This BIDS App enables generation and subsequent group analysis of structural connectomes generated from diffusion MRI data. The analysis pipeline relies primarily on the MRtrix3 software package, and includes a number of state-of-the-art methods for image processing, tractography reconstruction, connectome generation and inter-subject connection density normalisation.
NOTE: App is still under development; script is not guaranteed to be operational for all use cases.
Due to use of the Anatomically-Constrained Tractography (ACT) framework, correction of
EPI susceptibility distortions is a prerequisite for this pipeline. Currently, this is
only possible within this pipeline through use of the FSL tool topup
, which relies
on the presence of spin-echo EPI images with differences in phase encoding to estimate
the causative inhomogeneity field. In the absence of such data, this pipeline is not
currently applicable; though recommendations for alternative mechanisms for such
correction in the Issues page are welcome, and development of novel techniques for
performing this correction are additionally underway.
While many common DICOM conversion software are capable of providing data characterising
the phase and slice encoding performed in the acquisition protocol, which are subsequently
used by this pipeline to automate DWI data pre-processing, for some softwares and/or
some data (particularly those not acquired on a Siemens platform), such data may not be
present in the sidecar JSON files for files in the BIDS dwi/
and fmap/
directories.
In this circumstance, it will be necessary for users to manually enter the relevant
information into these files in order for this script to be capable of processing the
data. Every JSON file in these two directories should contain the BIDS fields
PhaseEncodingDirection
and TotalReadoutTime
. For DWI data, it is also preferable to
provide the SliceEncodingDirection
and SliceTiming
fields. More information on these
data can be found in the BIDS documentation.
The tool consists of three explicit analysis levels:
-
"
preproc
": This performs basic DWI (and if necessary T1-weighted image) pre-processing based on the raw BIDS data input, writing the resulting pre-processed data to sub-directory "MRtrix3_connectome-preproc
" within the specified output directory. -
"
participant
": This operates upon the pre-processed DWI (and possibly T1-weighted image) data generated by the "preproc
" analysis level, performing CSD, streamlines reconstruction and connectome construction. Results are written to sub-directory "MRtrix3_connectome-participant
" within the specified output directory. -
"
group
": This operates on the outputs of the "participant
" analysis level, performing appropriate inter-subject connection density normalisation as described in this manuscript. Results are written to sub-directory "MRtrix3_connectome-group
" within the specified output directory.
This script can be utilised in one of three ways:
-
As a stand-alone MRtrix3 script
The script
mrtrix3_connectome.py
can additionally be used outside of this Docker container, as a stand-alone Python script build against the MRtrix3 Python libraries. Using the script in this way requires setting thePYTHONPATH
environment variable to include the path to the MRtrix3lib/
directory where it is installed on your local system, as described here. When used in this way, the command-line interface of the script will be more consistent with the rest of MRtrix3. Note that this usage will require version3.0.0
of MRtrix3 to be installed and configured appropriately on your local system. -
As a Docker container
The bids/MRtrix3_connectome Docker container enables users to generate structural connectomes from diffusion MRI data using state-of-the-art techniques. The pipeline requires that data be organized in accordance with the BIDS specification.
In your terminal, type:
$ docker pull bids/mrtrix3_connectome
Using the "
preproc
"-level analysis as an exemplar, the tool is executed as e.g.:$ docker run -i --rm \ -v /Users/yourname/data:/bids_dataset \ -v /Users/yourname/output:/output \ bids/mrtrix3_connectome \ /bids_dataset /output preproc --participant_label 01
-
As a Singularity container
The MRtrix3_connectome BIDS App can also be built locally as a Singularity container. This is particularly useful for subsequent utilisation on high-performance computing hardware, as unlike Docker there are no super-user privileges or user group memberships required for execution. I have also personally been able to utilise the CUDA version of FSL's
eddy
command within this tool when running on a computing cluster node with GPU capability (though this can require explicit configuration; speak to your system administrator).Within the location in which the MRtrix3_connectome source code has been cloned, type:
$ sudo singularity build MRtrix3_connectome.sif Singularity
The resulting container file "
MRtrix3_connectome.sif
" can be run as a stand-alone executable, as long as the system on which the file is executed has a version of Singularity installed that is compatible with that of the system used to build the container.
The help page of the tool itself can be generated by executing the script without providing any command-line options. The help page is additionally presented at the bottom of this README page for reference. Documentation regarding the underlying MRtrix3 tools can be found in the official MRtrix3 documentation. Additional information may be found in the online MRtrix3 community forum.
Experiencing problems? You can either post a private message to me on the
MRtrix3 community forum, or you can report it
directly to the GitHub issues list.
In both cases, please include as much information as possible; this may include re-running
the script using the --debug
option, which will provide additional information at the
terminal, and preserve temporary files generated by the script within your target output
directory, which can be forwarded to the developer.
Development of this tool was made possible through funding from the National Health and Medical Research Council (NHMRC) of Australia.
The developer acknowledges the facilities and scientific and technical assistance of the National Imaging Facility, a National Collaborative Research Infrastructure Strategy (NCRIS) capability, at the Florey Institute of Neuroscience and Mental Health.
The Florey Institute of Neuroscience and Mental Health acknowledges support from the Victorian Government and in particular the funding from the Operational Infrastructure Support Grant.
Robert Smith is supported by fellowship funding from the National Imaging Facility (NIF), an Australian Government National Collaborative Research Infrastructure Strategy (NCRIS) capability.
When using this pipeline, please use the following snippet to acknowledge the relevant work (amend as appropriate depending on options used):
Structural connectomes were generated using the MRtrix3_connectome BIDS App (Smith et al., 2019), which operates principally using tools provided in the MRtrix3 software package (Tournier et al., 2019; http://mrtrix.org). This included: DWI denoising (Veraart et al., 2016), Gibbs ringing removal (Kellner et al., 2016), pre-processing (Andersson et al., 2003; Andersson and Sotiropoulos, 2016; Andersson et al., 2016; (IF USING EDDY_CUDA: Andersson et al., 2017)); and bias field correction (Tustison et al., 2010 OR Zhang et al., 2001); inter-modal registration (Bhushan et al., 2015); brain extraction (Smith, 2002 OR Iglesias et al., 2011), T1 tissue segmentation (Zhang et al., 2001; Smith, 2002; Patenaude et al., 2011; Smith et al., 2012); spherical deconvolution (Tournier et al., 2004; Jeurissen et al., 2014); probabilistic tractography (Tournier et al., 2010) utilizing Anatomically-Constrained Tractography (Smith et al., 2012) and dynamic seeding (Smith et al., 2015b); SIFT2 (Smith et al., 2015b); T1 parcellation ((((Avants et al., 2008 AND Tustison et al., 2013) OR Andersson et al., 2010) AND (Tzourio-Mazoyer et al., 2002 OR Yeo et al., 2011 OR Craddock et al., 2012 2011) OR Fan et al., 2016 OR (Zalesky et al., 2010 AND Perry et al., 2017))) OR 2012) (Dale et al., 1999 AND (Desikan et al., 2006 OR Destrieux et al., 2010 OR 2013) Glasser et al., 2016))); robust structural connectome construction (Smith et al., 2014) 2015a; Yeh et al., 2016); inter-subject connection density normalisation 2015) (Smith et al., 2020).
Smith, R. E.; Connelly, A. MRtrix3_connectome: A BIDS Application for quantitative structural connectome construction. In Proc OHBM, 2019, W610
Andersson, J. L.; Skare, S. & Ashburner, J. How to correct susceptibility distortions in spin-echo echo-planar images: application to diffusion tensor imaging. NeuroImage, 2003, 20, 870-888
Andersson, J. L. R.; Jenkinson, M. & Smith, S. Non-linear registration, aka spatial normalisation. FMRIB technical report, 2010, TR07JA2
Andersson, J. L. & Sotiropoulos, S. N. An integrated approach to correction for off-resonance effects and subject movement in diffusion MR imaging. NeuroImage, 2016, 125, 1063-1078
Andersson, J. L. R. & Graham, M. S. & Zsoldos, E. & Sotiropoulos, S. N. Incorporating outlier detection and replacement into a non-parametric framework for movement and distortion correction of diffusion MR images. NeuroImage, 2016, 141, 556-572
Andersson, J. L. R.; Graham, M. S.; Drobnjak, I.; Zhang, H.; Filippini, N. & Bastiani, M. Towards a comprehensive framework for movement and distortion correction of diffusion MR images: Within volume movement. NeuroImage, 2017, 152, 450-466
Andersson, J. L. R.; Graham, M. S.; Drobnjak, I.; Zhang, H. & Campbell, J. Susceptibility-induced distortion that varies due to motion: Correction in diffusion MR without acquiring additional data. NeuroImage, 2018, 171, 277-295
Avants, B. B.; Epstein, C. L.; Grossman, M. & Gee, J. C. Symmetric diffeomorphic image registration with cross-correlation: Evaluating automated labeling of elderly and neurodegenerative brain. Medical Image Analysis, 2008, 12, 26-41
Bhushan, C.; Haldar, J. P.; Choi, S.; Joshi, A. A.; Shattuck, D. W. & Leahy, R. M. Co-registration and distortion correction of diffusion and anatomical images based on inverse contrast normalization. NeuroImage, 2015, 115, 269-280
Craddock, R. C.; James, G. A.; Holtzheimer, P. E.; Hu, X. P.; Mayberg, H. S. A whole brain fMRI atlas generated via spatially constrained spectral clustering. Human Brain Mapping, 2012, 33(8), 1914-1928
Dale, A. M.; Fischl, B. & Sereno, M. I. Cortical Surface-Based Analysis: I. Segmentation and Surface Reconstruction. NeuroImage, 1999, 9, 179-194
Desikan, R. S.; Ségonne, F.; Fischl, B.; Quinn, B. T.; Dickerson, B. C.; Blacker, D.; Buckner, R. L.; Dale, A. M.; Maguire, R. P.; Hyman, B. T.; Albert, M. S. & Killiany, R. J. An automated labeling system for subdividing the human cerebral cortex on MRI scans into gyral based regions of interest. NeuroImage, 2006, 31, 968-980
Destrieux, C.; Fischl, B.; Dale, A. & Halgren, E. Automatic parcellation of human cortical gyri and sulci using standard anatomical nomenclature. NeuroImage, 2010, 53, 1-15
Fan, L.; Li, H.; Zhuo, J.; Zhang, Y.; Wang, J.; Chen, L.; Yang, Z.; Chu, C.; Xie, S.; Laird, A.R.; Fox, P.T.; Eickhoff, S.B.; Yu, C.; Jiang, T. The Human Brainnetome Atlas: A New Brain Atlas Based on Connectional Architecture. Cerebral Cortex, 2016, 26 (8), 3508-3526
Glasser, M. F.; Coalson, T. S.; Robinson, E. C.; Hacker, C. D.; Harwell, J.; Yacoub, E.; Ugurbil, K.; Andersson, J.; Beckmann, C. F.; Jenkinson, M.; Smith, S. M. & Van Essen, D. C. A multi-modal parcellation of human cerebral cortex. Nature, 2016, 536, 171-178
Iglesias, J. E.; Liu, C. Y.; Thompson, P. M. & Tu, Z. Robust Brain Extraction Across Datasets and Comparison With Publicly Available Methods. IEEE Transactions on Medical Imaging, 2011, 30, 1617-1634
Jeurissen, B; Tournier, J-D; Dhollander, T; Connelly, A & Sijbers, J. Multi-tissue constrained spherical deconvolution for improved analysis of multi-shell diffusion MRI data. NeuroImage, 2014, 103, 411-426
Kellner, E.; Dhital, B.; Kiselev, V. G.; Reisert, M. Gibbs-ringing artifact removal based on local subvoxel-shifts. Magnetic Resonance in Medicine, 2006, 76(5), 1574-1581
Patenaude, B.; Smith, S. M.; Kennedy, D. N. & Jenkinson, M. A Bayesian model of shape and appearance for subcortical brain segmentation. NeuroImage, 2011, 56, 907-922
Perry, A.; Wen, W.; Kochan, N. A.; Thalamuthu, A.; Sachdev, P. S.; Breakspear, M. The independent influences of age and education on functional brain networks and cognition in healthy older adults. Human Brain Mapping, 2017, 38(10), 5094-5114
Smith, S. M. Fast robust automated brain extraction. Human Brain Mapping, 2002, 17, 143-155
Smith, R. E.; Tournier, J.-D.; Calamante, F. & Connelly, A. Anatomically-constrained tractography: Improved diffusion MRI streamlines tractography through effective use of anatomical information. NeuroImage, 2012, 62, 1924-1938
Smith, R. E.; Tournier, J.-D.; Calamante, F. & Connelly, A. The effects of SIFT on the reproducibility and biological accuracy of the structural connectome. NeuroImage, 2015a, 104, 253-265
Smith, R. E.; Tournier, J.-D.; Calamante, F. & Connelly, A. SIFT2: Enabling dense quantitative assessment of brain white matter connectivity using streamlines tractography. NeuroImage, 2015b, 119, 338-351
Smith, R. E.; Raffelt, D.; Tournier, J.-D.; Connelly, A. Quantitative streamlines tractography: methods and inter-subject normalisation. Preprint, 2020, OSF, https://doi.org/10.31219/osf.io/c67kn
Tournier, J.-D.; Calamante, F., Gadian, D.G. & Connelly, A. Direct estimation of the fiber orientation density function from diffusion-weighted MRI data using spherical deconvolution. NeuroImage, 2004, 23, 1176-1185
Tournier, J.-D.; Calamante, F. & Connelly, A. Improved probabilistic streamlines tractography by 2nd order integration over fibre orientation distributions. Proceedings of the International Society for Magnetic Resonance in Medicine, 2010, 1670
Tournier, J.-D.; Smith, R. E.; Raffelt, D. A.; Tabbara, R.; Dhollander, T.; Pietsch, M; Christiaens, D.; Jeurissen, B.; Y, C.-H.; Connelly, A. MRtrix3: A fast, flexible and open software framework for medical image processing and visualisation. NeuroImage, 2019, 202, 116137
Tustison, N.; Avants, B.; Cook, P.; Zheng, Y.; Egan, A.; Yushkevich, P. & Gee, J. N4ITK: Improved N3 Bias Correction. IEEE Transactions on Medical Imaging, 2010, 29, 1310-1320
Tustison, N.; Avants, B. Explicit B-spline regularization in diffeomorphic image registration. Frontiers in Neuroinformatics, 2013, 7, 39
Tzourio-Mazoyer, N.; Landeau, B.; Papathanassiou, D.; Crivello, F.; Etard, O.; Delcroix, N.; Mazoyer, B. & Joliot, M. Automated Anatomical Labeling of activations in SPM using a Macroscopic Anatomical Parcellation of the MNI MRI single-subject brain. NeuroImage, 15(1), 273–289
Veraart, J.; Novikov, D. S.; Christiaens, D.; Ades-aron, B.; Sijbers, J. & Fieremans, E. Denoising of diffusion MRI using random matrix theory. NeuroImage, 2016, 142, 394-406
Yeh, C.-H.; Smith, R. E.; Liang, X.; Calamante, F. & Connelly, A. Correction for diffusion MRI fibre tracking biases: The consequences for structural connectomic metrics. NeuroImage, 2016, 142, 150-162
Yeo, B.T.; Krienen, F.M.; Sepulcre, J.; Sabuncu, M.R.; Lashkari, D.; Hollinshead, M.; Roffman, J.L.; Smoller, J.W.; Zollei, L.; Polimeni, J.R.; Fischl, B.; Liu, H. & Buckner, R.L. The organization of the human cerebral cortex estimated by intrinsic functional connectivity. J Neurophysiol, 2011, 106(3), 1125-1165
Zalesky, A.; Fornito, A.; Harding, I. H.; Cocchi, L.; Yücel, M.; Pantelis, C. & Bullmore, E. T. Whole-brain anatomical networks: Does the choice of nodes matter? NeuroImage, 2010, 50, 970-983
Zhang, Y.; Brady, M. & Smith, S. Segmentation of brain MR images through a hidden Markov random field model and the expectation-maximization algorithm. IEEE Transactions on Medical Imaging, 2001, 20, 45-57
The following help page can equivalently be generated by executing the tool without providing any command-line arguments (within a container environment; note interface is slightly different if run natively).
Generate structural connectomes based on diffusion-weighted and T1-weighted image data using state-of-the-art reconstruction tools, particularly those provided in MRtrix3
mrtrix3_connectome.py bids_dir output_dir analysis_level [ options ]
-
bids_dir: The directory with the input dataset formatted according to the BIDS standard.
-
output_dir: The directory where the output files should be stored.
-
analysis_level: Level of analysis that will be performed; options are: preproc, participant, group.
While preproc-level analysis only requires data within the BIDS directory, participant-level analysis requires that the output directory be pre-populated with the results from preproc-level processing; similarly, group-level analysis requires that the output directory be pre-populated with the results from participant-level analysis.
The operations performed by each of the three levels of analysis are as follows:
"preproc": DWI: Denoising; Gibbs ringing removal; motion, eddy current and EPI distortion correction and outlier detection & replacement; brain masking, bias field correction and intensity normalisation; rigid-body registration & transformation to T1-weighted image. T1-weighted image: bias field correction; brain masking.
"participant": DWI: Response function estimation; FOD estimation. T1-weighted image (if -parcellation is not none): Tissue segmentation; grey matter parcellation. Combined (if -parcellation is not none, or -streamlines is provided): Whole-brain streamlines tractography; SIFT2; connectome construction.
"group": Generation of FA-based population template; warping of template-based white matter mask to subject spaces; calculation of group mean white matter response function; scaling of connectomes based on white matter b=0 intensity, response function used during participant-level analysis, and SIFT model proportioinality coefficient; generation of group mean connectome.
The label(s) provided to the -participant_label and -session_label options correspond(s) to sub-<participant_label> and ses-<session_label> from the BIDS spec (so they do not include "sub-" or "ses-"). Multiple participants / sessions can be specified with a space-separated list.
For both preproc-level and participant-level analyses, if no specific participants or sessions are nominated by the user (or the user explicitly specifies multiple participants / sessions), the script will process each of these in series. It is additionally possible for the user to invoke multiple instances of this script in order to process multiple subjects at once in parallel, ensuring that no single participant / session is being processed in parallel, and that preproc-level output data are written fully before commencing participant-level analysis.
The -output_verbosity option principally affects the participant-level analysis, modulating how many derivative files are written to the output directory. Permitted values are from 1 to 4: 1 writes only those files requisite for group-level analysis; 2 additionally writes files typically useful for post-hoc analysis (the default); 3 additionally generates files for enhanced connectome visualisation and copies the entire whole-brain tractogram; 4 additionally generates a full copy of the script scratch directory (with all intermediate files retained) to the output directory (and this applies to all analysis levels)
If running participant-level analysis using the script as a standalone tool rather than inside the provided container, data pertaining to atlas parcellations can no longer be guaranteed to be stored at a specific location on the filesystem. In this case, the user will most likely need to manually specify the location where the corresponding parcellation is stored using the -atlas_path option.
- --output_verbosity
The verbosity of script output (number from 1 to 4).
-
--parcellation
The choice of connectome parcellation scheme (compulsory for participant-level analysis); options are: aal, aal2, brainnetome246fs, brainnetome246mni, craddock200, craddock400, desikan, destrieux, hcpmmp1, none, perry512, yeo7fs, yeo7mni, yeo17fs, yeo17mni. -
--streamlines
The number of streamlines to generate for each subject (will be determined heuristically if not explicitly set). -
--template_reg software
The choice of registration software for mapping subject to template space; options are: ants, fsl.
- --t1w_preproc path
Provide a path by which pre-processed T1-weighted image data may be found for the processed participant(s) / session(s)
-
--participant_label
The label(s) of the participant(s) that should be analyzed. -
--session_label
The session(s) within each participant that should be analyzed.
-
-d/--debug
display debugging messages. -
-h/--help
display this information page and exit. -
-n/--n_cpus number
use this number of threads in multi-threaded applications (set to 0 to disable multi-threading). -
--scratch /path/to/scratch/
manually specify the path in which to generate the scratch directory. -
--skip-bids-validator
Skip BIDS validation -
-v/--version
display version information and exit.
Author: Robert E. Smith (robert.smith@florey.edu.au)
Copyright: Copyright (c) 2016-2020 The Florey Institute of Neuroscience and Mental Health.
This Source Code Form is subject to the terms of the Mozilla Public License, v. 2.0. If a copy of the MPL was not distributed with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
Covered Software is provided under this License on an "as is" basis, without warranty of any kind, either expressed, implied, or statutory, including, without limitation, warranties that the Covered Software is free of defects, merchantable, fit for a particular purpose or non-infringing. See the Mozilla Public License v. 2.0 for more details.