Metadata-Version: 2.1
Name: pyhealth
Version: 1.1
Summary: A Python library for healthcare AI
Home-page: https://github.com/sunlabuiuc/pyhealth
Author: Chaoqi Yang, Zhenbang Wu, Patrick Jiang
Author-email: chaoqiy2@illinois.edu
Keywords: heathcare AI,healthcare,electronic health records,EHRs,machine learning,data mining,neural networks,deep learning
Classifier: Development Status :: 3 - Alpha
Classifier: Intended Audience :: Education
Classifier: Intended Audience :: Financial and Insurance Industry
Classifier: Intended Audience :: Science/Research
Classifier: Intended Audience :: Developers
Classifier: Intended Audience :: Information Technology
Classifier: License :: OSI Approved :: BSD License
Classifier: Programming Language :: Python :: 3.8
Description-Content-Type: text/x-rst

Welcome to PyHealth!
====================================

.. image:: https://img.shields.io/pypi/v/pyhealth.svg?color=brightgreen
   :target: https://pypi.org/project/pyhealth/
   :alt: PyPI version


.. image:: https://readthedocs.org/projects/pyhealth/badge/?version=latest
   :target: https://pyhealth.readthedocs.io/en/latest/
   :alt: Documentation status
   

.. image:: https://img.shields.io/github/stars/yzhao062/pyhealth.svg
   :target: https://github.com/sunlabuiuc/pyhealth/stargazers
   :alt: GitHub stars


.. image:: https://img.shields.io/github/forks/yzhao062/pyhealth.svg?color=blue
   :target: https://github.com/sunlabuiuc/pyhealth/network
   :alt: GitHub forks


.. image:: https://pepy.tech/badge/pyhealth
   :target: https://pepy.tech/project/pyhealth
   :alt: Downloads


.. image:: https://pepy.tech/badge/pyhealth/month
   :target: https://pepy.tech/project/pyhealth
   :alt: Downloads



.. -----


.. **Build Status & Coverage & Maintainability & License**

.. .. image:: https://travis-ci.org/yzhao062/pyhealth.svg?branch=master
..    :target: https://travis-ci.org/yzhao062/pyhealth
..    :alt: Build Status


.. .. image:: https://ci.appveyor.com/api/projects/status/1kupdy87etks5n3r/branch/master?svg=true
..    :target: https://ci.appveyor.com/project/yzhao062/pyhealth/branch/master
..    :alt: Build status


.. .. image:: https://api.codeclimate.com/v1/badges/bdc3d8d0454274c753c4/maintainability
..    :target: https://codeclimate.com/github/yzhao062/pyhealth/maintainability
..    :alt: Maintainability


.. .. image:: https://img.shields.io/github/license/yzhao062/pyhealth
..    :target: https://github.com/yzhao062/pyhealth/blob/master/LICENSE
..    :alt: License

PyHealth is designed for both **ML researchers and medical practitioners**. We can make your **healthcare AI applications** easier to deploy and more flexible and customizable. `[Tutorials] <https://pyhealth.readthedocs.io/>`_
 
----------


Introduction
--------------------------

.. .. image:: https://raw.githubusercontent.com/yzhao062/PyHealth/master/docs/images/logo.png
..    :target: https://raw.githubusercontent.com/yzhao062/PyHealth/master/docs/images/logo.png
..    :alt: PyHealth Logo
..    :align: center

PyHealth can support **diverse electronic health records (EHRs)** such as MIMIC and eICU and all OMOP-CDM based databases and provide **various advanced deep learning algorithms** for handling **important healthcare tasks** such as diagnosis-based drug recommendation, patient hospitalization and mortality prediction, and ICU length stay forecasting, etc.  

*Build a healthcare AI pipeline can be as short as 10 lines of code in PyHealth*.

Installation
-----------------

- You could install from PyPi:

.. code-block:: bash

    pip install pyhealth==1.0a2

- or from github source:

.. code-block:: bash

   git clone -b v1.0a2 https://github.com/sunlabuiuc/PyHealth.git
   cd pyhealth
   pip install .

- Required Dependencies

.. code-block:: bash

    python>=3.8
    torch>=1.8.0
    rdkit>=2022.03.4
    scikit-learn>=0.24.2
    networkx>=2.6.3
    pandas>=1.3.2
    tqdm


Modules
--------------------------

All healthcare tasks in our package follow a **five-stage pipeline**: 

 load dataset -> define task function -> build ML/DL model -> model training -> inference

! We try hard to make sure each stage is as separate as possibe, so that people can customize their own pipeline by only using our data processing steps or the ML models. Each step will call one module and we introduce them using an example.

An ML Pipeline Example 
^^^^^^^^^^^^^^^^^^^^^^^^^^

* **STEP 1: <pyhealth.datasets>** provides a clean structure for the dataset, independent from the tasks. We support ``MIMIC-III``, ``MIMIC-IV`` and ``eICU``, as well as the standard ``OMOP-formatted data``. The dataset is stored in a unified ``Patient-Visit-Event`` structure.

.. code-block:: python

    from pyhealth.datasets import MIMIC3Dataset
    mimic3dataset = MIMIC3Dataset(
        root="https://storage.googleapis.com/pyhealth/mimiciii/1.4/", 
        tables=["DIAGNOSES_ICD", "PROCEDURES_ICD", "PRESCRIPTIONS"],
        # map all NDC codes to ATC 3-rd level codes in these tables
        code_mapping={"NDC": ("ATC", {"target_kwargs": {"level": 3}})},
    )

* **STEP 2: <pyhealth.tasks>** inputs the ``<pyhealth.datasets>`` object and defines how to process each pateint's data into a set of samples for the tasks. In the package, we provide several task examples, such as ``drug recommendation`` and ``length of stay prediction``.

.. code-block:: python

    from pyhealth.tasks import drug_recommendation_mimic3_fn
    from pyhealth.datasets import split_by_patient, get_dataloader

    mimic3dataset.set_task(task_fn=drug_recommendation_mimic3_fn) # use default task
    train_ds, val_ds, test_ds = split_by_patient(mimic3dataset, [0.8, 0.1, 0.1])

    # create dataloaders
    train_loader = get_dataloader(train_dataset, batch_size=32, shuffle=True)
    val_loader = get_dataloader(val_dataset, batch_size=32, shuffle=False)
    test_loader = get_dataloader(test_dataset, batch_size=32, shuffle=False)

* **STEP 3: <pyhealth.models>** provides the healthcare ML models using ``<pyhealth.models>``. This module also provides model layers, such as ``pyhealth.models.RETAINLayer`` for building customized ML architectures. Our model layers can used as easily as ``torch.nn.Linear``.

.. code-block:: python

    from pyhealth.models import Transformer

    model = Transformer(
        dataset=dataset,
        feature_keys=["conditions", "procedures"],
        label_key="drugs",
        mode="multilabel",
        operation_level="visit",
    )

* **STEP 4: <pyhealth.trainer>** is the training manager with ``train_loader``, the ``val_loader``, ``val_metric``, and specify other arguemnts, such as epochs, optimizer, learning rate, etc. The trainer will automatically save the best model and output the path in the end.

.. code-block:: python
    
    from pyhealth.trainer import Trainer

    trainer = Trainer(model=model)
    trainer.train(
        train_dataloader=train_dataloader,
        val_dataloader=val_dataloader,
        epochs=50,
        monitor="pr_auc_samples",
    )

* **STEP 5: <pyhealth.metrics>** provides: (i) **common evaluation metrics** and the usage is the same as ``<pyhealth.metrics>``; (ii) **metrics (weighted by patients)** for patient-level tasks; (iii) **special metrics** in healthcare, such as drug-drug interaction (DDI) rate.

.. code-block:: python
    
    trainer.evaluate(test_dataloader)

Medical Code Map
^^^^^^^^^^^^^^^^^^^^^^^^^^

* **<pyhealth.codemap>** provides two core functionalities: (i) looking up information for a given medical code (e.g., name, category, sub-concept); (ii) mapping codes across coding systems (e.g., ICD9CM to CCSCM). **This module can be easily applied to your research.**

* For code mapping between two coding systems

.. code-block:: python

    from pyhealth.medcode import CrossMap

    codemap = CrossMap.load("ICD9CM", "CCSCM")
    codemap.map("82101") # use it like a dict

    codemap = CrossMap.load("NDC", "ATC")
    codemap.map("00527051210")

* For code ontology lookup within one system

.. code-block:: python

    from pyhealth.medcode import InnerMap

    icd9cm = InnerMap.load("ICD9CM")
    icd9cm.lookup("428.0") # get detailed info
    icd9cm.get_ancestors("428.0") # get parents

Medical Code Tokenizer
^^^^^^^^^^^^^^^^^^^^^^^^^^

* **<pyhealth.tokenizer>** is used for transformations between string-based tokens and integer-based indices, based on the overall token space. We provide flexible functions to tokenize 1D, 2D and 3D lists. This module can be used in many other scenarios.

.. code-block:: python

    from pyhealth.tokenizer import Tokenizer

    # Example: we use a list of ATC3 code as the token
    token_space = ['A01A', 'A02A', 'A02B', 'A02X', 'A03A', 'A03B', 'A03C', 'A03D', \
            'A03F', 'A04A', 'A05A', 'A05B', 'A05C', 'A06A', 'A07A', 'A07B', 'A07C', \
            'A12B', 'A12C', 'A13A', 'A14A', 'A14B', 'A16A']
    tokenizer = Tokenizer(tokens=token_space, special_tokens=["<pad>", "<unk>"])

    # 2d encode 
    tokens = [['A03C', 'A03D', 'A03E', 'A03F'], ['A04A', 'B035', 'C129']]
    indices = tokenizer.batch_encode_2d(tokens) # [[8, 9, 10, 11], [12, 1, 1, 0]]

    # 2d decode 
    indices = [[8, 9, 10, 11], [12, 1, 1, 0]]
    tokens = tokenizer.batch_decode_2d(indices) # [['A03C', 'A03D', 'A03E', 'A03F'], ['A04A', '<unk>', '<unk>']]

..

Tutorials
------------

 We provide the following tutorials to help users get started with our pyhealth.


`Tutorial 0: Introduction to pyhealth.data <https://colab.research.google.com/drive/1y9PawgSbyMbSSMw1dpfwtooH7qzOEYdN?usp=sharing>`_ 

`Tutorial 1: Introduction to pyhealth.datasets <https://colab.research.google.com/drive/18kbzEQAj1FMs_J9rTGX8eCoxnWdx4Ltn?usp=sharing>`_ 

`Tutorial 2: Introduction to pyhealth.tasks <https://colab.research.google.com/drive/1r7MYQR_5yCJGpK_9I9-A10HmpupZuIN-?usp=sharing>`_ 

`Tutorial 3: Introduction to pyhealth.models <https://colab.research.google.com/drive/1LcXZlu7ZUuqepf269X3FhXuhHeRvaJX5?usp=sharing>`_ 

`Tutorial 4: Introduction to pyhealth.trainer <https://colab.research.google.com/drive/1L1Nz76cRNB7wTp5Pz_4Vp4N2eRZ9R6xl?usp=sharing>`_ 

`Tutorial 5: Introduction to pyhealth.metrics <https://colab.research.google.com/drive/1Mrs77EJ92HwMgDaElJ_CBXbi4iABZBeo?usp=sharing>`_ 

`Tutorial 6: Introduction to pyhealth.tokenizer <https://colab.research.google.com/drive/1bDOb0A5g0umBjtz8NIp4wqye7taJ03D0?usp=sharing>`_

`Tutorial 7: Introduction to pyhealth.medcode <https://colab.research.google.com/drive/1xrp_ACM2_Hg5Wxzj0SKKKgZfMY0WwEj3?usp=sharing>`_

 The following tutorials will help users build their own task pipelines.

`Pipeline 1: Drug Recommendation <https://colab.research.google.com/drive/10CSb4F4llYJvv42yTUiRmvSZdoEsbmFF?usp=sharing>`_ 

`Pipeline 2: Length of Stay Prediction <https://colab.research.google.com/drive/1JoPpXqqB1_lGF1XscBOsDHMLtgvlOYI1?usp=sharing>`_ 

`Pipeline 3: Readmission Prediction <https://colab.research.google.com/drive/1bhCwbXce1YFtVaQLsOt4FcyZJ1_my7Cs?usp=sharing>`_ 

`Pipeline 4: Mortality Prediction <https://colab.research.google.com/drive/1Qblpcv4NWjrnADT66TjBcNwOe8x6wU4c?usp=sharing>`_ 

.. `Pipeline 5: Phenotype Prediction <https://colab.research.google.com/drive/10CSb4F4llYJvv42yTUiRmvSZdoEsbmFF>`_ 



----

Users can **customize their healthcare AI pipeline** as simply as calling one module

* process your OMOP data via ``pyhealth.datasets``
* process the open eICU (e.g., MIMIC) data via ``pyhealth.datasets``
* define your own task on existing databases via ``pyhealth.tasks``
* use existing healthcare models or build upon it (e.g., RETAIN) via ``pyhealth.models``.
* code map between for conditions and medicaitons via ``pyhealth.codemap``.

.. **Citing PyHealth**\ :

.. `PyHealth paper <https://arxiv.org/abs/2101.04209>`_ is under review at
.. `JMLR <http://www.jmlr.org/>`_ (machine learning open-source software track).
.. If you use PyHealth in a scientific publication, we would appreciate
.. citations to the following paper::

..     @article{
..     }



.. **Key Links and Resources**\ :


.. * `View the latest codes on Github <https://github.com/ycq091044/PyHealth-OMOP>`_
.. * `Execute Interactive Jupyter Notebooks <https://mybinder.org/v2/gh/yzhao062/pyhealth/master>`_
.. * `Check out the PyHealth paper <https://github.com/yzhao062/pyhealth>`_



----


Datasets
--------------------------
We provide the following datasets for general purpose healthcare AI research:

===================  =======================================  ========================================  ======================================================================================================== 
Dataset              Module                                   Year                                      Information                                                             
===================  =======================================  ========================================  ========================================================================================================
MIMIC-III            ``pyhealth.datasets.MIMIC3BaseDataset``  2016                                      `MIMIC-III Clinical Database <https://physionet.org/content/mimiciii/1.4//>`_    
MIMIC-IV             ``pyhealth.datasets.MIMIC4BaseDataset``  2020                                      `MIMIC-IV Clinical Database <https://physionet.org/content/mimiciv/0.4/>`_  
eICU                 ``pyhealth.datasets.eICUBaseDataset``    2018                                      `eICU Collaborative Research Database <https://eicu-crd.mit.edu//>`_                 
OMOP                 ``pyhealth.datasets.OMOPBaseDataset``                                              `OMOP-CDM schema based dataset <https://www.ohdsi.org/data-standardization/the-common-data-model/>`_                                    
===================  =======================================  ========================================  ========================================================================================================


Machine/Deep Learning Models
-----------------------------

==================================    ================  =================================  ======  ===========================================================================================================================================
Model Name                            Type              Module                             Year    Reference
==================================    ================  =================================  ======  ===========================================================================================================================================
Logistic Regression (LR)              classifical ML    ``pyhealth.models.MLModel``                ``sklearn.linear_model.LogisticRegression``
Random Forest (RF)                    classifical ML    ``pyhealth.models.MLModel``                ``sklearn.ensemble.RandomForestClassifier``
Neural Networks (NN)                  classifical ML    ``pyhealth.models.MLModel``                ``sklearn.neural_network.MLPClassifier``
Convolutional Neural Network (CNN)    deep learning     ``pyhealth.models.CNN``            1989    `Handwritten Digit Recognition with a Back-Propagation Network <https://proceedings.neurips.cc/paper/1989/file/53c3bce66e43be4f209556518c2fcb54-Paper.pdf>`_
Recurrent Neural Nets (RNN)           deep Learning     ``pyhealth.models.RNN``            2011    `Recurrent neural network based language model <http://www.fit.vutbr.cz/research/groups/speech/servite/2010/rnnlm_mikolov.pdf>`_
Transformer                           deep Learning     ``pyhealth.models.Transformer``    2017    `Atention is All you Need <https://arxiv.org/abs/1706.03762>`_
RETAIN                                deep Learning     ``pyhealth.models.RETAIN``         2016    `RETAIN: An Interpretable Predictive Model for Healthcare using Reverse Time Attention Mechanism <https://arxiv.org/abs/1608.05745>`_
GAMENet                               deep Learning     ``pyhealth.models.GAMENet``        2019    `GAMENet: Graph Attention Mechanism for Explainable Electronic Health Record Prediction <https://arxiv.org/abs/1809.01852>`_
MICRON                                deep Learning     ``pyhealth.models.MICRON``         2021    `Change Matters: Medication Change Prediction with Recurrent Residual Networks <https://www.ijcai.org/proceedings/2021/0513>`_
SafeDrug                              deep Learning     ``pyhealth.models.SafeDrug``       2021    `SafeDrug: Dual Molecular Graph Encoders for Recommending Effective and Safe Drug Combinations <https://arxiv.org/abs/2105.02711>`_
==================================    ================  =================================  ======  ===========================================================================================================================================


Benchmark on Healthcare Tasks
----------------------------------

* Here is a temporary `benchmark doc <https://docs.google.com/spreadsheets/d/1c4OwCSDaEt7vGmocidq1hK2HCTeB6ZHDzAZvlubpi08/edit#gid=1602645797>`_ on healthcare tasks. We will put the results in this section below.
