False Positive Reduction by an Annular Model as a Set of Few Features for Microcalcification Detection to Assist Early Diagnosis of Breast Cancer

AbstractEarly automatic breast cancer detection from mammograms is based on the extraction of lesions, known asmicrocalcifications (MCs). This paper proposes a new and simple system formicrocalcification detection to assist in early breast cancer detection. This work uses the two most recognized public mammogram databases, MIAS and DDSM. We are introducing a MC detection method based on (1) Beucher gradient for detection ofregions of interest (ROIs), (2) an annulus model for extraction of few and effective features from candidates to MCs, and (3) one classification stage with two different classifiers,k Nearest Neighbor (KNN) andSupport Vector Machine (SVM). For dense mammograms in the MIAS database, the performance metrics achieved aresensitivity of 0.9835,false alarm rate of 0.0083,accuracy of 0.9835, andarea under the ROC curve of 0.9980 with a KNN classifier. The proposed MC detection method, based on a KNN classifier, achieves, asensitivity,false positive rate,accuracy andarea under the ROC curve of 0.9813, 0.0224, 0.9795 and 0.9974 for the MIAS database; and 0.9035, 0.0439, 0.9298 and 0.9759 for the DDSM database. By slightly reducing the true positive rate the method achievesthree instances with false positive rate of 0: 2 on fatty mammograms with KNN and SVM, and one on dense with SVM. The proposed method gives better results than those from state of the art literature, when the mammograms are classified infatty, fatty-glandular, anddense.
Source: Journal of Medical Systems - Category: Information Technology Source Type: research