WO1996027846A1 - Method and system for the detection of lesions in medical images - Google Patents

Method and system for the detection of lesions in medical images Download PDF

Info

Publication number
WO1996027846A1
WO1996027846A1 PCT/US1996/002439 US9602439W WO9627846A1 WO 1996027846 A1 WO1996027846 A1 WO 1996027846A1 US 9602439 W US9602439 W US 9602439W WO 9627846 A1 WO9627846 A1 WO 9627846A1
Authority
WO
WIPO (PCT)
Prior art keywords
lesions
lesion
detection
image
pixel
Prior art date
Application number
PCT/US1996/002439
Other languages
French (fr)
Inventor
Ulrich Bick
Maryellen L. Giger
Original Assignee
Arch Development Corporation
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Arch Development Corporation filed Critical Arch Development Corporation
Priority to JP8526892A priority Critical patent/JPH11501538A/en
Priority to AU49932/96A priority patent/AU705713B2/en
Priority to EP96906597A priority patent/EP0813720A4/en
Publication of WO1996027846A1 publication Critical patent/WO1996027846A1/en

Links

Classifications

    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/0002Inspection of images, e.g. flaw detection
    • G06T7/0012Biomedical image inspection
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/10Segmentation; Edge detection
    • G06T7/11Region-based segmentation
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/10Segmentation; Edge detection
    • G06T7/12Edge-based segmentation
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/10Segmentation; Edge detection
    • G06T7/149Segmentation; Edge detection involving deformable models, e.g. active contour models
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/10Segmentation; Edge detection
    • G06T7/155Segmentation; Edge detection involving morphological operators
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/10Segmentation; Edge detection
    • G06T7/187Segmentation; Edge detection involving region growing; involving region merging; involving connected component labelling
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06VIMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
    • G06V10/00Arrangements for image or video recognition or understanding
    • G06V10/40Extraction of image or video features
    • G06V10/46Descriptors for shape, contour or point-related descriptors, e.g. scale invariant feature transform [SIFT] or bags of words [BoW]; Salient regional features
    • G06V10/478Contour-based spectral representations or scale-space representations, e.g. by Fourier analysis, wavelet analysis or curvature scale-space [CSS]
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/20Special algorithmic details
    • G06T2207/20048Transform domain processing
    • G06T2207/20056Discrete and fast Fourier transform, [DFT, FFT]
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/20Special algorithmic details
    • G06T2207/20112Image segmentation details
    • G06T2207/20156Automatic seed setting
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/30Subject of image; Context of image processing
    • G06T2207/30004Biomedical image processing
    • G06T2207/30068Mammography; Breast
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/30Subject of image; Context of image processing
    • G06T2207/30004Biomedical image processing
    • G06T2207/30096Tumor; Lesion

Definitions

  • the invention relates generally to a method and system for an improved computerized, automatic detection and characterization of lesions in medical images, and more particularly to the detection of circumscribed masses in digital mammograms.
  • Novel techniques in the localization (segmentation) and detection of masses in mammograms include initially processing with peripheral equalization (correction) , a modified median filter, a modified morphological open operation, filtering with a modified mass filter for the initial detection of circumscribed densities, matching using a deformable shape template with Fourier descriptors, optimization of the match using simulated annealing, and measuring the circularity and density characteristics of the suspected lesion to distinguish true positives from false positives and malignant lesions from benign lesions.
  • the procedure is performed iteratively at different spatial resolution in which at each resolution step a specific lesion size is detected.
  • the detection of the mass leads to a localization of a suspicious region and thus the likelihood of cancer. Discussion of the Background
  • mammography is currently the best method for the detection of breast cancer, between 10-30% of women who have breast cancer and undergo mammography have negative mammograms. In approximately two-thirds of these false- negative mammograms, the radiologist failed to detect the cancer that was evident retrospectively. The missed detections may be due to the subtle nature of the radiographic findings (i.e., low conspicuity of the lesion), poor image quality, eye fatigue or oversight by the radiologists. In addition, it has been suggested that double reading (by two radiologists) may increase sensitivity. It is apparent that the efficiency and effectiveness of screening procedures could be increased by using a computer system, as a "second opinion or second reading", to aid the radiologist by indicating locations of suspicious abnormalities in mammograms. In addition, mammography is becoming a high volume x-ray procedure routinely interpreted by radiologists.
  • a suspicious region is detected by a radiologist, he or she must then visually extract various radiographic characteristics. Using these features, the radiologist then decides if the abnormality is likely to be malignant or benign, and what course of action should be recommended (i.e., return to screening, return for follow-up or return for biopsy) .
  • Many patients are referred for surgical biopsy on the basis of a radiographically detected mass lesion or cluster of microcalcifications. Although general rules for the differentiation between benign and malignant breast lesions exist, considerable misclassification of lesions occurs with current radiographic techniques. On average, only 10-20% of masses referred for surgical breast biopsy are actually malignant.
  • Another aim of computer use is to extract and analyze the characteristics of benign and malignant lesions in an objective manner in order to aid the radiologist by reducing the numbers of false-positive diagnoses of malignancies, thereby decreasing patient morbidity as well as the number of surgical biopsies performed and their associated complications.
  • an object of this invention is to provide a method and system for detecting, classifying, and displaying masses in medical images of the breast.
  • FIGS. 1A-1C are schematic diagram illustrating embodiments of the automated method for the detection of lesions according to the invention.
  • FIG. 2 is a graph illustrating the step of peripheral enhancement according to the invention.
  • FIG. 3 is a schematic diagram of the modified median filtering according to the invention.
  • FIG. 3B is a schematic diagram of the modified morphological open operation according to the invention.
  • FIGS. 3C and 3D are graphs illustrating the criteria used in the modified morphological open operation of FIG. 3B;
  • FIG. 4 is a diagram illustrating the circular kernel used in the modified mass filter
  • FIG. 5 is a diagram illustrating a gradient vector in the modified mass filtering
  • FIG. 6 is a diagram illustrating examples of the deformable templates corresponding to the possible shapes assigned to localized densities from the Fourier descriptors analysis
  • FIG. 7 is a diagram of calculating a gradient in a region of interest
  • FIG. 8 is a schematic diagram illustrating the analysis of a suspected lesion
  • FIGS. 9A and 9B are tables illustrating the relationship between pixel size of the image and the lesion size being detected, and the relationship between kernel size and the lesion size being detected, respectively;
  • FIG. 10 is a schematic diagram of the changing of the kernel size in mass filtering
  • FIG. 11 is a diagram of two detected lesions
  • FIGS. 12A-12F illustrate examples of (12A) an original mammogram, (12B) after border segmentation, (12C) after the modified open operation, (12D) after the modified mass filter, (12E) after template matching and (12F) after feature extraction;
  • FIGS. 13A-13F illustrate examples of (13A) a mammogram, after peripheral enhancement, (13B) after morphological filtering, (13C) a image of the difference of the images of FIGS. 13A and 13B, and (13D-13F) after morphological filtering with pixel sizes of l, 2 and 4 mm;
  • FIGS. 14A-14C illustrate (14A) an artificial lesion, (14B) its detection results, and (14C) the edge maps used in the detection;
  • FIG. 15A shows the location of a region of interest (ROI) used for feature analysis
  • FIGS. 15B-15D show enlargement of the ROI of FIG. 15A, a truth margin, and detection results, respectively;
  • FIG. 16 is a graph illustrating the performance of the method in the detection of malignant lesions in a screening mammographic database
  • FIG. 17 is a schematic block diagram illustrating a system for implementing the automated method for the detection of lesions in medical images.
  • FIG. 1A a first embodiment of the overall scheme includes an initial acquisition of a mammogram and digitization (step 100) .
  • the breast border is segmented from the rest of the image area (step 101) and peripheral density enhancement is performed on the image (step 102) .
  • the image is processed (step 103) and then subjected to a modified morphological open operation using different filter sizes (steps 104-106) .
  • the image after the open operation is mass filtered (steps 107-109) and template matched (steps 110- 112) .
  • Feature extraction is then performed (step 113) followed by integration (step 114) and classification (step 115) of the detected lesions.
  • the method of detecting circumscribed masses uses an automatically segmented mammographic image idicating only the actual breast region (step 101) after an optional application of the peripheral density equalization (step 102) . Segmentation of a mammogram is described in application Serial No. 08/158,320 to Bick et al, the disclosure of which is herein incorporated by reference.
  • noise filtering is applied tc the digital mammogram followed by application of the gray- value range operator.
  • a modified global histogram analysis is performed.
  • Region growing is performed on the threshold image using connectivity (counting pixels) , followed by a morphological erosion operation.
  • the distance map of the image is determined and the boundary of the segmented object (breast) in the image is then tracked to yield its contour.
  • the contour can then be output onto the digital image or passed to other computer algorithms.
  • gray level there is an inverse relationship between gray level and optical density.
  • a low optical density (white region) on the mammogram (high anatomic density) corresponds to a high gray level (1023), whereas a high optical density (black region) on the mammogram corresponds to a low gray level (0) .
  • the image after segmenting can be processed (step 103) or peripheral density enhancement can be performed.
  • Peripheral density enhancement is described in application Serial No. 08/158,320.
  • An enhancement curve is determined by fitting, such as polynomial fitting, a curve of the average gray values as a function of distance, and then reversing the fit.
  • the enhancement curve is added to the curve of the average gray values as a function of distance to produce an enhanced gray value curve. This results in a peripherally enhanced image where the center and the portion near the border are simultaneously displayed without loss in contrast.
  • FIG. 2 shows the curve of the average gray values as a function of distance, the reversed fitted curve and the peripherally enhanced curve.
  • the segmented image, with or without peripheral density enhancement, is then optionally processed (step 103) .
  • An initial modified median filter of size nxn may be used to eliminate isolated aberrant (very dark, low gray level) pixel values in the segmented image, since this would disturb the erosion step.
  • the modified median filtering is shown in FIG. 3A.
  • the median filter can be of 3x3 size, for example.
  • the conventional median filter is described in, for example, "The Image Processing Handbook," 2nd Ed., by John Russ (CRC Press 1995) .
  • the local minimum is determined (step 301) in the surrounding neighborhood (nxn pixels) . If the gray level at pixel location l(x,y) is smaller than the local minimum by a certain number of gray levels (M) in step 302, then that gray level is corrected by the median filter (step 303) .
  • M is 5 gray levels, but other values are possible.
  • the gray level of the pixel at l(x,y) is updated to the median pixel value of the neighborhood. It is checked whether the pixel is the last pixel for processing (step 304) .
  • step 305 If no, the next pixel is selected (step 305) and step 301 is repeated. If the answer in step 302 is no, the process moves to step 304. When the last pixel location is reached (step 304) , the filtering is completed for all of the pixels in the image.
  • Two criteria are then used to control which pixels are used as seed pixels for the morphological operation, to preserve the gray value characteristics of larger lesions as far as possible.
  • a check is made to determine whether pixel l(x,y) is a seed pixel.
  • the local maximum of the neighborhood is calculated (step 311) .
  • To qualify as a seed pixel the following criteria must be fulfilled. First, there must be a negative Laplacian (gray value of the pixel in question minus the local minimum gray value must be less than the local maximum gray value minus the gray value of the pixel in question, (step 312) . This, as demonstrated in FIGS.
  • step 314 the next pixel is selected (step 314) and the process is repeated.
  • the morphological open operation is performed (step 315) .
  • the morphological open (erosion followed by dilation) shown in FIG. 3B is performed on the segmented image, with or without modified median filtering, as shown in FIG. 1A.
  • the morphological open operation is also described in Russ, supra. Only the erosion processing can be performed, omitting the dilation procedure.
  • the main effect of the erosion is smoothing of the image while keeping lesions that are of interest.
  • the main effect of the dilation is to return masses to roughly their original size.
  • the dilation is optional.
  • the structuring element in the embodiment for the morphological operation is a circle with a diameter of 7 pixels, e.g. for a pixel size of 0.5 mm.
  • the structuring eliminates small circular and thin linear structures up to a diameter of 3.5 mm (for a 0.5 mm pixel size). If larger structuring elements are used, the subsequently used mass filter size is changed (as discussed below) . At the same time irregular densities are rounded by this process.
  • This morphological operation is different from the conventional operation in the sense that a threshold E is used to control how much structure is eroded. If the difference, i.e. the gray level value of a pixel in the image prior to the morphological operation, I(x,y), minus the gray level value after the morphological operation, P(x,y) , is larger than the threshold E (step 316) , then the gray level value of the pixel is replaced by the output of the morphological operation (step 317) .
  • Examples of E can range from 0-10 in terms of gray levels.
  • the morphological step is performed at different image resolutions.
  • resolution 1 can use an image having a 0.5 mm pixel size (resolution 1) , with the image being 512x512 pixels.
  • the process is repeated in parallel for images having 1 mm, 1.5 mm, 2.5 mm, etc. pixel size with a corresponding decrease in image size as the pixel size increase (for 1.0 mm pixel size, the image is 256x256, etc.).
  • the process can also be conducted serially with a change in the resolution for each iteration.
  • a second embodiment of the method according to the invention is shown in FIG. IB.
  • the morphological operation is performed at a beginning resolution (step 104) , followed by mass filtering (step 107) and template matching (step 110) .
  • the image resolution is changed in step 116 and the results of the matching are stored in step 117. It then determined whether the maximum resolution has been exceeded (step 118) . If no, the process is repeated at the new resolution. If yes, feature extraction, integration and classification (steps 113- 115) are performed the same as in FIG. 1A.
  • FIG. 1C shows a third embodiment of the invention.
  • the method shown in FIG. 1C differs from the method shown in FIG. IB in that a thresholding operation 119 is performed using the output of the mass filtering step.
  • the mass filtered image identifies areas suspected of containing a lesion that can be further processed by gray-level thresholding. After thresholding the image with the remaining suspected lesions is input to step 113 for feature analysis, followed by steps 114 and 115, as in the method of FIG. IB.
  • FIG. 4 is a diagram illustrating the circular kernel used in the mass filter.
  • this mass filter is a modified IRIS filter; for a description of the IRIS filter see Kobatake et al., CAR 1993: pp 624-629).
  • the kernel is ring-shaped (pixels 402) around a center pixel 400. Note in this kernel that the center pixel locations 401 are absent since they would not contribute useful values to the overall filter value (as described below) .
  • a ring-shaped filter rather than just a solid circular filter is thus used.
  • the mass filter value is based on the local gradient (in the embodiment a 7x7 kernel is used) in x- (Dx) and y- (Dy) directions.
  • Differences from the description of the IRIS filter in Kobatake et al. include use of a ring-shaped filter, second derivative instead of the gradient, and edge orientation bins. Gradient values smaller than a gradient threshold (e.g., 10) are not used in the calculation of the filter value.
  • a gradient threshold e.g. 10
  • FIG. 5 shows a gradient 500 at point 501. This assures that regions with a constant gradual slope do not contribute to the mass filter value.
  • the gradient is oriented at an angle ⁇ relative to a radial line from point 501 to point (x,y) .
  • the filter value is calculated separately for a specific number of edge orientation bins, such as 16 (B,, B 2 ...B 16 ). Orientation bins are radial sectors of the circular area. For example, each of 16 bins would cover an angle of ⁇ r/8.
  • a bin 502, shown for a sector of ⁇ r/8, is made of the pixels 402 between lines 503.
  • Edge strength is obtained from the second derivative of P calculated in edge orientation.
  • the final filter value is calculated as sum of the individual orientation bins, where a specified number of bins j, for example 4, with the highest values are ignored. That is: filter value at pixel l(x,y) - ⁇ , _ s f(B,) for B j not equal to the j highest bins. This prevents an influence of straight edges (e.g. the pectoralis muscle border) on the filter value, since all points along this edge are within the same orientation bin without changing the filter value for ideal circular lesions.
  • the filter value is highest in the center of a lesion. The highest filter values are found for round or slightly oval shaped lesions.
  • the neighborhood used in calculation of the filter value is empirically determined to be around 10 pixels (outer radius) ; this could be increased to improve the detection of oval shaped masses.
  • a gradient threshold can be employed so that pixels in the neighborhood that have a gradient smaller than the threshold (e.g. , 10) do not contribute to the calculation of the filter value.
  • the image outputted by the mass filter is then subjected to template matching.
  • Local maxima of the filter value define potential center points of mass lesions, which are used in steps 111-113, the matching of a deformable template on to the lesion border.
  • the edges of the suspect lesion can be obtained from the derivative or second derivative of the image output from the mass filtering.
  • the deformable shape template is defined using Fourier descriptors. An initial shape is selected and the Fourier descriptors are varied to dynamically fit the shape of the lesion. Fourier descriptors are described in, for example Arbter et al., Application of Affine-invariant Fourier Descriptors to Recognition of 3-D Objects , IEEE Trans.
  • arbitrary elliptical or kidney shape contours can be generated.
  • the terms -2 to 2 were selected since the lesions are of simple shape. However, one can modify the terms using a priori knowledge of the lesions to be detected.
  • the term 0 defines the position and the terms -1 and 1 define size and orientation of the main ellipse.
  • FIG. 6 is a diagram illustrating examples of the deformable templates corresponding to the possible shapes assigned to localized densities from the Fourier descriptors analysis discussed above, with the p- and p 2 values indicated for each shape. Note that the center position and the angle (orientation) and the size of each can be varied. FIG. 6 is an example of possible shapes, and the invention is not limited to these particular shapes or this number of shapes.
  • the lesion contour is generated by variation of the Fourier terms within a certain range with minimization of a cost function using lesion contrast, edge strength and deviation from the ideal circular shape. This process is performed on the output from the mass filter.
  • Simulated annealing is used for minimization- Simulated annealing is a technique for optimization, which involves a description of possible system configurations, a generator of random changes in the configuration (i.e., the "options"), a function for minimization and a control parameter (temperature) that controls the increments of the random changes. It is described in, for example, Numerical Recipes by Press, et al., Cambridge Press (1988).
  • the configuration in the embodiment is the "correct” Fourier descriptor of an extracted contour. This configuration could be obtained as an entire curve or in radial segments of the curve using different Fourier descriptors for each segment. Once "fit”, the inverse of the Fourier descriptors is performed yielding the contour. With the radial segments, only a limited number of points are generated in the inverse transformation.
  • the changes in the configuration i.e., the contour shape, that is the Fourier descriptor coefficients c k
  • the changes in the configuration i.e., the contour shape, that is the Fourier descriptor coefficients c k
  • the changes in the configuration i.e., the contour shape, that is the Fourier descriptor coefficients c k
  • the changes in the configuration i.e., the contour shape, that is the Fourier descriptor coefficients c k
  • the changes in the configuration are changed by changes in the center location, the size of the "lesion”, the orientation ( ⁇ ) , the long/short
  • Examples of the range of variation for each parameter include increments in center position by one pixel, a size range of 5 to 80 pixels in diameter with an increment of 2 pixels, and a range in ⁇ from -360 * to 360 * .
  • the function to be minimized includes a center cost index of 20 (in each direction) , a size cost index of 10 and an angle cost index of 10.
  • the starting temperature was set at 30.
  • the difference between the "lesion" center and the "fit” center, the difference between the size of the "lesion” and the size of the "fit”, the Euclidean difference between x-y position of the lesion contour and the x-y position of the fit contour, etc. are minimized.
  • the temperature is modified (cooled) as the iterations increase so that after a specified number of iterations a downward step in the temperature is taken.
  • the shape in terms of Fourier descriptors the penalty factor for deviations from the mean
  • the center the center
  • the angle the size
  • the penalty factor is a measure based on standard deviation, i.e. a limit on the amount of deformation during the template matching.
  • a shape file giving which part of the curve is used start temperature for the simulated annealing number of iterations increments such as for incrementing the center position, the size, the angle during the simulated annealing — number of points generated in the inverse transformation. Note that after the matching is successful, the final coefficients of the Fourier descriptors are used to return to the x,y domain. Thus, discontinuous margin pixels along a "mass" will be connected.
  • the output of the template matching is contour or a partial contour of the suspect lesion.
  • Edge maps can be used in the shape matching. Edge maps are obtained from the second derivative, as described above. Edge maps are used since sometimes there is only one good edge in the suspected lesion.
  • the lesion contour is generated by variation of the Fourier terms within a certain range with minimization of a cost function using lesion contrast, edge strength and deviation from the ideal circular shape. Simulated annealing is used for minimization. In the matchinq one can have varied the following: the shape in terms of Fourier descriptors, the penalty factor deviations from the mean, the center, the angle and the size.
  • a rectangular ROI containing the suspected lesion identified in the open, mass filtering and template matching operations is extracted from the original peripheral density enhanced image.
  • Feature extraction and analysis is performed on the suspected lesion. Feature extraction and is described in application Serial No. 08/158,389 to Giger et al., the disclosure of which is herein incorporated by reference.
  • the suspected lesion from the template matching is obtained (step 800) .
  • a suspected lesion from another method, by a computer or manually by an observer can also be used as input (step 801) .
  • a region of interest (ROI) containing the suspected lesion is selected (automatically or manually) in step 802.
  • the gradient and orientation of the ROI is calculated in step 803, followed by a calculation of the gradient index R, contrast and elongation factor in step 804.
  • FIG. 7 where in an ROI 700 a gradient 701 is calculated at a point 702 in a suspected lesion 703 having a center point (x,y) .
  • the pixels in the area enclosed by dashed line 704 are those pixels that do not contribute much to the gradient index (the gray value varies more towards the edge of the suspected lesion) , and may be excluded.
  • the radial gradient index R defined as follows:
  • the radial gradient index is a measure of circularity and density characteristics of the lesion.
  • the radial gradient index approaches l for ideal circular lesions.
  • This radial gradient index can be viewed as the average gradient in the radial direction normalized by the average gradient.
  • the suspected lesion size is given by the difference between the gray level at the center to that at the margin of the suspected lesion.
  • thresholding is performed in step 805. For example, lesions with a diameter less than some preset value (e.g. ⁇ 4 mm) , a contrast less than some preset value (e.g. ⁇ 0.1 optical density) or a radial gradient less that a preset value (e.g., 0.5) are eliminated.
  • some preset value e.g. ⁇ 4 mm
  • contrast less than some preset value e.g. ⁇ 0.1 optical density
  • a radial gradient less that a preset value e.g., 0.5
  • step 806 The features after thresholding are indicated in step 806 and can be merged using, for example, rule-based methods or an artificial neural network trained to detect and classify lesions (step 807) to eliminate further more false positives or to distinguish between malignant and benign lesions. Malignant and benign lesions will possess different R values if the maglinant lesion is highly spiculated.
  • FIG. 9A is a table illustrating the relationship between pixel size of the image and the lesion size being detected. The number and size of resolutions chosen depends upon the type of lesions to be detected and the amount of processing time available for detection.
  • the kernel size in the mass filtering can also be varied.
  • FIG. 9B is a table showing the relationship between kernel size and the size of the lesion being detected.
  • a single mass filter can be chosen for the different resolutions of the open filter.
  • the kernel size in the mass filtering can be varied, for example as shown in FIG. 9B.
  • the modified mass filtering step is shown in FIG. 10. The image resolution is kept constant while the kernel size is varied, the kernel size is kept constant while the image resolution is varied, or both can be varied.
  • step 1000 the image from the morphological operation is obtained.
  • the initial kernel size is set (step 1001) and the mass filtering is performed at the initial kernel size (step 1002) .
  • the image after mass filtering is stored (step 1003).
  • step 116 of FIG. 1A the different detected lesions from all of the outputs obtained from different resolution images, different size kernels, or both, are integrated. Locations indicating the same lesion may show up in more than one image.
  • the lesion with the smaller radial gradient index is eliminated.
  • the amount of acceptable overlap can be varied by specifying the percent of overlap allowed. In the embodiment, 30% was chosen, but other values can be used. Referring to FIG. 11, two lesions 1100 and 1101 are shown. The smaller lesion, having the larger gradient index is kept.
  • FIGS. 12A-12F illustrate example of (12A) an original mammogram, (12B) after border segmentation, (12C) after the modified open operation, (12D) after the mass filtering, (12E) after template matching and (12F) after feature extraction in which the suspect lesions are prioritized by number (with one being the most suspicious) .
  • lesion 1 was an intramammary lymph node with a radial gradient index of 0.92
  • lesion 3 was a 7 mm invasive ductal cancer (R - 0.85)
  • lesions 4 through 7 were false positive with R ranging from 0.78 to 0.52.
  • FIG. 12D the suspected lesions are evidently highlighted, allowing their extraction through thresholding as described above.
  • FIG. 12E contains many contrast features not evident from a visual inspection of FIG. 12D.
  • the template matching is sensitive to subtle variations in the mass- filtered image.
  • FIGS. 13A-13F show examples of a mammogram (13A) after peripheral enhancement and (13B) after morphological filter with a pixel size of 0.5 mm.
  • Figure 13C shows the difference image of FIG. 13A minus FIG. 13B, illustrating the small detail, non-lesion like structures that are eliminated by the morphological operation.
  • the effect of morphological operations with different pixel sizes is shown in FIGS. 13D- 13F for pixel sizes of 1.0 mm, 2.0 mm and 4.0 mm, respectively.
  • FIGS. 14A-14C illustrates (14A) an artificial ideal spherical lesion and (14B) its detection results.
  • FIG. 14C shows the 16 directional edge maps used in the method.
  • the 16 edge maps correspond to 16 equal radial sectors making up the circular lesion. Other numbers of edge maps can be chosen.
  • FIG. 15A shows the location of the ROI used for feature analysis within the original mammogram after peripheral enhancement.
  • FIGS. 15B-15D show enlargements of the ROI, the truth margin as marked by a radiologists and the detection result for lesions 1 and 2 from FIG. 12F, respectively.
  • Figure 16 is a graph illustrating the performance of the method in the detection of malignant lesions in a screening mammographic database in terms of FROC (free response operating characteristic) curve. For this performance evaluation, 45 invasive cancers less than 10 mm in size were used.
  • FIG. 17 is a schematic block diagram illustrating a system for implementing the automated method for the detection of lesions in medical images.
  • the system of FIG. 17 operates and carries out functions as described above.
  • a data input device 1700 such as a x-ray mammography device with a laser scanner and digitizer, produces a digitized mammogram.
  • the digitized mammogram is segmented by segmenting circuit 1701 and then input to a peripheral enhancement circuit 1702 or sampling circuit 1703.
  • Either the digitized mammogram or the peripherally enhanced is sampled by the sampling circuit 1703 (to select a pixel size) and then optionally processed by a modified median filter 1704.
  • Either the output of the sampling circuit 1703 or the filter 1704 is input to and processed by morphological circuit 1705.
  • circuit 1705 The output of circuit 1705 is fed to mass filter circuit 1706 for mass filtering.
  • the mass-filtered image is fed to a Fourier descriptors generating circuit 1707, edge images generating circuit 1708 and simulated annealing circuit 1709 for template matching.
  • the image(s) are then fed to a feature analysis circuit 1710 for feature extraction and analysis.
  • Memory 1711 is available to store images.
  • the features are merged for classification and integration in feature merging circuit 1712, and can be displayed on display 1713, such as a video display terminal.
  • the images can also be transferred from memory 1711 via transfer circuit 1714 to a feature analysis circuit 1715 to perform feature extraction and analysis.
  • the features are fed to a rule-based circuit or neural network 1716 to perform detection and classification of lesions.
  • Superimposing circuit 1717 allows the detected lesions to be displayed on the images.
  • the elements of the system of FIG. 17 can be carried out in software or in hardware, such as a programmed microcomputer.
  • the neural network can also be carried out in software or as a semiconductor layout.

Abstract

A method and system for the automated detection of lesions in the medical images. Medical images, such as mammograms are segmented and optionally processing with peripheral enhancement and/or modified median filtering. A modified morphological open operation (104-106) and filtering with a modified mass filter (107-109) are performed for the initial detection of circumscribed lesions. Then, the lesions are matched using a deformable shape template with Fourier descriptors (110-112). Characterization of the match is done using simulated annealing, and measuring the circularity and density characteristics of the suspected lesion. The procedure is performed iteratively at different spatial resolution in which at each resolution step a specific lesion size is detected. The detection of the lesion leads to a localization of a suspicious region and thus the likelyhood of cancer.

Description

TITLE OF THE INVENTION
METHOD AND SYSTEM FOR THE DETECTION OF LESIONS IN MEDICAL IMAGES
BACKGROUND OF THE INVENTION Field of the Invention The invention relates generally to a method and system for an improved computerized, automatic detection and characterization of lesions in medical images, and more particularly to the detection of circumscribed masses in digital mammograms. Novel techniques in the localization (segmentation) and detection of masses in mammograms, include initially processing with peripheral equalization (correction) , a modified median filter, a modified morphological open operation, filtering with a modified mass filter for the initial detection of circumscribed densities, matching using a deformable shape template with Fourier descriptors, optimization of the match using simulated annealing, and measuring the circularity and density characteristics of the suspected lesion to distinguish true positives from false positives and malignant lesions from benign lesions. The procedure is performed iteratively at different spatial resolution in which at each resolution step a specific lesion size is detected. The detection of the mass leads to a localization of a suspicious region and thus the likelihood of cancer. Discussion of the Background
Although mammography is currently the best method for the detection of breast cancer, between 10-30% of women who have breast cancer and undergo mammography have negative mammograms. In approximately two-thirds of these false- negative mammograms, the radiologist failed to detect the cancer that was evident retrospectively. The missed detections may be due to the subtle nature of the radiographic findings (i.e., low conspicuity of the lesion), poor image quality, eye fatigue or oversight by the radiologists. In addition, it has been suggested that double reading (by two radiologists) may increase sensitivity. It is apparent that the efficiency and effectiveness of screening procedures could be increased by using a computer system, as a "second opinion or second reading", to aid the radiologist by indicating locations of suspicious abnormalities in mammograms. In addition, mammography is becoming a high volume x-ray procedure routinely interpreted by radiologists.
If a suspicious region is detected by a radiologist, he or she must then visually extract various radiographic characteristics. Using these features, the radiologist then decides if the abnormality is likely to be malignant or benign, and what course of action should be recommended (i.e., return to screening, return for follow-up or return for biopsy) . Many patients are referred for surgical biopsy on the basis of a radiographically detected mass lesion or cluster of microcalcifications. Although general rules for the differentiation between benign and malignant breast lesions exist, considerable misclassification of lesions occurs with current radiographic techniques. On average, only 10-20% of masses referred for surgical breast biopsy are actually malignant. Thus, another aim of computer use is to extract and analyze the characteristics of benign and malignant lesions in an objective manner in order to aid the radiologist by reducing the numbers of false-positive diagnoses of malignancies, thereby decreasing patient morbidity as well as the number of surgical biopsies performed and their associated complications.
SUMMARY OF THE INVENTION
Accordingly, an object of this invention is to provide a method and system for detecting, classifying, and displaying masses in medical images of the breast.
Another object of this invention is to provide an automated method and system for the detection and/or classification of masses based on a multi-resolution analysis of mammograms. Another object of this invention is to provide an automated method and system for the detection and/or classification of masses based on a modified morphological open operation, filtering with a modified mass filter for the initial detection of circumscribed densities, matching using a deformable shape template with Fourier descriptors, optimization of the match using simulated annealing, and measuring the circularity and density characteristics of the suspected lesion.
These and other objects are achieved according to the invention by providing a new and improved automated method and system in which a segmentation of densities (masses) within a mammogram is performed followed by optimal characterization. BRIEF DESCRIPTION OF THE DRAWINGS A more complete appreciation of the invention and many of the attendant advantages thereof will be readily obtained as the same becomes better understood by the reference to the following detailed description when considered in connection with the accompanying drawings, wherein:
FIGS. 1A-1C are schematic diagram illustrating embodiments of the automated method for the detection of lesions according to the invention; FIG. 2 is a graph illustrating the step of peripheral enhancement according to the invention;
FIG. 3 is a schematic diagram of the modified median filtering according to the invention;
FIG. 3B is a schematic diagram of the modified morphological open operation according to the invention;
FIGS. 3C and 3D are graphs illustrating the criteria used in the modified morphological open operation of FIG. 3B;
FIG. 4 is a diagram illustrating the circular kernel used in the modified mass filter; FIG. 5 is a diagram illustrating a gradient vector in the modified mass filtering;
FIG. 6 is a diagram illustrating examples of the deformable templates corresponding to the possible shapes assigned to localized densities from the Fourier descriptors analysis;
FIG. 7 is a diagram of calculating a gradient in a region of interest;
FIG. 8 is a schematic diagram illustrating the analysis of a suspected lesion;
FIGS. 9A and 9B are tables illustrating the relationship between pixel size of the image and the lesion size being detected, and the relationship between kernel size and the lesion size being detected, respectively;
FIG. 10 is a schematic diagram of the changing of the kernel size in mass filtering;
FIG. 11 is a diagram of two detected lesions;
FIGS. 12A-12F illustrate examples of (12A) an original mammogram, (12B) after border segmentation, (12C) after the modified open operation, (12D) after the modified mass filter, (12E) after template matching and (12F) after feature extraction;
FIGS. 13A-13F illustrate examples of (13A) a mammogram, after peripheral enhancement, (13B) after morphological filtering, (13C) a image of the difference of the images of FIGS. 13A and 13B, and (13D-13F) after morphological filtering with pixel sizes of l, 2 and 4 mm;
FIGS. 14A-14C illustrate (14A) an artificial lesion, (14B) its detection results, and (14C) the edge maps used in the detection;
FIG. 15A shows the location of a region of interest (ROI) used for feature analysis;
FIGS. 15B-15D show enlargement of the ROI of FIG. 15A, a truth margin, and detection results, respectively;
FIG. 16 is a graph illustrating the performance of the method in the detection of malignant lesions in a screening mammographic database; and FIG. 17 is a schematic block diagram illustrating a system for implementing the automated method for the detection of lesions in medical images.
DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS
Referring now to the drawings, and more particularly to FIGS. 1A-1C thereof, schematic diagrams of the automated method for the detection and classification of lesions in breast images is shown. In FIG. 1A a first embodiment of the overall scheme includes an initial acquisition of a mammogram and digitization (step 100) . Next, the breast border is segmented from the rest of the image area (step 101) and peripheral density enhancement is performed on the image (step 102) . The image is processed (step 103) and then subjected to a modified morphological open operation using different filter sizes (steps 104-106) . The image after the open operation is mass filtered (steps 107-109) and template matched (steps 110- 112) . Feature extraction is then performed (step 113) followed by integration (step 114) and classification (step 115) of the detected lesions.
The method of detecting circumscribed masses according to the invention uses an automatically segmented mammographic image idicating only the actual breast region (step 101) after an optional application of the peripheral density equalization (step 102) . Segmentation of a mammogram is described in application Serial No. 08/158,320 to Bick et al, the disclosure of which is herein incorporated by reference.
In the segmentation process, noise filtering is applied tc the digital mammogram followed by application of the gray- value range operator. Using information from the local range operator a modified global histogram analysis is performed. Region growing is performed on the threshold image using connectivity (counting pixels) , followed by a morphological erosion operation. The distance map of the image is determined and the boundary of the segmented object (breast) in the image is then tracked to yield its contour. The contour can then be output onto the digital image or passed to other computer algorithms.
Note that there is an inverse relationship between gray level and optical density. A low optical density (white region) on the mammogram (high anatomic density) corresponds to a high gray level (1023), whereas a high optical density (black region) on the mammogram corresponds to a low gray level (0) .
The image after segmenting can be processed (step 103) or peripheral density enhancement can be performed. Peripheral density enhancement is described in application Serial No. 08/158,320. The average gray values of the pixels as a function of distance from the breast border. An enhancement curve is determined by fitting, such as polynomial fitting, a curve of the average gray values as a function of distance, and then reversing the fit. The enhancement curve is added to the curve of the average gray values as a function of distance to produce an enhanced gray value curve. This results in a peripherally enhanced image where the center and the portion near the border are simultaneously displayed without loss in contrast. FIG. 2 shows the curve of the average gray values as a function of distance, the reversed fitted curve and the peripherally enhanced curve.
The segmented image, with or without peripheral density enhancement, is then optionally processed (step 103) . An initial modified median filter of size nxn may be used to eliminate isolated aberrant (very dark, low gray level) pixel values in the segmented image, since this would disturb the erosion step. The modified median filtering is shown in FIG. 3A. The median filter can be of 3x3 size, for example. The conventional median filter is described in, for example, "The Image Processing Handbook," 2nd Ed., by John Russ (CRC Press 1995) .
At a beginning pixel location l(x,y) in the image (step 300) , which can be either the segmented or the peripherally enhanced segmented image, the local minimum is determined (step 301) in the surrounding neighborhood (nxn pixels) . If the gray level at pixel location l(x,y) is smaller than the local minimum by a certain number of gray levels (M) in step 302, then that gray level is corrected by the median filter (step 303) . An example of M is 5 gray levels, but other values are possible. In the embodiment, the gray level of the pixel at l(x,y) is updated to the median pixel value of the neighborhood. It is checked whether the pixel is the last pixel for processing (step 304) . If no, the next pixel is selected (step 305) and step 301 is repeated. If the answer in step 302 is no, the process moves to step 304. When the last pixel location is reached (step 304) , the filtering is completed for all of the pixels in the image.
Two criteria are then used to control which pixels are used as seed pixels for the morphological operation, to preserve the gray value characteristics of larger lesions as far as possible. As shown in FIG. 3B, beginning at pixel location l(x,y) (step 310) a check is made to determine whether pixel l(x,y) is a seed pixel. The local maximum of the neighborhood is calculated (step 311) . To qualify as a seed pixel the following criteria must be fulfilled. First, there must be a negative Laplacian (gray value of the pixel in question minus the local minimum gray value must be less than the local maximum gray value minus the gray value of the pixel in question, (step 312) . This, as demonstrated in FIGS. 3C and 3D, prevents erosion of the center of a small mass. In FIG. 3C the gray value I(x,y)=MAX, so no change is made to pixel value and the center is preserved. In FIG. 3D, I(x,y)-MIN < MAX-I(x,y), so the gray value of pixel at location l(x,y) is changed. Second, only pixels with a small distance from the local minimum are used as erosion centers (step 313) . That is, the location of the seed pixel must be close to the location of the local MIN. This preserves the gray value slope in the periphery of larger lesions. An example of the distance is 3 pixels, and other values may be chosen.
If the answer is no at either of steps 312 and 313, the next pixel is selected (step 314) and the process is repeated. For those pixels which qualify as a seed pixel, the morphological open operation is performed (step 315) .
The morphological open (erosion followed by dilation) shown in FIG. 3B is performed on the segmented image, with or without modified median filtering, as shown in FIG. 1A. The morphological open operation is also described in Russ, supra. Only the erosion processing can be performed, omitting the dilation procedure. The main effect of the erosion is smoothing of the image while keeping lesions that are of interest. The main effect of the dilation is to return masses to roughly their original size. The dilation is optional. The structuring element in the embodiment for the morphological operation is a circle with a diameter of 7 pixels, e.g. for a pixel size of 0.5 mm. The structuring eliminates small circular and thin linear structures up to a diameter of 3.5 mm (for a 0.5 mm pixel size). If larger structuring elements are used, the subsequently used mass filter size is changed (as discussed below) . At the same time irregular densities are rounded by this process.
This morphological operation is different from the conventional operation in the sense that a threshold E is used to control how much structure is eroded. If the difference, i.e. the gray level value of a pixel in the image prior to the morphological operation, I(x,y), minus the gray level value after the morphological operation, P(x,y) , is larger than the threshold E (step 316) , then the gray level value of the pixel is replaced by the output of the morphological operation (step 317) . Examples of E can range from 0-10 in terms of gray levels. When dilation is performed, if the gray level after dilation exceeds the original gray level of the pixel, the original gray level value is used for the pixel. This is repeated for all pixels.
Referring to FIG. 1A, the morphological step is performed at different image resolutions. For example, resolution 1 (step 104) can use an image having a 0.5 mm pixel size (resolution 1) , with the image being 512x512 pixels. The process is repeated in parallel for images having 1 mm, 1.5 mm, 2.5 mm, etc. pixel size with a corresponding decrease in image size as the pixel size increase (for 1.0 mm pixel size, the image is 256x256, etc.).
The process can also be conducted serially with a change in the resolution for each iteration. A second embodiment of the method according to the invention is shown in FIG. IB. After steps 100-103, the morphological operation is performed at a beginning resolution (step 104) , followed by mass filtering (step 107) and template matching (step 110) . The image resolution is changed in step 116 and the results of the matching are stored in step 117. It then determined whether the maximum resolution has been exceeded (step 118) . If no, the process is repeated at the new resolution. If yes, feature extraction, integration and classification (steps 113- 115) are performed the same as in FIG. 1A.
FIG. 1C shows a third embodiment of the invention. The method shown in FIG. 1C differs from the method shown in FIG. IB in that a thresholding operation 119 is performed using the output of the mass filtering step. The mass filtered image identifies areas suspected of containing a lesion that can be further processed by gray-level thresholding. After thresholding the image with the remaining suspected lesions is input to step 113 for feature analysis, followed by steps 114 and 115, as in the method of FIG. IB. FIG. 4 is a diagram illustrating the circular kernel used in the mass filter. For detection of circumscribed densities a mass filter with a circular base is used (this mass filter is a modified IRIS filter; for a description of the IRIS filter see Kobatake et al., CAR 1993: pp 624-629). The kernel is ring-shaped (pixels 402) around a center pixel 400. Note in this kernel that the center pixel locations 401 are absent since they would not contribute useful values to the overall filter value (as described below) . A ring-shaped filter rather than just a solid circular filter is thus used. The mass filter value is based on the local gradient (in the embodiment a 7x7 kernel is used) in x- (Dx) and y- (Dy) directions. Differences from the description of the IRIS filter in Kobatake et al. include use of a ring-shaped filter, second derivative instead of the gradient, and edge orientation bins. Gradient values smaller than a gradient threshold (e.g., 10) are not used in the calculation of the filter value.
The edge orientation at a specific image point is equivalent to the gradient vector and the edge strength is calculated as the second derivative in edge orientation. FIG. 5 shows a gradient 500 at point 501. This assures that regions with a constant gradual slope do not contribute to the mass filter value. The gradient is oriented at an angle φ relative to a radial line from point 501 to point (x,y) . The filter value is calculated separately for a specific number of edge orientation bins, such as 16 (B,, B2...B16). Orientation bins are radial sectors of the circular area. For example, each of 16 bins would cover an angle of ιr/8. A bin 502, shown for a sector of τr/8, is made of the pixels 402 between lines 503.
The calculation for a given pixel location (x,y) is given for the calculation of each orientation bin by:
fCBj ) = (l/N) ΣP iD κ[MAX(0 , cosfy) * Edge Strength (a t P) ]
where: f(Bj) filter value for edge orientation bin
K filter kernel
P neighbor point in K
N number of points in K φ angle between gradient vector and connection line center point/neighbor point
Edge strength is obtained from the second derivative of P calculated in edge orientation. The final filter value is calculated as sum of the individual orientation bins, where a specified number of bins j, for example 4, with the highest values are ignored. That is: filter value at pixel l(x,y) - Σ , _ s f(B,) for Bj not equal to the j highest bins. This prevents an influence of straight edges (e.g. the pectoralis muscle border) on the filter value, since all points along this edge are within the same orientation bin without changing the filter value for ideal circular lesions. Usually the filter value is highest in the center of a lesion. The highest filter values are found for round or slightly oval shaped lesions. The neighborhood used in calculation of the filter value is empirically determined to be around 10 pixels (outer radius) ; this could be increased to improve the detection of oval shaped masses. In addition, a gradient threshold can be employed so that pixels in the neighborhood that have a gradient smaller than the threshold (e.g. , 10) do not contribute to the calculation of the filter value.
The image outputted by the mass filter is then subjected to template matching. Local maxima of the filter value define potential center points of mass lesions, which are used in steps 111-113, the matching of a deformable template on to the lesion border. The edges of the suspect lesion can be obtained from the derivative or second derivative of the image output from the mass filtering. The deformable shape template is defined using Fourier descriptors. An initial shape is selected and the Fourier descriptors are varied to dynamically fit the shape of the lesion. Fourier descriptors are described in, for example Arbter et al., Application of Affine-invariant Fourier Descriptors to Recognition of 3-D Objects , IEEE Trans. Pattern Analysis Machine Intelligence 12:640-647 (1990); Kuhl et al., Elliptic Fourier Features of a Closed Contour, Computer Graphics Image Processing 18:236-258 (1982); Wallace et al., An Efficient Three-dimensional Aircraft Recognition Algorithm Using Normalized Fourier Descriptors , ibid., 13:99-126 (1980); Granlund, Fourier Preprocessing for Hand Print Character Recognition , IEEE Trans. Computers 21:195-201 (1972); Zahn et al. , Fourier Descriptors for Plane Closed Curves , ibid., 21:269-281 (1972); Crimmins, A Complete Set of Fourier Descriptors for wo- dimensional Shape, IEEE Trans. Sys. Man Cybernetics 12:848-855 (1982); Persoon et al., Shape Discrimination Using Fourier Descriptors , ibid., 7:170-179 (1977); and Richard et al. , Identification of Three-dimensional Objects Using Fourier Descriptors of the Boundary Curve , ibid., 4:371-378 (1974). In the template matching step the object contour is generated as an inverse Fourier transform of a limited number of complex Fourier terms. The following relationship exists between a closed planar curve g(l) and Fourier descriptors ck: g(l) planar curve and Fourier descriptors:
ck = ic e** = (1/L)J g(l) e -J*kl Ldl
where: g(l) is a planar curve with a runlength 1; the real of part of g - x coordinate, the imaginary part of g = y coordinate ck Fourier descriptors with -N/2 ≤ k ≤ N/2, N - «>
By variation of the terms -2, -1, 0, 1, and 2 arbitrary elliptical or kidney shape contours can be generated. The terms -2 to 2 were selected since the lesions are of simple shape. However, one can modify the terms using a priori knowledge of the lesions to be detected. The term 0 defines the position and the terms -1 and 1 define size and orientation of the main ellipse.
In the mass detection the following fourier descriptors are used: ck = 0 for k « -2 or k > 2
C, = sp,e c0 = x + jy c. = se* c2 ■ sp2e -i*«» T) x x center position y y center position s size a orientation (angle between main ellipse and x-axis) p.: variable parameter to describe the short/long axis ratio of the main ellipse with 0 ≤ p- < 0.5 (long axis: s + sp., short axis: s - sp- for p. = 0, the Fourier descriptors define a circle as a special case of an ellipse) p2 variable parameter to describe the degree of asymmetry (kidney shape) with 0 ≤ p2 ≤ 0.3
FIG. 6 is a diagram illustrating examples of the deformable templates corresponding to the possible shapes assigned to localized densities from the Fourier descriptors analysis discussed above, with the p- and p2 values indicated for each shape. Note that the center position and the angle (orientation) and the size of each can be varied. FIG. 6 is an example of possible shapes, and the invention is not limited to these particular shapes or this number of shapes. The lesion contour is generated by variation of the Fourier terms within a certain range with minimization of a cost function using lesion contrast, edge strength and deviation from the ideal circular shape. This process is performed on the output from the mass filter. Simulated annealing is used for minimization- Simulated annealing is a technique for optimization, which involves a description of possible system configurations, a generator of random changes in the configuration (i.e., the "options"), a function for minimization and a control parameter (temperature) that controls the increments of the random changes. It is described in, for example, Numerical Recipes by Press, et al., Cambridge Press (1988).
The configuration in the embodiment is the "correct" Fourier descriptor of an extracted contour. This configuration could be obtained as an entire curve or in radial segments of the curve using different Fourier descriptors for each segment. Once "fit", the inverse of the Fourier descriptors is performed yielding the contour. With the radial segments, only a limited number of points are generated in the inverse transformation. The changes in the configuration (i.e., the contour shape, that is the Fourier descriptor coefficients ck) are changed by changes in the center location, the size of the "lesion", the orientation (α) , the long/short axis ratio (indicating the degree of being oval) and the degree of asymmetry. The method limits the changes to these in the Fourier descriptors. Examples of the range of variation for each parameter include increments in center position by one pixel, a size range of 5 to 80 pixels in diameter with an increment of 2 pixels, and a range in α from -360* to 360*. The function to be minimized includes a center cost index of 20 (in each direction) , a size cost index of 10 and an angle cost index of 10. The starting temperature was set at 30. Upon minimizing the cost function, the difference between the "lesion" center and the "fit" center, the difference between the size of the "lesion" and the size of the "fit", the Euclidean difference between x-y position of the lesion contour and the x-y position of the fit contour, etc. are minimized. The temperature is modified (cooled) as the iterations increase so that after a specified number of iterations a downward step in the temperature is taken.
In the template matching the following can be varied: the shape in terms of Fourier descriptors, the penalty factor for deviations from the mean, the center, the angle and the size. The penalty factor is a measure based on standard deviation, i.e. a limit on the amount of deformation during the template matching.
An example of the parameter file used in the deformable template matching is shown below: — a shape file giving which part of the curve is used start temperature for the simulated annealing number of iterations — increments such as for incrementing the center position, the size, the angle during the simulated annealing — number of points generated in the inverse transformation. Note that after the matching is successful, the final coefficients of the Fourier descriptors are used to return to the x,y domain. Thus, discontinuous margin pixels along a "mass" will be connected. The output of the template matching is contour or a partial contour of the suspect lesion.
Sixteen edge maps can be used in the shape matching. Edge maps are obtained from the second derivative, as described above. Edge maps are used since sometimes there is only one good edge in the suspected lesion. The lesion contour is generated by variation of the Fourier terms within a certain range with minimization of a cost function using lesion contrast, edge strength and deviation from the ideal circular shape. Simulated annealing is used for minimization. In the matchinq one can have varied the following: the shape in terms of Fourier descriptors, the penalty factor deviations from the mean, the center, the angle and the size.
For further characterization a rectangular ROI containing the suspected lesion identified in the open, mass filtering and template matching operations is extracted from the original peripheral density enhanced image. Feature extraction and analysis is performed on the suspected lesion. Feature extraction and is described in application Serial No. 08/158,389 to Giger et al., the disclosure of which is herein incorporated by reference.
This is shown in more detail in FIG. 8. The suspected lesion from the template matching is obtained (step 800) . Note that a suspected lesion from another method, by a computer or manually by an observer, can also be used as input (step 801) . A region of interest (ROI) containing the suspected lesion is selected (automatically or manually) in step 802. The gradient and orientation of the ROI is calculated in step 803, followed by a calculation of the gradient index R, contrast and elongation factor in step 804. This is shown in more detail in FIG. 7, where in an ROI 700 a gradient 701 is calculated at a point 702 in a suspected lesion 703 having a center point (x,y) . The pixels in the area enclosed by dashed line 704 are those pixels that do not contribute much to the gradient index (the gray value varies more towards the edge of the suspected lesion) , and may be excluded. The radial gradient index R, defined as follows:
Figure imgf000022_0001
where:
R radial gradient index -1 ≤ R ≤ 1
P image point
(x,y) center of suspected lesion from template matching L detected lesion excluding the center part
D-, gradient in x-direction
Dy gradient in y-direction
Φ angle between gradient vector and connection line center
(x,y) to P The radial gradient index is a measure of circularity and density characteristics of the lesion. The radial gradient index approaches l for ideal circular lesions. This radial gradient index can be viewed as the average gradient in the radial direction normalized by the average gradient. The suspected lesion size is given by the difference between the gray level at the center to that at the margin of the suspected lesion.
To limit the number of false positives, thresholding is performed in step 805. For example, lesions with a diameter less than some preset value (e.g. < 4 mm) , a contrast less than some preset value (e.g. < 0.1 optical density) or a radial gradient less that a preset value (e.g., 0.5) are eliminated.
The features after thresholding are indicated in step 806 and can be merged using, for example, rule-based methods or an artificial neural network trained to detect and classify lesions (step 807) to eliminate further more false positives or to distinguish between malignant and benign lesions. Malignant and benign lesions will possess different R values if the maglinant lesion is highly spiculated.
The open, mass filtering and template matching are performed repeatedly with different resolutions. In each resolution step a specific lesion size is detected. FIG. 9A is a table illustrating the relationship between pixel size of the image and the lesion size being detected. The number and size of resolutions chosen depends upon the type of lesions to be detected and the amount of processing time available for detection.
The kernel size in the mass filtering can also be varied. FIG. 9B is a table showing the relationship between kernel size and the size of the lesion being detected. In the embodiments described above, a single mass filter can be chosen for the different resolutions of the open filter. In a modification of theses embodiments, the kernel size in the mass filtering can be varied, for example as shown in FIG. 9B. The modified mass filtering step is shown in FIG. 10. The image resolution is kept constant while the kernel size is varied, the kernel size is kept constant while the image resolution is varied, or both can be varied.
In step 1000, the image from the morphological operation is obtained. The initial kernel size is set (step 1001) and the mass filtering is performed at the initial kernel size (step 1002) . The image after mass filtering is stored (step 1003). Next, it is checked whether the maximum kernel size has been reached in step 1004. If no, then a new kernel size is selected (step 1005) and the mass filtering is performed again. After the last kernel size is used, the images are output (step 1006) .
After features analysis has been performed, in step 116 of FIG. 1A the different detected lesions from all of the outputs obtained from different resolution images, different size kernels, or both, are integrated. Locations indicating the same lesion may show up in more than one image.
If two lesions overlap, the lesion with the smaller radial gradient index is eliminated. The amount of acceptable overlap can be varied by specifying the percent of overlap allowed. In the embodiment, 30% was chosen, but other values can be used. Referring to FIG. 11, two lesions 1100 and 1101 are shown. The smaller lesion, having the larger gradient index is kept.
FIGS. 12A-12F illustrate example of (12A) an original mammogram, (12B) after border segmentation, (12C) after the modified open operation, (12D) after the mass filtering, (12E) after template matching and (12F) after feature extraction in which the suspect lesions are prioritized by number (with one being the most suspicious) . In this case lesion 1 was an intramammary lymph node with a radial gradient index of 0.92, lesion 2 was a 10 mm invasive ductal cancer (R = 0.90), lesion 3 was a 7 mm invasive ductal cancer (R - 0.85) , and lesions 4 through 7 were false positive with R ranging from 0.78 to 0.52.
In FIG. 12D the suspected lesions are evidently highlighted, allowing their extraction through thresholding as described above. FIG. 12E contains many contrast features not evident from a visual inspection of FIG. 12D. The template matching is sensitive to subtle variations in the mass- filtered image.
FIGS. 13A-13F show examples of a mammogram (13A) after peripheral enhancement and (13B) after morphological filter with a pixel size of 0.5 mm. Figure 13C shows the difference image of FIG. 13A minus FIG. 13B, illustrating the small detail, non-lesion like structures that are eliminated by the morphological operation. The effect of morphological operations with different pixel sizes is shown in FIGS. 13D- 13F for pixel sizes of 1.0 mm, 2.0 mm and 4.0 mm, respectively.
FIGS. 14A-14C illustrates (14A) an artificial ideal spherical lesion and (14B) its detection results. FIG. 14C shows the 16 directional edge maps used in the method. The 16 edge maps correspond to 16 equal radial sectors making up the circular lesion. Other numbers of edge maps can be chosen.
FIG. 15A shows the location of the ROI used for feature analysis within the original mammogram after peripheral enhancement. FIGS. 15B-15D show enlargements of the ROI, the truth margin as marked by a radiologists and the detection result for lesions 1 and 2 from FIG. 12F, respectively.
Figure 16 is a graph illustrating the performance of the method in the detection of malignant lesions in a screening mammographic database in terms of FROC (free response operating characteristic) curve. For this performance evaluation, 45 invasive cancers less than 10 mm in size were used.
FIG. 17 is a schematic block diagram illustrating a system for implementing the automated method for the detection of lesions in medical images. The system of FIG. 17 operates and carries out functions as described above. A data input device 1700, such as a x-ray mammography device with a laser scanner and digitizer, produces a digitized mammogram. The digitized mammogram is segmented by segmenting circuit 1701 and then input to a peripheral enhancement circuit 1702 or sampling circuit 1703. Either the digitized mammogram or the peripherally enhanced is sampled by the sampling circuit 1703 (to select a pixel size) and then optionally processed by a modified median filter 1704. Either the output of the sampling circuit 1703 or the filter 1704 is input to and processed by morphological circuit 1705. The output of circuit 1705 is fed to mass filter circuit 1706 for mass filtering. Next, the mass-filtered image is fed to a Fourier descriptors generating circuit 1707, edge images generating circuit 1708 and simulated annealing circuit 1709 for template matching. The image(s) are then fed to a feature analysis circuit 1710 for feature extraction and analysis. Memory 1711 is available to store images. The features are merged for classification and integration in feature merging circuit 1712, and can be displayed on display 1713, such as a video display terminal. The images can also be transferred from memory 1711 via transfer circuit 1714 to a feature analysis circuit 1715 to perform feature extraction and analysis. The features are fed to a rule-based circuit or neural network 1716 to perform detection and classification of lesions. Superimposing circuit 1717 allows the detected lesions to be displayed on the images.
The elements of the system of FIG. 17 can be carried out in software or in hardware, such as a programmed microcomputer. The neural network can also be carried out in software or as a semiconductor layout.
Obviously, numerous modifications and variations of the present invention are possible in light of the above technique. It is therefore to be understood that within the scope of the appended claims, the invention may be practiced otherwise than as specifically described herein. Although the current application is focussed on the detection and classification of mass lesions in mammograms, the concept can be expanded to the detection and classification of abnormalities in other organs in the human body, such as the lungs and the liver.

Claims

WHAT IS CLAIMED AS NEW AND DESIRED TO BE SECURED BY LETTERS PATENT OF THE UNITED STATES IS:
1. A method for the automated detection of mass lesions in mammographic images, comprising: generating a mammogram; segmenting said mammogram to produce a segmented mammogram; performing a morphological operation on said segmented mammogram; performing mass filtering; performing template matching; and detecting a lesion.
PCT/US1996/002439 1995-03-03 1996-03-04 Method and system for the detection of lesions in medical images WO1996027846A1 (en)

Priority Applications (3)

Application Number Priority Date Filing Date Title
JP8526892A JPH11501538A (en) 1995-03-03 1996-03-04 Method and system for detecting lesions in medical images
AU49932/96A AU705713B2 (en) 1995-03-03 1996-03-04 Method and system for the detection of lesions in medical images
EP96906597A EP0813720A4 (en) 1995-03-03 1996-03-04 Method and system for the detection of lesions in medical images

Applications Claiming Priority (2)

Application Number Priority Date Filing Date Title
US39830795A 1995-03-03 1995-03-03
US08/398,307 1995-03-03

Publications (1)

Publication Number Publication Date
WO1996027846A1 true WO1996027846A1 (en) 1996-09-12

Family

ID=23574882

Family Applications (1)

Application Number Title Priority Date Filing Date
PCT/US1996/002439 WO1996027846A1 (en) 1995-03-03 1996-03-04 Method and system for the detection of lesions in medical images

Country Status (6)

Country Link
US (1) US6185320B1 (en)
EP (1) EP0813720A4 (en)
JP (1) JPH11501538A (en)
AU (1) AU705713B2 (en)
CA (1) CA2214101A1 (en)
WO (1) WO1996027846A1 (en)

Cited By (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO1998024367A1 (en) * 1996-12-02 1998-06-11 Koninklijke Philips Electronics N.V. Mass detection in digital radiologic images using a two stage classifier
WO1998055916A1 (en) * 1997-06-06 1998-12-10 Koninklijke Philips Electronics N.V. Noise reduction in an image
CN101540061B (en) * 2009-04-10 2011-06-22 西北工业大学 Topological and ordering matching method for disordered images based on simulated annealing
KR101111055B1 (en) 2009-10-12 2012-02-15 서울대학교산학협력단 Method for Automatic Breast Density Measurement on Digital Mammogram

Families Citing this family (87)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6009212A (en) 1996-07-10 1999-12-28 Washington University Method and apparatus for image registration
KR100219628B1 (en) * 1997-02-15 1999-09-01 윤종용 Signal adaptive filtering method and signal adaptive filter
AU8586098A (en) 1997-07-25 1999-02-16 Arch Development Corporation Method and system for the segmentation of lung regions in lateral chest radiographs
US6697107B1 (en) * 1998-07-09 2004-02-24 Eastman Kodak Company Smoothing a digital color image using luminance values
US6542187B1 (en) * 1998-07-09 2003-04-01 Eastman Kodak Company Correcting for chrominance interpolation artifacts
US6633686B1 (en) * 1998-11-05 2003-10-14 Washington University Method and apparatus for image registration using large deformation diffeomorphisms on a sphere
FR2790851B1 (en) 1999-03-12 2001-06-08 Ge Medical Syst Sa METHOD FOR IMPROVING THE DETECTION OF ELEMENTS OF INTEREST IN A DIGITAL RADIOGRAPHIC IMAGE
US6941323B1 (en) 1999-08-09 2005-09-06 Almen Laboratories, Inc. System and method for image comparison and retrieval by enhancing, defining, and parameterizing objects in images
US6674880B1 (en) * 1999-11-24 2004-01-06 Confirma, Inc. Convolution filtering of similarity data for visual display of enhanced image
BR0007803A (en) * 1999-11-29 2002-03-12 Koninkl Philips Electronics Nv Process for encoding a plurality of multimedia data, computer program product for a multimedia data encoding device, and transmissible encoded signal
US6898303B2 (en) * 2000-01-18 2005-05-24 Arch Development Corporation Method, system and computer readable medium for the two-dimensional and three-dimensional detection of lesions in computed tomography scans
US6901156B2 (en) * 2000-02-04 2005-05-31 Arch Development Corporation Method, system and computer readable medium for an intelligent search workstation for computer assisted interpretation of medical images
US6724945B1 (en) * 2000-05-24 2004-04-20 Hewlett-Packard Development Company, L.P. Correcting defect pixels in a digital image
JP4169954B2 (en) * 2000-09-18 2008-10-22 富士フイルム株式会社 Abnormal shadow candidate detection method
CA2323883C (en) * 2000-10-19 2016-02-16 Patrick Ryan Morin Method and device for classifying internet objects and objects stored oncomputer-readable media
US20020159642A1 (en) * 2001-03-14 2002-10-31 Whitney Paul D. Feature selection and feature set construction
JP2002330950A (en) * 2001-05-11 2002-11-19 Fuji Photo Film Co Ltd Abnormal shadow candidate detector
US20040175034A1 (en) * 2001-06-20 2004-09-09 Rafael Wiemker Method for segmentation of digital images
US7110525B1 (en) 2001-06-25 2006-09-19 Toby Heller Agent training sensitive call routing system
JP2003057771A (en) * 2001-08-20 2003-02-26 Fuji Photo Film Co Ltd Abnormal shadow detector
US20030095696A1 (en) * 2001-09-14 2003-05-22 Reeves Anthony P. System, method and apparatus for small pulmonary nodule computer aided diagnosis from computed tomography scans
US7359538B2 (en) * 2001-11-23 2008-04-15 R2 Technology Detection and analysis of lesions in contact with a structural boundary
US20030103663A1 (en) * 2001-11-23 2003-06-05 University Of Chicago Computerized scheme for distinguishing between benign and malignant nodules in thoracic computed tomography scans by use of similar images
US7336809B2 (en) * 2001-11-23 2008-02-26 R2 Technology, Inc. Segmentation in medical images
US6766043B2 (en) * 2001-11-23 2004-07-20 R2 Technology, Inc. Pleural nodule detection from CT thoracic images
US6855114B2 (en) * 2001-11-23 2005-02-15 Karen Drukker Automated method and system for the detection of abnormalities in sonographic images
AU2003246989A1 (en) * 2002-07-19 2004-02-09 Koninklijke Philips Electronics N.V. Simultaneous segmentation of multiple or composed objects by mesh adaptation
US20040215072A1 (en) * 2003-01-24 2004-10-28 Quing Zhu Method of medical imaging using combined near infrared diffusive light and ultrasound
US9818136B1 (en) 2003-02-05 2017-11-14 Steven M. Hoffberg System and method for determining contingent relevance
GB2398379A (en) * 2003-02-11 2004-08-18 Qinetiq Ltd Automated digital image analysis
US7489829B2 (en) * 2003-03-11 2009-02-10 Sightic Vista Ltd. Adaptive low-light image processing
NO322089B1 (en) * 2003-04-09 2006-08-14 Norsar V Daglig Leder Procedure for simulating local preamp deep-migrated seismic images
US7668358B2 (en) * 2003-07-18 2010-02-23 Hologic, Inc. Model-based grayscale registration of medical images
US7664302B2 (en) * 2003-07-18 2010-02-16 Hologic, Inc. Simultaneous grayscale and geometric registration of images
KR100503424B1 (en) * 2003-09-18 2005-07-22 한국전자통신연구원 Automated method for detection of pulmonary nodules on multi-slice computed tomographic images and recording medium in which the method is recorded
US20050075566A1 (en) * 2003-09-19 2005-04-07 Fuji Photo Film Co., Ltd. Ultrasonice diagnosing apparatus
US7515743B2 (en) * 2004-01-08 2009-04-07 Siemens Medical Solutions Usa, Inc. System and method for filtering a medical image
US7634139B2 (en) * 2004-03-16 2009-12-15 Sony Corporation System and method for efficiently performing a pattern matching procedure
GB2461199B (en) * 2004-06-23 2010-04-28 Medicsight Plc Lesion extent determination in a CT scan image
US20060018524A1 (en) * 2004-07-15 2006-01-26 Uc Tech Computerized scheme for distinction between benign and malignant nodules in thoracic low-dose CT
US7920152B2 (en) 2004-11-04 2011-04-05 Dr Systems, Inc. Systems and methods for viewing medical 3D imaging volumes
US7885440B2 (en) 2004-11-04 2011-02-08 Dr Systems, Inc. Systems and methods for interleaving series of medical images
US7660488B2 (en) * 2004-11-04 2010-02-09 Dr Systems, Inc. Systems and methods for viewing medical images
US7970625B2 (en) 2004-11-04 2011-06-28 Dr Systems, Inc. Systems and methods for retrieval of medical data
US7787672B2 (en) 2004-11-04 2010-08-31 Dr Systems, Inc. Systems and methods for matching, naming, and displaying medical images
US7736313B2 (en) * 2004-11-22 2010-06-15 Carestream Health, Inc. Detecting and classifying lesions in ultrasound images
JP2008529639A (en) * 2005-02-11 2008-08-07 コーニンクレッカ フィリップス エレクトロニクス エヌ ヴィ Inspection apparatus, image processing device, method of inspecting target object with inspection apparatus, computer-readable medium, and program element
US8517945B2 (en) * 2005-04-28 2013-08-27 Carestream Health, Inc. Segmentation of lesions in ultrasound images
CN1907225B (en) * 2005-08-05 2011-02-02 Ge医疗系统环球技术有限公司 Process and apparatus for dividing intracerebral hemorrhage injury
US7764820B2 (en) * 2005-08-24 2010-07-27 The General Hospital Corporation Multi-threshold peripheral equalization method and apparatus for digital mammography and breast tomosynthesis
JP4717585B2 (en) * 2005-10-14 2011-07-06 富士フイルム株式会社 Medical image determination apparatus, medical image determination method and program thereof
WO2007048844A1 (en) * 2005-10-28 2007-05-03 France Telecom Method for processing a representaitve source image of at least one object, processing device, corresponding distance map and a computer software product
US20070211930A1 (en) * 2006-03-09 2007-09-13 Terry Dolwick Attribute based image enhancement and display for medical imaging applications
US20070250548A1 (en) * 2006-04-21 2007-10-25 Beckman Coulter, Inc. Systems and methods for displaying a cellular abnormality
US8571287B2 (en) * 2006-06-26 2013-10-29 General Electric Company System and method for iterative image reconstruction
US8239006B2 (en) * 2006-07-06 2012-08-07 The University Of Connecticut Method and apparatus for medical imaging using near-infrared optical tomography and fluorescence tomography combined with ultrasound
US8070682B2 (en) * 2006-07-19 2011-12-06 The University Of Connecticut Method and apparatus for medical imaging using combined near-infrared optical tomography, fluorescent tomography and ultrasound
US7940977B2 (en) * 2006-10-25 2011-05-10 Rcadia Medical Imaging Ltd. Method and system for automatic analysis of blood vessel structures to identify calcium or soft plaque pathologies
US7983459B2 (en) 2006-10-25 2011-07-19 Rcadia Medical Imaging Ltd. Creating a blood vessel tree from imaging data
US7940970B2 (en) * 2006-10-25 2011-05-10 Rcadia Medical Imaging, Ltd Method and system for automatic quality control used in computerized analysis of CT angiography
US7873194B2 (en) * 2006-10-25 2011-01-18 Rcadia Medical Imaging Ltd. Method and system for automatic analysis of blood vessel structures and pathologies in support of a triple rule-out procedure
US7860283B2 (en) 2006-10-25 2010-12-28 Rcadia Medical Imaging Ltd. Method and system for the presentation of blood vessel structures and identified pathologies
US7953614B1 (en) 2006-11-22 2011-05-31 Dr Systems, Inc. Smart placement rules
US7929762B2 (en) * 2007-03-12 2011-04-19 Jeffrey Kimball Tidd Determining edgeless areas in a digital image
US7903900B2 (en) * 2007-03-30 2011-03-08 Hong Kong Applied Science And Technology Research Institute Co., Ltd. Low complexity color de-noising filter
US20090082637A1 (en) * 2007-09-21 2009-03-26 Michael Galperin Multi-modality fusion classifier with integrated non-imaging factors
US20090118600A1 (en) * 2007-11-02 2009-05-07 Ortiz Joseph L Method and apparatus for skin documentation and analysis
US20100094134A1 (en) * 2008-10-14 2010-04-15 The University Of Connecticut Method and apparatus for medical imaging using near-infrared optical tomography combined with photoacoustic and ultrasound guidance
US8380533B2 (en) 2008-11-19 2013-02-19 DR Systems Inc. System and method of providing dynamic and customizable medical examination forms
US8189943B2 (en) * 2009-03-17 2012-05-29 Mitsubishi Electric Research Laboratories, Inc. Method for up-sampling depth images
JP5258694B2 (en) * 2009-07-27 2013-08-07 富士フイルム株式会社 Medical image processing apparatus and method, and program
US8712120B1 (en) 2009-09-28 2014-04-29 Dr Systems, Inc. Rules-based approach to transferring and/or viewing medical images
US9092727B1 (en) 2011-08-11 2015-07-28 D.R. Systems, Inc. Exam type mapping
US9495604B1 (en) 2013-01-09 2016-11-15 D.R. Systems, Inc. Intelligent management of computerized advanced processing
KR20140138501A (en) * 2013-05-24 2014-12-04 삼성전자주식회사 Lesion classification apparatus, and method for modifying a lesion classification data
CA2921786C (en) 2013-08-20 2020-12-01 Densitas Incorporated Methods and systems for determining breast density
CN105982685A (en) * 2015-03-03 2016-10-05 东芝医疗系统株式会社 Medical image processing device and method and medical image diagnosing device and method
CN104700419A (en) * 2015-03-27 2015-06-10 马学梅 Image handling method of X-ray picture of radiology department
US20170046483A1 (en) 2015-04-30 2017-02-16 D.R. Systems, Inc. Database systems and interactive user interfaces for dynamic interaction with, and comparison of, digital medical image data
CN104933701B (en) * 2015-05-18 2017-10-27 重庆大学 The mammary glandular cell dividing method of adhesion model is removed with double strategies based on multiple dimensioned growth
US20190122397A1 (en) 2016-07-12 2019-04-25 Mindshare Medical, Inc. Medical analytics system
US10380739B2 (en) * 2017-08-15 2019-08-13 International Business Machines Corporation Breast cancer detection
US11049606B2 (en) 2018-04-25 2021-06-29 Sota Precision Optics, Inc. Dental imaging system utilizing artificial intelligence
CN109801235B (en) * 2018-12-28 2023-03-28 佛山科学技术学院 Method and device for detecting disease cause of epipremnum aureum leaves
CN110136161A (en) * 2019-05-31 2019-08-16 苏州精观医疗科技有限公司 Image characteristics extraction analysis method, system and device
CN114761992B (en) * 2019-10-01 2023-08-08 10X基因组学有限公司 System and method for identifying morphological patterns in tissue samples
US11749401B2 (en) * 2020-10-30 2023-09-05 Guerbet Seed relabeling for seed-based segmentation of a medical image

Citations (5)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4907156A (en) * 1987-06-30 1990-03-06 University Of Chicago Method and system for enhancement and detection of abnormal anatomic regions in a digital image
US5016173A (en) * 1989-04-13 1991-05-14 Vanguard Imaging Ltd. Apparatus and method for monitoring visually accessible surfaces of the body
US5133020A (en) * 1989-07-21 1992-07-21 Arch Development Corporation Automated method and system for the detection and classification of abnormal lesions and parenchymal distortions in digital medical images
US5359513A (en) * 1992-11-25 1994-10-25 Arch Development Corporation Method and system for detection of interval change in temporally sequential chest images
US5432865A (en) * 1987-08-14 1995-07-11 International Remote Imaging Systems, Inc. Method and apparatus for generating a plurality of parameters of an object in a field of view

Family Cites Families (13)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4797806A (en) * 1987-02-19 1989-01-10 Gtx Corporation High speed serial pixel neighborhood processor and method
US4761819A (en) * 1987-02-27 1988-08-02 Picker International, Inc. Adaptive noise reduction filter for reconstructed images
US4945478A (en) * 1987-11-06 1990-07-31 Center For Innovative Technology Noninvasive medical imaging system and method for the identification and 3-D display of atherosclerosis and the like
US5079698A (en) * 1989-05-03 1992-01-07 Advanced Light Imaging Technologies Ltd. Transillumination method apparatus for the diagnosis of breast tumors and other breast lesions by normalization of an electronic image of the breast
US5212637A (en) * 1989-11-22 1993-05-18 Stereometrix Corporation Method of investigating mammograms for masses and calcifications, and apparatus for practicing such method
US5237626A (en) * 1991-09-12 1993-08-17 International Business Machines Corporation Universal image processing module
US5440653A (en) * 1993-09-24 1995-08-08 Genesis Microchip Inc. Image mirroring and image extension for digital filtering
FR2712415B1 (en) * 1993-11-09 1995-12-22 Ge Medical Syst Sa Method for automatically locating points of interest during a stereotaxic examination in mammography.
US5452367A (en) * 1993-11-29 1995-09-19 Arch Development Corporation Automated method and system for the segmentation of medical images
US5579445A (en) * 1993-12-17 1996-11-26 Xerox Corporation Image resolution conversion method that employs statistically generated multiple morphological filters
US5781667A (en) * 1995-07-31 1998-07-14 Neopath, Inc. Apparatus for high speed morphological processing
US5757953A (en) * 1996-02-29 1998-05-26 Eastman Kodak Company Automated method and system for region decomposition in digital radiographic images
JP3678377B2 (en) * 1996-08-26 2005-08-03 富士写真フイルム株式会社 Abnormal shadow extraction method and apparatus

Patent Citations (5)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4907156A (en) * 1987-06-30 1990-03-06 University Of Chicago Method and system for enhancement and detection of abnormal anatomic regions in a digital image
US5432865A (en) * 1987-08-14 1995-07-11 International Remote Imaging Systems, Inc. Method and apparatus for generating a plurality of parameters of an object in a field of view
US5016173A (en) * 1989-04-13 1991-05-14 Vanguard Imaging Ltd. Apparatus and method for monitoring visually accessible surfaces of the body
US5133020A (en) * 1989-07-21 1992-07-21 Arch Development Corporation Automated method and system for the detection and classification of abnormal lesions and parenchymal distortions in digital medical images
US5359513A (en) * 1992-11-25 1994-10-25 Arch Development Corporation Method and system for detection of interval change in temporally sequential chest images

Non-Patent Citations (1)

* Cited by examiner, † Cited by third party
Title
See also references of EP0813720A4 *

Cited By (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO1998024367A1 (en) * 1996-12-02 1998-06-11 Koninklijke Philips Electronics N.V. Mass detection in digital radiologic images using a two stage classifier
WO1998055916A1 (en) * 1997-06-06 1998-12-10 Koninklijke Philips Electronics N.V. Noise reduction in an image
CN101540061B (en) * 2009-04-10 2011-06-22 西北工业大学 Topological and ordering matching method for disordered images based on simulated annealing
KR101111055B1 (en) 2009-10-12 2012-02-15 서울대학교산학협력단 Method for Automatic Breast Density Measurement on Digital Mammogram

Also Published As

Publication number Publication date
AU705713B2 (en) 1999-05-27
CA2214101A1 (en) 1996-09-12
EP0813720A4 (en) 1998-07-01
US6185320B1 (en) 2001-02-06
JPH11501538A (en) 1999-02-09
EP0813720A1 (en) 1997-12-29
AU4993296A (en) 1996-09-23

Similar Documents

Publication Publication Date Title
AU705713B2 (en) Method and system for the detection of lesions in medical images
EP0757544B1 (en) Computerized detection of masses and parenchymal distortions
US5832103A (en) Automated method and system for improved computerized detection and classification of massess in mammograms
EP1035508B1 (en) Automated method and system for the segmentation of medical images
Mudigonda et al. Detection of breast masses in mammograms by density slicing and texture flow-field analysis
US5815591A (en) Method and apparatus for fast detection of spiculated lesions in digital mammograms
CN109635846B (en) Multi-type medical image judging method and system
US6014452A (en) Method and system for using local attention in the detection of abnormalities in digitized medical images
Székely et al. A hybrid system for detecting masses in mammographic images
Raman et al. Review on mammogram mass detection by machinelearning techniques
Toz et al. A novel hybrid image segmentation method for detection of suspicious regions in mammograms based on adaptive multi-thresholding (HCOW)
WO2000079474A1 (en) Computer aided detection of masses and clustered microcalcification strategies
Anter et al. Computer aided diagnosis system for mammogram abnormality
Valliappan et al. A theoretical methodology and prototype implementation for detection segmentation classification of digital mammogram tumor by machine learning and problem solving approach
US7430308B1 (en) Computer aided diagnosis of mammographic microcalcification clusters
Undrill et al. Use of texture analysis and boundary refinement to delineate suspicious masses in mammography
Thomas et al. An automated kidney tumour detection technique from computer tomography images
Kamra et al. Extraction of orientation field using Gabor Filter and Gradient based approach for the detection of subtle signs in mammograms
Mohamed et al. Computer aided diagnosis of digital mammograms
Alhabib et al. Detection of partially overlapped masses in mammograms
Baeg et al. Segmentation of mammograms into distinct morphological texture regions
Havaldar Mass Detection In Mammograms Using Computer Vision And Machine Learning
AYDIN et al. Mass Detection Using the Zernike Moments and Fast Fourier Transform (FFT) of Convex Mass Shapes on Mammogram Images
Sawalha et al. Lung Cancer Detection from CT Images Using Image Processing and Machine Learning Techniques
Babu Multi-tumor Detection and Analysis Based on Advance Region Quantitative Approach of Breast MRI

Legal Events

Date Code Title Description
AK Designated states

Kind code of ref document: A1

Designated state(s): AL AM AT AU AZ BB BG BR BY CA CH CN CZ DE DK EE ES FI GB GE HU IS JP KE KG KP KR KZ LK LR LS LT LU LV MD MG MK MN MW MX NO NZ PL PT RO RU SD SE SG SI SK TJ TM TR TT UA UG UZ VN AM AZ BY KG KZ MD RU TJ TM

AL Designated countries for regional patents

Kind code of ref document: A1

Designated state(s): KE LS MW SD SZ UG AT BE CH DE DK ES FI FR GB GR IE IT LU MC NL PT SE BF BJ CF CG CI CM GA GN ML

DFPE Request for preliminary examination filed prior to expiration of 19th month from priority date (pct application filed before 20040101)
121 Ep: the epo has been informed by wipo that ep was designated in this application
ENP Entry into the national phase

Ref document number: 2214101

Country of ref document: CA

Ref country code: CA

Ref document number: 2214101

Kind code of ref document: A

Format of ref document f/p: F

ENP Entry into the national phase

Ref country code: JP

Ref document number: 1996 526892

Kind code of ref document: A

Format of ref document f/p: F

WWE Wipo information: entry into national phase

Ref document number: 1996906597

Country of ref document: EP

WWP Wipo information: published in national office

Ref document number: 1996906597

Country of ref document: EP

REG Reference to national code

Ref country code: DE

Ref legal event code: 8642

WWW Wipo information: withdrawn in national office

Ref document number: 1996906597

Country of ref document: EP