Interacting with Clinica¶
Preparing your data¶
The easiest way to use Clinica is to have your data organized using the BIDS standard. BIDS is currently becoming the standard for data organization in the brain imaging community and we strongly recommend to use it.
If your dataset does not follow this standard, you will need to convert it:
If your data are in DICOM format, you can use one of the converters referenced on the BIDS website.
Otherwise, Clinica includes converters for public datasets.
Regarding cross-sectional BIDS datasets
If you run Clinica with a dataset containing no timepoints e.g.:
BIDS
└── sub-CLNC0001
├── anat
│ └── sub-CLNC0001_T1w.nii.gz
└── pet
├── sub-CLNC0001_trc-18FFDG_pet.json
└── sub-CLNC0001_trc-18FFDG_pet.nii.gz
BIDS
└── sub-CLNC0001
└── ses-M00
├── anat
│ └── sub-CLNC0001_ses-M000_T1w.nii.gz
└── pet
├── sub-CLNC0001_ses-M000_trc-18FFDG_pet.json
└── sub-CLNC0001_ses-M000_trc-18FFDG_pet.nii.gz
Tip
If you need to create BIDS compliant datasets or need tutorials on BIDS, you can look at this BIDS Starter Kit.
Clinica command-line interface¶
Clinica's main usage is through command-line.
Clinica supports autocompletion: to see the list of commands, simply type clinica
followed by Tab.
In general, a Clinica command-line has the following syntax:
clinica category_of_command command argument options
where the arguments are usually your input/output folders, and where the options look like --flag_1 option_1 --flag_2 option_2
.
Note
Please note that the ordering of options on the command-line is not important, whereas arguments must be given in the exact order specified in the documentation (or in the command line helper).
Categories of command line¶
The command-line clinica
has been divided into four main categories.
clinica run
¶
This category allows the user to run the different image processing and analysis pipelines using the following syntax:
clinica run modality-pipeline bids_directory caps_directory -tsv my_participants.tsv
"modality" is a prefix that corresponds to the data modality (e.g. T1, DWI, fMRI, PET) or to the category of processing (machine learning, statistics...).
If you execute clinica run --help
, you can see the list of modality-pipeline
available: they correspond to the different pipelines displayed on the main page of the documentation.
Note
Clinica run logs are written in the current working directory by default. A different directory may be specified by setting the CLINICA_LOGGING_DIR
environment variable.
clinica convert
¶
These tools allow you to convert unorganized datasets from publicly available neuroimaging studies into a BIDS hierarchy.
Clinica currently includes some converters for public datasets.
clinica iotools
¶
iotools
is a set of tools that allows the user to handle BIDS and CAPS datasets.
It allows generating lists of subjects or merging all tabular data into a single TSV file for analysis with external statistical software packages.
See here for more details.
clinica generate
(for developers)¶
This category allows developers to generate the skeleton for a new pipeline. The syntax is:
clinica generate template "Modality My Pipeline" -d output_folder
The main arguments¶
BIDS_DIRECTORY
and/or CAPS_DIRECTORY
¶
Running a pipeline involves most of the time these two parameters:
BIDS_DIRECTORY
, which is the input folder containing the dataset in a BIDS hierarchy;CAPS_DIRECTORY
, which is the output folder containing the expected results in a CAPS hierarchy. It can be also the input folder containing the dataset in a CAPS hierarchy.
GROUP_LABEL
¶
You will see the GROUP_LABEL
argument when working on any group-wise analysis (e.g. template creation from a list of subjects, statistical analysis).
This is simply a label name that will define the group of subjects used for this analysis.
It will be written in your output CAPS folder, for possible future reuses.
For example, an AD
group ID label could be used when creating a template for a group of Alzheimer’s disease patients.
Any time you would like to use this AD
template you will need to provide the group ID used to identify the pipeline output obtained from this group.
You might also use CNvsAD
, for instance, as group ID for a statistical group comparison between patients with Alzheimer's disease (AD
) and cognitively normal (CN
) subjects.
Common options¶
-tsv
/ --subjects_sessions_tsv
¶
The -tsv
flag allows you to specify in a TSV file the participants belonging to your subset.
For instance, running the FreeSurfer pipeline on T1w MRI can be done using :
clinica run t1-freesurfer path/to/my/bids/dataset path/where/results/will/be/stored -tsv my_list_of_subjects.tsv
where your TSV file looks as follows:
participant_id session_id
sub-CLNC0001 ses-M000
sub-CLNC0001 ses-M018
sub-CLNC0001 ses-M036
sub-CLNC0002 ses-M000
sub-CLNC0002 ses-M018
sub-CLNC0002 ses-M036
sub-CLNC0003 ses-M000
-wd
/ --working_directory
¶
In every pipeline, a working directory can be specified. This directory gathers all the inputs and outputs of the different steps of the pipeline. It is then very useful for the debugging process. It is specially useful in the case where your pipeline execution crashes and you relaunch it with the exact same parameters, allowing you to continue from the last successfully executed node.
For the pipelines that generate many files, such as dwi-preprocessing
(especially if you run it on multiple subjects), a specific drive/partition with enough space can be used to store the working directory.
-np
/ --n_procs
¶
The --n_procs
flag allows you to exploit several cores of your machine to run pipelines in parallel, which is very useful when dealing with numerous subjects and multiple sessions.
Thanks to Nipype, even for a single subject, a pipeline can be run in parallel by exploiting the cores available to process simultaneously independent sub-parts.
If you do not specify -np
/ --n_procs
flag, Clinica will detect the number of threads to run in parallel and propose the adequate number of threads to the user.
Known issues¶
Matlab and SPM12 (whose implementation is based on Matlab) can sometimes randomly crash, causing a rather unreadable error in the console. Those events are unpredictable. In case it occurs to you, please do the following:
- Check that you have a valid Matlab license.
- Before relaunching the command line, be sure to remove the content of the working directory (if you specified one).
Support¶
- You can use the Clinica Google Group to ask for help!
- Report an issue on GitHub.