An Implemented Approach for Potentially Breast Cancer Detection Using Extracted Features and Artificial Neural Networks
Heba Al-Hiary ; Basim Alhadidi ; Malik Braik
Computing and Informatics, Tome 28 (2012) no. 1, / Harvested from Computing and Informatics
Breast cancer (B-cancer) detection is still complex and challenging problem, and in that case, we propose and evaluate a four-step approach to segment and detect B-cancer disease. Studies show that relying on pure naked-eye observation of experts to detect such diseases can be prohibitively slow and inaccurate in some cases. Providing automatic, fast, and accurate image-processing-and artificial intelligence-based solutions for that task can be of great realistic significance. The presented approach itself scans the whole mammogram and performs filtering, segmentation, features extraction, and detection in a succession mode. The feasibility of the proposed approach was explored on 32 commonly virulent images, and the recognition rate achieved in the detection step is 100 %; further, the approach is able to give reliable results on distorted medical images, since the approach is subjected to a rectification step. Finally, this study is very effectual in decreasing mortality and increasing the quality of treatment of early onset of B-cancer.
Publié le : 2012-06-20
Classification:  Extracted features; artificial neural networks; morphological operations; mammogram images
@article{cai897,
     author = {Heba Al-Hiary and Basim Alhadidi and Malik Braik},
     title = {An Implemented Approach for Potentially Breast Cancer Detection Using Extracted Features and Artificial Neural Networks},
     journal = {Computing and Informatics},
     volume = {28},
     number = {1},
     year = {2012},
     language = {en},
     url = {http://dml.mathdoc.fr/item/cai897}
}
Heba Al-Hiary; Basim Alhadidi; Malik Braik. An Implemented Approach for Potentially Breast Cancer Detection Using Extracted Features and Artificial Neural Networks. Computing and Informatics, Tome 28 (2012) no. 1, . http://gdmltest.u-ga.fr/item/cai897/