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dicom-anonymizer

Program to anonymize dicom files with default and custom rules

  • 1.0.13.post1
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3

DicomAnonymizer

Python package to anonymize DICOM files. The anonymization answer to the standard . More information about dicom fields for anonymization can be found here.

The default behaviour of this package is to anonymize DICOM fields referenced in the 2023e DICOM standard. These fields are referenced in dicomfields.
Another standard can be selected, see Change the DICOM anonymization standard.

Dicom fields are separated into different groups. Each groups will be anonymized in a different way.

GroupActionAction definition
D_TAGSreplaceReplace with a non-zero length value that may be a dummy value and consistent with the VR**
Z_TAGSemptyReplace with a zero length value, or a non-zero length value that may be a dummy value and consistent with the VR**
X_TAGSdeleteCompletely remove the tag
U_TAGSreplace_UIDReplace all UID's random ones. Same UID will have the same replaced value
Z_D_TAGSempty_or_replaceReplace with a non-zero length value that may be a dummy value and consistent with the VR**
X_Z_TAGSdelete_or_emptyReplace with a zero length value, or a non-zero length value that may be a dummy value and consistent with the VR**
X_D_TAGSdelete_or_replaceReplace with a non-zero length value that may be a dummy value and consistent with the VR**
X_Z_D_TAGSdelete_or_empty_or_replaceReplace with a non-zero length value that may be a dummy value and consistent with the VR**
X_Z_U_STAR_TAGSdelete_or_empty_or_replace_UIDIf it's a UID, then all numbers are randomly replaced. Else, replace with a zero length value, or a non-zero length value that may be a dummy value and consistent with the VR**
ALL_TAGSContains all previous defined tags

How to install it?

Installation can be done via pip pip install dicom-anonymizer or conda conda install -c conda-forge dicom-anonymizer.

Local Development Setup

To get started with local development, follow these steps:

  1. Create a Virtual Environment:

    • On Windows:
      virtualenv env
      .\env\Scripts\activate.bat
      
    • On MacOS/Linux:
      python -m venv env
      source env/bin/activate
      
  2. Install Dependencies:

    • Install an editable version of the package and the development requirements:
      pip install -e .[dev]
      
  3. Set Up Pre-Commit Hooks:

    • Install the pre-commit hooks to ensure code quality:
      pre-commit install
      

How to test it?

To run the unit tests, use the following command:

pytest

How to build it?

These instructions rely on wheel build-package format. Install it if you have not done it already using: pip install wheel

The sources files can be packaged by using: python ./setup.py bdist_wheel

This command will generate a wheel package in dist folder which can be then installed as a python package using pip install ./dist/dicom_anonymizer-1.0.13-1-py2.py3-none-any.whl

On Windows, if you see a warning message './dist/dicom_anonymizer-1.0.13-1-py2.py3-none-any.whl' looks like a filename, but the file does not exist, this could be due to pip not being able to handle relative path (See issue https://github.com/pypa/pip/issues/10808). As a work-around, change directory to dist and then install it using pip install dicom_anonymizer-1.0.13-1-py2.py3-none-any.whl

Installing this package will also install an executable named dicom-anonymizer. In order to use it, please refer to the next section.

How to use it?

This package allows to anonymize a selection of DICOM field (defined or overridden). The way on how the DICOM fields are anonymized can also be overridden.

  • [required] InputPath = Full path to a single DICOM image or to a folder which contains dicom files
  • [required] OutputPath = Full path to the anonymized DICOM image or to a folder. This folder has to exist.
  • [optional] ActionName = Defined an action name that will be applied to the DICOM tag.
  • [optional] Dictionary = Path to a JSON file which defines actions that will be applied on specific dicom tags (see below)

Default behaviour

You can use the default anonymization behaviour describe above.

dicom-anonymizer Input Output

Private tags

Default behavior of the dicom anonymizer is to delete private tags. But you can bypass it:

  • Solution 1: Use regexp to define which private tag you want to keep/update (cf custom rules)
  • Solution 2: Use dicom-anonymizer.exe option to keep all private tags : --keepPrivateTags

Custom rules

You can manually add new rules in order to have different behaviors with certain tags. This will allow you to override default rules:

Executable:

dicom-anonymizer InputFilePath OutputFilePath -t '(0x0001, 0x0001)' ActionName -t '(0x0001, 0x0005)' ActionName2

This will apply the ActionName to the tag '(0x0001, 0x0001)' and ActionName2 to '(0x0001, 0x0005)'

Note: ActionName has to be defined in actions list

Example 1: The default behavior of the patient's ID is to be replaced by an empty or null value. If you want to keep this value, then you'll have to run :

python anonymizer.py InputFilePath OutputFilePath -t '(0x0010, 0x0020)' keep

This command will override the default behavior executed on this tag and the patient's ID will be kept.

Example 2: We just want to change the study date from 20080701 to 20080000, then we'll use the regexp

python anonymizer.py InputFilePath OutputFilePath -t '(0x0008, 0x0020)' 'regexp' '0701$' '0000'

Example 3: Change the tag value with an arbitrary value

python anonymizer.py InputFilePath OutputFilePath -t '(0x0010, 0x0010)' 'replace_with_value' 'new_value'

DICOMDIR

DICOMDIR anonymization is not specified. It is therefore discouraged and it is recommended to regenerate new DICOMDIR files after anonymizing the original DICOM files.

DICOMDIR files can have a (0x0004, 0x1220) Directory Record Sequence tag that can contain patient information.
However, this tag is not part of the standard tag to anonymize set. If you still want dicom-anonymizer to anonymize it, you have to instruct it explicitly:

python anonymizer.py InputFilePath OutputFilePath -t '(0x0004, 0x1220)' replace

Custom rules with dictionary file

Instead of having a big command line with several new actions, you can create your own dictionary by creating a json file dictionary.json :

{
    "(0x0002, 0x0002)": "ActionName",
    "(0x0003, 0x0003)": "ActionName",
    "(0x0004, 0x0004)": "ActionName",
    "(0x0005, 0x0005)": "ActionName"
}

Same as before, the ActionName has to be defined in the actions list.

dicom-anonymizer InputFilePath OutputFilePath --dictionary dictionary.json

If you want to use the regexp action in a dictionary:

{
    "(0x0002, 0x0002)": "ActionName",
    "(0x0008, 0x0020)": {
        "action": "regexp",
        "find": "0701$",
        "replace": "0000"
    }
}

Custom/overrides actions

Here is a small example which keeps all metadata but updates the series description by adding a suffix passed as a parameter.

import argparse
from dicomanonymizer import ALL_TAGS, anonymize, keep


def main():
    parser = argparse.ArgumentParser(add_help=True)
    parser.add_argument(
        "input",
        help="Path to the input dicom file or input directory which contains dicom files",
    )
    parser.add_argument(
        "output",
        help="Path to the output dicom file or output directory which will contains dicom files",
    )
    args = parser.parse_args()

    deletePrivateTags = False

    input_dicom_path = args.input
    output_dicom_path = args.output

    extra_anonymization_rules = {}

    # Per https://www.hhs.gov/hipaa/for-professionals/privacy/special-topics/de-identification/index.html
    # it is all right to retain only the year part of the birth date for
    # de-identification purposes.
    def set_date_to_year(dataset, tag):
        element = dataset.get(tag)
        if element is not None:
            element.value = f"{element.value[:4]}0101" # YYYYMMDD format

    # ALL_TAGS variable is defined on file dicomfields.py
    # the 'keep' method is already defined into the dicom-anonymizer
    # It will overrides the default behaviour
    for i in ALL_TAGS:
        extra_anonymization_rules[i] = keep

    extra_anonymization_rules[(0x0010, 0x0030)] = set_date_to_year # Patient's Birth Date

    # Launch the anonymization
    anonymize(
        input_dicom_path,
        output_dicom_path,
        extra_anonymization_rules,
        delete_private_tags=False,
    )


if __name__ == "__main__":
    main()

See the full application in the examples folder.

In your own file, you'll have to define:

  • Your custom functions. Be careful, your functions always have in inputs a dataset and a tag
  • A dictionary which map your functions to a tag

Anonymize dicom tags for a dataset

You can also anonymize dicom fields in-place for pydicom's DataSet using anonymize_dataset. See this example:

import pydicom

from dicomanonymizer import anonymize_dataset

def main():

    # Create a list of tags object that should contains id, type and value
    fields = [
        { # Replaced by Anonymized
        'id': (0x0040, 0xA123),
        'type': 'LO',
        'value': 'Annie de la Fontaine',
        },
        { # Replaced with empty value
        'id': (0x0008, 0x0050),
        'type': 'TM',
        'value': 'bar',
        },
        { # Deleted
        'id': (0x0018, 0x4000),
        'type': 'VR',
        'value': 'foo',
        }
    ]

    # Create a readable dataset for pydicom
    data = pydicom.Dataset()

    # Add each field into the dataset
    for field in fields:
        data.add_new(field['id'], field['type'], field['value'])

    anonymize_dataset(data)

if __name__ == "__main__":
    main()

See the full application in the examples folder.

For more information about the pydicom's Dataset, please refer here.

You can also add extra_anonymization_rules as above:

    anonymize_dataset(data_ds, extra_anonymization_rules, delete_private_tags=True)

Actions list

ActionAction definition
emptyReplace with a zero length value, or a non-zero length value that may be a dummy value and consistent with the VR**
deleteCompletely remove the tag
keepDo nothing on the tag
replace_UIDReplace all UID's number with a random one in order to keep consistent. Same UID will have the same replaced value
empty_or_replaceReplace with a non-zero length value that may be a dummy value and consistent with the VR**
delete_or_emptyReplace with a zero length value, or a non-zero length value that may be a dummy value and consistent with the VR**
delete_or_replaceReplace with a non-zero length value that may be a dummy value and consistent with the VR**
deleteOrEmptyOrReplaceReplace with a non-zero length value that may be a dummy value and consistent with the VR**
delete_or_empty_or_replace_UIDIf it's a UID, then all numbers are randomly replaced. Else, replace with a zero length value, or a non-zero length value that may be a dummy value and consistent with the VR**
regexpFind a value in the tag using a regexp and replace it with an arbitrary value. See the examples in this file to learn how to use.
replace_with_valueReplace the tag value with an arbitrary value. See the examples in this file to learn how to use.

** VR: Value Representation

Work originally done by Edern Haumont

Change the DICOM anonymization standard

You can customize the DICOM standard that will be used to anonymize the dataset by giving an argument base_rules_gen to the function anonymize_dicom_file or anonymize_dataset.
The value should be a function returning a dict of anonymization rules. Use the function initialize_actions to create such dict from a anonymization database from the folder dicomanonymizer/dicom_anonymization_databases.

Example:

from dicomanonymizer.simpledicomanonymizer import anonymize_dataset, initialize_actions

anonymize_dataset(
    dataset, base_rules_gen=lambda: initialize_actions("dicomfields_2024b")
)

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