Skip to main content

A flexible client for FHIR servers supporting the SMART on FHIR protocol

Project description

Workaround for FHIR R4: https://github.com/smart-on-fhir/client-py/issues/70

SMART FHIR Client

This is fhirclient, a flexible Python client for FHIR servers supporting the SMART on FHIR protocol. The client is compatible with Python 2.7.10 and Python 3.

Client versioning is not identical to FHIR versioning. The master branch is usually on the latest version of the client as shown below, possibly on bugfix releases thereof. The develop branch should be on recent freezes, and the feature/latest-ci branch is periodically updated to the latest FHIR continuous integration builds.

Version FHIR  
4.0.0 4.0.0 (R4)
3.0.0 3.0.0 (STU-3)
x.x 1.8.0 (STU-3 Ballot, Jan 2017)
x.x 1.6.0 (STU-3 Ballot, Sep 2016)
1.0.3 1.0.2 (DSTU 2)
1.0 1.0.1 (DSTU 2)
0.5 0.5.0.5149 (DSTU 2 Ballot, May 2015)
0.0.4 0.0.82.2943 (DSTU 1)
0.0.3 0.0.82.2943 (DSTU 1)
0.0.2 0.0.82.2943 (DSTU 1)

Installation

pip install fhirclient

Documentation

Technical documentation is available at docs.smarthealthit.org/client-py/.

Client Use

To connect to a SMART on FHIR server (or any open FHIR server), you can use the FHIRClient class. It will initialize and handle a FHIRServer instance, your actual handle to the FHIR server you'd like to access.

Read Data from Server

To read a given patient from an open FHIR server, you can use:

from fhirclient import client
settings = {
    'app_id': 'my_web_app',
    'api_base': 'https://fhir-open-api-dstu2.smarthealthit.org'
}
smart = client.FHIRClient(settings=settings)

import fhirclient.models.patient as p
patient = p.Patient.read('hca-pat-1', smart.server)
patient.birthDate.isostring
# '1963-06-12'
smart.human_name(patient.name[0])
# 'Christy Ebert'

If this is a protected server, you will first have to send your user to the authorize endpoint to log in. Just call smart.authorize_url to obtain the correct URL. You can use smart.prepare(), which will return False if the server is protected and you need to authorize. The smart.ready property has the same purpose, it will however not retrieve the server's CapabilityStatement resource and hence is only useful as a quick check whether the server instance is ready.

smart = client.FHIRClient(settings=settings)
smart.ready
# prints `False`
smart.prepare()
# prints `True` after fetching CapabilityStatement
smart.ready
# prints `True`
smart.prepare()
# prints `True` immediately
smart.authorize_url
# is `None`

You can work with the FHIRServer class directly, without using FHIRClient, but this is not recommended:

smart = server.FHIRServer(None, 'https://fhir-open-api-dstu2.smarthealthit.org')
import fhirclient.models.patient as p
patient = p.Patient.read('hca-pat-1', smart)
patient.name[0].given
# ['Christy']
Search Records on Server

You can also search for resources matching a particular set of criteria:

smart = client.FHIRClient(settings=settings)
import fhirclient.models.procedure as p
search = p.Procedure.where(struct={'subject': 'hca-pat-1', 'status': 'completed'})
procedures = search.perform_resources(smart.server)
for procedure in procedures:
    procedure.as_json()
    # {'status': u'completed', 'code': {'text': u'Lumpectomy w/ SN', ...

# to include the resources referred to by the procedure via `subject` in the results
search = search.include('subject')

# to include the MedicationAdministration resources which refer to the procedure via `partOf`
import fhirclient.models.medicationadministration as m
search = search.include('partOf', m.MedicationAdministration, reverse=True)

# to get the raw Bundle instead of resources only, you can use:
bundle = search.perform(smart.server)

Data Model Use

The client contains data model classes, built using fhir-parser, that handle (de)serialization and allow to work with FHIR data in a Pythonic way. Starting with version 1.0.5, data model validity are enforced to a certain degree.

Initialize Data Model

import fhirclient.models.patient as p
import fhirclient.models.humanname as hn
patient = p.Patient({'id': 'patient-1'})
patient.id
# prints `patient-1`

name = hn.HumanName()
name.given = ['Peter']
name.family = 'Parker'
patient.name = [name]
patient.as_json()
# prints patient's JSON representation, now with id and name

name.given = 'Peter'
patient.as_json()
# throws FHIRValidationError:
# {root}:
#   name:
#     given:
#       Expecting property "given" on <class 'fhirclient.models.humanname.HumanName'> to be list, but is <class 'str'>

Initialize from JSON file

import json
import fhirclient.models.patient as p
with open('path/to/patient.json', 'r') as h:
    pjs = json.load(h)
patient = p.Patient(pjs)
patient.name[0].given
# prints patient's given name array in the first `name` property

Flask App

Take a look at flask_app.py to see how you can use the client in a simple (Flask) app. This app starts a webserver, listening on localhost:8000, and prompts you to login to our sandbox server and select a patient. It then goes on to retrieve the selected patient's demographics and med prescriptions and lists them in a simple HTML page.

The Flask demo app has separate requirements. Clone the client-py repository, then best create a virtual environment and install the needed packages like so:

git clone https://github.com/smart-on-fhir/client-py.git
cd client-py
virtualenv -p python3 env
. env/bin/activate
pip install -r requirements_flask_app.txt
python flask_app.py

Building Distribution

pip install -r requirements.txt
python setup.py sdist
python setup.py bdist_wheel

Incrementing the lib version

bumpversion patch
bumpversion minor
bumpversion major

Docs Generation

Docs are generated with Doxygen and doxypypy. You can install doxypypy via pip: pip install doxypypy. Then you can just run Doxygen, configuration is stored in the Doxyfile.

Running Doxygen will put the generated documentation into docs, the HTML files into docs/html. Those files make up the content of the gh-pages branch. I usually perform a second checkout of the gh-pages branch and copy the html files over, with:

doxygen
rsync -a docs/html/ ../client-py-web/

PyPi Publishing (notes for SMART team)

Using setuptools (Note: Alternatively, you can use twine https://pypi.python.org/pypi/twine/):

Make sure that you have the PyPi account credentials in your account

copy server.smarthealthit.org:/home/fhir/.pypirc to ~/.pypirc

Test the build

python setup.py sdist
python setup.py bdist_wheel

Upload the packages to PyPi

python setup.py sdist upload -r pypi
python setup.py bdist_wheel upload -r pypi

Credits

“fhirclient” is written and maintained by the SMART Platforms Team / Boston Children's Hospital.

Contributors

The following wonderful people contributed directly or indirectly to this project:

Please add yourself here alphabetically when you submit your first pull request.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

fhirclientr4-4.0.0.tar.gz (435.7 kB view details)

Uploaded Source

Built Distribution

fhirclientr4-4.0.0-py2.py3-none-any.whl (683.1 kB view details)

Uploaded Python 2 Python 3

File details

Details for the file fhirclientr4-4.0.0.tar.gz.

File metadata

  • Download URL: fhirclientr4-4.0.0.tar.gz
  • Upload date:
  • Size: 435.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.0 CPython/3.9.10

File hashes

Hashes for fhirclientr4-4.0.0.tar.gz
Algorithm Hash digest
SHA256 e011ef39b2e83277572d4375e66729201ddaf94141ee8179efcaed277e3d052f
MD5 24e18823b6e311c0114800d08dddd5cf
BLAKE2b-256 05aeafc98af5eb29815ae1248a9f593c13b24e3a62287ba5e7ee892aa275f74c

See more details on using hashes here.

File details

Details for the file fhirclientr4-4.0.0-py2.py3-none-any.whl.

File metadata

File hashes

Hashes for fhirclientr4-4.0.0-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 3d70caad3d9175897fbfa35376c380af36c388afdfb6fda744ed295c56a79634
MD5 00fe8a6b173ea0a9fd02e44aa326de14
BLAKE2b-256 de6fd99dab89479b30cb0b359d3590a7e637f0af99b214a9297f09d3bdcd1324

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page