A novel method for breast mass segmentation: from superpixel to subpixel segmentation

被引:0
作者
Shenghua Gu
Yi Chen
Fangqing Sheng
Tianming Zhan
Yunjie Chen
机构
[1] Nanjing University of Information Science and Technology,School of Computer and Software
[2] Nanjing Normal University,School of Computer Science and Technology
[3] Huaiyin Institute of Technology,Jiangsu Laboratory of Lake Environment Remote Sensing Technologies
[4] Macau University of Science and Technology,Faculty of Hospitality and Tourism Management
[5] Jiangsu Maritime Institute,School of Humanity and Art
[6] Nanjing Audit University,School of Information Engineering
[7] Nanjing University of Information Science and Technology,School of Math and Statistics
来源
Machine Vision and Applications | 2019年 / 30卷
关键词
Breast mass segmentation; Superpixel; Level set method; Local Gaussian distribution fitting;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, an effective method is proposed for breast mass segmentation using a superpixel generation and curve evolution method. The simple linear iterative clustering method and density-based spatial clustering of applications with noise method are applied to generate superpixels in mammograms at first. Thereafter, a region of interesting (ROI) that contains the breast mass is built on the superpixel generation results. Finally, the image patch and the position of the manual labeled seed are used to build the prior knowledge for the level set method driven by the local Gaussian distribution fitting energy and evolve the curve to capture the edge of breast mass in ROI. Experimental results on mammogram data set demonstrate that the proposed method shows superior performance in contrast to some well-known methods in breast mass segmentation.
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页码:1111 / 1122
页数:11
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共 107 条
  • [1] DeSantis C(2014)Breast cancer statistics, 2013 CA Cancer J. Clin. 64 52-62
  • [2] Ma J(2016)Breast cancer Radiol. Clin. North Am. 21 51-65
  • [3] Bryan L(2016)Phytoestrogens and breast cancer in postmenopausal women: a case control study Menopause-the J. North Am. Menopause Soc. 7 289-3931
  • [4] Harbeck N(2015)Proliferation index as a prognostic marker in breast cancer Cancer 71 3926-15
  • [5] Gnant M(2016)Evaluation of a hemi-spherical wideband antenna array for breast cancer imaging Radio Sci. 43 1-280
  • [6] Murkies A(2016)Altered cortisol response to psychologic stress in breast cancer survivors with persistent fatigue Psychosom. Med. 67 277-2304
  • [7] Dalais FS(2016)Association between invasive ovarian cancer susceptibility and 11 best candidate SNPs from breast cancer genome-wide association study Hum. Mol. Genet. 18 2297-2985
  • [8] Briganti EM(2015)Overexpression of Glut-1 glucose transporter in human breast cancer An Immunohistochem. Study. Cancer 72 2979-1002
  • [9] Veronese SM(2015)Benign and malignant breast tumors classification based on region growing and CNN segmentation Expert Syst. Appl. 42 990-2989
  • [10] Gambacorta M(2016)A region-based segmentation method for ultrasound images in HIFU therapy Med. Phys. 43 2975-106