Python package dsm
provides an API to train the Deep Survival Machines
and associated models for problems in survival analysis. The underlying model
is implemented in pytorch
.
For full documentation of the module, please see https://autonlab.github.io/DeepSurvivalMachines/
Survival Analysis involves estimating when an event of interest, T
would take place given some features or covariates X. In statistics
and ML, these scenarios are modelled as regression to estimate the conditional
survival distribution, P(T>t|X).
As compared to typical regression problems, Survival Analysis differs in two major ways:
- The Event distribution, T has positive support i.e. T ∈ [0, ∞).
- There is presence of censoring i.e. a large number of instances of data are lost to follow up.
Deep Survival Machines (DSM) is a fully parametric approach to model Time-to-Event outcomes in the presence of Censoring, first introduced in [1]. In the context of Healthcare ML and Biostatistics, this is known as 'Survival Analysis'. The key idea behind Deep Survival Machines is to model the underlying event outcome distribution as a mixure of some fixed ( K ) parametric distributions. The parameters of these mixture distributions as well as the mixing weights are modelled using Neural Networks.
>>> from dsm import DeepSurvivalMachines
>>> model = DeepSurvivalMachines()
>>> model.fit()
>>> model.predict_risk()
Recurrent Deep Survival Machines (RDSM) builds on the original DSM model and allows for learning of representations of the input covariates using Recurrent Neural Networks like LSTMs, GRUs. Deep Recurrent Survival Machines is a natural fit to model problems where there are time dependendent covariates.
Predictive maintenance and medical imaging sometimes requires to work with image streams. Deep Convolutional Survival Machines extends DSM and DRSM to learn representations of the input image data using convolutional layers. If working with streaming data, the learnt representations are then passed through an LSTM to model temporal dependencies before determining the underlying survival distributions.
⚠️ Not Implemented Yet!
foo@bar:~$ git clone https://github.com/autonlab/DeepSurvivalMachines.git
foo@bar:~$ cd DeepSurvivalMachines
foo@bar:~$ pip install -r requirements.txt
Please cite the following papers if you are using the dsm
package.
@article{nagpal2021deep,
title={Deep Survival Machines: Fully Parametric Survival Regression and\
Representation Learning for Censored Data with Competing Risks},
author={Nagpal, Chirag and Li, Xinyu and Dubrawski, Artur},
journal={IEEE Journal of Biomedical and Health Informatics},
year={2021}
}
[2] Deep Parametric Time-to-Event Regression with Time-Varying Covariates. AAAI Spring Symposium (2021)
@InProceedings{pmlr-v146-nagpal21a,
title = {Deep Parametric Time-to-Event Regression with Time-Varying Covariates},
author = {Nagpal, Chirag and Jeanselme, Vincent and Dubrawski, Artur},
booktitle = {Proceedings of AAAI Spring Symposium on Survival Prediction - Algorithms, Challenges, and Applications 2021},
series = {Proceedings of Machine Learning Research},
publisher = {PMLR},
}
dsm
requires python
3.5+ and pytorch
1.1+.
To evaluate performance using standard metrics
dsm
requires scikit-survival
.
dsm
is on GitHub. Bug reports and pull requests are welcome.
MIT License
Copyright (c) 2020 Carnegie Mellon University, Auton Lab
Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the "Software"), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions:
The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software.
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