Introduction and Acknowledgements
This work is part of the National Alliance for Medical Image Computing (NA-MIC), funded by the National Institutes of Health through the NIH Roadmap for Medical Research, Grant U54 EB005149. Information on NA-MIC can be obtained from the NA-MIC website.
A simple region growing segmentation algorithm based on intensity statistics. To create a list of fiducials (Seeds) for this algorithm, click on the tool bar icon of an arrow pointing to a sphere fiducial to enter the 'place a new object mode' and then use the Markups module. This module uses the Slicer Command Line Interface (CLI) and the ITK filters CurvatureFlowImageFilter and ConfidenceConnectedImageFilter.
The fiducial tool bar icon (identified inside a red box) on the Slicer tool bar is shown.
This module can be used to obtain a volumetric segmentation of a region of interest. Most frequently used for these scenarios:
- Example volumetric segmentation of a tumor given a set of fiducial points selected on the tumor:
This module is useful for obtaining a 2-class segmentation. The fiducials are placed on parts of the image that correspond to the target (foreground). The segmentation can be refined by modifying the number of iterations, the multiplier, and the neighborhood radius options available on the user interface panel. Additionally, the user may also place additional fiducials on the image.
Panels and their use
- Smoothing Parameters: Parameters to denoise the image prior to segmenting
- Smoothing iterations (smoothingIterations): Number of smoothing iterations
- Timestep (timestep): Timestep for curvature flow
- Segmentation Parameters: Parameters to prescribe the region growing
- Number of iterations (iterations): Number of iterations of region growing
- Multiplier (multiplier): Number of standard deviations to include in intensity model
- Neighborhood Radius (neighborhood): The radius of the neighborhood over which to calculate intensity model
- Output Label Value (labelvalue): The integer value (0-255) to use for the segmentation results. This will determine the color of the segmentation that will be generated by the Region growing algorithm
- Seeds (seed): Seed point(s) for region growing
- IO: Input/output parameters
- Input Volume (inputVolume): Input volume to be filtered
- Output Volume (outputVolume): Output filtered
The user interface panel:
Information for Developers
|Section under construction.|