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Johns Hopkins DTI Projects Jonathan Farrell Bennett Landman, Hao Huang, Thomas Ng Man Cheuk, Susumu Mori.

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Presentation on theme: "Johns Hopkins DTI Projects Jonathan Farrell Bennett Landman, Hao Huang, Thomas Ng Man Cheuk, Susumu Mori."— Presentation transcript:

1 Johns Hopkins DTI Projects Jonathan Farrell Bennett Landman, Hao Huang, Thomas Ng Man Cheuk, Susumu Mori

2 2 Progress Report Slides

3 To Do List from 2005 High SNR DTI Calibration Dataset @ 1.5T –Several studies wrap up & publish –Original and coregistered datapost –Useful software post DTI Database of 61 Healthy Controls @ 1.5T –Original datapost –Coregistered and processed datapost Image Distortion Correction for DTI –Studywrap up & publish Tractography Reproducibility –Studywrap up & publish

4 Progress Report in 2006 High SNR DTI Calibration Dataset @ 1.5T –Several studies2 papers submitted –Original and coregistered dataPosted –Useful software2 posted + 1 soon DTI Database of 61 Healthy Controls 1.5T –Original data Posted –Coregistered and processed datasoon Image Distortion Correction for DTI –Studyunder revision (round 2) Tractography Reproducibility –Studyunder revision (round 2)

5 Summary of Each Project Goal Results Endpoints

6 DTI Calibration Study: SNR QUESTION: How does SNR affect DTI contrasts in vivo ? TAKE HOME POINT:Provide methods to calibrate SNR across sites ENDPOINT:Paper submitted September 2006

7 DTI Calibration Study: DW Scheme QUESTION:  Which diffusion weighting scheme should you use and why? TAKE HOME POINT:  Use a scheme with many directions ( ~ 30) to get uniform precision and accuracy at all fiber orientations. BUT…Effect size is small (less than intra and inter scan variability) ENDPOINT:Paper submitted October 2006

8 Multi-Site DTI Calibration Study GOAL:  Measure accuracy and precision of DTI contrasts at several imaging sites and scanners. DATA COLLECTION SITES:  Johns Hopkins  Duke  MGH  University of Texas South Western DETIALS:  Will make DTI-contrast vs SNR curves  Hopefully, the sites show similar behavior

9 Software: CATNAP GOAL:  To simplify and accelerate DTI & anatomical data processing HOW IT WORKS:  Coregistration with FSL FLIRT  Computes DTI gradient table  Computes diffusion tensor and DTI contrasts DETIALS:  Runs in MATLAB  Philips data only (so far) http://www.nbirn.net/downloads/

10 Software: DTI_gradient_table_creator GOAL:  Figure out the gradient table for Philips DTI data HOW IT WORKS:  Takes scanner / imaging options & parameters into account Rules can be tricky ! DETIALS:  MATLAB function  JAVA applet (online) http://www.nbirn.net/downloads/

11 Software: PARtoNRRD_Philips GOAL:  Create NRRD headers files for Philips DTI data .nhdr files contain all relevant DTI parameters  Resolution, FOV, Slices  Gradient directions, b-value, coordinate space  Compatible with Slicer HOW IT WORKS:  Uses.par file (Philips text file)  Uses DTI_gradient_table_creator_Philips_RelX WHAT YOU NEED : .nhdr file and.rec (data file)  Will be posted soon http://www.nbirn.net/downloads/

12 GOAL:  Distribute DTI data for 61 healthy controls DTI Database of Healthy Controls ISSUES:  Data management, defacing and de-identification ENDPOINT:  Original data (posted), coregistered data (TBD), meta-data (TBD) http://www.nbirn.net/downloads/

13 Tractography Reproducibility 0 0.2 0.4 0.6 0.8 1 1.2 Cingulum Corticospinal tract Anterior thalamic radiation Superior long. fasciculus Inferior long. fasciculus Inferior frontocc. fasciculus Uncinate fasciculus Intra-rater Inter-rater Almost perfect Substantial Moderate Fair GOAL:  Test reproducibility of tractography  Performed multi-site inter-rater tests for 11 major WM tracts. RESULTS:  Substantial reproducibility was observed for the protocol developed under this project ENDPOINT:  Paper submitted and under revision

14 Image Distortion Correction for DTI a)Non distorted T1w image, b) DTI with distortion c)Landmark-based LDDMM correction d)Intensity –based SPM e) segmentation-based SPM. f) The LDDMM method undistorts the image smoothly g) Guantifies the distortion by Jacobian. Although the segmentation- based SPM could correct the distortion (e), the transformation contains severe discontinuity (h), which may cause DTI calculation errors. Paper is in preparation. Working on implementing other techniques (Song, others)


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