Magnetic resonance angiography (MRA) is currently used for cerebral flowing blood visualization. Many segmentation methods have been proposed for brain vessel segmentation, in order to help analyzing the huge data (generally more than 10/sup 7/ voxels) provided by MRA acquisitions. Recently, a new family of segmentation algorithms, involving high level anatomical knowledge, has been studied. These new algorithms require a way to model and store this knowledge. An efficient and general approach to reach that goal consists in using atlases. In this paper a method is proposed to create vascular atlases of the brain, containing information useful for vessel segmentation purpose. This atlas creation process, designed for phase-contrast MRA (PC-MRA), is composed of four steps: segmentation, quantification, registration and data fusion. It uses a region-growing algorithm for vessel segmentation, a skeleton and vessel size determination algorithm, based on discrete geometry, for determination of quantitative properties, and a topology preserving non-rigid registration method to fuse the information. This method, which has been applied to a 18 PC-MRA database, enables to create vascular atlases containing information on brain vessels position, density, size and orientation. The generated atlases are essentially devoted to segmentation purpose but can also be used for anatomical description or pathology detection.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Cerebral vascular atlas generation for anatomical knowledge modeling and segmentation purpose


    Contributors:
    Passat, N. (author) / Ronse, C. (author) / Baruthio, J. (author) / Armspach, J.-P. (author) / Maillot, C. (author)


    Publication date :

    2005-01-01


    Size :

    437057 byte





    Type of media :

    Conference paper


    Type of material :

    Electronic Resource


    Language :

    English



    A classification approach for anatomical regions segmentation

    Kalinin, M. / Raicu, D.S. / Furst, J.D. et al. | IEEE | 2005


    A Classification approach for Anatomical Regions Segmentation

    Kalinin, M. / Raicu, D. S. / Furst, J. D. et al. | British Library Conference Proceedings | 2005


    3D anatomical shape atlas construction using mesh quality preserved deformable models

    Zhang, S. / Zhan, Y. / Cui, X. et al. | British Library Online Contents | 2013


    Database-guided segmentation of anatomical structures with complex appearance

    Georgescu, B. / Zhou, X.S. / Comaniciu, D. et al. | IEEE | 2005