Deformable M-reps for 3D medical image segmentation

被引:198
|
作者
Pizer, SM [1 ]
Fletcher, PT [1 ]
Joshi, S [1 ]
Thall, A [1 ]
Chen, JZ [1 ]
Fridman, Y [1 ]
Fritsch, DS [1 ]
Gash, AG [1 ]
Glotzer, JM [1 ]
Jiroutek, MR [1 ]
Lu, CL [1 ]
Muller, KE [1 ]
Tracton, G [1 ]
Yushkevich, P [1 ]
Chaney, EL [1 ]
机构
[1] Univ N Carolina, Med Image Display & Anal Grp, Chapel Hill, NC 27515 USA
关键词
segmentation; medial; deformable model; object; shape; medical image; SHAPE;
D O I
10.1023/A:1026313132218
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
M-reps (formerly called DSLs) are a multiscale medial means for modeling and rendering 3D solid geometry. They are particularly well suited to model anatomic objects and in particular to capture prior geometric information effectively in deformable models segmentation approaches. The representation is based on figural models, which define objects at coarse scale by a hierarchy of figures - each figure generally a slab representing a solid region and its boundary simultaneously. This paper focuses on the use of single figure models to segment objects of relatively simple structure. A single figure is a sheet of medial atoms, which is interpolated from the model formed by a net, i.e., a mesh or chain, of medial atoms (hence the name m-reps), each atom modeling a solid region via not only a position and a width but also a local figural frame giving figural directions and an object angle between opposing, corresponding positions on the boundary implied by the m-rep. The special capability of an m-rep is to provide spatial and orientational correspondence between an object in two different states of deformation. This ability is central to effective measurement of both geometric typicality and geometry to image match, the two terms of the objective function optimized in segmentation by deformable models. The other ability of m-reps central to effective segmentation is their ability to support segmentation at multiple levels of scale, with successively finer precision. Objects modeled by single figures are segmented first by a similarity transform augmented by object elongation, then by adjustment of each medial atom, and finally by displacing a dense sampling of the m-rep implied boundary. While these models and approaches also exist in 2D, we focus on 3D objects. The segmentation of the kidney from CT and the hippocampus from MRI serve as the major examples in this paper. The accuracy of segmentation as compared to manual, slice-by-slice segmentation is reported.
引用
收藏
页码:85 / 106
页数:22
相关论文
共 50 条
  • [1] Deformable M-Reps for 3D Medical Image Segmentation
    Stephen M. Pizer
    P. Thomas Fletcher
    Sarang Joshi
    Andrew Thall
    James Z. Chen
    Yonatan Fridman
    Daniel S. Fritsch
    A. Graham Gash
    John M. Glotzer
    Michael R. Jiroutek
    Conglin Lu
    Keith E. Muller
    Gregg Tracton
    Paul Yushkevich
    Edward L. Chaney
    International Journal of Computer Vision, 2003, 55 : 85 - 106
  • [2] A method and software for segmentation of anatomic object ensembles by deformable m-reps
    Pizer, SM
    Fletcher, PT
    Joshi, S
    Gash, AG
    Stough, J
    Thall, A
    Tracton, G
    Chaney, EL
    MEDICAL PHYSICS, 2005, 32 (05) : 1335 - 1345
  • [3] Coupling CRFs and deformable models for 3D medical image segmentation
    Tsechpenakis, Gabriel
    Wang, Jianhua
    Mayer, Brandon
    Metaxas, Dimitris
    2007 IEEE 11TH INTERNATIONAL CONFERENCE ON COMPUTER VISION, VOLS 1-6, 2007, : 2519 - +
  • [4] Structured deformable models application of metaballs to 3D medical image segmentation
    Ibáñez, L
    Hamitouche, C
    Roux, C
    PROCEEDINGS OF THE 22ND ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY, VOLS 1-4, 2000, 22 : 3180 - 3183
  • [5] Integration of Gibbs Prior models and deformable models for 3D medical image segmentation
    Chen, Ting
    Metaxas, Dimitris
    Proceedings - International Conference on Pattern Recognition, 2002, 16 (01): : 719 - 722
  • [6] Integration of Gibbs prior models and deformable models for 3D medical image segmentation
    Chen, T
    Metaxas, D
    16TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION, VOL I, PROCEEDINGS, 2002, : 719 - 722
  • [7] A Multiple Geometric Deformable Model Framework for Homeomorphic 3D Medical Image Segmentation
    Fan, Xian
    Bazin, Pierre-Louis
    Bogovic, John
    Bai, Ying
    Prince, Jerry L.
    2008 IEEE COMPUTER SOCIETY CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS, VOLS 1-3, 2008, : 472 - 478
  • [8] DAUNet: A deformable aggregation UNet for multi-organ 3D medical image segmentation
    Liu, Qinghao
    Liu, Min
    Zhu, Yuehao
    Liu, Licheng
    Zhang, Zhe
    Wang, Yaonan
    PATTERN RECOGNITION LETTERS, 2025, 191 : 58 - 65
  • [9] 3D medical image segmentation technique
    El-said, Shaimaa Ahmed
    INTERNATIONAL JOURNAL OF BIOMEDICAL ENGINEERING AND TECHNOLOGY, 2015, 17 (03) : 232 - 251
  • [10] Cylindrical echocardiographic image segmentation based on 3D deformable models
    Montagnat, J
    Delingette, H
    Malandain, G
    MEDICAL IMAGE COMPUTING AND COMPUTER-ASSISTED INTERVENTION, MICCAI'99, PROCEEDINGS, 1999, 1679 : 168 - 175