Difference between revisions of "2011 Summer Project Week NerveSeg"

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Image:NerveSeg-res-scr3.png|Figure 5 - Example_2: Another View.
 
Image:NerveSeg-res-scr3.png|Figure 5 - Example_2: Another View.
 
Image:NerveSeg-mapo.png|Figure 6 - Example_3: Map of automatically segmented nerves. Circled in red are areas of sudden changes.  
 
Image:NerveSeg-mapo.png|Figure 6 - Example_3: Map of automatically segmented nerves. Circled in red are areas of sudden changes.  
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<gallery>
 
Successful segmentation including afterall
 
Image:NerveSeg-peripheral.png|Figure 7 - Example_3: Another example, following several nerve bundles.
 
Image:NerveSeg-mapp.png|Figure 8 - Example_4: A map of several automatically segmented nerves with herniated disc manually segmented.
 
 
</gallery>
 
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Results are attached.  
 
Results are attached.  
  
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<gallery>
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Successful segmentation including afterall
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Image:NerveSeg-peripheral.png|Figure 7 - Example_3: Another example, following several nerve bundles.
 +
Image:NerveSeg-mapp.png|Figure 8 - Example_4: A map of several automatically segmented nerves with herniated disc manually segmented.
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</gallery>
  
  

Revision as of 03:24, 24 June 2011

Home < 2011 Summer Project Week NerveSeg

Nerve Segmentation



Key Investigators

  • MIT: Adrian Dalca, Polina Golland
  • BWH: Giovanna Danagoulian, Ehud Schmidt
  • SPL: Ron Kikinis

Objective

We are developing a nerve segmentation algorithm for the automatic isolation of nerves and nerve ganglia inside the spinal sack and out through the vertebrae in new MR Myelography images. Current progress can track the core of a Nerve.


Approach, Plan

Currently we use a particle-filter tracking approach for segmenting the nerves. The algorithm is given a seed point, preferably somewhere in the spine. The particles are tubes following Bézier curves (and hence forming a B-spline track). The dynamics model encourages continuity and smoothness. The image likelihood model compares gradient fields and intensities of predicted patches with image observations to evaluate a posterior distribution of the particles' importance. While we can currently usually track the nerve cores, usually fully throughout the vertebral canal, the algorithm does not delineate the full extent of the nerves and has sudden changes, and behaves poorly on peripheral nerves outside of the vertebral canal. We will modify the likelihood function and parameters and concentrate on achieving this during the project week.

Progress

  • Sudden changes in the segmentation can be ameliorated. In general, can now constrain the radius function to be smoother, to avoiding sudden changes in the segmentation.
  • With careful characterization of the newer radius function, we can segment some of the thinner peripheral nerves.
  • Full width estimation is hard as part of the current system, may have to be a separate extension.

Results are attached.