System and method for carbon particle therapy for treatment of cardiac arrhythmias and other diseases
US-11857808-B2 · Jan 2, 2024 · US
US2016005193A1 · US · A1
| Field | Value |
|---|---|
| Publication number | US-2016005193-A1 |
| Application number | US-201514754867-A |
| Country | US |
| Kind code | A1 |
| Filing date | Jun 30, 2015 |
| Priority date | Jul 2, 2014 |
| Publication date | Jan 7, 2016 |
| Grant date | — |
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Disclosed are systems, devices, and methods for determining pleura boundaries of a lung, an exemplary method comprising acquiring image data from an imaging device, generating a set of two-dimensional (2D) slice images based on the acquired image data, determining, by a processor, a seed voxel in a first slice image from the set of 2D slice images, applying, by the processor, a region growing process to the first slice image from the set of 2D slice images starting with the seed voxel using a threshold value, generating, by the processor, a set of binarized 2D slice images based on the region grown from the seed voxel, filtering out, by the processor, connected components of the lung in each slice image of the set of binarized 2D slice images, and identifying, by the processor, the pleural boundaries of the lung based on the set of binarized 2D slice images.
Opening claim text (preview).
What is claimed is: 1 . A segmentation method for determining pleura boundaries of a lung, comprising: acquiring image data from an imaging device; generating a set of two-dimensional (2D) slice images based on the acquired image data; determining, by a processor, a seed voxel in a first slice image from the set of 2D slice images; applying, by the processor, a region growing process to the first slice image from the set of 2D slice images starting with the seed voxel using a threshold value; generating, by the processor, a set of binarized 2D slice images based on the region grown from the seed voxel; filtering out, by the processor, connected components of the lung in each slice image of the set of binarized 2D slice images; and identifying, by the processor, the pleural boundaries of the lung based on the set of binarized 2D slice images. 2 . The segmentation method according to claim 1 , wherein the seed voxel is in a portion of the first slice image from the set of binarized 2D slice images corresponding to a trachea of the lung. 3 . The segmentation method according to claim 1 , wherein the threshold value is greater than or equal to an intensity of the seed voxel. 4 . The segmentation method according to claim 1 , wherein the acquired image data is stored in the digital imaging and communications in medicine (DICOM) image format. 5 . The segmentation method according to claim 1 , wherein the image data is acquired via a network device. 6 . The segmentation method according to claim 1 , wherein applying the region growing process includes: in a case where an intensity of a first voxel in the first slice image from the set of 2D slice images is lower than the predetermined threshold value and the first voxel is connected to the seed voxel, setting the intensity of the first voxel as a maximum value; and in a case where an intensity of a second voxel in the first slice image from the set of 2D slice images is not lower than the predetermined threshold value or the first voxel is not connected to the seed voxel, setting the intensity of the second voxel as a minimum value. 7 . The segmentation method according to claim 6 , wherein the threshold value causes a high intensity area to appear around the seed voxel in the set of 2D slice images. 8 . The segmentation method according to claim 6 , wherein applying the region growing process further includes inversely assigning values of voxels in the set of 2D slice images, from the minimum value to the maximum value and from the maximum value to the minimum value, to obtain the set of binarized 2D slice images. 9 . The segmentation method according to claim 1 , wherein filtering out connected components of the lung includes: detecting a connected component in the set of binarized 2D slice images; calculating an area of each connected component in the set of binarized 2D slice images; determining whether the area of each connected component is less than a predetermined value; assigning the minimum value to pixels of a first connected component when it is determined that an area of the first connected component is less than the predetermined value; and assigning the maximum value to pixels of a connected component when it is determined that an area of the second connected component is greater than or equal to the predetermined value. 10 . The segmentation method according to claim 9 , wherein a connected component is an enclosed area with high intensity. 11 . The segmentation method according to claim 9 , wherein the connected component is a blood vessel or an airway. 12 . The segmentation method according to claim 9 , wherein an intersection of three 2D slice images, each of which is from each of three independent directions, identifies a voxel in the set of 2D slice images. 13 . The segmentation method according to claim 12 , wherein the three independent directions are axial, coronal, and sagittal directions. 14 . The segmentation method according to claim 1 , wherein each voxel of the set of binarized 2D slice images has either high or low intensity. 15 . The segmentation method according to claim 1 , wherein the image data is acquired from computed tomographic technique, radiography, tomogram produced by a computerized axial tomography scan, magnetic resonance imaging, ultrasonography, contrast imaging, fluoroscopy, nuclear scans, and positron emission tomography. 16 . A system for determining pleura of a lung, the system comprising: an imaging device configured to image a chest of a patient to obtain image data; and an image processing device including: a memory configured to store data and processor-executable instructions; and a processor configured to execute the processor-executable instructions to: generate a set of two-dimensional (2D) slice images based on the acquired image data; determine a seed voxel in a first slice image from the set of 2D slice images; apply a region growing process to the first slice image from the set of 2D slice images starting with the seed voxel using a threshold value; generate a set of binarized 2D slice images based on the region grown from the seed voxel; filter out connected components of the lung in each slice image of the set of binarized 2D slice images; and identify the pleural boundaries of the lung based on the set of binarized 2D slice images.
for processing medical images, e.g. editing · CPC title
for handling medical images, e.g. DICOM, HL7 or PACS · CPC title
Automatic seed setting · CPC title
involving thresholding · CPC title
Lung · CPC title
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