In this paper a methodological approach to the classification of pigmented skin lesions in dermoscopy images is presented. First, automatic border detection is performed to separate the lesion from the background skin. Shape features are then extracted from this border. For the extraction of color and texture related features, the image is divided into various clinically significant regions using the Euclidean distance transform. This feature data is fed into an optimization framework, which ranks the features using various feature selection algorithms and determines the optimal feature subset size according to the area under the ROC curve measure obtained from support vector machine classification. The issue of class imbalance is addressed...
BACKGROUND: Digital microscopy is a non-invasive diagnostic technique enabling determination of char...
328-335Skin melanoma cancer, particularly among non-Hispanic white women and men, has been one of th...
This study aims at developing a clinically oriented automated diagnostic tool for distinguishing mal...
Purpose: We present a classifier for automatically selecting a lesion border for dermoscopy skin les...
Features such as shape and color are indispensable to determine whether a skin lesion is a melanomao...
There has been an alarming increase in the number of skin cancer cases worldwide in recent years, wh...
Melanoma, one type of skin cancer is considered o the most dangerous form of skin cancer occurred in...
Visual inspection of visible light dermoscopic images can be challenging due to the similarity betwe...
Abstract. In this paper we propose a machine learning approach to classify melanocytic lesions in ma...
This paper describes the basic concepts of dermoscopy, the various dermoscopic equipments and the st...
Early detection of malignant melanoma is critical because early stage diagnosis results in a higher ...
The incidence of melanoma has been increasing steadily over the past few decades throughout most of ...
Dermoscopy is one of the major imaging modalities used in the diagnosis of melanoma and other pigmen...
An image based system implementing a well-known diagnostic method is disclosed for the automatic det...
Background. One of the most important lesion features predicting malignancy is border irregularity. ...
BACKGROUND: Digital microscopy is a non-invasive diagnostic technique enabling determination of char...
328-335Skin melanoma cancer, particularly among non-Hispanic white women and men, has been one of th...
This study aims at developing a clinically oriented automated diagnostic tool for distinguishing mal...
Purpose: We present a classifier for automatically selecting a lesion border for dermoscopy skin les...
Features such as shape and color are indispensable to determine whether a skin lesion is a melanomao...
There has been an alarming increase in the number of skin cancer cases worldwide in recent years, wh...
Melanoma, one type of skin cancer is considered o the most dangerous form of skin cancer occurred in...
Visual inspection of visible light dermoscopic images can be challenging due to the similarity betwe...
Abstract. In this paper we propose a machine learning approach to classify melanocytic lesions in ma...
This paper describes the basic concepts of dermoscopy, the various dermoscopic equipments and the st...
Early detection of malignant melanoma is critical because early stage diagnosis results in a higher ...
The incidence of melanoma has been increasing steadily over the past few decades throughout most of ...
Dermoscopy is one of the major imaging modalities used in the diagnosis of melanoma and other pigmen...
An image based system implementing a well-known diagnostic method is disclosed for the automatic det...
Background. One of the most important lesion features predicting malignancy is border irregularity. ...
BACKGROUND: Digital microscopy is a non-invasive diagnostic technique enabling determination of char...
328-335Skin melanoma cancer, particularly among non-Hispanic white women and men, has been one of th...
This study aims at developing a clinically oriented automated diagnostic tool for distinguishing mal...