Difference between revisions of "Projects:RegistrationLibrary:RegLib C02"
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|[[Image:RegUC_thumb_FLAIR_sag.png|150px|lleft|this is the moving image. The transform is calculated by matching this to the reference image]] | |[[Image:RegUC_thumb_FLAIR_sag.png|150px|lleft|this is the moving image. The transform is calculated by matching this to the reference image]] | ||
|[[Image:RegUC_thumb_FLAIR_sag_labelmap.jpg|150px|lleft|this is a passive image to which the calculated transform is applied. It is a label-map in the same space as the moving FLAIR image]] | |[[Image:RegUC_thumb_FLAIR_sag_labelmap.jpg|150px|lleft|this is a passive image to which the calculated transform is applied. It is a label-map in the same space as the moving FLAIR image]] | ||
+ | |align="left"|LEGEND<br> | ||
+ | [[Image:Button_red_fixed.jpg|20px|lleft]] this indicates the reference image that is fixed and does not move. All other images are aligned into this space and resolution<br> | ||
+ | [[Image:Button_green_moving.jpg|20px|lleft]] this indicates the moving image that determines the registration transform. <br> | ||
+ | [[Image:Button_blue_tag.jpg|20px|lleft]] this indicates images that passively move into the reference space, i.e. they have the transform applied but do not contribute to the calculation of the transform. | ||
|- | |- | ||
|[[Image:Button_red_fixed.jpg|40px|lleft]] T1 SPGR | |[[Image:Button_red_fixed.jpg|40px|lleft]] T1 SPGR |
Revision as of 19:21, 21 October 2009
Home < Projects:RegistrationLibrary:RegLib C02Back to ARRA main page
Back to Registration main page
Back to Registration Use-case Inventory
Contents
Slicer Registration Use Case Exampe: Intra-subject Brain MR FLAIR to MR T1
Objective / Background
This scenario occurs in many forms whenever we wish to align all the series from a single MRI exam/session into a common space. Alignment is necessary because the subject likely has moved in between series.
Keywords
MRI, brain, head, intra-subject, FLAIR, T1, defacing, masking, labelmap, segmentation
Input Data
- reference: T1 SPGR , 1x1x1 mm voxel size, sagittal, RAS orientation
- moving: T2 FLAIR 1.2x1.2x1.2 mm voxel size, sagittal, RAS orientation
- Content preview: Have a quick look before downloading: Does your data look like this? SPGR Lighbox , FLAIR Lighbox
- download dataset to load into slicer (~17 MB zip archive)
Registration Challenges
- we expect the amount of misalignment to be small
- we know the underlying structure/anatomy did not change, hence whatever residual misalignment remains is of technical origin.
- the different series may have different FOV. The additional image data may distract the algorithm and require masking
- the different series may have very different resolution and anisotropic voxel sizes
- hi-resolution datasets may have defacing applied to one or both sets, and the defacing-masks may not be available
- the different series may have different contrast.
- individual series may contain motion or other artifacts
Key Strategies
- the SPGR is the anatomical reference. It is also higher resolution. Unless there are overriding reasons, always use the highest resolution image as your fixed/reference.
- the defacing of the SPGR image introduces sharp edges that can be detrimental. Best to mask that area. If you have the mask available, use it. But in this case since we already have a skull-stripping mask as part of the labelmap, that is even better. We will load the labelmap and use it as mask in finding the registration
- because the two images are still reasonably similar in contrast, we can choose an intensity ratio as cost function, which is less stable but if successful provides a more precise alignment than mutual information.
Procedures
- download step-by step text instructions
- download registration parameter presets file (load into slicer and run the registration)
- download/view guided video tutorial
- download power point tutorial
Registration Results
- result transform file (load into slicer and apply to the target volume)
- result screenshots (compare with your results)
- result evaluations (metrics)