228 / 2017-01-14 13:45:33
Computer-aided Diagnosis System for Breast Cancer from Mammograms using RF Classifier
Breast cancer, Mammogram, Random Forest, Enhancement, Texture Feature, Feature selection, Correlation.
Draft Rejected
Rahul Ghongade / P. R. Pote Patil College of Engineering & Management, Amravati
Dinkar Wakde / P. R. Patil College of Engineering & Technology, Amravati
Breast Cancer is one of the leading causes of cancer deaths among women. The best solution for this is early detection and treatment of breast cancer. Artificial Neural Networkis intelligent and most widely used tools in breast cancer diagnosis. This main objective of this research is diagnosis of breast cancer with a machine learning method based on random forest classifier. The digital mammogram images are taken MIAS database. The dataset consists of 280 mammogram images. Preprocessing is generally needed to enhance the poor quality of image. Region of Interestis the suspicious area which is segmented, and then features are extracted by texture analysis. Feature selection technique is used for the detection of High dimensional features and would be classified according to their class each other. In preprocessing step, the image enhanced and proved by MSE and PSNR value.
GLCM is used as the texture attribute which is then used to extract the suspicious area. CFS which is correlation based technique is used to select the best possible feature amongst all extracted features. Mean, standard deviation, smoothness, angular second moment (ASM), entropy, and correlation are the best feature that guarantees the improvement of classification with less feature dimension.RF (Random Forest) is used as a classifier. The result shows that the proposed method was achieved the accuracy 97.32%, sensitivity 97.45%, specificity 98.13% and ROC 97.28%.
Important Date
  • Conference Date

    Mar 22

    2017

    to

    Mar 24

    2017

  • Feb 15 2017

    Draft paper submission deadline

  • Feb 20 2017

    Draft Paper Acceptance Notification

  • Feb 22 2017

    Final Paper Deadline

  • Mar 24 2017

    Registration deadline