Probabilistic factor analysis model with covariate guided factors
Project description
Semi-supervised Omics Factor Analysis (SOFA)
Introduction
Here we present semi-supervised probabilistic Factor Analysis (SOFA), a multi-omics integration method, which infers a set of low dimensional latent factors that represent the main sources of variability. SOFA enables the discovery of primary sources of variation while adjusting for known covariates and simultaneously disentangling variation that is shared between multiple omics modalities and specific to single modalities. The SOFA method is implemented in python using the Pyro framework for probabilistic programming.
Installation
To install SOFA
first create Python 3.8
environment e.g. by
conda create --name sofa-env python=3.8
conda activate sofa-env
and install the package using
pip install biosofa
How to use SOFA
for multi-omics analyses
A detailed manual with examples and how to use SOFA
can be found here https://tcapraz.github.io/SOFA/index.html.
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