
Proceedings Paper
Automatic 3D kidney segmentation based on shape constrained GC-OAAMFormat | Member Price | Non-Member Price |
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Paper Abstract
The kidney can be classified into three main tissue types: renal cortex, renal medulla and renal pelvis (or collecting
system). Dysfunction of different renal tissue types may cause different kidney diseases. Therefore, accurate and
efficient segmentation of kidney into different tissue types plays a very important role in clinical research. In this paper,
we propose an automatic 3D kidney segmentation method which segments the kidney into the three different tissue types:
renal cortex, medulla and pelvis. The proposed method synergistically combines active appearance model (AAM), live
wire (LW) and graph cut (GC) methods, GC-OAAM for short. Our method consists of two main steps. First, a pseudo
3D segmentation method is employed for kidney initialization in which the segmentation is performed slice-by-slice via
a multi-object oriented active appearance model (OAAM) method. An improved iterative model refinement algorithm is
proposed for the AAM optimization, which synergistically combines the AAM and LW method. Multi-object strategy is
applied to help the object initialization. The 3D model constraints are applied to the initialization result. Second, the
object shape information generated from the initialization step is integrated into the GC cost computation. A multi-label
GC method is used to segment the kidney into cortex, medulla and pelvis. The proposed method was tested on 19
clinical arterial phase CT data sets. The preliminary results showed the feasibility and efficiency of the proposed method.
Paper Details
Date Published: 14 March 2011
PDF: 8 pages
Proc. SPIE 7962, Medical Imaging 2011: Image Processing, 79623M (14 March 2011); doi: 10.1117/12.878062
Published in SPIE Proceedings Vol. 7962:
Medical Imaging 2011: Image Processing
Benoit M. Dawant; David R. Haynor, Editor(s)
PDF: 8 pages
Proc. SPIE 7962, Medical Imaging 2011: Image Processing, 79623M (14 March 2011); doi: 10.1117/12.878062
Show Author Affiliations
Xinjian Chen, National Institutes of Health (United States)
Ronald M. Summers, National Institutes of Health (United States)
Ronald M. Summers, National Institutes of Health (United States)
Jianhua Yao, National Institutes of Health (United States)
Published in SPIE Proceedings Vol. 7962:
Medical Imaging 2011: Image Processing
Benoit M. Dawant; David R. Haynor, Editor(s)
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