Mammograms-Based Breast Cancer Detection Using Ai Image Processing Techniques
Main Article Content
In women all around the world, breast cancer is the most frequent kind of cancer. It begins with the uncontrolled growth of breast cells. X-rays of the breast may reveal tumors or masses caused by these cells. Differentiating between benign and malignant (cancer-causing) tumors is the primary difficulty in detecting tumors. Using image processing methods such as image pre-processing, feature extraction and selection, and image classification, this effort aims to find early-stage tumors that are undetectable by humans.
Nadeem Tariq “Breast Cancer Detection using Artificial Neural Networks”, J MolBiomark Diagn, 9:1, 2017.
Chaitanya Varma and Omkar Sawant, “An Alternative Approach to Detect Breast Cancer using Digital Image Processing Techniques”, International Conference on Communication and Signal Processing, April 3-5, 2018.
Ayşe Aydın Yurdusev1, Canan Oral, MahmutHekim, “The Investigation of the Effects of Different Filters on Mammogram Images”, MAKÜ-Uyg. Bil. Derg., 2(1), 55-68- 2018.
World Health Organization (WHO), “Cancer,” 2018.
Abdollah Jafari Chashmi and Mehdi Chehelamirani “Using Adaptive Median Filter for Noise Removal from Image to Diagnose Breast Cancer”, Merit Research Journal of Engineering, Pure and Applied Sciences Vol. 5(1) pp. 014-018, August-2019.
German F. Torres, Antti Sassi, OtsoArponen, Kirsi Holli-Helenius, Anna-Leena La¨aperi Irina Rinta-Kiikka, Joni Kam¨ ar¨ainen ¨, Said Pertuz “Morphological Area Gradient: System-independent Dense Tissue Segmentation in Mammography Images” Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society on 07 June 2019.
Kumari, L., and B. Jagadesh. “A Robust Feature Extraction Technique for Breast Cancer Detection Using Digital Mammograms Based on Advanced GLCM Approach - EUDL.” A Robust Feature Extraction Technique for Breast Cancer Detection Using Digital Mammograms Based on Advanced GLCM Approach - EUDL, 11 Jan. 2022.
Oza, Parita, et al. “A Bottom-Up Review of Image Analysis Methods for Suspicious Region Detection in Mammograms.” MDPI, 18 Sept. 2021.
Larsen, Marthe, et al. “Possible Strategies for Use of Artificial Intelligence in Screen-reading of Mammograms, Based on Retrospective Data From 122,969 Screening Examinations - European Radiology.” SpringerLink, 15 June 2022.
Ansar, Wajeeha, and Basit Raza. “Breast Cancer Segmentation in Mammogram Using Artificial Intelligence and Image Processing: A Systematic Review.
Hussein Saeed, Enas Mohammed, et al. “Classification of Mammograms Based on Features Extraction Techniques Using Support Vector Machine | Hussein Saeed | Computer Science and Information Technologies.” Classification of Mammograms Based on Features Extraction Techniques Using Support Vector Machine | Hussein Saeed | Computer Science and Information Technologies, 1 Jan. 2021.
Shweta Saraswat, Bright Keswani and Vrishit Sarasawat “ The role of Artificial Intelligence In Healthcare: Applications and Challenges after COVID-19” IJTRS Apr. 2023
Tomic, Hanna, et al. “Development and Evaluation of a Method for Tumor Growth Simulation in Virtual Clinical Trials of Breast Cancer Screening.” SPIE Digital Library, 6 June 2022.
Almalki, Yassir Edrees, et al. “Computerized Analysis of Mammogram Images for Early Detection of Breast Cancer.” MDPI, 25 Apr. 2022.
Mendes, João, et al. “AI In Breast Cancer Imaging: A Survey of Different Applications.” MDPI, 26 Aug. 2022.
Lamba, M., Ananthi, S., Chaudhary, H., Singh, K. (2022). A Review of Factors Affecting the Sensitivity of Piezoresistive Microcantilever Based MEMS Force Sensor. In: Tripathi, A., Soni, A., Shrivastava, A., Swarnkar, A., Sahariya, J. (eds) Intelligent Computing Techniques for Smart Energy Systems. Lecture Notes in Electrical Engineering, vol 862. Springer, Singapore.
Nag, M., Lamba, M., Singh, K., Kumar, A. (2020). Modelling and Simulation of MEMS Graphene Pressure Sensor for HealthCare Devices. In: Yadav, S., Singh, D., Arora, P., Kumar, H. (eds) Proceedings of International Conference in Mechanical and Energy Technology. Smart Innovation, Systems and Technologies, vol 174. Springer, Singapore.