clinicadl
Documentation¶
Installation¶
clinicadl
can be installed on Mac OS X and Linux machines, and possibly on Windows computers with a Linux Virtual Machine.
We assume that users installing and using clinicadl
are comfortable with using the command line.
User documentation (clinicadl
)¶
Prepare your imaging data¶
clinicadl preprocessing
- Preprocessing pipelinest1-linear
- Linear processing of T1w MR images: affine registration to the MNI standard spacet1-extensive
- 'Extensive' processing of T1w MR images: non linear registration to the MNI standard space
clinicadl quality_check
- Quality control of preprocessed data: use a pretrained network [Fonov et al., 2018] to classify adequately registered images.clinicadl extract
- Prepare input data for deep learning with PyTorchclinicadl quality_check
- Evaluate registration quality
Train & test your classifier¶
clinicadl train
- Train with your data and create a modelclinicadl classify
- Classify one image or a list of images with your previously trained model
Utilitaries ¶
clinicadl generate
- Generate synthetic data for functional testsclinicadl tsvtool
- Handle TSV files for metadata processing and data splits
Pretrained models¶
Pretrained models for the CNN networks implemented in ClinicaDL can be obtained here: https://zenodo.org/record/3491003
These models were obtained during the experiments for publication. They correspond to a previous version of ClinicaDL, hence their file system is not compatible with the current version. Updated versions of the models will be published soon.
Support¶
- Report an issue on GitHub
- Use the
clinicadl
Google Group to ask for help!
License¶
clinicadl
is distributed under the terms of the MIT license given here.
Citing clinicadl
¶
For publications or communications using clinicadl
, please cite [Wen et al., 2020]
as well as the references mentioned on the wiki page of the pipelines you used
(for example, citing PyTorch when using the extract
pipeline).
Disclaimer
clinicadl
is a software for research studies. It is not intended for use in medical routine.