Mathematics Department, King Saud University, Riyadh, Saudi Arabia Email : abir@ksu.edu.sa
Abstract
Computeraided diagnosis of breast cancer is an important medical approach. In this research paper, we focus on combining two major methodologies, namely fuzzy base systems and the evolutionary genetic algorithms and on applying them to the Saudi Arabian breast cancer diagnosis database, to aid physicians in obtaining an earlycomputerized diagnosis and hence prevent the development of cancer through identification and removal or treatment of premalignant abnormalities; early detection can also improve survival and decrease mortality by detecting cancer at an early stage when treatment is more effective. Our hybrid algorithm, the geneticfuzzy algorithm, has produced optimized systems that attain high classification performance, with simple and readily interpreted rules and with a good degree of confidence.
Alharbi, A., Tchier, F., & Rashidi, M. (2016). Using a GeneticFuzzy Algorithm as a Computer Aided Breast Cancer Diagnostic Tool. Asian Pacific Journal of Cancer Prevention, 17(7), 3651-3658.
MLA
Abir Alharbi; F Tchier; MM Rashidi. "Using a GeneticFuzzy Algorithm as a Computer Aided Breast Cancer Diagnostic Tool". Asian Pacific Journal of Cancer Prevention, 17, 7, 2016, 3651-3658.
HARVARD
Alharbi, A., Tchier, F., Rashidi, M. (2016). 'Using a GeneticFuzzy Algorithm as a Computer Aided Breast Cancer Diagnostic Tool', Asian Pacific Journal of Cancer Prevention, 17(7), pp. 3651-3658.
VANCOUVER
Alharbi, A., Tchier, F., Rashidi, M. Using a GeneticFuzzy Algorithm as a Computer Aided Breast Cancer Diagnostic Tool. Asian Pacific Journal of Cancer Prevention, 2016; 17(7): 3651-3658.