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Efficient Visual Analysis of Dynamic Medical Image Data
Ansprechpartner
Otto-von-Guericke-Universität Magdeburg
Prof. Dr. Bernhard Preim
Dipl.-Ing. Sylvia Glaßer
Universitätsplatz 2
39016 Magdeburg
Tel.: 0391-67-58772 Fax: 0391-67-11164
Projektziele
Spatial and temporal resolution of tomographic medical image data (CT, MRI; etc.) being acquired in medical diagnostics and clinical studies has
increased substantially and will increase further. Particu-larly for dynamic image data, the evaluation software does not sufficiently exploit the
rich informa-tion. A framework shall be developed that combines image interpretation techniques with visual analysis of 4D dynamic medical image
data. Perfusion data is an important and representative example for dy-namic medical image data. These data are acquired, e.g., in ischemic stroke,
cardiac, and tumor diag-nosis. A multi-dimensional space of perfusion parameters needs to be explored to perform a reliable diagnosis. For the first
time, adaptive model-based segmentation techniques will be developed to delineate re-gions of interest in these 4D data sets. Such a visually supported
analysis has several advantages:
- Implicit training lets the user adapt the tool for specializing it to selected problems in perfusion analysis.
- An efficient general solution is provided which might be adapted according to the specific imaging device, the imaging sequence, or the type of contrast
agent administration.
- Interpretation tools can be extended to similar analysis problems, e.g. fMRI data evaluation.
Techniques from cluster analysis, dimension reduction and image segmentation will be used to extract features for visualization. 3D visualization
techniques will be refined and adapted to the peculiarities of high resolution perfusion data. Data exploration will support researching physicians and
medical physicist to assess the influence on image acquisition parameters on the expressiveness of perfusion parameters and combinations thereof. Das
Projekt ist Teil des DFG-SPP (Scalable Visual Analytics: Interaktive visuelle Analysesysteme für komplexe Informationswelten)
Kooperationspartner:
Prof. Dr. Klaus-Dietz Tönnies
Dipl.-Ing. Sebastian Schäfer
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