Difference between revisions of "Projects:RegistrationDocumentation:UseCaseInventory:WholeBody"

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(Created page with 'back to Library Main Page <br> ==Case Inventory Whole Body PET/CT == Whole body datasets have challenging issues re. fie…')
 
 
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Whole body datasets have challenging issues re. field of view. Different FOV can lead to image content drastically different causing difficulties for automated registration schemes.  On the upside, the richness of features make manual and fiducial-based alignment easier than with other image types.
 
Whole body datasets have challenging issues re. field of view. Different FOV can lead to image content drastically different causing difficulties for automated registration schemes.  On the upside, the richness of features make manual and fiducial-based alignment easier than with other image types.
  
*[[Image:RegLib C08 KneeMRI1.png|70px|lleft|RegLib 03: DTI alignment]] [[Image:RegLib C05 KneeMRI2.png|70px|lleft|RegLib C03: DTI alignment]]  '''Case 08: [[Projects:RegistrationDocumentation:RegLib_08_WholeBodyPET-CT|Intra-subject PET-CT scan.''' Each exam contains a co-registered PET-CT dataset. We seek to align image pairs taken at baseline and a follow-up exam]]
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*[[Image:RegLib_C08_WholeBodyPET-CT1.png|70px|lleft|RegLib C08: PET-CT1]] [[Image:RegLib_C08_WholeBodyPET-CT1.png|70px|lleft|RegLib C08: : PET-CT2]]  [[Image:Slicer3-6Announcement-v1.png‎|70px|This case is complete and up to date for version 3.6.1]] '''Case 08: [[Projects:RegistrationLibrary:RegLib_C08|Intra-subject PET-CT scan.''' Two exams each with a co-registered PET-CT dataset.]]

Latest revision as of 21:49, 5 October 2010

Home < Projects:RegistrationDocumentation:UseCaseInventory:WholeBody

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Case Inventory Whole Body PET/CT

Whole body datasets have challenging issues re. field of view. Different FOV can lead to image content drastically different causing difficulties for automated registration schemes. On the upside, the richness of features make manual and fiducial-based alignment easier than with other image types.