CA2297986A1 - Method and system for automated detection of clustered microcalcifications from digital mammograms - Google Patents

Method and system for automated detection of clustered microcalcifications from digital mammograms Download PDF

Info

Publication number
CA2297986A1
CA2297986A1 CA002297986A CA2297986A CA2297986A1 CA 2297986 A1 CA2297986 A1 CA 2297986A1 CA 002297986 A CA002297986 A CA 002297986A CA 2297986 A CA2297986 A CA 2297986A CA 2297986 A1 CA2297986 A1 CA 2297986A1
Authority
CA
Canada
Prior art keywords
image
microcalcifications
digital
mammogram
digital representation
Prior art date
Legal status (The legal status 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 status listed.)
Abandoned
Application number
CA002297986A
Other languages
French (fr)
Inventor
John E. Rosenstengel
Telford S. Berkey
Elton P. Amburn
Randy P. Broussard
Steven K. Rogers
Thomas F. Rathbun
Edward M. Ochoa
Jeffrey W. Hoffmeister
Martin P. Desimio
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Qualia Computing Inc
Original Assignee
Individual
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 Individual filed Critical Individual
Publication of CA2297986A1 publication Critical patent/CA2297986A1/en
Abandoned legal-status Critical Current

Links

Classifications

    • BPERFORMING OPERATIONS; TRANSPORTING
    • B29WORKING OF PLASTICS; WORKING OF SUBSTANCES IN A PLASTIC STATE IN GENERAL
    • B29CSHAPING OR JOINING OF PLASTICS; SHAPING OF MATERIAL IN A PLASTIC STATE, NOT OTHERWISE PROVIDED FOR; AFTER-TREATMENT OF THE SHAPED PRODUCTS, e.g. REPAIRING
    • B29C49/00Blow-moulding, i.e. blowing a preform or parison to a desired shape within a mould; Apparatus therefor
    • B29C49/0015Making articles of indefinite length, e.g. corrugated tubes
    • B29C49/0021Making articles of indefinite length, e.g. corrugated tubes using moulds or mould parts movable in a closed path, e.g. mounted on movable endless supports
    • FMECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
    • F16ENGINEERING ELEMENTS AND UNITS; GENERAL MEASURES FOR PRODUCING AND MAINTAINING EFFECTIVE FUNCTIONING OF MACHINES OR INSTALLATIONS; THERMAL INSULATION IN GENERAL
    • F16LPIPES; JOINTS OR FITTINGS FOR PIPES; SUPPORTS FOR PIPES, CABLES OR PROTECTIVE TUBING; MEANS FOR THERMAL INSULATION IN GENERAL
    • F16L11/00Hoses, i.e. flexible pipes
    • F16L11/04Hoses, i.e. flexible pipes made of rubber or flexible plastics
    • F16L11/11Hoses, i.e. flexible pipes made of rubber or flexible plastics with corrugated wall
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T5/00Image enhancement or restoration
    • G06T5/20Image enhancement or restoration by the use of local operators
    • 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
    • G06T7/187Segmentation; Edge detection involving region growing; involving region merging; involving connected component labelling
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B6/00Apparatus for radiation diagnosis, e.g. combined with radiation therapy equipment
    • A61B6/50Clinical applications
    • A61B6/502Clinical applications involving diagnosis of breast, i.e. mammography
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B29WORKING OF PLASTICS; WORKING OF SUBSTANCES IN A PLASTIC STATE IN GENERAL
    • B29CSHAPING OR JOINING OF PLASTICS; SHAPING OF MATERIAL IN A PLASTIC STATE, NOT OTHERWISE PROVIDED FOR; AFTER-TREATMENT OF THE SHAPED PRODUCTS, e.g. REPAIRING
    • B29C2791/00Shaping characteristics in general
    • B29C2791/004Shaping under special conditions
    • B29C2791/006Using vacuum
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B29WORKING OF PLASTICS; WORKING OF SUBSTANCES IN A PLASTIC STATE IN GENERAL
    • B29CSHAPING OR JOINING OF PLASTICS; SHAPING OF MATERIAL IN A PLASTIC STATE, NOT OTHERWISE PROVIDED FOR; AFTER-TREATMENT OF THE SHAPED PRODUCTS, e.g. REPAIRING
    • B29C2791/00Shaping characteristics in general
    • B29C2791/004Shaping under special conditions
    • B29C2791/007Using fluid under pressure
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B29WORKING OF PLASTICS; WORKING OF SUBSTANCES IN A PLASTIC STATE IN GENERAL
    • B29LINDEXING SCHEME ASSOCIATED WITH SUBCLASS B29C, RELATING TO PARTICULAR ARTICLES
    • B29L2023/00Tubular articles
    • B29L2023/18Pleated or corrugated hoses
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/10Image acquisition modality
    • G06T2207/10116X-ray image
    • 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

Abstract

A method, a system for detecting, and displaying clustered micro-calcification in a digital mammogram wherein a single digital mammogram (100) is first automatically cropped (200) to a breast area sub-image which is then processed by means of an optimized difference of a Gaussian filter to enhance the appearance of potential micro-calcification in the sub-image. The potential micro-calcification is threshold, clusters are detected (300), features are computed for the detected clusters, and the clusters are classified (400) as either suspicious or not suspicious by means of a neural network. The locations in the original digital mammogram of the suspicious detected clustered micro-calcification are indicated. The results of the system are optimally combined with a radiologist's observation of the original mammogram by combining the observations with the results after the radiologist has first accepted or rejected individual detections reported by the system.

Description

METHOD AND SYSTEM FOR AUTOMATED DETECTION OF CLUSTERED
MICROCALCIFICATIONS FROM DIGITAL MAMMOGRAMS
BACKGROUND OF THE INVENTION
1. Field of the Invention This invention relates to a method and system for automated detection of clustered microcalcifications from digital images without reduction of radiologist sensitivity.
2. Discussion of Background Mammography, along with physical examination, is the current procedure of choice for breast cancer screening. Screening mammography has been responsible for an estimated 30 to 3S percent reduction in breast cancer mortality rates. However, in 1996 approximately 185,700 new breast cancer cases were diagnosed and 44,300 women died from this disease. Women have about a 1 in 8 1S chance of being diagnosed with breast cancer, and 1 in 30 will die of this disease in her lifetime.
Although mammography is a well-studied and standardized methodology, for 10 to 30 percent of women diagnosed with breast cancer, their mammograms were interpreted as negative. Additionally, only 10 to 20 percent of patients referred for biopsy based on mammographic findings prove to have cancer.
Further, estimates indicate the malignancies missed by radiologists are evident in two-thirds of the mammograms retrospectively. Missed detections may be attributed to several factors including: poor image quality, improper patient positioning, inaccurate interpretation, fibroglandular tissue obscuration, subtle nature of 2S radiographic findings, eye fatigue, or oversight.
To increase sensitivity, a double reading has been suggested.
However, the growing increase in the number of screening mammograms makes this option unlikely. Alternatively, a computer-aided diagnosis (CAD or CADx) system may act as a "second reader" to assist the radiologist in detecting and diagnosing lesions. Several investigators have attempted to analyze mammographic abnormalities with digital computers. However, the known studies are believed to have achieved rates of true-positive detections versus false-positive detections that WO 99/09887 PCT/US98/i7886 are undesirably low.
Microcalcifications represent an ideal target for automated detection because subtle microcalcifications are often the first and sometimes the only radiographic findings in early, curable breast cancers, yet individual microcalcifications in a suspicious cluster have a fairly limited range of radiographic appearances. Between 30 and 50 percent of breast carcinomas detected radiographically demonstrate microcalcifications on mammograms, and between 60 and 80 percent of breast carcinomas reveal microcalcifications upon microscopic examination. Any increase in the detection rate of microcalcifications by mammography will lead to further improvements in its efficacy in the detection of early breast cancer.
Although the promise of CAD systems is to increase the ability of physicians to diagnose cancer, the problem is that all CAD systems fail to detect some regions of interest that could be found by a human interpreter. However, human interpreters also miss regions of interest that are subsequently shown to be indicators of cancers. Missing a region that is associated with a cancer is termed a false negative error while associating a normal region with a cancer is termed a false positive error.
It is not yet clear how CAD system outputs are to be incorporated by practicing radiologists into their mammographic analyses. No existing CAD
system can claim to find all of the suspicious regions detected by an average radiologist, and they tend to have unacceptably high false positive error rates. However, CAD
systems are capable of finding some suspicious regions that may be missed by radiologists.
SUMMARY OF THE INVENTION
Accordingly, an object of this invention is to provide a method and system for automated detection of clustered microcalcifications from digital mammograms.
These and other objects are achieved according to the invention by providing a novel method and system for automated detection of clustered microcalcifications from digital mammograms in which a digital mammogram is obtained, parameters necessary for cropping the digital mammogram image are optimized, the digital mammogram is cropped based on the optimized cropping parameters to select breast tissue for further analysis, parameters necessary for detecting clustered microcalcifications are optimized, and clustered microcalcifications in the cropped digital mammogram are detected based on the optimized clustered microcalcification detection parameters.
The detected clustered microcalcifications are then stored as a detections image, the detections image is processed for display, and a computer-aided detection image is produced for review by a radiologist.
The radiologist first reviews the original mammograms and reports a set of suspicious regions of interest, S 1. A CAD system, or more particularly, the CAD system of the invention, operates on the original mammogram and reports a second set of suspicious detections or regions of interest, S2. The radiologist then examines the set S2, accepts or rejects members of S2 as suspicious, thus forming a third set of suspicious detections, S3, that is a subset of set S2. The radiologist then creates a fourth set of suspicious detections, S4, that is the union of sets S
1 and S2, for subsequent diagnostic workups. CAD system outputs are thereby incorporated with the radiologist's mammographic analysis in a way that optimizes the overall sensitivity of detecting true positive regions of interest.
Other objects and advantages of the invention will be apparent from the following description, the accompanying drawings and the appended claims.
BRIEF DESCRIPTION OF THE DRAWINGS
Fig. 1 is a flow diagram illustrating the automated system for the detection of clustered microcalcifications in a digital mammogram;
Figs. 2 and 3 are flow diagrams illustrating the autocropping method and system of the invention;
Figs. 4-10 are flow diagrams illustrating in more detail the autocropping method and system of the invention;
Fig. 11 is a flow diagram illustrating in greater detail the clustered microcalcification detector of the invention;
Fig. 12 is a schematic diagram illustrating a 3 X 3 cross-shaped median filter of the invention;
Fig. 13 is a three-dimensional plot of a Difference of Gaussians (DoG) filter kernel;
Fig. 14 is a cross-sectional view through the center of the DoG filter kernel of Fig. 13;
Fig. 15 is a flow diagram illustrating the global thresholding portion of the microcalcification detection system;
Fig. 16 is a flow diagram illustrating the dual local thresholding of the invention;
Fig. 17 is a flow diagram illustrating combining the results of global and dual-local thresholding;
Fig. 18 is a flow diagram illustrating the sloping local thresholding of the invention;
Fig. 19 is a flow diagram illustrating the clustering method of the invention;
Fig. 20 is a schematic diagram illustrating the clustering method of the invention;
Fig. 21 is a flow diagram illustrating the feature computation process of the invention;
Fig. 22 is a flow diagram illustrating a classifier having one discriminant function per class;
Fig. 23 is a schematic diagram illustrating a mufti-layer perceptron neural network for a two-class classifier;
Fig. 24 is a histogram of testing results after detection and classification;
Fig. 25 is a flow diagram illustrating the parameter optimization method of the invention;
Fig. 26 is a plot of a free response receiver operating characteristic curve of the invention before classifying detections;
Fig. 27 is a plot of a free response receiver operating characteristic curve of the invention after classifying defections;
Fig. 28 is a plot of probability density functions showing the relationship between the probabilities of false negative and false positive defections;
Fig. 29 is a plot of probability density functions showing the relationship between the probabilities of true negative and true positive defections;
Fig. 30 is a Venn diagram showing the relationship between radiologist and CAD system defections;
Fig. 31 is a flow diagram illustrating a method for incorporating I 0 computer-aided diagnosis defections with those of a human interpreter for optimal sensitivity; and Fig. 32 is a flow diagram illustrating an alternative embodiment of the invention that includes a density detector.

Referring now to the drawings, wherein like reference numerals designate identical or corresponding parts throughout the several views, and more particularly to Fig. 1 thereof, there is shown a flow diagram illustrating a sequence of steps performed in order to detect the locations of clusters of microcalcifications 20 within a digital mammogram.
In a first step 100, a digital mammogram is obtained using hardware such as digital mammography systems, or by digitizing mammography films using laser or charge-coupled device (CCD) digitizers. In an optimized cropping step 200, a rectangular analysis region containing breast tissue is segmented from the digital 25 mammogram image and a binary mask corresponding to the breast tissue is created for use in later processing steps to decrease the time required for processing the mammogram image. The binary mask is also used to limit defections to areas of the image containing breast tissue.
Clustered microcalcifications are detected in a clustered 30 microcalcification detection step 300. After first filtering the cropped image with a median filter to reduce noise, the image is filtered using an optimized difference of Gaussians (DoG) filter to enhance the microcalcifications. The DoG-filtered image is then subjected to optimized threshold tests to detect potential microcalcifications.
The detected microcalcifications are shrunk to single-pixel representations and detections outside of the breast area are removed. The remaining microcalcifications are grouped into clusters. Features are then computed for the clusters.
Detected clusters are classified as either suspicious or non-suspicious in a classif cation step 400.
The parameters used by the autocropping, clustered microcalcification detection, and classification steps 200, 300, 400 are optimized in a parameter-optimizing step 500. The parameters are optimized by parameter-optimizing means that uses a genetic algorithm (GA) so as to maximize the true-positive detection rate while minimizing the false-positive detection rate. Of course, other optimization schemes may be used as well.
The detected clustered microcalcifications are stored in a list of image 1 S coordinates. The detection results are processed in a processing step 600 by simply adding an offset to each of the microcalcification coordinates to account for translation of the coordinates incurred as a result of the cropping procedure.
Detected clustered microcalcifications are indicated on the digital mammogram by means of rectangles drawn around the clustered microcalcifications in a display step 700. Other indicators may be used such as, for example, arrows pointing to suspected microcalcifications, or ellipses around suspected microcalcifications.
ACQUIRING A DIGITAL REPRESENTATION OF A MAMMOGRAM
One method of obtaining digital mammograms comprises digitizing radiologic films by means of a laser or charge-coupled device {CCD) scanner.
Digital images obtained in this manner typically have a sample spacing of about 100 ~tm per pixel, with a gray-level resolution of 10 to 12 bits per pixel. In one embodiment of the present invention, radiologic films are scanned using a Model CX812T digitizer manufactured by Radiographic Digital Imaging of Compton, California, to produce digital images having 50 pm spacing per pixel and 12 bits of gray-level resolution per pixel. Another possible input source for digital images is a WO 99!09887 PCTNS98/1?886 digital mammography unit from Trex Medical Corporation of Danbury, Connecticut, which has a spatial resolution of about 45 pm per pixel and a gray-level resolution of 14 bits per pixel.
The digital images are stored as digital representations of the original mammogram images on computer-readable storage media. In a preferred embodiment, the digital representations or images are stared on a 2 GB hard drive of a general-purpose computer such as a PC having dual Pentium II ~
microprocessors running at 200 MHZ, 512 MB of RAM memory, a ViewSonic PT813 ~ monitor, a pointing device, and a Lexmark Optra S 1625 ~ printer. The system operates within a Windows NT ~ operating system.
AUTOCROPPING
As may be seen in Figs. 2 and 3, a digital mammogram image 190 is first cropped to segment an analysis region 296 from the image and produce a binary mask 298 corresponding to breast tissue in the analysis region. Preferably, the cropping is performed automatically, although it could be cropped manually.
The image is cropped as a preliminary step because the breast tissue does not cover the whole radiographic film. Focusing the processing of the image on only that portion of the image which breast tissue reduces the time required to process the image.
Also, other items appearing on the film, such as labels and patient information, are excluded from consideration, and false-positive indications lying outside of the breast tissue area are eliminated.
Referring to Figs. 4 through 10, the autocropping process will be described in detail. The image is first subsampled from 50 pm to 400 pm to reduce the amount of data to be processed in step 202. Of course, the image may be downsampled to other resolutions as desired. Not all of the original image data is needed to reliably segment the breast tissue from the remainder of the image.
Subsampling every eighth pixel in both the horizontal and vertical directions reduces the amount of data by 64 times. For purposes of segmenting the breast tissue from the rest of the image, the consequent loss of resolution is immaterial.
A white border twenty pixels in width is added around all sides of the _g_ subsampled image in step 204. White corresponds to the maximum pixel value possible given the number of bits used to represent each pixel. For images having 12 bits of gray-scale resolution, the maximum gray-scale value is 4095. The bordered image is then thresholded in step 206 with a relatively high threshold value such that most of the breast tissue is guaranteed to be less than the threshold to produce a binary image. In one embodiment of the invention, the threshold is set equal to a predetermined percentage of the gray-scale value of a pixel near the top middle portion of the image. The thresholded image is then inverted, that is, ones become zeroes and zeroes become ones, in step 208. The inverted image is then dilated in step 210. Dilation is a morphological operation in which each pixel in a binary image is turned on, that is, set to a value of one, if any of its neighboring pixels are on. If the pixel is already on, it is left on.
In step 212 the dilated image is cropped to the size of the largest blob.
Blobs are contiguous groups of pixels having the value one. This step 212 removes bright borders from the subsampled mammogram representation while ensuring that none of the breast area is reduced. Other techniques that threshold to find the border have a very difficult time dealing with bright areas in the breast adjacent to the border such as, for example, when breast implants are visible in the image.
Pixels from the original image, resulting from step 202, corresponding to the locations of the pixels in the cropped blob, are selected for subsequent processing. Note that this is a simple subset of pixels from the input image.
The image from step 212 is histogram equalized in step 214. The average brightness of the image will vary widely from mammogram to mammogram.
Moreover, different digitizers having different optical density characteristics are an additional source of variability in brightness levels in the digital representation of the mammogram. The breast mask that is the output of the autocropper is mainly defined by means of a region-growing algorithm that requires a single contrast setting to work properly. However, it has been determined experimentally that a single contrast setting will not work for a wide range of image inputs.
Therefore, each image is mapped into a normalized image space using an automatic histogram enhancement process, after which a single contrast setting works well.

First, a histogram of the image is obtained. Typically, most of the data in the breast area will be in the lower histogram bins (corresponding to gray-scale values of about 0 - 1000), with borders and labels being in the higher bins (corresponding to gray-scale values of about 4000 - 4095) for 12-bit data. The upper and lower bin values that contain the typical breast data are determined. The lower bin value is the first highest peak encountered when going from the lowest gray-scale value toward the highest gray-scale value. The upper bin is the last zero-value bin encountered when going from the highest gray-scale level toward the lowest gray-scale value. Then the data are reduced to an eight-bit representation and linearly stretched over the range of the data type. For example, values in the lower bins are set to zero. Values of data in the upper bins are set to 255. The rest of the data are then linearly mapped between the lower and upper bins.
After the image has been histogram equalized, the equalized image may be considered to be a matrix. The image matrix is divided into left and right halves, of equal size if possible, and the brighter side is selected in a step 2I6. The sums of all the pixels in the left and right halves are computed. The sum values are then compared and the side having the greater sum is the brighter side.
Prior to region growing the brighter side, algorithm variables are initialized in step 218. The size of the region-grown mask is preliminarily checked in step 220. If it is large enough, then the mask is acceptable. Otherwise, processing continues to find the mask. The side of the image to be region grown is selected in step 222. In step 224 this region is searched to find its maximum 'gray-scale value.
This maximum value is used to find a pixel to start a region-growing algorithm.
Region growing is the process of grouping connected pixels sharing some like characteristic. The choice of characteristic influences the resultant region.
The input to a region growing function is a gray-scale image and a starting point to begin growing. The output is a binary image with ones indicating pixels within the grown region, i.e., blobs. Region growing will create a single blob, but that blob may have within it internal holes, that is, pixels that are off. To grow a blob, each of the four nearest neighbors of a pixel of interest are looked at. The contrast ratio is computed for each nearest neighbor pixel. If the contrast ratio is less than a contrast ratio threshold, then the neighbor pixel is set to a one in a binary mask image.
Otherwise, the neighbor pixel is set to zero. The region growing algorithm spirals outwardly from the starting or seed pixel, progressively looking at nearest neighbor pixels until done. To those skilled in the art, it is clear that other region growing algorithms may also be applied.
In step 226, region growing begins with the pixel identified from the previous step 224 to produce a binary mask. The size of the mask resulting from step 226 is computed in step 228 and checked in step 230. There may be three points of failure for this approach. First, the brightest point in the search region may be an artifact outside the breast. Therefore, if the resulting mask is not large enough (SO
pixels), then the search region is moved closer to the side of the image and searched again. This is repeated three times, each time lowering the contrast value threshold.
This corresponds to the path taken through steps 232 and 234. Second, the side selection approach may be in error. Therefore, if a valid breast mask is not found in the first side searched, then the other side of the breast is searched. This corresponds to the path taken through steps 236 and 238. Third, if a valid breast mask is not found on either side, then the whole breast is thresholded and the largest object is taken to be the breast mask in step 240.
Since a constant contrast value is used in the region-growing algorithm, some masks will be too large. Typically, there will be "tails"
along the edge of the digitized mammogram image where extra light leaked in while the original mammogram film was being digitized. The tails are reduced by applying a series of erodes and then a series of dilates to the image. Erosion is a morphological operation in which each pixel in a binary image is turned off unless all of its neighbors are on. If the pixel is already off, it is left off: But first, the holes in the mask must be filled in or the multiple erodes may break the mask into disjoint sections. Thus, holes in the mask are closed in step 242 by means of a majority operation. The majority operation is a morphological operation in which each pixel in a binary image is turned on if a majority of its neighboring pixels are on.
If the pixel is already on, it is left on.
However, another problem is that some smaller breast masks can not undergo as many erodes as can larger breast masks. Therefore, as a fail-safe measure, the sum of the breast mask is taken before and after the erodes and dilates.
If the size is reduced too much (i.e., by more than 50%), the original mask before the morphological operators is used. Thus, a duplicate copy of the mask is made in step 244 before the mask is eroded and dilated in steps 246 and 248, respectively.
The size of the resultant mask is then computed in step 250 and compared with the size of the mask from step 242 in step 252. If the new size is less than half the old size; then the duplicate mask, from step 244, is selected in step 254 for subsequent processing.
Otherwise, the resultant mask from step 248 is used.
The original image (from step 202) is then cropped to the size of the breast mask just found (either from step 242 or step 248) in step 256. In case the resulting mask is too small for subsequent processing, a crop adjustment is always made in step 258. The adjustment comes in the form of increasing the size of the breast mask bounding box by including additional pixels from the original image in 1 S the cropped image.
The cropped image is then automatically histogram enhanced in step 260 as previously described above in connection with step 214. This enhanced image is passed through a loose region growing step 262 to produce a generous mask. This means that the image is subjected to a lower threshold to yield more "on" pixels. This mask is then subjected to hole-closing, eroding, and dilating in steps 264, 266, and 268, respectively, as above, but to a lesser degree.
The same steps described above are repeated one f nal time in steps 270 through 276, but the crop adjustments are less and the contrast value is increased for a tight region growing step 276. This tight region growing step 276 can afford the higher contrast value since it will be region growing in just the cropped image.
This results in a parsimonious estimate of breast tissue. The resulting mask is segmented to find the largest object in step 278 and its bounding box shrunk to just enclose the object in step 280. There may still be some holes in the breast mask.
Therefore, after crop adjustments in step 282, the mask is inverted in step 284 and the largest object is found in step 286. This largest object is extracted and then inverted in step 288 to obtain the penultimate mask.

The final mask is obtained by closing holes in the penultimate mask with multiple majority operations and dilations in step 290. The image is then cropped to the size of the resulting mask and the autocropping is complete. An important result from the autocropper is the offset of the cropped image. This is the pixel location in the original image that corresponds to the pixel in the upper left pixel of the cropped image. Keeping track of all the cropping and crop adjustments determines this offset value.
The output of the autocropping process is a rectangular array of pixels representing a binary mask wherein the pixels corresponding to breast tissue are assigned a value of one while the remainder of the pixels are assigned a value of zero. Put another way, the binary mask is a silhouette of the breast made up of ones while the background is made up of zeroes.
Parameters of the autocropper may be optimized to obtain better breast masks. The procedure is described below in the optimization section.
DETECTION OF CLUSTERED MICROCALCIFICATIONS
Turning now to Fig. 11, there is seen therein a flow diagram illustrating in greater detail the clustered microcalcification detection system 300 of the invention.
That portion of the digital representation of the mammogram corresponding to the analysis region 296, designated a cropped sub-image 302, produced in the cropping step 200, is first processed to reduce noise in a noise reduction step 310 to reduce digitization noise that contributes to false detections of microcalcifications. The noise-reduced image is then filtered using an optimized target-size-dependent difference of Gaussians (DoG) spatial kernel in step 320 to enhance differences between targets and background, thus creating global and local maxima in the filtered image. The optimized DoG-filtered image is then thresholded in step 340 to segment maxima that represent potential detections of microcalcifications.
The detected maxima are converted to single-pixel coordinate representations in a conversion step 350. The coordinate representations of the detected maxima are compared with the binary mask of the analysis area in a first false-positive removal step 360 to remove false defections outside the breast mask area. The remaining coordinate representations in the analysis area are clustered in a clustering step 370. Features are computed for the remaining clusters in a feature computation step 380 and used to remove non-suspicious defections in a classifying step 400 (Fig. 1 ). The remaining defections are outputted as detected clustered microcalcifications in an outputting step 600 in the form of cluster coordinates.
Turning now to a mare detailed discussion of the steps in the clustered microcalcification detection process, the digital mammogram image is first filtered to reduce noise in the image. Although the main limitation in image quality should be the granularity of the film emulsion, noise is introduced from the process of digitization. This noise may later be detected as a pseudocalcification. In this system, a cross-shaped median filter is used because it is well known to be extremely effective at removing single-pixel noise. The median filter is a non-linear spatial 1 S filter that replaces each pixel value with the median of the pixel values within a kernel of chosen size and shape centered at a pixel of interest. Referring to Fig. 12, it may be seen that the cross shape is formed by the set of pixels which include the center pixel and its four nearest neighbors. The cross shape preserves fines and corners better than typical block-shaped median filters and limits the possible substitution to the four nearest neighbors, thereby reducing the potential for edge displacement.
After noise has been reduced, the image is filtered with an optimized DoG kernel to enhance microcalcifications. Filtering is accomplished by convolving the noise-reduced image with the DoG kernel. In an alternative embodiment, filtering is accomplished by first obtaining the fast Fourier transforms (FFTs) of the noise-reduced image and the DoG kernel, then multiplying the FFTs together, and taking the inverse FFT of the result.
The DoG kernel was chosen because neurophysiological experiments provide evidence that the human visual pathway includes a set of "channels"
that are spatial frequency selective. Essentially, at each point in the visual field, there are size-tuned filters or masks analyzing an image. The operation of these spatial receptive fields can be approximated closely by a DoG.
The 2-D Gaussian mask is given as:
s, G(x~Y) = ce (si°: , (1) where c normalizes the sum of mask elements to unity, x and y are horizontal and vertical indices, and a is the standard deviation. Using Equation 1, the difference of two Gaussians with different a yields:
_cx~.r~) _(~s,r~>
(2) DoG(x,y) = cue It has been shown that when a2 = 1.6a~, then the DoG filter's response closely matches the response of human spatial receptive filters. Therefore, with motivation from human physiology, let the ratio of the DoG standard deviation constants be 1:1.6. Then, for a target of size (average width) t pixels, use o2 = tl2 and, from the rule of thumb, al = x2/1.6.
Since microcalcifications typically range from 100 to 300 ~tm in diameter, potential target sizes for the SO pm digitized mammograms correspond to 2 to 6 pixels. It has been found that a DoG kernel constructed using an optimization technique for selecting the target size parameter, such as the GA detailed below, has an optimized target size of t = 6.01 pixels. The targetsize t will vary depending on such factors as the resolution and scale of the image to be processed. The impulse response of a DoG filter having t = 6.01 pixels and a2 = 1.6a~ is shown in Figs. 13 and 14.
Once the noised-reduced cropped image has been DoG filtered to enhance differences between targets and background, the DoG-filtered subimage contains differences in gray levels between potential microcaicifications and background. Although microcalcifications tend to be among the brightest objects in DoG-filtered subimages, they may exist within regions of high average gray levels and thus prove difficult to reliably segment. The thresholding process used in one embodiment of the invention that generally addresses these concerns involves pair-wise pixel "ANDing" of the results of global histogram and locally adaptive thresholding. However, the preferred embodiment of the invention uses sloping local threshalding.
Since targets tend to exist within an image's higher gray levels, then the global threshold may be approximated by finding the level which segments a preselected percentage of the corresponding higher pixel levels in the image histogram. An embodiment of a global thresholding method is illustrated in Fig. 15.
Locally adaptive thresholding may be implemented by varying the high and low thresholds based on the local pixel value mean and standard deviation. An embodiment of a dual-local thresholding method is illustrated in Fig. 16.
After computing the image histogram, p(rk), the gray level threshold, g, used to segment a preselected upper fraction, f, of the histogram, is found using:
.f = 1 ' ~ Perk) k=0 where rk is the kth gray level, 0 s g s gm~, and gm~ is the maximum gray level in the image.
The locally adaptive thresholds, t/o and th;, are found using tlo kloaNN~x'Y) + ~~ylO'x,Y~ (4) and thi khiaNN~x'Y~ + ~IyN~xrY~
where kla and kh; are used to preselect the multiple of QN/,r(x,y), the local standard deviation of gray-level intensities, and ~Nl,,(x,y) is the local gray-level mean of the N
x N neighborhood centered on the pixel at (x,y) of the DoG-filtered image.
Other neighborhood shapes, such as rectangular, circular, and ellipsoidal, may also be used.
Pixels whose brightness or gray-level value falls within the threshold interval, that is, too < brightness < th;, are set equal to one. Optimization of f, k~o, kh;, and N is *rB

discussed below in connection with the parameter-optimizing process. The results of the global thresholding process may be combined with the results of the local thresholding step by logically ANDing them as shown in Fig. 17. Alternatively, either thresholding method may be used alone.
The preferred thresholding means are illustrated in Fig. 18 wherein it may be seen that an N x N window is centered at a pixel x,y in the input image p(x,y). The mean, w(x,y), and standard deviation, a(x,y), of the digital mammogram image pixels under the window are computed. A local threshold value, T(x,y), is computed as:
T(x~Y) = A + B ~(x~Y) + C Q(x~Y) (6) where values for N, A, B, and C are computed during a parameter optimization stage, discussed below. Values for T(x,y) are computed for every x,y location in the image.
The digital mammogram has also been DoG filtered, producing an image d(x,y). Each pixel of the DoG-filtered image d(x,y) is compared to the threshold value T(x,y). Pixels in the locally thresholded image ls(x,y) are set to one where values of the DoG-filtered image are greater than the threshold, and set to zero elsewhere.
The advantage of this novel local sloping thresholding method over prior art thresholding methods is that the threshold is computed from the pixels in a pre-DoG-filtered image rather than from a post-DoG-filtered image. This eliminates the need for background trend correction. In conventional local thresholding, the threshold is computed as:
T(x~Y) = B!~(x,Y) + Co(x,Y) (7) from the mean and standard deviation of the DoG-filtered image. The problem of using a local threshold computed from the DoG-filtered image is that DoG-filtered images typically have mean values close to zero and standard deviations significantly affected by the presence of targets.
Local thresholds computed from the statistics of the DoG-filtered image suffer from the following adverse effects. First, since the mean value is close -1?-to zero, a degree of freedom is lost in the computation of the threshold, which becomes essentially a function of the standard deviation. Second, the absolute brightness of the input image is lost. To keep many spurious detections from occurring, it is desirable to have high thresholds in bright regions. However, the information about the local mean of the input image is not available in the DoG-filtered image. Finally, the standard deviations of DoG-filtered images are increased by detections of targets. This is so because when local bright spots of proper size exist in the original image, large gray-scale values result in the DoG-filtered image.
Thus, the presence of targets in a region increases the local standard deviation thereby raising the threshold of that region. The higher threshold reduces the probability of passing a bright spot to subsequent processing stages.
The novel local thresholding method just described solves the above problems by computing thresholds from the input image, which are then applied to the DoG-filtered image. Additionally, the threshold computed here includes an offset term A, which is independent of the local image mean.
After thresholding, detections are converted to single-pixel representations by computing the centroid or center of gravity of groups of contiguous pixels found by the thresholding process. Detections are thus represented as single pixels having a value of logical one while the remaining pixels have a value of logical zero.
False-positive detections outside of the breast area are removed by logically ANDing the binary mask from the autocropper with the single-pixel representations of the detections.
Calcifications associated with malignancies usually occur in clusters and can be extensive. The cluster detection module identifies clusters based on a clustering algorithm as depicted in Fig. 19. Specifically, a suspicious cluster is declared when at least ~CSm;" or more detected signals are separated by less than a nearest neighbor distance, d"". Optimization of ~Csm;" and dnn is discussed below in connection with the parameter optimizing process. Figure 20 illustrates the clustering process for the case wherein ,uCsm", = 5 and d"" = 4.
Additional false-positive clustered microcalcifications are removed by WO 99!09887 PCT/US98/17886 means of a classifier, detailed below. Features are extracted for each of the potential clustered microcalcifications as shown in Fig. 21. The eight features computed for each of the potential clustered microcalcifications in a preferred embodiment are:
1. The larger eigenvalue (~,~) of the covariance matrix of the points in a cluster;
2. The smaller eigenvalue (.12) of the covariance matrix of the points in a cluster;
3. The ratio of the smaller eigenvalue of the covariance matrix to the larger eigenvalue of the covariance matrix of the points in a cluster.
Equivalent to the ratio of the minor axis to the major axis of an ellipse fitted to cover the points in a cluster;
4. Linear density calculated as the number of detected microcalcifications divided by the maximum interpoint distance;
5. Standard deviation of the distances between points in a cluster;
6. Mean minus median of the distances between points in a cluster;
7. Range of points in cluster calculated as maximum interpoint distance minus the minimum interpoint distance; and 8. Density of a cluster calculated as the number of detections divided by the area of a box just large enough to enclose the detections.
Of course, other features could be computed for the potential microcalcification clusters, and the invention is not limited to the number or types of features enumerated herein.
CLASSIFYING DETECTIONS
The cluster features are provided as inputs to the classifier, which classifies each potential clustered microcalcification as either suspicious or not suspicious. In practice, the clustered microcalcification detector is only able to locate regions of interest in the digital representation of the original mammogram that may be associated with cancer. In any detector, there is a tradeoff between locating as many potentially suspicious regions as possible versus reducing the number of normal regions falsely detected as being potentially suspicious. CAD

systems are designed to provide the largest detection rates possible at the expense of detecting potentially significant numbers of regions that are actually normal.
Many of these unwanted detections are removed from consideration by applying pattern recognition techniques.
S Pattern recognition is the process of making decisions based on measurements. In this system, regions of interest or detections are located by a detector, and then accepted or rejected for display. The first step in the process is to characterize the detected regions. Toward this end, multiple measurements are computed from each of the detected regions. Each measurement is referred to as a feature. A collection of measurements for a detected region is referred to as a feature vector, wherein each element of the vector represents a feature value. The feature vector is input to a discriminant function.
Referring to Fig. 22, there may be seen therein a classifier having a feature vector x applied to a set of discriminant functions g(x). The classifier shown in Fig. 22 is designed with one discriminant function per class. A
discriminant function computes a single value as a function of an input feature vector.
Discriminant functions may be learned from training data and implemented in a variety of functional forms. The output of a discriminant function is referred to as a test statistic. Classification is selecting a class according to the discriminant function with the greatest output value. The test statistic is compared to a threshold value.
For values of the test statistic above the threshold, the region or detection associated with the feature vector is retained and displayed as potentially suspicious.
When the test statistic is below the threshold, the region is not displayed.
Many methods are available for designing discriminant functions.
One approach considered for this invention is a class of artificial neural networks.
Artificial neural networks require training, whereby the discriminant function is formed with the assistance of labeled training data.
In a preferred embodiment, the classification process is implemented by means of a mufti-layer perceptron (MLP) neural network (NN). Of course, other classifier means could be used such as, for example, a statistical quadratric classifier.
Only potential clustered microcalcifications classified as suspicious are retained for eventual designation for a radiologist. Alternatively, it may be desirable to iteratively loop between MLP NN analysis of the individual microcalcif cation detections and the microcalcification clusters.
Referring to Fig. 23, a schematic diagram of an MLP NN may be seen therein. The MLP NN includes a first layer of J hidden layer nodes or perceptions 410, and one output node or perception 420 for each class. The preferred embodiment of the invention uses two output nodes, one each for the class of suspicious detections and the class of non-suspicious detections. Of course, more or fewer classes could be used for classifying clusters of microcalcifications.
Each computed feature xi is first multiplied by a weight w;~, where i is an index representing the i'h feature vector element, and j is an index representing the j'h first layer node. The output y~ of each first layer perception 410 is a nonlinear function of the weighted inputs and is given by:
d Yi =.t ~, (w~,i x x. ) (8) i=1 where d represents the total number of features x; and f(~) is typically a saturating nonlinearity. In this embodiment, f(~) = tanh(~). The first layer or hidden layer node outputs y~ are then multiplied by a second layer of weights u~,k and applied to the output layer nodes 420. The output of an output layer node 420 is a nonlinear function of the weighted inputs and is given by:
J
zk~Y) -f ~, ~u ,k x Y~) 9 j=1 where k is an index representing the l~h output node.
The hyperbolic tangent function is used in a preferred embodiment of the system because it allows the MLP NN to be trained relatively faster as compared to other functions. However, functions other than the hyperbolic tangent may be used to provide the outputs from the perceptions. For example, linear functions may be used, as well as smoothly varying nonlinear functions, such as the sigmoid function.
The weight values are obtained by training the network. Training consists of repeatedly presenting feature vectors of known class membership as inputs to the network. Weight values are adjusted with a back propagation algorithm to reduce the mean squared error between actual and desired network outputs.
Desired outputs of zZ and z2 for a suspicious input are +1 and -1, respectively.
Desired outputs of z~ and z2 for non-suspicious inputs are -1 and +1, respectively.
Other error metrics and output values may also be used.
In this embodiment of the system, the MLP NN is implemented by means of software running on a general-purpose computer. Alternatively, the MLP
NN could also be implemented in a hardware configuration by means readily apparent to those with ordinary skill in the art.
After training, each detected clustered microcalcification is classified as either suspicious or not suspicious by means forming the difference z~ -z2, then comparing the difference to a threshold, 8. For values of z~ - z2 greater than or equal to the threshold 8, i. e., z~ - z2 Z 8, the classifier returns a value of +1 for suspicious clustered microcalcifications, and for values of zl - z2 < 8, the classifier returns a value of -1 for non-suspicious clustered microcalcifications.
In order to arrive at optimum values for the respective weights, and the number of first layer nodes, the MLP NN was trained with a training set of feature vectors derived from a database of 978 mammogram images.
To develop and test the CAD system of the invention, truth data was first generated. Truth data provides a categorization of the tissue in the digital images as a function of position. Truth data was generated by certified radiologists marking truth boxes over image regions associated with cancer. In addition to the mammogram images, the radiologists also had access to patient histories and pathology reports.
The radiologists identified 57 regions of interest, containing biopsy-confirmed cancers associated with clustered microcalcifications, by means of truth boxes. All 978 images were then processed by the microcalcification detector of the invention to produce a plurality of feature vectors, a subset of which were associated with the 57 truth boxes. Half of the subset feature vectors were randomly chosen, along with about three times as many feature vectors not associated with clustered microcalcifications, to comprise the training set of feature vectors. The MLP
NN, having a predetermined number of hidden nodes, was then trained using the training set. The remaining feature vectors were used as a test database to evaluate the performance of the MLP NN after training. Training of the MLP NN was carried out by means of the Levenberg-Marquardt back propagation algorithm.
Alternatively, the MLP NN can be trained with other learning algorithms and may have nonlinearities other than the hyperbolic tangent in either or both layers. In an alternative embodiment with sigmoidal output nodes, the Bayes optimal solution of the problem of classifying clustered microcalcification defections as either suspicious or non-suspicious may be obtained.
In one run of the preferred embodiment during testing, before application of the MLP NN classifier to eliminate false-positive clustered microcalcifications, the detection procedure found about 93% of the true-positive clustered microcalcifications in both the training and test databases while indicating about 10 false-positive clustered microcalcifications per image. It was found that after an MLP NN classifier having 25 first layer nodes was used with the respective optimum weights found during training, 93% of the true-positive defections were retained while 57% of the false-positive defections were successfully removed.
Referring to Fig. 24, there may be seen a histogram of the results of testing on the testing database after classification by the MLP NN. Of course, the MLP NN of the invention may be operated with more or fewer first layer nodes as desired.
DISPLAYING DETECTIONS
After the locations of clustered microcalcifications have been determined, they are indicated on the original digitized mammogram image, or a copy of the original image, by drawing rectangular boxes around microcalcifications.
Other means for indicating the locations of microcalcifications may be used, such as, for example, placing arrows in the image pointing at defections or drawing ellipses around the defections.

The locations of clustered microcalcifications are passed to the display defections procedure as a list of row and column coordinates of the upper left and lower right pixels bounding each of the clusters. The minimum row and column coordinates and maximum row and column coordinates are computed for each cluster. Bounding boxes defined by the minimum and maximum row and column coordinates are added to the original digitized image, by means well known in the art. The resulting image is then stored as a computer-readable file, displayed on a monitor, or printed as a hard-copy image, as desired.
In one embodiment of the system, the resulting image is saved to a hard disk on a general-purpose computer having dual Pentium II ~ processors and running a Windows NT ~ operating system. The resulting image may be viewed on a VGA or SVGA monitor, such as a ViewSonic PT813 ~ monitor, or printed as a hard-copy gray-scale image using a laser printer, such as a Lexmark Optra S
1625 ~.
Of course, other hardware elements may be used by those with ordinary skill in the art.
OPTIMIZING THE PARAMETERS
Genetic algorithms (GAs) have been successfully applied to many diverse and difficult optimization problems. A preferred embodiment of this invention uses an implementation of a GA developed by Houck, et al. ("A
Genetic Algorithm for Function Optimization," Tech. Rep., NCSU-IE TR 95-09, 1995), which is incorporated by reference herein, to find promising parameter settings. The parameter optimization process of the invention is shown in Fig. 25. This is a novel application of optimization techniques as compared to current computer-aided diagnosis systems require hand tuning by experiment.
GAs search the solution space to maximize a fitness (objective) function by use of simulated evolutionary operators such as mutation and sexual recombination. In this embodiment, the fitness function to be maximized reflects the goals of maximizing the number of true-positive defections while minimizing the number of false-positive defections. GA use requires determination of several issues:
objective function design, parameter set representation, population initialization, choice of selection function, choice of genetic operators (reproduction mechanisms) for simulated evolution, and identification of termination criteria.
The design of the objective function is a key factor in the performance of any optimization algorithm. The function optimization problem for detecting clustered microcalcifications may be described as follows: given some finite domain, D, a particular set of cluster detection parameters , x = {t, f, kio, kh;, N, ~Csm;", d""}
where x E D, and an objective function fobs : D ~ ~L, where ~t denotes the set of real numbers, find the x in D that maximizes or minimizes fobs. When sloping local thresholding is used in the cluster detector, the parameters N, A, B, and C
are optimized. Radiologic imaging systems may be optimized to maximize the TP rate subject to the constraint of minimizing the FP rate. This objective may be recast into the functional form shown in the following equation:
-FP(x) , TP(x) z TP
x ( 10) ) - FPPepa~~, , otherwise where maximization is the goal. For a particular set of cluster detection parameters, if the minimum acceptable TP rate, TPm;", is exceeded, the objective function returns the negative of the FP rate. Otherwise, if the TP rate falls below TPm"" the objective function returns a constant value, FPPenairy = -10. Other objective functions may also be used.
Since a real-valued GA is an order of magnitude more efficient in CPU time than the binary GA, and provides higher precision with more consistent results across replications, this embodiment of the invention uses a floating-point representation of the GA.
This embodiment also seeds the initial population with some members known beforehand to be in an interesting part of the search space so as to iteratively improve existing solutions. Also, the number of members is limited to twenty so as to reduce the computational cost of evaluating objective functions.
In one embodiment of the invention, normalized geometric ranking is used, as discussed in greater detail in Houck, et al., supra, for the probabilistic selection process used to identify candidates for reproduction. Ranking is less prone to premature convergence caused by individuals that are far above average. The basic idea of ranking is to select solutions for the mating pool based on the relative fitness between solutions. This embodiment also uses the default genetic operation schemes of arithmetic crossover and nonuniform mutation included in Houck, et al.'s GA.
This embodiment continues to search for solutions until the objective function converges. Alternatively, the search could be terminated after a predetermined number of generations. Although termination due to loss of population diversity and/or lack of improvement is efficient when crossover is the primary source of variation in a population, homogeneous populations can be succeeded with better (higher) fitness when using mutation. Crossover refers to generating new members of a population by combining elements from several of the most fit members. This corresponds to keeping solutions in the best part of the 1 S search space. Mutation refers to randomly altering elements from the most fit members. This allows the algorithm to exit an area of the search space that may be just a local maximum. Since restarting populations that may have converged proves useful, several iterations of the GA are run until a consistent lack of increase in average fitness is recognized.
Once potentially optimum solutions are found by using the GA, the most fit GA solution may be further optimized by local searches. An alternative embodiment of the invention uses the simplex method to further refine the optimized GA solution.
The autocropping system may also benefit from optimization of its parameters including contrast value, number of erodes, and number of dilates.
The method for optimizing the autocropper includes the steps of generating breast masks by hand for some training data, selecting an initial population, and producing breast masks for training data. The method further includes the steps of measuring the percent of overlap of the hand-generated and automatically-generated masks as well as the fraction of autocropped breast tissue outside the hand-generated masks.
The method further comprises selecting winning members, generating new members, and iterating in a like manner as described above until a predetermined objective function converges.
In Figures 26 and 27, there may be seen therein free response receiver operating characteristic curves for the system of the invention for the outputs of the optimized microcalcification detector and the classifier, respectively. Figure represents the performance of the optimized detector before classifying detections, while Fig. 27 represents the performance of the system after classifying detections.
Although the GA has been described above in connection with the parameter optimization portion of the preferred embodiment, other optimization techniques are suitable such as, for example, response surface methodology. Of course, processing systems other than those described herein may be optimized by the methods disclosed herein, including the GA.
INCORPORATING CAD SYSTEM OUTPUTS FOR OPTIMAL SENSITIVITY
Performance metrics for detection of suspicious regions associated with cancer are often reported in terms of sensitivity and specificity.
Sensitivity measures how well a system finds suspicious regions and is defined as the percentage of suspicious regions detected from the total number of suspicious regions in the cases reviewed. Sensitivity is defined as:
Sensitivity = TP (lI) TP + FN
where TP is the number of regions reported as suspicious by a CAD system that are associated with cancers, and FN is the number of regions that are known to be cancerous that are not reported as suspicious. Specificity measures how well the system reports normal regions as normal. Specificity is defined as:
Specificity = TN (j2) FP + TN
where TN represents regions correctly identified as not suspicious and FP
represents regions reported as suspicious that are not cancerous.

Current CAD systems increase specificity by reducing FP. However, FP and TP are coupled quantities. That is, a reduction of FP leads to a reduction of TP. This implies that some of the suspicious regions that could have been detected are missed when the objective is to maintain high specificity.
Figures 28 and 29 illustrate relationships between the quantities TP, FP, TN, and FN. A measurement from a screening mammography image is represented by test statistic, x. The probability density function of x is represented by p(x) and the decision threshold is represented by 8. If x is greater than 8, a suspicious region is reported. Areas under the probability density functions represent probabilities of events. From Fig. 28 observe that increasing the threshold reduces the probability of FP decisions. However, observe from Fig. 29 that increasing the threshold simultaneously reduces the probability of TP decisions.
Another metric that exists for CAD systems is positive predictive value (PPV), which is defined as the probability that cancer actually exists when a region of interest is labeled as suspicious. PPV can be calculated from the following equation:
TP ( ) PPV ° TP + FP 13 Note that increasing TP or reducing FP increases PPV.
Radiologists and computers find different suspicious regions. Figure 30 is a Venn diagram depicting a possible distribution of suspicious regions for man and machine detections. Some suspicious regions are found solely by a human interpreter or radiologist, some solely by a CAD system, some are found by both, and some are not found by either.
Referring to Fig. 31, there may be seen a preferred method for incorporating the outputs of a CAD system, and more particularly for the CAD
system of the invention, with the observations of a human interpreter of a screening mammography image 10 for optimal sensitivity, wherein a radiologist examines the screening mammography image 10 in a step 20 and reports a set of suspicious regions 30 designated as S 1. The CAD system then operates on the image 10 in a *rB

step 40 and reports a set of suspicious regions 50 designated as S2. The radiologist then examines set S2 and accepts or rejects members of set S2 as suspicious in a step 60, thereby forming a third set of suspicious regions 70 denoted as S3, which is a subset of S2. The radiologist then creates in a step 80 a set of workup regions 90 denoted as S4 which is the union of sets S1 and S3. The workup regions 90 are then recommended for further examination such as taking additional mammograms with greater resolution, examining the areas of the breast tissue corresponding to the workup regions by means of ultrasound, or performing biopsies of the breast tissue.
Referring to Fig. 32, an alternative embodiment of the invention may be seen therein to include a density detector 800, a density classifier 900, and a detection results combiner 1000 in addition to the elements described above.
The density detector 800 detects masses and lesions appearing in a digital representation of a screening mammogram. The density classifier 900 classifies detected densities by means of an MLP NN as either suspicious or not suspicious in a manner similar to the MLP NN described above with respect to the microcalcification classifier.
The detected densities classified as suspicious are then fused together and combined with the suspicious detected microcalcifications in the detection results combiner 1000.
While the invention has been described in connection with detecting clustered microcalcifications in mammograms, it should be understood that the methods and systems described herein may also be applicable to other medical images such as chest x-rays.
While the form of apparatus herein described constitutes a preferred embodiment of this invention, it is to be understood that the invention is not limited to this precise form of apparatus, and that changes may be made therein without departing from the scope of the invention which is defined in the appended claims.
What is claimed is:

Claims (51)

1. A method for automated detection of clustered microcalcifications from a digital mammogram comprising the steps of:
obtaining a digital mammogram;
optimizing first parameters for cropping said digital mammogram;
cropping said digital mammogram, based on said optimized first parameters, to produce a cropped image representative of breast tissue in said digital mammogram;
optimizing second parameters for detecting clustered microcalcifications in said cropped image;
detecting clustered microcalcifications in said cropped image based on said optimized second parameters;
indicating the position of said detected clustered microcalcifications in said digital mammogram.
2. A method for segmenting an area of a digital mammogram image corresponding to breast tissue from the remainder of the image, comprising the steps of:
storing a digital representation of said digital mammogram image;
enhancing the histogram of the digital representation to produce an enhanced image in which the contrast of the area of the mammogram image corresponding to breast tissue is increased;
thresholding the enhanced image to produce a binary image comprising a seed pixel;
region growing said seed pixel in said binary image to produce a mask;
closing holes in said mask;
eroding said mask;
dilating said mask; and cropping said digital representation to the size of the largest object in said mask.
3. A method for detecting clustered microcalcifications in a digital mammogram image comprising the steps of:
first filtering said digital mammogram image to reduce noise in said image to produce a noise-reduced image;
second filtering said noise-reduced image with a difference of Gaussians filter to produce a DoG-filtered image in which the appearance of potential microcalcifications has been enhanced;
globally thresholding said DoG-filtered image to segment potential microcalcifications from said DoG-filtered image;
locally thresholding said DoG-filtered image to segment potential microcalcifications from said DoG-filtered image;
logically ANDing together the globally and locally thresholded potential microcalcifications;
converting the logically ANDed potential microcalcifications to single-pixel coordinate representations;
removing single-pixel coordinate representations lying outside the area of the digital mammogram image corresponding to breast tissue;
clustering together the single-pixel coordinate representations remaining from the previous step to identify potential clustered microcalcifications;
computing features for each of the potential clustered microcalcifications;
eliminating potential clustered microcalcifications based on the computed features for each of the potential clustered microcalcifications; and indicating in the digital mammogram image the locations of those potential clustered microcalcifications remaining after the previous step.
4. A method for automated clustered microcalcification detection by digital image processing in screening mammography, comprising:
storing a digital representation of a mammogram;
convolving a filter kernel comprising a difference-of-Gaussians equation with said digital representation, whereby information in the image which does not conform to the size and shape characteristics of a microcalcification is suppressed and suspected microcalcifications appear as bright spots in a resulting image;
and locally and globally thresholding said resulting image, whereby a second resulting image is obtained that essentially comprises only areas of suspected microcalcifications.
5. A method for automated clustered microcalcification detection by digital image processing in screening mammography, comprising:
storing a digital representation of a mammogram;
using an optimizing algorithm and a database of training images to obtain optimized parameter values; and applying a filtering algorithm using said optimized parameters to said digital representation to obtain a filtered image essentially comprising suspected microcalcifications;
shrinking said filtered image to obtain an image essentially comprising single-pixel representations of said suspected microcalcifications;
grouping said single-pixel representations into clusters using said optimized parameters.
6. The method according to claim 5, wherein said step of using an optimizing algorithm comprises:
using a genetic algorithm.
7. The method according to claim 6, wherein:
said step of using a genetic algorithm comprises obtaining a d nn value and a µCs min value where d nn represents a nearest neighbor distance and µCs min represents a number of detected microcalcifications; and said step of grouping groups single-pixel representations into clusters which represent microcalcifications that are within the distance d nn of µCs min other microcalcifications.
8. The method according to claim 7, wherein said step of using a genetic algorithm further comprises the step of:

iteratively searching a solution space containing possible values for d nn and µCs min to identify sets of values in which at least one fitness function is maximized.
9. The method according to claim 8, wherein said step of using a genetic algorithm comprises the step of:
using a simplex method to identify at least one of said sets of values in which a cost function is minimized.
10. A method for automated clustered microcalcification detection by digital image processing in screening mammography, comprising:
storing a digital representation of a mammogram;
locating potential clusters of microcalcifications in said digital representation;
extracting features of said potential clusters of microcalcifications;
using said extracted features as inputs to a multi-layer perception artificial neural network; and using said multi-layer perception artificial neural network to classify said clusters of microcalcifications as suspicious or non-suspicious.
11. The method according to claim 10, wherein said step of using said multi-layer perception artificial neural network to classify said clusters of microcalcifications as suspicious or non-suspicious comprises:
using output values of said multi-layer perception artificial neural network in a smoothly varying output function to obtain a series of resulting values; and classifying a cluster associated with one of said resulting values as suspicious if that value is greater than or equal to a threshold value, or non-suspicious if that value is less than said threshold value.
12. The method according to claim 11, wherein said smoothly varying output function comprises a hyperbolic tangent function.
13. The method according to claim 11, wherein said smoothly varying output function comprises a linear function.
14. The method according to claim 11, wherein said smoothly varying output function comprises a sigmoid function.
15. The method according to claim 11, wherein said step of using said multi-layer perceptron artificial neural network to classify said clusters of microcalcifications as suspicious or non-suspicious comprises:
multiplying at least one of said features by a weight w ij, where I is an index representing the i th feature vector element of a feature vector x having N
elements and j is an index representing a j th first layer node; and using first layer nodes of said multi-layer perceptron artificial neural network to calculate first layer outputs f j, said first layer outputs f j being calculated according to the function:
where x i comprises a computed feature vector element.
16. The method according to claim 15, wherein said step of using said multi-layer perceptron artificial neural network to classify said clusters of microcalcifications as suspicious or non-suspicious further comprises:
multiplying at least one of said first layer outputs f j by a second weight u j,k;
and using a result of said multiplying step as an input to at least one output node, the output of said at least one output node being calculated according to the function:
where y j = f j(x), k is an index representing the k th output node, and J is the number of first layer outputs to be multiplied.
17. A method for incorporating the output detections of a computer-aided detection system for detecting clustered microcalcifications in a mammogram with observed detections of a human interpreter of the same mammogram without reducing sensitivity, comprising:
obtaining said observed detections to form a first set of detections;
obtaining said output detections to form a second set of detections;
accepting some output detections in said second set to form a third set of detections;
combining said first set and said third set to form a fourth set of detections;
and providing an output based on said fourth set of detections.
18. A method for automated clustered microcalcification detection by digital image processing in screening mammography, comprising:
storing a digital representation of a mammogram;
filtering said digital representation to obtain a filtered image comprising suspected microcalcifications;
thresholding said filtered image with a sloping local threshold to obtain an image that essentially comprises only areas of suspected microcalcifications.
19. The method according to claim 18, wherein said step of thresholding comprises:
centering a window over a pixel of interest having coordinates (x,y) is said digital representation;
computing the mean (x,y) and standard deviation (x,y) of the pixels under said window;
computing a local threshold value T(x,y) for said pixel of interest according to the function:
T(x,y) = A + B µ(x,y) + Co(x,y) where A is a predetermined offset and B and C are predetermined coefficients;
comparing the gray-scale value of the corresponding pixel of interest in said filtered image to said local threshold value; and generating a binary image by setting a corresponding pixel in said binary image to a one if said gray-scale value is greater than or equal to said local threshold, and to a zero if said gray-scale value is less than said local threshold.
20. An apparatus for automated detection of clustered microcalcifications from a digital mammogram comprising:
means for obtaining a digital mammogram;
means for optimizing first parameters for cropping said digital mammogram;
means for cropping said digital mammogram, said means for cropping using said optimized first parameters to produce a cropped image representative of breast tissue in said digital mammogram;
means for optimizing second parameters for detecting clustered microcalcifications in said cropped image;
means for detecting clustered microcalcifications in said cropped image using said optimized second parameters;
means for indicating the positions of said detected clustered microcalcifications in said digital mammogram.
21. An apparatus for detecting clustered microcalcifications in a digital mammogram image comprising:
a difference of Gaussians filter for producing a DoG-filtered image in which the appearance of potential microcalcifications has been enhanced;
thresholding means for segmenting said potential microcalcifications from said DoG-filtered image;
extracting means for generating single-pixel coordinate representations for said potential microcalcifications; and clustering means for grouping said single-pixel representations into clusters.
22. An apparatus for automated clustered microcalcification detection by digital image processing in screening mammography comprising:
means for storing a digital representation of a mammogram;
means for convolving a filter kernel comprising a difference-of-Gaussians equation with said digital representation, whereby information in the image which does not conform to the size and shape of a microcalcification is suppressed and suspected microcalcifications appear as bright spots in a resulting image; and means for locally and globally thresholding said resulting image, whereby a second resulting image is obtained that essentially comprises only areas of suspected microcalcifications.
23. An apparatus for automated clustered microcalcification detection by digital image processing in screening mammography comprising:
means for storing a digital representation of a mammogram;
means for optimizing parameter values using an optimizing algorithm and a database of training images;
means for applying a filtering algorithm, using said optimized parameters, to said digital representation to obtain a filtered image essentially comprising suspected microcalcifications;
means for shrinking said filtered image to obtain an image essentially comprising single-pixel representations of said suspected microcalcifications;
and means for grouping said single-pixel representations into clusters using said optimized parameters.
24. The apparatus according to claim 23 wherein said optimizing algorithm is a genetic algorithm.
25. The apparatus according to claim 24 wherein said means for optimizing parameter values comprises:
means for obtaining a d nm value and a µCs min value where d nn represents a nearest neighbor distance and µCs min represents a number of detected microcalcifications; and wherein said means for grouping groups said single-pixel representations into clusters which represent microcalcifications that are within the distance d nn of µCs min other microcalcifications.
26. The apparatus according to claim 25 wherein said means for optimizing parameters comprises:
means for iteratively searching a solution space containing possible values for d nn and µCs min to identify sets of values in which at least one fitness function is maximized.
27. The apparatus according to claim 26 wherein said means for optimizing parameters comprises:
means for using a simplex method to identify at least one of said sets of values in which a cost function is minimized.
28. An apparatus for automated clustered microcalcification detection by digital image processing in screening mammography comprising:
means for storing a digital representation of a mammogram;
means for locating potential clusters of microcalcifications in said digital representation;
means for extracting features of said potential clusters of microcalcifications;
means for classifying said potential clusters of microcalcifications as suspicious or non-suspicious using said features.
29. The apparatus according to claim 28 wherein said means for classifying comprises a multi-layer perception artificial neural network.
30. The apparatus according to claim 29 wherein said multi-layer perception neural network comprises:
smoothly varying output means.
31. The apparatus according to claim 30 wherein said smoothly varying output means comprises:
means for applying a hyperbolic tangent function to a sum of weighted inputs to provide an output indicative of whether a clustered microcalcification is suspicious or non-suspicious.
32. The apparatus according to claim 30 wherein said smoothly varying output means comprises:
means for applying a sigmoid function to a sum of weighted inputs to provide an output indicative of whether a clustered microcalcification is suspicious or non-suspicious.
33. The apparatus according to claim 30 wherein said smoothly varying output means comprises:
means for applying a linear function to a sum of weighted inputs to provide an output indicative of whether a clustered microcalcification is suspicious or non-suspicious.
34. The apparatus according to claim 30 wherein said multi-layer perception artificial neural network comprises:
means for multiplying at least one of said features by a weight w ij, where i is an index representing the ith feature vector element of a feature vector x having N
elements and j is an index representing a jth first layer node; and first layer nodes for calculating first layer outputs f j according to the function:
where x i comprises a computed feature vector element.
35. The apparatus according to claim 34, wherein said multi-layer percepton artificial neural network further comprises:
means for multiplying at least one of said first layer outputs f j by a second weight u j,k; and at least one output node for calculating outputs z k, where k is an index representing a k th output node, according to the function:
where y j = f j(x) and J is the number of first layer outputs to be multiplied.
36. A method for automated clustered microcalcification and density detection by digital image processing in screening mammography, comprising:
storing a digital representation of a mammogram;
convolving a filter kernel comprising a difference-of-Gaussians equation with said digital representation, whereby information in the image which does not conform to the size and shape characteristics of a microcalcification is suppressed and suspected microcalcifications appear as bright spots in a resulting image;
thresholding said first resulting image, whereby a second resulting image is obtained that essentially comprises only areas of suspected microcalcifications;
detecting densities in said digital representation; and producing a third resulting image that comprises only areas of suspected densities.
37. A method for automated image cropping by digital image processing in screening mammography, comprising:
storing a first digital representation of a mammogram;
dilating said first digital representation to produce a dilated digital representation;
cropping said dilated digital representation to the size of the largest contiguous group of pixels, whereby a cropped dilated digital representation is produced; and selecting for subsequent processing pixels in said first digital representation which correspond to pixels in said cropped dilated digital representation.
38. A method for automated microcalcification detection by digital image processing in screening mammography, comprising:
storing a digital representation of a mammogram;
normalizing brightness values of said digital representation;
using a predetermined contrast setting in a region growing algorithm to create a breast mask which defines an area of said digital representation containing breast tissue; and searching said area containing breast tissue for microcalcifications.
39. The method according to claim 38, wherein said step of normalizing comprises a step of histogram equalization.
40. A method for automated microcalcification detection by digital image processing in screening mammography, comprising:
storing a digital representation of a mammogram;
searching a region of said digital representation to find a seed pixel;
using a region-growing algorithm to create a breast mask which defines an area of said digital representation containing breast tissue, said step of using a region-growing algorithm further comprising:
using a region-growing function which begins at said seed pixel and progressively groups together nearest neighbor pixels which share a characteristic, whereby a contiguous group of pixels is created;
using said contiguous group of pixels to determine a breast mask which defines an area of said digital representation containing breast tissue; and searching said area containing breast tissue for microcalcifications.
41. The method according to claim 40, wherein said step of searching a region of said digital representation to find a seed pixel comprises finding a pixel within said region which has a maximum gray-scale value.
42. The method according to claim 40, wherein said step of grouping together nearest neighbor pixels sharing a characteristic comprises determining whether each nearest neighbor pixel has a contrast ratio which is less than a contrast ratio threshold.
43. A method for automated microcalcification detection by digital image processing in screening mammography, comprising:
storing a digital representation of a mammogram;
computing a local threshold value from pixels in said digital representation;
filtering said digital representation using a difference-of-gaussians filter to create a filtered image;
creating a thresholded image by comparing pixels in said filtered image to said local threshold value and adjusting pixel values in accordance with a result of said comparison; and further processing said thresholded image to identify microcalcifications.
44. A method for automated microcalcification detection by digital image processing in screening mammography, comprising:
storing a digital representation of a mammogram;
using a genetic algorithm and a database of training imaged to obtain a value of at least one parameter; and using said at least one parameter in a function which processes said digital representation to identify microcalcifications.
45. The method according to claim 44, wherein said at least one parameter comprises a d nn value and a µCs min value, where d nn, represents a nearest neighbor distance and µCs min represents a number of detected microcalcifications, and wherein said function comprises grouping single-pixel representations into clusters which represent microcalcifications that are within the distance d nn, of µCs min other microcalcifications.
46. The method according to claim 44, wherein said at least one parameter comprises a target size used in a difference-of-gaussians filter.
47. The method according to claim 44, wherein said at least one parameter comprises at least one threshold value.
48. The method according to claim 44, wherein said at least one parameter comprises a neighborhood size.
49. The method according to claim 44, wherein said function comprises a sloping local threshold function.
50. The method according to claim 44, wherein said at least one parameter comprises a percentage of a histogram.
51. The method according to claim 47, wherein said at least one threshold value comprises upper and lower threshold values.
CA002297986A 1997-08-28 1998-08-28 Method and system for automated detection of clustered microcalcifications from digital mammograms Abandoned CA2297986A1 (en)

Applications Claiming Priority (7)

Application Number Priority Date Filing Date Title
US5780197P 1997-08-28 1997-08-28
US60/057,801 1997-08-28
US6699697P 1997-11-28 1997-11-28
US60/066,996 1997-11-28
US7676098P 1998-03-03 1998-03-03
US60/076,760 1998-03-03
PCT/US1998/017886 WO1999009887A1 (en) 1997-08-28 1998-08-28 Method and system for automated detection of clustered microcalcifications from digital mammograms

Publications (1)

Publication Number Publication Date
CA2297986A1 true CA2297986A1 (en) 1999-03-04

Family

ID=27369332

Family Applications (1)

Application Number Title Priority Date Filing Date
CA002297986A Abandoned CA2297986A1 (en) 1997-08-28 1998-08-28 Method and system for automated detection of clustered microcalcifications from digital mammograms

Country Status (10)

Country Link
EP (1) EP1009283A1 (en)
JP (1) JP2003532934A (en)
KR (1) KR20010023427A (en)
CN (1) CN1273516A (en)
AU (1) AU741337B2 (en)
BR (1) BR9812021A (en)
CA (1) CA2297986A1 (en)
IL (1) IL134557A0 (en)
NO (1) NO20000914D0 (en)
WO (1) WO1999009887A1 (en)

Cited By (29)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2016100173A1 (en) * 2014-12-18 2016-06-23 Endochoice, Inc. System and method for processing video images generated by a multiple viewing elements endoscope
US9474440B2 (en) 2009-06-18 2016-10-25 Endochoice, Inc. Endoscope tip position visual indicator and heat management system
US9667935B2 (en) 2013-05-07 2017-05-30 Endochoice, Inc. White balance enclosure for use with a multi-viewing elements endoscope
US9706908B2 (en) 2010-10-28 2017-07-18 Endochoice, Inc. Image capture and video processing systems and methods for multiple viewing element endoscopes
US9943218B2 (en) 2013-10-01 2018-04-17 Endochoice, Inc. Endoscope having a supply cable attached thereto
US9949623B2 (en) 2013-05-17 2018-04-24 Endochoice, Inc. Endoscope control unit with braking system
US9968242B2 (en) 2013-12-18 2018-05-15 Endochoice, Inc. Suction control unit for an endoscope having two working channels
US10064541B2 (en) 2013-08-12 2018-09-04 Endochoice, Inc. Endoscope connector cover detection and warning system
US10078207B2 (en) 2015-03-18 2018-09-18 Endochoice, Inc. Systems and methods for image magnification using relative movement between an image sensor and a lens assembly
US10105039B2 (en) 2013-06-28 2018-10-23 Endochoice, Inc. Multi-jet distributor for an endoscope
US10130246B2 (en) 2009-06-18 2018-11-20 Endochoice, Inc. Systems and methods for regulating temperature and illumination intensity at the distal tip of an endoscope
US10258222B2 (en) 2014-07-21 2019-04-16 Endochoice, Inc. Multi-focal, multi-camera endoscope systems
US10271713B2 (en) 2015-01-05 2019-04-30 Endochoice, Inc. Tubed manifold of a multiple viewing elements endoscope
US10292570B2 (en) 2016-03-14 2019-05-21 Endochoice, Inc. System and method for guiding and tracking a region of interest using an endoscope
US10376181B2 (en) 2015-02-17 2019-08-13 Endochoice, Inc. System for detecting the location of an endoscopic device during a medical procedure
US10401611B2 (en) 2015-04-27 2019-09-03 Endochoice, Inc. Endoscope with integrated measurement of distance to objects of interest
US10488648B2 (en) 2016-02-24 2019-11-26 Endochoice, Inc. Circuit board assembly for a multiple viewing element endoscope using CMOS sensors
US10516865B2 (en) 2015-05-17 2019-12-24 Endochoice, Inc. Endoscopic image enhancement using contrast limited adaptive histogram equalization (CLAHE) implemented in a processor
US10517464B2 (en) 2011-02-07 2019-12-31 Endochoice, Inc. Multi-element cover for a multi-camera endoscope
US10524645B2 (en) 2009-06-18 2020-01-07 Endochoice, Inc. Method and system for eliminating image motion blur in a multiple viewing elements endoscope
US10542877B2 (en) 2014-08-29 2020-01-28 Endochoice, Inc. Systems and methods for varying stiffness of an endoscopic insertion tube
US10595714B2 (en) 2013-03-28 2020-03-24 Endochoice, Inc. Multi-jet controller for an endoscope
US10663714B2 (en) 2010-10-28 2020-05-26 Endochoice, Inc. Optical system for an endoscope
US10898062B2 (en) 2015-11-24 2021-01-26 Endochoice, Inc. Disposable air/water and suction valves for an endoscope
US10993605B2 (en) 2016-06-21 2021-05-04 Endochoice, Inc. Endoscope system with multiple connection interfaces to interface with different video data signal sources
US11082598B2 (en) 2014-01-22 2021-08-03 Endochoice, Inc. Image capture and video processing systems and methods for multiple viewing element endoscopes
US11234581B2 (en) 2014-05-02 2022-02-01 Endochoice, Inc. Elevator for directing medical tool
US11529197B2 (en) 2015-10-28 2022-12-20 Endochoice, Inc. Device and method for tracking the position of an endoscope within a patient's body
US11957311B2 (en) 2021-12-14 2024-04-16 Endochoice, Inc. Endoscope control unit with braking system

Families Citing this family (36)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6233304B1 (en) * 1998-11-25 2001-05-15 General Electric Company Methods and apparatus for calcification scoring
FR2796740B1 (en) * 1999-07-19 2001-10-26 Ge Medical Syst Sa METHOD AND SYSTEM FOR MANAGING THE SATURATION ON A DIGITIZED RADIOGRAPHIC IMAGE
US6654506B1 (en) * 2000-01-25 2003-11-25 Eastman Kodak Company Method for automatically creating cropped and zoomed versions of photographic images
IT1320956B1 (en) * 2000-03-24 2003-12-18 Univ Bologna METHOD, AND RELATED EQUIPMENT, FOR THE AUTOMATIC DETECTION OF MICROCALCIFICATIONS IN DIGITAL SIGNALS OF BREAST FABRIC.
GB2370438A (en) 2000-12-22 2002-06-26 Hewlett Packard Co Automated image cropping using selected compositional rules.
JP2004526179A (en) 2000-12-22 2004-08-26 ヒューレット・パッカード・カンパニー Image composition evaluation method and apparatus
US7034848B2 (en) 2001-01-05 2006-04-25 Hewlett-Packard Development Company, L.P. System and method for automatically cropping graphical images
GB0116113D0 (en) 2001-06-30 2001-08-22 Hewlett Packard Co Tilt correction of electronic images
GB2378340A (en) 2001-07-31 2003-02-05 Hewlett Packard Co Generation of an image bounded by a frame or of overlapping images
US7783089B2 (en) * 2002-04-15 2010-08-24 General Electric Company Method and apparatus for providing mammographic image metrics to a clinician
US7149335B2 (en) * 2002-09-27 2006-12-12 General Electric Company Method and apparatus for enhancing an image
FR2863749B1 (en) * 2003-12-10 2006-04-07 Ge Med Sys Global Tech Co Llc RADIOLOGICAL IMAGE PROCESSING METHOD FOR DETECTION OF MICROCALCIFICATIONS
JP2008505704A (en) * 2004-07-09 2008-02-28 フィッシャー イメイジング コーポレイション Breast screening method in fusion mammography
WO2006013514A1 (en) * 2004-07-26 2006-02-09 Koninklijke Philips Electronics N.V. System and method for automated suspicious object boundary determination
US8203338B2 (en) * 2007-08-06 2012-06-19 Carestream Health, Inc. Linear structure verification in medical applications
KR101030594B1 (en) * 2009-07-02 2011-04-21 국립암센터 Method of diagnosing micro-calcification
EP2462561B1 (en) * 2009-08-03 2018-10-31 Volpara Health Technologies Limited A method and system for analysing tissue from images
US11676730B2 (en) 2011-12-16 2023-06-13 Etiometry Inc. System and methods for transitioning patient care from signal based monitoring to risk based monitoring
EP2817781B1 (en) * 2012-02-24 2017-07-19 Paul Scherrer Institut A system for non-invasively classification of different types of micro-calcifications in human tissue
KR101341288B1 (en) 2013-10-24 2013-12-12 사회복지법인 삼성생명공익재단 Quality assurance system and the method for radiotherapy apparatus
US9474497B2 (en) * 2014-01-15 2016-10-25 Agfa Healthcare Method and system for generating pre-scaled images for a series of mammography images
EP3076872B1 (en) * 2014-04-29 2018-06-13 Koninklijke Philips N.V. Device and method for tomosynthesis imaging
US10198840B2 (en) * 2014-06-27 2019-02-05 Koninklijke Philips N.V. Silhouette display for visual assessment of calcified rib-cartilage joints
KR102355294B1 (en) * 2015-02-13 2022-01-25 한국외국어대학교 연구산학협력단 Image processing device and image processing method
WO2016194338A1 (en) * 2015-06-04 2016-12-08 パナソニック株式会社 Image processing method and image processing device
CN108882902B (en) * 2016-02-08 2022-08-30 医默观系统公司 System and method for visualization and characterization of objects in images
US10372876B2 (en) 2017-01-20 2019-08-06 Agfa Healthcare Inc. System and method for providing breast image data
CN109124585A (en) * 2018-08-13 2019-01-04 脱浩东 For handling the method, apparatus and system of mammary gland data
CN110111271B (en) * 2019-04-24 2021-06-22 北京理工大学 Single-pixel imaging method based on side suppression network
CN110633644A (en) * 2019-08-16 2019-12-31 杭州电子科技大学 Human body joint angle prediction method based on electromyographic wavelet packet decomposition and GABP
WO2021062292A1 (en) * 2019-09-26 2021-04-01 Etiometry Inc. Systems and methods for transitioning patient care from signal based monitoring to risk-based monitoring
CN110880169A (en) * 2019-10-16 2020-03-13 平安科技(深圳)有限公司 Method, device, computer system and readable storage medium for marking focus area
CN113744171B (en) * 2020-05-28 2023-11-14 上海微创卜算子医疗科技有限公司 Vascular calcification image segmentation method, system and readable storage medium
CN112013203B (en) * 2020-07-18 2021-09-24 淮阴工学院 Pipe network detection system based on DRNN neural network
US11954853B2 (en) * 2021-07-21 2024-04-09 GE Precision Healthcare LLC Systems and methods for fast mammography data handling
CN117522864B (en) * 2024-01-02 2024-03-19 山东旭美尚诺装饰材料有限公司 European pine plate surface flaw detection method based on machine vision

Family Cites Families (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
JP3231810B2 (en) * 1990-08-28 2001-11-26 アーチ・デベロップメント・コーポレーション Differential diagnosis support method using neural network
US5491627A (en) * 1993-05-13 1996-02-13 Arch Development Corporation Method and system for the detection of microcalcifications in digital mammograms
EP0687373A1 (en) * 1993-12-30 1995-12-20 Koninklijke Philips Electronics N.V. Automatic segmentation and skinline detection in digital mammograms
US5572565A (en) * 1994-12-30 1996-11-05 Philips Electronics North America Corporation Automatic segmentation, skinline and nipple detection in digital mammograms

Cited By (52)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US10561308B2 (en) 2009-06-18 2020-02-18 Endochoice, Inc. Systems and methods for regulating temperature and illumination intensity at the distal tip of an endoscope
US9474440B2 (en) 2009-06-18 2016-10-25 Endochoice, Inc. Endoscope tip position visual indicator and heat management system
US10130246B2 (en) 2009-06-18 2018-11-20 Endochoice, Inc. Systems and methods for regulating temperature and illumination intensity at the distal tip of an endoscope
US10524645B2 (en) 2009-06-18 2020-01-07 Endochoice, Inc. Method and system for eliminating image motion blur in a multiple viewing elements endoscope
US9907462B2 (en) 2009-06-18 2018-03-06 Endochoice, Inc. Endoscope tip position visual indicator and heat management system
US10912454B2 (en) 2009-06-18 2021-02-09 Endochoice, Inc. Systems and methods for regulating temperature and illumination intensity at the distal tip of an endoscope
US9706908B2 (en) 2010-10-28 2017-07-18 Endochoice, Inc. Image capture and video processing systems and methods for multiple viewing element endoscopes
US10663714B2 (en) 2010-10-28 2020-05-26 Endochoice, Inc. Optical system for an endoscope
US10412290B2 (en) 2010-10-28 2019-09-10 Endochoice, Inc. Image capture and video processing systems and methods for multiple viewing element endoscopes
US10779707B2 (en) 2011-02-07 2020-09-22 Endochoice, Inc. Multi-element cover for a multi-camera endoscope
US10517464B2 (en) 2011-02-07 2019-12-31 Endochoice, Inc. Multi-element cover for a multi-camera endoscope
US10595714B2 (en) 2013-03-28 2020-03-24 Endochoice, Inc. Multi-jet controller for an endoscope
US11375885B2 (en) 2013-03-28 2022-07-05 Endochoice Inc. Multi-jet controller for an endoscope
US10205925B2 (en) 2013-05-07 2019-02-12 Endochoice, Inc. White balance enclosure for use with a multi-viewing elements endoscope
US9667935B2 (en) 2013-05-07 2017-05-30 Endochoice, Inc. White balance enclosure for use with a multi-viewing elements endoscope
US9949623B2 (en) 2013-05-17 2018-04-24 Endochoice, Inc. Endoscope control unit with braking system
US10433715B2 (en) 2013-05-17 2019-10-08 Endochoice, Inc. Endoscope control unit with braking system
US10105039B2 (en) 2013-06-28 2018-10-23 Endochoice, Inc. Multi-jet distributor for an endoscope
US10064541B2 (en) 2013-08-12 2018-09-04 Endochoice, Inc. Endoscope connector cover detection and warning system
US9943218B2 (en) 2013-10-01 2018-04-17 Endochoice, Inc. Endoscope having a supply cable attached thereto
US9968242B2 (en) 2013-12-18 2018-05-15 Endochoice, Inc. Suction control unit for an endoscope having two working channels
US11082598B2 (en) 2014-01-22 2021-08-03 Endochoice, Inc. Image capture and video processing systems and methods for multiple viewing element endoscopes
US11234581B2 (en) 2014-05-02 2022-02-01 Endochoice, Inc. Elevator for directing medical tool
US11229348B2 (en) 2014-07-21 2022-01-25 Endochoice, Inc. Multi-focal, multi-camera endoscope systems
US11883004B2 (en) 2014-07-21 2024-01-30 Endochoice, Inc. Multi-focal, multi-camera endoscope systems
US10258222B2 (en) 2014-07-21 2019-04-16 Endochoice, Inc. Multi-focal, multi-camera endoscope systems
US10542877B2 (en) 2014-08-29 2020-01-28 Endochoice, Inc. Systems and methods for varying stiffness of an endoscopic insertion tube
US11771310B2 (en) 2014-08-29 2023-10-03 Endochoice, Inc. Systems and methods for varying stiffness of an endoscopic insertion tube
US10123684B2 (en) 2014-12-18 2018-11-13 Endochoice, Inc. System and method for processing video images generated by a multiple viewing elements endoscope
WO2016100173A1 (en) * 2014-12-18 2016-06-23 Endochoice, Inc. System and method for processing video images generated by a multiple viewing elements endoscope
US10271713B2 (en) 2015-01-05 2019-04-30 Endochoice, Inc. Tubed manifold of a multiple viewing elements endoscope
US11147469B2 (en) 2015-02-17 2021-10-19 Endochoice, Inc. System for detecting the location of an endoscopic device during a medical procedure
US10376181B2 (en) 2015-02-17 2019-08-13 Endochoice, Inc. System for detecting the location of an endoscopic device during a medical procedure
US10634900B2 (en) 2015-03-18 2020-04-28 Endochoice, Inc. Systems and methods for image magnification using relative movement between an image sensor and a lens assembly
US10078207B2 (en) 2015-03-18 2018-09-18 Endochoice, Inc. Systems and methods for image magnification using relative movement between an image sensor and a lens assembly
US11194151B2 (en) 2015-03-18 2021-12-07 Endochoice, Inc. Systems and methods for image magnification using relative movement between an image sensor and a lens assembly
US11555997B2 (en) 2015-04-27 2023-01-17 Endochoice, Inc. Endoscope with integrated measurement of distance to objects of interest
US10401611B2 (en) 2015-04-27 2019-09-03 Endochoice, Inc. Endoscope with integrated measurement of distance to objects of interest
US11750782B2 (en) 2015-05-17 2023-09-05 Endochoice, Inc. Endoscopic image enhancement using contrast limited adaptive histogram equalization (CLAHE) implemented in a processor
US10791308B2 (en) 2015-05-17 2020-09-29 Endochoice, Inc. Endoscopic image enhancement using contrast limited adaptive histogram equalization (CLAHE) implemented in a processor
US10516865B2 (en) 2015-05-17 2019-12-24 Endochoice, Inc. Endoscopic image enhancement using contrast limited adaptive histogram equalization (CLAHE) implemented in a processor
US11330238B2 (en) 2015-05-17 2022-05-10 Endochoice, Inc. Endoscopic image enhancement using contrast limited adaptive histogram equalization (CLAHE) implemented in a processor
US11529197B2 (en) 2015-10-28 2022-12-20 Endochoice, Inc. Device and method for tracking the position of an endoscope within a patient's body
US10898062B2 (en) 2015-11-24 2021-01-26 Endochoice, Inc. Disposable air/water and suction valves for an endoscope
US11311181B2 (en) 2015-11-24 2022-04-26 Endochoice, Inc. Disposable air/water and suction valves for an endoscope
US10908407B2 (en) 2016-02-24 2021-02-02 Endochoice, Inc. Circuit board assembly for a multiple viewing elements endoscope using CMOS sensors
US10488648B2 (en) 2016-02-24 2019-11-26 Endochoice, Inc. Circuit board assembly for a multiple viewing element endoscope using CMOS sensors
US11782259B2 (en) 2016-02-24 2023-10-10 Endochoice, Inc. Circuit board assembly for a multiple viewing elements endoscope using CMOS sensors
US10292570B2 (en) 2016-03-14 2019-05-21 Endochoice, Inc. System and method for guiding and tracking a region of interest using an endoscope
US10993605B2 (en) 2016-06-21 2021-05-04 Endochoice, Inc. Endoscope system with multiple connection interfaces to interface with different video data signal sources
US11672407B2 (en) 2016-06-21 2023-06-13 Endochoice, Inc. Endoscope system with multiple connection interfaces to interface with different video data signal sources
US11957311B2 (en) 2021-12-14 2024-04-16 Endochoice, Inc. Endoscope control unit with braking system

Also Published As

Publication number Publication date
AU9295598A (en) 1999-03-16
AU741337B2 (en) 2001-11-29
KR20010023427A (en) 2001-03-26
IL134557A0 (en) 2001-04-30
NO20000914L (en) 2000-02-24
NO20000914D0 (en) 2000-02-24
WO1999009887A1 (en) 1999-03-04
JP2003532934A (en) 2003-11-05
BR9812021A (en) 2000-09-26
CN1273516A (en) 2000-11-15
EP1009283A1 (en) 2000-06-21

Similar Documents

Publication Publication Date Title
US6167146A (en) Method and system for segmentation and detection of microcalcifications from digital mammograms
AU741337B2 (en) Method and system for automated detection of clustered microcalcifications from digital mammograms
US6137898A (en) Gabor filtering for improved microcalcification detection in digital mammograms
US6970587B1 (en) Use of computer-aided detection system outputs in clinical practice
US7308126B2 (en) Use of computer-aided detection system outputs in clinical practice
Boumaraf et al. A new computer-aided diagnosis system with modified genetic feature selection for BI-RADS classification of breast masses in mammograms
US6801645B1 (en) Computer aided detection of masses and clustered microcalcifications with single and multiple input image context classification strategies
Biswas et al. Mammogram classification using gray-level co-occurrence matrix for diagnosis of breast cancer
Karim et al. DeepKneeExplainer: explainable knee osteoarthritis diagnosis from radiographs and magnetic resonance imaging
Singh et al. An approach for classification of malignant and benign microcalcification clusters
Rizzi et al. A supervised method for microcalcification cluster diagnosis
EP1194880A1 (en) Computer aided detection of masses and clustered microcalcification strategies
Makandar et al. Classification of mass type based on segmentation techniques with support vector machine model for diagnosis of breast cancer
Boulehmi et al. Breast masses diagnosis using supervised approaches
AU7737801A (en) Method and system for automated detection of clustered microcalcifications from digital mammograms
Patrocinio et al. Classifying clusters of microcalcification in digitized mammograms by artificial neural network
MXPA00002074A (en) Method and system for automated detection of clustered microcalcifications from digital mammograms
Osman Breast Cancer Detection and Classification Using Advanced Computer-Aided Diagnosis System
TW492858B (en) Method and system for automated detection of clustered microcalcifications from digital mammograms
Alsaadi et al. Automatic lung cancer recognition in chest CT-scan images using SVM classifier
Malathi et al. Classification of Multi-view Digital Mammogram Images Using SMO-WkNN.
Patrocinio et al. Classifier scheme for clustered microcalcifications in digitized mammograms by using Artificial Neural Networks
Faye et al. STATUS OF THESIS
MOHAMED ELTOUKHY COMPUTER AIDED SYSTEM FOR BREAST CANCER DIAGNOSIS USING CURVELET TRANSFORM

Legal Events

Date Code Title Description
FZDE Discontinued