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

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==Case Inventory fMRI ==
 
==Case Inventory fMRI ==
 
The most common task in functional MRI (fMRI) registration is aligning the functional data with an anatomical reference or fiber-tracts derived from DTI. Because the fMRI is time-series data, the entire 4D volumes are often large and realigning is memory intensive. The fMRI series also often contain significant distortions and low tissue contrast, making automated intensity-based registration is also challenging.  
 
The most common task in functional MRI (fMRI) registration is aligning the functional data with an anatomical reference or fiber-tracts derived from DTI. Because the fMRI is time-series data, the entire 4D volumes are often large and realigning is memory intensive. The fMRI series also often contain significant distortions and low tissue contrast, making automated intensity-based registration is also challenging.  
==Registration Case Inventory fMRI==
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*[[Image:RegLib C09 fMRI1.png|70px|lleft|RegLib 09: T1 SPGR]] [[Image:RegLib C09 fMRI2.png|70px|lleft|RegLib 09: fMR]]  '''Case 09: [[Projects:RegistrationDocumentation:RegLib_09_fMRI|fMRI alignment to structural scan (T1)]]'''
 
*[[Image:RegLib C09 fMRI1.png|70px|lleft|RegLib 09: T1 SPGR]] [[Image:RegLib C09 fMRI2.png|70px|lleft|RegLib 09: fMR]]  '''Case 09: [[Projects:RegistrationDocumentation:RegLib_09_fMRI|fMRI alignment to structural scan (T1)]]'''

Revision as of 20:29, 3 February 2010

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Case Inventory fMRI

The most common task in functional MRI (fMRI) registration is aligning the functional data with an anatomical reference or fiber-tracts derived from DTI. Because the fMRI is time-series data, the entire 4D volumes are often large and realigning is memory intensive. The fMRI series also often contain significant distortions and low tissue contrast, making automated intensity-based registration is also challenging.