Bayes clustering and structural support vector machines for segmentation of carotid artery plaques in multicontrast MRI

基于贝叶斯聚类和结构支持向量机的多对比度磁共振成像颈动脉斑块分割

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Abstract

Accurate segmentation of carotid artery plaque in MR images is not only a key part but also an essential step for in vivo plaque analysis. Due to the indistinct MR images, it is very difficult to implement the automatic segmentation. Two kinds of classification models, that is, Bayes clustering and SSVM, are introduced in this paper to segment the internal lumen wall of carotid artery. The comparative experimental results show the segmentation performance of SSVM is better than Bayes.

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