dcanr

github.com/davislaboratory/dcanr
Idle7updated 1 year ago
R
GPL-3.0

This package implements methods and an evaluation framework to infer differential co-expression/association networks. Various methods are implemented and can be evaluated using simulated datasets. Inference of differential co-expression networks can allow identification of networks that are altered between two conditions (e.g., health and disease).

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  • Bioconductordcanr
  • GitHubgithub.com/davislaboratory/dcanr

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