ITK Release 4/A2D2 Projects/Comprehensive Workflow for Large Histology Segmentation and Visualization: Difference between revisions
(One intermediate revision by the same user not shown) | |||
Line 10: | Line 10: | ||
* New classes | * New classes | ||
** Artifact removal | ** Artifact removal | ||
*** itk::2PointCorrelationFunctionSegmentationInitialization.h | |||
*** itk::SupervisedBayesianClassifierFilter.h (name of developer..) | |||
** Image registration | ** Image registration | ||
Latest revision as of 15:48, 31 August 2011
Motivation
3D histology stacks are being increasingly used to understand gross anatomical changes and to provide valuable educational contexts. Most existing toolkits allow a 2D approach and do not meet the challenges posed by 3D histology. ITKv4 can facilitate the realization application level toolkits that will allow for a sensible registration, segmentation and reconstruction of digital slides depicting various organs and tissue systems. We will leverage our extensive experience in constructing ITK-based tools to process 3D histology. Modules will be included that will allow for pre-processing (color correction, artifact removal, etc.), rigid and non-rigid registration, material-based segmentation, and visualization. Additionally, we will provide access to multi resolution data that describes ensembles of nephrons in a human kidney. Our team includes an anatomist who will provide validation data and will deploy the tool in her anatomy classes. Thus, our proposed tool will bring a valuable user community into the ITK fold.
Goals
Data
Deliverables
- New classes
- Artifact removal
- itk::2PointCorrelationFunctionSegmentationInitialization.h
- itk::SupervisedBayesianClassifierFilter.h (name of developer..)
- Image registration
- Artifact removal
Team
- Raghu Machiraju
- Kun Huang
- Lisa Lee
- Hao Ding
- Arindam Bhattacharya