Slicer3:DTMRI
Contents
Goal
Development of the infrastructure for DT-MRI processing and visualization and fiber processing and visualization. A secondary goal is the integration of new and existing methods and algorithms for DT-MRI processing using the provided infrastructure. This integration will have as goal the porting of the current DT-MRI capabilities existing in Slicer 2.x and the addition of new features.
Global Features
The general features can be grouped in:
- Core features for DTMRI processing
- Solution enviroments for DTMRI analysis
The first group will provide the necessary tools to build the Solutions that will be the user front-end.
Core features
- Tensor Estimation from DWI: this part is a clear candidate for the an implementation using CLP. A desired feature would be the possibility of estimating tensors using different methods, namely:
- Least Squares
- Weighted Least Squares
- Non-linear methods
- Maximum Likelihood approach
Teem currently provides a clean interface to do this estimation in a voxel by voxel fashion. Gordon and Raul have worked on a vtk filter to encapsulate the estimation process.
- Diffusion Weighted Images preprocessing: another candidate for CLP. Integration of Rician noise filtering done at Utah.
- Tools for
- Computation of scalar measurements from tensor fields
- Fast rendering of tensor fields using glyphs: line, box, ellipsoid, superquadric.
- Fiber Tracking using integration techniques
- Statistics along fiber tracts
- Multiple ROI seeding and logic interconnections between ROIs
- Fiber clustering techniques
- Algorithms for DT-MRI registration: Xiadoing et al from GE have presented a nice method for DWI registration that has great potential and deals in a clean way with many of the technical difficulties of registering only tensor fields.
- Algorithms for DT-MRI segmentation.
Solution enviroments
- Connectivity solution: enviroment for ROI definition and fiber bundling based on clustering techniques or logic operations.
Multiple ROI seeding and logical interconnection between ROIs.
- Fiber editing solution: enviroment for manually editing individual fibers/bundles, reassignation of fibers to bundles.
- Fiber analysis solution: enviroment to run statistical analysis on fiber bundles.
- DT-MRI segmentation: enviroment for segmentation of DT-MRI fields
- DT-MRI registration: enviroment for registration of DT-MRI fields (possibly via DWI registration -- work done at GE and presented in MICCAI '06).
Plan
We will achieve the aforementioned goal in two stages:
Stage 1
- Design and Implementation of the basic infrastructure to handle DWI datasets and DT-MRI datasets
- Development of the hierchachy of MRML nodes for the DWI and Tensor dataset representation
- Development of Storage nodes to I/O these new datasets. Given the current limitation of the Archtype readers, we will temporally fall back on the vtkNRRDReader/Writer existing in Slicer2.x for I/O operations.
- Definition of the basic logic for the display of DWI datasets and Tensor datasets
- Design and Implementation of the basic infrastructure to handle fiber and fiber bundles.
- Development of Fiber MRML nodes for Fiber and Fiber bundles representation.
- Development of logic componets for fiber optimal rendering. There is a need for finding a good trade off between performance (real time interaction with fibers) and number of actors assigned to the fibers. This is an area that Kitware might contribute on.
- Tracking method porting/implementation. It is argueable that we want to incorporate this as a CLP module if we want to keep real-time performance in terms of interactive tractography.
Stage 2
- Implementation of core features based on the infrastructure.
- Development of solution enviroments.