R/fct_network_inference.R
network_thresholding.RdWithout thresholding, we would obtain a fully connected weighted graph from GENIE3, with far too many links to be interpretable. In order build a meaningful network, this weighted adjacency matrix between regulators and targets has to be sparsified, and we have to determine the regulatory weights that we consider significant.
This method is a nice exploratory way to threshold complete networks,
but to get more robust and significant results, consider using
the DIANE::test_edges() function.
network_thresholding(mat, n_edges)matrix containing the importance values for each target and regulator,
as returned by DIANE::network_inference()
number of edges top edges to keep in the final network.
igraph object representing the Gene Regulatory Network
if (FALSE) { # \dontrun{
data("abiotic_stresses")
data("regulators_per_organism")
genes <- get_locus(abiotic_stresses$heat_DEGs)
# mat was inferred using the function network_inference
mat <- abiotic_stresses$heat_DEGs_regulatory_links
network <- DIANE::network_thresholding(mat, n_edges = length(genes))
} # }