Title: Biomechanical Modeling of the Brain
1Biomechanical Modeling of the Brain
MRI Divison, Department of Radiology, Image
Guided Therapy Program Neuroimaging Analysis
Center, a NCRR national resource center
2Acknowledgements
Black, P. McL Grimson, E. Guttmann, C. Halle,
M.Hynynen, K. Jolesz, F.A. Nabavi, A.
Panych, L. Shenton, M. Tempany, C. Tannenbaum,
A. Warfield, S. Wells, W. Westin, C.F.
NCRR, NCI, NLM, NSF, DOD et al.
Http//www.spl.harvard.edu
3Clinical Application
4Conventional Surgery See the surface
Provided by Nakajima, Atsumi et al.
5Image Guided Surgery See under the surface
Provided by Leventon et al.
6Imaging of Intraop. Changes
Craniotomy
Initial
7Minor Technical Problems
- Gather ALL diagnostic information
- Integrate, process and enrich
- Update during procedure
8Template moderated statistical Classification
Intensity and Anatomical Feature Space
Provided by Kaus
9Hierarchical Control Strategy
Skin Brain
Ventricles Tumor
Provided by Kaus et al.
10Improving fMRI Activation Detection Mutual
Information (MI)
- Test the hypothesis that the experimental
protocol signal and the voxel intensities are (or
are not) statistically independent using MI.
MI is the optimal test statistic (using
Neyman-Pearson criteria) !
GLM
MI
Provided by Wells
11Tensor Imaging
Water diffusion in myelinated fibers
Provided by Sierra et al.
12Tensor Display
Close-line
Close-plane
Close-sphere
3 classes
Provided by Sierra et al.
13Tensor Visualization
Provided by Sierra et al.
14Int. Capsule and Corpus
Provided by Westin, Meier
15Dislocation of WM tracts
1.5T
0.5T
Oligodendroglioma
Provided by Meier, Mamata, Westin et al.
16Distruction of WM tracts
red optic radiation green genuculocalcarine
tract light green auditory radiation
green corpus callosum fiber disruption by GBM
Provided by Westin, Mamata, et al.
17Minor Technical Problems
- Gather ALL diagnostic information
- Integrate, process and enrich
- Update during procedure
18Data Fusion
Provided by Nabavi, Wells et al.
19fMRI
Provided by Wible,Nabavi, Gering, Odonnell
20Non-Imaging Data TMS
Provided by Leventon et al.
21Atlas
- Mapping atlas knowledge into patient data sets
- Guessing the location of the cortico-spinal tract
Provided by Kaus, Nabavi, Warfield
22Colon Segmentation and Flattening
Provided by Haker, Tannenbaum
23Polyps-Highlighted Rendering
Provided by Haker, Tannenbaum
24White Matter Curvature Map
Provided by Haker, Tannenbaum
25White Matter Flattening
Provided by Haker, Tannenbaum
26Minor Technical Problems
- Gather ALL diagnostic information
- Integrate, process and enrich
- Update during procedure
27Intraoperative MRI
Open configuration MR scanner
Operating Room
Provided by Pergolizzi
28Total procedures 656 Craniotomy
447 Biopsy 143 Others
66 (Laser ablation 13,
transsphenoidal resection 22, etc)E.g. Resection
of Low Grade Glioma
Provided by Black, Nabavi, Talos
29Surgery or Science?
- Clinical goal Map all the preoperative data into
the patients brain as it changes during surgery - Basic science goal In-vivo measurement of
mechanical properties under mechanical and
pharmacological stress - Research is only doable if patient care is not
affected in a negative way
30Brain Shift During Surgery
Provided by Warfield, Ferrant et al.
Before surgery (1)
Dura opened (2)
Small resection (3)
Tumor resected (4)
Dura closed (5)
31Segmentation of the Brain
Provided by Warfield, Ferrant et al.
Before surgery (1)
Dura opened (2)
Small resection (3)
Tumor resected (4)
Dura closed (5)
32How to map pre-op. information into intra-op.
data sets Brain Shift happens
Courtesy A. Nabavi, S. Warfield
33More Minor Technical Problems
- Clinical goals Real time requirements
34Method
Provided by Warfield, Ferrant et al.
- Pathology is specific to the patient a patient
specific model is required.
35Connectivity of OR and Compute Servers
Cluster
IMRI Scanner
PR 5200 GE switch
Sunswitch GE
Visualization Workstation
Gigabit Ethernet
Provided by Warfield, Ferrant et al.
36Compute Platforms
Wildfire Cluster Scalable shared memory
architecture built on Sun E5k and E6k chassis, 36
250MHz UltraSPARC-II CPUs and 9GB RAM.
4 Sun Ultra 80s each with 4 450MHz UltraSPARC-II
CPUs, 2-4GB of RAM and Fast Ethernet connectivity.
Provided by Warfield, Ferrant et al.
37Data Acquisition
Provided by Warfield, Ferrant et al.
Slice 0
Slice 30
Time T2 Intra-operative image (just after
opening of the dura)
Time T3 Intra-op. image (brain has deformed)
Time T1 Pre-operative image
How to match 3D image at time T1 onto 3D image at
time T3, during a neurosurgery operation ?
38Biomechanical Simulation
Provided by Warfield, Ferrant et al.
- Active Surface provides known displacements at
some mesh vertices. - FEM based modelig of volumetric deformations
Sparse linear system of equations. - Parallel implementation using PETSc, MPI.
39Concept Sphere to Ellipsoid
Interpolate deformation field back onto the image
grid
Deform volume using surface deformation as a
constraint for a volumetric FE elastic model
Provided by Ferrant et al.
40Overview
Provided by Warfield, Ferrant et al.
41Timeline of Analysis
- Typical times with current data and
implementations on current hardware.
42Step 1 Segmentation
Provided by Warfield, Ferrant et al.
- Goal Identify critical structures
- Pre-operative segmentation as good as possible
- Intra-operative segmentation as fast as possible
43Brain Segmentation Before and After OP
1
1
2
2
1
4
i
f
i
f
3
3
4
4
2
5
i
f
i
f
5
5
6
6
3
6
i
f
i
f
Provided by Warfield et al.
44Step 2 FEM Construction
- Designed for generating multi-resolution FE
meshes from medical image data - First generate a uniform tetrahedralization
- Tetrahedral clipping and remeshing
- Adaptive refinement
Provided by Ferrant et al.
45Step 3 Update of Topology
Provided by Warfield, Ferrant et al.
46Step 3 in 3D
Provided by Warfield, Ferrant et al.
- Elements in the resected areas are removed from
the mesh
47Step 4 Volume Deformation (1)
Provided by Warfield, Ferrant et al.
48Volume Deformation (2)
Provided by Warfield, Ferrant et al.
49Visualization of volumetric deformation (3)
3 TO 4
4 TO 5
Provided by Warfield, Ferrant et al.
50Visualization of Stress-Tensors (1)
- Stress-tensors color-coded based on the largest
eigenvalue of the tensor.
2-3
1-2
Provided by Warfield, Ferrant et al.
51Visualization of Stress-Tensors (2)
3-4
4-5
Provided by Warfield, Ferrant et al.
52Parallelization
Twenty 250MHz CPU SMP 77511 equations
53Volumetric FE Deformation
Volumetric Deformation
Provided by Ferrant et al.
54Updating preoperative imaging
- The volumetric deformation field can be
interpolated back onto the gray scale images
55Step 5 Landmark Validation
- Landmarks were manually placed on slices and
deformed with the algorithm - Mean error was about 2.5 mm
56The Role of HPC in IGT
- Computationally expensive algorithms become
practical (from hours to minutes) - Achieving speed for intraprocedural processing
(from minutes to seconds) - Accommodate huge memory requirements during
exploratory phase of algorithm development
57Conclusions
- Clinically motivated work Provide better mapping
of preoperative and intraoperative information - Could provide in-vivo mechanical parameters of
the brain
58URL
Http//www.spl.harvard.edu Http//www.slicer.org