Paper
11 March 2011 Segmentation of liver and liver tumor for the Liver-Workbench
Jiayin Zhou, Feng Ding, Wei Xiong, Weimin Huang, Qi Tian, Zhimin Wang, Sudhakar K. Venkatesh, Wee Kheng Leow
Author Affiliations +
Proceedings Volume 7962, Medical Imaging 2011: Image Processing; 79622I (2011) https://doi.org/10.1117/12.877927
Event: SPIE Medical Imaging, 2011, Lake Buena Vista (Orlando), Florida, United States
Abstract
Robust and efficient segmentation tools are important for the quantification of 3D liver and liver tumor volumes which can greatly help clinicians in clinical decision-making and treatment planning. A two-module image analysis procedure which integrates two novel semi-automatic algorithms has been developed to segment 3D liver and liver tumors from multi-detector computed tomography (MDCT) images. The first module is to segment the liver volume using a flippingfree mesh deformation model. In each iteration, before mesh deformation, the algorithm detects and avoids possible flippings which will cause the self-intersection of the mesh and then the undesired segmentation results. After flipping avoidance, Laplacian mesh deformation is performed with various constraints in geometry and shape smoothness. In the second module, the segmented liver volume is used as the ROI and liver tumors are segmented by using support vector machines (SVMs)-based voxel classification and propagational learning. First a SVM classifier was trained to extract tumor region from one single 2D slice in the intermediate part of a tumor by voxel classification. Then the extracted tumor contour, after some morphological operations, was projected to its neighboring slices for automated sampling, learning and further voxel classification in neighboring slices. This propagation procedure continued till all tumorcontaining slices were processed. The performance of the whole procedure was tested using 20 MDCT data sets and the results were promising: Nineteen liver volumes were successfully segmented out, with the mean relative absolute volume difference (RAVD), volume overlap error (VOE) and average symmetric surface distance (ASSD) to reference segmentation of 7.1%, 12.3% and 2.5 mm, respectively. For live tumors segmentation, the median RAVD, VOE and ASSD were 7.3%, 18.4%, 1.7 mm, respectively.
© (2011) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Jiayin Zhou, Feng Ding, Wei Xiong, Weimin Huang, Qi Tian, Zhimin Wang, Sudhakar K. Venkatesh, and Wee Kheng Leow "Segmentation of liver and liver tumor for the Liver-Workbench", Proc. SPIE 7962, Medical Imaging 2011: Image Processing, 79622I (11 March 2011); https://doi.org/10.1117/12.877927
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KEYWORDS
Liver

Tumors

Image segmentation

3D modeling

Remote sensing

3D image processing

Image analysis

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