Difference between revisions of "Stanford SIMBIOS: Whole Body Segmentation for Simulation"

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<h1>Approach, Plan</h1>
 
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Investigate the existing functionality of EMSegementer to extract whole body models from CT and MR datasets.  Initial efforts will be focused on developing atlases of specific joints (e.g. the knee) and evaluating EMSegmenter algorithms.  The plan is to have imported MRI knee geometries in EMSegmenter and create an average atlas before the project week.  During the project week, the EMSegmenter algorithm will be tested on a specific subject geometry.
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Investigate the existing functionality of EMSegementer to extract whole body models from CT and MR datasets.  Initial efforts will be focused on developing atlases of specific joints (e.g. the knee) and evaluating EMSegmenter algorithms.  The plan is to have imported MRI knee geometries in EMSegmenter and create an average atlas before the project week.  During the project week, the EMSegmenter algorithm will be tested on a specific subject geometries.
 
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Revision as of 22:01, 15 December 2008

Home < Stanford SIMBIOS: Whole Body Segmentation for Simulation
Example whole-body CT dataset from WashU displayed in 3D Slicer.
Articulated musculoskeletal models.

Key Investigators

  • Stanford: Harish Doddi, Saikat Pal, and Scott Delp
  • WashU: Daniel Marcus
  • Harvard: ??

Project

Objective

The aim of this project is to develop an automatic/semi-automatic methodology to convert whole body imaging datasets into three-dimensional models for neuromuscular biomechanics and finite element simulations. Initially, we will investigate the existing capabilities in EMSegmenter software to automatically segment the knee joint.

Approach, Plan

Investigate the existing functionality of EMSegementer to extract whole body models from CT and MR datasets. Initial efforts will be focused on developing atlases of specific joints (e.g. the knee) and evaluating EMSegmenter algorithms. The plan is to have imported MRI knee geometries in EMSegmenter and create an average atlas before the project week. During the project week, the EMSegmenter algorithm will be tested on a specific subject geometries.

Progress