ProjectWeek200706:LesionClassificationInLupus
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Key Investigators
- MIND/UNM: Jeremy Bockholt, Mark Scully
- MGH:Bruce Fischl
- UIowa: Vincent Magnotta
Objective
Our goal is to automatically, or with little or no manual human rater input, accurately tissue classify our example lupus data-set into gray, white, csf, and lesion classes.
Approach, Plan
Our approach is to utilize existing automatic lesion classification techniques, both within NA-MIC kit and external to it.
Our plan for the project week is to learn and use EMSegment (S. Wells), BRAINS2 (V. Magnotta), and Constructing Image Graphs for Lesion Segmention (M. Prastawa). We will learn and begin to compare and contrast these approaches with a bronze standard (manual rater tracings) of lesions.
Progress
- Provided Kilian Pohl and Brad Davis an example anonymous demo case with raw t1, t2, and flair, and coregistered t1, t2, flair and manually traced lesion images.
- Mark Scully has installed current Slicer3 and run the EMSegment tutorial with tutorial data
- Kilian and Brad helped us with Slicer3 EMSegment questions
- We talked with Brad about the need of the EMSegment module to provide co-registration of t1, t2, and flair, as well as registration of modalities to the atlas images
- We talked with Vince Magnotta about how to run the BRAINS2 lesion method on this example lupus data
- Future Worklist
- Share data with Guido and/or get the UNC tools to apply that approach on sample data set.
References
Additional Information
Using an exemplar case that has already been processed using non-NAMIC kit tools:
- Use existing NA-MIC kit to coregister T1, T2, Flair
- Use the EM Segment in slicer 2-3.X to classify grey, white, csf, and white matter lesion
- Summarize the volume and location of lesions