Difference between revisions of "DBP3:Utah:RegSegPipeline"
From NAMIC Wiki
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##the MRA contains the same FOV and has surrounding structures (liver, chest, spine etc) visible also, despite lower intensities. A global affine is thus not necessarily going to benefit from masking the heart, unless the relative motion of the heart becomes the dominant reason for misalignment. | ##the MRA contains the same FOV and has surrounding structures (liver, chest, spine etc) visible also, despite lower intensities. A global affine is thus not necessarily going to benefit from masking the heart, unless the relative motion of the heart becomes the dominant reason for misalignment. | ||
##Module used: [http://www.slicer.org/slicerWiki/index.php/Modules:BRAINSFit BRAINSfit] | ##Module used: [http://www.slicer.org/slicerWiki/index.php/Modules:BRAINSFit BRAINSfit] | ||
+ | ::*tried masking with both BrainsFit and RobustMultires modules. Both failed to provide better alignment with masking. | ||
#ROI definition (manual box ROI or automated via atlas) | #ROI definition (manual box ROI or automated via atlas) | ||
#segmentation of LA from MRA -> inner wall | #segmentation of LA from MRA -> inner wall | ||
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Image:DBP3_AFib_LA_overlay_2.jpg|Example contrast MRI with thresholded MRA as color overlay and areas of enhancement marked | Image:DBP3_AFib_LA_overlay_2.jpg|Example contrast MRI with thresholded MRA as color overlay and areas of enhancement marked | ||
Image:DBP3_histogramMRA.png|Histogram of MRA intensities: green = entire FOV, red: cardiac structures only (excl. aorta), which make only 6% of the total image content and thus are unlikely to disturb a registration based on the entire image. | Image:DBP3_histogramMRA.png|Histogram of MRA intensities: green = entire FOV, red: cardiac structures only (excl. aorta), which make only 6% of the total image content and thus are unlikely to disturb a registration based on the entire image. | ||
+ | Image:DBP3_Biasfield_masked-unmasked.png|Bias field correction results (N4ITK) with and without masking of the structures of interest. Masking causes a different correction not related to coil sensitivity but rather local image content. Masking is not recommended at this point. | ||
</gallery> | </gallery> |
Revision as of 21:10, 11 February 2011
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The CARMA DBP: MRI-based study and treatment of atrial fibrillation
Alex Zaitsev, Dominik Meier, Ron Kikinis
Pilot Studies on a Registration & Segmentation Pipeline & Workflow
Overall processing steps are (order tentative)
- N4 bias field correction for the MRI (surface coils):
- run on entire image gives some benefit that may be improved with masking: again the dominant intensity dropoff from the surface coil occurs along the chest wall and ribcage. Even if that is not the structure of interest, it is the low-freq. variation the bias correction algorithm is searching for, and masking that out can be counter-productive: via masking we may end up with a smoother image, but the intensity variations removed were not caused by the coil but are actually true signal.
- Module used: N4 ITK
- registration MRA>cMRI
- the MRA contains the same FOV and has surrounding structures (liver, chest, spine etc) visible also, despite lower intensities. A global affine is thus not necessarily going to benefit from masking the heart, unless the relative motion of the heart becomes the dominant reason for misalignment.
- Module used: BRAINSfit
- tried masking with both BrainsFit and RobustMultires modules. Both failed to provide better alignment with masking.
- ROI definition (manual box ROI or automated via atlas)
- segmentation of LA from MRA -> inner wall
- as a dynamic image the MRA contains significant spread and likely requires interactive segmentation/thresholding to yield a satisfactory LA volume
- Module used: Editor: thresholding or thresholding within Volumes thresholding option within Display tab, use iron colormap & low alpha setting to check for ventricular wall borders.
- cropping and island removal
- LA wall segmentation
- very small structure, most reliably done manually direct. Starting with automation may yield more effort on post-edits
- Module used: Editor: manual outline
- segmentation of enhancement within LA wall: intensity statistics. An atlas-based set of intensity distributions may be more meaningful here than a simple Otsu, because both amount and location of enhancement is unknown and can in theory be 0.
- registration follow-up -> baseline
- most reliably done on the post contrast MRI.
- DOF of 12 or even low-res BSpline should be ok
- Module used: BRAINSfit