Yet another ICU benchmark (YAIB) provides a framework for doing clinical machine learning experiments on Intensive Care Unit (ICU) EHR data.
We support the following datasets out of the box:
Dataset | MIMIC-III / IV | eICU-CRD | HiRID | AUMCdb |
---|---|---|---|---|
Admissions | 40k / 73k | 200k | 33k | 23k |
Version | v1.4 / v2.2 | v2.0 | v1.1.1 | v1.0.2 |
Frequency (time-series) | 1 hour | 5 minutes | 2 / 5 minutes | up to 1 minute |
Originally published | 2015 / 2020 | 2017 | 2020 | 2019 |
Origin | USA | USA | Switzerland | Netherlands |
New datasets can also be added. We are currently working on a package to make this process as smooth as possible. The benchmark is designed for operating on preprocessed parquet files.
We provide five common tasks for clinical prediction by default:
No | Task | Frequency | Type |
---|---|---|---|
1 | ICU Mortality | Once per Stay (after 24H) | Binary Classification |
2 | Acute Kidney Injury (AKI) | Hourly (within 6H) | Binary Classification |
3 | Sepsis | Hourly (within 6H) | Binary Classification |
4 | Kidney Function(KF) | Once per stay | Regression |
5 | Length of Stay (LoS) | Hourly (within 7D) | Regression |
New tasks can be easily added. To get started right away, we include the eICU and MIMIC-III demo datasets in our repository.
The following repositories may be relevant as well:
- YAIB-cohorts: Cohort generation for YAIB.
- YAIB-models: Pretrained models for YAIB.
- ReciPys: Preprocessing package for YAIB pipelines.
For all YAIB-related repositories, please see: https://github.com/stars/rvandewater/lists/yaib.
To reproduce the benchmarks in our paper, we refer to the ML reproducibility document. If you use this code in your research, please cite the following publication:
@inproceedings{vandewaterYetAnotherICUBenchmark2024,
title = {Yet Another ICU Benchmark: A Flexible Multi-Center Framework for Clinical ML},
shorttitle = {Yet Another ICU Benchmark},
booktitle = {The Twelfth International Conference on Learning Representations},
author = {van de Water, Robin and Schmidt, Hendrik Nils Aurel and Elbers, Paul and Thoral, Patrick and Arnrich, Bert and Rockenschaub, Patrick},
year = {2024},
month = oct,
urldate = {2024-02-19},
langid = {english},
}
This paper can also be found on arxiv 2306.05109
YAIB is currently ideally installed from source, however we also offer it an early PyPi release.
First, we clone this repository using git:
git clone https://github.com/rvandewater/YAIB.git
Please note the branch. The newest features and fixes are available at the development branch:
git checkout development
YAIB can be installed using a conda environment (preferred) or pip. Below are the three CLI commands to install YAIB using conda.
The first command will install an environment based on Python 3.10.
conda env update -f environment.yml
Use
environment.yml
on x86 hardware. Please note that this installs Pytorch as well.
For mps, one needs to comment out pytorch-cuda, see the PyTorch install guide.
We then activate the environment and install a package called icu-benchmarks
, after which YAIB should be operational.
conda activate yaib
pip install -e .
After installation, please check if your Pytorch version works with CUDA (in case available) to ensure the best performance. YAIB will automatically list available processors at initialization in its log files.
Please refer to our wiki for detailed information on how to use YAIB.
The authors of MIMIC-III and eICU have made a small demo dataset available to demonstrate their use. They can be found on Physionet: MIMIC-III Clinical Database Demo and eICU Collaborative Research Database Demo. These datasets are published under the Open Data Commons Open Database License v1.0 and can be used without credentialing procedure. We have created demo cohorts processed solely from these datasets for each of our currently supported task endpoints. To the best of our knowledge, this complies with the license and the respective dataset author's instructions. Usage of the task cohorts and the dataset is only permitted with the above license. We strongly recommend completing a human subject research training to ensure you properly handle human subject research data.
In the folder demo_data
we provide processed publicly available demo datasets from eICU and MIMIC with the necessary labels
for Mortality at 24h
,Sepsis
, Akute Kidney Injury
, Kidney Function
, and Length of Stay
.
If you do not yet have access to the ICU datasets, you can run the following command to train models for the included demo cohorts:
wandb sweep --verbose experiments/demo_benchmark_classification.yml
wandb sweep --verbose experiments/demo_benchmark_regression.yml
wandb agent <sweep_id>
Tip: You can choose to run each of the configurations on a SLURM cluster instance by
wandb agent --count 1 <sweep_id>
Note: You will need to have a wandb account and be logged in to run the above commands.
HiRID, eICU, and MIMIC IV can be accessed through PhysioNet. A guide to this process can be found here. AUMCdb can be accessed through a separate access procedure. We do not have involvement in the access procedure and can not answer to any requests for data access.
Since the datasets were created independently of each other, they do not share the same data structure or data identifiers. In order to make them interoperable, use the preprocessing utilities provided by the ricu package. Ricu pre-defines a large number of clinical concepts and how to load them from a given dataset, providing a common interface to the data, that is used in this benchmark. Please refer to our cohort definition code for generating the cohorts using our python interface for ricu. After this, you can run the benchmark once you have gained access to the datasets.
The following command will run training and evaluation on the MIMIC demo dataset for (Binary) mortality prediction at 24h with the LGBMClassifier. Child samples are reduced due to the small amount of training data. We load available cache and, if available, load existing cache files.
icu-benchmarks \
-d demo_data/mortality24/mimic_demo \
-n mimic_demo \
-t BinaryClassification \
-tn Mortality24 \
-m LGBMClassifier \
-hp LGBMClassifier.min_child_samples=10 \
--generate_cache \
--load_cache \
--seed 2222 \
-l ../yaib_logs/ \
--tune
For a list of available flags, run
icu-benchmarks train -h
.
Run with
PYTORCH_ENABLE_MPS_FALLBACK=1
on Macs with Metal Performance Shaders.
For Windows based systems, the next line character (\) needs to be replaced by (^) (Command Prompt) or (`) (Powershell) respectively.
Alternatively, the easiest method to train all the models in the paper is to run these commands from the directory root:
wandb sweep --verbose experiments/benchmark_classification.yml
wandb sweep --verbose experiments/benchmark_regression.yml
This will create two hyperparameter sweeps for WandB for the classification and regression tasks. This configuration will train all the models in the paper. You can then run the following command to train the models:
wandb agent <sweep_id>
Tip: You can choose to run each of the configurations on a SLURM cluster instance by
wandb agent --count 1 <sweep_id>
Note: You will need to have a wandb account and be logged in to run the above commands.
It is possible to evaluate a model trained on another dataset and no additional training is done. In this case, the source dataset is the demo data from MIMIC and the target is the eICU demo:
icu-benchmarks \
--eval \
-d demo_data/mortality24/eicu_demo \
-n eicu_demo \
-t BinaryClassification \
-tn Mortality24 \
-m LGBMClassifier \
--generate_cache \
--load_cache \
-s 2222 \
-l ../yaib_logs \
-sn mimic \
--source-dir ../yaib_logs/mimic_demo/Mortality24/LGBMClassifier/2022-12-12T15-24-46/repetition_0/fold_0
A similar syntax is used for finetuning, where a model is loaded and then retrained. To run finetuning, replace
--eval
with-ft
.
We provide several existing machine learning models that are commonly used for multivariate time-series data.
pytorch
is used for the deep learning models, lightgbm
for the boosted tree approaches, and sklearn
for other classical
machine learning models.
The benchmark provides (among others) the following built-in models:
- Logistic Regression: Standard regression approach.
- Elastic Net: Linear regression with combined L1 and L2 priors as regularizer.
- LightGBM: Efficient gradient boosting trees.
- Long Short-term Memory (LSTM): The most commonly used type of Recurrent Neural Networks for long sequences.
- Gated Recurrent Unit (GRU) : A extension to LSTM which showed improvements (paper).
- Temporal Convolutional Networks (TCN): 1D convolution approach to sequence data. By using dilated convolution to extend the receptive field of the network it has shown great performance on long-term dependencies.
- Transformers: The most common Attention based approach.
To adapt YAIB to your own use case, you can use the development information page as a reference. We appreciate contributions to the project. Please read the contribution guidelines before submitting a pull request.
This project has been developed partially under the funding of “Gemeinsamer Bundesausschuss (G-BA) Innovationsausschuss” in the framework of “CASSANDRA - Clinical ASSist AND aleRt Algorithms”. (project number 01VSF20015). We would like to acknowledge the work of Alisher Turubayev, Anna Shopova, Fabian Lange, Mahmut Kamalak, Paul Mattes, and Victoria Ayvasky for adding Pytorch Lightning, Weights and Biases compatibility, and several optional imputation methods to a later version of the benchmark repository.
We do not own any of the datasets used in this benchmark. This project uses heavily adapted components of the HiRID benchmark. We thank the authors for providing this codebase and encourage further development to benefit the scientific community. The demo datasets have been released under an Open Data Commons Open Database License (ODbL).
This source code is released under the MIT license, included here. We do not own any of the datasets used or included in this repository.