Texture analysis methods are widely used to characterize breast masses in mammograms. Texture gives information about the spatial arrangement of the intensities in the region of interest. This information has been used in mammogram analysis applications such as mass detection, mass classification, and breast density estimation. In this paper, we study the effect of factors such as pixel resolution, integration scale, preprocessing, and feature normalization on the performance of those texture methods for mass classification. The classification performance was assessed considering linear and nonlinear support vector machine classifiers. To find the best combination among the studied factors, we used three approaches: greedy, sequential forwa...
In this work, gray-scale invariant ranklet texture features are proposed for false positive reductio...
Early detection of breast cancer cells can be predicted through a precise feature extraction techniq...
In this paper, we present a system based on feature extraction techniques for detecting abnormal pat...
Mammographic breast density refers to the prevalence of fibroglandular tissue as it appears on a mam...
INTRODUCTION: Breast cancer is the second most common type of cancer in the world, being more common...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
Masses are the primary indications of breast cancer in mammograms, and it is important to classify t...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
Computer-assisted diagnosis (CADx) for the interactive characterization of mammographic masses as be...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
This dissertation material provided in this work details the techniques that are developed to aid in...
This dissertation material provided in this work details the techniques that are developed to aid in...
In this work, gray-scale invariant ranklet texture features are proposed for false positive reductio...
In this work, gray-scale invariant ranklet texture features are proposed for false positive reductio...
Early detection of breast cancer cells can be predicted through a precise feature extraction techniq...
In this paper, we present a system based on feature extraction techniques for detecting abnormal pat...
Mammographic breast density refers to the prevalence of fibroglandular tissue as it appears on a mam...
INTRODUCTION: Breast cancer is the second most common type of cancer in the world, being more common...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
Masses are the primary indications of breast cancer in mammograms, and it is important to classify t...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
Computer-assisted diagnosis (CADx) for the interactive characterization of mammographic masses as be...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
The classification of tumoral masses and normal breast tissue is targeted. A mass detection algorith...
This dissertation material provided in this work details the techniques that are developed to aid in...
This dissertation material provided in this work details the techniques that are developed to aid in...
In this work, gray-scale invariant ranklet texture features are proposed for false positive reductio...
In this work, gray-scale invariant ranklet texture features are proposed for false positive reductio...
Early detection of breast cancer cells can be predicted through a precise feature extraction techniq...
In this paper, we present a system based on feature extraction techniques for detecting abnormal pat...