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Computerized image analysis: Estimation of breast density on mammograms

Med. Phys. Volume 28, Issue 6, pp. 1056-1069 (June 2001)

Issue Date: June 2001
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KEYWORDS and PACS

Keywords
PACS
  • 87.59.Ek
    Biological and medical physics X-ray imaging Mammography
  • 87.59.Hp
    Biological and medical physics X-ray imaging Digital radiography
  • 42.30.Sy
    Optics Imaging and optical processing Pattern recognition
  • YEAR: 2001

PUBLICATION DATA

ISSN:
0094-2405 (print)  
Publisher:
AIP is a member of CrossRef AAPM
Chuan Zhou, Heang-Ping Chan, Nicholas Petrick, Mark A. Helvie, Mitchell M. Goodsitt, Berkman Sahiner, and Lubomir M. Hadjiiski
Department of Radiology, The University of Michigan, Ann Arbor, Michigan 48109-0030
An automated image analysis tool is being developed for the estimation of mammographic breast density. This tool may be useful for risk estimation or for monitoring breast density change in prevention or intervention programs. In this preliminary study, a data set of 4-view mammograms from 65 patients was used to evaluate our approach. Breast density analysis was performed on the digitized mammograms in three stages. First, the breast region was segmented from the surrounding background by an automated breast boundary-tracking algorithm. Second, an adaptive dynamic range compression technique was applied to the breast image to reduce the range of the gray level distribution in the low frequency background and to enhance the differences in the characteristic features of the gray level histogram for breasts of different densities. Third, rule-based classification was used to classify the breast images into four classes according to the characteristic features of their gray level histogram. For each image, a gray level threshold was automatically determined to segment the dense tissue from the breast region. The area of segmented dense tissue as a percentage of the breast area was then estimated. To evaluate the performance of the algorithm, the computer segmentation results were compared to manual segmentation with interactive thresholding by five radiologists. A "true" percent dense area for each mammogram was obtained by averaging the manually segmented areas of the radiologists. We found that the histograms of 6% (8 CC and 8 MLO views) of the breast regions were misclassified by the computer, resulting in poor segmentation of the dense region. For the images with correct classification, the correlation between the computer-estimated percent dense area and the "truth" was 0.94 and 0.91, respectively, for CC and MLO views, with a mean bias of less than 2%. The mean biases of the five radiologists' visual estimates for the same images ranged from 0.1% to 11%. The results demonstrate the feasibility of estimating mammographic breast density using computer vision techniques and its potential to improve the accuracy and reproducibility of breast density estimation in comparison with the subjective visual assessment by radiologists. ©2001 American Association of Physicists in Medicine.
History: Received 15 September 2000; accepted 4 April 2001
Permalink: http://dx.doi.org/10.1118/1.1376640

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