A knowledge-based technique for liver segmentation in CT data |
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Authors: | Amir H. Foruzan Reza A. Zoroofi Masatoshi Hori Yoshinobu Sato |
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Affiliation: | 1. Montreal Institute for Learning Algorithms, Montréal, Canada;2. École Polytechnique de Montréal, Montréal, Canada;3. Imagia Inc., Montréal, Canada;4. CHUM Research Center, Montréal, Canada;1. Shenzhen Qianhai WeBank Share Limited Company, Shenzhen, China;2. College of Business, City University of Hong Kong, Hong Kong;3. Hunan Engineering Research Center for Industrial Big Data and Intelligent Decision Making, Hunan University of Science and Technology, Xiangtan, 411201, China |
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Abstract: | Liver cancer is one of the major death factors in the world. Transplantation and tumor removal are two main therapies in common clinical practice. Both tasks need image assisted planning and quantitative evaluations. Automatic liver segmentation is required for corresponding quantitative evaluations. Conventional approaches in liver segmentation consist of finding the initial liver border followed by tuning the border to the final mask. Finding the liver initial border is of great importance as the latter step largely depends on the initial step. In the previous works, the liver initial border was determined by applying thresholding and morphological filters. In order to estimate the liver initial boundary, we have proposed a technique based on anatomical knowledge of liver, its surrounding tissues as well as the approach that a clinician follows in screening liver in a CT dataset. Based on the above reasoning, we developed a multi-step heuristic technique to segment liver from other tissues in multi-slice CT images. The proposed technique can deal with various shapes, locations, and liver sizes. The method was evaluated in the presence of 50 actual liver data sets and the results were encouraging. |
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