Difference between revisions of "2014 Project Week:MultiAtlas MultiImage Segmentation"

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<h3>Objective</h3>
 
<h3>Objective</h3>
We develop a Slicer module for multi-atlas-based multi-image segmentation of brain images. To deal with the limitation of existing pairwise registration methods between images with large shape difference, our algorithm in the module performs 1) a novel tree-based groupwise registration method for concurrent alignment of both the atlases and the target images, and 2) an iterative groupwise segmentation method for simultaneous consideration of segmentation information propagated from all available images, including the atlases and other newly segmented target images.
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To deal with the limitations of existing pairwise registration methods between images with large shape difference, we develop an algorithm for multi-atlas-based multi-image segmentation of brain images and release it as a Slicer module.  
 
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<h3>Approach, Plan</h3>
 
<h3>Approach, Plan</h3>
We have developed the Slicer module called MABMIS and fully tested it using LONI LPBA40 and IXI datasets. The result by our Slicer module shows 2% improvement compared to pairwise registration methods in terms of the averaged overlap ratio between automatic segmentation and ground truth labels.  
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Our algorithm in the module performs 1) a novel tree-based groupwise registration method for concurrent alignment of both the atlases and the target images, and 2) an iterative groupwise segmentation method for simultaneous consideration of segmentation information propagated from all available images, including the atlases and other newly segmented target images.
 
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<h3>Progress</h3>
 
<h3>Progress</h3>
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We have developed the Slicer module called MABMIS and fully tested it using LONI LPBA40 and IXI datasets. The result by our Slicer module shows 2% improvement compared to pairwise registration framework in terms of the averaged overlap ratio between automatic segmentation and ground truth labels.
 
We are releasing our Slice module in NITRC (https://www.nitrc.org).
 
We are releasing our Slice module in NITRC (https://www.nitrc.org).
 
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Revision as of 16:23, 2 January 2014

Home < 2014 Project Week:MultiAtlas MultiImage Segmentation


Key Investigators

  • Minjeong Kim, Dinggang Shen, UNC Chapel Hill
  • Xiaofeng Liu, Jim Miller, GE Research

Project Description

Objective

To deal with the limitations of existing pairwise registration methods between images with large shape difference, we develop an algorithm for multi-atlas-based multi-image segmentation of brain images and release it as a Slicer module.

Approach, Plan

Our algorithm in the module performs 1) a novel tree-based groupwise registration method for concurrent alignment of both the atlases and the target images, and 2) an iterative groupwise segmentation method for simultaneous consideration of segmentation information propagated from all available images, including the atlases and other newly segmented target images.

Progress

We have developed the Slicer module called MABMIS and fully tested it using LONI LPBA40 and IXI datasets. The result by our Slicer module shows 2% improvement compared to pairwise registration framework in terms of the averaged overlap ratio between automatic segmentation and ground truth labels. We are releasing our Slice module in NITRC (https://www.nitrc.org).