Automatic application level set approach in detection calcifications in mammographic image
Breast cancer is considered as one of a major health problem that constitutes the strongest
cause behind mortality among women in the world. So, in this decade, breast cancer is the
second most common type of cancer, in term of appearance frequency, and the fifth most
common cause of cancer related death. In order to reduce the workload on radiologists, a
variety of CAD systems; Computer-Aided Diagnosis (CADi) and Computer-Aided Detection
(CADe) have been proposed. In this paper, we interested on CADe tool to help radiologist to …
cause behind mortality among women in the world. So, in this decade, breast cancer is the
second most common type of cancer, in term of appearance frequency, and the fifth most
common cause of cancer related death. In order to reduce the workload on radiologists, a
variety of CAD systems; Computer-Aided Diagnosis (CADi) and Computer-Aided Detection
(CADe) have been proposed. In this paper, we interested on CADe tool to help radiologist to …
Breast cancer is considered as one of a major health problem that constitutes the strongest cause behind mortality among women in the world. So, in this decade, breast cancer is the second most common type of cancer, in term of appearance frequency, and the fifth most common cause of cancer related death. In order to reduce the workload on radiologists, a variety of CAD systems; Computer-Aided Diagnosis (CADi) and Computer-Aided Detection (CADe) have been proposed. In this paper, we interested on CADe tool to help radiologist to detect cancer. The proposed CADe is based on a three-step work flow; namely, detection, analysis and classification. This paper deals with the problem of automatic detection of Region Of Interest (ROI) based on Level Set approach depended on edge and region criteria. This approach gives good visual information from the radiologist. After that, the features extraction using textures characteristics and the vector classification using Multilayer Perception (MLP) and k-Nearest Neighbours (KNN) are adopted to distinguish different ACR (American College of Radiology) classification. Moreover, we use the Digital Database for Screening Mammography (DDSM) for experiments and these results in term of accuracy varied between 60 % and 70% are acceptable and must be ameliorated to aid radiologist.
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