Automated fibroglandular tissue segmentation and volumetric density estimation in breast MRI using an atlas-aided fuzzy C-means method

被引:65
作者
Wu, Shandong [1 ]
Weinstein, Susan P. [1 ]
Conant, Emily F. [1 ]
Kontos, Despina [1 ]
机构
[1] Univ Penn, Dept Radiol, Philadelphia, PA 19104 USA
基金
美国国家卫生研究院;
关键词
magnetic resonance imaging (MRI); breast; fibroglandular tissue; segmentation; atlas; fuzzy C-means (FCM); SUPPORT VECTOR MACHINE; MAMMOGRAPHIC DENSITY; DIGITAL MAMMOGRAPHY; RISK;
D O I
10.1118/1.4829496
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose: Breast magnetic resonance imaging (MRI) plays an important role in the clinical management of breast cancer. Studies suggest that the relative amount of fibroglandular (i.e., dense) tissue in the breast as quantified in MR images can be predictive of the risk for developing breast cancer, especially for high-risk women. Automated segmentation of the fibroglandular tissue and volumetric density estimation in breast MRI could therefore be useful for breast cancer risk assessment. Methods: In this work the authors develop and validate a fully automated segmentation algorithm, namely, an atlas-aided fuzzy C-means (FCM-Atlas) method, to estimate the volumetric amount of fibroglandular tissue in breast MRI. The FCM-Atlas is a 2D segmentation method working on a slice-by-slice basis. FCM clustering is first applied to the intensity space of each 2D MR slice to produce an initial voxelwise likelihood map of fibroglandular tissue. Then a prior learned fibroglandular tissue likelihood atlas is incorporated to refine the initial FCM likelihood map to achieve enhanced segmentation, from which the absolute volume of the fibroglandular tissue (| FGT|) and the relative amount (i.e., percentage) of the | FGT| relative to the whole breast volume (FGT%) are computed. The authors' method is evaluated by a representative dataset of 60 3D bilateral breast MRI scans (120 breasts) that span the full breast density range of the American College of Radiology Breast Imaging Reporting and Data System. The automated segmentation is compared to manual segmentation obtained by two experienced breast imaging radiologists. Segmentation performance is assessed by linear regression, Pearson's correlation coefficients, Student's paired t-test, and Dice's similarity coefficients (DSC). Results: The inter-reader correlation is 0.97 for FGT% and 0.95 for | FGT|. When compared to the average of the two readers' manual segmentation, the proposed FCM-Atlas method achieves a correlation of r = 0.92 for FGT% and r = 0.93 for | FGT|, and the automated segmentation is not statistically significantly different (p = 0.46 for FGT% and p = 0.55 for | FGT|). The bilateral correlation between left breasts and right breasts for the FGT% is 0.94, 0.92, and 0.95 for reader 1, reader 2, and the FCM-Atlas, respectively; likewise, for the | FGT|, it is 0.92, 0.92, and 0.93, respectively. For the spatial segmentation agreement, the automated algorithm achieves a DSC of 0.69 +/- 0.1 when compared to reader 1 and 0.61 +/- 0.1 for reader 2, respectively, while the DSC between the two readers' manual segmentation is 0.67 +/- 0.15. Additional robustness analysis shows that the segmentation performance of the authors' method is stable both with respect to selecting different cases and to varying the number of cases needed to construct the prior probability atlas. The authors' results also show that the proposed FCM-Atlas method outperforms the commonly used two-cluster FCM-alone method. The authors' method runs at similar to 5 min for each 3D bilateralMR scan (56 slices) for computing the FGT% and | FGT|, compared to similar to 55 min needed for manual segmentation for the same purpose. Conclusions: The authors' method achieves robust segmentation and can serve as an efficient tool for processing large clinical datasets for quantifying the fibroglandular tissue content in breast MRI. It holds a great potential to support clinical applications in the future including breast cancer risk assessment. (C) 2013 American Association of Physicists in Medicine.
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页数:12
相关论文
共 35 条
  • [1] [Anonymous], 2003, BREAST IM REP DAT SY
  • [2] BERGEN JR, 1992, LECT NOTES COMPUT SC, V588, P237
  • [3] Bezdek J. C., 1981, Pattern recognition with fuzzy objective function algorithms
  • [4] KERNEL DENSITY ESTIMATION VIA DIFFUSION
    Botev, Z. I.
    Grotowski, J. F.
    Kroese, D. P.
    [J]. ANNALS OF STATISTICS, 2010, 38 (05) : 2916 - 2957
  • [5] QUANTITATIVE CLASSIFICATION OF MAMMOGRAPHIC DENSITIES AND BREAST-CANCER RISK - RESULTS FROM THE CANADIAN NATIONAL BREAST SCREENING STUDY
    BOYD, NF
    BYNG, JW
    JONG, RA
    FISHELL, EK
    LITTLE, LE
    MILLER, AB
    LOCKWOOD, GA
    TRITCHLER, DL
    YAFFE, MJ
    [J]. JOURNAL OF THE NATIONAL CANCER INSTITUTE, 1995, 87 (09) : 670 - 675
  • [6] Mammographic density and the risk and detection of breast cancer
    Boyd, Norman F.
    Guo, Helen
    Martin, Lisa J.
    Sun, Limei
    Stone, Jennifer
    Fishell, Eve
    Jong, Roberta A.
    Hislop, Greg
    Chiarelli, Anna
    Minkin, Salomon
    Yaffe, Martin J.
    [J]. NEW ENGLAND JOURNAL OF MEDICINE, 2007, 356 (03) : 227 - 236
  • [7] Chintalapani G, 2007, LECT NOTES COMPUT SC, V4791, P499
  • [8] Comparison of 3-point dixon imaging and fuzzy C-means clustering methods for breast density measurement
    Clendenen, Tess V.
    Zeleniuch-Jacquotte, Anne
    Moy, Linda
    Pike, Malcolm C.
    Rusinek, Henry
    Kim, Sungheon
    [J]. JOURNAL OF MAGNETIC RESONANCE IMAGING, 2013, 38 (02) : 474 - 481
  • [9] MEASURES OF THE AMOUNT OF ECOLOGIC ASSOCIATION BETWEEN SPECIES
    DICE, LR
    [J]. ECOLOGY, 1945, 26 (03) : 297 - 302
  • [10] Dunn J. C., 1973, Journal of Cybernetics, V3, P32, DOI 10.1080/01969727308546046