Author/Authors :
Wang, Jiaxin Beijing Normal University - Beijing, China , Zhao, Shifeng Beijing Normal University - Beijing, China , Liu, Zifeng Beijing Normal University - Beijing, China , Tian, Yun Beijing Normal University - Beijing, China , Duan, Fuqing Beijing Normal University - Beijing, China , Pan, Yutong Beijing Normal University - Beijing, China
Abstract :
Cerebral vessel segmentation is essential and helpful for the clinical diagnosis and the related research. However, automatic
segmentation of brain vessels remains challenging because of the variable vessel shape and high complex of vessel geometry. This
study proposes a new active contour model (ACM) implemented by the level-set method for segmenting vessels from TOF-MRA
data.The energy function of the new model, combining both region intensity and boundary information, is composed of two region
terms, one boundary term and one penalty term. The global threshold representing the lower gray boundary of the target object
by maximum intensity projection (MIP) is defined in the first-region term, and it is used to guide the segmentation of the thick
vessels. In the second term, a dynamic intensity threshold is employed to extract the tiny vessels. The boundary term is used to
drive the contours to evolve towards the boundaries with high gradients. The penalty term is used to avoid reinitialization of the
level-set function. Experimental results on 10 clinical brain data sets demonstrate that our method is not only able to achieve better
Dice Similarity Coefficient than the global threshold based method and localized hybrid level-set method but also able to extract
whole cerebral vessel trees, including the thin vessels.
Keywords :
Active , Cerebral , Threshold , ACM