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GC-ASM: Synergistic integration of graph-cut and active shape model strategies for medical image segmentation
Authors:Xinjian Chen  Jayaram K Udupa  Abass Alavi  Drew A Torigian
Affiliation:1. School of Electronics and Information Engineering, Soochow University, Suzhou 215006, China;2. Medical Image Processing Group, Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, United States;3. Hospital of the University of Pennsylvania, Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104-6021, United States;1. Idiap Research Institute, PO Box 592, CH-1920 Martigny, Switzerland;2. École Polytechnique Fédérale de Lausanne (EPFL), Station 14, CH-1015 Lausanne, Switzerland;1. State Key Laboratory of Integrated Service Networks, Xidian University, Xi’an, PR China;2. Department of Computer Science and Engineering, Michigan State University, East Lansing, USA;1. Center for Soft Computing Research, Indian Statistical Institute, 203 B.T. Road, Kolkata, West Bengal 700 108, India;2. Department of Computer Engineering, National Institute of Technology Karnataka Surathkal, Mangalore 575 025, India
Abstract:Image segmentation methods may be classified into two categories: purely image based and model based. Each of these two classes has its own advantages and disadvantages. In this paper, we propose a novel synergistic combination of the image based graph-cut (GC) method with the model based ASM method to arrive at the GC-ASM method for medical image segmentation. A multi-object GC cost function is proposed which effectively integrates the ASM shape information into the GC framework. The proposed method consists of two phases: model building and segmentation. In the model building phase, the ASM model is built and the parameters of the GC are estimated. The segmentation phase consists of two main steps: initialization (recognition) and delineation. For initialization, an automatic method is proposed which estimates the pose (translation, orientation, and scale) of the model, and obtains a rough segmentation result which also provides the shape information for the GC method. For delineation, an iterative GC-ASM algorithm is proposed which performs finer delineation based on the initialization results. The proposed methods are implemented to operate on 2D images and evaluated on clinical chest CT, abdominal CT, and foot MRI data sets. The results show the following: (a) An overall delineation accuracy of TPVF > 96%, FPVF < 0.6% can be achieved via GC-ASM for different objects, modalities, and body regions. (b) GC-ASM improves over ASM in its accuracy and precision to search region. (c) GC-ASM requires far fewer landmarks (about 1/3 of ASM) than ASM. (d) GC-ASM achieves full automation in the segmentation step compared to GC which requires seed specification and improves on the accuracy of GC. (e) One disadvantage of GC-ASM is its increased computational expense owing to the iterative nature of the algorithm.
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