Automated Classification of Malignant and Benign Breast Cancer Lesions Using Neural Networks on Digitized Mammograms

We propose a novel neural network approach for the classification of abnormal mammographic images into benign or malignant based on their texture representations. The proposed framework has the capability of mapping high dimensional feature space into a lower-dimension, in a supervised way. The main contribution of the proposed classifier is to introduce a new neuron structure for map representation and adopt a supervised learning technique for feature classification. This is achieved by making the weight updating procedure dependent on the class reliability of the neuron. We showed high accuracy (95.2%) for our proposed approach in the classification of abnormal real mammographic images when compared to other related methods.

[1]  Jie Xu,et al.  The practical implementation of artificial intelligence technologies in medicine , 2019, Nature Medicine.

[2]  Robert M. Haralick,et al.  Textural Features for Image Classification , 1973, IEEE Trans. Syst. Man Cybern..

[3]  Yihong Gong,et al.  Deep Self-Organizing Map for visual classification , 2015, 2015 International Joint Conference on Neural Networks (IJCNN).

[4]  Teuvo Kohonen,et al.  Essentials of the self-organizing map , 2013, Neural Networks.

[5]  Bin Li,et al.  Benign and malignant mammographic image classification based on Convolutional Neural Networks , 2018, ICMLC.

[6]  Oscar Montiel,et al.  Quantum inspired algorithm for microcalcification detection in mammograms , 2019, Inf. Sci..

[7]  Abhishek Midya,et al.  Neighborhood Structural Similarity Mapping for the Classification of Masses in Mammograms , 2018, IEEE Journal of Biomedical and Health Informatics.

[8]  M.H. Mohamed,et al.  An efficient clustering based texture feature extraction for medical image , 2008, 2008 11th International Conference on Computer and Information Technology.

[9]  Tamer Ölmez,et al.  Heart sound classification using wavelet transform and incremental self-organizing map , 2008, Digit. Signal Process..

[10]  Teuvo Kohonen,et al.  The self-organizing map , 1990, Neurocomputing.

[11]  Jayasree Chakraborty,et al.  Edge Weighted Local Texture Features for the Categorization of Mammographic Masses , 2017, Journal of Medical and Biological Engineering.

[12]  Johann Gasteiger,et al.  Classification of Mixtures of Chinese Herbal Medicines Based on a Self‐organizing Map (SOM) , 2016, Molecular informatics.