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A python module for dealing with unstructured or semi-structured neuroimaging datasets which do not conform to the BIDS data structure

Project description

nisupply

A python module for dealing with unstructured or semi-structured neuroimaging datasets which do not conform to the Brain Imaging Data Structure (BIDS). Although this packages was originall developed for neuroimaging datasets it can work on any file type!

Installation

Install via pip with: pip install nisupply

Aims

Though more and more datasets become available in the standardized BIDS-format, researchers will still often find themelves in situations, where:

  1. The dataset is not BIDS-formatted at all (this is often the case with old 'in-house' datasets that were aquired during a time were BIDS didn't exist yet).

  2. The dataset is wrongly BIDS-formatted because it sticks to an outdated BIDS version or because the maintainers made errors (as a consequence, verification tools like the BIDS-validator will throw errors)

  3. It is not possible to convert the datasets to BIDS, because you

    1. don't have access to the original DICOM-files
    2. don't have time and ressources to do so
    3. don't have all the information, but the contact to the original maintainer got lost

As a consequence, one cannot use tools from the BIDS Apps universe which by default require the files to be BIDS-conform in order to work. The idea behind the nisupply module is to provide helper functions that facilitate the often tedious data-wrangling work that can happen with unstructured data sets.

Documentation

The nisupply package provides three main modules:

  1. nisupply.io: for input-output-operations (finding files, copying them over to a different directory)
  2. nisupply.structure: helper functions to bring the dataset into a new format
  3. nisupply.utils: helper functions that work on the files themselves (e.g. uncompressing .nii.gz to .nii as needed for SPM12)

Consider this semistructured dataset as an example:

src
├── fmri_nback_subject_3_session_2.nii.gz
├── subject_1
│   ├── fmri_gambling.nii.gz
│   ├── fmri_nback.nii.gz
│   └── session_2
│       └── fmri_nback.nii.gz
├── subject_2_fmri_nback.nii.gz
└── subject_4.txt

We can run nisupply.io.get_filepath_df on this directory to find all the files that we need and gather the filepaths in a pandas dataframe (that is, search the directory ./src for files that end with .nii.gz and start with fmri_nback. Add two new columns subject_id and task to it that extract these entities using regular expressions).

df = get_filepath_df(src_dir='./src',
                     regex_dict={'subject_id':'subject_(\d)',
                                 'task': 'fmri_(nback|gambling)'},
                     file_suffix='.nii.gz',
                     file_prefix='fmri_nback')

This gives you a pandas dataframe that looks like this:

                                    filepath subject_id   task
0  src/fmri_nback_subject_3_session_2.nii.gz          3  nback
1            src/subject_1/fmri_nback.nii.gz          1  nback
2  src/subject_1/session_2/fmri_nback.nii.gz          1  nback

We can now use nisupply.structure.get_file_extension and nisupply.structure.get_new_filepath to create a new filepath for each file:

df = get_file_extension(df)
df['dst'] = './dst'
df = get_new_filepath(df,template="{dst}/sub-{subject_id}/sub-{subject_id}_task-{task}{file_extension}")

Which outputs:

                                    filepath  ...                         filepath_new
0  src/fmri_nback_subject_3_session_2.nii.gz  ...  ./dst/sub-3/sub-3_task-nback.nii.gz
1            src/subject_1/fmri_nback.nii.gz  ...  ./dst/sub-1/sub-1_task-nback.nii.gz
2  src/subject_1/session_2/fmri_nback.nii.gz  ...  ./dst/sub-1/sub-1_task-nback.nii.gz

Finally, we can copy over the files using nisupply.io.copy_files(df,src_col='filepath',tgt_col='filepath_new') to a new location to obtain a new tidy dataset:

dst/
├── sub-1
│   └── sub-1_task-nback.nii.gz
└── sub-3
    └── sub-3_task-nback.nii.gz

Note

The nisupply module does not provide any functions to convert DICOM files to NIFTI files. If you are looking for tools to do that, check out tools like heudiconv or bidscoin that can do that for you.

Similar Projects

There are similar projects out there following the same idea:

  1. Have a look at Stephen Larroque's pathmatcher package which works primarily with regex.
  2. The interfaces.io module from nipype (especially the DataFinder class)

The focus of nisupply is to avoid quite unreadable regex-matches as much as possible. It therefore is best suited for semi-structured datsets that are neither completely unordered but also neither 100% standardized.

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