L Gao1, D G Heath, E K Fishman. 1. The Russell H. Morgan Department of Radiology and Radiological Science, The Johns Hopkins Medical Institutions, Baltimore, Maryland 21287, USA.
Abstract
RATIONALE AND OBJECTIVES: The authors develop a three-dimensional (3-D) deformable surface model-based segmentation scheme for abdominal computed tomography (CT) image segmentation. METHODS: A parameterized 3-D surface model was developed to represent the human abdominal organs. An energy function defined on the direction of the image gradient and the surface normal of the deformable model was introduced to measure the match between the model and image data. A conjugate gradient algorithm was adapted to the minimization of the energy function. RESULTS: Test results for synthetic images showed that the incorporation of surface directional information improved the results over those using only the magnitude of the image gradient. The algorithm was tested on 21 CT datasets. Of the 21 cases tested, 11 were evaluated visually by a radiologist and the results were judged to be without noticeable error. The other 10 were evaluated over a distance function. The average distance was less than 1 voxel. CONCLUSIONS: The deformable model-based segmentation scheme produces robust and acceptable outputs on abdominal CT images.
RATIONALE AND OBJECTIVES: The authors develop a three-dimensional (3-D) deformable surface model-based segmentation scheme for abdominal computed tomography (CT) image segmentation. METHODS: A parameterized 3-D surface model was developed to represent the human abdominal organs. An energy function defined on the direction of the image gradient and the surface normal of the deformable model was introduced to measure the match between the model and image data. A conjugate gradient algorithm was adapted to the minimization of the energy function. RESULTS: Test results for synthetic images showed that the incorporation of surface directional information improved the results over those using only the magnitude of the image gradient. The algorithm was tested on 21 CT datasets. Of the 21 cases tested, 11 were evaluated visually by a radiologist and the results were judged to be without noticeable error. The other 10 were evaluated over a distance function. The average distance was less than 1 voxel. CONCLUSIONS: The deformable model-based segmentation scheme produces robust and acceptable outputs on abdominal CT images.
Authors: Ryan P Burke; Zhoubing Xu; Christopher P Lee; Rebeccah B Baucom; Benjamin K Poulose; Richard G Abramson; Bennett A Landman Journal: Proc SPIE Int Soc Opt Eng Date: 2015-03-17
Authors: Marius George Linguraru; Jianhua Yao; Rabindra Gautam; James Peterson; Zhixi Li; W Marston Linehan; Ronald M Summers Journal: Pattern Recognit Date: 2009-06-01 Impact factor: 7.740