TY - JOUR
T1 - Distinction of liver disease from ct images using kernel-based classifiers
AU - Lee, Chien Cheng
AU - Chiang, Yu Chun
AU - Tsai, Chun Li
AU - Chen, Sz Han
PY - 2007
Y1 - 2007
N2 - In this paper, akernel-based classifier for liver disease distinction of computer tomography (CT) images is introduced. Three kinds of liver diseases are identified including cyst, hepatoma and cavernous hemangioma. The diagnosis scheme includes two steps: features extraction and classification. The features, derived from gray levels, co-occurrence matrix, and shape descriptors, are obtained from the region of interests (ROIs) among the normal and abnormal CT images. The sequential forward selection (SFS) algorithm selects the certain features for the specific diseases, and also reduces the features space for classification. In the classification phase, a 4-layer hierarchical scheme is adopted in the classifier. In the first layer, the classifier distinguishes the normal tissue from the abnormal tissues. The second layer classifier differentiates cyst from the other abnormal tissues. Cavernous hemangioma is identified in the third layer, while hepatoma is recognized from the undefined tissues in the last layer. Finally, we use the receiver operating characteristic (ROC) curve to evaluate the performance of the diagnosis system.
AB - In this paper, akernel-based classifier for liver disease distinction of computer tomography (CT) images is introduced. Three kinds of liver diseases are identified including cyst, hepatoma and cavernous hemangioma. The diagnosis scheme includes two steps: features extraction and classification. The features, derived from gray levels, co-occurrence matrix, and shape descriptors, are obtained from the region of interests (ROIs) among the normal and abnormal CT images. The sequential forward selection (SFS) algorithm selects the certain features for the specific diseases, and also reduces the features space for classification. In the classification phase, a 4-layer hierarchical scheme is adopted in the classifier. In the first layer, the classifier distinguishes the normal tissue from the abnormal tissues. The second layer classifier differentiates cyst from the other abnormal tissues. Cavernous hemangioma is identified in the third layer, while hepatoma is recognized from the undefined tissues in the last layer. Finally, we use the receiver operating characteristic (ROC) curve to evaluate the performance of the diagnosis system.
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U2 - 10.1080/1931308X.2007.10644144
DO - 10.1080/1931308X.2007.10644144
M3 - Article
AN - SCOPUS:84893310713
SN - 1931-308X
VL - 1
SP - 113
EP - 120
JO - International Journal of Intelligent Computing in Medical Sciences and Image Processing
JF - International Journal of Intelligent Computing in Medical Sciences and Image Processing
IS - 2
ER -