This repository contains the code used for Predicting Patient Outcomes with Graph Representation Learning (https://arxiv.org/abs/2101.03940).

Overview

Predicting Patient Outcomes with Graph Representation Learning

This repository contains the code used for Predicting Patient Outcomes with Graph Representation Learning. You can watch a video of the spotlight talk at W3PHIAI (AAAI workshop) here:

Watch the video

Citation

If you use this code or the models in your research, please cite the following:

@misc{rocheteautong2021,
      title={Predicting Patient Outcomes with Graph Representation Learning}, 
      author={Emma Rocheteau and Catherine Tong and Petar Veličković and Nicholas Lane and Pietro Liò},
      year={2021},
      eprint={2101.03940},
      archivePrefix={arXiv},
      primaryClass={cs.LG}
}

Motivation

Recent work on predicting patient outcomes in the Intensive Care Unit (ICU) has focused heavily on the physiological time series data, largely ignoring sparse data such as diagnoses and medications. When they are included, they are usually concatenated in the late stages of a model, which may struggle to learn from rarer disease patterns. Instead, we propose a strategy to exploit diagnoses as relational information by connecting similar patients in a graph. To this end, we propose LSTM-GNN for patient outcome prediction tasks: a hybrid model combining Long Short-Term Memory networks (LSTMs) for extracting temporal features and Graph Neural Networks (GNNs) for extracting the patient neighbourhood information. We demonstrate that LSTM-GNNs outperform the LSTM-only baseline on length of stay prediction tasks on the eICU database. More generally, our results indicate that exploiting information from neighbouring patient cases using graph neural networks is a promising research direction, yielding tangible returns in supervised learning performance on Electronic Health Records.

Pre-Processing Instructions

eICU Pre-Processing

  1. To run the sql files you must have the eICU database set up: https://physionet.org/content/eicu-crd/2.0/.

  2. Follow the instructions: https://eicu-crd.mit.edu/tutorials/install_eicu_locally/ to ensure the correct connection configuration.

  3. Replace the eICU_path in paths.json to a convenient location in your computer, and do the same for eICU_preprocessing/create_all_tables.sql using find and replace for '/Users/emmarocheteau/PycharmProjects/eICU-GNN-LSTM/eICU_data/'. Leave the extra '/' at the end.

  4. In your terminal, navigate to the project directory, then type the following commands:

    psql 'dbname=eicu user=eicu options=--search_path=eicu'
    

    Inside the psql console:

    \i eICU_preprocessing/create_all_tables.sql
    

    This step might take a couple of hours.

    To quit the psql console:

    \q
    
  5. Then run the pre-processing scripts in your terminal. This will need to run overnight:

    python3 -m eICU_preprocessing.run_all_preprocessing
    

Graph Construction

To make the graphs, you can use the following scripts:

This is to make most of the graphs that we use. You can alter the arguments given to this script.

python3 -m graph_construction.create_graph --freq_adjust --penalise_non_shared --k 3 --mode k_closest

Write the diagnosis strings into eICU_data folder:

python3 -m graph_construction.get_diagnosis_strings

Get the bert embeddings:

python3 -m graph_construction.bert

Create the graph from the bert embeddings:

python3 -m graph_construction.create_bert_graph --k 3 --mode k_closest

Alternatively, you can request to download our graphs using this link: https://drive.google.com/drive/folders/1yWNLhGOTPhu6mxJRjKCgKRJCJjuToBS4?usp=sharing

Training the ML Models

Before proceeding to training the ML models, do the following.

  1. Define data_dir, graph_dir, log_path and ray_dir in paths.json to convenient locations.

  2. Run the following to unpack the processed eICU data into mmap files for easy loading during training. The mmap files will be saved in data_dir.

    python3 -m src.dataloader.convert
    

The following commands train and evaluate the models introduced in our paper.

N.B.

  • The models are structured using pytorch-lightning. Graph neural networks and neighbourhood sampling are implemented using pytorch-geometric.

  • Our models assume a default graph which is made with k=3 under a k-closest scheme. If you wish to use other graphs, refer to read_graph_edge_list in src/dataloader/pyg_reader.py to add a reference handle to version2filename for your graph.

  • The default task is In-House-Mortality Prediction (ihm), add --task los to the command to perform the Length-of-Stay Prediction (los) task instead.

  • These commands use the best set of hyperparameters; To use other hyperparameters, remove --read_best from the command and refer to src/args.py.

a. LSTM-GNN

The following runs the training and evaluation for LSTM-GNN models. --gnn_name can be set as gat, sage, or mpnn. When mpnn is used, add --ns_sizes 10 to the command.

python3 -m train_ns_lstmgnn --bilstm --ts_mask --add_flat --class_weights --gnn_name gat --add_diag --read_best

The following runs a hyperparameter search.

python3 -m src.hyperparameters.lstmgnn_search --bilstm --ts_mask --add_flat --class_weights  --gnn_name gat --add_diag

b. Dynamic LSTM-GNN

The following runs the training & evaluation for dynamic LSTM-GNN models. --gnn_name can be set as gcn, gat, or mpnn.

python3 -m train_dynamic --bilstm --random_g --ts_mask --add_flat --class_weights --gnn_name mpnn --read_best

The following runs a hyperparameter search.

python3 -m src.hyperparameters.dynamic_lstmgnn_search --bilstm --random_g --ts_mask --add_flat --class_weights --gnn_name mpnn

c. GNN

The following runs the GNN models (with neighbourhood sampling). --gnn_name can be set as gat, sage, or mpnn. When mpnn is used, add --ns_sizes 10 to the command.

python3 -m train_ns_gnn --ts_mask --add_flat --class_weights --gnn_name gat --add_diag --read_best

The following runs a hyperparameter search.

python3 -m src.hyperparameters.ns_gnn_search --ts_mask --add_flat --class_weights --gnn_name gat --add_diag

d. LSTM (Baselines)

The following runs the baseline bi-LSTMs. To remove diagnoses from the input vector, remove --add_diag from the command.

python3 -m train_ns_lstm --bilstm --ts_mask --add_flat --class_weights --num_workers 0 --add_diag --read_best

The following runs a hyperparameter search.

python3 -m src.hyperparameters.lstm_search --bilstm --ts_mask --add_flat --class_weights --num_workers 0 --add_diag
Owner
Emma Rocheteau
Computer Science PhD Student at Cambridge
Emma Rocheteau
Categorizing comments on YouTube into different categories.

Youtube Comments Categorization This repo is for categorizing comments on a youtube video into different categories. negative (grievances, complaints,

Rhitik 5 Nov 26, 2022
CCPD: a diverse and well-annotated dataset for license plate detection and recognition

CCPD (Chinese City Parking Dataset, ECCV) UPdate on 10/03/2019. CCPD Dataset is now updated. We are confident that images in subsets of CCPD is much m

detectRecog 1.8k Dec 30, 2022
PyTorch code accompanying the paper "Landmark-Guided Subgoal Generation in Hierarchical Reinforcement Learning" (NeurIPS 2021).

HIGL This is a PyTorch implementation for our paper: Landmark-Guided Subgoal Generation in Hierarchical Reinforcement Learning (NeurIPS 2021). Our cod

Junsu Kim 20 Dec 14, 2022
Motion planning environment for Sampling-based Planners

Sampling-Based Motion Planners' Testing Environment Sampling-based motion planners' testing environment (sbp-env) is a full feature framework to quick

Soraxas 23 Aug 23, 2022
X-VLM: Multi-Grained Vision Language Pre-Training

X-VLM: learning multi-grained vision language alignments Multi-Grained Vision Language Pre-Training: Aligning Texts with Visual Concepts. Yan Zeng, Xi

Yan Zeng 286 Dec 23, 2022
Code repository for "Reducing Underflow in Mixed Precision Training by Gradient Scaling" presented at IJCAI '20

Reducing Underflow in Mixed Precision Training by Gradient Scaling This project implements the gradient scaling method to improve the performance of m

Ruizhe Zhao 5 Apr 14, 2022
Parameterized Explainer for Graph Neural Network

PGExplainer This is a Tensorflow implementation of the paper: Parameterized Explainer for Graph Neural Network https://arxiv.org/abs/2011.04573 NeurIP

Dongsheng Luo 89 Dec 12, 2022
Official Implementation of Domain-Aware Universal Style Transfer

Domain Aware Universal Style Transfer Official Pytorch Implementation of 'Domain Aware Universal Style Transfer' (ICCV 2021) Domain Aware Universal St

KibeomHong 80 Dec 30, 2022
Python version of the amazing Reaction Mechanism Generator (RMG).

Reaction Mechanism Generator (RMG) Description This repository contains the Python version of Reaction Mechanism Generator (RMG), a tool for automatic

Reaction Mechanism Generator 284 Dec 27, 2022
Turning SymPy expressions into JAX functions

sympy2jax Turn SymPy expressions into parametrized, differentiable, vectorizable, JAX functions. All SymPy floats become trainable input parameters. S

Miles Cranmer 38 Dec 11, 2022
Data labels and scripts for fastMRI.org

fastMRI+: Clinical pathology annotations for the fastMRI dataset The fastMRI dataset is a publicly available MRI raw (k-space) dataset. It has been us

Microsoft 51 Dec 22, 2022
The "breathing k-means" algorithm with datasets and example notebooks

The Breathing K-Means Algorithm (with examples) The Breathing K-Means is an approximation algorithm for the k-means problem that (on average) is bette

Bernd Fritzke 75 Nov 17, 2022
Learning Dense Representations of Phrases at Scale (Lee et al., 2020)

DensePhrases DensePhrases provides answers to your natural language questions from the entire Wikipedia in real-time. While it efficiently searches th

Princeton Natural Language Processing 540 Dec 30, 2022
This code is an implementation for Singing TTS.

MLP Singer This code is an implementation for Singing TTS. The algorithm is based on the following papers: Tae, J., Kim, H., & Lee, Y. (2021). MLP Sin

Heejo You 22 Dec 23, 2022
Code for Multimodal Neural SLAM for Interactive Instruction Following

Code for Multimodal Neural SLAM for Interactive Instruction Following Code structure The code is adapted from E.T. and most training as well as data p

7 Dec 07, 2022
Official implementation of "An Image is Worth 16x16 Words, What is a Video Worth?" (2021 paper)

An Image is Worth 16x16 Words, What is a Video Worth? paper Official PyTorch Implementation Gilad Sharir, Asaf Noy, Lihi Zelnik-Manor DAMO Academy, Al

213 Nov 12, 2022
Official Implementation of Few-shot Visual Relationship Co-localization

VRC Official implementation of the Few-shot Visual Relationship Co-localization (ICCV 2021) paper project page | paper Requirements Use python = 3.8.

22 Oct 13, 2022
Prototypical python implementation of the trust-region algorithm presented in Sequential Linearization Method for Bound-Constrained Mathematical Programs with Complementarity Constraints by Larson, Leyffer, Kirches, and Manns.

Prototypical python implementation of the trust-region algorithm presented in Sequential Linearization Method for Bound-Constrained Mathematical Programs with Complementarity Constraints by Larson, L

3 Dec 02, 2022
Fashion Entity Classification

Fashion-Entity-Classification - Fashion-MNIST is a dataset of Zalando's article images—consisting of a training set of 60,000 examples and a test set of 10,000 examples. Each example is a 28x28 grays

ADITYA SHAH 1 Jan 04, 2022
A very simple tool to rewrite parameters such as attributes and constants for OPs in ONNX models. Simple Attribute and Constant Modifier for ONNX.

sam4onnx A very simple tool to rewrite parameters such as attributes and constants for OPs in ONNX models. Simple Attribute and Constant Modifier for

Katsuya Hyodo 6 May 15, 2022