Texture analysis and artificial neural network for detection of clustered microcalcifications on mammograms

Amelia Island, FL(1997)

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摘要
Clustered microcalcifications on X-ray mammograms are an important sign in the detection of breast cancer. This paper quantitatively describes the usefulness of texture analysis methods for the detection of clustered microcalcifications on digitized mammograms. Comparative studies of texture analysis methods are performed for the proposed texture analysis method, called the surrounding region dependence method (SRDM), and the conventional texture analysis methods such as the spatial gray-level dependence method, the gray-level run length method, and the gray-level difference method. These methods are applied to classify region of interests (ROIs) into positive ROIs containing clustered microcalcifications and negative ROIs of normal tissues. A three-layer backpropagation neural network is employed as a classifier. The results of the neural network for texture analysis methods are evaluated by the receiver operating-characteristics analysis. From the viewpoint of the classification accuracy and computational complexity, the SRDM is superior to the conventional methods
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关键词
backpropagation,diagnostic expert systems,diagnostic radiography,feedforward neural nets,image segmentation,image texture,pattern classification,x-ray mammograms,breast cancer,cluster,microcalcifications,multilayer neural network,region of interests,surrounding region dependence method,texture analysis,computational complexity,artificial neural network,region of interest,neural network,biomedical imaging,neural networks,artificial neural networks,receiver operator characteristic,x ray detectors,pixel
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