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Anatomical
Measures
John Ashburner
John@fil.Ion.Ucl.Ac.Uk
 Segmentation
 Morphometry
Contents
Segmentation
Gaussian mixture model
Including prior probability maps
Intensity non-uniformity correction
Morphometry
Segmentation - Mixture Model
Intensities are modelled by a mixture of K
gaussian distributions, parameterised by:
Means
Variances
Mixing proportions
Can be multi-spectral
Multivariate
gaussian
distributions
Segmentation - Priors
Overlay prior belonging probability maps to assist
the segmentation
Prior probability of each voxel being of a particular
type is derived from segmented images of 151
subjects
Assumed to be
representative
Requires initial
registration to
standard space
Segmentation - Bias Correction
A smooth intensity
modulating function can
be modelled by a linear
combination of DCT
basis functions
Segmentation - Algorithm
 Results contain some
non-brain tissue
 Removed
automatically
using morphological
operations
Erosion
Conditional dilation
 Below: examples of segmented images
 Right: some non-brain tissue may be included
in the GM and WM classes, which can be
removed
 Above: T1 image and “brain mask”
 Centre: GM and WM before cleaning up
 Below: cleaned up GM and WM
.
Partial volume effects can be
problematic - no longer Gaussian
Mis-registration with the prior
probability images results in poor
classification. This figure shows the
effect of translating the image relative
to the priors before segmenting.
Known Problems
Other Limitations
Assumes that the brain consists of only GM and
WM, with some CSF around it.
No model for lesions (stroke, tumours, etc)
Prior probability model is based on relatively
young and healthy brains.
Less appropriate for subjects outside this population.
Needs reasonable quality images to work with
artefact-free
good separation of intensities
Spatial Normalisation using Tissue Classes
Multi-subject functional imaging requires GM of
different brains to be in register.
Better spatial normalisation by matching GM from
segmented images, with a GM template.
The future: Segmentation, spatial normalisation
and bias correction combined into the same
model.
Spatial Normalisation using Tissue Classes
The same strategy as for “Optimised VBM”
Original MRI
Template
Grey Matter
Segment
Affine register
Priors Deformation
Affine Transform
Spatial Normalisation
- estimation
Spatial Normalisation
- writing
Spatially Normalised
MRI
Contents
Segmentation
Morphometry
Volumes from deformations
Serial scans
Voxel-based morphometry
Template
Warped
Original
Deformation Field
Deformation field
Jacobians
Jacobian Matrix (or just “Jacobian”)
Jacobian Determinant (or just “Jacobian”) - relative volumes
Early
Late
Difference
Data from the
Dementia Research
Group, Queen Square.
Serial Scans
Regions of expansion and contraction
Relative
volumes
encoded in
Jacobian
determinants.
“Deformations
Toolbox” can
be used for
this.
Begin with
rigid-
registration
Late Early
Warped early Difference
Early CSF
Late CSF
Relative volumes
CSF “modulated” by
relative volumes
Late CSF - Early CSF Late CSF - modulated CSF
Smoothed
Voxel-based Morphometry
Pre-process images of several subjects to
highlight particular differences.
Tissue volumes
Use mass-univariate statistics (t- and F-tests) to
detect differences among the pre-processed
data.
Use Gaussian Random Field Theory to interpret
the blobs.
Pre-processing for Voxel-Based
Morphometry (VBM)
Units for pre-processed data
Before convolution Convolved with a circle Convolved with a Gaussian
Units are mm
3
of original grey matter per mm
3
of spatially normalised
space
“Globals” for VBM
Shape is multivariate
Dependencies among
volumes in different
regions
SPM is mass univariate
“globals” used as a
compromise
Can be either ANCOVA
or proportional scaling
Where should any
difference between the two
“brains” on the left and that
on the right appear?
Nonlinearity
Circles of uniformly
increasing area.
Smoothed
Plot of intensity at circle
centres versus area
Caution may be needed when looking for linear
relationships between grey matter concentrations
and some covariate of interest.
Validity of the statistical tests in SPM
Residuals are not normally distributed.
Little impact on uncorrected statistics for
experiments comparing groups.
Probably invalidates experiments that compare one
subject with a group.
Need to use nonparametric tests that make less
assumptions.
Corrections for multiple comparisons.
OK for corrections based on peak heights.
Not valid for corrections based on cluster extents.
SPM makes the inappropriate assumption that the
smoothness of the residuals is stationary.
• Bigger blobs expected in smoother regions.
Friston et al (1995): Spatial registration and
normalisation of images.
Human Brain Mapping 3(3):165-189
Ashburner & Friston (1997): Multimodal
image coregistration and partitioning - a
unified framework.
NeuroImage 6(3):209-217
Collignon et al (1995): Automated multi-
modality image registration based on
information theory.
IPMI’95 pp 263-274
Ashburner et al (1997): Incorporating prior
knowledge into image registration.
NeuroImage 6(4):344-352
Ashburner et al (1999): Nonlinear spatial
normalisation using basis functions.
Human Brain Mapping 7(4):254-266
Ashburner & Friston (2000): Voxel-based
morphometry - the methods.
NeuroImage 11:805-821
References

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anat.ppt

  • 2. Contents Segmentation Gaussian mixture model Including prior probability maps Intensity non-uniformity correction Morphometry
  • 3. Segmentation - Mixture Model Intensities are modelled by a mixture of K gaussian distributions, parameterised by: Means Variances Mixing proportions Can be multi-spectral Multivariate gaussian distributions
  • 4. Segmentation - Priors Overlay prior belonging probability maps to assist the segmentation Prior probability of each voxel being of a particular type is derived from segmented images of 151 subjects Assumed to be representative Requires initial registration to standard space
  • 5. Segmentation - Bias Correction A smooth intensity modulating function can be modelled by a linear combination of DCT basis functions
  • 6. Segmentation - Algorithm  Results contain some non-brain tissue  Removed automatically using morphological operations Erosion Conditional dilation
  • 7.  Below: examples of segmented images  Right: some non-brain tissue may be included in the GM and WM classes, which can be removed  Above: T1 image and “brain mask”  Centre: GM and WM before cleaning up  Below: cleaned up GM and WM
  • 8. . Partial volume effects can be problematic - no longer Gaussian Mis-registration with the prior probability images results in poor classification. This figure shows the effect of translating the image relative to the priors before segmenting. Known Problems
  • 9. Other Limitations Assumes that the brain consists of only GM and WM, with some CSF around it. No model for lesions (stroke, tumours, etc) Prior probability model is based on relatively young and healthy brains. Less appropriate for subjects outside this population. Needs reasonable quality images to work with artefact-free good separation of intensities
  • 10. Spatial Normalisation using Tissue Classes Multi-subject functional imaging requires GM of different brains to be in register. Better spatial normalisation by matching GM from segmented images, with a GM template. The future: Segmentation, spatial normalisation and bias correction combined into the same model.
  • 11. Spatial Normalisation using Tissue Classes The same strategy as for “Optimised VBM” Original MRI Template Grey Matter Segment Affine register Priors Deformation Affine Transform Spatial Normalisation - estimation Spatial Normalisation - writing Spatially Normalised MRI
  • 14. Jacobians Jacobian Matrix (or just “Jacobian”) Jacobian Determinant (or just “Jacobian”) - relative volumes
  • 15. Early Late Difference Data from the Dementia Research Group, Queen Square. Serial Scans
  • 16. Regions of expansion and contraction Relative volumes encoded in Jacobian determinants. “Deformations Toolbox” can be used for this. Begin with rigid- registration
  • 17. Late Early Warped early Difference Early CSF Late CSF Relative volumes CSF “modulated” by relative volumes
  • 18. Late CSF - Early CSF Late CSF - modulated CSF Smoothed
  • 19. Voxel-based Morphometry Pre-process images of several subjects to highlight particular differences. Tissue volumes Use mass-univariate statistics (t- and F-tests) to detect differences among the pre-processed data. Use Gaussian Random Field Theory to interpret the blobs.
  • 21. Units for pre-processed data Before convolution Convolved with a circle Convolved with a Gaussian Units are mm 3 of original grey matter per mm 3 of spatially normalised space
  • 22. “Globals” for VBM Shape is multivariate Dependencies among volumes in different regions SPM is mass univariate “globals” used as a compromise Can be either ANCOVA or proportional scaling Where should any difference between the two “brains” on the left and that on the right appear?
  • 23. Nonlinearity Circles of uniformly increasing area. Smoothed Plot of intensity at circle centres versus area Caution may be needed when looking for linear relationships between grey matter concentrations and some covariate of interest.
  • 24. Validity of the statistical tests in SPM Residuals are not normally distributed. Little impact on uncorrected statistics for experiments comparing groups. Probably invalidates experiments that compare one subject with a group. Need to use nonparametric tests that make less assumptions. Corrections for multiple comparisons. OK for corrections based on peak heights. Not valid for corrections based on cluster extents. SPM makes the inappropriate assumption that the smoothness of the residuals is stationary. • Bigger blobs expected in smoother regions.
  • 25. Friston et al (1995): Spatial registration and normalisation of images. Human Brain Mapping 3(3):165-189 Ashburner & Friston (1997): Multimodal image coregistration and partitioning - a unified framework. NeuroImage 6(3):209-217 Collignon et al (1995): Automated multi- modality image registration based on information theory. IPMI’95 pp 263-274 Ashburner et al (1997): Incorporating prior knowledge into image registration. NeuroImage 6(4):344-352 Ashburner et al (1999): Nonlinear spatial normalisation using basis functions. Human Brain Mapping 7(4):254-266 Ashburner & Friston (2000): Voxel-based morphometry - the methods. NeuroImage 11:805-821 References