 cycles
1421
1421
1421
after 4 cycles
1438
1438
Knopp M, OSU Radiology / dkfz
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DCE-MR Analyses
  • Fit pharmacokinetic model ODEs
  • Tumor characterization using texture analysis and
    feature detection techniques
  • Register images from consecutive studies
  • Register images within single time dependent
    study to correct for patient motion
  • Images obtained with varying time/space
    resolution -- interpolate onto common time/space
    mesh

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  • A Data Intense Challenge
  • The Instrumented Oilfield of the Future
  • Participants
  • University of Texas at Austin
  • CSM Wheeler, Dawson, Peszynska
  • IG Sen, Stoffa
  • PGE Torres-Verdin
  • University of ChicagoCS Stevens, Papka
  • University of MarylandCS Sussman
  • Ohio StateCS Saltz, Kurc
  • RutgersECE Parashar
  • MITEngineering Haines

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  • A Data Intense Challenge
  • The Instrumented Oilfield of the Future
  • Industrial Support (Data)
  • British Petroleum (BP)
  • Chevron
  • International Business Machines (IBM)
  • Landmark
  • Shell
  • Schlumberger

12
Production Simulation via Reservoir Modeling
Monitor Production by acquiring Time Lapse
Observations of Seismic Data
Revise Knowledge of Reservoir Model via Imaging
and Inversion of Seismic Data
Modify Production Strategy using an Optimization
Criteria
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Example Scenario (SC2001)
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Software Support
  • Component Framework for Combined Task/Data
    Parallelism
  • Use defines sequence of pipelined components --
    filter group
  • User directive tells preprocessor/runtime system
    to generate and instantiate copies of filters
  • Many filter groups can be simultaneously active
  • Integration proceeding with Globus/Network
    Weather Service
  • SC 2002, HCW2002, Parallel Computing 2001

15
DataCutter
  • Components
  • Embarrasingly Parallel
  • Generalized Reduction
  • Wrapped MPI
  • Flow control between components
  • Schedulers place filters on grid processors
    (scheduler API)
  • Stream based communication being upgraded to
    OSGA model
  • Data Parallel Compiler Prototype
  • NPACkage

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Integrating DataCutter with existing Grid
toolkits SRB (done), Globus, NWS (ongoing)
  • SRB integration Subset and filter datasets
  • Globus integration DataCutter uses Globus
    resource discovery, resource allocation,
    authentication, and authorization services.
  • Network Weather Service (NWS) integration NWS
    for used for system monitoring.

17
Cannonical Services
  • Canonical services carried out by Data Parallel
    Components
  • Data Cluster/Decluster/Spatial Indexing/Range
    Query Service (Inherited from Active Data
    Repository)
  • Super-Semantic Data Cache (Andrade SC2002)
  • Grid Generalized Reduction (Ferreira ICS2002)

18
Clustering/Declustering Datasets
  • Partition dataset into data chunks -- each chunk
    contains a set of data elements
  • Each chunk is associated with a bounding box
  • DataCutter Data Loading Service
  • Distributes chunks across the disks in the system
  • Constructs an R-tree index using bounding boxes
    of the data chunks

Disk Farm
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Super-Semantic Data Cache
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Advantage of Using Cached Intermediate Results
(Virtual Microscope)
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Grid Generalized Reduction
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Other Biomedical Grid Applications
Virtual Microscope
  • Grid based clinical research support
  • 1000s of clinical research sites
  • Different studies involve different subsets of
    sites
  • Ad-hoc federated databases
  • Lots of data naming issues
  • Support for anonymization
  • Role based data access
  • Support for authentication, encryption
  • Support for image analysis
  • NCI Cancer Center Support

versus
query
images
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DataCutter Development Group
University of Maryland Alan Sussman Henrique
Andrade Christian Hansen
Ohio State University Joel Saltz Tahsin Kurc Umit
Catalyurek Gagan Agrawal Renato Ferreira
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