Pulmonary nodule segmentation method of LBF active contour model based on information entropy and combination vector

A technology of active contour model and pulmonary nodules, which is applied in the field of medical image processing, can solve the problems such as the influence of CAD diagnosis process, the inability to achieve accurate segmentation of vascular adhesion pulmonary nodules, and the inability to accurately segment

Active Publication Date: 2017-08-01
TAIYUAN UNIV OF TECH
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Problems solved by technology

It is prone to over-segmentation or under-segmentation during segmentation
If the correct segmentation of nodules cannot be achieved, the subsequent CAD diagnosis process will inevitably be affected
Usually, the segmentation of pulmonary nodules is mostly based on a single CT image. However, this method cannot achieve accurate segmentation of vascular adhesion pulmonary nodules.
The reasons are as follows: (1) Since the gray values ​​of blood vessels and nodules in CT slices are relatively close, it is extremely difficult to effectively separate them, and it is also easy to cause mis-segmentation; (2) In the lung tomography In the picture, the cross-section of blood vessels and nodules are spherical in shape, which is difficult to distinguish
In view of the above problems, only relying on CT images cannot be accurately segmented

Method used

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  • Pulmonary nodule segmentation method of LBF active contour model based on information entropy and combination vector
  • Pulmonary nodule segmentation method of LBF active contour model based on information entropy and combination vector
  • Pulmonary nodule segmentation method of LBF active contour model based on information entropy and combination vector

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specific Embodiment approach

[0091] refer to figure 1 , The process of the present invention includes: acquisition of the region of interest of the pulmonary nodule, construction of the initial contour, construction of a joint vector based on the edge guidance function and grayscale, improvement of the LBF model, evolution calculation of the initial contour, and the like. The specific implementation of the inventive method is as follows:

[0092] A. Acquisition of the region of interest

[0093] First, the Region of Interest (ROI) in the lung parenchyma image should be extracted, and the specific steps are as follows:

[0094] A1. The CT and PET images were segmented using the Otsu threshold to obtain lung parenchyma images, which were then registered.

[0095] A2. Calculate the pixel point O with the largest SUV value in the lung parenchyma area of ​​the PET image, and then use this point as the center to construct a circular template with R as the radius, and finally register it to the CT image as the...

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Abstract

The invention discloses a pulmonary nodule segmentation method of an LBF active contour model based on information entropy and combination vector. The pulmonary nodule segmentation method is advantageous in that by fully combining with various characteristic information of medical PET images and medical CT images, the SUV values of the PET images are used to acquire a pulmonary nodule region of interest; an initial contour of a nodule is constructed by adopting an automatic threshold value iteration method; a guiding function of a nodule edge evolution is constructed according to the SUV information of the PET images, and by combining PET gray scale combination vectors with CT gray scale combination vectors, the energy functional of the LBF model is improved, and then evolution of a contour curve is accurately stopped at the edge of the pulmonary nodule. The pulmonary nodule segmentation method is advantageous in that operation is simple, and the batch type automatic segmentation of the angiosynizesis type pulmonary nodule is realized, and strong stability and strong accuracy are provided.

Description

technical field [0001] The invention belongs to the field of medical image processing, and specifically relates to a pulmonary nodule segmentation method based on information entropy and a joint vector LBF active contour model, based on various information features of medical PET and CT images, for pulmonary nodules of vascular adhesion type method of segmentation. Background technique [0002] Computer-aided diagnosis (Computer Aided Diagnosis, CAD) system is a new technology that can assist doctors to interpret medical images. Automated second opinions. However, in the diagnosis of pulmonary nodules, due to the complex structure of the lung, the shape and location of the nodules are different in different cases, it is difficult to accurately locate the nodules in the cross-sectional scan of the whole lung by the method of naked eye reading alone. Location and lesion type. In the lung cavity, red blood cells in the blood are rich in nutrients, which provide a good metabo...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/149G06T7/11G06T7/13G06T7/136
Inventor 强彦闫晓斐赵涓涓董林佳
Owner TAIYUAN UNIV OF TECH
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