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Grid technology and medical imaging

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Grid technology and medical imaging Derek Hill Division of Imaging Sciences GKT School of Medicine, Guy s Hospital Derek.Hill_at_kcl.ac.uk Summary Some observations of ... – PowerPoint PPT presentation

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Title: Grid technology and medical imaging


1
Grid technology and medical imaging
  • Derek Hill
  • Division of Imaging Sciences
  • GKT School of Medicine, Guys Hospital
  • Derek.Hill_at_kcl.ac.uk

2
Summary
  • Some observations of how computing and imaging
    has developed in medical imaging
  • What can the grid offer medicine and healthcare
  • Two demonstrators
  • Image-based decision support
  • Image analysis for drug discovery

3
Applications of medical imaging
  • Healthcare
  • Patient diagnosis
  • Patient treatment
  • Screening
  • Quality assurance
  • Medical research
  • Cohort comparisons
  • Longitudinal studies
  • Drug discovery
  • Surrogate end-points in drug trials (pre-clinical
    and clinical)
  • Device development
  • Next generation orthopaedic implants

4
Image guided interventions
Images Courtesy Guys Hospital
5
Image guided interventions II
Images Courtesy Guys Hospital
6
Labelling structures using a reference atlas
7
Labelling patient images in database
Reference image (example slice)
Database subject image (example slice)
8
Example labelled subject
Example database subject to whom labelled
reference image has been warped
9
Surgical verificationAccuracy of surgical
placement against plan
  • Surgeon plans on X-ray or CT, uses database of
    prostheses
  • Operation takes place using plan as guidance
  • Post operative X-ray evaluated for accuracy of
    placement
  • Data stored and used for short term assessment
    and long term evaluation studies

Courtesy of Ian Revie Depuy International
10
Support for Multidisciplinary Collaborative
EnvironmentsTriple Assessment of Breast Cancer
Patients (MIAKTS)
  • Surgeons
  • Radiologists
  • Pathologists
  • Oncologists
  • Nurses

11
Multidisciplinary Management of Breast Cancer
Pathology
Images courtesy of Oxford and Guys
Radiology
Surgery
12
Magnetic resonance imaging for breast screening
(MARIBS)
  • Is MRI an effective way of screening young women
    at high risk of breast cancer?
  • 17 Centres in the UK (and associated with other
    large trials in Europe and Canada)
  • Led by the Institute of Cancer Research
  • MRC and NHS funded study

13
Complex processing for MARIBS and to support
triple assessment
MR Mammogram
Images courtesy of Guys Hospital and KCL
14
How e-science can help
  • E-science is providing
  • An easy-to-use registration service to align and
    process the images
  • Image-derived metadata that can be queried for
    clinical decision support or for research
  • Ontologies to improve interoperability of data
    sources.

15
Bone DiseaseWhat changes do we see in Osteo
Arthritis?
Courtesy Chris Buckland-Wright and Lewis Griffin
16
Biologists explanations of these changes involve
multiple scales.
Causation flows from fine to coarse
17
Model at multiple scales
18
Distributed computing for mega-scale modelling.
19
Size of medical images
  • An individual 2D medical image is quite small
  • Nuclear medicine 32kByte
  • Magnetic Resonance Imaging (MRI) 128kByte
  • X-ray Computed Tomography (CT) 512kByte
  • X-ray angiogram 1Mbyte
  • Chest x-ray 16Mbyte
  • One patient study is quite large
  • Eg 1 heart study in MRI is typically 1Gbyte
  • Aggregated data from cohorts can be very large
  • Eg analysis of 500 subjects

20
Image metadata
  • Details of image acquisition
  • Modality
  • Details of acquisition (modality specific)
  • Geometrical information
  • Timing information
  • Information about patient
  • Name, address, doctors name, patient identifier
  • Past medical history, family history, social
    history
  • Presenting complaint, differential diagnosis

21
Characteristics of medical image analysis software
  • Real-time interaction
  • Viewing and manipulation of 3D volumes and
    2D/3Dtime data
  • Interactive structure delineation
  • Automatic algorithms
  • Rapid evolution of algorithms (not based on
    legacy code)
  • Major area of international research
  • Algorithm complexity increases faster than
    Moores law
  • Frequently generate substantial derived
    information
  • Many times the size of the original data

22
Medical image storage
  • Historically, images have been printed onto film
    for storage, and archived in removable media that
    are usually unreadable after about 3 years
  • Digital medical image archives are becoming
    standard (especially in Japan!)
  • Patient image storage is distributed (patients
    often visit many hospitals over course of their
    life)
  • Many research studies involve multi-site image
    acquisition

23
Some Observations
  • Medical and healthcare industry and hospitals do
    not regularly use complex information processing,
  • It is not part of their core business to invest
    in the implementation and support of this
    activity
  • uptake has been disappointing
  • Imaging research and development in academic labs
    often stops with the publication of a new
    method/algorithm
  • Yet over the last decade we have seen major
    advances in many aspects of this technology
    (image interpretation, segmentation, shape
    analysis, registration, visualisation, ..)
  • There is little data sharing except multicentre
    research studies where all images send on
    removable media to central analysis site.
  • International data sharing is problematic

24
  • Computing is not a core business of healthcare
    organisations and related companies (eg pharma)
  • The market is used to paying for services as
    needed (eg image acquisition is paid for on a
    per-patient basis, analysis could be the same)

25
Potential benefits of the grid
  • More effective sharing of data
  • More efficient multi-professional working in
    patient management
  • Access to substantial on-demand computing
    resource
  • New collaborations of equals in which
    multicentre studies have full scientific input
    from all sites
  • New ways of image analysis needs being met
  • Eg new companies delivering grid services to
    healthcare and pharmaceutical industry.

26
Two example applications
  • Image-based decision support
  • Analysis of images for drug-discovery

27
A dynamic brain atlas
  • Grid-enabled decision support in healthcare

28
Context
  • Better information management is a high priority
    in the modernization of the NHS.
  • Decision support is a key component
  • Existing example prompting doctor with
    contra-indications of selected medicines
  • We show how the grid can bring image-based
    decision support
  • Calculating a customized brain atlas on the fly

29
Workflow of busy radiologist
Load patient image from worklist
Easy?
Yes
No
diagnosis
30
Workflow of busy radiologist
Load patient image from worklist
Easy?
Yes
No
diagnosis
31
need reference data
32
200 reference subjects
Example slices From MRI Volume images
33
KINGS COLLEGE LONDON
IMPERIAL COLLEGE
Kings College London (Guys Campus)
Oxford University
34
KINGS COLLEGE LONDON
IMPERIAL COLLEGE
Kings College London (Guys Campus)
Oxford University
35
KINGS COLLEGE LONDON
IMPERIAL COLLEGE
Kings College London (Guys Campus)
Create atlas
Oxford University
36
The Radiologists view
37
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40
Conclusions
  • The dynamic atlas provides a customized
    authoritative reference presented in an intuitive
    way
  • The doctor can see at a glance the normal range
    of sizes and shapes of each brain structure,
    overlaid on the patients own scan, assisting
    diagnosis.
  • The grid will bring new ways of working to
    Healtcare

41
Team
  • Derek Hill, Thomas Harkens, Kate McLeish, Colin
    Renshaw, Kings College London (Guys Campus)
    Derek.Hill_at_kcl.ac.uk
  • Jo Hajnal, Imperial College London (Hammersmith)
    jhajnal_at_ic.ac.uk
  • Daniel Rueckert, Imperial College London (South
    Ken) dr_at_doc.ic.ac.uk
  • Steve Smith, University of Oxford
    steve_at_fmrib.ox.ac.uk

42
Grid services in the drug-discovery workflow
43
Context
  • Pharmaceutical companies are major users of
    imaging
  • They need validated automated image analysis to
    quantify drug efficacy for surrogate endpoints

44
Drug discovery
45
Demonstrator system
3. Registration job running
2. Transfer data by ftp or grid-ftp
IXI
1. Locate image data
GSK
4. Download results
Image registration service
think of grid-ftp as a secure version of ftp
46
Commercial opportunities
  • Specialist companies will provide complex
    information processing services (eg in medical
    image analysis)
  • They will purchase computing resource as needed
  • Their customers will be
  • Hospitals, PCTs
  • The pharmaceutical industry
  • Medical devices industry
  • Government agencies

47
Conclusions
  • Medical imaging is well suited to grid
    capabilities
  • There are particular problems of security and
    confidentiality
  • There is less legacy s/w and hardware in medical
    imaging than in some other scientific and
    engineering applications

48
Thankyou
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