Abstract
Breast cancer poses a threat to the lives of many women. Breast density is a closely related indicator of breast cancer risk. The aim of this paper is to propose a classification system for breast density, which can appropriately segment the glandular tissue from the whole breast and to achieve a better classification result. A new threshold method is applied to segment the breast glandular tissue. The gray level co-occurrence matrix (GLCM) is implemented to extract the texture features of the glandular tissue. Meanwhile, we obtain three statistical features (mean, skewness, kurtosis). In addition, the calculated breast density that is served as a new feature is added to the feature vectors. The mixed feature vectors are classified by Support Vector Machine (SVM) and Ultimate Learning Machine (ELM). Ten-fold cross-validation is used to verify the classifier performance. The system using the SVM achieves 96.19% accuracy for three density types in the MIAS database and achieves 96.35% accuracy of four density types in the DDSM database. The accuracy in the database mixed with the local database was 95.01% and there are three density types in the mixed database. The experimental results indicate that the system proposed has a better performance in breast density classification. The system proposed in this paper can be considered to help the physician to classify breast density.








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Abbreviations
- DDSM:
-
Digital database for screening mammography
- MIAS:
-
Mammographic image analysis society
- CAD:
-
Computer-aided diagnosis
- ROI:
-
Region of interest
- SWB:
-
Segmented whole breast
- SGT:
-
Segmented glandular tissue
- BI-RADS:
-
Breast imaging-reporting and data system
- GLCM:
-
Gray level co-occurrence matrix
References
Anguita D, Ridella S, Rivieccio F (2005) K-fold generalization capability assessment for support vector classifiers. in Proceedings. 2005 IEEE International Joint Conference on Neural Networks. 2005, IEEE
Anguita D et al (2009) K-Fold Cross Validation for Error Rate Estimate in Support Vector Machines. in DMIN
Anthony G, Gregg H, Tshilidzi M (2007) Image classification using SVMs: one-against-one vs one-against-all. arXiv preprint arXiv:0711.2914
Arnau OIM, Jordi FIB, Zwiggelaar R (2005) Automatic classification of breast density. Lect Notes Comput Sci 3523:431–438
Arnau O et al (2015) Breast Density Analysis Using an Automatic Density Segmentation Algorithm. J Digit Imaging 28(5):604–612
Blot L, Zwiggelaar R (2001) Background texture extraction for the classification of mammographic parenchymal patterns. Miua:145–148
Bosch A, et al (2006) Modeling and Classifying Breast Tissue Density in Mammograms. In IEEE Computer Society Conference on Computer Vision and Pattern Recognition
Bouyahia S, Mbainaibeye J, Ellouze N (2004) Computer-aided diagnosis of mammographic images. First International Symposium on Control, Communications and Signal Processing 2004
Bovis K, Singh S (2002) Classification of Mammographic Breast Density Using a Combined Classifier Paradigm. International Workshop on Digital Mammography:177–180
Breast Cancer U.K. (2017) Key facts about breast cancer. http://www.breastcanceruk.org.uk/
Breast Cancer: U.S. Breast Cancer Statistics (2017). http://www.breastcancer.org/symptoms/understand_bc/statistics. Accessed 10 Mar 2017.
Cancer Facts & Figures (2017). https://www.cancer.org/research/cancer-facts-statistics/all-cancer-facts-figures/cancer-facts-figures-2017.html
Chang CC, Lin CJ (2011) LIBSVM: A library for support vector machines. 2(3): p. 1–27.
Chen Z, Denton E, Zwiggelaar R (2011) Local Feature Based Mammographic Tissue Pattern Modelling and Breast Density Classification. In: 2011 4th international conference on biomedical engineering and informatics
Chen, D., et al. (2013) The Correlation Analysis between Breast Density and Cancer Risk Factor in Breast MRI Images. In: 2013 International Symposium on Biometrics and Security Technologies
Chen W et al (2016) Cancer statistics in China, 2015. CA Cancer J Clin 66(2):115
Clausi DA (2002) An analysis of co-occurrence texture statistics as a function of grey level quantization. Can J Remote Sens 28(1):45–62
Cortes C, Vapnik V (1995) Support-Vector Networks. Mach Learn 20(3):273–297
Elmoufidi A et al (2015) Automatically density based breast segmentation for mammograms by using dynamic K-means algorithm and Seed Based Region Growing. Instrumentation and Measurement Technology Conference
Elshinawy M et al (2011) Effect of breast density in selecting features for normal mammogram detection. In: IEEE International Symposium on Biomedical Imaging: From Nano To Macro
Engeland Sv et al (2006) Volumetric breast density estimation from full-field digital mammograms. IEEE Trans Med Imaging 25(3):273–282
Giuliano V, Giuliano C (2013) Volumetric Breast Ultrasound as a Screening Modality in Mammographically Dense Breasts. ISRN Radiology 2013:235270–235270
Gonzalez RC, Woods RE (2007) Digital Image Processing (3rd Edition). Prentice-Hall, Inc., Upper Saddle river, pp 1160–1165
Gualtieri JA, Cromp RF (1999) Support vector machines for hyperspectral remote sensing classification. in 27th AIPR Workshop: Advances in Computer-Assisted Recognition. International Society for Optics and Photonics.
Gubern-Mérida A et al (2015) Breast Segmentation and Density Estimation in Breast MRI: A Fully Automatic Framework. IEEE Journal of Biomedical and Health Informatics 19(1):349–357
Guo YN et al (2016) A new method of detecting micro-calcification clusters in mammograms using contourlet transform and non-linking simplified PCNN. Comput Methods Prog Biomed 130(C):31–45
Haralick RM, Shanmugam K, Dinstein IH, Haralick RM, Shanmuga K (1973) Dinstein ITextural features for image classification. IEEE Trans Syst Man Cybern 3(6):610–621
He W et al (2011) Mammographic image segmentation and risk classification based on mammographic parenchymal patterns and geometric moments. Biomedical Signal Processing and Control 6(3):321–329
Heath M et al (2001) The Digital Database for Screening Mammography
Hsu CW (2002) and C.J. Lin, A comparison of methods for multiclass support vector machines. IEEE Trans Neural Netw 13(4):1026
Huang CL, Wang CJ (2006) A GA-based feature selection and parameters optimizationfor support vector machines. Expert Syst Appl 31(2):231–240
Huang GB, Zhu QY, Siew CK (2006) Extreme learning machine: Theory and applications. Neurocomputing 70(1–3):489–501
Kohavi RA (1995) Study of Cross-Validation and Bootstrap for Accuracy Estimation and Model Selection. In: International Joint Conference on Artificial Intelligence
Kumar I, Bhadauria HS, Virmani J (2015) Wavelet Packet Texture Descriptors Based Four-class BIRADS Breast Tissue Density Classification. Procedia Computer Science 70:76–84
Kumar I, Virmani J, Bhadauria HS (2015) A review of breast density classification methods. In: International Conference on Computing for Sustainable Global Development
Kumar I et al (2017) A classification framework for prediction of breast density using an ensemble of neural network classifiers. Biocybernetics & Biomedical Engineering 37(1):217–228
Liberman L, Menell JH (2002) Breast imaging reporting and data system (BI-RADS). Radiol Clin N Am 40(3):409–430
Lin SW et al (2008) Parameter determination of support vector machine and feature selection using simulated annealing approach. Appl Soft Comput 8(4):1505–1512
Liu L, Wang J, He K (2010) Breast density classification using histogram moments of multiple resolution mammograms. International Conference on Biomedical Engineering and Informatics
Machida Y et al (2015) Breast density: the trend in breast cancer screening. Breast Cancer 22(3):253–261
Malkov S et al (2016) Mammographic texture and risk of breast cancer by tumor type and estrogen receptor status. Breast Cancer Research : BCR 18(1):122
Manduca A et al (2009) Texture features from mammographic images and risk of breast cancer. Cancer epidemiology, biomarkers & prevention: a publication of the American Association for Cancer Research. American Society of Preventive Oncology 18(3):837–845
Marchette DJ, Lorey RA, Priebe CE (1997) An analysis of local feature extraction in digital mammography. Pattern Recogn 30(9):1547–1554
Martin JE, Moskowitz M (1979) and Milbrath, Breast cancer missed by mammography. Am J Roentgenol 132(5):737–739
Muhimmah I (2006) Mammographic Density Classification Using Multi Resolution Histogram Information
Mustra M, Grgic M (2013) Dense tissue segmentation in digitized mammograms. in Elmar, 2013 International Symposium
Mustra M, Grgic M, Delac K (2010) Feature selection for automatic breast density classification. in ELMAR, 2010 Proceedings
Nagata C et al (2005) Mammographic density and the risk of breast cancer in Japanese women. Br J Cancer 92:2102
Oliveira JEED, Araújo ADA, Deserno TM (2011) Content-based image retrieval applied to BI-RADS tissue classification in screening mammography. World Journal of Radiology 3(1):24
Oliver A et al (2008) A novel breast tissue density classification methodology. IEEE Transactions on Information Technology in Biomedicine A Publication of the IEEE Engineering in Medicine & Biology Society 12(1):55–65
Otsu N (1979) A Threshold Selection Method From Grey Level Histograms. IEEE Transactions on Systems, Man, and Cybernetics 9:62–66
Petroudi S, Kadir T, Brady M (2003) Automatic classification of mammographic parenchymal patterns: a statistical approach. In Engineering in Medicine and Biology Society, 2003. Proceedings of the International Conference of the IEEE
Petroudi S et al (2013) Investigation of AM-FM methods for mammographic breast density classification. IEEE International Conference on Bioinformatics and Bioengineering
Pham DL, Xu C, Prince JL (2000) Current Methods in Medical Image Segmentation. Annu Rev Biomed Eng 2(1):315–337
Rampun A, et al (2017) Breast Density Classification Using Multiresolution Local Quinary Patterns in Mammograms
Remes V Haindl M (2015) Classification of breast density in X-ray mammography. International Workshop on Computational Intelligence for Multimedia Understanding
Schölkopf B, Smola A (2001) Learning with kernels : support vector machines, regularization, optimization, and beyond. MIT Press, Cambridge, pp 781–781
Siegel RL, Miller KD, Jemal A (2018) Cancer statistics, 2018. CA Cancer J Clin 68(1):7–30
Sivaramakrishna R et al (2001) Automatic segmentation of mammographic density. Acad Radiol 8(3):250
Soh L-K, Tsatsoulis C (1999) Texture analysis of SAR sea ice imagery using gray level co-occurrence matrices. IEEE Trans Geosci Remote Sens 37(2):780–795
Sohn G et al (2014) Reliability of the percent density in digital mammography with a semi-automated thresholding method. J Breast Cancer 17(2):174–179
Strand F et al (2016) Novel mammographic image features differentiate between interval and screen-detected breast cancer: a case-case study. Breast Cancer Res 18(1):100
Subashini TS, Ramalingam V, Palanivel S (2010) Automated assessment of breast tissue density in digital mammograms. Computer Vision & Image Understanding 114(1):33–43
Suckling J, Parker J, Dance DR (1994) Themammographic image analysis society digital mammogram database. in Int Work on Dig Mammography
Tzikopoulos SD et al (2011) A fully automated scheme for mammographic segmentation and classification based on breast density and asymmetry. Comput Methods Prog Biomed 102(1):47–63
Van Engeland S et al (2006) Volumetric breast density estimation from full-field digital mammograms. IEEE Trans Med Imaging 25(3):273
Wang J et al (2017) Automatic Estimation of Volumetric Breast Density Using Artificial Neural Network-Based Calibration of Full-Field Digital Mammography: Feasibility on Japanese Women With and Without Breast Cancer. J Digit Imaging 30(2):215–227
Wei C, Gwo C, Li Y (2015) A Framework of Breast Density Estimation System for Breast Magnetic Resonance Images. In 2015 2nd International Conference on Information Science and Control Engineering
Wei CH, Gwo CY, Li Y (2015) A Framework of Breast Density Estimation System for Breast Magnetic Resonance Images. International Conference on Information Science and Control Engineering
Wolfe JN (1976) Risk for breast cancer development determined by mammographic parenchymal pattern. Cancer 37(5):2486
Yaffe MJ (2008) Mammographic density. Measurement of mammographic density. Breast Cancer Research Bcr 10(3):209
Zhengyou L, Xiaoshan G (2015) A segmentation method for mammogram x-ray image based on image enhancement with wavelet fusion
Acknowledgements
This work is jointly supported by the Natural Science Foundation of Gansu Province (No.18JR3RA288) and the Fundamental Research Funds for the Central Universities of China (No.lzujbky-2017-it72 and No.lzujbky-2018-it61).
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Gong, X., Yang, Z., Wang, D. et al. Breast density analysis based on glandular tissue segmentation and mixed feature extraction. Multimed Tools Appl 78, 31185–31214 (2019). https://doi.org/10.1007/s11042-019-07917-2
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DOI: https://doi.org/10.1007/s11042-019-07917-2