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Natural language generation for discrete data in EHRs

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Neural Record Captioning (NRC)

This repository contains code from the paper Natural Language Generation for Electronic Health Records.

Overview

what's included

  1. Keras code for the NRC model.
  2. Training and testing scripts for the model.
  3. Example scripts for preprocessing EHR data to be used in the model.

getting started

  1. Install the necessary Python modules (list below)
  2. Use preprocessing/sparisfy.py to convert the discrete variables in your EHRs to sparse format
  3. Use preprocessing/words_to_integers.py to convert your free text field to integers
  4. Train the autoencoder on the sparse records with ae_training.py
  5. Train the NRC model with caption_training.py
  6. Generate text with caption_testing.py

required software

  1. Python 3.x
  2. Keras with the TensorFlow backend
  3. Pandas, NumPy, h5py, and scikit-learn

hot tips

The default hyperparameters worked well for the data used in our paper, but they might not for yours, so feel free to experiment! Also, we recommend a GPU for training the captioning model. We used a single NVIDIA Titan X for our experiments, and training with ~2 million records took around 6 hours.

Public Domain Standard Notice

This repository constitutes a work of the United States Government and is not subject to domestic copyright protection under 17 USC § 105. This repository is in the public domain within the United States, and copyright and related rights in the work worldwide are waived through the CC0 1.0 Universal public domain dedication. All contributions to this repository will be released under the CC0 dedication. By submitting a pull request you are agreeing to comply with this waiver of copyright interest.

License Standard Notice

The repository utilizes code licensed under the terms of the Apache Software License and therefore is licensed under ASL v2 or later.

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The source code forked from other open source projects will inherit its license.

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