Skip to content

KITMILTU/Adversarial_time-to-event

Repository files navigation

Adversarial Time-to-Event Modeling (ICML 2018)

This repository contains the TensorFlow code to replicate experiments in our paper Adversarial Time-to-Event Modeling (ICML 2018):

@inproceedings{chapfuwa2018adversarial, 
  title={Adversarial Time-to-Event Modeling},
  author={Chapfuwa, Paidamoyo and Tao, Chenyang and Li, Chunyuan and Page, Courtney and Goldstein, Benjamin and Carin, Lawrence and Henao, Ricardo},
  booktitle={ICML},
  year={2018}
}

This project is maintained by Paidamoyo Chapfuwa. Please contact paidamoyo.chapfuwa@duke.edu for any relevant issues.

Prerequisites

The code is implemented with the following dependencies:

pip install -r requirements.txt

Data

We consider the following datasets:

  • SUPPORT
  • Flchain
  • SEER
  • EHR (a large study from Duke University Health System centered around inpatient visits due to comorbidities in patients with Type-2 diabetes)

For convenience, we provide pre-processing scripts of all datasets (except EHR). In addition, the data directory contains downloaded Flchain and SUPPORT datasets.

Model Training

The code consists of 3 models: DATE, DATE-AE and DRAFT. For each model, please modify the train scripts with the chosen datasets: dataset is set to one of the three public datasets {flchain, support, seer}, the default is support.

  • To train DATE or DATE_AE model (When simple=True (default), DATE is chosen. Otherwise, modify in train_date.py.)
 python train_date.py
  • To train DRAFT model
 python train_draft.py

Metrics and Visualizations

Once the networks are trained and the results are saved, we extract the following key results:

  • Training and evaluation metrics are logged in model.log
  • Epoch based cost function plots can be found in the plots directory
  • To evaluate and plot generated time-to-event distribution we provide raw results in the matrix directory

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages