Title: Segmentation of Brain MRI in Young Children
1Segmentation of Brain MRI in Young Children
- Maria Murgasova1, Leigh Dyet2,
- David Edwards2, Mary Rutherford2, Jo Hajnal2 and
Daniel Rueckert1 - 1Department of Computing
- 2Department of Imaging Sciences
- Imperial College London
2Motivation
- The effect of premature birth
- impaired brain development
- neurological, behavioural, learning difficulties
- To understand and treat the changes we need to
measure - volumes of different brain structures
- growth of different brain structures
- This requires
- segmentation of anatomical
- structures at different time points
3Registration-based segmentation
- Non-rigid registration of atlas to subject
- Segmentation is warped from atlas to subject
- Advantage
- Does not assume any tissue intensity model
- gt successful in central brain structures
- Disadvantage
- Does not deal well with complex cortical folding
4EM-based segmentation
- Expectation-Maximisation framework (Dempster
1977) - E-step
- soft segmentation
- MRF for smoothness and connectivity (Zhang 2001)
- Partial volume effect model (Joshi 2005)
- M-step
- Tissue intensity distributions (Van Leemput 1999)
- Bias estimation (Wells 1996, Van Leemput 1999)
- Registration of a probabilistic atlas (Ashburner
2005, dAgostino 2006 , Pohl 2005)
5EM-based segmentation
- Classical model for brain MRI
- 3 basic tissue classes (WM, GM, CSF)
- Tissue intensity distributions approximately
Gaussian - Advantage
- Can capture complexity of cortex based on
intensity - Disadvantage
- Cant deal well with overlaps in tissue intensity
distributions
Real tissue distributions of 2-year-old subject
based on manual segmentation
6EM-based segmentation
- Sub cortical structures brighter than cortical
- Overlaps cause significant difficulties
- Classical WM, GM, CSF model not sufficient for
correct segmentation
The histograms were normalised to unit height
7EM-based segmentation
- Probabilistic atlas
- Aligned with the image
- Spatially constrains the segmentation process
- Helps to overcome misclassification due to
overlaps in tissue intensity distributions
8Application of EM to young children
- Bias correction N3 (Sled 1998)
- Affine registration of probabilistic atlas
- EM segmentation (Van Leemput 1999)
- E-step soft segmentation
- M-step Gaussian tissue intensity distribution
9Application of EM to young children
- During early childhood the shape of central brain
structures differs significantly from those
during adulthood - WM overestimated in sub-cortical area
- Requires a specific atlas for young children
Segmentation of 1-year-old
Adult
Adult atlas
1-year-old
10Creating a population-specific atlas
Manual segmentation
Reference subject
Average subjects
Non-rigid registration
Population specific atlas
Affine registration
New subject
Registration-based segmentation
11Atlas comparison
- Atlas for
- 2-year-olds
- (from
- 37 subjects)
- Adult atlas
12Segmentation results
- Improvement in thalamus
- 1.0T brain MRI of a 2-year-old child
Image
Manual segmentation
EM with adult atlas
EM with new atlas
13Segmentation results
- Improvement overall
- 1.0T brain MRI of a 2-year-old child
Image
Adult atlas
Our atlas
14Validation
- Dice metric
- Agreement between manual and automatic
segmentation - Tman set of samples in manual segmentation
- Taut set of samples in automatic segmentation
15Validation
- 1 subject complete manual segmentation
EMS original software for EM segmentation by
Koen Van Leemput
16Validation
- 4 subjects
- manual segmentation of 6-8 slices
- manual segmentation of thalamus
17Conclusions
- Atlas can be generated dynamically for different
populations
Age 1
Age 2
18Conclusions
- Global model for intensity distributions of WM
and GM is not sufficient - Population-specific atlas substantially improves
the segmentation results - Future work
- Include more brain structures in the model
(Fischl 2002, Pohl 2005) - Local tissue intensity distribution estimation
19Acknowledgements