nempi
github.com/cbg-ethz/nempiTakes as input an incomplete perturbation profile and differential gene expression in log odds and infers unobserved perturbations and augments observed ones. The inference is done by iteratively inferring a network from the perturbations and inferring perturbations from the network. The network inference is done by Nested Effects Models.
Sourced from
- GitHub — github.com/cbg-ethz/nempi
- Bioconductor — nempi
Related resources
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