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A hybrid framework for 3D medical image segmentation.
Med Image Anal. 2005 Dec; 9(6):547-65.MI

Abstract

In this paper we propose a novel hybrid 3D segmentation framework which combines Gibbs models, marching cubes and deformable models. In the framework, first we construct a new Gibbs model whose energy function is defined on a high order clique system. The new model includes both region and boundary information during segmentation. Next we improve the original marching cubes method to construct 3D meshes from Gibbs models' output. The 3D mesh serves as the initial geometry of the deformable model. Then we deform the deformable model using external image forces so that the model converges to the object surface. We run the Gibbs model and the deformable model recursively by updating the Gibbs model's parameters using the region and boundary information in the deformable model segmentation result. In our approach, the hybrid combination of region-based methods and boundary-based methods results in improved segmentations of complex structures. The benefit of the methodology is that it produces high quality segmentations of 3D structures using little prior information and minimal user intervention. The modules in this segmentation methodology are developed within the context of the Insight ToolKit (ITK). We present experimental segmentation results of brain tumors and evaluate our method by comparing experimental results with expert manual segmentations. The evaluation results show that the methodology achieves high quality segmentation results with computational efficiency. We also present segmentation results of other clinical objects to illustrate the strength of the methodology as a generic segmentation framework.

Authors+Show Affiliations

CBIM Center, Rutgers University, Piscataway, NJ 08854, USA. ting.chen@med.nyu.eduNo affiliation info available

Pub Type(s)

Journal Article
Research Support, N.I.H., Extramural
Research Support, U.S. Gov't, Non-P.H.S.
Research Support, U.S. Gov't, P.H.S.

Language

eng

PubMed ID

15896997

Citation

Chen, Ting, and Dimitris Metaxas. "A Hybrid Framework for 3D Medical Image Segmentation." Medical Image Analysis, vol. 9, no. 6, 2005, pp. 547-65.
Chen T, Metaxas D. A hybrid framework for 3D medical image segmentation. Med Image Anal. 2005;9(6):547-65.
Chen, T., & Metaxas, D. (2005). A hybrid framework for 3D medical image segmentation. Medical Image Analysis, 9(6), 547-65.
Chen T, Metaxas D. A Hybrid Framework for 3D Medical Image Segmentation. Med Image Anal. 2005;9(6):547-65. PubMed PMID: 15896997.
* Article titles in AMA citation format should be in sentence-case
TY - JOUR T1 - A hybrid framework for 3D medical image segmentation. AU - Chen,Ting, AU - Metaxas,Dimitris, PY - 2005/5/18/pubmed PY - 2006/1/21/medline PY - 2005/5/18/entrez SP - 547 EP - 65 JF - Medical image analysis JO - Med Image Anal VL - 9 IS - 6 N2 - In this paper we propose a novel hybrid 3D segmentation framework which combines Gibbs models, marching cubes and deformable models. In the framework, first we construct a new Gibbs model whose energy function is defined on a high order clique system. The new model includes both region and boundary information during segmentation. Next we improve the original marching cubes method to construct 3D meshes from Gibbs models' output. The 3D mesh serves as the initial geometry of the deformable model. Then we deform the deformable model using external image forces so that the model converges to the object surface. We run the Gibbs model and the deformable model recursively by updating the Gibbs model's parameters using the region and boundary information in the deformable model segmentation result. In our approach, the hybrid combination of region-based methods and boundary-based methods results in improved segmentations of complex structures. The benefit of the methodology is that it produces high quality segmentations of 3D structures using little prior information and minimal user intervention. The modules in this segmentation methodology are developed within the context of the Insight ToolKit (ITK). We present experimental segmentation results of brain tumors and evaluate our method by comparing experimental results with expert manual segmentations. The evaluation results show that the methodology achieves high quality segmentation results with computational efficiency. We also present segmentation results of other clinical objects to illustrate the strength of the methodology as a generic segmentation framework. SN - 1361-8415 UR - https://www.unboundmedicine.com/medline/citation/15896997/A_hybrid_framework_for_3D_medical_image_segmentation_ DB - PRIME DP - Unbound Medicine ER -