Automatic carotid artery internal and external wall segmentation method based on shape prior and similarity constraint

An automatic carotid artery segmentation technology, applied in image analysis, character and pattern recognition, image data processing, etc., can solve problems such as low accuracy and inability to achieve outer wall segmentation

Active Publication Date: 2015-06-03
南京景三医疗科技有限公司
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Problems solved by technology

[0004] In order to overcome the non-automatic way of the existing carotid artery segmentation method, the inability to realize the segmentation of the outer wall, and the lack of high accuracy, the present invention provides an automatic method, which effectively realizes the segmentation of the inner and outer walls, and has a higher accuracy based on shape prior and Automatic Segmentation of Inner and Outer Walls of Carotid Arteries Based on Similarity Constraints

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  • Automatic carotid artery internal and external wall segmentation method based on shape prior and similarity constraint
  • Automatic carotid artery internal and external wall segmentation method based on shape prior and similarity constraint
  • Automatic carotid artery internal and external wall segmentation method based on shape prior and similarity constraint

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Embodiment Construction

[0046] The present invention will be further described below.

[0047] A method for automatic segmentation of carotid inner and outer walls based on shape prior and similarity constraints, comprising the following steps:

[0048] 1) Detect the lumen of the carotid artery by the SVM (Support Vector Machine, Support Vector Machine) method, and obtain the position of the lumen;

[0049] The process of detecting the position of the lumen is mainly as follows: In the MR image, the lumen area has a relatively special shape and gray level (close to a circle, with a small gray value), and its position is relatively fixed, so it can be easily compared with other Tissue is differentiated and the approximate location of the lumen is obtained. Firstly, the lumen position of each carotid artery training sample is counted. Next, two rectangular boxes covering the lumen region were used as ROIs. One of them represents the lumen of the left carotid artery and the other represents the lumen...

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Abstract

The invention relates to an automatic carotid artery internal and external wall segmentation method based on shape prior and similarity constraint. The segmentation method comprises the following steps: 1) detecting a carotid artery lumen through an SVM method to obtain a position where the lumen is; 2) segmenting an internal wall by using an anisotropic segmentation method; 3) learning a regression model in combination of the features of an external wall based on the segmented internal wall, estimating the approximate position of the external wall and constructing a probability model; 4) segmenting the external wall by using a similarity constraint algorithm. The invention provides the automatic carotid artery internal and external wall segmentation method based on the shape prior and similarity constraint, which adopts an automatic mode, effectively realizes the internal and external wall segmentation and is higher in accuracy.

Description

technical field [0001] The invention relates to the field of medical image segmentation, in particular to a method for segmenting the inner and outer walls of a carotid artery. Background technique [0002] Medical image segmentation is a process of dividing an image into several regions according to the similarity within the region and the difference between regions. The vascular image segmentation is to "extract" the vascular structure from XRA, MRI, CT and other medical images. Considering the tissue complexity, blurred image, and low contrast of the vascular image itself, the traditional image segmentation method is not suitable. [0003] At present, the blood vessel segmentation methods mainly include the level set method based on geometric deformation, the geodesic active contour model, the graph cut method based on the active contour model, and so on. Existing segmentation methods generally require users to provide background and foreground seed points as a priori, ...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00G06K9/66
Inventor 张剑华何俊丽陈磊汪晓妍滕忠照管秋陈胜勇
Owner 南京景三医疗科技有限公司
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