|
|
A Universal Vessel Segmentation Method Based on Multi-Scale Filtering and Statistical Mixture Model |
Lu Pei Wang Lei Li Zhicheng Zhou Shoujun* |
Institute of Biomedical and Health Engineering, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, Guangdong, China |
|
|
Abstract Accurate extraction and localization of blood vesselsare the keys to the intervention operation of cardiac and cerebral vessels. Multi-scale filtering strengthens the vessels while weaken the background voxels, but the vessels are still not marked out. Statistical based segmentation method classifies the vessels through model fitting for the histogram curve, but it needs to adjust its model to fit a certain image histogram. To overcome these problems, a universal vessel segmentation method with a fixed model has been proposed in this paper. Firstly, the original image was preprocessed with multi-scale vessel enhancement algorithm. Secondly, a mixture model formed by three probabilistic distributions (one normal distribution and two exponentials) was built to fit the enhanced data. Expectation maximization algorithm has been used for parameters estimation. Finally, the vessels were segmented by maximum a posteriori classification. To test the effectiveness of the proposed method, experiments have been done on a series of phantoms, magnetic resonance angiography (MRA) data and computed tomography angiography (CTA) data. As a result, the segmentation errors of the phantoms are less than 0.3%. Meanwhile, the proposed method performed well on multi-modality images with strong robustness.
|
Received: 12 January 2016
|
|
|
|
|
[1] 金可, 刘苏. 血管影像分割技术综述[J]. 中国制造业信息化, 2012, 41(11): 61-64. [2] Mesejo P, Valsecchi A, Marrakchi-Kacem L, et al. Biomedical image segmentation using geometric deformable models and metaheuristics[J]. Computerized Medical Imaging & Graphics the Official Journal of the Computerized Medical Imaging Society, 2015, 43: 167-178. [3] Ye DH, Kwon DJ, Yun ID, et al. Fast multiscale vessel enhancement filtering[J]. Processings of the SPIE, Medical Imaging, 2008, 6914: 691423-691428. [4] Gao Xin, Uchiyama Y, Zhou Xiangrong, et al. A fast and fully automatic method for cerebrovascular segmentation on time-of-flight (TOF) MRA image[J]. Digit Imaging, 2011, 24 (4): 609-625. [5] 曹容菲, 张美霞, 王醒策, 等. 基于高斯-马尔科夫随机场模型的脑血管分割算法研究[J]. 电子与信息学报, 2014, 36(9): 2053-2060. [6] 王醒策, 文蕾, 武仲科, 等. 面向时飞磁共振血管造影术的脑血管统计分割混合模型[J]. 光学精密工程, 2014, 22(2): 497-507. [7] Wilson DL, Noble JA. An adaptive segmentation algorithm for time-offlight MRA data[J]. IEEE TransMed Imaging, 1999, 18 (10): 938-945. [8] Hassouna MS, Farag AA, Hushek S, et al. Cerebrovascular segmentation from TOF using stochastic models[J]. Med Image Anal, 2006, 10: 2-18. [9] Zhou Shoujun, Chen Wufan, Jia Fucang, et al. Segmentation of brain magnetic resonance angiography images based on map\|mrf with multi-pattern neighborhood system and approximation of regularization coefficient[J]. Medical Image Analysis, 2013, 17(8): 1220-1235. [10] Frangi AF, Niessen WJ, Vincken KL, et al. Multiscale vessel enhancement filtering[C]//Proceedings of the International Conference on Medical Image Computing Computer Assisted Intervention. Lect: Notes Comp Sci, 1998, 1496: 130-137. [11] Lindeberg T. Edge detection and ridge detection with automatic scale selection[J]. International Journal of Computer Vision, 1998, 30(2): 117-156. |
|
|
|