Difference between revisions of "DiffusionImaging"
Line 48: | Line 48: | ||
** Intravoxel Incoherent Motion (IVIM) and diffusion kurtosis analysis | ** Intravoxel Incoherent Motion (IVIM) and diffusion kurtosis analysis | ||
** Calculation many other derived indices such as ADC, MD, GFA, FA, RA, AD, RD | ** Calculation many other derived indices such as ADC, MD, GFA, FA, RA, AD, RD | ||
+ | ** Image statistics | ||
+ | |||
+ | * Segmentation | ||
+ | ** Automatic white matter bundle segmentation (TractSeg) [10] | ||
+ | ** Automatic brain mask segmentation | ||
+ | ** Manual image segmentation and operations on segmentations | ||
+ | ** SOON: automatic brain tissue segmentation | ||
* Fiber tractography | * Fiber tractography | ||
Line 83: | Line 90: | ||
** Fiber fitting and weighting similar to SIFT2 and LiFE [8,9] | ** Fiber fitting and weighting similar to SIFT2 and LiFE [8,9] | ||
− | * | + | * Fiberfox dMRI simulations [6] |
− | * | + | ** Multi-compartment signal modeling |
− | * Brain network statistics and visualization (connectomics) | + | ** Simulation of the k-space acquisition including |
− | * Interactive Python console | + | *** Compartment specific relaxation effects |
− | * Command line tools for most functionalities | + | *** Artifacts such as noise, spikes, ghosts, aliasing, distortions, signal drift, head motion, eddy currents and Gibbs ringing |
+ | *** Definition of important acquisition parameters such as bvalues and gradient directions, TE, TR, dwell time, partial Fourier, ... | ||
+ | ** Manual definition of fiber configurations, e.g. for evaluation purposes | ||
+ | |||
+ | * Other features | ||
+ | ** Brain network statistics and visualization (connectomics) | ||
+ | ** Interactive Python console | ||
+ | ** Integrated screenshot maker | ||
+ | ** Command line tools for most functionalities | ||
Since the last release 2017.07 there have been a lot of feature additions, bug fixes and optimizations. | Since the last release 2017.07 there have been a lot of feature additions, bug fixes and optimizations. |
Revision as of 09:22, 24 August 2018
MITK Diffusion
Quicklinks
The MITK Diffusion application [1,2] offers a selection of image analysis algorithms for the processing of diffusion-weighted MR images. It encompasses the research of the Division Medical Image Computing at the German Cancer Research Center (DKFZ).
Features & Highlights
- Support for most established image formats:
- Images: DICOM, NIFTI, NRRD (peak and SH images compatible with MRtrix)
- Tractograms: fib/vtk, tck and trk.
- Image preprocessing
- Registration
- Head-motion correction
- Denoising
- Skull stripping and brain mask segmentation
- Resampling, cropping, flipping and merging
- Header modifications
- Single volume extraction
- Diffusion gradient/b-value processing
- b-value rounding
- Gradient direction flipping
- Gradient direction subsampling
- Averaging of gradient directions/volumes
- Gradient direction and b-value visualization
- ODF reconstruction
- Tensor and Q-ball reconstruction
- Other reconstructions via Dipy wrapping (CSD, 3D SHORE, SFM)
- ODF peak calculation
- MRtrix or camino results can be imported
- Quantification of diffusion-weighted/tensor/ODF images
- Intravoxel Incoherent Motion (IVIM) and diffusion kurtosis analysis
- Calculation many other derived indices such as ADC, MD, GFA, FA, RA, AD, RD
- Image statistics
- Segmentation
- Automatic white matter bundle segmentation (TractSeg) [10]
- Automatic brain mask segmentation
- Manual image segmentation and operations on segmentations
- SOON: automatic brain tissue segmentation
- Fiber tractography
- Global tractography [3]
- Streamline tractography
- Interactive (similar to [4]) or seed image based
- Deterministic or probabilistic
- Peak, ODF, tensor and raw dMRI based. The latter one in conjunction with machine learning based tractography [5]
- Various possibilities for anatomical constraints.
- Tractography priors in form of additional peak images, e.g. obtained using TractSeg
- Fiber processing:
- Tract dissection (parcellation or ROI based)
- Tract filtering by
- length
- curvature
- direction
- weight
- density
- Tract resampling and compression
- Tract transformation
- Mirroring
- Rotating and translating
- Registration (apply transform of previously performed image registration)
- Tract coloring
- Curvature
- Length
- Weight
- Scalar map (e.g. FA)
- Other operations
- Join
- Subtract
- Copy
- Fiber clustering [7]
- Fiber fitting and weighting similar to SIFT2 and LiFE [8,9]
- Fiberfox dMRI simulations [6]
- Multi-compartment signal modeling
- Simulation of the k-space acquisition including
- Compartment specific relaxation effects
- Artifacts such as noise, spikes, ghosts, aliasing, distortions, signal drift, head motion, eddy currents and Gibbs ringing
- Definition of important acquisition parameters such as bvalues and gradient directions, TE, TR, dwell time, partial Fourier, ...
- Manual definition of fiber configurations, e.g. for evaluation purposes
- Other features
- Brain network statistics and visualization (connectomics)
- Interactive Python console
- Integrated screenshot maker
- Command line tools for most functionalities
Since the last release 2017.07 there have been a lot of feature additions, bug fixes and optimizations.
Downloads
If you encounter any bugs, please report them in our bugtracking system or use the MITK-users mailing list. We are grateful for any feedback!
Latest stable installers (2017.07)
Commit hash 2bda849ee86a362583ee3d2beb4baaca038bd8a5
Windows 7, Windows 10 | MS Windows (64 bit) installer |
Windows 7, Windows 10 | MS Windows (64 bit) zip archive |
Ubuntu 16.04 | Ubuntu (64 bit), tar.gz archive |
Ubuntu 14.04 | Ubuntu (64 bit), tar.gz archive |
Known issues fixed in the current master: The Fiberfox command line application does not read the b-value but uses a default b-value of 1000 s/mm². This bug does not affect the GUI version of Fiberfox. This bug also has no effect if the first non-zero b-value is 1000 s/mm², which is for example the case in the simulated HCP dataset (10.5281/zenodo.572345). This bug is fixed in the current master of the MITK source code.
Requirements
- For Ubuntu users:
- Install Python 3.X:
sudo apt install python3 python3-pip
- Download Python requirements file: https://phabricator.mitk.org/file/data/r7yikza26ozkodxlypsq/PHID-FILE-thn2yotzr2jein4apf3x/PythonRequirements.txt
- Install Python requirements:
pip3 install -r PythonRequirements.txt
- If your are behind a proxy use
pip3 --proxy <proxy> install -r PythonRequirements.txt
- Install Python 3.X:
- For Windows users:
- MITK Diffusion requires the Microsoft Visual C++ 2017 Redistributable to be installed on the system. The MITK Diffusion installer automatically installs this redistributable for you if not already present on the system, but it needs administrative privileges to do so. So to install the redistributable, run the MITK Diffusion installer as administrator.
- Install Python 3.X: https://www.anaconda.com/download/
- Download Python requirements https://phabricator.mitk.org/file/data/r7yikza26ozkodxlypsq/PHID-FILE-thn2yotzr2jein4apf3x/PythonRequirements.txt
- Install Python requirementsfrom the conda command prompt:
pip install -r PythonRequirements.txt
- If your are behind a proxy use
pip --proxy <proxy> install -r PythonRequirements.txt
- Requirements for all deep-learning based functionalities:
- Affected functionalities:
- Brain extraction
- TractSeg
- Pytorch: https://pytorch.org/
- CUDA: https://developer.nvidia.com/cuda-downloads
- (optional) cuDNN: https://developer.nvidia.com/cudnn
- Affected functionalities:
Building MITK Diffusion from source
- Install Qt on your system.
- Clone MITK from out git repository using Git version control.
- Configure the MITK Superbuild using CMake.
- Choose the source code directory and an empty binary directory.
- Click "Configure".
- Set the option MITK_BUILD_CONFIGURATION to "DiffusionRelease".
- Click "Generate".
- Build the project
- Linux: Open a console window, navigate to the build folder and type "make -j8" (optionally supply the number threads to be used for a parallel build qith -j).
- Windows (requires visual studio): Open the MITK Superbuild solution file and build all projects.
- The build may take some time and should yield the binaries in "your_build_folder/MITK-build/bin"
More detailed build instructions can be found in the documentation.
References
[1] Fritzsche, Klaus H., Peter F. Neher, Ignaz Reicht, Thomas van Bruggen, Caspar Goch, Marco Reisert, Marco Nolden, et al. “MITK Diffusion Imaging.” Methods of Information in Medicine 51, no. 5 (2012): 441.
[2] Fritzsche, K., and H.-P. Meinzer. “MITK-DI A New Diffusion Imaging Component for MITK.” In Bildverarbeitung Für Die Medizin, n.d.
[3] Neher, P. F., B. Stieltjes, M. Reisert, I. Reicht, H.P. Meinzer, and K. Maier-Hein. “MITK Global Tractography.” In SPIE Medical Imaging: Image Processing, 2012.
[4] Chamberland, M., K. Whittingstall, D. Fortin, D. Mathieu, und M. Descoteaux. „Real-time multi-peak tractography for instantaneous connectivity display“. Front Neuroinform 8 (2014): 59. doi:10.3389/fninf.2014.00059.
[5] Neher, Peter F., Marc-Alexandre Côté, Jean-Christophe Houde, Maxime Descoteaux, and Klaus H. Maier-Hein. “Fiber Tractography Using Machine Learning.” NeuroImage. Accessed July 17, 2017. doi:10.1016/j.neuroimage.2017.07.028.
[6] Neher, Peter F., Frederik B. Laun, Bram Stieltjes, and Klaus H. Maier-Hein. “Fiberfox: Facilitating the Creation of Realistic White Matter Software Phantoms.” Magnetic Resonance in Medicine 72, no. 5 (November 2014): 1460–70. doi:10.1002/mrm.25045.
Contact
If you have questions about the application or if you would like to give us feedback, don't hesitate to contact us using our mailing list or, for questions that are of no interest for the community, directly.