Improved Threshold Based and Trainable Fully Automated Segmentation for Breast Cancer Boundary and Pectoral Muscle in Mammogram Images
暂无分享,去创建一个
Haza Nuzly Abdul Hamed | Diyar Qader Zeebaree | Adnan Mohsin Abdulazeez | Dilovan Asaad Zebari | Haza Nuzly Abdull Hamed | Habibollah Haron | A. Abdulazeez | H. Haron | D. A. Zebari | D. Zeebaree | H. N. A. Hamed
[1] Reyer Zwiggelaar,et al. A combined method for automatic identification of the breast boundary in mammograms , 2012, 2012 5th International Conference on BioMedical Engineering and Informatics.
[2] Jaime S. Cardoso,et al. INbreast: toward a full-field digital mammographic database. , 2012, Academic radiology.
[3] Martin Kom,et al. Automated detection of masses in mammograms by local adaptive thresholding , 2007, Comput. Biol. Medicine.
[4] Kamila Czaplicka,et al. Automatic Breast-Line and Pectoral Muscle Segmentation , 2011 .
[5] Stanley S. Ipson,et al. A fully automatic nerve segmentation and morphometric parameter quantification system for early diagnosis of diabetic neuropathy in corneal images , 2016, Comput. Methods Programs Biomed..
[6] S. Bashir,et al. Identifying the reasons for delayed presentation of Pakistani breast cancer patients at a tertiary care hospital , 2019, Cancer management and research.
[7] N Karssemeijer,et al. Automated classification of parenchymal patterns in mammograms. , 1998, Physics in medicine and biology.
[8] Berkman Sahiner,et al. Computerized image analysis: estimation of breast density on mammograms , 2000, Medical Imaging: Image Processing.
[9] Habibollah Haron,et al. Trainable Model Based on New Uniform LBP Feature to Identify the Risk of the Breast Cancer , 2019, 2019 International Conference on Advanced Science and Engineering (ICOASE).
[10] Belal Al-Khateeb,et al. Neural network and multi-fractal dimension features for breast cancer classification from ultrasound images , 2018, Comput. Electr. Eng..
[11] Habibollah Haron,et al. Machine learning and Region Growing for Breast Cancer Segmentation , 2019, 2019 International Conference on Advanced Science and Engineering (ICOASE).
[12] Basit Raza,et al. Enhancing breast pectoral muscle segmentation performance by using skip connections in fully convolutional network , 2020, Int. J. Imaging Syst. Technol..
[13] Shen-Chuan Tai,et al. An Automatic Mass Detection System in Mammograms Based on Complex Texture Features , 2014, IEEE Journal of Biomedical and Health Informatics.
[14] Daniel C. Moura,et al. BCDR : A BREAST CANCER DIGITAL REPOSITORY , 2012 .
[15] Michael A. Wirth,et al. Segmentation of the breast region in mammograms using active contours , 2003, Visual Communications and Image Processing.
[16] Marek Kowal,et al. Automatic Breast Cancer Diagnosis Based on K-Means Clustering and Adaptive Thresholding Hybrid Segmentation , 2011, IP&C.
[17] E E Sterns,et al. Relation between clinical and mammographic diagnosis of breast problems and the cancer/biopsy rate. , 1996, Canadian journal of surgery. Journal canadien de chirurgie.
[18] J. Sutha,et al. Pectoral Muscle Segmentation in Mammograms , 2020 .
[19] Rangaraj M. Rangayyan,et al. Review of recent advances in segmentation of the breast boundary and the pectoral muscle in mammograms , 2015, Medical & Biological Engineering & Computing.
[20] Chandra Mohan Bhuma,et al. The Analysis of Digital Mammograms Using HOG and GLCM Features , 2018, 2018 9th International Conference on Computing, Communication and Networking Technologies (ICCCNT).
[21] N. Suthanthira Vanitha,et al. The Pre-Processing Techniques for Breast Cancer Detection in Mammography Images , 2013 .
[22] Hui Wang,et al. A hierarchical pipeline for breast boundary segmentation and calcification detection in mammograms , 2018, Comput. Biol. Medicine.
[23] Tae-Seong Kim,et al. Evaluation of deep learning detection and classification towards computer-aided diagnosis of breast lesions in digital X-ray mammograms , 2020, Comput. Methods Programs Biomed..
[24] Habibollah Haron,et al. Gene Selection and Classification of Microarray Data Using Convolutional Neural Network , 2018, 2018 International Conference on Advanced Science and Engineering (ICOASE).
[25] Max A. Viergever,et al. A discrete dynamic contour model , 1995, IEEE Trans. Medical Imaging.
[26] Mislav Grgic,et al. Robust automatic breast and pectoral muscle segmentation from scanned mammograms , 2013, Signal Process..
[27] Rangaraj M. Rangayyan,et al. Estimation of the breast skin-line in mammograms using multidirectional Gabor filters , 2013, Comput. Biol. Medicine.
[28] V. R. Thool,et al. Intensity Based Automatic Boundary Identification of Pectoral Muscle in Mammograms , 2016 .
[29] C.J.S. deSilva,et al. Skin-air interface extraction from mammograms using an automatic local , 2000 .
[30] J. Samuel Manoharan,et al. A Survey on the Preprocessing Techniques of Mammogram for the Detection of Breast Cancer , 2011 .
[31] S. Kanimozhi Suguna,et al. Application of Nature—Inspired Algorithms in Medical Image Processing , 2018, Advances in Nature-Inspired Computing and Applications.
[32] Kesari Verma,et al. Ultrasound image segmentation using a novel multi-scale Gaussian kernel fuzzy clustering and multi-scale vector field convolution , 2019, Expert Syst. Appl..
[33] Idil Isikli Esener,et al. A novel multistage system for the detection and removal of pectoral muscles in mammograms , 2018, Turkish J. Electr. Eng. Comput. Sci..
[34] Mubarak Shah,et al. A Fast algorithm for active contours and curvature estimation , 1992, CVGIP Image Underst..
[35] Arnau Oliver,et al. Breast Segmentation with Pectoral Muscle Suppression on Digital Mammograms , 2005, IbPRIA.
[36] Xavier Lladó,et al. One-shot segmentation of breast, pectoral muscle, and background in digitised mammograms , 2014, 2014 IEEE International Conference on Image Processing (ICIP).
[37] Niranjan Khandelwal,et al. Automatic Detection of Pectoral Muscle Using Average Gradient and Shape Based Feature , 2012, Journal of Digital Imaging.
[38] G. Toz,et al. A Single Sided Edge Marking Method for Detecting Pectoral Muscle in Digital Mammograms , 2018 .
[39] Reyer Zwiggelaar,et al. Computer-aided detection of prostate cancer in T2-weighted MRI within the peripheral zone , 2016, Physics in medicine and biology.
[40] Rajeev Srivastava,et al. Automated and effective content-based image retrieval for digital mammography. , 2018, Journal of X-ray science and technology.
[41] Jitendra Virmani,et al. Classification of Breast Tissue Density Patterns Using SVM-Based Hierarchical Classifier , 2019 .
[42] R. J. Ferrari,et al. Identification of the breast boundary in mammograms using active contour models , 2004, Medical and Biological Engineering and Computing.
[43] Philip J. Morrow,et al. Fully automated breast boundary and pectoral muscle segmentation in mammograms , 2017, Artif. Intell. Medicine.
[44] Philip J. Morrow,et al. Breast pectoral muscle segmentation in mammograms using a modified holistically-nested edge detection network , 2019, Medical Image Anal..
[45] Ian W. Ricketts,et al. The Mammographic Image Analysis Society digital mammogram database , 1994 .
[46] Samir Kumar Bandyopadhyay,et al. Technique for preprocessing of digital mammogram , 2012, Comput. Methods Programs Biomed..
[47] Rajeev Srivastava,et al. Automated digital mammogram segmentation using Dispersed Region Growing and Sliding Window Algorithm , 2017, 2017 2nd International Conference on Image, Vision and Computing (ICIVC).
[48] Robert Marti,et al. Breast Skin-Line Segmentation Using Contour Growing , 2007, IbPRIA.
[49] Karim Kalti,et al. Feature subset selection for classification of malignant and benign breast masses in digital mammography , 2018, Pattern Analysis and Applications.
[50] K. Thangavel,et al. Automatic detection of the breast border and nipple position on digital mammograms using genetic algorithm for asymmetry approach to detection of microcalcifications , 2007, Comput. Methods Programs Biomed..
[51] B. Thirumala Rao,et al. Novel Approach to Segment the Pectoral Muscle in the Mammograms , 2019 .
[52] Imane Daoudi,et al. A New Mammogram Preprocessing Method for Computer-Aided Diagnosis Systems , 2017, 2017 IEEE/ACS 14th International Conference on Computer Systems and Applications (AICCSA).