WO2021253732A1 - Medical image processing method and apparatus, computer device, and storage medium - Google Patents
Medical image processing method and apparatus, computer device, and storage medium Download PDFInfo
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Definitions
- This application relates to the technical field of medical equipment, and in particular to a processing method, device, computer equipment, and storage medium for medical images.
- DICOM Digital Imaging and Communications in Medicine
- DICOM medical images are characterized by high image resolution and high image quality. But at the same time, the amount of data is huge, and there will be some difficulties in its archiving, transmission and management. Therefore, in many cases, DICOM medical images are saved as compressed images with extraneous information, and the saved medical images contain medical images and sensitive information that is not a medical image (such as patient number, examination time) , Check location and other personal privacy information).
- a method for processing medical images includes:
- the binarized image of the original medical image includes a plurality of connected regions
- the obtaining the local entropy grayscale image of the original medical image includes:
- the gray-scale image of the original medical image is traversed by using a conversion matrix of a preset size to obtain the gray-scale image of the local entropy of the original medical image.
- the traversing the grayscale image of the original medical image by using a conversion matrix of a preset size to obtain the local entropy grayscale image of the original medical image includes:
- the local entropy matrix is normalized to obtain the local entropy grayscale image of the original medical image.
- the performing image segmentation on the local entropy grayscale image to obtain the binarized image of the original medical image includes:
- An open operation is performed on the binarized image of the local entropy grayscale image to obtain the binarized image of the original medical image.
- the determining the connected area corresponding to the medical ontology area in the plurality of connected areas according to the area of each of the connected areas includes:
- the connected area with the largest area is determined as the connected area corresponding to the medical ontology area.
- the connected area is provided with corresponding corner coordinates; the extraction of the medical image of the medical ontology area from the original medical image according to the connected area corresponding to the medical ontology area includes :
- the original medical image is cropped according to the corner coordinates of the connected region corresponding to the medical body region to obtain the medical image of the medical body region.
- the original medical image is an ultrasound image including sensitive information
- the medical image of the medical body region is an ultrasound image generated when an ultrasound probe scans a target part.
- a medical image processing device includes:
- the first acquisition module is used to acquire the local entropy grayscale image of the original medical image, the original medical image including the medical ontology area;
- An image segmentation module configured to perform image segmentation on the local entropy grayscale image to obtain a binarized image of the original medical image; the binarized image of the original medical image includes a plurality of connected regions;
- An area determining module configured to determine the connected area corresponding to the medical ontology area among the multiple connected areas according to the area of each of the connected areas;
- the image extraction module is used to extract the image of the medical ontology area from the original medical image according to the connected area corresponding to the medical ontology area.
- a computer device includes a memory and a processor, the memory stores a computer program, and the processor implements the steps of the medical image processing method described in any one of the foregoing when the computer program is executed.
- the above-mentioned medical image processing method, device, computer equipment and storage medium obtain the local entropy gray image of the original medical image, the original medical image includes the medical ontology area; perform image segmentation on the local entropy gray image to obtain The binarized image of the original medical image, and determine multiple connected regions in the binarized image; thereby determining the connected region corresponding to the medical ontology region according to the area of each connected region; further, due to the binary If the chemical image corresponds to the original medical image, then according to the connected area corresponding to the medical ontology area, the medical image of the medical ontology area can be accurately and completely extracted from the original medical image, and sensitive information in the medical image can be accurately and completely extracted. Desensitization.
- FIG. 1 is a schematic flowchart of a method for processing medical images in an embodiment
- Fig. 2a is a schematic flowchart of step S102 in an embodiment
- Figure 2b is a schematic diagram of a flow of local entropy extraction in an embodiment
- Fig. 4 is a schematic diagram of a flow of local entropy extraction in another embodiment
- FIG. 3 is a schematic flowchart of step S206 in an embodiment
- Fig. 4a is a schematic flowchart of step S104 in an embodiment
- Figure 4b is a schematic view of the process of the corrosion operation in an embodiment
- Figure 4c is a schematic flow chart of an expansion operation in an embodiment
- Figure 5a is a schematic flowchart of an ultrasound image processing method in an embodiment
- 5b to 5c are schematic diagrams of original ultrasound images in an embodiment
- Figure 5d is a schematic diagram of a local entropy grayscale image in an embodiment
- Figure 5e is a schematic diagram of a binarized image in an embodiment
- Figure 5f is a schematic diagram of a binarized image after an open operation in an embodiment
- Figure 5g is a schematic diagram of the ultrasound body region (the largest connected region) in an embodiment
- 5h to 5i are schematic diagrams of ultrasound body images extracted in an embodiment
- Figure 6 is a structural block diagram of a medical image processing device in an embodiment
- Fig. 7 is an internal structure diagram of a computer device in an embodiment.
- a method for processing medical images includes the following steps:
- S102 Obtain a local entropy grayscale image of the original medical image, where the original medical image includes the medical ontology region.
- the original medical image is a medical image image obtained through medical imaging technologies such as computed tomography (CT), nuclear magnetic resonance (MRI), ultrasound imaging (US), digital silhouette angiography (DSA), etc., which include medical ontology images And sensitive information that is not part of the medical ontology image.
- the medical ontology image is an image obtained by scanning a part of interest.
- the medical ontology area is a partial area in the original medical image corresponding to the patient's area of interest.
- the imaging device After obtaining the medical ontology image corresponding to the part of interest, the imaging device generates and displays sensitive information based on personal privacy information such as the patient number, examination time, and examination location to generate the original medical image.
- the part of interest can be body organs such as the uterus and the heart.
- the original medical image may be an image saved in the form of a DICOM (Digital imaging and Communications in Medicine, medical imaging imaging and communication standard) medical image compressed and with extraneous information.
- the format of the original medical image may be
- the local entropy gray-scale image of the original medical image is obtained from a computer locally or a computer device connected in communication with the computer.
- the local entropy gray-scale image refers to the gray-scale image obtained by performing local entropy calculation on the gray-scale image corresponding to the original medical image and updating the gray value of each pixel in the original medical image.
- the local entropy refers to the entropy calculated within the limited N*N (such as 5*5) range of the digital image.
- the entropy of a digital image is a special statistical form, which reflects the amount of information contained in the aggregation features of the gray-scale distribution in the image.
- the entropy expression of a gray-scale digital image is:
- i is the gray value of the pixel
- p i is the probability that the pixel value i appears in the entire digital image.
- S104 Perform image segmentation on the local entropy grayscale image to obtain a binarized image of the original medical image.
- image segmentation refers to the technology and process of dividing an image into several specific regions with unique properties and extracting regions of interest or target parts.
- the medical ontology image is extracted from the original medical image.
- the gray value of each pixel in the binarized image is 0 or 255, and the entire image presents an obvious black and white effect.
- Connected components generally refer to an image area composed of adjacent pixels that have the same pixel value.
- the binarized image of the original medical image includes multiple connected regions. The area of each connected area may be different or equal.
- the segmentation threshold is set according to the gray value of each pixel in the local entropy gray image, and the gray value of each pixel in the local entropy gray image is updated, such as updating If it is 0 or 255, it realizes image segmentation of the local entropy grayscale image of the original medical image to obtain the binarized image of the original medical image.
- the connected area in the binarized image is determined according to the gray value of each pixel in the binarized image.
- the original medical image contains the medical ontology area corresponding to the medical ontology image and the sensitive area corresponding to the sensitive information.
- the medical body area and the sensitive area respectively correspond to their own connected areas. Since the medical ontology area and the sensitive area have areas of different sizes in the original medical image, the connected area corresponding to the medical ontology area can be determined from the multiple connected areas of the binarized image according to the area of the connected area.
- the connected area corresponding to the medical ontology area is determined among the multiple connected areas of the binarized image, thereby determining the position or distribution of the medical ontology area in the binarized image. Because the binarized image corresponds to the original medical image, the position or distribution of the medical ontology area in the original medical image can be known, so that the medical image of the medical ontology area can be extracted from the original medical image.
- the original medical image includes the medical ontology area; performing image segmentation on the local entropy gray image to obtain the binary image of the original medical image, and determine Multiple connected regions in the binarized image; thereby determining the connected region corresponding to the medical ontology region according to the area of each connected region; further, since the binarized image corresponds to the original medical image, the connected region corresponding to the medical ontology region , It can accurately and completely extract the medical image of the medical ontology area from the original medical image, and desensitize the sensitive information in the medical image. Further, the extracted medical image contains complete medical image information, which solves the technical problem of the lack of medical image information in the traditional technology.
- step S102 obtaining the local entropy grayscale image of the original medical image includes the following steps:
- S204 Perform grayscale processing on the original medical image to obtain a grayscale image of the original medical image
- S206 Traverse the grayscale image of the original medical image by using the conversion matrix of the preset size to obtain the local entropy grayscale image of the original medical image.
- the conversion matrix is a N*N matrix with a preset size, which is used to delineate the range of N*N in the grayscale image of the original medical image, and calculate the local entropy value in the range of N*N.
- the original medical image is obtained from the computer locally or from a computer device that is in communication with the computer.
- the original medical image may have colors.
- the original medical image is gray-scale processed to obtain the gray-scale image of the original medical image.
- the local entropy of the original medical image is extracted according to the pixel value of each pixel within the range of the 5*5 conversion matrix, thereby using the 5*5 conversion matrix Traverse the gray-scale image of the original medical image to obtain the local entropy gray-scale image of the original medical image.
- the grayscale image of the original medical image is obtained by performing grayscale processing on the original medical image; and the grayscale image of the original medical image is traversed using a conversion matrix of a preset size to obtain the local entropy grayscale of the original medical image
- the image can highlight the medical ontology area and sensitive area in the original medical image, which provides a basis for the subsequent extraction of the medical ontology image.
- step S206 the gray-scale image of the original medical image is traversed by using a conversion matrix of a preset size to obtain the gray-scale image of local entropy of the original medical image, which includes:
- the pixel value of each pixel within the range of the N*N conversion matrix is calculated, and the conversion matrix is obtained within the range of N*N.
- the local entropy value Use the local entropy in the N*N range to update the gray value of the pixel at the center of the N*N matrix, and so on, use the N*N conversion matrix to traverse the gray image of the original medical image to obtain the local entropy matrix. Further, normalize the region entropy matrix to a preset gray value such as (0 value 255), and set it to be eight bits deep for each pixel, that is, a single-channel, eight-bit deep region is obtained Entropy grayscale image. It is understandable that the size of N is an empirical value and can be selected according to actual conditions.
- the conversion matrix is used to traverse the grayscale image of the original medical image, and the local entropy of each pixel corresponding to the conversion matrix in the grayscale image is calculated; the grayscale of the pixel corresponding to the center position of the conversion matrix in the grayscale image is calculated The value is updated to the calculated local entropy value to obtain the local entropy matrix; the local entropy matrix is normalized to obtain the local entropy grayscale image of the original medical image.
- the medical ontology area and sensitive area can be further highlighted in the original medical image to ensure the accuracy and completeness of the extraction of the medical ontology image.
- step S104 image segmentation is performed on the local entropy grayscale image to obtain a binary image of the original medical image, including:
- S402 Perform image threshold segmentation on the local entropy gray image to obtain a binarized image of the local entropy gray image;
- S404 Perform an open operation on the binarized image of the local entropy grayscale image to obtain the binarized image of the original medical image.
- the image threshold segmentation can use the Otsu method (OTSU method).
- Otsu method Otsu method
- the Dajin Law is well known to the art staff, so I won’t repeat it here.
- the open operation includes the process of first corroding and then expanding the image, which is an operation performed on the binarized image to change the size, thickness, and adhesion of the image, thereby optimizing the outline of the binarized image.
- the corrosion operation is to corrode the edges of the object.
- the specific operation method is that the M*N rectangle is used as a template to process each pixel in the image as follows: pixel x is at the center of the template, traverse all other pixels covered by the template according to the size of the template, and modify the value of pixel x to all The smallest value in a pixel.
- the result of this operation is to corrode the prominent points on the periphery of the image.
- the expansion operation expands the outline of the image.
- the operation method is similar to the corrosion operation.
- the M*N rectangle is used as a template to traverse each pixel of the image. The difference is that the value of the modified pixel is not the smallest value among all pixels, but the largest value. The result of this operation will connect and extend the prominent points on the periphery of the image.
- the segmentation threshold is set according to the gray value of each pixel in the local entropy gray image, and the gray value of each pixel in the local entropy gray image is updated, such as updating If it is 0 or 255, it realizes the image threshold segmentation of the local entropy grayscale image of the original medical image to obtain the binarized image of the original medical image. Further, in order to optimize the contours in the binarized image, the binarized image of the local entropy grayscale image is first eroded and then expanded to obtain the binarized image of the original medical image, which is based on each of the binarized images. The gray value of the pixel determines the connected area in the binarized image.
- the binarized image of the local entropy gray image is obtained, which realizes the prominent display of the medical ontology area and the sensitive area in the original medical image, and further controls
- the binarized image of the local entropy grayscale image performs the open operation to obtain the binarized image of the original medical image, optimize the contour in the binarized image, and ensure the accuracy of the connected region, so that the original medical image can be accurately and completely obtained from the original medical image.
- the medical image of the medical ontology area is extracted from the image, and the sensitive information in the medical image is desensitized.
- determining the connected area corresponding to the medical ontology area among the multiple connected areas includes: among the multiple connected areas, determining the connected area with the largest area as the connected area corresponding to the medical ontology area Connected areas.
- the medical ontology area is the area with the largest area in the original medical image. Therefore, among the multiple connected regions, the connected region with the largest area is determined as the connected region corresponding to the medical ontology region.
- the connected area is provided with corresponding corner coordinates.
- extracting the medical image of the medical ontology area from the original medical image includes: cutting the original medical image according to the corner coordinates of the connected area corresponding to the medical ontology area to obtain the medicine of the medical ontology area image.
- the corner points are the vertices of the polygonal shape of the connected region.
- the connected area has corner coordinates in the binarized image of the original medical image, and the binarized image corresponds to the original medical image. It can be seen that the position of the medical ontology area in the original medical image is explained by taking the connected area of the quadrilateral as an example.
- Each pixel in the area corresponds to a coordinate value, from which the maximum x-axis coordinate value x1 and the minimum x-axis coordinate value x2 are respectively obtained, and the maximum y-axis coordinate value y1 and the minimum y-axis coordinate value y2 are obtained.
- the corner coordinates are (x1, y1), (x1, y2), (x2, y1), (x2, y2).
- the position of the medical ontology area in the original medical image is determined, so that the original medical image is cropped according to the position of the medical ontology area in the original medical image to obtain the medical ontology Medical image of the area.
- the shape of the connected area is a rectangle
- the corner coordinates are the coordinates of the four vertices of the rectangle
- the area within the rectangular frame is the medical ontology area
- the medical ontology is extracted from the original medical image based on the four vertices of the rectangle. Medical image of the area.
- the original medical image is an ultrasound image including sensitive information
- the medical image of the medical body region is an ultrasound image generated when the ultrasound probe scans the target part.
- the ultrasound image is generated by processing the echo collected by the ultrasound probe.
- the medical image is explained by taking an ultrasound image as an example.
- the medical image processing method includes the following steps:
- the original ultrasound image includes an ultrasound body region 510.
- the ultrasound body area corresponds to the target area scanned by the ultrasound probe.
- the ultrasound image in the ultrasound body region 510 is a “pure” ultrasound body image required for scientific research.
- the original ultrasound image also includes a sensitive area 520, in which sensitive information such as the time and location of the patient's examination are displayed.
- S504 Perform grayscale processing on the original ultrasound image to obtain a grayscale image of the original ultrasound image.
- S506 Use the conversion matrix to traverse the grayscale image of the original ultrasound image, and calculate the local entropy value of each pixel corresponding to the conversion matrix in the grayscale image.
- S510 Normalize the local entropy matrix to obtain a local entropy grayscale image of the original ultrasound image (as shown in FIG. 5d).
- S512 Perform image threshold segmentation on the local entropy gray image to obtain a binarized image of the local entropy gray image (as shown in FIG. 5e).
- S514 Perform an open operation on the binarized image of the local entropy grayscale image to obtain the binarized image of the original ultrasound image (as shown in FIG. 5f).
- the binarized image of the original ultrasound image includes multiple connected regions
- the connected area with the largest area is determined as the connected area corresponding to the ultrasound body area and extracted (as shown in FIG. 5g).
- the connected area is provided with corresponding corner coordinates.
- S518 According to the corner coordinates of the connected area corresponding to the ultrasound body region, crop the original ultrasound image to obtain the ultrasound body image of the ultrasound body region (as shown in Fig. 5h and Fig. 5i).
- the ultrasound body image of the ultrasound body region is the ultrasound image generated when the ultrasound probe scans the target part.
- the ultrasound equipment includes an ultrasound display terminal and an ultrasound probe.
- the ultrasonic display terminal applies an electrical signal to the ultrasonic probe through the ultrasonic cable so that the ultrasonic probe emits ultrasonic waves to the target site to be detected.
- the ultrasonic probe receives the echo signal reflected by the target part and feeds the echo signal back to the ultrasonic display terminal through the ultrasonic cable.
- the ultrasonic display terminal can generate the ultrasonic body image of the target part according to the echo signal.
- the ultrasonic display terminal will respond according to the patient
- the private information generates sensitive information. It is understandable that the sensitive information has nothing to do with the ultrasound emitted by the ultrasound probe.
- the target part is a part of interest of the physician, such as liver, pancreas, uterus, etc.
- the original ultrasound image is quickly segmented through the local entropy matrix, and the ultrasound image body area is completely segmented.
- the obtained ultrasound body image not only contains complete ultrasound image information, and the ultrasound body image does not include any sensitive information.
- a medical image processing device including: a first acquisition module 602, an image segmentation module 604, an area determination module 606, and an image extraction module 608, wherein:
- the first acquisition module 602 is configured to acquire a local entropy grayscale image of an original medical image, the original medical image including a medical ontology region;
- the image segmentation module 604 is configured to perform image segmentation on the local entropy grayscale image to obtain a binarized image of the original medical image; the binarized image of the original medical image includes a plurality of connected regions;
- the area determining module 606 is configured to determine the connected area corresponding to the medical ontology area among the multiple connected areas according to the area of each of the connected areas;
- the image extraction module 608 is configured to extract the image of the medical ontology region from the original medical image according to the connected regions corresponding to the medical ontology region.
- the first acquisition module 602 includes a second acquisition module, a grayscale processing module, and an image traversal module; wherein:
- the second acquisition module is used to acquire the original medical image
- a grayscale processing module configured to perform grayscale processing on the original medical image to obtain a grayscale image of the original medical image
- the image traversal module is used to traverse the grayscale image of the original medical image by using a conversion matrix of a preset size to obtain the local entropy grayscale image of the original medical image.
- the image traversal module includes a local entropy calculation module, a gray value update module, and a normalization module; among them:
- a local entropy calculation module configured to use the conversion matrix to traverse the grayscale image of the original medical image, and calculate the local entropy value of each pixel corresponding to the conversion matrix in the grayscale image;
- a gray value update module configured to update the gray value of the pixel corresponding to the center position of the conversion matrix in the gray image to the calculated local entropy value to obtain the local entropy matrix
- the normalization module is used to normalize the local entropy matrix to obtain the local entropy grayscale image of the original medical image.
- the image segmentation module 604 is further configured to perform image threshold segmentation on the local entropy grayscale image to obtain a binarized image of the local entropy grayscale image;
- the binarized image performs an open operation operation to obtain the binarized image of the original medical image.
- the area determining module 606 is further configured to determine the connected area with the largest area among the multiple connected areas as the connected area corresponding to the medical ontology area.
- the connected area is provided with corresponding corner coordinates; the image extraction module 608 is further configured to crop the original medical image according to the corner coordinates of the connected area corresponding to the medical ontology area, Obtain the medical image of the medical ontology area.
- the original medical image is an ultrasound image including sensitive information
- the medical image of the medical body region is an ultrasound image generated when an ultrasound probe scans a target part.
- Each module in the above-mentioned medical image processing device can be implemented in whole or in part by software, hardware, and a combination thereof.
- the foregoing modules may be embedded in the form of hardware or independent of the processor in the computer device, or may be stored in the memory of the computer device in the form of software, so that the processor can call and execute the operations corresponding to the foregoing modules.
- a computer device is provided.
- the computer device may be a terminal, and its internal structure diagram may be as shown in FIG. 7.
- the computer equipment includes a processor, a memory, a communication interface, a display screen and an input device connected through a system bus.
- the processor of the computer device is used to provide calculation and control capabilities.
- the memory of the computer device includes a non-volatile storage medium and an internal memory.
- the non-volatile storage medium stores an operating system and a computer program.
- the internal memory provides an environment for the operation of the operating system and computer programs in the non-volatile storage medium.
- the communication interface of the computer device is used to communicate with an external terminal in a wired or wireless manner, and the wireless manner can be implemented through WIFI, an operator's network, NFC (near field communication) or other technologies.
- the computer program is executed by the processor to realize a medical image processing method.
- the display screen of the computer equipment can be a liquid crystal display screen or an electronic ink display screen, and the input device of the computer equipment can be a touch layer covered on the display screen, or it can be a button, trackball or touchpad set on the housing of the computer equipment , It can also be an external keyboard, touchpad, or mouse.
- FIG. 7 is only a block diagram of a part of the structure related to the solution of the present application, and does not constitute a limitation on the computer device to which the solution of the present application is applied.
- the specific computer device may Including more or fewer parts than shown in the figure, or combining some parts, or having a different arrangement of parts.
- a computer device including a memory and a processor, and a computer program is stored in the memory.
- the processor executes the computer program, the following steps are implemented: obtaining a partial entropy grayscale image of an original medical image,
- the original medical image includes the medical ontology region; image segmentation is performed on the local entropy gray image to obtain a binarized image of the original medical image;
- the binarized image of the original medical image includes a plurality of connected regions;
- the area of the connected area determining the connected area corresponding to the medical ontology area among the multiple connected areas; extracting the medical ontology area from the original medical image according to the connected area corresponding to the medical ontology area Medical image.
- the processor further implements the following steps when executing the computer program: acquiring an original medical image; performing gray-scale processing on the original medical image to obtain a gray-scale image of the original medical image; using a preset size conversion The matrix traverses the grayscale image of the original medical image to obtain the local entropy grayscale image of the original medical image.
- the processor further implements the following steps when executing the computer program: traverse the grayscale image of the original medical image by using the conversion matrix, and calculate the value of each pixel corresponding to the conversion matrix in the grayscale image. Local entropy value; update the gray value of the pixel corresponding to the center position of the conversion matrix in the gray image to the calculated local entropy value to obtain the local entropy matrix; normalize the local entropy matrix, Obtain the local entropy grayscale image of the original medical image.
- the processor further implements the following steps when executing the computer program: image threshold segmentation is performed on the local entropy gray image to obtain a binarized image of the local entropy gray image; The binarized image of the degree image is subjected to an open operation operation to obtain the binarized image of the original medical image.
- the processor further implements the following step when executing the computer program: among the multiple connected areas, the connected area with the largest area is determined as the connected area corresponding to the medical ontology area.
- the connected area is provided with corresponding corner coordinates; the processor further implements the following steps when executing the computer program: according to the corner coordinates of the connected area corresponding to the medical ontology area, compare the original medical image Cutting is performed to obtain the medical image of the medical body region.
- the original medical image is an ultrasound image including sensitive information
- the medical image of the medical body region is an ultrasound image generated when an ultrasound probe scans a target part.
- a computer-readable storage medium on which a computer program is stored.
- the following steps are implemented: Obtain a local entropy grayscale image of an original medical image, the original medical image Including the medical ontology region; performing image segmentation on the local entropy grayscale image to obtain a binarized image of the original medical image; the binarized image of the original medical image includes a plurality of connected regions; The area of the region, the connected region corresponding to the medical ontology region is determined among the multiple connected regions; the medical image of the medical ontology region is extracted from the original medical image according to the connected region corresponding to the medical ontology region .
- the following steps are also implemented: obtaining an original medical image; performing gray-scale processing on the original medical image to obtain a gray-scale image of the original medical image; using a preset size
- the conversion matrix traverses the grayscale image of the original medical image to obtain the local entropy grayscale image of the original medical image.
- the following steps are also implemented: use the conversion matrix to traverse the grayscale image of the original medical image, and calculate each pixel corresponding to the conversion matrix in the grayscale image Update the gray value of the pixel corresponding to the center position of the conversion matrix in the gray image to the calculated local entropy value to obtain the local entropy matrix; normalize the local entropy matrix , To obtain the local entropy grayscale image of the original medical image.
- image threshold segmentation is performed on the local entropy gray image to obtain a binarized image of the local entropy gray image;
- the binarized image of the gray-scale image performs an open operation to obtain the binarized image of the original medical image.
- the following step is further implemented: among the multiple connected areas, the connected area with the largest area is determined as the connected area corresponding to the medical ontology area.
- the connected area is provided with corresponding corner coordinates; when the computer program is executed by the processor, the following steps are further implemented: according to the corner coordinates of the connected area corresponding to the medical ontology area, compare the original medical The image is cropped to obtain the medical image of the medical ontology area.
- the original medical image is an ultrasound image including sensitive information
- the medical image of the medical body region is an ultrasound image generated when an ultrasound probe scans a target part.
- Non-volatile memory may include read-only memory (Read-Only Memory, ROM), magnetic tape, floppy disk, flash memory, or optical storage.
- Volatile memory may include random access memory (RAM) or external cache memory.
- RAM may be in various forms, such as static random access memory (Static Random Access Memory, SRAM) or dynamic random access memory (Dynamic Random Access Memory, DRAM), etc.
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Abstract
Description
Claims (10)
- 一种医学图像的处理方法,其特征在于,所述方法包括:A method for processing medical images, characterized in that the method includes:获取原始医学图像的局部熵灰度图像,所述原始医学图像包括医学本体区域;Acquiring a local entropy grayscale image of an original medical image, the original medical image including a medical ontology region;对所述局部熵灰度图像进行图像分割,得到所述原始医学图像的二值化图像;所述原始医学图像的二值化图像包括多个连通区域;Performing image segmentation on the local entropy grayscale image to obtain a binarized image of the original medical image; the binarized image of the original medical image includes a plurality of connected regions;根据各所述连通区域的面积,在所述多个连通区域中确定所述医学本体区域对应的连通区域;Determining the connected area corresponding to the medical ontology area among the multiple connected areas according to the area of each of the connected areas;根据所述医学本体区域对应的连通区域,从所述原始医学图像中提取所述医学本体区域的医学图像。Extracting the medical image of the medical ontology area from the original medical image according to the connected area corresponding to the medical ontology area.
- 根据权利要求1所述的方法,其特征在于,所述获取原始医学图像的局部熵灰度图像,包括:The method according to claim 1, wherein the obtaining the local entropy grayscale image of the original medical image comprises:获取原始医学图像;Obtain original medical images;对所述原始医学图像进行灰度处理,得到所述原始医学图像的灰度图像;Performing grayscale processing on the original medical image to obtain a grayscale image of the original medical image;利用预设大小的转换矩阵遍历所述原始医学图像的灰度图像,得到所述原始医学图像的局部熵灰度图像。The gray-scale image of the original medical image is traversed by using a conversion matrix of a preset size to obtain the gray-scale image of the local entropy of the original medical image.
- 根据权利要求2所述的方法,其特征在于,所述利用预设大小的转换矩阵遍历所述原始医学图像的灰度图像,得到所述原始医学图像的局部熵灰度图像,包括:The method according to claim 2, wherein the traversing the grayscale image of the original medical image by using a conversion matrix of a preset size to obtain the local entropy grayscale image of the original medical image comprises:利用所述转换矩阵遍历所述原始医学图像的灰度图像,计算所述灰度图像中所述转换矩阵对应的各像素点的局部熵值;Traverse the grayscale image of the original medical image by using the conversion matrix, and calculate the local entropy value of each pixel corresponding to the conversion matrix in the grayscale image;将所述灰度图像中所述转换矩阵中心位置对应的像素点的灰度值更新为计算得到的局部熵值,得到局部熵矩阵;Updating the gray value of the pixel corresponding to the center position of the conversion matrix in the gray image to the calculated local entropy value to obtain the local entropy matrix;对所述局部熵矩阵进行归一化,得到所述原始医学图像的局部熵灰度图像。The local entropy matrix is normalized to obtain the local entropy grayscale image of the original medical image.
- 根据权利要求1所述的方法,其特征在于,所述对所述局部熵灰度图像进行图像分割,得到所述原始医学图像的二值化图像,包括:The method according to claim 1, wherein the performing image segmentation on the local entropy grayscale image to obtain the binarized image of the original medical image comprises:对所述局部熵灰度图像进行图像阈值分割,得到所述局部熵灰度图像的二值化图像;Performing image threshold segmentation on the local entropy gray image to obtain a binarized image of the local entropy gray image;对所述局部熵灰度图像的二值化图像进行开运算操作,得到所述原始医学 图像的二值化图像。Perform an open operation on the binarized image of the local entropy gray image to obtain the binarized image of the original medical image.
- 根据权利要求1所述的方法,其特征在于,所述根据各所述连通区域的面积,在所述多个连通区域中确定所述医学本体区域对应的连通区域,包括:The method according to claim 1, wherein the determining the connected area corresponding to the medical ontology area in the plurality of connected areas according to the area of each of the connected areas comprises:在所述多个连通区域中,将面积最大的连通区域确定为所述医学本体区域对应的连通区域。Among the multiple connected areas, the connected area with the largest area is determined as the connected area corresponding to the medical ontology area.
- 根据权利要求1所述的方法,其特征在于,所述连通区域设有对应的角点坐标;所述根据所述医学本体区域对应的连通区域,从所述原始医学图像中提取所述医学本体区域的医学图像,包括:The method according to claim 1, wherein the connected area is provided with corresponding corner coordinates; and the medical ontology is extracted from the original medical image according to the connected area corresponding to the medical ontology area Medical images of the area, including:根据所述医学本体区域对应的连通区域的角点坐标,对所述原始医学图像进行裁剪,得到所述医学本体区域的医学图像。The original medical image is cropped according to the corner coordinates of the connected region corresponding to the medical body region to obtain the medical image of the medical body region.
- 根据权利要求1至6任一项所述的方法,其特征在于,所述原始医学图像为包括敏感信息的超声图像;所述医学本体区域的医学图像为超声探头扫查目标部位时生成的超声图像。The method according to any one of claims 1 to 6, wherein the original medical image is an ultrasound image including sensitive information; the medical image of the medical body region is an ultrasound generated when an ultrasound probe scans a target part image.
- 一种医学图像的处理装置,其特征在于,所述装置包括:A medical image processing device, characterized in that the device comprises:第一获取模块,用于获取原始医学图像的局部熵灰度图像,所述原始医学图像包括医学本体区域;The first acquisition module is used to acquire the local entropy grayscale image of the original medical image, the original medical image including the medical ontology area;图像分割模块,用于对所述局部熵灰度图像进行图像分割,得到所述原始医学图像的二值化图像;所述原始医学图像的二值化图像包括多个连通区域;An image segmentation module, configured to perform image segmentation on the local entropy grayscale image to obtain a binarized image of the original medical image; the binarized image of the original medical image includes a plurality of connected regions;区域确定模块,用于根据各所述连通区域的面积,在所述多个连通区域中确定所述医学本体区域对应的连通区域;An area determining module, configured to determine the connected area corresponding to the medical ontology area among the multiple connected areas according to the area of each of the connected areas;图像提取模块,用于根据所述医学本体区域对应的连通区域,从所述原始医学图像中提取所述医学本体区域的图像。The image extraction module is used to extract the image of the medical ontology area from the original medical image according to the connected area corresponding to the medical ontology area.
- 一种计算机设备,包括存储器和处理器,所述存储器存储有计算机程序,其特征在于,所述处理器执行所述计算机程序时实现权利要求1至7中任一项所述的方法的步骤。A computer device comprising a memory and a processor, the memory storing a computer program, wherein the processor implements the steps of the method according to any one of claims 1 to 7 when the computer program is executed by the processor.
- 一种计算机可读存储介质,其上存储有计算机程序,其特征在于,所述计算机程序被处理器执行时实现权利要求1至7中任一项所述的方法的步骤。A computer-readable storage medium having a computer program stored thereon, wherein the computer program implements the steps of the method according to any one of claims 1 to 7 when the computer program is executed by a processor.
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