Pre-training of Graph Augmented Transformers for Medication Recommendation

Related tags

Deep LearningG-Bert
Overview

G-Bert

Pre-training of Graph Augmented Transformers for Medication Recommendation

Intro

G-Bert combined the power of Graph Neural Networks and BERT (Bidirectional Encoder Representations from Transformers) for medical code representation and medication recommendation. We use the graph neural networks (GNNs) to represent the structure information of medical codes from a medical ontology. Then we integrate the GNN representation into a transformer-based visit encoder and pre-train it on single-visit EHR data. The pre-trained visit encoder and representation can be fine-tuned for downstream medical prediction tasks. Our model is the first to bring the language model pre-training schema into the healthcare domain and it achieved state-of-the-art performance on the medication recommendation task.

Requirements

  • pytorch>=0.4
  • python>=3.5
  • torch_geometric==1.0.3

Guide

We list the structure of this repo as follows:

.
├── [4.0K]  code/
│   ├── [ 13K]  bert_models.py % transformer models
│   ├── [5.9K]  build_tree.py % build ontology
│   ├── [4.3K]  config.py % hyperparameters for G-Bert
│   ├── [ 11K]  graph_models.py % GAT models
│   ├── [   0]  __init__.py
│   ├── [9.8K]  predictive_models.py % G-Bert models
│   ├── [ 721]  run_alternative.sh % script to train G-Bert
│   ├── [ 19K]  run_gbert.py % fine tune G-Bert
│   ├── [ 19K]  run_gbert_side.py
│   ├── [ 18K]  run_pretraining.py % pre-train G-Bert
│   ├── [4.4K]  run_tsne.py # output % save embedding for tsne visualization
│   └── [4.7K]  utils.py
├── [4.0K]  data/
│   ├── [4.9M]  data-multi-side.pkl 
│   ├── [3.6M]  data-multi-visit.pkl % patients data with multi-visit
│   ├── [4.3M]  data-single-visit.pkl % patients data with singe-visit
│   ├── [ 11K]  dx-vocab-multi.txt % diagnosis codes vocabulary in multi-visit data
│   ├── [ 11K]  dx-vocab.txt % diagnosis codes vocabulary in all data
│   ├── [ 29K]  EDA.ipynb % jupyter version to preprocess data
│   ├── [ 18K]  EDA.py % python version to preprocess data
│   ├── [6.2K]  eval-id.txt % validation data ids
│   ├── [6.9K]  px-vocab-multi.txt % procedure codes vocabulary in multi-visit data
│   ├── [ 725]  rx-vocab-multi.txt % medication codes vocabulary in multi-visit data
│   ├── [2.6K]  rx-vocab.txt % medication codes vocabulary in all data
│   ├── [6.2K]  test-id.txt % test data ids
│   └── [ 23K]  train-id.txt % train data ids
└── [4.0K]  saved/
    └── [4.0K]  GBert-predict/ % model files to reproduce our result
        ├── [ 371]  bert_config.json 
        └── [ 12M]  pytorch_model.bin

Preprocessing Data

We have released the preprocessing codes named data/EDA.ipynb to process data using raw files from MIMIC-III dataset. You can download data files from MIMIC and get necessary mapping files from GAMENet.

Quick Test

To validate the performance of G-Bert, you can run the following script since we have provided the trained model binary file and well-preprocessed data.

cd code/
python run_gbert.py --model_name GBert-predict --use_pretrain --pretrain_dir ../saved/GBert-predict --graph

Cite

Please cite our paper if you find this code helpful:

@article{shang2019pre,
  title={Pre-training of Graph Augmented Transformers for Medication Recommendation},
  author={Shang, Junyuan and Ma, Tengfei and Xiao, Cao and Sun, Jimeng},
  journal={arXiv preprint arXiv:1906.00346},
  year={2019}
}

Acknowledgement

Many thanks to the open source repositories and libraries to speed up our coding progress.

A spherical CNN for weather forecasting

DeepSphere-Weather - Deep Learning on the sphere for weather/climate applications. The code in this repository provides a scalable and flexible framew

DeepSphere 47 Dec 25, 2022
PyTorch implementation of PP-LCNet

PP-LCNet-Pytorch Pre-Trained Models Google Drive p018 Accuracy Models Top1 Top5 PPLCNet_x0_25 0.5186 0.7565 PPLCNet_x0_35 0.5809 0.8083 PPLCNet_x0_5 0

24 Dec 12, 2022
[NeurIPS 2021] Towards Better Understanding of Training Certifiably Robust Models against Adversarial Examples | ⛰️⚠️

Towards Better Understanding of Training Certifiably Robust Models against Adversarial Examples This repository is the official implementation of "Tow

Sungyoon Lee 4 Jul 12, 2022
Code release for Convolutional Two-Stream Network Fusion for Video Action Recognition

Convolutional Two-Stream Network Fusion for Video Action Recognition

Christoph Feichtenhofer 676 Dec 31, 2022
fklearn: Functional Machine Learning

fklearn: Functional Machine Learning fklearn uses functional programming principles to make it easier to solve real problems with Machine Learning. Th

nubank 1.4k Dec 07, 2022
Codes for paper "KNAS: Green Neural Architecture Search"

KNAS Codes for paper "KNAS: Green Neural Architecture Search" KNAS is a green (energy-efficient) Neural Architecture Search (NAS) approach. It contain

90 Dec 22, 2022
Self-Supervised Learning of Event-based Optical Flow with Spiking Neural Networks

Self-Supervised Learning of Event-based Optical Flow with Spiking Neural Networks Work accepted at NeurIPS'21 [paper, video]. If you use this code in

TU Delft 43 Dec 07, 2022
Tello Drone Trajectory Tracking

With this library you can track the trajectory of your tello drone or swarm of drones in real time.

Kamran Asgarov 2 Oct 12, 2022
Self-Supervised depth kalilia

Self-Supervised depth kalilia

24 Oct 15, 2022
Official repo for our 3DV 2021 paper "Monocular 3D Reconstruction of Interacting Hands via Collision-Aware Factorized Refinements".

Monocular 3D Reconstruction of Interacting Hands via Collision-Aware Factorized Refinements Yu Rong, Jingbo Wang, Ziwei Liu, Chen Change Loy Paper. Pr

Yu Rong 41 Dec 13, 2022
Machine-in-the-Loop Rewriting for Creative Image Captioning

Machine-in-the-Loop Rewriting for Creative Image Captioning Data Annotated sources of data used in the paper: Data Source URL Mohammed et al. Link Gor

Vishakh P 6 Jul 24, 2022
Validated, scalable, community developed variant calling, RNA-seq and small RNA analysis

Validated, scalable, community developed variant calling, RNA-seq and small RNA analysis. You write a high level configuration file specifying your in

Blue Collar Bioinformatics 917 Jan 03, 2023
Kaggle competition: Springleaf Marketing Response

PruebaEnel Prueba Kaggle-Springleaf-master Prueba Kaggle-Springleaf Kaggle competition: Springleaf Marketing Response Competencia de Kaggle: Marketing

1 Feb 09, 2022
Pytorch Lightning code guideline for conferences

Deep learning project seed Use this seed to start new deep learning / ML projects. Built in setup.py Built in requirements Examples with MNIST Badges

Pytorch Lightning 1k Jan 06, 2023
Sharpened cosine similarity torch - A Sharpened Cosine Similarity layer for PyTorch

Sharpened Cosine Similarity A layer implementation for PyTorch Install At your c

Brandon Rohrer 203 Nov 30, 2022
Random Forests for Regression with Missing Entries

Random Forests for Regression with Missing Entries These are specific codes used in the article: On the Consistency of a Random Forest Algorithm in th

Irving Gómez-Méndez 1 Nov 15, 2021
Implementation of the method described in the Speech Resynthesis from Discrete Disentangled Self-Supervised Representations.

Speech Resynthesis from Discrete Disentangled Self-Supervised Representations Implementation of the method described in the Speech Resynthesis from Di

4 Mar 11, 2022
A transformer which can randomly augment VOC format dataset (both image and bbox) online.

VocAug It is difficult to find a script which can augment VOC-format dataset, especially the bbox. Or find a script needs complex requirements so it i

Coder.AN 1 Mar 05, 2022
T2F: text to face generation using Deep Learning

⭐ [NEW] ⭐ T2F - 2.0 Teaser (coming soon ...) Please note that all the faces in the above samples are generated ones. The T2F 2.0 will be using MSG-GAN

Animesh Karnewar 533 Dec 22, 2022
Python package provinding tools for artistic interactive applications using AI

Documentation redrawing Python package provinding tools for artistic interactive applications using AI Created by ReDrawing Campinas team for the Open

ReDrawing Campinas 1 Sep 30, 2021