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pySuStaIn

Subtype and Stage Inference, or SuStaIn, is an algorithm for discovery of data-driven groups or "subtypes" in chronic disorders. This repository is the Python implementation of SuStaIn, with the option to describe the subtype progression patterns using either the event-based model or the piecewise linear z-score model.

Acknowledgement

If you use pySuStaIn, please cite the following core papers:

  1. The original SuStaIn paper
  2. The pySuStaIn software paper

Please also cite the corresponding progression pattern model you use:

  1. The piecewise linear z-score model (i.e. ZscoreSustain)
  2. The event-based model (i.e. MixtureSustain) with Gaussian mixture modelling or kernel density estimation).

Thanks a lot for supporting this project.

Installation

Install option 1: direct install from repository

pip install git+https://github.com/ucl-pond/pySuStaIn

Install option 2: clone repository, install locally (deprecated)

In main pySuStaIn directory (where you see setup.py, README.txt, LICENSE.txt and all subfolders), run:

pip install  .

This will install everything listed in requirements.txt, including the awkde package (used for mixture modelling). During the installation of awkde, an error may appear, but then the installation should continue and be successful. Note that you need pip version 18.1+ for this installation to work.

Troubleshooting

If the above install breaks, you may have some interfering packages installed. One way around this would be to create a new Anaconda environment that uses Python 3.7, then activate it and repeat the installation steps above. To do this, download and install Anaconda, then run:

conda create  --name sustain_env python=3.7
conda activate sustain_env

To create an environment named sustain_env.

Dependencies

Parallelisation

  • Added parallelized startpoints

Running different SuStaIn implementations

sustainType can be set to:

  • mixture_GMM : SuStaIn with an event-based model progression pattern, with Gaussian mixture modelling of normal/abnormal.
  • mixture_KDE: SuStaIn with an event-based model progression pattern, with Kernel Density Estimation (KDE) mixture modelling of normal/abnormal.
  • zscore: SuStaIn with a piecewise linear z-score model progression pattern.

See simrun.py for examples of how to run these different implementations.

SuStaIn Tutorial

See the jupyter notebook in the notebooks folder for a tutorial on how to use SuStaIn using simulated data.

Papers

Methods:

Applications:

Funding

This project has received funding from the European Union’s Horizon 2020 Research and Innovation Programme under Grant Agreements 666992. Application of SuStaIn to multiple sclerosis was supported by the International Progressive MS Alliance (IPMSA, award reference number PA-1603-08175).

Quotes

(The authors) have also persuaded me that (SuStaIn is) as clever as e.g. Heiko Braak's brain, (and) can infer longitudinal trajectories based on cross-sectional observations.

  • Anonymous reviewer

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Subtype and Stage Inference (SuStaIn) algorithm with an example using simulated data.

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  • Jupyter Notebook 59.9%
  • Python 40.1%