Segmentation and Classification of Breast Masses From the Whole Mammography Images Using Transfer Learning and BI-RADS Characteristics

被引:0
|
作者
Oudjer, Hayette [1 ]
Cherfa, Assia [1 ]
Cherfa, Yazid [1 ]
Belkhamsa, Noureddine [1 ]
机构
[1] Univ Blida, Dept Elect Engn, Blida, Algeria
关键词
breast cancer; classification; fine-tuning; mammographic images; segmentation; superpixels; SYSTEM;
D O I
10.1002/ima.23216
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Breast cancer is the most prevalent cancer among women worldwide, highlighting the critical need for its accurate detection and early diagnosis. In this context, the segmentation of breast masses (the most common symptom of breast cancer) plays a crucial role in analyzing mammographic images. In addition, in image processing, the analysis of mammographic images is very common, but certain combinations of mathematical tools have never been exploited. We propose a computer-aided diagnosis (CAD) system designed with different and new algorithm combinations for the segmentation and classification of breast masses based on the Breast Imaging-Reporting and Data System (BI-RADS) lexicon. The image is initially divided into superpixels using the simple linear iterative clustering (SLIC) algorithm. Fine-tuning of ResNet50, EfficientNetB2, MobileNetV2, and InceptionV3 models is employed to extract features from superpixels. The classification of each superpixel as background or breast mass is performed by feeding the extracted features into a support vector machine (SVM) classifier, resulting in an accurate primary segmentation for breast masses, refined by the GrabCut algorithm with automated initialization. Finally, we extract contour, texture, and shape parameters from the segmented regions for the classification of masses into BI-Rads 2, 3, 4, and 5 using the gradient boost (GB) classifier while also examining the impact of the surrounding tissue. The proposed method was evaluated on the INBreast database, achieving a Dice score of 87.65% and a sensitivity of 87.96% for segmentation. For classification, we obtained a sensitivity of 88.66%, a precision of 90.51%, and an area under the curve (AUC) of 97.8%. The CAD system demonstrates high accuracy in both the segmentation and classification of breast masses, providing a reliable tool for aiding breast cancer diagnosis using the BI-Rads lexicon. The study also showed that the surrounding tissue has an impact on classification, leading to the importance of choosing the right size of ROIs.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Performance of machine learning software to classify breast lesions using BI-RADS radiomic features on ultrasound images
    Fleury, Eduardo
    Marcomini, Karem
    EUROPEAN RADIOLOGY EXPERIMENTAL, 2019, 3 (01) : 34
  • [32] Classification of mammographic breast density and its correlation with BI-RADS in elder women using machine learning approach
    Lee, Zhen Yu
    Goh, Yi Ling Eileen
    Lai, Christopher
    JOURNAL OF MEDICAL IMAGING AND RADIATION SCIENCES, 2022, 53 (01) : 28 - 34
  • [33] Mass lesions classification in digital mammography using optimal subset of BI-RADS and gray level features
    Kim, Saejoon
    Yoon, Sejong
    2007 6TH INTERNATIONAL SPECIAL TOPIC CONFERENCE ON INFORMATION TECHNOLOGY APPLICATIONS IN BIOMEDICINE, 2007, : 33 - 36
  • [34] Automated BI-RADS classification of lesions using pyramid triple deep feature generator technique on breast ultrasound images
    Kaplan, Ela
    Chan, Wai Yee
    Dogan, Sengul
    Barua, Prabal D.
    Bulut, Haci Taner
    Tuncer, Turker
    Cizik, Mert
    Tan, Ru-San
    Acharya, U. Rajendra
    MEDICAL ENGINEERING & PHYSICS, 2022, 108
  • [35] BI-RADS Density Classification From Areometric and Volumetric Automatic Breast Density Measurements
    Osteras, Bjorn Helge
    Martinsen, Anne Catrine T.
    Brandal, Sid Helene B.
    Chaudhry, Khalida Nasreen
    Eben, Ellen
    Haakenaasen, Unni
    Falk, Ragnhild Sorum
    Skaane, Per
    ACADEMIC RADIOLOGY, 2016, 23 (04) : 468 - 478
  • [36] Incorporating Tumor Edge Information for Fine-Grained BI-RADS Classification of Breast Ultrasound Images
    Xu, Meng
    Huang, Jianhua
    Huang, Kuan
    Liu, Feifei
    IEEE ACCESS, 2024, 12 : 38732 - 38744
  • [37] Extraction of BI-RADS findings from breast ultrasound reports in Chinese using deep learning approaches
    Miao, Shumei
    Xu, Tingyu
    Wu, Yonghui
    Xie, Hui
    Wang, Jingqi
    Jing, Shenqi
    Zhang, Yaoyun
    Zhang, Xiaoliang
    Yang, Yinshuang
    Zhang, Xin
    Shan, Tao
    Wang, Li
    Xu, Hua
    Wang, Shui
    Liu, Yun
    INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2018, 119 : 17 - 21
  • [38] Analysis of the accuracy of ultrasound elastography and BI-RADS classification of breast masses located within the superficial fat layer of the glands
    Xue, Nianyu
    Zhang, Shengmin
    GLAND SURGERY, 2022, : 1722 - 1729
  • [39] Comparison of Computerised Assessment of Breast Density with Subjective BI-RADS Classification and Tabar's Pattern from Two-View CR Mammography
    Jamal, N.
    Ng, K-H
    Ranganathan, S.
    Tan, L. K.
    WORLD CONGRESS ON MEDICAL PHYSICS AND BIOMEDICAL ENGINEERING 2006, VOL 14, PTS 1-6, 2007, 14 : 1405 - +
  • [40] Comparison of synthetic mammography, reconstructed from digital breast tomosynthesis, and digital mammography: evaluation of lesion conspicuity and BI-RADS assessment categories
    Giovanna Mariscotti
    Manuela Durando
    Nehmat Houssami
    Mirella Fasciano
    Alberto Tagliafico
    Davide Bosco
    Cristina Casella
    Camilla Bogetti
    Laura Bergamasco
    Paolo Fonio
    Giovanni Gandini
    Breast Cancer Research and Treatment, 2017, 166 : 765 - 773