The accuracy of methods for the assessment of mammographic risk analysis is heavily related to breast tissue characteristics. Previous work has demonstrated considerable success in developing an automatic breast tissue classification methodology which overcomes this difficulty. This paper proposes a unified approach for the application of a number of rough and fuzzy-rough set methods to the analysis of mammographic data. Indeed this is the first time that fuzzy-rough approaches have been applied to this particular problem domain. In the unified approach detailed here feature selection methods are employed for dimensionality reduction developed using rough sets and fuzzy-rough sets. A number of classifiers are then used to examine the data r...
Breast cancer is the principal cause of cancer deaths among women, and early diagnosis is critical t...
Automatic digital mammograms reading become highly enviable, as the number of mammograms to be exami...
This paper presents a methodological approach for developing image classifiers that work by exploiti...
The accuracy of methods for the assessment of mammographic risk analysis is heavily related to breas...
The accuracy of methods for the detection of mammographic abnormaility is heavily related to breast ...
Context and backgroundBreast cancer is one of the most common diseases threatening the human lives g...
Mammographic risk analysis is an important task for assessing the likelihood of a woman developing b...
Breast cancer is one of the most deadly related diseases in women across the world. The survival rat...
The use of computer aided diagnosis (CAD) systems, which are computer based tools for the automatic ...
BIRADS is a Breast Imaging, Reporting and Data System. A tool to standardize mammogram reports and m...
Mammographie risk analysis is a useful means for the early diagnosis of breast cancer. There are man...
propose a computer aided detection (CAD) system for the detection and classification of suspicious r...
We propose a computer aided detection (CAD) system for the detection and classification of suspiciou...
—Breast cancer has a high incidence among women worldwide. This, together with the recent developmen...
Abstract: Breast cancer represents the second leading cause of cancer deaths in women today and it ...
Breast cancer is the principal cause of cancer deaths among women, and early diagnosis is critical t...
Automatic digital mammograms reading become highly enviable, as the number of mammograms to be exami...
This paper presents a methodological approach for developing image classifiers that work by exploiti...
The accuracy of methods for the assessment of mammographic risk analysis is heavily related to breas...
The accuracy of methods for the detection of mammographic abnormaility is heavily related to breast ...
Context and backgroundBreast cancer is one of the most common diseases threatening the human lives g...
Mammographic risk analysis is an important task for assessing the likelihood of a woman developing b...
Breast cancer is one of the most deadly related diseases in women across the world. The survival rat...
The use of computer aided diagnosis (CAD) systems, which are computer based tools for the automatic ...
BIRADS is a Breast Imaging, Reporting and Data System. A tool to standardize mammogram reports and m...
Mammographie risk analysis is a useful means for the early diagnosis of breast cancer. There are man...
propose a computer aided detection (CAD) system for the detection and classification of suspicious r...
We propose a computer aided detection (CAD) system for the detection and classification of suspiciou...
—Breast cancer has a high incidence among women worldwide. This, together with the recent developmen...
Abstract: Breast cancer represents the second leading cause of cancer deaths in women today and it ...
Breast cancer is the principal cause of cancer deaths among women, and early diagnosis is critical t...
Automatic digital mammograms reading become highly enviable, as the number of mammograms to be exami...
This paper presents a methodological approach for developing image classifiers that work by exploiti...