trVAE - Transfer Variational Autoencoders pytorch
Project description
trvaep
Introduction
A pytorch implementation of trVAE (transfer Variational Autoencoder). trVAE is a deep generative model which learns mapping between multiple different styles (conditions). trVAE can be used for style transfer on images, predicting single-cell perturbations responses and batch removal.
Getting Started
Installation
Installation with pip
To install the latest version from PyPI, simply use the following bash script:
pip install trvaep
or install the development version via pip:
pip install git+https://github.com/theislab/trvaep.git
or you can first install flit and clone this repository:
pip install flit
git clone https://github.com/theislab/trvaep
cd trvaep
flit install
Examples
- For perturbation prediction check this example for interferon (IFN)-β stimulation from Kang et al..
Reproducing paper results:
In order to reproduce paper results visit here.
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