ddepn: Dynamic Deterministic Effects Propagation Networks: Infer
signalling networks for timecourse RPPA data
DDEPN (Dynamic Deterministic Effects Propagation
Networks): Infer signalling networks for timecourse data. Given
a matrix of high-throughput genomic or proteomic timecourse
data, generated after external perturbation of the biological
system, DDEPN models the time-dependent propagation of active
and passive states depending on a network structure. Optimal
network structures given the experimental data are
reconstructed. Two network inference algorithms can be used:
inhibMCMC, a Markov Chain Monte Carlo sampling approach and GA,
a Genetic Algorithm network optimisation. Inclusion of prior
biological knowledge can be done using different network prior
models.
| Version: |
2.1.2 |
| Depends: |
R (≥ 2.10.0), genefilter, gam, lattice, coda, gplots, graph, igraph0, RBGL, cluster |
| Suggests: |
multicore, Rgraphviz, BoolNet |
| Published: |
2012-06-21 |
| Author: |
Christian Bender |
| Maintainer: |
Christian Bender <christian.bender at tron-mainz.de> |
| License: |
GPL (≥ 2) |
| NeedsCompilation: |
yes |
| CRAN checks: |
ddepn results |
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