Python suite to construct benchmark machine learning datasets from the MIMIC-III clinical database. Currently, the benchmark datasets cover four key inpatient clinical prediction tasks that map onto core machine learning problems: prediction of mortality from early admission data (classification), real-time detection of decompensation (time series classification), forecasting length of stay (regression), and phenotype classification (multilabel sequence classification).
- 2018 December 28: The second draft of the paper is released on arXiv.
- 2017 December 8: This work was presented as a spotlight presentation at NIPS 2017 Machine Learning for Health Workshop.
- 2017 March 23: We are pleased to announce the first official release of these benchmarks. We expect to release a revision within the coming months that will add at least ~50 additional input variables. We are likewise pleased to announce that the manuscript associated with these benchmarks is now available on arXiv.
If you use this code or these benchmarks in your research, please cite the following publication.
@article{Harutyunyan2019,
author={Harutyunyan, Hrayr and Khachatrian, Hrant and Kale, David C. and Ver Steeg, Greg and Galstyan, Aram},
title={Multitask learning and benchmarking with clinical time series data},
journal={Scientific Data},
year={2019},
volume={6},
number={1},
pages={96},
issn={2052-4463},
doi={10.1038/s41597-019-0103-9},
url={https://doi.org/10.1038/s41597-019-0103-9}
}
Please be sure also to cite the original MIMIC-III paper.
Despite rapid growth in research that applies machine learning to clinical data, progress in the field appears far less dramatic than in other applications of machine learning. In image recognition, for example, the winning error rates in the ImageNet Large Scale Visual Recognition Challenge (ILSVRC) plummeted almost 90% from 2010 (0.2819) to 2016 (0.02991). There are many reasonable explanations for this discrepancy: clinical data sets are inherently noisy and uncertain and often small relative to their complexity, and for many problems of interest, ground truth labels for training and evaluation are unavailable.
However, there is another, simpler explanation: practical progress has been difficult to measure due to the absence of community benchmarks like ImageNet. Such benchmarks play an important role in accelerating progress in machine learning research. For one, they focus the community on specific problems and stoke ongoing debate about what those problems should be. They also reduce the startup overhead for researchers moving into a new area. Finally and perhaps most important, benchmarks facilitate reproducibility and direct comparison of competing ideas.
Here we present four public benchmarks for machine learning researchers interested in health care, built using data from the publicly available Medical Information Mart for Intensive Care (MIMIC-III) database (paper, website). Our four clinical prediction tasks are critical care variants of four opportunities to transform health care using in "big clinical data" as described in Bates, et al, 2014:
- early triage and risk assessment, i.e., mortality prediction
- prediction of physiologic decompensation
- identification of high-cost patients, i.e. length of stay forecasting
- characterization of complex, multi-system diseases, i.e., acute care phenotyping
In Harutyunyan, Khachatrian, Kale, and Galstyan 2017, we propose a multitask RNN architecture to solve these four tasks simultaneously and show that this model generally outperforms strong single task baselines.
The content of this repository can be divided into four big parts:
- Tools for creating the benchmark datasets.
- Tools for reading the benchmark datasets.
- Evaluation scripts.
- Baseline models and helper tools.
The mimic3benchmark/scripts
directory contains scripts for creating the benchmark datasets.
The reading tools are in mimic3benchmark/readers.py
.
All evaluation scripts are stored in the mimic3benchmark/evaluation
directory.
The mimic3models
directory contains the baselines models along with some helper tools.
Those tools include discretizers, normalizers and functions for computing metrics.
We do not provide the MIMIC-III data itself. You must acquire the data yourself from https://mimic.physionet.org/. The required libraries are listed in the requirements.txt
file.
Here is our suggested way of installation.
- Install Miniconda.
- Run
conda create -n "mimic3" python=3.7.13
. - Run
conda init [SHELL_NAME]
. You might also need to dosource ~/.bashrc
orsource ~/.zshrc
(depends on the shell version). - Change the conda environment to
mimic3
by runningconda activate mimic3
. - Clone the repo and change the directory:
git clone https://github.com/YerevaNN/mimic3-benchmarks/
cd mimic3-benchmarks/
- Install the requirements with
pip install -r requirements.txt
.
Note that the Python version and some libraries in requirements.txt
are outdated. This is because the models in mimic3models/
use an old version of Keras. If you only need to create the benchmark (i.e., you only need the mimic3benchmark
part), you can use newer Python versions and newer versions of numpy
, pandas
, and scikit-learn
.
Here are the required steps to build the benchmark. It assumes that you already have MIMIC-III dataset (lots of CSV files) on the disk. All the commands below should be run from the root directory of the repo (i.e., from mimic3-benchmarks
).
- The following command takes MIMIC-III CSVs, generates one directory per
SUBJECT_ID
and writes ICU stay information todata/{SUBJECT_ID}/stays.csv
, diagnoses todata/{SUBJECT_ID}/diagnoses.csv
, and events todata/{SUBJECT_ID}/events.csv
. This step might take around an hour.
python -m mimic3benchmark.scripts.extract_subjects {PATH TO MIMIC-III CSVs} data/root/
- The following command attempts to fix some issues (ICU stay ID is missing) and removes the events that have missing information. About 80% of events remain after removing all suspicious rows (more information can be found in
mimic3benchmark/scripts/more_on_validating_events.md
).
python -m mimic3benchmark.scripts.validate_events data/root/
- The next command breaks up per-subject data into separate episodes (pertaining to ICU stays). Time series of events are stored in
{SUBJECT_ID}/episode{#}_timeseries.csv
(where # counts distinct episodes) while episode-level information (patient age, gender, ethnicity, height, weight) and outcomes (mortality, length of stay, diagnoses) are stores in{SUBJECT_ID}/episode{#}.csv
. This script requires two files, one that maps event ITEMIDs to clinical variables and another that defines valid ranges for clinical variables (for detecting outliers, etc.). Outlier detection is disabled in the current version.
python -m mimic3benchmark.scripts.extract_episodes_from_subjects data/root/
- The next command splits the whole dataset into training and testing sets. Note that the train/test split is the same of all tasks.
python -m mimic3benchmark.scripts.split_train_and_test data/root/
- The following commands will generate task-specific datasets, which can later be used in models. These commands are independent, if you are going to work only on one benchmark task, you can run only the corresponding command.
python -m mimic3benchmark.scripts.create_in_hospital_mortality data/root/ data/in-hospital-mortality/
python -m mimic3benchmark.scripts.create_decompensation data/root/ data/decompensation/
python -m mimic3benchmark.scripts.create_length_of_stay data/root/ data/length-of-stay/
python -m mimic3benchmark.scripts.create_phenotyping data/root/ data/phenotyping/
python -m mimic3benchmark.scripts.create_multitask data/root/ data/multitask/
After the above commands are done, there will be a directory data/{task}
for each created benchmark task.
These directories have two subdirectories: train
and test
.
Each of them contains a bunch of ICU stays and one file with name listfile.csv
, which lists all samples in that particular set.
Each row of listfile.csv
has the following form: icu_stay, period_length, label(s)
.
A row specifies a sample for which the input is the collection of ICU event of icu_stay
that occurred in the first period_length
hours of the stay and the target is/are label(s)
.
In in-hospital mortality prediction task period_length
is always 48 hours, so it is not listed in corresponding listfiles.
To simplify the reading of benchmark data we wrote special classes.
The mimic3benchmark/readers.py
contains class Reader
and five other task-specific classes derived from it.
These are designed to simplify reading of benchmark data. The classes require a directory containing ICU stays and a listfile specifying the samples.
Again, we encourage to use these readers to avoid mistakes in the reading step (for example using events that happened after the first period_length
hours).
For more information about using readers view the mimic3benchmark/more_on_readers.md
file.
For each of the four tasks we provide scripts for evaluating models.
These scripts receive a csv
file containing the predictions and produce a json
file containing the scores and confidence intervals for different metrics.
We highly encourage to use these scripts to prevent any mistake in the evaluation step.
For details about the usage of the evaluation scripts view the mimic3benchmark/evaluation/README.md
file.
For each of the four main tasks we provide 7 baselines:
- Linear/logistic regression
- Standard LSTM
- Standard LSTM + deep supervision
- Channel-wise LSTM
- Channel-wise LSTM + deep supervision
- Multitask standard LSTM
- Multitask channel-wise LSTM
The detailed descriptions of the baselines will appear in the next version of the paper.
Linear models can be found in mimic3models/{task}/logistic
directories.
LSTM-based models are in mimic3models/keras_models
directory.
Please note that running linear models can take hours because of extensive grid search and feature extraction. You can change the size of the training data of linear models in the scripts, so they will become faster (of course the performance will not be the same).
To train the neural networks, you might need to select the keras backend to be tensorflow
. This can be done by prepending KERAS_BACKEND=tensorflow
to the training commands below, or by creating an environment variable KERAS_BACKEND
with value tensorflow
.
Use the following command to extract validation set from the training set. This step is required for running the baseline models. Likewise, the train/test split, the train/validation split is the same for all tasks.
python -m mimic3models.split_train_val {dataset-directory}
{dataset-directory}
can be either data/in-hospital-mortality
, data/decompensation
, data/length-of-stay
, data/phenotyping
or data/multitask
.
Run the following command to train the neural network which gives the best result. We got the best performance on validation set after 28 epochs.
python -um mimic3models.in_hospital_mortality.main --network mimic3models/keras_models/lstm.py --dim 16 --timestep 1.0 --depth 2 --dropout 0.3 --mode train --batch_size 8 --output_dir mimic3models/in_hospital_mortality
Use the following command to train logistic regression. The best model we got used L2 regularization with C=0.001
:
python -um mimic3models.in_hospital_mortality.logistic.main --l2 --C 0.001 --output_dir mimic3models/in_hospital_mortality/logistic
The best model we got for this task was trained for 36 chunks (that's less than one epoch; it overfits before reaching one epoch because there are many training samples for the same patient with different lengths).
python -um mimic3models.decompensation.main --network mimic3models/keras_models/lstm.py --dim 128 --timestep 1.0 --depth 1 --mode train --batch_size 8 --output_dir mimic3models/decompensation
Use the following command to train a logistic regression. It will have L2 regularization with C=0.001
, which gave us the best result. To run a grid search over a space of hyper-parameters add --grid-search
to the command.
python -um mimic3models.decompensation.logistic.main --output_dir mimic3models/decompensation/logistic
The best model we got for this task was trained for 19 chunks.
python -um mimic3models.length_of_stay.main --network mimic3models/keras_models/lstm.py --dim 64 --timestep 1.0 --depth 1 --dropout 0.3 --mode train --batch_size 8 --partition custom --output_dir mimic3models/length_of_stay
Use the following command to train a logistic regression. It will have L1 regularization with C=0.00001
. To run a grid search over a space of hyperparameters add --grid-search
to the command.
python -um mimic3models.length_of_stay.logistic.main_cf --output_dir mimic3models/length_of_stay/logistic
To run a linear regression use this command:
python -um mimic3models.length_of_stay.logistic.main --output_dir mimic3models/length_of_stay/logistic
The best model we got for this task was trained for 20 epochs.
python -um mimic3models.phenotyping.main --network mimic3models/keras_models/lstm.py --dim 256 --timestep 1.0 --depth 1 --dropout 0.3 --mode train --batch_size 8 --output_dir mimic3models/phenotyping
Use the following command for logistic regression. It will have L1 regularization with C=0.1
. To run a grid search over a space of hyperparameters add --grid-search
to the command.
python -um mimic3models.phenotyping.logistic.main --output_dir mimic3models/phenotyping/logistic
ihm_C
, decomp_C
, los_C
and ph_C
coefficients control the relative weight of the tasks in the multitask model. Default is 1.0
. Multitask network architectures are stored in mimic3models/multitask/keras_models
. Here is a sample command for running a multitasking model.
python -um mimic3models.multitask.main --network mimic3models/keras_models/multitask_lstm.py --dim 512 --timestep 1 --mode train --batch_size 16 --dropout 0.3 --ihm_C 0.2 --decomp_C 1.0 --los_C 1.5 --pheno_C 1.0 --output_dir mimic3models/multitask
- Improve comments and documentation
- Add the best state files for each baseline
- Release 1.0
- Update citation section with Zenodo DOI
- Add to MIMIC's derived data repo
- Refactor, where appropriate, to make code more generally useful
- Expand coverage of variable map and variable range files.
- Decide whether we are missing any other high-priority data (CPT codes, inputs, etc.)