Breast cancer is a debilitating condition that has a high mortality and morbidity rate and is the most commonly diagnosed form of cancer in women. The aetiology of the disease is not known however mitigating lifestyle and genetic conditions are known to increase the likelihood of contracting the condition. This thesis proposes a number of techniques designed to increase the diagnostic accuracy of Computer Aided Diagnostic (CADx) systems. The first technique involved breaking down the benign and malignant classes into sub-classes through clustering and using a support vector machine classifier on these sub-classes in a technique known as Soft Clustered Support Vector Machine (SCSVM). The sub-classes are designed to reduce the variability wi...
Breast cancer exhibits a high mortality rate and it is the most invasive cancer in women. An analysi...
This work proposes a new approach using a committee machine of artificial neural networks to classif...
Medical diagnosis sometimes involves detecting subtle indi-cations of a disease or condition amongst...
Breast cancer is a debilitating condition that has a high mortality and morbidity rate and is the mo...
Determining the best values for the parameters of a classifier is a challenge. This challenge is com...
This paper proposes the creation of an ensemble neural network by incorporating a k-means classifier...
Breast Cancer has surpassed all categories of cancer in incidence and is the most prevalent form of ...
Nowadays, breast cancer is one of the leading causes of death women in the worldwide. If breast canc...
Medical diagnosis sometimes involves detecting subtle indications of a disease or condition amongst ...
Breast carcinoma is one of the most signifcant health diseases in the world. Early identifcation of ...
It is important to detect breast cancer as early as possible. In this manuscript, a new methodology ...
Computer-aided diagnosis is one of the most important engineering applications of artificial intelli...
Abstract: In this study, the mammogram is classified as either normal or cancer pattern. In the last...
This paper proposes a novel ensemble technique for mass classification in digital mammograms by vary...
Breast cancer exhibits a high mortality rate and it is the most invasive cancer in women. An analysi...
This work proposes a new approach using a committee machine of artificial neural networks to classif...
Medical diagnosis sometimes involves detecting subtle indi-cations of a disease or condition amongst...
Breast cancer is a debilitating condition that has a high mortality and morbidity rate and is the mo...
Determining the best values for the parameters of a classifier is a challenge. This challenge is com...
This paper proposes the creation of an ensemble neural network by incorporating a k-means classifier...
Breast Cancer has surpassed all categories of cancer in incidence and is the most prevalent form of ...
Nowadays, breast cancer is one of the leading causes of death women in the worldwide. If breast canc...
Medical diagnosis sometimes involves detecting subtle indications of a disease or condition amongst ...
Breast carcinoma is one of the most signifcant health diseases in the world. Early identifcation of ...
It is important to detect breast cancer as early as possible. In this manuscript, a new methodology ...
Computer-aided diagnosis is one of the most important engineering applications of artificial intelli...
Abstract: In this study, the mammogram is classified as either normal or cancer pattern. In the last...
This paper proposes a novel ensemble technique for mass classification in digital mammograms by vary...
Breast cancer exhibits a high mortality rate and it is the most invasive cancer in women. An analysi...
This work proposes a new approach using a committee machine of artificial neural networks to classif...
Medical diagnosis sometimes involves detecting subtle indi-cations of a disease or condition amongst...