Fuzzy entropy based on differential evolution for breast gland segmentation

For the diagnosis and treatment of breast tumors, the automatic detection of glands is a crucial step. The true segmentation of the gland is directly related to effective treatment effect of the patient. Therefore, it is necessary to propose an automatic segmentation algorithm based on mammary gland features. A segmentation method of differential evolution (DE) fuzzy entropy based on mammary gland is proposed in the paper. According to the image fuzzy entropy, the evaluation function of image segmentation is constructed in the first step. Then, the method adopts DE, the image fuzzy entropy parameter is regard as the initial population of individual. After the mutation, crossover and selection of three evolutionary processes to search for the maximum fuzzy entropy of parameters, the optimal threshold of the segmented gland is achieved. Finally, the mammary gland is segmented by the threshold method of maximum fuzzy entropy. Eight breast images with four tissue types are tested 100 times, with accuracy (Acc), sensitivity (Sen), specificity (Spe), positive predictive value (PPV), negative predicted value (NPV), and average structural similarity (Mssim) to measure the segmentation result. The Acc of the proposed algorithm is 98.46 ± 8.02E−03%, 95.93 ± 2.38E−02%, 93.88 ± 6.59E−02%, 94.73 ± 1.82E−01%, 96.19 ± 1.15E−02%, and 97.51 ± 1.36E−02%, 96.64 ± 6.35E−02%, and 94.76 ± 6.21E−02%, respectively. The mean Mssim values of the 100 tests were 0.985, 0.933, 0.924, 0.907, 0.984, 0.928, 0.938, and 0.941, respectively. Our proposed algorithm is more effective and robust in comparison to the other fuzzy entropy based on swarm intelligent optimization algorithms. The experimental results show that the proposed algorithm has higher accuracy in the segmentation of mammary glands, and may serve as a gold standard in the analysis of treatment of breast tumors.

[1]  A. Jemal,et al.  Global Cancer Statistics , 2011 .

[2]  Qin Qianqing,et al.  Watershed Transform Based on Morphological Reconstruction , 2009 .

[3]  Mingyuan Gao,et al.  An adaptive Fuzzy C‐means method utilizing neighboring information for breast tumor segmentation in ultrasound images , 2017, Medical physics.

[4]  Rached Tourki,et al.  Automated Breast Cancer Diagnosis Based on GVF-Snake Segmentation, Wavelet Features Extraction and Fuzzy Classification , 2009, J. Signal Process. Syst..

[5]  Amitava Chatterjee,et al.  An adaptive bacterial foraging algorithm for fuzzy entropy based image segmentation , 2011, Expert Syst. Appl..

[6]  Yongyi Yang,et al.  Computer-Aided Detection and Diagnosis of Breast Cancer With Mammography: Recent Advances , 2009, IEEE Transactions on Information Technology in Biomedicine.

[7]  H P Chan,et al.  Combined adaptive enhancement and region-growing segmentation of breast masses on digitized mammograms. , 1999, Medical physics.

[8]  Eero P. Simoncelli,et al.  Image quality assessment: from error visibility to structural similarity , 2004, IEEE Transactions on Image Processing.

[9]  Ju-Jang Lee,et al.  Stochastic Opposition-Based Learning Using a Beta Distribution in Differential Evolution , 2016, IEEE Transactions on Cybernetics.

[10]  Maryellen L. Giger,et al.  Computer-aided diagnosis of breast lesions in medical images , 2000, Comput. Sci. Eng..

[11]  Maryellen L Giger,et al.  Computer-aided diagnosis in radiology. , 2002, Academic radiology.

[12]  Jinyong Cheng,et al.  Medical Image Segmentation with Improved Gradient Vector Flow , 2012 .

[13]  Xin Zhang,et al.  Improving differential evolution by differential vector archive and hybrid repair method for global optimization , 2016, Soft Computing.

[14]  Tang Yinggan Maximum Fuzzy Entropy and Particle Swarm Optimization (PSO) Based Infrared Image Segmentation , 2007 .

[15]  Gilles Bertrand,et al.  Enhanced computation method of topological smoothing on shared memory parallel machines , 2005, Journal of Mathematical Imaging and Vision.

[16]  Dar-Ren Chen,et al.  Watershed segmentation for breast tumor in 2-D sonography. , 2004, Ultrasound in medicine & biology.

[17]  Umi Kalthum Ngah,et al.  Computer-Aided Segmentation System for Breast MRI Tumour using Modified Automatic Seeded Region Growing (BMRI-MASRG) , 2014, Journal of Digital Imaging.

[18]  Aboul Ella Hassanien,et al.  Adaptive k-means clustering algorithm for MR breast image segmentation , 2013, Neural Computing and Applications.

[19]  Naidu M.S.R.,et al.  Multilevel Image Thresholding for Image Segmentation by Optimizing Fuzzy Entropy using Firefly Algorithm , 2017 .

[20]  Hong Yan,et al.  A technique of three-level thresholding based on probability partition and fuzzy 3-partition , 2001, IEEE Trans. Fuzzy Syst..

[21]  Wei Liu,et al.  Fuzzy entropy based optimal thresholding using bat algorithm , 2015, Appl. Soft Comput..

[22]  Josef Kittler,et al.  Threshold selection based on a simple image statistic , 1985, Comput. Vis. Graph. Image Process..

[23]  Weiyu Yu,et al.  Multi-level threshold selection based on artificial bee colony algorithm and maximum entropy for image segmentation , 2012, Int. J. Comput. Appl. Technol..

[24]  Mahfuzah Mustafa,et al.  BreAst Cancer Segmentation Based On GVF snake , 2014, 2014 IEEE Conference on Biomedical Engineering and Sciences (IECBES).

[25]  Ron Kikinis,et al.  Improved watershed transform for medical image segmentation using prior information , 2004, IEEE Transactions on Medical Imaging.

[26]  Hai Jin,et al.  Object segmentation using ant colony optimization algorithm and fuzzy entropy , 2007, Pattern Recognit. Lett..

[27]  Ruhul A. Sarker,et al.  Landscape-based adaptive operator selection mechanism for differential evolution , 2017, Inf. Sci..

[28]  David Zhang,et al.  FSIM: A Feature Similarity Index for Image Quality Assessment , 2011, IEEE Transactions on Image Processing.