Difference between revisions of "2014 Summer Project Week:Slicer Murin Shape Analysis"
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<li>We use landmarks to identify the anatomical regions across our developmental series of fetal samples. | <li>We use landmarks to identify the anatomical regions across our developmental series of fetal samples. | ||
<li>We want to be able segment brains from about 600 volumes and do a coupled analysis of facial and brain phenotypes. <br> | <li>We want to be able segment brains from about 600 volumes and do a coupled analysis of facial and brain phenotypes. <br> | ||
− | + | [[Image:Fetus variation picture.PNG|400px]] | |
</ul> | </ul> | ||
Revision as of 15:20, 24 June 2014
Home < 2014 Summer Project Week:Slicer Murin Shape AnalysisKey Investigators
- Murat Maga (Seattle Children's Research Institute & University of Washington Dept. of Pediatrics)
- Ryan Young (Seattle Children's Research Institute)
Project Description
- Face is the major diagnostic feature to identify
- Brain and the CNS are affected primarily.
- What's the earliest time we begin to detect changes in the face?
- How does the brain volumes (and gross morphology) relate to changes in the face?
Micro Computed Tomography File:Stained registered sample mCT.zip
- Meet the community and learn
- Implement the landmark based Procrustes Analysis in Slicer
Objective
- Create a GPA/PCA shape analysis and visualization module for Slicer.
Approach, Plan
- Impliment GPA/PCA shape analysis in python
- Visualize the deformation of a reference volume along the principle components using thin plate splines()
- Ability to create semi-landmarks to increase spatial coverage.
- User will a uniformly sampled point cloud by entering the number of semi-landmarks. Existing “hard” landmarks will be used for their distribution. This will serve as the template to be transferred to all remaining volumes (atlas)
- The template will be transferred to a new surface. Existing “hard” landmarks will allow for correspondence. The transferred points will then be moved along the surface of the volume by optimizing the bending energy function.
- The coordinates of the slid landmarks will be saved into a new fiducial list, from which the GPA analysis can be conducted.
Progress
- Generalized Procrustes Alignment
- Principal Component and Singular Value Decomposition of the Procrustes aligned coordinates
- Thin Plate Spline visualization of the shape variables from PCA and/or SVD (by either morphing a reference volume along the shape variable, or visualizing the TPS grid using Transformation Visualizer module).