Automated abnormalities detection in mammography using deep learning

被引:0
|
作者
El-Banby, Ghada M. [1 ]
Salem, Nourhan S. [1 ]
Tafweek, Eman A. [2 ]
Abd El-Azziz, Essam N. [1 ]
机构
[1] Menoufia Univ, Fac Elect Engn, Dept Ind Elect & Control Engn, Menoufia 32952, Egypt
[2] Menoufia Univ, Fac Med, Dept Clin Oncol, Menoufia, Egypt
关键词
Mammography; Breast cancer detection; Deep learning; UNet; BREAST MASS SEGMENTATION; U-NET; IMAGES;
D O I
10.1007/s40747-024-01532-x
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Breast cancer is the second most prevalent cause of cancer death and the most common malignancy among women, posing a life-threatening risk. Treatment for breast cancer can be highly effective, with a survival chance of 90% or higher, especially when the disease is detected early. This paper introduces a groundbreaking deep U-Net framework for mammography breast cancer images to perform automatic detection of abnormalities. The objective is to provide segmented images that show areas of tumors more accurately than other deep learning techniques. The proposed framework consists of three steps. The first step is image preprocessing using the Li algorithm to minimize the cross-entropy between the foreground and the background, contrast enhancement using contrast-limited adaptive histogram equalization (CLAHE), normalization, and median filtering. The second step involves data augmentation to mitigate overfitting and underfitting, and the final step is implementing a convolutional encoder-decoder network-based U-Net architecture, characterized by high precision in medical image analysis. The framework has been tested on two comprehensive public datasets, namely INbreast and CBIS-DDSM. Several metrics have been adopted for quantitative performance assessment, including the Dice score, sensitivity, Hausdorff distance, Jaccard coefficient, precision, and F1 score. Quantitative results on the INbreast dataset show an average Dice score of 85.61% and a sensitivity of 81.26%. On the CBIS-DDSM dataset, the average Dice score is 87.98%, and the sensitivity reaches 90.58%. The experimental results ensure earlier and more accurate abnormality detection. Furthermore, the success of the proposed deep learning framework in mammography shows promise for broader applications in medical imaging, potentially revolutionizing various radiological practices.
引用
收藏
页码:7279 / 7295
页数:17
相关论文
共 50 条
  • [1] Mammography Image Abnormalities Detection and Classification by Deep Learning with Extreme Learner
    Saruchi
    Singh, Jaspreet
    [J]. INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2023, 14 (03) : 943 - 949
  • [2] Detection of Abnormalities in Electrocardiogram (ECG) using Deep Learning
    Pestana, Joao
    Belo, David
    Gamboa, Hugo
    [J]. PROCEEDINGS OF THE 13TH INTERNATIONAL JOINT CONFERENCE ON BIOMEDICAL ENGINEERING SYSTEMS AND TECHNOLOGIES, VOL 4: BIOSIGNALS, 2020, : 236 - 243
  • [3] Detection of Leaf Disease Using Deep Learning A Deep Learning Based for Automated Detection.
    Agusthiyar, R.
    Devi, Shyamala J.
    Saravanabhavan, N. M.
    [J]. BIOSCIENCE BIOTECHNOLOGY RESEARCH COMMUNICATIONS, 2020, 13 (06): : 34 - 38
  • [4] Deep Learning Based Automated Chest X-ray Abnormalities Detection
    Parikh, Vraj
    Shah, Jainil
    Bhatt, Chintan
    Corchado, Juan M.
    Dac-Nhuong Le
    [J]. AMBIENT INTELLIGENCE-SOFTWARE AND APPLICATIONS-13TH INTERNATIONAL SYMPOSIUM ON AMBIENT INTELLIGENCE, 2023, 603 : 1 - 12
  • [5] Automated Patient Discomfort Detection Using Deep Learning
    Ahmed, Imran
    Khan, Iqbal
    Ahmad, Misbah
    Adnan, Awais
    Aljuaid, Hanan
    [J]. CMC-COMPUTERS MATERIALS & CONTINUA, 2022, 71 (02): : 2559 - 2577
  • [6] Towards Automated Tuberculosis detection using Deep Learning
    Kant, Sonaal
    Srivastava, Muktabh Mayank
    [J]. 2018 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (IEEE SSCI), 2018, : 1250 - 1253
  • [7] Lane detection for automated driving using Deep Learning
    Schmidt, Manuel
    Krueger, Martin
    Lienke, Christian
    Oeljeklaus, Malte
    Nattermann, Till
    Mohamed, Manoj
    Hoffmann, Frank
    Bertram, Torsten
    [J]. AT-AUTOMATISIERUNGSTECHNIK, 2019, 67 (10) : 866 - 878
  • [8] Automated crater detection on Mars using deep learning
    Lee, Christopher
    [J]. PLANETARY AND SPACE SCIENCE, 2019, 170 : 16 - 28
  • [9] Automated detection of corneal nerves using deep learning
    Qi, Hong
    Borroni, Davide
    Liu, Rongjun
    Williams, Bryan
    Beech, Mike
    Zhao, Yitian
    Ma, Baikai
    Romano, Vito
    Alam, Uazman
    Kaye, Stephen B.
    Zheng, Yalin
    [J]. INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2018, 59 (09)
  • [10] Automated multifocus pollen detection using deep learning
    Gallardo, Ramon
    Garcia-Orellana, Carlos J.
    Gonzalez-Velasco, Horacio M.
    Garcia-Manso, Antonio
    Tormo-Molina, Rafael
    Macias-Macias, Miguel
    Abengozar, Eugenio
    [J]. MULTIMEDIA TOOLS AND APPLICATIONS, 2024, 83 (28) : 72097 - 72112