Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
10.1145/3195106.3195163acmotherconferencesArticle/Chapter ViewAbstractPublication PagesicmlcConference Proceedingsconference-collections
research-article

Benign and malignant mammographic image classification based on Convolutional Neural Networks

Published: 26 February 2018 Publication History
  • Get Citation Alerts
  • Abstract

    Computerized breast cancer diagnosis system has played an import role in early cancer diagnosis. For this purpose, we apply deep learning by using convolutional neural networks (CNN) to classify abnormalities, benign or malignant, in mammographic images based on the mini Mammographic Image Analysis Society (mini-MIAS) database. Accuracy, sensitivity, and specific values are observed to evaluate the performance of the CNN. To improve the performance, we utilize image-preprocessing methods containing cropping, global contrast normalization, augmentation, local histogram equalization, and balancing preprocessing. We built four CNN models to study the impact of depth and hidden layer structure on model performance. The CNN-4d model performs best among four proposed CNN models consisting of four convolution layers with a dropout of 0.7. The CNN-4d model achieved a balance of high sensitivity (90.63%) and high specificity (87.67%), and an accuracy of 89.05%. The result of this study indicates that CNNs have promising potential in the field of intelligent medical image diagnosis.

    References

    [1]
    Jiao, Z., Gao, X., Wang, Y., & Li, J. 2016. A deep feature based framework for breast masses classification. Neurocomputing, 197: 221--231.
    [2]
    K.Doi, 2007. Computer aided diagnosis in medical imaging: historical review, current status and future potential, Comput.Med.ImagingGraph.31(4), 198--211.
    [3]
    Hepsag, P. U., Ozel, S. A., & Yazici, A. 2017. Using deep learning for mammography classification.
    [4]
    Gallego-Posada, J. D., Montoya-Zapata, D. A., & Quintero-Montoya, O. L. 2016. Detection and diagnosis of breast tumors using deep Convolutional Neural Networks
    [5]
    M. M. Jadoon, Q. Zhang, I. U. Haq, S. Butt, and A. Jadoon, 2017. Three-Class mammogram classification based on descriptive CNN features, Hindawi Biomed Research International, 2017.
    [6]
    Suckling, J. 1996. The mammographic image analysis society digital mammogram database.
    [7]
    Arevalo, J., Gonzalez, F. A., Ramos-Pollan, R., Oliveira, J. L., & Guevara Lopez, M. A. 2016. Representation learning for mammography mass lesion classification with convolutional neural networks. Comput Methods Programs Biomed, 127: 248--257.
    [8]
    Kooi, T., Litjens, G., van Ginneken, B., Gubern-Merida, A., Sanchez, C. I., Mann, R., den Heeten, A., & Karssemeijer, N. 2017. Large scale deep learning for computer aided detection of mammographic lesions. Med Image Anal, 35: 303--312.
    [9]
    Simard, P.Y., Steinkraus, D., Platt, J.C., 2003. Best practices for convolutional neural networks applied to visual document analysis. Document Analysis and Recognition, pp. 958--963.
    [10]
    K. Jarrett, K. Kavukcuoglu, M. Ranzato, Y. LeCun, 2009, What is the best multi-stage architecture for object recognition. IEEE 12th International Conference in Computer Vision, pp. 2146--2153,
    [11]
    Krizhevsky, A., Sutskever, I., and Hinton, G. E., 2012. ImageNet classification with deep convolutional neural networks. NIPS, pp. 1106--1114.
    [12]
    Srivastava, N., Hinton, G., Krizhevsky, A., Sutskever, I., Salakhutdinov, R., 2014. Dropout: A simple way to prevent neural networks from overfitting. J. Mach. Learn. Res. 15, 1929--1958.
    [13]
    Ciresan, D. C., Meier, U., Masci, J., Gambardella, L. M., and Schmidhuber, J. Flexible, 2011. High performance convolutionnal neural networks for image classification. In IJCAI, pp. 1237--1242.
    [14]
    Dauphin, Y. N., de Vries, H., Chung, J., Bengio, Y., 2015. Rmsprop and equilibrated adaptive learning rates for non-convex optimization. arXiv:150204390.
    [15]
    Sutskever, I., Martens, J., Dahl, G., Hinton, G., 2013. On the importance of initialization and momentum in deep learning. International Conference on Machine Learning, pp. 1139--1147.

    Cited By

    View all

    Index Terms

    1. Benign and malignant mammographic image classification based on Convolutional Neural Networks

      Recommendations

      Comments

      Information & Contributors

      Information

      Published In

      cover image ACM Other conferences
      ICMLC '18: Proceedings of the 2018 10th International Conference on Machine Learning and Computing
      February 2018
      411 pages
      ISBN:9781450363532
      DOI:10.1145/3195106
      Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

      In-Cooperation

      • Southwest Jiaotong University

      Publisher

      Association for Computing Machinery

      New York, NY, United States

      Publication History

      Published: 26 February 2018

      Permissions

      Request permissions for this article.

      Check for updates

      Author Tags

      1. Benign or malignant
      2. Breast abnormalities
      3. Classification
      4. Convolutional Neural Networks
      5. Mammographic image

      Qualifiers

      • Research-article
      • Research
      • Refereed limited

      Conference

      ICMLC 2018

      Contributors

      Other Metrics

      Bibliometrics & Citations

      Bibliometrics

      Article Metrics

      • Downloads (Last 12 months)14
      • Downloads (Last 6 weeks)3
      Reflects downloads up to 12 Aug 2024

      Other Metrics

      Citations

      Cited By

      View all
      • (2024)Attention-Based Ensemble Network for Effective Breast Cancer Classification over BenchmarksTechnologies10.3390/technologies1202001612:2(16)Online publication date: 23-Jan-2024
      • (2024)Mammography with deep learning for breast cancer detectionFrontiers in Oncology10.3389/fonc.2024.128192214Online publication date: 12-Feb-2024
      • (2024)Advances of AI in image-based computer-aided diagnosis: A reviewArray10.1016/j.array.2024.10035723(100357)Online publication date: Sep-2024
      • (2024)Two-level content-based mammogram retrieval using the ACR BI-RADS assessment code and learning-driven distance selectionThe Journal of Supercomputing10.1007/s11227-024-06090-080:11(15690-15724)Online publication date: 6-Apr-2024
      • (2024)CbcErDL: Classification of breast cancer from mammograms using enhance image reduction and deep learning frameworkMultimedia Tools and Applications10.1007/s11042-024-19616-8Online publication date: 21-Jun-2024
      • (2023)Adversarial Artificial Intelligence in Insurance: From an Example to Some Potential RemediesRisks10.3390/risks1101002011:1(20)Online publication date: 11-Jan-2023
      • (2023)Breast Cancer Detection in Mammography Images: A CNN-Based Approach with Feature SelectionInformation10.3390/info1407041014:7(410)Online publication date: 16-Jul-2023
      • (2023)Automated breast cancer detection in mammography using ensemble classifier and feature weighting algorithmsExpert Systems with Applications: An International Journal10.1016/j.eswa.2023.120282227:COnline publication date: 1-Oct-2023
      • (2023)A systematic review of machine and deep learning techniques for the identification and classification of breast cancer through medical image modalitiesMultimedia Tools and Applications10.1007/s11042-023-16634-w83:12(35849-35942)Online publication date: 28-Sep-2023
      • (2022)Automatic classification and detection of abnormalities in mammograms using deep learning16th International Workshop on Breast Imaging (IWBI2022)10.1117/12.2624216(17)Online publication date: 13-Jul-2022
      • Show More Cited By

      View Options

      Get Access

      Login options

      View options

      PDF

      View or Download as a PDF file.

      PDF

      eReader

      View online with eReader.

      eReader

      Media

      Figures

      Other

      Tables

      Share

      Share

      Share this Publication link

      Share on social media