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python-mofapy2 0.7.1
Propagated dependencies: python-anndata@0.10.7 python-h5py@3.8.0 python-numpy@1.23.2 python-pandas@2.1.1 python-scikit-learn@1.4.2 python-scipy@1.12.0
Channel: guix
Location: gnu/packages/bioinformatics.scm (gnu packages bioinformatics)
Home page: https://biofam.github.io/MOFA2/
Licenses: LGPL 3
Synopsis: Multi-omics factor analysis
Description:

MOFA is a factor analysis model that provides a general framework for the integration of multi-omic data sets in an unsupervised fashion. Intuitively, MOFA can be viewed as a versatile and statistically rigorous generalization of principal component analysis to multi-omics data. Given several data matrices with measurements of multiple -omics data types on the same or on overlapping sets of samples, MOFA infers an interpretable low-dimensional representation in terms of a few latent factors. These learnt factors represent the driving sources of variation across data modalities, thus facilitating the identification of cellular states or disease subgroups.

Total results: 1