_            _    _        _         _
      /\ \         /\ \ /\ \     /\_\      / /\
      \_\ \       /  \ \\ \ \   / / /     / /  \
      /\__ \     / /\ \ \\ \ \_/ / /     / / /\ \__
     / /_ \ \   / / /\ \ \\ \___/ /     / / /\ \___\
    / / /\ \ \ / / /  \ \_\\ \ \_/      \ \ \ \/___/
   / / /  \/_// / /   / / / \ \ \        \ \ \
  / / /      / / /   / / /   \ \ \   _    \ \ \
 / / /      / / /___/ / /     \ \ \ /_/\__/ / /
/_/ /      / / /____\/ /       \ \_\\ \/___/ /
\_\/       \/_________/         \/_/ \_____\/
r-mnem 1.22.0
Propagated dependencies: r-wesanderson@0.3.7 r-tsne@0.1-3.1 r-snowfall@1.84-6.3 r-rgraphviz@2.50.0 r-rcppeigen@0.3.4.0.2 r-rcpp@1.0.13-1 r-naturalsort@0.1.3 r-matrixstats@1.4.1 r-linnorm@2.30.0 r-lattice@0.22-6 r-graph@1.84.0 r-ggplot2@3.5.1 r-flexclust@1.4-2 r-e1071@1.7-16 r-data-table@1.16.2 r-cluster@2.1.6
Channel: guix-bioc
Location: guix-bioc/packages/m.scm (guix-bioc packages m)
Home page: https://github.com/cbg-ethz/mnem/
Licenses: GPL 3
Synopsis: Mixture Nested Effects Models
Description:

Mixture Nested Effects Models (mnem) is an extension of Nested Effects Models and allows for the analysis of single cell perturbation data provided by methods like Perturb-Seq (Dixit et al., 2016) or Crop-Seq (Datlinger et al., 2017). In those experiments each of many cells is perturbed by a knock-down of a specific gene, i.e. several cells are perturbed by a knock-down of gene A, several by a knock-down of gene B, ... and so forth. The observed read-out has to be multi-trait and in the case of the Perturb-/Crop-Seq gene are expression profiles for each cell. mnem uses a mixture model to simultaneously cluster the cell population into k clusters and and infer k networks causally linking the perturbed genes for each cluster. The mixture components are inferred via an expectation maximization algorithm.

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