TY - GEN
T1 - Automatic liver parenchyma segmentation from abdominal CT images using support vector machines
AU - Luo, Suhuai
AU - Hu, Qingmao
AU - He, Xiangjian
AU - Li, Jiaming
AU - Jin, Jesse S.
AU - Park, Mira
PY - 2009
Y1 - 2009
N2 - This paper presents an automatic liver parenchyma segmentation algorithm that can segment liver in abdominal CT images. There are three major steps in the proposed approach. Firstly, a texture analysis is applied to input abdominal CT images to extract pixel level features. In this step, wavelet coefficients are used as texture descriptors. Secondly, support vector machines (SVMs) are implemented to classify the data into pixel-wised liver area or non-liver area. Finally, integrated morphological operations are designed to remove noise and finally delineate the liver. Our unique contributions to liver segmentation are twofold: one is that it has been proved through experiments that wavelet features present good classification result when SVMs are used; the other is that the combination of morphological operations with the pixel-wised SVM classifier can delineate volumetric liver accurately. The algorithm can be used in an advanced computer-aided liver disease diagnosis and liver surgical planning system. Examples of applying the proposed algorithm on real CT data are presented with performance validation based on the comparison between the automatically segmented results and manually segmented ones.
AB - This paper presents an automatic liver parenchyma segmentation algorithm that can segment liver in abdominal CT images. There are three major steps in the proposed approach. Firstly, a texture analysis is applied to input abdominal CT images to extract pixel level features. In this step, wavelet coefficients are used as texture descriptors. Secondly, support vector machines (SVMs) are implemented to classify the data into pixel-wised liver area or non-liver area. Finally, integrated morphological operations are designed to remove noise and finally delineate the liver. Our unique contributions to liver segmentation are twofold: one is that it has been proved through experiments that wavelet features present good classification result when SVMs are used; the other is that the combination of morphological operations with the pixel-wised SVM classifier can delineate volumetric liver accurately. The algorithm can be used in an advanced computer-aided liver disease diagnosis and liver surgical planning system. Examples of applying the proposed algorithm on real CT data are presented with performance validation based on the comparison between the automatically segmented results and manually segmented ones.
UR - http://www.scopus.com/inward/record.url?scp=67650693053&partnerID=8YFLogxK
U2 - 10.1109/ICCME.2009.4906625
DO - 10.1109/ICCME.2009.4906625
M3 - Conference contribution
AN - SCOPUS:67650693053
SN - 9781424433162
T3 - 2009 ICME International Conference on Complex Medical Engineering, CME 2009
BT - 2009 ICME International Conference on Complex Medical Engineering, CME 2009
T2 - 2009 ICME International Conference on Complex Medical Engineering, CME 2009
Y2 - 9 April 2009 through 11 April 2009
ER -