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Departments >> Faculty of Engineering >> Department of Computer Science >> Chair of Computer Science 5 (Pattern Recognition) >>
BMBF Molecular Imaging in Medicine (MoBiMed) - Mechanism of targeting, Angiogenesis for diagnostics and and therapy

The project consortium is concerned with the research of the imaging of tumor angiogenesis. To that end specific tumor markers that can be used in molecular imaging are developed by the clinical project partners. Research is performed mostly on small animals (mouse, rat) and with multimodal imaging techniques to evaluate and analyze tumor growth and marker specificity.

In this project the pattern recognition lab develops algorithms and a software environment for use in multimodal (PET, CT, MR), small animal imaging. Standard algorithms have to be adjusted to the specific challenges in small animal imaging, arising from the small subject size. The work focuses on registration and segmenation techniques.

Image registration techniques allow to correlate different modalities, such that for example marker specificity to the tumor region can be easily evaluated. Both rigid and non-rigid registration algorithms are currently under development. The rigid registration is focusing on speed, accuracy and robustness with respect to transforms that contain only rotations and translations. The nonrigid registration calculates a free form transform, which allows for a direct pixel-by-pixel comparison of the registered images.

Segmentation techniques that are currently investigated are mostly semi-automatic. This allows the user to specify roughly the regions of interest that are then automatically refined by the algorithm. The Random Walk algorithm has been implemented, to facilitate easy and fast segmentation. The algorithm is hardware accelerated on the graphics hardware (GPU) and can yield a segmentation in less than 5 seconds.

Future work will mostly focus on adapting existing algorithms to small animal imaging. In cooperation with the Department of Nuclear Medicine it is planned to identify useful workflows for the evaluation of PET marker performances. These workflows can then be supported by specifically developed software tools.

Project manager:
Prof. Dr.-Ing. Joachim Hornegger, Prof. Dr. med. Torsten Kuwert

Project participants:
Dr. Volker Daum, Dr.-Ing. Dieter Hahn, Prof. Dr. rer. nat. Olaf Prante

Keywords:
segmentation; registration; small animal imaging; angiogenesis

Duration: 1.1.2009 - 31.12.2012

Mitwirkende Institutionen:
Nuklearmedizinische Klinik, Universitätsklinikum Erlangen
Radiologische Klinik und Poliklinik Universitätsklinikum Heidelberg
Deutsches Krebsforschungszentrum
Klinik und Poliklinik für Nuklearmedizin, Universitätsklinikum Münster
European Institute for Molecular Imaging (EIMI)
Diagnostische und Interventionelle Radiologie, Universitätsklinikum Tübingen

Publications
Hahn, Dieter ; Daum, Volker ; : Automatic Parameter Selection for Multi-Modal Image Registration. In: IEEE Transactions on Medical Imaging 29 (2010), No. 5, pp 1140-1155
Hahn, Dieter ; Daum, Volker ; ; Kuwert, Torsten: Data-Driven Density Estimation applied to SPECT Subtraction Imaging for Epilepsy Diagnosis. In: Wells, William ; Joshi, Sarang ; Pohl, Kilian (Org.) : Proceedings of the MICCAI Workshop on Probabilistic Models For Medical Image Analysis (Medical Image Computing and Computer-Assisted Intervention - MICCAI 2009, 12th International Conference London, UK 20.09.2009). 2009, pp 115-126.
Daum, Volker ; Hahn, Dieter ; ; Kuwert, Torsten: PCA Regularized Nonrigid Registration for PET/MRI Attenuation Correction. In: Wells, William ; Joshi, Sarang ; Pohl, Kilian (Org.) : Proceedings of the MICCAI Workshop on Probabilistic Models For Medical Image Analysis (Medical Image Computing and Computer-Assisted Intervention - MICCAI 2009, 12th International Conference London, UK 20.09.2009). 2009, pp 127-138.
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