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A learning-based automatic spinal MRI segmentation

Proc. SPIE 6914, 69143L (2008); http://dx.doi.org/10.1117/12.769891

Sunday 17 February 2008
San Diego, CA, USA
Medical Imaging 2008: Image Processing
Joseph M. Reinhardt, Josien P. W. Pluim
Xiaoqing Liu and Jagath Samarabandu

The Univ. of Western Ontario (Canada)

Greg Garvin

St. Joseph's Health Care (Canada)

Rethy Chhem

London Health Sciences Ctr. (Canada)

Shuo Li

GE Healthcare (Canada)

Image segmentation plays an important role in medical image analysis and visualization since it greatly enhances the clinical diagnosis. Although many algorithms have been proposed, it is still challenging to achieve an automatic clinical segmentation which requires speed and robustness. Automatically segmenting the vertebral column in Magnetic Resonance Imaging (MRI) image is extremely challenging as variations in soft tissue contrast and radio-frequency (RF) in-homogeneities cause image intensity variations. Moveover, little work has been done in this area. We proposed a generic slice-independent, learning-based method to automatically segment the vertebrae in spinal MRI images. A main feature of our contributions is that the proposed method is able to segment multiple images of different slices simultaneously. Our proposed method also has the potential to be imaging modality independent as it is not specific to a particular imaging modality. The proposed method consists of two stages: candidate generation and verification. The candidate generation stage is aimed at obtaining the segmentation through the energy minimization. In this stage, images are first partitioned into a number of image regions. Then, Support Vector Machines (SVM) is applied on those pre-partitioned image regions to obtain the class conditional distributions, which are then fed into an energy function and optimized with the graph-cut algorithm. The verification stage applies domain knowledge to verify the segmented candidates and reject unsuitable ones. Experimental results show that the proposed method is very efficient and robust with respect to image slices.

© 2008 COPYRIGHT SPIE--The International Society for Optical Engineering. Downloading of the abstract is permitted for personal use only.

History
Online Mar 11, 2008
Citation
Xiaoqing Liu, Jagath Samarabandu, Greg Garvin, Rethy Chhem and Shuo Li, "A learning-based automatic spinal MRI segmentation", Proc. SPIE 6914, 69143L (2008); http://dx.doi.org/10.1117/12.769891

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