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Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing and Analysis Group Departments of Electrical Engineering Yale University
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Page 1: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Unified Joint Feature Registration for Brain Anatomical Alignment

Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan

Image Processing and Analysis GroupDepartments of Electrical Engineering

Yale University

Page 2: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Brain Anatomical Alignment• Brains are different:

– Shape.– Structure.

• Direct comparison of brains between different subject is not very accurate.

• Statistically and quantitatively more accurate study requires the brain image data to be put in a common “normalized” space through alignment.

• Examples of areas that need brain registration:– Studying structure-function connection.– Tracking temporal changes.– Generating probabilistic atlases.– Creating deformable atlases.

Page 3: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Studying Function-Structure Connection

Brain Function

Image

Alignment of Subjects

Comparison of Subjects After Alignment

Direct Comparison of Subjects Distribution Before Alignment

Distribution After Alignment

Page 4: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Inter-Subject Brain Registration

• Inter-subject brain registration: – Alignment of brain MRI images from different

subjects to remove some of the shape variability.

• Difficulties:– Complexity of the brain structure.– Variability between brains.

• Brain feature registration: – Choose a few salient structural features as a

concise representation of the brain for matching.

– Overcome complexity: only model important structural features.

– Overcome variability: only model consistent features.

Page 5: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Previous Work: 3D Sulcal Point Matching

Feature Extraction Extracted Point Features

Page 6: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Previous Work: 3D Sulcal Point Matching

Overlay of 5 subjects before TPS alignment:

After TPS alignment:

Page 7: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

A Unified Feature Registration Method

Outer Cortex Surface

Major Sulcal Ribbons

All FeaturesPoint Feature

Representation

Point Feature Representation

Feature Extraction Feature Fusion

Feature

Matching

Subject I

Subject II

Page 8: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Non-rigid Feature Point Registration

Page 9: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Unification of Different Features

• Ability to incorporate different types of geometrical features.– Points.

– Curves.

– Open surface ribbons.

– Closed surfaces.

• Simultaneously register all features --- utilize the spatial inter-relationship between different features to improve registration.

Page 10: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Joint Clustering-Matching Algorithm (JCM)

Page 11: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Overcome Sub-sampling Problem

• Sub-sampling (e.g. clustering) reduces computational cost for matching.

• In-consistency problem with sub-sampling:

• The in-consistency can be overcome by sub-sampling (clustering) and matching simultaneously.

Page 12: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Joint Clustering-Matching Algorithm (JCM)

• JCM:

• Reduce computational cost using sub-sampled cluster centers.

• Accomplish optimal cluster placement through joint cluster-matching.

• Symmetric: two way matching.

MatchingClusters Center Set V

Clustering

Cluster Center Set U

Clustering

Point Set X Point Set YOriginal RPM

• Diagram:

Page 13: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

JCM Energy Function

MatchingClusters Center Set V

Clustering

Cluster Center Set U

Clustering

Point Set X Point Set Y

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Page 14: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

JCM Energy Function

• Fuzzy assignment + least squares energy function:

• Row and column summation constraints.

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Page 15: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

JCM Example

• Matching 2 face patterns with JCM (click to play movie).

Page 16: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Experiments

Page 17: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Comparison of Different Features

• Different features can be used in our approach.

• Two types of features investigated:– Outer cortex surface.

– Major sulcal ribbons.

• Comparison of different methods:

Method I Method II Method III

Page 18: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Synthetic Study Setup

Template True Deformation (GRBF)

Target

Template RecoveryEstimated Deformation

(TPS)

Error Evaluation

Feature Matching

Change the choice of features to

compare method I, II and III

Page 19: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Results: Method I vs. Method III

• Outer cortical surface alone can not provide adequate information for sub-cortical structures.

• Combination of two features works better.

Page 20: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Results: Method II vs. Method III

• Major sulcal ribbons alone are too sparse --- the brain structures that are relatively far away from the ribbons got poorly aligned.

• Combination of two features works better.

Page 21: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Conclusion

• Combination of different features improves registration.

• Unified brain feature registration approach:– Capable of estimating non-rigid transformations without the

correspondence information.

– General + unified framework.

– Symmetric.

– Efficient.

Page 22: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Acknowledgements

• Members of the Image Processing and Analysis Group at Yale University: – Hemant Tagare.– Lawrence Staib. – Xiaolan Zeng. – Xenios Papademetris. – Oskar Skrinjar. – Yongmei Wang.

• Colleagues in the brain registration project:– Joseph Walline.

• Financial support is provided by the grants from the Whitaker Foundation, NSF, NIH.

Page 23: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Future Work

Page 24: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Estimating An Average Shape

• Given multiple sample shape (sample point sets), compute the average shape for which the joint distance between the samples and the average is the shortest.

Average ?

• Difficult if the correspondences between the sample points are unknown.

Page 25: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

“Super” Clustering-Matching Algorithm (SCM)

• Diagram:

MatchingMatchable

ClustersOutlier Cluster

Clusters Center Set V

Clustering

Matchable Clusters

Outlier Cluster

Clusters Center Set U

Clustering

Point Set X Point Set Y

Average Point Set Z

Matching and

Estimating

Page 26: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.
Page 27: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

End

• Further Information:– Web site: http://noodle.med.yale.edu/~chui/

Page 28: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

End

Page 29: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

2D Examples of RPM

Page 30: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.
Page 31: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.
Page 32: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Point Matching

Example Application: Face Matching

Page 33: Unified Joint Feature Registration for Brain Anatomical Alignment Haili Chui, Robert Schultz, Lawrence Win, James Duncan and Anand Rangarajan Image Processing.

Example Application: Face Matching


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